knuddelsgmbh / jtokkit

JTokkit is a Java tokenizer library designed for use with OpenAI models.
https://jtokkit.knuddels.de/
MIT License
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java openai

🚀 JTokkit - Java Tokenizer Kit

License: MIT GitHub Workflow Status Maven Central javadoc

Welcome to JTokkit, a Java tokenizer library designed for use with OpenAI models.

EncodingRegistry registry = Encodings.newDefaultEncodingRegistry();
Encoding enc = registry.getEncoding(EncodingType.CL100K_BASE);
assertEquals("hello world", enc.decode(enc.encode("hello world")));

// Or get the tokenizer corresponding to a specific OpenAI model
enc = registry.getEncodingForModel(ModelType.TEXT_EMBEDDING_ADA_002);

💡 Quickstart

For a quick getting started, see our documentation.

📖 Introduction

JTokkit aims to be a fast and efficient tokenizer designed for use in natural language processing tasks using the OpenAI models. It provides an easy-to-use interface for tokenizing input text, for example for counting required tokens in preparation of requests to the GPT-3.5 model. This library resulted out of the need to have similar capacities in the JVM ecosystem as the library tiktoken provides for Python.

🤖 Features

✅ Implements encoding and decoding via r50k_base, p50k_base, p50k_edit and cl100k_base

✅ Easy-to-use API

✅ Easy extensibility for custom encoding algorithms

Zero Dependencies

✅ Supports Java 8 and above

✅ Fast and efficient performance

📊 Performance

JTokkit is between 2-3 times faster than a comparable tokenizer.

benchmark

For details on the benchmark, see the benchmark directory.

🛠️ Installation

You can install JTokkit by adding the following dependency to your Maven project:

<dependency>
    <groupId>com.knuddels</groupId>
    <artifactId>jtokkit</artifactId>
    <version>1.0.0</version>
</dependency>

Or alternatively using Gradle:

dependencies {
    implementation 'com.knuddels:jtokkit:1.0.0'
}

🔰 Getting Started

To use JTokkit, simply create a new EncodingRegistry and use getEncoding to retrieve the encoding you want to use. You can then use the encode and decode methods to encode and decode text.

EncodingRegistry registry = Encodings.newDefaultEncodingRegistry();
Encoding enc = registry.getEncoding(EncodingType.CL100K_BASE);
IntArrayList encoded = enc.encode("This is a sample sentence.");
// encoded = [2028, 374, 264, 6205, 11914, 13]

String decoded = enc.decode(encoded);
// decoded = "This is a sample sentence."

// Or get the tokenizer based on the model type
Encoding secondEnc = registry.getEncodingForModel(ModelType.TEXT_EMBEDDING_ADA_002);
// enc == secondEnc

The EncodingRegistry and Encoding classes are thread-safe and can be freely shared among components.

➰ Extending JTokkit

You may want to extend JTokkit to support custom encodings. To do so, you have two options:

  1. Implement the Encoding interface and register it with the EncodingRegistry
    EncodingRegistry registry = Encodings.newDefaultEncodingRegistry();
    Encoding customEncoding = new CustomEncoding();
    registry.registerEncoding(customEncoding);
  2. Add new parameters for use with the existing BPE algorithm
    EncodingRegistry registry = Encodings.newDefaultEncodingRegistry();
    GptBytePairEncodingParams params = new GptBytePairEncodingParams(
        "custom-name",
        Pattern.compile("some custom pattern"),
        encodingMap,
        specialTokenEncodingMap
    );
    registry.registerGptBytePairEncoding(params);

Afterwards you can use the custom encodings alongside the default ones and access them by using registry.getEncoding("custom-name"). See the JavaDoc for more details.

📄 License

JTokkit is licensed under the MIT License. See the LICENSE file for more information.