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Near-Peer Mentoring in Data Science: A Plot for Mutual Growth

Author

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  • Chiara Sabatti
  • Qian Zhao

Abstract

Universities have been expanding undergraduate data science programs. Involving graduate students in these new opportunities can foster their growth as data science educators. We describe two programs that employ a near-peer mentoring structure, in which graduate students mentor undergraduates, to (a) strengthen their teaching and mentoring skills and (b) provide research and learning experiences for undergraduates from diverse backgrounds. In the Data Science for Social Good program, undergraduate participants work in teams to tackle a data science project with social impact. Graduate mentors guide project work and provide just-in-time teaching and feedback. The Stanford Mentoring in Data Science course offers training in effective and inclusive mentorship strategies. In an experiential learning framework, enrolled graduate students are paired with undergraduate students from non-R1 schools, whom they mentor through weekly one-on-one remote meetings. In end-of-program surveys, mentors reported growth through both programs. Drawing from these experiences, we developed a self-paced mentor training guide, which engages teaching, mentoring and project management abilities. These initiatives and the shared materials can serve as prototypes of future programs that cultivate mutual growth of both undergraduate and graduate students in a high-touch, inclusive, and encouraging environment.

Suggested Citation

  • Chiara Sabatti & Qian Zhao, 2025. "Near-Peer Mentoring in Data Science: A Plot for Mutual Growth," The American Statistician, Taylor & Francis Journals, vol. 79(4), pages 529-537, October.
  • Handle: RePEc:taf:amstat:v:79:y:2025:i:4:p:529-537
    DOI: 10.1080/00031305.2025.2550314
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