mirror of
https://github.com/modelscope/DiffSynth-Studio.git
synced 2026-03-18 22:08:13 +00:00
1358 lines
64 KiB
Python
1358 lines
64 KiB
Python
import torch, warnings, glob, os, types
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import numpy as np
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from PIL import Image
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from einops import repeat, reduce
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from typing import Optional, Union
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from dataclasses import dataclass
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from modelscope import snapshot_download
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from einops import rearrange
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import numpy as np
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from PIL import Image
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from tqdm import tqdm
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from typing import Optional
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from typing_extensions import Literal
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from ..utils import BasePipeline, ModelConfig, PipelineUnit, PipelineUnitRunner
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from ..models import ModelManager, load_state_dict
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from ..models.wan_video_dit import WanModel, RMSNorm, sinusoidal_embedding_1d
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from ..models.wan_video_dit_s2v import rope_precompute
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from ..models.wan_video_text_encoder import WanTextEncoder, T5RelativeEmbedding, T5LayerNorm
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from ..models.wan_video_vae import WanVideoVAE, RMS_norm, CausalConv3d, Upsample
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from ..models.wan_video_image_encoder import WanImageEncoder
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from ..models.wan_video_vace import VaceWanModel
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from ..models.wan_video_motion_controller import WanMotionControllerModel
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from ..schedulers.flow_match import FlowMatchScheduler
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from ..prompters import WanPrompter
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from ..vram_management import enable_vram_management, AutoWrappedModule, AutoWrappedLinear, WanAutoCastLayerNorm
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from ..lora import GeneralLoRALoader
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class WanVideoPipeline(BasePipeline):
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def __init__(self, device="cuda", torch_dtype=torch.bfloat16, tokenizer_path=None):
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super().__init__(
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device=device, torch_dtype=torch_dtype,
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height_division_factor=16, width_division_factor=16, time_division_factor=4, time_division_remainder=1
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)
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self.scheduler = FlowMatchScheduler(shift=5, sigma_min=0.0, extra_one_step=True)
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self.prompter = WanPrompter(tokenizer_path=tokenizer_path)
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self.text_encoder: WanTextEncoder = None
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self.image_encoder: WanImageEncoder = None
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self.dit: WanModel = None
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self.dit2: WanModel = None
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self.vae: WanVideoVAE = None
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self.motion_controller: WanMotionControllerModel = None
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self.vace: VaceWanModel = None
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self.in_iteration_models = ("dit", "motion_controller", "vace")
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self.in_iteration_models_2 = ("dit2", "motion_controller", "vace")
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self.unit_runner = PipelineUnitRunner()
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self.units = [
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WanVideoUnit_ShapeChecker(),
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WanVideoUnit_NoiseInitializer(),
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WanVideoUnit_PromptEmbedder(),
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WanVideoUnit_S2V(),
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WanVideoUnit_InputVideoEmbedder(),
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WanVideoUnit_ImageEmbedderVAE(),
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WanVideoUnit_ImageEmbedderCLIP(),
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WanVideoUnit_ImageEmbedderFused(),
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WanVideoUnit_FunControl(),
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WanVideoUnit_FunReference(),
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WanVideoUnit_FunCameraControl(),
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WanVideoUnit_SpeedControl(),
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WanVideoUnit_VACE(),
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WanVideoUnit_UnifiedSequenceParallel(),
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WanVideoUnit_TeaCache(),
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WanVideoUnit_CfgMerger(),
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]
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self.model_fn = model_fn_wan_video
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def load_lora(self, module, path, alpha=1):
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loader = GeneralLoRALoader(torch_dtype=self.torch_dtype, device=self.device)
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lora = load_state_dict(path, torch_dtype=self.torch_dtype, device=self.device)
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loader.load(module, lora, alpha=alpha)
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def training_loss(self, **inputs):
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max_timestep_boundary = int(inputs.get("max_timestep_boundary", 1) * self.scheduler.num_train_timesteps)
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min_timestep_boundary = int(inputs.get("min_timestep_boundary", 0) * self.scheduler.num_train_timesteps)
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timestep_id = torch.randint(min_timestep_boundary, max_timestep_boundary, (1,))
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timestep = self.scheduler.timesteps[timestep_id].to(dtype=self.torch_dtype, device=self.device)
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inputs["latents"] = self.scheduler.add_noise(inputs["input_latents"], inputs["noise"], timestep)
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training_target = self.scheduler.training_target(inputs["input_latents"], inputs["noise"], timestep)
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noise_pred = self.model_fn(**inputs, timestep=timestep)
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loss = torch.nn.functional.mse_loss(noise_pred.float(), training_target.float())
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loss = loss * self.scheduler.training_weight(timestep)
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return loss
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def enable_vram_management(self, num_persistent_param_in_dit=None, vram_limit=None, vram_buffer=0.5):
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self.vram_management_enabled = True
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if num_persistent_param_in_dit is not None:
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vram_limit = None
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else:
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if vram_limit is None:
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vram_limit = self.get_vram()
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vram_limit = vram_limit - vram_buffer
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if self.text_encoder is not None:
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dtype = next(iter(self.text_encoder.parameters())).dtype
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enable_vram_management(
