Responding to acute and chronic challenges of AI in Higher Education

By Tim Fawns, Danny Liu (University of Sydney) and Jason Lodge (University of Queensland)
Posted Tue 14 May, 2024

This week’s post features a short recorded conversation between Associate Professor Tim Fawns (Monash Education Academy), Professor Danny Liu (Educational Innovation team, University of Sydney) and Associate Professor Jason Lodge (School of Education, The University of Queensland).

We spoke about some of the issues that institutions need to think about in responding to the TEQSA Request for Information (RFI) on Addressing the Risk of Artificial Intelligence, and the opportunities and challenges of AI more generally.

The TEQSA RFI requires all Australian Higher Education providers to submit a credible institutional action plan, with appropriate oversight and governance mechanisms, that will “provide assurance that students have attained the skills and knowledge reflected by their qualifications.” Our conversation situated thinking around the RFI in the context of broader questions about the kinds of learning we need to account for (including learning how to learn), the limitations of binary thinking (AI as good / bad; assessments as secure / insecure), and how we can find practical ways forward while trying to move towards complexity.

If you enjoyed this conversation, consider exploring other 10 minute chats on Generative AI hosted by Tim – it’s series of short conversations with guests with different kinds of expertise in generative AI and education.

Share your thoughts in the comments

We would be very interested in your thoughts on the ideas that came up in our chat. Your comments will inform Part 2 of our conversation (coming soon…) which we hope will focus even more on practical implications and ways ahead.

Acknowledgements

This conversation is a small part of wider efforts to help the Higher Education sector develop its response to AI. These wider efforts include the development of principles for Assessment reform for the age of artificial intelligence (in collaboration with TEQSA) and three national events, hosted at University of Sydney:

As such, we want to acknowledge the following colleagues who were also part of those efforts and whose insights have informed the thinking demonstrated in this conversation:

Michael Cowling, Adam Bridgeman (round tables and symposium), Trish McCluskey (round tables), Russell Butson (symposium), Sarah Howard, Margaret Bearman, Phillip Dawson, Shirley Agostinho, Simon Buckingham Shum, Chris Deneen, Cath Ellis, Helen Gniel, Rowena Harper, Michael Henderson, Lina Markauskaite, Jan McLean, Carlo Perrotta, Lambert Schuwirth, Christine Slade (TEQSA assessment reform principles)

Tim Fawns

Associate Professor Tim Fawns

Tim Fawns is Associate Professor (Education Focused) at the Monash Education Academy. His role involves contributing to the development of initiatives and resources that help educators across Monash to improve their knowledge and practice, and to be recognised for that improvement and effort. Tim’s research interests are at the intersection between digital, professional and higher education, with a particular focus on the relationship between technology and educational practice.

Professor Danny Liu (University of Sydney)

Danny is a molecular biologist by training, programmer by night, researcher and academic developer by day, and educator at heart. He works at the confluence of educational technology, student engagement, artificial intelligence, learning analytics, pedagogical research, organisational leadership, and professional development. He is currently a Professor in the Educational Innovation team in the DVC (Education) Portfolio at the University of Sydney.

Associate Professor Jason Lodge (University of Queensland)

Jason’s research concentrates on the application of the learning sciences to education. Specifically, he is interested in the cognitive and emotional factors that influence learning and behaviour and how research findings from the learning sciences can be better used to enhance design for learning, teaching practice and education policy. Jason is also interested in the ways technologies such as artificial intelligence is influencing learning, particularly in terms of the impact of technology on the development of professional ways of being, metacognition, critical thinking and expertise.