whisperkit

0.6.1

Swift native on-device speech recognition with Whisper for Apple Silicon
argmaxinc/WhisperKit

What's New

v0.6.1

2024-05-01T08:38:53Z

Smaller patch release with some nice improvements and two new contributors 🙌

Highlights

  • Tokenizer no longer requires a HubApi request to succeed if the files are already downloaded
    • This was a big request from the community and should enable offline transcription as long as everything is downloaded already
    • Also made the function public so you can bundle the tokenizer with the app along with the model files
  • @smpanaro found a really nice speedup across the board by using IOSurface backed MLMultiArrays
    • Especially noticeable on older devices
  • General cleanup, including a nice bug fix from @couche1 when streaming via the CLI

What's Changed

  • Memory and Latency Regression Tests by @Abhinay1997 in #99
    • @Abhinay1997 is building out this regression test suite so we can be sure we're always shipping code that has the same or better speed, accuracy, memory, etc
  • Fix audio file requirement for streaming mode by @couche1 in #121
  • Use IOSurface-backed MLMultiArrays for float16 by @smpanaro in #130
  • Cleanup by @ZachNagengast in #132

New Contributors

Full Changelog: v0.6.0...v0.6.1

WhisperKit WhisperKit

WhisperKit

Tests License Supported Swift Version Supported Platforms Discord

WhisperKit is a Swift package that integrates OpenAI's popular Whisper speech recognition model with Apple's CoreML framework for efficient, local inference on Apple devices.

Check out the demo app on TestFlight.

[Blog Post] [Python Tools Repo]

Table of Contents

Installation

Swift Package Manager

WhisperKit can be integrated into your Swift project using the Swift Package Manager.

Prerequisites

  • macOS 14.0 or later.
  • Xcode 15.0 or later.

Steps

  1. Open your Swift project in Xcode.
  2. Navigate to File > Add Package Dependencies....
  3. Enter the package repository URL: https://github.com/argmaxinc/whisperkit.
  4. Choose the version range or specific version.
  5. Click Finish to add WhisperKit to your project.

Homebrew

You can install WhisperKit command line app using Homebrew by running the following command:

brew install whisperkit-cli

Getting Started

To get started with WhisperKit, you need to initialize it in your project.

Quick Example

This example demonstrates how to transcribe a local audio file:

import WhisperKit

// Initialize WhisperKit with default settings
Task {
   let pipe = try? await WhisperKit()
   let transcription = try? await pipe!.transcribe(audioPath: "path/to/your/audio.{wav,mp3,m4a,flac}")?.text
    print(transcription)
}

Model Selection

WhisperKit automatically downloads the recommended model for the device if not specified. You can also select a specific model by passing in the model name:

let pipe = try? await WhisperKit(model: "large-v3")

This method also supports glob search, so you can use wildcards to select a model:

let pipe = try? await WhisperKit(model: "distil*large-v3")

Note that the model search must return a single model from the source repo, otherwise an error will be thrown.

For a list of available models, see our HuggingFace repo.

Generating Models

WhisperKit also comes with the supporting repo whisperkittools which lets you create and deploy your own fine tuned versions of Whisper in CoreML format to HuggingFace. Once generated, they can be loaded by simply changing the repo name to the one used to upload the model:

let pipe = try? await WhisperKit(model: "large-v3", modelRepo: "username/your-model-repo")

Swift CLI

The Swift CLI allows for quick testing and debugging outside of an Xcode project. To install it, run the following:

git clone https://github.com/argmaxinc/whisperkit.git
cd whisperkit

Then, setup the environment and download your desired model.

make setup
make download-model MODEL=large-v3

Note:

  1. This will download only the model specified by MODEL (see what's available in our HuggingFace repo, where we use the prefix openai_whisper-{MODEL})
  2. Before running download-model, make sure git-lfs is installed

If you would like download all available models to your local folder, use this command instead:

make download-models

You can then run them via the CLI with:

swift run whisperkit-cli transcribe --model-path "Models/whisperkit-coreml/openai_whisper-large-v3" --audio-path "path/to/your/audio.{wav,mp3,m4a,flac}" 

Which should print a transcription of the audio file. If you would like to stream the audio directly from a microphone, use:

swift run whisperkit-cli transcribe --model-path "Models/whisperkit-coreml/openai_whisper-large-v3" --stream

Contributing & Roadmap

Our goal is to make WhisperKit better and better over time and we'd love your help! Just search the code for "TODO" for a variety of features that are yet to be built. Please refer to our contribution guidelines for submitting issues, pull requests, and coding standards, where we also have a public roadmap of features we are looking forward to building in the future.

License

WhisperKit is released under the MIT License. See LICENSE for more details.

Citation

If you use WhisperKit for something cool or just find it useful, please drop us a note at info@takeargmax.com!

If you use WhisperKit for academic work, here is the BibTeX:

@misc{whisperkit-argmax,
   title = {WhisperKit},
   author = {Argmax, Inc.},
   year = {2024},
   URL = {https://github.com/argmaxinc/WhisperKit}
}

Description

  • Swift Tools 5.9.0
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Dependencies

Last updated: Wed May 15 2024 22:02:15 GMT-0900 (Hawaii-Aleutian Daylight Time)