In this episode, I sit down with Ankur Goyal, founder and CEO of Braintrust, the AI evals and observability platform used by teams like Notion, Stripe, Vercel, and Zapier. This one is for the senior engineers, staff engineers, VPs of engineering, and CTOs in my audience. We get into how coding agents can take on deeply technical architecture and infrastructure work that no single human engineer could tackle before, and then we demystify evals so you can use them to make your AI products better without touching the implementation.How Ankur uses Codex to run week-long benchmark experiments across database indexes, column store formats, and execution engines to speed up slow queriesWhy he argues there’s no excuse to skip rigorous benchmarking now that agents can run them tirelesslyThe “agent line” framework: how to decide which decisions, directions, and interactions you can hand off to an agentHow I think about the practical vs. theoretical quality of AI on hard technical problems, and why human attention decays on tedious workWhy evals are the modern version of a PRD, and how to encode “what good looks like” so a model can figure out the “how”How to build a scoring function live and let an agent improve your prompt inside a safe playgroundHow Ankur turned his designer David’s taste into a repeatable eval so quality scales beyond one personWhy fixing your CI is the highest-leverage way to speed up engineering velocityGuru—The AI layer of truthPersona—Trusted identity verification for any use case(00:00) Introduction to Ankur Goyal(03:00) Using AI agents for database optimization(06:10) Running exhaustive benchmarks with coding agents(09:03) Why staff engineers are wrong about AI limitations(11:30) The “agent line” framework for delegation(14:00) Ankur’s workflow: running 4 to 6 concurrent agents(17:16) Technical setup: foreground agents, background agents, and cloud environments(20:32) Spending time with AI tools(23:06) Demystifying evals(26:02) Live demo: Building an eval for documentation answers(30:20) The alternative to evals: vibe checks and whack-a-mole(32:09) Capturing designer taste in scoring functions(33:13) Quick recap(33:44) Managing velocity and throughput(35:40) Why CI/CD investment is critical for AI-accelerated teams(37:30) Ankur’s prompting strategy when agents fail(39:10) Closing thoughts and how to connect• Braintrust: https://www.braintrust.dev/• Codex: https://openai.com/codex/• GPT 5.4: https://developers.openai.com/api/docs/models/gpt-5.4• Claude: https://claude.ai/• GPT 5.5 just did what no other model could: https://www.lennysnewsletter.com/p/gpt-55-just-did-what-no-other-model• Paul Graham’s Maker vs. Manager Schedule: http://www.paulgraham.com/makersschedule.html• tmux: https://github.com/tmux/tmux• Chris Tate at Vercel: https://www.linkedin.com/in/ctatedev/LinkedIn: https://www.linkedin.com/in/ankrgyl/ChatPRD: https://www.chatprd.ai/Website: https://clairevo.com/LinkedIn: https://www.linkedin.com/in/clairevo/X: https://x.com/clairevoProduction and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email [email protected].