#324 Sharon Zhou: Inside AMD's Plan to Build Self-Improving AI

#324 Sharon Zhou: Inside AMD's Plan to Build Self-Improving AI

AI is not just getting smarter. It is getting faster by learning how to optimize the hardware it runs on.

In this episode, Sharon Zhou, VP of AI at AMD and former Stanford AI researcher, explains how language models are beginning to write and optimize their own GPU kernel code. We explore what self improving AI actually means, how reinforcement learning is used in post training, and why kernel optimization could be one of the most overlooked scaling levers in modern AI.

Sharon breaks down how GPU efficiency impacts the cost of training and inference, why catastrophic forgetting remains a challenge in continual learning, and how verifiable rewards from hardware profiling can help models improve themselves. The conversation also dives into compute economics, synthetic data, RLHF, and why infrastructure may define the next phase of AI progress.

If you want to understand where AI scaling is really happening beyond bigger models and more data, this episode goes under the hood.


Stay Updated:

Craig Smith on X: https://x.com/craigss

Eye on A.I. on X: https://x.com/EyeOn_AI


(00:00) Preview and Intro

(00:25) Sharon Zhou's Background and Transition to AMD

(02:00) What Is Self-Improving AI?

(04:16) What Is a GPU Kernel and Why It Matters

(07:01) Using AI Agents and Evolutionary Strategies to Write Kernels

(11:31) Just-In-Time Optimization and Continual Learning

(13:59) Self-Improving AI at the Infrastructure Layer

(16:15) Synthetic Data and Models Generating Their Own Training Data

(20:48) AMD's AI Strategy: Research Meets Product

(23:22) Inside the NeurIPS Tutorial on AI-Generated Kernels

(30:59) Reinforcement Learning Beyond RLHF

(39:09) 10x Faster Kernels vs 10x More Compute

(41:50) Will Efficiency Reduce Chip Demand?

(42:18) Beyond Language Models: Diffusion, JEPA, and Robotics

(45:34) Educating the Next Generation of AI Builders

Denne episoden er hentet fra en åpen RSS-feed og er ikke publisert av Podme. Den kan derfor inneholde annonser.

Episoder(351)

Why the Future of AI Isn't Just Bigger Models. It's Models That Evolve | Risto Miikkulainen of Cognizant

Why the Future of AI Isn't Just Bigger Models. It's Models That Evolve | Risto Miikkulainen of Cognizant

Most AI systems follow a gradient, a mathematical slope that tells them exactly how to improve, step by step, toward a known goal. Neuroevolution doesn't follow any gradient. Instead, it runs hundreds...

2 Jun 1h 4min

How AI Is Reinventing Elder Care | Chia-Lin Simmons of LogicMark

How AI Is Reinventing Elder Care | Chia-Lin Simmons of LogicMark

One in four people over 65 will experience a fall, and for most of them, the technology designed to help is a device that hasn't meaningfully changed since the 1980s. Chia-Lin Simmons, CEO of LogicMar...

1 Jun 53min

The App of the Future Is Voice — Not a Screen. Mitel's CTO Luiz Domingos Explains Why.

The App of the Future Is Voice — Not a Screen. Mitel's CTO Luiz Domingos Explains Why.

Luiz Domingos has spent 25 years watching enterprise communications evolve, from IP telephony to cloud to AI, and his assessment of where things stand now is unusually concrete. Companies have moved p...

28 Mai 54min

Is ChatGPT Conscious? A Pioneer of AI Explains | Dr. Terry Sejnowski

Is ChatGPT Conscious? A Pioneer of AI Explains | Dr. Terry Sejnowski

A fly with 100,000 neurons can fly, find food, and reproduce. A $100 million supercomputer cannot. Dr. Terry Sejnowski used that observation to silence a room full of MIT AI researchers in the 1980s, ...

28 Mai 56min

Your Child's Data Profile Starts Before They're Born | Eamonn Maguire of Proton

Your Child's Data Profile Starts Before They're Born | Eamonn Maguire of Proton

Your child's data profile doesn't start when they get their first phone. It starts before they're born, the moment a parent emails a gynecologist or visits a fertility clinic website. That's the core ...

28 Mai 55min

Training AI Models Without a Billion-Dollar Data Center | Steffen Cruz of Macrocosmos

Training AI Models Without a Billion-Dollar Data Center | Steffen Cruz of Macrocosmos

Training a frontier AI model today requires hundreds of thousands of GPUs, months of compute time, and a budget that only a handful of companies on earth can afford. Steffen Cruz, co-founder and CTO o...

25 Mai 47min

The Single Biggest Barrier to AI Adoption Isn't the Technology — It's This | Errol Gardner of EY

The Single Biggest Barrier to AI Adoption Isn't the Technology — It's This | Errol Gardner of EY

Errol Gardner has spent 35 years advising the world's largest organizations through major technology transitions, and his assessment of where enterprise agentic AI actually stands is one of the most g...

22 Mai 54min

Oliver Dial of IBM: Quantum Advantage Is Happening This Year

Oliver Dial of IBM: Quantum Advantage Is Happening This Year

IBM's VP of Quantum Systems, Oliver Dial, has spent his career building quantum computers from the ground up, and he's unusually direct about what they can and can't do. In this conversation with Crai...

19 Mai 50min

Populært innen Teknologi

lydartikler-fra-aftenposten
romkapsel
teknisk-sett
energi-og-klima
tomprat-med-gunnar-tjomlid
nasjonal-sikkerhetsmyndighet-nsm
elektropodden
fornybaren
hans-petter-og-co
rss-snakk-om-sikkerhet
shifter
rss-heis
rss-ai-forklart
teknologi-og-mennesker
i-loopen
rss-ki-praten
smart-forklart
rss-byggepodden
rss-digitaliseringspadden
rss-alt-vi-kan