JavaScript tokenizer for LLaMA which works client-side in the browser (and also in Node).
Intended use case is calculating token count accurately on the client-side.
Developed by belladore.ai
- Easy to use: 0 dependencies, code and data baked into a single file.
- Compatible with most LLaMA models (see Compatibility)
- Optimized running time: tokenize a sentence in roughly 1ms, or 2000 tokens in roughly 20ms.
- Optimized bundle size: 670KiB before minification and gzipping (the heaviest part of the tokenizer, merge data, has been compressed into a simple and efficient binary format, and then base64-encoded to bake it into the .js file)
Option 1: Install as an npm package and import as ES6 module
npm install llama-tokenizer-js
import llamaTokenizer from 'llama-tokenizer-js'
console.log(llamaTokenizer.encode("Hello world!").length)
Option 2: Load as ES6 module with <script>
tags in your HTML
<script type="module" src="https://belladoreai.github.io/llama-tokenizer-js/llama-tokenizer.js"></script>
Once you have the module imported, you can encode or decode with it. Training is not supported.
When used in browser, llama-tokenizer-js pollutes global namespace with llamaTokenizer
.
Encode:
llamaTokenizer.encode("Hello world!")
> [1, 15043, 3186, 29991]
Decode:
llamaTokenizer.decode([1, 15043, 3186, 29991])
> 'Hello world!'
Note that special "beginning of sentence" token and preceding space are added by default when encoded (and correspondingly expected when decoding). These affect token count. There may be some use cases where you don't want to add these. You can pass additional boolean parameters in these use cases. For example, if you want to decode an individual token:
llamaTokenizer.decode([3186], false, false)
> 'Hello'
You can run tests with:
llamaTokenizer.runTests()
The test suite is small, but it covers different edge cases very well.
Note that tests can be run both in browser and in Node (this is necessary because some parts of the code work differently in different environments).
llama-tokenizer-js is the first JavaScript tokenizer for LLaMA which works client-side in the browser. You might be wondering, what other solutions are people using to count tokens in web applications?
- Many web applications currently use client-side JavaScript libraries for other, incompatible tokenizers. In particular, OpenAI's tokenizers are popular (see tiktoken and gpt-tokenizer). It's not entirely clear to me why people using LLaMA would want to count tokens with an OpenAI tokenizer that is not compatible with LLaMA. I guess people are assuming that there's not much difference between tokenizers? However, in my own testing I discovered that the token counts will commonly differ by as much as 20% between these tokenizers. So you can get a very rough approximation of LLaMA token count by using an OpenAI tokenizer.
- Some web applications make network calls to Python applications that run the Huggingface transformers tokenizer. For example, the oobabooga-text-webui exposes an API endpoint for token count. The drawback of this approach is latency: although the Python tokenizer itself is very fast, oobabooga adds a lot of overhead. In my testing, making a network call to locally running oobabooga to count tokens for short Strings of text took roughly 300ms (compared to ~1ms when counting tokens client-side with llama-tokenizer-js). The latency will be even higher when a real web client is making requests over the internet. The latency issue is even worse if an application needs to iteratively trim down a prompt to get it to fit within a context limit, requiring multiple network calls.
- Since releasing llama-tokenizer-js, alternative llama tokenizers have been released. One notable example is transformers.js, which actually introduced a llama tokenizer by integrating llama-tokenizer-js into transformers.js.
The tokenizer used by LLaMA is a SentencePiece Byte-Pair Encoding tokenizer.
Note that this is a tokenizer for LLaMA models, and it's different than the tokenizers used by OpenAI models. If you need a tokenizer for OpenAI models, I recommend gpt-tokenizer.
What is this tokenizer compatible with? All LLaMA models which have been trained on top of checkpoints (model weights) released by Facebook in March 2023 ("LLaMA") and July of 2023 ("LLaMA2").
Examples of compatible models:
- llama2-13b-4bit-gptq
- wizard-vicuna-13b-uncensored-gptq
- manticore-7b-ggml
Incompatible LLaMA models are those which have been trained from scratch, not on top of the checkpoints released by Facebook. For example, OpenLLaMA models are incompatible.
When you see a new LLaMA model released, this tokenizer is mostly likely compatible with it without any modifications. If you are unsure, try it and see if the token ids are the same (compared to running the model with, for example, oobabooga webui). You can find great test input/output samples by searching for runTests
inside llama-tokenizer.js
.
If you want to modify this library to support a new LLaMA tokenizer (new as in trained from scratch, not using the same tokenizer as most LLaMA models do), you should be able to do so by swapping the vocabulary and merge data (the 2 long variables near the end of llama-tokenizer.js
file). This repo has a Python script for your convenience.