Converging Technologies to Win
22 Jan 2026 10:30h - 11:15h
Converging Technologies to Win
Session at a glance
Summary
This panel discussion at the 2026 World Economic Forum in Davos focused on “converging with technology to win,” examining how nations and organizations can build successful technology ecosystems. The conversation featured Andrew McAfee as moderator alongside Saudi Arabia’s Minister of Communications and Technology Abdullah AlSwaha, UC Berkeley economist Laura D’Andrea Tyson, Honeywell CEO Vimal Kapur, and Synopsys CEO Sassine Ghazi.
The discussion began by comparing two major technology ecosystem models: the U.S. approach, driven by university-industry partnerships, venture capital, and defense research funding, versus China’s more centralized industrial strategy with significant state investment and long-term national planning. Tyson highlighted how both models have achieved success through different pathways, with the U.S. emphasizing basic science and risk capital, while China focuses on strategic national goals with coordinated public-private partnerships.
Minister AlSwaha outlined Saudi Arabia’s ambitious global technology strategy, emphasizing their “acceleration and adoption” approach that combines supply-side innovation with practical implementation. He cited examples including AI-enabled healthcare, robotics surgery, and partnerships with major tech companies, positioning the kingdom as both a testbed for innovation and a major adopter of AI technologies.
The panelists addressed concerns about AI’s environmental impact and energy consumption, with Kapur explaining that while AI requires significant energy, it also drives efficiency gains across industries. The discussion revealed that gas-fired power plants remain the primary scalable solution for data centers, as renewable energy cannot provide the energy intensity required for heavy industrial applications due to physical constraints.
Regarding Moore’s Law and chip innovation, Ghazi explained that while traditional scaling is slowing, innovation continues through system-level approaches like advanced packaging and multi-die architectures. This shift from individual chip improvements to system-level optimization ensures continued technological progress despite physical limitations.
A significant debate emerged around AI’s purpose and impact on employment. Tyson questioned whether current AI development, driven by hyperscaler competition to achieve AGI, adequately addresses societal needs versus creating shareholder value. The panelists generally agreed that AI should focus on augmentation rather than replacement of human workers, with examples from healthcare and industrial applications showing how AI can enhance rather than eliminate jobs.
However, Ghazi noted real challenges for new graduates, particularly in computer science, where AI automation is already reducing entry-level opportunities. The panel concluded that while AI will create disruptions and unemployment in certain sectors, the technology’s potential to solve major problems like cancer and improve human lives makes continued acceleration necessary, though it requires careful management of the transition period.
Keypoints
Major Discussion Points:
– Different Models for Technology Ecosystem Development: The panel explored two primary approaches – the U.S. market-driven model (emphasizing university-industry partnerships, venture capital, and basic science research) versus China’s state-directed industrial strategy model (long-term national planning with public sector funding transitioning to private investment).
– Energy Constraints and AI Infrastructure: Significant discussion around the massive energy requirements for AI data centers and the realistic limitations of renewable energy sources. The conversation highlighted that gas-fired power plants remain the primary scalable solution for energy-intensive applications, with physics constraining what renewables can achieve for high-energy industrial processes.
– The Future of Moore’s Law and Continued Innovation: Examination of whether the slowdown of traditional Moore’s Law threatens technological progress, with expert consensus that innovation will continue through system-level advances like advanced packaging, multi-die architectures, and architectural improvements rather than pure transistor scaling.
– AI’s Impact on Employment and Skills: Debate over whether AI will create technological unemployment or address labor shortages, with emphasis on augmentation versus automation approaches. The discussion highlighted current challenges for computer science graduates while stressing the need for reskilling and educational transformation.
– Purpose-Driven vs. Market-Driven AI Development: Critical examination of whether current AI development is too focused on achieving AGI for competitive/financial reasons rather than solving specific human problems like healthcare, energy efficiency, and productivity enhancement.
Overall Purpose:
The discussion aimed to explore strategies for building successful technology ecosystems that can “converge with technology to win” – examining how different regions and organizations can create environments that foster innovation, generate economic value, provide good jobs, and address real human needs in the age of AI.
Overall Tone:
The discussion began with an optimistic, exploratory tone as panelists shared different models and success stories. The tone became more cautionary and analytical in the middle sections when addressing energy constraints and employment concerns. However, it concluded on a notably optimistic note, with panelists expressing confidence that innovation will continue and ultimately improve human lives, despite acknowledging significant challenges and transition periods ahead.
Speakers
– Andrew McAfee – Scientist at MIT, Moderator of the panel
– Sassine Ghazi – President-Elect of Saudi and CEO of Synopsys (technology company in semiconductor manufacturing and innovation supply chain)
– Audience – Audience member asking questions
– Laura D’Andrea Tyson – Economist at the University of California, Berkeley
– Abdullah AlSwaha – His Excellency, Minister of Communications and Technology for the Kingdom of Saudi Arabia
– Vimal Kapur – Chairman and Chief Executive Officer of Honeywell (high-tech company based in the United States)
Additional speakers:
None – all speakers in the transcript were included in the provided speakers names list.
Full session report
Comprehensive Report: “Converging with Technology to Win” Panel Discussion
World Economic Forum 2026, Davos
Executive Summary
This panel discussion at the 2026 World Economic Forum examined strategies for building successful technology ecosystems in the age of artificial intelligence. Moderated by MIT scientist Andrew McAfee, who opened with a humorous promise to “solve everything in 45 minutes” and “nail” the topic, the conversation brought together diverse perspectives from Saudi Arabia’s Minister of Communications and Technology Abdullah AlSwaha, UC Berkeley economist Laura D’Andrea Tyson, Honeywell CEO Vimal Kapur, and Synopsys CEO Sassine Ghazi. The discussion explored technological opportunities, practical AI implementations, and the constraints facing AI development.
Technology Ecosystem Development Models
The panel examined different approaches to building successful technology ecosystems. Laura D’Andrea Tyson discussed the American model, which relies heavily on basic science research, university-industry partnerships, venture capital investment, and defence research funding through organisations like DARPA. This approach emphasises market-driven innovation with strong foundations in academic research and risk capital allocation.
Tyson also described China’s more centralised approach, characterised by long-term national planning with significant state capital investment and public sector funding for nascent industries. When McAfee suggested she might be “China-leaning,” Tyson explicitly rejected this characterisation, clarifying her position on different development models.
Minister AlSwaha positioned Saudi Arabia’s approach as focusing on what he termed a “blueprint of talent, technology, and trust partnerships” to achieve the kingdom’s global ambitions in artificial intelligence. He emphasised the importance of both “acceleration and adoption,” arguing that successful technology ecosystems must focus on practical implementation alongside development.
The Minister highlighted Saudi Arabia’s concrete achievements, noting that the kingdom has reached 56% economic diversification ahead of its 2030 target and achieved remarkable cost efficiency in AI operations at $0.11 per million input-output tokens. He also mentioned partnerships with leading academics like Nobel Prize winner Professor Omar Yaghi, who is working on metal-organic frameworks.
AI Implementation and Strategic Partnerships
Minister AlSwaha provided extensive examples of Saudi Arabia’s AI implementation strategy. In healthcare, he cited AI-enabled diagnostics and robotic surgery that have reduced patient recovery times from weeks to hours. The kingdom has also achieved significant success with Aramco’s billion-dollar AI adoption programme.
Key partnerships highlighted included:
– Adobe collaboration on Saudi’s Allam Arabic Large Language Model
– Qualcomm partnership for hybrid AI laptops
– Jonathan Ross partnership addressing memory wall solutions
– Various initiatives positioning Saudi Arabia as both a testbed for innovation and a major adopter of AI technologies
However, Laura D’Andrea Tyson raised fundamental questions about current AI development directions. In a thought-provoking moment, she challenged the hyperscaler approach: “I really do worry a lot about the fact that right now, the hyperscalers, all of them are in California… They’re in a race with one another to get to AGI. They’re not even sure why.”
This critique shifted the conversation from technical capabilities to strategic intent and societal outcomes, questioning whether AI development is being driven by clear goals for societal benefit or primarily by competitive dynamics.
Practical AI Implementation Framework
Vimal Kapur offered a structured approach to AI deployment, advocating for augmentation rather than automation strategies. He outlined a three-step framework: problem definition (human), execution (AI-assisted), and verification (human). This approach, he argued, maximises productivity gains whilst keeping humans in critical decision-making roles.
Kapur provided concrete examples of AI’s efficiency benefits, citing building management systems that achieve 10-15% efficiency gains. When he mentioned AI’s ability to create efficiencies, McAfee humorously responded about AI creating “funny images,” highlighting the conversational tone of the discussion.
Energy Constraints and Infrastructure Realities
The discussion revealed significant insights about AI’s energy requirements and infrastructure challenges. Vimal Kapur provided crucial context about the physical constraints facing AI development, explaining that whilst AI requires massive energy inputs, it also drives efficiency gains across industries.
Kapur introduced important physical realities about energy systems: “The energy systems have been created over the last 100 years with the hydrocarbons. So we have to be conscious that what was created in 105 years can’t be recreated in 20 years… Solar power cannot produce cement. Solar power cannot produce steel… It’s against physics.”
This insight revealed that gas-fired power plants remain the primary scalable solution for energy-intensive data centres due to fundamental physical limitations of renewable energy sources for high-energy industrial applications.
Minister AlSwaha acknowledged these challenges whilst outlining Saudi Arabia’s response, noting that the kingdom has allocated over 10 gigawatts of capacity specifically to address what he termed “the energy wall challenge.”
