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https://github.com/modelscope/DiffSynth-Studio.git
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198 lines
10 KiB
Python
198 lines
10 KiB
Python
import streamlit as st
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st.set_page_config(layout="wide")
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from diffsynth import SDVideoPipelineRunner
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import os
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import numpy as np
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def load_model_list(folder):
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file_list = os.listdir(folder)
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file_list = [i for i in file_list if i.endswith(".safetensors") or i.endswith(".pth") or i.endswith(".ckpt")]
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file_list = sorted(file_list)
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return file_list
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def match_processor_id(model_name, supported_processor_id_list):
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sorted_processor_id = [i[1] for i in sorted([(-len(i), i) for i in supported_processor_id_list])]
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for processor_id in sorted_processor_id:
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if processor_id in model_name:
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return supported_processor_id_list.index(processor_id) + 1
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return 0
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config = {
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"models": {
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"model_list": [],
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"textual_inversion_folder": "models/textual_inversion",
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"device": "cuda",
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"lora_alphas": [],
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"controlnet_units": []
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},
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"data": {
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"input_frames": None,
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"controlnet_frames": [],
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"output_folder": "output",
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"fps": 60
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},
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"pipeline": {
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"seed": 0,
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"pipeline_inputs": {}
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}
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}
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with st.expander("Model", expanded=True):
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stable_diffusion_ckpt = st.selectbox("Stable Diffusion", ["None"] + load_model_list("models/stable_diffusion"))
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if stable_diffusion_ckpt != "None":
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config["models"]["model_list"].append(os.path.join("models/stable_diffusion", stable_diffusion_ckpt))
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animatediff_ckpt = st.selectbox("AnimateDiff", ["None"] + load_model_list("models/AnimateDiff"))
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if animatediff_ckpt != "None":
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config["models"]["model_list"].append(os.path.join("models/AnimateDiff", animatediff_ckpt))
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column_lora, column_lora_alpha = st.columns([2, 1])
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with column_lora:
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sd_lora_ckpt = st.selectbox("LoRA", ["None"] + load_model_list("models/lora"))
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with column_lora_alpha:
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lora_alpha = st.slider("LoRA Alpha", min_value=-4.0, max_value=4.0, value=1.0, step=0.1)
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if sd_lora_ckpt != "None":
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config["models"]["model_list"].append(os.path.join("models/lora", sd_lora_ckpt))
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config["models"]["lora_alphas"].append(lora_alpha)
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with st.expander("Data", expanded=True):
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with st.container(border=True):
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input_video = st.text_input("Input Video File Path (e.g., data/your_video.mp4)", value="")
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column_height, column_width, column_start_frame_index, column_end_frame_index = st.columns([2, 2, 1, 1])
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with column_height:
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height = st.select_slider("Height", options=[256, 512, 768, 1024, 1536, 2048], value=1024)
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with column_width:
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width = st.select_slider("Width", options=[256, 512, 768, 1024, 1536, 2048], value=1024)
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with column_start_frame_index:
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start_frame_id = st.number_input("Start Frame id", value=0)
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with column_end_frame_index:
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end_frame_id = st.number_input("End Frame id", value=16)
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if input_video != "":
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config["data"]["input_frames"] = {
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"video_file": input_video,
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"image_folder": None,
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"height": height,
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"width": width,
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"start_frame_id": start_frame_id,
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"end_frame_id": end_frame_id
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}
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with st.container(border=True):
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output_video = st.text_input("Output Video File Path (e.g., data/a_folder_to_save_something)", value="output")
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fps = st.number_input("FPS", value=60)
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config["data"]["output_folder"] = output_video
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config["data"]["fps"] = fps
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with st.expander("ControlNet Units", expanded=True):
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supported_processor_id_list = ["canny", "depth", "softedge", "lineart", "lineart_anime", "openpose", "tile"]
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controlnet_units = st.tabs(["ControlNet Unit 0", "ControlNet Unit 1", "ControlNet Unit 2"])
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for controlnet_id in range(len(controlnet_units)):
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with controlnet_units[controlnet_id]:
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controlnet_ckpt = st.selectbox("ControlNet", ["None"] + load_model_list("models/ControlNet"),
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key=f"controlnet_ckpt_{controlnet_id}")
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processor_id = st.selectbox("Processor", ["None"] + supported_processor_id_list,
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index=match_processor_id(controlnet_ckpt, supported_processor_id_list),
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disabled=controlnet_ckpt == "None", key=f"processor_id_{controlnet_id}")
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controlnet_scale = st.slider("Scale", min_value=0.0, max_value=1.0, step=0.01, value=0.5,
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disabled=controlnet_ckpt == "None", key=f"controlnet_scale_{controlnet_id}")
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use_input_video_as_controlnet_input = st.checkbox("Use input video as ControlNet input", value=True,
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disabled=controlnet_ckpt == "None",
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key=f"use_input_video_as_controlnet_input_{controlnet_id}")
