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Hello and welcome to another episode of the Odd Lots Podcast.
I'm Joe Wisenthal and I'm Tracy Alloway.
Tracy, Obviously, there's a lot of there's an infinite number of angles to artificial intelligence and what's going on in the industry. But one thing that I find like striking about this that feels very different from other stories in tech, and I don't really know what it's about, is why you hear it talked about in sort of geopolitical strategic terms, and why countries, whether it's the US, China, but also Saudi Arabia, Europe, really feel like they need to have
like their own domestic model or champion. It's almost like it's like oil or something where countries have at least been convinced that it's very important for them to have some sort of homegrown AI.
Yeah, you're right.
I hadn't really thought about it, but that's absolutely true. People talk about it almost as a strategic resource at this point and sort of in existential terms, and you never saw anyone talking about like the need for a national SaaS strategy or something like that.
That's exactly what I think right, Like you didn't know what it's like, Oh, well, we have to have our own Slack or we have to.
Have our own salesforce.
We have to have our own British salesforce and the Saudi Arabia salesforce. But there's something about AI models and like, you know, it's sort of about the chips specifically, and you know everyone wants the chips, right, but there also seems to be something where like countries want to like really develop their own models and have their own open AI or whatever it is.
Yeah, I also wonder how much of it has to do with the data and the idea that like the data is what you're training the model on, and so there's like privacy concerns isn't the right word, but you know, countries want to have some control over their own data. They don't want full transparency. So I wonder how much
that feeds into it. But you're right, we have gotten used to talking about the AI arms race in one way or another, and we should dig into why that is, like why is it such a competitive piece of technology?
Totally? And I'd say, you know, there's two other things here, which is that obviously the ultimate in everything these days. A lot of it is US China and how US models and US companies compared to Chinese models and Chinese companies, which I don't think many Americans have much visibility on, or at least I certainly don't. I don't really know
what China's AI strategy is. And then there is of course existing policy and how that might change under a Trump administration and what that might do both to you as China relations in general, and I don't know if that's going to be, you know, some sort of shift in how Trump might think about AI versus a Biden administration.
It is true that, like certainly the semiconductor portion of AI is something that has been competitive for a while now, and we've seen that in both the Trump administration and continued under Biden. So there is that kind of commonality running through it. But I am very interested in getting more of a handle on exactly what China is doing in this space and what it sees potentially as like an actual threat here totally.
Well, I'm very excited to say that we have two perfect guests who really know all the dimensions of this topic extremely well. We're going to be speaking with Jordan Schneider He is the founder of the China Talk podcast and newsletter, one of my favorite sources for understanding what's going on in China. And we're also going to be speaking with Kevin Chu. He is the author of the Interconnected newsletter and also a hedge fund manager at Interconnected Capital.
Writes fantastic stuff like sort of really digging into some of the technical and tech sides of all this, so hopefully we will walk out of here with a little more understanding. Jordan and Kevin, thank you so much for coming on OUTE.
Thank you so much for having us first time.
Long time. What a treat.
Love when people say that, I love hearing it reminds me of like listening to like sports talk radio as a kid. I'll just start with the question, what is it about AI? And is it inherent or is it sort of the industry's marketing job. But what is it about AI that unlike a tracing mention, you know, different from like CRM software, social networking or whatever that countries really seem to prize having some aspect of it be homegrown.
Yeah, I couldn't help a chuckle a little bit when you guys are doing your intro about the national SAS or what is your national CRM since I am a software investor by day. You know, it's really interesting if you think about how AI, when we talk about it generally has been the formulated you know, we're really talking about generative AI, right, large language models in particular. There are a bunch of other AI machine learning use cases that we're gonna you know, just stick to the side
for now. There's something very deeply cultural when you start to model at the entire Internet's information. When it comes to large language model, right, it's essentially a three dimensional space where every single token, where every single word has a line that's drawn from one word to the other. That kind of formulates knowledge or formulates you know, truth
in a lot of ways. And I would say, so far, given all the dominant products SHAT, GPT, clode, Gemini, etc. They've been modeling Internet in general, which has a lot of content from the American Internet if you want to think about that, or you know, Western European Internet, and there are other versions of the Internet in Japan and China in particular, where the ecosystem is such a wall garden that the way knowledge and culture and thoughts and
the you know, history is being expressed is very different, and I think that is what triggered a lot of country to come to an understanding that this AI thing isn't just a blown up spreadsheet with good UI that you can track, you know, pipeline or you know, have a bunch of messages going around to help your workplace go a little bit faster. It is a codification of your people.
