Anthropic raises $13B Series F

420 meetpateltech 429 9/2/2025, 4:04:15 PM anthropic.com ↗

Comments (429)

llamasushi · 6h ago
The compute moat is getting absolutely insane. We're basically at the point where you need a small country's GDP just to stay in the game for one more generation of models.

What gets me is that this isn't even a software moat anymore - it's literally just whoever can get their hands on enough GPUs and power infrastructure. TSMC and the power companies are the real kingmakers here. You can have all the talent in the world but if you can't get 100k H100s and a dedicated power plant, you're out.

Wonder how much of this $13B is just prepaying for compute vs actual opex. If it's mostly compute, we're watching something weird happen - like the privatization of Manhattan Project-scale infrastructure. Except instead of enriching uranium we're computing gradient descents lol

The wildest part is we might look back at this as cheap. GPT-4 training was what, $100M? GPT-5/Opus-4 class probably $1B+? At this rate GPT-7 will need its own sovereign wealth fund

AlexandrB · 4h ago
The whole LLM era is horrible. All the innovation is coming "top-down" from very well funded companies - many of them tech incumbents, so you know the monetization is going to be awful. Since the models are expensive to run it's all subscription priced and has to run in the cloud where the user has no control. The hype is insane, and so usage is being pushed by C-suite folks who have no idea whether it's actually benefiting someone "on the ground" and decisions around which AI to use are often being made on the basis of existing vendor relationships. Basically it's the culmination of all the worst tech trends of the last 10 years.
dpe82 · 3h ago
In a previous generation, the enabler of all our computer tech innovation was the incredible pace of compute growth due to Moore's Law, which was also "top-down" from very well-funded companies since designing and building cutting edge chips was (and still is) very, very expensive. The hype was insane, and decisions about what chip features to build were made largely on the basis of existing vendor relationships. Those companies benefited, but so did the rest of us. History rhymes.
JohnMakin · 27m ago
Should probably change this to "was appearance of incredible pace of compute growth due to Moore's Law," because even my basic CS classes from 15 years ago were teaching that it was drastically slowing down, and isn't really a "law" more than an observational trend that lasted a few decades. There are limits to how small you can make transistors and we're not too far from it, at least not what would continue to yield the results of that curve.
dmschulman · 3h ago
Eh, if this is true then IBM and Intel would still be the kings of the hill. Plenty of companies came from the bottom up out of nothing during the 90s and 2000s to build multi-billion dollar companies that are still dominate the market today. Many of those companies struggled for investment and grew over a long timeframe.

The argument is something like that is not really possible anymore given the absurd upfront investments we're seeing existing AI companies need in order to further their offerings.

dpe82 · 3h ago
Anthropic has existed for a grand total of 4 years.

But yes, there was a window of opportunity when it was possible to do cutting-edge work without billions of investment. That window of opportunity is now past, at least for LLMs. Many new technologies follow a similar pattern.

falcor84 · 39m ago
What about deepseek r1? That was earlier this year - how do you know that there won't be more "deepseek moments" in the coming years?
3uler · 3h ago
Intel was king of the hill until 2018.
crawshaw · 38m ago
> All the innovation is coming "top-down" from very well funded companies - many of them tech incumbents

The model leaders here are OpenAI and Anthropic, two new companies. In the programming space, the next leaders are Qwen and DeepSeek. The one incumbent is Google who trails all four for my workloads.

In the DevTools space, a new startup, Cursor, has muscled in on Microsoft's space.

This is all capital heavy, yes, because models are capital heavy to build. But the Innovator's Dilemma persists. Startups lead the way.

nightski · 21m ago
At what point is OpenAI not considered new? It's a few months from being a decade old with 3,000 employees and $60B in funding.
fshr · 15m ago
Well, compare them to Microsoft: 50 years old with 228,000 employees and $282 billion in revenue.
lexandstuff · 16m ago
And all of those companies except for Google are entirely dependant on NVIDIA who are the real winners here.
simianwords · 3h ago
This is very pessimistic take. Where else do you think the innovation would come from? Take cloud for example - where did the innovation come from? It was from the top. I have no idea how you came to the conclusion that this implies monetization is going to be awful.

How do you know models are expensive to run? They have gone down in price repeatedly in the last 2 years. Why do you assume it has to run in the cloud when open source models can perform well?

> The hype is insane, and so usage is being pushed by C-suite folks who have no idea whether it's actually benefiting someone "on the ground" and decisions around which AI to use are often being made on the basis of existing vendor relationships

There are hundreds of millions of chatgpt users weekly. They didn't need a C suite to push the usage.

AlexandrB · 3h ago
> I have no idea how you came to the conclusion that this implies monetization is going to be awful.

Because cloud monetization was awful. It's either endless subscription pricing or ads (or both). Cloud is a terrible counter-example because it started many awful trends that strip consumer rights. For example "forever" plans that get yoinked when the vendor decides they don't like their old business model and want to charge more.

simianwords · 3h ago
Vast majority of cloud users use AWS, GCP and Azure which have metered billing. I'm not sure what you are talking about.
acdha · 3h ago
> Take cloud for example - where did the innovation come from? It was from the top.

Definitely not. That came years later but in the late 2000s to mid-2010s it was often engineers pushing for cloud services over the executives’ preferred in-house services because it turned a bunch of helpdesk tickets and weeks to months of delays into an AWS API call. Pretty soon CTOs were backing it because those teams shipped faster.

The consultants picked it up, yes, but they push a lot of things and usually it’s only the ones which actual users want which succeed.

simianwords · 2h ago
Sure that’s the same way GPT was invented in Google.
HarHarVeryFunny · 3h ago
C-suite is pushing business adoption, and those GenAI projects of which 95% are failing.
og_kalu · 2h ago
That same report said a lot people are just using personal accounts for work though.
simianwords · 3h ago
The other side of it is lots of users are willingly purchasing the subscription without any need of push.
HarHarVeryFunny · 1h ago
Sure - there are use cases for LLMs that work, and use cases that don't.

I think those actually using "AI" have a lot better idea of which are which than the C-suite folk.

awongh · 3h ago
> All the innovation is coming "top-down" from very well funded companies - many of them tech incumbents

What I always thought was exceptional is that it turns out it wasn't the incumbents who have the obvious advantage.

Take away the fact that everyone involved is already at the top 0.00001% echelon of the space (Sam Altman and everyone involved with the creation of OpenAI), but if you had asked me 10 years ago who will have the leg up creating advanced AI I would have said all the big companies hoarding data.

Turns out just having that data wasn't a starting requirement for the generation of models we have now.

A lot of the top players in the space are not the giant companies with unlimited resources.

Of course this isn't the web or web 2.0 era where to start something huge the starting capital was comparatively tiny, but it's interesting to see that the space allows for brand new companies to come out and be competitive against Google and Meta.

hintymad · 50m ago
> The whole LLM era is horrible. All the innovation is coming "top-down" from very well funded companies

Wouldn't it be the same for the hardware companies? Not everyone could build CPUs as Intel/Motorola/IBM did, not everyone could build mainframes like IBM did, and not everyone could build smart phones like Apple or Samsung did. I'd assume it boils down the value of the LLMs instead of who has the moat. Of course, personally I really wish everyone can participate in the innovation like the internet era, like training and serving large models on a laptop. I guess that day will come, like PC over mainframes, but just not now.

tedivm · 2h ago
This is only if you ignore the growing open source models. I'm running Qwen3-30B at home and it works great for most of the use cases I have. I think we're going to find that the optimizations coming from companies out of China are going to continue making local LLMs easier for folks to run.
atleastoptimal · 1h ago
Nevertheless, prices for LLM at any given level of performance have gone down precipitously over the past few years. Regardless of how bad it seems the decisions being made are, the decision making process both is making an extreme amount of money for those in the AI companies, and providing extremely cheap and high quality intelligence for those using their offerings.
pimlottc · 1h ago
Remember when you could get an Uber ride all the way across town for $5? It is way too early to know what prices for these services will actually cost.
duxup · 6h ago
It's not clear to me that each new generation of models is going to be "that" much better vs cost.

Anecdotally moving from model to model I'm not seeing huge changes in many use cases. I can just pick an older model and often I can't tell the difference...

Video seems to be moving forward fast from what I can tell, but it sounds like the back end cost of compute there is skyrocketing with it raising other questions.

renegade-otter · 5h ago
We do seem to be hitting the top of the curve of diminishing returns. Forget AGI - they need a performance breakthrough in order to stop shoveling money into this cash furnace.
reissbaker · 5h ago
According to Dario, each model line has generally been profitable: i.e. $200MM to train a model that makes $1B in profit over its lifetime. But, since each model has been more and more expensive to train, they keep needing to raise more money to train the next generation of model, and the company balance sheet looks negative: i.e. they spent more this year than last (since the training cost for model N+1 is higher), and the model this year made less money this year than they spent (even if the model generation itself was profitable, model N isn't profitable enough to train model N+1 without raising — and spending — more money).

That's still a pretty good deal for an investor: if I give you $15B, you will probably make a lot more than $15B with it. But it does raise questions about when it will simply become infeasible to train the subsequent model generation due to the costs going up so much (even if, in all likelihood, that model would eventually turn a profit).

dom96 · 4h ago
> if I give you $15B, you will probably make a lot more than $15B with it

"probably" is the key word here, this feels like a ponzi scheme to me. What happens when the next model isn't a big enough jump over the last one to repay the investment?

It seems like this already happened with GPT-5. They've hit a wall, so how can they be confident enough to invest ever more money into this?

bcrosby95 · 4h ago
I think you're really bending over backwards to make this company seem non viable.

If model training has truly turned out to be profitable at the end of each cycle, then this company is going to make money hand over fist, and investing money to out compete the competition is the right thing to do.

Most mega corps started out wildly unprofitable due to investing into the core business... until they aren't. It's almost as if people forget the days of Facebook being seen as continually unprofitable. This is how basically all huge tech companies you know today started.

serf · 4h ago
>I think you're really bending over backwards to make this company seem non viable.

Having experienced Anthropic as a customer, I have a hard time thinking that their inevitable failure (something i'd bet on) will be model/capability-based, that's how bad they suck at every other customer-facing metric.

You think Amazon is frustrating to deal with? Get into a CSR-chat-loop with an uncaring LLM followed up on by an uncaring CSR.

My minimum response time with their customer service is 14 days -- 2 weeks -- while paying 200usd a month.

An LLM could be 'The Great Kreskin' and I would still try to avoid paying for that level of abuse.

sbarre · 3h ago
Maybe you don't want to share, but I'm scratching my head trying to think of something I would need to talk to Anthropic's customer service about that would be urgent and un-straightfoward enough to frustrate me to the point of using the term "abuse"..
babelfish · 2h ago
Particularly since they seem to be complaining about service as a consumer, rather than an enterprise...
Barbing · 28m ago
Thoughts on Ed Zitron’s pessimism?

“There Is No AI Revolution” - Feb ‘25:

https://www.wheresyoured.at/wheres-the-money/

mandevil · 4h ago
I mean, this is how semiconductors have worked forever. Every new generation of fab costs ~2x what the previous generation did, and you need to build a new fab ever couple of years. But (if you could keep the order book full for the fab) it would make a lot of money over its lifetime, and you still needed to borrow/raise even more to build the next generation of fab. And if you were wrong about demand .... you got into a really big bust, which is also characteristic of the semiconductor industry.

This was the power of Moore's Law, it gave the semiconductor engineers an argument they could use to convince the money-guys to let them raise the capital to build the next fab- see, it's right here in this chart, it says that if we don't do it our competitors will, because this chart shows that it is inevitable. Moore's Law had more of a financial impact than a technological one.

And now we're down to a point where only TSMC is for sure going through with the next fab (as a rough estimate of cost, think 40 billion dollars)- Samsung and Intel are both hemming and hawing and trying to get others to go in with them, because that is an awful lot of money to get the next frontier node. Is Apple (and Nvidia, AMZ, Google, etc.) willing to pay the costs (in delivery delays, higher costs, etc.) to continue to have a second potential supplier around or just bite the bullet and commit to TSMC being the only company that can build a frontier node?

And even if they can make it to the next node (1.4nm/14A), can they get to the one after that?

The implication for AI models is that they can end up like Intel (or AMD, selling off their fab) if they misstep badly enough on one or two nodes in a row. This was the real threat of Deepseek: if they could get frontier models for an order of magnitude cheaper, then the entire economics of this doesn't work. If they can't keep up, then the economics of it might, so long as people are willing to pay more for the value produced by the new models.

m101 · 2h ago
Except it's like second tier semi manufacturer spending 10x less on the same fab in one years time. Here it might make sense to wait a bit. There will be customers, especially considering the diminishing returns these models seem to have come across. If performance was improving I'd agree with you, but it's not.
Avshalom · 2h ago
if you're referring to https://youtu.be/GcqQ1ebBqkc?t=1027 he doesn't actually say that each model has been profitable.

