With no details, a bird told me of a project which estimated using several millions of tokens per day to automate a team work which got laid off.
The operation is now a mess, there is no one willing to be considered liable and since the cheap model they used is about to be retired the company is going to see a 4x increase in price at least.
I have the feeling that the age of 'i can't be blamed by AI stuff' will be a "this was the computer guy mistake" for a moment.
PS. I've been using Claude opus 4.8 and it is worse than 4.6 and I will say that even sonnet 4.6 is better.
PhD. Level of software and engineering I believe! I know many PhD who never coded or worked anyway
Glad I'm not the only one. Almost every factual thing with new opus is wrong (and it now even happens with 4.6?). I asked it about car stuff yesterday and it totally misrepresented how a car axle even looks like fundamentally. Today I talked about my CV and it was just plain wrong. I don't know what happened, it wasn't like this a few weeks back and I'm even considering cancelling claude alltogether. GPT 5.5 for coding is fine and way more stable, but regular work is just broken.
On the topic of older (Claude) models being better... anyone knows anything close to 3.5 (or 3.6) era Sonnet? It was by far the best LLM I had ever asked my doubts too. It actually explained in a human way, not like some AI I need to re read thrice to understand.
(I've used modern Gemini 3.1 pro & claude too. Modern ChatGPT is just as useless, I've never heard a human speak in points. The human brain never encounters that irl.)
This was obviously a conscious choice from the leadership at he frontier labs, and especially OpenAI, considering how 4o turned out.
I don't think they expected the ELIZA effect [0] to explode as much as it did when they started including feedback directly from users into posttraining the next generation, so to be safe they've likely added several regimens of synthetic data ensuring ChatGPT tries to steer away from ELIZA.
Even then, i highly doubt any sort of automation is producing on the order of several millions of tokens daily. The issue I see with the org in parent comment seems to stem from management and not any sort of token repricing.
I don't doubt that the operation as a whole is a disaster, but they should be able to avoid the price increase by using one of the many other cheap models like DeepSeek V4 Flash right?
If you're following a bunch of people who are from LLM labs, you're going to be more incentivised to tokenmaxx because it's in the Lab's best interest tonget you to behave that way.
Practically, many companies aren't labs with endless runway. Companies hopefully follow a PnL model. And when you look at things with that lens, many of the times the LLM use case falls apart.
You're seeing a bunch of companies starting to realise that tokenmaxing yields very little ROI.
Even the LLM labs, the guy that spent $1+mil tokens has nothing to show for it in terms of revenue to the company. And you have to keep sinking that much into AI for ... "features".
There are some good use cases for AI. I ended up with a positive ROI on a greenfield project myself, albeit on a small scale.
The way that AI has been making people have totally irrational decisions on executive, pure business and technical standpoints is simply mindblowing. I don't understand how people can't take a step back and see what's actually happening from a macro perspective.
Eh... this is HN. The goal is precisely to reach BS escape velocity and SpaceX is the model to follow. It's not healthy IMHO (I'm not an economist) but that's definitely the arm race VCs actually fund. Lose for years if not decades, achieve market dominance, squeeze. Very very few winners and for those the path is precisely NOT to follow PnL.
Gambling. Crypto. Tulips. Ponzi Schemes. Easy money always nets the suckers. You see it enough times and you just sigh.
This to shall pass. After enough bullshit people will become fed up and enforcement of existing laws will start breaking up the most egregious items. New laws will pass. People will make and lose fortunes, and we will live on.
I'll take the contrary position and say that I think the "tokenmaxxing" we've previously seen was useful (but shouldn't continue indefinitely). My TLDR position is that TokenMaxxing was a way to force discovery of Product Market Fit.
The push by companies to incorporate AI into everything is (depending on the company) either hype and cargo-culting or it was an attempt by management to (1) try and discover if/what new workflows or tools could use it and (2) force the haters to use as it got better.
Where I work, there is an obvious split between people who have been willing to use AI, and those that hated it from day 1 and mocked the "stochastic parrots". Senior folks were disproportionately haters, and generally didn't see much productivity lift from early AI stuff. They strongly resisted the mandates to use AI, and completely missed the "agentic" inflection point that other colleagues experienced. The more willing users saw Claude Code/agents and were able to experience this as the genuine benefit it can be. Now that the more senior folks are using agentic programming, they're genuinely able to maintain code quality and see meaningful speed improvements in coding tasks.
