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What Can Machines Learn, and What Does It Mean for Occupations and the Economy?

Brynjolfsson, Mitchell, Rock

2018552 citations
Automation / RobotsMachine Learning (pre-LLM)
Abstract

Advances in machine learning (ML) are poised to transform numerous occupations and industries. This raises the question of which tasks will be most affected by ML. We apply the rubric evaluating task potential for ML in Brynjolfsson and Mitchell (2017) to build measures of “Suitability for Machine Learning” (SML) and apply it to 18,156 tasks in O*NET. We find that (i) ML affects different occupations than earlier automation waves; (ii) most occupations include at least some SML tasks; (iii) few occupations are fully automatable using ML; and (iv) realizing the potential of ML usually requires redesign of job task content.

Primary Datasets

O*NET; CrowdFlower

Secondary Datasets

BLS employment and wage data

Key Methods
Suitability for ML rubric; crowdsourced task scoring; task-to-occupation aggregation
Sample Period
Cross-sectional (2017-2018)
Geographic Coverage
US
Occupation Classification
O*NET-SOC
Replication Package
Yes