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2888 lines (2529 loc) · 171 KB
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import os, gc, math, copy
import torch
import numpy as np
from tqdm import tqdm
import inspect
from .wanvideo.modules.model import rope_params
from .custom_linear import remove_lora_from_module, set_lora_params, _replace_linear
from .wanvideo.schedulers import get_scheduler, scheduler_list
from .gguf.gguf import set_lora_params_gguf
from .multitalk.multitalk import add_noise
from .utils import(log, print_memory, apply_lora, fourier_filter, optimized_scale, setup_radial_attention,
compile_model, dict_to_device, tangential_projection, get_raag_guidance, temporal_score_rescaling, offload_transformer, init_blockswap)
from .multitalk.multitalk_loop import multitalk_loop
from .cache_methods.cache_methods import cache_report
from .nodes_model_loading import load_weights
from .enhance_a_video.globals import set_enhance_weight, set_num_frames
from .WanMove.trajectory import replace_feature
from contextlib import nullcontext
from comfy import model_management as mm
from comfy.utils import ProgressBar
from comfy.cli_args import args, LatentPreviewMethod
script_directory = os.path.dirname(os.path.abspath(__file__))
device = mm.get_torch_device()
offload_device = mm.unet_offload_device()
rope_functions = ["default", "comfy", "comfy_chunked"]
VAE_STRIDE = (4, 8, 8)
PATCH_SIZE = (1, 2, 2)
class WanVideoSampler:
@classmethod
def INPUT_TYPES(s):
return {
"required": {
"model": ("WANVIDEOMODEL",),
"image_embeds": ("WANVIDIMAGE_EMBEDS", ),
"steps": ("INT", {"default": 30, "min": 1}),
"cfg": ("FLOAT", {"default": 6.0, "min": 0.0, "max": 30.0, "step": 0.01}),
"shift": ("FLOAT", {"default": 5.0, "min": 0.0, "max": 1000.0, "step": 0.01}),
"seed": ("INT", {"default": 0, "min": 0, "max": 0xffffffffffffffff}),
"force_offload": ("BOOLEAN", {"default": True, "tooltip": "Moves the model to the offload device after sampling"}),
"scheduler": (scheduler_list, {"default": "unipc",}),
"riflex_freq_index": ("INT", {"default": 0, "min": 0, "max": 1000, "step": 1, "tooltip": "Frequency index for RIFLEX, disabled when 0, default 6. Allows for new frames to be generated after without looping"}),
},
"optional": {
"text_embeds": ("WANVIDEOTEXTEMBEDS", ),
"samples": ("LATENT", {"tooltip": "init Latents to use for video2video process"} ),
"denoise_strength": ("FLOAT", {"default": 1.0, "min": 0.0, "max": 1.0, "step": 0.01}),
"feta_args": ("FETAARGS", ),
"context_options": ("WANVIDCONTEXT", ),
"cache_args": ("CACHEARGS", ),
"flowedit_args": ("FLOWEDITARGS", {"tooltip": "FlowEdit support has been deprecated"}),
"batched_cfg": ("BOOLEAN", {"default": False, "tooltip": "Batch cond and uncond for faster sampling, possibly faster on some hardware, uses more memory"}),
"slg_args": ("SLGARGS", ),
"rope_function": (rope_functions, {"default": "comfy", "tooltip": "Comfy's RoPE implementation doesn't use complex numbers and can thus be compiled, that should be a lot faster when using torch.compile. Chunked version has reduced peak VRAM usage when not using torch.compile"}),
"loop_args": ("LOOPARGS", ),
"experimental_args": ("EXPERIMENTALARGS", ),
"sigmas": ("SIGMAS", ),
"unianimate_poses": ("UNIANIMATE_POSE", ),
"fantasytalking_embeds": ("FANTASYTALKING_EMBEDS", ),
"uni3c_embeds": ("UNI3C_EMBEDS", ),
"multitalk_embeds": ("MULTITALK_EMBEDS", ),
"freeinit_args": ("FREEINITARGS", ),
"start_step": ("INT", {"default": 0, "min": 0, "max": 10000, "step": 1, "tooltip": "Start step for the sampling, 0 means full sampling, otherwise samples only from this step"}),
"end_step": ("INT", {"default": -1, "min": -1, "max": 10000, "step": 1, "tooltip": "End step for the sampling, -1 means full sampling, otherwise samples only until this step"}),
"add_noise_to_samples": ("BOOLEAN", {"default": False, "tooltip": "Add noise to the samples before sampling, needed for video2video sampling when starting from clean video"}),
}
}
RETURN_TYPES = ("LATENT", "LATENT",)
RETURN_NAMES = ("samples", "denoised_samples",)
FUNCTION = "process"
CATEGORY = "WanVideoWrapper"
def process(self, model, image_embeds, shift, steps, cfg, seed, scheduler, riflex_freq_index, text_embeds=None,
force_offload=True, samples=None, feta_args=None, denoise_strength=1.0, context_options=None,
cache_args=None, teacache_args=None, flowedit_args=None, batched_cfg=False, slg_args=None, rope_function="default", loop_args=None,
experimental_args=None, sigmas=None, unianimate_poses=None, fantasytalking_embeds=None, uni3c_embeds=None, multitalk_embeds=None, freeinit_args=None, start_step=0, end_step=-1, add_noise_to_samples=False):
if flowedit_args is not None:
raise Exception("FlowEdit support has been deprecated and removed due to lack of use and code maintainability")
patcher = model
model = model.model
transformer = model.diffusion_model
dtype = model["base_dtype"]
weight_dtype = model["weight_dtype"]
fp8_matmul = model["fp8_matmul"]
gguf_reader = model["gguf_reader"]
control_lora = model["control_lora"]
vae = image_embeds.get("vae", None)
tiled_vae = image_embeds.get("tiled_vae", False)
