Author
Listed:
- Amina S. Omar
(School of Computing and Informatics. Technical University of Mombasa. Mombasa, Kenya)
- Mvurya Mgala
(School of Computing and Informatics. Technical University of Mombasa. Mombasa, Kenya)
- Fullgence Mwakondo
(School of Computing and Informatics. Technical University of Mombasa. Mombasa, Kenya)
Abstract
Artificial Intelligence (AI) has revolutionized educational scaffolding, providing personalized, real-time learning support through machine learning (ML), natural language processing (NLP), reinforcement learning (RL), and computer vision (CV). AI-driven visual scaffolding enhances STEM education, language learning, and special education by offering dynamic feedback and adaptive instruction. However, significant challenges remain, including static scaffolding mechanisms, inadequate calibrated fading, over-reliance on AI assistance, limited metacognitive development, and concerns such as algorithmic bias and data privacy risks. This comprehensive literature review examines the evolution of scaffolding from human-led to AI-driven approaches, evaluates current AI-based implementations, and identifies critical research gaps—particularly in dysgraphia interventions. The study highlights the need for structured fading mechanisms and adaptive feedback to enhance AI-driven scaffolding’s effectiveness and inclusivity. By addressing these limitations, AI-powered scaffolding can transition from rigid, rule-based interventions to truly adaptive learning support systems, fostering cognitive development, independent problem-solving, and long-term knowledge retention. Future research should focus on integrating AI-driven adaptive scaffolding, implementing structured fading strategies, and conducting longitudinal studies to assess AI’s sustained impact on learning outcomes.
Suggested Citation
Amina S. Omar & Mvurya Mgala & Fullgence Mwakondo, 2025.
"AI-Driven Visual Scaffolding in Education: A Comprehensive Literature Review,"
International Journal of Research and Scientific Innovation, International Journal of Research and Scientific Innovation (IJRSI), vol. 12(3), pages 740-750, March.
Handle:
RePEc:bjc:journl:v:12:y:2025:i:3:p:740-750
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