entry_point
stringlengths
1
65
original_triton_code
stringlengths
4.5k
619k
python_code
stringlengths
208
60.9k
triton_code
stringlengths
1.15k
275k
repo_name
stringlengths
7
115
module_name
stringlengths
1
65
synthetic
bool
1 class
uuid
int64
0
18.5k
licenses
listlengths
1
6
stars
int64
0
19.8k
sha
stringlengths
40
40
repo_link
stringlengths
72
180
FeedForward_NN
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/pr/cprthrqz6iotcmrjfcrj7taqntzxisdcjtr54gsuz2ck2kf6kbsr.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # out_1 => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tmp6 = 0.0 tmp7 = tmp5 <= tmp6 tl.store(in_out_ptr0 + (x0), tmp5, xmask) tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (1, 4), (4, 1)) assert_size_stride(primals_2, (1, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 1), (1, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 1), (1, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 1), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 1), (16, 4, 1, 1), 0); del buf0 # reuse buf3 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 1), torch.bool) # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, primals_2, buf3, 64, grid=grid(64), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 1), (1, 0), 0), reinterpret_tensor(primals_4, (1, 4), (1, 1), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (64, 1), (1, 1), 0), primals_4, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 1), (1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class FeedForward_NN(nn.Module): def __init__(self, input_size, hidden_layer, output_size): super(FeedForward_NN, self).__init__() self.layer1 = nn.Linear(input_size, hidden_layer) self.relu = nn.ReLU() self.layer2 = nn.Linear(hidden_layer, output_size) def forward(self, X): out = self.layer1(X) out = self.relu(out) out = self.layer2(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_size': 4, 'hidden_layer': 1, 'output_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tmp6 = 0.0 tmp7 = tmp5 <= tmp6 tl.store(in_out_ptr0 + x0, tmp5, xmask) tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (1, 4), (4, 1)) assert_size_stride(primals_2, (1,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 1), (1, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 1), (1, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 1), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 1), (16, 4, 1, 1), 0) del buf0 buf3 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(64)](buf1, primals_2, buf3, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 1), ( 1, 0), 0), reinterpret_tensor(primals_4, (1, 4), (1, 1), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf1, (64, 1), (1, 1), 0), primals_4, buf3 class FeedForward_NNNew(nn.Module): def __init__(self, input_size, hidden_layer, output_size): super(FeedForward_NNNew, self).__init__() self.layer1 = nn.Linear(input_size, hidden_layer) self.relu = nn.ReLU() self.layer2 = nn.Linear(hidden_layer, output_size) def forward(self, input_0): primals_1 = self.layer1.weight primals_2 = self.layer1.bias primals_4 = self.layer2.weight primals_5 = self.layer2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
AqibJavaid899/PyTorch_Models
FeedForward_NN
false
11,204
[ "MIT" ]
0
cf81f6ef5d81aed76dca3f1a15be1a308b5d450f
https://github.com/AqibJavaid899/PyTorch_Models/tree/cf81f6ef5d81aed76dca3f1a15be1a308b5d450f
SpatialGatherModule
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/iv/civr7hz7pwb7nd5q352sqsjvxezkx6m6jnyztaygkt2ugewh5ejx.py # Topologically Sorted Source Nodes: [probs], Original ATen: [aten._softmax] # Source node to ATen node mapping: # probs => div, exp, sum_1 # Graph fragment: # %mul_tensor : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view, 1), kwargs = {}) # %amax_default : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%mul_tensor, [2], True), kwargs = {}) # %sub_tensor : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_tensor, %amax_default), kwargs = {}) # %mul_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_tensor, 1.0), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%mul_tensor_1,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [2], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) triton_per_fused__softmax_0 = async_compile.triton('triton_per_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[16, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 2, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__softmax_0(in_ptr0, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 16 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (16*x0)), xmask, other=0.0) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, float("-inf")) tmp6 = triton_helpers.max2(tmp5, 1)[:, None] tmp7 = tmp2 - tmp6 tmp8 = tmp7 * tmp1 tmp9 = tl_math.exp(tmp8) tmp10 = tl.broadcast_to(tmp9, [XBLOCK, RBLOCK]) tmp12 = tl.where(xmask, tmp10, 0) tmp13 = tl.sum(tmp12, 1)[:, None] tmp14 = tmp9 / tmp13 tl.store(out_ptr2 + (r1 + (16*x0)), tmp14, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/vq/cvqpprnukykv7fb6t2uveui44qrapemorby5j3fnnfeymwpqwe63.py # Topologically Sorted Source Nodes: [contiguous], Original ATen: [aten.clone] # Source node to ATen node mapping: # contiguous => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_1,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_1 = async_compile.triton('triton_poi_fused_clone_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16, 4], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = (yindex // 4) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (4*x2) + (16*y1)), xmask & ymask, eviction_policy='evict_last') tl.store(out_ptr0 + (x2 + (4*y3)), tmp0, xmask & ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 16), (64, 16, 1), torch.float32) # Topologically Sorted Source Nodes: [probs], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_per_fused__softmax_0.run(arg0_1, buf2, 16, 16, grid=grid(16), stream=stream0) del arg0_1 buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [probs, out_context], Original ATen: [aten._softmax, aten.bmm] extern_kernels.bmm(buf2, reinterpret_tensor(arg1_1, (4, 16, 4), (64, 1, 16), 0), out=buf3) del arg1_1 del buf2 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [contiguous], Original ATen: [aten.clone] triton_poi_fused_clone_1.run(buf3, buf4, 16, 4, grid=grid(16, 4), stream=stream0) del buf3 return (reinterpret_tensor(buf4, (4, 4, 4, 1), (16, 4, 1, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch._C import torch.serialization class SpatialGatherModule(nn.Module): """Aggregate the context features according to the initial predicted probability distribution. Employ the soft-weighted method to aggregate the context. """ def __init__(self, scale=1.0): super(SpatialGatherModule, self).__init__() self.scale = scale assert self.scale > 0.0 def forward(self, feats, prev_logits): """Forward function.""" batch_size, num_classes, _height, _width = prev_logits.size() channels = feats.size(1) prev_logits = prev_logits.view(batch_size, num_classes, -1) feats = feats.view(batch_size, channels, -1) feats = feats.permute(0, 2, 1) probs = F.softmax(self.scale * prev_logits, dim=2) out_context = torch.matmul(probs, feats) out_context = out_context.permute(0, 2, 1).contiguous().unsqueeze(3) return out_context def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch._C import torch.serialization assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused__softmax_0(in_ptr0, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 16 * x0), xmask, other=0.0) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, float('-inf')) tmp6 = triton_helpers.max2(tmp5, 1)[:, None] tmp7 = tmp2 - tmp6 tmp8 = tmp7 * tmp1 tmp9 = tl_math.exp(tmp8) tmp10 = tl.broadcast_to(tmp9, [XBLOCK, RBLOCK]) tmp12 = tl.where(xmask, tmp10, 0) tmp13 = tl.sum(tmp12, 1)[:, None] tmp14 = tmp9 / tmp13 tl.store(out_ptr2 + (r1 + 16 * x0), tmp14, xmask) @triton.jit def triton_poi_fused_clone_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 16 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = yindex // 4 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 4 * x2 + 16 * y1), xmask & ymask, eviction_policy='evict_last') tl.store(out_ptr0 + (x2 + 4 * y3), tmp0, xmask & ymask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((4, 4, 16), (64, 16, 1), torch.float32) get_raw_stream(0) triton_per_fused__softmax_0[grid(16)](arg0_1, buf2, 16, 16, XBLOCK= 1, num_warps=2, num_stages=1) del arg0_1 buf3 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(buf2, reinterpret_tensor(arg1_1, (4, 16, 4), (64, 1, 16), 0), out=buf3) del arg1_1 del buf2 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_clone_1[grid(16, 4)](buf3, buf4, 16, 4, XBLOCK=4, YBLOCK=16, num_warps=1, num_stages=1) del buf3 return reinterpret_tensor(buf4, (4, 4, 4, 1), (16, 4, 1, 1), 0), class SpatialGatherModuleNew(nn.Module): """Aggregate the context features according to the initial predicted probability distribution. Employ the soft-weighted method to aggregate the context. """ def __init__(self, scale=1.0): super(SpatialGatherModuleNew, self).__init__() self.scale = scale assert self.scale > 0.0 def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AlexanderDokuchaev/mmsegmentation
SpatialGatherModule
false
11,205
[ "Apache-2.0" ]
0
0c443ee370cce6227661b802184072174c4e3f64
https://github.com/AlexanderDokuchaev/mmsegmentation/tree/0c443ee370cce6227661b802184072174c4e3f64
BalancedL1Loss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/u6/cu6ipcdjut3ad56lbzon6ze3sumzrsa4berzrqmooidtonkrrxbp.py # Topologically Sorted Source Nodes: [sub, diff, lt, mul, add, mul_1, mul_2, truediv, add_1, log, mul_3, mul_4, sub_1, mul_5, add_2, sub_2, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.add, aten.div, aten.log, aten.where, aten.mean] # Source node to ATen node mapping: # add => add # add_1 => add_1 # add_2 => add_2 # diff => abs_1 # log => log # loss => where # loss_1 => mean # loss_bbox => mul_6 # lt => lt # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # mul_3 => mul_3 # mul_4 => mul_4 # mul_5 => mul_5 # sub => sub # sub_1 => sub_1 # sub_2 => sub_2 # truediv => div # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=5] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %lt : [num_users=1] = call_function[target=torch.ops.aten.lt.Scalar](args = (%abs_1, 1.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 19.085536923187664), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, 0.02619784824562798), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 19.085536923187664), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_2, 1.0), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%div, 1), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_1,), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_1, %log), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_3, %mul_4), kwargs = {}) # %mul_5 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 1.5), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_5, 0.07859354473688394), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add_2, 0.5), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%lt, %sub_1, %sub_2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%where,), kwargs = {}) # %mul_6 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0 = async_compile.triton('triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 19.085536923187664 tmp7 = tmp3 * tmp6 tmp8 = tmp7 + tmp4 tmp9 = 0.02619784824562798 tmp10 = tmp8 * tmp9 tmp11 = tmp7 * tmp4 tmp12 = tmp11 + tmp4 tmp13 = tl_math.log(tmp12) tmp14 = tmp10 * tmp13 tmp15 = 0.5 tmp16 = tmp3 * tmp15 tmp17 = tmp14 - tmp16 tmp18 = 1.5 tmp19 = tmp3 * tmp18 tmp20 = 0.07859354473688394 tmp21 = tmp19 + tmp20 tmp22 = tmp21 - tmp15 tmp23 = tl.where(tmp5, tmp17, tmp22) tmp24 = tl.broadcast_to(tmp23, [RBLOCK]) tmp26 = triton_helpers.promote_to_tensor(tl.sum(tmp24, 0)) tmp27 = 256.0 tmp28 = tmp26 / tmp27 tmp29 = tmp28 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp29, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [sub, diff, lt, mul, add, mul_1, mul_2, truediv, add_1, log, mul_3, mul_4, sub_1, mul_5, add_2, sub_2, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.add, aten.div, aten.log, aten.where, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import numpy as np import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def balanced_l1_loss(pred, target, beta=1.0, alpha=0.5, gamma=1.5, reduction='mean'): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) b = np.e ** (gamma / alpha) - 1 loss = torch.where(diff < beta, alpha / b * (b * diff + 1) * torch.log( b * diff / beta + 1) - alpha * diff, gamma * diff + gamma / b - alpha * beta) return loss class BalancedL1Loss(nn.Module): """Balanced L1 Loss arXiv: https://arxiv.org/pdf/1904.02701.pdf (CVPR 2019) """ def __init__(self, alpha=0.5, gamma=1.5, beta=1.0, reduction='mean', loss_weight=1.0): super(BalancedL1Loss, self).__init__() self.alpha = alpha self.gamma = gamma self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None, **kwargs): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * balanced_l1_loss(pred, target, weight, alpha=self.alpha, gamma=self.gamma, beta=self.beta, reduction=reduction, avg_factor=avg_factor, **kwargs) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import numpy as np import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 19.085536923187664 tmp7 = tmp3 * tmp6 tmp8 = tmp7 + tmp4 tmp9 = 0.02619784824562798 tmp10 = tmp8 * tmp9 tmp11 = tmp7 * tmp4 tmp12 = tmp11 + tmp4 tmp13 = tl_math.log(tmp12) tmp14 = tmp10 * tmp13 tmp15 = 0.5 tmp16 = tmp3 * tmp15 tmp17 = tmp14 - tmp16 tmp18 = 1.5 tmp19 = tmp3 * tmp18 tmp20 = 0.07859354473688394 tmp21 = tmp19 + tmp20 tmp22 = tmp21 - tmp15 tmp23 = tl.where(tmp5, tmp17, tmp22) tmp24 = tl.broadcast_to(tmp23, [RBLOCK]) tmp26 = triton_helpers.promote_to_tensor(tl.sum(tmp24, 0)) tmp27 = 256.0 tmp28 = tmp26 / tmp27 tmp29 = tmp28 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp29, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mean_mul_sub_where_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def balanced_l1_loss(pred, target, beta=1.0, alpha=0.5, gamma=1.5, reduction='mean'): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) b = np.e ** (gamma / alpha) - 1 loss = torch.where(diff < beta, alpha / b * (b * diff + 1) * torch.log( b * diff / beta + 1) - alpha * diff, gamma * diff + gamma / b - alpha * beta) return loss class BalancedL1LossNew(nn.Module): """Balanced L1 Loss arXiv: https://arxiv.org/pdf/1904.02701.pdf (CVPR 2019) """ def __init__(self, alpha=0.5, gamma=1.5, beta=1.0, reduction='mean', loss_weight=1.0): super(BalancedL1LossNew, self).__init__() self.alpha = alpha self.gamma = gamma self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AtticusJohnson/mmdetection
BalancedL1Loss
false
11,206
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
WeightNet
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/fa/cfa6itnokv74hv7k5ssvcinm66irvjdzfky2hejxqzrga4jb3fq4.py # Topologically Sorted Source Nodes: [x, sigmoid, x_3], Original ATen: [aten.convolution, aten.sigmoid, aten.mul] # Source node to ATen node mapping: # sigmoid => sigmoid # x => convolution # x_3 => mul # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_1, %primals_2, %primals_3, [1], [1], [1], False, [0], 1), kwargs = {}) # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%permute,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sigmoid, 2), kwargs = {}) triton_poi_fused_convolution_mul_sigmoid_0 = async_compile.triton('triton_poi_fused_convolution_mul_sigmoid_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_mul_sigmoid_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_mul_sigmoid_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tmp5 = 2.0 tmp6 = tmp4 * tmp5 tl.store(in_out_ptr0 + (x0), tmp3, xmask) tl.store(out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (1, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=(0,), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 4), (4, 4, 1)) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x, sigmoid, x_3], Original ATen: [aten.convolution, aten.sigmoid, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_convolution_mul_sigmoid_0.run(buf1, primals_3, buf2, 16, grid=grid(16), stream=stream0) del primals_3 return (buf2, primals_1, primals_2, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 4, 3), (12, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class WeightNet(nn.Module): """WeightNet in Temporal interlace module. The WeightNet consists of two parts: one convolution layer and a sigmoid function. Following the convolution layer, the sigmoid function and rescale module can scale our output to the range (0, 2). Here we set the initial bias of the convolution layer to 0, and the final initial output will be 1.0. Args: in_channels (int): Channel num of input features. groups (int): Number of groups for fc layer outputs. """ def __init__(self, in_channels, groups): super().__init__() self.sigmoid = nn.Sigmoid() self.groups = groups self.conv = nn.Conv1d(in_channels, groups, 3, padding=1) self.init_weights() def init_weights(self): """Initiate the parameters either from existing checkpoint or from scratch.""" self.conv.bias.data[...] = 0 def forward(self, x): """Defines the computation performed at every call. Args: x (torch.Tensor): The input data. Returns: torch.Tensor: The output of the module. """ n, _, t = x.shape x = self.conv(x) x = x.view(n, self.groups, t) x = x.permute(0, 2, 1) x = 2 * self.sigmoid(x) return x def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'groups': 1}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_mul_sigmoid_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.sigmoid(tmp3) tmp5 = 2.0 tmp6 = tmp4 * tmp5 tl.store(in_out_ptr0 + x0, tmp3, xmask) tl.store(out_ptr0 + x0, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (1, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=( 0,), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 4), (4, 4, 1)) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) get_raw_stream(0) triton_poi_fused_convolution_mul_sigmoid_0[grid(16)](buf1, primals_3, buf2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_3 return buf2, primals_1, primals_2, buf1 class WeightNetNew(nn.Module): """WeightNet in Temporal interlace module. The WeightNet consists of two parts: one convolution layer and a sigmoid function. Following the convolution layer, the sigmoid function and rescale module can scale our output to the range (0, 2). Here we set the initial bias of the convolution layer to 0, and the final initial output will be 1.0. Args: in_channels (int): Channel num of input features. groups (int): Number of groups for fc layer outputs. """ def __init__(self, in_channels, groups): super().__init__() self.sigmoid = nn.Sigmoid() self.groups = groups self.conv = nn.Conv1d(in_channels, groups, 3, padding=1) self.init_weights() def init_weights(self): """Initiate the parameters either from existing checkpoint or from scratch.""" self.conv.bias.data[...] = 0 def forward(self, input_0): primals_2 = self.conv.weight primals_3 = self.conv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Alexis-Fab/mmaction2
WeightNet
false
11,207
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
NN
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/jq/cjqaq2meov3vkcgfealq7w4w35tw2oemvmhneuxmigeoumva22p7.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.sigmoid] # Source node to ATen node mapping: # out => sigmoid # Graph fragment: # %sigmoid : [num_users=2] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_1,), kwargs = {}) triton_poi_fused_sigmoid_0 = async_compile.triton('triton_poi_fused_sigmoid_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sigmoid_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sigmoid_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [out], Original ATen: [aten.sigmoid] stream0 = get_raw_stream(0) triton_poi_fused_sigmoid_0.run(buf1, primals_2, 256, grid=grid(256), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf2 # reuse # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.sigmoid] triton_poi_fused_sigmoid_0.run(buf3, primals_5, 256, grid=grid(256), stream=stream0) del primals_5 return (buf3, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf1, buf3, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class NN(nn.Module): def __init__(self, input, hidden, output): super(NN, self).__init__() self.lin1 = nn.Linear(input, hidden) self.lin2 = nn.Linear(hidden, output) def forward(self, X): out = torch.sigmoid(self.lin1(X)) out = torch.sigmoid(self.lin2(out)) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input': 4, 'hidden': 4, 'output': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_sigmoid_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_sigmoid_0[grid(256)](buf1, primals_2, 256, XBLOCK= 128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf2 triton_poi_fused_sigmoid_0[grid(256)](buf3, primals_5, 256, XBLOCK= 128, num_warps=4, num_stages=1) del primals_5 return buf3, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf1, buf3, primals_4 class NNNew(nn.Module): def __init__(self, input, hidden, output): super(NNNew, self).__init__() self.lin1 = nn.Linear(input, hidden) self.lin2 = nn.Linear(hidden, output) def forward(self, input_0): primals_1 = self.lin1.weight primals_2 = self.lin1.bias primals_4 = self.lin2.weight primals_5 = self.lin2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
AqibJavaid899/PyTorch_Models
NN
false
11,208
[ "MIT" ]
0
cf81f6ef5d81aed76dca3f1a15be1a308b5d450f
https://github.com/AqibJavaid899/PyTorch_Models/tree/cf81f6ef5d81aed76dca3f1a15be1a308b5d450f
TorchModule
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/a2/ca2wr2cvkya5clovpxidv7ia56pdcyp7uq4omtpg5m2nr7ya3ryn.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.tanh] # Source node to ATen node mapping: # x_1 => tanh # Graph fragment: # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%view_1,), kwargs = {}) triton_poi_fused_tanh_0 = async_compile.triton('triton_poi_fused_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4096 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ku/ckukyw44hxxcrcpyqqe6auljaf54daimtcs6kbykg5nkqzpxqi7c.py # Topologically Sorted Source Nodes: [tanh_2], Original ATen: [aten.tanh] # Source node to ATen node mapping: # tanh_2 => tanh_2 # Graph fragment: # %tanh_2 : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%view_5,), kwargs = {}) triton_poi_fused_tanh_1 = async_compile.triton('triton_poi_fused_tanh_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = libdevice.tanh(tmp0) tl.store(out_ptr0 + (x0), tmp1, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (64, 4), (4, 1)) assert_size_stride(primals_3, (64, ), (1, )) assert_size_stride(primals_4, (64, 64), (64, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (4, 64), (64, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 64), (1, 4), 0), out=buf0) del primals_2 buf1 = reinterpret_tensor(buf0, (1, 4, 4, 4, 64), (4096, 1024, 256, 64, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_tanh_0.run(buf1, primals_3, 4096, grid=grid(4096), stream=stream0) del primals_3 buf2 = empty_strided_cuda((64, 64), (64, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 64), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (1, 4, 4, 4, 64), (4096, 1024, 256, 64, 1), 0); del buf2 # reuse # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.tanh] triton_poi_fused_tanh_0.run(buf3, primals_5, 4096, grid=grid(4096), stream=stream0) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 64), (64, 1), 0), reinterpret_tensor(primals_6, (64, 4), (1, 64), 0), alpha=1, beta=1, out=buf4) del primals_7 buf5 = empty_strided_cuda((1, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [tanh_2], Original ATen: [aten.tanh] triton_poi_fused_tanh_1.run(buf4, buf5, 256, grid=grid(256), stream=stream0) return (reinterpret_tensor(buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), buf1, buf3, buf4, primals_6, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 64), (64, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 64), (64, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn class TorchLinearModule(torch.nn.Module): def __init__(self, in_size, out_size): super(TorchLinearModule, self).__init__() self._linear = torch.nn.Linear(in_size, out_size) def forward(self, x): return self._linear(x) class TorchModule(torch.nn.Module): def __init__(self, in_size, out_size, dev=None, hidden_size=64): super(TorchModule, self).__init__() self._linear0 = TorchLinearModule(in_size, hidden_size) self._linear1 = TorchLinearModule(hidden_size, hidden_size) self._linear2 = TorchLinearModule(hidden_size, out_size) def forward(self, x): x = x.unsqueeze(0) x = torch.tanh(self._linear0(x)) x = torch.tanh(self._linear1(x)) return torch.tanh(self._linear2(x))[0] def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_size': 4, 'out_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_tanh_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, None) @triton.jit def triton_poi_fused_tanh_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = libdevice.tanh(tmp0) tl.store(out_ptr0 + x0, tmp1, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (64, 4), (4, 1)) assert_size_stride(primals_3, (64,), (1,)) assert_size_stride(primals_4, (64, 64), (64, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (4, 64), (64, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64), (64, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 64), (1, 4), 0), out=buf0) del primals_2 buf1 = reinterpret_tensor(buf0, (1, 4, 4, 4, 64), (4096, 1024, 256, 64, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_tanh_0[grid(4096)](buf1, primals_3, 4096, XBLOCK= 256, num_warps=4, num_stages=1) del primals_3 buf2 = empty_strided_cuda((64, 64), (64, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 64), (64, 1), 0), reinterpret_tensor(primals_4, (64, 64), (1, 64), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (1, 4, 4, 4, 64), (4096, 1024, 256, 64, 1), 0) del buf2 triton_poi_fused_tanh_0[grid(4096)](buf3, primals_5, 4096, XBLOCK= 256, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 64), (64, 1), 0), reinterpret_tensor(primals_6, (64, 4), (1, 64), 0), alpha=1, beta=1, out=buf4) del primals_7 buf5 = empty_strided_cuda((1, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) triton_poi_fused_tanh_1[grid(256)](buf4, buf5, 256, XBLOCK=256, num_warps=4, num_stages=1) return reinterpret_tensor(buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_1, (64, 4), (4, 1), 0 ), buf1, buf3, buf4, primals_6, primals_4 class TorchLinearModule(torch.nn.Module): def __init__(self, in_size, out_size): super(TorchLinearModule, self).__init__() self._linear = torch.nn.Linear(in_size, out_size) def forward(self, x): return self._linear(x) class TorchModuleNew(torch.nn.Module): def __init__(self, in_size, out_size, dev=None, hidden_size=64): super(TorchModuleNew, self).__init__() self._linear0 = TorchLinearModule(in_size, hidden_size) self._linear1 = TorchLinearModule(hidden_size, hidden_size) self._linear2 = TorchLinearModule(hidden_size, out_size) def forward(self, input_0): primals_2 = self._linear0._linear.weight primals_3 = self._linear0._linear.bias primals_4 = self._linear1._linear.weight primals_5 = self._linear1._linear.bias primals_6 = self._linear2._linear.weight primals_7 = self._linear2._linear.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AnimeshGurjar/ivy
TorchModule
false
11,209
[ "Apache-2.0" ]
0
e598872d96b8f7a1db461f005bec99cd0400ecec
https://github.com/AnimeshGurjar/ivy/tree/e598872d96b8f7a1db461f005bec99cd0400ecec
BinaryLogisticRegressionLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/tt/ctthaisn2h6qlimrjmp65k5b5meevfl4by5fxrswxdbne2bmkie2.py # Topologically Sorted Source Nodes: [gt, pmask, sum_1, num_positive, ratio, clamp_1, ratio_1, coef_1, mul_2, add, log, mul_3, mul, sub, coef_0, sub_1, mul_4, sub_2, add_1, log_1, mul_5, loss, mean, loss_1], Original ATen: [aten.gt, aten._to_copy, aten.sum, aten.clamp, aten.reciprocal, aten.mul, aten.add, aten.log, aten.sub, aten.div, aten.rsub, aten.mean, aten.neg] # Source node to ATen node mapping: # add => add # add_1 => add_1 # clamp_1 => clamp_min_1 # coef_0 => div # coef_1 => mul_2 # gt => gt # log => log # log_1 => log_1 # loss => add_2 # loss_1 => neg # mean => mean # mul => mul_1 # mul_2 => mul_3 # mul_3 => mul_4 # mul_4 => mul_5 # mul_5 => mul_6 # num_positive => clamp_min # pmask => convert_element_type # ratio => mul, reciprocal # ratio_1 => clamp_max # sub => sub # sub_1 => sub_1 # sub_2 => sub_2 # sum_1 => sum_1 # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%view, 0.5), kwargs = {}) # %convert_element_type : [num_users=3] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt, torch.float32), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type,), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sum_1, 1), kwargs = {}) # %reciprocal : [num_users=1] = call_function[target=torch.ops.aten.reciprocal.default](args = (%clamp_min,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%reciprocal, 256), kwargs = {}) # %clamp_min_1 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%mul, 1.05), kwargs = {}) # %clamp_max : [num_users=3] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min_1, 21), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max, 0.5), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_2, %convert_element_type), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, 1e-05), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add,), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_3, %log), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max, 0.5), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clamp_max, 1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_1, %sub), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %convert_element_type), kwargs = {}) # %mul_5 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div, %sub_1), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %view_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_2, 1e-05), kwargs = {}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_1,), kwargs = {}) # %mul_6 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_5, %log_1), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_4, %mul_6), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_2,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%mean,), kwargs = {}) triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0 = async_compile.triton('triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 2, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp19 = tl.load(in_ptr1 + (r0), None) tmp1 = 0.5 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 1.0 tmp8 = triton_helpers.maximum(tmp6, tmp7) tmp9 = tl.full([1], 1, tl.int32) tmp10 = tmp9 / tmp8 tmp11 = 256.0 tmp12 = tmp10 * tmp11 tmp13 = 1.05 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = 21.0 tmp16 = triton_helpers.minimum(tmp14, tmp15) tmp17 = tmp16 * tmp1 tmp18 = tmp17 * tmp3 tmp20 = 1e-05 tmp21 = tmp19 + tmp20 tmp22 = tl_math.log(tmp21) tmp23 = tmp18 * tmp22 tmp24 = tmp16 - tmp7 tmp25 = tmp17 / tmp24 tmp26 = tmp7 - tmp3 tmp27 = tmp25 * tmp26 tmp28 = tmp7 - tmp19 tmp29 = tmp28 + tmp20 tmp30 = tl_math.log(tmp29) tmp31 = tmp27 * tmp30 tmp32 = tmp23 + tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp36 = tmp35 / tmp11 tmp37 = -tmp36 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp37, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((), (), torch.float32) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [gt, pmask, sum_1, num_positive, ratio, clamp_1, ratio_1, coef_1, mul_2, add, log, mul_3, mul, sub, coef_0, sub_1, mul_4, sub_2, add_1, log_1, mul_5, loss, mean, loss_1], Original ATen: [aten.gt, aten._to_copy, aten.sum, aten.clamp, aten.reciprocal, aten.mul, aten.add, aten.log, aten.sub, aten.div, aten.rsub, aten.mean, aten.neg] stream0 = get_raw_stream(0) triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0.run(buf3, arg1_1, arg0_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn def binary_logistic_regression_loss(reg_score, label, threshold=0.5, ratio_range=(1.05, 21), eps=1e-05): """Binary Logistic Regression Loss.""" label = label.view(-1) reg_score = reg_score.contiguous().view(-1) pmask = (label > threshold).float() num_positive = max(torch.sum(pmask), 1) num_entries = len(label) ratio = num_entries / num_positive ratio = min(max(ratio, ratio_range[0]), ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss = coef_1 * pmask * torch.log(reg_score + eps) + coef_0 * (1.0 - pmask ) * torch.log(1.0 - reg_score + eps) loss = -torch.mean(loss) return loss class BinaryLogisticRegressionLoss(nn.Module): """Binary Logistic Regression Loss. It will calculate binary logistic regression loss given reg_score and label. """ def forward(self, reg_score, label, threshold=0.5, ratio_range=(1.05, 21), eps=1e-05): """Calculate Binary Logistic Regression Loss. Args: reg_score (torch.Tensor): Predicted score by model. label (torch.Tensor): Groundtruth labels. threshold (float): Threshold for positive instances. Default: 0.5. ratio_range (tuple): Lower bound and upper bound for ratio. Default: (1.05, 21) eps (float): Epsilon for small value. Default: 1e-5. Returns: torch.Tensor: Returned binary logistic loss. """ return binary_logistic_regression_loss(reg_score, label, threshold, ratio_range, eps) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0( in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp19 = tl.load(in_ptr1 + r0, None) tmp1 = 0.5 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 1.0 tmp8 = triton_helpers.maximum(tmp6, tmp7) tmp9 = tl.full([1], 1, tl.int32) tmp10 = tmp9 / tmp8 tmp11 = 256.0 tmp12 = tmp10 * tmp11 tmp13 = 1.05 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = 21.0 tmp16 = triton_helpers.minimum(tmp14, tmp15) tmp17 = tmp16 * tmp1 tmp18 = tmp17 * tmp3 tmp20 = 1e-05 tmp21 = tmp19 + tmp20 tmp22 = tl_math.log(tmp21) tmp23 = tmp18 * tmp22 tmp24 = tmp16 - tmp7 tmp25 = tmp17 / tmp24 tmp26 = tmp7 - tmp3 tmp27 = tmp25 * tmp26 tmp28 = tmp7 - tmp19 tmp29 = tmp28 + tmp20 tmp30 = tl_math.log(tmp29) tmp31 = tmp27 * tmp30 tmp32 = tmp23 + tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp36 = tmp35 / tmp11 tmp37 = -tmp36 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp37, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf2 = empty_strided_cuda((), (), torch.float32) buf3 = buf2 del buf2 get_raw_stream(0) triton_per_fused__to_copy_add_clamp_div_gt_log_mean_mul_neg_reciprocal_rsub_sub_sum_0[ grid(1)](buf3, arg1_1, arg0_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf3, def binary_logistic_regression_loss(reg_score, label, threshold=0.5, ratio_range=(1.05, 21), eps=1e-05): """Binary Logistic Regression Loss.""" label = label.view(-1) reg_score = reg_score.contiguous().view(-1) pmask = (label > threshold).float() num_positive = max(torch.sum(pmask), 1) num_entries = len(label) ratio = num_entries / num_positive ratio = min(max(ratio, ratio_range[0]), ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss = coef_1 * pmask * torch.log(reg_score + eps) + coef_0 * (1.0 - pmask ) * torch.log(1.0 - reg_score + eps) loss = -torch.mean(loss) return loss class BinaryLogisticRegressionLossNew(nn.Module): """Binary Logistic Regression Loss. It will calculate binary logistic regression loss given reg_score and label. """ def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Alexis-Fab/mmaction2
BinaryLogisticRegressionLoss
false
11,210
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
CrossEntropyLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/td/ctdj5kazgiki6gdaadhqtp2x7tq2ee5ey5hqqdcoqmp54jyhf74f.py # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # loss => amax, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) triton_poi_fused__log_softmax_0 = async_compile.triton('triton_poi_fused__log_softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + (x3), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/57/c572rujtphach6djeurlg5nv3rt5e37ifechqsganatcxbygg5m5.py # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] # Source node to ATen node mapping: # loss => exp, log, mul, neg, sub_1, sum_1, sum_2 # loss_1 => mean # loss_cls => mul_1 # Graph fragment: # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, %arg1_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_2,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%neg,), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused__log_softmax_mean_mul_neg_sum_1 = async_compile.triton('triton_per_fused__log_softmax_mean_mul_neg_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_mean_mul_neg_sum_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = (rindex // 16) tmp0 = tl.load(in_ptr0 + (r0 + (64*r1)), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + (64*r1)), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + (64*r1)), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + (64*r1)), None) tmp13 = tl.load(in_ptr1 + (r0 + (64*r1)), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + (64*r1)), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + (64*r1)), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + (64*r1)), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tmp31 = 64.0 tmp32 = tmp30 / tmp31 tmp33 = 1.0 tmp34 = tmp32 * tmp33 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp34, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [loss], Original ATen: [aten._log_softmax] stream0 = get_raw_stream(0) triton_poi_fused__log_softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [loss, loss_1, loss_cls], Original ATen: [aten._log_softmax, aten.mul, aten.sum, aten.neg, aten.mean] triton_per_fused__log_softmax_mean_mul_neg_sum_1.run(buf2, buf0, arg1_1, 1, 64, grid=grid(1), stream=stream0) del arg1_1 del buf0 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1, as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 if label_weights is None: bin_label_weights = None else: bin_label_weights = label_weights.view(-1, 1).expand(label_weights. size(0), label_channels) return bin_labels, bin_label_weights def binary_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None): if pred.dim() != label.dim(): label, weight = _expand_binary_labels(label, weight, pred.size(-1)) if weight is not None: weight = weight.float() loss = F.binary_cross_entropy_with_logits(pred, label.float(), weight, reduction='none') loss = weight_reduce_loss(loss, reduction=reduction, avg_factor=avg_factor) return loss def cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None): loss = F.cross_entropy(pred, label, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss def mask_cross_entropy(pred, target, label, reduction='mean', avg_factor=None): assert reduction == 'mean' and avg_factor is None num_rois = pred.size()[0] inds = torch.arange(0, num_rois, dtype=torch.long, device=pred.device) pred_slice = pred[inds, label].squeeze(1) return F.binary_cross_entropy_with_logits(pred_slice, target, reduction ='mean')[None] class CrossEntropyLoss(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', loss_weight=1.0): super(CrossEntropyLoss, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight if self.use_sigmoid: self.cls_criterion = binary_cross_entropy elif self.use_mask: self.cls_criterion = mask_cross_entropy else: self.cls_criterion = cross_entropy def forward(self, cls_score, label, weight=None, avg_factor=None, reduction_override=None, **kwargs): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_cls = self.loss_weight * self.cls_criterion(cls_score, label, weight, reduction=reduction, avg_factor=avg_factor, **kwargs) return loss_cls def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__log_softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tl.store(out_ptr0 + x3, tmp8, xmask) @triton.jit def triton_per_fused__log_softmax_mean_mul_neg_sum_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r0 + 64 * r1), None) tmp2 = tl.load(in_ptr0 + (16 + r0 + 64 * r1), None) tmp5 = tl.load(in_ptr0 + (32 + r0 + 64 * r1), None) tmp8 = tl.load(in_ptr0 + (48 + r0 + 64 * r1), None) tmp13 = tl.load(in_ptr1 + (r0 + 64 * r1), None) tmp16 = tl.load(in_ptr1 + (16 + r0 + 64 * r1), None) tmp20 = tl.load(in_ptr1 + (32 + r0 + 64 * r1), None) tmp24 = tl.load(in_ptr1 + (48 + r0 + 64 * r1), None) tmp1 = tl_math.exp(tmp0) tmp3 = tl_math.exp(tmp2) tmp4 = tmp1 + tmp3 tmp6 = tl_math.exp(tmp5) tmp7 = tmp4 + tmp6 tmp9 = tl_math.exp(tmp8) tmp10 = tmp7 + tmp9 tmp11 = tl_math.log(tmp10) tmp12 = tmp0 - tmp11 tmp14 = tmp12 * tmp13 tmp15 = tmp2 - tmp11 tmp17 = tmp15 * tmp16 tmp18 = tmp14 + tmp17 tmp19 = tmp5 - tmp11 tmp21 = tmp19 * tmp20 tmp22 = tmp18 + tmp21 tmp23 = tmp8 - tmp11 tmp25 = tmp23 * tmp24 tmp26 = tmp22 + tmp25 tmp27 = -tmp26 tmp28 = tl.broadcast_to(tmp27, [XBLOCK, RBLOCK]) tmp30 = tl.sum(tmp28, 1)[:, None] tmp31 = 64.0 tmp32 = tmp30 / tmp31 tmp33 = 1.0 tmp34 = tmp32 * tmp33 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp34, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__log_softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 triton_per_fused__log_softmax_mean_mul_neg_sum_1[grid(1)](buf2, buf0, arg1_1, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg1_1 del buf0 return buf2, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def _expand_binary_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero(labels >= 1, as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds] - 1] = 1 if label_weights is None: bin_label_weights = None else: bin_label_weights = label_weights.view(-1, 1).expand(label_weights. size(0), label_channels) return bin_labels, bin_label_weights def binary_cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None): if pred.dim() != label.dim(): label, weight = _expand_binary_labels(label, weight, pred.size(-1)) if weight is not None: weight = weight.float() loss = F.binary_cross_entropy_with_logits(pred, label.float(), weight, reduction='none') loss = weight_reduce_loss(loss, reduction=reduction, avg_factor=avg_factor) return loss def cross_entropy(pred, label, weight=None, reduction='mean', avg_factor=None): loss = F.cross_entropy(pred, label, reduction='none') if weight is not None: weight = weight.float() loss = weight_reduce_loss(loss, weight=weight, reduction=reduction, avg_factor=avg_factor) return loss def mask_cross_entropy(pred, target, label, reduction='mean', avg_factor=None): assert reduction == 'mean' and avg_factor is None num_rois = pred.size()[0] inds = torch.arange(0, num_rois, dtype=torch.long, device=pred.device) pred_slice = pred[inds, label].squeeze(1) return F.binary_cross_entropy_with_logits(pred_slice, target, reduction ='mean')[None] class CrossEntropyLossNew(nn.Module): def __init__(self, use_sigmoid=False, use_mask=False, reduction='mean', loss_weight=1.0): super(CrossEntropyLossNew, self).__init__() assert use_sigmoid is False or use_mask is False self.use_sigmoid = use_sigmoid self.use_mask = use_mask self.reduction = reduction self.loss_weight = loss_weight if self.use_sigmoid: self.cls_criterion = binary_cross_entropy elif self.use_mask: self.cls_criterion = mask_cross_entropy else: self.cls_criterion = cross_entropy def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AtticusJohnson/mmdetection
CrossEntropyLoss
false
11,211
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
OutConv
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/pw/cpw5jgywzg5ntkknxkt5orxsrrr5zq7a6eoteboi3ba7zrcxj2p7.py # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] # Source node to ATen node mapping: # conv2d => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_0 = async_compile.triton('triton_poi_fused_convolution_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] stream0 = get_raw_stream(0) triton_poi_fused_convolution_0.run(buf1, primals_2, 256, grid=grid(256), stream=stream0) del primals_2 return (buf1, primals_1, primals_3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class OutConv(nn.Module): def __init__(self, in_channels, out_channels): super(OutConv, self).__init__() self.conv = nn.Conv2d(in_channels, out_channels, kernel_size=1) def forward(self, x): return self.conv(x) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_0[grid(256)](buf1, primals_2, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 return buf1, primals_1, primals_3 class OutConvNew(nn.Module): def __init__(self, in_channels, out_channels): super(OutConvNew, self).__init__() self.conv = nn.Conv2d(in_channels, out_channels, kernel_size=1) def forward(self, input_0): primals_1 = self.conv.weight primals_2 = self.conv.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AtharvBhat/EstimateDepth
OutConv
false
11,212
[ "MIT" ]
0
f440a9e8372ca2346cae8634f396bac06d004bf7
https://github.com/AtharvBhat/EstimateDepth/tree/f440a9e8372ca2346cae8634f396bac06d004bf7
OffsetNet
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/3u/c3u6zmp5plplv5tjyzlxet5sgcucpeizysbhi7xphxjhdc6kmodq.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_1, %primals_2, %primals_3, [1], [1], [1], False, [0], 1), kwargs = {}) triton_poi_fused_convolution_0 = async_compile.triton('triton_poi_fused_convolution_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tl.store(in_out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/5b/c5br3r4gpi7zzaygqfdgcqeerwiekt2d2t2wkw4sj54lam6radgq.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_2 => relu # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_5), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_relu_1 = async_compile.triton('triton_poi_fused_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/qs/cqsk6a76egdyzr4pbwvfkopx7r76mm6pjq7rxndgddfyegzfpbgy.py # Topologically Sorted Source Nodes: [sigmoid, sub, x_5], Original ATen: [aten.sigmoid, aten.sub, aten.mul] # Source node to ATen node mapping: # sigmoid => sigmoid # sub => sub # x_5 => mul # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_1,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sigmoid, 0.5), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, 4), kwargs = {}) triton_poi_fused_mul_sigmoid_sub_2 = async_compile.triton('triton_poi_fused_mul_sigmoid_sub_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sigmoid_sub_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sigmoid_sub_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.sigmoid(tmp0) tmp2 = 0.5 tmp3 = tmp1 - tmp2 tmp4 = 4.0 tmp5 = tmp3 * tmp4 tl.store(out_ptr0 + (x0), tmp5, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (1, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (1, ), (1, )) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (1, 4), (4, 1)) assert_size_stride(primals_7, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=(0,), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 4), (4, 4, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] stream0 = get_raw_stream(0) triton_poi_fused_convolution_0.run(buf1, primals_3, 16, grid=grid(16), stream=stream0) del primals_3 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (4, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu] triton_poi_fused_relu_1.run(buf3, primals_5, 16, grid=grid(16), stream=stream0) del primals_5 buf5 = empty_strided_cuda((4, 1), (1, 1), torch.float32) # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, buf3, reinterpret_tensor(primals_6, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf5) del primals_7 buf6 = empty_strided_cuda((4, 1, 1), (1, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [sigmoid, sub, x_5], Original ATen: [aten.sigmoid, aten.sub, aten.mul] triton_poi_fused_mul_sigmoid_sub_2.run(buf5, buf6, 4, grid=grid(4), stream=stream0) return (buf6, primals_1, primals_2, reinterpret_tensor(buf1, (4, 4), (4, 1), 0), buf3, buf5, primals_6, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 4, 3), (12, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class OffsetNet(nn.Module): """OffsetNet in Temporal interlace module. The OffsetNet consists of one convolution layer and two fc layers with a relu activation following with a sigmoid function. Following the convolution layer, two fc layers and relu are applied to the output. Then, apply the sigmoid function with a multiply factor and a minus 0.5 to transform the output to (-4, 4). Args: in_channels (int): Channel num of input features. groups (int): Number of groups for fc layer outputs. num_segments (int): Number of frame segments. """ def __init__(self, in_channels, groups, num_segments): super().__init__() self.sigmoid = nn.Sigmoid() kernel_size = 3 padding = 1 self.conv = nn.Conv1d(in_channels, 1, kernel_size, padding=padding) self.fc1 = nn.Linear(num_segments, num_segments) self.relu = nn.ReLU() self.fc2 = nn.Linear(num_segments, groups) self.init_weights() def init_weights(self): """Initiate the parameters either from existing checkpoint or from scratch.""" self.fc2.bias.data[...] = 0.5108 def forward(self, x): """Defines the computation performed at every call. Args: x (torch.Tensor): The input data. Returns: torch.Tensor: The output of the module. """ n, _, t = x.shape x = self.conv(x) x = x.view(n, t) x = self.relu(self.fc1(x)) x = self.fc2(x) x = x.view(n, 1, -1) x = 4 * (self.sigmoid(x) - 0.5) return x def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'groups': 1, 'num_segments': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tl.store(in_out_ptr0 + x0, tmp3, xmask) @triton.jit def triton_poi_fused_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused_mul_sigmoid_sub_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.sigmoid(tmp0) tmp2 = 0.5 tmp3 = tmp1 - tmp2 tmp4 = 4.0 tmp5 = tmp3 * tmp4 tl.store(out_ptr0 + x0, tmp5, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (1, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (1,), (1,)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (1, 4), (4, 1)) assert_size_stride(primals_7, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=( 0,), groups=1, bias=None) assert_size_stride(buf0, (4, 1, 4), (4, 4, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_0[grid(16)](buf1, primals_3, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_3 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (4, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = buf2 del buf2 triton_poi_fused_relu_1[grid(16)](buf3, primals_5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_5 buf5 = empty_strided_cuda((4, 1), (1, 1), torch.float32) extern_kernels.addmm(primals_7, buf3, reinterpret_tensor(primals_6, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf5) del primals_7 buf6 = empty_strided_cuda((4, 1, 1), (1, 1, 1), torch.float32) triton_poi_fused_mul_sigmoid_sub_2[grid(4)](buf5, buf6, 4, XBLOCK=4, num_warps=1, num_stages=1) return buf6, primals_1, primals_2, reinterpret_tensor(buf1, (4, 4), (4, 1), 0), buf3, buf5, primals_6, primals_4 class OffsetNetNew(nn.Module): """OffsetNet in Temporal interlace module. The OffsetNet consists of one convolution layer and two fc layers with a relu activation following with a sigmoid function. Following the convolution layer, two fc layers and relu are applied to the output. Then, apply the sigmoid function with a multiply factor and a minus 0.5 to transform the output to (-4, 4). Args: in_channels (int): Channel num of input features. groups (int): Number of groups for fc layer outputs. num_segments (int): Number of frame segments. """ def __init__(self, in_channels, groups, num_segments): super().__init__() self.sigmoid = nn.Sigmoid() kernel_size = 3 padding = 1 self.conv = nn.Conv1d(in_channels, 1, kernel_size, padding=padding) self.fc1 = nn.Linear(num_segments, num_segments) self.relu = nn.ReLU() self.fc2 = nn.Linear(num_segments, groups) self.init_weights() def init_weights(self): """Initiate the parameters either from existing checkpoint or from scratch.""" self.fc2.bias.data[...] = 0.5108 def forward(self, input_0): primals_2 = self.conv.weight primals_3 = self.conv.bias primals_4 = self.fc1.weight primals_5 = self.fc1.bias primals_6 = self.fc2.weight primals_7 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
Alexis-Fab/mmaction2
OffsetNet
false
11,213
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
PFF
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/v7/cv7zazascu4rpkkwoxbiwk6c2le2e6wshdhae73bmaoapelvwguv.py # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # relu => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ji/cji7mw45fbdoanjc5e6qu3e2bf5d6jnnjabskl6onjlk7uv7oqud.py # Topologically Sorted Source Nodes: [add, layer_norm], Original ATen: [aten.add, aten.native_layer_norm] # Source node to ATen node mapping: # add => add # layer_norm => var_mean # Graph fragment: # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_3, %primals_3), kwargs = {}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%add, [3]), kwargs = {correction: 0, keepdim: True}) triton_poi_fused_add_native_layer_norm_1 = async_compile.triton('triton_poi_fused_add_native_layer_norm_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_native_layer_norm_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_native_layer_norm_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (4*x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (4*x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr1 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 + tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 + tmp12 tmp14 = tmp10 + tmp13 tmp15 = 4.0 tmp16 = tmp14 / tmp15 tmp17 = tmp2 - tmp16 tmp18 = tmp17 * tmp17 tmp19 = tmp5 - tmp16 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp22 = tmp9 - tmp16 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp25 = tmp13 - tmp16 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = tmp27 / tmp15 tl.store(out_ptr0 + (x0), tmp16, xmask) tl.store(out_ptr1 + (x0), tmp28, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xy/cxyvzp6lij7d3yqq2ut3vi6guk7xnzb7qwqb66dthlly44r65vfk.py # Topologically Sorted Source Nodes: [add, layer_norm], Original ATen: [aten.add, aten.native_layer_norm] # Source node to ATen node mapping: # add => add # layer_norm => add_1, add_2, mul, mul_1, rsqrt, sub # Graph fragment: # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_3, %primals_3), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=1] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add_1,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add, %getitem_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %rsqrt), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %primals_6), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, %primals_7), kwargs = {}) triton_poi_fused_add_native_layer_norm_2 = async_compile.triton('triton_poi_fused_add_native_layer_norm_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_native_layer_norm_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_native_layer_norm_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x2), xmask) tmp3 = tl.load(in_ptr2 + (x1), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr3 + (x1), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr5 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp4 = tmp2 - tmp3 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp4 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + (x2), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (16, 4), (4, 1)) assert_size_stride(primals_2, (16, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 16), (16, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, ), (1, )) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 16), (16, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 16), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 16), (256, 64, 16, 1), 0); del buf0 # reuse buf6 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch.bool) # Topologically Sorted Source Nodes: [relu], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, primals_2, buf6, 1024, grid=grid(1024), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 16), (16, 1), 0), reinterpret_tensor(primals_4, (16, 4), (1, 16), 0), alpha=1, beta=1, out=buf2) del primals_5 buf3 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) # Topologically Sorted Source Nodes: [add, layer_norm], Original ATen: [aten.add, aten.native_layer_norm] triton_poi_fused_add_native_layer_norm_1.run(buf2, primals_3, buf3, buf4, 64, grid=grid(64), stream=stream0) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, layer_norm], Original ATen: [aten.add, aten.native_layer_norm] triton_poi_fused_add_native_layer_norm_2.run(buf2, primals_3, buf3, buf4, primals_6, primals_7, buf5, 256, grid=grid(256), stream=stream0) del buf3 del buf4 del primals_7 return (buf5, primals_3, primals_6, reinterpret_tensor(buf1, (64, 16), (16, 1), 0), buf2, primals_4, buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((16, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 16), (16, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class PFF(nn.Module): def __init__(self, model_dimension, width_mult=4): super().__init__() self.linear1 = nn.Linear(model_dimension, width_mult * model_dimension) self.linear2 = nn.Linear(width_mult * model_dimension, model_dimension) self.norm = nn.LayerNorm(model_dimension) self.dropout = nn.Dropout(p=0.2) self.relu = nn.ReLU() def forward(self, representations_batch): return self.norm(self.linear2(self.dropout(self.relu(self.linear1( representations_batch)))) + representations_batch) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'model_dimension': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) @triton.jit def triton_poi_fused_add_native_layer_norm_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 4 * x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + 4 * x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x0), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * x0), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (2 + 4 * x0), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + 4 * x0), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp12 = tl.load(in_ptr1 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 + tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 + tmp12 tmp14 = tmp10 + tmp13 tmp15 = 4.0 tmp16 = tmp14 / tmp15 tmp17 = tmp2 - tmp16 tmp18 = tmp17 * tmp17 tmp19 = tmp5 - tmp16 tmp20 = tmp19 * tmp19 tmp21 = tmp18 + tmp20 tmp22 = tmp9 - tmp16 tmp23 = tmp22 * tmp22 tmp24 = tmp21 + tmp23 tmp25 = tmp13 - tmp16 tmp26 = tmp25 * tmp25 tmp27 = tmp24 + tmp26 tmp28 = tmp27 / tmp15 tl.store(out_ptr0 + x0, tmp16, xmask) tl.store(out_ptr1 + x0, tmp28, xmask) @triton.jit def triton_poi_fused_add_native_layer_norm_2(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x2, xmask) tmp3 = tl.load(in_ptr2 + x1, xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr3 + x1, xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr5 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp4 = tmp2 - tmp3 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp4 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + x2, tmp13, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (16, 4), (4, 1)) assert_size_stride(primals_2, (16,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 16), (16, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4,), (1,)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 16), (16, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 16), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 16), (256, 64, 16, 1), 0) del buf0 buf6 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(1024)](buf1, primals_2, buf6, 1024, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 16), (16, 1), 0), reinterpret_tensor(primals_4, (16, 4), (1, 16), 0), alpha=1, beta=1, out=buf2) del primals_5 buf3 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) triton_poi_fused_add_native_layer_norm_1[grid(64)](buf2, primals_3, buf3, buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_native_layer_norm_2[grid(256)](buf2, primals_3, buf3, buf4, primals_6, primals_7, buf5, 256, XBLOCK=256, num_warps=4, num_stages=1) del buf3 del buf4 del primals_7 return buf5, primals_3, primals_6, reinterpret_tensor(buf1, (64, 16), ( 16, 1), 0), buf2, primals_4, buf6 class PFFNew(nn.Module): def __init__(self, model_dimension, width_mult=4): super().__init__() self.linear1 = nn.Linear(model_dimension, width_mult * model_dimension) self.linear2 = nn.Linear(width_mult * model_dimension, model_dimension) self.norm = nn.LayerNorm(model_dimension) self.dropout = nn.Dropout(p=0.2) self.relu = nn.ReLU() def forward(self, input_0): primals_1 = self.linear1.weight primals_2 = self.linear1.bias primals_4 = self.linear2.weight primals_5 = self.linear2.bias primals_6 = self.norm.weight primals_7 = self.norm.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
AmitNikhade/MyTransformer
PFF
false
11,214
[ "Apache-2.0" ]
0
d717ee1db59ba60bb6b3f1b8a705f6ebed6df1e5
https://github.com/AmitNikhade/MyTransformer/tree/d717ee1db59ba60bb6b3f1b8a705f6ebed6df1e5
BertLayerNorm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/dg/cdgw6x7nju4bzp2wyuwgeanbco7zcjis6yiusovvnpz6zw3yjd3l.py # Topologically Sorted Source Nodes: [u, sub], Original ATen: [aten.mean, aten.sub] # Source node to ATen node mapping: # sub => sub # u => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_1, %mean), kwargs = {}) triton_poi_fused_mean_sub_0 = async_compile.triton('triton_poi_fused_mean_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = 4.0 tmp9 = tmp7 / tmp8 tmp10 = tmp0 - tmp9 tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/k3/ck3awyjmlyoxvkizg2opx6vtglv26uioox7nr33aabc2cmbcxgpr.py # Topologically Sorted Source Nodes: [pow_1, s, add, sqrt, x, mul, add_1], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div, aten.mul] # Source node to ATen node mapping: # add => add # add_1 => add_1 # mul => mul # pow_1 => pow_1 # s => mean_1 # sqrt => sqrt # x => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mean_1 : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%pow_1, [-1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean_1, 1e-12), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %sqrt), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %div), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %primals_3), kwargs = {}) triton_poi_fused_add_div_mean_mul_pow_sqrt_1 = async_compile.triton('triton_poi_fused_add_div_mean_mul_pow_sqrt_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mean_mul_pow_sqrt_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 7, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mean_mul_pow_sqrt_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x2), xmask) tmp2 = tl.load(in_ptr1 + (4*x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = 4.0 tmp14 = tmp12 / tmp13 tmp15 = 1e-12 tmp16 = tmp14 + tmp15 tmp17 = libdevice.sqrt(tmp16) tmp18 = tmp1 / tmp17 tmp19 = tmp0 * tmp18 tmp21 = tmp19 + tmp20 tl.store(out_ptr0 + (x2), tmp21, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [u, sub], Original ATen: [aten.mean, aten.sub] stream0 = get_raw_stream(0) triton_poi_fused_mean_sub_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, s, add, sqrt, x, mul, add_1], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div, aten.mul] triton_poi_fused_add_div_mean_mul_pow_sqrt_1.run(primals_2, buf0, primals_3, buf1, 256, grid=grid(256), stream=stream0) del buf0 del primals_2 del primals_3 return (buf1, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class BertLayerNorm(nn.Module): def __init__(self, hidden_size, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super(BertLayerNorm, self).__init__() self.weight = nn.Parameter(torch.ones(hidden_size)) self.bias = nn.Parameter(torch.zeros(hidden_size)) self.variance_epsilon = eps def forward(self, x): u = x.mean(-1, keepdim=True) s = (x - u).pow(2).mean(-1, keepdim=True) x = (x - u) / torch.sqrt(s + self.variance_epsilon) return self.weight * x + self.bias def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_size': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mean_sub_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = 4.0 tmp9 = tmp7 / tmp8 tmp10 = tmp0 - tmp9 tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_add_div_mean_mul_pow_sqrt_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x2, xmask) tmp2 = tl.load(in_ptr1 + 4 * x1, xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (3 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp20 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = 4.0 tmp14 = tmp12 / tmp13 tmp15 = 1e-12 tmp16 = tmp14 + tmp15 tmp17 = libdevice.sqrt(tmp16) tmp18 = tmp1 / tmp17 tmp19 = tmp0 * tmp18 tmp21 = tmp19 + tmp20 tl.store(out_ptr0 + x2, tmp21, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mean_sub_0[grid(256)](primals_1, buf0, 256, XBLOCK =128, num_warps=4, num_stages=1) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_div_mean_mul_pow_sqrt_1[grid(256)](primals_2, buf0, primals_3, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf0 del primals_2 del primals_3 return buf1, primals_1 class BertLayerNormNew(nn.Module): def __init__(self, hidden_size, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super(BertLayerNormNew, self).__init__() self.weight = nn.Parameter(torch.ones(hidden_size)) self.bias = nn.Parameter(torch.zeros(hidden_size)) self.variance_epsilon = eps def forward(self, input_0): primals_2 = self.weight primals_3 = self.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AterhiM/BERT-E2E-ABSA
BertLayerNorm
false
11,215
[ "Apache-2.0" ]
0
9266a851fd1d7164eb0fc422d3f5eb02e474080b
https://github.com/AterhiM/BERT-E2E-ABSA/tree/9266a851fd1d7164eb0fc422d3f5eb02e474080b
GHMR
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/oz/cozsertrqgjrqyur62xx2dwoox3tbac6et7fykm33ltnl7jxfmfm.py # Topologically Sorted Source Nodes: [sum_1, valid], Original ATen: [aten.sum, aten.gt] # Source node to ATen node mapping: # sum_1 => sum_1 # valid => gt # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%arg2_1,), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg2_1, 0), kwargs = {}) triton_per_fused_gt_sum_0 = async_compile.triton('triton_per_fused_gt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_gt_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.broadcast_to(tmp0, [RBLOCK]) tmp3 = triton_helpers.promote_to_tensor(tl.sum(tmp1, 0)) tmp4 = 0.0 tmp5 = tmp0 > tmp4 tl.store(out_ptr1 + (tl.broadcast_to(r0, [RBLOCK])), tmp5, None) tl.store(out_ptr0 + (tl.full([1], 0, tl.int32)), tmp3, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/2a/c2ayatl72atxz7llof44xg6xfcod4w34uyxjsxirgoqzc6bhc5er.py # Topologically Sorted Source Nodes: [diff, mul, add, sqrt, loss, mul_1, add_1, sqrt_1, truediv, abs_1], Original ATen: [aten.sub, aten.mul, aten.add, aten.sqrt, aten.div, aten.abs] # Source node to ATen node mapping: # abs_1 => abs_1 # add => add # add_1 => add_1 # diff => sub # loss => sub_1 # mul => mul # mul_1 => mul_1 # sqrt => sqrt # sqrt_1 => sqrt_1 # truediv => div # Graph fragment: # %sub : [num_users=3] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %sub), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 0.0004), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sqrt, 0.02), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %sub), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, 0.0004), kwargs = {}) # %sqrt_1 : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add_1,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %sqrt_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%div,), kwargs = {}) triton_poi_fused_abs_add_div_mul_sqrt_sub_1 = async_compile.triton('triton_poi_fused_abs_add_div_mul_sqrt_sub_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_abs_add_div_mul_sqrt_sub_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_abs_add_div_mul_sqrt_sub_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = 0.0004 tmp5 = tmp3 + tmp4 tmp6 = libdevice.sqrt(tmp5) tmp7 = 0.02 tmp8 = tmp6 - tmp7 tmp9 = tmp2 / tmp6 tmp10 = tl_math.abs(tmp9) tl.store(out_ptr0 + (x0), tmp8, xmask) tl.store(out_ptr1 + (x0), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/zd/czdhovzy3i75dbb4lrrvs36jdqekoz77qi3q3aloxdafcrzuwdjh.py # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] # Source node to ATen node mapping: # weights => full_default # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) triton_poi_fused_zeros_like_2 = async_compile.triton('triton_poi_fused_zeros_like_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_zeros_like_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_zeros_like_2(out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + (x0), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [sum_1, valid], Original ATen: [aten.sum, aten.gt] stream0 = get_raw_stream(0) triton_per_fused_gt_sum_0.run(arg2_1, buf0, buf4, 1, 256, grid=grid(1), stream=stream0) del arg2_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [diff, mul, add, sqrt, loss, mul_1, add_1, sqrt_1, truediv, abs_1], Original ATen: [aten.sub, aten.mul, aten.add, aten.sqrt, aten.div, aten.abs] triton_poi_fused_abs_add_div_mul_sqrt_sub_1.run(arg0_1, arg1_1, buf1, buf2, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] triton_poi_fused_zeros_like_2.run(buf3, 256, grid=grid(256), stream=stream0) return (buf0, buf1, buf2, buf3, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class GHMR(nn.Module): """GHM Regression Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector" https://arxiv.org/abs/1811.05181 Args: mu (float): The parameter for the Authentic Smooth L1 loss. bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. loss_weight (float): The weight of the total GHM-R loss. """ def __init__(self, mu=0.02, bins=10, momentum=0, loss_weight=1.0): super(GHMR, self).__init__() self.mu = mu self.bins = bins edges = torch.arange(bins + 1).float() / bins self.register_buffer('edges', edges) self.edges[-1] = 1000.0 self.momentum = momentum if momentum > 0: acc_sum = torch.zeros(bins) self.register_buffer('acc_sum', acc_sum) self.loss_weight = loss_weight def forward(self, pred, target, label_weight, avg_factor=None): """Calculate the GHM-R loss. Args: pred (float tensor of size [batch_num, 4 (* class_num)]): The prediction of box regression layer. Channel number can be 4 or 4 * class_num depending on whether it is class-agnostic. target (float tensor of size [batch_num, 4 (* class_num)]): The target regression values with the same size of pred. label_weight (float tensor of size [batch_num, 4 (* class_num)]): The weight of each sample, 0 if ignored. Returns: The gradient harmonized loss. """ mu = self.mu edges = self.edges mmt = self.momentum diff = pred - target loss = torch.sqrt(diff * diff + mu * mu) - mu g = torch.abs(diff / torch.sqrt(mu * mu + diff * diff)).detach() weights = torch.zeros_like(g) valid = label_weight > 0 tot = max(label_weight.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: n += 1 if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin if n > 0: weights /= n loss = loss * weights loss = loss.sum() / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.broadcast_to(tmp0, [RBLOCK]) tmp3 = triton_helpers.promote_to_tensor(tl.sum(tmp1, 0)) tmp4 = 0.0 tmp5 = tmp0 > tmp4 tl.store(out_ptr1 + tl.broadcast_to(r0, [RBLOCK]), tmp5, None) tl.store(out_ptr0 + tl.full([1], 0, tl.int32), tmp3, None) @triton.jit def triton_poi_fused_abs_add_div_mul_sqrt_sub_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = 0.0004 tmp5 = tmp3 + tmp4 tmp6 = libdevice.sqrt(tmp5) tmp7 = 0.02 tmp8 = tmp6 - tmp7 tmp9 = tmp2 / tmp6 tmp10 = tl_math.abs(tmp9) tl.store(out_ptr0 + x0, tmp8, xmask) tl.store(out_ptr1 + x0, tmp10, xmask) @triton.jit def triton_poi_fused_zeros_like_2(out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + x0, tmp0, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_per_fused_gt_sum_0[grid(1)](arg2_1, buf0, buf4, 1, 256, num_warps=2, num_stages=1) del arg2_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_abs_add_div_mul_sqrt_sub_1[grid(256)](arg0_1, arg1_1, buf1, buf2, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 del arg1_1 buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_zeros_like_2[grid(256)](buf3, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf0, buf1, buf2, buf3, buf4 class GHMRNew(nn.Module): """GHM Regression Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector" https://arxiv.org/abs/1811.05181 Args: mu (float): The parameter for the Authentic Smooth L1 loss. bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. loss_weight (float): The weight of the total GHM-R loss. """ def __init__(self, mu=0.02, bins=10, momentum=0, loss_weight=1.0): super(GHMRNew, self).__init__() self.mu = mu self.bins = bins edges = torch.arange(bins + 1).float() / bins self.register_buffer('edges', edges) self.edges[-1] = 1000.0 self.momentum = momentum if momentum > 0: acc_sum = torch.zeros(bins) self.register_buffer('acc_sum', acc_sum) self.loss_weight = loss_weight def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AtticusJohnson/mmdetection
GHMR
false
11,216
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
SEModule
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/tu/ctuej2j6f3oxr5p43q7juhagc3r3ncgs2ikvxemutunlnxlnvl24.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] # Source node to ATen node mapping: # x => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-1, -2, -3], True), kwargs = {}) triton_per_fused_mean_0 = async_compile.triton('triton_per_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/cv/ccvicmhiupo7cb3dwu3rzvk4zvi24nzhtwz7a5c4ke3qpmz3ofpe.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x_2 => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%squeeze,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_1 = async_compile.triton('triton_poi_fused_relu_threshold_backward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask) tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x0), tmp4, xmask) tl.store(out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/az/cazousalzuqn73ciahz5izvogzu4ekcsktal4tthjvwjd3cqdayz.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%unsqueeze_1, %primals_4, %primals_5, [1, 1, 1], [0, 0, 0], [1, 1, 1], False, [0, 0, 0], 1), kwargs = {}) triton_poi_fused_convolution_2 = async_compile.triton('triton_poi_fused_convolution_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask) tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/72/c72kehajbo6zfhkuwjl3g6t24haqfzxumia5abs5c2hzebjb6ubo.py # Topologically Sorted Source Nodes: [x_4, mul], Original ATen: [aten.sigmoid, aten.mul] # Source node to ATen node mapping: # mul => mul # x_4 => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%squeeze_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, %sigmoid), kwargs = {}) triton_poi_fused_mul_sigmoid_3 = async_compile.triton('triton_poi_fused_mul_sigmoid_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sigmoid_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sigmoid_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (16, 4, 1, 1, 1), (4, 1, 1, 1, 1)) assert_size_stride(primals_3, (16, ), (1, )) assert_size_stride(primals_4, (4, 16, 1, 1, 1), (16, 1, 1, 1, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 1, 1), (1, 4, 4, 4), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_per_fused_mean_0.run(buf1, primals_1, 4, 64, grid=grid(4), stream=stream0) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(reinterpret_tensor(buf1, (1, 4, 1, 1, 1), (0, 1, 0, 0, 0), 0), primals_2, stride=(1, 1, 1), padding=(0, 0, 0), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf2, (1, 16, 1, 1, 1), (16, 1, 1, 1, 1)) buf3 = reinterpret_tensor(buf2, (16, 1, 1, 1), (1, 16, 16, 16), 0); del buf2 # reuse buf7 = empty_strided_cuda((16, 1, 1, 1), (1, 1, 1, 1), torch.bool) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_1.run(buf3, primals_3, buf7, 16, grid=grid(16), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(reinterpret_tensor(buf3, (1, 16, 1, 1, 1), (0, 1, 0, 0, 0), 0), primals_4, stride=(1, 1, 1), padding=(0, 0, 0), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf4, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] triton_poi_fused_convolution_2.run(buf5, primals_5, 4, grid=grid(4), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4, mul], Original ATen: [aten.sigmoid, aten.mul] triton_poi_fused_mul_sigmoid_3.run(primals_1, buf5, buf6, 256, grid=grid(256), stream=stream0) return (buf6, primals_1, primals_2, primals_4, reinterpret_tensor(buf1, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1), 0), reinterpret_tensor(buf3, (1, 16, 1, 1, 1), (16, 1, 1, 1, 1), 0), buf5, buf7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((16, 4, 1, 1, 1), (4, 1, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 16, 1, 1, 1), (16, 1, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SEModule(nn.Module): def __init__(self, channels, reduction): super().__init__() self.avg_pool = nn.AdaptiveAvgPool3d(1) self.bottleneck = self._round_width(channels, reduction) self.fc1 = nn.Conv3d(channels, self.bottleneck, kernel_size=1, padding=0) self.relu = nn.ReLU() self.fc2 = nn.Conv3d(self.bottleneck, channels, kernel_size=1, padding=0) self.sigmoid = nn.Sigmoid() @staticmethod def _round_width(width, multiplier, min_width=8, divisor=8): width *= multiplier min_width = min_width or divisor width_out = max(min_width, int(width + divisor / 2) // divisor * divisor) if width_out < 0.9 * width: width_out += divisor return int(width_out) def forward(self, x): module_input = x x = self.avg_pool(x) x = self.fc1(x) x = self.relu(x) x = self.fc2(x) x = self.sigmoid(x) return module_input * x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'channels': 4, 'reduction': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 64.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp6, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask) tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x0, tmp4, xmask) tl.store(out_ptr0 + x0, tmp6, xmask) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask) tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x0, tmp2, xmask) @triton.jit def triton_poi_fused_mul_sigmoid_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 64 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x2, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (16, 4, 1, 1, 1), (4, 1, 1, 1, 1)) assert_size_stride(primals_3, (16,), (1,)) assert_size_stride(primals_4, (4, 16, 1, 1, 1), (16, 1, 1, 1, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 1, 1), (1, 4, 4, 4), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_mean_0[grid(4)](buf1, primals_1, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) buf2 = extern_kernels.convolution(reinterpret_tensor(buf1, (1, 4, 1, 1, 1), (0, 1, 0, 0, 0), 0), primals_2, stride=(1, 1, 1), padding=(0, 0, 0), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf2, (1, 16, 1, 1, 1), (16, 1, 1, 1, 1)) buf3 = reinterpret_tensor(buf2, (16, 1, 1, 1), (1, 16, 16, 16), 0) del buf2 buf7 = empty_strided_cuda((16, 1, 1, 1), (1, 1, 1, 1), torch.bool) triton_poi_fused_relu_threshold_backward_1[grid(16)](buf3, primals_3, buf7, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_3 buf4 = extern_kernels.convolution(reinterpret_tensor(buf3, (1, 16, 1, 1, 1), (0, 1, 0, 0, 0), 0), primals_4, stride=(1, 1, 1), padding=(0, 0, 0), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf4, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_2[grid(4)](buf5, primals_5, 4, XBLOCK= 4, num_warps=1, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_mul_sigmoid_3[grid(256)](primals_1, buf5, buf6, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf6, primals_1, primals_2, primals_4, reinterpret_tensor(buf1, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1), 0), reinterpret_tensor(buf3, (1, 16, 1, 1, 1), (16, 1, 1, 1, 1), 0), buf5, buf7 class SEModuleNew(nn.Module): def __init__(self, channels, reduction): super().__init__() self.avg_pool = nn.AdaptiveAvgPool3d(1) self.bottleneck = self._round_width(channels, reduction) self.fc1 = nn.Conv3d(channels, self.bottleneck, kernel_size=1, padding=0) self.relu = nn.ReLU() self.fc2 = nn.Conv3d(self.bottleneck, channels, kernel_size=1, padding=0) self.sigmoid = nn.Sigmoid() @staticmethod def _round_width(width, multiplier, min_width=8, divisor=8): width *= multiplier min_width = min_width or divisor width_out = max(min_width, int(width + divisor / 2) // divisor * divisor) if width_out < 0.9 * width: width_out += divisor return int(width_out) def forward(self, input_0): primals_2 = self.fc1.weight primals_3 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Alexis-Fab/mmaction2
SEModule
false
11,217
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
GHMC
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/eu/ceuv7b3vtgnm54c77ljfgp5gdzt44um3527nmb7duufsy6ufr57k.py # Topologically Sorted Source Nodes: [valid, float_3, sum_1], Original ATen: [aten.gt, aten._to_copy, aten.sum] # Source node to ATen node mapping: # float_3 => convert_element_type # sum_1 => sum_1 # valid => gt # Graph fragment: # %gt : [num_users=2] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg2_1, 0), kwargs = {}) # %convert_element_type : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt, torch.float32), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type,), kwargs = {}) triton_per_fused__to_copy_gt_sum_0 = async_compile.triton('triton_per_fused__to_copy_gt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i1', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__to_copy_gt_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__to_copy_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tl.store(out_ptr0 + (tl.broadcast_to(r0, [RBLOCK])), tmp2, None) tl.store(out_ptr1 + (tl.full([1], 0, tl.int32)), tmp6, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yx/cyx33b4cuc5wetqcfqkvlznxkkeck5wuib3zqzten6pdyhb3nib2.py # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] # Source node to ATen node mapping: # weights => full_default # Graph fragment: # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) triton_poi_fused_zeros_like_1 = async_compile.triton('triton_poi_fused_zeros_like_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_zeros_like_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_zeros_like_1(out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + (x0), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/o3/co3ohsiccha2jedxkbuuzgpfkttvcqovi7edh443hag7dzlqgnfb.py # Topologically Sorted Source Nodes: [sigmoid, sub, g], Original ATen: [aten.sigmoid, aten.sub, aten.abs] # Source node to ATen node mapping: # g => abs_1 # sigmoid => sigmoid # sub => sub # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%arg0_1,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sigmoid, %arg1_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) triton_poi_fused_abs_sigmoid_sub_2 = async_compile.triton('triton_poi_fused_abs_sigmoid_sub_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_abs_sigmoid_sub_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_abs_sigmoid_sub_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp2 = tl.load(in_ptr1 + (x0), xmask) tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 - tmp2 tmp4 = tl_math.abs(tmp3) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [valid, float_3, sum_1], Original ATen: [aten.gt, aten._to_copy, aten.sum] stream0 = get_raw_stream(0) triton_per_fused__to_copy_gt_sum_0.run(arg2_1, buf0, buf1, 1, 256, grid=grid(1), stream=stream0) del arg2_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [weights], Original ATen: [aten.zeros_like] triton_poi_fused_zeros_like_1.run(buf2, 256, grid=grid(256), stream=stream0) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sigmoid, sub, g], Original ATen: [aten.sigmoid, aten.sub, aten.abs] triton_poi_fused_abs_sigmoid_sub_2.run(arg0_1, arg1_1, buf3, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf1, arg1_1, buf2, buf3, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def _expand_onehot_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero((labels >= 0) & (labels < label_channels), as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds]] = 1 bin_label_weights = label_weights.view(-1, 1).expand(label_weights.size (0), label_channels) return bin_labels, bin_label_weights class GHMC(nn.Module): """GHM Classification Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector". https://arxiv.org/abs/1811.05181 Args: bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. use_sigmoid (bool): Can only be true for BCE based loss now. loss_weight (float): The weight of the total GHM-C loss. """ def __init__(self, bins=10, momentum=0, use_sigmoid=True, loss_weight=1.0): super(GHMC, self).__init__() self.bins = bins self.momentum = momentum edges = torch.arange(bins + 1).float() / bins self.register_buffer('edges', edges) self.edges[-1] += 1e-06 if momentum > 0: acc_sum = torch.zeros(bins) self.register_buffer('acc_sum', acc_sum) self.use_sigmoid = use_sigmoid if not self.use_sigmoid: raise NotImplementedError self.loss_weight = loss_weight def forward(self, pred, target, label_weight, *args, **kwargs): """Calculate the GHM-C loss. Args: pred (float tensor of size [batch_num, class_num]): The direct prediction of classification fc layer. target (float tensor of size [batch_num, class_num]): Binary class target for each sample. label_weight (float tensor of size [batch_num, class_num]): the value is 1 if the sample is valid and 0 if ignored. Returns: The gradient harmonized loss. """ if pred.dim() != target.dim(): target, label_weight = _expand_onehot_labels(target, label_weight, pred.size(-1)) target, label_weight = target.float(), label_weight.float() edges = self.edges mmt = self.momentum weights = torch.zeros_like(pred) g = torch.abs(pred.sigmoid().detach() - target) valid = label_weight > 0 tot = max(valid.float().sum().item(), 1.0) n = 0 for i in range(self.bins): inds = (g >= edges[i]) & (g < edges[i + 1]) & valid num_in_bin = inds.sum().item() if num_in_bin > 0: if mmt > 0: self.acc_sum[i] = mmt * self.acc_sum[i] + (1 - mmt ) * num_in_bin weights[inds] = tot / self.acc_sum[i] else: weights[inds] = tot / num_in_bin n += 1 if n > 0: weights = weights / n loss = F.binary_cross_entropy_with_logits(pred, target, weights, reduction='sum') / tot return loss * self.loss_weight def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused__to_copy_gt_sum_0(in_ptr0, out_ptr0, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tl.store(out_ptr0 + tl.broadcast_to(r0, [RBLOCK]), tmp2, None) tl.store(out_ptr1 + tl.full([1], 0, tl.int32), tmp6, None) @triton.jit def triton_poi_fused_zeros_like_1(out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = 0.0 tl.store(out_ptr0 + x0, tmp0, xmask) @triton.jit def triton_poi_fused_abs_sigmoid_sub_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp2 = tl.load(in_ptr1 + x0, xmask) tmp1 = tl.sigmoid(tmp0) tmp3 = tmp1 - tmp2 tmp4 = tl_math.abs(tmp3) tl.store(out_ptr0 + x0, tmp4, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) buf1 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused__to_copy_gt_sum_0[grid(1)](arg2_1, buf0, buf1, 1, 256, num_warps=2, num_stages=1) del arg2_1 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_zeros_like_1[grid(256)](buf2, 256, XBLOCK=256, num_warps=4, num_stages=1) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_abs_sigmoid_sub_2[grid(256)](arg0_1, arg1_1, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf1, arg1_1, buf2, buf3, buf0 def _expand_onehot_labels(labels, label_weights, label_channels): bin_labels = labels.new_full((labels.size(0), label_channels), 0) inds = torch.nonzero((labels >= 0) & (labels < label_channels), as_tuple=False).squeeze() if inds.numel() > 0: bin_labels[inds, labels[inds]] = 1 bin_label_weights = label_weights.view(-1, 1).expand(label_weights.size (0), label_channels) return bin_labels, bin_label_weights class GHMCNew(nn.Module): """GHM Classification Loss. Details of the theorem can be viewed in the paper "Gradient Harmonized Single-stage Detector". https://arxiv.org/abs/1811.05181 Args: bins (int): Number of the unit regions for distribution calculation. momentum (float): The parameter for moving average. use_sigmoid (bool): Can only be true for BCE based loss now. loss_weight (float): The weight of the total GHM-C loss. """ def __init__(self, bins=10, momentum=0, use_sigmoid=True, loss_weight=1.0): super(GHMCNew, self).__init__() self.bins = bins self.momentum = momentum edges = torch.arange(bins + 1).float() / bins self.register_buffer('edges', edges) self.edges[-1] += 1e-06 if momentum > 0: acc_sum = torch.zeros(bins) self.register_buffer('acc_sum', acc_sum) self.use_sigmoid = use_sigmoid if not self.use_sigmoid: raise NotImplementedError self.loss_weight = loss_weight def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AtticusJohnson/mmdetection
