Transforming Vocational Education with AI: A Strategic Approach to Skill Development
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Abstract
The rapid advancements in technology have created an urgent need for vocational education systems to adapt and equip learners with the skills required in modern industries. This paper explores how Artificial Intelligence (AI) can transform vocational education by enhancing the quality and accessibility of training programs. It discusses the strategic integration of AI tools such as predictive analytics, personalized learning algorithms, and automated assessments to improve learning outcomes. The paper also outlines the potential of AI to address the challenges faced by traditional vocational education systems, such as limited resources, scalability, and industry alignment, and presents a roadmap for AI-driven vocational education reform.
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