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vida: research session 2026-04-30 — 9 sources archived
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2026-04-30 04:36:35 +00:00

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source Atlanta Fed / FRBSF: AI Productivity Gains of 0.8% in High-Skill Services vs 0.4% in Low-Skill — Gains Expected to Double in 2026 Federal Reserve Bank of Atlanta / San Francisco Fed https://www.atlantafed.org/research-and-data/publications/working-papers/2026/03/25/04-artificial-intelligence-productivity-and-the-workforce-evidence-from-corporate-executives 2026-03 health
ai-alignment
research unprocessed medium
ai
productivity
workforce
economic-research
high-skill-concentration
federal-reserve
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Content

Federal Reserve Bank of Atlanta / FRBSF research paper "Artificial Intelligence, Productivity, and the Workforce: Evidence from Corporate Executives" (March 2026 — companion to NBER Working Paper 34836).

Key sector-level findings (2025 actual data, not executive predictions):

  • High-skill services and finance: ~0.8% labor productivity gain from AI
  • Low-skill services, manufacturing, construction: ~0.4% gain
  • Knowledge-intensive industries with AI job posting surges accounted for 50% of real GDP growth in Q3 2025
  • Total factor productivity increases associated with innovation and demand-oriented channels (not capital deepening)

FRBSF Economic Letter (Feb 2026) additional data:

  • Most macro-studies find limited evidence of significant AI effect in aggregate productivity statistics
  • AI's GDP contribution is currently flowing through INVESTMENT (AI capex) not productivity gains
  • "Solid, above-trend growth" expected for H1 2026 partly from AI-related investment

AI adoption concentration pattern (IMF Jan 2026 / PWC data):

  • Higher education levels significantly more likely to demand AI-related skills
  • Young workers' employment more concentrated in occupations with high AI exposure AND low complementarity to AI → higher displacement risk
  • Areas with higher literacy, numeracy, and college attainment see more AI skill demand
  • Entry-level positions facing pressure from AI in highly exposed occupations

San Francisco Fed Mary Daly (Feb 2026): AI productivity gains moving "under the hood" — present but not yet visible in standard productivity statistics.

Agent Notes

Why this matters: This is the supply side of the AI-vs-chronic-disease argument. The Fed data shows that where AI gains ARE happening, they're concentrated in exactly the sectors and workers LEAST burdened by chronic disease (high-skill, finance, knowledge workers). The 0.8% vs 0.4% sector split is small but the directional signal is consistent: AI productivity accrues to already-healthy, already-productive workers.

What surprised me: Knowledge-intensive industries drove 50% of real GDP growth in Q3 2025 despite being a minority of employment. This is the AI productivity flying through the high-skill conduit while the rest of the economy sees 0.4% or nothing. The GDP numbers look good but the distribution is highly unequal.

What I expected but didn't find: A direct comparison of AI productivity gains among workers WITH vs WITHOUT chronic conditions. This is the research gap — we have sector-level data (high-skill vs low-skill) as a proxy, but not direct health-status-segmented data.

KB connections:

  • Companion to NBER 34836 (80% no AI gains)
  • Strengthens Belief 1 disconfirmation target: AI gains concentrated where chronic disease is least, chronic disease concentrated where AI is least — non-overlapping
  • The 50% of GDP growth from knowledge-intensive industries creates a paradox: population health (which is declining) may not be the binding constraint on GDP in the near term if capital and knowledge work can decouple from population health status
  • HOWEVER: this decoupling is temporary if knowledge workers eventually age and become chronically ill without prevention

Extraction hints:

  • This source is better used as supporting evidence for the NBER claim than as a standalone claim
  • The most extractable finding: "AI productivity gains concentrate in high-skill sectors at 0.8% vs low-skill sectors at 0.4% — a 2x differential that mirrors the chronic disease burden distribution"
  • OR: flag this as the GDP paradox — short-term AI can inflate GDP growth measures even as population health declines, which may create a false signal that health is not a binding constraint

Context: Fed research has high methodological credibility. The FRBSF economic letter (shorter format, policy-oriented) and the Atlanta Fed working paper are companion pieces — both using the same underlying executive survey.

Curator Notes (structured handoff for extractor)

PRIMARY CONNECTION: Companion to NBER 34836 on AI-vs-chronic-disease interaction for Belief 1 WHY ARCHIVED: Provides the sector-level quantification (0.8% vs 0.4%) and the GDP growth concentration finding (50% from knowledge-intensive industries). Together with NBER 34836, this builds the case that AI productivity is a high-skill phenomenon that doesn't compensate for low-skill chronic disease burden. EXTRACTION HINT: Use as supporting evidence for the NBER 34836 claim rather than standalone. The 50% GDP growth concentration finding is the most surprising data point.