And collective truth and culture.
And I will say collectively, your public discourse, maybe even an element of your private discourse that's been published on the internet is being codified in a particular large language model.
Just to add to that and bring up the US China context. So you know, if we take as a premise that the US and China are in a strategic competition, what nations do when they try to when they compete is they try to, you know, maximize national power. What is national power composed of how big your economy is
and how powerful your military is. Now, you know, there's still a lot of debate to be about just how important AI might be to the future of militaries and the future of productivity growth, But it is the technology today that has the most potential to really change long
term military and economic trajectories. And I think we've seen over the past few years the realization, maybe starting with the October seventh, twenty twenty two export controls, that having a completely open exchange between the US and China is too much of a risk for American policy makers to stomach.
And sort of in response to that, simultaneously and particularly in response to the October seventh export controls, you've seen trying to really aggressively start to invest and support both their semiconductor as well as broader AI ecosystems.
Wait, so I want to press on this point that Kevin also brought up. But the idea of like AI as a means of like cementing cultural and informational control. Did anyone play around with the what was it called like the study?
She thought app?
Yeah, it was like the open AI app that was trained on. Xi Jinping thought, here's.
The funny thing is that app is like actually kind of vaporware. We tried to find it on China Talk you guys should all subscribe to and couldn't. And I think this is one of the really interesting pieces of the Chinese government and how they're specifically playing on the
sort of AI model side of things. As I've sort of if you look at a lot of the Chinese government sponsored projects so far, particularly on the model generation or like national data set side, and you try to get to ground truth on them, there's really not a lot of there there. But that's not to say that the Chinese sort of VC backed model ecosystem isn't the
real deal. We've seen companies raise multiple billions of dollars and be able to publish models, which are you know, maybe six months behind the leading edge when you when you're looking at open AI or anthropic and the sort of delta between the government back stuff that you know, can't pay for the best engineers or what have you and these you know, DRIPUAI, Moonshot, Ernie it Baydu. Those folks are really running just as hard as what you're seeing in the West.
Let me ask a related question, but in terms of Chinese AI models, what do we know about the data sets that they're being trained on and are there any limitations that are introduced by the fact that you know, they are being developed within what is ostensibly all walled, you know, the Great Firewall of China Internet. Do they still have access to X China data sets that they can pull in even if those aren't being sort of publicly dispensed to normal people.
So I think they definitely do. The one thing that all these Chinese tech companies, the model makers in particular, are very aware of, and I would say any tech company in China has to be aware of, is the redline that cannot cross when it comes to certain things that their product may generate, right, And I think this is one of the reasons why building a general of
AI application or company in China is so hard. Yes, they do have access to you know, Wikipedia or the Common Crawl, any of the kind of the standard table stake data sets that you use to train all the large language models so far, and then they can inject some of the data that is available inside the Chinese Internet kind of garden a wall garden, if you will. But there are two interesting things about the Chinese Internet right.
One is I'm assuming everybody who's listening to this is aware of the level of censorship that's in public discourse on the Chinese Internet. That does not stop Chinese nedicence from wanting to express themselves in a certain way. So if you are in a ficianadel of the Chinese language.
You will see a lot of contortions of linguistic kind of acrobats being used in all kinds of ways to publish public in China that you can convey certain meanings, but when it comes to modeling the language actually becomes very difficult to model the accuracy of the language. So that's number one and number two because of again the red line of censorship moving at all times, so it's not like a static target. A lot of contents actually
get deleted on the Chinese Internet. Things just disappear, you know, if you don't archive of a certain article, when you read it two days later, it might be gone for you know, reasons that a lot of people can't even decipher even if you think about this all the time, and that reduces the quantity. And I would say the quality of training data that exists on their Chinese Internet in particular, that I think is almost built in disadvantage
to a lot of Chinese model makers. They're building their own lom you know, despite all odds there of course, still continuing their effort to do so.
One thing I like about some of the AI conversations is they get into the realm of linguistic and linguistic theory. Can I just press you on that point about the nature of the language itself and the effect that that has on building a high quality model.
Yeah, so, I would say two things that's interesting about their Chinese language in particular is that one, there are a lot of homonyms. There are a lot of sounds. There are a lot of characters that sound almost exactly the same. That means, you know, nothing similar.
The famous example is the whole like It's either a poem or a very long sentence with like ma like force. And all these ma can be depending on the intonation, can like mean a bunch of different things. You can construct a whole poem or sentence out of that single syllable.
