AI is too important to be monopolised - FT中文网
登录×
电子邮件/用户名
密码
记住我
请输入邮箱和密码进行绑定操作:
请输入手机号码,通过短信验证(目前仅支持中国大陆地区的手机号):
请您阅读我们的用户注册协议隐私权保护政策,点击下方按钮即视为您接受。
FT商学院

AI is too important to be monopolised

Public investments are essential to levelling the computational playing field

Antitrust agencies must ensure that the largest AI companies do not grow impossibly large

The writer is international policy director at Stanford University’s Cyber Policy Center and special adviser to the European Commission

The Wall Street Journal reported last week that OpenAI’s chief executive Sam Altman would seek up to $7tn in funding to reshape the global semiconductor industry to power artificial intelligence. The fact that one company could pitch a funding target larger than the gross domestic product of Japan and not be laughed out of the room is yet another sign of generative AI’s intense market concentration.

From the promise of medical breakthroughs to the perils of election interference, the hopes of helpful climate research to the challenge of cracking fundamental physics, AI is too important to be monopolised.

Yet the market is moving in exactly that direction, as resources and talent to develop the most advanced AI sit firmly in the hands of a very small number of companies. That is particularly true for resource-intensive data and computing power (termed “compute”), which are required to train large language models for a variety of AI applications. Researchers and small and medium-sized enterprises risk fatal dependency on Big Tech once again, or else they will miss out on the latest wave of innovation. 

On both sides of the Atlantic, feverish public investments are being made in an attempt to level the computational playing field. To ensure scientists have access to capacities comparable to those of Silicon Valley giants, the US government established the National AI Research Resource last month. This pilot project is being led by the US National Science Foundation. By working with 10 other federal agencies and 25 civil society groups, it will facilitate government-funded data and compute to help the research and education community build and understand AI. 

The EU set up a decentralised network of supercomputers with a similar aim back in 2018, before the recent wave of generative AI created a new sense of urgency. The EuroHPC has lived in relative obscurity and the initiative appears to have been under-exploited. As European Commission president Ursula von der Leyen said late last year: we need to put this power to use. The EU now imagines that democratised supercomputer access can also help with the creation of “AI factories,” where small businesses pool their resources to develop new cutting-edge models. 

There has long been talk of considering access to the internet a public utility, because of how important it is for education, employment and acquiring information. Yet rules to that end were never adopted. But with the unlocking of compute as a shared good, the US and the EU are showing real willingness to make investments into public digital infrastructure.

Even if the latest measures are viewed as industrial policy in a new jacket, they are part of a long overdue step to shape the digital market and offset the outsized power of big tech companies in various corners of our societies.  

These governments have made the right decision by expanding access to foundational compute resources, but such investments are only the first stage and must work hand in glove with legislative and regulatory interventions. Antitrust agencies must ensure that the largest AI companies do not grow impossibly large. Security agencies must prevent malign actors from accessing critical computational resources.

Non-discrimination watchdogs have their hands full with the various ways in which AI applications display bias and discrimination. Similarly, public AI investments are complementing policies that are meant to prevent market monopolies from becoming knowledge monopolies as well. While the EU was smart to encode access to data for academics in the Digital Services Act that spells out the responsibilities of platform companies, it has not explicitly included such provisions in the AI Act. Companies are required to report energy use and data inputs, for example, but trade secrecy will be respected, allowing for significant opacity on key details.

Going forward, investments in public digital infrastructure must increase — and state funds must be diverted away from Big Tech, even if they are for projects with a public function. In 2022, the US government invested $3.3bn in AI, a sizeable sum but nothing compared to the tens of billions invested annually by industry or the trillions sought by Altman.

Preventing AI monopolies is part of a healthy innovation climate, and it is increasingly critical for a better public understanding of the technology. In this case, those goals overlap. Historically, academic research has been at the roots of many valuable innovations. That ecosystem must not be choked off.  

版权声明:本文版权归FT中文网所有,未经允许任何单位或个人不得转载,复制或以任何其他方式使用本文全部或部分,侵权必究。

英国生物技术公司新药降低量身定制式癌症疗法副作用

Autolus用于治疗急性淋巴细胞白血病的新型Car-T细胞疗法在美国获批,该疗法与癌细胞结合所需时间更短,因此副作用更小。

前保守党财政大臣告诫工党现任勿看衰英国前景

杰里米•亨特表示,英国在关键增长领域表现强劲,应该停止贬低自己。

Lex专栏:游戏机制造商在低迷市场中表现强劲

虽然游戏机老化通常意味着游戏公司收入持续下降,但多年未推出新产品的索尼和任天堂等游戏公司仍表现强劲。

为年度展望报告辩护

巴克兰:定期回顾投资框架以及进行经济和市场展望是一项良好的做法。

企业长寿的奥秘为何对投资者很重要

长寿公司除了具有凝聚力、宽容度和财务保守等特征外,几乎没有什么共同点。
2天前

特朗普上台能否解决加拿大经济疲软问题?

经济学家表示,来自美国的冲击可能会使该国经济摆脱麻木状态。
设置字号×
最小
较小
默认
较大
最大
分享×