The Evolution of Moore’s Law and Continued Innovation
Addressing concerns about technological limits, Sassine Ghazi provided crucial insights into semiconductor innovation’s future. “Moore’s Law is continuing, but it’s not affordable. It’s not at the same pace,” he explained. “Therefore, the innovation is taking different shape. So you start expanding at the system level to innovate.”
Ghazi, whose company Synopsys has grown from $10 billion to $100 billion in market value over six years, argued that constraints drive innovation towards new approaches such as advanced packaging, multi-die architectures, and system-level optimisation. He cited China’s DeepSeek as an example of how limitations—specifically constraints from silicon access—can spur more efficient approaches to AI model development.
Andrew McAfee found this perspective particularly encouraging, declaring it “the most encouraging and optimistic thing I have heard at Davos.”
Employment Impact and Market Realities
The discussion revealed current displacement effects in the technology sector. Sassine Ghazi provided stark evidence: “Today, if you’re graduating in computer science, you don’t have a job. Very difficult. Five, six, seven years ago, you could not get enough of them.”
This concrete example from Ghazi, whose company employs approximately 30,000 people (25,000 being engineers), highlighted immediate impacts on high-skill sectors and challenged more optimistic narratives about AI creating new opportunities at the same pace as displacement.
In contrast, Vimal Kapur argued that demographic trends in mature economies create labour shortages that necessitate AI augmentation to maintain productivity. He emphasised that population decline in developed nations makes AI augmentation essential rather than optional for economic sustainability.
Laura D’Andrea Tyson proposed expanded support for basic science research as a potential solution for displaced engineers, suggesting that increased funding for fundamental research could provide alternative career paths for affected technical workers.
Future Outlook and Predictions
Looking ahead, the panellists offered varying predictions for the next decade. Minister AlSwaha expressed confidence that infrastructure investments will generate twenty-fold returns in software applications and use cases, suggesting massive economic benefits from current AI investments.
Sassine Ghazi predicted that pervasive physical intelligence will dramatically improve human lives, emphasising AI’s potential to address fundamental challenges in healthcare, manufacturing, and other critical sectors.
However, Laura D’Andrea Tyson warned of potential serious national security issues emerging from current AI development approaches, suggesting that benefits may come with significant risks requiring careful management.
Key Areas of Consensus
Despite their different backgrounds, the panellists reached agreement on several points. All emphasised that AI should focus on augmenting human capabilities rather than wholesale replacement of workers, representing convergence around human-AI collaboration principles.
There was also agreement that technological innovation will continue despite physical constraints, with innovation shifting from individual chip improvements to system-level approaches. This provided optimism about continued progress even as traditional scaling approaches reach their limits.
Conclusion
This panel discussion revealed both the opportunities and complexities of building successful technology ecosystems in the AI era. The conversation demonstrated how different regions are approaching AI development through varying combinations of market mechanisms, strategic planning, and international partnerships.
The discussion highlighted the importance of practical implementation alongside technological development, with Saudi Arabia’s concrete examples showing how AI can deliver measurable benefits in healthcare, energy, and industrial applications. However, the conversation also revealed real constraints around energy infrastructure, employment displacement, and the need for more purposeful approaches to AI development.
The panellists’ consensus around augmentation rather than automation, combined with recognition of physical and economic constraints, suggests a more nuanced path forward for AI development—one that balances technological advancement with practical considerations of energy, employment, and societal benefit.
The discussion ultimately suggested that “converging with technology to win” requires not just technological capability, but thoughtful integration of AI into existing systems and careful attention to the human and infrastructure requirements that make such integration successful.
Session transcript
Hello, everybody. Welcome to Davos, Switzerland, and welcome to the 2026 Annual Meeting of the World Economic Forum. We are happy that you’re joining us live for this panel.
And my name is Andrew McAfee. I’m a scientist at MIT. I’ll be the moderator today.
And we’re here at Thursday. We’re close to the end of the Annual Meeting 2026. And I can assure you that the topic of this panel has been top of mind throughout the annual meeting this year.
It’s been probably one of the most actively discussed topics here, certainly because of this remarkable surge of progress we’re seeing with AI, but for lots of other reasons as well. I think perhaps the dominant conversation this year at Davos has been exactly the subject of our panel today, which is converging with technology to win. Now obviously, we need to define what win means, and that can mean different things to different people in different parts of the world.
We probably need to talk a little bit about which technologies are top of mind, but this is the topic at Davos 2026. It’s at least in anyone’s top two or three list of topics. The good news is that we have people who are finally going to answer the question.
In 45 minutes, we’re going to nail this. And the reason I say that with confidence is because of the panelists that I have the honor to share the stage with. I’m sitting next to His Excellency Abdullah AlSwaha, who is the Minister of Communications and Technology for the Kingdom of Saudi Arabia.
Next to him is a person who I personally have learned a lot from, Laura D’Andrea Tyson, is an economist at the University of California, Berkeley. And you might have heard that there’s a lot of technological innovation happening in and around the Berkeley area in Northern California. Luckily, Laura knows all the secrets, and she’s going to share them with us.
Next to her is Vimal Kapur, who is the Chairman and Chief Executive Officer of Honeywell, a high-tech company based in the United States. And last but absolutely not least is Sassine Ghazi, who is the President-Elect of Saudi and CEO of Synopsys, a technology company that you might not have heard of, not as much of a household name, but critically important because they are a critical link in the semiconductor manufacturing and innovation supply chain.
I think without you all, we don’t have the chips that are powering the AI revolution. So first of all, thank you for that. And second of all, how the heck are you doing it?
But I think, Laura, if we could start with you. Please.
Okay. Happy to do it.
Because economists like yourself have been studying this question for a long, long time. What is it that allows a region or a country to build a technology ecosystem that converges to a place that would make everybody happy? In other words, it innovates like crazy.
It generates a lot of value for customers, a lot of wealth. It provides good jobs for a lot of people. Leaving modesty aside, your part of the world, California, is almost certainly the world leader in that.
If you could give us your version of what happened in Northern California to make that work, and then more broadly, because that’s not enough. More broadly, what’s the secret sauce for getting the environment right to let this kind of magic happen? Industrial policy is a term that I know that you use.
Some people do like it, some people don’t. But there’s no, I think everyone here would agree, there’s no way that we get these fantastic converging tech ecosystems without the government involved doing the right things. I know you have beliefs about what those right things are.
We’d love to start with those.
Good heavens. That was a long set of questions, in fact. I’m going to make a contrast.
Let me make a contrast. The contrast between the kind of model that is behind the innovation technological revolutions in the United States, particularly around Silicon Valley. But I also want to talk about China.
Because if you… I’ve been working for the past year on the battery and EV industries. And here’s where a country, through an industrial strategy, it was a country that set the industrial strategy.
And then the country, over many years, it wasn’t like it didn’t happen overnight, did a number of things to create the ecosystem with the private sector. Most of the producers of EVs in China are private companies. But it actually developed a whole ecosystem, because it had a strategy to be a major player as a nation in EVs and batteries.
So that’s a quick summary of China. Of course, in the US, it really has been very much driven by basic science, by the relationships between companies and universities. I think synopsis, right, isn’t synopsis connected?
Yes, to engineering faculty at Berkeley. We know that we have Google, and if we think about the history of Google, where does it come from? It’s basically basic science support for students and faculty at a university, which leads to a breakthrough.
The breakthrough becomes something which has a market value. It’s taken out. It becomes a major, what, a major company of the world.
But it started that way. And it started that way with also people willing to take risk. So the issue of risk capital—I hear a lot about this in the situation that’s going on in Europe, because there’s a lot of discussion about how Europe has many technological strengths.
But if it develops an innovation, frequently what it does is it looks for the risk capital, the private equity capital, the venture capital in the United States, because that market is so deep for financing it.
So I want to emphasize in the market model the link with universities, the link with finance, the link with risk-takers. Now I’m going to say one other thing, because if you look back in history to the U.S., the U.S. has— not really had industrial policy, but it has had industrial policy related to defense.
So a lot of the original breakthroughs were coming out of DARPA or DARPA-funded research that would occur at a university. So we did have the support of the Defense Department and the willingness to take risk in defense issues, and that remains, by the way. We used to have a lot of capital on the basic science side coming into, I would say, just medical research, cancer research, the development of new drugs.
That drug pipeline that comes out of the United States, if you go back, you sort of see the support for basic science. So I would say those are the features of the U.S. system.
In the Chinese system, I really want to say that it is the long-term, a nation, not a company, has an industrial strategy. The nation decides that it wants to pursue competitiveness in this industry. It wants to pursue technological progress in this industry.
It uses a variety of things, not access to venture capital, but essentially access to state capital.
Hold on, hold on. In particular, USVC was incredibly important for the Chinese tech ecosystem.
Oh, yeah. No, no. What I’m saying is that also in China, there is financing that is coming from the public sector.
That’s all. It’s not to say that venture capital at a certain point. If you think about, for example, AI, what China is pursuing at this point is really all of these amazing edge applications, and those edge applications are being financed by the private sector, by venture capitalists, who are basically saying we can sell something to Tencent, and Tencent will actually transform what it does.
So I really was thinking more if you have a vision of a particular industry and the industry is nascent, it’s not yet developed, okay, then having a public sector funding which is essentially was part of China’s strategy in EVs, but switching over time, switching over time to private sector.
Am I hearing right? You’re doing a lovely job of saying that we have two very large, very successful tech ecosystems on the planet.
Yes, right now, and they developed in different ways.
I’m hearing that you, am I hearing correctly that you kind of prefer the Chinese one?
No. It’s not that I prefer the Chinese one. I think if you, I thought to a certain extent, one of the words in the title of this was industrial strategy.
To the extent that you’re talking about industrial strategy, that is a national goal, and then you have to think about are you equipped in your system to pursue the national goal. Okay, and so for example, we have had now in the US, we had for a while, we decided we needed for national security reasons to have a real ability to produce high-end chips in the United States. It’s a national security industrial strategy argument.
