OpenAI Podcast

Why AI needs a new kind of supercomputer network - Episode 18

37 min · 6. touko 2026
jakson Why AI needs a new kind of supercomputer network - Episode 18 kansikuva

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Training frontier models isn’t as simple as adding more GPUs—one small problem and the whole coordinated dance falls apart. OpenAI’s Mark Handley and Greg Steinbrecher discuss how a new supercomputer network design, used to train some of the company’s latest models, keeps the whole system moving in lockstep, even with record numbers of GPUs. They break down Multipath Reliable Connection, a new protocol OpenAI developed with AMD, Broadcom, Intel, Microsoft, and Nvidia, and why they’re making it available for the whole industry to use. Chapters 00:00 Intro 00:39 Greg and Mark's paths to OpenAI 04:34 Why training AI stresses networks differently 10:05 Bottlenecks, failures, and the cost of waiting 15:19 How Multipath Reliable Connection works 18:59 A protocol to route around failures 25:05 Why OpenAI is making MRC an open standard 35:09 Could AI compute move to space? ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

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21 jaksot

jakson How a reasoning model cracked an 80-year-old math problem - Episode 20 kansikuva

How a reasoning model cracked an 80-year-old math problem - Episode 20

Last month AI found something mathematicians had missed for decades. Reasoning researchers Alexander Wei, Hongxun Wu, and Lijie Chen join the podcast to discuss how a general-purpose model helped disprove an 80-year-old conjecture from famed mathematician Paul Erdős. They walk through the moment the result started looking real, what it took to verify the proof, and what’s happened since sharing the discovery with the world. They also explore what this means for the future of math and for researchers learning to work with AI. Chapters 0:44 AI and the International Math Olympiad and International Olympiad of Informatics 6:35 An OpenAI model disproves the Erdős unit distance conjecture 8:33 Running the model and checking the proof 11:04 Why general models matter for discovery 15:55 Creativity, tools, and how the proof worked 18:25 Why AI should feel empowering for mathematicians 22:31 Advice for researchers using AI 27:24 What comes next for math and AI research 37:30 Cryptography, quantum computing, and the future ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

Eilen41 min
jakson Inside image generation’s Renaissance moment - Episode 19 kansikuva

Inside image generation’s Renaissance moment - Episode 19

People are generating over 1.5 billion images a week in ChatGPT. In this episode, Product lead Adele Li and researcher Kenji Hata share some of the new use cases and trends since the launch of Images 2.0. Together with host Andrew Mayne, they trace the progress from the early DALL-E days and dive into the latest capabilities, including better text rendering, photorealism, multilingual support, world knowledge, aspect ratios, and character consistency. They also explore what comes next as image generation models evolve into more capable creative assistants. Chapters 00:36 How Adele and Kenji came to work on Images 02:27 Images 2.0 launch reception 05:25 Productivity use cases and and 360 images 09:34: Viral trends, authenticity, and imperfection 10:51 Training breakthroughs and photorealism 14:06 Evals, prompting, and creative control 22:16 Creative agents and what comes next 22:27 Images + Codex 28:08 Prompt tips ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

14. touko 202629 min
jakson Why AI needs a new kind of supercomputer network - Episode 18 kansikuva

Why AI needs a new kind of supercomputer network - Episode 18

Training frontier models isn’t as simple as adding more GPUs—one small problem and the whole coordinated dance falls apart. OpenAI’s Mark Handley and Greg Steinbrecher discuss how a new supercomputer network design, used to train some of the company’s latest models, keeps the whole system moving in lockstep, even with record numbers of GPUs. They break down Multipath Reliable Connection, a new protocol OpenAI developed with AMD, Broadcom, Intel, Microsoft, and Nvidia, and why they’re making it available for the whole industry to use. Chapters 00:00 Intro 00:39 Greg and Mark's paths to OpenAI 04:34 Why training AI stresses networks differently 10:05 Bottlenecks, failures, and the cost of waiting 15:19 How Multipath Reliable Connection works 18:59 A protocol to route around failures 25:05 Why OpenAI is making MRC an open standard 35:09 Could AI compute move to space? ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

6. touko 202637 min
jakson What happens now that AI is good at math? - Episode 17 kansikuva

What happens now that AI is good at math? - Episode 17

Math is one of the clearest ways to see how far AI has come in a short span. OpenAI researchers Sébastien Bubeck and Ernest Ryu join host Andrew Mayne to explain what changed and what it could mean for the future of research. They reflect on how Ernest used ChatGPT to help solve a 42-year-old open problem, the difference between deep literature search and original mathematical discovery, and what changes when AI can work over longer timelines.  Chapters 01:27 The surprising progress of AI’s math capabilities  03:01 Solving an open problem with ChatGPT 06:57 How models went from basic math to research level 11:32 Why math matters for AGI 14:26 AI and the Erdős problems 21:26 Building an automated researcher 28:19 The role of humans as models improve 33:52 Verifying proofs with AI 36:00 The risk of shallow understanding 41:19 Advice for learning math with ChatGPT ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

28. huhti 202643 min
jakson Building AI for Life Sciences - Episode 16 kansikuva

Building AI for Life Sciences - Episode 16

What does it take to build AI systems that can actually help scientists? Research lead Joy Jiao and product lead Yunyun Wang discuss how OpenAI is developing models for life sciences and what responsible deployment means in a field with real biosecurity stakes. They explore how AI is already improving research workflows and where it could lead in drug discovery and more autonomous labs — including why a future with less pipetting sounds pretty good to most scientists. Chapters 0:39 Introducing the Life Sciences model series 3:47 Joy’s path into life sciences 5:00 Autonomous lab with Ginkgo Bioworks 7:27 Yunyun’s path into life sciences 8:12 OpenAI’s life sciences work 9:48 Biorisk, access, and safeguards 15:43 What models can do in the lab 17:51 Building scientific infrastructure 20:14 Why compute matters for science 24:54 Where are we in 6-12 months? 29:51 Scientific adoption and skepticism 33:17 Advice for students and researchers 40:27 Where are we in 10 years? ---------------------------------------- Hosted on Acast. See acast.com/privacy [https://acast.com/privacy] for more information.

16. huhti 202644 min