Sequoia Interview with Hassabis: Information is the Essence of the Universe, AI Will Open Up Entirely New Scientific Branches

链捕手Publié le 2026-05-12Dernière mise à jour le 2026-05-12

Résumé

Demis Hassabis, co-founder and CEO of Google DeepMind and Nobel laureate, discusses the path to AGI and its profound implications in a Sequoia Capital interview. He outlines his lifelong dedication to AI, tracing his journey from game development (e.g., *Theme Park*)—a perfect AI testing ground—to neuroscience and finally founding DeepMind in 2009. He emphasizes the critical lesson of being "5 years, not 50 years, ahead of time" for successful entrepreneurship. Hassabis reiterates DeepMind's two-step mission: first, solve intelligence by building AGI; second, use AGI to tackle other complex problems. He highlights the transformative potential of "AI for Science," particularly in biology where tools like AlphaFold have revolutionized protein folding. He envisions AI-powered simulations drastically shortening drug discovery from years to weeks and enabling personalized medicine. Furthermore, he predicts AI will spawn new scientific disciplines, such as an engineering science for understanding complex AI systems (mechanistic interpretability) and novel fields enabled by high-fidelity simulators for complex systems like economics. He posits a fundamental worldview where information, not just matter or energy, is the essence of the universe, making AI's information-processing core uniquely suited to understanding reality. He defends classical Turing machines as potentially sufficient for modeling complex phenomena, including quantum systems, as demonstrated by AlphaFold. On con...

Original text compiled: Brother Gua AI New Knowledge

This article's content is compiled from the interview with Demis Hassabis on Sequoia Capital's channel, publicly released on April 29, 2026.

Content Overview: Demis Hassabis Interview at Sequoia Capital AI Ascent 2026

  • AI and Games Genesis: Games are an excellent proving ground for artificial intelligence. By making AI the core gameplay mechanic, it can effectively validate algorithmic ideas and also provide early-stage computational support for technological development.
  • Entrepreneurial "Timing Theory": Entrepreneurship should be "five years ahead of its time, not fifty." One must keenly grasp the balance point between technological breakthroughs and practical application needs; being too far ahead often leads to failure.
  • AGI Evolution Path: DeepMind's mission is clear and steadfast—first, build Artificial General Intelligence (AGI); second, use AGI to solve all complex problems, including those in science and medicine.
  • Core Value of "AI for Science": AI is the perfect language for describing biology and complex natural systems. With AI simulation, the drug discovery cycle is expected to shrink from years to weeks, even enabling truly personalized medicine.
  • Birth of New Scientific Disciplines: The complexity of AI systems themselves will give rise to new engineering sciences like "mechanistic interpretability." Simultaneously, AI-driven simulation technology will enable humans to conduct controlled experiments on complex social systems like economics, opening up entirely new scientific branches.
  • Information as the Essence of the Universe: Matter, energy, and information are interchangeable. The essence of the universe might be a grand information processing system, giving AI profound significance in understanding the universe's fundamental operating principles.
  • Computational Limits of Turing Machines: Modern AI systems like neural networks have proven that classical Turing machines are sufficient to simulate problems once thought solvable only by quantum computing (like protein folding).The human brain is likely some form of highly approximate Turing machine.
  • Philosophical Reflections on Consciousness: Consciousness might be composed of components like self-awareness and temporal continuity. On the journey towards AGI, we should first view it as a powerful tool, and then explore the grand philosophical question of "consciousness" with its assistance.

Content Introduction

Demis Hassabis, Google DeepMind co-founder and CEO, and winner of the 2024 Nobel Prize in Chemistry for AlphaFold, held a wide-ranging and profound conversation with Sequoia Capital partner Konstantine Buhler at the AI Ascent 2026 summit, discussing the path to AGI and the future beyond.

In the dialogue, he explained why he firmly believes AGI could be achieved by 2030, why the lengthy cycle of new drug discovery might collapse from a decade to just a few days, and why we should regard "information," rather than matter or energy, as the most core and fundamental essence of the universe. Additionally, he pondered what Einstein might say about the limitations of today's AI models if he were still alive, and why the next year or two will become a critical juncture in determining humanity's destiny.

Full Interview Transcript

Host: Demis, thank you so much for coming.

Demis Hassabis: Pleasure to be here. Thank you all for coming, it's fantastic to be here chatting with you all.

Host: It's an absolute honor to have you in our chocolate factory.

Demis Hassabis: I just heard about that. Looking forward to trying some chocolate later.

Host: Wonderful. Demis, let's dive right in. Today we have a true OG: an original thinker, founder, visionary, pioneer in all things AI. Demis is a pure believer, a pure scientist.

Demis's Origin and Inner Thread

Our conversation today will start with the early story of DeepMind's founding, then delve into science and technology, and finish with audience questions. Let's begin.

Demis, you were a chess prodigy, a game company founder, and a neuroscientist. You are the founder of DeepMind, and now lead a large, pivotal company. These identities may seem disparate, but you've said there's an inner thread connecting them. Can you share that with us?