We used a whole bunch of policy to get that done. We now have some production in the United States. Now the problem, I would say, is we have production which is going to be pretty high cost.
So keeping that competitive internationally is something we haven’t solved.
Great. I want to make this concrete. Minister AlSwaha, you are responsible for formulating a national strategy for the kingdom.
My guess is that you and your colleagues have scanned the history and the current landscape of technology. ecosystems, I’m sure as you’ve done that, there are two that stand out. There’s the US, there’s China.
Is what you’re doing more like one of those or the other? Are you a blend? Are you trying to find a third way?
Where’s your thinking on this?
Andy, if we take a step back and we had the pleasure of collaborating during the digital age under the guidance of His Royal Highness, how we can diversify our economy, and by the way, we’ve achieved 56% diversification of an oil GDP remarkably quickly ahead of the 2030 mark, but really it helped humanity overcome the over, you know, the great reset with the great resilience.
And that’s what the digital fabric gave us. And the investment thesis for the kingdom was very simple. If we double down on talent, technology, and build trust with partners, we can achieve success.
And we’re following the same blueprint for the intelligence age, because the intelligence age would need two things, the great acceleration, but the great adoption. And it’s not only important that you focus on the supply side of the world, because that’s going to trigger a couple of winters and bubbles, but it’s the adoption. And that’s why the kingdom, we have energized the industrial age.
It’s only natural that we energize the intelligent age. Last year, we clocked $0.11 per a million input-output tokens. It’s only natural for us to become the most AI-enabled nation in the world.
We’re doubling down on generative AI in healthcare. With UC Berkeley, and I’m going to share some success stories shortly, we’re doubling down on agentic AI, both in the public and private sector, where every private and public worker is going to have an agent to infuse that 10X productivity.
And we have delivered the first physical AI deployment when it comes to a fully robotics heart transplant done within our national hospitals. Last but not least is how we can become, really, the test bed for innovators and investors. Saudi last year, Andy, had the largest investment ticket in AI, and the largest success story, a Nobel Prize winner, a Saudi-American, Professor Omar Yaghi, working with UC Berkeley and our national labs, using AI to create new chemistry, metal-organic frameworks, effectively a sponge with the right pore size to capture water from air and carbon.
And when it comes to the largest ticket, you can ask Jonathan Ross, who was introduced to the world two years ago, on Leap, the largest tech event right now in the region, and by a mile from a number of other tech events, but on stage, how the kingdom is tackling the memory wall, how we’re doubling down on memory on the chip, next to the chip, and near to the chip.
And we have demonstrated that 11 cents per million input-output token, energizing Aramco, who wrote the first P.O. for Jonathan back then, how we could deliver bottom-line efficiency with a billion dollars last year, and this year is creeping up to two billion dollars of real AI adoption, and how we can achieve the lowest uplift cost and carbon intensity, and this is a true testimony that, and a call-out to our partners, that in the intelligence age, you need a partner that can accelerate AI, but more critically, adopt AI, and the kingdom stands tall as your partner of choice.
Laura, let me ask one follow-up question, and then—
It’s probably your follow-up question, so go ahead.
Let’s see how close we are on this one. Excuse me. Actually, I want to calibrate the kingdom’s ambitions here.
Tell me. At a minimum, I heard you say that the kingdom wants to AI-enable the organizations and institutions of Saudi Arabia to take better care of the people of Saudi. You want to have amazing, not just digital, but AI infrastructure for life in Saudi Arabia.
That seems to be like the least ambitious thing that I heard you say. even though that’s massively ambitious. Are your ambitions to join the global stage of tech ecosystems that are transforming the world right before our eyes?
Trust me, the first time I met His Royal Highness, even when I was in the Silicon Valley, every year he would double or triple the target on us. So the ambitions is indeed global. And His Royal Highness has an investment thesis.
The more prosperous the kingdom, the Middle East is, the more prosperous the world is. And it’s not a surprise that we fuel 50% of the digital economy in the kingdom, the region. We fuel 3x the tech force of our neighbors.
And as a result, we fuel 50% of the VC funding and the number of unicorns. And as a byproduct of that, it’s not a surprise that the World Economic Forum called out Saudi Arabia as the number one and number two digital riser consecutively. Going back to the intelligence age, we have energized the industrial world and we helped the world achieve more than $100 trillion of economic value.
We want to help the world achieve the next $100 trillion by energizing the intelligence age. And we’re laser focused, since we’re talking here about the technological walls, we’re focused on addressing the energy wall, 83 gigawatts the world needs. We have already allocated, His Royal Highness has a committee that meets monthly on this.
And he has designated one of the subcommittees, His Royal Highness Prince Abdulaziz bin Salman. And we have allocated land energy that is available with more than 10 gigawatts worth of capacity today, in which we can deploy. And we’ve already have announced it in the last visit of His Royal Highness to the Honorable President in DC.
We had Jensen Wang, we had Elon Musk, who are today in Davos, all have announced major investments and deployments with definitive agreements to go large in the kingdom. In terms of adoption. One true story, Allam, the most powerful Arabic LLM, we presented it to Adobe and Adobe right now have adopted it across all of their product suites.
If you want to use an Arabic LLM it’s powered by the Kingdom of Saudi Arabia, and we have partnered with Qualcomm to bring to the world the first hybrid AI laptop and endpoints. So these are true testimonies that the Kingdom, we’re not going local here or regional, we’re going global.
You are not playing small ball, if I use the American baseball analogy.
Israel has never played small ball.
Small ball is not a thing we’ve associated recently.
Trust me.
Laura, before you ask your question, can I bring our other two panelists? Oh, sure, sure. Vimal, I’m sorry.
No, no problem. Vimal, let me go to you. You run Honeywell, which does business at the cutting edge of technology all over the world.
As somebody leading an organization that interfaces with a lot of governments and a lot of ecosystems, could you talk about the things that you see that give you optimism, that you’re working in an ecosystem that’s heading in the right direction, versus the things that you see that give you pause, you think this might not go so well.
Is that a fair question?
Absolutely, and I think we as companies, Laura made a great point initially on ecosystems and ecosystems between the university system and the governments and how it creates innovation like Google. But companies like Honeywell and many others have very large investment in product development, and they’re thinking ahead three, five, seven years, again with a strong linkage to the universities. So one of the things we realized for last five or ten years is we need to be in the front end of interfacing with the governments to share with them what are we doing, and have ability to shape a bigger picture.
Governments like Saudi are very proactive. We have access to people like His Royal Highness and others. Very high access to share where things are going, and I’ll give one or two examples.
If you think about the world of AI, which is impacting every industry, and therefore it has impact on energy consumption, one has to think about right way all the way to the end, what will be AI used for, and is the strategy to generate more energy is for the right cause?
Because if you have a dialogue to say we need more power, we put more nuclear, we put more gas, the question I always pose is, but what are you gonna do with that? Have you been clear that are we gonna make a best video and best pictures, or are we gonna solve the healthcare problem?
Yeah, what’s your goal?
And if you’re gonna solve healthcare problem, we have solution for it, then let us solve the energy problem in different ways, is it gas, is it nuclear, is it energy storage? So I think ability to see this end to end picture, whether it’s in the government in United States or countries like Saudi or many other large economies, we see this as our responsibility, and what’s in for a company like us, if we shape the policy right, it benefits us to be ahead of the game, to understand our business model aligned with the policy, there’s something in us for that, but also it’s our responsibility as a large company to give it back to the society in other form to see that these things are critical for the success of the society, and that’s kind of where we think we have an important role to play in this whole ecosystem.
And my concern today is that while there’s a lot of dialogue on AI, it’s bigger picture implications are not being discussed in depth on what it will be used for, because if it is being used for economic prosperity, please put more power generation and do it, but it is being done for human curiosity and I’m gonna do something more interesting, probably it’s not the best use of the resources of the planet at this point of time, so how do we have that dialogue and help people understand possibility?
Are you telling me I shouldn’t be creating funny images that amuse me on nano banana because that’s ruining the planet, that hurts.
It’s using energy that might be used in other ways, is what he’s saying.
I get it, I just don’t like it, right? On that point, there is a huge amount of concern right now about the environmental footprint, specifically of AI, more broadly of the digital ecosystems, and people are worried that, again, we might like making cool pictures with LLMs, but the planet can’t tolerate that.
Is that an accurate belief?
I mean, look, the energy systems have been created over the last 100 years with the hydrocarbons. It started after World War I, so it’s 105 years. So we have to be conscious that what was created in 105 years can’t be recreated in 20 years.
Maybe we can do it in 30 years, right? So it’s always going to be a slow move to a new state. So first we have to recognize that it’s an energy mix change.
The word energy transition probably is a little wrong representation. Now, the choices we have made are limited, because if you want to scale our power generation, the only source seems to be gas, because nuclear takes 10 plus years to make. Other sources are not that interesting.
But what we have to think about in this is, how do we drive energy efficiency? AI is a good source of energy efficiency in the industrial sector. So while it’s a source of consumption, it’s also a source of efficiency.
So therefore, solving this problem holistically is a very interesting paradigm that you have to do it. But is any black and white answer known to this? I wish I had it.
I wish anybody else had it. I think the answer here lies in constant dialogue on technology evolution. Case in point is, companies like us never thought of energy storage at scale on the demand side.
Today, we feel very confident that we can do energy storage at a source like consumption of, say, hospitals, stadiums, schools. And that can take a lot of peak power off. And therefore, the energy demand is less and that is used now for AI generation for healthcare problems.
Solving this holistic issue is something we strongly believe in.