GHMC
false
11,218
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
EmbedE
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/v7/cv7zazascu4rpkkwoxbiwk6c2le2e6wshdhae73bmaoapelvwguv.py # Topologically Sorted Source Nodes: [h], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # h => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (16, 4), (4, 1)) assert_size_stride(primals_2, (16, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 16), (16, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 16), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 16), (256, 64, 16, 1), 0); del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch.bool) # Topologically Sorted Source Nodes: [h], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, primals_2, buf2, 1024, grid=grid(1024), stream=stream0) del primals_2 return (buf1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((16, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn from torch.functional import F class EmbedE(nn.Module): def __init__(self, l_in, l_h, l_g): super(EmbedE, self).__init__() self.fc = nn.Linear(l_in, l_h * l_g) def forward(self, h): h = F.relu(self.fc(h)) return h def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'l_in': 4, 'l_h': 4, 'l_g': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 16 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (16, 4), (4, 1)) assert_size_stride(primals_2, (16,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 16), (16, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 16), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 16), (256, 64, 16, 1), 0) del buf0 buf2 = empty_strided_cuda((4, 4, 4, 16), (256, 64, 16, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(1024)](buf1, primals_2, buf2, 1024, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 return buf1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf2 class EmbedENew(nn.Module): def __init__(self, l_in, l_h, l_g): super(EmbedENew, self).__init__() self.fc = nn.Linear(l_in, l_h * l_g) def forward(self, input_0): primals_1 = self.fc.weight primals_2 = self.fc.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AnnaNikitaML/GraphConvolutionalNetwork
EmbedE
false
11,219
[ "MIT" ]
0
2f3153b82fad10cdd33d261a77e08f77fa37d36a
https://github.com/AnnaNikitaML/GraphConvolutionalNetwork/tree/2f3153b82fad10cdd33d261a77e08f77fa37d36a
ConvWS2d
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ww/cwww2apcubf5chosrvnjwezswzhrp5km6tznagvysldlndvyv5qa.py # Topologically Sorted Source Nodes: [mean, std, sub, add, weight], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div] # Source node to ATen node mapping: # add => add # mean => mean # std => sqrt, var # sub => sub # weight => div # Graph fragment: # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.dim](args = (%view, [1], True), kwargs = {}) # %var : [num_users=1] = call_function[target=torch.ops.aten.var.correction](args = (%view, [1]), kwargs = {correction: 1.0, keepdim: True}) # %sqrt : [num_users=2] = call_function[target=torch.ops.aten.sqrt.default](args = (%var,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_1, %view_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_2, 1e-05), kwargs = {}) # %div : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %add), kwargs = {}) triton_per_fused_add_div_mean_std_sub_0 = async_compile.triton('triton_per_fused_add_div_mean_std_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_mean_std_sub_0', 'mutated_arg_names': ['in_out_ptr0', 'in_out_ptr1'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_mean_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = tmp0 - tmp20 tmp25 = 1e-05 tmp26 = tmp23 + tmp25 tmp27 = tmp24 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + (x0), tmp23, xmask) tl.store(out_ptr0 + (r1 + (64*x0)), tmp27, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/tc/ctcagp37ljugm52zu6ckorigrppqo67voefe2f2odg5r6hyllhyu.py # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] # Source node to ATen node mapping: # conv2d => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %div, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf3 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 1), (1, 1), 0); del buf0 # reuse buf5 = reinterpret_tensor(buf3, (4, 1), (1, 1), 0); del buf3 # reuse buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean, std, sub, add, weight], Original ATen: [aten.mean, aten.std, aten.sub, aten.add, aten.div] stream0 = get_raw_stream(0) triton_per_fused_add_div_mean_std_sub_0.run(buf1, buf5, primals_1, buf6, 4, 64, grid=grid(4), stream=stream0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf7 = extern_kernels.convolution(primals_3, buf6, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 4, 1, 1), (4, 1, 1, 1)) buf8 = buf7; del buf7 # reuse # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf8, primals_2, 16, grid=grid(16), stream=stream0) del primals_2 return (buf8, primals_1, primals_3, buf1, buf5, buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F def conv_ws_2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1, eps=1e-05): c_in = weight.size(0) weight_flat = weight.view(c_in, -1) mean = weight_flat.mean(dim=1, keepdim=True).view(c_in, 1, 1, 1) std = weight_flat.std(dim=1, keepdim=True).view(c_in, 1, 1, 1) weight = (weight - mean) / (std + eps) return F.conv2d(input, weight, bias, stride, padding, dilation, groups) class ConvWS2d(nn.Conv2d): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, eps=1e-05): super(ConvWS2d, self).__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias) self.eps = eps def forward(self, x): return conv_ws_2d(x, self.weight, self.bias, self.stride, self. padding, self.dilation, self.groups, self.eps) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4, 'kernel_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_add_div_mean_std_sub_0(in_out_ptr0, in_out_ptr1, in_ptr0, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp6 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp1 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 64.0 tmp20 = tmp4 / tmp19 tmp21 = 63.0 tmp22 = tmp18 / tmp21 tmp23 = libdevice.sqrt(tmp22) tmp24 = tmp0 - tmp20 tmp25 = 1e-05 tmp26 = tmp23 + tmp25 tmp27 = tmp24 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp20, xmask) tl.debug_barrier() tl.store(in_out_ptr1 + x0, tmp23, xmask) tl.store(out_ptr0 + (r1 + 64 * x0), tmp27, xmask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf3 = empty_strided_cuda((4, 1), (1, 4), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 1), (1, 1), 0) del buf0 buf5 = reinterpret_tensor(buf3, (4, 1), (1, 1), 0) del buf3 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_per_fused_add_div_mean_std_sub_0[grid(4)](buf1, buf5, primals_1, buf6, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) buf7 = extern_kernels.convolution(primals_3, buf6, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 4, 1, 1), (4, 1, 1, 1)) buf8 = buf7 del buf7 triton_poi_fused_convolution_1[grid(16)](buf8, primals_2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_2 return buf8, primals_1, primals_3, buf1, buf5, buf6 def conv_ws_2d(input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1, eps=1e-05): c_in = weight.size(0) weight_flat = weight.view(c_in, -1) mean = weight_flat.mean(dim=1, keepdim=True).view(c_in, 1, 1, 1) std = weight_flat.std(dim=1, keepdim=True).view(c_in, 1, 1, 1) weight = (weight - mean) / (std + eps) return F.conv2d(input, weight, bias, stride, padding, dilation, groups) class ConvWS2dNew(nn.Conv2d): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, eps=1e-05): super(ConvWS2dNew, self).__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias) self.eps = eps def forward(self, input_0): primals_1 = self.weight primals_2 = self.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
AtticusJohnson/mmdetection
ConvWS2d
false
11,220
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
ConvTemporalGraphical
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/kn/cknjlh5mzsg6tap75kwweiwuidyxeolmhbgzpsrthbqvrieuksvv.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.clone] # Source node to ATen node mapping: # x_2 => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_2,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_0 = async_compile.triton('triton_poi_fused_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) % 4 x4 = (xindex // 256) x5 = (xindex // 16) % 16 x3 = (xindex // 64) % 4 x6 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*x5) + (64*x1) + (256*x4)), xmask) tmp1 = tl.load(in_ptr1 + (x3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x6), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (16, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (16, ), (1, )) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_4, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 16, 4, 4), (256, 16, 4, 1)) buf1 = empty_strided_cuda((4, 4, 4, 4, 4, 1), (256, 64, 16, 4, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.clone] stream0 = get_raw_stream(0) triton_poi_fused_clone_0.run(buf0, primals_3, buf1, 1024, grid=grid(1024), stream=stream0) del buf0 del primals_3 buf2 = empty_strided_cuda((1, 64, 4), (256, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf1, (1, 64, 16), (0, 16, 1), 0), reinterpret_tensor(primals_1, (1, 16, 4), (64, 4, 1), 0), out=buf2) del buf1 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_2, primals_4, reinterpret_tensor(primals_1, (1, 4, 16), (64, 1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((16, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class ConvTemporalGraphical(nn.Module): """The basic module for applying a graph convolution. Args: in_channels (int): Number of channels in the input sequence data out_channels (int): Number of channels produced by the convolution kernel_size (int): Size of the graph convolving kernel t_kernel_size (int): Size of the temporal convolving kernel t_stride (int, optional): Stride of the temporal convolution. Default: 1 t_padding (int, optional): Temporal zero-padding added to both sides of the input. Default: 0 t_dilation (int, optional): Spacing between temporal kernel elements. Default: 1 bias (bool, optional): If ``True``, adds a learnable bias to the output. Default: ``True`` Shape: - Input[0]: Input graph sequence in :math:`(N, in_channels, T_{in}, V)` format - Input[1]: Input graph adjacency matrix in :math:`(K, V, V)` format - Output[0]: Output graph sequence in :math:`(N, out_channels, T_{out} , V)` format - Output[1]: Graph adjacency matrix for output data in :math:`(K, V, V) ` format where :math:`N` is a batch size, :math:`K` is the spatial kernel size, as :math:`K == kernel_size[1] `, :math:`T_{in}/T_{out}` is a length of input/output sequence, :math:`V` is the number of graph nodes. """ def __init__(self, in_channels, out_channels, kernel_size, t_kernel_size=1, t_stride=1, t_padding=0, t_dilation=1, bias=True): super().__init__() self.kernel_size = kernel_size self.conv = nn.Conv2d(in_channels, out_channels * kernel_size, kernel_size=(t_kernel_size, 1), padding=(t_padding, 0), stride= (t_stride, 1), dilation=(t_dilation, 1), bias=bias) def forward(self, x, adj_mat): """Defines the computation performed at every call.""" assert adj_mat.size(0) == self.kernel_size x = self.conv(x) n, kc, t, v = x.size() x = x.view(n, self.kernel_size, kc // self.kernel_size, t, v) x = torch.einsum('nkctv,kvw->nctw', (x, adj_mat)) return x.contiguous(), adj_mat def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4, 'kernel_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 % 4 x4 = xindex // 256 x5 = xindex // 16 % 16 x3 = xindex // 64 % 4 x6 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * x5 + 64 * x1 + 256 * x4), xmask) tmp1 = tl.load(in_ptr1 + (x3 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + x6, tmp2, xmask) def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (16, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (16,), (1,)) assert_size_stride(primals_4, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_4, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 16, 4, 4), (256, 16, 4, 1)) buf1 = empty_strided_cuda((4, 4, 4, 4, 4, 1), (256, 64, 16, 4, 1, 1 ), torch.float32) get_raw_stream(0) triton_poi_fused_clone_0[grid(1024)](buf0, primals_3, buf1, 1024, XBLOCK=256, num_warps=4, num_stages=1) del buf0 del primals_3 buf2 = empty_strided_cuda((1, 64, 4), (256, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(buf1, (1, 64, 16), (0, 16, 1), 0), reinterpret_tensor(primals_1, (1, 16, 4), (64, 4, 1), 0), out=buf2) del buf1 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), primals_2, primals_4, reinterpret_tensor(primals_1, (1, 4, 16), (64, 1, 4), 0) class ConvTemporalGraphicalNew(nn.Module): """The basic module for applying a graph convolution. Args: in_channels (int): Number of channels in the input sequence data out_channels (int): Number of channels produced by the convolution kernel_size (int): Size of the graph convolving kernel t_kernel_size (int): Size of the temporal convolving kernel t_stride (int, optional): Stride of the temporal convolution. Default: 1 t_padding (int, optional): Temporal zero-padding added to both sides of the input. Default: 0 t_dilation (int, optional): Spacing between temporal kernel elements. Default: 1 bias (bool, optional): If ``True``, adds a learnable bias to the output. Default: ``True`` Shape: - Input[0]: Input graph sequence in :math:`(N, in_channels, T_{in}, V)` format - Input[1]: Input graph adjacency matrix in :math:`(K, V, V)` format - Output[0]: Output graph sequence in :math:`(N, out_channels, T_{out} , V)` format - Output[1]: Graph adjacency matrix for output data in :math:`(K, V, V) ` format where :math:`N` is a batch size, :math:`K` is the spatial kernel size, as :math:`K == kernel_size[1] `, :math:`T_{in}/T_{out}` is a length of input/output sequence, :math:`V` is the number of graph nodes. """ def __init__(self, in_channels, out_channels, kernel_size, t_kernel_size=1, t_stride=1, t_padding=0, t_dilation=1, bias=True): super().__init__() self.kernel_size = kernel_size self.conv = nn.Conv2d(in_channels, out_channels * kernel_size, kernel_size=(t_kernel_size, 1), padding=(t_padding, 0), stride= (t_stride, 1), dilation=(t_dilation, 1), bias=bias) def forward(self, input_0, input_1): primals_2 = self.conv.weight primals_3 = self.conv.bias primals_4 = input_0 primals_1 = input_1 output = call([primals_1, primals_2, primals_3, primals_4]) return output[0], output[1]
Alexis-Fab/mmaction2
ConvTemporalGraphical
false
11,221
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
L1Loss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/i5/ci5r22vnwphjxav3oibgww4fkm25q4egp3rofzniyjru2u4b563f.py # Topologically Sorted Source Nodes: [sub, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.mean, aten.mul] # Source node to ATen node mapping: # loss => abs_1 # loss_1 => mean # loss_bbox => mul # sub => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%abs_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_abs_mean_mul_sub_0 = async_compile.triton('triton_per_fused_abs_mean_mul_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_mean_mul_sub_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_mean_mul_sub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [sub, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.mean, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_abs_mean_mul_sub_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def l1_loss(pred, target): assert pred.size() == target.size() and target.numel() > 0 loss = torch.abs(pred - target) return loss class L1Loss(nn.Module): def __init__(self, reduction='mean', loss_weight=1.0): super(L1Loss, self).__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * l1_loss(pred, target, weight, reduction=reduction, avg_factor=avg_factor) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_mean_mul_sub_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_abs_mean_mul_sub_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def l1_loss(pred, target): assert pred.size() == target.size() and target.numel() > 0 loss = torch.abs(pred - target) return loss class L1LossNew(nn.Module): def __init__(self, reduction='mean', loss_weight=1.0): super(L1LossNew, self).__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AtticusJohnson/mmdetection
L1Loss
false
11,222
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
Model
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/jq/cjqaq2meov3vkcgfealq7w4w35tw2oemvmhneuxmigeoumva22p7.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.sigmoid] # Source node to ATen node mapping: # out_1 => sigmoid # Graph fragment: # %sigmoid : [num_users=2] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_1,), kwargs = {}) triton_poi_fused_sigmoid_0 = async_compile.triton('triton_poi_fused_sigmoid_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sigmoid_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sigmoid_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.sigmoid] stream0 = get_raw_stream(0) triton_poi_fused_sigmoid_0.run(buf1, primals_2, 256, grid=grid(256), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf1, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Model(nn.Module): def __init__(self, input_dim, hidden_dim, output_dim): super(Model, self).__init__() self.layer1 = nn.Linear(input_dim, hidden_dim) self.sigmoid = nn.Sigmoid() self.layer2 = nn.Linear(hidden_dim, output_dim) def forward(self, x): out = self.layer1(x) out = self.sigmoid(out) out = self.layer2(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_dim': 4, 'hidden_dim': 4, 'output_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_sigmoid_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.sigmoid(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_sigmoid_0[grid(256)](buf1, primals_2, 256, XBLOCK= 256, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf1, primals_4 class ModelNew(nn.Module): def __init__(self, input_dim, hidden_dim, output_dim): super(ModelNew, self).__init__() self.layer1 = nn.Linear(input_dim, hidden_dim) self.sigmoid = nn.Sigmoid() self.layer2 = nn.Linear(hidden_dim, output_dim) def forward(self, input_0): primals_1 = self.layer1.weight primals_2 = self.layer1.bias primals_4 = self.layer2.weight primals_5 = self.layer2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
AyushSomani001/CreditCardFraud
Model
false
11,223
[ "MIT" ]
0
015d4992e543889edb6a47ba13d997ace8d1c51c
https://github.com/AyushSomani001/CreditCardFraud/tree/015d4992e543889edb6a47ba13d997ace8d1c51c
GlobalAvgPool2d
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/l3/cl35tzbhrd24dhunkbb6gjs54aklpyr46oikqhoylcgmkcmhujil.py # Topologically Sorted Source Nodes: [mean], Original ATen: [aten.mean] # Source node to ATen node mapping: # mean => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%view, [2]), kwargs = {}) triton_per_fused_mean_0 = async_compile.triton('triton_per_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[16, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 16 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (16*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [mean], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_per_fused_mean_0.run(buf1, arg0_1, 16, 16, grid=grid(16), stream=stream0) del arg0_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class GlobalAvgPool2d(nn.Module): def __init__(self): """Global average pooling over the input's spatial dimensions""" super(GlobalAvgPool2d, self).__init__() def forward(self, inputs): in_size = inputs.size() return inputs.view((in_size[0], in_size[1], -1)).mean(dim=2) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 16 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp6, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_mean_0[grid(16)](buf1, arg0_1, 16, 16, XBLOCK=8, num_warps=2, num_stages=1) del arg0_1 return buf1, class GlobalAvgPool2dNew(nn.Module): def __init__(self): """Global average pooling over the input's spatial dimensions""" super(GlobalAvgPool2dNew, self).__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
AwaleSajil/BiSeNet
GlobalAvgPool2d
false
11,224
[ "MIT" ]
0
2724941ef4052224c5581e6e42389e71a7c5cd5d
https://github.com/AwaleSajil/BiSeNet/tree/2724941ef4052224c5581e6e42389e71a7c5cd5d
L2Norm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/gj/cgj7f4rogjebeuosz3asgun5w2hregxq3ziitg4vtnz4jtcqfmau.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, mul, truediv], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.mul, aten.div] # Source node to ATen node mapping: # mul => mul # norm => add # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # truediv => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%primals_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-10), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expand, %primals_1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul, %add), kwargs = {}) triton_poi_fused_add_div_mul_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_mul_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 4 x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x3), xmask) tmp3 = tl.load(in_ptr1 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr1 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr1 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp3 tmp6 = tmp5 * tmp5 tmp7 = tmp4 + tmp6 tmp9 = tmp8 * tmp8 tmp10 = tmp7 + tmp9 tmp12 = tmp11 * tmp11 tmp13 = tmp10 + tmp12 tmp14 = libdevice.sqrt(tmp13) tmp15 = 1e-10 tmp16 = tmp14 + tmp15 tmp17 = tmp2 / tmp16 tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, mul, truediv], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.mul, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_2 return (buf0, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class L2Norm(nn.Module): def __init__(self, n_dims, scale=20.0, eps=1e-10): super(L2Norm, self).__init__() self.n_dims = n_dims self.weight = nn.Parameter(torch.Tensor(self.n_dims)) self.eps = eps self.scale = scale def forward(self, x): x_float = x.float() norm = x_float.pow(2).sum(1, keepdim=True).sqrt() + self.eps return (self.weight[None, :, None, None].float().expand_as(x_float) * x_float / norm).type_as(x) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'n_dims': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 4 x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x3, xmask) tmp3 = tl.load(in_ptr1 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp5 = tl.load(in_ptr1 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr1 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr1 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp0 * tmp1 tmp4 = tmp3 * tmp3 tmp6 = tmp5 * tmp5 tmp7 = tmp4 + tmp6 tmp9 = tmp8 * tmp8 tmp10 = tmp7 + tmp9 tmp12 = tmp11 * tmp11 tmp13 = tmp10 + tmp12 tmp14 = libdevice.sqrt(tmp13) tmp15 = 1e-10 tmp16 = tmp14 + tmp15 tmp17 = tmp2 / tmp16 tl.store(out_ptr0 + x3, tmp17, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 return buf0, primals_1 class L2NormNew(nn.Module): def __init__(self, n_dims, scale=20.0, eps=1e-10): super(L2NormNew, self).__init__() self.n_dims = n_dims self.weight = nn.Parameter(torch.Tensor(self.n_dims)) self.eps = eps self.scale = scale def forward(self, input_0): primals_2 = self.weight primals_1 = input_0 output = call([primals_1, primals_2]) return output[0]
AtticusJohnson/mmdetection
L2Norm
false
11,225
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
BMNLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/vw/cvww5edufkr5ujgf6bj4jckegfkgvq2h247sfq65sokeomv4ycn6.py # Topologically Sorted Source Nodes: [gt_6, pmask_1, sum_9, num_positive_1, ratio_2, clamp_3, ratio_3, coef_3, mul_18, add_6, log_2, mul_19, mul_16, sub_4, coef_2, sub_5, mul_20, sub_6, add_7, log_3, mul_21, loss_3, mean, loss_4, gt_7, pmask_2, sum_10, num_positive_2, ratio_4, clamp_6, ratio_5, coef_5, mul_24, add_9, log_4, mul_25, mul_22, sub_7, coef_4, sub_8, mul_26, sub_9, add_10, log_5, mul_27, loss_5, mean_1, loss_6, loss_7, mul_28, pred_bm_reg, gt_iou_map, le, gt_1, and_, u_mmask, u_smmask_1, gt, u_hmask, num_h, num_m, r_m, sub, gt_3, u_smmask_2, add, le_1, gt_2, and__1, u_lmask, u_lmask_1, u_slmask_1, num_l, r_l, sub_1, gt_4, u_slmask_2, weights, mul_4, mul_5, loss, ones_like, mul_6, sum_4, mul_7, sum_5, loss_1, mul_29, add_13, gt_5, pmask, sum_6, num_positive, le_2, nmask, nmask_1, sum_7, num_entries, ratio, ratio_1, coef_1, pred_bm_cls, add_3, log, mul_11, loss_pos, mul_9, sub_2, coef_0, sub_3, add_4, log_1, mul_13, loss_neg, add_5, sum_8, mul_15, loss_2, mul_30, loss_8], Original ATen: [aten.gt, aten._to_copy, aten.sum, aten.clamp, aten.reciprocal, aten.mul, aten.add, aten.log, aten.sub, aten.div, aten.rsub, aten.mean, aten.neg, aten.clone, aten.le, aten.bitwise_and, aten.mse_loss, aten.ones_like] # Source node to ATen node mapping: # add => add # add_10 => add_10 # add_13 => add_13 # add_3 => add_3 # add_4 => add_4 # add_5 => add_5 # add_6 => add_6 # add_7 => add_7 # add_9 => add_9 # and_ => bitwise_and # and__1 => bitwise_and_1 # clamp_3 => clamp_min_3 # clamp_6 => clamp_min_5 # coef_0 => div_4 # coef_1 => mul_10 # coef_2 => div_6 # coef_3 => mul_18 # coef_4 => div_7 # coef_5 => mul_25 # gt => gt # gt_1 => gt_1 # gt_2 => gt_2 # gt_3 => gt_3 # gt_4 => gt_4 # gt_5 => gt_5 # gt_6 => gt_6 # gt_7 => gt_7 # gt_iou_map => mul # le => le # le_1 => le_1 # le_2 => le_2 # log => log # log_1 => log_1 # log_2 => log_2 # log_3 => log_3 # log_4 => log_4 # log_5 => log_5 # loss => mean, pow_1, sub_2 # loss_1 => div_2 # loss_2 => div_5 # loss_3 => add_8 # loss_4 => neg # loss_5 => add_11 # loss_6 => neg_1 # loss_7 => add_12 # loss_8 => add_14 # loss_neg => mul_14 # loss_pos => mul_12 # mean => mean_1 # mean_1 => mean_2 # mul_11 => mul_11 # mul_13 => mul_13 # mul_15 => mul_15 # mul_16 => mul_17 # mul_18 => mul_19 # mul_19 => mul_20 # mul_20 => mul_21 # mul_21 => mul_22 # mul_22 => mul_24 # mul_24 => mul_26 # mul_25 => mul_27 # mul_26 => mul_28 # mul_27 => mul_29 # mul_28 => mul_30 # mul_29 => mul_31 # mul_30 => mul_32 # mul_4 => mul_4 # mul_5 => mul_5 # mul_6 => mul_6 # mul_7 => mul_7 # mul_9 => mul_9 # nmask => convert_element_type_6 # nmask_1 => mul_8 # num_entries => add_2 # num_h => sum_1 # num_l => sum_3 # num_m => sum_2 # num_positive => clamp_min # num_positive_1 => clamp_min_2 # num_positive_2 => clamp_min_4 # ones_like => full_default # pmask => convert_element_type_5 # pmask_1 => convert_element_type_7 # pmask_2 => convert_element_type_8 # pred_bm_cls => clone_1 # pred_bm_reg => clone # r_l => div_1 # r_m => div # ratio => div_3 # ratio_1 => clamp_max, clamp_min_1 # ratio_2 => mul_16, reciprocal # ratio_3 => clamp_max_1 # ratio_4 => mul_23, reciprocal_1 # ratio_5 => clamp_max_2 # sub => sub # sub_1 => sub_1 # sub_2 => sub_3 # sub_3 => sub_4 # sub_4 => sub_5 # sub_5 => sub_6 # sub_6 => sub_7 # sub_7 => sub_8 # sub_8 => sub_9 # sub_9 => sub_10 # sum_10 => sum_10 # sum_4 => sum_4 # sum_5 => sum_5 # sum_6 => sum_6 # sum_7 => sum_7 # sum_8 => sum_8 # sum_9 => sum_9 # u_hmask => convert_element_type # u_lmask => convert_element_type_2 # u_lmask_1 => mul_1 # u_mmask => convert_element_type_1 # u_slmask_1 => mul_3 # u_slmask_2 => convert_element_type_4 # u_smmask_1 => mul_2 # u_smmask_2 => convert_element_type_3 # weights => add_1 # Graph fragment: # %gt_6 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%view, 0.5), kwargs = {}) # %convert_element_type_7 : [num_users=3] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt_6, torch.float32), kwargs = {}) # %sum_9 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type_7,), kwargs = {}) # %clamp_min_2 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sum_9, 1), kwargs = {}) # %reciprocal : [num_users=1] = call_function[target=torch.ops.aten.reciprocal.default](args = (%clamp_min_2,), kwargs = {}) # %mul_16 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%reciprocal, 256), kwargs = {}) # %clamp_min_3 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%mul_16, 1.05), kwargs = {}) # %clamp_max_1 : [num_users=3] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min_3, 21), kwargs = {}) # %mul_18 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max_1, 0.5), kwargs = {}) # %mul_19 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_18, %convert_element_type_7), kwargs = {}) # %add_6 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, 1e-05), kwargs = {}) # %log_2 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_6,), kwargs = {}) # %mul_20 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_19, %log_2), kwargs = {}) # %mul_17 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max_1, 0.5), kwargs = {}) # %sub_5 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clamp_max_1, 1), kwargs = {}) # %div_6 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_17, %sub_5), kwargs = {}) # %sub_6 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %convert_element_type_7), kwargs = {}) # %mul_21 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_6, %sub_6), kwargs = {}) # %sub_7 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %view_1), kwargs = {}) # %add_7 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_7, 1e-05), kwargs = {}) # %log_3 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_7,), kwargs = {}) # %mul_22 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_21, %log_3), kwargs = {}) # %add_8 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_20, %mul_22), kwargs = {}) # %mean_1 : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_8,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%mean_1,), kwargs = {}) # %gt_7 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%view_2, 0.5), kwargs = {}) # %convert_element_type_8 : [num_users=3] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt_7, torch.float32), kwargs = {}) # %sum_10 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type_8,), kwargs = {}) # %clamp_min_4 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sum_10, 1), kwargs = {}) # %reciprocal_1 : [num_users=1] = call_function[target=torch.ops.aten.reciprocal.default](args = (%clamp_min_4,), kwargs = {}) # %mul_23 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%reciprocal_1, 256), kwargs = {}) # %clamp_min_5 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%mul_23, 1.05), kwargs = {}) # %clamp_max_2 : [num_users=3] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min_5, 21), kwargs = {}) # %mul_25 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max_2, 0.5), kwargs = {}) # %mul_26 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_25, %convert_element_type_8), kwargs = {}) # %add_9 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_3, 1e-05), kwargs = {}) # %log_4 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_9,), kwargs = {}) # %mul_27 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_26, %log_4), kwargs = {}) # %mul_24 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max_2, 0.5), kwargs = {}) # %sub_8 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clamp_max_2, 1), kwargs = {}) # %div_7 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_24, %sub_8), kwargs = {}) # %sub_9 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %convert_element_type_8), kwargs = {}) # %mul_28 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_7, %sub_9), kwargs = {}) # %sub_10 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %view_3), kwargs = {}) # %add_10 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_10, 1e-05), kwargs = {}) # %log_5 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_10,), kwargs = {}) # %mul_29 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_28, %log_5), kwargs = {}) # %add_11 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_27, %mul_29), kwargs = {}) # %mean_2 : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_11,), kwargs = {}) # %neg_1 : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%mean_2,), kwargs = {}) # %add_12 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%neg, %neg_1), kwargs = {}) # %mul_30 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add_12, 1.0), kwargs = {}) # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%select,), kwargs = {memory_format: torch.contiguous_format}) # %mul : [num_users=8] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg1_1, %arg2_1), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%mul, 0.7), kwargs = {}) # %gt_1 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%mul, 0.3), kwargs = {}) # %bitwise_and : [num_users=1] = call_function[target=torch.ops.aten.bitwise_and.Tensor](args = (%le, %gt_1), kwargs = {}) # %convert_element_type_1 : [num_users=2] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%bitwise_and, torch.float32), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convert_element_type_1, %rand), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%mul, 0.7), kwargs = {}) # %convert_element_type : [num_users=2] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt, torch.float32), kwargs = {}) # %sum_1 : [num_users=2] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type,), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type_1,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sum_1, %sum_2), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %div), kwargs = {}) # %gt_3 : [num_users=1] = call_function[target=torch.ops.aten.gt.Tensor](args = (%mul_2, %sub), kwargs = {}) # %convert_element_type_3 : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt_3, torch.float32), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%convert_element_type, %convert_element_type_3), kwargs = {}) # %le_1 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%mul, 0.3), kwargs = {}) # %gt_2 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%mul, 0.0), kwargs = {}) # %bitwise_and_1 : [num_users=1] = call_function[target=torch.ops.aten.bitwise_and.Tensor](args = (%le_1, %gt_2), kwargs = {}) # %convert_element_type_2 : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%bitwise_and_1, torch.float32), kwargs = {}) # %mul_1 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convert_element_type_2, %arg2_1), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_1, %rand_1), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_1,), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sum_1, %sum_3), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %div_1), kwargs = {}) # %gt_4 : [num_users=1] = call_function[target=torch.ops.aten.gt.Tensor](args = (%mul_3, %sub_1), kwargs = {}) # %convert_element_type_4 : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt_4, torch.float32), kwargs = {}) # %add_1 : [num_users=3] = call_function[target=torch.ops.aten.add.Tensor](args = (%add, %convert_element_type_4), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clone, %add_1), kwargs = {}) # %mul_5 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %add_1), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_4, %mul_5), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_2, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%pow_1,), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 1), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %mul_6 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, %full_default), kwargs = {}) # %sum_4 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_6,), kwargs = {}) # %mul_7 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sum_4, 0.5), kwargs = {}) # %sum_5 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%add_1,), kwargs = {}) # %div_2 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_7, %sum_5), kwargs = {}) # %mul_31 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_2, 10.0), kwargs = {}) # %add_13 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_30, %mul_31), kwargs = {}) # %gt_5 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%mul, 0.9), kwargs = {}) # %convert_element_type_5 : [num_users=2] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%gt_5, torch.float32), kwargs = {}) # %sum_6 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%convert_element_type_5,), kwargs = {}) # %clamp_min : [num_users=2] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sum_6, 1), kwargs = {}) # %le_2 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%mul, 0.9), kwargs = {}) # %convert_element_type_6 : [num_users=1] = call_function[target=torch.ops.prims.convert_element_type.default](args = (%le_2, torch.float32), kwargs = {}) # %mul_8 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convert_element_type_6, %arg2_1), kwargs = {}) # %sum_7 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_8,), kwargs = {}) # %add_2 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%clamp_min, %sum_7), kwargs = {}) # %div_3 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_2, %clamp_min), kwargs = {}) # %clamp_min_1 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%div_3, 1.05), kwargs = {}) # %clamp_max : [num_users=3] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min_1, 21), kwargs = {}) # %mul_10 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max, 0.5), kwargs = {}) # %clone_1 : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%select_1,), kwargs = {memory_format: torch.contiguous_format}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%clone_1, 1e-05), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_3,), kwargs = {}) # %mul_11 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_10, %log), kwargs = {}) # %mul_12 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_11, %convert_element_type_5), kwargs = {}) # %mul_9 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%clamp_max, 0.5), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%clamp_max, 1), kwargs = {}) # %div_4 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_9, %sub_3), kwargs = {}) # %sub_4 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1.0, %clone_1), kwargs = {}) # %add_4 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_4, 1e-05), kwargs = {}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_4,), kwargs = {}) # %mul_13 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_4, %log_1), kwargs = {}) # %mul_14 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_13, %mul_8), kwargs = {}) # %add_5 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_12, %mul_14), kwargs = {}) # %sum_8 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%add_5,), kwargs = {}) # %mul_15 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sum_8, -1), kwargs = {}) # %div_5 : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_15, %add_2), kwargs = {}) # %mul_32 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div_5, 1.0), kwargs = {}) # %add_14 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_13, %mul_32), kwargs = {}) triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0 = async_compile.triton('triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: '*fp32', 8: '*fp32', 9: '*fp32', 10: '*fp32', 11: '*fp32', 12: '*fp32', 13: 'i32', 14: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {13: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 14), equal_to_1=(13,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0', 'mutated_arg_names': ['in_out_ptr0', 'in_out_ptr1', 'in_out_ptr2', 'in_out_ptr3'], 'no_x_dim': True, 'num_load': 10, 'num_reduction': 13, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0(in_out_ptr0, in_out_ptr1, in_out_ptr2, in_out_ptr3, in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, in_ptr7, out_ptr12, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex r1 = rindex % 16 r2 = (rindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (r0), None) tmp19 = tl.load(in_ptr1 + (r0), None) tmp36 = tl.load(in_ptr2 + (r0), None) tmp37 = tl.load(in_ptr3 + (r0), None) tmp62 = tl.load(in_ptr4 + (r0), None) tmp69 = tl.load(in_out_ptr0 + (r0), None) tmp76 = tl.load(in_ptr5 + (r1 + (64*r2)), None, eviction_policy='evict_last') tmp110 = tl.load(in_ptr5 + (16 + r1 + (64*r2)), None, eviction_policy='evict_last') tmp126 = tl.load(in_ptr6 + (r0), None) tmp139 = tl.load(in_ptr7 + (r0), None) tmp1 = 0.5 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 1.0 tmp8 = triton_helpers.maximum(tmp6, tmp7) tmp9 = tl.full([1], 1, tl.int32) tmp10 = tmp9 / tmp8 tmp11 = 256.0 tmp12 = tmp10 * tmp11 tmp13 = 1.05 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = 21.0 tmp16 = triton_helpers.minimum(tmp14, tmp15) tmp17 = tmp16 * tmp1 tmp18 = tmp17 * tmp3 tmp20 = 1e-05 tmp21 = tmp19 + tmp20 tmp22 = tl_math.log(tmp21) tmp23 = tmp18 * tmp22 tmp24 = tmp16 - tmp7 tmp25 = tmp17 / tmp24 tmp26 = tmp7 - tmp3 tmp27 = tmp25 * tmp26 tmp28 = tmp7 - tmp19 tmp29 = tmp28 + tmp20 tmp30 = tl_math.log(tmp29) tmp31 = tmp27 * tmp30 tmp32 = tmp23 + tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp38 = tmp36 * tmp37 tmp39 = 0.7 tmp40 = tmp38 > tmp39 tmp41 = tmp40.to(tl.float32) tmp42 = tl.broadcast_to(tmp41, [RBLOCK]) tmp44 = triton_helpers.promote_to_tensor(tl.sum(tmp42, 0)) tmp45 = tmp38 <= tmp39 tmp46 = 0.3 tmp47 = tmp38 > tmp46 tmp48 = tmp45 & tmp47 tmp49 = tmp48.to(tl.float32) tmp50 = tl.broadcast_to(tmp49, [RBLOCK]) tmp52 = triton_helpers.promote_to_tensor(tl.sum(tmp50, 0)) tmp53 = tmp38 <= tmp46 tmp54 = 0.0 tmp55 = tmp38 > tmp54 tmp56 = tmp53 & tmp55 tmp57 = tmp56.to(tl.float32) tmp58 = tmp57 * tmp37 tmp59 = tl.broadcast_to(tmp58, [RBLOCK]) tmp61 = triton_helpers.promote_to_tensor(tl.sum(tmp59, 0)) tmp63 = tmp49 * tmp62 tmp64 = tmp44 / tmp52 tmp65 = tmp7 - tmp64 tmp66 = tmp63 > tmp65 tmp67 = tmp66.to(tl.float32) tmp68 = tmp41 + tmp67 tmp70 = tmp58 * tmp69 tmp71 = tmp44 / tmp61 tmp72 = tmp7 - tmp71 tmp73 = tmp70 > tmp72 tmp74 = tmp73.to(tl.float32) tmp75 = tmp68 + tmp74 tmp77 = tmp76 * tmp75 tmp78 = tmp38 * tmp75 tmp79 = tmp77 - tmp78 tmp80 = tmp79 * tmp79 tmp81 = tl.broadcast_to(tmp80, [RBLOCK]) tmp83 = triton_helpers.promote_to_tensor(tl.sum(tmp81, 0)) tmp84 = 0.9 tmp85 = tmp38 > tmp84 tmp86 = tmp85.to(tl.float32) tmp87 = tl.broadcast_to(tmp86, [RBLOCK]) tmp89 = triton_helpers.promote_to_tensor(tl.sum(tmp87, 0)) tmp90 = tmp38 <= tmp84 tmp91 = tmp90.to(tl.float32) tmp92 = tmp91 * tmp37 tmp93 = tl.broadcast_to(tmp92, [RBLOCK]) tmp95 = triton_helpers.promote_to_tensor(tl.sum(tmp93, 0)) tmp96 = tl.broadcast_to(tmp75, [RBLOCK]) tmp98 = triton_helpers.promote_to_tensor(tl.sum(tmp96, 0)) tmp99 = tmp83 / tmp11 tmp100 = tmp99 * tmp7 tmp101 = tl.broadcast_to(tmp100, [RBLOCK]) tmp103 = triton_helpers.promote_to_tensor(tl.sum(tmp101, 0)) tmp104 = triton_helpers.maximum(tmp89, tmp7) tmp105 = tmp104 + tmp95 tmp106 = tmp105 / tmp104 tmp107 = triton_helpers.maximum(tmp106, tmp13) tmp108 = triton_helpers.minimum(tmp107, tmp15) tmp109 = tmp108 * tmp1 tmp111 = tmp110 + tmp20 tmp112 = tl_math.log(tmp111) tmp113 = tmp109 * tmp112 tmp114 = tmp113 * tmp86 tmp115 = tmp108 - tmp7 tmp116 = tmp109 / tmp115 tmp117 = tmp7 - tmp110 tmp118 = tmp117 + tmp20 tmp119 = tl_math.log(tmp118) tmp120 = tmp116 * tmp119 tmp121 = tmp120 * tmp92 tmp122 = tmp114 + tmp121 tmp123 = tl.broadcast_to(tmp122, [RBLOCK]) tmp125 = triton_helpers.promote_to_tensor(tl.sum(tmp123, 0)) tmp127 = tmp126 > tmp1 tmp128 = tmp127.to(tl.float32) tmp129 = tl.broadcast_to(tmp128, [RBLOCK]) tmp131 = triton_helpers.promote_to_tensor(tl.sum(tmp129, 0)) tmp132 = triton_helpers.maximum(tmp131, tmp7) tmp133 = tmp9 / tmp132 tmp134 = tmp133 * tmp11 tmp135 = triton_helpers.maximum(tmp134, tmp13) tmp136 = triton_helpers.minimum(tmp135, tmp15) tmp137 = tmp136 * tmp1 tmp138 = tmp137 * tmp128 tmp140 = tmp139 + tmp20 tmp141 = tl_math.log(tmp140) tmp142 = tmp138 * tmp141 tmp143 = tmp136 - tmp7 tmp144 = tmp137 / tmp143 tmp145 = tmp7 - tmp128 tmp146 = tmp144 * tmp145 tmp147 = tmp7 - tmp139 tmp148 = tmp147 + tmp20 tmp149 = tl_math.log(tmp148) tmp150 = tmp146 * tmp149 tmp151 = tmp142 + tmp150 tmp152 = tl.broadcast_to(tmp151, [RBLOCK]) tmp154 = triton_helpers.promote_to_tensor(tl.sum(tmp152, 0)) tmp155 = tmp35 / tmp11 tmp156 = -tmp155 tmp157 = tmp154 / tmp11 tmp158 = -tmp157 tmp159 = tmp156 + tmp158 tmp160 = tmp103 * tmp1 tmp161 = tmp160 / tmp98 tmp162 = -1.0 tmp163 = tmp125 * tmp162 tmp164 = tmp163 / tmp105 tmp165 = tmp159 * tmp7 tmp166 = 10.0 tmp167 = tmp161 * tmp166 tmp168 = tmp165 + tmp167 tmp169 = tmp164 * tmp7 tmp170 = tmp168 + tmp169 tl.debug_barrier() tl.store(in_out_ptr2 + (tl.full([1], 0, tl.int32)), tmp159, None) tl.debug_barrier() tl.store(in_out_ptr1 + (tl.full([1], 0, tl.int32)), tmp161, None) tl.debug_barrier() tl.store(in_out_ptr3 + (tl.full([1], 0, tl.int32)), tmp164, None) tl.store(out_ptr12 + (tl.full([1], 0, tl.int32)), tmp170, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg5_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg6_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [u_slmask], Original ATen: [aten.rand_like] buf11 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch.float32, device=device(type='cuda', index=0), pin_memory=False) buf12 = buf11 del buf11 # Topologically Sorted Source Nodes: [u_smmask], Original ATen: [aten.rand_like] buf7 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch.float32, device=device(type='cuda', index=0), pin_memory=False) buf8 = buf7 del buf7 buf2 = empty_strided_cuda((), (), torch.float32) buf14 = buf12; del buf12 # reuse buf15 = empty_strided_cuda((), (), torch.float32) buf16 = buf15; del buf15 # reuse buf22 = empty_strided_cuda((), (), torch.float32) buf6 = buf2; del buf2 # reuse buf18 = buf16; del buf16 # reuse buf23 = buf22; del buf22 # reuse buf24 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [gt_6, pmask_1, sum_9, num_positive_1, ratio_2, clamp_3, ratio_3, coef_3, mul_18, add_6, log_2, mul_19, mul_16, sub_4, coef_2, sub_5, mul_20, sub_6, add_7, log_3, mul_21, loss_3, mean, loss_4, gt_7, pmask_2, sum_10, num_positive_2, ratio_4, clamp_6, ratio_5, coef_5, mul_24, add_9, log_4, mul_25, mul_22, sub_7, coef_4, sub_8, mul_26, sub_9, add_10, log_5, mul_27, loss_5, mean_1, loss_6, loss_7, mul_28, pred_bm_reg, gt_iou_map, le, gt_1, and_, u_mmask, u_smmask_1, gt, u_hmask, num_h, num_m, r_m, sub, gt_3, u_smmask_2, add, le_1, gt_2, and__1, u_lmask, u_lmask_1, u_slmask_1, num_l, r_l, sub_1, gt_4, u_slmask_2, weights, mul_4, mul_5, loss, ones_like, mul_6, sum_4, mul_7, sum_5, loss_1, mul_29, add_13, gt_5, pmask, sum_6, num_positive, le_2, nmask, nmask_1, sum_7, num_entries, ratio, ratio_1, coef_1, pred_bm_cls, add_3, log, mul_11, loss_pos, mul_9, sub_2, coef_0, sub_3, add_4, log_1, mul_13, loss_neg, add_5, sum_8, mul_15, loss_2, mul_30, loss_8], Original ATen: [aten.gt, aten._to_copy, aten.sum, aten.clamp, aten.reciprocal, aten.mul, aten.add, aten.log, aten.sub, aten.div, aten.rsub, aten.mean, aten.neg, aten.clone, aten.le, aten.bitwise_and, aten.mse_loss, aten.ones_like] stream0 = get_raw_stream(0) triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0.run(buf14, buf18, buf6, buf23, arg4_1, arg3_1, arg1_1, arg2_1, buf8, arg0_1, arg6_1, arg5_1, buf24, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 del arg5_1 del arg6_1 del buf14 del buf8 return (buf24, buf6, buf18, buf23, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg4_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg5_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg6_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn.functional as F import torch.nn as nn def binary_logistic_regression_loss(reg_score, label, threshold=0.5, ratio_range=(1.05, 21), eps=1e-05): """Binary Logistic Regression Loss.""" label = label.view(-1) reg_score = reg_score.contiguous().view(-1) pmask = (label > threshold).float() num_positive = max(torch.sum(pmask), 1) num_entries = len(label) ratio = num_entries / num_positive ratio = min(max(ratio, ratio_range[0]), ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss = coef_1 * pmask * torch.log(reg_score + eps) + coef_0 * (1.0 - pmask ) * torch.log(1.0 - reg_score + eps) loss = -torch.mean(loss) return loss class BMNLoss(nn.Module): """BMN Loss. From paper https://arxiv.org/abs/1907.09702, code https://github.com/JJBOY/BMN-Boundary-Matching-Network. It will calculate loss for BMN Model. This loss is a weighted sum of 1) temporal evaluation loss based on confidence score of start and end positions. 2) proposal evaluation regression loss based on confidence scores of candidate proposals. 3) proposal evaluation classification loss based on classification results of candidate proposals. """ @staticmethod def tem_loss(pred_start, pred_end, gt_start, gt_end): """Calculate Temporal Evaluation Module Loss. This function calculate the binary_logistic_regression_loss for start and end respectively and returns the sum of their losses. Args: pred_start (torch.Tensor): Predicted start score by BMN model. pred_end (torch.Tensor): Predicted end score by BMN model. gt_start (torch.Tensor): Groundtruth confidence score for start. gt_end (torch.Tensor): Groundtruth confidence score for end. Returns: torch.Tensor: Returned binary logistic loss. """ loss_start = binary_logistic_regression_loss(pred_start, gt_start) loss_end = binary_logistic_regression_loss(pred_end, gt_end) loss = loss_start + loss_end return loss @staticmethod def pem_reg_loss(pred_score, gt_iou_map, mask, high_temporal_iou_threshold=0.7, low_temporal_iou_threshold=0.3): """Calculate Proposal Evaluation Module Regression Loss. Args: pred_score (torch.Tensor): Predicted temporal_iou score by BMN. gt_iou_map (torch.Tensor): Groundtruth temporal_iou score. mask (torch.Tensor): Boundary-Matching mask. high_temporal_iou_threshold (float): Higher threshold of temporal_iou. Default: 0.7. low_temporal_iou_threshold (float): Higher threshold of temporal_iou. Default: 0.3. Returns: torch.Tensor: Proposal evalutaion regression loss. """ u_hmask = (gt_iou_map > high_temporal_iou_threshold).float() u_mmask = ((gt_iou_map <= high_temporal_iou_threshold) & ( gt_iou_map > low_temporal_iou_threshold)).float() u_lmask = ((gt_iou_map <= low_temporal_iou_threshold) & (gt_iou_map > 0.0)).float() u_lmask = u_lmask * mask num_h = torch.sum(u_hmask) num_m = torch.sum(u_mmask) num_l = torch.sum(u_lmask) r_m = num_h / num_m u_smmask = torch.rand_like(gt_iou_map) u_smmask = u_mmask * u_smmask u_smmask = (u_smmask > 1.0 - r_m).float() r_l = num_h / num_l u_slmask = torch.rand_like(gt_iou_map) u_slmask = u_lmask * u_slmask u_slmask = (u_slmask > 1.0 - r_l).float() weights = u_hmask + u_smmask + u_slmask loss = F.mse_loss(pred_score * weights, gt_iou_map * weights) loss = 0.5 * torch.sum(loss * torch.ones_like(weights)) / torch.sum( weights) return loss @staticmethod def pem_cls_loss(pred_score, gt_iou_map, mask, threshold=0.9, ratio_range=(1.05, 21), eps=1e-05): """Calculate Proposal Evaluation Module Classification Loss. Args: pred_score (torch.Tensor): Predicted temporal_iou score by BMN. gt_iou_map (torch.Tensor): Groundtruth temporal_iou score. mask (torch.Tensor): Boundary-Matching mask. threshold (float): Threshold of temporal_iou for positive instances. Default: 0.9. ratio_range (tuple): Lower bound and upper bound for ratio. Default: (1.05, 21) eps (float): Epsilon for small value. Default: 1e-5 Returns: torch.Tensor: Proposal evalutaion classification loss. """ pmask = (gt_iou_map > threshold).float() nmask = (gt_iou_map <= threshold).float() nmask = nmask * mask num_positive = max(torch.sum(pmask), 1) num_entries = num_positive + torch.sum(nmask) ratio = num_entries / num_positive ratio = torch.clamp(ratio, ratio_range[0], ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss_pos = coef_1 * torch.log(pred_score + eps) * pmask loss_neg = coef_0 * torch.log(1.0 - pred_score + eps) * nmask loss = -1 * torch.sum(loss_pos + loss_neg) / num_entries return loss def forward(self, pred_bm, pred_start, pred_end, gt_iou_map, gt_start, gt_end, bm_mask, weight_tem=1.0, weight_pem_reg=10.0, weight_pem_cls=1.0): """Calculate Boundary Matching Network Loss. Args: pred_bm (torch.Tensor): Predicted confidence score for boundary matching map. pred_start (torch.Tensor): Predicted confidence score for start. pred_end (torch.Tensor): Predicted confidence score for end. gt_iou_map (torch.Tensor): Groundtruth score for boundary matching map. gt_start (torch.Tensor): Groundtruth temporal_iou score for start. gt_end (torch.Tensor): Groundtruth temporal_iou score for end. bm_mask (torch.Tensor): Boundary-Matching mask. weight_tem (float): Weight for tem loss. Default: 1.0. weight_pem_reg (float): Weight for pem regression loss. Default: 10.0. weight_pem_cls (float): Weight for pem classification loss. Default: 1.0. Returns: tuple([torch.Tensor, torch.Tensor, torch.Tensor, torch.Tensor]): (loss, tem_loss, pem_reg_loss, pem_cls_loss). Loss is the bmn loss, tem_loss is the temporal evaluation loss, pem_reg_loss is the proposal evaluation regression loss, pem_cls_loss is the proposal evaluation classification loss. """ pred_bm_reg = pred_bm[:, 0].contiguous() pred_bm_cls = pred_bm[:, 1].contiguous() gt_iou_map = gt_iou_map * bm_mask pem_reg_loss = self.pem_reg_loss(pred_bm_reg, gt_iou_map, bm_mask) pem_cls_loss = self.pem_cls_loss(pred_bm_cls, gt_iou_map, bm_mask) tem_loss = self.tem_loss(pred_start, pred_end, gt_start, gt_end) loss = (weight_tem * tem_loss + weight_pem_reg * pem_reg_loss + weight_pem_cls * pem_cls_loss) return loss, tem_loss, pem_reg_loss, pem_cls_loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch from torch import device import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn.functional as F import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0( in_out_ptr0, in_out_ptr1, in_out_ptr2, in_out_ptr3, in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, in_ptr7, out_ptr12, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex r1 = rindex % 16 r2 = rindex // 16 % 4 tmp0 = tl.load(in_ptr0 + r0, None) tmp19 = tl.load(in_ptr1 + r0, None) tmp36 = tl.load(in_ptr2 + r0, None) tmp37 = tl.load(in_ptr3 + r0, None) tmp62 = tl.load(in_ptr4 + r0, None) tmp69 = tl.load(in_out_ptr0 + r0, None) tmp76 = tl.load(in_ptr5 + (r1 + 64 * r2), None, eviction_policy= 'evict_last') tmp110 = tl.load(in_ptr5 + (16 + r1 + 64 * r2), None, eviction_policy= 'evict_last') tmp126 = tl.load(in_ptr6 + r0, None) tmp139 = tl.load(in_ptr7 + r0, None) tmp1 = 0.5 tmp2 = tmp0 > tmp1 tmp3 = tmp2.to(tl.float32) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 1.0 tmp8 = triton_helpers.maximum(tmp6, tmp7) tmp9 = tl.full([1], 1, tl.int32) tmp10 = tmp9 / tmp8 tmp11 = 256.0 tmp12 = tmp10 * tmp11 tmp13 = 1.05 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = 21.0 tmp16 = triton_helpers.minimum(tmp14, tmp15) tmp17 = tmp16 * tmp1 tmp18 = tmp17 * tmp3 tmp20 = 1e-05 tmp21 = tmp19 + tmp20 tmp22 = tl_math.log(tmp21) tmp23 = tmp18 * tmp22 tmp24 = tmp16 - tmp7 tmp25 = tmp17 / tmp24 tmp26 = tmp7 - tmp3 tmp27 = tmp25 * tmp26 tmp28 = tmp7 - tmp19 tmp29 = tmp28 + tmp20 tmp30 = tl_math.log(tmp29) tmp31 = tmp27 * tmp30 tmp32 = tmp23 + tmp31 tmp33 = tl.broadcast_to(tmp32, [RBLOCK]) tmp35 = triton_helpers.promote_to_tensor(tl.sum(tmp33, 0)) tmp38 = tmp36 * tmp37 tmp39 = 0.7 tmp40 = tmp38 > tmp39 tmp41 = tmp40.to(tl.float32) tmp42 = tl.broadcast_to(tmp41, [RBLOCK]) tmp44 = triton_helpers.promote_to_tensor(tl.sum(tmp42, 0)) tmp45 = tmp38 <= tmp39 tmp46 = 0.3 tmp47 = tmp38 > tmp46 tmp48 = tmp45 & tmp47 tmp49 = tmp48.to(tl.float32) tmp50 = tl.broadcast_to(tmp49, [RBLOCK]) tmp52 = triton_helpers.promote_to_tensor(tl.sum(tmp50, 0)) tmp53 = tmp38 <= tmp46 tmp54 = 0.0 tmp55 = tmp38 > tmp54 tmp56 = tmp53 & tmp55 tmp57 = tmp56.to(tl.float32) tmp58 = tmp57 * tmp37 tmp59 = tl.broadcast_to(tmp58, [RBLOCK]) tmp61 = triton_helpers.promote_to_tensor(tl.sum(tmp59, 0)) tmp63 = tmp49 * tmp62 tmp64 = tmp44 / tmp52 tmp65 = tmp7 - tmp64 tmp66 = tmp63 > tmp65 tmp67 = tmp66.to(tl.float32) tmp68 = tmp41 + tmp67 tmp70 = tmp58 * tmp69 tmp71 = tmp44 / tmp61 tmp72 = tmp7 - tmp71 tmp73 = tmp70 > tmp72 tmp74 = tmp73.to(tl.float32) tmp75 = tmp68 + tmp74 tmp77 = tmp76 * tmp75 tmp78 = tmp38 * tmp75 tmp79 = tmp77 - tmp78 tmp80 = tmp79 * tmp79 tmp81 = tl.broadcast_to(tmp80, [RBLOCK]) tmp83 = triton_helpers.promote_to_tensor(tl.sum(tmp81, 0)) tmp84 = 0.9 tmp85 = tmp38 > tmp84 tmp86 = tmp85.to(tl.float32) tmp87 = tl.broadcast_to(tmp86, [RBLOCK]) tmp89 = triton_helpers.promote_to_tensor(tl.sum(tmp87, 0)) tmp90 = tmp38 <= tmp84 tmp91 = tmp90.to(tl.float32) tmp92 = tmp91 * tmp37 tmp93 = tl.broadcast_to(tmp92, [RBLOCK]) tmp95 = triton_helpers.promote_to_tensor(tl.sum(tmp93, 0)) tmp96 = tl.broadcast_to(tmp75, [RBLOCK]) tmp98 = triton_helpers.promote_to_tensor(tl.sum(tmp96, 0)) tmp99 = tmp83 / tmp11 tmp100 = tmp99 * tmp7 tmp101 = tl.broadcast_to(tmp100, [RBLOCK]) tmp103 = triton_helpers.promote_to_tensor(tl.sum(tmp101, 0)) tmp104 = triton_helpers.maximum(tmp89, tmp7) tmp105 = tmp104 + tmp95 tmp106 = tmp105 / tmp104 tmp107 = triton_helpers.maximum(tmp106, tmp13) tmp108 = triton_helpers.minimum(tmp107, tmp15) tmp109 = tmp108 * tmp1 tmp111 = tmp110 + tmp20 tmp112 = tl_math.log(tmp111) tmp113 = tmp109 * tmp112 tmp114 = tmp113 * tmp86 tmp115 = tmp108 - tmp7 tmp116 = tmp109 / tmp115 tmp117 = tmp7 - tmp110 tmp118 = tmp117 + tmp20 tmp119 = tl_math.log(tmp118) tmp120 = tmp116 * tmp119 tmp121 = tmp120 * tmp92 tmp122 = tmp114 + tmp121 tmp123 = tl.broadcast_to(tmp122, [RBLOCK]) tmp125 = triton_helpers.promote_to_tensor(tl.sum(tmp123, 0)) tmp127 = tmp126 > tmp1 tmp128 = tmp127.to(tl.float32) tmp129 = tl.broadcast_to(tmp128, [RBLOCK]) tmp131 = triton_helpers.promote_to_tensor(tl.sum(tmp129, 0)) tmp132 = triton_helpers.maximum(tmp131, tmp7) tmp133 = tmp9 / tmp132 tmp134 = tmp133 * tmp11 tmp135 = triton_helpers.maximum(tmp134, tmp13) tmp136 = triton_helpers.minimum(tmp135, tmp15) tmp137 = tmp136 * tmp1 tmp138 = tmp137 * tmp128 tmp140 = tmp139 + tmp20 tmp141 = tl_math.log(tmp140) tmp142 = tmp138 * tmp141 tmp143 = tmp136 - tmp7 tmp144 = tmp137 / tmp143 tmp145 = tmp7 - tmp128 tmp146 = tmp144 * tmp145 tmp147 = tmp7 - tmp139 tmp148 = tmp147 + tmp20 tmp149 = tl_math.log(tmp148) tmp150 = tmp146 * tmp149 tmp151 = tmp142 + tmp150 tmp152 = tl.broadcast_to(tmp151, [RBLOCK]) tmp154 = triton_helpers.promote_to_tensor(tl.sum(tmp152, 0)) tmp155 = tmp35 / tmp11 tmp156 = -tmp155 tmp157 = tmp154 / tmp11 tmp158 = -tmp157 tmp159 = tmp156 + tmp158 tmp160 = tmp103 * tmp1 tmp161 = tmp160 / tmp98 tmp162 = -1.0 tmp163 = tmp125 * tmp162 tmp164 = tmp163 / tmp105 tmp165 = tmp159 * tmp7 tmp166 = 10.0 tmp167 = tmp161 * tmp166 tmp168 = tmp165 + tmp167 tmp169 = tmp164 * tmp7 tmp170 = tmp168 + tmp169 tl.debug_barrier() tl.store(in_out_ptr2 + tl.full([1], 0, tl.int32), tmp159, None) tl.debug_barrier() tl.store(in_out_ptr1 + tl.full([1], 0, tl.int32), tmp161, None) tl.debug_barrier() tl.store(in_out_ptr3 + tl.full([1], 0, tl.int32), tmp164, None) tl.store(out_ptr12 + tl.full([1], 0, tl.int32), tmp170, None) def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg5_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg6_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf11 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch. float32, device=device(type='cuda', index=0), pin_memory=False) buf12 = buf11 del buf11 buf7 = torch.ops.aten.rand.default([4, 4, 4, 4], dtype=torch. float32, device=device(type='cuda', index=0), pin_memory=False) buf8 = buf7 del buf7 buf2 = empty_strided_cuda((), (), torch.float32) buf14 = buf12 del buf12 buf15 = empty_strided_cuda((), (), torch.float32) buf16 = buf15 del buf15 buf22 = empty_strided_cuda((), (), torch.float32) buf6 = buf2 del buf2 buf18 = buf16 del buf16 buf23 = buf22 del buf22 buf24 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused__to_copy_add_bitwise_and_clamp_clone_div_gt_le_log_mean_mse_loss_mul_neg_ones_like_reciprocal_rsub_sub_sum_0[ grid(1)](buf14, buf18, buf6, buf23, arg4_1, arg3_1, arg1_1, arg2_1, buf8, arg0_1, arg6_1, arg5_1, buf24, 1, 256, num_warps= 2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 del arg5_1 del arg6_1 del buf14 del buf8 return buf24, buf6, buf18, buf23 def binary_logistic_regression_loss(reg_score, label, threshold=0.5, ratio_range=(1.05, 21), eps=1e-05): """Binary Logistic Regression Loss.""" label = label.view(-1) reg_score = reg_score.contiguous().view(-1) pmask = (label > threshold).float() num_positive = max(torch.sum(pmask), 1) num_entries = len(label) ratio = num_entries / num_positive ratio = min(max(ratio, ratio_range[0]), ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss = coef_1 * pmask * torch.log(reg_score + eps) + coef_0 * (1.0 - pmask ) * torch.log(1.0 - reg_score + eps) loss = -torch.mean(loss) return loss class BMNLossNew(nn.Module): """BMN Loss. From paper https://arxiv.org/abs/1907.09702, code https://github.com/JJBOY/BMN-Boundary-Matching-Network. It will calculate loss for BMN Model. This loss is a weighted sum of 1) temporal evaluation loss based on confidence score of start and end positions. 2) proposal evaluation regression loss based on confidence scores of candidate proposals. 3) proposal evaluation classification loss based on classification results of candidate proposals. """ @staticmethod def tem_loss(pred_start, pred_end, gt_start, gt_end): """Calculate Temporal Evaluation Module Loss. This function calculate the binary_logistic_regression_loss for start and end respectively and returns the sum of their losses. Args: pred_start (torch.Tensor): Predicted start score by BMN model. pred_end (torch.Tensor): Predicted end score by BMN model. gt_start (torch.Tensor): Groundtruth confidence score for start. gt_end (torch.Tensor): Groundtruth confidence score for end. Returns: torch.Tensor: Returned binary logistic loss. """ loss_start = binary_logistic_regression_loss(pred_start, gt_start) loss_end = binary_logistic_regression_loss(pred_end, gt_end) loss = loss_start + loss_end return loss @staticmethod def pem_reg_loss(pred_score, gt_iou_map, mask, high_temporal_iou_threshold=0.7, low_temporal_iou_threshold=0.3): """Calculate Proposal Evaluation Module Regression Loss. Args: pred_score (torch.Tensor): Predicted temporal_iou score by BMN. gt_iou_map (torch.Tensor): Groundtruth temporal_iou score. mask (torch.Tensor): Boundary-Matching mask. high_temporal_iou_threshold (float): Higher threshold of temporal_iou. Default: 0.7. low_temporal_iou_threshold (float): Higher threshold of temporal_iou. Default: 0.3. Returns: torch.Tensor: Proposal evalutaion regression loss. """ u_hmask = (gt_iou_map > high_temporal_iou_threshold).float() u_mmask = ((gt_iou_map <= high_temporal_iou_threshold) & ( gt_iou_map > low_temporal_iou_threshold)).float() u_lmask = ((gt_iou_map <= low_temporal_iou_threshold) & (gt_iou_map > 0.0)).float() u_lmask = u_lmask * mask num_h = torch.sum(u_hmask) num_m = torch.sum(u_mmask) num_l = torch.sum(u_lmask) r_m = num_h / num_m u_smmask = torch.rand_like(gt_iou_map) u_smmask = u_mmask * u_smmask u_smmask = (u_smmask > 1.0 - r_m).float() r_l = num_h / num_l u_slmask = torch.rand_like(gt_iou_map) u_slmask = u_lmask * u_slmask u_slmask = (u_slmask > 1.0 - r_l).float() weights = u_hmask + u_smmask + u_slmask loss = F.mse_loss(pred_score * weights, gt_iou_map * weights) loss = 0.5 * torch.sum(loss * torch.ones_like(weights)) / torch.sum( weights) return loss @staticmethod def pem_cls_loss(pred_score, gt_iou_map, mask, threshold=0.9, ratio_range=(1.05, 21), eps=1e-05): """Calculate Proposal Evaluation Module Classification Loss. Args: pred_score (torch.Tensor): Predicted temporal_iou score by BMN. gt_iou_map (torch.Tensor): Groundtruth temporal_iou score. mask (torch.Tensor): Boundary-Matching mask. threshold (float): Threshold of temporal_iou for positive instances. Default: 0.9. ratio_range (tuple): Lower bound and upper bound for ratio. Default: (1.05, 21) eps (float): Epsilon for small value. Default: 1e-5 Returns: torch.Tensor: Proposal evalutaion classification loss. """ pmask = (gt_iou_map > threshold).float() nmask = (gt_iou_map <= threshold).float() nmask = nmask * mask num_positive = max(torch.sum(pmask), 1) num_entries = num_positive + torch.sum(nmask) ratio = num_entries / num_positive ratio = torch.clamp(ratio, ratio_range[0], ratio_range[1]) coef_0 = 0.5 * ratio / (ratio - 1) coef_1 = 0.5 * ratio loss_pos = coef_1 * torch.log(pred_score + eps) * pmask loss_neg = coef_0 * torch.log(1.0 - pred_score + eps) * nmask loss = -1 * torch.sum(loss_pos + loss_neg) / num_entries return loss def forward(self, input_0, input_1, input_2, input_3, input_4, input_5, input_6): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 arg4_1 = input_4 arg5_1 = input_5 arg6_1 = input_6 output = call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1]) return output[0], output[1], output[2], output[3]
Alexis-Fab/mmaction2
BMNLoss
false
11,226
[ "Apache-2.0" ]
0
6f76bb465a7164f907318cf58f77fc3d613f8f0f
https://github.com/Alexis-Fab/mmaction2/tree/6f76bb465a7164f907318cf58f77fc3d613f8f0f
AffineChannel2d
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/fb/cfbeyr3lhfnhw7ca27iubsdbjxh3gnvnzbr2oxoqiwodjw5uc7dc.py # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] # Source node to ATen node mapping: # add => add # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %view), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %view_1), kwargs = {}) triton_poi_fused_add_mul_0 = async_compile.triton('triton_poi_fused_add_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp4 = tmp2 + tmp3 tl.store(out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, ), (1, )) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, add], Original ATen: [aten.mul, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_0.run(primals_2, primals_1, primals_3, buf0, 256, grid=grid(256), stream=stream0) del primals_1 del primals_3 return (buf0, primals_2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.utils.data from torch import nn class AffineChannel2d(nn.Module): """ A simple channel-wise affine transformation operation """ def __init__(self, num_channels, eps=1e-05): super().__init__() self.num_channels = num_channels self.eps = eps self.weight = nn.Parameter(torch.Tensor(num_channels)) self.bias = nn.Parameter(torch.Tensor(num_channels)) self.weight.data.uniform_() self.bias.data.zero_() def forward(self, x): return x * self.weight.view(1, self.num_channels, 1, 1 ) + self.bias.view(1, self.num_channels, 1, 1) def __repr__(self): return 'AffineChannel2d(num_features={}, eps={})'.format(self. num_channels, self.eps) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_channels': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.utils.data from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_mul_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp4 = tmp2 + tmp3 tl.store(out_ptr0 + x3, tmp4, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4,), (1,)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_mul_0[grid(256)](primals_2, primals_1, primals_3, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 del primals_3 return buf0, primals_2 class AffineChannel2dNew(nn.Module): """ A simple channel-wise affine transformation operation """ def __init__(self, num_channels, eps=1e-05): super().__init__() self.num_channels = num_channels self.eps = eps self.weight = nn.Parameter(torch.Tensor(num_channels)) self.bias = nn.Parameter(torch.Tensor(num_channels)) self.weight.data.uniform_() self.bias.data.zero_() def __repr__(self): return 'AffineChannel2d(num_features={}, eps={})'.format(self. num_channels, self.eps) def forward(self, input_0): primals_1 = self.weight primals_3 = self.bias primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
BUPT-PRIV/detectron2
AffineChannel2d
false
11,227
[ "Apache-2.0" ]
0
3163664cd5f43d50ea1966f410dc82410b9ccbf4
https://github.com/BUPT-PRIV/detectron2/tree/3163664cd5f43d50ea1966f410dc82410b9ccbf4
Accuracy
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/wx/cwxwvlntewdrqi2r4caciy5ht4jdvafnhtiqncr4lo4aegcb4imz.py # Topologically Sorted Source Nodes: [softmax], Original ATen: [aten._softmax] # Source node to ATen node mapping: # softmax => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%arg0_1, [-1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_0 = async_compile.triton('triton_poi_fused__softmax_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/zj/czjdjyrflbcisam4biblebtuqyafkq32kfbtpbzsspl6b4xtphh2.py # Topologically Sorted Source Nodes: [softmax, prediction], Original ATen: [aten._softmax, aten.argmax] # Source node to ATen node mapping: # prediction => argmax # softmax => div, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [-1], True), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) # %argmax : [num_users=1] = call_function[target=torch.ops.aten.argmax.default](args = (%div, -2), kwargs = {}) triton_poi_fused__softmax_argmax_1 = async_compile.triton('triton_poi_fused__softmax_argmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i64', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_argmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 20, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_argmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x1)), xmask) tmp1 = tl.load(in_ptr0 + (16*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (16*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (16*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (16*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (4 + x0 + (16*x1)), xmask) tmp10 = tl.load(in_ptr0 + (4 + (16*x1)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (5 + (16*x1)), xmask, eviction_policy='evict_last') tmp13 = tl.load(in_ptr0 + (6 + (16*x1)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (7 + (16*x1)), xmask, eviction_policy='evict_last') tmp33 = tl.load(in_ptr0 + (8 + x0 + (16*x1)), xmask) tmp34 = tl.load(in_ptr0 + (8 + (16*x1)), xmask, eviction_policy='evict_last') tmp35 = tl.load(in_ptr0 + (9 + (16*x1)), xmask, eviction_policy='evict_last') tmp37 = tl.load(in_ptr0 + (10 + (16*x1)), xmask, eviction_policy='evict_last') tmp39 = tl.load(in_ptr0 + (11 + (16*x1)), xmask, eviction_policy='evict_last') tmp56 = tl.load(in_ptr0 + (12 + x0 + (16*x1)), xmask) tmp57 = tl.load(in_ptr0 + (12 + (16*x1)), xmask, eviction_policy='evict_last') tmp58 = tl.load(in_ptr0 + (13 + (16*x1)), xmask, eviction_policy='evict_last') tmp60 = tl.load(in_ptr0 + (14 + (16*x1)), xmask, eviction_policy='evict_last') tmp62 = tl.load(in_ptr0 + (15 + (16*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp12 = tmp10 + tmp11 tmp14 = tmp12 + tmp13 tmp16 = tmp14 + tmp15 tmp17 = tmp9 / tmp16 tmp18 = tmp8 > tmp17 tmp19 = tmp8 == tmp17 tmp20 = tmp8 != tmp8 tmp21 = tmp17 != tmp17 tmp22 = tmp20 > tmp21 tmp23 = tmp18 | tmp22 tmp24 = tmp20 & tmp21 tmp25 = tmp19 | tmp24 tmp26 = tl.full([1], 0, tl.int64) tmp27 = tl.full([1], 1, tl.int64) tmp28 = tmp26 < tmp27 tmp29 = tmp25 & tmp28 tmp30 = tmp23 | tmp29 tmp31 = tl.where(tmp30, tmp8, tmp17) tmp32 = tl.where(tmp30, tmp26, tmp27) tmp36 = tmp34 + tmp35 tmp38 = tmp36 + tmp37 tmp40 = tmp38 + tmp39 tmp41 = tmp33 / tmp40 tmp42 = tmp31 > tmp41 tmp43 = tmp31 == tmp41 tmp44 = tmp31 != tmp31 tmp45 = tmp41 != tmp41 tmp46 = tmp44 > tmp45 tmp47 = tmp42 | tmp46 tmp48 = tmp44 & tmp45 tmp49 = tmp43 | tmp48 tmp50 = tl.full([1], 2, tl.int64) tmp51 = tmp32 < tmp50 tmp52 = tmp49 & tmp51 tmp53 = tmp47 | tmp52 tmp54 = tl.where(tmp53, tmp31, tmp41) tmp55 = tl.where(tmp53, tmp32, tmp50) tmp59 = tmp57 + tmp58 tmp61 = tmp59 + tmp60 tmp63 = tmp61 + tmp62 tmp64 = tmp56 / tmp63 tmp65 = tmp54 > tmp64 tmp66 = tmp54 == tmp64 tmp67 = tmp54 != tmp54 tmp68 = tmp64 != tmp64 tmp69 = tmp67 > tmp68 tmp70 = tmp65 | tmp69 tmp71 = tmp67 & tmp68 tmp72 = tmp66 | tmp71 tmp73 = tl.full([1], 3, tl.int64) tmp74 = tmp55 < tmp73 tmp75 = tmp72 & tmp74 tmp76 = tmp70 | tmp75 tmp77 = tl.where(tmp76, tmp54, tmp64) tmp78 = tl.where(tmp76, tmp55, tmp73) tl.store(out_ptr0 + (x2), tmp78, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/dp/cdpemgebi7is3mfuap3dlfrpijxckzdvrrnaly6xxb4yenoeidgc.py # Topologically Sorted Source Nodes: [scores, sum_1, truediv], Original ATen: [aten.eq, aten.sum, aten.div] # Source node to ATen node mapping: # scores => eq # sum_1 => sum_2 # truediv => div_1 # Graph fragment: # %eq : [num_users=1] = call_function[target=torch.ops.aten.eq.Tensor](args = (%argmax, %arg1_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%eq,), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sum_2, 256.0), kwargs = {}) triton_per_fused_div_eq_sum_2 = async_compile.triton('triton_per_fused_div_eq_sum_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*i64', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_div_eq_sum_2', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_div_eq_sum_2(in_ptr0, in_ptr1, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex % 64 r2 = rindex tmp0 = tl.load(in_ptr0 + (r0), None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + (r2), None) tmp1 = tmp0.to(tl.float32) tmp3 = tmp1 == tmp2 tmp4 = tmp3.to(tl.int64) tmp5 = tl.broadcast_to(tmp4, [RBLOCK]) tmp7 = triton_helpers.promote_to_tensor(tl.sum(tmp5, 0)) tmp8 = tmp7.to(tl.float32) tmp9 = 0.00390625 tmp10 = tmp8 * tmp9 tl.store(out_ptr1 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [softmax], Original ATen: [aten._softmax] stream0 = get_raw_stream(0) triton_poi_fused__softmax_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.int64) # Topologically Sorted Source Nodes: [softmax, prediction], Original ATen: [aten._softmax, aten.argmax] triton_poi_fused__softmax_argmax_1.run(buf0, buf1, 64, grid=grid(64), stream=stream0) del buf0 buf3 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [scores, sum_1, truediv], Original ATen: [aten.eq, aten.sum, aten.div] triton_per_fused_div_eq_sum_2.run(buf1, arg1_1, buf3, 1, 256, grid=grid(1), stream=stream0) del arg1_1 del buf1 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn.functional as F import torch.nn as nn class Accuracy(nn.Module): def __init__(self): super().__init__() def forward(self, prediction, target, mask=None, token_dim=-1, sequence_dim=-2): prediction = F.softmax(prediction, token_dim).argmax(sequence_dim) scores = prediction == target n_padded = 0 if mask is not None: n_padded = (mask == 0).sum() return scores.sum() / float(scores.numel() - n_padded) def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__softmax_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x2, tmp9, xmask) @triton.jit def triton_poi_fused__softmax_argmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x1), xmask) tmp1 = tl.load(in_ptr0 + 16 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 16 * x1), xmask, eviction_policy='evict_last' ) tmp4 = tl.load(in_ptr0 + (2 + 16 * x1), xmask, eviction_policy='evict_last' ) tmp6 = tl.load(in_ptr0 + (3 + 16 * x1), xmask, eviction_policy='evict_last' ) tmp9 = tl.load(in_ptr0 + (4 + x0 + 16 * x1), xmask) tmp10 = tl.load(in_ptr0 + (4 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr0 + (5 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp13 = tl.load(in_ptr0 + (6 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr0 + (7 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp33 = tl.load(in_ptr0 + (8 + x0 + 16 * x1), xmask) tmp34 = tl.load(in_ptr0 + (8 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp35 = tl.load(in_ptr0 + (9 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp37 = tl.load(in_ptr0 + (10 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp39 = tl.load(in_ptr0 + (11 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp56 = tl.load(in_ptr0 + (12 + x0 + 16 * x1), xmask) tmp57 = tl.load(in_ptr0 + (12 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp58 = tl.load(in_ptr0 + (13 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp60 = tl.load(in_ptr0 + (14 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp62 = tl.load(in_ptr0 + (15 + 16 * x1), xmask, eviction_policy= 'evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tmp12 = tmp10 + tmp11 tmp14 = tmp12 + tmp13 tmp16 = tmp14 + tmp15 tmp17 = tmp9 / tmp16 tmp18 = tmp8 > tmp17 tmp19 = tmp8 == tmp17 tmp20 = tmp8 != tmp8 tmp21 = tmp17 != tmp17 tmp22 = tmp20 > tmp21 tmp23 = tmp18 | tmp22 tmp24 = tmp20 & tmp21 tmp25 = tmp19 | tmp24 tmp26 = tl.full([1], 0, tl.int64) tmp27 = tl.full([1], 1, tl.int64) tmp28 = tmp26 < tmp27 tmp29 = tmp25 & tmp28 tmp30 = tmp23 | tmp29 tmp31 = tl.where(tmp30, tmp8, tmp17) tmp32 = tl.where(tmp30, tmp26, tmp27) tmp36 = tmp34 + tmp35 tmp38 = tmp36 + tmp37 tmp40 = tmp38 + tmp39 tmp41 = tmp33 / tmp40 tmp42 = tmp31 > tmp41 tmp43 = tmp31 == tmp41 tmp44 = tmp31 != tmp31 tmp45 = tmp41 != tmp41 tmp46 = tmp44 > tmp45 tmp47 = tmp42 | tmp46 tmp48 = tmp44 & tmp45 tmp49 = tmp43 | tmp48 tmp50 = tl.full([1], 2, tl.int64) tmp51 = tmp32 < tmp50 tmp52 = tmp49 & tmp51 tmp53 = tmp47 | tmp52 tmp54 = tl.where(tmp53, tmp31, tmp41) tmp55 = tl.where(tmp53, tmp32, tmp50) tmp59 = tmp57 + tmp58 tmp61 = tmp59 + tmp60 tmp63 = tmp61 + tmp62 tmp64 = tmp56 / tmp63 tmp65 = tmp54 > tmp64 tmp66 = tmp54 == tmp64 tmp67 = tmp54 != tmp54 tmp68 = tmp64 != tmp64 tmp69 = tmp67 > tmp68 tmp70 = tmp65 | tmp69 tmp71 = tmp67 & tmp68 tmp72 = tmp66 | tmp71 tmp73 = tl.full([1], 3, tl.int64) tmp74 = tmp55 < tmp73 tmp75 = tmp72 & tmp74 tmp76 = tmp70 | tmp75 tl.where(tmp76, tmp54, tmp64) tmp78 = tl.where(tmp76, tmp55, tmp73) tl.store(out_ptr0 + x2, tmp78, xmask) @triton.jit def triton_per_fused_div_eq_sum_2(in_ptr0, in_ptr1, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex % 64 r2 = rindex tmp0 = tl.load(in_ptr0 + r0, None, eviction_policy='evict_last') tmp2 = tl.load(in_ptr1 + r2, None) tmp1 = tmp0.to(tl.float32) tmp3 = tmp1 == tmp2 tmp4 = tmp3.to(tl.int64) tmp5 = tl.broadcast_to(tmp4, [RBLOCK]) tmp7 = triton_helpers.promote_to_tensor(tl.sum(tmp5, 0)) tmp8 = tmp7.to(tl.float32) tmp9 = 0.00390625 tmp10 = tmp8 * tmp9 tl.store(out_ptr1 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__softmax_0[grid(256)](arg0_1, buf0, 256, XBLOCK= 256, num_warps=4, num_stages=1) del arg0_1 buf1 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.int64) triton_poi_fused__softmax_argmax_1[grid(64)](buf0, buf1, 64, XBLOCK =64, num_warps=1, num_stages=1) del buf0 buf3 = empty_strided_cuda((), (), torch.float32) triton_per_fused_div_eq_sum_2[grid(1)](buf1, arg1_1, buf3, 1, 256, num_warps=2, num_stages=1) del arg1_1 del buf1 return buf3, class AccuracyNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
BShennette/Pno-ai
Accuracy
false
11,228
[ "MIT" ]
0
486434bfb40887d06e3d12a66831b9e0e7d020c2
https://github.com/BShennette/Pno-ai/tree/486434bfb40887d06e3d12a66831b9e0e7d020c2
TripletLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/py/cpyk5b6mlotalxultdmmebirncntxpef6b6uohknjluaz76jqen3.py # Topologically Sorted Source Nodes: [sub, pow_1, distance_positive, sub_1, pow_2, distance_negative, sub_2, add, losses, mean], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add, aten.relu, aten.mean] # Source node to ATen node mapping: # add => add # distance_negative => sum_2 # distance_positive => sum_1 # losses => relu # mean => mean # pow_1 => pow_1 # pow_2 => pow_2 # sub => sub # sub_1 => sub_1 # sub_2 => sub_2 # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1]), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg2_1), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_1, 2), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_2, [1]), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sum_1, %sum_2), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sub_2, 4), kwargs = {}) # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%add,), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%relu,), kwargs = {}) triton_per_fused_add_mean_pow_relu_sub_sum_0 = async_compile.triton('triton_per_fused_add_mean_pow_relu_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {4: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=(4,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_mean_pow_relu_sub_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 12, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_mean_pow_relu_sub_sum_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = (rindex // 16) r2 = rindex tmp0 = tl.load(in_ptr0 + (r0 + (64*r1)), None) tmp1 = tl.load(in_ptr1 + (r0 + (64*r1)), None) tmp4 = tl.load(in_ptr0 + (16 + r0 + (64*r1)), None) tmp5 = tl.load(in_ptr1 + (16 + r0 + (64*r1)), None) tmp9 = tl.load(in_ptr0 + (32 + r0 + (64*r1)), None) tmp10 = tl.load(in_ptr1 + (32 + r0 + (64*r1)), None) tmp14 = tl.load(in_ptr0 + (48 + r0 + (64*r1)), None) tmp15 = tl.load(in_ptr1 + (48 + r0 + (64*r1)), None) tmp19 = tl.load(in_ptr2 + (r0 + (64*r1)), None) tmp22 = tl.load(in_ptr2 + (16 + r0 + (64*r1)), None) tmp26 = tl.load(in_ptr2 + (32 + r0 + (64*r1)), None) tmp30 = tl.load(in_ptr2 + (48 + r0 + (64*r1)), None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tmp20 = tmp0 - tmp19 tmp21 = tmp20 * tmp20 tmp23 = tmp4 - tmp22 tmp24 = tmp23 * tmp23 tmp25 = tmp21 + tmp24 tmp27 = tmp9 - tmp26 tmp28 = tmp27 * tmp27 tmp29 = tmp25 + tmp28 tmp31 = tmp14 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tmp29 + tmp32 tmp34 = tmp18 - tmp33 tmp35 = 4.0 tmp36 = tmp34 + tmp35 tmp37 = tl.full([1, 1], 0, tl.int32) tmp38 = triton_helpers.maximum(tmp37, tmp36) tmp39 = tl.broadcast_to(tmp38, [XBLOCK, RBLOCK]) tmp41 = tl.sum(tmp39, 1)[:, None] tmp42 = 64.0 tmp43 = tmp41 / tmp42 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp43, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [sub, pow_1, distance_positive, sub_1, pow_2, distance_negative, sub_2, add, losses, mean], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add, aten.relu, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_add_mean_pow_relu_sub_sum_0.run(buf2, arg0_1, arg1_1, arg2_1, 1, 64, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class TripletLoss(nn.Module): """ Triplet loss Takes embeddings of an anchor sample, a positive sample and a negative sample """ def __init__(self, margin): super(TripletLoss, self).__init__() self.margin = margin def forward(self, anchor, positive, negative, size_average=True): distance_positive = (anchor - positive).pow(2).sum(1) distance_negative = (anchor - negative).pow(2).sum(1) losses = F.relu(distance_positive - distance_negative + self.margin) return losses.mean() if size_average else losses.sum() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {'margin': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_add_mean_pow_relu_sub_sum_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex % 16 r1 = rindex // 16 tmp0 = tl.load(in_ptr0 + (r0 + 64 * r1), None) tmp1 = tl.load(in_ptr1 + (r0 + 64 * r1), None) tmp4 = tl.load(in_ptr0 + (16 + r0 + 64 * r1), None) tmp5 = tl.load(in_ptr1 + (16 + r0 + 64 * r1), None) tmp9 = tl.load(in_ptr0 + (32 + r0 + 64 * r1), None) tmp10 = tl.load(in_ptr1 + (32 + r0 + 64 * r1), None) tmp14 = tl.load(in_ptr0 + (48 + r0 + 64 * r1), None) tmp15 = tl.load(in_ptr1 + (48 + r0 + 64 * r1), None) tmp19 = tl.load(in_ptr2 + (r0 + 64 * r1), None) tmp22 = tl.load(in_ptr2 + (16 + r0 + 64 * r1), None) tmp26 = tl.load(in_ptr2 + (32 + r0 + 64 * r1), None) tmp30 = tl.load(in_ptr2 + (48 + r0 + 64 * r1), None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tmp20 = tmp0 - tmp19 tmp21 = tmp20 * tmp20 tmp23 = tmp4 - tmp22 tmp24 = tmp23 * tmp23 tmp25 = tmp21 + tmp24 tmp27 = tmp9 - tmp26 tmp28 = tmp27 * tmp27 tmp29 = tmp25 + tmp28 tmp31 = tmp14 - tmp30 tmp32 = tmp31 * tmp31 tmp33 = tmp29 + tmp32 tmp34 = tmp18 - tmp33 tmp35 = 4.0 tmp36 = tmp34 + tmp35 tmp37 = tl.full([1, 1], 0, tl.int32) tmp38 = triton_helpers.maximum(tmp37, tmp36) tmp39 = tl.broadcast_to(tmp38, [XBLOCK, RBLOCK]) tmp41 = tl.sum(tmp39, 1)[:, None] tmp42 = 64.0 tmp43 = tmp41 / tmp42 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp43, None) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 get_raw_stream(0) triton_per_fused_add_mean_pow_relu_sub_sum_0[grid(1)](buf2, arg0_1, arg1_1, arg2_1, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 return buf2, class TripletLossNew(nn.Module): """ Triplet loss Takes embeddings of an anchor sample, a positive sample and a negative sample """ def __init__(self, margin): super(TripletLossNew, self).__init__() self.margin = margin def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AytacKahveci/siamese-triplet
