Hello, and welcome to another episode of the Odd Lots Podcast.
I'm Joe Wisenthal and I'm Tracy Alloway.
Tracy, I mean, I think it goes without saying that the appetite and interest in anything related to AI and making money from AI continues unabated.
Yes, I think that's accurate. Well, it's interesting because you kind of see it from two different sides at the moment. So there are a lot of companies that are talking about investing internally in AI technology, and then there are a lot of investors talking about investing in AI in one way or another.
I mean needless to say. You know, you like throw a dart at nasdextoc some they're talking about, you know, the way AI incorporated. It's also funny because like you like read the uh the earnings transcript of like a grocery storagechep. Yes, and the seats we'll be talking about, you know, how AI is going to help them.
Wasn't this Kroger?
I think so. And to be fair, like I think they actually kind of legitimately have been investing. So it's totally but like they mentioned AI one company I don't like mention it like a dozen times.
I'm pretty sure it was Kroger. Yeah, But I think I've said this on the podcast before. It does feel like there are some people out there who at this point are basically using AI as a synonym for any type of software, just like we use software, we're using AI. But it begs the question of how to smartly invest in a technology that clearly a lot of people are enthused about. But it's also kind of hard to disaggregate a lot of the marketing from the reality.
Well, and the thing that gets me in that I'm still trying to wrap my head around too, is like, especially for the big tech incumbents, And I'm thinking of like Alphabet, Google or whatever, Like they have an amazing business model right now, right, like people search for something and then you're telling the machine exactly what you are looking for, and then the machine knows, okay, well, here are some ads that we can put And I know, like obviously Google is you know, a head very like
front of the curve in terms of AI tech, and they have their own large language models and all of that stuff. But does anyone know that like this is going to turn into like a money making thing for them?
Right?
Will it be anywhere close to this amazing money printing machine that they built when they built the Google search box.
Well, I think that's a really good question. And also, so far we have seen the incumbents come out as the big winners of a lot of this new technology, and I think a that's been unexpected. If you'd ask someone, you know, five years ago, who was going to be the big winner in AI, I don't think anyone would have said microsom right, right, And so that also raises a question of Okay, how did the giants monetize this?
To your point? And then secondly, are there going to be new players who somehow come in and find a better way to do it right?
Like how disruptive it will be?
Yeah?
Well I am excited because I believe we do have the perfect guest. We're going to be speaking with Josh Wolf, founding partner and managing director at Lux Capital, who has been investing in AI since long before it was cool, long before everyone started asking like chat gpt to like, you know, write a song about the FED and the style of Johnny Cash or whatever like long before No
I feel seen, I feel I'm describing myself. I'm describing both of us long before we were all doing that, and so he's going to talk to us about how he thinks about making money in AI and where the value is going to crue in identifying investments. So, Josh, thank you so much for coming on Odd Laps.
Joe Tracy, great to be with you.
Can I ask you a question for real? Like we obviously have this boom, etc. But the tech's been around. Did people basically just get excited because like someone finally put a good ux on top of this technology for a while and suddenly like, oh my god, Like was that sort of what catalyzed this current stage of enthusiasm.
I think the lay answer is what catalyzed this was a sense of conjuring magic. People felt like they were effectively casting spells, like you said, whether it was a Johnny Cash song conjured to you know, to talk about the FED, but it's the feeling that somebody had a superpower.
So I think that's what catalyzed that. Where it was a feeling of positive surprise where people were like, oh my god, like I just created magic and that you know, classic cliche that any sufficiently advanced tech is indistinguishable for magic. This felt like magic now the roots of it go back over a decade, and that's what the public doesn't see. And part of that is the bones, and part of it is the brains the tech infrastructure. So you start
with the GPUs. Now, we've known computing for decades and Intel was the dominant force. Intel made CPU central processing units, and there was this thing off on the side that was just doing graphic processing and it was for video games. I've got this mental model, this framework where a lot of people say that the most dangerous words in investing are,
this time is different. I actually think that there's a secret that people can follow, which is that the most valuable words are whenever you hear a parent say it will rot your brain, that basically presages it predicts the next ten billion dollar industry. So think about this. I mean literally nineteen sixties those hip shaken, Johnny Cash, Elvis, you know, rock and Roll, It'll rot your brain. Boom
ten billion dollar industry. You know, seventies, you know personal computers and chat rooms, and and you know nineties the Internet and these online chat rooms and then gaming. My god, you know, these kids are turning into couch potatoes. Get them off the video games, the video game players of yesterday are today's you know, robotic surgeons and drone pilots.
But what's really important is the tech that was underlying that these massively multiplayer games and people demand and ever higher video resolution and PlayStation competing with Xbox, completing with Nintendo. It created these chips that took in video from a fifteen billion dollar market cap at the time when Intel was one hundred and fifty billion a few years ago, and today it's a trillion dollar business. We had invested
in this company going back about eight years. It was four people off the Stanford campus, your classic garage, and they were literally in a garage at the slack the Stanford Linear Accelerator, sort of secret group, and they were trying to develop self driving cars. And we had put about twenty five million into this small team called Zookes, which was a zoo for robotics. It was a silly name. And we go in there and I see all these people playing video games and I start to get a
little bit upset. I say, we just put a lot of money into this company. What are all these engineers doing. And the founder turned to me and said, no, no, you don't understand the cars that you see outside on these tracks that are running, they're ingesting information at the rate of one second per second, what we call reality, and they're taking light ar and radar and visual cues and thermal sensors and vibrational sensors and all that and
they're processing it. But inside these rooms air conditioned, these people are not playing video games. This is not grand theft or this is not call of duty. The machines are actually running simulations and they are training the cars thousands of simulations a second, and the machines don't know the difference between reality and simulation. And I was like,
oh my god, okay, this is pretty amazing. What are these things running on And they said, those two guys over there are from this company, in Vidia, and we have chips that aren't on the market yet and they are able to do processing like never before. And that sent us on this path as investors in AI. And from there we found this amazing team that was developing like the next gen GPUs and was a guy Navine Row.
