Spaces:
Build error
Build error
| import os | |
| import math | |
| import time | |
| from typing import Type, Dict, Any, Tuple, Callable | |
| import numpy as np | |
| from einops import rearrange, repeat | |
| import torch | |
| import torch.nn.functional as F | |
| from . import merge | |
| from .utils import isinstance_str, init_generator, join_frame, split_frame, func_warper, join_warper, split_warper | |
| def compute_merge(module: torch.nn.Module, x: torch.Tensor, tome_info: Dict[str, Any]) -> Tuple[Callable, ...]: | |
| H, original_w = tome_info["size"] | |
| # original_tokens = original_h * original_w | |
| # downsample = int(math.ceil(math.sqrt(original_tokens // x.shape[1]))) | |
| downsample = tome_info["args"]["downsample"] | |
| args = tome_info["args"] | |
| # generator = module.generator | |
| # Frame Number and Token Number | |
| fsize = x.shape[0] // args["batch_size"] | |
| tsize = x.shape[1] | |
| # Merge tokens in high resolution layers | |
| # print(f"[INFO] {args['current_step']} downsample {downsample} time") | |
| mid = x.shape[0] // 2 | |
| ''' visualize token correspondence ''' | |
| label = args["label"].split('_') | |
| # os.makedirs(os.path.join("token_0204_dis", str(args["current_step"])), exist_ok=True) | |
| # os.makedirs(os.path.join("token_0204_dis", str(args["current_step"]), label[0]), exist_ok=True) | |
| # out = os.path.join("token_0204_dis", str(args["current_step"]), label[0], f"correspondence_{label[1]}_{downsample}.png") | |
| # merge.visualize_correspondence(x[0][None], x[mid][None], ratio=0.2, H=H, out=out) | |
| # corres_dir = "corres_no_dis_4" | |
| # os.makedirs(corres_dir, exist_ok=True) | |
| # if downsample == 1 and label[0] == "unet" and label[1] == "down": | |
| # # merge.visualize_flow_correspondence(x[3][None], x[mid][None], flow=args["controller"].step_store["flows"][3], flow_confid=args["controller"].step_store["flow_confids"][3], \ | |
| # # ratio=0.1, H=(64//downsample), out=f"flow_{label[1]}_{args['current_step']}.png") | |
| # files = os.listdir(corres_dir) | |
| # files = [f for f in files if f.startswith(f"{args['current_step']}")] | |
| # print(files) | |
| # cnt = len(files) | |
| # # if files: | |
| # # cnt = int(files[-1].split('_')[1].split('.')[0]) + 1 | |
| # # else: | |
| # # cnt = 0 | |
| # path = os.path.join(corres_dir, f"{args['current_step']}_{cnt}.png") | |
| # # merge.visualize_cosine_correspondence(x[3][None], x[mid][None], flow=args["controller"].step_store["flows"][3], flow_confid=args["controller"].step_store["flow_confids"][3], \ | |
| # # ratio=0.1, H=(64//downsample), out=path, controller=args["controller"]) | |
| # merge.visualize_correspondence(x[1][None], x[mid][None], flow=args["controller"].step_store["flows"][1], flow_confid=args["controller"].step_store["flow_confids"][1], \ | |
| # ratio=0.1, H=(64//downsample), out=path, controller=args["controller"]) | |
| # #ratio=args["local_merge_ratio"], H=(64//downsample), out=f"flow_correspondence.png") | |
| ''' visulaize token correspondence ended ''' | |
| if downsample <= args["max_downsample"] and downsample > args["min_downsample"]: | |
| # print(f"[INFO] downsample: {args['min_downsample']} < {downsample} <= {args['max_downsample']} token shape: {x.shape} H: {H}") | |
| if args["generator"] is None: | |
| args["generator"] = init_generator(x.device) | |
| # module.generator = module.generator.manual_seed(123) | |
| elif args["generator"].device != x.device: | |
| args["generator"] = init_generator(x.device, fallback=args["generator"]) | |
| # Local Token Merging! | |
| local_tokens = join_frame(x, fsize) | |
| m_ls = [join_warper(fsize)] | |
| u_ls = [split_warper(fsize)] | |
| unm = 0 | |
| curF = fsize | |
| # Recursive merge multi-frame tokens into one set. Such as 4->1 for 4 frames and 8->2->1 for 8 frames when target stride is 4. | |
