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AI is making answers cheap. Curiosity is priceless

16th Jun 2026 | 05:00am

We’re living through the most answer-rich moment in human history.

Need a market analysis? A product brief? A launch strategy? AI can generate something polished in seconds. Some of it still makes my jaw drop.

But there’s a growing risk inside companies that I don’t think leaders are talking about enough: Fast answers can create the illusion of understanding. Increasingly, organizations are mistaking speed for insight.

A few months ago, my team at SurveyMonkey noticed an uptick in customer churn, and we reacted quickly. We rolled out new messaging and retention campaigns because everyone assumed the issue was customer dissatisfaction.

It wasn’t. The real issue turned out to be a relatively simple technical bug that had nothing to do with customer sentiment at all. But we had the answer we expected before we’d finished asking the question.

That experience clarified something for me about the moment we’re in. Artificial intelligence makes this pattern worse, but it didn’t create it. The pressure to move fast before fully understanding a problem has always existed inside organizations. AI is amplifying a tendency that was already there.

The death of curiosity

Companies are launching AI-generated products, campaigns, and customer experiences at unprecedented speed. The technology makes it easier than ever to move quickly from idea to execution. The issue isn’t experimentation itself. Companies should absolutely test ideas quickly, and speed is an integral part of innovation and business success. The problem is when speed starts replacing understanding.

And the data suggests this is happening at scale. In our recent report on curiosity in the workplace, 95% of workers described themselves as curious, yet only 30% said their workplace strongly rewards curiosity. Many organizations reward immediacy more than reflection. Employees learn quickly that moving fast, sounding confident, and having an answer matters more than slowing down to challenge assumptions or ask uncomfortable questions. Workers are responding to those incentives exactly the way you’d expect. Fully 44% told us they stay silent in meetings because they don’t want to slow the team down, and a quarter admitted they’ve pretended to understand something just to keep projects moving.

AI can produce the appearance of clarity very quickly, but leadership still requires judgment, context, and the ability to recognize which questions are worth asking before moving forward.

There’s a problem of adoption metrics here too. One trend I find especially concerning is measuring AI success primarily through usage. Some organizations now track internal AI leaderboards based on prompts, tokens, or activity levels. That may encourage adoption, but it doesn’t necessarily encourage good decision-making. Anyone can burn a lot of tokens. Using these tools effectively and driving meaningful value is a different skill entirely.

Building environments where curiosity can thrive

AI is rapidly commoditizing answers. When every company has access to the same tools and increasingly similar outputs, the differentiator shifts to judgment: knowing which assumptions to challenge, which perspectives might be missing, and which questions are worth asking before acting.

At SurveyMonkey, we call this skill set “curiosity capacity”: the ability to stay open, ask sharper questions, and keep learning alongside AI. It sounds simple. In practice, building this capability requires real discipline, especially in organizations where the incentives run the other direction.

Before moving forward, leaders should ask a few basic but important questions. What assumption are we making? Do we have the right experts in the room? What ripple effects are we not thinking about? What problem are we actually trying to solve? Has this system been properly trained and pressure-tested in context?

Those questions sound simple. Right now, they’re becoming a competitive advantage.

AI today is often like the smartest college intern in the world who has no context. Left unchecked, that combination can create serious problems at scale.

In a world where answers are cheap and easy to generate, competitive advantage increasingly comes from the questions workers ask, the assumptions they challenge, and what they notice that AI missed.

The companies that thrive won’t be the ones generating the most answers. They’ll be the ones asking better questions.