TripletLoss
false
11,229
[ "BSD-3-Clause" ]
0
09860e36d934bb1773a4d49dbad183a5152cb0b0
https://github.com/AytacKahveci/siamese-triplet/tree/09860e36d934bb1773a4d49dbad183a5152cb0b0
ContrastiveLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/nh/cnh6iem5ybdb3twbxsrnswdgv7527qrbvucjhftq2p4nhirlo2lo.py # Topologically Sorted Source Nodes: [sub, pow_1, distances], Original ATen: [aten.sub, aten.pow, aten.sum] # Source node to ATen node mapping: # distances => sum_1 # pow_1 => pow_1 # sub => sub # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_1 : [num_users=2] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1]), kwargs = {}) triton_poi_fused_pow_sub_sum_0 = async_compile.triton('triton_poi_fused_pow_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_pow_sub_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_pow_sub_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp1 = tl.load(in_ptr1 + (x0 + (64*x1)), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr1 + (16 + x0 + (64*x1)), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp10 = tl.load(in_ptr1 + (32 + x0 + (64*x1)), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp15 = tl.load(in_ptr1 + (48 + x0 + (64*x1)), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tl.store(out_ptr0 + (x2), tmp18, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yu/cyuyrkbzs3boq5rfip75kejn76bd4kpeieqcygt7f7quogzu4q5u.py # Topologically Sorted Source Nodes: [mul, mul_1, add, add_1, sqrt, sub_1, relu, pow_2, mul_2, add_2, losses, mean], Original ATen: [aten.mul, aten.add, aten.sqrt, aten.rsub, aten.relu, aten.pow, aten.mean] # Source node to ATen node mapping: # add => add # add_1 => add_1 # add_2 => add_2 # losses => mul_3 # mean => mean # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # pow_2 => pow_2 # relu => relu # sqrt => sqrt # sub_1 => sub_1 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg2_1, %sum_1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg2_1, -1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_1, 1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sum_1, 1e-09), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (4, %sqrt), kwargs = {}) # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%sub_1,), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%relu, 2), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, %pow_2), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_2), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add_2, 0.5), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%mul_3,), kwargs = {}) triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1 = async_compile.triton('triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r2 = rindex r0 = rindex % 64 tmp0 = tl.load(in_ptr0 + (r2), None) tmp1 = tl.load(in_ptr1 + (r0), None, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp3 = -1.0 tmp4 = tmp0 * tmp3 tmp5 = 1.0 tmp6 = tmp4 + tmp5 tmp7 = 1e-09 tmp8 = tmp1 + tmp7 tmp9 = libdevice.sqrt(tmp8) tmp10 = 4.0 tmp11 = tmp10 - tmp9 tmp12 = tl.full([1], 0, tl.int32) tmp13 = triton_helpers.maximum(tmp12, tmp11) tmp14 = tmp13 * tmp13 tmp15 = tmp6 * tmp14 tmp16 = tmp2 + tmp15 tmp17 = 0.5 tmp18 = tmp16 * tmp17 tmp19 = tl.broadcast_to(tmp18, [RBLOCK]) tmp21 = triton_helpers.promote_to_tensor(tl.sum(tmp19, 0)) tmp22 = 256.0 tmp23 = tmp21 / tmp22 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp23, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, pow_1, distances], Original ATen: [aten.sub, aten.pow, aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_pow_sub_sum_0.run(arg0_1, arg1_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [mul, mul_1, add, add_1, sqrt, sub_1, relu, pow_2, mul_2, add_2, losses, mean], Original ATen: [aten.mul, aten.add, aten.sqrt, aten.rsub, aten.relu, aten.pow, aten.mean] triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1.run(buf2, arg2_1, buf0, 1, 256, grid=grid(1), stream=stream0) del arg2_1 del buf0 return (buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class ContrastiveLoss(nn.Module): """ Contrastive loss Takes embeddings of two samples and a target label == 1 if samples are from the same class and label == 0 otherwise """ def __init__(self, margin): super(ContrastiveLoss, self).__init__() self.margin = margin self.eps = 1e-09 def forward(self, output1, output2, target, size_average=True): distances = (output2 - output1).pow(2).sum(1) losses = 0.5 * (target.float() * distances + (1 + -1 * target). float() * F.relu(self.margin - (distances + self.eps).sqrt()). pow(2)) return losses.mean() if size_average else losses.sum() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {'margin': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_pow_sub_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp1 = tl.load(in_ptr1 + (x0 + 64 * x1), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr1 + (16 + x0 + 64 * x1), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp10 = tl.load(in_ptr1 + (32 + x0 + 64 * x1), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp15 = tl.load(in_ptr1 + (48 + x0 + 64 * x1), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tl.store(out_ptr0 + x2, tmp18, xmask) @triton.jit def triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r2 = rindex r0 = rindex % 64 tmp0 = tl.load(in_ptr0 + r2, None) tmp1 = tl.load(in_ptr1 + r0, None, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp3 = -1.0 tmp4 = tmp0 * tmp3 tmp5 = 1.0 tmp6 = tmp4 + tmp5 tmp7 = 1e-09 tmp8 = tmp1 + tmp7 tmp9 = libdevice.sqrt(tmp8) tmp10 = 4.0 tmp11 = tmp10 - tmp9 tmp12 = tl.full([1], 0, tl.int32) tmp13 = triton_helpers.maximum(tmp12, tmp11) tmp14 = tmp13 * tmp13 tmp15 = tmp6 * tmp14 tmp16 = tmp2 + tmp15 tmp17 = 0.5 tmp18 = tmp16 * tmp17 tmp19 = tl.broadcast_to(tmp18, [RBLOCK]) tmp21 = triton_helpers.promote_to_tensor(tl.sum(tmp19, 0)) tmp22 = 256.0 tmp23 = tmp21 / tmp22 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp23, None) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_pow_sub_sum_0[grid(64)](arg0_1, arg1_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((), (), torch.float32) buf2 = buf1 del buf1 triton_per_fused_add_mean_mul_pow_relu_rsub_sqrt_1[grid(1)](buf2, arg2_1, buf0, 1, 256, num_warps=2, num_stages=1) del arg2_1 del buf0 return buf2, class ContrastiveLossNew(nn.Module): """ Contrastive loss Takes embeddings of two samples and a target label == 1 if samples are from the same class and label == 0 otherwise """ def __init__(self, margin): super(ContrastiveLossNew, self).__init__() self.margin = margin self.eps = 1e-09 def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
AytacKahveci/siamese-triplet
ContrastiveLoss
false
11,230
[ "BSD-3-Clause" ]
0
09860e36d934bb1773a4d49dbad183a5152cb0b0
https://github.com/AytacKahveci/siamese-triplet/tree/09860e36d934bb1773a4d49dbad183a5152cb0b0
MSELoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/3o/c3ojeovop77jtjsbc2sbf6phxmf3ewz3f7gszih7ehz6obviaiu2.py # Topologically Sorted Source Nodes: [loss, loss_1, loss_2], Original ATen: [aten.mse_loss, aten.mean, aten.mul] # Source node to ATen node mapping: # loss => pow_1, sub # loss_1 => mean # loss_2 => mul # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%pow_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_mean_mse_loss_mul_0 = async_compile.triton('triton_per_fused_mean_mse_loss_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_mse_loss_mul_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_mse_loss_mul_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp10, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [loss, loss_1, loss_2], Original ATen: [aten.mse_loss, aten.mean, aten.mul] stream0 = get_raw_stream(0) triton_per_fused_mean_mse_loss_mul_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def mse_loss(pred, target): return F.mse_loss(pred, target, reduction='none') class MSELoss(nn.Module): def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None): loss = self.loss_weight * mse_loss(pred, target, weight, reduction= self.reduction, avg_factor=avg_factor) return loss def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_mean_mse_loss_mul_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp6 = triton_helpers.promote_to_tensor(tl.sum(tmp4, 0)) tmp7 = 256.0 tmp8 = tmp6 / tmp7 tmp9 = 1.0 tmp10 = tmp8 * tmp9 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp10, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_mean_mse_loss_mul_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def mse_loss(pred, target): return F.mse_loss(pred, target, reduction='none') class MSELossNew(nn.Module): def __init__(self, reduction='mean', loss_weight=1.0): super().__init__() self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AtticusJohnson/mmdetection
MSELoss
false
11,231
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
Net
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/zv/czvfpj3ah2lefbwpcuw4esv23bxs5a3ab63ply3ntgbsdktepd5v.py # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # relu => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 18816 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 784) % 6 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/v7/cv7qi7gg3bpfwb3hj7zgy5jlgh7x7wdgqsfsodkjsoverxdjlf6z.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 4704 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x3 = (xindex // 14) x2 = (xindex // 1176) x4 = xindex % 1176 tmp0 = tl.load(in_ptr0 + ((2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (28 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (29 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x4 + (1184*x2)), tmp6, xmask) tl.store(out_ptr1 + (x4 + (1280*x2)), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xe/cxelxvpw3asckozc53rh36773aohp5hqpbp2nos5ymcdqhxvo4bl.py # Topologically Sorted Source Nodes: [conv2d_1, relu_1], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_1 => convolution_1 # relu_1 => relu_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_1,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 6400 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 100) % 16 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/tn/ctnw4tbgfy47ppke77vu7rtiz7dl5o3ahickx4p64n7c5rmrrix6.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_1 => _low_memory_max_pool2d_with_offsets_1, getitem_3 # Graph fragment: # %_low_memory_max_pool2d_with_offsets_1 : [num_users=2] = call_function[target=torch.ops.prims._low_memory_max_pool2d_with_offsets.default](args = (%relu_1, [2, 2], [2, 2], [0, 0], [1, 1], False), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_3 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i8', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 1600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = (xindex // 5) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (10 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (11 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + (x2), tmp15, xmask) tl.store(out_ptr1 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/jn/cjnqv3sgcv5x2iz7ij5zdad6ofabcnonrlksgsxu2ob7n274gz6b.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_3 => relu_2 # Graph fragment: # %add_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default_1, %primals_7), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor_1,), kwargs = {}) triton_poi_fused_relu_4 = async_compile.triton('triton_poi_fused_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 480 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 120 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/6m/c6m6u2ctjb4r4ra3sizrwezzkzegfp2ombflmfg3dwjfci2pen7h.py # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_4 => relu_3 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_9), kwargs = {}) # %relu_3 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_relu_5 = async_compile.triton('triton_poi_fused_relu_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_5', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_5(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 336 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 84 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11 = args args.clear() assert_size_stride(primals_1, (6, 3, 5, 5), (75, 25, 5, 1)) assert_size_stride(primals_2, (6, ), (1, )) assert_size_stride(primals_3, (4, 3, 32, 32), (3072, 1024, 32, 1)) assert_size_stride(primals_4, (16, 6, 5, 5), (150, 25, 5, 1)) assert_size_stride(primals_5, (16, ), (1, )) assert_size_stride(primals_6, (120, 400), (400, 1)) assert_size_stride(primals_7, (120, ), (1, )) assert_size_stride(primals_8, (84, 120), (120, 1)) assert_size_stride(primals_9, (84, ), (1, )) assert_size_stride(primals_10, (10, 84), (84, 1)) assert_size_stride(primals_11, (10, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 6, 28, 28), (4704, 784, 28, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf1, primals_2, 18816, grid=grid(18816), stream=stream0) del primals_2 buf2 = empty_strided_cuda((4, 6, 14, 14), (1184, 196, 14, 1), torch.float32) buf3 = empty_strided_cuda((4, 6, 14, 14), (1280, 196, 14, 1), torch.int8) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf1, buf2, buf3, 4704, grid=grid(4704), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 16, 10, 10), (1600, 100, 10, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [conv2d_1, relu_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf5, primals_5, 6400, grid=grid(6400), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.int8) buf7 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf5, buf6, buf7, 1600, grid=grid(1600), stream=stream0) buf8 = empty_strided_cuda((4, 120), (120, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf7, (4, 400), (400, 1), 0), reinterpret_tensor(primals_6, (400, 120), (1, 400), 0), out=buf8) buf9 = buf8; del buf8 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.relu] triton_poi_fused_relu_4.run(buf9, primals_7, 480, grid=grid(480), stream=stream0) del primals_7 buf10 = empty_strided_cuda((4, 84), (84, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf9, reinterpret_tensor(primals_8, (120, 84), (1, 120), 0), out=buf10) buf11 = buf10; del buf10 # reuse # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.relu] triton_poi_fused_relu_5.run(buf11, primals_9, 336, grid=grid(336), stream=stream0) del primals_9 buf12 = empty_strided_cuda((4, 10), (10, 1), torch.float32) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.addmm] extern_kernels.addmm(primals_11, buf11, reinterpret_tensor(primals_10, (84, 10), (1, 84), 0), alpha=1, beta=1, out=buf12) del primals_11 return (buf12, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 400), (400, 1), 0), buf9, buf11, primals_10, primals_8, primals_6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((6, 3, 5, 5), (75, 25, 5, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((6, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 3, 32, 32), (3072, 1024, 32, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((16, 6, 5, 5), (150, 25, 5, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((120, 400), (400, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((120, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((84, 120), (120, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((84, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((10, 84), (84, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((10, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class Net(nn.Module): def __init__(self): super(Net, self).__init__() self.conv1 = nn.Conv2d(3, 6, 5) self.pool = nn.MaxPool2d(2, 2) self.conv2 = nn.Conv2d(6, 16, 5) self.fc1 = nn.Linear(16 * 5 * 5, 120) self.fc2 = nn.Linear(120, 84) self.fc3 = nn.Linear(84, 10) def forward(self, x): x = self.pool(F.relu(self.conv1(x))) x = self.pool(F.relu(self.conv2(x))) x = x.view(-1, 16 * 5 * 5) x = F.relu(self.fc1(x)) x = F.relu(self.fc2(x)) x = self.fc3(x) return x def get_inputs(): return [torch.rand([4, 3, 32, 32])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 18816 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 784 % 6 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 4704 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x3 = xindex // 14 x2 = xindex // 1176 x4 = xindex % 1176 tmp0 = tl.load(in_ptr0 + (2 * x0 + 56 * x3), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 56 * x3), xmask, eviction_policy ='evict_last') tmp3 = tl.load(in_ptr0 + (28 + 2 * x0 + 56 * x3), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (29 + 2 * x0 + 56 * x3), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x4 + 1184 * x2), tmp6, xmask) tl.store(out_ptr1 + (x4 + 1280 * x2), tmp16, xmask) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 6400 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 100 % 16 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 1600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = xindex // 5 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 20 * x1), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 20 * x1), xmask, eviction_policy ='evict_last') tmp7 = tl.load(in_ptr0 + (10 + 2 * x0 + 20 * x1), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (11 + 2 * x0 + 20 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + x2, tmp15, xmask) tl.store(out_ptr1 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 480 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 120 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused_relu_5(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 336 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 84 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11) = args args.clear() assert_size_stride(primals_1, (6, 3, 5, 5), (75, 25, 5, 1)) assert_size_stride(primals_2, (6,), (1,)) assert_size_stride(primals_3, (4, 3, 32, 32), (3072, 1024, 32, 1)) assert_size_stride(primals_4, (16, 6, 5, 5), (150, 25, 5, 1)) assert_size_stride(primals_5, (16,), (1,)) assert_size_stride(primals_6, (120, 400), (400, 1)) assert_size_stride(primals_7, (120,), (1,)) assert_size_stride(primals_8, (84, 120), (120, 1)) assert_size_stride(primals_9, (84,), (1,)) assert_size_stride(primals_10, (10, 84), (84, 1)) assert_size_stride(primals_11, (10,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 6, 28, 28), (4704, 784, 28, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(18816)](buf1, primals_2, 18816, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((4, 6, 14, 14), (1184, 196, 14, 1), torch .float32) buf3 = empty_strided_cuda((4, 6, 14, 14), (1280, 196, 14, 1), torch .int8) triton_poi_fused_max_pool2d_with_indices_1[grid(4704)](buf1, buf2, buf3, 4704, XBLOCK=256, num_warps=4, num_stages=1) buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 16, 10, 10), (1600, 100, 10, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_relu_2[grid(6400)](buf5, primals_5, 6400, XBLOCK=256, num_warps=4, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.int8) buf7 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.float32 ) triton_poi_fused_max_pool2d_with_indices_3[grid(1600)](buf5, buf6, buf7, 1600, XBLOCK=256, num_warps=4, num_stages=1) buf8 = empty_strided_cuda((4, 120), (120, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf7, (4, 400), (400, 1), 0), reinterpret_tensor(primals_6, (400, 120), (1, 400), 0), out=buf8) buf9 = buf8 del buf8 triton_poi_fused_relu_4[grid(480)](buf9, primals_7, 480, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 buf10 = empty_strided_cuda((4, 84), (84, 1), torch.float32) extern_kernels.mm(buf9, reinterpret_tensor(primals_8, (120, 84), (1, 120), 0), out=buf10) buf11 = buf10 del buf10 triton_poi_fused_relu_5[grid(336)](buf11, primals_9, 336, XBLOCK= 128, num_warps=4, num_stages=1) del primals_9 buf12 = empty_strided_cuda((4, 10), (10, 1), torch.float32) extern_kernels.addmm(primals_11, buf11, reinterpret_tensor( primals_10, (84, 10), (1, 84), 0), alpha=1, beta=1, out=buf12) del primals_11 return (buf12, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 400), (400, 1), 0), buf9, buf11, primals_10, primals_8, primals_6) class NetNew(nn.Module): def __init__(self): super(NetNew, self).__init__() self.conv1 = nn.Conv2d(3, 6, 5) self.pool = nn.MaxPool2d(2, 2) self.conv2 = nn.Conv2d(6, 16, 5) self.fc1 = nn.Linear(16 * 5 * 5, 120) self.fc2 = nn.Linear(120, 84) self.fc3 = nn.Linear(84, 10) def forward(self, input_0): primals_1 = self.conv1.weight primals_2 = self.conv1.bias primals_4 = self.conv2.weight primals_5 = self.conv2.bias primals_6 = self.fc1.weight primals_7 = self.fc1.bias primals_8 = self.fc2.weight primals_9 = self.fc2.bias primals_10 = self.fc3.weight primals_11 = self.fc3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return output[0]
AlexHoffman9/HAET-2021-competition-baseline-code
Net
false
11,232
[ "MIT" ]
0
1d71c94c68c9903854eceda6caf07442930caa44
https://github.com/AlexHoffman9/HAET-2021-competition-baseline-code/tree/1d71c94c68c9903854eceda6caf07442930caa44
ConvNet
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/zv/czvfpj3ah2lefbwpcuw4esv23bxs5a3ab63ply3ntgbsdktepd5v.py # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # relu => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 18816 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 784) % 6 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/v7/cv7qi7gg3bpfwb3hj7zgy5jlgh7x7wdgqsfsodkjsoverxdjlf6z.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 4704 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x3 = (xindex // 14) x2 = (xindex // 1176) x4 = xindex % 1176 tmp0 = tl.load(in_ptr0 + ((2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (28 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (29 + (2*x0) + (56*x3)), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x4 + (1184*x2)), tmp6, xmask) tl.store(out_ptr1 + (x4 + (1280*x2)), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xe/cxelxvpw3asckozc53rh36773aohp5hqpbp2nos5ymcdqhxvo4bl.py # Topologically Sorted Source Nodes: [conv2d_1, relu_1], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_1 => convolution_1 # relu_1 => relu_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_1,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 6400 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 100) % 16 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/tn/ctnw4tbgfy47ppke77vu7rtiz7dl5o3ahickx4p64n7c5rmrrix6.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_1 => _low_memory_max_pool2d_with_offsets_1, getitem_3 # Graph fragment: # %_low_memory_max_pool2d_with_offsets_1 : [num_users=2] = call_function[target=torch.ops.prims._low_memory_max_pool2d_with_offsets.default](args = (%relu_1, [2, 2], [2, 2], [0, 0], [1, 1], False), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_3 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i8', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 1600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = (xindex // 5) x2 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (10 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (11 + (2*x0) + (20*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + (x2), tmp15, xmask) tl.store(out_ptr1 + (x2), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/jn/cjnqv3sgcv5x2iz7ij5zdad6ofabcnonrlksgsxu2ob7n274gz6b.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_3 => relu_2 # Graph fragment: # %add_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default_1, %primals_7), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor_1,), kwargs = {}) triton_poi_fused_relu_4 = async_compile.triton('triton_poi_fused_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 480 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 120 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/6m/c6m6u2ctjb4r4ra3sizrwezzkzegfp2ombflmfg3dwjfci2pen7h.py # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_4 => relu_3 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_9), kwargs = {}) # %relu_3 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_relu_5 = async_compile.triton('triton_poi_fused_relu_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_5', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_5(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 336 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 84 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11 = args args.clear() assert_size_stride(primals_1, (6, 3, 5, 5), (75, 25, 5, 1)) assert_size_stride(primals_2, (6, ), (1, )) assert_size_stride(primals_3, (4, 3, 32, 32), (3072, 1024, 32, 1)) assert_size_stride(primals_4, (16, 6, 5, 5), (150, 25, 5, 1)) assert_size_stride(primals_5, (16, ), (1, )) assert_size_stride(primals_6, (120, 400), (400, 1)) assert_size_stride(primals_7, (120, ), (1, )) assert_size_stride(primals_8, (84, 120), (120, 1)) assert_size_stride(primals_9, (84, ), (1, )) assert_size_stride(primals_10, (5, 84), (84, 1)) assert_size_stride(primals_11, (5, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 6, 28, 28), (4704, 784, 28, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf1, primals_2, 18816, grid=grid(18816), stream=stream0) del primals_2 buf2 = empty_strided_cuda((4, 6, 14, 14), (1184, 196, 14, 1), torch.float32) buf3 = empty_strided_cuda((4, 6, 14, 14), (1280, 196, 14, 1), torch.int8) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf1, buf2, buf3, 4704, grid=grid(4704), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 16, 10, 10), (1600, 100, 10, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [conv2d_1, relu_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf5, primals_5, 6400, grid=grid(6400), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.int8) buf7 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf5, buf6, buf7, 1600, grid=grid(1600), stream=stream0) buf8 = empty_strided_cuda((4, 120), (120, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf7, (4, 400), (400, 1), 0), reinterpret_tensor(primals_6, (400, 120), (1, 400), 0), out=buf8) buf9 = buf8; del buf8 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.relu] triton_poi_fused_relu_4.run(buf9, primals_7, 480, grid=grid(480), stream=stream0) del primals_7 buf10 = empty_strided_cuda((4, 84), (84, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf9, reinterpret_tensor(primals_8, (120, 84), (1, 120), 0), out=buf10) buf11 = buf10; del buf10 # reuse # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.relu] triton_poi_fused_relu_5.run(buf11, primals_9, 336, grid=grid(336), stream=stream0) del primals_9 buf12 = empty_strided_cuda((4, 5), (5, 1), torch.float32) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.addmm] extern_kernels.addmm(primals_11, buf11, reinterpret_tensor(primals_10, (84, 5), (1, 84), 0), alpha=1, beta=1, out=buf12) del primals_11 return (buf12, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 400), (400, 1), 0), buf9, buf11, primals_10, primals_8, primals_6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((6, 3, 5, 5), (75, 25, 5, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((6, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 3, 32, 32), (3072, 1024, 32, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((16, 6, 5, 5), (150, 25, 5, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((16, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((120, 400), (400, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((120, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((84, 120), (120, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((84, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((5, 84), (84, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((5, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class ConvNet(nn.Module): def __init__(self): super(ConvNet, self).__init__() self.conv1 = nn.Conv2d(3, 6, 5) self.pool = nn.MaxPool2d(2, 2) self.conv2 = nn.Conv2d(6, 16, 5) self.fc1 = nn.Linear(16 * 5 * 5, 120) self.fc2 = nn.Linear(120, 84) self.fc3 = nn.Linear(84, 5) def forward(self, x): x = self.pool(F.relu(self.conv1(x))) x = self.pool(F.relu(self.conv2(x))) x = x.view(-1, 16 * 5 * 5) x = F.relu(self.fc1(x)) x = F.relu(self.fc2(x)) x = self.fc3(x) return x def get_inputs(): return [torch.rand([4, 3, 32, 32])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_relu_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 18816 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 784 % 6 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 4704 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x3 = xindex // 14 x2 = xindex // 1176 x4 = xindex % 1176 tmp0 = tl.load(in_ptr0 + (2 * x0 + 56 * x3), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 56 * x3), xmask, eviction_policy ='evict_last') tmp3 = tl.load(in_ptr0 + (28 + 2 * x0 + 56 * x3), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (29 + 2 * x0 + 56 * x3), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x4 + 1184 * x2), tmp6, xmask) tl.store(out_ptr1 + (x4 + 1280 * x2), tmp16, xmask) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 6400 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 100 % 16 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 1600 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 5 x1 = xindex // 5 x2 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 20 * x1), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 20 * x1), xmask, eviction_policy ='evict_last') tmp7 = tl.load(in_ptr0 + (10 + 2 * x0 + 20 * x1), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (11 + 2 * x0 + 20 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + x2, tmp15, xmask) tl.store(out_ptr1 + x2, tmp16, xmask) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 480 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 120 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused_relu_5(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 336 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 84 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11) = args args.clear() assert_size_stride(primals_1, (6, 3, 5, 5), (75, 25, 5, 1)) assert_size_stride(primals_2, (6,), (1,)) assert_size_stride(primals_3, (4, 3, 32, 32), (3072, 1024, 32, 1)) assert_size_stride(primals_4, (16, 6, 5, 5), (150, 25, 5, 1)) assert_size_stride(primals_5, (16,), (1,)) assert_size_stride(primals_6, (120, 400), (400, 1)) assert_size_stride(primals_7, (120,), (1,)) assert_size_stride(primals_8, (84, 120), (120, 1)) assert_size_stride(primals_9, (84,), (1,)) assert_size_stride(primals_10, (5, 84), (84, 1)) assert_size_stride(primals_11, (5,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 6, 28, 28), (4704, 784, 28, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(18816)](buf1, primals_2, 18816, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((4, 6, 14, 14), (1184, 196, 14, 1), torch .float32) buf3 = empty_strided_cuda((4, 6, 14, 14), (1280, 196, 14, 1), torch .int8) triton_poi_fused_max_pool2d_with_indices_1[grid(4704)](buf1, buf2, buf3, 4704, XBLOCK=256, num_warps=4, num_stages=1) buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 16, 10, 10), (1600, 100, 10, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_relu_2[grid(6400)](buf5, primals_5, 6400, XBLOCK=256, num_warps=4, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.int8) buf7 = empty_strided_cuda((4, 16, 5, 5), (400, 25, 5, 1), torch.float32 ) triton_poi_fused_max_pool2d_with_indices_3[grid(1600)](buf5, buf6, buf7, 1600, XBLOCK=256, num_warps=4, num_stages=1) buf8 = empty_strided_cuda((4, 120), (120, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf7, (4, 400), (400, 1), 0), reinterpret_tensor(primals_6, (400, 120), (1, 400), 0), out=buf8) buf9 = buf8 del buf8 triton_poi_fused_relu_4[grid(480)](buf9, primals_7, 480, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 buf10 = empty_strided_cuda((4, 84), (84, 1), torch.float32) extern_kernels.mm(buf9, reinterpret_tensor(primals_8, (120, 84), (1, 120), 0), out=buf10) buf11 = buf10 del buf10 triton_poi_fused_relu_5[grid(336)](buf11, primals_9, 336, XBLOCK= 128, num_warps=4, num_stages=1) del primals_9 buf12 = empty_strided_cuda((4, 5), (5, 1), torch.float32) extern_kernels.addmm(primals_11, buf11, reinterpret_tensor( primals_10, (84, 5), (1, 84), 0), alpha=1, beta=1, out=buf12) del primals_11 return (buf12, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 400), (400, 1), 0), buf9, buf11, primals_10, primals_8, primals_6) class ConvNetNew(nn.Module): def __init__(self): super(ConvNetNew, self).__init__() self.conv1 = nn.Conv2d(3, 6, 5) self.pool = nn.MaxPool2d(2, 2) self.conv2 = nn.Conv2d(6, 16, 5) self.fc1 = nn.Linear(16 * 5 * 5, 120) self.fc2 = nn.Linear(120, 84) self.fc3 = nn.Linear(84, 5) def forward(self, input_0): primals_1 = self.conv1.weight primals_2 = self.conv1.bias primals_4 = self.conv2.weight primals_5 = self.conv2.bias primals_6 = self.fc1.weight primals_7 = self.fc1.bias primals_8 = self.fc2.weight primals_9 = self.fc2.bias primals_10 = self.fc3.weight primals_11 = self.fc3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return output[0]
AndrewAltimit/Scene-Classification-AWS-Serverless
ConvNet
false
11,234
[ "MIT" ]
0
caa4bff102987338dcfa597b9ec1638e6e5e63f5
https://github.com/AndrewAltimit/Scene-Classification-AWS-Serverless/tree/caa4bff102987338dcfa597b9ec1638e6e5e63f5
CustomizedLayer
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ne/cnem3ewvyvy2ry3vceibv7j67edhj5jen3qlzvzibg5tpkhxkwsq.py # Topologically Sorted Source Nodes: [pow_1, sum_1, norm, x, mul, add], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.div, aten.mul, aten.add] # Source node to ATen node mapping: # add => add # mul => mul # norm => sqrt # pow_1 => pow_1 # sum_1 => sum_1 # x => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%primals_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%primals_1, %sqrt), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div, %primals_2), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %primals_3), kwargs = {}) triton_poi_fused_add_div_mul_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_mul_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 7, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x3 = (xindex // 64) x5 = xindex % 16 x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr0 + (x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = tmp0 / tmp12 tmp15 = tmp13 * tmp14 tmp17 = tmp15 + tmp16 tl.store(out_ptr0 + (x4), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, norm, x, mul, add], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.div, aten.mul, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0.run(primals_1, primals_2, primals_3, buf0, 256, grid=grid(256), stream=stream0) del primals_2 del primals_3 return (buf0, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class CustomizedLayer(nn.Module): def __init__(self, in_dim): super().__init__() self.in_dim = in_dim self.scale = nn.Parameter(torch.Tensor(self.in_dim)) self.bias = nn.Parameter(torch.Tensor(self.in_dim)) def forward(self, x): norm = x.pow(2).sum(dim=1, keepdim=True).sqrt() x = torch.div(x, norm) return x * self.scale + self.bias def __repr__(self): return 'CustomizedLayer(in_dim=%d)' % self.in_dim def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_dim': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x3 = xindex // 64 x5 = xindex % 16 x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr0 + (x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp14 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = tmp0 / tmp12 tmp15 = tmp13 * tmp14 tmp17 = tmp15 + tmp16 tl.store(out_ptr0 + x4, tmp17, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0[grid(256)](primals_1, primals_2, primals_3, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 del primals_3 return buf0, primals_1 class CustomizedLayerNew(nn.Module): def __init__(self, in_dim): super().__init__() self.in_dim = in_dim self.scale = nn.Parameter(torch.Tensor(self.in_dim)) self.bias = nn.Parameter(torch.Tensor(self.in_dim)) def __repr__(self): return 'CustomizedLayer(in_dim=%d)' % self.in_dim def forward(self, input_0): primals_2 = self.scale primals_3 = self.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
B06901052/Torch-Pruning
CustomizedLayer
false
11,235
[ "MIT" ]
0
43c99e1ea6039c7641e01cd7527492d69bfce35a
https://github.com/B06901052/Torch-Pruning/tree/43c99e1ea6039c7641e01cd7527492d69bfce35a
DoubleResolutionLayer
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/oj/cojl5mb3pzv5jbmfzjkbac5hekbmpvb72kof6ouyyasitrogdd6n.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten._unsafe_index] # Source node to ATen node mapping: # x => _unsafe_index # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg0_1, [None, None, %unsqueeze, %convert_element_type_3]), kwargs = {}) triton_poi_fused__unsafe_index_0 = async_compile.triton('triton_poi_fused__unsafe_index_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__unsafe_index_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__unsafe_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 8) % 8 x0 = xindex % 8 x2 = (xindex // 64) x4 = xindex tmp0 = x1 tmp1 = tmp0.to(tl.float32) tmp2 = 0.5 tmp3 = tmp1 * tmp2 tmp4 = tmp3.to(tl.int32) tmp5 = x0 tmp6 = tmp5.to(tl.float32) tmp7 = tmp6 * tmp2 tmp8 = tmp7.to(tl.int32) tmp9 = tl.load(in_ptr0 + (tmp8 + (4*tmp4) + (16*x2)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x4), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten._unsafe_index] stream0 = get_raw_stream(0) triton_poi_fused__unsafe_index_0.run(arg0_1, buf0, 1024, grid=grid(1024), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class DoubleResolutionLayer(nn.Module): def forward(self, x): x = nn.functional.interpolate(x, scale_factor=2, mode='nearest') return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__unsafe_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 8 % 8 x0 = xindex % 8 x2 = xindex // 64 x4 = xindex tmp0 = x1 tmp1 = tmp0.to(tl.float32) tmp2 = 0.5 tmp3 = tmp1 * tmp2 tmp4 = tmp3.to(tl.int32) tmp5 = x0 tmp6 = tmp5.to(tl.float32) tmp7 = tmp6 * tmp2 tmp8 = tmp7.to(tl.int32) tmp9 = tl.load(in_ptr0 + (tmp8 + 4 * tmp4 + 16 * x2), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x4, tmp9, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 8, 8), (256, 64, 8, 1), torch.float32) get_raw_stream(0) triton_poi_fused__unsafe_index_0[grid(1024)](arg0_1, buf0, 1024, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class DoubleResolutionLayerNew(nn.Module): def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
BeningSobariah/ark-stroller
DoubleResolutionLayer
false
11,236
[ "Apache-2.0" ]
0
af2036a1726523d5aca9b1040bfc1fad5c3420f2
https://github.com/BeningSobariah/ark-stroller/tree/af2036a1726523d5aca9b1040bfc1fad5c3420f2
Net
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/35/c35uoqeuk5xgqj55u5y27rwspn52a5jvnsivhhcescwbt7rm6rnh.py # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # x => convolution # x_1 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_0 = async_compile.triton('triton_poi_fused_convolution_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[524288], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 492032 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 3844) % 32 x0 = xindex % 3844 x4 = (xindex // 3844) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + (x0 + (3872*x4)), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/rc/crcvs7gf5dm7znait3krgjw6vt36tx62fnvewm7rx34jlc5n5fqv.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_2 => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[131072], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 123008 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 31 x1 = (xindex // 31) % 31 x2 = (xindex // 961) x5 = xindex x4 = (xindex // 30752) x6 = xindex % 30752 tmp0 = tl.load(in_ptr0 + ((2*x0) + (124*x1) + (3872*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (124*x1) + (3872*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (62 + (2*x0) + (124*x1) + (3872*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (63 + (2*x0) + (124*x1) + (3872*x2)), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x5), tmp6, xmask) tl.store(out_ptr1 + (x6 + (30848*x4)), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/oa/coakw42jr5jdds55d4sctc6utpvglpvnlbgxtrd4uub6uc3odxqg.py # Topologically Sorted Source Nodes: [x_3, x_4], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # x_3 => convolution_1 # x_4 => relu_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_1,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 215296 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 841) % 64 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x3), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/pz/cpzf7oiqliwc4dxaonn2u35sv5aij6hzlo4ynuygtgpp37oh7dox.py # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_5 => _low_memory_max_pool2d_with_offsets_1, getitem_3 # Graph fragment: # %_low_memory_max_pool2d_with_offsets_1 : [num_users=2] = call_function[target=torch.ops.prims._low_memory_max_pool2d_with_offsets.default](args = (%relu_1, [2, 2], [2, 2], [0, 0], [1, 1], False), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_3 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[65536], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i8', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 50176 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x1 = (xindex // 14) % 14 x2 = (xindex // 196) x3 = xindex tmp0 = tl.load(in_ptr0 + ((2*x0) + (58*x1) + (841*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0) + (58*x1) + (841*x2)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (29 + (2*x0) + (58*x1) + (841*x2)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (30 + (2*x0) + (58*x1) + (841*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + (x3), tmp15, xmask) tl.store(out_ptr1 + (x3), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/3d/c3daizw6k7n3mdqdhvpifdxm2baxmazxb7opdgejzyeaavnbkn3d.py # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_8 => relu_2 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_7), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_relu_4 = async_compile.triton('triton_poi_fused_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/5b/c5b4xuvd2n4vlzn3q2p4dj7lqj2vdojbegxdfrrmb4r42ner4gsz.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten._log_softmax] # Source node to ATen node mapping: # out => amax, exp, log, sub, sub_1, sum_1 # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%addmm_1, [1], True), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%addmm_1, %amax), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [1], True), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub, %log), kwargs = {}) triton_per_fused__log_softmax_5 = async_compile.triton('triton_per_fused__log_softmax_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_5', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 2, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_5(in_ptr0, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 40 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = rindex < rnumel r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (40*x0)), rmask & xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(rmask & xmask, tmp1, float("-inf")) tmp4 = triton_helpers.max2(tmp3, 1)[:, None] tmp5 = tmp0 - tmp4 tmp6 = tl_math.exp(tmp5) tmp7 = tl.broadcast_to(tmp6, [XBLOCK, RBLOCK]) tmp9 = tl.where(rmask & xmask, tmp7, 0) tmp10 = tl.sum(tmp9, 1)[:, None] tmp11 = tl_math.log(tmp10) tmp12 = tmp5 - tmp11 tl.store(out_ptr2 + (r1 + (40*x0)), tmp12, rmask & xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9 = args args.clear() assert_size_stride(primals_1, (32, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (32, ), (1, )) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 32, 3, 3), (288, 9, 3, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (128, 12544), (12544, 1)) assert_size_stride(primals_7, (128, ), (1, )) assert_size_stride(primals_8, (40, 128), (128, 1)) assert_size_stride(primals_9, (40, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 32, 62, 62), (123008, 3844, 62, 1)) buf1 = empty_strided_cuda((4, 32, 62, 62), (123904, 3872, 62, 1), torch.float32) # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_0.run(buf0, primals_2, buf1, 492032, grid=grid(492032), stream=stream0) del buf0 del primals_2 buf2 = empty_strided_cuda((4, 32, 31, 31), (30752, 961, 31, 1), torch.float32) buf3 = empty_strided_cuda((4, 32, 31, 31), (30848, 961, 31, 1), torch.int8) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf1, buf2, buf3, 123008, grid=grid(123008), stream=stream0) # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 64, 29, 29), (53824, 841, 29, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [x_3, x_4], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf5, primals_5, 215296, grid=grid(215296), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 64, 14, 14), (12544, 196, 14, 1), torch.int8) buf7 = empty_strided_cuda((4, 64, 14, 14), (12544, 196, 14, 1), torch.float32) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_3.run(buf5, buf6, buf7, 50176, grid=grid(50176), stream=stream0) buf8 = empty_strided_cuda((4, 128), (128, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf7, (4, 12544), (12544, 1), 0), reinterpret_tensor(primals_6, (12544, 128), (1, 12544), 0), out=buf8) buf9 = buf8; del buf8 # reuse # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.relu] triton_poi_fused_relu_4.run(buf9, primals_7, 512, grid=grid(512), stream=stream0) del primals_7 buf10 = empty_strided_cuda((4, 40), (40, 1), torch.float32) # Topologically Sorted Source Nodes: [x_10], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, buf9, reinterpret_tensor(primals_8, (128, 40), (1, 128), 0), alpha=1, beta=1, out=buf10) del primals_9 buf13 = empty_strided_cuda((4, 40), (40, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten._log_softmax] triton_per_fused__log_softmax_5.run(buf10, buf13, 4, 40, grid=grid(4), stream=stream0) del buf10 return (buf13, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 12544), (12544, 1), 0), buf9, buf13, primals_8, primals_6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((32, 1, 3, 3), (9, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((32, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 1, 64, 64), (4096, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 32, 3, 3), (288, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((128, 12544), (12544, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((40, 128), (128, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((40, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
from torch.nn import Module import torch from torch.nn import Conv2d from torch.nn import Dropout2d from torch.nn import Linear from torch.nn.functional import relu from torch.nn.functional import max_pool2d from torch.nn.functional import log_softmax from torch import flatten class Net(Module): def __init__(self): super(Net, self).__init__() self.conv1 = Conv2d(in_channels=1, out_channels=32, kernel_size=3, stride=1) self.conv2 = Conv2d(in_channels=32, out_channels=64, kernel_size=3, stride=1) self.dropout1 = Dropout2d(p=0.5) self.fc1 = Linear(in_features=12544, out_features=128) self.fc2 = Linear(in_features=128, out_features=40) def forward(self, x): x = self.conv1(x) x = relu(x) x = max_pool2d(x, 2) x = self.conv2(x) x = relu(x) x = max_pool2d(x, 2) x = flatten(x, 1) x = self.fc1(x) x = relu(x) x = self.dropout1(x) x = self.fc2(x) out = log_softmax(x, dim=1) return out def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math from torch.nn import Module from torch.nn import Conv2d from torch.nn import Dropout2d from torch.nn import Linear assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_convolution_relu_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 492032 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 3844 % 32 x0 = xindex % 3844 x4 = xindex // 3844 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + (x0 + 3872 * x4), tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 123008 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 31 x1 = xindex // 31 % 31 x2 = xindex // 961 x5 = xindex x4 = xindex // 30752 x6 = xindex % 30752 tmp0 = tl.load(in_ptr0 + (2 * x0 + 124 * x1 + 3872 * x2), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 124 * x1 + 3872 * x2), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (62 + 2 * x0 + 124 * x1 + 3872 * x2), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (63 + 2 * x0 + 124 * x1 + 3872 * x2), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x5, tmp6, xmask) tl.store(out_ptr1 + (x6 + 30848 * x4), tmp16, xmask) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 215296 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 841 % 64 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x3, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_3(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 50176 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 14 x1 = xindex // 14 % 14 x2 = xindex // 196 x3 = xindex tmp0 = tl.load(in_ptr0 + (2 * x0 + 58 * x1 + 841 * x2), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0 + 58 * x1 + 841 * x2), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (29 + 2 * x0 + 58 * x1 + 841 * x2), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (30 + 2 * x0 + 58 * x1 + 841 * x2), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tmp8 = tmp7 > tmp6 tmp9 = tl.full([1], 2, tl.int8) tmp10 = tl.where(tmp8, tmp9, tmp5) tmp11 = triton_helpers.maximum(tmp7, tmp6) tmp13 = tmp12 > tmp11 tmp14 = tl.full([1], 3, tl.int8) tmp15 = tl.where(tmp13, tmp14, tmp10) tmp16 = triton_helpers.maximum(tmp12, tmp11) tl.store(out_ptr0 + x3, tmp15, xmask) tl.store(out_ptr1 + x3, tmp16, xmask) @triton.jit def triton_poi_fused_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_per_fused__log_softmax_5(in_ptr0, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 rnumel = 40 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] rmask = rindex < rnumel r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 40 * x0), rmask & xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(rmask & xmask, tmp1, float('-inf')) tmp4 = triton_helpers.max2(tmp3, 1)[:, None] tmp5 = tmp0 - tmp4 tmp6 = tl_math.exp(tmp5) tmp7 = tl.broadcast_to(tmp6, [XBLOCK, RBLOCK]) tmp9 = tl.where(rmask & xmask, tmp7, 0) tmp10 = tl.sum(tmp9, 1)[:, None] tmp11 = tl_math.log(tmp10) tmp12 = tmp5 - tmp11 tl.store(out_ptr2 + (r1 + 40 * x0), tmp12, rmask & xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9) = args args.clear() assert_size_stride(primals_1, (32, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (32,), (1,)) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 32, 3, 3), (288, 9, 3, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (128, 12544), (12544, 1)) assert_size_stride(primals_7, (128,), (1,)) assert_size_stride(primals_8, (40, 128), (128, 1)) assert_size_stride(primals_9, (40,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 32, 62, 62), (123008, 3844, 62, 1)) buf1 = empty_strided_cuda((4, 32, 62, 62), (123904, 3872, 62, 1), torch.float32) get_raw_stream(0) triton_poi_fused_convolution_relu_0[grid(492032)](buf0, primals_2, buf1, 492032, XBLOCK=1024, num_warps=4, num_stages=1) del buf0 del primals_2 buf2 = empty_strided_cuda((4, 32, 31, 31), (30752, 961, 31, 1), torch.float32) buf3 = empty_strided_cuda((4, 32, 31, 31), (30848, 961, 31, 1), torch.int8) triton_poi_fused_max_pool2d_with_indices_1[grid(123008)](buf1, buf2, buf3, 123008, XBLOCK=512, num_warps=8, num_stages=1) buf4 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 64, 29, 29), (53824, 841, 29, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_relu_2[grid(215296)](buf5, primals_5, 215296, XBLOCK=512, num_warps=8, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 64, 14, 14), (12544, 196, 14, 1), torch.int8) buf7 = empty_strided_cuda((4, 64, 14, 14), (12544, 196, 14, 1), torch.float32) triton_poi_fused_max_pool2d_with_indices_3[grid(50176)](buf5, buf6, buf7, 50176, XBLOCK=256, num_warps=4, num_stages=1) buf8 = empty_strided_cuda((4, 128), (128, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf7, (4, 12544), (12544, 1), 0), reinterpret_tensor(primals_6, (12544, 128), (1, 12544), 0), out=buf8) buf9 = buf8 del buf8 triton_poi_fused_relu_4[grid(512)](buf9, primals_7, 512, XBLOCK=256, num_warps=4, num_stages=1) del primals_7 buf10 = empty_strided_cuda((4, 40), (40, 1), torch.float32) extern_kernels.addmm(primals_9, buf9, reinterpret_tensor(primals_8, (128, 40), (1, 128), 0), alpha=1, beta=1, out=buf10) del primals_9 buf13 = empty_strided_cuda((4, 40), (40, 1), torch.float32) triton_per_fused__log_softmax_5[grid(4)](buf10, buf13, 4, 40, XBLOCK=1, num_warps=2, num_stages=1) del buf10 return (buf13, primals_1, primals_3, primals_4, buf1, buf2, buf3, buf5, buf6, reinterpret_tensor(buf7, (4, 12544), (12544, 1), 0), buf9, buf13, primals_8, primals_6) class NetNew(Module): def __init__(self): super(NetNew, self).__init__() self.conv1 = Conv2d(in_channels=1, out_channels=32, kernel_size=3, stride=1) self.conv2 = Conv2d(in_channels=32, out_channels=64, kernel_size=3, stride=1) self.dropout1 = Dropout2d(p=0.5) self.fc1 = Linear(in_features=12544, out_features=128) self.fc2 = Linear(in_features=128, out_features=40) def forward(self, input_0): primals_1 = self.conv1.weight primals_2 = self.conv1.bias primals_4 = self.conv2.weight primals_5 = self.conv2.bias primals_6 = self.fc1.weight primals_7 = self.fc1.bias primals_8 = self.fc2.weight primals_9 = self.fc2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9]) return output[0]
AhmetTavli/Olivetti-CNN
Net
false
11,237
[ "MIT" ]
0
174747382f17e02c0e5f964d08a449429ac6fbd8
https://github.com/AhmetTavli/Olivetti-CNN/tree/174747382f17e02c0e5f964d08a449429ac6fbd8
IIDIsotropicGaussianUVLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/2l/c2lpbmkah6k7ad7ej2t4cu6gqp3tcq5mzhelfntwzyst66pi6yw6.py # Topologically Sorted Source Nodes: [softplus, sigma2, log, mul, add_2, sub, pow_1, sub_1, pow_2, delta_t_delta, truediv, add_3, loss, sum_1], Original ATen: [aten.softplus, aten.add, aten.log, aten.mul, aten.sub, aten.pow, aten.div, aten.sum] # Source node to ATen node mapping: # add_2 => add_2 # add_3 => add_3 # delta_t_delta => add_1 # log => log # loss => mul_1 # mul => mul # pow_1 => pow_1 # pow_2 => pow_2 # sigma2 => add # softplus => exp, gt, log1p, where # sub => sub # sub_1 => sub_1 # sum_1 => sum_1 # truediv => div # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg0_1, 20), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%arg0_1,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %arg0_1, %log1p), kwargs = {}) # %add : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%where, 4), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%log, 2), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 1.8378770664093453), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg2_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg3_1, %arg4_1), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_1, 2), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%pow_1, %pow_2), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_1, %add), kwargs = {}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_2, %div), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add_3, 0.5), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_1,), kwargs = {}) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0 = async_compile.triton('triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32', 7: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {6: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 7), equal_to_1=(6,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 5, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp13 = tl.load(in_ptr1 + (r0), None) tmp14 = tl.load(in_ptr2 + (r0), None) tmp17 = tl.load(in_ptr3 + (r0), None) tmp18 = tl.load(in_ptr4 + (r0), None) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 4.0 tmp7 = tmp5 + tmp6 tmp8 = tl_math.log(tmp7) tmp9 = 2.0 tmp10 = tmp8 * tmp9 tmp11 = 1.8378770664093453 tmp12 = tmp10 + tmp11 tmp15 = tmp13 - tmp14 tmp16 = tmp15 * tmp15 tmp19 = tmp17 - tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp16 + tmp20 tmp22 = tmp21 / tmp7 tmp23 = tmp12 + tmp22 tmp24 = 0.5 tmp25 = tmp23 * tmp24 tmp26 = tl.broadcast_to(tmp25, [RBLOCK]) tmp28 = triton_helpers.promote_to_tensor(tl.sum(tmp26, 0)) tl.store(out_ptr0 + (tl.full([1], 0, tl.int32)), tmp28, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [softplus, sigma2, log, mul, add_2, sub, pow_1, sub_1, pow_2, delta_t_delta, truediv, add_3, loss, sum_1], Original ATen: [aten.softplus, aten.add, aten.log, aten.mul, aten.sub, aten.pow, aten.div, aten.sum] stream0 = get_raw_stream(0) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0.run(arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, buf0, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg4_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.utils.data import torch.nn.functional as F from torch import nn class IIDIsotropicGaussianUVLoss(nn.Module): """ Loss for the case of iid residuals with isotropic covariance: $Sigma_i = sigma_i^2 I$ The loss (negative log likelihood) is then: $1/2 sum_{i=1}^n (log(2 pi) + 2 log sigma_i^2 + ||delta_i||^2 / sigma_i^2)$, where $delta_i=(u - u', v - v')$ is a 2D vector containing UV coordinates difference between estimated and ground truth UV values For details, see: N. Neverova, D. Novotny, A. Vedaldi "Correlated Uncertainty for Learning Dense Correspondences from Noisy Labels", p. 918--926, in Proc. NIPS 2019 """ def __init__(self, sigma_lower_bound: 'float'): super(IIDIsotropicGaussianUVLoss, self).__init__() self.sigma_lower_bound = sigma_lower_bound self.log2pi = math.log(2 * math.pi) def forward(self, u: 'torch.Tensor', v: 'torch.Tensor', sigma_u: 'torch.Tensor', target_u: 'torch.Tensor', target_v: 'torch.Tensor'): sigma2 = F.softplus(sigma_u) + self.sigma_lower_bound delta_t_delta = (u - target_u) ** 2 + (v - target_v) ** 2 loss = 0.5 * (self.log2pi + 2 * torch.log(sigma2) + delta_t_delta / sigma2) return loss.sum() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'sigma_lower_bound': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import math import torch.utils.data from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp13 = tl.load(in_ptr1 + r0, None) tmp14 = tl.load(in_ptr2 + r0, None) tmp17 = tl.load(in_ptr3 + r0, None) tmp18 = tl.load(in_ptr4 + r0, None) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 4.0 tmp7 = tmp5 + tmp6 tmp8 = tl_math.log(tmp7) tmp9 = 2.0 tmp10 = tmp8 * tmp9 tmp11 = 1.8378770664093453 tmp12 = tmp10 + tmp11 tmp15 = tmp13 - tmp14 tmp16 = tmp15 * tmp15 tmp19 = tmp17 - tmp18 tmp20 = tmp19 * tmp19 tmp21 = tmp16 + tmp20 tmp22 = tmp21 / tmp7 tmp23 = tmp12 + tmp22 tmp24 = 0.5 tmp25 = tmp23 * tmp24 tmp26 = tl.broadcast_to(tmp25, [RBLOCK]) tmp28 = triton_helpers.promote_to_tensor(tl.sum(tmp26, 0)) tl.store(out_ptr0 + tl.full([1], 0, tl.int32), tmp28, None) def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0[grid(1)](arg0_1 , arg1_1, arg2_1, arg3_1, arg4_1, buf0, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 return buf0, class IIDIsotropicGaussianUVLossNew(nn.Module): """ Loss for the case of iid residuals with isotropic covariance: $Sigma_i = sigma_i^2 I$ The loss (negative log likelihood) is then: $1/2 sum_{i=1}^n (log(2 pi) + 2 log sigma_i^2 + ||delta_i||^2 / sigma_i^2)$, where $delta_i=(u - u', v - v')$ is a 2D vector containing UV coordinates difference between estimated and ground truth UV values For details, see: N. Neverova, D. Novotny, A. Vedaldi "Correlated Uncertainty for Learning Dense Correspondences from Noisy Labels", p. 918--926, in Proc. NIPS 2019 """ def __init__(self, sigma_lower_bound: 'float'): super(IIDIsotropicGaussianUVLossNew, self).__init__() self.sigma_lower_bound = sigma_lower_bound self.log2pi = math.log(2 * math.pi) def forward(self, input_0, input_1, input_2, input_3, input_4): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 arg4_1 = input_4 output = call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1]) return output[0]
BUPT-PRIV/detectron2
IIDIsotropicGaussianUVLoss
false
11,238
[ "Apache-2.0" ]
0
3163664cd5f43d50ea1966f410dc82410b9ccbf4
https://github.com/BUPT-PRIV/detectron2/tree/3163664cd5f43d50ea1966f410dc82410b9ccbf4
IndepAnisotropicGaussianUVLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/2f/c2fihp3eabdoclhz6gdz723nsdjyue5ykxbe3cdbfc2itfhvb5zw.py # Topologically Sorted Source Nodes: [softplus, sigma2, pow_1, pow_2, r_sqnorm2, add_4, denom2, log, add_5, delta_u, pow_3, delta_v, pow_4, delta_sqnorm, truediv, add_6, delta_u_r_u, delta_v_r_v, delta_r, delta_r_sqnorm, truediv_1, sub_2, loss, sum_1], Original ATen: [aten.softplus, aten.add, aten.pow, aten.mul, aten.log, aten.sub, aten.div, aten.sum] # Source node to ATen node mapping: # add_4 => add_4 # add_5 => add_5 # add_6 => add_6 # delta_r => add_3 # delta_r_sqnorm => pow_5 # delta_sqnorm => add_2 # delta_u => sub # delta_u_r_u => mul # delta_v => sub_1 # delta_v_r_v => mul_1 # denom2 => mul_2 # log => log # loss => mul_3 # pow_1 => pow_1 # pow_2 => pow_2 # pow_3 => pow_3 # pow_4 => pow_4 # r_sqnorm2 => add_1 # sigma2 => add # softplus => exp, gt, log1p, where # sub_2 => sub_2 # sum_1 => sum_1 # truediv => div # truediv_1 => div_1 # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg0_1, 20), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%arg0_1,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %arg0_1, %log1p), kwargs = {}) # %add : [num_users=3] = call_function[target=torch.ops.aten.add.Tensor](args = (%where, 4), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg1_1, 2), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg2_1, 2), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%pow_1, %pow_2), kwargs = {}) # %add_4 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add, %add_1), kwargs = {}) # %mul_2 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, %add_4), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%mul_2,), kwargs = {}) # %add_5 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%log, 1.8378770664093453), kwargs = {}) # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg3_1, %arg4_1), kwargs = {}) # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sub_1 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg5_1, %arg6_1), kwargs = {}) # %pow_4 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub_1, 2), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%pow_3, %pow_4), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%add_2, %add), kwargs = {}) # %add_6 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_5, %div), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub, %arg1_1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, %arg2_1), kwargs = {}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_1), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add_3, 2), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%pow_5, %mul_2), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add_6, %div_1), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_2, 0.5), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_3,), kwargs = {}) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0 = async_compile.triton('triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: '*fp32', 8: 'i32', 9: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {8: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7, 9), equal_to_1=(8,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0', 'mutated_arg_names': [], 'no_x_dim': True, 'num_load': 7, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp8 = tl.load(in_ptr1 + (r0), None) tmp10 = tl.load(in_ptr2 + (r0), None) tmp18 = tl.load(in_ptr3 + (r0), None) tmp19 = tl.load(in_ptr4 + (r0), None) tmp22 = tl.load(in_ptr5 + (r0), None) tmp23 = tl.load(in_ptr6 + (r0), None) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 4.0 tmp7 = tmp5 + tmp6 tmp9 = tmp8 * tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = tmp7 + tmp12 tmp14 = tmp7 * tmp13 tmp15 = tl_math.log(tmp14) tmp16 = 1.8378770664093453 tmp17 = tmp15 + tmp16 tmp20 = tmp18 - tmp19 tmp21 = tmp20 * tmp20 tmp24 = tmp22 - tmp23 tmp25 = tmp24 * tmp24 tmp26 = tmp21 + tmp25 tmp27 = tmp26 / tmp7 tmp28 = tmp17 + tmp27 tmp29 = tmp20 * tmp8 tmp30 = tmp24 * tmp10 tmp31 = tmp29 + tmp30 tmp32 = tmp31 * tmp31 tmp33 = tmp32 / tmp14 tmp34 = tmp28 - tmp33 tmp35 = 0.5 tmp36 = tmp34 * tmp35 tmp37 = tl.broadcast_to(tmp36, [RBLOCK]) tmp39 = triton_helpers.promote_to_tensor(tl.sum(tmp37, 0)) tl.store(out_ptr1 + (tl.full([1], 0, tl.int32)), tmp39, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg5_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg6_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [softplus, sigma2, pow_1, pow_2, r_sqnorm2, add_4, denom2, log, add_5, delta_u, pow_3, delta_v, pow_4, delta_sqnorm, truediv, add_6, delta_u_r_u, delta_v_r_v, delta_r, delta_r_sqnorm, truediv_1, sub_2, loss, sum_1], Original ATen: [aten.softplus, aten.add, aten.pow, aten.mul, aten.log, aten.sub, aten.div, aten.sum] stream0 = get_raw_stream(0) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0.run(arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1, buf1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 del arg5_1 del arg6_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg4_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg5_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg6_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.utils.data import torch.nn.functional as F from torch import nn class IndepAnisotropicGaussianUVLoss(nn.Module): """ Loss for the case of independent residuals with anisotropic covariances: $Sigma_i = sigma_i^2 I + r_i r_i^T$ The loss (negative log likelihood) is then: $1/2 sum_{i=1}^n (log(2 pi) + log sigma_i^2 (sigma_i^2 + ||r_i||^2) + ||delta_i||^2 / sigma_i^2 - <delta_i, r_i>^2 / (sigma_i^2 * (sigma_i^2 + ||r_i||^2)))$, where $delta_i=(u - u', v - v')$ is a 2D vector containing UV coordinates difference between estimated and ground truth UV values For details, see: N. Neverova, D. Novotny, A. Vedaldi "Correlated Uncertainty for Learning Dense Correspondences from Noisy Labels", p. 918--926, in Proc. NIPS 2019 """ def __init__(self, sigma_lower_bound: 'float'): super(IndepAnisotropicGaussianUVLoss, self).__init__() self.sigma_lower_bound = sigma_lower_bound self.log2pi = math.log(2 * math.pi) def forward(self, u: 'torch.Tensor', v: 'torch.Tensor', sigma_u: 'torch.Tensor', kappa_u_est: 'torch.Tensor', kappa_v_est: 'torch.Tensor', target_u: 'torch.Tensor', target_v: 'torch.Tensor'): sigma2 = F.softplus(sigma_u) + self.sigma_lower_bound r_sqnorm2 = kappa_u_est ** 2 + kappa_v_est ** 2 delta_u = u - target_u delta_v = v - target_v delta_sqnorm = delta_u ** 2 + delta_v ** 2 delta_u_r_u = delta_u * kappa_u_est delta_v_r_v = delta_v * kappa_v_est delta_r = delta_u_r_u + delta_v_r_v delta_r_sqnorm = delta_r ** 2 denom2 = sigma2 * (sigma2 + r_sqnorm2) loss = 0.5 * (self.log2pi + torch.log(denom2) + delta_sqnorm / sigma2 - delta_r_sqnorm / denom2) return loss.sum() def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'sigma_lower_bound': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import math import torch.utils.data from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp8 = tl.load(in_ptr1 + r0, None) tmp10 = tl.load(in_ptr2 + r0, None) tmp18 = tl.load(in_ptr3 + r0, None) tmp19 = tl.load(in_ptr4 + r0, None) tmp22 = tl.load(in_ptr5 + r0, None) tmp23 = tl.load(in_ptr6 + r0, None) tmp1 = 20.0 tmp2 = tmp0 > tmp1 tmp3 = tl_math.exp(tmp0) tmp4 = libdevice.log1p(tmp3) tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 4.0 tmp7 = tmp5 + tmp6 tmp9 = tmp8 * tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = tmp7 + tmp12 tmp14 = tmp7 * tmp13 tmp15 = tl_math.log(tmp14) tmp16 = 1.8378770664093453 tmp17 = tmp15 + tmp16 tmp20 = tmp18 - tmp19 tmp21 = tmp20 * tmp20 tmp24 = tmp22 - tmp23 tmp25 = tmp24 * tmp24 tmp26 = tmp21 + tmp25 tmp27 = tmp26 / tmp7 tmp28 = tmp17 + tmp27 tmp29 = tmp20 * tmp8 tmp30 = tmp24 * tmp10 tmp31 = tmp29 + tmp30 tmp32 = tmp31 * tmp31 tmp33 = tmp32 / tmp14 tmp34 = tmp28 - tmp33 tmp35 = 0.5 tmp36 = tmp34 * tmp35 tmp37 = tl.broadcast_to(tmp36, [RBLOCK]) tmp39 = triton_helpers.promote_to_tensor(tl.sum(tmp37, 0)) tl.store(out_ptr1 + tl.full([1], 0, tl.int32), tmp39, None) def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg4_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg5_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg6_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused_add_div_log_mul_pow_softplus_sub_sum_0[grid(1)](arg0_1 , arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1, buf1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 del arg5_1 del arg6_1 return buf1, class IndepAnisotropicGaussianUVLossNew(nn.Module): """ Loss for the case of independent residuals with anisotropic covariances: $Sigma_i = sigma_i^2 I + r_i r_i^T$ The loss (negative log likelihood) is then: $1/2 sum_{i=1}^n (log(2 pi) + log sigma_i^2 (sigma_i^2 + ||r_i||^2) + ||delta_i||^2 / sigma_i^2 - <delta_i, r_i>^2 / (sigma_i^2 * (sigma_i^2 + ||r_i||^2)))$, where $delta_i=(u - u', v - v')$ is a 2D vector containing UV coordinates difference between estimated and ground truth UV values For details, see: N. Neverova, D. Novotny, A. Vedaldi "Correlated Uncertainty for Learning Dense Correspondences from Noisy Labels", p. 918--926, in Proc. NIPS 2019 """ def __init__(self, sigma_lower_bound: 'float'): super(IndepAnisotropicGaussianUVLossNew, self).__init__() self.sigma_lower_bound = sigma_lower_bound self.log2pi = math.log(2 * math.pi) def forward(self, input_0, input_1, input_2, input_3, input_4, input_5, input_6): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 arg4_1 = input_4 arg5_1 = input_5 arg6_1 = input_6 output = call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, arg5_1, arg6_1]) return output[0]
BUPT-PRIV/detectron2
IndepAnisotropicGaussianUVLoss
false
11,239
[ "Apache-2.0" ]
0
3163664cd5f43d50ea1966f410dc82410b9ccbf4
https://github.com/BUPT-PRIV/detectron2/tree/3163664cd5f43d50ea1966f410dc82410b9ccbf4
SpatialPyramidPooling
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/vi/cvih4u25oo4wxubp2b2ew7b4rm3k7js5c5bl6pzxtrnzdkaxor7e.py # Topologically Sorted Source Nodes: [max_pool2d_2, features], Original ATen: [aten.max_pool2d_with_indices, aten.cat] # Source node to ATen node mapping: # features => cat # max_pool2d_2 => _low_memory_max_pool2d_with_offsets # Graph fragment: # %_low_memory_max_pool2d_with_offsets : [num_users=1] = call_function[target=torch.ops.prims._low_memory_max_pool2d_with_offsets.default](args = (%arg0_1, [5, 5], [1, 1], [2, 2], [1, 1], False), kwargs = {}) # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%getitem, %getitem_2, %getitem_4, %arg0_1], 1), kwargs = {}) triton_poi_fused_cat_max_pool2d_with_indices_0 = async_compile.triton('triton_poi_fused_cat_max_pool2d_with_indices_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_max_pool2d_with_indices_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 26, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_max_pool2d_with_indices_0(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 4 x0 = xindex % 4 x7 = xindex x3 = (xindex // 64) x4 = xindex % 64 tmp116 = tl.load(in_ptr0 + (x7), xmask) tmp0 = (-2) + x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tmp2 & tmp4 tmp6 = (-2) + x0 tmp7 = tmp6 >= tmp1 tmp8 = tmp6 < tmp3 tmp9 = tmp7 & tmp8 tmp10 = tmp5 & tmp9 tmp11 = tl.load(in_ptr0 + ((-10) + x7), tmp10 & xmask, other=float("-inf")) tmp12 = (-1) + x0 tmp13 = tmp12 >= tmp1 tmp14 = tmp12 < tmp3 tmp15 = tmp13 & tmp14 tmp16 = tmp5 & tmp15 tmp17 = tl.load(in_ptr0 + ((-9) + x7), tmp16 & xmask, other=float("-inf")) tmp18 = triton_helpers.maximum(tmp17, tmp11) tmp19 = x0 tmp20 = tmp19 >= tmp1 tmp21 = tmp19 < tmp3 tmp22 = tmp20 & tmp21 tmp23 = tmp5 & tmp22 tmp24 = tl.load(in_ptr0 + ((-8) + x7), tmp23 & xmask, other=float("-inf")) tmp25 = triton_helpers.maximum(tmp24, tmp18) tmp26 = 1 + x0 tmp27 = tmp26 >= tmp1 tmp28 = tmp26 < tmp3 tmp29 = tmp27 & tmp28 tmp30 = tmp5 & tmp29 tmp31 = tl.load(in_ptr0 + ((-7) + x7), tmp30 & xmask, other=float("-inf")) tmp32 = triton_helpers.maximum(tmp31, tmp25) tmp33 = 2 + x0 tmp34 = tmp33 >= tmp1 tmp35 = tmp33 < tmp3 tmp36 = tmp34 & tmp35 tmp37 = tmp5 & tmp36 tmp38 = tl.load(in_ptr0 + ((-6) + x7), tmp37 & xmask, other=float("-inf")) tmp39 = triton_helpers.maximum(tmp38, tmp32) tmp40 = (-1) + x1 tmp41 = tmp40 >= tmp1 tmp42 = tmp40 < tmp3 tmp43 = tmp41 & tmp42 tmp44 = tmp43 & tmp9 tmp45 = tl.load(in_ptr0 + ((-6) + x7), tmp44 & xmask, other=float("-inf")) tmp46 = triton_helpers.maximum(tmp45, tmp39) tmp47 = tmp43 & tmp15 tmp48 = tl.load(in_ptr0 + ((-5) + x7), tmp47 & xmask, other=float("-inf")) tmp49 = triton_helpers.maximum(tmp48, tmp46) tmp50 = tmp43 & tmp22 tmp51 = tl.load(in_ptr0 + ((-4) + x7), tmp50 & xmask, other=float("-inf")) tmp52 = triton_helpers.maximum(tmp51, tmp49) tmp53 = tmp43 & tmp29 tmp54 = tl.load(in_ptr0 + ((-3) + x7), tmp53 & xmask, other=float("-inf")) tmp55 = triton_helpers.maximum(tmp54, tmp52) tmp56 = tmp43 & tmp36 tmp57 = tl.load(in_ptr0 + ((-2) + x7), tmp56 & xmask, other=float("-inf")) tmp58 = triton_helpers.maximum(tmp57, tmp55) tmp59 = x1 tmp60 = tmp59 >= tmp1 tmp61 = tmp59 < tmp3 tmp62 = tmp60 & tmp61 tmp63 = tmp62 & tmp9 tmp64 = tl.load(in_ptr0 + ((-2) + x7), tmp63 & xmask, other=float("-inf")) tmp65 = triton_helpers.maximum(tmp64, tmp58) tmp66 = tmp62 & tmp15 tmp67 = tl.load(in_ptr0 + ((-1) + x7), tmp66 & xmask, other=float("-inf")) tmp68 = triton_helpers.maximum(tmp67, tmp65) tmp69 = tmp62 & tmp22 tmp70 = tl.load(in_ptr0 + (x7), tmp69 & xmask, other=float("-inf")) tmp71 = triton_helpers.maximum(tmp70, tmp68) tmp72 = tmp62 & tmp29 tmp73 = tl.load(in_ptr0 + (1 + x7), tmp72 & xmask, other=float("-inf")) tmp74 = triton_helpers.maximum(tmp73, tmp71) tmp75 = tmp62 & tmp36 tmp76 = tl.load(in_ptr0 + (2 + x7), tmp75 & xmask, other=float("-inf")) tmp77 = triton_helpers.maximum(tmp76, tmp74) tmp78 = 1 + x1 tmp79 = tmp78 >= tmp1 tmp80 = tmp78 < tmp3 tmp81 = tmp79 & tmp80 tmp82 = tmp81 & tmp9 tmp83 = tl.load(in_ptr0 + (2 + x7), tmp82 & xmask, other=float("-inf")) tmp84 = triton_helpers.maximum(tmp83, tmp77) tmp85 = tmp81 & tmp15 tmp86 = tl.load(in_ptr0 + (3 + x7), tmp85 & xmask, other=float("-inf")) tmp87 = triton_helpers.maximum(tmp86, tmp84) tmp88 = tmp81 & tmp22 tmp89 = tl.load(in_ptr0 + (4 + x7), tmp88 & xmask, other=float("-inf")) tmp90 = triton_helpers.maximum(tmp89, tmp87) tmp91 = tmp81 & tmp29 tmp92 = tl.load(in_ptr0 + (5 + x7), tmp91 & xmask, other=float("-inf")) tmp93 = triton_helpers.maximum(tmp92, tmp90) tmp94 = tmp81 & tmp36 tmp95 = tl.load(in_ptr0 + (6 + x7), tmp94 & xmask, other=float("-inf")) tmp96 = triton_helpers.maximum(tmp95, tmp93) tmp97 = 2 + x1 tmp98 = tmp97 >= tmp1 tmp99 = tmp97 < tmp3 tmp100 = tmp98 & tmp99 tmp101 = tmp100 & tmp9 tmp102 = tl.load(in_ptr0 + (6 + x7), tmp101 & xmask, other=float("-inf")) tmp103 = triton_helpers.maximum(tmp102, tmp96) tmp104 = tmp100 & tmp15 tmp105 = tl.load(in_ptr0 + (7 + x7), tmp104 & xmask, other=float("-inf")) tmp106 = triton_helpers.maximum(tmp105, tmp103) tmp107 = tmp100 & tmp22 tmp108 = tl.load(in_ptr0 + (8 + x7), tmp107 & xmask, other=float("-inf")) tmp109 = triton_helpers.maximum(tmp108, tmp106) tmp110 = tmp100 & tmp29 tmp111 = tl.load(in_ptr0 + (9 + x7), tmp110 & xmask, other=float("-inf")) tmp112 = triton_helpers.maximum(tmp111, tmp109) tmp113 = tmp100 & tmp36 tmp114 = tl.load(in_ptr0 + (10 + x7), tmp113 & xmask, other=float("-inf")) tmp115 = triton_helpers.maximum(tmp114, tmp112) tl.store(out_ptr0 + (x4 + (256*x3)), tmp115, xmask) tl.store(out_ptr1 + (x4 + (256*x3)), tmp116, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/wu/cwuiwj6jpv44elf77w3mkg3fk7wv6xwrv2wzcyipfdadqsgr6dzt.py # Topologically Sorted Source Nodes: [features], Original ATen: [aten.cat] # Source node to ATen node mapping: # features => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%getitem, %getitem_2, %getitem_4, %arg0_1], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 64 x1 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x2), xmask) tl.store(out_ptr0 + (x0 + (256*x1)), tmp0, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [max_pool2d], Original ATen: [aten.max_pool2d_with_indices] buf0 = torch.ops.aten.max_pool2d_with_indices.default(arg0_1, [13, 13], [1, 1], [6, 6]) buf1 = buf0[0] del buf0 # Topologically Sorted Source Nodes: [max_pool2d_1], Original ATen: [aten.max_pool2d_with_indices] buf3 = torch.ops.aten.max_pool2d_with_indices.default(arg0_1, [9, 9], [1, 1], [4, 4]) buf4 = buf3[0] del buf3 buf10 = empty_strided_cuda((4, 16, 4, 4), (256, 16, 4, 1), torch.float32) buf6 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 128) # alias buf9 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 192) # alias # Topologically Sorted Source Nodes: [max_pool2d_2, features], Original ATen: [aten.max_pool2d_with_indices, aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_max_pool2d_with_indices_0.run(arg0_1, buf6, buf9, 256, grid=grid(256), stream=stream0) del arg0_1 buf7 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 0) # alias # Topologically Sorted Source Nodes: [features], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(buf1, buf7, 256, grid=grid(256), stream=stream0) del buf1 buf8 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 64) # alias # Topologically Sorted Source Nodes: [features], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(buf4, buf8, 256, grid=grid(256), stream=stream0) del buf4 return (buf10, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SpatialPyramidPooling(nn.Module): def __init__(self, pool_sizes=[5, 9, 13]): super(SpatialPyramidPooling, self).__init__() self.maxpools = nn.ModuleList([nn.MaxPool2d(pool_size, 1, pool_size // 2) for pool_size in pool_sizes]) def forward(self, x): features = [maxpool(x) for maxpool in self.maxpools[::-1]] features = torch.cat(features + [x], dim=1) return features def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_max_pool2d_with_indices_0(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 4 x0 = xindex % 4 x7 = xindex x3 = xindex // 64 x4 = xindex % 64 tmp116 = tl.load(in_ptr0 + x7, xmask) tmp0 = -2 + x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tmp2 & tmp4 tmp6 = -2 + x0 tmp7 = tmp6 >= tmp1 tmp8 = tmp6 < tmp3 tmp9 = tmp7 & tmp8 tmp10 = tmp5 & tmp9 tmp11 = tl.load(in_ptr0 + (-10 + x7), tmp10 & xmask, other=float('-inf')) tmp12 = -1 + x0 tmp13 = tmp12 >= tmp1 tmp14 = tmp12 < tmp3 tmp15 = tmp13 & tmp14 tmp16 = tmp5 & tmp15 tmp17 = tl.load(in_ptr0 + (-9 + x7), tmp16 & xmask, other=float('-inf')) tmp18 = triton_helpers.maximum(tmp17, tmp11) tmp19 = x0 tmp20 = tmp19 >= tmp1 tmp21 = tmp19 < tmp3 tmp22 = tmp20 & tmp21 tmp23 = tmp5 & tmp22 tmp24 = tl.load(in_ptr0 + (-8 + x7), tmp23 & xmask, other=float('-inf')) tmp25 = triton_helpers.maximum(tmp24, tmp18) tmp26 = 1 + x0 tmp27 = tmp26 >= tmp1 tmp28 = tmp26 < tmp3 tmp29 = tmp27 & tmp28 tmp30 = tmp5 & tmp29 tmp31 = tl.load(in_ptr0 + (-7 + x7), tmp30 & xmask, other=float('-inf')) tmp32 = triton_helpers.maximum(tmp31, tmp25) tmp33 = 2 + x0 tmp34 = tmp33 >= tmp1 tmp35 = tmp33 < tmp3 tmp36 = tmp34 & tmp35 tmp37 = tmp5 & tmp36 tmp38 = tl.load(in_ptr0 + (-6 + x7), tmp37 & xmask, other=float('-inf')) tmp39 = triton_helpers.maximum(tmp38, tmp32) tmp40 = -1 + x1 tmp41 = tmp40 >= tmp1 tmp42 = tmp40 < tmp3 tmp43 = tmp41 & tmp42 tmp44 = tmp43 & tmp9 tmp45 = tl.load(in_ptr0 + (-6 + x7), tmp44 & xmask, other=float('-inf')) tmp46 = triton_helpers.maximum(tmp45, tmp39) tmp47 = tmp43 & tmp15 tmp48 = tl.load(in_ptr0 + (-5 + x7), tmp47 & xmask, other=float('-inf')) tmp49 = triton_helpers.maximum(tmp48, tmp46) tmp50 = tmp43 & tmp22 tmp51 = tl.load(in_ptr0 + (-4 + x7), tmp50 & xmask, other=float('-inf')) tmp52 = triton_helpers.maximum(tmp51, tmp49) tmp53 = tmp43 & tmp29 tmp54 = tl.load(in_ptr0 + (-3 + x7), tmp53 & xmask, other=float('-inf')) tmp55 = triton_helpers.maximum(tmp54, tmp52) tmp56 = tmp43 & tmp36 tmp57 = tl.load(in_ptr0 + (-2 + x7), tmp56 & xmask, other=float('-inf')) tmp58 = triton_helpers.maximum(tmp57, tmp55) tmp59 = x1 tmp60 = tmp59 >= tmp1 tmp61 = tmp59 < tmp3 tmp62 = tmp60 & tmp61 tmp63 = tmp62 & tmp9 tmp64 = tl.load(in_ptr0 + (-2 + x7), tmp63 & xmask, other=float('-inf')) tmp65 = triton_helpers.maximum(tmp64, tmp58) tmp66 = tmp62 & tmp15 tmp67 = tl.load(in_ptr0 + (-1 + x7), tmp66 & xmask, other=float('-inf')) tmp68 = triton_helpers.maximum(tmp67, tmp65) tmp69 = tmp62 & tmp22 tmp70 = tl.load(in_ptr0 + x7, tmp69 & xmask, other=float('-inf')) tmp71 = triton_helpers.maximum(tmp70, tmp68) tmp72 = tmp62 & tmp29 tmp73 = tl.load(in_ptr0 + (1 + x7), tmp72 & xmask, other=float('-inf')) tmp74 = triton_helpers.maximum(tmp73, tmp71) tmp75 = tmp62 & tmp36 tmp76 = tl.load(in_ptr0 + (2 + x7), tmp75 & xmask, other=float('-inf')) tmp77 = triton_helpers.maximum(tmp76, tmp74) tmp78 = 1 + x1 tmp79 = tmp78 >= tmp1 tmp80 = tmp78 < tmp3 tmp81 = tmp79 & tmp80 tmp82 = tmp81 & tmp9 tmp83 = tl.load(in_ptr0 + (2 + x7), tmp82 & xmask, other=float('-inf')) tmp84 = triton_helpers.maximum(tmp83, tmp77) tmp85 = tmp81 & tmp15 tmp86 = tl.load(in_ptr0 + (3 + x7), tmp85 & xmask, other=float('-inf')) tmp87 = triton_helpers.maximum(tmp86, tmp84) tmp88 = tmp81 & tmp22 tmp89 = tl.load(in_ptr0 + (4 + x7), tmp88 & xmask, other=float('-inf')) tmp90 = triton_helpers.maximum(tmp89, tmp87) tmp91 = tmp81 & tmp29 tmp92 = tl.load(in_ptr0 + (5 + x7), tmp91 & xmask, other=float('-inf')) tmp93 = triton_helpers.maximum(tmp92, tmp90) tmp94 = tmp81 & tmp36 tmp95 = tl.load(in_ptr0 + (6 + x7), tmp94 & xmask, other=float('-inf')) tmp96 = triton_helpers.maximum(tmp95, tmp93) tmp97 = 2 + x1 tmp98 = tmp97 >= tmp1 tmp99 = tmp97 < tmp3 tmp100 = tmp98 & tmp99 tmp101 = tmp100 & tmp9 tmp102 = tl.load(in_ptr0 + (6 + x7), tmp101 & xmask, other=float('-inf')) tmp103 = triton_helpers.maximum(tmp102, tmp96) tmp104 = tmp100 & tmp15 tmp105 = tl.load(in_ptr0 + (7 + x7), tmp104 & xmask, other=float('-inf')) tmp106 = triton_helpers.maximum(tmp105, tmp103) tmp107 = tmp100 & tmp22 tmp108 = tl.load(in_ptr0 + (8 + x7), tmp107 & xmask, other=float('-inf')) tmp109 = triton_helpers.maximum(tmp108, tmp106) tmp110 = tmp100 & tmp29 tmp111 = tl.load(in_ptr0 + (9 + x7), tmp110 & xmask, other=float('-inf')) tmp112 = triton_helpers.maximum(tmp111, tmp109) tmp113 = tmp100 & tmp36 tmp114 = tl.load(in_ptr0 + (10 + x7), tmp113 & xmask, other=float('-inf')) tmp115 = triton_helpers.maximum(tmp114, tmp112) tl.store(out_ptr0 + (x4 + 256 * x3), tmp115, xmask) tl.store(out_ptr1 + (x4 + 256 * x3), tmp116, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 64 x1 = xindex // 64 tmp0 = tl.load(in_ptr0 + x2, xmask) tl.store(out_ptr0 + (x0 + 256 * x1), tmp0, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = torch.ops.aten.max_pool2d_with_indices.default(arg0_1, [13, 13], [1, 1], [6, 6]) buf1 = buf0[0] del buf0 buf3 = torch.ops.aten.max_pool2d_with_indices.default(arg0_1, [9, 9 ], [1, 1], [4, 4]) buf4 = buf3[0] del buf3 buf10 = empty_strided_cuda((4, 16, 4, 4), (256, 16, 4, 1), torch. float32) buf6 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 128) buf9 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 192) get_raw_stream(0) triton_poi_fused_cat_max_pool2d_with_indices_0[grid(256)](arg0_1, buf6, buf9, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 buf7 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 0) triton_poi_fused_cat_1[grid(256)](buf1, buf7, 256, XBLOCK=256, num_warps=4, num_stages=1) del buf1 buf8 = reinterpret_tensor(buf10, (4, 4, 4, 4), (256, 16, 4, 1), 64) triton_poi_fused_cat_1[grid(256)](buf4, buf8, 256, XBLOCK=256, num_warps=4, num_stages=1) del buf4 return buf10, class SpatialPyramidPoolingNew(nn.Module): def __init__(self, pool_sizes=[5, 9, 13]): super(SpatialPyramidPoolingNew, self).__init__() self.maxpools = nn.ModuleList([nn.MaxPool2d(pool_size, 1, pool_size // 2) for pool_size in pool_sizes]) def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Arcofcosmos/MyYolov4_Pytorch
SpatialPyramidPooling
false
11,240
[ "MIT" ]
0
14c445503d0fc69b8a8b64ecdc87256ac4c1fce1
https://github.com/Arcofcosmos/MyYolov4_Pytorch/tree/14c445503d0fc69b8a8b64ecdc87256ac4c1fce1
PixelNormLayer
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ot/cotu2ivn5oifbezvztnybj4hxdzlduw4unots44b65tvh2c2a6wn.py # Topologically Sorted Source Nodes: [pow_1, mean, add, sqrt, truediv], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div] # Source node to ATen node mapping: # add => add # mean => mean # pow_1 => pow_1 # sqrt => sqrt # truediv => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%pow_1, [1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean, 1e-08), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%add,), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg0_1, %sqrt), kwargs = {}) triton_poi_fused_add_div_mean_pow_sqrt_0 = async_compile.triton('triton_poi_fused_add_div_mean_pow_sqrt_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mean_pow_sqrt_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mean_pow_sqrt_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = 1e-08 tmp15 = tmp13 + tmp14 tmp16 = libdevice.sqrt(tmp15) tmp17 = tmp0 / tmp16 tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, mean, add, sqrt, truediv], Original ATen: [aten.pow, aten.mean, aten.add, aten.sqrt, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mean_pow_sqrt_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class PixelNormLayer(nn.Module): def __init__(self): super(PixelNormLayer, self).__init__() def forward(self, x): return x / torch.sqrt(torch.mean(x ** 2, dim=1, keepdim=True) + 1e-08) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_mean_pow_sqrt_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = 1e-08 tmp15 = tmp13 + tmp14 tmp16 = libdevice.sqrt(tmp15) tmp17 = tmp0 / tmp16 tl.store(out_ptr0 + x3, tmp17, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_mean_pow_sqrt_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class PixelNormLayerNew(nn.Module): def __init__(self): super(PixelNormLayerNew, self).__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
BeningSobariah/ark-stroller
PixelNormLayer
false
11,241
[ "Apache-2.0" ]
0
af2036a1726523d5aca9b1040bfc1fad5c3420f2
https://github.com/BeningSobariah/ark-stroller/tree/af2036a1726523d5aca9b1040bfc1fad5c3420f2
Convolution
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qf/cqf7gwutkswogpoieukkzrlezczaf4jzo3cnrl7zupsezutoj3ez.py # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # conv2d => convolution # relu => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_convolution_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_convolution_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 16) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x3), tmp4, xmask) tl.store(out_ptr0 + (x3), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [conv2d, relu], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0.run(buf1, primals_2, buf2, 256, grid=grid(256), stream=stream0) del primals_2 return (buf1, primals_1, primals_3, buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 3, 3), (36, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Convolution(nn.Module): def __init__(self, c_in, c_out): super().__init__() self.conv = nn.Conv2d(c_in, c_out, 3, stride=1, padding=1) self.relu = nn.ReLU(True) def forward(self, x): return self.relu(self.conv(x)) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'c_in': 4, 'c_out': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 16 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x3, tmp4, xmask) tl.store(out_ptr0 + x3, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3), (36, 9, 3, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 4), (64, 16, 4, 1)) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0[grid(256)](buf1, primals_2, buf2, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 return buf1, primals_1, primals_3, buf2 class ConvolutionNew(nn.Module): def __init__(self, c_in, c_out): super().__init__() self.conv = nn.Conv2d(c_in, c_out, 3, stride=1, padding=1) self.relu = nn.ReLU(True) def forward(self, input_0): primals_1 = self.conv.weight primals_2 = self.conv.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Baymine/Dassl
Convolution
false
11,242
[ "MIT" ]
0
0836fb1f08393e2204326618e783d796741f657e
https://github.com/Baymine/Dassl/tree/0836fb1f08393e2204326618e783d796741f657e
ScaledLeakyReLU
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/af/cafbecncoz4yz235zm7ksda376chkgo5sb7kp2dtqqfihowumwo5.py # Topologically Sorted Source Nodes: [out, mul], Original ATen: [aten.leaky_relu, aten.mul] # Source node to ATen node mapping: # mul => mul_1 # out => gt, mul, where # Graph fragment: # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%arg0_1, 0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 0.2), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %arg0_1, %mul), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%where, 1.4142135623730951), kwargs = {}) triton_poi_fused_leaky_relu_mul_0 = async_compile.triton('triton_poi_fused_leaky_relu_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_leaky_relu_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_leaky_relu_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = 0.2 tmp4 = tmp0 * tmp3 tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 1.4142135623730951 tmp7 = tmp5 * tmp6 tl.store(out_ptr0 + (x0), tmp7, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [out, mul], Original ATen: [aten.leaky_relu, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_leaky_relu_mul_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn from torch.nn import functional as F class ScaledLeakyReLU(nn.Module): """Scaled LeakyReLU. Args: negative_slope (float): Negative slope. Default: 0.2. """ def __init__(self, negative_slope=0.2): super(ScaledLeakyReLU, self).__init__() self.negative_slope = negative_slope def forward(self, x): out = F.leaky_relu(x, negative_slope=self.negative_slope) return out * math.sqrt(2) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_leaky_relu_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp3 = 0.2 tmp4 = tmp0 * tmp3 tmp5 = tl.where(tmp2, tmp0, tmp4) tmp6 = 1.4142135623730951 tmp7 = tmp5 * tmp6 tl.store(out_ptr0 + x0, tmp7, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_leaky_relu_mul_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class ScaledLeakyReLUNew(nn.Module): """Scaled LeakyReLU. Args: negative_slope (float): Negative slope. Default: 0.2. """ def __init__(self, negative_slope=0.2): super(ScaledLeakyReLUNew, self).__init__() self.negative_slope = negative_slope def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
ArdWang/GFPGAN
ScaledLeakyReLU
false
11,243
[ "BSD-3-Clause" ]
0
f984ec32754190fad0b9b7a60d372aac84e57173
https://github.com/ArdWang/GFPGAN/tree/f984ec32754190fad0b9b7a60d372aac84e57173
Prototypes
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/fh/cfhnguw4v6uy4ysjg54ojclakwi3bj2lte6oqizl4rpf4lcxpiyp.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.div] # Source node to ATen node mapping: # x => div # Graph fragment: # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%primals_1, %expand), kwargs = {}) triton_poi_fused_div_0 = async_compile.triton('triton_poi_fused_div_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + (x3), tmp15, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xd/cxdbguu35qzisnm6s4hmvcdzncwpv7ttzfferq6uwb7s22krgyjh.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.div] # Source node to ATen node mapping: # out_1 => div_1 # Graph fragment: # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%view_1, 0.05), kwargs = {}) triton_poi_fused_div_1 = async_compile.triton('triton_poi_fused_div_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_div_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_div_1(in_out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = 20.0 tmp2 = tmp0 * tmp1 tl.store(in_out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.div] stream0 = get_raw_stream(0) triton_poi_fused_div_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), out=buf1) del primals_2 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.div] triton_poi_fused_div_1.run(buf2, 256, grid=grid(256), stream=stream0) return (buf2, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn from torch.nn import functional as F class Prototypes(nn.Module): def __init__(self, fdim, num_classes, temp=0.05): super().__init__() self.prototypes = nn.Linear(fdim, num_classes, bias=False) self.temp = temp def forward(self, x): x = F.normalize(x, p=2, dim=1) out = self.prototypes(x) out = out / self.temp return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'fdim': 4, 'num_classes': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_div_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-12 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + x3, tmp15, xmask) @triton.jit def triton_poi_fused_div_1(in_out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = 20.0 tmp2 = tmp0 * tmp1 tl.store(in_out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_div_0[grid(256)](primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), out=buf1) del primals_2 buf2 = reinterpret_tensor(buf1, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf1 triton_poi_fused_div_1[grid(256)](buf2, 256, XBLOCK=128, num_warps= 4, num_stages=1) return buf2, reinterpret_tensor(buf0, (64, 4), (4, 1), 0) class PrototypesNew(nn.Module): def __init__(self, fdim, num_classes, temp=0.05): super().__init__() self.prototypes = nn.Linear(fdim, num_classes, bias=False) self.temp = temp def forward(self, input_0): primals_2 = self.prototypes.weight primals_1 = input_0 output = call([primals_1, primals_2]) return output[0]
Baymine/Dassl
Prototypes
false
11,244
[ "MIT" ]
0
0836fb1f08393e2204326618e783d796741f657e
https://github.com/Baymine/Dassl/tree/0836fb1f08393e2204326618e783d796741f657e
SmoothL1Loss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/t7/ct7n4vk2rjfplrvzzjcijiow2tdczppexhay5gcikb3dfjajcdzu.py # Topologically Sorted Source Nodes: [sub, diff, lt, mul, mul_1, truediv, sub_1, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.div, aten.where, aten.mean] # Source node to ATen node mapping: # diff => abs_1 # loss => where # loss_1 => mean # loss_bbox => mul_2 # lt => lt # mul => mul # mul_1 => mul_1 # sub => sub # sub_1 => sub_1 # truediv => div # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=4] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %lt : [num_users=1] = call_function[target=torch.ops.aten.lt.Scalar](args = (%abs_1, 1.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %abs_1), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_1, 1.0), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%lt, %div, %sub_1), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%where,), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mean, 1.0), kwargs = {}) triton_per_fused_abs_div_lt_mean_mul_sub_where_0 = async_compile.triton('triton_per_fused_abs_div_lt_mean_mul_sub_where_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_div_lt_mean_mul_sub_where_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 2, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_div_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = tmp7 * tmp3 tmp9 = tmp8 * tmp4 tmp10 = tmp3 - tmp6 tmp11 = tl.where(tmp5, tmp9, tmp10) tmp12 = tl.broadcast_to(tmp11, [RBLOCK]) tmp14 = triton_helpers.promote_to_tensor(tl.sum(tmp12, 0)) tmp15 = 256.0 tmp16 = tmp14 / tmp15 tmp17 = tmp16 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp17, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [sub, diff, lt, mul, mul_1, truediv, sub_1, loss, loss_1, loss_bbox], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.div, aten.where, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_abs_div_lt_mean_mul_sub_where_0.run(buf1, arg0_1, arg1_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import functools import torch import torch.nn as nn import torch.nn.functional as F def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def smooth_l1_loss(pred, target, beta=1.0): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) loss = torch.where(diff < beta, 0.5 * diff * diff / beta, diff - 0.5 * beta ) return loss class SmoothL1Loss(nn.Module): def __init__(self, beta=1.0, reduction='mean', loss_weight=1.0): super(SmoothL1Loss, self).__init__() self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, pred, target, weight=None, avg_factor=None, reduction_override=None, **kwargs): assert reduction_override in (None, 'none', 'mean', 'sum') reduction = (reduction_override if reduction_override else self. reduction) loss_bbox = self.loss_weight * smooth_l1_loss(pred, target, weight, beta=self.beta, reduction=reduction, avg_factor=avg_factor, ** kwargs) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import functools import torch.nn as nn import torch.nn.functional as F assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_abs_div_lt_mean_mul_sub_where_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 0.5 tmp7 = tmp3 * tmp6 tmp8 = tmp7 * tmp3 tmp9 = tmp8 * tmp4 tmp10 = tmp3 - tmp6 tmp11 = tl.where(tmp5, tmp9, tmp10) tmp12 = tl.broadcast_to(tmp11, [RBLOCK]) tmp14 = triton_helpers.promote_to_tensor(tl.sum(tmp12, 0)) tmp15 = 256.0 tmp16 = tmp14 / tmp15 tmp17 = tmp16 * tmp4 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp17, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = buf0 del buf0 get_raw_stream(0) triton_per_fused_abs_div_lt_mean_mul_sub_where_0[grid(1)](buf1, arg0_1, arg1_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 return buf1, def reduce_loss(loss, reduction): """Reduce loss as specified. Args: loss (Tensor): Elementwise loss tensor. reduction (str): Options are "none", "mean" and "sum". Return: Tensor: Reduced loss tensor. """ reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.mean() elif reduction_enum == 2: return loss.sum() def weight_reduce_loss(loss, weight=None, reduction='mean', avg_factor=None): """Apply element-wise weight and reduce loss. Args: loss (Tensor): Element-wise loss. weight (Tensor): Element-wise weights. reduction (str): Same as built-in losses of PyTorch. avg_factor (float): Avarage factor when computing the mean of losses. Returns: Tensor: Processed loss values. """ if weight is not None: loss = loss * weight if avg_factor is None: loss = reduce_loss(loss, reduction) elif reduction == 'mean': loss = loss.sum() / avg_factor elif reduction != 'none': raise ValueError('avg_factor can not be used with reduction="sum"') return loss def weighted_loss(loss_func): """Create a weighted version of a given loss function. To use this decorator, the loss function must have the signature like `loss_func(pred, target, **kwargs)`. The function only needs to compute element-wise loss without any reduction. This decorator will add weight and reduction arguments to the function. The decorated function will have the signature like `loss_func(pred, target, weight=None, reduction='mean', avg_factor=None, **kwargs)`. :Example: >>> import torch >>> @weighted_loss >>> def l1_loss(pred, target): >>> return (pred - target).abs() >>> pred = torch.Tensor([0, 2, 3]) >>> target = torch.Tensor([1, 1, 1]) >>> weight = torch.Tensor([1, 0, 1]) >>> l1_loss(pred, target) tensor(1.3333) >>> l1_loss(pred, target, weight) tensor(1.) >>> l1_loss(pred, target, reduction='none') tensor([1., 1., 2.]) >>> l1_loss(pred, target, weight, avg_factor=2) tensor(1.5000) """ @functools.wraps(loss_func) def wrapper(pred, target, weight=None, reduction='mean', avg_factor= None, **kwargs): loss = loss_func(pred, target, **kwargs) loss = weight_reduce_loss(loss, weight, reduction, avg_factor) return loss return wrapper @weighted_loss def smooth_l1_loss(pred, target, beta=1.0): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) loss = torch.where(diff < beta, 0.5 * diff * diff / beta, diff - 0.5 * beta ) return loss class SmoothL1LossNew(nn.Module): def __init__(self, beta=1.0, reduction='mean', loss_weight=1.0): super(SmoothL1LossNew, self).__init__() self.beta = beta self.reduction = reduction self.loss_weight = loss_weight def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
AtticusJohnson/mmdetection
SmoothL1Loss
false
11,245
[ "Apache-2.0" ]
0
d8d89bafcce13d3b32b1fb3366be3bb9830546c2
https://github.com/AtticusJohnson/mmdetection/tree/d8d89bafcce13d3b32b1fb3366be3bb9830546c2
EqualConv2d
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/zs/czsbkexmu6ywpra7jqion5n6drhfl2liw6og7nt2lnvf5ix7ikrs.py # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul => mul # Graph fragment: # %mul : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, 0.125), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.125 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/tc/ctcagp37ljugm52zu6ckorigrppqo67voefe2f2odg5r6hyllhyu.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.convolution] # Source node to ATen node mapping: # out => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %mul, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [out], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(primals_3, buf0, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 1, 1), (4, 1, 1, 1)) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [out], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf2, primals_2, 16, grid=grid(16), stream=stream0) del primals_2 return (buf2, primals_3, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn from torch.nn import functional as F class EqualConv2d(nn.Module): """Equalized Linear as StyleGAN2. Args: in_channels (int): Channel number of the input. out_channels (int): Channel number of the output. kernel_size (int): Size of the convolving kernel. stride (int): Stride of the convolution. Default: 1 padding (int): Zero-padding added to both sides of the input. Default: 0. bias (bool): If ``True``, adds a learnable bias to the output. Default: ``True``. bias_init_val (float): Bias initialized value. Default: 0. """ def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, bias=True, bias_init_val=0): super(EqualConv2d, self).__init__() self.in_channels = in_channels self.out_channels = out_channels self.kernel_size = kernel_size self.stride = stride self.padding = padding self.scale = 1 / math.sqrt(in_channels * kernel_size ** 2) self.weight = nn.Parameter(torch.randn(out_channels, in_channels, kernel_size, kernel_size)) if bias: self.bias = nn.Parameter(torch.zeros(out_channels).fill_( bias_init_val)) else: self.register_parameter('bias', None) def forward(self, x): out = F.conv2d(x, self.weight * self.scale, bias=self.bias, stride= self.stride, padding=self.padding) return out def __repr__(self): return ( f'{self.__class__.__name__}(in_channels={self.in_channels}, out_channels={self.out_channels}, kernel_size={self.kernel_size}, stride={self.stride}, padding={self.padding}, bias={self.bias is not None})' ) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4, 'kernel_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.125 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(256)](primals_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 buf1 = extern_kernels.convolution(primals_3, buf0, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 1, 1), (4, 1, 1, 1)) buf2 = buf1 del buf1 triton_poi_fused_convolution_1[grid(16)](buf2, primals_2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_2 return buf2, primals_3, buf0 class EqualConv2dNew(nn.Module): """Equalized Linear as StyleGAN2. Args: in_channels (int): Channel number of the input. out_channels (int): Channel number of the output. kernel_size (int): Size of the convolving kernel. stride (int): Stride of the convolution. Default: 1 padding (int): Zero-padding added to both sides of the input. Default: 0. bias (bool): If ``True``, adds a learnable bias to the output. Default: ``True``. bias_init_val (float): Bias initialized value. Default: 0. """ def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, bias=True, bias_init_val=0): super(EqualConv2dNew, self).__init__() self.in_channels = in_channels self.out_channels = out_channels self.kernel_size = kernel_size self.stride = stride self.padding = padding self.scale = 1 / math.sqrt(in_channels * kernel_size ** 2) self.weight = nn.Parameter(torch.randn(out_channels, in_channels, kernel_size, kernel_size)) if bias: self.bias = nn.Parameter(torch.zeros(out_channels).fill_( bias_init_val)) else: self.register_parameter('bias', None) def __repr__(self): return ( f'{self.__class__.__name__}(in_channels={self.in_channels}, out_channels={self.out_channels}, kernel_size={self.kernel_size}, stride={self.stride}, padding={self.padding}, bias={self.bias is not None})' ) def forward(self, input_0): primals_1 = self.weight primals_2 = self.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArdWang/GFPGAN
EqualConv2d
false
11,246
[ "BSD-3-Clause" ]
0
f984ec32754190fad0b9b7a60d372aac84e57173
https://github.com/ArdWang/GFPGAN/tree/f984ec32754190fad0b9b7a60d372aac84e57173
EdgeFeatures
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/nd/cndropn7puoxkcogj6kicwxkbys5derynfd4652ktwvniimbbbns.py # Topologically Sorted Source Nodes: [add, e_new], Original ATen: [aten.add] # Source node to ATen node mapping: # add => add # e_new => add_1 # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %unsqueeze_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add, %unsqueeze), kwargs = {}) triton_poi_fused_add_0 = async_compile.triton('triton_poi_fused_add_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x5 = xindex % 256 x0 = xindex % 4 x6 = xindex % 16 x7 = (xindex // 64) x4 = (xindex // 256) x8 = xindex % 64 x9 = xindex tmp0 = tl.load(in_ptr0 + (x5), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x6 + (16*x7)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr2 + (x8 + (64*x4)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp6 = tmp2 + tmp5 tmp8 = tmp7 + tmp4 tmp9 = tmp6 + tmp8 tl.store(out_ptr0 + (x9), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, e_new], Original ATen: [aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_0.run(buf0, primals_2, buf1, primals_5, buf2, 1024, grid=grid(1024), stream=stream0) del buf0 del buf1 del primals_2 del primals_5 return (buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class EdgeFeatures(nn.Module): """Convnet features for edges. e_ij = U*e_ij + V*(x_i + x_j) """ def __init__(self, hidden_dim): super(EdgeFeatures, self).__init__() self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, e): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_new: Convolved edge features (batch_size, num_nodes, num_nodes, hidden_dim) """ Ue = self.U(e) Vx = self.V(x) Wx = Vx.unsqueeze(1) Vx = Vx.unsqueeze(2) e_new = Ue + Vx + Wx return e_new def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 1024 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x5 = xindex % 256 x0 = xindex % 4 x6 = xindex % 16 x7 = xindex // 64 x4 = xindex // 256 x8 = xindex % 64 x9 = xindex tmp0 = tl.load(in_ptr0 + x5, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x6 + 16 * x7), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr2 + (x8 + 64 * x4), xmask, eviction_policy= 'evict_last') tmp2 = tmp0 + tmp1 tmp5 = tmp3 + tmp4 tmp6 = tmp2 + tmp5 tmp8 = tmp7 + tmp4 tmp9 = tmp6 + tmp8 tl.store(out_ptr0 + x9, tmp9, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_6, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf1) del primals_4 buf2 = empty_strided_cuda((4, 4, 4, 4, 4), (256, 64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_0[grid(1024)](buf0, primals_2, buf1, primals_5, buf2, 1024, XBLOCK=256, num_warps=4, num_stages=1) del buf0 del buf1 del primals_2 del primals_5 return buf2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), reinterpret_tensor(primals_6, (64, 4), (4, 1), 0) class EdgeFeaturesNew(nn.Module): """Convnet features for edges. e_ij = U*e_ij + V*(x_i + x_j) """ def __init__(self, hidden_dim): super(EdgeFeaturesNew, self).__init__() self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, input_0, input_1): primals_1 = self.U.weight primals_2 = self.U.bias primals_4 = self.V.weight primals_5 = self.V.bias primals_3 = input_0 primals_6 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
BrandonKates/graph-convnet-tsp
EdgeFeatures
false
11,247
[ "MIT" ]
0
f6e17e84311c23fd5cab041b7a27b4e0636c44f8
https://github.com/BrandonKates/graph-convnet-tsp/tree/f6e17e84311c23fd5cab041b7a27b4e0636c44f8
EqualLinear
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/wi/cwiyl3lwwtancorrifw77xt3aqb4lermdintht45zvkj3bg54nbl.py # Topologically Sorted Source Nodes: [mul_1], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul_1 => mul_1 # Graph fragment: # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, 0.5), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/2o/c2oqkq7zaubqmw7vuixxlseb2ff5jzqqbyczicxlmsahuxwdpdyp.py # Topologically Sorted Source Nodes: [bias], Original ATen: [aten.mul] # Source node to ATen node mapping: # bias => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, 1), kwargs = {}) triton_poi_fused_mul_1 = async_compile.triton('triton_poi_fused_mul_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, ), (1, )) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul_1], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_2, buf0, 16, grid=grid(16), stream=stream0) del primals_2 buf1 = empty_strided_cuda((4, ), (1, ), torch.float32) # Topologically Sorted Source Nodes: [bias], Original ATen: [aten.mul] triton_poi_fused_mul_1.run(primals_1, buf1, 4, grid=grid(4), stream=stream0) del primals_1 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [bias, out], Original ATen: [aten.mul, aten.addmm] extern_kernels.addmm(buf1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del buf0 del buf1 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn from torch.nn import functional as F class EqualLinear(nn.Module): """Equalized Linear as StyleGAN2. Args: in_channels (int): Size of each sample. out_channels (int): Size of each output sample. bias (bool): If set to ``False``, the layer will not learn an additive bias. Default: ``True``. bias_init_val (float): Bias initialized value. Default: 0. lr_mul (float): Learning rate multiplier. Default: 1. activation (None | str): The activation after ``linear`` operation. Supported: 'fused_lrelu', None. Default: None. """ def __init__(self, in_channels, out_channels, bias=True, bias_init_val= 0, lr_mul=1, activation=None): super(EqualLinear, self).__init__() self.in_channels = in_channels self.out_channels = out_channels self.lr_mul = lr_mul self.activation = activation if self.activation not in ['fused_lrelu', None]: raise ValueError( f"Wrong activation value in EqualLinear: {activation}Supported ones are: ['fused_lrelu', None]." ) self.scale = 1 / math.sqrt(in_channels) * lr_mul self.weight = nn.Parameter(torch.randn(out_channels, in_channels). div_(lr_mul)) if bias: self.bias = nn.Parameter(torch.zeros(out_channels).fill_( bias_init_val)) else: self.register_parameter('bias', None) def forward(self, x): if self.bias is None: bias = None else: bias = self.bias * self.lr_mul if self.activation == 'fused_lrelu': out = F.linear(x, self.weight * self.scale) out = fused_leaky_relu(out, bias) else: out = F.linear(x, self.weight * self.scale, bias=bias) return out def __repr__(self): return ( f'{self.__class__.__name__}(in_channels={self.in_channels}, out_channels={self.out_channels}, bias={self.bias is not None})' ) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) @triton.jit def triton_poi_fused_mul_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 1.0 tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4,), (1,)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(16)](primals_2, buf0, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_2 buf1 = empty_strided_cuda((4,), (1,), torch.float32) triton_poi_fused_mul_1[grid(4)](primals_1, buf1, 4, XBLOCK=4, num_warps=1, num_stages=1) del primals_1 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(buf1, reinterpret_tensor(primals_3, (64, 4), ( 4, 1), 0), reinterpret_tensor(buf0, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del buf0 del buf1 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0) class EqualLinearNew(nn.Module): """Equalized Linear as StyleGAN2. Args: in_channels (int): Size of each sample. out_channels (int): Size of each output sample. bias (bool): If set to ``False``, the layer will not learn an additive bias. Default: ``True``. bias_init_val (float): Bias initialized value. Default: 0. lr_mul (float): Learning rate multiplier. Default: 1. activation (None | str): The activation after ``linear`` operation. Supported: 'fused_lrelu', None. Default: None. """ def __init__(self, in_channels, out_channels, bias=True, bias_init_val= 0, lr_mul=1, activation=None): super(EqualLinearNew, self).__init__() self.in_channels = in_channels self.out_channels = out_channels self.lr_mul = lr_mul self.activation = activation if self.activation not in ['fused_lrelu', None]: raise ValueError( f"Wrong activation value in EqualLinear: {activation}Supported ones are: ['fused_lrelu', None]." ) self.scale = 1 / math.sqrt(in_channels) * lr_mul self.weight = nn.Parameter(torch.randn(out_channels, in_channels). div_(lr_mul)) if bias: self.bias = nn.Parameter(torch.zeros(out_channels).fill_( bias_init_val)) else: self.register_parameter('bias', None) def __repr__(self): return ( f'{self.__class__.__name__}(in_channels={self.in_channels}, out_channels={self.out_channels}, bias={self.bias is not None})' ) def forward(self, input_0): primals_2 = self.weight primals_1 = self.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
ArdWang/GFPGAN
EqualLinear
false
11,248
[ "BSD-3-Clause" ]
0
f984ec32754190fad0b9b7a60d372aac84e57173
https://github.com/ArdWang/GFPGAN/tree/f984ec32754190fad0b9b7a60d372aac84e57173
L2Norm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/h6/ch6lbegsbikmeuedhuqntueffmboz2ejtnlwrp3sosxr5gscbhtj.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, x, out], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.mul] # Source node to ATen node mapping: # norm => add # out => mul # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # x => div # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%primals_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-10), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%primals_1, %add), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expand, %div), kwargs = {}) triton_poi_fused_add_div_mul_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_mul_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 4 x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x3), xmask) tmp2 = tl.load(in_ptr1 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr1 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = libdevice.sqrt(tmp12) tmp14 = 1e-10 tmp15 = tmp13 + tmp14 tmp16 = tmp1 / tmp15 tmp17 = tmp0 * tmp16 tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, x, out], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_2 return (buf0, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn from itertools import product as product import torch.nn.init as init class L2Norm(nn.Module): def __init__(self, n_channels, scale): super(L2Norm, self).__init__() self.n_channels = n_channels self.gamma = scale or None self.eps = 1e-10 self.weight = nn.Parameter(torch.Tensor(self.n_channels)) self.reset_parameters() def reset_parameters(self): init.constant_(self.weight, self.gamma) def forward(self, x): norm = x.pow(2).sum(dim=1, keepdim=True).sqrt() + self.eps x = torch.div(x, norm) out = self.weight.unsqueeze(0).unsqueeze(2).unsqueeze(3).expand_as(x ) * x return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'n_channels': 4, 'scale': 1.0}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn from itertools import product as product import torch.nn.init as init assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 4 x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x3, xmask) tmp2 = tl.load(in_ptr1 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp4 = tl.load(in_ptr1 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp7 = tl.load(in_ptr1 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp10 = tl.load(in_ptr1 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tmp2 * tmp2 tmp5 = tmp4 * tmp4 tmp6 = tmp3 + tmp5 tmp8 = tmp7 * tmp7 tmp9 = tmp6 + tmp8 tmp11 = tmp10 * tmp10 tmp12 = tmp9 + tmp11 tmp13 = libdevice.sqrt(tmp12) tmp14 = 1e-10 tmp15 = tmp13 + tmp14 tmp16 = tmp1 / tmp15 tmp17 = tmp0 * tmp16 tl.store(out_ptr0 + x3, tmp17, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 return buf0, primals_1 class L2NormNew(nn.Module): def __init__(self, n_channels, scale): super(L2NormNew, self).__init__() self.n_channels = n_channels self.gamma = scale or None self.eps = 1e-10 self.weight = nn.Parameter(torch.Tensor(self.n_channels)) self.reset_parameters() def reset_parameters(self): init.constant_(self.weight, self.gamma) def forward(self, input_0): primals_2 = self.weight primals_1 = input_0 output = call([primals_1, primals_2]) return output[0]
AnupKumarGupta/syncnet_python
L2Norm
false
11,249
[ "MIT" ]
0
932b4621cf6aa090baac7c7de22d0649bde9fbbd
https://github.com/AnupKumarGupta/syncnet_python/tree/932b4621cf6aa090baac7c7de22d0649bde9fbbd
NormStyleCode
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qa/cqaynfy4pksjylutfotzmvjyfwpallfpefdyp3nouvnarntc363b.py # Topologically Sorted Source Nodes: [pow_1, mean, add, rsqrt, mul], Original ATen: [aten.pow, aten.mean, aten.add, aten.rsqrt, aten.mul] # Source node to ATen node mapping: # add => add # mean => mean # mul => mul # pow_1 => pow_1 # rsqrt => rsqrt # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 2), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%pow_1, [1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean, 1e-08), kwargs = {}) # %rsqrt : [num_users=1] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %rsqrt), kwargs = {}) triton_poi_fused_add_mean_mul_pow_rsqrt_0 = async_compile.triton('triton_poi_fused_add_mean_mul_pow_rsqrt_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mean_mul_pow_rsqrt_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mean_mul_pow_rsqrt_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = 1e-08 tmp15 = tmp13 + tmp14 tmp16 = libdevice.rsqrt(tmp15) tmp17 = tmp0 * tmp16 tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, mean, add, rsqrt, mul], Original ATen: [aten.pow, aten.mean, aten.add, aten.rsqrt, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_add_mean_mul_pow_rsqrt_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class NormStyleCode(nn.Module): def forward(self, x): """Normalize the style codes. Args: x (Tensor): Style codes with shape (b, c). Returns: Tensor: Normalized tensor. """ return x * torch.rsqrt(torch.mean(x ** 2, dim=1, keepdim=True) + 1e-08) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_mean_mul_pow_rsqrt_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = 4.0 tmp13 = tmp11 / tmp12 tmp14 = 1e-08 tmp15 = tmp13 + tmp14 tmp16 = libdevice.rsqrt(tmp15) tmp17 = tmp0 * tmp16 tl.store(out_ptr0 + x3, tmp17, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_mean_mul_pow_rsqrt_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class NormStyleCodeNew(nn.Module): def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
ArdWang/GFPGAN
NormStyleCode
false
11,250
[ "BSD-3-Clause" ]
0
f984ec32754190fad0b9b7a60d372aac84e57173
https://github.com/ArdWang/GFPGAN/tree/f984ec32754190fad0b9b7a60d372aac84e57173
Sine
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ej/cejzhnnynxtkiot2qt7feea4bkwhxo5g2qmtwe2jbyvjefkkzt6m.py # Topologically Sorted Source Nodes: [mul, sin], Original ATen: [aten.mul, aten.sin] # Source node to ATen node mapping: # mul => mul # sin => sin # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 30.0), kwargs = {}) # %sin : [num_users=1] = call_function[target=torch.ops.aten.sin.default](args = (%mul,), kwargs = {}) triton_poi_fused_mul_sin_0 = async_compile.triton('triton_poi_fused_mul_sin_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sin_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sin_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 30.0 tmp2 = tmp0 * tmp1 tmp3 = tl_math.sin(tmp2) tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, sin], Original ATen: [aten.mul, aten.sin] stream0 = get_raw_stream(0) triton_poi_fused_mul_sin_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Sine(nn.Module): def __init__(self, w0: 'float'=30.0): super(Sine, self).__init__() self.w0 = w0 def forward(self, x: 'torch.Tensor') ->torch.Tensor: return torch.sin(self.w0 * x) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_sin_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 30.0 tmp2 = tmp0 * tmp1 tmp3 = tl_math.sin(tmp2) tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_sin_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class SineNew(nn.Module): def __init__(self, w0: 'float'=30.0): super(SineNew, self).__init__() self.w0 = w0 def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
CGruich/ocp
Sine
false
11,251
[ "MIT", "BSD-3-Clause" ]
0
dd97972b39d4a05e37f745e393a5245657ef5f9e
https://github.com/CGruich/ocp/tree/dd97972b39d4a05e37f745e393a5245657ef5f9e
Combiner
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/3i/c3iibarqokkpdvrjfwijmnifcbse5v3c5vj2oqjzbj6rok54jxf5.py # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.clone] # Source node to ATen node mapping: # matmul => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%expand_1,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_0 = async_compile.triton('triton_poi_fused_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x2), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/nu/cnutrjkknkbbz4uvwndih4ypqejw3a4mcskzbunx3t4zobg4wz2a.py # Topologically Sorted Source Nodes: [h, prelu, mean], Original ATen: [aten.add, aten._prelu_kernel, aten.mean] # Source node to ATen node mapping: # h => add # mean => mean # prelu => gt, mul, where # Graph fragment: # %add : [num_users=3] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_2, %primals_3), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%add, 0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %add), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %add, %mul), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%where, [0]), kwargs = {}) triton_poi_fused__prelu_kernel_add_mean_1 = async_compile.triton('triton_poi_fused__prelu_kernel_add_mean_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__prelu_kernel_add_mean_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__prelu_kernel_add_mean_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr1 + (x0 + (4*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr2 + (0)) tmp6 = tl.broadcast_to(tmp5, [XBLOCK]) tmp9 = tl.load(in_ptr0 + (64 + x3), xmask) tmp15 = tl.load(in_ptr0 + (128 + x3), xmask) tmp21 = tl.load(in_ptr0 + (192 + x3), xmask) tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp7 = tmp6 * tmp2 tmp8 = tl.where(tmp4, tmp2, tmp7) tmp10 = tmp9 + tmp1 tmp11 = tmp10 > tmp3 tmp12 = tmp6 * tmp10 tmp13 = tl.where(tmp11, tmp10, tmp12) tmp14 = tmp8 + tmp13 tmp16 = tmp15 + tmp1 tmp17 = tmp16 > tmp3 tmp18 = tmp6 * tmp16 tmp19 = tl.where(tmp17, tmp16, tmp18) tmp20 = tmp14 + tmp19 tmp22 = tmp21 + tmp1 tmp23 = tmp22 > tmp3 tmp24 = tmp6 * tmp22 tmp25 = tl.where(tmp23, tmp22, tmp24) tmp26 = tmp20 + tmp25 tmp27 = 4.0 tmp28 = tmp26 / tmp27 tl.store(out_ptr0 + (x3), tmp28, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ma/cmahzcwqtujxplgst765erjo36ls3hmqt66zvwuicluwed5dsghj.py # Topologically Sorted Source Nodes: [h, prelu, mean, prelu_1, add_1, h_combined], Original ATen: [aten.add, aten._prelu_kernel, aten.mean, aten.mul] # Source node to ATen node mapping: # add_1 => add_1 # h => add # h_combined => mul_2 # mean => mean # prelu => gt, mul, where # prelu_1 => gt_1, mul_1, where_1 # Graph fragment: # %add : [num_users=3] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_2, %primals_3), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%add, 0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %add), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %add, %mul), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%where, [0]), kwargs = {}) # %gt_1 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%primals_5, 0), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %primals_5), kwargs = {}) # %where_1 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt_1, %primals_5, %mul_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean, %where_1), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add_1, 0.5), kwargs = {}) triton_poi_fused__prelu_kernel_add_mean_mul_2 = async_compile.triton('triton_poi_fused__prelu_kernel_add_mean_mul_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__prelu_kernel_add_mean_mul_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__prelu_kernel_add_mean_mul_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x2), xmask) tmp4 = tl.load(in_ptr2 + (0)) tmp5 = tl.broadcast_to(tmp4, [XBLOCK]) tmp2 = 0.0 tmp3 = tmp1 > tmp2 tmp6 = tmp5 * tmp1 tmp7 = tl.where(tmp3, tmp1, tmp6) tmp8 = tmp0 + tmp7 tmp9 = 0.5 tmp10 = tmp8 * tmp9 tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/tj/ctj7as254m7cko5544mmysmzfhvpb2creunc3bmmqkmbuox53vyv.py # Topologically Sorted Source Nodes: [loc, scale], Original ATen: [aten._prelu_kernel] # Source node to ATen node mapping: # loc => gt_2, mul_3, where_2 # scale => gt_3, mul_4, where_3 # Graph fragment: # %gt_2 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%view_6, 0), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %view_6), kwargs = {}) # %where_2 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt_2, %view_6, %mul_3), kwargs = {}) # %gt_3 : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%view_11, 0), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_3, %view_11), kwargs = {}) # %where_3 : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt_3, %view_11, %mul_4), kwargs = {}) triton_poi_fused__prelu_kernel_3 = async_compile.triton('triton_poi_fused__prelu_kernel_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__prelu_kernel_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__prelu_kernel_3(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp3 = tl.load(in_ptr1 + (0)) tmp4 = tl.broadcast_to(tmp3, [XBLOCK]) tmp7 = tl.load(in_ptr2 + (x0), xmask) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp5 = tmp4 * tmp0 tmp6 = tl.where(tmp2, tmp0, tmp5) tmp8 = tmp7 > tmp1 tmp9 = tmp4 * tmp7 tmp10 = tl.where(tmp8, tmp7, tmp9) tl.store(out_ptr0 + (x0), tmp6, xmask) tl.store(out_ptr1 + (x0), tmp10, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 1, 4), (4, 4, 1)) assert_size_stride(primals_4, (1, ), (1, )) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) assert_size_stride(primals_8, (4, 4), (4, 1)) assert_size_stride(primals_9, (4, ), (1, )) assert_size_stride(primals_10, (4, 4), (4, 1)) assert_size_stride(primals_11, (4, ), (1, )) assert_size_stride(primals_12, (4, 4), (4, 1)) assert_size_stride(primals_13, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.clone] stream0 = get_raw_stream(0) triton_poi_fused_clone_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 buf1 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(primals_2, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(buf0, (16, 4, 4), (16, 4, 1), 0), out=buf1) buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [h, prelu, mean], Original ATen: [aten.add, aten._prelu_kernel, aten.mean] triton_poi_fused__prelu_kernel_add_mean_1.run(buf1, primals_3, primals_4, buf2, 64, grid=grid(64), stream=stream0) buf3 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [h, prelu, mean, prelu_1, add_1, h_combined], Original ATen: [aten.add, aten._prelu_kernel, aten.mean, aten.mul] triton_poi_fused__prelu_kernel_add_mean_mul_2.run(buf2, primals_5, primals_4, buf3, 256, grid=grid(256), stream=stream0) del buf2 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_7 buf7 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_11, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_10, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf7) del primals_11 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [loc, scale], Original ATen: [aten._prelu_kernel] triton_poi_fused__prelu_kernel_3.run(buf4, primals_4, buf7, buf5, buf8, 256, grid=grid(256), stream=stream0) buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [loc_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_9, reinterpret_tensor(buf5, (64, 4), (4, 1), 0), reinterpret_tensor(primals_8, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf6) del primals_9 buf9 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [scale_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_13, reinterpret_tensor(buf8, (64, 4), (4, 1), 0), reinterpret_tensor(primals_12, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf9) del primals_13 return (reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf9, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_3, primals_4, primals_5, buf1, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), buf4, reinterpret_tensor(buf5, (64, 4), (4, 1), 0), buf7, reinterpret_tensor(buf8, (64, 4), (4, 1), 0), primals_12, primals_10, primals_8, primals_6, reinterpret_tensor(primals_2, (16, 4, 4), (16, 1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 1, 4), (4, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn as nn def FC(shape=None, init=None): if init is None: K = shape[-2] init = [torch.rand(shape) * 2 - 1] shape_bias = shape.copy() shape_bias[-2] = 1 init.append(torch.rand(shape_bias) * 2 - 1) else: K = init[0].shape[-2] fc = nn.Parameter(init[0] * np.sqrt(1 / K)) fc_bias = nn.Parameter(init[1] * np.sqrt(1 / K)) return fc, fc_bias class Combiner(nn.Module): """ Parameterizes q(z_t | z_{t-1}, x_{t:T}), which is the basic building block of the guide (i.e. the variational distribution). The dependence on x_{t:T} is through the hidden state of the RNN (see the pytorch module `rnn` below) """ def __init__(self, z_dim, rnn_dim, L): super(Combiner, self).__init__() self.fc1_z, self.fc1_z_bias = FC([L, z_dim, rnn_dim]) self.fc2_z = nn.Linear(rnn_dim, z_dim) self.fc21_z = nn.Linear(z_dim, z_dim) self.fc3_z = nn.Linear(rnn_dim, z_dim) self.fc31_z = nn.Linear(z_dim, z_dim) self.tanh = nn.PReLU() def forward(self, z_t_1, h_rnn): """ Given the latent z at at a particular time step t-1 as well as the hidden state of the RNN h(x_{t:T}) we return the mean and scale vectors that parameterize the (diagonal) gaussian distribution q(z_t | z_{t-1}, y_{t:T}) """ h = torch.matmul(z_t_1, self.fc1_z) + self.fc1_z_bias h_combined = 0.5 * (self.tanh(h).mean(dim=0) + self.tanh(h_rnn)) loc = self.tanh(self.fc2_z(h_combined)) loc = self.fc21_z(loc) scale = self.tanh(self.fc3_z(h_combined)) scale = self.fc31_z(scale) return loc, scale def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'z_dim': 4, 'rnn_dim': 4, 'L': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import numpy as np import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x2, tmp0, xmask) @triton.jit def triton_poi_fused__prelu_kernel_add_mean_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 4 x2 = xindex // 16 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr1 + (x0 + 4 * x2), xmask, eviction_policy='evict_last' ) tmp5 = tl.load(in_ptr2 + 0) tmp6 = tl.broadcast_to(tmp5, [XBLOCK]) tmp9 = tl.load(in_ptr0 + (64 + x3), xmask) tmp15 = tl.load(in_ptr0 + (128 + x3), xmask) tmp21 = tl.load(in_ptr0 + (192 + x3), xmask) tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = tmp2 > tmp3 tmp7 = tmp6 * tmp2 tmp8 = tl.where(tmp4, tmp2, tmp7) tmp10 = tmp9 + tmp1 tmp11 = tmp10 > tmp3 tmp12 = tmp6 * tmp10 tmp13 = tl.where(tmp11, tmp10, tmp12) tmp14 = tmp8 + tmp13 tmp16 = tmp15 + tmp1 tmp17 = tmp16 > tmp3 tmp18 = tmp6 * tmp16 tmp19 = tl.where(tmp17, tmp16, tmp18) tmp20 = tmp14 + tmp19 tmp22 = tmp21 + tmp1 tmp23 = tmp22 > tmp3 tmp24 = tmp6 * tmp22 tmp25 = tl.where(tmp23, tmp22, tmp24) tmp26 = tmp20 + tmp25 tmp27 = 4.0 tmp28 = tmp26 / tmp27 tl.store(out_ptr0 + x3, tmp28, xmask) @triton.jit def triton_poi_fused__prelu_kernel_add_mean_mul_2(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 64 x2 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x2, xmask) tmp4 = tl.load(in_ptr2 + 0) tmp5 = tl.broadcast_to(tmp4, [XBLOCK]) tmp2 = 0.0 tmp3 = tmp1 > tmp2 tmp6 = tmp5 * tmp1 tmp7 = tl.where(tmp3, tmp1, tmp6) tmp8 = tmp0 + tmp7 tmp9 = 0.5 tmp10 = tmp8 * tmp9 tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused__prelu_kernel_3(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp3 = tl.load(in_ptr1 + 0) tmp4 = tl.broadcast_to(tmp3, [XBLOCK]) tmp7 = tl.load(in_ptr2 + x0, xmask) tmp1 = 0.0 tmp2 = tmp0 > tmp1 tmp5 = tmp4 * tmp0 tmp6 = tl.where(tmp2, tmp0, tmp5) tmp8 = tmp7 > tmp1 tmp9 = tmp4 * tmp7 tmp10 = tl.where(tmp8, tmp7, tmp9) tl.store(out_ptr0 + x0, tmp6, xmask) tl.store(out_ptr1 + x0, tmp10, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13) = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, 1, 4), (4, 4, 1)) assert_size_stride(primals_4, (1,), (1,)) assert_size_stride(primals_5, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) assert_size_stride(primals_8, (4, 4), (4, 1)) assert_size_stride(primals_9, (4,), (1,)) assert_size_stride(primals_10, (4, 4), (4, 1)) assert_size_stride(primals_11, (4,), (1,)) assert_size_stride(primals_12, (4, 4), (4, 1)) assert_size_stride(primals_13, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_clone_0[grid(256)](primals_1, buf0, 256, XBLOCK= 128, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((16, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(primals_2, (16, 4, 4), (16, 4, 1), 0), reinterpret_tensor(buf0, (16, 4, 4), (16, 4, 1), 0), out=buf1) buf2 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__prelu_kernel_add_mean_1[grid(64)](buf1, primals_3, primals_4, buf2, 64, XBLOCK=64, num_warps=1, num_stages=1) buf3 = buf0 del buf0 triton_poi_fused__prelu_kernel_add_mean_mul_2[grid(256)](buf2, primals_5, primals_4, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf2 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_7 buf7 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_11, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_10, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf7) del primals_11 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused__prelu_kernel_3[grid(256)](buf4, primals_4, buf7, buf5, buf8, 256, XBLOCK=128, num_warps=4, num_stages=1) buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_9, reinterpret_tensor(buf5, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_8, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf6) del primals_9 buf9 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_13, reinterpret_tensor(buf8, (64, 4), (4, 1), 0), reinterpret_tensor(primals_12, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf9) del primals_13 return reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf9, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), primals_3, primals_4, primals_5, buf1, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), buf4, reinterpret_tensor(buf5, (64, 4), (4, 1), 0 ), buf7, reinterpret_tensor(buf8, (64, 4), (4, 1), 0 ), primals_12, primals_10, primals_8, primals_6, reinterpret_tensor( primals_2, (16, 4, 4), (16, 1, 4), 0) def FC(shape=None, init=None): if init is None: K = shape[-2] init = [torch.rand(shape) * 2 - 1] shape_bias = shape.copy() shape_bias[-2] = 1 init.append(torch.rand(shape_bias) * 2 - 1) else: K = init[0].shape[-2] fc = nn.Parameter(init[0] * np.sqrt(1 / K)) fc_bias = nn.Parameter(init[1] * np.sqrt(1 / K)) return fc, fc_bias class CombinerNew(nn.Module): """ Parameterizes q(z_t | z_{t-1}, x_{t:T}), which is the basic building block of the guide (i.e. the variational distribution). The dependence on x_{t:T} is through the hidden state of the RNN (see the pytorch module `rnn` below) """ def __init__(self, z_dim, rnn_dim, L): super(CombinerNew, self).__init__() self.fc1_z, self.fc1_z_bias = FC([L, z_dim, rnn_dim]) self.fc2_z = nn.Linear(rnn_dim, z_dim) self.fc21_z = nn.Linear(z_dim, z_dim) self.fc3_z = nn.Linear(rnn_dim, z_dim) self.fc31_z = nn.Linear(z_dim, z_dim) self.tanh = nn.PReLU() def forward(self, input_0, input_1): primals_1 = self.fc1_z primals_3 = self.fc1_z_bias primals_6 = self.fc2_z.weight primals_7 = self.fc2_z.bias primals_8 = self.fc21_z.weight primals_9 = self.fc21_z.bias primals_10 = self.fc3_z.weight primals_11 = self.fc3_z.bias primals_12 = self.fc31_z.weight primals_13 = self.fc31_z.bias primals_4 = self.tanh.weight primals_2 = input_0 primals_5 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13]) return output[0], output[1]
BaharAzari/EquiGenDyna
Combiner
false
11,252
[ "MIT" ]
0
1f71d9f7bf278880c61ceacec705bbb23852227c
https://github.com/BaharAzari/EquiGenDyna/tree/1f71d9f7bf278880c61ceacec705bbb23852227c
GaussianSmearing
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/2m/c2m3q7ujyqexcjenpxjvgjmvbkwu67zz3srpjfu7rdmrcativofk.py # Topologically Sorted Source Nodes: [x, x_1, pow_1, mul, exp], Original ATen: [aten.repeat, aten.sub, aten.pow, aten.mul, aten.exp] # Source node to ATen node mapping: # exp => exp # mul => mul # pow_1 => pow_1 # x => repeat # x_1 => sub # Graph fragment: # %repeat : [num_users=1] = call_function[target=torch.ops.aten.repeat.default](args = (%arg0_1, [1, 50]), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%repeat, %arg1_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%pow_1, -1200.5000491943226), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%mul,), kwargs = {}) triton_poi_fused_exp_mul_pow_repeat_sub_0 = async_compile.triton('triton_poi_fused_exp_mul_pow_repeat_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1024], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_exp_mul_pow_repeat_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_exp_mul_pow_repeat_sub_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 800 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 200 x1 = (xindex // 200) x2 = xindex tmp0 = tl.load(in_ptr0 + ((4*x1) + (x0 % 4)), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = -1200.5000491943226 tmp5 = tmp3 * tmp4 tmp6 = tl_math.exp(tmp5) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4), (4, 1)) assert_size_stride(arg1_1, (1, 200), (200, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 200), (200, 1), torch.float32) # Topologically Sorted Source Nodes: [x, x_1, pow_1, mul, exp], Original ATen: [aten.repeat, aten.sub, aten.pow, aten.mul, aten.exp] stream0 = get_raw_stream(0) triton_poi_fused_exp_mul_pow_repeat_sub_0.run(arg0_1, arg1_1, buf0, 800, grid=grid(800), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((1, 200), (200, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class GaussianSmearing(nn.Module): def __init__(self, in_features, start=0, end=1, num_freqs=50): super(GaussianSmearing, self).__init__() self.num_freqs = num_freqs offset = torch.linspace(start, end, num_freqs) self.coeff = -0.5 / (offset[1] - offset[0]).item() ** 2 self.offset = nn.Parameter(offset.view(-1, 1).repeat(1, in_features ).view(1, -1), requires_grad=False) def forward(self, x): x = x.repeat(1, self.num_freqs) x = x - self.offset return torch.exp(self.coeff * torch.pow(x, 2)) def get_inputs(): return [torch.rand([4, 4])] def get_init_inputs(): return [[], {'in_features': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_exp_mul_pow_repeat_sub_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 800 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 200 x1 = xindex // 200 x2 = xindex tmp0 = tl.load(in_ptr0 + (4 * x1 + x0 % 4), xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp4 = -1200.5000491943226 tmp5 = tmp3 * tmp4 tmp6 = tl_math.exp(tmp5) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4), (4, 1)) assert_size_stride(arg1_1, (1, 200), (200, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 200), (200, 1), torch.float32) get_raw_stream(0) triton_poi_fused_exp_mul_pow_repeat_sub_0[grid(800)](arg0_1, arg1_1, buf0, 800, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 del arg1_1 return buf0, class GaussianSmearingNew(nn.Module): def __init__(self, in_features, start=0, end=1, num_freqs=50): super(GaussianSmearingNew, self).__init__() self.num_freqs = num_freqs offset = torch.linspace(start, end, num_freqs) self.coeff = -0.5 / (offset[1] - offset[0]).item() ** 2 self.offset = nn.Parameter(offset.view(-1, 1).repeat(1, in_features ).view(1, -1), requires_grad=False) def forward(self, input_0): arg1_1 = self.offset arg0_1 = input_0 output = call([arg0_1, arg1_1]) return output[0]
CGruich/ocp
GaussianSmearing
false
11,253
[ "MIT", "BSD-3-Clause" ]
0
dd97972b39d4a05e37f745e393a5245657ef5f9e
https://github.com/CGruich/ocp/tree/dd97972b39d4a05e37f745e393a5245657ef5f9e
AttnConnector
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ms/cmsgi2mt4l2csxphaxovjmgng4w7kcopgj2oxi7cojv25ibumrxh.py # Topologically Sorted Source Nodes: [tiled_query, add, fc1], Original ATen: [aten.repeat, aten.add, aten.tanh] # Source node to ATen node mapping: # add => add # fc1 => tanh # tiled_query => repeat # Graph fragment: # %repeat : [num_users=1] = call_function[target=torch.ops.aten.repeat.default](args = (%unsqueeze, [1, 4, 1]), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%repeat, %view_1), kwargs = {}) # %tanh : [num_users=2] = call_function[target=torch.ops.aten.tanh.default](args = (%add,), kwargs = {}) triton_poi_fused_add_repeat_tanh_0 = async_compile.triton('triton_poi_fused_add_repeat_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_repeat_tanh_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_repeat_tanh_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = (xindex // 16) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_out_ptr0 + (x3), xmask) tmp2 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 + tmp3 tmp5 = libdevice.tanh(tmp4) tl.store(in_out_ptr0 + (x3), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/r5/cr5af6fzsr2gmixtrj6ikns5kjfz34fn7v3fwkmuybwhq2ocdmex.py # Topologically Sorted Source Nodes: [sigmoid], Original ATen: [aten.sigmoid] # Source node to ATen node mapping: # sigmoid => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%view_4,), kwargs = {}) triton_poi_fused_sigmoid_1 = async_compile.triton('triton_poi_fused_sigmoid_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_sigmoid_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_sigmoid_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.sigmoid(tmp0) tl.store(out_ptr0 + (x0), tmp1, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/zd/czdeq2ohbgubcyeps2ukquvfhigxtyega57i24ketclusfgmyedi.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.cat] # Source node to ATen node mapping: # out => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%squeeze_1, %primals_4], 1), kwargs = {}) triton_poi_fused_cat_2 = async_compile.triton('triton_poi_fused_cat_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4, ), (1, )) assert_size_stride(primals_7, (1, 4), (4, 1)) assert_size_stride(primals_8, (1, ), (1, )) assert_size_stride(primals_9, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_10, (4, 8), (8, 1)) assert_size_stride(primals_11, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [query_embeded], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, primals_4, reinterpret_tensor(primals_2, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), out=buf1) del primals_5 buf2 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [tiled_query, add, fc1], Original ATen: [aten.repeat, aten.add, aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_add_repeat_tanh_0.run(buf2, buf0, primals_6, 64, grid=grid(64), stream=stream0) del primals_6 buf4 = reinterpret_tensor(buf0, (16, 1), (1, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [linear_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_8, reinterpret_tensor(buf2, (16, 4), (4, 1), 0), reinterpret_tensor(primals_7, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_8 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [sigmoid], Original ATen: [aten.sigmoid] triton_poi_fused_sigmoid_1.run(buf4, buf5, 16, grid=grid(16), stream=stream0) buf6 = empty_strided_cuda((4, 1, 4), (4, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [bmm], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf5, (4, 1, 4), (4, 0, 1), 0), primals_9, out=buf6) del buf5 buf7 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.cat] triton_poi_fused_cat_2.run(buf6, primals_4, buf7, 32, grid=grid(32), stream=stream0) buf8 = reinterpret_tensor(buf6, (4, 4), (4, 1), 0); del buf6 # reuse # Topologically Sorted Source Nodes: [linear_3], Original ATen: [aten.addmm] extern_kernels.addmm(primals_11, buf7, reinterpret_tensor(primals_10, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf8) del primals_11 return (reinterpret_tensor(buf8, (1, 4, 4), (16, 4, 1), 0), primals_4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), buf2, buf4, buf7, primals_10, reinterpret_tensor(primals_9, (4, 4, 4), (16, 1, 4), 0), primals_7, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((1, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn.functional as F import torch.nn as nn class AttnConnector(nn.Module): def __init__(self, rnn_cell, query_size, key_size, content_size, output_size, attn_size): super(AttnConnector, self).__init__() self.query_embed = nn.Linear(query_size, attn_size) self.key_embed = nn.Linear(key_size, attn_size) self.attn_w = nn.Linear(attn_size, 1) if rnn_cell == 'lstm': self.project_h = nn.Linear(content_size + query_size, output_size) self.project_c = nn.Linear(content_size + query_size, output_size) else: self.project = nn.Linear(content_size + query_size, output_size) self.rnn_cell = rnn_cell self.query_size = query_size self.key_size = key_size self.content_size = content_size self.output_size = output_size def forward(self, queries, keys, contents): batch_size = keys.size(0) num_key = keys.size(1) query_embeded = self.query_embed(queries) key_embeded = self.key_embed(keys) tiled_query = query_embeded.unsqueeze(1).repeat(1, num_key, 1) fc1 = F.tanh(tiled_query + key_embeded) attn = self.attn_w(fc1).squeeze(-1) attn = F.sigmoid(attn.view(-1, num_key)).view(batch_size, -1, num_key) mix = torch.bmm(attn, contents).squeeze(1) out = torch.cat([mix, queries], dim=1) if self.rnn_cell == 'lstm': h = self.project_h(out).unsqueeze(0) c = self.project_c(out).unsqueeze(0) new_s = h, c else: new_s = self.project(out).unsqueeze(0) return new_s def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'rnn_cell': 4, 'query_size': 4, 'key_size': 4, 'content_size': 4, 'output_size': 4, 'attn_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_repeat_tanh_0(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x2 = xindex // 16 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * x2), xmask, eviction_policy='evict_last' ) tmp1 = tl.load(in_out_ptr0 + x3, xmask) tmp2 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 + tmp3 tmp5 = libdevice.tanh(tmp4) tl.store(in_out_ptr0 + x3, tmp5, xmask) @triton.jit def triton_poi_fused_sigmoid_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.sigmoid(tmp0) tl.store(out_ptr0 + x0, tmp1, xmask) @triton.jit def triton_poi_fused_cat_2(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11) = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4,), (1,)) assert_size_stride(primals_7, (1, 4), (4, 1)) assert_size_stride(primals_8, (1,), (1,)) assert_size_stride(primals_9, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_10, (4, 8), (8, 1)) assert_size_stride(primals_11, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_3, primals_4, reinterpret_tensor( primals_2, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_2 del primals_3 buf1 = empty_strided_cuda((16, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (16, 4), (4, 1), 0), reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), out=buf1) del primals_5 buf2 = reinterpret_tensor(buf1, (4, 4, 4), (16, 4, 1), 0) del buf1 get_raw_stream(0) triton_poi_fused_add_repeat_tanh_0[grid(64)](buf2, buf0, primals_6, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_6 buf4 = reinterpret_tensor(buf0, (16, 1), (1, 1), 0) del buf0 extern_kernels.addmm(primals_8, reinterpret_tensor(buf2, (16, 4), ( 4, 1), 0), reinterpret_tensor(primals_7, (4, 1), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_8 buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) triton_poi_fused_sigmoid_1[grid(16)](buf4, buf5, 16, XBLOCK=16, num_warps=1, num_stages=1) buf6 = empty_strided_cuda((4, 1, 4), (4, 4, 1), torch.float32) extern_kernels.bmm(reinterpret_tensor(buf5, (4, 1, 4), (4, 0, 1), 0 ), primals_9, out=buf6) del buf5 buf7 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_2[grid(32)](buf6, primals_4, buf7, 32, XBLOCK= 32, num_warps=1, num_stages=1) buf8 = reinterpret_tensor(buf6, (4, 4), (4, 1), 0) del buf6 extern_kernels.addmm(primals_11, buf7, reinterpret_tensor( primals_10, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf8) del primals_11 return reinterpret_tensor(buf8, (1, 4, 4), (16, 4, 1), 0 ), primals_4, reinterpret_tensor(primals_1, (16, 4), (4, 1), 0 ), buf2, buf4, buf7, primals_10, reinterpret_tensor(primals_9, (4, 4, 4), (16, 1, 4), 0), primals_7 class AttnConnectorNew(nn.Module): def __init__(self, rnn_cell, query_size, key_size, content_size, output_size, attn_size): super(AttnConnectorNew, self).__init__() self.query_embed = nn.Linear(query_size, attn_size) self.key_embed = nn.Linear(key_size, attn_size) self.attn_w = nn.Linear(attn_size, 1) if rnn_cell == 'lstm': self.project_h = nn.Linear(content_size + query_size, output_size) self.project_c = nn.Linear(content_size + query_size, output_size) else: self.project = nn.Linear(content_size + query_size, output_size) self.rnn_cell = rnn_cell self.query_size = query_size self.key_size = key_size self.content_size = content_size self.output_size = output_size def forward(self, input_0, input_1, input_2): primals_2 = self.query_embed.weight primals_3 = self.query_embed.bias primals_4 = self.key_embed.weight primals_6 = self.key_embed.bias primals_7 = self.attn_w.weight primals_8 = self.attn_w.bias primals_10 = self.project.weight primals_11 = self.project.bias primals_5 = input_0 primals_1 = input_1 primals_9 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11]) return output[0]
BinLiu777/NeuralDialog-LAED
AttnConnector
false
11,256
[ "Apache-2.0" ]
0
3f52a75e5bcb314e567cafe94925cca32ccfbba1
https://github.com/BinLiu777/NeuralDialog-LAED/tree/3f52a75e5bcb314e567cafe94925cca32ccfbba1
Actor
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/if/cifq2jkyigdaxm7wxnclkxtrpt2r26spa73ezz7aiai5y2pk5in6.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le_1 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[65536], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*i1', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 35200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 550 x2 = (xindex // 2200) x3 = xindex % 2200 tmp0 = tl.load(in_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x3 + (2208*x2)), tmp4, xmask) tl.store(out_ptr1 + (x3 + (2304*x2)), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ye/cye3fjv5gssc6j62pmgmlsadfwaychts6ebygeclbb4tglviiduf.py # Topologically Sorted Source Nodes: [x, linear_1], Original ATen: [aten.relu, aten.view] # Source node to ATen node mapping: # linear_1 => view_2 # x => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %view_2 : [num_users=2] = call_function[target=torch.ops.aten.reshape.default](args = (%relu, [64, 550]), kwargs = {}) triton_poi_fused_relu_view_1 = async_compile.triton('triton_poi_fused_relu_view_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[65536], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_view_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_view_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 35200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 550 x1 = (xindex // 550) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (550*(x1 % 4)) + (2208*(x1 // 4))), xmask) tl.store(out_ptr0 + (x2), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/64/c64g5uxk2a5hbzuhd6oikla2gb5eyfjjb6kbh7btzswha52gl5ex.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x_1 => relu_1 # Graph fragment: # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_3,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_1, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_2 = async_compile.triton('triton_poi_fused_relu_threshold_backward_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*i1', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_2(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 300 x2 = (xindex // 1200) x3 = xindex % 1200 tmp0 = tl.load(in_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x3 + (1216*x2)), tmp4, xmask) tl.store(out_ptr1 + (x3 + (1280*x2)), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/4h/c4h6r6vefoeuinm5eqv2d6wqmfj2mnjacalp633y3m6bnseb2bnk.py # Topologically Sorted Source Nodes: [x_1, linear_2], Original ATen: [aten.relu, aten.view] # Source node to ATen node mapping: # linear_2 => view_4 # x_1 => relu_1 # Graph fragment: # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_3,), kwargs = {}) # %view_4 : [num_users=2] = call_function[target=torch.ops.aten.reshape.default](args = (%relu_1, [64, 300]), kwargs = {}) triton_poi_fused_relu_view_3 = async_compile.triton('triton_poi_fused_relu_view_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_view_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_view_3(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 300 x1 = (xindex // 300) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (300*(x1 % 4)) + (1216*(x1 // 4))), xmask) tl.store(out_ptr0 + (x2), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/sa/csaylv5emhu4uiv5yhtinatofvastyg3cyphls36vbeytuwim32w.py # Topologically Sorted Source Nodes: [tanh], Original ATen: [aten.tanh] # Source node to ATen node mapping: # tanh => tanh # Graph fragment: # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%view_5,), kwargs = {}) triton_poi_fused_tanh_4 = async_compile.triton('triton_poi_fused_tanh_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_tanh_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_tanh_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (550, 4), (4, 1)) assert_size_stride(primals_2, (550, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (300, 550), (550, 1)) assert_size_stride(primals_5, (300, ), (1, )) assert_size_stride(primals_6, (4, 300), (300, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 550), (550, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 550), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4, 4, 550), (8832, 2208, 550, 1), torch.float32) buf9 = empty_strided_cuda((4, 4, 4, 550), (9216, 2304, 550, 1), torch.bool) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf0, primals_2, buf1, buf9, 35200, grid=grid(35200), stream=stream0) del primals_2 buf2 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [x, linear_1], Original ATen: [aten.relu, aten.view] triton_poi_fused_relu_view_1.run(buf1, buf2, 35200, grid=grid(35200), stream=stream0) del buf1 buf3 = empty_strided_cuda((64, 300), (300, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf2, reinterpret_tensor(primals_4, (550, 300), (1, 550), 0), out=buf3) buf4 = empty_strided_cuda((4, 4, 4, 300), (4864, 1216, 300, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 300), (5120, 1280, 300, 1), torch.bool) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_2.run(buf3, primals_5, buf4, buf8, 19200, grid=grid(19200), stream=stream0) del primals_5 buf5 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [x_1, linear_2], Original ATen: [aten.relu, aten.view] triton_poi_fused_relu_view_3.run(buf4, buf5, 19200, grid=grid(19200), stream=stream0) del buf4 buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf5, reinterpret_tensor(primals_6, (300, 4), (1, 300), 0), out=buf6) buf7 = reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf6 # reuse # Topologically Sorted Source Nodes: [tanh], Original ATen: [aten.tanh] triton_poi_fused_tanh_4.run(buf7, primals_7, 256, grid=grid(256), stream=stream0) del primals_7 return (buf7, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf2, buf5, buf7, primals_6, buf8, primals_4, buf9, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((550, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((550, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((300, 550), (550, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((300, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 300), (300, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn.functional as F import torch.nn as nn def hidden_init(layer): fan_in = layer.weight.data.size()[0] lim = 1.0 / np.sqrt(fan_in) return -lim, lim class Actor(nn.Module): """Actor (Policy) Model.""" def __init__(self, state_size, action_size, seed, fc1_units=550, fc2_units=300): """Initialize parameters and build model. Params ====== state_size (int): Dimension of each state action_size (int): Dimension of each action seed (int): Random seed fc1_units (int): Number of nodes in first hidden layer batch normalize fc2_units (int): Number of nodes in second hidden layer """ super(Actor, self).__init__() self.seed = torch.manual_seed(seed) self.fc1 = nn.Linear(state_size, fc1_units) self.fc2 = nn.Linear(fc1_units, fc2_units) self.fc3 = nn.Linear(fc2_units, action_size) self.reset_parameters() def reset_parameters(self): self.fc1.weight.data.uniform_(*hidden_init(self.fc1)) self.fc2.weight.data.uniform_(*hidden_init(self.fc2)) self.fc3.weight.data.uniform_(-0.003, 0.003) def forward(self, state): """Build an actor (policy) network that maps states -> actions.""" x = F.relu(self.fc1(state)) x = F.relu(self.fc2(x)) return torch.tanh(self.fc3(x)) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'state_size': 4, 'action_size': 4, 'seed': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import numpy as np import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 35200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 550 x2 = xindex // 2200 x3 = xindex % 2200 tmp0 = tl.load(in_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x3 + 2208 * x2), tmp4, xmask) tl.store(out_ptr1 + (x3 + 2304 * x2), tmp6, xmask) @triton.jit def triton_poi_fused_relu_view_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 35200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 550 x1 = xindex // 550 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 550 * (x1 % 4) + 2208 * (x1 // 4)), xmask) tl.store(out_ptr0 + x2, tmp0, xmask) @triton.jit def triton_poi_fused_relu_threshold_backward_2(in_ptr0, in_ptr1, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x0 = xindex % 300 x2 = xindex // 1200 x3 = xindex % 1200 tmp0 = tl.load(in_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x3 + 1216 * x2), tmp4, xmask) tl.store(out_ptr1 + (x3 + 1280 * x2), tmp6, xmask) @triton.jit def triton_poi_fused_relu_view_3(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 19200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 300 x1 = xindex // 300 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 300 * (x1 % 4) + 1216 * (x1 // 4)), xmask) tl.store(out_ptr0 + x2, tmp0, xmask) @triton.jit def triton_poi_fused_tanh_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = libdevice.tanh(tmp2) tl.store(in_out_ptr0 + x2, tmp3, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (550, 4), (4, 1)) assert_size_stride(primals_2, (550,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (300, 550), (550, 1)) assert_size_stride(primals_5, (300,), (1,)) assert_size_stride(primals_6, (4, 300), (300, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 550), (550, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 550), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4, 4, 550), (8832, 2208, 550, 1), torch.float32) buf9 = empty_strided_cuda((4, 4, 4, 550), (9216, 2304, 550, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(35200)](buf0, primals_2, buf1, buf9, 35200, XBLOCK=512, num_warps=4, num_stages=1 ) del primals_2 buf2 = buf0 del buf0 triton_poi_fused_relu_view_1[grid(35200)](buf1, buf2, 35200, XBLOCK =512, num_warps=4, num_stages=1) del buf1 buf3 = empty_strided_cuda((64, 300), (300, 1), torch.float32) extern_kernels.mm(buf2, reinterpret_tensor(primals_4, (550, 300), ( 1, 550), 0), out=buf3) buf4 = empty_strided_cuda((4, 4, 4, 300), (4864, 1216, 300, 1), torch.float32) buf8 = empty_strided_cuda((4, 4, 4, 300), (5120, 1280, 300, 1), torch.bool) triton_poi_fused_relu_threshold_backward_2[grid(19200)](buf3, primals_5, buf4, buf8, 19200, XBLOCK=256, num_warps=4, num_stages=1 ) del primals_5 buf5 = buf3 del buf3 triton_poi_fused_relu_view_3[grid(19200)](buf4, buf5, 19200, XBLOCK =256, num_warps=4, num_stages=1) del buf4 buf6 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(buf5, reinterpret_tensor(primals_6, (300, 4), (1, 300), 0), out=buf6) buf7 = reinterpret_tensor(buf6, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf6 triton_poi_fused_tanh_4[grid(256)](buf7, primals_7, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_7 return buf7, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf2, buf5, buf7, primals_6, buf8, primals_4, buf9 def hidden_init(layer): fan_in = layer.weight.data.size()[0] lim = 1.0 / np.sqrt(fan_in) return -lim, lim class ActorNew(nn.Module): """Actor (Policy) Model.""" def __init__(self, state_size, action_size, seed, fc1_units=550, fc2_units=300): """Initialize parameters and build model. Params ====== state_size (int): Dimension of each state action_size (int): Dimension of each action seed (int): Random seed fc1_units (int): Number of nodes in first hidden layer batch normalize fc2_units (int): Number of nodes in second hidden layer """ super(ActorNew, self).__init__() self.seed = torch.manual_seed(seed) self.fc1 = nn.Linear(state_size, fc1_units) self.fc2 = nn.Linear(fc1_units, fc2_units) self.fc3 = nn.Linear(fc2_units, action_size) self.reset_parameters() def reset_parameters(self): self.fc1.weight.data.uniform_(*hidden_init(self.fc1)) self.fc2.weight.data.uniform_(*hidden_init(self.fc2)) self.fc3.weight.data.uniform_(-0.003, 0.003) def forward(self, input_0): primals_1 = self.fc1.weight primals_2 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_6 = self.fc3.weight primals_7 = self.fc3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
BruceChanJianLe/drlnd-tennis-project3
Actor
false
11,257
[ "MIT" ]
0
cb2b880c55eedb6eef3775ed19e90aeec60174d8
https://github.com/BruceChanJianLe/drlnd-tennis-project3/tree/cb2b880c55eedb6eef3775ed19e90aeec60174d8
ATLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ft/cftz5ja4wgrkcx5pv7d7j6lunvnnmz6djadit33a2463r447sayy.py # Topologically Sorted Source Nodes: [setitem_1], Original ATen: [aten.lift_fresh, aten.fill] # Source node to ATen node mapping: # setitem_1 => copy_1, full_default_2 # Graph fragment: # %full_default_2 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %copy_1 : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%select_2, %full_default_2), kwargs = {}) # %copy__default : [num_users=0] = call_function[target=torch.ops.aten.copy_.default](args = (%select_int, %copy_1), kwargs = {}) triton_poi_fused_fill_lift_fresh_0 = async_compile.triton('triton_poi_fused_fill_lift_fresh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_fill_lift_fresh_0', 'mutated_arg_names': ['out_ptr0'], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_fill_lift_fresh_0(out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) tmp0 = 0.0 tl.store(out_ptr0 + (x0 + (64*x1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/cn/ccnjm2dqpzcrnbuww2omqd3latcfln56427nk6wxia5xlnc6b5c5.py # Topologically Sorted Source Nodes: [th_label, setitem, p_mask, sub_1, mul, logit1, log_softmax, n_mask, sub_3, mul_2, logit2, log_softmax_1], Original ATen: [aten.zeros_like, aten.lift_fresh, aten.fill, aten.add, aten.rsub, aten.mul, aten.sub, aten._log_softmax] # Source node to ATen node mapping: # log_softmax => amax, exp, sub_3, sum_1 # log_softmax_1 => amax_1, exp_1, sub_7, sum_3 # logit1 => sub_2 # logit2 => sub_6 # mul => mul # mul_2 => mul_2 # n_mask => sub # p_mask => add # setitem => copy, full_default_1 # sub_1 => sub_1 # sub_3 => sub_5 # th_label => full_default # Graph fragment: # %full_default : [num_users=2] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 1.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %copy : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%select, %full_default_1), kwargs = {}) # %select_scatter_default : [num_users=2] = call_function[target=torch.ops.aten.select_scatter.default](args = (%full_default, %copy, 1, 0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, %select_scatter_default), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %add), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, 1e+30), kwargs = {}) # %sub_2 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %mul), kwargs = {}) # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%sub_2, [-1], True), kwargs = {}) # %sub_3 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_2, %amax), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub_3,), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [-1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg0_1), kwargs = {}) # %sub_5 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %sub), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_5, 1e+30), kwargs = {}) # %sub_6 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %mul_2), kwargs = {}) # %amax_1 : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%sub_6, [-1], True), kwargs = {}) # %sub_7 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_6, %amax_1), kwargs = {}) # %exp_1 : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%sub_7,), kwargs = {}) # %sum_3 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp_1, [-1], True), kwargs = {}) triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1 = async_compile.triton('triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1(in_ptr0, in_ptr1, out_ptr0, out_ptr1, out_ptr2, out_ptr3, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 4) % 4 tmp0 = tl.load(in_ptr0 + (4*x3), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (4*x3), xmask, eviction_policy='evict_last') tmp13 = tl.load(in_ptr0 + (1 + (4*x3)), xmask, eviction_policy='evict_last') tmp14 = tl.load(in_ptr1 + (1 + (4*x3)), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_ptr0 + (2 + (4*x3)), xmask, eviction_policy='evict_last') tmp21 = tl.load(in_ptr1 + (2 + (4*x3)), xmask, eviction_policy='evict_last') tmp27 = tl.load(in_ptr0 + (3 + (4*x3)), xmask, eviction_policy='evict_last') tmp28 = tl.load(in_ptr1 + (3 + (4*x3)), xmask, eviction_policy='evict_last') tmp2 = x1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = tmp2 == tmp3 tmp5 = 1.0 tmp6 = 0.0 tmp7 = tl.where(tmp4, tmp5, tmp6) tmp8 = tmp1 + tmp7 tmp9 = tmp5 - tmp8 tmp10 = 1e+30 tmp11 = tmp9 * tmp10 tmp12 = tmp0 - tmp11 tmp15 = tmp14 + tmp7 tmp16 = tmp5 - tmp15 tmp17 = tmp16 * tmp10 tmp18 = tmp13 - tmp17 tmp19 = triton_helpers.maximum(tmp12, tmp18) tmp22 = tmp21 + tmp7 tmp23 = tmp5 - tmp22 tmp24 = tmp23 * tmp10 tmp25 = tmp20 - tmp24 tmp26 = triton_helpers.maximum(tmp19, tmp25) tmp29 = tmp28 + tmp7 tmp30 = tmp5 - tmp29 tmp31 = tmp30 * tmp10 tmp32 = tmp27 - tmp31 tmp33 = triton_helpers.maximum(tmp26, tmp32) tmp34 = tmp12 - tmp33 tmp35 = tl_math.exp(tmp34) tmp36 = tmp18 - tmp33 tmp37 = tl_math.exp(tmp36) tmp38 = tmp35 + tmp37 tmp39 = tmp25 - tmp33 tmp40 = tl_math.exp(tmp39) tmp41 = tmp38 + tmp40 tmp42 = tmp32 - tmp33 tmp43 = tl_math.exp(tmp42) tmp44 = tmp41 + tmp43 tmp45 = tmp5 - tmp1 tmp46 = tmp5 - tmp45 tmp47 = tmp46 * tmp10 tmp48 = tmp0 - tmp47 tmp49 = tmp5 - tmp14 tmp50 = tmp5 - tmp49 tmp51 = tmp50 * tmp10 tmp52 = tmp13 - tmp51 tmp53 = triton_helpers.maximum(tmp48, tmp52) tmp54 = tmp5 - tmp21 tmp55 = tmp5 - tmp54 tmp56 = tmp55 * tmp10 tmp57 = tmp20 - tmp56 tmp58 = triton_helpers.maximum(tmp53, tmp57) tmp59 = tmp5 - tmp28 tmp60 = tmp5 - tmp59 tmp61 = tmp60 * tmp10 tmp62 = tmp27 - tmp61 tmp63 = triton_helpers.maximum(tmp58, tmp62) tmp64 = tmp48 - tmp63 tmp65 = tl_math.exp(tmp64) tmp66 = tmp52 - tmp63 tmp67 = tl_math.exp(tmp66) tmp68 = tmp65 + tmp67 tmp69 = tmp57 - tmp63 tmp70 = tl_math.exp(tmp69) tmp71 = tmp68 + tmp70 tmp72 = tmp62 - tmp63 tmp73 = tl_math.exp(tmp72) tmp74 = tmp71 + tmp73 tl.store(out_ptr0 + (x3), tmp33, xmask) tl.store(out_ptr1 + (x3), tmp44, xmask) tl.store(out_ptr2 + (x3), tmp63, xmask) tl.store(out_ptr3 + (x3), tmp74, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/uj/cuj4drsaoeeafppqq56jc2dqbimn76sbovf5a42dyfiev4rt56n7.py # Topologically Sorted Source Nodes: [th_label, setitem, p_mask, sub_1, mul, logit1, log_softmax, mul_1, sum_1, loss1, n_mask, sub_3, mul_2, logit2, log_softmax_1, mul_3, sum_2, loss2, loss, loss_1], Original ATen: [aten.zeros_like, aten.lift_fresh, aten.fill, aten.add, aten.rsub, aten.mul, aten.sub, aten._log_softmax, aten.sum, aten.neg, aten.mean] # Source node to ATen node mapping: # log_softmax => log, sub_3, sub_4 # log_softmax_1 => amax_1, log_1, sub_7, sub_8 # logit1 => sub_2 # logit2 => sub_6 # loss => add_1 # loss1 => neg # loss2 => neg_1 # loss_1 => mean # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # mul_3 => mul_3 # n_mask => sub # p_mask => add # setitem => copy, full_default_1 # sub_1 => sub_1 # sub_3 => sub_5 # sum_1 => sum_2 # sum_2 => sum_4 # th_label => full_default # Graph fragment: # %full_default : [num_users=2] = call_function[target=torch.ops.aten.full.default](args = ([4, 4, 4, 4], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %full_default_1 : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 1.0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %copy : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%select, %full_default_1), kwargs = {}) # %select_scatter_default : [num_users=2] = call_function[target=torch.ops.aten.select_scatter.default](args = (%full_default, %copy, 1, 0), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, %select_scatter_default), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %add), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_1, 1e+30), kwargs = {}) # %sub_2 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %mul), kwargs = {}) # %sub_3 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_2, %amax), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_1,), kwargs = {}) # %sub_4 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_3, %log), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_4, %arg0_1), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul_1, [1]), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_2,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg0_1), kwargs = {}) # %sub_5 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %sub), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_5, 1e+30), kwargs = {}) # %sub_6 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %mul_2), kwargs = {}) # %amax_1 : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%sub_6, [-1], True), kwargs = {}) # %sub_7 : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_6, %amax_1), kwargs = {}) # %log_1 : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%sum_3,), kwargs = {}) # %sub_8 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%sub_7, %log_1), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_8, %select_scatter_default), kwargs = {}) # %sum_4 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul_3, [1]), kwargs = {}) # %neg_1 : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%sum_4,), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%neg, %neg_1), kwargs = {}) # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_1,), kwargs = {}) triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2 = async_compile.triton('triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: 'i32', 8: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {7: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 8), equal_to_1=(7,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 24, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = (rindex // 16) r4 = rindex % 16 r1 = (rindex // 4) % 4 r3 = rindex tmp0 = tl.load(in_ptr0 + (r4 + (64*r2)), None) tmp1 = tl.load(in_ptr1 + (r4 + (64*r2)), None) tmp12 = tl.load(in_ptr2 + (r1 + (16*r2)), None, eviction_policy='evict_last') tmp14 = tl.load(in_ptr3 + (r1 + (16*r2)), None, eviction_policy='evict_last') tmp18 = tl.load(in_ptr0 + (16 + r4 + (64*r2)), None) tmp19 = tl.load(in_ptr1 + (16 + r4 + (64*r2)), None) tmp27 = tl.load(in_ptr2 + (4 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp29 = tl.load(in_ptr3 + (4 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp34 = tl.load(in_ptr0 + (32 + r4 + (64*r2)), None) tmp35 = tl.load(in_ptr1 + (32 + r4 + (64*r2)), None) tmp43 = tl.load(in_ptr2 + (8 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp45 = tl.load(in_ptr3 + (8 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp50 = tl.load(in_ptr0 + (48 + r4 + (64*r2)), None) tmp51 = tl.load(in_ptr1 + (48 + r4 + (64*r2)), None) tmp59 = tl.load(in_ptr2 + (12 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp61 = tl.load(in_ptr3 + (12 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp70 = tl.load(in_ptr4 + (r1 + (16*r2)), None, eviction_policy='evict_last') tmp72 = tl.load(in_ptr5 + (r1 + (16*r2)), None, eviction_policy='evict_last') tmp80 = tl.load(in_ptr4 + (4 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp82 = tl.load(in_ptr5 + (4 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp91 = tl.load(in_ptr4 + (8 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp93 = tl.load(in_ptr5 + (8 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp102 = tl.load(in_ptr4 + (12 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp104 = tl.load(in_ptr5 + (12 + r1 + (16*r2)), None, eviction_policy='evict_last') tmp2 = tl.full([1, 1], 0, tl.int32) tmp3 = tmp2 == tmp2 tmp4 = 1.0 tmp5 = 0.0 tmp6 = tl.where(tmp3, tmp4, tmp5) tmp7 = tmp1 + tmp6 tmp8 = tmp4 - tmp7 tmp9 = 1e+30 tmp10 = tmp8 * tmp9 tmp11 = tmp0 - tmp10 tmp13 = tmp11 - tmp12 tmp15 = tl_math.log(tmp14) tmp16 = tmp13 - tmp15 tmp17 = tmp16 * tmp1 tmp20 = tl.full([1, 1], 1, tl.int32) tmp21 = tmp20 == tmp2 tmp22 = tl.where(tmp21, tmp4, tmp5) tmp23 = tmp19 + tmp22 tmp24 = tmp4 - tmp23 tmp25 = tmp24 * tmp9 tmp26 = tmp18 - tmp25 tmp28 = tmp26 - tmp27 tmp30 = tl_math.log(tmp29) tmp31 = tmp28 - tmp30 tmp32 = tmp31 * tmp19 tmp33 = tmp17 + tmp32 tmp36 = tl.full([1, 1], 2, tl.int32) tmp37 = tmp36 == tmp2 tmp38 = tl.where(tmp37, tmp4, tmp5) tmp39 = tmp35 + tmp38 tmp40 = tmp4 - tmp39 tmp41 = tmp40 * tmp9 tmp42 = tmp34 - tmp41 tmp44 = tmp42 - tmp43 tmp46 = tl_math.log(tmp45) tmp47 = tmp44 - tmp46 tmp48 = tmp47 * tmp35 tmp49 = tmp33 + tmp48 tmp52 = tl.full([1, 1], 3, tl.int32) tmp53 = tmp52 == tmp2 tmp54 = tl.where(tmp53, tmp4, tmp5) tmp55 = tmp51 + tmp54 tmp56 = tmp4 - tmp55 tmp57 = tmp56 * tmp9 tmp58 = tmp50 - tmp57 tmp60 = tmp58 - tmp59 tmp62 = tl_math.log(tmp61) tmp63 = tmp60 - tmp62 tmp64 = tmp63 * tmp51 tmp65 = tmp49 + tmp64 tmp66 = tmp4 - tmp1 tmp67 = tmp4 - tmp66 tmp68 = tmp67 * tmp9 tmp69 = tmp0 - tmp68 tmp71 = tmp69 - tmp70 tmp73 = tl_math.log(tmp72) tmp74 = tmp71 - tmp73 tmp75 = tmp74 * tmp6 tmp76 = tmp4 - tmp19 tmp77 = tmp4 - tmp76 tmp78 = tmp77 * tmp9 tmp79 = tmp18 - tmp78 tmp81 = tmp79 - tmp80 tmp83 = tl_math.log(tmp82) tmp84 = tmp81 - tmp83 tmp85 = tmp84 * tmp22 tmp86 = tmp75 + tmp85 tmp87 = tmp4 - tmp35 tmp88 = tmp4 - tmp87 tmp89 = tmp88 * tmp9 tmp90 = tmp34 - tmp89 tmp92 = tmp90 - tmp91 tmp94 = tl_math.log(tmp93) tmp95 = tmp92 - tmp94 tmp96 = tmp95 * tmp38 tmp97 = tmp86 + tmp96 tmp98 = tmp4 - tmp51 tmp99 = tmp4 - tmp98 tmp100 = tmp99 * tmp9 tmp101 = tmp50 - tmp100 tmp103 = tmp101 - tmp102 tmp105 = tl_math.log(tmp104) tmp106 = tmp103 - tmp105 tmp107 = tmp106 * tmp54 tmp108 = tmp97 + tmp107 tmp109 = -tmp65 tmp110 = -tmp108 tmp111 = tmp109 + tmp110 tmp112 = tl.broadcast_to(tmp111, [XBLOCK, RBLOCK]) tmp114 = tl.sum(tmp112, 1)[:, None] tmp115 = 64.0 tmp116 = tmp114 / tmp115 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp116, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [setitem_1], Original ATen: [aten.lift_fresh, aten.fill] stream0 = get_raw_stream(0) triton_poi_fused_fill_lift_fresh_0.run(arg0_1, 64, grid=grid(64), stream=stream0) buf1 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf5 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) # Topologically Sorted Source Nodes: [th_label, setitem, p_mask, sub_1, mul, logit1, log_softmax, n_mask, sub_3, mul_2, logit2, log_softmax_1], Original ATen: [aten.zeros_like, aten.lift_fresh, aten.fill, aten.add, aten.rsub, aten.mul, aten.sub, aten._log_softmax] triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1.run(arg1_1, arg0_1, buf1, buf2, buf4, buf5, 64, grid=grid(64), stream=stream0) buf7 = empty_strided_cuda((), (), torch.float32) buf8 = buf7; del buf7 # reuse # Topologically Sorted Source Nodes: [th_label, setitem, p_mask, sub_1, mul, logit1, log_softmax, mul_1, sum_1, loss1, n_mask, sub_3, mul_2, logit2, log_softmax_1, mul_3, sum_2, loss2, loss, loss_1], Original ATen: [aten.zeros_like, aten.lift_fresh, aten.fill, aten.add, aten.rsub, aten.mul, aten.sub, aten._log_softmax, aten.sum, aten.neg, aten.mean] triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2.run(buf8, arg1_1, arg0_1, buf1, buf2, buf4, buf5, 1, 64, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del buf1 del buf2 del buf4 del buf5 return (buf8, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import Tensor import torch.nn as nn import torch.nn.functional as F class ATLoss(nn.Module): def __init__(self): super().__init__() def forward(self, logits: 'Tensor', labels: 'Tensor') ->float: """ Args: logits: predicted probabilities (shape: batch size x num classes) labels: one-hot encoded true labels (shape: batch size x num classes) """ th_label = torch.zeros_like(labels, dtype=torch.float) th_label[:, 0] = 1.0 labels[:, 0] = 0.0 p_mask = labels + th_label n_mask = 1 - labels logit1 = logits - (1 - p_mask) * 1e+30 loss1 = -(F.log_softmax(logit1, dim=-1) * labels).sum(1) logit2 = logits - (1 - n_mask) * 1e+30 loss2 = -(F.log_softmax(logit2, dim=-1) * th_label).sum(1) loss = loss1 + loss2 loss = loss.mean() return loss def get_label(self, logits: 'Tensor', num_labels: 'int'=-1, threshold: 'float'=None) ->Tensor: """ Calculated the labels """ if threshold: th_logit = torch.full((len(logits), 1), threshold) else: th_logit = logits[:, 0].unsqueeze(1) output = torch.zeros_like(logits) mask = logits > th_logit if num_labels > 0: top_v, _ = torch.topk(logits, num_labels, dim=1) top_v = top_v[:, -1] mask = (logits >= top_v.unsqueeze(1)) & mask output[mask] = 1.0 output[:, 0] = output.sum(1) == 0.0 return output def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math from torch import Tensor import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_fill_lift_fresh_0(out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 tmp0 = 0.0 tl.store(out_ptr0 + (x0 + 64 * x1), tmp0, xmask) @triton.jit def triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1( in_ptr0, in_ptr1, out_ptr0, out_ptr1, out_ptr2, out_ptr3, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 4 % 4 tmp0 = tl.load(in_ptr0 + 4 * x3, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + 4 * x3, xmask, eviction_policy='evict_last') tmp13 = tl.load(in_ptr0 + (1 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp14 = tl.load(in_ptr1 + (1 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp20 = tl.load(in_ptr0 + (2 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp21 = tl.load(in_ptr1 + (2 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp27 = tl.load(in_ptr0 + (3 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp28 = tl.load(in_ptr1 + (3 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp2 = x1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = tmp2 == tmp3 tmp5 = 1.0 tmp6 = 0.0 tmp7 = tl.where(tmp4, tmp5, tmp6) tmp8 = tmp1 + tmp7 tmp9 = tmp5 - tmp8 tmp10 = 1e+30 tmp11 = tmp9 * tmp10 tmp12 = tmp0 - tmp11 tmp15 = tmp14 + tmp7 tmp16 = tmp5 - tmp15 tmp17 = tmp16 * tmp10 tmp18 = tmp13 - tmp17 tmp19 = triton_helpers.maximum(tmp12, tmp18) tmp22 = tmp21 + tmp7 tmp23 = tmp5 - tmp22 tmp24 = tmp23 * tmp10 tmp25 = tmp20 - tmp24 tmp26 = triton_helpers.maximum(tmp19, tmp25) tmp29 = tmp28 + tmp7 tmp30 = tmp5 - tmp29 tmp31 = tmp30 * tmp10 tmp32 = tmp27 - tmp31 tmp33 = triton_helpers.maximum(tmp26, tmp32) tmp34 = tmp12 - tmp33 tmp35 = tl_math.exp(tmp34) tmp36 = tmp18 - tmp33 tmp37 = tl_math.exp(tmp36) tmp38 = tmp35 + tmp37 tmp39 = tmp25 - tmp33 tmp40 = tl_math.exp(tmp39) tmp41 = tmp38 + tmp40 tmp42 = tmp32 - tmp33 tmp43 = tl_math.exp(tmp42) tmp44 = tmp41 + tmp43 tmp45 = tmp5 - tmp1 tmp46 = tmp5 - tmp45 tmp47 = tmp46 * tmp10 tmp48 = tmp0 - tmp47 tmp49 = tmp5 - tmp14 tmp50 = tmp5 - tmp49 tmp51 = tmp50 * tmp10 tmp52 = tmp13 - tmp51 tmp53 = triton_helpers.maximum(tmp48, tmp52) tmp54 = tmp5 - tmp21 tmp55 = tmp5 - tmp54 tmp56 = tmp55 * tmp10 tmp57 = tmp20 - tmp56 tmp58 = triton_helpers.maximum(tmp53, tmp57) tmp59 = tmp5 - tmp28 tmp60 = tmp5 - tmp59 tmp61 = tmp60 * tmp10 tmp62 = tmp27 - tmp61 tmp63 = triton_helpers.maximum(tmp58, tmp62) tmp64 = tmp48 - tmp63 tmp65 = tl_math.exp(tmp64) tmp66 = tmp52 - tmp63 tmp67 = tl_math.exp(tmp66) tmp68 = tmp65 + tmp67 tmp69 = tmp57 - tmp63 tmp70 = tl_math.exp(tmp69) tmp71 = tmp68 + tmp70 tmp72 = tmp62 - tmp63 tmp73 = tl_math.exp(tmp72) tmp74 = tmp71 + tmp73 tl.store(out_ptr0 + x3, tmp33, xmask) tl.store(out_ptr1 + x3, tmp44, xmask) tl.store(out_ptr2 + x3, tmp63, xmask) tl.store(out_ptr3 + x3, tmp74, xmask) @triton.jit def triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2( in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r2 = rindex // 16 r4 = rindex % 16 r1 = rindex // 4 % 4 tmp0 = tl.load(in_ptr0 + (r4 + 64 * r2), None) tmp1 = tl.load(in_ptr1 + (r4 + 64 * r2), None) tmp12 = tl.load(in_ptr2 + (r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp14 = tl.load(in_ptr3 + (r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp18 = tl.load(in_ptr0 + (16 + r4 + 64 * r2), None) tmp19 = tl.load(in_ptr1 + (16 + r4 + 64 * r2), None) tmp27 = tl.load(in_ptr2 + (4 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp29 = tl.load(in_ptr3 + (4 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp34 = tl.load(in_ptr0 + (32 + r4 + 64 * r2), None) tmp35 = tl.load(in_ptr1 + (32 + r4 + 64 * r2), None) tmp43 = tl.load(in_ptr2 + (8 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp45 = tl.load(in_ptr3 + (8 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp50 = tl.load(in_ptr0 + (48 + r4 + 64 * r2), None) tmp51 = tl.load(in_ptr1 + (48 + r4 + 64 * r2), None) tmp59 = tl.load(in_ptr2 + (12 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp61 = tl.load(in_ptr3 + (12 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp70 = tl.load(in_ptr4 + (r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp72 = tl.load(in_ptr5 + (r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp80 = tl.load(in_ptr4 + (4 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp82 = tl.load(in_ptr5 + (4 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp91 = tl.load(in_ptr4 + (8 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp93 = tl.load(in_ptr5 + (8 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp102 = tl.load(in_ptr4 + (12 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp104 = tl.load(in_ptr5 + (12 + r1 + 16 * r2), None, eviction_policy= 'evict_last') tmp2 = tl.full([1, 1], 0, tl.int32) tmp3 = tmp2 == tmp2 tmp4 = 1.0 tmp5 = 0.0 tmp6 = tl.where(tmp3, tmp4, tmp5) tmp7 = tmp1 + tmp6 tmp8 = tmp4 - tmp7 tmp9 = 1e+30 tmp10 = tmp8 * tmp9 tmp11 = tmp0 - tmp10 tmp13 = tmp11 - tmp12 tmp15 = tl_math.log(tmp14) tmp16 = tmp13 - tmp15 tmp17 = tmp16 * tmp1 tmp20 = tl.full([1, 1], 1, tl.int32) tmp21 = tmp20 == tmp2 tmp22 = tl.where(tmp21, tmp4, tmp5) tmp23 = tmp19 + tmp22 tmp24 = tmp4 - tmp23 tmp25 = tmp24 * tmp9 tmp26 = tmp18 - tmp25 tmp28 = tmp26 - tmp27 tmp30 = tl_math.log(tmp29) tmp31 = tmp28 - tmp30 tmp32 = tmp31 * tmp19 tmp33 = tmp17 + tmp32 tmp36 = tl.full([1, 1], 2, tl.int32) tmp37 = tmp36 == tmp2 tmp38 = tl.where(tmp37, tmp4, tmp5) tmp39 = tmp35 + tmp38 tmp40 = tmp4 - tmp39 tmp41 = tmp40 * tmp9 tmp42 = tmp34 - tmp41 tmp44 = tmp42 - tmp43 tmp46 = tl_math.log(tmp45) tmp47 = tmp44 - tmp46 tmp48 = tmp47 * tmp35 tmp49 = tmp33 + tmp48 tmp52 = tl.full([1, 1], 3, tl.int32) tmp53 = tmp52 == tmp2 tmp54 = tl.where(tmp53, tmp4, tmp5) tmp55 = tmp51 + tmp54 tmp56 = tmp4 - tmp55 tmp57 = tmp56 * tmp9 tmp58 = tmp50 - tmp57 tmp60 = tmp58 - tmp59 tmp62 = tl_math.log(tmp61) tmp63 = tmp60 - tmp62 tmp64 = tmp63 * tmp51 tmp65 = tmp49 + tmp64 tmp66 = tmp4 - tmp1 tmp67 = tmp4 - tmp66 tmp68 = tmp67 * tmp9 tmp69 = tmp0 - tmp68 tmp71 = tmp69 - tmp70 tmp73 = tl_math.log(tmp72) tmp74 = tmp71 - tmp73 tmp75 = tmp74 * tmp6 tmp76 = tmp4 - tmp19 tmp77 = tmp4 - tmp76 tmp78 = tmp77 * tmp9 tmp79 = tmp18 - tmp78 tmp81 = tmp79 - tmp80 tmp83 = tl_math.log(tmp82) tmp84 = tmp81 - tmp83 tmp85 = tmp84 * tmp22 tmp86 = tmp75 + tmp85 tmp87 = tmp4 - tmp35 tmp88 = tmp4 - tmp87 tmp89 = tmp88 * tmp9 tmp90 = tmp34 - tmp89 tmp92 = tmp90 - tmp91 tmp94 = tl_math.log(tmp93) tmp95 = tmp92 - tmp94 tmp96 = tmp95 * tmp38 tmp97 = tmp86 + tmp96 tmp98 = tmp4 - tmp51 tmp99 = tmp4 - tmp98 tmp100 = tmp99 * tmp9 tmp101 = tmp50 - tmp100 tmp103 = tmp101 - tmp102 tmp105 = tl_math.log(tmp104) tmp106 = tmp103 - tmp105 tmp107 = tmp106 * tmp54 tmp108 = tmp97 + tmp107 tmp109 = -tmp65 tmp110 = -tmp108 tmp111 = tmp109 + tmp110 tmp112 = tl.broadcast_to(tmp111, [XBLOCK, RBLOCK]) tmp114 = tl.sum(tmp112, 1)[:, None] tmp115 = 64.0 tmp116 = tmp114 / tmp115 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp116, None) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) get_raw_stream(0) triton_poi_fused_fill_lift_fresh_0[grid(64)](arg0_1, 64, XBLOCK=64, num_warps=1, num_stages=1) buf1 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf2 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf4 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) buf5 = empty_strided_cuda((4, 4, 4, 1), (16, 4, 1, 64), torch.float32) triton_poi_fused__log_softmax_add_fill_lift_fresh_mul_rsub_sub_zeros_like_1[ grid(64)](arg1_1, arg0_1, buf1, buf2, buf4, buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) buf7 = empty_strided_cuda((), (), torch.float32) buf8 = buf7 del buf7 triton_per_fused__log_softmax_add_fill_lift_fresh_mean_mul_neg_rsub_sub_sum_zeros_like_2[ grid(1)](buf8, arg1_1, arg0_1, buf1, buf2, buf4, buf5, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del buf1 del buf2 del buf4 del buf5 return buf8, class ATLossNew(nn.Module): def __init__(self): super().__init__() def get_label(self, logits: 'Tensor', num_labels: 'int'=-1, threshold: 'float'=None) ->Tensor: """ Calculated the labels """ if threshold: th_logit = torch.full((len(logits), 1), threshold) else: th_logit = logits[:, 0].unsqueeze(1) output = torch.zeros_like(logits) mask = logits > th_logit if num_labels > 0: top_v, _ = torch.topk(logits, num_labels, dim=1) top_v = top_v[:, -1] mask = (logits >= top_v.unsqueeze(1)) & mask output[mask] = 1.0 output[:, 0] = output.sum(1) == 0.0 return output def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
BunnyNoBugs/DeepPavlov
ATLoss
false
11,258
[ "Apache-2.0" ]
0
b2213db633a669d27d6f745dd780530574ccf8b5
https://github.com/BunnyNoBugs/DeepPavlov/tree/b2213db633a669d27d6f745dd780530574ccf8b5
BatchNormNode
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/l2/cl2he6ppbcahzxtptldyyqxa7rh4txjnvswoesl3vnrtlj3olyy4.py # Topologically Sorted Source Nodes: [x_trans, x_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] # Source node to ATen node mapping: # x_trans => clone # x_trans_bn => add, rsqrt, var_mean # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone, [0, 2]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) triton_per_fused__native_batch_norm_legit_clone_0 = async_compile.triton('triton_per_fused__native_batch_norm_legit_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 16], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_0(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*r1)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 16, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp17 = 16.0 tmp18 = tmp16 / tmp17 tmp19 = 1e-05 tmp20 = tmp18 + tmp19 tmp21 = libdevice.rsqrt(tmp20) tl.store(out_ptr2 + (x0), tmp21, xmask) tl.store(out_ptr0 + (x0), tmp10, xmask) tl.store(out_ptr1 + (x0), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/gw/cgwu7ta5dsu4g3pboelo6l5ajhi4zsjcqytpy2bgi2ikvomu5tmh.py # Topologically Sorted Source Nodes: [x_bn], Original ATen: [aten.clone] # Source node to ATen node mapping: # x_bn => clone_1 # Graph fragment: # %clone_1 : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_1,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_1 = async_compile.triton('triton_poi_fused_clone_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 16.0 tmp5 = tmp3 / tmp4 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp2 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + (x2), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf1 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf3 = empty_strided_cuda((1, 4, 1), (4, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x_trans, x_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] stream0 = get_raw_stream(0) triton_per_fused__native_batch_norm_legit_clone_0.run(primals_1, buf0, buf1, buf3, 4, 16, grid=grid(4), stream=stream0) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_bn], Original ATen: [aten.clone] triton_poi_fused_clone_1.run(primals_1, buf0, buf1, primals_2, primals_3, buf4, 64, grid=grid(64), stream=stream0) del buf1 del primals_2 del primals_3 return (buf4, primals_1, reinterpret_tensor(buf3, (4, ), (1, ), 0), reinterpret_tensor(buf0, (1, 4, 1), (4, 1, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class BatchNormNode(nn.Module): """Batch normalization for node features. """ def __init__(self, hidden_dim): super(BatchNormNode, self).__init__() self.batch_norm = nn.BatchNorm1d(hidden_dim, track_running_stats=False) def forward(self, x): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) Returns: x_bn: Node features after batch normalization (batch_size, num_nodes, hidden_dim) """ x_trans = x.transpose(1, 2).contiguous() x_trans_bn = self.batch_norm(x_trans) x_bn = x_trans_bn.transpose(1, 2).contiguous() return x_bn def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused__native_batch_norm_legit_clone_0(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * r1), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 16, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp17 = 16.0 tmp18 = tmp16 / tmp17 tmp19 = 1e-05 tmp20 = tmp18 + tmp19 tmp21 = libdevice.rsqrt(tmp20) tl.store(out_ptr2 + x0, tmp21, xmask) tl.store(out_ptr0 + x0, tmp10, xmask) tl.store(out_ptr1 + x0, tmp16, xmask) @triton.jit def triton_poi_fused_clone_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 16.0 tmp5 = tmp3 / tmp4 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp2 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + x2, tmp13, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf1 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf3 = empty_strided_cuda((1, 4, 1), (4, 1, 1), torch.float32) get_raw_stream(0) triton_per_fused__native_batch_norm_legit_clone_0[grid(4)](primals_1, buf0, buf1, buf3, 4, 16, XBLOCK=1, num_warps=2, num_stages=1) buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_clone_1[grid(64)](primals_1, buf0, buf1, primals_2, primals_3, buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf1 del primals_2 del primals_3 return buf4, primals_1, reinterpret_tensor(buf3, (4,), (1,), 0 ), reinterpret_tensor(buf0, (1, 4, 1), (4, 1, 1), 0) class BatchNormNodeNew(nn.Module): """Batch normalization for node features. """ def __init__(self, hidden_dim): super(BatchNormNodeNew, self).__init__() self.batch_norm = nn.BatchNorm1d(hidden_dim, track_running_stats=False) def forward(self, input_0): primals_2 = self.batch_norm.weight primals_3 = self.batch_norm.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
BrandonKates/graph-convnet-tsp
BatchNormNode
false
11,259
[ "MIT" ]
0
f6e17e84311c23fd5cab041b7a27b4e0636c44f8
https://github.com/BrandonKates/graph-convnet-tsp/tree/f6e17e84311c23fd5cab041b7a27b4e0636c44f8
BatchNormEdge
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/zx/czx4pzqnrxm3qtkylj2xluldhg2zczmvchq2x2rccgqgb3nsvama.py # Topologically Sorted Source Nodes: [e_trans, e_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] # Source node to ATen node mapping: # e_trans => clone # e_trans_bn => add, rsqrt, var_mean # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone, [0, 2, 3]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) triton_per_fused__native_batch_norm_legit_clone_0 = async_compile.triton('triton_per_fused__native_batch_norm_legit_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.OUTER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_0(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (4*r1)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 64, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp17 = 64.0 tmp18 = tmp16 / tmp17 tmp19 = 1e-05 tmp20 = tmp18 + tmp19 tmp21 = libdevice.rsqrt(tmp20) tl.store(out_ptr2 + (x0), tmp21, xmask) tl.store(out_ptr0 + (x0), tmp10, xmask) tl.store(out_ptr1 + (x0), tmp16, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/3k/c3k4lryeedebqcjq57sft4o343jc5kpudkjp2v6xguhy2fz7muyn.py # Topologically Sorted Source Nodes: [e_bn], Original ATen: [aten.clone] # Source node to ATen node mapping: # e_bn => clone_1 # Graph fragment: # %clone_1 : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_1,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_1 = async_compile.triton('triton_poi_fused_clone_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 64.0 tmp5 = tmp3 / tmp4 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp2 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + (x2), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf1 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf3 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) # Topologically Sorted Source Nodes: [e_trans, e_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] stream0 = get_raw_stream(0) triton_per_fused__native_batch_norm_legit_clone_0.run(primals_1, buf0, buf1, buf3, 4, 64, grid=grid(4), stream=stream0) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [e_bn], Original ATen: [aten.clone] triton_poi_fused_clone_1.run(primals_1, buf0, buf1, primals_2, primals_3, buf4, 256, grid=grid(256), stream=stream0) del buf1 del primals_2 del primals_3 return (buf4, primals_1, reinterpret_tensor(buf3, (4, ), (1, ), 0), reinterpret_tensor(buf0, (1, 4, 1, 1), (4, 1, 1, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class BatchNormEdge(nn.Module): """Batch normalization for edge features. """ def __init__(self, hidden_dim): super(BatchNormEdge, self).__init__() self.batch_norm = nn.BatchNorm2d(hidden_dim, track_running_stats=False) def forward(self, e): """ Args: e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_bn: Edge features after batch normalization (batch_size, num_nodes, num_nodes, hidden_dim) """ e_trans = e.transpose(1, 3).contiguous() e_trans_bn = self.batch_norm(e_trans) e_bn = e_trans_bn.transpose(1, 3).contiguous() return e_bn def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused__native_batch_norm_legit_clone_0(in_ptr0, out_ptr0, out_ptr1, out_ptr2, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * r1), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tl.where(xmask, tmp1, 0) tmp4 = tl.broadcast_to(tmp1, [XBLOCK, RBLOCK]) tmp6 = tl.where(xmask, tmp4, 0) tmp7 = tl.sum(tmp6, 1)[:, None] tmp8 = tl.full([XBLOCK, 1], 64, tl.int32) tmp9 = tmp8.to(tl.float32) tmp10 = tmp7 / tmp9 tmp11 = tmp1 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tl.broadcast_to(tmp12, [XBLOCK, RBLOCK]) tmp15 = tl.where(xmask, tmp13, 0) tmp16 = tl.sum(tmp15, 1)[:, None] tmp17 = 64.0 tmp18 = tmp16 / tmp17 tmp19 = 1e-05 tmp20 = tmp18 + tmp19 tmp21 = libdevice.rsqrt(tmp20) tl.store(out_ptr2 + x0, tmp21, xmask) tl.store(out_ptr0 + x0, tmp10, xmask) tl.store(out_ptr1 + x0, tmp16, xmask) @triton.jit def triton_poi_fused_clone_1(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 64.0 tmp5 = tmp3 / tmp4 tmp6 = 1e-05 tmp7 = tmp5 + tmp6 tmp8 = libdevice.rsqrt(tmp7) tmp9 = tmp2 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tl.store(out_ptr0 + x2, tmp13, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf1 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf3 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) get_raw_stream(0) triton_per_fused__native_batch_norm_legit_clone_0[grid(4)](primals_1, buf0, buf1, buf3, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_clone_1[grid(256)](primals_1, buf0, buf1, primals_2, primals_3, buf4, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf1 del primals_2 del primals_3 return buf4, primals_1, reinterpret_tensor(buf3, (4,), (1,), 0 ), reinterpret_tensor(buf0, (1, 4, 1, 1), (4, 1, 1, 1), 0) class BatchNormEdgeNew(nn.Module): """Batch normalization for edge features. """ def __init__(self, hidden_dim): super(BatchNormEdgeNew, self).__init__() self.batch_norm = nn.BatchNorm2d(hidden_dim, track_running_stats=False) def forward(self, input_0): primals_2 = self.batch_norm.weight primals_3 = self.batch_norm.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
BrandonKates/graph-convnet-tsp
BatchNormEdge
false
11,260
[ "MIT" ]
0
f6e17e84311c23fd5cab041b7a27b4e0636c44f8
https://github.com/BrandonKates/graph-convnet-tsp/tree/f6e17e84311c23fd5cab041b7a27b4e0636c44f8
GlobalAttentionGeneral
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qi/cqinh332474qtv7bgen4bcfz2yfclns66jnudr7z7wmvlrgqoduc.py # Topologically Sorted Source Nodes: [targetT], Original ATen: [aten.clone, aten.transpose] # Source node to ATen node mapping: # targetT => clone # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute,), kwargs = {memory_format: torch.contiguous_format}) # %permute_5 : [num_users=1] = call_function[target=torch.ops.aten.permute.default](args = (%clone, [0, 2, 1]), kwargs = {}) triton_poi_fused_clone_transpose_0 = async_compile.triton('triton_poi_fused_clone_transpose_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16, 16], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_transpose_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_transpose_0(in_ptr0, out_ptr0, out_ptr1, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x1 = xindex y0 = yindex y2 = yindex % 4 y3 = (yindex // 4) tmp0 = tl.load(in_ptr0 + (x1 + (16*y0)), xmask & ymask) tl.store(out_ptr0 + (x1 + (16*y0)), tmp0, xmask & ymask) tl.store(out_ptr1 + (y2 + (4*x1) + (64*y3)), tmp0, xmask & ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/hz/chz2sqsqk26mwhf2dxhgh44jfpu2er5yqjftwkzfav5ctqtx5e7f.py # Topologically Sorted Source Nodes: [attn_2], Original ATen: [aten._softmax] # Source node to ATen node mapping: # attn_2 => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%view_1, [1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%view_1, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_1 = async_compile.triton('triton_poi_fused__softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/pm/cpmy57yidxxfl6wmlh5dsizlsat4uz6k43rz6t4r6h2u4z625i5l.py # Topologically Sorted Source Nodes: [attn_4], Original ATen: [aten.clone] # Source node to ATen node mapping: # attn_4 => clone_1 # Graph fragment: # %clone_1 : [num_users=3] = call_function[target=torch.ops.aten.clone.default](args = (%permute_1,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_2 = async_compile.triton('triton_poi_fused_clone_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = (yindex // 4) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (4*x2) + (64*y1)), xmask & ymask) tmp1 = tl.load(in_ptr0 + ((4*x2) + (64*y1)), xmask & ymask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x2) + (64*y1)), xmask & ymask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x2) + (64*y1)), xmask & ymask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x2) + (64*y1)), xmask & ymask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2 + (16*y3)), tmp8, xmask & ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (4, 4, 1, 1), (4, 1, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(reinterpret_tensor(primals_2, (4, 4, 4, 1), (16, 4, 1, 1), 0), primals_3, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 1), (16, 4, 1, 1)) buf1 = empty_strided_cuda((4, 16, 4), (64, 1, 16), torch.float32) buf6 = empty_strided_cuda((4, 4, 16), (64, 1, 4), torch.float32) # Topologically Sorted Source Nodes: [targetT], Original ATen: [aten.clone, aten.transpose] stream0 = get_raw_stream(0) triton_poi_fused_clone_transpose_0.run(primals_1, buf1, buf6, 16, 16, grid=grid(16, 16), stream=stream0) del primals_1 buf2 = empty_strided_cuda((4, 16, 4), (64, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [targetT, attn], Original ATen: [aten.clone, aten.bmm] extern_kernels.bmm(buf1, reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), out=buf2) buf3 = reinterpret_tensor(buf1, (64, 4), (4, 1), 0); del buf1 # reuse # Topologically Sorted Source Nodes: [attn_2], Original ATen: [aten._softmax] triton_poi_fused__softmax_1.run(buf2, buf3, 256, grid=grid(256), stream=stream0) buf4 = empty_strided_cuda((4, 4, 16), (64, 16, 1), torch.float32) # Topologically Sorted Source Nodes: [attn_4], Original ATen: [aten.clone] triton_poi_fused_clone_2.run(buf3, buf4, 16, 16, grid=grid(16, 16), stream=stream0) buf5 = reinterpret_tensor(buf3, (4, 4, 16), (64, 16, 1), 0); del buf3 # reuse # Topologically Sorted Source Nodes: [weightedContext], Original ATen: [aten.bmm] extern_kernels.bmm(reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), buf4, out=buf5) return (reinterpret_tensor(buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0), primals_3, reinterpret_tensor(primals_2, (4, 4, 4, 1), (16, 4, 1, 1), 0), buf2, reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0), reinterpret_tensor(buf4, (4, 16, 4), (64, 1, 16), 0), buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.parallel import torch.onnx def conv1x1(in_planes, out_planes, bias=False): """1x1 convolution with padding""" return nn.Conv2d(in_planes, out_planes, kernel_size=1, stride=1, padding=0, bias=bias) class GlobalAttentionGeneral(nn.Module): def __init__(self, idf, cdf): super(GlobalAttentionGeneral, self).__init__() self.conv_context = conv1x1(cdf, idf) self.sm = nn.Softmax() self.mask = None def applyMask(self, mask): self.mask = mask def forward(self, input, context): """ input: batch x idf x ih x iw (queryL=ihxiw) context: batch x cdf x sourceL """ ih, iw = input.size(2), input.size(3) queryL = ih * iw batch_size, sourceL = context.size(0), context.size(2) target = input.view(batch_size, -1, queryL) targetT = torch.transpose(target, 1, 2).contiguous() sourceT = context.unsqueeze(3) sourceT = self.conv_context(sourceT).squeeze(3) attn = torch.bmm(targetT, sourceT) attn = attn.view(batch_size * queryL, sourceL) if self.mask is not None: mask = self.mask.repeat(queryL, 1) attn.data.masked_fill_(mask.data, -float('inf')) attn = self.sm(attn) attn = attn.view(batch_size, queryL, sourceL) attn = torch.transpose(attn, 1, 2).contiguous() weightedContext = torch.bmm(sourceT, attn) weightedContext = weightedContext.view(batch_size, -1, ih, iw) attn = attn.view(batch_size, -1, ih, iw) return weightedContext, attn def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'idf': 4, 'cdf': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.nn.parallel import torch.onnx assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_transpose_0(in_ptr0, out_ptr0, out_ptr1, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x1 = xindex y0 = yindex y2 = yindex % 4 y3 = yindex // 4 tmp0 = tl.load(in_ptr0 + (x1 + 16 * y0), xmask & ymask) tl.store(out_ptr0 + (x1 + 16 * y0), tmp0, xmask & ymask) tl.store(out_ptr1 + (y2 + 4 * x1 + 64 * y3), tmp0, xmask & ymask) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x2, tmp9, xmask) @triton.jit def triton_poi_fused_clone_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 16 xnumel = 16 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 4 y1 = yindex // 4 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 4 * x2 + 64 * y1), xmask & ymask) tmp1 = tl.load(in_ptr0 + (4 * x2 + 64 * y1), xmask & ymask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x2 + 64 * y1), xmask & ymask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x2 + 64 * y1), xmask & ymask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x2 + 64 * y1), xmask & ymask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2 + 16 * y3), tmp8, xmask & ymask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (4, 4, 1, 1), (4, 1, 1, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(reinterpret_tensor(primals_2, (4, 4, 4, 1), (16, 4, 1, 1), 0), primals_3, stride=(1, 1), padding= (0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0 ), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4, 1), (16, 4, 1, 1)) buf1 = empty_strided_cuda((4, 16, 4), (64, 1, 16), torch.float32) buf6 = empty_strided_cuda((4, 4, 16), (64, 1, 4), torch.float32) get_raw_stream(0) triton_poi_fused_clone_transpose_0[grid(16, 16)](primals_1, buf1, buf6, 16, 16, XBLOCK=16, YBLOCK=16, num_warps=4, num_stages=1) del primals_1 buf2 = empty_strided_cuda((4, 16, 4), (64, 4, 1), torch.float32) extern_kernels.bmm(buf1, reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), out=buf2) buf3 = reinterpret_tensor(buf1, (64, 4), (4, 1), 0) del buf1 triton_poi_fused__softmax_1[grid(256)](buf2, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) buf4 = empty_strided_cuda((4, 4, 16), (64, 16, 1), torch.float32) triton_poi_fused_clone_2[grid(16, 16)](buf3, buf4, 16, 16, XBLOCK= 16, YBLOCK=16, num_warps=4, num_stages=1) buf5 = reinterpret_tensor(buf3, (4, 4, 16), (64, 16, 1), 0) del buf3 extern_kernels.bmm(reinterpret_tensor(buf0, (4, 4, 4), (16, 4, 1), 0), buf4, out=buf5) return reinterpret_tensor(buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), primals_3, reinterpret_tensor(primals_2, (4, 4, 4, 1), (16, 4, 1, 1), 0), buf2, reinterpret_tensor(buf0, (4, 4, 4), (16, 1, 4), 0 ), reinterpret_tensor(buf4, (4, 16, 4), (64, 1, 16), 0), buf6 def conv1x1(in_planes, out_planes, bias=False): """1x1 convolution with padding""" return nn.Conv2d(in_planes, out_planes, kernel_size=1, stride=1, padding=0, bias=bias) class GlobalAttentionGeneralNew(nn.Module): def __init__(self, idf, cdf): super(GlobalAttentionGeneralNew, self).__init__() self.conv_context = conv1x1(cdf, idf) self.sm = nn.Softmax() self.mask = None def applyMask(self, mask): self.mask = mask def forward(self, input_0, input_1): primals_3 = self.conv_context.weight primals_1 = input_0 primals_2 = input_1 output = call([primals_1, primals_2, primals_3]) return output[0], output[1]
Amritds/AttnGAN
GlobalAttentionGeneral
false
11,261
[ "MIT" ]
0
806ae70142a699bfe384c4964be2f7fce2b83d29
https://github.com/Amritds/AttnGAN/tree/806ae70142a699bfe384c4964be2f7fce2b83d29
Hswish
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/gl/cgljna3wfarubemgd6d2p3bgazvfhdxtrcu7luu5yza3rrfkty2s.py # Topologically Sorted Source Nodes: [add, hardtanh, truediv], Original ATen: [aten.add, aten.hardtanh, aten.div] # Source node to ATen node mapping: # add => add # hardtanh => clamp_max, clamp_min # truediv => div # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0.0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6.0), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%clamp_max, 6), kwargs = {}) triton_poi_fused_add_div_hardtanh_0 = async_compile.triton('triton_poi_fused_add_div_hardtanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_hardtanh_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_hardtanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = 0.16666666666666666 tmp8 = tmp6 * tmp7 tl.store(out_ptr0 + (x0), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, hardtanh, truediv], Original ATen: [aten.add, aten.hardtanh, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_hardtanh_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class Hswish(nn.Module): def __init__(self, inplace=True): super(Hswish, self).__init__() self.relu = nn.ReLU6(inplace=inplace) def forward(self, x): return self.relu(x + 3) / 6 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_hardtanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = 0.16666666666666666 tmp8 = tmp6 * tmp7 tl.store(out_ptr0 + x0, tmp8, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_hardtanh_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class HswishNew(nn.Module): def __init__(self, inplace=True): super(HswishNew, self).__init__() self.relu = nn.ReLU6(inplace=inplace) def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
COEN-390/YOLOv5-Lite
Hswish
false
11,262
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
ADD
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ms/cmsihl4m3fwdz34yv4opzebq34hgfsugwxypdehzceaw63evhy5r.py # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] # Source node to ATen node mapping: # add => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 0.5), kwargs = {}) triton_poi_fused_add_0 = async_compile.triton('triton_poi_fused_add_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class ADD(nn.Module): def __init__(self, alpha=0.5): super(ADD, self).__init__() self.a = alpha def forward(self, x): return torch.add(x, self.a) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class ADDNew(nn.Module): def __init__(self, alpha=0.5): super(ADDNew, self).__init__() self.a = alpha def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
COEN-390/YOLOv5-Lite
ADD
false
11,263
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
NodeFeatures
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/jd/cjdynxhj345ropotvs7r6mg6n4nef3wqtufk7shf7wmzvfgx5cq4.py # Topologically Sorted Source Nodes: [gateVx, sum_1, sum_2, add, truediv, x_new], Original ATen: [aten.mul, aten.sum, aten.add, aten.div] # Source node to ATen node mapping: # add => add # gateVx => mul # sum_1 => sum_1 # sum_2 => sum_2 # truediv => div # x_new => add_1 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_6, %unsqueeze), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [2]), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%primals_6, [2]), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sum_2, 1e-20), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sum_1, %add), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %div), kwargs = {}) triton_poi_fused_add_div_mul_sum_0 = async_compile.triton('triton_poi_fused_add_div_mul_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_sum_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 15, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_sum_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = (xindex // 16) % 4 x5 = xindex % 16 x3 = (xindex // 64) x0 = xindex % 4 x6 = xindex x4 = (xindex // 4) % 16 tmp0 = tl.load(in_ptr0 + (x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr1 + (16 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr0 + (32 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr1 + (32 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (48 + x5 + (64*x2)), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (48 + x5 + (64*x3)), xmask, eviction_policy='evict_last') tmp20 = tl.load(in_out_ptr0 + (x6), xmask) tmp21 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp23 = tl.load(in_ptr0 + (x0 + (16*x4)), xmask, eviction_policy='evict_last') tmp24 = tl.load(in_ptr0 + (4 + x0 + (16*x4)), xmask, eviction_policy='evict_last') tmp26 = tl.load(in_ptr0 + (8 + x0 + (16*x4)), xmask, eviction_policy='evict_last') tmp28 = tl.load(in_ptr0 + (12 + x0 + (16*x4)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 * tmp3 tmp7 = tmp6 + tmp2 tmp8 = tmp5 * tmp7 tmp9 = tmp4 + tmp8 tmp12 = tmp11 + tmp2 tmp13 = tmp10 * tmp12 tmp14 = tmp9 + tmp13 tmp17 = tmp16 + tmp2 tmp18 = tmp15 * tmp17 tmp19 = tmp14 + tmp18 tmp22 = tmp20 + tmp21 tmp25 = tmp23 + tmp24 tmp27 = tmp25 + tmp26 tmp29 = tmp27 + tmp28 tmp30 = 1e-20 tmp31 = tmp29 + tmp30 tmp32 = tmp19 / tmp31 tmp33 = tmp22 + tmp32 tl.store(in_out_ptr0 + (x6), tmp33, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf1) del primals_4 buf3 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [gateVx, sum_1, sum_2, add, truediv, x_new], Original ATen: [aten.mul, aten.sum, aten.add, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mul_sum_0.run(buf3, primals_6, buf1, primals_5, primals_2, 256, grid=grid(256), stream=stream0) del buf1 del primals_2 del primals_5 return (buf3, primals_6, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class NodeFeatures(nn.Module): """Convnet features for nodes. Using `sum` aggregation: x_i = U*x_i + sum_j [ gate_ij * (V*x_j) ] Using `mean` aggregation: x_i = U*x_i + ( sum_j [ gate_ij * (V*x_j) ] / sum_j [ gate_ij] ) """ def __init__(self, hidden_dim, aggregation='mean'): super(NodeFeatures, self).__init__() self.aggregation = aggregation self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, edge_gate): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) edge_gate: Edge gate values (batch_size, num_nodes, num_nodes, hidden_dim) Returns: x_new: Convolved node features (batch_size, num_nodes, hidden_dim) """ Ux = self.U(x) Vx = self.V(x) Vx = Vx.unsqueeze(1) gateVx = edge_gate * Vx if self.aggregation == 'mean': x_new = Ux + torch.sum(gateVx, dim=2) / (1e-20 + torch.sum( edge_gate, dim=2)) elif self.aggregation == 'sum': x_new = Ux + torch.sum(gateVx, dim=2) return x_new def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_div_mul_sum_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, in_ptr3, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex // 16 % 4 x5 = xindex % 16 x3 = xindex // 64 x0 = xindex % 4 x6 = xindex x4 = xindex // 4 % 16 tmp0 = tl.load(in_ptr0 + (x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr1 + (x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp2 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (16 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr1 + (16 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp10 = tl.load(in_ptr0 + (32 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp11 = tl.load(in_ptr1 + (32 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr0 + (48 + x5 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp16 = tl.load(in_ptr1 + (48 + x5 + 64 * x3), xmask, eviction_policy= 'evict_last') tmp20 = tl.load(in_out_ptr0 + x6, xmask) tmp21 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp23 = tl.load(in_ptr0 + (x0 + 16 * x4), xmask, eviction_policy= 'evict_last') tmp24 = tl.load(in_ptr0 + (4 + x0 + 16 * x4), xmask, eviction_policy= 'evict_last') tmp26 = tl.load(in_ptr0 + (8 + x0 + 16 * x4), xmask, eviction_policy= 'evict_last') tmp28 = tl.load(in_ptr0 + (12 + x0 + 16 * x4), xmask, eviction_policy= 'evict_last') tmp3 = tmp1 + tmp2 tmp4 = tmp0 * tmp3 tmp7 = tmp6 + tmp2 tmp8 = tmp5 * tmp7 tmp9 = tmp4 + tmp8 tmp12 = tmp11 + tmp2 tmp13 = tmp10 * tmp12 tmp14 = tmp9 + tmp13 tmp17 = tmp16 + tmp2 tmp18 = tmp15 * tmp17 tmp19 = tmp14 + tmp18 tmp22 = tmp20 + tmp21 tmp25 = tmp23 + tmp24 tmp27 = tmp25 + tmp26 tmp29 = tmp27 + tmp28 tmp30 = 1e-20 tmp31 = tmp29 + tmp30 tmp32 = tmp19 / tmp31 tmp33 = tmp22 + tmp32 tl.store(in_out_ptr0 + x6, tmp33, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf1) del primals_4 buf3 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_add_div_mul_sum_0[grid(256)](buf3, primals_6, buf1, primals_5, primals_2, 256, XBLOCK=128, num_warps=4, num_stages=1) del buf1 del primals_2 del primals_5 return buf3, primals_6, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0) class NodeFeaturesNew(nn.Module): """Convnet features for nodes. Using `sum` aggregation: x_i = U*x_i + sum_j [ gate_ij * (V*x_j) ] Using `mean` aggregation: x_i = U*x_i + ( sum_j [ gate_ij * (V*x_j) ] / sum_j [ gate_ij] ) """ def __init__(self, hidden_dim, aggregation='mean'): super(NodeFeaturesNew, self).__init__() self.aggregation = aggregation self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, input_0, input_1): primals_1 = self.U.weight primals_2 = self.U.bias primals_4 = self.V.weight primals_5 = self.V.bias primals_3 = input_0 primals_6 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6]) return output[0]
BrandonKates/graph-convnet-tsp
NodeFeatures
false
11,264
[ "MIT" ]
0
f6e17e84311c23fd5cab041b7a27b4e0636c44f8
https://github.com/BrandonKates/graph-convnet-tsp/tree/f6e17e84311c23fd5cab041b7a27b4e0636c44f8
L2Norm
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ql/cqlak5tz3s7deubsy52az4l7hpzcb4ekrbzbw4nqi6gbd7v3ukso.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, truediv, x], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.mul] # Source node to ATen node mapping: # norm => add # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # truediv => div # x => mul # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%primals_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-10), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%primals_1, %add), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%div, %view), kwargs = {}) triton_poi_fused_add_div_mul_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_mul_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_mul_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 6, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = (xindex // 64) x1 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + (64*x2)), xmask, eviction_policy='evict_last') tmp16 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-10 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tmp17 = tmp15 * tmp16 tl.store(out_ptr0 + (x3), tmp17, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, truediv, x], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div, aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0.run(primals_1, primals_2, buf0, 256, grid=grid(256), stream=stream0) del primals_2 return (buf0, primals_1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class L2Norm(nn.Module): def __init__(self, n_channels, scale=1.0): super(L2Norm, self).__init__() self.n_channels = n_channels self.scale = scale self.eps = 1e-10 self.weight = nn.Parameter(torch.Tensor(self.n_channels)) self.weight.data *= 0.0 self.weight.data += self.scale def forward(self, x): norm = x.pow(2).sum(dim=1, keepdim=True).sqrt() + self.eps x = x / norm * self.weight.view(1, -1, 1, 1) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'n_channels': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_mul_pow_sqrt_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x0 = xindex % 16 x2 = xindex // 64 x1 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + (x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (16 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp6 = tl.load(in_ptr0 + (32 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp9 = tl.load(in_ptr0 + (48 + x0 + 64 * x2), xmask, eviction_policy= 'evict_last') tmp16 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-10 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tmp17 = tmp15 * tmp16 tl.store(out_ptr0 + x3, tmp17, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_mul_pow_sqrt_sum_0[grid(256)](primals_1, primals_2, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_2 return buf0, primals_1 class L2NormNew(nn.Module): def __init__(self, n_channels, scale=1.0): super(L2NormNew, self).__init__() self.n_channels = n_channels self.scale = scale self.eps = 1e-10 self.weight = nn.Parameter(torch.Tensor(self.n_channels)) self.weight.data *= 0.0 self.weight.data += self.scale def forward(self, input_0): primals_2 = self.weight primals_1 = input_0 output = call([primals_1, primals_2]) return output[0]
CCC-123/ECCVC
L2Norm
false
11,265
[ "MIT" ]
0
322009a3423dba831cb3ae4182e7129be3441e70
https://github.com/CCC-123/ECCVC/tree/322009a3423dba831cb3ae4182e7129be3441e70
Critic
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ms/cmsuzohbg5nq52jnvirovzkvykrzzko5xomu7zyu5e5u2lhegppw.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.cat] # Source node to ATen node mapping: # x => cat # Graph fragment: # %cat : [num_users=2] = call_function[target=torch.ops.aten.cat.default](args = ([%primals_1, %primals_2], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + ((4*x1) + ((-4) + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x2), tmp10, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/7y/c7yuzscnmurx2utjx5u7pix5x6h2f6t7mk5rr2usi3xqjtlfu5sx.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_1 => relu # Graph fragment: # %add_tensor_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default_1, %primals_4), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor_1,), kwargs = {}) triton_poi_fused_relu_1 = async_compile.triton('triton_poi_fused_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 2200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 550 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/vp/cvpyw2bjgo55x2ne47dmpi2vmqu5t4eb3wcvjgjcnove3xyj7bcr.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu] # Source node to ATen node mapping: # x_2 => relu_1 # Graph fragment: # %add_tensor : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mm_default, %primals_6), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add_tensor,), kwargs = {}) triton_poi_fused_relu_2 = async_compile.triton('triton_poi_fused_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[2048], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 300 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (550, 8), (8, 1)) assert_size_stride(primals_4, (550, ), (1, )) assert_size_stride(primals_5, (300, 550), (550, 1)) assert_size_stride(primals_6, (300, ), (1, )) assert_size_stride(primals_7, (1, 300), (300, 1)) assert_size_stride(primals_8, (1, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(primals_1, primals_2, buf0, 32, grid=grid(32), stream=stream0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 550), (550, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf0, reinterpret_tensor(primals_3, (8, 550), (1, 8), 0), out=buf1) del primals_3 buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu] triton_poi_fused_relu_1.run(buf2, primals_4, 2200, grid=grid(2200), stream=stream0) del primals_4 buf3 = empty_strided_cuda((4, 300), (300, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf2, reinterpret_tensor(primals_5, (550, 300), (1, 550), 0), out=buf3) buf4 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.relu] triton_poi_fused_relu_2.run(buf4, primals_6, 1200, grid=grid(1200), stream=stream0) del primals_6 buf6 = empty_strided_cuda((4, 1), (1, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_8, buf4, reinterpret_tensor(primals_7, (300, 1), (1, 300), 0), alpha=1, beta=1, out=buf6) del primals_8 return (buf6, buf0, buf2, buf4, primals_7, primals_5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((550, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((550, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((300, 550), (550, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((300, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((1, 300), (300, 1), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn.functional as F import torch.nn as nn def hidden_init(layer): fan_in = layer.weight.data.size()[0] lim = 1.0 / np.sqrt(fan_in) return -lim, lim class Critic(nn.Module): """Critic (Value) Model.""" def __init__(self, state_size, action_size, seed, fcs1_units=550, fc2_units=300): """Initialize parameters and build model. Params ====== state_size (int): Dimension of each state action_size (int): Dimension of each action seed (int): Random seed fcs1_units (int): Number of nodes in the first hidden layer fc2_units (int): Number of nodes in the second hidden layer """ super(Critic, self).__init__() self.seed = torch.manual_seed(seed) self.fcs1 = nn.Linear(state_size + action_size, fcs1_units) self.fc2 = nn.Linear(fcs1_units, fc2_units) self.fc3 = nn.Linear(fc2_units, 1) self.reset_parameters() def reset_parameters(self): self.fcs1.weight.data.uniform_(*hidden_init(self.fcs1)) self.fc2.weight.data.uniform_(*hidden_init(self.fc2)) self.fc3.weight.data.uniform_(-0.003, 0.003) def forward(self, state, action): """Build a critic (value) network that maps (state, action) pairs -> Q-values.""" x = torch.cat((state, action), dim=1) x = F.relu(self.fcs1(x)) x = F.relu(self.fc2(x)) return self.fc3(x) def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4])] def get_init_inputs(): return [[], {'state_size': 4, 'action_size': 4, 'seed': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import numpy as np import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (4 * x1 + (-4 + x0)), tmp6 & xmask, eviction_policy='evict_last', other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x2, tmp10, xmask) @triton.jit def triton_poi_fused_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 2200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 550 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 1200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 300 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (550, 8), (8, 1)) assert_size_stride(primals_4, (550,), (1,)) assert_size_stride(primals_5, (300, 550), (550, 1)) assert_size_stride(primals_6, (300,), (1,)) assert_size_stride(primals_7, (1, 300), (300, 1)) assert_size_stride(primals_8, (1,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 8), (8, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(32)](primals_1, primals_2, buf0, 32, XBLOCK=32, num_warps=1, num_stages=1) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 550), (550, 1), torch.float32) extern_kernels.mm(buf0, reinterpret_tensor(primals_3, (8, 550), (1, 8), 0), out=buf1) del primals_3 buf2 = buf1 del buf1 triton_poi_fused_relu_1[grid(2200)](buf2, primals_4, 2200, XBLOCK= 256, num_warps=4, num_stages=1) del primals_4 buf3 = empty_strided_cuda((4, 300), (300, 1), torch.float32) extern_kernels.mm(buf2, reinterpret_tensor(primals_5, (550, 300), ( 1, 550), 0), out=buf3) buf4 = buf3 del buf3 triton_poi_fused_relu_2[grid(1200)](buf4, primals_6, 1200, XBLOCK= 256, num_warps=4, num_stages=1) del primals_6 buf6 = empty_strided_cuda((4, 1), (1, 1), torch.float32) extern_kernels.addmm(primals_8, buf4, reinterpret_tensor(primals_7, (300, 1), (1, 300), 0), alpha=1, beta=1, out=buf6) del primals_8 return buf6, buf0, buf2, buf4, primals_7, primals_5 def hidden_init(layer): fan_in = layer.weight.data.size()[0] lim = 1.0 / np.sqrt(fan_in) return -lim, lim class CriticNew(nn.Module): """Critic (Value) Model.""" def __init__(self, state_size, action_size, seed, fcs1_units=550, fc2_units=300): """Initialize parameters and build model. Params ====== state_size (int): Dimension of each state action_size (int): Dimension of each action seed (int): Random seed fcs1_units (int): Number of nodes in the first hidden layer fc2_units (int): Number of nodes in the second hidden layer """ super(CriticNew, self).__init__() self.seed = torch.manual_seed(seed) self.fcs1 = nn.Linear(state_size + action_size, fcs1_units) self.fc2 = nn.Linear(fcs1_units, fc2_units) self.fc3 = nn.Linear(fc2_units, 1) self.reset_parameters() def reset_parameters(self): self.fcs1.weight.data.uniform_(*hidden_init(self.fcs1)) self.fc2.weight.data.uniform_(*hidden_init(self.fc2)) self.fc3.weight.data.uniform_(-0.003, 0.003) def forward(self, input_0, input_1): primals_3 = self.fcs1.weight primals_4 = self.fcs1.bias primals_5 = self.fc2.weight primals_6 = self.fc2.bias primals_7 = self.fc3.weight primals_8 = self.fc3.bias primals_1 = input_0 primals_2 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8]) return output[0]
BruceChanJianLe/drlnd-tennis-project3
Critic
false
11,266
[ "MIT" ]
0
cb2b880c55eedb6eef3775ed19e90aeec60174d8
https://github.com/BruceChanJianLe/drlnd-tennis-project3/tree/cb2b880c55eedb6eef3775ed19e90aeec60174d8
SuperpointDescriptor
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qj/cqjhyqyrv26zock46qjlq4h2nadr5bpow3b3v2ak7pxem6qix4po.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_0 = async_compile.triton('triton_poi_fused_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 32768 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (1152*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yb/cyb2n4zu3ugsotcydbl7uh4e6tslj5s3eohnwnrycfcwdxuqvckj.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512, 4096], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 512 xnumel = 4096 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (4096*y3)), ymask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (524288*y1)), tmp0, ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/p5/cp5f3ywbsz6yywuzmnyc62oqasgrxyr7eslb3ehdwfuid7crjbs6.py # Topologically Sorted Source Nodes: [conv2d, feat], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # feat => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4194304], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4194304 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 256 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ba/cba5engkc2in7uklqu6tqqaa2mywrzp7mjbeegam7kj6362mvyfw.py # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] # Source node to ATen node mapping: # semi => convolution_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_3 = async_compile.triton('triton_poi_fused_convolution_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512, 4096], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 512 xnumel = 4096 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y0 = yindex % 128 y1 = (yindex // 128) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (128*x2) + (524288*y1)), ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (y0), ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x2 + (4096*y3)), tmp2, ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_2, (256, ), (1, )) assert_size_stride(primals_3, (4, 128, 64, 64), (524288, 4096, 64, 1)) assert_size_stride(primals_4, (128, 256, 1, 1), (256, 1, 1, 1)) assert_size_stride(primals_5, (128, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((256, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] stream0 = get_raw_stream(0) triton_poi_fused_0.run(primals_1, buf0, 32768, 9, grid=grid(32768, 9), stream=stream0) del primals_1 buf1 = empty_strided_cuda((4, 128, 64, 64), (524288, 1, 8192, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(primals_3, buf1, 512, 4096, grid=grid(512, 4096), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 256, 64, 64), (1048576, 1, 16384, 256)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [conv2d, feat], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf3, primals_2, 4194304, grid=grid(4194304), stream=stream0) del primals_2 # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 128, 64, 64), (524288, 1, 8192, 128)) buf5 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] triton_poi_fused_convolution_3.run(buf4, primals_5, buf5, 512, 4096, grid=grid(512, 4096), stream=stream0) del buf4 del primals_5 return (buf5, buf0, buf1, primals_4, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((256, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 128, 64, 64), (524288, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((128, 256, 1, 1), (256, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SuperpointDescriptor(nn.Module): """ Descriptor decoder based on the SuperPoint arcihtecture. """ def __init__(self, input_feat_dim=128): super(SuperpointDescriptor, self).__init__() self.relu = torch.nn.ReLU(inplace=True) self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size=3, stride=1, padding=1) self.convPb = torch.nn.Conv2d(256, 128, kernel_size=1, stride=1, padding=0) def forward(self, input_features): feat = self.relu(self.convPa(input_features)) semi = self.convPb(feat) return semi def get_inputs(): return [torch.rand([4, 128, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 128 * x2 + 1152 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 512 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 4096 * y3), ymask, eviction_policy= 'evict_last') tl.store(out_ptr0 + (y0 + 128 * x2 + 524288 * y1), tmp0, ymask) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 256 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_convolution_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl.constexpr): ynumel = 512 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y0 = yindex % 128 y1 = yindex // 128 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 128 * x2 + 524288 * y1), ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + y0, ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x2 + 4096 * y3), tmp2, ymask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_2, (256,), (1,)) assert_size_stride(primals_3, (4, 128, 64, 64), (524288, 4096, 64, 1)) assert_size_stride(primals_4, (128, 256, 1, 1), (256, 1, 1, 1)) assert_size_stride(primals_5, (128,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((256, 128, 3, 3), (1152, 1, 384, 128), torch.float32) get_raw_stream(0) triton_poi_fused_0[grid(32768, 9)](primals_1, buf0, 32768, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((4, 128, 64, 64), (524288, 1, 8192, 128), torch.float32) triton_poi_fused_1[grid(512, 4096)](primals_3, buf1, 512, 4096, XBLOCK=32, YBLOCK=32, num_warps=4, num_stages=1) del primals_3 buf2 = extern_kernels.convolution(buf1, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 256, 64, 64), (1048576, 1, 16384, 256)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_2[grid(4194304)](buf3, primals_2, 4194304, XBLOCK=512, num_warps=8, num_stages=1) del primals_2 buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 128, 64, 64), (524288, 1, 8192, 128)) buf5 = empty_strided_cuda((4, 128, 64, 64), (524288, 4096, 64, 1), torch.float32) triton_poi_fused_convolution_3[grid(512, 4096)](buf4, primals_5, buf5, 512, 4096, XBLOCK=32, YBLOCK=32, num_warps=4, num_stages=1) del buf4 del primals_5 return buf5, buf0, buf1, primals_4, buf3 class SuperpointDescriptorNew(nn.Module): """ Descriptor decoder based on the SuperPoint arcihtecture. """ def __init__(self, input_feat_dim=128): super(SuperpointDescriptorNew, self).__init__() self.relu = torch.nn.ReLU(inplace=True) self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size=3, stride=1, padding=1) self.convPb = torch.nn.Conv2d(256, 128, kernel_size=1, stride=1, padding=0) def forward(self, input_0): primals_1 = self.convPa.weight primals_2 = self.convPa.bias primals_4 = self.convPb.weight primals_5 = self.convPb.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
B1ueber2y/SOLD2
SuperpointDescriptor
false
11,267
[ "MIT" ]
0
f85ca5387ea7464314614c3fb4d07af5678a9de3
https://github.com/B1ueber2y/SOLD2/tree/f85ca5387ea7464314614c3fb4d07af5678a9de3
LinearBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6q/c6q46q7lsepa4jw5qgcgbc5kiud5wm57hubk6vfo4gk47vl2tprk.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%primals_1,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (8, 4), (4, 1)) assert_size_stride(primals_3, (8, ), (1, )) assert_size_stride(primals_4, (4, 8), (8, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 8), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, buf1, reinterpret_tensor(primals_4, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf1, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((8, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((8, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn import torch.nn.init import torch.optim class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class LinearBlock(Model): """ Linear block consisting of two fully connected layers Example ------- x: torch.Size([2, 10, 12]) out: [batch_size, c_out, d//2] out: torch.Size([2, 10, 6]) """ def __init__(self, c_in, c_out, affine=True): super(LinearBlock, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in * 2) self.fc2 = nn.Linear(c_in * 2, c_out) def forward(self, x): x = torch.relu(x) x = self.fc1(x) out = self.fc2(x) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'c_in': 4, 'c_out': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.nn import torch.nn.init import torch.optim assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (8, 4), (4, 1)) assert_size_stride(primals_3, (8,), (1,)) assert_size_stride(primals_4, (4, 8), (8, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_relu_0[grid(256)](primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_2, (4, 8), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, buf1, reinterpret_tensor(primals_4, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf1, primals_4 class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class LinearBlockNew(Model): """ Linear block consisting of two fully connected layers Example ------- x: torch.Size([2, 10, 12]) out: [batch_size, c_out, d//2] out: torch.Size([2, 10, 6]) """ def __init__(self, c_in, c_out, affine=True): super(LinearBlockNew, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in * 2) self.fc2 = nn.Linear(c_in * 2, c_out) def forward(self, input_0): primals_2 = self.fc1.weight primals_3 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
CBIIT/NCI-DOE-Colab-Pilot1-Combo
LinearBlock
false
11,268
[ "MIT" ]
0
8d60900c29618083e0944b5b8ef43a2e98881b32
https://github.com/CBIIT/NCI-DOE-Colab-Pilot1-Combo/tree/8d60900c29618083e0944b5b8ef43a2e98881b32
Encoder
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6q/c6q46q7lsepa4jw5qgcgbc5kiud5wm57hubk6vfo4gk47vl2tprk.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%primals_1,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (2, 4), (4, 1)) assert_size_stride(primals_3, (2, ), (1, )) assert_size_stride(primals_4, (4, 2), (2, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 buf1 = empty_strided_cuda((64, 2), (2, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 2), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, buf1, reinterpret_tensor(primals_4, (2, 4), (1, 2), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf1, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((2, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((2, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 2), (2, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn import torch.nn.init import torch.optim class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class Encoder(Model): """ Linear encoder """ def __init__(self, c_in, c_out, affine=True): super(Encoder, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in // 2) self.fc2 = nn.Linear(c_in // 2, c_in) def forward(self, x): x = torch.relu(x) x = self.fc1(x) return self.fc2(x) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'c_in': 4, 'c_out': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.nn import torch.nn.init import torch.optim assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (2, 4), (4, 1)) assert_size_stride(primals_3, (2,), (1,)) assert_size_stride(primals_4, (4, 2), (2, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_relu_0[grid(256)](primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((64, 2), (2, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_2, (4, 2), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, buf1, reinterpret_tensor(primals_4, (2, 4), (1, 2), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf1, primals_4 class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class EncoderNew(Model): """ Linear encoder """ def __init__(self, c_in, c_out, affine=True): super(EncoderNew, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in // 2) self.fc2 = nn.Linear(c_in // 2, c_in) def forward(self, input_0): primals_2 = self.fc1.weight primals_3 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
CBIIT/NCI-DOE-Colab-Pilot1-Combo
Encoder
false
11,269
[ "MIT" ]
0
8d60900c29618083e0944b5b8ef43a2e98881b32
https://github.com/CBIIT/NCI-DOE-Colab-Pilot1-Combo/tree/8d60900c29618083e0944b5b8ef43a2e98881b32
LinearDrop
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6q/c6q46q7lsepa4jw5qgcgbc5kiud5wm57hubk6vfo4gk47vl2tprk.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%primals_1,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (8, 4), (4, 1)) assert_size_stride(primals_3, (8, ), (1, )) assert_size_stride(primals_4, (4, 8), (8, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.addmm] extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), reinterpret_tensor(primals_2, (4, 8), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.native_dropout] buf2 = torch.ops.aten.native_dropout.default(reinterpret_tensor(buf1, (4, 4, 4, 8), (128, 32, 8, 1), 0), 0.5, True) del buf1 buf3 = buf2[0] buf4 = buf2[1] del buf2 buf5 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf3, (64, 8), (8, 1), 0), reinterpret_tensor(primals_4, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_5 # Topologically Sorted Source Nodes: [out], Original ATen: [aten.native_dropout] buf6 = torch.ops.aten.native_dropout.default(reinterpret_tensor(buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0), 0.5, True) del buf5 buf7 = buf6[0] buf8 = buf6[1] del buf6 return (buf7, reinterpret_tensor(buf0, (64, 4), (4, 1), 0), buf4, reinterpret_tensor(buf3, (64, 8), (8, 1), 0), buf8, primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((8, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((8, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.nn import torch.nn.init import torch.optim class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class LinearDrop(Model): """ Linear block with dropout """ def __init__(self, c_in, c_out, affine=True): super(LinearDrop, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in * 2) self.fc2 = nn.Linear(c_in * 2, c_out) def forward(self, x): x = torch.relu(x) x = F.dropout(self.fc1(x)) out = F.dropout(self.fc2(x)) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'c_in': 4, 'c_out': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.nn import torch.nn.init import torch.optim assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (8, 4), (4, 1)) assert_size_stride(primals_3, (8,), (1,)) assert_size_stride(primals_4, (4, 8), (8, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_relu_0[grid(256)](primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((64, 8), (8, 1), torch.float32) extern_kernels.addmm(primals_3, reinterpret_tensor(buf0, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_2, (4, 8), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_2 del primals_3 buf2 = torch.ops.aten.native_dropout.default(reinterpret_tensor( buf1, (4, 4, 4, 8), (128, 32, 8, 1), 0), 0.5, True) del buf1 buf3 = buf2[0] buf4 = buf2[1] del buf2 buf5 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf3, (64, 8), ( 8, 1), 0), reinterpret_tensor(primals_4, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf5) del primals_5 buf6 = torch.ops.aten.native_dropout.default(reinterpret_tensor( buf5, (4, 4, 4, 4), (64, 16, 4, 1), 0), 0.5, True) del buf5 buf7 = buf6[0] buf8 = buf6[1] del buf6 return buf7, reinterpret_tensor(buf0, (64, 4), (4, 1), 0 ), buf4, reinterpret_tensor(buf3, (64, 8), (8, 1), 0), buf8, primals_4 class Model(nn.Module): """ Class representing sampleable neural network model """ def num_params(self): """ Get the number of model parameters. """ return sum(p.numel() for p in self.parameters()) def summary(self, hashsummary=False): None None self.num_params() None None if hashsummary: None for idx, hashvalue in enumerate(self.hashsummary()): None def hashsummary(self): """ Print a model summary - checksums of each layer parameters """ children = list(self.children()) result = [] for child in children: result.extend(hashlib.sha256(x.detach().cpu().numpy().tobytes() ).hexdigest() for x in child.parameters()) return result def loss(self, x_data, y_true, reduce='mean'): """ Forward propagate network and return a value of loss function """ if reduce not in (None, 'sum', 'mean'): raise ValueError('`reduce` must be either None, `sum`, or `mean`!') y_pred = self(x_data) return y_pred, self.loss_value(x_data, y_true, y_pred, reduce=reduce) def loss_value(self, x_data, y_true, y_pred, reduce=None): """ Calculate a value of loss function """ raise NotImplementedError class LinearDropNew(Model): """ Linear block with dropout """ def __init__(self, c_in, c_out, affine=True): super(LinearDropNew, self).__init__() assert c_out % 2 == 0 self.fc1 = nn.Linear(c_in, c_in * 2) self.fc2 = nn.Linear(c_in * 2, c_out) def forward(self, input_0): primals_2 = self.fc1.weight primals_3 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
CBIIT/NCI-DOE-Colab-Pilot1-Combo
LinearDrop
false
11,270
[ "MIT" ]
0
8d60900c29618083e0944b5b8ef43a2e98881b32
https://github.com/CBIIT/NCI-DOE-Colab-Pilot1-Combo/tree/8d60900c29618083e0944b5b8ef43a2e98881b32
SuperpointDecoder
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qj/cqjhyqyrv26zock46qjlq4h2nadr5bpow3b3v2ak7pxem6qix4po.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_0 = async_compile.triton('triton_poi_fused_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 32768 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (1152*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yb/cyb2n4zu3ugsotcydbl7uh4e6tslj5s3eohnwnrycfcwdxuqvckj.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512, 4096], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 512 xnumel = 4096 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (4096*y3)), ymask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (524288*y1)), tmp0, ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/jt/cjt6tydhquglxaofpmbzmssb2szevy3to52p3qnpihvwnwze24mk.py # Topologically Sorted Source Nodes: [conv2d, feat], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # feat => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [2, 2], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_2 = async_compile.triton('triton_poi_fused_convolution_relu_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 256 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xq/cxq3obluiyg5o7e4bbne2zqt4ef4gqcoeicdmy2yonmkrye4maym.py # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] # Source node to ATen node mapping: # semi => convolution_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_3 = async_compile.triton('triton_poi_fused_convolution_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512, 1024], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 260 xnumel = 1024 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 65 y1 = (yindex // 65) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (65*x2) + (66560*y1)), xmask & ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (y0), ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x2 + (1024*y3)), tmp2, xmask & ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_2, (256, ), (1, )) assert_size_stride(primals_3, (4, 128, 64, 64), (524288, 4096, 64, 1)) assert_size_stride(primals_4, (65, 256, 1, 1), (256, 1, 1, 1)) assert_size_stride(primals_5, (65, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((256, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] stream0 = get_raw_stream(0) triton_poi_fused_0.run(primals_1, buf0, 32768, 9, grid=grid(32768, 9), stream=stream0) del primals_1 buf1 = empty_strided_cuda((4, 128, 64, 64), (524288, 1, 8192, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(primals_3, buf1, 512, 4096, grid=grid(512, 4096), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, buf0, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 256, 32, 32), (262144, 1, 8192, 256)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [conv2d, feat], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_2.run(buf3, primals_2, 1048576, grid=grid(1048576), stream=stream0) del primals_2 # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 65, 32, 32), (66560, 1, 2080, 65)) buf5 = empty_strided_cuda((4, 65, 32, 32), (66560, 1024, 32, 1), torch.float32) # Topologically Sorted Source Nodes: [semi], Original ATen: [aten.convolution] triton_poi_fused_convolution_3.run(buf4, primals_5, buf5, 260, 1024, grid=grid(260, 1024), stream=stream0) del buf4 del primals_5 return (buf5, buf0, buf1, primals_4, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((256, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((256, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 128, 64, 64), (524288, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((65, 256, 1, 1), (256, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((65, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SuperpointDecoder(nn.Module): """ Junction decoder based on the SuperPoint architecture. """ def __init__(self, input_feat_dim=128, backbone_name='lcnn'): super(SuperpointDecoder, self).__init__() self.relu = torch.nn.ReLU(inplace=True) if backbone_name == 'lcnn': self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size= 3, stride=2, padding=1) elif backbone_name == 'superpoint': self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size= 3, stride=1, padding=1) else: raise ValueError('[Error] Unknown backbone option.') self.convPb = torch.nn.Conv2d(256, 65, kernel_size=1, stride=1, padding=0) def forward(self, input_features): feat = self.relu(self.convPa(input_features)) semi = self.convPb(feat) return semi def get_inputs(): return [torch.rand([4, 128, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 128 * x2 + 1152 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 512 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 4096 * y3), ymask, eviction_policy= 'evict_last') tl.store(out_ptr0 + (y0 + 128 * x2 + 524288 * y1), tmp0, ymask) @triton.jit def triton_poi_fused_convolution_relu_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 256 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_convolution_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl.constexpr): ynumel = 260 xnumel = 1024 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 65 y1 = yindex // 65 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 65 * x2 + 66560 * y1), xmask & ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + y0, ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x2 + 1024 * y3), tmp2, xmask & ymask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (256, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_2, (256,), (1,)) assert_size_stride(primals_3, (4, 128, 64, 64), (524288, 4096, 64, 1)) assert_size_stride(primals_4, (65, 256, 1, 1), (256, 1, 1, 1)) assert_size_stride(primals_5, (65,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((256, 128, 3, 3), (1152, 1, 384, 128), torch.float32) get_raw_stream(0) triton_poi_fused_0[grid(32768, 9)](primals_1, buf0, 32768, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_1 buf1 = empty_strided_cuda((4, 128, 64, 64), (524288, 1, 8192, 128), torch.float32) triton_poi_fused_1[grid(512, 4096)](primals_3, buf1, 512, 4096, XBLOCK=32, YBLOCK=32, num_warps=4, num_stages=1) del primals_3 buf2 = extern_kernels.convolution(buf1, buf0, stride=(2, 2), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 256, 32, 32), (262144, 1, 8192, 256)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_2[grid(1048576)](buf3, primals_2, 1048576, XBLOCK=1024, num_warps=4, num_stages=1) del primals_2 buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 65, 32, 32), (66560, 1, 2080, 65)) buf5 = empty_strided_cuda((4, 65, 32, 32), (66560, 1024, 32, 1), torch.float32) triton_poi_fused_convolution_3[grid(260, 1024)](buf4, primals_5, buf5, 260, 1024, XBLOCK=16, YBLOCK=256, num_warps=8, num_stages=1) del buf4 del primals_5 return buf5, buf0, buf1, primals_4, buf3 class SuperpointDecoderNew(nn.Module): """ Junction decoder based on the SuperPoint architecture. """ def __init__(self, input_feat_dim=128, backbone_name='lcnn'): super(SuperpointDecoderNew, self).__init__() self.relu = torch.nn.ReLU(inplace=True) if backbone_name == 'lcnn': self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size= 3, stride=2, padding=1) elif backbone_name == 'superpoint': self.convPa = torch.nn.Conv2d(input_feat_dim, 256, kernel_size= 3, stride=1, padding=1) else: raise ValueError('[Error] Unknown backbone option.') self.convPb = torch.nn.Conv2d(256, 65, kernel_size=1, stride=1, padding=0) def forward(self, input_0): primals_1 = self.convPa.weight primals_2 = self.convPa.bias primals_4 = self.convPb.weight primals_5 = self.convPb.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
B1ueber2y/SOLD2
SuperpointDecoder
false
11,271
[ "MIT" ]
0
f85ca5387ea7464314614c3fb4d07af5678a9de3
https://github.com/B1ueber2y/SOLD2/tree/f85ca5387ea7464314614c3fb4d07af5678a9de3
skip_connection
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/zi/czioyfiql36jvbru3amu3iggyuvnn5c4pypwuaiss36muc2jqtqb.py # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] # Source node to ATen node mapping: # add => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) triton_poi_fused_add_0 = async_compile.triton('triton_poi_fused_add_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask) tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_0.run(arg0_1, arg1_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class skip_connection(nn.Module): def __init__(self, inchannel, outchannel, keep_dim=True): super(skip_connection, self).__init__() if inchannel != outchannel: self.conv1d = nn.Conv1d(inchannel, outchannel, 1) def forward(self, before, after): """ :param before: the tensor before passing convolution blocks :param after: the tensor of output from convolution blocks :return: the sum of inputs """ if before.shape[2] != after.shape[2]: before = nn.functional.max_pool1d(before, 2, 2) if before.shape[1] != after.shape[1]: before = self.conv1d(before) return before + after def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'inchannel': 4, 'outchannel': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask) tmp2 = tmp0 + tmp1 tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_0[grid(256)](arg0_1, arg1_1, buf0, 256, XBLOCK =128, num_warps=4, num_stages=1) del arg0_1 del arg1_1 return buf0, class skip_connectionNew(nn.Module): def __init__(self, inchannel, outchannel, keep_dim=True): super(skip_connectionNew, self).__init__() if inchannel != outchannel: self.conv1d = nn.Conv1d(inchannel, outchannel, 1) def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
