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The Twenty Minute VC (20VC): Venture Capital | Startup Funding | The Pitch
Harry Stebbings
Tax Policy and Societal Implications
20VC: Mercor CEO on Why Application Layer Companies Have No Defensibility, The Model is the Product | Token Spend Will Exceed Headcount Spend in 5 Years | The True Cost of Hiring AI Researchers in the Valley Today with Brendan Foody — Jun 1, 2026 — starts at 0:00
Building defensibility in the software layer on top of the models is going to be incredibly difficult. I think over the last two years, everyone has increasingly realized that the model is the product. We have the demand to double of our numbers. We just don't have the capacity. Like right now, we're spending more on tokens for our internal agents than we are on employee headcount. I think we're seeing in real time that services are getting automated. I could definitely see one of them being a $10 trillion company, maybe even significantly higher. Aaron Powell How much does it cost to hire a high-quality AI researcher? Aaron Ross Powell Oftentimes it would be in the tens of millions of stock per year. This is 20 VC with me, Harry Stebbings. Now, joining me in the hot seats today, we have Brandon Fudie, co-founder and co-CEO of McCaw, one of the fastest growing AI companies, valued at over $10 billion today, doing over a billion dollars in revenue. Now, Brandon's done quite a few shows before, and so my question was: how do I get answers that he's never given before? How do I push and ask questions that no one's ever pushed him to ask before? This is the most revealing inter view that Brandon has ever done, discussing core elements like is revenue really revenue in this business? What does that look like moving forward? Would he rather invest in open AI or anthropic? We do not shy away from the spicy question in this show, and Brandon was incredible and more than delivered. But before we dive into the show today, did you know the industry average for booking a business trip is 45 minutes? That's a massive waste of your team's time. Well with Nivan, your employees can book a trip in just seven on average. Nivan is the AI powered travel and expanse platform designed for companies that value efficiency. It drives real business impact through high employee adoption and automated policy control. 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While airwallets helps your money move globally, Vanta helps your security keep up. What's one thing in business that's spreading as fast as AI? AI risk . Every new tool your team signs up for, every vendor that turns on AI features, every new integration, each one, I'm sorry to say, is an opportunity for something to go wrong. And most security programs weren't built for AI's pace of growth. Well, that's where Vanta comes in. Vanta is the number one agentic trust platform used by over 16,000 fast-moving companies like Ramp, Cursor, Harvey, and more to ensure they're always audit ready. And now Vanta's helping companies like yours. Watch for the risks that show up between audits across your vendors, your AI tools, and your whole environment. How? Well the Vanta agent works like a 24-7 GRC engineer in the background, finding issues, drafting fixes, and cutting vendor agreements time by up to 50%. Whether you're a fast-growing startup or a global enterprise, Vanta 's here to help you automate your security and your compliance and earn and prove trust. My listeners get a special offer. Oh yes, a special offer. One thousand dollars off vanta at vanta.com slash two zero vc. That's V-A-N-T-A dot com slash two zero vc for one thousand dollars off . You have now arrived at your destination. Brandon, it is so good to have you in the studio, dude. Thank you so much for joining me in person. Super excited to be here. Thanks for having me, Harry. So I was thinking about how we're going to structure this and I was like, you know what, there's there's quite a lot of myths or rumors around McCaw. And given it's our second time, I thought I could kind of break the ice and just go straight for them. So myth number one that we're going to tackle, but there was a hack or a legal whatever I don't know how you can terminology you call it, but a hack. And revenue's been flat, what's really happening with McCaw? True or false? So there was an incident. All of the other parts are false in that we obviously handled it very quickly. We were in touch with customers. We moved incredibly fast at engaging Mandian and a bunch of other security consulting firms. And the company's been crushing it ever since. We've expanded our relationships with all of the frontier labs and added 300 million in net new ARR in the last sixty days. Fuck me. It's been pretty crazy, yeah. Keeping us busy. Aaron Powell Where were you when you found out about the hack and what did you do? Aaron Powell Well it was a Saturday, so I was in the office and I was talking with our engineering team. And I think the initial thing is, of course, like how are we communicating this to customers and trying to be very proactive about understanding exactly what happened, what was accessed, et cetera. And then how do we communicate this to the experts and just containing it moving quickly on the comms and then from there of course making sure that we put in place all the right things so that it never happens again. There's a brilliant poet Roger Kipling who said, you know, kind of essentially you have to keep your head when all about you are losing theirs. That is a time when everyone is losing theirs. Definitely. And it by no means one are you patronizing, we're both young, you're younger than me. What do you do to stay calm when that is an oh shit moment? Well it's interesting 'cause I feel like throughout the lifetime of the business , I have been through a lot of very stressful moments. That was definitely stressful, but it definitely wasn't close to the most stressful one. Seriously. about making sure we get something right with a customer or whatever it is. But part of it is that there was this broad perception on Twitter that was much more exaggerated than what actually happened within the business. And so having a thorough understanding of what actually happened and having really strong relationships with customers gave us a lot of confidence that we would get through it, be on the other side, even stronger. And we used to have six values as a company, but we added a seventh value as security to make sure it's very ingrained in the culture. But I think that yeah, just that that confidence that we know what's going on and that there's sort of this echo chamber on X that we need to hedge against a little bit. Aaron Ross Powell Do you pay attention to it and do founders need to pay attention to it? Aaron Powell Definitely. I mean I think founders need to pay attention to it. Like we had an all hands with a company where we just laid out here's exactly what's happening, here's the trajectory of the business. And I think that was very helpful to the entire team. But it was definitely annoying that there were all of these people saying things that didn't actually happen and we couldn't quite speak out against them too explicitly, otherwise there's you know going to be the Twitter mob circling and all these recommendations from lawyers, et cetera. Aaron Powell The hard thing is there are often a lot of people with economic incentives behind the scenes. Totally. Who will absolutely trounce you and be very negative because they are aligned to a competitor, or you know, we're in a YC company that's been through a lot of shit in the last few days, and their competitor has a lot of people behind them through various different means, and the alignment is not obvious, but it really sounds out on Twitter. That is exactly what happened. Like I can even think of one person that's very prominent who's invested in multiple competitors and just like made this tweet about how all of our data was getting accessed by China when it was totally untrue. You mentioned adding security as a seventh pillar there. We've seen so many hacks. It's almost become normalized, as awful as that sounds. Are we about to enter a golden age of cyber given the new threats awakened by AI? I think so. I mean, we're even seeing this on the customer side where, our customers obviously are very focused on how do we improve the model cyber defensive capabilities so that we can have the best AI security engineer that is able to defend every enterprise from all of these attacks. Because in our incident, it was the attacker that used a swarm of coding agents to help get access to the system as is happening in a lot of these. And so I think there's going to be an enormous boom in AI security engineering tools and various forms of defense that are able to help protect companies against all of the increasing waves of cyber incidents that are just getting started. Can I just be very naive and dumb here? How do the swarms of coding agents make for such dangerous and malicious actors? How does that actually work? When a normal attacker is trying to find vulnerabilities, they can only review so much code and go through a certain portion of it at a human speed bound by