TBPN Live - 🔴 Alex Karp LIVE from AIPCon 10 | Alex Karp, Peter Zaffino, Chad Wahlquist, Sam Berry

Episode Date: June 4, 2026

(00:00) - - Live from Palantir's AIPCon 10 (12:38) - - Ramp raises $750M at $44B valuation (15:19) - - Timeline reactions (23:57) - - Alex Karp, co-founder and CEO of Palantir Technologies..., discusses the evolution of artificial intelligence (AI) adoption, noting a shift from skepticism to widespread recognition of its value, while cautioning against unproductive overuse. He emphasizes the importance of taste and discernment in effectively integrating AI into business processes, highlighting that successful implementation requires more than just technical capability. Karp also warns of potential nationalization and regulation of AI technologies by governments, urging proactive engagement to address these challenges. (48:04) - - Peter Zaffino, born in 1967, is the Chairman and CEO of American International Group (AIG), having joined the company in 2017 as Executive Vice President and Global Chief Operating Officer. In the conversation, Zaffino discusses AIG's global operations, emphasizing its balanced international and North American presence, and highlights the company's focus on managing complex risks for large clients. He also elaborates on AIG's partnership with Palantir Technologies, detailing how their collaboration has enhanced data integration and decision-making processes within the organization. (01:01:35) - - Chad Wahlquist, a Forward Deployed Architect at Palantir Technologies, discusses his role in assisting clients to decompose complex problems and apply Palantir's technology in innovative ways. He emphasizes the importance of integrating AI with human processes to model business operations effectively, highlighting the ontology's role in providing a structured worldview that enhances decision-making. Wahlquist also addresses the balance between software malleability and enterprise-grade robustness, advocating for adaptable systems that empower users while maintaining security and scalability. (01:22:35) - - Timeline reactions (01:25:22) - - Sam Berry, a USDA employee with a background in engineering and a family history in farming, discusses the diverse roles of the USDA, including food inspections, SNAP administration, and scientific research. He highlights the importance of technological advancements in agriculture, such as automation and AI, to address challenges like workforce shortages and pest control. Berry also emphasizes the need for effective data collection and management to ensure program integrity and support national food security. TBPN is made possible by:Ramp - https://ramp.comPublic - https://public.comCisco - https://www.cisco.comConsole - https://www.console.comCrowdStrike - https://www.crowdstrike.comFigma - https://www.figma.comMongoDB - https://www.mongodb.comNYSE - https://www.nyse.comRailway - https://railway.comShopify - https://www.shopify.com/Follow TBPN: https://TBPN.comhttps://x.com/tbpnhttps://open.spotify.com/show/2L6WMqY3GUPCGBD0dX6p00?si=674252d53acf4231https://podcasts.apple.com/us/podcast/technology-brothers/id1772360235https://www.youtube.com/@TBPNLive

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Starting point is 00:00:00 You're watching TBPN. Today is Thursday, June 4th, 2026. We are live from Palantir AIPCon with the temple of technology. The fortress of finance. We will return to it. But it is also a state of mind. That's right. We are also sponsored by Ramp.
Starting point is 00:00:16 Time is money. Say both easy use corporate cards, bill pay, accounting and a whole lot more all in one place. Big news from Ramp today. Massive fundraise. We're going to cover in a little bit. But first, we've got to tuck. Oh, is it still going? I like it.
Starting point is 00:00:28 The Ramp song's back. This was early days. We really talked about ramp so much. Turned into a song. Anyway, the topic of conversation in D.C. It's still in AI world, but instead of talking about approving models before they're released today,
Starting point is 00:00:46 it's about the bio threat. Brandon Gorell wrote in the TPN newsletter today. The great houses of AI have united behind the bio threat. There's actually a lot more to that because it was a big long list of signatories from AI, but also from the bio world and biotech and even startups, we've seen former guests of the show sign on. I'm excited to bring some of those folks back on the show in the coming weeks
Starting point is 00:01:08 and hear more about this because I have this belief that as AI advanced, we got cyber because it was such a tight feedback loop, such a tight verifiable reward, reinforcement learning works really well in that context. Bio has some similar characteristics. And it was a very tangible Y2K style moment. Exactly. where there was, let's just say, powerful business strategy. Yeah, it was like, is it over?
Starting point is 00:01:33 You start thinking about the consequences of this, and you don't need to get to AGI super intelligence god. You can just have a really powerful tool that creates a new problem, and that creates full employment for Nikesh Rora over at Palo Alto Networks, who we had a chance to talk to yesterday. And he's been very fortunate in implementing the solutions to the cybersecurity threats posed by new AI systems, some of the new AI capabilities that are rolling out. But bio might be next, and so it's exciting to see that the great houses of AI are uniting behind the bio threat.
Starting point is 00:02:03 So let's take you through this. First, I'm going to tell you about console.com. Console builds AI agents that automate 70% of IT, HR, and finance support, giving employees instant resolution for access requests and password resets. So in 1981, a group of researchers published the primary structure of the polio virus genome in the journal Nature. So they were basically open sourcing the sequence for making polio, which just a few years earlier. Polio, I think, was on the decline by 1981, but a very, very problematic virus. It's an RNA virus, meaning that its nucleo bases or building blocks are ACGU, if you're familiar with RNA, adazine, cytosine, and urosil.
Starting point is 00:02:46 Put more plainly, thanks Brandon Gorell. He says, when the researchers publish the primary structure of the polio virus, they gave the world the literal sequence of polio virus building blocks in order from start to finish. By the mid-20th century, before mass vaccination, polio was paralyzing and killing more than half a million people per year worldwide. So you have this pretty deadly virus, killing more than half a million people per year worldwide, and you have just open source it. What happens? So in 2002, researchers synthesized infectious polio virus from its publicly available sequence data. So they didn't actually need any of the polio virus RNA to start.
Starting point is 00:03:22 They didn't need it on hand. It's not like they took a little sample and they just cloned it up and made it bigger. They just took the data and they made the actual virus. So this is the shape of the threat. If there's a new virus or an existing virus or a forgotten about virus and you have the code to it, you can potentially print that RNA and then have the virus in your hands, even if you don't have a sample. You weren't able to kill the sample.
Starting point is 00:03:44 So instead, these researchers in 2002, they were able to take the published sequence, chemically synthesized short DNA fragments, assemble them into a full-length DNA copy of the poliovirus genome, and then use the DNA to make the viral RNA to fully recover the infectious virus. So in 2005, researchers used these same technologies to reconstruct the Spanish flu, a virus in 1918, that killed 675,000 Americans
Starting point is 00:04:10 and had a 2 to 3% mortality rate among those infected, very, very dangerous stuff. So basically, these two reconstructed viruses showed that having a physical virus on hand was no longer necessary as source material to create viruses. All you needed was the blueprints, as long as you have the code,
Starting point is 00:04:25 literally just like taxed in a text file, a bunch of ATGU, you can go and make this as long as you have the equipment on hand, but that is getting democratized as well. And that's what this AI letter is all about. So that's a situation that we're still in today, except now that we have AI,
Starting point is 00:04:42 there are easier ways to potentially reconstruct DNA sequences that could create new viruses. So yesterday, Demis, Hassabas, Sam Altman, Dario Amadeh, Alex Wang, and dozens of other high-profile leaders across AI tech policy nucleic acid synthesis and biotech signed an open letter called In Support of Mandatory Nuclear Acid Synthesis Screening and Recordkeeping. You might have seen it on the timeline. And at first glance, Brandon here assumed, and I assumed the same thing, assumed it was another press release from a Frontier Lab claiming it had just discovered new capabilities
Starting point is 00:05:12 in one of its internal models that would ultimately lead to catastrophe. A lot of this fear-based marketing has been happening. So that was sort of the natural reaction. And that's what Brandon felt. I think some people's reaction would be, were we not doing record-keeping here already? That's a great question. And Brandon actually did answer that. But it's not just a PR stunt.
Starting point is 00:05:30 And it's not a new capability. They're not saying that the models can just create a novel virus, you know, one shot, that that is solved yet. It's not there. But they see it as something that's coming down the pipe. And this letter is not this dangerous new capability. it's more asking the U.S. government to force nucleic acid synthesis companies to screen orders for sequences of concern. So, hey, somebody just ordered this looks a lot like a virus.
Starting point is 00:05:58 Like, what are we doing here? You said that you were trying to treat cancer or you said that you were, you know, trying to make a new peptide. And all of a sudden, you're asking for polio virus or something that looks like polio virus. Like, let's dig into this. That's where they're going with that. And so they also need to verify the legitimacy of the customer. a record of what they're sending and to whom that's a crazy one that I'm sure you're like wait would they weren't keeping records they were a little bit he gets into this so he says the reason the
Starting point is 00:06:26 letter is coming out now is that the threat of nucleic acid synthesis sequences sequencing getting into the wrong hands has been enhanced by AI so anyone with an AI tool in the future could in theory if the models don't have safeguards on them could synthesize could create a sequence that then they go to a nucleic acid sequence company get printed sent it to them next is up, boom, they got a virus. Not good. There you go. So, most of the global nucleic acid synthesis industry has already signed up to do some of this. They did. They started this in 2009 with what's called the International Gene Synthesis Consortium. And roughly 80% of commercial synthesis capacity worldwide is on, is on board. But membership in the consortium.
Starting point is 00:07:06 So 20% is still just hanging out. Now we're good. 80% of nuclear weapons are safely stored. Don't ask about the other 20%. That's kind of what this letter is getting at. Because 80%, it was a good first effort. 2009. It's been 16, 17 years. There's a new reason to... Yeah, but there's a new reason to go further. Let's get that last 20%. That's what they're asking for. So membership is not a strong guarantee that they're actually screening or keeping records of their customers because it's voluntary. The 80% number is also self-reported, for example, and a bunch of other factors contribute to the relative flimsyness of the agreement. So it's not government verified.
Starting point is 00:07:47 So you can opt into this program by just saying that you're opting into it, but then even the reporting once you're opted in is voluntary. So I think the way this works is the International Gen synthesis Consortium is probably a non-profit NGO, you know, not in governmental organization. And every, all the companies, they volunteer, 80% of commercial synthesis volume has opted into this. And then this organization, the International Gene Synthesis Consortium, they say, hey, we've looked at the market and we're covering about 80% has opted into this. We're on board with 80% and the government isn't coming in and checking the records. They're not actually saying, okay, well, we have a different number because we're the government and you have you this number. Let's verify this number. It's self-reported by that organization, but there's no reason
Starting point is 00:08:32 not to trust that organization necessarily. So what else? A bunch of other factors contribute to the relative flinziness of this agreement. HHS also has guidance in place around the issue, but again, it's voluntary, meaning that the possibility of bad actors getting their hands on dangerous nucleic acid sequences, at least from American companies, still cannot be ruled out. Overall, it's good to see industry leaders signing this letter and doubly refreshing that the letter is not yet another warning of apocalyptic AI doom, which I think the public has unfortunately come to expect from announcements like this. Hopefully, the relevant legislators are paying attention and can make this happen in short order.
Starting point is 00:09:09 So I thought that was a good breakdown, and I agree with a lot of that. Andrew Curran also has some deep dive on this with some more of the signatories. He shares screenshots on all of these. And it really is everyone. Yeah, Wycombinator. Patrick Collison. DeepMind, Microsoft, Interconnect, AI, Harvard, tons of stuff. And then over in the nucleic acid synthesis industry, you have Twist Bioscience,
Starting point is 00:09:34 Anza Emerald Cloud Lab, and Kathleen McMahon from Valthos is on here. Former guest to the show. So, good news. obviously, and just an early step, this is just an open letter to the government saying, hey, we think you should, we want to support this. We think that the government should start thinking about this. The other news in the bio world. Yeah, I mean, the news is just that there's incredible momentum in biotech.
Starting point is 00:10:00 It feels like it. It feels like it. After. Momentum, but not like volume, not scale yet. Because you're looking at three trillion dollar IPOs going out this year, potentially. So much news in AI, Micron. at a trillion, every chip stock is, you know, in the hundreds of billions, trillions. This is much smaller, but...
Starting point is 00:10:20 But it's notable because biotech had been left for dead in some ways. We had a biotech investor on probably 14 months ago at this point, who said, I don't even know. I mean, just looking at the return so far, I don't know why you would invest in this asset class. But of course, every asset class kind of goes through that. kind of phase and clearly there's a lot of momentum. And they should be, you would expect that biotech would be similarly power law driven, maybe not as extreme, but if you pull out SpaceX Open AI Anthropic from capital returns. Yes, but I feel like the biotech community has a little bit more of like a culture of like base hits, doubles, triples, where they flip companies
Starting point is 00:11:04 pretty, pretty frequently. Yeah, we had that, didn't we have a guy on that it sold like three companies. We didn't have money. Yeah, two billion dollar exits. Yep. And then he joined another company and sold it for $3 billion like the next day. So anyways, you have isomorphic labs spun out of DeepMind, Coinbase, or not Coinbase, but Brian Spun out or like founded New Limit. You have retro biosciences. They just raised a new round. We're going to get Jacob on the show as well.