CMI-Laboratory/CAE
skip_connection
false
11,272
[ "Apache-2.0" ]
0
11c94f2152a51c9d4e86f8956ea75c575094256b
https://github.com/CMI-Laboratory/CAE/tree/11c94f2152a51c9d4e86f8956ea75c575094256b
LC_SEModule
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/l3/cl35tzbhrd24dhunkbb6gjs54aklpyr46oikqhoylcgmkcmhujil.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] # Source node to ATen node mapping: # x => mean # Graph fragment: # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-1, -2], True), kwargs = {}) triton_per_fused_mean_0 = async_compile.triton('triton_per_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[16, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 16 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (16*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ad/cadccuyhl7stcp3nyqfgohiwbiv5ckfzxsye27ithwsill6dvmh4.py # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # x_1 => convolution # x_2 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%mean, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_1 = async_compile.triton('triton_poi_fused_convolution_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tl.store(in_out_ptr0 + (x0), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/k2/ck2mamkqpmuzem4n3p4ij6fmfpy2bcbblg6sx6wwslgqwuqq5ifh.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=3] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_2 = async_compile.triton('triton_poi_fused_convolution_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/64/c64c5i5m6stmgzcrywl7uxwpzavblu7s3kuxgbazgeihs6mybpsp.py # Topologically Sorted Source Nodes: [x_4, out], Original ATen: [aten.silu, aten.mul] # Source node to ATen node mapping: # out => mul_1 # x_4 => mul, sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%convolution_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convolution_1, %sigmoid), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, %mul), kwargs = {}) triton_poi_fused_mul_silu_3 = async_compile.triton('triton_poi_fused_mul_silu_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_silu_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_silu_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp1 * tmp2 tmp4 = tmp0 * tmp3 tl.store(out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (1, ), (1, )) assert_size_stride(primals_4, (4, 1, 1, 1), (1, 1, 1, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 16, 16), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 4, 1, 1), (4, 1, 1, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_per_fused_mean_0.run(buf1, primals_1, 16, 16, grid=grid(16), stream=stream0) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 1, 1), (1, 1, 1, 1)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_1.run(buf3, primals_3, 4, grid=grid(4), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 1, 1), (4, 1, 1, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] triton_poi_fused_convolution_2.run(buf5, primals_5, 16, grid=grid(16), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4, out], Original ATen: [aten.silu, aten.mul] triton_poi_fused_mul_silu_3.run(primals_1, buf5, buf6, 256, grid=grid(256), stream=stream0) return (buf6, primals_1, primals_2, primals_4, buf1, buf3, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 1, 1, 1), (1, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class LC_SEModule(nn.Module): def __init__(self, channel, reduction=4): super().__init__() self.avg_pool = nn.AdaptiveAvgPool2d(1) self.conv1 = nn.Conv2d(in_channels=channel, out_channels=channel // reduction, kernel_size=1, stride=1, padding=0) self.relu = nn.ReLU() self.conv2 = nn.Conv2d(in_channels=channel // reduction, out_channels=channel, kernel_size=1, stride=1, padding=0) self.SiLU = nn.SiLU() def forward(self, x): identity = x x = self.avg_pool(x) x = self.conv1(x) x = self.relu(x) x = self.conv2(x) x = self.SiLU(x) out = identity * x return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'channel': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 16 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp6, xmask) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tl.store(in_out_ptr0 + x0, tmp5, xmask) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) @triton.jit def triton_poi_fused_mul_silu_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 16 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp1 * tmp2 tmp4 = tmp0 * tmp3 tl.store(out_ptr0 + x2, tmp4, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (1,), (1,)) assert_size_stride(primals_4, (4, 1, 1, 1), (1, 1, 1, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 16, 16), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 4, 1, 1), (4, 1, 1, 1), 0) del buf0 get_raw_stream(0) triton_per_fused_mean_0[grid(16)](buf1, primals_1, 16, 16, XBLOCK=8, num_warps=2, num_stages=1) buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 1, 1), (1, 1, 1, 1)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_1[grid(4)](buf3, primals_3, 4, XBLOCK=4, num_warps=1, num_stages=1) del primals_3 buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 1, 1), (4, 1, 1, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_2[grid(16)](buf5, primals_5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_mul_silu_3[grid(256)](primals_1, buf5, buf6, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf6, primals_1, primals_2, primals_4, buf1, buf3, buf5 class LC_SEModuleNew(nn.Module): def __init__(self, channel, reduction=4): super().__init__() self.avg_pool = nn.AdaptiveAvgPool2d(1) self.conv1 = nn.Conv2d(in_channels=channel, out_channels=channel // reduction, kernel_size=1, stride=1, padding=0) self.relu = nn.ReLU() self.conv2 = nn.Conv2d(in_channels=channel // reduction, out_channels=channel, kernel_size=1, stride=1, padding=0) self.SiLU = nn.SiLU() def forward(self, input_0): primals_2 = self.conv1.weight primals_3 = self.conv1.bias primals_4 = self.conv2.weight primals_5 = self.conv2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
COEN-390/YOLOv5-Lite
LC_SEModule
false
11,273
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
Upsample
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/on/conkyru6mt5gdawob4xzhp7lq5zc7gd3yxlscomu22g2zdiq7xrz.py # Topologically Sorted Source Nodes: [interpolate], Original ATen: [aten._unsafe_index] # Source node to ATen node mapping: # interpolate => _unsafe_index # Graph fragment: # %_unsafe_index : [num_users=1] = call_function[target=torch.ops.aten._unsafe_index.Tensor](args = (%arg0_1, [None, None, %unsqueeze, %convert_element_type_3]), kwargs = {}) triton_poi_fused__unsafe_index_0 = async_compile.triton('triton_poi_fused__unsafe_index_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__unsafe_index_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 0, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__unsafe_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 4 x0 = xindex % 4 x2 = (xindex // 16) x4 = xindex tmp0 = x1 tmp1 = tmp0.to(tl.float32) tmp2 = 1.0 tmp3 = tmp1 * tmp2 tmp4 = tmp3.to(tl.int32) tmp5 = x0 tmp6 = tmp5.to(tl.float32) tmp7 = tmp6 * tmp2 tmp8 = tmp7.to(tl.int32) tmp9 = tl.load(in_ptr0 + (tmp8 + (4*tmp4) + (16*x2)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x4), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [interpolate], Original ATen: [aten._unsafe_index] stream0 = get_raw_stream(0) triton_poi_fused__unsafe_index_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class Upsample(nn.Module): def __init__(self, scale_factor=1, mode='nearest'): super(Upsample, self).__init__() self.scale_factor = scale_factor self.mode = mode def forward(self, x): return F.interpolate(x, scale_factor=self.scale_factor, mode=self.mode) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused__unsafe_index_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 4 x0 = xindex % 4 x2 = xindex // 16 x4 = xindex tmp0 = x1 tmp1 = tmp0.to(tl.float32) tmp2 = 1.0 tmp3 = tmp1 * tmp2 tmp4 = tmp3.to(tl.int32) tmp5 = x0 tmp6 = tmp5.to(tl.float32) tmp7 = tmp6 * tmp2 tmp8 = tmp7.to(tl.int32) tmp9 = tl.load(in_ptr0 + (tmp8 + 4 * tmp4 + 16 * x2), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x4, tmp9, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused__unsafe_index_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class UpsampleNew(nn.Module): def __init__(self, scale_factor=1, mode='nearest'): super(UpsampleNew, self).__init__() self.scale_factor = scale_factor self.mode = mode def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
CV-YYDS/YOLOv3
Upsample
false
11,274
[ "MIT" ]
0
a433064721dfc932509aaed6cb44a785b24bc768
https://github.com/CV-YYDS/YOLOv3/tree/a433064721dfc932509aaed6cb44a785b24bc768
Route
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/ie/ciettq2a3562jfpgfe75iig4ki2hbm6pmbwujlvp6mw26i2odufm.py # Topologically Sorted Source Nodes: [out], Original ATen: [aten.cat] # Source node to ATen node mapping: # out => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%arg0_1, %arg1_1], 1), kwargs = {}) triton_poi_fused_cat_0 = async_compile.triton('triton_poi_fused_cat_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 16) % 8 x0 = xindex % 16 x2 = (xindex // 128) x3 = xindex tmp0 = x1 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + (16*x1) + (64*x2)), tmp4 & xmask, other=0.0) tmp6 = tmp0 >= tmp3 tmp7 = tl.full([1], 8, tl.int64) tmp8 = tmp0 < tmp7 tmp9 = tl.load(in_ptr1 + (x0 + (16*((-4) + x1)) + (64*x2)), tmp6 & xmask, other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + (x3), tmp10, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 8, 4, 4), (128, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [out], Original ATen: [aten.cat] stream0 = get_raw_stream(0) triton_poi_fused_cat_0.run(arg0_1, arg1_1, buf0, 512, grid=grid(512), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Route(nn.Module): def __init__(self): super(Route, self).__init__() def forward(self, x1, x2): """ x1 means previous output; x2 means current output """ out = torch.cat((x2, x1), dim=1) return out def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_cat_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 512 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 16 % 8 x0 = xindex % 16 x2 = xindex // 128 x3 = xindex tmp0 = x1 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (x0 + 16 * x1 + 64 * x2), tmp4 & xmask, other=0.0) tmp6 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp9 = tl.load(in_ptr1 + (x0 + 16 * (-4 + x1) + 64 * x2), tmp6 & xmask, other=0.0) tmp10 = tl.where(tmp4, tmp5, tmp9) tl.store(out_ptr0 + x3, tmp10, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 8, 4, 4), (128, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_cat_0[grid(512)](arg0_1, arg1_1, buf0, 512, XBLOCK =256, num_warps=4, num_stages=1) del arg0_1 del arg1_1 return buf0, class RouteNew(nn.Module): def __init__(self): super(RouteNew, self).__init__() def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
CV-YYDS/YOLOv3
Route
false
11,275
[ "MIT" ]
0
a433064721dfc932509aaed6cb44a785b24bc768
https://github.com/CV-YYDS/YOLOv3/tree/a433064721dfc932509aaed6cb44a785b24bc768
SEBlock
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/is/cispe7zbbl4nxt2jjus6h5iou2w7htohqj7z2oz6g7nqz6vbpbqr.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.avg_pool2d] # Source node to ATen node mapping: # x => avg_pool2d # Graph fragment: # %avg_pool2d : [num_users=2] = call_function[target=torch.ops.aten.avg_pool2d.default](args = (%primals_1, [4, 4]), kwargs = {}) triton_poi_fused_avg_pool2d_0 = async_compile.triton('triton_poi_fused_avg_pool2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_avg_pool2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 16, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_avg_pool2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (16*x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (16*x0)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (2 + (16*x0)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (3 + (16*x0)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (4 + (16*x0)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (5 + (16*x0)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (6 + (16*x0)), xmask, eviction_policy='evict_last') tmp13 = tl.load(in_ptr0 + (7 + (16*x0)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (8 + (16*x0)), xmask, eviction_policy='evict_last') tmp17 = tl.load(in_ptr0 + (9 + (16*x0)), xmask, eviction_policy='evict_last') tmp19 = tl.load(in_ptr0 + (10 + (16*x0)), xmask, eviction_policy='evict_last') tmp21 = tl.load(in_ptr0 + (11 + (16*x0)), xmask, eviction_policy='evict_last') tmp23 = tl.load(in_ptr0 + (12 + (16*x0)), xmask, eviction_policy='evict_last') tmp25 = tl.load(in_ptr0 + (13 + (16*x0)), xmask, eviction_policy='evict_last') tmp27 = tl.load(in_ptr0 + (14 + (16*x0)), xmask, eviction_policy='evict_last') tmp29 = tl.load(in_ptr0 + (15 + (16*x0)), xmask, eviction_policy='evict_last') tmp2 = tmp1 + tmp0 tmp4 = tmp3 + tmp2 tmp6 = tmp5 + tmp4 tmp8 = tmp7 + tmp6 tmp10 = tmp9 + tmp8 tmp12 = tmp11 + tmp10 tmp14 = tmp13 + tmp12 tmp16 = tmp15 + tmp14 tmp18 = tmp17 + tmp16 tmp20 = tmp19 + tmp18 tmp22 = tmp21 + tmp20 tmp24 = tmp23 + tmp22 tmp26 = tmp25 + tmp24 tmp28 = tmp27 + tmp26 tmp30 = tmp29 + tmp28 tmp31 = 0.0625 tmp32 = tmp30 * tmp31 tl.store(out_ptr0 + (x0), tmp32, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/o5/co5kpgkyaabh4nd7yz4gzpyl7x35mwdhgusbruykvtydzlq2lizg.py # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # x_1 => convolution # x_2 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%avg_pool2d, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_1 = async_compile.triton('triton_poi_fused_convolution_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/k2/ck2mamkqpmuzem4n3p4ij6fmfpy2bcbblg6sx6wwslgqwuqq5ifh.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_2 = async_compile.triton('triton_poi_fused_convolution_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/4i/c4irexhchxfamvuvb7ss32fuj6iokw3lttgarlasdi5iyhsfxrag.py # Topologically Sorted Source Nodes: [x_4, x_5, mul], Original ATen: [aten.sigmoid, aten.view, aten.mul] # Source node to ATen node mapping: # mul => mul # x_4 => sigmoid # x_5 => view # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%convolution_1,), kwargs = {}) # %view : [num_users=1] = call_function[target=torch.ops.aten.reshape.default](args = (%sigmoid, [-1, 4, 1, 1]), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, %view), kwargs = {}) triton_poi_fused_mul_sigmoid_view_3 = async_compile.triton('triton_poi_fused_mul_sigmoid_view_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sigmoid_view_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sigmoid_view_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.avg_pool2d] stream0 = get_raw_stream(0) triton_poi_fused_avg_pool2d_0.run(primals_1, buf0, 16, grid=grid(16), stream=stream0) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 1, 1), (4, 1, 1, 1)) buf2 = buf1; del buf1 # reuse # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_1.run(buf2, primals_3, 16, grid=grid(16), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf3 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 4, 1, 1), (4, 1, 1, 1)) buf4 = buf3; del buf3 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] triton_poi_fused_convolution_2.run(buf4, primals_5, 16, grid=grid(16), stream=stream0) del primals_5 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4, x_5, mul], Original ATen: [aten.sigmoid, aten.view, aten.mul] triton_poi_fused_mul_sigmoid_view_3.run(primals_1, buf4, buf5, 256, grid=grid(256), stream=stream0) return (buf5, primals_1, primals_2, primals_4, buf0, buf2, buf4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F import torch.utils.data class SEBlock(nn.Module): def __init__(self, input_channels, internal_neurons): super(SEBlock, self).__init__() self.down = nn.Conv2d(in_channels=input_channels, out_channels= internal_neurons, kernel_size=1, stride=1, bias=True) self.up = nn.Conv2d(in_channels=internal_neurons, out_channels= input_channels, kernel_size=1, stride=1, bias=True) self.input_channels = input_channels def forward(self, inputs): x = F.avg_pool2d(inputs, kernel_size=inputs.size(3)) x = self.down(x) x = F.relu(x) x = self.up(x) x = torch.sigmoid(x) x = x.view(-1, self.input_channels, 1, 1) return inputs * x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_channels': 4, 'internal_neurons': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_avg_pool2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 16 * x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + 16 * x0), xmask, eviction_policy='evict_last' ) tmp3 = tl.load(in_ptr0 + (2 + 16 * x0), xmask, eviction_policy='evict_last' ) tmp5 = tl.load(in_ptr0 + (3 + 16 * x0), xmask, eviction_policy='evict_last' ) tmp7 = tl.load(in_ptr0 + (4 + 16 * x0), xmask, eviction_policy='evict_last' ) tmp9 = tl.load(in_ptr0 + (5 + 16 * x0), xmask, eviction_policy='evict_last' ) tmp11 = tl.load(in_ptr0 + (6 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp13 = tl.load(in_ptr0 + (7 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr0 + (8 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp17 = tl.load(in_ptr0 + (9 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp19 = tl.load(in_ptr0 + (10 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp21 = tl.load(in_ptr0 + (11 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp23 = tl.load(in_ptr0 + (12 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp25 = tl.load(in_ptr0 + (13 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp27 = tl.load(in_ptr0 + (14 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp29 = tl.load(in_ptr0 + (15 + 16 * x0), xmask, eviction_policy= 'evict_last') tmp2 = tmp1 + tmp0 tmp4 = tmp3 + tmp2 tmp6 = tmp5 + tmp4 tmp8 = tmp7 + tmp6 tmp10 = tmp9 + tmp8 tmp12 = tmp11 + tmp10 tmp14 = tmp13 + tmp12 tmp16 = tmp15 + tmp14 tmp18 = tmp17 + tmp16 tmp20 = tmp19 + tmp18 tmp22 = tmp21 + tmp20 tmp24 = tmp23 + tmp22 tmp26 = tmp25 + tmp24 tmp28 = tmp27 + tmp26 tmp30 = tmp29 + tmp28 tmp31 = 0.0625 tmp32 = tmp30 * tmp31 tl.store(out_ptr0 + x0, tmp32, xmask) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) @triton.jit def triton_poi_fused_mul_sigmoid_view_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 16 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x2, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.float32) get_raw_stream(0) triton_poi_fused_avg_pool2d_0[grid(16)](primals_1, buf0, 16, XBLOCK =16, num_warps=1, num_stages=1) buf1 = extern_kernels.convolution(buf0, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf1, (4, 4, 1, 1), (4, 1, 1, 1)) buf2 = buf1 del buf1 triton_poi_fused_convolution_relu_1[grid(16)](buf2, primals_3, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_3 buf3 = extern_kernels.convolution(buf2, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf3, (4, 4, 1, 1), (4, 1, 1, 1)) buf4 = buf3 del buf3 triton_poi_fused_convolution_2[grid(16)](buf4, primals_5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_5 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_mul_sigmoid_view_3[grid(256)](primals_1, buf4, buf5, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf5, primals_1, primals_2, primals_4, buf0, buf2, buf4 class SEBlockNew(nn.Module): def __init__(self, input_channels, internal_neurons): super(SEBlockNew, self).__init__() self.down = nn.Conv2d(in_channels=input_channels, out_channels= internal_neurons, kernel_size=1, stride=1, bias=True) self.up = nn.Conv2d(in_channels=internal_neurons, out_channels= input_channels, kernel_size=1, stride=1, bias=True) self.input_channels = input_channels def forward(self, input_0): primals_2 = self.down.weight primals_3 = self.down.bias primals_4 = self.up.weight primals_5 = self.up.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
COEN-390/YOLOv5-Lite
SEBlock
false
11,276
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
Standardize
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/kr/ckruyt6maca4ngviwzgzhxi4vkkf6jukusb63cym7d2bppobecfc.py # Topologically Sorted Source Nodes: [x, add, x_1], Original ATen: [aten.sub, aten.add, aten.div] # Source node to ATen node mapping: # add => add # x => sub # x_1 => div # Graph fragment: # %sub : [num_users=2] = call_function[target=torch.ops.aten.sub.Tensor](args = (%primals_2, %primals_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_3, 1e-06), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%sub, %add), kwargs = {}) triton_poi_fused_add_div_sub_0 = async_compile.triton('triton_poi_fused_add_div_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_sub_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 1e-06 tmp5 = tmp3 + tmp4 tmp6 = tmp2 / tmp5 tl.store(out_ptr0 + (x2), tmp2, xmask) tl.store(out_ptr1 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, ), (1, )) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x, add, x_1], Original ATen: [aten.sub, aten.add, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_sub_0.run(primals_2, primals_1, primals_3, buf0, buf1, 256, grid=grid(256), stream=stream0) del primals_1 del primals_2 return (buf0, buf1, primals_3, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
from torch.nn import Module import torch from torch.nn import init from torch.nn.parameter import Parameter class Standardize(Module): """ Applies (element-wise) standardization with trainable translation parameter μ and scale parameter σ, i.e. computes (x - μ) / σ where '/' is applied element-wise. Args: in_features: size of each input sample out_features: size of each output sample bias: If set to False, the layer will not learn a translation parameter μ. Default: ``True`` Attributes: mu: the learnable translation parameter μ. std: the learnable scale parameter σ. """ __constants__ = ['mu'] def __init__(self, in_features, bias=True, eps=1e-06): super(Standardize, self).__init__() self.in_features = in_features self.out_features = in_features self.eps = eps self.std = Parameter(torch.Tensor(in_features)) if bias: self.mu = Parameter(torch.Tensor(in_features)) else: self.register_parameter('mu', None) self.reset_parameters() def reset_parameters(self): init.constant_(self.std, 1) if self.mu is not None: init.constant_(self.mu, 0) def forward(self, x): if self.mu is not None: x -= self.mu x = torch.div(x, self.std + self.eps) return x def extra_repr(self): return 'in_features={}, out_features={}, bias={}'.format(self. in_features, self.out_features, self.mu is not None) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch.nn import Module from torch.nn import init from torch.nn.parameter import Parameter assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_sub_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr2 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp4 = 1e-06 tmp5 = tmp3 + tmp4 tmp6 = tmp2 / tmp5 tl.store(out_ptr0 + x2, tmp2, xmask) tl.store(out_ptr1 + x2, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4,), (1,)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_sub_0[grid(256)](primals_2, primals_1, primals_3, buf0, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_1 del primals_2 return buf0, buf1, primals_3, buf0 class StandardizeNew(Module): """ Applies (element-wise) standardization with trainable translation parameter μ and scale parameter σ, i.e. computes (x - μ) / σ where '/' is applied element-wise. Args: in_features: size of each input sample out_features: size of each output sample bias: If set to False, the layer will not learn a translation parameter μ. Default: ``True`` Attributes: mu: the learnable translation parameter μ. std: the learnable scale parameter σ. """ __constants__ = ['mu'] def __init__(self, in_features, bias=True, eps=1e-06): super(StandardizeNew, self).__init__() self.in_features = in_features self.out_features = in_features self.eps = eps self.std = Parameter(torch.Tensor(in_features)) if bias: self.mu = Parameter(torch.Tensor(in_features)) else: self.register_parameter('mu', None) self.reset_parameters() def reset_parameters(self): init.constant_(self.std, 1) if self.mu is not None: init.constant_(self.mu, 0) def extra_repr(self): return 'in_features={}, out_features={}, bias={}'.format(self. in_features, self.out_features, self.mu is not None) def forward(self, input_0): primals_1 = self.std primals_3 = self.mu primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
COMP6248-Reproducability-Challenge/MoveBrick_Reproducibility_DeepSAD
Standardize
false
11,277
[ "MIT" ]
0
8985dc9cd8741010362c6ca51e72648b7bd3908f
https://github.com/COMP6248-Reproducability-Challenge/MoveBrick_Reproducibility_DeepSAD/tree/8985dc9cd8741010362c6ca51e72648b7bd3908f
GeneralRelu
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6q/c6q46q7lsepa4jw5qgcgbc5kiud5wm57hubk6vfo4gk47vl2tprk.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] # Source node to ATen node mapping: # x => relu # Graph fragment: # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%arg0_1,), kwargs = {}) triton_poi_fused_relu_0 = async_compile.triton('triton_poi_fused_relu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + (x0), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.relu] stream0 = get_raw_stream(0) triton_poi_fused_relu_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F from typing import * class GeneralRelu(nn.Module): def __init__(self, leak=None, sub=None, maxv=None): super().__init__() self.leak, self.sub, self.maxv = leak, sub, maxv def forward(self, x): x = F.leaky_relu(x, self.leak) if self.leak is not None else F.relu(x) if self.sub is not None: x.sub_(self.sub) if self.maxv is not None: x.clamp_max_(self.maxv) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn from typing import * assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_relu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + x0, tmp2, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_relu_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class GeneralReluNew(nn.Module): def __init__(self, leak=None, sub=None, maxv=None): super().__init__() self.leak, self.sub, self.maxv = leak, sub, maxv def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Cedric-Perauer/DL_from_Foundations
GeneralRelu
false
11,278
[ "Apache-2.0" ]
0
c53722216a088cc9f67a2e1bf955d043023e6a85
https://github.com/Cedric-Perauer/DL_from_Foundations/tree/c53722216a088cc9f67a2e1bf955d043023e6a85
MyActivation
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/jj/cjjcpa4jfom3kmx4ufnxtda3bmq466cpemkegyhzep2ymmlsg35l.py # Topologically Sorted Source Nodes: [add, hardtanh, mul, truediv], Original ATen: [aten.add, aten.hardtanh, aten.mul, aten.div] # Source node to ATen node mapping: # add => add # hardtanh => clamp_max, clamp_min # mul => mul # truediv => div # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0.0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %clamp_max), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul, 6), kwargs = {}) triton_poi_fused_add_div_hardtanh_mul_0 = async_compile.triton('triton_poi_fused_add_div_hardtanh_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_hardtanh_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_hardtanh_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + (x0), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, hardtanh, mul, truediv], Original ATen: [aten.add, aten.hardtanh, aten.mul, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_hardtanh_mul_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch class MyActivation(torch.nn.Module): def __init__(self): super(MyActivation, self).__init__() self.relu = torch.nn.ReLU6(inplace=False) def forward(self, x): return x * self.relu(x + 3) / 6 def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_hardtanh_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + x0, tmp9, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_hardtanh_mul_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, class MyActivationNew(torch.nn.Module): def __init__(self): super(MyActivationNew, self).__init__() self.relu = torch.nn.ReLU6(inplace=False) def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
CaichaoGitHub/model_optimization_demo
MyActivation
false
11,279
[ "Apache-2.0" ]
0
b3bca3ad4a1b972fe069049f9efd7365a22733c6
https://github.com/CaichaoGitHub/model_optimization_demo/tree/b3bca3ad4a1b972fe069049f9efd7365a22733c6
AdaptiveConcatPool2d
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/k4/ck4n5tdf6davbcws4dl4srbcvwr32b7mii5iws2ikdlxcnct5azp.py # Topologically Sorted Source Nodes: [adaptive_max_pool2d], Original ATen: [aten.adaptive_max_pool2d] # Source node to ATen node mapping: # adaptive_max_pool2d => adaptive_max_pool2d # Graph fragment: # %adaptive_max_pool2d : [num_users=1] = call_function[target=torch.ops.aten.adaptive_max_pool2d.default](args = (%arg0_1, [1, 1]), kwargs = {}) triton_poi_fused_adaptive_max_pool2d_0 = async_compile.triton('triton_poi_fused_adaptive_max_pool2d_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_adaptive_max_pool2d_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 16, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_adaptive_max_pool2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (16*x2), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (16*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (2 + (16*x2)), xmask, eviction_policy='evict_last') tmp5 = tl.load(in_ptr0 + (3 + (16*x2)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (4 + (16*x2)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (5 + (16*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (6 + (16*x2)), xmask, eviction_policy='evict_last') tmp13 = tl.load(in_ptr0 + (7 + (16*x2)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (8 + (16*x2)), xmask, eviction_policy='evict_last') tmp17 = tl.load(in_ptr0 + (9 + (16*x2)), xmask, eviction_policy='evict_last') tmp19 = tl.load(in_ptr0 + (10 + (16*x2)), xmask, eviction_policy='evict_last') tmp21 = tl.load(in_ptr0 + (11 + (16*x2)), xmask, eviction_policy='evict_last') tmp23 = tl.load(in_ptr0 + (12 + (16*x2)), xmask, eviction_policy='evict_last') tmp25 = tl.load(in_ptr0 + (13 + (16*x2)), xmask, eviction_policy='evict_last') tmp27 = tl.load(in_ptr0 + (14 + (16*x2)), xmask, eviction_policy='evict_last') tmp29 = tl.load(in_ptr0 + (15 + (16*x2)), xmask, eviction_policy='evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp8 = triton_helpers.maximum(tmp7, tmp6) tmp10 = triton_helpers.maximum(tmp9, tmp8) tmp12 = triton_helpers.maximum(tmp11, tmp10) tmp14 = triton_helpers.maximum(tmp13, tmp12) tmp16 = triton_helpers.maximum(tmp15, tmp14) tmp18 = triton_helpers.maximum(tmp17, tmp16) tmp20 = triton_helpers.maximum(tmp19, tmp18) tmp22 = triton_helpers.maximum(tmp21, tmp20) tmp24 = triton_helpers.maximum(tmp23, tmp22) tmp26 = triton_helpers.maximum(tmp25, tmp24) tmp28 = triton_helpers.maximum(tmp27, tmp26) tmp30 = triton_helpers.maximum(tmp29, tmp28) tl.store(out_ptr0 + (x0 + (8*x1)), tmp30, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/bq/cbq374nmg2wjieph77t53feytfu37kp7eyuymtfg6in2myzkzehm.py # Topologically Sorted Source Nodes: [adaptive_avg_pool2d], Original ATen: [aten.mean] # Source node to ATen node mapping: # adaptive_avg_pool2d => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%arg0_1, [-1, -2], True), kwargs = {}) triton_per_fused_mean_1 = async_compile.triton('triton_per_fused_mean_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[16, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_1(in_ptr0, out_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 16 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex x2 = xindex % 4 x3 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (r1 + (16*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.store(out_ptr1 + (x2 + (8*x3)), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf3 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 1, 1), torch.float32) buf0 = reinterpret_tensor(buf3, (4, 4, 1, 1), (8, 1, 1, 1), 0) # alias # Topologically Sorted Source Nodes: [adaptive_max_pool2d], Original ATen: [aten.adaptive_max_pool2d] stream0 = get_raw_stream(0) triton_poi_fused_adaptive_max_pool2d_0.run(arg0_1, buf0, 16, grid=grid(16), stream=stream0) buf2 = reinterpret_tensor(buf3, (4, 4, 1, 1), (8, 1, 1, 1), 4) # alias # Topologically Sorted Source Nodes: [adaptive_avg_pool2d], Original ATen: [aten.mean] triton_per_fused_mean_1.run(arg0_1, buf2, 16, 16, grid=grid(16), stream=stream0) del arg0_1 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn from typing import * class AdaptiveConcatPool2d(nn.Module): def __init__(self, sz=1): super().__init__() self.output_size = sz self.ap = nn.AdaptiveAvgPool2d(sz) self.mp = nn.AdaptiveMaxPool2d(sz) def forward(self, x): return torch.cat([self.mp(x), self.ap(x)], 1) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn from typing import * assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_adaptive_max_pool2d_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + 16 * x2, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + 16 * x2), xmask, eviction_policy='evict_last' ) tmp3 = tl.load(in_ptr0 + (2 + 16 * x2), xmask, eviction_policy='evict_last' ) tmp5 = tl.load(in_ptr0 + (3 + 16 * x2), xmask, eviction_policy='evict_last' ) tmp7 = tl.load(in_ptr0 + (4 + 16 * x2), xmask, eviction_policy='evict_last' ) tmp9 = tl.load(in_ptr0 + (5 + 16 * x2), xmask, eviction_policy='evict_last' ) tmp11 = tl.load(in_ptr0 + (6 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp13 = tl.load(in_ptr0 + (7 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp15 = tl.load(in_ptr0 + (8 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp17 = tl.load(in_ptr0 + (9 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp19 = tl.load(in_ptr0 + (10 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp21 = tl.load(in_ptr0 + (11 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp23 = tl.load(in_ptr0 + (12 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp25 = tl.load(in_ptr0 + (13 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp27 = tl.load(in_ptr0 + (14 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp29 = tl.load(in_ptr0 + (15 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp8 = triton_helpers.maximum(tmp7, tmp6) tmp10 = triton_helpers.maximum(tmp9, tmp8) tmp12 = triton_helpers.maximum(tmp11, tmp10) tmp14 = triton_helpers.maximum(tmp13, tmp12) tmp16 = triton_helpers.maximum(tmp15, tmp14) tmp18 = triton_helpers.maximum(tmp17, tmp16) tmp20 = triton_helpers.maximum(tmp19, tmp18) tmp22 = triton_helpers.maximum(tmp21, tmp20) tmp24 = triton_helpers.maximum(tmp23, tmp22) tmp26 = triton_helpers.maximum(tmp25, tmp24) tmp28 = triton_helpers.maximum(tmp27, tmp26) tmp30 = triton_helpers.maximum(tmp29, tmp28) tl.store(out_ptr0 + (x0 + 8 * x1), tmp30, xmask) @triton.jit def triton_per_fused_mean_1(in_ptr0, out_ptr1, xnumel, rnumel, XBLOCK: tl. constexpr): xnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex x2 = xindex % 4 x3 = xindex // 4 tmp0 = tl.load(in_ptr0 + (r1 + 16 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.store(out_ptr1 + (x2 + 8 * x3), tmp6, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf3 = empty_strided_cuda((4, 8, 1, 1), (8, 1, 1, 1), torch.float32) buf0 = reinterpret_tensor(buf3, (4, 4, 1, 1), (8, 1, 1, 1), 0) get_raw_stream(0) triton_poi_fused_adaptive_max_pool2d_0[grid(16)](arg0_1, buf0, 16, XBLOCK=16, num_warps=1, num_stages=1) buf2 = reinterpret_tensor(buf3, (4, 4, 1, 1), (8, 1, 1, 1), 4) triton_per_fused_mean_1[grid(16)](arg0_1, buf2, 16, 16, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 return buf3, class AdaptiveConcatPool2dNew(nn.Module): def __init__(self, sz=1): super().__init__() self.output_size = sz self.ap = nn.AdaptiveAvgPool2d(sz) self.mp = nn.AdaptiveMaxPool2d(sz) def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Cedric-Perauer/DL_from_Foundations
AdaptiveConcatPool2d
false
11,280
[ "Apache-2.0" ]
0
c53722216a088cc9f67a2e1bf955d043023e6a85
https://github.com/Cedric-Perauer/DL_from_Foundations/tree/c53722216a088cc9f67a2e1bf955d043023e6a85
testHSwish
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6m/c6mr727ojxgfwtte3rkeu6agtiisqxu2dmganmwnsju7xaq4dtcb.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x => convolution # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_1, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_0 = async_compile.triton('triton_poi_fused_convolution_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 199888 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 3844) % 13 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xv/cxvyt6pptt66pvdltv3qipw73nocb2g36lcia4s32amfldwu4eui.py # Topologically Sorted Source Nodes: [x_1, add, hardtanh, mul, x_2], Original ATen: [aten.convolution, aten.add, aten.hardtanh, aten.mul, aten.div] # Source node to ATen node mapping: # add => add # hardtanh => clamp_max, clamp_min # mul => mul # x_1 => convolution_1 # x_2 => div # Graph fragment: # %convolution_1 : [num_users=3] = call_function[target=torch.ops.aten.convolution.default](args = (%convolution, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%convolution_1, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0.0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convolution_1, %clamp_max), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul, 6), kwargs = {}) triton_poi_fused_add_convolution_div_hardtanh_mul_1 = async_compile.triton('triton_poi_fused_add_convolution_div_hardtanh_mul_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[65536], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_convolution_div_hardtanh_mul_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_convolution_div_hardtanh_mul_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 43200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 3600) % 3 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 3.0 tmp4 = tmp2 + tmp3 tmp5 = 0.0 tmp6 = triton_helpers.maximum(tmp4, tmp5) tmp7 = 6.0 tmp8 = triton_helpers.minimum(tmp6, tmp7) tmp9 = tmp2 * tmp8 tmp10 = 0.16666666666666666 tmp11 = tmp9 * tmp10 tl.store(in_out_ptr0 + (x3), tmp2, xmask) tl.store(out_ptr0 + (x3), tmp11, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 3, 64, 64), (12288, 4096, 64, 1)) assert_size_stride(primals_2, (13, 3, 3, 3), (27, 9, 3, 1)) assert_size_stride(primals_3, (13, ), (1, )) assert_size_stride(primals_4, (3, 13, 3, 3), (117, 9, 3, 1)) assert_size_stride(primals_5, (3, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 13, 62, 62), (49972, 3844, 62, 1)) buf1 = buf0; del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] stream0 = get_raw_stream(0) triton_poi_fused_convolution_0.run(buf1, primals_3, 199888, grid=grid(199888), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 3, 60, 60), (10800, 3600, 60, 1)) buf3 = buf2; del buf2 # reuse buf4 = empty_strided_cuda((4, 3, 60, 60), (10800, 3600, 60, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1, add, hardtanh, mul, x_2], Original ATen: [aten.convolution, aten.add, aten.hardtanh, aten.mul, aten.div] triton_poi_fused_add_convolution_div_hardtanh_mul_1.run(buf3, primals_5, buf4, 43200, grid=grid(43200), stream=stream0) del primals_5 return (buf4, primals_1, primals_2, primals_4, buf1, buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 3, 64, 64), (12288, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((13, 3, 3, 3), (27, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((13, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((3, 13, 3, 3), (117, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((3, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch class MyActivation(torch.nn.Module): def __init__(self): super(MyActivation, self).__init__() self.relu = torch.nn.ReLU6(inplace=False) def forward(self, x): return x * self.relu(x + 3) / 6 class testHSwish(torch.nn.Module): def __init__(self): super(testHSwish, self).__init__() self.quant = torch.quantization.QuantStub() self.conv1 = torch.nn.Conv2d(3, 13, 3) self.conv2 = torch.nn.Conv2d(13, 3, 3) self.hswish = MyActivation() self.dequant = torch.quantization.DeQuantStub() def forward(self, x): x = self.quant(x) x = self.conv1(x) x = self.conv2(x) x = self.hswish(x) return self.dequant(x) def get_inputs(): return [torch.rand([4, 3, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 199888 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 3844 % 13 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) @triton.jit def triton_poi_fused_add_convolution_div_hardtanh_mul_1(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 43200 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 3600 % 3 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 3.0 tmp4 = tmp2 + tmp3 tmp5 = 0.0 tmp6 = triton_helpers.maximum(tmp4, tmp5) tmp7 = 6.0 tmp8 = triton_helpers.minimum(tmp6, tmp7) tmp9 = tmp2 * tmp8 tmp10 = 0.16666666666666666 tmp11 = tmp9 * tmp10 tl.store(in_out_ptr0 + x3, tmp2, xmask) tl.store(out_ptr0 + x3, tmp11, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 3, 64, 64), (12288, 4096, 64, 1)) assert_size_stride(primals_2, (13, 3, 3, 3), (27, 9, 3, 1)) assert_size_stride(primals_3, (13,), (1,)) assert_size_stride(primals_4, (3, 13, 3, 3), (117, 9, 3, 1)) assert_size_stride(primals_5, (3,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 13, 62, 62), (49972, 3844, 62, 1)) buf1 = buf0 del buf0 get_raw_stream(0) triton_poi_fused_convolution_0[grid(199888)](buf1, primals_3, 199888, XBLOCK=512, num_warps=8, num_stages=1) del primals_3 buf2 = extern_kernels.convolution(buf1, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 3, 60, 60), (10800, 3600, 60, 1)) buf3 = buf2 del buf2 buf4 = empty_strided_cuda((4, 3, 60, 60), (10800, 3600, 60, 1), torch.float32) triton_poi_fused_add_convolution_div_hardtanh_mul_1[grid(43200)](buf3, primals_5, buf4, 43200, XBLOCK=512, num_warps=4, num_stages=1) del primals_5 return buf4, primals_1, primals_2, primals_4, buf1, buf3 class MyActivation(torch.nn.Module): def __init__(self): super(MyActivation, self).__init__() self.relu = torch.nn.ReLU6(inplace=False) def forward(self, x): return x * self.relu(x + 3) / 6 class testHSwishNew(torch.nn.Module): def __init__(self): super(testHSwishNew, self).__init__() self.quant = torch.quantization.QuantStub() self.conv1 = torch.nn.Conv2d(3, 13, 3) self.conv2 = torch.nn.Conv2d(13, 3, 3) self.hswish = MyActivation() self.dequant = torch.quantization.DeQuantStub() def forward(self, input_0): primals_2 = self.conv1.weight primals_3 = self.conv1.bias primals_4 = self.conv2.weight primals_5 = self.conv2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
CaichaoGitHub/model_optimization_demo
testHSwish
false
11,281
[ "Apache-2.0" ]
0
b3bca3ad4a1b972fe069049f9efd7365a22733c6
https://github.com/CaichaoGitHub/model_optimization_demo/tree/b3bca3ad4a1b972fe069049f9efd7365a22733c6
SuperpointBackbone
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/pn/cpng7gl7lqxvqafyqlu5mbr4lc7m2sgi4l5ulbiv46djlkgyencv.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_0 = async_compile.triton('triton_poi_fused_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4096, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 4096 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = (yindex // 64) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (64*x2) + (576*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ne/cnepmjd66uu3laeexeusfxab3aayptiri2wp2knrgtgmx52tvzxj.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_1 = async_compile.triton('triton_poi_fused_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[8192, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 8192 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = (yindex // 64) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (64*x2) + (576*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ba/cbayuw2by4w6xwduhs5qdriinmydiep6bpw7fyi37s377up7lrcm.py # Unsorted Source Nodes: [], Original ATen: [] # Source node to ATen node mapping: triton_poi_fused_2 = async_compile.triton('triton_poi_fused_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16384, 16], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 16384 xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = (yindex // 128) tmp0 = tl.load(in_ptr0 + (x2 + (9*y3)), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (y0 + (128*x2) + (1152*y1)), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/xl/cxlvod372o4kymlxqprfmw3jd5k5m6j5zrm7ruqswxzppl4ph3wz.py # Topologically Sorted Source Nodes: [conv2d, x], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d => convolution # x => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_3 = async_compile.triton('triton_poi_fused_convolution_relu_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256, 4096], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 256 xnumel = 4096 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 64 y1 = (yindex // 64) tmp0 = tl.load(in_ptr0 + (x2 + (4096*y3)), ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (y0), ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1, 1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + (y0 + (64*x2) + (262144*y1)), tmp4, ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/zu/czujyeh6berilhiu2stefm2ocudpbpz4ptbucgvruy4n2bojr6yo.py # Topologically Sorted Source Nodes: [conv2d_1, x_1], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_1 => convolution_1 # x_1 => relu_1 # Graph fragment: # %convolution_1 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_1 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_1,), kwargs = {}) triton_poi_fused_convolution_relu_4 = async_compile.triton('triton_poi_fused_convolution_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[1048576], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 1048576 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/4n/c4nvbv6wuwhpecoh6xlo345mtpiwmfzv6cuokdou7iqbz6yksish.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_2 => getitem, getitem_1 # Graph fragment: # %getitem : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 0), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_5 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_5', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_5', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_5(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = (xindex // 64) % 32 x2 = (xindex // 2048) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (128*x1) + (8192*x2)), None) tmp1 = tl.load(in_ptr0 + (64 + x0 + (128*x1) + (8192*x2)), None) tmp3 = tl.load(in_ptr0 + (4096 + x0 + (128*x1) + (8192*x2)), None) tmp5 = tl.load(in_ptr0 + (4160 + x0 + (128*x1) + (8192*x2)), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x3), tmp6, None) tl.store(out_ptr1 + (x3), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/na/cnaiponhu6kavyqptxmbfaxdb2osqwlqk74kcqgtnst5s3wwic5o.py # Topologically Sorted Source Nodes: [conv2d_2, x_3], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_2 => convolution_2 # x_3 => relu_2 # Graph fragment: # %convolution_2 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem, %primals_6, %primals_7, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_2 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_2,), kwargs = {}) triton_poi_fused_convolution_relu_6 = async_compile.triton('triton_poi_fused_convolution_relu_6', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[262144], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_6', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_6(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 262144 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/4x/c4xqpnjemnncshp3uobexba3gggcnvtfyqm77kedjl5hqdw3frxf.py # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_5 => getitem_2, getitem_3 # Graph fragment: # %getitem_2 : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 0), kwargs = {}) # %getitem_3 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_1, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_7 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_7', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[65536], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_7', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_7(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 65536 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = (xindex // 64) % 16 x2 = (xindex // 1024) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (128*x1) + (4096*x2)), None) tmp1 = tl.load(in_ptr0 + (64 + x0 + (128*x1) + (4096*x2)), None) tmp3 = tl.load(in_ptr0 + (2048 + x0 + (128*x1) + (4096*x2)), None) tmp5 = tl.load(in_ptr0 + (2112 + x0 + (128*x1) + (4096*x2)), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x3), tmp6, None) tl.store(out_ptr1 + (x3), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/sl/csldasgiybuk75pltndkezbj76bkzandkkdq65rbg7u7qjxpoaag.py # Topologically Sorted Source Nodes: [conv2d_4, x_6], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_4 => convolution_4 # x_6 => relu_4 # Graph fragment: # %convolution_4 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem_2, %primals_10, %primals_11, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_4 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_4,), kwargs = {}) triton_poi_fused_convolution_relu_8 = async_compile.triton('triton_poi_fused_convolution_relu_8', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[131072], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_8', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_8(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 131072 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/j5/cj5twwxzxidjam7phdmpydrj7nkbuww72oy2rdefkqr25b37ownf.py # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_8 => getitem_4, getitem_5 # Graph fragment: # %getitem_4 : [num_users=2] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_2, 0), kwargs = {}) # %getitem_5 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets_2, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_9 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_9', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i8', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_9', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_9(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 32768 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x0 = xindex % 128 x1 = (xindex // 128) % 8 x2 = (xindex // 1024) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (256*x1) + (4096*x2)), None) tmp1 = tl.load(in_ptr0 + (128 + x0 + (256*x1) + (4096*x2)), None) tmp3 = tl.load(in_ptr0 + (2048 + x0 + (256*x1) + (4096*x2)), None) tmp5 = tl.load(in_ptr0 + (2176 + x0 + (256*x1) + (4096*x2)), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + (x3), tmp6, None) tl.store(out_ptr1 + (x3), tmp16, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/fv/cfvwxek5nzx5x7ubaubhqhgotsybztgplez6iq5eybz3hee6qw4s.py # Topologically Sorted Source Nodes: [conv2d_6, x_9], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # conv2d_6 => convolution_6 # x_9 => relu_6 # Graph fragment: # %convolution_6 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%getitem_4, %primals_14, %primals_15, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_6 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_6,), kwargs = {}) triton_poi_fused_convolution_relu_10 = async_compile.triton('triton_poi_fused_convolution_relu_10', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32768], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_10', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_10(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32768 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + (x2), None) tmp1 = tl.load(in_ptr0 + (x0), None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + (x2), tmp4, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yk/cyksiujy3425b5e7h4pbi5msbjyt4a5avbutklyuofudcns5mswm.py # Topologically Sorted Source Nodes: [conv2d_7, x_10], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # conv2d_7 => convolution_7 # x_10 => relu_7 # Graph fragment: # %convolution_7 : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%relu_6, %primals_16, %primals_17, [1, 1], [1, 1], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu_7 : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution_7,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu_7, 0), kwargs = {}) triton_poi_fused_convolution_relu_threshold_backward_11 = async_compile.triton('triton_poi_fused_convolution_relu_threshold_backward_11', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[512, 64], tile_hint=TileHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*i1', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_threshold_backward_11', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_11(in_ptr0, in_ptr1, out_ptr0, out_ptr1, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 512 xnumel = 64 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 128 y1 = (yindex // 128) y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (128*x2) + (8192*y1)), xmask & ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (y0), ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1, 1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x2 + (64*y3)), tmp4, xmask & ymask) tl.store(out_ptr1 + (y0 + (128*x2) + (8192*y1)), tmp6, xmask & ymask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17 = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64, ), (1, )) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64, ), (1, )) assert_size_stride(primals_6, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (64, ), (1, )) assert_size_stride(primals_8, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_9, (64, ), (1, )) assert_size_stride(primals_10, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_11, (128, ), (1, )) assert_size_stride(primals_12, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_13, (128, ), (1, )) assert_size_stride(primals_14, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_15, (128, ), (1, )) assert_size_stride(primals_16, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_17, (128, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] stream0 = get_raw_stream(0) triton_poi_fused_0.run(primals_4, buf0, 4096, 9, grid=grid(4096, 9), stream=stream0) del primals_4 buf1 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_0.run(primals_6, buf1, 4096, 9, grid=grid(4096, 9), stream=stream0) del primals_6 buf2 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_0.run(primals_8, buf2, 4096, 9, grid=grid(4096, 9), stream=stream0) del primals_8 buf3 = empty_strided_cuda((128, 64, 3, 3), (576, 1, 192, 64), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_1.run(primals_10, buf3, 8192, 9, grid=grid(8192, 9), stream=stream0) del primals_10 buf4 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_2.run(primals_12, buf4, 16384, 9, grid=grid(16384, 9), stream=stream0) del primals_12 buf5 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_2.run(primals_14, buf5, 16384, 9, grid=grid(16384, 9), stream=stream0) del primals_14 buf6 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) # Unsorted Source Nodes: [], Original ATen: [] triton_poi_fused_2.run(primals_16, buf6, 16384, 9, grid=grid(16384, 9), stream=stream0) del primals_16 # Topologically Sorted Source Nodes: [conv2d], Original ATen: [aten.convolution] buf7 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf8 = empty_strided_cuda((4, 64, 64, 64), (262144, 1, 4096, 64), torch.float32) # Topologically Sorted Source Nodes: [conv2d, x], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_3.run(buf7, primals_2, buf8, 256, 4096, grid=grid(256, 4096), stream=stream0) del buf7 del primals_2 # Topologically Sorted Source Nodes: [conv2d_1], Original ATen: [aten.convolution] buf9 = extern_kernels.convolution(buf8, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf9, (4, 64, 64, 64), (262144, 1, 4096, 64)) buf10 = buf9; del buf9 # reuse # Topologically Sorted Source Nodes: [conv2d_1, x_1], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_4.run(buf10, primals_5, 1048576, grid=grid(1048576), stream=stream0) del primals_5 buf11 = empty_strided_cuda((4, 64, 32, 32), (65536, 1, 2048, 64), torch.float32) buf12 = empty_strided_cuda((4, 64, 32, 32), (65536, 1, 2048, 64), torch.int8) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_5.run(buf10, buf11, buf12, 262144, grid=grid(262144), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_2], Original ATen: [aten.convolution] buf13 = extern_kernels.convolution(buf11, buf1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf13, (4, 64, 32, 32), (65536, 1, 2048, 64)) buf14 = buf13; del buf13 # reuse # Topologically Sorted Source Nodes: [conv2d_2, x_3], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_6.run(buf14, primals_7, 262144, grid=grid(262144), stream=stream0) del primals_7 # Topologically Sorted Source Nodes: [conv2d_3], Original ATen: [aten.convolution] buf15 = extern_kernels.convolution(buf14, buf2, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf15, (4, 64, 32, 32), (65536, 1, 2048, 64)) buf16 = buf15; del buf15 # reuse # Topologically Sorted Source Nodes: [conv2d_3, x_4], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_6.run(buf16, primals_9, 262144, grid=grid(262144), stream=stream0) del primals_9 buf17 = empty_strided_cuda((4, 64, 16, 16), (16384, 1, 1024, 64), torch.float32) buf18 = empty_strided_cuda((4, 64, 16, 16), (16384, 1, 1024, 64), torch.int8) # Topologically Sorted Source Nodes: [x_5], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_7.run(buf16, buf17, buf18, 65536, grid=grid(65536), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_4], Original ATen: [aten.convolution] buf19 = extern_kernels.convolution(buf17, buf3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf19, (4, 128, 16, 16), (32768, 1, 2048, 128)) buf20 = buf19; del buf19 # reuse # Topologically Sorted Source Nodes: [conv2d_4, x_6], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_8.run(buf20, primals_11, 131072, grid=grid(131072), stream=stream0) del primals_11 # Topologically Sorted Source Nodes: [conv2d_5], Original ATen: [aten.convolution] buf21 = extern_kernels.convolution(buf20, buf4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf21, (4, 128, 16, 16), (32768, 1, 2048, 128)) buf22 = buf21; del buf21 # reuse # Topologically Sorted Source Nodes: [conv2d_5, x_7], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_8.run(buf22, primals_13, 131072, grid=grid(131072), stream=stream0) del primals_13 buf23 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.float32) buf24 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.int8) # Topologically Sorted Source Nodes: [x_8], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_9.run(buf22, buf23, buf24, 32768, grid=grid(32768), stream=stream0) # Topologically Sorted Source Nodes: [conv2d_6], Original ATen: [aten.convolution] buf25 = extern_kernels.convolution(buf23, buf5, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf25, (4, 128, 8, 8), (8192, 1, 1024, 128)) buf26 = buf25; del buf25 # reuse # Topologically Sorted Source Nodes: [conv2d_6, x_9], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_10.run(buf26, primals_15, 32768, grid=grid(32768), stream=stream0) del primals_15 # Topologically Sorted Source Nodes: [conv2d_7], Original ATen: [aten.convolution] buf27 = extern_kernels.convolution(buf26, buf6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf27, (4, 128, 8, 8), (8192, 1, 1024, 128)) buf28 = empty_strided_cuda((4, 128, 8, 8), (8192, 64, 8, 1), torch.float32) buf29 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.bool) # Topologically Sorted Source Nodes: [conv2d_7, x_10], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] triton_poi_fused_convolution_relu_threshold_backward_11.run(buf27, primals_17, buf28, buf29, 512, 64, grid=grid(512, 64), stream=stream0) del buf27 del primals_17 return (buf28, primals_1, primals_3, buf0, buf1, buf2, buf3, buf4, buf5, buf6, buf8, buf10, buf11, buf12, buf14, buf16, buf17, buf18, buf20, buf22, buf23, buf24, buf26, buf29, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((64, 1, 3, 3), (9, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 1, 64, 64), (4096, 4096, 64, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((64, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((64, ), (1, ), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((128, 64, 3, 3), (576, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_14 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_15 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) primals_16 = rand_strided((128, 128, 3, 3), (1152, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_17 = rand_strided((128, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SuperpointBackbone(nn.Module): """ SuperPoint backbone. """ def __init__(self): super(SuperpointBackbone, self).__init__() self.relu = torch.nn.ReLU(inplace=True) self.pool = torch.nn.MaxPool2d(kernel_size=2, stride=2) c1, c2, c3, c4 = 64, 64, 128, 128 self.conv1a = torch.nn.Conv2d(1, c1, kernel_size=3, stride=1, padding=1 ) self.conv1b = torch.nn.Conv2d(c1, c1, kernel_size=3, stride=1, padding=1) self.conv2a = torch.nn.Conv2d(c1, c2, kernel_size=3, stride=1, padding=1) self.conv2b = torch.nn.Conv2d(c2, c2, kernel_size=3, stride=1, padding=1) self.conv3a = torch.nn.Conv2d(c2, c3, kernel_size=3, stride=1, padding=1) self.conv3b = torch.nn.Conv2d(c3, c3, kernel_size=3, stride=1, padding=1) self.conv4a = torch.nn.Conv2d(c3, c4, kernel_size=3, stride=1, padding=1) self.conv4b = torch.nn.Conv2d(c4, c4, kernel_size=3, stride=1, padding=1) def forward(self, input_images): x = self.relu(self.conv1a(input_images)) x = self.relu(self.conv1b(x)) x = self.pool(x) x = self.relu(self.conv2a(x)) x = self.relu(self.conv2b(x)) x = self.pool(x) x = self.relu(self.conv3a(x)) x = self.relu(self.conv3b(x)) x = self.pool(x) x = self.relu(self.conv4a(x)) x = self.relu(self.conv4b(x)) return x def get_inputs(): return [torch.rand([4, 1, 64, 64])] def get_init_inputs(): return [[], {}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = yindex // 64 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 64 * x2 + 576 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_1(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 64 y1 = yindex // 64 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 64 * x2 + 576 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_2(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): xnumel = 9 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] tl.full([XBLOCK, YBLOCK], True, tl.int1) xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y3 = yindex y0 = yindex % 128 y1 = yindex // 128 tmp0 = tl.load(in_ptr0 + (x2 + 9 * y3), xmask, eviction_policy='evict_last' ) tl.store(out_ptr0 + (y0 + 128 * x2 + 1152 * y1), tmp0, xmask) @triton.jit def triton_poi_fused_convolution_relu_3(in_ptr0, in_ptr1, out_ptr0, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl.constexpr): ynumel = 256 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, YBLOCK], True, tl.int1) x2 = xindex y3 = yindex y0 = yindex % 64 y1 = yindex // 64 tmp0 = tl.load(in_ptr0 + (x2 + 4096 * y3), ymask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr1 + y0, ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1, 1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(out_ptr0 + (y0 + 64 * x2 + 262144 * y1), tmp4, ymask) @triton.jit def triton_poi_fused_convolution_relu_4(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_5(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = xindex // 64 % 32 x2 = xindex // 2048 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 128 * x1 + 8192 * x2), None) tmp1 = tl.load(in_ptr0 + (64 + x0 + 128 * x1 + 8192 * x2), None) tmp3 = tl.load(in_ptr0 + (4096 + x0 + 128 * x1 + 8192 * x2), None) tmp5 = tl.load(in_ptr0 + (4160 + x0 + 128 * x1 + 8192 * x2), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x3, tmp6, None) tl.store(out_ptr1 + x3, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_6(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 64 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_7(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 64 x1 = xindex // 64 % 16 x2 = xindex // 1024 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 128 * x1 + 4096 * x2), None) tmp1 = tl.load(in_ptr0 + (64 + x0 + 128 * x1 + 4096 * x2), None) tmp3 = tl.load(in_ptr0 + (2048 + x0 + 128 * x1 + 4096 * x2), None) tmp5 = tl.load(in_ptr0 + (2112 + x0 + 128 * x1 + 4096 * x2), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x3, tmp6, None) tl.store(out_ptr1 + x3, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_8(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_max_pool2d_with_indices_9(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x0 = xindex % 128 x1 = xindex // 128 % 8 x2 = xindex // 1024 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 256 * x1 + 4096 * x2), None) tmp1 = tl.load(in_ptr0 + (128 + x0 + 256 * x1 + 4096 * x2), None) tmp3 = tl.load(in_ptr0 + (2048 + x0 + 256 * x1 + 4096 * x2), None) tmp5 = tl.load(in_ptr0 + (2176 + x0 + 256 * x1 + 4096 * x2), None) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp6 = triton_helpers.maximum(tmp5, tmp4) tmp7 = tmp1 > tmp0 tmp8 = tl.full([1], 1, tl.int8) tmp9 = tl.full([1], 0, tl.int8) tmp10 = tl.where(tmp7, tmp8, tmp9) tmp11 = tmp3 > tmp2 tmp12 = tl.full([1], 2, tl.int8) tmp13 = tl.where(tmp11, tmp12, tmp10) tmp14 = tmp5 > tmp4 tmp15 = tl.full([1], 3, tl.int8) tmp16 = tl.where(tmp14, tmp15, tmp13) tl.store(out_ptr0 + x3, tmp6, None) tl.store(out_ptr1 + x3, tmp16, None) @triton.jit def triton_poi_fused_convolution_relu_10(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] tl.full([XBLOCK], True, tl.int1) x2 = xindex x0 = xindex % 128 tmp0 = tl.load(in_out_ptr0 + x2, None) tmp1 = tl.load(in_ptr0 + x0, None, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tl.store(in_out_ptr0 + x2, tmp4, None) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_11(in_ptr0, in_ptr1, out_ptr0, out_ptr1, ynumel, xnumel, YBLOCK: tl.constexpr, XBLOCK: tl.constexpr): ynumel = 512 xnumel = 64 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x2 = xindex y0 = yindex % 128 y1 = yindex // 128 y3 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 128 * x2 + 8192 * y1), xmask & ymask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + y0, ymask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1, 1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(out_ptr0 + (x2 + 64 * y3), tmp4, xmask & ymask) tl.store(out_ptr1 + (y0 + 128 * x2 + 8192 * y1), tmp6, xmask & ymask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17) = args args.clear() assert_size_stride(primals_1, (64, 1, 3, 3), (9, 9, 3, 1)) assert_size_stride(primals_2, (64,), (1,)) assert_size_stride(primals_3, (4, 1, 64, 64), (4096, 4096, 64, 1)) assert_size_stride(primals_4, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_5, (64,), (1,)) assert_size_stride(primals_6, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_7, (64,), (1,)) assert_size_stride(primals_8, (64, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_9, (64,), (1,)) assert_size_stride(primals_10, (128, 64, 3, 3), (576, 9, 3, 1)) assert_size_stride(primals_11, (128,), (1,)) assert_size_stride(primals_12, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_13, (128,), (1,)) assert_size_stride(primals_14, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_15, (128,), (1,)) assert_size_stride(primals_16, (128, 128, 3, 3), (1152, 9, 3, 1)) assert_size_stride(primals_17, (128,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch. float32) get_raw_stream(0) triton_poi_fused_0[grid(4096, 9)](primals_4, buf0, 4096, 9, XBLOCK= 16, YBLOCK=64, num_warps=4, num_stages=1) del primals_4 buf1 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch. float32) triton_poi_fused_0[grid(4096, 9)](primals_6, buf1, 4096, 9, XBLOCK= 16, YBLOCK=64, num_warps=4, num_stages=1) del primals_6 buf2 = empty_strided_cuda((64, 64, 3, 3), (576, 1, 192, 64), torch. float32) triton_poi_fused_0[grid(4096, 9)](primals_8, buf2, 4096, 9, XBLOCK= 16, YBLOCK=64, num_warps=4, num_stages=1) del primals_8 buf3 = empty_strided_cuda((128, 64, 3, 3), (576, 1, 192, 64), torch .float32) triton_poi_fused_1[grid(8192, 9)](primals_10, buf3, 8192, 9, XBLOCK =16, YBLOCK=64, num_warps=4, num_stages=1) del primals_10 buf4 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) triton_poi_fused_2[grid(16384, 9)](primals_12, buf4, 16384, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_12 buf5 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) triton_poi_fused_2[grid(16384, 9)](primals_14, buf5, 16384, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_14 buf6 = empty_strided_cuda((128, 128, 3, 3), (1152, 1, 384, 128), torch.float32) triton_poi_fused_2[grid(16384, 9)](primals_16, buf6, 16384, 9, XBLOCK=16, YBLOCK=64, num_warps=4, num_stages=1) del primals_16 buf7 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf7, (4, 64, 64, 64), (262144, 4096, 64, 1)) buf8 = empty_strided_cuda((4, 64, 64, 64), (262144, 1, 4096, 64), torch.float32) triton_poi_fused_convolution_relu_3[grid(256, 4096)](buf7, primals_2, buf8, 256, 4096, XBLOCK=32, YBLOCK=32, num_warps=4, num_stages=1) del buf7 del primals_2 buf9 = extern_kernels.convolution(buf8, buf0, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf9, (4, 64, 64, 64), (262144, 1, 4096, 64)) buf10 = buf9 del buf9 triton_poi_fused_convolution_relu_4[grid(1048576)](buf10, primals_5, 1048576, XBLOCK=512, num_warps=8, num_stages=1) del primals_5 buf11 = empty_strided_cuda((4, 64, 32, 32), (65536, 1, 2048, 64), torch.float32) buf12 = empty_strided_cuda((4, 64, 32, 32), (65536, 1, 2048, 64), torch.int8) triton_poi_fused_max_pool2d_with_indices_5[grid(262144)](buf10, buf11, buf12, 262144, XBLOCK=512, num_warps=8, num_stages=1) buf13 = extern_kernels.convolution(buf11, buf1, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf13, (4, 64, 32, 32), (65536, 1, 2048, 64)) buf14 = buf13 del buf13 triton_poi_fused_convolution_relu_6[grid(262144)](buf14, primals_7, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_7 buf15 = extern_kernels.convolution(buf14, buf2, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf15, (4, 64, 32, 32), (65536, 1, 2048, 64)) buf16 = buf15 del buf15 triton_poi_fused_convolution_relu_6[grid(262144)](buf16, primals_9, 262144, XBLOCK=1024, num_warps=4, num_stages=1) del primals_9 buf17 = empty_strided_cuda((4, 64, 16, 16), (16384, 1, 1024, 64), torch.float32) buf18 = empty_strided_cuda((4, 64, 16, 16), (16384, 1, 1024, 64), torch.int8) triton_poi_fused_max_pool2d_with_indices_7[grid(65536)](buf16, buf17, buf18, 65536, XBLOCK=512, num_warps=4, num_stages=1) buf19 = extern_kernels.convolution(buf17, buf3, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf19, (4, 128, 16, 16), (32768, 1, 2048, 128)) buf20 = buf19 del buf19 triton_poi_fused_convolution_relu_8[grid(131072)](buf20, primals_11, 131072, XBLOCK=1024, num_warps=4, num_stages=1) del primals_11 buf21 = extern_kernels.convolution(buf20, buf4, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf21, (4, 128, 16, 16), (32768, 1, 2048, 128)) buf22 = buf21 del buf21 triton_poi_fused_convolution_relu_8[grid(131072)](buf22, primals_13, 131072, XBLOCK=1024, num_warps=4, num_stages=1) del primals_13 buf23 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.float32) buf24 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.int8) triton_poi_fused_max_pool2d_with_indices_9[grid(32768)](buf22, buf23, buf24, 32768, XBLOCK=128, num_warps=4, num_stages=1) buf25 = extern_kernels.convolution(buf23, buf5, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf25, (4, 128, 8, 8), (8192, 1, 1024, 128)) buf26 = buf25 del buf25 triton_poi_fused_convolution_relu_10[grid(32768)](buf26, primals_15, 32768, XBLOCK=256, num_warps=4, num_stages=1) del primals_15 buf27 = extern_kernels.convolution(buf26, buf6, stride=(1, 1), padding=(1, 1), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf27, (4, 128, 8, 8), (8192, 1, 1024, 128)) buf28 = empty_strided_cuda((4, 128, 8, 8), (8192, 64, 8, 1), torch. float32) buf29 = empty_strided_cuda((4, 128, 8, 8), (8192, 1, 1024, 128), torch.bool) triton_poi_fused_convolution_relu_threshold_backward_11[grid(512, 64)]( buf27, primals_17, buf28, buf29, 512, 64, XBLOCK=32, YBLOCK=32, num_warps=4, num_stages=1) del buf27 del primals_17 return (buf28, primals_1, primals_3, buf0, buf1, buf2, buf3, buf4, buf5, buf6, buf8, buf10, buf11, buf12, buf14, buf16, buf17, buf18, buf20, buf22, buf23, buf24, buf26, buf29) class SuperpointBackboneNew(nn.Module): """ SuperPoint backbone. """ def __init__(self): super(SuperpointBackboneNew, self).__init__() self.relu = torch.nn.ReLU(inplace=True) self.pool = torch.nn.MaxPool2d(kernel_size=2, stride=2) c1, c2, c3, c4 = 64, 64, 128, 128 self.conv1a = torch.nn.Conv2d(1, c1, kernel_size=3, stride=1, padding=1 ) self.conv1b = torch.nn.Conv2d(c1, c1, kernel_size=3, stride=1, padding=1) self.conv2a = torch.nn.Conv2d(c1, c2, kernel_size=3, stride=1, padding=1) self.conv2b = torch.nn.Conv2d(c2, c2, kernel_size=3, stride=1, padding=1) self.conv3a = torch.nn.Conv2d(c2, c3, kernel_size=3, stride=1, padding=1) self.conv3b = torch.nn.Conv2d(c3, c3, kernel_size=3, stride=1, padding=1) self.conv4a = torch.nn.Conv2d(c3, c4, kernel_size=3, stride=1, padding=1) self.conv4b = torch.nn.Conv2d(c4, c4, kernel_size=3, stride=1, padding=1) def forward(self, input_0): primals_1 = self.conv1a.weight primals_2 = self.conv1a.bias primals_4 = self.conv1b.weight primals_5 = self.conv1b.bias primals_6 = self.conv2a.weight primals_7 = self.conv2a.bias primals_8 = self.conv2b.weight primals_9 = self.conv2b.bias primals_10 = self.conv3a.weight primals_11 = self.conv3a.bias primals_12 = self.conv3b.weight primals_13 = self.conv3b.bias primals_14 = self.conv4a.weight primals_15 = self.conv4a.bias primals_16 = self.conv4b.weight primals_17 = self.conv4b.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14, primals_15, primals_16, primals_17]) return output[0]
B1ueber2y/SOLD2
SuperpointBackbone
false
11,282
[ "MIT" ]
0
f85ca5387ea7464314614c3fb4d07af5678a9de3
https://github.com/B1ueber2y/SOLD2/tree/f85ca5387ea7464314614c3fb4d07af5678a9de3
TransformerLayer
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/qw/cqw7yoyglmtjad3kirznl5odetqfs3k6pjtnfdbzklyhsdvuvgft.py # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.mul] # Source node to ATen node mapping: # multi_head_attention_forward => mul # Graph fragment: # %mul : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%permute_6, 1.0), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 1.0 tmp4 = tmp2 * tmp3 tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/hz/chzi3aam26mikdhljz5x7jlqazm7kpktzeptsf36thgfhsg7ub6a.py # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten._softmax] # Source node to ATen node mapping: # multi_head_attention_forward => amax, exp, sub # Graph fragment: # %amax : [num_users=1] = call_function[target=torch.ops.aten.amax.default](args = (%bmm, [-1], True), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%bmm, %amax), kwargs = {}) # %exp : [num_users=2] = call_function[target=torch.ops.aten.exp.default](args = (%sub,), kwargs = {}) triton_poi_fused__softmax_1 = async_compile.triton('triton_poi_fused__softmax_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/em/cem6qbxwbiqnjqybzk5arf2obt5uggy4qs7otwwpovvnrhvdc6h4.py # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten._softmax] # Source node to ATen node mapping: # multi_head_attention_forward => div, sum_1 # Graph fragment: # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%exp, [-1], True), kwargs = {}) # %div : [num_users=2] = call_function[target=torch.ops.aten.div.Tensor](args = (%exp, %sum_1), kwargs = {}) triton_poi_fused__softmax_2 = async_compile.triton('triton_poi_fused__softmax_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused__softmax_2', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused__softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/rh/crhjfwyl6xoj5ylcsbbh6lp2vlegits2zkdej3b3wb2q4ddfnejv.py # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.clone] # Source node to ATen node mapping: # multi_head_attention_forward => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_10,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_3 = async_compile.triton('triton_poi_fused_clone_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4, 4], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_3(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 4 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x1 = xindex y0 = yindex tmp0 = tl.load(in_ptr0 + (y0 + (4*x1)), xmask & ymask) tl.store(out_ptr0 + (x1 + (4*y0)), tmp0, xmask & ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/a6/ca6ovjcnh5yzmdyfxc5ale6boblsze3ikl6omxul537auceonqil.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.add] # Source node to ATen node mapping: # x => add # Graph fragment: # %add : [num_users=3] = call_function[target=torch.ops.aten.add.Tensor](args = (%squeeze, %primals_2), kwargs = {}) triton_poi_fused_add_4 = async_compile.triton('triton_poi_fused_add_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_4', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_4(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x2), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + (x2), tmp4, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (12, 4), (4, 1)) assert_size_stride(primals_6, (12, ), (1, )) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4, ), (1, )) assert_size_stride(primals_9, (4, 4), (4, 1)) assert_size_stride(primals_10, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear], Original ATen: [aten.mm] extern_kernels.mm(primals_2, reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_1], Original ATen: [aten.mm] extern_kernels.mm(primals_2, reinterpret_tensor(primals_3, (4, 4), (1, 4), 0), out=buf1) del primals_3 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_2], Original ATen: [aten.mm] extern_kernels.mm(primals_2, reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) del primals_4 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(buf0, reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.addmm] extern_kernels.addmm(reinterpret_tensor(primals_6, (4, ), (1, ), 4), buf1, reinterpret_tensor(primals_5, (4, 4), (1, 4), 16), alpha=1, beta=1, out=buf4) buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.addmm] extern_kernels.addmm(reinterpret_tensor(primals_6, (4, ), (1, ), 8), buf2, reinterpret_tensor(primals_5, (4, 4), (1, 4), 32), alpha=1, beta=1, out=buf5) buf6 = reinterpret_tensor(buf3, (4, 4, 1), (1, 4, 16), 0); del buf3 # reuse # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(buf6, primals_6, 16, grid=grid(16), stream=stream0) del primals_6 buf7 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.bmm] extern_kernels.bmm(buf6, reinterpret_tensor(buf4, (4, 1, 4), (1, 1, 4), 0), out=buf7) buf8 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten._softmax] triton_poi_fused__softmax_1.run(buf7, buf8, 64, grid=grid(64), stream=stream0) buf9 = buf7; del buf7 # reuse # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten._softmax] triton_poi_fused__softmax_2.run(buf8, buf9, 64, grid=grid(64), stream=stream0) del buf8 buf10 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.bmm] extern_kernels.bmm(buf9, reinterpret_tensor(buf5, (4, 4, 1), (1, 4, 1), 0), out=buf10) buf11 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [multi_head_attention_forward], Original ATen: [aten.clone] triton_poi_fused_clone_3.run(buf10, buf11, 4, 4, grid=grid(4, 4), stream=stream0) buf12 = reinterpret_tensor(buf10, (4, 4), (4, 1), 0); del buf10 # reuse # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf11, (4, 4), (4, 1), 0), reinterpret_tensor(primals_7, (4, 4), (1, 4), 0), out=buf12) buf13 = buf12; del buf12 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.add] triton_poi_fused_add_4.run(buf13, primals_8, primals_2, 16, grid=grid(16), stream=stream0) del primals_8 buf14 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [linear_3], Original ATen: [aten.mm] extern_kernels.mm(buf13, reinterpret_tensor(primals_9, (4, 4), (1, 4), 0), out=buf14) buf15 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.addmm(buf13, buf14, reinterpret_tensor(primals_10, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf15) return (buf15, primals_2, buf0, buf1, buf2, buf9, reinterpret_tensor(buf11, (4, 4), (4, 1), 0), buf13, buf14, primals_10, primals_9, primals_7, reinterpret_tensor(buf5, (4, 1, 4), (1, 1, 4), 0), reinterpret_tensor(buf6, (4, 1, 4), (1, 1, 4), 0), reinterpret_tensor(buf4, (4, 4, 1), (1, 4, 1), 0), reinterpret_tensor(primals_5, (4, 4), (4, 1), 32), reinterpret_tensor(primals_5, (4, 4), (4, 1), 16), reinterpret_tensor(primals_5, (4, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((12, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((12, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class TransformerLayer(nn.Module): def __init__(self, c, num_heads): super().__init__() self.q = nn.Linear(c, c, bias=False) self.k = nn.Linear(c, c, bias=False) self.v = nn.Linear(c, c, bias=False) self.ma = nn.MultiheadAttention(embed_dim=c, num_heads=num_heads) self.fc1 = nn.Linear(c, c, bias=False) self.fc2 = nn.Linear(c, c, bias=False) def forward(self, x): x = self.ma(self.q(x), self.k(x), self.v(x))[0] + x x = self.fc2(self.fc1(x)) + x return x def get_inputs(): return [torch.rand([4, 4])] def get_init_inputs(): return [[], {'c': 4, 'num_heads': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_mul_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 1.0 tmp4 = tmp2 * tmp3 tl.store(in_out_ptr0 + x2, tmp4, xmask) @triton.jit def triton_poi_fused__softmax_1(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = triton_helpers.maximum(tmp1, tmp2) tmp5 = triton_helpers.maximum(tmp3, tmp4) tmp7 = triton_helpers.maximum(tmp5, tmp6) tmp8 = tmp0 - tmp7 tmp9 = tl_math.exp(tmp8) tl.store(out_ptr0 + x2, tmp9, xmask) @triton.jit def triton_poi_fused__softmax_2(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr ): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 + tmp6 tmp8 = tmp0 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) @triton.jit def triton_poi_fused_clone_3(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 4 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel x1 = xindex y0 = yindex tmp0 = tl.load(in_ptr0 + (y0 + 4 * x1), xmask & ymask) tl.store(out_ptr0 + (x1 + 4 * y0), tmp0, xmask & ymask) @triton.jit def triton_poi_fused_add_4(in_out_ptr0, in_ptr0, in_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + x2, xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tl.store(in_out_ptr0 + x2, tmp4, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (12, 4), (4, 1)) assert_size_stride(primals_6, (12,), (1,)) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4,), (1,)) assert_size_stride(primals_9, (4, 4), (4, 1)) assert_size_stride(primals_10, (4, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_2, reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_2, reinterpret_tensor(primals_3, (4, 4), (1, 4), 0), out=buf1) del primals_3 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(primals_2, reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) del primals_4 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf0, reinterpret_tensor(primals_5, (4, 4), (1, 4 ), 0), out=buf3) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(reinterpret_tensor(primals_6, (4,), (1,), 4), buf1, reinterpret_tensor(primals_5, (4, 4), (1, 4), 16), alpha= 1, beta=1, out=buf4) buf5 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(reinterpret_tensor(primals_6, (4,), (1,), 8), buf2, reinterpret_tensor(primals_5, (4, 4), (1, 4), 32), alpha= 1, beta=1, out=buf5) buf6 = reinterpret_tensor(buf3, (4, 4, 1), (1, 4, 16), 0) del buf3 get_raw_stream(0) triton_poi_fused_mul_0[grid(16)](buf6, primals_6, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_6 buf7 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) extern_kernels.bmm(buf6, reinterpret_tensor(buf4, (4, 1, 4), (1, 1, 4), 0), out=buf7) buf8 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused__softmax_1[grid(64)](buf7, buf8, 64, XBLOCK=64, num_warps=1, num_stages=1) buf9 = buf7 del buf7 triton_poi_fused__softmax_2[grid(64)](buf8, buf9, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf8 buf10 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) extern_kernels.bmm(buf9, reinterpret_tensor(buf5, (4, 4, 1), (1, 4, 1), 0), out=buf10) buf11 = empty_strided_cuda((4, 4, 1), (4, 1, 1), torch.float32) triton_poi_fused_clone_3[grid(4, 4)](buf10, buf11, 4, 4, XBLOCK=4, YBLOCK=4, num_warps=1, num_stages=1) buf12 = reinterpret_tensor(buf10, (4, 4), (4, 1), 0) del buf10 extern_kernels.mm(reinterpret_tensor(buf11, (4, 4), (4, 1), 0), reinterpret_tensor(primals_7, (4, 4), (1, 4), 0), out=buf12) buf13 = buf12 del buf12 triton_poi_fused_add_4[grid(16)](buf13, primals_8, primals_2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_8 buf14 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.mm(buf13, reinterpret_tensor(primals_9, (4, 4), (1, 4), 0), out=buf14) buf15 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(buf13, buf14, reinterpret_tensor(primals_10, ( 4, 4), (1, 4), 0), alpha=1, beta=1, out=buf15) return buf15, primals_2, buf0, buf1, buf2, buf9, reinterpret_tensor(buf11, (4, 4), (4, 1), 0 ), buf13, buf14, primals_10, primals_9, primals_7, reinterpret_tensor( buf5, (4, 1, 4), (1, 1, 4), 0), reinterpret_tensor(buf6, (4, 1, 4), (1, 1, 4), 0), reinterpret_tensor(buf4, (4, 4, 1), (1, 4, 1), 0 ), reinterpret_tensor(primals_5, (4, 4), (4, 1), 32 ), reinterpret_tensor(primals_5, (4, 4), (4, 1), 16 ), reinterpret_tensor(primals_5, (4, 4), (4, 1), 0) class TransformerLayerNew(nn.Module): def __init__(self, c, num_heads): super().__init__() self.q = nn.Linear(c, c, bias=False) self.k = nn.Linear(c, c, bias=False) self.v = nn.Linear(c, c, bias=False) self.ma = nn.MultiheadAttention(embed_dim=c, num_heads=num_heads) self.fc1 = nn.Linear(c, c, bias=False) self.fc2 = nn.Linear(c, c, bias=False) def forward(self, input_0): primals_1 = self.q.weight primals_2 = self.k.weight primals_3 = self.v.weight primals_5 = self.ma.in_proj_weight primals_6 = self.ma.in_proj_bias primals_4 = self.ma.out_proj.weight primals_8 = self.ma.out_proj.bias primals_7 = self.fc1.weight primals_9 = self.fc2.weight primals_10 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10]) return output[0]
