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import torch, math
from PIL import Image
from typing import Union
from tqdm import tqdm
from einops import rearrange
import numpy as np
from math import prod

from ..core.device.npu_compatible_device import get_device_type
from ..diffusion import FlowMatchScheduler
from ..core import ModelConfig, gradient_checkpoint_forward
from ..diffusion.base_pipeline import BasePipeline, PipelineUnit, ControlNetInput
from ..utils.lora.merge import merge_lora

from ..models.qwen_image_dit import QwenImageDiT
from ..models.qwen_image_text_encoder import QwenImageTextEncoder
from ..models.qwen_image_vae import QwenImageVAE
from ..models.qwen_image_controlnet import QwenImageBlockWiseControlNet
from ..models.siglip2_image_encoder import Siglip2ImageEncoder
from ..models.dinov3_image_encoder import DINOv3ImageEncoder
from ..models.qwen_image_image2lora import QwenImageImage2LoRAModel


class QwenImagePipeline(BasePipeline):

    def __init__(self, device=get_device_type(), torch_dtype=torch.bfloat16):
        super().__init__(
            device=device, torch_dtype=torch_dtype,
            height_division_factor=16, width_division_factor=16,
        )
        from transformers import Qwen2Tokenizer, Qwen2VLProcessor
        
        self.scheduler = FlowMatchScheduler("Qwen-Image")
        self.text_encoder: QwenImageTextEncoder = None
        self.dit: QwenImageDiT = None
        self.vae: QwenImageVAE = None
        self.blockwise_controlnet: QwenImageBlockwiseMultiControlNet = None
        self.tokenizer: Qwen2Tokenizer = None
        self.siglip2_image_encoder: Siglip2ImageEncoder = None
        self.dinov3_image_encoder: DINOv3ImageEncoder = None
        self.image2lora_style: QwenImageImage2LoRAModel = None
        self.image2lora_coarse: QwenImageImage2LoRAModel = None
        self.image2lora_fine: QwenImageImage2LoRAModel = None
        self.processor: Qwen2VLProcessor = None
        self.in_iteration_models = ("dit", "blockwise_controlnet")
        self.units = [
            QwenImageUnit_ShapeChecker(),
            QwenImageUnit_NoiseInitializer(),
            QwenImageUnit_InputImageEmbedder(),
            QwenImageUnit_Inpaint(),
            QwenImageUnit_EditImageEmbedder(),
            QwenImageUnit_LayerInputImageEmbedder(),
            QwenImageUnit_ContextImageEmbedder(),
            QwenImageUnit_PromptEmbedder(),
            QwenImageUnit_EntityControl(),
            QwenImageUnit_BlockwiseControlNet(),
        ]
        self.model_fn = model_fn_qwen_image
    
    
    @staticmethod
    def from_pretrained(
        torch_dtype: torch.dtype = torch.bfloat16,
        device: Union[str, torch.device] = get_device_type(),
        model_configs: list[ModelConfig] = [],
        tokenizer_config: ModelConfig = ModelConfig(model_id="Qwen/Qwen-Image", origin_file_pattern="tokenizer/"),
        processor_config: ModelConfig = None,
        vram_limit: float = None,
    ):
        # Initialize pipeline
        pipe = QwenImagePipeline(device=device, torch_dtype=torch_dtype)
        model_pool = pipe.download_and_load_models(model_configs, vram_limit)
        
        # Fetch models
        pipe.text_encoder = model_pool.fetch_model("qwen_image_text_encoder")
        pipe.dit = model_pool.fetch_model("qwen_image_dit")
        pipe.vae = model_pool.fetch_model("qwen_image_vae")
        pipe.blockwise_controlnet = QwenImageBlockwiseMultiControlNet(model_pool.fetch_model("qwen_image_blockwise_controlnet", index="all"))
        if tokenizer_config is not None:
            tokenizer_config.download_if_necessary()
            from transformers import Qwen2Tokenizer
            pipe.tokenizer = Qwen2Tokenizer.from_pretrained(tokenizer_config.path)
        if processor_config is not None:
            processor_config.download_if_necessary()
            from transformers import Qwen2VLProcessor
            pipe.processor = Qwen2VLProcessor.from_pretrained(processor_config.path)
        pipe.siglip2_image_encoder = model_pool.fetch_model("siglip2_image_encoder")
        pipe.dinov3_image_encoder = model_pool.fetch_model("dinov3_image_encoder")
        pipe.image2lora_style = model_pool.fetch_model("qwen_image_image2lora_style")
        pipe.image2lora_coarse = model_pool.fetch_model("qwen_image_image2lora_coarse")
        pipe.image2lora_fine = model_pool.fetch_model("qwen_image_image2lora_fine")
        
