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🛠️ Google Drive tool MCP server 💪 all 17 operations

David AshbyDavid Ashby
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2/3/2026
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Complete MCP server exposing all Google Drive Tool operations to AI agents. Zero configuration needed - all 17 operations pre-built.

⚡ Quick Setup

  1. Import this workflow into your n8n instance
  2. Activate the workflow to start your MCP server
  3. Copy the webhook URL from the MCP trigger node
  4. Connect AI agents using the MCP URL

🔧 How it Works

MCP Trigger: Serves as your server endpoint for AI agent requests • Tool Nodes: Pre-configured for every Google Drive Tool operation • AI Expressions: Automatically populate parameters via $fromAI() placeholders • Native Integration: Uses official n8n Google Drive Tool tool with full error handling

📋 Available Operations (17 total)

Every possible Google Drive Tool operation is included:

📄 File (8 operations)

Copy fileCreate file from textDelete a fileDownload fileMove fileShare fileUpdate fileUpload file

🔧 Filefolder (1 operations)

Search files and folders

📁 Folder (3 operations)

Create folderDelete folderShare folder

🔧 Drive (5 operations)

Create shared driveDelete shared driveGet shared driveGet many shared drivesUpdate shared drive

🤖 AI Integration

Parameter Handling: AI agents automatically provide values for: • Resource IDs and identifiers • Search queries and filters • Content and data payloads • Configuration options

Response Format: Native Google Drive Tool API responses with full data structure

Error Handling: Built-in n8n error management and retry logic

💡 Usage Examples

Connect this MCP server to any AI agent or workflow:

Claude Desktop: Add MCP server URL to configuration • Custom AI Apps: Use MCP URL as tool endpoint • Other n8n Workflows: Call MCP tools from any workflow • API Integration: Direct HTTP calls to MCP endpoints

✨ Benefits

Complete Coverage: Every Google Drive Tool operation available • Zero Setup: No parameter mapping or configuration needed • AI-Ready: Built-in $fromAI() expressions for all parameters • Production Ready: Native n8n error handling and logging • Extensible: Easily modify or add custom logic

> 🆓 Free for community use! Ready to deploy in under 2 minutes.

n8n Google Drive Tool (MCP Server) - All 17 Operations

This workflow serves as a foundational Model Context Protocol (MCP) server trigger, designed to integrate with AI agents and provide access to a Google Drive tool. While the workflow currently only contains the trigger node, it is intended to be the starting point for a comprehensive suite of Google Drive operations.

What it does

  1. Listens for MCP Requests: The workflow initiates with an "MCP Server Trigger" node, which actively listens for incoming requests from AI agents or other systems adhering to the Model Context Protocol.
  2. Provides Google Drive Tool Access (Intended): Although not yet implemented in the provided JSON, this trigger is designed to expose a Google Drive tool to the MCP agent, allowing the agent to perform various operations on Google Drive.

Prerequisites/Requirements

  • n8n Instance: An active n8n instance to run this workflow.
  • Model Context Protocol (MCP) Agent: An AI agent or system capable of communicating via the Model Context Protocol to interact with this server.
  • Google Drive Account & Credentials: (Intended) For the full functionality of Google Drive operations, a Google Drive account and corresponding n8n credentials will be required once the Google Drive nodes are added.

Setup/Usage

  1. Import the workflow: Import the provided JSON into your n8n instance.
  2. Activate the workflow: Ensure the workflow is activated to start listening for incoming MCP requests.
  3. Configure MCP Agent: Configure your MCP-compliant AI agent to send requests to the endpoint exposed by this n8n workflow's MCP Server Trigger.
  4. Extend with Google Drive Nodes: To enable actual Google Drive operations, you will need to extend this workflow by adding the relevant Google Drive nodes (e.g., "Google Drive" node for various operations like upload, download, list files, create folders, etc.) and configure them with your Google Drive credentials.

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