AI Shopping Assistant
A conversational AI shopping assistant for web-based product discovery and decision-making.
🛍️ AI Shopping Assistant
An intelligent, conversational shopping assistant powered by the Groq AI model and Model Context Protocol (MCP) for smart web-based product discovery and decision-making.
✨ Overview
The AI Shopping Assistant is an interactive, AI-powered chatbot that helps users make smarter shopping decisions. Backed by xAI’s Groq LLM and the Model Context Protocol (MCP), it can:
- 🧠 Understand natural language queries
- 🔎 Conduct real-time searches on shopping platforms
- 🛒 Compare products, services, and features
- 💸 Provide price guidance and recommendations
Whether you're choosing between phones, comparing streaming services, or searching for the best air purifier under a budget—this assistant is your ultimate shopping buddy.
🧩 Features
| Feature | Description |
|---|---|
| 🔄 Product Comparison | Compare products (e.g., iPhone 15 vs. Galaxy S24) |
| 🎯 Smart Recommendations | Get suggestions based on your needs and budget |
| 📊 Feature Analysis | Understand specs, pros, cons, and more |
| 💵 Price Guidance | Determine best value options |
| 🌐 Service Comparison | Compare services like Netflix vs. Prime Video |
| 🔍 Web Search (via MCP) | Searches shopping platforms like Amazon, Flipkart, Best Buy |
| 💬 Context-Aware Chat | Maintains conversation context and provides summaries |
| 🔁 Retries & Fallbacks | Smart handling of failed searches with category advice |
| 💡 Chat Commands | /exit, /clear, /context, /status supported |
🚀 Installation
1. Clone the Repository
git clone <repository-url>
cd ai-shopping-assistant
2. Set Up a Virtual Environment (Optional)
python -m venv venv
source venv/bin/activate # Windows: venv\Scripts\activate
3. Install Python Dependencies
pip install -r requirements.txt
4. Install MCP Node.js Dependencies
Make sure Node.js and npm are installed:
npm install -g @playwright/mcp @openbnb/mcp-server-airbnb duckduckgo-mcp-server
5. Environment Setup
Create a .env file in the root directory:
echo "GROQ_API_KEY=your-api-key-here" > .env
6. MCP Configuration
Ensure you have a valid browser_mcp.json in your MCP directory (e.g., D:\mcp\mcpdemo\):
{
"mcpServers": {
"playwright": {
"command": "npx",
"args": ["@playwright/mcp@latest"]
},
"airbnb": {
"command": "npx",
"args": ["-y", "@openbnb/mcp-server-airbnb"]
},
"duckduckgo-search": {
"command": "npx",
"args": ["-y", "duckduckgo-mcp-server"]
}
}
}
In shopping_assistant.py, set:
self.config_file = r"path/to/your/browser_mcp.json"
🧠 Usage
Start the Assistant:
python shopping_assistant.py
Example Queries:
🛒 You: Best laptop for programming under $1000
🤖 Assistant: 🔍 Searching... (attempt 1/3)
✅ Successfully retrieved current information
[Laptop recommendations with specs and prices]
Commands You Can Use:
exitorquit– End the sessionclear– Reset chat historycontext– View recent conversation summarystatus– Check last search time and rate limits
🗂️ Project Structure
ai-shopping-assistant/
├── shopping_assistant.py # Main assistant logic
├── requirements.txt # Python dependencies
├── .env # Environment variables
├── browser_mcp.json # MCP config for search engines
└── README.md # You're reading it!
📦 Requirements
Add the following to your requirements.txt:
langchain-grok==0.1.0
python-dotenv==1.0.0
requests==2.31.0
mcp-use==<latest-version>
⚙️ Configuration Details
| Setting | Description |
|---|---|
| 🔑 GROQ_API_KEY | Set in .env for xAI’s Grok access |
| 🕒 Rate Limiting | 3-second delay between API searches |
| 🔁 Retries | Up to 3 search retries with 5s backoff |
| 📁 MCP File | JSON config for search integration |
| 📦 Model | Default: qwen-qwq-32b (Grok model) |
| 🛍️ Categories | Electronics, appliances, services, clothing, home |
⚠️ Limitations
- Requires internet connection for API and MCP search
- Prices may vary—verify with retailers
- Only predefined categories supported
- MCP setup requires proper Node.js configuration
- Offline fallbacks may offer limited depth
🔮 Future Enhancements
- 🛒 Real-time price scraping from major e-retailers
- 🧬 Personalized recommendations via user profiles
- 🖥️ Web-based UI for a seamless UX
- 🛠️ Enhanced MCP integration with more shopping portals
🤝 Contributing
Contributions are welcome! To contribute:
-
Fork the repository
-
Create your feature branch
git checkout -b feature/your-feature -
Commit your changes
git commit -m "Add your feature" -
Push and open a PR
git push origin feature/your-feature
Images:
1:
2:
3:
4:
5:
6: 
🧠 AI + Shopping = Smarter Choices Start your intelligent shopping journey now with the AI Shopping Assistant.
関連サーバー
Bright Data
スポンサーDiscover, extract, and interact with the web - one interface powering automated access across the public internet.
powhttp-mcp
MCP server enabling agents to debug HTTP requests better
Conduit
Headless browser with SHA-256 hash-chained audit trails and Ed25519-signed proof bundles. MCP server for AI agents.
MCP Node Fetch
Fetch web content using the Node.js undici library.
MCP Deep Web Research Server
An advanced web research server with intelligent search queuing, enhanced content extraction, and deep research capabilities.
Configurable Puppeteer MCP Server
A configurable MCP server for browser automation using Puppeteer.
MCP YouTube Extract
Extracts information from YouTube videos and channels using the YouTube Data API.
URnetwork
High quality VPN and Proxy connections
News MCP Server
Real-time news aggregation from AP, BBC, NPR, Hacker News, and Google News
ScrapeBadger
Access Twitter/X data including user profiles, tweets, followers, trends, lists, and communities via the ScrapeBadger API.
Postman API V3
MCP server for Postman API v3