He says "You paid $100 million and then it made $200 million of revenue. There's some cost to inference with the model, but let's just assume in this cartoonish cartoon example that even if you add those two up, you're kind of in a good state. So, if every model was a company, the model is actually, in this example is actually profitable. What's going on is that at the same time"

notice those are hypothetical numbers and he just asks you to assume that inference is (sufficiently) profitable.

He doesn't actually say they made money by the EoL of some model.

viscanti · 4h ago
Well how much of it is correlation vs causation. Does the next generation of model unlock another 10x usage? Or was Claude 3 "good enough" that it got traction from early adopters and Claude 4 is "good enough" that it's getting a lot of mid/late adopters using it for this generation? Presumably competitors get better and at cheaper prices (Anthropic charges a premium per token currently) as well.
yahoozoo · 3h ago
What about inference costs?
mikestorrent · 5h ago
Inference performance per watt is continuing to improve, so even if we hit the peak of what LLM technology can scale to, we'll see tokens per second, per dollar, and per watt continue to improve for a long time yet.

I don't think we're hitting peak of what LLMs can do, at all, yet. Raw performance for one-shot responses, maybe; but there's a ton of room to improve "frameworks of thought", which are what agents and other LLM based workflows are best conceptualized as.

The real question in my mind is whether we will continue to see really good open-source model releases for people to run on their own hardware, or if the companies will become increasingly proprietary as their revenue becomes more clearly tied up in selling inference as a service vs. raising massive amounts of money to pursue AGI.

ethbr1 · 3h ago
My guess would be that it parallels other backend software revolutions.

Initially, first party proprietary solutions are in front.

Then, as the second-party ecosystem matures, they build on highest-performance proprietary solutions.

Then, as second parties monetize, they begin switching to OSS/commodity solutions to lower COGS. And with wider use, these begin to outcompete proprietary solutions on ergonomics and stability (even if not absolute performance).

While Anthropic and OpenAi are incinerating money, why not build on their platforms? As soon as they stop, scales tilt towards an apache/nginx type commoditized backend.

duxup · 5h ago
>cash furnace

They don't even burn it on on AI all the time either: https://openai.com/sam-and-jony/

dmbche · 4h ago
"May 21, 2025

This is an extraordinary moment.

Computers are now seeing, thinking and understanding.

Despite this unprecedented capability, our experience remains shaped by traditional products and interfaces."

I don't even want to learn about them every line is so exhausting

duxup · 4h ago
Agreed, that whole page is brutal to read.
serf · 4h ago
I was expecting a wedding or birth announcement from that picture framing and title.

"We would like to introduce you to the spawn of Johnny Ive and Sam Altman, we're naming him Damien Thorn."

jayde2767 · 5h ago
"cash furnace", so aptly put.
gizajob · 3h ago
The economics will work out when the district heating is run off the local AI/cash furnace.
general1465 · 5h ago
Yep we do. There is a 1 year old video on YouTube, which describes this limitation https://www.youtube.com/watch?v=5eqRuVp65eY

Called efficient compute frontier

fredoliveira · 5h ago
I think that the performance unlock from ramping up RL (RLVR specifically) is not fully priced into the current generation yet. Could be wrong, and people closer to the metal will know better, but people I talk to still feel optimistic about the next couple of years.
derefr · 5h ago
> Anecdotally moving from model to model I'm not seeing huge changes in many use cases.

Probably because you're doing things that are hitting mostly the "well-established" behaviors of these models — the ones that have been stable for at least a full model-generation now, that the AI bigcorps are currently happy keeping stable (since they achieved 100% on some previous benchmark for those behaviors, and changing them now would be a regression per those benchmarks.)

Meanwhile, the AI bigcorps are focusing on extending these models' capabilities at the edge/frontier, to get them to do things they can't currently do. (Mostly this is inside-baseball stuff to "make the model better as a tool for enhancing the model": ever-better domain-specific analysis capabilities, to "logic out" whether training data belongs in the training corpus for some fine-tune; and domain-specific synthesis capabilities, to procedurally generate unbounded amounts of useful fine-tuning corpus for specific tasks, ala AlphaZero playing unbounded amounts of Go games against itself to learn on.)

This means that the models are getting constantly bigger. And this is unsustainable. So, obviously, the goal here is to go through this as a transitionary bootstrap phase, to reach some goal that allows the size of the models to be reduced.

IMHO these models will mostly stay stable-looking for their established consumer-facing use-cases, while slowly expanding TAM "in the background" into new domain-specific use-cases (e.g. constructing novel math proofs in iterative cooperation with a prover) — until eventually, the sum of those added domain-specific capabilities will turn out to have all along doubled as a toolkit these companies were slowly building to "use models to analyze models" — allowing the AI bigcorps to apply models to the task of optimizing models down to something that run with positive-margin OpEx on whatever hardware that would be available at that time 5+ years down the line.

And then we'll see them turn to genuinely improving the model behavior for consumer use-cases again; because only at that point will they genuinely be making money by scaling consumer usage — rather than treating consumer usage purely as a marketing loss-leader paid for by the professional usage + ongoing capital investment that that consumer usage inspires.

Workaccount2 · 5h ago
>Mostly this is inside-baseball stuff to "make the model better as a tool for enhancing the model"

Last week I put GPT-5 and Gemini 2.5 in a conversation with each other about a topic of GPT-5's choosing. What did it pick?

Improving LLMs.

The conversation was far over my head, but the two seemed to be readily able to get deep into the weeds on it.

I took it as a pretty strong signal that they have an extensive training set of transformer/LLM tech.

temp0826 · 4h ago
Like trying to have a lunch conversation with coworkers about anything other than work
kdmtctl · 5h ago
You have just described a singularity point for this line of business. Which could happen. Or not.
derefr · 4h ago
I wouldn't describe it as a singularity point. I don't mean that they'll get models to design better model architectures, or come up with feature improvements for the inference/training host frameworks, etc.

Instead, I mean that these later-generation models will be able to be fine-tuned to do things like e.g. recognizing and discretizing "feature circuits" out of the larger model NN into algorithms, such that humans can then simplify these algorithms (representing the fuzzy / incomplete understanding a model learned of a regular digital-logic algorithm) into regular code; expose this code as primitives/intrinsics the inference kernel has access to (e.g. by having output vectors where every odd position represents a primitive operation to be applied before the next attention pass, and every even position represents a parameter for the preceding operation to take); cut out the original circuits recognized by the discretization model, substituting simple layer passthrough with calls to these operations; continue training from there, to collect new, higher-level circuits that use these operations; extract + burn in + reference those; and so on; and then, after some amount of this, go back and re-train the model from the beginning with all these gained operations already being available from the start, "for effect."

Note that human ingenuity is still required at several places in this loop; you can't make a model do this kind of recursive accelerator derivation to itself without any cross-checking, and still expect to get a good result out the other end. (You could, if you could take the accumulated intuition and experience of an ISA designer that guides them to pick the set of CISC instructions to actually increase FLOPS-per-watt rather than just "pushing food around on the plate" — but long explanations or arguments about ISA design, aren't the type of thing that makes it onto the public Internet; and even if they did, there just aren't enough ISAs that have ever been designed for a brute-force learner like an LLM to actually learn any lessons from such discussions. You'd need a type of agent that can make good inferences from far less training data — which is, for now, a human.)

ACCount37 · 5h ago
The raw model scale is not increasing by much lately. AI companies are constrained by what fits in this generation of hardware, and waiting for the next generation to become available. Models that are much larger than the current frontier are still too expensive to train, and far too expensive to serve them en masse.

In the meanwhile, "better data", "better training methods" and "more training compute" are the main ways you can squeeze out more performance juice without increasing the scale. And there are obvious gains to be had there.

robwwilliams · 4h ago
The jump to 1 million token length context for Sonnet 4 plus access to internet has been a game-changer for me. And somebody should remind Anthropic leadership to at least mirror Wikipedia; better yet support Wikipedia actively.

All of the big AI players have profited from Wikipedia, but have they given anything back, or are they just parasites on FOSS and free data?

xnx · 5h ago
> AI companies are constrained by what fits in this generation of hardware, and waiting for the next generation to become available.

Does this apply to Google that is using custom built TPUs while everyone else uses stock Nvidia?

ACCount37 · 5h ago
By all accounts, what's in Google's racks right now (TPU v5e, v6e) is vaguely H100-adjacent, in both raw performance and supported model size.

If Google wants anything better than that? They, too, have to wait for the new hardware to arrive. Chips have a lead time - they may be your own designs, but you can't just wish them into existence.

xxpor · 4h ago
Aren't chips + memory constrained by process + reticle size? And therefore, how much HBM you can stuff around the compute chip? I'd expect everyone to more or less support the same model size at the same time because of this, without a very fundamentally different architecture.
gmadsen · 5h ago
Its not clear to me that it needs to. If at the margins it can still provide an advantage in the market or national defense, then the spice must flow
duxup · 5h ago
I suspect it needs to if it is going to cover the costs of training.
yieldcrv · 5h ago
Locally run video models that are just as good as today’s closed models are going to be the watershed moment

The companies doing foundational video models have stakeholders that don’t want to be associated with what people really want to generate

But they are pushing the space forward and the uncensored and unrestricted video model is coming

giancarlostoro · 5h ago
Nobody wants to make a commercial NSFW model that then suffers a jailbreak... for what is the most illegal NSFW content.
tick_tock_tick · 22m ago
It's going to be really weird when huge swaths of the internet are illegal to visit outside the USA because you keep running into that kind of AI generate "content".
simianwords · 3h ago
Why is this illegal btw? I mean whats stopping an AI company from releasing a proper NSFW model? I hope it doesn't happen but I want to know what prevents them from doing it now.
baq · 2h ago
in some jurisdictions generating a swastika or a hammer and sickle is illegal.

that said, I'm sure you can imagine that the really illegal, truly, positively sickening and immoral stuff is children-adjacent and you can be 100% sure there are sociopaths doing training runs for the broken people who'll buy the weights.

simianwords · 2h ago
Is it illegal to use mspaint to generate similar vile things?
Majromax · 2h ago
Not in the United States, but it is illegal in some jurisdictions.

Additionally, the entire "payment processors leaning on Steam" thing shows that it might be very difficult to monetize a model that's known for generating extremely controversial content. Without monetization, it would be hard for any company to support the training (and potential release) of an unshackled enterprise-grade model.

tick_tock_tick · 21m ago
Most of Europe doesn't really have free speech, frankly most of the world doesn't. Privileges like making mspaint drawings of nearly whatever you want is pretty uniquely American.
yieldcrv · 4h ago
Thats the thing, what’s “illegal” will challenge our whole society when it comes do dynamically generated real interactive avatars that are new humans

When it comes to sexually explicit content in general with adults, all of our laws rely on the human actor existing

FOSTA and SESTA is related to user generated content of humans, for example. They rely on making sure an actual human isnt being exploited and burdening everyone with that enforcement. When everyone can just say “thats AI” nobody’s going to care and platforms will be willing to take that risk of it being true again - or a new hit platform will. That kind of content currently Doesnt exist in large quantities yet, until a video model ungimped can generate it.

Concerns about trafficking only rely on actual humans not entirely new avatars

regarding children there are more restrictions that may already cover this, there is a large market for just adult looking characters though and worries about underage can be tackled independently. or be found entirely futile. not my problem, focus on what you can control. this is whats coming though.

people already dont mind parasocial relationships with generative AI and already pay for that, just add nudity

lynx97 · 5h ago
Maybe. The question is, will legislation be fast enough? Maybe, if people keep going for politician porn: https://www.theguardian.com/world/2025/aug/28/outrage-in-ita...
kaashif · 5h ago
Well considering it has been possible to produce similar doctored images for decades at this point, I think we can conclude legislation has not been fast enough.

That article is nothing to do with AI, really.

yieldcrv · 3h ago
and people focus way too much much on superimposed images instead of completely new digital avatars, which is what’s already taking off now
darepublic · 5h ago
I hope you're right.
dvfjsdhgfv · 4h ago
> I can just pick an older model and often I can't tell the difference...

Or, as in the case of a leading North American LLM provider, I would love to be able to choose an older model but it chooses it for me instead.

wslh · 5h ago
> Anecdotally moving from model to model I'm not seeing huge changes in many use cases. I can just pick an older model and often I can't tell the difference...

Model specialization. For example a model with legal knowledge based on [private] sources not used until now.

ljlolel · 5h ago
The scaling laws already predict diminishing in returns
DebtDeflation · 5h ago
The wildest part is that the frontier models have a lifespan of 6 months or so. I don't see how it's sustainable to keep throwing this kind of money at training new models that will be obsolete in the blink of an eye. Unless you believe that AGI is truly just a few model generations away and once achieved it's game over for everyone but the winner. I don't.
jononor · 5h ago
It is being played like a winner-takes-it-all right now (it may or may not be such a market). So it is a game of being the one that is left standing, once the others fall off. In this kind of game, speeding more is done as a strategy to increase the chances of other competitors running out of cash or otherwise hitting a wall. Sustainability is the opposite of the goal being pursued... Whether one reaches "AGI" is not considered important either, as long as one can starve out most competitors.

