1001: How AI Erased My Career Moat, an Episode #1001 Special: Jon Krohn interviewed by Kirill Eremenko
View Transcript
Episode Description
For this episode #1001 special, the tables are turned: SuperDataScience founder Kirill Eremenko takes the host’s chair and Jon Krohn is the guest. They trace Jon Krohn’s path from an Oxford neuroscience PhD to a New York hedge fund to founding the AI consulting firm Y Carrot, why he regrets leaving academia and how tools like Claude Code erased his hard-won technical moat and why that makes skilled engineers more valuable than ever. Along the way: whether AI is a bubble, Jevons paradox and the data-center boom, the RICE framework for choosing AI projects, the single biggest reason AI projects fail and how a well-built AI agent could give anyone “Christopher Nolan–like” focus.
Additional materials: https://www.superdatascience.com/1001
Interested in sponsoring a SuperDataScience Podcast episode? Email natalie@superdatascience.com for sponsorship information.
In this episode you will learn:
- (03:42) From an Oxford neuroscience PhD to AI consulting
- (17:25) Defining AGI and why consciousness isn’t required
- (30:39) Are we in an AI bubble? Why we benefit either way
- (46:32) Jevons paradox: why cheaper AI means more data centers
- (01:08:31) The RICE framework for prioritizing AI projects
- (01:15:08) The number-one reason AI projects fail in production
- (01:31:50) AI, attention, and protecting your wellbeing