
arxiv mcp server
A Model Context Protocol server for searching and analyzing arXiv papers
Repository Info
About This Server
A Model Context Protocol server for searching and analyzing arXiv papers
Model Context Protocol (MCP) - This server can be integrated with AI applications to provide additional context and capabilities, enabling enhanced AI interactions and functionality.
Documentation
ArXiv MCP Server
🔍 Enable AI assistants to search and access arXiv papers through a simple MCP interface.
The ArXiv MCP Server provides a bridge between AI assistants and arXiv's research repository through the Model Context Protocol (MCP). It allows AI models to search for papers and access their content in a programmatic way.
🤝 Contribute • 📝 Report Bug
✨ Core Features
- 🔎 Paper Search: Query arXiv papers with filters for date ranges and categories
- 📄 Paper Access: Download and read paper content
- 📋 Paper Listing: View all downloaded papers
- 🗃️ Local Storage: Papers are saved locally for faster access
- 📝 Prompts: A Set of Research Prompts
🚀 Quick Start
Installing via Smithery
To install ArXiv Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install arxiv-mcp-server --client claude
Installing Manually
Install using uv:
uv tool install arxiv-mcp-server
For development:
# Clone and set up development environment
git clone https://github.com/blazickjp/arxiv-mcp-server.git
cd arxiv-mcp-server
# Create and activate virtual environment
uv venv
source .venv/bin/activate
# Install with test dependencies
uv pip install -e ".[test]"
🔌 MCP Integration
Add this configuration to your MCP client config file:
{
"mcpServers": {
"arxiv-mcp-server": {
"command": "uv",
"args": [
"tool",
"run",
"arxiv-mcp-server",
"--storage-path", "/path/to/paper/storage"
]
}
}
}
For Development:
{
"mcpServers": {
"arxiv-mcp-server": {
"command": "uv",
"args": [
"--directory",
"path/to/cloned/arxiv-mcp-server",
"run",
"arxiv-mcp-server",
"--storage-path", "/path/to/paper/storage"
]
}
}
}
💡 Available Tools
The server provides four main tools:
1. Paper Search
Search for papers with optional filters:
result = await call_tool("search_papers", {
"query": "transformer architecture",
"max_results": 10,
"date_from": "2023-01-01",
"categories": ["cs.AI", "cs.LG"]
})
2. Paper Download
Download a paper by its arXiv ID:
result = await call_tool("download_paper", {
"paper_id": "2401.12345"
})
3. List Papers
View all downloaded papers:
result = await call_tool("list_papers", {})
4. Read Paper
Access the content of a downloaded paper:
result = await call_tool("read_paper", {
"paper_id": "2401.12345"
})
📝 Research Prompts
The server offers specialized prompts to help analyze academic papers:
Paper Analysis Prompt
A comprehensive workflow for analyzing academic papers that only requires a paper ID:
result = await call_prompt("deep-paper-analysis", {
"paper_id": "2401.12345"
})
This prompt includes:
- Detailed instructions for using available tools (list_papers, download_paper, read_paper, search_papers)
- A systematic workflow for paper analysis
- Comprehensive analysis structure covering:
- Executive summary
- Research context
- Methodology analysis
- Results evaluation
- Practical and theoretical implications
- Future research directions
- Broader impacts
⚙️ Configuration
Configure through environment variables:
| Variable | Purpose | Default |
|---|---|---|
ARXIV_STORAGE_PATH | Paper storage location | ~/.arxiv-mcp-server/papers |
🧪 Testing
Run the test suite:
python -m pytest
📄 License
Released under the MIT License. See the LICENSE file for details.
Made with ❤️ by the Pearl Labs Team
Quick Start
Clone the repository
git clone https://github.com/blazickjp/arxiv-mcp-serverInstall dependencies
cd arxiv-mcp-server
npm installFollow the documentation
Check the repository's README.md file for specific installation and usage instructions.
Repository Details
Recommended MCP Servers
Discord MCP
Enable AI assistants to seamlessly interact with Discord servers, channels, and messages.
Knit MCP
Connect AI agents to 200+ SaaS applications and automate workflows.
Apify MCP Server
Deploy and interact with Apify actors for web scraping and data extraction.
BrowserStack MCP
BrowserStack MCP Server for automated testing across multiple browsers.
Zapier MCP
A Zapier server that provides automation capabilities for various apps.