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AI is creating the first generation of cognitively outsourced humans

For years, we have been outsourcing pieces of cognition so gradually that the shift barely registered. We outsourced memory to search engines after the well-known “Google effect” showed that when people expect information to remain accessible online, they are less likely to remember the information itself and more likely to remember where to find it. We outsourced navigation to GPS, even as research began to show that heavy reliance on it can weaken spatial memory when we have to find our own way. And we outsourced more and more of our social coordination to platforms that decide what we see, when we respond, and how we stay in sync with one another. 

Now we are beginning to outsource something far more consequential: not memory, not route-finding, not scheduling, but thought itself. Or, more precisely, the labor of forming a judgment before expressing one. 

That is the real cultural shift hidden behind the current enthusiasm around generative AI. The technology is often presented as a productivity layer, a creativity booster, or a universal assistant. And yes, in many cases, it is all of those things. But it also creates a dangerous temptation: to confuse frictionless output with actual understanding, and fluent answers with earned judgment. Research from Microsoft Research found that higher confidence in generative AI is associated with less critical thinking, while an open-access study in Acta Psychologica linked greater AI dependence to lower critical thinking. A recent Nature Reviews Psychology commentary put the distinction perfectly: performance gains from generative AI should not be confused with learning

I have argued before that “AI won’t replace strategy: It will expose it”, and that focusing on cost-cutting during the AI revolution is a strategic mistake. This is the cognitive version of the same mistake. When people treat AI as a substitute for judgment rather than a tool to sharpen it, they are not becoming more capable. They are simply becoming more dependent. 

The age of cognitive offloading

Psychologists call it cognitive offloading: shifting mental work onto an external aid. A shopping list is cognitive offloading. A calculator is cognitive offloading. So is a calendar, a notebook, or a reminder app. In that sense, there is nothing inherently new or sinister here. Human beings have always built tools that extend the mind. A recent Nature Reviews Psychology review notes that offloading can improve task performance, even if it also comes with tradeoffs. And a broader Nature Human Behaviour perspective argues that digital technology may be changing cognition without clear evidence of broad, lasting damage

The problem is not offloading per se. The problem is what we are offloading.

When we outsource storage, we preserve effort. When we outsource navigation, we reduce uncertainty. But when we outsource judgment, we risk weakening the very faculty that allows us to decide whether the machine is useful, misleading, biased, shallow, manipulative, or simply wrong.

That risk matters more than many organizations seem willing to admit. Because generative AI does not just answer questions: it creates an illusion of competence so persuasive that it can flatten the distinction between “I understand this” and “I can produce something that looks like understanding.” Nature recently reviewed the evidence around memory and digital tools and made an important point: the strongest claims of cognitive decline are often overstated. But the review also notes that specific capacities can be altered in meaningful ways, including inflated confidence and changed patterns of recall. That is exactly why the current moment deserves more seriousness than both the utopians and the doom-mongers usually bring to it. 

Fluency is not cognition

What makes generative AI culturally destabilizing is not just that it is useful. It is that it is fluent.

A calculator never pretended to understand arithmetic. Your GPS never claimed to know what a city feels like. Search engines did not speak in the first person and offer confident summaries in perfect prose. Generative AI does all of that. It produces language in a form so polished, and so close to human rhetorical performance, that it becomes easy to mistake linguistic coherence for reasoning.

But a well-phrased answer is not the same as a considered one. Large language models are astonishing pattern engines, but they do not possess judgment in the human sense of the term. As a Harvard Business School recent article noted, human experience and judgment remain critical because AI cannot reliably distinguish truly good ideas from merely plausible ones, nor can it guide long-term strategy on its own. That argument is not anti-AI. It is simply anti-naivety. 

This is where the real divide begins to emerge. Not between people who use AI and people who do not. That distinction is already becoming trivial. The meaningful divide is between those who use AI as a thought partner and those who use it as a thought replacement.

The former are amplified by it. The latter are slowly hollowed out by it.

Education is where this becomes impossible to ignore

If you want to see the cultural stakes clearly, look at education. The anxiety around AI in schools and universities is often framed in terms of cheating, plagiarism, or assessment integrity. Those are real issues, but they are not the deepest one. 

The deeper issue is that generative AI can improve performance without producing learning. 

The OECD’s Digital Education Outlook 2026 that I have linked in previous articles (it is seriously good) is unusually explicit on this point: when students outsource tasks to generative AI without proper pedagogical guidance, performance may improve even when real learning does not. UNESCO has made a similar argument in its guidance for generative AI in education and research, warning that these systems must be used within a human-centered framework rather than as shortcuts around the cognitive process itself. And the OECD has been emphasizing for years that creativity and critical thinking are not ornamental skills, but central educational goals in a digital society. 

That is why so much institutional panic around AI misses the point. The real question is not whether students will use AI: of course they will! The real question is whether they will still be required to exercise judgment while using it. 

I made a version of that argument earlier in “AI could transform education… if universities stop responding like medieval guilds”, because too many institutions are obsessing over surveillance instead of redesigning learning for a world in which cognitive outsourcing is now normal. If students can generate passable work without wrestling with ideas, then what is really being assessed is not learning but compliance. 

The paradox of the AI era

Here is the paradox that most people still miss: the individuals who will benefit most from AI will not be the ones who use it for everything.

They will be the ones who know when not to use it. 

That is not a romantic defense of artisanal thinking. It is a practical argument about leverage. People with strong judgment, clear domain knowledge, and disciplined skepticism can use AI to move faster without surrendering authorship. They can interrogate outputs, test assumptions, compare alternatives, and notice when the machine is glossing over ambiguity or inventing certainty. People without those habits are more likely to accept the first plausible answer and move on. 

Recent management writing has begun to converge around this idea. Harvard Business Review argued that working well with AI requires acting like a decision-maker rather than a passive tool-user. Another recent HBR piece warns that if AI handles the messy early work through which people normally develop discernment, organizations may end up with workers who can produce outputs without ever having built judgment. Even research discussed by HBR on creativity points in the same direction: AI tends to help those with strong metacognition more than those without it

That is what makes this a cultural issue, not just a technical one. We are not merely integrating a new tool into existing habits. We are renegotiating the relationship between effort and authorship, between convenience and competence, between expression and understanding.

What we should actually worry about

The most common mistake in public discussions about AI is to oscillate between two caricatures. One says AI will make us all stupid. The other says it simply frees us for higher-order work. Reality is messier, and more interesting. 

Used well, AI can absolutely reduce drudgery and create room for better thinking. Used poorly, it can erode the habits that make better thinking possible in the first place. 

That is why the correct response is neither prohibition nor surrender. It is design. We need educational systems, workplace norms, and product choices that preserve human judgment rather than route around it. We need interfaces that encourage verification, reflection, and comparison instead of seducing users into passive acceptance. We need to stop treating every reduction in mental effort as progress. 

Because not all friction is waste. Some friction is where understanding comes from.

And that is the core mistake behind so much of today’s AI enthusiasm. We are measuring speed, convenience, and volume while neglecting a much harder question: What kinds of minds are these systems helping us become?

That is the question that should define this phase of the AI era: not whether machines can think like us, but whether, by leaning on them carelessly, we might slowly stop thinking like ourselves.

The future will not belong to the people who use AI the most. It will belong to those who know when not to.

Ria.city






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