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import gradio as gr |
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import torch |
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import spaces |
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import numpy as np |
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import random |
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import os |
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import yaml |
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from pathlib import Path |
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import imageio |
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import tempfile |
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from PIL import Image |
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from huggingface_hub import hf_hub_download |
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import shutil |
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from inference import ( |
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create_ltx_video_pipeline, |
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create_latent_upsampler, |
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load_image_to_tensor_with_resize_and_crop, |
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seed_everething, |
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get_device, |
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calculate_padding, |
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load_media_file |
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) |
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from ltx_video.pipelines.pipeline_ltx_video import ConditioningItem, LTXMultiScalePipeline, LTXVideoPipeline |
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from ltx_video.utils.skip_layer_strategy import SkipLayerStrategy |
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YAML_CONFIG_STRING = """ |
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pipeline_type: multi-scale |
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checkpoint_path: "ltxv-13b-0.9.7-distilled.safetensors" # This will be replaced by the rc3 version |
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downscale_factor: 0.6666666 |
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spatial_upscaler_model_path: "ltxv-spatial-upscaler-0.9.7.safetensors" |
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stg_mode: "attention_values" # options: "attention_values", "attention_skip", "residual", "transformer_block" |
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decode_timestep: 0.05 |
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decode_noise_scale: 0.025 |
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text_encoder_model_name_or_path: "PixArt-alpha/PixArt-XL-2-1024-MS" |
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precision: "bfloat16" |
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sampler: "from_checkpoint" # options: "uniform", "linear-quadratic", "from_checkpoint" |
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prompt_enhancement_words_threshold: 120 |
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prompt_enhancer_image_caption_model_name_or_path: "MiaoshouAI/Florence-2-large-PromptGen-v2.0" |
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prompt_enhancer_llm_model_name_or_path: "unsloth/Llama-3.2-3B-Instruct" |
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stochastic_sampling: false |
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first_pass: |
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timesteps: [1.0000, 0.9937, 0.9875, 0.9812, 0.9750, 0.9094, 0.7250] |
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guidance_scale: 1 |
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stg_scale: 0 |
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rescaling_scale: 1 |
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skip_block_list: [42] |
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second_pass: |
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timesteps: [0.9094, 0.7250, 0.4219] |
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guidance_scale: 1 |
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stg_scale: 0 |
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rescaling_scale: 1 |
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skip_block_list: [42] |
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""" |
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PIPELINE_CONFIG_YAML = yaml.safe_load(YAML_CONFIG_STRING) |
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DISTILLED_MODEL_REPO = "LTX-Colab/LTX-Video-Preview" |
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DISTILLED_MODEL_FILENAME = "ltxv-13b-0.9.7-distilled-rc3.safetensors" |
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UPSCALER_REPO = "Lightricks/LTX-Video" |
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MAX_IMAGE_SIZE = PIPELINE_CONFIG_YAML.get("max_resolution", 1280) |
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MAX_NUM_FRAMES = 257 |
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pipeline_instance = None |
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latent_upsampler_instance = None |
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models_dir = "downloaded_models_gradio_cpu_init" |
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Path(models_dir).mkdir(parents=True, exist_ok=True) |
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print("Downloading models (if not present)...") |
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distilled_model_actual_path = hf_hub_download( |
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repo_id=DISTILLED_MODEL_REPO, |
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filename=DISTILLED_MODEL_FILENAME, |
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local_dir=models_dir, |
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local_dir_use_symlinks=False |
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) |
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PIPELINE_CONFIG_YAML["checkpoint_path"] = distilled_model_actual_path |
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print(f"Distilled model path: {distilled_model_actual_path}") |
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SPATIAL_UPSCALER_FILENAME = PIPELINE_CONFIG_YAML["spatial_upscaler_model_path"] |
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spatial_upscaler_actual_path = hf_hub_download( |