Demis Hassabis: There is indeed a thread, although perhaps with a bit of post hoc reasoning. But my desire to work in AI goes way back. I decided very early that this was the most important and interesting thing I could spend my life on.From around 15, 16 years old, every subject I chose to study, everything I did, was with the eventual aim of one day building a company like DeepMind.

Games: The Proving Ground for AI

I "detoured" into the games industry because in the 90s, the cutting-edge technology was all there. Not just AI, but graphics rendering and hardware technology. The GPUs we all use today were originally designed for graphics engines, and I was using the earliest GPUs in the late 90s. All the games I worked on, whether for Bullfrog or my own company Elixir Studios, had AI as a core gameplay mechanic.

My most famous work was probably "Theme Park," developed when I was about 17. It's an amusement park simulation where thousands of little people pour into the park, ride rides, and decide what to buy in shops. Underneath, it runs a complete economic AI model. Like SimCity, it was a groundbreaking game in its genre. Seeing it sell over 10 million copies and witnessing firsthand how much players enjoyed interacting with the AI only reinforced my decision to dedicate my life to AI.

Later, I switched to neuroscience, hoping to draw inspiration from how the brain works to derive different algorithmic ideas. When the perfect moment finally arrived to found DeepMind, synthesizing all these accumulated experiences felt natural. And indeed, we later used games as an early proving ground for AI ideas.

Entrepreneurial Experience at Elixir Studios

Host: The room is full of entrepreneurs today, you must relate, as you've not only founded one company but have been through this twice. Let's go back to your first venture, Elixir Studios. What was that experience like? It may not be your most famous company, but you achieved great success with it. How did you lead that company? What did that experience teach you about "how to build a company"?

Demis Hassabis: Well, I founded Elixir Studios right after university. I was fortunate to have previously worked at Bullfrog Productions. Those familiar with gaming know it was an early legendary studio, probably the best in the UK, maybe Europe, at the time.

I wanted to push the boundaries of what could be done with AI. Actually, in those days, I used game development as a "detour" to fund AI research, constantly challenging the technological frontier and combining it with extreme creativity. I think that ethos still applies to the blue-sky research we do today.

Perhaps the most profound lesson I learned is: you want to be five years ahead of your time, not fifty. At Elixir, we tried to develop a game called "Republic" that aimed to simulate an entire nation. The premise was that players could overthrow the dictator ruling the country in various ways, and we simulated living, breathing cities.

This was the late 90s, PCs had Pentium processors. We had to run all the graphics rendering and AI logic for a million people on home computers of that era. It was too ambitious—over-ambitious even—and caused a cascade of issues.

I learned that lesson well:You want to be ahead, but if you're fifty years ahead, you'll probably fail. Of course, it's too late when an idea becomes obvious to everyone. So, it's about finding that sweet spot.

Founding DeepMind in 2009

Host: Okay, on the topic of not being too far ahead, fast forward to 2009. You were convinced AGI would happen. That time, perhaps only ten years ahead, better than fifty. Talk to our entrepreneurs here about 2009. How did you convince those first brilliant minds? Because you did recruit an incredibly high-caliber group of early team members. At the time, AGI sounded like pure science fiction. How did you get them to believe?

Demis Hassabis: We had picked up on some interesting threads at the time. We thought we were maybe five years ahead, but it turned out to be more like ten. Deep Learning had just been invented by Jeff Hinton and his academic colleagues, but hardly anyone realized its significance. And we had a strong background in Reinforcement Learning. We felt combining these two would lead to breakthroughs. They had rarely been combined before—if at all, only on academic "toy problems." In the AI field, they were completely separate islands.

Additionally, we saw the promise of Compute; GPUs were about to take off. Today we use TPUs, but back then, the acceleration computing industry would be a huge driver. Also, towards the end of my PhD and postdoc, as I gathered some folks who were computational neuroscientists, we extracted enough valuable ideas and principles from brain mechanisms, including a core belief: that reinforcement learning, scaled up, could ultimately lead to AGI.

We felt we had the key ingredients.We even felt like keepers of a secret because, in academia or industry, no one believed AI would make any significant breakthroughs. In fact, when we proposed aiming for AGI—or sometimes called "Strong AI" back then—many academics would literally roll their eyes. To them, it was a dead end; people had tried and failed in the 90s.

I was at MIT for my postdoc, a stronghold for Expert Systems and First-order Logic Language Systems. Looking back, it's incredible, but even then, I felt that approach was too rigid and old. But in traditional AI hubs like Cambridge, UK, or MIT, people were still using the old methods. That actually made me more confident we were on the right track.At least, if we were going to fail, we'd fail in a new way, not repeat the 90s AGI failures. That made it feel worth trying; even as a risky research endeavor, if we failed, at least we'd fail originally.

DeepMind's Mission and Betting on AGI

Host: Did your early beliefs face widespread skepticism? What did you need to prove to yourself or others to get those early followers to join?