When you talked about the energy solutions available for these unbelievably energy-hungry data centers, your list was short. Your list had one thing on it, if I listened correctly. You said gas.
You didn’t say gas and renewables. Can you educate us why not?
I mean, what one has to appreciate is the intensity of energy. I always like to, I’m an engineer by background, so I always like to tell people the mix of energy doesn’t matter. How much is wind, how much is solar?
We like to advertise that. Kilojoules matter because energy intensity has to shift, not the mix. So solar power cannot produce cement.
Solar power cannot produce steel.
It cannot.
They are very energy-intensive. That’s right. They still need a gas-based heating or oil.
And even after three or five more years of innovation in renewable, not there?
It’s against physics.
Fine, absolutely.
Physics don’t allow it to do it.
Yeah, right, it’s almost as if that’s against physics.
So therefore, when you have to look at energy mix change in context of joules of energy, your challenge becomes different because the world still need to progress. World needs to build more infrastructure. It still needs steel.
It still needs cement. It still need fuels. Now, how do you do that energy mix change while you also want to build data centers and consume more energy?
That’s an interesting problem to solve. And today, the problem is single-threaded with the gas-fired power plant, maybe a little bit of nuclear. Renewables remain in the mix, but it cannot bring the amount of joules we need to produce this infrastructure which is required in the world.
Fantastic. Sassine, last but obviously not least to you, you run a chip-adjacent company. Is that a fair way to say it?
Okay, so the question on everybody’s mind about chips these days, because it feels like they’re the bottleneck for the determining factor for how. quickly things get amazing in the world. Everyone talks about the chip shortage and rationing chips and all that.
So my question to you is, you know this better than probably almost anyone else, the chip industry has benefited from this almost miraculous phenomenon called Moore’s Law since about the mid-1960s. And there are many ways to talk about that, right? One of them is that either the amount of compute you can buy for the same dollar doubles every, let’s say, 18 months, or the amount you have to pay for the same amount of power halves every 18 months.
That phenomenon, unless I’m badly misinformed, has been pretty steady, pretty consistent, and going on for something like 80 years. We’ve never seen anything like this. I hear a decent amount of conversation now that Moore’s Law is running out of steam, and it strikes me that if that’s true, then this flourishing of innovation that we have been seeing might actually slow down.
Is that a thing that we should worry about?
First, let me set the stage for our role in Moore’s Law. Synopsys is the hundred billion dollar company that nobody has heard of, and the reason for it is we’re part of an essential ecosystem. Moore’s Law does not exist in terms of continue that rhythm of 18 months of innovation without this stack of engineering innovation.
It starts at the atomic level with material selection, physics, to build a transistor, to put it on a chip. The chip has billions of devices that somehow magically they work, and now those devices, when you think of an AI chip, it’s reaching a trillion devices, and it’s being that being designed through a number of vectors that you need to optimize.
Moore’s Law is continuing, but it’s not affordable. It’s not at the same pace that what we were used to. for the last three, four decades.
Now, in any innovation, it has to be practical. Can you deliver it on time at an affordable cost? Therefore, the innovation is taking different shape.
So you start expanding at the system level to innovate. So when you think of AI, the reason it’s possible today is because of the power of silicon. If silicon is not powerful, it can achieve the performance.
You cannot run the models. The way it’s evolving is at an architectural level. You’re able to stack multiple chips in a package.
So the chips is becoming a system.
Great.
So therefore, it’s not something to worry about because Moore’s law is hitting the limits of physics. There are other aspect to innovate, which is a system level innovation.
So this is great news, if I’m hearing you correctly. Moore’s law is slowing down. That does not automatically mean that the party’s over when it comes to this innovation digital bounty that we’ve been experiencing.
Yes, there is a terminology in the industry has been referred to for the last five years or so, advanced packaging or multi-die, which is what essentially is you’re only moving the part of the chip that you must advance process technology on Moore’s law.
The rest of it is too expensive to move. So you disaggregate the chip, you break it into small chips, then you bring it back together in a system. That’s what Synopsys does.
We provide our technology to every customer that is disaggregating that system, bringing it back together. And just to give you a reference of the value in that supply chain, our company just six years ago was $10 billion in market value. We went up 10X to a hundred billion.
There’s absolutely a scaling law taking place. They keep on doing things that they could not do the week before. And I found myself in this weird position where I get up and I’m drinking my coffee, I look at the news from the tech sector, and I realized a little while back that I was no longer surprised, being astonished.
I’m like, oh, but wow, that’s a miracle. Okay, great, you know, it’s Tuesday. Is that party gonna continue for a while?
Yes, that’s the beauty of constraining a problem. Innovation comes, engineering comes to life when you constrain the problem. You look earlier, the discussion was China, US.
If you look at China, for example, they got constrained from silicon access. They did not get access to the latest chips. Then DeepSeek came about.
What happened? They could not get access to the latest technology. You start going up the stack, which is the model, you create a far more efficient model for a specific workload, and it just beautifully work.
Now, it does not mean China is further ahead than the US in models. Now, in the US, you have access to the latest silicon. And you start, what is silicon?
It sits in a data center, and that data center is used for the applications, the models, it can be for physical AI, it can be for a chatbot on your PC, for on your phone, whatever. So for each application. And there’s an economic vector, that’s where power comes in, et cetera.
And then there is a differentiation. Are you able to deliver a product that’s going to be first to market and you just cannot do it without optimizing up that stack?
If I can just add one point to that, I mean, I think the Moore’s law in terms of more part of compute is an interesting discussion. And Sassine explained very succinctly on how this is not going to end. But the bigger power is how the ecosystem uses these tools to compound the power of it.
So companies like us follow the tech world, all the innovation Google is doing or Amazon is doing and Microsoft and NVIDIA, and our engineers are able to connect the dots for the industrial sector we serve to further compound the innovation.
And I think the innovation should not be looked in the blocks of individual components. It has to be looked for the solution it provides. And the solution compounding can happen with a human brain to say, I thought this was possible, now it’s almost possible, I’m going to give it a shot and make it happen.
And I think that’s what is propelling the innovation cycle. So things which we did 20 years back were not possible 20 years back. But now we are challenging ourselves for how our systems can co-create in a different manner.
And it’s opening up a new set of economic opportunity in industrial sector. If I just make a quick point on an example, so we make building management system in a building we are sitting to make it more efficient so that it’s more energy controlled. We are doing it for 40 years.
We thought that was the best product we ever created. AI can make it even better, the energy efficiency, by another 10 to 15%. We never thought that 40 years back, but today we take that silicon, we take a compute power and put on top of it, and it’s giving that extra 10 to 15% capability, which is ingenuity of human mind, that it can solve the extra set of problems.
So Moore’s Law continues. It continues to build more and more systems so that we are able to… It’s all about economic value creation.
How do you create more economic value, whether it’s more revenue generation, more cost reduction, and that’s what companies, all the industrial companies are doing.
This is, I promise, let me say one more thing and then I’m gonna turn it over to you because I know you’ve got fantastic questions, but I have to react to this because this is the most encouraging and optimistic thing I have heard at Davos, certainly this year.
Maybe in my time coming here, this is profoundly optimistic because what you two are educating us about is that there’s been this party going on with digital innovation. It doesn’t solve all the world’s problems, but it’s a really good thing to have. And you two have just given us a very short masterclass, the conclusion of which is that that party is going to keep going, even if, Sassine, as you say, if we run into ceilings or we start to approach a constraint, that’s the wrong thing to concentrate on.
The innovation ecosystem has the tools and the incentives to keep the party going, and we should expect a lot more digital innovation. All right, Laura, I’m sorry, you had a question.
I really wanna go then to keep the party going for what? I mean, you actually first said, what should the goal be? I really do worry a lot about the fact that right now, the hyperscalers, all of them are in California, I think they’re all, they’re in a race with one another.
They’re in a race with one another to get to AGI. They’re not even sure why. They just think if they get there first, AGI would basically be able to solve all human problems better than humans.
Sounds absolutely fabulous. Why would you not wanna do that? They are financed by a whole bunch of, their financial structures really are very much return that the return is returned to investors.
It’s value creation. That’s what it is, okay? And it’s not at all clear.
There are lots of people who sort of do the numbers, look at the assumption about how much they’re going to have to sell around the world to create the value to support the financing they have raised. There’s not clear. There’s a lot of risk here.
So this is not an industrial strategy. This is a strategy of five firms competing against one another to achieve AGI. If you go to OpenSeek, which said, OK, we can’t get these chips, but actually what we’re going to do is we’re going to provide open source.
And basically then the rest of the Chinese economy can actually access this technology to apply it to their sector, to apply it to their consumers. And at the end of the day, that seems like a much more understandable approach. So I will then say I have a question for Saudis.
I keep on feeling you’re China-leaning a little bit, Laura, I’ve got to be honest.
I’m not China-leaning. I am raising questions about the strategies being pursued by the hyperscalers, all of whom are here representing AI to the world. OK?
That’s what I’m saying.
It’s actually Saudi-leaning, because it’s about acceleration and adoption coming together. It’s about acceleration and adoption coming together. You’re saying without the use cases, we can’t just focus on the supply side of the world.
We can’t.
It has to be the supply and the demand coming together.
It’s the demand. Where is the demand coming?
To save lives.
Yeah, to save lives, to actually improve energy efficiency over time because of the issue of the climate, which we can’t mention here this year, but actually I think we should. We have real constraints on us from the climate. We have the issue of youth and employment.
Indeed. Youth and employment. So you said talent development has been very important in Saudi Arabia, but you have to find ways to keep those people moving in careers that generate living standards over time that are acceptable.
That’s a goal.
So Laura, to your point.
