Big News: Socket raises $60M Series C at a $1B valuation to secure software supply chains for AI-driven development.Announcement
Sign In

@lenml/tokenizers

Package Overview
Dependencies
Maintainers
1
Versions
15
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

@lenml/tokenizers

a lightweight no-dependency fork of transformers.js (only tokenizers)

Source
npmnpm
Version
1.1.1
Version published
Weekly downloads
31K
-27.37%
Maintainers
1
Weekly downloads
 
Created
Source

@lenml/tokenizers

This is the central repository for the @lenml/tokenizers project, which provides tokenization libraries for various machine learning models.

Tokenizer Arena / Playground

Explore our Tokenizer Arena / Playground! This interactive platform allows you to utilize various tokenizers from our @lenml/tokenizers library. Easily load and compare different tokenizers, seeing how they perform with diverse text inputs. Whether you're a professional developer or a machine learning enthusiast, this playground is perfect for gaining insights into the tokenization process of different models and experimenting with their functionalities.

screenshot

When should I use this instead of transformers.js?

Firstly, the interface and the actual code of the Tokenizer object are completely identical to those in transformers.js. However, when loading a tokenizer with this library, you're allowed to create your model directly from a JSON object without the need for internet access, and without relying on Hugging Face (hf) servers, or local files.

Therefore, this library becomes more convenient when you need to operate offline and only require the use of a tokenizer without the need for ONNX models.

Packages

Below is a table showcasing all available packages, the models they support, and their respective locations within the repository:

Package NameSupported Model(s)Repository Link
tokenizers (core)N/A (Core Tokenization Library)@lenml/tokenizers
llama2Llama 2 (mistral, zephyr, vicuna)@lenml/tokenizer-llama2
llama3Llama 3@lenml/tokenizer-llama3
gpt4oGPT-4o@lenml/tokenizer-gpt4o
gpt4GPT-4@lenml/tokenizer-gpt4
gpt35turboGPT-3.5 Turbo@lenml/tokenizer-gpt35turbo
gpt35turbo16kGPT-3.5 Turbo 16k@lenml/tokenizer-gpt35turbo16k
gpt3GPT-3@lenml/tokenizer-gpt3
gemmaGemma@lenml/tokenizer-gemma
claudeClaude 2/3@lenml/tokenizer-claude
claude1Claude 1@lenml/tokenizer-claude1
gpt2GPT-2@lenml/tokenizer-gpt2
baichuan2Baichuan 2@lenml/tokenizer-baichuan2
chatglm3ChatGLM 3@lenml/tokenizer-chatglm3
command_r_plusCommand-R-Plus@lenml/tokenizer-command_r_plus
internlm2InternLM 2@lenml/tokenizer-internlm2
qwen1_5Qwen 1.5@lenml/tokenizer-qwen1_5
yiYi@lenml/tokenizer-yi
text_davinci002Text-Davinci-002@lenml/tokenizer-text_davinci002
text_davinci003Text-Davinci-003@lenml/tokenizer-text_davinci003
text_embedding_ada002Text-Embedding-Ada-002@lenml/tokenizer-text_embedding_ada002

In addition to the pre-packaged models listed above, you can also utilize the interfaces in @lenml/tokenizers to load models independently.

Usage

install

npm/yarn/pnpm

npm install @lenml/tokenizers

ESM

<script type="importmap">
  {
    "imports": {
      "@lenml/tokenizers": "https://www.unpkg.com/@lenml/tokenizers@latest/dist/main.mjs"
    }
  }
</script>
<script type="module">
  import { TokenizerLoader, tokenizers } from "@lenml/tokenizers";
  console.log('@lenml/tokenizers: ',tokenizers);
</script>

load tokenizer

from json

import { TokenizerLoader } from "@lenml/tokenizers";
const tokenizer = TokenizerLoader.fromPreTrained({
    tokenizerJSON: { /* ... */ },
    tokenizerConfig: { /* ... */ }
});

from urls

import { TokenizerLoader } from "@lenml/tokenizers";
const tokenizer = await TokenizerLoader.fromPreTrainedUrls({
    tokenizerJSON: "https://huggingface.co/HuggingFaceH4/zephyr-7b-gemma-v0.1/resolve/main/tokenizer.json?download=true",
    tokenizerConfig: "https://huggingface.co/HuggingFaceH4/zephyr-7b-gemma-v0.1/resolve/main/tokenizer_config.json?download=true"
});

from pre-packaged tokenizer

import { fromPreTrained } from "@lenml/tokenizer-llama3";
const tokenizer = fromPreTrained();

chat template

const tokens = tokenizer.apply_chat_template(
  [
    {
      role: "system",
      content: "You are helpful assistant.",
    },
    {
      role: "user",
      content: "Hello, how are you?",
    },
  ]
) as number[];

const chat_content = tokenizer.decode(tokens);

console.log(chat_content);

output:

<|begin_of_text|><|start_header_id|>system<|end_header_id|>

You are helpful assistant.<|eot_id|><|start_header_id|>user<|end_header_id|>

Hello, how are you?<|eot_id|><|start_header_id|>assistant<|end_header_id|>

tokenizer api

console.log(
    "encode() => ",
    tokenizer.encode("Hello, my dog is cute", null, {
        add_special_tokens: true,
    })
);
console.log(
    "_encode_text() => ",
    tokenizer._encode_text("Hello, my dog is cute")
);

fully tokenizer api: transformer.js tokenizers document

get lightweight transformers.tokenizers

In the @lenml/tokenizers package, you can get a lightweight no-dependency implementation of tokenizers:

Since all dependencies related to huggingface have been removed in this library, although the implementation is the same, it is not possible to load models using the form hf_user/repo.

import { tokenizers } from "@lenml/tokenizers";

const {
    CLIPTokenizer,
    AutoTokenizer,
    CohereTokenizer,
    VitsTokenizer,
    WhisperTokenizer,
    // ...
} = tokenizers;

License

Apache-2.0

Keywords

llama

FAQs

Package last updated on 04 Aug 2024

Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts