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Main Authors: Garousi, Vahid, Jafarov, Zafar, Movsumova, Aytan, Namazov, Atif, Mirzayev, Huseyn
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.00682
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author Garousi, Vahid
Jafarov, Zafar
Movsumova, Aytan
Namazov, Atif
Mirzayev, Huseyn
author_facet Garousi, Vahid
Jafarov, Zafar
Movsumova, Aytan
Namazov, Atif
Mirzayev, Huseyn
contents Context: As generative AI (GenAI) tools such as ChatGPT and GitHub Copilot become pervasive in education, concerns are rising about students using them to complete rather than learn from coursework-risking overreliance, reduced critical thinking, and long-term skill deficits. Objective: This paper proposes and empirically applies a causal model to help educators scaffold responsible GenAI use in Software Engineering (SE) education. The model identifies how professor actions, student factors, and GenAI tool characteristics influence students' usage of GenAI tools. Method: Using a design-based research approach, we applied the model in two contexts: (1) revising four extensive lab assignments of a final-year Software Testing course at Queen's University Belfast (QUB), and (2) embedding GenAI-related competencies into the curriculum of a newly developed SE BSc program at Azerbaijan Technical University (AzTU). Interventions included GenAI usage declarations, output validation tasks, peer-review of AI artifacts, and career-relevant messaging. Results: TBD Conclusions: TBD
format Preprint
id arxiv_https___arxiv_org_abs_2506_00682
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Encouraging Students' Responsible Use of GenAI in Software Engineering Education: A Causal Model and Two Institutional Applications
Garousi, Vahid
Jafarov, Zafar
Movsumova, Aytan
Namazov, Atif
Mirzayev, Huseyn
Software Engineering
Context: As generative AI (GenAI) tools such as ChatGPT and GitHub Copilot become pervasive in education, concerns are rising about students using them to complete rather than learn from coursework-risking overreliance, reduced critical thinking, and long-term skill deficits. Objective: This paper proposes and empirically applies a causal model to help educators scaffold responsible GenAI use in Software Engineering (SE) education. The model identifies how professor actions, student factors, and GenAI tool characteristics influence students' usage of GenAI tools. Method: Using a design-based research approach, we applied the model in two contexts: (1) revising four extensive lab assignments of a final-year Software Testing course at Queen's University Belfast (QUB), and (2) embedding GenAI-related competencies into the curriculum of a newly developed SE BSc program at Azerbaijan Technical University (AzTU). Interventions included GenAI usage declarations, output validation tasks, peer-review of AI artifacts, and career-relevant messaging. Results: TBD Conclusions: TBD
title Encouraging Students' Responsible Use of GenAI in Software Engineering Education: A Causal Model and Two Institutional Applications
topic Software Engineering
url https://arxiv.org/abs/2506.00682