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self.text_encoder,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Embedding: AutoWrappedModule,
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T5RelativeEmbedding: AutoWrappedModule,
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T5LayerNorm: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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vram_limit=vram_limit,
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)
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if self.dit is not None:
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dtype = next(iter(self.dit.parameters())).dtype
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device = "cpu" if vram_limit is not None else self.device
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enable_vram_management(
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self.dit,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Conv3d: AutoWrappedModule,
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torch.nn.LayerNorm: WanAutoCastLayerNorm,
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RMSNorm: AutoWrappedModule,
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torch.nn.Conv2d: AutoWrappedModule,
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torch.nn.Conv1d: AutoWrappedModule,
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torch.nn.Embedding: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device=device,
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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max_num_param=num_persistent_param_in_dit,
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overflow_module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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vram_limit=vram_limit,
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)
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if self.dit2 is not None:
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dtype = next(iter(self.dit2.parameters())).dtype
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device = "cpu" if vram_limit is not None else self.device
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enable_vram_management(
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self.dit2,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Conv3d: AutoWrappedModule,
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torch.nn.LayerNorm: WanAutoCastLayerNorm,
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RMSNorm: AutoWrappedModule,
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torch.nn.Conv2d: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device=device,
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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max_num_param=num_persistent_param_in_dit,
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overflow_module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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vram_limit=vram_limit,
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)
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if self.vae is not None:
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dtype = next(iter(self.vae.parameters())).dtype
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enable_vram_management(
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self.vae,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Conv2d: AutoWrappedModule,
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RMS_norm: AutoWrappedModule,
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CausalConv3d: AutoWrappedModule,
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Upsample: AutoWrappedModule,
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torch.nn.SiLU: AutoWrappedModule,
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torch.nn.Dropout: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device=self.device,
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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)
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if self.image_encoder is not None:
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dtype = next(iter(self.image_encoder.parameters())).dtype
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enable_vram_management(
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self.image_encoder,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Conv2d: AutoWrappedModule,
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torch.nn.LayerNorm: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=dtype,
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computation_device=self.device,
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),
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)
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if self.motion_controller is not None:
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dtype = next(iter(self.motion_controller.parameters())).dtype
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enable_vram_management(
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self.motion_controller,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=dtype,
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computation_device=self.device,
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),
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)
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if self.vace is not None:
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device = "cpu" if vram_limit is not None else self.device
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enable_vram_management(
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self.vace,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.Conv3d: AutoWrappedModule,
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torch.nn.LayerNorm: AutoWrappedModule,
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RMSNorm: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device=device,
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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vram_limit=vram_limit,
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)
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if self.audio_encoder is not None:
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# TODO: need check
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dtype = next(iter(self.audio_encoder.parameters())).dtype
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enable_vram_management(
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self.audio_encoder,
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module_map = {
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torch.nn.Linear: AutoWrappedLinear,
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torch.nn.LayerNorm: AutoWrappedModule,
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torch.nn.Conv1d: AutoWrappedModule,
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},
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module_config = dict(
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offload_dtype=dtype,
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offload_device="cpu",
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onload_dtype=dtype,
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onload_device="cpu",
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computation_dtype=self.torch_dtype,
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computation_device=self.device,
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),
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)
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def initialize_usp(self):
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import torch.distributed as dist
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from xfuser.core.distributed import initialize_model_parallel, init_distributed_environment
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dist.init_process_group(backend="nccl", init_method="env://")
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init_distributed_environment(rank=dist.get_rank(), world_size=dist.get_world_size())
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initialize_model_parallel(
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sequence_parallel_degree=dist.get_world_size(),
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ring_degree=1,
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ulysses_degree=dist.get_world_size(),
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)
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torch.cuda.set_device(dist.get_rank())
