π MCP Server - Vector Search
@omarguzmanm
About π MCP Server - Vector Search
MCP Server to improve LLM context through vector search.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"mcp-server-vector-search": {
"command": "uv",
"args": [
"venv"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is π MCP Server - Vector Search?
A Model Context Protocol server built with FastMCP that combines Neo4jβs graph database with vector search using embeddings. It enables intelligent semantic search across a knowledge graph through natural language queries, designed for MCP clients such as Claude AI.
How to use π MCP Server - Vector Search?
After cloning the repository, create a virtual environment with uv, install dependencies (fastmcp, neo4j, openai, python-dotenv, sentence-transformers, pydantic), configure a .env file with Neo4j credentials and an optional OpenAI API key, and create a vector index in Neo4j. Launch the server with python main.py. The server exposes one tool: vector_search_neo4j(prompt), which converts a natural language query into an embedding and searches the vector index for semantically similar nodes.
Key features of π MCP Server - Vector Search
- Converts natural language queries into 1536βdimensional embeddings via OpenAI.
- Searches a Neo4j vector index for semantically similar nodes.
- Returns ranked results with similarity scores.
- Built on FastMCP for minimal overhead and MCP protocol compliance.
- Uses uv for 10β100x faster dependency resolution.
- Supports fallback to a local
all-MiniLM-L6-v2embedding model.
Use cases of π MCP Server - Vector Search
- Semantic document retrieval from a Neo4j knowledge graph.
- Finding contextually relevant graph-connected information using plain language.
- Integrating intelligent search into MCPβcompatible AI assistants (e.g., Claude Desktop).
- Building RAGβstyle applications that combine graph traversal with vector similarity.
FAQ from π MCP Server - Vector Search
What are the runtime requirements?
Python 3.8+, Neo4j 5.0+ with the APOC plugin, and either an OpenAI API key (for the default 1536βdimension embeddings) or the sentence-transformers library for a local fallback model.
Where does the data live?
All data β nodes, their embedding properties, and the vector index β is stored inside a Neo4j database. The server only reads from and writes to that database.
Is an OpenAI API key required?
No. If OPENAI_API_KEY is not set in .env, the server falls back to the local all-MiniLM-L6-v2 model from sentence-transformers.
What vector index must exist in Neo4j?
A vector index named embeddableIndex on nodes labeled Document with property embedding, dimension 1536, and cosine similarity. If using the local fallback model, adjust the dimension accordingly.
How do I troubleshoot a missing vector index?
Use Cypher SHOW INDEXES to verify existence, and reβcreate it with the CREATE VECTOR INDEX command shown in the Quick Start.
More Memory & Knowledge MCP servers
Rust Docs MCP Server
Govcraftπ¦ Prevents outdated Rust code suggestions from AI assistants. This MCP server fetches current crate docs, uses embeddings/LLMs, and provides accurate context via a tool call.
Mcp Knowledge Graph
shanehollomanMCP server enabling persistent memory for Claude through a local knowledge graph - fork focused on local development
Ultimate Google Docs & Drive MCP Server
a-bonusThe Ultimate Google Docs, Sheets, Drive, Gmail, & Google Calendar MCP Server. This MCP (primarily for use in Claude Desktop) gains full access to your google suite and lets claude do its thing.
Anytype MCP Server
anyprotoAn MCP server enabling AI assistants to interact with Anytype - your encrypted, local and collaborative wiki - to organize objects, lists, and more through natural language.
MCP Apple Notes
RafalWilinskiTalk with your notes in Claude. RAG over your Apple Notes using Model Context Protocol.
Comments