That's right like ma ma ma right the four tones of the standard Chinese Mandarin language. And if you just put that into the tech context, you know, Jack Ma Mayun, the founder of Ali Baba, has been either a celebrated entrepreneur or a villain, depending on how you think about his current public stature. Right. That makes the modeling of any let's just say, publicly available information about Jack Ma pretty difficult when you're also building a generative application on
top of it. And there are a lot of these examples in the Chinese linguistic case. That makes not just the modeling difficult on a technical sense, but also what can or you cannot generate based on the red lines that you may or may not have to cross.
Yeah, So, just to play Devil's advocate here for a second, GPT four was trained on zero point two percent Mandarin and is ninety nine percent as smart in Chinese as it is in English. And when you look at what some folks out of the leading Chinese AI labs are saying, like they're perfectly happy getting the vast majority of their training data from English and sort of pourting it over
to Chinese. So there is a little challenge there. But I also think it's it's the other thing on this sort of are the model is going to be lobotomized because they will be able to be too politically sensitive. I mean, look, I feel like this is basically a solved problem. If you try to make Chatgypt say something racist or sexist, it basically won't. And if Chinese internet companies have data sets on anything, it's all the posts that they've censored over the past twenty years, you know.
Having also tried to do this exercise of getting Chinese models to say politically racy stuff. It is a pretty hard slog. So you know, on the plus side, I think, you know, not all data that's going to matter for the future of AI and it's economic and military impact is going to be linguistic and text based. And you know, being the world's manufacturing center, putting cameras into all those factories may help you train a sort of like AI
manufacturing robot a lot better. So there are real trade offs here, and it's not just like China is sitting behind the eight bombs.
I just realized how old I am because I remember when China's censors like actually physically used to cross things out in newspapers that were like important in Beijing. This would have been around like two thousand and four, two thousand and five. It used to be done by hand.
One thing I wanted to ask, since Kevin brought up the sort of like vagaries of Chinese politics where one day something is really in and the next day something is very much out, we have seen that bleed into financial markets and specifically you know, funding for technology, primarily internet technology SaaS in recent years, but also into housing and things like that with the three redlines policy. So I'm curious, like, what does the funding environment actually look
like for AI at the moment? Is there a lot of like government support for developing this technology?
And just while you're answering that, like who are some of the companies, Yeah, you shouldn't, like who are the open AI and anthropic of China that we should know about it?
Yeah?
And how are they raising money? Like is most of it coming from vcs, vcs or public vironments?
Yeah? So when it comes to the AI model makers, right, I'll put that in one category of new startups, which actually kind of came up around the same time as all the other ones that we already know here in the US as well. You have Dripai, which is, you know, purported to be one of the company that's closest to open ai. You know, they're avow to all so develop AGI. They have strong academic roots from Qinghuai University. You have
Moonsha that I think Jordan mentioned. You have zero one dot Ai, which is a lee hai Fu's a new venture building models as well. And I would say they're probably six or seven Chinese unicorns that currently exist that receive funding mostly from your Chinese standard vcs. These are vcs that are just like the Sequoias and the and
reasons of the world. Right, you have Jung Fund, you have a Hillhouse Capital, you have home Shin who was formerly a Sequoia capital China, and a few others pouring money into this particular lane because one thing I think we should back up is that this is one of the very few lanes that vcs in China can actually put a lot of money into and expect the kind of return that you would expect from a pure financial VC because a lot of other parts of the Chinese
tech ecosystem has been battered down quite a bit because of all the differences in the policy crackdown that happened in the last few years or so. So those are some of the big model maker players, and a lot of them are attracting large corporate venture investments from Alibaba in particular, but also Huaiwi, ten Cent, all the big
dogs pouring into it. Very similar again to what we have here in the US, where Microsoft, Google and Amazon all have like their player on the field, if you will, when it comes to startups, and even some of the deal structures are similar I think one of Ali Baba's deal is that half of the investment they're making has to go into cloud credits to use the GPU service that are in Alibaba Cloud to be able to train their model as a way to entice, but also to
tie them into Ali Baba's on ecosystem. So actually they're probably more similarities, I would say, than differences when it comes to the AI model makers funded by vcs, But that's about a different as similar as it gets.
Jordan, you mentioned the robots and the idea that another form of data is just all the visual information that's inside a factory, and we did an episode on sort of the connection with AI and robotics with Josh Wolf and we talked about some of these ideas. But you know, you mentioned you know you're talking about okay, they also
want to achieve AGI. Are there distinct aspects though of the strategy that is like oh no, like okay, we are thinking about AI in the chatbot sense, So that is the way most people in the US think about what these AI companies have delivered. Is it the same with these Chinese powerhouses or are they thinking about different forms of expression maybe in a more industrial manner. Et cetera than the sort of chatbot idiom.
So Joe one thing that this is more of a recent development. So I think just the last week, Shanghai hosted its annual World AI conference, right, and during this conference is a big show and there I believe twenty five different brands of humanoid robots that were on display in the expo you know, hall of this center. So that illustrates I think to you that I think the direction I think Tracy asked about this, you know, where's the funding going to?
Right?
I think if the national government were to have a say, a lot of the funding ought to be go into AI applications that are what I call heart tech things that you can actually touch, things that actually do certain things in the real world, whether it's in a car factory, in a manufacturing shop, or even actual robots that will be in your home. And I think that is the direction that a lot of Chinese companies that are not kind of in the model building world are going into.
And I think there's actually one very important, kind of larger existential crisis that China's dealing with and a lot of people don't talk about in the context of AI, which is that by the end of this century, the UN is projecting that the entire population of China will go down to around eight hundred million to about one point four billion right now, so roughly have and half of that eight hundred million people will be people who are sixty years or older. So demography is destiny in
a lot of ways. And if you're a Chinese policymaker steering into this abyss that we're just going to basically rent out of people, then you know, having a lot of AI robotics is almost a national imperative for China to solve its own demographic problem with or without, you know, everything else going on around the world.
Okay, So one of the benefits of having a command economy essentially is that Chinese policy makers can come out and say, we want everyone to direct their money away from I don't know, online internet e commerce platforms and into hard technology like semiconductors or developing some new chatbot or something like that. But the downside is that you can get excess capital to put it politely crowded into
these things. Is that a concern when it comes to AI, or is it that the technology is so strategically important and so competitive that it's not really a concern at the moment, you know.
So I think it's an interesting contrast you can look at between sort of the AI model makers and the semiconductor and the broader semiconductor ecosystem. So what Kevin laid out, which is what I see as well, is basically like a largely private sector driven thing with the same kind of boom and bust or boom and like question mark that we're current living living into in the West, happening in China.
Now.
You know, what's happened in the Chinese semiconductor ecosystem over the past decade or so is really different. So you know, if you're talking about the US Chips Act, which didn't come online until twenty twenty two, and it's going to spend roughly seventy five billion dollars, like we've seen that level of investment doubled or even trebled over the past ten years in the Chinese government, you know, she is
really semiconductor and hardware and industrial pilled. And I think he also from a long time ago saw the writing on the wall of these you know, of these export restrictions coming on as uh as semi conductors became more and more, more and more and more strategic technology.
She she should ping. Sounds like he could be the perfect guest if anyone wants to disseminate that. If anyone's listening, someone who's.
To talk about semi conduct if he if he's.
Hardware and chip pilled, it sounds like he would be a great guest. So let's talk a little bit more. We know that the Biden administration has imposed, along with some allies, various limitations on the export of advanced chips
and so forth. But why don't one of you just sort of give us, like the broad outline beyond or including the chip limitations of US policy towards you know, international AI policy towards China, and how we're actively implementing the strategic aspect or the geopolitical aspect of AI.
Again. You know, I started with this idea that AI is a strategic, dual use technology that has big implications both for the future of economic growth as well as the future of military power. So in September of twenty twenty two, a few weeks before the October seventh Export controls, Jake Sulivan gave a speech where he said that it's not good enough to just be in the lead, but that the US needs to have as far a lead as possible in critical emerging strategic technologies, AI being first
and foremost on that list. So we've seen a number of different efforts on you know, from both a data and algorithmic as well as a compute perspective, to make sure that America can continue to run faster than China. So from export controls, you have limitations on the types
of chips which you can be exported into China. We've had EUV restrictions so that China can't make the most advanced chips domestically, the types of chips that the US is no longer allowing Chinese firms to buy in country, We're starting to see more and more restrict you know, there's movement the water around restrictions of letting Chinese firms access those types of chips abroad and with foreign cloud providers.
