Tracking MCP

Tracking MCP

A generic MCP server for tracking any entity type (e.g., weight, workouts, books) without predefined schemas, using SQLite with JSON columns for flexible data storage and querying.

Category
Visit Server

README

Tracking MCP

PyPI version Python Version License Downloads GitHub stars

Generic MCP server for tracking any entity type with schema-less JSON Hybrid storage.

Track body weight, daily scorecards, fitness sessions, books, or any custom entity without defining rigid schemas. Auto-discovery, self-documenting, and SQL-queryable.

Features

  • Schema-less Design: Track any entity type (weight, scorecard, fitness, books, custom) without ALTER TABLE
  • Auto-Discovery: Entity types automatically registered on first use
  • Self-Documenting: MCP Resources expose schema examples and usage guides
  • SQL-Queryable: Use json_extract() for advanced analytics
  • Local-First: Privacy-friendly, zero external dependencies
  • Hybrid Storage: SQLite with JSON columns for flexibility + performance
  • CRUD Operations: Insert, update, query, delete via MCP Tools
  • Built-in Prompts: Pre-configured templates for common tracking scenarios

Installation

Using uvx (Recommended)

# Run directly without installation
uvx tracking-mcp

# Or install globally
pip install tracking-mcp

From Source

git clone https://github.com/mindfullabai/tracking-mcp.git
cd tracking-mcp
pip install -e .

Initialize Database

Database is auto-created on first use at the path specified in DB_PATH environment variable (defaults to ~/tracking.db).

Quick Start

Claude Desktop Configuration

Add to your Claude Desktop MCP settings (.mcp.json or ~/Library/Application Support/Claude/claude_desktop_config.json on macOS):

{
  "mcpServers": {
    "tracking-mcp": {
      "type": "stdio",
      "command": "uvx",
      "args": ["tracking-mcp"],
      "env": {
        "DB_PATH": "/path/to/your/data/tracking.db"
      }
    }
  }
}

Alternative (with pip install):

{
  "mcpServers": {
    "tracking-mcp": {
      "type": "stdio",
      "command": "tracking-mcp",
      "env": {
        "DB_PATH": "/path/to/your/data/tracking.db"
      }
    }
  }
}

Basic Usage

From Claude Desktop, you can now:

Track my weight: 72.5kg today
Show me my weight trend for the last 30 days
Log workout: HYROX for 45 minutes today

MCP Server Specification

Tools (4)

1. track_event

Insert or update tracking event for any entity type.

Parameters:

  • entity_type (string, required): Entity type (e.g., 'weight', 'scorecard', 'fitness', 'book', or custom)
  • date (string, required): Event date in YYYY-MM-DD format
  • data (object, required): Entity-specific data (schema-free JSON)
  • entity_id (string, optional): Unique ID for entity instance (e.g., 'book_atomic_habits')

Example:

track_event(
    entity_type="weight",
    date="2026-01-14",
    data={"weight_kg": 72.8, "day_type": "MAR", "source": "manual"}
)

2. query_events

Query tracking events with filters.

Parameters:

  • entity_type (string, optional): Filter by entity type
  • entity_id (string, optional): Filter by entity ID
  • start_date (string, optional): Start date (inclusive)
  • end_date (string, optional): End date (inclusive)
  • limit (integer, optional): Maximum results (default: 100)

Example:

query_events(
    entity_type="weight",
    start_date="2025-12-15",
    end_date="2026-01-14",
    limit=30
)

3. delete_event

Delete tracking event by ID.

Parameters:

  • event_id (integer, required): Event ID to delete

4. list_entity_types

Get all registered entity types with schema examples.

Returns: JSON array of entity types with descriptions and schema examples.

Resources (3)

1. tracking://schema/entity_types

List of all registered entity types with schema examples (JSON).

2. tracking://docs/usage

Usage guide for tracking new entity types dynamically (Markdown).

3. tracking://stats/summary

Current statistics: total events, entity types, date range, events by type (JSON).

Prompts (3)

1. track-weight

Template for tracking body weight.

Arguments: weight_kg, date

2. track-workout

Template for logging workout session.

Arguments: workout_type, duration_min, date

3. query-trend

Get trend data for entity type over date range.

Arguments: entity_type, days (default: 30)

Database Schema

tracking_events Table

Column Type Description
id INTEGER PRIMARY KEY Auto-increment ID
entity_type TEXT Entity type ('weight', 'scorecard', etc.)
entity_id TEXT Optional unique ID for entity instances
date DATE Event date (YYYY-MM-DD)
data JSON Schema-free JSON data
created_at TIMESTAMP Auto-generated creation timestamp
updated_at TIMESTAMP Auto-updated modification timestamp

Indexes: entity_type, date, entity_id

entity_types Table

Column Type Description
entity_type TEXT PRIMARY KEY Entity type name
description TEXT Human-readable description
schema_example JSON Example JSON schema
created_at TIMESTAMP Registration timestamp
updated_at TIMESTAMP Last update timestamp

Pre-seeded entity types: weight, scorecard, fitness, book

Advanced Usage Examples

Track Custom Entity Type

# Sleep quality tracking (auto-registered)
track_event(
    entity_type="sleep_quality",
    date="2026-01-14",
    data={
        "hours": 7.5,
        "quality_score": 8,
        "dreams": True,
        "interruptions": 2,
        "notes": "Felt refreshed"
    }
)

Track Entity with Unique ID

# Reading progress for specific book
track_event(
    entity_type="book",
    entity_id="book_atomic_habits",
    date="2026-01-14",
    data={
        "title": "Atomic Habits",
        "author": "James Clear",
        "current_page": 150,
        "total_pages": 320,
        "rating": 5
    }
)

Query with Filters

# Get all weight entries for January 2026
query_events(
    entity_type="weight",
    start_date="2026-01-01",
    end_date="2026-01-31"
)

# Get all entries for specific book
query_events(
    entity_type="book",
    entity_id="book_atomic_habits"
)

Update Existing Event

To update an event, call track_event() with the same entity_type + date (+ entity_id if used). The tool will automatically UPDATE instead of INSERT.

