import torch from huggingface_guess import model_list from huggingface_guess.utils import resize_to_batch_size from backend import args, memory_management from backend.diffusion_engine.base import ForgeDiffusionEngine, ForgeObjects from backend.modules.k_prediction import PredictionDiscreteFlow from backend.patcher.clip import CLIP from backend.patcher.unet import UnetPatcher from backend.patcher.vae import VAE from backend.text_processing.umt5_engine import UMT5TextProcessingEngine # get_learned_conditioning is not called in the Refiner pass; # so we store the desired shift value for the low_noise model refiner_shift: float = None class Wan(ForgeDiffusionEngine): matched_guesses = [model_list.WAN21_T2V, model_list.WAN21_I2V] def __init__(self, estimated_config, huggingface_components): super().__init__(estimated_config, huggingface_components) self.is_inpaint = False clip = CLIP(model_dict={"umt5xxl": huggingface_components["text_encoder"]}, tokenizer_dict={"umt5xxl": huggingface_components["tokenizer"]}) vae = VAE(model=huggingface_components["vae"], is_wan=True) vae.first_stage_model.latent_format = self.model_config.latent_format k_predictor = PredictionDiscreteFlow(estimated_config) unet = UnetPatcher.from_model(model=huggingface_components["transformer"], diffusers_scheduler=None, k_predictor=k_predictor, config=estimated_config) self.text_processing_engine_t5 = UMT5TextProcessingEngine( text_encoder=clip.cond_stage_model.umt5xxl, tokenizer=clip.tokenizer.umt5xxl, ) self.forge_objects = ForgeObjects(unet=unet, clip=clip, vae=vae, clipvision=None) self.forge_objects_original = self.forge_objects.shallow_copy() self.forge_objects_after_applying_lora = self.forge_objects.shallow_copy() self.use_shift = True self.is_wan = True global refiner_shift if refiner_shift is not None: self.forge_objects.unet.model.predictor.set_parameters(shift=refiner_shift) refiner_shift = None @torch.inference_mode() def get_learned_conditioning(self, prompt: list[str]): memory_management.load_model_gpu(self.forge_objects.clip.patcher) global refiner_shift shift = getattr(prompt, "distilled_cfg_scale", 8.0) self.forge_objects.unet.model.predictor.set_parameters(shift=shift) refiner_shift = shift return self.text_processing_engine_t5(prompt) @torch.inference_mode() def get_prompt_lengths_on_ui(self, prompt): token_count = len(self.text_processing_engine_t5.tokenize([prompt])[0]) return token_count, max(510, token_count) @torch.inference_mode() def image_to_video(self, length: int, start_image: torch.Tensor, noise: torch.Tensor): _, h, w, c = start_image.shape _image = torch.ones((length, h, w, c), device=start_image.device, dtype=start_image.dtype) * 0.5 _image[: start_image.shape[0]] = start_image concat_latent_image = self.forge_objects.vae.encode(_image[:, :, :, :3]) mask = torch.ones((1, 1, noise.shape[2], concat_latent_image.shape[-2], concat_latent_image.shape[-1]), device=start_image.device, dtype=start_image.dtype) mask[:, :, : ((start_image.shape[0] - 1) // 4) + 1] = 0.0 image = concat_latent_image extra_channels = self.forge_objects.unet.model.diffusion_model.in_dim - 16 # 20 for i in range(0, image.shape[1], 16): image[:, i : i + 16] = self.forge_objects.vae.first_stage_model.process_in(image[:, i : i + 16]) image = resize_to_batch_size(image, noise.shape[0]) if image.shape[1] > (extra_channels - 4): image = image[:, : (extra_channels - 4)] if mask.shape[1] != 4: mask = torch.mean(mask, dim=1, keepdim=True) mask = (1.0 - mask).to(image) if mask.shape[-3] < noise.shape[-3]: mask = torch.nn.functional.pad(mask, (0, 0, 0, 0, 0, noise.shape[-3] - mask.shape[-3]), mode="constant", value=0) if mask.shape[1] == 1: mask = mask.repeat(1, 4, 1, 1, 1) mask = resize_to_batch_size(mask, noise.shape[0]) _concat_mask_index = 0 # TODO if _concat_mask_index != 0: z = torch.cat((image[:, :_concat_mask_index], mask, image[:, _concat_mask_index:]), dim=1) else: z = torch.cat((mask, image), dim=1) args.dynamic_args["concat_latent"] = z @torch.inference_mode() def encode_first_stage(self, x): length, c, h, w = x.shape assert c == 3 if length > 1: x = x[0].unsqueeze(0) # enforce batch_size of 1 start_image = x.movedim(1, -1) * 0.5 + 0.5 latent = torch.zeros([1, 16, ((length - 1) // 4) + 1, h // 8, w // 8], device=self.forge_objects.vae.device) self.image_to_video(length, start_image, latent) sample = self.forge_objects.vae.first_stage_model.process_in(latent) return sample.to(x) @torch.inference_mode() def decode_first_stage(self, x): sample = self.forge_objects.vae.first_stage_model.process_out(x) sample = self.forge_objects.vae.decode(sample).movedim(-1, 2) * 2.0 - 1.0 return sample.to(x)