And then there's also starting to be some interesting movement around restrictions when it comes to both data and algorithms. On the data side, you're starting to see new data walls be lifted with regards to electric vehicles in particular, we'll maybe see more coming forward, and then from an algorithmic perspective, you know, two weeks ago open aiy said that they were no longer comfortable using a giving API access to developers based in the PRC, and that may
be a harbinger of something larger. Congress recently gave this the power to explicitly stop algorithmic exports. So the wall slowly but surely is coming up, and the Chinese developers and semiconductor ecosystems response to this is really interesting because you're seeing very aggressive investment on the hardware side. You see stock piling of chips and even billions of dollars
of the best of what Nvidia can legally export to them. Smuggling, too, is starting to be a real thing we recently saw some mainstream coverage of, so you know, there will be kind of gray areas and people trying to play corner cases to get more technology and access. Industrial espionage as well as something that starts starting to bubble up a
bit more. The scandal of sorts with Leopold Ashenbrett are getting fired, only for two weeks later Open ai to bring on General Nakasoni, the former head of the NSA, to shore up their internal controls, I think is an interesting leading indicator of what's to come on that front.
One of the things that you sometimes hear about restrictions on, for instance, semiconductor exports to China is the idea that by cutting off the country from all this external technology, you're only going to accelerate its own technological progress and its own development of leading edge chips and things like that. How much credence do you lend to those types of arguments.
I think it's a moving target right now. I think logically you would expect China to put all of this resources into building the best GPU possible, right if we all think AI is going to be the next a big paradigm shift for national competitiveness, not just market competitiveness yet right now, because of I will say, the effectiveness of US expert control, two rounds of export control, and also working with allies around the world to solidify expert control,
it's actually been a very difficult time for China to catch up from the hardware side, both in terms of designing the best GPU possible, but also to manufacture the chips in bulk using its own chip boundry SMIC because you know, China's been cut off from TSMC to be able to meet demand that China itself, its own companies need to build its own product, let alone expanding to
you know, other parts around the world. And that's why you see all these behaviors still of either Chinese developers using VPNs and other ways to access open ais APIs, or you have these sort of smuggling of prevented or prohibited in media chips into China to be able to
keep the building of the infrastructure going. And I think that goes back to what you were talking about Tracy earlier, is that there is a limitation to how much the national government wants certain things to happen and whether that could actually happen or not when it comes to especially
building hard tech in China. When it comes to AI infrastructure in particular, we see a lot of pretty poor examples of government money being wasted in chip manufacturing already in a few years before AI was even really a thing, and now it's in a very tough spot. I think for a lot of people in China to be able to overcome the current hurdle, and I think this gap, this specifically hardware GPU imposed gap, will only widen when
Nvidia mass produced. It is a black Well chip, which is the next generation of GPU that's going to you know, be produced in bulk starting next year, which has a huge performance kind of advantage, you know, roughly thirty two times more than the A chips, which is what opening I used to train GPT for to be able to you know, close that gap. So I think unfortunately for the Chinese technology builders, the gap will only widen.
Jordan, I think you've talked about this before as well, the idea that if China is restricted in the amount of compute that it has access to, maybe there's a scenario where its own aid has just become really really efficient in one way or another.
Yeah. I mean this is you know, when you're under constraints and there's money to be made, and you know, engineers will find a way, right, So I on the compute side, right. You know, it's interesting thinking about Blackwell. Only about ten percent of the gains that it is making from the past generation came from a node size. The vast majority of the gains that they've been able to squeeze into the Blackwell system are from stuff like
like optics and interconnects and that stuff. High bandwidth memory. That's type of stuff is a lot more difficult to export control than just one machine coming out of the Netherlands. So you know, it's difficult. There's tens of billions of dollars of R and D that's been on this stuff. But it's sort of an open question to me how difficult re engineering all the innovations that went into Blackwell is going to be versus re engineering an e UV machine,
which like seems to be next to impossible. This is an important point just to jump in here. Like when people when in pop culture, when people talk about chips, it's almost always like node size and smaller and smaller.
But this idea of like the vibrant pop culture of semi people. But this is I'm not sure we're quite there.
This is how like ignorant people like myself if I think like, oh, well, you know, the cutting edge chip, it's just in my mind smaller, nodest. But this is like a really important point that you hit on that when actually when we're talking about say in video GPUs, there are other dimensions that are actually much more important than node size.
That's right. And you know, if you look at all the new products in the video is releasing to the market is not a chip. Of course, you can buy a chip, but you know it's really eight chips together connected with high bandwidth memory and the interconnects and all the other elements that goes into a system. And then next generation the packaging will be thirty six chip and
then seventy two chip. And of course there's a good reason for that because all these models, if you believe that larger models become smarter models, then they need massive amounts of all processing to be able to train all these model officially and to deploy them officially. So that's why you tie up all these high performing GPUs together, and I think that's what makes this hardware gap even more difficult from a system level, for even a cloud
level to really overcome. I think, you know, before, we've been talking a lot about the chip war between different countries. I think we're vastly quickly evolving into a cloud war between different countries competing on the AI and technology in general, because it's all about the cloud and the system and how officially can you acquire and then utilize them. That makes a big difference.