        # VRAM Management
        pipe.vram_management_enabled = pipe.check_vram_management_state()
        return pipe
    
    
    @torch.no_grad()
    def __call__(
        self,
        # Prompt
        prompt: str,
        negative_prompt: str = "",
        cfg_scale: float = 4.0,
        # Image
        input_image: Image.Image = None,
        denoising_strength: float = 1.0,
        # Inpaint
        inpaint_mask: Image.Image = None,
        inpaint_blur_size: int = None,
        inpaint_blur_sigma: float = None,
        # Shape
        height: int = 1328,
        width: int = 1328,
        # Randomness
        seed: int = None,
        rand_device: str = "cpu",
        # Steps
        num_inference_steps: int = 30,
        exponential_shift_mu: float = None,
        # Blockwise ControlNet
        blockwise_controlnet_inputs: list[ControlNetInput] = None,
        # EliGen
        eligen_entity_prompts: list[str] = None,
        eligen_entity_masks: list[Image.Image] = None,
        eligen_enable_on_negative: bool = False,
        # Qwen-Image-Edit
        edit_image: Image.Image = None,
        edit_image_auto_resize: bool = True,
        edit_rope_interpolation: bool = False,
        # Qwen-Image-Edit-2511
        zero_cond_t: bool = False,
        # Qwen-Image-Layered
        layer_input_image: Image.Image = None,
        layer_num: int = None,
        # In-context control
        context_image: Image.Image = None,
        # Tile
        tiled: bool = False,
        tile_size: int = 128,
        tile_stride: int = 64,
        # Progress bar
        progress_bar_cmd = tqdm,
    ):
        # Scheduler
        self.scheduler.set_timesteps(num_inference_steps, denoising_strength=denoising_strength, dynamic_shift_len=(height // 16) * (width // 16), exponential_shift_mu=exponential_shift_mu)
        
        # Parameters
        inputs_posi = {
            "prompt": prompt,
        }
        inputs_nega = {
            "negative_prompt": negative_prompt,
        }
        inputs_shared = {
            "cfg_scale": cfg_scale,
            "input_image": input_image, "denoising_strength": denoising_strength,
            "inpaint_mask": inpaint_mask, "inpaint_blur_size": inpaint_blur_size, "inpaint_blur_sigma": inpaint_blur_sigma,
            "height": height, "width": width,
            "seed": seed, "rand_device": rand_device,
            "num_inference_steps": num_inference_steps,
            "blockwise_controlnet_inputs": blockwise_controlnet_inputs,
            "tiled": tiled, "tile_size": tile_size, "tile_stride": tile_stride,
            "eligen_entity_prompts": eligen_entity_prompts, "eligen_entity_masks": eligen_entity_masks, "eligen_enable_on_negative": eligen_enable_on_negative,
            "edit_image": edit_image, "edit_image_auto_resize": edit_image_auto_resize, "edit_rope_interpolation": edit_rope_interpolation, 
            "context_image": context_image,
            "zero_cond_t": zero_cond_t,
            "layer_input_image": layer_input_image,
            "layer_num": layer_num,
        }
        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)):
            timestep = timestep.unsqueeze(0).to(dtype=self.torch_dtype, device=self.device)
            noise_pred = self.cfg_guided_model_fn(
                self.model_fn, cfg_scale,
                inputs_shared, inputs_posi, inputs_nega,
                **models, timestep=timestep, progress_id=progress_id
            )
            inputs_shared["latents"] = self.step(self.scheduler, progress_id=progress_id, noise_pred=noise_pred, **inputs_shared)
        
        # Decode
        self.load_models_to_device(['vae'])
        image = self.vae.decode(inputs_shared["latents"], device=self.device, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
        if layer_num is None:
            image = self.vae_output_to_image(image)
        else:
            image = [self.vae_output_to_image(i, pattern="C H W") for i in image]
        self.load_models_to_device([])

        return image


class QwenImageBlockwiseMultiControlNet(torch.nn.Module):
    def __init__(self, models: list[QwenImageBlockWiseControlNet]):
        super().__init__()
        if not isinstance(models, list):
            models = [models]
        self.models = torch.nn.ModuleList(models)
        for model in models:
            if hasattr(model, "vram_management_enabled") and getattr(model, "vram_management_enabled"):
                self.vram_management_enabled = True

    def preprocess(self, controlnet_inputs: list[ControlNetInput], conditionings: list[torch.Tensor], **kwargs):
        processed_conditionings = []
        for controlnet_input, conditioning in zip(controlnet_inputs, conditionings):
            conditioning = rearrange(conditioning, "B C (H P) (W Q) -> B (H W) (C P Q)", P=2, Q=2)
            model_output = self.models[controlnet_input.controlnet_id].process_controlnet_conditioning(conditioning)
            processed_conditionings.append(model_output)
        return processed_conditionings

    def blockwise_forward(self, image, conditionings: list[torch.Tensor], controlnet_inputs: list[ControlNetInput], progress_id, num_inference_steps, block_id, **kwargs):
        res = 0
        for controlnet_input, conditioning in zip(controlnet_inputs, conditionings):
            progress = (num_inference_steps - 1 - progress_id) / max(num_inference_steps - 1, 1)
            if progress > controlnet_input.start + (1e-4) or progress < controlnet_input.end - (1e-4):
                continue
            model_output = self.models[controlnet_input.controlnet_id].blockwise_forward(image, conditioning, block_id)
            res = res + model_output * controlnet_input.scale
        return res


class QwenImageUnit_ShapeChecker(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("height", "width"),
            output_params=("height", "width"),
        )

    def process(self, pipe: QwenImagePipeline, height, width):
        height, width = pipe.check_resize_height_width(height, width)
        return {"height": height, "width": width}



