The Math Legend Who Just Left Academia—for an AI Startup Run

Ken Ono's career as one of the world's most prominent mathematicians has taken him to places that he never could have fathomed.

The renowned University of Virginia professor regularly ventures far beyond campus, bringing his formulas everywhere from Hollywood to the Olympics. He's the only number theorist who has ever been the star of a beer commercial. And for his next act, this renaissance man of math is doing something improbable even by his standards.

He's leaving his tenured job to work for a 24-year-old.

Not long ago, the idea of joining an AI startup in Silicon Valley would have sounded absurd to him. In fact, before it reoriented his career and uprooted his entire life, he considered himself a skeptic of artificial intelligence. Until recently, he began talks by poking fun at the hype around the nascent technology.


 

"My name is Ken Ono, and I am NI," he said.

"Naturally intelligent."

Now he's the unlikeliest employee of a startup that hopes to revolutionize math with AI.

At the age of 57, Ono is taking an extended leave from academia with no plans to return. He's jumping to a company founded by one of his former students, Carina Hong, who has the sort of dazzling résumé that would make AI feel insecure.

After graduating in three years from MIT, winning the Morgan Prize as the top undergraduate math researcher in America and earning a Rhodes scholarship, she went to Stanford to pursue a joint law degree and math Ph.D. When she dropped out to start Axiom Math, she raised $64 million, poached a handful of Meta's AI researchers—and hired her mentor. To her, it was a no-brainer.

"Ken Ono is the idol of many math students," said Hong, Axiom's chief executive.


Hong's company is named after the mathematical term for a basic truth that can be the starting point of an entire theory. Her goal is to build an "AI mathematician," capable of reasoning through known problems, finding new ones and validating its work through formal proofs. If it succeeds, Axiom might just crack problems that have perplexed mere humans for centuries.

 

The startup's investors are betting that a mathematical superintelligence would have all kinds of commercial applications—software and hardware verification, logistics optimization, algorithmic trading and financial engineering. The world's richest companies are burning through money and fueling concerns about this boom inflating a bubble, but mathematicians are increasingly bullish on Al's potential to assist their work and usher in discoveries.

When I spoke with Ono, it was the day after he signed the paperwork making his leave official. As he prepared to move across the country, he was reluctant to predict too far into the future. But the math professor who's now working for a math startup did share one of his own axioms.

"If I'm the first, so be it," he said. "I will not be the last."

Ono is an outlier whose career has been untraditional since the very beginning. As a child, pressure from his parents made him so miserable that he didn't finish high school. Without a diploma, he still went to college, developed his passion for math and taught for decades at the University of Wisconsin and Emory before moving to UVA in

2019. He also led the nation's top research program for elite undergraduates and mentored 10 winners of the Morgan Prize, including his new boss.

"He's a larger-than-life figure in mathematics," said Ken Ribet, a former president of the American Mathematical Society.

In math, Ono is known for his work on a range of topics across number theory, from Ramanujan's congruences to the umbral moonshine conjecture.

And if that last sentence made you break out in a sweat, you can now relax.

As it turns out, Ono is also known for his work applying math to other fields. He consulted for swimmers at UVA and Olympic gold medalists in the pool for Team USA. He advised the National Security Agency. He helped produce the 2015 movie

"The Man Who Knew Infinity." Then he went in front of the camera for a beer commercial and certified that 64 (the calories in Miller64) is a smaller number than 80 (rival light beers).

 

And he's known for one more thing: his impressive collection of Hawaiian shirts.

"I'm hoping Axiom will contract with Tommy Bahama," he says. "That's my dream."

In recent years, Ono began tracking AI's remarkable progress as it rapidly improved. He was intrigued, though not intimidated. AI was astonishing at cognitive tasks and solving problems it had already seen, but it struggled with the creative elements of his field, which require intuition and abstract thinking.

That creativity is so fundamental to pure mathematics that Ono figured his job would be safe for decades.

 

But last spring, he was one of 30 mathematicians invited to curate research-level problems as a test of the AI models. He left the symposium profoundly shaken by what he'd seen.

"The lead I had on the models was shrinking," he said. "And in areas of mathematics that were not in my wheelhouse, I felt like the models were already blowing me away."

For months afterward, Ono felt like he was grieving his identity. He didn't know what to do next, knowing that AI models would only get smarter.

"Then I had an epiphany," he said. "I realized what the models were offering was a different way of doing math."

He already had colleagues, grad students and brilliant undergrads as collaborators. Now he also has AI.

