The a16z Show - Marc Andreessen: Who Runs the World’s AI?
Episode Date: February 10, 2026Cisco president and CPO Jeetu Patel speaks with a16z cofounder Marc Andreessen about why AI may finally break a 50-year productivity slump—and what's at stake if America doesn't win the race. They d...iscuss where value will accrue in the AI stack, why open source complicates the US-China competition, and what's blowing Andreessen's mind right now. Resources:Follow Marc Andreessen on X: https://twitter.com/pmarcaFollow Jeetu Patel on X: https://twitter.com/jpatel41 Stay Updated:If you enjoyed this episode, be sure to like, subscribe, and share with your friends!Find a16z on X: https://twitter.com/a16zFind a16z on LinkedIn: https://www.linkedin.com/company/a16zListen to the a16z Podcast on Spotify: https://open.spotify.com/show/5bC65RDvs3oxnLyqqvkUYXListen to the a16z Podcast on Apple Podcasts: https://podcasts.apple.com/us/podcast/a16z-podcast/id842818711Follow our host: https://x.com/eriktorenbergPlease note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see http://a16z.com/disclosures. Stay Updated:Find a16z on YouTube: YouTubeFind a16z on XFind a16z on LinkedInListen to the a16z Show on SpotifyListen to the a16z Show on Apple PodcastsFollow our host: https://twitter.com/eriktorenberg Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures. Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.
Transcript
Discussion (0)
There's a race underway and the stakes are basically what is the world going to run on?
Don Valentine had this old rule of thumb.
He said more startup style of indigestion than starvation in terms of the amount of money you put in.
And his point was like scarcity does spark ingenuity.
All of the science fiction novels basically have AI either being like super utopian or super dystopian,
but they never have this incredible sense of humor aspect, which is what we're actually getting,
where people are just using everything as a fodder for memes.
The world will either be running on American AI or be running on Chinese AI,
and I think it's very important which one wins for a bunch of reasons.
For 50 years, economists have tracked a strange pattern.
Rapid technological change paired with historically low productivity growth.
Since 1971, productivity has flatlined even as computing reshaped daily life.
In 1880, productivity growth ran at three times today's rate.
By 1930, it had slowed to twice as fast.
Then came the regulations and the restrictions.
We said no to nuclear power, faster cars, and a space program.
What we got was hyper-acceleration in chips and software,
and stagnation in nearly everything else.
American labs lead for now,
but Chinese open source models follow months behind
at a fraction of the cost.
The world will run on one system or the other,
and the values baked into that system will matter.
This conversation looks at what's actually happening
in AI investment, where value might accrue,
and why the regulatory response could determine which country wins.
Gitu Patel, president and chief product officer at Cisco,
speaks with Mark Andresen,
co-founder and general partner at Andresen Horowitz.
Mark and Drayson needs no introduction.
He invented the browser.
He built the Internet, so I'm really excited to have you here.
I apologize for nothing.
All right, so before we get started,
you had a really interesting conversation
that I wanted to actually start with
just a couple of days ago with Lenny.
And you were talking about this notion of,
in the history of time,
when has productivity really spiked?
and what's happening right now.
So can you just talk a little bit about your perspective
on productivity increases that have happened
at different phases in time,
and where are we today compared to those times?
Yeah, so as everybody probably knows,
productivity growth is like the key driver of economic growth.
It's the thing that actually causes the economy to expand.
Economists measure it with something called
total factor productivity.
They measure it every year.
The prevailing kind of myths of the last 50 years
basically of my entire life
all of our entire lives has been
that we've been in this era
of very rapid technological change,
which would necessarily mean
very rapid productivity growth.
Yet if you actually look at the statistics,
basically since, actually since the year I was born in 1971,
productivity downshifted hard from prior eras.
Productivity growth, basically for the last 50, 55, 60 years
has been at basically historical lows.
It's been very low, which is, by the way,
why economic growth has been low,
which, by the way, is why the national mood
has become so focused around, you know,
zero-sum economics, populism, you know, the sense that if somebody's getting ahead,
somebody else must be getting disadvantaged. If you compare and contrast that to the period between
about 1930 to about 1970, productivity growth was roughly twice as fast through that period.
And if you compare and contrast that to the period of 1880 through 1930, productivity growth
was about three times as fast. So we had 3x and then 2x and then 1x. And so this is very not good.
Why do you think that is?