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repo_id=UPSCALER_REPO, |
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filename=SPATIAL_UPSCALER_FILENAME, |
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local_dir=models_dir, |
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local_dir_use_symlinks=False |
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) |
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PIPELINE_CONFIG_YAML["spatial_upscaler_model_path"] = spatial_upscaler_actual_path |
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print(f"Spatial upscaler model path: {spatial_upscaler_actual_path}") |
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print("Creating LTX Video pipeline on CPU...") |
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pipeline_instance = create_ltx_video_pipeline( |
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ckpt_path=PIPELINE_CONFIG_YAML["checkpoint_path"], |
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precision=PIPELINE_CONFIG_YAML["precision"], |
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text_encoder_model_name_or_path=PIPELINE_CONFIG_YAML["text_encoder_model_name_or_path"], |
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sampler=PIPELINE_CONFIG_YAML["sampler"], |
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device="cpu", |
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enhance_prompt=False, |
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prompt_enhancer_image_caption_model_name_or_path=PIPELINE_CONFIG_YAML["prompt_enhancer_image_caption_model_name_or_path"], |
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prompt_enhancer_llm_model_name_or_path=PIPELINE_CONFIG_YAML["prompt_enhancer_llm_model_name_or_path"], |
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) |
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print("LTX Video pipeline created on CPU.") |
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if PIPELINE_CONFIG_YAML.get("spatial_upscaler_model_path"): |
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print("Creating latent upsampler on CPU...") |
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latent_upsampler_instance = create_latent_upsampler( |
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PIPELINE_CONFIG_YAML["spatial_upscaler_model_path"], |
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device="cpu" |
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) |
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print("Latent upsampler created on CPU.") |
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target_inference_device = "cuda" |
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print(f"Target inference device: {target_inference_device}") |
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pipeline_instance.to(target_inference_device) |
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latent_upsampler_instance.to(target_inference_device) |
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@spaces.GPU |
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def generate(prompt, negative_prompt, input_image_filepath, input_video_filepath, |
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height_ui, width_ui, mode, |
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ui_steps, num_frames_ui, |
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ui_frames_to_use, |
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seed_ui, randomize_seed, ui_guidance_scale, improve_texture_flag, |
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progress=gr.Progress(track_tqdm=True)): |
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if randomize_seed: |
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seed_ui = random.randint(0, 2**32 - 1) |
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seed_everething(int(seed_ui)) |
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actual_height = int(height_ui) |
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actual_width = int(width_ui) |
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actual_num_frames = int(num_frames_ui) |
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height_padded = ((actual_height - 1) // 32 + 1) * 32 |
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width_padded = ((actual_width - 1) // 32 + 1) * 32 |
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num_frames_padded = ((actual_num_frames - 2) // 8 + 1) * 8 + 1 |
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padding_values = calculate_padding(actual_height, actual_width, height_padded, width_padded) |
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call_kwargs = { |
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"prompt": prompt, |
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"negative_prompt": negative_prompt, |
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"height": height_padded, |
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"width": width_padded, |
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"num_frames": num_frames_padded, |
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"frame_rate": 30, |
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"generator": torch.Generator(device=target_inference_device).manual_seed(int(seed_ui)), |
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"output_type": "pt", |
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"conditioning_items": None, |
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"media_items": None, |
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"decode_timestep": PIPELINE_CONFIG_YAML["decode_timestep"], |
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"decode_noise_scale": PIPELINE_CONFIG_YAML["decode_noise_scale"], |
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"stochastic_sampling": PIPELINE_CONFIG_YAML["stochastic_sampling"], |
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"image_cond_noise_scale": 0.15, |
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"is_video": True, |
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"vae_per_channel_normalize": True, |
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"mixed_precision": (PIPELINE_CONFIG_YAML["precision"] == "mixed_precision"), |
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"offload_to_cpu": False, |
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"enhance_prompt": False, |
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} |
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stg_mode_str = PIPELINE_CONFIG_YAML.get("stg_mode", "attention_values") |
