Motley Fool Money - What Drives Nvidia’s Growth?
Episode Date: February 27, 2025The tech giant is a data center business. (00:21) Asit Sharma and Ricky Mulvey discuss: - Why Wall Street is shrugging off Nvidia’s 78% yearly revenue growth. - CEO Jensen Huang’s vision for AI i...n the coming years. - Short sellers targeting digital ad seller, AppLovin. Companies discussed: NVDA, APP, META Host: Ricky Mulvey Guest: Asit Sharma Producer: Mary Long Engineer: Dan Boyd Learn more about your ad choices. Visit megaphone.fm/adchoices
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Nvidia reported, the market shrugged.
You're listening to Motley Fool Money.
I'm Ricky Mawbe.
joined today by Osset Sharma.
Awesome, thanks for being here, man.
I appreciate you inviting me, Ricky.
Glad to be here.
Well, I wanted to get you on Nvidia Day because I know you think a lot about artificial intelligence,
and this is the market leader.
This is the leader in the space.
And on the surface, if we don't look at the stock reaction,
it seems like Nvidia shot the lights out.
You're over-year sales growth of 78%, almost 80%,
and most of that is coming from data center revenue. Make no mistake. We could and probably will talk
autonomous driving, gaming, robotics, but right now, Nvidia is a data center business. So let's talk
about that number and talk about the growth in the data centers. Where's that coming from,
Osset? So it's coming from two places, Ricky. First, as we all know, it's coming from the big
hyperscalers who are buying Nvidia GPUs, especially their Blackwell GPU complexes, hand over fists.
So, think big companies like Microsoft, which has the Azure platform, Amazon.com, which has
AWS, those companies that are in the business of serving up AI to us are buying this compute.
Now, the other half of that group is enterprise businesses, companies that may be in the Fortune
1,000 or the Fortune 500.
They are slowly but surely digging deeper into their own capabilities to serve AI to their
customers, and they're not only renting space on these big clouds. They are doing this internally,
so they're buying GPUs for their own purposes. That's becoming a little bit bigger business over
time than it was at the outset of this generative AI explosion a couple of years ago.
There are a few forces that seem to be affecting Nvidia right now. One is that these large
language models that Nvidia chips power are being asked to do much more than they were just a
couple of years ago. Simultaneously, the cost of inferences in doing that is declining. So here are the
two forces. One, this is from the call, we've driven a 200x reduction in inference costs in just
the last two years. And also pointed out that the amount of tokens generated for an inference
compute is already 100 times more than the one-shot example. So to break that down, a one-shot
is if you ask an LLM, what is the capital of Japan?
An inference compute would be, here are NVIDIA's earnings, and I want you to summarize it and debate
the bull and bear cases.
You're asking for a larger logic chain.
So those are the two forces.
The cost is going down, but these machines are being asked to do more.
Are these forces in opposition, and what do they mean for NVIDIA?
So they're not really in opposition, if you think of this from NVIDIA's perspective.
when the call came to supply this type of answer for consumers,
and Nvidia went from being sort of a test and research development phase company
alongside those companies that were building the models,
to just jumping into this wide world where suddenly everyone can pay for inference.
Invidia was talking a lot about scaling laws,
the fact that after you trained a model,
it required a lot of compute to keep serving up inference,
So the scaling law of inference was much talked about at the time.
Now, as we've emerged into bigger and badder models, Ricky, the training actually doesn't
stop once a model is released.
So now we're into things, phases called post-training, where a model keeps learning after
it's released to the public.
And that really triggers this second law of scaling.
And Jensen Huang talked about three laws of scaling last night on the call.
That second is the post-training scaling.
law. That means you have to have a lot more compute as you post-trained a model. So, Invita's starting to
win on volume, as you can see. The models emerge, they get better, and more compute is required.
Now, there's this third law, which you sort of alluded to, which is when you ask a model to reason,
to think in steps, that requires a lot more compute than just answering it one question and waiting
for that simple answer to a simple query. This is the third law that Jensen was referring to
in the call the inference time scaling law. You ask a model to think, to reason, to take steps.
Take its own time. Have you tried the latest chat-a-b-T models that really think? Sometimes
that model takes five minutes to return an answer. As these laws keep evolving, really what's
happening is that Nvidia is winning on volume, as I sort of hinted at before. So the cost of
compute can go down. And to complete this virtuous cycle, what Nvidia is doing is architecting
for more compute that will handle more and more of these scaling laws.
