import math from typing import TYPE_CHECKING if TYPE_CHECKING: from modules.prompt_parser import SdConditioning import torch from huggingface_guess import model_list from backend import memory_management from backend.args import dynamic_args 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.qwen_engine import QwenTextProcessingEngine from modules.shared import opts class QwenImage(ForgeDiffusionEngine): matched_guesses = [model_list.QwenImage] def __init__(self, estimated_config, huggingface_components): super().__init__(estimated_config, huggingface_components) self.is_inpaint = False clip = CLIP(model_dict={"qwen25_7b": huggingface_components["text_encoder"]}, tokenizer_dict={"qwen25_7b": 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_qwen = QwenTextProcessingEngine( text_encoder=clip.cond_stage_model.qwen25_7b, tokenizer=clip.tokenizer.qwen25_7b, ) 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.is_wan = True self.images_vl = [] self.ref_latents = [] self.image_prompt = "" @torch.inference_mode() def get_learned_conditioning(self, prompt: "SdConditioning"): memory_management.load_model_gpu(self.forge_objects.clip.patcher) if not prompt.is_negative_prompt: if self.image_prompt: return self.get_learned_conditioning_with_image(prompt) else: dynamic_args["ref_latents"].clear() self.ref_latents.clear() self.image_prompt = "" return self.text_processing_engine_qwen(prompt) @torch.inference_mode() def get_learned_conditioning_with_image(self, prompt: list[str]): cond = self.text_processing_engine_qwen([self.image_prompt + "".join(prompt)], images=self.images_vl) self.images_vl.clear() dynamic_args["ref_latents"] = self.ref_latents.copy() self.ref_latents.clear() self.image_prompt = "" return cond @torch.inference_mode() def get_prompt_lengths_on_ui(self, prompt): token_count = len(self.text_processing_engine_qwen.tokenize([prompt])[0]) return token_count, max(999, token_count) @torch.inference_mode() def encode_vision(self, image: torch.Tensor): samples = image.movedim(-1, 1) # b, c, h, w total = int(384 * 384) scale_by = math.sqrt(total / (samples.shape[3] * samples.shape[2])) width = round(samples.shape[3] * scale_by) height = round(samples.shape[2] * scale_by) s = torch.nn.functional.interpolate(samples, size=(height, width), mode="area") self.images_vl.append(s.movedim(1, -1)) if opts.qwen_vae_resize: total = int(1024 * 1024) scale_by = math.sqrt(total / (samples.shape[3] * samples.shape[2])) width = round(samples.shape[3] * scale_by / 32.0) * 32 height = round(samples.shape[2] * scale_by / 32.0) * 32 s = torch.nn.functional.interpolate(samples, size=(height, width), mode="area") else: s = samples.clone() sample = self.forge_objects.vae.encode(s.movedim(1, -1)[:, :, :, :3]) self.ref_latents.append(self.forge_objects.vae.first_stage_model.process_in(sample)) self.image_prompt += f"Picture {len(self.images_vl)}: <|vision_start|><|image_pad|><|vision_end|>" @torch.inference_mode() def encode_first_stage(self, x): if x.size(0) > 1: x = x[0].unsqueeze(0) # enforce batch_size of 1 start_image = x.movedim(1, -1) * 0.5 + 0.5 self.encode_vision(start_image) sample = self.forge_objects.vae.encode(start_image) sample = self.forge_objects.vae.first_stage_model.process_in(sample) 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)