EFFECTIVE WAYS TO INTEGRATE ARTIFICIAL INTELLIGENCE INTO THE LEARNING PROCESS
Keywords:
artificial intelligence, personalized learning, adaptive learning, intelligent tutoring systems, learning analytics, immersive technologies, student engagement, educational outcomes, teacher readiness, data privacy.Abstract
Artificial intelligence (AI) has emerged as a transformative tool in modern education, offering opportunities to enhance personalization, engagement, and instructional efficiency. This article explores effective ways to integrate AI into the learning process by examining intelligent tutoring systems, adaptive learning platforms, learning analytics, and immersive technologies. The discussion highlights the benefits of AI in providing individualized learning paths, real-time feedback, and data-driven support while also addressing challenges such as algorithmic bias, data privacy, and teacher readiness. By analyzing contemporary research and international case studies, the study identifies best practices for leveraging AI to improve educational outcomes, promote student-centered learning, and ensure equitable access to technological resources. The findings emphasize a balanced approach that combines technological innovation with human-centered pedagogy to maximize the potential of AI in education.
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