Integrates Airbnb search capabilities with persistent memory storage using OpenAI's vector stores within a multi-server Model Context Protocol client.
Sponsored
This intelligent agent leverages the Model Context Protocol (MCP) to seamlessly integrate real-time Airbnb listing searches with a persistent memory system. It connects to both an Airbnb server for dynamic property data and a dedicated memory server that utilizes OpenAI's vector stores to store and retrieve past interactions and user preferences. This architecture allows the agent to maintain context across conversations, providing personalized experiences by remembering user needs while simultaneously offering current Airbnb search results through an interactive CLI or a user-friendly Streamlit web interface.
Características Principales
01Persistent memory storage with OpenAI Vector Stores
02Automatic tool routing between connected servers
030 GitHub stars
04Interactive CLI and Streamlit web UI
05Multi-server Model Context Protocol (MCP) client architecture
06Integrated Airbnb listing search
Casos de Uso
01Building intelligent agents that combine real-time data retrieval with contextual memory
02Storing and recalling user preferences or conversation history for personalized interactions
03Searching for Airbnb listings based on specific criteria and personalized preferences