# Modified from https://github.com/Wan-Video/Wan2.1/blob/main/wan/modules/model.py # Copyright 2024-2025 The Alibaba Wan Team Authors. All rights reserved. import glob import json import math import os import warnings from typing import Any, Dict import torch import torch.cuda.amp as amp import torch.nn as nn from diffusers.configuration_utils import ConfigMixin, register_to_config from diffusers.loaders.single_file_model import FromOriginalModelMixin from diffusers.models.modeling_utils import ModelMixin from diffusers.utils import is_torch_version, logging from torch import nn try: import flash_attn_interface FLASH_ATTN_3_AVAILABLE = True except ModuleNotFoundError: FLASH_ATTN_3_AVAILABLE = False try: import flash_attn FLASH_ATTN_2_AVAILABLE = True except ModuleNotFoundError: FLASH_ATTN_2_AVAILABLE = False def flash_attention( q, k, v, q_lens=None, k_lens=None, dropout_p=0., softmax_scale=None, q_scale=None, causal=False, window_size=(-1, -1), deterministic=False, dtype=torch.bfloat16, version=None, ): """ q: [B, Lq, Nq, C1]. k: [B, Lk, Nk, C1]. v: [B, Lk, Nk, C2]. Nq must be divisible by Nk. q_lens: [B]. k_lens: [B]. dropout_p: float. Dropout probability. softmax_scale: float. The scaling of QK^T before applying softmax. causal: bool. Whether to apply causal attention mask. window_size: (left right). If not (-1, -1), apply sliding window local attention. deterministic: bool. If True, slightly slower and uses more memory. dtype: torch.dtype. Apply when dtype of q/k/v is not float16/bfloat16. """ half_dtypes = (torch.float16, torch.bfloat16) assert dtype in half_dtypes assert q.device.type == 'cuda' and q.size(-1) <= 256 # params b, lq, lk, out_dtype = q.size(0), q.size(1), k.size(1), q.dtype def half(x): return x if x.dtype in half_dtypes else x.to(dtype) # preprocess query if q_lens is None: q = half(q.flatten(0, 1)) q_lens = torch.tensor( [lq] * b, dtype=torch.int32).to( device=q.device, non_blocking=True) else: q = half(torch.cat([u[:v] for u, v in zip(q, q_lens)])) # preprocess key, value if k_lens is None: k = half(k.flatten(0, 1)) v = half(v.flatten(0, 1)) k_lens = torch.tensor( [lk] * b, dtype=torch.int32).to( device=k.device, non_blocking=True) else: k = half(torch.cat([u[:v] for u, v in zip(k, k_lens)])) v = half(torch.cat([u[:v] for u, v in zip(v, k_lens)])) q = q.to(v.dtype) k = k.to(v.dtype) if q_scale is not None: q = q * q_scale if version is not None and version == 3 and not FLASH_ATTN_3_AVAILABLE: warnings.warn( 'Flash attention 3 is not available, use flash attention 2 instead.' ) # apply attention if (version is None or version == 3) and FLASH_ATTN_3_AVAILABLE: # Note: dropout_p, window_size are not supported in FA3 now. x = flash_attn_interface.flash_attn_varlen_func( q=q, k=k, v=v, cu_seqlens_q=torch.cat([q_lens.new_zeros([1]), q_lens]).cumsum( 0, dtype=torch.int32).to(q.device, non_blocking=True), cu_seqlens_k=torch.cat([k_lens.new_zeros([1]), k_lens]).cumsum( 0, dtype=torch.int32).to(q.device, non_blocking=True), seqused_q=None, seqused_k=None, max_seqlen_q=lq, max_seqlen_k=lk, softmax_scale=softmax_scale, causal=causal, deterministic=deterministic)[0].unflatten(0, (b, lq)) else: assert FLASH_ATTN_2_AVAILABLE x = flash_attn.flash_attn_varlen_func( q=q, k=k, v=v, cu_seqlens_q=torch.cat([q_lens.new_zeros([1]), q_lens]).cumsum( 0, dtype=torch.int32).to(q.device, non_blocking=True), cu_seqlens_k=torch.cat([k_lens.new_zeros([1]), k_lens]).cumsum( 0, dtype=torch.int32).to(q.device, non_blocking=True), max_seqlen_q=lq, max_seqlen_k=lk, dropout_p=dropout_p, softmax_scale=softmax_scale, causal=causal, window_size=window_size, deterministic=deterministic).unflatten(0, (b, lq)) # output