Is this not just about extra credit? So what's included in the subscription doesn't change - just extra credits are now token based instead of message based? (For Plus/Pro)
I think this might also impact how usage is calculated for subscription plans as well, not just overages (using tokens instead of messages for calculating usage). But the message from OpenAI seems vague.
Why not just attach a real dollar amount, rather than using "credits"?
Well, I know why. I just wanted to be snarky. It's just that trying to hide the actual price is getting a bit old. Just tell me that generating this much code will cost me $10.
I hate that pattern so much. It’s also not just to obfuscate the spending - it’s also to ensure you already have some amount left over in your account, so that it feels like you’re not spending as much to just “top up” and afford that one thing you want this time.
If you have some left over that you can’t spend, it feels like you’ve “wasted” them.
The answer is so that they can charge different prices per credit. If you buy low amounts, they can charge one price. If you buy in bulk, they can offer a discount. The usage is the same, but they can differentiate price per usage to give people more a favorable price if they are better customers.
The title is misleading and not in the article. This change is for business/enterprise accounts. Also, these are still credit based. The change is that credits now operate on tokens like the API rather than on messages as they used to.
> Customers on existing Plus, Pro and Enterprise/Edu plans should continue to use the legacy rate card. We’ll migrate you to the new rates in the upcoming weeks.
Nope, they buried the lead a bit but this is coming for _all_ users, even pro/plus subscription plans. So you get chatgpt pro/plus benefits, and then effectively $20/$200 in credits for codex
First of all, there's no dollar amount tied to how many credits you get for a subscription.
Second, if you look at the prices for bundles of _extra_ credits and then do some math on the Codex rate card, you'll see that there's no way they would work out to be the same or similar.
> First of all, there's no dollar amount tied to how many credits you get for a subscription.
I don't understand what you mean here; their official comms is:
Customers on existing Plus, Pro and Enterprise/Edu plans should continue to use the legacy rate card. We’ll migrate you to the new rates in the upcoming weeks.
To me, anyway, that means that GP was exactly right - they'll give the $20 subscriptions $20 worth of credits, and the $200 dollars subscriptions $200 worth of credits. That is what the "New Rates" are!
I think it would be more rational to discount a subscription (standard is about 10% in most industries) vs PAYG and agree in principal with your assertion - they haven't specified what the discount is on credits bought in a subscription plan - but there is no indication that they are going to continue allowing thousands of dollars of credits on a $200/m plan.
My guess would be a 10% (or similar) discount if you buy a subscription.
Is this something that is likely to also change the way Github Copilot bills? Right now the billing is message-based, not token-based. And OpenAI and Microsoft are rather opaquely intertwined in the AI space.
Hard to say, but GitHub Copilot also allows access to Anthropic, Google and Grok models, so I don't know that a change from a single provider would necessarily change how they bill
Check out z.ai coder plan. The $27/mo plan is roughly the same usage as the 20x $200 Claude plan. I have both and Claude is a little better, but GLM 5.1 is much better value.
Agreed, I use Z.ai and the usage is fantastic the only temper that recommendation that it's often unreliable. Perhaps a few times per week it's unresponsive. Maybe more often it seems to become flakey.
It's very variable though recently I'm noticing it's more reliable but there was a patch where it was nearly unusable some days.
Agreed. They had a rough patch around the 4.7 to 5 upgrade. New architecture required hardware migration. The 5 to 5.1 upgrade was much smoother (same architecture new weights). As you say, little rough around edges, but still great value. Trick I learned is that it's max 2 parallel requests per user. You can put a billion tokens a month through it, but need to manage your parallelism.
If you're ok with a model provider that goes down all the time and has such a poor inference engine setup that once you get past 50k tokens you're going to get stuck in endless reasoning loops.
I bought one of the google AI packages that came with a pile of drive storage and Gemini access.
Unfortunately gemini as a coding agent is a steaming useless pile. They have no right selling it, cheap open weight Chinese models are better at this point.
It's not stupid it just is incompetent at tool use and makes bad mistakes. It constantly gets itself into weird dysfunctional loops when doing basic things like editing files.
I'm not sure what GOOG employees are using internally, but I hope they're not being saddled with Gemini 3.1. It's miles behind.
