OpenStreetMap Tagging Schema MCP Server
Provides AI agents access to OpenStreetMap's comprehensive tagging knowledge base, enabling tag queries, preset discovery, and validation of OSM tags for mapping applications.
README
OpenStreetMap Tagging Schema MCP Server
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What is this?
This is a Model Context Protocol (MCP) server designed specifically for AI agents and LLM applications. It acts as a bridge between artificial intelligence systems and the comprehensive OpenStreetMap tagging knowledge base provided by the official @openstreetmap/id-tagging-schema library.
Current Status: Production-ready MCP server, actively maintained and continuously improved. The service is deployed and accessible at https://mcp.gander.tools/osm-tagging/.
We welcome your feedback! Have ideas for improvements? Found a bug? Want to discuss features? Please open an issue or start a discussion.
What this is NOT
ā ļø Important clarifications:
- Not a standalone application: This server requires integration with AI systems (like Claude Code or Claude Desktop) to be useful. It has no user interface or web frontend.
- Not for direct human use: Without an AI agent as an intermediary, this tool provides no value to end users. It's designed exclusively for programmatic access by LLM applications.
- Not a public API for general use: The deployed service at mcp.gander.tools is intended for integration with AI agents, not for direct HTTP requests or high-volume automated queries. Please do not attempt to abuse the service with DDoS attacks or excessive traffic.
If you're looking for a user-facing OSM tagging tool, consider iD editor or JOSM instead.
Features
7 MCP Tools organized into 3 categories:
- Tag Query (2 tools): Query tag values and search tags
- Preset Discovery (2 tools): Search and explore OSM presets with detailed configurations
- Validation (3 tools): Validate tags, check for deprecated tags, suggest improvements
š Full tool reference: docs/api/
Installation
Using npx (Recommended)
# No installation needed - run directly
npx @gander-tools/osm-tagging-schema-mcp
Using Docker
# Run with stdio transport
docker run -i ghcr.io/gander-tools/osm-tagging-schema-mcp:latest
š More options: docs/user/installation.md (source installation, verification, troubleshooting)
Quick Start
With Claude Code CLI
# Add to Claude Code
claude mcp add --transport stdio osm-tagging-schema -- npx -y @gander-tools/osm-tagging-schema-mcp
# Use in conversations
# Ask Claude: "What OSM tags are available for restaurants?"
# Ask Claude: "Validate these tags: amenity=parking, capacity=50"
With Claude Desktop
Add to your Claude Desktop configuration:
{
"mcpServers": {
"osm-tagging-schema": {
"command": "npx",
"args": ["@gander-tools/osm-tagging-schema-mcp"]
}
}
}
š Next steps:
- Configuration Guide - Setup for Claude Code/Desktop and custom clients
- Usage Guide - Tool examples and workflows
- API Reference - Complete tool documentation
- Deployment Guide - Production HTTP/Docker deployment
Testing with MCP Inspector
Test and debug the server using the official MCP Inspector:
# Test published package (quickest)
npx @modelcontextprotocol/inspector npx @gander-tools/osm-tagging-schema-mcp
# Test Docker image
npx @modelcontextprotocol/inspector docker run --rm -i ghcr.io/gander-tools/osm-tagging-schema-mcp
The Inspector provides an interactive web UI to test all tools, inspect responses, and debug issues.
š Complete inspection guide: docs/development/inspection.md (includes HTTP transport testing)
Development
Built with Test-Driven Development (TDD) and Property-Based Fuzzing:
- Comprehensive test suite (unit + integration) with 100% pass rate
- Property-based fuzz tests with fast-check for edge case discovery
- Continuous fuzzing in CI/CD (weekly schedule + on every push/PR)
npm install # Install dependencies
npm test # Run all tests
npm run test:fuzz # Run fuzz tests
npm run build # Build for production
š Development guides: docs/development/development.md | docs/development/fuzzing.md
Contributing
Contributions welcome! This project follows Test-Driven Development (TDD).
- Fork and clone the repository
- Install dependencies:
npm install - Create a feature branch
- Write tests first, then implement
- Ensure all tests pass:
npm test - Submit a pull request
š Guidelines: docs/development/contributing.md
Documentation
Quick Navigation
Choose your path:
| I want to... | Go to |
|---|---|
| Install and run the server | Installation Guide |
| Configure with Claude Code/Desktop | Configuration Guide |
| Learn how to use the tools | Usage Guide ā API Reference |
| Test and debug the server | Inspection Guide |
| Deploy in production (HTTP/Docker) | Deployment Guide |
| Fix issues or errors | Troubleshooting Guide |
| Contribute to the project | Contributing Guide |
Complete Documentation
User Guides:
- Installation - Setup guide (npx, Docker, source)
- Configuration - Claude Code/Desktop configuration
- Usage - Tool examples and workflows
- API Reference - Complete tool documentation
- Troubleshooting - Common issues and solutions
Developer Docs:
- Contributing - Contribution guidelines (TDD workflow)
- Development - Development setup and debugging
- Inspection - MCP Inspector testing guide
- Fuzzing - Security fuzzing and property testing
- Roadmap - Project roadmap and future features
- Release Process - Release and publishing workflow
Deployment Docs:
- Deployment - HTTP/Docker production deployment
- Security - Security features, provenance, and SLSA
Project Info:
- CHANGELOG.md - Version history
License
GNU General Public License v3.0 - See LICENSE file for details.
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