<НА ГЛАВНУЮ

Создание PaperQA2 агента с Google Gemini для анализа научной литературы

'Руководство по созданию агента PaperQA2 с Gemini для поиска, сравнения и цитирования научных работ, с примерами кода и советами по настройке.'

Обзор

В этом руководстве показано, как собрать продвинутый исследовательский агент PaperQA2 на базе Google Gemini для анализа научной литературы. Агент может обрабатывать несколько PDF, извлекать доказательства, отвечать на сложные вопросы, запускать многошаговые анализы и сравнивать публикации.

Настройка и конфигурация

Установите зависимости и сконфигурируйте ключ Gemini — это можно сделать в Google Colab или локальном ноутбуке. Пример ниже показывает установку пакетов и настройку SDK Google Generative AI.

!pip install paper-qa>=5 google-generativeai requests pypdf2 -q
import os
import asyncio
import tempfile
import requests
from pathlib import Path
from paperqa import Settings, ask, agent_query
from paperqa.settings import AgentSettings
import google.generativeai as genai
 
 
GEMINI_API_KEY = "Use Your Own API Key Here"
os.environ["GEMINI_API_KEY"] = GEMINI_API_KEY
 
 
genai.configure(api_key=GEMINI_API_KEY)
print(" Gemini API key configured successfully!")

Скачивание примеров статей

Для демонстрации загружаем несколько известных статей по AI/ML в папку sample_papers, чтобы агент мог индексировать и анализировать документы.

def download_sample_papers():
   """Download sample AI/ML research papers for demonstration"""
   papers = {
       "attention_is_all_you_need.pdf": "https://arxiv.org/pdf/1706.03762.pdf",
       "bert_paper.pdf": "https://arxiv.org/pdf/1810.04805.pdf",
       "gpt3_paper.pdf": "https://arxiv.org/pdf/2005.14165.pdf"
   }
  
   papers_dir = Path("sample_papers")
   papers_dir.mkdir(exist_ok=True)
  
   print(" Downloading sample research papers...")
   for filename, url in papers.items():
       filepath = papers_dir / filename
       if not filepath.exists():
           try:
               response = requests.get(url, stream=True, timeout=30)
               response.raise_for_status()
               with open(filepath, 'wb') as f:
                   for chunk in response.iter_content(chunk_size=8192):
                       f.write(chunk)
               print(f" Downloaded: {filename}")
           except Exception as e:
               print(f" Failed to download {filename}: {e}")
       else:
           print(f" Already exists: {filename}")
  
   return str(papers_dir)
 
 
papers_directory = download_sample_papers()

Создание настроек для Gemini

Определяем оптимальные настройки PaperQA2 для использования Gemini в задачах LLM и эмбеддингов. Настраивайте search_count, evidence_k и параметры парсинга под свою коллекцию документов.

def create_gemini_settings(paper_dir: str, temperature: float = 0.1):
   """Create optimized settings for PaperQA2 with Gemini models"""
  
   return Settings(
       llm="gemini/gemini-1.5-flash",
       summary_llm="gemini/gemini-1.5-flash",
      
       agent=AgentSettings(
           agent_llm="gemini/gemini-1.5-flash",
           search_count=6, 
           timeout=300.0, 
       ),
      
       embedding="gemini/text-embedding-004",
      
       temperature=temperature,
       paper_directory=paper_dir,
      
       answer=dict(
           evidence_k=8,            
           answer_max_sources=4,      
           evidence_summary_length="about 80 words",
           answer_length="about 150 words, but can be longer",
           max_concurrent_requests=2,
       ),
      
       parsing=dict(
           chunk_size=4000,
           overlap=200,
       ),
      
       verbosity=1,
   )

Реализация агента

Класс PaperQAAgent инкапсулирует настройки и предоставляет async-методы для постановки вопросов, многошагового анализа и сравнительных запросов. Он форматирует и выводит ответы с ссылками на источники.

