Shaping the Future AI Strategies for Jobs and Economic Development

20 Feb 2026 18:00h - 19:00h

Shaping the Future AI Strategies for Jobs and Economic Development

Session at a glanceSummary, keypoints, and speakers overview

Summary

The summit opened with Tejpreet S. Chopra framing AI-driven strategies for workforce and economic growth as the most critical issue for governments worldwide, noting that AI’s impact on society, industry and employment is a top concern [1-8][19-22]. He highlighted that India’s 70 million MSMEs employ 230 million people and generate 30 % of GDP, underscoring the challenge of making AI affordable for such a large, resource-constrained sector [19-22][24]. Satvinder Singh described the Digital Economy Framework Agreement (DEFA) as a legally binding pact being negotiated among the 11 ASEAN countries to digitally interconnect 700 million people, with the greatest economic and job benefits expected for the least-developed members [31-40][45-48]. He added that DEFA could double the region’s digital economy to a trillion dollars by 2030 and that linking it with India would create a broader economy-to-economy digital corridor [46-48][49-52].


Dr. Mahendra Karpan explained how Guyana is using AI-enabled telemedicine and a network of 200 remote health sites equipped with Starlink to provide real-time specialist diagnoses for isolated communities, and how AI also supports primary health, agriculture and digital schooling initiatives [74-86][94-96][364-370]. Nihar Shah from Lawrence Berkeley National Lab warned that rapid data-center expansion creates hidden bottlenecks in power, cooling and water, and that addressing these infrastructure gaps is essential for sustainable AI growth [106-115][118-124]. Vinod Jhawar of Nextra detailed Nextra’s plan to build gigawatt-scale, renewable-powered data-center campuses in India, noting challenges of land, high-voltage supply and talent shortages, while aiming for near-zero carbon operation [152-166][180-194].


Chopra noted India’s declining renewable energy costs-solar falling from 18 ₹/kWh to 2 ₹/kWh and wind from 8.5 ₹/kWh to 2 ₹/kWh-positioning the country to win the “AI arms race” by offering cheap compute for its 70 million MSMEs [203-212]. Narendra Singh added that building data centers in India costs 4-6 million USD per MW versus 12 million USD elsewhere, and that domestic chip and hardware production can further reduce expenses, creating a trillion-dollar opportunity [218-224][229-230].


Satvinder Singh later argued that AI is currently reshaping mainly white-collar jobs through collaborative augmentation rather than full automation, and that governments are unlikely to allow wholesale replacement of high-skill roles, emphasizing the need for policy and ethical safeguards [248-258]. He also stressed that continuous upskilling-from schools to on-the-job training-is crucial, especially for younger workers who must develop lifelong skills to adapt to rapid AI change [303-307]. The panel converged on the importance of trustworthy AI, with the moderator highlighting the Global South’s need to co-design governance frameworks, and participants urging transparent, auditable systems and patient capital to scale responsible AI deployments [423-426][528-533]. The discussion concluded that inclusive collaboration, affordable infrastructure, and ongoing education are essential to harness AI for sustainable economic growth while safeguarding jobs and societal wellbeing [372-380][395-396].


Keypoints


Major discussion points


Redesigning workforce strategies and up-skilling for an AI-driven economy – Panelists stressed that AI will reshape jobs, especially white-collar roles, and that continuous learning and reskilling are essential. Satvinder highlighted studies showing AI’s biggest impact on white-collar jobs and warned that governments will not hand over “full replacement” of high-skill work to machines [248-260].  Vinod and Nihar pointed to looming talent bottlenecks in data-center operations and the need for rapid skill upgrades [120-124][165-199].  Satvinder later reiterated that up-skilling must become a lifelong, systemic effort, starting from schools and extending to the current workforce [303-308].


Regional digital cooperation – the Digital Economy Framework Agreement (DEFA) – The ASEAN representative explained DEFA as the world’s largest legally-binding regional digital pact, designed to inter-connect 700 million people across 11 countries and to deliver jobs and growth especially for the least-developed economies [35-48][38-44].  He argued that the agreement will double the region’s digital economy size by 2030, creating a shared platform for AI-driven trade with India [46-48][50-52].


Infrastructure bottlenecks: data-centers, energy, cooling, and the cloud-edge split – Multiple speakers identified the physical foundations of AI as a critical constraint. Nihar warned that cooling and power are “blind spots” often ignored in AI rollout plans [112-119].  Vinod described Nextra’s strategy to build gigawatt-scale, renewable-powered campuses, tackling land, voltage, and talent challenges [165-194].  Narendra added that compute costs in India are far lower than in the US or Singapore, but chip prices remain a major hurdle [223-230].  Tejpreet highlighted India’s falling renewable-energy tariffs as a competitive advantage in the “AI arms race” [203-212].


AI’s role in public health and tele-medicine, especially for remote or low-resource settings – Dr Mahendra Karpan shared Guyana’s tele-medicine network of 200 sites using satellite connectivity, enabling community health workers to obtain real-time specialist advice [84-86].  He emphasized AI-assisted diagnostics (e.g., CT-scan interpretation) while stressing that human empathy remains irreplaceable in critical care [264-270][271-274].  These examples illustrate how AI can extend specialist services to underserved populations.


Building trusted, responsible AI governance in the Global South – The later segment framed trust as a prerequisite for scaling AI. The moderator introduced the “Trusted AI at Scale” dialogue, noting that existing governance models are North-centric and must be adapted for the Global South’s realities [410-418].  Dipali Khanna described trust as “strategic infrastructure” that must be baked into transparency, auditability, and grievance mechanisms from day one [521-529].  Kip Wainscott reinforced that financial-sector trust frameworks (model-risk management, ongoing monitoring) are essential for broader societal adoption [658-669] and expressed optimism that the summit is moving the conversation from theory to actionable trust models [681-684].


Overall purpose / goal of the discussion


The panel was convened to explore how AI can be harnessed to drive inclusive economic growth and workforce transformation, especially for emerging economies. Participants examined concrete policy tools (DEFA, national AI strategies), infrastructure needs (energy, data-centers, edge vs. cloud), sectoral applications (healthcare, agriculture, climate), and the governance frameworks required to ensure AI is deployed responsibly, ethically, and at scale across the Global South.


Overall tone and its evolution


Opening (0-10 min): Energetic and forward-looking, with Tejpreet framing AI as the “most important topic” and celebrating the panel’s diversity [1-5][30].


Middle (10-40 min): Technical and problem-solving tone; speakers detailed regional agreements, infrastructure challenges, and sectoral pilots, acknowledging significant bottlenecks while maintaining optimism about cost-effective renewable energy and emerging solutions [35-48][112-119][165-194].


Later (40-80 min): Shift toward caution and responsibility; emphasis on up-skilling, human-centric design, and the need for robust trust and governance mechanisms [248-260][303-308][410-418][521-529].


Closing (80-end): Constructive and hopeful, with multiple participants summarizing key takeaways, urging collaboration, and expressing confidence that the summit has moved AI discourse from hype to actionable, trustworthy implementation [372-397][681-684][726-734].


Overall, the conversation remained collaborative and solution-oriented, moving from enthusiasm about AI’s potential to a sober assessment of the practical, ethical, and infrastructural work required to realize that potential responsibly.


Speakers


Tejpreet S Chopra – Founder & CEO of Industry .AI; AI strategy, digital workforce, productivity-driven AI solutions [S14]


Satvinder Singh – ASEAN representative; Digital Economy Framework Agreement (DEFA), AI impact on jobs and regional digital economy [S28]


Dr. Mahendra Karpan – Interventional cardiologist & Presidential Advisor (Guyana); healthcare transformation, tele-medicine, AI in medical diagnostics [S4]


Nihar Shah – Researcher, Lawrence Berkeley National Laboratory; energy systems, data-center cooling, AI-driven infrastructure, hydrogen research [S29]


Vinod Jhawar – Senior executive, Nextra (Airtel subsidiary); large-scale data-center and AI-focused infrastructure, renewable-energy powered facilities


Narendra Singh – Managing Director, RackBank & NeveCloud; cloud compute cost, space-based data-center concepts, Indian data-center economics [S5]


Aju Widya Sari – Director of AI & Emerging Technology Ecosystems, Ministry of Communications & Digital Affairs (Indonesia); national AI roadmap, infrastructure & ethical AI guidelines [S3]


Dr. Mahendra Karpan – (listed above)


Mohamed Kinaanath – Minister of State for Homeland Security & Technology (Maldives); AI governance, national AI readiness assessment, AI Act development [S10]


Eugenio Vargas Garcia – Ambassador of Brazil (G20); AI policy, tech diplomacy, sustainability & AI-driven climate initiatives [S11][S12]


Parag Khanna – Founder & CEO, AlphaGeo; geospatial AI for sustainable urbanisation, climate-adaptation modelling, AI for public-good infrastructure [S13]


Kip Wainscott – Executive Director, Global AI Policy, JPMorgan Chase; financial-services AI risk management, model governance, trust frameworks [S16]


Dipali Khanna – Senior Vice-President & Head of Asia, Rockefeller Foundation; philanthropy for trusted AI, partnership & capital for AI deployment [S18]


Son Sokeng – Senior government official, Cambodia (also addressed as H.E. Sokeng); AI readiness, digital skills roadmap, national AI strategy & governance [S15][S25]


Audience – Various participants (e.g., Harsh Vartan, CTO HDI Industry; other unnamed attendees) – asked questions on AI, hydrogen, up-skilling, subsidies, etc.


Moderator – Session moderator (unnamed) – facilitated panel discussion and audience Q&A.


Additional speakers not listed in the provided names list


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Full session reportComprehensive analysis and detailed insights

Opening & Scope


Tejpreet S Chopra opened the session by emphasizing that AI-driven workforce and economic strategies are the summit’s top priority for governments worldwide, which are asking how AI will reshape society, industry and employment [3-8]. He highlighted India’s MSME sector – roughly 70 million firms employing about 230 million people, contributing ~30 % of GDP and ~50 % of exports – and framed the challenge of delivering affordable AI to these resource-constrained companies [19-22][24-25]. Chopra then set out three discussion pillars: (1) redesigning workforce strategies, (2) building digital-compute infrastructure, and (3) ensuring inclusive, responsible and sustainable AI-driven growth [26-28].


Digital-Economy Framework (DEFA) – Satvinder Singh


Satvinder Singh described DEFA as the largest legally-binding regional digital agreement under negotiation by the 11 ASEAN nations and India, intended to create a digitally-interconnected market of 700 million people [29-31]. He noted that post-COVID digital transformation accelerated growth and that DEFA is projected to double ASEAN’s digital-economy from US$300 bn today to a trillion dollars by 2030 [32-34]. Singh stressed that the least-developed ASEAN economies (Laos, Cambodia, Myanmar, Timor-Leste) stand to gain the most jobs and per-capita economic growth [35-37].


Health-care & Tele-medicine – Dr Mahendra Karpan


Dr Mahendra Karpan (presidential advisor, Guyana) explained that offshore-oil revenues are being allocated to health, agriculture, digital public services and carbon-credit programmes [38-40]. He detailed Guyana’s tele-medicine network of over 200 remote sites equipped with Starlink connectivity, enabling community health workers to transmit EKGs, X-rays and vital signs to specialists in real time [41-44]. AI is applied for primary-care diagnostics, inventory management, disease surveillance and agricultural soil management [45-47]. Karpan invited investors, emphasizing the need for long-term, sustainable AI-driven development [48-50].


Energy, Cooling & Data-center Bottlenecks – Nihar Shah


Nihar Shah (Lawrence Berkeley National Lab) warned that AI’s rapid expansion will strain power, cooling and water resources, calling cooling and water-use “blind spots” in AI-infrastructure planning [51-53]. He cited an Energy Act-mandated report showing data-center capacity has tripled over the last decade and is expected to triple again by 2028 [54-56]. Shah highlighted the PAC-Silica U.S.-India AI supply-chain partnership and the need for talent pipelines to support AI hardware and software [57-59]. He gave an example of AI-designed chips delivering a 30 % performance gain, illustrating AI’s potential to optimise the whole stack [60-62].


Data-center Infrastructure & Renewable Energy – Vinod Jhawar


Vinod Jhawar (Nextra, Airtel subsidiary) outlined Nextra’s new “AI-VC” vertical focused on building gigawatt-scale AI-ready data-center campuses across India [63-65]. He identified key challenges: power availability, land acquisition, high-skill talent, and the need for ultra-high-voltage (700 kV) grid connections [66-68]. Nextra is sourcing ~400 MW of renewable energy and aims for net-zero operation by 2032, leveraging favourable Indian renewable-energy policies [69-71]. Jhawar stressed the urgency of up-skilling engineers through rapid training programmes [72-74].


Cost of Compute & Edge vs. Cloud – Narendra Singh


Narendra Singh (MD, RackBank/NeveCloud) compared data-center CAPEX: $4-6 M per MW in India versus $12 M in the US, Singapore and Dubai, attributing the cost advantage to domestic supply-chain manufacturing [75-77]. He warned that chip costs remain 5-10× higher than infrastructure costs and that a “trillion-dollar” AI opportunity hinges on cheaper compute and indigenous AI chips [78-80]. Singh also referenced a future space-based data-center mission, in partnership with Agni Cool, to support critical workloads and border-security applications [81-83].


Workforce Impact & Upskilling – Satvinder Singh & Panel


Singh cited the Entropic study showing AI will affect white-collar jobs more than blue-collar, with most impact coming from collaborative augmentation rather than full automation [84-86]. He warned that governments are likely to regulate AI-driven job displacement and that continuous learning will become the norm [87-89]. Audience questions and panel responses highlighted the need for large-scale up-skilling programmes, school-level digital curricula and lifelong-learning pathways [90-93].


Policy, Subsidies & Trust – Chopra, Singh, Khanna, Wainscott


Chopra noted the Indian AI Mission’s INR 10,300 crore fund, GPU subsidies at INR 65 per hour, and other incentives aimed at democratizing AI access [94-96]. Singh added that the government’s INR 200 billion data-center fund excludes chip costs, reinforcing the need for private-sector investment [97-99]. Dipali Khanna (Rockefeller Foundation) stressed that trusted AI must be built into systems from day one and that patient capital can support regulatory sandboxes and capacity-building in the Global South [100-102]. Kip Wainscott (JPMorgan Chase) described the financial sector’s model-risk-management framework as a template for AI trust and called for industry-wide standards to accelerate responsible AI deployment [103-105].


Key Take-aways


The panel converged on six core messages: (1) AI will reshape jobs but collaboration, not wholesale displacement, is the realistic path; (2) affordable compute and renewable energy are critical infrastructure bottlenecks; (3) tele-medicine and AI-enabled primary health care can leapfrog resource-constrained health systems; (4) up-skilling and continuous learning are essential for all workers; (5) public-private partnerships, subsidies and sovereign AI strategies (e.g., DEFA, AI-Readiness assessments) are needed to ensure inclusive growth; (6) trust-by-design and transparent governance are prerequisites for scaling AI in the Global South [106-110].


Session transcriptComplete transcript of the session
Tejpreet S Chopra

Hi, good morning everybody. I’ve got an incredible panel here this morning. The topic that we have is, I think, the most important topic at the summit. I think everywhere I’ve spoken or everywhere I’ve been, it all revolves around this critical topic around AI -driven strategies for workforce and economic growth. And I think the reason this topic is super important is the fact that if you are a government official anywhere in the world, I think this is their biggest concern, is that how is AI going to impact society? How is AI going to impact workforce? How is AI going to impact industries? So that’s going to be the most, you know, it’s the most important topic.

So I appreciate everybody who’s out here. My name is Tej Trikot Chopra, and I’m the founder and CEO of Industry .AI. So we are an AI company that focuses on driving productivity. productivity. passionate for me because I live and breathe this every day because we are trying to really do this is that how do you create the digital workforce or how do you empower the workforce across industries. A quick introduction of my colleagues on the call. We have Mr. Sathinder Singh from the ASEAN. Mr. Narendra Singh from Neve Cloud should be joining us any minute. Mr. Vinod Javar who is really the key in Nextra which is part of AIDA. Dr. Nihar Shah who is one of the best in the healthcare space and Dr.

Mahendra Karpan who is a presidential advisor to Guyana. Welcome everybody. Just one other key point. Just to put it in context. In India we have 70 million MSMEs. These MSMEs employ 230 million people. The MSME market in India produces 30 % of India’s GDP and 50 % of exports. The other big critical thing is how do we bring AI for all, how do we bring AI for all these companies that can’t afford what normally large companies do? And that’s the big challenge in front of us. And that’s what we’re going to talk about today. So in order to really kick this off, what I’d like to do is first really talk about three critical elements in today’s discussion, is that how do we redesign our workforce strategies given this new technology that’s coming up?

How do we build the digital and compute infrastructure? And I’ll request Vinod to talk about that. And how do we really ensure that economic growth driven by AI remains inclusive, responsible, and sustainable? So with that, I’m going to request Satvinder, if you don’t mind kicking it off, and it would be good to understand from your perspective, how is the Digital Economy Framework Agreement going to help governments around the world navigate the opportunities that exist? Over to you. Thank you.

