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How AI startups should be thinking about product-market fit


For all their pitches promising something new, AI startups share many of the same questions as startups in years past: How do they know when theyโ€™ve achieved the holy grail of product-market fit?

Product-market fit has been studied extensively over the years; entire books have been written about how to master the art. But as with so many things, AI is upending established practices.

โ€œHonestly, it just could not be more different from all the playbooks that weโ€™ve all been taught in tech in the past,โ€ Ann Bordetsky, a partner at New Enterprise Associates, told a standing room-only crowd at TechCrunch Disrupt in San Francisco. โ€œItโ€™s a completely different ball game.โ€

Top of the list is the pace of change in the AI world. โ€œThe technology itself isnโ€™t static,โ€ she said.

Even still, there are ways that founders and operators can evaluate whether they have product-market fit.

One of the best things to watch, Murali Joshi, a partner at Iconiq, told the audience, is โ€œdurability of spend.โ€ AI is still early in the adoption curve at many companies, and so much of their spend is focused on experimentation rather than integration.ย 

โ€œIncreasingly, weโ€™re seeing people really shift away from just experimental AI budgets to core office of the CXO budgets,โ€ Joshi said. โ€œDigging into that is super critical to ensure that this is a tool, a solution, a platform thatโ€™s here to stay, versus something that theyโ€™re just testing and trying out.โ€

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Joshi also suggested startups consider classic metrics: daily, weekly, and monthly active users. โ€œHow frequently are your customers engaging with the tool and the product that theyโ€™re paying for?โ€

Bordetsky agreed, adding that qualitative data can help provide nuance to some of the quantitative metrics which might suggest, but not confirm, whether customers are likely to stick with a product.

โ€œIf you talk to customers or users, even in qualitative interviews, which we do tend to do a lot early on, that comes through very clearly,โ€ she said.

Interviewing people in the executive suite can be helpful, too, Joshi said. โ€œWhere does this sit in the tech stack?โ€ he suggests asking them. He said that startups should think about how they can make themselves โ€œmore sticky as a product in terms of the core workflows.โ€

Lastly, itโ€™s important for AI startups to think about product-market fit as a continuum, Bordetsky said. Product-market fit is not sort of one point in time,โ€ she said. โ€œItโ€™s learning to think about how you maybe start with a little bit of product market fit in your space, but then really strengthen that over time.โ€



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