Artificial Intelligence (AI) is rapidly transforming higher education and vocational training, presenting both unprecedented opportunities and significant challenges. This integrative literature review examines the impact of AI-driven innovations on education, focusing on their implications for educators, students, and employability. The study explores key themes, including AI-driven educational tools, institutional policies, ethical considerations, and the role of educators in ensuring equitable access to AI-powered learning resources. While AI enhances adaptive learning, assessment automation, and personalized educational experiences, its implementation risks exacerbating inequalities due to biased algorithms and unequal infrastructure distribution. Furthermore, the study highlights the necessity of professional development and institutional strategies to empower educators in leveraging AI effectively. It also introduces specialized roles such as Vocational AI Curriculum Developer and Vocational AI Data Protection Specialist to support AI integration in vocational training. By synthesizing research on AI applications in higher education and vocational training, this review provides critical insights into strategic investments, policy recommendations, and sustainable AI-driven teaching models. The findings underscore the importance of a balanced approach that fosters innovation while ensuring ethical AI deployment, ultimately preparing students for an evolving job market. The findings show that AI can improve teaching, research, and administration, but its success depends on continuous research, collaboration, and careful planning. The paper emphasizes the importance of a fair and wellstructured approach to AI adoption in higher education and vocational training, ensuring that technological advancements lead to accessible, ethical, and meaningful learning experiences.
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Bindu George
K. R. Resmi
International Journal for Research in Applied Science and Engineering Technology
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George et al. (Tue,) studied this question.
www.synapsesocial.com/papers/68af474ead7bf08b1ead3a08 — DOI: https://doi.org/10.22214/ijraset.2025.73689
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