Agentic Memory: Stateful RAG and AI Agents (Chapter 16)
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Unlock the future of AI agents with agentic memory — a transformative approach that extends Retrieval-Augmented Generation (RAG) by incorporating persistent, evolving memories. In this episode, we explore how stateful intelligence turns stateless LLMs into adaptive, personalized agents capable of learning over time.
In this episode:
- Understand the CoALA framework dividing memory into episodic, semantic, procedural, and working types
- Explore key tools like Mem0, LangMem, Zep, Graphiti, LangChain, and Neo4j for implementing agentic memory
- Dive into practical architectural patterns, memory curation strategies, and trade-offs for real-world AI systems
- Hear from Keith Bourne, author of *Unlocking Data with Generative AI and RAG*, sharing insider insights and code lab highlights
- Discuss latency, accuracy improvements, and engineering challenges in scaling stateful AI agents
- Review real-world applications across finance, healthcare, education, and customer support
Key tools & technologies mentioned:
Mem0, LangMem, Zep, Graphiti, LangChain, Neo4j, Pinecone, Weaviate, Airflow, Temporal
Timestamps:
00:00 - Introduction & Episode Overview
02:15 - What is Agentic Memory and Why It Matters
06:10 - The CoALA Cognitive Architecture Explained
09:30 - Comparing Memory Implementations: Mem0, LangMem, Graphiti
13:00 - Deep Dive: Memory Curation and Background Pipelines
16:00 - Performance Metrics & Real-World Impact
18:30 - Challenges & Open Problems in Agentic Memory
20:00 - Closing Thoughts & Resources
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 engineering deep dives and resources