transformer_options = copy.deepcopy(patcher.model_options.get("transformer_options", None))
merge_loras = transformer_options["merge_loras"]
block_swap_args = transformer_options.get("block_swap_args", None)
if block_swap_args is not None:
transformer.use_non_blocking = block_swap_args.get("use_non_blocking", False)
transformer.blocks_to_swap = block_swap_args.get("blocks_to_swap", 0)
transformer.vace_blocks_to_swap = block_swap_args.get("vace_blocks_to_swap", 0)
transformer.prefetch_blocks = block_swap_args.get("prefetch_blocks", 0)
transformer.block_swap_debug = block_swap_args.get("block_swap_debug", False)
transformer.offload_img_emb = block_swap_args.get("offload_img_emb", False)
transformer.offload_txt_emb = block_swap_args.get("offload_txt_emb", False)
is_5b = transformer.out_dim == 48
vae_upscale_factor = 16 if is_5b else 8
# Load weights
if transformer.audio_model is not None:
for block in transformer.blocks:
if hasattr(block, 'audio_block'):
block.audio_block = None
if not transformer.patched_linear and patcher.model["sd"] is not None and len(patcher.patches) != 0 and gguf_reader is None:
transformer = _replace_linear(transformer, dtype, patcher.model["sd"], compile_args=model["compile_args"])
transformer.patched_linear = True
if patcher.model["sd"] is not None and gguf_reader is None:
load_weights(patcher.model.diffusion_model, patcher.model["sd"], weight_dtype, base_dtype=dtype, transformer_load_device=device,
block_swap_args=block_swap_args, compile_args=model["compile_args"])
if gguf_reader is not None: #handle GGUF
load_weights(transformer, patcher.model["sd"], base_dtype=dtype, transformer_load_device=device, patcher=patcher, gguf=True,
reader=gguf_reader, block_swap_args=block_swap_args, compile_args=model["compile_args"])
set_lora_params_gguf(transformer, patcher.patches)
transformer.patched_linear = True
elif len(patcher.patches) != 0: #handle patched linear layers (unmerged loras, fp8 scaled)
log.info(f"Using {len(patcher.patches)} LoRA weight patches for WanVideo model")
if not merge_loras and fp8_matmul:
raise NotImplementedError("FP8 matmul with unmerged LoRAs is not supported")
set_lora_params(transformer, patcher.patches)
else:
remove_lora_from_module(transformer) #clear possible unmerged lora weights
transformer.lora_scheduling_enabled = transformer_options.get("lora_scheduling_enabled", False)
#torch.compile
if model["auto_cpu_offload"] is False:
transformer = compile_model(transformer, model["compile_args"])
multitalk_sampling = image_embeds.get("multitalk_sampling", False)
if multitalk_sampling and context_options is not None:
raise Exception("context_options are not compatible or necessary with 'WanVideoImageToVideoMultiTalk' node, since it's already an alternative method that creates the video in a loop.")
if not multitalk_sampling and scheduler == "multitalk":
raise Exception("multitalk scheduler is only for multitalk sampling when using ImagetoVideoMultiTalk -node")
if text_embeds == None:
text_embeds = {
"prompt_embeds": [],
"negative_prompt_embeds": [],
}
else:
text_embeds = dict_to_device(text_embeds, device)
seed_g = torch.Generator(device=torch.device("cpu"))
seed_g.manual_seed(seed)
#region Scheduler
if denoise_strength < 1.0:
if start_step != 0:
raise ValueError("start_step must be 0 when denoise_strength is used")
start_step = steps - int(steps * denoise_strength) - 1
add_noise_to_samples = True #for now to not break old workflows
sample_scheduler = None
if isinstance(scheduler, dict):
sample_scheduler = copy.deepcopy(scheduler["sample_scheduler"])
timesteps = scheduler["timesteps"]
start_step = scheduler.get("start_step", start_step)
elif scheduler != "multitalk":
sample_scheduler, timesteps,_,_ = get_scheduler(scheduler, steps, start_step, end_step, shift, device, transformer.dim, denoise_strength, sigmas=sigmas, log_timesteps=True)
else:
timesteps = torch.tensor([1000, 750, 500, 250], device=device)
total_steps = steps
steps = len(timesteps)
is_pusa = "pusa" in sample_scheduler.__class__.__name__.lower()
if scheduler != "multitalk":
scheduler_step_args = {"generator": seed_g}
step_sig = inspect.signature(sample_scheduler.step)
for arg in list(scheduler_step_args.keys()):
if arg not in step_sig.parameters:
scheduler_step_args.pop(arg)
# Ovi
if transformer.audio_model is not None: # temporary workaround (...nothing more permanent)
for i, block in enumerate(transformer.blocks):
block.audio_block = transformer.audio_model.blocks[i]
sample_scheduler_ovi = copy.deepcopy(sample_scheduler)
rope_function = "default" # comfy rope not implemented for ovi model yet
ovi_negative_text_embeds = text_embeds.get("ovi_negative_prompt_embeds", None)
ovi_audio_cfg = text_embeds.get("ovi_audio_cfg", None)
if ovi_audio_cfg is not None:
if not isinstance(ovi_audio_cfg, list):
ovi_audio_cfg = [ovi_audio_cfg] * (steps + 1)
if isinstance(cfg, list):
if steps < len(cfg):
log.info(f"Received {len(cfg)} cfg values, but only {steps} steps. Slicing cfg list to match steps.")
cfg = cfg[:steps]
elif steps > len(cfg):
log.info(f"Received only {len(cfg)} cfg values, but {steps} steps. Extending cfg list to match steps.")