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if stg_mode_str.lower() in ["stg_av", "attention_values"]: |
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call_kwargs["skip_layer_strategy"] = SkipLayerStrategy.AttentionValues |
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elif stg_mode_str.lower() in ["stg_as", "attention_skip"]: |
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call_kwargs["skip_layer_strategy"] = SkipLayerStrategy.AttentionSkip |
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elif stg_mode_str.lower() in ["stg_r", "residual"]: |
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call_kwargs["skip_layer_strategy"] = SkipLayerStrategy.Residual |
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elif stg_mode_str.lower() in ["stg_t", "transformer_block"]: |
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call_kwargs["skip_layer_strategy"] = SkipLayerStrategy.TransformerBlock |
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else: |
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raise ValueError(f"Invalid stg_mode: {stg_mode_str}") |
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if mode == "image-to-video" and input_image_filepath: |
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try: |
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media_tensor = load_image_to_tensor_with_resize_and_crop( |
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input_image_filepath, actual_height, actual_width |
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) |
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media_tensor = torch.nn.functional.pad(media_tensor, padding_values) |
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call_kwargs["conditioning_items"] = [ConditioningItem(media_tensor.to(target_inference_device), 0, 1.0)] |
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except Exception as e: |
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print(f"Error loading image {input_image_filepath}: {e}") |
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raise gr.Error(f"Could not load image: {e}") |
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elif mode == "video-to-video" and input_video_filepath: |
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try: |
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call_kwargs["media_items"] = load_media_file( |
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media_path=input_video_filepath, |
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height=actual_height, |
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width=actual_width, |
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max_frames=int(ui_frames_to_use), |
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padding=padding_values |
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).to(target_inference_device) |
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except Exception as e: |
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print(f"Error loading video {input_video_filepath}: {e}") |
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raise gr.Error(f"Could not load video: {e}") |
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print(f"Moving models to {target_inference_device} for inference...") |
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active_latent_upsampler = None |
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if improve_texture_flag and latent_upsampler_instance: |
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active_latent_upsampler = latent_upsampler_instance |
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result_images_tensor = None |
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try: |
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if improve_texture_flag: |
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if not active_latent_upsampler: |
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raise gr.Error("Spatial upscaler model not loaded or improve_texture not selected, cannot use multi-scale.") |
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multi_scale_pipeline_obj = LTXMultiScalePipeline(pipeline_instance, active_latent_upsampler) |
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first_pass_args = PIPELINE_CONFIG_YAML.get("first_pass", {}).copy() |
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first_pass_args["guidance_scale"] = float(ui_guidance_scale) |
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if "timesteps" not in first_pass_args: |
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first_pass_args["num_inference_steps"] = int(ui_steps) |
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second_pass_args = PIPELINE_CONFIG_YAML.get("second_pass", {}).copy() |
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second_pass_args["guidance_scale"] = float(ui_guidance_scale) |
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multi_scale_call_kwargs = call_kwargs.copy() |
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multi_scale_call_kwargs.update({ |
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"downscale_factor": PIPELINE_CONFIG_YAML["downscale_factor"], |
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"first_pass": first_pass_args, |
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"second_pass": second_pass_args, |
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}) |
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print(f"Calling multi-scale pipeline (eff. HxW: {actual_height}x{actual_width}) on {target_inference_device}") |
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result_images_tensor = multi_scale_pipeline_obj(**multi_scale_call_kwargs).images |
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else: |
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single_pass_call_kwargs = call_kwargs.copy() |
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single_pass_call_kwargs["guidance_scale"] = float(ui_guidance_scale) |
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single_pass_call_kwargs["num_inference_steps"] = int(ui_steps) |
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single_pass_call_kwargs.pop("first_pass", None) |
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single_pass_call_kwargs.pop("second_pass", None) |
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single_pass_call_kwargs.pop("downscale_factor", None) |
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print(f"Calling base pipeline (padded HxW: {height_padded}x{width_padded}) on {target_inference_device}") |