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def enable_usp(self):
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from xfuser.core.distributed import get_sequence_parallel_world_size
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from ..distributed.xdit_context_parallel import usp_attn_forward, usp_dit_forward
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for block in self.dit.blocks:
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block.self_attn.forward = types.MethodType(usp_attn_forward, block.self_attn)
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self.dit.forward = types.MethodType(usp_dit_forward, self.dit)
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if self.dit2 is not None:
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for block in self.dit2.blocks:
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block.self_attn.forward = types.MethodType(usp_attn_forward, block.self_attn)
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self.dit2.forward = types.MethodType(usp_dit_forward, self.dit2)
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self.sp_size = get_sequence_parallel_world_size()
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self.use_unified_sequence_parallel = True
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@staticmethod
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def from_pretrained(
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torch_dtype: torch.dtype = torch.bfloat16,
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device: Union[str, torch.device] = "cuda",
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model_configs: list[ModelConfig] = [],
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tokenizer_config: ModelConfig = ModelConfig(model_id="Wan-AI/Wan2.1-T2V-1.3B", origin_file_pattern="google/*"),
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audio_processor_config: ModelConfig = None,
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redirect_common_files: bool = True,
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use_usp=False,
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):
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# Redirect model path
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if redirect_common_files:
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redirect_dict = {
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"models_t5_umt5-xxl-enc-bf16.pth": "Wan-AI/Wan2.1-T2V-1.3B",
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"Wan2.1_VAE.pth": "Wan-AI/Wan2.1-T2V-1.3B",
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"models_clip_open-clip-xlm-roberta-large-vit-huge-14.pth": "Wan-AI/Wan2.1-I2V-14B-480P",
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}
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for model_config in model_configs:
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if model_config.origin_file_pattern is None or model_config.model_id is None:
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continue
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if model_config.origin_file_pattern in redirect_dict and model_config.model_id != redirect_dict[model_config.origin_file_pattern]:
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print(f"To avoid repeatedly downloading model files, ({model_config.model_id}, {model_config.origin_file_pattern}) is redirected to ({redirect_dict[model_config.origin_file_pattern]}, {model_config.origin_file_pattern}). You can use `redirect_common_files=False` to disable file redirection.")
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model_config.model_id = redirect_dict[model_config.origin_file_pattern]
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# Initialize pipeline
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pipe = WanVideoPipeline(device=device, torch_dtype=torch_dtype)
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if use_usp: pipe.initialize_usp()
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# Download and load models
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model_manager = ModelManager()
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for model_config in model_configs:
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model_config.download_if_necessary(use_usp=use_usp)
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model_manager.load_model(
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model_config.path,
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device=model_config.offload_device or device,
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torch_dtype=model_config.offload_dtype or torch_dtype
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)
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# Load models
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pipe.text_encoder = model_manager.fetch_model("wan_video_text_encoder")
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dit = model_manager.fetch_model("wan_video_dit", index=2)
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if isinstance(dit, list):
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pipe.dit, pipe.dit2 = dit
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else:
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pipe.dit = dit
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pipe.vae = model_manager.fetch_model("wan_video_vae")
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pipe.image_encoder = model_manager.fetch_model("wan_video_image_encoder")
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pipe.motion_controller = model_manager.fetch_model("wan_video_motion_controller")
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pipe.vace = model_manager.fetch_model("wan_video_vace")
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pipe.audio_encoder = model_manager.fetch_model("wans2v_audio_encoder")
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# Size division factor
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if pipe.vae is not None:
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pipe.height_division_factor = pipe.vae.upsampling_factor * 2
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pipe.width_division_factor = pipe.vae.upsampling_factor * 2
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# Initialize tokenizer
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tokenizer_config.download_if_necessary(use_usp=use_usp)
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pipe.prompter.fetch_models(pipe.text_encoder)
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pipe.prompter.fetch_tokenizer(tokenizer_config.path)
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if audio_processor_config is not None:
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audio_processor_config.download_if_necessary(use_usp=use_usp)
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from transformers import Wav2Vec2Processor
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pipe.audio_processor = Wav2Vec2Processor.from_pretrained(audio_processor_config.path)
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# Unified Sequence Parallel
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if use_usp: pipe.enable_usp()
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return pipe
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@torch.no_grad()
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def __call__(
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self,
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# Prompt
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prompt: str,
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negative_prompt: Optional[str] = "",
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# Image-to-video
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input_image: Optional[Image.Image] = None,
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# First-last-frame-to-video
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end_image: Optional[Image.Image] = None,
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# Video-to-video
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input_video: Optional[list[Image.Image]] = None,
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denoising_strength: Optional[float] = 1.0,
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# Speech-to-video
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input_audio: Optional[str] = None,
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audio_sample_rate: Optional[int] = 16000,
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s2v_pose_video: Optional[list[Image.Image]] = None,
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# ControlNet
