Embracing Computational Thinking as an Impetus for Artificial Intelligence in Integrated STEM Disciplines through Engineering and Technology Education
Paul Asunda, Miad Faezipour, Joshua Tolemy, Milo Engel
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引用次数: 0
Abstract
The scope and versatile nature of engineering and technology education as
a discipline provide a platform for the integration of computational thinking (CT) into
STEM education, accomplishing the goal of bringing not only computer science principles
into the K-12 education but also the fundamentals of machine learning (ML) and
artificial intelligence (AI) into the curriculum. Today, it is commonplace to say that
artificial intelligence and machine learning technologies impact the workplace and
continue to revolutionize as well as create new demands for solving daily world
challenges. This article discusses the integration of computational thinking practices
of decomposition, pattern recognition, algorithmic thinking, and abstraction as key to
problem-solving practices that may enhance the development of AI and ML capabilities in
high school students. The intent of this article is to contribute to ongoing discussions
among educators, employers, parents, and all those concerned with how best to prepare a
citizenry that is digitally revolutionized. Implications are offered for the assessment
of CT integrated within STEM, curriculum, pedagogy, and professional development for
STEM teachers.
期刊介绍:
The Journal of Technology Education provides a forum for scholarly discussion on topics relating to technology education. Manuscripts should focus on technology education research, philosophy, and theory. In addition, the Journal publishes book reviews, editorials, guest articles, comprehensive literature reviews, and reactions to previously published articles.