Claude Token Counter, now with model comparisons

12 hours ago (simonwillison.net)

Anyone have good tips or resources on token management best practices? Because I’ve hit the limiter with one single prompt now on Opus 4.7.

What I’m reading so far seems to be:

-selective use of models based on task complexity

-encoding large repos into more digestible and relevant data structures to reduce constant reingesting

-ask Claude to limit output to X tokens (as output tokens are more expensive)

-reduce flailing by giving plenty of input context

-use Headroom and RTK

-disable unused MCP, move stuff from CLAUDE.md to skills

But I’d love to learn if anyone has any good tips, links, or tools as I’m getting rate limited twice a day now.

> Opus 4.7 tokenizer used 1.46x the number of tokens as Opus 4.6

Interesting. Unfortunately Anthropic doesn't actually share their tokenizer, but my educated guess is that they might have made the tokenizer more semantically aware to make the model perform better. What do I mean by that? Let me give you an example. (This isn't necessarily what they did exactly; just illustrating the idea.)

Let's take the gpt-oss-120b tokenizer as an example. Here's how a few pieces of text tokenize (I use "|" here to separate tokens):

    Kill -> [70074]
    Killed -> [192794]
    kill -> [25752]
    k|illed -> [74, 7905]
    <space>kill -> [15874]
    <space>killed -> [17372]

You have 3 different tokens which encode the same word (Kill, kill, <space>kill) depending on its capitalization and whether there's a space before it or not, you have separate tokens if it's the past tense, etc.

This is not necessarily an ideal way of encoding text, because the model must learn by brute force that these tokens are, indeed, related. Now, imagine if you'd encode these like this:

   <capitalize>|kill
   <capitalize>|kill|ed
   kill|
   kill|ed
   <space>|kill
   <space>|kill|ed

Notice that this makes much more sense now - the model now only has to learn what "<capitalize>" is, what "kill" is, what "<space>" is, and what "ed" (the past tense suffix) is, and it can compose those together. The downside is that it increases the token usage.

So I wouldn't be surprised if this is what they did. Or, my guess number #2, they removed the tokenizer altogether and replaced them with a small trained model (something like the Byte Latent Transformer) and simply "emulate" the token counts.

  • There is currently very little evidence that morphological tokenizers help model performance [1]. For languages like German (where words get glued together) there is a bit more evidence (eg a paper I worked on [2]), but overall I start to suspect the bitter lesson is also true for tokenization.

    [1] https://arxiv.org/pdf/2507.06378

    [2] https://pieter.ai/bpe-knockout/

    • I never understood why people want this in the first place. Sure, making this step more human explainable would be nice and possibly even fix some very particular problems for particular languages, but it directly goes against the primary objective of a tokenizer: Optimizing sequence length vs. vocabulary size. This is a pretty clear and hard optimization target and the best you can do is make sure that your tokenizer training set more closely mimics your training and ultimately your inference data. Putting english or german grammar in there by force will only degrade every other language in the tokenzier, while we already know that limiting additional languages will hurt overall model performance. And the belief that you can encode a dataset of trillions of tokens into a more efficient vocabulary than a machine is kind of weird tbh. People have also accepted since the early convnet days that the best encoding representation for images in machine learning is not a human understandable one. Same goes for audio. So why should text be any different? If you really think so, you might also wanna have a go at feature engineering images. And it's not like people haven't tried that. But they all eventually learned their lesson.

      4 replies →

  • This is how language models have worked since their inception, and has been steadily improved since about 2018.

    See embedding models.

    > they removed the tokenizer altogether

    This is an active research topic, no real solution in sight yet.

  • This is such a superficial, English-centric take, but it might as well be true. It seems to me that in non-english languages the models, especially chatgpt, have suffered in the declension department and output words in cases that do not fit the context.

    I have just ran an experiment: I have taken a word and asked models (chatgpt, gemini and claude) to explode it into parts. The caveat is that it could either be root + suffix + ending or root + ending. None of them realized this duality and have taken one possible interpretation.

    Any such approach to tokenizing assumes context free (-ish) grammar, which is just not the case with natural languages. "I saw her duck" (and other famous examples) is not uniquely tokenizable without a broader context, so either the tokenizer has to be a model itself or the model has to collapse the meaning space.

    • Current models understand different tokenization variants perfectly, e.g. leading space vs no leading space vs one character per token. It doesn't even affect evals and behchmarks. They're also good at languages that have very flexible word formation (e.g. Slavic) and can easily invent pretty natural non-existent words without being restricted by tokenization. This ability took a bit of a hit with recent RL and code generation optimizations, but this is not related to tokenization.

      >None of them realized this duality and have taken one possible interpretation.

      I suspect this happens due to mode collapse and has nothing to do with the tokenization. Try this with a base model.