the amount of people in their team. Versus when they're using swarms of agents, they're able to be very exhaustive in reviewing the entire code base, looking at the entire front end, all the different things that they've accessed. And so that has allowed a lot of these attackers to just move much more quickly. And so we've been exploring various collaborations with customers and how we can strengthen their cyberdefensive capabilities to hedge against exactly this type of attack as well. In terms of those various customers, true or false, you lost open AI and Meta's Aaron Powell False. Our relationship with OpenAI is stronger than ever. Obviously, I can't speak too much to specific customer relationships though. Can I push on meta? Aaron Powell Of course. I mean I think that meta currently the relationship is still paused. Every other one of the Frontier labs has grown their relationship with us since and the company has been crushing it, but they're the only one that is And it would be paused because of just because of the security? Aaron Powell Well there's other things happening there. Like obviously I think that Meta is a unique customer because of the scale acquisition. And so naturally they're going to work with scale more, but I don't want to speak too much to the specifics of a Aaron Powell Because I thought when you saw like handshakes revenue just like parabolically go up, it was just like meta shifting spend from you to them. Is that not true? That's not true. Interesting. What is that then? I probably shouldn't speak to uh granular delay to that, but yeah. Totally cool. But okay. So we have to everything except customers. But we have l ost open AI. Gotcha. Okay. Cool. Because I got told by many of your conversations before the show. Great, good. Thank you. You're wrong. You've been I I read this article. You've been trying to poach Micro One team members with signing packages in the millions. We have not extended a single offer to someone from Micro One. Aaron Powell So no millions. No millions. Because I read this article. So the reason for the article was that someone on our team sent an outbound to some people at Micro One saying that we were hiring a variety of people with these very high signing bonuses. I think one of them said $500,000 as a potential signing bonus. And they took first meetings, but we didn't move forward with offers in ev in anyone. And obviously the way that gets framed to the press is, oh, these are offers that are going out when there's a giant distinction from one of our employees sending, you know, a message to one of their employees versus actually Love it. Press is a wonderful thing, huh? Totally. Okay. Next mythbust. I'm enjoying this. This should be a new show, Mythbusters. You might get uncomfortable with this one. I heard a rumour that Amazon tried to acquire you for thirteen billion dollars. True or false? Aaron Powell That one is false. I obviously can't speak too much to like other acquisition kind of stuff. So I'll reserve any comments on future acquis Aaron Powell Would you sell for thirty billion? Aaron Powell No, I wouldn't. I mean, ultimately we've gotten a lot of acquisition interest, and we could walk away with like I could walk away with billions of dollars in cash. The thing is that's just not what motivates me. Like I'm very motivated by how do we solve this incredibly important problem in the world of how humans fit into the economy. I feel like we have the opportunity to build a legendary company in creating this new category of work. And our probability of executing on that vision wouldn't be as high if we weren't an independent company. Aaron Powell How humans fit into the economy. When we look at the news, we see Intuit lays off sixteen thousand, Murder lays off eight thousand at four a, LinkedIn a thousand, Coinbase, da da da da click up now, 22% going. It's hard for people to see how humans are gonna fit into that new economy. Totally. Do you share that concern? I think to some extent. I believe there's certainly going to be many more jobs in 10 years than there are today. But there's also going to be a lot of job displacement along the way. Amidst all of these layoffs, I think the most important question is understanding what jobs is AI able to do and what jobs is AI not able to do. And so we're building a ton of initiatives such as the AI Productivity Index or Apex that are becoming the industry standard in answering that question of measuring across all the different popular job categories that people talking about, ranging from consultants to investment in bankers to lawyers to software engineers, what are the actual tasks within those that AI can automate and what are the tasks that it can't. With the greatest of respects, does that not change so quickly? You know, when you saw Andre Capathy talk about how he uses coding agents, it was like, oh I use it for twenty percent of the work. And then it's like, oh, it does 80% and I do the final twenty percent within a six month peri od. Definitely. Well, even another example on that is on Apex, the frontier model right now is at about 40%. And 12 months ago, the frontier model was 01, which was scoring 1%. And so that's been the progress of the last 12 months. And obviously, we expect it to continue and be fairly significant. But I think that the key thing is that everyone underestimates the elasticity for demand and increased productivity in the economy. Ultimately, over the last 2 50 years, we've increased productivity by 25x, equivalent to automating about 96% of someone's job. And during every technology revolution, ranging from the agricultural revolution to the industrial revolution to the computer revolution, people feared that there would be this enormous job displacement because of the lump of labor fallacy, where people assumed that there was a fixed amount of things that had to be done. And when we made people more productive, that would all of a sudden mean that there were fewer jobs. Yet 250 years later, there's more jobs than ever before. And it's because we have no shortage of problems to solve as a society, right? We still need to solve climate change and cure cancer and do all of these other new things. And so I buy that completely. What I don't buy is the speed of transition and what I mean by that is when you look at industrial revolution, agricultural revolution, it took multi-decade cycles to implement and train new technologies to do what humans did. Now with Nano Banana Pro, I can get rid of all designers in my media company pretty much overnight. Trevor Burrus Well, the thing I agree with you is about displacement. I agree there's going to be a very significant amount of displacement, but I also think that the economy is becoming much more effective at creating new job categories and allocating new labor. Like a great example is what we do in that now we're paying out over $3 million a day in the fastest job category ever created in history. And I expect that's going to continue growing exponentially from here. And I think that there's going to be so many new job categories created across everything within AI, such as training agents for deployed engineering, building data centers, all the way to all of the problems that we otherwise wouldn't have been able to address as a society. Like how do we build solutions to climate change? How do we have more people working on rockets to explore space, et cetera. Totally get you. You said three million per day pay down. Mm-hmm. What is that in twelve months time? In twelve months time, that's probably about triple that. Nine million. Do you think you're being ambitious enough? Maybe it's quadruple that. We have uh internal projections that are always much more aggressive than our external projections, but we almost doubled our projections last year. What new role will we have in five years that does not exist today? Aaron Ross Powell One of the largest things that people underestimate, both in the context of AI labs as well as within the enterprise, is how significant of a job category it is going to be to train agents. Like what we're seeing is that all knowledge work is converging on training agents because it is structurally more efficient to do something once. Instead of having a customer support representative that is redundantly responding to hundreds of tickets, they're going to train an agent how to do that once. Instead of having a lawyer that is redundantly doing dozens of similar red lines on commercial contracts, they're going to train an agent how to automate that. And even probably when you're playing around with Claude, you see that there's so many repetitive workflows of how you prepare for a meeting or draft emails or whatever it is where it's just much more efficient for you to train the agent how to do that activity so that you can amortize that over the entire useful life cycle rather than doing it redundantly yourself. And so I think that there's going to be this enormous paradigm shift as agents enter the workforce and every one begins to manage them. Can I ask you when we think about that enterprise adoption, I think one of the biggest problems that we have is data structures and data cleanliness. I interviewed a guest the