Definition

Young-Worker AI Exposure Effect = The trend where early-career workers (ages 22-25) in jobs heavily exposed to generative AI are seeing declines or stagnation in employment compared to older or less-exposed workers.


Why It’s Happened


Key Findings (“Six Facts”)

  1. Declines for young workers in exposed jobs — Sharp employment drops for 22-25-year-olds in highly AI-exposed fields like software development and customer service.
  2. Overall job growth, but not for entry-level — Total employment is rising, but young workers in exposed roles have stagnated or declined since late 2022.
  3. Automation vs. augmentation matters — Declines are concentrated in occupations where AI replaces tasks, not where it supports workers.
  4. Effects remain after controlling for firm shocks — The drop persists even when adjusting for broader firm-level changes.
  5. Employment changes more than wages — Fewer jobs exist, but pay hasn’t shifted much yet, suggesting wage stickiness.
  6. Robust across samples — The pattern holds across industries, education levels, and remote/non-remote roles.

Implications / Suggestions