Ethics & Policy
AI and ethics in modern society
Humanity’s rapid advancements in robotics and AI have shifted many ethical and philosophical dilemmas from the realm of science fiction into pressing real-world issues. AI technologies now permeate areas such as medicine, public governance, and the economy, making it critical to ensure their ethical use. Multiple actors, including governments, multinational corporations, international organisations, and individual citizens, share the responsibility to navigate these developments thoughtfully.
What is ethics?
Ethics refers to the moral principles that guide individual behaviour or the conduct of activities, determining what is considered right or wrong. In AI, ethics ensures that technologies are developed and used in ways that respect societal values, human dignity, and fairness. For example, one ethical principle is respect for others, which means ensuring that AI systems respect the rights and privacy of individuals.
What is AI?
Artificial Intelligence (AI) refers to systems that analyse their environment and make decisions autonomously to achieve specific goals. These systems can be software-based, like voice assistants and facial recognition software, or hardware-based, such as robots, drones, and autonomous cars. AI has the potential to reshape society profoundly. Without an ethical framework, AI could perpetuate inequalities, reduce accountability, and pose risks to privacy, security, and human autonomy. Embedding ethics in the design, regulation, and use of AI is essential to ensuring that this technology advances in a way that promotes fairness, responsibility, and respect for human rights.
AI ethics and its importance
AI ethics focuses on minimising risks related to poor design, inappropriate applications, and misuse of AI. Problems such as surveillance without consent and the weaponisation of AI have already emerged. This calls for ethical guidelines that protect individual rights and ensure that AI benefits society as a whole.
Global and regional efforts to regulate AI ethics
There are international initiatives to regulate AI ethically. For example, UNESCO‘s 2021 Recommendation on the Ethics of AI offers guidelines for countries to develop AI responsibly, focusing on human rights, inclusion, and transparency. The European Union’s AI Act is another pioneering legislative effort, which categorises AI systems by their risk level. The higher the risk, the stricter the regulatory requirements.
The Collingridge dilemma and AI
The Collingridge dilemma points to the challenge of regulating new technologies like AI. Early regulation is difficult due to limited knowledge of the technology’s long-term effects, but once the technology becomes entrenched, regulation faces opposition from stakeholders. AI is currently in a dual phase: while its long-term implications are uncertain, we already have enough examples of its immediate impact—such as algorithmic bias and privacy violations—to justify regulation in key areas.
Asimov’s Three Laws of Robotics: Ethical inspiration for AI
Isaac Asimov’s Three Laws of Robotics, while fictional, resonate with many of the ethical concerns that modern AI systems face today. These laws—designed to prevent harm to humans, ensure obedience to human commands, and prioritise the self-preservation of robots—provide a foundational, if simplistic, framework for responsible AI behaviour.
Modern ethical challenges in AI
However, real-world AI introduces a range of complex challenges that cannot be adequately managed by simple rules. Issues such as algorithmic bias, privacy violations, accountability in decision-making, and unintended consequences complicate the ethical landscape, necessitating more nuanced and adaptive strategies for effectively governing AI systems.
As AI continues to develop, it raises new ethical dilemmas, including the need for transparency in decision-making, accountability in cases of accidents, and the possibility of AI systems acting in ways that conflict with their initial programming. Additionally, there are deeper questions regarding whether AI systems should have the capacity for moral reasoning and how their autonomy might conflict with human values.
Categorising AI and ethics
Modern AI systems exhibit a spectrum of ethical complexities that reflect their varying capabilities and applications. Basic AI operates by executing tasks based purely on algorithms and pre-programmed instructions, devoid of any moral reasoning or ethical considerations. These systems may efficiently sort data, recognise patterns, or automate simple processes, yet they do not engage in any form of ethical deliberation.
In contrast, more advanced AI systems are designed to incorporate limited ethical decision-making. These systems are increasingly being deployed in critical areas such as healthcare, where they help diagnose diseases, recommend treatments, and manage patient care. Similarly, in autonomous vehicles, AI must navigate complex moral scenarios, such as how to prioritise the safety of passengers versus pedestrians in unavoidable accident situations. While these advanced systems can make decisions that involve some level of ethical consideration, their ability to fully grasp and navigate complex moral landscapes remains constrained.
The variety of ethical dilemmas
Legal impacts
The question of AI accountability is increasingly relevant in our technologically driven society, particularly in scenarios involving autonomous vehicles, where determining liability in the event of an accident is fraught with complications. For instance, if an autonomous car is involved in a collision, should the manufacturer, software developer, or vehicle owner be held responsible? As AI systems become more autonomous, existing legal frameworks may struggle to keep pace with these advancements, leading to legal grey areas that can result in injustices. Additionally, AI technologies are vulnerable to misuse for criminal activities, such as identity theft, fraud, or cyberattacks. This underscores the urgent need for comprehensive legal reforms that not only address accountability issues but also develop robust regulations to mitigate the potential for abuse.
