HomeSoftware EngineeringRedis and AI Agent Reminiscence with Andrew Brookins

Redis and AI Agent Reminiscence with Andrew Brookins


A key problem with designing AI brokers is that giant language fashions are stateless and have restricted context home windows. This requires cautious engineering to keep up continuity and reliability throughout sequential LLM interactions. To carry out nicely, brokers want quick programs for storing and retrieving short-term conversations, summaries, and long-term info.

Redis is an open‑supply, in‑reminiscence knowledge retailer extensively used for prime‑efficiency caching, analytics, and message brokering. Latest advances have prolonged Redis’ capabilities to vector search and semantic caching, which has made it an more and more widespread a part of the agentic utility stack.

Andrew Brookins is a Principal Utilized AI Engineer at Redis. He joins the present with Sean Falconer to debate the challenges of constructing AI brokers, the position of reminiscence in brokers, hybrid search versus vector-only search, the idea of world fashions, and extra.

Full Disclosure: This episode is sponsored by Redis.

Sean’s been an instructional, startup founder, and Googler. He has revealed works overlaying a variety of matters from AI to quantum computing. Presently, Sean is an AI Entrepreneur in Residence at Confluent the place he works on AI technique and thought management. You may join with Sean on LinkedIn.

 

 

Please click on right here to see the transcript of this episode.

Sponsorship inquiries: [email protected]

 

RELATED ARTICLES

LEAVE A REPLY

Please enter your comment!
Please enter your name here

- Advertisment -
Google search engine

Most Popular

Recent Comments