COEN-390/YOLOv5-Lite
TransformerLayer
false
11,283
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
ContrastiveLoss
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/cq/ccqyp4nbql67r2u7ty2lodzfvyv47vebbvubcunlpurylghzi3l4.py # Topologically Sorted Source Nodes: [pairwise_distance_1, euclidean_distance1, pairwise_distance, euclidean_distance], Original ATen: [aten.sub, aten.add, aten.norm, aten.mean] # Source node to ATen node mapping: # euclidean_distance => mean # euclidean_distance1 => mean_1 # pairwise_distance => add, pow_1, pow_2, sub, sum_1 # pairwise_distance_1 => add_1, pow_3, pow_4, sub_1, sum_2 # Graph fragment: # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg2_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Scalar](args = (%sub_1, 1e-06), kwargs = {}) # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add_1, 2.0), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_3, [3], True), kwargs = {}) # %pow_4 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_2, 0.5), kwargs = {}) # %mean_1 : [num_users=2] = call_function[target=torch.ops.aten.mean.default](args = (%pow_4,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg0_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Scalar](args = (%sub, 1e-06), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 2.0), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [3], True), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_1, 0.5), kwargs = {}) # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.default](args = (%pow_2,), kwargs = {}) triton_per_fused_add_mean_norm_sub_0 = async_compile.triton('triton_per_fused_add_mean_norm_sub_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {5: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 6), equal_to_1=(5,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_mean_norm_sub_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 12, 'num_reduction': 2, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_mean_norm_sub_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 1 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (4*r0), None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (4*r0), None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (1 + (4*r0)), None, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (1 + (4*r0)), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (2 + (4*r0)), None, eviction_policy='evict_last') tmp13 = tl.load(in_ptr1 + (2 + (4*r0)), None, eviction_policy='evict_last') tmp18 = tl.load(in_ptr0 + (3 + (4*r0)), None, eviction_policy='evict_last') tmp19 = tl.load(in_ptr1 + (3 + (4*r0)), None, eviction_policy='evict_last') tmp28 = tl.load(in_ptr2 + (4*r0), None, eviction_policy='evict_last') tmp32 = tl.load(in_ptr2 + (1 + (4*r0)), None, eviction_policy='evict_last') tmp37 = tl.load(in_ptr2 + (2 + (4*r0)), None, eviction_policy='evict_last') tmp42 = tl.load(in_ptr2 + (3 + (4*r0)), None, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp3 = 1e-06 tmp4 = tmp2 + tmp3 tmp5 = tmp4 * tmp4 tmp8 = tmp6 - tmp7 tmp9 = tmp8 + tmp3 tmp10 = tmp9 * tmp9 tmp11 = tmp5 + tmp10 tmp14 = tmp12 - tmp13 tmp15 = tmp14 + tmp3 tmp16 = tmp15 * tmp15 tmp17 = tmp11 + tmp16 tmp20 = tmp18 - tmp19 tmp21 = tmp20 + tmp3 tmp22 = tmp21 * tmp21 tmp23 = tmp17 + tmp22 tmp24 = libdevice.sqrt(tmp23) tmp25 = tl.broadcast_to(tmp24, [XBLOCK, RBLOCK]) tmp27 = tl.sum(tmp25, 1)[:, None] tmp29 = tmp0 - tmp28 tmp30 = tmp29 + tmp3 tmp31 = tmp30 * tmp30 tmp33 = tmp6 - tmp32 tmp34 = tmp33 + tmp3 tmp35 = tmp34 * tmp34 tmp36 = tmp31 + tmp35 tmp38 = tmp12 - tmp37 tmp39 = tmp38 + tmp3 tmp40 = tmp39 * tmp39 tmp41 = tmp36 + tmp40 tmp43 = tmp18 - tmp42 tmp44 = tmp43 + tmp3 tmp45 = tmp44 * tmp44 tmp46 = tmp41 + tmp45 tmp47 = libdevice.sqrt(tmp46) tmp48 = tl.broadcast_to(tmp47, [XBLOCK, RBLOCK]) tmp50 = tl.sum(tmp48, 1)[:, None] tl.store(out_ptr0 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp27, None) tl.store(out_ptr1 + (tl.full([XBLOCK, 1], 0, tl.int32)), tmp50, None) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ry/cryxh6bcgzksmh35qirkj55pbxuyhx7e7eilubzsnjmnxfgqcoua.py # Topologically Sorted Source Nodes: [sub, pairwise_distance_1, euclidean_distance1, add, pairwise_distance, euclidean_distance, sub_1, clamp, pow_1, mul, add_1, sub_2, clamp_1, pow_2, mul_1, add_2, loss_contrastive], Original ATen: [aten.rsub, aten.sub, aten.add, aten.norm, aten.mean, aten.clamp, aten.pow, aten.mul] # Source node to ATen node mapping: # add => add_2 # add_1 => add_3 # add_2 => add_4 # clamp => clamp_min # clamp_1 => clamp_min_1 # euclidean_distance => mean # euclidean_distance1 => mean_1 # loss_contrastive => mean_2 # mul => mul # mul_1 => mul_1 # pairwise_distance => add, pow_1, pow_2, sub, sum_1 # pairwise_distance_1 => add_1, pow_3, pow_4, sub_1, sum_2 # pow_1 => pow_5 # pow_2 => pow_6 # sub => sub_2 # sub_1 => sub_3 # sub_2 => sub_4 # Graph fragment: # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (1, %arg3_1), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg2_1), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Scalar](args = (%sub_1, 1e-06), kwargs = {}) # %pow_3 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add_1, 2.0), kwargs = {}) # %sum_2 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_3, [3], True), kwargs = {}) # %pow_4 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_2, 0.5), kwargs = {}) # %mean_1 : [num_users=2] = call_function[target=torch.ops.aten.mean.default](args = (%pow_4,), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean_1, 0.2), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg0_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Scalar](args = (%sub, 1e-06), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 2.0), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [3], True), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sum_1, 0.5), kwargs = {}) # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.default](args = (%pow_2,), kwargs = {}) # %sub_3 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add_2, %mean), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sub_3, 0.0), kwargs = {}) # %pow_5 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%clamp_min, 2), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sub_2, %pow_5), kwargs = {}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mean, 0.2), kwargs = {}) # %sub_4 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add_3, %mean_1), kwargs = {}) # %clamp_min_1 : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%sub_4, 0.0), kwargs = {}) # %pow_6 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%clamp_min_1, 2), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg3_1, %pow_6), kwargs = {}) # %add_4 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, %mul_1), kwargs = {}) # %mean_2 : [num_users=1] = call_function[target=torch.ops.aten.mean.default](args = (%add_4,), kwargs = {}) triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1 = async_compile.triton('triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {3: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 4), equal_to_1=(3,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 3, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp3 = tl.load(in_out_ptr0 + (0)) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp9 = tl.load(in_ptr1 + (0)) tmp10 = tl.broadcast_to(tmp9, [RBLOCK]) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp5 = 64.0 tmp6 = tmp4 / tmp5 tmp7 = 0.2 tmp8 = tmp6 + tmp7 tmp11 = tmp10 / tmp5 tmp12 = tmp8 - tmp11 tmp13 = 0.0 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp14 * tmp14 tmp16 = tmp2 * tmp15 tmp17 = tmp11 + tmp7 tmp18 = tmp17 - tmp6 tmp19 = triton_helpers.maximum(tmp18, tmp13) tmp20 = tmp19 * tmp19 tmp21 = tmp0 * tmp20 tmp22 = tmp16 + tmp21 tmp23 = tl.broadcast_to(tmp22, [RBLOCK]) tmp25 = triton_helpers.promote_to_tensor(tl.sum(tmp23, 0)) tmp26 = 256.0 tmp27 = tmp25 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp27, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = empty_strided_cuda((), (), torch.float32) # Topologically Sorted Source Nodes: [pairwise_distance_1, euclidean_distance1, pairwise_distance, euclidean_distance], Original ATen: [aten.sub, aten.add, aten.norm, aten.mean] stream0 = get_raw_stream(0) triton_per_fused_add_mean_norm_sub_0.run(arg1_1, arg2_1, arg0_1, buf0, buf1, 1, 64, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 buf2 = buf0; del buf0 # reuse buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [sub, pairwise_distance_1, euclidean_distance1, add, pairwise_distance, euclidean_distance, sub_1, clamp, pow_1, mul, add_1, sub_2, clamp_1, pow_2, mul_1, add_2, loss_contrastive], Original ATen: [aten.rsub, aten.sub, aten.add, aten.norm, aten.mean, aten.clamp, aten.pow, aten.mul] triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1.run(buf3, arg3_1, buf1, 1, 256, grid=grid(1), stream=stream0) del arg3_1 del buf1 return (buf3, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.cuda import torch.nn.functional as F class ContrastiveLoss(torch.nn.Module): """ Triplet loss function based on Contrastive loss function. Based on: http://yann.lecun.com/exdb/publis/pdf/hadsell-chopra-lecun-06.pdf """ def __init__(self, margin=0.2): super(ContrastiveLoss, self).__init__() self.margin = margin def forward(self, output1, output2, output3, label): euclidean_distance = torch.mean(F.pairwise_distance(output1, output2, keepdim=True)) euclidean_distance1 = torch.mean(F.pairwise_distance(output1, output3, keepdim=True)) loss_contrastive = torch.mean((1 - label) * torch.pow(torch.clamp( self.margin + euclidean_distance1 - euclidean_distance, min=0.0 ), 2) + label * torch.pow(torch.clamp(self.margin + euclidean_distance - euclidean_distance1, min=0.0), 2)) return loss_contrastive def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.cuda assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_per_fused_add_mean_norm_sub_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, out_ptr1, xnumel, rnumel, XBLOCK: tl.constexpr): RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xoffset + tl.arange(0, XBLOCK)[:, None] tl.full([XBLOCK, RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + 4 * r0, None, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + 4 * r0, None, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (1 + 4 * r0), None, eviction_policy='evict_last') tmp7 = tl.load(in_ptr1 + (1 + 4 * r0), None, eviction_policy='evict_last') tmp12 = tl.load(in_ptr0 + (2 + 4 * r0), None, eviction_policy='evict_last') tmp13 = tl.load(in_ptr1 + (2 + 4 * r0), None, eviction_policy='evict_last') tmp18 = tl.load(in_ptr0 + (3 + 4 * r0), None, eviction_policy='evict_last') tmp19 = tl.load(in_ptr1 + (3 + 4 * r0), None, eviction_policy='evict_last') tmp28 = tl.load(in_ptr2 + 4 * r0, None, eviction_policy='evict_last') tmp32 = tl.load(in_ptr2 + (1 + 4 * r0), None, eviction_policy='evict_last') tmp37 = tl.load(in_ptr2 + (2 + 4 * r0), None, eviction_policy='evict_last') tmp42 = tl.load(in_ptr2 + (3 + 4 * r0), None, eviction_policy='evict_last') tmp2 = tmp0 - tmp1 tmp3 = 1e-06 tmp4 = tmp2 + tmp3 tmp5 = tmp4 * tmp4 tmp8 = tmp6 - tmp7 tmp9 = tmp8 + tmp3 tmp10 = tmp9 * tmp9 tmp11 = tmp5 + tmp10 tmp14 = tmp12 - tmp13 tmp15 = tmp14 + tmp3 tmp16 = tmp15 * tmp15 tmp17 = tmp11 + tmp16 tmp20 = tmp18 - tmp19 tmp21 = tmp20 + tmp3 tmp22 = tmp21 * tmp21 tmp23 = tmp17 + tmp22 tmp24 = libdevice.sqrt(tmp23) tmp25 = tl.broadcast_to(tmp24, [XBLOCK, RBLOCK]) tmp27 = tl.sum(tmp25, 1)[:, None] tmp29 = tmp0 - tmp28 tmp30 = tmp29 + tmp3 tmp31 = tmp30 * tmp30 tmp33 = tmp6 - tmp32 tmp34 = tmp33 + tmp3 tmp35 = tmp34 * tmp34 tmp36 = tmp31 + tmp35 tmp38 = tmp12 - tmp37 tmp39 = tmp38 + tmp3 tmp40 = tmp39 * tmp39 tmp41 = tmp36 + tmp40 tmp43 = tmp18 - tmp42 tmp44 = tmp43 + tmp3 tmp45 = tmp44 * tmp44 tmp46 = tmp41 + tmp45 tmp47 = libdevice.sqrt(tmp46) tmp48 = tl.broadcast_to(tmp47, [XBLOCK, RBLOCK]) tmp50 = tl.sum(tmp48, 1)[:, None] tl.store(out_ptr0 + tl.full([XBLOCK, 1], 0, tl.int32), tmp27, None) tl.store(out_ptr1 + tl.full([XBLOCK, 1], 0, tl.int32), tmp50, None) @triton.jit def triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1(in_out_ptr0, in_ptr0, in_ptr1, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp3 = tl.load(in_out_ptr0 + 0) tmp4 = tl.broadcast_to(tmp3, [RBLOCK]) tmp9 = tl.load(in_ptr1 + 0) tmp10 = tl.broadcast_to(tmp9, [RBLOCK]) tmp1 = 1.0 tmp2 = tmp1 - tmp0 tmp5 = 64.0 tmp6 = tmp4 / tmp5 tmp7 = 0.2 tmp8 = tmp6 + tmp7 tmp11 = tmp10 / tmp5 tmp12 = tmp8 - tmp11 tmp13 = 0.0 tmp14 = triton_helpers.maximum(tmp12, tmp13) tmp15 = tmp14 * tmp14 tmp16 = tmp2 * tmp15 tmp17 = tmp11 + tmp7 tmp18 = tmp17 - tmp6 tmp19 = triton_helpers.maximum(tmp18, tmp13) tmp20 = tmp19 * tmp19 tmp21 = tmp0 * tmp20 tmp22 = tmp16 + tmp21 tmp23 = tl.broadcast_to(tmp22, [RBLOCK]) tmp25 = triton_helpers.promote_to_tensor(tl.sum(tmp23, 0)) tmp26 = 256.0 tmp27 = tmp25 / tmp26 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp27, None) def call(args): arg0_1, arg1_1, arg2_1, arg3_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg3_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = empty_strided_cuda((), (), torch.float32) get_raw_stream(0) triton_per_fused_add_mean_norm_sub_0[grid(1)](arg1_1, arg2_1, arg0_1, buf0, buf1, 1, 64, XBLOCK=1, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 buf2 = buf0 del buf0 buf3 = buf2 del buf2 triton_per_fused_add_clamp_mean_mul_norm_pow_rsub_sub_1[grid(1)](buf3, arg3_1, buf1, 1, 256, num_warps=2, num_stages=1) del arg3_1 del buf1 return buf3, class ContrastiveLossNew(torch.nn.Module): """ Triplet loss function based on Contrastive loss function. Based on: http://yann.lecun.com/exdb/publis/pdf/hadsell-chopra-lecun-06.pdf """ def __init__(self, margin=0.2): super(ContrastiveLossNew, self).__init__() self.margin = margin def forward(self, input_0, input_1, input_2, input_3): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 arg3_1 = input_3 output = call([arg0_1, arg1_1, arg2_1, arg3_1]) return output[0]
CS5590-0001-Projject/CS5590-0001-Project
ContrastiveLoss
false
11,284
[ "MIT" ]
0
18a9f0df7b2ef0f5e9ec7a4bd4e77f761abfd8f3
https://github.com/CS5590-0001-Projject/CS5590-0001-Project/tree/18a9f0df7b2ef0f5e9ec7a4bd4e77f761abfd8f3
TokenEmbedding
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/wf/cwfgpodivarq2gzz7nodlok35jybiut5djlrlgyaw23yzzih2tt7.py # Topologically Sorted Source Nodes: [pad], Original ATen: [aten.copy] # Source node to ATen node mapping: # pad => copy # Graph fragment: # %copy : [num_users=1] = call_function[target=torch.ops.aten.copy.default](args = (%slice_1, %slice_2), kwargs = {}) # %slice_scatter_default : [num_users=2] = call_function[target=torch.ops.aten.slice_scatter.default](args = (%empty, %copy, 2, 1, 5), kwargs = {}) # %slice_scatter_default_1 : [num_users=2] = call_function[target=torch.ops.aten.slice_scatter.default](args = (%slice_scatter_default, %slice_7, 2, 0, 1), kwargs = {}) # %slice_scatter_default_2 : [num_users=2] = call_function[target=torch.ops.aten.slice_scatter.default](args = (%slice_scatter_default_1, %slice_12, 2, 5, 6), kwargs = {}) triton_poi_fused_copy_0 = async_compile.triton('triton_poi_fused_copy_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32, 4], tile_hint=TileHint.SQUARE, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_copy_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_copy_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK : tl.constexpr, XBLOCK : tl.constexpr): ynumel = 24 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel y0 = yindex % 6 x2 = xindex y1 = (yindex // 6) tmp0 = y0 tmp1 = tl.full([1, 1], 5, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.broadcast_to((-4) + y0, [XBLOCK, YBLOCK]) tmp4 = tl.full([1, 1], 1, tl.int64) tmp5 = tmp3 < tmp4 tmp6 = tmp5 & tmp2 tmp7 = tl.broadcast_to(y0, [XBLOCK, YBLOCK]) tmp8 = tmp7 >= tmp4 tmp9 = tmp7 < tmp1 tmp10 = tmp8 & tmp9 tmp11 = tmp10 & tmp6 tmp12 = tl.load(in_ptr0 + ((-4) + x2 + (4*y0) + (16*y1)), tmp11 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp13 = float("nan") tmp14 = tl.where(tmp10, tmp12, tmp13) tmp15 = tl.full(tmp14.shape, 0.0, tmp14.dtype) tmp16 = tl.where(tmp6, tmp14, tmp15) tmp17 = tmp3 >= tmp4 tmp18 = tmp3 < tmp1 tmp19 = tmp17 & tmp18 tmp20 = tmp19 & tmp2 tmp21 = tl.load(in_ptr0 + ((-20) + x2 + (4*y0) + (16*y1)), tmp20 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp22 = tl.where(tmp19, tmp21, tmp13) tmp23 = tl.where(tmp5, tmp16, tmp22) tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp2, tmp23, tmp24) tmp26 = tmp0 < tmp4 tmp27 = tl.broadcast_to(4 + y0, [XBLOCK, YBLOCK]) tmp28 = tmp27 >= tmp4 tmp29 = tmp27 < tmp1 tmp30 = tmp28 & tmp29 tmp31 = tmp30 & tmp26 tmp32 = tl.load(in_ptr0 + (12 + x2 + (4*y0) + (16*y1)), tmp31 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp33 = tl.where(tmp30, tmp32, tmp13) tmp34 = tl.full(tmp33.shape, 0.0, tmp33.dtype) tmp35 = tl.where(tmp26, tmp33, tmp34) tmp36 = tmp0 >= tmp4 tmp37 = tmp0 < tmp1 tmp38 = tmp36 & tmp37 tmp39 = tl.load(in_ptr0 + ((-4) + x2 + (4*y0) + (16*y1)), tmp38 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp40 = tl.where(tmp38, tmp39, tmp13) tmp41 = tl.where(tmp26, tmp35, tmp40) tmp42 = tl.where(tmp2, tmp25, tmp41) tl.store(out_ptr0 + (y0 + (6*x2) + (24*y1)), tmp42, xmask & ymask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/au/cau4pihcaptiev5y2ewn2o2nvrwhk7hogc72cofmmtbyv4rxc2oy.py # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] # Source node to ATen node mapping: # conv1d => convolution # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%slice_scatter_default_2, %primals_2, %primals_3, [1], [0], [1], False, [0], 1), kwargs = {}) triton_poi_fused_convolution_1 = async_compile.triton('triton_poi_fused_convolution_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = (xindex // 4) % 4 tmp0 = tl.load(in_out_ptr0 + (x3), xmask) tmp1 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((4, 4, 6), (24, 6, 1), torch.float32) # Topologically Sorted Source Nodes: [pad], Original ATen: [aten.copy] stream0 = get_raw_stream(0) triton_poi_fused_copy_0.run(primals_1, buf1, 24, 4, grid=grid(24, 4), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1,), padding=(0,), dilation=(1,), transposed=False, output_padding=(0,), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4), (16, 4, 1)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] triton_poi_fused_convolution_1.run(buf3, primals_3, 64, grid=grid(64), stream=stream0) del primals_3 return (reinterpret_tensor(buf3, (4, 4, 4), (16, 1, 4), 0), primals_2, buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 3), (12, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class TokenEmbedding(nn.Module): def __init__(self, c_in, d_model): super(TokenEmbedding, self).__init__() padding = 1 if torch.__version__ >= '1.5.0' else 2 self.tokenConv = nn.Conv1d(in_channels=c_in, out_channels=d_model, kernel_size=3, padding=padding, padding_mode='circular') for m in self.modules(): if isinstance(m, nn.Conv1d): nn.init.kaiming_normal_(m.weight, mode='fan_in', nonlinearity='leaky_relu') def forward(self, x): x = self.tokenConv(x.permute(0, 2, 1)).transpose(1, 2) return x def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'c_in': 4, 'd_model': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_copy_0(in_ptr0, out_ptr0, ynumel, xnumel, YBLOCK: tl. constexpr, XBLOCK: tl.constexpr): ynumel = 24 xnumel = 4 yoffset = tl.program_id(1) * YBLOCK yindex = yoffset + tl.arange(0, YBLOCK)[None, :] ymask = yindex < ynumel xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel y0 = yindex % 6 x2 = xindex y1 = yindex // 6 tmp0 = y0 tmp1 = tl.full([1, 1], 5, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.broadcast_to(-4 + y0, [XBLOCK, YBLOCK]) tmp4 = tl.full([1, 1], 1, tl.int64) tmp5 = tmp3 < tmp4 tmp6 = tmp5 & tmp2 tmp7 = tl.broadcast_to(y0, [XBLOCK, YBLOCK]) tmp8 = tmp7 >= tmp4 tmp9 = tmp7 < tmp1 tmp10 = tmp8 & tmp9 tmp11 = tmp10 & tmp6 tmp12 = tl.load(in_ptr0 + (-4 + x2 + 4 * y0 + 16 * y1), tmp11 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp13 = float('nan') tmp14 = tl.where(tmp10, tmp12, tmp13) tmp15 = tl.full(tmp14.shape, 0.0, tmp14.dtype) tmp16 = tl.where(tmp6, tmp14, tmp15) tmp17 = tmp3 >= tmp4 tmp18 = tmp3 < tmp1 tmp19 = tmp17 & tmp18 tmp20 = tmp19 & tmp2 tmp21 = tl.load(in_ptr0 + (-20 + x2 + 4 * y0 + 16 * y1), tmp20 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp22 = tl.where(tmp19, tmp21, tmp13) tmp23 = tl.where(tmp5, tmp16, tmp22) tmp24 = tl.full(tmp23.shape, 0.0, tmp23.dtype) tmp25 = tl.where(tmp2, tmp23, tmp24) tmp26 = tmp0 < tmp4 tmp27 = tl.broadcast_to(4 + y0, [XBLOCK, YBLOCK]) tmp28 = tmp27 >= tmp4 tmp29 = tmp27 < tmp1 tmp30 = tmp28 & tmp29 tmp31 = tmp30 & tmp26 tmp32 = tl.load(in_ptr0 + (12 + x2 + 4 * y0 + 16 * y1), tmp31 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp33 = tl.where(tmp30, tmp32, tmp13) tmp34 = tl.full(tmp33.shape, 0.0, tmp33.dtype) tmp35 = tl.where(tmp26, tmp33, tmp34) tmp36 = tmp0 >= tmp4 tmp37 = tmp0 < tmp1 tmp38 = tmp36 & tmp37 tmp39 = tl.load(in_ptr0 + (-4 + x2 + 4 * y0 + 16 * y1), tmp38 & xmask & ymask, eviction_policy='evict_last', other=0.0) tmp40 = tl.where(tmp38, tmp39, tmp13) tmp41 = tl.where(tmp26, tmp35, tmp40) tmp42 = tl.where(tmp2, tmp25, tmp41) tl.store(out_ptr0 + (y0 + 6 * x2 + 24 * y1), tmp42, xmask & ymask) @triton.jit def triton_poi_fused_convolution_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex x1 = xindex // 4 % 4 tmp0 = tl.load(in_out_ptr0 + x3, xmask) tmp1 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x3, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf1 = empty_strided_cuda((4, 4, 6), (24, 6, 1), torch.float32) get_raw_stream(0) triton_poi_fused_copy_0[grid(24, 4)](primals_1, buf1, 24, 4, XBLOCK =4, YBLOCK=32, num_warps=4, num_stages=1) del primals_1 buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1,), padding=(0,), dilation=(1,), transposed=False, output_padding=( 0,), groups=1, bias=None) assert_size_stride(buf2, (4, 4, 4), (16, 4, 1)) buf3 = buf2 del buf2 triton_poi_fused_convolution_1[grid(64)](buf3, primals_3, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_3 return reinterpret_tensor(buf3, (4, 4, 4), (16, 1, 4), 0), primals_2, buf1 class TokenEmbeddingNew(nn.Module): def __init__(self, c_in, d_model): super(TokenEmbeddingNew, self).__init__() padding = 1 if torch.__version__ >= '1.5.0' else 2 self.tokenConv = nn.Conv1d(in_channels=c_in, out_channels=d_model, kernel_size=3, padding=padding, padding_mode='circular') for m in self.modules(): if isinstance(m, nn.Conv1d): nn.init.kaiming_normal_(m.weight, mode='fan_in', nonlinearity='leaky_relu') def forward(self, input_0): primals_2 = self.tokenConv.weight primals_3 = self.tokenConv.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Ares-Long/Time
TokenEmbedding
false
11,285
[ "Apache-2.0" ]
0
7827463613f45baea82de189a890afb7394e73e4
https://github.com/Ares-Long/Time/tree/7827463613f45baea82de189a890afb7394e73e4
TwoLayerCNN
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/q5/cq5wusjiorttrifgkbgmb575ri5bohmulexkpd7lpcdrnw7myr2f.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x_1 => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i1', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = 0.0 tmp4 = tmp2 <= tmp3 tl.store(in_out_ptr0 + (x0), tmp2, xmask) tl.store(out_ptr0 + (x0), tmp4, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/q2/cq2ab4zm7eyvynktpy632nombwctzki5grvf6od7jvr4qq7wwtqo.py # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] # Source node to ATen node mapping: # x_2 => _low_memory_max_pool2d_with_offsets, getitem_1 # Graph fragment: # %_low_memory_max_pool2d_with_offsets : [num_users=2] = call_function[target=torch.ops.prims._low_memory_max_pool2d_with_offsets.default](args = (%unsqueeze, [1, 2], [1, 2], [0, 0], [1, 1], False), kwargs = {}) # %getitem_1 : [num_users=1] = call_function[target=operator.getitem](args = (%_low_memory_max_pool2d_with_offsets, 1), kwargs = {}) triton_poi_fused_max_pool2d_with_indices_1 = async_compile.triton('triton_poi_fused_max_pool2d_with_indices_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*i8', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_max_pool2d_with_indices_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (2*x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + (2*x0)), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + (x0), tmp5, xmask) tl.store(out_ptr1 + (x0), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) assert_size_stride(primals_4, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv1d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=(0,), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4), (16, 4, 1)) buf1 = buf0; del buf0 # reuse buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, buf5, 64, grid=grid(64), stream=stream0) buf2 = empty_strided_cuda((4, 4, 1, 2), (8, 2, 2, 1), torch.int8) buf3 = empty_strided_cuda((4, 4, 1, 2), (8, 2, 2, 1), torch.float32) # Topologically Sorted Source Nodes: [x_2], Original ATen: [aten.max_pool2d_with_indices] triton_poi_fused_max_pool2d_with_indices_1.run(buf1, buf2, buf3, 32, grid=grid(32), stream=stream0) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4], Original ATen: [aten.addmm] extern_kernels.addmm(primals_4, reinterpret_tensor(buf3, (4, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), alpha=1, beta=1, out=buf4) del primals_4 return (buf4, primals_2, primals_1, reinterpret_tensor(buf1, (4, 4, 1, 4), (16, 4, 4, 1), 0), buf2, reinterpret_tensor(buf3, (4, 8), (8, 1), 0), primals_3, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 3), (12, 3, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 8), (8, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.nn.functional as F class TwoLayerCNN(nn.Module): def __init__(self, C, M, embedding, channel, mtc_input): super(TwoLayerCNN, self).__init__() self.C = C self.M = M self.embedding = embedding self.mtc_input = C if mtc_input else 1 self.conv1 = nn.Conv1d(self.mtc_input, channel, 3, 1, padding=1, bias=False) self.flat_size = M // 2 * C // self.mtc_input * channel self.fc1 = nn.Linear(self.flat_size, embedding) def forward(self, x): N = len(x) x = x.view(-1, self.mtc_input, self.M) x = F.relu(self.conv1(x)) x = F.max_pool1d(x, 2) x = x.view(N, self.flat_size) x = self.fc1(x) return x def get_inputs(): return [torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'C': 4, 'M': 4, 'embedding': 4, 'channel': 4, 'mtc_input': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.full([1], 0, tl.int32) tmp2 = triton_helpers.maximum(tmp1, tmp0) tmp3 = 0.0 tmp4 = tmp2 <= tmp3 tl.store(in_out_ptr0 + x0, tmp2, xmask) tl.store(out_ptr0 + x0, tmp4, xmask) @triton.jit def triton_poi_fused_max_pool2d_with_indices_1(in_ptr0, out_ptr0, out_ptr1, xnumel, XBLOCK: tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 2 * x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr0 + (1 + 2 * x0), xmask, eviction_policy='evict_last') tmp2 = tmp1 > tmp0 tmp3 = tl.full([1], 1, tl.int8) tmp4 = tl.full([1], 0, tl.int8) tmp5 = tl.where(tmp2, tmp3, tmp4) tmp6 = triton_helpers.maximum(tmp1, tmp0) tl.store(out_ptr0 + x0, tmp5, xmask) tl.store(out_ptr1 + x0, tmp6, xmask) def call(args): primals_1, primals_2, primals_3, primals_4 = args args.clear() assert_size_stride(primals_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_2, (4, 4, 3), (12, 3, 1)) assert_size_stride(primals_3, (4, 8), (8, 1)) assert_size_stride(primals_4, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_1, primals_2, stride=(1,), padding=(1,), dilation=(1,), transposed=False, output_padding=( 0,), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 4), (16, 4, 1)) buf1 = buf0 del buf0 buf5 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(64)](buf1, buf5, 64, XBLOCK=64, num_warps=1, num_stages=1) buf2 = empty_strided_cuda((4, 4, 1, 2), (8, 2, 2, 1), torch.int8) buf3 = empty_strided_cuda((4, 4, 1, 2), (8, 2, 2, 1), torch.float32) triton_poi_fused_max_pool2d_with_indices_1[grid(32)](buf1, buf2, buf3, 32, XBLOCK=32, num_warps=1, num_stages=1) buf4 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_4, reinterpret_tensor(buf3, (4, 8), (8, 1), 0), reinterpret_tensor(primals_3, (8, 4), (1, 8), 0), alpha =1, beta=1, out=buf4) del primals_4 return buf4, primals_2, primals_1, reinterpret_tensor(buf1, (4, 4, 1, 4 ), (16, 4, 4, 1), 0), buf2, reinterpret_tensor(buf3, (4, 8), (8, 1), 0 ), primals_3, buf5 class TwoLayerCNNNew(nn.Module): def __init__(self, C, M, embedding, channel, mtc_input): super(TwoLayerCNNNew, self).__init__() self.C = C self.M = M self.embedding = embedding self.mtc_input = C if mtc_input else 1 self.conv1 = nn.Conv1d(self.mtc_input, channel, 3, 1, padding=1, bias=False) self.flat_size = M // 2 * C // self.mtc_input * channel self.fc1 = nn.Linear(self.flat_size, embedding) def forward(self, input_0): primals_2 = self.conv1.weight primals_3 = self.fc1.weight primals_4 = self.fc1.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4]) return output[0]
Changxi-Liu/EditDistance
TwoLayerCNN
false
11,288
[ "MIT" ]
0
925f43c3cf0bd6fdd8f5f0e919ac49916a020459
https://github.com/Changxi-Liu/EditDistance/tree/925f43c3cf0bd6fdd8f5f0e919ac49916a020459
Dense
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/gk/cgkqs7em6molkouv33lhm3wkir3xotalajzi55emfd7p7qrkjxmx.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.hardswish] # Source node to ATen node mapping: # x_1 => add, clamp_max, clamp_min, div, mul # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%convolution, 3), kwargs = {}) # %clamp_min : [num_users=1] = call_function[target=torch.ops.aten.clamp_min.default](args = (%add, 0), kwargs = {}) # %clamp_max : [num_users=1] = call_function[target=torch.ops.aten.clamp_max.default](args = (%clamp_min, 6), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%convolution, %clamp_max), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul, 6), kwargs = {}) triton_poi_fused_hardswish_0 = async_compile.triton('triton_poi_fused_hardswish_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_hardswish_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_hardswish_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + (x0), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_2, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.hardswish] stream0 = get_raw_stream(0) triton_poi_fused_hardswish_0.run(buf0, buf1, 16, grid=grid(16), stream=stream0) return (buf1, primals_1, primals_2, buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn import torch.utils.data class Dense(nn.Module): def __init__(self, num_channels, num_filters, filter_size, dropout_prob): super().__init__() self.dense_conv = nn.Conv2d(in_channels=num_channels, out_channels= num_filters, kernel_size=filter_size, stride=1, padding=0, bias =False) self.hardswish = nn.Hardswish() self.dropout = nn.Dropout(p=dropout_prob) def forward(self, x): x = self.dense_conv(x) x = self.hardswish(x) x = self.dropout(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'num_channels': 4, 'num_filters': 4, 'filter_size': 4, 'dropout_prob': 0.5}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn import torch.utils.data assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_hardswish_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 3.0 tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.maximum(tmp2, tmp3) tmp5 = 6.0 tmp6 = triton_helpers.minimum(tmp4, tmp5) tmp7 = tmp0 * tmp6 tmp8 = 0.16666666666666666 tmp9 = tmp7 * tmp8 tl.store(out_ptr0 + x0, tmp9, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_2, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.float32) get_raw_stream(0) triton_poi_fused_hardswish_0[grid(16)](buf0, buf1, 16, XBLOCK=16, num_warps=1, num_stages=1) return buf1, primals_1, primals_2, buf0 class DenseNew(nn.Module): def __init__(self, num_channels, num_filters, filter_size, dropout_prob): super().__init__() self.dense_conv = nn.Conv2d(in_channels=num_channels, out_channels= num_filters, kernel_size=filter_size, stride=1, padding=0, bias =False) self.hardswish = nn.Hardswish() self.dropout = nn.Dropout(p=dropout_prob) def forward(self, input_0): primals_1 = self.dense_conv.weight primals_2 = input_0 output = call([primals_1, primals_2]) return output[0]
COEN-390/YOLOv5-Lite
Dense
false
11,289
[ "MIT" ]
0
06a53f5d001c5d37729f55f47cbd46cc8eb63f84
https://github.com/COEN-390/YOLOv5-Lite/tree/06a53f5d001c5d37729f55f47cbd46cc8eb63f84
LUConv
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/bu/cbuw2cr6j42jy3h7dfvpa6fcap2nxlklfpqtwdtx4a5egebtyqub.py # Topologically Sorted Source Nodes: [conv3d, instance_norm, out], Original ATen: [aten.convolution, aten._native_batch_norm_legit, aten.elu] # Source node to ATen node mapping: # conv3d => convolution # instance_norm => add, rsqrt, var_mean # out => expm1, gt, mul_1, mul_3, where # Graph fragment: # %convolution : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%unsqueeze, %primals_1, %primals_2, [1, 1, 1], [1, 1, 1], [1, 1, 1], False, [0, 0, 0], 1), kwargs = {}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%unsqueeze_1, [0, 2, 3, 4]), kwargs = {correction: 0, keepdim: True}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add,), kwargs = {}) # %gt : [num_users=1] = call_function[target=torch.ops.aten.gt.Scalar](args = (%squeeze_3, 0), kwargs = {}) # %mul_1 : [num_users=2] = call_function[target=torch.ops.aten.mul.Tensor](args = (%squeeze_3, 1.0), kwargs = {}) # %expm1 : [num_users=1] = call_function[target=torch.ops.aten.expm1.default](args = (%mul_1,), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expm1, 1.0), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%gt, %mul_1, %mul_3), kwargs = {}) triton_per_fused__native_batch_norm_legit_convolution_elu_0 = async_compile.triton('triton_per_fused__native_batch_norm_legit_convolution_elu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: 'i32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_convolution_elu_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_convolution_elu_0(in_out_ptr0, in_ptr0, out_ptr0, out_ptr2, out_ptr3, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_out_ptr0 + (r1 + (64*x0)), xmask, other=0.0) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = tmp2 - tmp12 tmp20 = 64.0 tmp21 = tmp18 / tmp20 tmp22 = 1e-05 tmp23 = tmp21 + tmp22 tmp24 = libdevice.rsqrt(tmp23) tmp25 = tmp19 * tmp24 tmp26 = 0.0 tmp27 = tmp25 > tmp26 tmp28 = 1.0 tmp29 = tmp25 * tmp28 tmp30 = libdevice.expm1(tmp29) tmp31 = tmp30 * tmp28 tmp32 = tl.where(tmp27, tmp29, tmp31) tl.store(in_out_ptr0 + (r1 + (64*x0)), tmp2, xmask) tl.store(out_ptr2 + (r1 + (64*x0)), tmp32, xmask) tl.store(out_ptr3 + (x0), tmp24, xmask) tl.store(out_ptr0 + (x0), tmp12, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3, 3), (108, 27, 9, 3, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [conv3d], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(reinterpret_tensor(primals_3, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0), primals_1, stride=(1, 1, 1), padding=(1, 1, 1), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf0, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1)) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((1, 4, 1, 1, 1), (4, 1, 4, 4, 4), torch.float32) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf5 = empty_strided_cuda((1, 4, 1, 1, 1), (4, 1, 4, 4, 4), torch.float32) # Topologically Sorted Source Nodes: [conv3d, instance_norm, out], Original ATen: [aten.convolution, aten._native_batch_norm_legit, aten.elu] stream0 = get_raw_stream(0) triton_per_fused__native_batch_norm_legit_convolution_elu_0.run(buf1, primals_2, buf2, buf6, buf5, 4, 64, grid=grid(4), stream=stream0) del primals_2 return (buf6, primals_1, reinterpret_tensor(primals_3, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0), buf1, reinterpret_tensor(buf5, (4, ), (1, ), 0), buf6, reinterpret_tensor(buf2, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 3, 3, 3), (108, 27, 9, 3, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn def ELUCons(elu, nchan): if elu: return nn.ELU(inplace=True) else: return nn.PReLU(nchan) class LUConv(nn.Module): def __init__(self, inChans, outChans, elu): super(LUConv, self).__init__() self.relu1 = ELUCons(elu, outChans) self.conv1 = nn.Conv3d(inChans, outChans, kernel_size=3, padding=1) self.bn1 = nn.InstanceNorm3d(outChans) def forward(self, x): out = self.relu1(self.bn1(self.conv1(x))) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'inChans': 4, 'outChans': 4, 'elu': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused__native_batch_norm_legit_convolution_elu_0(in_out_ptr0, in_ptr0, out_ptr0, out_ptr2, out_ptr3, xnumel, rnumel, XBLOCK: tl.constexpr ): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_out_ptr0 + (r1 + 64 * x0), xmask, other=0.0) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 64, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = tmp2 - tmp12 tmp20 = 64.0 tmp21 = tmp18 / tmp20 tmp22 = 1e-05 tmp23 = tmp21 + tmp22 tmp24 = libdevice.rsqrt(tmp23) tmp25 = tmp19 * tmp24 tmp26 = 0.0 tmp27 = tmp25 > tmp26 tmp28 = 1.0 tmp29 = tmp25 * tmp28 tmp30 = libdevice.expm1(tmp29) tmp31 = tmp30 * tmp28 tmp32 = tl.where(tmp27, tmp29, tmp31) tl.store(in_out_ptr0 + (r1 + 64 * x0), tmp2, xmask) tl.store(out_ptr2 + (r1 + 64 * x0), tmp32, xmask) tl.store(out_ptr3 + x0, tmp24, xmask) tl.store(out_ptr0 + x0, tmp12, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 3, 3, 3), (108, 27, 9, 3, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(reinterpret_tensor(primals_3, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0), primals_1, stride=(1, 1, 1), padding=(1, 1, 1), dilation=(1, 1, 1), transposed=False, output_padding=(0, 0, 0), groups=1, bias=None) assert_size_stride(buf0, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1)) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((1, 4, 1, 1, 1), (4, 1, 4, 4, 4), torch. float32) buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) buf5 = empty_strided_cuda((1, 4, 1, 1, 1), (4, 1, 4, 4, 4), torch. float32) get_raw_stream(0) triton_per_fused__native_batch_norm_legit_convolution_elu_0[grid(4)]( buf1, primals_2, buf2, buf6, buf5, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) del primals_2 return buf6, primals_1, reinterpret_tensor(primals_3, (1, 4, 4, 4, 4), (256, 64, 16, 4, 1), 0), buf1, reinterpret_tensor(buf5, (4,), (1,), 0 ), buf6, reinterpret_tensor(buf2, (1, 4, 1, 1, 1), (4, 1, 1, 1, 1), 0) def ELUCons(elu, nchan): if elu: return nn.ELU(inplace=True) else: return nn.PReLU(nchan) class LUConvNew(nn.Module): def __init__(self, inChans, outChans, elu): super(LUConvNew, self).__init__() self.relu1 = ELUCons(elu, outChans) self.conv1 = nn.Conv3d(inChans, outChans, kernel_size=3, padding=1) self.bn1 = nn.InstanceNorm3d(outChans) def forward(self, input_0): primals_1 = self.conv1.weight primals_2 = self.conv1.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
CheerL/lancunar
LUConv
false
11,290
[ "BSD-3-Clause" ]
0
fb00a331b5381af555fd2a7f0d03324a5355fe8c
https://github.com/CheerL/lancunar/tree/fb00a331b5381af555fd2a7f0d03324a5355fe8c
ResidualGatedGCNLayer
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/xs/cxst4urp3gdzg4spi2fbywycfgk3p3hrl4e3enub6i7p7clnivjd.py # Topologically Sorted Source Nodes: [add, e_new, edge_gate, gateVx, sum_1], Original ATen: [aten.add, aten.sigmoid, aten.mul, aten.sum] # Source node to ATen node mapping: # add => add # e_new => add_1 # edge_gate => sigmoid # gateVx => mul # sum_1 => sum_1 # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %unsqueeze_1), kwargs = {}) # %add_1 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%add, %unsqueeze), kwargs = {}) # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%add_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%sigmoid, %unsqueeze_2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [2]), kwargs = {}) triton_poi_fused_add_mul_sigmoid_sum_0 = async_compile.triton('triton_poi_fused_add_mul_sigmoid_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_sigmoid_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 10, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_sigmoid_sum_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x3 = (xindex // 4) x1 = (xindex // 4) % 4 x4 = xindex % 16 x5 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x3)), xmask) tmp1 = tl.load(in_ptr1 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x4), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr2 + (x4), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (4 + x0 + (16*x3)), xmask) tmp9 = tl.load(in_ptr1 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (8 + x0 + (16*x3)), xmask) tmp16 = tl.load(in_ptr1 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp22 = tl.load(in_ptr0 + (12 + x0 + (16*x3)), xmask) tmp23 = tl.load(in_ptr1 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp5 = tl.sigmoid(tmp4) tmp7 = tmp5 * tmp6 tmp10 = tmp8 + tmp9 tmp11 = tmp10 + tmp3 tmp12 = tl.sigmoid(tmp11) tmp13 = tmp12 * tmp6 tmp14 = tmp7 + tmp13 tmp17 = tmp15 + tmp16 tmp18 = tmp17 + tmp3 tmp19 = tl.sigmoid(tmp18) tmp20 = tmp19 * tmp6 tmp21 = tmp14 + tmp20 tmp24 = tmp22 + tmp23 tmp25 = tmp24 + tmp3 tmp26 = tl.sigmoid(tmp25) tmp27 = tmp26 * tmp6 tmp28 = tmp21 + tmp27 tl.store(out_ptr0 + (x5), tmp28, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/2u/c2ufltrzqtmdjgl4uu247ij2uxzrpeupkiwdweyddpcn6cusms25.py # Topologically Sorted Source Nodes: [e_trans, e_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] # Source node to ATen node mapping: # e_trans => clone # e_trans_bn => add_3, rsqrt, var_mean # Graph fragment: # %clone : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute_4,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone, [0, 2, 3]), kwargs = {correction: 0, keepdim: True}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem, 1e-05), kwargs = {}) # %rsqrt : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add_3,), kwargs = {}) triton_per_fused__native_batch_norm_legit_clone_1 = async_compile.triton('triton_per_fused__native_batch_norm_legit_clone_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 64], reduction_hint=ReductionHint.OUTER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_clone_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_1(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 64 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r4 = rindex x0 = xindex r5 = rindex % 16 r2 = (rindex // 4) % 4 tmp0 = tl.load(in_ptr0 + (x0 + (4*r4)), xmask, other=0.0) tmp1 = tl.load(in_ptr1 + (r5), None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x0 + (4*r2)), xmask, eviction_policy='evict_last', other=0.0) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp5 = tl.broadcast_to(tmp4, [XBLOCK, RBLOCK]) tmp7 = tl.where(xmask, tmp5, 0) tmp8 = tl.broadcast_to(tmp5, [XBLOCK, RBLOCK]) tmp10 = tl.where(xmask, tmp8, 0) tmp11 = tl.sum(tmp10, 1)[:, None] tmp12 = tl.full([XBLOCK, 1], 64, tl.int32) tmp13 = tmp12.to(tl.float32) tmp14 = tmp11 / tmp13 tmp15 = tmp5 - tmp14 tmp16 = tmp15 * tmp15 tmp17 = tl.broadcast_to(tmp16, [XBLOCK, RBLOCK]) tmp19 = tl.where(xmask, tmp17, 0) tmp20 = tl.sum(tmp19, 1)[:, None] tmp21 = 64.0 tmp22 = tmp20 / tmp21 tmp23 = 1e-05 tmp24 = tmp22 + tmp23 tmp25 = libdevice.rsqrt(tmp24) tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp25, xmask) tl.store(out_ptr0 + (x0), tmp14, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/7g/c7gnxrldgxizjezeek2tbxep7eotsc3xyrhq5caaj4zozgciyijb.py # Topologically Sorted Source Nodes: [x_trans, x_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] # Source node to ATen node mapping: # x_trans => clone_2 # x_trans_bn => add_5, rsqrt_1, var_mean_1 # Graph fragment: # %clone_2 : [num_users=2] = call_function[target=torch.ops.aten.clone.default](args = (%permute_6,), kwargs = {memory_format: torch.contiguous_format}) # %var_mean_1 : [num_users=2] = call_function[target=torch.ops.aten.var_mean.correction](args = (%clone_2, [0, 2]), kwargs = {correction: 0, keepdim: True}) # %add_5 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%getitem_2, 1e-05), kwargs = {}) # %rsqrt_1 : [num_users=2] = call_function[target=torch.ops.aten.rsqrt.default](args = (%add_5,), kwargs = {}) triton_per_fused__native_batch_norm_legit_clone_2 = async_compile.triton('triton_per_fused__native_batch_norm_legit_clone_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[4, 16], reduction_hint=ReductionHint.DEFAULT, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused__native_batch_norm_legit_clone_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 4, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_2(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 4 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex % 4 x0 = xindex r3 = rindex tmp0 = tl.load(in_ptr0 + (x0 + (4*r1)), xmask, eviction_policy='evict_last', other=0.0) tmp1 = tl.load(in_ptr1 + (x0 + (4*r3)), xmask, other=0.0) tmp2 = tmp0 + tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tmp5 = tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 16, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 16.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp23, xmask) tl.store(out_ptr0 + (x0), tmp12, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/bj/cbjpgpomqwp6siwqnjccakhgpbwal52xi3vsscn47w5gezbsjkt7.py # Topologically Sorted Source Nodes: [x_bn, x, x_new_1], Original ATen: [aten.clone, aten.relu, aten.add] # Source node to ATen node mapping: # x => relu_1 # x_bn => clone_3 # x_new_1 => add_7 # Graph fragment: # %clone_3 : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_7,), kwargs = {memory_format: torch.contiguous_format}) # %relu_1 : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%clone_3,), kwargs = {}) # %add_7 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_2, %relu_1), kwargs = {}) triton_poi_fused_add_clone_relu_3 = async_compile.triton('triton_poi_fused_add_clone_relu_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: '*fp32', 8: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7, 8), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_clone_relu_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 7, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_clone_relu_3(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex % 16 x4 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x3), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x3), xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr2 + (x4), xmask) tmp4 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr5 + (x0), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr6 + (x0), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 - tmp4 tmp7 = tmp5 * tmp6 tmp9 = tmp7 * tmp8 tmp11 = tmp9 + tmp10 tmp12 = tl.full([1], 0, tl.int32) tmp13 = triton_helpers.maximum(tmp12, tmp11) tmp14 = tmp0 + tmp13 tl.store(out_ptr0 + (x4), tmp14, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/zi/cziauszss5qexos2v4xlbuti3gmk44tavffow4v2tfoo3b724lnn.py # Topologically Sorted Source Nodes: [e_bn, e, e_new_1], Original ATen: [aten.clone, aten.relu, aten.add] # Source node to ATen node mapping: # e => relu # e_bn => clone_1 # e_new_1 => add_8 # Graph fragment: # %clone_1 : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%permute_5,), kwargs = {memory_format: torch.contiguous_format}) # %relu : [num_users=1] = call_function[target=torch.ops.aten.relu.default](args = (%clone_1,), kwargs = {}) # %add_8 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%primals_1, %relu), kwargs = {}) triton_poi_fused_add_clone_relu_4 = async_compile.triton('triton_poi_fused_add_clone_relu_4', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: '*fp32', 7: '*fp32', 8: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6, 7, 8), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_clone_relu_4', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_clone_relu_4(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x5 = (xindex // 4) % 16 x0 = xindex % 4 x2 = (xindex // 16) % 4 tmp0 = tl.load(in_ptr0 + (x4), xmask) tmp1 = tl.load(in_ptr1 + (x4), xmask) tmp2 = tl.load(in_ptr2 + (x5), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr2 + (x0 + (4*x2)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr3 + (x0), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr4 + (x0), xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr5 + (x0), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr6 + (x0), xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 - tmp6 tmp9 = tmp7 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tmp14 = tl.full([1], 0, tl.int32) tmp15 = triton_helpers.maximum(tmp14, tmp13) tmp16 = tmp0 + tmp15 tl.store(out_ptr0 + (x4), tmp16, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4, ), (1, )) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4, ), (1, )) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4, ), (1, )) assert_size_stride(primals_9, (4, 4), (4, 1)) assert_size_stride(primals_10, (4, ), (1, )) assert_size_stride(primals_11, (4, ), (1, )) assert_size_stride(primals_12, (4, ), (1, )) assert_size_stride(primals_13, (4, ), (1, )) assert_size_stride(primals_14, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [Ue], Original ATen: [aten.addmm] extern_kernels.addmm(primals_4, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_3, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_3 del primals_4 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [Vx], Original ATen: [aten.addmm] extern_kernels.addmm(primals_6, primals_2, reinterpret_tensor(primals_5, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_5 del primals_6 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [Ux], Original ATen: [aten.addmm] extern_kernels.addmm(primals_8, primals_2, reinterpret_tensor(primals_7, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_7 del primals_8 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [Vx_2], Original ATen: [aten.addmm] extern_kernels.addmm(primals_10, primals_2, reinterpret_tensor(primals_9, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_10 del primals_9 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add, e_new, edge_gate, gateVx, sum_1], Original ATen: [aten.add, aten.sigmoid, aten.mul, aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_sigmoid_sum_0.run(buf0, buf1, buf3, buf4, 64, grid=grid(64), stream=stream0) buf5 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 1, 1), torch.float32) buf6 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf8 = reinterpret_tensor(buf6, (1, 4, 1, 1), (4, 1, 1, 1), 0); del buf6 # reuse # Topologically Sorted Source Nodes: [e_trans, e_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] triton_per_fused__native_batch_norm_legit_clone_1.run(buf8, buf0, buf1, buf5, 4, 64, grid=grid(4), stream=stream0) buf9 = empty_strided_cuda((1, 4, 1), (4, 1, 1), torch.float32) buf10 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf12 = reinterpret_tensor(buf10, (1, 4, 1), (4, 1, 1), 0); del buf10 # reuse # Topologically Sorted Source Nodes: [x_trans, x_trans_bn], Original ATen: [aten.clone, aten._native_batch_norm_legit] triton_per_fused__native_batch_norm_legit_clone_2.run(buf12, buf2, buf4, buf9, 4, 16, grid=grid(4), stream=stream0) buf13 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_bn, x, x_new_1], Original ATen: [aten.clone, aten.relu, aten.add] triton_poi_fused_add_clone_relu_3.run(primals_2, buf2, buf4, buf9, buf12, primals_13, primals_14, buf13, 64, grid=grid(64), stream=stream0) del buf4 buf14 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [e_bn, e, e_new_1], Original ATen: [aten.clone, aten.relu, aten.add] triton_poi_fused_add_clone_relu_4.run(primals_1, buf0, buf1, buf5, buf8, primals_11, primals_12, buf14, 256, grid=grid(256), stream=stream0) return (buf13, buf14, primals_2, primals_11, primals_12, primals_13, primals_14, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), buf0, buf1, buf2, buf3, buf5, buf8, buf9, buf12, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_8 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_9 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_10 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_11 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_12 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_13 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_14 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn.functional as F import torch.nn as nn class BatchNormNode(nn.Module): """Batch normalization for node features. """ def __init__(self, hidden_dim): super(BatchNormNode, self).__init__() self.batch_norm = nn.BatchNorm1d(hidden_dim, track_running_stats=False) def forward(self, x): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) Returns: x_bn: Node features after batch normalization (batch_size, num_nodes, hidden_dim) """ x_trans = x.transpose(1, 2).contiguous() x_trans_bn = self.batch_norm(x_trans) x_bn = x_trans_bn.transpose(1, 2).contiguous() return x_bn class BatchNormEdge(nn.Module): """Batch normalization for edge features. """ def __init__(self, hidden_dim): super(BatchNormEdge, self).__init__() self.batch_norm = nn.BatchNorm2d(hidden_dim, track_running_stats=False) def forward(self, e): """ Args: e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_bn: Edge features after batch normalization (batch_size, num_nodes, num_nodes, hidden_dim) """ e_trans = e.transpose(1, 3).contiguous() e_trans_bn = self.batch_norm(e_trans) e_bn = e_trans_bn.transpose(1, 3).contiguous() return e_bn class NodeFeatures(nn.Module): """Convnet features for nodes. Using `sum` aggregation: x_i = U*x_i + sum_j [ gate_ij * (V*x_j) ] Using `mean` aggregation: x_i = U*x_i + ( sum_j [ gate_ij * (V*x_j) ] / sum_j [ gate_ij] ) """ def __init__(self, hidden_dim, aggregation='mean'): super(NodeFeatures, self).__init__() self.aggregation = aggregation self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, edge_gate): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) edge_gate: Edge gate values (batch_size, num_nodes, num_nodes, hidden_dim) Returns: x_new: Convolved node features (batch_size, num_nodes, hidden_dim) """ Ux = self.U(x) Vx = self.V(x) Vx = Vx.unsqueeze(1) gateVx = edge_gate * Vx if self.aggregation == 'mean': x_new = Ux + torch.sum(gateVx, dim=2) / (1e-20 + torch.sum( edge_gate, dim=2)) elif self.aggregation == 'sum': x_new = Ux + torch.sum(gateVx, dim=2) return x_new class EdgeFeatures(nn.Module): """Convnet features for edges. e_ij = U*e_ij + V*(x_i + x_j) """ def __init__(self, hidden_dim): super(EdgeFeatures, self).__init__() self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, e): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_new: Convolved edge features (batch_size, num_nodes, num_nodes, hidden_dim) """ Ue = self.U(e) Vx = self.V(x) Wx = Vx.unsqueeze(1) Vx = Vx.unsqueeze(2) e_new = Ue + Vx + Wx return e_new class ResidualGatedGCNLayer(nn.Module): """Convnet layer with gating and residual connection. """ def __init__(self, hidden_dim, aggregation='sum'): super(ResidualGatedGCNLayer, self).__init__() self.node_feat = NodeFeatures(hidden_dim, aggregation) self.edge_feat = EdgeFeatures(hidden_dim) self.bn_node = BatchNormNode(hidden_dim) self.bn_edge = BatchNormEdge(hidden_dim) def forward(self, x, e): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: x_new: Convolved node features (batch_size, num_nodes, hidden_dim) e_new: Convolved edge features (batch_size, num_nodes, num_nodes, hidden_dim) """ e_in = e x_in = x e_tmp = self.edge_feat(x_in, e_in) edge_gate = F.sigmoid(e_tmp) x_tmp = self.node_feat(x_in, edge_gate) e_tmp = self.bn_edge(e_tmp) x_tmp = self.bn_node(x_tmp) e = F.relu(e_tmp) x = F.relu(x_tmp) x_new = x_in + x e_new = e_in + e return x_new, e_new def get_inputs(): return [torch.rand([4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'hidden_dim': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_mul_sigmoid_sum_0(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x3 = xindex // 4 x1 = xindex // 4 % 4 x4 = xindex % 16 x5 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x3), xmask) tmp1 = tl.load(in_ptr1 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + x4, xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr2 + x4, xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (4 + x0 + 16 * x3), xmask) tmp9 = tl.load(in_ptr1 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp15 = tl.load(in_ptr0 + (8 + x0 + 16 * x3), xmask) tmp16 = tl.load(in_ptr1 + (2 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp22 = tl.load(in_ptr0 + (12 + x0 + 16 * x3), xmask) tmp23 = tl.load(in_ptr1 + (3 + 4 * x1), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp5 = tl.sigmoid(tmp4) tmp7 = tmp5 * tmp6 tmp10 = tmp8 + tmp9 tmp11 = tmp10 + tmp3 tmp12 = tl.sigmoid(tmp11) tmp13 = tmp12 * tmp6 tmp14 = tmp7 + tmp13 tmp17 = tmp15 + tmp16 tmp18 = tmp17 + tmp3 tmp19 = tl.sigmoid(tmp18) tmp20 = tmp19 * tmp6 tmp21 = tmp14 + tmp20 tmp24 = tmp22 + tmp23 tmp25 = tmp24 + tmp3 tmp26 = tl.sigmoid(tmp25) tmp27 = tmp26 * tmp6 tmp28 = tmp21 + tmp27 tl.store(out_ptr0 + x5, tmp28, xmask) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_1(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r4 = rindex x0 = xindex r5 = rindex % 16 r2 = rindex // 4 % 4 tmp0 = tl.load(in_ptr0 + (x0 + 4 * r4), xmask, other=0.0) tmp1 = tl.load(in_ptr1 + r5, None, eviction_policy='evict_last') tmp3 = tl.load(in_ptr1 + (x0 + 4 * r2), xmask, eviction_policy= 'evict_last', other=0.0) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp5 = tl.broadcast_to(tmp4, [XBLOCK, RBLOCK]) tl.where(xmask, tmp5, 0) tmp8 = tl.broadcast_to(tmp5, [XBLOCK, RBLOCK]) tmp10 = tl.where(xmask, tmp8, 0) tmp11 = tl.sum(tmp10, 1)[:, None] tmp12 = tl.full([XBLOCK, 1], 64, tl.int32) tmp13 = tmp12.to(tl.float32) tmp14 = tmp11 / tmp13 tmp15 = tmp5 - tmp14 tmp16 = tmp15 * tmp15 tmp17 = tl.broadcast_to(tmp16, [XBLOCK, RBLOCK]) tmp19 = tl.where(xmask, tmp17, 0) tmp20 = tl.sum(tmp19, 1)[:, None] tmp21 = 64.0 tmp22 = tmp20 / tmp21 tmp23 = 1e-05 tmp24 = tmp22 + tmp23 tmp25 = libdevice.rsqrt(tmp24) tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp25, xmask) tl.store(out_ptr0 + x0, tmp14, xmask) @triton.jit def triton_per_fused__native_batch_norm_legit_clone_2(in_out_ptr0, in_ptr0, in_ptr1, out_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 4 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex % 4 x0 = xindex r3 = rindex tmp0 = tl.load(in_ptr0 + (x0 + 4 * r1), xmask, eviction_policy= 'evict_last', other=0.0) tmp1 = tl.load(in_ptr1 + (x0 + 4 * r3), xmask, other=0.0) tmp2 = tmp0 + tmp1 tmp3 = tl.broadcast_to(tmp2, [XBLOCK, RBLOCK]) tl.where(xmask, tmp3, 0) tmp6 = tl.broadcast_to(tmp3, [XBLOCK, RBLOCK]) tmp8 = tl.where(xmask, tmp6, 0) tmp9 = tl.sum(tmp8, 1)[:, None] tmp10 = tl.full([XBLOCK, 1], 16, tl.int32) tmp11 = tmp10.to(tl.float32) tmp12 = tmp9 / tmp11 tmp13 = tmp3 - tmp12 tmp14 = tmp13 * tmp13 tmp15 = tl.broadcast_to(tmp14, [XBLOCK, RBLOCK]) tmp17 = tl.where(xmask, tmp15, 0) tmp18 = tl.sum(tmp17, 1)[:, None] tmp19 = 16.0 tmp20 = tmp18 / tmp19 tmp21 = 1e-05 tmp22 = tmp20 + tmp21 tmp23 = libdevice.rsqrt(tmp22) tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp23, xmask) tl.store(out_ptr0 + x0, tmp12, xmask) @triton.jit def triton_poi_fused_add_clone_relu_3(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex % 16 x4 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x3, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + x3, xmask, eviction_policy='evict_last') tmp2 = tl.load(in_ptr2 + x4, xmask) tmp4 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr5 + x0, xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr6 + x0, xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 - tmp4 tmp7 = tmp5 * tmp6 tmp9 = tmp7 * tmp8 tmp11 = tmp9 + tmp10 tmp12 = tl.full([1], 0, tl.int32) tmp13 = triton_helpers.maximum(tmp12, tmp11) tmp14 = tmp0 + tmp13 tl.store(out_ptr0 + x4, tmp14, xmask) @triton.jit def triton_poi_fused_add_clone_relu_4(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, in_ptr5, in_ptr6, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x4 = xindex x5 = xindex // 4 % 16 x0 = xindex % 4 x2 = xindex // 16 % 4 tmp0 = tl.load(in_ptr0 + x4, xmask) tmp1 = tl.load(in_ptr1 + x4, xmask) tmp2 = tl.load(in_ptr2 + x5, xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr2 + (x0 + 4 * x2), xmask, eviction_policy='evict_last' ) tmp6 = tl.load(in_ptr3 + x0, xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr4 + x0, xmask, eviction_policy='evict_last') tmp10 = tl.load(in_ptr5 + x0, xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr6 + x0, xmask, eviction_policy='evict_last') tmp3 = tmp1 + tmp2 tmp5 = tmp3 + tmp4 tmp7 = tmp5 - tmp6 tmp9 = tmp7 * tmp8 tmp11 = tmp9 * tmp10 tmp13 = tmp11 + tmp12 tmp14 = tl.full([1], 0, tl.int32) tmp15 = triton_helpers.maximum(tmp14, tmp13) tmp16 = tmp0 + tmp15 tl.store(out_ptr0 + x4, tmp16, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14) = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, 4), (4, 1)) assert_size_stride(primals_4, (4,), (1,)) assert_size_stride(primals_5, (4, 4), (4, 1)) assert_size_stride(primals_6, (4,), (1,)) assert_size_stride(primals_7, (4, 4), (4, 1)) assert_size_stride(primals_8, (4,), (1,)) assert_size_stride(primals_9, (4, 4), (4, 1)) assert_size_stride(primals_10, (4,), (1,)) assert_size_stride(primals_11, (4,), (1,)) assert_size_stride(primals_12, (4,), (1,)) assert_size_stride(primals_13, (4,), (1,)) assert_size_stride(primals_14, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_4, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_3, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_3 del primals_4 buf1 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_6, primals_2, reinterpret_tensor( primals_5, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf1) del primals_5 del primals_6 buf2 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_8, primals_2, reinterpret_tensor( primals_7, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_7 del primals_8 buf3 = empty_strided_cuda((4, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_10, primals_2, reinterpret_tensor( primals_9, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf3) del primals_10 del primals_9 buf4 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_mul_sigmoid_sum_0[grid(64)](buf0, buf1, buf3, buf4, 64, XBLOCK=64, num_warps=1, num_stages=1) buf5 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 1, 1), torch.float32) buf6 = empty_strided_cuda((1, 4, 1, 1), (4, 1, 4, 4), torch.float32) buf8 = reinterpret_tensor(buf6, (1, 4, 1, 1), (4, 1, 1, 1), 0) del buf6 triton_per_fused__native_batch_norm_legit_clone_1[grid(4)](buf8, buf0, buf1, buf5, 4, 64, XBLOCK=1, num_warps=2, num_stages=1) buf9 = empty_strided_cuda((1, 4, 1), (4, 1, 1), torch.float32) buf10 = empty_strided_cuda((1, 4, 1), (4, 1, 4), torch.float32) buf12 = reinterpret_tensor(buf10, (1, 4, 1), (4, 1, 1), 0) del buf10 triton_per_fused__native_batch_norm_legit_clone_2[grid(4)](buf12, buf2, buf4, buf9, 4, 16, XBLOCK=1, num_warps=2, num_stages=1) buf13 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) triton_poi_fused_add_clone_relu_3[grid(64)](primals_2, buf2, buf4, buf9, buf12, primals_13, primals_14, buf13, 64, XBLOCK=64, num_warps=1, num_stages=1) del buf4 buf14 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_clone_relu_4[grid(256)](primals_1, buf0, buf1, buf5, buf8, primals_11, primals_12, buf14, 256, XBLOCK=256, num_warps=4, num_stages=1) return (buf13, buf14, primals_2, primals_11, primals_12, primals_13, primals_14, reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), buf0, buf1, buf2, buf3, buf5, buf8, buf9, buf12) class BatchNormNode(nn.Module): """Batch normalization for node features. """ def __init__(self, hidden_dim): super(BatchNormNode, self).__init__() self.batch_norm = nn.BatchNorm1d(hidden_dim, track_running_stats=False) def forward(self, x): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) Returns: x_bn: Node features after batch normalization (batch_size, num_nodes, hidden_dim) """ x_trans = x.transpose(1, 2).contiguous() x_trans_bn = self.batch_norm(x_trans) x_bn = x_trans_bn.transpose(1, 2).contiguous() return x_bn class BatchNormEdge(nn.Module): """Batch normalization for edge features. """ def __init__(self, hidden_dim): super(BatchNormEdge, self).__init__() self.batch_norm = nn.BatchNorm2d(hidden_dim, track_running_stats=False) def forward(self, e): """ Args: e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_bn: Edge features after batch normalization (batch_size, num_nodes, num_nodes, hidden_dim) """ e_trans = e.transpose(1, 3).contiguous() e_trans_bn = self.batch_norm(e_trans) e_bn = e_trans_bn.transpose(1, 3).contiguous() return e_bn class NodeFeatures(nn.Module): """Convnet features for nodes. Using `sum` aggregation: x_i = U*x_i + sum_j [ gate_ij * (V*x_j) ] Using `mean` aggregation: x_i = U*x_i + ( sum_j [ gate_ij * (V*x_j) ] / sum_j [ gate_ij] ) """ def __init__(self, hidden_dim, aggregation='mean'): super(NodeFeatures, self).__init__() self.aggregation = aggregation self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, edge_gate): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) edge_gate: Edge gate values (batch_size, num_nodes, num_nodes, hidden_dim) Returns: x_new: Convolved node features (batch_size, num_nodes, hidden_dim) """ Ux = self.U(x) Vx = self.V(x) Vx = Vx.unsqueeze(1) gateVx = edge_gate * Vx if self.aggregation == 'mean': x_new = Ux + torch.sum(gateVx, dim=2) / (1e-20 + torch.sum( edge_gate, dim=2)) elif self.aggregation == 'sum': x_new = Ux + torch.sum(gateVx, dim=2) return x_new class EdgeFeatures(nn.Module): """Convnet features for edges. e_ij = U*e_ij + V*(x_i + x_j) """ def __init__(self, hidden_dim): super(EdgeFeatures, self).__init__() self.U = nn.Linear(hidden_dim, hidden_dim, True) self.V = nn.Linear(hidden_dim, hidden_dim, True) def forward(self, x, e): """ Args: x: Node features (batch_size, num_nodes, hidden_dim) e: Edge features (batch_size, num_nodes, num_nodes, hidden_dim) Returns: e_new: Convolved edge features (batch_size, num_nodes, num_nodes, hidden_dim) """ Ue = self.U(e) Vx = self.V(x) Wx = Vx.unsqueeze(1) Vx = Vx.unsqueeze(2) e_new = Ue + Vx + Wx return e_new class ResidualGatedGCNLayerNew(nn.Module): """Convnet layer with gating and residual connection. """ def __init__(self, hidden_dim, aggregation='sum'): super(ResidualGatedGCNLayerNew, self).__init__() self.node_feat = NodeFeatures(hidden_dim, aggregation) self.edge_feat = EdgeFeatures(hidden_dim) self.bn_node = BatchNormNode(hidden_dim) self.bn_edge = BatchNormEdge(hidden_dim) def forward(self, input_0, input_1): primals_2 = self.node_feat.U.weight primals_4 = self.node_feat.U.bias primals_3 = self.node_feat.V.weight primals_6 = self.node_feat.V.bias primals_5 = self.edge_feat.U.weight primals_8 = self.edge_feat.U.bias primals_7 = self.edge_feat.V.weight primals_10 = self.edge_feat.V.bias primals_11 = self.bn_node.batch_norm.weight primals_12 = self.bn_node.batch_norm.bias primals_13 = self.bn_edge.batch_norm.weight primals_14 = self.bn_edge.batch_norm.bias primals_9 = input_0 primals_1 = input_1 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7, primals_8, primals_9, primals_10, primals_11, primals_12, primals_13, primals_14]) return output[0], output[1]
BrandonKates/graph-convnet-tsp
ResidualGatedGCNLayer
false
11,292
[ "MIT" ]
0
f6e17e84311c23fd5cab041b7a27b4e0636c44f8
https://github.com/BrandonKates/graph-convnet-tsp/tree/f6e17e84311c23fd5cab041b7a27b4e0636c44f8
Mlp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/nh/cnhx37tsffx4r7taj3xi72s7yfpnnccem24fupfbht6b7bzliavu.py # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.gelu] # Source node to ATen node mapping: # x_1 => add, erf, mul, mul_1, mul_2 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, 0.5), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%view_1, 0.7071067811865476), kwargs = {}) # %erf : [num_users=1] = call_function[target=torch.ops.aten.erf.default](args = (%mul_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%erf, 1), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %add), kwargs = {}) triton_poi_fused_gelu_0 = async_compile.triton('triton_poi_fused_gelu_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_gelu_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_gelu_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865476 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + (x0), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.gelu] stream0 = get_raw_stream(0) triton_poi_fused_gelu_0.run(buf0, buf1, 256, grid=grid(256), stream=stream0) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.addmm] extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return (reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Mlp(nn.Module): def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.0): super().__init__() out_features = out_features or in_features hidden_features = hidden_features or in_features self.fc1 = nn.Linear(in_features, hidden_features) self.act = act_layer() self.fc2 = nn.Linear(hidden_features, out_features) self.drop = nn.Dropout(drop) def forward(self, x): x = self.fc1(x) x = self.act(x) x = self.drop(x) x = self.fc2(x) x = self.drop(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_features': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_gelu_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865476 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + x0, tmp8, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_gelu_0[grid(256)](buf0, buf1, 256, XBLOCK=256, num_warps=4, num_stages=1) buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_5, reinterpret_tensor(buf1, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf2) del primals_5 return reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), buf0, reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4 class MlpNew(nn.Module): def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.0): super().__init__() out_features = out_features or in_features hidden_features = hidden_features or in_features self.fc1 = nn.Linear(in_features, hidden_features) self.act = act_layer() self.fc2 = nn.Linear(hidden_features, out_features) self.drop = nn.Dropout(drop) def forward(self, input_0): primals_1 = self.fc1.weight primals_2 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
ChangeTheWorld20191008/SwinIR
Mlp
false
11,293
[ "Apache-2.0" ]
0
a0cf7330b10e7c7294f11f59e1b89eff973b9093
https://github.com/ChangeTheWorld20191008/SwinIR/tree/a0cf7330b10e7c7294f11f59e1b89eff973b9093
TemporalEmbedding
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/aj/cajffqesecvkyqpb4xsm3itr6xvdpqs6wg4viw32uiltwyyv44is.py # Topologically Sorted Source Nodes: [embedding, embedding_1, add, embedding_2, add_1, embedding_3, add_2, add_3], Original ATen: [aten.embedding, aten.add] # Source node to ATen node mapping: # add => add # add_1 => add_1 # add_2 => add_2 # add_3 => add_3 # embedding => embedding # embedding_1 => embedding_1 # embedding_2 => embedding_2 # embedding_3 => embedding_3 # Graph fragment: # %embedding : [num_users=1] = call_function[target=torch.ops.aten.embedding.default](args = (%arg1_1, %select), kwargs = {}) # %embedding_1 : [num_users=1] = call_function[target=torch.ops.aten.embedding.default](args = (%arg2_1, %select_1), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%embedding, %embedding_1), kwargs = {}) # %embedding_2 : [num_users=1] = call_function[target=torch.ops.aten.embedding.default](args = (%arg3_1, %select_2), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add, %embedding_2), kwargs = {}) # %embedding_3 : [num_users=1] = call_function[target=torch.ops.aten.embedding.default](args = (%arg4_1, %select_3), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_1, %embedding_3), kwargs = {}) # %add_3 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%add_2, 0.0), kwargs = {}) triton_poi_fused_add_embedding_0 = async_compile.triton('triton_poi_fused_add_embedding_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: '*fp32', 5: '*fp32', 6: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4, 5, 6), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_embedding_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_embedding_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 4 x2 = (xindex // 16) x0 = xindex % 4 x4 = xindex tmp0 = tl.load(in_ptr0 + (12 + x1 + (16*x2)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr0 + (8 + x1 + (16*x2)), xmask, eviction_policy='evict_last') tmp17 = tl.load(in_ptr0 + (4 + x1 + (16*x2)), xmask, eviction_policy='evict_last') tmp26 = tl.load(in_ptr0 + (x1 + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = tmp0.to(tl.int64) tmp2 = tl.full([XBLOCK], 24, tl.int32) tmp3 = tmp1 + tmp2 tmp4 = tmp1 < 0 tmp5 = tl.where(tmp4, tmp3, tmp1) tl.device_assert(((0 <= tmp5) & (tmp5 < 24)) | ~(xmask), "index out of bounds: 0 <= tmp5 < 24") tmp7 = tl.load(in_ptr1 + (x0 + (4*tmp5)), xmask) tmp9 = tmp8.to(tl.int64) tmp10 = tl.full([XBLOCK], 7, tl.int32) tmp11 = tmp9 + tmp10 tmp12 = tmp9 < 0 tmp13 = tl.where(tmp12, tmp11, tmp9) tl.device_assert(((0 <= tmp13) & (tmp13 < 7)) | ~(xmask), "index out of bounds: 0 <= tmp13 < 7") tmp15 = tl.load(in_ptr2 + (x0 + (4*tmp13)), xmask) tmp16 = tmp7 + tmp15 tmp18 = tmp17.to(tl.int64) tmp19 = tl.full([XBLOCK], 32, tl.int32) tmp20 = tmp18 + tmp19 tmp21 = tmp18 < 0 tmp22 = tl.where(tmp21, tmp20, tmp18) tl.device_assert(((0 <= tmp22) & (tmp22 < 32)) | ~(xmask), "index out of bounds: 0 <= tmp22 < 32") tmp24 = tl.load(in_ptr3 + (x0 + (4*tmp22)), xmask) tmp25 = tmp16 + tmp24 tmp27 = tmp26.to(tl.int64) tmp28 = tl.full([XBLOCK], 13, tl.int32) tmp29 = tmp27 + tmp28 tmp30 = tmp27 < 0 tmp31 = tl.where(tmp30, tmp29, tmp27) tl.device_assert(((0 <= tmp31) & (tmp31 < 13)) | ~(xmask), "index out of bounds: 0 <= tmp31 < 13") tmp33 = tl.load(in_ptr4 + (x0 + (4*tmp31)), xmask) tmp34 = tmp25 + tmp33 tmp35 = 0.0 tmp36 = tmp34 + tmp35 tl.store(out_ptr0 + (x4), tmp36, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (24, 4), (4, 1)) assert_size_stride(arg2_1, (7, 4), (4, 1)) assert_size_stride(arg3_1, (32, 4), (4, 1)) assert_size_stride(arg4_1, (13, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [embedding, embedding_1, add, embedding_2, add_1, embedding_3, add_2, add_3], Original ATen: [aten.embedding, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_embedding_0.run(arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((24, 4), (4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((7, 4), (4, 1), device='cuda:0', dtype=torch.float32) arg3_1 = rand_strided((32, 4), (4, 1), device='cuda:0', dtype=torch.float32) arg4_1 = rand_strided((13, 4), (4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn class FixedEmbedding(nn.Module): def __init__(self, c_in, d_model): super(FixedEmbedding, self).__init__() w = torch.zeros(c_in, d_model).float() w.require_grad = False position = torch.arange(0, c_in).float().unsqueeze(1) div_term = (torch.arange(0, d_model, 2).float() * -(math.log( 10000.0) / d_model)).exp() w[:, 0::2] = torch.sin(position * div_term) w[:, 1::2] = torch.cos(position * div_term) self.emb = nn.Embedding(c_in, d_model) self.emb.weight = nn.Parameter(w, requires_grad=False) def forward(self, x): return self.emb(x).detach() class TemporalEmbedding(nn.Module): def __init__(self, d_model, embed_type='fixed', freq='h'): super(TemporalEmbedding, self).__init__() minute_size = 4 hour_size = 24 weekday_size = 7 day_size = 32 month_size = 13 Embed = FixedEmbedding if embed_type == 'fixed' else nn.Embedding if freq == 't': self.minute_embed = Embed(minute_size, d_model) self.hour_embed = Embed(hour_size, d_model) self.weekday_embed = Embed(weekday_size, d_model) self.day_embed = Embed(day_size, d_model) self.month_embed = Embed(month_size, d_model) def forward(self, x): x = x.long() minute_x = self.minute_embed(x[:, :, 4]) if hasattr(self, 'minute_embed') else 0.0 hour_x = self.hour_embed(x[:, :, 3]) weekday_x = self.weekday_embed(x[:, :, 2]) day_x = self.day_embed(x[:, :, 1]) month_x = self.month_embed(x[:, :, 0]) return hour_x + weekday_x + day_x + month_x + minute_x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'d_model': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_embedding_0(in_ptr0, in_ptr1, in_ptr2, in_ptr3, in_ptr4, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 4 x2 = xindex // 16 x0 = xindex % 4 x4 = xindex tmp0 = tl.load(in_ptr0 + (12 + x1 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp8 = tl.load(in_ptr0 + (8 + x1 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp17 = tl.load(in_ptr0 + (4 + x1 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp26 = tl.load(in_ptr0 + (x1 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp1 = tmp0.to(tl.int64) tmp2 = tl.full([XBLOCK], 24, tl.int32) tmp3 = tmp1 + tmp2 tmp4 = tmp1 < 0 tmp5 = tl.where(tmp4, tmp3, tmp1) tl.device_assert((0 <= tmp5) & (tmp5 < 24) | ~xmask, 'index out of bounds: 0 <= tmp5 < 24') tmp7 = tl.load(in_ptr1 + (x0 + 4 * tmp5), xmask) tmp9 = tmp8.to(tl.int64) tmp10 = tl.full([XBLOCK], 7, tl.int32) tmp11 = tmp9 + tmp10 tmp12 = tmp9 < 0 tmp13 = tl.where(tmp12, tmp11, tmp9) tl.device_assert((0 <= tmp13) & (tmp13 < 7) | ~xmask, 'index out of bounds: 0 <= tmp13 < 7') tmp15 = tl.load(in_ptr2 + (x0 + 4 * tmp13), xmask) tmp16 = tmp7 + tmp15 tmp18 = tmp17.to(tl.int64) tmp19 = tl.full([XBLOCK], 32, tl.int32) tmp20 = tmp18 + tmp19 tmp21 = tmp18 < 0 tmp22 = tl.where(tmp21, tmp20, tmp18) tl.device_assert((0 <= tmp22) & (tmp22 < 32) | ~xmask, 'index out of bounds: 0 <= tmp22 < 32') tmp24 = tl.load(in_ptr3 + (x0 + 4 * tmp22), xmask) tmp25 = tmp16 + tmp24 tmp27 = tmp26.to(tl.int64) tmp28 = tl.full([XBLOCK], 13, tl.int32) tmp29 = tmp27 + tmp28 tmp30 = tmp27 < 0 tmp31 = tl.where(tmp30, tmp29, tmp27) tl.device_assert((0 <= tmp31) & (tmp31 < 13) | ~xmask, 'index out of bounds: 0 <= tmp31 < 13') tmp33 = tl.load(in_ptr4 + (x0 + 4 * tmp31), xmask) tmp34 = tmp25 + tmp33 tmp35 = 0.0 tmp36 = tmp34 + tmp35 tl.store(out_ptr0 + x4, tmp36, xmask) def call(args): arg0_1, arg1_1, arg2_1, arg3_1, arg4_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (24, 4), (4, 1)) assert_size_stride(arg2_1, (7, 4), (4, 1)) assert_size_stride(arg3_1, (32, 4), (4, 1)) assert_size_stride(arg4_1, (13, 4), (4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_embedding_0[grid(256)](arg0_1, arg1_1, arg2_1, arg3_1, arg4_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 del arg1_1 del arg2_1 del arg3_1 del arg4_1 return buf0, class FixedEmbedding(nn.Module): def __init__(self, c_in, d_model): super(FixedEmbedding, self).__init__() w = torch.zeros(c_in, d_model).float() w.require_grad = False position = torch.arange(0, c_in).float().unsqueeze(1) div_term = (torch.arange(0, d_model, 2).float() * -(math.log( 10000.0) / d_model)).exp() w[:, 0::2] = torch.sin(position * div_term) w[:, 1::2] = torch.cos(position * div_term) self.emb = nn.Embedding(c_in, d_model) self.emb.weight = nn.Parameter(w, requires_grad=False) def forward(self, x): return self.emb(x).detach() class TemporalEmbeddingNew(nn.Module): def __init__(self, d_model, embed_type='fixed', freq='h'): super(TemporalEmbeddingNew, self).__init__() minute_size = 4 hour_size = 24 weekday_size = 7 day_size = 32 month_size = 13 Embed = FixedEmbedding if embed_type == 'fixed' else nn.Embedding if freq == 't': self.minute_embed = Embed(minute_size, d_model) self.hour_embed = Embed(hour_size, d_model) self.weekday_embed = Embed(weekday_size, d_model) self.day_embed = Embed(day_size, d_model) self.month_embed = Embed(month_size, d_model) def forward(self, input_0): arg1_1 = self.hour_embed.emb.weight arg2_1 = self.weekday_embed.emb.weight arg3_1 = self.day_embed.emb.weight arg4_1 = self.month_embed.emb.weight arg0_1 = input_0 output = call([arg0_1, arg1_1, arg2_1, arg3_1, arg4_1]) return output[0]
Ares-Long/Time
TemporalEmbedding
false
11,294
[ "Apache-2.0" ]
0
7827463613f45baea82de189a890afb7394e73e4
https://github.com/Ares-Long/Time/tree/7827463613f45baea82de189a890afb7394e73e4
cell
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/47/c47kgnmzb4xys3ygx3ihx2nam6zjmvjlvjhb5e7ewbfprulwexea.py # Topologically Sorted Source Nodes: [add, a], Original ATen: [aten.add, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # a => relu # add => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %primals_3), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%add,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_add_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_add_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/yf/cyfsj6hjbhwftyozymcabi43u2orv2genue6ke7jwxotpnz7mmer.py # Topologically Sorted Source Nodes: [add_1, a_1], Original ATen: [aten.add, aten.log_sigmoid_forward] # Source node to ATen node mapping: # a_1 => abs_1, exp, full_default, log1p, minimum, neg, sub # add_1 => add_1 # Graph fragment: # %add_1 : [num_users=2] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_3, %primals_5), kwargs = {}) # %full_default : [num_users=1] = call_function[target=torch.ops.aten.full.default](args = ([], 0), kwargs = {dtype: torch.float32, layout: torch.strided, device: cuda:0, pin_memory: False}) # %minimum : [num_users=1] = call_function[target=torch.ops.aten.minimum.default](args = (%full_default, %add_1), kwargs = {}) # %abs_1 : [num_users=1] = call_function[target=torch.ops.aten.abs.default](args = (%add_1,), kwargs = {}) # %neg : [num_users=1] = call_function[target=torch.ops.aten.neg.default](args = (%abs_1,), kwargs = {}) # %exp : [num_users=1] = call_function[target=torch.ops.aten.exp.default](args = (%neg,), kwargs = {}) # %log1p : [num_users=1] = call_function[target=torch.ops.aten.log1p.default](args = (%exp,), kwargs = {}) # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%minimum, %log1p), kwargs = {}) triton_poi_fused_add_log_sigmoid_forward_1 = async_compile.triton('triton_poi_fused_add_log_sigmoid_forward_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_log_sigmoid_forward_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_log_sigmoid_forward_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.minimum(tmp3, tmp2) tmp5 = tl_math.abs(tmp2) tmp6 = -tmp5 tmp7 = tl_math.exp(tmp6) tmp8 = libdevice.log1p(tmp7) tmp9 = tmp4 - tmp8 tl.store(out_ptr0 + (x2), tmp9, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4, ), (1, )) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), primals_2, out=buf0) del primals_2 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [add, a], Original ATen: [aten.add, aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_add_relu_threshold_backward_0.run(buf1, primals_3, buf4, 256, grid=grid(256), stream=stream0) del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul_1], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4, out=buf2) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [add_1, a_1], Original ATen: [aten.add, aten.log_sigmoid_forward] triton_poi_fused_add_log_sigmoid_forward_1.run(buf2, primals_5, buf3, 256, grid=grid(256), stream=stream0) return (buf3, primals_5, buf2, reinterpret_tensor(buf1, (4, 64), (1, 4), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), buf4, reinterpret_tensor(primals_1, (4, 64), (1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn class cell(nn.Module): def __init__(self, input_sz: 'int', hidden_sz: 'int', output_sz: 'int'): super().__init__() self.weights1 = nn.Parameter(torch.randn(input_sz, hidden_sz) / math.sqrt(input_sz), requires_grad=True) self.bias1 = nn.Parameter(torch.zeros(hidden_sz), requires_grad=True) self.weights2 = nn.Parameter(torch.randn(hidden_sz, output_sz) / math.sqrt(hidden_sz), requires_grad=True) self.bias2 = nn.Parameter(torch.zeros(output_sz), requires_grad=True) def forward(self, Input): a = nn.ReLU()(Input.clone() @ self.weights1 + self.bias1) a = nn.LogSigmoid()(a @ self.weights2 + self.bias2) return a def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_sz': 4, 'hidden_sz': 4, 'output_sz': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) @triton.jit def triton_poi_fused_add_log_sigmoid_forward_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = 0.0 tmp4 = triton_helpers.minimum(tmp3, tmp2) tmp5 = tl_math.abs(tmp2) tmp6 = -tmp5 tmp7 = tl_math.exp(tmp6) tmp8 = libdevice.log1p(tmp7) tmp9 = tmp4 - tmp8 tl.store(out_ptr0 + x2, tmp9, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, 4), (4, 1)) assert_size_stride(primals_3, (4,), (1,)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_1, (64, 4), (4, 1), 0), primals_2, out=buf0) del primals_2 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 buf4 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_add_relu_threshold_backward_0[grid(256)](buf1, primals_3, buf4, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_3 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), primals_4, out=buf2) buf3 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_log_sigmoid_forward_1[grid(256)](buf2, primals_5, buf3, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf3, primals_5, buf2, reinterpret_tensor(buf1, (4, 64), (1, 4), 0 ), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0 ), buf4, reinterpret_tensor(primals_1, (4, 64), (1, 4), 0) class cellNew(nn.Module): def __init__(self, input_sz: 'int', hidden_sz: 'int', output_sz: 'int'): super().__init__() self.weights1 = nn.Parameter(torch.randn(input_sz, hidden_sz) / math.sqrt(input_sz), requires_grad=True) self.bias1 = nn.Parameter(torch.zeros(hidden_sz), requires_grad=True) self.weights2 = nn.Parameter(torch.randn(hidden_sz, output_sz) / math.sqrt(hidden_sz), requires_grad=True) self.bias2 = nn.Parameter(torch.zeros(output_sz), requires_grad=True) def forward(self, input_0): primals_2 = self.weights1 primals_3 = self.bias1 primals_4 = self.weights2 primals_5 = self.bias2 primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
