Global Automation Atlas
Prashant Garg, Tommaso Crosta, Jasmin Baier

TL;DR
This paper introduces a comprehensive, country-specific, task-based measure of automation exposure across 124 countries, revealing significant variation in automation's impact on labor, technology channels, and AI involvement.
Contribution
It develops a novel methodology to classify automation exposure by labor substitution and augmentation, accounting for country-specific contexts and technological channels.
Findings
Automation exposure varies widely across countries, from 3.3% in South Sudan to 61.6% in China.
Exposed tasks are mostly labor-substituting, especially in low-income countries.
AI is more prevalent in labor-augmenting channels in high-income countries.
Abstract
Automation affects the labour content of work differently across different contexts. Yet, most existing exposure measures assign fixed scores to tasks or occupations, limiting comparisons of automation exposure across countries. We develop a task-based and country-specific approach to classify automation exposure across the world to disentangle labor-substituting from labor-augmenting automation, the relevant technology channel, and the material role of AI. Our measure spans 124 countries, generating an atlas of 2.33 million task-country labels for economies covering 99% of world population and GDP. We present five descriptive results. First, exposure is highly uneven, ranging from 3.3% of tasks in South Sudan to 61.6% in China, and rises strongly with income, although substantial variation remains within income groups. Second, across countries, exposed tasks are skewed towards…
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