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Auteurs principaux: Smith, C. Estelle, Shiekh, Kylee, Cooreman, Hayden, Rahman, Sharfi, Zhu, Yifei, Siam, Md Kamrul, Ivanitskiy, Michael, Ahmed, Ahmed M., Hallinan, Michael, Grisak, Alexander, Fierro, Gabe
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2411.11166
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author Smith, C. Estelle
Shiekh, Kylee
Cooreman, Hayden
Rahman, Sharfi
Zhu, Yifei
Siam, Md Kamrul
Ivanitskiy, Michael
Ahmed, Ahmed M.
Hallinan, Michael
Grisak, Alexander
Fierro, Gabe
author_facet Smith, C. Estelle
Shiekh, Kylee
Cooreman, Hayden
Rahman, Sharfi
Zhu, Yifei
Siam, Md Kamrul
Ivanitskiy, Michael
Ahmed, Ahmed M.
Hallinan, Michael
Grisak, Alexander
Fierro, Gabe
contents Because of the rapid development and increasing public availability of Generative Artificial Intelligence (GenAI) models and tools, educational institutions and educators must immediately reckon with the impact of students using GenAI. There is limited prior research on computing students' use and perceptions of GenAI. In anticipation of future advances and evolutions of GenAI, we capture a snapshot of student attitudes towards and uses of yet emerging GenAI, in a period of time before university policies had reacted to these technologies. We surveyed all computer science majors in a small engineering-focused R1 university in order to: (1) capture a baseline assessment of how GenAI has been immediately adopted by aspiring computer scientists; (2) describe computing students' GenAI-related needs and concerns for their education and careers; and (3) discuss GenAI influences on CS pedagogy, curriculum, culture, and policy. We present an exploratory qualitative analysis of this data and discuss the impact of our findings on the emerging conversation around GenAI and education.
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spellingShingle Early Adoption of Generative Artificial Intelligence in Computing Education: Emergent Student Use Cases and Perspectives in 2023
Smith, C. Estelle
Shiekh, Kylee
Cooreman, Hayden
Rahman, Sharfi
Zhu, Yifei
Siam, Md Kamrul
Ivanitskiy, Michael
Ahmed, Ahmed M.
Hallinan, Michael
Grisak, Alexander
Fierro, Gabe
Computers and Society
Because of the rapid development and increasing public availability of Generative Artificial Intelligence (GenAI) models and tools, educational institutions and educators must immediately reckon with the impact of students using GenAI. There is limited prior research on computing students' use and perceptions of GenAI. In anticipation of future advances and evolutions of GenAI, we capture a snapshot of student attitudes towards and uses of yet emerging GenAI, in a period of time before university policies had reacted to these technologies. We surveyed all computer science majors in a small engineering-focused R1 university in order to: (1) capture a baseline assessment of how GenAI has been immediately adopted by aspiring computer scientists; (2) describe computing students' GenAI-related needs and concerns for their education and careers; and (3) discuss GenAI influences on CS pedagogy, curriculum, culture, and policy. We present an exploratory qualitative analysis of this data and discuss the impact of our findings on the emerging conversation around GenAI and education.
title Early Adoption of Generative Artificial Intelligence in Computing Education: Emergent Student Use Cases and Perspectives in 2023
topic Computers and Society
url https://arxiv.org/abs/2411.11166