And for the newcomers, the scale needs to be bigger than what the incumbents (Google and Microsoft) have as discretionary spending - which is at least a few billion per year. Because at that rate, those companies can sustain it forever and would be default winners. So I think yearly expenditure is going to be 20B year++

sdesol · 4h ago
> So it is a game of being the one that is left standing

Or the last investor. When this type of money is raised, you can be sure the earlier investors are looking for ways to have a soft landing.

leptons · 5h ago
It's the Uber business plan - losing money until the competition loses more and goes out of business. So far Lyft seems to be doing okay, which proves the business plan doesn't really work.
jononor · 4h ago
Uber market cap makes places it in the top100 in the world, whereas Lyft is around 1/25th of Uber in market cap, and not even top1000. I would consider that a success... That is basically as much winner-takes-it-all one can realistically get in a global market. Cases where the top is just 5x the runner up would still be very winner oriented.
ViewTrick1002 · 3h ago
And in Europe Bolt is winning in many markets.

Taxi apps are a commodity today.

simianwords · 3h ago
Uber is profitable so why do you think it doesn't work?
Workaccount2 · 4h ago
There are endless examples of that business model working...
solomonb · 4h ago
They are only getting deprecated this fast because the cost of training is in some sense sustainable. Once it is not, then they will no longer be deprecated so fast.
andrewgleave · 54m ago
> “There's kind of like two different ways you could describe what's happening in the model business right now. So, let's say in 2023, you train a model that costs 100 million dollars. > > And then you deploy it in 2024, and it makes $200 million of revenue. Meanwhile, because of the scaling laws, in 2024, you also train a model that costs a billion dollars. And then in 2025, you get $2 billion of revenue from that $1 billion, and you spend $10 billion to train the model. > > So, if you look in a conventional way at the profit and loss of the company, you've lost $100 million the first year, you've lost $800 million the second year, and you've lost $8 billion in the third year. So, it looks like it's getting worse and worse. If you consider each model to be a company, the model that was trained in 2023 was profitable.” > ... > > “So, if every model was a company, the model is actually, in this example, is actually profitable. What's going on is that at the same time as you're reaping the benefits from one company, you're founding another company that's like much more expensive and requires much more upfront R&D investment. And so, the way that it's going to shake out is this will keep going up until the numbers go very large, the models can't get larger, and then it will be a large, very profitable business, or at some point, the models will stop getting better. > > The march to AGI will be halted for some reason, and then perhaps it will be some overhang, so there will be a one-time, oh man, we spent a lot of money and we didn't get anything for it, and then the business returns to whatever scale it was at.” > ... > > “The only relevant questions are, at how large a scale do we reach equilibrium, and is there ever an overshoot?”

From Dario’s interview on Cheeky Pint: https://podcasts.apple.com/gb/podcast/cheeky-pint/id18210553...

docdeek · 5h ago
> The compute moat is getting absolutely insane. We're basically at the point where you need a small country's GDP just to stay in the game for one more generation of models.

For what it is worth, $13 billion is about the GDP of Somalia (about 150th in nomimal GDP) with a population of 15 million people.

Aeolun · 5h ago
As a fun comparison, because I saw the population is more or less the same.

The GDP of the Netherlands is about $1.2 trillion with a population of 18 million people.

I understand that that’s not quite what’s meant with ‘small country’ but in both population and size it doesn’t necessarily seem accurate.

Aurornis · 4h ago
Country scale is weird because it has such a large range.

California (where Anthropic is headquartered) has over twice as many people as all of Somalia.

The state of California has a GDP of $4.1 Trillion. $13 billion is a rounding error at that scale.

Even the San Francisco Bay Area alone has around half as many people as Somalia.

nradov · 6h ago
That's why wealthy investors connected to the AI industry are also throwing a lot of money into power generation startups, particularly fusion power. I doubt that any of them will actually deliver commercially viable fusion reactors but hope springs eternal.
mapt · 5h ago
Continuing to carve out economies of scale in battery + photovoltaic for another ten doublings has plenty of positive externalities.

The problem is that in the meantime, they're going to nuke our existing powergrid, created in the 1920's to 1950's to serve our population as it was in the 1970's, and for the most part not expanded since. All of the delta is in price-mediated "demand reduction" of existing users.

UltraSane · 5h ago
A lot of the biggest data centers being built are also building behind the meter generation dedicated to them.
Workaccount2 · 4h ago
Which is mostly natural gas sadly.
vrt_ · 5h ago
Imagine solving energy as a side effect of this compute race. There's finally a reason for big money to be invested into energy infrastructure and innovation to solve a problem that can't be solved with traditional approaches.
bobsmooth · 5h ago
I would trade the destruction of trustworthy information and images on the internet for clean fusion power. It's a steep cost but I think it's worth it.
jayd16 · 5h ago
In this imaginary timeline where initial investments keep increasing this way, how long before we see a leak shutter a company? Once the model is out, no one would pay for it, right?
jsheard · 5h ago
Whatever happens if/when a flagship model leaks, the legal fallout would be very funny to watch. Lawyers desperately trying to thread the needle such that training on libgen is fair use, but training on leaked weights warrants the death penalty.
marcosdumay · 5h ago
In this imaginary reality where LLMs just keep getting better and better, all that a leak means is that you will eat-up your capital until you release your next generation. And you will want to release it very quickly either way, and should have a problem for a few months at most.

And if LLMs don't keep getting qualitatively more capable every few months, that means that all this investment won't pay off and people will soon just use some open weights for everything.

wmf · 5h ago
You can't run Claude on your PC; you need servers. Companies that have that kind of hardware are not going to touch a pirated model. And the next model will be out in a few months anyway.
jayd16 · 5h ago
If it was worth it, you'd see some easy self hostable package, no? And by definition, its profitable to self host or these AI companies are in trouble.
tick_tock_tick · 15m ago
You need a 100+gigs ram and a top of the line GPU to run legacy models at home. Maybe if you push it that setup will let you handle 2 people maybe 3 people. You think anyone is going to make money on that vs $20 a month to anthropic?
serf · 3h ago
I think this misunderstands the scale of these models.

And honestly I don't think a lot of these companies would turn a profit on pure utility -- the electric and water company doesn't advertise like these groups do; I think that probably means something.

jayd16 · 2h ago
What's the scale for inference? Is it truly that immense? Can you ballpark what you think would make such a thing impossible?

> the electric and water company doesn't advertise like these groups do

I'm trying to understand what you mean here. In the US these utilities usually operate in a monopoly so there's no point in advertising. Cell service has plenty of advertising though.

quotemstr · 4h ago
Does your "self hostable package" come with its own electric substation?
jayd16 · 2h ago
You're saying that's needed for inference?
fredoliveira · 5h ago
> Once the model is out, no one would pay for it, right?

Well who does the inference at the scale we're talking about here? That's (a key part of) the moat.

paganel · 5h ago
There’s the opportunity cost here of those resources (and not talking only about the money) not being spent on power generating that actually benefits the individual consumer.
powerapple · 3h ago
Also not all compute was necessary for the final model, a large chunk of it is trial and error research. In theory, for $1B you spent training the latest model, a competitor will be able to do it after 6 months with $100M.
worldsayshi · 5h ago
And we're still sort of on the fence if it's even that useful?

Like sure it saves me a bit of time here and there but will scaling up really solve the reliability issues that is the real bottleneck.

bravetraveler · 5h ago
Assuming the best case: we're going to need to turn this productivity into houses or lifestyle improvement, soon... or I'm just going out with Sasquatch
worldsayshi · 4h ago
While decoding your comment I'm going to assume Sasquatch to be a semi-underground (no web site, only calls) un-startup that specializes in survival kits for people leaving civilization behind. Like calling the vacuum repair store but more hippie themed.
bravetraveler · 4h ago
That'll do :) edit: I assure you, there will still be a van
worldsayshi · 2h ago
Solar powered e-van? I found this now: https://soleva.org
matthewdgreen · 4h ago
What’s the hardware capability doubling rate for GPUs in clusters? Or (since I know that’s complicated to answer for dozens of reasons): on average how many months has it been taking for the hardware cost of training the previous generation of models to halve, excluding algorithmic improvements?
ants_everywhere · 3h ago
> What gets me is that this isn't even a software moat anymore - it's literally just whoever can get their hands on enough GPUs and power infrastructure.

I'm curious to hear from experts how much this is true if interpreted literally. I definitely see that having hardware is a necessary condition. But is it also a sufficient condition these days? ... as in is there currently no measurable advantage to having in-house AI training and research expertise?

Not to say that OP meant it literally. It's just a good segue to a question I've been wondering about.

willvarfar · 5h ago
As humans don't actually work like LLMs do, we can surmise that there are far more efficient ways to get to AGI. We just need to find them.
ijidak · 5h ago
Can you elaborate? The technology to build a human brain would cost billions in today’s dollars. Are you thinking moreso about energy efficiency?
robotresearcher · 3h ago
We make hundreds of millions of brains a year for the cost of their parent’s food and shelter.

That’s the known minimum cost. We have a lot of room to get costs down if we can figure out how.

maqp · 5h ago
>You can have all the talent in the world but if you can't get 100k H100s and a dedicated power plant, you're out.

I really have to wonder, how long will it be before the competition moves into who has the most wafer-scale engines. I mean, surely the GPU is a more inefficient packaging form factor than large dies with on-board HBM, with a massive single block cooler?

mfro · 5h ago
Sentiment I have heard is manufactories do not want to increase die size because defects per die increases at the same time.
Workaccount2 · 4h ago
Meanwhile at Cerebras...heh

But I do believe that their cost per compute is still far more than disparate chips.

SilverElfin · 3h ago
The other problem is that big companies can take a loss and starve out any competition. They already make a ton of money from various monopolies. And they do not have the distraction of needing to find funding continuously. They can just keep selling these services at a loss until they’re the only ones left. That’s leaving aside the advantages they have elsewhere - like all the data only they can access for training. For example, it is unfair that Google can use YouTube data, but no one else can. How can that be fair competition? And they can also survive copyright lawsuits with their money. And so on.
derefr · 5h ago
> privatization

You think any of these clusters large enough to be interesting, aren't authorized under a contractual obligation to run any/all submitted state military/intelligence workloads alongside their commercial workloads? And perhaps even to prioritize those state-submitted workloads, when tagged with flash priority, to the point of evicting their own workloads?

(This is, after all, the main reason that the US "Framework for Artificial Intelligence Diffusion" was created: America believed China would steal time on any private Chinese GPU cluster for Chinese military/intelligence purposes. Why would they believe that? Probably because it's what the US thought any reasonable actor would do, because it's what they were doing.)

These clusters might make private profits for private shareholders... but so do defense subcontractors.

me551ah · 5h ago
And distillation makes the compute moat irrelevant. You could spend trillions to train a model, but some companies is going to get enough data from your model and distill it's own at a much cheaper upfront cost. This would allow them to offer them for cheaper inference cost too, totally defeating the point of spending crazy money on training.
fredoliveira · 5h ago
A couple of counter-arguments:

Labs can just step up the way they track signs of prompts meant for model distillation. Distillation requires a fairly large number of prompt/response tuples, and I am quite certain that all of the main labs have the capability to detect and impede that type of use if they put their backs into it.

Distillation doesn't make the compute moat irrelevant. You can get good results from distillation, but (intuitively, maybe I'm wrong here because I haven't done evals on this myself) you can't beat the upstream model in performance. That means that most (albeit obviously not all) customers will simply gravitate toward the better performing model if the cost/token ratio is aligned for them.

Are there always going to be smaller labs? Sure, yes. Is the compute mote real, and does it matter? Absolutely.

serf · 3h ago
>Labs can just step up the way they track signs of prompts meant for model distillation. Distillation requires a fairly large number of prompt/response tuples, and I am quite certain that all of the main labs have the capability to detect and impede that type of use if they put their backs into it.

....while degrading their service for paying customers.

This is the same problem as law-enforcement-agency forwarding threats and training LLMs to avoid user-harm -- it's great if it works as intended, but more often than not it throws a lot more prompt cancellations at actual users by mistake, refuses queries erroneously -- and just ruins user experience.

i'm not convinced any of the groups can avoid distillation without ruining customer experience.

senko · 5h ago
> We're basically at the point where you need a small country's GDP just to stay in the game for one more generation of models.

When you consider where most of that money ends up (Jensen &co), it's bizarre nobody can really challenge their monopoly - still.

sidewndr46 · 5h ago
I'm not an expert at how private investment rounds work, but aren't most "raises" of AI companies just huge commitments of compute capacity? Either pre-existing or build-out.
serf · 3h ago
it's difficult for me to imagine this level of compute existing and sitting there idle somewhere; it just doesn't make sense.

