Extracting Structured Labor Market Information from Job Postings with Generative AI

Author:

Howison Mark1ORCID,Ensor William O.1ORCID,Maharjan Suraj1ORCID,Parikh Rahil1ORCID,Sengamedu Srinivasan H.1ORCID,Daniels Paul2ORCID,Gaither Amber2ORCID,Yeats Carrie2ORCID,Reddy Chandan K.31ORCID,Hastings Justine S.41ORCID

Affiliation:

1. Amazon.com Inc, Seattle, United States

2. National Association of State Workforce Agencies, Washington, United States

3. Virginia Polytechnic Institute and State University, Blacksburg, United States

4. University of Washington, Seattle, United States

Abstract

Labor market information is an important input to labor, workforce, education, and macroeconomic policy. However, granular and real-time data on labor market trends are lacking; publicly available data from survey samples are released with significant lags and miss critical information such as skills and benefits. We use generative Artificial Intelligence to automatically extract structured labor market information from unstructured online job postings for the entire U.S. labor market. To demonstrate our methodology, we construct a sample of 6,800 job postings stratified by 68 major occupational groups, extract structured information on educational requirements, remote-work flexibility, full-time availability, and benefits, and show how these job characteristics vary across occupations. As a validation, we compare frequencies of educational requirements by occupation from our sample to survey data and find no statistically significant difference. Finally, we discuss the scalability to collections of millions of job postings. Our results establish the feasibility of measuring labor market trends at scale from online job postings thanks to advances in generative AI techniques. Improved access to such insights at scale and in real-time could transform the ability of policy leaders, including federal and state agencies and education providers, to make data-informed decisions that better support the American workforce.

Publisher

Association for Computing Machinery (ACM)

Reference23 articles.

1. James Manyika, Susan Lund, Michael Chui, Jacques Bughin, Jonathan Woetzel, Parul Batra, Ryan Ko, and Saurabh Sanghvi. 2017. Jobs Lost, Jobs Gained: Workforce Transitions in a Time of Automation. McKinsey Global Institute (November 28, 2017). Retrieved December 8, 2023 from https://www.mckinsey.com/featured-insights/future-of-work/jobs-lost-jobs-gained-what-the-future-of-work-will-mean-for-jobs-skills-and-wages

2. National Association of State Workforce Agencies. 2023. Legislative Priorities: Data Infrastructure. Retrieved December 8, 2023 from https://www.naswa.org/advocacy/government-relations/2023-legislative-priorities

3. How many jobs can be done at home?

4. Efficiency of autocoding programs for converting job descriptors into standard occupational classification (SOC) codes

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