other day and they said we'll have like data cleaner as one of the most important jobs of the next five years. Is data structure and data cleanliness the biggest barrier to enterprise adoption? Well I agree in part. I think that certainly the models need to have access to data to perform their jobs effectively. But the caveat is that they'll be able to clean the data themselves fairly effectively as reasoning capabilities go up. The thing that humans will need to contribute to is all of the tacit knowledge within the organization that isn't written down. Because I've found that when I try to get agents to do all of these workflows throughout Mercore, there's just an enormous amount of context that lives in people's heads that the agents need to have access to to perform effectively. And so much of that is going to be the new job of employees: how do we codify all this knowledge? How do we train agents so that they're able to perform these tasks effectively across every function in the organization. Aaron Powell I'm sorry for digging down, but you said reasoning capabilities will allow enterprises to clean data more efficiently. Aaron Powell Why? Well the reason is that if a model is able to, for example, read through every message written in Slack over the last six months. The model can presumably structure a table of here are all the different customer conversations that happened in the CRM, et cetera. And so I don't expect humans to be doing like that type of stuff of how do we structure data, how do we classify it, et cetera. But I do think that humans will do the things that models inherently can't do, such as the test of knowledge. Trevor Burrus When we look at the the market for being a data provider to some of the largest models in the world, it's such a large market that you're seeing the unbundling of it into like such verticals. I met the other day a medical real world medical data provider to It's interesting. We're we're doing a ton of data collection in the physical world as well, especially across skilled domains where you have electricians and mechanics and scientists dropping cameras to their head to record things. I think that there's always going to be some degree of value in some of these like niche vendors that are able to go really deep in a specific vertical. But what we're finding is that there's enormous value to aggreg ation and economies of scale. And that when we have this talent network of over five million people that are able to refer their friends, it's just so much easier for us to find the marginal doctor because we have that enormous taunt network that can refer us to their friends. And even more importantly, that the kind of data shapes that we would build for a lawyer are often very similar to the kinds of data shapes that we would build for a doctor . And so all of the tooling that we build is very, very cross-applicable. And that's the way that most labs have been scaling out their data quite horizontally. And so for that reason, we are finding that the lab's tend to prefer partnering with a very horizontally capable vendor that is able to flex across all of the different verticals and scale extremely quickly rather than working with a hundred different vendors that they have to train for the same data shape in a hundred different domains. Aaron Powell Do you think we'll go through a period of consolidation? Because there are a huge amount of them where you'll actually end up buying the medical data provider because it's a really important part medical data. Do you think you will have that period of consolidation? Aaron Powell I think there will. I think in most markets when the markets are so frothy and anyone can get funding and run negative margins, of course there's going to be this proliferation of companies that pop up . And when markets come back to earth and there are natural corrections, that's when there's periods of consolidation. And so we view having over 500 million in cash and a super profitable business as Aaron Powell You're profitable today. Very profitable. How long have you been profitable for? We've never really burnt cash. We burnt a half a million dollars after our seed round. And then from there, we've pretty much been profitable ever since. We have more cash than we've ever raised. And it's just because the business has grown so quickly that we obviously try to redeploy capital as fast as we can to invest in growth, but yeah, the business has grown so fast that we haven't been able to redeploy capital commensurate with that. Trevor Burrus Can I ask you Mythbuster one , which is um after we had Adarsha on the show, I think first time, people were like, oh the revenue's not real revenue, it's like GMV. When we understand your revenue and what's the revenue today? I can't show the exact revenue number, but it's, you know, dramatically higher than whatever's been posted publicly. Let's give a ballpark just 'cause my simple numbers that is genuinely I'm not like a billion. Just it's an easy number. But yeah. Okay. Let's say a billion 'cause it's easy for my brain. So we have a billion. Is that like sales for Airbnb and then they get 20% of that? So the revenue is between a 30 and 40 percent gross margin, but the key distinction and why it's not GMV, but is revenue, is that the experts are actually only one part of the broader value chain that we deliver to customers. So when a customer comes to us, they're generally buying tasks where they would say, hey, they'll pay $1,000 for this task that delivers model improvement. And then we do the end-to-end process associated with how do we find the experts, how do we hire the experts, how do we build the platform that the experts work on so the experts can do the work? How do we have our AI project manager manage the experts to automate all the coordination of helping to produce this data? How do we have automated quality checks, et cetera, to produce the end product of the task that we're delivering for a customer. And so that's the large distinction of how we're powered by a talent network in the same way that Uber is powered by a driver network, but that's not the end product in the same way as some of those marketplace businesses. What's so interesting for me, and you can tell me if this is bullshit or not, is like you've seen the evolution of this business from like, hey, we provide raw data back to the largest models in the world, like was like how it started. And now it's like end to end. We provide it fully and then we send it to you. We make sure everything's ready and it's full stack. Exactly. Very vertically integrated. Well, because so many parts of the downstream signal and form the upstream signal, right? Like we can use the quality checks on how high calibers each of the individual data points to understand exactly what are the types of experts that we should be onboarding to achieve the data that drives the most model improvement. And there's oftentimes this very power law nature of data that drives model improvement in that out of a data set of 10,000 tasks, the top 2,000 tasks will create majority of the value. And so it allows vendors that are extremely high quality to be super differentiated in so far as pricing power, because quality is the X factor that becomes dramatically more valuable than any other dimension A.aron Powell What toss is super high value? Is it like the medical, the financial modeling style? Aaron Powell It corresponds extremely closely to economic value. So think if you go through the top five domains that we serve, it would be software engineering, it would be finance, medicine, law, consulting, et cetera, and the super long horizon tasks within those. And so I think we're moving away from the paradigm of how do we get a investment banker to prepare a financial model and moving towards the paradigm of how do we get a banker that can talk with five different colleagues and wait to hear back their respons es and prepare an entire slide deck with a deliverable that includes the financial model, the analysis in a multi-week-long project. Those are the kinds of tasks that we need to be building to push the frontier of research and evaluation so that those are the capabilities that people are able to use in the models in six to twelve months. Can I ask which segment are we underserved in? Aaron Powell In terms of model capabilities? Aaron Powell In terms of like we don't have enough medical data, we don't have enough financial modeling data, we don't have a is there a segment where like, you know what, if we were to require a company in this space to plug a hole in our data supply? Well, I would say uh maybe I'll I'll give it from Mercore's perspective and then I'll give it from the lab's perspective. Like we tend to be now so good at mobilizing experts that we're able to access pretty much any domain . There's always going to be some degree of like these niche pockets of oncologists or whatever it is that have a particular background. But gener generally we can fill those fairly quickly. And it it's more about people that actually are very acclimated to the frontier of AI because it's the people that both have the expertise in oncology, but also are power users of ChatGPT or Claude that