| while curF > 1: | |
| current_step = args["current_step"] | |
| if args["controller"] is not None: | |
| controller, total_step = args["controller"], args["controller"].total_step | |
| else: | |
| controller, total_step = None, 1000 | |
| if controller is not None and label[0] == "unet" and label[1] == "down": | |
| print(f"[INFO] flow merge @ {label[0]} {label[1]} {downsample}") | |
| start = time.time() | |
| m, u, ret_dict = merge.bipartite_soft_matching_randframe( | |
| local_tokens, curF, args["local_merge_ratio"], unm, generator=args["generator"], | |
| target_stride=x.shape[0], align_batch=args["align_batch"], | |
| H=H, | |
| flow_merge=True, | |
| controller=controller, | |
| ) | |
| else: | |
| m, u, ret_dict = merge.bipartite_soft_matching_randframe( | |
| local_tokens, curF, args["local_merge_ratio"], unm, generator=args["generator"], | |
| target_stride=x.shape[0], align_batch=args["align_batch"], | |
| H=H, | |
| flow_merge=False, | |
| controller=controller, | |
| ) | |
| # if controller is not None and label[1] == "up" and \ | |
| # controller.merge_period[0] > 0 and \ | |
| # (current_step + 5) >= min(controller.ToMe_period[1], controller.merge_period[0]) * total_step: | |
| # # or current_step == int(controller.ToMe_period[1] * total_step)): | |
| # print(f"[INFO] setting controller merge @ step {current_step} {label} {downsample}") | |
| # # ret_dict["scores"].repeat(1, 4, 4) | |
| # # import time | |
| # # start = time.time() | |
| # scores = ret_dict["scores"] | |
| # if downsample > 1: | |
| # scores = rearrange(scores, "1 (b h1 w1) (h2 w2) -> b h1 w1 h2 w2", h1=H, h2=H, b=fsize-1) | |
| # scores = scores.repeat_interleave(downsample, dim=-1).repeat_interleave(downsample, dim=-2) | |
| # scores = scores.repeat_interleave(downsample, dim=1).repeat_interleave(downsample, dim=2) | |
| # scores = rearrange(scores, "b h1 w1 h2 w2 -> 1 (b h1 w1) (h2 w2)") | |
| # # print(f"[INFO] repeat time {time.time() - start}") | |
| # # import ipdb; ipdb.set_trace() | |
| # # merge.visualize_correspondence_score(x[0][None], x[mid][None], score=ret_dict["scores"][:,:tsize], ratio=0.5, H=H, out="latent_correspondence_1.png") | |
| # # merge.visualize_correspondence_score(x[0][None], x[mid][None], score=controller.step_store["corres_scores"][:,:tsize], ratio=0.5, H=H, out="latent_correspondence_1.png") | |
| # if controller.step_store["corres_scores"] is None: | |
| # controller.step_store["corres_scores"] = scores | |
| # else: | |
| # controller.step_store["corres_scores"] += scores | |
| unm += ret_dict["unm_num"] | |
| m_ls.append(m) | |
| u_ls.append(u) | |
| local_tokens = m(local_tokens) | |
| # assert (x.shape[1] - unm) % tsize == 0 | |
| # Total token number = current frame number * per-frame token number + unmerged token number | |
| curF = (local_tokens.shape[1] - unm) // tsize | |
| # print(f"[INFO] curF {curF}") | |
| merged_tokens = local_tokens | |
| # Global Token Merging! | |
| if args["merge_global"]: | |
| if hasattr(module, "global_tokens") and module.global_tokens is not None: | |
| # Merge local tokens with global tokens. Randomly determine merging destination. | |
| if torch.rand(1, generator=args["generator"], device=args["generator"].device) > args["global_rand"]: | |
| src_len = local_tokens.shape[1] | |
| tokens = torch.cat( | |
| [local_tokens, module.global_tokens.to(local_tokens)], dim=1) | |
| local_chunk = 0 | |
| else: | |
| src_len = module.global_tokens.shape[1] | |
| tokens = torch.cat( | |
| [module.global_tokens.to(local_tokens), local_tokens], dim=1) | |
| local_chunk = 1 | |
| m, u, _ = merge.bipartite_soft_matching_2s( | |
| tokens, src_len, args["global_merge_ratio"], args["align_batch"], unmerge_chunk=local_chunk) | |