He had a company called Nirvana Systems. Intel buys them within a year of US investing for about three hundred and fifty million, becomes the core kernel of Intel's AI system. We going back that guy again, and just last week Data Bricks bought his new company called Mosaic for a billion three congratulations, thank you, wild Ride. But you just try to find these people that have this irreverent view and they sort of see the future and they invented, and you get behind them.
So maybe if I could just step back for a second, and this will sort of maybe tell us a little bit more about what you're doing in the space. But how do you evaluate AI opportunities between the hardware? So the chips where they're so far seems to have been a lot of excitement and activity versus some of the software and the sort of underlying models.
Today in video really has the lead. It's very hard for people to compete. Obviously, there's all kinds of considerations of geopolitical dependency and TSMC and ASML and who's helping to make these chips. But there's an entire very sophisticated stack of semicab equipment manufacturing, IP design so that people can make these chips and then the chips themselves. And these things are very expensive. I mean, these h one hundred chips from Nvidia one hundred thousand dollars. They are
in scarce supply. One of the other really interesting things right now in this chip domain that people should watch for. And then I'll tell you where I think in Vidia is actually quite vulnerable and they're not just pure monopoly here. Anytime that there's hype in a sector, just like you were talking about, you know, Kroger's adding AI to their name. You saw this in the dot coms, you saw it in the Internet, you saw it in mobile everything exactly.
And you know, look, they lower the cost of capital, they take advantage of people's irrationality, they capitalize. And what happens in every field, the hype gets high, the cost of capital gets low, Hundreds, if not thousands of new companies get funded, ninety nine percent of them fail, and from that detritus it becomes the comminatorial fodder for the next wave. So interestingly, with crypto, crypto people were like clamoring for these GPUs. They couldn't get enough of them
so that they could do bitcoin mining. As that market went, you know, hyperbolic, and then crashed. Now you have all these xsgpus and you're starting to read headlines about the bitcoin miners that are selling their GPUs now to the AI researchers, and they're able to do it now, you know, cents on the dollar of what they paid before. So on the hardware side, that's very interesting. But our bed is that there's something different that's happening than betting on
the next chip. Okay, there's More's law which everybody knows about. There's Rocks Law, which basically is that the cost of these semiconductor fabs increases exponentially even as our chips get cheaper.
And sorry, which law?
Which law Rocks named after Arthur Rock, who is one of the you know, first vcs, one of the first funders of Intel in East Coast og VC. So they called it Rocks law because basically, the cost to build these fabs, to make the chips keeps getting more expensive every year and a half or two years. It used to be you know, one hundred million, then it's a billion,
and it's ten billion and so on. Okay, why is that relevant to make these foundation models that we're all using behind the scenes, GPT three and GPT four and what comes next. It used to be a few million dollars maybe ten million to train GPT three GPT four is estimated in the low hundreds of millions of dollars. And whatever comes next, people believe is going to cost about a billion dollars. Why because they have to buy all these in video chips. So in video is telling everybody,
you've got to get these a one hundred chips. We make these h one hundred chips. We make. The reality is actually that there's this interesting vulnerability. This is where we make our speculative bets. Now we might be wrong, but this is what we're betting. We're betting that that's not going to be the case, that it's not going to be just the domain of open AI, that it's not going to be anthropic, that it's not going to
be just the big giants. And we'll talk about how those guys are all intertwined, like you said, with the Microsofts and the Googles and the Metas, etc. Because that's an interesting dynamic. In Vidia has a language, a computer language that people program on and it's called Kuda Cuda, and this has been the dominant form, but it's really vulnerable, and it's vulnerable interestingly because of Facebook Meta. They came up with this language called Pi Torch and a lot
of the developers are moving to pitorch. It's open source, it allows people to do a lot of the AI processing, but hardware agnostic, meaning you don't have to use an in video chip in video. If you use in video chip, you've got a program on Kuda. These guys are saying, we can use an AMD chip, we can use an ASK an application specific integrated circuit. They are saying, we're not going to be beholden to this. So there's two competing software languages that are merging sort of quietly. One
is called PyTorch and one is called Triton. And Triton is from open Ai. People probably trust that one a little bit less, and Pietorch is totally open source but originated from Meta, which is really interesting.
Man, I'm already learning a lot because I was not familiar with PyTorch. You know. So obviously, as you mentioned, and we talked about GPT three, GPT four, chat GPT, this magical search box that got that got everyone's attention. This sort of like what came out of open Ai. But there are others that are building chat pots. How many winners can there be? A like sort of like
how do you think about winners? Either at the foundational model level, like if we started odd lots GPT, is that a worthwhile area or are you thinking like some of these problems are kind of solved and it makes more sense to focus on building something on top of one of these like core winners like GPT four and build some sort of a specific application for an industry that uses a foundational model that already exists.
