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networkx-mcp-server

The first NetworkX integration for Model Context Protocol, enabling graph analysis and visualization directly in AI conversations. Supports 13 operations including centrality algorithms, community detection, PageRank, and graph visualization.

Author

MCP Server

Bright-L01

MIT License

Quick Info

GitHub GitHub Stars 8
NPM Weekly Downloads 0
Tools 1
Last Updated 2026-02-19

Tags

networkxgraphvisualizationnetworkx integrationserver networkxl01 networkx

NetworkX MCP Server

A comprehensive Model Context Protocol (MCP) server providing advanced graph analysis capabilities using NetworkX.

🚀 Features

  • Complete MCP Implementation: Full Model Context Protocol support with Tools, Resources, and Prompts
  • Modular Architecture: Clean, maintainable codebase with 35+ focused modules
  • Advanced Graph Analysis: Comprehensive suite of graph algorithms and analytics
  • Production Ready: Enterprise-grade security, monitoring, and scalability features
  • Developer Friendly: Extensive documentation, testing, and development tools

🏗️ Architecture

The server follows a clean modular architecture:

├── Core Layer          # Basic graph operations and MCP server
├── Handler Layer       # Function organization and re-exports
├── Advanced Layer      # Specialized algorithms and features
└── Supporting Layer    # Monitoring, security, and infrastructure

See ARCHITECTURE.md for detailed architectural documentation.

📦 Quick Start

Installation

git clone https://github.com/username/networkx-mcp-server.git
cd networkx-mcp-server
pip install -e .

Basic Usage

from networkx_mcp.server import create_graph, add_nodes, add_edges

# Create a graph
result = create_graph("my_graph", "undirected")

# Add nodes and edges
add_nodes("my_graph", ["A", "B", "C"])
add_edges("my_graph", [("A", "B"), ("B", "C")])

Running the Server

# Start the MCP server
python -m networkx_mcp

# Or use the development script
./run_tests.sh

🧪 Testing

The project maintains 80%+ test coverage with comprehensive test suites:

# Run all tests
pytest

# Run with coverage
pytest --cov=src/networkx_mcp --cov-report=html

# Run specific test categories
pytest tests/unit/          # Unit tests
pytest tests/integration/   # Integration tests
pytest tests/performance/   # Performance tests

📖 Documentation

  • Architecture Overview - Complete system architecture
  • Module Structure - Detailed module organization
  • Development Guide - Developer handbook
  • API Documentation - Detailed API reference

🤝 Contributing

We welcome contributions! Please see our Development Guide for:

  • Setting up the development environment
  • Code standards and conventions
  • Testing requirements
  • Submission guidelines

Quick Development Setup

# Install development dependencies
pip install -e ".[dev]"

# Install pre-commit hooks
pre-commit install

# Run the test suite
pytest

🏆 Quality Standards

This project maintains high quality standards:

  • Code Quality: Automated formatting with ruff, black, and isort
  • Type Safety: Comprehensive type hints with mypy validation
  • Security: Bandit security scanning and vulnerability checks
  • Testing: 80%+ test coverage with multiple test categories
  • Documentation: Comprehensive documentation and examples

📋 Requirements

  • Python 3.11+
  • NetworkX 3.0+
  • FastMCP (or compatible MCP implementation)

See pyproject.toml for complete dependency list.

🚀 Deployment

Docker

# Build and run with Docker
docker build -t networkx-mcp-server .
docker run -p 8000:8000 networkx-mcp-server

Kubernetes

# Deploy to Kubernetes
kubectl apply -f k8s/

See deployment documentation for production deployment guides.

📊 Performance

The server is optimized for performance:

  • Modular Design: Efficient memory usage and fast load times
  • Algorithm Optimization: Optimized implementations for large graphs
  • Monitoring: Built-in performance metrics and health checks
  • Scalability: Stateless design supporting horizontal scaling

🔒 Security

Security is a top priority:

  • Input Validation: Comprehensive input sanitization and validation
  • Access Control: Authentication and authorization layers
  • Audit Logging: Complete audit trail for security events
  • Vulnerability Scanning: Automated dependency vulnerability checks

📈 Monitoring

Built-in observability features:

  • Health Checks: Comprehensive health monitoring endpoints
  • Metrics: Performance and usage metrics collection
  • Tracing: Distributed tracing support
  • Logging: Structured logging with configurable levels

🗂️ Project Structure

networkx-mcp-server/
├── src/networkx_mcp/       # Main source code
│   ├── core/               # Core graph operations
│   ├── handlers/           # Function handlers
│   ├── advanced/           # Advanced algorithms
│   ├── monitoring/         # Monitoring and observability
│   └── security/           # Security features
├── tests/                  # Comprehensive test suite
├── docs/                   # Documentation
├── scripts/                # Development and deployment scripts
└── examples/               # Usage examples

📜 License

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

🙏 Acknowledgments

  • NetworkX team for the excellent graph analysis library
  • FastMCP team for the Model Context Protocol implementation
  • Contributors and users of this project

📞 Support


Built with ❤️ for the graph analysis community

See Also

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