| merged_tokens = m(tokens) | |
| # print(f"[INFO] global merging {local_tokens.shape} {tokens.shape} {merged_tokens.shape}") | |
| # import ipdb; ipdb.set_trace() | |
| m_ls.append(m) | |
| u_ls.append(u) | |
| # Update global tokens with unmerged local tokens. There should be a better way to do this. | |
| module.global_tokens = u(merged_tokens).detach().clone().cpu() | |
| else: | |
| module.global_tokens = local_tokens.detach().clone().cpu() | |
| m = func_warper(m_ls) | |
| u = func_warper(u_ls[::-1]) | |
| else: | |
| m, u = (merge.do_nothing, merge.do_nothing) | |
| merged_tokens = x | |
| # if args["current_step"] >= 30: | |
| # x_ = u(m(x)) | |
| # print(f"[INFO] {label[0]} {label[1]} {downsample}") | |
| # for i, j in zip(x, x_): | |
| # print(f"[INFO] mean {torch.mean(i).item()} {torch.mean(j).item()}") | |
| # print(f"[INFO] std {torch.std(i).item()} {torch.std(j).item()}") | |
| # import ipdb; ipdb.set_trace() | |
| # Return merge op, unmerge op, and merged tokens. | |
| return m, u, merged_tokens | |
| def PCA_token(token: torch.Tensor, token_h=64, n=3): | |
| from sklearn.decomposition import PCA | |
| import cv2 | |
| pca = PCA(n_components=n) # reduce to 2 dimensions | |
| # Fit the PCA model to your data and apply the dimensionality reduction | |
| token = pca.fit_transform(token[0].cpu()) | |
| # import ipdb; ipdb.set_trace() | |
| token = rearrange(token, '(h w) c -> h w c', h=token_h) | |
| token = (token - token.min()) / (token.max() - token.min()) | |
| token = (np.clip(token, 0, 1) * 255).astype(np.uint8) | |
| cv2.imwrite(f'token.png', token) | |
| return token | |
| from utils.flow_utils import flow_warp | |
| def warp_token(module: torch.nn.Module, x: torch.Tensor, tome_info: Dict[str, Any]) -> Tuple[Callable, ...]: | |
| original_h, original_w = tome_info["size"] | |
| original_tokens = original_h * original_w | |
| downsample = int(math.ceil(math.sqrt(original_tokens // x.shape[1]))) | |
| args = tome_info["args"] | |
| # generator = module.generator | |
| # Frame Number and Token Number | |
| fsize = x.shape[0] // args["batch_size"] | |
| tsize = x.shape[1] | |
| # print(f"[INFO] token size {x.shape[1]}, latent size 64 x 120, downsample {downsample} time") | |
| # Merge tokens in high resolution layers | |
| total_step = 50 | |
| warp_period = (0, 1) | |
| if downsample <= args["max_downsample"] and x.shape[1] == 64 * 120: | |
| if args["current_step"] >= total_step * warp_period[0] and \ | |
| args["current_step"] <= total_step * warp_period[1]: | |
| mid = x.shape[0] // 2 | |
| x = rearrange(x, 'b (h w) c -> b c h w', h=64) | |
| # import ipdb; ipdb.set_trace() | |
| # mid_x = repeat(x[mid][None], 'b c h w -> (repeat b) c h w', repeat=x.shape[0]) | |
| for i in range(x.shape[0]): | |
| if i == mid: | |
| continue | |
| x[i] = flow_warp(x[mid][None], args["flows"][i], mode='nearest')[0] * args["occlusion_masks"][i] + \ | |
| (1 - args["occlusion_masks"][i]) * x[i] | |
| x = rearrange(x, 'b c h w -> b (h w) c', h=64) | |
| return x | |
| def make_tome_block(block_class: Type[torch.nn.Module]) -> Type[torch.nn.Module]: | |
| """ | |
| Make a patched class on the fly so we don't have to import any specific modules. | |
| This patch applies ToMe to the forward function of the block. | |
| """ | |
| class ToMeBlock(block_class): | |
| # Save for unpatching later | |
| _parent = block_class | |
| def _forward(self, x: torch.Tensor, context: torch.Tensor = None, label: str = None) -> torch.Tensor: | |
| # m_a, m_c, m_m, u_a, u_c, u_m = compute_merge( | |
| # self, x, self._tome_info) | |
| # print(f"[INFO] ~~~ ToMeblock ~~~ {label} ~~~") | |
| B, A, C = x.shape | |
| original_h, original_w = self._tome_info["size"] | |
| original_tokens = original_h * original_w | |
