DOI: 10.1145/3408877.3432536
Terbit pada 3 Maret 2021 Pada Technical Symposium on Computer Science Education

Experiential Learning in Data Science: Developing an Interdisciplinary, Client-Sponsored Capstone Program

Genevera I. Allen

Abstrak

Interest in data science education and degree programs has rapidly expanded over the past several years. An integral part of many degree programs is a capstone experience, where students complete a major research or real-world project at the culmination of their educational program. In engineering and computer science, many have shown that client-sponsored projects lead to better student engagement and improved training. In this paper, we discuss experiences with developing an interdisciplinary, client-sponsored capstone program in data science and machine learning. We show how we set up the capstone program, including how the program is structured, how projects are set up, how the course is managed, how students are assessed, and outline the newly developed capstone curriculum. Finally, we report results from a cohort of students participating in this capstone program and discuss lessons learned as well as best practices when developing data science capstone programs.

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