Agntic AI for Research Papers
Search and extract information about research papers from arXiv.
MCP Agntic AI for Research Papers
This project implements a chatbot using the Model Context Protocol (MCP) to search and retrieve information about research papers from arXiv. The chatbot allows you to query papers by topic and extract detailed information about specific papers.
Overview
The system consists of two main components:
- Server: A FastMCP server that provides tools for searching arXiv papers and extracting paper information.
- Client: An MCP client that integrates with OpenAI's GPT model to process user queries and interact with the server.
The server stores paper information in JSON files organized by topic, while the client provides an interactive chat interface for users to input queries.
Features
- Search Papers: Search for papers on arXiv by topic, with configurable maximum results.
- Extract Paper Info: Retrieve detailed information (title, authors, summary, PDF URL, publication date) for a specific paper using its arXiv ID.
- Persistent Storage: Paper information is saved in JSON files under a
papersdirectory, organized by topic. - Interactive Chatbot: Users can interact with the chatbot via a command-line interface, with support for natural language queries powered by OpenAI's GPT model.
Requirements
- Python 3.12+
- Dependencies (install via
uvorpip):arxivmcpopenainest-asynciopython-dotenv
- OpenAI API key (stored in
src/keys.json) uv(recommended, for running the server and client)
Installation
- Clone the repository:
git clone
cd - Install dependencies using
uv(recommended):
uv pip install -r pyproject.toml
Or withpip:
pip install -r pyproject.toml - Create a
src/keys.jsonfile with your OpenAI API key:
{
"open_ai_api": "your-openai-api-key"
} - Ensure the MCP server configuration in
src/server_config.jsonis set up correctly:
{
"mcpServers": {
"filesystem": {
"command": "npx",
"args": [
"-y",
"@modelcontextprotocol/server-filesystem",
"."
]
},
"research": {
"command": "uv",
"args": ["run", "research_server.py"]
},
"fetch": {
"command": "uvx",
"args": ["mcp-server-fetch"]
}
}
}
Usage
- Start the MCP server:
uv run src/research_server.py
This runs the server with theresearchconfiguration, providing tools for paper search and extraction. - Run the client in a separate terminal:
uv run main.py
The client connects to the server, initializes the chatbot, and starts the interactive chat loop. - Interact with the chatbot:
- Enter a query like "Search for papers on quantum computing" or "Get info for paper 1234.56789".
- Type 'quit' to exit.
Project Structure
├── papers/ # Directory for storing paper information (auto-created)
├── src/
│ ├── mcp_chatbot.py # MCP client with chatbot implementation
│ ├── research_server.py # FastMCP server with arXiv search tools
│ ├── keys.json # API keys (not tracked in git)
│ ├── server_config.json # MCP server configuration
├── README.md
├── main.py # Entry point
Example Queries
- Search for papers:
Query: Find 3 papers on machine learning
Output: List of paper IDs, with details saved in papers/machine_learning/papers_info.json.
- Extract paper information:
Query: Get info for paper 2103.12345
Output: JSON-formatted paper details (title, authors, summary, etc.) if found.
Notes
- The server creates a
papersdirectory to store JSON files containing paper information, organized by topic (e.g.,papers/quantum_computing/papers_info.json). - The client uses
gpt-4o-miniby default. Update the model insrc/mcp_chatbot.pyif needed. - The system assumes
uvis installed for running scripts. Modify thecommandinserver_config.jsonif using a different tool (e.g.,python).
Future Improvements
- Add support for filtering papers by date, author, or category.
- Implement paper PDF download and storage.
- Enhance the chatbot with more natural language understanding for complex queries.
- Add a web-based UI for better user interaction.
License
This project is licensed under the MIT License. See the LICENSE file for details.
İlgili Sunucular
GeoRanker
Access GeoRanker's SEO and keyword research tools for advanced search engine optimization analysis.
Web Search MCP Server
Free web search using Google search results, no API key required.
Flight Search
Search for flights using the SerpAPI Google Flights engine.
Unreal Engine Knowledge Graph
Search concept relationships in the Unreal Engine official documentation using a Neo4j-powered knowledge graph.
People Data Labs
Access person, company, school, location, job title, and skill data using the People Data Labs API.
Searchcraft
Manage Searchcraft cluster's Documents, Indexes, Federations, Access Keys, and Analytics.
BGPT MCP API
Search scientific papers from any MCP tool. Raw experimental data from full-text papers — methods, results, quality scores. 50 free searches, then $0.01/result.
门店大数据服务
Provides comprehensive offline store information queries, including enterprise restaurant brand store search, offline store search, and restaurant brand store statistics.
VideoSeek
Find anything in any video. Semantic video search, video Q&A, persistent memory, and social media import (TikTok/YouTube/Instagram) for AI agents. 18 MCP tools.
GPT Researcher
Conducts autonomous, in-depth research by exploring and validating multiple sources to provide relevant and up-to-date information.