are able to find where the model makes mistakes and help the model learn from those mistakes. And so that's from the Mercur perspective. From the perspective of the labs, it seems like it's all-encompassing. It's just like the barrier to automating everything that you can do in, say, Google workspace is how do we cover the full distribution of all of the context, i.e. messages, slacks, slides, excel sheets, and all of the tasks, prompts, and outputs that correspond to everything that you do in your job. And that applies to every individual and every domain throughout the economy. And so there's this enormous mobilization of hundreds of thousands and soon millions of people to build out the full distribution of everything that you could pass into Google Workspace and everything that you could want out on the other side in every job category throughout the economy. Before we dive into a tweet that you did, which slightly terrified me, to be quite honest. So you said like thirty to forty percent is kind of how we think about like our revenues from that. Generally, yeah. Okay. So if we take the the rounds that we've raised, which round felt most uncomfortably high? Good question. Well, so I'll talk through the valuations of each and the revenue of each. So at our seed round. Did Phantom not fly you in the chopper? That was serious A. So our seat route was in September of 2023. We were at called a million in revenue run rate, or just shy of that. And I initially didn't want to raise because I wanted to bootstrap the company, but Adarshan Surya's condition on dropping out was that we needed to raise money. And so we met General Catalyst 8 a.m. on a Sunday morning. They gave us a term sheet within 36 hours for $2.3 million dollars at a $23 million dollar post money valuation. So that was that was pretty reasonable in so far as price was attacked. This was Max and Nico. And then at our series A, we the business had didn't grow that much from the seed to the series A, but we found the market was a key differentiation. And we met Victor when we were at called one and a half million in revenue run rate in May of 2024. And Victor got super excited . Initially, I refused to take a second meeting, but then he said, Oh, have you ever been in a helicopter? And so Peter took us on the helicopter flight. And Benchmark really wanted to work with us. And so by the time that they gave us a term, sheet, we were at call it $2.5 million in revenue, and they gave us $250 million post money valuation. Aaron Powell Did that feel uncomfortable? Because that's a big jump. Aaron Powell So keep in mind at the time, this sounds crazy because we were at two point five million in revenue, but I was projecting fifty million in revenue run rate by the end of the year and five hundred million by the end of next year. So it felt like a bargain. Or take investor meetings. And so Lisa sent us an email saying, hey, we know your co-founder Surya really likes Ferraris. So do you want to go racing Ferraris with us? Then I replied and I said, You caught my eye, tell tell me more. And they said, we'll meet at the airport in Hayward and go on Aydon's private jet to Las Vegas to race Ferraris around the F-1 track. And so I was like, we're available in three weeks on a Sunday. And so we do this. We raise Ferraris. We're at 20 million in revenue. They ask us what valuation do we think makes most sense? And I say one to two billion dollars. So they give us a term sheet at a two billion dollar valuation. And at the time, you know, that's a hundred times revenue. And everyone thinks that that's a high valuation. Meanwhile, it was an incredible investment. So I'm gonna be honest, this is when I interviewed Adosh at that time. And at the end I was like, dude, I I would love to invest. Please let me invest. And and you very kindly let me put a small check in. And I then spoke to several of the biggest investors in the world. And no offense. They like chuckled at me like, dude, that's such a high price. You you it's such a high price. Well, so here's the thing is we'd been growing fifty percent month over month for the prior six months, and I think what none of them really realized was that it would continue for the subsequent, you know, twelve plus months. Yeah. And so then that compounded more and more by September of 2025, or say October, we were at call 400 million in revenue run rate. And then Felis as was like, we want to invest more. And so they gave us a term sheet at a $1 billion valuation. We didn't really want to spend much time on a financing because the business was growing 50 percent month over month. And so we were very preoccupied. And so that was about 25 times. And you know, the business has almost four X since then. So review, which one felt most uncomfortable. If I had to choose any, the series B priced in the most, like the furthest ahead of our growth, or that or the series A, I think it was probably the series B, because both were a hundred times revenue, but it's very different to be a hundred times revenue when you're at two point five million in revenue versus twenty million in revenue. So that was probably the largest one. But obviously both were great investments in hindsight. Aaron Powell What is the next round done? We'll see. Probably a much higher valuation. We're getting a lot of offers at meaningfully higher valuations, but the company is fairly profitable, and so we're taking our time to see who the right partner is. We're also just going through modes of transport, aren't we? We had the chopper , we had the Ferraris, we've had to get the series D I I totally agree. I've never been on a warship before, but that's that's a lot of fun. There you go. So I line up the warship. The next twelve months will be dramatically better for infrastructure companies upstream of Anthropic and OpenAI than for application layer companies downstream of them. This was your tweet. Why do you believe that? Aaron Powell The reason I believe that is that the application layer companies' businesses are not far removed from the foundation model company's businesses. Like it is not a far leap for Claude Cowork to add capabilities across medical and legal. Obviously, they did it with software engineering and can do that across finance. And so I feel like building defensibility in the software layer on top of the models is going to be incredibly difficult. Whereas on the other side of things, in the infrastructure side, it feels like there are meaningful modes that are getting built. Like we're compounding enormous network effects in the business and a pretty significant data moat as we build out the inventory for our customers. Compute companies obviously are able to build motes through these very long RD cycles. And so I think that there are going to be high margins that get achieved at the infrastructure layer and sort of sustainable, profitable businesses in a way that it's less immediately clear at the application layer. Aaron Powell I mean you saw Nebius. I don't know if they increase their pricing by thirty percent across support. Wow. Which uh will have absolutely no impact on demand. Isn't that absolutely nuts? So you increase price by thirty percent, zero impact on demand. It's probably the same for us, honestly. Like we have the demand to double overnight. We just don't have the capacity. And so it's mainly a question of how effectively can we scale to mobilize people to build out these environments much more quickly. Aaron Powell Do you do pricing elasticity tests? Because if you can double price and double the business, we maybe can't double prices. We could double capacity . We could probably increase prices by thirty percent without much of an impact. But the other thing you need to consider is that pricing is not merely a question of optimizing for the next six months. It's optimizing for a structure that wins the market over the next decade. For that reason, we're very focused on how do we do what's best for customers, how do we do what's best for experts, and how do we build a sustainable business while we're doing it, but make sure that we're not leaving oxygen in the market because high margins and bike competition.. Okay I am an investor in several application layer companies downstream, like a Lagora, which you mentioned there. You know, we we see the Lagora versus Harvey battle. I think everyone actually is coming around to the fact that they shouldn't fight each other, they should be wary of Anthropic, to your point. Totally. But then I look at it and go, there is incredible defensibility. It's a very deep product, specifically suited to the workflows of lawyers. Anthropic would have to build out whole separate product teams, divisions to come after them, they'd have to build out GTM teams, customer success teams, uh adoption teams. It's a different frickin' company. The defence ability is there. Argue back. Aaron Powell Maybe I would say two things. First is that I think over the last two years, everyone has increasingly realized that the model is the product. That like we can build so many of these different abstractions of trying to stitch together API calls and having all this like patchwork logic where people used to have all these drag and drop agent builders. And then they just realized that like if we give the model the end goal and we train it to accomplish that end goal, it has outperformed every other solution in almost every case that we go after. That bodes incredibly well for those that are training models end-to-end. The second thing to consider is that software layers are able to get recreated very quickly now. Like we're building out an eval set that measures how effectively agents can build end-to-end SaaS applications. Where 2025 was the year of how do you get a model to make a PR in a code base? And 2026 is the year of how do you get the model to clone Slack end-to-end? Those capabilities are going to exist in the models in the next 12 months. That means very significant things for companies that are betting on software mode sustaining their businesses. Aaron Powell If we take that extrapolated further, how effectively can we build Slack internally agent-led entirely? That would very much concur with the SaaS is dead, because if you're a large company needing maybe small customizations, integrations, say you're a real estate company and you need very specific integrations to pricing providers, you'd build your own. I generally agree. I think that the caveat is when those companies have network effects, there's probably a significant moat that isn't being priced in fully. For example, Salesforce has tons of companies that are building integrations on top of their platform that creates this almost marketplace and network effect around it, or Slack has Slack Connect, right? And I think even CART is another great example of this whole network effect of the people that use it and want to use the same platform across all of their companies. I think that the companies that have network effects will be able to in some ways generate more value because they can iterate 10 times faster while leveraging those network effects to create more value for their customers and therefore build more valuable products, charge more money, et cetera, and increase revenue. The companies that don't have network effects are going to struggle very significantly, because then there's not really a defensible moat in the pure software associated with the products that they build. And so to me, that is the litmus test that determines whether this company is going to become worthless or whether this company is going to gain dramatic value from their ability to 10x product velocity? Aaron Powell You said we're learning more and more that the models are the product. What if I push back and say the go-to-market is the product? When you're selling to law firms , it's about being in the room with you name your biggest law firms, your Coolies, your Goodwins, your Wyden case, your Clifford Chance, building the relationship with the buyer, and then the CS and the adoption. And it's actually in the go-to-market, not in the product. Aaron Powell So I agree with this in part, but the caveat I would give is I think it's arguably more the forward deployed motion rather than the go-to-market. And forward deployed motion being the post-sales, go-to-market being the pre-sales. Because ultimately, say you're just really good at sales, and then you provide a SaaS product, and you have a savvy customer who's spending a million dollars a year on the SaaS product, and they realize they could just like tell Claude to copy it and they'll get the same exact thing, it feels very difficult to maintain your pricing power, even if you're the best in the world at sales. Whereas on the other hand, if you have a great forward-deployed motion, where you're going deep with a customer, you're training the agents based on all of this tacit knowledge within the company so that it understands how to perform effectively. That feels incredibly differentiated and hard to recreate. And that's also the reason that we see obviously the labs OpenAI and Anthropic investing so much in this for deployed motion. And so I think that the Sequoia article that services are the new software resonated a lot, and that these software modes are whittling away, and it's the ability to layer services on top of software to meet the customer where they're at and go the last mile that is creating stronger defensibility. Do you buy this new sexy category of venture invest ors are wonderful people, but like this new sexy category that like AI-enabled services is like the future gold mine. I think in a large way I do. You do. I think the key thing is that you need to make sure that they're actually going to leverage AI. Like I think there are a lot of companies that are just like building services and not gaining a significant competitive advantage from AI and using that to that's the thing you've got to be careful about. But I think it's very rational. Like I'll give an example in the context of Mercore, which is that within this process of turning human time from the talent network into building these super rich environments that mirror everything that people could do in their jobs, there is a lot of human coordination of how do we answer people's questions, how do we track the KPIs of the project and manage it effectively? How do we build the bespoke tooling for that project. And we have about 100 people, or call it 150 people in our delivery organization that do that for deployed work of helping to go the last mile for the customer. But now we have an AI project manager that just completed its first project managing that entire thing end-to-end, where it's able to hire the experts, it's able to answer their questions, it's able to build the annotation tool using its coding tools with in our platform and produce the end data type. And the experts all had a really good experience on the project reporting to the AI project manager that was running it. And so I think we're seeing in real time that services are getting automated, and that that is going to be this extraordinary transformation in the economy. Aaron Powell One thing that powers obviously the agents that we use is the tokens that power them. And I thought the whole point was that we have increased token efficiency and token costs come down. Token costs are rising for everyone. Help me understand how you see token costs changing in the next six to eighteen months and why that is. Trevor Burrus Well, it's a fascinating case study in Chavon's paradox, similar to what we were talking about in the context of making humans more efficient, leading to more jobs, right? When we make models improve by 10x year over year, that has just been causing the total consumption of the models to go up and up and up as the costs per performance go down. I think insofar as how it's going to develop, is that this trend is going to continue very, very significantly before we start seeing any leveling off of token consumption within the enterprise. Like right now, we're spending more on tokens for our internal agents than we are on employee headcount. And I think most businesses are gonna look like that in the spending more on tokens for agents than you are on headcount. Exactly. That's correct. It's pretty incredible. And so the way we manage it is that we have a variety of these key workflows throughout the company where we have an AI project manager, as I was describing, that manages operations. We have our interview question agent that where we've done over five million interviews and asked all the questions in the interviews. We have our interview ranking or the broader candidate ranking, where it helps to assess all of the candidates and figure out who we should be hiring. We have agents for accounting automation. We have agents for fraud detection , et cetera. And corresponding to each of these agents, we have an eval that tells us which model is best to use for this given use case and what is the Preto frontier of price performance for that specific use case. And that eval allows us to make the decisions around where should we be allocating our inference spend, what provider should we be using, et cetera. And I believe that over time this is going to develop to look very similar across every Fortune 500, where they'll need to have this system of record for evaluating and specifying agent behavior across every workflow in their business. And they're going to use that to commoditize the model layer because they want to enable perfect competition for the models having zero switching costs. And so we've been growing extremely quickly with the enterprise and helping them to populate the system of record and building out those evals for each of the use cases that they have throughout their business. Do you think you will see that commoditization at the model layer whereby enterprise clients are able to really efficiently package the workflows that they do so it does commoditize the model layer? Because right now it's not commoditized quite. Yeah. So I think the key distinction is that I think the API layer will get commoditized. You can definitely build stickiness and workflows that people have on top of those APIs. Like, for example, I have all of these routines running in cloud code. And I feel like it would probably be difficult, or I at least wouldn't put in the time to move those routines over, and