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| import dis | |
| import inspect | |
| from typing import Sequence, Union | |
| import torch | |
| import functorch._C | |
| from functorch._C import dim as _C | |
| from .tree_map import tree_flatten, tree_map | |
| from .wrap_type import wrap_type | |
| _C._patch_tensor_class() | |
| dims, DimList, dimlists = _C.dims, _C.DimList, _C.dimlists | |
| class DimensionMismatchError(Exception): | |
| pass | |
| class DimensionBindError(Exception): | |
| pass | |
| from . import op_properties | |
| # use dict to avoid writing C++ bindings for set | |
| pointwise = dict.fromkeys(op_properties.pointwise, True) | |
| use_c = True | |
| if not use_c: | |
| from . import reference | |
| class _Tensor: | |
| # fast path around slow wrapping/unwrapping logic for simply queries used | |
| # by the implementation... | |
| def dims(self): | |
| return tuple(d for d in self._levels if isinstance(d, Dim)) | |
| def dim(self): | |
| return self.ndim | |
| if use_c: | |
| __torch_function__ = classmethod(_C.__torch_function__) | |
| expand = _C._instancemethod(_C.expand) | |
| else: | |
| __torch_function__ = reference.__torch_function__ | |
| expand = reference.expand | |
| index = _C._instancemethod(_C.index) | |
| def __repr__(self): | |
| tensor, levels, ndim = self._tensor, self._levels, self.ndim | |
| return f"{tensor}\nwith dims={tuple(l + ndim if isinstance(l, int) else l for l in levels)} sizes={tuple(tensor.size())}" | |
| TensorLike = (_Tensor, torch.Tensor) | |
| class Dim(_C.Dim, _Tensor): | |
| # note that _C.Dim comes before tensor because we want the Dim API for things like size to take precendence. | |
| # Tensor defines format, but we want to print Dims with special formatting | |
| __format__ = object.__format__ | |
| class Tensor(_Tensor, _C.Tensor): | |
| if not use_c: | |
| from_batched = staticmethod(_C.Tensor_from_batched) | |
| from_positional = staticmethod(_C.Tensor_from_positional) | |
| sum = _C._instancemethod(_C.Tensor_sum) | |
| def cat(tensors, dim, new_dim): | |
| n = dims() | |
| return stack(tensors, n, dim).index([n, dim], new_dim) | |
| if use_c: | |
| _wrap = _C._wrap | |
| def _def(name, *args, **kwargs): | |
| orig = getattr(torch.Tensor, name) | |
| setattr(_Tensor, name, _C._instancemethod(_wrap(orig, *args, **kwargs))) | |
| t__getitem__ = _C._instancemethod(_C.__getitem__) | |
| stack = _C.stack | |
| split = _C._instancemethod(_C.split) | |
| else: | |
| _wrap, _def = reference._wrap, reference._def | |
| t__getitem__ = reference.t__getitem__ | |
| stack = reference.stack | |
| split = reference.split | |
| # note: there is no python reference | |
| t__setitem__ = _C._instancemethod(_C.__setitem__) | |
| # this is patched in the C API because otherwise torch.Tensor will | |
| # no longer be considered a sequence and things will break | |
| # torch.Tensor.__getitem__ = t__getitem__ | |
| _Tensor.__getitem__ = t__getitem__ | |
| # torch.Tensor.__setitem__ = t__setitem__ | |
| _Tensor.__setitem__ = t__setitem__ | |
| torch.Tensor.split = split | |
| _Tensor.split = split | |
| torch.Tensor.expand = _C._instancemethod(_C.expand) | |
| torch.Tensor.index = _C._instancemethod(_C.index) | |
| wrap_type(use_c, _Tensor, torch.Tensor, _Tensor.__torch_function__) | |
| del _Tensor.ndim | |
| if use_c: | |
| _Tensor.order = _C._instancemethod(_C.order) | |
| else: | |
| _Tensor.order = reference.positional | |
| _def("mean") | |
| _def("sum") | |
| _def("all") | |
| _def("amax") | |
| _def("amin") | |
| _def("aminmax") | |
| _def("any") | |
| _def("count_nonzero") | |
| _def("logsumexp") | |
| _def("nanmean") | |
| _def("nansum") | |
| _def("prod") | |
| _def("std", keepdim_offset=2) | |
| _def("var", keepdim_offset=2) | |
| _def("max", single_dim=True) | |
| _def("min", single_dim=True) | |
| _def("argmax", single_dim=True) | |
| _def("argmin", single_dim=True) | |
| _def("kthvalue", single_dim=True) | |
| _def("median", single_dim=True) | |
| _def("nanmedian", single_dim=True) | |
| _def("mode", single_dim=True) | |
| _def("sort", reduce=False) | |
| _def("argsort", reduce=False) | |
| _def("unbind", single_dim=True) | |
| _def("chunk", dim_offset=1, reduce=False) | |
| _def("cummax", single_dim=True, reduce=False) | |
| _def("cummin", single_dim=True, reduce=False) | |
| _def("cumprod", single_dim=True, reduce=False) | |
| _def("cumprod_", single_dim=True, reduce=False) | |
| _def("cumsum", single_dim=True, reduce=False) | |
| _def("cumsum_", single_dim=True, reduce=False) | |
| _def("logcumsumexp", single_dim=True, reduce=False) | |
| _def("renorm", dim_offset=1, single_dim=True, reduce=False) | |
| _def("softmax", single_dim=True, reduce=False) | |
| softmax = _wrap(torch.nn.functional.softmax, single_dim=True, reduce=False) | |
| # stuff to handle in the future, because they require special | |
| # binding logic for dims | |
| # cross | |
| # diag_embed | |
| # diagonal | |
| # diagonal_scatter | |
| # diff | |
| # nanquantile | |
| # quantile | |
| # roll | |
| # rot90 | |
| # topk (new dimes on output) | |
| # should these all be subsumed by inplace indexing? | |
| # index_add_ | |
| # index_add | |
| # index_copy | |
| # index_copy_ | |
| # index_fill | |
| # index_fill_ | |
| # index_select | |
| # scatter | |
| # scatter_ | |
| # scatter_add | |
| # scatter_add_ | |
| # scatter_reduce | |