Will university teachers become obsolete in times of AI?

Elin Kvist (Department of Sociology, Umeå University)


Published on 22 May 2025

We live in times of endless crisis alarms, a general state of uncertainty, combined with an orchestrated and intentional undermining of established academic institutions. Science and academic research are under questioning around the world, and universities’ position as a legitimate source of knowledge and critical thinking are under attack. Adding to this sense of instability and uncertainty, there is an ongoing digital and technological development that some argue has become a major risk for technical unemployment – fortelling the “end of work” (Brynjolfsson & McAfee, 2014; Danaher, 2017).

Automation, history and current threats

Historically, we have seen how new technology has changed the way we work and our everyday work practices. Machines have revolutionised and increased efficiency in agriculture and industrial production, and reduced the number of workers demanded in the process. In light of today’s ever-growing improvements in computer power, artificial intelligence and robotics, the gloomiest predictors are now once again convinced that we are moving towards a jobless future (Brynjolfsson & Mcafee, 2014). This time, technology is substituting more cognitively advanced and emotionally demanding jobs – ones previously performed by professionals in technical and managerial professions, including university teachers (Autor, 2015).

However, the past two centuries of automatisation and technological change have not made human labour obsolete. Even though unemployment rates have fluctuated cyclically, there has been no long-run increase in unemployment (Autor, 2015). Through governmental programs of re-education and reorientation, most exempted workers have been able to move to other forms of labour, and new areas of work have opened up in the wake of technological transformation. In previous technological automation processes the focus have been on replacing the most dangerous, bodily harming, and repetitive tasks, and in doing so contributing to a more human friendly labour market.

The digital transformation of academic work

University teachers have seen their work tasks and everyday work practices changed dramatically with digitalisation. Through digital aids and tools, they book rooms, coordinate and organise lectures and seminars, examine and grade students digitally, do research, apply for research funding and ethical approval, publish in academic outlets, manage conference bookings, calculate budgets for research proposals and develop data management plans. These are just a few examples. Their everyday work practices include a significant amount of digital administration, interacting with large numbers of different digital platforms. In the name of efficiency, an increasing number of tasks that have been previously assigned to administrative employees, have gradually been reassigned to the university teachers.

However, when trying to understand the consequences of technological changes of the everyday work situation for university employees, it is important to also take into consideration that during the same time these organisations have also been subject to New Public Management (Thomas & Davies, 2002). Which has also entailed increases in the number of students with diverse needs, less preparation time for teaching, and continuous monitoring of performance through audits and performance evaluations. In result, this left each university teacher with less time to do research due to increased demands and shrinking resources. Consequently, this has spurred even more administrative work as researchers constantly need to apply for research grants in highly competitive, complex and time-consuming funding processes, resulting in additional time and resource-consuming processes. This is also important to take into consideration when trying to understand the implications of genAI on the future of university teachers, illustrating the importance of moving beyond a techno-deterministic understanding (Lindberg et al., 2022). Automation and digitalisation are often presented as neutral, a consequence of technological progress, and as something inevitable. The ideological and material consequences remain hidden (Lindgren, 2024).

AI’s role and data dependency

We have to understand what distinguishes AI technology from previous types of technology, and in doing so, understand what consequences it will have on the everyday practices of university teachers. First, how can they use AI in their everyday work? What tasks do they have that could be suitable for genAI tools? Tasks such as compiling large amounts of text or getting an overview of a new research field for teaching or research, writting summaries, and polishing research applications, compiling CVs and creating concise bios, conducting  text analysis of ethnographic materials, supporting peer-review and expert processes, when assessing exams and essays, supporting development of lectures, conference and seminar presentations. The possibilities are endless. In the modern universities that the New Public Management have constructed, with its endless rounds of evaluations, constant applications and assessments, genAI tools can function to support and facilitate the everyday administrative work, making the work practices more manageable. However, it is also important to keep in mind that AI needs large amounts of data to be able to learn from the environment in which it will operate. To be able to help the teachers in their professional practices, genAI needs access to information and data, and the employees must assist and train the systems. Algorithmic systems depend on humans performing a certain kind of digital work, data labeling and moderation, breaking down the work into smaller components for autonomous decisions (Lindgren, 2024). This work is not always visible or even seen as actual work (Moore & Woodcock, 2021).

Hidden labour and digital capitalism

In digital capitalism, we all are involved in generating this type of data. When we move around in digital environments, we perform a lot of work for free that contributes to generating profits for the system, often without us being aware of it. As users we contribute to training the AI systems. Those who are involved in creating content online leave behind data traces, and it is these traces that the large digital media giants (Meta, X, etc.) exploit and capitalise on. The work that people do in the borderland between AI and society is often hidden (Lindgren, 2024; Moore & Woodcock, 2021; Taylor, 2018). For example, when you order a pizza for home delivery via an app, you might perceive it as a digital process. However, the actual physical work behind is invisible. Someone is standing and making the pizza. Another person is delivering it to your home. Foodora and Deliveroo’s apps are part of the complex socio-technical ecosystem of digital society. The pizza delivery people use their own bicycles to deliver the pizza. Foodora does not own the bicycles. Therefore, the company is not responsible for them. The companies claim to offer “flexible and free work”. The couriers can work whenever they want. The work is clearly fragmented, and the workers are interchangeable. The work schedule is individualised. The workers have to deal on their own with all the challenges, including icy roads, angry customers, unclear directions, and other issues. The digital platforms pay for the result, not for the time in-between. In many ways, these working conditions resemble those at the beginning of industrialisation, before union mobilisation, labor protection, sick leave pay, and the right to vacation (Ilsøe & Söderqvist, 2023). What is presented as high-tech and new, is in fact a regression in labour law. Historically, we have seen how every technological leap favors the emergence of armies of marginalised workers, who would take jobs that are not considered jobs anymore. In this respect, automation processes are often much less impressive than the big tech companies and large digital platforms want us to believe. Some tasks may disappear and wages will be reduced, though people continue working alongside the machines for lower pay or even sometimes without pay (Taylor, 2018).

To understand work under digital capitalism, we need to go back to the basic question formulated within  the socialist feminist tradition “What is work?” (Ferguson, 2020). How digital capitalism has not only survived but prospered while certain types of work have been hidden and unpaid (Fraser, 2016). The unrecognised work performed by most of us in the borderline between genAI and society, mirrors digital capitalism’s historical and current approach to reproductive work (Jarrett, 2018). The indispensable affective and material labour, mostly cast as “women’s work”, often performed without recognition and pay. In other words, a work that is not regarded as work and is not considered as having any social or economic value. This work in practice is extremely important, while ideologically seen as completely unimportant. Departing from this reasoning, we can conclude that the capitalist system have an inherent desire to devalue and hide socially important work. As participants of the digital capitalism, we often ignore the work that takes place behind the applications, and buy the myth of “success”. This way, we give automation more credence than it deserves. We ignore the work that lies behind the shiny facades of digitalisation. Making the machines appear smarter than they are (Taylor, 2018).

If the discussion about technology continues to focuse only on the narrative that technology drives humanity’s development forward and humans have to keep up, there is an imminent risk of missing the social contexts in which these technical devices are created. When considering the consequences of genAI on university teachers and their daily work, it is important to understand that it is not the technology that will make the teachers obsolete. Technology is developed within a specific economic and social system, where certain resourceful organisations and individuals invest in developing technology that will benefit their personal interests, including control, power, and immense financial returns.  The technology is designed to replace human labor to some extent, but it is developed within a digital capitalism that thrives on making people feel that they are constantly replaceable and vulnerable.

Conclusion and final reflections

To conclude, will genAI make university teacher obsolete? There is a need to acknowledge both the advantages and disadvantages of these tools. With the current university climate orchestrated by the New Public Management with its constant demands for auditing, evaluations, counting, and compiling information, daily tasks of university teachers might become more manageable with the help of genAI. In a better of world, genAI tools might be used to feed the insatiable New Public Management system, freeing up time for research, ciritical thinking and teaching. On the other hand, AI needs data and other resources to be able to learn from the environment in which it will operate. When university teachers participate in training the algorithmic systems, the digital capitalism thrives. This work is often not recognised as work. Digital capitalism wants us to believe that technological development is unstoppable and that we need to accept that our work is exploited. As educators and citizens, we need to be aware that there is an inherent mechanism in the system that actively benefits from hiding work tasks and treats them as non-work.

References

Autor, D. H. (2015). Why Are There Still So Many Jobs? The History and Future of Workplace Automation. Journal of Economic Perspectives, 29(3), 3–30. https://doi.org/10.1257/jep.29.3.3

Brynjolfsson, E., & McAfee, A. (2014). The Second Machine Age: Work, Progress, and Prosperity in a Time of Brilliant Technologies. W. W. Norton & Company.

Danaher, J. (2017). Will Life Be Worth Living in a World Without Work? Technological Unemployment and the Meaning of Life. Science and Engineering Ethics, 23(1), 41–64. https://doi.org/10.1007/s11948-016-9770-5

Ferguson, S. J. (2020). Women and work: Feminism, labour, and social reproduction. Between the lines.

Fraser, N. (2016). Contradictions of Capital and Care. New Left Review, 100, 99–117.

Ilsøe, A., & Söderqvist, C. F. (2023). Will there be a Nordic model in the platform economy? Evasive and integrative platform strategies in Denmark and Sweden. Regulation & Governance, 17(3), 608–626. https://doi.org/10.1111/rego.12465

Jarrett, K. (2018). Laundering women’s history: A feminist critique of the social factory. First Monday. https://doi.org/10.5210/fm.v23i3.8280

Lindberg, J., Kvist,E., & Lindgren, S. (2022). The Ongoing and Collective Character of Digital Care for Older People: Moving Beyond Techno-Determinism in Government Policy. Journal of Technology in Human Services, 40(4), 357–378. https://doi.org/10.1080/15228835.2022.2144588

Lindgren, S. (2024). AI – ett kritiskt perspektiv (Upplaga 1). Studentlitteratur.

Moore, P. V., & Woodcock, J. (2021). Augmented Exploitation: Artificial Intelligence, Automation, and Work. For Work / Against Work. Pluto Press. https://onwork.edu.au/bibitem/2021-Moore,Phoebe+V-Woodcock,Jamie-Augmented+Exploitation+Artificial+Intelligence,Automation,and+Work/

Taylor, A. (2018). The Automation Charade. Logic(s) Magazine. https://logicmag.io/failure/the-automation-charade/

Thomas, R., & Davies, A. (2002). Gender and New Public Management: Reconstituting Academic Subjectivities. Gender, Work & Organization, 9(4), 372–397. https://doi.org/10.1111/1468-0432.00165

Keywords:

Technological unemployment, genAI, work, gender, digital capitalism, university teachers, reproductive work

How to cite this article:

Kvist E. (2025). Will university teachers become obsolete in times of AI? AI Policy Exchange Forum (AIPEX). https://doi.org/10.63439/CBGU8049

AI Technologies in Public Service: A Workshop for Identifying Needs, Challenges, and Solutions


Date & Location: April 9, 2025, Umeå University, Västerbotten, Sweden

The workshop was organised by the AI Policy Lab in collaboration with the AI Technologies for Sustainable Public Service Co-creation (AICOSERV) project members.

Overview

The workshop brought together more than 50 stakeholders from the public and private sectors, as well as academia, to explore the relationship between barriers to AI adoption in public services and the skills and expertise required to overcome them.