return x.type(out_dtype) def attention( q, k, v, q_lens=None, k_lens=None, dropout_p=0., softmax_scale=None, q_scale=None, causal=False, window_size=(-1, -1), deterministic=False, dtype=torch.bfloat16, fa_version=None, ): if FLASH_ATTN_2_AVAILABLE or FLASH_ATTN_3_AVAILABLE: return flash_attention( q=q, k=k, v=v, q_lens=q_lens, k_lens=k_lens, dropout_p=dropout_p, softmax_scale=softmax_scale, q_scale=q_scale, causal=causal, window_size=window_size, deterministic=deterministic, dtype=dtype, version=fa_version, ) else: if q_lens is not None or k_lens is not None: warnings.warn( 'Padding mask is disabled when using scaled_dot_product_attention. It can have a significant impact on performance.' ) attn_mask = None q = q.transpose(1, 2) k = k.transpose(1, 2) v = v.transpose(1, 2) out = torch.nn.functional.scaled_dot_product_attention( q, k, v, attn_mask=attn_mask, is_causal=causal, dropout_p=dropout_p) out = out.transpose(1, 2).contiguous() return out def sinusoidal_embedding_1d(dim, position): # preprocess assert dim % 2 == 0 half = dim // 2 position = position.type(torch.float64) # calculation sinusoid = torch.outer( position, torch.pow(10000, -torch.arange(half).to(position).div(half))) x = torch.cat([torch.cos(sinusoid), torch.sin(sinusoid)], dim=1) return x @amp.autocast(enabled=False) def rope_params(max_seq_len, dim, theta=10000): assert dim % 2 == 0 freqs = torch.outer( torch.arange(max_seq_len), 1.0 / torch.pow(theta, torch.arange(0, dim, 2).to(torch.float64).div(dim))) freqs = torch.polar(torch.ones_like(freqs), freqs) return freqs @amp.autocast(enabled=False) def rope_apply(x, grid_sizes, freqs): n, c = x.size(2), x.size(3) // 2 # split freqs freqs = freqs.split([c - 2 * (c // 3), c // 3, c // 3], dim=1) # loop over samples output = [] for i, (f, h, w) in enumerate(grid_sizes.tolist()): seq_len = f * h * w # precompute multipliers x_i = torch.view_as_complex(x[i, :seq_len].to(torch.float32).reshape( seq_len, n, -1, 2)) freqs_i = torch.cat([ freqs[0][:f].view(f, 1, 1, -1).expand(f, h, w, -1), freqs[1][:h].view(1, h, 1, -1).expand(f, h, w, -1), freqs[2][:w].view(1, 1, w, -1).expand(f, h, w, -1) ], dim=-1).reshape(seq_len, 1, -1) # apply rotary embedding x_i = torch.view_as_real(x_i * freqs_i).flatten(2) x_i = torch.cat([x_i, x[i, seq_len:]]) # append to collection output.append(x_i) return torch.stack(output).float() class WanRMSNorm(nn.Module): def __init__(self, dim, eps=1e-5): super().__init__() self.dim = dim self.eps = eps self.weight = nn.Parameter(torch.ones(dim)) def forward(self, x): r""" Args: x(Tensor): Shape [B, L, C] """ return self._norm(x.float()).type_as(x) * self.weight def _norm(self, x): return x * torch.rsqrt(x.pow(2).mean(dim=-1, keepdim=True) + self.eps) class WanLayerNorm(nn.LayerNorm): def __init__(self, dim, eps=1e-6, elementwise_affine=False): super().__init__(dim, elementwise_affine=elementwise_affine, eps=eps) def forward(self, x): r""" Args: x(Tensor): Shape [B, L, C] """ return super().forward(x.float()).type_as(x) class WanSelfAttention(nn.Module): def __init__(self, dim, num_heads, window_size=(-1, -1), qk_norm=True, eps=1e-6): assert dim % num_heads == 0 super().