PLAY PODCASTS
MongoDB’s Sahir Azam: Vector Databases and the Data Structure of AI

MongoDB’s Sahir Azam: Vector Databases and the Data Structure of AI

Training Data

February 13, 202544m 26s

Audio is streamed directly from the publisher (pscrb.fm) as published in their RSS feed. Play Podcasts does not host this file. Rights-holders can request removal through the copyright & takedown page.

Show Notes

MongoDB product leader Sahir Azam explains how vector databases have evolved from semantic search to become the essential memory and state layer for AI applications. He describes his view of how AI is transforming software development generally, and how combining vectors, graphs and traditional data structures enables high-quality retrieval needed for mission-critical enterprise AI use cases. Drawing from MongoDB's successful cloud transformation, Azam shares his vision for democratizing AI development by making sophisticated capabilities accessible to mainstream developers through integrated tools and abstractions.


Hosted by: Sonya Huang and Pat Grady, Sequoia Capital 


Mentioned in this episode: