
mcp neo4j memory server
一个使用 Neo4j 作为后端的知识图谱存储和检索的 MCP 服务器。
Repository Info
About This Server
一个使用 Neo4j 作为后端的知识图谱存储和检索的 MCP 服务器。
Model Context Protocol (MCP) - This server can be integrated with AI applications to provide additional context and capabilities, enabling enhanced AI interactions and functionality.
Documentation
Neo4j Memory Server
A Model Context Protocol (MCP) server that provides AI assistants with persistent, intelligent memory capabilities using Neo4j's graph database with unified architecture
What it does
This server enables AI assistants to:
- Remember - Store memories as interconnected knowledge nodes with observations and metadata
- Search - Find relevant memories using semantic vector search, exact matching, and graph traversal
- Connect - Create meaningful relationships between memories with batch operations and cross-references
- Organize - Separate memories by project using different databases
- Evolve - Track how knowledge develops over time with temporal metadata and relationship networks
Features
Core Capabilities
- 🧠 Graph Memory - Memories as nodes, relationships as edges, observations as content
- 🔍 Unified Search - Semantic vectors, exact matching, wildcards, and graph traversal in one tool
- 🔗 Smart Relations - Typed connections with strength, source tracking, and temporal metadata
- 📊 Multi-Database - Isolated project contexts with instant switching
Advanced Operations
- ⚡ Batch Operations - Create multiple memories with relationships in single request using localId
- 🎯 Context Control - Response detail levels: minimal (lists), full (complete data), relations-only
- 📅 Time Queries - Filter by relative ("7d", "30d") or absolute dates on any temporal field
- 🌐 Graph Traversal - Navigate networks in any direction with depth control
Architecture
- 🚀 MCP Native - Seamless integration with Claude Desktop and MCP clients
- 💾 Persistent Storage - Neo4j graph database with GDS plugin for vector operations
- ⚠️ Zero-Fallback - Explicit errors for reliable debugging, no silent failures
Technical Highlights
- Built on Neo4j for scalable graph operations
- Vector embeddings using sentence transformers (384 dimensions)
- Clean architecture with domain-driven design
- Supports GDS plugin for advanced vector operations (necessary)
- Unified Architecture - 4 comprehensive tools for complete memory operations
Quick Start
npm install @sylweriusz/mcp-neo4j-memory-server
Add to Claude Desktop config:
{
"mcpServers": {
"memory": {
"command": "npx",
"args": ["-y", "@sylweriusz/mcp-neo4j-memory-server"],
"env": {
"NEO4J_URI": "bolt://localhost:7687",
"NEO4J_USERNAME": "neo4j",
"NEO4J_PASSWORD": "your-password"
}
}
}
}
Neo4j Setup
Working setup: DozerDB with GDS Plugin
For the database, use DozerDB with the Graph Data Science plug-in, GDS is not only recommended but necessary:
For current installation instructions, see: https://dozerdb.org/
Example setup:
# Run DozerDB container with latest version
docker run \
-p 7474:7474 -p 7687:7687 \
-v $HOME/neo4j/data:/data \
-v $HOME/neo4j/logs:/logs \
-v $HOME/neo4j/plugins:/plugins \
--env NEO4J_AUTH=neo4j/password \
--env NEO4J_dbms_security_procedures_unrestricted='gds.*' \
graphstack/dozerdb:latest
# Install GDS plugin - see dozerdb.org for current instructions
# Verify GDS plugin works
# In Neo4j Browser (http://localhost:7474):
# RETURN gds.similarity.cosine([1,2,3], [2,3,4]) as similarity
Unified Tools
The server provides 4 unified MCP tools that integrate automatically with Claude:
memory_store- Create memories with observations and immediate relations in ONE operationmemory_find- Unified search/retrieval with semantic search, direct ID lookup, date filtering, and graph traversalmemory_modify- Comprehensive modification operations (update, delete, observations, relations)database_switch- Switch database context for isolated environments
Memory Structure
{
"id": "dZ$abc123",
"name": "Project Alpha",
"memoryType": "project",
"metadata": {"status": "active", "priority": "high"},
"observations": [
{"id": "dZ$obs456", "content": "Started development", "createdAt": "2025-06-08T10:00:00Z"}
],
"related": {
"ancestors": [{"id": "dZ$def789", "name": "Initiative", "relation": "PART_OF", "distance": 1}],
"descendants": [{"id": "dZ$ghi012", "name": "Task", "relation": "INCLUDES", "distance": 1}]
}
}
System Prompt
The simplest use of the memory tool, the following usually is more than enough.
## Memory Tool Usage
- Store all memory for this project in database: 'project-database-name'
- Use MCP memory tools exclusively for storing project-related information
- Begin each session by:
1. Switching to this project's database
2. Searching memory for data relevant to the user's prompt
Troubleshooting
Vector Search Issues:
- Check logs for
[VectorSearch] GDS Plugin detected - GDS Plugin requires DozerDB setup (see Neo4j Setup section)
Connection Issues:
- Verify Neo4j is running:
docker ps - Test connection:
curl http://localhost:7474 - Check credentials in environment variables
License
MIT
Quick Start
Clone the repository
git clone https://github.com/sylweriusz/mcp-neo4j-memory-serverInstall dependencies
cd mcp-neo4j-memory-server
npm installFollow the documentation
Check the repository's README.md file for specific installation and usage instructions.
Repository Details
Recommended MCP Servers
Discord MCP
Enable AI assistants to seamlessly interact with Discord servers, channels, and messages.
Knit MCP
Connect AI agents to 200+ SaaS applications and automate workflows.
Apify MCP Server
Deploy and interact with Apify actors for web scraping and data extraction.
BrowserStack MCP
BrowserStack MCP Server for automated testing across multiple browsers.
Zapier MCP
A Zapier server that provides automation capabilities for various apps.