This paper examines how Generative Artificial Intelligence (GenAI) could affect labor markets globally, with particular attention to the uneven distribution of risks and opportunities between advanced and developing economies. Cross-country differences in occupational structure suggest that developing economies face lower aggregate automation exposure than developed countries but comparable potential for task augmentation. However, disparities in digital infrastructure create an asymmetry: workers in positions vulnerable to automation typically maintain sufficient internet connectivity to experience displacement effects even in low-income settings, while those who could benefit from GenAI augmentation face substantial digital infrastructure gaps that may prevent them from realizing productivity gains. This finding suggests that developing countries may experience the disruptive effects of GenAI faster than its productivity benefits. On the other hand, conventional occupational exposure measures systematically overestimate GenAI's impact in developing countries by assuming uniform task content across economies. Using PIAAC and STEP survey data, we demonstrate that workers in developing countries perform substantially fewer non-routine analytical tasks—GenAI's primary targets—even within occupations classified as highly exposed. These findings highlight the importance of adapting GenAI exposure measures to developing countries' distance from the technology frontier.
| Repository name | URI |
|---|---|
| Reproducible Research Repository (World Bank) | https://reproducibility.worldbank.org |
Paper exhibits were reproduced on a computer with the following specifications:
• OS: Windows 11 Enterprise
• Processor: Intel(R) Xeon(R) Gold 6226R CPU @ 2.90GHz
• Memory available: 16.0 GB
• Software version: R 4.5.1, Stata 19.5 MP
Runtime: 1 hour 15 minutes
Once users have access to all the data, to reproduce the findings, a new user needs to:
01_Country_level_GenAI_exposure/main_for_01.R script and run the code.02_GenAI_exposure_by_internet_access/main_for_02.R script and run the code.03_Task_content_job_measures/main_for_03.do do-file and run the code.04_GenAI_exposure_task_content/Step_2_GenAI_and_task_content.Rmd script and run the code.05_Mlogit_model_annex/main_for_05.R script and run the code.05_Mlogit_model_annex/03-mlogit-model-estimation do-file and run the code.Some data is limited-access/restricted and has not been included in the reproducibility package. For more details, please refer to the README file.
| Author | Affiliation | |
|---|---|---|
| Hector Daniel Segura Jimenez | World Bank | hsegurajimenez@worldbank.org |
| Hernan Winkler | World Bank | hwinkler@worldbank.org |
| Pawel Gmyrek | ILO | gmyrek@ilo.org |
| Mariana Viollaz | World Bank | mviollaz@worldbank.org |
2026-01-15
| Location | Code |
|---|---|
| World | WLD |
The materials in the reproducibility packages are distributed as they were prepared by the staff of the International Bank for Reconstruction and Development/The World Bank. The findings, interpretations, and conclusions expressed in this event do not necessarily reflect the views of the World Bank, the Executive Directors of the World Bank, or the governments they represent. The World Bank does not guarantee the accuracy of the materials included in the reproducibility package.
| Name | URI |
|---|---|
| Modified BSD3 | https://opensource.org/license/bsd-3-clause/ |
| Name | Affiliation | |
|---|---|---|
| Hernan Winkler | World Bank | hwinkler@worldbank.org |
| Reproducibility WBG | World Bank | reproducibility@worldbank.org |
| Name | Abbreviation | Affiliation | Role |
|---|---|---|---|
| Reproducibility WBG | DECDI | World Bank - Development Impact Department | Verification and preparation of metadata |
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