ArXiv TLDR

What Jobs Can AI Learn? Measuring Exposure by Reinforcement Learning

🐦 Tweet
2605.02598

Philip Moreira Tomei, Bouke Klein Teeselink

econ.GN

TLDR

This paper introduces an RL Feasibility Index to measure which jobs AI can learn, diverging from existing AI exposure metrics.

Key contributions

  • Develops an "RL Feasibility Index" to assess AI learnability for all US occupations.
  • Scores 17,951 ONET tasks for RL training feasibility using LLM annotators and expert rubrics.
  • Reveals significant divergences between RL learnability and general AI exposure for specific job groups.

Why it matters

Existing AI exposure measures misclassify jobs by focusing on current capabilities rather than learnability. This paper offers a novel, task-based RL framework to accurately assess AI's potential to learn specific jobs. Its findings have crucial implications for future policy interventions regarding AI's impact on the workforce.

Original Abstract

Which jobs can AI learn to do? We examine this for every occupation in the US economy. Existing indices measure the overlap between AI capabilities and occupational tasks rather than which tasks AI systems can learn to perform, and as a result misclassify occupations where the gap between present capability and learnability is large. Reinforcement learning in post-training, now the dominant paradigm at the frontier, is structured around task completion and maps more directly onto the task-based architecture of occupational classifications than prior approaches. Using LLM annotators guided by a rubric developed with RL experts and validated against confirmed deployment cases, we score all 17,951 ONET tasks for training feasibility and aggregate to the occupation level, producing an RL Feasibility Index. The index diverges sharply from existing AI exposure measures for specific occupation groups: power plant operators, railroad conductors, and aircraft cargo handling supervisors score high on RL feasibility but low on general AI exposure, while creative and interpersonal roles (musicians, physicians, natural sciences managers) show the reverse. These divergences carry direct implications for policy interventions.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.