Procedural Memory for RAG (Chapter 18)
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About this listen
Unlock how procedural memory transforms Retrieval-Augmented Generation (RAG) systems from static responders into autonomous, self-improving AI agents. Join hosts Morgan and Casey with special guest Keith Bourne as they unpack the concepts behind LangMem and explore why this innovation is a game-changer for business leaders.
In this episode:
- Understand what procedural memory means in AI and why it matters now
- Explore how LangMem uses hierarchical scopes and feedback loops to enable continuous learning
- Discuss real-world applications in finance, healthcare, and customer service
- Compare procedural memory with traditional and memory-enhanced RAG approaches
- Learn about risks, governance, and success metrics critical for deployment
- Hear practical leadership tips for adopting procedural memory-enabled AI
Key tools & technologies mentioned:
- LangMem procedural memory system
- LangChain AI orchestration framework
- CoALA modular architecture
- OpenAI's GPT models
Timestamps:
0:00 - Introduction and episode overview
2:30 - What is procedural memory and why it’s a breakthrough
5:45 - The self-healing AI concept and LangMem’s hierarchical design
9:15 - Comparing procedural memory with traditional RAG systems
12:00 - How LangMem works under the hood: feedback loops and success metrics
15:30 - Real-world use cases and business impact
18:00 - Challenges, risks, and governance best practices
19:45 - Final thoughts and next steps for leaders
Resources:
- "Unlocking Data with Generative AI and RAG" by Keith Bourne - Search for 'Keith Bourne' on Amazon and grab the 2nd edition
- Visit Memriq.ai for more AI insights, tools, and resources