Education Sciences (Apr 2024)

The Impact of Teachable Machine on Middle School Teachers’ Perceptions of Science Lessons after Professional Development

  • Terri L. Kurz,
  • Suren Jayasuriya,
  • Kimberlee Swisher,
  • John Mativo,
  • Ramana Pidaparti,
  • Dawn T. Robinson

DOI
https://doi.org/10.3390/educsci14040417
Journal volume & issue
Vol. 14, no. 4
p. 417

Abstract

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Technological advances in computer vision and machine learning image and audio classification will continue to improve and evolve. Despite their prevalence, teachers feel ill-prepared to use these technologies to support their students’ learning. To address this, in-service middle school teachers participated in professional development, and middle school students participated in summer camp experiences that included the use of Google’s Teachable Machine, an easy-to-use interface for training machine learning classification models. An overview of Teachable Machine is provided. As well, lessons that highlight the use of Teachable Machine in middle school science are explained. Framed within Personal Construct Theory, an analysis of the impact of the professional development on middle school teachers’ perceptions (n = 17) of science lessons and activities is provided. Implications for future practice and future research are described.

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