So we can at least assume that whoever is deciding to move the capacity does so at some business risk elsewhere.

ericmcer · 4h ago
Could they vastly reduce this cost by specializing models? Like is a general know everything model exponentially more expensive than one that deeply understands a single topic (like programming, construction, astrophysics, whatever)?

Is there room for a smaller team to beat Anthropic/OpenAI/etc. at a single subject matter?

madduci · 5h ago
And just now came the email with the changes to their terms of usage and policy.

Nice timing? I am sure they have scored a deal with the selling of personal data

scellus · 6h ago
So far it doesn't seem like winner-take-all, and all the major players (OpenAI, Anthropic, xAI, Google, Meta?) are backed by strong partnerships and a lot of capital. It is capital-intensive this round though, so the primary producers are big and few. As long as they compete, benefits mostly go to other parties (= society) through increased productivity.
itronitron · 2h ago
Hmm, I wonder how much bitcoin someone could mine with that amount of compute.
belter · 2h ago
The AI story is over.

One more unimpressive release of ChatGPT or Claude, another 2 Billion spent by Zuckerberg on subpar AI offers, and the final realization by CNBC that all of AI right now...Is just code generators, will do it.

You will have ghost data centers in excess like you have ghost cities in China.

huevosabio · 4h ago
Instead of enriching uranium we're enriching weights!
puchatek · 4h ago
And how much will one query cost you once the companies start to try and make this stuff profitable?
asveikau · 5h ago
This sounds terrible for the environment.
xbmcuser · 5h ago
This is why I keep harping on the world needing China to get competitive on node size and crashing the market. They are already making energy with solar and renewable practically free. So the world needs AI to get out of the hand of the rich few and into the hands of everyone
scottLobster · 5h ago
Roughly 1% of US GDP in 2025 was data center construction, mostly for AI.
throw310822 · 5h ago
Just in case, can they be repurposed for bitcoin mining? :)

Edit: for the curious, no. An H100 costs about ~25k and produces $1.2/day mining bitcoin. Without factoring in electricity.

wmf · 5h ago
There are other coins that are less unprofitable to mine (see https://whattomine.com/gpus ) but it's probably still not worth it.
krupan · 5h ago
Before your edit I was going to answer, sadly no, they can't even be repurposed for Bitcoin mining.
rich_sasha · 4h ago
It's the SV playbook: invent a field, make it indispensable, monopolise it and profit.

It still amazes me that Uber, a taxi company, is worth however many billions.

I guess for the bet to work out, it kinda needs to end in AGI for the costs to be worth it. LLMs are amazing but I'm not sure they justify the astronomical training capex, other than as a stepping stone.

lotsofpulp · 3h ago
Why would a global taxi/delivery broker not be worth billions? Their most recent 10-Q says they broker 36 million rides or deliveries per day. Even profiting $1 on each of those would result in a company worth billions.
simianwords · 3h ago
SV playbook has been to make sustainable businesses. Uber makes profits, so do Google, Amazon and other big tech.

> LLMs are amazing but I'm not sure they justify the astronomical training capex, other than as a stepping stone.

They can just... stop training today and quickly recuperate the costs because inference is mostly profitable.

AlienRobot · 5h ago
I saw a story posted on reddit that U.S. engineers went to China and said the U.S. would lose the A.I. game because THE ENERGY GRID was much worse than China's.

That's just pure insanity to me.

It's not even Internet speed or hardware. It's literally not having enough electricity. What is going on with the world...

ipython · 2h ago
Not to mention water for cooling. Large data centers can use 1 million+ gallons per day.
2OEH8eoCRo0 · 5h ago
A lot of moats are just money. Money to buy competition, capture regulation, buy exclusivity, etc.
sjapkee · 4h ago
The biggest problem is that result doesn't worth spent resources
Razengan · 5h ago
Barely 50 years ago computers used to cost a million dollars and were less powerful than your phone's SIM card.

> GPT-4 training was what, $100M? GPT-5/Opus-4 class probably $1B+?

Your brain? Basically free *(not counting time + food)

Disruption in this space will come from whomever can replicate analog neurons in a better way.

Maybe one day you'll be able to Matrix information directly into your brain and know kung-fu in an instant. Maybe we'll even have a Mentat social class.

jcranmer · 3h ago
> Barely 50 years ago computers used to cost a million dollars and were less powerful than your phone's SIM card.

Fifty years ago, we were starting to see the very beginning of workstations (not quite the personal computer of modern days), something like this: https://en.wikipedia.org/wiki/Xerox_Alto, which cost ~$100k in inflation-adjusted money.

psychoslave · 3h ago
Yeah, no hate for kung fu here, but maybe learning to better communicate together, act in ways that allows everyone to thrive in harmony and spread peace among all humanity might be a better thing to start incorporating, might not it?
risyachka · 5h ago
>> The compute moat is getting absolutely insane.

how so? deepseek and others do models on par with previous generation for a tiny fraction of a cost. Where is the moat?

lofaszvanitt · 5h ago
Nvidia needs to grow.
paulddraper · 6h ago
Reductive.

Doesn’t explain Deepseek.

FergusArgyll · 6h ago
Deepseek story was way overblown. Read the gpt-oss paper, the actual training run is not the only expense. You have multiple experimental training runs as well as failed training runs. + they were behind SOTA even then
m101 · 2h ago
This round started at $5bn target and it ends at $13bn. When this sort of thing happens it's normally because the company wants to 1) hit the "hot" market, and 2) has uncertainty about their ability to raise revenues at higher valuations in the future.

Whatever it is, the signal it's sending of Anthropic insiders is negative for AI investors.

Other comments having read a few hundred comments here:

- there is so much confusion, uncertainty, and fanciful thinking that it reminds me of the other bubbles that existed when people had to stretch their imaginations to justify valuations

- there is increasing spend on training models, and decreasing improvements in new models. This does not bode well

- wealth is an extremely difficult thing to define. It's defined vaguely through things like cooperation and trade. Ultimately these llms actually do need to create "wealth" to justify the massive investments made. If they don't do this fast this house of cards is going to fall, fast.

- having worked in finance and spoken to finance types for a long time: they are not geniuses. They are far from it. Most people went into finance because of an interest in money. Just because these people have $13bn of other people's money at their disposal doesn't mean they are any smarter than people orders of magnitude poorer. Don't assume they know what they are doing.

utyop22 · 46m ago
Lol yeah I generally read most comments on here with one eye closed. This is one of the good ones though.
tonymet · 2m ago
i guess emissions, climate concerns , economics are all just out the window here?

My feeble uncle isn't allowed to buy a single lightbulb in his state yet , but burning terawatts for useless porn generators is where we are investing our engineering efforts.

code4tee · 5h ago
Impressive round but it seems unlikely this game can go on much longer before something implodes. Given the amount of cash you need to set of fire to stay relevant it’s becoming nearly impossible for all but a few players to stay competitive, but those players have yet to demonstrate a viable business model.

With all these models converging, the big players aren’t demonstrating a real technical innovation moat. Everyone knows how to build these models now, it just takes a ton of cash to do it.

This whole thing is turning into an expensive race to the bottom. Cool tech, but bad business. A lot of VC folks gonna lose their shirt in this space.

rsanek · 5h ago
I was convinced of this line of thinking for a while too but lately I'm not so sure. In software in particular, I think it's actually quite relevant what you can do in-house with a SOTA model (especially in the tool calling / fine tuning phase) that you just don't get with the same model via API. Think Cursor vs. Claude Code -- you can use the same model in Cursor, but the experience with CC is far and away better.

I think of it a bit like the Windows vs. macOS comparison. Obviously there will be many players that will build their own scaffolding around open or API-based models. But there is still a significant benefit to a single company being able to build both the model itself as well as the scaffolding and offering it as a unit.

mritchie712 · 3h ago
CC being better than Cursor didn't make sense to me until I realized Anthropic trains[0] it's models to use it's own built-in tools[1].

0 - https://x.com/thisritchie/status/1944038132665454841

1- https://docs.anthropic.com/en/docs/agents-and-tools/tool-use...

criemen · 1h ago
I'm not so confident in that yet. If you look at the inference prices Anthropic charges (on the API) it's not a race to the bottom - they are asking for what I feel is a lot of money - yet people keep paying that.
worldsayshi · 31m ago
Yeah, a collapse should only mean that training larger models become non viable right? Selling inference alone should still deliver profit.
xpe · 5h ago
> Everyone knows how to build these models now, it just takes a ton of cash to do it.

This ignores differential quality, efficiency, partnerships, and lots more.

1oooqooq · 5h ago
you say it can't go much longer, yet herbalife is still listed.
dcchambers · 5h ago
And unfortunately, the amount of money being thrown around means that when the bottom falls out and its revealed that the emperor has no clothes, the implosion is going to impact all of us.

It's going to rock the market like we've never seen before.

jononor · 5h ago
Hope it stays long enough to build up serious electricity generation, storage and distribution. Cause that has a lot of productive uses, and has historically been underdeveloped (in favor of fossile fuels). Though there will likely be a squeeze before we get there...
axus · 27m ago
The electricians in data center country report they are earning a lot of money.
nathan_douglas · 5h ago
It'd be an interesting time for China to invade Taiwan.
m101 · 2h ago
Why is this downvoted when it's spot on.. if reality < expectations so much money is sitting on extremely quickly depreciating assets. It will be bad. Risk is to the downside.
dcchambers · 1h ago
Being critical of AI companies on Hacker News is pretty tough these days. Either the majority of people are all-in and want to bury their heads in the sand to the real dangers and risks (economical, psychological, etc) or there's just lots of astroturfing going on.
ijidak · 5h ago
I think we underestimate the insane amount of idle cash the rich have. We know that the top 1% owns something like 80% of all resources, so they don't need that money.

They can afford to burn a good chunk of global wealth so that they can have even more global wealth.

Even at the current rates of insanity, the wealthy have spent a tiny fraction of their wealth on AI.

Bezos could put up this $13 billion himself and remain a top five richest man in the world.

(Remember Elon cost himself $40 billion because of a tweet and still was fine!)

This is a technology that could replace a sizable fraction of humamkind as a labor input.

I'm sure the rich can dig much deeper than this.

not_the_fda · 3h ago
"This is a technology that could replace a sizable fraction of humamkind as a labor input."

And if it does? What happens when a sizable fraction of humamkind is hungry and can't find work? It usually doesn't turn out so well for the rich.

dweekly · 2h ago
I don't think most folks think very hard about where most wealth comes from but imagine it just sort of exists in a fixed quantity or is pulled from the ground like coal or diamonds - there's a fixed amount of it, and if there are very rich people, it must be because they took the coal/diamonds away from other people who need it. This leads to catchy slogans.

But it's pretty obvious wealth can be created and destroyed. The creation of wealth comes from trade, which generally comes from a vibrant middle class which not only earns a fair bit but also spends it. Wars and revolutions are effective at destroying wealth and (sometimes) equitably redistributing what's left.

Both the modern left and modern right seem to have arrived at a consensus that trade frictions are a good way to generate (or at least preserve) wealth, while the history of economics indicates quite the contrary. This was recently best pilloried by a comic that showed a town under siege and the besieging army commenting that this was likely to make the city residents wealthy by encouraging self-reliance.

We need abundant education and broad prosperity for stability - even (and maybe especially) for the ultra wealthy. Most things we enjoy require absolute and not relative wealth. Would you rather be the richest person in a poor country or the poorest of the upper class in a developed economy?

utyop22 · 40m ago
There's a subtle and nuanced difference between real wealth and financial wealth that most people never touch on.
fancyfredbot · 2h ago
So many negative comments here! The fact that one of the top players in a new market segment with significant growth potential can raise $13B at a 20x revenue valuation is not the bubble indicator you think it is.

It's at least possible that the investment pays off. These investors almost certainly aren't insane or stupid.

We may still be in a bubble, but before you declare money doesn't mean anything any more and start buying put options I'd probably look for more compelling evidence than this.

utyop22 · 39m ago
Remind me what happened re. SoftBank + WeWork.
mateus1 · 1h ago
> These investors almost certainly aren't insane or stupid.

I'm sure this exact sentence was said before every bubble burst.

sothatsit · 45m ago
Most investors I've heard talk about the AI bubble have mentioned exactly that they know it is a bubble. They are just playing the game, because there is money to be made before that bubble bursts. And additionally, there is real value in these companies.

