Thematic discussion 3: Safe, secure and trustworthy AI - Global Dialogue on Artificial Intelligence Governance - Day 2
This discussion focused on building safe, secure, and trustworthy AI through interoperability and compatibility of governance approaches across borders. Co-chair Paula Bogantes Zamora framed the central challenge as not whether frameworks can coexist on paper, but whether safety, accountability, and trust can be demonstrated across borders . She noted that AI development is highly concentrated, with institutions in the United States producing 59 notable AI models and China 35, while the rest of the world produced only 13 . She further highlighted that 118 countries, mainly from the Global South, are not meaningfully engaged in international AI governance discussions .
Co-chair Rebecca Finlay called for three concrete actions: strengthening independent scientific evidence, opening up the science through greater transparency and disclosure, and advancing progress in the public interest through inclusive baseline-setting and public accountability . Under-Secretary-General Amandeep Singh-Gill warned that global fragmentation leads to regulatory arbitrage, accountability gaps, increased compliance burdens, and deepened governance inequalities , and argued that the goal should be building practical bridges across diverse approaches rather than harmonising AI governance into a single model .
Panellists explored existing building blocks for interoperability, including the OECD AI Principles and the Hiroshima AI Process , while industry representatives noted that even shared concepts such as "transparency" carry different technical requirements across frameworks, requiring granular control-level mapping rather than high-level alignment alone . The World Meteorological Organization drew on over 150 years of cross-border data exchange to argue that trust must be built through verification and common standards, not merely declared , and Dr Joy Buolamwini cautioned that evaluation benchmarks must include the global majority, as less than 5% of some benchmarks currently represent those populations .
Member states and stakeholders consistently emphasised that interoperability must not become a mechanism for imposing the rules of powerful nations on others , and that developing countries must participate as co-shapers rather than rule-takers . Specific priorities raised included shared incident reporting , multilingual evaluation methods , cross-border regulatory sandboxes , and the urgent governance challenges posed by agentic AI systems acting autonomously across borders .
The session concluded with co-chairs synthesising that effective AI governance requires adaptive systems, shared minimum baselines grounded in human rights, open and inclusive standards, independent third-party verification, and sustained multi-stakeholder participation between dialogues , underscoring that trust in AI can only be built through evidence, institutional cooperation, and governance frameworks that function across borders .
Overall Purpose
- The discussion focused on building safe, secure, and trustworthy AI through interoperability and compatibility of governance approaches. The session brought together governments, international organisations, industry, academia, and civil society to explore how diverse national AI governance frameworks can be made to work together across borders without requiring full harmonisation, whilst ensuring inclusive participation from all countries, particularly those in the Global South.
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Major Discussion Points
- The concentration of AI power and its governance implications: A central concern throughout the session was the extreme concentration of AI development and infrastructure in a small number of countries. In 2025, institutions in the United States produced 59 notable AI models and China 35, whilst the rest of the world produced only 13, with the US holding roughly 75% of computing power among the 500 largest known AI clusters . This concentration means that the countries and companies with the greatest computing capacity also have disproportionate influence over which risks are measured, which benchmarks are accepted, and which institutions are recognised as capable of certifying safety . Furthermore, 118 countries, mainly from the Global South, are not meaningfully engaged in principal international AI governance discussions . Speakers from Pakistan, Bangladesh, and South Africa reinforced this concern, arguing that safety norms must not be set by a few and exported to the many, but developed through inclusive multilateral processes .
- Interoperability as a practical necessity, not regulatory uniformity: Multiple speakers emphasised that the goal is not to create a single global AI governance model, but to build practical bridges between diverse national approaches. The facilitator's opening analogy of electrical adapters illustrated this principle - different systems can coexist if they have trusted interfaces . Costa Rica's co-chair proposed a concept of "minimal viable interoperability" before 2027, encompassing shared terminology, comparable risk classifications, consistent documentation, interoperable incident reporting, and multilingual evaluation methods . Amandeep Singh-Gill warned that fragmentation leads to regulatory arbitrage, accountability gaps, increased compliance burdens for SMEs and low-income countries, and deepened governance dependency . Syed Ahmed from Infosys illustrated the practical complexity, noting that even a concept like "transparency" means different things under the EU AI Act versus ISO standards, requiring deep granular mapping rather than surface-level alignment .
- The urgent need for independent, inclusive scientific evidence : A recurring theme was that governance frameworks are multiplying faster than the scientific evidence underpinning them, and that existing evaluation is too often conducted by the very companies developing the systems . Rebecca Finlay called for three concrete actions: strengthening the independent scientific evidence base, opening up the science through greater transparency and disclosure, and advancing progress in the public interest through shared baselines . Dr. Joy Buolamwini highlighted that misleading measures of success - such as benchmarks where less than 5% of data represents the global majority - risk entrenching bias rather than addressing it . The World Meteorological Organization's Secretary General drew on 150 years of cross-border data exchange to argue that trust must be built through verification against shared standards, not merely declared . The International AI Safety Report lead writer stressed that frontier risks, including misuse for bioweapons and malfunctioning agentic systems, cannot be dismissed as speculative and require urgent, evidence-based attention .
- Agentic AI as an emerging and urgent governance frontier: Several speakers highlighted the shift from static AI model oversight to dynamic governance of increasingly autonomous, multi-step agentic systems as a defining challenge. Amandeep Singh-Gill noted that this rapid evolution can outpace existing governance practices, requiring adaptive mechanisms such as living risk taxonomies and staged deployment . Paula Bogantes Zamora argued that interoperability for agentic AI must extend beyond connecting systems to include verifiable agent identity, traceable delegation, machine-readable permissions, and effective revocation . Concordia AI warned that because AI agents can act directly upon the real world, failures can cause severe harm before human intervention is possible, and that safety standards must scale with autonomy levels . Accountability must be engineered before deployment, not added after an incident, and a clear chain of human accountability must stand behind every agent action .
- Inclusion, linguistic diversity, and capacity building as prerequisites for trustworthy governance: Speakers consistently argued that interoperability risks reproducing inequality if it assumes universal access to advanced connectivity, computing resources, and regulatory expertise . The world has more than 7,000 languages, but AI training and evaluation cover only a fraction, with models often performing less safely in languages with limited digital data . Latvia highlighted that the gap between dominant and underrepresented languages in leading AI models is widening, not narrowing, and called for open benchmarks reflecting linguistic and cultural diversity . The representative from the Center for Responsible AI at IIT noted that even participation in governance forums is unequal, with a colleague unable to attend due to visa difficulties - a concrete illustration of access barriers . Lithuania, Brazil, and Ethiopia all called for governance frameworks that are inclusive in design, equitable in application, and supportive of technology transfer and capacity building .
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Overall Tone
- The overall tone of the discussion was constructive and collaborative, with a strong undercurrent of urgency. Speakers across all stakeholder groups shared a common commitment to making AI governance work across borders, and there was notable consensus that fragmentation is harmful and that interoperability - rather than uniformity - is the appropriate goal .
- However, the tone carried a persistent note of concern and candour. Co-chair Paula Bogantes Zamora set a frank register early, stating plainly that "the world does not need more AI principles - it needs a common way to prove they're being implemented" , and presenting stark data on global inequality in AI development . This critical honesty was echoed by speakers from the Global South, who pushed back against governance frameworks that risk being "exported rather than shared" .
- Dr. Joy Buolamwini's contribution introduced a more poetic and emotionally resonant register, grounding the technical discussion in the human cost of algorithmic harm and reminding participants of the people who bear the consequences of governance failures . This shifted the tone momentarily towards moral urgency before returning to the practical and policy-oriented register of the broader session.
- By the closing summaries, the tone became more forward-looking and hopeful, with both co-chairs emphasising shared foundations, the value of multi-stakeholder participation, and the importance of sustaining momentum between dialogues . Overall, the discussion balanced realism about the scale of the challenge with genuine optimism about the possibility of collective action.
Thematic Cluster 3: Safe, Secure, and Trustworthy AI - Interoperability and Compatibility of Approaches
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Opening and Framing
The inaugural UN Global Dialogue on AI Governance's Thematic Cluster 3 brought together governments, international organisations, industry, academia, and civil society to explore how diverse national AI governance frameworks can be made to work together across borders without requiring full harmonisation. The session's facilitator opened with a deliberately accessible analogy: just as travellers use electrical adapters to make their laptops and phones work across different national voltage systems, AI governance does not require every country to adopt the same regulatory system, but does require trusted interfaces and common standards that allow different approaches to connect . The facilitator also referenced WIPO's AI infrastructure interchange initiative as an existing example of interoperability work in the intellectual property domain, noting that helping different national legislation and systems work together is not a new challenge. The facilitator framed interoperability as essential, warning that without it, governance frameworks become fragmented, implementation becomes more complex and costly, trust is harder to build, and the benefits of AI become more difficult to realise and share .
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Co-Chair Paula Bogantes Zamora: The Real Interoperability Challenge
Co-chair Paula Bogantes Zamora of Costa Rica set a demanding intellectual tone from the outset, stating plainly that "the world does not need more AI principles - it needs a common way to prove they're being implemented" . She reframed the central challenge as not whether frameworks can coexist on paper, but whether safety, accountability, and trust can be demonstrated across borders . This provocation shifted the session's focus from principle-setting to verifiable implementation, a theme that persisted throughout the day.
Bogantes Zamora presented stark data on the concentration of AI development. In 2025, institutions in the United States produced 59 notable AI models and China 35, whilst the rest of the world produced only 13 . The United States held roughly 75% of the computing power among the 500 largest known AI clusters, with China holding another 15% . She drew a pointed structural conclusion from these figures: "concentration of infrastructure becomes concentration of evidence" . The countries and companies with the greatest computing capacity also have disproportionate influence over which risks are measured, which benchmarks are accepted, which languages are evaluated, and which institutions are recognised as capable of certifying safety . Furthermore, the preliminary scientific assessment indicated that 118 countries, mainly from the Global South, are not meaningfully engaged in the principal international discussions of AI governance, whilst fewer than 1% of the world's AI clusters and one-third of developing countries have national AI strategies .
Bogantes Zamora urged participants to resist two false choices. On one hand, interoperability must not mean regulatory uniformity, particularly when regions begin from profoundly different technological foundations - in 2025, 5G networks covered 70% of the population in Asia Pacific but only 12% in Africa, and in 2024, Africa extracted just 3% of global data centre investment . On the other hand, respect for national context must not become an excuse for systems that cannot communicate, compare evidence, or recognise one another's safeguards . The objective, she argued, must be minimum practical compatibility across terminology, risk classification, data protection, cybersecurity, documentation, testing, and incident reporting, whilst allowing countries to sequence implementation according to their institutional capacity .
She also highlighted language as a decisive test: the world has more than 7,000 languages, but AI training and evaluation cover only a fraction, and models often perform less safely in languages with limited digital data . From her region, this meant that Spanish variants, Portuguese, indigenous, and Creole languages cannot remain outside global evaluation frameworks . For agentic AI - systems that may act on behalf of people or institutions across multiple platforms - she argued that interoperability must extend beyond connecting systems to include verifiable agent identity, traceable delegation, machine-readable permissions, secure data exchange, auditable actions, and effective revocation . Estonia's Arawite initiative was cited as an emerging example of developing identity and registry frameworks so that states can interact with AI agents in a trustworthy and accountable way .
Bogantes Zamora proposed a concrete near-term target: "minimal viable interoperability" before the 2027 dialogue, encompassing shared terminology, comparable risk classifications, consistent documentation, interoperable incident reporting, and multilingual evaluation methods, with pathways towards mutual recognition of testing, auditing, and certification . She closed by attributing to co-chair Rebecca Finlay the insight that "adoption moves at the speed of trust", arguing that trust cannot be declared through principles alone but must be built through evidence, safeguards, institutional cooperation, and governance frameworks that can operate across borders .
