from diffusers_helper.hf_login import login import os os.environ['HF_HOME'] = os.path.abspath(os.path.realpath(os.path.join(os.path.dirname(__file__), './hf_download'))) import gradio as gr import torch import traceback import einops import safetensors.torch as sf import numpy as np import argparse import math from PIL import Image from diffusers import AutoencoderKLHunyuanVideo from transformers import LlamaModel, CLIPTextModel, LlamaTokenizerFast, CLIPTokenizer from diffusers_helper.hunyuan import encode_prompt_conds, vae_decode, vae_encode, vae_decode_fake from diffusers_helper.utils import save_bcthw_as_mp4, crop_or_pad_yield_mask, soft_append_bcthw, resize_and_center_crop, state_dict_weighted_merge, state_dict_offset_merge, generate_timestamp from diffusers_helper.models.hunyuan_video_packed import HunyuanVideoTransformer3DModelPacked from diffusers_helper.pipelines.k_diffusion_hunyuan import sample_hunyuan from diffusers_helper.memory import cpu, gpu, get_cuda_free_memory_gb, move_model_to_device_with_memory_preservation, offload_model_from_device_for_memory_preservation, fake_diffusers_current_device, DynamicSwapInstaller, unload_complete_models, load_model_as_complete from diffusers_helper.thread_utils import AsyncStream, async_run from diffusers_helper.gradio.progress_bar import make_progress_bar_css, make_progress_bar_html from transformers import SiglipImageProcessor, SiglipVisionModel from diffusers_helper.clip_vision import hf_clip_vision_encode from diffusers_helper.bucket_tools import find_nearest_bucket parser = argparse.ArgumentParser() parser.add_argument('--share', action='store_true') parser.add_argument("--server", type=str, default='0.0.0.0') parser.add_argument("--port", type=int, required=False) parser.add_argument("--inbrowser", action='store_true') args = parser.parse_args() # for win desktop probably use --server 127.0.0.1 --inbrowser # For linux server probably use --server 127.0.0.1 or do not use any cmd flags print(args) free_mem_gb = get_cuda_free_memory_gb(gpu) high_vram = free_mem_gb > 60 print(f'Free VRAM {free_mem_gb} GB') print(f'High-VRAM Mode: {high_vram}') text_encoder = LlamaModel.from_pretrained("hunyuanvideo-community/HunyuanVideo", subfolder='text_encoder', torch_dtype=torch.float16).cpu() text_encoder_2 = CLIPTextModel.from_pretrained("hunyuanvideo-community/HunyuanVideo", subfolder='text_encoder_2', torch_dtype=torch.float16).cpu() tokenizer = LlamaTokenizerFast.from_pretrained("hunyuanvideo-community/HunyuanVideo", subfolder='tokenizer') tokenizer_2 = CLIPTokenizer.from_pretrained("hunyuanvideo-community/HunyuanVideo", subfolder='tokenizer_2') vae = AutoencoderKLHunyuanVideo.from_pretrained("hunyuanvideo-community/HunyuanVideo", subfolder='vae', torch_dtype=torch.float16).cpu() feature_extractor = SiglipImageProcessor.from_pretrained("lllyasviel/flux_redux_bfl", subfolder='feature_extractor') image_encoder = SiglipVisionModel.from_pretrained("lllyasviel/flux_redux_bfl", subfolder='image_encoder', torch_dtype=torch.float16).cpu() transformer = HunyuanVideoTransformer3DModelPacked.from_pretrained('lllyasviel/FramePackI2V_HY', torch_dtype=torch.bfloat16).cpu() vae.eval() text_encoder.eval() text_encoder_2.eval() image_encoder.eval() transformer.eval() if not high_vram: vae.enable_slicing() vae.enable_tiling() transformer.high_quality_fp32_output_for_inference = True print('transformer.high_quality_fp32_output_for_inference = True') transformer.to(dtype=torch.bfloat16) vae.to(dtype=torch.float16) image_encoder.to(dtype=torch.float16) text_encoder.to(dtype=torch.float16) text_encoder_2.to(dtype=torch.float16) vae.requires_grad_(False) text_encoder.requires_grad_(False) text_encoder_2.requires_grad_(False) image_encoder.requires_grad_(False) transformer.requires_grad_(False) if not high_vram: # DynamicSwapInstaller is same as huggingface's enable_sequential_offload but 3x faster DynamicSwapInstaller.install_model(transformer, device=gpu) DynamicSwapInstaller.install_model(text_encoder, device=gpu) else: text_encoder.to(gpu) text_encoder_2.to(gpu) image_encoder.to(gpu) vae.to(gpu) transformer.to(gpu) stream = AsyncStream() outputs_folder = './outputs/' os.makedirs(outputs_folder, exist_ok=True) @torch.no_grad() def worker(input_image, prompt, n_prompt, seed, total_second_length, latent_window_size, steps, cfg, gs, rs, gpu_memory_preservation, use_teacache): total_latent_sections = (total_second_length * 30) / (latent_window_size * 4) total_latent_sections = int(max(round(total_latent_sections), 1)) job_id = generate_timestamp() stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'Starting ...')))) try: # Clean GPU if not high_vram: unload_complete_models( text_encoder, text_encoder_2, image_encoder, vae, transformer ) # Text encoding stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'Text encoding ...')))) if not high_vram: fake_diffusers_current_device(text_encoder, gpu) # since we only encode one text - that is one model move and one encode, offload is same time consumption since it is also one load and one encode. load_model_as_complete(text_encoder_2, target_device=gpu) llama_vec, clip_l_pooler = encode_prompt_conds(prompt, text_encoder, text_encoder_2, tokenizer, tokenizer_2) if cfg == 1: llama_vec_n, clip_l_pooler_n = torch.zeros_like(llama_vec), torch.zeros_like(clip_l_pooler) else: llama_vec_n, clip_l_pooler_n = encode_prompt_conds(n_prompt, text_encoder, text_encoder_2, tokenizer, tokenizer_2) llama_vec, llama_attention_mask = crop_or_pad_yield_mask(llama_vec, length=512) llama_vec_n, llama_attention_mask_n = crop_or_pad_yield_mask(llama_vec_n, length=512) # Processing input image stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'Image processing ...')))) H, W, C = input_image.shape height, width = find_nearest_bucket(H, W, resolution=640) input_image_np = resize_and_center_crop(input_image, target_width=width, target_height=height) Image.fromarray(input_image_np).save(os.path.join(outputs_folder, f'{job_id}.png')) input_image_pt = torch.from_numpy(input_image_np).float() / 127.5 - 1 input_image_pt = input_image_pt.permute(2, 0, 1)[None, :, None] # VAE encoding stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'VAE encoding ...')))) if not high_vram: load_model_as_complete(vae, target_device=gpu) start_latent = vae_encode(input_image_pt, vae) # CLIP Vision stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'CLIP Vision encoding ...')))) if not high_vram: load_model_as_complete(image_encoder, target_device=gpu) image_encoder_output = hf_clip_vision_encode(input_image_np, feature_extractor, image_encoder) image_encoder_last_hidden_state = image_encoder_output.last_hidden_state # Dtype llama_vec = llama_vec.to(transformer.dtype) llama_vec_n = llama_vec_n.to(transformer.dtype) clip_l_pooler = clip_l_pooler.to(transformer.dtype) clip_l_pooler_n = clip_l_pooler_n.to(transformer.dtype) image_encoder_last_hidden_state = image_encoder_last_hidden_state.to(transformer.dtype) # Sampling stream.output_queue.push(('progress', (None, '', make_progress_bar_html(0, 'Start sampling ...')))) rnd = torch.Generator("cpu").manual_seed(seed) num_frames = latent_window_size * 4 - 3 history_latents = torch.zeros(size=(1, 16, 1 + 2 + 16, height // 8, width // 8), dtype=torch.float32).cpu() history_pixels = None total_generated_latent_frames = 0 latent_paddings = reversed(range(total_latent_sections)) if total_latent_sections > 4: # In theory the latent_paddings should follow the above sequence, but it seems that duplicating some # items looks better than expanding it when total_latent_sections > 4 # One can try to remove below trick and just # use `latent_paddings = list(reversed(range(total_latent_sections)))` to compare latent_paddings = [3] + [2] * (total_latent_sections - 3) + [1, 0] for latent_padding in latent_paddings: is_last_section = latent_padding == 0 latent_padding_size = latent_padding * latent_window_size if stream.input_queue.top() == 'end': stream.output_queue.push(('end', None)) return print(f'latent_padding_size = {latent_padding_size}, is_last_section = {is_last_section}') indices = torch.arange(0, sum([1, latent_padding_size, latent_window_size, 1, 2, 