Silicon Valley is pricing academics out of AI research
With eye-popping salaries and access to costly computing power, AI companies are draining academia of talent
By Naomi Nix, Cat Zakrzewski and Gerrit De VynckMarch 10, 2024 at 7:00 a.m. EDT
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Fei-Fei Li, the “godmother of artificial intelligence,” delivered an urgent plea to President Biden in the glittering ballroom of San Francisco’s Fairmont Hotel last June.
The Stanford professor asked Biden to fund a national warehouse of computing power and data sets — part of a “moonshot investment” allowing the country’s top AI researchers to keep up with tech giants.
She elevated the ask Thursday at Biden’s State of the Union address, which Li attended as a guest of Rep. Anna G. Eshoo (D-Calif.) to promote a bill to fund a national AI repository.
Li is at the forefront of a growing chorus of academics, policymakers and former employees who argue the sky-high cost of working with AI models is boxing researchers out of the field, compromising independent study of the burgeoning technology.
As companies like Meta, Google and Microsoft funnel billions of dollars into AI, a massive resources gap is building with even the country’s richest universities. Meta aims to procure 350,000 of the specialized computer chips — called GPUs — necessary to run gargantuan calculations on AI models. In contrast, Stanford’s Natural Language Processing Group has 68 GPUs for all of its work.
To obtain the expensive computing power and data required to research AI systems, scholars frequently partner with tech employees. Meanwhile, tech firms’ eye-popping salaries are draining academia of star talent.
Big tech companies now dominate breakthroughs in the field. In 2022, the tech industry created 32 significant machine learning models, while academics produced three, a significant reversal from 2014, when the majority of AI breakthroughs originated in universities, according to a Stanford report.
Researchers say this lopsided power dynamic is shaping the field in subtle ways, pushing AI scholars to tailor their research for commercial use. Last month, Meta CEO Mark Zuckerberg announced the company’s independent AI research lab would move closer to its product team, ensuring “some level of alignment” between the groups, he said.
“The public sector is now significantly lagging in resources and talent compared to that of industry,” said Li, a former Google employee and the co-director of the Stanford Institute for Human-Centered AI. “This will have profound consequences because industry is focused on developing technology that is profit-driven, whereas public sector AI goals are focused on creating public goods.”
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Some are pushing for new sources of funding. Li has been making the rounds in Washington, huddling with White House Office of Science and Technology Director Arati Prabhakar, dining with the political press at a swanky seafood and steakhouse and visiting Capitol Hill for meetings with lawmakers working on AI, including Sens. Martin Heinrich (D-N.M.), Mike Rounds (R-S.D.) and Todd Young (R-Ind.).
Large tech companies have contributed computing resources to the National AI Research Resource, the national warehouse project, including a $20 million donation in computing credits from Microsoft.
“We have long embraced the importance of sharing knowledge and compute resources with our colleagues within academia,” Microsoft Chief Scientific Officer Eric Horvitz said in a statement.
Policymakers are taking some steps to address the funding gaps. Last year, the National Science Foundation announced $140 million investment to launch seven university-led National AI Research Institutes to examine how AI could mitigate the effects of climate change and improve education, among other topics.
Eshoo said she hopes to pass the Create AI Act, which has bipartisan backing in the House and Senate, by the end of the year, when she is scheduled to retire. The legislation “essentially democratizes AI,” Eshoo said.
But scholars say this infusion may not come quickly enough.
As Silicon Valley races to build chatbots and image generators, it is drawing would-be computer science professors with high salaries and the chance to work on interesting AI problems. Nearly, 70 percent of people with artificial intelligence PhDs end up getting a job in private industry compared with 21 percent of graduates two decades ago, according to a 2023 report.