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Hi friends 👋 ,
Happy Tuesday!
There’s been a lot of debate about the importance of moats recently. Do startups have them, or not? Do startups need them, or not?
In my opinion, the conversation has lacked some depth and dimensionality, which has rendered it relatively useless for entrepreneurs and investors alike. I want to take a shot at clearing it up today.
Let’s get to it.
When to Dig a Moat
There’s a belief in tech that if you have the most talented team, the best product, and the fastest growth – that if you just Make Something People Want – you don’t need to worry about moats.
That’s precisely wrong.
Companies that have the best products, most talented people, and fastest growth are precisely the ones for which moats are most important.
They’re the ones who might get lucky enough to have something to lose. They’re the ones that bigger, better-resourced or smaller, faster companies will one day compete with. And the faster they become successful, the faster they’ll face meaningful competition.
Success accelerates the need for moats. As soon as success seems obvious, startups lose their training wheels moat – uncertainty – and should have at least the foundations of more permanent moats in place.
There’s simply less time to fuck around now, as many companies will soon find out.
To set the foundation here, what are moats? In 7 Powers, Hamilton Helmer defines them as “those barriers that protect your business’ margins from the erosive forces of competition.” He lists seven types: Economies of Scale, Network Effects, Counter-Positioning, Switching Costs, Brand, Cornered Resource, Process Power. For definitions and examples of each, check out Flo Crivello’s Mind the Moat.
Moats won’t get you Product-Market Fit (PMF). You need that first before worrying about anything else, as USV’s Fred Wilson wrote in a 2013 blog post Product > Strategy > Business Model. But by the time you have PMF, by the time it’s obvious that what you’re doing could work, you should be able to protect it from the erosive forces of competition.
The ultimate goal of a venture-backed startup is to go public or get acquired for roughly $1 billion or more, not to get marked up by other VCs. That can take a long time, typically seven to ten years. Even if the startup lights a fire before competitors realize what it’s doing, it needs to protect and fan that fire for many years before a successful exit. For companies at which everything is going right, moats can be the difference between IPO and cautionary tale.
Puja and I were watching Tour de France: Unchained on Netflix this weekend, and I think Steve Chainel’s line on the cobblestone stage sums it up nicely:
“You can’t win the Tour de France on the cobblestones… but you can lose it.”
This question about moats has come up a bunch recently in the context of generative AI startups built on top of OpenAI’s APIs, ungenerously referred to as “GPT Wrappers.” On the one side are the VCs and armchair analysts who believe that GPT Wrappers have no moats. On the other are the builders who say that building great products and growing quickly is what matters most, and that moats will come later.
On Friday, The Information reported that two generative AI companies, Jasper and Mutiny AI, were laying off employees. Jasper in particular had been growing very quickly. Founded in 2021, before the AI Hype Cycle, it was on track to reach $75 million in revenue this year. Last October, it rode that growth to a $1.5 billion valuation. Nine months later, it’s doing layoffs in the face of increased competition. It would seem that the company has not yet built deep enough moats to protect its fast-growing prize. It’s only been alive two years. It’s hard to blame it.
What happened? Jasper simply ran out of uncertainty cover before it could build real moats. Let me explain.
In Productive Uncertainty, Jerry Neumann wrote that “the only moat that can create excess value for a new startup is uncertainty” because “uncertainty keeps competition at bay long enough for a moat to be built.”
The more obvious your idea is and the easier it is to build, the faster you need to dig moats. Conversely, the less obvious your idea is and the harder it is to build, the longer you have to dig moats.
Whether you should spend all of your time on product or spend some of it on strategy, even at an early stage, is a function of how much uncertainty exists in your business.
Neumann calls out two kinds of uncertainty: Novelty Uncertainty (~technical risk) and Complexity Uncertainty (~market risk). Novelty Uncertainty is the kind faced by a lot of deeptech companies: uncertainty over whether you can actually build what you say you’re going to build. Complexity Uncertainty assumes that you can build it, but questions whether there will ever be a big and profitable market for it.
New startups have a limited window of time during which they’re protected by the cover of uncertainty to dig moats, and if they don’t dig them by the time others catch on, their excess profit will be competed away and they’ll struggle to achieve a good outcome.
Dumbing it down to a formula, you get something like this:
Depth of Moat Needed = How Obviously Good Your Idea Is - How Hard it is to Build
The variables in this formula can and do change over time. Non-obvious ideas can become obvious as the market catches up to your insight and customers prove you right with their wallets. Things that were once hard to build can become easier to build as infrastructure improves. One company's core technology can become another’s API. It’s important for founders and investors alike to update the formula as the facts on the ground change.
This formula explains startup truisms like “Great companies are built in bear markets!” and “You need to be contrarian and right.” In both cases, increased uncertainty provides more time to build defensibility.
If you’re in the “new startups don’t need to worry about moats” camp, you might point to success stories like Twitter and Airbnb, but those examples would miss the uncertainty angle.
In his blog post, Wilson used Twitter as an example of a company that found PMF and then turned to strategy. Twitter was fortunate in that, even when people were using it, it started out looking like a toy. Would-be competitors didn’t take a product that people used to share what they were eating for lunch seriously enough to compete with until it was too late. We are still dealing with the strength of the Network Effects Twitter was able to build up under the cover of Complexity Uncertainty 17 years later.
Airbnb also focused exclusively on product at the expense of strategy in its early days.
The Competitive Advantage slide in Airbnb’s pre-seed deck lists six product features and no real moats (unless you’re counting Brand, but that’s a very weak one until you have it).
There’s a reason that they were able to succeed despite that, and it’s not just the brilliance of the product. It’s the fact that Airbnb seemed like a terrible idea! Airbnb had a really hard time raising money. It faced rejection after rejection from VCs. There’s probably a rule in here somewhere: the easier it is for you to raise money, the more immediately you need moats.