That’s an industrial strategy goal. It’s not a goal of open AI. I like open AI’s technology a lot.
But it’s not open AI’s goal. It’s value creation.
Before you jump in, before you jump in, I just want to flag to our live participants here with us in the room, we’re going to open this up for questions in just a little bit. But this is so spicy that I don’t want to stop it right now. So over to you.
So to build on Laura’s point, I think where AI needs to emphasize is augmentation of skills. Because if you look at the broader picture, human population is generally not growing in majority of the world today. There are exceptions.
But there’s a population shrinkage in most of the mature world, including China now. So if I fast forward 15 years from now, if there are not going to be enough skilled people, and people are not willing to do work where you have to work with hand to run an operation, run a building, run a plant, run a warehouse, how that work will get produced?
And will it stop the economic progression? Or will the tools get created where one human can work of two humans? Or a less experienced person can use a tool to do a work of more experienced person?
We are focused to use and deploy AI in that context. We are more around augmentation strategy of human to make them more productive. But that creates economic value.
And that can create jobs.
This is fascinating. Because I’m hearing two problems articulated. They’re basically the mirror image, or no, no, the plain opposite of each other.
Laura, I heard you talk about the fact that there might not be enough jobs to go around, that we’re creating some conditions for technological unemployment. I heard you just identify the exact opposite concern. There might not be enough people to do all the work that need to be done.
Which is it?
So you have to differentiate between a work getting automated and augmentation.
That’s right.
Because a human divides a work into three buckets. You define the problem. You execute the problem.
And then you check. This is how humans have evolved over the last 1,000 years. In industrial world, still humans have to define what problem to solve.
You can automate to execution, software can come in, but the first and third step is augmentation. Let’s take an example. Can AI read an X-ray?
Yes, but will you conclude a result of AI to say, I read your X-ray and here’s a treatment. You don’t want a doctor at the last step to say, please tell me, is it the right one or wrong one, right? And that’s where the three-step approach has to be done.
So it’s augmentation in the skills, which are critical for the planner. So I think if the focus is towards augmentation, economic value creation will be higher and job losses will be lower. But if the focus is on the code automation and others.
I couldn’t agree more. It’s all about acceleration adoption with the augmentation approach. Just to build on what has been said, there are a few players that are just focused on the supply side of the world.
That’s like throwing good money after bad. And that’s why it’s not only takes capital, but a captive market and real use cases. So the X-ray example, we have the largest virtual hospital today in the world, part of the success story that we have in the year 2030.
And what has happened as we deployed those AI agents, for those radiologists to be able to detect whether a tumor is benign or malignant, they were able to see more CT scans, more MRIs, more X-rays to be able to serve and help and protect more lives.
Taking a step back to that first robotic story of a heart transplant, he’s able to get patients outside of the ICU room and the CCU room within four hours, or 48 hours versus four to eight weeks. This is a remarkable example of how, if you’re talking about a responsible approach of leadership in the intelligence age, you need that acceleration adoption with the augmentation approach.
While I agree, there hasn’t been enough thinking of how to transform education and the talent that will be replaced with intelligence. There is no question about it. Today, if you’re graduating in computer science, you don’t have a job.
Very difficult. Five, six, seven years ago, you could not get enough of them.
Enough jobs.
And so there are tasks, if you’re able to move it to automation, you don’t need them anymore.
You don’t need it.
As a company, I have 30,000 employees and about 25,000 of them are engineers. And those are the most sophisticated engineers in the world.
Many part of my workforce, I’m flattening it.
Why? Because I’m forcing and pushing to drive more augmentation, all the stuff that’s been said. But what does that mean for the early in their career?
Coming in.
They don’t have a job. And those are statistics there across the world that the unemployment for areas that AI is able to automate is being impacted. Now, the counter to it, well, that’s great.
You can do more innovation. But, okay, that’s easy said. But innovate to build what?
There’s going to be a period of time where there’s going to be a stress in the economy due to AI. But all of that being said, I’m a huge believer that you need to run a race with it. Because it’s so significantly disruptive.
So hold on. There will be bumps in the road, but we still have to accelerate.
You have no other choice.
You have no choice.
No, you could try to mandate that you’ve got to slow down. Governments have tried to do that before.
But then you’re missing a huge opportunity from solving significant problems. We may cure cancer in our lifetime because of the technology we have.
Helped us focus on the right areas.
I think helped us focus on the right areas, I was thinking about all of those engineers and basically I was thinking okay if computer science PhDs can’t get jobs as fast, one of the things you could imagine is you could imagine more support for the universities so those computer science, brilliant engineers could stay and continue to work on innovation in basic science and sooner or later they would actually develop a product or a service which they could then go into the marketplace.
I actually think your argument is to put in more basic science research so you can support these people for longer periods of time as postdocs because you can’t say oh well just go out into the world and become an entrepreneur I mean that’s really you don’t have anything to do that.
You don’t have the ability to do that.
We’ve got time, if everybody is concise, we’ve got time for I believe one question from the audience. Sir the only rule, I’m sorry, is threefold. It has to be concise, it has to be clear, and it has to be a question.
Quick question, 10 years from now, you’re on the same panel, what is your prediction now that the world will be?
Oh yeah, okay, beautiful. Lightning round to end with, we’re 10 years in the future, what’s the big story of the previous 10 years? Can you start?
History is a great predictor of the future.
We’ve got to go quick, it’s got to be a lightning round.
Lightning round, for every dollar made in infra, you’ll see 20 bucks in software, you’ll see more use cases and more proliferation of these technologies to help the people, planet, and prosperity.
Laura, short quick prediction, 10 years.
I think I’m very concerned about the national security breaches of all of this. I think we could have some serious issues that involve the geo-economics that we’re not.
Pervasive use of physical intelligence that will dramatically change and improve human lives. I can hardly think of a better note to end on than improving human lives.
That’s a good one. I think that’s great. Let’s do that.
Thank you all my panelists, this has been great. Thank you for joining us. Let’s do that.
Thank you.
Laura D’Andrea Tyson
Speech speed
150 words per minute
Speech length
1546 words
Speech time
614 seconds
US model relies on basic science, university-industry partnerships, risk capital, and defense funding through DARPA
Explanation
The US innovation model is driven by basic science research, strong relationships between companies and universities, availability of risk capital including venture capital, and government support through defense-related funding. This creates an ecosystem where breakthroughs from universities can be commercialized with private investment.
Evidence
Google’s origins from basic science support for students and faculty at universities; DARPA-funded research at universities; deep venture capital markets in the US compared to Europe; drug pipeline development supported by basic science funding
Major discussion point
Technology Ecosystem Development Models
Topics
Economic | Infrastructure | Legal and regulatory
Disagreed with
– Andrew McAfee
Disagreed on
Preferred technology ecosystem development model – US market-driven vs Chinese state-directed approach
Chinese model uses long-term national industrial strategy with state capital and public sector funding for nascent industries
Explanation
China’s approach involves the nation setting long-term industrial strategies for specific sectors and using state capital to develop entire ecosystems in partnership with private companies. This model focuses on national competitiveness goals in targeted industries like EVs and batteries.
Evidence
China’s battery and EV industry development through national strategy over many years; state capital funding for nascent industries that later transitions to private sector funding; edge AI applications being financed by venture capitalists selling to companies like Tencent
Major discussion point
Technology Ecosystem Development Models
Topics
Economic | Legal and regulatory | Development
Disagreed with
– Andrew McAfee
Disagreed on
Preferred technology ecosystem development model – US market-driven vs Chinese state-directed approach
Hyperscalers are racing toward AGI without clear industrial strategy or defined goals for societal benefit
Explanation
The major tech companies are competing against each other to achieve artificial general intelligence primarily for investor returns rather than following a coherent industrial strategy. This approach lacks clear justification for the massive investments and energy consumption required.
Evidence
Five hyperscaler firms competing to reach AGI first; financial structures focused on investor returns rather than societal goals; unclear business models to support the massive financing raised; comparison to China’s DeepSeek providing open source access
Major discussion point
AI Implementation and Adoption Strategies
Topics
Economic | Legal and regulatory | Human rights
More support for basic science research could help displaced engineers continue innovation work
Explanation
As AI automates many traditional engineering jobs, universities could receive more funding to support displaced computer science PhDs and engineers as postdocs working on basic science research. This would allow them to continue innovation work until they develop marketable products or services.
Evidence
Computer science PhDs having difficulty finding jobs; the need to support brilliant engineers for longer periods in research roles
Major discussion point
Employment and Skills Transformation
Topics
Development | Economic | Sociocultural
Agreed with
– Abdullah AlSwaha
– Vimal Kapur
– Sassine Ghazi
Agreed on
AI should augment rather than replace human workers
Disagreed with
– Vimal Kapur
– Sassine Ghazi
Disagreed on
Future employment impact – job displacement vs labor shortage
Serious national security breaches could emerge from rapid AI development without proper safeguards
Explanation
The rapid advancement of AI technology without adequate consideration of security implications could lead to significant national security vulnerabilities and geopolitical risks that are not being adequately addressed.
Major discussion point
National Security and Geopolitical Implications
Topics
Cybersecurity | Legal and regulatory
Industrial strategy should focus on defined goals like healthcare, energy efficiency, and youth employment rather than just value creation
Explanation
Technology development should be guided by clear societal objectives such as improving healthcare outcomes, addressing climate constraints through energy efficiency, and creating meaningful employment opportunities for young people, rather than solely focusing on financial returns.
Evidence
Climate constraints that limit energy usage; youth employment challenges; the need for living standards that are acceptable over time
Major discussion point
National Security and Geopolitical Implications
Topics
Development | Economic | Human rights
Potential serious national security issues from current AI development approaches
Explanation
Looking ahead 10 years, the current approach to AI development could result in significant national security challenges due to inadequate consideration of geopolitical and security implications.