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Co-Chair Rebecca Finlay: Three Concrete Actions
Co-chair Rebecca Finlay of the Partnership on AI built on the previous day's contributions from Secretary-General Guterres, who had stressed the importance of common baselines for frontier systems and common methods to verify them , and from Maria Ressa, who had positioned scientific evidence as the antidote to both fear-mongering and techno-utopianism . Finlay framed the scientific panel and the dialogue as two complementary parts of a shared mission: the panel provides the evidence and the dialogue provides the direction, designed to work together from the outset .
She recommended three concrete actions for the session and the year ahead . First, strengthen the independent scientific evidence base by investing in and connecting the work of the scientific panel, driving coherence by linking to other state-of-safety reports - including those from the UK, the Singapore Consensus, and the forthcoming Global South Safety Report - and deepening evaluation science globally . Second, prioritise and open up the science, arguing that transparency does not slow progress but makes it verifiable, credible, and worth defending . She called for stronger disclosure from private companies developing and deploying AI globally, and for building a coherent international assurance ecosystem in which benchmarks, standards, third-party evaluation, and verification turn individual disclosures into a field-wide evidence base . Third, advance progress in the public interest by defining a shared baseline of good practice inclusively, tracking progress against it, and using existing human rights frameworks as a measure . For the most severe risks and the most vulnerable groups, including children, she called for precautionary action based on the advice of independent experts .
Finlay also announced the launch of the Global AI Progress Hub, a public platform where organisations across the responsible AI ecosystem can share their progress against a clear framework serving the public interest . She proposed a reorientation of the field's guiding questions: instead of asking how fast a system can be deployed, ask who it serves, who is accountable when it fails, and how we know; instead of asking how powerful a system is, ask how verifiable its safety is and against what evidence .
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Scene-Setting: Amandeep Singh-Gill on Fragmentation and Interoperability
Under-Secretary-General and Special Envoy for Digital and Emerging Technologies Amandeep Singh-Gill - who acknowledged the presence of co-chair Ambassador Thamsar in the room - provided a scene-setting presentation linking the session's three themes: building safety and trust, enabling different governance approaches to work across borders, and the role of the dialogue in fostering interoperability . He noted that work through the AI Governance for Humanity Lab in Valencia had also produced evidence of the shift from static to dynamic system governance, particularly as agentic AI systems become more autonomous, tool-using, and multi-step . This rapid evolution can outpace existing governance practices, requiring adaptive and anticipatory mechanisms such as living risk taxonomies, control testing environments, and staged deployment .
Singh-Gill then explored the antonym of interoperability - fragmentation - identifying four structural challenges it creates . First, regulatory arbitrage, as developers and vendors may move activities to jurisdictions with weaker oversight, weakening safety, trust, and human rights protections . Second, accountability gaps, since AI systems operate through global value chains, making it difficult to determine applicable law or assign responsibility when harms occur . Third, increased compliance burdens, especially for SMEs, researchers, and developers from low-income countries who may lack the resources to navigate multiple regimes . Fourth, deepened uneven governance capacity and dependency, as lower-capacity states may be forced either to align with dominant frameworks that do not reflect local realities, or risk exclusion from global data flows, trade, and investment .
He proposed cross-border regulatory sandboxes as one practical pathway - connecting sandboxes from different environments to enable cross-border test pilots, model evaluations, and evidence sharing . Crucially, he emphasised that the objective is not to harmonise AI governance into a single model, but to build practical bridges across diverse approaches so that AI can be safe, secure, and trustworthy across borders . He described the UN dialogue as a new approach to international learning - not a top-down platform but a horizontal facilitation of safe, secure, trusted, and interoperable AI governance .
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First Panel: Existing Building Blocks and Practical Challenges
The first moderated panel, chaired by Professor Virginia Dignum of Umeå University, explored existing frameworks and the practical challenges of fragmentation. Dignum opened by framing AI as "a set of choices, technical, institutional and political", and interoperability as one of the clearest examples of such choices . Without shared evidentiary standards and mutually recognised approaches, she warned, parallel regimes risk neither protecting people nor allowing accountability to travel with the technology .
Yoichi Iida, adviser at Japan's Ministry of Economy, Trade and Industry, highlighted the OECD AI Principles and the Hiroshima AI Process as foundational instruments for interoperability . Japan had formulated its domestic guidelines and national AI law based on these principles, and the Hiroshima AI Process provides a code of conduct for AI organisations, including a voluntary framework for assessing and mitigating risks and disclosing relevant information on risk management . He described this as a bottom-up, multi-stakeholder approach . Practical cross-mapping work between the Hiroshima framework and the ASEAN framework for advanced AI models had revealed more commonalities than gaps, with most differences explained by cultural and social diversity rather than fundamental incompatibility .
Syed Ahmed of Infosys, speaking on behalf of the global systems integrator community, illustrated the practical complexity of interoperability from an industry perspective. He noted that even a concept like "transparency" carries different technical requirements across frameworks: in ISO, transparency means explainability of the model, whilst in the EU AI Act it means providing sufficient evidence including system logs . This means that mapping is not one-to-one even when the intent is broadly the same, and that effective interoperability requires going two to three levels down to map each of the controls required . He described an attempt to use AI to build a governance adapter that had failed at the high level, and proposed that the foundational work needed is to build a meta-model for controls mapping at the lowest level, creating a knowledge graph that can serve as the basis for interoperability .
Nouf Al Hameli, Special Adviser to the UAE Ministry of Foreign Affairs, addressed fragmentation from a cross-border perspective. She noted that "high-risk AI" does not mean the same thing to any two regulators, with the EU AI Act defining risk tiers largely by use case, the US approach being largely sectoral and voluntary, and other countries requiring algorithm registration and content labelling that do not map onto each other . A single model deployed globally can simultaneously be high-risk, lightly regulated, and require state filing depending on which border it crosses . She also identified the absence of shared incident reporting infrastructure as a critical gap: different incident monitors track failures independently and voluntarily, with no legal duty to report and no recognition between them, meaning that if a safety failure occurs in one country, there is no guaranteed path for that lesson to reach regulators elsewhere before the same failure recurs . She also drew attention to domestic sectoral fragmentation within countries - where AI in banking may be rigorously regulated because banking is already regulated, whilst equivalent risks in other sectors go unaddressed due to the absence of a pre-existing regulatory owner .
Melahat Bilge Demirkoz, a member of the UN AI Panel, drew on the panel's preliminary report to identify four structural challenges. First, an evidence dilemma: robust scientific evidence cannot keep pace with AI's rapid progress, and governance models are rarely tested independently - when tested, it is by the same companies developing the systems . Second, the need to shift from evaluating models alone to evaluating entire systems, including tools, environments, and users . Third, the lack of a unified independent evidence base outside the companies developing models, which undermines public trust and objective accountability . Fourth, unclear macroeconomic and innovation outcomes, with a critical gap in consistent data on how AI is affecting labour markets and productivity .
Leonardo Cervera Navas, Director General at the European Data Protection Supervisor, offered the EU's perspective on governance for what purpose. He cited the EU AI Act's legal basis in the Treaty on the Functioning of the European Union - governance for the protection of health and safety, and for the protection of privacy and other fundamental rights . He used the analogy of fire as humanity's first transformative technology: our ancestors developed two simple rules - always use fire with care, and never leave fire unsupervised - and exactly the same rules should apply to AI . The EU AI Act embodies this principle: the higher the risk, the higher the care and supervision required . In his closing remarks, he extended the analogy to civil aviation, arguing that the same basic safety rules apply everywhere in the world regardless of where a plane departs, and that agreeing on basic safety and ethical rules applied globally is what is needed to make AI a success for business and citizens .
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Interactive Activity and Transition
Between the two panels, the facilitator invited participants to turn to a person they did not know and identify one key priority on safe, secure, and trustworthy AI interoperability . This exercise was designed to surface ground-level priorities from the full diversity of participants, with responses to be collected on post-it notes and incorporated into the co-chairs' summary report . The second panel then moved from the "what" to the "how" - exploring what must actually be shared across borders so that safe, secure, and trustworthy AI can be governed in ways that are compatible and inclusive.
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Second Panel: Interoperability Building Blocks for Global Governance Infrastructure
The second panel, moderated by Rachel Adams, focused on three questions: what common foundations are already emerging; what practical steps governments, industry, and standards bodies can take now; and how countries and communities with fewer resources can be active shapers of global governance infrastructure .
Minister Seema Malhotra, Minister within the Foreign Office of the United Kingdom, described the UK's AI Security Institute as building scientific foundations for trustworthy AI through evaluation methodologies, testing, safeguards, and risk assessment, helping create a common evidence base for understanding the capabilities and risks of advanced AI systems . Through the growing network of AI safety and security institutes, countries are increasingly collaborating on evaluation approaches, technical research, and shared understanding of frontier AI risks . The UK also chairs the International Network for Advanced AI Measurement, Evaluation, and Science, recognising that trustworthy AI must depend on robust measurement, testing, and evaluation capabilities . She emphasised that AI must be tailored to local context, describing the UK's AI for Development Programme as building AI tools in more than 40 African languages and supporting 13 AI labs to develop locally led AI ecosystems .
Celeste Saulo, Secretary-General of the World Meteorological Organization, drew on WMO's 150-year experience of exchanging data across 193 countries to offer lessons for AI governance . She argued that trust does not come from speaking about trust - it must be built, and the key mechanism is verification: WMO has a long history of checking forecasts against reality to set standards for the quality of AI-driven and dynamical systems . When WMO's member National Meteorological and Hydrological Services were asked about AI opportunities and challenges, equitable access emerged as their main concern . She argued that institutions like WMO, with deep expertise in sharing data standards in a trustworthy manner, can help build the capacity every country needs to benefit from AI .
Qinghua Lu, a member of the UN AI Panel and researcher from CSIRO Australia, proposed two complementary approaches to international collaboration . A horizontal approach focused on mapping and connecting existing tools and standards, with dedicated working groups building connectors between different risk management frameworks, incident taxonomies, and evaluation metrics . A vertical approach focused on collaboration around specific technical challenges, such as the international network of AI safety institutes' joint testing exercise on multilingual capability testing, where a common methodology was used with each country focusing on different languages and results shared across countries . She also called for countries to agree on common risk management principles and to shift from static evaluation to dynamic governance, noting that benchmarking alone is insufficient for agentic systems that receive human instructions at runtime .
Ravin Thambapillai, Co-Founder and CEO of Crudel AI, offered a practitioner's perspective on how open-source technical standards can achieve rapid global adoption. He described the model context protocol (MCP), which went from announcement to global de facto standard in 18 months, adopted by every large AI research lab, enterprise, and AI company . The speed of adoption came from designing the specification around real-world implementation pain points, including governance challenges such as how to tell if an AI system is authorised to take an action and how to elicit human approval into the tool chain . He acknowledged that the MCP was not designed with the right authorisation frameworks from day one, requiring retrofitting , but argued that open-source governance standards that address real pain points, are available to all countries, and accelerate both AI benefits and governance frameworks simultaneously will be rapidly adopted by the industry .
Dr Joy Buolamwini, Founder of the Algorithmic Justice League, opened with a poem - "Unstable Desire" - to recentre the discussion on the people who are exploited, condemned, or otherwise harmed by AI systems . She then made two substantive points. First, that harm reporting must include not just the model and the failure but the purpose, the person, and their demographics, so that when the field moves from documenting harm to remedying harm, the architecture for remedy has been built into the system from the outset . Second, that misleading measures of success must be avoided: gold-standard benchmarks from institutions like the National Institute for Standards and Technology had historically represented less than 5% of the global majority, meaning that they proved to be pyrite . She called for learning from these failures to serve the "X-coded" and transform the atmosphere of innovation .
