Dynamic Jira Software Cloud MCP Server
Dynamically exposes over 100 Jira Software Cloud REST API operations as fully typed tools for LLMs to interact with, supporting SSE and Stdio transports.
README
Dynamic Jira Software Cloud MCP Server
A premium, dynamic Model Context Protocol (MCP) server generated dynamically from Atlassian's swagger.json specification using the FastMCP framework in Python.
This server dynamically exposes over 100 Jira Software Cloud REST API operations as fully typed tools for Large Language Models (LLMs) to interact with, supporting Sstdio and Server-Sent Events (SSE) transports.
🏗 Architecture & Project Structure
The project has been architected following highly modular and decoupled software engineering best practices:
├── .env # Local environment configuration
├── Dockerfile # Safe, non-root system user Docker image setup
├── docker-compose.yml # Automated multi-container configuration
├── pyproject.toml # Python project configuration and dependency list
├── dynamic_jira_mcp.py # FastMCP server registration and transport hub
├── dynamic_jira_mcp_client.py # Async MCP Client for testing the running SSE server
├── swagger.json # Atlassian Jira Software Cloud API OpenAPI 3.0 specification
├── openapi/ # Decoupled OpenAPI extraction and client package
│ ├── __init__.py
│ └── openapi_client.py # Generic OpenAPI spec parser and async HTTP request execution
└── tests/ # Fully automated test suite
└── test_dynamic_jira_mcp.py # Pytest-compatible tests with live console logging
⚙️ Configuration & Environment Variables
Create a local .env file in the root directory to customize the MCP server behavior and connect to your Jira instance:
# Atlassian Jira Instance URL (e.g., https://your-domain.atlassian.net)
JIRA_BASE_URL=https://your-domain.atlassian.net
# Atlassian Account Email
JIRA_USERNAME=your-email@example.com
# Atlassian Account API Token
JIRA_API_TOKEN=your-jira-api-token
# Allowed HTTP Methods (comma-separated, e.g. "get" for read-only or "get,post,put,delete" for full CRUD)
ALLOWED_METHODS=get,post,put,delete
# MCP Server Settings
MCP_TRANSPORT=sse
MCP_HOST=0.0.0.0
MCP_PORT=8000
🚀 Running the Server
1. Locally with uv (Fastest)
Ensure you have uv installed:
# Install dependencies and launch the server
uv run python dynamic_jira_mcp.py
2. Containerized with Docker
This container is strictly configured with a non-root system user for industry-standard production safety.
# Build the Docker image
docker build -t jira-mcp-server .
# Run the container mapping port 8000
docker run -p 8000:8000 --env-file .env jira-mcp-server
3. Automatically with Docker Compose (Recommended)
To spin up, build (if missing), and tag the image, launch via compose:
# Launch the containerized server in detached mode
docker compose up -d
# View live server logs
docker logs -f jira-mcp-server
🧪 Testing and Introspection
1. Real-time Console Log Tests via Pytest
Run the comprehensive async testing suite with full live logging outputs:
uv run python -m pytest -o log_cli=true --log-cli-level=INFO tests/
2. Connect via the MCP Client Component
Run the asynchronous test client to verify connection to the running SSE server and list registered tools:
uv run python dynamic_jira_mcp_client.py
🛠 Features Included:
- Reference Resolution (
$ref): Recursively resolves and parses internal OpenAPI schemas. - Dynamic Parameter Mapping: Handles Path parameters, Query parameters, and JSON Request bodies, registering them as native type annotations (e.g.
int,str,list,dict) inside Python's function signatures. - SSE & Stdio Support: Seamlessly toggles transport protocols.
- Secure Non-Root Container: Built with enterprise security best practices.
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