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if not use_input_video_as_controlnet_input:
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controlnet_input_video = st.text_input("ControlNet Input Video File Path", value="",
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disabled=controlnet_ckpt == "None", key=f"controlnet_input_video_{controlnet_id}")
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column_height, column_width, column_start_frame_index, column_end_frame_index = st.columns([2, 2, 1, 1])
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with column_height:
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height = st.select_slider("Height", options=[256, 512, 768, 1024, 1536, 2048], value=1024,
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disabled=controlnet_ckpt == "None", key=f"controlnet_height_{controlnet_id}")
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with column_width:
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width = st.select_slider("Width", options=[256, 512, 768, 1024, 1536, 2048], value=1024,
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disabled=controlnet_ckpt == "None", key=f"controlnet_width_{controlnet_id}")
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with column_start_frame_index:
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start_frame_id = st.number_input("Start Frame id", value=0,
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disabled=controlnet_ckpt == "None", key=f"controlnet_start_frame_id_{controlnet_id}")
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with column_end_frame_index:
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end_frame_id = st.number_input("End Frame id", value=16,
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disabled=controlnet_ckpt == "None", key=f"controlnet_end_frame_id_{controlnet_id}")
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if input_video != "":
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config["data"]["input_video"] = {
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"video_file": input_video,
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"image_folder": None,
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"height": height,
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"width": width,
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"start_frame_id": start_frame_id,
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"end_frame_id": end_frame_id
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}
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if controlnet_ckpt != "None":
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config["models"]["model_list"].append(os.path.join("models/ControlNet", controlnet_ckpt))
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config["models"]["controlnet_units"].append({
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"processor_id": processor_id,
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"model_path": os.path.join("models/ControlNet", controlnet_ckpt),
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"scale": controlnet_scale,
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})
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if use_input_video_as_controlnet_input:
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config["data"]["controlnet_frames"].append(config["data"]["input_frames"])
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else:
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config["data"]["controlnet_frames"].append({
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"video_file": input_video,
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"image_folder": None,
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"height": height,
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"width": width,
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"start_frame_id": start_frame_id,
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"end_frame_id": end_frame_id
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})
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with st.container(border=True):
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with st.expander("Seed", expanded=True):
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use_fixed_seed = st.checkbox("Use fixed seed", value=False)
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if use_fixed_seed:
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seed = st.number_input("Random seed", min_value=0, max_value=10**9, step=1, value=0)
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else:
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seed = np.random.randint(0, 10**9)
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with st.expander("Textual Guidance", expanded=True):
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prompt = st.text_area("Positive prompt")
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negative_prompt = st.text_area("Negative prompt")
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column_cfg_scale, column_clip_skip = st.columns(2)
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with column_cfg_scale:
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cfg_scale = st.slider("Classifier-free guidance scale", min_value=1.0, max_value=10.0, value=7.0)
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with column_clip_skip:
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clip_skip = st.slider("Clip Skip", min_value=1, max_value=4, value=1)
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with st.expander("Denoising", expanded=True):
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column_num_inference_steps, column_denoising_strength = st.columns(2)
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with column_num_inference_steps:
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num_inference_steps = st.slider("Inference steps", min_value=1, max_value=100, value=10)
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with column_denoising_strength:
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denoising_strength = st.slider("Denoising strength", min_value=0.0, max_value=1.0, value=1.0)
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with st.expander("Efficiency", expanded=False):
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animatediff_batch_size = st.slider("Animatediff batch size (sliding window size)", min_value=1, max_value=32, value=16, step=1)
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animatediff_stride = st.slider("Animatediff stride",
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min_value=1,
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max_value=max(2, animatediff_batch_size),
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value=max(1, animatediff_batch_size // 2),
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step=1)
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unet_batch_size = st.slider("UNet batch size", min_value=1, max_value=32, value=1, step=1)
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controlnet_batch_size = st.slider("ControlNet batch size", min_value=1, max_value=32, value=1, step=1)
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cross_frame_attention = st.checkbox("Enable Cross-Frame Attention", value=False)
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config["pipeline"]["seed"] = seed
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config["pipeline"]["pipeline_inputs"] = {
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"prompt": prompt,
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"negative_prompt": negative_prompt,
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"cfg_scale": cfg_scale,
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"clip_skip": clip_skip,
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"denoising_strength": denoising_strength,
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"num_inference_steps": num_inference_steps,
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"animatediff_batch_size": animatediff_batch_size,
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"animatediff_stride": animatediff_stride,
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"unet_batch_size": unet_batch_size,
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"controlnet_batch_size": controlnet_batch_size,
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"cross_frame_attention": cross_frame_attention,
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}
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run_button = st.button("☢️Run☢️", type="primary")
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if run_button:
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SDVideoPipelineRunner(in_streamlit=True).run(config)
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