__init__() self.dim = dim self.num_heads = num_heads self.head_dim = dim // num_heads self.window_size = window_size self.qk_norm = qk_norm self.eps = eps # layers self.q = nn.Linear(dim, dim) self.k = nn.Linear(dim, dim) self.v = nn.Linear(dim, dim) self.o = nn.Linear(dim, dim) self.norm_q = WanRMSNorm(dim, eps=eps) if qk_norm else nn.Identity() self.norm_k = WanRMSNorm(dim, eps=eps) if qk_norm else nn.Identity() def forward(self, x, seq_lens, grid_sizes, freqs, dtype): r""" Args: x(Tensor): Shape [B, L, num_heads, C / num_heads] seq_lens(Tensor): Shape [B] grid_sizes(Tensor): Shape [B, 3], the second dimension contains (F, H, W) freqs(Tensor): Rope freqs, shape [1024, C / num_heads / 2] """ b, s, n, d = *x.shape[:2], self.num_heads, self.head_dim # query, key, value function def qkv_fn(x): q = self.norm_q(self.q(x)).view(b, s, n, d) k = self.norm_k(self.k(x)).view(b, s, n, d) v = self.v(x).view(b, s, n, d) return q, k, v q, k, v = qkv_fn(x) x = attention( q=rope_apply(q, grid_sizes, freqs).to(dtype), k=rope_apply(k, grid_sizes, freqs).to(dtype), v=v.to(dtype), k_lens=seq_lens, window_size=self.window_size) x = x.to(dtype) # output x = x.flatten(2) x = self.o(x) return x class WanT2VCrossAttention(WanSelfAttention): def forward(self, x, context, context_lens): r""" Args: x(Tensor): Shape [B, L1, C] context(Tensor): Shape [B, L2, C] context_lens(Tensor): Shape [B] """ b, n, d = x.size(0), self.num_heads, self.head_dim # compute query, key, value q = self.norm_q(self.q(x)).view(b, -1, n, d) k = self.norm_k(self.k(context)).view(b, -1, n, d) v = self.v(context).view(b, -1, n, d) # compute attention x = attention(q, k, v, k_lens=context_lens) # output x = x.flatten(2) x = self.o(x) return x class WanI2VCrossAttention(WanSelfAttention): def __init__(self, dim, num_heads, window_size=(-1, -1), qk_norm=True, eps=1e-6): super().__init__(dim, num_heads, window_size, qk_norm, eps) self.k_img = nn.Linear(dim, dim) self.v_img = nn.Linear(dim, dim) # self.alpha = nn.Parameter(torch.zeros((1, ))) self.norm_k_img = WanRMSNorm(dim, eps=eps) if qk_norm else nn.Identity() def forward(self, x, context, context_lens): r""" Args: x(Tensor): Shape [B, L1, C] context(Tensor): Shape [B, L2, C] context_lens(Tensor): Shape [B] """ context_img = context[:, :257] context = context[:, 257:] b, n, d = x.size(0), self.num_heads, self.head_dim # compute query, key, value q = self.norm_q(self.q(x)).view(b, -1, n, d) k = self.norm_k(self.k(context)).view(b, -1, n, d) v = self.v(context).view(b, -1, n, d) k_img = self.norm_k_img(self.k_img(context_img)).view(b, -1, n, d) v_img = self.v_img(context_img).view(b, -1, n, d) img_x = attention(q, k_img, v_img, k_lens=None) # compute attention x = attention(q, k, v, k_lens=context_lens) # output x = x.flatten(2) img_x = img_x.flatten(2) x = x + img_x x = self.o(x) return x WAN_CROSSATTENTION_CLASSES = { 't2v_cross_attn': WanT2VCrossAttention, 'i2v_cross_attn': WanI2VCrossAttention, } class WanAttentionBlock(nn.Module): def __init__(self, cross_attn_type, dim, ffn_dim, num_heads, window_size=(-1, -1), qk_norm=True, cross_attn_norm=False, eps=1e-6): super().__init__() self.dim = dim self.ffn_dim = ffn_dim self.num_heads = num_heads self.window_size = window_size self.qk_norm = qk_norm self.cross_attn_norm = cross_attn_norm self.eps = eps # layers self.norm1 = WanLayerNorm(dim, eps) self.self_attn = WanSelfAttention(dim, num_heads, window_size, qk_norm, eps) self.norm3 = WanLayerNorm( dim, eps, elementwise_affine=True) if cross_attn_norm else nn.Identity() self.cross_attn = WAN_CROSSATTENTION_CLASSES[cross_attn_type](dim, num_heads, (-1, -1), qk_norm, eps) self.norm2 = WanLayerNorm(dim, eps) self.ffn = nn.Sequential( nn.Linear(dim, ffn_dim), nn.GELU(approximate='tanh'), nn.Linear(ffn_dim, dim)) # modulation self.modulation = nn.Parameter(torch.randn(1, 6, dim) / dim**0.5) def