Today, tokenmaxxing doesn't make sense because we found the product-market-fit of agentic coding. Now that most (?) employees are onboard with using it, the industry can shift focus to cost-effective usage and positive-ROI usage. For example, Uber shifting to a fixed per-employee token budget.
> Kirsten: All of this, to me, illustrates how quickly things are moving. I mean, when you really think about it, the whole tokenmaxxxing thing has become a thing, peaked, and now is seen disfavorably, within six months
Pretty sure from inception the phrase “tokenmaxxing” was never seen in a positive light…
I might have a different take, I’m happy with this price per token so only those who’re using it for value would use for what they want.
There are so many useless cases such as people bragging about their token consumption that has no product and no value add, or those with OpenClaw doing useless automation that could be a Python script.
Assume you build a machine that can simulate some system 1:1. Then it means the machine is exactly the same as the system, and the cost of running it will no less than the system itself.
If you want to reduce the cost but still get something useful, you have to make some abstraction, and we all know that any abstraction is leaky.
Even on the consumer side AI providers are enshitifying the plans. Everyone saw this coming three months ago plus.
The corporate side seems to be well... stupid? Execs asking their people to burn tokens do not understand the politics and cadence of business. Corporations do not actually demand more work to be completed in the way we traditionally think. Creating a lot of stuff in a corporation tends to naturally banish most of it to the void because that stuff requires other people to exist and engage with it in order to use it, deploy it, get customers using it, etc. AI does not take up that slack in the way that we are being told because it lacks agency. For most people in corporations the problem is not that they can't do their work, their real jobs are mostly being political nodes in a vast system. There is no solution on the table to change that at all.
Yes. As makers we tend to assume that the more that is made the better, and that simply by having lots of (shiny!) stuff we will get paid/honored/favored etc, whereas in fact often this stuff becomes someone's problem somewhere.
Probably the cost model for LLM providers for consumers will be somewhat subsidised by providers basically linking up extremely specific profiles about users and using these to sell products directly in an agentic pipeline which includes agentic commerce. Maybe it's less one click purchases and more one prompt purchases. Of course this stands to be pretty bad for consumers in a lot of ways (deeply invasive marketing, possibly being missold products).
Of course the question remains, who is supposed to be buying products through this system if AI systems continue to displace jobs?
The linked Reddit thread is quite hilarious. Earlier this year my company hired a new CEO and his first company address was solely to tell everyone to use AI or they’d lose their job and become unemployable in general.
I knew right there and then that he was a moron. There’s something about American companies where the best and brightest rarely show up in senior management. It seems to be populated by some weird class of golf playing NPCs that figured out how to game the system and bring all their cult members along for the ride.
My own company spent 2+ years enforcing extreme austerity, to the point of firing the very people who built everything, only to run wild with AI spending and seeing little results from it.
Surely, out there in the wilderness, there is a company staffed by intelligent, skilled people. Right?
Intelligent skilled people had been ghosted for so long that they don't bother applying anymore. Now the economy is just tree shaking, watching who will fall down. Personally I'm still irritated by the blockchain bubble and haven't even noticed when AI made me unemployable. Once in an airplane I overheard two kids from two different countries. One's job was to figure out where AI can be used, other's job was to figure out where AI can be used.
For the long time this worked oh right: get to know right people, wipe some asses, lick some other, play some golf and be sociopath. But right now it does not cut it anymore. You have to be either smart, skilled or know your business and IT somewhat to now how and to what extent or if at all you can use so called AI in your company. People like you described are out of their league entirely.
Useful context for this is that token usage keeps rising at an exponential pace. I mean, we don't have numbers for the big labs, but Openrouter's numbers are quite telling (can't post link because corporate decided to block all "non-validated AI tools"), and I think they're probably representative of the global trend. +500% year to date, +50% over the month of May alone. It's unsurprising that providers are struggling to find and pay for the compute.
A lot of it feels very wasteful currently. The providers are giving out incredibly subsidised services so consumers are consuming incredible amounts. Once the prices go up to cover the costs people will re evaluate what’s actually generating value and what was just waste.
Anecdotal experience - my coworkers will use the "max-think" and the most expensive model on every change they do with Claude, pumping out 100k's of tokens just because they can (and brag about hitting the limits).
I suspect this kind of behaviour will need to change in the very near future.
- The frontier AI companies have realized they won't be able to count on gaining ground and earning more in the future through sheer moat. They have to start earning right now.
- The playing field on the market got a whole lot more even as a result. Now everyone is competing on cost and quality - while there are still a lot of competition. AI can't easily get away with subsidizing their own product and enshittify later.