Tell me if I'm wrong here, But my sense also with like semiconductor rivalry, maybe to a lesser extent, but certainly with the AI rivalry, is that it's mostly a competition between the US and China. Like, as far as I can tell, Europe isn't necessarily obsessing about developing national chat GPT versions as much as you know the US and China are. Why Why is that so?
You know, I think from a from the semiconductor perspective, right, like it's really China and the rest of the world.
There is a very integrated global ecosystem in which you have European players, East Asian players, South Asian players, the US that are all kind of working together to push, you know, to push node sides and improve the sort and develop the sorts of technologies which are going into something like Blackwell and China, you know, has kind of been cut off or is at some levels being cut off from that broader ecosystem and having to start to domesticate a lot of the technologies that they were able
to formally rely on from other countries. Now, Kevin, I don't know if you want to talk to the like every country with its own model and own cloud thing, because I think that's a really interesting I'm curious about that.
Yeah, I think you know not to beat on Europe too much, but I do think given just the regulatory I was ay bias right to wars releasing new technology really quickly. In general, it just isn't a very hospitable environment to be able to build a product legit CHATGPT, which was really released I believe on a whim or on a quick competitive note. It wasn't something that's super thought through. But because of the environment that we have in America, we allow that sort of things to happen
and then we think about regulation later. Coming back to the national angle, I think there is a strong sort of motivation, coming back to the cultural point that every country does want its own national champion to some extent. I think French France has Misstraw, which it kind of puts up as its own national champion. It's a very strong open source AI model maker that has a lot
of strong relationship with Microsoft as well. I think there's another company out of Germany that also is a model maker. So there are a few examples out there. Even Japan has a I believe sakana Ai, which is its own possible startup national champion to model, Japan's you know, culture or truth or knowledge or whatnot into a national model,
and India has a few others as well. And the Middle East is another very important region that is playing an increasingly large role, I think, as the government actually pushed out some really good open source model about a year ago called Falcon that series which has been able to put the Middle East on the map when it comes to national development of AM models. So there is a lot going on, but certainly not nearly as much as the US China competition. Besides that, actually.
You just reminded me this is something I've always wondered as well, but what is the state of open source in China? Like, is it as much of a thing as it is in the States or elsewhere? What does that actually look like in terms of sharing code and things like that.
So it's very much a thing in fact. So I used to work at a GitHub, which you know, is one of the largest a code repository of open source code and to drive in a natural expansion, so I got to work with a lot of Chinese open source developers and it's actually the very few, i would say vibrant communities that really embrace a lot of openness transparency.
They have this really nerdy holiday on October twenty fourth, which if you you know binary is you know to to Day, It's ten exactly, But basically it's a called Programmer Day and it's a completely grassroots holiday in China that celebrates open source development. They have, you know, a huge party, a huge convention. They talk about open source sharing. They all use you know, GitHub or hugging Face or
all your your usual open source collaboration platform. So the open source kind of movement, if you will, has really deep roots in China and that has been around for a couple of decades already before we have this kind of open source closed source model dichotomy that's happening in AI.
In fact, a few of the nonprofits that are kind of government affiliated in China has released open source models as well as a way to showcase what they have done as a way to kind of both compete but also to collaborate with academics and researchers elsewhere.
Yeah, you know, just coming a little more on the government open source connection. You know, it's it's easier to be like open source is a good strategy, particularly if you're behind. We've seen a lot of investment on the hardware side with Risk five as well as on as
well as as Kevin mentioned, on the software side. And you know, I think it's it's still an open question, but a lot of there's a lot of chatter on the Chinese Internet about just to what extent the Chinese model makers are dependent on Meta continuing to drop open
source models in the Lama series. And you know, we may if and when Zuckerberg decides that he's done playing the open source game, we may see a very different trajectory for the Chinese model makers if they're not able to kind of you know, get their algorithmic and hardware shops in order before then.
So we just have a few minutes left. But you know, we talked about the current state of US restrictions towards China or how the US thinks about AI and the geopolitical context. There are chip export controls, there's more being done, you know, when it comes to cracking down an industrial espionage. There have been a lot of stories, including several broken by Bloomberg about you know, academic collaboration and you know,
trying limiting who can talk to whom. And we know that there's a lot of issues in academia related to computer science and tech and Chinese researchers in the US, et cetera. We have this framework, but it might all change because the president, the party of the presidency might change in a few months. What do we know, if anything, about the Trump view towards AI and AI in the geopolitical context.
