The artificial intelligence in higher education: a paradigm shift?

Marc Selgas-Cors

Resumen


Artificial Intelligence (AI) has emerged as a transformative force in higher education, fundamentally altering the pedagogical and administrative paradigms. This paper examines the integration of AI technologies in academic institutions, analyzing its impact on teaching, learning, and administrative processes. Through an extensive literature review and empirical research, this study seeks to understand the implications of AI on student engagement, academic performance, and institutional efficiency. The findings highlight the potential of AI to personalize learning experiences and optimize educational outcomes. However, ethical considerations and the need for a balanced human-AI interaction are emphasized. Future research directions are suggested to address the complexities and challenges associated with AI implementation in higher education.


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Referencias


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DOI: http://dx.doi.org/10.54988/cv.2025.2.1602

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