Major discussion point
Future Predictions (10 Years)
Topics
Cybersecurity | Legal and regulatory
Abdullah AlSwaha
Speech speed
168 words per minute
Speech length
1210 words
Speech time
429 seconds
Saudi Arabia follows a blueprint of talent, technology, and trust partnerships to achieve global ambitions in AI
Explanation
The Kingdom’s strategy focuses on three pillars – developing talent, investing in technology, and building trust with international partners – to diversify the economy and become a global leader in AI. This approach emphasizes both acceleration of AI development and adoption of AI solutions.
Evidence
56% diversification of oil GDP achieved ahead of 2030 target; $0.11 per million input-output tokens cost achievement; partnerships with UC Berkeley; Nobel Prize winner Professor Omar Yaghi collaboration; largest AI investment ticket globally; physical AI deployment in robotic heart transplants
Major discussion point
Technology Ecosystem Development Models
Topics
Economic | Development | Infrastructure
Focus should be on both acceleration and adoption, not just supply side development
Explanation
Successful AI implementation requires balancing the development of AI capabilities with actual deployment and use cases, rather than focusing solely on building AI infrastructure. This prevents market bubbles and ensures practical value creation.
Evidence
Kingdom’s approach to becoming the most AI-enabled nation; generative AI in healthcare; agentic AI in public and private sectors; real AI adoption delivering $1-2 billion in efficiency gains at Aramco
Major discussion point
AI Implementation and Adoption Strategies
Topics
Economic | Development | Infrastructure
Agreed with
– Vimal Kapur
– Sassine Ghazi
Agreed on
AI should augment rather than replace human workers
Physical AI deployment in healthcare demonstrates real-world applications like robotic heart transplants
Explanation
The Kingdom has successfully implemented physical AI in medical procedures, showing concrete benefits in patient outcomes and recovery times. This represents practical application of AI technology beyond theoretical capabilities.
Evidence
First fully robotic heart transplant in national hospitals; patients leaving ICU/CCU in 4-48 hours versus 4-8 weeks traditional recovery time; AI agents helping radiologists detect tumors and serve more patients
Major discussion point
AI Implementation and Adoption Strategies
Topics
Development | Sociocultural
Saudi Arabia has allocated over 10 gigawatts of capacity to address the energy wall challenge
Explanation
The Kingdom has proactively addressed the massive energy requirements of AI infrastructure by designating significant power generation capacity specifically for AI and data center operations, with high-level government oversight.
Evidence
83 gigawatts global energy need identified; monthly committee meetings chaired by His Royal Highness; Prince Abdulaziz bin Salman leading energy subcommittee; definitive agreements with Jensen Wang and Elon Musk for major investments
Major discussion point
Energy and Environmental Challenges
Topics
Infrastructure | Economic | Development
Agreed with
– Vimal Kapur
Agreed on
Energy challenges require holistic solutions balancing consumption and efficiency
Infrastructure investment will generate 20x returns in software applications and use cases
Explanation
Looking ahead 10 years, every dollar invested in AI infrastructure will generate twenty dollars in software development and practical applications, leading to widespread proliferation of technologies that benefit people, planet, and prosperity.
Evidence
Historical pattern of infrastructure investment returns; focus on use cases and technology proliferation
Major discussion point
Future Predictions (10 Years)
Topics
Economic | Infrastructure | Development
Vimal Kapur
Speech speed
187 words per minute
Speech length
1719 words
Speech time
551 seconds
Companies must interface with governments early to shape policy and align business models with national strategies
Explanation
Large technology companies have a responsibility to engage proactively with governments to share their development roadmaps and help shape policies that align with long-term societal goals. This creates mutual benefits for both business success and societal progress.
Evidence
Honeywell’s practice of interfacing with governments like Saudi Arabia; access to high-level officials to discuss technology directions; ability to shape policy while aligning business models
Major discussion point
Technology Ecosystem Development Models
Topics
Economic | Legal and regulatory
AI consumption must be balanced with energy efficiency gains in industrial applications
Explanation
While AI systems consume significant energy, they also enable substantial energy efficiency improvements in industrial operations. The net effect must be considered holistically rather than focusing only on AI’s energy consumption.
Evidence
AI as both a source of energy consumption and efficiency; building management systems improved by 10-15% efficiency through AI after 40 years of previous optimization
Major discussion point
Energy and Environmental Challenges
Topics
Infrastructure | Economic | Development
Agreed with
– Abdullah AlSwaha
Agreed on
Energy challenges require holistic solutions balancing consumption and efficiency
Gas-fired power plants remain the primary scalable solution for energy-intensive data centers due to physics limitations of renewables
Explanation
The energy intensity required for data centers and industrial processes cannot be met by renewable sources alone due to physical limitations. Gas-fired power generation remains the only scalable solution for high-energy applications.
Evidence
Solar power cannot produce cement or steel due to energy intensity requirements; physics limitations prevent renewables from meeting industrial energy needs; energy mix must be considered in terms of total joules, not just percentages
Major discussion point
Energy and Environmental Challenges
Topics
Infrastructure | Economic
Disagreed with
– Andrew McAfee
Disagreed on
Energy solutions for AI infrastructure – gas-only vs mixed renewable approach
Energy mix change requires recognizing that transformation built over 105 years cannot be recreated in 20 years
Explanation
The current energy infrastructure based on hydrocarbons was developed over more than a century and cannot be completely transformed in just two decades. A realistic timeline of 30+ years is needed for substantial energy system changes.
Evidence
Hydrocarbon-based energy systems developed over 105 years since World War I; nuclear power takes 10+ years to build; limited scalable alternatives to gas for power generation
Major discussion point
Energy and Environmental Challenges
Topics
Infrastructure | Economic | Development
Disagreed with
– Andrew McAfee
Disagreed on
Energy solutions for AI infrastructure – gas-only vs mixed renewable approach
AI should augment human skills rather than replace workers entirely, following a three-step approach of problem definition, execution, and verification
Explanation
The most effective AI implementation focuses on augmenting human capabilities rather than full automation. Humans should retain responsibility for defining problems and verifying results, while AI handles execution, creating economic value while minimizing job displacement.
Evidence
Three-step human work process: define problem, execute, check results; AI reading X-rays example where doctors still needed for final verification; population shrinkage in mature economies creating need for productivity enhancement
Major discussion point
AI Implementation and Adoption Strategies
Topics
Economic | Sociocultural | Future of work
Agreed with
– Abdullah AlSwaha
– Sassine Ghazi
Agreed on
AI should augment rather than replace human workers
Disagreed with
– Laura D’Andrea Tyson
– Sassine Ghazi
Disagreed on
Future employment impact – job displacement vs labor shortage
Population shrinkage in mature economies creates need for AI augmentation to maintain productivity
Explanation
Most developed countries face declining populations and labor shortages, particularly for hands-on work. AI augmentation becomes essential to maintain economic progress by enabling fewer people to accomplish more work.
Evidence
Population decline in majority of mature world including China; shortage of people willing to do manual operations in plants, buildings, warehouses; need for tools that allow one person to do work of two
Major discussion point
Employment and Skills Transformation
Topics
Economic | Development | Sociocultural
Innovation compounds through ecosystem collaboration, enabling solutions that weren’t possible 20 years ago
Explanation
Innovation accelerates when companies combine advances from different technology sectors, creating compounding effects that enable previously impossible solutions. This ecosystem approach drives continuous innovation cycles beyond individual component improvements.
Evidence
Honeywell engineers connecting innovations from Google, Amazon, Microsoft, and NVIDIA to industrial applications; building management systems achieving additional 10-15% efficiency improvements through AI integration
Major discussion point
Future of Moore’s Law and Innovation
Topics
Economic | Infrastructure | Development
Agreed with
– Sassine Ghazi
– Andrew McAfee
Agreed on
Innovation continues despite Moore’s Law constraints through system-level approaches
Sassine Ghazi
Speech speed
150 words per minute
Speech length
878 words
Speech time
349 seconds
Moore’s Law continues but is less affordable, driving innovation toward system-level solutions and advanced packaging
Explanation
While Moore’s Law hasn’t stopped, the cost of advancing at the traditional pace has become prohibitive. Innovation is shifting to system-level approaches like multi-die packaging, where only critical components use the most advanced processes while other parts use cheaper technologies.
Evidence
Synopsys market value growth from $10 billion to $100 billion in six years; advanced packaging and multi-die technologies; disaggregating chips into smaller components and reassembling them as systems
Major discussion point
Future of Moore’s Law and Innovation
Topics
Infrastructure | Economic
Agreed with
– Vimal Kapur
– Andrew McAfee
Agreed on
Innovation continues despite Moore’s Law constraints through system-level approaches
Constraints drive innovation, as demonstrated by China’s DeepSeek creating efficient models despite chip access limitations
Explanation
When faced with constraints like limited access to advanced chips, innovation moves up the technology stack to find alternative solutions. China’s development of more efficient AI models despite chip restrictions exemplifies how constraints can spur breakthrough innovations.
Evidence
China’s limited access to latest chips leading to DeepSeek development; more efficient models created for specific workloads; innovation occurring at the model level rather than hardware level
Major discussion point
Future of Moore’s Law and Innovation
Topics
Economic | Legal and regulatory | Infrastructure
Computer science graduates face job scarcity as AI automates many traditional programming tasks
Explanation
The job market for computer science graduates has dramatically shifted, with many traditional programming and engineering roles being automated by AI. This represents a significant change from just a few years ago when such talent was in high demand.
