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| import numpy as np | |
| import os | |
| import re | |
| import datetime | |
| import time | |
| import openai, tenacity | |
| import argparse | |
| import configparser | |
| import json | |
| import tiktoken | |
| from get_paper_from_pdf import Paper | |
| import gradio | |
| # 定义Reviewer类 | |
| class Reviewer: | |
| # 初始化方法,设置属性 | |
| def __init__(self, api, review_format, paper_pdf, language): | |
| self.api = api | |
| self.review_format = review_format | |
| self.language = language | |
| self.max_token_num = 4096 | |
| self.encoding = tiktoken.get_encoding("gpt2") | |
| def review_by_chatgpt(self, paper_list): | |
| for paper_index, paper in enumerate(paper_list): | |
| sections_of_interest = self.stage_1(paper) | |
| # extract the essential parts of the paper | |
| text = '' | |
| try: | |
| text += 'Title:' + paper.title + '. ' | |
| text += 'Abstract: ' + paper.section_texts['Abstract'] | |
| except: | |
| pass | |
| intro_title = next((item for item in paper.section_names if 'ntroduction' in item.lower()), None) | |
| if intro_title is not None: | |
| text += 'Introduction: ' + paper.section_texts[intro_title] | |
| # Similar for conclusion section | |
| conclusion_title = next((item for item in paper.section_names if 'onclusion' in item), None) | |
| if conclusion_title is not None: | |
| text += 'Conclusion: ' + paper.section_texts[conclusion_title] | |
| for heading in sections_of_interest: | |
| if heading in paper.section_names: | |
| text += heading + ': ' + paper.section_texts[heading] | |
| chat_review_text, total_token_used = self.chat_review(text=text) | |
| return chat_review_text, total_token_used | |
| def stage_1(self, paper): | |
| htmls = [] | |
| text = '' | |
| paper_Abstract = 'Abstract' | |
| try: | |
| text += 'Title:' + paper.title + '. ' | |
| paper_Abstract = paper.section_texts['Abstract'] | |
| except: | |
| pass | |
| text += 'Abstract: ' + paper_Abstract | |
| openai.api_key = self.api | |
| messages = [ | |
| {"role": "system", | |
| "content": f"You are a professional reviewer. " | |
| f"I will give you a paper. You need to review this paper and discuss the novelty and originality of ideas, correctness, clarity, the significance of results, potential impact and quality of the presentation. " | |
| f"Due to the length limitations, I am only allowed to provide you the abstract, introduction, conclusion and at most two sections of this paper." | |
| f"Now I will give you the title and abstract and the headings of potential sections. " | |
| f"You need to reply at most two headings. Then I will further provide you the full information, includes aforementioned sections and at most two sections you called for.\n\n" | |
| f"Title: {paper.title}\n\n" | |
| f"Abstract: {paper_Abstract}\n\n" | |
| f"Potential Sections: {paper.section_names[2:-1]}\n\n" | |
| f"Follow the following format to output your choice of sections:" | |
| f"{{chosen section 1}}, {{chosen section 2}}\n\n"}, | |
| {"role": "user", "content": text}, | |
| ] | |
| response = openai.ChatCompletion.create( | |
| model="gpt-3.5-turbo", | |
| messages=messages, | |
| ) | |
| result = '' | |
| for choice in response.choices: | |
| result += choice.message.content | |
| # print(result) | |
| return result.split(',') | |
| def chat_review(self, text): | |
| openai.api_key = self.api # 读取api | |
| review_prompt_token = 1000 | |
| text_token = len(self.encoding.encode(text)) | |
| input_text_index = int(len(text)*(self.max_token_num-review_prompt_token)/text_token) | |
| input_text = "This is the paper for your review:" + text[:input_text_index] | |
| messages=[ | |
| {"role": "system", "content": "You are a professional reviewer. Now I will give you a paper. You need to give a complete review opinion according to the following requirements and format:"+ self.review_format +" Must be output in {}.".format(self.language)}, | |
| {"role": "user", "content": input_text}, | |
| ] | |
| response = openai.ChatCompletion.create( | |
| model="gpt-3.5-turbo", | |
| messages=messages, | |
| ) | |
| result = '' | |
| for choice in response.choices: | |
| result += choice.message.content | |
| print("********"*10) | |
| print(result) | |
| print("********"*10) | |
| print("prompt_token_used:", response.usage.prompt_tokens) | |
