import torch from diffusers import AutoencoderKLWan, WanImageToVideoPipeline, UniPCMultistepScheduler from diffusers.utils import export_to_video from transformers import CLIPVisionModel import gradio as gr import tempfile import spaces from huggingface_hub import hf_hub_download import logging import numpy as np from PIL import Image import random # Added for random seed generation # --- Global Model Loading & LoRA Handling --- MODEL_ID = "Wan-AI/Wan2.1-I2V-14B-480P-Diffusers" LORA_REPO_ID = "Kijai/WanVideo_comfy" LORA_FILENAME = "Wan21_CausVid_14B_T2V_lora_rank32.safetensors" # Configure logging logging.basicConfig(level=logging.INFO) logger = logging.getLogger(__name__) # --- Model Loading --- logger.info(f"Loading Image Encoder for {MODEL_ID}...") image_encoder = CLIPVisionModel.from_pretrained( MODEL_ID, subfolder="image_encoder", torch_dtype=torch.float32 # Using float32 for image encoder as sometimes bfloat16/float16 can be problematic ) logger.info(f"Loading VAE for {MODEL_ID}...") vae = AutoencoderKLWan.from_pretrained( MODEL_ID, subfolder="vae", torch_dtype=torch.float32 # Using float32 for VAE for precision ) logger.info(f"Loading Pipeline {MODEL_ID}...") pipe = WanImageToVideoPipeline.from_pretrained( MODEL_ID, vae=vae, image_encoder=image_encoder, torch_dtype=torch.bfloat16 # Main pipeline can use bfloat16 for speed/memory ) flow_shift = 8.0 pipe.scheduler = UniPCMultistepScheduler.from_config( pipe.scheduler.config, flow_shift=flow_shift ) logger.info("Moving pipeline to CUDA...") pipe.to("cuda") # --- LoRA Loading --- logger.info(f"Downloading LoRA {LORA_FILENAME} from {LORA_REPO_ID}...") causvid_path = hf_hub_download(repo_id=LORA_REPO_ID, filename=LORA_FILENAME) logger.info("Loading LoRA weights...") pipe.load_lora_weights(causvid_path, adapter_name="causvid_lora") logger.info("Setting LoRA adapter...") pipe.set_adapters(["causvid_lora"], adapter_weights=[1.0]) # --- Constants for Dimension Calculation --- MOD_VALUE = 32 MOD_VALUE_H = MOD_VALUE_W = MOD_VALUE DEFAULT_H_SLIDER_VALUE = 512 DEFAULT_W_SLIDER_VALUE = 896 # New fixed max_area for the calculation formula NEW_FORMULA_MAX_AREA = float(480 * 832) SLIDER_MIN_H = 128 SLIDER_MAX_H = 896 SLIDER_MIN_W = 128 SLIDER_MAX_W = 896 # --- Constant for Seed --- MAX_SEED = np.iinfo(np.int32).max def _calculate_new_dimensions_wan(pil_image: Image.Image, mod_val: int, calculation_max_area: float, min_slider_h: int, max_slider_h: int, min_slider_w: int, max_slider_w: int, default_h: int, default_w: int) -> tuple[int, int]: orig_w, orig_h = pil_image.size if orig_w <= 0 or orig_h <= 0: # Changed to <= 0 for robustness logger.warning(f"Uploaded image has non-positive width or height ({orig_w}x{orig_h}). Using default slider dimensions.") return default_h, default_w aspect_ratio = orig_h / orig_w sqrt_h_term = np.sqrt(calculation_max_area * aspect_ratio) sqrt_w_term = np.sqrt(calculation_max_area / aspect_ratio) calc_h = round(sqrt_h_term) // mod_val * mod_val calc_w = round(sqrt_w_term) // mod_val * mod_val calc_h = mod_val if calc_h < mod_val else calc_h calc_w = mod_val if calc_w < mod_val else calc_w effective_min_h = min_slider_h effective_min_w = min_slider_w effective_max_h_from_slider = (max_slider_h // mod_val) * mod_val effective_max_w_from_slider = (max_slider_w // mod_val) * mod_val new_h = int(np.clip(calc_h, effective_min_h, effective_max_h_from_slider)) new_w = int(np.clip(calc_w, effective_min_w, effective_max_w_from_slider)) logger.info(f"Auto-dim: Original {orig_w}x{orig_h} (AR: {aspect_ratio:.2f}). Max Area for calc: {calculation_max_area}.") logger.info(f"Auto-dim: Sqrt terms HxW: {sqrt_h_term:.0f}x{sqrt_w_term:.0f}. Calculated (round(sqrt_term)//{mod_val}*{mod_val}): {calc_h}x{calc_w}.") logger.info(f"Auto-dim: Clamped HxW: {new_h}x{new_w} (Effective