I would assume the majority of investors in AI are playing a game of estimating how much more these AI valuations can run before crashing, and whether that crash will matter in the long-run if the growth of these companies lives up to their estimates.

fancyfredbot · 49m ago
That sounds very cynical and knowing which is great, but not super interesting. Do you think the investors are insane or stupid? Do you think this is a bubble and that it's about to burst? I'm interested to know why.
kittikitti · 1h ago
These are the same investors who got scammed by SBF who didn't even have a basic spreadsheet that explained the finances.
fancyfredbot · 35m ago
I see two of nineteen investors were also invested in FTX (Insight and Ontario teachers). With hindsight that's a bad investment although they probably recovered their money here so probably not their worst. Does this actually tell you they are stupid or insane?

I think that's one possible interpretation but another is that these funds choose to allocate a controlled portion of their capital toward high risk investments with the expectation that many will fail but some will pay off. It's far from clear that they are crazy or stupid.

Wojtkie · 1h ago
... or really any SoftBank Vision Fund backed startup
xpe · 5h ago
Remember the YouTube acquisition? Many probably don’t since it was 2006. $1.65B. To many, it seemed bonkers.

Narrow point: In general, one person’s impression of what is crazy does not fare well against market-generated information.

Broader point: If you think you know more than the market, all other things equal, you’re probably wrong.

Lesson: Only searching for reasons why you are right is a fishing expedition.

If the investment levels are irrational, to what degree are they? How and why? How will it play out specifically? Predicting these accurately is hard.

pnt12 · 34m ago
I mean, this sounds like survivor bias in action?

Google also bought Motorola for 12 billion and Microsoft bought Nokia for 7 billion. Those weren't success cases.

Or more similarly, WeWork got 12B from investor and isn't doing well (hell, bankrupt, according to Wikipedia).

tick_tock_tick · 13m ago
> Google also bought Motorola for 12 billion and Microsoft bought Nokia for 7 billion. Those weren't success cases.

A lot of that was patent acquisition rather than trying to run those businesses so it's hard to say a success or not.

nikanj · 3h ago
$183B makes sense because 20 years ago something else was valued at $1.65 billion and money has decreased in value 100-fold?
xyst · 4h ago
Somebody didn’t get the memo from MIT…
VirgilShelton · 57m ago
My contrarian take on the astronomical costs need to scale LLM infrastructure is that since it does cost so much, innovation at the grid and power plant / renewables will also see massive gains and ultimately save our planet.
ankit219 · 6h ago
Their projections for ARR at the end of this year at a high of $9B[1] at the end of this year. And reported gross margins of 60% (-30% with cloud providers partnerships). All things considered, if this pans out, it's a 20x multiple. High yes, but not that crazy. Specially considering their growth rate and that too at a decent margin at gm level.

[1]: It was $3B at the end of May (so likely $250M in May alone), and $5B at end of july (so $400M that month).

1oooqooq · 5h ago
exactly. what are people who make these investments even betting on? it certainly is not revenue or dividends. so it can only be a bet the stock will go up faster than other less risky stocks.

and we continue to pretend that market generates any semblance of value.

utyop22 · 34m ago
But if you're an investor who doesn't care about the long-term value of the firm, all you care about is maximizing your return on future sales of the shares of stock.

Doing proper intrinsic valuation with technology firms is nigh-on impossible to do.

bradley13 · 5h ago
Throwing money and compute at AI strikes me as a very short-term solution. In the end, the human brain does not run off a nuclear power plant, not even when we are learning.

I expect the next breakthroughs to be all about efficiency. Granted, that could be tomorrow, or in 5 years, and the AI companies have to stay all at in the meantime.

ryukoposting · 5h ago
This is roughly where I am on the matter. If the energy costs stay massive, your investment in AI is really just a bet that energy production will get cheaper. If the energy costs fall, so does the moat that keeps valuations like this one afloat.

If there's a step-function breakthrough in efficiency, it's far more likely to be on the model side than on the semiconductor side. Even then, investing in the model companies only makes sense if you think one of them is going to be able to keep that innovation within their walls. Otherwise, you run into the same moat-draining problem.

Davidzheng · 4h ago
the human brain can't run off a nuclear power plant b/c it was too hard for evolution to figure out, but we figured it out. No reason running on nuclear power plant won't give much higher intelligence.
kaashif · 27m ago
But if we could drink a bottle of oil and become 10x smarter for 1 hour, it would be really cool. There just wasn't any use for that in the savannah, or indeed many bottles of oil.

No comments yet

d_burfoot · 5h ago
There's a big issue with a lot of thinking about these valuations, which is that LLM inference does not need the 5-nines of uptime guarantees that cloud datacenters provide. You are going to see small business investors around the world pursue the following model:

- Buy an old warehouse and a bunch of GPUs

- Hire your local tech dude to set up the machines and install some open-source LLMs

- Connect your machines to a routing service that matches customers who want LLM inference with providers

If the service goes down for a day, the owner just loses a day's worth of income, nobody else cares (it's not like customers are going to be screaming at you to find their data). This kind of passive, turn-key business is a dream for many investors. Comparable passive investments like car washes, real estate, laundromats, self-storage, etc are messier.

matt3D · 4h ago
I use OpenAI's batch mode for about 80% of my AI work at the moment, and one of the upsides is it reduces the frantic side of my AI work. When the response is immediate I feel like I can't catch a break.

I think once the sheen of Microsoft Copilot and the like wear off and people realise LLMs are really good at creating deterministic tools but not very good at being one, not only will the volume of LLM usage decline, but the urgency will too.

utyop22 · 31m ago
Yeah these things take time to play out. So I always just say, the large populous of people will finally realise fantasy and reality have to converge at some point.
tpurves · 4h ago
And 75% of that just gets shipped right over to nVidia as pure profit. The mind boggles at the macro-economic inefficiency of that situation.
unsupp0rted · 5h ago
Hopefully this'll give them another 3 months of runway, so they can go back to letting me use Claude Sonnet for 5 hours out of the 5-hour limit, rather than the 2.5 hours I'm getting now.

($100-plan, no agents, no mcp, one session at a time)

1oooqooq · 5h ago
ewww. paying for AI is worse than paying for porn.
j7ake · 5h ago
Wait did I see “ Ontario Teachers' Pension Plan” as an investor?

Are they putting Canadian public funds into Anthropic?

noleary · 5h ago
Ontario Teachers' is a pretty active principal in venture/growth financings and a major LP to a bunch of funds. That said, venture/growth is a pretty small percentage of their holdings.

---

[1] https://www.crunchbase.com/organization/ontario-teachers-pen...

[2] https://www.otpp.com/en-ca/investments/our-investments/teach...

datadrivenangel · 5h ago
That's how investments these big get made: pension funds and other similar trusts need returns, and at a certain point if softbank says they have a way to deploy billions of dollars you don't have better options...
xp84 · 2h ago
To me, 'public pension monies' (more or less, retirement savings from citizens who happen to work for the government) and 'public funds' don't seem like the exact same thing. To me, public funds implies money from the government budget or sovereign wealth funds.

Although I admit that the government may be on the hook to replenish any spectacular failures in such a pension plan so in that way, it is somewhat fair -- though I doubt any one investment is weighted so heavily in any pension fund as to precipitate such an event.

j7ake · 1h ago
Government workers are funded by public money, so public pension monies are funded by public money ultimately.
IshKebab · 5h ago
They're a huge VC. Paid my wages for a few years.
sebzim4500 · 5h ago
Weren't they also a significant investor in FTX?
arduanika · 5h ago
Yes. So they indirectly owned some Anthropic through the FTX bankruptcy. I kinda wonder whether they somehow opted to keep their Anthropic stake when the FTX estate sold. Or maybe they bought it at some other time.
sidewndr46 · 5h ago
was FTX actually liquidated? Last I read the lawyers were just busy paying themselves $500,000 a day
OhMeadhbh · 5h ago
Yes.
42lux · 27m ago
How many shovels can nvidia sell before everyone recognizes that they will need a proper tock before anything ground breaking happens?
jdoliner · 6h ago
Every round Anthropic raises twists the knife deeper in SBF. If only he could have survived the downturn his Antropic investment alone probably could have papered over the other loses.
stravant · 6h ago
That assumes he would have stopped with the shenanigans, which is a pretty big if.
Symmetry · 5h ago
Proudly proclaiming on the Conversations With Tyler podcast that given a double or nothing bet with a 51% chance of success he'd keep playing forever.
arduanika · 5h ago
It is probably just a coincidence, but it's darkly funny how well this lines up with the strategy described in a rather infamous LessWrong post. The title is "Solutions to the Altruist's burden: the Quantum Billionaire Trick", but you probably know it by a different name. The author is one Roko Mijic.
twostorytower · 2h ago
Isn't that just the right thing to do, statistically? Vegas has been operating profitably this way for decades.
roncesvalles · 41m ago
It's not the same due to the Law of Large Numbers. The risk involved in many small 51% bets is very different from the risk in a single all-or-nothing 51% bet.
FergusArgyll · 1h ago
The context was double or nothing the entire human population of the universe.
AnimalMuppet · 5h ago
Not forever. He'd have nothing soon enough.
m101 · 2h ago
A joke for finance types I was told a while back:

"what do you call a rouge trader that makes money?"

"Managing director"

If someone makes money on time, everything is forgiven. Money blinds us.

sidewndr46 · 5h ago
I'm pretty sure giving yourself a 1 billion dollar loan had something to do with his downfall. Not a failure to 'survive the downturn'.
bambax · 6h ago
Probably would have made his crimes less visible, but not less criminal.
toomuchtodo · 6h ago
Like Martin Shkreli, who made his investors whole with his gambling, but still went to jail.
hnav · 5h ago
He went to jail because his autism wouldn't allow him to be duplicitous like a CEO doing evil things has to be and he attracted too much negative attention.
toomuchtodo · 5h ago
Also true.
bpodgursky · 5h ago
Yes but investors being whole and profitable would almost certainly have not resulted in jail time. He probably would have even had enough unquestionably personal returns to pay back any misappropriated funds in a negotiated settlement, if they even come to light at all.
brandall10 · 6h ago
Let's not pretend there aren't multitudes out there doing similar things who never get caught. SBF was just more egregious and untimely w/ his actions.
loeg · 5h ago
There are not.
mrtesthah · 5h ago
If you know of other SBFs, please name them so that we can call for their investigation and prosecution.
llamasushi · 3h ago
One doesn't need to go more than 2 feet into the mire of meme coins before finding the detritus of 6000000 rug pulls. Just that these guys never get prosecuted.
HaZeust · 1h ago
Yeah, but they're not playing with institutional money. They're not messing with people that have world-leaders on speed dial. Crypto gets away with what it does because when you enter an explicitly laissez-faire side of life, expect people to act laissez-faire. The rest is fraud/laundering/illicit activity tracking, which is why KYC requirements were passed right on schedule.
FinnLobsien · 6h ago
Always makes you wonder how many companies that are successes today could’ve had their SBF moment, but market conditions kept them afloat
adamgordonbell · 6h ago
> In the early days of FedEx, Smith had to go to great lengths to keep the company afloat. In one instance, after a crucial business loan was denied, he took the company's last $5,000 to Las Vegas and won $27,000 gambling on blackjack to cover the company's $24,000 fuel bill.

Some who take on unreasonable risk will be among the most successful people alive. Most will lose eventually, long before you hear about them if they keep too many taking crazy risks.

Who is a great genius, and is who is just winning at "The Martingale entrepreneurial strategy"?

matheist · 5h ago
You know, it only just now occurs to me to wonder if the blackjack story is the public sanitized version of "how I got $24k because I'm not allowed to tell you the real version"
askafriend · 5h ago
Great thought, that seems very likely since so many "founder stories" are heavily spun tales.
Analemma_ · 5h ago
Las Vegas still had deep mafia ties in the 1970s so that’s very possible.
FireBeyond · 5h ago
What this version of the FedEx story doesn't mention is that Fred was already stiffing his pilots on their salaries. Taking the last money in the company and deciding that the best use for it was the blackjack table in Vegas and not paying his employees ... worked well, but it was a gamble, let's be clear, not a calculated decision - like you say, not the decision of a "great genius". It goes a different way, and you have "FedEx founder decides to go gambling, leaving his employees without paychecks".
jjmarr · 37m ago
If your marginal utility of money increases with more, it's a rational decision to go to a casino and gamble.
hn_throwaway_99 · 6h ago
I think it's really objectionable to refer to this as an "SBF moment".

It's not just about surviving a downtown and unforseen circumstances with some luck (like the sibling talking about FedEx barely making it). Tesla, for example, was famously extremely close to bankruptcy.

But SBF got into the situation he was in due to his egregious fraud. The accounting at FTX was a criminal joke, with multiple sets of books, bypassable controls, outright fake numbers. My guess is that if SBF had survived that particular BTC downturn that his extreme hubris and willingness to commit fraud would have eventually done him in - downturns always happen at some point, and his brazenness in his criminal enterprise showed no signs of learning from mistakes.

