S. Nikolic, S. Daniel, Rezwanul Haque, M. Belkina, G. Hassan, Sarah Grundy, S. Lyden, Peter Neal, Caz Sandison
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ChatGPT versus engineering education assessment: a multidisciplinary and multi-institutional benchmarking and analysis of this generative artificial intelligence tool to investigate assessment integrity
ABSTRACT ChatGPT, a sophisticated online chatbot, sent shockwaves through many sectors once reports filtered through that it could pass exams. In higher education, it has raised many questions about the authenticity of assessment and challenges in detecting plagiarism. Amongst the resulting frenetic hubbub, hints of potential opportunities in how ChatGPT could support learning and the development of critical thinking have also emerged. In this paper, we examine how ChatGPT may affect assessment in engineering education by exploring ChatGPT responses to existing assessment prompts from ten subjects across seven Australian universities. We explore the strengths and weaknesses of current assessment practice and discuss opportunities on how ChatGPT can be used to facilitate learning. As artificial intelligence is rapidly improving, this analysis sets a benchmark for ChatGPT’s performance as of early 2023 in responding to engineering education assessment prompts. ChatGPT did pass some subjects and excelled with some assessment types. Findings suggest that changes in current practice are needed, as typically with little modification to the input prompts, ChatGPT could generate passable responses to many of the assessments, and it is only going to get better as future versions are trained on larger data sets.
期刊介绍:
European Journal of Engineering Education is published six times a year in print and electronic editions and provides an essential forum for dialogue between researchers and specialists in the field of engineering education, at European and worldwide levels. European Journal of Engineering Education is the Official Journal of SEFI, the Socièté Européenne pour la Formation des Ingénieurs (the European Society for Engineering Education). SEFI is a non-governmental organization whose aims are to develop information about engineering education, to improve communication and exchange between professors, researchers and students and to promote cooperation between the various institutions concerned with engineering education.