class QwenImageUnit_NoiseInitializer(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("height", "width", "seed", "rand_device", "layer_num"),
            output_params=("noise",),
        )

    def process(self, pipe: QwenImagePipeline, height, width, seed, rand_device, layer_num):
        if layer_num is None:
            noise = pipe.generate_noise((1, 16, height//8, width//8), seed=seed, rand_device=rand_device, rand_torch_dtype=pipe.torch_dtype)
        else:
            noise = pipe.generate_noise((layer_num + 1, 16, height//8, width//8), seed=seed, rand_device=rand_device, rand_torch_dtype=pipe.torch_dtype)
        return {"noise": noise}



class QwenImageUnit_InputImageEmbedder(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("input_image", "noise", "tiled", "tile_size", "tile_stride"),
            output_params=("latents", "input_latents"),
            onload_model_names=("vae",)
        )

    def process(self, pipe: QwenImagePipeline, input_image, noise, tiled, tile_size, tile_stride):
        if input_image is None:
            return {"latents": noise, "input_latents": None}
        pipe.load_models_to_device(['vae'])
        if isinstance(input_image, list):
            input_latents = []
            for image in input_image:
                image = pipe.preprocess_image(image).to(device=pipe.device, dtype=pipe.torch_dtype)
                input_latents.append(pipe.vae.encode(image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride))
            input_latents = torch.concat(input_latents, dim=0)
        else:
            image = pipe.preprocess_image(input_image).to(device=pipe.device, dtype=pipe.torch_dtype)
            input_latents = pipe.vae.encode(image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
        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, "input_latents": input_latents}


class QwenImageUnit_LayerInputImageEmbedder(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("layer_input_image", "tiled", "tile_size", "tile_stride"),
            output_params=("layer_input_latents",),
            onload_model_names=("vae",)
        )

    def process(self, pipe: QwenImagePipeline, layer_input_image, tiled, tile_size, tile_stride):
        if layer_input_image is None:
            return {}
        pipe.load_models_to_device(['vae'])
        image = pipe.preprocess_image(layer_input_image).to(device=pipe.device, dtype=pipe.torch_dtype)
        latents = pipe.vae.encode(image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
        return {"layer_input_latents": latents}


class QwenImageUnit_Inpaint(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("inpaint_mask", "height", "width", "inpaint_blur_size", "inpaint_blur_sigma"),
            output_params=("inpaint_mask",),
        )

    def process(self, pipe: QwenImagePipeline, inpaint_mask, height, width, inpaint_blur_size, inpaint_blur_sigma):
        if inpaint_mask is None:
            return {}
        inpaint_mask = pipe.preprocess_image(inpaint_mask.convert("RGB").resize((width // 8, height // 8)), min_value=0, max_value=1)
        inpaint_mask = inpaint_mask.mean(dim=1, keepdim=True)
        if inpaint_blur_size is not None and inpaint_blur_sigma is not None:
            from torchvision.transforms import GaussianBlur
            blur = GaussianBlur(kernel_size=inpaint_blur_size * 2 + 1, sigma=inpaint_blur_sigma)
            inpaint_mask = blur(inpaint_mask)
        return {"inpaint_mask": inpaint_mask}


class QwenImageUnit_PromptEmbedder(PipelineUnit):
    def __init__(self):
        super().__init__(
            seperate_cfg=True,
            input_params_posi={"prompt": "prompt"},
            input_params_nega={"prompt": "negative_prompt"},
            input_params=("edit_image",),
            output_params=("prompt_emb", "prompt_emb_mask"),
            onload_model_names=("text_encoder",)
        )
        
    def extract_masked_hidden(self, hidden_states: torch.Tensor, mask: torch.Tensor):
        bool_mask = mask.bool()
        valid_lengths = bool_mask.sum(dim=1)
        selected = hidden_states[bool_mask]
        split_result = torch.split(selected, valid_lengths.tolist(), dim=0)
        return split_result
    
    def calculate_dimensions(self, target_area, ratio):
        width = math.sqrt(target_area * ratio)
        height = width / ratio
        width = round(width / 32) * 32
        height = round(height / 32) * 32
        return width, height
    
    def resize_image(self, image, target_area=384*384):
        width, height = self.calculate_dimensions(target_area, image.size[0] / image.size[1])
        return image.resize((width, height))
    
    def encode_prompt(self, pipe: QwenImagePipeline, prompt):
        template = "<|im_start|>system\nDescribe the image by detailing the color, shape, size, texture, quantity, text, spatial relationships of the objects and background:<|im_end|>\n<|im_start|>user\n{}<|im_end|>\n<|im_start|>assistant\n"
        drop_idx = 34
        txt = [template.format(e) for e in prompt]
        model_inputs = pipe.tokenizer(txt, max_length=4096+drop_idx, padding=True, truncation=True, return_tensors="pt").to(pipe.device)
        if model_inputs.input_ids.shape[1] >= 1024:
            print(f"Warning!!! QwenImage model was trained on prompts up to 512 tokens. Current prompt requires {model_inputs['input_ids'].shape[1] - drop_idx} tokens, which may lead to unpredictable behavior.")
        hidden_states = pipe.text_encoder(input_ids=model_inputs.input_ids, attention_mask=model_inputs.attention_mask, output_hidden_states=True,)[-1]
        split_hidden_states = self.extract_masked_hidden(hidden_states, model_inputs.attention_mask)
        split_hidden_states = [e[drop_idx:] for e in split_hidden_states]
        return split_hidden_states
        
