Universities: GenAI – There’s No Stopping, Start Shaping!

By Frances O’Donnell, Instructional Designer, ATU
Estimated reading time: 8 minutes
A group of diverse higher education professionals and students standing in front of a modern university building, engaged in a collaborative discussion around a glowing digital interface displaying the Gen.S.A.R. framework. In the foreground, traditional open books and a graduation cap are intertwined with glowing neural network nodes, symbolizing the integration of generative AI with traditional academic foundations. Image (and typos) generated by Nano Banana.
Moving from debate to action: Implementing a cross-departmental strategy to shape the future of GenAI in higher education. Image (and typos) generated by Nano Banana.

Debate continues to swing between those pushing rapid adoption and those advocating caution of GenAI, for example, panic about “AI taking over the classroom” and outrage at Big Tech’s labour practices. Both are important, but are these and other concerns causing inaction? In many cases, we are quietly watching students hand their data and their critical thinking over to the very Big Tech companies we are arguing against (while we still fly on holidays, stream on smart TVs and buy the same devices from the same companies). Pretending that GenAI in education is the one place we finally draw an ethical line, while doing nothing to make its use safer or more equitable, is not helpful. By all means, keep debating, but not at the cost of another three or four cohorts.

This opinion post suggests three things universities should address now: a minimal set of GenAI functions that should be available to staff and students, and a four-step teaching process to help lecturers rethink their role with GenAI.

Three things universities need to address now

1. Tell students and staff clearly what they can use (Déjà vu?)

Students and staff deserve clarity on which GenAI tools they have access to, what they can use them for and which ones are institutionally supported. Has your university provided this? No more grey areas or “ask your lecturer”. If people do not know this, it pushes GenAI use into secrecy. That secrecy hands more power to Big Tech to extract data and embed bias, while also quietly taking away their cognitive ability.

2. Untangle GenAI from “academic integrity”

Tightly linking GenAI to academic integrity was a mistake! It has created an endless debate about whether to permit or prohibit GenAI, which pushes use further underground. At this point, there is no real equity and no real academic integrity. Use of GenAI cannot simply be stopped, proved or disproved, so pretending otherwise, while holding endless anti‑AI discussions, will not lead to a solution. There is no putting GenAI back in the bottle!

3. Treat GenAI as a shared responsibility

GenAI affects curriculum design, assessment, student support, digital literacy, employability, libraries, disability support, IT, policy and everywhere in between. It cannot sit on the shoulders of one department or lead. Every university needs a cross‑departmental AI strategy that includes the student union, academic leads, IT, the data protection office, careers, student support, administration and teaching and learning personnel. Until leadership treats GenAI as systemic, lecturers will keep firefighting contradictions and marking assignments they know were AI-generated. Bring everyone to the table, and don’t adjourn until decisions have been made on students and staff clarity (even if this clarity is dynamic in nature – do not continue to leave them navigating this alone for another three years).

What GenAI functions should be provided

At a minimum, institutions should give safe, equitable access to:

  • A campus-licensed GenAI model
    One model for all staff and students to ask questions, draft, summarise, explain and translate text, including support for multilingual learners.
  • Multimodal creation tools
    Tools to create images, audio, video (including avatars), diagrams, code, etc., with clear ethical and legal guidance.
  • Research support tools
    Tools to support research, transcribing, coding, summaries, theme mapping, citations, etc., that reinforce critical exploration
  • Assessment and teaching design tools
    Tools to draft examples, case variations, rubrics, flashcards, questions, etc., are stored inside institutional systems.
  • Custom agents
    Staff create and share custom AI agents configured for specific purposes: subject-specific scaffolding for students, or workflow agents for planning, resource creation and content adaptation. Keep interactions within institutional systems.
  • Accessibility focused GenAI
    Tools that deliver captions, plain language rewrites, alt text and personalised study materials. Many institutions already have these in place.

Safer GenAI tools for exploration, collaboration and reflection. Now what do they do with them? This is where something like Gen.S.A.R comes in. A potential approach where staff and students explore together with GenAI, and one that is adaptable to different contexts/disciplines.

Gen.S.A.R.

Gen.S.A.R. is simply a suggested starting point; there is no magic wand, but this may help to ignite practical ideas from others. It suggests a shift from passive content delivery to constructivist and experiential learning.

  • GenAI exploration and collaborative knowledge construction
  • Scrutinise and share
  • Apply in real-world contexts with a low or no-tech approach
  • Reflect and evaluate

It keeps critical thinking, collaboration and real-world application at the centre, with GenAI as a set of tools rather than a replacement for learning. Note: GenAI is a set of tools, not a human!

Phase 1: GenAI, constructing, not copy-pasting

Students use GenAI, the lecturer, and reputable sources to explore a concept or problem linked to the learning outcomes. Lecturers guide this exploration as students work individually or in groups. With ongoing lecturer input, students may choose whether to use GenAI or other sources, but all develop an understanding of GenAI’s role in learning.

Phase 2: Scrutinise and Share

The second phase focuses on scrutinising and sharing ideas with others, not just presenting them as finished facts. Students bring GenAI outputs, reputable sources and their own thinking into dialogue. They interrogate evidence, assumptions and perspectives in groups or class discussion (social constructivism, dialogic teaching). The lecturer – the content expert – oversees this process and identifies the errors, draws attention to the errors and helps students clarify GenAI outputs.

Phase 3: Apply, low-tech, real-world

Screens step back. Students apply what they have discovered in low or no-tech ways: diagrams, mind maps, zines, prototypes, role plays, scenarios. They connect what they discovered to real contexts and show understanding through doing, making, explaining and practical application.

