Thursday, February 19, 2026

The longer term was written at Cisco AI Summit

This week, we witnessed one thing uncommon: the builders of the AI economic system, multi functional room, abruptly, defining what comes subsequent.

Cisco AI Summit wasn’t simply an occasion—it was a second. Hosted by Chuck Robbins and Jeetu Patel, it introduced collectively the visionaries, technologists, and leaders shaping the trillion-dollar AI economic system. Over 120+ CXO’s from main firms throughout industries stuffed the room. And past these partitions? Over 18 million individuals and counting joined through livestream, making this one of many most-watched expertise occasions in latest historical past.

The power was electrical. The conversations had been unfiltered. And the insights? They are going to form how we take into consideration AI for years to come back.

What made this summit completely different was the caliber of audio system and the honesty of the dialogue. This wasn’t about hype—it was about actuality. These are the individuals constructing the fashions, designing the chips, securing the infrastructure, and reimagining what’s doable. They got here to share not simply what AI can do, however what it’ll do, and what we should do to form it responsibly.

Right here’s what unfolded.

Jensen Huang (NVIDIA): The world of abundance

Jensen Huang reframed AI as greater than a brand new functionality—it’s a elementary reinvention of the 60-year-old computing stack. We’re transferring from express programming (writing code) to implicit programming (defining intent). The consequence? A world the place intelligence turns into plentiful and engineers can deal with compute constraints as successfully infinite.

Huang argued that coding itself is turning into a commodity. What issues now could be area experience and understanding buyer issues. Each firm will ultimately have “AI within the loop” to seize life experiences and switch them into mental property. And corporations that deal in electrons quite than atoms will see their worth explode.

“After I take into consideration an issue lately, I simply assume my expertise, my software, my instrument, my spaceship is infinitely huge… For those who’re not making use of that sensibility, you’re doing it unsuitable.”

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Sam Altman (OpenAI): From software to teammate

Sam Altman opened with a imaginative and prescient that felt each thrilling and inevitable: AI is not only a software we use—it’s turning into a collaborator we work alongside. AI has advanced from answering discrete inquiries to taking full management of a pc to execute advanced, multi-step duties. The implications are staggering.

Altman’s most putting perception? The most important constraints aren’t technical. They’re architectural. We want new safety paradigms for information entry, and we have to rewrite software program so it’s equally usable by people and AI brokers. The “higher restrict” of this expertise, he prompt, is firms run fully by AI. By the tip of 2026, he predicts a 10x enchancment within the issues AI can resolve.

“I believe the businesses that aren’t arrange to have the ability to undertake AI coworkers very shortly, might be at an enormous drawback.”

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Dr. Fei-Fei Li (World Labs): Spatial intelligence because the subsequent frontier

Dr. Fei-Fei Li launched a compelling shift: the subsequent section is spatial intelligence—AI’s potential to know and navigate the 3D bodily world. Notion, she argued, is extra foundational than language. This opens potentialities from revolutionizing psychiatric care by means of immersive environments to enabling AI to work together with the bodily world in transformative methods. Dr. Li was candid: constructing generalized robots might be a decades-long journey, very similar to self-driving vehicles. However the work begins now.

“The power to know, to purpose, to work together with, and to navigate the actual 3D, 4D bodily world is the inspiration—as foundational as language intelligence.”

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Marc Andreessen: AI because the productiveness engine

Marc Andreessen introduced historic perspective: financial development has stagnated because the Nineteen Seventies, and AI is our main engine to restart huge productiveness good points. He launched the metaphor of open supply AI as an “asteroid strike”—it eliminates revenue margins for proprietary labs however turbo-boosts the remainder of the {industry}.

“We’re in a child and the bathwater second proper now… software program might be cheaper to construct, which implies you’re going to get extra SaaS.”

Kevin Scott (Microsoft): The demographic crucial

Kevin Scott from Microsoft framed AI as a necessity, not a selection. With international inhabitants decline and labor shortages, AI is the one technological intervention that may keep our high quality of life. In coding, the bottleneck has shifted from creation to evaluation and style. Laptop science training will evolve again to algorithmic considering, and as inference turns into cheaper, demand for compute won’t ever go down—people will merely discover extra formidable methods to make use of it.

“I hope that we will resist the temptation to make the entire narrative about AI… and make it extra about: what does society really want from this expertise?”

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Dylan Area (Figma): Style is the new shortage

Dylan Area of Figma explored how AI is blurring the strains between designers, product managers, and engineers. Whereas AI can generate infinite choices, human style stays the scarce commodity. The present “immediate field” is primitive—the long run is a multiplayer canvas the place people and brokers work side-by-side. Area’s most provocative prediction? Inside 12 months, designers will seemingly be in a position to replace present manufacturing codebases immediately by means of design canvases. The problem? Adapting our workflows to how brokers work, not the opposite approach round.

“As an alternative of considering brokers will adapt to how we work, we must adapt to how brokers work.”