"I spend an hour or two every day spitballing with the models," he says. "Late at night, if I can't go to bed, I have my iPhone open, and I'm talking about math with the models at a crazy high level."
 

Meanwhile, AI wasn't the only reason that his job as a professor suddenly felt tenuous.

With the Justice Department taking aim at higher education, he worried about threats to federal research funding. Earlier this year, UVA's president resigned under pressure from the Trump administration. As the STEM adviser to the provost, Ono was spending more time dealing with politics, which meant less time to do math.

He decided to leave UVA for Al because he couldn't resist the latest opportunity to put his mark on something other than a chalkboard.

"I have the luxury of participating in transforming how the world actually works," Ono said. "As a pure mathematician, that has rarely been the case."

When he made the calculation that it was time for a change, he knew just the person to call.

 

Carina Hong had been a student in Ono's research program in 2020, before she won the Morgan Prize and the Schafer Prize as math's top undergraduate woman. Born and raised in China, she taught herself English when she was young to read the field's advanced textbooks. She trained in math Olympiad programs, solving problems under time pressure and tight constraints, but she became obsessed with another kind of math.

"I was always very interested in mathematical discoveries," she said. "Olympiad math is a constant dopamine hit, but research math is banging your head against the wall. It's pain and suffering. Ilike that part."

In our conversation, she described both math research and her first year of law school as "very fun." She's one of the few people who would know. A first-generation college student, Hong was a math whiz at MIT. Instead of going to a hedge fund as a quant trader, she went to Oxford as a Rhodes scholar. After studying neuroscience and writing two dissertations, she was off to Stanford for a law degree and math Ph.D.

On weekends, she liked to study at a coffee shop near campus. Drinking matcha lattes, she read wonky math papers and became friendly with Shubho Sengupta, an AI scientist at Meta Platforms 

who was another regular at the communal table. As they chatted, they realized they might be able to team up and bring their fields together.

During her morning runs, when she thought about leaving school and starting a company, Hong remembered advice that Lisa Su, the CEO of chip powerhouse AMD, offers students: run toward the hardest problems.

"Research math is really hard," Hong said. "Al for math is harder."

She dropped out as soon as Axiom's seed-funding round closed last summer.

 

Days later, Google DeepMind and OpenAI captivated nerds around the world when their models claimed gold medals at the International Mathematical Olympiad. So did Harmonic, a startup co-founded

by Robinhood _HOOD +2.57% 4

CEO Vlad Tenev, who

says "mathematical superintelligence is getting closer by the minute."

Racing against that clock, Hong began chasing talent with Sengupta, her friend from the coffee shop and now Axiom's chief technology officer.

Among the research engineers they hired from Meta was François Charton, an AI math pioneer.

Their recruiting blitz turned heads across Silicon Valley and got the attention of someone thousands of miles away: Ken Ono.

Before long, he was packing up with his wife and their schnoodle named Mochi.

And this week, he started as the 15th employee of Axiom.

When he began discussing his role, the startup's initial offer was "chief math guy." After some negotiation, they settled on an official title: founding mathematician.

His job is to push the company's AI models to their 

limits. He'll be coming up with representative problems that can only be solved by understanding mathematical principles, all while drafting benchmarks that measure the system's performance and guide the models.

"Think of it like a map for a sailor," he says. "Before you set out to discover a new land, you need to know where you are and what's already been explored."

Ono says that exploration brought him to Axiom more than any reason, including the financial ones.

"I'm not doing this for the money," he said. He was already one of UVA's highest-paid employees and says he turned down more lucrative offers and larger stakes in other AI companies.

In the startup's Palo Alto offices, the conference rooms are named for legendary mathematicians— Poincaré, Gauss, Hilbert, Lovelace, Turing. After the company raised $64 million, employees noted that 64 was 2^6 and joked that its next round could be

2^7.

But the surprising thing about Ono's colleagues is that many are his age.

"A lot of the top frontier researchers are at the stage 

of their lives where they have track records, they have bodies of work, they have financial security-and they're looking for their legacy project," Hong said.

And one of them is also looking for something else.

"Even if we get to superintelligence, there will be mathematical questions that remain unsolved," Ono said. "I will still be looking for answers."