I might be missing something obvious here? It feels to me that if the frontier AI companies thought they could gain a lot more moat they wouldn't raise their prices this much this early? And their current moats/head start doesn't seem insurmountable?
The idea probably was to pour billions into technologies powering these LLMs, and gain a moat. It then turns out that this isn't as hard a problem as expected, it's just very expensive. So as long as you have money, you can be an AI company, the money is the moat (unless you take a shortcut, like DeepSeek) and money is running out.
I don't think you're missing anything, but I am surprised that the forces behind the AI companies did. They do need to start making money, but I don't think anyone has a plan as to how they are going to do this. As for enshittification, that was always on the table for the free tier, it was also going to be the drug deal strategy, were the first hit is free.
The cost of AI is still to high, datacenters aren't being completed, the hardware is to expensive, electricity is to expensive, the technology is good, but requires hand-holding. We're going to see AI being deploy more sparingly and more targeted, so the cost is justified.
> They do need to start making money, but I don't think anyone has a plan as to how they are going to do this.
Doesn't this just mean price increase ? What is not clear is how much the price needs to increase for AI companies to break even some time. 3x increase ? 10x increase ? Even more ? No one seems willing to give a clear number.
You can only increase the price so much. With every price increase you're going to lose customers, which could lead to further price increases.
I'm not entirely convince that the AI companies can raise prices and keep enough of their customer base to make their current strategy commercially viable.
They could also lower their production cost, but that runs counter to building/buying new datacenter capacity. Realistically I think they need to look for applications where cheaper models are just as good and niches that where the ROI on AI is more clear.
>AI can't easily get away with subsidizing their own product and enshittify later.
They have to do it in reverse order which seems to be maybe impossible. I contend that SOTA models are still quite bad at what their companies claim them to be good at. They remain confidently wrong more often than they should be. The public also is tired of 'slop' and will continue to push back on it.
it's simple, how much dollars you get out for every dollar put into tokens
as Jensen said, get ready for $1000 per mil token
those for which this price makes sense will push out those for which it doesn't - to lower models or to local models
but those who want to run local models need to compete for hardware with the data centers, which have strong scale effects thus will always be able to out price local hardware allocations - can already be seen now as hardware makers get out of retail business
But that will tank literally all AI companies immediately as, sure, some will pay it, but by far most won't. Anthropic will be gone in 1 day, so will OpenAI.
you allocate tokens from top down - first exclusivity deals - Citadel pays $10 bil to get exclusivity access to GPT-6 for 3 months before anyone else, then you price it $1000/mil, then whatever compute is not used you sell GPT-5.9 at $500/mil...
kimi-k2.6 can do a pretty damn good job with vision for optimizing ui design workloads in a loop. not cheap but significantly cheaper than anthropic.
mimo 3 is jsut pretty damn good when you need a high end reasoning model - also reletivly affordable.
I was able to run gemma and do some coding locally on a 32 gb machine. it was slow as molasses but the fact that it worked at all on a local machine that wasn't desinged around AI workloads is great.
Its only a tokenpocalypse if you rely on these closed and frankly overpriced american models. is opus better than kimik2.6? arguably yes but not 16 times better from what I've been seeing.
it'd be really funny if we got the RSI -> ASI world, all human labor became worthless, etc., but everyone with any money in the labs also lost their shirts because OSS is maximally good for most inference anyway.
The token consumption concern is real but I think the framing misses a key trend: specialized models for specific domains.
In legal tech, we run domain-specific models for contract review that use 90% fewer tokens than general-purpose LLMs because they understand legal document structure natively. The token cost per document dropped from dollars to cents.
The real "tokenpocalypse" is for use cases that try to do everything with one general model. As the ecosystem matures toward specialized tools (similar to how we got specialized IDEs for different programming languages), token efficiency improves dramatically.
The analogy holds: general-purpose models are like Swiss Army knives — useful but inefficient. Domain-specific models are like proper tools — more expensive upfront but vastly more efficient for their domain.
> “Can these AI labs collapse that cost [and] progress the tech enough in a way that it eventually meets in the middle with customers’ appetite for spending?” Sean wondered.
It depends where you buy the tokens from. Jevon's paradox exists in China and not in the US for now.
> In just a few months, companies became obsessed with “tokenmaxxxing,” then turned against it due to the high costs.
