Skill-to-MCP#
Convert AI Skills (following Claude Skills format) into MCP server resources, making them accessible through the Model Context Protocol.
Part of BioContextAI - A community-driven initiative connecting agentic AI with biomedical resources through standardized MCP servers. While this package is domain-agnostic and can be used for any skill collection, it was developed to support the biomedical research community.
Overview#
This MCP server exposes Claude Skills as resources that can be accessed by LLM applications through the Model Context Protocol. Skills are self-contained directories containing a SKILL.md file with YAML frontmatter, along with supporting files like scripts, references, and examples.
Features#
Automatic skill discovery: Recursively finds all
SKILL.mdfiles in theskills/directoryFrontmatter parsing: Extracts skill metadata (name, description) from YAML frontmatter
Three core tools:
get_available_skills: Lists all available skills with descriptionsget_skill_details: Returns SKILL.md content and file listing for a specific skillget_skill_related_file: Reads any file within a skill directory (with directory traversal protection)
Security: Path validation prevents access outside skill directories
Getting Started#
Please refer to the documentation for comprehensive guides, or jump to:
Configuration - Set up your skills directory
Usage - Learn about the three core tools
Creating Skills - Build your own skills
Installation - Multiple installation options
Quick Links#
Documentation: skill-to-mcp.readthedocs.io
BioContextAI Registry: biocontext.ai/registry
API Reference: API documentation
Source Code: GitHub
Issue Tracker: GitHub Issues
Configuration#
The MCP server requires a skills directory to be specified. This allows you to:
Install the package separately from your skills
Edit skills without modifying the package
Use different skill collections for different projects
Set the skills directory using either:
Command-line option:
--skills-dir /path/to/skillsEnvironment variable:
SKILLS_DIR=/path/to/skills
Example Configuration for MCP Clients#
{
"mcpServers": {
"skill-to-mcp": {
"command": "uvx",
"args": ["skill_to_mcp", "--skills-dir", "/path/to/your/skills"],
"env": {
"UV_PYTHON": "3.12"
}
}
}
}
Or using environment variables:
{
"mcpServers": {
"skill-to-mcp": {
"command": "uvx",
"args": ["skill_to_mcp"],
"env": {
"UV_PYTHON": "3.12",
"SKILLS_DIR": "/path/to/your/skills"
}
}
}
}
Usage#
Once configured in your MCP client, the server provides three tools:
get_available_skills#
Returns a list of all available skills with metadata:
[
{
"name": "single-cell-rna-qc",
"description": "Performs quality control on single-cell RNA-seq data...",
"path": "/path/to/skills/single-cell-rna-qc"
}
]
get_skill_details#
Returns the full SKILL.md content and list of files for a specific skill:
{
"skill_content": "---\nname: single-cell-rna-qc\n...",
"files": ["SKILL.md", "scripts/qc_analysis.py", "references/guidelines.md"]
}
The return_type parameter controls what data is returned:
"content": Returns only the SKILL.md content as text"file_path": Returns only the absolute path to SKILL.md"both"(default): Returns both content and file path in a dict
Example Configurations#
Claude Desktop Configuration#
Add to your claude_desktop_config.json:
{
"mcpServers": {
"biomedical-skills": {
"command": "uvx",
"args": [
"skill_to_mcp",
"--skills-dir",
"/Users/yourname/biomedical-skills"
],
"env": {
"UV_PYTHON": "3.12"
}
}
}
}
Multiple Skill Collections#
You can run multiple instances with different skill directories:
{
"mcpServers": {
"biomedical-skills": {
"command": "uvx",
"args": ["skill_to_mcp", "--skills-dir", "/path/to/biomedical-skills"]
},
"data-science-skills": {
"command": "uvx",
"args": ["skill_to_mcp", "--skills-dir", "/path/to/data-science-skills"]
}
}
}
Creating Skills#
Skills should be placed in your configured skills directory. Each skill must:
Have its own subdirectory
Contain a
SKILL.mdfile with YAML frontmatterFollow the frontmatter format:
---
name: my-skill-name
description: Brief description of what this skill does and when to use it
---
# Skill Content
Instructions and documentation go here...
Skill Naming Requirements#
Use lowercase letters, numbers, and hyphens only
Maximum 64 characters
No XML tags or reserved words
See the included example skills/single-cell-rna-qc/SKILL.md for a complete reference.
