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Artificial Intelligence and the US Economy: An Accounting Perspective on Investment and Production

Author

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  • Luisa Carpinelli
  • Filippo Natoli
  • Marco Taboga

Abstract

Artificial intelligence (AI) has moved to the center of policy, market, and academic debates, but its macroeconomic footprint is still only partly understood. This paper provides an overview on how the current AI wave is captured in US national accounts, combining a simple macro-accounting framework with a stylized description of the AI production process. We highlight the crucial role played by data centers, which constitute the backbone of the AI ecosystem and have attracted formidable investment in 2025, as they are indispensable for meeting the rapidly increasing worldwide demand for AI services. We document that the boom in IT and AI-related capital expenditure in the first three quarters of the year has given an outsized boost to aggregate demand, while its contribution to GDP growth is smaller once the high import content of AI hardware is netted out. Furthermore, simple calculations suggest that, at current utilization rates and pricing, the production of services originating in new AI data centers could contribute to GDP over the turn of the next quarters on a scale comparable to that of investment spending to date. Short reinvestment cycles and uncertainty about future AI demand, while not currently acting as a macroeconomic drag, can nevertheless fuel macroeconomic risks over the medium term.

Suggested Citation

  • Luisa Carpinelli & Filippo Natoli & Marco Taboga, 2026. "Artificial Intelligence and the US Economy: An Accounting Perspective on Investment and Production," Papers 2601.11196, arXiv.org.
  • Handle: RePEc:arx:papers:2601.11196
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