Satvinder Singh

Thank you, Mr. Chopra. Very good afternoon to all of you. Great to be here with all of you. I think all of us are enjoying this momentous impact event, and it’s a great place to be here sharing ideas. And I’m here specifically Mr. Chopra, if I don’t mind, I’m giving the perspective of the ASEAN some of you may not know ASEAN is next door to India today we are the 5th largest economic bloc, 700 million people, most of it middle and upper middle income economies who are part of ASEAN and with India of course we are deeply connected, we have a free trade agreement and we also have a very strong trade economic ties with India and we have a lot of cooperation going on with India including in the area of digital connectivity Mr.

Chopra talked about the digital economic framework agreement, let me just update you what is that, in short we call it DEFA DEFA is a digital agreement we are now negotiating in the midst of completing negotiations by March of this year last two years we have been negotiating it is the largest regional digital agreement in the world the only difference is also legally binding the only difference is also legally binding the only difference is also legally binding the only difference is also legally binding the only difference is also legally binding the only difference is also legally binding the only difference is also legally binding So we are actually negotiating with the 11 countries of ASEAN to come on board 700 million people to be digitally interconnected, interoperable So that we can do business better and so that we can grow our economies better Now the essence of DEFA came about post -COVID I think in COVID, like in India, in ASEAN too, it really changed us I think while COVID was not good for anyone, but COVID also had positive unintended consequence We saw the greatest transformation taking place in the way we live, work and play And that interpreted clearly into growth that took place post -COVID I think the leaders in my region saw the prospects And they also saw the numbers where huge chunk of economic growth is driven by digital And therefore there is a no regret move now to move the entire region into digital connectivity And that’s where the DEFA comes through I think the interesting thing in ASEAN I mean, well, India is one country in ASEAN Like I said, there are 11 countries.

We have LDCs there, least developed countries like Laos, Cambodia, Myanmar, and now Timor -Leste just joined us. And then we have advanced economies like Singapore, Malaysia, Thailand, Indonesia, who is like a middle -income economy. So it’s a mixed bag of economies, but the momentum of getting all of them together to do this, we were able to move the agenda because we were able to show very quickly through data that the biggest beneficiaries actually of the DEFA is not even advanced economies like Singapore, because they are already there, digitally connected, but actually are the LDCs. We were able to show that the impact of DEFA will be greatest in terms of jobs, prospects, economic growth, because they are really economies which are least developed, but they are going to be more developed.

We are moving into the latest of all kind of connectivity at the lowest cost. And they will be the ones who will be able to benefit on a per capita basis in a maximum way. So that is how we were able to get 700 million people from 11 countries. sitting on a common agenda of being integrated because you were able to show them the money. If you don’t show them the money, nobody is going to jump in and do any such agreement. Money here means jobs, economic growth, deeper depth in terms of growth of the people and communities. So DEFA, for example, already ASEAN is a very vibrant digital economy. Roughly it’s about 300 billion today and we are going to be moving to a trillion dollars in size by 2030 in the next couple of years.

But with DEFA, the numbers are showing that the region is going to double the size of digital economy. So I think this is where we are in terms of our ability to come together to be able to do business. And our idea is, of course, not to stop in ASEAN. The idea is that once DEFA is going to be in place, we want to be connecting to India. Economy to economy, I think this will really be fantastic. I think we can stop looking over the shoulder. I mean, basically global South India, Southeast Asia, there’s plenty of markets. demographics on our side. In fact, even the affinity of our people in wanting to embrace technology is on our side.

In fact, some of the studies that are showing that actually it’s economies like Southeast Asia and ASEAN as well as India is where people are seeing the translation of the use of AI in the most profitable way. The data is showing that it’s not in the West. It’s actually in our region where businesses are beginning to deploy small AI into their day -to -day business and making a big impact on productivity, on growth, and also in relevance. I’ll stop there. Maybe

Tejpreet S Chopra

Satyendra, you’re absolutely right because I think in our part of the world, I tell everybody that India is trying to lead and be the bridge between the advanced economies and the emerging economies. But I think the dynamics of technologies needed for our kind of part of the world is very very different from the West. So I think if we can get a good price point to provide these technologies, that will be great. Dr. Carpin, you’re an interventional cardiologist and you’re advising a lot of governments around the world. It would be great to get your perspective in terms of how you see AI and its impact in terms of transforming public health care. Now Dr. Carpin I was at a discussion two days ago with Vinod Khosla and he always says some really provocative things and one of the things he said was that in a few years from now AI, we won’t need doctors in the world and I know he said we won’t even need doctor surgeons in the world so you don’t need you’re the actual real person who does all this stuff so it would be good to get your perspective.

Dr. Mahendra Karpan

Thank you very much for having me here and I bring you greetings from our President Dr. Mohamed Irfan Ali and Vice President Dr. Bayard Jagdeo We are from a small country located in South America and we are here to help you just a population of 850 ,000 people. I believe on the way here I might have encountered 850 ,000 people on the road. So you can imagine the scale that we are dealing with. What is transformative about Guyana at this time in our history is that sometime 2015 we discovered oil offshore. And you know everything that comes with that transformative discovery. The oil and gas industry is now booming. And we are trying to learn all of the lessons from states that have walked this path before.

Those that have relied heavily only on oil and gas they have encountered tremendous difficulties that we are hoping to avoid. So one of the things, or a couple of the things that we are using these resources to do is to help us with our health care, our agriculture, and our digital transformation in the public service. One of the other important things about Guyana is that we have the majority of our population living on the coastal area, and most of the rest of the country is forest. So we actually are pioneers in selling carbon credits to the world. The sad and vulnerable part of this, however, is that the coastal area is on the sea level.

So using AI, predictive models, all of those things, it’s a survival tool for us, not just now, but for future generations. In recent times, we have, been fortunate to have visionary leadership to take us in the direction we’d like to go. and we have in our country several remote villages of indigenous populations and I’ll share an example, a personal example when I was more in hospital practice. There was an 18 -year -old boy who had to be flown out from an interior village by the military helicopter after a snake bite and when he came to the city it was the first time that he saw headlights on a car. That’s where we still are in some places.

So we have been able in recent times to use our resources to establish telemedicine in particular areas. We have now over 200 functional sites that can actually serve these remote communities. They can do simple things like this. EKGs, x -rays, blood pressure, blood sugar, all of the common things and respond. to trauma, etc. So a healthcare worker, not necessarily a doctor, a community health worker, somebody indigenous to that area, can assess these patients, they go on video conferencing and all 200 of these locations actually have Starlink or we’re trying to implement that now, so that they have connectivity. So the specialists on the coast and in larger centres actually can give real -time diagnosis, real -time advice.

I myself and the cardiac unit, my on -call team always will be able to review an EKG. Like in India, I suppose, our number one cause of mortality is still cardiovascular disease. Heart attack is a huge problem in our population. Historically, some of you may be familiar with the facts that most of our population at one time were indentured immigrants that left India. and the majority never returned. And they built homes and created generations of descendants from then in Guyana, Trinidad and Tobago, Suriname, in that entire region. So whatever is plaguing you in India from a healthcare perspective is the same thing that was transferred. Because we maintain the same lifestyle, we have the same foods, the same likes, the same dislikes, the same genetic predispositions.

So in our context, what we have been doing is to start at the basic primary level, because that’s where we are. We’re not yet at the Singapore level and the others, but we’re hoping to get there in a very rapid leapfrog type of strategy. So we’re using AI at this time to do primary healthcare, for inventory management, for surveillance. For surveillance. And we’re moving into areas like agriculture for soil management, food production, et cetera, and to help us in all aspects. So for those of you who are looking for opportunities where there are challenges, there’s always opportunities. So Guyana presents to you tremendous opportunity for investment, for development, and for long -term, multi -generational, sustainable involvement in our country.

And I am sure, and I bring you this message on behalf of the president, we welcome investors to Guyana.

Tejpreet S Chopra

Dr. Carpin, thanks so much for that. I completely agree because I think the world is going to face exactly the same challenges, whether it’s in health care, whether it’s in agriculture, and I think there’s a lot of cross -sharing that we can actually learn from. Niyar, I’m going to pull you in, right? So just for everybody’s benefit, Niyar is with the Lawrence Berkeley National Labs, which is really one of the leading public research institutes. It’s in the world. But Niyar, I just want to share with you about four or five weeks ago. there was a majlis in Adnok in Abu Dhabi and they had a hundred CEOs in a room on a Sunday and everybody in the world showed up and there were four groups of people every major CEO of every major oil and gas company in the world the CEOs of every major energy utility in the world the CEOs of every AI company in the world and the CEOs of every large capital provider in the world and I was trying to figure out myself what’s the connect and at the end of the day what came out was that the world will need four times more energy in the next 10 -12 years to support the growth of data centers and all the other things that are going to happen and that’s going to require four trillion dollars every year for the next 10 years so Nir with those numbers would love to get your perspective from a technology perspective and how should the world react to that kind of growth that’s needed thank you

Nihar Shah

yeah so as mentioned my name is Nihar Shahab and I work at Lawrence Berkeley National Lab it’s one of the 17 Department of Energy National Labs If you also are Oppenheimer, you might know where the National Labs came from. And, of course, we have a very distinguished history with a lot of Nobel Prizes, so I won’t bore you with all that. But I’m very grateful, first of all, to CII for this opportunity to speak. And with respect to the question, obviously energy is one of the things that I think in, you know, I go to bed every night, I wake up every morning thinking about energy, being one of the energy labs of the United States.

Now, one of the other things that is also probably not as well -known, I direct the global cooling program at Berkeley Lab. And another blind spot with respect to kind of, you know, you mentioned energy, you mentioned the huge growth, you mentioned, you know, the huge investment needed. Another thing that’s needed is going to be cooling. And that’s another blind spot that I think we don’t really pay attention to. So that gathering of CEOs, I hope that there’s also a gathering of HVAC and data centers and other CEOs. and then in addition I think one more thing that we would probably need to think through in countries like India is the water consumption so you think about these kinds of things you also so we need to really think about this in a holistic sense and then you know in the bigger picture thing I think some of these things of course AI we are at the intersection of so many different things but if somebody tells you that they know exactly what’s going to happen in three years or five years or seven years they’re selling you something so you might want to take a second look at that.

I’ll say a couple of other things right related to what you mentioned Vinod Khosla just a month ago I was in Silicon Valley Berkeley Lab is based in Silicon Valley and Mr. Khosla was giving a keynote there and he said as usual he said some very provocative things. One of the things he said was by 2030 everything that needs human expertise will be free or nearly free. Second thing he said was everything that needs you know labor is going to be and this is coming to our topic here is going to be also very nearly free. The thing that I disagree with Mr. Khosla about is that, again, I mentioned the energy blind spot and the cooling blind spot.

So really, I think some of these things are going to be infrastructure bottlenecks, which I think some of our co -panelists are going to be able to address. And then also, I think, along with that, there’s probably also going to be a talent bottleneck. And when I say talent bottleneck, I don’t mean talent across the board. I think it’s going to be particular kinds of talent that we’re going to need. And just today, you might have heard the U .S. and India signed or India formally joined this PAC -Silica initiative by the United States. PAC -Silica is an initiative about the whole AI supply chain. So now you’re talking about not just, you know, kind of compute and not just, you know, the infrastructure, but you’re also talking about the whole supply chain that will allow that to happen.

And that’s an initiative that the U .S. government has started. So, you know, there’s a range of different things we could talk about. The workforce dimension, of course, is super important. And, of course, I can. Come back to any of those things. I’ll mention one last thing. Berkeley Lab, the Energy Act of 2020. requires Berkeley Lab to essentially report to the U .S. Congress on data center growth. And they found that over the last decade, data center growth has tripled. So, again, some of these numbers bear out even if you look at history. And the forecast is that by 2028, triple again. So, you know, these things are, again, not very well known. But I do think that, you know, that these blind spots need to be addressed by all of us and all of you all.

And we’re at a very interesting point with the, you know, I would say industrial revolution. So let’s see what

Tejpreet S Chopra

Thanks for that, Nir. I think you’re absolutely right. I think the people are underestimating the challenges of developing all this infrastructure, whether it’s in terms of cooling, whether it’s in terms of power, whether it’s in terms of communication, fiber optics. So I think that’s going to be a huge challenge. And with that, I’m going to turn it over to Vinod. Vinod’s with Nextra. They’re building some of the largest data center networks in India. But just before this panel, I was actually talking to Vinod because I think there are going to be two parts of the world. There are going to be large cloud data centers, which Vinod is building, but I also think there’s going to be another parallel world that’s going to be on the edge.

We at Industry .ai this week launched the world’s first AI supercomputer for manufacturing, which can go on every factory floor of the world, especially at a price point for 70 million MSMEs to transform productivity. So two things, Vinod. One would be good to get your perspective on how the world’s going to pan out of cloud versus edge, number one. And number two, all the challenges or bottlenecks that Nir was talking about, whether it’s in terms of cooling, capital, technology, skill labor, would be good to get your perspective.

Vinod Jhawar

Sure. Thank you. Thank you very much. I represent Nextra. It’s a subsidy of Airtel. We are in this business of building infrastructure for data centers. So that’s it. That’s our bread and butter from Nextra point. So we’ve been doing this for the last 20 years. We’ve seen the evolution from a normal. server room racks to small enterprise customers to now hyperscalers. Now, we’ve got the expert also over here. We’ve got now the new, what do you say, elephant in the room called the AI requirement of data center. So much is the demand now which is coming through to build large infrastructure for data center that Nextra has decided to carve out a separate vertical called AI VC on that.

So that’s the vertical which I represent. We are here to develop large scale gigawatt kind of campuses to that to cater to the fast requirements of some of our customers to grow primarily in the Indian subcontinent areas here on that. Yeah, the right is said that the challenges are there. Power is the challenge. Land is a challenge and getting the right kind of skill set still remains a challenge. We come from 20 years of experience, so we have understood the ways to work on this, on that. So being one of the pioneers in the home ground industry in the data center here, so we have been doing that. Few of the challenges have been pushing us to go beyond certain areas, look at new areas to build data centers.

Some of them are very close to the coastal area so that it can also accommodate cable landing stations for us, so that takes care of a lot of data required requirements. Plus we are also putting sites which are close to national grids now. There were places where we used to source voltage at 33 kV, now we are looking at 700 kV volts and all. So this is the thing, thoughts, which has now evolved and all, and it requires a separate thought process and the… Obviously the large amount of capital is required to get into that. So we are in this and we are well prepared. The demand obviously is quite high. The expansions of Nextra is quite aggressive also.

And we got something going on in the south. We thought something the best going forward on that. So your second question of how do you do the power and sustainably portion of it? Obviously most of the power we are going to source from renewable energy. That’s the key strength in the Indian regions here. Luckily for some of the good policies which have been put across a few decades back by the government, we have got plenty of renewable energy generators here. The government is pushing for upgrading the infrastructure to evacuate this energy also. So once we are at this high voltage, we are also connected to the central grid. So it makes it very, very reliable for us.

We are aiming to be what we said net zero by 30, 20, 30, 32, something is what. And there is a big pool of renewable energy for us to tap into that. We are at present, we have contracted close to 400 odd megawatt of renewable energy. So no longer we are looking at just 50 % resource for energy. That percentage is going almost close to almost 100 % now. This is how the whole sustainably portion of data center. And India and Nextra are well positioned to tap into this. I think that’s the interest level in trying to do a green data center evolves for us on that. The other challenge which has been told about how do you do the skill set. Yeah, skill set is a challenge.

Probably it requires a lot of debate on that. It’s something which needs. To be handled both at the fundamental level at the schooling level. and at the university level and right at the immediate level of training the existing engineers to adapt. So by the time the next generation come in, we probably would have missed the bus. So there are three, four approaches we are looking at how we can build an immediate kind of skill upgrade to make them suitable to develop the data center on that. So this is some of the things which we are doing, and I think we are, as an extra, very, very well positioned to meet the demands of whatever the customer is looking at.

Tejpreet S Chopra

Thanks for that, Varun. I think one of the things that came out of that session in Abu Dhabi was the fact that the world that’s going to win the AI arms war is the country that has the cheapest energy. And I really do believe that in India we have an incredible opportunity. I come from a renewable space. My first solar farm eight years ago, my revenue was 18 rupees a kilowatt hour. Today we get 2 rupees 20. My first wind farm was 8 rupees 50. Today we are in 2 rupees again. So I think we have an incredible opportunity in India to really win this AI arms war because the cost of producing energy is quite cheap. So, Narendra, first of all, welcome.

Narendra is the MD of RackBank and NeveCloud. Narendra, you’ve heard all the challenges in terms of the cloud. It would be good to get your perspective in terms of, one, cost of compute in India. How do you really make it affordable for everybody? And two is, how do you ensure adoption across the country?