| downsample = int(math.ceil(math.sqrt(original_tokens // A))) | |
| # print(f"[INFO] downsample {downsample} time A {A} original_h {original_h} original_w {original_w}") | |
| self._tome_info["args"]["downsample"] = downsample | |
| H, W = original_h // downsample, original_w // downsample | |
| if self._tome_info["args"]["controller"] is None: | |
| non_pad_ratio_h, non_pad_ratio_w = 1, 1 | |
| print(f"[INFO] no padding removal") | |
| else: | |
| non_pad_ratio_h, non_pad_ratio_w = self._tome_info["args"]["controller"].non_pad_ratio | |
| padding_size_w = W - int(W * non_pad_ratio_w) | |
| padding_size_h = H - int(H * non_pad_ratio_h) | |
| padding_mask = torch.zeros((H, W), device=x.device, dtype=torch.bool) | |
| if padding_size_w: | |
| padding_mask[:, -padding_size_w:] = 1 | |
| if padding_size_h: | |
| padding_mask[-padding_size_h:, :] = 1 | |
| padding_mask = rearrange(padding_mask, 'h w -> (h w)') | |
| idx_buffer = torch.arange(A, device=x.device, dtype=torch.int64) | |
| non_pad_idx = idx_buffer[None, ~padding_mask, None] | |
| # pad_idx = idx_buffer[None, padding_mask, None] | |
| del idx_buffer, padding_mask | |
| x_non_pad = torch.gather(x, dim=1, index=non_pad_idx.expand(B, -1, C)) | |
| self._tome_info["args"]["label"] = label | |
| self._tome_info["size"] = (int(H * non_pad_ratio_h), int(W * non_pad_ratio_w)) | |
| # self._tome_info["non_pad_size"] = (int(H * non_pad_ratio_h), int(W * non_pad_ratio_w)) | |
| # print(f"[INFO] original shape {x.shape} removed padding shape {x_non_pad.shape}") | |
| m_a, u_a, merged_tokens = compute_merge( | |
| self, self.norm1(x_non_pad), self._tome_info) | |
| # current_step, total_step = self._tome_info["args"]["current_step"], self._tome_info["args"]["controller"].total_step | |
| # print(f'[INFO] {int(self._tome_info["args"]["controller"].ToMe_period[1] * total_step)} {current_step} {total_step}') | |
| # if downsample == 1 and label == "unet_up" and \ | |
| # self._tome_info["args"]["controller"].merge_period[0] > 0 and \ | |
| # (current_step >= self._tome_info["args"]["controller"].merge_period[0] * total_step \ | |
| # or current_step == int(self._tome_info["args"]["controller"].ToMe_period[1] * total_step)): | |
| # print(f"[INFO] setting controller merge @ step {self._tome_info['args']['current_step']}") | |
| # self._tome_info["args"]["controller"].set_merge(m_a, u_a) | |
| # m_a, u_a, merged_tokens = compute_merge( | |
| # self, self.norm1(x), self._tome_info) | |
| # This is where the meat of the computation happens | |
| # test = u_a(self.attn1(m_a(self.norm1(x)), context=context if self.disable_self_attn else None)) | |
| # import ipdb; ipdb.set_trace() | |
| # x = u_a(merged_tokens) | |
| ''' global merging ''' | |
| if self._tome_info["args"]["controller"] is None: | |
| print(f"[INFO] local + global merging ... ") | |
| x_non_pad = u_a(self.attn1(merged_tokens, | |
| context=context if self.disable_self_attn else None)) + x_non_pad | |
| else: | |
| x_non_pad = u_a(self.attn1(m_a(self.norm1(x_non_pad)), | |
| context=context if self.disable_self_attn else None)) + x_non_pad | |
| # print(label, downsample, self.disable_self_attn) | |
| # x = u_a(self.attn1(m_a(self.norm1(x)), | |
| # context=context if self.disable_self_attn else None)) + x | |
| # attn_output = self.attn1(self.norm1(x), context=context if self.disable_self_attn else None) | |
| # attn_output = warp_token(self, attn_output, self._tome_info) | |
| # x = attn_output + x | |
| # attn_out = self.attn2(self.norm2(x), context=context) | |
| # m_a, u_a, merged_tokens = compute_merge( | |
| # self, attn_out, self._tome_info) | |
| # x = u_a(m_a(attn_out)) + x | |
| # attn_output = self.attn2(self.norm2(x), context=context) | |
| # attn_output = warp_token(self, attn_output, self._tome_info) | |
| # x = attn_output + x | |
