Enables interaction with OWL ontologies stored in repositories, with the README mentioning GitHub specifically when referencing Goose installation and setup.
OWL-MCP
OWL-MCP is a Model-Context-Protocol (MCP) server for working with Web Ontology Language (OWL) ontologies.
Quick Start
This walks you through using owl-mcp with Goose, but any MCP-enabled AI host will work.
Install Goose
You can use either the Desktop or CLI version of Goose from here:
Follow the instructions for setting up an LLM provider (Anthropic recommended)
Install OWL-MCP extension
You can either install directly from this link:
Or to do this manually, in the Extension section of Goose, add a new entry for owlmcp:
uvx owl-mcp
This video shows how to do this manually:
Try it out
You can ask to create an ontology, and add axioms to an ontology:
How this works
The MCP server provides function calls for finding, adding, or removing OWL axioms, using OWL functional syntax. Each function call is accompanied by the file path of the OWL file on your disk. Any format supported by py-horned-owl is accepted (we following OBO guidelines and recommend functional syntax for source).
The server takes care of keeping an instance of the ontology in memory and syncing it with disk. Any CRUD operation simultaneously updates the in-memory model and syncs this with disk. If you have Protege running, Protege will also sync with local disk, and show updates.
The server is well adapted for working with OBO-style ontologies - when OWL strings are sent back to the client, labels for opaque IDs are included after #
s comments, as is common for obo-format.
Key Features
- MCP Server Integration: Connect AI assistants directly to OWL ontologies using the standardized Model-Context-Protocol
- Thread-safe operations: All ontology operations are thread-safe, making it suitable for multi-user environments
- File synchronization: Changes to the ontology file on disk are automatically detected and synchronized
- Event-based notifications: Register observers to be notified of changes to the ontology
- Simple string-based API: Work with OWL axioms as strings in functional syntax without dealing with complex object models
- Configuration system: Store and manage settings for frequently-used ontologies
- Label support: Access human-readable labels for entities with configurable annotation properties
This server cannot be installed
A Model-Context-Protocol server that enables AI assistants to create, edit, and manage Web Ontology Language (OWL) ontologies through function calls using OWL functional syntax.
Related MCP Servers
- -securityFlicense-qualityA versatile Model Context Protocol server that enables AI assistants to manage calendars, track tasks, handle emails, search the web, and control smart home devices.Last updated -2Python
Appwrite MCP Serverofficial
AsecurityAlicenseAqualityA Model Context Protocol server that allows AI assistants to interact with Appwrite's API, providing tools to manage databases, users, functions, teams, and other resources within Appwrite projects.Last updated -8440PythonMIT License- -securityAlicense-qualityA Model Context Protocol server that enables AI assistants to interact with n8n workflows through natural language, supporting actions like listing, creating, updating, executing and monitoring workflows.Last updated -207333TypeScriptMIT License
- AsecurityAlicenseAqualityA Model Context Protocol server that enables AI assistants to create, read, edit, and format Microsoft Word documents through standardized tools and resources.Last updated -16198PythonMIT License