    def encode_prompt_edit(self, pipe: QwenImagePipeline, prompt, edit_image):
        template =  "<|im_start|>system\nDescribe the key features of the input image (color, shape, size, texture, objects, background), then explain how the user's text instruction should alter or modify the image. Generate a new image that meets the user's requirements while maintaining consistency with the original input where appropriate.<|im_end|>\n<|im_start|>user\n<|vision_start|><|image_pad|><|vision_end|>{}<|im_end|>\n<|im_start|>assistant\n"
        drop_idx = 64
        txt = [template.format(e) for e in prompt]
        model_inputs = pipe.processor(text=txt, images=edit_image, padding=True, return_tensors="pt").to(pipe.device)
        hidden_states = pipe.text_encoder(input_ids=model_inputs.input_ids, attention_mask=model_inputs.attention_mask, pixel_values=model_inputs.pixel_values, image_grid_thw=model_inputs.image_grid_thw, output_hidden_states=True,)[-1]
        split_hidden_states = self.extract_masked_hidden(hidden_states, model_inputs.attention_mask)
        split_hidden_states = [e[drop_idx:] for e in split_hidden_states]
        return split_hidden_states
    
    def encode_prompt_edit_multi(self, pipe: QwenImagePipeline, prompt, edit_image):
        template =  "<|im_start|>system\nDescribe the key features of the input image (color, shape, size, texture, objects, background), then explain how the user's text instruction should alter or modify the image. Generate a new image that meets the user's requirements while maintaining consistency with the original input where appropriate.<|im_end|>\n<|im_start|>user\n{}<|im_end|>\n<|im_start|>assistant\n"
        drop_idx = 64
        img_prompt_template = "Picture {}: <|vision_start|><|image_pad|><|vision_end|>"
        base_img_prompt = "".join([img_prompt_template.format(i + 1) for i in range(len(edit_image))])
        txt = [template.format(base_img_prompt + e) for e in prompt]
        edit_image = [self.resize_image(image) for image in edit_image]
        model_inputs = pipe.processor(text=txt, images=edit_image, padding=True, return_tensors="pt").to(pipe.device)
        hidden_states = pipe.text_encoder(input_ids=model_inputs.input_ids, attention_mask=model_inputs.attention_mask, pixel_values=model_inputs.pixel_values, image_grid_thw=model_inputs.image_grid_thw, output_hidden_states=True,)[-1]
        split_hidden_states = self.extract_masked_hidden(hidden_states, model_inputs.attention_mask)
        split_hidden_states = [e[drop_idx:] for e in split_hidden_states]
        return split_hidden_states

    def process(self, pipe: QwenImagePipeline, prompt, edit_image=None) -> dict:
        pipe.load_models_to_device(self.onload_model_names)
        if pipe.text_encoder is not None:
            prompt = [prompt]
            if edit_image is None:
                split_hidden_states = self.encode_prompt(pipe, prompt)
            elif isinstance(edit_image, Image.Image):
                split_hidden_states = self.encode_prompt_edit(pipe, prompt, edit_image)
            else:
                split_hidden_states = self.encode_prompt_edit_multi(pipe, prompt, edit_image)
            attn_mask_list = [torch.ones(e.size(0), dtype=torch.long, device=e.device) for e in split_hidden_states]
            max_seq_len = max([e.size(0) for e in split_hidden_states])
            prompt_embeds = torch.stack([torch.cat([u, u.new_zeros(max_seq_len - u.size(0), u.size(1))]) for u in split_hidden_states])
            encoder_attention_mask = torch.stack([torch.cat([u, u.new_zeros(max_seq_len - u.size(0))]) for u in attn_mask_list])
            prompt_embeds = prompt_embeds.to(dtype=pipe.torch_dtype, device=pipe.device)
            return {"prompt_emb": prompt_embeds, "prompt_emb_mask": encoder_attention_mask}
        else:
            return {}


class QwenImageUnit_EntityControl(PipelineUnit):
    def __init__(self):
        super().__init__(
            take_over=True,
            input_params=("eligen_entity_prompts", "width", "height", "eligen_enable_on_negative", "cfg_scale"),
            output_params=("entity_prompt_emb", "entity_masks", "entity_prompt_emb_mask"),
            onload_model_names=("text_encoder",)
        )

    def extract_masked_hidden(self, hidden_states: torch.Tensor, mask: torch.Tensor):
        bool_mask = mask.bool()
        valid_lengths = bool_mask.sum(dim=1)
        selected = hidden_states[bool_mask]
        split_result = torch.split(selected, valid_lengths.tolist(), dim=0)
        return split_result