Financial impacts
The integration of AI into financial markets introduces significant risks, including the potential for market manipulation and exacerbation of financial inequalities. For instance, algorithms designed to optimise trading strategies may inadvertently favour wealthy investors, perpetuating a cycle of inequality. Furthermore, biased decision-making algorithms can lead to unfair lending practices or discriminatory hiring processes, limiting opportunities for marginalised groups. As AI continues to shape financial systems, it is crucial to implement safeguards and oversight mechanisms that promote fairness and equitable access to financial resources.
Environmental impacts
The environmental implications of AI cannot be overlooked, particularly given the substantial energy consumption associated with training and deploying large AI models. The computational power required for these processes contributes significantly to carbon emissions, raising concerns about the sustainability of AI technologies. In addition, the rapid expansion of AI applications in various industries may lead to increased electronic waste, as outdated hardware is discarded in favour of more advanced systems. To address these challenges, stakeholders must prioritise the development of energy-efficient algorithms and sustainable practices that minimise the ecological footprint of AI technologies.
Social impacts
AI-driven automation poses a profound threat to traditional job markets, particularly in sectors that rely heavily on routine tasks, such as manufacturing and customer service. As machines become capable of performing these jobs more efficiently, human workers may face displacement, leading to economic instability and social unrest. Moreover, the deployment of biassed algorithms can deepen existing social inequalities, especially when applied in sensitive areas like hiring, loan approvals, or criminal justice. The use of AI in surveillance systems also raises significant privacy concerns, as individuals may be monitored without their consent, leading to a chilling effect on free expression and civil liberties.
Psychological impacts
The interaction between humans and AI systems can have far-reaching implications for emotional well-being. For example, AI-driven customer service chatbots may struggle to provide the empathetic responses that human agents can offer, leading to frustration among users. Additionally, emotionally manipulative AI applications in marketing may exploit psychological vulnerabilities, promoting unhealthy consumer behaviours or contributing to feelings of inadequacy. As AI systems become more integrated into everyday life, understanding and mitigating their psychological effects will be essential for promoting healthy human-computer interactions.
Trust issues
Public mistrust of AI technologies is a significant barrier to their widespread adoption. This mistrust is largely rooted in the opacity of AI systems and the potential for algorithmic bias, which can lead to unjust outcomes. To foster trust, it is crucial to establish transparent practices and accountability measures that ensure AI systems operate fairly and ethically. This can include the development of explainable AI, which allows users to understand how decisions are made, as well as the implementation of regulatory frameworks that promote responsible AI development. By addressing these trust issues, stakeholders can work toward creating a more equitable and trustworthy AI landscape.
These complex ethical challenges require global coordination and thoughtful, adaptable regulation to ensure that AI serves humanity’s best interests, respects human dignity, and promotes fairness across all sectors of society. The ethical considerations around AI extend far beyond individual technologies or industries, impacting fundamental human rights, economic equality, environmental sustainability, and societal trust.
As AI continues to advance, the collective responsibility of governments, corporations, and individuals is to build robust, transparent systems that not only push the boundaries of innovation but also safeguard society. Only through an ethical framework can AI fulfil its potential as a transformative force for good rather than deepening existing divides or creating new dangers. The journey towards creating ethically aware AI systems necessitates ongoing research, interdisciplinary collaboration, and a commitment to prioritising human well-being in all technological advancements.
Ethics & Policy
AI and ethics – what is originality? Maybe we’re just not that special when it comes to creativity?
I don’t trust AI, but I use it all the time.
Let’s face it, that’s a sentiment that many of us can buy into if we’re honest about it. It comes from Paul Mallaghan, Head of Creative Strategy at We Are Tilt, a creative transformation content and campaign agency whose clients include the likes of Diageo, KPMG and Barclays.
Taking part in a panel debate on AI ethics at the recent Evolve conference in Brighton, UK, he made another highly pertinent point when he said of people in general:
We know that we are quite susceptible to confident bullshitters. Basically, that is what Chat GPT [is] right now. There’s something reminds me of the illusory truth effect, where if you hear something a few times, or you say it here it said confidently, then you are much more likely to believe it, regardless of the source. I might refer to a certain President who uses that technique fairly regularly, but I think we’re so susceptible to that that we are quite vulnerable.
And, yes, it’s you he’s talking about:
I mean all of us, no matter how intelligent we think we are or how smart over the machines we think we are. When I think about trust, – and I’m coming at this very much from the perspective of someone who runs a creative agency – we’re not involved in building a Large Language Model (LLM); we’re involved in using it, understanding it, and thinking about what the implications if we get this wrong. What does it mean to be creative in the world of LLMs?