Sure, all hugely successful companies have a ton of luck involved. But I think it's a mistake to pretend that SBF was just done in by bad timing, or that all companies do what he did. His empire collapse was pretty inevitable IMO if you look at what a clown show FTX was under the covers.

llamasushi · 3h ago
Lol, tether, bitfinex are examples that came to mind. A lot of the OG crypto instutions got to where they are by "faking it till they made it" long enough to actually make it.

Does no one still remember that tether continually stalled audits FOR YEARS in the face of increasing scrutiny?

arduanika · 5h ago
Correct. Companies go bust all the time, for market timing reasons that are mostly out of their control. But going bust is different from going bust and stealing billions.

Whether by negligence or intent, FTX was arranged so that they couldn't go bust without stealing.

FinnLobsien · 4h ago
But that’s precisely what I mean. How many companies had similarly sketchy situations, cleaned up their act and nobody ever noticed?

That number isn’t 0

xpe · 5h ago
Does someone care about this alternative speculative history? Why? If there was something called the sunk death fallacy, I would invoke it.
ramesh31 · 6h ago
>"Every round Anthropic raises twists the knife deeper in SBF. If only he could have survived the downturn his Antropic investment alone probably could have papered over the other loses."

Things working out in the end doesn't make what he did not a crime at the time. He was a common paper hanger, albeit with billions instead.

yunwal · 5h ago
> Things working out in the end doesn't make what he did not a crime at the time

Morally speaking, no. Practically speaking, it does. He would not have seen jail time.

Nextgrid · 1h ago
Practically speaking I think everyone involved would've had a good incentive to brush it off behind closed doors and not rock the boat. Crypto is entirely based on vibes (there are very few - if any - legitimate applications) and rocking the boat would cause losses across the entire industry.
ramesh31 · 4h ago
>Morally speaking, no. Practically speaking, it does. He would not have seen jail time.

It's literally exactly what Shkreli got 7 years for, even after repaying investors. If you defraud money from someone and put it back before they find out, it's still a crime. Fraud is about intent more than anything else, and they proved it for SBF.

yunwal · 4h ago
Right, but that’s because Shkreli openly admitted to it on the internet
cellis · 5h ago
He'll get a pardon next election cycle.
paulpauper · 6h ago
yeah, had CZ not made those tweets... He only had to weather another 2 months of the BTC bear market. BTC began to rebound in Jan 2023. Of course hindsight is 20-202
arduanika · 5h ago
CZ was a minor factor. Someone internal leaked the balance sheet.

Hindsight says, don't do fraud.

Nextgrid · 1h ago
Fraud is only called fraud if you get caught and defraud the wrong people. Corporation-on-consumer fraud is generally OK and a lot of businesses we consider "legitimate" do it as standard practice. Fraud against investors and "the rich" can still be papered over and forgotten if everyone ends up richer in the end. SBF just got unlucky.
Aeolun · 4h ago
Or hide it better?
stefan_ · 6h ago
What if we put criminals into prison because they committed crimes, regardless of them making their victims "whole" (it would not happen anyway).
LarsDu88 · 6h ago
So the difference between criminal fraud, and precient genius investor is a difference of a year or so.

We should all try to remember this the next time we vote to cut taxes on billionaires.

arduanika · 5h ago
That's a pretty distorted view, and it's probably what people tell themselves right when they're about to do fraud.
Zigurd · 5h ago
Substitute fiber and routers for GPUs and this starts to look familiar.
Zigurd · 4h ago
I am old enough to have had the pleasure of Atiq Raza telling me the thing I was helping pitch couldn't be sold to Avaya (or was it Cisco?) in four months for $1 billion and so is not interesting, within the first four minutes of the meeting. Evidently he was seeing enough pitches for things he could sell at that price and in that time.

Now he's in AI investments.

teepo · 4h ago
Really good analogy: Bay Networks, Lucent, Nortel, and Cisco got beat up or destroyed on the equipment side. And then the long haul fiber companies never got ROI (but paved the way for broadband).
hnav · 5h ago
Cisco?
1oooqooq · 5h ago
almost nobody remember the router craze.

people don't even remember the era before the current brands. like the time a bell offshoot almost crashed canada because they siphoned all the telephone money into bad routers.

stephencoyner · 5h ago
Very interesting to see firms who already bet big on OpenAI (like Altimeter) on the list for this round. Anyone else remember when OpenAI told investors they couldn’t invest in competitors [1]?

[1]https://www.reuters.com/technology/openai-tells-investor-not...

bobbiechen · 6h ago
Did anyone else get offers to join single-purpose ventures (SPVs) to invest in this Anthropic round?

I got the impression that some people were reselling access and adding layers of fees to profit from the hype.

manveerc · 5h ago
Many SPVs were available for recent funding rounds, but my biggest gripe was the excessive fees layered on top of them.

More importantly, we should ask who will be left holding the bag when this bubble bursts. For now, investors are getting their money back through acquisitions. Founders with desirable, traditional credentials are doing well, as are early employees at large AI startups who are cashing out on the secondary market. It appears the late-stage employees will be the ones who lose the most.

dkobia · 4h ago
AI investment is headed toward 2% of the US GDP, getting close to the Apollo program and 10 times the manhattan project. Almost 15% of the US stock market is tied up in these investments so most of us have skin in this game whether we like it or not, for better or worse.
me551ah · 6h ago
I don't get the sky high valuation of LLM companies. I mean I get that these guys need a lot of money for compute to train the next generation of models. But Distillation does make it easy for other providers to replicate gains made by these providers at a much lower cost.

On a long enough timeframe, the open source models will catch up to the proprietary models and inference providers will beat these proprietary companies on price.

nradov · 5h ago
The high valuations are essentially lottery tickets, not something based on any sort of calculation of discounted future cashflows. The bet is that the researchers working for some of those frontier AI model companies will come up with innovations that give them a sustainable competitive advantage that goes beyond just purchasing more compute and licensing more proprietary training data. Obviously they can't all succeed but perhaps one or two will get lucky, perhaps by figuring out how to greatly improve efficiency or something that isn't easily copied.
jpalomaki · 2h ago
Valuations are high, but it's also the first time in history when developers are spending $200 per month on tools and feeling they are getting great value out of them.

I think one key question is can Anthropic replicate this on some other segment. Like with people working with financials.

NetOpWibby · 5h ago
I don't even know what this means.

What a fantastic amount of money flying around though, to support my inane queries to Claude.

AnimalMuppet · 5h ago
One of my rules of thumb: When money is growing on trees, pick it.

That applies to individuals, but it probably also applies to companies. We're in an AI boom? Raise some money while it's easy.

FergusArgyll · 1h ago
IIRC Matt Levine says: when there is a tech bubble, the correct trade is not to short the nasdaq, it's to start a company and ask Masayoshi Son for an investment
jjangkke · 6h ago
well i really hope they will use some of this money to compete with codex and release something quick

chat gpt 5 in codex is really good

so much that i stopped used claude code altogether

cheaper too

made me realize nobody has moat, coders especially will just go to whoever provides best bang for their buck.

naiv · 3h ago
Same. We all moved to codex in the past weeks not looking back at our cancelled Max20 subscriptions.

But who knows what will be to best tool/model to use in October.

pnathan · 6h ago
Run-rate revenue of 1b vs 3b. Those are big values.

I am very curious about the GAAP numbers here.

hsaliak · 5h ago
Maybe these labs should consider funding specific models, and funneling returns back to investors from profits made with those models. Like the film industry.
duxup · 6h ago
These numbers seem made up at times / difficult to comprehend what they expect is happening ...
Rebuff5007 · 6h ago
Probably because they are made up, and no one is able to comprehend what is happening.
aaronblohowiak · 6h ago
alphabet is "worth" 2.45 trillion on the public market, is anthropic worth a bit less than 10% of google going forward? I don't think that's entirely unreasonable...
StopDisinfo910 · 6h ago
Alphabet 2024 revenue: 350 billions dollars Anthropic 2024 revenue: 1 billion dollars

Unreasonable doesn’t even start to capture it. Anthropic being worth 10% of Alphabet is beyond insane.

nostrademons · 5h ago
I thought the same when choosing to invest in Intel rather than NVidia in 2022. At the time, Intel was worth $310B while NVidia was worth $650B, yet Intel's revenue was $80B/year while NVidia's was $25B. I was like "There's no way I'm paying 2x the price for 1/3 the revenue." Now, NVidia is worth $4T (a return of roughly 7x) on revenue of $165B, and Intel is worth $105B (a return of roughly -66%) on revenue of $53B.

Investors are forward looking, and market conditions can change abruptly. If Anthropic actually displaces Google, it's amazingly cheap at 10% of Alphabet's market cap. (Ironically, I even knew that NVidia was displacing Intel at the time I invested, but figured that the magnitude of the transition couldn't possibly be worth the price differential. News flash: companies can go to zero, and be completely replaced by others, and when that happens their market caps just swap.)

Printerisreal · 5h ago
Investors are forward looking, except when it's micron in 2000.

Anthropic have several similiar competitors with actual real distribution and tech. Ones that can go 10x are underdogs like Google before IPO or Amazon, or Shopify etc. Anthropic current stock is beyond that. Investors no longer give any big opp. to public. They gain it via private funding

wongarsu · 5h ago
So all it takes is Anthropic 35x-ing their revenue once they start selling ad spots? That sounds pretty reasonable to me.

Right now nobody wants to be the first to offer advertising in LLM services, but LLM conversation history provides a wealth of data for ad targeting. And in more permissive jurisdictions you can have the LLM deliver ads organically in the conversation or just shift the opinions and biases of the model through a short mention in the system message

StopDisinfo910 · 5h ago
No, all it takes is Anthropic 35x-ing their revenue while Alphabet revenue somehow stays the same despite Alphabet already having a product perfectly competitive with Anthropic and which can use the same revenue growth strategy.

As I said, insane. And that’s not even considering the 10 to 15% shares of Anthropic actually owned by Alphabet.

dgrcode · 1h ago
How old was alphabet in 2024? And anthropic?

How much was google revenue in 2003? It was 1.5 billions (2.6 in today's USD)

Not saying the price is justified, but the comparison is not very fair.

aripickar · 3h ago
Tech Companies are valued at a multiple of next 12 months revenue, not last 12 months revenue. Since anthropic grew from $1billion to $5billion in revenue in ~8 months, that means it ~10x'ed revenue y/y off of 1 billion base. If you assume even 60% of that growth is retained (low for traditional saas businesses, but who knows), then anthropic is ~10% of google in terms of revenue in mid ~2027.

Basically, 5x-ing revenue in 8 months off of a billion dollars starting revenue is insane. Growing this quickly at this scale breaks every traditional valuation metric.

(And no - this doesn't include margins or COGS).

lifty · 1h ago
Someone mentioned their projected ARR for 2025 is 9b. Which makes sense intuitively looking at how much I spent with them this year. So the valuation looks a bit more sane with those numbers.
matheist · 5h ago
Valuation includes expected future growth, it's not just present value of future revenue given today's numbers.

You may not agree with the market's estimation of that, but comparing just present revenue isn't really the right comparison.

No comments yet

jpalomaki · 2h ago
"Google’s advertising revenue in 2024 was about $264.6 billion"

Somebody above said that Anthropic might reach $9 billion ARR by the end of this year.

tdullien · 5h ago
It's just off by a factor of 35?
nathan_douglas · 5h ago
A rounding error, really.
y0eswddl · 5h ago
And that's not even looking at profits vs valuation...
charcircuit · 5h ago
The valuation is not based solely on last year's revenue. Revenue doesn't really matter at this point.
StopDisinfo910 · 5h ago
Anthropic competes solely in one of Alphabet multiple markets and that’s a market where Google already has a compelling competitive offer. This valuation gap doesn’t make any sense to me.
csomar · 4h ago
Here is another way to look at it: Anthropic is a put option on Google worth 10% of Google price. Expires when they run out of funds.
YetAnotherNick · 5h ago
> The company said its run-rate revenue has increased from around $1 billion at the beginning of 2025, to more than $5 billion in August.

So 10% of valuation for 1.5% of revenue, which grew 5x in last 6 months. Doesn't seem as unrealistic as you put it, if it has good gross margin which some expects to be 60%.

Also Google was valued at $350B when it had $5B revenue.[1]

[1]: https://companiesmarketcap.com/alphabet-google/marketcap/

datadrivenangel · 5h ago
It's both insane and not unreasonable. If Anthropic's internal version of Claude Code gets so good that they can recreate all of google's products quickly there's no moat anymore.

If AI is winner take all, then the value is effectively infinite. Obviously insane, but maybe it's winner take most?

throw310822 · 5h ago
It's the techno-hubristic version of Pascal's wager. The reward for the existence of God is infinite, so it worth investing all the money in the world to create one.
xp84 · 2h ago
> " If Anthropic's internal version of Claude Code gets so good that they can recreate all of google's products quickly"

I know you aren't asserting this but rather just putting the argument out there, but to me at least it's interesting comparing a company that has vendor lock-in and monopoly or duopoly status in various markets vs one that doesn't.