    def get_prompt_emb(self, pipe: QwenImagePipeline, prompt) -> dict:
        if pipe.text_encoder is not None:
            prompt = [prompt]
            template = "<|im_start|>system\nDescribe the image by detailing the color, shape, size, texture, quantity, text, spatial relationships of the objects and background:<|im_end|>\n<|im_start|>user\n{}<|im_end|>\n<|im_start|>assistant\n"
            drop_idx = 34
            txt = [template.format(e) for e in prompt]
            txt_tokens = pipe.tokenizer(txt, max_length=1024+drop_idx, padding=True, truncation=True, return_tensors="pt").to(pipe.device)
            hidden_states = pipe.text_encoder(input_ids=txt_tokens.input_ids, attention_mask=txt_tokens.attention_mask, output_hidden_states=True,)[-1]
            
            split_hidden_states = self.extract_masked_hidden(hidden_states, txt_tokens.attention_mask)
            split_hidden_states = [e[drop_idx:] for e in split_hidden_states]
            attn_mask_list = [torch.ones(e.size(0), dtype=torch.long, device=e.device) for e in split_hidden_states]
            max_seq_len = max([e.size(0) for e in split_hidden_states])
            prompt_embeds = torch.stack([torch.cat([u, u.new_zeros(max_seq_len - u.size(0), u.size(1))]) for u in split_hidden_states])
            encoder_attention_mask = torch.stack([torch.cat([u, u.new_zeros(max_seq_len - u.size(0))]) for u in attn_mask_list])
            prompt_embeds = prompt_embeds.to(dtype=pipe.torch_dtype, device=pipe.device)
            return {"prompt_emb": prompt_embeds, "prompt_emb_mask": encoder_attention_mask}
        else:
            return {}

    def preprocess_masks(self, pipe, masks, height, width, dim):
        out_masks = []
        for mask in masks:
            mask = pipe.preprocess_image(mask.resize((width, height), resample=Image.NEAREST)).mean(dim=1, keepdim=True) > 0
            mask = mask.repeat(1, dim, 1, 1).to(device=pipe.device, dtype=pipe.torch_dtype)
            out_masks.append(mask)
        return out_masks

    def prepare_entity_inputs(self, pipe, entity_prompts, entity_masks, width, height):
        entity_masks = self.preprocess_masks(pipe, entity_masks, height//8, width//8, 1)
        entity_masks = torch.cat(entity_masks, dim=0).unsqueeze(0) # b, n_mask, c, h, w
        prompt_embs, prompt_emb_masks = [], []
        for entity_prompt in entity_prompts:
            prompt_emb_dict = self.get_prompt_emb(pipe, entity_prompt)
            prompt_embs.append(prompt_emb_dict['prompt_emb'])
            prompt_emb_masks.append(prompt_emb_dict['prompt_emb_mask'])
        return prompt_embs, prompt_emb_masks, entity_masks

    def prepare_eligen(self, pipe, prompt_emb_nega, eligen_entity_prompts, eligen_entity_masks, width, height, enable_eligen_on_negative, cfg_scale):
        entity_prompt_emb_posi, entity_prompt_emb_posi_mask, entity_masks_posi = self.prepare_entity_inputs(pipe, eligen_entity_prompts, eligen_entity_masks, width, height)
        if enable_eligen_on_negative and cfg_scale != 1.0:
            entity_prompt_emb_nega = [prompt_emb_nega['prompt_emb']] * len(entity_prompt_emb_posi)
            entity_prompt_emb_nega_mask = [prompt_emb_nega['prompt_emb_mask']] * len(entity_prompt_emb_posi)
            entity_masks_nega = entity_masks_posi
        else:
            entity_prompt_emb_nega, entity_prompt_emb_nega_mask, entity_masks_nega = None, None, None
        eligen_kwargs_posi = {"entity_prompt_emb": entity_prompt_emb_posi, "entity_masks": entity_masks_posi, "entity_prompt_emb_mask": entity_prompt_emb_posi_mask}
        eligen_kwargs_nega = {"entity_prompt_emb": entity_prompt_emb_nega, "entity_masks": entity_masks_nega, "entity_prompt_emb_mask": entity_prompt_emb_nega_mask}
        return eligen_kwargs_posi, eligen_kwargs_nega

    def process(self, pipe: QwenImagePipeline, inputs_shared, inputs_posi, inputs_nega):
        eligen_entity_prompts, eligen_entity_masks = inputs_shared.get("eligen_entity_prompts", None), inputs_shared.get("eligen_entity_masks", None)
        if eligen_entity_prompts is None or eligen_entity_masks is None or len(eligen_entity_prompts) == 0 or len(eligen_entity_masks) == 0:
            return inputs_shared, inputs_posi, inputs_nega
        pipe.load_models_to_device(self.onload_model_names)
        eligen_enable_on_negative = inputs_shared.get("eligen_enable_on_negative", False)
        eligen_kwargs_posi, eligen_kwargs_nega = self.prepare_eligen(pipe, inputs_nega,
            eligen_entity_prompts, eligen_entity_masks, inputs_shared["width"], inputs_shared["height"],
            eligen_enable_on_negative, inputs_shared["cfg_scale"])
        inputs_posi.update(eligen_kwargs_posi)
        if inputs_shared.get("cfg_scale", 1.0) != 1.0:
            inputs_nega.update(eligen_kwargs_nega)
        return inputs_shared, inputs_posi, inputs_nega



class QwenImageUnit_BlockwiseControlNet(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("blockwise_controlnet_inputs", "tiled", "tile_size", "tile_stride"),
            output_params=("blockwise_controlnet_conditioning",),
            onload_model_names=("vae",)
        )