Most fundamentally, I think it's because we decided other things are more important.
And in particular in the last, you know, basically since the 1970s, you know, if you just look at like the, if you just look at the charts of like the number of laws on the books or the number of pages in the federal register or the number of regulations in the economy that, you know, it's just this, it was just this like knee in the curve went exponential, which continues.
And so we just, you know, we decided we didn't want nuclear power, right? You know, we decided we didn't want a space program.
You know, we decided we didn't want cars that went faster than 55. We decided, you know, we decided, you know,
We just decided we didn't want these things.
And so what we got in the last 50 years
was like hyper-acceleration in very specifically,
basically chips, chips in software.
And then what we got was basically, you know,
essentially stagnation in everything else.
And so like it's really not good.
And then, you know, but correspondingly,
you know, this, of the many reasons
to be excited about AI, like, put it this way,
if either the AI optimists are correct
or the AI doomsayers are correct,
productivity growth is about to go through the roof.
So.
And do you think it's like two or three X? Is it 10X? Where do you think it gets to?
So this is always one of these kinds of questions.
Like in a completely deregulated economy, like in sort of, you know, Murray Rothbard's like, you know, dream of just like straight, basically in narco-capitalism.
You know, at least in theory, you can imagine an acceleration to, I don't know, 5%, 10%, I mean, if, you know, if you, again, if you believe in kind of either the optimist or the doomsayers, you're looking at such radical, you know, AI, AI representing radical software productivity growth.
and then robotics coming right behind, right?
And robotics, of course, starting in the form of the assault driving car
and the drone, but, you know, humanoid robots coming quickly,
you know, you could imagine, you know,
you could paint, you know, scenarios of 10%, 20%, 30%, something like that.
I think in practice, you know, that's unlikely, again,
just because, like, the robots have to agree to all the regulations also.
And so, you know, there's a lot of things they're not going to be allowed to do.
By the way, AI, you know, look, I give you a great example of how this is playing out today,
If you're just like an ordinary person, I got food poisoning over the holiday.
I went a vacation, of course, immediately got sick, which always happens.
I got food poisoning.
And so I let, as an experiment, I let Dr. GPT walk me through basically every stage of food poisoning.
And I just kept asking, like, I had nothing else to do because I'm flat on my back.
So I just kept asking more and more detailed questions about, you know, my physical experience
and what I should do and what I should eat and how I should recover.
And like, it's just like absolutely incredible.
Like it's just like the most amazing, like endlessly patient, sort of infinitely knowledgeable,
endlessly caring doctor.
You know, it doesn't get, like, irritated
when I have the same question for in the morning,
and I'm like, well, could you go into that,
you know, a little deeper?
And are you sure it's not pancreatitis?
And are you sure I'm not about to die?
Oh, no, you know, it's okay.
You know, you're absolutely fine.
And it's just amazing.
And then, of course, AI cannot be licensed as a doctor.
Right?
It's like completely illegal, right?
You cannot actually have an AI doctor.
And so you do have this, like, basically massive disconnect.
And again, I'm not saying I'm advocating
for the Murray-Rothbard world.
I'm not saying rip up all the regulations.
I'm just saying, like, it just factually, objectively.
It slows you down.
Yeah.
Again, the hyperoptimists and the doomsayers are not,
neither one of them are going to get the world that they think that we're going to get.
We're going to get a muddle through the middle thing.
Which I think, by the way, I think it's going to go quite well,
but it's going to be a muddle and there's going to be a lot of tension,
you know, kind of between those sides along the way.
And then given that, where does the value started creating in the stack most?
So I think this is a really, really, it's a really big question
of we're professional investors on our side.
And so, of course, we think about this all the time.
And I actually think there's still more questions
and answers than this, right?
Because, you know, you can paint this picture
that says that the, you know,
the AI model companies are going to basically own everything.
And, you know, by the way, you look at their,
you know, you look at their businesses
and they're doing fantastically well.
You can also look at it and say,
oh, no, that whole thing's going to eat by open source.
Or by the way, or by China
or by a combination of open source in China,
which in China is doing great.
This company, Kimi, just dropped a very competitive
model to the latest clawed at like, you know, 95% of the capability at like a fraction of the
price. And so there's like a very big open question there. You know, we happen to be at this
moment, you know, what everybody believes. And, you know, if you look at Nvidia's, you know,
deserve success over the last five years, you know, this is a reasonable conclusion is like
chips. All of a sudden, like, you know, chips is where the action are, you know, if you look at
the stock market, there's like a rotation from software into hardware. You know, and look,
it's possible that like chips are the, you know, it's possible all the value accrues to the chips
and the energy and then the software's all open source.