Narendra Singh

kilometers away from Earth. We partner with Agni Cool, which is a space tech company, and the space ecosystem has evolved in the country from the last seven years. And the government has given a lot of open up space for everyone, for the private player. The first mission we are sending before the end of this year, and we believe that this is for critical workload which can protect the borders, unmanned vehicles, and all those things. So we started exploring beyond Earth and that’s what it is needed. And we can lead as India because the ecosystem, today look at the cost of building data center in India is 4, 5, 6 million dollars per megawatt versus 12 million dollars in US, in Singapore and Dubai.

Any market you go, you get a cost of 12 million dollars. Why? Because the 80 to 90 percent product which required in supply chain is manufactured in India. And we have to strengthen that. As government announced the 200 billion, I believe this is only for data center infrastructure, not for chips. So chips cost is on top of it. It’s like 5x or 10x. It depends on what chips you are using. so opportunity is huge, it’s a trillion dollar opportunity for the country thank you

Tejpreet S Chopra

I met Narendra about 2021 at the JW Marriott Hotel in Mumbai and that time he was still putting together this whole strategy and I was thinking to myself in 2021 what’s going to happen about data centres and now he’s talking about data centres in space so it’s good to see the kind of progress that’s happening before I go, I have lots of questions to ask but any questions from the audience that they want to ask go ahead go ahead

Audience

Sir, I am Harsh Vartan basically from HDI industry but before that I was working as a research fellow in CSIRC so my question to Mr. Shah is we have seen hydrogen fuel cells being used at experimental level in railways and buses but it has not been implemented at a large scale neither in India nor abroad so what are the… Thanks.

Nihar Shah

Yeah, I have many colleagues at Berkeley Lab. Actually, they have been collaborating with India’s National Hydrogen Mission. So, you know, I think, and thanks for the question. You know, when you come to fuel cells, I think there are a few bottlenecks. You know, some of them have to do with also just even having the hydrogen infrastructure in the country, right? Right. So I’m not necessarily the right person to address like all of these issues in terms of why hydrogen fuels have not taken off. But I do think that some of these things are still, you know, kind of an R &D challenge. And I think many of these governments are looking at hydrogen to see whether or not you can actually, you know, eventually do the R &D to deploy it.

And there is collaboration going on. So, you know, stay tuned. I think it will obviously India is also doing a lot on that and other countries also.

Narendra Singh

I can add to this that. The bottleneck as an operator is the cost should not be higher than what we are getting today from the grid. innovation should like lower down the cost then the adoption will happen rapidly so that’s what we think and that’s why I believe the adoption is not happening because people don’t want to pay premium for that and I think India can take the lead in that in terms of cost adoption and price points the supercomputer for manufacturing we are seeing 6 .5 lakhs so I think that’s the kind of speed at which we are going to change the way things are going

Tejpreet S Chopra

so Tindra I want to pull you in and the ultimate question that everybody is asking impact on jobs at the ASEAN how are you thinking about it because huge concern for governments is AI going to replace jobs is it going to enhance jobs so it would be good to get your perspective and what you are going to say out here is going to drive policy all over the world

Satvinder Singh

so I am also going to say it perspectively from also how data is being collected already on impact on jobs and actually I have taken this from the studies that actually were done by Entropic Entropic it’s a massive study on AI jobs and security and one thing is clear. I think right now, while there’s quite a major hype on AI, but when you actually study the impact that it has globally and even in Southeast Asia, in ASEAN, it’s really impacting certain segments of the economy. I think the biggest impact is actually more on white -collar jobs rather than blue -collar jobs. And it’s true because a lot of it, I think even in the white -collar jobs, a lot of it has got to do with collaborative augmentation rather than full automation and handing over to the AI to do everything.

So I think that’s at this stage where we are in terms of the technologies on AI that we have and how we’re deploying them. Of course, when you are watching Elon Musk and you watch all these technologies and what’s to come in two, three years’ time, they are saying, now this is going to move from collaboration to totally replacing the human factor. In fact, the takeover part is, I think, that’s what… scares most societies. And I must tell you this is now becoming front and centre of conversations in government, in policy makers. I’m actually quite certain that the governments are not going to hand over this ability of replacements of all important jobs at the high echelons of society to the machine.

That I can assure you is not going to happen. There will be a lot of effort and conversations going on and it’s happening in closed doors where policy will have to come in to determine what can or cannot happen. And those barometers are going to be there and I think that’s where you see this impact event. You saw the largest conglomerate of decision makers from the private sector sitting with governments in this one location. You can see that momentum is there. There will have to be an ability for us to differentiate and also collaborate with what the change is going to come. and otherwise I think you’re going to see societies breaking up, the contract of governments with people is going to break up, people won’t have jobs, and if we are saying that the impact is not so much on the blue collar I think then a lot of the farming community is probably sighing with relief but I think we all know that in the cities where there are millions of people, I think this is where it’s going to be quite critical for us to get this contract properly sorted out I think in the coming years you’re going to see a lot of ethical rules regulations set up in order to ensure that actually whatever change that we embrace coming from the latest of AI, it has to improve, not take away the quality of life I think collaboration is going to be the name of the game not displacement of the human the use of people and population and I think that is something in conversation it’s not something that in this room we can decide, but clearly you can see that the momentum is here for that kind of difficult conversations to take place

Tejpreet S Chopra

you’re right and I like what you just said and first of all I’m hearing that one collaboration not displacement because the word I’ve been using is enhancement not displacement but I think it’s going to be all of the above so I think you’re absolutely right Dr. Karpen it would be good to get your perspective especially of healthcare you talked about telemedicine right technically I guess a doctor in the United States or India could be providing advice to somebody sitting in Guyana so how are you seeing this whole world panning out in terms of the impact on healthcare jobs

Dr. Mahendra Karpan

thank you so I’m glad that you mentioned the collaboration of these services yes indeed we have in the telemedicine space we have doctors from India we have doctors from New York the Apollo hospitals here the Northwell group in New York they collaborate they are able to help us with patients in terms of displacement of human capital or human skill set though I think for most of the countries like ours, we’re starting out at a severe deficit. There is not a surplus of radiologists. There’s not a surplus of cancer diagnostic technicians. All of these skill sets are extremely limited. So AI actually comes in to help us with diagnosis, accuracy, speed of diagnosis, as well as the economic aspect of achieving all of those outcomes.

But I tell you one thing, as a physician, that we are not too concerned for some things. In the emergency room, when there’s a child who can’t breathe from asthma and they’re scared parents, an AI can make an accurate diagnosis. They can tell you exactly what to give, what mixtures to nebulize, but to comfort and reassure those parents. that’s a human function at difficult stages of life when you’re facing terminal situations end stage of cancer you want somebody with warmth to hold your hand that cannot and can never be replaced by AI so all of this we have to bear in mind the complementary aspect of this new era that we are entering into we rely on the AI to give us the accuracy of the diagnosis in fact in Guyana we just purchased software to help us with CT scan interpretations and the world is going towards more imaging earlier diagnosis and that will be used effectively to reduce cost to have better access to specialists there was a time when we could not even contemplate getting for the right treatment for the right treatment and we were just waiting and we were just waiting the top guys from Apollo to give us an opinion, or the top guys from Mount Sinai.

Now they’re willing and they’re able to, despite the time difference. Actually, it’s like quarter to five in my morning time, so if I’m a little sleepy, please forgive me. But this is how we’re using it. But that human touch, I don’t believe it will be replaced at all.

Tejpreet S Chopra

Glad to hear that. And also, I sometimes think that when you go and search something on the internet, you get hallucinations, you get false answers, so the last thing I want is a doctor to be searching and getting the wrong answer and suggesting the wrong medicine. Any other questions? Otherwise, go ahead.

Audience

Hello, I’m the CTO at MindEquity .ai and I’m also the founder of AI Society. I have two questions, actually. My first question is that if I am starting an AI pilot company, and to have a full -time impact, what is the biggest challenge? technical barriers that I think have value in both that.

Tejpreet S Chopra

Do you want to take that? Do you want to go ahead?

Narendra Singh

So scale and AI. Today you spend $2 and you generate $1 because half of the 50 % goes to the AI chip company and this problem can be only solved through enabling indigenous AI chips which has a better performance and the lower cost and maybe in the big guys who is enabling the entire ecosystem, they have to reduce the cost. That’s the best way because once you build the agents, we have billion users. It’s the largest market in the world. Scaling, when you do the scale, people will not pay for the value. $20 is not enough or $10 is not enough for the subscription but your cost is higher so I think this will take some time. The new chips is coming and that’s where the job questions related to that, if I answer this.

The job is the AI voice is fairly usage happen in the country and we are losing even government is adopting AI. They are signing all the MU with foundation companies. What I believe that they should not remove the call center. They should come up with a policy because AI is costing 7 rupees per call versus call center is only 1 rupees per call. So adopting AI in this and you are firing millions of jobs and what happened after that. So I think in some area government has to restrict the AI and those are the challenges because we have to wait for some time to figure out what these people are going to do next. Upskill their thing.

Tejpreet S Chopra

Thank you. Can I give somebody else a chance? Thanks so much. Somebody at the back. Sorry. Just give me one minute. Go ahead.

Audience

Question to Mr. Sathinder. As you are taking the topic of job in securities, say upskilling or reskilling, how can these strategies can help preserve the jobs and still the human in the loop and in the end, the relationship between these two, more better, more human friendly.

Satvinder Singh

So clearly the efforts in most countries in the world is to really start upskilling their populations. It’s really beginning. It’s starting from schools but it’s going out to the workforce because the workforce that’s actually today actively under siege with all this AI implementation. And obviously there are countries who can afford the upskilling. The more developed countries are quite generous in terms of capacity building and coming out with programs even empowering employers and workers to help themselves in order to do the upskilling. But I’m also worried sometimes, what are they upskilling with? what they sometimes upskill with may not be enough in two years time so I think this upskilling is going to be really an upskill task for all of us so ultimately I think you have to continue learning upskilling is the word but continuous learning to adapt is going to be the name of the game but you know it’s going to be harder for my generation and some of us in the panel, not all of you and for some of us in the audience but not for some of the younger ones and some of you who are just starting work right now and when I talk to some of them, the younger people they are less worried about this they are less worried because they have already grown up in the universe where things are moving in that speed and they are not talking about lifelong careers they are talking about lifelong skills that they will keep adapting to the new change so I think that is the name of the game to survive

Tejpreet S Chopra

go ahead

Audience

basically you told that the solar revolution came in India When it was A to be 30 kilowatt per hour, and now it’s to be 20. There were little, little catalysts which were involved to boost up the solar revolution in India. So, one of the revolution was subsidy and the information to people. Basically, I am in favor that AI should come and boost up because it won’t affect the jobs. It will fit the people at the particular level where they should be and it will increase the literacy. And are we also planning to give subsidy on various AI projects which are into development or subsidy level because it will play a catalyst to boost up the AI model as solar revolution came in India.

Tejpreet S Chopra

I think the government is doing a lot already. The government has already given 10 ,300 crores for the India AI mission for sovereign AI. They are giving GPUs available at 65 rupees per month. Yes. Right, per month. Not per year. Per hour. Per hour. So, we are already the cheapest in the world. So, the government has a whole slew of incentives and subsidies that they have announced and they keep on adding more. I don’t know if anybody else wants to add.

Narendra Singh

so there are quite a few no no it’s public it’s all public the event is all about India if you forget our global missions so the India is bring us together and build this entire ecosystem two years back Sam Altman was in India and talking about you can’t do this this is not part of now look at 12 foundation models country has launched so this is only possible when you democratize the AI access or GPU access to the innovators like you so that’s what government has already done you just request you will get the allocation of the GPU with one of the providers like us and you can get half of the prices paid by government by the way it’s not subsidy they are paying full price and subsidizing the end user like you the innovators thanks

Satvinder Singh

So, I think when it comes to the higher education, the challenge is worldwide. So, I can tell you in dinner conversations of some of the most established people I’ve sat with, with their children who are all in higher education, you can see that the value system is changing. The focus today of some of the most influential people who can make a difference is to actually encourage their kids to become more enterprising. So, I think the culture of being enterprising has to be given prioritization in order for the ability for us to adapt to what’s coming. And I think if we change that, if we create that and inculcate that in the universities even more, and bring it up front, I think that that will be the way we can overcome some of the challenges you face.

At least, I’m trying to address this first part.

Narendra Singh

Yeah, I think I can adopt on top of it. Set up AI like you can get the GPUs from there. But now, you don’t need to learn code today. You can code through AI, right? So you can build this. We have a billion users, billion problems. So you can solve those problems. You can make them entrepreneurial, like solve one problem at home or a college related or school related. And that’s what we also encourage people should come. Our students should come and go to industry visit. Because if they see that, they will do that. And the physical world has a lot of opportunity than the digital world. Because digital world is now concentrated with, imagine how many apps you guys are using in your phone.

Now this will go to one app, which is open AI or cloud. So the money is going to one company. And that’s dangerous than anything else.

Nihar Shah

I’ll just add on the energy part, right? So you heard also, Narendra talk about putting data centers in space, right? So. And free cooling, free energy. So that’s one part of it. But the other part I think that’s interesting about this whole energy question is that you really, I think, with AI are able to imagine potential. I mean, we don’t know what we don’t know and we don’t know what we know even, right? So one of the examples I’ll give you on that is, you know, with respect to like designing better chips, right? It’s like when they gave the, you know, Google DeepMind, when they gave the problem to AI to actually design better chips, they found a 30 % improvement in the performance of chips because AI was able to design better chips.

And so you can think about AI designing better data centers, AI designing, you know, many different parts of the whole chain. And we don’t know all of the different things that AI, you know, even mathematical computational efficiency, these kinds of things. So there are many different domains that we haven’t even touched that potentially can also have a transformative impact. And so this is a very, like I said, a very exciting time in our lives where we get to really see what the impact is going to be. Thanks.

Tejpreet S Chopra

Vin, do you want to add? Do you want to add something? No, okay.

Vinod Jhawar

Just to add to that, what we expect AI tools probably to do is to give an opportunity to grassroots. so when these tools are being employed and they learn through that and now a lot of language barriers are also being broken up so English is no longer a barrier with all the AI tools so you will have some set of people who will be using that and qualification is not a driver for that so this is what AI will do and we will see a trend where you will have a lot of blue collar upskilling by themselves no need to link it to degrees it is the self learn module assisted by AI tools which will make them competent for the market they could be either a specialist advising or they could be entrepreneurs or they could be a coach on that need not be sitting in a desk and doing something which is written there I think this is how we feel the education system also will change with the tools being available there

Dr. Mahendra Karpan

Thank you. So obviously we are the newest, particularly in consideration of this room. We’re new to the AI game, but one of the things that we’ve been able to do in Guyana is to create a digital school at the primary level. And it started working. In fact, it’s now being requested by other countries in the region. That’s the Caribbean region. And part of our objective is to use this to get kids kind of hooked on technology, AI type of education. Hopefully it can be tailored to each individual child to identify strengths, weaknesses, to strengthen the areas that are weak, whether it’s literacy, numeracy, anything, and tailored to that particular child. And so that their interests can be peaked, their interests can be exploited and expanded.

and ultimately they may be able to condense eight hours of school time, maybe three hours, and then they can go outside and play like normal kids, the way we used to play kids as kids. So the digital schooling, the digital era, is not necessarily to take all their time behind a computer and a desk, but to give them more time and more freedom and to create a habit so that that could follow them, not just at the primary level, but when they get to university and all the way up to adulthood.

Tejpreet S Chopra

Thanks very much. I know we only have, we’re out of time right now, and I’ll quickly wrap this up in about 45 seconds just so that everybody, I think it’s been an incredible discussion. Boy, it’s going two times now, so I really have to wrap it up. But I think I just want to quickly wrap up. Six or seven key takeaways from today’s discussion that we all had. The first one is the fact that I think jobs are going to be key. It’s going to be collaboration, not replacement. I think the way we do our job, that’s critical. I think Dr. Carpin talked about agriculture and health and medicine. I think there’s going to be a huge transformation.

But the good thing is humans want touch. So that’s good. But, you know, there will be a lot of revolution in terms of telemedicine, et cetera. Nihar, you talked about cooling and bottlenecks. I think those are things that we all have to think about in our countries. How do we provide the infrastructure for cooling, et cetera, and something that you all can work on and let us know how to make it more efficient. I think that’s great. You talked about in terms of NEXTRA, in terms of the talent challenges we’re going to have and how we’re going to have to manage all these data centers. Somebody mentioned recently that some of the big data centers in India, for 30 percent of the time it’s down because of the lack of talent to maintain these data centers.

You talked about supply chain. It’s fantastic that India is also thinking about putting data centers in space, which is fascinating. There’s going to be a big debate about, you know, more data centers versus the edge. Like I mentioned to you, you know, there’s one school of thought that we can actually bring the big AI to every factory in India by bringing it on the edge. And the computing power that’s developing is going to make that happen. And the last point I want to say is the point that you mentioned. And I think this is going to be the key takeaway for all of us, is that the speed at which technology is changing is so rapid that we’re all going to require continuous learning going ahead.