    def apply_controlnet_mask_on_latents(self, pipe, latents, mask):
        mask = (pipe.preprocess_image(mask) + 1) / 2
        mask = mask.mean(dim=1, keepdim=True)
        mask = 1 - torch.nn.functional.interpolate(mask, size=latents.shape[-2:])
        latents = torch.concat([latents, mask], dim=1)
        return latents

    def apply_controlnet_mask_on_image(self, pipe, image, mask):
        mask = mask.resize(image.size)
        mask = pipe.preprocess_image(mask).mean(dim=[0, 1]).cpu()
        image = np.array(image)
        image[mask > 0] = 0
        image = Image.fromarray(image)
        return image

    def process(self, pipe: QwenImagePipeline, blockwise_controlnet_inputs: list[ControlNetInput], tiled, tile_size, tile_stride):
        if blockwise_controlnet_inputs is None:
            return {}
        pipe.load_models_to_device(self.onload_model_names)
        conditionings = []
        for controlnet_input in blockwise_controlnet_inputs:
            image = controlnet_input.image
            if controlnet_input.inpaint_mask is not None:
                image = self.apply_controlnet_mask_on_image(pipe, image, controlnet_input.inpaint_mask)

            image = pipe.preprocess_image(image).to(device=pipe.device, dtype=pipe.torch_dtype)
            image = pipe.vae.encode(image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)

            if controlnet_input.inpaint_mask is not None:
                image = self.apply_controlnet_mask_on_latents(pipe, image, controlnet_input.inpaint_mask)
            conditionings.append(image)
            
        return {"blockwise_controlnet_conditioning": conditionings}


class QwenImageUnit_EditImageEmbedder(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("edit_image", "tiled", "tile_size", "tile_stride", "edit_image_auto_resize"),
            output_params=("edit_latents", "edit_image"),
            onload_model_names=("vae",)
        )


    def calculate_dimensions(self, target_area, ratio):
        import math
        width = math.sqrt(target_area * ratio)
        height = width / ratio
        width = round(width / 32) * 32
        height = round(height / 32) * 32
        return width, height


    def edit_image_auto_resize(self, edit_image):
        calculated_width, calculated_height = self.calculate_dimensions(1024 * 1024, edit_image.size[0] / edit_image.size[1])
        return edit_image.resize((calculated_width, calculated_height))


    def process(self, pipe: QwenImagePipeline, edit_image, tiled, tile_size, tile_stride, edit_image_auto_resize=False):
        if edit_image is None:
            return {}
        pipe.load_models_to_device(self.onload_model_names)
        if isinstance(edit_image, Image.Image):
            resized_edit_image = self.edit_image_auto_resize(edit_image) if edit_image_auto_resize else edit_image
            edit_image = pipe.preprocess_image(resized_edit_image).to(device=pipe.device, dtype=pipe.torch_dtype)
            edit_latents = pipe.vae.encode(edit_image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
        else:
            resized_edit_image, edit_latents = [], []
            for image in edit_image:
                if edit_image_auto_resize:
                    image = self.edit_image_auto_resize(image)
                resized_edit_image.append(image)
                image = pipe.preprocess_image(image).to(device=pipe.device, dtype=pipe.torch_dtype)
                latents = pipe.vae.encode(image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
                edit_latents.append(latents)
        return {"edit_latents": edit_latents, "edit_image": resized_edit_image}


class QwenImageUnit_Image2LoRAEncode(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("image2lora_images",),
            output_params=("image2lora_x", "image2lora_residual", "image2lora_residual_highres"),
            onload_model_names=("siglip2_image_encoder", "dinov3_image_encoder", "text_encoder"),
        )
        from ..core.data.operators import ImageCropAndResize
        self.processor_lowres = ImageCropAndResize(height=28*8, width=28*8)
        self.processor_highres = ImageCropAndResize(height=1024, width=1024)

    def extract_masked_hidden(self, hidden_states: torch.Tensor, mask: torch.Tensor):
        bool_mask = mask.bool()
        valid_lengths = bool_mask.sum(dim=1)
        selected = hidden_states[bool_mask]
        split_result = torch.split(selected, valid_lengths.tolist(), dim=0)
        return split_result

    def encode_prompt_edit(self, pipe: QwenImagePipeline, prompt, edit_image):
        prompt = [prompt]
        template =  "<|im_start|>system\nDescribe the key features of the input image (color, shape, size, texture, objects, background), then explain how the user's text instruction should alter or modify the image. Generate a new image that meets the user's requirements while maintaining consistency with the original input where appropriate.<|im_end|>\n<|im_start|>user\n<|vision_start|><|image_pad|><|vision_end|>{}<|im_end|>\n<|im_start|>assistant\n"
        drop_idx = 64
        txt = [template.format(e) for e in prompt]
        model_inputs = pipe.processor(text=txt, images=edit_image, padding=True, return_tensors="pt").to(pipe.device)
        hidden_states = pipe.text_encoder(input_ids=model_inputs.input_ids, attention_mask=model_inputs.attention_mask, pixel_values=model_inputs.pixel_values, image_grid_thw=model_inputs.image_grid_thw, output_hidden_states=True,)[-1]
        split_hidden_states = self.extract_masked_hidden(hidden_states, model_inputs.attention_mask)
        split_hidden_states = [e[drop_idx:] for e in split_hidden_states]
        max_seq_len = max([e.size(0) for e in split_hidden_states])
        prompt_embeds = torch.stack([torch.cat([u, u.new_zeros(max_seq_len - u.size(0), u.size(1))]) for u in split_hidden_states])
        prompt_embeds = prompt_embeds.to(dtype=pipe.torch_dtype, device=pipe.device)
        return prompt_embeds.view(1, -1)
    