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Member State and Stakeholder Interventions
The two rounds of member state and stakeholder interventions reinforced and deepened the themes established in the panels. The Universal Postal Union highlighted that in the postal supply chain, one stakeholder's automated decision immediately affects others down the chain, making systemic risk an everyday operational reality rather than an abstract concern . It called for interoperability of governance approaches that goes beyond the level of principle to ensure common understanding of how concepts like transparency apply in specific sectors .
Latvia offered two concrete lessons from its own experience. First, whilst gathering data for an open EU multilingual AI model, it had to filter out millions of articles from coordinated disinformation networks infiltrating global AI models, yet there is no shared standard for training data origin and no channel to warn others . Second, the gap between dominant and underrepresented languages in leading AI models is widening, not narrowing, stripping away cultural heritage and costing several times more tokens when using AI in small languages . Latvia proposed three priorities: shared evaluation methods and open benchmarks reflecting linguistic and cultural diversity; minimum compatibility on data origin and incident reporting; and capacity building so every country can participate in evaluation as an equal partner .
Ernst & Young argued that good governance is not about compliance but about making sure AI systems operate in the right way, and that this is a shared interest of both business and society - nobody wants AI systems to fail, as this is bad for society and bad for the industry . Brazil emphasised that interoperability must not be confused with regulatory uniformity, that digital sovereignty is not digital isolation, and that the UN has a central role in ensuring developing countries participate not merely as rule-takers but as full co-participants in shaping the rules of AI governance .
France highlighted the Hiroshima AI Process, under which 56 enterprises signed up to common principles and practices for the governance of advanced AI systems , and called for independent evaluation of AI models before their rollout . Sam Gregory of Witness made a forceful argument that trustworthy AI is impossible without a trustworthy information environment, and that the erosion of shared reality through synthetic clones, faked conflict scenes, non-consensual sexual imagery, and the "liar's dividend" - where real events are dismissed as AI-generated - is a systemic safety risk, not merely an ethics issue . He called for interoperable authenticity infrastructure and content provenance standards built with privacy and human rights at their centre, and for a multi-stakeholder working group on content authenticity and information integrity on the road to the next UN meeting in New York .
The Center for Responsible AI at IIT called for structured AI incident reporting frameworks democratised at the grassroots level, establishing shared responsibilities throughout the AI value chain and enabling proactive, learning-oriented governance . The representative also noted, in a moment of unscripted candour, that the very fact they were presenting in place of their colleague demonstrated the difficulty of people from the Global South accessing governance forums, as their colleague had been unable to obtain a visa at short notice .
South Africa called for global frameworks that reflect not only the priorities of advanced economies but also the realities and needs of developing countries, noting that AI is being integrated into sensitive sectors including defence and national security at a scale and speed that have increased dramatically. It argued for governance frameworks that are inclusive in design, equitable in application, and supportive of technology transfer and capacity building .
The Mexican Society for Artificial Intelligence called for a new international instrument that prioritises interoperability with legally binding minimum mandatory standards truly applicable in all countries across all regions .
Japan's delegate described the Hiroshima AI Process as having advanced inclusive international governance through the development of guiding principles and a code of conduct as the first international norms for generative AI, with approximately 70 countries and regions including the Global South having endorsed these principles . Pakistan offered a direct counterpoint, arguing that safety norms are being set by a small number of states and firms through processes in which most of the world has no voice, and calling for safety norms to be developed through inclusive multilateral processes under the United Nations where all nations participate as equals . Pakistan also argued that the capacity to evaluate and govern AI must be treated as integral to safety itself, supported through shared tools, pooled expertise, and cooperation across regions .
The International Electrotechnical Commission described international standards as forming the link between normative layers - translating principles from international law and soft law into practical tools, giving governments a basis for national regulation and industry a common language . It also highlighted a distinct contribution that standards bodies can make to AI energy efficiency and infrastructure resilience, noting that reliable power and resilient data centre infrastructure are prerequisites for trustworthy AI deployment. The International AI Safety Report lead writer argued that frontier risks - including misuse for bioweapons, malfunctioning agentic systems, and systemic societal impact - cannot be dismissed as speculative and cannot be deferred indefinitely, and that across all these risks, methods for anticipating, measuring, and mitigating harms remain nascent .
Concordia AI warned that the rise of agentic AI is the defining narrative of the current moment, and that because AI agents can act directly upon the real world, their failures can cause severe harm before a human can intervene . It drew an analogy to autonomous driving safety levels, arguing that as AI agents become increasingly autonomous, safety standards must strengthen accordingly . It also noted that when autonomous systems fail, consequences do not stop at national borders - a malfunction in one country can disrupt shared infrastructure, supply chains, or public safety elsewhere . Concordia AI further observed that through its AI Plus initiative, China aims to deploy agentic AI across key sectors in the economy in the next five years, whilst simultaneously advancing national safety guidelines and binding standards at a pace of innovation.
Australia called for building on existing international work rather than creating frameworks from scratch, noting that a one-size-fits-all approach to AI governance will not be effective, and that responsible AI is not a one-off task but a continuous process of governance, monitoring, adaptation, and improvement . Lithuania argued that trust rests on three pillars: ensuring AI stays human-centred and grounded in democratic values; ensuring AI is secured and resilient by design; and ensuring interoperability and compatibility of approaches . Lithuania also highlighted the Council of Europe's Framework Convention on Artificial Intelligence, Human Rights, Democracy, and the Rule of Law - the Vilnius Convention - as a major milestone in establishing binding standards for AI governance.
The Global Cities Hub called for local and regional governments to be recognised as a distinct governance actor alongside national governments, industry, academia, and civil society, arguing that cities and regions represent a still-missing governance layer that holds direct responsibilities in sectors where AI impacts are most visible - and are experienced first and most visibly by two-thirds of the global population . The Dubai Cable representative argued that once an AI agent is authorised to act, the line between a policy document and a production incident becomes very thin, and posed three questions that apply in every governance context: what can this agent do without a human in the loop; what happens the moment it does something we did not anticipate; and who, by name and by role, is accountable for the outcome . Accountability, the representative argued, must be engineered before deployment, with permissions, oversight, and audit trails designed in from the start.
Bangladesh called for a comprehensive governance framework combining binding legal obligations with ethical standards; inclusive and representative global AI governance; humans remaining in the loop for high-impact decisions; risk-based and innovation-friendly regulatory approaches including regulatory sandboxes; and the continuation of this dialogue to bring people across the table. Ethiopia noted that the African Union has designated Prime Minister Dr Abiy Ahmed as champion for AI and digital health, reflecting the continent's commitment to shaping AI governance from within. The UN Resident Coordinator Office drew attention to AI's growing demands for energy and water, arguing that these resource implications should inform discussions at COP31 and at the 2026 UN Water Summit.
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Closing Summaries
Rebecca Finlay's closing summary identified five key takeaways from the discussion . First, safety frameworks are too often developed without the evidence needed to shape them, making the work of the scientific panel and other efforts to strengthen scientific consensus critically important . Second, a shared minimum baseline building on existing global frameworks is needed - not sufficient on its own, but a necessary foundation, and to a large extent it already exists through global commitments, international law, the dialogue, the Hiroshima process, and AI summit pledges . Third, interoperability is a necessary but not sufficient condition for safety and security; it should rest on essential principles such as human rights, be grounded in strong scientific foundations, and reflect frameworks developed not only by a few powerful nations but by the world's majority . Fourth, inclusion and openness must be at the heart of the approach, meaning open benchmarks, linguistic diversity, and infrastructure for open science and technical standards that reflect global needs . Fifth, trust must be built through verifiability fostered through independent third-party testing, disclosure across the AI value chain, and incident reporting .
Finlay also emphasised two critical aspects for the dialogue's success: multi-stakeholder participation is not a nice-to-have but a necessity for the legitimacy of governance efforts, requiring meaningful participation including ensuring visa processes allow individuals from global communities to attend ; and greater continuity and action between dialogues is needed so that progress does not pause between summits and restart from scratch each time .
Paula Bogantes Zamora's closing summary synthesised the session's practical conclusions . Effective AI governance will depend not on uniformity but on the ability to connect different approaches through shared standards, evidence, safeguards, and cooperation, whilst preserving national context and ensuring meaningful participation from all countries . She highlighted that AI governance must evolve from static rules towards adaptive systems capable of responding to increasingly autonomous and multi-step AI ; that regulatory fragmentation creates compliance burdens, accountability gaps, and regulatory arbitrage, disproportionately affecting countries with limited institutional capacity ; that compatible governance approaches should connect different frameworks through shared technical standards without imposing a single regulatory model or undermining national autonomy ; that cross-border regulatory sandboxes can test AI applications under joint supervision before wider deployment ; that common definitions and granular mapping between legal requirements, technical controls, and compliance evidence are essential ; that shared incident reporting mechanisms can ensure that lessons from failures in one jurisdiction prevent repeated harms elsewhere ; that trustworthy AI requires human oversight, transparency, accountability, and independent evaluation throughout the entire system lifecycle ; that evaluation frameworks must reflect linguistic, cultural, and demographic diversity ; that open standards, shared methodology, and executable reference frameworks can accelerate adoption and strengthen international cooperation when they address real implementation challenges ; and that information integrity, content provenance, and deepfake safeguards require compatible approaches grounded in privacy and human rights .
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Overall Assessment
The session demonstrated a remarkably high level of consensus across a diverse range of participants on the broad parameters of a compatible AI governance architecture - one that is inclusive, evidence-based, risk-proportionate, and built on existing frameworks. Beneath this surface consensus, however, significant tensions remained: between G7-led voluntary processes and calls for binding UN-led multilateral standards; between embedding governance from the start of AI development and applying it dynamically at runtime; between the claims of existing processes to be inclusive and the evidence that 118 countries remain largely excluded from principal governance discussions ; and between the urgency of addressing information integrity as a foundational safety issue and its treatment as one concern among many. The most consequential structural insight to emerge - that computational concentration creates epistemic concentration, determining who defines safety for the world - ran as an undercurrent through interventions from the Global South, civil society, and the scientific panel alike, and ultimately shaped the co-chairs' emphasis on inclusive, open, and independently verified governance as non-negotiable conditions for trustworthy AI .
Interoperability as essential alternative to harmonisation - AI governance need not be uniform, but different national frameworks must be able to communicate and work together across borders
Arg. 1The facilitator argues that just as different electrical systems around the world are made compatible through adapters and common standards rather than uniformity, AI governance faces the same challenge. Countries will continue to develop different laws and regulatory traditions, making full harmonisation neither realistic nor necessary. However, interoperability — enabling different approaches to communicate and work together — is essential.
The facilitator used the analogy of different electrical systems, plug shapes, and voltages across countries, noting that laptops and phones still work safely when travelling not because every country uses the same system, but because adapters, common standards, and trusted interfaces have been developed . The facilitator explicitly stated that harmonisation is neither realistic nor entirely necessary, but interoperability is essential, and that without it governance frameworks become fragmented, implementation becomes more complex and costly, trust is harder to build, and the benefits of AI become more difficult to realise .
on: Interoperability, not harmonisation, is the appropriate goal for AI governance
Interoperability as a practical implementation challenge - the real challenge is not whether frameworks can coexist on paper, but whether safety, accountability, and trust can be demonstrated across borders
Arg. 1Paula Bogantes Zamora argues that the world does not need more AI principles but rather a common way to prove they are being implemented. The real interoperability challenge is demonstrating safety, accountability, and trust across borders in practice, not merely having frameworks that coexist theoretically.