forward( self, x, e, seq_lens, grid_sizes, freqs, context, context_lens, dtype=torch.float32 ): r""" Args: x(Tensor): Shape [B, L, C] e(Tensor): Shape [B, 6, C] seq_lens(Tensor): Shape [B], length of each sequence in batch grid_sizes(Tensor): Shape [B, 3], the second dimension contains (F, H, W) freqs(Tensor): Rope freqs, shape [1024, C / num_heads / 2] """ e = (self.modulation + e).chunk(6, dim=1) # self-attention temp_x = self.norm1(x) * (1 + e[1]) + e[0] temp_x = temp_x.to(dtype) y = self.self_attn(temp_x, seq_lens, grid_sizes, freqs, dtype) x = x + y * e[2] # cross-attention & ffn function def cross_attn_ffn(x, context, context_lens, e): x = x + self.cross_attn(self.norm3(x), context, context_lens) temp_x = self.norm2(x) * (1 + e[4]) + e[3] temp_x = temp_x.to(dtype) y = self.ffn(temp_x) x = x + y * e[5] return x x = cross_attn_ffn(x, context, context_lens, e) return x class Head(nn.Module): def __init__(self, dim, out_dim, patch_size, eps=1e-6): super().__init__() self.dim = dim self.out_dim = out_dim self.patch_size = patch_size self.eps = eps # layers out_dim = math.prod(patch_size) * out_dim self.norm = WanLayerNorm(dim, eps) self.head = nn.Linear(dim, out_dim) # modulation self.modulation = nn.Parameter(torch.randn(1, 2, dim) / dim**0.5) def forward(self, x, e): r""" Args: x(Tensor): Shape [B, L1, C] e(Tensor): Shape [B, C] """ e = (self.modulation + e.unsqueeze(1)).chunk(2, dim=1) x = (self.head(self.norm(x) * (1 + e[1]) + e[0])) return x class MLPProj(torch.nn.Module): def __init__(self, in_dim, out_dim): super().__init__() self.proj = torch.nn.Sequential( torch.nn.LayerNorm(in_dim), torch.nn.Linear(in_dim, in_dim), torch.nn.GELU(), torch.nn.Linear(in_dim, out_dim), torch.nn.LayerNorm(out_dim)) def forward(self, image_embeds): clip_extra_context_tokens = self.proj(image_embeds) return clip_extra_context_tokens class WanTransformer3DModel(ModelMixin, ConfigMixin, FromOriginalModelMixin): r""" Wan diffusion backbone supporting both text-to-video and image-to-video. """ # ignore_for_config = [ # 'patch_size', 'cross_attn_norm', 'qk_norm', 'text_dim', 'window_size' # ] # _no_split_modules = ['WanAttentionBlock'] _supports_gradient_checkpointing = True @register_to_config def __init__( self, model_type='t2v', patch_size=(1, 2, 2), text_len=512, in_dim=16, dim=2048, ffn_dim=8192, freq_dim=256, text_dim=4096, out_dim=16, num_heads=16, num_layers=32, window_size=(-1, -1), qk_norm=True, cross_attn_norm=True, eps=1e-6, in_channels=16, hidden_size=2048, ): r""" Initialize the diffusion model backbone. Args: model_type (`str`, *optional*, defaults to 't2v'): Model variant - 't2v' (text-to-video) or 'i2v' (image-to-video) patch_size (`tuple`, *optional*, defaults to (1, 2, 2)): 3D patch dimensions for video embedding (t_patch, h_patch, w_patch) text_len (`int`, *optional*, defaults to 512): Fixed length for text embeddings in_dim (`int`, *optional*, defaults to 16): Input video channels (C_in) dim (`int`, *optional*, defaults to 2048): Hidden dimension of the transformer ffn_dim (`int`, *optional*, defaults to 8192): Intermediate dimension in feed-forward network freq_dim (`int`, *optional*, defaults to 256): Dimension for sinusoidal time embeddings text_dim (`int`, *optional*, defaults to 4096): Input dimension for text embeddings out_dim (`int`, *optional*, defaults to 16): Output video channels (C_out) num_heads (`int`, *optional*, defaults to 16): Number of attention heads num_layers (`int`, *optional*, defaults to 32): Number of transformer blocks window_size (`tuple`, *optional*, defaults to (-1, -1)): Window size for local attention (-1 indicates global attention) qk_norm (`bool`, *optional*, defaults to True): Enable query/key normalization cross_attn_norm (`bool`, *optional*, defaults to False): Enable cross-attention normalization eps (`float`, *optional*, defaults to 1e-6): Epsilon value for normalization layers """ super().