Exploring the frontiers of Technology and AI
Ejaaz:
The world's latest and greatest AI model is 100% free for you to download and run at home right now.
Ejaaz:
Kimi K2 Thinking is the latest reasoning model from Moonshot AI Labs,
Ejaaz:
which is a Chinese frontier AI lab.
Ejaaz:
And it beats OpenAI's GPT-5, Anthropics Claude, and Google's Gemini across pretty much all benchmarks.
Ejaaz:
But that's not even the most shocking part. The most shocking part is that it
Ejaaz:
only costs $4.6 million to train and build, which is only a fraction of the
Ejaaz:
billions of dollars spent by OpenAI to train GPT in the first place.
Ejaaz:
It's also 100% open source, which means that you can download and run Frontier
Ejaaz:
AI right at home where you're sitting right now.
Ejaaz:
But of course, it begs two very important questions. Number one,
Ejaaz:
is open source AI the winning strategy?
Ejaaz:
We've been led to believe that closed source is typically the better strategy
Ejaaz:
when you run a business, but China and the AI models are proving us wrong here.
Ejaaz:
And the second question, the more ominous question is, will the US stock market bubble finally pop?
Ejaaz:
Josh, what have we got here? What is this new model and why is it taking over
Ejaaz:
social media everywhere I look?
Josh:
They did it again. The Chinese did it again. They knocked it out of the park.
Josh:
Grand slam, home run. It's an unbelievably impressive model.
Josh:
And this happens every time.
Josh:
We get this amazing flagship model out of the US.
Josh:
A couple months later, we get the same thing, marginally better,
Josh:
at one-tenth of the cost. Like full orders of magnitude cost less than what
Josh:
it calls for the leading AI labs in the US today.
Josh:
The specs are really impressive. We're going to get into everything.
Josh:
We'll start with, I guess, just like the high level spec sheet.
Josh:
State of the art on humanity's last exam, which is the reference point that
Josh:
we kind of use in terms of benchmarks.
Josh:
It scored the highest anyone's ever scored, 44.9%.
Josh:
It has a bunch of these really cool breakthroughs, but the big thing that it
Josh:
excels at, like it says in the post here, reasoning, agentic search, and coding.
Josh:
Now, there's a few cool things that we could talk about here.
Josh:
Ejaz, maybe we'll just get into the charts because i feel like that's an easy way to visualize
Josh:
how much better this model really is than all of the others and what we're seeing
Josh:
on the chart is that while gpt5 was the best kimmy k2 is now the new best and
Josh:
this is as it relates to thinking and reasoning
Josh:
and this again this is so impressive because
Josh:
one this model is fully open source you can go download the model and run it
Josh:
yourself locally for free what were your first thoughts when you saw this because
Josh:
to me i was like oh my god i was like why would i use anything else?
Ejaaz:
My first thought, if I'm being honest, Josh, was like to look at the stock market.
Ejaaz:
I was like, is this going to crash the entire US stock market?
Ejaaz:
Like when DeepSeek initially released the R1 thinking model,
Ejaaz:
do you remember it was at the end of last year, people's kind of entire bubble
Ejaaz:
and vision of how AI models were trained was completely burst.
Ejaaz:
And since then, China has repeatedly delivered on breaking edge models,
Ejaaz:
one of which is the Moonshot AI lab team, which built Kimi K2.
Ejaaz:
It's such an impressive model for a few different reasons for me.
Ejaaz:
Number one, it can now compete with all the best. And,
Ejaaz:
personally, GPT-5 is something that I use pretty much every day,
Ejaaz:
whether it's for like kind of casual prompts and requests or whether it's kind
Ejaaz:
of like the deeper thinking and research and some of the lines of work that
Ejaaz:
I do. So it's become kind of like...
Ejaaz:
Quintessential for me. Now to have a separate model that I can download and
Ejaaz:
run privately on my own computer at home that I'm showing on this tweet here that costs 60 cents,
Ejaaz:
per million token input and $2.5 output is just an insane cost-cutting average
Ejaaz:
where if I was running a business using an AI model.
Ejaaz:
There's very little reason for me not to switch over to something like this
Ejaaz:
aside from maybe like maintenance and setup and stuff like that.