  • I was looking into morpheme tokenization approach, but went even more radical with building a semantic primitive tokenizer [1], i.e. kill, killed, killer would all share the same semantic connection and tokens, e.g. [KILL], [KILL, BEFORE], [KILL, SOMEONE].

    It’s based on semantic primitives (Wierzbicka NSM) and emoji (the fun idea that got me interested in this in the first place).

    So far I’ve tested 6 iterations and it trains and responds well with a 10k vocab, but the grammar came out rougher. Working on 8th iteration, mainly to improve the grammar and language. Turns out the smaller vocab couldn’t be maintained and all improvements get us back in the ballpark of the 32k vocab size. Further testing is still outstanding for this week.

    [1] https://github.com/frane/primoji

  • This is almost certainly wrong.

    Case sensitive language models have been a thing since way before neural language models. I was using them with boosted tree models at least ten years ago, and even my Java NLP tool did this twenty years ago (damn!). There is no novelty there of course - I based that on PG's "A Plan for Spam".

    See for example CountVectorizer: https://scikit-learn.org/stable/modules/generated/sklearn.fe...

    The bitter lesson says that you are much better off just adding more data and learning the tokenizer and it will be better.

    It's not impossible that the new Opus tokenizer is based on something learnt during Mythos pre-training (maybe it is *the learned Mythos tokenizer?%), and it seems likely that the Mythos pre-training run is the most data ever trained on.

    Putting an inductive bias in your tokenizer seems just a terrible idea.

    • > This is almost certainly wrong.

      So how would you explain the increase in token usage, considering the fact that conventionally tokenizers are trained to minimize the token usage within a given vocabulary budget?

      > Putting an inductive bias in your tokenizer seems just a terrible idea.

      You're already effectively doing this by the sheer fact of using a BPE tokenizer, and especially with modern BPE-based LLM tokenizers[1]. I agree trying to bake this manually in a tokenizer is most likely not a good idea, but I could see a world where you could build a better tokenizer training algorithm which would be able to better take the natural morphology of the underlying text into account.

      [1] Example from Qwen3.6 tokenizer:

          "pretokenizers": [
            {
              "type": "Split",
              "pattern": {
                "Regex": "(?i:'s|'t|'re|'ve|'m|'ll|'d)|[^\\r\\n\\p{L}\\p{N}]?[\\p{L}\\p{M}]+|\\p{N}| ?[^\\s\\p{L}\\p{M}\\p{N}]+[\\r\\n]*|\\s*[\\r\\n]+|\\s+(?!\\S)|\\s+"
              },
              "behavior": "Isolated",
              "invert": false
            }
          ]
        },

      2 replies →

  • their old tokenizer performed some space collapsing that allowed them to use the same token id for a word with and without the leading space (in cases where the context usually implies a space and one is not present, a "no space" symbol is used).

This is perfectly legitimate. It's something I've been denouncing day after day. Company X charges you 10dolar per token, while company Y charges you 7dolar, yet company X is cheaper because of the tokenizer they use. The token consumption depends on the tokenizer, and companies create tokenizers using standard algorithms like BPE. But they're charging for hardware access, and the system can be biased to the point that if you speak in English, you consume 17% less than if your prompt is written in Spanish, or even if you write with Chinese characters, you'll significantly reduce your token consumption compared to English speakers. I've written about this several times on HN, but for whatever reason, every time I mention it, they flag my post.

  • I have often wondered if Chinese is a much 'better' language for LLMs - every character is a token, boom you're done. No weird subword nonsense, no strange semantics being applied to arbitrary chunks of words.. I feel like there must be benefits to being able to have the language tokenized in what must be very close to 1:1.

    • Yes, it is. In fact, I made a small application to reduce the token consumption for translating from one language to another, and I even invented a language called Tokinensis, which is a mix of different languages, and I ran my own tests with savings of 30%. Chinese is amazing because they encapsulate a ton of information in a single symbol, so you can save a ton of tokens.

This is the rugpull that is starting to push me to reconsider my use of Claude subscriptions. The "free ride" part of this being funded as a loss leader is coming to a close. While we break away from Claude, my hope is that I can continue to send simple problems to very smart local llms (qwen 3.6, I see you) and reserve Claude for purely extreme problems appropriate for it's extreme price.

  • > This is the rugpull that is starting to push me to reconsider my use of Claude subscriptions.

    I'm still with them cause the model is good, but yes, I'm noticing my limits burning up somewhat faster on the 100 USD tier, I bet the 20 USD tier is even more useless.

    I wouldn't call it a rugpull, since it seems like there might be good technical reasons for the change, but at the same time we won't know for sure if they won't COMMUNICATE that to us. I feel like what's missing is a technical blog post that tells uz more about the change and the tokenizer, although I fear that this won't be done due to wanting to keep "trade secrets" or whatever (the unfortunate consequence of which is making the community feel like they're being rugpulled).

