对人工智能引发就业恐慌的现实审视
A reality check on the AI jobs hysteria

原始链接: https://www.technologyreview.com/2026/05/26/1137855/a-reality-check-on-the-ai-jobs-hysteria/

近期的讨论表明,学生们并没有放弃人工智能驱动的职业,而是通过转向数据科学和网络安全等与人工智能相关的领域来适应变化。尽管人们普遍担心人工智能会让劳动力变得多余——这与此前关于无人驾驶卡车和放射学领域那些大体上不准确的担忧如出一辙——但历史表明,技术变革通常会重新定义工作,而非将其彻底淘汰。 然而,专家提醒道,即使不会出现大规模失业,转型期也可能令人痛苦。主要的风险在于变革的“速度”:缓慢且可预测的整合能让劳动力市场有所适应,而剧烈的颠覆可能会让许多劳动者掉队,并可能引发类似于历史上“中国冲击”那样的重大经济困难。 归根结底,重点应从反乌托邦式的预测转向对实时数据的监测。通过密切追踪工作岗位的重定义方式及其演变速度,政策制定者可以为劳动力流失的挑战做好更充分的准备。理解这一转型过程,而非担忧彻底的崩溃,对于保护弱势劳动者并确保经济演变处于可控状态至关重要。

抱歉。
相关文章

原文

But a closer look at the data shows that students are not necessarily turning away from AI-related careers. Rather, they appear to be tailoring their skills to the changes they see underway as AI becomes increasingly important for various disciplines. Interest is rising in AI-adjacent fields like data science and cybersecurity. One fast-growing major: artificial intelligence itself (a recent addition to many college offerings).

Is this time different?

Anxiety over the potential of AI to replace workers is nothing new. I wrote “How Technology Is Destroying Jobs” in 2013, describing how a slew of new digital technologies, including AI, were beginning to threaten white-collar work. I wasn’t alone. It was a popular theme at a time when the labor market was sluggish and jobs were scarce. 

In one of his last days in office in late 2016, President Obama issued a report written by his top economic and science advisors warning that AI was threatening workers. Among the findings was that automated vehicles—especially driverless trucks—could eliminate 2.2 million to 3.1 million existing US jobs.  Around the same time, one of the pioneers of AI, Geoffrey Hinton, said that “people should stop training radiologists” because it was “completely obvious” the occupation was soon to be replaced by AI.

None of these predictions came true, of course (nor did so-called technological unemployment occur during several earlier tech-related job panics). The forecasts were often wrong about the pace of the technological advances—we’re still waiting for fleets of driverless trucks on the highways—and failed to understand the complex portfolio of tasks that make up many jobs. AI has indeed become a tool for screening radiology images, but there are more radiologists than ever. It turns out that human radiologists perform a multitude of valuable tasks, including interpreting results and interacting with patients, that can’t be accomplished with AI (yet).

Perhaps this time is different, and we can put aside the lessons of economic history. Certainly, AI has gained unimaginable powers to do humanlike tasks. Perhaps it will devour jobs in ways that we’ve never seen before. And perhaps that will happen abruptly, without a warning buried in the labor statistics. But the previous bouts of AI job anxiety still hold a prescient lesson: Our real focus needs to be less on the dystopian fears and more on the very real transitions in the workplace that will likely affect millions of people.

“Even if there is not mass or even increased unemployment, the transition could still be very difficult,” says Jed Kolko, senior fellow at the Peterson Institute for International Economics and former undersecretary of commerce in the Biden administration. “And what does a difficult transition period mean? It means people losing jobs, or people’s jobs being redefined in ways that make those jobs pay worse or be less meaningful. And some people whose jobs are threatened may not be able to adapt.”

The more we understand this transition, the better prepared we’ll be to deal with it.  And for that we’ll need better and more complete data.

For McEntarfer, the former commissioner of the BLS, the real question is the speed of any disruption. “If it happens at the normal pace of technological change, labor markets will have time to adapt. If there is a sudden and severe disruption, then that will be a big challenge for policymakers,” she says. “That’s really the most important question facing us right now: how rapid this transformation is going to be.” And, she adds, “we’ll know by watching the data.”

Two decades ago, the country was caught flat-footed by the so-called China shock as free-trade policies led to an influx of imports and the devastation of manufacturing jobs in many parts of the country. It took years for researchers to understand the data showing how the trade policies, generally welcomed by economists, were destroying communities. Today the threat of an economic transformation brought on by AI is far larger and points to potentially far more damage for huge groups of workers.

联系我们 contact @ memedata.com