#!/usr/bin/env python # encoding: utf-8 import spaces import torch import argparse from transformers import AutoModel, AutoTokenizer import gradio as gr from PIL import Image from decord import VideoReader, cpu import io import os import copy import requests import base64 import json import traceback import re import modelscope_studio as mgr # README, How to run demo on different devices # For Nvidia GPUs. # python web_demo_2.6.py --device cuda # For Mac with MPS (Apple silicon or AMD GPUs). # PYTORCH_ENABLE_MPS_FALLBACK=1 python web_demo_2.6.py --device mps # Argparser parser = argparse.ArgumentParser(description='demo') parser.add_argument('--device', type=str, default='cuda', help='cuda or mps') parser.add_argument('--multi-gpus', action='store_true', default=False, help='use multi-gpus') args = parser.parse_args() device = args.device assert device in ['cuda', 'mps'] # Load model model_path = 'openbmb/MiniCPM-V-2_6' if 'int4' in model_path: if device == 'mps': print('Error: running int4 model with bitsandbytes on Mac is not supported right now.') exit() model = AutoModel.from_pretrained(model_path, trust_remote_code=True) else: if False: #args.multi_gpus: from accelerate import load_checkpoint_and_dispatch, init_empty_weights, infer_auto_device_map with init_empty_weights(): #model = AutoModel.from_pretrained(model_path, trust_remote_code=True, attn_implementation='sdpa', torch_dtype=torch.bfloat16) model = AutoModel.from_pretrained(model_path, trust_remote_code=True, torch_dtype=torch.bfloat16) device_map = infer_auto_device_map(model, max_memory={0: "10GB", 1: "10GB"}, no_split_module_classes=['SiglipVisionTransformer', 'Qwen2DecoderLayer']) device_id = device_map["llm.model.embed_tokens"] device_map["llm.lm_head"] = device_id # firtt and last layer should be in same device device_map["vpm"] = device_id device_map["resampler"] = device_id device_id2 = device_map["llm.model.layers.26"] device_map["llm.model.layers.8"] = device_id2 device_map["llm.model.layers.9"] = device_id2 device_map["llm.model.layers.10"] = device_id2 device_map["llm.model.layers.11"] = device_id2 device_map["llm.model.layers.12"] = device_id2 device_map["llm.model.layers.13"] = device_id2 device_map["llm.model.layers.14"] = device_id2 device_map["llm.model.layers.15"] = device_id2 device_map["llm.model.layers.16"] = device_id2 #print(device_map) #model = load_checkpoint_and_dispatch(model, model_path, dtype=torch.bfloat16, device_map=device_map) model = AutoModel.from_pretrained(model_path, trust_remote_code=True, torch_dtype=torch.bfloat16, device_map=device_map) else: #model = AutoModel.from_pretrained(model_path, trust_remote_code=True, attn_implementation='sdpa', torch_dtype=torch.bfloat16) model = AutoModel.from_pretrained(model_path, trust_remote_code=True, torch_dtype=torch.bfloat16) model = model.to(device=device) tokenizer = AutoTokenizer.from_pretrained(model_path, trust_remote_code=True) model.eval() ERROR_MSG = "Error, please retry" model_name = 'MiniCPM-V 2.6' MAX_NUM_FRAMES = 64 IMAGE_EXTENSIONS = {'.jpg', '.jpeg', '.png', '.bmp', '.tiff', '.webp'} VIDEO_EXTENSIONS = {'.mp4', '.mkv', '.mov', '.avi', '.flv', '.wmv', '.webm', '.m4v'} def get_file_extension(filename): return os.path.splitext(filename)[1].lower() def is_image(filename): return get_file_extension(filename) in IMAGE_EXTENSIONS def is_video(filename): return get_file_extension(filename) in VIDEO_EXTENSIONS form_radio = { 'choices': ['Beam Search', 'Sampling'], #'value': 'Beam Search', 'value': 'Sampling', 'interactive': True, 'label': 'Decode Type' } def create_component(params, comp='Slider'): if comp == 'Slider': return gr.Slider( minimum=params['minimum'], maximum=params['maximum'], value=params['value'], step=params['step'], interactive=params['interactive'], label=params['label'] ) elif comp == 'Radio': return gr.Radio( choices=params['choices'], value=params['value'], interactive=params['interactive'], label=params['label'] ) elif comp == 'Button': return gr.Button( value=params['value'], interactive=True ) def create_multimodal_input(upload_image_disabled=False, upload_video_disabled=False): return