Redmine MCP Server

Redmine MCP Server

Enables AI applications to interact with Redmine project management systems for issue tracking, time logging, and project management through natural language.

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Redmine MCP Server

Tests CI

A Model Context Protocol (MCP) server for integrating with Redmine project management systems. This server provides AI applications with the ability to interact with Redmine instances for project management, issue tracking, and time logging.

Features

Tools

  • get_issues - Retrieve issues with optional filtering by project, status, assignee
  • get_projects - List available Redmine projects
  • get_project_memberships - Get users and groups assigned to a project with their roles
  • create_issue - Create new issues in Redmine projects
  • get_time_entries - Retrieve time entries with filtering options
  • log_time - Log time spent on issues or projects

Resources

  • redmine://projects - List of all accessible projects
  • redmine://issues/recent - Recently updated issues
  • redmine://time_entries/recent - Recently logged time entries

Prompts

  • issue_summary - Generate comprehensive project issue summaries
  • time_report - Create detailed time tracking reports

Setup

Prerequisites

  • Node.js 22+
  • Access to a Redmine instance with API key
  • Redmine REST API enabled

Environment Variables

Set the following environment variables:

export REDMINE_URL="https://your-redmine-instance.com"
export REDMINE_API_KEY="your_api_key_here"

Installation

  1. Clone or download this repository
  2. Install dependencies:
    npm install
    
  3. Build the server:
    npm run build
    

Usage with MCP Clients

VsCode

Clone this repository and create the file .vscode/mcp.json with following contents:

{
  "servers": {
    "redmine-mcp-server": {
      "type": "stdio",
      "command": "node",
      "args": ["build/src/index.js"],
      "env": {
        "REDMINE_URL": "your URL here",
        "REDMINE_API_KEY": "your API key here"
      }
    }
  }
}

After adding the file, restart VsCode and open the Chat window. Redmine MCP Server should be available and running in MCP servers list (Ctrl-P, then type "MCP list servers"):

LLM tools view with Redmine MCP visible

Documentation

API documentation is automatically generated from JSDoc comments and deployed to GitHub Pages:

📚 View API Documentation

To generate documentation locally:

npm run docs

The generated documentation will be available in the docs/ directory.

Development

Building

npm run build

Linting

npm run lint
npm run format

Testing

This project uses Vitest as its testing framework, providing fast test execution, watch mode, and comprehensive coverage reports.

Running Tests

# Run all tests
npm test

# Run tests once and exit
npm run test:run

# Run only e2e tests
npm run test:e2e

# Run tests with UI
npm run test:ui

# Run tests with coverage
npm run test:coverage

Coverage Reporting

Code coverage is automatically collected and reported in the CI pipeline using Vitest's built-in coverage support with the V8 provider. Coverage reports are:

  • Generated for every test run in CI
  • Uploaded as workflow artifacts (available for 30 days)
  • Displayed in the GitHub Actions workflow summary
  • Stored in the coverage/ directory locally

To generate coverage locally:

npm run test:coverage

Coverage reports include:

  • HTML report: Open coverage/index.html in your browser for detailed line-by-line coverage
  • JSON summary: coverage/coverage-summary.json contains overall metrics
  • Text output: Coverage percentages displayed in the terminal

The coverage configuration excludes test files, configuration files, and build artifacts to focus on source code coverage.

Test Structure

  • test/e2e/ - End-to-end tests using Docker and Playwright

Writing Tests

Tests use Vitest's describe, it, and expect API:

import { describe, it, expect } from "vitest";

describe("My Feature", () => {
  it("should work correctly", () => {
    expect(1 + 1).toBe(2);
  });
});

Testing with MCP Inspector

npx @modelcontextprotocol/inspector node build/src/index.js

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