cfg.extend([cfg[-1]] * (steps - len(cfg)))
log.info(f"Using per-step cfg list: {cfg}")
else:
cfg = [cfg] * (steps + 1)
control_latents = control_camera_latents = clip_fea = clip_fea_neg = end_image = recammaster = camera_embed = unianim_data = mocha_embeds = image_cond_neg =None
vace_data = vace_context = vace_scale = None
fun_or_fl2v_model = drop_last = False
phantom_latents = fun_ref_image = ATI_tracks = None
add_cond = attn_cond = attn_cond_neg = noise_pred_flipped = None
humo_audio = humo_audio_neg = None
has_ref = image_embeds.get("has_ref", False)
#I2V
story_mem_latents = image_embeds.get("story_mem_latents", None)
image_cond = image_embeds.get("image_embeds", None)
image_cond_mask = None
if image_cond is not None:
if transformer.in_dim == 16:
raise ValueError("T2V (text to video) model detected, encoded images only work with I2V (Image to video) models")
elif transformer.in_dim not in [48, 32]: # fun 2.1 models don't use the mask
image_cond_mask = image_embeds.get("mask", None)
# StoryMem
if story_mem_latents is not None:
image_cond = torch.cat([story_mem_latents.to(image_cond), image_cond], dim=1)
image_cond_mask = torch.cat([torch.ones_like(story_mem_latents)[:4], image_cond_mask], dim=1) if image_cond_mask is not None else None
if image_cond_mask is not None:
image_cond = torch.cat([image_cond_mask, image_cond])
else:
image_cond[:, 1:] = 0
#ATI tracks
if transformer_options is not None:
ATI_tracks = transformer_options.get("ati_tracks", None)
if ATI_tracks is not None:
from .ATI.motion_patch import patch_motion
topk = transformer_options.get("ati_topk", 2)
temperature = transformer_options.get("ati_temperature", 220.0)
ati_start_percent = transformer_options.get("ati_start_percent", 0.0)
ati_end_percent = transformer_options.get("ati_end_percent", 1.0)
image_cond_ati = patch_motion(ATI_tracks.to(image_cond.device, image_cond.dtype), image_cond, topk=topk, temperature=temperature)
log.info(f"ATI tracks shape: {ATI_tracks.shape}")
add_cond_latents = image_embeds.get("add_cond_latents", None)
if add_cond_latents is not None:
add_cond = add_cond_latents["pose_latent"]
attn_cond = add_cond_latents["ref_latent"]
attn_cond_neg = add_cond_latents["ref_latent_neg"]
add_cond_start_percent = add_cond_latents["pose_cond_start_percent"]
add_cond_end_percent = add_cond_latents["pose_cond_end_percent"]
end_image = image_embeds.get("end_image", None)
fun_or_fl2v_model = image_embeds.get("fun_or_fl2v_model", False)
latent_frames = (image_embeds["num_frames"] - 1) // 4
latent_frames = latent_frames + (2 if end_image is not None and not fun_or_fl2v_model else 1)
latent_frames = latent_frames + story_mem_latents.shape[1] if story_mem_latents is not None else latent_frames
noise = torch.randn( #C, T, H, W
48 if is_5b else 16,
latent_frames,
image_embeds["lat_h"],
image_embeds["lat_w"],
dtype=torch.float32,
generator=seed_g,
device=torch.device("cpu"))
seq_len = math.ceil((noise.shape[2] * noise.shape[3]) / 4 * noise.shape[1])
control_embeds = image_embeds.get("control_embeds", None)
if control_embeds is not None:
if transformer.in_dim not in [148, 52, 48, 36, 32]:
raise ValueError("Control signal only works with Fun-Control model")
control_latents = control_embeds.get("control_images", None)
control_start_percent = control_embeds.get("start_percent", 0.0)
control_end_percent = control_embeds.get("end_percent", 1.0)
control_camera_latents = control_embeds.get("control_camera_latents", None)
if control_camera_latents is not None:
if transformer.control_adapter is None:
raise ValueError("Control camera latents are only supported with Fun-Control-Camera model")
control_camera_start_percent = control_embeds.get("control_camera_start_percent", 0.0)
control_camera_end_percent = control_embeds.get("control_camera_end_percent", 1.0)
drop_last = image_embeds.get("drop_last", False)
else: #t2v
target_shape = image_embeds.get("target_shape", None)
if target_shape is None:
raise ValueError("Empty image embeds must be provided for T2V models")
# VACE
vace_context = image_embeds.get("vace_context", None)
vace_scale = image_embeds.get("vace_scale", None)
if not isinstance(vace_scale, list):
vace_scale = [vace_scale] * (steps+1)
vace_start_percent = image_embeds.get("vace_start_percent", 0.0)
vace_end_percent = image_embeds.get("vace_end_percent", 1.0)
vace_seqlen = image_embeds.get("vace_seq_len", None)
vace_additional_embeds = image_embeds.get("additional_vace_inputs", [])
if vace_context is not None:
vace_data = [
{"context": vace_context,
"scale": vace_scale,
"start": vace_start_percent,
"end": vace_end_percent,
"seq_len": vace_seqlen
}
]
if len(vace_additional_embeds) > 0:
for i in range(len(vace_additional_embeds)):
if vace_additional_embeds[i].get("has_ref", False):
has_ref = True
vace_scale = vace_additional_embeds[i]["vace_scale"]
if not isinstance(vace_scale, list):
vace_scale = [vace_scale] * (steps+1)
vace_data.append({
"context": vace_additional_embeds[i]["vace_context"],
"scale": vace_scale,
"start": vace_additional_embeds[i]["vace_start_percent"],
"end": vace_additional_embeds[i]["vace_end_percent"],
"seq_len": vace_additional_embeds[i]["vace_seq_len"]
})
noise = torch.randn(
48 if is_5b else 16,
target_shape[1] + 1 if has_ref else target_shape[1],
target_shape[2] // 2 if is_5b else target_shape[2], #todo make this smarter
target_shape[3] // 2 if is_5b else target_shape[3], #todo make this smarter
dtype=torch.float32,
device=torch.device("cpu"),
generator=seed_g)
seq_len = math.ceil((noise.shape[2] * noise.shape[3]) / 4 * noise.shape[1])
recammaster = image_embeds.get("recammaster", None)
if recammaster is not None:
camera_embed = recammaster.get("camera_embed", None)
recam_latents = recammaster.get("source_latents", None)
orig_noise_len = noise.shape[1]
log.info(f"RecamMaster camera embed shape: {camera_embed.shape}")
log.info(f"RecamMaster source video shape: {recam_latents.shape}")
seq_len *= 2
if image_embeds.get("mocha_embeds", None) is not None:
mocha_embeds = image_embeds.get("mocha_embeds", None)
mocha_num_refs = image_embeds.get("mocha_num_refs", 0)
orig_noise_len = noise.shape[1]
seq_len = image_embeds.get("seq_len", seq_len)
log.info(f"MoCha embeds shape: {mocha_embeds.shape}")
# Fun control and control lora
control_embeds = image_embeds.get("control_embeds", None)
if control_embeds is not None:
control_latents = control_embeds.get("control_images", None)
if control_latents is not None:
control_latents = control_latents.to(device)
control_camera_latents = control_embeds.get("control_camera_latents", None)
if control_camera_latents is not None:
if transformer.control_adapter is None:
raise ValueError("Control camera latents are only supported with Fun-Control-Camera model")
control_camera_start_percent = control_embeds.get("control_camera_start_percent", 0.0)
control_camera_end_percent = control_embeds.get("control_camera_end_percent", 1.0)
if control_lora:
image_cond = control_latents.to(device)
if not patcher.model.is_patched:
log.info("Re-loading control LoRA...")
patcher = apply_lora(patcher, device, device, low_mem_load=False, control_lora=True)
patcher.model.is_patched = True
else:
if transformer.in_dim not in [148, 48, 36, 32, 52]:
raise ValueError("Control signal only works with Fun-Control model")
image_cond = torch.zeros_like(noise).to(device) #fun control
if transformer.in_dim in [148, 52] or transformer.control_adapter is not None: #fun 2.2 control
mask_latents = torch.tile(
torch.zeros_like(noise[:1]), [4, 1, 1, 1]
)
masked_video_latents_input = torch.zeros_like(noise)
image_cond = torch.cat([mask_latents, masked_video_latents_input], dim=0).to(device)
clip_fea = None
fun_ref_image = control_embeds.get("fun_ref_image", None)
if fun_ref_image is not None:
if transformer.ref_conv.weight.dtype in [torch.float8_e4m3fn, torch.float8_e5m2]:
raise ValueError("Fun-Control reference image won't work with this specific fp8_scaled model, it's been fixed in latest version of the model")
control_start_percent = control_embeds.get("start_percent", 0.0)
control_end_percent = control_embeds.get("end_percent", 1.0)
else:
if transformer.in_dim in [148, 52]: #fun inp
mask_latents = torch.tile(
torch.zeros_like(noise[:1]), [4, 1, 1, 1]
)
masked_video_latents_input = torch.zeros_like(noise)
image_cond = torch.cat([mask_latents, masked_video_latents_input], dim=0).to(device)
# Phantom inputs
phantom_latents = image_embeds.get("phantom_latents", None)
phantom_cfg_scale = image_embeds.get("phantom_cfg_scale", None)
if not isinstance(phantom_cfg_scale, list):
phantom_cfg_scale = [phantom_cfg_scale] * (steps +1)
phantom_start_percent = image_embeds.get("phantom_start_percent", 0.0)
phantom_end_percent = image_embeds.get("phantom_end_percent", 1.0)
# CLIP image features
clip_fea = image_embeds.get("clip_context", None)
if clip_fea is not None:
clip_fea = clip_fea.to(dtype)
clip_fea_neg = image_embeds.get("negative_clip_context", None)
if clip_fea_neg is not None:
clip_fea_neg = clip_fea_neg.to(dtype)
num_frames = image_embeds.get("num_frames", 0)
#HuMo inputs
humo_audio = image_embeds.get("humo_audio_emb", None)
humo_audio_neg = image_embeds.get("humo_audio_emb_neg", None)
humo_reference_count = image_embeds.get("humo_reference_count", 0)
if humo_audio is not None:
from .HuMo.nodes import get_audio_emb_window
if not multitalk_sampling:
humo_audio, _ = get_audio_emb_window(humo_audio, num_frames, frame0_idx=0)
zero_audio_pad = torch.zeros(humo_reference_count, *humo_audio.shape[1:]).to(humo_audio.device)
humo_audio = torch.cat([humo_audio, zero_audio_pad], dim=0)
humo_audio_neg = torch.zeros_like(humo_audio, dtype=humo_audio.dtype, device=humo_audio.device)
humo_audio = humo_audio.to(device, dtype)
if humo_audio_neg is not None:
humo_audio_neg = humo_audio_neg.to(device, dtype)
humo_audio_scale = image_embeds.get("humo_audio_scale", 1.0)
humo_image_cond = image_embeds.get("humo_image_cond", None)
humo_image_cond_neg = image_embeds.get("humo_image_cond_neg", None)
pos_latent = neg_latent = None
# Ovi
noise_audio = latent_ovi = seq_len_ovi = None
if transformer.audio_model is not None:
noise_audio = samples.get("latent_ovi_audio", None) if samples is not None else None
if noise_audio is not None:
if not torch.any(noise_audio):
noise_audio = torch.randn(noise_audio.shape, device=torch.device("cpu"), dtype=torch.float32, generator=seed_g)
else:
noise_audio = noise_audio.squeeze().movedim(0, 1).to(device, dtype)
else:
noise_audio = torch.randn((157, 20), device=torch.device("cpu"), dtype=torch.float32, generator=seed_g) # T C
log.info(f"Ovi audio latent shape: {noise_audio.shape}")
latent_ovi = noise_audio
seq_len_ovi = noise_audio.shape[0]
if transformer.dim == 1536 and humo_image_cond is not None: #small humo model
#noise = torch.cat([noise[:, :-humo_reference_count], humo_image_cond[4:, -humo_reference_count:]], dim=1)
pos_latent = humo_image_cond[4:, -humo_reference_count:].to(device, dtype)
neg_latent = torch.zeros_like(pos_latent)
seq_len = math.ceil((noise.shape[2] * noise.shape[3]) / 4 * noise.shape[1])
humo_image_cond = humo_image_cond_neg = None
humo_audio_cfg_scale = image_embeds.get("humo_audio_cfg_scale", 1.0)
humo_start_percent = image_embeds.get("humo_start_percent", 0.0)
humo_end_percent = image_embeds.get("humo_end_percent", 1.0)
if not isinstance(humo_audio_cfg_scale, list):
humo_audio_cfg_scale = [humo_audio_cfg_scale] * (steps + 1)
# region WanAnim inputs
frame_window_size = image_embeds.get("frame_window_size", 77)
wananimate_loop = image_embeds.get("looping", False)
if wananimate_loop and context_options is not None:
raise Exception("context_options are not compatible or necessary with WanAnim looping, since it creates the video in a loop.")
