Minimal Obj-C application for automatic offline speech recognition. The inference runs locally, on-device.
whisper-iphone-13-mini-2.mp4
Real-time transcription demo:
whisper-iphone-13-mini-3.mp4
git clone https://github.com/ggerganov/whisper.cpp
open whisper.cpp/examples/whisper.objc/whisper.objc.xcodeproj/
# if you don't want to convert a Core ML model, you can skip this step by create dummy model
mkdir models/ggml-base.en-encoder.mlmodelc
Make sure to build the project in Release
:
Also, don't forget to add the -DGGML_USE_ACCELERATE
compiler flag for ggml.c
in Build Phases.
This can significantly improve the performance of the transcription:
If you want to enable Core ML support, you can add the -DWHISPER_USE_COREML -DWHISPER_COREML_ALLOW_FALLBACK
compiler flag for whisper.cpp
in Build Phases:
Then follow the Core ML support
section of readme for convert the model.
In this project, it also added -O3 -DNDEBUG
to Other C Flags
, but adding flags to app proj is not ideal in real world (applies to all C/C++ files), consider splitting xcodeproj in workspace in your own project.
You can also enable Metal to make the inference run on the GPU of your device. This might or might not be more efficient compared to Core ML depending on the model and device that you use.
To enable Metal, just add -DGGML_USE_METAL
instead off the -DWHISPER_USE_COREML
flag and you are ready.
This will make both the Encoder and the Decoder run on the GPU.
If you want to run the Encoder with Core ML and the Decoder with Metal then simply add both -DWHISPER_USE_COREML -DGGML_USE_METAL
flags. That's all!