Training Computational Social Science PhD Students for Academic and Non-Academic Careers

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Abstract

Social scientists with data science skills increasingly are assuming positions as computational social scientists in academic and non-academic organizations. However, because computational social science (CSS) is still relatively new to the social sciences, it can feel like a hidden curriculum for many PhD students. To support social science PhD students, this article is an accessible guide to CSS training based on previous literature and our collective working experiences in academic, public-, and private-sector organizations. We contend that students should supplement their traditional social science training in research design and domain expertise with CSS training by focusing on three core areas: (1) learning data science skills, (2) building a portfolio that uses data science to answer social science questions, and (3) connecting with computational social scientists. We conclude with practical recommendations for departments and professional associations to better support PhD students.

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APA

Kesari, A., Kim, J. Y., Shah, S., Brown, T., Ventura, T., & Law, T. (2024). Training Computational Social Science PhD Students for Academic and Non-Academic Careers. PS - Political Science and Politics, 57(1), 101–106. https://doi.org/10.1017/S1049096523000732

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