Programming education and learner motivation in the age of generative AI: student and educator perspectives

Samuel Boguslawski, Rowan Deer, Mark G. Dawson
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Abstract

Purpose Programming education is being rapidly transformed by generative AI tools and educators must determine how best to support students in this context. This study aims to explore the experiences of programming educators and students to inform future education provision. Design/methodology/approach Twelve students and six members of faculty in a small technology-focused university were interviewed. Thematic analysis of the interview data was combined with data collected from a survey of 44 students at the same university. Self-determination theory was applied as an analytical framework. Findings Three themes were identified – bespoke learning, affect and support – that significantly impact motivation and learning outcomes in programming education. It was also found that students are already making extensive use of large language models (LLMs). LLMs can significantly improve learner autonomy and sense of competence by improving the options for bespoke learning; fostering emotions that are conducive to engendering and maintaining motivation; and inhibiting the negative affective states that discourage learning. However, current LLMs cannot adequately provide or replace social support, which is still a key factor in learner motivation. Research limitations/implications Integrating the use of LLMs into curricula can improve learning motivation and outcomes. It can also free educators from certain tasks, leaving them with more time and capacity to focus their attention on developing social learning opportunities to further enhance learner motivation. Originality/value To the best of the authors’ knowledge, this is the first attempt to explore the relationship between motivation and LLM use in programming education.
生成式人工智能时代的编程教育和学习动机:学生和教育者的视角
目的编程教育正迅速被生成式人工智能工具所改变,教育工作者必须确定如何在这种情况下为学生提供最佳支持。本研究旨在探索编程教育工作者和学生的经验,为未来的教育提供参考。设计/方法/途径对一所小型技术大学的 12 名学生和 6 名教师进行了访谈。对访谈数据进行了主题分析,并结合了从同一所大学的 44 名学生调查中收集的数据。研究结果确定了三个主题--定制学习、情感和支持--它们对编程教育中的学习动机和学习成果产生了重大影响。研究还发现,学生已经在广泛使用大型语言模型(LLM)。LLMs 可以改善定制学习的选择,培养有利于激发和保持学习动机的情绪,抑制阻碍学习的消极情绪状态,从而显著提高学习者的自主性和能力感。然而,目前的学习动机不能充分提供或取代社会支持,而社会支持仍然是学习动机的一个关键因素。据作者所知,这是首次尝试探讨编程教育中学习动机与使用 LLM 之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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