INTEGRATING ARTIFICIAL INTELLIGENCE IN CHEMICAL EDUCATION: A PEDAGOGICAL PARADIGM SHIFT
Keywords:
Artificial Intelligence, Chemical Education, Pedagogical Paradigm Shift, Constructivist Learning, Teacher Professional DevelopmentAbstract
The integration of Artificial Intelligence (AI) in education has transformed traditional teaching and learning practices across disciplines. However, chemical education has been relatively slow in adopting AI-driven pedagogies despite its potential to enhance conceptual understanding, laboratory simulations, and personalized learning experiences. This study explores how the infusion of AI technologies can redefine pedagogical approaches in chemical education, emphasizing a paradigm shift from content-centered instruction to learner-centered, inquiry-driven models. The research further investigates how educators can align AI tools with constructivist and technological pedagogical content knowledge (TPACK) frameworks to promote deeper learning and creativity in chemistry classrooms. A qualitative interpretive research design was employed through an extensive literature synthesis of peer-reviewed publications, policy reports, and educational frameworks from 2018–2025. The study analyzed best practices and case studies of AI-enhanced chemistry teaching using thematic analysis to identify emerging pedagogical trends and challenges. Findings indicate that AI integration improves learners’ engagement, supports adaptive assessments, and enhances virtual experimentation. However, ethical concerns, data privacy, and teachers’ digital literacy remain critical barriers to sustainable adoption. The study concludes that AI-driven pedagogy represents a transformative paradigm in chemical education, demanding a redefinition of curriculum design, teacher preparation, and assessment strategies. The paper recommends a hybrid AI-pedagogical framework that promotes innovation, inclusivity, and continuous professional development for chemistry educators.
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