Back to Skills
    🦞

    google-maps-grounding-lite-mcp

    Google Maps Grounding Lite

    By @ryanbaumann
    View on GitHub
    SKILL.md
    ---
    name: grounding-lite
    description: Google Maps Grounding Lite MCP for location search, weather, and routes via mcporter.
    homepage: https://developers.google.com/maps/ai/grounding-lite
    metadata: {"clawdbot":{"emoji":"πŸ—ΊοΈ","requires":{"bins":["mcporter"],"env":["GOOGLE_MAPS_API_KEY"]},"primaryEnv":"GOOGLE_MAPS_API_KEY","install":[{"id":"node","kind":"node","package":"mcporter","bins":["mcporter"],"label":"Install mcporter (npm)"}]}}
    ---
    
    # Grounding Lite
    
    Google Maps Grounding Lite MCP provides AI-grounded location data. Experimental (pre-GA), free during preview.
    
    ## Setup
    
    1. Enable the API: `gcloud beta services enable mapstools.googleapis.com`
    2. Get an API key from [Cloud Console](https://console.cloud.google.com/apis/credentials)
    3. Set env: `export GOOGLE_MAPS_API_KEY="YOUR_KEY"`
    4. Configure mcporter:
       ```bash
       mcporter config add grounding-lite \
         --url https://mapstools.googleapis.com/mcp \
         --header "X-Goog-Api-Key=$GOOGLE_MAPS_API_KEY" \
         --system
       ```
    
    ## Tools
    
    - **search_places**: Find places, businesses, addresses. Returns AI summaries with Google Maps links.
    - **lookup_weather**: Current conditions and forecasts (hourly 48h, daily 7 days).
    - **compute_routes**: Travel distance and duration (no turn-by-turn directions).
    
    ## Commands
    
    ```bash
    # Search places
    mcporter call grounding-lite.search_places textQuery="pizza near Times Square NYC"
    
    # Weather
    mcporter call grounding-lite.lookup_weather location='{"address":"San Francisco, CA"}' unitsSystem=IMPERIAL
    
    # Routes
    mcporter call grounding-lite.compute_routes origin='{"address":"SF"}' destination='{"address":"LA"}' travelMode=DRIVE
    
    # List tools
    mcporter list grounding-lite --schema
    ```
    
    ## Parameters
    
    **search_places**: `textQuery` (required), `locationBias`, `languageCode`, `regionCode`
    
    **lookup_weather**: `location` (required: address/latLng/placeId), `unitsSystem`, `date`, `hour`
    
    **compute_routes**: `origin`, `destination` (required), `travelMode` (DRIVE/WALK)
    
    ## Notes
    
    - Rate limits: search_places 100 QPM (1k/day), lookup_weather 300 QPM, compute_routes 300 QPM
    - Include Google Maps links in user-facing output (attribution required)
    - Only use with models that don't train on input data