Co-Skilling an AI-Ready America: A Policy Framework for Bridging the AI Skills Gap across the U.S. Workforce
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| Title: | Co-Skilling an AI-Ready America: A Policy Framework for Bridging the AI Skills Gap across the U.S. Workforce |
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| Language: | English |
| Authors: | Shubham Gupta |
| Source: | Online Submission. 2026. |
| Peer Reviewed: | N |
| Page Count: | 17 |
| Publication Date: | 2026 |
| Document Type: | Reports - Descriptive |
| Education Level: | Elementary Secondary Education Higher Education Postsecondary Education Two Year Colleges Adult Education |
| Descriptors: | Artificial Intelligence, Job Skills, Technological Literacy, Soft Skills, Labor Force Development, Federal Legislation, Labor Legislation, Apprenticeships, Skill Development, Elementary Secondary Education, Community Colleges, Adult Education, Employers, Public Policy |
| Laws, Policies and Program Identifiers: | Workforce Innovation and Opportunity Act 2014 |
| Abstract: | The emergence of generative artificial intelligence as a pervasive workplace technology has exposed a structural gap in the U.S. workforce development system: existing training architectures were designed for incremental skill change, not for the continuous, cross-occupational learning that AI-driven transformation demands. Although the World Economic Forum projects a net global gain of 78 million jobs by 2030, the distributional challenge is severe: 39% of core workforce skills will change or become obsolete within five years, yet only 31% of workers report receiving any AI-related training from their employers. This article proposes an AI-era competency and co-skilling framework grounded in the U.S. Department of Labor's 2026 AI Literacy Framework and aligned with the policy instruments available to states, workforce boards, community colleges, and employers. I define co-skilling as the simultaneous, collaborative development of AI technical competencies and the distinctly human skills (critical thinking, adaptability, ethical reasoning, and communication) that AI augments but cannot replace. I present a three-tier competency architecture, map institutional responsibilities across the delivery ecosystem, and offer specific policy recommendations for operationalizing co-skilling at scale through WIOA modernization, Workforce Pell, registered apprenticeship integration, and AI Workforce Centers of Excellence. The framework positions AI skill development not as a one-time credential event but as a sustained institutional practice embedded in work, credentialed through flexible pathways, and governed through shared accountability across education, workforce, and employer systems. |
| Abstractor: | As Provided |
| Entry Date: | 2026 |
| Accession Number: | ED680245 |
| Database: | ERIC |
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