And it doesn’t matter how old you are, but that’s going to be the biggest takeaway for me, that that continuous learning and upskilling is going to be the key for all of us. So with that, really, thank you very much to all my panelists. And to everybody. And hopefully we can all make an impact around the world. Thank you very much.

Mohamed Kinaanath

Thank you. Thank you. Thank you. Thank you. I’ll be here. Thank you. Thank you. Thank you. Mr. Cana Dipali will sit at the front please take a seat at the front Ambassador Garcia Ambassador Garcia and if anybody wants to Ibu Ayub okay, thank you very much everyone oh, do you want I’m getting my cues from the photographer it’s not my show yet until I start okay it’s the photographer Can we please, and you’d like us to stand up for a group photo? Okay. Thank you very much. It’s very Asia. It’s not an event unless there’s a photo, so thank you very much. All right. Thank you very much. Good afternoon, everyone, and welcome. It’s a real privilege for me to host and moderate this session, Trusted AI at Scale, a Global South Leadership Dialogue, here at the India AI Impact Summit.

Now, this session hits squarely within the summit’s trusted AI pillar, and deliberately so. Because trust is no longer a downstream concern, it is now the condition for scale. Across governments, enterprises, and societies, we are moving past the question of whether AI will be adopted. The real question is whether it will be trusted by citizens, by institutions, and across borders. So why this session, and why did ISA host this session? The framing for today’s conversation is very intentional. Much of the global AI governance debate is still shaped by frameworks emerging from the Global North, the US, Europe, and China. Those frameworks are important, but they are not sufficient for the lived realities of the Global South, where AI is often deployed at population scale, under real resource constraints.

and in context where the cost of failure is not abstract, it is social, economic, and political. This is precisely the gap that AI Safety Asia was created to address. I am one of the advisors of ISA, and our mandate is straightforward but ambitious to bridge the global north and the global south on AI governance, not by importing templates wholesale, but by co -designing governance approaches that are interoperable, pragmatic, and grounded in local institutional strengths. And we do this through the three pillars, collaboration, capacity building, and policy -relevant research. And what makes this session different? That brings me to expectations. This session is not about abstract principles or ideal end states. We are here to surface operational blueprints, how trust is built in practice, and we have an amazing panel that will hopefully be able to really bring that to the table.

Thank you. and how safety is governed under real constraints, how AI systems actually reach the people and states often struggle to serve. The speakers you will hear from today are not theorizing from a distance. They are governing, financing, regulating, and deploying AI in the real world, from small island states to large democracies, from welfare delivery to financial systems, from regional cooperation to enterprise risk management. So one final framing point before we begin. The goal of today’s dialogue is not to position the Global South as a passive recipient of AI governance norms, and we’ll hear definitely from Cambodia, from the Maldives, and Indonesia, and Brazil. It is to position the Global South as a co -author of those norms, contributing models of governance that are population -scale, institution -aware, and grounded in lived social reality.

That is the through line of this session, from why trusted AI matters to who it must reach to how it is enabled, governed, and ultimately operationalized. With that, I’m delighted to open this dialogue, and we’ll begin with opening remarks that set the stakes why trusted AI is existential and not abstract. And then we’ll move through discussion. I realize that time is very short, so I think one of the reasons Ed put me here is because I’m known to crack a whip a bit. So with all due respect, I know you’re all very important people, but I will let you know when the time is up. So with that, I would like to invite His Excellency Professor Mohamed Kinanath, Minister of State for Homeland Security and Technology from the Maldives.

Your Excellency. Your Excellencies, Distinguished Head Supporters. Delegations, Honorable Ministers. esteemed leaders. It is both a privilege and profound responsibility to stand here before not merely a representative from Republic of Maldives, but a voice for many CIDs, small island developing states. I extend my warmest gratitude to the organizations of this forum for creating a platform where the aspirations of nations regardless of their geographical size can be heard alongside the strategies of those leading the frontier of innovation. Ladies and gentlemen, if the global disclosure turns to AI, it is often centered on the ambition of large economies on the computing scale or on a trillion dollar geopolitical competition. And while these dimensions significant, this represents only part of the narrative for seeds like the Maldives.

Nations defined by geographical dispersal of small islands, 1 ,200 islands, narrow economy base, and acute exposure to climate change. AI is not a matter of competitive advantage alone. It is a matter of institutional resilience. It is a matter of sovereign capacity, and increasingly, it’s a matter of survival. The Maldives comprises nearly 1 ,200 remote islands, which is spread across 850 square kilometers. Our economy has been mainly based on tourism. Our exposure to sea -level rise remains among the highest of any nation on Earth. These realities do not diminish our ambitions, and they demand we adopt technologies that can deliver public services efficiently across vast distances, strengthening governance and diversifying the economic foundation. The government of the Maldives, under the leadership of our current president, launched a Digital Transformation Agenda, a comprehensive national vision to transform the Maldives into a digital first nation within the coming three years.

The technology vision is called Maldives 2 .0. It is not a technology initiative in isolation. It is a fundamental reimagination of how these states serve its people and how the economy grows and how opportunity reaches every citizen of the Maldives. We have already begun the implementation. Maldives have good technology infrastructure if you look at the region. We have the highest – we have one of the highest internet penetration networks in the region. We have the highest number of mobile subscribers in the region. Our population is half a million. We have mobile subscribers, 1 million. 4G coverage is 100%. 5G is 80%, one of the highest in the region. Six subsea cables. And also fiber to each household is 100%. So maybe some of the European countries have not even achieved these statistics.

So considering the delivery of the AI and also considering the geography of the Maldives, AI is very important for us when it comes to the health sector, education sector, since our islands are very remote. So AI intelligence also offers the Maldives a pathway to economic diversification, enabling us to develop a knowledge economy. To cultivate local technology enterprises and to position our youth. Thank you. digitally. The Maldives is not approaching AI without preparation. We are building governance structures to ensure that this technology serves our people ethically. In July 2025, Maldives launched the AI Readiness Assessment Methodology Report, which was developed with assistance from UNESCO. And this landmark assessment, the first of its kind in South Asia. So building on this assessment, the government is now advancing to develop a national AI master plan and also an AI Act, which is also underway.

So the UNESCO Readiness Assessment has further recommended the establishment of an independent AI governance body and multi -stakeholder advisory council. So these are some of the recommendations. The UNESCO Readiness Assessment has further recommended the establishment of an independent AI governance body and multi -stakeholder advisory council. So these are some of the of the report. So as I told you, Maldives is getting ready for the AI and also since we have this Maldives 2 .0 transformation mission, we are working very hard in the next three years to get digitalization complete in the Maldives. So excellencies, the Maldives may be small in land, but we are vast in determination. We are a nation that has built its identity upon resilience, resilience against the tides that shape our shores.

So Maldives 2 .0, I have said that the vision is our commitment to the future. AI deployed responsibilities governed ethically is central to this vision. We do not seek to replicate the digital trajectories of large nations. We seek to chart a course that is authentically ours. On that reflection, our values, address our vulnerabilities. As the world convinced to deliberate on the governance of AI, let us build on AI future, which is inclusive, intelligent, equitable, and as human as the technology is powerful. So thank you so much. Thank you

Moderator

so much, Your Excellency, Minister Kananath. I’d now like to invite Dipali K hanna, Senior VP and Head of Asia for the Rockefeller Foundation for her remarks. Just before

Dipali Khanna

I start, we were talking about global north, global south. What struck me in this panel is the women are at the periphery, right? So anything and everything that we’re going to do in this space, we’ll have to get women back in the center. But I was also excited that we have strong women who can manage these men. So anyway. Good afternoon, Ministers, Excellencies, colleagues, and partners. Let me begin by thanking AI Safety Asia for convening this dialogue and JPMorgan Chase for co -hosting. The fact that this conversation is happening here in this region with this leadership really matters. PM Modi in his keynote yesterday laid out the vision for Manav, building AI that is safe, ethical, and centered on people, ensuring technology serves humanity responsibly and benefits everyone, including women, right?

We’ve just heard powerful perspectives that bring the point to life. From the Maldives that AI is not abstract policy, it is a survival tool. I know a colleague from Togo couldn’t join, but I’m sure she would have mentioned that trusted AI can make the invisible visible. So the question before us is not why AI matters or who should benefit. It is how we build it responsibly, at scale, and with legitimacy. For over 100 years, the Rockefeller Foundation has leveraged, advanced technologies for betterment of society, and we believe that there are learnings from that work also to apply trusted AI. partnership, patient capital and institutional strength. What distinguishes success stories like Togo’s Novici and India’s Coven is not just technological sophistication, it is alignment.

Governments willing to move decisively, private sector actors willing to collaborate, technologists willing to design for public systems and catalytic capital willing to absorb early risk. Novici reached nearly a million informal workers, not in months, just in days. Coven delivered at population scale with transparency and interoperability built in. This was not mere luck. These were examples of ecosystems working together. That’s partnership. For adoption, users must trust both that AI will deliver the benefits without harm. Much like early vaccine development, we need to invest in both supporting users, to adopt the technology, as well as building robust evidence and systems that ensure safety. And scaling this trusted AI in the global south requires more than venture timelines.

It requires risk tolerance. It requires capital that understands that building sovereign AI capacity involves experimentation, regulatory iteration, and institutional learning. Philanthropy can truly play a catalytic role here, not by replacing markets, not by dictating governance, but by re -risking what some leaders have described as the smart adopter model. The smart adopter does not wait for perfect consensus. It adapts responsibly. It pilots with guardrails. It builds local institutional muscle alongside technical capability. Catalytic capital can support regulatory sandboxes, independent safety assessments, talent pipelines, and interoperable standards so that adoption is both fast, nimble, and short -lived. That’s the power of patient capital. And finally, institutional strength. Digital public infrastructure has shown us something profound. Trust must be designed from day one, not retrofitted after deployment.

Transparency, auditability, grievance redress, open architecture are not compliance burdens. They’re adoption accelerators. If our AI systems are to scale in health, climate resilience, food systems and financial inclusion, they must be built on institutional foundations that citizens recognize and most importantly trust. Businesses have a critical role here. Responsible innovation is not simply about internal governance frameworks. It is about long -term partnership with governments and societies. It is about seeing trust as a strategic infrastructure, not friction, because trusted systems scale, untrusted systems stall. The Global South is demonstrating that it does not need to choose between speed and safety. It can design both. The opportunity now is to align partnerships and patient capital behind that leadership. So that trusted AI at scale is not a slogan.

It is operational. The Rockefeller Foundation stands ready to continue playing a catalytic role in that journey because trusted AI is not simply a governance aspiration. It is a development imperative. Thank you

Moderator

Thank you so much to both your Excellency Minister Kananath and Diwali for the… I thought, again, it’s a great way to start us off for the discussion today. You’re welcome to stay in front, sitting in front, but we’ll start the discussion. Actually, I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted.

I think it’s set the tone for what we really wanted. I think it’s set the tone for what we really wanted. so everyone that you see in front brings a very specific experience, skills and coming either from private sector or their government so I would love to in particular as Dipali mentioned, building trust starts from the beginning, it’s not an afterthought so I’d like to start with Under Secretary of State Your Excellency Sokeng I guess the question I’m going to have for everyone is what is the single biggest obstacle to operationalizing trust in your context based on your experience and what is it that this room that’s filled with quite a lot of people from different sectors what can we do about it as well and what you’ve heard as well in these past couple of days as you’ve been here in the summit

Son Sokeng

First, thank you Imah for for the very good set of tones of these discussions and I’d like to thank Asia AI Safety Asia for having me on these panel discussions from Cambodia perspective I would say a short answer to that is how to get the people familiar with that AI and that would start off with the people user the leader and the regulator and aside from that I can talk a little bit about the Cambodia experience on that similar to what Excellency Minister from ADEA mentioned Cambodia has began to back the journey of conducting the AI readiness assessment supported by UNESCO we completed last year in July 2025 and from that perspective we can understand rely on the recommendations and starting to think about what is the strategy for Cambodia to move forward in terms of AI adoption in Cambodia.

So based on the recommendation, the national AI strategy has been drafted and currently we are in the process of finalizing the national AI strategy. At the same time we are also drafting the national AI governance framework, keeping the national strategy in mind. And one of the key strategic priorities that we have in the national strategy is people, which is the first priority of our national strategy ranking from the user like I mentioned earlier, user the leader, regulator and also government official. The second priority is the infrastructure and data. The third and the first one is AI adoption in government and the private sector. The fifth strategic priority is the governance and the last one is cooperation and the research.

So based on this priority we can see that human is still the first and the key priority action for Cambodia. Building on that our draft AI governance framework also very much human centric so we believe that the governance should be aligned with the risk of AI. So context of our governance framework would be based on the risk assessment and to understand the risk people have to know the impact of the AI. So government has very clear intention is that we need to educate people, let people understand what is the AI tool and the implication of that. So since 2024 government introduced because Cambodia Digital Skills Roadmap, which we outline what is the plan for the next 10 years for Cambodia in terms of human development.

And our goal is that in the next 10 years, we will have 100 ,000 talents who are AI -ready. And in addition to that, we also introduced various programs to educate government officials. As of now, we have trained more than 10 ,000 government officials. Basic digital skills, and also part of it is the AI skill as well. And so based on what we have right now, if one thing that you ask me what we can do in this room is that I would like to say is to increase the capacity of humans to understand the risk of

Moderator

Thank you so much. I have so many questions but I’m going to hold them for now I’m going to move to Ambassador Garcia as a tech ambassador for Brazil as a G20 country leaving BRICS and all of these along with Indonesia as well for G20 as I mentioned the global south must be architects and not observers and I believe Brazil is at the forefront of this can you say a little bit more about that and what obstacles do you find

Eugenio Vargas Garcia

capabilities to harness the power of the technology so somehow we need to enhance our one national capabilities but in cooperation with other partners overseas and finally we only had COP30 as you remember last November and we included digital technologies and climate change as a sustainability problem because now we have been discussing in terms of data centers energy efficiency so sustainability is key in a way that we are always trying to send this message in terms of AI development oriented strategy and I think for the global south it’s important that we engage in tech diplomacy because otherwise we will not get hurt to do what we are doing and we will not be able to do what we are doing to do what we are doing heard and we need to speak up and our voice be heard where it matters Thank you so much

Moderator

So moving from one great nation in the south to another one, Ibu Ayu Ibu Ayu is the director of AI and Emerging Technology Ecosystems of the Ministry of Communications in Indonesia Ibu Ayu, can you tell us a little bit more about Indonesia’s national strategies, basically where do you find the obstacles as well and as Ambassador Garcia mentioned in the ecosystem of BRICS where does Indonesia or where is ASEAN sitting on this as well

Aju Widya Sari

Thank you Ima It’s an honor for me to sit here from Ministry of Communications and Digital Affairs I cannot say it is an obstacle, I say it’s challenging once you know mentioning about the challenging one Indonesia has many things to be resolved. One is the infrastructure, because you know that our penetration of broadband, especially for mobile broadband, even though it is above 95%, but it is still based on 4G coverage. You know that AI, we need more coverage for 5G. And then the penetration of fixed broadband and backbone is quite low, because you know Indonesia has hundreds of district area and 10 ,000 of sub -district area. Today, the penetration is still 70 % by sub -district area. That’s why we need to push the penetration of the backbone.

Regarding of the data center, today our providers of data center… We have many data centers, but the GPU basis is still limited. So I think we need to invest more regarding the processing for AI. And then this is relating to the infrastructure. And relating with this framework of regulation, right now in Indonesia we have set up the roadmap of AI, national roadmap AI, and also we are preparing the guideline ethical of AI. Talking about the national AI roadmap, we are sure that we need to have strategies that are real, not just theoretically. Because, you know, when we explain, execute our vision in national roadmap, We have four strategic directions. One is governance collaborative, and the second is encouraging innovation ecosystem.

And the third is to strengthen capabilities and capacities, including infrastructure. And the last is mitigating risk. You know that this national roadmap is important for us because we need clarity for five years ahead. Regarding to the issue that come from AI. Regarding to the ethical AI guideline, we set up the rule and clarity of responsibility of AI actors. And also we preparing the instrument for monitoring and evaluation. Because you know, ethic not just ethic, we have to monitor it one. And the last is we have… We have to put the safeguard for the people, how they using and develop AI. That’s the main thing that we preparing.

Moderator

Thank you, Ibu Ayu. I think it’s been mentioned already, and I’m glad Ambassador Garcia mentioned it. And, of course, in his address, Minister Kinanath mentioned, and I’m going to turn to Dr. Parakana. You did mention something about, in our, sorry, I’m going to bring the discussion that we had in the green room. I’m calling it the green room. It’s not green. It’s green, about how you, as a private company, utilize and how that could be beneficial for climate resilience and development, especially in vulnerable countries. So can you tell a little bit about that? Dr. Parakana, of course, is the founder and CEO of AlphaGeo.

Parag Khanna

Thank you. Thank you so much, Ina. Thank you all for being here. Well, AI as a concept evokes this notion of leapfrogging. Do you remember when we used to use that? We used to use that term all the time, leapfrogging. And, of course, it applied very appropriately to mobile telephony, to fintech, to renewable energy, solar panels. So, you know, faster, better, cheaper. and inherent in that concept, which is very important now when we talk about AI, is the notion of second mover advantage. That’s what leapfrogging was fundamentally about, having second mover advantage. Now, why that’s relevant right now is because, of course, developed countries in particular, particularly the United States and others, have invested enormous amounts of capital in the capex requirements of AI.

You know, some significant percentage of U .S. GDP growth, for example, is attributable right now to that AI capex -related infrastructure investment. But that is not something, of course, that nations of the global south, so to speak, developing countries can afford. And so the question becomes, is there an advantage to late development when it comes to AI that can save developing countries of the south a lot of money while still enjoying the fruits of that innovation? So it’s important to not, especially in the context where you’re making trade -offs, between electricity, food, water, the basics for your population, while, of course, there’s now this almost emotional and hype pressure to invest, you know, to clear land, to build data centers, to divert energy, we have to ask ourselves, is that the right way to allocate capital?

Or should one be taking advantage of cloud computing, edge computing, sovereign cloud solutions that can generate the same or better output, bang for your buck, with less CapEx expenditure? And that’s the moment that we’re at. And it’s important to remind that we’re having this conversation in India. And one of the virtues of India hosting this event is precisely that India’s rise as an AI superpower, you know, breaks the narrative out of this conventional wisdom that it’s a two -horse race between the U .S. and China, and that you’re doomed in some way to choose between your data being, you know, hoovered up by one or the other player. what India is offering, at least more than in theory, is rapid diffusion of the latest technologies, cloud -based models and solutions, through the tools of digital public infrastructure, DPI, which has been one of the benefits of this event now over the course of the years.

People have learned this all -important acronym, DPI, which I’ve adhered to or believed in, been a supporter of for quite some time, because it does hold the promise for neutrality, for a menu of options, for being delivered in a way that protects sovereignty of data, but in a very affordable way. And India has done it, been a pioneer of it, obviously domestically, with Adar and so forth. And for those, if it hasn’t been disclosed enough this week, more than 50 countries are building payment systems and identity systems on that stack. So that’s a great example of DPI. So think of AI in that mold of second -mover advantage, leapfrogging, following the mold of cloud -based sort of solutions that can be low -cost.

Now let me just quickly talk about two areas where there are huge gaps in public sector access to data or ownership or simply knowledge of solutions that AI, and particularly the AI that we, the way in which we apply data science, is to geospatial data. And these are also two areas that are of critical, fundamental, if not existential importance to developing countries. One is sustainable urbanization, and the second is climate adaptation. Anywhere you go in the world, actually rich or poor countries, if you survey the average person on the street and ask them, what is the biggest problem plaguing your society, nine out of ten people that I speak to in dozens of countries around the world is affordable housing.

And I think that’s a really important part of the problem. just sustained urbanization that is so organic, so rapid, so unplanned accelerating around the world but now finally governments have the tools again, geospatial tools, mapping tools understanding which districts, which settlements are expanding and why where are people coming from what kinds of housing need to be built where governments have always been fighting backwards or if not given up, quite frankly, on grappling with these issues but now we have foresight AI -powered geospatial tools that can look decades ahead and say this has been your time series urban expansion this is how you map it out this is where you should be building what and when and so bringing together demographics bringing together infrastructure bringing together migration, fiscal spending and directed targeting in a way that is a great use case for AI that almost the entire development developing world could use and has barely begun to use and is very cost -effective, right?

So that’s number one. The second, equally if not more important, is climate adaptation. Climate risk is both acute and chronic. We’re talking about monsoons, floods, fires that are becoming more frequent and devastating. And, of course, complex climate modeling is not the kind of thing that any individual country can or should finance. We have global climate models that are AI -powered, that are developed with the world’s best institutions, that are publicly financed, that are now available to be downscaled for your country. And this is something that, again, especially developing countries, especially countries of the south, that are most affected by climate dislocation, by climate risk, can and should take advantage of. But, again, to be clear, they have barely begun to do so yet.

So targeting infrastructure investments, targeting your infrastructure to adapt to climate risk, where do you need to build? Seawalls, flood barriers, flood control measures. irrigation systems for drought, all of that, we are again, just like urbanization, are years and years and years behind, and there’s almost no country on this panel, almost no country in the world, even wealthy countries, that are ahead of the curve on this. The entire planet is behind, as we know from COP summits, but it is countries of the south that are going to be the worst affected on the fastest timeline. If you’re not using the tools that are available right now, AI -powered climate modeling, scaling, adaptation scoring, in order to plan your national infrastructure, and then putting together the public -private partnerships to get it done, you’re behind.

So this is about global public goods, right? Affordable housing, a manageable urbanization at a global scale, climate adaptation for people everywhere, but it has to be delivered locally. And that’s why it’s incumbent on each nation represented here, each nation of the global south to really harness and take advantage of these tools.

Moderator

Thank you so much, Dr. Parag. Again, lots of questions in my head. Kip Wainscott, Executive Director of Global AI Policy from JPMorgan Chase, one of our biggest supporters as well. Thank you so much for supporting us for this event. You are not here just because of that, I can assure you. But I’d love to hear what you have to say, particularly the question that I brought forward earlier about the obstacles, in particular in where you see it. But again, financial services, model risk management, and all of that in the safety architecture of AI. Yeah. Go ahead.

Kip Wainscott

Thank you. A lot to unpack there. This is a great panel, by the way. So many esteemed panelists. I really feel privileged to share the microphone with all of you. You know, it’s interesting thinking about these things from the vantage of JPMorgan Chase because we’re really kind of interrogating the questions from sort of three different perspectives, right? One is one of the world’s largest financial houses that’s deeply invested in artificial intelligence. We have an acute interest in unlocking the value of this technology and seeing the growth potential of this technology. But there’s a simple truth that we recognize, and that is that AI is only valuable if it is deployed, and deployment depends on trust.

And so really building out, you know, we have an interest in this sort of multi -stakeholder dialogue about what that trust model that is going to unlock diffusion, you know, not just across enterprises, but in the public sphere across the global south, and really putting this technology into organizations that are impacting people’s real lives. The second perspective from which we’re looking at all of this is as a deployer of the technology ourselves. We are one of the world’s largest deployers of AI. And what’s interesting, we’re also one of the most regulated industries in the financial sector, and yet financial services have been the earliest adopters of AI. We’ve been using artificial intelligence through this sort of evolutionary ramp of really more than a decade.

To combat fraud, to protect consumers, to create just more efficient personalization of financial services. And I think one reason why you see financial services companies so ready and eager to adopt is because we have that existing trust architecture. Trust isn’t just a feature of financial services. It’s the core business model. And so we have… Thank you. We have these, you mentioned, you know, model risk management. We have these rigorous practices of evaluating models, of documenting governance and oversight, of really ensuring that there’s ongoing monitoring across all of our technology deployments in a way that just lends itself to what I would call a comfort in sort of building the trust ecosystem for responsible deployment. And then sort of the third prism that we look at this issue from is as a purchaser of these technologies and like kind of almost a procurement lens here.

We spend $20 billion annually on our technology budget. That puts us in this really sizable position in the innovation ecosystem of, you know, startups and scale -ups that they want to sell their products. They’re building innovative new artificial intelligence applications with the hope that they’re going to be able to sell their products to the world. Selling it to JPMorgan Chase. And we see a real innovation. inefficiency right now in the fact that there isn’t a shared sort of set of expectations for trust, for, you know, what these products should be benchmarked against in order for us to ingest them, you know, in a way that, you know, we have the confidence is going to serve our customers well, is going to reflect our, you know, our responsibilities, our duty of care as a, you know, a regulated industry.

And so, you know, it speaks to, I mean, I think one, the need to bring these diverse perspectives to this conversation around governance so that we can really kind of get past the sort of compartmentalization of like AI safety as sort of a siloed conversation and accelerated AI adoption as a different conversation. This is the same conversation. And, you know, what we really need to, I think the purpose of both of those conversations is to really get past the sort of compartmentalization of AI safety as sort of conversations is to really align on this trust model that is going to ensure that we can deploy these technologies, you know, in a very broad and impactful way across the economy.

Moderator

I’m going to put you on the spot while you have your microphone a little bit you’ve been here throughout the week and you’ve heard the panelists just now speak from what you’ve been hearing throughout the week how optimistic are you in terms of I think His Excellency Sokeng mentioned about collaboration how confident are you in building these collaborations to build trust in AI just from the conversations that you’ve had this week?

Kip Wainscott

Yeah, no I’m optimistic I think just the fact that we’re here in New Delhi and having this summit in this environment this is a much bigger summit, I think it’s a more inclusive cross section of voices and so I think that that reflects that this conversation is getting bigger that we’ve moved past this focus on that technical capabilities, which is kind of where we have been, to now I think capability has really been almost commoditized and legitimacy has not. And we’re in this phase now where we really need to establish the legitimacy of these technologies and that they are fit for purpose, that they can be trusted and deployed across these different societal sectors. And so I think that I am optimistic.

It requires intention. And I’m seeing the intentionality, I think, around the curation of these conversations. I think there’s a lot to carry forward here. Also, some of you may have seen we’re very near the end of this summit. And I think before we were even halfway through, excuse me, I’m running on fumes at this point, but we were more than halfway through the week and people were already writing up the assessment. Of what, you know, what the themes were, what the takeaways were. and people were saying, you know, oh, this summit is no longer about, you know, responsibility or safety or, and I just, that isn’t my perception of these conversations. It really is that, you know, we’re just talking about them in a different way.

We’re talking about them in how they are going to impact real lives, how we can take this technology into the economy in real valuable ways. And in order to do that, we have to include that sort of trust dimension.

Moderator

Okay. Thank you so much. We have eight minutes left, and I’ve been told that we have to finish on time, but I really want to get this question in and hopefully be able to hear from everyone. So Ambassador Garcia and Your Excellency Sokeng and Ibu Ayu, what are you taking away? What are you taking home from this panel, first of all? Or from the week that you’ve been here, reflecting on what Kip just mentioned?

Eugenio Vargas Garcia

Yes, thank you. First, I think India was very successful bringing this summit to the Global South for the very first time. But this was the Bletchley process that began in the UK in 2023. We have Seoul, Paris. So this, what we have been discussing here, is something that is more inclusive. And some new concerns were added to the agenda, sustainability, not that it was not discussed before, but with this perspective coming from the Global South, which is important. So I would conclude with three recommendations, because we need to be practical. We are thinking mostly we agree on high -level principles in terms of AI governance. But when we think of countries lacking resources, or having other competing priorities, so they need to decide what to do and prioritize in many cases.

So I think they should start small and have a few small scales. quick impact projects so that they can build on proven success so let’s say focus on some education, healthcare, agriculture then focus on some specific projects and then build to reach the next level second is that we need to seek they need to seek international partners sometimes it’s it’s useful and needed to enhance national capabilities it’s difficult for a single country alone to do this investing in infrastructure and do something that’s expensive so seek international cooperation and third, as I said before engage in these discussions at an international level engage in tech diplomacy and send more people to discuss where I think it’s important including the United Nations thank you so much

H.E. Sokeng

Thank you. Having seen the time, I’ll just go very quickly on the last sentence. Coming to this summit, I agree with our parents that it’s very inclusive and we can see perspective from all the stakeholders, from the government, the industry, academia, and even the startup. So learning from this, I have just one wish, which is that we have to be honest with each other, the industry, the government, and bear in mind that we are here to protect people for the people. So whatever we do, we need to think about people first. With that, please consider that when we think of governance frameworks, the regulation of the law that the government might put should be the mechanism to promote innovation.

It’s not an obstacle. It’s not an obstacle for the innovation. So in order to do that, we need to build trust also, and we need to be honest with each other. Thank you.

Moderator

Ibu Ayu, quickly.

Aju Widya Sari

Thank you. Actually, I’m very impressed with the spirit of Prime Minister Modi yesterday. I think every country has the same spirit regarding to the AI. So the three points that I’m taking from this summit, one is collaboration, indeed, and then inclusive, because if we consider about inclusive, we need intention from government, from industry, from the people. And then the last is investment, because investment, you know that AI needs more and more investment. This is a collaboration come. But the issue will come is how we define the sovereign, because sovereign is based on the… the needs of the country. how we define, is it equal or not? And still, it’s an under question of me also.

Moderator

Thank you so much, Iwayu. Dr. Parag, I’m going to have you bring it home in one minute. What you’re taking home, in particular in your conversations with some of the different governments here.

Parag Khanna

Well, the first thing is I actually want to echo Kip’s point is that we’re at an inflection point where we can’t, we’ve been, in phase one, let’s say, there was a lot of harping about trust. Can we trust? Can we not trust? And I think it’s a good thing that that pressure was there, but now that pressure to have transparency in models has delivered to some degree. And that it’s been done in a way where public and private have not been on opposite sides of the discussion, but have really partnered. So I think we’re really beyond that. And now we can move from models and theory into action and application. And that’s the part of the stack that we want to be on.

The infrastructure build -out is there. It’s being provided. The apps are being developed. They’re being deployed. I have seen a little bit of but would want to see a lot more in subsequent editions of this, especially as this summit, you know, migrates around the world now and remains perhaps in the hands of developing countries on the application side as much as possible and that we think not just about very specific verticals as we have been here and elsewhere, sort of your health care, education, I’ve emphasized climate and others, but probably something more societal and around resilience. You know, resilience is a term that comes up a lot but doesn’t really get quantified enough. And if we can push for that, that’s going to help us to establish performance benchmarks, not just of models but in applications.

And that’s really what I think everyone wants to see to make sure that AI doesn’t become something of not just a financial bubble but something almost of a policy bubble as well.

Related ResourcesKnowledge base sources related to the discussion topics (36)
Factual NotesClaims verified against the Diplo knowledge base (3)
Confirmedmedium

“Tejpreet S Chopra opened the session by emphasizing that AI‑driven workforce and economic strategies are the summit’s top priority for governments worldwide, which are asking how AI will reshape society, industry and employment.”

The opening remarks of the summit explicitly highlighted AI-driven workforce and economic strategies as a critical topic, matching the report’s description [S9] and the agenda listing Tejpreet S Chopra as a speaker on AI strategies for jobs and economic development [S1].

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Correctionhigh

“Satvinder Singh described DEFA as the largest legally‑binding regional digital agreement under negotiation by the 11 ASEAN nations and India, intended to create a digitally‑interconnected market of 700 million people.”

The knowledge base indicates that DEFA is being negotiated by the ten ASEAN member states (not eleven) and does not yet include India as a signatory; it is described as the first regional digital economy agreement covering digital ID, payments, data flows and trade [S51] and [S102].

Additional Contextlow

“Satvinder Singh described DEFA as the largest legally‑binding regional digital agreement under negotiation by the 11 ASEAN nations and India, intended to create a digitally‑interconnected market of 700 million people.”

DEFA aims to establish a region-wide digital public infrastructure and is positioned as a pioneering regional digital-economy framework, which provides context for its significance even though the membership details differ from the claim [S51].

