Lessons Learned from Integrating Generative AI into an Introductory Undergraduate Astronomy Course at Harvard
Authors: Christopher W. Stubbs, Dongpeng Huang, Jungyoon Koh, Madeleine Woods, Andrés A. Plazas Malagón
Abstract: We describe our efforts to fully integrate generative artificial intelligence (GAI) into an introductory undergraduate astronomy course. Ordered by student perception of utility, GAI was used in instructional Python notebooks, in a subset of assignments, for student presentation preparations, and as a participant (in conjunction with a RAG-encoded textbook) in a course Slack channel. Assignments were divided into GAI-encouraged and GAI-discouraged. We incentivized student mastery of the material through midterm and final exams in which electronics were not allowed. Student evaluations of the course showed no reduction compared to the non-GAI version from the previous year.
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