Ejaaz:
The other really impressive thing for me, Josh, was the team itself.
Ejaaz:
Like, this is only a two-year-old startup, which reminds me of another two-year-old
Ejaaz:
startup, which is Elon Musk's XAI, right?
Ejaaz:
And there's a funny link between these two models, Josh, which is Kimi K2's reasoning,
Ejaaz:
this thinking model, can do so because it does this like really neat little
Ejaaz:
chain of thought experiment where it takes many steps to kind of think to a
Ejaaz:
logical answer versus just kind of like splurging an answer for you.
Ejaaz:
That's something that Grok Heavy 4 did that they pioneered when they launched their new product.
Ejaaz:
So Kimi K2 is kind of like drawn on some of these learnings from XAI to produce a similar model.
Ejaaz:
The other really cool thing is
Ejaaz:
it does this thing called tool use or tool calling whilst it's thinking.
Ejaaz:
So if you imagine, as I'm kind of like trying to think through a complex problem,
Ejaaz:
I will leverage different tools to be able to help me get to the answer.
Ejaaz:
So if I'm doing a maths exam, I can use a calculator. Or if I'm doing a deep
Ejaaz:
research question, I might use Google.
Ejaaz:
This AI model naturally does that and has access to over 200 to 300 different
Ejaaz:
tool calls and tool uses whilst it does its thinking. So just overall,
Ejaaz:
a very impressively new looking AI model.
Josh:
Yeah, Ijaz, you mentioned the cost being 60 cents per million tokens.
Josh:
And I just want to add a little bit of context as to how low that actually is.
Josh:
I was looking at the GPT-5 Pro cost per inputs, and it is $15 per million tokens.
Josh:
$15 for the GPT-5 Pro cost currently.
Josh:
The output is $120 per million tokens.
Josh:
Granted, this is the top of the top. If you're using GPT-5 standard,
Josh:
input is $1.25 per million tokens, output is $10.
Josh:
So any way you scrape it, it's at least a 2x multi-cost reduction up to like
Josh:
100x on the highest end, assuming it can compete with GPT-5 Pro,
Josh:
which all those benchmarks suggest it very well can.
Josh:
So the cost is really like, it's a big deal. And to get kind of dig more into
Josh:
the point that you were making, Ejoz, and how it actually works.
Ejaaz:
Well, we'll get there.
Ejaaz:
Save the memes.
Josh:
Don't spoil the memes yet. We got to get to the funny jokes next.
Josh:
But basically, the way this works is like there's this very complicated diagram
Josh:
on the screen. I'm not going to try to even explain what that is.
Josh:
But there's this fun way that I like to describe it when I was describing it
Josh:
to my friend earlier this morning.
Josh:
Which is that like Kimi K2, it's like this giant school and it has these things called specialists.
Josh:
And in fact, Kimi K2 has 384 specialists. You could think of these specialists
Josh:
as like a math club or a history club, coding club, debate, whatever it is.
Josh:
And when you ask it a question, it doesn't invite the whole school.
Josh:
It doesn't invite all the clubs. It's just, EJS, if you ask for a math question,
Josh:
it will query the math club.
Josh:
And it chooses eight out of those 384 clubs to help combine their answers,
Josh:
pick the experts and decide how it's going to solve this problem.
Josh:
So it has a trillion parameters, but it only uses 32 billion of them at once.
Josh:
And that's how we're able to get the huge cost reduction because it uses this
Josh:
thing called mixture of experts. A lot of people describe it as MOE,
Josh:
but basically what it is, instead of using the entire model's intelligence to
Josh:
answer, what should I have for breakfast this morning?
Josh:
It will take the chef club. It will take the health club.
Josh:
It will combine those together and it will form an answer that should hopefully
Josh:
give you just as good as a result if you took the entire model but it's much more efficient
Josh:
in terms of cost in terms of energy and in terms of the amount of tokens they
Josh:
could generate because it's so much cheaper across the board and i think that's
Josh:
one of the big really exciting things that has been cool to see coming out of china
Josh:
we saw with deep seek we see it with kimmy and it's this mixture of agents architecture
Josh:
where they're really kind of modularizing the entire model
Josh:
and only using the stuff that's important for the specific query
Ejaaz:
They were put in a very constrained position which is they didn't have access
Ejaaz:
to the latest GPUs or NVIDIA GPUs, there's been a bunch of U.S.
Ejaaz:
Tariff restrictions on Chinese labs getting access to these kinds of things.
Ejaaz:
So they've really needed to kind of like work within their bounds and means.
Ejaaz:
And so coming up with an architecture like Mixture of Experts or the one that
Ejaaz:
they did is super important.
Ejaaz:
And it brings me to this meme, Josh, which is, what are we doing here?
Ejaaz:
There is an obvious mismatch between American-made AI models and the,
Ejaaz:
Chinese ones. You've got OpenAI, which is now projected to spend $1.4 trillion,
Ejaaz:
over the next five years.
Ejaaz:
That's trillion with a T versus Kimi training for $4.6 million.
Ejaaz:
Now, I know there's a bit of like clickbaitiness here.
Ejaaz:
That $4.6 million was relative to one training run and usually takes a few training runs.
Ejaaz:
But let's say it took like 20 training runs, right?
Ejaaz:
At $4.6 million, that's still only like 100 mil, right? Or less than that.
Ejaaz:
So it doesn't really matter when you put it into the context that GPT-5 is rumored
Ejaaz:
to have cost $1.7 to $2.4 billion for OpenAI to train.
Ejaaz:
So there's a mismatch that I don't quite understand, Josh. And that's what makes
Ejaaz:
me the most nervous when it comes to what American-made companies and Frontier Labs are doing.
Ejaaz:
I feel like they're missing the mark. I don't quite know what it is,
Ejaaz:
whether it's this mixture of experts thing, but there's someone's being sold
Ejaaz:
a lie and I don't know whether it's me or whether it's me like looking at this
Ejaaz:
Kimi K2 model and being like wow it's so amazing.
Josh:
Yeah, when I think about the role that China plays versus the United States
Josh:
in terms of like open source companies or closed source companies here in the US,
Josh:
the thing that is reassuring to me, at least, is a lot of these innovative breakthroughs
Josh:
that happen on the software level actually do happen in these private AI labs.
Josh:
We do get like chain of thought and reasoning. And there's like this whole slew
Josh:
of new innovation that becomes standard very quickly.
Josh:
That all happens in the United States AI labs. And as far as we're concerned,
Josh:
the AI labs in the US still have they're making the most progress the fastest
Josh:
they are creating the most innovation and then what you kind of see like we
Josh:
described earlier in the episode
Josh:
is that innovation starts to trickle down whether it's voluntary or whether
Josh:
it's stolen and it gets implemented into these new models and they just completely
Josh:
cut out the bottom in terms of cost and efficiency because that's kind of all
Josh:
they're able to do they don't have access to the resources of
Josh:
like millions of gpus from jensen huang and nvidia they don't have the access
Josh:
to 50 billion dollars of capex just to spend on
Josh:
employees just to spend on salaries and compensation um so it seems to me like
Josh:
i mean we're still doing very well it's just
Josh:
China is very good at implementing the technology and applying it at scale in
Josh:
a way that's open sourced and the open source thing there's there's a lot to say for that because
Josh:
it's it's very impressive and it's kind of this community effort that we saw
Josh:
early days with the united states but once they became better they closed it off so what happens is
Josh:
you get innovation in one company like Kimi and then you see it implemented
Josh:
in DeepSeek and then you see it implemented in Quen and then suddenly this technology
Josh:
is it's kind of synchronously growing between the three because it's all open
Josh:
source they're publishing all the code all the open weights
Josh:
and it's much more easier for them to thrive whereas innovation in the United
Josh:
States very much happens behind a closed wall and it's only leaked out
Josh:
at the advent of a new model when they release it to the world and people kind
Josh:
of reverse engineer how it works
Ejaaz:
Um, I was reading an article in the Financial Times where they interviewed Jensen
Ejaaz:
Huang, and he said verbatim that China will win the AI race if they continue
Ejaaz:
down the pot that they're currently on.
Ejaaz:
And if the US doesn't kind of ramp up their energy production,
Ejaaz:
he was making a wider point that their open source strategy is pretty effective
Ejaaz:
in the way that they're up, that they're building these new AI models with the
Ejaaz:
constraints that you just mentioned.
