Análisis · History & Fundamentals · Edition #0009

The future of AI — what's coming in the next 24 months

Agents that act, AI inside every app, models that know you. The practical question isn't when AGI arrives — it's what you do with the next two years.

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Germán Falcioni April 12, 2026
✦ Reading: 9 min
The future of AI isn't a robot. It's the invisible tool inside every app you already use.
TL;DR

The future of AI over the next 24 months breaks down into four visible vectors, not speculation: agents that execute tasks in your browser and apps, real multimodality (text + audio + video in a single conversation), AI embedded inside the tools you already use, and persistent personalization. AGI is an open debate with no date. The practical consequence is the same under every scenario: whoever masters AI today replaces whoever learns it two years from now, not the other way around. The advantage window is finite and it's closing.

✦ Summarized with Claude at publish time
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I ask the model: "open my inbox, find the last ten unanswered client emails, group them by urgency, reply to the simple confirmations yourself, and give me a summary of the rest so I can decide."

Eight minutes later the summary arrives. Four emails answered. Six pending with a line of context each and a suggested reply. No errors. No hallucinations. You didn't click anything.

That happened today, April 2026. Not a prototype. Not a keynote demo. An agent running on top of Claude Computer Use, a public capability for the past eighteen months. And it's the strongest signal of where AI moves over the next twenty-four.

The regime change isn't the model — it's agency

AI press coverage is still obsessed with the model: how many parameters, which benchmark it cleared, who shipped what. Wrong metric.

The shift that actually reorganizes the market in 2026-2028 isn't that the model got smarter. It's that the model stops replying and starts acting.

The operational gap is enormous. A chatbot cuts your writing time. An agent cuts the execution time of a whole flow. The first is a 30% improvement. The second is a 90% improvement — plus a transfer of who does what.

Four vectors are moving at the same time. Worth mapping them.

Vector 1 — Agents

An agent combines three capabilities: it sees the screen, it reasons about what to do, it executes the next step. Then it loops. It does all of that on its own, until the task is finished or it asks you for help.

Today it works well on predictable tasks with stable interfaces: searching and booking travel, processing forms, moving data between spreadsheets, managing inboxes with clear rules. It fails when the interface changed since last time or when there's ambiguity about which decision to make.

The trajectory is clear: every six months, agents tolerate longer tasks with more decisions. In 2024 they handled three steps without losing the thread. In 2026 they handle twenty. The reasonable projection for 2028 is full day-of-work flows, supervised with human approval gates at critical moments rather than at every click.

Small case from my desk: a client asked me to consolidate billing across four vendors into a single monthly report. Used to be four hours — open each portal, export, normalize, total. Now, one instruction to the agent, twenty minutes of review, done. The client pays the same. I deliver faster and take on another client.

Vector 2 — Real multimodality

"Multimodal" today is marketing because most models process multiple formats in turns: you upload an image, they describe it as text, then they continue as text. There's loss at every jump.

Real multimodality means the model processes text, image, audio, and video in a single internal representation, without intermediate transcription. The operational difference: tasks that depend on the temporal or emotional context of a video — "when did the energy in the meeting shift, and which comment caused it?" — go from impossible to trivial.

The frontier is close. Late-2025 models already handled short video reasonably well. The 2027 projection is native long video, long audio, real mixes without loss.

Vector 3 — Embedded AI

The bottleneck on everyday AI use today isn't model quality. It's workflow friction. Open another tab, copy, paste, adjust, switch back.

The friction is dissolving slowly. An AI button inside the email client. A side panel in the spreadsheet. A quick command inside the text editor. Each of these integrations, alone, sounds marginal. Stacked, they redraw the working day for millions of people.

The question for 2028 isn't "which AI tool do you use?" It's "which tool do you use that doesn't have AI inside?" The answer increasingly looks like "none."

Vector 4 — Persistent personalization

State of the art today is the user-loaded version: you upload documents to a Project and the model works with that in the background. Useful but limited. It doesn't persist across Projects. It doesn't learn from your choices over time.

The frontier over the next two years is memory that persists. Models that remember your industry, your style, the decisions you made last week and what they returned. The operational consequence is high: you stop explaining context every time. The AI starts calibrated to you.

There's an honest technical tension here: the more personalized the model, the more sensitive the data it stores. The architectures that win the next 24 months are the ones that solve personalization with strong privacy, not the ones that ask for more data in exchange for more utility.

On AGI, and why it matters less than it sounds

AGI — a system capable of any intellectual task at expert human level — is the loudest debate in the field. And, for your working life over the next two years, the least relevant.

Serious positions from AI researchers cover a wide range: technical optimists say five years, the academic mainstream says twenty to fifty, architectural skeptics say "we need theoretical breakthroughs we don't yet have." There's no consensus because there's no evidence that supports one.

Here's the important part: the change that hits your desk in 2026-2028 doesn't depend on AGI. It depends on the four vectors already in motion. Even if AGI never arrives, the next 24 months redraw your profession.

And if it does arrive, it lands on top of a labor market that already reorganized around "human + AI." The person who prepared for that world is better positioned in any scenario.

The replacement rule

I'll close with the line that matters most in this whole piece.

AI isn't going to replace you. The person who uses AI better than you will.

Concrete, real, not invented. I know two lawyers in the same specialty. Same age, same school. One uses Claude to review contracts: one hour per contract, twelve contracts a week. The other uses nothing: four hours per contract, three contracts a week. The first one bills, net, about four times what the second one does.

This isn't a projection. It's happening in April 2026. In firms in Buenos Aires, Madrid, Mexico City.

The unavoidable question: which side of the river are you on by May 2028?

If you want to dig into how that edge is built without becoming a programmer, the piece on generative AI is the next link. If you want to understand how we got here, start with the history of AI.

Which of the four vectors — agents, embedded, multimodal, personalized — hits your work hardest over the next twelve months?

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