import gradio as gr import os import spaces import sys from copy import deepcopy sys.path.append('./VADER-VideoCrafter/scripts/main') sys.path.append('./VADER-VideoCrafter/scripts') sys.path.append('./VADER-VideoCrafter') from train_t2v_lora import main_fn, setup_model examples = [ ["Fairy and Magical Flowers: A fairy tends to enchanted, glowing flowers.", 'huggingface-hps-aesthetic', 8, 901, 384, 512, 12.0, 25, 1.0, 24, 10], ["A cat playing an electric guitar in a loft with industrial-style decor and soft, multicolored lights.", 'huggingface-hps-aesthetic', 8, 208, 384, 512, 12.0, 25, 1.0, 24, 10], ["A raccoon playing a guitar under a blossoming cherry tree.", 'huggingface-hps-aesthetic', 8, 180, 384, 512, 12.0, 25, 1.0, 24, 10], ["A raccoon playing an electric bass in a garage band setting.", 'huggingface-hps-aesthetic', 8, 400, 384, 512, 12.0, 25, 1.0, 24, 10], ["A talking bird with shimmering feathers and a melodious voice finds a legendary treasure, guiding through enchanted forests, ancient ruins, and mystical challenges.", "huggingface-pickscore", 16, 200, 384, 512, 12.0, 25, 1.0, 24, 10], ["A snow princess stands on the balcony of her ice castle, her hair adorned with delicate snowflakes, overlooking her serene realm.", "huggingface-pickscore", 16, 400, 384, 512, 12.0, 25, 1.0, 24, 10], ["A mermaid with flowing hair and a shimmering tail discovers a hidden underwater kingdom adorned with coral palaces, glowing pearls, and schools of colorful fish, encountering both wonders and dangers along the way.", "huggingface-pickscore", 16, 800, 384, 512, 12.0, 25, 1.0, 24, 10], ] model = setup_model() @spaces.GPU(duration=180) def gradio_main_fn(prompt, lora_model, lora_rank, seed, height, width, unconditional_guidance_scale, ddim_steps, ddim_eta, frames, savefps): global model if model is None: return "Model is not loaded. Please load the model first." video_path = main_fn(prompt=prompt, lora_model=lora_model, lora_rank=int(lora_rank), seed=int(seed), height=int(height), width=int(width), unconditional_guidance_scale=float(unconditional_guidance_scale), ddim_steps=int(ddim_steps), ddim_eta=float(ddim_eta), frames=int(frames), savefps=int(savefps), model=deepcopy(model)) return video_path def reset_fn(): return ("A brown dog eagerly eats from a bowl in a kitchen.", 200, 384, 512, 12.0, 25, 1.0, 24, 16, 10, "huggingface-pickscore") def update_lora_rank(lora_model): if lora_model == "huggingface-pickscore": return gr.update(value=16) elif lora_model == "huggingface-hps-aesthetic": return gr.update(value=8) else: # "Base Model" return gr.update(value=8) def update_dropdown(lora_rank): if lora_rank == 16: return gr.update(value="huggingface-pickscore") elif lora_rank == 8: return gr.update(value="huggingface-hps-aesthetic") else: # 0 return gr.update(value="Base Model") custom_css = """ #centered { display: flex; justify-content: center; width: 60%; margin: 0 auto; } .column-centered { display: flex; flex-direction: column; align-items: center; width: 60%; } #image-upload { flex-grow: 1; } #params .tabs { display: flex; flex-direction: column; flex-grow: 1; } #params .tabitem[style="display: block;"] { flex-grow: 1; display: flex !important; } #params .gap { flex-grow: 1; } #params .form { flex-grow: 1 !important; } #params .form > :last-child{ flex-grow: 1; } """ with gr.Blocks(css=custom_css) as demo: with gr.Row(): with gr.Column(): gr.HTML( """