Evidence
Current computer science graduates having difficulty finding jobs; contrast with 5-7 years ago when there was high demand; 25,000 engineers at Synopsys with workforce being flattened due to AI augmentation
Major discussion point
Employment and Skills Transformation
Topics
Economic | Sociocultural | Future of work
Disagreed with
– Laura D’Andrea Tyson
– Vimal Kapur
Disagreed on
Future employment impact – job displacement vs labor shortage
Pervasive physical intelligence will dramatically improve human lives
Explanation
Looking ahead 10 years, the widespread deployment of physical AI systems that can interact with and manipulate the physical world will create significant improvements in human quality of life and capabilities.
Major discussion point
Future Predictions (10 Years)
Topics
Development | Infrastructure | Sociocultural
Andrew McAfee
Speech speed
179 words per minute
Speech length
1993 words
Speech time
667 seconds
The digital innovation party will continue despite approaching physical constraints
Explanation
Even as Moore’s Law slows down and physical limitations are reached, the innovation ecosystem has demonstrated the ability to find alternative paths for continued technological advancement. This suggests that the current period of rapid digital innovation will persist through new approaches and system-level innovations.
Evidence
Panelists’ explanations of system-level innovation, advanced packaging, and constraint-driven innovation as alternatives to traditional Moore’s Law scaling
Major discussion point
Future of Moore’s Law and Innovation
Topics
Economic | Infrastructure | Development
Agreed with
– Sassine Ghazi
– Vimal Kapur
Agreed on
Innovation continues despite Moore’s Law constraints through system-level approaches
Audience
Speech speed
140 words per minute
Speech length
21 words
Speech time
9 seconds
Request for 10-year future predictions from panel experts
Explanation
An audience member asked the panel to provide their predictions for what the world will look like in 10 years, seeking expert insights on future technological and societal developments. This question prompted a lightning round of future forecasts from each panelist.
Evidence
Quick question, 10 years from now, you’re on the same panel, what is your prediction now that the world will be?
Major discussion point
Future Predictions (10 Years)
Topics
Development | Economic | Infrastructure
Agreements
Agreement points
AI should augment rather than replace human workers
Speakers
– Abdullah AlSwaha
– Vimal Kapur
– Sassine Ghazi
Arguments
Focus should be on both acceleration and adoption, not just supply side development
AI should augment human skills rather than replace workers entirely, following a three-step approach of problem definition, execution, and verification
More support for basic science research could help displaced engineers continue innovation work
Summary
All three speakers agree that AI implementation should focus on augmenting human capabilities rather than wholesale replacement, emphasizing the importance of keeping humans in the loop for critical decision-making while using AI to enhance productivity
Topics
Economic | Sociocultural | Future of work
Innovation continues despite Moore’s Law constraints through system-level approaches
Speakers
– Sassine Ghazi
– Vimal Kapur
– Andrew McAfee
Arguments
Moore’s Law continues but is less affordable, driving innovation toward system-level solutions and advanced packaging
Innovation compounds through ecosystem collaboration, enabling solutions that weren’t possible 20 years ago
The digital innovation party will continue despite approaching physical constraints
Summary
There is strong consensus that technological innovation will persist even as traditional Moore’s Law scaling becomes more difficult, with innovation shifting to system-level integration and ecosystem collaboration
Topics
Infrastructure | Economic | Development
Energy challenges require holistic solutions balancing consumption and efficiency
Speakers
– Abdullah AlSwaha
– Vimal Kapur
Arguments
Saudi Arabia has allocated over 10 gigawatts of capacity to address the energy wall challenge
AI consumption must be balanced with energy efficiency gains in industrial applications
Summary
Both speakers acknowledge the massive energy requirements of AI infrastructure while emphasizing that AI also enables significant energy efficiency improvements, requiring a balanced approach to energy planning
Topics
Infrastructure | Economic | Development
Similar viewpoints
Both emphasize the importance of having clear societal goals and practical applications for AI development rather than pursuing technology advancement for its own sake or purely for financial returns
Speakers
– Laura D’Andrea Tyson
– Abdullah AlSwaha
Arguments
Industrial strategy should focus on defined goals like healthcare, energy efficiency, and youth employment rather than just value creation
Focus should be on both acceleration and adoption, not just supply side development
Topics
Economic | Development | Human rights
Both recognize the significant employment disruption in technical fields caused by AI automation and the need for alternative pathways to support displaced technical talent
Speakers
– Laura D’Andrea Tyson
– Sassine Ghazi
Arguments
More support for basic science research could help displaced engineers continue innovation work
Computer science graduates face job scarcity as AI automates many traditional programming tasks
Topics
Economic | Sociocultural | Future of work
Both view constraints and limitations as drivers of innovation rather than barriers, whether demographic constraints or technological access limitations
Speakers
– Vimal Kapur
– Sassine Ghazi
Arguments
Population shrinkage in mature economies creates need for AI augmentation to maintain productivity
Constraints drive innovation, as demonstrated by China’s DeepSeek creating efficient models despite chip access limitations
Topics
Economic | Development | Infrastructure
Unexpected consensus
Criticism of hyperscaler AI development approach
Speakers
– Laura D’Andrea Tyson
– Abdullah AlSwaha
Arguments
Hyperscalers are racing toward AGI without clear industrial strategy or defined goals for societal benefit
Focus should be on both acceleration and adoption, not just supply side development
Explanation
It’s unexpected to see an economist from Silicon Valley’s UC Berkeley and a Saudi government minister both criticizing the approach of major US tech companies, suggesting that even those within or adjacent to the Silicon Valley ecosystem have concerns about the current AI development trajectory
Topics
Economic | Legal and regulatory | Human rights
Acknowledgment of significant employment disruption from AI
Speakers
– Sassine Ghazi
– Laura D’Andrea Tyson
– Vimal Kapur
Arguments
Computer science graduates face job scarcity as AI automates many traditional programming tasks
More support for basic science research could help displaced engineers continue innovation work
AI should augment human skills rather than replace workers entirely, following a three-step approach of problem definition, execution, and verification
Explanation
Despite the generally optimistic tone about AI’s benefits, there’s unexpected consensus among all speakers that AI will cause significant job displacement, even in highly skilled technical fields. This honest acknowledgment of AI’s disruptive effects is notable given the panel’s overall pro-technology stance
Topics
Economic | Sociocultural | Future of work
Overall assessment
Summary
The panel shows strong consensus on the need for responsible AI development that balances technological advancement with practical applications and human welfare. Key areas of agreement include the importance of AI augmentation over replacement, the continuation of innovation despite physical constraints, and the need for holistic approaches to energy and employment challenges.
Consensus level
High level of consensus with constructive disagreement mainly on implementation approaches rather than fundamental principles. This suggests a mature understanding of AI’s opportunities and challenges across different stakeholder perspectives, which could facilitate more effective policy coordination and international cooperation in AI governance.
Differences
Different viewpoints
Preferred technology ecosystem development model – US market-driven vs Chinese state-directed approach
Speakers
– Laura D’Andrea Tyson
– Andrew McAfee
Arguments
US model relies on basic science, university-industry partnerships, risk capital, and defense funding through DARPA
Chinese model uses long-term national industrial strategy with state capital and public sector funding for nascent industries
Summary
Laura presents both US and Chinese models as viable but seems to favor aspects of China’s strategic approach, while Andrew repeatedly suggests she is ‘China-leaning’ and appears to prefer the US market-driven model
Topics
Economic | Legal and regulatory | Development
Energy solutions for AI infrastructure – gas-only vs mixed renewable approach
Speakers
– Vimal Kapur
– Andrew McAfee
Arguments
Gas-fired power plants remain the primary scalable solution for energy-intensive data centers due to physics limitations of renewables
Energy mix change requires recognizing that transformation built over 105 years cannot be recreated in 20 years
Summary
Vimal argues that physics limitations make gas the only viable solution for high-energy AI applications, while Andrew questions why renewables aren’t included in the energy mix solution
Topics
Infrastructure | Economic
Future employment impact – job displacement vs labor shortage
Speakers
– Laura D’Andrea Tyson
– Vimal Kapur
– Sassine Ghazi
Arguments
More support for basic science research could help displaced engineers continue innovation work
AI should augment human skills rather than replace workers entirely, following a three-step approach of problem definition, execution, and verification
Computer science graduates face job scarcity as AI automates many traditional programming tasks
Summary
Laura and Sassine worry about AI causing unemployment and job displacement, while Vimal argues the opposite – that population decline creates labor shortages requiring AI augmentation
Topics
Economic | Sociocultural | Future of work
Unexpected differences
Optimism vs pessimism about AI’s future impact
Speakers
– Andrew McAfee
– Laura D’Andrea Tyson
Arguments
The digital innovation party will continue despite approaching physical constraints
Serious national security breaches could emerge from rapid AI development without proper safeguards
Explanation
Unexpected because both are economists/technologists who might be expected to have similar outlooks, but Andrew expresses strong optimism about continued innovation while Laura warns of serious security risks and questions the current development approach
Topics
Cybersecurity | Legal and regulatory | Economic
Current AI development strategy assessment
Speakers
– Laura D’Andrea Tyson
– Abdullah AlSwaha
– Sassine Ghazi
Arguments
Hyperscalers are racing toward AGI without clear industrial strategy or defined goals for societal benefit
Focus should be on both acceleration and adoption, not just supply side development
Constraints drive innovation, as demonstrated by China’s DeepSeek creating efficient models despite chip access limitations
Explanation
Unexpected disagreement on whether current AI development approaches are fundamentally sound – Laura is highly critical of hyperscaler strategies, Abdullah sees need for balance but is generally positive, while Sassine views constraints as beneficial for innovation
Topics
Economic | Legal and regulatory | Development
Overall assessment
Summary
Main disagreements center on technology ecosystem models (US vs Chinese approaches), energy solutions for AI infrastructure, employment impacts, and assessment of current AI development strategies
Disagreement level
Moderate to significant disagreements with important implications – the speakers represent different philosophical approaches to technology governance, from market-driven to state-directed strategies, and have fundamentally different views on whether current AI development is beneficial or problematic for society