Starting point is 00:11:33 Altos Labs. Jeff the Chad from Amazon as this punch puts it. And then Anthropic obviously acquired coefficient. as well. But Jensen and Larry Ellison and Oracle are also doing stuff. So there's a lot of activity. It's very fun. And I hope we're going to be able to cover this a lot more in the new future. Yeah. At what point do the, at what point does like a Pfizer or Johnson and Johnson and Johnson start joining the press release economy of just coming? I'm not, I'm not saying it'd be a good thing, but coming out and saying we believe we're, you know, right at the. Because there are partnerships,
Starting point is 00:12:13 all the time that happened, and they're always just like tucked a little bit deeper in the Wall Street Journal because AI is dominating and even private credit takes the front seat to the bio-news. But there's a whole bunch of dealmaking going on. Anyway, there's other deal-making going on in FinTech. We're going to talk about ramps raised today. But first, I'm going to tell you about Railway. Railway is the all-in-one intelligent cloud provider. Use your favorite agents to deploy web app, servers, databases, and more, while Railway automatically takes care of scaling, monitoring and security. So, ramp... What's going on in Rampland? $44 billion valuation.
Starting point is 00:12:43 really, really solid traction just, you know, every 12, 18 months, sometimes much quicker. Sometimes they do two rounds in two weeks, but really solid progress. They raised $750 million at a $44 billion valuation. Last time we grew this fast, we were 120th of the size. Yeah, this is the most, this is the most notable thing to me. Lots of chatter on the timeline around, you know, other fintech valuations. You compare that. Yeah, well, yeah, you compare them to like, you know, Ramp is now worth more than PayPal.
Starting point is 00:13:17 Okay. PayPal has 32 billion of revenue. Yeah. But PayPal certainly has, I would say, you know, probably negative momentum. Yeah. Whereas Ramp has incredible momentum. And this is the standout line. They were 120th the size the last time they were growing this fast.
Starting point is 00:13:35 And so, yeah, just really, really, really, really impressive execution. Yeah. and incredible opportunity still. Yeah. So Eric took to the timeline, posted an essay about the third pillar, comparing the previous eras of value creation, the two pillars, people and vendors, dating back to 600 BCE.
Starting point is 00:14:00 If you're not thinking in millennia, what are you doing here? Tokens emerges the third pillar in 2026 AD, and he calls it the quadrillion token block. line spot, boil down 500 years of finance. And it's really just three questions. Who spent what? Was it worth it? What's the bill next month? I mean, people get caught up in all these crazy things. I mean, you see this is like marketing, I'm sure, and ad buying where people will do all these crazy analyses and R-O-I R-A-R-A-S and all those other stuff. And like, and it's always useful to zoom out and just be like, okay, we spend a bunch of money. Did the bank balance go up in
Starting point is 00:14:38 this company or not. All personal and business finance at the end eventually comes down to are we making more money than we're spending. Yeah. And I think, yeah, Eric is right to dive super deep into like token optimization and thinking about the tools that they're building. But then at the same time, like not not don't get lost in the sauce. And like actually zoom out and try and understand like what is the core value that you're delivering to your customer? It is answering that question. So fantastic news over there. Let me tell you about the New York Stock Exchange. Want to change the world?
Starting point is 00:15:12 Raise capital at the New York Stock Exchange. You got to do it. It's my number one advice for founders these days. There's some other fundraising news. Saabie, the Beanie BCI Company is getting preempted at $35 million at $500 million post. This is a leak from Arfer Rock. We'll see where it goes. This is huge for you.
Starting point is 00:15:32 Why? Because you are a beanie guy. I do like beanie. You love to throw out a beanie. A beanie in the morning. It just keeps it together. Yeah. I like a beanie.
Starting point is 00:15:40 Very, very funny. It's interesting. I think that this format, of course, I'm sure they can adapt it to other types of hats. Yeah. But this format certainly maybe makes it harder to build momentum in places like California, at least Southern California, Arizona. Begigabunk's creative directors, though. Yeah.
Starting point is 00:16:02 Huge. Huge. Silver Lake. Silver Lake. every. It's not too hard to change your beanie into a hat, a cowboy hat. Like, that's just extra leather around it. You could wrap the beanie in the cowboy hat.
Starting point is 00:16:14 You can wear... Here's what's interesting, though. So Arfer Rock, uh, usually... It's pretty dialed. Pretty dialed. Pretty dial. Uh, pretty dial. It's almost like he has inside information.
Starting point is 00:16:25 It's almost like he somehow... Yeah, but I mean, we've talked about the game theory of like, do, does he work at a real, like, tier one venture capital firm that's saying, is, like, what's the benefit of leaking everything? he a lawyer that's seeing all the docs turn around? I mean, zero benefit for a lawyer. Right? The rush of getting
Starting point is 00:16:43 likes on the timeline is pretty universal. You're a lawyer, you're just like, I need a banger. At a fund, for sure. Yeah. And I don't know anything else. But he's always taken the view that it can
Starting point is 00:16:59 be helpful to the founder to build. Because a bunch of people are going to see this. Sure. That that this didn't sort of land in their deal flow, or land on their desk, and they're going to reach out, right? So it does create momentum, but can certainly be annoying for teams as well.
Starting point is 00:17:17 This was notable, though. So 200 million of LOI from B to B customers, and so very curious what the enterprise play is here. I don't know. But we can work on getting Raoul. Does that mean like, like through hospital networks or through like the health care system
Starting point is 00:17:39 or is it like Mark Zuckerberg wants to go further he wants to track the brainwaves of the employees not just the mouse movements. We're going to track your screen and your brain. I mean it could go either way because you imagine like Neurrelink has had a bunch of traction and bunch of amazing I saw Nolan the first patient
Starting point is 00:17:58 P0 on Rogan talking about playing cod with the neuralink. Amazing. And you can imagine that a certain point, like some sort of partnership. They have multiple hat form factors. There we go. We're good. I was getting really hung up on the beanie. I'm like there's so many different enterprise or B2B context.
Starting point is 00:18:17 You're in a warehouse in Dallas, Texas in the summer. Yeah, you don't know. Maybe this is $200 million dollar LOIs from REI or Patagonia. You know, you don't know. Who makes beanies? What's the Carhart? Carhart makes a great beanie. There you go.
Starting point is 00:18:33 You don't know any of this stuff. You're completely out to lunch. I went through the beanie economy. Beanie market map. Let me tell you about public.com. Public.com. Investing for those who take it seriously. Stocks, options, bonds, crypto, treasuries, and more, all with great customer service.
Starting point is 00:18:52 They just launch a feature today that allows you to connect your favorite chat app to public. Yes. And more important than ever, because with public, you're going to be. going to be able to go and create the S&P 499 if you don't like SpaceX or the S&P 1. If you love SpaceX, you can express your opinion about SpaceX however you want. Can you please help me build an index for one company? Yes. Index for one company or index for everything but one company.
Starting point is 00:19:21 SpaceX is very divisive. People are extremely optimistic in certain camps, extremely pessimistic. Goldman. Goldman, very optimistic. What they said? Goldman expects SpaceX's AI revenue to surge a hundred times. times by 2030. Huge. Big, big number. I looked at this title and I was thinking like, okay, what's GROC's actual revenue today if you take out? Yeah. What is their AI revenue today?
Starting point is 00:19:46 Is it just GROC subscriptions plus GROC tokens? Do you include X subscriptions? Do you include cloud vendor and neoc cloud contracts? There's a bunch of different ways to measure it. The smaller the number, the easier it is to 100x, but we have seen other AI companies, 100x revenues over two years, over three years, four years, like the 100X has become, it's not a one-of-one scenario. It's happened multiple times. And so we have seen these charts many times. And if they execute well, this is entirely possible.
Starting point is 00:20:19 It is extremely. Other notable data points from the road show, the forecast anticipates SpaceX making about 360 billion of capital expenditures through 2028, Jensen. somewhere this pumping. Very excited about that number. Be a new hyper-scaler. And anyways, very, should be unsurprising,
Starting point is 00:20:43 but very aggressive. Yeah. And, yeah, the Enterprise model is also live, too. The new Nvidia Foundation model is also live. We'll have to go check it out and look at the model card soon. See how it's benchmarking.
Starting point is 00:20:59 But we got to move on to benchmark because there's new news in the benchmark world. First, I'm going to tell you about MongoDB. What's the only thing faster than the AI market? Your business on MongoDB. Don't just build AI. Own the data platform that powers it. So, moment of silence? Moment of silence. Why is it? For the end of an era. I guess they have been very focused for decades. The last tier one, there was a pure venture capital. What did they get called again? Internet boys or something? Soft boys. There's some book about that. It was very funny.
Starting point is 00:21:33 But, EBOIS is a hit piece of a book title. That was a fantastic book. But the subtitle makes up for it. And it's a fantastic book. And it's a very interesting story where they actually let a journalist come in and see how they. EBOIS. The true story of the six tall men. Yeah.
Starting point is 00:21:51 He clearly wrote the subtitle and was like, I got to take the edge off of this. It's too glazy. I got to take it down a notch. And so he threw the E boys in there. Anyways, big moves from Benchmark. Kate Clark has a scoop in the journal. Benchmark has raised $2 billion across two new funds. Wow.
Starting point is 00:22:11 And most notably, their first ever dedicated growth fund. Did they hire anyone who has experienced growth investing? Who could possibly do growth investing there? Someone who's maybe like a bond capital and then founders fund, then maybe Kleiner. Like someone with that pedigree? Yeah, somebody with that kind of background, I think would be fantastic. Pretty good for growth investing. Now that you say that, though.
Starting point is 00:22:32 Yeah? Ev Randall. Ev Randall, that's right. They did pick up Ed Randall. They did pick him up. They're almost thinking two steps ahead there. Are they building their fund strategy now, their entire platform strategy around Ed, Ev Randall? Potentially.
Starting point is 00:22:45 Essentially. Anyway, let me tell you about Shopify. Shopify is a commerce platform that grows with your business, lets you sell in seconds, online, in store, on mobile, on social, on marketplaces, and now with AI agents. And we are very fortunate to be joined by Alex Carp in just a minute. He's coming in to speak with. us an AIP con here. We're going to bring him in just a minute.
Starting point is 00:23:06 While we wait, Austin-based podcaster, Joe Rogan, reportedly being considered for 60 minutes. 60 minutes. They're going to have to call it 200 minutes. Because he records long podcasts in 60 minutes. Isn't it enough for him? It'll just be called hundreds of minutes. Barry, if you're listening, put us in.
Starting point is 00:23:25 Put us in the ring. We're ready to go. You need tech correspondent, business correspondent, someone who can just chop it up for 60 minutes. We do 60 minutes three times a day. We're ready to go. This is going to be light work for us, Barry. I'm ready. You can do 60 minutes right now.
Starting point is 00:23:41 You can do 60 minutes tomorrow. You can do 60 minutes. You can do an extra 60 minutes easily. We're putting up a thousand minutes a week. It's no problem. We did consider that at one point early on. Should we do basically a morning show? Take a two-hour break and come back and do another show.
Starting point is 00:23:56 Late night show. Yeah, late-night show maybe. Anyway, we have Alex Carp here with us. Welcome to the show. Welcome back. Thank you so much for taking the time. We're going to have you grab these headset, these headphones, right? Not these. You can sit here. No, no. Get close. Get close. Get in here. We liked it last time. The three of us were sitting here. We can put the giant. Let's put this up here right here. I'll sit. You can stand. This always works. Yeah, yeah. Get in here. Close. This is good. Okay. How is it going? How is AAPCon this time around? What's changed? Well, we're in a phase. Each one of these things like marks a time.
Starting point is 00:24:34 First of all, you guys are even more baller, more successful. Thank you. Some tendies in your pocket. I think it might have been part to you. We got to say thank you. You know, it's like, you blew us up. You're looking bigger and stronger. Thank you.
Starting point is 00:24:47 Are you more attractive in your personal life now randomly? Well, here's what we're actually focused on dead hangs. Yeah. So you came on last time you said your dead hangs around like five. Oh, no. It's, well, it's plateaued and the last cold once at 5.30. 530. Okay, so we, the thing is, like, people are going to hear that.