She stated directly that 'the world does not need more AI principles. It needs a common way to prove they're being implemented' and framed the challenge as 'not whether frameworks can coexist on paper, but whether safety, accountability, and trust can be demonstrated across borders' .
on: Interoperability, not harmonisation, is the appropriate goal for AI governance
Concentration of AI infrastructure leads to concentration of evidence and influence over which risks are measured and which benchmarks are accepted
Arg. 2Bogantes Zamora argues that the extraordinary concentration of AI development in a small number of countries means that those with the greatest computing capacity also have disproportionate influence over global AI governance norms. This includes determining which risks are measured, which benchmarks are accepted, which languages are evaluated, and which institutions are recognised as capable of certifying safety.
She cited that in 2025, institutions in the United States produced 59 notable AI models and China produced 35, while the rest of the world produced only 13 . The United States held roughly 75% of the computing power among the 500 largest known AI clusters, with China holding another 15% . She concluded that 'concentration of infrastructure becomes concentration of evidence' .
118 countries, mainly from the Global South, are not meaningfully engaged in principal international AI governance discussions
Arg. 3Bogantes Zamora highlights the severe lack of participation from the majority of the world's countries in international AI governance discussions. This exclusion is compounded by the fact that fewer than 1% of the world's AI clusters are located outside the dominant countries, and one-third of developing countries lack national AI strategies.
She cited a preliminary scientific assessment indicating that 118 countries, mainly from the Global South, are not meaningfully engaged in the principal international discussions of AI governance, while fewer than 1% of the world's AI clusters and one-third of developing countries have national AI strategies .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
on: Whether safety standards should be developed through existing bodies such as OECD and G7 or through new inclusive UN-led multilateral processes
Interoperability must connect not only systems but identities, mandates, and chains of responsibility, especially for agentic AI
Arg. 4Bogantes Zamora argues that as AI systems become more agentic — acting on behalf of people or institutions across multiple platforms — interoperability must extend beyond technical system compatibility to include verifiable agent identity, traceable delegation, machine-readable permissions, and effective revocation. Future interoperability must connect not only systems and rules but also identities, mandates, and chains of responsibility.
She cited Estonia's Arawite initiative as an example of this emerging frontier, noting it is developing identity and registry frameworks, interoperability standards, legal recommendations, and a public sector pilot so that states can interact with AI agents in a trustworthy and accountable way . She specified that agentic AI interoperability must include verifiable agent identity, traceable delegation, machine-readable permissions, secure data exchange, auditable actions, and effective revocation .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
A practical starting point of minimal viable interoperability should advance shared terminology, comparable risk classifications, consistent documentation, interoperable incident reporting, and multilingual evaluation methods before 2027
Arg. 5Bogantes Zamora proposes a concrete and achievable starting point called 'minimal viable interoperability', which focuses on advancing specific practical elements before the 2027 dialogue. This approach prioritises shared terminology, comparable risk classifications, consistent documentation, interoperable incident reporting, and multilingual evaluation methods, while building pathways towards mutual recognition of testing, auditing, and certification.
She explicitly proposed that before the 2027 dialogue, progress should be made on shared terminology, comparable risk classifications, consistent documentation, interoperable incident reporting, and multilingual evaluation methods, while building pathways towards mutual recognition of testing, auditing, and certification .
on: Shared incident reporting mechanisms are essential for ensuring lessons from AI failures in one jurisdiction prevent repeated harms elsewhere
on: Whether interoperability should aim for full compatibility or only selective and deliberate compatibility of the most critical components
AI training and evaluation cover only a fraction of the world's 7,000 languages; models often perform less safely in languages with limited digital data
Arg. 6Bogantes Zamora identifies language as a decisive test for interoperability, noting that the vast majority of the world's languages are excluded from AI training and evaluation. This creates safety risks as models perform less reliably in underrepresented languages, and means that languages from Latin America and other regions cannot remain outside global evaluation frameworks.
She noted that the world has more than 7,000 languages but AI training and evaluation cover only a fraction, and that models often perform less safely in languages with limited digital data . She specifically mentioned that Spanish variants, Portuguese, indigenous, and Creole languages from her region cannot remain outside global evaluation frameworks .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
Evaluation frameworks must reflect linguistic, cultural, and demographic diversity, including communities underrepresented in current global benchmarks
Arg. 7Bogantes Zamora argues that for AI governance interoperability to be meaningful, evaluation frameworks must be designed to capture the full diversity of the world's languages, cultures, and demographics. This is particularly important for high-risk AI applications in health, justice, and public administration that cannot be responsibly transferred or scaled if countries use incompatible definitions and documentation requirements.
She highlighted that a health system, judicial tool, or public sector algorithm cannot be responsibly transferred, evaluated, or scaled if countries use incompatible definitions of risks, documentation requirements, or audit results . She proposed that before 2027, multilingual evaluation methods should be advanced as part of minimal viable interoperability .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
Trustworthy AI requires human oversight, transparency, accountability, and independent evaluation throughout the entire system lifecycle
Arg. 8Bogantes Zamora argues that trust in AI cannot be declared through principles alone but must be built through evidence, safeguards, institutional cooperation, and governance frameworks that can operate across borders. She emphasises that adoption moves at the speed of trust, and that this trust must be demonstrated through practical verifiability.
She recalled the point made by her co-chair Rebecca Finlay that 'adoption moves at the speed of trust' , and argued that trust cannot be declared through principles alone but must be built through evidence, safeguards, institutional cooperation, and governance frameworks that can operate across borders .
on: Human oversight and accountability must be built into AI systems by design, not added after incidents
on: Whether AI governance should be built into AI use cases from the start or kept separate and applied dynamically at runtime
Fragmentation as the antonym of interoperability - global fragmentation creates regulatory arbitrage, accountability gaps, increased compliance burdens, and deepens uneven governance capacity
Arg. 1Singh-Gill frames fragmentation as the opposite of interoperability and identifies four structural challenges it creates. These include regulatory arbitrage where developers move to jurisdictions with weaker oversight, accountability gaps due to global value chains, increased compliance burdens especially for SMEs and low-income country developers, and deepened governance capacity inequality where lower-capacity states are forced to align with dominant frameworks or risk exclusion.
He outlined four specific structural challenges of fragmentation: regulatory arbitrage as developers move to jurisdictions with weaker oversight ; accountability gaps since AI systems operate through global value chains making it difficult to assign responsibility ; increased compliance burdens especially for SMEs, researchers, and developers from low-income countries ; and fragmentation deepening uneven governance capacity and dependency .
on: Interoperability, not harmonisation, is the appropriate goal for AI governance
Governance must evolve from static model oversight to dynamic system governance as agentic AI systems become more autonomous, tool-using, and multi-step
Arg. 2Singh-Gill highlights that the scientific panel's report emphasised a shift from static to dynamic system governance, which is also supported by evidence from the AI Governance for Humanity Lab. As agentic AI systems become more autonomous and multi-step, existing governance practices risk being outpaced, requiring more adaptive and anticipatory mechanisms.
He referenced the scientific panel's report presented the previous day, which emphasised the shift from static to dynamic system governance , and noted that work through the AI Governance for Humanity Lab in Valencia also turned up evidence of this shift . He specified that effective governance will need mechanisms such as living risk taxonomies, control testing environments, and staged deployment .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
on: Whether AI governance should be built into AI use cases from the start or kept separate and applied dynamically at runtime
Regulatory sandboxes connecting different environments can test AI applications under joint supervision before wider deployment, enabling cross-border test pilots and evidence sharing
Arg. 3Singh-Gill proposes cross-border regulatory sandboxes as a practical pathway for reinforcing interoperability. By connecting regulatory sandboxes from different environments, countries can test AI applications under regulatory supervision before wide deployment, enabling cross-border test pilots, model evaluations, and evidence sharing without requiring a single governance model.
He described this as one of several 'pathways' for reinforcing interoperability, deliberately called so because they are not prescriptive recommendations but practical guideposts for cooperation . He specifically proposed establishing connections between regulatory sandboxes to enable cross-border test pilots, model evaluations, and evidence sharing .
Good governance as the foundation for interoperability - interoperability can live at the implementation stage and should be rooted in ensuring AI functionally delivers what is needed, not merely compliance
Arg. 1The EY Representative argues that interoperability does not require all countries to regulate AI in exactly the same way, but can be achieved at the implementation stage through shared technical standards and a focus on functional outcomes. Good governance is not about compliance but about ensuring AI systems operate in the way they were meant to, which is a shared interest of both business and society.
The representative noted that as a global firm operating in virtually every country and supporting both AI adoption and auditing, EY sees strong demand for interoperability between different governance approaches . The representative argued that good governance is not about compliance but about making sure AI systems are really being used in the right way, and that this can be a core basis for interoperability .
on: Interoperability, not harmonisation, is the appropriate goal for AI governance
Selective and deliberate compatibility of the most critical components is a more realistic goal than full compatibility
Arg. 1Al Hameli argues that full compatibility in interoperability does not need to be the goal, and that a more realistic and effective approach is to focus on selective and deliberate compatibility of the components that matter most for most nations. She grounds this in three principles the UAE uses: trust between partner nations as a precondition, credibility through verifiable accountability, and sovereignty respecting different starting points.
She stated that 'full compatibility in our interoperability... doesn't need to be the goal' and proposed working on 'selective and deliberate compatibility of the components that matter the most for most nations' as a good starting point . She outlined three UAE principles: trust between partner nations as a precondition for any shared framework , credibility ensured by verifiable accountability , and sovereignty respecting that states have different starting points and paths .
on: Interoperability, not harmonisation, is the appropriate goal for AI governance
on: Whether interoperability should aim for full compatibility or only selective and deliberate compatibility of the most critical components
Shared incident reporting mechanisms can ensure that lessons from failures in one jurisdiction prevent repeated harms elsewhere; currently there is no legal duty to report or recognition between incident monitors
Arg. 2Al Hameli identifies the absence of shared incident reporting infrastructure as a critical gap in current AI governance. Different incident monitors track failures independently and voluntarily, with no legal duty to report or recognition between them, meaning that safety failures in one country have no guaranteed path to reach regulators elsewhere before the same failure recurs.
She noted that governance frameworks are multiplying faster than the evidence base underneath them, and that there is no shared incident reporting infrastructure, with different incident monitors tracking failures independently and voluntarily . She highlighted that if a safety failure occurs in one country, there is no guaranteed path for that lesson to reach regulators elsewhere before the same failure recurs somewhere else .
on: Shared incident reporting mechanisms are essential for ensuring lessons from AI failures in one jurisdiction prevent repeated harms elsewhere
ISO standards such as ISO 22982 and existing AI standard exchange databases can serve as starting blocks, but mapping must go several levels deep to align individual controls, not just high-level intent
Arg. 1Syed Ahmed argues that while existing standards like ISO 22982 or the EU AI Act can serve as starting points for interoperability, the real challenge lies in building adapters that cover the entire breadth of regulations. High-level intent may be similar across frameworks, but the specific controls required differ significantly, requiring mapping two to three levels deep beyond surface-level alignment.
He used the example of 'transparency' to illustrate the challenge: in ISO, transparency means a model needs to be explainable, while in the EU AI Act it means providing sufficient evidence and system logs - the same intent but not a one-to-one mapping . He described Infosys's attempt to use AI to build an adapter mapping standards, which failed because the mapping needed to go two to three steps down to align individual controls .
Separation of AI governance from AI use cases is necessary because governance must be dynamic and cannot be static
Arg. 2Syed Ahmed argues against building AI governance into AI use cases from the start, because governance must be dynamic and cannot assume the same rules will hold over time. Instead, he proposes a separation of AI governance from AI use cases, with a central repository of policies that can be applied and enforced at runtime.
