## Description > Should include a concise description of the changes (bug or feature), it's > impact, along with a summary of the solution ## PR Checklist > Thank you for opening a Pull Request! Before submitting your PR, there are a > few things you can do to make sure it goes smoothly: - [x] Make sure you reviewed [CONTRIBUTING.md](https://github.com/googleapis/genai-toolbox/blob/main/CONTRIBUTING.md) - [ ] Make sure to open an issue as a [bug/issue](https://github.com/googleapis/genai-toolbox/issues/new/choose) before writing your code! That way we can discuss the change, evaluate designs, and agree on the general idea - [ ] Ensure the tests and linter pass - [ ] Code coverage does not decrease (if any source code was changed) - [ ] Appropriate docs were updated (if necessary) - [ ] Make sure to add `!` if this involve a breaking change 🛠️ Fixes #<issue_number_goes_here>
3.8 KiB
Cloud Spanner MCP Server
The Cloud Spanner Model Context Protocol (MCP) Server gives AI-powered development tools the ability to work with your Google Cloud Spanner databases. It supports executing SQL queries and exploring schemas.
Features
An editor configured to use the Cloud Spanner MCP server can use its AI capabilities to help you:
- Query Data - Execute DML and DQL SQL queries
- Explore Schema - List tables and view schema details
Prerequisites
- Node.js installed.
- A Google Cloud project with the Cloud Spanner API enabled.
- Ensure Application Default Credentials are available in your environment.
- IAM Permissions:
- Cloud Spanner Database User (
roles/spanner.databaseUser) (for data access) - Cloud Spanner Viewer (
roles/spanner.viewer) (for schema access)
- Cloud Spanner Database User (
Install & Configuration
-
In the Antigravity MCP Store, click the "Install" button.
Note
On first use, the installation process automatically downloads and uses MCP Toolbox
>=0.26.0. To update MCP Toolbox, use:npm i -g @toolbox-sdk/server@latestTo always run the latest version, update the MCP server configuration to use:npx -y @toolbox-sdk/server@latest --prebuilt spanner. -
Add the required inputs for your instance in the configuration pop-up, then click "Save". You can update this configuration at any time in the "Configure" tab.
You'll now be able to see all enabled tools in the "Tools" tab.
Note
If you encounter issues with Windows Defender blocking the execution, you may need to configure an allowlist. See Configure exclusions for Microsoft Defender Antivirus for more details.
Usage
Once configured, the MCP server will automatically provide Cloud Spanner capabilities to your AI assistant. You can:
- "Execute a DML query to update customer names."
- "List all tables in the
my-database." - "Execute a DQL query to select data from
orderstable."
Server Capabilities
The Cloud Spanner MCP server provides the following tools:
| Tool Name | Description |
|---|---|
execute_sql |
Use this tool to execute DML SQL. |
execute_sql_dql |
Use this tool to execute DQL SQL. |
list_tables |
Lists detailed schema information for user-created tables. |
list_graphs |
Lists detailed graph schema information for user-created graphs. |
Custom MCP Server Configuration
The MCP server is configured using environment variables.
export SPANNER_PROJECT="<your-gcp-project-id>"
export SPANNER_INSTANCE="<your-spanner-instance-id>"
export SPANNER_DATABASE="<your-spanner-database-id>"
export SPANNER_DIALECT="googlesql" # Optional: "googlesql" or "postgresql". Defaults to "googlesql".
Add the following configuration to your MCP client (e.g., settings.json for Gemini CLI, mcp_config.json for Antigravity):
{
"mcpServers": {
"spanner": {
"command": "npx",
"args": ["-y", "@toolbox-sdk/server", "--prebuilt", "spanner", "--stdio"],
"env": {
"SPANNER_PROJECT": "your-project-id",
"SPANNER_INSTANCE": "your-instance-id",
"SPANNER_DATABASE": "your-database-name",
"SPANNER_DIALECT": "googlesql"
}
}
}
}
Documentation
For more information, visit the Cloud Spanner documentation.