# whisper.wasm Inference of [OpenAI's Whisper ASR model](https://github.com/openai/whisper) inside the browser This example uses a WebAssembly (WASM) port of the [whisper.cpp](https://github.com/ggerganov/whisper.cpp) implementation of the transformer to run the inference inside a web page. The audio data does not leave your computer - it is processed locally on your machine. The performance is not great but you should be able to achieve x2 or x3 real-time for the `tiny` and `base` models on a modern CPU and browser (i.e. transcribe a 60 seconds audio in about ~20-30 seconds). This WASM port utilizes [WASM SIMD 128-bit intrinsics](https://emcc.zcopy.site/docs/porting/simd/) so you have to make sure that [your browser supports them](https://webassembly.org/roadmap/). The example is capable of running all models up to size `small` inclusive. Beyond that, the memory requirements and performance are unsatisfactory. The implementation currently support only the `Greedy` sampling strategy. Both transcription and translation are supported. Since the model data is quite big (74MB for the `tiny` model) you need to manually load the model into the web-page. The example supports both loading audio from a file and recording audio from the microphone. The maximum length of the audio is limited to 120 seconds. ## Live demo Link: https://whisper.ggerganov.com ![image](https://user-images.githubusercontent.com/1991296/197348344-1a7fead8-3dae-4922-8b06-df223a206603.png) ## Build instructions ```bash (v3.1.2) # build using Emscripten git clone https://github.com/ggerganov/whisper.cpp cd whisper.cpp mkdir build-em && cd build-em emcmake cmake .. make -j # copy the produced page to your HTTP path cp bin/whisper.wasm/* /path/to/html/ cp bin/libwhisper.worker.js /path/to/html/ ```