Phase 4: Reflect, evaluate and look forward

Students then evaluate and reflect on both their learning process and the role of GenAI. Using written, audio, video or visual reflections, they consider what they learned, how GenAI supported or distorted that learning and how this connects to their future. This reflective work, combined with artefacts from earlier phases, supports peer, self and lecturer assessment and moves us towards competency and readiness-based judgements.

Resourcing Gen.S.A.R. Yes, smaller class sizes and support would be required, but aspects of this can be implemented now (and are being implemented by some already). Time shifts to facilitation, co-learning, process feedback, and authentic evaluation (less three-thousand-word essays). This approach is not perfect but at least it’s an approach and one that draws on long‑standing learning theories, including constructivism, social constructivism, experiential learning, and traditions in inclusive and competency‑based education.

There’s No Stopping It, Time to Shape It

GenAI is not going away. Exploitative labour practices, data abuse and profit motives are real (and not exclusive to AI), and naming these harms is essential, but continuing to let these debates dominate any movement is not helpful. Universities can choose to lead (and I commend, not condemn, those who already are) with clear guidance, equitable access to safe GenAI tools and learning design. The alternative is all the risks associated with students and staff relying on personal accounts and workarounds.

For the integrity of education itself, it is time to translate debates into action. The genie is not going back in the bottle, and our profit-driven society is not only shaped by Big Tech but also by the everyday choices of those of us living privileged lives in westernised societies. It is time to be honest about our own complicity, to step out of the ivory tower and work with higher education students to navigate the impact GenAI is having on their lives right now.

Note: My views on GenAI for younger learners is very different; the suggestions here focus specifically on higher education.

Frances O’Donnell

Instructional Designer
ATU

Exploring the pros and cons of AI & GenAI in education, and indeed in society. Currently completing a Doctorate in Education with a focus on AI & Emerging Technologies.

Passionate about the potential education has to develop one’s self-confidence and self-worth, but frustrated by the fact it often does the opposite. AI has magnified our tendency to overassess and our inability to truly move away from rote learning.

Whether I’m carrying out the role of an instructional designer, or delivering workshops or researching, I think we should work together to make education a catalyst of change where learners are empowered to become confident as well as socially and environmentally conscious members of society. With or without AI, let’s change the perception of what success looks like for young people.

Keywords


Where Does Human Thinking End and AI Begin? An AI Authorship Protocol Aims to Show the Difference


A split image contrasting human and AI cognitive processes. On the left, a woman writes, surrounded by concepts like "HUMAN INTUITION" and "ORIGINAL THOUGHT." On the right, a man works at a computer, with "AI GENERATION" and "COMPUTATIONAL LOGIC" displayed. A central vertical bar indicates an "AUTHORSHIP PROTOCOL: 60% HUMAN / 40% AI." Image (and typos) generated by Nano Banana.
Decoding authorship: A visual representation of the intricate boundary between human creativity and AI generation, highlighting the need for protocols to delineate their contributions. Image (and typos) generated by Nano Banana.

Source

The Conversation

Summary

Eli Alshanetsky, a philosophy professor at Temple University, warns that as AI-generated writing grows increasingly polished, the link between human reasoning and authorship is at risk of dissolving. To preserve academic and professional integrity, his team is piloting an “AI authorship protocol” that verifies human engagement during the creative process without resorting to surveillance or detection. The system embeds real-time reflective prompts and produces a secure “authorship tag” confirming that work aligns with specified AI-use rules. Alshanetsky argues this approach could serve as a model for ensuring accountability and trust across education, publishing, and professional fields increasingly shaped by AI.

Key Points

  • Advanced AI threatens transparency around human thought in writing and decision-making.
  • A new authorship protocol links student output to authentic reasoning.
  • The system uses adaptive AI prompts and verification tags to confirm engagement.
  • It avoids intrusive monitoring by building AI-use terms into the submission process.
  • The model could strengthen trust in professions dependent on human judgment.

Keywords

URL

https://theconversation.com/where-does-human-thinking-end-and-ai-begin-an-ai-authorship-protocol-aims-to-show-the-difference-266132

Summary generated by ChatGPT 5


How AI Impacts Academic Thinking, Writing and Learning


In a grand, traditional university library, a male student is intensely focused on his laptop at a wooden desk with open books. Above him, three distinct, glowing holographic pathways converge on a central brain icon. These pathways are labeled 'THINKING: ANALYSIS & IDEATION' (blue, with gears and question marks), 'WRITING: CREATION & REFINEMENT' (green, with a scroll and feather quill), and 'LEARNING: EXPLORATION & MASTERY' (orange, with a human anatomy model and planets). The image illustrates AI's comprehensive impact on academic processes. Generated by Nano Banana.
AI’s influence stretches across every pillar of academic life, fundamentally reshaping how students engage with thinking, writing, and learning. This image visually articulates the interconnected ways AI tools are transforming cognitive processes, aiding in content creation and refinement, and opening new avenues for exploration and mastery in education. Image generated by Nano Banana.

Source

Psychology Today

Summary

A meta‑analysis of studies from 2022‑2024 shows AI tools improve student performance (grades, engagement, higher‑order thinking) but reduce mental effort. Students use AI more for surface-level content than deep argument, and long‑term retention without AI remains unclear. Educators should design learning that builds verification, scepticism, and critical thinking rather than fostering dependence.

Key Points

  • AI boosts grades and engagement but reduces effort and depth.
  • Students mostly use AI for facts and summaries, less for critical analysis.
  • Few studies assess long‑term retention without AI assistance.
  • Over‑trust in AI risks over‑reliance and copy/paste behaviour.
  • Educators must design tasks that foster verification and reflective use.

Keywords

URL

https://www.psychologytoday.com/us/blog/in-one-lifespan/202509/how-ai-impacts-academic-thinking-writing-and-learning

Summary generated by ChatGPT 5