NVIDIA's Jensen Huang Latest Article: AI Is a Five-Layer Cake, Each Layer Represents a Trillion-Dollar Opportunity

比推发布于2026-03-11更新于2026-03-11

文章摘要

AI is a five-layer infrastructure stack that represents a fundamental shift in computing, moving from pre-recorded software to real-time intelligence generation. The layers are: Energy (the foundational layer converting power into computation), Chips (processors enabling massive parallel computation), Infrastructure (AI factories orchestrating hardware systems), Models (AI systems understanding diverse domains like biology, chemistry, and language), and Applications (where economic value is created in fields like drug discovery, robotics, and autonomous vehicles). Each successful application pulls demand through all underlying layers. This industrial transformation requires trillions in infrastructure investment and a skilled workforce, driving global growth. AI has now crossed a usability threshold, with models generating real economic value and open-source initiatives accelerating adoption. The scale of this build-out is unprecedented, positioning AI as critical infrastructure that will be built and used by every company and nation.

Original Title: AI Is a Five‐Layer Cake

Source: Nvidia

Compiled by: BitpushNews


Artificial intelligence is one of the most powerful forces shaping the world today. It is not just a clever application or a single model; it is infrastructure, like electricity and the internet.

AI runs on real hardware, real energy, and real economics. It consumes raw materials and transforms them into intelligence at scale. Every company will use it. Every country will build it.

To understand why AI is developing in this way, it helps to start from first principles and examine the fundamental changes happening in computing.

From Pre-recorded Software to Real-time Intelligence

For most of computing history, software was pre-recorded. Humans described an algorithm. Computers executed it. Data had to be carefully structured, stored in tables, and retrieved through precise queries. SQL became indispensable because it made that world feasible.

AI breaks this pattern.

For the first time, we have computers that can understand unstructured information. They can see images, read text, listen to sounds, and comprehend meaning. They can reason about context and intent. Most importantly, they generate intelligence in real time.

Every response is newly created. Every answer depends on the context you provide. This is not software retrieving stored instructions. This is software reasoning and generating intelligence on demand.

Because intelligence is generated in real time, the entire computing stack beneath it must be reinvented.

AI as Infrastructure

When you look at AI from an industrial perspective, it can be broken down into a five-layer stack.

Energy

The bottom layer is energy. Real-time generated intelligence requires real-time produced energy. Every generated token is the result of electrons moving, heat being managed, and energy being converted into computation. There is no abstraction layer below this. Energy is the first principle of AI infrastructure and the hard constraint on how much intelligence the system can produce.

Chips

Above energy are chips. These processors are designed to efficiently convert energy into computation at scale. AI workloads require massive parallelism, high-bandwidth memory, and fast interconnects. Advances in the chip layer determine how quickly AI can scale and how cheap intelligence can become.

Infrastructure

Above chips is infrastructure. This includes land, power delivery, cooling, buildings, networking, and systems that orchestrate tens of thousands of processors into a single machine. These systems are AI factories. They are not designed to store information. They are designed to manufacture intelligence.

Models

Above infrastructure are models. AI models understand multiple types of information: language, biology, chemistry, physics, finance, medicine, and the physical world itself. Language models are just one category. Some of the most transformative work is happening in protein AI, chemistry AI, physics simulation, robotics, and autonomous systems.

Applications

The top layer is applications, where economic value is created. Drug discovery platforms. Industrial robots. Legal assistants. Self-driving cars. A self-driving car is an AI application embodied in a machine. A humanoid robot is an AI application embodied in a body. Same stack. Different outcomes.

This is the five-layer cake:

Energy → Chips → Infrastructure → Models → Applications.

Every successful application pulls on every layer below it, all the way down to the power plant that sustain its life.

We are just beginning this construction. We have only invested a few hundred billion dollars. Trillions of dollars more in infrastructure need to be built.

Globally, we are seeing chip factories, computer assembly plants, and AI factories being built on an unprecedented scale. This is becoming the largest infrastructure construction in human history.

The workforce required to support this construction is immense. AI factories need electricians, plumbers, pipefitters, steelworkers, network technicians, installers, and operators.

These are skilled, well-paying jobs that are currently in high demand. You don't need a computer science PhD to participate in this transformation.

Meanwhile, AI is driving productivity across the entire knowledge economy. Take radiology as an example. AI now assists in reading scans, but the demand for radiologists is still growing. This is not a paradox.

The purpose of a radiologist is to care for patients. Reading scans is just one task. As AI takes on more routine work, radiologists can focus on judgment, communication, and care. Hospitals become more efficient. They serve more patients. They hire more staff.

Productivity creates capacity. Capacity creates growth.

What Changed in the Past Year?

Over the past year, AI crossed a significant threshold. Models became good enough for widespread use. Reasoning capabilities improved. Hallucinations decreased. Grounding improved significantly. For the first time, applications built on AI began to generate real economic value.

Applications in drug discovery, logistics, customer service, software development, and manufacturing have shown strong product-market fit. These applications strongly pull on every layer below them.

Open-source models play a key role here. Most models in the world are free. Researchers, startups, enterprises, and entire nations rely on open models to participate in the advancement of AI. When open models reach the frontier, they don't just change software. They activate demand across the entire stack.

DeepSeek-R1 is a powerful example. By making a powerful reasoning model widely available, it accelerates adoption at the application layer and increases demand for the training, infrastructure, chips, and energy beneath it.

What This Means

When you view AI as critical infrastructure, the implications become clear.

AI began with a transformer large language model. But it is far more than that. It is an industrial transformation reshaping how energy is produced and consumed, how factories are built, how work is organized, and how economies grow.

AI factories are being built because intelligence is now generated in real time. Chips are being redesigned because efficiency determines how quickly intelligence can scale. Energy becomes central because it sets the upper limit on how much intelligence can be produced. Applications are accelerating because the models beneath them have crossed the threshold of being useful at scale.

Each layer reinforces the others.

This is why the scale of construction is so vast. This is why it touches so many industries simultaneously. And this is why it will not be confined to a single country or a single domain. Every company will use AI. Every country will build it.

We are still in the early stages. Most of the infrastructure does not yet exist. Most of the workforce is not yet trained. Most of the opportunities have not yet been realized.

But the direction is clear.

AI is becoming the infrastructure of the modern world. And the choices we make now, how quickly we build, how broadly we participate, and how responsibly we deploy, will shape the character of this era.

Original link:https://www.bitpush.news/articles/7618907

相关问答

QWhat are the five layers of the AI infrastructure stack according to Jensen Huang?

AThe five layers of the AI infrastructure stack are: Energy → Chips → Infrastructure → Models → Applications.

QWhy is energy considered the foundational layer of the AI stack?

AEnergy is the foundational layer because real-time generated intelligence requires real-time energy. Every generated token is a result of electrons moving, heat being managed, and energy being converted into computation. It is the hard constraint on how much intelligence the system can produce.

QHow does AI changed the traditional paradigm of pre-recorded software?

AAI broke the traditional paradigm by enabling computers to understand unstructured information (images, text, sounds) and reason about context and intent. It generates intelligence in real-time, creating new outputs on-demand based on the provided context, rather than just retrieving stored instructions.

QWhat role do open-source models play in the AI ecosystem as described in the article?

AOpen-source models are crucial because they allow researchers, startups, enterprises, and nations to participate in advanced AI development. When open models reach the frontier, they accelerate adoption at the application layer and increase demand for the entire underlying stack, including training, infrastructure, chips, and energy.

QWhat is the economic impact of AI on specialized fields like radiology, according to the article?

AIn fields like radiology, AI assists with routine tasks such as reading scans. This increases hospital efficiency and capacity, allowing professionals like radiologists to focus more on judgment, communication, and patient care. This productivity gain creates capacity, which in turn drives growth and leads to hiring more staff.

