The conversation has matured. We’ve moved past the initial wide-eyed wonder at what a large language model can do. Now, the hard questions are being asked, and the answers are shaping the AI investment trends for 2026 and beyond. Investors are no longer just backing technology; they’re backing strategy.
So, Where’s the Smart Money Actually Going?
Let’s be blunt. The market is absolutely saturated. At the recent Disrupt panel, Index Ventures’ Nina Achadjian wryly noted the industry joke that for every new foundational model, “1,000 startups die” because they’re suddenly rendered obsolete. This isn’t just gallows humour; it’s a stark reality check for anyone building a thin wrapper around a public API. It’s a bloodbath of undifferentiated products all vying for the same enterprise clients who are, frankly, a bit dizzy from the “AI” whirlwind.
According to the panel, which also featured Jerry Chen from Greylock and Peter Deng from Felicis Ventures, VCs are now ruthlessly filtering for genuine defensibility. They’ve seen the false positives – companies getting early traction simply because every enterprise board has mandated their CIO to “get some of that AI”. That demand is a mirage. As soon as the novelty wears off, those startups will evaporate. The real focus now is on what remains when the hype subsides.
Standing Out in a Sea of Sameness
In this environment, startup differentiation strategies are no longer a ‘nice-to-have’; they are the only thing that matters. Think of it like the early days of the smartphone App Store. At first, any fart app could get a million downloads. Soon after, success required a real business model, unique functionality, and a solid go-to-market plan. We’re at that point with AI now.
One of the most critical differentiators, as highlighted in the TechCrunch report, isn’t a clever algorithm but a unique and proprietary data source. This is about creating a “data flywheel” – a virtuous cycle where your product gets better with every new user and every piece of data it ingests. This, in turn, attracts more users, who provide more data, and so on. Your product’s intelligence becomes a self-reinforcing moat that competitors simply cannot cross, even with a bigger model.
But it isn’t just about the data. Achadjian made it clear what she looks for: “We spend an enormous amount of time assessing the entrepreneur and how resilient they will be”. In a market this brutal, the founder’s grit, obsession, and tenacity are often more important than the initial idea itself.
It’s Not Product-Market Fit, It’s Founder-Market Fit
For years, we’ve been obsessed with product-market fit. But in the age of generative AI, where a basic product can be spun up over a weekend, the calculus is changing. The new gold standard is founder-market fit. What does that even mean? It means the founding team has such a deep, intrinsic understanding of a specific problem, industry, or customer that they are singularly equipped to solve it.
Are you a former logistics manager who has spent 15 years wrestling with inefficient shipping manifests? You probably have a better shot at building a meaningful AI for supply chains than a Stanford graduate who just read a book about it. This isn’t about pedigree; it’s about obsession and earned insight. The investors on the Disrupt stage were clear: they are backing founders who have lived the problem they are trying to solve. These are the people who can navigate the nuances of their industry and build a product that isn’t just technically clever but genuinely useful.
Going Vertical: The Next Great Frontier
This brings us to the biggest opportunity of all: vertical AI solutions. The first wave of AI was horizontal – building massive, general-purpose models. The next, more profitable wave will be vertical – tailoring AI to the specific, complex needs of individual industries. The foundational models are becoming commoditised infrastructure, much like cloud computing. The real value isn’t in building another Amazon Web Services; it’s in building the next Salesforce or Netflix on top of it.
Think about the sheer complexity of sectors like manufacturing, agriculture, or healthcare. These industries are rich with proprietary data and arcane workflows that a general-purpose model like ChatGPT simply can’t grasp. A startup that can, for example, build an AI to analyse soil sensor data and provide real-time irrigation advice to farmers has a defensible business. A company that designs an AI to detect microscopic flaws in a semiconductor manufacturing process is creating immense, tangible value.
This is where the real moats will be built. It requires deep domain expertise, a specific data strategy, and a founder who speaks the language of the customer, not just the language of Python.
Finding Opportunity in Unsexy Places
While everyone else is chasing the next AI-powered coding assistant or marketing tool, the most interesting AI investment trends point toward less glamorous, but arguably larger, opportunities. Jerry Chen pointed to the massive potential in what he calls AI-enabled marketplaces and robotics. Think about automating and optimising processes in “blue-collar” industries that have been largely untouched by the last decade of software innovation.
There are millions of people performing manual, repetitive tasks in warehouses, on construction sites, and in factories. Building AI and robotic systems to augment or automate this work represents a colossal market. These aren’t just efficiency plays; they’re about creating safer working environments and unlocking new levels of productivity in the physical world.
This is the hard stuff. It requires integrating with legacy systems, dealing with messy real-world data, and understanding the gritty details of physical operations. It’s not as sexy as building a chat app, but as the TechCrunch panel confirmed, that’s precisely why it’s such a compelling area for investment.
The message for 2026 is clear. The era of easy AI wins is over. Success now demands focus, resilience, and a deep understanding of a specific problem. For entrepreneurs, the question isn’t “can you build an AI?” but “can you build a durable business around an AI that solves a real, painful problem for a specific customer?”
So, what unsexy industry do you think is most ripe for an AI-powered disruption? Where are the vertical chasms just waiting for the right founder to build a bridge? The answers to those questions are where the next great fortunes will be made.


