AI, Technology, and Work
Generative artificial intelligence (AI) is upending professions as diverse as art, cinema, accounting, national defense, and education. Some even argue that AI will render almost all work obsolete. They say its ability to “think” and accomplish tasks previously solely in the realm of human ability will mean that humans will not need to work; the machines will do everything for us. Whether this would be a good thing or a bad thing depends on the story one wants to tell.
Some claim the loss of work to AI will lead to class warfare, as the poor get poorer and the rich get richer. Others think that, if AI ends work, it necessarily means that scarcity ends as well, and thus there will be no need for money. Others claim AI will destroy all human life long before we get to that point and it’ll be moot. Still others say that AI will obey the laws of economics and we’ll never reach that point (on these last two, see Ole Miss economist Henry Thompson’s working paper “Some Economics of Artificial Super Intelligence”). The question of what will happen if AI eliminates work is interesting, but I want to focus on how AI is likely to affect work and jobs.
Concerns about the effect of machinery on labor and labor income is hardly new. Many of the concerns about AI echo those of the Luddites, a movement in 19th-century Great Britain against the introduction of weaving machinery into the trade. The Luddites feared that some of the automation entering weaving would lead to cheap, low-quality output and displace skilled workers. They launched a sabotage campaign against the machinery, but ultimately lost the battle. Over the next two centuries, the textile industry became highly automated.
Fast forward to the 20th-century, John Maynard Keynes made a similar (albeit less pessimistic) prediction about how automation would affect work. In his 1930 article “The Economic Possibilities for Our Grandchildren,” Keynes argued that automation would allow us to work for just three hours a day.
Both predictions ended up being wrong.
Some weavers lost jobs, but the industry was hardly overtaken by slop. Wages actually rose for skilled textile workers. In 1800, the average wage of a textile worker was about 25 shillings a week (£91.68, adjusted for inflation), or approximately £4,767, inflation-adjusted, per year. Currently, the average annual textile wage for a skilled worker is £29,000.
Why did wages rise? Because automation changed the nature of work. Workers who could not do more than recreate what the machines did, lost their jobs. Those who found ways for the machines to complement their work saw their productivity (and thus wages) increase. A recently-accepted paper in the Journal of Labor Economics by Daron Acemoglou, Hans Koster, and Ceren Ozgen finds these results hold even with modern automation.
What about Keynes’s prediction? According to the Bureau of Labor Statistics, people in 2024 worked on average 42 hours (full-time) or 34.2 hours (all workers) per week.* While that is down some from Keynes’s day of approximately 47 hours a week,** it’s still a far cry from 15 hours a week.
In a short paper published last year in Industrial and Organization Psychology, my colleague Dr. Anne-Marie Castille and I explore the reasons for these incorrect predictions. We argue that the reason Keynes and the Luddites were incorrect is that they failed to recognize that automation did not resolve the reason we work: resources (not the least of which is time) are scarce.
Initially, we spend our time on high marginal value activities. As automation comes along to reduce the amount of time we need to spend on those activities, it frees up time for lower marginal value activities. That is, activities we were not previously engaging in because the cost was too great. What those activities are differ from person to person. And sometimes, new desires are created or discovered. We write:
“Domestic chores used to be very labor-intensive, requiring many labor hours to accomplish. Washing laundry required each item to be hand washed, dried on a clothesline, and brought in when finished. With the invention and proliferation of the washing machine, the time needed to wash laundry dropped precipitously. The labor hours per load of laundry are probably less than 20 mins. Domestic laborers (mainly women) now had much more time on their hands. They could choose to take leisure or choose to spend those hours in other ways. Many women chose to spend these newly liberated hours by joining the workforce.
…
“As people got wealthier, their basic desires of food security, shelter security and companionship were satisfied using fewer resources. Thus, the trade-off we have discussed came about: Does one use the newfound time for leisure or for work so that we may satisfy other desires?”
I argue now that the same pattern will repeat with generative AI. As AI proliferates throughout our society, some jobs will be lost, yes. But new jobs will be discovered. What those jobs are, I do not know. No one knows. Human ingenuity and desire know no bounds. We will discover new ways to satisfy our new desires, and we will continue to work. AI will not solve the underlying motivation for work: scarcity.
*Average weekly hours of all employees, total private, seasonally adjusted, Series ID: CES0500000002.
**See table 2.
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