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

What is SAP SuccessFactors MCP Server?

SAP SuccessFactors 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 SAP SuccessFactors using natural language, without the need for SQL.

How to use SAP SuccessFactors MCP Server?

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

Key features of SAP SuccessFactors MCP Server?

  • Provides a read-only interface to SAP SuccessFactors data.
  • Allows querying of live data using natural language.
  • Simplifies data access for LLMs without requiring SQL knowledge.

Use cases of SAP SuccessFactors MCP Server?

  1. Querying employee data from SAP SuccessFactors.
  2. Analyzing performance metrics through natural language queries.
  3. Integrating with AI clients for real-time data access.

FAQ from SAP SuccessFactors MCP Server?

  • Can I write data to SAP SuccessFactors using this server?

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

  • Is there a trial version available?

Yes, a free beta version is available for full read, write, update, delete, and action capabilities.

  • What is the licensing for this server?

The MCP server is licensed under the MIT License, allowing free use, modification, and distribution.

Server Config

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