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Student and instructor perceptions of data science integration into science and engineering courses

  • Md. Yunus Naseri
  • , Caitlin Snyder
  • , Gautam Biswas
  • , Erin C. Henrick
  • , Erin R. Hotchkiss
  • , Manoj K. Jha
  • , Steven Jiang
  • , Emily C. Kern
  • , Vinod K. Lohani
  • , Landon T. Marston
  • , Christopher P. Vanags
  • , Kang Xia
  • Virginia Polytechnic Institute and State University
  • Vanderbilt University School of Engineering
  • Vanderbilt University
  • Partner to Improve
  • Virginia Tech
  • Industrial and systems engineering with North Carolina A&T State University

Research output: Contribution to journalArticlepeer-review

Abstract

Data science literacy is vital for undergraduate engineering and science students, yet questions remain about effective integration in curricula. This study investigates the impact of integrating discipline-specific data science modules into existing undergraduate STEM courses at three US universities through a research-practice partnership. Using mixed methods to analyze survey responses from 877 students and instructor grades and interviews across six courses, we examined changes in student data science perception across various demographics, academic levels, and disciplines and compared student and instructor perspective. Results show significant increases in student self-reported perception after completing one or more modules irrespective of course and institution differences. Analysis revealed alignment between student self-assessments and instructor evaluations. Students highlighted benefits including real-world applications and career relevance, while identifying challenges with data analysis tools and varying experience levels. These findings provide insights for educators seeking to integrate data science into curricula.
Original languageEnglish
JournalEuropean Journal of Engineering Education
Issue numberIssue
DOIs
StateAccepted/In press - Jan 1 2025

Keywords

  • Data science
  • Data science integration
  • Engineering education
  • Research-practice partnership
  • Student learning evaluation
  • Undergraduate education

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