mgr.MultimodalInput(value=None, upload_image_button_props={'label': 'Upload Image', 'disabled': upload_image_disabled, 'file_count': 'multiple'}, upload_video_button_props={'label': 'Upload Video', 'disabled': upload_video_disabled, 'file_count': 'single'}, submit_button_props={'label': 'Submit'}) @spaces.GPU(duration=120) def chat(img, msgs, ctx, params=None, vision_hidden_states=None): try: if msgs[-1]['role'] == 'assistant': msgs = msgs[:-1] # remove last which is added for streaming print('msgs:', msgs) answer = model.chat( image=None, msgs=msgs, tokenizer=tokenizer, **params ) if params['stream'] is False: res = re.sub(r'(.*)', '', answer) res = res.replace('', '') res = res.replace('', '') res = res.replace('', '') answer = res.replace('', '') print('answer:') for char in answer: print(char, flush=True, end='') yield char except Exception as e: print(e) traceback.print_exc() yield ERROR_MSG def encode_image(image): if not isinstance(image, Image.Image): if hasattr(image, 'path'): image = Image.open(image.path).convert("RGB") else: image = Image.open(image.file.path).convert("RGB") # resize to max_size max_size = 448*16 if max(image.size) > max_size: w,h = image.size if w > h: new_w = max_size new_h = int(h * max_size / w) else: new_h = max_size new_w = int(w * max_size / h) image = image.resize((new_w, new_h), resample=Image.BICUBIC) return image ## save by BytesIO and convert to base64 #buffered = io.BytesIO() #image.save(buffered, format="png") #im_b64 = base64.b64encode(buffered.getvalue()).decode() #return {"type": "image", "pairs": im_b64} def encode_video(video): def uniform_sample(l, n): gap = len(l) / n idxs = [int(i * gap + gap / 2) for i in range(n)] return [l[i] for i in idxs] if hasattr(video, 'path'): vr = VideoReader(video.path, ctx=cpu(0)) else: vr = VideoReader(video.file.path, ctx=cpu(0)) sample_fps = round(vr.get_avg_fps() / 1) # FPS frame_idx = [i for i in range(0, len(vr), sample_fps)] if len(frame_idx)>MAX_NUM_FRAMES: frame_idx = uniform_sample(frame_idx, MAX_NUM_FRAMES) video = vr.get_batch(frame_idx).asnumpy() video = [Image.fromarray(v.astype('uint8')) for v in video] video = [encode_image(v) for v in video] print('video frames:', len(video)) return video def check_mm_type(mm_file): if hasattr(mm_file, 'path'): path = mm_file.path else: path = mm_file.file.path if is_image(path): return "image" if is_video(path): return "video" return None def encode_mm_file(mm_file): if check_mm_type(mm_file) == 'image': return [encode_image(mm_file)] if check_mm_type(mm_file) == 'video': return encode_video(mm_file) return None def make_text(text): #return {"type": "text", "pairs": text} # # For remote call return text def encode_message(_question): files = _question.files question = _question.text pattern = r"\[mm_media\]\d+\[/mm_media\]" matches = re.split(pattern, question) message = [] if len(matches) != len(files) + 1: gr.Warning("Number of Images not match the placeholder in text, please refresh the page to restart!") assert len(matches) == len(files) + 1 text = matches[0].strip() if text: message.append(make_text(text)) for i in range(len(files)): message += encode_mm_file(files[i]) text = matches[i + 1].strip() if text: message.append(make_text(text)) return message def check_has_videos(_question): images_cnt = 0 videos_cnt = 0 for file in _question.files: if check_mm_type(file) == "image": images_cnt += 1 else: videos_cnt += 1 return images_cnt, videos_cnt def count_video_frames(_context): num_frames = 0 for message in _context: for item in message["content"]: #if item["type"] == "image": # For remote call if isinstance(item, Image.Image): num_frames += 1 return num_frames def request(_question, _chat_bot, _app_cfg): images_cnt = _app_cfg['images_cnt'] videos_cnt = _app_cfg['videos_cnt'] files_cnts = check_has_videos(_question) if files_cnts[1] + videos_cnt > 1 or (files_cnts[1] + videos_cnt == 1 and files_cnts[0] + images_cnt > 0): gr.Warning("Only supports single video file input right now!") return _question, _chat_bot, _app_cfg if files_cnts[1] + videos_cnt + files_cnts[0] + images_cnt <= 0: gr.Warning("Please chat with at least one image or video.") return _question, _chat_bot, _app_cfg _chat_bot.append((_question, None)) images_cnt += files_cnts[0] videos_cnt += files_cnts[1] _app_cfg['images_cnt'] = images_cnt _app_cfg['videos_cnt'] = videos_cnt upload_image_disabled = videos_cnt > 0 upload_video_disabled = videos_cnt > 0 or images_cnt > 0 return create_multimodal_input(upload_image_disabled, upload_video_disabled), _chat_bot, _app_cfg def respond(_chat_bot, _app_cfg, params_form): if len(_app_cfg) == 0: yield (_chat_bot, _app_cfg) elif _app_cfg['images_cnt'] == 0 and _app_cfg['videos_cnt'] == 0: yield(_chat_bot, _app_cfg) else: _question = _chat_bot[-1][0] _context = _app_cfg['ctx'].copy() _context.append({'role': 'user', 'content': encode_message(_question)}) videos_cnt = _app_cfg['videos_cnt'] if params_form == 'Beam Search': params = { 'sampling': False, 'stream': False, 'num_beams': 3, 'repetition_penalty': 1.2, "max_new_tokens": 2048 } else: params = { 'sampling': True, 'stream': True, 'top_p': 0.8, 'top_k': 100, 'temperature': 0.7, 'repetition_penalty': 1.05, "max_new_tokens": 2048 } params["max_inp_length"] = 4352 # 4096+256 if videos_cnt > 0: #params["max_inp_length"] = 4352 # 4096+256 params["use_image_id"] = False params["max_slice_nums"] = 1 if count_video_frames(_context) > 16 else 2 gen = chat("", _context, None, params) _context.append({"role": "assistant", "content": [""]}) _chat_bot[-1][1] = "" for _char in gen: _chat_bot[-1][1] += _char _context[-1]["content"][0] += _char yield (_chat_bot, _app_cfg) _app_cfg['ctx']=_context yield (_chat_bot, _app_cfg) def fewshot_add_demonstration(_image, _user_message, _assistant_message, _chat_bot, _app_cfg): ctx = _app_cfg["ctx"] message_item = [] if _image is not None: image = Image.open(_image).convert("RGB") ctx.append({"role": "user", "content": [encode_image(image), make_text(_user_message)]}) message_item.append({"text": "[mm_media]1[/mm_media]" + _user_message, "files": [_image]}) _app_cfg["images_cnt"] += 1 else: if _user_message: ctx.append({"role": "user", "content": [make_text(_user_message)]}) message_item.append({"text": _user_message, "files": []}) else: message_item.append(None) if _assistant_message: ctx.append({"role": "assistant", "content": [make_text(_assistant_message)]}) message_item.append({"text": _assistant_message, "files": []}) else: message_item.append(None) _chat_bot.append(message_item) return None, "", "", _chat_bot, _app_cfg def fewshot_request(_image, _user_message, _chat_bot, _app_cfg): if _app_cfg["images_cnt"] == 0 and not _image: gr.Warning("Please chat with at least one image.") return None, '', '', _chat_bot, _app_cfg if _image: _chat_bot.append([ {"text": "[mm_media]1[/mm_media]" + _user_message, "files": [_image]}, "" ]) _app_cfg["images_cnt"] += 1 else: _chat_bot.append([ {"text": _user_message, "files": [_image]}, "" ]) return None, '', '', _chat_bot, _app_cfg def regenerate_button_clicked(_chat_bot, _app_cfg): if len(_chat_bot) <= 1 or not _chat_bot[-1][1]: gr.Warning('No question for regeneration.') return None, None, '', '', _chat_bot, _app_cfg if _app_cfg["chat_type"] == "Chat": images_cnt = _app_cfg['images_cnt'] videos_cnt = _app_cfg['videos_cnt'] _question = _chat_bot[-1][0] _chat_bot = _chat_bot[:-1] _app_cfg['ctx'] = _app_cfg['ctx'][:-2] files_cnts = check_has_videos(_question) images_cnt -= files_cnts[0] videos_cnt -= files_cnts[1] _app_cfg['images_cnt'] = images_cnt _app_cfg['videos_cnt'] = videos_cnt _question, _chat_bot, _app_cfg = request(_question, _chat_bot, _app_cfg) return _question, None, '', '', _chat_bot, _app_cfg else: last_message = _chat_bot[-1][0] last_image = None last_user_message = '' if last_message.text: last_user_message = last_message.text if last_message.files: last_image = last_message.files[0].file.path _chat_bot[-1][1] = "" _app_cfg['ctx'] = _app_cfg['ctx'][:-2] return _question, None, '', '', _chat_bot, _app_cfg def flushed(): return gr.update(interactive=True) def clear(txt_message, chat_bot, app_session): txt_message.files.clear() txt_message.text = '' chat_bot = copy.deepcopy(init_conversation) app_session['sts'] = None app_session['ctx'] = [] app_session['images_cnt'] = 0 