Integrating generative artificial intelligence into secondary school programming education: model design and empirical evidence.
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| Title: | Integrating generative artificial intelligence into secondary school programming education: model design and empirical evidence. |
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| Authors: | Tang, Qianwen1 (AUTHOR), Zhang, Hao2 (AUTHOR) zhanghao@yzu.edu.cn |
| Source: | Interactive Learning Environments. Mar2026, p1-18. 18p. 3 Illustrations. |
| Subject Terms: | *GENERATIVE artificial intelligence, *COMPUTER programming education, *PROBLEM solving, *PYTHON programming language, *COMPUTER science education, *COMPUTATIONAL thinking, *EDUCATIONAL technology |
| Abstract: | Programming education is essential but remains challenging in secondary school contexts under traditional instructional approaches, which often struggle with the high cognitive load, debugging difficulties, and lack of personalised feedback. To address these, this study designed a GAI-supported programming teaching model for secondary school programming instruction, structured into four phases: introduction, knowledge presentation, coding practice, summary and reflection. Meanwhile, this model delineates the specific responsibilities of students, teachers, and GAI at every phase. To evaluate the effectiveness of this model, a quasi-experimental study was conducted in a high school in East China, involving 100 first-year students in a three-week Python course, where the experimental group adopted the GAI-supported programming teaching model ( |
| Database: | Academic Search Index |
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