Episode 40
The Economic Reality of AI: Friction, Talent, and the Future of the Firm
May 25th, 2026
58 mins 32 secs
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About this Episode
Steve Tadelis, Professor of Economics at UC Berkeley and former senior economist at eBay and Amazon, joins High Signal to bridge the gap between economic theory and the high-stakes reality of data science and AI. Drawing on his experience at the forefront of the world’s largest marketplaces, Steve discusses the "invisible friction" that prevents organizations from acting on data: a combination of misaligned incentives, organizational inertia, and the "Upton Sinclair problem," where leaders are effectively paid not to understand new paradigms.
The conversation moves from the "frustratingly obvious" opportunities left on the floor during eBay’s early years to the relentlessly scientific culture of Amazon. Steve explains why surface-level metrics like conversion rates often mask underlying rot in user retention and how rigorous experimentation, such as his famous $20 million search-ad experiment, can expose the difference between genuine growth and mere navigational intent. We also explore the structural shifts of the AI era, where Steve offers an important counter-narrative: rather than leveling the playing field, AI may act as an "unequalizer" that exponentially rewards those with the deepest critical thinking skills.
LINKS
- Steve on LinkedIn
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Consumer Heterogeneity and Paid Search Effectiveness by Blake, Nosko, and Tadelis (Econometrica, 2015)
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The Limits of Reputation in Platform Markets by Nosko and Tadelis (NBER, 2015)
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Information Disclosure as a Matching Mechanism by Tadelis and Zettelmeyer (AER, 2015)
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The Anatomy of a Large-Scale Hypertextual Web Search Engine by Brin and Page (with Appendix A: Advertising and Mixed Motives)
- Freakonomics Radio Ep 441: Does Advertising Actually Work? (Part 2: Digital)
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High Signal podcast
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Watch the podcast episode on YouTube
- Delphina's Newsletter