Having said that, every other time in history
where we said the chips are where the value are,
they commoditize, right?
And so there's big questions there.
And then there's even more questions,
I would say, at the app layer, right?
Which is, are you going to have apps
that are going to sort of harness AI,
for example, in spaces like medicine,
where they're going to be particularly like tailored and customized
or legal apps or business apps of all kinds,
or are the models just going to do all that?
And that's another area.
And so I quite honestly, like,
this is so new.
This approach of, I mean,
AI is an 80-year-old topic,
but AI working in a way
where this is the question,
I think we're only three years into
probably a 30-year shift,
and I actually think we don't know yet.
And it seems like the value might accrete
across all of these layers
for the foreseeable future,
because everything is getting refactored.
So you will need to have a lot of infrared power,
a lot of apps.
Those apps are going to get.
So what's your take?
on enterprise SaaS in general and what happens over there?
And does that get completely rethought, reimagined?
So we're in a baby in a bathwater moment right now.
Just look at the stock market.
It's just like SaaS is just getting demolished.
And if you talk to like hedge fund managers,
they're just like selling all their software
just under the theory that they just want to get out of the way
of the AI freight train.
You know, as an investor, you kind of say,
okay, that probably is overdoing it a bit.
You probably want to look at like different kinds of software.
And so, for example, in SaaS, you probably, my theory,
you want to look at systems of record differently
than you want to look at basically just productivity applications.
Yep.
You know, so that's one way of looking at it.
Also, look like everybody doesn't change their behavior overnight.
And so, you know, you definitely want to look at, you know,
loyalty and stickiness in lots of different ways.
And then, you know, there's this giant question, actually, you know,
in the tech industry, right, among all the software companies, right?
Which is like, okay, if I'm, you know, if I'm Adobe,
just to pick an example of Adobe, which is obviously a great company.
But, you know, a question in front of it,
Adobe that they're working on, but it's a very good question. It's like, okay, is, is Photoshop
plus AI features an even better version of Photoshop, or is Photoshop unnecessary in a world in which
AI is just making all the images? And I think, and I know as far people who will argue,
who will argue both sides of that. And I think you can, I just use that as an example,
you can apply that question to kind of every, every kind of every domain.
We are, we in our business are seeing a bunch of software companies that for sure are not moving fast
stuff to adopt.
And we're enthusiastically funding AI-centric, you know,
startups to go, you know, try to take them out.
Having said that, we are also now seeing examples of, you know,
more traditional software companies that have figured out an AI twist to what they're doing,
and all of a sudden they've, you know, ignited growth.
And so I also think we'll probably see a lot of that.
I mean, and my big conclusion from all this is I think one of the reasons it's so hard
to predict or kind of characterize all these things as like broad-based trends
is that, like, human agency matters a lot.
Right, which means leadership matters a lot,
which means the CEO, the people building the product,
have a vote here at every one of these companies.
What do they choose to do in response?
And optimistically, hopefully a lot of people
will figure out how to have this be a plus and not a minus.
You touched a little bit on open source in China.
Talk a little bit more about how that plays out.
Does US get to be a dominant player in open source over time?
you actually have front-row seed
a lot of the investments that are being made
in a lot of these areas.
What happens?
Yeah, so it's this...
By the other, what are the implications too?
Like, if we don't do well in open source,
what does that mean for the US?
Well, I guess you could say, look, maybe start by...
Because it's like a two-by-two grid,
it's like US trying to open-source, close-source,
be a rough approximation.
So, like, without open source...
Just start by saying without open source.
Like, without open source, there is a two-horse race
there's a two-horse technological geopolitical foot race,
which is U.S. versus China.
So, again, let's assume it's all proprietary for the moment.
And, you know, both China has been on record for years
and their national strategy, their five-year plans,
and their national strategy and so forth,
that like AI's cornerstone technology of the future,
the U.S. government, by the way, has been, you know,
definitive on the record on this in many of its policy areas
for the last decade.
And so, and, you know,
and both countries' industries are moving incredibly fast on AI.
And so I think by default, if everything's proprietary,
then there's this race underway, which basically says,
and it's really right, it's just practically speaking,
it's only happening in the US and Europe.
