| | from typing import Tuple |
| | from einops import rearrange |
| | from torch import nn |
| | import torch.distributed as dist |
| | import torch |
| |
|
| | from pipeline import SelfForcingTrainingPipeline |
| | from utils.loss import get_denoising_loss |
| | from utils.wan_wrapper import WanDiffusionWrapper, WanTextEncoder, WanVAEWrapper |
| |
|
| |
|
| | class BaseModel(nn.Module): |
| | def __init__(self, args, device): |
| | super().__init__() |
| | self._initialize_models(args, device) |
| |
|
| | self.device = device |
| | self.args = args |
| | self.dtype = torch.bfloat16 if args.mixed_precision else torch.float32 |
| | if hasattr(args, "denoising_step_list"): |
| | self.denoising_step_list = torch.tensor(args.denoising_step_list, dtype=torch.long) |
| | if args.warp_denoising_step: |
| | timesteps = torch.cat((self.scheduler.timesteps.cpu(), torch.tensor([0], dtype=torch.float32))) |
| | self.denoising_step_list = timesteps[1000 - self.denoising_step_list] |
| |
|
| | def _initialize_models(self, args, device): |
| | self.real_model_name = getattr(args, "real_name", "Wan2.1-T2V-1.3B") |
| | self.fake_model_name = getattr(args, "fake_name", "Wan2.1-T2V-1.3B") |
| |
|
| | self.generator = WanDiffusionWrapper(**getattr(args, "model_kwargs", {}), is_causal=True) |
| | self.generator.model.requires_grad_(True) |
| |
|
| | self.real_score = WanDiffusionWrapper(model_name=self.real_model_name, is_causal=False) |
| | self.real_score.model.requires_grad_(False) |
| |
|
| | self.fake_score = WanDiffusionWrapper(model_name=self.fake_model_name, is_causal=False) |
| | self.fake_score.model.requires_grad_(True) |
| |
|
| | self.text_encoder = WanTextEncoder() |
| | self.text_encoder.requires_grad_(False) |
| |
|
| | self.vae = WanVAEWrapper() |
| | self.vae.requires_grad_(False) |
| |
|
| | self.scheduler = self.generator.get_scheduler() |
| | self.scheduler.timesteps = self.scheduler.timesteps.to(device) |
| |
|
| | def _get_timestep( |
| | self, |
| | min_timestep: int, |
| | max_timestep: int, |
| | batch_size: int, |
| | num_frame: int, |
| | num_frame_per_block: int, |
| | uniform_timestep: bool = False |
| | ) -> torch.Tensor: |
| | """ |
| | Randomly generate a timestep tensor based on the generator's task type. It uniformly samples a timestep |
| | from the range [min_timestep, max_timestep], and returns a tensor of shape [batch_size, num_frame]. |
| | - If uniform_timestep, it will use the same timestep for all frames. |
| | - If not uniform_timestep, it will use a different timestep for each block. |
| | """ |
| | if uniform_timestep: |
| | timestep = torch.randint( |
| | min_timestep, |
| | max_timestep, |
| | [batch_size, 1], |
| | device=self.device, |
| | dtype=torch.long |
| | ).repeat(1, num_frame) |
| | return timestep |
| | else: |
| | timestep = torch.randint( |
| | min_timestep, |
| | max_timestep, |
| | [batch_size, num_frame], |
| | device=self.device, |
| | dtype=torch.long |
| | ) |
| | |
| | if self.independent_first_frame: |
| | |
| | timestep_from_second = timestep[:, 1:] |
| | timestep_from_second = timestep_from_second.reshape( |
| | timestep_from_second.shape[0], -1, num_frame_per_block) |
| | timestep_from_second[:, :, 1:] = timestep_from_second[:, :, 0:1] |
| | timestep_from_second = timestep_from_second.reshape( |
| | timestep_from_second.shape[0], -1) |
| | timestep = torch.cat([timestep[:, 0:1], timestep_from_second], dim=1) |
| | else: |
| | timestep = timestep.reshape( |
| | timestep.shape[0], -1, num_frame_per_block) |
| | timestep[:, :, 1:] = timestep[:, :, 0:1] |
| | timestep = timestep.reshape(timestep.shape[0], -1) |
| | return timestep |
| |
|
| |
|
| | class SelfForcingModel(BaseModel): |
| | def __init__(self, args, device): |
| | super().__init__(args, device) |
| | self.denoising_loss_func = get_denoising_loss(args.denoising_loss_type)() |
| |
|
| | def _run_generator( |
| | self, |
| | image_or_video_shape, |
| | conditional_dict: dict, |
| | initial_latent: torch.tensor = None |
| | ) -> Tuple[torch.Tensor, torch.Tensor]: |
| | """ |
| | Optionally simulate the generator's input from noise using backward simulation |
| | and then run the generator for one-step. |
| | Input: |
| | - image_or_video_shape: a list containing the shape of the image or video [B, F, C, H, W]. |
| | - conditional_dict: a dictionary containing the conditional information (e.g. text embeddings, image embeddings). |
| | - unconditional_dict: a dictionary containing the unconditional information (e.g. null/negative text embeddings, null/negative image embeddings). |
| | - clean_latent: a tensor containing the clean latents [B, F, C, H, W]. Need to be passed when no backward simulation is used. |
