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Ultimate Vocal Remover CLI type for Google Colab

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🎵 UVR5 NO UI 🎵

Open In Collab

This colab was created based on python-audio-separator (a CLI version of UVR5) and MVSEP-MDX23-Colab_v2 repositories. This includes:

  • All VR Arch Models
  • All MDX-NET Models
  • Demucs v4 Models
  • MDX23C Models
  • BS-Roformer ViperX Models
  • VIP Models
  • Batch Separation
  • Youtube Audio Downloader

How To Use

  1. In your Google Drive account create 2 folders. One for the audios you are going to separate and another where the separated files will be saved. image
  2. Upload all the audios you want to separate into the folder you created. image
  3. Run the first cell and give it access permissions to Google Drive. image
  4. Select the model you want to use and its parameters, then run the cell. image
  5. Now you have the separated audios in the output folder! image Extra: You can download the audio of a YouTube video by entering the link of the video, the path where it will be saved (it is recommended that it be the same where you save the audios that you are going to separate) and the audio format. image

Contributions

If you want to participate and help me with this project feel free to create an issue if something goes wrong or make a pull request to improve this project.

Any type of contribution is welcome 💖

If you liked this Colab you can star this repository. I will appreciate a lot 💖💖💖

You can donate to the original UVR5 project here:

"Buy Me A Coffee"

Credits

  • MVSEP-MDX23-Colab_v2 by Jarredou
  • python-audio-separator by beveradb
  • Youtube Audio Downloader and Improvements by Blane187

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Ultimate Vocal Remover CLI type for Google Colab

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