How Glean CEO Arvind Jain Solved the Enterprise Search Problem – and What It Means for AI at Work

Training Data

Years before co-founding Glean, Arvind was an early Google employee who helped design the search algorithm. Today, Glean is building search and work assistants inside the enterprise, which is arguably an even harder problem. One of the reasons enterprise search is so difficult is that each individual at the company has different permissions and access to different documents and information, meaning that every search needs to be fully personalized. Solving this difficult ingestion and ranking problem also unlocks a key problem for AI: feeding the right context into LLMs to make them useful for your enterprise context. Arvind and his team are harnessing generative AI to synthesize, make connections, and turbo-change knowledge work. Hear Arvind’s vision for what kind of work we’ll do when work AI assistants reach their potential. 

Hosted by: Sonya Huang and Pat Grady, Sequoia Capital 

00:00 - Introduction

08:35 - Search rankings 

11:30 - Retrieval-Augmented Generation

15:52 - Where enterprise search meets RAG

19:13 - How is Glean changing work? 

26:08 - Agentic reasoning 

31:18 - Act 2: application platform 

33:36 - Developers building on Glean 

35:54 - 5 years into the future 

38:48 - Advice for founders

To listen to explicit episodes, sign in.

Stay up to date with this show

Sign in or sign up to follow shows, save episodes, and get the latest updates.

Select a country or region

Africa, Middle East, and India

Asia Pacific

Europe

Latin America and the Caribbean

The United States and Canada