A central theme of the workshop was the “question zero”, the fundamental inquiry of whether AI should be used at all in a given context. As AI technologies continue to advance and expand into complex public sector tasks, the assumption that AI is always the right or necessary solution must be critically examined. The workshop challenged participants to consider not only how AI can be implemented, but to question whether it should be, emphasizing that responsible adoption begins with questioning the appropriateness and desirability of AI in specific domains.

This foundational concern set the tone for broader discussions about trust, governance, transparency, and the skillsets required to navigate the opportunities and risks of AI in public service.

Keynote Address

Professor Virginia Dignum, Director of the AI Policy Lab, opened the workshop with a keynote titled “Governing AI: Why, What, How?”

She addressed the societal and governance implications of AI, focusing on the need to critically evaluate when and how AI should be integrated into public service contexts. Her talk stressed the importance of not overlooking ethical, legal, and operational challenges in the rush to adopt AI.

Regional Case Study: AI in Västerbotten

Considering the wide range of public services open to AI adoption, a recurring set of challenges consistently emerges. Whether deploying AI-driven diagnostic tools in healthcare or implementing predictive analytics within smart city infrastructures, public and private sector actors, and community stakeholders face diverse barriers. Henry Lopez-Vega, fellow at the AI Policy Lab, presented on the challenges of AI adoption in the Västerbotten region in his session titled “What are the challenges with AI (in Västerbotten)?”

His research identified three core barriers to building a responsible AI ecosystem:

  • Technological infrastructure and processes within organisations
  • Organisational culture and resistance to change
  • Lack of clarity around AI governance and ownership

Group Discussions: Skills and Stakeholder Engagement

In the second half of the workshop, participants engaged in group discussions focusing on organisational challenges, key stakeholders, and barriers to implementation. Each group then mapped the skills and knowledge needed for responsible AI adoption in their contexts.

For example, in the case of AI-supported recruitment processes, participants identified several critical barriers:

  • Lack of transparency in AI decision-making
  • Biases in training data
  • Limited legal and ethical guidelines for automated hiring

To address these issues, participants emphasized the need for professionals with a blend of competences, including:

  • Knowledge of data protection and anti-discrimination legislation
  • Skills in evaluating and auditing AI systems
  • Awareness of ethical considerations in algorithmic decision-making

Findings and Framework

The increasing efforts to implement AI across various public sector domains have led to a critical question: what types of professionals, equipped with what specific skills and competences, should lead the integration of responsible AI? Defining the essential set of skills, knowledge, and professional competences required for the effective and ethical deployment of AI in both public and private sector services becomes a key priority.

A key outcome of the workshop was the identification of a recurring set of challenges affecting. These include:

  • Low levels of trust
  • Lack of transparency
  • Unclear ownership and responsibility
  • Insufficient stakeholder awareness
  • Limited AI literacy and governance skills

To address these challenges, we propose the conceptual framework depicted in Figure 1. This framework highlights the urgent need to cultivate professionals who combine technical expertise, ethical sensitivity, and domain-specific knowledge to lead responsible AI integration. It maps the interconnected layers that influence the deployment and responsible use of AI technologies in public services, including:

  • Contextual Challenges – such as low trust, resistance to change, and limited organisational readiness
  • Structural Barriers – including unclear project ownership, inadequate governance frameworks, and insufficient infrastructure
  • Skill and Knowledge Gaps – highlighting the lack of AI literacy, ethical awareness, and domain-specific competences
  • Stakeholder Roles – outlining the importance of identifying and engaging relevant actors (e.g. policymakers, IT professionals, legal advisors, and citizens) throughout the AI lifecycle

This framework is intended to guide structured reflection and planning around AI deployment, helping ensure that technologies are not only functional but also trustworthy, inclusive, and aligned with public values. As such, it can serve as a practical tool for organisations seeking to integrate AI technologies responsibly. It encourages a systemic perspective, one that moves beyond technical feasibility to consider broader organisational, social, and ethical dimensions.

By applying this framework, decision-makers and project leads can:

  • Identify context-specific challenges before adopting AI
  • Map key stakeholders and clarify roles and responsibilities
  • Recognise skill and competence gaps that must be addressed
  • Design AI initiatives that align with principles of transparency, accountability, and fairness

Figure 1. The framework summarising the workshop’s thematic discussions

In conclusion, the workshop underscored that a stakeholder-oriented, challenge-driven approach is key to enabling responsible AI adoption. By starting with specific domain needs and mapping corresponding skills and knowledge, organisations can more effectively navigate the complex landscape of AI integration.

Civil Sector Vulnerabilities and NATO’s Strategic Role: The Case for International AI Governance

Jason Tucker (Researcher, Institute for Futures Studies, Sweden. Adjunct Associate Professor, AI Policy Lab, Department of Computing Science, Umeå University)


Published on 14 May 2025

Adapted from a presentation given at the NATO Science for Peace and Security Programme, Advanced Research Workshop “Clicking the Pause: The Role of Transatlantic Cooperation in AI Supervision”, Salamanca, Spain, 8-9 May 2025.

As AI becomes increasingly embedded in critical societal functions, the need for robust, internationally coordinated governance grows more urgent. While some national and regional regulation of AI is emerging, applications in defence and international security often remain exempt from these initiatives. This historical separation between civil and defence sectors is understandable given the unique operational requirements of the military. However, it risks creating a false dichotomy—suggesting that AI use in civil domains is largely divorced from international security concerns. However, the geopolitical implications of AI in the civil sector are profound and escalating (Schaake, 2024).

To illustrate this, healthcare provides a concrete and urgent example. Across NATO members and partners, localized and largely disconnected decisions are being made to adopt small-scale AI solutions in healthcare. With states having limited capacity to develop in-house solutions, they often turn to external actors. Doing so means that they are then subject to a complex and opaque web of global supply chains and international actors. This poses substantial risks, including vulnerabilities to cyber-attacks, dependencies on potentially hostile states or corporations, and strain on critical infrastructure to support its adoption.

The growing instability of the international order compounds these challenges. The United States has recently exhibited unpredictability in both its Administration and its corporate tech sector. Even if diplomatic relations are maintained, trust at the local level is harder to rebuild. Working with partners whose long-term reliability is in question introduces significant risk, and other non-traditional partners become more appealing. Where these actors are not aligned with NATO, this could be a vulnerability.

Moreover, the adoption of AI in the civil sector has been driven by techno-solutionism — the prioritisation of technological fixes that neglects broader societal and security trade-offs, as well as potentially more appropriate non-technical solutions. It glosses over the reality that AI, as a socio-technical system is embedded in cultural, institutional, and ethical contexts and requires participation from a broad range of actors to function at its best.

Healthcare systems are particularly susceptible to this narrative (Strange and Tucker, 2024). They face resource constraints that limit the capacity to develop, implement, and secure AI technologies. Combined with the dominant discourse being that AI is the only and best way to solve a broad range of healthcare issues, everyday actors in healthcare are facing pressure to adopt AI where they can. At the same time, NATO’s security infrastructure is drawing from the same limited resource pool—particularly in terms of skills, energy, data infrastructure, and cybersecurity capacity. Without careful coordination, this could lead to a zero-sum scenario, undermining societal resilience and military advantage.

Cybersecurity threats to healthcare are well documented. The World Health Organization has recognized that cyber-attacks targeting health systems have considerable consequences in terms of public health and international security (WHO, 2024). In 2021, WHO reported that one-third of global healthcare institutions had suffered at least one ransomware attack in the preceding year (Mishra, 2024). The European Union reported that in 2023, healthcare was the most targeted critical sector in cyber-attacks (WHO, 2024). During the COVID-19 pandemic, healthcare was not just a target but a vector for disinformation and destabilisation by state and non-state actors alike. Given these risks, decisions about AI adoption in critical civil sectors like healthcare cannot be made in isolation from geopolitical and security considerations. Yet most local actors are not equipped to understand or navigate these complex dynamics. The absence of coherent guidance or frameworks linking AI adoption to national and international security exacerbates vulnerability, weakens societal resilience, and increases dependence on untrustworthy partners.