External Sources (112)
S1
Shaping the Future AI Strategies for Jobs and Economic Development — – Nihar Shah- Vinod Jhawar- Narendra Singh- Aju Widya Sari
S2
Digital democracy and future realities | IGF 2023 WS #476 — Nima Iyer:Yes, yes, yes, definitely. Thank you so much for that. Thank you. But what you said also got me thinking about…
S3
Transforming Agriculture_ AI for Resilient and Inclusive Food Systems — -Arwin Datumaya Wahyudi Sumari: Indonesian Air Force officer and professor at the State Polytechnic of Malang, co-invent…
S4
Shaping the Future AI Strategies for Jobs and Economic Development — -Dr. Mahendra Karpan- Interventional cardiologist and presidential advisor to Guyana, expert in healthcare transformatio…
S5
Building the Workforce_ AI for Viksit Bharat 2047 — -Dr. Jitendra Singh- Role/Title: Honorable Minister, Minister of State for Personnel, Minister of State for Personal Gri…
S6
ElevenLabs Voice AI Session & NCRB/NPMFireside Chat — -Shailendra Pal Singh: Role/title not explicitly mentioned, but appears to be a co-presenter/expert on Bhashini translat…
S7
S8
Shaping the Future AI Strategies for Jobs and Economic Development — So I appreciate everybody who’s out here. My name is Tej Trikot Chopra, and I’m the founder and CEO of Industry .AI. So …
S9
https://dig.watch/event/india-ai-impact-summit-2026/shaping-the-future-ai-strategies-for-jobs-and-economic-development — So I appreciate everybody who’s out here. My name is Tej Trikot Chopra, and I’m the founder and CEO of Industry .AI. So …
S10
S11
[WebDebate] The UN beyond the West: How do countries from the Global South make their mark? — Dr Eugenio Vargas Garcia is senior adviser on Peace and Security at the Office of the President of the 74th Session of t…
S12
Eugenio Vargas Garcia — Eugenio Vargas Garcia has 30 years of professional experience in foreign policy and diplomacy. He holds a PhD in History…
S13
Shaping the Future AI Strategies for Jobs and Economic Development — – Dipali Khanna- Kip Wainscott – Parag Khanna- Narendra Singh
S14
S15
Shaping the Future AI Strategies for Jobs and Economic Development — -H.E. Sokeng- Same as Son Sokeng, referred to with diplomatic title
S17
Open Forum #47 Demystifying WSis+20 — – **UNKNOWN** – Role/title not specified in transcript Kurtis Lindqvist: I’m Kris Lindqvist. I’m the President and CEO …
S18
Shaping the Future AI Strategies for Jobs and Economic Development — – Dipali Khanna- Kip Wainscott – Parag Khanna- Narendra Singh
S19
WS #280 the DNS Trust Horizon Safeguarding Digital Identity — – **Audience** – Individual from Senegal named Yuv (role/title not specified)
S20
Building the Workforce_ AI for Viksit Bharat 2047 — -Audience- Role/Title: Professor Charu from Indian Institute of Public Administration (one identified audience member), …
S21
Nri Collaborative Session Navigating Global Cyber Threats Via Local Practices — – **Audience** – Dr. Nazar (specific role/title not clearly mentioned)
S22
Keynote-Olivier Blum — -Moderator: Role/Title: Conference Moderator; Area of Expertise: Not mentioned -Mr. Schneider: Role/Title: Not mentione…
S23
Keynote-Vinod Khosla — -Moderator: Role/Title: Moderator of the event; Area of Expertise: Not mentioned -Mr. Jeet Adani: Role/Title: Not menti…
S24
Day 0 Event #250 Building Trust and Combatting Fraud in the Internet Ecosystem — – **Frode Sørensen** – Role/Title: Online moderator, colleague of Johannes Vallesverd, Area of Expertise: Online session…
S25
Shaping the Future AI Strategies for Jobs and Economic Development — -H.E. Sokeng- Same as Son Sokeng, referred to with diplomatic title
S26
Kingdom of Cambodia — The technical team that drafted the sub-decree was led by H.E. Dr. HENG Sokkung , Secretary of State of MIST…
S27
ISBN: — – H.E. Dr. Amani Abou-Zeid, African Union Commission – H.E. Ms. Aurélie Adam Soulé Zoumarou, Benin – Dr. Ann Aerts, …
S28
Shaping the Future AI Strategies for Jobs and Economic Development — – Satvinder Singh- Dr. Mahendra Karpan- Vinod Jhawar- H.E. Sokeng – Tejpreet S Chopra- Satvinder Singh- Son Sokeng- Vin…
S29
Shaping the Future AI Strategies for Jobs and Economic Development — So I appreciate everybody who’s out here. My name is Tej Trikot Chopra, and I’m the founder and CEO of Industry .AI. So …
S30
Panel Discussion: 01 — When asked to rate global AI infrastructure progress on a scale of one to ten, Minister Patria gave it 6 out of 10, high…
S31
Leveraging the postal network for a sustainable and inclusive deployment of digital infrastructure and services (UPU) — However, challenges in achieving connectivity and ensuring secure cash distribution in remote areas highlight the unique…
S32
WS #214 AI Readiness in Africa in a Shifting Geopolitical Landscape — Fundamental infrastructure challenges—including limited computing power, inadequate connectivity, and capacity gaps—requ…
S33
Signature Panel: Building Cyber Resilience for Sustainable Development by Bridging the Global Capacity Gap — Indonesia:Thank you. Moderator, Mr. Robin, good afternoon to all delegations here, allow me this morning to convey three…
S34
Enhancing the digital infrastructure for all | IGF 2023 Open Forum #135 — Dian:Okay, thank you, Mr. Hayasi for the question. So I would like to address it in the role that Indonesia expect from …
S35
Comprehensive Report: UN General Assembly High-Level Meeting on the 20-Year Review of the World Summit on the Information Society (WSIS) Outcomes — At the same time, Indonesia is also preparing for the next frontier by advancing national frameworks on artificial intel…
S36
WS #53 Promoting Children’s Rights and Inclusion in the Digital Age — Speaker 3: Hello, everyone. My topic is the future of learning digitalization in primary education for sustainable de…
S37
Responsible AI for Children Safe Playful and Empowering Learning — AI could easily offer little prompts that inspire me to play. It could support diverse learning methods. AI could help u…
S38
DIGITAL DIVIDENDS — In addition to foundational skills, workers are being required to use more critical thinking and problem solving, commu…
S39
HETEROGENEOUS COMPUTE FOR DEMOCRATIZING ACCESS TO AI — “as we go from one gig to nine to ten gig … we have to realize that india is challenged by three physical things that …
S40
Comprehensive Report: “Converging with Technology to Win” Panel Discussion — Energy constraints are real – gas-fired power plants remain the primary scalable solution for data centers due to physic…
S41
Redrawing the Geography of Jobs / Davos 2025 — Audience: Hello, can you hear me? I’m Suin Lee, I’m one of the shop social entrepreneur working in education sector. …
S42
The Innovation Beneath AI: The US-India Partnership powering the AI Era — But. I think for entrepreneurs, it’s an extraordinary opportunity. And those that will win. in my mind over the next few…
S43
Building Trusted AI at Scale Cities Startups & Digital Sovereignty – Panel Discussion Moderator Amitabh Kant NITI — Bhattacharya identifies specific challenges faced by blue-collar workers including limited access to job opportunities, …
S44
(Interactive Dialogue 3) Summit of the Future – General Assembly, 79th session — – Mohamed Muizzu (President of Maldives) – Co-chair Mohamed Muizzu: I thank my esteemed co-chair for his statement. A…
S45
IGF 2025: Africa charts a sovereign path for AI governance — African leaders at theInternet Governance Forum (IGF) 2025 in Oslocalled for urgent action to build sovereign and ethica…
S46
Climate diplomacy — Climate diplomacy also focuses on building alliances and partnerships beyond formal negotiation settings. This involves …
S47
Technology and Diplomacy: The Rise of Multilateralism in the Bay Area — Eugenio V. Garcia, the Brazilian Tech Diplomat in San Francisco, stressed the need for the participation of developing c…
S48
AI and the future of digital global supply chains (UNCTAD) — Governments in developing countries play a crucial role in fostering technological progress. They need to understand the…
S49
Can Digital Economy Agreements Limit Internet Fragmentation? | IGF 2023 Day 0 Event #76 — Digital Economy Agreements (DEAs) challenge the traditional boundaries of trade law in terms of scope and institutional …
S50
Media Briefing: Unlocking ASEAN’s Digital Future – Driving Inclusive Growth and Global Competitiveness / DAVOS 2025 — This comment introduces the concept of a regional digital economy agreement for ASEAN, positioning it as a potentially g…
S51
ASEAN set to introduce region-wide digital economy agreement — The Association of Southeast Asian Nations (ASEAN), supported by the World Economic Forum and the ASEAN-Korea Cooperatio…
S52
Global AI Policy Framework: International Cooperation and Historical Perspectives — Werner identifies three critical barriers that prevent AI for good use cases from scaling globally. He emphasizes that d…
S53
AI Infrastructure and Future Development: A Panel Discussion — Four years ago, a data center project had 100 electricians with 80 experts and 20 beginners. Now projects have 2,000 ele…
S54
Conversational AI in low income & resource settings | IGF 2023 — Dino Cataldo Dell’Accio:Thank you very much, Dr. Gupta, for inviting me to participate in this very relevant, very impor…
S55
MedTech and AI Innovations in Public Health Systems — Shri Saurabh Jain from the Government of India outlined the SAHI (Strategy for Artificial Intelligence in Public Health)…
S56
WS #53 Leveraging the Internet in Environment and Health Resilience — – June Parris- Yao Amevi A. Sossou Artificial intelligence and other technologies should be designed to support rather …
S57
Scaling Trusted AI_ How France and India Are Building Industrial & Innovation Bridges — And it’s very useful. It’s used to benchmark applications and performance on quantum computers and using AI techniques a…
S58
Developing capacities for bottom-up AI in the Global South: What role for the international community? — ### Infrastructure Prerequisites Versus Pragmatic Implementation Jovan Kurbalija: Thank you. She’s quiet. Okay, okay. G…
S59
AI for agriculture Scaling Intelegence for food and climate resiliance — This comment is profoundly insightful because it cuts through the AI hype and addresses the fundamental challenge of res…
S60
Building Trusted AI at Scale Cities Startups & Digital Sovereignty – Keynote Amb Thomas Schneider — Rather than creating entirely new governance structures, Schneider advocated building upon existing international dialog…
S61
Shaping the Future AI Strategies for Jobs and Economic Development — -Workforce Transformation and Job Impact: A central theme throughout both panels was whether AI will replace or enhance …
S62
Bridging the Digital Skills Gap: Strategies for Reskilling and Upskilling in a Changing World — Economic | Development | Sociocultural The argument emphasizes that the primary threat to employment is not AI replacin…
S63
Comprehensive Report: AI’s Impact on the Future of Work – Davos 2026 Panel Discussion — Continuous learning and adaptability are essential for future workforce
S64
Can Digital Economy Agreements Limit Internet Fragmentation? | IGF 2023 Day 0 Event #76 — Digital Economy Agreements (DEAs) challenge the traditional boundaries of trade law in terms of scope and institutional …
S65
ASEAN set to introduce region-wide digital economy agreement — The Association of Southeast Asian Nations (ASEAN), supported by the World Economic Forum and the ASEAN-Korea Cooperatio…
S66
Media Briefing: Unlocking ASEAN’s Digital Future – Driving Inclusive Growth and Global Competitiveness / DAVOS 2025 — This comment introduces the concept of a regional digital economy agreement for ASEAN, positioning it as a potentially g…
S67
Powering AI _ Global Leaders Session _ AI Impact Summit India Part 2 — This comment reframes the entire AI development narrative by identifying energy as the primary bottleneck rather than th…
S68
HETEROGENEOUS COMPUTE FOR DEMOCRATIZING ACCESS TO AI — -Infrastructure Constraints and Resource Management: Significant focus on three critical bottlenecks – power consumption…
S69
Designing Indias Digital Future AI at the Core 6G at the Edge — Roy emphasizes that infrastructure challenges, particularly power consumption and site requirements, are the main factor…
S70
Conversational AI in low income & resource settings | IGF 2023 — Dino Cataldo Dell’Accio:Thank you very much, Dr. Gupta, for inviting me to participate in this very relevant, very impor…
S71
MedTech and AI Innovations in Public Health Systems — Shri Saurabh Jain from the Government of India outlined the SAHI (Strategy for Artificial Intelligence in Public Health)…
S72
WS #53 Leveraging the Internet in Environment and Health Resilience — – Jorn Erbguth- June Parris- Yao Amevi A. Sossou – June Parris- Yao Amevi A. Sossou Artificial intelligence and other …
S73
Leaders TalkX: ICT application to unlock the full potential of digital – Part II — – Niraj Verma- Celestin Kadjidja- Ran Evan Xiao Liao Connectivity alone is not enough; what matters is meaningful use o…
S74
Scaling Trusted AI_ How France and India Are Building Industrial & Innovation Bridges — And it’s very useful. It’s used to benchmark applications and performance on quantum computers and using AI techniques a…
S75
AI for agriculture Scaling Intelegence for food and climate resiliance — This comment is profoundly insightful because it cuts through the AI hype and addresses the fundamental challenge of res…
S76
WS #100 Integrating the Global South in Global AI Governance — AUDIENCE: Any insights or thoughts? Just one quick thought around good practices I’ve seen governments adopt in the r…
S77
Developing capacities for bottom-up AI in the Global South: What role for the international community? — ### Infrastructure Prerequisites Versus Pragmatic Implementation Jovan Kurbalija: Thank you. She’s quiet. Okay, okay. G…
S78
Bridging the AI innovation gap — The tone is consistently inspirational and collaborative throughout. The speaker maintains an optimistic, forward-lookin…
S79
Powering the Technology Revolution / Davos 2025 — The tone was generally optimistic and forward-looking, with panelists highlighting opportunities for innovation and prog…
S80
Panel Discussion Inclusion Innovation & the Future of AI — The discussion maintained a constructive and collaborative tone throughout, with panelists building on each other’s poin…
S81
Panel Discussion AI in Digital Public Infrastructure (DPI) India AI Impact Summit — The tone was consistently optimistic and forward-looking throughout the conversation. Speakers expressed excitement abou…
S82
The Innovation Beneath AI: The US-India Partnership powering the AI Era — The tone was consistently optimistic and forward-looking throughout, with panelists expressing excitement about opportun…
S83
What policy levers can bridge the AI divide? — The discussion maintained a collaborative and optimistic tone throughout, with participants sharing experiences construc…
S84
National Disaster Management Authority — The discussion maintained a collaborative and solution-oriented tone throughout, with participants sharing both challeng…
S85
Safe Smart Cities and Climate Frustration — The discussion maintained a collaborative and solution-oriented tone throughout. Speakers were optimistic about the pote…
S86
Emerging Markets: Resilience, Innovation, and the Future of Global Development — The tone was notably optimistic and forward-looking throughout the conversation. Panelists consistently emphasized oppor…
S87
Debating Technology / Davos 2025 — The tone of the discussion was largely thoughtful and measured, with the speakers acknowledging both the promise and ris…
S88
Wrap up — These key comments fundamentally reframed the discussion from typical technology policy debates to deeper philosophical …
S89
AI-Driven Enforcement_ Better Governance through Effective Compliance & Services — These key comments fundamentally shaped the symposium by establishing a framework for responsible, human-centric AI adop…
S90
Reskilling for the Intelligent Age / Davos 2025 — These key comments shaped the discussion by broadening the focus from purely technical skills to encompass leadership ab…
S91
From summer disillusionment to autumn clarity: Ten lessons for AI — Additionally, the EU’s long-negotiated AI Act imposes strict rules on AI systems (e.g. high-risk systems must meet safet…
S92
Building the Workforce_ AI for Viksit Bharat 2047 — The tone was formal and optimistic throughout, maintaining a diplomatic and collaborative atmosphere. Speakers consisten…
S93
How the EU’s GPAI Code Shapes Safe and Trustworthy AI Governance India AI Impact Summit 2026 — The tone is constructive and collaborative throughout, with speakers building on each other’s points rather than disagre…
S94
Impact & the Role of AI How Artificial Intelligence Is Changing Everything — The discussion maintained a cautiously optimistic tone throughout, balancing enthusiasm for AI’s potential with realisti…
S95
AI for equality: Bridging the innovation gap — The conversation maintained a consistently optimistic yet realistic tone throughout. Both speakers demonstrated enthusia…
S96
Ensuring Safe AI_ Monitoring Agents to Bridge the Global Assurance Gap — The tone was collaborative and solution-oriented throughout, with participants acknowledging both the urgency and comple…
S98
Leaders’ Plenary | Global Vision for AI Impact and Governance Morning Session Part 1 — Honourable Prime Minister Modi, Excellencies, dear colleagues, ladies and gentlemen. It is a great honour for me to be i…
S99
AI Transformation in Practice_ Insights from India’s Consulting Leaders — Both speakers positioned AI as one of the most significant disruptive forces in a generation, requiring organisations to…
S100
Driving Indias AI Future Growth Innovation and Impact — Thank you so much, Dr. Mohindra. I’m going to request you to please stay back on stage. I’d also like to invite Manish G…
S101
AI Impact Summit 2026: Global Ministerial Discussions on Inclusive AI Development — According to Moroccan Strategy Digital 2030, we consider AI as long -term strategic choice, reshaping competitiveness, s…
S102
ASEAN launches regionwide Digital Economy Framework Agreement — The Association of Southeast Asian Nations (ASEAN)has initiated talksabout a Digital Economy Framework Agreement (DEFA) …
S103
LDCs Participation in Digital Economy Agreements and E-commerce Provisions in FTA (Cambodia) — LDCs in Asia have made ambitious commitments when they joined the ASEAN E-commerce Agreement and RCEP agreement. As more…
S104
Digital Economy Agreements and the Future of Digital Trade Rulemaking (DiploFoundation) — In summary, digital economy agreements play a crucial role in transforming the digital landscape and supporting business…
S105
A regional approach to e-commerce and digital trade in the Pacific (UNCTAD) — In Pacific countries, which are characterised by geographical dispersion and remoteness, digitalisation plays a crucial …
S106
ASEAN Digital Generation Report: Pathway to ASEAN’s inclusive digital transformation and recovery — The World Economic Forum (WEF)releaseda report on the pathway to the South-East Asia region’s (ASEAN) inclusive digital …
S107
WS #231 Address Digital Funding Gaps in the Developing World — Singh added regional context, noting that the Asia Pacific region presents unique challenges with the most advanced and …
S108
© 2019, United Nations — Latin America and Asia present more dynamic entrepreneurship and innovation ecosystems than those found in …
S109
Living in an Unruly World: The Challenges We Face — Over time, this changed gradually. The communist countries of Indochina joined ASEAN, as did Brunei and Myanmar. In 1997…
S110
ASEF OUTLOOK REPORT 2016/2017 — 116 Data available for 36 ASEM countries only. Data on Bangladesh, Brunei Darussalam, Cyprus, Germany, the Lao PDR, Latv…
S111
A Decade Later-Content creation, access to open information | IGF 2023 WS #108 — Geoff Huston:Yes, I have some modest thoughts here. Part of this is the beauty of markets is also a weakness. In transfo…
S112
Broadband from Space! Can it close the Digital Divide? | IGF 2023 WS #468 — Despite the notable advantages, several challenges need to be addressed to further develop and improve Starlink’s intern…
Speakers Analysis
Detailed breakdown of each speaker’s arguments and positions
A
Aju Widya Sari
2 arguments113 words per minute491 words258 seconds
Argument 1
Indonesia faces significant infrastructure gaps that limit AI deployment, including insufficient 5G coverage, limited fixed broadband backbone, and a shortage of GPU‑enabled data centre capacity.
EXPLANATION
The speaker highlights that while mobile broadband penetration is high, the country still relies on 4G and lacks extensive 5G rollout. Fixed broadband and backbone networks are under‑developed, especially in remote districts, and existing data centres do not provide enough GPU resources for AI workloads.
EVIDENCE
She notes that Indonesia’s mobile broadband penetration is above 95 % but remains based on 4G, and fixed broadband penetration is only about 70 % in sub-district areas, requiring greater backbone investment [569-572]. She also points out that current data centre providers have limited GPU capacity, which hampers AI processing needs [575-578]. The government’s AI roadmap and ethical AI guidelines are being prepared to address these challenges [579-592].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Minister Patria rates global AI infrastructure at 6/10, highlighting Indonesia’s digital divide and archipelagic challenges [S30]; the postal network discussion notes connectivity hurdles in remote Indonesian areas [S31].
MAJOR DISCUSSION POINT
Infrastructure and capacity gaps for AI
Argument 2
The summit’s key lessons for Indonesia are the need for collaboration, inclusive policies, and sustained investment, while clarifying the definition of digital sovereignty.
EXPLANATION
The speaker summarizes that effective AI adoption requires joint effort among government, industry, and civil society, inclusive approaches that reach all citizens, and clear investment strategies. She also raises the question of how digital sovereignty should be defined and operationalised.
EVIDENCE
She states that the three main takeaways are collaboration, inclusivity, and investment, and that the definition of sovereign digital infrastructure remains an open question [716-722].
MAJOR DISCUSSION POINT
Strategic priorities post‑summit
D
Dr. Mahendra Karpan
2 arguments134 words per minute1394 words622 seconds
Argument 1
AI‑enabled telemedicine can dramatically improve healthcare access in Guyana’s remote and underserved communities.
EXPLANATION
By leveraging satellite connectivity and AI‑driven diagnostic tools, health workers in isolated villages can receive real‑time specialist support, reducing the need for costly patient travel and addressing critical health challenges such as cardiovascular disease.
EVIDENCE
He describes a network of over 200 telemedicine sites equipped with Starlink, enabling community health workers to transmit EKGs, X-rays and other vitals to specialists for real-time diagnosis, which is vital given the country’s dispersed coastal population and limited medical staff [81-86].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Karpan’s telemedicine example with satellite-connected sites and remote diagnostics is documented in the summit report on AI strategies for jobs and economic development [S1].
MAJOR DISCUSSION POINT
Telemedicine as a solution for remote healthcare
Argument 2
Digital primary schools can leapfrog traditional education models, offering personalised learning that frees children’s time for play and development.
EXPLANATION
AI‑driven digital classrooms can tailor content to each child’s strengths and weaknesses, potentially reducing school hours while improving literacy and numeracy outcomes, and can be replicated across the Caribbean region.
EVIDENCE
He reports that Guyana has created a digital primary school that adapts to individual learners, has attracted interest from neighboring Caribbean nations, and aims to condense eight hours of instruction into three focused hours [363-371].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
A parallel discussion on primary-level digitalisation in Bangladesh highlights similar AI-driven personalised learning concepts [S36].
MAJOR DISCUSSION POINT
AI‑powered education for primary learners
N
Narendra Singh
2 arguments183 words per minute889 words291 seconds
Argument 1
India’s low construction cost for data centres gives it a decisive advantage in the global AI race.
EXPLANATION
Building a megawatt of data‑centre capacity in India costs roughly 4–6 million USD, far cheaper than the 12 million USD typical in the US, Singapore or Dubai, because most hardware is manufactured locally. This cost advantage can fuel a trillion‑dollar AI industry.
EVIDENCE
He cites the per-megawatt cost comparison (4-6 million USD in India versus 12 million USD elsewhere) and notes that 80-90 % of required components are produced domestically, highlighting the scale of the opportunity [218-230].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
The report on AI strategies notes India’s data-centre construction cost of $4-6 million per MW versus $12 million elsewhere, underscoring the cost advantage [S1].
MAJOR DISCUSSION POINT
Cost competitiveness of Indian data‑centre infrastructure
Argument 2
Affordable AI compute is essential to avoid job displacement and to protect existing call‑centre employment.
EXPLANATION
High AI‑chip and service fees risk making AI solutions more expensive than traditional call‑centre operations, potentially leading to large‑scale job losses. Policy should regulate AI pricing and promote upskilling to keep human agents viable.
EVIDENCE
He explains that AI calls cost about 7 rupees each versus 1 rupee for a human call-centre, and argues that without policy intervention, millions of jobs could be lost, emphasizing the need for upskilling initiatives [245-251].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Broader analysis of digital dividends warns that technology can threaten jobs and wages, supporting concerns about AI-driven displacement [S38].