Gemini 3.1 is a good coding agent. We've been totally spoiled now. Also, if you use Antigravity you can burn up Opus 4.6 credits off your Goog account instead, before you have to switch to Gem 3.1.
Are you using gemini CLI or antigravity? The former is not really comparable to the latter in terms of quality. I wouldn't say antigravity is as good as the competition but it's pretty close. Miles behind is overstating it.
Gemini CLI but also used the Gemini models via opencode. They're terrible at CLI tool use. Like I said, just editing text files, they fall over rapidly, constantly making mistakes and then mistakes fixing their mistakes.
Antigravity wants me to switch IDEs, and I'm not going to do that.
That's only good for the web based UI. If you want Gemini API access which is what this article is about then you must go the AIStudio route and pricing is API usage based. It does have a free usage tier and new signups can get $300 in free credits for the paid tier so it's I think it's still a good deal, just not as good as using the subscriptions would be.
No? Isn't the article about Codex, which is roughly equivalent to "Gemini CLI" and Google's Antigravity? Google's subscriptions include quotas for both of those, albeit the $20 monthly "Pro" plan has had its "Pro" model quota slashed in the last few weeks. You still get a large number of "Gemini 3 Flash" queries, which has been good enough for the projects I've toyed with in Antigravity.
I guess that's true but I find Google's models better than their public tooling. The Pro subscription includes "Gemini Code Assist and Gemini CLI" but the Gemini Code Assist plugin for IntelliJ which is my daily driver is broken most of the time to the degree that it's completely unusable. Sometimes you can't even type in the input box.
The only way I can do serious development with Gemini models is with other tooling (Cline, etc) that requires API based access which isn't available as part of the subscription.
I agree. Gemini models are held back by their segmentation of usage between multiple products, combined with their awful harnesses and tooling. Gemini cli, antigravity, Gemini code assist, Jules.... The list goes on. Each of these products has only a small limit and they must share usage.
It gets worse than that though. Most harnesses that are made to handle codex and Claude cannot handle Gemini 3.1 correctly. Google has trained Gemini 3.1 to return different json keys than most harnesses expect resulting in awful results and failure. (Based on me perusing multiple harness GitHub issues after Gemini 3.1 came out)
If you aggressively use all buckets Google is incredibly generous. In theory for one AI pro subscription you can get what is a ridiculous return in investment in a family plan.
You could probably be charging google literally thousands if all 6 members were spamming video and image generation and antigravity.
I use the free Chat AIs all the time; Claude, ChatGPT, Gemini, Grok, Mistral.
In the last month they have all clamped down quite heavily. I use to be able to deep-dive into a subject, or fix a small Python project, multiple times per day on the free Web UIs.
Claude, this morning, modified a small Python project for me and that single act exhausted all my free usage for the day. In the past I could do multiple projects per day without issue.
Same with ChatGPT. Gemini at least doesn't go full on "You can use this again at 1100AM", but it does fallback to a model that works very poorly.
Grok and Mistral I don't really use that much, but Grok's coding isn't that bad. The problem is that it is not such a good application for deep-diving a topic, because it will perform a web search before answering anything, making it take long.
Mistral tends to run out of steam very quickly in a conversation. Never tried code on it though.
We are exiting a hype cycle, well into the adoption curve. Subscriptions were never going to last.
My next step is going to be evaluating open and local models to see if they are sufficiently close to par with frontier models.
My hope is that the end of seat based pricing comes with this tech cycle. I was looking for document signing provider that doesn't charge a monthly, I only need a few docs a year.
I'm developing software in this area right now, so I try a lot of the new models. They're not even close for coding tasks. It basically comes down to 26b parameters vs 1T parameters / quantisation / smaller context sizs, there's no comparison. However, for agentic work, tool calling, text summarisation, local LLMs can be quite capable. Workloads that run as background tasks where you're not concerned about TTFB, cold starts, tok/s etc., this is where local AI is useful.
If you have an M processor then I would recommend that you ditch Ollama because it performs slowly. We get double or triple tok/s using omlx or vmlx, respectively, but vmlx doesn't have extensive support for some models like gpt-oss.
Kimi K2.5 (as an example) is an open model with 1T params. I don't see a reason it has to be local for most use cases- the fact that it's open is what's important.
I recently experimented creating a Python library from scratch with Codex. After I was done, I took the PRD and Task list that was generated and fed them to opencode with Qwen 3.5 running locally.