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control_video: Optional[list[Image.Image]] = None,
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reference_image: Optional[Image.Image] = None,
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# Camera control
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camera_control_direction: Optional[Literal["Left", "Right", "Up", "Down", "LeftUp", "LeftDown", "RightUp", "RightDown"]] = None,
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camera_control_speed: Optional[float] = 1/54,
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camera_control_origin: Optional[tuple] = (0, 0.532139961, 0.946026558, 0.5, 0.5, 0, 0, 1, 0, 0, 0, 0, 1, 0, 0, 0, 0, 1, 0),
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# VACE
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vace_video: Optional[list[Image.Image]] = None,
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vace_video_mask: Optional[Image.Image] = None,
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vace_reference_image: Optional[Image.Image] = None,
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vace_scale: Optional[float] = 1.0,
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# Randomness
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seed: Optional[int] = None,
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rand_device: Optional[str] = "cpu",
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# Shape
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height: Optional[int] = 480,
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width: Optional[int] = 832,
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num_frames=81,
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# Classifier-free guidance
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cfg_scale: Optional[float] = 5.0,
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cfg_merge: Optional[bool] = False,
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# Boundary
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switch_DiT_boundary: Optional[float] = 0.875,
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# Scheduler
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num_inference_steps: Optional[int] = 50,
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sigma_shift: Optional[float] = 5.0,
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# Speed control
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motion_bucket_id: Optional[int] = None,
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# VAE tiling
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tiled: Optional[bool] = True,
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tile_size: Optional[tuple[int, int]] = (30, 52),
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tile_stride: Optional[tuple[int, int]] = (15, 26),
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# Sliding window
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sliding_window_size: Optional[int] = None,
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sliding_window_stride: Optional[int] = None,
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# Teacache
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tea_cache_l1_thresh: Optional[float] = None,
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tea_cache_model_id: Optional[str] = "",
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# progress_bar
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progress_bar_cmd=tqdm,
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):
|
|
# Scheduler
|
|
self.scheduler.set_timesteps(num_inference_steps, denoising_strength=denoising_strength, shift=sigma_shift)
|
|
|
|
# Inputs
|
|
inputs_posi = {
|
|
"prompt": prompt,
|
|
"tea_cache_l1_thresh": tea_cache_l1_thresh, "tea_cache_model_id": tea_cache_model_id, "num_inference_steps": num_inference_steps,
|
|
}
|
|
inputs_nega = {
|
|
"negative_prompt": negative_prompt,
|
|
"tea_cache_l1_thresh": tea_cache_l1_thresh, "tea_cache_model_id": tea_cache_model_id, "num_inference_steps": num_inference_steps,
|
|
}
|
|
inputs_shared = {
|
|
"input_image": input_image,
|
|
"end_image": end_image,
|
|
"input_video": input_video, "denoising_strength": denoising_strength,
|
|
"control_video": control_video, "reference_image": reference_image,
|
|
"camera_control_direction": camera_control_direction, "camera_control_speed": camera_control_speed, "camera_control_origin": camera_control_origin,
|
|
"vace_video": vace_video, "vace_video_mask": vace_video_mask, "vace_reference_image": vace_reference_image, "vace_scale": vace_scale,
|
|
"seed": seed, "rand_device": rand_device,
|
|
"height": height, "width": width, "num_frames": num_frames,
|
|
"cfg_scale": cfg_scale, "cfg_merge": cfg_merge,
|
|
"sigma_shift": sigma_shift,
|
|
"motion_bucket_id": motion_bucket_id,
|
|
"tiled": tiled, "tile_size": tile_size, "tile_stride": tile_stride,
|
|
"sliding_window_size": sliding_window_size, "sliding_window_stride": sliding_window_stride,
|
|
"input_audio": input_audio, "audio_sample_rate": audio_sample_rate, "s2v_pose_video": s2v_pose_video,
|
|
}
|
|
for unit in self.units:
|
|
inputs_shared, inputs_posi, inputs_nega = self.unit_runner(unit, self, inputs_shared, inputs_posi, inputs_nega)
|
|
|
|
# Denoise
|
|
self.load_models_to_device(self.in_iteration_models)
|
|
models = {name: getattr(self, name) for name in self.in_iteration_models}
|
|
for progress_id, timestep in enumerate(progress_bar_cmd(self.scheduler.timesteps)):
|
|
# Switch DiT if necessary
|
|
if timestep.item() < switch_DiT_boundary * self.scheduler.num_train_timesteps and self.dit2 is not None and not models["dit"] is self.dit2:
|
|
self.load_models_to_device(self.in_iteration_models_2)
|
|
models["dit"] = self.dit2
|
|
|
|
# Timestep
|
|
timestep = timestep.unsqueeze(0).to(dtype=self.torch_dtype, device=self.device)
|
|
|
|
# Inference
|
|
noise_pred_posi = self.model_fn(**models, **inputs_shared, **inputs_posi, timestep=timestep)
|
|
if cfg_scale != 1.0:
|
|
if cfg_merge:
|
|
noise_pred_posi, noise_pred_nega = noise_pred_posi.chunk(2, dim=0)
|
|
else:
|
|
noise_pred_nega = self.model_fn(**models, **inputs_shared, **inputs_nega, timestep=timestep)
|
|
noise_pred = noise_pred_nega + cfg_scale * (noise_pred_posi - noise_pred_nega)
|
|
else:
|
|
noise_pred = noise_pred_posi
|
|
|
|
# Scheduler
|
|
inputs_shared["latents"] = self.scheduler.step(noise_pred, self.scheduler.timesteps[progress_id], inputs_shared["latents"])
|
|
if "first_frame_latents" in inputs_shared:
|
|
inputs_shared["latents"][:, :, 0:1] = inputs_shared["first_frame_latents"]
|
|
|
|
# VACE (TODO: remove it)
|
|
if vace_reference_image is not None:
|
|
inputs_shared["latents"] = inputs_shared["latents"][:, :, 1:]
|
|
|
|
# Decode
|
|
self.load_models_to_device(['vae'])
|
|
video = self.vae.decode(inputs_shared["latents"], device=self.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
|
|
video = self.vae_output_to_video(video)
|
|
self.load_models_to_device([])
|
|
|
|
return video
|
|
|
|
|
|
|
|
class WanVideoUnit_ShapeChecker(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(input_params=("height", "width", "num_frames"))
|
|
|
|
def process(self, pipe: WanVideoPipeline, height, width, num_frames):
|
|
height, width, num_frames = pipe.check_resize_height_width(height, width, num_frames)
|
|
return {"height": height, "width": width, "num_frames": num_frames}
|
|
|
|
|
|
|
|
class WanVideoUnit_NoiseInitializer(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(input_params=("height", "width", "num_frames", "seed", "rand_device", "vace_reference_image"))
|
|
|
|
def process(self, pipe: WanVideoPipeline, height, width, num_frames, seed, rand_device, vace_reference_image):
|
|
length = (num_frames - 1) // 4 + 1
|
|
if vace_reference_image is not None:
|
|
length += 1
|
|
shape = (1, pipe.vae.model.z_dim, length, height // pipe.vae.upsampling_factor, width // pipe.vae.upsampling_factor)
|
|
noise = pipe.generate_noise(shape, seed=seed, rand_device=rand_device)
|
|
if vace_reference_image is not None:
|
|
noise = torch.concat((noise[:, :, -1:], noise[:, :, :-1]), dim=2)
|
|
return {"noise": noise}
|
|
|
|
|
|
|
|
class WanVideoUnit_InputVideoEmbedder(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("input_video", "noise", "tiled", "tile_size", "tile_stride", "vace_reference_image"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, input_video, noise, tiled, tile_size, tile_stride, vace_reference_image):
|
|
if input_video is None:
|
|
return {"latents": noise}
|
|
pipe.load_models_to_device(["vae"])
|
|
input_video = pipe.preprocess_video(input_video)
|
|
input_latents = pipe.vae.encode(input_video, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
if vace_reference_image is not None:
|
|
vace_reference_image = pipe.preprocess_video([vace_reference_image])
|
|