Ejaaz:
And kind of speaking more about the open sourceness and the benefits of this.
Ejaaz:
I've got a tweet up here, which shows that Kimi K2 thinking this new model can
Ejaaz:
basically run on two MacBook M3 Ultras, which is like a couple of thousand dollars
Ejaaz:
worth of cost, which is an insane thing to do to run Frontier
Ejaaz:
AI model at home, privately in your house, trained and fine tuned on any of your own private data.
Ejaaz:
So you don't need to kind of like sell that data to Sam or Mono,
Ejaaz:
whoever, just super cool and super cheap, right? Because you're running local
Ejaaz:
inference at home. So you don't have to worry about anyone kind of like spying
Ejaaz:
on any of your queries or your prompts or your research.
Ejaaz:
It's just all at home, which I thought was super cool.
Ejaaz:
The other part of the open sourceness, which I found interesting,
Ejaaz:
Josh, was the fact that they had an MIT license with this new release or an adjusted MIT license.
Ejaaz:
And we'll dig into that in a second. But the point being, when DeepSeek released
Ejaaz:
their first major open source model and it took the world by storm,
Ejaaz:
there wasn't any major licenses around that.
Ejaaz:
So you could pretty much download and do whatever the hell you wanted for it.
Ejaaz:
You could implement it into your own product, whether you were an American founder.
Ejaaz:
And if, let's say, you scaled that up to a million users that used a feature
Ejaaz:
that was leveraging that DeepSeek model, you wouldn't have to credit that team at all.
Ejaaz:
Kimi K2 kind of like takes a step in a different direction here where they've
Ejaaz:
released an MIT license where I think if you hit
Ejaaz:
I think it's either 10 million or 20 million users for your product you need
Ejaaz:
to show the Kimi K2 label and say that listen I'm using this model under the hood but there's
Ejaaz:
there's some differences with this license right Josh can we can we dig into that?
Josh:
I believe it's modified. I don't know to the extent that it is modified,
Josh:
but I know that there is something different going on here. What does this say?
Josh:
Our only modification part is that if the software or any derivative works thereof
Josh:
is used for any of your commercial products or services that have more than
Josh:
100 million monthly active users or more than 20 million US dollars or equivalent
Josh:
other currencies in monthly revenue,
Josh:
you shall prominently display KimiK2 on the user interface of such product or service
Josh:
that's a fun little marketing ploy
Ejaaz:
Fair enough fair enough you know what it reminds me of josh um what's that it's
Ejaaz:
what meta tried to do with their llama models right,
Ejaaz:
so um meta is the only other major american company that i can think of that
Ejaaz:
went down this open source ai route and the goal or the intended goal at the
Ejaaz:
time was to basically level the playing field,
Ejaaz:
between Meta and OpenAI and other frontier model AI labs, which had raced so far ahead.
Ejaaz:
So if you released all this cutting edge AI tech for free and accessible to
Ejaaz:
anyone, then it kind of drives down the cost premium that OpenAI and all these
Ejaaz:
other frontier AI labs can charge you to access this thing.
Ejaaz:
China's doing that as a vast hole on the American AI stock market,
Ejaaz:
right? So that's why we saw like NVIDIA crash, I think 4.2% on the news getting released and such.
Ejaaz:
I'm curious whether this kind of pops the bubble and the CapEx bubble in America, Josh.
Ejaaz:
Is that a crazy thing to say? I mean, the markets reacted pretty viscerally to this news.
Josh:
I don't think I have a problem with this. I don't think it's popping a bubble.
Josh:
I don't think we're in trouble.