Casinos (in the US) telling customers to spend more on tokens, introduces free spins, discounts, resetting limits on peak hours. Then introduces new slot-machine that promises to give better odds to the gamblers, but instead is more expensive to use.
The ones in China did the opposite and made their discount on tokens permanent.
All this 'tokenmaxxing' was an outright scam. Now the AI companies want you 'tokenmaxxing' your agents on loops as the token prices increase.
I think it is easy to make some ragebait doomer articles with eye catching headlines. There are a lot of people who are ready to eat up AI catastrophism because something about apocalyptic predictions and catastrophism seems to attract certain kind of doomer-pilled people.
Here are my concrete predictions
1. Token costs will come down and performance will go up
2. Everyone will spend even more on LLMs not less - the article points at small blips but if anyone thinks it will go down from now, you are mistaken
3. AI Companies will be profitable
If anyone wants to counter bet on me, please go ahead.
but many of the current crop will never return money to investors.
I largely agree with you, but the huge investments currently being made will be very hard to get a return on. Token costs will come down, performance will go up, and you want to be in the business of selling the picks & shovels, not doing the mining.
Which is of course why nvidia, google & TSMC are in pretty good positions, but even their valuations have some bubble in them.
Respectfully, do you want a bet that AI companies like OpenAI and Anthropic can't become profitable?
I mean this is a sort of conspiracy theory and I genuinely don't know why people think AI is particularly hard to get money back from?
> I largely agree with you, but the huge investments currently being made will be very hard to get a return on.
Why do you find it huge? Anthropic went from $1B to $44B revenue in a few months and this is unprecedented.
1. The margins on inference are huge
2. There is genuine moat because AI models have personalities strengths and weaknesses that's so they are definitely not fungible
I think a lot of handwaving goes on but it comes in the form of some latent concern that AI might just be profitable. But the reality is that it will be.
None of the "selling picks and shovels" analogies will stick.
One thing that seems under-discussed is how quickly token cost changes product behavior once people move from demos to recurring workflows.
When the interaction is exploratory, the marginal cost feels invisible: ask again, summarize again, try another agent. In a business workflow, the same pattern becomes a metering problem. You have to decide which parts actually need a frontier model, which can use a smaller/local model, and which should not be generated at all.
That probably pushes AI products away from "chat with everything" and toward much narrower tools with explicit ROI: less open-ended generation, more constrained pipelines, caching, evaluation, and human review at the points where mistakes are expensive.
I have the feeling that the age of 'i can't be blamed by AI stuff' will be a "this was the computer guy mistake" for a moment.
PS. I've been using Claude opus 4.8 and it is worse than 4.6 and I will say that even sonnet 4.6 is better. PhD. Level of software and engineering I believe! I know many PhD who never coded or worked anyway
(I've used modern Gemini 3.1 pro & claude too. Modern ChatGPT is just as useless, I've never heard a human speak in points. The human brain never encounters that irl.)
I don't think they expected the ELIZA effect [0] to explode as much as it did when they started including feedback directly from users into posttraining the next generation, so to be safe they've likely added several regimens of synthetic data ensuring ChatGPT tries to steer away from ELIZA.
[0]: https://en.wikipedia.org/wiki/ELIZA_effect
Anybody doing things seriously understand how to optimize their workflows for smaller models once they start to lock in processes.
If you're following a bunch of people who are from LLM labs, you're going to be more incentivised to tokenmaxx because it's in the Lab's best interest tonget you to behave that way.
Practically, many companies aren't labs with endless runway. Companies hopefully follow a PnL model. And when you look at things with that lens, many of the times the LLM use case falls apart.
You're seeing a bunch of companies starting to realise that tokenmaxing yields very little ROI.
Even the LLM labs, the guy that spent $1+mil tokens has nothing to show for it in terms of revenue to the company. And you have to keep sinking that much into AI for ... "features".
There are some good use cases for AI. I ended up with a positive ROI on a greenfield project myself, albeit on a small scale.
The way that AI has been making people have totally irrational decisions on executive, pure business and technical standpoints is simply mindblowing. I don't understand how people can't take a step back and see what's actually happening from a macro perspective.
AI could be absolutely perfect and we'd still struggle to deploy it in a value generating way simply because it will exceed our ability to adapt.
So tokenmaxxing might be the wrong thing to do, but only because it's focussing on the wrong problem rather than because it doesn't actually work.