Starting point is 00:25:04 They're going to think hanging on a bar. Five minutes. How long could be. You got to go and do it. The audience has to go try to do it. We've started doing it. We're still in the... Under two minutes, I think?
Starting point is 00:25:14 Yeah, between... One and two minutes. Somewhere around a minute 30, you feel like your tendons are going to rip. A 30, 1.30 dead hang is respectable. Okay. Two minutes is super elite. It doesn't feel respectable when you have the five-minute number. You're looking at the timing.
Starting point is 00:25:28 Strength matters. Now, the thing is, I don't want to go into rabbit hole in training, the single biggest mistake people make is they try to hang every day. You need recovery. It's like anything else. So if you want to mimic and get progress, you just do what I do, which is once a week you hang as long as you can. Doesn't you have to be super macho.
Starting point is 00:25:47 And then that's your day. So like to say you can do 130. But multiple sets? No, no. One day a week, you do your maximum. Max? Wow. So like, let's say you could do two minutes.
Starting point is 00:25:55 Okay. You try to do at least 1.30. You fight to get to 1.30. But you don't fight to get to 2. minutes. That's your dead hang day. And then you can basically fuck around the next day. We do whatever you want. Don't overdo it. But you could do two times one minute with a long break. And then you just screw around, do less and less and less. Two days before, if you had two minute dead hang, you do like four times 15 seconds, the day before you take off. And you do that,
Starting point is 00:26:20 just keep doing that. And your day, what the mistake people make is they hear my ball at time. They got a crown. Fuck that guy. I mean, the mistake you're making is not doing a course. This could be a whole new revenue line. It is a whole new revenue line. I mean, you guys have a more for you guys. Yeah.
Starting point is 00:26:36 You could be like, hey, call in. The card method. So, yeah, I mean, the dead hang is it, it's like, and also some of it's just genetic.
Starting point is 00:26:43 Like, my other metrics are elite, but that this is somehow alien territory. God given gift. What about, what about breath hold underwater? I don't do that. Okay.
Starting point is 00:26:52 I'm not sure I have it. Like, I grew up swimming. I think I'm weaker at that. Like, I bet you I'd be in your guys from your guy's, I,
Starting point is 00:26:58 I'm a dive master. I can hold my breath for three minutes. I'm just saying, yeah. So I think you'd be crushing me on that. I think you'd be crushing me on that honestly. But you have like the long capacity of a whale. That's true. That's true.
Starting point is 00:27:08 I mean like you got like you're like. If I'm not moving, I'm not using any oxygen. It's like you're like a like a whale floating out there under the ocean waiting to surface. So I say I'll tell you the difference. God, they're always minding me out there. But like, okay. When we first met, it was like AI. I may be real.
Starting point is 00:27:29 Then I would say somehow until about two weeks ago, there was like a holy fuck, this is real, but somehow it's not working, but we're not allowed to say it publicly because we'll look stupid. And then there's a lot of investor hype. There still is like investors printing tendees. So you have the investors on one side. I think people realize it's real, but, you know, it's like, you know, you have the whole token maxing. And people are on onto that. And then so there's a whole value lecture there.
Starting point is 00:27:59 You have a political situation where, you know, people who do not understand basic economics are winning the political argument. So you can, we can talk about where a is going. There's a lot here. Let's break it. Let's break it up. Let's start with the token maxing thing. Let's start with what's real. How are you actually thinking about deploying AI?
Starting point is 00:28:21 First of all, what is what is Palantir's philosophy around token? Well, like we, okay, we have a product that will allow you to be. I mean, internally, it's called something, but externally, but really we call it the demastipatory, like get off masturbation thing internally. Sure. It's like people are just like sitting there all day, kind of like a porn addiction. And enterprises are like, okay, we knew this, we believe this will create value. Yeah.
Starting point is 00:28:49 But we cannot have people just like some people. Checking the weather with it. And just like, and just rearrange with detection. on their personal Titanic. It is literally like porn. Like people are like full on. It feels so. Yeah.
Starting point is 00:29:02 Tool shaped objects. Yeah. Tool shaped objects you're looking at more than you want. You hope no one notices. You're kind of before dinner after dinner. It feels productive to have every email classified with tag. Here's what it comes down to. Like business problems can never be.
Starting point is 00:29:16 I mean, sometimes they can be solved purely with money and just spending more. But very often. Actually, I think it's the opposite. So just to give you a weird. No. And I was going to say very, very often it's more the opposite. where it's about figuring out the right way to do something, and then you can use capital to fuel that process.
Starting point is 00:29:32 Let me give you a thing that's too generous for you guys. Okay. It's taste plus money. Okay. And there is no, like, AI, like if you look at, like to pick any issue you want to talk about, token machines, maxing, what's going on with deploy codes, are other people going to build ontologies? why are why why why why is our political class and I understand AI especially in Europe it's like yes
Starting point is 00:29:58 because all these things can be scaled in a very valuable but largely going to commodified way but you can't scale the taste of like what is the business problem you want to have to solve and need to solve at the end of the day whether it's in the four whether it's the ukrainians fighting the Israelis commercial entities it's there's somebody sitting there who's like okay but this problem is valuable, this problem isn't. And once that value, that problem is always, that problem always, almost always, but not always has attributes. So there are some problems you could solve with this. Like, I want to write a report on GDP growth in China, right? Okay, but if it's a problem that requires a knowledge store, like I want to understand this specialized way I underwrite,
Starting point is 00:30:40 we're going to have a guest here. I want to understand the specialized way I drill for oil and gas that's both legal, ethical, and reduces the cost of production. I want to change the, the the supply chain of my industry, whether that's military, or whether that's building boxes or whether that's cars, these things require actual, precise, ongoing processes. They are enhanced by large language models. They are not replaced by large language models. And then you get to security issues.
Starting point is 00:31:07 For us, like, the whole myth of those things is just a boon. Because, like, yeah, we could take any model, their model, open AIM model, we can identify, we can now identify vulnerabilities at like 10, 100x. Yeah, but then who patches them? How do you patch them on-prem? How do you patch them on-prem so that your specialized mileage stays on-prem?
Starting point is 00:31:30 Like, if you're any business or Intel service, a lot of these things are very similar. Sure, sure. Like, you're not putting your classified data in a public cloud. Same thing if you're like, you have a special way of farming soybeans. Yeah.
Starting point is 00:31:42 But you're not. So it's like, how do you have, how do you get, so all these problems are exposed, identified. And then you always have a thing of where's the charisma, which people really underestimate. And it's not global. There's no global charisma now. So right now, the large language models are very, frontier companies are super chrismatic with investors.
Starting point is 00:32:03 I'll give you some news. They're super not charismatic with enterprises and the people. Like in a way. Even with enterprise? No, no. I mean, it's like, because I understand with the people. No, no, the enterprise people. I have a secret.
Starting point is 00:32:15 I have a secret. Like every company has a secret way of selling. You know what my secret way of selling is? Don't even call it. Don't come talk to us. There's a frontier company. Go spend two days with them. And if you're lucky, after you're done, I'll let you in my door.
Starting point is 00:32:28 They're like clamoring. They're like, hey, I'll take your bad brand. We have a great brand of enterprise. But like, it's like secret knowledge because the investors love this. They're like, hey, my stocks are all up. Everything's up. I mean, Pallenture's done very well. But it's like, and you know, you guys are doing very well, I imagine.
Starting point is 00:32:44 Right. And it's okay. You know, we can, but I'll tell you what. You go down the street, you talk to a Marine, you talk to a bus driver, you talk to the person who owns the bus driving company. They are not happy. They do not like these people. They're tired of people token maxing. It looks like masturbation that costs them money.
Starting point is 00:33:06 And honestly, then you have something we're not allowed to talk about in this country, likeability. Like a Palantir, I think we have like 50, 100 million global bands. We have like 5 million people that wake up in the morning, literally call. calling me Satan. I didn't know I had that kind of warm hand. But, you know, it's like, that's what they believe. Yeah. And like, and they really believe it.
Starting point is 00:33:27 Okay. What people are not allowed to really address is like, we have fans and enemies. Yeah. Yeah. These people are polarizing. Yeah. We're polarizing, which means both sides. Yep.
Starting point is 00:33:36 These people have one side. Yep. They're just, it is. So it's like, and it's like, it's a really big. Social media companies too have the same problem. Yeah. Everyone uses them, but no one likes them. Yeah, but then they also live in the circle.
Starting point is 00:33:48 and that circle's printing money. Yep. So it's like, you know, when you look in the mirror and you just printed a lot of money, you look pretty fresh. Is part of it that some element of the technology, let's just say, LMs, is so magical that the companies involved,
Starting point is 00:34:06 that the companies that are making and selling Frontier Intelligence can be bad at a bunch of other things and still great. Well, no, no, no, they are magical at a certain kind of thing, allowing you to write, for example, code. Now, that code can't be used as a knowledge store. So if you look at code in like three different ways, like just using Pounder's as a model,
Starting point is 00:34:24 we have code that's basically infrastructure. So what are the Ukrainians using? What is the Department of War using? What do a lot of our enterprises? We call that primitives. It's basically hard-coded things that understand the world. The way do you do, it would take millions of technical hours and an understanding of all these enterprises to do it.
Starting point is 00:34:40 So it's much more like how do you build a steel beam? Then you have, like, code that is written by FDEs, Okay, so that's kind of managed. The reason why FDA's work, the secret is it's actually managed in something that we as a product. So you're writing to a code base, we're managing that we're increasing our product. It's not just random people writing. Then you have, let's call it free code. That free code is, that's magical.
Starting point is 00:35:05 Like you can do it very quickly. It's almost right. It doesn't have to be exact. Dashboards. Financial stuff. Little flow. Probabilistic stuff where you just have to get it. One-off analysis.
Starting point is 00:35:15 It's magical. By the way, it's magical. not only creates, and it's magical in a way on it. I don't know people don't like the porn thing, but it's also addicting. It's like, you know it's not good for you, but it may lead to damage. One more dashboard.
Starting point is 00:35:27 One more time. It can't hurt that much. I know my doctor says it, I shouldn't do it. But it's like that, right? And you just keep going. And like, and if you're involved in that thing, you're also making money. Yeah.
Starting point is 00:35:39 And then, last not least, in certain circles. Like, if you have, you want to be a researcher, or you believe, essentially it's a religion. religion. So, like, you know, and like one of the things, it's very charismatic, especially people who've never had a religion, because all of a sudden that hole in your heart that was yearning for, I don't know, I would say, you know, a established religion, Judaism, Christianity, Islam is like being filled. And all the answers are there. But it's very, very successful at doing things that a company has to do. But it is not actually solving the problem
Starting point is 00:36:14 that enterprises are. It is, now it can solve them. That's the trick. It's not binary. It's not like, you can't say they're not valuing. They're totally putting our business on steroids. Like, without LOMs, nobody would be talking about our ontology, about Apollo managing exploits, about our ability to manage an enterprise, essentially, turning all these companies into FDEs, these deploy codes. We love them, because now every company wants to deploy code. You know how you do that? You re-platform on Pallentier. And like, and it actually works. It's not somebody with no taste who's never done enterprise. It has no earthly clue how these things work who's done something else and there's like just imagining they
Starting point is 00:36:51 know how to do it right yeah as part as part of this moment quite entertaining for you because you guys have been working on understanding businesses at a deep fundamental level creating you guys have effectively been doing the work that it that people are promising AI could do for 20 years now but actually doing it finding all the really rough finding all the really rough edges and and not and being at a point where you don't have to oversell the technology you can sell both things
Starting point is 00:37:24 but now there's maybe here we go we got it together now there's maybe oh it's the wrong side that's why flip it around there you go there you go living the brand hopefully we got that I don't know
Starting point is 00:37:41 I don't know the rest of all this stuff I trailed off but no I understand it is part of it entertaining to you that it feels like Like, you know, Palantir has always been in some ways not had competitors because there's nobody with Alex Carp running a company that does what Palantir does besides Palantir. But at the same time, there's been tens of billions of dollars deployed now to effectively do what Palantir does, but just selling the intelligence part, not selling all the underlying kind of infrastructure that you know. Well, they're doing two things. They're selling.
Starting point is 00:38:16 They're trying to sell the intelligence part, and they're trying to pretend if you just hire a bunch of people and let them run around their FDs. Now, the very cool thing is when you've been in your basement doing your thing and everyone kind of use it as the freak show, it's really interesting and great to have adoption. The pretty ironic thing is half the people adopting now don't even know they're copying. But now, the copying thing helps and hurts.
