科技公司高管似乎正遭受人工智能精神错乱的困扰。
Tech CEOs are apparently suffering from AI psychosis

原始链接: https://techcrunch.com/2026/05/27/tech-ceos-are-apparently-suffering-from-ai-psychosis/

科技行业目前正深陷一种被称为“人工智能精神错乱”(AI psychosis)的现象:首席执行官们由于脱离了“最后一公里”工作的技术复杂性,正急于用人工智能代理取代人类员工。Box 首席执行官亚伦·列维(Aaron Levie)认为,高层管理人员往往高估了人工智能目前的能力,因为他们只进行了浅层交互,未能领会代码调试或法律审查等任务中所需的人工细致监管。 尽管为了所谓的“人工智能驱动的生产力提升”而进行了大规模裁员,但来自麻省理工学院和加州大学伯克利分校等机构的数据却揭示了一个“生产力悖论”。当前的人工智能模型往往缺乏超越人类所需的质量,研究表明,激进的人工智能集成往往将瓶颈转移到了管理层,而非精简产出。这种脱节不仅未能带来真正的效率,反而可能引发组织混乱。专家建议,为了有效地实施人工智能,领导者必须超越炒作,深入了解该技术的实际局限性。首席执行官们不应盲目裁员,而应采取更务实的方法,确保人类专业知识在复杂工作流程中始终处于核心地位。

《TechCrunch》近期刊登的一篇文章声称科技公司首席执行官们患有“人工智能精神病”,这在 Hacker News 上引发了激烈讨论。批评者认为,这个词汇是为了抹黑高管而设计的哗众取宠的标签;而另一方则认为,它准确地描述了领导层与一线工作现实之间存在的危险脱节。 许多评论者指出,这种脱节——即高层管理人员在不了解运营复杂性的情况下盲目推动自动化——是一个长期存在的企业问题,并非人工智能时代独有的现象。怀疑论者指出,首席执行官们可能高估了人工智能目前的能力,却低估了维持这些系统正常运行所需的高强度人工维护工作。 除了组织动态,讨论还涉及了更深层的担忧:人工智能聊天机器人的持续肯定是否助长了自恋倾向;为了维持投资者的信心,首席执行官是否被迫表现出过度的乐观;以及对人工智能的广泛痴迷是否是社会沉迷于技术解决方案这一更广泛趋势的症状。归根结底,参与者的共识是:尽管人工智能确实带来了挑战,但关于工作未来的讨论往往因夸张的语言和极端的观点而变得模糊不清。
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原文

There is a certain wildness in the tech industry these days that both mimics previous eras of large changes, like cloud computing (runaway costs in the early days), and is like nothing we’ve ever seen before (record revenues accompanied by mass layoffs).

One possible explanation: tech executives, especially CEOs, are collectively suffering from delusions of AI grandeur. And at least one tech CEO has said as much out loud: Box founder Aaron Levie.

“CEOs are uniquely prone to AI psychosis because they’re sufficiently distant from the last mile of work that still has to happen to generate most value with AI,” Levie wrote on X.

CEOs “play with AI,” develop a prototype, or generate a contract, to use Levie’s examples, and then make the leap to believing agents can do the work.

But these top-level executives aren’t the people who have to review code, discover bugs, and identify calls to hallucinated libraries before software is deployed. They aren’t responsible for training AI models on a company’s idiosyncratic contract terms, nor do they have to spend days combing through contracts to find sneaky terms, as Levie indicates.

In other words, Levie’s theory posits, CEOs don’t really understand processes well enough to know what really can and can’t be automated. But that lack of knowledge doesn’t stop them from acting on their beliefs.

It’s important to note that Levie is not an AI hater. Quite the opposite. He mostly posts AI positivity on X to his 2.7 million followers, writing blogs titled, “Headless software is the future” on how software built for AI agents is the way forward. He also puts his money where his mouth is, backing AI startups as an active angel investor.

So what are CEOs to do instead? Levie advises CEOs to use AI “a ton” to really see what it can and can’t do, “and come out the other side with an appreciation for both the upside and the real work.”

I have enough faith in humanity to believe that there are CEOs out there attempting to do just that, but right now, they seem to be in the minority.

In only the first five months of 2026, the tech industry has already had nearly as many layoffs as in all of 2025: 115,430 people have been fired from 152 tech companies so far in 2026, compared to 124,636 people let go by 275 companies in 2025, according to industry layoff tracker Layoffs.fyi.

And the bulk of companies have pointed to AI as a reason for cutting these jobs. Many argue that the biggest tech companies are AI washing, or crediting AI productivity gains in the past or future, when other business decisions and metrics are really driving the cuts.

Still, some of these stories are surprising. Zeb Evans, the CEO of project management and productivity software startup ClickUp, proudly declared on X that he had laid off almost a quarter of his employees — 22% — after rolling out about 3,000 AI agents to do internal work.

Evans swore this wasn’t done to reduce costs. Instead, he wants a workforce composed of people who run AI agents and spend their days quickly reviewing the agents’ work. He believes this will create a “100x org,” as he calls it.

While AI can be a very useful tool, the data on AI and productivity doesn’t support such assumptions. By miles.

A meta analysis of other research published in October in UC Berkeley’s California Management Review found “no robust relationship between AI adoption and aggregate productivity gain.”

Research published in March by the National Bureau of Economic Research did conclude that AI adoption improved productivity, but noted “a productivity paradox, in which perceived productivity gains are larger than measured productivity gains.”

After creating thousands of agents to work on tasks, researchers at MIT concluded that agents just aren’t doing human-quality work yet in many cases. They predict at the current rate of LLM improvement, models will “be able to complete most text-related tasks with success rates of, on average, 80%–95% by 2029 at a minimally sufficient quality level.”

In other words, AI is on track to perform at base competence on most tasks in about three years. These researchers believe agents will need another few years to outperform humans.

Meanwhile, research published in the Harvard Business Review showed that when everyone is using AI to produce more stuff, the bottleneck simply shifts to executives. Their work awaits the people that must authorize all the stuff everyone is producing. If everyone is empowered to act, then from what OpenAI experienced last year, we can tell that things may get out of control.

Are CEOs ready for that? If not, the most certain outcome of the ongoing CEO AI psychosis will simply be organizational chaos.

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