Demis Hassabis: Regardless of circumstances, I would have dedicated my life to AI. It has exceeded even our most optimistic expectations. But it was within our 2010 prediction—we thought it would be a 20-year journey.

I think our pace, as part of the field, is exactly on track, and we've clearly played our part.

Stepping back, even if things hadn't developed this way, even if AI remained a niche subject today, I'd still be on this path because it's the most important technology ever in my view. My goal was clear, DeepMind's original mission statement was: First, solve intelligence, i.e., build AGI; second, use it to solve everything else. I've always believed this is the most important and fascinating technology humanity could invent.

It's a tool for scientific exploration, a fascinating creation in itself, and one of the best ways to understand our own minds—consciousness, dreams, creativity. As a neuroscientist, I used to think about these questions and felt we lacked an analytical tool like AI. It provides a comparative mechanism, allowing us to study and compare two different systems, almost like a controlled experiment.

Culture of "AI for Science"

Host: Comparing different systems. Let's talk about "AI for Science." You were early, a firm believer, a pure idealist. This is a core driving mission. How did the model and culture you established when founding DeepMind keep it at the forefront of "AI for Science"?

Demis Hassabis: That's the ultimate goal. For me personally, the fundamental driver is to build AI to advance science, medicine, and our understanding of the world. That's how I execute the mission—through a "meta way": first build the ultimate tool, then use it, once mature, to achieve scientific breakthroughs. We've had successes like AlphaFold, and I believe there will be many more.

DeepMind has always prioritized this goal. In fact, we have an "AI for Science" division led by Pushmeet Kohli, nearly a decade old now. We formally started this work almost right after returning from the AlphaGo match in Seoul, exactly ten years ago.

I had been waiting for the algorithms to become powerful enough, the ideas general enough. For me, conquering Go was a historic turning point; we realized then that the time had come to apply these ideas to real-world important problems, starting with these grand scientific challenges.

We always believed this was AI's most beneficial destination. What could be better than curing diseases, extending healthy human lifespan, and aiding medicine? Followed closely by material science, environment, energy—key areas. I believe AI will shine brightly in these fields in the coming years.

Biology Breakthroughs and Isomorphic Labs

Host: How is AI achieving breakthroughs in biology? You're deeply involved with Isomorphic Labs, an area you're passionate about. From the start, you've been a firm believer in AI's potential to cure disease. In biology, when will we have our "breakout moment" like in language and programming?

Demis Hassabis: I think we already had our "breakout moment" for biology with AlphaFold. Protein folding and its 3D structure was a 50-year scientific challenge. Solving it is crucial for designing drugs or deciphering biology's fundamental code. Of course, it's just one part of drug discovery—a critical one, but still one part.

Our newly spun-out company, Isomorphic Labs (I'm also enjoying running it), is dedicated to building the core technologies in biochemistry and chemistry that can automatically design compounds that perfectly bind to specific sites on proteins. Now that we know the protein's shape and surface structure, we have the target. Next, we must create compounds that strongly bind to that target, ideally avoiding any off-target effects that could cause toxicity.

Our ultimate dream is to move 99% of the discovery process—which currently takes up the bulk of time and effort—into in silico simulation, leaving only the final validation for wet labs. If we can achieve that—and I firmly believe we will in the coming years—we can shrink the average 10-year drug discovery cycle to months, weeks, eventually even days.

I believe that once we cross that threshold, tackling all diseases becomes achievable. Concepts like personalized medicine (e.g., drug variants tailored to individual patients) will become reality. I think the entire landscape of medicine and drug discovery will be completely reshaped in the coming years.

New Science Born from Simulators

Host: Fascinating. You've mentioned "AI for Science" multiple times. Do you think at some point in the future, AI will give birth to entirely new scientific systems? Like how the Industrial Revolution gave rise to thermodynamics. Will there be essentially new subjects in our education system? If so, what would they look like?

Demis Hassabis: On that point, I think a few things will happen.

First, the understanding and dissection of AI systems themselves will evolve into a full discipline—an engineering science. These creations we are building are incredibly fascinating and also extremely complex. Eventually, their complexity will rival the human mind and brain. So, we must study them deeply to fully understand how they work, far beyond our current understanding. I believe a whole new field will arise; mechanistic interpretability is just the tip of the iceberg; there's vast space to explore in parsing these systems.

Second, I also believe AI itself will open doors to new sciences. What excites me most is "AI for Simulations." I'm fascinated by simulation; all the games I've written not only contained AI but were essentially simulators. I think simulators are the ultimate path to cracking problems in social sciences like economics and other humanities.

The difficulty with these disciplines is that, like biology, they are emergent systems, incredibly hard to run repeatable controlled experiments on. Say you want to raise interest rates by 0.5%, you have to do it in the real world and see the consequences; you can have theories, but you can't repeat the experiment thousands of times. However, if we could simulate these complex systems accurately, then rigorous sampling based on highly accurate simulators could perhaps establish a new science. I believe this would empower us to make better decisions in areas currently fraught with high uncertainty.