Starting point is 00:38:46 Where it hurts is in the beginning it puts clutter in the market. Yeah. And there's no doubt about it. Where it helps. And then we saw this with defense tech, honestly. So like in defense tech, we were the only people. We were the first people despite what, I love these. Honestly, other podcasters, they're interviewing people who are parroting things I said 20 years ago.
Starting point is 00:39:06 They don't know it. And it's like, oh, that's so insightful. It's like, yeah, of course it's insightful. Carp said 25 years ago. And like, but it says, but so that kind of, that part is super weird. But it's, but what really happens when we see is like it expands the market. So like in defense tech, we would not be doing this well just purely in government unless there weren't 50 companies that were doing similar things because then the people are like,
Starting point is 00:39:33 okay, first of all. You view it as like off balance sheet sales resources where other people are basically doing your sales. Well, no, that's the large way. They do two things. they increase the size of the market because de facto, nobody wants to find it underwriting market where there's only one person. Sure.
Starting point is 00:39:50 So like if you're the one person, the percentage of the defense budget you can get is much smaller. And two, they set up a comparator. It's like, you know, you may not like the freak show. Okay. But have you noticed the people who are serious buy it? And then it changed.
Starting point is 00:40:06 And then three, it changes the standard. Now, what you're seeing now is like that times 100x. Yeah. And it does change, like, recruiting, retention, and, like, how you build a company, and we're always think, you have to think about how to, being dyslexic huge advantage there because, like, you don't have a playbook, and now that you need things to shift, and we're doing that. The central thing, though, that it's just cannot be developed, even if you understood the
Starting point is 00:40:32 playbook, a lot of these things are, like, appear like, it's like, you know, LM code appears like Pounder code, but it isn't a four-deployed thing, appears like Pounder, it isn't ontology. You could theoretically copy parts of it, but they're essentially structures that are built deep into organizations that we own. And by the way, take you three years. And then three years, we're in a completely different world. But there is this magical thing called taste.
Starting point is 00:40:55 Like in the end of the day, the reason why you guys have done so well, of course there's aptitude and diligence and showing up and all those things. Yeah, but you have to be able to differentiate between two people who are in business, one of whom is saying something that sounds weird that is insightful, one of whom is parroting something that sounds weird, and that's all they're doing.
Starting point is 00:41:15 And a lot of people, very few people can do that. And you have the same thing, like the enterprises that succeed, there is a taste arbiter. And at Pallenture, we have taste in every product, taste in every deployment, taste in every casting. Who puts the people there? How do you put them there? How do you organize the thing? Our Entology then does that technically.
Starting point is 00:41:37 How do you manage the whole arg with taste? who should be in charge, what data sets should come in, what are the ways in which you protect? What is, what should you push into the public crowd? What should be on-prem? What should, I mean, leaving aside the law and like wars or ethics, what do you want to protect? What should you protect? What should you not protect?
Starting point is 00:41:56 Because quite frankly, you want that to be out there so you can get more data. All those things are arbitrated by taste. And then you have to have the credibility of having taste. That's a real problem for a lot of these places because they don't have, they're popular with their friends, they don't, they really don't understand how unpopular they are in enterprise. They think it's like, oh, yeah, it's like the way I think I have a problem with, like, professors at Columbia. It's like, no, it's a real problem. Like, they think I'm Satan. And, you know, it's like, I think, you know, we grew up in the same community. Let's talk about Heidegger.
Starting point is 00:42:27 They're like, they don't want to talk about Heider. So it's like, it's like, yeah. And so that's just a, it's a weird thing. It's going to be a super, the one thing I would say for anyone listening, if you're listening to this, and you're chillaxing and not active. I'm not saying you have to agree with me politically or anything. Yeah. They're like partly because of this dynamic and very self-inflicted because I tell you, I can't name names.
Starting point is 00:42:51 I called many of the Titans of this world and like started the six months ago, like every couple days. We're going to be national. You call them every couple days? Like some of them are like, yeah, we're going to be. I mean, you know, it's like, honestly, they're like the bat. They find me very entertaining. Like I'm not sure.
Starting point is 00:43:07 Like so they call because, yeah, it's like, yeah, it's like, like, oh, yeah, this is going to be entertained. You're going to pick up. So, any case, so I've been telling them for six months, we're going to be nationalized. Yeah. We're going to be nationalized. And they're like, why would anyone nationalize?
Starting point is 00:43:22 Never happened in America. It's never. Why would anyone nationalize us? We're so likable. We're creating so much value. Like, okay, I'm not going to debate that. I know how likable I am. I'm not going to tell you how likable you are.
Starting point is 00:43:33 But I am telling you. And you know, the momentum on this is on the side of people on nationalize. And we don't get. interact together and figure out ways we can say, hey, look, there are problems here we're going to deal with. These things are not going to, yes, they are going to create opportunities. You have to talk openly about how these things are valuable because we have adversaries. You can't just say these, all that stuff. So the primary risk, honestly, to Palantir and a lot of these other countries is, and then it's going to be nationalized, before nationalized, it's going to be
Starting point is 00:44:01 regulated by people who don't understand this. Now, they'll tell you in private, I'm working on this. And this, this lobby is just like, not going to work. So, like, That's something, like, if you're listening to this and you're like, look, you know, you don't have to agree with me on all my proclamations. I got a lot of, by the way, there's some people who think I'm saying we should have a draft, too lazy to read. I'm just saying we should, like, in a world where everything is changing, everything is changing. Don't we have to find some communal structure to remember we're American? You don't like my idea of like, we all do a week in the park? Great.
Starting point is 00:44:33 Come up with some other idea. We can't have no idea? And then they're like, well, I'm saying I do not want to. a draft just to be explicit, they're like, oh, that's pro-war. No, honestly, you know what most of our wars are fought because no working class person is making a decision. You start making sure everyone is involved in everything. I'll see you how few wars we fight.
Starting point is 00:44:50 It's actually the anti-war position. But in any case, disagree with everything. We have on the right and on the left people, people who have no earthly clue what they're talking about, right and left. All they're talking about is how much they hate us. And those of us who are sensible in the middle, you know, too many of us are chill-waxing like nationalization. It can't happen. America would never do that. Sleepwalking.
Starting point is 00:45:14 Sleep walking into, and you guys have tendies to protect now. You guys should be on the front line of this. Like you got full to, oh, sorry, I have a full on, very impressive corporate leader coming on. So I got to turn it down. Last question. Last question, if we have time. How are your conversations going with Fortune 500 CEOs around headcount planning? there's been so many layoffs this last year that people were saying, hey, we're getting so much out of AI,
Starting point is 00:45:42 we're able to cut back here or there. People inside tech often know, like these, maybe there's just a reduction because there needed to be a reduction, or got bloated. Maybe they do need to fund some AI initiatives. Or yeah, or getting out competed by someone. Yeah, the business just doesn't have momentum. But how are those conversations going?
Starting point is 00:46:02 What does it look like? By the way, I talked to Fortune Vihani Home Companies. I talk to unions. I talk to soldiers. I talk to fire. If you upscale somebody, they're more valuable. And like all these, whether it's people working on batteries, people driving trucks, people, corporate leaders. And again, this is where I think we have to be very careful to be more disciplined on the corporate side.
Starting point is 00:46:25 Like if you run around saying AI allowed you to fire two-thirds of your workforce and you did it because maybe your competitor's kicking your ass. Yeah. That could, that is a really, like you might as well just go sign up. for Bernie Sanders Manifest. And part of the thing is, they really believe that can't happen. So they're free riding on the fact that it could. Like we have, and it just cannot work anymore.
Starting point is 00:46:46 These things are very, very explosive. The American people sense that there is something dangerous here. And when people are playing with that fire, it's like, they assume the fire won't burn their hands. That's not the world we're in. That fire is going to consume us. And what we see, again, the war fighting example is just the most neutral, not for everybody.
Starting point is 00:47:05 but like the soldiers at the bottom have gotten much more valuable. And I don't even just mean the special operators, which obviously they're in a different league. But like every, the people doing a lot of the operations now are doing our product. They're high school, vocationally trained. You see this everywhere. The modern enterprise is going to have, like we have a,
Starting point is 00:47:25 like very, very, very smart person coming on. And it's like you're going to have a very smart executive. He's much better at hiding it than, I would be if I were him, but you can talk to him about that. But, um, uh, um, and, uh, and then very talented, creative people with taste all up and down the stack. And in case, I think this is time for me to, we, uh, thank you so much. Yeah.
Starting point is 00:47:52 Great to catch up. It was fun. Oh, they want me to stay for two minutes or what? I'm only going to stay. Look, but he's just to me, he's got to be the star. Uh, the other headset. Put it, put him, put you in here. Yeah, I'm just going to, I'm going to take off after.
Starting point is 00:48:05 for a minute. And why don't you, here, put that headset on. Carr, why don't you introduce our guest? Microphone on the last. Well, one of the smarter people in business has developed unique ways to underwrite that did not involve firing people and someone I admire. Thanks, Alex. With that, I'm going to let you guys go.
Starting point is 00:48:33 Make sure to tell them that the Entology powers. It's everything. Always selling. Fantastic. Thanks for coming on the show. It's great to meet. Thank you. Yeah, please.
Starting point is 00:48:42 Kick us off with like a bit of a more formal introduction. Yes. Peter Zafino, I'm the executive chairman as effective on Monday of AIG. He used to be the chairman and CEO and have worked with the company for nine years to help transform it. It was in a place where underwriting profitability was challenging, operations were challenging, data was challenging, capital was challenging. So I had a great team of people with me to transform the company. So give us the shape of the business in terms of the different business lines, the different products, the international footprint, the workforce.
Starting point is 00:49:20 Give us the scope and the scale here. Global company with a little bit of a unique footprint. We're 50% international, 50% North America. But our second largest country after U.S. is Japan. We have a big business in India. Okay. And then we have a very big business in the UK. We do complicated risks. So you can think about what's happening in the Middle East now with shipping, marine energy. We're heavily involved in that. So something where there's not an existing futures contract that a company can just go and hedge. It's not, oh, I'm going to buy some oil futures because I fly planes around and I know I'm going to need diesel fuel in a couple months. And so I'm going to hedge that out. This is for more complex risks. It's for more complex risks.
Starting point is 00:50:03 And, you know, think about the largest, you know, sort of customers in the world and big oil companies, you know, Fortune 500 companies. But we also have a personal insurance business, which will cover things like accident, health, that are distribution to consumers. So we have a real balance. Part of that feels like if you're talking about insuring a Fortune 500 company against a geopolitical risk, that feels like a meeting that takes place in a boardroom. It feels like there's a lot of folks with a lot of trust built up over years to understand. understand each other's businesses. But then there's probably a lot of other underwriting happening and teams putting together comps and spreadsheets and data.
Starting point is 00:50:42 And I want to know about the intersection there. It feels like the business is, and I don't know if it ever will be, just one-click checkout for insurance products for Fortune 500 companies. But what is the interface between the quantitative, the qualitative, the relationship, and the data, and then how is that changing? So the quantitative, you have to start at the portfolio level. Okay. And you want as much data as you possibly can to look at deterministic,
Starting point is 00:51:08 modeling, probabilistic, and then stochastic. And I think once you understand like you're mean and you understand the standard deviation around that, then you have to apply it to sort of the widgets, which is each policy throughout, you know, the globe as well as ways in which you structure insurance. So you can't look at an individual policy in isolation. You're managing portfolio risk, risk to the entire firm, and that's something that's happening probably 24-7, I imagine. It's hard, and that's what led me to Alex Karp.
Starting point is 00:51:40 It's hard to get the aggregation done in anything that looks like real-time. It's usually static. It can be 30, 60, 90 days. And your portfolio could change. I mean, it's not going to change dramatically. But having the ability to sort of assess risk and use the quantitative data to make better decisions on a daily basis is the aspiration of the way the company is going. Yeah, that makes sense.
Starting point is 00:52:00 Great. Take us back to your first meeting with CARP. Curious what the experience was like. It's a unique individual. Call you? Yeah. No. I was actually introduced by a board member many years ago.
Starting point is 00:52:12 And it was really in this pursuit of not necessarily foundry or AIP or ontology. That's where it led us. But it was more on sort of the quantitative ways in which I was looking at the portfolio. Could he help me think through computing? And could he help me think through sort of portfolio? portfolio optimization. And I just got more and more intrigued. I mean, you see the brain. I mean, he just thinks about things. He doesn't hold back. I mean, so I always knew where he stood with me and with AIG, but just developed a very strong trusting relationship. And there's such a
Starting point is 00:52:48 tremendous partner that we're able to iterate with them almost like no other company because we do things in 90-day increments. Because going out like a year or two years is two status. And so we actually build our relationship on 90-day goals. And that's been incredibly effective. What is, you know, a lot of the AI companies talking about scaling laws, exponential growth in token production or even revenue in many cases. But what's growing exponentially in your business? Are you bringing exponentially more data into the platform every year,
Starting point is 00:53:22 exponentially more compute resources, teams, number of policies? He's like, what is the thing that's experiencing a boom right now? Most important part, I believe, in terms of business, is that you have to have a business solution you're trying to solve. So for us, it was more data, better data, and then reduce cycle time. So in other words, like, when we get the data that comes in from our distribution partners, how fast can we get it with higher quality data and more data to the underwriter to make decisions? Got it.