__init__() assert model_type in ['t2v', 'i2v'] self.model_type = model_type self.patch_size = patch_size self.text_len = text_len self.in_dim = in_dim self.dim = dim self.ffn_dim = ffn_dim self.freq_dim = freq_dim self.text_dim = text_dim self.out_dim = out_dim self.num_heads = num_heads self.num_layers = num_layers self.window_size = window_size self.qk_norm = qk_norm self.cross_attn_norm = cross_attn_norm self.eps = eps # embeddings self.patch_embedding = nn.Conv3d( in_dim, dim, kernel_size=patch_size, stride=patch_size) self.text_embedding = nn.Sequential( nn.Linear(text_dim, dim), nn.GELU(approximate='tanh'), nn.Linear(dim, dim)) self.time_embedding = nn.Sequential( nn.Linear(freq_dim, dim), nn.SiLU(), nn.Linear(dim, dim)) self.time_projection = nn.Sequential(nn.SiLU(), nn.Linear(dim, dim * 6)) # blocks cross_attn_type = 't2v_cross_attn' if model_type == 't2v' else 'i2v_cross_attn' self.blocks = nn.ModuleList([ WanAttentionBlock(cross_attn_type, dim, ffn_dim, num_heads, window_size, qk_norm, cross_attn_norm, eps) for _ in range(num_layers) ]) # head self.head = Head(dim, out_dim, patch_size, eps) # buffers (don't use register_buffer otherwise dtype will be changed in to()) assert (dim % num_heads) == 0 and (dim // num_heads) % 2 == 0 d = dim // num_heads self.freqs = torch.cat( [ rope_params(1024, d - 4 * (d // 6)), rope_params(1024, 2 * (d // 6)), rope_params(1024, 2 * (d // 6)) ], dim=1 ) if model_type == 'i2v': self.img_emb = MLPProj(1280, dim) self.gradient_checkpointing = False def _set_gradient_checkpointing(self, module, value=False): self.gradient_checkpointing = value def forward( self, x, t, context, seq_len, clip_fea=None, y=None, ): r""" Forward pass through the diffusion model Args: x (List[Tensor]): List of input video tensors, each with shape [C_in, F, H, W] t (Tensor): Diffusion timesteps tensor of shape [B] context (List[Tensor]): List of text embeddings each with shape [L, C] seq_len (`int`): Maximum sequence length for positional encoding clip_fea (Tensor, *optional*): CLIP image features for image-to-video mode y (List[Tensor], *optional*): Conditional video inputs for image-to-video mode, same shape as x Returns: List[Tensor]: List of denoised video tensors with original input shapes [C_out, F, H / 8, W / 8] """ if self.model_type == 'i2v': assert clip_fea is not None and y is not None # params device = self.patch_embedding.weight.device dtype = x.dtype if self.freqs.device != device and torch.device(type="meta") != device: self.freqs = self.freqs.to(device) if y is not None: x = [torch.cat([u, v], dim=0) for u, v in zip(x, y)] # embeddings x = [self.patch_embedding(u.unsqueeze(0)) for u in x] grid_sizes = torch.stack( [torch.tensor(u.shape[2:], dtype=torch.long) for u in x]) x = [u.flatten(2).transpose(1, 2) for u in x] seq_lens = torch.tensor([u.size(1) for u in x], dtype=torch.long) assert seq_lens.max() <= seq_len x = torch.cat([ torch.cat([u, u.new_zeros(1, seq_len - u.size(1), u.size(2))], dim=1) for u in x ]) # time embeddings with amp.autocast(dtype=torch.float32): e = self.time_embedding( sinusoidal_embedding_1d(self.freq_dim, t).float()) e0 = self.time_projection(e).unflatten(1, (6, self.dim)) assert e.dtype == torch.float32 and e0.dtype == torch.float32 # to bfloat16 for