Bridging MOOCs, Smart Teaching, and AI: A Decade of Evolution Toward a Unified Pedagogy
- URL: http://arxiv.org/abs/2507.14266v1
- Date: Fri, 18 Jul 2025 14:57:20 GMT
- Title: Bridging MOOCs, Smart Teaching, and AI: A Decade of Evolution Toward a Unified Pedagogy
- Authors: Bo Yuan, Jiazi Hu,
- Abstract summary: We propose a three-layer instructional framework that combines the scalability of MOOCs, the responsiveness of Smart Teaching, and the adaptivity of AI.<n>The findings highlight the framework's potential to enhance learner engagement, support instructors, and enable personalized yet scalable learning.
- Score: 4.943165921136573
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Over the past decade, higher education has evolved through three distinct paradigms: the emergence of Massive Open Online Courses (MOOCs), the integration of Smart Teaching technologies into classrooms, and the rise of AI-enhanced learning. Each paradigm is intended to address specific challenges in traditional education: MOOCs enable ubiquitous access to learning resources; Smart Teaching supports real-time interaction with data-driven insights; and generative AI offers personalized feedback and on-demand content generation. However, these paradigms are often implemented in isolation due to their disparate technological origins and policy-driven adoption. This paper examines the origins, strengths, and limitations of each paradigm, and advocates a unified pedagogical perspective that synthesizes their complementary affordances. We propose a three-layer instructional framework that combines the scalability of MOOCs, the responsiveness of Smart Teaching, and the adaptivity of AI. To demonstrate its feasibility, we present a curriculum design for a project-based course. The findings highlight the framework's potential to enhance learner engagement, support instructors, and enable personalized yet scalable learning.
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