class PaperQAAgent:
   """Advanced AI Agent for scientific literature analysis using PaperQA2"""
  
   def __init__(self, papers_directory: str, temperature: float = 0.1):
       self.settings = create_gemini_settings(papers_directory, temperature)
       self.papers_dir = papers_directory
       print(f" PaperQA Agent initialized with papers from: {papers_directory}")
      
   async def ask_question(self, question: str, use_agent: bool = True):
       """Ask a question about the research papers"""
       print(f"\n Question: {question}")
       print(" Searching through research papers...")
      
       try:
           if use_agent:
               response = await agent_query(query=question, settings=self.settings)
           else:
               response = ask(question, settings=self.settings)
              
           return response
          
       except Exception as e:
           print(f" Error processing question: {e}")
           return None
  
   def display_answer(self, response):
       """Display the answer with formatting"""
       if response is None:
           print(" No response received")
           return
          
       print("\n" + "="*60)
       print(" ANSWER:")
       print("="*60)
      
       answer_text = getattr(response, 'answer', str(response))
       print(f"\n{answer_text}")
      
       contexts = getattr(response, 'contexts', getattr(response, 'context', []))
       if contexts:
           print("\n" + "-"*40)
           print(" SOURCES USED:")
           print("-"*40)
           for i, context in enumerate(contexts[:3], 1):
               context_name = getattr(context, 'name', getattr(context, 'doc', f'Source {i}'))
               context_text = getattr(context, 'text', getattr(context, 'content', str(context)))
               print(f"\n{i}. {context_name}")
               print(f"   Text preview: {context_text[:150]}...")
  
   async def multi_question_analysis(self, questions: list):
       """Analyze multiple questions in sequence"""
       results = {}
       for i, question in enumerate(questions, 1):
           print(f"\n Processing question {i}/{len(questions)}")
           response = await self.ask_question(question)
           results = response
          
           if response:
               print(f" Completed: {question[:50]}...")
           else:
               print(f" Failed: {question[:50]}...")
              
       return results
  
   async def comparative_analysis(self, topic: str):
       """Perform comparative analysis across papers"""
       questions = [
           f"What are the key innovations in {topic}?",
           f"What are the limitations of current {topic} approaches?",
           f"What future research directions are suggested for {topic}?",
       ]
      
       print(f"\n Starting comparative analysis on: {topic}")
       return await self.multi_question_analysis(questions)

Демонстрации и рабочие сценарии

В руководстве приведены базовая демонстрация, продвинутый многошаговый анализ и сравнительный анализ, показывающие типичные исследовательские задачи.

async def basic_demo():
   """Demonstrate basic PaperQA functionality"""
   agent = PaperQAAgent(papers_directory)
  
   question = "What is the transformer architecture and why is it important?"
   response = await agent.ask_question(question)
   agent.display_answer(response)
 
 
print(" Running basic demonstration...")
await basic_demo()
 
 
async def advanced_demo():
   """Demonstrate advanced multi-question analysis"""
   agent = PaperQAAgent(papers_directory, temperature=0.2)
  
   questions = [
       "How do attention mechanisms work in transformers?",
       "What are the computational challenges of large language models?",
       "How has pre-training evolved in natural language processing?"
   ]
  
   print(" Running advanced multi-question analysis...")
   results = await agent.multi_question_analysis(questions)
  
   for question, response in results.items():
       print(f"\n{'='*80}")
       print(f"Q: {question}")
       print('='*80)
       if response:
           answer_text = getattr(response, 'answer', str(response))
           display_text = answer_text[:300] + "..." if len(answer_text) > 300 else answer_text
           print(display_text)
       else:
           print(" No answer available")
 
 
print("\n Running advanced demonstration...")
await advanced_demo()
 
 
async def research_comparison_demo():
   """Demonstrate comparative research analysis"""
   agent = PaperQAAgent(papers_directory)
  
   results = await agent.comparative_analysis("attention mechanisms in neural networks")
  
   print("\n" + "="*80)
   print(" COMPARATIVE ANALYSIS RESULTS")
   print("="*80)
  
   for question, response in results.items():
       print(f"\n {question}")
       print("-" * 50)
       if response:
           answer_text = getattr(response, 'answer', str(response))
           print(answer_text)
       else:
           print(" Analysis unavailable")
       print()
 
 
print(" Running comparative research analysis...")
await research_comparison_demo()