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result_images_tensor = pipeline_instance(**single_pass_call_kwargs).images |
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if result_images_tensor is None: |
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raise gr.Error("Generation failed.") |
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pad_left, pad_right, pad_top, pad_bottom = padding_values |
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slice_h_end = -pad_bottom if pad_bottom > 0 else None |
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slice_w_end = -pad_right if pad_right > 0 else None |
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result_images_tensor = result_images_tensor[ |
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:, :, :actual_num_frames, pad_top:slice_h_end, pad_left:slice_w_end |
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] |
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video_np = result_images_tensor[0].permute(1, 2, 3, 0).cpu().float().numpy() |
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video_np = np.clip(video_np, 0, 1) |
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video_np = (video_np * 255).astype(np.uint8) |
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temp_dir = tempfile.mkdtemp() |
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timestamp = random.randint(10000,99999) |
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output_video_path = os.path.join(temp_dir, f"output_{timestamp}.mp4") |
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try: |
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with imageio.get_writer(output_video_path, fps=call_kwargs["frame_rate"], macro_block_size=1) as video_writer: |
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for frame_idx in range(video_np.shape[0]): |
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progress(frame_idx / video_np.shape[0], desc="Saving video") |
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video_writer.append_data(video_np[frame_idx]) |
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except Exception as e: |
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print(f"Error saving video with macro_block_size=1: {e}") |
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try: |
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with imageio.get_writer(output_video_path, fps=call_kwargs["frame_rate"], format='FFMPEG', codec='libx264', quality=8) as video_writer: |
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for frame_idx in range(video_np.shape[0]): |
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progress(frame_idx / video_np.shape[0], desc="Saving video (fallback ffmpeg)") |
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video_writer.append_data(video_np[frame_idx]) |
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except Exception as e2: |
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print(f"Fallback video saving error: {e2}") |
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raise gr.Error(f"Failed to save video: {e2}") |
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if isinstance(input_image_filepath, tempfile._TemporaryFileWrapper): |
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if os.path.exists(input_image_filepath.name): |
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try: |
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input_image_filepath.close() |
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os.remove(input_image_filepath.name) |
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except: pass |
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elif input_image_filepath and os.path.exists(input_image_filepath) and input_image_filepath.startswith(tempfile.gettempdir()): |
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try: os.remove(input_image_filepath) |
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except: pass |
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if isinstance(input_video_filepath, tempfile._TemporaryFileWrapper): |
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if os.path.exists(input_video_filepath.name): |
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try: |
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input_video_filepath.close() |
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os.remove(input_video_filepath.name) |
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except: pass |
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elif input_video_filepath and os.path.exists(input_video_filepath) and input_video_filepath.startswith(tempfile.gettempdir()): |
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try: os.remove(input_video_filepath) |
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except: pass |
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return output_video_path |
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css=""" |
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#col-container { |
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margin: 0 auto; |
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max-width: 900px; |
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} |
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""" |
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with gr.Blocks(css=css) as demo: |
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gr.Markdown("# LTX Video 0.9.7 Distilled (using LTX-Video lib)") |
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gr.Markdown("Generates a short video based on text prompt, image, or existing video. Models are moved to GPU during generation and back to CPU afterwards to save VRAM.") |
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with gr.Row(): |
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with gr.Column(): |
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with gr.Group(): |
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with gr.Tab("image-to-video") as image_tab: |
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video_i_hidden = gr.Textbox(label="video_i", visible=False, value=None) |
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image_i2v = gr.Image(label="Input Image", type="filepath", sources=["upload", "webcam"]) |
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i2v_prompt = gr.Textbox(label="Prompt", value="The creature from the image starts to move", lines=3) |
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i2v_button = gr.Button("Generate Image-to-Video", variant="primary") |
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with gr.Tab("text-to-video") as text_tab: |