MAJOR DISCUSSION POINT
Balancing AI cost with employment protection
V
Vinod Jhawar
2 arguments160 words per minute941 words350 seconds
Argument 1
Data‑centre expansion in India is constrained by power supply, land availability, and a shortage of skilled personnel, but renewable energy and high‑voltage grids can provide sustainable solutions.
EXPLANATION
Nextra’s experience shows that while power and land are major bottlenecks, sourcing renewable electricity and connecting to 700 kV national grids can ensure reliable, low‑carbon operation. Upskilling programmes are needed to address the talent gap.
EVIDENCE
He lists power, land and skill challenges (165-167), describes sourcing renewable energy and high-voltage grid connections (181-186), and notes the need for immediate skill-upgrade programmes at schools and universities (196-202) [165-186][196-202].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Discussion of heterogeneous compute stresses India’s physical constraints-land, water, power-and the need for renewable energy and high-voltage grids [S39]; energy-constraint analysis for data centres further confirms the challenge [S40].
MAJOR DISCUSSION POINT
Sustainable data‑centre development
Argument 2
AI tools empower blue‑collar workers to self‑upskill and become entrepreneurs without formal degrees.
EXPLANATION
Generative AI can break language barriers and provide on‑the‑job learning, enabling workers to acquire new competencies, start businesses, or become coaches, thereby reshaping the education system toward self‑directed learning.
EVIDENCE
He explains that AI tools remove English as a barrier, allow self-learning, and can lead to specialist, entrepreneurial or coaching roles without traditional qualifications [362-371].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
A panel on AI for blue-collar workers describes AI-powered marketplaces that address skill gaps and enable entrepreneurship [S43].
MAJOR DISCUSSION POINT
AI‑driven grassroots upskilling
M
Mohamed Kinaanath
1 argument91 words per minute1484 words975 seconds
Argument 1
The Maldives is establishing a comprehensive AI governance framework, including an AI readiness assessment, a national AI master plan, an AI Act, and an independent AI governance body.
EXPLANATION
Through a UNESCO‑supported AI Readiness Assessment, the government is drafting a master plan and legislation to ensure ethical AI deployment, with a multi‑stakeholder advisory council to oversee implementation.
EVIDENCE
He references the AI Readiness Assessment Report (468-470), the forthcoming AI master plan and AI Act (471-474), and the recommendation to create an independent AI governance body and advisory council (472-474) [468-474].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
The Maldives’ AI readiness assessment and forthcoming master plan and AI Act are outlined in the summit’s Maldives-focused session report [S44].
MAJOR DISCUSSION POINT
Institutionalizing AI governance in the Maldives
E
Eugenio Vargas Garcia
2 arguments121 words per minute414 words204 seconds
Argument 1
AI can be a strategic tool for climate adaptation and sustainability, but developing countries need tech diplomacy to secure access to these technologies.
EXPLANATION
He argues that AI‑powered climate models and energy‑efficient data‑centre designs are essential for small island states, and that diplomatic engagement is required to ensure equitable technology transfer and capacity building.
EVIDENCE
He mentions AI’s role in climate-related data-centre energy efficiency and the necessity of tech diplomacy for the Global South to benefit from AI advancements [567-574].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Tech-diplomacy’s role in AI access for the Global South is highlighted in a discussion on technology and diplomacy [S47]; climate diplomacy’s emphasis on partnerships for climate-related AI solutions provides additional context [S46].
MAJOR DISCUSSION POINT
AI for climate resilience and the role of tech diplomacy
Argument 2
Countries should start with small, high‑impact AI pilots in health, education and agriculture, seek international partners, and engage in tech diplomacy to scale AI responsibly.
EXPLANATION
He recommends a phased approach: launch quick‑impact projects, collaborate with foreign expertise, and participate in global forums to build capacity and secure resources.
EVIDENCE
He outlines three recommendations-small pilot projects, international cooperation, and tech-diplomacy engagement-drawing on his observations of summit discussions [697-704].
MAJOR DISCUSSION POINT
Pragmatic roadmap for AI adoption in the Global South
P
Parag Khanna
2 arguments164 words per minute1473 words535 seconds
Argument 1
Developing countries can achieve a second‑mover advantage in AI by leveraging cloud‑based and edge solutions that minimise capital expenditure.
EXPLANATION
Instead of building costly proprietary infrastructure, nations can adopt low‑cost, sovereign‑cloud and edge computing models, supported by digital public infrastructure (DPI), to rapidly scale AI services.
EVIDENCE
He describes the concept of AI leapfrogging, the benefits of cloud-based models, and the role of DPI in providing affordable, neutral platforms for AI deployment [603-618].
MAJOR DISCUSSION POINT
AI leapfrogging through low‑cost cloud and edge architectures
Argument 2
AI‑driven geospatial analytics can guide sustainable urbanisation and climate‑adaptation planning, delivering cost‑effective infrastructure decisions.
EXPLANATION
Geospatial AI tools can model decades of urban growth, predict housing needs, and assess climate risks, enabling governments to prioritise investments such as flood barriers or affordable housing.
EVIDENCE
He cites AI-powered urban expansion modeling, climate risk assessment, and the need for targeted infrastructure like seawalls and flood control, emphasizing that these tools are currently under-used worldwide [624-639].
MAJOR DISCUSSION POINT
Geospatial AI for urban and climate planning
T
Tejpreet S Chopra
3 arguments197 words per minute2261 words687 seconds
Argument 1
AI‑driven strategies are essential for redesigning workforce policies, building digital infrastructure, and ensuring inclusive economic growth.
EXPLANATION
The panelist frames AI as the most critical topic for governments, calling for three pillars: workforce redesign, digital/computing infrastructure, and inclusive, responsible AI‑fueled growth.
EVIDENCE
He lists the three critical elements-workforce redesign, digital infrastructure, and inclusive growth-while emphasizing AI’s impact on society, workforce and industries [4-8][25-29].
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
The US-India partnership powering the AI era underscores the strategic importance of AI-driven policy and infrastructure for inclusive growth [S42].
MAJOR DISCUSSION POINT
Strategic pillars for AI‑enabled economic development
Argument 2
India’s cheap renewable energy positions it to win the AI “arms race” by providing low‑cost compute power.
EXPLANATION
He notes that solar and wind tariffs have fallen dramatically, making energy among the cheapest globally, which can power AI supercomputers and data centres at competitive rates.
EVIDENCE
He cites his own solar farm cost dropping from 18 rupees/kWh to 2 rupees/kWh and wind farm costs similarly decreasing, highlighting India’s advantage in AI-related energy costs [203-212].
MAJOR DISCUSSION POINT
Energy cost advantage for AI competitiveness
Argument 3
AI should augment rather than replace human labour; continuous upskilling and lifelong learning are vital to harness AI benefits while preserving jobs.
EXPLANATION
He stresses that collaboration, not displacement, is the preferred model, and that societies must invest in ongoing education and skill development to keep pace with rapid AI advances.
EVIDENCE
He summarises the panel’s key takeaways on collaboration, the need for continuous learning, and the importance of upskilling across ages [376-379][395-397].
MAJOR DISCUSSION POINT
Collaboration over displacement and the need for lifelong learning
S
Son Sokeng
1 argument128 words per minute501 words234 seconds
Argument 1
Cambodia is drafting a national AI strategy and governance framework that prioritises people, infrastructure, and AI adoption, with a goal to train 100,000 AI‑ready professionals and upskill 10,000 government officials.
EXPLANATION
The roadmap includes a digital skills programme, a national AI governance draft, and targets for talent development, reflecting a human‑centred approach to AI policy.
EVIDENCE
He outlines the AI strategy’s five priorities, the 100 k talent target, and the training of over 10 k officials as part of the Cambodia Digital Skills Roadmap [548-564].
MAJOR DISCUSSION POINT
Human‑centred AI strategy and talent development in Cambodia
K
Kip Wainscott
2 arguments154 words per minute964 words374 seconds
Argument 1
Trust is the cornerstone for AI deployment; financial services already possess robust trust architectures that can be extended to other sectors through shared standards.
EXPLANATION
He argues that AI’s value is unlocked only when users trust it, and that the financial industry’s model risk management and governance practices provide a template for broader AI trust frameworks.
EVIDENCE
He describes the financial sector’s model-risk management, governance documentation, and ongoing monitoring as essential trust mechanisms that could be standardised for AI across industries [658-670].
MAJOR DISCUSSION POINT
Leveraging financial‑sector trust models for AI
Argument 2
There is growing optimism that multi‑stakeholder collaboration will establish AI legitimacy and move the conversation from technical capability to responsible, trusted deployment.
EXPLANATION
He notes that the summit’s inclusive format is fostering intentionality and legitimacy, shifting focus toward operationalising AI responsibly rather than merely showcasing technical feats.
EVIDENCE
He expresses optimism about the collaborative environment, the need for legitimacy, and the transition from hype to responsible deployment [681-689].
MAJOR DISCUSSION POINT
Optimism about collaborative trust‑building
D
Dipali Khanna
2 arguments136 words per minute674 words295 seconds
Argument 1
Women must be placed at the centre of AI initiatives; gender inclusion is critical for equitable AI development.
EXPLANATION
She observes that women are often peripheral in AI discussions and stresses that strong female leadership is needed to ensure AI benefits are gender‑balanced.
EVIDENCE
She points out that women are at the periphery of AI work and that strong women leaders are essential to manage the sector effectively [490-493].
MAJOR DISCUSSION POINT
Gender inclusion in AI
Argument 2
Philanthropic “patient capital” can catalyse trusted AI by funding regulatory sandboxes, talent pipelines, and institutional capacity building.
EXPLANATION
The Rockefeller Foundation can provide risk‑tolerant funding that supports early‑stage AI governance experiments, helps develop skilled personnel, and strengthens public institutions to foster trustworthy AI ecosystems.
EVIDENCE
She outlines how patient capital can back regulatory sandboxes, talent development, and institutional foundations for trusted AI deployment [511-519].
MAJOR DISCUSSION POINT
Catalytic role of philanthropic capital for trusted AI
A
Audience
2 arguments154 words per minute294 words114 seconds
Argument 1
Hydrogen fuel‑cell technology has not scaled due to infrastructure gaps and R&D challenges.
EXPLANATION
An audience member asks why hydrogen fuel cells remain experimental, and the response highlights the lack of nationwide hydrogen infrastructure and ongoing research needs.
EVIDENCE
The question about hydrogen fuel‑cell deployment is raised (232‑233) and the answer cites bottlenecks such as missing hydrogen infrastructure and the need for further R&D collaboration (237‑244).
MAJOR DISCUSSION POINT
Barriers to large‑scale hydrogen adoption
Argument 2
The biggest challenge for AI pilot companies is overcoming technical barriers that limit real‑world impact.
EXPLANATION
An audience member, representing an AI startup, asks about the primary obstacles, prompting a call for discussion on technical challenges that hinder scaling.
EVIDENCE
The audience member states that technical barriers are the biggest challenge for AI pilots (279‑283).
MAJOR DISCUSSION POINT
Technical hurdles for AI startups
M
Moderator
2 arguments165 words per minute860 words312 seconds
Argument 1
Trust is now a pre‑condition for scaling AI; the summit must move from abstract principles to operational blueprints that demonstrate how trust can be built in practice.
EXPLANATION
The moderator frames the session as focusing on concrete mechanisms for trustworthy AI deployment, emphasizing that trust is essential for adoption across governments, enterprises and societies.
EVIDENCE
He notes that trust is no longer a downstream concern but a condition for scale and that the session will surface operational blueprints for building trust (410‑425).
MAJOR DISCUSSION POINT
Trust as a prerequisite for AI scale
Argument 2
Identifying the single biggest obstacle to operationalising trust in each participant’s context is essential for collaborative problem‑solving.
EXPLANATION
The moderator repeatedly asks panelists to pinpoint their main trust‑related challenge, underscoring the need for shared understanding to drive collective action.
EVIDENCE
He repeats the request for each speaker to name their biggest obstacle to operationalising trust (536‑543).
MAJOR DISCUSSION POINT
Pinpointing trust‑related obstacles
H
H.E. Sokeng
1 argument144 words per minute158 words65 seconds
Argument 1
Honesty among industry, government and civil society is vital; regulation should enable innovation rather than impede it, and trust must be cultivated through transparent collaboration.
EXPLANATION
He stresses that all stakeholders must be truthful with each other, that regulatory frameworks should promote, not block, innovation, and that building trust is a collective responsibility.
EVIDENCE
He calls for honesty, notes that regulation should promote innovation and not be an obstacle, and emphasizes the need to build trust through collaborative effort (706‑714).
MAJOR DISCUSSION POINT
Regulation as an enabler of innovation and trust
S
Satvinder Singh
2 arguments175 words per minute1913 words652 seconds
Argument 1
The Digital Economy Framework Agreement (DEFA) will boost digital integration across ASEAN, delivering the greatest economic and employment benefits to the least‑developed member states.
EXPLANATION
By creating a legally binding digital market for 700 million people, DEFA can double the region’s digital economy size and generate jobs especially in LDCs that currently lack digital infrastructure.
EVIDENCE
He explains that DEFA’s impact will be strongest for LDCs, showing job and growth potential, and that money (jobs, economic growth) is the key driver for participation (38‑44).
MAJOR DISCUSSION POINT
DEFA’s role in inclusive digital growth
Argument 2
Upskilling and continuous learning are essential to equip the workforce for AI‑driven change, especially for older generations.
EXPLANATION
He argues that while younger workers adapt more easily, all age groups need lifelong learning programmes to stay relevant as AI reshapes job markets.
EVIDENCE
He notes that upskilling must be continuous, that older generations may find it harder, and that lifelong skills are becoming the norm (303‑309).
MAJOR DISCUSSION POINT
Continuous upskilling for AI readiness
N
Nihar Shah
3 arguments198 words per minute1151 words348 seconds
Argument 1
Energy consumption, cooling and water use are critical blind spots for AI infrastructure that must be addressed through renewable sources and efficient design.
EXPLANATION
He highlights that AI data‑centres require massive power and cooling, and that water consumption is often overlooked; renewable energy and innovative cooling solutions are needed to avoid bottlenecks.
EVIDENCE
He discusses the need for energy, cooling, and water considerations, emphasizing renewable energy and the lack of attention to these issues (110‑114).
EXTERNAL EVIDENCE (KNOWLEDGE BASE)
Analysis of heterogeneous compute notes cooling and power as major constraints for AI deployment [S39]; a separate report stresses energy constraints for data-centre scaling [S40].
MAJOR DISCUSSION POINT
Energy, cooling and water as AI infrastructure bottlenecks
Argument 2
AI can improve hardware efficiency by designing better chips and data‑centre components, delivering up to 30 % performance gains.
EXPLANATION
He cites examples where AI‑driven design outperformed human engineers, suggesting that similar approaches could reduce AI infrastructure costs and energy use.
EVIDENCE
He mentions DeepMind’s AI designing chips with a 30 % performance improvement and the broader potential for AI‑enhanced data‑centre design (351‑356).
MAJOR DISCUSSION POINT
AI‑assisted hardware optimisation
Argument 3
Hydrogen fuel‑cell adoption is hindered by the lack of a national hydrogen infrastructure and ongoing R&D challenges.
EXPLANATION
He notes that without widespread hydrogen refuelling stations and further research, fuel‑cell technology cannot be scaled, though collaborations with national missions are underway.
EVIDENCE
He points out bottlenecks such as missing hydrogen infrastructure and the need for R&D, referencing collaboration with India’s National Hydrogen Mission (237‑244).
MAJOR DISCUSSION POINT
Infrastructure and R&D gaps for hydrogen fuel cells
Agreements
Agreement Points
Similar Viewpoints
Unexpected Consensus
Differences
Different Viewpoints
Unexpected Differences
Takeaways
Key takeaways
AI will augment rather than fully replace most jobs, especially white‑collar roles; continuous upskilling and lifelong learning are essential. Human empathy and judgment remain irreplaceable in critical sectors such as healthcare and emergency response. Building affordable, renewable‑powered compute infrastructure (large‑scale data centres and edge AI) is a prerequisite for AI‑driven economic growth. Power, cooling and skilled‑personnel shortages are the main bottlenecks for scaling AI infrastructure. Inclusive AI strategies are needed for developing economies: DEFA for ASEAN, AI‑enabled telemedicine and digital schools in Guyana, AI readiness assessments in Maldives and Cambodia, and broadband/5G gaps in Indonesia. Trust must be embedded from the outset; multi‑stakeholder governance bodies, AI Acts, and model‑risk‑management practices are critical for responsible deployment. Public‑private partnerships, catalytic patient capital, and international tech diplomacy are vital to fund and operationalise AI projects in the Global South. Sector‑specific AI applications (telemedicine, primary‑care surveillance, agricultural management, geospatial urban planning, climate‑adaptation modelling) demonstrate immediate productivity and societal benefits. Government subsidies (e.g., India’s AI mission funding, GPU pricing) and lower renewable energy costs can make AI affordable for MSMEs and spur a digital‑first economy.
Resolutions and action items
Proceed with the Digital Economy Framework Agreement (DEFA) across ASEAN to create a legally‑binding digital interoperability regime. Finalize and implement national AI strategies and governance frameworks in Maldives, Cambodia, and Indonesia, including independent AI oversight bodies. Scale up renewable‑energy‑sourced data‑centre campuses (Nextra) and pursue net‑zero targets by early 2030s. Launch large‑scale upskilling and reskilling programmes targeting 100,000 AI‑ready talent in Cambodia and broader continuous learning initiatives in the region. Provide targeted subsidies and low‑cost GPU access (as in India’s AI mission) to lower entry barriers for MSMEs and AI startups. Encourage development of indigenous AI chips to reduce hardware costs and improve margins for AI services. Establish international collaboration mechanisms (tech diplomacy, patient‑capital funds, regulatory sandboxes) to support AI deployment in health, agriculture, climate and urban planning. Create pilot projects with built‑in trust mechanisms (transparent models, auditability, grievance redress) to demonstrate responsible AI at scale.
Unresolved issues
High cost of AI services versus cheaper human labor (e.g., call‑centre costs) and its impact on employment. Infrastructure gaps: insufficient 5G/broadband coverage, limited GPU capacity, and cooling/power constraints in many regions. Talent shortage: lack of skilled engineers to operate and maintain data centres and AI systems. Need for indigenous AI chip production to achieve sustainable cost reductions. Hydrogen fuel‑cell deployment remains limited due to infrastructure and R&D bottlenecks. Exact mechanisms for balancing regulation with innovation—how to design AI Acts that promote growth without stifling it. Long‑term governance of AI ethics and risk assessment frameworks; many countries are still drafting policies. Determining the optimal balance between cloud‑centric and edge‑centric AI architectures for diverse use‑cases.
Suggested compromises
Adopt a collaboration‑first approach: AI augments human workers rather than displaces them, preserving empathy‑driven roles. Implement policy that promotes innovation while providing safeguards—regulation as an enabler, not a barrier. Combine cloud and edge solutions: use large‑scale data‑centres for heavy workloads and edge AI for factory‑floor applications. Provide subsidies and low‑cost GPU access to offset high AI‑chip expenses while encouraging domestic chip development. Leverage international partnerships and tech diplomacy to share resources and expertise, reducing individual country burden. Encourage self‑learning AI tools for blue‑collar workers to upskill without formal degree requirements. Pilot AI projects with built‑in trust frameworks (transparent models, independent audits) before wider rollout.
Thought Provoking Comments
DEFA is the largest regional digital agreement in the world, legally binding, and its biggest beneficiaries will be the least‑developed economies in ASEAN, giving them the greatest per‑capita gains in jobs and economic growth.
Highlights how a coordinated digital framework can directly uplift the poorest members of a region, turning a typical top‑down tech narrative on its head.
Shifted the conversation from generic AI benefits to concrete policy mechanisms; prompted other panelists to reference regional cooperation and the need for inclusive frameworks.
Speaker: Satvinder Singh
In Guyana we have set up 200 tele‑medicine sites with Starlink connectivity, allowing community health workers to get real‑time specialist advice; AI can improve diagnosis speed and accuracy, but the human touch in emergencies can never be replaced.
Provides a vivid, real‑world example of AI augmenting scarce healthcare resources while preserving essential human empathy, grounding abstract AI debates in lived experience.
Steered the discussion toward concrete health‑care applications, leading others (e.g., Tejpreet) to explore AI’s role in medical diagnostics and the risks of hallucinations.
Speaker: Dr. Mahendra Karpan
Energy and cooling are blind spots in AI scaling; AI can even design better chips (30% performance gain) and data‑center architectures, but without addressing power, cooling, and water consumption we’ll hit hard bottlenecks.
Introduces the often‑overlooked physical infrastructure constraints that limit AI growth, and shows AI itself can help solve those constraints, adding a meta‑layer to the discussion.
Prompted Vinod and Narendra to discuss renewable‑energy‑sourced data centres and cost advantages, expanding the dialogue from software to hardware and sustainability.
Speaker: Nihar Shah
AI’s biggest impact on jobs right now is on white‑collar roles through collaborative augmentation, not on blue‑collar jobs; governments will not hand over full automation of high‑skill jobs, and policy will need to manage this transition.
Challenges the common fear that AI will wipe out all jobs, refocusing the debate on augmentation, sectoral differences, and the necessity of proactive policy.
Redirected the conversation toward upskilling, regulatory frameworks, and the societal implications of AI, influencing later remarks by other panelists on education and continuous learning.
Speaker: Satvinder Singh
Leap‑frogging with AI means using cloud‑based, sovereign solutions to get second‑mover advantage; AI‑powered geospatial tools can guide sustainable urbanisation and climate‑adaptation, yet most countries are still years behind.
Frames AI as a strategic tool for development challenges (housing, climate) rather than just a commercial technology, and introduces the concept of second‑mover advantage for the Global South.
Opened a new thematic strand on AI for public‑good applications (urban planning, climate resilience), prompting participants to consider AI’s role beyond economic growth.
Speaker: Parag Khanna
Trust is not a downstream concern but the condition for scale; we need a shared set of expectations and trust models so that AI can be deployed responsibly across sectors, especially in regulated industries like finance.
Elevates trust from an abstract principle to a practical prerequisite for AI adoption, linking governance, procurement, and deployment in a concrete way.
Unified the panel around the need for common trust frameworks, influencing the closing remarks and reinforcing the summit’s focus on operationalising trusted AI.
Speaker: Kip Wainscott
Women are at the periphery of AI discussions; we must bring women back to the centre and ensure they are not just managed by men but are leaders in shaping AI.
Spotlights a critical equity gap often ignored in tech dialogues, urging the panel to consider gender inclusion as integral to AI governance.
Introduced a social‑inclusion dimension that was not previously addressed, prompting later comments about inclusive policy and the need for diverse stakeholder participation.
Speaker: Dipali Khanna
Overall Assessment