wananim_pose_latents = image_embeds.get("pose_latents", None)
wananim_pose_strength = image_embeds.get("pose_strength", 1.0)
wananim_face_strength = image_embeds.get("face_strength", 1.0)
wananim_face_pixels = image_embeds.get("face_pixels", None)
wananim_ref_masks = image_embeds.get("ref_masks", None)
wananim_is_masked = image_embeds.get("is_masked", False)
if not wananimate_loop: # create zero face pixels if mask is provided without face pixels, as masking seems to require face input to work properly
if wananim_face_pixels is None and wananim_is_masked:
if context_options is None:
wananim_face_pixels = torch.zeros(1, 3, num_frames-1, 512, 512, dtype=torch.float32, device=offload_device)
else:
wananim_face_pixels = torch.zeros(1, 3, context_options["context_frames"]-1, 512, 512, dtype=torch.float32, device=device)
if image_cond is None:
image_cond = image_embeds.get("ref_latent", None)
has_ref = image_cond is not None or has_ref
latent_video_length = noise.shape[1]
# Initialize FreeInit filter if enabled
freq_filter = None
if freeinit_args is not None:
from .freeinit.freeinit_utils import get_freq_filter, freq_mix_3d
filter_shape = list(noise.shape) # [batch, C, T, H, W]
freq_filter = get_freq_filter(
filter_shape,
device=device,
filter_type=freeinit_args.get("freeinit_method", "butterworth"),
n=freeinit_args.get("freeinit_n", 4) if freeinit_args.get("freeinit_method", "butterworth") == "butterworth" else None,
d_s=freeinit_args.get("freeinit_s", 1.0),
d_t=freeinit_args.get("freeinit_t", 1.0)
)
if samples is not None:
saved_generator_state = samples.get("generator_state", None)
if saved_generator_state is not None:
seed_g.set_state(saved_generator_state)
# UniAnimate
if unianimate_poses is not None:
transformer.dwpose_embedding.to(device, dtype)
dwpose_data = unianimate_poses["pose"].to(device, dtype)
dwpose_data = torch.cat([dwpose_data[:,:,:1].repeat(1,1,3,1,1), dwpose_data], dim=2)
dwpose_data = transformer.dwpose_embedding(dwpose_data)
log.info(f"UniAnimate pose embed shape: {dwpose_data.shape}")
if not multitalk_sampling:
if dwpose_data.shape[2] > latent_video_length:
log.warning(f"UniAnimate pose embed length {dwpose_data.shape[2]} is longer than the video length {latent_video_length}, truncating")
dwpose_data = dwpose_data[:,:, :latent_video_length]
elif dwpose_data.shape[2] < latent_video_length:
log.warning(f"UniAnimate pose embed length {dwpose_data.shape[2]} is shorter than the video length {latent_video_length}, padding with last pose")
pad_len = latent_video_length - dwpose_data.shape[2]
pad = dwpose_data[:,:,:1].repeat(1,1,pad_len,1,1)
dwpose_data = torch.cat([dwpose_data, pad], dim=2)
random_ref_dwpose_data = None
if image_cond is not None:
transformer.randomref_embedding_pose.to(device, dtype)
random_ref_dwpose = unianimate_poses.get("ref", None)
if random_ref_dwpose is not None:
random_ref_dwpose_data = transformer.randomref_embedding_pose(
random_ref_dwpose.to(device, dtype)
).unsqueeze(2).to(dtype) # [1, 20, 104, 60]
del random_ref_dwpose
unianim_data = {
"dwpose": dwpose_data,
"random_ref": random_ref_dwpose_data.squeeze(0) if random_ref_dwpose_data is not None else None,
"strength": unianimate_poses["strength"],
"start_percent": unianimate_poses["start_percent"],
"end_percent": unianimate_poses["end_percent"]
}
# FantasyTalking
audio_proj = multitalk_audio_embeds = None
audio_scale = 1.0
if fantasytalking_embeds is not None:
audio_proj = fantasytalking_embeds["audio_proj"].to(device)
audio_scale = fantasytalking_embeds["audio_scale"]
audio_cfg_scale = fantasytalking_embeds["audio_cfg_scale"]
if not isinstance(audio_cfg_scale, list):
audio_cfg_scale = [audio_cfg_scale] * (steps +1)
log.info(f"Audio proj shape: {audio_proj.shape}")
# MultiTalk
multitalk_audio_embeds = audio_emb_slice = audio_features_in = None
multitalk_audio_stride = None
multitalk_embeds = image_embeds.get("multitalk_embeds", multitalk_embeds)
if multitalk_embeds is not None:
audio_emb_slice = multitalk_embeds.get("audio_emb_slice", None) # if already sliced
# Handle single or multiple speaker embeddings
if audio_emb_slice is None:
audio_features_in = multitalk_embeds.get("audio_features", None)
if audio_features_in is not None:
if isinstance(audio_features_in, list):
multitalk_audio_embeds = [emb.to(device, dtype) for emb in audio_features_in]
else:
# keep backward-compatibility with single tensor input
multitalk_audio_embeds = [audio_features_in.to(device, dtype)]
shapes = [tuple(e.shape) for e in multitalk_audio_embeds]
log.info(f"Multitalk audio features shapes (per speaker): {shapes}")
audio_scale = multitalk_embeds.get("audio_scale", 1.0)
audio_cfg_scale = multitalk_embeds.get("audio_cfg_scale", 1.0)
ref_target_masks = multitalk_embeds.get("ref_target_masks", None)
multitalk_audio_stride = multitalk_embeds.get("audio_stride", None)
if not isinstance(audio_cfg_scale, list):
audio_cfg_scale = [audio_cfg_scale] * (steps + 1)
# FantasyPortrait
fantasy_portrait_input = None
fantasy_portrait_embeds = image_embeds.get("portrait_embeds", None)
if fantasy_portrait_embeds is not None:
log.info("Using FantasyPortrait embeddings")
fantasy_portrait_input = fantasy_portrait_embeds.copy()
portrait_cfg = fantasy_portrait_input.get("cfg_scale", 1.0)
if not isinstance(portrait_cfg, list):
portrait_cfg = [portrait_cfg] * (steps + 1)
# MiniMax Remover
minimax_latents = image_embeds.get("minimax_latents", None)
minimax_mask_latents = image_embeds.get("minimax_mask_latents", None)
if minimax_latents is not None:
log.info(f"minimax_latents: {minimax_latents.shape}, minimax_mask_latents: {minimax_mask_latents.shape}")
