Artificial Intelligence-Enhanced Learning: A New Paradigm in the “Business Data Analysis and Application” Course
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Keywords

Generative AI
Pedagogical innovation
Adaptive
Personalized learning
Curriculum enhancement

DOI

10.26689/jcer.v8i2.6081

Submitted : 2024-01-26
Accepted : 2024-02-10
Published : 2024-02-25

Abstract

This paper explores the transformative impact of generative artificial intelligence (AI) on the “Business Data Analysis and Application” course in the post-2023 era, marking a significant paradigm shift in educational methodologies. It investigates how generative AI reshapes teaching and learning dynamics, enhancing the processing of complex data sets and nurturing critical thinking skills. The study highlights the role of AI in fostering dynamic, personalized, and adaptive learning experiences, addressing the evolving pedagogical needs of the business sector. Key challenges, including equitable access, academic integrity, and ethical considerations such as data privacy and algorithmic bias, are thoroughly examined. The research reveals that the integration of generative AI aligns with current professional demands, equipping students with cutting-edge AI tools, and tailoring learning to individual needs through real-time feedback mechanisms. The study concludes that the incorporation of generative AI into this course signifies a substantial evolution in educational approaches, offering profound implications for student learning and professional development.

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