Opencode was able to create the library as well. It just took about 2x longer.
So Anthropic bundled CC with Claude.ai cuz OAI bundled chatgpt with Codex, now OAI is unbundling, IPO must be around the corner. Writing is also on the wall for CC usage based subscriptions now that main competitor effectively got rid of it. How are the Chinese models looking?
Although I have to say I am sometimes surprised how much people burn through their usage. I was briefly on a Claude Max plan and then switched to a pro plan and still almost never hit my limit.
It's really not. As a one-person IT department I'm now able to build things in hours or days that it previously would have taken my weeks or even months to build (and thus they didn't get done). Things people have wanted for years that I didn't ever have the time for, I can now say "yes" to.
Yeah the ops alone is a huge win. It’s such a win I didn’t even think to mention it ha.
Dangerous too of course. So many times I’ve had subtle unexpected side effects. But it’s all about pinning thins down well and that’s what we’re all still figuring out well
Absolutely not. I took on some thins that would normally take 5-10 people and many months.
Some people are turn out slop. I was really excited to try and make some impressive shit. My whole life has been dedicated to trying to embody what Apple preached in the early days.
I knew this was coming, but I thought I had a little more time to try and get them over the finish line, ya know?
Maintenance by hand might be achievable, but it’s extremely hard when you’ve built something really big.
I’ve only got so much savings left to live on.
I’m not saying anyone owes me anything, but we all need to pivot and in a lot less sure my pivot is going to work out now
> I took on some thins that would normally take 5-10 people and many months.
Based on what, exactly?
It's very easy to claim some software would've taken you months to make, but this is ridiculous. Estimating project duration is well known to be impossible in this field. A few years ago you'd get laughed out the room for making such predictions.
> I’ve only got so much savings left to live on.
Respectfully, what are you doing here?
Yeah sure, the Apple dream. But supposing AI did in fact make you this legendary 100x developer, so it would to everyone else including those with significantly more resources. You'd still be run out of the market by those with bigger budgets or more marketing, and end up penniless all the same.
I would strongly recommend you not put all your proverbial eggs in this basket.
I’ve pivoted to writing native iOS, macOS, windows, Linux apps. Most of my career has been front end web. It would take me awhile just to learn and practice, vs having my visions working in hours or days
I’m not ready to unveil the thing I alluded to, it’s important to me that it’s good and polished. But I’ve done quite well so far developing in Swift, Rust, Go, and coming up with marketing and design — things I definitely couldn’t do by hand without a lot more time and effort.
https://poolometer.com/
Is one of the things I’m almost ready to call ready. So much domain expertise or tedious math involved — I simply wouldn’t have bothered on my own, pre-AI
I agree it’s a huge existential risk that everyone is also amazing. So far that’s not true. I get hung up on a lot of little quirks, like getting Dolby Vision to play properly on Apple Silicon without Vulcan. Something I accomplished after about 2 weeks of relentless determination.
To be clear I’m just trying to answer your questions honestly. I understand the situation. It’s almost to my benefit the harder it is for non Software Engineers. But in our current reality, when I’m not launched yet, it’s more stress
The only catch is that you’ve spent many $1 and you don’t get any of those $10s unless you get over the finish line
In that sense your analogy is kinda good. I totally agree the current situation is like getting my solo start up funded and subsidized … but with only like 4 months runway now that the prices are skyrocketing, vs ~2+ for a typical YC venture
If my math is right, assuming a mix of around 70% cached tokens, 20% input tokens, and 10% output tokens, it breaks even with the old pricing at around 130k tokens per message, or about 13k output tokens per message.
With the hidden reasoning tokens and tool calls, I have no idea how many tokens I typically use per message. I would guess maybe a quarter of that, which would make the new pricing cheaper.
Ultimately, we need to know the true cost of this technology to evaluate how effectively or ineffectively it can displace the workforce that existed before it.
MiniMax M2.7, MiMo-V2-Pro, GLM-5, GLM5-turbo, Kimi K2.5, DeepSeek V3.2, Step 3.5 Flash (this last one is particularly cheap while still being powerful).
Every time an Ed Zitron article is posted on HN, it is met with a torrent of vitriol and personal attacks. The articles are okay if not overly wordy but I don’t see how the subject matter elicits that strong of a response.