minimax_latents = minimax_latents.to(device, dtype)
minimax_mask_latents = minimax_mask_latents.to(device, dtype)
# Context windows
is_looped = False
context_reference_latent = None
if context_options is not None:
if context_options["context_frames"] <= num_frames:
context_schedule = context_options["context_schedule"]
context_frames = (context_options["context_frames"] - 1) // 4 + 1
context_stride = context_options["context_stride"] // 4
context_overlap = context_options["context_overlap"] // 4
context_reference_latent = context_options.get("reference_latent", None)
# Get total number of prompts
num_prompts = len(text_embeds["prompt_embeds"])
log.info(f"Number of prompts: {num_prompts}")
# Calculate which section this context window belongs to
section_size = (latent_video_length / num_prompts) if num_prompts != 0 else 1
log.info(f"Section size: {section_size}")
is_looped = context_schedule == "uniform_looped"
if mocha_embeds is not None:
seq_len = (context_frames * 2 + 1 + mocha_num_refs) * (noise.shape[2] * noise.shape[3] // 4)
else:
seq_len = math.ceil((noise.shape[2] * noise.shape[3]) / 4 * context_frames)
log.info(f"context window seq len: {seq_len}")
if context_options["freenoise"]:
log.info("Applying FreeNoise")
# code from AnimateDiff-Evolved by Kosinkadink (https://github.com/Kosinkadink/ComfyUI-AnimateDiff-Evolved)
delta = context_frames - context_overlap
for start_idx in range(0, latent_video_length-context_frames, delta):
place_idx = start_idx + context_frames
if place_idx >= latent_video_length:
break
end_idx = place_idx - 1
if end_idx + delta >= latent_video_length:
final_delta = latent_video_length - place_idx
list_idx = torch.tensor(list(range(start_idx,start_idx+final_delta)), device=torch.device("cpu"), dtype=torch.long)
list_idx = list_idx[torch.randperm(final_delta, generator=seed_g)]
noise[:, place_idx:place_idx + final_delta, :, :] = noise[:, list_idx, :, :]
break
list_idx = torch.tensor(list(range(start_idx,start_idx+delta)), device=torch.device("cpu"), dtype=torch.long)
list_idx = list_idx[torch.randperm(delta, generator=seed_g)]
noise[:, place_idx:place_idx + delta, :, :] = noise[:, list_idx, :, :]
log.info(f"Context schedule enabled: {context_frames} frames, {context_stride} stride, {context_overlap} overlap")
from .context_windows.context import get_context_scheduler, create_window_mask, WindowTracker
self.window_tracker = WindowTracker(verbose=context_options["verbose"])
context = get_context_scheduler(context_schedule)
else:
log.info("Context frames is larger than total num_frames, disabling context windows")
context_options = None
#MTV Crafter
mtv_input = image_embeds.get("mtv_crafter_motion", None)
mtv_motion_tokens = None
if mtv_input is not None:
from .MTV.mtv import prepare_motion_embeddings
log.info("Using MTV Crafter embeddings")
mtv_start_percent = mtv_input.get("start_percent", 0.0)
mtv_end_percent = mtv_input.get("end_percent", 1.0)
mtv_strength = mtv_input.get("strength", 1.0)
mtv_motion_tokens = mtv_input.get("mtv_motion_tokens", None)
if not isinstance(mtv_strength, list):
mtv_strength = [mtv_strength] * (steps + 1)
d = transformer.dim // transformer.num_heads
mtv_freqs = torch.cat([
rope_params(1024, d - 4 * (d // 6)),
rope_params(1024, 2 * (d // 6)),
rope_params(1024, 2 * (d // 6))
],
dim=1)
motion_rotary_emb = prepare_motion_embeddings(
latent_video_length if context_options is None else context_frames,
24, mtv_input["global_mean"], [mtv_input["global_std"]], device=device)
log.info(f"mtv_motion_rotary_emb: {motion_rotary_emb[0].shape}")
mtv_freqs = mtv_freqs.to(device, dtype)
#region S2V
s2v_audio_input = s2v_ref_latent = s2v_pose = s2v_ref_motion = None
framepack = False
s2v_audio_embeds = image_embeds.get("audio_embeds", None)
if s2v_audio_embeds is not None:
log.info("Using S2V audio embeddings")
framepack = s2v_audio_embeds.get("enable_framepack", False)
if framepack and context_options is not None:
raise ValueError("S2V framepack and context windows cannot be used at the same time")
s2v_audio_input = s2v_audio_embeds.get("audio_embed_bucket", None)
if s2v_audio_input is not None:
#s2v_audio_input = s2v_audio_input[..., 0:image_embeds["num_frames"]]
s2v_audio_input = s2v_audio_input.to(device, dtype)
s2v_audio_scale = s2v_audio_embeds["audio_scale"]
s2v_ref_latent = s2v_audio_embeds.get("ref_latent", None)
if s2v_ref_latent is not None:
s2v_ref_latent = s2v_ref_latent.to(device, dtype)
s2v_ref_motion = s2v_audio_embeds.get("ref_motion", None)
if s2v_ref_motion is not None:
s2v_ref_motion = s2v_ref_motion.to(device, dtype)
s2v_pose = s2v_audio_embeds.get("pose_latent", None)
if s2v_pose is not None:
s2v_pose = s2v_pose.to(device, dtype)
s2v_pose_start_percent = s2v_audio_embeds.get("pose_start_percent", 0.0)
s2v_pose_end_percent = s2v_audio_embeds.get("pose_end_percent", 1.0)
s2v_num_repeat = s2v_audio_embeds.get("num_repeat", 1)
vae = s2v_audio_embeds.get("vae", None)
# vid2vid
noise_mask=original_image=None
if samples is not None and not multitalk_sampling and not wananimate_loop:
saved_generator_state = samples.get("generator_state", None)
if saved_generator_state is not None:
seed_g.set_state(saved_generator_state)
input_samples = samples.get("samples", None)
if input_samples is not None:
input_samples = input_samples.squeeze(0).to(noise)
if input_samples.shape[1] != noise.shape[1]:
input_samples = torch.cat([input_samples[:, :1].repeat(1, noise.shape[1] - input_samples.shape[1], 1, 1), input_samples], dim=1)
if add_noise_to_samples:
latent_timestep = timesteps[:1].to(noise)
noise = noise * latent_timestep / 1000 + (1 - latent_timestep / 1000) * input_samples
