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The AI-Augmented Didactic Triangle: Enhancing Achievement through The 5S Framework
0
Zitationen
5
Autoren
2026
Jahr
Abstract
Integrating Artificial Intelligence (AI) into education requires a clearly structured didactic model. AI-didactics is the study and practice of how AI can be used to optimize the "art of teaching." It focuses on moving beyond AI as a simple tool to AI as a partner that understands pedagogical principles—the how and why we learn. This article presents an analysis of experimental research results on how AI can be utilized in undergraduate programs to enhance student learning outcomes. There are four experimental stages of AI integration.(1) Pre-AI competency of the students. Established a benchmark for time-to-completion and initial error rate.(2) The AI was integrated as a continuous "logic gate" during the coding process.(3) The AI provided tailored feedback rather than generic answers. Created a personalized learning path where the AI adjusted the scaffolding level based on real-time performance data.(4) Summative Post-Testing & Retention Analysis. Students were tested on similar algorithmic problems without AI assistance to check for AI-dependency. Data showed that the personalized, error-corrected path led to higher retention and a significant reduction in the learning curve (learning/ velocity). The study focuses on: (1) the 5S prompting framework for effective human-AI interaction, and (2) the results of testing the 5S activity model designed to support active student engagement. Furthermore, the factors influencing AI-integrated teachers, students, and content are identified. The integration of AI into teacher-guided instruction demonstrates that improved academic achievement is dependent on the student’s cognitive activity, learning experience/interface, and technology acceptance.
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