Eh... this is HN. The goal is precisely to reach BS escape velocity and SpaceX is the model to follow. It's not healthy IMHO (I'm not an economist) but that's definitely the arm race VCs actually fund. Lose for years if not decades, achieve market dominance, squeeze. Very very few winners and for those the path is precisely NOT to follow PnL.
This to shall pass. After enough bullshit people will become fed up and enforcement of existing laws will start breaking up the most egregious items. New laws will pass. People will make and lose fortunes, and we will live on.
The push by companies to incorporate AI into everything is (depending on the company) either hype and cargo-culting or it was an attempt by management to (1) try and discover if/what new workflows or tools could use it and (2) force the haters to use as it got better.
Where I work, there is an obvious split between people who have been willing to use AI, and those that hated it from day 1 and mocked the "stochastic parrots". Senior folks were disproportionately haters, and generally didn't see much productivity lift from early AI stuff. They strongly resisted the mandates to use AI, and completely missed the "agentic" inflection point that other colleagues experienced. The more willing users saw Claude Code/agents and were able to experience this as the genuine benefit it can be. Now that the more senior folks are using agentic programming, they're genuinely able to maintain code quality and see meaningful speed improvements in coding tasks.
Today, tokenmaxxing doesn't make sense because we found the product-market-fit of agentic coding. Now that most (?) employees are onboard with using it, the industry can shift focus to cost-effective usage and positive-ROI usage. For example, Uber shifting to a fixed per-employee token budget.
Pretty sure from inception the phrase “tokenmaxxing” was never seen in a positive light…
There are so many useless cases such as people bragging about their token consumption that has no product and no value add, or those with OpenClaw doing useless automation that could be a Python script.
[1] https://github.com/antoinezambelli/forge
Assuming the intelligence of a model continuously improves with scale, the token price of the best model will become increasingly expensive.
I know that tokens are currently experiencing rapid price drops, but they will eventually encounter physical limitations.
If you want to reduce the cost but still get something useful, you have to make some abstraction, and we all know that any abstraction is leaky.
The corporate side seems to be well... stupid? Execs asking their people to burn tokens do not understand the politics and cadence of business. Corporations do not actually demand more work to be completed in the way we traditionally think. Creating a lot of stuff in a corporation tends to naturally banish most of it to the void because that stuff requires other people to exist and engage with it in order to use it, deploy it, get customers using it, etc. AI does not take up that slack in the way that we are being told because it lacks agency. For most people in corporations the problem is not that they can't do their work, their real jobs are mostly being political nodes in a vast system. There is no solution on the table to change that at all.
Of course the question remains, who is supposed to be buying products through this system if AI systems continue to displace jobs?
I knew right there and then that he was a moron. There’s something about American companies where the best and brightest rarely show up in senior management. It seems to be populated by some weird class of golf playing NPCs that figured out how to game the system and bring all their cult members along for the ride.
My own company spent 2+ years enforcing extreme austerity, to the point of firing the very people who built everything, only to run wild with AI spending and seeing little results from it.
Surely, out there in the wilderness, there is a company staffed by intelligent, skilled people. Right?
Musk. Zuck. Bezos.
All three are buddying up with government officials, all three routinely embarrass themselves when they try to talk shop.
Only difference is they're much more socially awkward and less superficially charming than the stereotype would suggest.
Anecdotal experience - my coworkers will use the "max-think" and the most expensive model on every change they do with Claude, pumping out 100k's of tokens just because they can (and brag about hitting the limits).
I suspect this kind of behaviour will need to change in the very near future.
[0] - https://en.wikipedia.org/wiki/Betteridge%27s_law_of_headline...
- The frontier AI companies have realized they won't be able to count on gaining ground and earning more in the future through sheer moat. They have to start earning right now.
- The playing field on the market got a whole lot more even as a result. Now everyone is competing on cost and quality - while there are still a lot of competition. AI can't easily get away with subsidizing their own product and enshittify later.
I might be missing something obvious here? It feels to me that if the frontier AI companies thought they could gain a lot more moat they wouldn't raise their prices this much this early? And their current moats/head start doesn't seem insurmountable?
I don't think you're missing anything, but I am surprised that the forces behind the AI companies did. They do need to start making money, but I don't think anyone has a plan as to how they are going to do this. As for enshittification, that was always on the table for the free tier, it was also going to be the drug deal strategy, were the first hit is free.
The cost of AI is still to high, datacenters aren't being completed, the hardware is to expensive, electricity is to expensive, the technology is good, but requires hand-holding. We're going to see AI being deploy more sparingly and more targeted, so the cost is justified.