Starting point is 00:53:55 And then how do we actually make the adjustments? What's an example of distribution partner in this context? So it would be like an insurance broker or insurance agent. Makes sense. Or, you know, someone who has their client is a customer. You know, selling your product effectively. Exactly. Okay.
Starting point is 00:54:08 Yes. Yeah, that makes sense. What else? Do you have something? Where was I going to go? The. Alex wants us to cover anthology. Yeah, so we'll get there.
Starting point is 00:54:20 So there's been, we primarily, I mean, we at least started covering early stage startups. There's been a debate. in our kind of little sub-industry right now around a bunch of new insurance-focused startups that are growing incredibly quickly. And there's a debate going on as one, maybe AI makes it more possible to underwrite risk. And if you can do that well, grow very quickly. The other side, you know, says, hey, you know, if you're hyper-scaling an insurance company, maybe that's That's not. Maybe you don't want to work with a company that is, you know, going through that hyper. The iron law of the universe.
Starting point is 00:55:02 Yes, yes, maybe. What goes up fast. But yeah, talk about what AI has actually enabled where you're excited about it, where it's failing broadly, maybe where it's overhyped. And you can, I guess, tie that into everything you built with Palantir. There's never been a time, in my opinion, whether it was, you know, introduction to fintech and sure tech, how do you use? algorithms, how to build data lakes and repositories for data. There's never been a time in my professional career, so it's 35 years in big companies that I've seen the ability to change how an organization actually runs itself. And that can come from big companies like Palantir or
Starting point is 00:55:47 Google, or it could come from, you know, companies that are being funded by venture and have a very specific niche that can be additive to the organization. And what I think is happening, we talked about the sort of data ingestion portion, getting that into a digital workflow, using large language models to extract more data from what comes in, but also helping underwriters make decisions that are, you know, more comprehensive. You also have the ability in the way in which you service customers to be much better through the use of AI. I think companies generally, my observations, are struggling with the
Starting point is 00:56:28 orchestration of how you actually drive agents, people, and data into an organization. And once that is solved and certainly on its way, capabilities are there, then you start to think about the entire end-to-end chain being very different. What I think about Palantir, while they've been such a critical partner, as one is we evolved together, but in that data ingestion, to be able to take structured, unstructured, text, all sorts of data and get into a workflow and a fraction of the time helps us on the things I try to achieve. It's like we have now data that we probably wouldn't have used before because it wasn't good or we couldn't translate it, couldn't get it into the digital workflow. And then we start to build out an ontology. And I really do think
Starting point is 00:57:12 it's incredibly important. If there's one thing I look at for our organization, certainly the advancements of LLMs, their ability to do things more autonomously now, where you're started with the binary gen AI, now we're into a gentic AI work and just do things autonomy for so much longer. Without the ontology of actually building like what the sort of digital twin of your business looks like, where you take it and how you evolve it becomes very challenging. So we've been able to do things with Palantir. I'll use the ontology example. Again, we did the full ontology of AIG and then we went to look at an acquisition called Everest, which had about $2 billion a premium. We got Palantiris.
Starting point is 00:57:51 to work with our team. We could build an ontology of Everest's portfolio on top of ours in four days. And quite frankly, what we started to learn again about that evolution is that you always relied on data lakes or global data repositories. What we found is that we could get, you know, sort of foundry and start to build out this ontology with going to the admin platforms. All of a sudden these repositories and the central places of getting data and make sure it's scrubbed wasn't as relevant. So I think we continued to advance. that in the way in which we are looking at our business. I have one last question.
Starting point is 00:58:28 Just on the actual change management, the organization, like how the office feels, how did you go about actually working with Palantir? Do you set up your own internal Palantir workforce who sits alongside FDE's? Do you let Palantir come in and plug in like one person per team that you have set up? Like, was there a best practice? Did you go with the best practice? Like, what was the actual, like, experience of deploying the forward-deployed engineers? They get deployed into the organization.
Starting point is 00:59:00 That's got to be a unique situation. First is making sure Alex and then, you know, two of the senior executives, Ryan and Ted, that everybody knows what we're trying to do together. So we start there. Then we wanted to embed the engineers with our team. So if we had a business leader that was trying to drive the underwriting output, you'd have, you know, technology from AIG, you would have technology. you would have some of the change management,
Starting point is 00:59:21 but you have the engineers sitting there with our teams throughout the entire process. Because the iteration is really important in terms of translating what you're trying to achieve from the business side, and the engineers actually helping us think through the application of some of the LLMs or ways in which we could circumvent
Starting point is 00:59:36 some of the things that we were doing. Yeah, that makes sense. Do you have anything else? No. Insurance has to be the most important talking about it. If we do have a second, I don't know. I was not sure on timing.
Starting point is 00:59:50 How are you thinking about, you know, workforce planning? Asked CARP about this. And he said to ask you. We've stayed, you know, as you've had this wave of AI layoffs, we've been over and over and over reminded people that if you have an individual, you give them more capability, you make them more productive, you make them more efficient, a thriving, business will want to hire more people, right? Because you can get more out of every individual.
Starting point is 01:00:21 And so we've tried to remind people of that over and over and over as, you know, companies that oftentimes are, you know, underperforming or bloated for whatever reason. But what's your kind of philosophy around hiring, headcount planning, rifts, all that stuff in this kind of new era? We've been focusing on, I heard Alex at the tail end and I agree with him. So we're focusing on growth. We're focusing on reskilling. And actually, training our employees to be in a different part of the workflow. Now you would do this, I believe in all of this, you have to still have great end-end process. And so things that have
Starting point is 01:00:57 been, the human's been an L-LM trained, how to do things like outside of the normal workflow has to, you have to get rid of that. So I think that's just normal business. Yeah. But, you know, our aspiration is not to implement, you know, AI or anything that we're doing with our partners to eliminate jobs. I mean, it's about growth, re-skilling and finding ways, in different markets to have exponential growth and opportunity and having a lot more insight in the business that we run. That's a great optimistic vision. I love it.
Starting point is 01:01:24 Thank you so much for taking time to come chat with us. Thanks for coming on. Have a great rest of your time. And up next. Next. We have Chad Walquist. First, I'm going to tell you about CrowdStrike. Your business is AI, their business is securing it.
Starting point is 01:01:35 CrowdStrike secures AI and stops breaches. Welcome to the show. How are you doing, Chad? Great Overcoat. That's a new one. It's a popular one. That's an Eliano special. It is.
Starting point is 01:01:45 Oh, yeah. He is the master. giving us a run for our money. Yeah, it's fantastic. Anyway, kick us off with an introduction on yourself, how you fit into Palantir, a little bit of backstory. I'm sure we have a ton of questions to run through.
Starting point is 01:01:57 First, how often do you guys do these things? Because it feels like this, feels like an annual, it feels like an annual event. Yeah, quarterly. But Pallentier. Carp talks about, you know,
Starting point is 01:02:08 manipulating time, you know, a quarter at Palantiers, like a day, a year at another company. So that kind of makes sense. Yeah, I'm like actually 20, three.
Starting point is 01:02:18 The time warp is real. So we do these quarterly. So I'm a forward deployed architect technically. I do what is needed. And so doing the needful is kind of the palanty way. It's like there's no job below me. And so no matter if I'm out on the edge with customers, I'm talking to executives, explaining the ontology, doing YouTube videos.
Starting point is 01:02:36 That's all what I'm doing. So really the goal is how do we help people decomp problems differently and apply the technology? Can AI do decomp? Yes. Okay. Unpack that because that feels like, the secret sauce. That feels like the special thing about Palantir is actually being able to bring someone in who understands an organization. I think a lot of people see AI tools. A lot of
Starting point is 01:02:56 people see AI tools. No, a lot of people see AI tools and they think, okay, very defined workflow, input, output, but now instead of just math that Python can deal with, you can deal with some text, and that's great. But DeComp, to me, has always felt less like let's go into your HR system and understand the basic job description and like, oh, someone uploaded this resume versus, oh, Steve actually does this completely outside of that system. And marketing has two platforms for this thing. And engineering has three systems for CAD files. And all the cluges that have built up over decades, sometimes hundreds of years for some
Starting point is 01:03:36 these organizations, like that's what was so special about the forward deployed engineer program, the Palantir model. I'm surprised to hear you say AI can do it at all. It feels like the final boss. Well, this is where the really the Palantir thesis is humans and AI working together. And so the way we think about this is modeling our business process. We heard some other people talking about this of modeling my business process in the ontology. Because the LMs don't necessarily have a world view or world model of your business in your
Starting point is 01:04:07 operations, the ontology provides that. Okay. And so when we talk about decomp, this is really about actually now I make more data computable as well. So we think about LMs on the agents and interact with. Also, we use LMs to make more data computable and then model that in the ontology of how things are working. And so what we're actually doing a lot of times now is building out that worldview and then running multiple agents over this actually being combative towards each other, right? And so actually working against each other and having critiques. And so after you do that, you can also then give the human in the loop
Starting point is 01:04:38 feedback about this and iterate on this. So what we find is that's really a scaling mechanism. It's like a new power tool, right? I think you guys were just talking about this, the kind of the perspective around jobs and all the stuff. It's like when you gave carpenters power tools, there weren't less carpenters that were more. I could do more with it. It's an empowering thing.
Starting point is 01:04:54 Yeah. So how often, like I'm interested in the pie in the sky, Palantir pitch, understand your entire business, run your entire business on Palantir. And then some of the nitty gritty where sometimes like the low-hanging fruit is like, wait, there's a, like, there's someone's job to just, like, take a form and type it into a sheet. Like, we have image recognition for a long time.
Starting point is 01:05:22 Let's actually go and implement that and get that into a database, get that into the ontology, get that into Palantir. So then we can start building on top of it. And it feels like there might be a tension there. Obviously, both processes are speeding up. But how do you, how do you sort of, like, keep the project centered around the big goal while still chopping wood on all the things that actually need to happen. Yeah, I think this comes back to the forward deployed piece and like, what do we deliver outcomes? And we work backwards from that rather than, hey, I have this
Starting point is 01:05:49 data. I'm going to build a data warehouse and then I'll build reports because all my data is in one place. That's the field of dreams and no one shows up. Yep. Right. And so really when we decomp things and work backwards from that, you know, the simple things like the forum filling out, there's a lot of that. Yeah. Now, the one approach that we see a lot is in, you know, enterprise software is going to force you into their box. Sure. Right. You go fit into this box. Yeah. Well, then, you know, okay, did I take away the special sauce, which was my company, because people were doing all these kind of amalgamations, hey, 40 ways to do a PO. Well, maybe it is okay to do 40 ways, but my software can't handle it and it's fragmented,
Starting point is 01:06:22 right? And so there's actually a middle ground because, you know, for a long time, customization was kind of a four-letter word, right? No one wanted to do that. And I think that's where we think about malleable software, actually, how do we help you be more different, not more similar? Interesting. And that's so that when we decomp problems thinking about not only the kind of the quantitative piece,
Starting point is 01:06:40 but the qualitative piece, the people and process around this, how do we actually enable those people to do the things that made them special? Is software getting more malleable? Because I can look at it two ways. I can look at one, obviously, AI agents are incredible at coding. They can run, they can make changes very, very quickly that would take you a day in just a few minutes. At the same time, I see so many screenshots of people saying, I implemented this feature.
Starting point is 01:07:07 Again, the GitHub is plus a million lines of code. And at a certain point, like, the context window is growing as fast as the code generation's growing. Like, there's a, I'm a believer in the answer to bad slop is good slop and more slop maybe. But what are you actually seeing on the malleability of software? Because sometimes the most malleable software in the past has been, oh, well, there was a really incredible engineer who figured out this problem and baked it down to a 2000 line repo. And you can actually just put in your own context window. so it becomes more malleable and you can use it as a building block. And that feels like that's going away.