| x_non_pad = self.attn2(self.norm2(x_non_pad), context=context) + x_non_pad | |
| x_non_pad = self.ff(self.norm3(x_non_pad)) + x_non_pad | |
| x.scatter_(dim=1, index=non_pad_idx.expand(B, -1, C), src=x_non_pad) | |
| del x_non_pad | |
| self._tome_info["size"] = (original_h, original_w) | |
| torch.cuda.empty_cache() | |
| # x = self.attn2(self.norm2(x), context=context) + x | |
| # x = self.ff(self.norm3(x)) + x | |
| return x | |
| return ToMeBlock | |
| def make_diffusers_tome_block(block_class: Type[torch.nn.Module]) -> Type[torch.nn.Module]: | |
| """ | |
| Make a patched class for a diffusers model. | |
| This patch applies ToMe to the forward function of the block. | |
| """ | |
| class ToMeBlock(block_class): | |
| # Save for unpatching later | |
| _parent = block_class | |
| def forward( | |
| self, | |
| hidden_states, | |
| attention_mask=None, | |
| encoder_hidden_states=None, | |
| encoder_attention_mask=None, | |
| timestep=None, | |
| cross_attention_kwargs=None, | |
| class_labels=None, | |
| ) -> torch.Tensor: | |
| if self.use_ada_layer_norm: | |
| norm_hidden_states = self.norm1(hidden_states, timestep) | |
| elif self.use_ada_layer_norm_zero: | |
| norm_hidden_states, gate_msa, shift_mlp, scale_mlp, gate_mlp = self.norm1( | |
| hidden_states, timestep, class_labels, hidden_dtype=hidden_states.dtype | |
| ) | |
| else: | |
| norm_hidden_states = self.norm1(hidden_states) | |
| # Merge input tokens | |
| m_a, u_a, merged_tokens = compute_merge( | |
| self, norm_hidden_states, self._tome_info) | |
| norm_hidden_states = merged_tokens | |
| # 1. Self-Attention | |
| cross_attention_kwargs = cross_attention_kwargs if cross_attention_kwargs is not None else {} | |
| # tt = time.time() | |
| attn_output = self.attn1( | |
| norm_hidden_states, | |
| encoder_hidden_states=encoder_hidden_states if self.only_cross_attention else None, | |
| attention_mask=attention_mask, | |
| **cross_attention_kwargs, | |
| ) | |
| # print(time.time() - tt) | |
| if self.use_ada_layer_norm_zero: | |
| attn_output = gate_msa.unsqueeze(1) * attn_output | |
| # Unmerge output tokens | |
| attn_output = u_a(attn_output) | |
| hidden_states = attn_output + hidden_states | |
| if self.attn2 is not None: | |
| norm_hidden_states = ( | |
| self.norm2(hidden_states, timestep) if self.use_ada_layer_norm else self.norm2( | |
| hidden_states) | |
| ) | |
| # 2. Cross-Attention | |
| attn_output = self.attn2( | |
| norm_hidden_states, | |
| encoder_hidden_states=encoder_hidden_states, | |
| attention_mask=encoder_attention_mask, | |
| **cross_attention_kwargs, | |
| ) | |
| hidden_states = attn_output + hidden_states | |
| # 3. Feed-forward | |
| norm_hidden_states = self.norm3(hidden_states) | |
| if self.use_ada_layer_norm_zero: | |
| norm_hidden_states = norm_hidden_states * \ | |
| (1 + scale_mlp[:, None]) + shift_mlp[:, None] | |
| ff_output = self.ff(norm_hidden_states) | |
| if self.use_ada_layer_norm_zero: | |
| ff_output = gate_mlp.unsqueeze(1) * ff_output | |
| hidden_states = ff_output + hidden_states | |
| return hidden_states | |
| return ToMeBlock | |
| def hook_tome_model(model: torch.nn.Module): | |
| """ Adds a forward pre hook to get the image size. This hook can be removed with remove_patch. """ | |
| def hook(module, args): | |
| # print(args[0].shape) | |
| module._tome_info["size"] = (args[0].shape[2], args[0].shape[3]) | |
| return None | |
| model._tome_info["hooks"].append(model.register_forward_pre_hook(hook)) | |
| def hook_tome_module(module: torch.nn.Module): | |
| """ Adds a forward pre hook to initialize random number generator. | |
| All modules share the same generator state to keep their randomness in VidToMe consistent in one pass. | |
| This hook can be removed with remove_patch. """ | |