H_range:[{effective_min_h}-{effective_max_h_from_slider}], Effective W_range:[{effective_min_w}-{effective_max_w_from_slider}]).") return new_h, new_w def handle_image_upload_for_dims_wan(uploaded_pil_image: Image.Image | None, current_h_val: int, current_w_val: int): if uploaded_pil_image is None: logger.info("Image cleared. Resetting dimensions to default slider values.") return gr.update(value=DEFAULT_H_SLIDER_VALUE), gr.update(value=DEFAULT_W_SLIDER_VALUE) try: new_h, new_w = _calculate_new_dimensions_wan( uploaded_pil_image, MOD_VALUE, NEW_FORMULA_MAX_AREA, # Use the globally defined max_area for the new formula SLIDER_MIN_H, SLIDER_MAX_H, SLIDER_MIN_W, SLIDER_MAX_W, DEFAULT_H_SLIDER_VALUE, DEFAULT_W_SLIDER_VALUE ) return gr.update(value=new_h), gr.update(value=new_w) except Exception as e: logger.error(f"Error auto-adjusting H/W from image: {e}", exc_info=True) # Fallback to default slider values on error, as in the original code return gr.update(value=DEFAULT_H_SLIDER_VALUE), gr.update(value=DEFAULT_W_SLIDER_VALUE) # --- Gradio Interface Function --- @spaces.GPU def generate_video(input_image: Image.Image, prompt: str, negative_prompt: str, height: int, width: int, duration_seconds: float, guidance_scale: float, steps: int, seed: int, randomize_seed: bool, progress=gr.Progress(track_tqdm=True)): if input_image is None: raise gr.Error("Please upload an input image.") # Constants for frame calculation FIXED_FPS = 24 MIN_FRAMES_MODEL = 8 MAX_FRAMES_MODEL = 81 logger.info("Starting video generation...") logger.info(f" Input Image: Uploaded (Original size: {input_image.size if input_image else 'N/A'})") logger.info(f" Prompt: {prompt}") logger.info(f" Negative Prompt: {negative_prompt if negative_prompt else 'None'}") logger.info(f" Target Output Height: {height}, Target Output Width: {width}") target_height = int(height) target_width = int(width) guidance_scale_val = float(guidance_scale) steps_val = int(steps) num_frames_for_pipeline = int(round(duration_seconds * FIXED_FPS)) num_frames_for_pipeline = max(MIN_FRAMES_MODEL, min(MAX_FRAMES_MODEL, num_frames_for_pipeline)) if num_frames_for_pipeline < MIN_FRAMES_MODEL: num_frames_for_pipeline = MIN_FRAMES_MODEL logger.info(f" Duration: {duration_seconds:.1f}s, Fixed FPS (conditioning & export): {FIXED_FPS}") logger.info(f" Calculated Num Frames: {num_frames_for_pipeline} (clamped to [{MIN_FRAMES_MODEL}-{MAX_FRAMES_MODEL}])") logger.info(f" Guidance Scale: {guidance_scale_val}, Steps: {steps_val}") # Seed logic current_seed = int(seed) if randomize_seed: current_seed = random.randint(0, MAX_SEED) logger.info(f" Initial Seed: {seed}, Randomize: {randomize_seed}, Using Seed: {current_seed}") if target_height % MOD_VALUE_H != 0: logger.warning(f"Height {target_height} is not a multiple of {MOD_VALUE_H}. Adjusting...") target_height = (target_height // MOD_VALUE_H) * MOD_VALUE_H if target_width % MOD_VALUE_W != 0: logger.warning(f"Width {target_width} is not a multiple of {MOD_VALUE_W}. Adjusting...") target_width = (target_width // MOD_VALUE_W) * MOD_VALUE_W target_height = max(MOD_VALUE_H, target_height if target_height > 0 else MOD_VALUE_H) target_width = max(MOD_VALUE_W, target_width if target_width > 0 else MOD_VALUE_W) resized_image = input_image.resize((target_width, target_height)) logger.info(f" Input image resized to: {resized_image.size} for pipeline input.") with torch.inference_mode(): output_frames_list = pipe( image=resized_image, prompt=prompt, negative_prompt=negative_prompt, height=target_height, width=target_width, num_frames=num_frames_for_pipeline, guidance_scale=guidance_scale_val, num_inference_steps=steps_val, generator=torch.Generator(device="cuda").manual_seed(current_seed) # Use current_seed ).frames[0] with