Complexity Uncertainty gave Airbnb time to develop the Brand and Network Effects moats that have protected it all the way to that $91 billion market cap. Ultimately, it spent a ton of time, money, and effort to build those moats – it hired teams of people to finely balance supply and demand and worked with Disney to storyboard its guest experience, as two examples – but given the amount of uncertainty around whether anyone would pay to stay on someone else’s couch, they were right to focus on proving out the product before worrying about moats.
This is why the VCs and commentariat are jumping up and down about the lack of moats in generative AI. There is practically no uncertainty.
Building on top of ChatGPT kills Novelty Uncertainty. I think everyone agrees on that. But the wild early success of so many generative AI products also kills Complexity Uncertainty! If you build a generative AI product that starts to take off, you’re going to be attacked by other startups, bootstrapped companies, solo builders, and incumbents all hungry for your users.
Competition is inevitable. In a slower-moving or more technically novel space, competition may be fine because you’ll have had time to build proto-moats and customer loyalty. In a space that’s moving as quickly as generative AI, the chances that you’ve dug strong enough moats by the time that competitors come are slim.
In a piece titled Generative AI Companies Have Moats (Eventually), Battery Ventures’ Brandon Gleklen argued that it’s OK for generative AI companies not to worry about moats, because like cloud companies before them, they can build them – Scale Economies, in particular – over time as they listen to customers and evolve based on user feedback.
The point I’m trying to make is that that’s not true in a space as certain as generative AI. Eventually is a luxury for companies operating under uncertainty.
There will, of course, be very lucrative outcomes in AI when you zoom out from GPT wrappers. Two examples highlight the importance of digging moats during periods of uncertainty to protect yourself once the uncertainty lifts: Hugging Face and Runway.
When Hugging Face was founded in 2016, back before AI was The Thing, its product was an AI chatbot built on top of its own NLP models. When the Attention is All You Need paper introduced the Transformer architecture the following year, the Hugging Face team created the Transformers open source library on GitHub, which took off in the open source community.
Hugging Face threw its full weight into becoming the “GitHub for machine learning,” hosting open source models and data sets, building tools for users to build, train, and deploy those models, and fostering a community of developers.
Hugging Face used the five years that it operated under Complexity Uncertainty – before AI became the obvious thing – to dig moats, the most powerful of which is Network Effects. It’s rumored to have $30 - $50 million in revenue and to be raising a round at a $4 billion valuation.
If Hugging Face is an example of successfully using the time provided by Complexity Uncertainty to establish strong moats, Runway is a live situation: can it dig moats before its Novelty Uncertainty shot clock expires?
Runway was also founded before the AI boom, in 2018, to build the “world’s first end-to-end AI generation platform.” It faced Novelty Uncertainty – AI could barely generate images, let alone videos, in 2018. When it raised $2 million from Lux Capital, it did so at a modest $9 million post-money valuation.
In the intervening five years, it’s built state-of-the-art video models based on its own applied research. Recently, it announced the launch of Gen-2, the best on the market:
In June, Runway raised a $141 million round from Google, Nvidia, Salesforce and others at a $1.5 billion valuation.
Because of how hard it is to build what Runway’s built, and the fact that it only recently became apparent that it was possible, it’s been protected by Novelty Uncertainty to date. They’ve also shipped products at a rapid clip to stay ahead. I’m not sure that the company has real moats yet, though, and it should act quickly to dig them before uncertainty runs out.
This is why strategy is important for startups, even if it’s uncool. At its simplest, early stage startup strategy is about directing limited resources towards digging moats before you’ve removed enough uncertainty to attract serious competition.
I’ve wanted to write a post defending strategy for a while, but I promised myself I’d keep this one short and crisp, so I’ll save that for another post.
For now, what’s clear is that while not all startups need moats in the early days, they do need to start digging moats when their eventual success is obvious to them but to very few others. If they’re lucky enough to have something obviously worth attacking one day, moats will matter.
Get digging.
Thanks to Dan for editing!
That’s all for today! We’ll be back in your podcast feed tomorrow and in your inbox with the Weekly Dose on Friday.
Thanks for reading,
Packy
"There is practically no uncertainty. Building on top of ChatGPT kills Novelty Uncertainty. I think everyone agrees on that. But the wild early success of so many generative AI products also kills Complexity Uncertainty! If you build a generative AI product that starts to take off, you’re going to be attacked by other startups, bootstrapped companies, solo builders, and incumbents all hungry for your users."
I think this is fair if you're talking about Right Now but not if we're talking about The Future.
In the context of building moats, Right Now is probably all that matters in this case because of your examples of Jasper/Mutiny and others in other industries when they were early in their hype cycles. That said, there's no way to predict what the AI landscape will look like next year, much less in 5 years. You mention a 7-10-year time horizon for a startup exit -- what could happen in that time? It's not out of the realm of possibility that we could have paradigm-shifting advancements in AI land or, alternatively, some version of a Butlerian jihad. To me, the Complexity Uncertainty question isn't just, "Can we make a business out of this idea?" It's really more like, "Can we create a lasting business that can adapt to whatever the future holds?"
Complexity Uncertainty comes from the adaptation and emergence that make predicting the behavior of complex systems impossible (maybe not in a few years with advancements in AI??). In my view, these companies are dealing with massive amounts of complexity, which will inevitably lead to uncertainty & unpredictable outcomes. Can a short-term moat really protect Gen AI startups and the funds investing in them from complexity uncertainty? I don't think so, but who knows.
Would love to know your thoughts (and Jerry Neumann's)!
This is the best explanation of moats I have ever read, for sure. That point about the diminishing uncertainty is so important