🔬Doing Vibe Physics — Alex Lupsasca, OpenAI OpenAI researcher Alex Lupsasca, a theoretical physicist and 2024 Breakthrough Prize winner, demonstrated that GPT-5 reproduced one of his most complex research papers in 30 minutes — a task that originally took him extensive time to develop. While public reception of the model was lukewarm, Lupsasca found that at the scientific frontier, the AI's capabilities were dramatically accelerating, solving problems that had stumped colleagues for over a year. The shift signals a potential transformation in theoretical physics reasoning, with AI now able to generate novel, publishable results in minutes. Some people are going crazy over GPT 5.5. Some people. This is the story of the Jagged https://www.notion.so/Tanishq-https-x-com-iScienceLuvr-2c312774e7a88187a391e2a67b42cd56?pvs=21 Frontier https://www.hbs.edu/faculty/Pages/item.aspx?num=64700 . People who use AI to write emails or even code implementation work find the lift moderate https://www.reddit.com/r/codex/comments/1su4jik/did gpt55 actually impress you or does it feel/ whereas people pushing the limits of the model are figuring out that the limits just moved outwards https://www.youtube.com/watch?v=kCMgUvnpzsM . Alex Lupsaska https://lupsasca.com/ has been tracking this limit for a year and a half now. “When GPT5 came out, it was able to reproduce one of my best papers that took a very long time to come up with in 30 minutes .” But Alex also notes that this shift was mostly invisible. I remember when GPT-5 came out… on Twitter, the reception was lukewarm. A lot of people were like, well, we expected a lot more, and it’s not better at writing email. And I remember thinking, well, okay, GPT-3 could write email. How much better can it get at writing email? That’s not the point.But at the science frontier, the capabilities were really taking off. We walk through his paper and more with him in today’s Science pod Watch here https://youtu.be/9d899Ram9Bs . The “Oscar for physics” Alex made an early splash in his career with breakthroughs in our understanding of black holes. He’s also known for Black Hole Explorer https://www.sciencenews.org/article/alex-lupsasca-black-hole-photon-ring and an iPhone app that makes visualizing black holes fun and interactive to regular audiences https://arxiv.org/abs/2603.05810 . Alex won the 2024 New Horizons in Fundamental Physics Breakthrough Prize. Known as the “Oscar for physics” this is arguably the most prestigious prize an early stage theoretical physicist can win. 1 footnote-1 Alex first saw promise for AI in theoretical physics after he asked o3 for help on his research. In the podcast, Alex recalls asking GPT for help with a calculation that would have taken days, and getting a result in eleven minutes. He immediately recognized how impactful AI would be for his work even as though his physicist colleagues and the larger community gave it a lukewarm or skeptical reception. The Move 37 Moment for AI x Physics GPT-5 had just been released, and Alex tried asking it to solve a problem in a just published paper. GPT-5 said no answer. But Mark Chen, CRO of OpenAI https://www.linkedin.com/in/markchen90 , pushed a bit harder, and had Alex prime the model with a textbook warmup problem, which it easily solved 2 footnote-2 . After using this “priming” trick, GPT-5 was able to reproduce his full result in eleven minutes yes, the paper was released after the model’s training cutoff . “This changes everything.” Alex notes that we seem to be on the edge of a massive change in theoretical physics reasoning. A year prior LLMs were just starting do correct math. Now ChatGPT could reproduce his hardest paper in the time it takes to get a coffee. Alex was on sabbatical at Vanderbilt, and he joined OpenAI to start pushing the boundary of AI’s ability to accelerate physics. “AI solved the problem before the plane landed” Alex began to put GPT through it’s paces, reaching out to colleagues for problems they were stuck on. His old PhD advisor Prof. Andrew Storminger at Harvard https://en.wikipedia.org/wiki/Andrew Strominger had an insidght about certain physical quantities known as “single-minus gluon tree amplitudes”. In certain cases, these amplitudes may be non-zero https://x.com/OpenAI/status/2022390100055986540?s=20 when previously shown to always vanish 3 footnote-3 . The team pushed this intuition forward, and came up with a formula for these quantities that appeared nonzero, but which was otherwise completely intractable. Spending over a year on this problem, no real progress was made. Prof. Storminger planned to visit OpenAI to work on the problem the week after the initial conversation started. In that one week ChatGPT fully solved the problem, as Alex recalled, before Prof. Storminger’s plane even landed. What was interesting is not only that ChatGPT solved this problem, but how it solved it. The model quickly realized found a limiting case known as the “half-collinear regime” , that in hindsight has a nice intuitive explanation 4 footnote-4 . Taking this limit, the gnarly results collapsed down to a simple and intuitive formula The last step was to prove this intuitive formula. The team started with a fresh session, gave a prompt with the context of what they previously learned, and let the model loose. Not only was ChatGPT able to reproduce the previous result, it was able to prove it using a technique unknown to the authors The Vibe Physics moment With a concrete success in the bag, the team asked if they could generate new physics from scratch using ChatGPT. They took on what they felt to be a harder problem, looking at the graviton, a proposed particle that should appear when one combines gravity and quantum mechanics. 5 footnote-5 They wrote up a simple prompt asking ChatGPT to perform the same research as the gluon paper but instead for gravitons. And then hit go What came next was truly “vibe physics”, with ChatGPT pushing out 110 pages of novel physics, new calculations, and novel techniques. This was over the course of a day, with most interactions the familiar following the now familiar pattern for anyone who uses a coding agent: GPT: Here's your