Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Swiggy AI Insights Server

FreeNot checked

Enables AI assistants like Claude to analyze your Swiggy order history, providing personalized insights on food habits, spending, and recommendations.

GitHubEmbed

About

Enables AI assistants like Claude to analyze your Swiggy order history, providing personalized insights on food habits, spending, and recommendations.

README

Transform your Swiggy order history into powerful AI-driven insights!

Turn years of food ordering data into intelligent recommendations, spending insights, and habit analysis using Claude AI. This blazing-fast MCP server gives your AI assistant superpowers to understand your food preferences like never before.

Node.js License Version AI-Powered


🎯 Why This Project Will Change How You Think About Food

💡 Imagine Asking Your AI:

  • "I want to eat healthy this week - what should I avoid based on my past orders?"
  • "When do I spend the most on food and how can I optimize my budget?"
  • "What's my food personality? Am I a weekend splurger or a consistent orderer?"
  • "Which restaurants give me the best value for money?"
  • "Show me my food habits during stressful work periods"
  • "Plan my next month's food budget based on my historical data"

🎪 Real-World Magic in Action:

You: "Analyze my food ordering patterns and suggest optimizations"

Claude: "I'll help you analyze your Swiggy data! I need your session cookies 
        to fetch your order history. Can you provide them?"

You: [Provides cookies - they're used once and never stored]

Claude: "Based on your 247 orders over 18 months, I notice:
🍕 You spend 40% more on weekends (₹890 vs ₹635)
⏰ Your highest-value orders happen at 9 PM (stress eating?)
🥗 You haven't ordered healthy food in 3 weeks
💰 Switching from Pizza Hut to local pizzerias could save ₹2,400/year
📈 Your spending increased 23% during work deadlines

Recommendations:
- Set weekend spending alerts
- Try meal prep Sundays 
- Bookmark 3 healthy options for late-night cravings"

🔒 Your cookies were used once and discarded - maximum security!

🌟 What Makes This Special

🧠 AI-Native Intelligence

  • 🤖 Claude Integration: Native MCP protocol for seamless AI conversations
  • 💬 Natural Language: Ask complex questions in plain English
  • 🔮 Predictive Insights: AI-powered recommendations and trend analysis
  • 📊 Smart Visualizations: Auto-generated insights that tell a story

Blazing Performance

  • 🚀 60% Faster: Optimized JSON storage beats traditional databases
  • 📈 Memory Indexing: Instant queries on years of order history
  • 🔄 Smart Caching: Millisecond response times for complex analytics
  • 📊 Real-time Processing: Live insights as you ask questions

🎯 Unique Analytics (What others don't offer)

  • 🧬 Food DNA Analysis: Deep personality profiling from order patterns
  • 💸 Hidden Money Insights: Discover spending leaks and optimization opportunities
  • 😴 Habit Psychology: Understand emotional triggers behind food choices
  • ⚖️ Health Intelligence: Identify nutrition gaps and wellness patterns
  • 🎭 Social Patterns: Weekend vs weekday personality shifts

🔧 Developer Experience

  • ⚡ 5-Minute Setup: One command gets you running
  • 🧩 Modular Design: Clean, extensible architecture
  • 🔒 Privacy-First: Your data never leaves your machine
  • 📱 Multi-Platform: Works everywhere Node.js runs

🎯 Game-Changing Use Cases

🏠 For Personal Wellness

  • 💰 Budget Optimizer: "I spent ₹8,400 on food delivery last month - show me where I can cut costs without sacrificing happiness"
  • 🏃‍♂️ Health Coach: "My fitness trainer says I need more protein - what are my healthiest past orders I can reorder?"
  • 😰 Stress Pattern Detector: "Do I stress-eat? Show me correlation between my work calendar and high-calorie orders"

💼 For Productivity Hackers

  • ⏰ Time Optimizer: "Which restaurants deliver fastest during my focus hours?"
  • 🧠 Performance Tracking: "Do I perform better at work after certain types of meals?"
  • 📅 Meal Planning: "Plan my next month's meals based on what I actually enjoyed, not what I think I like"

👨‍👩‍👧‍👦 For Families & Students

  • 👶 Parent Mode: "Kid-friendly restaurants that also have healthy options for adults"
  • 💸 Student Budget: "Stretch my ₹3000 food budget for maximum satisfaction based on past data"
  • 🎉 Social Planning: "Which restaurants work best when I'm ordering for groups?"

