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Follow the money: a startup-based measure of AI exposure across occupations, industries and regions (2412.04924v2)

Published 6 Dec 2024 in econ.GN, cs.AI, and q-fin.EC

Abstract: The integration of AI into the workplace is advancing rapidly, necessitating robust metrics to evaluate its tangible impact on the labour market. Existing measures of AI occupational exposure largely focus on AI's theoretical potential to substitute or complement human labour on the basis of technical feasibility, providing limited insight into actual adoption and offering inadequate guidance for policymakers. To address this gap, we introduce the AI Startup Exposure (AISE) index-a novel metric based on occupational descriptions from O*NET and AI applications developed by startups funded by the Y Combinator accelerator. Our findings indicate that while high-skilled professions are theoretically highly exposed according to conventional metrics, they are heterogeneously targeted by startups. Roles involving routine organizational tasks-such as data analysis and office management-display significant exposure, while occupations involving tasks that are less amenable to AI automation due to ethical or high-stakes, more than feasibility, considerations -- such as judges or surgeons -- present lower AISE scores. By focusing on venture-backed AI applications, our approach offers a nuanced perspective on how AI is reshaping the labour market. It challenges the conventional assumption that high-skilled jobs uniformly face high AI risks, highlighting instead the role of today's AI players' societal desirability-driven and market-oriented choices as critical determinants of AI exposure. Contrary to fears of widespread job displacement, our findings suggest that AI adoption will be gradual and shaped by social factors as much as by the technical feasibility of AI applications. This framework provides a dynamic, forward-looking tool for policymakers and stakeholders to monitor AI's evolving impact and navigate the changing labour landscape.

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Authors (8)
  1. Enrico Maria Fenoaltea (7 papers)
  2. Dario Mazzilli (17 papers)
  3. Aurelio Patelli (22 papers)
  4. Angelica Sbardella (8 papers)
  5. Andrea Tacchella (14 papers)
  6. Andrea Zaccaria (40 papers)
  7. Marco Trombetti (9 papers)
  8. Luciano Pietronero (36 papers)