Ten important roles for academic leaders in data science

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Abstract

Data science has emerged as an important discipline in the era of big data and biological and biomedical data mining. As such, we have seen a rapid increase in the number of data science departments, research centers, and schools. We review here ten important leadership roles for a successful academic data science chair, director, or dean. These roles include the visionary, executive, cheerleader, manager, enforcer, subordinate, educator, entrepreneur, mentor, and communicator. Examples specific to leadership in data science are given for each role.

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CITATION STYLE

APA

Moore, J. H. (2020, December 1). Ten important roles for academic leaders in data science. BioData Mining. BioMed Central Ltd. https://doi.org/10.1186/s13040-020-00228-5

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