你可能也喜欢

解读Agent商业、支付与基础设施的真相

作者基于一年来为Agent经济构建基础设施的经验,指出当前Agent商业尚未形成真实、规模化的市场需求,初创公司面临结构性挑战。 文章分析了四个关键场景: 1. **Agent对商户**:目前电商体验中,聊天界面在视觉比价购物上逊于传统界面,商户接入多出于防御性“优化”心态。对话式商业在如外卖等高頻、低决策场景有潜力,但受限于平台开放性和成本。 2. **Agent对API**:开发者现有支付方式(如预付)已能处理低频、小额的API调用成本问题。真正的机会在于服务长尾、小众的供应商市场,但规模有限。 3. **Agent对Agent**:这是长期的愿景,涉及机器间的自动交易与结算,需求真实但当前市场几乎为零,需要专用的基础设施。 4. **Agent对金融**:这是唯一存在现成需求和付费客户的领域。将AI嵌入金融工作流是自然演进,但竞争激烈,老牌机构优势明显。 文章认为,行业巨头因资金充足和战略防御而持续投入,但对初创公司而言,真正的机会并非单纯构建支付层。支付只是更宏大问题——**Agent与人类的协同工作、验证与结算**——的一部分。未来,解决协同问题的公司将主导市场,而非支付服务商。作者团队已转向一个存在真实需求、快速增长且未被充分服务的领域。

marsbit1小时前

解读Agent商业、支付与基础设施的真相

marsbit1小时前

Kalshi、MTS 与 a16z 的野望

本文探讨了预测市场在2025年成为投资、加密和媒体领域共同关注焦点的现象,并着重分析了其精神内核的演变及其与风投机构a16z所倡导的“新媒体”愿景的契合。 文章首先回顾了预测市场的思想渊源:从哈耶克关于市场作为分散知识协调机制的观点,到罗宾·汉森设计对数市场评分规则(LMSR)以激励信息真实披露,乃至衍生出的“未来统治”(Futarchy)治理乌托邦构想。 然而,作者指出,a16z在2024-2025年投资估值飙升的预测市场平台Kalshi,为此领域注入了新的精神内涵——“在场感”。在人们与现实世界日益疏离的后现代语境下,预测市场提供了一种通过真金白银下注来介入和“预测”未来的方式,使用户从被动观察者转变为主动的“超级观察者”,从而对抗不确定性与无力感。当足够多人使用并依赖这种媒介时,市场本身将对事件的真实性与重要性获得解释权,这正是a16z构建新媒体帝国的关键拼图。 最后,文章以媒体公司MTS为例,说明a16z的“新媒体”是一种全频段、高烈度的信息工程,旨在“接管时间线”。而Kalshi的核心价值在于,它通过真实的交易数据构建了一种强大的“现实扭曲力场”,其显示的市场概率能深刻影响公众认知与判断,这种赋予私营公司的社会影响力是其获得高估值的根本原因。

链捕手1小时前

Kalshi、MTS 与 a16z 的野望

链捕手1小时前

交易

现货
合约

热门文章

如何购买LAYER

欢迎来到HTX.com!我们已经让购买Solayer(LAYER)变得简单而便捷。跟随我们的逐步指南,放心开始您的加密货币之旅。第一步:创建您的HTX账户使用您的电子邮件、手机号码注册一个免费账户在HTX上。体验无忧的注册过程并解锁所有平台功能。立即注册第二步:前往买币页面,选择您的支付方式信用卡/借记卡购买:使用您的Visa或Mastercard即时购买Solayer(LAYER)。余额购买:使用您HTX账户余额中的资金进行无缝交易。第三方购买:探索诸如Google Pay或Apple Pay等流行支付方法以增加便利性。C2C购买:在HTX平台上直接与其他用户交易。HTX场外交易台(OTC)购买:为大量交易者提供个性化服务和竞争性汇率。第三步:存储您的Solayer(LAYER)购买完您的Solayer(LAYER)后,将其存储在您的HTX账户钱包中。您也可以通过区块链转账将其发送到其他地方或者用于交易其他加密货币。第四步:交易Solayer(LAYER)在HTX的现货市场轻松交易Solayer(LAYER)。访问您的账户,选择您的交易对,执行您的交易,并实时监控。HTX为初学者和经验丰富的交易者提供了友好的用户体验。

830人学过发布于 2025.02.11更新于 2026.06.02

如何购买LAYER

相关讨论

欢迎来到HTX社区。在这里,您可以了解最新的平台发展动态并获得专业的市场意见。以下是用户对LAYER(LAYER)币价的意见。

活动图片