| print("completion_token_used:", response.usage.completion_tokens) | |
| print("total_token_used:", response.usage.total_tokens) | |
| print("response_time:", response.response_ms/1000.0, 's') | |
| return result, response.usage.total_tokens | |
| def main(api, review_format, paper_pdf, language): | |
| start_time = time.time() | |
| if not api or not review_format or not paper_pdf: | |
| return "请输入完整内容!" | |
| # 判断PDF文件 | |
| else: | |
| paper_list = [Paper(path=paper_pdf)] | |
| # 创建一个Reader对象 | |
| reviewer1 = Reviewer(api, review_format, paper_pdf, language) | |
| # 开始判断是路径还是文件: | |
| comments, total_token_used = reviewer1.review_by_chatgpt(paper_list=paper_list) | |
| time_used = time.time() - start_time | |
| output2 ="使用token数:"+ str(total_token_used)+"\n花费时间:"+ str(round(time_used, 2)) +"秒" | |
| return comments, output2 | |
| ######################################################################################################## | |
| # 标题 | |
| title = "🤖ChatReviewer🤖" | |
| # 描述 | |
| description = '''<div align='left'> | |
| <img align='right' src='http://i.imgtg.com/2023/03/22/94PLN.png' width="270"> | |
| <strong>ChatReviewer是一款基于ChatGPT-3.5的API开发的论文自动评审AI助手。</strong>其用途如下: | |
| ⭐️对论文进行快速总结和评审,提高科研人员的文献阅读和理解的效率,紧跟研究前沿。 | |
| ⭐️对自己的论文进行评审,根据ChatReviewer生成的审稿意见进行查漏补缺,进一步提高自己的论文质量。 | |
| ⭐️辅助论文审稿,给出参考意见,提高审稿效率和质量。(🈲:禁止直接复制生成的评论用于任何论文审稿工作!) | |
| 如果觉得很卡,可以点击右上角的Duplicate this Space,把ChatReviewer复制到你自己的Space中! | |
| 本项目的[Github](https://github.com/nishiwen1214/ChatReviewer),欢迎Star和Fork,也欢迎大佬赞助让本项目快速成长!💗([获取Api Key](https://chatgpt.cn.obiscr.com/blog/posts/2023/How-to-get-api-key/)) | |
| </div> | |
| ''' | |
| # 创建Gradio界面 | |
| inp = [gradio.inputs.Textbox(label="请输入你的API-key(sk开头的字符串)", | |
| default="", | |
| type='password'), | |
| gradio.inputs.Textbox(lines=5, | |
| label="请输入特定的评审要求和格式(否则为默认格式)", | |
| default="""* Overall Review | |
| Please briefly summarize the main points and contributions of this paper. | |
| xxx | |
| * Paper Strength | |
| Please provide a list of the strengths of this paper, including but not limited to: innovative and practical methodology, insightful empirical findings or in-depth theoretical analysis, | |
| well-structured review of relevant literature, and any other factors that may make the paper valuable to readers. (Maximum length: 2,000 characters) | |
| (1) xxx | |
| (2) xxx | |
| (3) xxx | |
| * Paper Weakness | |
| Please provide a numbered list of your main concerns regarding this paper (so authors could respond to the concerns individually). | |
| These may include, but are not limited to: inadequate implementation details for reproducing the study, limited evaluation and ablation studies for the proposed method, | |
| correctness of the theoretical analysis or experimental results, lack of comparisons or discussions with widely-known baselines in the field, lack of clarity in exposition, | |
| or any other factors that may impede the reader's understanding or benefit from the paper. Please kindly refrain from providing a general assessment of the paper's novelty without providing detailed explanations. (Maximum length: 2,000 characters) | |
| (1) xxx | |
| (2) xxx | |
| (3) xxx | |
| * Questions To Authors And Suggestions For Rebuttal | |
| Please provide a numbered list of specific and clear questions that pertain to the details of the proposed method, evaluation setting, or additional results that would aid in supporting the authors' claims. | |
| The questions should be formulated in a manner that, after the authors have answered them during the rebuttal, it would enable a more thorough assessment of the paper's quality. (Maximum length: 2,000 characters) | |
| *Overall score (1-10) | |
| The paper is scored on a scale of 1-10, with 10 being the full mark, and 6 stands for borderline accept. Then give the reason for your rating. | |
| xxx""" | |
| ), | |
| gradio.inputs.File(label="请上传论文PDF(必填)"), | |
| gradio.inputs.Radio(choices=["English", "Chinese"], | |
| default="English", | |
| label="选择输出语言"), | |
| ] | |
| chat_reviewer_gui = gradio.Interface(fn=main, | |
| inputs=inp, | |
| outputs = [gradio.Textbox(lines=25, label="评审结果"), gradio.Textbox(lines=2, label="资源统计")], | |
| title=title, | |
| description=description) | |
| # Start server | |
| chat_reviewer_gui .launch(quiet=True, show_api=False) |