Josh:
I think this is just totally fine so long as we continue to stay slightly ahead or at least at par
Josh:
i think we're really excellent at making software distributing software creating
Josh:
products i think china's really good at shamelessly
Josh:
innovating and deploying without needing to go through all the hoops and intellectual
Josh:
Problems that the united states mostly has um so i don't think this will lead
Josh:
to any sort of bubble popping i think a lot of the frontier innovative stuff
Josh:
still happens in the u.s the place where i will begin to start to get a little
Josh:
worried is when this switches to embodied ai once we
Josh:
start moving from large language models to implementing these into robots or
Josh:
implementing these into physical hardware that's where i think we have problems
Josh:
on the software front we're good we're crushing it everyone's spending tons
Josh:
of money um on the hardware front we don't have the same lead and
Josh:
over the last what 30 to 50 years we've kind of outsourced manufacturing capabilities
Josh:
to other places and therefore are just kind of i mean everyone knows we just
Josh:
can't really make things cost effectively here in the united states
Josh:
if we are at a foot race with china when it comes to making embodied ai like
Josh:
humanoid robots specialized robots whatever it may be that's where things start
Josh:
to get a little bit scary because that's where there is a significant lead and
Josh:
that lead is comes in the form of atoms which are much more difficult to move than bits
Josh:
because you can steal some open source code create this slight innovation on
Josh:
top roll it out to a billion users overnight and that's innovation that does not happen
Josh:
between version two and version three of your humanoid robot you actually have
Josh:
to build it with a factory with real materials and people and places and it's
Josh:
it's very difficult and challenging to do and china very much stands to be the
Josh:
largest winner in that so i think on the software front i feel really confident
Josh:
and as of now that's all that we're battling on but in this near future where
Josh:
things start to become embodied, where AI becomes physically manifested in the world around us,
Josh:
That seems like a place where I would start looking at Chinese investments a
Josh:
little bit more than the American ones.
Ejaaz:
Okay. I think I might push back a little bit and say that there is reasonable
Ejaaz:
evidence to be bearish on the software side before it gets embodied AI.
Ejaaz:
I mean, so a few ways to think about it.
Ejaaz:
There is such a gross discrepancy when it comes to capital expenditure for these things.
Ejaaz:
On one side, you've got the US spending trillions of dollars literally to train
Ejaaz:
AGI or the best AI models.
Ejaaz:
And on this side, you're in like the hundreds of millions of dollars,
Ejaaz:
which is like an order of magnitude less, right?
Ejaaz:
So there's an obvious mismatch here that we aren't seeing.
Ejaaz:
Whether it comes down to training architecture, training design,
Ejaaz:
or just kind of like hardware manufacturing.
Ejaaz:
I don't know where that kind of advantage is being played, but the Chinese have
Ejaaz:
found it and they're able to kind of really push down on that lever to get ahead
Ejaaz:
or on par with the U.S. And they've been able to successfully do this for years
Ejaaz:
now at this point. DeepSeq was kind of like test case one.
Ejaaz:
Now I've seen like, you know, at least 50 open source models come out of Chinese
Ejaaz:
frontier AI labs since then.
Ejaaz:
Number two, it's not like the U.S. government has kind of like not tried to constrain them.
Ejaaz:
We've imposed a number of different sanctions, which include,
Ejaaz:
you know, constraining which GPUs NVIDIA and other manufacturers within the
Ejaaz:
U.S. can sell to China. But that still hasn't stopped them.
Ejaaz:
They've been able to maintain and train these frontier AI intelligences despite
Ejaaz:
all of these different things.
Ejaaz:
So I think if I were to look on the other side of this, it would be,
Ejaaz:
so what if you have an open source model that is super cool?
Ejaaz:
Why aren't you using it right now? Like I'm not using Kimi K2 regularly,
Ejaaz:
even though I use GPT-5 and it might be better than GPT-5. And the answer for me is pretty simple.
Ejaaz:
I'm locked into an ecosystem in OpenAI that I'm pretty happy with,
Ejaaz:
which is it has memory on me. It understands who I am.
Ejaaz:
It has a context of all the previous chats that I have with it.
Ejaaz:
But also most importantly, Josh, if there's an issue with something on my account
Ejaaz:
or something that I'm trying to use, there's a community that I can access.
Ejaaz:
There's a support team that I can speak to. There's a software ecosystem that supports me, right?
Ejaaz:
Versus me jumping ship to kind of Kimi K2 setting it up on my own and then having
Ejaaz:
to like troubleshoot it myself I think a lot of people will be disincentivized to do that.
Josh:
It is difficult, but I mean, we're seeing market forces from both sides, right?
Josh:
Like I saw you included a link here somewhere where Cursor and Windsurf's new
Josh:
AI models, they were using some sort of Chinese models.