Host: To achieve these extremely accurate simulations, what conditions do we need? For example, world models—what scientific and engineering breakthroughs do we need to reach that point?

Demis Hassabis: I've been thinking deeply about this. In our work, we use learning simulators heavily. These simulators are applied in areas where we either don't understand the math well enough, or the system is too complex. We can't solve the problem just by writing direct simulation code for the specific case because that's not precise enough and can't capture all variables.

We already practice this with weather forecasting. We have the world's most accurate weather simulator, "WeatherNext," which runs much faster than tools meteorologists currently use. I'm not sure we can know everything, nor if that's a good idea, but the first step is to better understand these complex systems.

Even in biology, we're working on so-called "virtual cells"—an extremely dynamic emergent system.Just as mathematics is the perfect descriptive language for physics, machine learning will be the perfect descriptive language for biology. In biology and many natural systems, there are vast amounts of weak signals, weak correlations, and massive data, far beyond human brain analysis capacity. Yet, within these massive datasets, there are intrinsic connections, correlations, and thought-provoking causal relationships.

Machine learning is the perfect tool for describing such systems. Until now, mathematics couldn't do it, either because the systems are too complex even for top mathematicians, or because mathematics lacks the expressive power to understand these highly emergent dynamic systems—partly because they are extremely messy and stochastic.

Ultimately, once you master these simulators, perhaps a new branch of science can emerge. You might try to extract explicit equations from these implicit or intuitive simulators. Since you can sample the simulator arbitrarily many times, perhaps one day you could discover fundamental scientific laws like Maxwell's equations.

Maybe. I don't know if such laws exist for emergent systems, but if they do, I see no reason why we couldn't discover them using this method.

Host: That would be remarkable. You've spoken about a theory that the fundamental building block of everything in the universe might be akin to information, which is more theoretical. How do you view that? What does that imply for traditional classical Turing machines?

Demis Hassabis: Of course, you can quote the famous E=mc2 and all of Einstein's work, showing energy and matter are essentially equivalent. But I actually think information also has a kind of equivalence. You can view the organization of matter and structure—especially systems like biology that resist entropy—as essentially information processing systems. So, I think you can convert the three into each other.

However, I have a feeling information is the most fundamental. This is opposite to what classical physicists in the 1920s thought, when energy and matter were considered primary.I actually think viewing the universe as primarily made of information is a better way to understand the world.

If this holds—and I think there's a lot of evidence supporting it—then AI's significance is even deeper than we thought. It's already immensely significant because its core is about organizing information, understanding it, and constructing informational objects.

To me, AI's core is information processing. If you take information processing as the primary way to understand the world, you find deep internal connections between seemingly disparate fields.

Host: So, do you think classical Turing machines can compute everything?

Demis Hassabis: Sometimes I reflect on our work and see myself as a "defender of Turing," because Alan Turing is one of my greatest scientific heroes. I believe his work laid the foundations not only for computers and computer science but also for AI. Turing machine theory is one of the most profound results ever: anything computable can be computed by a relatively simple machine to describe. Therefore, I think our brains are likely also approximate Turing machines.

Thinking about the link between Turing machines and quantum systems is fascinating. However, what we've demonstrated with systems like AlphaGo and especially AlphaFold is that classical Turing machines, dressed in modern neural networks, can model problems previously thought to require quantum mechanics. For example, protein folding is in some sense a quantum system involving very small particles; one might think you have to consider all quantum effects of hydrogen bonds and other complex interactions.

Yet it turns out, with a classical system, you can get an approximately optimal solution. So, we may find that many things we thought needed quantum systems to simulate or run can actually be modeled on classical systems, if we go about it the right way.

Consciousness Philosophy

Host: You've always viewed AI as a tool, like the telescope, microscope, or astrolabe over past centuries. But when you face a machine that can simulate almost everything—as you said, even quantum systems—when does it transcend being just a tool? Will that day truly come?

Demis Hassabis: I very strongly feel that in the mission and journey to build AGI, we—including many here—think the best way is to first build a tool: an incredibly intelligent, practical, and precise tool, then cross the next threshold. That itself is profound enough. Of course, this tool may become increasingly autonomous, more agent-like, which is what we're witnessing now. We are in that wave of the Agent Era.

However, there are further questions: Does it have agency? Is it conscious? These are questions we will have to face. But I suggest we take that as step two, perhaps using the tool built in step one to help us explore these deep questions.

Ideally, through this process, we'll also better understand our own brains and minds, and be able to define concepts like "consciousness" more precisely than today.

Host: Do you have any rough predictions about the future definition of consciousness?

Demis Hassabis: No, beyond what philosophy has discussed for millennia, I don't have much to add. But it's clear to me that certain components are obviously required. They might be necessary but not sufficient. Things like self-awareness, the concept of self and other, and some kind of temporal continuity seem clearly necessary for any entity that appears conscious.