tempfile.NamedTemporaryFile(suffix=".mp4", delete=False) as tmpfile: video_path = tmpfile.name export_to_video(output_frames_list, video_path, fps=FIXED_FPS) logger.info(f"Video successfully generated and saved to {video_path}") return video_path # --- Gradio UI Definition --- default_prompt_i2v = "make this image come alive, cinematic motion, smooth animation" default_negative_prompt = "Bright tones, overexposed, static, blurred details, subtitles, style, works, paintings, images, static, overall gray, worst quality, low quality, JPEG compression residue, ugly, incomplete, extra fingers, poorly drawn hands, poorly drawn faces, deformed, disfigured, misshapen limbs, fused fingers, still picture, messy background, three legs, many people in the background, walking backwards, watermark, text, signature" penguin_image_url = "https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/penguin.png" with gr.Blocks() as demo: gr.Markdown(f""" # Fast 4 steps Wan 2.1 I2V (14B) with CausVid LoRA """) with gr.Row(): with gr.Column(): input_image_component = gr.Image(type="pil", label="Input Image (will be resized to target H/W)") prompt_input = gr.Textbox(label="Prompt", value=default_prompt_i2v, lines=3) duration_seconds_input = gr.Slider(minimum=0.4, maximum=3.3, step=0.1, value=1.7, label="Duration (seconds)", info="The CausVid LoRA was trained on 24fps, Wan has 81 maximum frames limit, limiting the maximum to 3.3s") with gr.Accordion("Advanced Settings", open=False): negative_prompt_input = gr.Textbox( label="Negative Prompt (Optional)", value=default_negative_prompt, lines=3 ) # --- Added Seed Controls --- seed_input = gr.Slider( label="Seed", minimum=0, maximum=MAX_SEED, step=1, value=42, # Default seed value interactive=True ) randomize_seed_checkbox = gr.Checkbox( label="Randomize seed", value=True, # Default to randomize interactive=True ) # --- End of Added Seed Controls --- with gr.Row(): height_input = gr.Slider(minimum=SLIDER_MIN_H, maximum=SLIDER_MAX_H, step=MOD_VALUE, value=DEFAULT_H_SLIDER_VALUE, label=f"Output Height (multiple of {MOD_VALUE})") width_input = gr.Slider(minimum=SLIDER_MIN_W, maximum=SLIDER_MAX_W, step=MOD_VALUE, value=DEFAULT_W_SLIDER_VALUE, label=f"Output Width (multiple of {MOD_VALUE})") steps_slider = gr.Slider(minimum=1, maximum=30, step=1, value=4, label="Inference Steps") guidance_scale_input = gr.Slider(minimum=0.0, maximum=20.0, step=0.5, value=1.0, label="Guidance Scale", visible=False) generate_button = gr.Button("Generate Video", variant="primary") with gr.Column(): video_output = gr.Video(label="Generated Video", interactive=False) input_image_component.upload( fn=handle_image_upload_for_dims_wan, inputs=[input_image_component, height_input, width_input], outputs=[height_input, width_input] ) input_image_component.clear( fn=handle_image_upload_for_dims_wan, inputs=[input_image_component, height_input, width_input], outputs=[height_input, width_input] ) inputs_for_click_and_examples = [ input_image_component, prompt_input, negative_prompt_input, height_input, width_input, duration_seconds_input, guidance_scale_input, steps_slider, seed_input, # Added seed_input randomize_seed_checkbox # Added randomize_seed_checkbox ] generate_button.click( fn=generate_video, inputs=inputs_for_click_and_examples, outputs=video_output ) gr.Examples( examples=[ # Added seed (e.g., 42) and randomize_seed (e.g., True) to examples ["peng.png", "a penguin playfully dancing in the snow, Antarctica", default_negative_prompt, 896, 512, 2, 1.0, 4, 42, False], ["forg.jpg", "the frog jumps around", default_negative_prompt, 448, 832, 2, 1.0, 4, 123, False], ], inputs=inputs_for_click_and_examples, outputs=video_output, fn=generate_video, cache_examples="lazy" ) if __name__ == "__main__": demo.queue().launch(share=True, debug=True)