Genuine
Being genuine, is vital, he argues, and being human – where does Human Intelligence come into the picture, particularly in relation to creativity. His argument:
There’s a certain parasitic quality to what’s being created. We make films, we’re designers, we’re creators, we’re all those sort of things in the company that I run. We have had to just face the fact that we’re using tools that have hoovered up the work of others and then regenerate it and spit it out. There is an ethical dilemma that we face every day when we use those tools.
His firm has come to the conclusion that it has to be responsible for imposing its own guidelines here to some degree, because there’s not a lot happening elsewhere:
To some extent, we are always ahead of regulation, because the nature of being creative is that you’re always going to be experimenting and trying things, and you want to see what the next big thing is. It’s actually very exciting. So that’s all cool, but we’ve realized that if we want to try and do this ethically, we have to establish some of our own ground rules, even if they’re really basic. Like, let’s try and not prompt with the name of an illustrator that we know, because that’s stealing their intellectual property, or the labor of their creative brains.
I’m not a regulatory expert by any means, but I can say that a lot of the clients we work with, to be fair to them, are also trying to get ahead of where I think we are probably at government level, and they’re creating their own frameworks, their own trust frameworks, to try and address some of these things. Everyone is starting to ask questions, and you don’t want to be the person that’s accidentally created a system where everything is then suable because of what you’ve made or what you’ve generated.
Originality
That’s not necessarily an easy ask, of course. What, for example, do we mean by originality? Mallaghan suggests:
Anyone who’s ever tried to create anything knows you’re trying to break patterns. You’re trying to find or re-mix or mash up something that hasn’t happened before. To some extent, that is a good thing that really we’re talking about pattern matching tools. So generally speaking, it’s used in every part of the creative process now. Most agencies, certainly the big ones, certainly anyone that’s working on a lot of marketing stuff, they’re using it to try and drive efficiencies and get incredible margins. They’re going to be on the race to the bottom.
But originality is hard to quantify. I think that actually it doesn’t happen as much as people think anyway, that originality. When you look at ChatGPT or any of these tools, there’s a lot of interesting new tools that are out there that purport to help you in the quest to come up with ideas, and they can be useful. Quite often, we’ll use them to sift out the crappy ideas, because if ChatGPT or an AI tool can come up with it, it’s probably something that’s happened before, something you probably don’t want to use.
More Human Intelligence is needed, it seems:
What I think any creative needs to understand now is you’re going to have to be extremely interesting, and you’re going to have to push even more humanity into what you do, or you’re going to be easily replaced by these tools that probably shouldn’t be doing all the fun stuff that we want to do. [In terms of ethical questions] there’s a bunch, including the copyright thing, but there’s partly just [questions] around purpose and fun. Like, why do we even do this stuff? Why do we do it? There’s a whole industry that exists for people with wonderful brains, and there’s lots of different types of industries [where you] see different types of brains. But why are we trying to do away with something that allows people to get up in the morning and have a reason to live? That is a big question.
My second ethical thing is, what do we do with the next generation who don’t learn craft and quality, and they don’t go through the same hurdles? They may find ways to use {AI] in ways that we can’t imagine, because that’s what young people do, and I have faith in that. But I also think, how are you going to learn the language that helps you interface with, say, a video model, and know what a camera does, and how to ask for the right things, how to tell a story, and what’s right? All that is an ethical issue, like we might be taking that away from an entire generation.
And there’s one last ‘tough love’ question to be posed:
What if we’re not special? Basically, what if all the patterns that are part of us aren’t that special? The only reason I bring that up is that I think that in every career, you associate your identity with what you do. Maybe we shouldn’t, maybe that’s a bad thing, but I know that creatives really associate with what they do. Their identity is tied up in what it is that they actually do, whether they’re an illustrator or whatever. It is a proper existential crisis to look at it and go, ‘Oh, the thing that I thought was special can be regurgitated pretty easily’…It’s a terrifying thing to stare into the Gorgon and look back at it and think,’Where are we going with this?’. By the way, I do think we’re special, but maybe we’re not as special as we think we are. A lot of these patterns can be matched.
My take
This was a candid worldview that raised a number of tough questions – and questions are often so much more interesting than answers, aren’t they? The subject of creativity and copyright has been handled at length on diginomica by Chris Middleton and I think Mallaghan’s comments pretty much chime with most of that.