Global AI governance is essential. It can establish the guardrails necessary to manage these risks and guide responsible adoption of AI technologies across sectors. NATO has a critical role to play here. By integrating civil sector AI governance into its strategic thinking, and engaging with the Allies on this, NATO can help ensure that AI adoption enhances—not undermines—resilience and collective security. This will allow for a more realistic assessment of the trade-offs involved in AI adoption, especially in sectors like healthcare that are both vital to public well-being, are particularly vulnerable to attack and a conduit for hostile actors to cause societal disruption. NATO’s role here should be seen as complementing other international AI governance efforts, such as those by UNESCO, OECD and the EU etc. This would ensure that these governance structures do not become dominated by military priorities and bridge the gap between the defense and civil sector. Democratic safeguards, such as civil society oversight or public reporting, for any NATO-related initiatives affecting the civil sector, would also be essential. As would multidimensional and multidisciplinary views on civil resiliency frameworks.

AI in the civil sector is not a technical or administrative matter alone—it is a strategic issue with implications for the stability, security, and cohesion of NATO members’ and partners’ societies. Only through coordinated, international governance, can we navigate this new terrain with the prudence and foresight it demands.

References

Mishra, V., (2024) Cyberattacks on healthcare: A global threat that can’t be ignored, UN News, https://news.un.org/en/story/2024/11/1156751.

World Health Organization., (2024), Ransomware Attacks on Healthcare Sector ‘Pose a Direct and Systemic Risk to Global Public Health and Security’, Executive Tells Security Council, https://press.un.org/en/2024/sc15891.doc.htm.

Schaake, M., (2024). The Tech Coup. Princeton University Press.

Strange, M. and Tucker, J., 2024. Global governance and the normalization of artificial intelligence as ‘good’ for human health. AI & SOCIETY, 39(6), pp.2667-2676.

Further Information

This article is part of the Politics of AI & Health: From Snake Oil to Social Good funded by The Wallenberg AI, Autonomous Systems and Software Program – Humanity and Society (WASP-HS).

Keywords (comma separated):

NATO, Civil Sector, Artificial Intelligence, Security, Healthcare, Governance

Related URL (if any):

https://www.iffs.se/en/research/research-projects/politics-of-ai-health-from-snake-oil-to-social-good/

How to cite this article:

Tucker J. (2025). Civil Sector Vulnerabilities and NATO’s Strategic Role: The Case for International AI Governance. AI Policy Exchange Forum (AIPEX). https://doi.org/10.63439/UJML2174

Beyond the AI race: why global governance is the greatest innovation

Virginia Dignum (Wallenberg Chair, Professor Responsible Artificial Intelligence, Director of AI Policy Lab at Umeå University)


Published on 8 April 2025

As artificial intelligence (AI) evolves rapidly, the urgency to govern it responsibly becomes more pressing by the day. We are standing at a pivotal moment, one where the choices we make today will shape not just technological outcomes, but also the foundations of our societies, economies, and planetary well-being.

Even as the UN and other international agencies advocate for global AI regulation, major players – particularly the US, UK, and China – seem increasingly hesitant to fully commit. While the US and UK are currently moving towards light-touch, innovation-driven approaches that prioritize industry leadership over binding rules, China leans toward a state-controlled model aligned with its national priorities. Their reluctance undermines efforts to build the effective, inclusive governance frameworks we urgently need, and may encourage others to also sideline global cooperation in favour of fragmented, self-serving strategies.