And it has to drive down the cost for its customers to want to keep playing.
And the customers want to keep playing because they're showing cost savings with each successive,
more complex round of GPUs that it throws at the market.
What's happening with Nvidia's networking revenue?
We talked about how this is a data center business.
So for the newer listeners, how is the networking business different from the data center business?
Because we're going to talk about it. This is one rare area where revenue is actually declining for
NVIDIA. Sure. So networking is such a fun thing to think about because none of us really
understand it unless we happen to be in this industry. The way I think about it, Ricky, is
slinging data throughout a physical space in a way that's efficient given whatever that end
demand is. So in this case, AI. Invita bought a company called Melanox a few years ago,
which had a competing standard to the Ethernet standard, which we probably all remember from years ago.
And that has proven to be pretty good for moving data through AI networks a little bit faster, in some cases, than the Ethernet standard.
Now, Nvidia has kept innovating on this technology, and it's trying to compete with companies like Cisco, with Juniper networks, with Arista networks, in some ways.
But more over than that, it's trying to make its own data centers, the ones that it builds in prototype.
It actually builds prototype factories to make them more efficient so it can sell more of its GPUs.
They've got pretty good at this.
And what happened this quarter is that a standard that Nvidia had put into place now is merging over, integrating to a new standard.
So the old standard, which is still quite robust, is shifting to something called NVLink
72.
And they are combining that with a technology that they call Spectrum X.
With Nvidia, there's always so many new products, product names.
The gist of this is that they have a transition quarter as they make their networking more
capable for the next generations of Blackwell GPUs.
They're going to see like a slight drop off in this networking revenue.
but the company expects that it's going to pick up in the very near future.
And any time you listen to an Nvidia earnings call, you always get bold visions of the future
from CEO Jensen Wong, and I'm hoping you can translate this vision for our listeners.
Quote, the next wave is coming.
Agenic AI for enterprise, physical AI for robotics, and sovereign AI as different regions
build out their AI for their own ecosystems.
And so each one of these are barely off the ground and we can see them, end quote.
What is that vision, ASEIT?
That vision is a vision in which the three most important customers to Nvidia, those enterprise
businesses that I mentioned, then companies that are going to merge in the future from doing
stuff that's online and in cloud data centers.
They're going to move that into the physical world.
So think the manufacturing community, the automobile autonomous driving community.
And third, the only entity left on the planet that has enough pockets to keep Nvidia growing
If they exhaust the spending of these big hyperscalers and companies and manufacturing companies
in the future, that group is the sovereign government.
So let's quickly break down what this means.
Agentic AI for enterprise is the ability for big companies to spin up their own AI agents
throughout their companies and make your work and my work theoretically more easy so that
you and I can be more productive and potentially keep our job.
Jobs. I mean, this is the future that everyone is questioning. Second, physical AI for robots
is, it's sort of interesting. From its founding, Nvidia has been fascinated with the physics of how
things work, from the physics of visualization, so how they became a leader in the gaming space
with their virtual reality machine learning and also the way they present graphics on their graphics
cards. That's always been something they've wanted to explore, and they've moved that into,
the physical world. So they take what's something that limits a large language model, so the text
modality, and they've expanded that into a lot of video and other modalities. And what this means
is that they're gathering enormous amounts of data so that the robots can understand physically
how things work. They're training robots for the real world. So instead of a robot going out
and moving things with its hands, before that ever happens, they have thousands and millions and
billions of simulations based on video data or prior other data, some of it text, so that the robot
already knows how to do it pretty well. And they have a platform called Cosmos, which is promoting
this, which has millions and millions. Actually, I think it's in the trillions of tokens of training
already under its belt. And then finally, that sovereign AI piece, foreign governments want to catch up
in a world where AI can be a level playing field or make things a level playing field. So,
NVIDIA's positioning itself is sort of the first end-to-end customer.
And they're pitching that to really European countries, countries from the Middle East,
all over the globe, to say we can come in and give you the technology that's needed that can be in-house,
so you don't have to go outside of your own country and put stuff on other people's servers.
And we can make you as competitive as, say, China or the United States,
because you'll be using our latest technology.
and it's a big market for them. It's a market that if it materializes, could be the transition
market outside of these few big names that everyone knows, Alphabet, Microsoft, Amazon, who are
the main props right now of the NVIDIA story. All right, I'm going to ask you, maybe an unfair
question. This is a stock that I have unfortunately been watching from afar for a few years now.