At any rate, this observation is not unique to Ed, lots of people have made the same conclusion that the math doesn’t add up from a business profitability perspective.
> The articles are okay if not overly wordy but I don’t see how the subject matter elicits that strong of a response.
Hot take, but really it's more of an observation than a take: We saw this exact response in Blockchain & crypto circles a few years ago. (Though HN wasn't quite as culturally "central" to those)
Economic Bubbles are subject to the Tinkerbell Effect. They exist so long as people exist in them, and collapse when either 1) They become so financially unsustainable as to collapse, having consumed all the money the economy could possibly give them, or 2) People stop believing in the bubble and stop feeding it money.
In this regard, the statement "NTFs are stupid" was not merely ridiculing those who bought them, but a direct attack on the bubble and those invested in it. And this is something the people involved in the bubble understand instinctively, even if they aren't consciously aware of it. (There's a psychological mechanism to that, but it's not relevant)
So consequently, they react aggressively to dissent. They seek to enforce their narrative, because not doing so is a threat to the bubble and their financial interests.
---
AI's not much different to that. It's clearly a bubble to everyone including the AI execs saying it out loud.
And people react aggressively to dissent like Ed's, because if the wider public stops believing in AI's future, the bubble bursts. They'll stop tolerating datacenter construction, they'll sell their Nvidia shares, they'll demand regulators restrict AI.
(And to those who can feel their aggression rising reading this comment. Hi, yes. I see you. If I were wrong, nothing I said would matter. You'd be wasting your time engaging with it, history would simply prove me wrong. But by all means, type up that reply or click that button.)
I agree with Ed Zitron more often than not, but I do think he Flanderized himself into being the aggressively-anti-AI-guy to the point where he now makes claims about the capabilities of "AI" that are incorrect regularly. I see people on HN doing the same thing, making claims about capabilities that were true as recently as 6 months ago, but aren't true anymore.
[I'm an AI-doomer myself, but I am an AI-doomer because by and large this stuff increasingly works, not because it doesn't.]
That said, Ed Zitron still does a lot of useful research into the economics of the industry and I also believe that continued progress in AI can disrupt the world (for better and for worse) while the economics propping up all the frontier model providers can also implode spectacularly.
Some people talk about how AI doom comes about either way because it could take all of our jobs OR crash the economy when the current bubble bursts. But as an uber-AI-doomer I happen to think there is a very real possibility of a double downside (for the labor class, at least) where both of those things can happen at the same time!
Literally every VC funded consumer product has switched from a "growth at all costs" phase to a "Now we hike prices, make money, and generally enshittify" phase, and tons of those companies are still around (e.g. Uber), so I'm not sure why anyone thinks it would be much different for AI.
As I see it, the only thing close to a moat is CC for Anthropic, and since it is a big ol' fucking mess that is a) apparently now beyond the ability of any current SOTA LLM to fix, and b) understood by absolutely no human, I'd say it's not much of a moat. The other agents will catch up sooner rather than later.
The other providers? I don't see a moat. We jump ship at the drop of a hat.
I think the situation we'll end up in is having closed models that are fast and near perfect but expensive, and a lot of cheap open-source models that are good enough for most people.
Billions of USD in debt, a business model bleeding cash with no profit in perspective, high-competition environnement, a sub-par product, free-to-use offline models taking off, potential regulatory issues, some investor commitments pulling out... tricky.
But let's not cry for the founders, they managed to get away with tons of money. The problem is for the fools holding the bag.
How is it a subpar product? I've been very happy with GPT 5.4 and the Codex CLI tooling, as well as ChatGPT web. I'd say product is one of their strengths.
this is indicative to me that the exponential is slowing down. tool and model progress was huge in 2025 but has been pretty stale this year. the usage changes from anthropic, gemini, and openai indicate it's just a scale of economy issue now so unless there's a major breakthrough they're just going to settle down as vendors of their own particular similar flavor of apis.
What makes you think that progress has stopped? Anecdotally I personally seem to think that it's accelerated, I am having conversations with ambitious non tech people and they now seem to be excited and are staying up late learning about cli and github. They seem to have moved beyond lovable and are actually trying to embed some agents in their small businesses, etc.