vace_reference_latents = pipe.vae.encode(vace_reference_image, device=pipe.device).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
input_latents = torch.concat([vace_reference_latents, input_latents], dim=2)
|
|
if pipe.scheduler.training:
|
|
return {"latents": noise, "input_latents": input_latents}
|
|
else:
|
|
latents = pipe.scheduler.add_noise(input_latents, noise, timestep=pipe.scheduler.timesteps[0])
|
|
return {"latents": latents}
|
|
|
|
|
|
|
|
class WanVideoUnit_PromptEmbedder(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
seperate_cfg=True,
|
|
input_params_posi={"prompt": "prompt", "positive": "positive"},
|
|
input_params_nega={"prompt": "negative_prompt", "positive": "positive"},
|
|
onload_model_names=("text_encoder",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, prompt, positive) -> dict:
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
prompt_emb = pipe.prompter.encode_prompt(prompt, positive=positive, device=pipe.device)
|
|
return {"context": prompt_emb}
|
|
|
|
|
|
|
|
class WanVideoUnit_ImageEmbedder(PipelineUnit):
|
|
"""
|
|
Deprecated
|
|
"""
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("input_image", "end_image", "num_frames", "height", "width", "tiled", "tile_size", "tile_stride"),
|
|
onload_model_names=("image_encoder", "vae")
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, input_image, end_image, num_frames, height, width, tiled, tile_size, tile_stride):
|
|
if input_image is None or pipe.image_encoder is None:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
image = pipe.preprocess_image(input_image.resize((width, height))).to(pipe.device)
|
|
clip_context = pipe.image_encoder.encode_image([image])
|
|
msk = torch.ones(1, num_frames, height//8, width//8, device=pipe.device)
|
|
msk[:, 1:] = 0
|
|
if end_image is not None:
|
|
end_image = pipe.preprocess_image(end_image.resize((width, height))).to(pipe.device)
|
|
vae_input = torch.concat([image.transpose(0,1), torch.zeros(3, num_frames-2, height, width).to(image.device), end_image.transpose(0,1)],dim=1)
|
|
if pipe.dit.has_image_pos_emb:
|
|
clip_context = torch.concat([clip_context, pipe.image_encoder.encode_image([end_image])], dim=1)
|
|
msk[:, -1:] = 1
|
|
else:
|
|
vae_input = torch.concat([image.transpose(0, 1), torch.zeros(3, num_frames-1, height, width).to(image.device)], dim=1)
|
|
|
|
msk = torch.concat([torch.repeat_interleave(msk[:, 0:1], repeats=4, dim=1), msk[:, 1:]], dim=1)
|
|
msk = msk.view(1, msk.shape[1] // 4, 4, height//8, width//8)
|
|
msk = msk.transpose(1, 2)[0]
|
|
|
|
y = pipe.vae.encode([vae_input.to(dtype=pipe.torch_dtype, device=pipe.device)], device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)[0]
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
y = torch.concat([msk, y])
|
|
y = y.unsqueeze(0)
|
|
clip_context = clip_context.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"clip_feature": clip_context, "y": y}
|
|
|
|
|
|
|
|
class WanVideoUnit_ImageEmbedderCLIP(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("input_image", "end_image", "height", "width"),
|
|
onload_model_names=("image_encoder",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, input_image, end_image, height, width):
|
|
if input_image is None or pipe.image_encoder is None or not pipe.dit.require_clip_embedding:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
image = pipe.preprocess_image(input_image.resize((width, height))).to(pipe.device)
|
|
clip_context = pipe.image_encoder.encode_image([image])
|
|
if end_image is not None:
|
|
end_image = pipe.preprocess_image(end_image.resize((width, height))).to(pipe.device)
|
|
if pipe.dit.has_image_pos_emb:
|
|
clip_context = torch.concat([clip_context, pipe.image_encoder.encode_image([end_image])], dim=1)
|
|
clip_context = clip_context.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"clip_feature": clip_context}
|
|
|
|
|
|
|
|
class WanVideoUnit_ImageEmbedderVAE(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("input_image", "end_image", "num_frames", "height", "width", "tiled", "tile_size", "tile_stride"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, input_image, end_image, num_frames, height, width, tiled, tile_size, tile_stride):
|
|
if input_image is None or not pipe.dit.require_vae_embedding:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
image = pipe.preprocess_image(input_image.resize((width, height))).to(pipe.device)
|
|
msk = torch.ones(1, num_frames, height//8, width//8, device=pipe.device)
|
|
msk[:, 1:] = 0
|
|
if end_image is not None:
|
|
end_image = pipe.preprocess_image(end_image.resize((width, height))).to(pipe.device)
|
|
vae_input = torch.concat([image.transpose(0,1), torch.zeros(3, num_frames-2, height, width).to(image.device), end_image.transpose(0,1)],dim=1)
|
|
msk[:, -1:] = 1
|
|
else:
|
|
vae_input = torch.concat([image.transpose(0, 1), torch.zeros(3, num_frames-1, height, width).to(image.device)], dim=1)
|
|
|
|
msk = torch.concat([torch.repeat_interleave(msk[:, 0:1], repeats=4, dim=1), msk[:, 1:]], dim=1)
|
|
msk = msk.view(1, msk.shape[1] // 4, 4, height//8, width//8)
|
|
msk = msk.transpose(1, 2)[0]
|
|
|
|
y = pipe.vae.encode([vae_input.to(dtype=pipe.torch_dtype, device=pipe.device)], device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)[0]
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
y = torch.concat([msk, y])
|
|
y = y.unsqueeze(0)
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"y": y}
|
|
|
|
|
|
|
|
class WanVideoUnit_ImageEmbedderFused(PipelineUnit):
|
|
"""
|
|
Encode input image to latents using VAE. This unit is for Wan-AI/Wan2.2-TI2V-5B.
|
|
"""
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("input_image", "latents", "height", "width", "tiled", "tile_size", "tile_stride"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, input_image, latents, height, width, tiled, tile_size, tile_stride):
|
|
if input_image is None or not pipe.dit.fuse_vae_embedding_in_latents:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
image = pipe.preprocess_image(input_image.resize((width, height))).transpose(0, 1)
|
|
z = pipe.vae.encode([image], device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
|
|
latents[:, :, 0: 1] = z
|
|
return {"latents": latents, "fuse_vae_embedding_in_latents": True, "first_frame_latents": z}
|
|
|
|
|
|
|
|
class WanVideoUnit_FunControl(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("control_video", "num_frames", "height", "width", "tiled", "tile_size", "tile_stride", "clip_feature", "y", "latents"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, control_video, num_frames, height, width, tiled, tile_size, tile_stride, clip_feature, y, latents):
|
|
if control_video is None:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
control_video = pipe.preprocess_video(control_video)
|
|
control_latents = pipe.vae.encode(control_video, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
control_latents = control_latents.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
y_dim = pipe.dit.in_dim-control_latents.shape[1]-latents.shape[1]
|
|
if clip_feature is None or y is None:
|
|
clip_feature = torch.zeros((1, 257, 1280), dtype=pipe.torch_dtype, device=pipe.device)
|
|
y = torch.zeros((1, y_dim, (num_frames - 1) // 4 + 1, height//8, width//8), dtype=pipe.torch_dtype, device=pipe.device)
|
|
else:
|
|
y = y[:, -y_dim:]
|
|
y = torch.concat([control_latents, y], dim=1)
|
|
return {"clip_feature": clip_feature, "y": y}
|
|
|
|
|
|
|
|
class WanVideoUnit_FunReference(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("reference_image", "height", "width", "reference_image"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, reference_image, height, width):
|
|
if reference_image is None:
|
|
return {}
|
|
pipe.load_models_to_device(["vae"])
|
|
reference_image = reference_image.resize((width, height))
|
|
reference_latents = pipe.preprocess_video([reference_image])
|
|
reference_latents = pipe.vae.encode(reference_latents, device=pipe.device)
|
|
if pipe.image_encoder is None:
|
|
return {"reference_latents": reference_latents}
|
|
clip_feature = pipe.preprocess_image(reference_image)
|
|
clip_feature = pipe.image_encoder.encode_image([clip_feature])
|
|
return {"reference_latents": reference_latents, "clip_feature": clip_feature}
|
|
|
|
|
|
|
|
class WanVideoUnit_FunCameraControl(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("height", "width", "num_frames", "camera_control_direction", "camera_control_speed", "camera_control_origin", "latents", "input_image", "tiled", "tile_size", "tile_stride"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, height, width, num_frames, camera_control_direction, camera_control_speed, camera_control_origin, latents, input_image, tiled, tile_size, tile_stride):
|
|
if camera_control_direction is None:
|
|
return {}
|
|
pipe.load_models_to_device(self.onload_model_names)