16])).unsqueeze(0) clean_latent_indices_pre, blank_indices, latent_indices, clean_latent_indices_post, clean_latent_2x_indices, clean_latent_4x_indices = indices.split([1, latent_padding_size, latent_window_size, 1, 2, 16], dim=1) clean_latent_indices = torch.cat([clean_latent_indices_pre, clean_latent_indices_post], dim=1) clean_latents_pre = start_latent.to(history_latents) clean_latents_post, clean_latents_2x, clean_latents_4x = history_latents[:, :, :1 + 2 + 16, :, :].split([1, 2, 16], dim=2) clean_latents = torch.cat([clean_latents_pre, clean_latents_post], dim=2) if not high_vram: unload_complete_models() move_model_to_device_with_memory_preservation(transformer, target_device=gpu, preserved_memory_gb=gpu_memory_preservation) if use_teacache: transformer.initialize_teacache(enable_teacache=True, num_steps=steps) else: transformer.initialize_teacache(enable_teacache=False) def callback(d): preview = d['denoised'] preview = vae_decode_fake(preview) preview = (preview * 255.0).detach().cpu().numpy().clip(0, 255).astype(np.uint8) preview = einops.rearrange(preview, 'b c t h w -> (b h) (t w) c') if stream.input_queue.top() == 'end': stream.output_queue.push(('end', None)) raise KeyboardInterrupt('User ends the task.') current_step = d['i'] + 1 percentage = int(100.0 * current_step / steps) hint = f'Sampling {current_step}/{steps}' desc = f'Total generated frames: {int(max(0, total_generated_latent_frames * 4 - 3))}, Video length: {max(0, (total_generated_latent_frames * 4 - 3) / 30) :.2f} seconds (FPS-30). The video is being extended now ...' stream.output_queue.push(('progress', (preview, desc, make_progress_bar_html(percentage, hint)))) return generated_latents = sample_hunyuan( transformer=transformer, sampler='unipc', width=width, height=height, frames=num_frames, real_guidance_scale=cfg, distilled_guidance_scale=gs, guidance_rescale=rs, # shift=3.0, num_inference_steps=steps, generator=rnd, prompt_embeds=llama_vec, prompt_embeds_mask=llama_attention_mask, prompt_poolers=clip_l_pooler, negative_prompt_embeds=llama_vec_n, negative_prompt_embeds_mask=llama_attention_mask_n, negative_prompt_poolers=clip_l_pooler_n, device=gpu, dtype=torch.bfloat16, image_embeddings=image_encoder_last_hidden_state, latent_indices=latent_indices, clean_latents=clean_latents, clean_latent_indices=clean_latent_indices, clean_latents_2x=clean_latents_2x, clean_latent_2x_indices=clean_latent_2x_indices, clean_latents_4x=clean_latents_4x, clean_latent_4x_indices=clean_latent_4x_indices, callback=callback, ) if is_last_section: generated_latents = torch.cat([start_latent.to(generated_latents), generated_latents], dim=2) total_generated_latent_frames += int(generated_latents.shape[2]) history_latents = torch.cat([generated_latents.to(history_latents), history_latents], dim=2) if not high_vram: offload_model_from_device_for_memory_preservation(transformer, target_device=gpu, preserved_memory_gb=8) load_model_as_complete(vae, target_device=gpu) real_history_latents = history_latents[:, :, :total_generated_latent_frames, :, :] if history_pixels is None: history_pixels = vae_decode(real_history_latents, vae).cpu() else: section_latent_frames = (latent_window_size * 2 + 1) if is_last_section else (latent_window_size * 2) overlapped_frames = latent_window_size * 4 - 3 current_pixels = vae_decode(real_history_latents[:, :, :section_latent_frames], vae).cpu() history_pixels = soft_append_bcthw(current_pixels, history_pixels, overlapped_frames) if not high_vram: unload_complete_models() output_filename = os.path.join(outputs_folder, f'{job_id}_{total_generated_latent_frames}.mp4') save_bcthw_as_mp4(history_pixels, output_filename, fps=30) print(f'Decoded. Current latent shape {real_history_latents.shape}; pixel shape {history_pixels.shape}') stream.output_queue.push(('file', output_filename)) if is_last_section: break except: traceback.print_exc() if not high_vram: unload_complete_models( text_encoder, text_encoder_2, image_encoder, vae, transformer ) stream.output_queue.push(('end', None)) return def process(input_image, prompt, n_prompt, seed, total_second_length, latent_window_size, steps, cfg, gs, rs, gpu_memory_preservation, use_teacache): global