He argued that governance has become more dynamic and cannot be static, and that rules set at the start of a use case cannot be assumed to hold even one month later given how fast things are changing . He proposed building a central repository of policies that can be applied and enforced at runtime, separating AI governance from AI use cases effectively .
on: Whether AI governance should be built into AI use cases from the start or kept separate and applied dynamically at runtime
Common definitions and granular mapping between legal requirements, technical controls, and compliance evidence are essential; mapping must go two to three levels deep beyond high-level intent
Arg. 3Ahmed argues that a shared taxonomy alone is insufficient for interoperability and that what is needed is a meta-model for controls mapping at the lowest level, built into a knowledge graph that can serve as a foundation for interoperability models. The compliance burden on globally operating companies is immense because regulations interact not only with each other but also with other tech regulations across geographies.
He described the compliance burden on a company like Infosys that operates globally, noting that AI regulations must be interoperable with other tech regulations like GDPR and DORA across multiple geographies . He proposed that the committee should invest in building a meta-model for controls mapping at the lowest level and a knowledge graph that can serve as a foundation for interoperability models .
on: Whether AI evaluation should focus on models alone or on entire systems including tools, environments, and users
The scientific panel and the dialogue are two parts of a shared mission: the panel provides evidence and the dialogue provides direction
Arg. 1Finlay argues that the independent scientific panel and the global dialogue are complementary and designed to work together from the outset. The panel provides the evidence base while the dialogue provides the direction, and together they form a shared mission for safe, secure, and trustworthy AI.
She referenced Secretary General Guterres's emphasis on common baselines for frontier systems and common methods to verify them , and Maria Ressa's grounding of her address in real-world examples positioning scientific evidence as the antidote to both fear-mongering and techno-utopianism . She stated clearly that 'the panel provides the evidence. The dialogue provides the direction. Evidence and deliberation designed to work together from the outset' .
on: A shared, independent scientific evidence base is essential for trustworthy AI governance
An independent evidence base must be strengthened, disclosure from private companies must be improved, and individual disclosures must be turned into a field-wide evidence base through benchmarks, standards, and third-party evaluation
Arg. 2Finlay proposes three concrete actions: strengthening the independent scientific evidence base, opening up the science through transparency, and advancing progress in the public interest. She argues that transparency does not slow progress but makes it verifiable and credible, and that disclosure alone is insufficient without a system of benchmarks, standards, and third-party evaluation to make sense of it.
She recommended investing in and connecting the work of the scientific panel, driving coherence by connecting to other state of safety reports including from the UK, the Singapore consensus, and the forthcoming Global South Safety Report . She argued that disclosure alone is not enough and that without benchmarks, standards, third-party evaluation, and verification, individual disclosures cannot be turned into a field-wide evidence base that can be trusted .
on: A shared, independent scientific evidence base is essential for trustworthy AI governance
AI systems must be built inclusively, governed accountably, and operated fairly, transparently, reliably, and securely, asking who a system serves and who is accountable when it fails
Arg. 3Finlay argues that closing the gap between innovation and accountability requires asking fundamentally different questions than those currently driving the field. Instead of asking how fast a system can be deployed or how powerful it is, the focus should be on who it serves, who is accountable when it fails, and how verifiable its safety is.
She proposed reframing the questions driving the field: instead of 'how fast can we deploy this', asking 'who does it serve, who is accountable when it fails, and how do we know?'; and instead of 'how powerful is this system', asking 'how verifiable is this system's safety and against what evidence?' . She stated that 'AI systems must be built inclusively, governed accountably, and operated fairly, transparently, reliably, and securely' .
A shared minimum baseline building on existing global frameworks, international law, and existing dialogue commitments must be consolidated, shared, and made implementable and adaptable to regional contexts
Arg. 4Finlay argues that a shared minimum baseline already exists to a large extent through global commitments, international law, the dialogue, the Hiroshima process, the G7, and pledges from AI summits. What is needed now is to consolidate, share, and further develop these so they are implementable and adaptable to regional contexts.
She stated that 'we have global commitments. We have international law. We have this dialogue, the Hiroshima process, the G7, and the body of pledges from the AI summits to date' . She argued that what is needed is to consolidate, share, and further develop them so that they are implementable and adaptable to regional context .
on: Existing international frameworks should serve as building blocks for AI governance interoperability rather than being replaced by new frameworks
Multi-stakeholder participation is not a nice-to-have but a necessity for the legitimacy of governance efforts; meaningful participation must include ensuring visa processes allow individuals from global communities to attend
Arg. 5Finlay argues that multi-stakeholder participation is essential for the legitimacy and success of AI governance efforts, not merely a desirable feature. She emphasises that meaningful participation must be sustained and further supported, including addressing practical barriers such as visa processes that prevent individuals from global communities from attending.
She stated that 'multi-stakeholder participation is not a nice to have. It is a necessity for the legitimacy of our efforts and the success of our goals' . She specifically mentioned the importance of ensuring visa processes so that individuals can participate from global communities , referencing the earlier point made by the Center for Responsible AI representative about a colleague being unable to attend due to visa difficulties.
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
The Global AI Progress Hub provides a public platform where organisations can share progress against a clear framework serving the public interest, helping close the gap between innovation and accountability
Arg. 6Finlay announces the Global AI Progress Hub as a concrete initiative by the Partnership on AI to advance progress in the public interest. This public platform allows organisations across the responsible AI ecosystem to share their progress against a clear framework, helping to close the gap between innovation and accountability.
She announced that the Partnership on AI had announced the Global AI Progress Hub that week, describing it as 'a public platform where organizations across the responsible AI ecosystem can share their progress against a very clear framework that serves the public interest' . She argued that no single country, government, nonprofit, or research institution can determine on its own what safe, secure, and trustworthy AI looks like .
OECD AI Principles and the Hiroshima AI Process as foundational instruments for interoperability, providing a voluntary multi-stakeholder framework for risk assessment, mitigation, and disclosure
Arg. 1Iida argues that the OECD AI Principles serve as a foundational instrument for interoperability because they are high-level value-based principles that have already been used as the basis for domestic guidelines and national AI law in Japan. The Hiroshima AI Process builds on these principles to provide a voluntary framework for AI organisations to assess and mitigate risks and disclose relevant information.
He noted that Japan formulated its domestic guidelines and national AI law based on OECD AI Principles , and that the Hiroshima AI Process provides a code of conduct for AI organisations including developers, offering a voluntary framework for risk assessment, mitigation, and disclosure . He described these frameworks as 'a very ambitious multi-stakeholder approach for collaborative governance' and a 'bottom-up approach for the governance' .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
on: Whether safety standards should be developed through existing bodies such as OECD and G7 or through new inclusive UN-led multilateral processes
Cross-mapping between national and regional frameworks such as the HITE framework and ASEAN framework reveals more commonalities than gaps, with differences often explained by cultural diversity
Arg. 2Iida reports on practical cross-mapping work between Japan's HITE framework and the ASEAN framework for advanced AI models, which found more commonalities than gaps. Where gaps were found, many could be explained by differences in social or cultural aspects across individual jurisdictions, suggesting that similar cross-mapping work could be applied to other combinations of national or regional frameworks.
He described ongoing work with Singapore and ASEAN countries on cross-mapping between the HITE framework and the ASEAN framework for advanced AI models . The cross-mapping found some gaps but a much bigger number of commonalities, and in most cases where gaps were found, many could be explained by differences in social or cultural aspects from individual jurisdictions .
Robust scientific evidence cannot keep pace with AI's rapid progress, and governance models are tested, if at all, by the same companies developing the systems
Arg. 1Demirkoz identifies an 'evidence dilemma' where scientific evidence cannot catch up with AI's rapid progress, as AI capacity doubles every few months. By the time evidence of real harm or capability is compiled, technology has already passed beyond current governance models. Additionally, the 40 different governance models and ethical guidelines documented are highly fragmented and rarely tested, and when tested, it is by the same companies developing the systems.
She stated that 'robust scientific evidence cannot catch up with how fast AI is progressing because it doubles, the capacity doubles every few months and by the time we have evidence, real harm or its capacity is compiled and Technology has already passed beyond current governance models' . She noted that the panel documented 40 different governance models and ethical guidelines, finding them highly fragmented and rarely tested, and when tested, tested by the same companies developing them .
on: A shared, independent scientific evidence base is essential for trustworthy AI governance
Evaluation frameworks must shift from evaluating models alone to evaluating entire systems, including tools, environments, and users
Arg. 2Demirkoz argues that AI evaluation should not focus solely on models but should adopt a broader approach that looks at the interoperability of tools, environments, and users as well. The lack of unified independent evidence outside of the companies developing these models undermines public trust and objective accountability.
She stated that 'we should shift from evaluating just models to evaluating systems' and that because there is a lack of unified independent evidence outside of the companies developing these models, this undermines public trust and objective accountability .
on: Whether AI evaluation should focus on models alone or on entire systems including tools, environments, and users
Developing nations face the steepest costs of fragmentation as frontier models and compute are concentrated in just two countries
Arg. 3Demirkoz argues that developing nations bear the greatest cost of AI governance fragmentation because frontier models and computing power are concentrated in just two countries. The Global South risks being locked out entirely because they lack localised infrastructure and a common global evidence base they can use.
She stated that 'developing nations face the steepest cost of this fragmentation as frontier models are based and compute is concentrated in just two countries around the world' . She noted that the Global South risks being locked out completely because they don't have localised infrastructure and a common global evidence base .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
The global south risks being locked out because they lack localised infrastructure and cannot inspect, audit, or culturally tailor models to their own needs
Arg. 4Demirkoz argues that regions in the Global South are reliant on technologies for which they lack domestic capabilities, meaning they cannot inspect, audit, or culturally tailor AI models to their own needs. This dependency creates a fundamental governance challenge as these regions cannot meaningfully participate in shaping the AI systems that affect them.
She stated that these regions 'are reliant on technologies which they lack domestic capabilities of, so they cannot inspect, audit, or culturally tailor these models to their own needs' . She also highlighted that vulnerable populations such as children and women, as well as civil society and democratic frameworks, are being damaged by AI harms including AI-generated child sexual abuse, deepfake-enabled sexual violence, and automated disinformation .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
Civil society and democratic frameworks are being damaged by erosion of shared reality and undermining of democratic legitimacy through automated disinformation and AI-generated content
Arg. 5Demirkoz highlights that beyond individual harms, AI is causing systemic damage to civil society and democratic frameworks through the erosion of shared reality and the undermining of democratic legitimacy. Automated disinformation and AI-generated content are key drivers of this damage.
She stated that 'civil society and democracies, democratic frameworks, are also being damaged. There is an erosion of shared reality as well as an undermining of the democratic legitimacy due to automated disinformation and AI-generated content' . She also referenced the Secretary General's point about mental health impacts from sycophantic chatbot behaviours .
on: Information integrity and the erosion of shared reality by AI-generated content is a systemic safety risk requiring interoperable governance responses
The higher the risk, the higher the care and supervision required; AI must always be used with care and never left unsupervised, analogous to the rules governing fire
Arg. 1Cervera Narvas argues that AI governance should follow a principle-based risk approach where higher risk requires higher care and supervision. He uses the analogy of fire — humanity's first transformative technology — to illustrate that even the most powerful technologies can be governed safely through simple but consistently applied rules.
He used the analogy of controlled fire as the first transformative technology of humankind, noting that ancestors developed two simple rules: always use fire with care, and never leave fire unsupervised . He argued that exactly the same rules should apply to AI, and that the EU AI Act has established a principle-based rule where 'the higher the risk, the higher the care and the supervision' .
on: Human oversight and accountability must be built into AI systems by design, not added after incidents
on: Whether interoperability should aim for full compatibility or only selective and deliberate compatibility of the most critical components
High-impact automated decisions must remain under clear human accountability and be traceable and contestable, as there is no scientific guarantee that autonomous agents will follow their instructions
Arg. 1The UPU Representative argues that in the postal supply chain, one stakeholder's automated decision immediately affects others down the chain, making accountability and oversight critical. The scientific panel's caution that there is no guarantee autonomous agents will follow their instructions means that accountability and oversight must be built by design, not reconstructed from failure.
