BigQuery MCP Server

BigQuery MCP Server

<div align="center"> <img src="assets/mcp-bigquery-server-logo.png" alt="BigQuery MCP Server Logo" width="400"/> </div>

What is this? πŸ€”

This is a server that lets your LLMs (like Claude) talk directly to your BigQuery data! Think of it as a friendly translator that sits between your AI assistant and your database, making sure they can chat securely and efficiently.

Quick Example

You: "What were our top 10 customers last month?" Claude: *queries your BigQuery database and gives you the answer in plain English*

No more writing SQL queries by hand - just chat naturally with your data!

How Does It Work? πŸ› οΈ

This server uses the Model Context Protocol (MCP), which is like a universal translator for AI-database communication. While MCP is designed to work with any AI model, right now it's available as a developer preview in Claude Desktop.

Here's all you need to do:

  1. Set up authentication (see below)
  2. Add your project details to Claude Desktop's config file
  3. Start chatting with your BigQuery data naturally!

What Can It Do? πŸ“Š

  • Run SQL queries by just asking questions in plain English
  • Access both tables and materialized views in your datasets
  • Explore dataset schemas with clear labeling of resource types (tables vs views)
  • Analyze data within safe limits (1GB query limit by default)
  • Keep your data secure (read-only access)

Quick Start πŸš€

Prerequisites

  • Node.js 14 or higher
  • Google Cloud project with BigQuery enabled
  • Either Google Cloud CLI installed or a service account key file
  • Claude Desktop (currently the only supported LLM interface)

To install BigQuery MCP Server for Claude Desktop automatically via Smithery, run this command in your terminal:

npx @smithery/cli install @ergut/mcp-bigquery-server --client claude

The installer will prompt you for:

  • Your Google Cloud project ID
  • BigQuery location (defaults to us-central1)

Once configured, Smithery will automatically update your Claude Desktop configuration and restart the application.

Option 2: Manual Setup

If you prefer manual configuration or need more control:

  1. Authenticate with Google Cloud (choose one method):
    • Using Google Cloud CLI (great for development):
      gcloud auth application-default login
    • Using a service account (recommended for production):
      # Save your service account key file and use --key-file parameter # Remember to keep your service account key file secure and never commit it to version control
  2. Add to your Claude Desktop config Add this to your claude_desktop_config.json:
    • Basic configuration:
      { "mcpServers": { "bigquery": { "command": "npx", "args": [ "-y", "@ergut/mcp-bigquery-server", "--project-id", "your-project-id", "--location", "us-central1" ] } } }
    • With service account:
      { "mcpServers": { "bigquery": { "command": "npx", "args": [ "-y", "@ergut/mcp-bigquery-server", "--project-id", "your-project-id", "--location", "us-central1", "--key-file", "/path/to/service-account-key.json" ] } } }
  3. Start chatting! Open Claude Desktop and start asking questions about your data.

Command Line Arguments

The server accepts the following arguments:

  • --project-id: (Required) Your Google Cloud project ID
  • --location: (Optional) BigQuery location, defaults to 'us-central1'
  • --key-file: (Optional) Path to service account key JSON file

Example using service account:

npx @ergut/mcp-bigquery-server --project-id your-project-id --location europe-west1 --key-file /path/to/key.json

Permissions Needed

You'll need one of these:

  • roles/bigquery.user (recommended)
  • OR both:
    • roles/bigquery.dataViewer
    • roles/bigquery.jobUser

Developer Setup (Optional) πŸ”§

Want to customize or contribute? Here's how to set it up locally:

# Clone and install git clone https://github.com/ergut/mcp-bigquery-server cd mcp-bigquery-server npm install # Build npm run build

Then update your Claude Desktop config to point to your local build:

{ "mcpServers": { "bigquery": { "command": "node", "args": [ "/path/to/your/clone/mcp-bigquery-server/dist/index.js", "--project-id", "your-project-id", "--location", "us-central1", "--key-file", "/path/to/service-account-key.json" ] } } }

Current Limitations ⚠️

  • MCP support is currently only available in Claude Desktop (developer preview)
  • Connections are limited to local MCP servers running on the same machine
  • Queries are read-only with a 1GB processing limit
  • While both tables and views are supported, some complex view types might have limitations

Support & Resources πŸ’¬

License πŸ“

MIT License - See LICENSE file for details.

Author ✍️

Salih ErgΓΌt

Sponsorship

This project is proudly sponsored by:

<div align="center"> <a href="https://www.oredata.com"> <img src="assets/oredata-logo-nobg.png" alt="OREDATA" width="300"/> </a> </div>

Version History πŸ“‹

See CHANGELOG.md for updates and version history.

A
security – no known vulnerabilities (report Issue)
A
license - permissive license
A
quality - confirmed to work

This is a server that lets your LLMs (like Claude) talk directly to your BigQuery data! Think of it as a friendly translator that sits between your AI assistant and your database, making sure they can chat securely and efficiently.

  1. What is this? πŸ€”
    1. Quick Example
    2. How Does It Work? πŸ› οΈ
      1. What Can It Do? πŸ“Š
      2. Quick Start πŸš€
        1. Prerequisites
          1. Option 1: Quick Install via Smithery (Recommended)
            1. Option 2: Manual Setup
              1. Command Line Arguments
                1. Permissions Needed
                2. Developer Setup (Optional) πŸ”§
                  1. Current Limitations ⚠️
                    1. Support & Resources πŸ’¬
                      1. License πŸ“
                        1. Author ✍️
                          1. Sponsorship
                            1. Version History πŸ“‹