| def hook(module, args): | |
| # import ipdb; ipdb.set_trace() | |
| if not hasattr(module, "generator"): | |
| module.generator = init_generator(args[0].device) | |
| elif module.generator.device != args[0].device: | |
| module.generator = init_generator( | |
| args[0].device, fallback=module.generator) | |
| else: | |
| return None | |
| # module.generator = module.generator.manual_seed(module._tome_info["args"]["seed"]) | |
| return None | |
| module._tome_info["hooks"].append(module.register_forward_pre_hook(hook)) | |
| def apply_patch( | |
| model: torch.nn.Module, | |
| local_merge_ratio: float = 0.9, | |
| merge_global: bool = False, | |
| global_merge_ratio = 0.8, | |
| max_downsample: int = 2, | |
| min_downsample: int = 0, | |
| seed: int = 123, | |
| batch_size: int = 2, | |
| include_control: bool = False, | |
| align_batch: bool = False, | |
| target_stride: int = 4, | |
| global_rand=0.5): | |
| """ | |
| Patches a stable diffusion model with VidToMe. | |
| Apply this to the highest level stable diffusion object (i.e., it should have a .model.diffusion_model). | |
| Important Args: | |
| - model: A top level Stable Diffusion module to patch in place. Should have a ".model.diffusion_model" | |
| - local_merge_ratio: The ratio of tokens to merge locally. I.e., 0.9 would merge 90% src tokens. | |
| If there are 4 frames in a chunk (3 src, 1 dst), the compression ratio will be 1.3 / 4.0. | |
| And the largest compression ratio is 0.25 (when local_merge_ratio = 1.0). | |
| Higher values result in more consistency, but with more visual quality loss. | |
| - merge_global: Whether or not to include global token merging. | |
| - global_merge_ratio: The ratio of tokens to merge locally. I.e., 0.8 would merge 80% src tokens. | |
| When find significant degradation in video quality. Try to lower the value. | |
| Args to tinker with if you want: | |
| - max_downsample [1, 2, 4, or 8]: Apply VidToMe to layers with at most this amount of downsampling. | |
| E.g., 1 only applies to layers with no downsampling (4/15) while | |
| 8 applies to all layers (15/15). I recommend a value of 1 or 2. | |
| - seed: Manual random seed. | |
| - batch_size: Video batch size. Number of video chunks in one pass. When processing one video, it | |
| should be 2 (cond + uncond) or 3 (when using PnP, source + cond + uncond). | |
| - include_control: Whether or not to patch ControlNet model. | |
| - align_batch: Whether or not to align similarity matching maps of samples in the batch. It should | |
| be True when using PnP as control. | |
| - target_stride: Stride between target frames. I.e., when target_stride = 4, there is 1 target frame | |
| in any 4 consecutive frames. | |
| - global_rand: Probability in global token merging src/dst split. Global tokens are always src when | |
| global_rand = 1.0 and always dst when global_rand = 0.0 . | |
| """ | |
| # Make sure the module is not currently patched | |
| remove_patch(model) | |
| is_diffusers = isinstance_str( | |
| model, "DiffusionPipeline") or isinstance_str(model, "ModelMixin") | |
| if not is_diffusers: | |
| if (not hasattr(model, "model") or not hasattr(model.model, "diffusion_model")) \ | |
| and not hasattr(model, "unet"): | |
| # Provided model not supported | |
| raise RuntimeError( | |
| "Provided model was not a Stable Diffusion / Latent Diffusion model, as expected.") | |
| else: | |
| diffusion_model = model.unet if hasattr(model, "unet") else model.model.diffusion_model | |
| else: | |
| # Supports "pipe.unet" and "unet" | |
| diffusion_model = model.unet if hasattr(model, "unet") else model | |
| if isinstance_str(model, "StableDiffusionControlNetPipeline") and include_control: | |
| diffusion_models = [diffusion_model, model.controlnet] | |
| else: | |
| diffusion_models = [diffusion_model] | |
