We cannot address the AI challenge by acting as though assessment is a standalone activity

Rather than an assessment arms race, Duna Sabri calls for a response to artificial intelligence grounded in subject knowledge

Duna Sabri is Associate Director, Educational Development at the University of Nottingham

How to design reliable, valid and fair assessment in an AI-infused world is one of those challenges that feels intractable.

The scale and extent of the task, it seems, outstrips the available resource to deal with it. In these circumstances it is always worth stepping back to re-frame, perhaps reconceptualise, what the problem is, exactly. Is our framing too narrow? Have we succeeded (yet) in perceiving the most salient aspects of it?

As an educational development professional, seeking to support institutional policy and learning and teaching practices, I’ve been part of numerous discussions within and beyond my institution. At first, we framed the problem as a threat to the integrity of universities’ power to reliably and fairly award degrees and to certify levels of competence. How do we safeguard this authority and credibly certify learning when the evidence we collect of the learning having taken place can be mimicked so easily? And the act is so undetectable to boot?

Seen this way the challenge is insurmountable.

But this framing positions students as devoid of ethical intent, love of learning for its own sake, or capacity for disciplined “digital professionalism”. It also absolves us of the responsibility of providing an education which results in these outcomes. What if we frame the problem instead as a challenge of AI to higher education practices as a whole and not just to assessment? We know the use of AI in HE ranges widely, but we are only just beginning to comprehend the extent to which it redraws the basis of our educative relationship with students.

Rooted in subject knowledge

I’m finding that some very old ideas about what constitutes teaching expertise and how students learn are illuminating: the very questions that expert teachers have always asked themselves are in fact newly pertinent as we (re)design education in an AI world. This challenge of AI is not as novel as it first appeared.

Fundamentally, we are responsible for curriculum design which builds students’ ethical, intellectual and creative development over the course of a whole programme in ways that are relevant to society and future employment. Academic subject content knowledge is at the core of this endeavour and it is this which is the most unnerving part of the challenge presented by AI. I have lost count of the number of times colleagues have said, “I am an expert in [insert relevant subject area], I did not train for this” – where “this” is AI.

The most resource-intensive need that we have is for an expansion of subject content knowledge: every academic who teaches now needs a subject content knowledge which encompasses a consideration of the interplay between their field of expertise and AI, and specifically the use of AI in learning and professional practice in their field.

It is only on the basis of this enhanced subject content knowledge that we can then go on to ask: what preconceptions are my students bringing to this subject matter? What prior experience and views do they have about AI use? What precisely will be my educational purpose? How will students engage with this through a newly adjusted repertoire of curriculum and teaching strategies? The task of HE remains a matter of comprehending a new reality and then designing for the comprehension of others. Perhaps the difference now is that the journey of comprehension is even more collaborative and even less finite that it once would have seemed.

Beyond futile gestures

All this is not to say that the specific challenge of ensuring that assessment is valid disappears. A universal need for all learners is to develop a capacity for qualitative judgement and to learn to seek, interpret and critically respond to feedback about their own work. AI may well assist in some of these processes, but developing students’ agency, competence and ethical use of it is arguably a prerequisite. In response to this conundrum, some colleagues suggest a return to the in-person examination – even as a baseline to establish in a valid way levels of students’ understanding.

Let’s leave aside for a moment the argument about the extent to which in-person exams were ever a valid way of assessing much of what we claimed. Rather than focusing on how we can verify students’ learning, let’s emphasise more strongly the need for students themselves to be in touch with the extent and depth of their own understanding, independently of AI.

What if we reimagined the in-person high stakes summative examination as a low-stakes diagnostic event in which students test and re-test their understanding, capacity to articulate new concepts or design novel solutions? What if such events became periodic collaborative learning reviews? And yes, also a baseline, which assists us all – including students, who after all also have a vested interest – in ensuring that our assessments are valid.

Treating the challenge of AI as though assessment stands alone from the rest of higher education is too narrow a frame – one that consigns us to a kind of futile authoritarianism which renders assessment practices performative and irrelevant to our and our students’ reality.

There is much work to do in expanding subject content knowledge and in reimagining our curricula and reconfiguring assessment design at programme level such that it redraws our educative relationship with students. Assessment more than ever has to become a common endeavour rather than something we “provide” to students. A focus on how we conceptualise the trajectory of students’ intellectual, ethical and creative development is inescapable if we are serious about tackling this challenge in meaningful way.

0 Comments
Oldest
Newest
Inline Feedbacks
View all comments