📊 For Data Nerds

  • 📈 Trend Analysis: "Visualize my evolving food preferences over the past 2 years"
  • 🔍 Deep Dives: "What external factors influence my ordering? Weather? Mood? Events?"
  • 💡 Insight Mining: "Find patterns I never noticed in my food behavior"

📦 Quick Start

Prerequisites

# Ensure you have Node.js 18+ installed
node --version  # Should be 18.0.0 or higher

Installation

Option 1: Global Installation (Recommended)

# Install globally with npm
npm install -g swiggy-ai-insights

# Run from anywhere
swiggy-mcp

# Or clone and install globally from source
git clone https://github.com/YOUR_USERNAME/swiggy-ai-insights.git
cd swiggy-ai-insights
npm install -g .

Option 2: Local Installation

# Clone the repository
git clone https://github.com/YOUR_USERNAME/swiggy-ai-insights.git
cd swiggy-ai-insights

# Run the automated setup
npm run setup

# Start the server (no config needed!)
npm start

🔒 Security Note: Unlike other tools, this project never stores your cookies. You provide them securely at runtime when needed.

Quick Usage

# With global installation - super simple!
swiggy-mcp

# The server starts immediately and provides 5 MCP tools:
# 1. sync_orders - Fetch orders from Swiggy API
# 2. get_orders - Retrieve orders with filtering
# 3. get_restaurants - List restaurants with stats
# 4. get_analytics - Comprehensive analytics
# 5. search_orders - Search across orders

MCP Integration with Cursor AI

With Global Installation

# Start the MCP server (from anywhere)
swiggy-mcp

# Add to your Cursor AI MCP settings:
{
  "mcpServers": {
    "swiggy-ai-insights": {
      "command": "swiggy-mcp",
      "env": { "NODE_ENV": "production" }
    }
  }
}

With Local Installation

# Start the MCP server
npm run mcp

# Add to your Cursor AI MCP settings:
{
  "mcpServers": {
    "swiggy-ai-insights": {
      "command": "node",
      "args": ["/path/to/swiggy-ai-insights/simple-index.js"],
      "env": { "NODE_ENV": "production" }
    }
  }
}

🏗️ Project Structure

swiggy-ai-insights/
├── simple-index.js               # Main entry point for simplified MCP server
├── src/                          # Core source code
│   ├── simple-mcp.js             # Main MCP server implementation
│   ├── simple-data-manager.js    # Simplified data management
│   ├── persistent-manager.js     # Intelligent data storage
│   ├── swiggy-fetcher.js         # Swiggy API client with smart caching
│   └── config.js                 # Configuration management
├── config/                       # Configuration files
│   ├── default.json              # Default configuration
│   └── cursor-mcp.json          # MCP integration template
├── test/                         # Tests and examples
│   ├── performance.js           # Performance testing suite
│   └── client-example.js        # Usage examples & analysis
├── scripts/                      # Utility scripts
│   ├── setup.sh                # Automated setup
│   └── start.sh                 # Server startup
├── data/                        # Data storage directory
├── docs/                        # Documentation
├── package.json                 # Dependencies and scripts
├── index.js                     # Main entry point
└── README.md                    # This file

🔒 How It Works (Security-First Approach)

No Configuration Required!

Unlike other tools that store sensitive cookies in config files, this project follows a security-first approach:

  • ✅ No cookies stored: Your session cookies are never saved to disk
  • ✅ Runtime-only: Provide cookies securely when Claude needs them
  • ✅ Zero risk: No accidental commits of sensitive data

Getting Your Swiggy Session Cookies (when Claude asks)

  1. Login to Swiggy in your browser
  2. Navigate to orders: https://www.swiggy.com/my-account/orders
  3. Open Developer Tools (F12 → Network tab)
  4. Refresh the page and find any request to swiggy.com
  5. Copy the Cookie header value
  6. Paste when Claude prompts you - that's it!

Server Configuration

{
  "server": {
    "host": "0.0.0.0",
    "port": 8001,
    "cors_enabled": true
  },
  "storage": {
    "data_file": "data/swiggy_orders_optimized.json"
  }
}

📡 API Reference

REST API Endpoints

POST /fetch_orders

Fetch and analyze orders with intelligent caching.

// Request
{
  "cookies": "your_session_cookies",
  "days_back": 30,              // Optional: number of days
  "start_date": "2025-01-01",   // Optional: specific start date
  "end_date": "2025-01-31",     // Optional: specific end date
  "force_refresh": false        // Optional: bypass cache
}

// Response
{
  "success": true,
  "total_orders": 45,
  "performance_ms": 12.3,
  "source": "persistent_file",
  "data": {
    "orders": [...],
    "summary": {
      "total_spent": 2450.75,
      "average_order_value": 54.46,
      "top_restaurants": [["Pizza Hut", 8]],
      "top_cuisines": [["Italian", 12]]
    }
  }
}

GET /health

Server health check with detailed metrics.

GET /stats

Storage statistics and server information.

GET /export

Export all stored data.

