Developing AI Applications for Education: A Design Thinking Approach to Enhance Learning Experiences
DOI:
https://doi.org/10.63671/ijsssr.v2i3.182Keywords:
Machine Learning (ML), Design Thinking, User-Centered Design, Educational Technology, Personalized Learning, AI-Driven SolutionsAbstract
In the evolving landscape of machine learning (ML), traditional approaches often prioritize technical performance over user needs, leading to solutions that fail to address real-world requirements. To bridge this gap, the integration of design thinking principles into ML development has emerged as a promising approach. This paper explores the application of design thinking to ML, particularly in the educational sector, by focusing on creating user-centered solutions. We outline a methodology that combines empathy, problem definition, ideation, prototyping, and user feedback to ensure that ML solutions are both technically robust and aligned with user needs. Through a case study of an AI-driven personalized learning platform, we demonstrate how this approach can lead to more impactful and widely adopted solutions. We also discuss the benefits of such applications in education, including personalized learning, automated administrative tasks, and enhanced accessibility, while addressing challenges like ethical concerns and integration with existing systems. The paper concludes by highlighting the potential for this methodology to be applied across various industries, its role in advancing AI integration, and future research directions focusing on ethical design and scalability. By merging design thinking with machine learning, organizations can develop solutions that are innovative, user-centric, and effective in real-world applications.
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Copyright (c) 2024 International Journal of Science and Social Science Research

This work is licensed under a Creative Commons Attribution 4.0 International License.
SEMANTIC SCHOLAR 