LeanIX MCP Integration

Created By
pavanmadiraju-leanixa year ago
The LeanIX MCP Integration is a Model Context Protocol server that bridges LeanIX's enterprise architecture platform with AI assistants. It exposes LeanIX's GraphQL API as MCP tools, enabling AI assistants like Claude to query and manage fact sheets using natural language and generate and execute GraphQL queries automatically.
Overview

What is LeanIX MCP Integration?

LeanIX MCP Integration is a Model Context Protocol server that connects LeanIX's enterprise architecture platform with AI assistants, allowing for natural language queries and management of fact sheets through its GraphQL API.

How to use LeanIX MCP Integration?

To use the LeanIX MCP Integration, clone the repository, install the dependencies, set up your LeanIX credentials in a .env file, and start the server. You can then connect it to AI assistants like Claude for operations.

Key features of LeanIX MCP Integration?

  • Provides five MCP tools for LeanIX operations: Fact Sheet Overview, Search, Subscription Management, Create Fact Sheets, and Update Fact Sheets.
  • Enables AI assistants to interact with LeanIX's GraphQL API using natural language.
  • Supports easy integration with existing AI workflows.

Use cases of LeanIX MCP Integration?

  1. Automating fact sheet management in LeanIX.
  2. Enhancing AI assistants with enterprise architecture data.
  3. Streamlining operations through natural language queries.

FAQ from LeanIX MCP Integration?

  • What are the prerequisites for using LeanIX MCP Integration?

You need Node.js (v14 or higher), a LeanIX workspace, and a basic understanding of GraphQL and MCP.

  • How do I test my integration?

Start the server and connect it to any MCP-compatible client like Claude to test the tools.

  • Where can I find more resources?

You can refer to the LeanIX API Documentation, GraphQL Documentation, and Model Context Protocol Documentation for more information.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
pavanmadiraju-leanix
Star
0
Language
JavaScript
License
-

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