Generative artificial intelligence and engineering education
Author | Johri, Aditya |
Author | Katz, Andrew S. |
Author | Qadir, Junaid |
Author | Hingle, Ashish |
Available date | 2025-07-08T03:58:09Z |
Publication Date | 2023 |
Publication Name | Journal of Engineering Education |
Resource | Scopus |
Identifier | http://dx.doi.org/10.1002/jee.20537 |
ISSN | 10694730 |
Abstract | The recent popularity of generative AI (GAI) applications such as ChatGPT portend a new era of research, teaching, and learning across domains, including in engineering (Bubeck et al., 2023; Kasneci et al., 2023; Lo, 2023; Qadir, 2023). In this guest editorial, we discuss the potential impact of GAI for engineering education as researchers and teachers. We see this editorial as the start of a serious dialogue within the community around how GAI can and will change our practices, and what we can do to respond to these shifts. GAI is built on foundational models (FMs) that can be adapted to various other tasks, such as large language models (LLMs), and they operate by learning from many examples and becoming very good at predicting the subsequent probable output or output sequence. Given the abundance of digitized data, they can quickly learn a wide range of topics and respond to user queries almost instantly. Whether engineering a new software application, writing a code snippet to analyze data, designing a product, or composing a cover letter for a job application, GAI users can leverage the power of LLMs to generate outputs that meet their specific needs (UNESCO, 2023). The ability to learn a skill and adapt it to new contexts is a capability that humans have excelled at for a long time. Some would even argue that the competence to learn original things in new environments to tackle novel problems, and teach it to others, is one of the most unique characteristics of our species (Tomasello, 2009). To assist us in this process, we also have the capability to continually create tools and techniques, another distinct trait of humans and central to the engineering profession (Johri, 2022). What, though, is the potential and limit of developing tools and technologies that can mimic and even go beyond what we have conceived of as human intelligence? What potential consequences do technology that can generate novel outputs have for society, especially education in terms of both benefits and harms (Bommasani et al., 2021; Farrokhnia et al., 2023)? What implications does this have for engineering educators (Johri, 2020)? |
Sponsor | Aditya Johri and Ashish Hingle were partially supported for this work by the U.S. NSF Award (Nos. 1937950 and 1939105) and the USDA/NIFA Award (No. 2021-67021-35329). Andrew S. Katz was partially supported by the U.S. NSF Award (No. 2107008). Any opinions, findings, and conclusions or recommendations expressed in this material are those of the authors and do not necessarily reflect the views of the funding agencies. |
Language | en |
Publisher | John Wiley and Sons Inc |
Subject | Generative Artificial Intelligence (GAI) Engineering Education Large Language Models (LLMs) AI in Teaching and Learning Digital Transformation in Education |
Type | Article |
Pagination | 572-577 |
Issue Number | 3 |
Volume Number | 112 |
Files in this item
This item appears in the following Collection(s)
-
Computer Science & Engineering [2482 items ]