else:
noise = input_samples
noise_mask = samples.get("noise_mask", None)
if noise_mask is not None:
log.info(f"Latent noise_mask shape: {noise_mask.shape}")
original_image = samples.get("original_image", None)
if original_image is None:
original_image = input_samples
if len(noise_mask.shape) == 4:
noise_mask = noise_mask.squeeze(1)
if noise_mask.shape[0] < noise.shape[1]:
noise_mask = noise_mask.repeat(noise.shape[1] // noise_mask.shape[0], 1, 1)
noise_mask = torch.nn.functional.interpolate(
noise_mask.unsqueeze(0).unsqueeze(0), # Add batch and channel dims [1,1,T,H,W]
size=(noise.shape[1], noise.shape[2], noise.shape[3]),
mode='trilinear',
align_corners=False
).repeat(1, noise.shape[0], 1, 1, 1)
# extra latents (Pusa) and 5b
latents_to_insert = add_index = noise_multipliers = None
extra_latents = image_embeds.get("extra_latents", None)
clean_latent_indices = []
noise_multiplier_list = image_embeds.get("pusa_noise_multipliers", None)
if noise_multiplier_list is not None:
if len(noise_multiplier_list) != latent_video_length:
noise_multipliers = torch.zeros(latent_video_length)
else:
noise_multipliers = torch.tensor(noise_multiplier_list)
log.info(f"Using Pusa noise multipliers: {noise_multipliers}")
if extra_latents is not None and transformer.multitalk_model_type.lower() != "infinitetalk":
if noise_multiplier_list is not None:
noise_multiplier_list = list(noise_multiplier_list) + [1.0] * (len(clean_latent_indices) - len(noise_multiplier_list))
for i, entry in enumerate(extra_latents):
add_index = entry["index"]
num_extra_frames = entry["samples"].shape[2]
# Handle negative indices
if add_index < 0:
add_index = noise.shape[1] + add_index
add_index = max(0, min(add_index, noise.shape[1] - num_extra_frames))
if start_step == 0:
noise[:, add_index:add_index+num_extra_frames] = entry["samples"].to(noise)
log.info(f"Adding extra samples to latent indices {add_index} to {add_index+num_extra_frames-1}")
clean_latent_indices.extend(range(add_index, add_index+num_extra_frames))
if noise_multipliers is not None and len(noise_multiplier_list) != latent_video_length:
for i, idx in enumerate(clean_latent_indices):
noise_multipliers[idx] = noise_multiplier_list[i]
log.info(f"Using Pusa noise multipliers: {noise_multipliers}")
# lucy edit
extra_channel_latents = image_embeds.get("extra_channel_latents", None)
if extra_channel_latents is not None:
extra_channel_latents = extra_channel_latents[0].to(noise)
# FlashVSR
flashvsr_LQ_latent = LQ_images = None
flashvsr_LQ_images = image_embeds.get("flashvsr_LQ_images", None)
flashvsr_strength = image_embeds.get("flashvsr_strength", 1.0)
if flashvsr_LQ_images is not None:
flashvsr_LQ_images = flashvsr_LQ_images[:num_frames]
first_frame = flashvsr_LQ_images[:1]
last_frame = flashvsr_LQ_images[-1:].repeat(3, 1, 1, 1)
flashvsr_LQ_images = torch.cat([first_frame, flashvsr_LQ_images, last_frame], dim=0)
LQ_images = flashvsr_LQ_images.unsqueeze(0).movedim(-1, 1).to(dtype) * 2 - 1
if context_options is None:
flashvsr_LQ_latent = transformer.LQ_proj_in(LQ_images.to(device))
log.info(f"flashvsr_LQ_latent: {flashvsr_LQ_latent[0].shape}")
seq_len = math.ceil((noise.shape[2] * noise.shape[3]) / 4 * noise.shape[1])
latent = noise
# LongCat-Avatar
longcat_ref_latent = None
longcat_num_ref_latents = longcat_num_cond_latents = 0
longcat_avatar_options = image_embeds.get("longcat_avatar_options", None)
if longcat_avatar_options is not None:
longcat_ref_latent = longcat_avatar_options.get("longcat_ref_latent", None)
if longcat_ref_latent is not None:
log.info(f"LongCat-Avatar reference latent shape: {longcat_ref_latent.shape}")
latent = torch.cat([longcat_ref_latent.to(latent), latent], dim=1)
seq_len = math.ceil((latent.shape[2] * latent.shape[3]) / 4 * latent.shape[1])
insert_len = longcat_ref_latent.shape[1]
clean_latent_indices = list(range(0, insert_len)) + [i + insert_len for i in clean_latent_indices]
longcat_num_ref_latents = longcat_ref_latent.shape[1]
latent_video_length += insert_len
longcat_num_cond_latents = len(clean_latent_indices)
log.info(f"LongCat num_cond_latents: {longcat_num_cond_latents} num_ref_latents: {longcat_num_ref_latents}")
# v1.5 (Whisper) embeds set audio_stride=1; v1.0 (wav2vec2) uses 2 for LongCat
if multitalk_audio_stride is not None:
audio_stride = multitalk_audio_stride
else:
audio_stride = 2 if transformer.is_longcat else 1
#controlnet
controlnet_latents = controlnet = None
if transformer_options is not None:
controlnet = transformer_options.get("controlnet", None)
if controlnet is not None:
self.controlnet = controlnet["controlnet"]
controlnet_start = controlnet["controlnet_start"]
controlnet_end = controlnet["controlnet_end"]
controlnet_latents = controlnet["control_latents"]
controlnet["controlnet_weight"] = controlnet["controlnet_strength"]
controlnet["controlnet_stride"] = controlnet["control_stride"]
#uni3c
uni3c_data = uni3c_data_input = None
if uni3c_embeds is not None:
transformer.uni3c_controlnet = uni3c_embeds["controlnet"]
render_latent = uni3c_embeds["render_latent"].to(device)
uni3c_data = uni3c_embeds.copy()
if render_latent.shape != noise.shape:
render_latent = torch.nn.functional.interpolate(render_latent, size=(noise.shape[1], noise.shape[2], noise.shape[3]), mode='trilinear', align_corners=False)
uni3c_data["render_latent"] = render_latent
# Enhance-a-video (feta)
if feta_args is not None and latent_video_length > 1:
set_enhance_weight(feta_args["weight"])
feta_start_percent = feta_args["start_percent"]
feta_end_percent = feta_args["end_percent"]