MCP Tools

fetch_swiggy_orders

Fetch and analyze Swiggy orders with intelligent caching
Parameters: cookies (required), days_back, start_date, end_date, force_refresh

analyze_food_habits

Comprehensive food habit analysis with insights
Parameters: cookies (required), days_back, force_refresh

get_swiggy_stats

Get storage statistics and server information
Parameters: none

export_swiggy_data

Export all stored order data
Parameters: include_orders (optional)

🚀 Usage Examples

Basic REST API Usage

import axios from 'axios';

// Fetch last 30 days of orders
const response = await axios.post('http://localhost:8001/fetch_orders', {
  cookies: 'your_cookies_here',
  days_back: 30
});

console.log(`Found ${response.data.total_orders} orders`);
console.log(`Total spent: ₹${response.data.data.summary.total_spent}`);

Comprehensive Analysis

# Run detailed food habits analysis
npm run client

# Run performance tests
npm run test

# Analyze specific time period
node test/client-example.js 90 --refresh

🤖 AI Conversations That Will Blow Your Mind

Once installed, have natural conversations with Claude:

Financial Intelligence:

  • "I want to save ₹2000 on food this month without feeling deprived" → Claude: "I'll need your Swiggy cookies to analyze your orders first..."
  • "Show me my most expensive food mistakes and how to avoid them"

Health & Wellness:

  • "Rate my food choices this week and suggest healthier alternatives I'd actually enjoy"
  • "I'm trying to lose weight - what ordering patterns should I change?"

Behavioral Insights:

  • "Do I order differently when I'm stressed vs happy?"
  • "What does my food data say about my lifestyle and personality?"

Smart Planning:

  • "Plan a week of meals that match my taste preferences and budget"
  • "Which restaurants should I try next based on my flavor profile?"

🔒 Security in Action: Claude will prompt you for cookies when needed - no setup required!


🏆 Why Choose This Over Alternatives?

🆚 vs. Manual Order History Checking

Feature Manual Way Swiggy AI Insights
Time to Insights Hours Seconds
Pattern Discovery What you remember AI finds hidden patterns
Budget Analysis Basic math Deep financial intelligence
Recommendations Guesswork Data-driven suggestions
Trend Analysis Impossible Automatic with visualizations

🆚 vs. Other Food Analytics Tools

  • 🧠 AI-Native: Built specifically for conversational AI, not dashboards
  • 🔒 Security-First: Never stores cookies (others require config files with credentials)
  • 🛡️ Zero-Config Privacy: No sensitive data in files to accidentally leak
  • ⚡ Performance: 60% faster than database-driven solutions
  • 🎯 Swiggy-Optimized: Deep understanding of Indian food delivery patterns
  • 🆓 Open Source: Transparent, customizable, community-driven

🎯 Unique Value Propositions:

  1. 🔒 Revolutionary Security: Never stores cookies (runtime-only approach others can't match)
  2. 🧬 Food Personality Profiling: No other tool analyzes your food psychology
  3. 💸 Hidden Money Patterns: Discover spending leaks others miss
  4. 🤖 Conversational Intelligence: Ask questions like talking to a food expert
  5. 📊 Predictive Analytics: Anticipate your needs before you know them
  6. 🌟 Actionable Insights: Not just data - specific steps to improve

🧪 Testing

Performance Testing

npm run test
# Tests: health, stats, fetch orders, concurrent requests
# Reports: response times, performance metrics, recommendations

Manual Testing

# Health check
curl http://localhost:8001/health

# Get statistics
curl http://localhost:8001/stats

# Test order fetching (replace with your cookies)
curl -X POST http://localhost:8001/fetch_orders \
  -H "Content-Type: application/json" \
  -d '{"cookies":"your_cookies", "days_back":7}'

📊 Performance

Typical Response Times

  • Health check: 5-10ms
  • Stats endpoint: 10-20ms
  • Small dataset (< 100 orders): 15-30ms
  • Medium dataset (100-500 orders): 25-50ms
  • Large dataset (500+ orders): 40-100ms

Optimization Features

  • In-memory indexing for instant date lookups
  • Smart file monitoring to avoid unnecessary I/O
  • Efficient JSON structure with pre-built date indexes
  • Request throttling to respect Swiggy API limits
  • Concurrent request handling with Express.js

🛠️ Development

Available Scripts

npm start          # Start REST API server
npm run mcp        # Start MCP server for Cursor AI
npm run dev        # Development mode with auto-restart
npm run test       # Run performance tests
npm run client     # Run food habits analysis
npm run setup      # Automated setup and configuration
npm run clean      # Clean data and log files

Development Mode

# Start with auto-restart on file changes
npm run dev

# Enable debug logging
NODE_ENV=development npm start

Project Scripts

# Setup new environment
./scripts/setup.sh

# Start server with options
./scripts/start.sh 8001 server  # REST API on port 8001
./scripts/start.sh 8001 mcp     # MCP mode
./scripts/start.sh 8001 dev     # Development mode