I think it signals that they’ve been so successful that they need to ensure there is some direct financial back pressure on heavy users to ensure that their heavy token use is actually economically productive. That’s not a bad thing. Giving away stuff for free - or even apparently for free - encourages a poor distribution of value.
> I think it signals that they’ve been so successful that they need to ensure there is some direct financial back pressure on heavy users to ensure that their heavy token use is actually economically productive.
Jesus, the spin on this message is making me dizzy.
They finally try to stop running at a loss, and you see that as "they've been so successful"?
Here's how I see it: they all ran out of money trying to build a moat, and now realise that they are commodity sellers. What sort of profit do you think they need to make per token at current usage (which is served at below cost)?
How are they going to get there when less-highly-capitalised providers are already getting popular?
There basically the same. Codex is better at some things, Claude is better at other things. It’s honestly a wash, just pick the one that gives you a warmer fuzzy feeling in your tummy.
5.4 is great. I use it for python professionally and for typescript/front-end games and educational apps recreationally. In my experience it's roughly as good as opus, just a lot cheaper. It's amazing how much usage you get for $20/mo
I'm really curious about how you use it, because for me it was braindead. I tried tasking it to update my personal workout app and it created so many bugs I had to clean up with Opus or be left with spaghetti. It also keeps asking for confirmation of doing basic things.
> I tried tasking it to update my personal workout app and it created so many bugs I had to clean up with Opus or be left with spaghetti.
I find it sad that some people are already at the point where "My only options are to leave it as spaghetti or pay for another LLM to fix it". Already their skills are atrophied.
I also don’t think vast majority of SWEs ever had the skill to read and truly comprehend other people’s code and then work dilligently to “fix” it. People will such skills, in my experience, are often highly compensated contractors. every codebase which has survived the test of time has numerous “absolutely do not touch this code, everything will break and no one knows why” part(s) of the codebase…
What if the goal was to draw us away from building our own AI data centers with their cheaper prices then eventually make us pay up for the difference?
This pricing only really makes sense if the users can predict their usage, if not people that use this heavily are just going to be hamstrung and are going to start rationing their usage.
from what they wrote, they're just changing how they measure the usage; might even be a good thing if you manage your context right:
> This format replaces average per-message estimates for your plan with a direct mapping between token usage and credits. It is most useful when you want a clearer view of how input, cached input, and output affect credit consumption.
Token-based usage accounting is more accurate and therefore more sustainable than message-count-based usage accounting. It should've been this way to begin with.
The current pricing model (for plus) feels deliberately confusing to me, I can never really tell if I'm nearing any kind of limit with my account since nothing really seems to tell me.
If you use Google's tooling but not if you need API access. API access is not in the subscriptions and uses token based pricing. For development I find that the Gemini IDE plugins that have good free usage and are included in the subscriptions aren't great. Gemini plug-in under IntelliJ is often broken, etc. The best experience is with other tools like Cline where you've had to use a developer based account which is API usage based already.
But Gemini's API based usage also has a free tier and if that doesn't work for you (they train on your data) and you've never signed up before you get several hundred dollars in free credits that expire after 90 days. 3 months of free access is a pretty good deal.
Does this mean there’s no such thing as a “subscription” to ChatGPT for businesses? I thought they offered businesses a subscription with some amount of built in quota previously, including for the side products like codex and sora.
There are still subscriptions that give access to both ChatGPT and Codex, but with a much smaller usage quota than before the change (which came at the same time as the end of the 2x promo). I couldn't find the equivalent in terms of credit for the usage included with these $20/25 seats...
> I would prefer if it actually explodes sooner rather than later
The idea, as far as I can tell from all the pro-AI developers, was that it will never explode, and the performance will continue increasing so the slop they write today doesn't need maintenance, because when that time comes around there will be smarter models that can clean it up.
If the providers are tightening the screws now (and they are all doing it at the same time), it tells me that either:
1. They are out of runway and need to run inference at a profit.
or
2. They think that this is as good as it is going to get, so the best time to tighten the screws is right now.
They could also do a plan 3 where they discourage others so they can use it to, say, rapidly build many new products but competitors would have to pay a fortune for the same luxury
> They could also do a plan 3 where they discourage others so they can use it to, say, rapidly build many new products but competitors would have to pay a fortune for the same luxury
Unlikely that they all decided to do this within weeks of each other. Still, like you said, you were spit-balling, not asserting :-)