GTD MCP Server
A Model Context Protocol server implementing a Getting Things Done assistant with tools for tasks, projects, inbox, next actions, and statistics. Supports local SQLite and Databricks deployment.
README
GTD MCP Server: Python FastMCP on Databricks Apps
A practical, self-learning Model Context Protocol (MCP) server tutorial built with Python, FastMCP, FastAPI, and Databricks Apps. The project implements a Getting Things Done assistant with typed MCP tools for tasks, projects, inbox capture, next actions, and statistics.
Run the same MCP server locally with Codex and SQLite, or deploy it as a custom
Databricks App backed by a Unity Catalog Delta table and SQL warehouse. The
server supports both stdio and Streamable HTTP at /mcp, and can be attached to
Databricks AI Playground through its Tools panel.
What You Will Learn
- how to build an MCP server in Python with FastMCP,
- how MCP tools, schemas, transports, and structured responses work,
- how to connect a local MCP server to Codex,
- how to deploy an MCP server with Databricks Apps,
- how to use Databricks App resources, service-principal authentication, Unity Catalog, Delta tables, and a SQL warehouse,
- how to keep domain logic portable between SQLite and Databricks storage.
Start with QUICKSTART.md for setup and deployment. Use ARCHITECTURE.md as the complete workshop and extension guide.
Keywords: Model Context Protocol, MCP server, Python MCP, FastMCP, FastAPI, Databricks Apps, Databricks AI Playground, Codex MCP, Unity Catalog, Delta Lake, SQL Warehouse, AI agents, GTD assistant.
The operational code lives in src/; setup notebooks and client integration
guides live in docs/.
Repository Map
gtd-mcp-server/
├── README.md # how to navigate and work with this repo
├── QUICKSTART.md # local and Databricks Apps startup paths
├── ARCHITECTURE.md
├── LICENSE
├── pyproject.toml # uv project metadata
├── uv.lock # locked local dependency set
├── src/ # server package and Databricks app config
└── docs/
├── databricks_setup_storage.py
├── databricks_playground.md
└── local_llm_ide.md
Local runs create a SQLite database at .local/gtd.sqlite3 by default.
Databricks Apps use Delta storage.
Main Concepts
src/gtd_mcp_server/server.py: FastMCP tools, FastAPI routes, launchers.src/gtd_mcp_server/storage.py: storage abstraction, SQLite backend, Delta backend.src/gtd_mcp_server/models.py: GTD task, project, inbox, and stats models.src/app.yaml: Databricks Apps startup command.src/requirements.txt: dependencies installed by Databricks Apps.pyproject.toml: localuvproject metadata.uv.lock: locked local dependency set.docs/databricks_setup_storage.py: Databricks notebook that creates the Unity Catalog catalog, schema, and Delta table.docs/databricks_playground.md: how to attach the deployed app through the Playground Tools panel.docs/local_llm_ide.md: how to connect the local server to Codex.
Storage Modes
Local default:
GTD_STORAGE_BACKEND=sqlite
GTD_SQLITE_PATH=.local/gtd.sqlite3
Databricks Apps:
GTD_STORAGE_BACKEND=delta
GTD_DELTA_TABLE=gtd_mcp.app.gtd_mcp_records
DATABRICKS_WAREHOUSE_ID=<warehouse-id>
DATABRICKS_HOST=<injected-by-databricks-apps>
Before deployment, attach a SQL warehouse resource with key sql-warehouse
and a UC table resource with key table. app.yaml maps both resources into
environment variables with valueFrom; Databricks Apps injects
DATABRICKS_HOST and service-principal credentials.
Before deploying on Databricks, run docs/databricks_setup_storage.py as a
Databricks notebook. It creates the gtd_mcp catalog, app schema, and
gtd_mcp_records Delta table used by the server.
When DATABRICKS_APP_NAME is present and GTD_STORAGE_BACKEND is unset, the
server assumes delta.
Databricks Apps installs requirements.txt and starts the command from app.yaml:
uvicorn gtd_mcp_server.server:app --host 0.0.0.0 --port $DATABRICKS_APP_PORT
Daily Workflow
From this folder:
uv sync
uv run gtd-mcp-server
Then use:
- REST health check:
http://localhost:8000/health - MCP streamable HTTP endpoint:
http://localhost:8000/mcp - OpenAPI docs for the helper REST API:
http://localhost:8000/docs
Use /mcp from an MCP client.
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