Artificial Intelligence (AI) and Personalized Learning: Revolutionizing Education in the Digital Era Artificial Intelligence (AI) and Personalized Learning: Revolutionizing Education in the Digital Era

Main Article Content

นันทิชา พึ่งพวก

Abstract

Artificial Intelligence (AI)-driven Personalized Learning is fundamentally transforming the educational landscape by creating adaptive learning systems that respond to individual student needs, preferences, and learning patterns. This comprehensive analysis explores the integration of AI technologies into personalized learning frameworks, examining theoretical foundations, relevant technologies, benefits and challenges, current applications, and future trends. This research demonstrates that AI-driven personalized learning has the potential to enhance learning efficiency, reduce educational inequalities, and create high-quality learning experiences for all students.


Keywords: Artificial Intelligence, Personalized Learning, Adaptive Recommendation Systems, Learning Analytics, Educational Technology

Article Details

How to Cite
พึ่งพวก น. (2026). Artificial Intelligence (AI) and Personalized Learning: Revolutionizing Education in the Digital Era: Artificial Intelligence (AI) and Personalized Learning: Revolutionizing Education in the Digital Era. Journal of Technology Management and Digital Innovation, 2(2 (กรกฎาคม-ธันวาคม), 1–9. retrieved from https://ph05.tci-thaijo.org/index.php/TMDI/article/view/220
Section
Academic Article

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