| if not is_diffusers and hasattr(model, "controlnet"): | |
| diffusion_models = [diffusion_model, model.controlnet] | |
| for diffusion_model in diffusion_models: | |
| diffusion_model._tome_info = { | |
| "size": None, | |
| "hooks": [], | |
| "args": { | |
| "max_downsample": max_downsample, | |
| "min_downsample": min_downsample, | |
| "generator": None, | |
| "seed": seed, | |
| "batch_size": batch_size, | |
| "align_batch": align_batch, | |
| "merge_global": merge_global, | |
| "global_merge_ratio": global_merge_ratio, | |
| "local_merge_ratio": local_merge_ratio, | |
| "global_rand": global_rand, | |
| "target_stride": target_stride, | |
| "current_step": 0, | |
| "frame_ids": [0], | |
| "flows": None, | |
| "occlusion_masks": None, | |
| "flow_confids": None, | |
| "label": "", | |
| "downsample": 1, | |
| "non_pad_size": (0, 0), | |
| "controller": None, | |
| } | |
| } | |
| hook_tome_model(diffusion_model) | |
| for name, module in diffusion_model.named_modules(): | |
| # If for some reason this has a different name, create an issue and I'll fix it | |
| # if isinstance_str(module, "BasicTransformerBlock") and "down_blocks" not in name: | |
| # print(module.__class__.__name__) | |
| if isinstance_str(module, "BasicTransformerBlock"): | |
| make_tome_block_fn = make_diffusers_tome_block if is_diffusers else make_tome_block | |
| module.__class__ = make_tome_block_fn(module.__class__) | |
| module._tome_info = diffusion_model._tome_info | |
| hook_tome_module(module) | |
| # Something introduced in SD 2.0 (LDM only) | |
| if not hasattr(module, "disable_self_attn") and not is_diffusers: | |
| module.disable_self_attn = False | |
| # Something needed for older versions of diffusers | |
| if not hasattr(module, "use_ada_layer_norm_zero") and is_diffusers: | |
| module.use_ada_layer_norm = False | |
| module.use_ada_layer_norm_zero = False | |
| # import ipdb; ipdb.set_trace() | |
| return model | |
| def remove_patch(model: torch.nn.Module): | |
| """ Removes a patch from a ToMe Diffusion module if it was already patched. """ | |
| # For diffusers | |
| modelu = model.unet if hasattr(model, "unet") else model | |
| model_ls = [modelu] | |
| if hasattr(model, "controlnet"): | |
| model_ls.append(model.controlnet) | |
| for model in model_ls: | |
| for _, module in model.named_modules(): | |
| if hasattr(module, "_tome_info"): | |
| for hook in module._tome_info["hooks"]: | |
| hook.remove() | |
| module._tome_info["hooks"].clear() | |
| if module.__class__.__name__ == "ToMeBlock": | |
| module.__class__ = module._parent | |
| return model | |
| def update_patch(model: torch.nn.Module, **kwargs): | |
| """ Update arguments in patched modules """ | |
| # For diffusers | |
| model0 = model.unet if hasattr(model, "unet") else model | |
| model_ls = [model0] | |
| if hasattr(model, "controlnet"): | |
| model_ls.append(model.controlnet) | |
| for model in model_ls: | |
| for _, module in model.named_modules(): | |
| if hasattr(module, "_tome_info"): | |
| for k, v in kwargs.items(): | |
| # setattr(module, k, v) | |
| if k in module._tome_info["args"]: | |
| module._tome_info["args"][k] = v | |
| # print(f"[INFO] update {k} to {v} in {module.__class__.__name__}") | |
| return model | |
| def collect_from_patch(model: torch.nn.Module, attr="tome"): | |
| """ Collect attributes in patched modules """ | |
| # For diffusers | |
| model0 = model.unet if hasattr(model, "unet") else model | |
| model_ls = [model0] | |
| if hasattr(model, "controlnet"): | |
| model_ls.append(model.controlnet) | |
| ret_dict = dict() | |
| for model in model_ls: | |
| for name, module in model.named_modules(): | |
| if hasattr(module, attr): | |
| res = getattr(module, attr) | |
| ret_dict[name] = res | |
| return ret_dict | |