  • I think an LLM that is a decent chunk smarter/better than other LLM's ought to be able to charge a premium perhaps 10x or 100x it's competitors.

    See for example the price difference between taking a taxi and taking the bus, or between hiring a real lawyer Vs your friend at the bar who will give his uninformed opinion for a beer.

  • Quality of answers from quantized models is noticeable worse than using the full model.

    You'll be better using Qwen 3.6 Plus through Alibaba coding plan.

    • > Quality of answers from quantized models is noticeable worse than using the full model.

      This is the very reason I've heard I shouldn't use Alibaba!

Token counting matters a lot when agents are running long action chains. The hidden cost is retry loops — when an agent action times out and the agent retries, it re-sends the full context including all previous tool call results. A single failed payment call can cost 3x the tokens of a successful one. Observability at the token level is one thing, but you also need observability at the action level — did this side effect actually execute or did it fail silently?

I'm really surprised that:

1. Anthropic has not published anything about why they made the change and how exactly they changed it

2. Nobody has reverse engineered it. It seems easy to do so using the free token counting APIs (the Google Vertex AI token count endpoint seems to support 2000 req/min = ~3million req/day, seems enough to reverse engineer it)

Aren't these increases offset by the quality of the responses and reducing the iterations needed to fine-tune the responses?

  • Only for the range of tasks where 4.7 performs well but 4.6 performed suboptimally. If both models can one-shot the task without retries, then the number of iterations is already at the lower bound.

    This also applies at the sub-task level. If both models need to read three files to figure out which one implements the function they need to modify, then the token tax is paid for all three files even though "not the right file" is presumably an easy conclusion to draw.

    This is also related to the challenge of optimizing subagents. Presumably the outer, higher-capacity model can perform better with everything in its context (up to limits), but dispatching a less-capable subagent for a problem might be cheaper overall. Anthropic has a 5:1 cost on input tokens between Opus and Haiku, but Google has 8:1 (Gemini Pro : Flash Lite) and OpenAI has 12:1 (GPT 4.2 : 4.2 nano).

Is there any provided reason from anthropic why they changed the tokenizer ?

Is there a quality increase from this change or is it a money grab ?

  • The tokenizer is an important part of overall model training and performance. It’s only one piece of the overall cost per request. If a tokenizer that produces more tokens also leads to a model that gets to the correct answer more quickly and requires fewer re-prompts because it didn’t give the right answer, the overall cost can still be lower.

    Comparisons are still ongoing but I have already seen some that suggest that Opus 4.7 might on average arrive at the answer with fewer tokens spent, even with the additional tokenizer overhead.

    So, no, not a money grab.

  • How would it be a money grab? If the new tokenizer requires more tokens to encode the same information, it costs them more money for inference. The point of charging per token is that the cost is proportional to the number of tokens. That's my understanding anyway

    • Not necessarily with speculative decoding. Whitespace would be trivial to predict and they would petty much keep using the same amount of compute as before.

      I don't think that's their primary motive for doing this but it is a side effect.

An interesting question is whether the tokenizer is better at something measurable or just denser. A denser tokenizer with worse alignment to semantic boundaries costs you twice, higher bill and worse reasoning. A denser tokenizer that actually carves at the joints of the model's latent space pays for itself in quality. Nobody outside Anthropic can answer which it is without their eval suite, so the rugpull read is fair but premature. Perhaps the real tell will be whether 4.7 beats 4.6 on the same dollar budget on the benchmarks you care about, not on the per-token ones Anthropic publishes.

I just asked Claude about defaulting to 4.6 and there are several options. I might go back to that as default and use --model claude-opus-4-7 as needed. The token inflation is very real.

Interesting findings. Might need a way to downsample images on upload to keep costs down.

  • Yeah that should work - it looks like the same pixel dimension image at smaller sizes has about the same token cost for 4.6 and 4.7, so the image cost increase only kicks in if you use larger images that 4.6 would have presumably resized before inspecting.

Why do you need an API key to tokenize the text? Isn't it supposed to be a cheap step that everything else in the model relies on?

  • I'd guess it's because they don't want people to reverse engineer it.

    Note that they're the only provider which doesn't make their tokenizer available offline as a library (i.e. the only provider whose tokenizer is secret).

    • Anthropic is somewhat becoming the Apple of AI in terms of closed ecosystem. Not saying I blame them, I just don't like it as a customer.

      The fact that it's impossible to get the actual thinking tokens anymore, but we have to do with a rewritten summary, is extremely off-putting. I understand that it's necessary for users, but when writing agentic applications yourself, it's super annoying not to have the actual reasoning of the agent to understand failure modes.

  • I'd love it if that API (which I do not believe Anthropic charge anything for) worked without an API key.