Doesn't this just mean price increase ? What is not clear is how much the price needs to increase for AI companies to break even some time. 3x increase ? 10x increase ? Even more ? No one seems willing to give a clear number.
I'm not entirely convince that the AI companies can raise prices and keep enough of their customer base to make their current strategy commercially viable.
They could also lower their production cost, but that runs counter to building/buying new datacenter capacity. Realistically I think they need to look for applications where cheaper models are just as good and niches that where the ROI on AI is more clear.
They have to do it in reverse order which seems to be maybe impossible. I contend that SOTA models are still quite bad at what their companies claim them to be good at. They remain confidently wrong more often than they should be. The public also is tired of 'slop' and will continue to push back on it.
and we are fast approaching limits which will be hard to overcome - electricity, chips
as Jensen said, get ready for $1000 per mil token
those for which this price makes sense will push out those for which it doesn't - to lower models or to local models
but those who want to run local models need to compete for hardware with the data centers, which have strong scale effects thus will always be able to out price local hardware allocations - can already be seen now as hardware makers get out of retail business
Hoping your customer base is so old they forget to cancel the subscription might not work so well this time. “Popcorn eating ensues”
kimi-k2.6 can do a pretty damn good job with vision for optimizing ui design workloads in a loop. not cheap but significantly cheaper than anthropic.
mimo 3 is jsut pretty damn good when you need a high end reasoning model - also reletivly affordable.
I was able to run gemma and do some coding locally on a 32 gb machine. it was slow as molasses but the fact that it worked at all on a local machine that wasn't desinged around AI workloads is great.
Its only a tokenpocalypse if you rely on these closed and frankly overpriced american models. is opus better than kimik2.6? arguably yes but not 16 times better from what I've been seeing.
In legal tech, we run domain-specific models for contract review that use 90% fewer tokens than general-purpose LLMs because they understand legal document structure natively. The token cost per document dropped from dollars to cents.
The real "tokenpocalypse" is for use cases that try to do everything with one general model. As the ecosystem matures toward specialized tools (similar to how we got specialized IDEs for different programming languages), token efficiency improves dramatically.
The analogy holds: general-purpose models are like Swiss Army knives — useful but inefficient. Domain-specific models are like proper tools — more expensive upfront but vastly more efficient for their domain.
It depends where you buy the tokens from. Jevon's paradox exists in China and not in the US for now.
> In just a few months, companies became obsessed with “tokenmaxxxing,” then turned against it due to the high costs.
Casinos (in the US) telling customers to spend more on tokens, introduces free spins, discounts, resetting limits on peak hours. Then introduces new slot-machine that promises to give better odds to the gamblers, but instead is more expensive to use.
The ones in China did the opposite and made their discount on tokens permanent.
All this 'tokenmaxxing' was an outright scam. Now the AI companies want you 'tokenmaxxing' your agents on loops as the token prices increase.
Here are my concrete predictions
1. Token costs will come down and performance will go up
2. Everyone will spend even more on LLMs not less - the article points at small blips but if anyone thinks it will go down from now, you are mistaken
3. AI Companies will be profitable
If anyone wants to counter bet on me, please go ahead.
but many of the current crop will never return money to investors.
I largely agree with you, but the huge investments currently being made will be very hard to get a return on. Token costs will come down, performance will go up, and you want to be in the business of selling the picks & shovels, not doing the mining.
Which is of course why nvidia, google & TSMC are in pretty good positions, but even their valuations have some bubble in them.
I mean this is a sort of conspiracy theory and I genuinely don't know why people think AI is particularly hard to get money back from?
> I largely agree with you, but the huge investments currently being made will be very hard to get a return on.
Why do you find it huge? Anthropic went from $1B to $44B revenue in a few months and this is unprecedented.
1. The margins on inference are huge
2. There is genuine moat because AI models have personalities strengths and weaknesses that's so they are definitely not fungible
I think a lot of handwaving goes on but it comes in the form of some latent concern that AI might just be profitable. But the reality is that it will be.
None of the "selling picks and shovels" analogies will stick.
When the interaction is exploratory, the marginal cost feels invisible: ask again, summarize again, try another agent. In a business workflow, the same pattern becomes a metering problem. You have to decide which parts actually need a frontier model, which can use a smaller/local model, and which should not be generated at all.
That probably pushes AI products away from "chat with everything" and toward much narrower tools with explicit ROI: less open-ended generation, more constrained pipelines, caching, evaluation, and human review at the points where mistakes are expensive.