Generative AI for Data Science 101: Coding Without Learning to Code
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| Wydane w: | Journal of Statistics and Data Science Education vol. 33, no. 2 (2025), p. 129 |
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Taylor & Francis Ltd.
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| Dostęp online: | Citation/Abstract Full Text - PDF |
| Etykiety: |
Nie ma etykietki, Dołącz pierwszą etykiete!
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| Streszczenie: | Should one teach coding in a required introductory statistics and data science class for non-major students? Many professors advise against it, considering it a distraction from the important and challenging statistical topics that need to be covered. By contrast, other professors argue that the ability to interact flexibly with data will inspire students with a lasting love of the subject and a continued commitment to the material beyond the introductory course. With the release of large language models that write code, we saw an opportunity for a middle ground, which we tried in Fall 2023 in a required introductory data science course in our school’s full-time MBA program. We taught students how to write English prompts to the artificial intelligence tool GitHub Copilot that could be turned into R code and executed. In this short article, we report on our experience using this new approach. |
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| ISSN: | 2693-9169 1069-1898 |
| DOI: | 10.1080/26939169.2024.2432397 |
| Źródło: | Research Library |