ABSTRACT Modern statistics is fundamentally a computational discipline, but too often this fact is not reflected in our statistics curricula. With the rise of big data and data science, it has become increasingly clear that students want, expect, and need explicit training in this area of the discipline. Additionally, recent curricular guidelines clearly state that working with data requires extensive computing skills and that statistics students should be fluent in accessing, manipulating, analyzing, and modeling with professional statistical analysis software. Much has been written in the statistics education literature about pedagogical tools and approaches to provide a practical computational foundation for students. This article discusses the computational infrastructure and toolkit choices to allow for these pedagogical innovations while minimizing frustration and improving adoption for both our students and instructors. Supplementary materials for this article are available online.
Infrastructure and Tools for Teaching Computing Throughout the Statistical Curriculum
Mine Çetinkaya-Rundel,Colin W. Rundel
Published 2018 in PeerJ Preprints
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- Publication year
2018
- Venue
PeerJ Preprints
- Publication date
2018-01-02
- Fields of study
Computer Science, Education
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Semantic Scholar
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