The identified comments acted as catalytic moments that moved the panel from a broad, introductory framing of AI’s economic promise to a nuanced, multi‑dimensional dialogue. Satvinder Singh’s DEFA insight and Dr. Karpan’s tele‑medicine case grounded the talk in regional policy and concrete health outcomes. Nihar Shah’s infrastructure warning and Vinod’s renewable‑energy response shifted focus to the physical limits of AI scaling. The discussion on jobs, led by Satvinder Singh, reframed AI as augmentative rather than purely disruptive, prompting calls for upskilling and continuous learning. Parag Khanna’s leap‑frogging narrative expanded the scope to climate and urban challenges, while Kip Wainscott’s emphasis on trust tied all technical and policy threads together, establishing a shared prerequisite for deployment. Finally, Dipali Khanna’s reminder of gender inclusion added a vital equity lens. Collectively, these comments redirected the conversation toward inclusive, sustainable, and trust‑based AI strategies, shaping the summit’s concluding emphasis on collaboration, continuous learning, and responsible governance.

Follow-up Questions
What are the technical barriers and biggest challenges for an AI pilot company to achieve full‑time impact?
Identifying these obstacles is crucial for startups to scale AI solutions effectively and attract investment.
Speaker: Audience member (CTO of MindEquity.ai, founder of AI Society)
Why have hydrogen fuel cells not been implemented at large scale in railways and buses in India and abroad?
Understanding the bottlenecks (technical, infrastructural, economic) can guide policy and funding for clean‑energy transport.
Speaker: Harsh Vartan (audience)
How can upskilling/reskilling strategies preserve jobs while keeping a human‑in‑the‑loop?
Balancing automation with employment security is essential for social stability and inclusive economic growth.
Speaker: Audience member (question to Mr. Sathinder) and Satvinder Singh (panelist)
Will governments provide subsidies or incentives for AI projects similar to the solar‑energy subsidies that boosted the solar revolution in India?
Financial incentives could accelerate AI adoption among SMEs and reduce the cost barrier for innovative AI applications.
Speaker: Audience member (question after discussion on solar subsidies)
What is the single biggest obstacle to operationalising trust in AI in each participant’s context, and how can this room help address it?
Pinpointing trust barriers (legal, technical, cultural) is a prerequisite for responsible AI deployment at scale.
Speaker: Moderator (directed to panel)
How optimistic are you about building collaborations that establish trust in AI across sectors and borders?
Assessing confidence levels helps gauge momentum for multi‑stakeholder governance frameworks.
Speaker: Kip Wainscott (Executive Director, Global AI Policy, JPMorgan Chase)
Area for further research: Quantitative impact of AI on ASEAN labour markets, especially the differential effects on white‑collar versus blue‑collar jobs.
Robust data is needed to design policies that mitigate displacement while leveraging productivity gains.
Speaker: Satvinder Singh
Area for further research: Energy, cooling, and water consumption bottlenecks for large‑scale data‑center expansion supporting AI workloads.
Sustainable infrastructure planning requires detailed metrics on power, thermal management, and water use.
Speaker: Nihar Shah (Lawrence Berkeley National Lab)
Area for further research: Development of indigenous AI chips to lower compute costs and reduce dependence on imported hardware.
Chip cost is a major barrier for AI adoption in emerging markets; local chip design could democratise access.
Speaker: Narendra Singh (MD, RackBank / NeveCloud)
Area for further research: Using AI to design more efficient chips and data‑center architectures (AI‑for‑AI optimisation).
Meta‑optimization could yield significant performance and energy gains, accelerating sustainable AI growth.
Speaker: Nihar Shah
Area for further research: Impact of cross‑border telemedicine on healthcare workforce roles and patient outcomes.
Understanding how AI‑enabled remote diagnostics reshapes job requirements and quality of care is vital for health policy.
Speaker: Dr. Mahendra Karpan
Area for further research: Effectiveness of digital schooling and AI‑driven personalised education for primary children in remote regions.
Evaluating learning outcomes will inform scaling of AI‑enhanced education in low‑resource settings.
Speaker: Dr. Mahendra Karpan
Area for further research: Comparative analysis of cloud‑centric versus edge‑centric AI deployment models for Indian MSMEs.
Determining optimal architecture influences cost, latency, and scalability for the 70 million Indian MSMEs.
Speaker: Tejpreet S. Chopra and Vinod Jhawar
Area for further research: AI‑powered geospatial tools for sustainable urbanisation and climate‑adaptation planning in developing countries.
These tools can guide infrastructure investment and risk mitigation, but require validation and localisation.
Speaker: Parag Khanna
Area for further research: Creation of a unified, interoperable trust framework and standards for AI models across sectors and jurisdictions.
Standardised trust metrics would streamline procurement, compliance, and cross‑border deployment of AI systems.
Speaker: Kip Wainscott
Area for further research: Role of tech diplomacy and international cooperation in building AI capacity for Global South nations.
Coordinated policies and knowledge‑sharing can overcome resource constraints and accelerate AI adoption.
Speaker: Son Sokeng (Cambodia) and Eugenio Vargas Garcia (Brazil)
Area for further research: Mitigating AI hallucinations and ensuring safety in medical diagnosis applications.
Preventing erroneous AI outputs is critical to maintain trust and patient safety in healthcare.
Speaker: Tejpreet S. Chopra

Disclaimer: This is not an official session record. DiploAI generates these resources from audiovisual recordings, and they are presented as-is, including potential errors. Due to logistical challenges, such as discrepancies in audio/video or transcripts, names may be misspelled. We strive for accuracy to the best of our ability.