import gradio as gr import spaces import torch from diffusers import DiffusionPipeline import numpy as np from PIL import Image import os import tempfile from typing import Optional, Tuple import time from config import MODEL_ID, DEFAULT_HEIGHT, DEFAULT_WIDTH, DEFAULT_NUM_FRAMES, DEFAULT_NUM_INFERENCE_STEPS from utils import create_video_from_frames, save_video_temp, cleanup_temp_files from models import load_pipeline # Global pipeline variable pipeline = None @spaces.GPU(duration=300) def initialize_model(): """Initialize the Open-Sora-v2 pipeline""" global pipeline if pipeline is None: pipeline = load_pipeline() return "Model loaded successfully!" @spaces.GPU(duration=180) def generate_video( prompt: str, height: int = DEFAULT_HEIGHT, width: int = DEFAULT_WIDTH, num_frames: int = DEFAULT_NUM_FRAMES, num_inference_steps: int = DEFAULT_NUM_INFERENCE_STEPS, seed: Optional[int] = None, progress=gr.Progress() ) -> Tuple[str, str]: """ Generate a video from text prompt using Open-Sora-v2 Args: prompt (str): Text description of the video to generate height (int): Height of the video frames width (int): Width of the video frames num_frames (int): Number of frames to generate num_inference_steps (int): Number of denoising steps seed (int, optional): Random seed for reproducible generation Returns: Tuple[str, str]: Path to generated video file and status message """ try: # Initialize model if not already done if pipeline is None: progress(0.1, desc="Loading model...") initialize_model() # Set seed for reproducibility if seed is not None: torch.manual_seed(seed) progress(0.2, desc="Generating video frames...") # Generate video frames video_frames = pipeline( prompt=prompt, height=height, width=width, num_frames=num_frames, num_inference_steps=num_inference_steps, guidance_scale=7.5, ).frames progress(0.8, desc="Processing video...") # Convert frames to video video_path = save_video_temp(video_frames, fps=24) progress(1.0, desc="Complete!") return video_path, f"✅ Video generated successfully! ({len(video_frames)} frames)" except Exception as e: error_msg = f"❌ Error generating video: {str(e)}" return None, error_msg def update_interface(): """Update interface based on model availability""" return gr.update(interactive=True) def create_demo(): """Create the Gradio demo interface""" with gr.Blocks( title="Open-Sora-v2 Text to Video", theme=gr.themes.Soft(), css=""" .gradio-container { max-width: 1200px !important; } .generate-btn { background: linear-gradient(45deg, #667eea 0%, #764ba2 100%) !important; } """ ) as demo: gr.HTML("""
Generate amazing videos from text descriptions using Open-Sora-v2 model