MCP Server

Created By
JanithSilvaa year ago
MCP server that provides tools for metadata retrieval from SharePoint and entity retrieval from a Neo4j knowledge graph using semantic similarity search.
Overview

what is MCP Server?

MCP Server is a Python-based application designed to facilitate metadata retrieval from SharePoint and entity retrieval from a Neo4j knowledge graph using semantic similarity search.

how to use MCP Server?

To use MCP Server, clone the repository, set up a virtual environment, install the required dependencies, configure the necessary environment variables, and start the server to access its tools.

key features of MCP Server?

  • Metadata Retrieval: Fetches structured metadata from SharePoint's 'Documents' library.
  • Entity Retrieval: Queries a Neo4j knowledge graph using semantic similarity to find relevant entities and their relationships.
  • FastMCP Integration: Built on the FastMCP framework for efficient tool management and execution.

use cases of MCP Server?

  1. Retrieving and managing metadata from SharePoint for data analysis.
  2. Exploring relationships and entities within a Neo4j knowledge graph for research purposes.
  3. Integrating semantic search capabilities into applications that require knowledge graph interactions.

FAQ from MCP Server?

  • What are the prerequisites for using MCP Server?

You need Python 3.x, access to a Neo4j database, SharePoint credentials, and an OpenAI API key for semantic search.

  • Is MCP Server free to use?

Yes! MCP Server is open-source and free to use.

  • How can I contribute to MCP Server?

You can contribute by submitting issues or pull requests on the GitHub repository.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
JanithSilva
Star
0
Language
Python
License
-

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