However, what the full definition actually is remains an open question. I've discussed this with many great philosophers. A few years ago, I had an in-depth conversation with Daniel Dennett, who sadly passed away recently. One core issue is the system's behavior: does it behave like a conscious system? You could argue that as some AI systems get closer to AGI, they might eventually do that.

But then the question arises: why do we think each other is conscious? Partly because of how we behave; we behave as conscious beings. But another factor is that we are both running on the same underlying substrate.

So I think if both hold, then assuming you and I have similar experiences is logically most parsimonious, which is why we don't usually argue about each other's consciousness. But obviously, we can never achieve the same substrate equivalence with an artificial system. So I think bridging that gap completely is very difficult. You can look at it behaviorally, but experientially? Perhaps there will be ways to address that after achieving AGI, but that might go beyond today's discussion, even in an "AI and Science" conversation.

Host: Excellent. We'll open to audience questions shortly, please prepare your questions. You mentioned philosophers earlier, particularly Kant and Spinoza, as two of your favorites. Kant is a classic deontological philosopher, extremely focused on duty; Spinoza had an almost deterministic view of the universe. How do you reconcile these two very different ideas? What is your fundamental understanding of how the world operates?

Demis Hassabis: The reason I like these two philosophers and am impressed by them is that Kant proposed an idea—something I deeply felt during my neuroscience PhD—that "the mind creates reality," which I think is largely correct. This gives another great reason to study how the mind and brain work. Since I'm ultimately exploring the nature of reality, we must first understand how the mind interprets reality. That's the insight I get from Kant.

As for Spinoza, it's more about the spiritual dimension. If you try to use science as a tool to understand the universe, you start touching upon the deep mysteries behind how the universe operates.

That's what I feel about our current endeavor. When I engage in scientific research, delve into AI, and build these tools, I feel we are, in a way, reading the language of the universe.

Host: Beautiful. That's the most beautiful description of your daily work: Demis, you are a scientist, a speaker, a philosopher. Before we finish, let's do a few rapid-fire questions. He hasn't seen these beforehand. Predict the year for achieving AGI—sooner or later than expected? Or you can decline.

Demis Hassabis: I'll go with 2030. I've been consistent on that prediction.

Host: Okay, 2030. When we achieve AGI, what book, poem, or paper do you recommend as a must-read?

Demis Hassabis: My favorite book for the post-AGI world is David Deutsch's "The Fabric of Reality." I think the ideas there still apply. I'd hope to use AGI to answer the deep questions posed in that book, and that would be my focus of work post-AGI.

Host: Great. Your proudest moment at DeepMind so far?

Demis Hassabis: We've been fortunate to have many high points. I think the proudest is probably AlphaFold.

Host: Okay, final game-related questions. If you were playing a high-stakes turn-based strategy game like Civilization, Polytopia, those hardcore games, and could pick a scientist from history as a teammate, like Einstein, Turing, or Newton, who would you choose for your squad?

Demis Hassabis: I think I'd choose von Neumann. You need a game theory expert in that situation, and I think he's the best.

Host: That would be a god-tier teammate. Demis, you're such a renaissance person. Thank you so much for being here today. Please join me in thanking Demis. Thank you very much.

Questions liées

QAccording to Demis Hassabis, why are games an excellent training ground for artificial intelligence?

ADemis Hassabis believes games are an excellent testbed for AI because they allow for validating algorithmic ideas with AI as a core gameplay mechanic and provide early compute resources for technology development.

QWhat is Demis Hassabis's perspective on the timing for starting a venture, as mentioned in the interview?

AHassabis advocates for being 'five years ahead of the times, not fifty years.' He emphasizes finding the delicate balance between a technological breakthrough and the practical demand for its implementation, as being too far ahead often leads to failure.

QWhat is the two-step mission statement of DeepMind as described by Hassabis?

ADeepMind's mission is, first, to crack intelligence, which means building Artificial General Intelligence (AGI), and second, to use that AGI to solve all other problems, including those in science and medicine.

QHow does Hassabis envision AI transforming drug discovery and personalized medicine?

AHassabis envisions that AI-driven simulations can move 99% of the exploratory work in drug discovery to in silico models, potentially reducing the average 10-year drug development cycle to months, weeks, or even days, and enabling truly personalized medicine.

QWhat fundamental view of the universe does Demis Hassabis express in the interview?

AHassabis expresses the view that information, not just matter and energy, is the most fundamental essence of the universe. He suggests that the universe can be best understood as a vast information-processing system.

