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Procedural Memory for RAG: Deep Dive with LangMem (Chapter 18)

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Manage episode 523994500 series 3705596
Content provided by Keith Bourne. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Keith Bourne or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

Unlock the power of procedural memory to transform your Retrieval-Augmented Generation (RAG) agents into autonomous learners. In this episode, we explore how LangMem leverages hierarchical learning scopes to enable AI agents that continuously adapt and improve from their interactions — cutting down manual tuning and boosting real-world performance.

In this episode:

- Why procedural memory is a game changer for RAG systems and the challenges it addresses

- How LangMem integrates with LangChain and OpenAI GPT-4.1-mini to implement procedural memory

- The architecture patterns behind hierarchical namespaces and momentum-based feedback loops

- Trade-offs between traditional RAG and LangMem’s procedural memory approach

- Real-world applications across finance, healthcare, education, and customer service

- Practical engineering tips, monitoring best practices, and open problems in procedural memory

Key tools & technologies mentioned:

- LangMem

- LangChain

- Pydantic

- OpenAI GPT-4.1-mini

Timestamps:

0:00 - Introduction & overview

2:30 - Why procedural memory matters now

5:15 - Core concepts & hierarchical learning scopes

8:45 - LangMem architecture & domain interface

12:00 - Trade-offs: Traditional RAG vs LangMem

14:30 - Real-world use cases & impact

17:00 - Engineering best practices & pitfalls

19:30 - Open challenges & future outlook

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

  continue reading

22 episodes

Artwork
iconShare
 
Manage episode 523994500 series 3705596
Content provided by Keith Bourne. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Keith Bourne or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

Unlock the power of procedural memory to transform your Retrieval-Augmented Generation (RAG) agents into autonomous learners. In this episode, we explore how LangMem leverages hierarchical learning scopes to enable AI agents that continuously adapt and improve from their interactions — cutting down manual tuning and boosting real-world performance.

In this episode:

- Why procedural memory is a game changer for RAG systems and the challenges it addresses

- How LangMem integrates with LangChain and OpenAI GPT-4.1-mini to implement procedural memory

- The architecture patterns behind hierarchical namespaces and momentum-based feedback loops

- Trade-offs between traditional RAG and LangMem’s procedural memory approach

- Real-world applications across finance, healthcare, education, and customer service

- Practical engineering tips, monitoring best practices, and open problems in procedural memory

Key tools & technologies mentioned:

- LangMem

- LangChain

- Pydantic

- OpenAI GPT-4.1-mini

Timestamps:

0:00 - Introduction & overview

2:30 - Why procedural memory matters now

5:15 - Core concepts & hierarchical learning scopes

8:45 - LangMem architecture & domain interface

12:00 - Trade-offs: Traditional RAG vs LangMem

14:30 - Real-world use cases & impact

17:00 - Engineering best practices & pitfalls

19:30 - Open challenges & future outlook

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

  continue reading

22 episodes

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