I'd argue that Google's products themselves haven't been their moat for decades -- their moat is "default search engine status" in the tiny number of Browsers That Matter (Arguably just Chrome and Mobile Safari), being entrenched as the main display ad network, duopoly status as an OS vendor (Android), and monopoly status on OS vendor for low-end education laptops (ChromeOS). If somehow those were all suddenly eliminated, I think Google would be orders of magnitude less valuable.

SirMaster · 4h ago
Is there no moat for previous account and user buy-in?

Convincing billions of users to make a new account and do all their e-mail on a new domain? A new YouTube channel with all new subscribers? Migrate all their google drive and AdSense accounts to another company, etc?

This is trivially simple and creates no moat?

potatoproduct · 6h ago
Sounds hugely unreasonable. At 1% I might've believed you.
seneca · 6h ago
It feels a bit unreasonable to me. Anthropic is arguably comparable to Google's Gemini program. Is Gemini 10% of Alphabet's value? If so, how much of that is because of its ability to consume and interact with things like YouTube and Workspaces?

I could see two or three percent, but this seems like a pretty big stretch. Then again, I'm not a VC.

Zigurd · 5h ago
To make a similar comparison, Alphabet's Waymo has AV's that actually work. But they're not capturing 80% of Tesla's valuation.
xp84 · 2h ago
Don't those cost like $400,000 a piece to outfit, though? I mean this with tremendous respect because I think they're the only ones doing it "right," I feel like Waymo is kind of 'bruteforcing' autonomous driving using money. There's an inherent limit to the impact of a technology (and thus its long-term value) based on its cost, and even stipulating that Waymo has solved it in general, I think a valuation should be contingent on a roadmap which shows how it's going to scale out -- this seems like an as-yet unsolved problem until someone shows how to combine the reliability of the tech-heavy Waymo system with the price tag of a Tesla.
jjmarr · 7m ago
Historically speaking there was an 80 year period in which transporting mined, natural, lake ice from the US Northeast/Norway around the world was economically competitive with ice machines depending on local market conditions.

Machine ice became competitive in India and Australia in the 1850s, but it took until the start of World War 1 (1914) for artificial ice production to surpass natural in America. And the industry only disappeared when every household could buy a refrigerator.

Self-driving doesn't have to scale globally to be economically viable as a technology. It could already be viable at $400k in HCOL areas with perfect weather (i.e. California, Austin, and other places they operate).

Zigurd · 7m ago
That's like asking if it's better to launch on Falcon 9, or wait until Starship actually hits $100 a kilogram to orbit.
chpatrick · 6h ago
Depends on if you think we're at the end of AI development or the beginning.
perks_12 · 6h ago
Look at this post: https://x.com/NicoleSHsing/status/1961505968782774778

We're in a VC bubble; any project that mentions AI gets tons of money.

seneca · 6h ago
That genuinely feels like satire. I guess the beauty of good satire is that it borders on reality. The Juicero of the AI era.
koakuma-chan · 6h ago
What's wrong with that post?
edm0nd · 5h ago
its some GPT wrapper app that has 100 downloads.

also if your founder has to use dozens of buzzwords when asked to describe what their app does and that still doesn't even explain it, its obviously just bs.

"Arcarae’s mission is to help humanity remember and unlock the power each individual holds within themself so they can bring into reality their unique, authentic expression of self without fear or compromise.

Our research endeavors are designed to support this mission via computationally modeling higher-order cognition and subjective internal world models."

lol

koakuma-chan · 4h ago
> lol

What do you mean lol? Isn't that awesome? Feel free to share if you think that isn't awesome. I personally don't think there is enough information here to tell if that is awesome or satire, but it is interesting how usually things like this are considered awesome, but this particular one is deemed satire.

beAbU · 3h ago
The post borders on turbo encabulatoe levels of insanity. It makes zero sense.

What does the product do?

koakuma-chan · 3h ago
> What does the product do?

I think this is like ChatGPT, but it generates "inner monologue" in the background, and the "inner monologue" is then added to the context, and this "addresses" "sycophancy, attention deficits, and inconsistent prioritization"

tinyhouse · 6h ago
This is the fastest-growing company by revenue, jumping from $1B to $3B in just five months. Hitting $10B is only a matter of time, which would put its valuation at a reasonable ~18x sales multiple. It doesn't even matter where we are in the AI hype cycle - AI adoption will keep increasing, it's not even a question at this point.

From a technical perspective, they manage to attract top talent - Google / OpenAI lose a lot of good people to Anthropic. This is important since there are few people who can transform a business (e.g., the guy who built Claude Code). Being attractive for top talent means you're more likely stumble upon them.

aqme28 · 6h ago
I thought ~20x or so was a good baseline earnings multiple. I have no idea what makes sense as a revenue multiple but I bet it would be a lot lower than that.

Edit: After looking it up, normal P/Sales ratios are on the order of about 1. They vary from like .2 to 8 depending on industry.

utyop22 · 22m ago
You're comparing the value of equity to firm earnings? Lol. I don't really bother calling out most financial stuff on here since I can't be bothered but come on.

Its not internally consistent, at all.

tinyhouse · 5h ago
You should check a few software companies that are publicly traded. Figma for example is at P/S ~38 multiple currently. Google at 6.8. If Anthropic would've done an IPO today they would probably be at ~100 given where Figma is.
FergusArgyll · 58m ago
> they manage to attract top talent

I do think this is important. Many of the best researchers are also religious AGIists and Anthropic is the most welcoming to them. This is a field where the competence of researchers really matters.

miltonlost · 6h ago
My baby grew from 9 pounds to 18 pounds in a 3 months! Hitting 10000 lbs is only a matter of time.
uncircle · 2h ago
tinyhouse · 5h ago
OK I will remind you how stupid your comment was when they reach $10B in revenue next year.
paulpauper · 6h ago
People said the same about Open AI in 2023, only valued at $30 billion at the time, and then seemingly overnight Chat GPT become a major commercial product rivaling Google. Or Tesla valuations in 2019. It went from a niche brand to Teslas everywhere after Covid. These VCs are not as irrational as commonly assumed. They know if a product gains critical mass , it can become everything.
lm28469 · 5h ago
It's still bleeding money with no profitability in sight, niche product or household name
paulpauper · 5h ago
same again for Amazon, Tesla, Uber and others. Then they began making billions. Anthropic is not a niche anymore though. Same for Chat GPT.
Zigurd · 5h ago
That's a pretty random selection. Amazon makes money. Uber is clawed their way back from the pit of doom of not having a viable business model and being led by a jackass. Tesla is a meme stock. At best these examples tell us nothing.
lm28469 · 5h ago
Are they the exceptions or the rules, that's the question.
duxup · 6h ago
I'm not sure a couple successes makes sense of these numbers.
anthem2025 · 5h ago
Are you really trying to argue Tesla is fairly valued? In 2025?

When their sales have nosedived, new products have flopped, their CEO is the most disliked man in America, and their self driving still requires someone in the car at all times?

Tesla is a GameStop level meme stock.

isoprophlex · 6h ago
It's a post-money valuation, so that suggests the money involved has transcended beyond actual moneyness into some other post-meaningful realm.
saberience · 6h ago
Post-money just means you add the value of the actual investment into the valuation. E.g. The pre-money valuation would be 183B - 13B. i.e. pre-money valuation would be 170B
aroman · 5h ago
I think you missed their joke :)
saberience · 5h ago
Or the joke was so bad and non-obvious that their comment just reads like someone who has no idea what "post-money" actually means :)
AlienRobot · 5h ago
Step 1: burn billions of dollars.

Step 2: achieve AGI.

Step 3: ?

Step 4: transcend money.

atleastoptimal · 1h ago
HN in 2046

> Headline: OpenAI raises 400 Trillion, proclaims dominion over the delta quadrant

> Top comment: This just proves that it's a bubble. No AI company has been profitable, we're in the era of diminishing returns. I don't know one real use case for AI

It's hilarious how routinely bearish this site is about AI. I guess it makes sense given how much AI devalues siloed tech expertise.

greenchair · 50m ago
comment history appears to be an AI shill account.
usrnm · 6h ago
I feel like the money itself makes less and less sense these days. It's just numbers that are becoming increasingly detached from the real world
pembrook · 5h ago
Before you pat yourself on the back for being so smart and grounded...

Remember, every technology you use today followed this pattern, with winners emerging that absolutely did go on to be extremely profitable for decades.

Most of us remember the .com era. But in the early 1900s there was literally hundreds of automotive startups (actual car companies, and tens of thousands of supplier startups) in the metro-detroit area: https://en.wikipedia.org/wiki/List_of_defunct_automobile_man...

Some of these went on to be absolutely fantastic investments, most didn't. All VCs and people who invest in venture know this pattern.

Everybody involved knows exactly the high risk level of the bets they are making. This is not "dumb" money detached from reality, and the pension funds with a 3% allocation to venture are going to be just fine if all these companies implode, this is just uncorrelated diversification for them. The point of these VC funds is to lose most of the time and win big very rarely.

There will be crashes, and more bubbles in the future. Humans will human. Everything is fine.

fullshark · 5h ago
And they also realize they don't need to be fantastic investments to pay off, they just need to IPO/be acquired at a higher share price.
delfinom · 5h ago
RIP our 401ks that will end up being the bagholders when its dumped on the market.
pembrook · 5h ago
Your 401k is going to be fine, nobody goes public anymore until they're a big, dumb, boring, profitable company and all of the risk+returns have been rung out.

Too many normies betting their life savings without understanding this risk in prior bubbles, so we regulated away the ability for non-institutional investors to take venture risk at all.

otterley · 4h ago
> we regulated away the ability for non-institutional investors to take venture risk at all.

Some institutions try to achieve this by launching their own cryptocurrencies, but by and large, the market isn't biting.

jstoppa · 34m ago
I agree, just another cycle
113 · 5h ago
Did you respond to the wrong comment?
fullshark · 6h ago
The real world sees no other opportunities for outsized returns. Too much money chasing too little opportunity.
prasadjoglekar · 5h ago
Yup! Public markets are at all time highs. Other hard assets are also at all time highs. This sort of speculative investment only makes sense when nothing else is attractive.

And it's cash from asset managers. Its not 10Bn worth of compute time from Microsoft or Google.

simianwords · 3h ago
Its a strange way to view things.. the investors found a place to invest money from which they can make profits and they did it.

Much like any other investment. What do you think makes this more speculative than any other investment?

marcosdumay · 5h ago
That's what wealth inequality does.
wagwang · 5h ago
No that's what low interest rates does
JimmyBuckets · 5h ago
This comment seems like a rebuttal which is confusing to me because they are deeply related.
wagwang · 4h ago
Maybe, but interest rates among other bad banking practices is how we got here in the first place.
Printerisreal · 5h ago
No that's what PRINTING fiat money does. Low or high interest rates, they print $trillions
wagwang · 4h ago
Every dollar that's printed gets multiplied based on the interest rate
arcticbull · 4h ago
Who's "they"?
Printerisreal · 4h ago
Governments, CBs and investment banks. "They" do it and work together to print more.
arcticbull · 4h ago
In a centrally banked economy, retail and commercial banks create money when you take out loans. The government doesn't create money except during QE which only happened twice in the US, 2009-2014 and 2020-2021. That's why I was curious what you meant by "they." The Fed has been actively destroying money for the last 4 years.
marcosdumay · 3h ago
The government creates money every time it spends more than it taxes. AFAIK, the US has been doing that nonstop since the turn of the century.

That new money is different from the new money the central bank creates to push interest rates down. That later one the US has been destroying. But both do many of the same things (but not all).

wagwang · 4h ago
The amount of money banks create is determined by the appetite for credit which is determined by the interest rate. The fed has not been actively destroying money, they are at most slowing the rate of the increase of money.
arcticbull · 4h ago
They influence creation of money by adjusting the short-term interest rate which influences the demand for borrowing at commercial and retail banks. It's not that direct or straight-forward though, because they only have control over the short end of the yield curve not the long end. The long end of the yield curve has interest rates defined mostly by inflation expectations. If they dropped rates to 0% overnight it probably wouldn't move the 30Y yield all that much -- it might even raise it because of the expectation lower short-end yields would raise inflation.

The Fed doesn't have nearly as much control as folks think.

The Fed directly created money during QE and they are directly destroying it during QT. There's a net add, but that's mostly because the economy is growing, which creates new demand for money as expressed by demand for debt.

The money supply staying fixed or shrinking is a non-goal anyways. It's irrelevant. What matters is inflation as measured from the change in actual prices.

Printerisreal · 4h ago
Now explain why government raise the debt limit? other than allowing printing to get fiat money?
arcticbull · 4h ago
Ah yeah, that's a common misconception.

Deficit spending doesn't create new money. Deficit spending borrows existing money from the population and institutions in exchange for a promise of future government revenues. The Fed does not participate in treasury primary auctions and does not monetize the debt as a means of funding government operations.

