Fitbit
Access your Fitbit health and fitness data for personalized insights.
Fitbit MCP Connector for AI
Connect AI assistants to your Fitbit health data
Give your AI assistant access to your Fitbit data for personalized health insights, trend analysis, and automated tracking. Works with Claude Desktop and other MCP-compatible AI tools.
What it does
🏃 Exercise & Activities - Get detailed workout logs and activity data
😴 Sleep Analysis - Retrieve sleep patterns and quality metrics
⚖️ Weight Tracking - Access weight trends over time
❤️ Heart Rate Data - Monitor heart rate patterns and zones
🍎 Nutrition Logs - Review food intake, calories, and macros
👤 Profile Info - Access basic Fitbit profile details
Ask your AI things like: "Show me my sleep patterns this week" or "What's my average heart rate during workouts?"
Quick Start
🚀 Want to test the tools right away?
Option 1: Install from npm (Recommended)
-
- Create an app with OAuth 2.0 Application Type:
Personal - Set Callback URL:
http://localhost:3000/callback - Note your Client ID and Client Secret
- Create an app with OAuth 2.0 Application Type:
-
Install the package globally:
npm install -g mcp-fitbit
- Add to your Claude Desktop config file:
{
"mcpServers": {
"fitbit": {
"command": "mcp-fitbit",
"args": [],
"env": {
"FITBIT_CLIENT_ID": "your_client_id_here",
"FITBIT_CLIENT_SECRET": "your_client_secret_here"
}
}
}
}
- Config file location:
- Windows: %AppData%\Claude\claude_desktop_config.json
- macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
- Linux: ~/.config/Claude/claude_desktop_config.json
- Restart Claude Desktop and ask about your Fitbit data!
Option 2: Development Setup
- Get Fitbit API credentials (see Installation below)
- Then run:
git clone https://github.com/TheDigitalNinja/mcp-fitbit
cd mcp-fitbit
npm install
# Create .env with your Fitbit credentials
npm run dev
Both options open the MCP Inspector at http://localhost:5173 where you can test all tools interactively and handle the OAuth flow.
Installation
For End Users (npm package)
-
Get Fitbit API credentials at dev.fitbit.com
- Set OAuth 2.0 Application Type to
Personal - Set Callback URL to
http://localhost:3000/callback
- Set OAuth 2.0 Application Type to
-
Install the package:
npm install -g mcp-fitbit -
Create
.envfile in the package directory:When you run
mcp-fitbitfor the first time, it will tell you exactly where to create the.envfile. It will look something like:C:\Users\YourName\AppData\Roaming\npm\node_modules\mcp-fitbit\.env -
Add your credentials to the
.envfile:FITBIT_CLIENT_ID=your_client_id_here FITBIT_CLIENT_SECRET=your_client_secret_here -
Run the server:
mcp-fitbit
For Developers (from source)
-
Get Fitbit API credentials at dev.fitbit.com
- Set OAuth 2.0 Application Type to
Personal - Set Callback URL to
http://localhost:3000/callback
- Set OAuth 2.0 Application Type to
-
Clone and setup:
git clone https://github.com/TheDigitalNinja/mcp-fitbit cd mcp-fitbit npm install -
Create
.envfile:FITBIT_CLIENT_ID=your_client_id_here FITBIT_CLIENT_SECRET=your_client_secret_here -
Build the server:
npm run build
Available Tools
| Tool | Description | Parameters |
|---|---|---|
get_weight | Weight data over time periods | period: 1d, 7d, 30d, 3m, 6m, 1y |
get_sleep_by_date_range | Sleep logs for date range (max 100 days) | startDate, endDate (YYYY-MM-DD) |
get_exercises | Activity/exercise logs after date | afterDate (YYYY-MM-DD), limit (1-100) |
get_daily_activity_summary | Daily activity summary with goals | date (YYYY-MM-DD) |
get_activity_goals | User's activity goals (daily/weekly) | period: daily, weekly |
get_activity_timeseries | Activity time series data (max 30 days) | resourcePath, startDate, endDate (YYYY-MM-DD) |
get_azm_timeseries | Active Zone Minutes time series (max 1095 days) | startDate, endDate (YYYY-MM-DD) |
get_heart_rate | Heart rate for time period | period: 1d, 7d, 30d, 1w, 1m, optional date |
get_heart_rate_by_date_range | Heart rate for date range (max 1 year) | startDate, endDate (YYYY-MM-DD) |
get_food_log | Complete nutrition data for a day | date (YYYY-MM-DD or "today") |
get_nutrition | Individual nutrient over time | resource, period, optional date |
get_nutrition_by_date_range | Individual nutrient for date range | resource, startDate, endDate |
get_profile | User profile information | None |
Nutrition resources: caloriesIn, water, protein, carbs, fat, fiber, sodium
Activity time series resources: steps, distance, calories, activityCalories, caloriesBMR, tracker/activityCalories, tracker/calories, tracker/distance
Claude Desktop
Using npm package (recommended):
Add to claude_desktop_config.json:
{
"mcpServers": {
"fitbit": {
"command": "mcp-fitbit",
"args": []
}
}
}
Using local development version:
Add to claude_desktop_config.json:
{
"mcpServers": {
"fitbit": {
"command": "node",
"args": ["C:\\path\\to\\mcp-fitbit\\build\\index.js"]
}
}
}
Config file locations:
- Windows:
%AppData%\Claude\claude_desktop_config.json - macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Linux:
~/.config/Claude/claude_desktop_config.json
First Run Authorization
When you first ask your AI assistant to use Fitbit data:
- The server opens your browser to
http://localhost:3000/auth - Log in to Fitbit and grant permissions
- You'll be redirected to a success page
- Your AI can now access your Fitbit data!
Development
npm run lint # Check code quality
npm run format # Fix formatting
npm run build # Compile TypeScript
npm run dev # Run with MCP inspector
Architecture: See TASKS.md for improvement opportunities and technical details.
İlgili Sunucular
SafetyCulture MCP Server
Ask natural language questions about your SafetyCulture data using the SafetyCulture API.
MCP Server with Google OAuth
A remote MCP server with built-in Google OAuth authentication, designed for deployment on Cloudflare Workers.
ServiceNow MCP Server
An MCP server for interfacing with ServiceNow, enabling AI agents to access and manipulate data via a secure API.
Netlify
Create, build, deploy, and manage Netlify resources using natural language.
Eyevinn Open Source Cloud
Interact with the Eyevinn Open Source Cloud API. Requires a Personal Access Token (OSC_ACCESS_TOKEN).
Gemini Image Analysis
Analyzes image and video content from URLs or local files using the Gemini 2.0 Flash model.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers, operating without authentication.
MultiversX MCP Server
Interact with the MultiversX blockchain for wallet creation, balance fetching, and token management.
Render MCP Server
Interact with Render resources via LLMs using the Render API.
LlamaCloud
Connect to and manage data indexes on the LlamaCloud platform.