Oracle 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 Oracle (beta)](https://www.cdata.com/download/download.aspx?sku=SOZK-V&type=beta).
Overview

What is Oracle MCP Server by CData?

Oracle MCP Server by CData is a read-only Model Context Protocol (MCP) server designed to allow large language models (LLMs) to query live data from Oracle databases using natural language, without the need for SQL.

How to use Oracle MCP Server?

To use the Oracle MCP Server, clone the repository, build the server, install the CData JDBC Driver for Oracle, configure your connection, and create a configuration file for your AI client (e.g., Claude Desktop).

Key features of Oracle MCP Server?

  • Provides a read-only interface for querying Oracle data.
  • Allows LLMs to retrieve live information using natural language queries.
  • Supports various data sources through the CData JDBC Driver.

Use cases of Oracle MCP Server?

  1. Querying live data from Oracle 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 Oracle MCP Server?

  • Can I write data using the Oracle MCP Server?

No, this server is read-only. For write capabilities, consider the CData MCP Server for Oracle (beta).

  • Is there a cost to use the Oracle MCP Server?

The server is free to use, but requires the CData JDBC Driver, which may have licensing requirements.

  • What types of queries can I run?

You can run natural language queries to retrieve data, such as asking for specific information or statistics from your Oracle database.

Server Config

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