The a16z Show

The State of Markets

48 min
Feb 9, 20262 months ago
Listen to Episode
Summary

A16z's David George discusses the state of AI markets, revealing that the fastest AI companies are reaching $100M revenue faster than any SaaS company while spending less on sales and marketing. The episode covers AI company performance metrics, enterprise adoption challenges, and the massive infrastructure buildout driving market growth.

Insights
  • AI companies are achieving unprecedented efficiency with top performers generating up to $1M in revenue per employee, nearly double the previous SaaS era benchmark of $400K
  • Enterprise AI adoption is being limited more by organizational change management than by technology readiness, creating a competitive divide between adaptable and traditional companies
  • The AI infrastructure buildout is fundamentally different from the dot-com era, being financed primarily by historically profitable companies rather than speculative ventures
  • Revenue retention and product engagement metrics for AI companies show sustainable growth patterns, with users spending significantly more time in AI-enabled products
  • The private markets are experiencing extreme value concentration, with the top 10 unicorns comprising 40% of total unicorn value, nearly double since 2020
Trends
AI companies growing 2.5x faster than non-AI companies with top performers achieving 693% year-over-year growthShift from seat-based to consumption-based and eventually outcome-based pricing models in enterprise softwareMassive productivity gains from AI coding tools enabling 10-20x faster development cyclesGPU utilization at 100% immediately upon deployment with no 'dark GPU' capacity unlike historical fiber buildoutsEnterprise companies beginning to measure efficiency in 'electricity vs blood' - automation vs human laborPrivate companies staying private longer with 86% of $100M+ revenue companies remaining privateDebt entering AI infrastructure financing as cash flows alone cannot support projected capex requirementsAI revenue growing from near-zero in 2023 to estimated $50B currently, targeting $1T by 2030Public company S&P 500 tenure declining 40% over 50 years due to accelerating disruption cyclesVoice becoming centerpiece of new AI tools across both B2B and consumer applications
Companies
OpenAI
Highlighted as adding nearly half the revenue of all public software companies in 2025
Anthropic
Mentioned alongside OpenAI as a major AI revenue contributor in 2025
Harvey
A16z portfolio company showing doubled user engagement in AI-powered legal services
Abridge
Healthcare AI company with high user engagement and trusted deputy-like functionality
ElevenLabs
Voice AI company showing staggering usage growth and efficient operations
Navan
Travel company using AI for 50% of user interactions, achieving 20% gross margin expansion
Flock Safety
Crime-solving AI company clearing 700,000 crimes annually with 10% improvement per officer
Databricks
Transitioned from pre-AI to AI-native with new Agent Bricks product and modern customer base
Shopify
Public company example of successful AI transformation under CEO Toby Lutke's leadership
Microsoft
Referenced for Azure buildout comparison and AI revenue growth trajectory
Meta
Listed as strong counterparty for AI infrastructure financing with solid cash flows
NVIDIA
Mentioned as reliable counterparty for AI infrastructure investments
Oracle
Making large AI infrastructure bets with increased credit default swap costs
Google
Disclosed 100% utilization of 7-8 year old TPUs and has consumer AI business
Adobe
Historical example of disruptive business model transition from licenses to SaaS
Apple
iPhone cited as classic 'model buster' example exceeding analyst expectations by 3x
JPMorgan
Used as Fortune 500 benchmark example for traditional industry AI adoption
Chime
Reduced support costs by 60% through AI implementation
Rocket Mortgage
Saved 1.1 million hours in underwriting and $40M annually through AI
SAP
Included in public software revenue comparisons with AI companies
People
David George
A16z general partner presenting the market analysis and portfolio insights
Genkos
Podcast host interviewing David George about AI market trends
Toby Lutke
Shopify CEO praised for leading successful AI transformation from the top
Ali Ghodsi
Databricks CEO described as commercial and technical terminator driving AI transition
Andrej Karpathy
Referenced for writing about recent major changes in AI coding productivity
Gavin Baker
Interviewed at A16z AI summit, compared AI buildout to internet fiber infrastructure
Quotes
"The fastest AI companies are hitting $100 million in revenue faster than any SaaS company ever did. And they're spending less on sales and marketing to get there."
David George
"You need to adapt to the AI era or die. And so that's both on the front end and the back end."
David George
"I now ask the question for every task that we now need to complete. Can I do it with electricity or do I need to do it with blood?"
David George
"There is no dark GPU. There are no dark GPUs. You put a GPU in the system, in a data center, it gets fully utilized immediately."
Gavin Baker
"The most exciting action that is happening in the private markets, it's AI and it's happening in the private markets."
David George
Full Transcript
3 Speakers
Speaker A

The fastest AI companies are hitting $100 million in revenue faster than any SaaS company ever did. And they're spending less on sales and marketing to get there. The top performers grew 693% year over year in 2025, generating up to a million dollars in revenue per employee. That's not some efficiency playbook. Demand is so strong these companies can barely keep up on the supply side. Every GPU that gets plugged in is maxed out immediately. But there are cracks. Debt is entering the system and the biggest thing holding back enterprise adoption isn't the tech itself. It's getting large organizations to actually change how they work. Genkos speaks with general partner David George about what the data shows and why we're still early.

0:00

Speaker B

Let me just start with what I think the big takeaways are from this piece because this is the first time we've ever done this style piece. We produce so much work and so much analysis. It's like exhaust inside of our team and we thought we have so many different thoughts and points of view, why don't we put them on paper and share them out with the world? So that was the genesis of this. My big takeaways from doing this one AI demand side is crazy. The actual uptake growth quality of companies in AI is extremely encouraging from our standpoint, companies are starting to run themselves better. I'm going to show you some stats on that, that there's been some sort of X buzz, including this morning kind of debating what's going on there. But this crop of companies I would say is more impressive than prior crops of companies partially because the demand for their products is so high. That's demand side, supply side is healthy right now, but we are starting to see some signs of things that are stretched a little bit. I'll talk about what we see and what we're looking out for. We've been fortunate to be a part of a lot of these great companies and the most exciting action that is happening in the private markets, it's AI and it's happening in the private markets. And we're going to show some slides about that. And then lastly, my big conclusion. What has me so excited about where we are now is just how early we are in this product cycle. Product cycles drive our business and these are 10, 15 year cycles and we're just at the very beginning of it right now, so let's dive in. We invest across all private stages. This is a chart that just shows our activity. We're very busy. It's across all verticals. We on the growth side have been most active in AI and infra apps and then in ad, but also very active in our other verticals as well. And I'm going to zoom through some of these. I hate to do the A16Z commercial, but I think we have the chance to work with some of the best models and apps and infra companies, obviously. Anyway, here's some data. So we collect tons and tons of data as a growth team because we're basically seeing every growth stage company in the market as a either portfolio company or as a prospect. And so we have a great data analysis team. We did some data analysis. I think this stuff is just super interesting. We geek out on it. To me, the big conclusion from this is 2025 was a year for accelerated revenue growth. Revenue obviously slowed, you know, in 2022, 23, 24, following the rate hikes and the pullback in some of the tech stuff. But 2025 reversed that trend and it accelerated across different, you know, types of companies as we rank them by decile and quartile. But especially among the outlier companies really accelerated. And you've probably seen us put this slide on a page before, but the fastest growing AI companies are reaching 100 million bucks of revenue significantly faster than the fastest growing SaaS companies in their era. And there's a really important thing I want to call out about why that is the case. And that is because end customer demand is so strong and the products are so compelling, it's not because they spend more money on sales and marketing. It's actually the opposite. The best AI companies that are growing the fastest are not the ones spending the most amount of money on sales and marketing. And they're spending less money on sales and marketing than their SaaS counterparts. And yet they're growing much, much faster. So this was a slide showing just the growth of the AI companies versus the non AI companies. Roughly speaking, the AI companies are growing two and a half times plus faster than the non AI companies. And that shouldn't be a huge surprise. The best of the AI companies are growing very, very fast. We had to triple check this data when we saw the AI top performers growing 693% year over year. But it matches up our experience and anecdotes that we see from the portfolio companies. So that's growth. This is the margin profile that we're seeing in the data set. And again, these are internal data sets that we have of portfolio companies and companies that we look at as potential investments. Gross margins are a little bit worse for AI companies. You've probably heard us talk about this before, but in a way we feel like low gross margins for AI companies are sort of a badge of honor in the sense that we want to see if low gross margins are a result of high inference costs. One, that means people are using AI features, and two, we have a belief that those inference costs over time are going to come down. So in an odd way, if we see an AI pitch and the gross margins are super high, we're a little bit skeptical because that may mean that the AI features are not actually what is being bought or used by the customers. Going to talk about ARR per fte, but this is a new thing that we've started focusing on and this is one of the things that got a lot of pickup and discussion on X in the last few days. ARR per FTE is sort of a measure of the efficiency of how you run your company in general. So it encapsulates all of your costs, it encapsulates not just your sales and marketing, which is an efficiency measure that we've always kind of looked at when we do analysis in the past. But it also captures your overhead, it captures your R and D. And so for the best AI companies, they're running at 500,000 to a million dollars per FTE. And the rule of thumb for previous software businesses in the SaaS era was like $400,000 in the last generation. Again, I'm going to talk about this a little bit more, but the reason why this is the case is mostly because demand is very, very strong for their products and so they need a less resource to go take it to market.

0:48

Speaker C

David, maybe a quick clarifying just before we go to this slide here. So how do you define AI companies? Is that defined as post ChatGPT versus historical AI ML companies founded by a certain time period?

6:19

Speaker B

Yes. Yeah, it's sort of post chatgpt and some of them were founded like right around that time. We'd give a little bit of grace, but if their first product in market was an AI native product, then that's how we define it.

6:31

Speaker C

Got it. And then maybe this is a good point, but. Or you can punto later, but we'll. One of the questions I think a lot of folks are trying to understand is the magnitude of change in expected revenue and growth from companies from the SaaS era to AI era companies. And you've talked a little bit about the magnitude of revenue, et cetera. But what happens to those that are not AI native? Will they have a hard Time competing against AI native companies, Are they all shifting? Will we see more fallout? How should people be thinking about their historical portfolio?

6:42

Speaker B

Yeah, so the way that we're approaching this with our portfolio is you need to adapt to the AI era or die. And so that's both on the front end and the back end. So on the front end you need to think about how you can incorporate AI into your product natively and not just attach a chatbot app into your existing workflow, but reimagine what it can mean with AI and be aggressive about disrupting yourself and changing. And then on the back end I shared some of the stats around the efficiency that the companies are running at. This is going to change too. And so you need to be fully rolled out with the latest coding models for all of your developers and all of the latest tools across every different function inside your organization. The biggest uptake has been in coding so far and that's where we've seen the biggest leaps. There have been major, major changes like in the last two months on this, like month and a half in this. Andrej Karpathy has written about this. I was on a catch up with one of our sort of pre AI companies and this is a founder who's very AI like he's very AI deep and so he's adapting his company. We were talking this week and he told me that he was frustrated with one of their products. And so he just took two engineers that are very deep in AI and assigned them to build it from scratch with quad code and codex and cursor and just they had unlimited budget on coding tools. And he said he thinks it's going somewhere between 10 and 20x faster than progress that they had before. And the bills that they have associated with that is actually they're high enough that it will cause him to rethink what his entire organization will look like. The conclusion was basically I need my entire product and engineering organization working this way and I think it's going to happen within the next 12 months. But what does that mean for what the team design actually is and where does product start and where does ENG start and even where does design start in that process? So it feels like December was sort of a turning point on code and the next 12 months it's either going to hit and take hold in companies or those companies I think are going to be moving much slower than their peers. So as it relates to the pre AI companies adapt. We have another example of a company that is a pre AI software company and the CEO has Gotten totally AI pilled and he's like, we're going to become an AI product. You know, your employees are now your AI agents. How many agents do you have? Those are the things that he's talking about. We have another one that was very extreme about it and he said, I now ask the question for every task that we now need to complete. Can I do it with electricity or do I need to do it with blood? This is like the extreme mindset shift that's happening, you know, with our companies. And so I'm happy to see that our pre AI companies are moving very fast and trying to adapt, but they very much need to adapt to this new era, both front end, product wise and back end how they run their companies.

7:13

Speaker C

Totally, yeah, maybe tactically. Almost every portfolio you have to go line by line on the company to understand where the founder is on that journey and how much they're implementing from the ground up. And you know what you said in terms of blowing up existing operations, that's also happening in post AI companies too. And increasingly people are just looking every six months. It's like the things we built six months ago could be vastly improved based on what is available today. So if that rate is continually happening, the pre AI companies are needing to increasingly 10x catch up to that point.

10:22

Speaker B

Yeah. The good news for the pre AI companies is the business model evolution is still early days. So the most disruptive thing that can happen to you is a technology and product shift and also a business model shift at the same time. There's really one, I think of the business models as like a spectrum and I'm talking about like enterprise, like B2B just to keep it simple. But the spectrum is basically licenses and this was like the pre SAS license and maintenance business models. Then you had SaaS and subscription and that was typically seed based and that was a big innovation and it was very disruptive. Like the architecture and cloud delivery was disruptive but the business model change was very disruptive. Like just go look at what happened to Adobe as they went through that transition. Then you have this transition to consumption based, so usage based and this is how the clouds charge and so many of the sort of volume based, like task based type businesses have already adapted that and shifted to that from you know, seat based to consumption and then the next iteration will be outcome based. So you know, when you, when you do a task, you know, and ideally when you successfully complete a task, you get paid based on the successful completion of that task. The only area where that's really possible Today to pull off is probably customer support, customer success, because you can kind of objectively measure the resolution of something. But we'll see what happens with the capabilities of the models. To the extent that other functions besides customer support can measure those kinds of outcomes, that would be a huge disruptive force for incumbents. And honestly, seats to consumption might be a big disruption if the composition of companies changes as well. But that next one is the. Is the really big one for sure.

10:54

Speaker C

Speaking of blood versus electricity, we should go to ARR over FTE this next slide.

12:44

Speaker B

Yeah, yeah, yeah. So the big, the big debate that was going on on this one, on the next slide was like, oh, my gosh, look at the AI efficiency gains that are happening in the market now. There's a little bit of that in this, like, companies running themselves a little bit differently. And, you know, you take the example that I gave about, you know, the two engineers who are rebuilding the product, like, sure. I would say my observation from our companies, even the AI native ones, is they run leaner partially because they've just grown so quickly and the demand is so strong. I wouldn't say yet we're at the point where companies have fully reimagined the way they run themselves. I think this is a little bit the result of our data set being the best of the best companies and demand signals for those being extremely high, so they have less resources to serve that demand. And frankly, general efficiency gains that have happened in the technology market out of the 2021 most bloated era. So we're starting to see some early signs of that efficiency. But to wholesale run your company totally differently, I think, you know, we're, we're kind of early in that, in that journey. I'd say the coolest one that I've seen is in the, in the public markets that anyone can go read about is probably Shopify, where they, you know, Toby's awesome. Like, he's a CEO. That's, that's close. He's in a bunch of our groups and stuff, and he does a great job. And he, you know, he fully embraced this a couple years ago. And then they're. One of our staff writers actually wrote this whole big deep dive on how Shopify AI iFied itself, you know, in terms of, you know, employee direction, process, et cetera. And that's just probably scratching the surface of what's going to happen over the next five years.