The representative noted that in the postal supply chain, 'one stakeholder's automated decision, a customs flag, a routine choice, a risk score, immediately affects others down the chain' and that what the report describes as systemic risk is 'an everyday operational reality' for the UPU . The representative cited the panel's caution that 'there is no scientific guarantee that autonomous agents will follow their instructions and that evidence of them departing is already accumulating' .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
The gap between dominant and underrepresented languages in leading AI models is widening, not narrowing, which strips away cultural heritage and costs more tokens for small-language users
Arg. 1The Latvia Representative argues that the gap between dominant and underrepresented languages in AI models is widening rather than narrowing, which has both cultural and practical consequences. For users of small languages, AI costs several times more tokens, creating an economic disadvantage on top of the cultural loss.
The representative stated that 'evidence confirms that gap between dominant and underrepresented languages in leading AI models are widening, not narrowing' and that this 'strips away cultural heritage and context, but it also costs several times more tokens when using AI in small languages' . As a positive example, the representative cited an EU-supported open-weight model that achieved equality across more than 30 EU languages .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
Open benchmarks reflecting linguistic and cultural diversity and capacity building so every country can participate as an equal partner in evaluation are essential priorities
Arg. 2The Latvia Representative proposes three priorities: shared evaluation methods and open benchmarks reflecting linguistic and cultural diversity; minimum compatibility on data origin and incident reporting including data integrity incidents; and capacity building so every country can participate in evaluation as an equal partner.
The representative proposed three specific priorities: shared evaluation methods and open benchmarks reflecting linguistic and cultural diversity; minimum compatibility on data origin and incident reporting including data integrity incidents; and capacity building so every country can participate in the evaluation as an equal partner .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
Poisoned training data silently distorts facts and worldviews, yet there is no shared standard for training data origin and no channel to warn others
Arg. 3The Latvia Representative highlights the threat of poisoned training data as a concrete information integrity challenge, noting that coordinated disinformation networks can infiltrate global AI models through training data. Despite this risk, there is currently no shared standard for training data origin and no channel to warn others when such contamination is discovered.
The representative described gathering data for an open EU multilingual AI model and having to filter out millions of articles from a coordinated disinformation network infiltrating global AI models . The representative noted that 'poisoned training data silently distorts essential facts, and downstream, the worldview built on them. Yet there is no shared standard for training data origin, and no channel to warn others' .
on: Information integrity and the erosion of shared reality by AI-generated content is a systemic safety risk requiring interoperable governance responses
AI is eroding the shared sense of reality through synthetic clones, faked conflict scenes, non-consensual sexual imagery, and the liar's dividend where real events are dismissed as AI-generated
Arg. 1Sam Gregory argues that AI is already causing widespread harm through the erosion of shared reality, which he identifies as a systemic safety risk rather than merely an ethics issue. Through Witness's work with frontline civil society and media, he observes synthetic clones impersonating public figures, faked scenes from conflict zones, non-consensual sexual imagery targeting women and girls, and the 'liar's dividend' where real events are dismissed as AI-generated.
He described Witness's global deepfakes rapid response force and work with human rights defenders and journalists worldwide, observing 'synthetic clones, impersonating public figures, faked scenes from conflict zones and relentless non-consensual sexual imagery targeting women and girls' and 'the liar's dividend the panel names real events waved away with the mere claim of ai' . He cited the independent scientific panel's conclusion that 'AI is eroding our shared sense of reality' .
on: Information integrity and the erosion of shared reality by AI-generated content is a systemic safety risk requiring interoperable governance responses
Trustworthy AI is impossible without a trustworthy information environment; erosion of information integrity is a systemic safety risk, not merely an ethics issue
Arg. 2Gregory argues that information integrity must be treated as a systemic cross-border risk and a core focus for interoperability, not just an ethical concern. When people can no longer tell what is real, every other safeguard built rests on sand, making a trustworthy information environment a prerequisite for trustworthy AI.
He stated that 'trustworthy AI is impossible without a trustworthy information environment and that erosion is a systemic safety risk not just an ethics issue' . He argued that 'when people can no longer tell what is real every other safeguard we build rests on sand' and that this deserves attention as the systemic cross-border risk it is .
on: Information integrity and the erosion of shared reality by AI-generated content is a systemic safety risk requiring interoperable governance responses
Interoperable authenticity infrastructure and content provenance standards such as C2PA must be built with privacy and human rights at their centre so they cannot become surveillance infrastructure
Arg. 3Gregory argues that meaningful and interoperable authenticity infrastructure and content provenance standards are needed so that people can understand the composition of content they consume. However, standards like the C2PA specification must be built with privacy and human rights at their centre to prevent them from becoming surveillance infrastructure.
He called for 'meaningful and interoperable authenticity infrastructure and constant provenance, so we can all read the recipe of the content and communication we consume' . He specifically noted that 'standards like the C2PA specification must be built with privacy and human rights at their center so that they cannot become surveillance infrastructure' .
Existing frameworks including the Council of Europe Convention, Hiroshima Process, EU AI Act, and UN bodies should be anchored and made genuinely interoperable
Arg. 4Gregory argues that rather than creating new frameworks, the focus should be on making existing frameworks genuinely interoperable. He calls for convergence around existing human rights conventions, international frameworks, and national and regional legislation, with momentum already existing across jurisdictions and UN bodies.
He called for 'convergence around existing human rights conventions, including the Council of Europe, international frameworks, including the Hiroshima Process, and national and regional legislation, including the EU AI Act' . He noted that 'momentum on these measures to protect our shared understanding of reality in the age of AI already exists across jurisdictions and UN bodies, including the ITU' and that 'the task is to make it genuinely interoperable' .
on: Existing international frameworks should serve as building blocks for AI governance interoperability rather than being replaced by new frameworks
Detection capabilities for deceptive AI currently work least well for those most at risk, particularly in the global majority
Arg. 5Gregory highlights that detection capabilities for deceptive AI are not equitably distributed, with the technology working least well for those most at risk. This creates a compounding vulnerability where the populations most targeted by AI-generated harms are also the least protected by detection tools.
He cited Witness's benchmark showing that 'detection currently works least well for those most at risk, particularly in the global majority' . He called for detection capabilities for deceptive AI that work globally alongside interoperable authenticity infrastructure .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
The UN has a central role in helping avoid fragmentation, identifying convergence, and ensuring developing countries participate as co-shapers of rules
Arg. 1The Brazil Representative argues that the United Nations has a central role in AI governance that goes beyond facilitating dialogue. The UN can help avoid fragmentation, identify convergence, connect existing initiatives, and crucially ensure that developing countries participate not merely as rule-takers but as full co-participants in shaping the rules of AI governance.
The representative stated that 'the United Nations has a central role in this effort. It can help avoid fragmentation, identify convergence, connect existing initiatives and ensure that developing countries participate not merely as rule-takers but as full co-participants in shaping the rules of AI governance' . The representative also emphasised that digital sovereignty is not digital isolation but the ability of states to participate in the global digital economy while preserving regulatory autonomy .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
on: Whether safety standards should be developed through existing bodies such as OECD and G7 or through new inclusive UN-led multilateral processes
International standards translate principles from international law into practical tools and give governments a basis for national regulation and industry a common language
Arg. 1The IEC Representative argues that international standards play a distinct and essential role in AI governance by forming the link between different normative layers. They translate principles set out in international law and soft law into practical tools, give governments a basis for national regulation, and give industry a common language to build safe and interoperable products.
The representative described five normative layers of AI governance: international law, international soft law, national law, international standards, and the normative power of what is technically feasible . The representative stated that international standards 'form the link between these layers. They translate the principle set out in international law and soft law into practical tools. They give governments a basis for national regulation, and they give industry a common language to build safe and interpretable products' .
on: Existing international frameworks should serve as building blocks for AI governance interoperability rather than being replaced by new frameworks
Safety norms are being set by a small number of states and firms through processes in which most of the world has no voice; safety is contextual and shaped by language, culture, and local realities
Arg. 1The Pakistan Delegate argues that safety must be defined inclusively because current standards and benchmarks for trustworthy AI are being set by a small number of states and firms through national safety institutes and frameworks in which most of the world has no voice. Safety is not a purely technical matter but is contextual, shaped by language, culture, and local realities.
The delegate stated that 'too often, the standards and benchmarks for trustworthy AI are being set by a small number of states and firms. Through national safety institutes and frameworks in which most of the world has no voice' . The delegate argued that 'safety is not purely technical matter. It is a contextual shape by language, culture, and local realities' and called for safety norms to be developed through inclusive multilateral processes under the United Nations .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
on: Whether safety standards should be developed through existing bodies such as OECD and G7 or through new inclusive UN-led multilateral processes
Countries with fewer resources must be active shapers of global governance infrastructure, not merely rule-takers; the ability to test, evaluate, and assure AI systems must be treated as integral to safety itself
Arg. 2The Pakistan Delegate argues that trust requires the capacity to verify, and that a nation cannot trust what it cannot assess. The ability to test, evaluate, and assure AI systems remains concentrated where the technology is built, and without deliberate effort, developing countries will be asked to accept safety assurances they have no means to verify.
The delegate stated that 'a nation cannot trust what it cannot assess. Yet, the ability to test, evaluate and assure AI systems remains concentrated where the technology is built' . The delegate called for treating 'the capacity to evaluate and govern AI as an integral part of the development of AI to safety itself supported through shared tools, pooled expertise, and cooperation across regions' .
Even participation in governance forums is unequal, as visa barriers prevent representatives from developing countries from attending
Arg. 1The Center for Responsible AI representative highlights a concrete and immediate barrier to inclusive AI governance participation: visa processes that prevent representatives from developing countries from attending international forums. This is illustrated by the fact that the representative's colleague from India could not attend due to being unable to obtain a visa at short notice.
The representative noted that 'the very fact that I have to present and not Geeta again demonstrates the difficulty of people from the third world having access to forums such as these. She could not get a visa at such a short notice that was given to her to come in. So it is a challenge for even people from the third world to participate in these discussions' .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
A structured AI incident reporting framework must be democratised at the grassroots level, establish shared responsibilities throughout the AI value chain, and enable proactive learning-oriented governance
Arg. 2The Center for Responsible AI argues for a structured AI incident reporting framework as a core pillar of global AI governance. This framework must be democratised at the grassroots level, ensure no individual or community is left behind, establish shared responsibilities throughout the AI value chain, and generate real-world evidence of harm to enable proactive rather than reactive governance.
The representative described the Center's work on developing an AI incident reporting framework that enables 'systematic capture, classification, analysis, response, and where possible, resolution of real-world harms alongside clearly defined institutional responsibilities' . The representative argued that such a framework 'provides a strong foundation for AI development and generates real-world evidence of harm, enabling the AI industry and governments to develop feedback loops for better system design' and enables 'proactive learning-oriented approaches that can keep pace with rapidly evolving AI technologies' .
on: Shared incident reporting mechanisms are essential for ensuring lessons from AI failures in one jurisdiction prevent repeated harms elsewhere
Governance frameworks must be inclusive in design, equitable in application, and supportive of technology transfer and capacity building
Arg. 1The South Africa Representative argues that global AI governance frameworks must reflect not only the priorities of advanced economies but also the realities and needs of developing countries. This requires that frameworks be inclusive in their design, equitable in their application, and supportive of technology transfer and capacity building, otherwise governance risks reinforcing existing inequalities.
The representative stated that 'global frameworks reflect not only the priorities of advanced economies, but also the realities and needs to developing countries' and that achieving this 'requires that global governance frameworks are inclusive in their design, equitable in their application, and supportive of technology transfer and capacity building' . The representative warned that otherwise 'governance reinforcing existing inequalities' .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
Because AI agents can act directly upon the real world, their failures can cause severe harm before a human can intervene; safety standards must strengthen as autonomy increases
Arg. 1The Concordia Representative argues that the rise of agentic AI represents a fundamental shift in governance challenges, as AI agents can now act directly upon the real world both virtually and physically. Because their failures can cause severe harm before a human can intervene, safety standards must strengthen as autonomy increases, similar to how standards for autonomous driving increase from level 0 to level 5.
