Intelligence is collective, not artificial — Prof. Michael I. Jordan (UC Berkeley / Inria)

Intelligence is collective, not artificial — Prof. Michael I. Jordan (UC Berkeley / Inria)

Michael I. Jordan, described by Science magazine as the most influential computer scientist alive, has never thought of himself as an AI researcher. In this conversation he explains why that distinction matters.


SPONSOR:

---

Cyber Fund built the Monastery to help founders ship products that were impossible a year ago. Applications for Batch 1 are now open.

Apply now: https://cyber.fund

---


Jordan trained as a statistician and cognitive scientist, and his career has been spent building machine learning systems that work in the real world: supply chains, commerce, healthcare, and large economic systems. When the field rebranded itself as AI and then AGI, he did not follow. Instead he argues that the framing is wrong. AI is better understood as a collective economic system than as a race to build a disembodied superintelligence.


We talk about why AGI is mostly a PR term, what machine learning achieved before the LLM hype cycle, and why the assistant-on-your-shoulder vision may be less compelling than it sounds. Jordan explains why explanations need to be actionable, not merely mechanistic; why AlphaFold's missing error bars matter; how prediction-powered inference changes the picture; and why drug discovery is an incentive-design problem rather than a pure pattern-matching problem.


ERRATA: Science magazine ranked him the most influential computer scientist, not Nature


---

TIMESTAMPS:

00:00:00 Cold open: A demoralizing message to young builders

00:02:04 CyberFund sponsor read

00:02:50 From symbolic AI to machine learning systems

00:05:42 Why AGI is mostly a PR term

00:08:48 A collectivist, economic perspective on AI

00:11:33 Why LLMs need system design, not hype

00:14:50 Predictability beats faux understanding

00:17:55 AlphaFold, bias, and prediction-powered inference

00:21:48 Stop anthropomorphizing intelligence

00:27:44 Drug discovery as an incentive problem

00:32:29 The three-layer data market

00:38:07 Social knowledge, markets, and culture

00:45:39 Creator economics beyond Spotify

00:48:30 How science-fiction AI narratives mislead young builders

00:51:45 AI should improve humans, not replace them

00:56:42 Safety is a property of the whole system

00:58:12 Silicon Valley gurus and the cream off the top

01:00:47 Game theory, mechanism design, and contracts

01:04:39 Conformal prediction, e-values, and anytime inference

01:08:11 A new liberal arts triangle for the AI era

01:11:30 The Bayesian duck and markets as uncertainty reduction


ReScript (transcript, PDF, refs etc) - https://app.rescript.info/public/share/fb68f94af29d3745c6cf6125e01328b5

---

REFERENCES:

person:

[00:02:50] Michael I. Jordan (homepage)

https://people.eecs.berkeley.edu/~jordan/

paper:

[00:06:01] A Collectivist, Economic Perspective on AI

https://arxiv.org/abs/2507.06268

[00:18:09] AlphaFold

https://www.nature.com/articles/s41586-021-03819-2

[00:20:36] Prediction-Powered Inference

https://arxiv.org/abs/2301.09633

[00:33:47] On Three-Layer Data Markets

https://arxiv.org/abs/2402.09697

[01:04:39] Conformal Prediction with Conditional Guarantees

https://arxiv.org/abs/2107.07511

[01:04:51] A Tutorial on Conformal Prediction

https://www.jmlr.org/papers/v9/shafer08a.html

[01:06:00] E-Values Expand the Scope of Conformal Prediction

https://arxiv.org/abs/2503.13050

[01:08:23] Computational Thinking

https://www.cs.cmu.edu/~CompThink/papers/Wing06.pdf

other:

[00:28:20] How Should the FDA Test?

https://rdi.berkeley.edu/events/sbc-assets/pdfs/Summit%20session%20speaker%20slides%20submission%20form-s1-5%20%28File%20responses%29/Slides%20in%20PDF%20%28Please%20name%20the%20submitted%20file%20as%20_firstname_-_lastname_-slides.pdf%29.%20%28File%20responses%29/27-Michael%20Jordan-Session%20V.pdf#page=15

[00:28:40] Michael I. Jordan Session V Slides

<truncated, see ReScript link or YT VD>

Tämä jakso on lisätty Podme-palveluun avoimen RSS-syötteen kautta eikä se ole Podmen omaa tuotantoa. Siksi jakso saattaa sisältää mainontaa.

Jaksot(251)

 The AI Models Smart Enough to Know They're Cheating — Beth Barnes & David Rein [METR]

The AI Models Smart Enough to Know They're Cheating — Beth Barnes & David Rein [METR]

Beth Barnes and David Rein on the one graph that ate the AI timelines discourse, and why the two people who built it are the most careful about how you read it.**SPONSOR**Prolific - Quality data. From...

4 Touko 1h 53min

When AI Discovers The Next Transformer - Robert Lange (Sakana)

When AI Discovers The Next Transformer - Robert Lange (Sakana)

Robert Lange, founding researcher at Sakana AI, joins Tim to discuss *Shinka Evolve* — a framework that combines LLMs with evolutionary algorithms to do open-ended program search. The core claim: syst...

13 Maalis 1h 18min

"Vibe Coding is a Slot Machine" - Jeremy Howard

"Vibe Coding is a Slot Machine" - Jeremy Howard

Dive into the realities of AI-assisted coding, the origins of modern fine-tuning, and the cognitive science behind machine learning with fast.ai founder Jeremy Howard. In this episode, we unpack why A...

3 Maalis 1h 26min

 Evolution "Doesn't Need" Mutation - Blaise Agüera y Arcas

Evolution "Doesn't Need" Mutation - Blaise Agüera y Arcas

What if life itself is just a really sophisticated computer program that wrote itself into existence?Blaise Agüera y Arcas presenting at ALife 2025 — the most technically detailed public walkthrough o...

16 Helmi 55min

VAEs Are Energy-Based Models? [Dr. Jeff Beck]

VAEs Are Energy-Based Models? [Dr. Jeff Beck]

What makes something truly *intelligent?* Is a rock an agent? Could a perfect simulation of your brain actually *be* you? In this fascinating conversation, Dr. Jeff Beck takes us on a journey through ...

25 Tammi 46min

Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta]

Abstraction & Idealization: AI's Plato Problem [Mazviita Chirimuuta]

Professor Mazviita Chirimuuta joins us for a fascinating deep dive into the philosophy of neuroscience and what it really means to understand the mind.*What can neuroscience actually tell us about how...

23 Tammi 53min

Why Every Brain Metaphor in History Has Been Wrong [SPECIAL EDITION]

Why Every Brain Metaphor in History Has Been Wrong [SPECIAL EDITION]

What if everything we think we know about the brain is just a really good metaphor that we forgot was a metaphor?This episode takes you on a journey through the history of scientific simplification, f...

23 Tammi 42min