Ten years ago, radiology was the consensus “first job to go.” Computer vision had just become superhuman, and the core task of a radiologist — looking at scans — was the most obvious target. A decade later, AI has completely permeated radiology. Every department uses it. Every scan gets processed faster. And the number of radiologists has gone up.
Jensen Huang offered this as a throwaway during a Davos conversation with BlackRock’s Larry Fink, but it is the single most useful frame I’ve heard for thinking about AI and labor. The lens is simple: distinguish the task of a job from the purpose of it.
A radiologist’s task is to study scans. Their purpose is to diagnose disease. When AI compresses the task from minutes to seconds, the purpose doesn’t vanish — it gets more of the person’s attention. More time with patients, more time with clinicians, more scans processed per day. The hospital sees more patients, earns more revenue, and hires more radiologists.
Same story with nurses. The US is short five million nurses. Nurses currently spend half their time charting and transcribing. Companies like Abridge are eating that task. The nurses don’t disappear — the bottleneck moves. More patients get seen, hospitals do better, more nurses get hired.
If all you can see is the task, every knowledge job looks extinct. If you look at the purpose, you notice that the purpose usually gets bigger, not smaller.
The industrial view of AI
Most people think AI is the model. Huang insists AI is actually a five-layer cake. Energy sits at the bottom. Chips and compute sit on top of energy. Cloud services sit on top of the chips. Models sit on top of the cloud. And applications — healthcare, manufacturing, financial services, the places where economic value actually shows up — sit on top of the models.
The reason this matters: every layer needs to be built before the one above it works. Last year, the models finally got good enough to support a real application layer. That’s why 2025 was the largest VC year in history, and why most of that money went to “AI native” companies in healthcare, manufacturing, robotics, and financial services. The model layer is subsidizing the application layer.
And the infrastructure beneath the models is enormous. A few hundred billion dollars in already. TSMC is building 20 new chip plants. Foxconn, Wistron and Quanta are building 30 new computer plants. Micron has committed $200 billion in the US. Trillions more to go. Huang calls it the single largest infrastructure buildout in human history. Not hyperbolically. Literally.
Why it isn’t a bubble
The word “bubble” gets used whenever a lot of capital moves at once. Huang’s test is simple: try to rent a GPU. Spot prices on Nvidia GPUs in every cloud are going up — not just the latest generation, but two-generations-old hardware. If the infrastructure were overbuilt relative to demand, spot prices would be collapsing. They aren’t.
The more interesting read: the bubble question is the wrong question. The right question is whether we’re investing enough to broaden the benefit. Right now AI usage is dominated by educated users in developed economies. That’s how every platform shift starts. The difference with AI is that it’s the easiest software to use in human history — a billion users in three years. If a country has electricity and roads, it can have AI. The open-model wave (DeepSeek, and everything that followed) means any country with local linguistic and cultural expertise can build AI that actually serves its own population.
For Europe specifically, Huang’s pitch was: your industrial base and your deep sciences are your moat. The US led the software era. AI is “software that doesn’t need to write software” — you teach it instead of coding it. That collapses the American advantage. Fuse Europe’s manufacturing strength with AI and the next layer — physical AI, robotics — plays to European strengths.
Three things to steal from this conversation
- Audit your role by purpose, not task. If most of what you do is the purpose (diagnosis, judgment, client relationship), AI makes you faster. If most of what you do is the task (charting, retrieval, prediction), your seat gets compressed. Know which one you are.
- Pick your layer. Energy, chips, cloud, models, applications — each has different economics, a different moat, a different timeline. Don’t build at the model layer unless you have a real reason to.
- Infrastructure is the bet. The buildout is measured in trillions and in decades. Pension funds, sovereigns, and retail investors who sit it out will feel left out. The ones who fund the energy, chips, and factories will own the compounding.
The line that stuck: “You don’t write AI. You teach AI.” That sentence alone rewrites a lot of assumptions about who gets to build.
Source: Jensen Huang and Larry Fink at the World Economic Forum