12:49

Speaker C

Awesome. Good segue to the next section on what are these companies actually doing. And our favorite topic, which is lawyers have only increased in this new world of AIs, meeting lawyers, not the opposite. I love the tweet. I don't know if you saw it earlier this week that a corporate lawyer was quoted saying, LLMs have actually increased my workload because every client thinks they're a lawyer now. It's a good seg to Harvey, which is the next slide.

14:44

Speaker B

That's very good. That's very good. Harvey's so great. So, okay, this is a real test for me because, you know, I love talking about our portfolio companies. And I'm supposed to go through this section quickly because, you know, I think people know these companies. Hopefully. The takeaway on this one, you know, one of the big things that we look for and one of the questions I think that came in was how do you know that revenue is going to be sustainable? Like these companies, they all grew really, really fast, but is it fleeting? And the big thing that we push ourselves to do is make sure we go super, super deep on revenue retention, renewals, and product engagement. Actually, time spent. How often are people logging into the platform? When they're in the platform, what does their activity look like? And what you see on this page is with the onset of much better product that they've built over the last couple of years, plus the improvement of reasoning models, it turns out lawyering and reasoning go, go hand in hand. Users are spending about double the amount in the product as they had before. So it turns out that AI is really good at lawyering. Again, there's not fewer lawyers, but I think AI is very, very good at this. And I think lawyers are getting a lot more efficient. The most important thing as it relates to Harvey is they're just spending a lot of time in the product and getting a lot of value out of it, which is great. Let's go to a bridge. Oh, unless you want to keep talking about lawyers.

15:08

Speaker C

Oh, I was just going to make a comment. In all the seven years that I've known you, I wouldn't have ever discern that you're from Kentucky other than this moment. Now, by the way you say lawyer.

16:37

Speaker B

That was a.

16:49

Speaker C

Tell my.

16:49

Speaker B

There's a couple. There's a couple of those words in my vocabulary that I. I don't. You know, my wife always jokes. She's like, you know, you go home, you have like one bourbon, and then you talk like you probably did when you were 18. The Kentucky came out when it came to lawyers. It's. It's 10:25am I have not had any bourbons today. So important distinction. It's important distinctions. Yes, exactly. So a bridge. A bridge is another one that's super, super exciting. I mean, this is like the doctors rave about getting to have access to a bridge and how much time it saves them and how much better it makes their lives. So one of the customers that we talked to described it like a trusted bridge. Deputy. The chart on the right shows something we look for, which is the blue line shows the growth in users and the green line shows the engagement of those users. And so as they have massively grown the number of users, you'd be a little worried if engagement of those incremental users that they were adding was going down. But instead, they have extremely high usage among the people who use the product, and that has actually held steady and grown a little bit even as they've added tons and tons of more users. So these are just examples of the kind of data that we look for to make sure that we feel confident that the revenue these companies are generating is sustainable. And again, these companies are growing faster than, you know, any of the predecessor companies, but it's very sustainable. It's high engagement, it's high retention, and that's critically important for us. Same thing with 11 labs. Voice is the centerpiece of so many of the new AI tools. You know, I talked about customer Support on the B2B side, but you know, so much, you know, other personal tools, business tools, you know, start, start with Voice. The usage growth is the thing that I love to look at on this chart, and it's just staggering. And this company is growing very fast and it's a great example. One of these companies that runs extremely efficiently. So 11 Labs is, is really, is really a great one. Navon is the next one. So this is another, this is a different example. So this is actually a good example of, of what I was describing earlier. So they were early to this, you know, AI shift and, and, and they spent a lot of effort making sure that they could take the most of the AI capabilities and make their business better. And, and so the biggest way you can see it in their business today is in the handling of resolutions. So part of what they have is, you know, agents that have to handle travel bookings or travel changes. AI is now handling 50% of those user interactions. And this is hard stuff. Like this is travel bookings, this is changes to travel. So this is not complex, like, tell me the balance of my bank, you know, this is like complex workflow that AI is now able to handle. The way you see that in the business is a 20 percentage point expansion of gross margins over the last three years. And that's just exceptional impact. And so, you know, you need to adapt or die. Well, their competitors are not adapting. They're very old school. And while, you know, they've been sitting still and doing things the old way, navon now has 20 percentage point higher gross margins than those incumbents. And then, you know, Flock, Flock is doing absolutely incredible work. I've talked about them so much. It's, it's the most compelling customer value proposition that we see in our portfolio. Because what their ROI is, is solving crime. The 10% stat we've covered before. Each year, Flock is solving 700,000 crimes. The, the, the data point on the right also is a data point that just shows, per officer, that where there's Flock, they're clearing almost 10%, you know, more crimes. So huge impact on the community. Obviously they have a great, you know, they have a great business and financial model that goes along with it. But the, but the impact on their product or from their product is, is exceptional. Okay.

16:51

Speaker C

By the way, I don't know if you see the chat lighting up of people saying that they're three bourbons deep.

21:05

Speaker B

Oh, ok. I didn't see it.

21:10

Speaker C

For what it's worth, there is one question about how do you think about the benchmark? Like, if you were to think about traditional industries like finance, for example, and using JP Morgan as a benchmark, what would you calibrate the Fortune 500 in terms of AI adoption? And then maybe I'll overlay that question that Xavier mentioned as well with. There was that study about enterprise adoption from MIT at the early outset of last year, and they were measuring all sorts of wonky things. Maybe say a little bit more about how and what you're hearing from Fortune 500 CEOs.

21:12

Speaker B

Yeah, what we're hearing from Fortune 500 CEOs, I would say, is maybe this is the key sort of link between those two points. What we're hearing from Fortune 500 CEOs is we have to adapt. We're dying to understand what AI tools we need. You know, we're ready to change. We, you know, our businesses are going to fully roll things out. And, you know, we're, we're ready, we're going to become AI companies. That's quite different than what is actually happening. And I think the biggest disconnect of sort of, you know, that mindset compared to actual change in the businesses is just change management is hard. You know, it's hard enough to get people to just use an AI Assistant to help them do their jobs better. You know, coding is probably the easiest one to get people's minds wrapped around customer support. It's such a better, faster, cheaper, obvious thing. But in terms of actually, you know, general management of businesses, changing business processes, change management, it's extremely hard to do. And so I'm not surprised that there are anecdotes out there that suggest, oh, you know, things are moving slower than expected, but for the best companies that are fully embracing it and actually know what to do, it has tremendous business impact already. So, you know, I think there's going to be a sort of reckoning over the next five years of who can actually embrace change, push through change management, you know, adopt all the best products and those that don't. And I think there'll be major differences in productivity. You know, we have some charts later in the slides, you know, which I can talk to. But you know, the expectations around productivity enhancements and, you know, and growth and all that stuff, you know, the expectations are high and I think a bunch of companies will achieve those and the ones that don't are going to be at a huge disadvantage. Chime said they reduced their support costs by 60%. Rocket Mortgage said that they saved 1.1 million hours in underwriting up 6x year over year and that was 40 million bucks of run rate annual savings. So we're seeing pockets of it in non AI businesses. And I think this is going to be a really interesting year to watch. Over the next 12 months I think you're going to see a ton more anecdotes, but there will be companies that can figure it out and there are going to be companies that don't totally.

21:47

Speaker C

And also a lot of these corporations have had to orient their business to be ready for AI as well. Like there's one version of just like using a chatbot, right. And how much productivity gained that actually gets you? Probably not a lot. Right. But if you have to actually completely upend your systems information and backend to be ready for AI, a lot of that is probably latent and being built up now into actually seeing the outcomes associated with it.

24:18

Speaker B

AI winners are driving the public markets. They account for almost 80% of the S&P 500's return. So this is sort of the major thing driving the economy and the stock market. Public markets are doing very well, but the fundamentals are sound. So the prices are going up or you know, there's some blips like the last couple of days, but they're generally doing well. But the fundamentals are very sound and I would say the evidence of froth is minimal. So recent performance is driven by UPS growth. Multiples have contracted slightly, maybe more than slightly if you're a SaaS company over the last few days or a couple weeks. But I would say the market is priced on in general earnings earnings and earnings growth. So the earnings multiples are higher than average but nowhere near the dot com and so you can just look at the charts and see where we are and you know that that gives me some comfort. And again the earnings of the companies that are the biggest drivers of the market in general I feel like are pretty sound. The companies are good. So you know the, the health of these companies I would say is pretty good. And, and the valuations are higher than average in the past but they don't feel super alarming. I often say the leading tech companies that I was, I was just talking about are the best businesses in the history of the world. Um, if you just look over a long period of time they have shown margin improvement. That suggests that is probably true. And that's, you know, that's on the left side of the page. So investors are paying for profits, not loss making growth. And that's a big contrast from 21, 22 era, sort of 21 era and obviously a big contrast from a dot com adjusted for margins multiples are, are not that high. And so again I like summarize, you know, five slides worth of materials. The market's higher than it has been in the past but I think you know, there's high expectations for a reason and, and we're optimistic about the impact of AI flowing through to earnings, you know, overall in the public markets in the coming years. And maybe I'd focus your attention on the right side which is you know, if you just took a four box of like low growth, high growth, low margin, high margin and, and paired up those types of companies, this is a chart that shows how they trade. There's a premium for the best companies and what you see on the, the two columns on the right is high growth, high margin companies and then high growth and low margin companies. Your bad box is obviously low growth, low margin. And those companies shouldn't be rewarded. They, they, they should trade low and they do. But the companies that are high growth and high margin and you know, the high growth and low margin, as long as they have good unit economics and they're scaling into their margins, they should be rewarded. And so I think this is good if you're not high growth, even if you're high margin, it's tough out there and that's not surprising. Again I've talked about this in the past in many different forms but ultimately growth is the biggest thing that drives returns over five to 10 years. And so it's nice for me to see high growth is rewarded more than low growth. But if you have high growth and high margin, you're one of those great businesses. It's being very rewarded. This is just like we're going to talk about supply side of the CapEx build out. So the buildout's massive. The size and the concentration of the investment is inherently risky just given how big it is. While it has some bubbly features, the underlying fundamentals, I would say bear little resemblance to previous bubbles. The investment is financed primarily by historically profitable companies, like very profitable companies that I had talked about. Debt has started to enter the picture cycle times have accelerated, which is good but you know, model we're, we're closely monitoring the sort of cost of training and the economics of that whole equation. Right now it seems pretty good. The paybacks for the big model companies that spend money on training models is pretty good, but we're monitoring that closely. Most importantly, we think that AI is going to be, you know, the biggest model buster that I've seen in my career. Certainly I've written about model busters so I won't spend too much time on them, but they're companies that grow faster and longer than anyone would have would have modeled in any scenario. Like iPhone is the classic case of this. You know, if you take consensus models from Pre iPhone to five years later, four years later, consensus models were off for Apple's performance by a factor of 3x over four years. And this is like the most covered company in the world at the time. So you know, I think that the same thing is going to happen in many pockets of AI where the performance just massively exceeds what any expectations in a spreadsheet would show you. So tech in general is itself a model buster. But since 2010 tech has delivered high margin revenue at unprecedented speed and scale. So it often looks expensive early but repeatedly surprised to the upside I would say and creates value, I would say far in excess of the capital that's required to grow. And I have no reason to think it'll be different, you know, this time around. So relative to the.com, capex is actually supported by cash flows and capex as a percentage of revenue is considerably lower. So that's simple headline, we can zoom to the next slide. But you know, I feel much Better about this capex, you know, dynamic than than than dot com. Obviously hyperscalers are the ones who are bearing the biggest brunt of the capex. And this is a very good thing, you know, for our portfolio companies. This is great. Like I am all for it. Get, you know, get as much capacity in the ground, get as much supply as you as you possibly can on the ground for training and inference. This is a very good thing. And again, the companies that are bearing most of the brunt of this are the best businesses of all time that I had talked about before. So one thing that we're starting to monitor is the introduction of debt into the equation. So you can't finance all of the forecast capex that's to come with cash flow and we're starting to see some debt. So we're following this closely. We're generally not invested heavily in companies with exposure to debt. Do I feel comfortable with a bunch of the companies on the page financing with cash flow, continuing to produce cash flow and using debt even, you know, Meta, Microsoft, aws, Nvidia as counterparties, of course I feel great about that. I mentioned the ones I feel great about. I don't feel great about all of them. So not all counterparties are the same. You know, we're starting to see private credit get a little bit more involved in the data center build out and you know, again the company that's very well covered, that is kind of making a bet the company move into becoming a cloud is, is Oracle and they've, you know, they've been profitable forever and reducing their shares forever but the amount of capital that they are committing is very large. It's a big bet they're going to go cash flow negative for many years to come. And you know, if you follow some of the buzz around it, like the cost of their credit default swaps has gone up, you know, to like 2% over the last three months. And so we're watching stuff like this again. This is all generally good stuff for our portfolio companies but we want to make sure that the market overall is healthy as well. So this is just a slide that shows the magnitude of the pace of change of AI. So comparing AI buildout and AI revenue to what happened with Azure. So the, the AI revenue is coming along relative to the cloud. It took Azure seven years to reach one year of AI revenue. So this is just Microsoft reporting data which I think is a cool way to frame how quickly this has happened. The build's taken a very long time. Again this AI build out is happening much faster. But it took 10 years for Azure revenue to surpass their capex. And I think that sort of ratio or equation is going to happen much faster with AI. We don't need to geek out too much on depreciation but this is one of the topics that gets a lot of buzz in finance circles. You know, just what are your assumptions around depreciation of chips in particular? I would say the Pricing for older GPUs is very solid. Early users stick with models a bit longer, but later users quickly switch to the new thing. So that's the right side, that's like kind of the model side on the chip side. 7 to 8 year old TPUs, Google actually disclosed this. 7 to 8 year old TSUs actually have 100% utilization and we very closely monitor the price of chips in the secondary market. And the price to rent a 1/ hundreds and H1 hundreds has actually held up very, very well. So older generations of chips are still, still getting fully utilized. So this is not something I worry about yet, but it gets a lot of buzz and you know, sort of alarmists who like to, to talk about risk in the system. All right, some positive stuff. So the, the big thing that we talk about all the time is, is, is this paradox, right? Like as tokens get cheaper, consumption goes up. All the hyperscalers report demand is well in excess of supply. I believe them when they say that. You know I interviewed Gavin Baker, friend of mine on our, at our AI summit and he was comparing the build out of the Internet and laying all the fiber to the build out of data centers here. And you know his, his big line was there is, you know, there is no dark GPU. There are no dark GPUs. There was a dark fiber, you had to lay fiber and then you know, laid there dark and it wasn't used. It. You put a GPU in the system, in a data center, it gets fully utilized immediately. And so that's a very good sign, you know, in terms of you know, demand meeting supply immediately. I mentioned this earlier. Earnings growth should come for these companies like this is our expectation. And if it doesn't then they will probably be disrupted if they can't change. So change management again is the biggest reason why we see things, you know, that, that haven't sort of dramatically shifted yet. Honestly to me it's not the readiness of the technology itself. It's probably, you know, product build out that needs to get built around the technologies and then change management and putting it in production. So revenue growth is scaled at A staggering clip relative to other categories. So this is just, it shows how quickly generative AI in app revenue has grown from 23 where it was basically, you know, you can barely even see it on the page to now. And this is a slide that we've showed before. But basically this compares the clouds public software companies and then how much net new revenue gets added in 2025. So the far right is what I like to look at, which is public software companies added $46 billion of revenue in 2025. If you just add up OpenAI and Anthropic on their, on a run rate basis, they added almost half of that. And I think if you were to do that same comparison for 2026, all of the entire public software industry, I mean SAP, this is not just SaaS, like including SAP and older software companies, I think the AI companies, the model companies, will be something like 75 to 80% as much. So it's just staggering how quickly that has happened. These are pretty detailed slides, these next couple ones, these are sort of slides showing what is implicitly expected in AI performance based on where stock prices are today in analyst models. So Goldman Sachs estimates 9 trillion of revenue flowing from the build out of AI. So if you assume 20% margins in a 22 times PE, that translates into 35 trillion of new market cap. There's been about 24 trillion of new market cap that's been pulled forward. Now we could debate if that's attributable all to AI or otherwise large tech performance. But there's still a lot of sort of market cap to go get where you could have upside if those assumptions are right. So this is another sort of cut or few cuts on trying to address this sort of AI AI payback question. So current estimates put cumulative hyperscaler capex at a little less than 5 trillion by 2030. So if you do napkin math on that, to achieve a 10% hurdle rate on that 4.8 trillion or almost 5 trillion of investment, annual AI revenue would have to hit about a trillion dollars by 2030. So to put that into context, a trillion dollars, that would be about 1% of global GDP to generate a 10% return. It's possible that happens. It's also possible we could fall a little short of that. But I think it's limiting just to look to 2030. I think the, the payback of this probably happens, you know, over a longer period of time, like you know, between 2030 and 2040 as well. But you know, framing it up, that's about, you know, 1%, you know, 1% GDP to get to, to get to the payback number of a 10% hurdle rate. All right, heard it on the street. What we've started to do is we've sort of built software to track what all of the AI or what all of the tech, public technology companies discuss in their earnings calls and mentions of AI, how relevant it is to our business at the early stage and you know, the growth stage. And we package it all up and we share it out to our CEOs so you know, they can kind of have a simple digestible format of like what do I need to know about AI as it relates to public technology companies? You know, how does it, how does it impact my business, et cetera. And so we shared a bunch of the, you know, the stuff that we, that we track in here.

24:44

Speaker C

Awesome. There was one question before we move to the private section, which a lot of folks of course on this call care about in this transition here. But before we get to that, so where are we calibrating to your trillion dollar in AI revenue? You know, thereabouts. In, in 2030, where are we today relative to your guesstimate of AI enabled revenue? And, and how, how far off are we to that trillion dollar number?

38:52

Speaker B

We're probably in the, I would probably guess in the 50 billion range.

39:17

Speaker C

Yep.

39:28

Speaker B

Just add it all up and there's no perfect way to do it. I mean, I know, I know some of the big inputs. Yeah. To it. The harder stuff to track is honestly the, the big tech companies, like how much real AI revenue do they have? The cloud, the clouds can kind of, they will from time to time give percentage uplift from AI but I think depending on how they want to paint the picture, they can play games with that a little bit. So you know, I think it's, I think it's, I, that's a, that's a rough swag but like you know, trillion, we're probably at 50, but it's growing, you know, way, way, way faster than a hundred percent year over year.

39:29

Speaker C

Yep. And then arguably that revenue, I mean ChatGPT launched three years ago, but substantially most of this traction happened in the last year and a half. Ish or so, if we're being really generous too. Is that a fair characterization?

40:03

Speaker B

Yeah, that's right. Yeah. And look, you know, it's not just chatgpt now on the consumer side, you know, Google has a business, X AI has a business. And then, you know, on the B2B side, you know, not only do the big model companies all have large API businesses, but the clouds have it too. And so a lot of the, you know, a lot of the sales that are model sales are also flowing through the clouds.

40:15

Speaker C

Yep, yep, yep, yep. Okay, cool. We have some questions on, on the private company side, but I'll let you get through this section and then I'll tee you up for it.

40:36

Speaker B

Well, you, I, I'm happy to go into questions if you want on it. I mean, this, a lot of the stuff that we've talked about, you know, the big themes for me on the private market side, you know, companies are obviously staying private longer, but this is such a real asset class now. Over the last 20 years, the number of public companies has been cut in half. You know, the, the vast majority of companies that are $100 million plus revenue companies are private, something like 86%. So, you know, that's, that's a major shift. We could go, you can skip a couple slides forward. Basically, I'll talk a little bit about power laws because I think that's interesting and maybe some new stuff that we haven't talked about as much. But value very much concentrates in the outlier companies. So the collective valuation of North American and European unicorns is about five and a half trillion dollars. The 10 largest ones, if you just take those, comprise almost 40% of the entire value. And that's actually doubled since 2020. So sort of value, you know, sort of value is being concentrated in the biggest and best winners. I'm trying to count real time. We have 4, 5, 6, 7 of the 10 are portfolio companies of that 10. So, you know, we, we've got a reasonable amount of coverage on that. Power laws are happening in the public markets too. So large cap has tripled since 2019. So what, what constitutes a large cap company has actually tripled since 2019. And I think this, the chart on the right side is super interesting. This was new data analysis that we had done. If you look at the lifespan of an average company on the s and P500, that's what that chart shows. That's what the numbers represent. The light like once a company is on The S&P 500, how long is it on there? This is on average is actually, if you look over the last 50 years, that has declined by 40% the amount of time it stays as part of the s and P500. So disruption to companies happens faster and faster and faster, which I think is a very interesting dynamic and sort of matches what we're seeing just in terms of speed of change in the Markets driven by technology. So we always like to talk about power laws in our business too. I didn't choose the title of this slide. I recognize all of the questions and concerns about it. So the, the volatility laundering thing is, is a, is a big debate in our circles too, mostly around founders who are trying to debate the merits of the private markets and the public markets. And you know, the Collisons did an interview where I think maybe it was. John did an interview where he talked about, you know, managing your stock price and avoiding volatility and you can kind of orderly fashion bring your stock price up over, over time and that makes it easier to retain employees, hire employees, manage morale, et cetera, et cetera. And so I get the merits of that. I also think there are really, really strong merits of being a public company as well. I think we're going to have a really, really interesting 18 months where we're going to have some of the big kind of private for a very long time companies that go public and that's a good thing. And in my opinion too, some of the stuff that we show in this chart is just volatility and the observation that over time volatility has gotten a little bit more extreme in the markets. To me, this is a little bit cycle driven too. I know it's short, short duration is sort of what we're measuring. But there's merits to both. Companies can get much larger in the private side. We have embraced that new reality. I think it's been a big benefit to our business in terms of getting continuous getting to continue to invest in these companies over time. But obviously there's a path of being a public company and getting liquidity which we care a lot about too.

40:43

Speaker C

Awesome that. Note, there were two questions I will queue up for you here. One, on databricks, can you talk about their transition from being a pre AI company now to a fully embedded AI company and what that's been like?

44:40

Speaker B

Yeah, yeah. First of all, I think you need to, you know, I mentioned Toby like the reason Shopify has embraced it is because Toby has led from the top and he runs the business, you know, with AI at the center and he sort of performance manages everyone to, you know, to make sure that they do that. Ali is the same. Ali is this unique blend of sort of commercial kind of Terminator. I talk about him, he's calling the technical Terminator. You need to have a commercial instinct and understand the importance of the value creation opportunity in AI and, and then you need to actually be deep enough in the technology to know what to build. And so it just so happens that their, their sort of cloud data warehouse, or they call it the data lake, is actually a great way to have your data in a place to run AI workloads on top of it. So, you know, that was sort of a good place to be for them. And then they've very aggressively iterated on new AI products. They have this new product called Agent Bricks which we're super, super excited about. We think it's going to be really big and transformative for them. So I would say that's a piece of it. And then they have the big AI native companies all as customers. And so, you know, they have the technology, they have the low cost technology. And so, you know, a big thing that we look for when we're making investments in companies is who are their customers. And I would far prefer the customers of our portfolio companies to be the modern thinking ones, you know, the door dashes of the world, you know, the instacarts of the world, the ubers of the world than the very, very old school stodgy companies because that means that their technology is evaluated by smart technologists and they pick it. And so the cutting edge AI companies are all building on top of databricks. And so, you know, they have the chance to grow with them as they scale, but it's also a really good validator that they have the right technology.

44:55

Speaker C

We'll close out here. Thank you David for taking us through that.

46:49

Speaker A

Thanks for listening to this episode of the A16Z podcast. If you like this episode, be sure to like, comment, subscribe, leave us a rating or review and share it with your friends and family. For more episodes go to YouTube, Apple Podcasts and Spotify. Follow us on X@A16Z and subscribe to our substack@A16Z.substack.com thanks again for listening and I'll see you in the next episode. As a reminder, the content here is for informational purposes only, should not be taken as legal, business, tax or investment advice or be used to evaluate any investment or security, and is not directed at any investors or potential investors in any A16Z fund. Please note that A16Z and its affiliates may also maintain investments in the companies discussed in this podcast. For more details, including a link to our investments, please see a16z.com disclosures.

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