Starting point is 01:07:46 And I want to make sure that we're ready for when it goes away and it remains malleable. Well, I think what's missing is the malleable enterprise scaffolding. And that's what we think about the ontology and foundry and the platform and then Apollo that allows us to go deploy these changes. So it gives us the right amount of structure, but the right amount of freedom. So I think that's the balance we try to find is that malleability in the middle where we can actually scale. that we can enable people to do things differently while still creating enterprise grade, robust, secure, scalable software. And so it's actually a balance there about how I can enable that engineer
Starting point is 01:08:20 that has been doing that. Now they can write code much faster, they can oversee things, and that enterprise scaffolding in the middle allows us to actually create the right guardrails, create a safe system of work for them to go develop things in. And then it's also the feedback loop. So the other thing that we do with our ontology and our platforms is implicit and explicit feedback from users using it. So the Oudaloup that I create,
Starting point is 01:08:41 and really that Oudaloup allows our customers as they're doing workflows. They're giving feedback to agents. Now, can agents help them do more based on the feedback? So both explicitly saying, hey, that was wrong and this sucked, or I chose this option. Now, if you do that enough, agents can start to learn from that. So we actually store that in our ontology to allow it to scale.
Starting point is 01:08:58 So it's really that human-centric process around AI. AI is not, like we shouldn't be thinking about AI from the sake of AI for AI. It's AI to enable humans to do more. Yeah. That's the frame. observe, orient, decide, act, right? I have a different question, but you can go.
Starting point is 01:09:15 If you were giving, if you had 30 minutes to give feedback for the AI labs, what are the kind of key areas, let's say the frontier labs, right? Leading models, what are the kind of key areas that you would be focused on? Yeah, I mean, I think when we think about the enterprise space,
Starting point is 01:09:34 you're like, don't compete with us. No, actually, like I think, optionality is a good thing. Like I am agnostic to where you store your data, where you store, what model you choose, what compute you. So like we can allow you to use any of that. Because the last thing that actually drives an outcome is replatforming, moving to another thing. And that goes back to the on-prem culture, the secure cloud culture, ITAR compliance. Like this is in the DNA in the company. And so how do we actually enable people where they are? Instead of the focus on, oh, if you re-platform everything to Palantir, everything will be great. And we're like, well, actually,
Starting point is 01:10:06 you've probably been replatforming for years. Can we enable what you have to go do these new things? So when we think about the model companies, and it's, you know, how do we ensure that we can get the feedback loops around, you know, tool usage and, you know. Yeah, that's the kind of stuff I was wanting to get your point of view on.
Starting point is 01:10:23 It's like, I'm sure you're getting into the nitty gritty with individual models where they're spiky, where there's, you know, where they're shortcomings, et cetera. Yeah, so we actually just launched, I just put a YouTube video out last week on this, a new tool called Evolve. We talked about it in the kind of the halftime show where customers are using actually AI to help them understand which models. So like maybe, you know, the, the, the meme around, hey, make it exist first and then make it good. Most of the time I see people
Starting point is 01:10:51 building with agents, they're using the latest frontier model. I just got it working. And then all of a sudden, the token maxing and everything else. And you're like, oh my gosh, I just blew through my whole budget. So we built a tool called Evolve that will actually go analyze the logs in production about how these models are operating, what people are doing with them, the architecture over it, and actually be able to swap out different models from different providers, or, hey, actually, for most of this workflow, you can use this model that's older and actually, without thinking and test time compute it's more deterministic. Or even cached models. Cash models, and then, or, hey, if you actually just have this piece of data in the ontology,
Starting point is 01:11:25 then you would eliminate all this and 50% of your cost. And so, you know, some of this customers McCarthy talked about this at our half time. They were able to in two days eliminate 60% of their token cost by re-architecting, picking a different model, and prompt tuning. So it's the combination of all those, the permutations get really hard, especially when it's in this
Starting point is 01:11:43 probabilistic models. We have tools to do this in the deterministic prompt tuning. It's a, it's it's okay to make some mistakes. If the mistake is going to cost just a little bit, I'm fine because don't make any mistakes. That's going to cost me a fortune. There was some chatter yesterday around something a model was doing to be more efficient was talking and like this bad.
Starting point is 01:12:09 Oh, caveman. Yeah, caveman prompting. The caveman prompt method actually works. How often are you working with a company that is having call it like a mini chat GPT moment within their enterprise? And then they're just like, let's not tell anyone about this. because I imagine like there's all these, there's clearly places where... What does that mean? Their product is taking off like JetGBT?
Starting point is 01:12:33 So they've found a way to apply AI in a way that is highly, highly effective and gives them an edge. Oh, interesting. But like the theoretical like... Within like X technology have to transform. Yeah, yeah. So X people are very loud, right? Yeah, yeah. They're like, I just had this...
Starting point is 01:12:49 I'm using everything. Yeah, I just had a product work for 30 hours on this thing. They'll talk about it. But if you're a Fortune 500 and you figure out how to do something, it's not like you want to put your hand up and say like, yeah, he's like, I figured something out, right? Like secrets are valuable. And these advancements and kind of breakthroughs are not going to be uniform.
Starting point is 01:13:08 The airline industry will never be the same. Your direct competitor copies. Yeah. And so part of part of why, you know, right now the meme is token maxing. And that's an obvious, going to be an obvious area of debate. people are happy to go talk about it say you know CEOs might say hey let's stop doing this but there has to be all these other kind of pockets of interesting moments where we won't hear about them until they become kind of like standard operating procedure or you see it in the
Starting point is 01:13:40 the earnings and economics piece right yeah yes yes unfortunately x is not the real world you know and there's a lot of grift and noise and you know podcasting PMing and you know that kind of stuff that goes on. But I think in the real world, yes, there is the haves and have-nots. I mean, we were just talking about AIMG. Like when you can start to actually do the underwriting and, you know, have quotes back in hours or days instead of months on these highly complex enterprise, you know, kind of insurance agreements, if you don't have that, how are you ever going to compete? Yeah. And so when we think about this of the end of one, right, you know, those are the companies that we're going after and we see where there are those moments that
Starting point is 01:14:19 are not public. Yeah. It's the competitive advantage. category because you can imagine AIG you know is you know working with a potential customer or renewing a policy and that customer is going and talking to all of AIG's competitors yep and if AIG is able to turn around you know a quote or a policy in 24 hours and then it takes another player you know two weeks because it's you know complicated email and so many so many teams will just say like, hey, we, you know, especially once you have two bids, you can basically say, like, okay, that third, fourth, fifth, we'll kind of wait on those because we have a good option here. Well, it builds trust.
Starting point is 01:14:59 The other piece here. So when you see people operating that with that level of efficiency, what else can you do? So I see this, whether I'm doing, you know, SAP migrations, the least sexy thing you can talk about. But hey, if I can cut your SAP migration. Let's give it up for, yeah. Yeah, it's like the least, you know, exciting thing on paper. but actually if you're spending hundreds of millions of, yeah, you guys get it, but hundreds of millions of dollars on a migration and we can cut it in half.
Starting point is 01:15:24 Yeah. That's a massive deal. Back on the Oudaloupe, observe, orient, decide, act, on the observation side, what is the supply and demand imbalance for dashboards? Like, and what I mean by that is, is when you're working with a company, is there more demand for dashboards, more people asking, hey, we need a dashboard for this, we need a dashboard for that. And you have to back people off and say, I don't know if the dashboard's right for this.
Starting point is 01:15:51 Like you might just want to do an ad hoc analysis or actually go and see versus you're seeing so much opportunity that you're like, okay, we want to push dashboards out everywhere. Like, walking through dashboarding right now because I've always been like sort of like, oh, the too many dashboards, you build them and then no one looks at them. Yeah, I want to kill all dashboards. Okay.
Starting point is 01:16:10 That's my perspective. Dashboard, I mean, KPIs and dashboards should be a byproduct of operations. applications where I'm making decisions. So we talk about the ODULULU, I have to actually act for things to hit the bottom line be valid. In the actual application. In the application. So as I need those things and it's going to inform a better decision, that's where I want
Starting point is 01:16:28 those metrics. That should be a byproduct. If I go out with the goal of building a dashboard, it's going to be the field of dreams again. No one shows up. And so, yes, it should be, you're going to have to build some of those things. The other side of this also is when you think about a data warehouse, like literally, I won't go deep into this technical riff, but like, you know, Kimball and Dimensional and
Starting point is 01:16:46 was built in 96 for scaling databases, and you're still modeling the same way in 2026 or your dashboard, your tableau, whatever those things are. And like, that's not actually how the world works in rows and columns. You need complex things to model how the world really works. And that's what we think about the ontology, which means I can reuse it for an operational application,
Starting point is 01:17:05 KPI's agents, all on one single ontology, which makes it the compound effect, where as I add things in, I'm now compounding with each individual decision I'm working with gets better and better and better for the next use cases I connect across my business. Yeah. Is there an analogy there to just the deployment of AI tools currently?
Starting point is 01:17:25 I'm just reflecting on the no sequel boom. And I don't know how strong this was. This is probably just like an online take, but this idea of like, why would you ever want relational database? Why would you ever want a schema? Don't never do a migration ever again. And the future looked like a win-win almost. I think Postgres installations probably grew,
Starting point is 01:17:45 and so did MongoDB and other non-relational databases. And people use Redis for things. And they use all sorts of different tools. And we stood in the shoulders of giants and we got more giants. And then that means full employment for you, obviously. But I'm wondering, like, are you seeing glimmers of the AI tools eating into different pieces of the technical stacks? Or is it all like yes and across the enterprises?
Starting point is 01:18:11 I think it's yes and. And in a couple different things there is when you think about the real world, it is not just rows and columns. You can't describe everything with measures and attributes. And so it's actually multimodal. And so like we think about this in our anthology where you can have one semantic object that actually has a CAD file and an image, a CB model and tabular stuff in one semantic thing of a plant. Which means I'm starting to talk in the language of my business. So being able to have the multimodal representation worse in other places, oh, I have to have MongoDB and I have to have SQL database. here and I have to have an S3 bucket here to put all of these different things to store them
Starting point is 01:18:47 in ways. Well, we can do that all in the ontology, vectors, everything else. So that's really the goal around how do I model the real world how it actually works and make that transparent. So you're not having to figure out which technology they put in a time series thing for sensors on an oil platform. Don't care, right? And that's where we want to have the non-differenti to have a living like truly in the platform to remove the friction about getting stuff done. How common is it for a business with more than $100 million of revenue to have very little understanding of how their business actually works? Maybe they own, maybe they know like the main thing, which is like, you know, we make a product and try to sell it for more than a cost to deliver. Yep.
Starting point is 01:19:29 But is some element of how much can chaos and mystery be reduced effectively today? Because it feels like we're entering an era, like you go back, you know, 50 years and the level of like mystery in a large company would have been like is almost unconceivable today, right? Because you have different time zones, different offices, you know, no email, all that stuff. And now like mystery and chaos is probably reduced dramatically. but still there's companies that maybe before you start working with them, I'm curious what those look like. Yeah, I mean, we work with a lot of different varieties of companies. You know, I joke that a lot of times, you know, companies make money by accident.
Starting point is 01:20:21 Like, they don't actually know what their most profitable product is, and often they're trying to sell the thing that isn't actually the most profitable and actually not selling the thing that actually is profitable. And it comes back to how they've modeled the data is to aggregate it up to KPI's and other metrics, when you actually need to model at the finest grade how your business operates to get a true cost to good sold, for example, or true cost to serve. Like, that's very complicated.
Starting point is 01:20:42 It's very complex. So, like, we really think about how do I embrace that complexity so that I can truly understand tactically at the edge. How do I do more of the things that are good and less of the bad? It's that simple. And those get peanut buttered across with KPIs and metrics, and people don't actually know how their business is operating. I can't tell you whether it's a $100 million company
Starting point is 01:21:01 or a $50 billion company. how many times I see this that they don't actually understand how they're making money at a fine grain. Last question. Is there a world in the future where a company gets created, let's say, on Stripe Battles? And the first account they sign up for other than that is, let's say, a Palantir. Yes. I would love that. And so we do have a Palantir for Builders Program.
Starting point is 01:21:26 We have small companies. There's people here that are two-person startups, you know, that are working in their addict, Canada. I mean, like, so it is literally, um, any size company come, come work. There's a free dev tier people and come build. There's actually a Shopify integration in Palantir. You can go hook up to your Shopify and pull into Palantir. Yeah. There are people doing this. Now, are we always great at selling it or telling the story? Sure. No. But, but there are companies doing this. And I do think there's a day where it's going to be ubiquitous. Because I also think, you know, there's some, some guys here that have, you know, they, hey, my, my business is dying. I was, you know,
Starting point is 01:21:59 I was down 10% negative margin on what I was selling. And through using Palantir, they watched our YouTube videos, and they built it themselves an increase to a 9% or 10% positive margin in three months. That's great. And so, like, people can go do it. I think that's the great American story is like, how do we enable that? And I think we'll get there. It might take a little time.