所有跟帖: 

華爾街日報原文 -lionhill- 給 lionhill 發送悄悄話 lionhill 的博客首頁 (0 bytes) () 12/05/2025 postreply 03:51:54

多來些美女到舊金山,雖然租金漲太多,追捧的愛泡沫也讓礦廠失色 -米湯- 給 米湯 發送悄悄話 米湯 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:04:05

lol,教授開始搶年輕人的位置了。數競娃還是有些小優勢。。。 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 03:56:15

這倒不是。他們研究的是用ai證明新定理做科研,不是做競賽題。文章裏說了,雇員很多是已經功成名就的經驗豐富的中老年數學家 -風景線2- 給 風景線2 發送悄悄話 (152 bytes) () 12/05/2025 postreply 05:07:14

數學這玩意最出成績就是30-40歲。老人可以訓練AI. -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:20:19

這女孩子幹的事太雜,未必能集中做研究,出去拉錢可以。教授在學校也呆煩了,有這個機會真正搞點什麽也好,不拘一格,這才是真正 -borisg- 給 borisg 發送悄悄話 borisg 的博客首頁 (204 bytes) () 12/05/2025 postreply 04:09:10

別那麽輕易下判斷能力還是很強的MIT 3年畢業GPA 4.9,被斯坦福數學博士項目錄取又能拿funding幾個小中能做到 -lionhill- 給 lionhill 發送悄悄話 lionhill 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:11:44

我想這女生不會自己做了 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:43:27

這個時代數學天賦娃有機會自己做。你家牛娃未來前途無限 -香草仙子- 給 香草仙子 發送悄悄話 香草仙子 的博客首頁 (122 bytes) () 12/05/2025 postreply 04:15:20

數學水平和牛娃比差得遠,摩爾ipo價114最高漲到584 -lionhill- 給 lionhill 發送悄悄話 lionhill 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:18:29

你在國內市場也有投資嗎?有小道消息說巴菲特投資了國內幾隻股票 -香草仙子- 給 香草仙子 發送悄悄話 香草仙子 的博客首頁 (210 bytes) () 12/05/2025 postreply 04:25:57

國內股市問題是不好的盤太大, -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:42:53

沒有,國內十大公募基金之一總經理和一家大的私募老總是我好朋友經常交流投資idea -lionhill- 給 lionhill 發送悄悄話 lionhill 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:43:13

但是你還是沒涉足國內市場,為什麽呢?不看好前景,還是無法控製風險? -香草仙子- 給 香草仙子 發送悄悄話 香草仙子 的博客首頁 (0 bytes) () 12/05/2025 postreply 05:56:56

從來覺得A股隻是賭場不值得投資 -lionhill- 給 lionhill 發送悄悄話 lionhill 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:06:55

GPU 第一股,開盤翻了4倍多 -Numero- 給 Numero 發送悄悄話 Numero 的博客首頁 (0 bytes) () 12/05/2025 postreply 04:18:58

是,太火了 -香草仙子- 給 香草仙子 發送悄悄話 香草仙子 的博客首頁 (258 bytes) () 12/05/2025 postreply 04:29:50

這人應該是看到未來趨勢是:ai可以搶數學家的飯碗。他就先下手為強,用ai搶別的數學家的飯碗 -風景線2- 給 風景線2 發送悄悄話 (0 bytes) () 12/05/2025 postreply 05:00:51

問題是,數學家碗裏的飯沒多少。 要是數學研究能有很多實用價值,也不需要全靠NSF給錢了 -trivial- 給 trivial 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:00:15

哈哈,數學家活在自己創造的世界裏,這世界可能會改變但不可能被搶飯碗,LOL -STEMkid- 給 STEMkid 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:07:00

這個世界是由數學家的understanding 構成的。AI就算給了答案,如果沒有人能理解,我不知道這有什麽意義 -trivial- 給 trivial 發送悄悄話 (294 bytes) () 12/05/2025 postreply 06:23:01

就是因為沒解決大問題,所以現在還繼續研究怎麽提高ai. 過去幾年ai做數學的能力飛速提高,這隻是時間問題 -風景線2- 給 風景線2 發送悄悄話 (0 bytes) () 12/05/2025 postreply 07:08:01

數學家最大的能力應該是創造力,而不是做題能力。所以AI和數學家不可同日而語? -兩女寶媽- 給 兩女寶媽 發送悄悄話 兩女寶媽 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:09:41

高估了數學家。他們大部份是加幾個條件,把定理組合一下去證些東西。ai可以快速幫助他們找到合適的條件和組合 -風景線2- 給 風景線2 發送悄悄話 (0 bytes) () 12/05/2025 postreply 08:54:31

九十年代末,Hedge fund 剛興起時,很多名校教授辭去教職下海了,最著名的LTCM,幾乎全是名校教授。 -ginger2003- 給 ginger2003 發送悄悄話 (0 bytes) () 12/05/2025 postreply 05:36:32