I was particularly taken by the point about the impact on the younger generation of having at their fingertips AI tools that can ‘do everything, until they can’t’. I recall being horrified a good few years ago when doing a shift in a newsroom of a major tech title and noticing that the flow of copy had suddenly dried up. ‘Where are the stories?’, I shouted. Back came the reply, ‘Oh, the Internet’s gone down’. ‘Then pick up the phone and call people, find some stories,’ I snapped. A sad, baffled young face looked back at me and asked, ‘Who should we call?’. Now apart from suddenly feeling about 103, I was shaken by the fact that as soon as the umbilical cord of the Internet was cut, everyone was rendered helpless.
Take that idea and multiply it a billion-fold when it comes to AI dependency and the future looks scary. Human Intelligence matters
Ethics & Policy
Preparing Timor Leste to embrace Artificial Intelligence
UNESCO, in collaboration with the Ministry of Transport and Communications, Catalpa International and national lead consultant, jointly conducted consultative and validation workshops as part of the AI Readiness assessment implementation in Timor-Leste. Held on 8–9 April and 27 May respectively, the workshops convened representatives from government ministries, academia, international organisations and development partners, the Timor-Leste National Commission for UNESCO, civil society, and the private sector for a multi-stakeholder consultation to unpack the current stage of AI adoption and development in the country, guided by UNESCO’s AI Readiness Assessment Methodology (RAM).
In response to growing concerns about the rapid rise of AI, the UNESCO Recommendation on the Ethics of Artificial Intelligence was adopted by 194 Member States in 2021, including Timor-Leste, to ensure ethical governance of AI. To support Member States in implementing this Recommendation, the RAM was developed by UNESCO’s AI experts without borders. It includes a range of quantitative and qualitative questions designed to gather information across different dimensions of a country’s AI ecosystem, including legal and regulatory, social and cultural, economic, scientific and educational, technological and infrastructural aspects.
By compiling comprehensive insights into these areas, the final RAM report helps identify institutional and regulatory gaps, which can assist the government with the necessary AI governance and enable UNESCO to provide tailored support that promotes an ethical AI ecosystem aligned with the Recommendation.
The first day of the workshop was opened by Timor-Leste’s Minister of Transport and Communication, H.E. Miguel Marques Gonçalves Manetelu. In his opening remarks, Minister Manetelu highlighted the pivotal role of AI in shaping the future. He emphasised that the current global trajectory is not only driving the digitalisation of work but also enabling more effective and productive outcomes.
Ethics & Policy
Experts gather to discuss ethics, AI and the future of publishing
Publishing stands at a pivotal juncture, said Jeremy North, president of Global Book Business at Taylor & Francis Group, addressing delegates at the 3rd International Conference on Publishing Education in Beijing. Digital intelligence is fundamentally transforming the sector — and this revolution will inevitably create “AI winners and losers”.
True winners, he argued, will be those who embrace AI not as a replacement for human insight but as a tool that strengthens publishing’s core mission: connecting people through knowledge. The key is balance, North said, using AI to enhance creativity without diminishing human judgment or critical thinking.
This vision set the tone for the event where the Association for International Publishing Education was officially launched — the world’s first global alliance dedicated to advancing publishing education through international collaboration.
Unveiled at the conference cohosted by the Beijing Institute of Graphic Communication and the Publishers Association of China, the AIPE brings together nearly 50 member organizations with a mission to foster joint research, training, and innovation in publishing education.
Tian Zhongli, president of BIGC, stressed the need to anchor publishing education in ethics and humanistic values and reaffirmed BIGC’s commitment to building a global talent platform through AIPE.
BIGC will deepen academic-industry collaboration through AIPE to provide a premium platform for nurturing high-level, holistic, and internationally competent publishing talent, he added.
Zhang Xin, secretary of the CPC Committee at BIGC, emphasized that AIPE is expected to help globalize Chinese publishing scholarships, contribute new ideas to the industry, and cultivate a new generation of publishing professionals for the digital era.
Themed “Mutual Learning and Cooperation: New Ecology of International Publishing Education in the Digital Intelligence Era”, the conference also tackled a wide range of challenges and opportunities brought on by AI — from ethical concerns and content ownership to protecting human creativity and rethinking publishing values in higher education.
Wu Shulin, president of the Publishers Association of China, cautioned that while AI brings major opportunities, “we must not overlook the ethical and security problems it introduces”.
Catriona Stevenson, deputy CEO of the UK Publishers Association, echoed this sentiment. She highlighted how British publishers are adopting AI to amplify human creativity and productivity, while calling for global cooperation to protect intellectual property and combat AI tool infringement.
The conference aims to explore innovative pathways for the publishing industry and education reform, discuss emerging technological trends, advance higher education philosophies and talent development models, promote global academic exchange and collaboration, and empower knowledge production and dissemination through publishing education in the digital intelligence era.
yangyangs@chinadaily.com.cn
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