# Whisper-WebUI A Gradio-based browser interface for [Whisper](https://github.com/openai/whisper). You can use it as an Easy Subtitle Generator! ![Whisper WebUI](https://github.com/jhj0517/Whsiper-WebUI/blob/master/screenshot.png) ## Notebook If you wish to try this on Colab, you can do it in [here](https://colab.research.google.com/github/jhj0517/Whisper-WebUI/blob/master/notebook/whisper-webui.ipynb)! # Feature - Generate subtitles from various sources, including : - Files - Youtube - Microphone - Currently supported subtitle formats : - SRT - WebVTT - txt ( only text file without timeline ) - Speech to Text Translation - From other languages to English. ( This is Whisper's end-to-end speech-to-text translation feature ) - Text to Text Translation - Translate subtitle files using Facebook NLLB models - Translate subtitle files using DeepL API # Installation and Running - ## On Windows OS ### Prerequisite To run this WebUI, you need to have `git`, `python` version 3.8 ~ 3.10, `CUDA` version above 12.0 and `FFmpeg`. Please follow the links below to install the necessary software: - CUDA : [https://developer.nvidia.com/cuda-downloads](https://developer.nvidia.com/cuda-downloads) - git : [https://git-scm.com/downloads](https://git-scm.com/downloads) - python : [https://www.python.org/downloads/](https://www.python.org/downloads/) **( If your python version is too new, torch will not install properly.)** - FFmpeg : [https://ffmpeg.org/download.html](https://ffmpeg.org/download.html) After installing FFmpeg, **make sure to add the `FFmpeg/bin` folder to your system PATH!** ### Automatic Installation If you have satisfied the prerequisites listed above, you are now ready to start Whisper-WebUI. 1. Run `Install.bat` from Windows Explorer as a regular, non-administrator user. 2. After installation, run the `start-webui.bat`. 3. Open your web browser and go to `http://localhost:7860` ( If you're running another Web-UI, it will be hosted on a different port , such as `localhost:7861`, `localhost:7862`, and so on ) And you can also run the project with command line arguments if you like by running `user-start-webui.bat`, see [wiki](https://github.com/jhj0517/Whisper-WebUI/wiki/Command-Line-Arguments) for a guide to arguments. - ## Docker ( On Other OS ) 1. Build the image ```sh docker build -t whisper-webui:latest . ``` 2. Run the container with commands - For bash : ```sh docker run --gpus all -d \ -v /path/to/models:/Whisper-WebUI/models \ -v /path/to/outputs:/Whisper-WebUI/outputs \ -p 7860:7860 \ -it \ whisper-webui:latest --server_name 0.0.0.0 --server_port 7860 ``` - For PowerShell: ```shell docker run --gpus all -d ` -v /path/to/models:/Whisper-WebUI/models ` -v /path/to/outputs:/Whisper-WebUI/outputs ` -p 7860:7860 ` -it ` whisper-webui:latest --server_name 0.0.0.0 --server_port 7860 ``` # VRAM Usages This project is integrated with [faster-whisper](https://github.com/guillaumekln/faster-whisper) by default for better VRAM usage and transcription speed. According to faster-whisper, the efficiency of the optimized whisper model is as follows: | Implementation | Precision | Beam size | Time | Max. GPU memory | Max. CPU memory | |-------------------|-----------|-----------|-------|-----------------|-----------------| | openai/whisper | fp16 | 5 | 4m30s | 11325MB | 9439MB | | faster-whisper | fp16 | 5 | 54s | 4755MB | 3244MB | If you want to use the original Open AI whisper implementation instead of optimized whisper, you can set the command line argument `--disable_faster_whisper` to `True`. See the [wiki](https://github.com/jhj0517/Whisper-WebUI/wiki/Command-Line-Arguments) for more information. ## Available models This is Whisper's original VRAM usage table for models. | Size | Parameters | English-only model | Multilingual model | Required VRAM | Relative speed | |:------:|:----------:|:------------------:|:------------------:|:-------------:|:--------------:| | tiny | 39 M | `tiny.en` | `tiny` | ~1 GB | ~32x | | base | 74 M | `base.en` | `base` | ~1 GB | ~16x | | small | 244 M | `small.en` | `small` | ~2 GB | ~6x | | medium | 769 M | `medium.en` | `medium` | ~5 GB | ~2x | | large | 1550 M | N/A | `large` | ~10 GB | 1x | `.en` models are for English only, and the cool thing is that you can use the `Translate to English` option from the "large" models!