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Matt Garman (AWS): From experimentation to manufacturing

Matt Garman from AWS centered on the transition from AI pilots to AI at scale. Many AI tasks fail as a result of firms don’t outline success standards upfront. Success at scale requires selection, safety, and seamless integration. AWS is betting that inference might be constructed into each software and that customized AI experiences will emerge from longitudinal information. The businesses that win will transfer from “let’s attempt AI” to “AI is how we function.”

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Mike Krieger (Anthropic): Software program as a dwelling system

Mike Krieger of Anthropic described AI as reworking software program from a static artifact right into a dwelling, respiration system. As an alternative of filling out types, customers will merely have conversations. AI will be taught preferences by means of remark quite than configuration. Probably the most sensible purposes? Paying down technical debt in giant enterprises.

“Software program is now a dwelling, respiration system with this non-deterministic, fantastic, but additionally generally infuriating engine at its core.”

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Kevin Weil (OpenAI): 2026 is the 12 months of science

Kevin Weil from OpenAI made a daring declaration: if 2025 was the 12 months AI reworked coding, 2026 would be the 12 months AI transforms science. AI can act as a “steel detector for hypotheses,” permitting scientists to skip failed experiments and compress analysis cycles. The objective? Obtain 25 years of scientific progress in simply 5 years. Weil envisions robotic labs the place AI designs experiments, sends them to robotic arms to execute, and iterates on ends in a closed loop.

“There isn’t any excuse to not be creating no matter you possibly can consider.”

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Lip-Bu Tan (Intel): The silicon bottleneck

Lip-Bu Tan, CEO of Intel, introduced the dialog again to {hardware}. Each AI breakthrough rests on silicon, and the largest bottleneck at this time is high-bandwidth reminiscence. Transferring from a product firm to a foundry requires a tradition shift—incomes buyer belief by means of yield and reliability. New supplies like glass substrates and synthetic diamonds might be vital to resolve thermal and energy administration challenges.

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Tareq Amin (HUMAIN): The energy of intent

Tareq Amin delivered one of many summit’s most radical visions: the present lack of enterprise productiveness good points stems from layering AI on prime of legacy platforms. HUMAIN is making a “genetic working system” constructed from scratch the place purposes change into “second-class residents.” As an alternative of navigating separate apps with distinct logins, customers merely “declare intent” (e.g., “rent this particular person,” “pay this bill”), and a multi-agent orchestration platform executes workflows invisibly.

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Brett McGurk & Anne Neuberger: Geopolitics and safety

Brett McGurk and Anne Neuberger addressed the intersection of AI, nationwide safety, and geopolitics. Cyber protection is now a machine-on-machine combat—human defenders can not sustain with AI-driven assaults. The danger of over-regulation is actual: if the U.S. constrains AI improvement whereas adversaries scale with out guardrails, we create a nationwide safety vulnerability.

“Partnerships is America’s aggressive benefit on the planet throughout each side of diplomacy, nationwide safety, commerce, and commerce.”

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Amin Vahdat (Google): Infrastructure decides winners

Amin Vahdat from Google defined that whereas fashions get headlines, infrastructure decides winners. Transferring away from one-size-fits-all architectures permits 10x good points in energy effectivity. The problem? The present three-year cycle for {hardware} design must compress to 3 months to maintain tempo with AI mannequin evolution.

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Aaron Levie (Field): The context downside

Aaron Levie of Field highlighted the defining problem of the subsequent decade: the context downside—feeding context to brokers in probably the most environment friendly, correct, and complete approach. Levie predicts we’ll see 100x to 1,000x extra brokers in an enterprise than individuals, requiring techniques of file to behave as “site visitors cops.” The businesses that succeed will use brokers not only for small duties, however to be extra formidable—to do far more as a corporation.

“Use brokers to be extra formidable and to do far more as a corporation—not simply the smaller issues, however the greater issues.”

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Francine Katsoudas: Management is the transformation

Francine Katsoudas closed the summit with findings from the AI Workforce Consortium. AI adoption isn’t only a technical transformation—it’s a management transformation. The info is obvious: 78% of expertise roles would require AI expertise, necessitating an enormous industry-wide dedication to free, accessible studying. The businesses that win will put money into their individuals as aggressively as they put money into their expertise.

“The map didn’t finish on the boundary of data. It ended on the boundary of danger… The longer term belongs to those that fearlessly stroll with the lions.”

Watch Session

What we discovered

Cisco AI Summit delivered on its promise. It wasn’t about what AI can do—it was about what AI will do. The conversations had been direct, the insights had been profound, and the implications are unmistakable.

AI is transferring from software to infrastructure. From assistant to agent. From experimentation to dependency. The businesses that succeed might be people who transfer quick, however transfer responsibly. People who make investments not simply in fashions, however in techniques, safety, and the individuals who will form this expertise.

At Cisco, we sit on the intersection of connectivity, safety, collaboration, and the platforms that make digital work doable. That provides us a singular vantage level into how AI is being operationalized inside enterprises—and the place the friction, danger, and alternative actually dwell.

The longer term isn’t being constructed by those that wait. It’s being constructed by those that act. This week, we noticed the builders of the AI economic system outline what comes subsequent.

Now it’s our flip to construct it.

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