Josh:
In fact, they were thinking in Chinese. And I found this really fascinating
Josh:
that like American-made products are now thinking in the Chinese language.
Josh:
So that's certainly a concern in terms of the commercial side where those API
Josh:
costs really matter, where if you can get a million tokens for $0.60 versus
Josh:
$10, that really affects the margins of your business.
Josh:
For consumers like us, there's no real interest to use Kimi K2.
Josh:
And the phenomenon you spoke about earlier, where you can actually run a quantized
Josh:
version of Kimi K2 on two Mac studios running the M3 Ultra chips,
Josh:
it generates tokens at like 13 to 15 tokens per second. So it's very slow.
Josh:
Slow. You're getting like a sentence or two every second, which it's much slower.
Josh:
It's going to feel groggy. It's not going to feel well.
Josh:
There's a case to be made that that changes because this year and it's funny
Josh:
that apple's really the only computer that that supports this now they're releasing
Josh:
the m5 ultra which will be the new version
Josh:
and um it's going to be interesting to see how it plays out what i found interesting
Josh:
this one side note actually that i wanted to share with you just because you
Josh:
might find it cool too is the version that runs on these apple computers the
Josh:
apple studios um it's a it's a slightly quantized version and
Josh:
I heard about this and i learned about this recently in the tesla earnings call
Josh:
that they had the shareholder meeting recently and we're gonna have an episode
Josh:
on this later this week but there's this interesting thing that elon mentioned
Josh:
during the episode where he was talking about quantize versus floating point
Josh:
ai and i was like what the hell is that like what why are you spending so much
Josh:
time talking about this it doesn't make sense
Josh:
and what i realized is a lot of ai models they they use like
Josh:
many, many points after the decimal in terms of data to get more precise results.
Josh:
And that is floating point. When you quantize a model, you remove all of the
Josh:
data to the right of the model and you just go to single integers.
Josh:
So you lose the variance of maybe up to like 60%, but you gain so much faster
Josh:
efficiency, so much better speed improvements, cost improvements,
Josh:
and you can actually run it locally on these things.
Josh:
So I think it's interesting to see the different decisions that people are making
Josh:
in terms of, well, how precise does the model have to be versus how cost effective
Josh:
and how efficient does it need to be?
Josh:
And what we're seeing with Kimi Gay too is it's very easy to over-index on the
Josh:
efficiency, but maybe that's not the stated goal of OpenAI, where if they really
Josh:
wanted to, they could sign up, quantize these models. They could go more to integer type compute.
Josh:
And it was just something I was thinking about is how they approach them,
Josh:
because it could just be, well, Kimi's just kind of optimizing for speed and
Josh:
efficiency, and the downstream effect is it's also really fast,
Josh:
whereas OpenAI kind of hasn't really optimized for that specifically yet.
Ejaaz:
Right. And the counter argument to that point would be, well,
Ejaaz:
Josh, it's crushing all the benchmarks that we've evaluated all the other American
Ejaaz:
models on, right? Yeah. So surely it's much better.
Ejaaz:
And my pushback on that would be like, well, benchmarks don't really materialize in real life use.
Ejaaz:
So what if it crushes 50% on humanities last exam?
Ejaaz:
Is it useful for me to use? Does it understand what I'm trying to say?
Ejaaz:
Does it understand the context of the prompts that I'm putting into it?
Ejaaz:
Um the other side of this um you know on the point of quantization josh is um,
Ejaaz:
i think that a lot of frontier american ai labs like open ai google etc,
Ejaaz:
actually have enough compute to give you the best experience the um the highest
Ejaaz:
floating point uh experience um to put it to put into that context,
Ejaaz:
but they're using the majority of that compute to train the next big model that
Ejaaz:
we haven't even seen yet, right?
Ejaaz:
There was news that broke last week that OpenAI is doing this,
Ejaaz:
right? So technically they have enough compute to give you like amazing service
Ejaaz:
all year round, but they're using 70% of that compute to train GPT-6.
Ejaaz:
So I think it's just a matter of prioritization right now until we reach some
Ejaaz:
kind of parity that these AI models are good enough.