You're thinking exactly right, and you know you should be a VC because we're betting on the ladder that you're gonna start to get these generalized models which are wowing everybody, although you know, you start to look at some of the usage pattern classic thing, right, people get really excited about the thing, then it starts to die off. Maybe it's the summer, but maybe it's reached a little bit of a plateau of incremental interest. Okay, so let's break
this down in terms of the models. You've got open AI, which will continue to invest a huge amount of money, continue to develop models, continue to wow people. Their next thing will be quote unquote multi modal instead of just text or voice transcription. You'll start to have all kinds of interesting things where like you said, you know, make me the Johnny Cash song, give me a full music video,
print out, all kinds of crazy images. You know, it'll it'll do four different things, and that'll be really limited by people's creativity. But it's going to be general. Now. One of the problems with the general stuff GPT four was Plint was trained on the public Internet, and proud of the problem in the public Internet is that you got a lot of information, but you also have a lot of misinformation. It was trained on Reddit and Twitter and all kinds of repositories of public info, and so
it's going to hallucinate. It's going to give you bs answers. So you have people saying, Okay, that's a problem, there's white space, let me solve it. And it's probably going to be financial and healthcare is our guests, where you get very specialized models that need to have high accuracy, and they're going to be smaller models. So instead of these giant models, they're going to be smaller, more bespoke, more industry verticalized. Even Bloomberg Bloomberg GPT people I think
are really fascinated by what that's going to portend. Because you have a proprietary data set, you've got a locked and user base and sort of a social network and you have reliable, high quality data. So I think that's going to be the next wave. It's going to happen in financial data. My bet is on Bloomberg. It's going to be in healthcare with some of the major healthcare systems,
and I think that that's sort of the next wave. Now, when you look at the big players today with the big foundation models, open ai, if you're really honest about it, they're captive to Microsoft. Microsoft did an incredibly clever deal. They knew that there's no way that the DOJA or the FTC would allow them to actually acquire open ai, so they structured a deal in a way that they
effectively control it, but without doing an acquisition. You look at Google, they're closely tied up with Anthropic, and a lot of these deals are interesting because what happens is the company gets a giant equity investment. In this case, I think Anthropic got about three hundred million from Google, but that money sored around trips. Google gets equity, Anthropic gets cash. That cash then goes back to Google and is spent on compute, so they get to book it
as revenue in Google Cloud. Now Meta is really interesting because just like you said before, Tracy, nobody would have thought Microsoft was the leader or would be a leader in AI. Meta, you know, has been under congressional scrutiny and has been the sort of evil villain of consumer and social media and disrupting and destroying our democracy and
all this stuff. And then they made this bet on the metaverse, which nobody cares about, but this idea of this fetiverse that they're starting to talk about with threads. It's really interesting because they are embracing this idea of open source. Now. They're not doing it benevolently because they think it's a good thing. It's in their self interest. They want to be the sort of network that is
connected to everything else. They don't want to be siloed, and they get to use it as a little bit of achine to stave off the regulatory scrutiny and the public criticism. But I think you've got to watch Meta really closely. In the coming weeks, new releases of open source models that are going to really compete with open AI, lots of partnerships with interesting companies knowing that they themselves couldn't possibly do an acquisition.
You mentioned data just then, And this is something I've been thinking about. But when it comes to AI technology, what's the most important factor? Is it access to reliable data as you mentioned, maybe reliable and exclusive sources of big data, or is it the sort of like underlying modeling technology. And I guess another way of framing it is like, are the big winners going to just be companies like you know, banks, insurers that have huge data sets that they can do things with.
I think so. I think that today it has been a little bit of ignorance arbitrage, meaning the people that really were in the know were the model makers, the people that could design the algorithms to do the predictive analysis and make the models. All those models are either held proprietary in the case of like open AI, or in the case of one of our companies, which has one of the most powerful repositories and one of the most ridiculous names, Hugging Face. One of my partner's amazing
guy Brandon Reeves. He says, you know, there's these French PhD computer scientists and mathematicians. They're hanging out in Brooklyn and they've got this company called Hugging Face. And here's the irony they started out as a chatbot, you know, almost like Joaquin Phoenix and her, and then they became this open source repository for all all the models, and now hundreds of thousands of models, including corporate models that are hosted there and constantly improving, and it's all open source.
And the irony is that OpenAI started as this open model company has become the world's greatest chatbot. So it's sort of inverse. So hugging Face is making these models, and they were the beneficiary very early on of everybody trying to deploy the models. They could run them on Hugging Face, they could use the cloud compute that they provide. And now, Tracy, to your point, you're starting to see people saying, Okay, the thing that we want to do
is build on top of all of these models. What was expensive and scarce and rare before was the compute
and the algorithms, and those are becoming increasingly abundant. So what is scarce today reliable data and proprietary data and the data sets, like you said, it could be big banks, could be consumer data, could be Amazon retail spending information could be Spotify with user's behavior, it could be healthcare systems appropriately anonymized and protected and compliant with HIPPA, but being able to collect all this information and have it
do high quality inference and training. So you have to train the models on the data, and then you have to be able to do the predictability, which is the inference from somebody putting in a prompt. I will say the area that we're probably the most excited about, which is not something that the everydayly person is going to spend time doing. They're not going to be making those Johnny Cash songs or conjuring images on mid Journey and
Dolly is biology. And the key breakthrough here is there's something in all these models called a context window, and all it means is basically how much information you can put it. And if you ever tried to take like a long transcript let's say, of odd lots and throw it into a context window, it might say, oh, it's too long, right. The context window for open AI has been about eight thousand, eight thousand tokens Anthropic now has
one hundred thousand, and that's growing. What that means is the amount of data that you can put into a single prompt is growing exponentially. If you think about the human genome, if you think about genetic data, where you have millions of tokens that you need to be able to put into this effectively. That is the next domain where you're able to put in huge amounts of information and do all kinds of predictive things, from designing new
proteins to discovering drugs. And that's an area where not only are the markets enormous, the information and the expertise is very narrow and specialized. And I think it's going to completely upturn farm and biotech in a giant way.
