Access MCP Server by CData

Created By
CDataSoftwarea year ago
This project builds a read-only MCP server. For full read, write, update, delete, and action capabilities and a simplified setup, check out our free [CData MCP Server for Access (beta)](https://www.cdata.com/download/download.aspx?sku=DCZK-V&type=beta).
Overview

What is Access MCP Server by CData?

Access MCP Server by CData is a read-only server that allows LLMs (like Claude Desktop) to query live data from Access databases using the CData JDBC Driver for Access. It simplifies data access by enabling natural language queries without requiring SQL.

How to use Access MCP Server?

To use the Access MCP Server, clone the repository, build the server, install the CData JDBC Driver, configure your connection, and create a configuration file for your AI client. Finally, run the server and interact with it using natural language queries.

Key features of Access MCP Server?

  • Read-only access to Access databases via a simple MCP interface.
  • Natural language querying capabilities for LLMs.
  • Integration with CData JDBC Driver for seamless data access.

Use cases of Access MCP Server?

  1. Querying live data from Access databases using natural language.
  2. Integrating with AI clients like Claude Desktop for enhanced data interaction.
  3. Simplifying data access for non-technical users.

FAQ from Access MCP Server?

  • Can I write data using this server?

No, this server is read-only. For write capabilities, consider the full CData MCP Server for Access.

  • Is there a trial version available?

Yes, you can download a trial version of the CData JDBC Driver for Access.

  • What types of queries can I run?

You can run natural language queries to retrieve data, such as asking for correlations or counts based on your data.

Server Config

{
  "mcpServers": {
    "{classname_dash}": {
      "command": "PATH\\TO\\java.exe",
      "args": [
        "-jar",
        "PATH\\TO\\CDataMCP-jar-with-dependencies.jar",
        "PATH\\TO\\access.prp"
      ]
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
CDataSoftware
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