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Ce manque de transparence peut découler de l'engagement du projet envers la décentralisation—une éthique que de nombreux projets web3 partagent, privilégiant les contributions collectives plutôt que la reconnaissance individuelle. En centrant les discussions autour de la communauté et de ses objectifs collectifs, SPERO,$$s$ incarne l'essence de l'autonomisation sans désigner des individus spécifiques. Ainsi, comprendre l'éthique et la mission de SPERO reste plus important que d'identifier un créateur unique. Qui sont les investisseurs de SPERO,$$s$ ? SPERO,$$s$ est soutenu par une diversité d'investisseurs allant des capital-risqueurs aux investisseurs providentiels dédiés à favoriser l'innovation dans le secteur crypto. L'objectif de ces investisseurs s'aligne généralement avec la mission de SPERO—priorisant les projets qui promettent des avancées technologiques sociétales, l'inclusivité financière et la gouvernance décentralisée. Ces fondations d'investisseurs s'intéressent généralement à des projets qui non seulement offrent des produits innovants, mais qui contribuent également positivement à la communauté blockchain et à ses écosystèmes. Le soutien de ces investisseurs renforce SPERO,$$s$ en tant que concurrent notable dans le domaine en rapide évolution des projets crypto. Comment fonctionne SPERO,$$s$ ? SPERO,$$s$ utilise un cadre multifacette qui le distingue des projets de cryptomonnaie conventionnels. Voici quelques-unes des caractéristiques clés qui soulignent son unicité et son innovation : Gouvernance décentralisée : SPERO,$$s$ intègre des modèles de gouvernance décentralisée, permettant aux utilisateurs de participer activement aux processus de décision concernant l'avenir du projet. Cette approche favorise un sentiment de propriété et de responsabilité parmi les membres de la communauté. Utilité du token : SPERO,$$s$ utilise son propre token de cryptomonnaie, conçu pour servir diverses fonctions au sein de l'écosystème. Ces tokens permettent des transactions, des récompenses et la facilitation des services offerts sur la plateforme, améliorant ainsi l'engagement et l'utilité globaux. Architecture en couches : L'architecture technique de SPERO,$$s$ supporte la modularité et l'évolutivité, permettant une intégration fluide de fonctionnalités et d'applications supplémentaires à mesure que le projet évolue. Cette adaptabilité est primordiale pour maintenir la pertinence dans le paysage crypto en constante évolution. Engagement communautaire : Le projet met l'accent sur des initiatives dirigées par la communauté, utilisant des mécanismes qui incitent à la collaboration et aux retours d'expérience. En cultivant une communauté forte, SPERO,$$s$ peut mieux répondre aux besoins des utilisateurs et s'adapter aux tendances du marché. Accent sur l'inclusion : En proposant des frais de transaction bas et des interfaces conviviales, SPERO,$$s$ vise à attirer une base d'utilisateurs diversifiée, y compris des individus qui n'ont peut-être pas engagé auparavant dans l'espace crypto. Cet engagement envers l'inclusion s'aligne avec sa mission globale d'autonomisation par l'accessibilité. Chronologie de SPERO,$$s$ Comprendre l'histoire d'un projet fournit des aperçus cruciaux sur sa trajectoire de développement et ses jalons. Voici une chronologie suggérée cartographiant les événements significatifs dans l'évolution de SPERO,$$s$ : Phase de conceptualisation et d'idéation : Les idées initiales formant la base de SPERO,$$s$ ont été conçues, s'alignant étroitement avec les principes de décentralisation et de concentration sur la communauté au sein de l'industrie blockchain. Lancement du livre blanc du projet : Suite à la phase conceptuelle, un livre blanc complet détaillant la vision, les objectifs et l'infrastructure technologique de SPERO,$$s$ a été publié pour susciter l'intérêt et les retours de la communauté. Construction de la communauté et engagements précoces : Des efforts de sensibilisation actifs ont été entrepris pour construire une communauté d'adopteurs précoces et d'investisseurs potentiels, facilitant les discussions autour des objectifs du projet et recueillant du soutien. Événement de génération de tokens : SPERO,$$s$ a organisé un événement de génération de tokens (TGE) pour distribuer ses tokens natifs aux premiers soutiens et établir une liquidité initiale au sein de l'écosystème. Lancement de la première dApp : La première application décentralisée (dApp) associée à SPERO,$$s$ a été mise en ligne, permettant aux utilisateurs d'interagir avec les fonctionnalités principales de la plateforme. Développement continu et partenariats : Des mises à jour et des améliorations continues des offres du projet, y compris des partenariats stratégiques avec d'autres acteurs de l'espace blockchain, ont façonné SPERO,$$s$ en un acteur compétitif et évolutif sur le marché crypto. Conclusion SPERO,$$s$ se dresse comme un témoignage du potentiel du web3 et de la cryptomonnaie pour révolutionner les systèmes financiers et autonomiser les individus. Avec un engagement envers la gouvernance décentralisée, l'engagement communautaire et des fonctionnalités conçues de manière innovante, il ouvre la voie vers un paysage financier plus inclusif. Comme pour tout investissement dans l'espace crypto en rapide évolution, les investisseurs et utilisateurs potentiels sont encouragés à mener des recherches approfondies et à s'engager de manière réfléchie avec les développements en cours au sein de SPERO,$$s$. Le projet illustre l'esprit d'innovation de l'industrie crypto, invitant à une exploration plus approfondie de ses nombreuses possibilités. Bien que le parcours de SPERO,$$s$ soit encore en cours, ses principes fondamentaux pourraient en effet influencer l'avenir de nos interactions avec la technologie, la finance et entre nous dans des écosystèmes numériques interconnectés.

