Análisis · History & Fundamentals · Edition #0002

The AI Winters — When the World Stopped Believing

Twice in history, the world walked away from AI. Why it happened, what the people who kept building learned, and why this time is different.

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Germán Falcioni April 12, 2026
✦ Reading: 9 min
A 1970s researcher at a computer terminal, surrounded by documents and punched tape
TL;DR

AI went through two "winters" (1974-1980 and 1987-1993) when funding fell off a cliff. The pattern almost nobody tells: during both winters, while the outside world said AI was dead, the infrastructure that would later make it explode was quietly being built. Reading that pattern matters today more than ever.

✦ Summarized with Claude at publish time
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October 1973. One report changes everything.

Sir James Lighthill, a British economist, delivers a 40-page document to the UK Science Research Council. The title is dry enough that it almost seems designed to keep people from reading it: "Artificial Intelligence: A General Survey." For AI researchers at the time, though, it's a death certificate.

Lighthill writes what many government officials already wanted to hear. AI doesn't work. The researchers are selling smoke. Millions have been spent on research that isn't producing intelligent machines. Time to stop.

The UK cuts funding that same year. The US, which had been funding AI heavily through DARPA, does the same. Overnight, labs shut down. Researchers lose their jobs. The field that promised to change the world gets declared impossible.

But Lighthill's report had a problem. It was partly right — for the wrong reasons.

The uncomfortable truth of the first winter (1974-1980)

Lighthill wasn't wrong that 1960s AI had failed to deliver on its promises. Researchers had sworn up and down that superintelligent machines were 10 years away. They weren't. Budgets grew. Results didn't.

What Lighthill didn't see was that while the world ignored them, a small group kept working in the shadows.

Geoffrey Hinton was at the University of Toronto investigating neural networks at a time when the field was basically buried. Yann LeCun did his PhD in Paris in the early 1980s and then moved to Bell Labs, where he developed the convolutional networks that are standard infrastructure today. Yoshua Bengio joined in the late 1980s with the same conviction as the other two: the underlying math was right, even if nobody wanted to fund it.

Then in 1986, something small but transformative happened. Rumelhart, Hinton, and Williams published a Nature paper on how to train deep networks using backpropagation. The idea wasn't brand new — Paul Werbos had developed it years earlier — but now it was converging with better hardware and solid theoretical confidence. In hindsight, that was the founding act of modern deep learning.

The first winter didn't end because someone "discovered" that AI worked. It ended because there were modest but real results in specific domains (optical character recognition, basic image analysis) and because computing infrastructure kept improving, slowly but without pause.

The second winter: the empty promise of expert systems (1987-1993)

The 1980s were strange. AI was "coming back," but not as deep learning. It was the era of expert systems.

The idea was seductive. You take a human expert's knowledge — a doctor's, a lawyer's, an engineer's — and you encode it in rules a computer applies. A doctor diagnoses a disease when she sees symptoms X, Y, and Z. Write it down. Now the machine can diagnose too.

And it worked. It worked very well in demos. Corporations invested billions. The expert-systems market reached estimates of $3 billion by 1988, according to Daniel Crevier's book "AI: The Tumultuous History of the Search for Artificial Intelligence." It was sold as the revolution that had finally arrived.

But there was a structural problem. Expert systems were brittle. A system that worked on 80% of cases failed catastrophically on the remaining 20%. Building them cost millions. They needed human experts permanently on hand to keep the rules current. They didn't scale.

By 1987, companies caught on. The money vanished. Another winter. Another six years when AI was treated as impossible.

What was happening quietly while the world doubted

Here's the pattern almost nobody tells. Both winters happened while real technical progress was piling up without fanfare.

Between 1974 and 1980, when "official" AI was dead, Hinton and others were developing theory on recurrent networks. LeCun was refining backpropagation applied to images. Bengio, a bit later, would explore architectures that could handle language.

During the second winter (1987-1993), something even bigger was happening. The internet was starting to expand. There was real digital data at massive scale for the first time. Personal computers were getting faster. And GPUs — chips originally designed for video games — were starting to evolve in ways that would eventually accelerate neural networks by orders of magnitude. Nvidia, the company that would end up central to today's AI explosion, was founded in 1993. Right at the end of the second winter.

So what does this mean for you?

The lesson is direct. Watch the pattern, not the noise.

The noise is: "Does the world believe in AI?" "Is there speculative money?" "What did the latest CEO promise today?"

The pattern is: "Is serious technical work getting built?" "Are there measurable results, even small ones?" "Are people using tools that actually work?"

The winters didn't kill AI because real progress never depended on hype. It depended on researchers who knew they were right, even when nobody believed them.

One question to leave you with

Today, when you read headlines about "AI will change everything" or "AI is overhyped," you can ask yourself the same question this piece suggests by looking backward. Where is real work happening? What are the people not in the news building? If you want a concrete answer to why Anthropic thinks we're in a different moment from previous winters, read #0027 on the frontier model race.

Keep exploring

Want to go deeper?

01 What happened to AI researchers when the winter hit?

Public and private funding dried up overnight in both winters. Many researchers survived in small universities and labs, barely funded. Geoffrey Hinton, Yann LeCun, and Yoshua Bengio — the future fathers of deep learning — kept working without public recognition, convinced their ideas were right even when nobody was paying for them.n

02 How do you know when a winter actually ended?

When the field started producing verifiable results in concrete domains. In the 1980s, the comeback arrived when machines finally had real data to process. Today's winter ended when AI started generating real revenue — search, office software, data analysis — tools billions of people use every day without thinking about it.n

03 Could there be another AI winter?

Probably not like the previous ones. Two key differences. First, AI is already embedded in products millions of people use (Gmail, Google Search, Microsoft 365). You can't defund what people are already using. Second, the money comes from private companies with real revenue, not just public research. A speculative correction is likely; a full winter, less so.n

Next article
Is Another AI Winter Coming? — Why This Time Is Different (or Not)