Partial agreements
Partial agreements
Similar viewpoints
Both emphasize the importance of having clear societal goals and practical applications for AI development rather than pursuing technology advancement for its own sake or purely for financial returns
Speakers
– Laura D’Andrea Tyson
– Abdullah AlSwaha
Arguments
Industrial strategy should focus on defined goals like healthcare, energy efficiency, and youth employment rather than just value creation
Focus should be on both acceleration and adoption, not just supply side development
Topics
Economic | Development | Human rights
Both recognize the significant employment disruption in technical fields caused by AI automation and the need for alternative pathways to support displaced technical talent
Speakers
– Laura D’Andrea Tyson
– Sassine Ghazi
Arguments
More support for basic science research could help displaced engineers continue innovation work
Computer science graduates face job scarcity as AI automates many traditional programming tasks
Topics
Economic | Sociocultural | Future of work
Both view constraints and limitations as drivers of innovation rather than barriers, whether demographic constraints or technological access limitations
Speakers
– Vimal Kapur
– Sassine Ghazi
Arguments
Population shrinkage in mature economies creates need for AI augmentation to maintain productivity
Constraints drive innovation, as demonstrated by China’s DeepSeek creating efficient models despite chip access limitations
Topics
Economic | Development | Infrastructure
Takeaways
Key takeaways
Two primary models for technology ecosystem development exist: the US model (basic science, university partnerships, risk capital) and the Chinese model (long-term national industrial strategy with state funding)
Successful AI implementation requires both acceleration and adoption, not just supply-side development – companies need captive markets and real use cases
AI should focus on augmenting human capabilities rather than replacing workers, following a three-step approach of problem definition, execution, and verification
Moore’s Law is slowing but innovation will continue through system-level solutions, advanced packaging, and architectural improvements
Energy constraints are real – gas-fired power plants remain the primary scalable solution for data centers due to physics limitations of renewables
The current hyperscaler race toward AGI lacks clear industrial strategy and defined societal goals
AI is already causing job displacement in fields like computer science, requiring new approaches to education and talent development
Physical AI applications in healthcare demonstrate tangible benefits, such as robotic surgery reducing patient recovery time from weeks to hours
Resolutions and action items
Saudi Arabia has allocated over 10 gigawatts of energy capacity to support AI infrastructure development
Companies like Honeywell should continue interfacing with governments early to shape policy alignment
Focus AI development on augmentation strategies that enhance human productivity rather than full automation
Increase support for basic science research to provide career paths for displaced engineers and continue innovation
Unresolved issues
How to balance AI energy consumption with environmental sustainability goals
What to do with computer science graduates who can no longer find traditional programming jobs
How to prevent potential national security breaches from rapid AI development
Whether the hyperscaler investment model is sustainable given unclear return projections
How to transform education systems to prepare workers for an AI-augmented economy
The timeline and feasibility of transitioning from fossil fuels for energy-intensive applications
How to ensure AI development serves societal goals rather than just value creation for investors
Suggested compromises
Pursue energy mix change rather than complete energy transition, recognizing the 30-year timeline needed for transformation
Balance AI automation with augmentation approaches to minimize job displacement while maximizing productivity gains
Combine public sector funding for nascent technologies with private sector financing for mature applications
Support displaced technical workers through extended postdoctoral research positions while they develop new innovations
Focus AI development on high-value applications like healthcare and energy efficiency rather than entertainment uses
Thought provoking comments
I really wanna go then to keep the party going for what? I mean, you actually first said, what should the goal be? I really do worry a lot about the fact that right now, the hyperscalers, all of them are in California… They’re in a race with one another to get to AGI. They’re not even sure why.
Speaker
Laura D’Andrea Tyson
Reason
This comment fundamentally challenged the underlying assumptions of AI development by questioning whether the current race toward AGI has clear purpose or societal benefit. It shifted focus from technical capabilities to strategic intent and societal outcomes.
Impact
This comment created a pivotal turning point in the discussion, moving it from optimistic technical progress to critical examination of AI development goals. It prompted Minister AlSwaha to emphasize the importance of ‘acceleration and adoption coming together’ and led to a deeper exploration of whether AI development should be driven by industrial strategy or market competition.
So you have to differentiate between a work getting automated and augmentation… In industrial world, still humans have to define what problem to solve. You can automate to execution, software can come in, but the first and third step is augmentation.
Speaker
Vimal Kapur
Reason
This comment provided a sophisticated framework for understanding AI’s impact on employment by breaking down human work into three components: problem definition, execution, and verification. It offered a nuanced alternative to the binary automation vs. job creation debate.
Impact
This insight reframed the entire employment discussion, moving it away from the polarized ‘AI will create/destroy jobs’ debate toward a more sophisticated understanding of human-AI collaboration. It influenced subsequent speakers to adopt the augmentation framework and led to concrete examples like the X-ray analysis case.
Today, if you’re graduating in computer science, you don’t have a job. Very difficult. Five, six, seven years ago, you could not get enough of them… As a company, I have 30,000 employees and about 25,000 of them are engineers… But what does that mean for the early in their career? They don’t have a job.
Speaker
Sassine Ghazi
Reason
This comment provided stark, concrete evidence that AI displacement is already happening in high-skill sectors, contradicting the more optimistic augmentation narrative. It grounded the theoretical discussion in current reality and highlighted the immediate human cost of AI advancement.
Impact
This comment created significant tension in the discussion by presenting real-world evidence that challenged the prevailing optimistic tone. It forced other panelists to acknowledge current displacement effects and led Laura to suggest expanded basic science research as a potential solution for displaced engineers.
Moore’s Law is continuing, but it’s not affordable. It’s not at the same pace… Therefore, the innovation is taking different shape. So you start expanding at the system level to innovate.
Speaker
Sassine Ghazi
Reason
This comment provided crucial technical insight that Moore’s Law isn’t ending but transforming, shifting innovation from chip-level to system-level approaches. It offered a sophisticated understanding of how technological constraints drive new forms of innovation.
Impact
This insight fundamentally shifted the discussion from concern about technological limits to optimism about continued innovation through different pathways. It led Andrew McAfee to declare this ‘the most encouraging and optimistic thing I have heard at Davos’ and reinforced the theme that constraints drive innovation rather than halt it.
The energy systems have been created over the last 100 years with the hydrocarbons… So we have to be conscious that what was created in 105 years can’t be recreated in 20 years… Solar power cannot produce cement. Solar power cannot produce steel… It’s against physics.
Speaker
Vimal Kapur
Reason
This comment introduced hard physical constraints into the discussion about AI’s energy demands, challenging optimistic assumptions about renewable energy solutions. It grounded the conversation in thermodynamic realities rather than wishful thinking.
Impact
This comment sobered the discussion about AI’s environmental impact by introducing non-negotiable physical limits. It forced recognition that the energy intensity of AI development faces real constraints that cannot be solved through innovation alone, adding complexity to the sustainability narrative.
Overall assessment
These key comments transformed what began as a relatively optimistic discussion about technological ecosystems into a more nuanced examination of AI development’s purposes, constraints, and societal impacts. Laura Tyson’s challenge to the AGI race fundamentally shifted the conversation from ‘how to win with technology’ to ‘what winning should mean.’ The technical insights about Moore’s Law and energy constraints provided realistic boundaries for innovation expectations, while the employment displacement evidence forced acknowledgment of current costs alongside future benefits. Together, these comments created a more sophisticated dialogue that balanced technological optimism with practical concerns about purpose, sustainability, and human impact. The discussion evolved from celebrating technological progress to critically examining its direction and consequences.
Follow-up questions
How can we ensure AI is used for solving critical problems like healthcare rather than less essential applications?
Speaker
Vimal Kapur
Explanation
This addresses the fundamental question of prioritizing AI applications based on societal value and resource allocation, particularly given energy constraints
What are the broader implications of the hyperscalers’ race to AGI and is their current strategy sustainable?
Speaker
Laura D’Andrea Tyson
Explanation
This questions whether the current competitive approach by major tech companies to achieve AGI is economically viable and aligned with broader societal goals
How can we address the unemployment crisis in fields like computer science that are being automated by AI?
Speaker
Sassine Ghazi
Explanation
This highlights the immediate challenge of job displacement in technical fields and the need for solutions to support affected workers
How can education systems be transformed to prepare talent for the AI-driven economy?
Speaker
Sassine Ghazi
Explanation
This addresses the gap between current educational approaches and the skills needed in an AI-augmented workforce
What are the potential national security implications of AI development and deployment?
Speaker
Laura D’Andrea Tyson
Explanation
This raises concerns about security vulnerabilities and geopolitical risks associated with AI advancement
How can we solve the energy problem holistically while supporting AI development?
Speaker
Vimal Kapur
Explanation
This addresses the complex challenge of meeting increasing energy demands from AI while maintaining sustainability goals
How can industrial strategy be designed to balance acceleration and adoption of AI technologies?
Speaker
Abdullah AlSwaha
Explanation
This explores the policy framework needed to ensure AI development is coupled with practical implementation and real-world benefits
What support mechanisms are needed to help displaced technical workers transition to new roles?
Speaker
Laura D’Andrea Tyson
Explanation
This addresses the practical need for retraining and support systems for workers affected by AI automation
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.
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World Economic Forum Annual Meeting 2026 at Davos
19 Jan 2026 08:00h - 23 Jan 2026 18:00h
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