And in my brain, I was like, you know, there's going to be a dip. Right now, Nvidia is it about
28 times forward earnings. It's flirted with 50 times forward earnings just a few months ago.
This is for a stock that leapfrogs the market cap of McDonald's on certain days, which it has
done before, 28 times forward earnings seems awfully mature. Yes, it's a multi-trillion dollar
business. But is this a dip worth buying Osset? It is a tough question. I wake up some mornings,
on the mornings I'm thinking about Nvidia and wonder if all that growth isn't in the rearview mirror.
It seems awfully hard for a company this size to grow at a rate that could be in the teens or the low 20s
that would justify a person buying today who feels like maybe it could be an even cheaper company.
I buy it 28 times earnings today, but as the growth sputters out, maybe it trades for 15 times earnings in the future.
The other argument or way to look at it is that this company has exhibited an uncanny knack
for understanding what the future looks like.
Proof of this case is this latest Blackwell chip.
If you've ever driven by a piece of land and seen the sign build to suit, meaning thereby
that the owner of the land will build what you want for you based on your specs, say a warehouse
or a restaurant, Nvidia is the planet's best build to build.
suit manufacturing company because it works so closely with all the key players, the people
that are building the large language models, the people that are building data centers,
the hyperscalers, the end customers for its GPUs.
It has such a bead on what the future looks like.
Forget its own great technology.
So it already has a keen understanding of where things could go, that it's almost unerringly
correct at developing in advance the technology that has a lot of demand attached to it.
Even if this phase slows, Ricky, at least based on its track record,
I wouldn't be surprised if a dormant company that people don't get excited about anymore
called Nvidia sometime in 2032 surprises the market again and takes off.
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I want to move on to the next story.
And this is about App Lovin,
which kind of quietly was the most successful tech company
in the stock market of 2024,
Osset, not Palantir.
It was App Loven.
But right now, App Loven is facing the shorts.
So for those unfamiliar,
App Loven sells ads for mobile games.
If you're a fool,
you can think of this is the trade desk but for mobile gaming. And before we get to the allegations,
it's been a tremendous rise for the company. Why have investors previously, at least, been so
bullish on App Loven? App Loven operates in a pretty difficult market. So this is digital,
programmatic advertising. If you're familiar with the trade desks, it's a little bit like that,
an ad platform that's served up automatically. But it's confined mostly to the mobile gaming market,
which is treacherous. It's a market that it's just difficult to make good money in. There's a
company called Unity Software, which is extremely capable. It's having a relatively good year,
but that's a case study of the stumbles and problems with trying to compete in a market where
ad impressions are hard to come by, and it's hard to actually have unit economic value here.
Apple Levin seemed to do this quite easily with a management change and some new.
technology, they call it Axon 2.0. It's a model that is sort of continually enhanced
to optimize their monetization strategy. And the stock has really taken off with the success
of this platform. So that's the quick story behind why Apploven has garnered a lot of attention
from the business community, the analyst community, and also just retail investors who want
in on a company that can prove it can really juice the earnings and revenue growth in such
a tough market. There's quite a few allegations in the short reports that one of them came from
fuzzy panda. So a few of them include basically, one is essentially copying Meta's homework on
their users to track their customers, and they think meta would be very upset about that. Another
allegation is that a lot of app-loven ads use sort of nefarious tricks to drive downloads. That could
include placing a little X above a game where you think you're closing out of the ad, but really you
end up opening the app store to download the game. And then additionally, there's some
fairly serious allegations on tracking children within these mobile gaming segments. When you
were working your way through the short report, Osset, was there anything that just wowed and
shocked and awed you is these short sellers would like to do?
I like to read short reports of companies that are recommended in services that I work on
here at the Motley Fool or that I own personally. For the reason that some
Sometimes a short report can have a kernel of truth that you need to follow and understand
more.
I've read my share of reports, Ricky, where I just went through everything and felt like nothing
here has any potential to even stick, and it just sounds over the top.
So I guess what caught my attention was what you mentioned, the allegations of sort of harm
towards younger consumers.
And that seemed like something that is a typical hook for short sellers when they have a report.
So we have to just explain here.