見過好幾個T5 教授,後來hedge fund 倒閉,現在六十多歲,還在到處找工作的。 -ginger2003- 給 ginger2003 發送悄悄話 (0 bytes) () 12/05/2025 postreply 05:39:00

Long term Capital? 這家倒在風險管理上過度依賴曆史data。它家的風險管理還用了諾貝爾獎獲得者的模型 -香草仙子- 給 香草仙子 發送悄悄話 香草仙子 的博客首頁 (36 bytes) () 12/05/2025 postreply 05:48:41

他家比較倒黴,模型沒錯。但是小概率事件都同時發生了。有傳言,有人把諾獎也賠光了。 -ginger2003- 給 ginger2003 發送悄悄話 (0 bytes) () 12/05/2025 postreply 05:51:42

Carina Hong 也很厲害 學習好 創業成功 -挖礦- 給 挖礦 發送悄悄話 挖礦 的博客首頁 (0 bytes) () 12/05/2025 postreply 05:38:59

清荷發的link裏,有人說這姑娘在MIT的作業都是別人給做的。又一個織空氣的騙子。 -ginger2003- 給 ginger2003 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:38:26

GPA 4.9/5.0 在MIT不做作業還能這麽高分是天才 互聯網網各種羨慕嫉妒恨的黑五類到處都是 -挖礦- 給 挖礦 發送悄悄話 挖礦 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:02:43

這句話問題挺大的。首先是個據說,然後你確定有人這麽了解她,知道她上的所有課和做的所有作業都是別人做的? -Bailey4321- 給 Bailey4321 發送悄悄話 (0 bytes) () 12/05/2025 postreply 07:12:48

這裏有對這個女生的評論 -凊荷- 給 凊荷 發送悄悄話 凊荷 的博客首頁 (1201 bytes) () 12/05/2025 postreply 06:08:01

這樣的人能拉錢,類似第一滴血的那位。實在不覺得這公司能成氣候。穀歌deepmind在這方麵已經好幾年了,也雇了數學家,幹不過穀歌 -STEMkid- 給 STEMkid 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:15:00

嗬嗬,不評論 -凊荷- 給 凊荷 發送悄悄話 凊荷 的博客首頁 (128 bytes) () 12/05/2025 postreply 06:20:08

數學是工具罷了,需要思維和心理專家 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:22:02

這些人是用ai證明定理,這是ai的一個應用方向。不是把ai數學化。 -風景線2- 給 風景線2 發送悄悄話 (0 bytes) () 12/05/2025 postreply 07:02:38

穀歌的DeepMind在這方麵已經有點小成就,我也認為這家新創幹不過穀歌。不過最主要的問題是市場太小。 -曉筠- 給 曉筠 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:22:49

穀歌在這方麵的小成就雖然賺了名聲,但沒賺什麽錢,主要原因就是市場太小。 -曉筠- 給 曉筠 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:27:09

我也覺得,看麵相女生很成熟精明 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:27:24

第一滴血下麵,搞技術的頭就是個下海的大學教授。 -ginger2003- 給 ginger2003 發送悄悄話 (0 bytes) () 12/05/2025 postreply 06:30:39

Lol, 不是數學家玩壞AI, 是機會主義者 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:21:12

你沒明白我在說什麽 -凊荷- 給 凊荷 發送悄悄話 凊荷 的博客首頁 (472 bytes) () 12/05/2025 postreply 06:30:58

涉及心理問題的,Ai 還沒辦法,個人感覺。我總結純粹的Ai 是沒有的。 -zaocha2002- 給 zaocha2002 發送悄悄話 zaocha2002 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:34:28

心理問題就更不用提了 -凊荷- 給 凊荷 發送悄悄話 凊荷 的博客首頁 (0 bytes) () 12/05/2025 postreply 06:35:24

這公司的商業價值是啥?咋產生revenue? -ClearCase- 給 ClearCase 發送悄悄話 ClearCase 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:04:00

先突破數學極限,再想商業用途及盈利模式? -幸福象花兒一樣- 給 幸福象花兒一樣 發送悄悄話 幸福象花兒一樣 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:27:40

啥是數學極限?咋證明突破了數學極限? -ClearCase- 給 ClearCase 發送悄悄話 ClearCase 的博客首頁 (0 bytes) () 12/05/2025 postreply 07:41:00

教授不是說用AI 來解決很多人類沒有解決的數學問題? -幸福象花兒一樣- 給 幸福象花兒一樣 發送悄悄話 幸福象花兒一樣 的博客首頁 (0 bytes) () 12/05/2025 postreply 08:34:50

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