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image_n_hidden = gr.Textbox(label="image_n", visible=False, value=None) |
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video_n_hidden = gr.Textbox(label="video_n", visible=False, value=None) |
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t2v_prompt = gr.Textbox(label="Prompt", value="A majestic dragon flying over a medieval castle", lines=3) |
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t2v_button = gr.Button("Generate Text-to-Video", variant="primary") |
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with gr.Tab("video-to-video") as video_tab: |
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image_v_hidden = gr.Textbox(label="image_v", visible=False, value=None) |
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video_v2v = gr.Video(label="Input Video", sources=["upload", "webcam"]) |
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frames_to_use = gr.Slider(label="Frames to use from input video", minimum=9, maximum=MAX_NUM_FRAMES, value=9, step=8, info="Number of initial frames to use for conditioning/transformation. Must be N*8+1.") |
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v2v_prompt = gr.Textbox(label="Prompt", value="Change the style to cinematic anime", lines=3) |
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v2v_button = gr.Button("Generate Video-to-Video", variant="primary") |
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improve_texture = gr.Checkbox(label="Improve Texture (multi-scale)", value=True, info="Uses a two-pass generation for better quality, but is slower. Recommended for final output.") |
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with gr.Column(): |
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output_video = gr.Video(label="Generated Video", interactive=False) |
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gr.Markdown("Note: Generation can take a few minutes depending on settings and hardware.") |
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with gr.Accordion("Advanced settings", open=False): |
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negative_prompt_input = gr.Textbox(label="Negative Prompt", value="worst quality, inconsistent motion, blurry, jittery, distorted", lines=2) |
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with gr.Row(): |
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seed_input = gr.Number(label="Seed", value=42, precision=0, minimum=0, maximum=2**32-1) |
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randomize_seed_input = gr.Checkbox(label="Randomize Seed", value=False) |
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with gr.Row(): |
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guidance_scale_input = gr.Slider(label="Guidance Scale (CFG)", minimum=1.0, maximum=10.0, value=PIPELINE_CONFIG_YAML.get("first_pass", {}).get("guidance_scale", 1.0), step=0.1, info="Controls how much the prompt influences the output. Higher values = stronger influence.") |
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default_steps = len(PIPELINE_CONFIG_YAML.get("first_pass", {}).get("timesteps", [1]*7)) |
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steps_input = gr.Slider(label="Inference Steps (for first pass if multi-scale)", minimum=1, maximum=30, value=default_steps, step=1, info="Number of denoising steps. More steps can improve quality but increase time. If YAML defines 'timesteps' for a pass, this UI value is ignored for that pass.") |
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with gr.Row(): |
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num_frames_input = gr.Slider(label="Number of Frames to Generate", minimum=9, maximum=MAX_NUM_FRAMES, value=25, step=8, info="Total frames in the output video. Should be N*8+1 (e.g., 9, 17, 25...).") |
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with gr.Row(): |
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height_input = gr.Slider(label="Height", value=512, step=32, minimum=256, maximum=MAX_IMAGE_SIZE, info="Must be divisible by 32.") |
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width_input = gr.Slider(label="Width", value=704, step=32, minimum=256, maximum=MAX_IMAGE_SIZE, info="Must be divisible by 32.") |
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t2v_inputs = [t2v_prompt, negative_prompt_input, image_n_hidden, video_n_hidden, |
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height_input, width_input, gr.State("text-to-video"), |
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steps_input, num_frames_input, gr.State(0), |
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seed_input, randomize_seed_input, guidance_scale_input, improve_texture] |
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i2v_inputs = [i2v_prompt, negative_prompt_input, image_i2v, video_i_hidden, |
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height_input, width_input, gr.State("image-to-video"), |
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steps_input, num_frames_input, gr.State(0), |
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seed_input, randomize_seed_input, guidance_scale_input, improve_texture] |
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v2v_inputs = [v2v_prompt, negative_prompt_input, image_v_hidden, video_v2v, |
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height_input, width_input, gr.State("video-to-video"), |
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steps_input, num_frames_input, frames_to_use, |
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seed_input, randomize_seed_input, guidance_scale_input, improve_texture] |
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t2v_button.click(fn=generate, inputs=t2v_inputs, outputs=[output_video], api_name="text_to_video") |
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i2v_button.click(fn=generate, inputs=i2v_inputs, outputs=[output_video], api_name="image_to_video") |
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v2v_button.click(fn=generate, inputs=v2v_inputs, outputs=[output_video], api_name="video_to_video") |
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|
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if __name__ == "__main__": |
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if os.path.exists(models_dir) and os.path.isdir(models_dir): |
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print(f"Model directory: {Path(models_dir).resolve()}") |
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demo.queue().launch(debug=True, share=False) |