The Landscape of Teaching Resources for AI Education

Stefania Druga, Nancy Otero, Amy J. Ko
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引用次数: 7

Abstract

Artificial Intelligence (AI) educational resources such as training tools, interactive demos, and dedicated curriculum are increasingly popular among educators and learners. While prior work has examined pedagogies for promoting AI literacy, it has yet to examine how well technology resources support these pedagogies. To address this gap, we conducted a systematic analysis of existing online resources for AI education, investigating what learning and teaching affordances these resources have to support AI education. We used the Technological Pedagogical Content Knowledge (TPACK) framework to analyze a final corpus of 50 AI resources. We found that most resources support active learning, have digital or physical dependencies, do not include all the five big ideas defined by AI4K12 guidelines, and do not offer built-in support for assessment or feedback. Teaching guides are hard to find or require technical knowledge. Based on our findings, we propose that future AI curricula move from singular activities and demos to more holistic designs that include support, guidance, and flexibility for how AI technology, concepts, and pedagogy play out in the classroom.
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面向人工智能教育的教学资源格局
人工智能(AI)教育资源,如培训工具、互动演示和专用课程,越来越受到教育工作者和学习者的欢迎。虽然之前的工作已经研究了促进人工智能素养的教学法,但尚未研究技术资源对这些教学法的支持程度。为了解决这一差距,我们对现有的人工智能教育在线资源进行了系统分析,调查了这些资源支持人工智能教育的学习和教学能力。我们使用技术教学内容知识(TPACK)框架来分析50个人工智能资源的最终语料库。我们发现,大多数资源支持主动学习,具有数字或物理依赖性,不包括AI4K12指南定义的所有五大理念,也不提供对评估或反馈的内置支持。教学指南很难找到,或者需要技术知识。根据我们的研究结果,我们建议未来的人工智能课程从单一的活动和演示转向更全面的设计,包括对人工智能技术、概念和教学法如何在课堂上发挥作用的支持、指导和灵活性。
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