Example Skills Directory Structure#
my-skills/
├── skill-1/
│ ├── SKILL.md
│ ├── scripts/
│ └── references/
├── skill-2/
│ ├── SKILL.md
│ └── data/
└── skill-3/
└── SKILL.md
Installation#
You need to have Python 3.11 or newer installed on your system. If you don’t have Python installed, we recommend installing uv.
There are several alternative options to install skill-to-mcp:
Use
uvxto run it immediately (requires SKILLS_DIR environment variable):
SKILLS_DIR=/path/to/skills uvx skill_to_mcp
Or with the command-line option:
uvx skill_to_mcp --skills-dir /path/to/skills
Include it in various MCP clients that support the
mcp.jsonstandard:
{
"mcpServers": {
"skill-to-mcp": {
"command": "uvx",
"args": ["skill_to_mcp", "--skills-dir", "/path/to/your/skills"],
"env": {
"UV_PYTHON": "3.12"
}
}
}
}
Install it through
pip:
pip install --user skill_to_mcp
Install the latest development version:
pip install git+https://github.com/biocontext-ai/skill-to-mcp.git@main
Deployment Options#
Local Development#
For development and testing:
# Using uvx (recommended)
SKILLS_DIR=/path/to/skills uvx skill_to_mcp
# Using pip
pip install skill_to_mcp
skill_to_mcp --skills-dir /path/to/skills
Production Deployment#
For production environments with HTTP transport:
export MCP_ENVIRONMENT=PRODUCTION
export SKILLS_DIR=/path/to/skills
export MCP_TRANSPORT=http
export MCP_PORT=8000
skill_to_mcp
Docker Deployment#
Create a Dockerfile:
FROM python:3.12-slim
WORKDIR /app
RUN pip install skill_to_mcp
COPY skills /app/skills
ENV SKILLS_DIR=/app/skills
ENV MCP_TRANSPORT=http
ENV MCP_PORT=8000
CMD ["skill_to_mcp"]
Build and run:
docker build -t skill-to-mcp .
docker run -p 8000:8000 skill-to-mcp
About BioContextAI#
BioContextAI is a community effort to connect agentic artificial intelligence with biomedical resources using the Model Context Protocol. The Registry is a community-driven catalog of MCP servers for biomedical research, enabling researchers and developers to discover, access, and contribute specialized tools and databases.
Key Principles:
FAIR4RS Compliant: Findable, Accessible, Interoperable, Reusable for Research Software
Community-Driven: Open-source and collaborative development
Standardized: Built on the Model Context Protocol specification
Contributing#
Contributions are welcome! See CONTRIBUTING.md for guidelines on:
Development setup
Code style requirements
Testing procedures
Pull request process
To contribute skills to the biomedical community, consider adding them to the BioContextAI Registry.
Contact#
If you found a bug, please use the issue tracker.
For questions about BioContextAI or the registry, visit biocontext.ai.
Citation#
If you use this software in your research, please cite the BioContextAI paper:
@article{BioContext_AI_Kuehl_Schaub_2025,
title={BioContextAI is a community hub for agentic biomedical systems},
url={http://dx.doi.org/10.1038/s41587-025-02900-9},
urldate = {2025-11-06},
doi={10.1038/s41587-025-02900-9},
year = {2025},
month = nov,
journal={Nature Biotechnology},
publisher={Springer Science and Business Media LLC},
author={Kuehl, Malte and Schaub, Darius P. and Carli, Francesco and Heumos, Lukas and Hellmig, Malte and Fernández-Zapata, Camila and Kaiser, Nico and Schaul, Jonathan and Kulaga, Anton and Usanov, Nikolay and Koutrouli, Mikaela and Ergen, Can and Palla, Giovanni and Krebs, Christian F. and Panzer, Ulf and Bonn, Stefan and Lobentanzer, Sebastian and Saez-Rodriguez, Julio and Puelles, Victor G.},
year={2025},
month=nov,
language={en},
}
Acknowledgments#
Example Skill: The included
single-cell-rna-qcskill is adapted from Anthropic’s Life Sciences repositoryAnthropic: For developing Claude Skills and the Model Context Protocol
scverse®: The scverse community (scverse.org) for best practices in single-cell analysis
BioContextAI Community: For fostering open-source biomedical AI infrastructure
License#
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
Note: While this software is open-source, individual skills may have their own licenses. Users are responsible for compliance with the licenses of any skills they use or distribute.
API Documentation