But AI governance is not optional, it is essential. It protects rights, upholds global values, and ensures long-term economic stability and sustainable innovation. Without global governance, we open the door to a race to the bottom, marked by short-term thinking, ethical shortcuts, and growing global inequality. We cannot allow geopolitical competition to derail the collective responsibility required to ensure AI serves the common good. Now is the moment to strengthen our commitment to global, values-driven governance, not to stall it. Meanwhile, AI governance shouldn’t chase every new technology, but instead follow clear principles: transparency, fairness, explainability, and accountability. These form a foundation for adaptable policy that protects rights and safety. Tools like regulatory sandboxes, public engagement, and stronger international coordination support this flexible yet high-standard approach as AI evolves.

The best competitive advantage is not ruthless speed, but wise collaboration, especially when the stakes include trust, stability, and the health of our planet. In this context, the European Union’s €200 billion investment in regulated, human-centered AI stands out. This visionary approach demonstrates how regulation can act not as a brake on innovation but as a stepping stone for it. The EU’s commitment to ethics, inclusion, and sustainability offers a powerful alternative to the more narrowly competitive models pursued by the US and China. Yet, funding alone is not enough. Investment must be accompanied by sustainable practices, equitable access, and strengthened social cohesion. Other countries—Canada, Japan, Brazil—are also making important strides. But this is not a race with a single winner. It’s a collective effort, and meaningful progress depends on a globally aligned framework that ensures AI serves all of humanity.

Still, I am deeply concerned about the growing competition to dominate the AI landscape. China, the US, and others are increasingly viewing AI as a tool of economic and military supremacy. This race risks concentrating power in a handful of nations or corporations, sidelining most of the world and worsening inequality. China, the US, and others view AI through the lens of strategic dominance. But AI is not a zero-sum game. True progress requires transparency, ethical alignment, and shared governance.

One of the greatest ethical challenges today is the erosion of human agency through opaque, unaccountable AI systems. That’s why I advocate for Earth alignment, as we introduced in a recent article in Nature Sustainability. This framework emphasizes the need for AI governance to be anchored in environmental sustainability, global justice, and societal cohesion. These goals cannot be achieved in isolation or through regional silos. They require a shared commitment to values that transcend borders, and the democratization of governance. A small group of governments and companies cannot be allowed to shape society through their control over AI development, nor solely through the lens of existential threats and geopolitical rivalry.

Responsible development requires systemic change, not just technical fixes. Ethics must be embedded from the outset, but we must do so through systemic change, not fear-mongering. This is not just a question of innovation; it’s a matter of justice. AI should not be a tool that widens global divides or undermines democracy and social cohesion. It should be a force for empowerment, equity, and resilience. That’s only possible through shared governance, transparency, and ethical alignment across all borders, including those of the most powerful players.

This is why global governance of AI is not optional, it is urgent.

Looking to the future, what excites me most about AI is its potential to empower us, not to replace us. If we govern it well, AI could become one of our most powerful tools for addressing climate change, improving healthcare and education, and advancing equity and social cohesion. But that future is not guaranteed. It depends on the choices we make now. The future of AI is not just about building smarter machines and software, it is about working together towards a wiser humanity. One that values cooperation over competition, solidarity over supremacy. One that uses AI not to dominate, but to heal and uplift.

There is no alternative: in the long run, only responsible AI will lead to innovation that truly benefits society. Anything else will not only undermine trust and human rights but will also lead to technically weaker systems and a loss of true innovation. Irresponsible AI may promise short-term advantages, but it will cost us our long-term future.

Responsible AI is not the finish line. It is the only viable path forward.

Keywords (comma separated):

AI governance, global cooperation, responsible AI, sustainability, transparency, regulation

How to cite this article:

Virginia D. (2025). Beyond the AI race: why global governance is the greatest innovation. AI Policy Exchange Forum (AIPEX). https://doi.org/10.63439/LNQA3726