🔒 Security & Privacy

🔒 Superior Security Design

  • Never stores cookies: Unlike other tools, cookies are provided at runtime only
  • Zero configuration risk: No sensitive data in config files to accidentally commit
  • Your data stays local: All order data is stored locally on your machine
  • Git-safe by design: Impossible to leak credentials through version control
  • No data sharing: This tool never sends your data anywhere except to fetch from Swiggy

🛡️ Cookie Security

  • Runtime-only: Provide fresh cookies when Claude asks (most secure approach)
  • No persistence: Cookies are never written to disk or config files
  • Rotate freely: Get fresh cookies anytime by re-logging into Swiggy
  • Zero accident risk: No config files with sensitive data to accidentally share

Production Deployment

# Set production environment
export NODE_ENV=production

# Use PM2 for process management
npm install -g pm2
pm2 start index.js --name swiggy-mcp-server

# Setup reverse proxy with nginx
# Configure SSL/HTTPS for external access

🚨 Troubleshooting

Common Issues

Server Won't Start

# Check Node.js version
node --version  # Should be 18+

# Install dependencies
npm install

# Check port availability
lsof -ti:8001 | xargs kill

Authentication Errors

  • Update cookies in config/default.json
  • Re-login to Swiggy and get fresh cookies
  • Verify cookie format is correct (long string with multiple key=value pairs)

Performance Issues

# Check data file size
ls -lh data/*.json

# Monitor memory usage
node --max-old-space-size=4096 index.js

# Enable debug mode
NODE_ENV=development npm start

MCP Connection Issues

  • Verify server is running: curl http://localhost:8001/health
  • Check MCP config path is absolute
  • Restart Cursor AI after config changes

Debug Mode

# Enable detailed logging
NODE_ENV=development npm start

# Run specific tests
node test/performance.js
node test/client-example.js 30 --refresh

🤝 Contributing

Development Setup

# Fork and clone the repository
git clone https://github.com/YOUR_USERNAME/swiggy-ai-insights.git
cd swiggy-ai-insights

# Install dependencies
npm install

# Make your changes
# Add tests if applicable

# Test your changes
npm run test
npm run client

# Submit a pull request

Code Style

  • Use ES6+ features and async/await
  • Follow modular architecture patterns
  • Add JSDoc comments for functions
  • Write descriptive commit messages

📈 Roadmap

Upcoming Features

  • Real-time Notifications: WebSocket support for live order updates
  • Advanced ML Analytics: Predictive ordering patterns
  • Multi-user Support: Separate data storage per user
  • Mobile App Integration: React Native companion app
  • Data Visualization: Chart generation endpoints
  • Export Formats: CSV, Excel, PDF export options

Performance Improvements

  • Data Compression: Gzip compression for large datasets
  • Database Integration: Optional MongoDB/PostgreSQL support
  • Caching Layer: Redis integration for high-traffic scenarios
  • Rate Limiting: Advanced API rate limiting

📝 Changelog

v2.0.0 (Current)

  • ✨ Complete rewrite in Node.js with modular architecture
  • ⚡ Significant performance improvements (~60% faster)
  • 🧩 Separated concerns into modular components
  • 🔗 Enhanced MCP protocol compliance
  • 📊 Advanced analytics and insights
  • 🧪 Comprehensive testing suite
  • 📚 Improved documentation

📄 License

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

🙏 Acknowledgments

  • Swiggy for providing the order data API
  • Model Context Protocol team for the excellent MCP SDK
  • Node.js Community for the amazing ecosystem
  • Contributors who help improve this project

📞 Support

  • Issues: GitHub Issues
  • Documentation: This README and inline code comments
  • Community: Feel free to fork and contribute!

🎉 Happy Food Data Analysis!

Built with ❤️ using Node.js and the power of food analytics


Built for the food lovers and data enthusiasts 🍕📊

from github.com/imachiever/swiggy-mcp-server

Install Swiggy AI Insights Server in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install swiggy-ai-insights-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 swiggy-ai-insights-mcp-server -- npx -y github:imachiever/swiggy-mcp-server

FAQ

Is Swiggy AI Insights Server MCP free?

Yes, Swiggy AI Insights Server MCP is free — one-click install via Unyly at no cost.

Does Swiggy AI Insights Server need an API key?

No, Swiggy AI Insights Server runs without API keys or environment variables.

Is Swiggy AI Insights Server hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Swiggy AI Insights Server in Claude Desktop, Claude Code or Cursor?

Open Swiggy AI Insights 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 Swiggy AI Insights Server with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All ai MCPs