That's really interesting. You mentioned you're talking about some of these investments that the hyperscalers, the tech giants have made, and I hadn't really appreciated that dynamic before. It's sort of like easier to link it easier for Microsoft to link up with an open AI than to make a big acquisition that's going to get on the you know, the headlines for regulators. It's easier for you know, alphabet
and anthropic et cetera as the VC. And also the point about how a lot of that cash just comes back in terms of all these companies' compute bill is
extremely interesting as a VC. Can you talk a little bit about this dynamic there seems to be a lot because of this of corporate VC in AI specifically, and how that sort of changes the game as a non corporate VC or as an independent VC firm when you're thinking about evaluating companies, the presence of these big the VC arms of the large corporations and how that sort of changes the game.
Great, great question, And I'll give you sort of three quick angles here. The first is how we think about ultimately making money and exiting as a VC, and how these people play in the ecosystem. The second is a related question about how do we ultimately exit our companies, meaning how do we sell them to a large incumbent when you have all this congressional scrutiny and it's very improbable today that Microsoft or Meta could do a big acquisition.
It's just you know, it's a regulatory and problem. And then the third is a geopolitical angle here that I think is stually going to change that. So on the first one, I always say that it sounds a little bit cheesy, but we do a lot of hard signs investing, a lot of deep tech investing, and I like to say like the first law of thermodynamics, energy is not created or destroyed. Risk and value are not created or destroyed.
They just change form. And every risk that I can identify in an early stage company AI or biotech or aerospace, whatever it is, if I can kill that risk, if I can actually say, Okay, there's financing risk or tech risk, or management risk or product risk or customer risk, whatever it is, kill that risk. A later investor coming after us should pay a higher price and demand a lower quantum of return because they're taking less risk, and I
should get rewarded for taking the early risk. So I sort of think about it as destroying risk to create value. Why do I say that, Because if we take an early stage risk in a company to prove that the tech works, I want those corporate vcs coming in. I want them coming in. I want them paying a higher price than we did, providing a lower cost of equity than we did, and helping to both validate and create some competition. So I'll give you an example. Runway mL
a bunch of interesting scientists. One of them was an intern back in the day at Hugging Face became a co founder of this company, Runway. Runway basically said, we can take the cutting edge models that we're developing. They actually were the developer of stable diffusion, and we're gonna
make videos. We're gonna start with two second videos. You talk to the CEO there, Chris, he will say, within the next two years, you have a full feature movie that is entirely generated by people sitting at a computer and just prompting angles, lighting, actors, expressions, the I mean, it's like a little bit hard to fathom. It's like looking at YouTube when it was two hundred and forty pixels versus like eight k today. But it's gonna happen, and it's interesting.
Totally full featured Hollywood film. Everything perfect except the hands.
Exactly, although I think they'll get the hands right and there'll even be some you know, unique special effects. But the sound, the lighting, the angles, everything. I think we're two years from something that actually you think, oh my god, that was made by AI and it'll probably be a shorter film, but it's it's coming. Okay. Why do I
say that. You just had one hundred and forty million dollar financing announced a week or two ago, Google in Video and Salesforce, and those are three great companies one is on the data side, one is on the sort of strategic side, one is on the hardware side that wants them to use their compute. All of those guys are now linked with this company. And so Google's competitors are looking at this, and salesforce doesn't want to be left behind, and and Vidia is looking, and AMD is looking.
And so the more corporate strategic folks that you get in, the more competitive juices start to flow, and it increases the chance for the founders and for us that not only do you get good strategic partners, but you set up competitive dynamic for future exits. And so that's typically you know, great companies get bought, and they get bought because there's petitive fervor from a corp dev person at one of the big companies that says, we can't let
our competitors get this. Okay. So that was the second thing, which is against this regulatory backdrop. You know, who's going to allow these big companies to actually buy these small companies. And I'm hopeful, Okay, this is wishful thinking. This is more prescriptive than observant. I think that the regime today is very focused post twenty sixteen in the election and the chaos and social media and all the abuses, particularly that you saw at Facebook with users and fake information
and misinformation. I think that we are turning our turrets of attention from Congress on the wrong targets. I think that focusing on the domestic industry and trying to slow it down and prevent acquisition and prevent failures and prevent these companies from buying and competing is exactly what some
of our peer adversaries overseas would love. China and particularly the CCP, would love nothing more than for AI in the US to slow down and for all of these iterations and experiments to have problems and further to be a disincentive for vcs to want to fund these things because they'll never get out. And I actually think that you'll see some sea change coming in the next few quarters year two where people say, Okay, wait a second. You know, it isn't that we've met the enemy and
he is us. We actually have to have domestic competitiveness, and one of the great assets that the country has is competitive great technology companies, and we need to let them thrive so that we can compete, particularly with China's CCP.
Just going back to what you said about a fully AI generated movie. When I hear something like that, it sounds incredibly exciting. It also sounds very sci fi and difficult to wrap my head around in various ways. But it kind of leads into a very basic question, which is, what is it like to invest in a an AI right now? So how are you actually doing your due diligence?
You know, if someone comes to you with an opportunity for investing in a new technology, is it like all of us sat here in the office playing around with chat GPT? Is that basically the thrust of due diligence on this technology or something else? And then, secondly, how competitive is it right now from a venture capital perspective to get in on some of these investments, because I imagine, given the level of excitement, there is a lot of money crowding into the space.
