cd /news/artificial-intelligence/the-ai-industry-spent-years-chasing-… · home topics artificial-intelligence article
[ARTICLE · art-25513] src=fortune.com ↗ pub= topic=artificial-intelligence verified=true sentiment=· neutral

The AI industry spent years chasing bigger models. Now it’s chasing efficiency

The AI industry is shifting its focus from building ever-larger models to making them affordable enough for real-world deployment, according to executives speaking at Fortune Brainstorm Tech. Adaption CEO Sara Hooker argued that most AI models are "monolithic" and cannot evolve, leading to massive inefficiencies and soaring API costs as companies pay repeatedly for the same errors. SambaNova CEO Rodrigo Liang said trillion-parameter models remain too expensive and power-hungry, with his company achieving two to three times better performance than Nvidia's Blackwell GPUs on the same models to bring costs down.

read3 min publishedJun 9, 2026

After spending years racing to build ever larger AI models, researchers and infrastructure providers are increasingly focused on a new problem: how to make those systems affordable enough to deploy at scale.

Sara Hooker, cofounder and CEO of startup AI lab Adaption, told the audience at Fortune Brainstorm Tech on Tuesday that most of today’s AI is what she called “monolithic”—or stuck in time. That is, once a model is trained, the model’s knowledge and capabilities are essentially fixed. If something changes in the world, or if the model learns something useful from users, that knowledge doesn’t automatically become part of the model.

“You need models that can evolve,” she explained, “otherwise you end up with massive inefficiencies.”

Still, for now, scale does matter—and the biggest models are not going away anytime soon, said Rodrigo Liang, CEO of AI chip company SambaNova, though there will be “plenty of room for more efficient models to come in.” For the time being, he explained, customers are left to struggle with the cost of scaling models; with energy-hungry infrastructure; and with finding enough AI chops.

But Hooker focused on what’s next, saying that we’re at an “inflection point with massive urgency to change that curve” or model size. Most people, she explained, intuitively understand that you shouldn’t just apply the same model to all problems. “Probably 90% of problems are very easy—many things that you do in bulk processing, for example, you shouldn’t be throwing a massive model at.”

She argued that future AI systems will need to adapt continuously to new information and rapidly change their behavior, rather than relying on repeated calls to a fixed model—a dynamic she said is contributing to the soaring API bills many companies are now experiencing. Today’s enterprises are deploying agents at scale, but those agents often aren’t learning from their mistakes, so companies are paying repeatedly—in compute, API calls, and infrastructure costs—for the same errors.

While model developers like Hooker are focused on building more capable and efficient AI systems, Liang said the industry’s immediate challenge is running today’s massive models efficiently enough to make real-world deployments economically viable. He argued that trillion-parameter models remain too expensive and power-hungry, and said SambaNova’s strategy is focused on delivering faster inference with lower power consumption through hardware specifically designed for large-model workloads. “We’re getting two to 3x better than the [Nvidia] Blackwells [GPUs] on the exact same models, and so we think that at scale that’s the way to at least bring the cost down,” he said.

More from the 25th annual Fortune Brainstorm Tech conference:Anthropic’s Boris Cherny, creator of Claude Code, says there are days he manages tens of thousands of AI agents at once

‘Not an Allbirds Moment’: Xbox’s new CEO says she is grounding the console in gaming roots not AI

Subscribe to Fortune Gulf Brief. Every Tuesday, this new newsletter delivers clear-eyed, authoritative intelligence on the deals, decisions, policies, and power shifts shaping one of the world’s most consequential regions, written for the people who need to act on it.

Sign up here.

── more in #artificial-intelligence 4 stories · sorted by recency
sponsored brought to you by zahid.host 4,200+ EU-deployed projects
reading about agents? ship yours in a single git push.

Run your AI side-project on zahid.host

EU-based hosting, git-push deploys, automatic HTTPS, no cold starts. Free tier with a custom domain — perfect for shipping the agent you just read about.

$git push zahid main
Live at https://your-agent.zahid.host
Get free account → Pricing
from €0/mo · no card required
LIVE [news/the-ai-industry-spen…] indexed:0 read:3min 2026-06-09 ·