saving memeory e0 = e0.to(dtype) e = e.to(dtype) # context context_lens = None context = self.text_embedding( torch.stack([ torch.cat( [u, u.new_zeros(self.text_len - u.size(0), u.size(1))]) for u in context ])) if clip_fea is not None: context_clip = self.img_emb(clip_fea) # bs x 257 x dim context = torch.concat([context_clip, context], dim=1) for block in self.blocks: if self.training and self.gradient_checkpointing: def create_custom_forward(module): def custom_forward(*inputs): return module(*inputs) return custom_forward ckpt_kwargs: Dict[str, Any] = {"use_reentrant": False} if is_torch_version(">=", "1.11.0") else {} x = torch.utils.checkpoint.checkpoint( create_custom_forward(block), x, e0, seq_lens, grid_sizes, self.freqs, context, context_lens, dtype, **ckpt_kwargs, ) else: # arguments kwargs = dict( e=e0, seq_lens=seq_lens, grid_sizes=grid_sizes, freqs=self.freqs, context=context, context_lens=context_lens, dtype=dtype ) x = block(x, **kwargs) # head x = self.head(x, e) # unpatchify x = self.unpatchify(x, grid_sizes) x = torch.stack(x) return x def unpatchify(self, x, grid_sizes): r""" Reconstruct video tensors from patch embeddings. Args: x (List[Tensor]): List of patchified features, each with shape [L, C_out * prod(patch_size)] grid_sizes (Tensor): Original spatial-temporal grid dimensions before patching, shape [B, 3] (3 dimensions correspond to F_patches, H_patches, W_patches) Returns: List[Tensor]: Reconstructed video tensors with shape [C_out, F, H / 8, W / 8] """ c = self.out_dim out = [] for u, v in zip(x, grid_sizes.tolist()): u = u[:math.prod(v)].view(*v, *self.patch_size, c) u = torch.einsum('fhwpqrc->cfphqwr', u) u = u.reshape(c, *[i * j for i, j in zip(v, self.patch_size)]) out.append(u) return out def init_weights(self): r""" Initialize model parameters using Xavier initialization. """ # basic init for m in self.modules(): if isinstance(m, nn.Linear): nn.init.xavier_uniform_(m.weight) if m.bias is not None: nn.init.zeros_(m.bias) # init embeddings nn.init.xavier_uniform_(self.patch_embedding.weight.flatten(1)) for m in self.text_embedding.modules(): if isinstance(m, nn.Linear): nn.init.normal_(m.weight, std=.02) for m in self.time_embedding.modules(): if isinstance(m, nn.Linear): nn.init.normal_(m.weight, std=.02) # init output layer nn.init.zeros_(self.head.head.weight) @classmethod def from_pretrained( cls, pretrained_model_path, subfolder=None, transformer_additional_kwargs={}, low_cpu_mem_usage=False, torch_dtype=torch.bfloat16 ): if subfolder is not None: pretrained_model_path = os.path.join(pretrained_model_path, subfolder) print(f"loaded 3D transformer's pretrained weights from {pretrained_model_path} ...") config_file = os.path.join(pretrained_model_path, 'config.json') if not os.path.isfile(config_file): raise RuntimeError(f"{config_file} does not exist") with open(config_file, "r") as f: config = json.load(f) from diffusers.utils import WEIGHTS_NAME model_file = os.path.join(pretrained_model_path, WEIGHTS_NAME) model_file_safetensors = model_file.replace(".bin", ".safetensors") if "dict_mapping" in transformer_additional_kwargs.keys(): for key in transformer_additional_kwargs["dict_mapping"]: transformer_additional_kwargs[transformer_additional_kwargs["dict_mapping"][key]] = config[key] if low_cpu_mem_usage: try: import re from diffusers.models.modeling_utils import \ load_model_dict_into_meta from diffusers.utils import is_accelerate_available if is_accelerate_available(): import accelerate # Instantiate model with empty weights with accelerate.init_empty_weights(): model = cls.from_config(config, **transformer_additional_kwargs) param_device = "cpu" if os.path.exists(model_file): state_dict = torch.load(model_file, map_location="cpu") elif os.path.exists(model_file_safetensors): from safetensors.torch import load_file, safe_open state_dict = load_file(model_file_safetensors) else: from safetensors.torch import load_file, safe_open model_files_safetensors = glob.glob(os.path.join(pretrained_model_path, "*.safetensors")) state_dict = {} print(model_files_safetensors) for _model_file_safetensors in model_files_safetensors: _state_dict = load_file(_model_file_safetensors) for key in _state_dict: state_dict[key] = _state_dict[key] model._convert_deprecated_attention_blocks(state_dict) # move the params from meta device to cpu missing_keys = set(model.state_dict().keys()) - set(state_dict.keys()) if len(missing_keys) > 0: raise ValueError( f"Cannot load {cls} from {pretrained_model_path} because the following keys are" f" missing: \n {', '.join(missing_keys)}. \n Please make sure to pass" " `low_cpu_mem_usage=False` and `device_map=None` if you want to randomly initialize" " those weights or else make sure your checkpoint file is correct." ) unexpected_keys = load_model_dict_into_meta( model, state_dict, device=param_device, dtype=torch_dtype, model_name_or_path=pretrained_model_path, ) if cls._keys_to_ignore_on_load_unexpected is not None: for pat in cls._keys_to_ignore_on_load_unexpected: unexpected_keys = [k for k in unexpected_keys if re.search(pat, k) is None] if len(unexpected_keys) > 0: print( f"Some weights of the model checkpoint were not used when initializing {cls.__name__}: \n {[', '.join(unexpected_keys)]}" ) return model except Exception as e: print( f"The low_cpu_mem_usage mode is not work because {e}. Use low_cpu_mem_usage=False instead." ) model = cls.from_config(config, **transformer_additional_kwargs) if os.path.exists(model_file): state_dict = torch.load(model_file, map_location="cpu") elif os.path.exists(model_file_safetensors): from safetensors.torch import load_file, safe_open state_dict = load_file(model_file_safetensors) else: from safetensors.torch import load_file, safe_open model_files_safetensors = glob.glob(os.path.join(pretrained_model_path, "*.safetensors")) state_dict = {} for _model_file_safetensors in model_files_safetensors: _state_dict = load_file(_model_file_safetensors) for key in _state_dict: state_dict[key] = _state_dict[key] if model.state_dict()['patch_embedding.weight'].size() != state_dict['patch_embedding.weight'].size(): model.state_dict()['patch_embedding.weight'][:, :state_dict['patch_embedding.weight'].size()[1], :, :] = state_dict['patch_embedding.weight'] model.state_dict()['patch_embedding.weight'][:, state_dict['patch_embedding.weight'].size()[1]:, :, :] = 0 state_dict['patch_embedding.weight'] = model.state_dict()['patch_embedding.weight'] tmp_state_dict = {} for key in state_dict: if key in model.state_dict().keys() and model.state_dict()[key].size() == state_dict[key].size(): tmp_state_dict[key] = state_dict[key] else: print(key, "Size don't match, skip") state_dict = tmp_state_dict m, u = model.load_state_dict(state_dict, strict=False) print(f"### missing keys: {len(m)}; \n### unexpected keys: {len(u)};") print(m) params = [p.numel() if "." in n else 0 for n, p in model.named_parameters()] print(f"### All Parameters: {sum(params) / 1e6} M") params = [p.numel() if "attn1." in n else 0 for n, p in model.named_parameters()] print(f"### attn1 Parameters: {sum(params) / 1e6} M") model = model.to(torch_dtype) return model