So the latter all answer first, which is it's very competitive. I mean, anybody that can write a check is a competitor. Now, if you are a founder, you know, just like if you are a star high school athlete or a star high school scholar, you want to go to the places that reflect the quality of your craft, and so you might want to go to Yale or Princeton or Stanford, or you might want to go to Vanderbilt or Duke
and you know in play or Michigan and playball. And so I think it's the same thing where great founders want to work with great firms. And lux and Sequoia and Andresen and a handful of others, you know, have brands that confer to a founder that we are highly selective, that we have a great network, that we can be value add But anybody can fund any of these companies.
There's always somebody that's got a roommate who's got a mother or father that gave them some money and they became early investors in this company and they made a ton. And so our view is that we are competing on one hand with everybody. Now. The second thing is that I always say there's this five year psychological bias, which is that you want to be invested today where you know we were five years ago, and so I'm trying to figure out what's the next thing three four, five
years ahead that people don't yet appreciate. So you know, I mentioned biology. Now you know all the listeners can go out and try to find the next models in biology. But it's a hard or more complex thing, and I'm confident that there there's a fewer number of investors that actually understand or have the networks of the connection. So we have some slight competitive advantage there. When we're evaluating these things, you're looking at the credibility of the founders.
Many of them happened to be academic published papers, so you can see, for example, the people behind Runway who published the papers that led to stable diffusion, or the team that came out of Google that published the paper on transformers. Not the robots of course, like optimist prime, but the underlying algorithms that led to chat GPT. Every one of the people on those papers have basically gone
on to start companies and raise money. People that were at open Ai have the pedigree, they learned what works, they went and started anthropic and so there's this sort of like just like if you go back in finance to like the Drexel days where they spawned you know, Apollo and Carlisle and Jeffries and all these it's the same sort of thing. There's a diaspora that's coming out of a small group of people and you can reference the credibility and then yes, you sit with them and
you look at what their demos are. And we like to say that we believe before others understand. And so when we had that Runway team in or we had the Hugging Face team in, you know, it was very raw and very crude, and you have to sort of squint and see the future that they're seeing. And then we don't fully fund companies. You give a little bit of money and you say how much money will accomplish what in what period of time? And who will care? Are we going to get paid for the risk that
we're taking and funding you? But I would say right now, if you're funding anything that is application focused, anything that is to your earlier point in the wrappers around the user interface, most of those things are just features. They're not companies. Most of those are going to be competed
away by one hundred other examples. A great example of that is and I can't even remember the name of it now, but there was something that went out and it was an app and you could pay twenty bucks and it would give you one hundred versions of yourself, you know, as a comic book hero and a cowboy and a black and white and long.
I think we signed up for the one month version of that. Yeah, I don't know. I probably forgot to.
Get and spiked and then it's done. And you're going to have tons of those things where it spikes and it's done and it ends up being a feature integrated into Going back to the earliest point you made, many of the big tech companies, the Adobes and the Microsoft's, it's going to be in all their suites. I have one contrarian take here, which is a bit odd as an investors part of a partnership who's funding the deep tech roots of the semiconductors and the infrastructure and the
networks and the models and the algorithms. And despite doing all of that, I actually have a view that what we are doing right now humans talking, even though it's through digital communications in an analog way, that that is actually going to become the scarce thing. You are going to be flooded, I mean utterly inundated by emails, texts, tweets that are not written by humans. And that's not
like two years away, that's like two weeks. The increasing percentage of the communications that you receive even by the way, from people that you know and love and trust are not going to be written by them. They're not going to be spoken by them. You know, voice is going to be the next domain where it's going to be very hard. You're going to be getting a voicemail and the voicemail was not actually spoken by your spouse or
your cousin or kid. I can already and I've already trained a model on my child and I was able to trick my wife on It was you know, funny and scary. The point of this is if that happens, and as that happens, you will start to grow increasingly distrustful of many of the communications you get. It'll be you know, this form of chat fishing is what I
call it. And you'll start to just pine for in person communications and there will be private clubs that form where people come and no devices and you just know that you're talking to a human because increasingly that will be scarce. So the great irony here is the flood of money and talent and productivity in AI and deep technology is probably going to bring us closer to our innate humanity.
It sounds like the answer is tracy, and I need to do a lot more online pub quizzes and other live event I'm that sounds good to me. Can I ask a question though about if it's like if all you have to do is sort of be a graduate from one of the right universities and have your name on some paper that's on like the archive website, what does that mean for recruitment from the companies that you are investing in? And when they want to go out
and hire someone, how is the challenges? Like, no, that person who they probably want to hire can also raise one hundred million dollars And how difficult is it to recruit if there's just like so much money going to you know, a potentially smart founder.
You know, this has been the plague if you're an investor for arguably the past decade in tech broadly, and it's a weird phenomenon. And what I mean by that plague is everybody thought that they could raise money. Amy could They all had a friend or a colleague or a former you know, associated or roommate who raised money and they literally had this reaction he or she just raised that money that valuation? What an idiot? I can
go and do that? And so that set it comparable for them to say I'm going to go do it, and you get this sort of collective craze and so talent gets disfuse and disperse. It's increasing the cost of hiring employees. Valuations are going up, money is being misallocated, like the whole thing. Okay, all of that crashed about a year and a half ago, once rates started rising and the back boom ended and all that except for
this one domain of AI. And so if you actually look at the hiring data, and you know, you have to parse this to see whether it's you know, signals that they're posting jobs or they're actually hiring. But all of the layoffs that you saw, you know, the tens of thousands at Meta and Google and Microsoft, et cetera, you're starting to see this spike back up in some
of the data. And what are they doing they're hiring, whether it's low level jobs for data entry and processing and cleaning, or whether it's cutting edge algorithmic design for AI. There was an existential panic at Google and it's been reported when open ai came out, you know, the all hands deck meeting that people had of my god, we got to throw a ton of talent and money at this so that we don't get left behind. So right now it's a bit of an utter craze. You got
to be really careful. Most of the incumbents are the winners. And there's going to be some small companies that end up with these really interesting novel approaches that are not raising a ton of money, almost out of necessity. They're doing these cheap, very focused models and arguably, and here's another interesting thing, training on distributed computing instead of having
these big centralized clusters of compute. We for example, back to a company called together Compute, and his basic hypothesis was, can I train very sophisticated models on all of the excess compute from the crypto craze or from idle computers? And can I do it for a fraction of the cost of what open ai did. And the answer was yes. And so you're going to see lots of these small
companies that come. And I always say, like, whenever the DOJ comes in and starts looking at monopoly concerns from the big companies, it's never the DOJ that disrupts the big company that people are concerned with. It's always some small competitor. It happened with Microsoft in the late nineties. Google came along. It wasn't the DOJ, it was Google.