Short sellers provide a service to the investment community and that they can point out
what they think or allege is misunderstood by investors.
But they also have a financial interest in investors getting scared and selling out of a company.
That interest is often brought to your attention by the hook.
So I think that's what sort of leapt out at me as a little, like, maybe too much because I think
it's probably going to be easily refuted by the company.
And in fact, there was a blog post from the CEO of App Loven responding to this.
And I think he pretty squarely deflected sort of any kind of harm that could come to younger users.
But I know we have a lot more to talk about.
So let's keep moving.
Yeah, this is definitely a question of who do you be?
believe the short sellers would say that this that app lovin ads where if you're playing a mobile
game you see another ad for a mobile game that there's direct downloading that you are tricked
into as a user the CEO of app lovin adam farogi says every download results from an explicit
user choice these are statements in direct opposition to each other and it's up to the i guess the
investors to decide who they believe osse it the blog post itself is pretty interesting
Ricky, because it's short. And this is one of the statements, you know, you've isolated that makes
me think, I want to study this a little bit more. I haven't made any kind of firm decision on whether
these allegations are spot on or just way off. But when an executive puts it in this way,
what he's doing is putting the onus of any kind of technical engineering up for subjective
interpretation. So in other words, you explicitly user wanted to, you know, play this game. So you
clicked here. Now, what you've also, you know, brought up here is if that triggers some installs
that the customer doesn't understand or know about, their disclaiming responsibility,
but it doesn't mean they couldn't be culpable in that respect. And we should point out here
that App Loven, while, you know, they clearly explained how their value is created.
They say it's not created by just mere impressions or clicks.
Their revenue is based on the value that they drive for those using their service.
Well, actually, it's partly install-based.
So the more installs they show, the more revenue they generate.
So that question doesn't exactly address this.
The other thing that the blog post doesn't head-on address is this allegation that you've brought up.
Not that you brought up, Ricky.
you and I aren't in the business of writing these short reports, but you've relayed from the reports
that maybe this company is sort of reverse engineering important data for meta.
So what's happening here allegedly is that App Loven has sort of a view into meta's advertising,
and from that, it's getting access to important first-party data.
So meta-ads will include first-party data that maybe the customer,
doesn't want anyone else to see a meta platform customer and be served up ads from.
So the allegations are that they're sort of looking at all this stream of information and then
engineering, advertising that makes their ads more successful, which is not kosher
for the major platforms from meta to Apple to alphabet.
And anytime I read a short report, in this case, I'm reading a short report and I'm reading
management's response, Asset, my eyebrows raise in both cases, because you have two players with
tremendous benefit to tell a certain narrative. And in the case of App Loven, as you've mentioned,
I've been served mobile ads for games that feel a little fishy. So I understand where they're
coming from on that. On the other side, for these short sellers, they're basically saying that
once Meta finds this out, they're going to shut down App Lovin. And we know this because of a whistleblower.
who found this with 13 standard deviations.
It couldn't possibly be coincidence.
And oh, by the way, we can't really publish that
because they sold that information to a hedge fund.
There's some weirdness going on.
And it makes me wonder, couldn't Meta just shut down Applovin?
And why is a short research firm figuring this out before Meta?
So my wife who has a degree in information science
and is really great at reasoning and is often calling me out at the dinner table first.
stuff I don't understand. She would say that's the kind of question you should ask. If you're
reading a short report, this is the crux of it. Like, why wouldn't meta figure this out on its own?
Why couldn't they? Why haven't they? Why wouldn't they pull the plug? So I think this is for
investors, just a great question to ponder and to keep us from jumping to a conclusion and getting
scared into response or, you know, perhaps being tricked into response. We just don't know.
But I think we'll find out in the coming quarters. If next quarter we see a big drop in revenue
And they say, oh, by the way, a certain unnamed platform is sort of clamped down on this.
We'll understand what happened.
So I would encourage the investors listening.
It's okay to just look at this.
Take the information in.
It doesn't mean you have to take action on it right now.
Awesome, Charma.
Thanks for being here.
Appreciate your time and your insight.
Thanks a lot, Ricky.
As always, people on the program may have interests in the stocks they talk about,
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so no buyer-sell stocks based solely on what you hear.
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The Motley Fool only picks products that I would personally recommend to friends like you.
I'm Ricky Mulvey.
Thanks for listening.
We'll be back tomorrow.