|
|
camera_control_plucker_embedding = pipe.dit.control_adapter.process_camera_coordinates(
|
|
camera_control_direction, num_frames, height, width, camera_control_speed, camera_control_origin)
|
|
|
|
control_camera_video = camera_control_plucker_embedding[:num_frames].permute([3, 0, 1, 2]).unsqueeze(0)
|
|
control_camera_latents = torch.concat(
|
|
[
|
|
torch.repeat_interleave(control_camera_video[:, :, 0:1], repeats=4, dim=2),
|
|
control_camera_video[:, :, 1:]
|
|
], dim=2
|
|
).transpose(1, 2)
|
|
b, f, c, h, w = control_camera_latents.shape
|
|
control_camera_latents = control_camera_latents.contiguous().view(b, f // 4, 4, c, h, w).transpose(2, 3)
|
|
control_camera_latents = control_camera_latents.contiguous().view(b, f // 4, c * 4, h, w).transpose(1, 2)
|
|
control_camera_latents_input = control_camera_latents.to(device=pipe.device, dtype=pipe.torch_dtype)
|
|
|
|
input_image = input_image.resize((width, height))
|
|
input_latents = pipe.preprocess_video([input_image])
|
|
input_latents = pipe.vae.encode(input_latents, device=pipe.device)
|
|
y = torch.zeros_like(latents).to(pipe.device)
|
|
y[:, :, :1] = input_latents
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
|
|
if y.shape[1] != pipe.dit.in_dim - latents.shape[1]:
|
|
image = pipe.preprocess_image(input_image.resize((width, height))).to(pipe.device)
|
|
vae_input = torch.concat([image.transpose(0, 1), torch.zeros(3, num_frames-1, height, width).to(image.device)], dim=1)
|
|
y = pipe.vae.encode([vae_input.to(dtype=pipe.torch_dtype, device=pipe.device)], device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)[0]
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
msk = torch.ones(1, num_frames, height//8, width//8, device=pipe.device)
|
|
msk[:, 1:] = 0
|
|
msk = torch.concat([torch.repeat_interleave(msk[:, 0:1], repeats=4, dim=1), msk[:, 1:]], dim=1)
|
|
msk = msk.view(1, msk.shape[1] // 4, 4, height//8, width//8)
|
|
msk = msk.transpose(1, 2)[0]
|
|
y = torch.cat([msk,y])
|
|
y = y.unsqueeze(0)
|
|
y = y.to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"control_camera_latents_input": control_camera_latents_input, "y": y}
|
|
|
|
|
|
|
|
class WanVideoUnit_SpeedControl(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(input_params=("motion_bucket_id",))
|
|
|
|
def process(self, pipe: WanVideoPipeline, motion_bucket_id):
|
|
if motion_bucket_id is None:
|
|
return {}
|
|
motion_bucket_id = torch.Tensor((motion_bucket_id,)).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"motion_bucket_id": motion_bucket_id}
|
|
|
|
|
|
|
|
class WanVideoUnit_VACE(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
input_params=("vace_video", "vace_video_mask", "vace_reference_image", "vace_scale", "height", "width", "num_frames", "tiled", "tile_size", "tile_stride"),
|
|
onload_model_names=("vae",)
|
|
)
|
|
|
|
def process(
|
|
self,
|
|
pipe: WanVideoPipeline,
|
|
vace_video, vace_video_mask, vace_reference_image, vace_scale,
|
|
height, width, num_frames,
|
|
tiled, tile_size, tile_stride
|
|
):
|
|
if vace_video is not None or vace_video_mask is not None or vace_reference_image is not None:
|
|
pipe.load_models_to_device(["vae"])
|
|
if vace_video is None:
|
|
vace_video = torch.zeros((1, 3, num_frames, height, width), dtype=pipe.torch_dtype, device=pipe.device)
|
|
else:
|
|
vace_video = pipe.preprocess_video(vace_video)
|
|
|
|
if vace_video_mask is None:
|
|
vace_video_mask = torch.ones_like(vace_video)
|
|
else:
|
|
vace_video_mask = pipe.preprocess_video(vace_video_mask, min_value=0, max_value=1)
|
|
|
|
inactive = vace_video * (1 - vace_video_mask) + 0 * vace_video_mask
|
|
reactive = vace_video * vace_video_mask + 0 * (1 - vace_video_mask)
|
|
inactive = pipe.vae.encode(inactive, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
reactive = pipe.vae.encode(reactive, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
vace_video_latents = torch.concat((inactive, reactive), dim=1)
|
|
|
|
vace_mask_latents = rearrange(vace_video_mask[0,0], "T (H P) (W Q) -> 1 (P Q) T H W", P=8, Q=8)
|
|
vace_mask_latents = torch.nn.functional.interpolate(vace_mask_latents, size=((vace_mask_latents.shape[2] + 3) // 4, vace_mask_latents.shape[3], vace_mask_latents.shape[4]), mode='nearest-exact')
|
|
|
|
if vace_reference_image is None:
|
|
pass
|
|
else:
|
|
vace_reference_image = pipe.preprocess_video([vace_reference_image])
|
|
vace_reference_latents = pipe.vae.encode(vace_reference_image, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
vace_reference_latents = torch.concat((vace_reference_latents, torch.zeros_like(vace_reference_latents)), dim=1)
|
|
vace_video_latents = torch.concat((vace_reference_latents, vace_video_latents), dim=2)
|
|
vace_mask_latents = torch.concat((torch.zeros_like(vace_mask_latents[:, :, :1]), vace_mask_latents), dim=2)
|
|
|
|
vace_context = torch.concat((vace_video_latents, vace_mask_latents), dim=1)
|
|
return {"vace_context": vace_context, "vace_scale": vace_scale}
|
|
else:
|
|
return {"vace_context": None, "vace_scale": vace_scale}
|
|
|
|
|
|
|
|
class WanVideoUnit_UnifiedSequenceParallel(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(input_params=())
|
|
|
|
def process(self, pipe: WanVideoPipeline):
|
|
if hasattr(pipe, "use_unified_sequence_parallel"):
|
|
if pipe.use_unified_sequence_parallel:
|
|
return {"use_unified_sequence_parallel": True}
|
|
return {}
|
|
|
|
|
|
|
|
class WanVideoUnit_TeaCache(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
seperate_cfg=True,
|
|
input_params_posi={"num_inference_steps": "num_inference_steps", "tea_cache_l1_thresh": "tea_cache_l1_thresh", "tea_cache_model_id": "tea_cache_model_id"},
|
|
input_params_nega={"num_inference_steps": "num_inference_steps", "tea_cache_l1_thresh": "tea_cache_l1_thresh", "tea_cache_model_id": "tea_cache_model_id"},
|
|
)
|
|
|
|
def process(self, pipe: WanVideoPipeline, num_inference_steps, tea_cache_l1_thresh, tea_cache_model_id):
|
|
if tea_cache_l1_thresh is None:
|
|
return {}
|
|
return {"tea_cache": TeaCache(num_inference_steps, rel_l1_thresh=tea_cache_l1_thresh, model_id=tea_cache_model_id)}
|
|
|
|
|
|
|
|
class WanVideoUnit_CfgMerger(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(take_over=True)
|
|
self.concat_tensor_names = ["context", "clip_feature", "y", "reference_latents"]
|
|
|
|
def process(self, pipe: WanVideoPipeline, inputs_shared, inputs_posi, inputs_nega):
|
|
if not inputs_shared["cfg_merge"]:
|
|
return inputs_shared, inputs_posi, inputs_nega
|
|
for name in self.concat_tensor_names:
|
|
tensor_posi = inputs_posi.get(name)
|
|
tensor_nega = inputs_nega.get(name)
|
|
tensor_shared = inputs_shared.get(name)
|
|
if tensor_posi is not None and tensor_nega is not None:
|
|
inputs_shared[name] = torch.concat((tensor_posi, tensor_nega), dim=0)
|
|
elif tensor_shared is not None:
|
|
inputs_shared[name] = torch.concat((tensor_shared, tensor_shared), dim=0)
|
|
inputs_posi.clear()
|
|
inputs_nega.clear()
|
|
return inputs_shared, inputs_posi, inputs_nega
|
|
|
|
|
|
class WanVideoUnit_S2V(PipelineUnit):
|
|
def __init__(self):
|
|
super().__init__(
|
|
take_over=True,
|
|
onload_model_names=("audio_encoder", "vae",)
|
|
)
|
|
|
|
def process_audio(self, pipe: WanVideoPipeline, input_audio, audio_sample_rate, num_frames):
|
|
if input_audio is None or pipe.audio_encoder is None or pipe.audio_processor is None:
|
|
return {}
|
|
pipe.load_models_to_device(["audio_encoder"])
|
|
z = pipe.audio_encoder.extract_audio_feat(input_audio, audio_sample_rate, pipe.audio_processor, return_all_layers=True, dtype=pipe.torch_dtype, device=pipe.device)
|
|
audio_embed_bucket, num_repeat = pipe.audio_encoder.get_audio_embed_bucket_fps(
|
|
z, fps=16, batch_frames=num_frames - 1, m=0
|
|
)
|
|
audio_embed_bucket = audio_embed_bucket.unsqueeze(0).to(pipe.device, pipe.torch_dtype)
|
|
if len(audio_embed_bucket.shape) == 3:
|
|
audio_embed_bucket = audio_embed_bucket.permute(0, 2, 1)
|
|
elif len(audio_embed_bucket.shape) == 4:
|
|
audio_embed_bucket = audio_embed_bucket.permute(0, 2, 3, 1)
|
|
audio_embed_bucket = audio_embed_bucket[..., 0:num_frames-1]
|
|
return {"audio_input": audio_embed_bucket}
|
|
|
|
def process_motion_latents(self, pipe: WanVideoPipeline, height, width, tiled, tile_size, tile_stride):
|
|
pipe.load_models_to_device(["vae"])
|
|
# TODO: may support input motion latents, which related to `drop_motion_frames = False`
|
|
motion_frames = 73
|
|
lat_motion_frames = (motion_frames + 3) // 4 # 19
|
|
motion_latents = torch.zeros([1, 3, motion_frames, height, width], dtype=pipe.torch_dtype, device=pipe.device)
|
|
motion_latents = pipe.vae.encode(motion_latents, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"motion_latents": motion_latents}
|
|
|
|
def process_pose_cond(self, pipe: WanVideoPipeline, s2v_pose_video, num_frames, height, width, tiled, tile_size, tile_stride):
|
