GOTO - The Brightest Minds in Tech

A Common-Sense Guide to AI Engineering • Jay Wengrow & Kris Jenkins

Jay Wengrow, Kris Jenkins & GOTO Season 6 Episode 34

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0:00 | 26:44

This interview was recorded for the GOTO Book Club.
http://gotopia.tech/bookclub

Jay Wengrow - Author of “A Common-Sense Guide to AI Engineering” & CEO of Actualize
Kris Jenkins - Lifelong Computer Geek and Podcast Host

RESOURCES
Jay
https://x.com/jaywengrow
https://github.com/jaywengrow
https://www.linkedin.com/in/jaywengrow
https://www.commonsensedev.com

Kris
https://bsky.app/profile/krisajenkins.bsky.social
https://twitter.com/krisajenkins
https://www.linkedin.com/in/krisjenkins
https://github.com/krisajenkins
http://blog.jenkster.com

DESCRIPTION
In this GOTO Book Club episode, host Kris Jenkins sits down with Jay Wengrow — founder of coding bootcamp Actualize and author of the bestselling Common-Sense Guide to Data Structures and Algorithms — to dig into his latest book, A Common-Sense Guide to AI Engineering. Jay demystifies how AI agents actually work: at heart, they're a clever hack where your code intercepts an LLM's text output, watches for special notation, and triggers real functions when it spots them. From there, the conversation expands into guardrails (regex, judge LLMs, and specialist ML models), multi-agent architectures for complex tasks, and a hands-on example of a 150-line podcast-generating app built entirely from scratch — no framework required.

The real throughline is a pragmatic, sceptical take on the current AI tooling landscape. Jay argues that frameworks can lock you into patterns that haven't been proven yet, and that the field is too new to know which abstractions are genuinely worth having. His rule of thumb: reach for a framework only when it will do something meaningfully better than you can — not just faster. The book was deliberately written around fundamentals rather than specific tools, so it ages well even as the ecosystem moves at breakneck speed. The conclusion is refreshingly grounded: understand the LLM's inherent limitations, build the middle layer thoughtfully, and don't outsource your system prompts to anyone — or anything.

RECOMMENDED BOOKS
Jay Wengrow • A Common-Sense Guide to AI Engineering • https://pragprog.com/titles/jwpaieng
Jay Wengrow • A Common-Sense Guide to Data Structures and Algorithms • https://amzn.to/4bPiTjd
Jay Wengrow • A Common-Sense Guide to Data Structures & Algorithms in Python • https://amzn.to/3PpwtlT
Jay Wengrow • A Common-Sense Guide to Data Structures and Algorithms in JavaScript • https://amzn.to/4dDSZBl

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