Starting point is 01:22:18 I love it. Well, thank you so much for taking the time. Thank you. Great to catch us for having me. Great to see you. We'll talk soon. Our next guest is joining in just 15 minutes. We're going to go back to the timeline.
Starting point is 01:22:28 first I'm going to tell you about Figma agents meet the canvas your AI agents can now create and modify Figma files with design system context it's so crazy how many companies yeah are their whole strategy is like we're going to hire guys like Chad yeah and they're gonna they're gonna do stuff yeah he is he is he is he has become such a meme what what what drove the FDE mean was it was it Palantir going public or was it it was it was Palantier going parabolic. Maybe. Yeah, once. Yeah, because it just
Starting point is 01:23:01 there was like a chart. Because before it was like, okay, yeah, successful company, but like no one really knows where the valuation's going. Now it's like, my my uncle just told me that he made a bunch of money. Yeah, well, that, but also they had been banging the
Starting point is 01:23:18 FDE drum or the and getting the consulting accusations. Yeah, but people had ear plugs in to the banging of the drum and the earplugs came out. Yeah, but when you're, when they were a, 10 to 20 billion company, a lot of people could still convince themselves that
Starting point is 01:23:33 they were right. Just a consulting business. Yeah, yeah, yeah, exactly. And that gets harder, harder to ignore. We covered this very briefly. But yeah, very excited for Joe Rogan to be hosting his, you know, 300. This is a rumored leak. It is not
Starting point is 01:23:49 confirmed by any means yet, but I like the sound of it. It would be, it's a very different direction. This was a good post. I want to bring it up. Buku Capital says it's really incredible, the absolute AI garbage in all caps that people are comfortable sending to their coworkers and bosses. There's a good chance productivity will actually decrease as AI adoption increases because everyone is busy waiting through AI slop. I don't think it'll actually, I don't think it'll actually get
Starting point is 01:24:17 there. But I have had, I have had moments over the last month where somebody has sent me, you know, a deck for their company or materials. And I can tell that 90% of the work that went into it was on prompting. Yeah. And I have a very like visceral reaction toward it, especially for like early stage companies where ideas and the way in which you go about doing things matter so much. That it's almost like, you know, painting this initial vision and things like your, your go-to-market, product differentiation, why you'll actually win.
Starting point is 01:24:57 like use AI to make your team slide that's great right just taking like a set of facts and making it look good right you're giving somebody a bio something like that um but i just remember uh i i got this deck i was clicking through it um and i very uh respectfully said like go and like do this yourself yeah because uh just because you've made something that that looks like a deck yeah but But you didn't do the sort of like fundamental work to actually present this in a way. If you looked at each slide individually. Yeah. Your eyes kind of glaze over. Yeah. And you just sort of like lose focus. Yeah.
Starting point is 01:25:40 Yeah. It's like it would have been more, it would have been more compelling to actually just have a bulleted list of like problem. I mean, a lot of times you can just send me the prompt because I can instantiate it in my head. I can imagine the rest of the paragraphs. I have the context window preloaded. Yeah. for myself. Yeah. We should talk about the new Audi, the Nouveau-Lari. Is this real? Motor One? This seems
Starting point is 01:26:03 real. It's a big deal. It's the brand's first supercar since the R8, twin turbocharged four-liter V8 hybrid, 217 mile per hour top speed. That is 10% faster than a Kyan Turbo GT. What is the Kyan TurboGT market doing right now? Is it tanking? Depreciation must be just through the roof on this news, because you have car that's 10% faster. And so why everyone was going to be rotating out of GDs. I mean, I think they did it. I think the new Vilari. It's a really cool design.
Starting point is 01:26:34 It's a really cool design. Feels like somewhat cyber truck inspired. Cyberpunky, futuristic. I don't know. It just checks the box for like the next supercar for me. And in a way that the- Ben says it can't touch the R8. Oh, can't touch the R8.
Starting point is 01:26:48 Okay. Okay. Well, it goes zero to 16 and 2.6 seconds. Well, almost a thousand horsepower. Let me tell you about Cisco. Critical infrastructure for the AI era. Unlock seamless real-time experience is a new value with Cisco. And our next guest, Sam Barry, is here from the USDA.
Starting point is 01:27:03 Welcome to the show. How are you doing? Very good. Good to meet you. Thank you so much for coming on down. Let's throw this on and just like that. Cool. On the left side.
Starting point is 01:27:12 So introduce yourself a little bit. Tell us about yourself. All right. Yeah, my name is Sam Barry. I am proud to be working at the USDA. What do you do that? Right now. I'm the chief.
Starting point is 01:27:22 Nominative. It's a termination. Do you know about nominism? Determinative determinism? No. It's the idea that you know, a person's name could possibly influence or or the, but, but Barry and working at the Department of Agriculture is like pretty perfect. Yeah. No, it's incredible. Actually, my, uh, the berries came over here from France in, um, like 1640. Whoa. So we've been here for a long time. That's great. And, uh, it was all farmers. Yeah. Yeah. Yeah. Yeah. It was like all farmers up until my grandpa. Okay. Then he became a, uh, materials engineer, actually. worked on jet engines.
Starting point is 01:27:56 Okay. And so then his sons became engineers. My dad became an engineer and then I was an engineer. So we're kind of trying to bring the two together. There you go back to the USDA. Yeah. What is the shape of the USDA? Like what is the shape of the organization?
Starting point is 01:28:09 Headquarters? Do you go to the office? You know, U.S. You think just America, international footprint. Like you travel for work. What's it like working? Well, actually, it'd be kind of interesting to ask you what you think. Like, what are the things that you think USDA does?
Starting point is 01:28:23 They grade the milk and the stakes. Okay. That's what I think about it. So I imagine that at some point, farmers send the cows to you and you kind of inspect them and say, this is a good cow. Is that what happens? There's like inspectors. There's a whole area that does it. I imagine there's like a series of certifications, but what else is happening?
Starting point is 01:28:45 So all kinds of stuff. So do you know that like food stamps? Yeah. That snap is inside of USDA. Oh, I didn't know that. I didn't know that either. I figured it was in like HHS or something. But yeah, yeah, it's in USDA.
Starting point is 01:28:55 Yeah. So that's $100 billion a year. It's kind of a big deal. Yeah. So we do, we have SNAP that's in the food nutrition service. Forest Service is inside of USDA. Okay. Like crazy.
Starting point is 01:29:06 Yeah, yeah. And then F-PAC is like what you would really think that USDA, it's like the farmer facing like where farm programs are where they do acreage reporting like the stuff I talked about today. Got it. Then there's rural development. Okay. Which is like loans. It's like a bank basically.
Starting point is 01:29:22 Yeah. Do loans for all kinds of things. Okay. actually in some of the reviews I came in on Doche and there's like beachfront hotels that are being funded out of RD. So there's like a lot of things that need to be cleaned up. Okay. Yeah. And then there's like food inspection service and then there's actually a huge scientific arm.
Starting point is 01:29:40 Yeah. That makes sense. Testing things. Yeah, like labs. Advancing different pesticides. So things that I mean actually become very passionate about it because I certainly didn't have an appreciation for. I thought the same thing. It's like grading meat, milk, you know. But like our, we are so uniquely positioned as a country because of the fact that we can feed ourselves. Yeah. And like that is not the
Starting point is 01:30:05 case for a lot of a lot of countries. Yeah. Isn't America basically a net exporter of food too? You hear about this in the China debate all the time. Will they buy X, Y, Z product from us as a retaliation? Yeah. And yeah, you just don't think about it. But yeah. So like China can like minimally feed itself. Like bare minimum. I could keep itself alive. But, you know, they're getting, like, we just did a big deal with them to move a bunch of beef over there. Yeah. And kind of got some negative press on that. So it's important to know it's, I forget exactly what it's called, but it's like the parts of the cow that we don't eat here.
Starting point is 01:30:39 So it's a little misleading to say, like, the amount that we're sending over there. But also all these trade deals are like very complex and there's like six different moving parts. We get batteries or they get the chips and like these are always like, you know, seven part negotiations. It's hard to look at anyone in isolation. But I mean, I think it's a little surprising that like food is actually part of that. I mean, in warfare, like agriculture and the food supply is usually hit before anything like kinetic even happens, you know. And then before even the world knows that it's warfare. Oh, you know.
Starting point is 01:31:08 Okay. Because you can do that and you can do things to, you know, impact a nation's food supply in the future. And so agriculture is like a really big deal. Sure. Really important. So all this to tie back to us, I wanted to talk about the labs. Yeah. Because this is like a whole area inside of USDA.
Starting point is 01:31:25 But we do all of these things like invest in figuring out. So like personally I try and avoid like GMOs and we eat, you know, like we drink raw milk and we get our meat from a local farm. But GMOs are actually really important. Yeah. Because if we were hit with some kind of adverse event or something and we needed to create corn that could survive a drought better. Sure.
Starting point is 01:31:44 Like we have the science and the research to be able to do that. Got it. And it's a huge edge that we have like geopolitically. Interesting. Yeah. Yeah, talk about, over the years, I've read so many stories of, you know, this, this insect has been detected in, you know, some region of the U.S. and there's speculation on, is it, you know, kind of foreign interference, things like that? Is that in USDA domain is trying to help monitor and track and make sure that pests?
Starting point is 01:32:14 Yeah, pests, like pests are obviously naturally occurring, right? Yeah. flourish for their own reasons or there can be some some sort of malicious intent as well is that your guys because they're not necessarily naturally occurring right yeah and so one that we have going on right now and I'm not saying this one's not naturally occurring but the new world screw screw worm yeah it's coming up through Mexico so our secretary which by the way I couldn't say enough good things about secretary Rollins I mean she's incredible just an actual like genuine good and like it's unbelievable what she's able to accomplish.
Starting point is 01:32:49 But New World Screw Worm is something that's falling in USDA's, you know, responsibilities. And this is like a parasite basically that's coming up through Mexico and it's like a flesh eating parasite. So it's like really hardcore. So we're developing a lab. You mean flesh? No. All sorts.
Starting point is 01:33:05 No, but you know, I don't think you want to be around it. But no, it's for like cattle mostly is what it impacts. And so we're developing a lab and like sterilizing flies, which again, like personally, I don't really like any of this stuff, but it's better to be doing this and be able to protect our nation than if we let this just come and flourish in our country and it would be very detrimental. Yeah.
Starting point is 01:33:24 So I'll have to go back. And if it's a necessary, you know, technique that needs to be harnessed, it needs to be harnessed securely, and it needs to be harnessed with, you know, the right teams in place to make sure that whatever's rolled out is rolled out effectively and safely, right? Yeah, I mean, I think it's just so important, you know, there's, like, like, technical,
Starting point is 01:33:43 there's so much farther we can, go with technology, but we have so much right now. And so many people are just black pill, right? And I think it's important. I think you should be like black pill on certain things, but you should probably take a lot of pills. Like you should be red pill and black filled and white pill pill at the same time. Because like we have a long way to go. And when we're just like sitting, feeling sorry for ourselves, like it's not a good position to be in. Yeah, this is the most incredible country on earth. And other countries are advancing though. You know, our edges is like our edge doesn't come for free. No, we got to work at it. We got to keep pushing at these things. But when we do this,
Starting point is 01:34:18 like when there's a parasite that's, you know, coming into our country and we're able to just, like, use biology to combat it. Yeah. That's incredible that our country can do that. Talk about these more S&B scale farmers and their approach to technology. I think a lot of people would be surprised at how much, how much these individuals, at least from what I've experienced are happy to lean into technology. I met a group in Texas that had developed, this was years ago, so pre-AI. Boom, developed their own SaaS product
Starting point is 01:34:52 to help manage their operations, like a tool that they had built by discovering problems that they had on their property. And I just thought that was really fascinating and cool at the time because I think Silicon Valley would have maybe some expectation that there might be an aversion to that until you get into the more like enterprise grade scale.
Starting point is 01:35:19 Yeah. I think it's a really important topic because you're essentially talking about like democratizing access to technology, right? And certainly with like AI becoming so much more widely available, that was a big step forward. But I mean, this is a big point that's being hit on at this conference and what Palantir is really focusing on
Starting point is 01:35:37 is those LLMs become useless if they're not, if you're not deploying them in the right way with the right like data boundaries right so you know I think that's something that we're seeing even in our universities we do a lot of university research and like all the you know kids or whatever the university students like they're wanting to do experiments with LLMs and do like meat creating like better meat creating because that's something that can happen at the farms and if you can make that automated then you know our ability to produce beef you know is greatly impacted but there's a major issue in secession planning right now for farms right like this is a big thing that's happening like the farmer generation
Starting point is 01:36:15 is getting very old and kids don't want to go and run the farm a lot of them went to big cities yeah jobs and white color work and stuff so uh you know this is a big thing that is at h2a yeah you know these h2a visas where like a lot of the farmers are actually still saying like we need the help from you know we need immigrants to come and uh you know the best way that we can solve that is through automation so i think that that's something i would love to see usda do more of or you know It's something that needs to be answered. I don't have an answer for you right now. But in order for us to continue to, you know, remain self-sufficient and providing food.
