Affiliation:
1. Faculty of Science and Technology, Athabasca University, Athabasca, AB T9S 3A3, Canada
Abstract
This paper analyzes the ways that the widespread use of generative AIs (GAIs) in education and, more broadly, in contributing to and reflecting the collective intelligence of our species, can and will change us. Methodologically, the paper applies a theoretical model and grounded argument to present a case that GAIs are different in kind from all previous technologies. The model extends Brian Arthur’s insights into the nature of technologies as the orchestration of phenomena to our use by explaining the nature of humans’ participation in their enactment, whether as part of the orchestration (hard technique, where our roles must be performed correctly) or as orchestrators of phenomena (soft technique, performed creatively or idiosyncratically). Education may be seen as a technological process for developing these soft and hard techniques in humans to participate in the technologies, and thus the collective intelligence, of our cultures. Unlike all earlier technologies, by embodying that collective intelligence themselves, GAIs can closely emulate and implement not only the hard technique but also the soft that, until now, was humanity’s sole domain; the very things that technologies enabled us to do can now be done by the technologies themselves. Because they replace things that learners have to do in order to learn and that teachers must do in order to teach, the consequences for what, how, and even whether learning occurs are profound. The paper explores some of these consequences and concludes with theoretically informed approaches that may help us to avert some dangers while benefiting from the strengths of generative AIs. Its distinctive contributions include a novel means of understanding the distinctive differences between GAIs and all other technologies, a characterization of the nature of generative AIs as collectives (forms of collective intelligence), reasons to avoid the use of GAIs to replace teachers, and a theoretically grounded framework to guide adoption of generative AIs in education.
Reference82 articles.
1. Qadir, J. (2023, January 1–4). Engineering Education in the Era of ChatGPT: Promise and Pitfalls of Generative AI for Education. Proceedings of the 2023 IEEE Global Engineering Education Conference (EDUCON), Kuwait, Kuwait.
2. Bozkurt, A., and Sharma, R.C. (2023). Challenging the Status Quo and Exploring the New Boundaries in the Age of Algorithms: Reimagining the Role of Generative AI in Distance Education and Online Learning. Asian J. Distance Educ., 18, Available online: https://www.asianjde.com/ojs/index.php/AsianJDE/article/view/714/397.
3. Can We and Should We Use Artificial Intelligence for Formative Assessment in Science?;Li;J. Res. Sci. Teach.,2023
4. Chan, C.K.Y., and Tsi, L.H. (2023). The AI Revolution in Education: Will AI Replace or Assist Teachers in Higher Education?. arXiv.
5. Speculative Futures on ChatGPT and Generative Artificial Intelligence (AI): A Collective Reflection from the Educational Landscape;Bozkurt;Asian J. Distance Educ.,2023
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献