| | - initial_latent: a tensor containing the initial latents [B, F, C, H, W]. |
| | Output: |
| | - pred_image: a tensor with shape [B, F, C, H, W]. |
| | - denoised_timestep: an integer |
| | """ |
| | |
| | assert getattr(self.args, "backward_simulation", True), "Backward simulation needs to be enabled" |
| | if initial_latent is not None: |
| | conditional_dict["initial_latent"] = initial_latent |
| | if self.args.i2v: |
| | noise_shape = [image_or_video_shape[0], image_or_video_shape[1] - 1, *image_or_video_shape[2:]] |
| | else: |
| | noise_shape = image_or_video_shape.copy() |
| |
|
| | |
| | |
| | min_num_frames = 20 if self.args.independent_first_frame else 21 |
| | max_num_frames = self.num_training_frames - 1 if self.args.independent_first_frame else self.num_training_frames |
| | assert max_num_frames % self.num_frame_per_block == 0 |
| | assert min_num_frames % self.num_frame_per_block == 0 |
| | max_num_blocks = max_num_frames // self.num_frame_per_block |
| | min_num_blocks = min_num_frames // self.num_frame_per_block |
| | num_generated_blocks = torch.randint(min_num_blocks, max_num_blocks + 1, (1,), device=self.device) |
| | dist.broadcast(num_generated_blocks, src=0) |
| | num_generated_blocks = num_generated_blocks.item() |
| | num_generated_frames = num_generated_blocks * self.num_frame_per_block |
| | if self.args.independent_first_frame and initial_latent is None: |
| | num_generated_frames += 1 |
| | min_num_frames += 1 |
| | |
| | noise_shape[1] = num_generated_frames |
| |
|
| | pred_image_or_video, denoised_timestep_from, denoised_timestep_to = self._consistency_backward_simulation( |
| | noise=torch.randn(noise_shape, |
| | device=self.device, dtype=self.dtype), |
| | **conditional_dict, |
| | ) |
| | |
| | if pred_image_or_video.shape[1] > 21: |
| | with torch.no_grad(): |
| | |
| | latent_to_decode = pred_image_or_video[:, :-20, ...] |
| | |
| | pixels = self.vae.decode_to_pixel(latent_to_decode) |
| | frame = pixels[:, -1:, ...].to(self.dtype) |
| | frame = rearrange(frame, "b t c h w -> b c t h w") |
| | |
| | image_latent = self.vae.encode_to_latent(frame).to(self.dtype) |
| | pred_image_or_video_last_21 = torch.cat([image_latent, pred_image_or_video[:, -20:, ...]], dim=1) |
| | else: |
| | pred_image_or_video_last_21 = pred_image_or_video |
| |
|
| | if num_generated_frames != min_num_frames: |
| | |
| | gradient_mask = torch.ones_like(pred_image_or_video_last_21, dtype=torch.bool) |
| | if self.args.independent_first_frame: |
| | gradient_mask[:, :1] = False |
| | else: |
| | gradient_mask[:, :self.num_frame_per_block] = False |
| | else: |
| | gradient_mask = None |
| |
|
| | pred_image_or_video_last_21 = pred_image_or_video_last_21.to(self.dtype) |
| | return pred_image_or_video_last_21, gradient_mask, denoised_timestep_from, denoised_timestep_to |
| |
|
| | def _consistency_backward_simulation( |
| | self, |
| | noise: torch.Tensor, |
| | **conditional_dict: dict |
| | ) -> torch.Tensor: |
| | """ |
| | Simulate the generator's input from noise to avoid training/inference mismatch. |
| | See Sec 4.5 of the DMD2 paper (https://arxiv.org/abs/2405.14867) for details. |
| | Here we use the consistency sampler (https://arxiv.org/abs/2303.01469) |
| | Input: |
| | - noise: a tensor sampled from N(0, 1) with shape [B, F, C, H, W] where the number of frame is 1 for images. |
| | - conditional_dict: a dictionary containing the conditional information (e.g. text embeddings, image embeddings). |
| | Output: |
| | - output: a tensor with shape [B, T, F, C, H, W]. |
| | T is the total number of timesteps. output[0] is a pure noise and output[i] and i>0 |
| | represents the x0 prediction at each timestep. |
| | """ |
| | if self.inference_pipeline is None: |
| | self._initialize_inference_pipeline() |
| |
|
| | return self.inference_pipeline.inference_with_trajectory( |
| | noise=noise, **conditional_dict |
| | ) |
| |
|
| | def _initialize_inference_pipeline(self): |
| | """ |
| | Lazy initialize the inference pipeline during the first backward simulation run. |
| | Here we encapsulate the inference code with a model-dependent outside function. |
| | We pass our FSDP-wrapped modules into the pipeline to save memory. |
| | """ |
| | self.inference_pipeline = SelfForcingTrainingPipeline( |
| | denoising_step_list=self.denoising_step_list, |
| | scheduler=self.scheduler, |
| | generator=self.generator, |
| | num_frame_per_block=self.num_frame_per_block, |
| | independent_first_frame=self.args.independent_first_frame, |
| | same_step_across_blocks=self.args.same_step_across_blocks, |
| | last_step_only=self.args.last_step_only, |
| | num_max_frames=self.num_training_frames, |
| | context_noise=self.args.context_noise |
| | ) |
| |
|