Data science transfer pathways from associate's to bachelor's programs
Benjamin S. Baumer, Nicholas J. Horton

TL;DR
This paper examines the challenges and opportunities in establishing effective transfer pathways for students moving from associate's to bachelor's programs in data science, emphasizing curriculum alignment and institutional collaboration.
Contribution
It identifies key curricular barriers and proposes strategies to develop and improve data science transfer pathways across educational institutions.
Findings
Catalogs existing transfer pathways and efforts
Highlights obstacles to curriculum alignment
Suggests minimally disruptive solutions for improvement
Abstract
A substantial fraction of students who complete their college education at a public university in the United States begin their journey at one of the 935 public two-year colleges. While the number of four-year colleges offering bachelor's degrees in data science continues to increase, data science instruction at many two-year colleges lags behind. A major impediment is the relative paucity of introductory data science courses that serve multiple student audiences and can easily transfer. In addition, the lack of pre-defined transfer pathways (or articulation agreements) for data science creates a growing disconnect that leaves students who want to study data science at a disadvantage. We describe opportunities and barriers to data science transfer pathways. Five points of curricular friction merit attention: 1) a first course in data science, 2) a second course in data science, 3) a…
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Taxonomy
TopicsStatistics Education and Methodologies · Genetics, Bioinformatics, and Biomedical Research · Scientific Computing and Data Management
