Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Qdrant Neo4j Crawl4AI Server

FreeNot checked

Enables autonomous orchestration of vector search, knowledge graph queries, and web crawling through a single MCP interface, providing agentic RAG capabilities

GitHubEmbed

About

Enables autonomous orchestration of vector search, knowledge graph queries, and web crawling through a single MCP interface, providing agentic RAG capabilities for AI assistants.

README

Production Ready FastMCP 2.0 Python 3.11+ License: MIT

Production-ready agentic RAG MCP server combining Qdrant vector search, Neo4j knowledge graphs, and Crawl4AI web intelligence with autonomous orchestration capabilities

🎯 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

🏗️ 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]
    end

⚡ 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

🚀 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_mcp

Configuration

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.com

💻 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 .

📚 API Documentation

Once running, access the interactive API documentation at:

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())

📦 Deployment

Docker Deployment

# Production build
docker build -t qdrant-neo4j-crawl4ai-mcp .
docker run -p 8000:8000 qdrant-neo4j-crawl4ai-mcp

Cloud Deployment

  • Railway: One-click deployment via railway.app
  • Fly.io: Global edge deployment
  • AWS: ECS/Lambda deployment with CDK

📚 Complete Documentation

🚀 Getting Started

📖 User Guides

🔧 Technical Reference

🚢 Deployment & Operations

💻 Development & Contributing

📝 Examples & Tutorials

For detailed deployment guides, see 🚢 Deployment Operations.

🔒 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

📊 Monitoring & Observability

  • Health Checks: Multi-layer /health endpoints with dependency validation
  • Structured 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: 📊 Monitoring & Observability

🤝 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_mcp

Detailed Setup: 💻 Developer Guide

📄 License

This project is licensed under the MIT License - see the LICENSE file for details.

🎯 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

📧 Contact

  • Author: [Your Name]
  • Email: [[email protected]]
  • LinkedIn: [linkedin.com/in/yourprofile]
  • Portfolio: [yourportfolio.com]

Built with ☕ using FastMCP 2.0, Qdrant, Neo4j, and Web Intelligence

from github.com/BjornMelin/qdrant-neo4j-crawl4ai-mcp

Install Qdrant Neo4j Crawl4AI Server in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install qdrant-neo4j-crawl4ai-mcp-server

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add qdrant-neo4j-crawl4ai-mcp-server -- uvx --from git+https://github.com/BjornMelin/qdrant-neo4j-crawl4ai-mcp qdrant-neo4j-crawl4ai-mcp

FAQ

Is Qdrant Neo4j Crawl4AI Server MCP free?

Yes, Qdrant Neo4j Crawl4AI Server MCP is free — one-click install via Unyly at no cost.

Does Qdrant Neo4j Crawl4AI Server need an API key?

No, Qdrant Neo4j Crawl4AI Server runs without API keys or environment variables.

Is Qdrant Neo4j Crawl4AI Server hosted or self-hosted?

A hosted option is available: Unyly runs the server in the cloud, no local setup required.

How do I install Qdrant Neo4j Crawl4AI Server in Claude Desktop, Claude Code or Cursor?

Open Qdrant Neo4j Crawl4AI Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Qdrant Neo4j Crawl4AI Server with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All ai MCPs