Qdrant Neo4j Crawl4AI MCP Server
Provides integration with Neo4j graph database for knowledge graph and memory systems, enabling graph queries and reasoning.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@Qdrant Neo4j Crawl4AI MCP Serversearch for artificial intelligence insights"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Qdrant Neo4j Crawl4AI MCP Server
Production-ready agentic RAG MCP server combining Qdrant vector search, Neo4j knowledge graphs, and Crawl4AI web intelligence with autonomous orchestration capabilities
π― What is This?
This is an Agentic RAG (Retrieval-Augmented Generation) MCP Server that provides intelligent, autonomous coordination of multiple AI services through a single Model Context Protocol interface. It combines:
Vector Intelligence: Semantic search and embedding storage via Qdrant
Graph Intelligence: Knowledge graphs and memory systems via Neo4j
Web Intelligence: Smart web crawling and content extraction via Crawl4AI
Agentic Orchestration: Autonomous query routing and result fusion
Production-Ready: Enterprise security, monitoring, and deployment patterns
Related MCP server: Modular RAG MCP Server
ποΈ Architecture
graph TB
Client[AI Assistant Client] --> Gateway[FastMCP Gateway]
subgraph "Qdrant Neo4j Crawl4AI MCP Server"
Gateway --> Router[Request Router]
Router --> Vector[Vector Service]
Router --> Graph[Graph Service]
Router --> Web[Web Intelligence Service]
Vector --> |mount: /vector| QdrantMCP[Qdrant MCP Server]
Graph --> |mount: /graph| Neo4jMCP[Neo4j Memory MCP]
Web --> |mount: /web| Crawl4AIMCP[Crawl4AI MCP Server]
end
subgraph "Data Layer"
QdrantMCP --> QdrantDB[(Qdrant Vector DB)]
Neo4jMCP --> Neo4jDB[(Neo4j Graph DB)]
Crawl4AIMCP --> WebSources[Web Data Sources]
endβ‘ Technology Stack
FastMCP 2.0: Server composition and MCP protocol handling
Python 3.11+: Modern async patterns and type safety
Qdrant: Vector database for semantic search
Neo4j: Graph database for knowledge representation
Crawl4AI: Web intelligence and content extraction
Docker: Containerized deployment with health checks
π Quick Start
Prerequisites
Python 3.11+
uv (recommended) or pip
Docker & Docker Compose
Installation
# Clone the repository
git clone https://github.com/BjornMelin/qdrant-neo4j-crawl4ai-mcp.git
cd qdrant-neo4j-crawl4ai-mcp
# Install dependencies
uv sync
# Set up environment
cp .env.example .env
# Edit .env with your configuration
# Run with Docker
docker-compose up -d
# Or run locally
uv run python -m qdrant_neo4j_crawl4ai_mcpConfiguration
Key environment variables:
# Server Configuration
MCP_SERVER_HOST=localhost
MCP_SERVER_PORT=8000
JWT_SECRET_KEY=your-secure-secret-key
# Database Configuration
QDRANT_URL=http://localhost:6333
NEO4J_URI=bolt://localhost:7687
NEO4J_USER=neo4j
NEO4J_PASSWORD=password
# Security
RATE_LIMIT_PER_MINUTE=100
CORS_ORIGINS=https://your-domain.comπ» Development
Testing
# Run all tests
uv run pytest
# Run with coverage
uv run pytest --cov=qdrant_neo4j_crawl4ai_mcp --cov-report=html
# Run specific test suite
uv run pytest tests/integration/Code Quality
# Format code
uv run ruff format .