stream assert input_image is not None, 'No input image!' yield None, None, '', '', gr.update(interactive=False), gr.update(interactive=True) stream = AsyncStream() async_run(worker, input_image, prompt, n_prompt, seed, total_second_length, latent_window_size, steps, cfg, gs, rs, gpu_memory_preservation, use_teacache) output_filename = None while True: flag, data = stream.output_queue.next() if flag == 'file': output_filename = data yield output_filename, gr.update(), gr.update(), gr.update(), gr.update(interactive=False), gr.update(interactive=True) if flag == 'progress': preview, desc, html = data yield gr.update(), gr.update(visible=True, value=preview), desc, html, gr.update(interactive=False), gr.update(interactive=True) if flag == 'end': yield output_filename, gr.update(visible=False), gr.update(), '', gr.update(interactive=True), gr.update(interactive=False) break def end_process(): stream.input_queue.push('end') quick_prompts = [ 'The girl dances gracefully, with clear movements, full of charm.', 'A character doing some simple body movements.', ] quick_prompts = [[x] for x in quick_prompts] css = make_progress_bar_css() block = gr.Blocks(css=css).queue() with block: gr.Markdown('# FramePack') with gr.Row(): with gr.Column(): input_image = gr.Image(sources='upload', type="numpy", label="Image", height=320) prompt = gr.Textbox(label="Prompt", value='') example_quick_prompts = gr.Dataset(samples=quick_prompts, label='Quick List', samples_per_page=1000, components=[prompt]) example_quick_prompts.click(lambda x: x[0], inputs=[example_quick_prompts], outputs=prompt, show_progress=False, queue=False) with gr.Row(): start_button = gr.Button(value="Start Generation") end_button = gr.Button(value="End Generation", interactive=False) with gr.Group(): use_teacache = gr.Checkbox(label='Use TeaCache', value=True, info='Faster speed, but often makes hands and fingers slightly worse.') n_prompt = gr.Textbox(label="Negative Prompt", value="", visible=False) # Not used seed = gr.Number(label="Seed", value=31337, precision=0) total_second_length = gr.Slider(label="Total Video Length (Seconds)", minimum=1, maximum=120, value=5, step=0.1) latent_window_size = gr.Slider(label="Latent Window Size", minimum=1, maximum=33, value=9, step=1, visible=False) # Should not change steps = gr.Slider(label="Steps", minimum=1, maximum=100, value=25, step=1, info='Changing this value is not recommended.') cfg = gr.Slider(label="CFG Scale", minimum=1.0, maximum=32.0, value=1.0, step=0.01, visible=False) # Should not change gs = gr.Slider(label="Distilled CFG Scale", minimum=1.0, maximum=32.0, value=10.0, step=0.01, info='Changing this value is not recommended.') rs = gr.Slider(label="CFG Re-Scale", minimum=0.0, maximum=1.0, value=0.0, step=0.01, visible=False) # Should not change gpu_memory_preservation = gr.Slider(label="GPU Inference Preserved Memory (GB) (larger means slower)", minimum=6, maximum=128, value=6, step=0.1, info="Set this number to a larger value if you encounter OOM. Larger value causes slower speed.") with gr.Column(): preview_image = gr.Image(label="Next Latents", height=200, visible=False) result_video = gr.Video(label="Finished Frames", autoplay=True, show_share_button=False, height=512, loop=True) gr.Markdown('Note that the ending actions will be generated before the starting actions due to the inverted sampling. If the starting action is not in the video, you just need to wait, and it will be generated later.') progress_desc = gr.Markdown('', elem_classes='no-generating-animation') progress_bar = gr.HTML('', elem_classes='no-generating-animation') ips = [input_image, prompt, n_prompt, seed, total_second_length, latent_window_size, steps, cfg, gs, rs, gpu_memory_preservation, use_teacache] start_button.click(fn=process, inputs=ips, outputs=[result_video, preview_image, progress_desc, progress_bar, start_button, end_button]) end_button.click(fn=end_process) block.launch( server_name=args.server, server_port=args.port, share=args.share, inbrowser=args.inbrowser, )