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., "@Graph-ToolsExtract relationships from this data and create an interactive visualization."
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.
Graph Tools - Interactive Graph Analysis Toolkit
A comprehensive Ruby-based graph analysis toolkit with web visualizations and MCP server for AI-powered graph analysis.
🚀 Features
Core Graph Operations
Adjacency Matrix Support - Load from CSV, JSON, or TXT files
Graph Algorithms - DFS, BFS, neighbor finding with visual feedback
Multiple Export Formats - CSV matrices, JSON, interactive HTML
Command Line Interface - Full-featured CLI for batch operations
Interactive Visualizations
Enhanced Graph Visualizer - D3.js force-directed layouts with real-time interactions
Algorithm Visualization - Visual highlighting for DFS/BFS traversals
Interactive Editing - Add/remove nodes and edges with drag-and-drop
Matrix Export - Custom filename support for adjacency matrix downloads
Graph Statistics - Real-time node count, edge count, and density calculations
AI Integration
MCP Server - HTTP REST API and Claude Desktop MCP server
Automatic Visualization - Generate interactive graphs from structured data
Smart Data Processing - Extract relationships from various data formats
Centrality Analysis - Calculate degree, betweenness, closeness, eigenvector centrality
📦 Installation
Prerequisites
Ruby 2.7+ - Core graph operations
Node.js 16+ - MCP server functionality
Modern web browser - For interactive visualizations
Setup
git clone https://github.com/dromologue/Graph-Tools.git
cd Graph-Tools
# For local CLI usage
gem install
# Install MCP server dependencies
cd mcp-graph-server
npm install
cd ..
# For web application
npm install🔧 Usage
Command Line Interface
# Basic graph visualization
ruby graph_cli.rb matrix.csv
# With custom vertex labels
ruby graph_cli.rb -v "A,B,C,D" matrix.csv
# Run graph algorithms
ruby graph_cli.rb --dfs A --bfs B matrix.csv
# Export to web visualization
ruby graph_cli.rb -d matrix.csv
# Export to JSON
ruby graph_cli.rb -j output.json matrix.csvInteractive Visualizer
Local Usage:
Open
Files/enhanced-graph-visualizer.htmlin your browserLoad sample data or create your own graph
Run DFS/BFS operations with visual highlighting
Export matrices with custom filenames
Web Application:
Run
npm startand visithttp://localhost:3000Upload matrix files via drag-and-drop
Try sample data for quick testing
Get real-time analysis results
MCP Server Integration
HTTP REST API Mode
cd mcp-graph-server
npm run api
# Server runs on http://localhost:3001Claude Desktop Mode
Configure Claude Desktop (
~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"graph-server": {
"command": "node",
"args": ["/path/to/Graph-Tools/mcp-graph-server/api-server.js"],
"env": {
"SERVER_MODE": "mcp"
}
}
}
}Use natural language in Claude Desktop:
Analyze these relationships and create a graph visualization:
[
{"id": "Alice", "friends": ["Bob", "Carol"]},
{"id": "Bob", "friends": ["Alice", "David"]},
{"id": "Carol", "friends": ["Alice"]},
{"id": "David", "friends": ["Bob"]}
]📁 Project Structure
Graph-Tools/
├── graph.rb # Core Graph class
├── graph_cli.rb # Command line interface
├── server.js # Web application server
├── Files/ # Visualization files directory
│ └── enhanced-graph-visualizer.html # Interactive D3.js visualizer
├── public/ # Web application files
│ ├── index.html # Main web interface
│ └── mcp-documentation.html # API documentation
├── mcp-graph-server/ # MCP server
│ ├── api-server.js # Dual-mode MCP/HTTP server
│ ├── index.js # Original MCP server
│ ├── package.json # Node.js dependencies
│ ├── claude-config-example.json # Claude Desktop config example
│ └── data/ # Generated files (matrices, visualizations)
├── Gemfile # Ruby dependencies
├── package.json # Node.js web server dependencies
└── README.md # This fileAPI Endpoints
The MCP server provides both MCP protocol and HTTP REST API:
POST /api/analyze-relationships- Extract relationships from dataPOST /api/create-adjacency-matrix- Build matrices from relationship pairsPOST /api/calculate-centrality- Compute network centrality measuresPOST /api/analyze-network-structure- Comprehensive network analysisGET /health- Health check endpoint
See /mcp-documentation.html for complete API documentation with examples.
Quick Start
1. Create a Graph Visually
# Open the Enhanced Graph Visualizer
open "Files/enhanced-graph-visualizer.html"In the enhanced visualizer:
Add vertices by typing names and clicking "Add Node"
Click two nodes to select them, then click "Add Edge"
Drag nodes to reposition them
Run DFS/BFS operations and see visual highlights
Export as CSV matrix when done
2. Analyze Your Graph
# Basic analysis
ruby graph_cli.rb your_graph.csv
# With custom vertex names
ruby graph_cli.rb -v "Alice,Bob,Carol,David" your_graph.csv
# Specific operations
ruby graph_cli.rb -v "Alice,Bob,Carol,David" --dfs Alice your_graph.csv
ruby graph_cli.rb -v "Alice,Bob,Carol,David" --bfs Bob your_graph.csv
ruby graph_cli.rb -v "Alice,Bob,Carol,David" --neighbors Carol your_graph.csv3. Export for Visualization
# Export for D3.js editor (interactive)
ruby graph_cli.rb -v "Alice,Bob,Carol,David" -d your_graph.csv
# Export JSON for programmatic use
ruby graph_cli.rb -v "Alice,Bob,Carol,David" -j output.json your_graph.csvCommand Reference
CLI Options
ruby graph_cli.rb [options] matrix_file
Options:
-v, --vertices LABELS # Comma-separated vertex labels
-f, --format FORMAT # Output format (text, matrix, json)
-j, --export-json FILE # Export to JSON file
-d, --d3 # Export for D3.js visualization
--dfs VERTEX # Perform DFS traversal
--bfs VERTEX # Perform BFS traversal
--neighbors VERTEX # Show neighbors
--path FROM,TO # Check edge existenceSupported File Formats
CSV:
0,1,0\n1,0,1\n0,1,0TXT:
0 1 0\n1 0 1\n0 1 0(space-separated)JSON:
{"matrix": [[0,1,0],[1,0,1],[0,1,0]]}
MCP Server Tools
The MCP server provides these tools for AI assistants:
analyze_relationships- Extract relationships from structured data and create visualizationscreate_adjacency_matrix- Build matrices from relationship pairscalculate_centrality- Compute network centrality measures (degree, betweenness, closeness, eigenvector)analyze_network_structure- Comprehensive network analysis combining relationship extraction and centrality
Performance
Graph creation: Sub-second for graphs up to 100 nodes
DFS/BFS: Linear time complexity O(V + E)
Visualization: Handles 50+ nodes smoothly in D3.js
File formats: All formats (CSV, JSON, TXT) supported efficiently
HTTP API: Fast response times for network analysis
Error Handling
The tools provide comprehensive error handling for:
Invalid matrix formats
Non-existent vertices in operations
Malformed input files
Missing dependencies
API validation errors
Contributing
The codebase follows clean architecture principles with separation of concerns:
Core graph operations in Ruby
Web interface with modern JavaScript
MCP server for AI integration
Comprehensive API documentation
This server cannot be installed
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.