The representative stated that 'because AI agents can act directly upon the real world, virtually and increasingly in the physical world, their failures can potentially cause severe harm before a human can even intervene' . The representative drew the analogy of autonomous driving standards from level 0 to level 5, arguing that 'as AI agents become increasingly autonomous in the coming years, the stronger the safety standards must be' .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
When autonomous systems fail, consequences do not stop at national borders; a malfunction in one country can disrupt shared infrastructure, supply chains, or public safety elsewhere
Arg. 2The Concordia Representative argues that the cross-border nature of agentic AI failures makes international cooperation on safety standards urgent. A malfunction in one country can disrupt shared infrastructure, supply chains, or public safety elsewhere, meaning that true international cooperation requires developing safety standards and red lines inclusively.
The representative stated that 'when autonomous systems fail, consequences do not stop at national borders. A malfunction in one country can disrupt shared infrastructure, supply chain, or public safety elsewhere' . The representative cited the Singapore Consensus from May, where 100 experts from around the world identified 10 foundational principles for managing agentic AI risk .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
Accountability must be engineered before deployment, with permissions, oversight, and audit trails designed in from the start rather than added after an incident
Arg. 1The Dubai Cable representative argues that as AI agents are authorised to act, the line between a policy document and a production incident becomes very thin. Accountability must therefore be engineered before deployment, with permissions, oversight, and audit trails designed in from the start rather than retrofitted after an incident occurs.
The representative stated that 'once an AI agent is authorized to act, the line between a policy document and the production incident becomes very thin' . The representative argued that 'accountability must be engineered before deployment with the permission, oversight, audit trial need to be designed to build a good governance strategy. A time-based, not added after an incident' .
on: Agentic AI represents a new and urgent governance frontier requiring specific frameworks for identity, accountability, and cross-border responsibility
The model context protocol demonstrates that open-source technical standards oriented around real-world implementation pain points can achieve rapid global adoption and improve governance standards simultaneously
Arg. 2The Concordia Representative (attributed in the arguments list to Ravin Thambapillai) argues that the model context protocol's rapid adoption demonstrates that open-source technical standards designed around real-world pain points can achieve global de facto status quickly. This shows that governance standards can be developed and adopted rapidly when they meet three criteria: addressing real-world implementation pain points, being open source, and accelerating both AI benefits and governance frameworks.
The model context protocol demonstrates that open-source technical standards oriented around real-world implementation pain points can achieve rapid global adoption and improve governance standards simultaneously
Arg. 1Thambapillai argues that the model context protocol's rapid adoption from announcement to global de facto standard in 18 months demonstrates that open-source technical standards designed around real-world pain points can achieve rapid global adoption. This shows that governance standards can be developed and adopted quickly when they address real implementation challenges, are open source, and accelerate both AI benefits and governance frameworks.
He described how the model context protocol went from an idea to the global de facto standard adopted by every large AI research lab, every enterprise, and every AI company in just 18 months . He noted that the spec was 'designed around the pain points that people at the frontier doing the implementation of these systems were experiencing' and that it made significant progress on authorization challenges and human oversight in AI tool chains .
Countries need to agree on common risk management principles and share evaluation methods and results across borders, including post-deployment evidence from real-world use
Arg. 1Qinghua Lu argues that countries need to agree on a common set of risk management principles and share evaluation methods and results across borders. Given the shift from static to dynamic governance, benchmarking alone is insufficient, and post-deployment evidence from real-world use is essential, particularly for agentic systems that receive human instructions at runtime.
She proposed that countries agree on common risk management principles such as evaluating AI systems through the entire lifecycle, requiring independent third-party participation in evaluation, and not allowing deployment if risk exceeds government-set thresholds . She noted that 'benchmarking itself can provide an initial understanding about the AI system's performance under representative configuration, but it's not sufficient' especially for agentic systems that receive human instructions at runtime .
on: A shared, independent scientific evidence base is essential for trustworthy AI governance
on: Whether AI evaluation should focus on models alone or on entire systems including tools, environments, and users
Horizontal collaboration through mapping existing tools and standards and vertical collaboration through joint technical work on specific challenges such as multilingual capability testing are both needed
Arg. 2Lu proposes two complementary approaches to international collaboration on AI governance. Horizontal collaboration focuses on mapping and connecting existing tools and standards through common platforms and dedicated working groups. Vertical collaboration focuses on joint technical work on specific challenges, with the international network of AI safety institutes' joint multilingual capability testing as a concrete example.
She described horizontal collaboration as focused on mapping or connecting existing tools or standards through common platforms, with dedicated working groups building connectors such as mappings between different risk management frameworks or incident taxonomies . She described vertical collaboration as focused on specific technical challenges, citing the international network of AI safety institutes' joint testing exercise on large language models' multilingual capability testing using common methodologies where each country focused on different languages .
Misleading measures of success must be avoided; benchmarks that represent less than 5% of the global majority produce pyrite standards, not gold standards
Arg. 1Buolamwini argues that AI evaluation frameworks must avoid misleading measures of success, particularly benchmarks that do not represent the global majority. Drawing on her foundational research on algorithmic auditing, she shows that gold standards from major institutions often failed to represent the global south and people with dark skin, meaning apparent progress was illusory.
She described her foundational research on algorithmic auditing, noting that gold standards from institutions like the National Institute for Standards and Technology 'oftentimes did not represent the global south, did not represent people with dark skin' . She stated that 'when we then inspected the data by which the standards themselves were set that were gold standards, they proved to be pyrite. Oftentimes, less than 5% of a benchmark might represent the global majority' .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
The UK's AI for Development Programme supports locally led AI ecosystems in over 40 African languages and 13 AI labs, reflecting the principle that AI must be tailored to local context
Arg. 1Malhotra argues that AI must be tailored to local context and that countries should be empowered to harness AI in ways that support their own development goals. The UK's AI for Development Programme exemplifies this approach by building AI tools in more than 40 African languages and supporting locally led AI ecosystems.
She described the UK's AI for Development Programme as working to build AI tools in more than 40 African languages, supporting 13 AI labs, and helping countries develop locally led AI ecosystems that reflect their own priorities . She also described the UK's AI Security Institute as helping build scientific foundations for trustworthy AI through evaluation methodologies, testing, safeguards, and risk assessment, and as part of a growing network of AI safety and security institutes collaborating on evaluation approaches .
on: Linguistic and cultural diversity must be reflected in AI evaluation frameworks and benchmarks
WMO's 150 years of experience in exchanging data across borders through standards and trust offers lessons for AI governance, including the importance of verification and equitable access
Arg. 1Saulo argues that the World Meteorological Organization's 150 years of experience in exchanging data across 193 countries through standards and trust offers directly applicable lessons for AI governance. Key lessons include the importance of verification — checking forecasts against reality — and the centrality of equitable access as the main concern of national meteorological services.
She noted that WMO has been exchanging data across borders for more than 150 years and that 'to exchange data that is usable and by different communities across the world, 193 countries actually, you need to have standards. And you need to have trust also on that' . She described WMO's verification processes where forecasts are checked against reality to set standards for the quality of AI-driven systems , and cited a recent survey of WMO members where 'equitable access' was identified as their main concern and opportunity regarding AI .
Local and regional governments should be recognised as a distinct governance actor and systematically included in discussions on interoperability, as they hold direct responsibilities in sectors where AI impacts are most visible
Arg. 1The Global Cities Hub representative argues that cities and regions are not merely stakeholders but public authorities with significant responsibilities in sectors where AI is already transforming societies, including healthcare, education, mobility, and public administration. They represent a still-missing governance layer that could contribute to horizontal facilitation of AI governance.
The representative stated that 'cities and regions are not merely stakeholders. They are public authorities with significant responsibilities across many of the sectors where AI is already transforming our societies' . The representative noted that 'AI impacts are experienced first and most visibly in cities by two-thirds of the global population' and that local and regional governments 'represent a still-missing governance layer which could contribute to the horizontal facilitation' .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
UN Resident Coordinators in 162 countries stand ready to accompany member states in translating global AI governance principles into national action and strengthening institutions
Arg. 1The UN Resident Coordinator Office representative argues that inclusive governance must ensure all countries have the capacity and voice to shape how AI is developed, deployed, and regulated. UN Resident Coordinators, present in 162 countries and territories, are positioned to accompany member states in translating global AI governance principles into national action.
The representative spoke on behalf of five resident coordinators serving Angola, Eswatini, Costa Rica, Montenegro, and Bosnia and Herzegovina , and cited examples of AI readiness assessments in Montenegro, national dialogues in Eswatini, and public sector AI initiatives in Bosnia and Herzegovina . The representative stated that 'resident coordinators, together with UN country teams, we convene in 162 countries and territories, stand ready to accompany member states in shaping an inclusive AI future and translating global AI governance' .
Continuous and inclusive dialogue under the United Nations is essential to building the trust, shared understanding, and scientific consensus needed for meaningful interoperability
Arg. 1The Ethiopia delegate argues that interoperability and compatibility of AI governance approaches cannot be achieved through isolated national efforts but require continuous dialogue, mutual trust, and strong multilateral cooperation. Ethiopia's commitment to this vision is rooted in a long-term belief in multilateralism and inclusive dialogue under the United Nations.
The delegate stated that 'interoperability and compatibility approaches cannot be achieved through isolated national efforts. They require continuous dialogue, mutual trust and strong multilateral cooperation' . The delegate described Ethiopia's own efforts including an artificial intelligence institute and a planned AI university , and noted that the African Union has designated Ethiopia's Prime Minister as champion for AI and digital health .
on: Developing countries and the Global South bear the greatest costs of AI governance fragmentation and must be active participants in shaping governance frameworks
Japan's Hiroshima AI Process, with approximately 70 countries including the Global South as Friends Group members, represents an inclusive international governance effort and a best practice for this dialogue
Arg. 1The Japan Delegate argues that the Hiroshima AI Process represents a valuable best practice for inclusive international AI governance, having advanced concrete initiatives including guiding principles and a Code of Conduct as the first international norms for generative AI. With approximately 70 countries and regions including the Global South as Friends Group members, it demonstrates how inclusive governance can be achieved.
The delegate stated that through the Hiroshima AI Process, 'efforts toward inclusive international governance on AI have been advanced through such concrete initiatives as the development of guiding principles and the Code of Conduct as the first international norms for generative AI' . The delegate noted that 'approximately 70 countries and regions, including the Global South, have endorsed these principles as the Friends Group, and they share knowledge and experiences related to AI governance and policy in order to achieve trustworthy AI' .
on: Existing international frameworks should serve as building blocks for AI governance interoperability rather than being replaced by new frameworks
on: Whether safety standards should be developed through existing bodies such as OECD and G7 or through new inclusive UN-led multilateral processes
Frontier AI risks, including misuse, malfunctions, and systemic societal impact, cannot be dismissed as speculative and cannot be deferred indefinitely
Arg. 1The lead writer of the International AI Safety Report argues that frontier AI risks across three categories — misuse, malfunctions, and systemic societal impact — have moved beyond speculative concerns and are supported by a range of evidence from laboratory studies to real-world incidents. These risks cannot be deferred indefinitely as capabilities continue to improve rapidly.