And so, sorry, the US and China.
And so then you basically say there's a race underway
and the stakes are basically what is the world going to run on, right?
And so, you know, what is, you know, 8 billion people on the planet,
what are they going to use?
And one of the ways to think about it
is kind of the 5G Huawei kind of thing that was in the news a lot,
you know, a few years ago.
It's like that was the preamble opening salvo.
of what fundamentally is going to be the AI geopolitical, you know, basically race, right?
And fundamentally, you know, tech markets being what they are, in the long run,
you know, somebody's going to win.
And the world will either be running on American AI or be running on Chinese AI,
and I think it's very important, you know, which one wins for a bunch of reasons we could talk about.
The open source thing is, of course, super fascinating because it's like throws a wrench into all of this.
And it raises a, you know, a third possibility that, like, neither the U.S. nor China are going to be the platform.
it may just be it's going to be open source.
Of course, this is what happened in, you know,
specifically in Unix, in operating systems.
And then to some extent, databases,
and of course, you know, the web was open source.
And so there are a whole bunch of software markets
in which the outcome has actually been,
open source just wins.
It's like, when I was a kid,
when I was, you know, in the 90s,
it was like there was this operating system war
between, you know, HP and IBM
and graphics and so on and all these companies
to make proprietary Unix
and everybody was making a lot of money
on proprietary unix.
And then, you know, Linux was a, you know,
asteroid strike that just, you know,
completely eliminated.
all profit and revenue in that industry.
And the world benefited, by the way, from Linux
and the fact that everything runs on Linux
and it's been a huge turbo boost to every other aspect of the industry.
So, yeah, so it's entirely possible that happens.
And then you go back to the two-by-two,
which is U.S. open-source, China open-source.
The most amazing thing that's happened
is China basically pursuing the open-source model
as aggressively as they are.
And there's a lot of theories as to kind of what China's doing here.
As far as I can tell, DeepSeek was a surprise
to kind of China, Inc.
Like it was not an anointed sort of Chinese industrial kind of national champion.
It was this hedge fund where the founder basically decided to, to his enormous credit,
decided to have his engineers build the deep CKI.
And so that came out of left field.
And that came out of left field for the U.S.,
but I think it also came out of the left field in China.
And then it caused a bunch of the other Chinese companies like Kimi and, by the way,
Alibaba and Baidu and Tencent and a bunch of these others to basically,
it started this race in China to like win open source.
And then look, there's also American, you know, there's also American open source AI.
And so there is this new race underway, you know, from both sides.
And it's another thing where I think, like, how this play out is going to matter a lot.
It's extraordinarily hard to predict.
You know, I think the people in the big AI labs think that open source can't possibly keep up because of the cost involved.
Having said that, again, at least so far up until like this week, you just say that like whatever the American big labs do,
like China figures out a way to do it in open source form.
But they haven't been able to figure out.
the way to do 10x better because what they're doing is letting American labs invest
and then just distilling the models to some degree.
So I think it's more, there is just, there is a distillation.
And there's infrastructure optimization and a bunch of stuff.
There's some, for sure distillation.
So there's this thing distillation where you basically train the next model on the answers
of the previous model.
And I think for sure China is doing some of that.
And there's a lens on that that says, of course, that's unfair
because you're basically piggybacking on top of work other people have done.
You know, look, having said that, you know, it's a little bit like, well, okay,
there's a fair amount of distillation happening in.
the U.S. also, right? Because distillation, all you need is just be able to ask another AI
questions and train on the answers. And then, of course, the AIs themselves are distillations
of other content, right? And, you know, including a lot of, you know, a lot of published
content. And so, you know, I, yeah, it was right, like, you're, you're not saying this,
but if someone were to say to me that China is somehow not getting the, not getting good results
in their program because of use and distillation, I think that's not. Oh, I think they deserve a lot
of credit. Yeah, absolutely. And then to your point, they're also, they've all, they're also,
They're also really good at, at least so far,
they're really good at optimizing,
which means that the thing that everybody,
the thing that you think is going to cost a gazillion dollars to run,
they, you know, Deep Seek comes out and, you know,
you can run Deep Seek on home PCs.
And that optimization is happening largely because of necessity
because of a scarcity of the fastest infrastructure
that they have available to them.
Yeah, so Don, in Venture, Don Valentine,
had this old rule of thumb.