101 vues totalesPublié le 2024.12.17Mis à jour le 2024.12.17

Qu'est ce que $S$

Qu'est ce que AGENT S

Agent S : L'avenir de l'interaction autonome dans Web3 Introduction Dans le paysage en constante évolution de Web3 et des cryptomonnaies, les innovations redéfinissent constamment la manière dont les individus interagissent avec les plateformes numériques. Un projet pionnier, Agent S, promet de révolutionner l'interaction homme-machine grâce à son cadre agentique ouvert. En ouvrant la voie à des interactions autonomes, Agent S vise à simplifier des tâches complexes, offrant des applications transformantes dans l'intelligence artificielle (IA). Cette exploration détaillée plongera dans les subtilités du projet, ses caractéristiques uniques et les implications pour le domaine des cryptomonnaies. Qu'est-ce qu'Agent S ? Agent S se présente comme un cadre agentique ouvert révolutionnaire, spécifiquement conçu pour relever trois défis fondamentaux dans l'automatisation des tâches informatiques : Acquisition de connaissances spécifiques au domaine : Le cadre apprend intelligemment à partir de diverses sources de connaissances externes et d'expériences internes. Cette approche double lui permet de construire un riche répertoire de connaissances spécifiques au domaine, améliorant ainsi sa performance dans l'exécution des tâches. Planification sur de longs horizons de tâches : Agent S utilise une planification hiérarchique augmentée par l'expérience, une approche stratégique qui facilite la décomposition et l'exécution efficaces de tâches complexes. Cette fonctionnalité améliore considérablement sa capacité à gérer plusieurs sous-tâches de manière efficace et efficiente. Gestion d'interfaces dynamiques et non uniformes : Le projet introduit l'Interface Agent-Ordinateur (ACI), une solution innovante qui améliore l'interaction entre les agents et les utilisateurs. En utilisant des Modèles de Langage Multimodaux de Grande Taille (MLLMs), Agent S peut naviguer et manipuler sans effort diverses interfaces graphiques. Grâce à ces fonctionnalités pionnières, Agent S fournit un cadre robuste qui aborde les complexités impliquées dans l'automatisation de l'interaction humaine avec les machines, préparant le terrain pour d'innombrables applications en IA et au-delà. Qui est le créateur d'Agent S ? Bien que le concept d'Agent S soit fondamentalement innovant, des informations spécifiques sur son créateur restent insaisissables. Le créateur est actuellement inconnu, ce qui souligne soit le stade naissant du projet, soit le choix stratégique de garder les membres fondateurs sous le radar. Quoi qu'il en soit, l'accent reste mis sur les capacités et le potentiel du cadre. Qui sont les investisseurs d'Agent S ? Étant donné qu'Agent S est relativement nouveau dans l'écosystème cryptographique, des informations détaillées concernant ses investisseurs et soutiens financiers ne sont pas explicitement documentées. Le manque d'aperçus publiquement disponibles sur les fondations d'investissement ou les organisations soutenant le projet soulève des questions sur sa structure de financement et sa feuille de route de développement. Comprendre le soutien est crucial pour évaluer la durabilité du projet et son impact potentiel sur le marché. Comment fonctionne Agent S ? Au cœur d'Agent S se trouve une technologie de pointe qui lui permet de fonctionner efficacement dans divers environnements. Son modèle opérationnel est construit autour de plusieurs caractéristiques clés : Interaction homme-ordinateur semblable à l'humain : Le cadre offre une planification IA avancée, s'efforçant de rendre les interactions avec les ordinateurs plus intuitives. En imitant le comportement humain dans l'exécution des tâches, il promet d'élever l'expérience utilisateur. Mémoire narrative : Utilisée pour tirer parti des expériences de haut niveau, Agent S utilise la mémoire narrative pour suivre les historiques de tâches, améliorant ainsi ses processus de prise de décision. Mémoire épisodique : Cette fonctionnalité fournit aux utilisateurs un accompagnement étape par étape, permettant au cadre d'offrir un soutien contextuel au fur et à mesure que les tâches se déroulent. Support pour OpenACI : Avec la capacité de fonctionner localement, Agent S permet aux utilisateurs de garder le contrôle sur leurs interactions et flux de travail, s'alignant avec l'éthique décentralisée de Web3. Intégration facile avec des API externes : Sa polyvalence et sa compatibilité avec diverses plateformes IA garantissent qu'Agent S peut s'intégrer sans effort dans des écosystèmes technologiques existants, en faisant un choix attrayant pour les développeurs et les organisations. Ces fonctionnalités contribuent collectivement à la position unique d'Agent S dans l'espace crypto, alors qu'il automatise des tâches complexes en plusieurs étapes avec un minimum d'intervention humaine. À mesure que le projet évolue, ses applications potentielles dans Web3 pourraient redéfinir la manière dont les interactions numériques se déroulent. Chronologie d'Agent S Le développement et les jalons d'Agent S peuvent être encapsulés dans une chronologie qui met en évidence ses événements significatifs : 27 septembre 2024 : Le concept d'Agent S a été lancé dans un document de recherche complet intitulé “Un cadre agentique ouvert qui utilise les ordinateurs comme un humain”, présentant les bases du projet. 10 octobre 2024 : Le document de recherche a été rendu publiquement disponible sur arXiv, offrant une exploration approfondie du cadre et de son évaluation de performance basée sur le benchmark OSWorld. 12 octobre 2024 : Une présentation vidéo a été publiée, fournissant un aperçu visuel des capacités et des caractéristiques d'Agent S, engageant davantage les utilisateurs et investisseurs potentiels. Ces jalons dans la chronologie illustrent non seulement les progrès d'Agent S, mais indiquent également son engagement envers la transparence et l'engagement communautaire. Points clés sur Agent S Alors que le cadre Agent S continue d'évoluer, plusieurs attributs clés se distinguent, soulignant sa nature innovante et son potentiel : Cadre innovant : Conçu pour offrir une utilisation intuitive des ordinateurs semblable à l'interaction humaine, Agent S propose une approche nouvelle de l'automatisation des tâches. Interaction autonome : La capacité d'interagir de manière autonome avec les ordinateurs via une interface graphique signifie un bond vers des solutions informatiques plus intelligentes et efficaces. Automatisation des tâches complexes : Avec sa méthodologie robuste, il peut automatiser des tâches complexes en plusieurs étapes, rendant les processus plus rapides et moins sujets aux erreurs. Amélioration continue : Les mécanismes d'apprentissage permettent à Agent S de s'améliorer grâce à ses expériences passées, améliorant continuellement sa performance et son efficacité. Polyvalence : Son adaptabilité à travers différents environnements d'exploitation comme OSWorld et WindowsAgentArena garantit qu'il peut servir un large éventail d'applications. Alors qu'Agent S se positionne dans le paysage Web3 et crypto, son potentiel à améliorer les capacités d'interaction et à automatiser les processus représente une avancée significative dans les technologies IA. Grâce à son cadre innovant, Agent S incarne l'avenir des interactions numériques, promettant une expérience plus fluide et efficace pour les utilisateurs à travers divers secteurs. Conclusion Agent S représente un saut audacieux en avant dans le mariage de l'IA et de Web3, avec la capacité de redéfinir notre interaction avec la technologie. Bien qu'il soit encore à ses débuts, les possibilités de son application sont vastes et convaincantes. Grâce à son cadre complet abordant des défis critiques, Agent S vise à mettre les interactions autonomes au premier plan de l'expérience numérique. À mesure que nous plongeons plus profondément dans les domaines des cryptomonnaies et de la décentralisation, des projets comme Agent S joueront sans aucun doute un rôle crucial dans la façon dont la technologie et la collaboration homme-machine évolueront à l'avenir.

