Adding memory to Cursor using MCP and a Knowledge Graph database

Simon Willison (underfitted) · Beginner ·📐 ML Fundamentals ·1y ago

Key Takeaways

The video demonstrates adding memory to Cursor using MCP and a Knowledge Graph database, utilizing the Graphiti MCP Server from GitHub.

Original Description

Graphiti MCP Server: https://github.com/getzep/graphiti/tree/main/mcp_server I teach a live, interactive program that'll help you build production-ready Machine Learning systems from the ground up. Check it out here: https://www.ml.school To keep up with my content: • Twitter/X: https://www.twitter.com/svpino • LinkedIn: https://www.linkedin.com/in/svpino 🔔 Subscribe for more stories: https://www.youtube.com/@underfitted?sub_confirmation=1
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This video teaches how to add memory to Cursor using MCP and a Knowledge Graph database, which is essential for building production-ready Machine Learning systems. The Graphiti MCP Server is used to demonstrate this integration. By following this lesson, viewers can learn how to enhance their ML models with external knowledge and build more robust systems.

Key Takeaways
  1. Install the Graphiti MCP Server from GitHub
  2. Set up a Knowledge Graph database
  3. Integrate the database with the MCP Server
  4. Add memory to Cursor using the integrated system
💡 Integrating a Knowledge Graph database with an MCP Server can significantly enhance the capabilities of ML models by providing them with external knowledge and memory.

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