ChatReviewer / chat_reviewer.py
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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
# 定义Reviewer类
class Reviewer:
# 初始化方法,设置属性
def __init__(self, args=None):
if args.language == 'en':
self.language = 'English'
elif args.language == 'zh':
self.language = 'Chinese'
else:
self.language = 'Chinese'
# 创建一个ConfigParser对象
self.config = configparser.ConfigParser()
# 读取配置文件
self.config.read('apikey.ini')
# 获取某个键对应的值
self.chat_api_list = self.config.get('OpenAI', 'OPENAI_API_KEYS')[1:-1].replace('\'', '').split(',')
self.chat_api_list = [api.strip() for api in self.chat_api_list if len(api) > 5]
self.cur_api = 0
self.file_format = args.file_format
self.max_token_num = 4096
self.encoding = tiktoken.get_encoding("gpt2")
def validateTitle(self, title):
# 修正论文的路径格式
rstr = r"[\/\\\:\*\?\"\<\>\|]" # '/ \ : * ? " < > |'
new_title = re.sub(rstr, "_", title) # 替换为下划线
return new_title
def review_by_chatgpt(self, paper_list):
htmls = []
for paper_index, paper in enumerate(paper_list):
sections_of_interest = self.stage_1(paper)
# extract the essential parts of the paper
text = ''
text += 'Title:' + paper.title + '. '
text += 'Abstract: ' + paper.section_texts['Abstract']
intro_title = next((item for item in paper.section_names if 'ntroduction' in item), 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 = self.chat_review(text=text)
htmls.append('## Paper:' + str(paper_index+1))
htmls.append('\n\n\n')
htmls.append(chat_review_text)
# 将审稿意见保存起来
date_str = str(datetime.datetime.now())[:13].replace(' ', '-')
try:
export_path = os.path.join('./', 'output_file')
os.makedirs(export_path)
except:
pass
mode = 'w' if paper_index == 0 else 'a'
file_name = os.path.join(export_path, date_str+'-'+self.validateTitle(paper.title)+"."+self.file_format)
self.export_to_markdown("\n".join(htmls), file_name=file_name, mode=mode)
htmls = []
def stage_1(self, paper):
htmls = []
text = ''
text += 'Title: ' + paper.title + '. '
text += 'Abstract: ' + paper.section_texts['Abstract']
openai.api_key = self.chat_api_list[self.cur_api]
self.cur_api += 1
self.cur_api = 0 if self.cur_api >= len(self.chat_api_list)-1 else self.cur_api
messages = [
{"role": "system",
"content": f"You are a professional reviewer in the field of {args.research_fields}. "
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.section_texts['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(',')
@tenacity.retry(wait=tenacity.wait_exponential(multiplier=1, min=4, max=10),
stop=tenacity.stop_after_attempt(5),
reraise=True)
def chat_review(self, text):
openai.api_key = self.chat_api_list[self.cur_api]
self.cur_api += 1
self.cur_api = 0 if self.cur_api >= len(self.chat_api_list)-1 else self.cur_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]
with open('ReviewFormat.txt', 'r') as file: # 读取特定的审稿格式
review_format = file.read()
messages=[
{"role": "system", "content": "You are a professional reviewer in the field of "+args.research_fields+". Now I will give you a paper. You need to give a complete review opinion according to the following requirements and format:"+ review_format +" Please answer 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
def export_to_markdown(self, text, file_name, mode='w'):
# 使用markdown模块的convert方法,将文本转换为html格式
# html = markdown.markdown(text)
# 打开一个文件,以写入模式
with open(file_name, mode, encoding="utf-8") as f:
# 将html格式的内容写入文件
f.write(text)
def main(args):
reviewer1 = Reviewer(args=args)
# 开始判断是路径还是文件:
paper_list = []
if args.paper_path.endswith(".pdf"):
paper_list.append(Paper(path=args.paper_path))
else:
for root, dirs, files in os.walk(args.paper_path):
print("root:", root, "dirs:", dirs, 'files:', files) #当前目录路径
for filename in files:
# 如果找到PDF文件,则将其复制到目标文件夹中
if filename.endswith(".pdf"):
paper_list.append(Paper(path=os.path.join(root, filename)))
print("------------------paper_num: {}------------------".format(len(paper_list)))
[print(paper_index, paper_name.path.split('\\')[-1]) for paper_index, paper_name in enumerate(paper_list)]
reviewer1.review_by_chatgpt(paper_list=paper_list)
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument("--paper_path", type=str, default='', help="path of papers")
parser.add_argument("--file_format", type=str, default='txt', help="output file format")
parser.add_argument("--research_fields", type=str, default='computer science, artificial intelligence and reinforcement learning', help="the research fields of paper")
parser.add_argument("--language", type=str, default='en', help="output lauguage, en or zh")
args = parser.parse_args()
start_time = time.time()
main(args=args)
print("review time:", time.time() - start_time)