Paper Search MCP
Search and download academic papers from sources like arXiv, PubMed, and Google Scholar.
Paper Search MCP
A Model Context Protocol (MCP) server for searching and downloading academic papers from multiple sources, including arXiv, PubMed, bioRxiv, and Sci-Hub (optional). Designed for seamless integration with large language models like Claude Desktop.
Table of Contents
Overview
paper-search-mcp is a Python-based MCP server that enables users to search and download academic papers from various platforms. It provides tools for searching papers (e.g., search_arxiv) and downloading PDFs (e.g., download_arxiv), making it ideal for researchers and AI-driven workflows. Built with the MCP Python SDK, it integrates seamlessly with LLM clients like Claude Desktop.
Features
- Multi-Source Support: Search and download papers from arXiv, PubMed, bioRxiv, medRxiv, Google Scholar, IACR ePrint Archive, Semantic Scholar.
- Standardized Output: Papers are returned in a consistent dictionary format via the
Paperclass. - Asynchronous Tools: Efficiently handles network requests using
httpx. - MCP Integration: Compatible with MCP clients for LLM context enhancement.
- Extensible Design: Easily add new academic platforms by extending the
academic_platformsmodule.
Installation
paper-search-mcp can be installed using uv or pip. Below are two approaches: a quick start for immediate use and a detailed setup for development.
Installing via Smithery
To install paper-search-mcp for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @openags/paper-search-mcp --client claude
Quick Start
For users who want to quickly run the server:
-
Install Package:
uv add paper-search-mcp -
Configure Claude Desktop: Add this configuration to
~/Library/Application Support/Claude/claude_desktop_config.json(Mac) or%APPDATA%\Claude\claude_desktop_config.json(Windows):{ "mcpServers": { "paper_search_server": { "command": "uv", "args": [ "run", "--directory", "/path/to/your/paper-search-mcp", "-m", "paper_search_mcp.server" ], "env": { "SEMANTIC_SCHOLAR_API_KEY": "" // Optional: For enhanced Semantic Scholar features } } } }Note: Replace
/path/to/your/paper-search-mcpwith your actual installation path.
For Development
For developers who want to modify the code or contribute:
-
Setup Environment:
# Install uv if not installed curl -LsSf https://astral.sh/uv/install.sh | sh # Clone repository git clone https://github.com/openags/paper-search-mcp.git cd paper-search-mcp # Create and activate virtual environment uv venv source .venv/bin/activate # On Windows: .venv\Scripts\activate -
Install Dependencies:
# Install project in editable mode uv add -e . # Add development dependencies (optional) uv add pytest flake8
Contributing
We welcome contributions! Here's how to get started:
-
Fork the Repository: Click "Fork" on GitHub.
-
Clone and Set Up:
git clone https://github.com/yourusername/paper-search-mcp.git cd paper-search-mcp pip install -e ".[dev]" # Install dev dependencies (if added to pyproject.toml) -
Make Changes:
- Add new platforms in
academic_platforms/. - Update tests in
tests/.
- Add new platforms in
-
Submit a Pull Request: Push changes and create a PR on GitHub.
Demo
TODO
Planned Academic Platforms
- [√] arXiv
- [√] PubMed
- [√] bioRxiv
- [√] medRxiv
- [√] Google Scholar
- [√] IACR ePrint Archive
- [√] Semantic Scholar
- PubMed Central (PMC)
- Science Direct
- Springer Link
- IEEE Xplore
- ACM Digital Library
- Web of Science
- Scopus
- JSTOR
- ResearchGate
- CORE
- Microsoft Academic
License
This project is licensed under the MIT License. See the LICENSE file for details.
Happy researching with paper-search-mcp! If you encounter issues, open a GitHub issue.
Related Servers
MCP Knowledge Base
A knowledge base server that processes local documents (PDF, DOCX, TXT, HTML) and answers questions based on their content using similarity search.
TMDB MCP Server
Access movie information, search, and recommendations from The Movie Database (TMDB) API.
Ollama Deep Researcher
Conducts deep research using local Ollama LLMs, leveraging Tavily and Perplexity for comprehensive search capabilities.
mxHERO Multi-Account Email Search
Search across multiple email accounts using mxHERO's vector search service.
Agently MCP
Discover public A2A agents on the Agently platform using its public API.
Supavec
Fetch relevant embeddings and content from Supavec for AI assistants.
Wolfram Alpha
Access the Wolfram Alpha API for computational knowledge and real-time data.
RSS3
Integrates the RSS3 API to query the Open Web.
Gemini DeepSearch MCP
An automated research agent using Google Gemini models and Google Search to perform deep, multi-step web research.
Unsloth AI Documentation
Search and retrieve content from the Unsloth AI documentation.