首席执行官承认人工智能对就业或生产力没有影响。
CEOs admit AI had no impact on employment or productivity

原始链接: https://fortune.com/article/why-do-thousands-of-ceos-believe-ai-not-having-impact-productivity-employment-study/

## 人工智能生产力悖论 与20世纪80年代观察到的计算机现象——被称为“索洛悖论”——相似,当前数据表明人工智能尚未实现预期的生产力飞跃。尽管投资巨大(2024年超过2500亿美元)且讨论广泛,人工智能已在大多数标准普尔500强公司财报电话会议中被提及,但宏观经济数据表明,在就业、产出甚至企业利润方面几乎没有影响,除了少数科技巨头。 研究表明,虽然三分之二的管理者*在使用*人工智能,但通常仅使用约1.5小时/周,而且绝大多数人报告在过去三年中没有可衡量的生产力提升。一些研究甚至指出,过度使用会导致生产力*下降*,从而导致“人工智能脑疲劳”。 然而,一些经济学家认为生产力提升即将到来,并将其与20世纪90年代的IT繁荣相提并论。最近的GDP和生产力数据*表明*可能出现逆转,美国去年生产力跃升了2.7%。与过去的主要区别可能在于人工智能工具的易获取性和竞争性,这意味着成功的实施——以及价值创造——将取决于企业如何积极地整合和利用这项技术。

## AI 影响:炒作与现实 一篇《财富》杂志的报道指出,CEO 承认人工智能尚未对就业或生产力产生影响,这在 Hacker News 上引发了热烈讨论。许多评论者表达了相同的观点,分享了公司大力投资人工智能,但股价却下跌的经历。 一个关键主题是,虽然该*技术*很有前景,但实现切实的收益却很困难。用户指出人工智能的不可靠性和复杂性,将其与炒作的期望形成对比——类似于过去的技术泡沫,例如自动驾驶汽车。有人认为,人工智能的采用是由于管理层要求(作为 KPI 进行跟踪),而不是真正的生产力提高。 另一些人*确实*发现了价值,尤其是在使用人工智能来*创建*工具或通过自动化降低成本,即使这不一定能提高整体生产力。关于归因于人工智能的裁员,是该技术的真正后果,还是更广泛的经济因素和糟糕管理的结果,存在争议。最终,共识倾向于人工智能炒作周期的修正,未来可能涉及更微妙、更广泛的整合,而不是革命性的变革。
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原文

In 1987, economist and Nobel laureate Robert Solow made a stark observation about the stalling evolution of the Information Age: Following the advent of transistors, microprocessors, integrated circuits, and memory chips of the 1960s, economists and companies expected these new technologies to disrupt workplaces and result in a surge of productivity. Instead, productivity growth slowed, dropping from 2.9% from 1948 to 1973, to 1.1% after 1973.

Newfangled computers were actually at times producing too much information, generating agonizingly detailed reports and printing them on reams of paper. What had promised to be a boom to workplace productivity was for several years a bust. This unexpected outcome became known as Solow’s productivity paradox, thanks to the economist’s observation of the phenomenon.

“You can see the computer age everywhere but in the productivity statistics,” Solow wrote in a New York Times Book Review article in 1987.

Data on how C-suite executives are—or aren’t—using AI shows history is repeating itself, complicating the similar promises economists and Big Tech founders made about the technology’s impact on the workplace and economy. Despite 374 companies in the S&P 500 mentioning AI in earnings calls—most of which said the technology’s implementation in the firm was entirely positive—according to a Financial Times analysis from September 2024 to 2025, those positive adoptions aren’t being reflected in broader productivity gains.

A study published in February by the National Bureau of Economic Research found that among 6,000 CEOs, chief financial officers, and other executives from firms who responded to various business outlook surveys in the U.S., U.K., Germany, and Australia, the vast majority see little impact from AI on their operations. While about two-thirds of executives reported using AI, that usage amounted to only about 1.5 hours per week, and 25% of respondents reported not using AI in the workplace at all. Nearly 90% of firms said AI has had no impact on employment or productivity over the last three years, the research noted.

However, firms’ expectations of AI’s workplace and economic impact remained substantial: Executives also forecast AI will increase productivity by 1.4% and increase output by 0.8% over the next three years. While firms expected a 0.7% cut to employment over this time period, individual employees surveyed saw a 0.5% increase in employment.

Is AI actually making people more productive?

