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cootsnuck | 24 days ago

I have not see any reporting or evidence at all that Anthropic or OpenAI is able to make money on inference yet.

> Turns out there was a lot of low-hanging fruit in terms of inference optimization that hadn't been plucked yet.

That does not mean the frontier labs are pricing their APIs to cover their costs yet.

It can both be true that it has gotten cheaper for them to provide inference and that they still are subsidizing inference costs.

In fact, I'd argue that's way more likely given that has been precisely the goto strategy for highly-competitive startups for awhile now. Price low to pump adoption and dominate the market, worry about raising prices for financial sustainability later, burn through investor money until then.

What no one outside of these frontier labs knows right now is how big the gap is between current pricing and eventual pricing.

discuss

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chis|24 days ago

It's quite clear that these companies do make money on each marginal token. They've said this directly and analysts agree [1]. It's less clear that the margins are high enough to pay off the up-front cost of training each model.

[1] https://epochai.substack.com/p/can-ai-companies-become-profi...

m101|24 days ago

It’s not clear at all because model training upfront costs and how you depreciate them are big unknowns, even for deprecated models. See my last comment for a bit more detail.

magicalist|24 days ago

> They've said this directly and analysts agree [1]

chasing down a few sources in that article leads to articles like this at the root of claims[1], which is entirely based on information "according to a person with knowledge of the company’s financials", which doesn't exactly fill me with confidence.

[1] https://www.theinformation.com/articles/openai-getting-effic...

9cb14c1ec0|24 days ago

It's also true that their inference costs are being heavily subsidized. For example, if you calculate Oracles debt into OpenAIs revenue, they would be incredibly far underwater on inference.

emp17344|24 days ago

Sue, but if they stop training new models, the current models will be useless in a few years as our knowledge base evolves. They need to continually train new models to have a useful product.

NitpickLawyer|24 days ago

> they still are subsidizing inference costs.

They are for sure subsidising costs on all you can prompt packages (20-100-200$ /mo). They do that for data gathering mostly, and at a smaller degree for user retention.

> evidence at all that Anthropic or OpenAI is able to make money on inference yet.

You can infer that from what 3rd party inference providers are charging. The largest open models atm are dsv3 (~650B params) and kimi2.5 (1.2T params). They are being served at 2-2.5-3$ /Mtok. That's sonnet / gpt-mini / gemini3-flash price range. You can make some educates guesses that they get some leeway for model size at the 10-15$/ Mtok prices for their top tier models. So if they are inside some sane model sizes, they are likely making money off of token based APIs.

int_19h|23 days ago

> They are being served at 2-2.5-3$ /Mtok. That's sonnet / gpt-mini / gemini3-flash price range.

The interesting number is usually input tokens, not output, because there's much more of the former in any long-running session (like say coding agents) since all outputs become inputs for the next iteration, and you also have tool calls adding a lot of additional input tokens etc.

It doesn't change your conclusion much though. Kimi K2.5 has almost the same input token pricing as Gemini 3 Flash.

slopusila|24 days ago

most of those subscriptions go unused. I barely use 10% of mine

so my unused tokens compensate for the few heavy users

mrandish|24 days ago

> I have not see any reporting or evidence at all that Anthropic or OpenAI is able to make money on inference yet.

Anthropic planning an IPO this year is a broad meta-indicator that internally they believe they'll be able to reach break-even sometime next year on delivering a competitive model. Of course, their belief could turn out to be wrong but it doesn't make much sense to do an IPO if you don't think you're close. Assuming you have a choice with other options to raise private capital (which still seems true), it would be better to defer an IPO until you expect quarterly numbers to reach break-even or at least close to it.

Despite the willingness of private investment to fund hugely negative AI spend, the recently growing twitchiness of public markets around AI ecosystem stocks indicates they're already worried prices have exceeded near-term value. It doesn't seem like they're in a mood to fund oceans of dotcom-like red ink for long.

defmacr0|23 days ago

>Despite the willingness of private investment to fund hugely negative AI spend

VC firms, even ones the size of Softbank, also literally just don't have enough capital to fund the planned next-generation gigawatt-scale data centers.

WarmWash|24 days ago

IPO'ing is often what you do to give your golden investors an exit hatch to dump their shares on the notoriously idiotic and hype driven public.

barrkel|24 days ago

> evidence at all that Anthropic or OpenAI is able to make money on inference yet.

The evidence is in third party inference costs for open source models.