Cemu0/Network-of-Neural-Network
cell
false
11,295
[ "MIT" ]
0
6a4a097a960fbbec6ea0c5946804666b27c2da0f
https://github.com/Cemu0/Network-of-Neural-Network/tree/6a4a097a960fbbec6ea0c5946804666b27c2da0f
Discriminator
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/4s/c4szhh35rbtilv4zlnanegnq2hofrkvv7yac3nsynw6qjxjbg3tg.py # Topologically Sorted Source Nodes: [bilinear], Original ATen: [aten.clone] # Source node to ATen node mapping: # bilinear => clone # Graph fragment: # %clone : [num_users=1] = call_function[target=torch.ops.aten.clone.default](args = (%expand,), kwargs = {memory_format: torch.contiguous_format}) triton_poi_fused_clone_0 = async_compile.triton('triton_poi_fused_clone_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_clone_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = (xindex // 4) % 4 x3 = xindex tmp0 = tl.load(in_ptr0 + (x1), xmask, eviction_policy='evict_last') tl.store(out_ptr0 + (x3), tmp0, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/3a/c3a7jkhbifqenis2g23pmqmidmnwe5he2pwgbrunksukoz44fhmm.py # Topologically Sorted Source Nodes: [logits], Original ATen: [aten.cat] # Source node to ATen node mapping: # logits => cat # Graph fragment: # %cat : [num_users=1] = call_function[target=torch.ops.aten.cat.default](args = ([%squeeze, %squeeze_1], 1), kwargs = {}) triton_poi_fused_cat_1 = async_compile.triton('triton_poi_fused_cat_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[32], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 4), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_cat_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 3, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = (xindex // 8) x2 = xindex tmp6 = tl.load(in_ptr1 + (0)) tmp7 = tl.broadcast_to(tmp6, [XBLOCK]) tmp0 = x0 tmp1 = tl.full([1], 0, tl.int64) tmp2 = tmp0 >= tmp1 tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + ((4*x1) + x0), tmp4 & xmask, eviction_policy='evict_last', other=0.0) tmp8 = tmp5 + tmp7 tmp9 = tl.full(tmp8.shape, 0.0, tmp8.dtype) tmp10 = tl.where(tmp4, tmp8, tmp9) tmp11 = tmp0 >= tmp3 tmp12 = tl.full([1], 8, tl.int64) tmp13 = tmp0 < tmp12 tmp14 = tl.load(in_ptr2 + ((4*x1) + ((-4) + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tmp14 + tmp7 tmp16 = tl.full(tmp15.shape, 0.0, tmp15.dtype) tmp17 = tl.where(tmp11, tmp15, tmp16) tmp18 = tl.where(tmp4, tmp10, tmp17) tl.store(out_ptr0 + (x2), tmp18, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, ), (1, )) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (1, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (1, ), (1, )) assert_size_stride(primals_5, (4, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [bilinear], Original ATen: [aten.clone] stream0 = get_raw_stream(0) triton_poi_fused_clone_0.run(primals_1, buf0, 64, grid=grid(64), stream=stream0) del primals_1 # Topologically Sorted Source Nodes: [bilinear], Original ATen: [aten._trilinear] buf1 = torch.ops.aten._trilinear.default(reinterpret_tensor(primals_2, (16, 4), (4, 1), 0), primals_3, reinterpret_tensor(buf0, (16, 4), (4, 1), 0), [1, 3], [0], [1, 2], [2, 3]) buf2 = buf1 del buf1 # Topologically Sorted Source Nodes: [bilinear_1], Original ATen: [aten._trilinear] buf3 = torch.ops.aten._trilinear.default(reinterpret_tensor(primals_5, (16, 4), (4, 1), 0), primals_3, reinterpret_tensor(buf0, (16, 4), (4, 1), 0), [1, 3], [0], [1, 2], [2, 3]) del primals_3 buf4 = buf3 del buf3 buf5 = empty_strided_cuda((4, 8), (8, 1), torch.float32) # Topologically Sorted Source Nodes: [logits], Original ATen: [aten.cat] triton_poi_fused_cat_1.run(buf2, primals_4, buf4, buf5, 32, grid=grid(32), stream=stream0) del buf2 del buf4 del primals_4 return (buf5, reinterpret_tensor(primals_2, (16, 4), (4, 1), 0), reinterpret_tensor(buf0, (16, 4), (4, 1), 0), reinterpret_tensor(primals_5, (16, 4), (4, 1), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Discriminator(nn.Module): def __init__(self, n_h): super(Discriminator, self).__init__() self.f_k = nn.Bilinear(n_h, n_h, 1) for m in self.modules(): self.weights_init(m) def weights_init(self, m): if isinstance(m, nn.Bilinear): torch.nn.init.xavier_uniform_(m.weight.data) if m.bias is not None: m.bias.data.fill_(0.0) def forward(self, c, h_pl, h_mi, s_bias1=None, s_bias2=None): c_x = torch.unsqueeze(c, 1) c_x = c_x.expand_as(h_pl) sc_1 = torch.squeeze(self.f_k(h_pl, c_x), 2) sc_2 = torch.squeeze(self.f_k(h_mi, c_x), 2) if s_bias1 is not None: sc_1 += s_bias1 if s_bias2 is not None: sc_2 += s_bias2 logits = torch.cat((sc_1, sc_2), 1) return logits def get_inputs(): return [torch.rand([4]), torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {'n_h': 4}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_clone_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x1 = xindex // 4 % 4 x3 = xindex tmp0 = tl.load(in_ptr0 + x1, xmask, eviction_policy='evict_last') tl.store(out_ptr0 + x3, tmp0, xmask) @triton.jit def triton_poi_fused_cat_1(in_ptr0, in_ptr1, in_ptr2, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 32 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 8 x1 = xindex // 8 x2 = xindex tmp6 = tl.load(in_ptr1 + 0) tmp7 = tl.broadcast_to(tmp6, [XBLOCK]) tmp0 = x0 tl.full([1], 0, tl.int64) tmp3 = tl.full([1], 4, tl.int64) tmp4 = tmp0 < tmp3 tmp5 = tl.load(in_ptr0 + (4 * x1 + x0), tmp4 & xmask, eviction_policy= 'evict_last', other=0.0) tmp8 = tmp5 + tmp7 tmp9 = tl.full(tmp8.shape, 0.0, tmp8.dtype) tmp10 = tl.where(tmp4, tmp8, tmp9) tmp11 = tmp0 >= tmp3 tl.full([1], 8, tl.int64) tmp14 = tl.load(in_ptr2 + (4 * x1 + (-4 + x0)), tmp11 & xmask, eviction_policy='evict_last', other=0.0) tmp15 = tmp14 + tmp7 tmp16 = tl.full(tmp15.shape, 0.0, tmp15.dtype) tmp17 = tl.where(tmp11, tmp15, tmp16) tmp18 = tl.where(tmp4, tmp10, tmp17) tl.store(out_ptr0 + x2, tmp18, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4,), (1,)) assert_size_stride(primals_2, (4, 4, 4), (16, 4, 1)) assert_size_stride(primals_3, (1, 4, 4), (16, 4, 1)) assert_size_stride(primals_4, (1,), (1,)) assert_size_stride(primals_5, (4, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_clone_0[grid(64)](primals_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del primals_1 buf1 = torch.ops.aten._trilinear.default(reinterpret_tensor( primals_2, (16, 4), (4, 1), 0), primals_3, reinterpret_tensor( buf0, (16, 4), (4, 1), 0), [1, 3], [0], [1, 2], [2, 3]) buf2 = buf1 del buf1 buf3 = torch.ops.aten._trilinear.default(reinterpret_tensor( primals_5, (16, 4), (4, 1), 0), primals_3, reinterpret_tensor( buf0, (16, 4), (4, 1), 0), [1, 3], [0], [1, 2], [2, 3]) del primals_3 buf4 = buf3 del buf3 buf5 = empty_strided_cuda((4, 8), (8, 1), torch.float32) triton_poi_fused_cat_1[grid(32)](buf2, primals_4, buf4, buf5, 32, XBLOCK=32, num_warps=1, num_stages=1) del buf2 del buf4 del primals_4 return buf5, reinterpret_tensor(primals_2, (16, 4), (4, 1), 0 ), reinterpret_tensor(buf0, (16, 4), (4, 1), 0), reinterpret_tensor( primals_5, (16, 4), (4, 1), 0) class DiscriminatorNew(nn.Module): def __init__(self, n_h): super(DiscriminatorNew, self).__init__() self.f_k = nn.Bilinear(n_h, n_h, 1) for m in self.modules(): self.weights_init(m) def weights_init(self, m): if isinstance(m, nn.Bilinear): torch.nn.init.xavier_uniform_(m.weight.data) if m.bias is not None: m.bias.data.fill_(0.0) def forward(self, input_0, input_1, input_2): primals_3 = self.f_k.weight primals_4 = self.f_k.bias primals_1 = input_0 primals_2 = input_1 primals_5 = input_2 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
ChenChengKuan/DGI
Discriminator
false
11,296
[ "MIT" ]
0
432bf78418b8dd52648c9cac45e8841bee4c5032
https://github.com/ChenChengKuan/DGI/tree/432bf78418b8dd52648c9cac45e8841bee4c5032
Linear
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/v6/cv6odvhmmcyvquog4eo62pdliew53orxzwe2wfzampr64jy3ppa7.py # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] # Source node to ATen node mapping: # add => add # Graph fragment: # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%view_1, %primals_3), kwargs = {}) triton_poi_fused_add_0 = async_compile.triton('triton_poi_fused_add_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [matmul], Original ATen: [aten.mm] extern_kernels.mm(reinterpret_tensor(primals_2, (64, 4), (4, 1), 0), primals_1, out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [add], Original ATen: [aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_0.run(buf1, primals_3, 256, grid=grid(256), stream=stream0) del primals_3 return (buf1, reinterpret_tensor(primals_2, (4, 64), (1, 4), 0), ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch class Linear(torch.nn.Module): def __init__(self, in_size, out_size): super().__init__() self.weight = torch.nn.Parameter(2 * (torch.rand(in_size, out_size) - 0.5)) self.bias = torch.nn.Parameter(2 * (torch.rand(out_size) - 0.5)) def forward(self, x): return x @ self.weight + self.bias def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_size': 4, 'out_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_0(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_3, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_2, (64, 4), (4, 1), 0), primals_1, out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 get_raw_stream(0) triton_poi_fused_add_0[grid(256)](buf1, primals_3, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_3 return buf1, reinterpret_tensor(primals_2, (4, 64), (1, 4), 0) class LinearNew(torch.nn.Module): def __init__(self, in_size, out_size): super().__init__() self.weight = torch.nn.Parameter(2 * (torch.rand(in_size, out_size) - 0.5)) self.bias = torch.nn.Parameter(2 * (torch.rand(out_size) - 0.5)) def forward(self, input_0): primals_1 = self.weight primals_3 = self.bias primals_2 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Cesarscc/MiniTorch_Clase
Linear
false
11,297
[ "MIT" ]
0
1f159bc86f35dce170068b37dd47940ea4a4ba04
https://github.com/Cesarscc/MiniTorch_Clase/tree/1f159bc86f35dce170068b37dd47940ea4a4ba04
BertGELU
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/6s/c6shmuvjmq6zc4ifvdsynorwri47ra63qxa7jg3e7p6lw6xlqj5q.py # Topologically Sorted Source Nodes: [mul, truediv, erf, add, mul_1], Original ATen: [aten.mul, aten.div, aten.erf, aten.add] # Source node to ATen node mapping: # add => add # erf => erf # mul => mul # mul_1 => mul_1 # truediv => div # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 0.5), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%arg0_1, 1.4142135623730951), kwargs = {}) # %erf : [num_users=1] = call_function[target=torch.ops.aten.erf.default](args = (%div,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%erf, 1.0), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %add), kwargs = {}) triton_poi_fused_add_div_erf_mul_0 = async_compile.triton('triton_poi_fused_add_div_erf_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_erf_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_erf_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865475 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + (x0), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, truediv, erf, add, mul_1], Original ATen: [aten.mul, aten.div, aten.erf, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_div_erf_mul_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch from torch import nn class BertGELU(nn.Module): """Bert uses GELU as the activation function for the position-wise network. """ def forward(self, x): return x * 0.5 * (1.0 + torch.erf(x / math.sqrt(2.0))) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_div_erf_mul_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = 0.7071067811865475 tmp4 = tmp0 * tmp3 tmp5 = libdevice.erf(tmp4) tmp6 = 1.0 tmp7 = tmp5 + tmp6 tmp8 = tmp2 * tmp7 tl.store(out_ptr0 + x0, tmp8, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_erf_mul_0[grid(256)](arg0_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del arg0_1 return buf0, class BertGELUNew(nn.Module): """Bert uses GELU as the activation function for the position-wise network. """ def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Codle/texar-pytorch
BertGELU
false
11,298
[ "Apache-2.0" ]
0
d63556e7a8f48076c396467314a771d56552d595
https://github.com/Codle/texar-pytorch/tree/d63556e7a8f48076c396467314a771d56552d595
DotProductSimilarity
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/te/ctez6v53ld4k45ykiwq5ndlpz3jrny2atstdxadog7gcnit65abw.py # Topologically Sorted Source Nodes: [mul, result], Original ATen: [aten.mul, aten.sum] # Source node to ATen node mapping: # mul => mul # result => sum_1 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [-1]), kwargs = {}) triton_poi_fused_mul_sum_0 = async_compile.triton('triton_poi_fused_mul_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (4*x0), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (4*x0), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*x0)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + (4*x0)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr1 + (3 + (4*x0)), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 * tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 * tmp12 tmp14 = tmp10 + tmp13 tl.store(out_ptr0 + (x0), tmp14, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, result], Original ATen: [aten.mul, aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_mul_sum_0.run(arg0_1, arg1_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn class SimilarityFunction(nn.Module): """ A ``SimilarityFunction`` takes a pair of tensors with the same shape, and computes a similarity function on the vectors in the last dimension. For example, the tensors might both have shape `(batch_size, sentence_length, embedding_dim)`, and we will compute some function of the two vectors of length `embedding_dim` for each position `(batch_size, sentence_length)`, returning a tensor of shape `(batch_size, sentence_length)`. The similarity function could be as simple as a dot product, or it could be a more complex, parameterized function. """ default_implementation = 'dot_product' def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: """ Takes two tensors of the same shape, such as ``(batch_size, length_1, length_2, embedding_dim)``. Computes a (possibly parameterized) similarity on the final dimension and returns a tensor with one less dimension, such as ``(batch_size, length_1, length_2)``. """ raise NotImplementedError class DotProductSimilarity(SimilarityFunction): """ This similarity function simply computes the dot product between each pair of vectors, with an optional scaling to reduce the variance of the output elements. Parameters ---------- scale_output : ``bool``, optional If ``True``, we will scale the output by ``math.sqrt(tensor.size(-1))``, to reduce the variance in the result. """ def __init__(self, scale_output: 'bool'=False) ->None: super(DotProductSimilarity, self).__init__() self._scale_output = scale_output def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: result = (tensor_1 * tensor_2).sum(dim=-1) if self._scale_output: result *= math.sqrt(tensor_1.size(-1)) return result def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + 4 * x0, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + 4 * x0, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x0), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * x0), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (2 + 4 * x0), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + 4 * x0), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp12 = tl.load(in_ptr1 + (3 + 4 * x0), xmask, eviction_policy='evict_last' ) tmp2 = tmp0 * tmp1 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 * tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 * tmp12 tmp14 = tmp10 + tmp13 tl.store(out_ptr0 + x0, tmp14, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_sum_0[grid(64)](arg0_1, arg1_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 del arg1_1 return buf0, class SimilarityFunction(nn.Module): """ A ``SimilarityFunction`` takes a pair of tensors with the same shape, and computes a similarity function on the vectors in the last dimension. For example, the tensors might both have shape `(batch_size, sentence_length, embedding_dim)`, and we will compute some function of the two vectors of length `embedding_dim` for each position `(batch_size, sentence_length)`, returning a tensor of shape `(batch_size, sentence_length)`. The similarity function could be as simple as a dot product, or it could be a more complex, parameterized function. """ default_implementation = 'dot_product' def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: """ Takes two tensors of the same shape, such as ``(batch_size, length_1, length_2, embedding_dim)``. Computes a (possibly parameterized) similarity on the final dimension and returns a tensor with one less dimension, such as ``(batch_size, length_1, length_2)``. """ raise NotImplementedError class DotProductSimilarityNew(SimilarityFunction): """ This similarity function simply computes the dot product between each pair of vectors, with an optional scaling to reduce the variance of the output elements. Parameters ---------- scale_output : ``bool``, optional If ``True``, we will scale the output by ``math.sqrt(tensor.size(-1))``, to reduce the variance in the result. """ def __init__(self, scale_output: 'bool'=False) ->None: super(DotProductSimilarityNew, self).__init__() self._scale_output = scale_output def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Aunsiels/qagnn
DotProductSimilarity
false
11,299
[ "MIT" ]
0
d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
https://github.com/Aunsiels/qagnn/tree/d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
EncoderImagePrecomp
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/5x/c5xuny2q3w4rfyqbc6h5bf6h7phwdd6eg4xkubmoahyiibq64bkx.py # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, matrix], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] # Source node to ATen node mapping: # matrix => div # norm => add # pow_1 => pow_1 # sqrt => sqrt # sum_1 => sum_1 # Graph fragment: # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%view_1, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [-1], True), kwargs = {}) # %sqrt : [num_users=1] = call_function[target=torch.ops.aten.sqrt.default](args = (%sum_1,), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sqrt, 1e-08), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%view_1, %add), kwargs = {}) triton_poi_fused_add_div_pow_sqrt_sum_0 = async_compile.triton('triton_poi_fused_add_div_pow_sqrt_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_div_pow_sqrt_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 5, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 4) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (4*x1), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x1)), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + (4*x1)), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + (4*x1)), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-08 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + (x2), tmp15, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [features], Original ATen: [aten.addmm] extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [pow_1, sum_1, sqrt, norm, matrix], Original ATen: [aten.pow, aten.sum, aten.sqrt, aten.add, aten.div] stream0 = get_raw_stream(0) triton_poi_fused_add_div_pow_sqrt_sum_0.run(buf0, buf1, 256, grid=grid(256), stream=stream0) return (buf1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn as nn import torch.nn.init def l2norm(matrix, dim, eps=1e-08): norm = torch.pow(matrix, 2).sum(dim=dim, keepdim=True).sqrt() + eps matrix = matrix / norm return matrix class EncoderImagePrecomp(nn.Module): def __init__(self, img_size, embed_size, use_abs=False, img_norm=True): super(EncoderImagePrecomp, self).__init__() self.use_abs = use_abs self.img_norm = img_norm self.fc = nn.Linear(img_size, embed_size) self.init_weights() def init_weights(self): """ Xavier initialization for the fully connected layer """ r = np.sqrt(6.0) / np.sqrt(self.fc.in_features + self.fc.out_features) self.fc.weight.data.uniform_(-r, r) self.fc.bias.data.fill_(0) def forward(self, img_features): """ :param img_features: (batch_size, num_regions, row_img_features) :return: features: (batch_size, num_regions, img_features) """ features = self.fc(img_features) if self.img_norm: features = l2norm(features, -1) if self.use_abs: features = torch.abs(features) return features def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'img_size': 4, 'embed_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import numpy as np import torch.nn as nn import torch.nn.init assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_add_div_pow_sqrt_sum_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 4 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + 4 * x1, xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x1), xmask, eviction_policy='evict_last') tmp6 = tl.load(in_ptr0 + (2 + 4 * x1), xmask, eviction_policy='evict_last') tmp9 = tl.load(in_ptr0 + (3 + 4 * x1), xmask, eviction_policy='evict_last') tmp2 = tmp1 * tmp1 tmp4 = tmp3 * tmp3 tmp5 = tmp2 + tmp4 tmp7 = tmp6 * tmp6 tmp8 = tmp5 + tmp7 tmp10 = tmp9 * tmp9 tmp11 = tmp8 + tmp10 tmp12 = libdevice.sqrt(tmp11) tmp13 = 1e-08 tmp14 = tmp12 + tmp13 tmp15 = tmp0 / tmp14 tl.store(out_ptr0 + x2, tmp15, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_2, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0 ), alpha=1, beta=1, out=buf0) del primals_1 del primals_2 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_div_pow_sqrt_sum_0[grid(256)](buf0, buf1, 256, XBLOCK=256, num_warps=4, num_stages=1) return buf1, reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), buf0 def l2norm(matrix, dim, eps=1e-08): norm = torch.pow(matrix, 2).sum(dim=dim, keepdim=True).sqrt() + eps matrix = matrix / norm return matrix class EncoderImagePrecompNew(nn.Module): def __init__(self, img_size, embed_size, use_abs=False, img_norm=True): super(EncoderImagePrecompNew, self).__init__() self.use_abs = use_abs self.img_norm = img_norm self.fc = nn.Linear(img_size, embed_size) self.init_weights() def init_weights(self): """ Xavier initialization for the fully connected layer """ r = np.sqrt(6.0) / np.sqrt(self.fc.in_features + self.fc.out_features) self.fc.weight.data.uniform_(-r, r) self.fc.bias.data.fill_(0) def forward(self, input_0): primals_1 = self.fc.weight primals_2 = self.fc.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Closer1/CARRN
EncoderImagePrecomp
false
11,300
[ "MIT" ]
0
b64588f1f4f6b6f51939ff125e06268d4c294679
https://github.com/Closer1/CARRN/tree/b64588f1f4f6b6f51939ff125e06268d4c294679
SEModule
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/l3/cl35tzbhrd24dhunkbb6gjs54aklpyr46oikqhoylcgmkcmhujil.py # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] # Source node to ATen node mapping: # x => mean # Graph fragment: # %mean : [num_users=2] = call_function[target=torch.ops.aten.mean.dim](args = (%primals_1, [-1, -2], True), kwargs = {}) triton_per_fused_mean_0 = async_compile.triton('triton_per_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[16, 16], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_mean_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK : tl.constexpr): xnumel = 16 rnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] roffset = 0 rmask = tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + (16*x0)), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + (x0), tmp6, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ad/cadccuyhl7stcp3nyqfgohiwbiv5ckfzxsye27ithwsill6dvmh4.py # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] # Source node to ATen node mapping: # x_1 => convolution # x_2 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%mean, %primals_2, %primals_3, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) triton_poi_fused_convolution_relu_1 = async_compile.triton('triton_poi_fused_convolution_relu_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[4], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_1', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr0 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tl.store(in_out_ptr0 + (x0), tmp5, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/k2/ck2mamkqpmuzem4n3p4ij6fmfpy2bcbblg6sx6wwslgqwuqq5ifh.py # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] # Source node to ATen node mapping: # x_3 => convolution_1 # Graph fragment: # %convolution_1 : [num_users=2] = call_function[target=torch.ops.aten.convolution.default](args = (%relu, %primals_4, %primals_5, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) triton_poi_fused_convolution_2 = async_compile.triton('triton_poi_fused_convolution_2', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_2', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + (x2), tmp2, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/lp/clprvnh5p6cmadxtwzizwydrpjlwxohxixbw4ntucp6srbu6gtis.py # Topologically Sorted Source Nodes: [x_4, mul], Original ATen: [aten.sigmoid, aten.mul] # Source node to ATen node mapping: # mul => mul # x_4 => sigmoid # Graph fragment: # %sigmoid : [num_users=1] = call_function[target=torch.ops.aten.sigmoid.default](args = (%convolution_1,), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_1, %sigmoid), kwargs = {}) triton_poi_fused_mul_sigmoid_3 = async_compile.triton('triton_poi_fused_mul_sigmoid_3', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sigmoid_3', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sigmoid_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = (xindex // 16) tmp0 = tl.load(in_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr1 + (x1), xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x2), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (1, ), (1, )) assert_size_stride(primals_4, (4, 1, 1, 1), (1, 1, 1, 1)) assert_size_stride(primals_5, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 16, 16), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 4, 1, 1), (4, 1, 1, 1), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [x], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_per_fused_mean_0.run(buf1, primals_1, 16, 16, grid=grid(16), stream=stream0) # Topologically Sorted Source Nodes: [x_1], Original ATen: [aten.convolution] buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 1, 1), (1, 1, 1, 1)) buf3 = buf2; del buf2 # reuse # Topologically Sorted Source Nodes: [x_1, x_2], Original ATen: [aten.convolution, aten.relu] triton_poi_fused_convolution_relu_1.run(buf3, primals_3, 4, grid=grid(4), stream=stream0) del primals_3 # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 1, 1), (4, 1, 1, 1)) buf5 = buf4; del buf4 # reuse # Topologically Sorted Source Nodes: [x_3], Original ATen: [aten.convolution] triton_poi_fused_convolution_2.run(buf5, primals_5, 16, grid=grid(16), stream=stream0) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [x_4, mul], Original ATen: [aten.sigmoid, aten.mul] triton_poi_fused_mul_sigmoid_3.run(primals_1, buf5, buf6, 256, grid=grid(256), stream=stream0) return (buf6, primals_1, primals_2, primals_4, buf1, buf3, buf5, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((1, 4, 1, 1), (4, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((1, ), (1, ), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 1, 1, 1), (1, 1, 1, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class SEModule(nn.Module): def __init__(self, channels, reduction): super(SEModule, self).__init__() self.avg_pool = nn.AdaptiveAvgPool2d(1) self.fc1 = nn.Conv2d(channels, channels // reduction, kernel_size=1, padding=0) self.relu = nn.ReLU(inplace=True) self.fc2 = nn.Conv2d(channels // reduction, channels, kernel_size=1, padding=0) self.sigmoid = nn.Sigmoid() def forward(self, x): module_input = x x = self.avg_pool(x) x = self.fc1(x) x = self.relu(x) x = self.fc2(x) x = self.sigmoid(x) return module_input * x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'channels': 4, 'reduction': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_mean_0(in_out_ptr0, in_ptr0, xnumel, rnumel, XBLOCK: tl.constexpr): xnumel = 16 RBLOCK: tl.constexpr = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:, None] xmask = xindex < xnumel rindex = tl.arange(0, RBLOCK)[None, :] tl.full([XBLOCK, RBLOCK], True, tl.int1) r1 = rindex x0 = xindex tmp0 = tl.load(in_ptr0 + (r1 + 16 * x0), xmask, other=0.0) tmp1 = tl.broadcast_to(tmp0, [XBLOCK, RBLOCK]) tmp3 = tl.where(xmask, tmp1, 0) tmp4 = tl.sum(tmp3, 1)[:, None] tmp5 = 16.0 tmp6 = tmp4 / tmp5 tl.debug_barrier() tl.store(in_out_ptr0 + x0, tmp6, xmask) @triton.jit def triton_poi_fused_convolution_relu_1(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 4 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_out_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr0 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 + tmp2 tmp4 = tl.full([1], 0, tl.int32) tmp5 = triton_helpers.maximum(tmp4, tmp3) tl.store(in_out_ptr0 + x0, tmp5, xmask) @triton.jit def triton_poi_fused_convolution_2(in_out_ptr0, in_ptr0, xnumel, XBLOCK: tl .constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tl.store(in_out_ptr0 + x2, tmp2, xmask) @triton.jit def triton_poi_fused_mul_sigmoid_3(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x1 = xindex // 16 tmp0 = tl.load(in_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr1 + x1, xmask, eviction_policy='evict_last') tmp2 = tl.sigmoid(tmp1) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x2, tmp3, xmask) def call(args): primals_1, primals_2, primals_3, primals_4, primals_5 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (1, 4, 1, 1), (4, 1, 1, 1)) assert_size_stride(primals_3, (1,), (1,)) assert_size_stride(primals_4, (4, 1, 1, 1), (1, 1, 1, 1)) assert_size_stride(primals_5, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 16, 16), torch.float32) buf1 = reinterpret_tensor(buf0, (4, 4, 1, 1), (4, 1, 1, 1), 0) del buf0 get_raw_stream(0) triton_per_fused_mean_0[grid(16)](buf1, primals_1, 16, 16, XBLOCK=8, num_warps=2, num_stages=1) buf2 = extern_kernels.convolution(buf1, primals_2, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf2, (4, 1, 1, 1), (1, 1, 1, 1)) buf3 = buf2 del buf2 triton_poi_fused_convolution_relu_1[grid(4)](buf3, primals_3, 4, XBLOCK=4, num_warps=1, num_stages=1) del primals_3 buf4 = extern_kernels.convolution(buf3, primals_4, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf4, (4, 4, 1, 1), (4, 1, 1, 1)) buf5 = buf4 del buf4 triton_poi_fused_convolution_2[grid(16)](buf5, primals_5, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_5 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_mul_sigmoid_3[grid(256)](primals_1, buf5, buf6, 256, XBLOCK=128, num_warps=4, num_stages=1) return buf6, primals_1, primals_2, primals_4, buf1, buf3, buf5 class SEModuleNew(nn.Module): def __init__(self, channels, reduction): super(SEModuleNew, self).__init__() self.avg_pool = nn.AdaptiveAvgPool2d(1) self.fc1 = nn.Conv2d(channels, channels // reduction, kernel_size=1, padding=0) self.relu = nn.ReLU(inplace=True) self.fc2 = nn.Conv2d(channels // reduction, channels, kernel_size=1, padding=0) self.sigmoid = nn.Sigmoid() def forward(self, input_0): primals_2 = self.fc1.weight primals_3 = self.fc1.bias primals_4 = self.fc2.weight primals_5 = self.fc2.bias primals_1 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5]) return output[0]
ChrisLee63/reid-strong-baseline
SEModule
false
11,301
[ "MIT" ]
0
da755d3812da3c2e6e69920066badaad42f6fa6b
https://github.com/ChrisLee63/reid-strong-baseline/tree/da755d3812da3c2e6e69920066badaad42f6fa6b
AvgReducePool1d
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/jn/cjnv5uptstyk4xaisuiw5kf5lbz3m33meejxhbfbsta5ozps7ijn.py # Topologically Sorted Source Nodes: [mean], Original ATen: [aten.mean] # Source node to ATen node mapping: # mean => mean # Graph fragment: # %mean : [num_users=1] = call_function[target=torch.ops.aten.mean.dim](args = (%arg0_1, [2]), kwargs = {}) triton_poi_fused_mean_0 = async_compile.triton('triton_poi_fused_mean_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mean_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 4, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mean_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = (xindex // 4) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x1)), xmask) tmp1 = tl.load(in_ptr0 + (4 + x0 + (16*x1)), xmask) tmp3 = tl.load(in_ptr0 + (8 + x0 + (16*x1)), xmask) tmp5 = tl.load(in_ptr0 + (12 + x0 + (16*x1)), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + (x2), tmp8, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mean], Original ATen: [aten.mean] stream0 = get_raw_stream(0) triton_poi_fused_mean_0.run(arg0_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch from torch import nn class AvgReducePool1d(nn.Module): """A subclass of :torch_nn:`Module`. Avg Pool layer for 1D inputs. The same as :torch_nn:`AvgPool1d` except that the pooling dimension is entirely reduced (i.e., `pool_size=input_length`). """ def forward(self, input: 'torch.Tensor') ->torch.Tensor: return torch.mean(input, dim=2) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch import nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mean_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 4 x1 = xindex // 4 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x1), xmask) tmp1 = tl.load(in_ptr0 + (4 + x0 + 16 * x1), xmask) tmp3 = tl.load(in_ptr0 + (8 + x0 + 16 * x1), xmask) tmp5 = tl.load(in_ptr0 + (12 + x0 + 16 * x1), xmask) tmp2 = tmp0 + tmp1 tmp4 = tmp2 + tmp3 tmp6 = tmp4 + tmp5 tmp7 = 4.0 tmp8 = tmp6 / tmp7 tl.store(out_ptr0 + x2, tmp8, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mean_0[grid(64)](arg0_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 return buf0, class AvgReducePool1dNew(nn.Module): """A subclass of :torch_nn:`Module`. Avg Pool layer for 1D inputs. The same as :torch_nn:`AvgPool1d` except that the pooling dimension is entirely reduced (i.e., `pool_size=input_length`). """ def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Codle/texar-pytorch
AvgReducePool1d
false
11,302
[ "Apache-2.0" ]
0
d63556e7a8f48076c396467314a771d56552d595
https://github.com/Codle/texar-pytorch/tree/d63556e7a8f48076c396467314a771d56552d595
MatrixAttention
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/mf/cmfgepipblyia5ftdcd5amfjo2qliicwmbf5psnbmt4xd54uiilk.py # Topologically Sorted Source Nodes: [mul, result], Original ATen: [aten.mul, aten.sum] # Source node to ATen node mapping: # mul => mul # result => sum_1 # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%expand, %expand_1), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%mul, [-1]), kwargs = {}) triton_poi_fused_mul_sum_0 = async_compile.triton('triton_poi_fused_mul_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = (xindex // 4) x0 = xindex % 4 x2 = (xindex // 16) x4 = xindex tmp0 = tl.load(in_ptr0 + (4*x3), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + ((4*x0) + (16*x2)), xmask, eviction_policy='evict_last') tmp3 = tl.load(in_ptr0 + (1 + (4*x3)), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + (4*x0) + (16*x2)), xmask, eviction_policy='evict_last') tmp7 = tl.load(in_ptr0 + (2 + (4*x3)), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + (4*x0) + (16*x2)), xmask, eviction_policy='evict_last') tmp11 = tl.load(in_ptr0 + (3 + (4*x3)), xmask, eviction_policy='evict_last') tmp12 = tl.load(in_ptr1 + (3 + (4*x0) + (16*x2)), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 * tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 * tmp12 tmp14 = tmp10 + tmp13 tl.store(out_ptr0 + (x4), tmp14, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, result], Original ATen: [aten.mul, aten.sum] stream0 = get_raw_stream(0) triton_poi_fused_mul_sum_0.run(arg0_1, arg1_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 del arg1_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4), (16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn class SimilarityFunction(nn.Module): """ A ``SimilarityFunction`` takes a pair of tensors with the same shape, and computes a similarity function on the vectors in the last dimension. For example, the tensors might both have shape `(batch_size, sentence_length, embedding_dim)`, and we will compute some function of the two vectors of length `embedding_dim` for each position `(batch_size, sentence_length)`, returning a tensor of shape `(batch_size, sentence_length)`. The similarity function could be as simple as a dot product, or it could be a more complex, parameterized function. """ default_implementation = 'dot_product' def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: """ Takes two tensors of the same shape, such as ``(batch_size, length_1, length_2, embedding_dim)``. Computes a (possibly parameterized) similarity on the final dimension and returns a tensor with one less dimension, such as ``(batch_size, length_1, length_2)``. """ raise NotImplementedError class DotProductSimilarity(SimilarityFunction): """ This similarity function simply computes the dot product between each pair of vectors, with an optional scaling to reduce the variance of the output elements. Parameters ---------- scale_output : ``bool``, optional If ``True``, we will scale the output by ``math.sqrt(tensor.size(-1))``, to reduce the variance in the result. """ def __init__(self, scale_output: 'bool'=False) ->None: super(DotProductSimilarity, self).__init__() self._scale_output = scale_output def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: result = (tensor_1 * tensor_2).sum(dim=-1) if self._scale_output: result *= math.sqrt(tensor_1.size(-1)) return result class MatrixAttention(nn.Module): def __init__(self, similarity_function: 'SimilarityFunction'=None) ->None: super().__init__() self._similarity_function = (similarity_function or DotProductSimilarity()) def forward(self, matrix_1: 'torch.Tensor', matrix_2: 'torch.Tensor' ) ->torch.Tensor: tiled_matrix_1 = matrix_1.unsqueeze(2).expand(matrix_1.size()[0], matrix_1.size()[1], matrix_2.size()[1], matrix_1.size()[2]) tiled_matrix_2 = matrix_2.unsqueeze(1).expand(matrix_2.size()[0], matrix_1.size()[1], matrix_2.size()[1], matrix_2.size()[2]) return self._similarity_function(tiled_matrix_1, tiled_matrix_2) def get_inputs(): return [torch.rand([4, 4, 4]), torch.rand([4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x3 = xindex // 4 x0 = xindex % 4 x2 = xindex // 16 x4 = xindex tmp0 = tl.load(in_ptr0 + 4 * x3, xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (4 * x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp3 = tl.load(in_ptr0 + (1 + 4 * x3), xmask, eviction_policy='evict_last') tmp4 = tl.load(in_ptr1 + (1 + 4 * x0 + 16 * x2), xmask, eviction_policy ='evict_last') tmp7 = tl.load(in_ptr0 + (2 + 4 * x3), xmask, eviction_policy='evict_last') tmp8 = tl.load(in_ptr1 + (2 + 4 * x0 + 16 * x2), xmask, eviction_policy ='evict_last') tmp11 = tl.load(in_ptr0 + (3 + 4 * x3), xmask, eviction_policy='evict_last' ) tmp12 = tl.load(in_ptr1 + (3 + 4 * x0 + 16 * x2), xmask, eviction_policy='evict_last') tmp2 = tmp0 * tmp1 tmp5 = tmp3 * tmp4 tmp6 = tmp2 + tmp5 tmp9 = tmp7 * tmp8 tmp10 = tmp6 + tmp9 tmp13 = tmp11 * tmp12 tmp14 = tmp10 + tmp13 tl.store(out_ptr0 + x4, tmp14, xmask) def call(args): arg0_1, arg1_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4), (16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4), (16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4), (16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_sum_0[grid(64)](arg0_1, arg1_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 del arg1_1 return buf0, class SimilarityFunction(nn.Module): """ A ``SimilarityFunction`` takes a pair of tensors with the same shape, and computes a similarity function on the vectors in the last dimension. For example, the tensors might both have shape `(batch_size, sentence_length, embedding_dim)`, and we will compute some function of the two vectors of length `embedding_dim` for each position `(batch_size, sentence_length)`, returning a tensor of shape `(batch_size, sentence_length)`. The similarity function could be as simple as a dot product, or it could be a more complex, parameterized function. """ default_implementation = 'dot_product' def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: """ Takes two tensors of the same shape, such as ``(batch_size, length_1, length_2, embedding_dim)``. Computes a (possibly parameterized) similarity on the final dimension and returns a tensor with one less dimension, such as ``(batch_size, length_1, length_2)``. """ raise NotImplementedError class DotProductSimilarity(SimilarityFunction): """ This similarity function simply computes the dot product between each pair of vectors, with an optional scaling to reduce the variance of the output elements. Parameters ---------- scale_output : ``bool``, optional If ``True``, we will scale the output by ``math.sqrt(tensor.size(-1))``, to reduce the variance in the result. """ def __init__(self, scale_output: 'bool'=False) ->None: super(DotProductSimilarity, self).__init__() self._scale_output = scale_output def forward(self, tensor_1: 'torch.Tensor', tensor_2: 'torch.Tensor' ) ->torch.Tensor: result = (tensor_1 * tensor_2).sum(dim=-1) if self._scale_output: result *= math.sqrt(tensor_1.size(-1)) return result class MatrixAttentionNew(nn.Module): def __init__(self, similarity_function: 'SimilarityFunction'=None) ->None: super().__init__() self._similarity_function = (similarity_function or DotProductSimilarity()) def forward(self, input_0, input_1): arg0_1 = input_0 arg1_1 = input_1 output = call([arg0_1, arg1_1]) return output[0]
Aunsiels/qagnn
MatrixAttention
false
11,303
[ "MIT" ]
0
d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
https://github.com/Aunsiels/qagnn/tree/d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
NeuralNet
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/r3/cr3febcwm3t44fuoitsx3ou2p6xg4sk4f7unagmmrvffasxf47te.py # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # out_1 => relu # Graph fragment: # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%view_1,), kwargs = {}) # %le_1 : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7 = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4, ), (1, )) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4, ), (1, )) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf0 # reuse buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [out_1], Original ATen: [aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0.run(buf1, primals_2, buf6, 256, grid=grid(256), stream=stream0) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [], Original ATen: [] extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0); del buf2 # reuse buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) # Topologically Sorted Source Nodes: [out_3], Original ATen: [aten.relu, aten.threshold_backward] triton_poi_fused_relu_threshold_backward_0.run(buf3, primals_5, buf5, 256, grid=grid(256), stream=stream0) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) # Topologically Sorted Source Nodes: [out_4], Original ATen: [aten.addmm] extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_7 return (reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(buf3, (64, 4), (4, 1), 0), primals_6, buf5, primals_4, buf6, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_4 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_5 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_6 = rand_strided((4, 4), (4, 1), device='cuda:0', dtype=torch.float32) primals_7 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class NeuralNet(nn.Module): def __init__(self, input_size, hidden_size, num_classes): super(NeuralNet, self).__init__() self.l1 = nn.Linear(input_size, hidden_size) self.l2 = nn.Linear(hidden_size, hidden_size) self.l3 = nn.Linear(hidden_size, num_classes) self.relu = nn.ReLU() def forward(self, x): out = self.l1(x) out = self.relu(out) out = self.l2(out) out = self.relu(out) out = self.l3(out) return out def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'input_size': 4, 'hidden_size': 4, 'num_classes': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_poi_fused_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): (primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7) = args args.clear() assert_size_stride(primals_1, (4, 4), (4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_4, (4, 4), (4, 1)) assert_size_stride(primals_5, (4,), (1,)) assert_size_stride(primals_6, (4, 4), (4, 1)) assert_size_stride(primals_7, (4,), (1,)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(primals_3, (64, 4), (4, 1), 0), reinterpret_tensor(primals_1, (4, 4), (1, 4), 0), out=buf0) del primals_1 buf1 = reinterpret_tensor(buf0, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf0 buf6 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) get_raw_stream(0) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf1, primals_2, buf6, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_2 buf2 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.mm(reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor(primals_4, (4, 4), (1, 4), 0), out=buf2) buf3 = reinterpret_tensor(buf2, (4, 4, 4, 4), (64, 16, 4, 1), 0) del buf2 buf5 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.bool) triton_poi_fused_relu_threshold_backward_0[grid(256)](buf3, primals_5, buf5, 256, XBLOCK=128, num_warps=4, num_stages=1) del primals_5 buf4 = empty_strided_cuda((64, 4), (4, 1), torch.float32) extern_kernels.addmm(primals_7, reinterpret_tensor(buf3, (64, 4), ( 4, 1), 0), reinterpret_tensor(primals_6, (4, 4), (1, 4), 0), alpha=1, beta=1, out=buf4) del primals_7 return reinterpret_tensor(buf4, (4, 4, 4, 4), (64, 16, 4, 1), 0 ), reinterpret_tensor(primals_3, (64, 4), (4, 1), 0 ), reinterpret_tensor(buf1, (64, 4), (4, 1), 0), reinterpret_tensor( buf3, (64, 4), (4, 1), 0), primals_6, buf5, primals_4, buf6 class NeuralNetNew(nn.Module): def __init__(self, input_size, hidden_size, num_classes): super(NeuralNetNew, self).__init__() self.l1 = nn.Linear(input_size, hidden_size) self.l2 = nn.Linear(hidden_size, hidden_size) self.l3 = nn.Linear(hidden_size, num_classes) self.relu = nn.ReLU() def forward(self, input_0): primals_1 = self.l1.weight primals_2 = self.l1.bias primals_4 = self.l2.weight primals_5 = self.l2.bias primals_6 = self.l3.weight primals_7 = self.l3.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3, primals_4, primals_5, primals_6, primals_7]) return output[0]
Chris01e/Minh-V-
NeuralNet
false
11,304
[ "MIT" ]
0
87e080f8583c0658f683e5a82cfa9ba2d116901e
https://github.com/Chris01e/Minh-V-/tree/87e080f8583c0658f683e5a82cfa9ba2d116901e
BalancedL1Loss
# AOT ID: ['1_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/pp/cppcmtl2akc5elc4wgxk67zkknpdmqwigxay57wqd5vx2miq64gn.py # Topologically Sorted Source Nodes: [sub, diff, lt, mul, add, mul_1, mul_2, truediv, add_1, log, mul_3, mul_4, sub_1, mul_5, add_2, sub_2, loss, mul_6, sum_1, truediv_1], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.add, aten.div, aten.log, aten.where, aten.sum] # Source node to ATen node mapping: # add => add # add_1 => add_1 # add_2 => add_2 # diff => abs_1 # log => log # loss => where # lt => lt # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # mul_3 => mul_3 # mul_4 => mul_4 # mul_5 => mul_5 # mul_6 => mul_6 # sub => sub # sub_1 => sub_1 # sub_2 => sub_2 # sum_1 => sum_1 # truediv => div # truediv_1 => div_1 # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg0_1, %arg1_1), kwargs = {}) # %abs_1 : [num_users=5] = call_function[target=torch.ops.aten.abs.default](args = (%sub,), kwargs = {}) # %lt : [num_users=1] = call_function[target=torch.ops.aten.lt.Scalar](args = (%abs_1, 1.0), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 19.085536923187664), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul, 1), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, 0.02619784824562798), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 19.085536923187664), kwargs = {}) # %div : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%mul_2, 1.0), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%div, 1), kwargs = {}) # %log : [num_users=1] = call_function[target=torch.ops.aten.log.default](args = (%add_1,), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul_1, %log), kwargs = {}) # %mul_4 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 0.5), kwargs = {}) # %sub_1 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%mul_3, %mul_4), kwargs = {}) # %mul_5 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%abs_1, 1.5), kwargs = {}) # %add_2 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%mul_5, 0.07859354473688394), kwargs = {}) # %sub_2 : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%add_2, 0.5), kwargs = {}) # %where : [num_users=1] = call_function[target=torch.ops.aten.where.self](args = (%lt, %sub_1, %sub_2), kwargs = {}) # %mul_6 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%where, %arg2_1), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.default](args = (%mul_6,), kwargs = {}) # %div_1 : [num_users=1] = call_function[target=torch.ops.aten.div.Tensor](args = (%unsqueeze, 64.000001), kwargs = {}) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0 = async_compile.triton('triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.persistent_reduction( size_hints=[1, 256], reduction_hint=ReductionHint.INNER, filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: '*fp32', 4: 'i32', 5: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {4: 1}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3, 5), equal_to_1=(4,))]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': True, 'num_load': 3, 'num_reduction': 1, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False} ) @triton.jit def triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, rnumel): xnumel = 1 XBLOCK: tl.constexpr = 1 rnumel = 256 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK xindex = tl.full([1], xoffset, tl.int32) xmask = tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] roffset = 0 rmask = tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + (r0), None) tmp1 = tl.load(in_ptr1 + (r0), None) tmp24 = tl.load(in_ptr2 + (r0), None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 19.085536923187664 tmp7 = tmp3 * tmp6 tmp8 = tmp7 + tmp4 tmp9 = 0.02619784824562798 tmp10 = tmp8 * tmp9 tmp11 = tmp7 * tmp4 tmp12 = tmp11 + tmp4 tmp13 = tl_math.log(tmp12) tmp14 = tmp10 * tmp13 tmp15 = 0.5 tmp16 = tmp3 * tmp15 tmp17 = tmp14 - tmp16 tmp18 = 1.5 tmp19 = tmp3 * tmp18 tmp20 = 0.07859354473688394 tmp21 = tmp19 + tmp20 tmp22 = tmp21 - tmp15 tmp23 = tl.where(tmp5, tmp17, tmp22) tmp25 = tmp23 * tmp24 tmp26 = tl.broadcast_to(tmp25, [RBLOCK]) tmp28 = triton_helpers.promote_to_tensor(tl.sum(tmp26, 0)) tmp29 = 0.015624999755859379 tmp30 = tmp28 * tmp29 tl.debug_barrier() tl.store(in_out_ptr0 + (tl.full([1], 0, tl.int32)), tmp30, None) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = reinterpret_tensor(buf0, (1, ), (1, ), 0); del buf0 # reuse # Topologically Sorted Source Nodes: [sub, diff, lt, mul, add, mul_1, mul_2, truediv, add_1, log, mul_3, mul_4, sub_1, mul_5, add_2, sub_2, loss, mul_6, sum_1, truediv_1], Original ATen: [aten.sub, aten.abs, aten.lt, aten.mul, aten.add, aten.div, aten.log, aten.where, aten.sum] stream0 = get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0.run(buf1, arg0_1, arg1_1, arg2_1, 1, 256, grid=grid(1), stream=stream0) del arg0_1 del arg1_1 del arg2_1 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import numpy as np import torch.nn.functional as F import torch.nn as nn def balanced_l1_loss(pred, target, beta=1.0, alpha=0.5, gamma=1.5, reduction='none'): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) b = np.e ** (gamma / alpha) - 1 loss = torch.where(diff < beta, alpha / b * (b * diff + 1) * torch.log( b * diff / beta + 1) - alpha * diff, gamma * diff + gamma / b - alpha * beta) reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.sum() / pred.numel() elif reduction_enum == 2: return loss.sum() return loss def weighted_balanced_l1_loss(pred, target, weight, beta=1.0, alpha=0.5, gamma=1.5, avg_factor=None): if avg_factor is None: avg_factor = torch.sum(weight > 0).float().item() / 4 + 1e-06 loss = balanced_l1_loss(pred, target, beta, alpha, gamma, reduction='none') return torch.sum(loss * weight)[None] / avg_factor class BalancedL1Loss(nn.Module): """Balanced L1 Loss arXiv: https://arxiv.org/pdf/1904.02701.pdf (CVPR 2019) """ def __init__(self, alpha=0.5, gamma=1.5, beta=1.0, loss_weight=1.0): super(BalancedL1Loss, self).__init__() self.alpha = alpha self.gamma = gamma self.beta = beta self.loss_weight = loss_weight def forward(self, pred, target, weight, *args, **kwargs): loss_bbox = self.loss_weight * weighted_balanced_l1_loss(pred, target, weight, *args, alpha=self.alpha, gamma=self.gamma, beta =self.beta, **kwargs) return loss_bbox def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers from torch._inductor.runtime.triton_helpers import math as tl_math import numpy as np import torch.nn.functional as F import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor @triton.jit def triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0(in_out_ptr0, in_ptr0, in_ptr1, in_ptr2, xnumel, rnumel): XBLOCK: tl.constexpr = 1 RBLOCK: tl.constexpr = 256 xoffset = tl.program_id(0) * XBLOCK tl.full([1], xoffset, tl.int32) tl.full([RBLOCK], True, tl.int1) rindex = tl.arange(0, RBLOCK)[:] tl.full([RBLOCK], True, tl.int1) r0 = rindex tmp0 = tl.load(in_ptr0 + r0, None) tmp1 = tl.load(in_ptr1 + r0, None) tmp24 = tl.load(in_ptr2 + r0, None) tmp2 = tmp0 - tmp1 tmp3 = tl_math.abs(tmp2) tmp4 = 1.0 tmp5 = tmp3 < tmp4 tmp6 = 19.085536923187664 tmp7 = tmp3 * tmp6 tmp8 = tmp7 + tmp4 tmp9 = 0.02619784824562798 tmp10 = tmp8 * tmp9 tmp11 = tmp7 * tmp4 tmp12 = tmp11 + tmp4 tmp13 = tl_math.log(tmp12) tmp14 = tmp10 * tmp13 tmp15 = 0.5 tmp16 = tmp3 * tmp15 tmp17 = tmp14 - tmp16 tmp18 = 1.5 tmp19 = tmp3 * tmp18 tmp20 = 0.07859354473688394 tmp21 = tmp19 + tmp20 tmp22 = tmp21 - tmp15 tmp23 = tl.where(tmp5, tmp17, tmp22) tmp25 = tmp23 * tmp24 tmp26 = tl.broadcast_to(tmp25, [RBLOCK]) tmp28 = triton_helpers.promote_to_tensor(tl.sum(tmp26, 0)) tmp29 = 0.015624999755859379 tmp30 = tmp28 * tmp29 tl.debug_barrier() tl.store(in_out_ptr0 + tl.full([1], 0, tl.int32), tmp30, None) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((), (), torch.float32) buf1 = reinterpret_tensor(buf0, (1,), (1,), 0) del buf0 get_raw_stream(0) triton_per_fused_abs_add_div_log_lt_mul_sub_sum_where_0[grid(1)](buf1, arg0_1, arg1_1, arg2_1, 1, 256, num_warps=2, num_stages=1) del arg0_1 del arg1_1 del arg2_1 return buf1, def balanced_l1_loss(pred, target, beta=1.0, alpha=0.5, gamma=1.5, reduction='none'): assert beta > 0 assert pred.size() == target.size() and target.numel() > 0 diff = torch.abs(pred - target) b = np.e ** (gamma / alpha) - 1 loss = torch.where(diff < beta, alpha / b * (b * diff + 1) * torch.log( b * diff / beta + 1) - alpha * diff, gamma * diff + gamma / b - alpha * beta) reduction_enum = F._Reduction.get_enum(reduction) if reduction_enum == 0: return loss elif reduction_enum == 1: return loss.sum() / pred.numel() elif reduction_enum == 2: return loss.sum() return loss def weighted_balanced_l1_loss(pred, target, weight, beta=1.0, alpha=0.5, gamma=1.5, avg_factor=None): if avg_factor is None: avg_factor = torch.sum(weight > 0).float().item() / 4 + 1e-06 loss = balanced_l1_loss(pred, target, beta, alpha, gamma, reduction='none') return torch.sum(loss * weight)[None] / avg_factor class BalancedL1LossNew(nn.Module): """Balanced L1 Loss arXiv: https://arxiv.org/pdf/1904.02701.pdf (CVPR 2019) """ def __init__(self, alpha=0.5, gamma=1.5, beta=1.0, loss_weight=1.0): super(BalancedL1LossNew, self).__init__() self.alpha = alpha self.gamma = gamma self.beta = beta self.loss_weight = loss_weight def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
Complicateddd/Complicateddd-ROITransformer
BalancedL1Loss
false
11,305
[ "Apache-2.0" ]
0
2adfbf98892d569c460d100c6e2169c5fa3a9b82
https://github.com/Complicateddd/Complicateddd-ROITransformer/tree/2adfbf98892d569c460d100c6e2169c5fa3a9b82
EPE
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/66/c66hxpbagrcocdwcb457ompxihfzu23jo3ydcrdaz3uwb63isyhd.py # Topologically Sorted Source Nodes: [sub, loss_map, sum_1, add, loss_map_1], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add] # Source node to ATen node mapping: # add => add # loss_map => pow_1 # loss_map_1 => pow_2 # sub => sub # sum_1 => sum_1 # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg0_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sum_1, 1e-06), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 0.5), kwargs = {}) triton_poi_fused_add_pow_sub_sum_0 = async_compile.triton('triton_poi_fused_add_pow_sub_sum_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[64], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_pow_sub_sum_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 8, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_pow_sub_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = (xindex // 16) x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (64*x1)), xmask) tmp1 = tl.load(in_ptr1 + (x0 + (64*x1)), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + (64*x1)), xmask) tmp5 = tl.load(in_ptr1 + (16 + x0 + (64*x1)), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + (64*x1)), xmask) tmp10 = tl.load(in_ptr1 + (32 + x0 + (64*x1)), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + (64*x1)), xmask) tmp15 = tl.load(in_ptr1 + (48 + x0 + (64*x1)), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tmp19 = 1e-06 tmp20 = tmp18 + tmp19 tmp21 = libdevice.sqrt(tmp20) tl.store(out_ptr0 + (x2), tmp21, xmask) ''', device_str='cuda') # kernel path: runs/run_shard_9/inductor_cache/ek/cekbmmkf6jeivdyacikwn7uzkvx2g3akquy5d3t5m43oyey2rpi2.py # Topologically Sorted Source Nodes: [sub, loss_map, sum_1, add, loss_map_1, mul], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add, aten.mul] # Source node to ATen node mapping: # add => add # loss_map => pow_1 # loss_map_1 => pow_2 # mul => mul # sub => sub # sum_1 => sum_1 # Graph fragment: # %sub : [num_users=1] = call_function[target=torch.ops.aten.sub.Tensor](args = (%arg1_1, %arg0_1), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%sub, 2), kwargs = {}) # %sum_1 : [num_users=1] = call_function[target=torch.ops.aten.sum.dim_IntList](args = (%pow_1, [1], True), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%sum_1, 1e-06), kwargs = {}) # %pow_2 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%add, 0.5), kwargs = {}) # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%pow_2, %arg2_1), kwargs = {}) triton_poi_fused_add_mul_pow_sub_sum_1 = async_compile.triton('triton_poi_fused_add_mul_pow_sub_sum_1', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_pow_sub_sum_1', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_pow_sub_sum_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x2 = (xindex // 64) x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + (16*x2)), xmask, eviction_policy='evict_last') tmp1 = tl.load(in_ptr1 + (x3), xmask) tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + (x3), tmp2, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 4, 4), (16, 64, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, loss_map, sum_1, add, loss_map_1], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add] stream0 = get_raw_stream(0) triton_poi_fused_add_pow_sub_sum_0.run(arg1_1, arg0_1, buf0, 64, grid=grid(64), stream=stream0) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [sub, loss_map, sum_1, add, loss_map_1, mul], Original ATen: [aten.sub, aten.pow, aten.sum, aten.add, aten.mul] triton_poi_fused_add_mul_pow_sub_sum_1.run(buf0, arg2_1, buf1, 256, grid=grid(256), stream=stream0) del arg2_1 del buf0 return (buf1, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg1_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) arg2_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1, arg1_1, arg2_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class EPE(nn.Module): def __init__(self): super(EPE, self).__init__() def forward(self, flow, gt, loss_mask): loss_map = (flow - gt.detach()) ** 2 loss_map = (loss_map.sum(1, True) + 1e-06) ** 0.5 return loss_map * loss_mask def get_inputs(): return [torch.rand([4, 4, 4, 4]), torch.rand([4, 4, 4, 4]), torch.rand( [4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_pow_sub_sum_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 64 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x1 = xindex // 16 x2 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 64 * x1), xmask) tmp1 = tl.load(in_ptr1 + (x0 + 64 * x1), xmask) tmp4 = tl.load(in_ptr0 + (16 + x0 + 64 * x1), xmask) tmp5 = tl.load(in_ptr1 + (16 + x0 + 64 * x1), xmask) tmp9 = tl.load(in_ptr0 + (32 + x0 + 64 * x1), xmask) tmp10 = tl.load(in_ptr1 + (32 + x0 + 64 * x1), xmask) tmp14 = tl.load(in_ptr0 + (48 + x0 + 64 * x1), xmask) tmp15 = tl.load(in_ptr1 + (48 + x0 + 64 * x1), xmask) tmp2 = tmp0 - tmp1 tmp3 = tmp2 * tmp2 tmp6 = tmp4 - tmp5 tmp7 = tmp6 * tmp6 tmp8 = tmp3 + tmp7 tmp11 = tmp9 - tmp10 tmp12 = tmp11 * tmp11 tmp13 = tmp8 + tmp12 tmp16 = tmp14 - tmp15 tmp17 = tmp16 * tmp16 tmp18 = tmp13 + tmp17 tmp19 = 1e-06 tmp20 = tmp18 + tmp19 tmp21 = libdevice.sqrt(tmp20) tl.store(out_ptr0 + x2, tmp21, xmask) @triton.jit def triton_poi_fused_add_mul_pow_sub_sum_1(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex % 16 x2 = xindex // 64 x3 = xindex tmp0 = tl.load(in_ptr0 + (x0 + 16 * x2), xmask, eviction_policy= 'evict_last') tmp1 = tl.load(in_ptr1 + x3, xmask) tmp2 = tmp0 * tmp1 tl.store(out_ptr0 + x3, tmp2, xmask) def call(args): arg0_1, arg1_1, arg2_1 = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg1_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(arg2_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 1, 4, 4), (16, 64, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_pow_sub_sum_0[grid(64)](arg1_1, arg0_1, buf0, 64, XBLOCK=64, num_warps=1, num_stages=1) del arg0_1 del arg1_1 buf1 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) triton_poi_fused_add_mul_pow_sub_sum_1[grid(256)](buf0, arg2_1, buf1, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg2_1 del buf0 return buf1, class EPENew(nn.Module): def __init__(self): super(EPENew, self).__init__() def forward(self, input_0, input_1, input_2): arg0_1 = input_0 arg1_1 = input_1 arg2_1 = input_2 output = call([arg0_1, arg1_1, arg2_1]) return output[0]
Conrekatsu/arXiv2020-RIFE
EPE
false
11,306
[ "MIT" ]
0
15cb7f2389ccd93e8b8946546d4665c9b41541a3
https://github.com/Conrekatsu/arXiv2020-RIFE/tree/15cb7f2389ccd93e8b8946546d4665c9b41541a3
GELU
# AOT ID: ['0_inference'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/v7/cv7humnywkkqhrumbeetegqlkretdwtkj5pcanrbgxrolupvobzt.py # Topologically Sorted Source Nodes: [mul, pow_1, mul_1, add, mul_2, tanh, add_1, mul_3], Original ATen: [aten.mul, aten.pow, aten.add, aten.tanh] # Source node to ATen node mapping: # add => add # add_1 => add_1 # mul => mul # mul_1 => mul_1 # mul_2 => mul_2 # mul_3 => mul_3 # pow_1 => pow_1 # tanh => tanh # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%arg0_1, 0.5), kwargs = {}) # %pow_1 : [num_users=1] = call_function[target=torch.ops.aten.pow.Tensor_Scalar](args = (%arg0_1, 3), kwargs = {}) # %mul_1 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%pow_1, 0.044715), kwargs = {}) # %add : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%arg0_1, %mul_1), kwargs = {}) # %mul_2 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%add, 0.7978845608028654), kwargs = {}) # %tanh : [num_users=1] = call_function[target=torch.ops.aten.tanh.default](args = (%mul_2,), kwargs = {}) # %add_1 : [num_users=1] = call_function[target=torch.ops.aten.add.Tensor](args = (%tanh, 1), kwargs = {}) # %mul_3 : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%mul, %add_1), kwargs = {}) triton_poi_fused_add_mul_pow_tanh_0 = async_compile.triton('triton_poi_fused_add_mul_pow_tanh_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_add_mul_pow_tanh_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 1, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_add_mul_pow_tanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = tmp0 * tmp0 tmp4 = tmp3 * tmp0 tmp5 = 0.044715 tmp6 = tmp4 * tmp5 tmp7 = tmp0 + tmp6 tmp8 = 0.7978845608028654 tmp9 = tmp7 * tmp8 tmp10 = libdevice.tanh(tmp9) tmp11 = 1.0 tmp12 = tmp10 + tmp11 tmp13 = tmp2 * tmp12 tl.store(out_ptr0 + (x0), tmp13, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul, pow_1, mul_1, add, mul_2, tanh, add_1, mul_3], Original ATen: [aten.mul, aten.pow, aten.add, aten.tanh] stream0 = get_raw_stream(0) triton_poi_fused_add_mul_pow_tanh_0.run(arg0_1, buf0, 256, grid=grid(256), stream=stream0) del arg0_1 return (buf0, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance arg0_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([arg0_1]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import math import torch import torch.nn as nn def gelu(x): """ Implementation of the gelu activation function currently in Google Bert repo (identical to OpenAI GPT). Also see https://arxiv.org/abs/1606.08415 """ return 0.5 * x * (1 + torch.tanh(math.sqrt(2 / math.pi) * (x + 0.044715 * torch.pow(x, 3)))) class GELU(nn.Module): def __init__(self): super().__init__() def forward(self, x): return gelu(x) def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime.triton_helpers import libdevice import math import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_add_mul_pow_tanh_0(in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = 0.5 tmp2 = tmp0 * tmp1 tmp3 = tmp0 * tmp0 tmp4 = tmp3 * tmp0 tmp5 = 0.044715 tmp6 = tmp4 * tmp5 tmp7 = tmp0 + tmp6 tmp8 = 0.7978845608028654 tmp9 = tmp7 * tmp8 tmp10 = libdevice.tanh(tmp9) tmp11 = 1.0 tmp12 = tmp10 + tmp11 tmp13 = tmp2 * tmp12 tl.store(out_ptr0 + x0, tmp13, xmask) def call(args): arg0_1, = args args.clear() assert_size_stride(arg0_1, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_add_mul_pow_tanh_0[grid(256)](arg0_1, buf0, 256, XBLOCK=128, num_warps=4, num_stages=1) del arg0_1 return buf0, def gelu(x): """ Implementation of the gelu activation function currently in Google Bert repo (identical to OpenAI GPT). Also see https://arxiv.org/abs/1606.08415 """ return 0.5 * x * (1 + torch.tanh(math.sqrt(2 / math.pi) * (x + 0.044715 * torch.pow(x, 3)))) class GELUNew(nn.Module): def __init__(self): super().__init__() def forward(self, input_0): arg0_1 = input_0 output = call([arg0_1]) return output[0]
Aunsiels/qagnn
GELU
false
11,307
[ "MIT" ]
0
d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
https://github.com/Aunsiels/qagnn/tree/d89a3dd650ac4b8b8aae34e0cce7cfc698892d80
Scale
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/s3/cs3xfcsbv3q363t3gue76e5b2o6wfhbslxcdj5vsrheb24anhw4c.py # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] # Source node to ATen node mapping: # mul => mul # Graph fragment: # %mul : [num_users=1] = call_function[target=torch.ops.aten.mul.Tensor](args = (%primals_2, %primals_1), kwargs = {}) triton_poi_fused_mul_0 = async_compile.triton('triton_poi_fused_mul_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[256], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*fp32', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_mul_0', 'mutated_arg_names': [], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + (x0), xmask) tmp1 = tl.load(in_ptr1 + (0)) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + (x0), tmp3, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) # Topologically Sorted Source Nodes: [mul], Original ATen: [aten.mul] stream0 = get_raw_stream(0) triton_poi_fused_mul_0.run(primals_2, primals_1, buf0, 256, grid=grid(256), stream=stream0) del primals_1 return (buf0, primals_2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((), (), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import torch.nn as nn class Scale(nn.Module): def __init__(self, scale=1.0): super(Scale, self).__init__() self.scale = nn.Parameter(torch.tensor(scale, dtype=torch.float)) def forward(self, x): return x * self.scale def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {}]
import torch import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_mul_0(in_ptr0, in_ptr1, out_ptr0, xnumel, XBLOCK: tl. constexpr): xnumel = 256 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x0 = xindex tmp0 = tl.load(in_ptr0 + x0, xmask) tmp1 = tl.load(in_ptr1 + 0) tmp2 = tl.broadcast_to(tmp1, [XBLOCK]) tmp3 = tmp0 * tmp2 tl.store(out_ptr0 + x0, tmp3, xmask) def call(args): primals_1, primals_2 = args args.clear() assert_size_stride(primals_1, (), ()) assert_size_stride(primals_2, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = empty_strided_cuda((4, 4, 4, 4), (64, 16, 4, 1), torch.float32) get_raw_stream(0) triton_poi_fused_mul_0[grid(256)](primals_2, primals_1, buf0, 256, XBLOCK=256, num_warps=4, num_stages=1) del primals_1 return buf0, primals_2 class ScaleNew(nn.Module): def __init__(self, scale=1.0): super(ScaleNew, self).__init__() self.scale = nn.Parameter(torch.tensor(scale, dtype=torch.float)) def forward(self, input_0): primals_1 = self.scale primals_2 = input_0 output = call([primals_1, primals_2]) return output[0]
Complicateddd/Complicateddd-ROITransformer
Scale
false
11,308
[ "Apache-2.0" ]
0
2adfbf98892d569c460d100c6e2169c5fa3a9b82
https://github.com/Complicateddd/Complicateddd-ROITransformer/tree/2adfbf98892d569c460d100c6e2169c5fa3a9b82
ConvModule
# AOT ID: ['0_forward'] from ctypes import c_void_p, c_long, c_int import torch import math import random import os import tempfile from math import inf, nan from torch._inductor.hooks import run_intermediate_hooks from torch._inductor.utils import maybe_profile from torch._inductor.codegen.memory_planning import _align as align from torch import device, empty_strided from torch._inductor.async_compile import AsyncCompile from torch._inductor.select_algorithm import extern_kernels from torch._inductor.codegen.multi_kernel import MultiKernelCall import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid, split_scan_grid, grid_combo_kernels, start_graph, end_graph from torch._C import _cuda_getCurrentRawStream as get_raw_stream aten = torch.ops.aten inductor_ops = torch.ops.inductor _quantized = torch.ops._quantized assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cpu = torch._C._dynamo.guards._empty_strided_cpu empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda empty_strided_xpu = torch._C._dynamo.guards._empty_strided_xpu reinterpret_tensor = torch._C._dynamo.guards._reinterpret_tensor alloc_from_pool = torch.ops.inductor._alloc_from_pool async_compile = AsyncCompile() # kernel path: runs/run_shard_9/inductor_cache/z3/cz3vliqlpgih6ihwoaxl6cmnicfmv2ygutcuphilcsragp3evc57.py # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] # Source node to ATen node mapping: # x => convolution # x_1 => relu # Graph fragment: # %convolution : [num_users=1] = call_function[target=torch.ops.aten.convolution.default](args = (%primals_3, %primals_1, %primals_2, [1, 1], [0, 0], [1, 1], False, [0, 0], 1), kwargs = {}) # %relu : [num_users=2] = call_function[target=torch.ops.aten.relu.default](args = (%convolution,), kwargs = {}) # %le : [num_users=1] = call_function[target=torch.ops.aten.le.Scalar](args = (%relu, 0), kwargs = {}) triton_poi_fused_convolution_relu_threshold_backward_0 = async_compile.triton('triton_poi_fused_convolution_relu_threshold_backward_0', ''' import triton import triton.language as tl from triton.compiler.compiler import AttrsDescriptor from torch._inductor.runtime import triton_helpers, triton_heuristics from torch._inductor.runtime.triton_helpers import libdevice, math as tl_math from torch._inductor.runtime.hints import AutotuneHint, ReductionHint, TileHint, instance_descriptor, DeviceProperties @triton_heuristics.pointwise( size_hints=[16], filename=__file__, triton_meta={'signature': {0: '*fp32', 1: '*fp32', 2: '*i1', 3: 'i32'}, 'device': DeviceProperties(type='cuda', index=0, cc=80, major=8, regs_per_multiprocessor=65536, max_threads_per_multi_processor=2048, multi_processor_count=108), 'constants': {}, 'configs': [AttrsDescriptor(divisible_by_16=(0, 1, 2, 3), equal_to_1=())]}, inductor_meta={'autotune_hints': set(), 'kernel_name': 'triton_poi_fused_convolution_relu_threshold_backward_0', 'mutated_arg_names': ['in_out_ptr0'], 'no_x_dim': False, 'num_load': 2, 'num_reduction': 0, 'backend_hash': 'A9C866B4A14FD3277824029365D703C2427B2E685E54EC9B3EF4ADC8D1EEAC1D', 'are_deterministic_algorithms_enabled': False, 'assert_indirect_indexing': True, 'autotune_local_cache': True, 'autotune_pointwise': True, 'autotune_remote_cache': None, 'force_disable_caches': False, 'dynamic_scale_rblock': True, 'max_autotune': False, 'max_autotune_pointwise': False, 'min_split_scan_rblock': 256, 'spill_threshold': 16, 'store_cubin': False}, min_elem_per_thread=0 ) @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK : tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + (x2), xmask) tmp1 = tl.load(in_ptr0 + (x0), xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + (x2), tmp4, xmask) tl.store(out_ptr0 + (x2), tmp6, xmask) ''', device_str='cuda') async_compile.wait(globals()) del async_compile def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4, ), (1, )) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) # Topologically Sorted Source Nodes: [x], Original ATen: [aten.convolution] buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = buf0; del buf0 # reuse buf2 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.bool) # Topologically Sorted Source Nodes: [x, x_1], Original ATen: [aten.convolution, aten.relu, aten.threshold_backward] stream0 = get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0.run(buf1, primals_2, buf2, 16, grid=grid(16), stream=stream0) del primals_2 return (buf1, primals_1, primals_3, buf2, ) def benchmark_compiled_module(times=10, repeat=10): from torch._dynamo.testing import rand_strided from torch._inductor.utils import print_performance primals_1 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) primals_2 = rand_strided((4, ), (1, ), device='cuda:0', dtype=torch.float32) primals_3 = rand_strided((4, 4, 4, 4), (64, 16, 4, 1), device='cuda:0', dtype=torch.float32) fn = lambda: call([primals_1, primals_2, primals_3]) return print_performance(fn, times=times, repeat=repeat) if __name__ == "__main__": from torch._inductor.wrapper_benchmark import compiled_module_main compiled_module_main('None', benchmark_compiled_module)
import torch import warnings import torch.nn as nn def build_norm_layer(cfg, num_features, postfix=''): """ Build normalization layer Args: cfg (dict): cfg should contain: type (str): identify norm layer type. layer args: args needed to instantiate a norm layer. requires_grad (bool): [optional] whether stop gradient updates num_features (int): number of channels from input. postfix (int, str): appended into norm abbreviation to create named layer. Returns: name (str): abbreviation + postfix layer (nn.Module): created norm layer """ assert isinstance(cfg, dict) and 'type' in cfg cfg_ = cfg.copy() layer_type = cfg_.pop('type') if layer_type not in norm_cfg: raise KeyError('Unrecognized norm type {}'.format(layer_type)) else: abbr, norm_layer = norm_cfg[layer_type] if norm_layer is None: raise NotImplementedError assert isinstance(postfix, (int, str)) name = abbr + str(postfix) requires_grad = cfg_.pop('requires_grad', True) cfg_.setdefault('eps', 1e-05) if layer_type != 'GN': layer = norm_layer(num_features, **cfg_) if layer_type == 'SyncBN': layer._specify_ddp_gpu_num(1) else: assert 'num_groups' in cfg_ layer = norm_layer(num_channels=num_features, **cfg_) for param in layer.parameters(): param.requires_grad = requires_grad return name, layer def kaiming_init(module, mode='fan_out', nonlinearity='relu', bias=0, distribution='normal'): assert distribution in ['uniform', 'normal'] if distribution == 'uniform': nn.init.kaiming_uniform_(module.weight, mode=mode, nonlinearity= nonlinearity) else: nn.init.kaiming_normal_(module.weight, mode=mode, nonlinearity= nonlinearity) if hasattr(module, 'bias'): nn.init.constant_(module.bias, bias) class ConvModule(nn.Module): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, normalize=None, activation='relu', inplace=True, activate_last=True): super(ConvModule, self).__init__() self.with_norm = normalize is not None self.with_activatation = activation is not None self.with_bias = bias self.activation = activation self.activate_last = activate_last if self.with_norm and self.with_bias: warnings.warn('ConvModule has norm and bias at the same time') self.conv = nn.Conv2d(in_channels, out_channels, kernel_size, stride, padding, dilation, groups, bias=bias) self.in_channels = self.conv.in_channels self.out_channels = self.conv.out_channels self.kernel_size = self.conv.kernel_size self.stride = self.conv.stride self.padding = self.conv.padding self.dilation = self.conv.dilation self.transposed = self.conv.transposed self.output_padding = self.conv.output_padding self.groups = self.conv.groups if self.with_norm: norm_channels = out_channels if self.activate_last else in_channels self.norm_name, norm = build_norm_layer(normalize, norm_channels) self.add_module(self.norm_name, norm) if self.with_activatation: assert activation in ['relu'], 'Only ReLU supported.' if self.activation == 'relu': self.activate = nn.ReLU(inplace=inplace) self.init_weights() @property def norm(self): return getattr(self, self.norm_name) def init_weights(self): nonlinearity = 'relu' if self.activation is None else self.activation kaiming_init(self.conv, nonlinearity=nonlinearity) if self.with_norm: constant_init(self.norm, 1, bias=0) def forward(self, x, activate=True, norm=True): if self.activate_last: x = self.conv(x) if norm and self.with_norm: x = self.norm(x) if activate and self.with_activatation: x = self.activate(x) else: if norm and self.with_norm: x = self.norm(x) if activate and self.with_activatation: x = self.activate(x) x = self.conv(x) return x def get_inputs(): return [torch.rand([4, 4, 4, 4])] def get_init_inputs(): return [[], {'in_channels': 4, 'out_channels': 4, 'kernel_size': 4}]
import torch from torch._inductor.select_algorithm import extern_kernels import triton import triton.language as tl from torch._inductor.runtime.triton_heuristics import grid from torch._C import _cuda_getCurrentRawStream as get_raw_stream from torch._inductor.runtime import triton_helpers import warnings import torch.nn as nn assert_size_stride = torch._C._dynamo.guards.assert_size_stride empty_strided_cuda = torch._C._dynamo.guards._empty_strided_cuda @triton.jit def triton_poi_fused_convolution_relu_threshold_backward_0(in_out_ptr0, in_ptr0, out_ptr0, xnumel, XBLOCK: tl.constexpr): xnumel = 16 xoffset = tl.program_id(0) * XBLOCK xindex = xoffset + tl.arange(0, XBLOCK)[:] xmask = xindex < xnumel x2 = xindex x0 = xindex % 4 tmp0 = tl.load(in_out_ptr0 + x2, xmask) tmp1 = tl.load(in_ptr0 + x0, xmask, eviction_policy='evict_last') tmp2 = tmp0 + tmp1 tmp3 = tl.full([1], 0, tl.int32) tmp4 = triton_helpers.maximum(tmp3, tmp2) tmp5 = 0.0 tmp6 = tmp4 <= tmp5 tl.store(in_out_ptr0 + x2, tmp4, xmask) tl.store(out_ptr0 + x2, tmp6, xmask) def call(args): primals_1, primals_2, primals_3 = args args.clear() assert_size_stride(primals_1, (4, 4, 4, 4), (64, 16, 4, 1)) assert_size_stride(primals_2, (4,), (1,)) assert_size_stride(primals_3, (4, 4, 4, 4), (64, 16, 4, 1)) with torch.cuda._DeviceGuard(0): torch.cuda.set_device(0) buf0 = extern_kernels.convolution(primals_3, primals_1, stride=(1, 1), padding=(0, 0), dilation=(1, 1), transposed=False, output_padding=(0, 0), groups=1, bias=None) assert_size_stride(buf0, (4, 4, 1, 1), (4, 1, 1, 1)) buf1 = buf0 del buf0 buf2 = empty_strided_cuda((4, 4, 1, 1), (4, 1, 1, 1), torch.bool) get_raw_stream(0) triton_poi_fused_convolution_relu_threshold_backward_0[grid(16)](buf1, primals_2, buf2, 16, XBLOCK=16, num_warps=1, num_stages=1) del primals_2 return buf1, primals_1, primals_3, buf2 def build_norm_layer(cfg, num_features, postfix=''): """ Build normalization layer Args: cfg (dict): cfg should contain: type (str): identify norm layer type. layer args: args needed to instantiate a norm layer. requires_grad (bool): [optional] whether stop gradient updates num_features (int): number of channels from input. postfix (int, str): appended into norm abbreviation to create named layer. Returns: name (str): abbreviation + postfix layer (nn.Module): created norm layer """ assert isinstance(cfg, dict) and 'type' in cfg cfg_ = cfg.copy() layer_type = cfg_.pop('type') if layer_type not in norm_cfg: raise KeyError('Unrecognized norm type {}'.format(layer_type)) else: abbr, norm_layer = norm_cfg[layer_type] if norm_layer is None: raise NotImplementedError assert isinstance(postfix, (int, str)) name = abbr + str(postfix) requires_grad = cfg_.pop('requires_grad', True) cfg_.setdefault('eps', 1e-05) if layer_type != 'GN': layer = norm_layer(num_features, **cfg_) if layer_type == 'SyncBN': layer._specify_ddp_gpu_num(1) else: assert 'num_groups' in cfg_ layer = norm_layer(num_channels=num_features, **cfg_) for param in layer.parameters(): param.requires_grad = requires_grad return name, layer def kaiming_init(module, mode='fan_out', nonlinearity='relu', bias=0, distribution='normal'): assert distribution in ['uniform', 'normal'] if distribution == 'uniform': nn.init.kaiming_uniform_(module.weight, mode=mode, nonlinearity= nonlinearity) else: nn.init.kaiming_normal_(module.weight, mode=mode, nonlinearity= nonlinearity) if hasattr(module, 'bias'): nn.init.constant_(module.bias, bias) class ConvModuleNew(nn.Module): def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True, normalize=None, activation='relu', inplace=True, activate_last=True): super(ConvModuleNew, self).__init__() self.with_norm = normalize is not None self.with_activatation = activation is not None self.with_bias = bias self.activation = activation self.activate_last = activate_last if self.with_norm and self.with_bias: warnings.warn('ConvModule has norm and bias at the same time') self.conv = nn.Conv2d(in_channels, out_channels, kernel_size, stride, padding, dilation, groups, bias=bias) self.in_channels = self.conv.in_channels self.out_channels = self.conv.out_channels self.kernel_size = self.conv.kernel_size self.stride = self.conv.stride self.padding = self.conv.padding self.dilation = self.conv.dilation self.transposed = self.conv.transposed self.output_padding = self.conv.output_padding self.groups = self.conv.groups if self.with_norm: norm_channels = out_channels if self.activate_last else in_channels self.norm_name, norm = build_norm_layer(normalize, norm_channels) self.add_module(self.norm_name, norm) if self.with_activatation: assert activation in ['relu'], 'Only ReLU supported.' if self.activation == 'relu': self.activate = nn.ReLU(inplace=inplace) self.init_weights() @property def norm(self): return getattr(self, self.norm_name) def init_weights(self): nonlinearity = 'relu' if self.activation is None else self.activation kaiming_init(self.conv, nonlinearity=nonlinearity) if self.with_norm: constant_init(self.norm, 1, bias=0) def forward(self, input_0): primals_1 = self.conv.weight primals_2 = self.conv.bias primals_3 = input_0 output = call([primals_1, primals_2, primals_3]) return output[0]
Complicateddd/Complicateddd-ROITransformer
ConvModule
false
11,309
[ "Apache-2.0" ]
0
2adfbf98892d569c460d100c6e2169c5fa3a9b82
https://github.com/Complicateddd/Complicateddd-ROITransformer/tree/2adfbf98892d569c460d100c6e2169c5fa3a9b82