You know, it happened with Facebook and Google. It's happened with open Ai and now Facebook, and it'll happen again, and it'll be four guys or girls in a room in Croatia or Singapore or Mexico City or Silicon Valley that come up with the crazy new thing that disrupts the big incumbent.
What impact do you see of AI on how the sort of tech industries slash VC is organized or operating at the moment, Like, do you see people start to respond to the idea that, well, maybe a lot of coding is going to be done by AI in the future. Are people sort of like reorganizing themselves or reorienting themselves ahead of some of this technology.
Definitely. When you look at the copilot, which is both from people like GitHub and open ai and others, it's basically, how can we either help you code or how can we completely if you look at code Interpreter completely write the code for you. You just describe in general lay language what you want to do, and it will in Python
create the code. So pretty much every company will have a form of computer programmers in the software that they use, whether it's open source or proprietary, that is constantly developing and iterating their own applications, and it'll touch everything from customer service to radiology and X ray image analysis to Bloomberg queries, and people will be able to basically have superpowers.
What it means is you'll have the elite codevods that are sort of always on the edge trying to figure out the next thing, and then you'll have the average coders that are basically really leveled up and almost indistinguishable from the prior elite coders. So I do think that what once was really scarce and really valuable, which was top notch what people call ten X coders, is now going to become increasingly commodity and people will start looking. For example, Now the real value is not can you
code for the current moment. It's like, are you an amazing prompt engineer? Like I can't draw, I can't code, I can't write, you know, twelve line stanzas, but I can prompt pretty well. And so it shifts the capability to the creativity of somebody that really wants to describe and control the machine again almost more like casting a spell than the person that actually has the discrete technical capability.
Can I ask you know you mentioned that roughly, I don't know, a year and a half or so ago, or maybe two years ago, this sort of the model that had been working like this incredible trade, this incredible line go up decade or whatever for tech and VC like did sort of crumble to some extent, and we saw the big plunge of the NASDAK And I'm sure there were like tons of funds raised in twenty twenty one and twenty twenty that are like deep underwater and
all that stuff. And everyone knows that when you're at the table now looking at companies, do you still is there still pain and paranoia and fear from that? Have there been like or has the pain of that been internalized in the way or is it you know what? We're just back in at games, back on phone mocycle, back on let's go like how much are that? How much are their scars from the sort of crash of twenty twenty one.
I think people that put a lot of money to work in twenty twenty, twenty twenty one feel a lot of pain they invested at record high multiples. They made the presumption, which was a fair presumption to make that if you fund something there's going to be later stage capital or a robust public market to follow you on. All of that is gone, you know. So so I think we went from what I called what everybody called fomo if you're missing out to what I call sobs,
which was the shame of being suckered. And that wasn't just that wasn't.
Just can I just say, you know what, Can I just say there's no shame? And you know people buy that. It's hard to know at the top is but I think about like the person who paid half a million dollars or millions of dollars like for the board ape nft is that's the ultimate sob. You can never live that down. Okay, keep going. Sorry, I just thought about that recently and that was in my head. Okay, keep going.
But you know, I got a friend, Zach bisin Ed who wrote the book back in the day on.
We've had Yeah, that's amazing exactly.
So, but this is this is one of the things that I love to say, which is not some crazy personal insight. It's just an observable truth, which is that technologies change, and businesses change, and rules change and policies change. Human nature is a constant. Greed and fear is a constant. That is what made Buffett and Monger brilliant. You know, it's what Howard Mark's chronicles all the time. It's what you guys cover the excesses of human emotion. And so
a lot of this is actually capturing. I love finding, like where are people not paying attention? Where is attention scarce? Because where attention is scarce, valuations are going to be low. And we always say, oh, you know, just like everybody says they're contrarian investors, we want people to agree with us, just later. And that's the key. Okay, going back to your question, you know we went from fomo fear of
missing out to sobs the shame of being suckered. And there was an important reason for that, which was the disappearance of two major players, at least symbolically, and that was SoftBank and Tiger. And why was that important? Because you know, you had a venture firm maybe a decade ago that said the price you pay for a company doesn't really matter because there's only ten companies that matter
amongst all the ones that are funded. And if you would have funded LinkedIn or Facebook at five billion or ten billion or twenty, it wouldn't have mattered, right, And so that sort of set a precedent that I think was a bit insidious and danger to say the price doesn't matter, you just have to be in the right companies. Of course, that's only obvious in hindsight. So you had
lots of people that lost valuation discipline. It skewed control and leverage to the founders over from the investors, you know, and you saw weak governance, and you saw fraud and excess and all that kind of stuff, and it's starting to wash out, you know, if not fully, but the disappearance of those two players. Symbolically they were the top ticking,
marginal price setting investors. SoftBank was paying insane prices, and of course, you know, they were all kind of shenanigans of them marking up their own book and pricing up again and all that kind of stuff, and Tiger sort of took a passive indexation and approach, which was something that was widespread in the public markets, but they did in the private markets and say they said, we're just going to be in all the companies, and the winners will make up for the losers, and it'll work when
those kinds of players disappear. Now, all of a sudden, you have a more rational scrutinizing market of people who are afraid of paying ex prices, feel like they need to get a better deal. You're seeing down rounds in companies. You have a morale spin and decline where employees now have underwater stock and need to be refreshed. And here's where things get really interesting. We went from this domain
where I called it the megas and the minnos. The megas were the giant funds that were, you know, ten billion plus and they were writing these giant checks. And the minnos were the thousands of small, sub hundred million dollar funds that were just doing all the seed investing. Both of those guys have been squeezed out, and so now you have a smaller base of capital. You can see it in the data. LPs have pulled back the you know, the champagne has stopped flowing down the pyramid
of glasses. Gps are struggling to raise capital. You know, we closed a billion two fund in ten weeks, which for US was amazing, and it was signal of great support of our LPs and great founders. A lot of funds out there right now are downsizing. It's taking them a lot longer to raise and all of that is a rational reaction to a retraction. So I don't think you see the same fomo. I think you see a lot more fear. People don't want to pay higher prices.