In 2023, MIT researchers claimed AI implementation could increase a worker’s performance by nearly 40% compared to workers who didn’t use the technology. But emerging data failing to show these promised productivity gains has led economists to wonder when—or if—AI will offer a return on corporate investments, which swelled to more than $250 billion in 2024.

“AI is everywhere except in the incoming macroeconomic data,” Apollo chief economist Torsten Slok wrote in a blog post, invoking Solow’s observation from nearly 40 years ago. “Today, you don’t see AI in the employment data, productivity data, or inflation data.”

Slok added that outside of the Magnificent Seven, there are “no signs of AI in profit margins or earnings expectations.”

Slok cited a slew of academic studies on AI and productivity, painting a contradictory picture about the utility of the technology. Last November, the Federal Reserve Bank of St. Louis published in its State of Generative AI Adoption report that it observed a 1.9% increase in excess cumulative productivity growth since the late-2022 introduction of ChatGPT. A 2024 MIT study, however, found a more modest 0.5% increase in productivity over the next decade.

“I don’t think we should belittle 0.5% in 10 years. That’s better than zero,” study author and Nobel laureate Daron Acemoglu said at the time. “But it’s just disappointing relative to the promises that people in the industry and in tech journalism are making.”

Other emerging research can offer reasons why: Workforce solutions firm ManpowerGroup’s 2026 Global Talent Barometer found that across nearly 14,000 workers in 19 countries, workers’ regular AI use increased 13% in 2025, but confidence in the technology’s utility plummeted 18%, indicating persistent distrust.

AI adoption can even be counterproductive at a certain point, according to a study conducted by Boston Consulting Group, leading to “AI brain fry.” In a survey of 1,488 full-time U.S.-based workers, respondents reported increased productivity when using three or fewer AI tools, but self-reported productivity plummeted when respondents used four or more tools, with workers saying they felt brain fog or made more small mistakes as a result of technology overuse.

Nickle LaMoreaux, IBM’s chief human resources officer, said this year the tech giant would triple its number of young hires, suggesting that despite AI’s ability to automate some of the required tasks, displacing entry-level workers would create a dearth of middle managers down the line, endangering the company’s leadership pipeline.

What could reverse AI’s productivity pattern?

To be sure, this productivity pattern could reverse. The IT boom of the 1970s and ’80s eventually gave way to a surge of productivity in the 1990s and early 2000s, including a 1.5% increase in productivity growth from 1995 to 2005 following decades of slump. 

Economist and Stanford University’s Digital Economy Lab director Erik Brynjolfsson noted in a Financial Times op-ed the trend may already be reversing. He observed that fourth-quarter GDP was tracking up 3.7%, despite last week’s jobs report revising down job gains to just 181,000, suggesting a productivity surge. His own analysis indicated a U.S. productivity jump of 2.7% last year, which he attributed to a transition from AI investment to reaping the benefits of the technology. Former Pimco CEO and economist Mohamed El-Erian also noted job growth and GDP growth continuing to decouple as a result in part of continued AI adoption, a similar phenomenon that occurred in the 1990s with office automation.

Some productivity increases may be hiding in plain sight. A study led by the Stanford Institute for Economic Policy Research found using internet browsing data from 200,000 U.S. households that generative AI increased the efficiency of online tasks like job hunting, travel planning, or shopping from between 76% and 176%. However, researchers found the time AI users saved on chores was spent hanging out with friends or watching television, as opposed to spent on work on new skills development.

Slok saw the future impact of AI as potentially resembling a “J-curve” of an initial slowdown in performance and results, followed by an exponential surge. He said whether AI’s productivity gains would follow this pattern would depend on the value created by AI. 

So far, AI’s path has already diverged from its IT predecessor. Slok noted in the 1980s, an innovator in the IT space had monopoly pricing power until competitors could create similar products. Today, however, AI tools are readily accessible as a result of “fierce competition” between large language model-buildings driving down prices.

Therefore, Slok posited, the future of AI productivity would depend on companies’ interest in taking advantage of the technology and continuing to incorporate it into their workplaces. “In other words, from a macro perspective, the value creation is not the product,” Slok said, “but how generative AI is used and implemented in different sectors in the economy.”

A version of this story was published on Fortune.com on Feb. 17, 2026.

More on AI and productivity:

  • AI is making productivity obsolete. The leaders who thrive next will have something machines can’t touch
  • AI promised supreme productivity, but it’s actually straining workloads for employees—time spent emailing has doubled, and focused work sessions fell by 9%
  • AI promises to free workers from grunt work, but psychologists say those mindless tasks are exactly what our brains need to recover
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