Airtable MCP Server

Created By
feloresa year ago
An MCP server for interacting with Airtable - create, list, and search records, bases, and tables.
Overview

what is Airtable MCP Server?

Airtable MCP Server is a Model Context Protocol (MCP) server that enables interaction between AI models and Airtable databases, facilitating operations such as creating, listing, and searching records.

how to use Airtable MCP Server?

To use the Airtable MCP Server, clone the repository, install dependencies, configure your Airtable API key in the environment variables, and start the server.

key features of Airtable MCP Server?

  • Base & Table Management: List bases, browse tables, view schemas.
  • Record Operations: Create, list, and search records with options to filter and paginate.
  • Security: Secure API key management, rate limiting, and input validation.
  • Developer Features: TypeScript support, logging, and a comprehensive testing suite.

use cases of Airtable MCP Server?

  1. Automating data management tasks within Airtable.
  2. Integrating Airtable with AI systems for better data interactions.
  3. Enabling custom data operations for applications requiring Airtable database access.

FAQ from Airtable MCP Server?

  • What are the prerequisites to run Airtable MCP Server?

You need Node.js (v16 or higher), npm or yarn, an Airtable account, and an API key.

  • Is Airtable MCP Server secure?

Yes, it includes features such as rate limiting, input validation, and secure API key management.

  • Can I contribute to the project?

Yes! Fork the repository, create a feature branch, and submit a pull request to contribute.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
felores
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