#!/usr/bin/env python import gradio as gr from PIL import Image import os import json from model import is_chinese, get_infer_setting, generate_input, chat import torch def generate_text_with_image(input_text, image, history=[], request_data=dict(), is_zh=True): input_para = { "max_length": 2048, "min_length": 50, "temperature": 0.8, "top_p": 0.4, "top_k": 100, "repetition_penalty": 1.2 } input_para.update(request_data) input_data = generate_input(input_text, image, history, input_para, image_is_encoded=False) input_image, gen_kwargs = input_data['input_image'], input_data['gen_kwargs'] with torch.no_grad(): answer, history, _ = chat(None, model, tokenizer, input_text, history=history, image=input_image, \ max_length=gen_kwargs['max_length'], top_p=gen_kwargs['top_p'], \ top_k = gen_kwargs['top_k'], temperature=gen_kwargs['temperature'], english=not is_zh) return answer def request_model(input_text, temperature, top_p, image_prompt, result_previous): result_text = [(ele[0], ele[1]) for ele in result_previous] for i in range(len(result_text)-1, -1, -1): if result_text[i][0] == "" or result_text[i][1] == "": del result_text[i] print(f"history {result_text}") is_zh = is_chinese(input_text) if image_prompt is None: if is_zh: result_text.append((input_text, '图片为空!请上传图片并重试。')) else: result_text.append((input_text, 'Image empty! Please upload a image and retry.')) return input_text, result_text elif input_text == "": result_text.append((input_text, 'Text empty! Please enter text and retry.')) return "", result_text request_para = {"temperature": temperature, "top_p": top_p} image = Image.open(image_prompt) try: answer = generate_text_with_image(input_text, image, result_text.copy(), request_para, is_zh) except Exception as e: print(f"error: {e}") if is_zh: result_text.append((input_text, '超时!请稍等几分钟再重试。')) else: result_text.append((input_text, 'Timeout! Please wait a few minutes and retry.')) return "", result_text result_text.append((input_text, answer)) print(result_text) return "", result_text DESCRIPTION = '''# VisualGLM''' MAINTENANCE_NOTICE1 = 'Hint 1: If the app report "Something went wrong, connection error out", please turn off your proxy and retry.\nHint 2: If you upload a large size of image like 10MB, it may take some time to upload and process. Please be patient and wait.' MAINTENANCE_NOTICE2 = '提示1: 如果应用报了“Something went wrong, connection error out”的错误,请关闭代理并重试。\n提示2: 如果你上传了很大的图片,比如10MB大小,那将需要一些时间来上传和处理,请耐心等待。' NOTES = 'This app is adapted from https://github.com/THUDM/VisualGLM-6B. It would be recommended to check out the repo if you want to see the detail of our model and training process.' def clear_fn(value): return "", [("", "Hi, What do you want to know about this image?")], None def clear_fn2(value): return [("", "Hi, What do you want to know about this image?")] def main(args): gr.close_all() global model, tokenizer model, tokenizer = get_infer_setting(gpu_device=0, quant=args.quant) with gr.Blocks(css='style.css') as demo: gr.Markdown(DESCRIPTION) with gr.Row(): with gr.Column(scale=4.5): with gr.Group(): input_text = gr.Textbox(label='Input Text', placeholder='Please enter text prompt below and press ENTER.') with gr.Row(): run_button = gr.Button('Generate') clear_button = gr.Button('Clear') image_prompt = gr.Image(type="filepath", label="Image Prompt", value=None) with gr.Row(): temperature = gr.Slider(maximum=1, value=0.8, minimum=0, label='Temperature') top_p = gr.Slider(maximum=1, value=0.4, minimum=0, label='Top P') with gr.Group(): with gr.Row(): maintenance_notice = gr.Markdown(MAINTENANCE_NOTICE1) with gr.Column(scale=5.5): result_text = gr.components.Chatbot(label='Multi-round conversation History', value=[("", "Hi, What do you want to know about this image?")]).style(height=550) gr.Markdown(NOTES) print(gr.__version__) run_button.click(fn=request_model,inputs=[input_text, temperature, top_p, image_prompt, result_text], outputs=[input_text, result_text]) input_text.submit(fn=request_model,inputs=[input_text, temperature, top_p, image_prompt, result_text], outputs=[input_text, result_text]) clear_button.click(fn=clear_fn, inputs=clear_button, outputs=[input_text, result_text, image_prompt]) image_prompt.upload(fn=clear_fn2, inputs=clear_button, outputs=[result_text]) image_prompt.clear(fn=clear_fn2, inputs=clear_button, outputs=[result_text]) print(gr.__version__) demo.queue(concurrency_count=10) demo.launch(share=args.share) if __name__ == '__main__': import argparse parser = argparse.ArgumentParser() parser.add_argument("--quant", choices=[8, 4], type=int, default=None) parser.add_argument("--share", action="store_true") args = parser.parse_args() args.share = "True" main(args)