AI-Enabled Personalization in Digital Learning Platforms: A Review of Adaptive E-Learning Technologies
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Abstract
The rapid expansion of digital education has transformed the global learning landscape, replacing traditional models with flexible online platforms. However, many conventional e-learning systems fail to address the diverse needs, preferences, and abilities of individual learners. Artificial Intelligence (AI) has emerged as a powerful solution for enabling personalized learning experiences through adaptive e-learning technologies. This review examines the role of AI in digital education, focusing on systems such as adaptive learning platforms, intelligent tutoring systems, recommendation engines, and predictive learning analytics. By leveraging machine learning, data mining, and natural language processing, AI-driven systems can dynamically tailor content, instructional strategies, and assessments to individual learners. The findings indicate that AI-enabled personalization improves student engagement, knowledge retention, and overall learning efficiency by offering customized learning pathways and real-time feedback. It also allows educators to monitor student progress and provide timely support to at-risk learners. However, challenges such as data privacy concerns, algorithm transparency, ethical issues, and infrastructure limitations hinder widespread adoption. The study concludes that AI-driven personalization has significant potential to revolutionize digital education by creating adaptive, learner-centered environments, while emphasizing the need for responsible implementation and enhanced digital competencies among educators.
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