He said more startup style of indigestion than starvation
in terms of the amount of money you put in.
And his point was, like,
scarcity does spark ingenuity.
And so, yeah, if you can't get the leading edge chips,
you figure out how to hyper-optimized the older ones.
And again, like, by the way,
this all makes me, like, tremendously excited
by this entire space because it basically says,
like, right now, it's all, everybody's trying to do their best.
Like, America's trying to do the best.
China's trying to do the best.
I definitely want America to win,
but China's definitely doing their best,
and then the open-source thing is working.
And then, of course, the other part,
like the value chain aspect is
open source doesn't have to win in order to basically
remove a profit full, right?
That's right, that's right. And so,
which is what happened originally with Unix.
And so, even if open source just has the,
if open source has the effect not of winning,
but of keeping the pricing down,
that will be bad for the proprietary lab providers,
that will be good for everybody else, right?
Because it'll make, which is what's happening, right?
Basically, and if you chart the prices, basically,
if you chart the prices of like a model quality,
price per model quality,
when an open source release comes out,
even if it doesn't get significant market share,
the price just goes down naturally.
The price of that model drops
to the inference cost of running the open source alternative.
So now, and all the things that you're exposed to,
what's the thing that's blown your mind invention-wise
and said, wow, this is so cool.
It's completely kind of made you rethink your mental model.
Yeah.
I mean, look, there's like six of those a week right now.
There's a few.
Yeah, it's just incredible.
The capability of the voice UI's, I think, is unbelievable.
And particularly the ones where it's like, it's true, it's true, you know, full deplex
where it really does, like, interact, you can interact.
Like what Maddie's doing at 11 Labs.
Yeah, yeah, yeah.
It's just like, I think that's just absolutely amazing.
Multimodal, the fact that you can actually talk to, you know, in like, I think both
ChattuPT and Grock have this where, you know, you can turn on your phone camera and you
can be, you know, you can be pointing it, you know, it's like, you know, what do you
think of my interior decorating?
And it will comprehensively, like, to construct how bad of a job you've done.
because it can see your living room, right, or anything else.
By the way, again, immediate medical applications,
you know, I have this thing on my skin.
Like, it immediately, it's able to see it.
Like, that, I think, is spectacular.
In the last week, there's this new thing.
There's these agents now, like Cloud Code,
and there's this thing called OpenClaw that's an open source agent,
and they're amazing, and then there's this thing called Multbook,
which is basically Facebook for AI agents.
Do you think Multbook has, like, a three-week shelf life,
or do you think that this thing is,
has consequential kind of implication
on how we think about agents.
So M-O-L-T-B-O-O-K.
So M-T-B-O-O-K.
It's basically it's a social network.
It's like Facebook.
It's a social network,
but for AI agents to talk to each other.
And it's sort of amazing what's happening.
It's highly likely that it's significant,
it'll blow your mind when you read
like the top posts on it
because AI agents talking about all kinds of things.
Now, a fair amount of the stuff on it
is probably human written,
like the sock puppet, human written.
for people being funny.
It's actually really, really amazing.
Like, all of the science fiction novels basically have AI,
either being like super utopian or super dystopian,
but they never have this incredible sense of humor aspect,
which is what we're actually getting,
where people are just using everything as a fodder for memes.
And so Mold Book,
Mold Book has, like, saturated with all of these,
like, incredibly funny memes.
It's actually quite unclear which ones are real
and which ones aren't.
The current version of this is somebody wrote an adjacent service
from Moltbook called Rentahuman.com,
which is a labor marketplace,
for the AI agents on Maltbuk to be able to hire human beings to go out.
And there's an AI agent on Maltbook that has decided to create an AI religion.
And at least as of today, it had hired a single human worker to walk the streets of San Francisco
and proselytize the new AI religion.
Somebody needs to tell the AI agent in San Francisco that doesn't exactly stand out.
You need to go a lot more extreme than that.
Like, is this real?
Is this not real?
As I torture my friends with this, it's like, is it real?
It doesn't even really matter.
Like these ideas are now like in the air.
right? And then by the way, the thing that's happening is
that the AI models are now being trained
on this content. That's right. That's right.
Right? And so even if this AI model,
even if the current version of like Cloud Code
doesn't want to start a religion, the next one is
going to want to want to. It's trained on
transcripts of discussions
of starting new AI religions. And so there's this like
incredible feedback loop that's happening
where the level of creativity
in the space is just absolutely...