Ejaaz:
But I will say from all of the things that we've discussed on this episode so
Ejaaz:
far, there is one clear winner and And that is the consumer.
Ejaaz:
It's you, I, and everyone listening to the show, which basically gets access
Ejaaz:
to frontier level intelligence for the cost of next to nothing.
Ejaaz:
Download it completely free and run it privately at home.
Ejaaz:
On this tweet that I have pulled up here, it basically says for every closed
Ejaaz:
model, there is an open source alternative in it.
Ejaaz:
And it goes through a list like Sonnet 4.5, you've got GLM 4.6,
Ejaaz:
Grok Code Fast, you've got GPT OSS, GPT 5, you've got Kimi K2 Thinking.
Ejaaz:
And it just goes on and on and on. And if we look at this kind of like a year
Ejaaz:
and a half ago, maybe even two years ago, this list would be non-existent.
Ejaaz:
It would just be Frontier AI Labs on the closed source side and zero open source side.
Ejaaz:
So to see this kind of progress is really, really encouraging.
Josh:
Yeah, it's going to be a race. It's going to be a battle between open and closed source.
Josh:
And perhaps that's not even the battle. Perhaps it's open source until they
Josh:
catch up to closed source.
Josh:
And then it's closed source across the board. So it's going to be interesting
Josh:
to see the developments.
Josh:
We have a new batch of models that are coming. We're kind of in this weird limbo
Josh:
where Gemini 3 is hopefully coming soon. We'll have some new benchmarks.
Josh:
And one of the things that was this harsh truth to kind of wrap my head around,
Josh:
which is what you just mentioned, Ejaz, and the fact that everyone's just compute constraint.
Josh:
Like OpenAI could have made GPT-5, probably twice as impressive if they really
Josh:
wanted to they just have no compute to serve that and it would have been way
Josh:
too expensive and way too slow so it's not that it's
Josh:
they can't it can't be done it's just that people don't have the resources to
Josh:
do it so it's this constant balancing act and it's gonna be fun to see how
Josh:
how companies kind of slot themselves into that that curve of like how much
Josh:
they want to spend on compute versus cost versus just what they have available
Josh:
to actually use to train these models and deploy them at scale to users
Ejaaz:
And that's it for today folks um super fun episode.
Ejaaz:
It is always surprising to me how quickly open source catches up with closed
Ejaaz:
source centralized AI. I always think kind of like it's going to lag a few years
Ejaaz:
and now it's come down to the fact that it's lagging a few weeks.
Ejaaz:
We have a jam-packed week. We have potentially a new nano banana model being
Ejaaz:
released by Google tomorrow. Fingers crossed.
Josh:
I'm praying for that.
Ejaaz:
Fingers crossed. I'm also praying for that as well. And we have a second episode
Ejaaz:
based on tesla's investor day which had some really jam-packed exciting news now listen,
Ejaaz:
If you want the U.S. to win this AI race, and make no mistake,
Ejaaz:
it is a race, you need to subscribe to American AI YouTube channels, one of which is us.
Ejaaz:
Please subscribe, hit the notification button, wherever you're listening to, give us a rating.
Ejaaz:
We are helped by these so much. It is bringing up so much awareness.
Ejaaz:
The algorithm is favoring us. We're getting all these wonderful views and new incomers.
Ejaaz:
We've got a thousand of you from last week, which is just insane.
Ejaaz:
Hello, welcome to the channel.
Ejaaz:
We hope you enjoyed the content and we will see you on the next one.
Josh:
Yeah before i let them off the hook i'm checking i'm doing the stat update 83
Josh:
percent of the people that watched last week were not subscribed if you're watching
Josh:
this on youtube don't come on guys
Josh:
or go on spotify my preferred place of finding this podcast it's the best i'm telling you
Josh:
i don't know how to describe this to people any better spotify is so good you
Josh:
have the video you have the audio you could turn it off and lock your phone
Josh:
without needing a premium membership please go go over there go leave a comment
Josh:
over there because also the comment section is kind of popping too so yeah anyway
Josh:
thank you for all this we do
Ejaaz:
Not pick and choose wherever you listen go for it.
Josh:
There you go all right we will see you guys in the next one thank you for watching
Josh:
as always much appreciated um peace