app_session['videos_cnt'] = 0 return create_multimodal_input(), chat_bot, app_session, None, '', '' def select_chat_type(_tab, _app_cfg): _app_cfg["chat_type"] = _tab return _app_cfg init_conversation = [ [ None, { # The first message of bot closes the typewriter. "text": "You can talk to me now", "flushing": False } ], ] css = """ .example label { font-size: 16px;} """ introduction = """ ## Features: 1. Chat with single image 2. Chat with multiple images 3. Chat with video 4. In-context few-shot learning Click `How to use` tab to see examples. """ with gr.Blocks(css=css) as demo: with gr.Tab(model_name): with gr.Row(): with gr.Column(scale=1, min_width=300): gr.Markdown(value=introduction) params_form = create_component(form_radio, comp='Radio') regenerate = create_component({'value': 'Regenerate'}, comp='Button') clear_button = create_component({'value': 'Clear History'}, comp='Button') with gr.Column(scale=3, min_width=500): app_session = gr.State({'sts':None,'ctx':[], 'images_cnt': 0, 'videos_cnt': 0, 'chat_type': 'Chat'}) chat_bot = mgr.Chatbot(label=f"Chat with {model_name}", value=copy.deepcopy(init_conversation), height=600, flushing=False, bubble_full_width=False) with gr.Tab("Chat") as chat_tab: txt_message = create_multimodal_input() chat_tab_label = gr.Textbox(value="Chat", interactive=False, visible=False) txt_message.submit( request, [txt_message, chat_bot, app_session], [txt_message, chat_bot, app_session] ).then( respond, [chat_bot, app_session, params_form], [chat_bot, app_session] ) with gr.Tab("Few Shot") as fewshot_tab: fewshot_tab_label = gr.Textbox(value="Few Shot", interactive=False, visible=False) with gr.Row(): with gr.Column(scale=1): image_input = gr.Image(type="filepath", sources=["upload"]) with gr.Column(scale=3): user_message = gr.Textbox(label="User") assistant_message = gr.Textbox(label="Assistant") with gr.Row(): add_demonstration_button = gr.Button("Add Example") generate_button = gr.Button(value="Generate", variant="primary") add_demonstration_button.click( fewshot_add_demonstration, [image_input, user_message, assistant_message, chat_bot, app_session], [image_input, user_message, assistant_message, chat_bot, app_session] ) generate_button.click( fewshot_request, [image_input, user_message, chat_bot, app_session], [image_input, user_message, assistant_message, chat_bot, app_session] ).then( respond, [chat_bot, app_session, params_form], [chat_bot, app_session] ) chat_tab.select( select_chat_type, [chat_tab_label, app_session], [app_session] ) chat_tab.select( # do clear clear, [txt_message, chat_bot, app_session], [txt_message, chat_bot, app_session, image_input, user_message, assistant_message] ) fewshot_tab.select( select_chat_type, [fewshot_tab_label, app_session], [app_session] ) fewshot_tab.select( # do clear clear, [txt_message, chat_bot, app_session], [txt_message, chat_bot, app_session, image_input, user_message, assistant_message] ) chat_bot.flushed( flushed, outputs=[txt_message] ) regenerate.click( regenerate_button_clicked, [chat_bot, app_session], [txt_message, image_input, user_message, assistant_message, chat_bot, app_session] ).then( respond, [chat_bot, app_session, params_form], [chat_bot, app_session] ) clear_button.click( clear, [txt_message, chat_bot, app_session], [txt_message, chat_bot, app_session, image_input, user_message, assistant_message] ) with gr.Tab("How to use"): with gr.Column(): with gr.Row(): image_example = gr.Image(value="http://thunlp.oss-cn-qingdao.aliyuncs.com/multi_modal/never_delete/m_bear2.gif", label='1. Chat with single or multiple images', interactive=False, width=400, elem_classes="example") example2 = gr.Image(value="http://thunlp.oss-cn-qingdao.aliyuncs.com/multi_modal/never_delete/video2.gif", label='2. Chat with video', interactive=False, width=400, elem_classes="example") example3 = gr.Image(value="http://thunlp.oss-cn-qingdao.aliyuncs.com/multi_modal/never_delete/fshot.gif", label='3. Few shot', interactive=False, width=400, elem_classes="example") # launch #demo.launch(share=False, debug=True, show_api=False, server_port=8885, server_name="0.0.0.0") demo.queue() demo.launch(show_api=False)