Google Tag Manager
Integrates Google Tag Manager to automate GTM configuration and component creation through natural language prompts.
Google Tag Manager MCP Server
A Model Context Protocol (MCP) server that integrates Google Tag Manager with Claude, enabling automated GTM configuration and component creation through natural language prompts.
Features
- GTM API Integration: Full Google Tag Manager API integration for creating and managing tags, triggers, and variables
- Component Templates: Pre-built templates for common tracking scenarios (GA4, Facebook Pixel, conversion tracking)
- Workflow Automation: Complete workflow creation for different site types (ecommerce, lead generation, content sites)
- Claude Integration: Natural language interface for GTM configuration through Claude
Setup
1. Install Dependencies
Option A: Using uv (Recommended)
# Install uv if not already installed
curl -LsSf https://astral.sh/uv/install.sh | sh
source $HOME/.local/bin/env
# Install dependencies
uv sync
Option B: Using pip
pip install -r requirements.txt
2. Google Cloud Console Setup
- Go to the Google Cloud Console
- Create a new project or select existing one
- Enable the Tag Manager API:
- Go to "APIs & Services" > "Library"
- Search for "Tag Manager API"
- Click "Enable"
3. Create Service Account Credentials
- Go to "APIs & Services" > "Credentials"
- Click "Create Credentials" > "OAuth 2.0 Client IDs"
- Choose "Desktop application"
- Download the JSON file and save it as
credentials.jsonin this directory
4. Configure Claude
Add the MCP server configuration to your Claude config:
{
"mcpServers": {
"gtm": {
"command": "python",
"args": ["/path/to/mcp-for-gtm/server.py"],
"env": {
"GTM_CREDENTIALS_FILE": "/path/to/mcp-for-gtm/credentials.json",
"GTM_TOKEN_FILE": "/path/to/mcp-for-gtm/token.json"
}
}
}
}
Available Tools
Basic GTM Operations
create_gtm_tag: Create individual GTM tagscreate_gtm_trigger: Create GTM triggerscreate_gtm_variable: Create GTM variableslist_gtm_containers: List all containers for an accountget_gtm_container: Get container detailspublish_gtm_version: Publish a container version
Workflow Tools
create_ga4_setup: Complete Google Analytics 4 setup with config tag and common eventscreate_facebook_pixel_setup: Facebook Pixel tracking setupcreate_form_tracking: Form submission tracking setupgenerate_gtm_workflow: Generate complete workflows for different site types
Usage Examples
1. Set up Google Analytics 4 tracking
Create a complete GA4 setup for my website with measurement ID G-XXXXXXXXXX in GTM account 123456 and container 7890123
2. Generate ecommerce tracking workflow
Generate a complete ecommerce tracking workflow with GA4 measurement ID G-XXXXXXXXXX and Facebook Pixel ID 123456789
3. Create form tracking
Set up form tracking for the contact form with selector #contact-form in my GTM container
4. Create custom components
Create a custom GTM tag for tracking video plays with the following parameters: event_name = "video_play", video_title = "{{Video Title}}", video_duration = "{{Video Duration}}"
Workflow Types
The generate_gtm_workflow tool supports three main workflow types:
ecommerce: Enhanced ecommerce tracking with purchase, cart, and product interaction eventslead_generation: Form submissions, CTA clicks, and conversion trackingcontent_site: Content engagement, newsletter signups, and social sharing
Authentication
On first run, the server will open a browser window for OAuth authentication. Grant the necessary permissions to access your GTM account. The authentication token will be saved for future use.
File Structure
mcp-for-gtm/
├── server.py # Main MCP server
├── gtm_client.py # GTM API client
├── gtm_components.py # Component templates and workflow builder
├── requirements.txt # Python dependencies
├── config.json # MCP server configuration
├── credentials.json # Google OAuth credentials (you provide)
├── token.json # Generated auth token (auto-created)
└── README.md # This file
Troubleshooting
Authentication Issues
- Ensure
credentials.jsonis properly configured from Google Cloud Console - Check that Tag Manager API is enabled in your Google Cloud project
- Verify you have the necessary permissions in your GTM account
Permission Errors
- Make sure your Google account has edit permissions for the GTM container
- Ensure the GTM account and container IDs are correct
API Errors
- Check your GTM account and container IDs
- Verify that the workspace exists (default workspace ID is used)
- Check rate limits if you're making many requests
Development
Running Tests
# Using uv
uv run python test_server.py
# Or directly with python
python test_server.py
Running the Server
# Using the convenience script
./run_server.sh
# Or manually with uv
uv run python server.py
# Or with system python
python server.py
Development Dependencies
The project includes development dependencies for code quality:
# Format code with black
uv run black .
# Check with flake8
uv run flake8 .
# Type checking with mypy
uv run mypy .
# Run tests with pytest
uv run pytest
Contributing
Feel free to submit issues and enhancement requests!
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