Starting point is 01:36:48 Whenever you have a dwindling workforce, increasing the leverage and productivity of the existing workforce, allows you to maintain overall aggregate productivity. This is general technological leverage, so it makes a ton of sense. Do you know anybody that's becoming a farmer? Well, we know some folks. We've had a number of entrepreneurs on the show who are getting into AgTech. Yeah. Building.
Starting point is 01:37:08 We've had the founder of the Laser Wee. that uses a lot of people don't like pesticides, but they don't mind if a pest is zapped with a laser because that's just heat that's being transferred to the particular plant right there and the tomato plant continues flourishing. So it uses just cameras and lasers. Very cool, sort of modern solution to something that people have had a lot of beer around different pesticides. Yeah, we've got a fruit picking robotics company. Yeah, orchard as well. But mostly from tech side, usually with some family lineage, sort of returning to the roots or tapping into their networks to go back. But, I mean, truthfully, I don't know that many people that I grew up with.
Starting point is 01:37:48 I mean, I grew up in L.A., so not much farming activity. I knew one family that had an avocado farm. I mean, it actually, it would be super base to be a large-scale farmer. Like, more people should do it. And maybe you could be the Alex Hormosey of farming. Yeah, no, for real. I mean, you can. So USDA, one of the great things that USDA does is you can get financial assistance.
Starting point is 01:38:05 Like, you get big time, like big time loans. Yeah. USDA you have to go through the process and they were actually doing a loan modernization effort right now trying to make that better but like USDA will fund it for you you got to pay it back but you can like get the interest rate low low rate but subsidized yeah yeah I mean one of our administrators at USDA he like pull up his phone one day and he's like it's a planting day for me and it was his John Deere app well it's like the most advanced you know like he had all these tractors going and there's still people sitting in the tractors but it's to the point where it basically could be fully automated so I mean you can get yourself a couple thousand acres just start, you know, growing corn or wheat or cotton, like cotton and then, you know, whatever. Talk about data collection. I feel like data is the lifeblood of, you know, any decision-making, any ooloup, anything related to Palantir, USDA. And I'm wondering about, like, you mentioned that screw worm. You got to track that thing. It shows up on some cattle ranchers farm, and they're detecting it or they're seeing symptoms. Maybe they know roughly what percentage of the herd is
Starting point is 01:39:07 affected, but how do they actually get that information to you? Are they going to USDA.gov slash report incident or are you pulling things from their filings? Like, how do you want that to evolve? I imagine that with more AI and technology, it's only as good as the data that we can actually put into the system. So just broadly data collection, where is that going these days? Well, if you don't mind, instead of screw room, I'd like to focus on SNAP for that question. Yeah. So SNAP is funded by the federal government, but it's administered by the states. Okay. So when it comes to, so something that we're doing right now, and it was one of the first things that our secretary did, like on our first day, was she did a data call to all the
Starting point is 01:39:46 states that, you know, we want all of your SNAP data to understand how, because it's our responsibility as the funder of this program to understand the integrity, like to verify the integrity of the program. Yeah. So we put a request out there, but it has to come from every single state. Yeah. And a lot of the state programs, they're not technical or they've got contractors that, you know, it's just a difficult thing to get us the data. But then there's also a bunch of states that are just not complying, you know, for whatever reason, which it shouldn't be a problem. I don't understand what the problem is. But the importance of, so that program, that's $100 billion taxpayer dollars a year.
Starting point is 01:40:17 Like, that's pretty substantial. That's an area where we really want to have all angles of the data available so that we can deploy AI and become really smart in detecting fraud. And we want to get it to the point where if somebody's committing snap fraud, we should be able to, it's like your card, right? If somebody stole your card and did a transaction that wasn't recognized, like your card's shut off. Yep, right?
Starting point is 01:40:38 Yep. So we want to get to the point where we're very intelligent and we're confident enough in the system that we can do that. When there's fraud detected, it's off immediately. Because it's an important program. You know, we want to be able to support people that can't support themselves, but it's not arguable that there's a massive amount of fraud in there. I mean, even the organization itself does like an audit every year
Starting point is 01:41:01 and they're at like if there's 12% improper payments. Improper payments is kind of a backward. So 12 billion a year. Yeah, right. And that's just like kind of based on samples. That's money that could actually be going towards the intent of the program. Yeah. Which is to provide food to people that otherwise would be able to get it.
Starting point is 01:41:21 And there's other, you know, you could like rock how Snap has been used to fund like international crime organizations and like terrorist groups and everything. So it's being exploited at a huge level. And I mean, it's something that our secretary has prioritized. But that's probably our biggest F-PAC. What I talked about today is like our most complex system of data. But the SNAP challenge is like the biggest or like the SNAP environment is probably the biggest challenge on the data front. What's next for you?
Starting point is 01:41:54 Are you making a career out of this or are you going to go be a farmer? Hopefully both. Okay. Yeah. Yeah, I mean, yeah, I've got some farmland. Yeah, you do? Trying to convert it. It's like woods right now.
Starting point is 01:42:05 Nice. Where's that? In Virginia. So actually, when I lived in Michigan, we had like a little bit of a farm. We had some goats and sheep and a bunch of chickens and ducks. You don't ever want to get, you don't want to get ducks. You don't want to get goats. Ducks are like really savage.
Starting point is 01:42:21 Yeah. Like a chicken sleeps, you know? So like it's got a normal cycle. Like at nighttime, it goes into the coop and it like sleeps. Ducks don't sleep. No, ducks do not sleep. They like, in our house was kind of this like really unique house. So the windows were like on the ground.
Starting point is 01:42:36 Okay. And the ducks would come and just stare at us in the window. No, they're savage. They just like, they sleep for like 10 minutes at a time. So they'll just like waddle around and then sleep for 10 minutes. You have to have the right balance of female and male ducks. Okay. Otherwise it's like that's really ugly.
Starting point is 01:42:49 Yeah, chickens are a lot. I grew up with chickens. And most of the time they're, they're cool. My dad would build these sort of like complex contraptions to automate. the opening and closure. So he would use like irrigation to, on a timer to fill a bucket, which would lift it up.
Starting point is 01:43:08 Yeah. Interesting. But then I still, core memories as a kid was waking up. My dad would yell like, there's a fox in the coop. And then we'd be like running out. Really?
Starting point is 01:43:19 It would be like game on. Yeah. Yeah. Or you get like skunks in there. Yeah. And, uh, yeah, we would just,
Starting point is 01:43:25 everybody would get up and try to go. deal with it. That's going to be satisfying. That's way more satisfying than some software bug. There's so much fear and doom and blackpilling around data centers. I wanted to hear from you how I imagine your role is to be an advocate for farmers as well on water supplies, things like that. California went through probably many, many really rough years from a water supply. fly on a water scarcity standpoint, thankfully, you know, have had a lot of rains over the last few years. But how are you working with farmers or what is the situation around the kind of like tension between a lot of farmland could also be great land for data centers, right? And there's been some pretty high profile stories where farmers either sold their land.
Starting point is 01:44:24 But from your side, you're trying to make sure that we have, you know, can produce an abundance of food. you know, from a national security standpoint, so how are you guys thinking about that balance? Yeah, I mean, I think the best solution is putting the data centers in space, you know, like, which is totally led by Elon and people are jumping on that train, but it's going to be a couple years, it sounds like, before they're, to that point. We're actually, USDA is pursuing a partnership with SpaceX, and that part isn't ready yet.
Starting point is 01:44:49 We don't really have a need for that, but it's, there's a partnership on the technical side, but there's also just on the, like, conceptual side of the fact that, like, we're aligned, because we do care about conservation, You know, there was a lot of green stuff that was like, you know, not stuff that we care about, but we do care about conserving our land and putting data centers in space just makes a ton of sense. But that being a couple years out, so for today, you know, I'm actually pretty passionate about this because in my hometown of Sleen, Michigan, it's like small town, mostly farmland.
Starting point is 01:45:16 They're putting a data center in there. And it's like, you know, 30 miles from Detroit and Flint and like all these very industrialized areas. and so it's very confusing to me why we wouldn't be putting these data center in their like struggling areas. Detroit's doing all right, but like Flint, struggling big time. Like, why not put a data center there where there's already the infrastructure?
Starting point is 01:45:38 Sure. It's like it's already developed land. But instead, it's like taking these small townships and plopping them in the middle. And the people don't really like it. Now, the boards seem to like it for some reason, the councils. So I don't know what's up with that,
Starting point is 01:45:53 but it doesn't align with what the people want. It creates a massive amount of tax revenue that can be used to fund a bunch of other programs. But it's got to actually flow back to the people who are in the town. And I think that there's like a disconnect there sometimes. Actually, this is kind of outside. But something that I do think is probably going to happen is, you know, there was this big shift to go to the cloud. Right. It's like everybody kind of had their own servers.
Starting point is 01:46:18 You know, it's on-prem and now we're in the cloud. And it's like, really, you just took, you like moved it across the street. Right. and now that people are becoming more aware of like what that means and when it's like oh my data is in a wS or you know it's like and maybe this is a global company and how much can I really trust this company that there's going to be a shift back to caring actually actually caring about where your data is living. I think a good business opportunity would be I think there's a world where there's a culture
Starting point is 01:46:45 that comes up around data centers because like me personally like I want to build like my house is like I'll have a kill switch for my Wi-Fi. and then like we've got the data in the basement and got your raw milk supply no like we're ready to go I mean I was ready to go off the grid before I came and joined the government this is a much better option but
Starting point is 01:47:03 still like I care about my data I don't really want to use YouTube music anymore for my music because now my recommendations are getting worse and you're like very beholden to that it's like I can very easily just have the music buy my music and write a simple program to like make my recommendations and it would be way better because there are certain artists
Starting point is 01:47:18 that are not getting recommended because they're not you know prioritized behind the scenes paying or something. But not everybody's going to want to manage their own servers, right? Jetson just announced a data center that bolts on to the side of your house. Oh, that's sweet. And there's more stuff that's coming that way. I mean, people are doing it the Mac minis.
Starting point is 01:47:35 Can't really do the frontier AI on the Mac minnini just now. But in a few years, you know, the DGX desktops, like, it's all coming. And I think it will be more of an option. So just to, like, kind of wrap this up. So there's this, or this, like, topic. the one of the things that USDA does is we pay 600,000 federal employees. So like we pay Secret Service. We pay DHS.
Starting point is 01:47:56 It's like a thing inside of USDA. Interesting. And so the payroll system that does that is a mainframe. And people literally explained it to me like this thing has a personality. Like you have to like you can't touch it the wrong way. You have to like the right environment to work. And like all these things. I mean like a dozen people came to me to all these things.
Starting point is 01:48:14 So then I went and visited it. I was like really excited to, you know, encounter this being. and it's like a five-year-old brand new like IBM server you know it's just like it's not there's no tapes there's not like a team of people you're under well yeah it's like you know it's like this big okay but i was expecting like a yeah like a small micro data center or something exactly yeah no it's totally modern and it like I like formed this connection with it and I was like we have had so many conversations about you and I just thought that like this is potentially a future where it's like a data center coffee shop, you know, like people might want their data to be hosted
Starting point is 01:48:52 in a place that's like aligned with their views. Sure. Yeah. You know? Because it's like I can trust. Like I don't want this in my house, but I can like trust this like cool company, local company that my data lives there because I don't need to distribute it across the globe. It's like.
Starting point is 01:49:05 Yeah. I'm here. No, that makes sense. That's interesting. Country intelligence. Yeah. Yeah. We talk about this.
Starting point is 01:49:09 This is the future. I love that. Anyways. Thank you so much for coming on the show. Yeah. Great to me. Thank you for doing this work. Have a great.
Starting point is 01:49:16 Absolutely. Thank you. We will wrap up the show. Yeah. Thank you for tuning in with us today, folks. We will be back on Monday. Yes. And we look forward to it. Some business to do tomorrow. But see you Monday. Leave us five stars on Apple Podcasts and Spotify. Sign up for the newsletter, tbpn.com. And have a wonderful weekend. We'll see you later. Goodbye. Goodbye.

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