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MCP Servers

@pathintegral-institute

About MCP Servers

Open Source MCP Servers for Scientific Research

Basic information

Category

Other

License

MIT

Runtime

python

Transports

stdio

Publisher

pathintegral-institute

Config

Add this server to your MCP-compatible client using the configuration below.

{
  "mcpServers": {
    "mcp-servers": {
      "command": "uvx",
      "args": [
        "mcp-science",
        "web-fetch"
      ]
    }
  }
}

Tools

No tools detected

We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.

Overview

What is MCP Servers?

MCP Servers is a monorepo collection of open-source MCP (Model Context Protocol) servers designed for scientific research applications. They enable AI models to interact with scientific data, tools, and resources through a standardized protocol.

How to use MCP Servers?

Install uv and an MCP‑enabled client (e.g. Claude Desktop, VSCode, Goose, 5ire). Launch any server with uvx mcp-science <server-name> (e.g. uvx mcp-science web-fetch). Optionally use the mcpm tool to automate client configuration.

Key features of MCP Servers

  • Open-source collection built for scientific research
  • Standardized MCP protocol for AI–data integration
  • Single‑command launch via uvx mcp-science
  • Covers materials science, web fetch, Python execution, SSH, DFT, and more
  • Works with multiple MCP‑enabled clients (Claude Desktop, VSCode, Goose, 5ire)
  • Packaged as a Python monorepo on PyPI (mcp-science)

Use cases of MCP Servers

  • Search and visualise materials‑science data from the Materials Project
  • Fetch and summarise web content (HTML, PDF, plain text)
  • Execute Python code in a sandboxed environment for safe analysis
  • Run pre‑validated commands on remote machines over SSH
  • Perform density‑functional‑theory (DFT) calculations via GPAW
  • Interact programmatically with a running Jupyter kernel

FAQ from MCP Servers

What is MCP?

MCP is an open protocol that standardises how applications provide context to LLMs, similar to a USB‑C port for AI. It allows models to integrate with various data sources and tools in a consistent way.

What are the prerequisites for using MCP Servers?

You need uv (a fast Python package manager) and an MCP‑enabled client such as Claude Desktop, VSCode, Goose, or 5ire.

How do I run a server?

Use the command uvx mcp-science <server-name> (e.g. uvx mcp-science web-fetch). This downloads the mcp-science package from PyPI and launches the server.

Can I build my own MCP server?

Yes. The repository includes a step‑by‑step guide under docs/how-to-build-your-own-mcp-server-step-by-step.md and an example server in servers/example-server/.

How can I contribute to MCP Servers?

Fork the repository, create a feature branch, make changes with clear commit messages, update documentation, add tests, and open a pull request. Follow the naming conventions described in the contributing guide.

Comments

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