The Gartner Hype Cycle was developed as a model for how attitudes change over time around emerging innovations and technologies. It exists on a 5-point scale, starting from the moment an innovation is released (the Innovation Trigger stage) and ending being actually productive (the Plateau of Productivity). What happens in the middle in terms of timing is up to the innovators, marketing, funding, and other upper-funnel factors.
Enter pretotyping. It’s just what it sounds like – testing the prototype pre-investment – and the ultimate hack for shortening the period of growing pains. It’s a particularly helpful market research technique for technologies that either aren’t fully developed yet or that are too expensive to risk developing without a precise knowledge around consumer demand. Pretotyping validates the actual demand for a product before actually going to market or investing resources into development.
It’s easy to get caught in the Hype Cycle. Innovative ideas get abandoned, launched too soon, or without the right messaging. That means more overhead to get it right, and a longer time before your product starts to do well and the dust settles into a predictable and steady upswing.
Pretotyping with strategies like testing in the wild mitigates time spent figuring out how to spend more time in the profit-generating zones and less in the valleys of uncertainty.
The data you get from real-world research helps everyone from marketers to stakeholders to lessen or even circumvent dips in the hype cycle altogether.
Testing is more effective, more accurate, and overall less risky than starting out on assumptions and unsteady ground or scrambling around a failure to launch. Pretotyping with in-feed assets that reach a target consumer audience, for example, is most effective as a market research tool after you complete your qualitative research, before you put any assets into development.
For example, imagine you’re testing a new AI speech-to-text software and are looking for key differentiators to stay disruptive in a noisy AI-dominated landscape. By creating “fake door” tests and prompting scrollers with digitally native assets, there's an added filter that collects real qualitative data. It’s less expensive than prototyping, which requires actual development costs. Users volunteer wish-list features or major pain points of pre-existing AI speech-to-text software that help you to develop into the actual needs of the market rather than the perceived ones.
Real-world testing...
With precision testing, a dedication to not letting hype outpace reality, and validating demand early enough, it is possible.
1. Staying grounded
Most technologies fall into the Trough of Disillusionment because early expectations go too far beyond what the realistic product can deliver.
If you keep claims grounded in reality, launch with intention, and let real user behavior be your guide, you can avoid the plummet.
Examples:
Their success is thanks to the building of momentum, not mania.
2. Validate, validate, validate.
This is where pretotyping and MVP-style testing work together for your best chances at skipping the Trough of Disillusionment altogether.
By confirming behavior early, you’re less likely to get blindsided later by the “nobody asked for this” moment.
Examples:
These companies didn’t frontload, so they never had to overcorrect in ways that tend to land you in the disillusionment phase for longer than necessary.
It’s not one-size-fits-all – not only because every innovation is different, but because the way you do your market research has as much to do with the success of your idea as the idea itself.
Real-world testing isn’t the pretotyping of the past. It’s the sieve that catches vital behavioral information that you won’t get from survey data that’s inherently flawed because participants are aware of their observable position, which welcomes biases, preferential answers, and other factors which skew your findings into the aspirational rather than the realistic.