# Lint code
uv run ruff check . --fix
# Type checking
uv run mypy .π API Documentation
Once running, access the interactive API documentation at:
Swagger UI: http://localhost:8000/docs
ReDoc: http://localhost:8000/redoc
Example Usage
import asyncio
from qdrant_neo4j_crawl4ai_mcp.client import QdrantNeo4jCrawl4AIMCPClient
async def main():
client = QdrantNeo4jCrawl4AIMCPClient("http://localhost:8000")
# Vector search
results = await client.vector_search("artificial intelligence")
# Graph query
memories = await client.graph_query("MATCH (n:Memory) RETURN n LIMIT 10")
# Web crawling
content = await client.web_crawl("https://example.com")
asyncio.run(main())π¦ Deployment
Docker Deployment
# Production build
docker build -t qdrant-neo4j-crawl4ai-mcp .
docker run -p 8000:8000 qdrant-neo4j-crawl4ai-mcpCloud Deployment
Railway: One-click deployment via railway.app
Fly.io: Global edge deployment
AWS: ECS/Lambda deployment with CDK
π Complete Documentation
π Getting Started
π Documentation Hub - Complete navigation guide
β‘ Quick Start - 5-minute setup
π§ Installation Guide - Detailed setup
βοΈ Configuration - Environment setup
π― First Queries - Learn the system
π User Guides
π Vector Search Guide - Semantic similarity search
πΈοΈ Knowledge Graph Guide - Graph reasoning
π Web Intelligence Guide - Real-time web data
π€ Agentic Workflows - Multi-modal intelligence
π§ Technical Reference
π API Reference - Complete REST API docs
ποΈ Architecture - System design overview
π Security Guide - Enterprise security
π Monitoring Setup - Production monitoring
π’ Deployment & Operations
π Deployment Operations - Production deployment
βΈοΈ Kubernetes Guide - Container orchestration
π³ Docker Guide - Containerized deployment
βοΈ Cloud Platforms - Railway, Fly.io, etc.
π» Development & Contributing
π¨βπ» Developer Guide - Complete dev workflow
π§ͺ Testing Framework - Unit & integration tests
π¨ Contributing Guidelines - How to contribute
π§ Local Development - Dev environment setup
π Examples & Tutorials
π Examples Hub - Code examples & tutorials
π° Basic Usage - Simple queries
π Advanced Workflows - Complex patterns
π± Client SDKs - Multiple languages
For detailed deployment guides, see π’ Deployment Operations.
π Security & Compliance
JWT Authentication: Secure token-based authentication with refresh tokens
Rate Limiting: Redis-backed distributed request throttling
OWASP Compliance: Following API security best practices and security headers
Input Validation: Comprehensive Pydantic-based request sanitization
Audit Logging: Security event tracking with structured logging
Enterprise Security: Complete security hardening guide
π Monitoring & Observability
Health Checks: Multi-layer
/healthendpoints with dependency validationStructured Logging: JSON logs with correlation IDs and context
Prometheus Metrics: Custom business and infrastructure metrics
Grafana Dashboards: Pre-built dashboards for monitoring
Error Tracking: Sentry integration for error reporting
Distributed Tracing: Request flow visualization across services
Setup Guide: π Monitoring & Observability
π€ Contributing
We welcome contributions! Please see our Contributing Guidelines for details.
Quick Start for Contributors
# 1. Fork and clone the repository
git clone https://github.com/BjornMelin/qdrant-neo4j-crawl4ai-mcp.git
cd qdrant-neo4j-crawl4ai-mcp
# 2. Set up development environment
uv sync --dev
uv run pre-commit install
# 3. Run tests to verify setup
uv run pytest
# 4. Start development server
docker-compose up -d
uv run python -m qdrant_neo4j_crawl4ai_mcpDetailed Setup: π» Developer Guide
π License
This project is licensed under the MIT License - see the LICENSE file for details.
π― Project Goals
This project demonstrates:
Modern Python Patterns: Async programming, type safety, and current ecosystem tools
AI/ML Integration: Vector databases, knowledge graphs, and web intelligence
Production Engineering: Security, monitoring, testing, and deployment automation
Clean Architecture: Composable services with clear abstractions
DevOps Excellence: Container orchestration, CI/CD, and infrastructure as code
π§ Contact
Author: [Your Name]
Email: [your.email@example.com]
LinkedIn: [linkedin.com/in/yourprofile]
Portfolio: [yourportfolio.com]
Built with β using FastMCP 2.0, Qdrant, Neo4j, and Web Intelligence
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Maintenance
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