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The Turing Valley: How AI Capabilities Shape Labor Income

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  • Enrique Ide
  • Eduard Talam`as

Abstract

Do improvements in Artificial Intelligence (AI) benefit workers? We study how AI capabilities influence labor income in a competitive economy where production requires multidimensional knowledge, and firms organize production by matching humans and AI-powered machines in hierarchies designed to use knowledge efficiently. We show that advancements in AI in dimensions where machines underperform humans decrease total labor income, while advancements in dimensions where machines outperform humans increase it. Hence, if AI initially underperforms humans in all dimensions and improves gradually, total labor income initially declines before rising. We also characterize the AI that maximizes labor income. When humans are sufficiently weak in all knowledge dimensions, labor income is maximized when AI is as good as possible in all dimensions. Otherwise, labor income is maximized when AI simultaneously performs as poorly as possible in the dimensions where humans are relatively strong and as well as possible in the dimensions where humans are relatively weak. Our results suggest that choosing the direction of AI development can create significant divisions between the interests of labor and capital.

Suggested Citation

  • Enrique Ide & Eduard Talam`as, 2024. "The Turing Valley: How AI Capabilities Shape Labor Income," Papers 2408.16443, arXiv.org.
  • Handle: RePEc:arx:papers:2408.16443
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