Интерактивный агент и утилиты

Интерактивный помощник позволяет задавать вопросы на лету и по желанию выводить источники. Руководство также содержит советы по использованию и функцию сохранения результатов.

def create_interactive_agent():
   """Create an interactive agent for custom queries"""
   agent = PaperQAAgent(papers_directory)
  
   async def query(question: str, show_sources: bool = True):
       """Interactive query function"""
       response = await agent.ask_question(question)
      
       if response:
           answer_text = getattr(response, 'answer', str(response))
           print(f"\n Answer:\n{answer_text}")
          
           if show_sources:
               contexts = getattr(response, 'contexts', getattr(response, 'context', []))
               if contexts:
                   print(f"\n Based on {len(contexts)} sources:")
                   for i, ctx in enumerate(contexts[:3], 1):
                       ctx_name = getattr(ctx, 'name', getattr(ctx, 'doc', f'Source {i}'))
                       print(f"  {i}. {ctx_name}")
       else:
           print(" Sorry, I couldn't find an answer to that question.")
          
       return response
  
   return query
 
 
interactive_query = create_interactive_agent()
 
 
print("\n Interactive agent ready! You can now ask custom questions:")
print("Example: await interactive_query('How do transformers handle long sequences?')")
 
 
def print_usage_tips():
   """Print helpful usage tips"""
   tips = """
    USAGE TIPS FOR PAPERQA2 WITH GEMINI:
  
   1.  Question Formulation:
      - Be specific about what you want to know
      - Ask about comparisons, mechanisms, or implications
      - Use domain-specific terminology
  
   2.  Model Configuration:
      - Gemini 1.5 Flash is free and reliable
      - Adjust temperature (0.0-1.0) for creativity vs precision
      - Use smaller chunk_size for better processing
  
   3.  Document Management:
      - Add PDFs to the papers directory
      - Use meaningful filenames
      - Mix different types of papers for better coverage
  
   4.  Performance Optimization:
      - Limit concurrent requests for free tier
      - Use smaller evidence_k values for faster responses
      - Cache results by saving the agent state
  
   5.  Advanced Usage:
      - Chain multiple questions for deeper analysis
      - Use comparative analysis for research reviews
      - Combine with other tools for complete workflows
  
    Example Questions to Try:
   - "Compare the attention mechanisms in BERT vs GPT models"
   - "What are the computational bottlenecks in transformer training?"
   - "How has pre-training evolved from word2vec to modern LLMs?"
   - "What are the key innovations that made transformers successful?"
   """
   print(tips)
 
 
print_usage_tips()
 
 
def save_analysis_results(results: dict, filename: str = "paperqa_analysis.txt"):
   """Save analysis results to a file"""
   with open(filename, 'w', encoding='utf-8') as f:
       f.write("PaperQA2 Analysis Results\n")
       f.write("=" * 50 + "\n\n")
      
       for question, response in results.items():
           f.write(f"Question: {question}\n")
           f.write("-" * 30 + "\n")
           if response:
               answer_text = getattr(response, 'answer', str(response))
               f.write(f"Answer: {answer_text}\n")
              
               contexts = getattr(response, 'contexts', getattr(response, 'context', []))
               if contexts:
                   f.write(f"\nSources ({len(contexts)}):\n")
                   for i, ctx in enumerate(contexts, 1):
                       ctx_name = getattr(ctx, 'name', getattr(ctx, 'doc', f'Source {i}'))
                       f.write(f"  {i}. {ctx_name}\n")
           else:
               f.write("Answer: No response available\n")
           f.write("\n" + "="*50 + "\n\n")
  
   print(f" Results saved to: {filename}")
 
 
print(" Tutorial complete! You now have a fully functional PaperQA2 AI Agent with Gemini.")

Итог

После выполнения шагов у вас будет рабочий агент для интерактивного исследования статей: индексация PDF, извлечение доказательств и ответы с указанием источников. Настраивайте параметры и коллекции документов для улучшения качества и производительности.

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