SQL Analytics

Since data is stored in SQLite with JSON columns, you can run advanced analytics:

Weight Trend (Last 30 Days)

SELECT
    date,
    json_extract(data, '$.weight_kg') as weight,
    json_extract(data, '$.delta_kg') as delta
FROM tracking_events
WHERE entity_type = 'weight'
AND date >= date('now', '-30 days')
ORDER BY date DESC;

Scorecard Weekly Average

SELECT
    strftime('%Y-W%W', date) as week,
    AVG(CAST(json_extract(data, '$.total_score') AS INTEGER)) as avg_score,
    COUNT(*) as days
FROM tracking_events
WHERE entity_type = 'scorecard'
AND date >= date('now', 'weekday 0', '-7 days')
GROUP BY week;

Fitness Volume by Workout Type (This Month)

SELECT
    json_extract(data, '$.workout_type') as type,
    COUNT(*) as sessions,
    SUM(CAST(json_extract(data, '$.duration_min') AS INTEGER)) as total_minutes,
    AVG(CAST(json_extract(data, '$.duration_min') AS INTEGER)) as avg_minutes
FROM tracking_events
WHERE entity_type = 'fitness'
AND date >= date('now', 'start of month')
GROUP BY type;

Project Structure

tracking-mcp/
├── data/
│   ├── tracking.db         # SQLite database
│   └── schema.sql          # Database schema
├── tracking_mcp/
│   ├── tracking_server.py  # MCP server implementation
│   └── __init__.py
├── tests/
│   └── test_server.py
├── pyproject.toml
├── LICENSE
├── CHANGELOG.md
└── README.md

Architecture Decisions

Why JSON Hybrid (SQLite + JSON)?

  • Flexibility: Add new entity types without schema migrations
  • Performance: SQLite indexes + json_extract() for fast queries
  • SQL-queryable: Standard SQL for analytics
  • EAV alternative: Too many JOINs, poor performance for analytics

Why Custom MCP vs Official SQLite MCP?

  • Auto-discovery: New entity types registered automatically
  • Self-documenting: Resources expose schemas and usage
  • Dynamic: No rigid schema required
  • Official SQLite MCP: Requires predefined schema

Why SQLite vs PostgreSQL?

  • Zero setup: File-based, no server required
  • Local-first: Privacy-friendly for personal tracking
  • Sufficient: Perfect for single-user personal use
  • PostgreSQL: Unnecessary overhead for personal tracking

Development

Run Tests

pytest

Code Quality

# Format code
black mcp_server/

# Lint
ruff check mcp_server/

Install Development Dependencies

pip install -e ".[dev]"

Troubleshooting

RuntimeWarning: coroutine 'main' was never awaited

If you see this error when running the server:

<coroutine object main at 0x...>
RuntimeWarning: coroutine 'main' was never awaited

This was fixed in version 1.0.1. Update to the latest version:

pip install --upgrade tracking-mcp
# or with uvx
uvx --refresh tracking-mcp

Root cause: Python CLI entry points from setuptools expect synchronous main() functions. Version 1.0.1+ includes a sync wrapper that properly handles the async MCP server.

Version History

See CHANGELOG.md for version history.

Current version: 1.0.1 (Async entry point fix)

Related Projects

  • viz-mcp: Companion MCP server for auto-generating data visualizations from tracking data
  • work-hub: Personal productivity system using tracking-mcp for daily scorecard and habit tracking

License

MIT License - see LICENSE file for details.

Author

Mario Mosca - GitHub

Contributing

Contributions welcome! Please open an issue or pull request.

Support

For issues, questions, or feature requests, please open an issue on GitHub: https://github.com/mariomosca/tracking-mcp/issues

Recommended Servers

playwright-mcp

playwright-mcp

A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.

Official
Featured
TypeScript
Magic Component Platform (MCP)

Magic Component Platform (MCP)

An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.

Official
Featured
Local
TypeScript
Audiense Insights MCP Server

Audiense Insights MCP Server

Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.

Official
Featured
Local
TypeScript
VeyraX MCP

VeyraX MCP

Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.

Official
Featured
Local
graphlit-mcp-server

graphlit-mcp-server

The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.

Official
Featured
TypeScript
Kagi MCP Server

Kagi MCP Server

An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.

Official
Featured
Python
E2B

E2B

Using MCP to run code via e2b.

Official
Featured
Neon Database

Neon Database

MCP server for interacting with Neon Management API and databases

Official
Featured
Exa Search

Exa Search

A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.

Official
Featured
Qdrant Server

Qdrant Server

This repository is an example of how to create a MCP server for Qdrant, a vector search engine.

Official
Featured