If you printed new money to pay for the government, you wouldn't have a debt. That's double-counting. Not to mention the debt is twice as large as the entire money supply so what you're suggesting isn't even physically possible. It would be inflationary to simply print new money to finance spending, which is exactly why it's not done.

[edit] Also the debt limit is a stupid concept that's likely unconstitutional. Congress authorizes spending, meaningful debate over paying for it by adjusting the debt limit likely falls afoul of the 14th amendment's public debt clause. But yeah I mean the debt limit goes up because the government spends more money than it takes in, so it needs to borrow more each year.

triceratops · 5h ago
+100
ericmcer · 4h ago
Maybe this is a roundabout weird benefit to income inequality... Like the banks and private equity have so much cash burning that they start taking increasingly risky moonshots that result in actual innovative projects. Normally projects like this would require the government to spearhead, but now there is so much cash floating around they can just throw 13B at a totally unprofitable high risk company.
waynenilsen · 6h ago
comparisons with internet age very much resonate - dark compute will be as dark fiber was
yabones · 4h ago
You can take decades old fibre, stick some new transceivers on the ends, and have it run at the very latest speeds (unless it's cheap, damaged, etc) without having to pull it out and reinstall it.

H100s will not age this well. It's not like owning old railroad tracks, it's like owning a fleet of 1992 Ford Taurus's. They'll be quickly obsolete and uneconomical in just a few years as semiconductor manufacturing continues to improve.

sgnelson · 5h ago
For me that brings up two questions:

1) Will I (and others) be able to get a H100 (or similar) when the bubble pops, and would that lead to new innovations from the GPU poor?

2) Will China take the lead in AI as they are less "capitalistic" with the demands for outsized returns on their investment compared to US companies, and they may be more willing to continue to sink money into AI despite possible market returns?

No comments yet

anthem2025 · 5h ago
I doubt it.

Some will be used a lot will be written off and tossed away.

Hamuko · 6h ago
So, a bubble?
ACCount37 · 5h ago
If I had a dime for every time I see this kind of hot take, I'd be able to buy an H200 with that.

A man looks at economics. Understands nothing. Thinks it must be all fake and made up. He must be so smart for seeing it through!

IshKebab · 5h ago
It is all fake and made up, and the numbers are detached from the real world, but it's not like the market doesn't know that.

Btw there's a decentish board game called Modern Art based around the pricing of art with no intrinsic value.

simianwords · 3h ago
>It is all fake and made up, and the numbers are detached from the real world, but it's not like the market doesn't know that.

How? The market is the one that made the decision to invest. They are not playing musical chairs.

xpe · 5h ago
Perhaps there are salient differences between art on a wall and a company.
Workaccount2 · 4h ago
At heart, not really. The whole point of all of this is to motivate humans to get off their butt and reduce entropy.
xpe · 4h ago
A painting on a wall is merely an inanimate object.

A company has agency; it seeks to add economic value to itself over time including changing people’s perceptions.

I don’t see how your comments have any bearing to the point I was making. What am I missing?

Workaccount2 · 2h ago
I'm not the one who decided that a painting appreciates with time and trends. But they do it pretty reliably and people keep paying the dollars that we all use for everything else for them. It's just another generally appreciating asset regardless if it's value comes from looks or tax structuring utility.
badpun · 3h ago
Art piece cannot do buybacks/dividends.
eatsyourtacos · 4h ago
Economics is entirely made up. It's a social science.
ACCount37 · 4h ago
In case of economics, the gap between "social science" and "entirely made up" is ten miles long and filled with hellfire.

The laws of economics have the kind of inevitability you expect from the laws of physics. Disrespect them at your own peril.

luisfmh · 1h ago
Hard disagree on this. The gap between the levels of statistical significance you get in economics vs physics is massive. They're not at the same levels of inevitability. The predictive power of the laws of physics vs the laws of economics is vastly different.
xpe · 5h ago
No disrespect to anyone in particular*, but I don’t care about one person’s armchair quarterback “feelings” about investment levels, bubbles, or <vague term that you won’t define>. Give me something I can learn from.

* I’m an equal opportunity critic of comments that are indistinguishable from people yelling into the void with whatever pops into their head. So yes, I’m extremely critical of this very human tendency that isn’t helpful.

yieldcrv · 5h ago
So what should be exchanged for space inside a data center, what should be exchanged for the GPUs that they and everyone wants, what should be exchanged by the people that want to rent the GPUs before someone else

All of whom have a real world standardized thing to exchange for this already

Why do you think this discussion even needs to include the people who don’t have that standardized thing to exchange? If thats what you think

OhMeadhbh · 5h ago
Money is impossible. Money is beautiful. Money is theft.

[Voted down by the cash cabal! Arise! Knowledge workers of the world, you have nothing to lose but your SPARE CHANGE!]

didip · 4h ago
Everyone is so pessimistic about bubble bursting and money are simply catches on fire in this AI race…

However, I remembered when Youtube was young. It was burning money every month on bandwidth.

After selling out to Google, it took another decade to turned profit. But it did. And it achieved its end game. As the winner, it took all of the video hosting market. And Google reaped the entirety of that win.

This AI race is playing out the same way. The winner has the ability to disrupt several FAANGs and FAANG neighbors (eg. Adobe). And that’s 1-2 trillion dollar market, combined.

seydor · 3h ago
and yet it's still only ~10% of google's revenue.
seydor · 4h ago
Which one will hit $1T first?
999900000999 · 5h ago
Is it worth it if I have an AI related idea to try and get it built ?

It'll take a solid year and about 30k.

Any chance of even talking to a VC as an outsider?

red2awn · 5h ago
If it only takes 30k can't you bootstrap and built it yourself? Or even just work on it on the side alongside your day job.
makestuff · 5h ago
Might as well try, the worst that can happen is they say no or ignore your email.
1970-01-01 · 5h ago
Why are they bothering with billions of dollars when crypto coins already delivered, right on schedule, the new foundation of global currency? Why aren't these previous investors pouring all of their BTC into Anthropic as fast as possible? Isn't $183,000,000,000 a massive signal that this next leap for Silicon Valley will be as solid as their previous revolution?
vincefutr23 · 5h ago
why would nvidia not create their own foundational model?
krupan · 5h ago
Why didn't the people selling shovels to gold miners dig for gold themselves?

Because Nvidia is making actual profit selling hardware to those who do, not hoping for a big payout sometime in the future. Different risk/reward model, different goals.

jononor · 5h ago
They are printing money right now, and their customers are taking all the risk. Just keep delivering and enjoy success.
wmf · 5h ago
They have a bunch of Nemotron models. They can make more money from five(?) competing frontier labs than from trying to monopolize the frontier themselves.
MangoCoffee · 3h ago
Why doesn't Apple make their own iPhones instead of contracting them to Foxconn?
xyst · 4h ago
The only people this matters to is the initial investors in earlier series or seed fund stages.
oytis · 5h ago
Series what?
farfolomew · 5h ago
It’s about time the western world finally changes from a five to four-day work week!

That’s just about the most tangible benefit I see this AI breakthrough delivering. What an asset to have too, socially and civilly, especially when compared to the west’s primary adversary: the CCCP and its communist message of ‘equality’ for the people when they’re still working six days a week!

bgwalter · 5h ago
Interesting that investors pay so many billions for a product that just iterates until something, somehow compiles but emits subtle garbage.

Intellectual engagement goes down, users get dumber and only look at quantity. China is taking first steps to continue its excellence. In the New York Post of all places:

https://nypost.com/2025/08/19/world-news/china-restricts-ai-...

"It’s just one of the ways China protects their youth, while we feed ours into the jaws of Big Tech in the name of progress."

j45 · 5h ago
Very happy for them - curious if the funding will help with the current capacity issues.

5 minutes into my first opus prompt on Claude Code on an empty repo, I've already been warned by Claude Code that I'm about to hit my opus limit despite not using it in 12 days.

rvz · 6h ago
Enron was worth $60B - $100B once.
NewJazz · 6h ago
Intel still is.
baalimago · 6h ago
Prediction: this is the final big "hufff" before the bubble bursts.
NitpickLawyer · 6h ago
If we make a comparison to the dotcom bubble, this bubble will take the equivalent of catsdotcom and dogsdotcom, not the equivalent of FAANG++. And even that comparison is iffy, because we just don't know where the end is with this one. We've seen capabilities only increase so far. We've also seen prices decrease by orders of magnitude between SotA "generations". Things continue to scale, and no one knows how far it'll go. There's a reason everyone is doing the coding agent cli of the month, and everyone is heavily subsidising coding - data, more data, and crucially (hah) signals on generation quality, acceptance rate and so on. Take that, put it in the new generation, training goes brr, post-training goes RL, etc.
fidotron · 5h ago
That's now between an entire Instagram and WhatsApp acquisition cost.

It's hard to escape the conclusion this is dumb money jumping on a bandwagon. To justify the expected returns here requires someone to make a transformer like leap again, and that doesn't take spending huge amounts in one place, but funding a lot more speculative thinkers.

xpe · 5h ago
I don’t like to think of predicting the future as “a conclusion” of some assumptions. I don’t think it puts you in a frame of mind such that you’re genuinely curious.
fidotron · 5h ago
> Remember the YouTube acquisition? To many, it seemed bonkers.

Because of the legal uncertainty about what they were doing. There was no fundamental technological impediment.

Here the technology simply doesn't exist and this is a giant bet that it can be magically created by throwing (a lot) more money at the existing idea. This is why it's "dumb money" because they don't seem to understand the dynamics of what they're investing in.

xpe · 4h ago
Update: I edited my comment to focus on the mindset of making predictions (including recognizing the uncertainty and being comprehensive about possible scenarios)

I made a new top-level comment mentioning the 2006 YouTube acquisition only to show that many people were shocked, but -surprise- markets are usually better predictors than individual hunches.

fidotron · 4h ago
This isn't a market in that sense though - it's very much one sided what Anthropic tells us and they are privately traded.

It is very far from a situation where the price discovery mechanism is allowed to work.

xpe · 4h ago
Here are some ways that it’s not very far from a market mechanism:

1. How much an organization is willing to invest in X competes against other market opportunities.

2. The effective price per share (as part of the latest round of financing) is an implicit negotiation.

It is a matter of degree, sure, but my point still stands: there is a lot of collective information going into this valuation. So an individual should be intellectually humble relative to that. How many people have more information than even an imperfect market-derived quantity?

fidotron · 3h ago
> there is a lot of collective information going into this valuation

No, there isn't. For example, I would like to legally bet against Anthropic existing as a going concern in five years. Where can I do this? All the information against them is discarded and hidden.

OhMeadhbh · 5h ago
Is it just me or does something smell... bubbly in here?
cooloo · 5h ago
Just a question of time until the bubble will burst.
potatoproduct · 6h ago
I predict a lot of people are going to lose a lot of money.
xpe · 5h ago
Compare with “I predict people are going to die.”

Clear, testable predictions are possible if you try.

paulpauper · 6h ago
FTX creditors should be seeing red. the trustee sold Anthropic out at the bottom. Same for crypto. Hindsight is 20-20, but imagine had CZ not made those tweets of divesting from the FTT token. FTX could have possibly weathered the final 3 months of the BTC bear market and then reaped the post-2023 AI and crypto bull market. Sam would have gone from pauper in jail to brilliant investor in Anthropic, mogul, and so on.
ealexhudson · 6h ago
The trustee's reports on FTX's internal processes were damning. Even they had held their Anthropic on the way up, who's to say their internal FTT ledger and black holes in the Alameda books would not have eclipsed that?

The issue wasn't that crypto markets in general were down at that point; the issue was they were doing frauds.

boringg · 6h ago
I think the implication is they fraudsters rarely get busted when they are making everyone money only when things are looking bad. Eventually it catches up though.
paulpauper · 6h ago
the frauds were stopped by Sam going to jail. There was still money left by liquidating, which in hindsight was a very poor timing.
dgacmu · 5h ago
The job of the trustee of a bankrupt company is not to commit further fraud by gambling with the remaining funds.
triceratops · 5h ago
> hindsight

If the liquidators had perfect hindsight, they'd be trading their own money. Not cleaning up other people's messes.

Their job is to be responsible and follow procedure.

ealexhudson · 6h ago
Sure, but would we really want to tell liquidators to manage assets for best eventual return rather than just convert everything to cash? In this instance, in hindsight, sure - you'd want the other thing, you want the bitcoin not the cash. But this feels like the exception that proves the rule.
hiddencost · 5h ago
He did crimes. Whether or not money was lost, it was still crimes. B
fourseventy · 6h ago
I wonder what SBF's shares would be worth.
tzury · 5h ago
When your product is 5x better than OpenAI, you can afford ~40% of their valuation, especially when you achieved it with simpler marketing strategies.