The writer stated that 'those frontier risks cannot be dismissed as speculative concerns. We have a range of evidence from laboratory studies to real-world incidents that now show that those concerns have merit' . The writer described three categories of risk: misuse including potential lowering of barriers for attacks with bioweapons ; malfunctions as AI becomes more agentic and harder to oversee ; and systemic impact including how AI will affect work, information gathering, and governance .
on: A shared, independent scientific evidence base is essential for trustworthy AI governance
The human-in-the-loop principle must be preserved as a prerequisite for safe and responsible innovation, not treated as an obstacle
Arg. 1The Lithuania Delegate argues that trust in AI rests on three pillars, the first being that AI must stay human-centred and grounded in democratic values. The human-in-the-loop principle, requiring human oversight, validation, or intervention at critical decision points, must be preserved as a prerequisite for safe and responsible innovation rather than treated as an obstacle.
The delegate stated that 'the human-in-the-loop principle that requires human oversight, validation, or intervention at critical decision points must be preserved and not treated as an obstacle for innovation. Rather, it is a prerequisite for safe and responsible innovation, helping to maximize the benefits of new technologies while minimizing their risks' . The delegate also cited Lithuania's experience with persistent cyber threats, disinformation campaigns, and hybrid attacks as evidence that 'resilience must be built into technology from the beginning' .
on: Human oversight and accountability must be built into AI systems by design, not added after incidents
on: Whether AI governance should be built into AI use cases from the start or kept separate and applied dynamically at runtime
AI governance must be risk-based and innovation-friendly, including regulatory sandboxes to enable innovators in developing countries to build trustworthy AI without undue regulatory hurdles
Arg. 1The Bangladesh Delegate argues for a comprehensive governance framework that combines binding legal obligations with ethical standards, while also being innovation-friendly. Regulatory approaches should be risk-based and include regulatory sandboxes to enable startups and innovators in developing countries to build trustworthy AI without undue regulatory hurdles.
The delegate called for 'regulatory approaches should be risk-based and innovation-friendly, including regulatory sandboxes to enable startups and innovators in developing countries to build trustworthy AI without undue regulatory hurdles' . The delegate also called for a comprehensive governance framework that upholds human rights, transparency, accountability, privacy, and fairness while addressing algorithmic bias, misinformation, disinformation, and AI-enabled gender-based violence .
on: Shared incident reporting mechanisms are essential for ensuring lessons from AI failures in one jurisdiction prevent repeated harms elsewhere
on: Whether AI governance frameworks should be legally binding or voluntary and principle-based
AI-generated disinformation threatens the integrity of electoral processes and democratic participation; the multi-stakeholder approach and integration of science are essential responses
Arg. 1The France Representative argues that the integrity of electoral processes is threatened by disinformation practices that often make use of AI, making this a high-stakes issue for international governance. The multi-stakeholder approach for global AI governance dialogue and the integration of science and research are essential responses to this challenge.
The representative stated that 'the issue is also high stakes with regard to the integrity of electoral processes threatened by disinformation practices that often make use of AI' . The representative noted that France tackled this issue during the G7 summit and that 56 enterprises signed up to the principles of the Hiroshima Process on AI, targeting common principles and practices for the governance of advanced AI systems .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
The Mexican Society for Artificial Intelligence emphasises that a new international instrument must prioritise interoperability with legally binding minimum mandatory standards truly applicable across all countries and regions
Arg. 1The representative argues that navigating the labyrinth of international and local laws, regulations, standards, and principles is complicated for any company or individual developing or deploying AI systems. A new international instrument on AI governance must therefore prioritise interoperability and establish legally binding minimum mandatory standards that are truly applicable in all countries across all regions.
The representative stated that 'a new international instrument on the governance of AI must prioritize interoperability and a set of legally binded rules that establishes the minimum mandatory standards that are truly applicable in all countries across all regions' . The representative also emphasised the responsibility of academics and others to raise awareness, educate, and advocate for AI to be designed, developed, deployed, and used with ethics in mind .
on: Whether AI governance frameworks should be legally binding or voluntary and principle-based
Estonia's Arawite initiative illustrates the emerging frontier of developing identity and registry frameworks and interoperability standards so that states can interact with AI agents in a trustworthy and accountable way
Arg. 1Virginia Dignum frames the panel discussion around the idea that AI is a set of choices — technical, institutional, and political — and that interoperability is one of the clearest examples of this. She notes that without shared evidentiary standards and mutually recognised approaches, parallel regimes risk neither protecting people nor allowing accountability to travel with the technology.
She stated that 'without shared evidentiary standards and mutually recognized approaches, we risk parallel regimens that neither protect people nor allow accountability to travel with the technology' . She noted that 'we have seen this before in many different fields where fragmentation creates gaps that arm the least resourced first' .
Interventions from member states and stakeholders should alternate to promote broad participation
Arg. 1The Conference Organizer explains the procedural framework for managing floor interventions, specifying that member state representatives and other stakeholder representatives should alternate in speaking order. This approach is designed to ensure that both governmental and non-governmental voices receive equal opportunity to contribute to the discussion.
The Conference Organizer stated that 'in the interest in promoting broad participation from stakeholders, we'll proceed with one representative from member states, followed by one representative from other stakeholders alternatively' . Speakers were required to have inscribed in advance through the UN Global Dialogue on AI website, and a timer was set to ensure all speakers could be accommodated within the allotted time .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
Existing international frameworks and regional initiatives should be built upon rather than creating new frameworks from scratch, as a one-size-fits-all approach will not be effective
Arg. 1The Australia Delegate argues that new AI governance efforts must be informed by tested approaches already developed through organisations such as ISO, ITU, OHCHR, and UNESCO, as well as through the AI Summit Series, the Hiroshima AI Process, and the Global Partnership on AI. Regional initiatives such as the APEC AI Initiative, ASEAN's AI Governance Framework, and the African Union Continental AI Strategy demonstrate how shared principles can be adapted to different contexts.
The delegate stated that 'we should build on existing international work rather than creating frameworks from scratch' and cited ISO AI standards, ITU, OHCHR, and UNESCO guidance as offering common baselines . The delegate also referenced regional initiatives including the APEC AI Initiative, ASEAN's AI Governance Framework, and the African Union Continental AI Strategy as demonstrating how shared principles can be adapted to different economic, social, and regulatory contexts .
on: Existing international frameworks should serve as building blocks for AI governance interoperability rather than being replaced by new frameworks
Responsible AI governance is a continuous process of monitoring, adaptation, and improvement as technologies evolve and risks emerge, not a one-off task
Arg. 2The Australia Delegate argues that effective AI governance requires shared principles that can be implemented flexibly across different contexts, and that governance must be understood as an ongoing process rather than a fixed achievement. This reflects the reality that AI technologies and associated risks are constantly evolving.
The delegate stated that 'responsible AI is not a one-off task, but a continuous process of governance, monitoring, adaptation and improvement as technologies evolve and risks emerge' . The delegate also noted that 'a one-size-fits-all approach to AI governance will not be effective' as countries face different risks, priorities, levels of digital development, and regulatory environments .
The UN Global Dialogue has the potential to bring together the multi-stakeholder community to strengthen the digital ecosystem and contribute to a stable, safe, inclusive, and innovative digital ecosystem for all
Arg. 3The Australia Delegate expresses support for the UN Global Dialogue as a platform for multi-stakeholder collaboration on AI governance challenges. By sharing with each other, participants can strengthen the digital ecosystem, enhance connectivity between economies, and contribute to outcomes that benefit all countries.
The delegate stated that 'Australia believes that the UN Global Dialogue has the potential to bring together the multi-stakeholder community to address AI governance challenges and work together to address them' . The delegate argued that 'by sharing with each other, we strengthen the digital ecosystem, enhance connectivity between our economies and contribute to a stable, safe, inclusive and innovative digital ecosystem, importantly for all' .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
The speaker list for interventions must be managed through advance inscription to ensure orderly and broad participation from both member states and other stakeholders
Arg. 1The Co-Chair explains the procedural framework for managing floor interventions during the session, emphasising that statements will be delivered based on a speaker's list established through advance inscription on the UN Global Dialogue on AI website. This system is designed to facilitate the largest number of speakers possible within the available time.
The Co-Chair stated that 'statements will be delivered on the basis of the speaker's list established through the inscription that was made available on the UN Global Dialogue on AI website' . The Co-Chair noted that 'the e-delegate list is closed and any changes has to be communicated to the secretariat' and that 'microphones will automatically be switched off once your time has expired' to ensure broad participation .
on: Multi-stakeholder participation is essential for the legitimacy and effectiveness of AI governance
An interactive networking activity asking participants to identify one key priority on safe, secure, and trustworthy AI interoperability can help surface diverse perspectives from across the room
Arg. 1The Facilitator UNICC introduces a structured networking exercise designed to move away from formal presentations and engage all participants directly in identifying their single most important priority on AI interoperability. The exercise requires participants to speak with someone they do not already know, ensuring cross-pollination of perspectives.
The facilitator instructed participants to 'turn left, turn right, turn to the front of you or to the back of you, most importantly find a person you do not know' and discuss 'if you could identify only one key point or one key priority on safe, secure and trustworthy AI interoperability and compatibility approaches what is that one key point or that one key priority' . The facilitator emphasised that participants should not cheat by talking to someone they already know, underscoring the importance of diverse exchange .
Post-it note activities can capture participant priorities from networking discussions and feed them into co-chair summaries, ensuring grassroots input informs formal governance outputs
Arg. 2The Facilitator UNICC introduces a second interactive activity where participants write down their identified priority item on post-it notes to be handed to co-chairs as they leave. This mechanism is designed to ensure that the informal discussions held during the networking exercise are captured and feed into the formal co-chair summary report.
The facilitator asked participants to 'write down that priority item' on post-it notes and stated that 'as you leave, please hand these post-it notes at the exit of the room and the co-chairs will take those points into consideration' . The facilitator connected this activity directly to the formal governance process by noting that 'the co-chairs will take those points into consideration' when providing a summary report back to the dialogue of dialogues .
The second panel must move from the 'what' to the 'how' of interoperability, focusing on what must actually be shared across borders so that safe, secure, and trustworthy AI can be governed in compatible and inclusive ways
Arg. 1Rachel Adams frames the second panel discussion as a progression from the first panel's identification of existing principles and standards to the practical question of implementation. She identifies three focal areas: what common foundations are already emerging, what practical steps can be taken now, and how countries and communities with fewer resources can be active shapers of global governance infrastructure.
She stated that 'our first panel today helped frame the existing landscape around principles and standards and best practice. And in this discussion we want to move from the what to the how' . She specified that the panel would explore 'what must actually be shared across borders, evidence, measurement systems, evaluation methodologies, reporting tools, institutional practices, so that safe, secure and trustworthy AI can be governed in ways that are compatible and inclusive' .
Interoperability must not simply export assumptions, risks, and priorities from powerful jurisdictions but must allow for different national contexts and priorities
Arg. 2Rachel Adams argues that a model of interoperability that merely replicates the assumptions and priorities of powerful jurisdictions would be inadequate and potentially harmful. Genuine interoperability must be designed to accommodate different national contexts and priorities, ensuring that less powerful countries are not simply recipients of governance frameworks developed elsewhere.
She stated that 'equally important, we want to avoid a model of interoperability that simply exports assumptions and risks, and priorities from powerful jurisdictions. Interoperability must allow for different national contexts and priorities' . This framing set the agenda for the entire second panel discussion .
What gets measured and what does not get measured has real consequences for people's rights and opportunities in AI evaluation systems
Arg. 3Rachel Adams highlights the critical importance of measurement choices in AI evaluation, framing this as a question of rights and opportunities rather than merely a technical matter. She introduces Dr. Joy Buolamwini's work as evidence that the design of evaluation systems has direct consequences for whose experiences and harms are captured.
She stated that 'Dr. Buolamwini, your work has shown so powerfully that what gets measured and what doesn't get measured has real consequences for people's rights and opportunities' . She asked what must be ensured in shared evaluation systems and standards 'so that these systems capture bias and discrimination rather than simply making AI' more efficient .
Session Knowledge Graph
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