I have a bunch of similar things running in ChatGPT. So I think that there's going to be various ways that people can build stickiness. But for pure API-based products, where it's like if we are just spending $10 million a year on a specific workflow, obviously we're going to have an eval for that. And every time a new model comes out, we're going to benchmark that and understand exactly how we should be hot swapping between models and distilling models. Aaron Powell Why does the API layer get commoditized? Aaron Powell Because the switching costs are zero. Like when the switching costs are zero, there's a new frontier model every two months. That means that we very quickly are going to swap them out, right? And ultimately the decisions that we make boil down to the score on the eval corresponding to that workflow. And so it's very easy to compare model to model one for one in a perfectly like hot swappable way, which is almost the definition of a commodity. I'm still reeling from your tokens band with agents more than headcount. Because actually uh Mark Banningoff said the other day that they spent 300 million on anthropic, which seemed like a lot of money. But actually when you baked it down, it worked out to be about 3.8% of developer salaries is being spent on anthropic , which actually is much less than one would think. What do you think that is in twenty-four months time? For a sales force? Yeah. I don't know about twenty-four months time, but I would bet that in five years, the average enterprise spend s more on compute than headcount. The reason for that is that the models are just becoming so capable that it seems like there's just enormous ROI to being able to have models do something for a hundred K a year that is going to continue compounding at an exponential rate in a way that human intelligence is not going to. And so humans will still play an important role at the things models can't do, but I expect that cost of inference, cost of compute will exceed that. The reason that that's so interesting to me is that having an eval for your specific workflow, like say we take the case of Salesforce, having an eval for how good is a specific model at code generation in their use case is often a 10x lever on the price performance of that model. Because they can distill the model, they can have an open source model that is performing as well, if not better, for a dramatically lower cost. And so as we see this enormous shift towards compute and significant inference spend across every workflow in the enterprise , they are going to need to have evals that act as a source of truth for whether those workflows are being done correctly and whether they're using the right models to accomplish that. With the greatest of respect, are evals today not relatively unhelpful. It's like, you know, how good are you at you know driving around the corner for the driving test in a very specific way, but actually that's not how it works in the real world. And it's actually not very practical. That's exactly the problem, right? Is that we used to have this paradigm of all of the academic benchmarks that we're totally disconnected from the outcomes that enterprises actually care about, where people were building everything ranging from GPQA for PhD level reasoning , to IMO for Olympiad Math, to humanities last exam for this long tail of academic problems no one really cares about. And now they're focused on how do we get the model to do this end-to-end workflow, coordinating with multiple colleagues for a financial model or a slide deck like we were discussing. How do we get the model to build an entire SaaS application end-to-end? That's why there's this enormous build-out in pushing the frontier of evaluation as a critical research problem for the next frontier of model development. Aaron Powell Okay. Next frontier of model development. If I listen to everything that you just said, I would draw two conclusions. One, shit, we should just invest all of our money into open AI and anthropic. And then the realization dawned on me that the majority of startups, and you can shoot me down, again, shoot me down, is the majority of startups today, especially on the West Coast, use frontier models to see where they can go and how far they can push them. And then they use open source, often Chinese models to get as close to that as possible at a much better cost basis. In which case, open air and anthropic are inherently chall enged by that much more cost-efficient open source model, right or wrong? Aaron Powell I think both are true. Like there's going to be many orders of magnitude more demand in five years than there are today, maybe four or five orders of magnitude, more demand. But there's also going to be increased competition with people just distilling and having fine-tuned open source models that accomplish their workflows. Ultimately, I think OpenAI and Anthropic are incredible investments. And it seems like there's starting to be consensus around that in a way that there wasn't just a couple of years ago. But at the same time, I think that majority of inference in five years is going to be using a open source or custom fine tuned or distilled model, not using a frontier model. Okay. Interesting. You said they're obviously incredible investments. Where will they be in five years time. Valuation wise, revenue wise. If we put them both at a trillion today, give or take. Yeah. This is hard to imagine. This is one I'll play back to in five years' time. And we'll both look back and go, oh either we were very pressing or just completely wrong. I could definitely see one of them being a ten trillion dollar company, maybe even significantly higher. It feels like the opportunity associated with being the frontier model is so large. It will just like eat up so much of the other demand within the economy. Cause that also means that when you have the frontier model, you can use that as a teacher model to distill your own models, to have the best small models, et cetera. So I would guess at least one of them is worth more than ten trillion dollars. Aaron Powell My next assumption was when you talk about orders of magnitude more, when you talk about spending more on compute than you will on salaries, why don't we just put all of our money in NVIDIA? Aaron Powell I think it's not a crazy idea. NVIDIA is obviously a phenomenal business that will continue to execute super well. The only caveat is that it feels like we're starting to move towards a multi-chip future where obviously Cerebrus is executing well. I'm good friends with the etch guys. Most of the labs are building in-house chips. And so I would guess that in five years, it doesn't feel like NVIDIA has quite the same monopoly. But that's okay. Because even if they only have 30 or 40 percent market share in the largest market in the world by far, that is the world's most valuable company. Aaron Powell Speaking of the world's most valuable company, you're seeing this concentration of value towards like the top eight names. More than ever before, 84% of the year to date rally was driven by the top ten names. Do you worry about the concentration of value to such a small number of players? Aaron Powell Maybe to some extent. I definitely worry about how do we smooth out the benefits to society? Like how do we ensure that every enterprise and every individual is able to reap the full benefits of AI rather than just like a handful of people in San Francisco. But ultimately, I also think that there is some natural dynamic associated with capital allocation where it is going to be more valuable to give the compute to an anthropic where they have the marginal demand and can use that right away versus a less successful company that might not be able to create the most val ue with that. So I think that it's probably good from a capital allocation and efficiency standpoint, so long as we are able to manage the societal implications of increasing inequality. Speaking of increasing inequality, you wrote an essay about and this is taking from your Twitter, how we should eliminate income tax for the bottom half of Americans. Talk to me about that. Aaron Powell Well I believe this very strongly. I actually wrote this essay when as a research paper was when I a freshman in college. It was one of the few productive things I did in college. And essentially the thesis of this was that the largest positive externality in the economy is jobs. People talk about all these like economic theory of how we have negative externalities like carbon or like smoking or whatever it is, we should tax those. But on one hand, the largest positive externality is jobs. Yet on the other hand, the way that most economies structurally collect income is by disincentivizing jobs, both on the income tax side by taxing the individuals, as well as on the payroll tax side of taxing the companies. And as we move towards a world where there's increased job displacement, increased uncertainty around how many jobs are there going to be, especially for the bottom half of Americans, I think that this is going to become extremely problematic. And so I would suggest that we move towards a paradigm where we instead focus on taxes of things that aren't necessarily going to have a negative impact on incentives in the economy. Like one great example is capital gains where like I'm going to invest money in assets regardless. And so if there is like higher capital gains tax, it's not like I'm just going to like not invest, right? And so I think that taxing capital gains, especially short-term capital gains, which I think is probably not as beneficial for the economy as long-term capital gains, would probably be structurally much better off than taxing income. With the greatest of respects, if you increase the tax on capital gains, you will disincentivize those investors to take risk. Why the fuck should I pay more? I'm already taking a risk. I'm already investing in innovation when other people won't, when banks won't, when all the data tells me not. Now you want to tax me more for doing that, for taking the risk. Of course you will disincentivize investment. The thing is when investors are taking very high risks , it's generally in an aggregated way in a portfolio. And so you would tax the gains on the portfolio overall. And so even if you have a portfolio of like and I I know that you don't like to hear the capital gains tax, Harry, but Trevor Burrus No, no, no, no, no. I I think I and I say this with the nicest respect. It's just wrong. Like cause you just move. Aaron Powell I agree that you need the main thing you need to be careful about is if people would move. But I think like capital gains is one option. I think dude, and you can say uh with withdrawal. Like that creates problems. Yeah, that's kind of the whole point. You fuck off to somewhere that doesn't have capital gains and then you lose all the tax revenue completely. I w sorry, forgive me, I we live in the U live in the UK where there's the Green Party, which there's this idealist movement I I agree. I think that there needs to be sensitivity analyses associated with how does the increased amount of taxation, cause people to just leave and reduce overall government revenue. But I think that another way of going about it is also taxing consumption of items that probably aren't the best. Like it's crazy to me that instead of taxing carbon, we tax the bottom half of Amer icans. Like, but we why don't we tax carbon, right? That's like a very clear negative externality in the economy, at least in the U.S., that's not taxed. And so I feel like there is a lot of low-hanging fruit with respect to things that we could tax without damaging incentives in a perverse way or causing people to flee the country that would be far better than taxing the bottom half of Americans. And the other thing is that it's only three percent of government revenue. Like the fact that it's only three percent feels like it's a very easy decision for policymakers to make in the grand scheme of the impact that it would have on people. Aaron Powell Would you tax prediction market places? It's it's gambling. probably would. There's probably some value of having good prediction marketplaces for allowing people to have effective predictions of the future and hedge things within their lives and investment portfolios, but it's likely okay to tax. The thing on that point around taxing the bottom 50 percent is Jeff Bezos retweeted me, which I was ecstatic about. Who's the coolest person you've met? I really like Jensen and I really like Satya. I mean, so many incredible people. Obviously, Dario and Sam are incredible. But if I had to choose one person, I mean Jensen's so cool, right? Like the jacket, his style, he's always on point. So I would say Jensen is probably one of the coolest. The fascinating one I would love to ask you, and and you shouldn't give the answer to this, but I I think this and people have asked it from me before it's very hard to answer, is who did you think would be amazing who was surprisingly underwhelming? And don't answer that one. I can answer that one. But it's a really good one. It is an interesting question. Yeah I have met a couple where you were like, wow, that gives me confidence that I can do that too. You know, actually I will I will say this one thing, which is that I remember when I went to like Georgetown. I didn't get into Harvard, and I was like, wow , you know, the people at Harvard are probably dramatically smarter than me. And I went to this nonprofit called prod , where it was a bunch of kids from like Harvard and MIT that were all building startups. And like they're very smart, don't get me wrong. But I do think that most of us have this very like equalizing feeling that like majority of people that accomplish extraordinary things, when you spend more time with them, you realize that they're sort of just a normal person to a significant not all of them, but most of them to a significant extent. And I think that makes you feel like like when I saw Ethan Thornton from Mock raising 70 million dollars as a nineteen year old. I'm like, wait, Ethan is like a chill guy and a good friend and like maybe I could do something like that one day. It just gives you the sense of being able to accomplish so much more. It's so interesting you said that that kind of dispersion effect from seeing your friends achieve. And I think it's one thing that's held Europe back in many ways. You work with some of the largest model providers in the world. How do you feel about Europe's inability to compete slash provide leading models to the world. Like when you look at the benchmarks, I mean Mr. Al might make an entry at, you know, 72, it's like the Eurovision Song Contest kind of at the bottom. I I love Arthur, I love Mr. I'm very proud of it as Europe . But shit, we haven't delivered on the model side. Yeah. Does Europe improve that? Does that matter? I think that it's gonna be difficult to change because there's just so many strong network effects around talent, right? When we have the best talent. Even I knew so many brilliant French researchers that go to work at OpenAI, Anthropic, and DeepMind, right? Because when we have the best talent at those labs, that's where they all aggregate. And then that compounds to them having more capital, more compute, more impact, et cetera. And so I expect that trend to continue and to be one of the largest, not only economic but geopolitical advantages that the US has. So if you're Europe today, do you just go, you know what, sod it, we've lost that model race. But we can still be a dominant energy provider. If you're Norway where I'm from, actually we do we do pretty well on Norway providing energy. Is that what do we just accept that I would accept that. Yeah. I think that maybe it's worth having some post-training capabilities, because there is going to be value to distillation and some of the work that happens after foundation models are built, and there's definitely gonna be some value in applications, but I don't know if I would lean aggressively into how do we compete head-to-head with anthropic. Trevor Burrus, Do you buy the sovereignty argument of we need sovereign models because we don't want our data going to US or China or wherever that is. Maybe in some cases, like there is value in localization. And I'll give an example, which is that oftentimes labs will come to us and say they need their models not just to be good at American law, but also to be good at British law or good at French law or whatever the jurisdiction is in the world. I think that that is going to be an important last mile in making the models useful in whatever jurisdiction that they're operating in. That said, the labs are just gonna hire 10,000 people in France to teach the models how to be better at French law. And I don't think that there's so much that others are going to be able to do to stop that because the transfer learning capabilities from all of the other domains that they're focusing on are just so powerful. Trevor Burrus And when you say about hiring 10,000 people, the thing that's just astonishing me is the the wave of cash. Uh for me, I'm sure open AI is the same, but I've seen it specifically with Anthropic. I mean insane levels of comp. Totally. How do you compete against that? It's definitely one of the things that's most top of mind, in particular because the markets for people founding companies are so hot, where like we've had three employees that have founded companies worth in excess of $100 million. Trevor Burrus I saw your tweets where you do the McCall Mafia tweets. Exactly. And we're a very young company, right? And I think that it's difficult for a variety of reasons. A lot of people probably don't have a full understanding of just how hard it is to build a company, as you know well, Harry, and how low the probability of success is and how fortunate we were and how lucky we got along the way. And so I think that that's definitely one of the large challenges. And even like there was someone I was hiring the other day and he had an offer for twenty million dollars in cash per year from T B D. And like that's the kind of stuff we run into on a regular basis. Aaron Powell That's hard to compete against. It's hard to compete against, yeah. Does that change? Does that just continue to escalate? Aaron Powell It'll probably continue to escalate for a smaller group of people. But I also suspect that as more people gain knowledge of how these labs operate and what the capabilities of how to train a frontier model, that means that there's going to be more supply in the market for people that have that skill set and and thus a little bit more reasonable pricing. And so I expect there to be some craziness that continues, but hopefully sort of the ninety-ninth percentile at least within the market will bounce itself out. What is the hardest role to hire for today? Researchers? Just because of supply? Aaron Powell Because of supply and demand , it's just this market where there's 10 times more demand than there is supply, and that makes it very difficult. We've been building out an incredibly strong research team, like Edward Who, the first author on Laura, who was previously at OpenAI, is working with us and a bunch of other top researchers, but the market is definitely getting very hot. Aaron Powell How much does it cost to hire a high quality AI researcher? Aaron Ross Powell Oftentimes it would be in the tens of millions of stock per year. For the really good people, yeah. I remember when researchers weren't paid very much. Yeah. Now I feel like that's relatively changed. Yeah. Is it harder than ever to run the company? Aaron Powell I don't think so. Like to give a frame of reference, we were forty people and fifty million in revenue run rate last year, at the start of last year. Since then we've seven or eight X head count and we've increased the broader scale of the business by, you know, twenty-five, thirty X. It's definitely been very stressful to keep up with the growth along the way. But I think that now we have the supporting functions. Like we have HR, or not really HR, but we have finance and we have legal and we're building out HR. And that brings some sense of stability where I don't have to deal with all of these little escalations and I'm able to just spend my time focusing on building great products, research, and time with customers. And that I think has made it easier, significantly easier to run the business. I get in a lot of shit for everything I say these days, which is wonderful. My team just go, oh no, Harry The trouble is I don't deliberately rage bait, but people just hate me. Which is the worst thing. But uh HR. I tweeted after a show with Adam at Ab Lovin. No great CEO that I've met, and it's true, loves HR. They slow you down, they impl ement policy and procedure and it's just a pain. Do you agree with me? Aaron Powell The caveat I'll give is that I think it's really important. Like we definitely had challenges in scaling culture when we went from 40 people to 400 people. How does that show up? Well, it's so many things, ranging from making sure that we keep a really high talent bar to making sure that people are bought into the mission of the company to even the tactical things of making sure that managers are communicating to their team about their performance review and how they're doing so that they're never surprised by a performance review. And when we have a young team with a lot of first-time managers, that just creates culture challenges of people that aren't used to giving feedback and maintaining all of the values and commitment to the mission of the team. And so I think that to some extent, I agree. And I think that some of the big tech companies probably go too far on empowering HR. But I also think that it's important, and one of the large lessons we've had over the last 18 months or so is that it's critical to really get these foundations in place as you scale head count. Otherwise, it creates problems. Culture challenges. Before the show, we said that after the show with the Dosh, a couple of people thought that like 996 was the way that like McCor is run. And it's like clock in, clock out. Why is that not true? And how do you think about that? So the reason it's not true is that we've never mandated hours at the company. And obviously I work extremely hard. A lot of a Darsh works extremely hard. We work from when we wake up until we sleep pretty much all the time, aside from like maybe working out. But I'm still working thinking about work during that time. Most of our leadership team, of course, does as well. But at the same time, majority of my leadership team has kids and we want them to be able to like go home and see their families and all of that. And so I think that it's some combination of knowing that building a legendary company requires immense dedication to the mission of the business while also recognizing we need to ensure that it's a sustainable environment for the best people in the world to do their life's work. Are you ready for a quick fire round? Of course. Would you like to go public? Definitely. When? In the next few years. I think that all legendary companies eventually go public. And so it's an important part of the journey and maturing and having a much larger company than we have today, but it's not something we're rushing to do this year or next year, in part because we dropped out of college less than three years ago at this point. And it's still a very young business where we want to make sure that we properly actualize everything that we're working on on the enterprise side especially before going public. Aaron Powell Don't laugh. Do you ever like lie in bed at night and just go like wow, pretty wild. I'm always pinching myself. And I feel extremely grateful for the team and Adarsh and Surya and how all of them made it possible because I could have imagined a hundred things that would have gone differently and we'd be in a totally different circumstance. Aaron Powell What have you changed your mind on in the last 12 months? What have I changed my mind on? I used to have some questions around whether the foundation model labs would be the largest businesses in the world because of the exact things you asked about in the context of how much those models are going to be able to maintain pricing power amidst a competitive environment. But I think that as we've seen the sheer revenue ramp of these businesses, I've gained immense conviction that they will be the most valuable companies in the world. Aaron Powell You can invest in open AI or Anthropic. Which one? Aaron Powell Oh, I can't respond to that. I would choose that. Who do you not have as an investor in the company yet that you would most like to have. Aaron Ross Powell I really admire Jeff Bezos. I think he's so disciplined about the culture of Amazon. That's one of the things that's always stuck with me. Everyone there just understands the values and is steering in the same direction as such a strategic business leader. I've never met him, but I've always wanted to. Aaron Powell Which competitor do you most respect and why? Aaron Powell Good question. I re'm su that Edwin from Surge has done a really good job in staying super close to research. And it's something that we've obviously been doing a lot of as well. But I think that's probably one of the largest things that differentiates both us and Surge is our ability to train models to hire some of the best researchers in the world, and I admire them for execution on that front. Aaron Powell What percent of data providers are just respectfully transactional talent marketplaces. In terms of volume or number of competitors? Number of competitors. About half. Half. Yeah. I'd love that. Uh what would you most like to change about your role today? I would say that there's a decent amount of HR things that get escalated to me. And so we're looking for a really strong head of people that is able to handle a lot of this. Final one for you, dude. What's the kindest thing that anyone's ever done for you? One that really stuck with me is I remember and I'll probably attribute this to the entire prod community, namely, especially a couple of people like Rob Watkin, Ben Spector, and Richard DeHon. But Praud was this nonprofit that got started at MIT in Harvard, and I was sort of a blow-in because I didn't get into those schools, but I went to Georgetown. And for the first year of the business, like they would meet with us every week. Ben became a big customer. Richard would give us like tons of money just as to float working capital. And Rob gave incredibly valuable advice. And they had nothing in it for them. They took no equity. I tried to give them equity and they they wouldn't accept it. And Mer core wouldn't exist if it weren't for any of those individuals, I would say. I think that that is something that I'll always be grateful for for the rest of my life. Dude, I have to say I loved having you on the show last time. It was incredible to do this in person. I'm so thrilled with how this conversation went and you've been amazing. Thanks so much for having me, Harry. Always great to come back . But before we leave you today, did you know the industry average for booking a business trip is 45 minutes? That's a massive waste of your team's time. Well, with Navan, your employees can book a trip in just seven on average. Nivan is the AI powered travel and expense platform designed for companies that value efficiency. It drives real business impact through high employee adoption and automated policy control. 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