And the volume is going to balloon up just automatically because
of the speed of which it's generating
content. What do you worry about
the most right now.
Yeah.
I mean, you know, I know you guys talked a lot about, you know, the regulation on the
on the last panel, Chuck, Chuck and Ann.
So I mean, the biggest concern right now, like I, you guys talked about it.
I think the regulatory landscape is fairly scary.
We were headed in a very bad direction, unfortunately, not a process.
As an over-regulation.
We were headed in a, up until, in the last administration, we're headed towards extreme
over-regulation, for sure, and up to an including possibly full outlawing of the technology.
which is very spooky.
In the new world, things are better on that front.
But what's happened is the action in the U.S. is now shifted to the states.
And so there's now thousands of AI bills in the states,
which are all, and many of them are actually quite scary.
And so it's become kind of a cause-seleb for politicians in both parties to kind of go after.
And so that's fairly scary.
We'll have to see what happens on that.
The situation in Europe is quite alarming.
And, you know, there's a number of European countries that are, you know,
really, really trying hard now to kneecap, you know, I would say,
American technology, but more generally technology,
and then they're getting very kind of worked up about AI.
And then, yeah, look, you know, the other is China,
you know, the geopolitical aspect,
which is China, China's in the race.
And I would say the follow,
what I'm about to say is much better understood today
than it was two years ago.
But two years ago, I was getting very alarmed
because I would go to Washington
and I would have two totally different conversations
with regulators, politicians.
One was a conversation of what are we going to do in the U.S.,
and I would be horrified by the proposals that they were making.
And then the other was, oh, well,
what if China wins instead?
And then everybody would kind of switch positions to say,
well, of course, that would be even worse.
And so, therefore, we need to have, like, really smart policy in the U.S.
and so it, but then, you know, they didn't ever really reconcile those two different
perspectives.
I think currently, and actually I'd say in people, some people in both parties, for sure,
are, I think, thinking about this much more clearly now.
And so, you know, there's, there's, in the U.S., there's some improvement on the margin.
But, you know, China's on it.
And, you know, China, and, you know, just like we saw with 5G and Huawei, like China has advantages.
You know, we have advantages, but China definitely.
Who's winning right now?
I mean, look, the new advances, the new advances in capabilities at the chip level and at the,
and at the model level and at the app level are coming, you know, mostly from the U.S.
And so, you know, if it's a foot race, you know, we're ahead by a bit.
But when everything that happens, then, you know, has a version that comes out, you know,
two months later that's either free or, you know, a third the cost or something.
Like, you know, that's a challenge.
And then, you know, China is for sure innovating, and so nothing to prevent them from...
It could be a business model disruption rather than economic disruption, rather than just, you know, technological disruption.
Yeah, exactly. And then, you know, this even comes up with, like, chip policy. And I, you know, we're not really, we're not really active in chips that much.
But, you know, there's this argument, goes back to what you said about China optimizing because they can't get, if they can't get access to the advanced chips.
There's, you know, there's an argument on the policy side to hold back on, you know, basically prevent export of cutting edge of American.
to China to deny them those capabilities.
But on the other side of that, there's an argument that if you do that,
you then motivate them more to create their own chip ecosystem,
which they are definitely doing.
And so they have a whole national program to build up a competitive chip industry
and then ultimately, you know, leapfrog us.
And so that's a really, really, really big deal.
And then to kind of go back to earlier topic,
like, if the world runs an American AI, like the world may not be perfect,
but like generally speaking, you know, America may not be perfect,
But generally speaking, AI is going to be...
IP will be respected.
Privacy will be protected.
You'll have...
You'll have...
It'll have the values that we're used to.
If the world runs a Chinese AI, not so much.
You can actually see this today.
So when, like, deep-seeking these companies
put out their AI models, you know,
they put out this paper where they show all the American companies
do this too.
They run all these tests to try to figure
how good the model is.
And China has, you know, these additional kind of line items
for the test, which is Marxism.
and then, you know, Xi Jinping thought, right?
And it turns out the Chinese models are really good at Marxism and Xi Jinping thought.
And, you know, I don't know about you, but I want my grandkids educated by the other kind of model.
Other kind of model.
I wish we had another 45 minutes to go through with you.
Will you come back?
Yes, 100%.
Awesome.
Mark and Jason.
Good.
Thanks, folks.
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