Building the future Architecting AI Agents with AWS, LlamaIndex and Redis
About
This session breaks down how to build AI agents with AWS, LlamaIndex, and Redis using the retrieval-augmented generation (RAG) framework. Learn how embeddings, knowledge bases, and orchestration tools improve AI performance. Watch a demo showing how Redis provides faster retrieval, smarter caching, and seamless document management with Amazon Bedrock and LlamaIndex.
Link to the GitHub repository: https://github.com/redis-developer/agentic-rag
Key topics
- Learn how AI agents break tasks into efficient, high-performing components
- Design agentic systems that cut costs and reduce lag
- Explore tools and frameworks that simplify AI agent development
- See how Redis provides real-time AI with vector search and semantic caching
Speakers



Ricardo Ferreira
Principal Developer Advocate

Anthony Prasad Devaraj
Senior Partner Solutions Architect

Laurie Voss
VP of Developer Relations
Latest content
See allGet started with Redis today
Speak to a Redis expert and learn more about enterprise-grade Redis today.


