networkx-mcp-server
πΈοΈ First NetworkX MCP server for graph analysis in AI conversations | Community & Enterprise editions | Graph algorithms β’ Network analysis β’ MCP integration
- β’ Most MCP protocol features implemented (32/40)
- β’ Room for improvement in GitHub community
- β’ Optimal dependency management (20/20)
- β’ Full deployment maturity (10/10)
- β’ Documentation (8/8)
- β’ Archestra MCP Trust score badge is missing
{
"networkx_mcp": {
"command": "python",
"args": [
"-m",
"networkx_mcp"
],
"env": {}
},
"networkx-mcp-server-docker": {
"command": "docker",
"args": [
"run",
"-p",
"8000:8000",
"networkx-mcp-server"
],
"env": {}
}
}NetworkX MCP Server
A comprehensive Model Context Protocol (MCP) server providing advanced graph analysis capabilities using NetworkX.
π 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
ποΈ Architecture
The server follows a clean modular architecture:
βββ Core Layer # Basic graph operations and MCP server
βββ Handler Layer # Function organization and re-exports
βββ Advanced Layer # Specialized algorithms and features
βββ Supporting Layer # Monitoring, security, and infrastructure
See ARCHITECTURE.md for detailed architectural documentation.
π¦ 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
π§ͺ 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
π Documentation
- Architecture Overview - Complete system architecture
- Module Structure - Detailed module organization
- Development Guide - Developer handbook
- API Documentation - Detailed API reference
π€ 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
π 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
π Requirements
- Python 3.11+
- NetworkX 3.0+
- FastMCP (or compatible MCP implementation)
See pyproject.toml for complete dependency list.
π 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.
π 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
π 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
π 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
ποΈ Project Structure
networkx-mcp-server/
βββ src/networkx_mcp/ # Main source code
β βββ core/ # Core graph operations
β βββ handlers/ # Function handlers
β βββ advanced/ # Advanced algorithms
β βββ monitoring/ # Monitoring and observability
β βββ security/ # Security features
βββ tests/ # Comprehensive test suite
βββ docs/ # Documentation
βββ scripts/ # Development and deployment scripts
βββ examples/ # Usage examples
π License
This project is licensed under the MIT License - see the LICENSE file for details.
π Acknowledgments
- NetworkX team for the excellent graph analysis library
- FastMCP team for the Model Context Protocol implementation
- Contributors and users of this project
π Support
- Issues: GitHub Issues
- Discussions: GitHub Discussions
- Documentation: Project Documentation
Built with β€οΈ for the graph analysis community
[](https://archestra.ai/mcp-catalog/bright-l01__networkx-mcp-server)NetworkX MCP Server
A comprehensive Model Context Protocol (MCP) server providing advanced graph analysis capabilities using NetworkX.
π 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
ποΈ Architecture
The server follows a clean modular architecture:
βββ Core Layer # Basic graph operations and MCP server
βββ Handler Layer # Function organization and re-exports
βββ Advanced Layer # Specialized algorithms and features
βββ Supporting Layer # Monitoring, security, and infrastructure
See ARCHITECTURE.md for detailed architectural documentation.
π¦ 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
π§ͺ 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
π Documentation
- Architecture Overview - Complete system architecture
- Module Structure - Detailed module organization
- Development Guide - Developer handbook
- API Documentation - Detailed API reference
π€ 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
π 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
π Requirements
- Python 3.11+
- NetworkX 3.0+
- FastMCP (or compatible MCP implementation)
See pyproject.toml for complete dependency list.
π 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.
π 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
π 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
π 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
ποΈ Project Structure
networkx-mcp-server/
βββ src/networkx_mcp/ # Main source code
β βββ core/ # Core graph operations
β βββ handlers/ # Function handlers
β βββ advanced/ # Advanced algorithms
β βββ monitoring/ # Monitoring and observability
β βββ security/ # Security features
βββ tests/ # Comprehensive test suite
βββ docs/ # Documentation
βββ scripts/ # Development and deployment scripts
βββ examples/ # Usage examples
π License
This project is licensed under the MIT License - see the LICENSE file for details.
π Acknowledgments
- NetworkX team for the excellent graph analysis library
- FastMCP team for the Model Context Protocol implementation
- Contributors and users of this project
π Support
- Issues: GitHub Issues
- Discussions: GitHub Discussions
- Documentation: Project Documentation
Built with β€οΈ for the graph analysis community