BigQuery Analysis
Execute and validate SQL queries against Google BigQuery. It safely runs SELECT queries under 1TB and returns results in JSON format.
BigQuery Analysis MCP Server
Overview
This server is an MCP server for executing SQL queries against Google BigQuery, providing the following features:
- Query validation (dry run): Verifies if a query is valid and estimates its processing size
- Safe query execution: Only runs SELECT queries under 1TB (prevents data modifications)
- JSON-formatted results: Returns query results in structured JSON format
Features
Tools
-
dry_run_query- Perform a dry run of a BigQuery query- Validates the query and estimates its processing size
- Checks query size against the 1TB limit
-
run_query_with_validation- Run a BigQuery query with validation- Detects and rejects DML statements (data modification queries)
- Rejects data processing over 1TB
- Executes queries that pass validation and returns results
Development
Prerequisites
- Node.js (v16 or higher)
- Google Cloud authentication setup (gcloud CLI or service account)
Install Dependencies
npm install
Build
npm run build
Development Mode (Auto-rebuild)
npm run watch
Installation
To use with Claude Desktop, add the server configuration:
MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"bigquery-analysis-server": {
"command": "/path/to/bigquery-analysis-server/build/index.js"
}
}
}
Debugging
Since MCP servers communicate over stdio, debugging can be challenging. We recommend using the MCP Inspector:
npm run inspector
The Inspector will provide a URL to access debugging tools in your browser.
Authentication Setup
This server uses Google Cloud authentication. Set up authentication using one of the following methods:
-
Login with gcloud CLI:
gcloud auth application-default login -
Use a service account key:
export GOOGLE_APPLICATION_CREDENTIALS="/path/to/service-account-key.json"
Usage Examples
-
Dry run a query:
dry_run_query("SELECT * FROM `bigquery-public-data.samples.shakespeare` LIMIT 10") -
Run a query with validation:
run_query_with_validation("SELECT word, word_count FROM `bigquery-public-data.samples.shakespeare` WHERE corpus='hamlet' LIMIT 10")
BigQuery Analysis MCP Server (日本語版)
概要
BigQueryでSQLクエリを実行するためのMCPサーバーです。クエリの検証(ドライラン)と実行を行い、1TB以上のデータ処理や変更系クエリ(DML)を防止する安全機能を備えています。
機能
このサーバーはGoogle BigQueryに対してSQLクエリを実行するためのMCPサーバーで、以下の機能を提供します:
- クエリの検証(ドライラン):クエリが有効かどうかを確認し、処理サイズを見積もる
- 安全なクエリ実行:1TB以下のSELECTクエリのみを実行(データ変更を防止)
- 結果のJSON形式での返却:クエリ結果を構造化されたJSONで返す
機能
ツール
-
dry_run_query- BigQueryクエリのドライラン実行- クエリの検証と処理サイズの見積もりを行う
- 1TBの制限に対してクエリサイズをチェック
-
run_query_with_validation- 検証付きでBigQueryクエリを実行- DML文(データ変更クエリ)を検出して拒否
- 1TB以上のデータ処理を拒否
- 検証に通過したクエリを実行し結果を返す
開発方法
前提条件
- Node.js(v16以上)
- Google Cloud認証設定(gcloud CLIまたはサービスアカウント)
依存関係のインストール
npm install
ビルド
npm run build
開発モード(自動再ビルド)
npm run watch
インストール
Claude Desktopで使用するには、サーバー設定を追加してください:
MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"bigquery": {
"command": "node",
"args": ["/path/to/bigquery-server/build/index.js"]
}
}
}
デバッグ
MCPサーバーは標準入出力(stdio)を介して通信するため、デバッグが難しい場合があります。MCP Inspectorの使用をお勧めします:
npm run inspector
InspectorはブラウザでデバッグツールにアクセスするためのURLを提供します。
認証設定
このサーバーはGoogle Cloud認証情報を使用します。以下のいずれかの方法で認証を設定してください:
-
gcloud CLIでログイン:
gcloud auth application-default login -
サービスアカウントキーを使用:
export GOOGLE_APPLICATION_CREDENTIALS="/path/to/service-account-key.json"
使用例
-
クエリのドライラン:
dry_run_query("SELECT * FROM `bigquery-public-data.samples.shakespeare` LIMIT 10") -
検証付きクエリ実行:
run_query_with_validation("SELECT word, word_count FROM `bigquery-public-data.samples.shakespeare` WHERE corpus='hamlet' LIMIT 10")
相关服务器
Exact Online MCP Server by CData
A read-only MCP server by CData that enables LLMs to query live data from Exact Online.
German Family Business Knowledge Graph
Query a Neo4j graph database containing a knowledge graph of German family businesses.
Memory-Plus
a lightweight, local RAG memory store to record, retrieve, update, delete, and visualize persistent "memories" across sessions—perfect for developers working with multiple AI coders (like Windsurf, Cursor, or Copilot) or anyone who wants their AI to actually remember them.
Supavec MCP Server
Fetch relevant content from Supavec, a vector database service.
MCP RAN POC
An MCP server for querying databases and managing Kubernetes clusters.
Data Exploration
MCP server for autonomous data exploration on .csv-based datasets, providing intelligent insights with minimal effort.
SchemaCrawler
Connect to any relational database, and be able to get valid SQL, and ask questions like what does a certain column prefix mean.
Neon
Interact with the Neon serverless Postgres platform
OpenSearch MCP Server
An MCP server for interacting with OpenSearch clusters, configured via environment variables.
Supabase Read-Only MCP Server
Provides read-only access to a Supabase database.