|
if s2v_pose_video is None:
|
|
return {"pose_cond": None}
|
|
pipe.load_models_to_device(["vae"])
|
|
input_video = pipe.preprocess_video(s2v_pose_video)
|
|
# get num_frames-1 frames
|
|
input_video = input_video[:, :, :num_frames]
|
|
# pad if not enough frames
|
|
padding_frames = num_frames - input_video.shape[2]
|
|
input_video = torch.cat([input_video, -torch.ones(1, 3, padding_frames, height, width, device=input_video.device, dtype=input_video.dtype)], dim=2)
|
|
# encode to latents
|
|
input_latents = pipe.vae.encode(input_video, device=pipe.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride).to(dtype=pipe.torch_dtype, device=pipe.device)
|
|
return {"pose_cond": input_latents[:,:,1:]}
|
|
|
|
def process(self, pipe: WanVideoPipeline, inputs_shared, inputs_posi, inputs_nega):
|
|
if inputs_shared.get("input_audio") is None or pipe.audio_encoder is None or pipe.audio_processor is None:
|
|
return inputs_shared, inputs_posi, inputs_nega
|
|
input_audio, audio_sample_rate, s2v_pose_video, num_frames, height, width = inputs_shared.get("input_audio"), inputs_shared.get("audio_sample_rate"), inputs_shared.get("s2v_pose_video"), inputs_shared.get("num_frames"), inputs_shared.get("height"), inputs_shared.get("width")
|
|
tiled, tile_size, tile_stride = inputs_shared.get("tiled"), inputs_shared.get("tile_size"), inputs_shared.get("tile_stride")
|
|
|
|
audio_input_positive = self.process_audio(pipe, input_audio, audio_sample_rate, num_frames)
|
|
inputs_posi.update(audio_input_positive)
|
|
inputs_nega.update({"audio_input": 0.0 * audio_input_positive["audio_input"]})
|
|
|
|
inputs_shared.update(self.process_motion_latents(pipe, height, width, tiled, tile_size, tile_stride))
|
|
inputs_shared.update(self.process_pose_cond(pipe, s2v_pose_video, num_frames, height, width, tiled, tile_size, tile_stride))
|
|
return inputs_shared, inputs_posi, inputs_nega
|
|
|
|
|
|
class TeaCache:
|
|
def __init__(self, num_inference_steps, rel_l1_thresh, model_id):
|
|
self.num_inference_steps = num_inference_steps
|
|
self.step = 0
|
|
self.accumulated_rel_l1_distance = 0
|
|
self.previous_modulated_input = None
|
|
self.rel_l1_thresh = rel_l1_thresh
|
|
self.previous_residual = None
|
|
self.previous_hidden_states = None
|
|
|
|
self.coefficients_dict = {
|
|
"Wan2.1-T2V-1.3B": [-5.21862437e+04, 9.23041404e+03, -5.28275948e+02, 1.36987616e+01, -4.99875664e-02],
|
|
"Wan2.1-T2V-14B": [-3.03318725e+05, 4.90537029e+04, -2.65530556e+03, 5.87365115e+01, -3.15583525e-01],
|
|
"Wan2.1-I2V-14B-480P": [2.57151496e+05, -3.54229917e+04, 1.40286849e+03, -1.35890334e+01, 1.32517977e-01],
|
|
"Wan2.1-I2V-14B-720P": [ 8.10705460e+03, 2.13393892e+03, -3.72934672e+02, 1.66203073e+01, -4.17769401e-02],
|
|
}
|
|
if model_id not in self.coefficients_dict:
|
|
supported_model_ids = ", ".join([i for i in self.coefficients_dict])
|
|
raise ValueError(f"{model_id} is not a supported TeaCache model id. Please choose a valid model id in ({supported_model_ids}).")
|
|
self.coefficients = self.coefficients_dict[model_id]
|
|
|
|
def check(self, dit: WanModel, x, t_mod):
|
|
modulated_inp = t_mod.clone()
|
|
if self.step == 0 or self.step == self.num_inference_steps - 1:
|
|
should_calc = True
|
|
self.accumulated_rel_l1_distance = 0
|
|
else:
|
|
coefficients = self.coefficients
|
|
rescale_func = np.poly1d(coefficients)
|
|
self.accumulated_rel_l1_distance += rescale_func(((modulated_inp-self.previous_modulated_input).abs().mean() / self.previous_modulated_input.abs().mean()).cpu().item())
|
|
if self.accumulated_rel_l1_distance < self.rel_l1_thresh:
|
|
should_calc = False
|
|
else:
|
|
should_calc = True
|
|
self.accumulated_rel_l1_distance = 0
|
|
self.previous_modulated_input = modulated_inp
|
|
self.step += 1
|
|
if self.step == self.num_inference_steps:
|
|
self.step = 0
|
|
if should_calc:
|
|
self.previous_hidden_states = x.clone()
|
|
return not should_calc
|
|
|
|
def store(self, hidden_states):
|
|
self.previous_residual = hidden_states - self.previous_hidden_states
|
|
self.previous_hidden_states = None
|
|
|
|
def update(self, hidden_states):
|
|
hidden_states = hidden_states + self.previous_residual
|
|
return hidden_states
|
|
|
|
|
|
|
|
class TemporalTiler_BCTHW:
|
|
def __init__(self):
|
|
pass
|
|
|
|
def build_1d_mask(self, length, left_bound, right_bound, border_width):
|
|
x = torch.ones((length,))
|
|
if border_width == 0:
|
|
return x
|
|
|
|
shift = 0.5
|
|
if not left_bound:
|
|
x[:border_width] = (torch.arange(border_width) + shift) / border_width
|
|
if not right_bound:
|
|
x[-border_width:] = torch.flip((torch.arange(border_width) + shift) / border_width, dims=(0,))
|
|
return x
|
|
|
|
def build_mask(self, data, is_bound, border_width):
|
|
_, _, T, _, _ = data.shape
|
|
t = self.build_1d_mask(T, is_bound[0], is_bound[1], border_width[0])
|
|
mask = repeat(t, "T -> 1 1 T 1 1")
|
|
return mask
|
|
|
|
def run(self, model_fn, sliding_window_size, sliding_window_stride, computation_device, computation_dtype, model_kwargs, tensor_names, batch_size=None):
|
|
tensor_names = [tensor_name for tensor_name in tensor_names if model_kwargs.get(tensor_name) is not None]
|
|
tensor_dict = {tensor_name: model_kwargs[tensor_name] for tensor_name in tensor_names}
|
|
B, C, T, H, W = tensor_dict[tensor_names[0]].shape
|
|
if batch_size is not None:
|
|
B *= batch_size
|
|
data_device, data_dtype = tensor_dict[tensor_names[0]].device, tensor_dict[tensor_names[0]].dtype
|
|
value = torch.zeros((B, C, T, H, W), device=data_device, dtype=data_dtype)
|
|
weight = torch.zeros((1, 1, T, 1, 1), device=data_device, dtype=data_dtype)
|
|
for t in range(0, T, sliding_window_stride):
|
|
if t - sliding_window_stride >= 0 and t - sliding_window_stride + sliding_window_size >= T:
|
|
continue
|
|
t_ = min(t + sliding_window_size, T)
|
|
model_kwargs.update({
|
|
tensor_name: tensor_dict[tensor_name][:, :, t: t_:, :].to(device=computation_device, dtype=computation_dtype) \
|
|
for tensor_name in tensor_names
|
|
})
|
|
model_output = model_fn(**model_kwargs).to(device=data_device, dtype=data_dtype)
|
|
mask = self.build_mask(
|
|
model_output,
|
|
is_bound=(t == 0, t_ == T),
|
|
border_width=(sliding_window_size - sliding_window_stride,)
|
|
).to(device=data_device, dtype=data_dtype)
|
|
value[:, :, t: t_, :, :] += model_output * mask
|
|
weight[:, :, t: t_, :, :] += mask
|
|
value /= weight
|
|
model_kwargs.update(tensor_dict)
|
|
return value
|
|
|
|
|
|
|
|
def model_fn_wan_video(
|
|
dit: WanModel,
|
|
motion_controller: WanMotionControllerModel = None,
|
|
vace: VaceWanModel = None,
|
|
latents: torch.Tensor = None,
|
|
timestep: torch.Tensor = None,
|
|
context: torch.Tensor = None,
|
|
clip_feature: Optional[torch.Tensor] = None,
|
|
y: Optional[torch.Tensor] = None,
|
|
reference_latents = None,
|
|
vace_context = None,
|
|
vace_scale = 1.0,
|
|
audio_input: Optional[torch.Tensor] = None,
|
|
motion_latents: Optional[torch.Tensor] = None,
|
|
pose_cond: Optional[torch.Tensor] = None,
|
|
tea_cache: TeaCache = None,
|
|
use_unified_sequence_parallel: bool = False,
|
|
motion_bucket_id: Optional[torch.Tensor] = None,
|
|
sliding_window_size: Optional[int] = None,
|
|
sliding_window_stride: Optional[int] = None,
|
|
cfg_merge: bool = False,
|
|
use_gradient_checkpointing: bool = False,
|
|
use_gradient_checkpointing_offload: bool = False,
|
|
control_camera_latents_input = None,
|
|
fuse_vae_embedding_in_latents: bool = False,
|
|
**kwargs,
|
|
):
|
|
if sliding_window_size is not None and sliding_window_stride is not None:
|
|
model_kwargs = dict(
|
|
dit=dit,
|
|
motion_controller=motion_controller,
|
|
vace=vace,
|
|
latents=latents,
|
|
timestep=timestep,
|
|
context=context,
|
|
clip_feature=clip_feature,
|
|
y=y,
|
|
reference_latents=reference_latents,
|
|
vace_context=vace_context,
|
|
vace_scale=vace_scale,
|
|
tea_cache=tea_cache,
|
|
use_unified_sequence_parallel=use_unified_sequence_parallel,
|
|
motion_bucket_id=motion_bucket_id,
|
|
)
|
|
return TemporalTiler_BCTHW().run(
|
|
model_fn_wan_video,
|
|
sliding_window_size, sliding_window_stride,
|
|
latents.device, latents.dtype,
|
|
model_kwargs=model_kwargs,
|
|
tensor_names=["latents", "y"],
|
|
batch_size=2 if cfg_merge else 1
|
|
)
|
|
# wan2.2 s2v
|
|
if audio_input is not None:
|
|
return model_fn_wans2v(
|
|
dit=dit,
|
|
latents=latents,
|
|
timestep=timestep,
|
|
context=context,
|
|
audio_input=audio_input,
|
|
motion_latents=motion_latents,
|
|
pose_cond=pose_cond,
|
|
use_gradient_checkpointing_offload=use_gradient_checkpointing_offload,
|
|
use_gradient_checkpointing=use_gradient_checkpointing,
|
|
use_unified_sequence_parallel=use_unified_sequence_parallel,
|
|
)
|
|
|
|
if use_unified_sequence_parallel:
|
|
import torch.distributed as dist
|
|
from xfuser.core.distributed import (get_sequence_parallel_rank,
|
|
get_sequence_parallel_world_size,
|
|
get_sp_group)
|