set_num_frames(latent_video_length) if context_options is None else set_num_frames(context_frames)
enhance_enabled = True
else:
feta_args = None
enhance_enabled = False
# EchoShot https://github.com/D2I-ai/EchoShot
echoshot = False
shot_len = None
if text_embeds is not None:
echoshot = text_embeds.get("echoshot", False)
if echoshot:
shot_num = len(text_embeds["prompt_embeds"])
shot_len = [latent_video_length//shot_num] * (shot_num-1)
shot_len.append(latent_video_length-sum(shot_len))
rope_function = "default" #echoshot does not support comfy rope function
log.info(f"Number of shots in prompt: {shot_num}, Shot token lengths: {shot_len}")
# Bindweave
qwenvl_embeds_pos = image_embeds.get("qwenvl_embeds_pos", None)
qwenvl_embeds_neg = image_embeds.get("qwenvl_embeds_neg", None)
mm.unload_all_models()
mm.soft_empty_cache()
gc.collect()
#blockswap init
init_blockswap(transformer, block_swap_args, model)
# Initialize Cache if enabled
previous_cache_states = None
transformer.enable_teacache = transformer.enable_magcache = transformer.enable_easycache = False
cache_args = teacache_args if teacache_args is not None else cache_args #for backward compatibility on old workflows
if cache_args is not None:
from .cache_methods.cache_methods import set_transformer_cache_method
transformer = set_transformer_cache_method(transformer, timesteps, cache_args)
# Initialize cache state
if samples is not None:
previous_cache_states = samples.get("cache_states", None)
if previous_cache_states is not None:
log.info("Using cache states from previous sampler")
self.cache_state = previous_cache_states["cache_state"]
transformer.easycache_state = previous_cache_states["easycache_state"]
transformer.magcache_state = previous_cache_states["magcache_state"]
transformer.teacache_state = previous_cache_states["teacache_state"]
if previous_cache_states is None:
self.cache_state = [None, None]
if phantom_latents is not None:
log.info(f"Phantom latents shape: {phantom_latents.shape}")
self.cache_state = [None, None, None]
self.cache_state_source = [None, None]
self.cache_states_context = []
# Skip layer guidance (SLG)
if slg_args is not None:
assert batched_cfg is not None, "Batched cfg is not supported with SLG"
transformer.slg_blocks = slg_args["blocks"]
transformer.slg_start_percent = slg_args["start_percent"]
transformer.slg_end_percent = slg_args["end_percent"]
else:
transformer.slg_blocks = None
# Setup radial attention
if transformer.attention_mode == "radial_sage_attention":
setup_radial_attention(transformer, transformer_options, latent, seq_len, latent_video_length, context_options=context_options)
# Experimental args
use_cfg_zero_star = use_tangential = use_fresca = bidirectional_sampling = use_tsr = False
raag_alpha = 0.0
transformer.video_attention_split_steps = []
if experimental_args is not None:
video_attention_split_steps = experimental_args.get("video_attention_split_steps", [])
if video_attention_split_steps:
transformer.video_attention_split_steps = [int(x.strip()) for x in video_attention_split_steps.split(",")]
use_zero_init = experimental_args.get("use_zero_init", True)
use_cfg_zero_star = experimental_args.get("cfg_zero_star", False)
use_tangential = experimental_args.get("use_tcfg", False)
zero_star_steps = experimental_args.get("zero_star_steps", 0)
raag_alpha = experimental_args.get("raag_alpha", 0.0)
use_fresca = experimental_args.get("use_fresca", False)
if use_fresca:
fresca_scale_low = experimental_args.get("fresca_scale_low", 1.0)
fresca_scale_high = experimental_args.get("fresca_scale_high", 1.25)
fresca_freq_cutoff = experimental_args.get("fresca_freq_cutoff", 20)
bidirectional_sampling = experimental_args.get("bidirectional_sampling", False)
if bidirectional_sampling:
sample_scheduler_flipped = copy.deepcopy(sample_scheduler)
use_tsr = experimental_args.get("temporal_score_rescaling", False)
tsr_k = experimental_args.get("tsr_k", 1.0)
tsr_sigma = experimental_args.get("tsr_sigma", 1.0)
# Rotary positional embeddings (RoPE)
# RoPE base freq scaling as used with CineScale
ntk_alphas = [1.0, 1.0, 1.0]
if isinstance(rope_function, dict):
ntk_alphas = rope_function["ntk_scale_f"], rope_function["ntk_scale_h"], rope_function["ntk_scale_w"]
rope_function = rope_function["rope_function"]
# Stand-In
standin_input = image_embeds.get("standin_input", None)
if standin_input is not None:
rope_function = "comfy" # only works with this currently
freqs = None
log.info(f"Rope function: {rope_function}")
riflex_freq_index = 0 if riflex_freq_index is None else riflex_freq_index
transformer.rope_embedder.k = None
transformer.rope_embedder.num_frames = None
d = transformer.dim // transformer.num_heads
if mocha_embeds is not None:
from .mocha.nodes import rope_params_mocha
log.info("Using Mocha RoPE")
rope_function = 'mocha'
freqs = torch.cat([
rope_params_mocha(1024, d - 4 * (d // 6), L_test=latent_video_length, k=riflex_freq_index, start=-1),
rope_params_mocha(1024, 2 * (d // 6), start=-1),
rope_params_mocha(1024, 2 * (d // 6), start=-1)
],
dim=1)
elif "default" in rope_function or bidirectional_sampling: # original RoPE
freqs = torch.cat([
rope_params(1024, d - 4 * (d // 6), L_test=latent_video_length, k=riflex_freq_index),
rope_params(1024, 2 * (d // 6)),
rope_params(1024, 2 * (d // 6))
],
dim=1)
elif "comfy" in rope_function: # comfy's rope
transformer.rope_embedder.k = riflex_freq_index
transformer.rope_embedder.num_frames = latent_video_length
transformer.rope_func = rope_function
for block in transformer.blocks:
block.rope_func = rope_function
if transformer.vace_layers is not None:
for block in transformer.vace_blocks:
block.rope_func = rope_function