America’s AI ambitions may be undone not by a lack of capital or computing power, but by a shortage of electricians.
That’s the emerging consensus between two disparate titans of the Fortune 500: Ford CEO Jim Farley, who has spent years sounding the alarm about a crisis in what he calls the “essential economy,” and Goldman Sachs, which is putting hard numbers on a labor crunch that threatens to slow the very AI buildout Wall Street has been banking on.
Farley has been the most persistent corporate voice warning the U.S. is sleepwalking into a workforce disaster. What he calls the essential economy, the blue-collar sectors that get things “moved, built, or fixed,” represents $12 trillion in U.S. GDP, per the Aspen Institute. But it is chronically understaffed and undervalued. The country is already short 600,000 factory workers and 500,000 construction workers, Farley wrote in a LinkedIn post last June. And he sees the situation getting worse, not better.
“I think the intent is there, but there’s nothing to backfill the ambition,” Farley told Axios in September 2025. “How can we reshore all this stuff if we don’t have people to work there?”
The irony, Farley argues, is the very technology disrupting white-collar work is creating a tidal wave of demand for the blue-collar workers America has neglected. AI could eliminate half of all white-collar jobs in the U.S. within a decade, he warned at last year’s Aspen Ideas Festival—gutting entry-level tech roles like junior programming and clerical work, the rungs many young Americans have been told to climb. Meanwhile, the skilled tradespeople needed to build the data centers that will run those AI systems simply don’t exist in sufficient numbers.
This dynamic suggests a disquieting loop. AI is eliminating the entry-level, white-collar jobs that have historically drawn young workers into technology careers—potentially shrinking the very talent pool that, with retraining, could feed the trades pipeline. The technology is simultaneously generating the infrastructure demand and undermining the workforce capacity to meet it.
“There’s more than one way to the American Dream, but our whole education system is focused on four-year education,” Farley said at Aspen. “Hiring an entry worker at a tech company has fallen 50% since 2019. Is that really where we want all of our kids to go?”
Now Goldman Sachs has quantified exactly how severe the constraint is.
In a Goldman Sachs Exchanges podcast appearance, Brian Singer, head of GS Sustain, warned the AI infrastructure buildout will require 500,000 new U.S. jobs just to build and power data centers—roughly 300,000 to supply electricity generation and another 200,000 for grid transmission and distribution work. The latter is the sticking point. GS Sustain is Goldman Sachs Research’s sustainability-focused framework, providing research and data tools exploring how innovation, regulation, and implementation of sustainability topics impact sustainable investing and broader capital flows
“Where we are more concerned about is on the transmission and distribution side,” Singer said, “because there electricians need four years of skilling.” The U.S. currently has approximately 45,000 energy apprentices, Singer noted—a number that needs to rise by 20,000 to 25,000 just to keep pace with projected demand.
Regional disparities
Those national figures, however, may obscure an even more acute regional crisis. Data center construction is heavily concentrated in a handful of markets: Virginia—which shoulders roughly 70% of the world’s internet traffic and has nearly 35 GW in development—along with Texas and Arizona’s Phoenix metro, which ranks third nationally for new capacity.
Matt Landek, global division president for data centers at JLL, warned earlier this year secondary markets “frequently lack the specialized construction expertise, skilled technical workforce, and operational support infrastructure that primary markets provide,” meaning the labor crunch follows the buildout wherever it goes. When multiple hyperscale campuses break ground simultaneously in a single region, local talent pools are exhausted within months—forcing contractors to import workers from other states. In Northern Virginia, the wage pressure is already measurable: Journeyman electricians now earn upward of $120,000 annually, and Microsoft has resorted to employing electricians commuting from 75 miles away.
Singer framed the labor constraint as the most worrying of his firm’s “6 Ps,” a framework of factors that could drive or throttle AI power demand, encompassing pervasiveness, productivity, price, policy, parts, and people. Of the six, he said, “people” keeps him up at night most.
The Goldman analysis arrives at essentially the same conclusion Farley reached through the windshield of Detroit: that America’s AI moonshot is running on a cracked foundation. All the hyperscaler capital in the world can’t conjure a licensed electrician out of thin air (Goldman estimates combined budgets rose by more than $300 billion for 2026 and 2027). And the cruel arithmetic of the AI moment means the technology eroding one workforce is depending on another workforce that America has spent decades failing to build.
Farley’s fix is systemic: more investment in vocational education, expanded apprenticeship pipelines, and a cultural reckoning with the prestige gap between four-year degrees and trade careers.
“On the surface, this looks like a people problem,” he told Axios. “But it’s actually not that simple. It’s an awareness problem. It’s a societal problem.”
Goldman’s Singer put it more bluntly: Without the workers to build the grid, the data centers don’t get built—and the AI revolution stalls on a transmission line.
For this story, Fortune journalists used generative AI as a research tool. An editor verified the accuracy of the information before publishing.