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# talk.wasm
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Talk with an Artificial Intelligence in your browser:
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[https://user-images.githubusercontent.com/1991296/203411580-fedb4839-05e4-4474-8364-aaf1e9a9b615.mp4](https://user-images.githubusercontent.com/1991296/203845553-f7b44e13-9a15-4fc8-b518-ae8f4c6770fe.mp4)
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Online demo: https://whisper.ggerganov.com/talk/
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Terminal version: [examples/talk](/examples/talk)
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## How it works?
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This demo leverages 2 modern neural network models to create a high-quality voice chat directly in your browser:
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- [OpenAI's Whisper](https://github.com/openai/whisper) speech recognition model is used to process your voice and understand what you are saying
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- Upon receiving some voice input, the AI generates a text response using [OpenAI's GPT-2](https://github.com/openai/gpt-2) language model
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- The AI then vocalizes the response using the browser's [Web Speech API](https://developer.mozilla.org/en-US/docs/Web/API/Web_Speech_API)
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The web page does the processing locally on your machine. The processing of these heavy neural network models in the
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browser is possible by implementing them efficiently in C/C++ and using the browser's WebAssembly SIMD capabilities for
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extra performance:
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- The Whisper C++ implementation is here: [whisper.h](/whisper.h) / [whisper.cpp](/whisper.cpp)
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- The GPT-2 C++ implementation is here: [gpt-2.h](gpt-2.h) / [gpt-2.cpp](gpt-2.cpp)
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- Both models use a custom tensor library implemented in C: [ggml.h](/ggml.h) / [ggml.c](/ggml.c)
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- The HTML/JS layer is here: [index-tmpl.html](index-tmpl.html)
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- The Emscripten bridge between C/C++ and JS is here: [emscripten.cpp](emscripten.cpp)
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In order to run the models, the web page first needs to download the model data which is about ~350 MB. The model data
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is then cached in your browser's cache and can be reused in future visits without downloading it again.
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## Requirements
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In order to run this demo efficiently, you need to have the following:
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- Latest Chrome or Firefox browser (Safari is not supported)
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- Run this on a desktop or laptop with modern CPU (a mobile phone will likely not be good enough)
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- Speak phrases that are no longer than 10 seconds - this is the audio context of the AI
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- The web-page uses about 1.8GB of RAM
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Notice that this demo is using the smallest GPT-2 model, so the generated text responses are not always very good.
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Also, the prompting strategy can likely be improved to achieve better results.
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The demo is quite computationally heavy, so you need a fast CPU. It's not usual to run these transformer models in a
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browser. Typically, they run on powerful GPUs.
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Currently, mobile browsers do not support the Fixed-width SIMD WebAssembly capability, so you cannot run this demo
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on a phone or a tablet. Hopefully, in the near future this will become supported.
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## Todo
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- Better UI (contributions are welcome)
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- Better GPT-2 prompting
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## Build instructions
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```bash
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# build using Emscripten (v3.1.2)
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git clone https://github.com/ggerganov/whisper.cpp
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cd whisper.cpp
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mkdir build-em && cd build-em
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emcmake cmake ..
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make -j
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# copy the produced page to your HTTP path
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cp bin/talk.wasm/* /path/to/html/
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cp bin/libtalk.worker.js /path/to/html/
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```
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## Feedback
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If you have any comments or ideas for improvement, please drop a comment in the following discussion:
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https://github.com/ggerganov/whisper.cpp/discussions/167
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