The only area where there's an exception is inside of AI.
You know, I just have one more question, And you sort of touched on this earlier where we were, well, you were talking about parallels between now and the sort of dot com era and the idea that well, you know, maybe eventually some big winners will emerge from this new technology, whether it's AI or the Internet as it was in you know, the late nineteen nineties, early two thousands. What's
the case for investing in AI right now? Rather than waiting a little bit to see where the dust settles, maybe wait to see who those big winners are, or maybe at the very least get a little bit more clarity on how this whole thing is going to be structured or organized.
Well, the argument for waiting is, by the time you know, it's already fully factored into a price. The contract to that is you pay a high price for cheery consensus, as Buffett historically said. And so if everybody agrees that in Nvidia is the winner, you know, that to me gives me pause for concern. You know, Jensen is running high, he's got the iconic leather black jacket, he's becoming the
sort of you know, next profit of tech. Those are all signals that are like, okay, just like the classic you know, sports illustrated curve, simple reversion to the mean, Like what happens? Where's the vulnerability there? To me is the question. And I gave you guys and listeners a clue, which is that Kuda, their language system, is vulnerable to these other ones of py Torch from open source, originated
from Meta and Triton from open Ai. And that means that AMD could actually come from behind and start to take share. It's something that people are skeptical about. So I would say that if you're thinking about investing now, it's too late. It really is, you know, five year psychological bias. You want to be invested five years ago, where everybody wants to be today and vice versa. So i'd be thinking about what are the improbable things that
are likely to happen in the next wave. I'll give you one company that I think is interesting that lux is not invested in. It's a public company and we do private but cloud Flare. You know, if you go back to the Internet early days, one of the winners in the infrastructure was Akamai, the people that were sort of caching and they were helping to shape the structure of the Internet. Cloud Flare is very interesting because they have a lot of compute infrastructure at the edge of
the network. And you hear about this in sort of a hype way sometimes the edge edge inference, edge compute. It's a real thing. Very simply, you're talking on a mobile device or you're on your computer right now, you have to go up to the cloud, and the cloud, you know, which is basically a bunch of servers somewhere with high bandwidth interconnectivity processes. Then you have another domain which is on device, so you you know, do something.
The models get smaller, the chips get better. On your Apple device or your Android or your iPad, you're able to run the AI model there. Cloud Flare is caching a lot of these models and hosting them very close to the users, and they're doing it in thousands or tens of thousands of places all over the world. So I think that they, you know, probably a twenty billion dollars market cap company, billion revenue, fifty sixty percent growth.
I think that they might be poised and aren't one of the names that are on the tips of people's tongues that are benefiting. But we see them in all the infrastructure behind a lot of our companies.
Interesting and a little investment tip, but for people listening.
Yeah, it's just it's you know, do your work investigated. But it's something that is just not on the front page.
And I think that they're poised in the same way that if I go back ten years when I'm in that room in our startup and I got the benefit of this legal inside information of seeing these guys from Nvidia making these chips that were the soul of the new machine, you know, in the proverbial Tracy kittersense, I just see that this infrastructure from folks like out Flair is probably going to win.
So I just have one more question as well, and it actually also is sort of on the public market side, but you know, going back to a company like alphabet and obvious and I sort of talked about this in my introduction, and you know, obviously they've made a lot of AI investments and you know they've been doing research
for a long time. Nonetheless, though, like the core business for now and for probably least the medium term is going to be what we call, you know, Google dot com or something like that, and enter a search and get served a really compelling ad because it's very good at that. Like, in your view, how confident should people be that some of these big companies can find you know, can actually produce revenue and income. I mean, like inference is a lot costlier, I presume than a typical search query.
We don't know what the advertising is going to look around it, et cetera. We don't really know. Like, do you think it's obvious that these big companies are going to find ways to actually sell something profitably from this tech?
