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Reflections about LAK26 and where the field is heading

I was lucky this week to attend the Learning Analytics '26 conference in Bergen, Norway. This year's conference focused on the synergies between LA and Generative AI. This shift to GenAI has intensified in the last few years. The collection of data from more traditional sources, such as LMS logs or visualisations in the LA dashboard, has been replaced by efforts to capture how and to what extent students learn with GenAI.

This shift is also reflected in the workshop topics. For instance, in the CROSSMMLA workshop, we explored GenAI as a "sensor for semantics" that can be integrated with a variety of modalities to analyse the learning process and add a layer of deeper understanding to typically structured and messy multimodal data.

Since my first LAK in 2016, I have been eagerly following the development of the field, while generally being quite positive yet critical of the research community's openness to new, theory-informed, technically rich approaches.

This year, however, the progressive shift towards GenAI at LAK left me not with enthusiasm but with a sense of unsettlement about the field.

First of all, there is the realisation that scientific discourse has pivoted almost exclusively toward how to make LLMs work for specific educational purposes, regardless of whether they are suitable or convenient to use over more parsimonious approaches. This includes how to train, fine-tune, and, more generally, "tame" LLMs, as well as how to deal with their side effects, such as fabricated results and incorrect information.

But very few of these works have addressed why these systems should be used in the first place, nor have they explored the broader consequences of using LLMs, e.g., resource exploitation, data labour by underpaid workers, and copyright infringement.

The dominant scientific imperative is to use LLMs as a research method, regardless of the results they produce, whether their use offers an actual advantage for students, learners, or a more powerful scientific approach.

It seems to me that science is also a victim of the hype rhetoric that either uses GenAI or is left behind. It is sad but true to admit that LA research is slowly being swept away by GenAI.

The critique of GenAI and the economy of hyperscale is probably an ethical dilemma I see, while many fellow scientists don't see it as an ethical problem at all.

Adapting to GenAI is imperative in the current era, where LLM use is pervasive, and adoption is unprecedented. While I see that this technology is here to stay, I am not blindly buying it, and I believe that researchers cannot absolve themselves of the responsibility to examine the social ramifications of a technology, just because it is widely used.

There is no straightforward positioning here. If we do not want to be swept away even more by GenAI and the corporations behind it, we have to strengthen our critical thinking skills and question how and why we do things, as well as the net advantages.

Published by Daniele Di Mitri

Daniele Di Mitri is a professor of Multimodal Learning Technologies at the German University of Digital Science. At the German UDS, he leads the research group "Augmented Feedback" and coordinates the master's in Advanced Digital Realities.  He is an associated researcher at the DIPF - Leibniz Institute for Research and Information in Education and a lecturer at the Goethe University of Frankfurt, Germany. Daniele Di Mitri received his PhD in Learning Analytics and Wearable Sensor Support from the Open University of the Netherlands. His current research focuses on developing AI-driven, multimodal learning technologies to enhance digital education. It aims to create innovative, responsible solutions that improve learning experiences through advanced feedback systems and ethical integration of technology. He is a "Johanna Quandt Young Academy" fellow and was elected "AI Newcomer 2021" at the KI Camp by the German Informatics Society. He is a member of the CrossMMLA, a special interest group of the Society for Learning Analytics Research, and the chair of the special interest group on AI for Education of the European Association for Technology-Enhanced Learning.

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