771 vues totalesPublié le 2025.01.14Mis à jour le 2025.01.14

Qu'est ce que AGENT S

Comment acheter S

Bienvenue sur HTX.com ! Nous vous permettons d'acheter Sonic (S) de manière simple et pratique. Suivez notre guide étape par étape pour commencer votre parcours crypto.Étape 1 : Création de votre compte HTXUtilisez votre adresse e-mail ou votre numéro de téléphone pour ouvrir un compte sur HTX gratuitement. L'inscription se fait en toute simplicité et débloque toutes les fonctionnalités.Créer mon compteÉtape 2 : Choix du mode de paiement (rubrique Acheter des cryptosCarte de crédit/débit : utilisez votre carte Visa ou Mastercard pour acheter instantanément Sonic (S).Solde :utilisez les fonds du solde de votre compte HTX pour trader en toute simplicité.Prestataire tiers :pour accroître la commodité d'utilisation, nous avons ajouté des modes de paiement populaires tels que Google Pay et Apple Pay.P2P :tradez directement avec d'autres utilisateurs sur HTX.OTC (de gré à gré) : nous offrons des services personnalisés et des taux de change compétitifs aux traders.Étape 3 : stockage de vos Sonic (S)Après avoir acheté vos Sonic (S), stockez-les sur votre compte HTX. Vous pouvez également les envoyer ailleurs via un transfert sur la blockchain ou les utiliser pour trader d'autres cryptos.Étape 4 : tradez des Sonic (S)Tradez facilement Sonic (S) sur le marché Spot de HTX. Il vous suffit d'accéder à votre compte, de sélectionner la paire de trading, d'exécuter vos trades et de les suivre en temps réel. Nous offrons une expérience conviviale aux débutants comme aux traders chevronnés.

1.5k vues totalesPublié le 2025.01.15Mis à jour le 2025.03.21

Comment acheter S

Discussions

Bienvenue dans la Communauté HTX. Ici, vous pouvez vous tenir informé(e) des derniers développements de la plateforme et accéder à des analyses de marché professionnelles. Les opinions des utilisateurs sur le prix de S (S) sont présentées ci-dessous.

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