I do, if there's good, strong leadership. And that sounds like a you know, a weasel answer, but you know, historically, if you look at Satia and Microsoft and you look at Google, I just feel like Google was run by the inmates for a very long time, and this competitive near existential threat from open Ai has given a sense of urgency for them to refocus and say, Okay, we got to stop with all of the social stuff that is happening internally and we got to really focus on
what we are roots were. Google hasn't really had a killer product, I mean, a true new product in over ten years. But what's interesting is YouTube is a big winning I mean, that was a great acquisition. It's a thriving product. It's generating a lot of money. Hopefully they don't go crazy and spend, you know, like everybody else
in the streaming wars. But just like Facebook, right, Facebook dot com is dead right, what makes money for Facebook is everything else the Instagram and WhatsApp and if Threads takes off, you know who knows, you know, and they're able to capture some modicum of the enterprise value that has been destroyed by Elon with Twitter. So it's all of these ancillary product categories inside of the mothership that I think that people are cranking and figuring out how
do we make this work. Google's prominence and search I think is going to persist. I think it'll extend into other domains. I think it's less likely to be threatened by a lot of the AI stuff. They'll integrate it barred when it first launched, socked. Now it's not bad, you know, Incremental search results are pretty good, but the corpus of information that they have from my photos, to
my emails to my calendar, I'm pretty locked in. And I'm relatively trusting of Google, also relatively, if not high, trusting of Apple, and I've historically been very low trusting of Meta. I always say that whenever Meta launched is a product, the one feature that it lacks is trust. And I think they're realizing, even if it's a little bit of a showcase facade for both the regulator regulators and the critics, that they really have to double down on trust. And one of the ways to do that
is a lot of open source stuff. So really watch for Meta to embrace open source in a giant way.
Josh Wolf Lux Capital. That was a great conversation, great overview of sort of the market right now. Thank you so much for coming on out Law. It's got to have you back again.
Joe Tracy, great to be with you.
Tracy, can I just say, you know, I don't know, listeners might not. I'm an amateur, you know, songwriter, and my only goal is to get something published before like the computers are just like so good at it. That's like my you know, I've like maybe I have like a window of like a year or two. I just want like one public you know. I just want to have like one something someone singing one of my songs, and then the computers can do their things.
I mean, I do think this is kind of most disturbing aspect of this whole AI discussion, which is that so far it seems to mostly apply to the fun stuff songwriting, poetry, making movies, and we're still sort of doing all the dredge work ourselves. But that was a
really interesting conversation, I do think. So, I don't know, I take Josh's point about getting in early on some of this, but I'm looking at a chart of what am I looking at Google, you know, since the IPO, and if you got in in two thousand and seven, two thousand and eight, like I think you'd still be okay. You would have missed like maybe the life changing money, but you'd still be up significantly on your investment. So
I do wonder. Obviously there's a lot of excitement around the prospects of AI and what it means for various companies. But I also feel like if you waited for the dust to settle a little bit, you wouldn't necessarily be automatically losing it.
I like how your question and your point here is not really is basically like questioning the entire premise of venture venture capital, Like that is actually the entire subtext of question.
After twenty twenty two, I think that's a valid question.
I would just wait for it all to go public and yeah, yeah, it's fine by the index. The other thing which I hadn't appreciated, which I thought was really interesting. You know, obviously I know that you know, Microsoft, Open AI, Google or alphabet anthropic, but the sort of like the way in which some of this may be a function
of the regulatory department. I had not really like appreciated that and why, Like, Okay, it's it's gonna be hard to like make big acquisitions, so you just invest in companies who spend most of their money with you, Like yeah, yeah, it's like sort of I hadn't appreciated that element.
No, I think that was a really interesting angle and actually explains a lot of the choices and decisions that are being made at the moment, because sometimes you look at them and you're like, this is this is interesting. But I'm not sure I completely see what's happening here. But if you look at it from a regulatory slash reputational angle, it makes a lot of sense.
Uh, you know what, I'm really excited about what Bloomberg Bloomberg GPT did. Josh said it's going to be one of the winners.
I feel like we should be doing a disclaimer here.
We work for Bloomberg. It's fairly obvious we worked for Bloomberg, but we did not tell Josh to say that Bloomberg GPT. But there's point about who has actually had well quality data is interesting?
Yeah, And I would say so far, a lot of the excitement is around the chip makers, some of the incumbents like Microsoft. I haven't seen people get really excited about like insurance companies as an AI play yet, but I think there's something there. The other thing I wanted to say, and you asked this question about the user interphase, and I actually think it's really important in the story here.
And this is where I would draw a parallel with blockchain and crypto, which is the interesting thing about crypto was that you could participate in this as a sort of normal person. You know, you could open a wallet of some sort and buy whatever your preferred cryptocurrency is, so you could participate in it. And I think having something like open ai and various other models that you can play around with like clearly has drawn in that additional Oh yeah, like that is a big part of it.
Absolutely. I do think like it's just like we've all had the jaw dropping moment which is like you didn't really get with crypto. It's like, yeah, you could do it, but then it's like, Okay, now I have this coin in my wallet, right, that is true, And then but then you just like you know, literally it takes you ten seconds to like be blown away.
Is just so powerful. Yeah, shall we leave it there?
Let's leave it there?
All right.
This has been another episode of the All Thoughts Podcast. I'm Tracy Alloway. You can follow me on Twitter at Tracy Alloway.
And I'm Jill Why Isn't Though? You can follow me on Twitter at the Stalwart. Follow our guest Josh Wolf on Twitter. He's at wolf Josh. Follow our producers Carmen Rodriguez at Carmen Arman and dash Ol Bennett at dashbot. And check out all of the Bloomberg podcasts under the handle ad Podcasts. And for more odd Lots content, go to Bloomberg dot com slash odd Lots, where we have transcripts and a blog and a weekly newsletter. And check out the discord where we chat about all these things
twenty four to seven. We even have an AI room in there. Some of the questions from the conversation I sourced from there, so go check it out Discord dot gg slash odd Lots.
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