    def encode_images_using_siglip2(self, pipe: QwenImagePipeline, images: list[Image.Image]):
        pipe.load_models_to_device(["siglip2_image_encoder"])
        embs = []
        for image in images:
            image = self.processor_highres(image)
            embs.append(pipe.siglip2_image_encoder(image).to(pipe.torch_dtype))
        embs = torch.stack(embs)
        return embs
    
    def encode_images_using_dinov3(self, pipe: QwenImagePipeline, images: list[Image.Image]):
        pipe.load_models_to_device(["dinov3_image_encoder"])
        embs = []
        for image in images:
            image = self.processor_highres(image)
            embs.append(pipe.dinov3_image_encoder(image).to(pipe.torch_dtype))
        embs = torch.stack(embs)
        return embs
    
    def encode_images_using_qwenvl(self, pipe: QwenImagePipeline, images: list[Image.Image], highres=False):
        pipe.load_models_to_device(["text_encoder"])
        embs = []
        for image in images:
            image = self.processor_highres(image) if highres else self.processor_lowres(image)
            embs.append(self.encode_prompt_edit(pipe, prompt="", edit_image=image))
        embs = torch.stack(embs)
        return embs

    def encode_images(self, pipe: QwenImagePipeline, images: list[Image.Image]):
        if images is None:
            return {}
        if not isinstance(images, list):
            images = [images]
        embs_siglip2 = self.encode_images_using_siglip2(pipe, images)
        embs_dinov3 = self.encode_images_using_dinov3(pipe, images)
        x = torch.concat([embs_siglip2, embs_dinov3], dim=-1)
        residual = None
        residual_highres = None
        if pipe.image2lora_coarse is not None:
            residual = self.encode_images_using_qwenvl(pipe, images, highres=False)
        if pipe.image2lora_fine is not None:
            residual_highres = self.encode_images_using_qwenvl(pipe, images, highres=True)
        return x, residual, residual_highres

    def process(self, pipe: QwenImagePipeline, image2lora_images):
        if image2lora_images is None:
            return {}
        x, residual, residual_highres = self.encode_images(pipe, image2lora_images)
        return {"image2lora_x": x, "image2lora_residual": residual, "image2lora_residual_highres": residual_highres}


class QwenImageUnit_Image2LoRADecode(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("image2lora_x", "image2lora_residual", "image2lora_residual_highres"),
            output_params=("lora",),
            onload_model_names=("image2lora_coarse", "image2lora_fine", "image2lora_style"),
        )
    
    def process(self, pipe: QwenImagePipeline, image2lora_x, image2lora_residual, image2lora_residual_highres):
        if image2lora_x is None:
            return {}
        loras = []
        if pipe.image2lora_style is not None:
            pipe.load_models_to_device(["image2lora_style"])
            for x in image2lora_x:
                loras.append(pipe.image2lora_style(x=x, residual=None))
        if pipe.image2lora_coarse is not None:
            pipe.load_models_to_device(["image2lora_coarse"])
            for x, residual in zip(image2lora_x, image2lora_residual):
                loras.append(pipe.image2lora_coarse(x=x, residual=residual))
        if pipe.image2lora_fine is not None:
            pipe.load_models_to_device(["image2lora_fine"])
            for x, residual in zip(image2lora_x, image2lora_residual_highres):
                loras.append(pipe.image2lora_fine(x=x, residual=residual))
        lora = merge_lora(loras, alpha=1 / len(image2lora_x))
        return {"lora": lora}


class QwenImageUnit_ContextImageEmbedder(PipelineUnit):
    def __init__(self):
        super().__init__(
            input_params=("context_image", "height", "width", "tiled", "tile_size", "tile_stride"),
            output_params=("context_latents",),
            onload_model_names=("vae",)
        )

    def process(self, pipe: QwenImagePipeline, context_image, height, width, tiled, tile_size, tile_stride):
        if context_image is None:
            return {}
        pipe.load_models_to_device(self.onload_model_names)
        context_image = pipe.preprocess_image(context_image.resize((width, height))).to(device=pipe.device, dtype=pipe.torch_dtype)
        context_latents = pipe.vae.encode(context_image, tiled=tiled, tile_size=tile_size, tile_stride=tile_stride)
        return {"context_latents": context_latents}


def model_fn_qwen_image(
    dit: QwenImageDiT = None,
    blockwise_controlnet: QwenImageBlockwiseMultiControlNet = None,
    latents=None,
    timestep=None,
    prompt_emb=None,
    prompt_emb_mask=None,
    height=None,
    width=None,
    blockwise_controlnet_conditioning=None,
    blockwise_controlnet_inputs=None,
    progress_id=0,
    num_inference_steps=1,
    entity_prompt_emb=None,
    entity_prompt_emb_mask=None,
    entity_masks=None,
    edit_latents=None,
    layer_input_latents=None,
    layer_num=None,
    context_latents=None,
    enable_fp8_attention=False,
    use_gradient_checkpointing=False,
    use_gradient_checkpointing_offload=False,
    edit_rope_interpolation=False,
    zero_cond_t=False,
    **kwargs
):
    if layer_num is None:
        layer_num = 1
        img_shapes = [(1, latents.shape[2]//2, latents.shape[3]//2)]
    else:
        layer_num = layer_num + 1
        img_shapes = [(1, latents.shape[2]//2, latents.shape[3]//2)] * layer_num
    txt_seq_lens = prompt_emb_mask.sum(dim=1).tolist()
    timestep = timestep / 1000
    
    image = rearrange(latents, "(B N) C (H P) (W Q) -> B (N H W) (C P Q)", H=height//16, W=width//16, P=2, Q=2, N=layer_num)
    image_seq_len = image.shape[1]

    if context_latents is not None:
        img_shapes += [(context_latents.shape[0], context_latents.shape[2]//2, context_latents.shape[3]//2)]
        context_image = rearrange(context_latents, "B C (H P) (W Q) -> B (H W) (C P Q)", H=context_latents.shape[2]//2, W=context_latents.shape[3]//2, P=2, Q=2)
        image = torch.cat([image, context_image], dim=1)
    if edit_latents is not None:
        edit_latents_list = edit_latents if isinstance(edit_latents, list) else [edit_latents]
        img_shapes += [(e.shape[0], e.shape[2]//2, e.shape[3]//2) for e in edit_latents_list]
        edit_image = [rearrange(e, "B C (H P) (W Q) -> B (H W) (C P Q)", H=e.shape[2]//2, W=e.shape[3]//2, P=2, Q=2) for e in edit_latents_list]
        image = torch.cat([image] + edit_image, dim=1)
    if layer_input_latents is not None:
        layer_num = layer_num + 1
        img_shapes += [(layer_input_latents.shape[0], layer_input_latents.shape[2]//2, layer_input_latents.shape[3]//2)]
        layer_input_latents = rearrange(layer_input_latents, "B C (H P) (W Q) -> B (H W) (C P Q)", P=2, Q=2)
        image = torch.cat([image, layer_input_latents], dim=1)

    image = dit.img_in(image)
    if zero_cond_t:
        timestep = torch.cat([timestep, timestep * 0], dim=0)
        modulate_index = torch.tensor(
            [[0] * prod(sample[0]) + [1] * sum([prod(s) for s in sample[1:]]) for sample in [img_shapes]],
            device=timestep.device,
            dtype=torch.int,
        )
    else:
        modulate_index = None
    conditioning = dit.time_text_embed(
        timestep,
        image.dtype,
        addition_t_cond=None if not dit.time_text_embed.use_additional_t_cond else torch.tensor([0]).to(device=image.device, dtype=torch.long)
    )

    if entity_prompt_emb is not None:
        text, image_rotary_emb, attention_mask = dit.process_entity_masks(
            latents, prompt_emb, prompt_emb_mask, entity_prompt_emb, entity_prompt_emb_mask,
            entity_masks, height, width, image, img_shapes,
        )
    else:
        text = dit.txt_in(dit.txt_norm(prompt_emb))
        if edit_rope_interpolation:
            image_rotary_emb = dit.pos_embed.forward_sampling(img_shapes, txt_seq_lens, device=latents.device)
        else:
            image_rotary_emb = dit.pos_embed(img_shapes, txt_seq_lens, device=latents.device)
        attention_mask = None
        
    if blockwise_controlnet_conditioning is not None:
        blockwise_controlnet_conditioning = blockwise_controlnet.preprocess(
            blockwise_controlnet_inputs, blockwise_controlnet_conditioning)

    for block_id, block in enumerate(dit.transformer_blocks):
        text, image = gradient_checkpoint_forward(
            block,
            use_gradient_checkpointing,
            use_gradient_checkpointing_offload,
            image=image,
            text=text,
            temb=conditioning,
            image_rotary_emb=image_rotary_emb,
            attention_mask=attention_mask,
            enable_fp8_attention=enable_fp8_attention,
            modulate_index=modulate_index,
        )
        if blockwise_controlnet_conditioning is not None:
            image_slice = image[:, :image_seq_len].clone()
            controlnet_output = blockwise_controlnet.blockwise_forward(
                image=image_slice, conditionings=blockwise_controlnet_conditioning,
                controlnet_inputs=blockwise_controlnet_inputs, block_id=block_id,
                progress_id=progress_id, num_inference_steps=num_inference_steps,
            )
            image[:, :image_seq_len] = image_slice + controlnet_output
    
    if zero_cond_t:
        conditioning = conditioning.chunk(2, dim=0)[0]
    image = dit.norm_out(image, conditioning)
    image = dit.proj_out(image)
    image = image[:, :image_seq_len]
    
    latents = rearrange(image, "B (N H W) (C P Q) -> (B N) C (H P) (W Q)", H=height//16, W=width//16, P=2, Q=2, B=1)
    return latents