『Advanced RAG with Complete Memory Integration (Chapter 19)』のカバーアート

Advanced RAG with Complete Memory Integration (Chapter 19)

Advanced RAG with Complete Memory Integration (Chapter 19)

無料で聴く

ポッドキャストの詳細を見る

このコンテンツについて

Unlock the next level of Retrieval-Augmented Generation with full memory integration in AI agents. In the previous 3 episodes, we secretly built up what amounts to a 4-part series on agentic memory. This is the final piece of that 4-part series that pulls it ALL together.

In this episode, we explore how combining episodic, semantic, and procedural memories via the CoALA architecture and LangMem library transforms static retrieval systems into continuously learning, adaptive AI.

This also concludes our book series, highlighting ALL of the chapters of the 2nd edition of "Unlocking Data with Generative AI and RAG" by Keith Bourne. If you want to dive even deeper into these topics and even try out extensive code labs, search for 'Keith Bourne' on Amazon and grab the 2nd edition today!

In this episode:

- How CoALAAgent unifies multiple memory types for dynamic AI behavior

- Trade-offs between LangMem’s prompt_memory, gradient, and metaprompt algorithms

- Architectural patterns for modular and scalable AI agent development

- Real-world metrics demonstrating continuous procedural strategy learning

- Challenges around data quality, metric design, and domain agent engineering

- Practical advice for building safe, adaptive AI agents in production

Key tools & technologies: CoALAAgent, LangMem library, GPT models, hierarchical memory scopes


Timestamps:

0:00 Intro & guest welcome

3:30 Why integrating episodic, semantic & procedural memory matters

7:15 The CoALA architecture and hierarchical learning scopes

10:00 Comparing procedural learning algorithms in LangMem

13:30 Behind the scenes: memory integration pipeline

16:00 Real-world impact & procedural strategy success metrics

18:30 Challenges in deploying memory-integrated RAG systems

20:00 Practical engineering tips & closing thoughts


Resources:

- "Unlocking Data with Generative AI and RAG" by Keith Bourne - Search for 'Keith Bourne' on Amazon and grab the 2nd edition

- Memriq AI: https://memriq.ai

まだレビューはありません