So I think the interesting about Trump is that during his presidency, his first term, he actually did have worked on national AI initiative of something which I believe is also by Eric Schmid, the former CEO of Google, and he signed on to some kind of a national initiative plan in twenty twenty, but it was mid of COVID, none of us had any time to pay attention that. It's like didn't go anywhere. But he did have some
kind of history with AI. But based on the most recent kind of the Republican National Conventions Platform just being released, one of the lining items is that they will overturn Biden's AI executive order, so Trump can put his own spin, or his own branding, or his own substance on AI when he if he does become a president again. So we can expect a lot of kind of volatility on that front. And another thing that I would say that I think is the most consistent thing about Trump is
his unilateralism. Right He's always been about America first, American only, and right now there is a pretty good rhythm of global AI governance that's happening, starting with in the UK a the Bletchley Park Declaration, to a summit in South Korea earlier this year, to then another summit in Paris in February of next year where you have world leaders including China and all the other relevant departments and ministries around the world coming together to talk about AI governance
in a global sense. If I were to put my money in the betting market about Trump, I think he will probably blow a lot of that out of the water to go to his unilateral instinct and really put America stamp on this, and it's hard to predict what that will look like.
Trump went on the All In podcast, maybe the podcast that must not be named one.
No, it's fun, but.
It was.
It was really remarkable because they asked him about China and AI and he had, like, you know, a moderately sophisticated answer, sort of shocking. He you know, identified that it's a race between the US and China. And he also said that energy is really important to data centers, and we got to make that happen. You know, if you edited down his comments from five minutes to like
thirty seconds, it was pretty coherent. But it was a remarkable thing that, like he was talking to someone about this and they got like two halfway decent talking points in his head. So, you know, how he's going to approach technology in China, as I think, is a really open question. On the one hand, we had this very like well thought out, sophisticated playbook that he ran to
basically get the world to turn on Huawei. On the other hand, you know, we had a lot of weird, trumpy stuff, like with Zte, the Commerce Department's basically going to kill it. She called him, said that it was going to cost too many Chinese jobs, and then he went on and tweeted the next day saying too many jobs lost in China, like we're going to give Zte a reprieve. So he's really of two minds on all
this stuff. Maybe someone talks him into being scared about inflation, who knows, But I think there's a very wide range of outcomes both on the sort of his domestic approach to artificial intelligence as well as he's as well as how he's going to think about technology competition in China.
You said something there that actually I wanted to ask, and this is just about the sort of technological arms rate again, but obviously within the within the US and the data centers, there's a lot of anxiety about access to electricity and how are we going to supply that? And we all know the US is not in a good state these days, are like building things and adding a lot of energy capacity. Is that a when you think about US versus China in that respect? Could that
be a comparative advantage for the Chinese companies? I mean, I know China continues to add more nuclear generation and they're probably more liberal in terms of adding more coal power and other things like that. Could they end up within an advantage based on their electricity grid on solving the power side of AI.
You know, this might be a bit of a red herring. I am like cautiously optimistic that Republicans and Democrats will end up kind of giving some you know, NIPA exceptions for these data centers, which, like everyone is now agreeing
is this like incredibly important national strategic resource. I mean, I think the bookcase with China, right is if they're stuck with less efficient ships and just how to build data centers twice the size that are twice as expensive, then like, yeah, maybe they can like throw on a few more coal plants and nuclear nuclear reactors to get
them to get them going. But I am cautiously optimistic that in video will continue to make increasingly power efficient chips and you know, state, local and national regulators will understand that this is something worth bending the rules on, which is sort of what you've seen on the sort of semiconductor fabrication build out over the past few years with the Chips Act.
And if I can add one more points to what you just said, Jordan, I think a lot of the focus that we've talked about has been the algorithm, the
model how power for the GPU is. But a lot of engineering sources has been devoted and will continue to be to reduce the power hungriness of AI model because one of the big things that's a hugely hotly debated topic is that all these tokens that we're generating for all these apps are just way too expensive, right, the expense comes from the compute and then the power that's
being consumed to it. So there will be a lot of engineering that is going to accomplish when it comes to reducing the costs and the need for energy over time. So I don't think the energy trade is a long term investment thesis, but maybe a short term arbitrage as far as how much extra power we needed just to feed the hungry AI Denta center when all the engineering is go into reducing that dependence, because everyone sees how that could be detrimental in a lot of ways.