|
|
|
# Timestep
|
|
if dit.seperated_timestep and fuse_vae_embedding_in_latents:
|
|
timestep = torch.concat([
|
|
torch.zeros((1, latents.shape[3] * latents.shape[4] // 4), dtype=latents.dtype, device=latents.device),
|
|
torch.ones((latents.shape[2] - 1, latents.shape[3] * latents.shape[4] // 4), dtype=latents.dtype, device=latents.device) * timestep
|
|
]).flatten()
|
|
t = dit.time_embedding(sinusoidal_embedding_1d(dit.freq_dim, timestep).unsqueeze(0))
|
|
if use_unified_sequence_parallel and dist.is_initialized() and dist.get_world_size() > 1:
|
|
t_chunks = torch.chunk(t, get_sequence_parallel_world_size(), dim=1)
|
|
t_chunks = [torch.nn.functional.pad(chunk, (0, 0, 0, t_chunks[0].shape[1]-chunk.shape[1]), value=0) for chunk in t_chunks]
|
|
t = t_chunks[get_sequence_parallel_rank()]
|
|
t_mod = dit.time_projection(t).unflatten(2, (6, dit.dim))
|
|
else:
|
|
t = dit.time_embedding(sinusoidal_embedding_1d(dit.freq_dim, timestep))
|
|
t_mod = dit.time_projection(t).unflatten(1, (6, dit.dim))
|
|
|
|
# Motion Controller
|
|
if motion_bucket_id is not None and motion_controller is not None:
|
|
t_mod = t_mod + motion_controller(motion_bucket_id).unflatten(1, (6, dit.dim))
|
|
context = dit.text_embedding(context)
|
|
|
|
x = latents
|
|
# Merged cfg
|
|
if x.shape[0] != context.shape[0]:
|
|
x = torch.concat([x] * context.shape[0], dim=0)
|
|
if timestep.shape[0] != context.shape[0]:
|
|
timestep = torch.concat([timestep] * context.shape[0], dim=0)
|
|
|
|
# Image Embedding
|
|
if y is not None and dit.require_vae_embedding:
|
|
x = torch.cat([x, y], dim=1)
|
|
if clip_feature is not None and dit.require_clip_embedding:
|
|
clip_embdding = dit.img_emb(clip_feature)
|
|
context = torch.cat([clip_embdding, context], dim=1)
|
|
|
|
# Add camera control
|
|
x, (f, h, w) = dit.patchify(x, control_camera_latents_input)
|
|
|
|
# Reference image
|
|
if reference_latents is not None:
|
|
if len(reference_latents.shape) == 5:
|
|
reference_latents = reference_latents[:, :, 0]
|
|
reference_latents = dit.ref_conv(reference_latents).flatten(2).transpose(1, 2)
|
|
x = torch.concat([reference_latents, x], dim=1)
|
|
f += 1
|
|
|
|
freqs = torch.cat([
|
|
dit.freqs[0][:f].view(f, 1, 1, -1).expand(f, h, w, -1),
|
|
dit.freqs[1][:h].view(1, h, 1, -1).expand(f, h, w, -1),
|
|
dit.freqs[2][:w].view(1, 1, w, -1).expand(f, h, w, -1)
|
|
], dim=-1).reshape(f * h * w, 1, -1).to(x.device)
|
|
|
|
# TeaCache
|
|
if tea_cache is not None:
|
|
tea_cache_update = tea_cache.check(dit, x, t_mod)
|
|
else:
|
|
tea_cache_update = False
|
|
|
|
if vace_context is not None:
|
|
vace_hints = vace(x, vace_context, context, t_mod, freqs)
|
|
|
|
# blocks
|
|
if use_unified_sequence_parallel:
|
|
if dist.is_initialized() and dist.get_world_size() > 1:
|
|
chunks = torch.chunk(x, get_sequence_parallel_world_size(), dim=1)
|
|
pad_shape = chunks[0].shape[1] - chunks[-1].shape[1]
|
|
chunks = [torch.nn.functional.pad(chunk, (0, 0, 0, chunks[0].shape[1]-chunk.shape[1]), value=0) for chunk in chunks]
|
|
x = chunks[get_sequence_parallel_rank()]
|
|
if tea_cache_update:
|
|
x = tea_cache.update(x)
|
|
else:
|
|
def create_custom_forward(module):
|
|
def custom_forward(*inputs):
|
|
return module(*inputs)
|
|
return custom_forward
|
|
|
|
for block_id, block in enumerate(dit.blocks):
|
|
if use_gradient_checkpointing_offload:
|
|
with torch.autograd.graph.save_on_cpu():
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(block),
|
|
x, context, t_mod, freqs,
|
|
use_reentrant=False,
|
|
)
|
|
elif use_gradient_checkpointing:
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(block),
|
|
x, context, t_mod, freqs,
|
|
use_reentrant=False,
|
|
)
|
|
else:
|
|
x = block(x, context, t_mod, freqs)
|
|
if vace_context is not None and block_id in vace.vace_layers_mapping:
|
|
current_vace_hint = vace_hints[vace.vace_layers_mapping[block_id]]
|
|
if use_unified_sequence_parallel and dist.is_initialized() and dist.get_world_size() > 1:
|
|
current_vace_hint = torch.chunk(current_vace_hint, get_sequence_parallel_world_size(), dim=1)[get_sequence_parallel_rank()]
|
|
current_vace_hint = torch.nn.functional.pad(current_vace_hint, (0, 0, 0, chunks[0].shape[1] - current_vace_hint.shape[1]), value=0)
|
|
x = x + current_vace_hint * vace_scale
|
|
if tea_cache is not None:
|
|
tea_cache.store(x)
|
|
|
|
x = dit.head(x, t)
|
|
if use_unified_sequence_parallel:
|
|
if dist.is_initialized() and dist.get_world_size() > 1:
|
|
x = get_sp_group().all_gather(x, dim=1)
|
|
x = x[:, :-pad_shape] if pad_shape > 0 else x
|
|
# Remove reference latents
|
|
if reference_latents is not None:
|
|
x = x[:, reference_latents.shape[1]:]
|
|
f -= 1
|
|
x = dit.unpatchify(x, (f, h, w))
|
|
return x
|
|
|
|
|
|
def model_fn_wans2v(
|
|
dit,
|
|
latents,
|
|
timestep,
|
|
context,
|
|
audio_input,
|
|
motion_latents,
|
|
pose_cond,
|
|
use_gradient_checkpointing_offload=False,
|
|
use_gradient_checkpointing=False,
|
|
use_unified_sequence_parallel=False,
|
|
):
|
|
if use_unified_sequence_parallel:
|
|
import torch.distributed as dist
|
|
from xfuser.core.distributed import (get_sequence_parallel_rank,
|
|
get_sequence_parallel_world_size,
|
|
get_sp_group)
|
|
origin_ref_latents = latents[:, :, 0:1]
|
|
x = latents[:, :, 1:]
|
|
|
|
# context embedding
|
|
context = dit.text_embedding(context)
|
|
|
|
# audio encode
|
|
audio_emb_global, merged_audio_emb = dit.cal_audio_emb(audio_input)
|
|
|
|
# x and pose_cond
|
|
pose_cond = torch.zeros_like(x) if pose_cond is None else pose_cond
|
|
x, (f, h, w) = dit.patchify(dit.patch_embedding(x) + dit.cond_encoder(pose_cond))
|
|
seq_len_x = seq_len_x_global = x.shape[1] # global used for unified sequence parallel
|
|
|
|
# reference image
|
|
ref_latents, (rf, rh, rw) = dit.patchify(dit.patch_embedding(origin_ref_latents))
|
|
grid_sizes = dit.get_grid_sizes((f, h, w), (rf, rh, rw))
|
|
x = torch.cat([x, ref_latents], dim=1)
|
|
# mask
|
|
mask = torch.cat([torch.zeros([1, seq_len_x]), torch.ones([1, ref_latents.shape[1]])], dim=1).to(torch.long).to(x.device)
|
|
# freqs
|
|
pre_compute_freqs = rope_precompute(x.detach().view(1, x.size(1), dit.num_heads, dit.dim // dit.num_heads), grid_sizes, dit.freqs, start=None)
|
|
# motion
|
|
x, pre_compute_freqs, mask = dit.inject_motion(x, pre_compute_freqs, mask, motion_latents, add_last_motion=2)
|
|
|
|
x = x + dit.trainable_cond_mask(mask).to(x.dtype)
|
|
|
|
# tmod
|
|
timestep = torch.cat([timestep, torch.zeros([1], dtype=timestep.dtype, device=timestep.device)])
|
|
t = dit.time_embedding(sinusoidal_embedding_1d(dit.freq_dim, timestep))
|
|
t_mod = dit.time_projection(t).unflatten(1, (6, dit.dim)).unsqueeze(2).transpose(0, 2)
|
|
|
|
if use_unified_sequence_parallel and dist.is_initialized() and dist.get_world_size() > 1:
|
|
world_size, sp_rank = get_sequence_parallel_world_size(), get_sequence_parallel_rank()
|
|
assert x.shape[1] % world_size == 0, f"the dimension after chunk must be divisible by world size, but got {x.shape[1]} and {get_sequence_parallel_world_size()}"
|
|
x = torch.chunk(x, world_size, dim=1)[sp_rank]
|
|
seg_idxs = [0] + list(torch.cumsum(torch.tensor([x.shape[1]] * world_size), dim=0).cpu().numpy())
|
|
seq_len_x_list = [min(max(0, seq_len_x - seg_idxs[i]), x.shape[1]) for i in range(len(seg_idxs)-1)]
|
|
seq_len_x = seq_len_x_list[sp_rank]
|
|
|
|
def create_custom_forward(module):
|
|
def custom_forward(*inputs):
|
|
return module(*inputs)
|
|
return custom_forward
|
|
|
|
for block_id, block in enumerate(dit.blocks):
|
|
if use_gradient_checkpointing_offload:
|
|
with torch.autograd.graph.save_on_cpu():
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(block),
|
|
x, context, t_mod, seq_len_x, pre_compute_freqs[0],
|
|
use_reentrant=False,
|
|
)
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(lambda x: dit.after_transformer_block(block_id, x, audio_emb_global, merged_audio_emb, seq_len_x)),
|
|
x,
|
|
use_reentrant=False,
|
|
)
|
|
elif use_gradient_checkpointing:
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(block),
|
|
x, context, t_mod, seq_len_x, pre_compute_freqs[0],
|
|
use_reentrant=False,
|
|
)
|
|
x = torch.utils.checkpoint.checkpoint(
|
|
create_custom_forward(lambda x: dit.after_transformer_block(block_id, x, audio_emb_global, merged_audio_emb, seq_len_x)),
|
|
x,
|
|
use_reentrant=False,
|
|
)
|
|
else:
|
|
x = block(x, context, t_mod, seq_len_x, pre_compute_freqs[0])
|
|
x = dit.after_transformer_block(block_id, x, audio_emb_global, merged_audio_emb, seq_len_x_global, use_unified_sequence_parallel)
|
|
|
|
if use_unified_sequence_parallel and dist.is_initialized() and dist.get_world_size() > 1:
|
|
x = get_sp_group().all_gather(x, dim=1)
|
|
|
|
x = x[:, :seq_len_x_global]
|
|
x = dit.head(x, t[:-1])
|
|
x = dit.unpatchify(x, (f, h, w))
|
|
# make compatible with wan video
|
|
x = torch.cat([origin_ref_latents, x], dim=2)
|
|
return x
|