Jordan and Kevin, thank you so much for coming on a latch. That was a fantastic our goal for the episode of Understanding this more I feel I do. I do so thank you both so much for coming on that. Happy Tracy, I thought that was great. I thought, I mean, there were just a bunch of things that like, I, you know, even setting aside the geopolitical aspects that I just didn't know about what the AI you know, space looks like in China, and if that was very helpful, right, I'm.
Sort of obsessed with the programmer's day now. I want to learn more about the holiday. Do you think all the open source programmers they like all get together to celebrate and do a dance, maybe a byte dance.
Yeah, oh boom, come on, okay, Tracy, you get We'll leave that one in.
Thank you, so the producers will add that cricket noise that they have on hand.
I am also interested in the holiday. I do think so Kevin's first answer, I just thought it was like really clarifying about why a country might think that having a national version is important right now, because if and I hadn't really thought about it in those terms, because on some level, right, like it's easy enough, like if it's you know, Lama, you can use that anywhere on
you know, various chips and stuff. But the idea that like the AI is going to like codify truth as it means in the context of that country, and you know, of China their version of what's true. Kevin gave the Jackmaw example, which is that one day he may be a hero and one day he may have a villain or maybe a villain, like that's always changing, and so there may be some impulse to have the model sort
of correctly reflect what is state policy. But this idea that like it captures you know, creates this version of the national identity, culture and language is very interesting.
No, absolutely, and I think China is sort of the
extreme example of that. And that's sort of what I was alluding to, not very well in the intro when I was talking about data control, but like, there is this cultural element to AI where you are using something like chat GPT, or maybe not at the moment, but you could imagine a future where you're using something like chat GPT in the same way that you're using something like Wikipedia, where it's almost like the codified public version of events, right, And so if you are a government
like China, why wouldn't you want to have some degree of control over what that's spitting out and the narrative that it's building.
I was also really intrigued that, you know, we talk about chip wars all the time, but the idea that there is a distinction that is useful to make between a chip war and a cloud war, and that okay, there is you know, we all know that, like it was supposedly you know, smaller nodes or whatever are better, although I think in the context of GPUs that's less important, but that so much of the technology is about the interconnect, and we talked about this with Corewave, that there is
a distinct element to building up a very powerful GPU cloud versus a traditional cloud because because of the cables and the packaging, et cetera, and so the idea that it's more about more than just like the chip itself and you know, the size of that chip so to speak.
No, absolutely, And one thing that really stood out from that conversation, and I'm thinking back, this actually happened when I was in Hong Kong and I was, you know,
coordinating some of the news coverage there. But I remember the big crackdown on the sort of like retail internet companies like Ali Baba, and I remember at the time policymakers were very very specific and very deliberate and very open about trying to direct more capital, you know, less disorderly capital flowing into SaaS, more capital going into hardware and making things like chips. It was almost, you know, for lack of a better tech analogy, it was like
flipping a switch, right. They basically said, like, no more money going into retail tech, everything going into semiconductor manufacturing and all that stuff. So it was it was interesting to hear like both the challenges and the opportunities from that perspective in China.
By the way, I don't know if it was The Financial Times, but that was the first whoever came up with chech shept. That was very clever. That was very well done. I first saw that in that that word that in the ft. But that's a pretty clever term. That was a good one.
I'm disappointed to find out it's actually vaporware, although no, I know, perhaps not surprised. Okay, shall we leave it there.
Let's leave it there.
This has been another episode of the auth Lots podcast. I'm Tracy Alloway. You can follow me at Tracy Alloway.
And I'm Joe Wisenthal. You can follow me at The Stalwart. Follow our guests Jordan Schneider He's at Jordan sc h NYC and check out his China Talk newsletter and podcast. And Kevin Schoue He's at Kevin Sshoue and check out his writing at Interconnected and follow our producers Carmen Rodriguez at Carmen armand dash Ol Bennett at Dashbot and kel
Brooks at kel Brooks. Thank you to our producer Moses Ondam and from our Oddlots content go to Bloomberg dot com slash od lots where you have transcripts, a blog, and a newsletter and you can chat about all of these topics twenty four to seven in our discord discord dot gg slash odd lots, we have an AI room in there. Maybe when this comes out, we'll see if either Kevin or Jordan or both would be up for doing an AMA in there. The day it comes out. I'm sure people have a lot of questions, so we'll
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