A fork of so-vits-svc
with realtime support and greatly improved interface. Based on branch 4.0
(v1) and the models are compatible.
- Realtime voice conversion (enhanced in v1.1.0)
- Integrates
QuickVC
- Fixed misuse of
ContentVec
in the original repository.1 - More accurate pitch estimation using
CREPE
. - GUI and unified CLI available
- ~2x faster training
- Ready to use just by installing with
pip
. - Automatically download pretrained models. No need to install
fairseq
. - Code completely formatted with black, isort, autoflake etc.
Creating a virtual environment
Windows:
py -3.10 -m venv venv
venv\Scripts\activate
Linux/MacOS:
python3.10 -m venv venv
source venv/bin/activate
Anaconda:
conda create -n so-vits-svc-fork python=3.10 pip
conda activate so-vits-svc-fork
Installing without creating a virtual environment may cause a PermissionError
if Python is installed in Program Files, etc.
Install this via pip (or your favourite package manager that uses pip):
python -m pip install -U pip setuptools wheel
pip install -U torch torchaudio --index-url https://download.pytorch.org/whl/cu118
pip install -U so-vits-svc-fork
Notes
- If no GPU is available or using MacOS, simply remove
pip install -U torch torchaudio --index-url https://download.pytorch.org/whl/cu118
. MPS is probably supported. - If you are using an AMD GPU on Linux, replace
--index-url https://download.pytorch.org/whl/cu118
with--index-url https://download.pytorch.org/whl/rocm5.4.2
. AMD GPUs are not supported on Windows (#120).
Please update this package regularly to get the latest features and bug fixes.
pip install -U so-vits-svc-fork
GUI launches with the following command:
svcg
- Realtime (from microphone)
svc vc
- File
svc infer source.wav
Pretrained models are available on Hugging Face.
- If using WSL, please note that WSL requires additional setup to handle audio and the GUI will not work without finding an audio device.
- In real-time inference, if there is noise on the inputs, the HuBERT model will react to those as well. Consider using realtime noise reduction applications such as RTX Voice in this case.
- If your dataset has BGM, please remove the BGM using software such as Ultimate Vocal Remover.
3_HP-Vocal-UVR.pth
orUVR-MDX-NET Main
is recommended. 2 - If your dataset is a long audio file with a single speaker, use
svc pre-split
to split the dataset into multiple files (usinglibrosa
). - If your dataset is a long audio file with multiple speakers, use
svc pre-sd
to split the dataset into multiple files (usingpyannote.audio
). Further manual classification may be necessary due to accuracy issues. If speakers speak with a variety of speech styles, set --min-speakers larger than the actual number of speakers. Due to unresolved dependencies, please installpyannote.audio
manually:pip install pyannote-audio
. - To manually classify audio files,
svc pre-classify
is available. Up and down arrow keys can be used to change the playback speed.
If you do not have access to a GPU with more than 10 GB of VRAM, the free plan of Google Colab is recommended for light users and the Pro/Growth plan of Paperspace is recommended for heavy users. Conversely, if you have access to a high-end GPU, the use of cloud services is not recommended.
Place your dataset like dataset_raw/{speaker_id}/**/{wav_file}.{any_format}
(subfolders and non-ASCII filenames are acceptable) and run:
svc pre-resample
svc pre-config
svc pre-hubert
svc train -t
- Dataset audio duration per file should be <~ 10s.
- It is recommended to increase the
batch_size
as much as possible inconfig.json
before thetrain
command to match the VRAM capacity. Settingbatch_size
toauto-{init_batch_size}-{max_n_trials}
(or simplyauto
) will automatically increasebatch_size
until OOM error occurs, but may not be useful in some cases. - To use
CREPE
, replacesvc pre-hubert
withsvc pre-hubert -fm crepe
. - To use
ContentVec
correctly, replacesvc pre-config
with-t so-vits-svc-4.0v1
. Training may take slightly longer because some weights are reset due to reusing legacy initial generator weights. - To use
MS-iSTFT Decoder
, replacesvc pre-config
withsvc pre-config -t quickvc
. - Silence removal and volume normalization are automatically performed (as in the upstream repo) and are not required.
- If you have trained on a large, copyright-free dataset, consider releasing it as an initial model.
- For further details (e.g. parameters, etc.), you can see the Wiki or Discussions.
For more details, run svc -h
or svc <subcommand> -h
.
> svc -h
Usage: svc [OPTIONS] COMMAND [ARGS]...
so-vits-svc allows any folder structure for training data.
However, the following folder structure is recommended.
When training: dataset_raw/{speaker_name}/**/{wav_name}.{any_format}
When inference: configs/44k/config.json, logs/44k/G_XXXX.pth
If the folder structure is followed, you DO NOT NEED TO SPECIFY model path, config path, etc.
(The latest model will be automatically loaded.)
To train a model, run pre-resample, pre-config, pre-hubert, train.
To infer a model, run infer.
Options:
-h, --help Show this message and exit.
Commands:
clean Clean up files, only useful if you are using the default file structure
infer Inference
onnx Export model to onnx (currently not working)
pre-classify Classify multiple audio files into multiple files
pre-config Preprocessing part 2: config
pre-hubert Preprocessing part 3: hubert If the HuBERT model is not found, it will be...
pre-resample Preprocessing part 1: resample
pre-sd Speech diarization using pyannote.audio
pre-split Split audio files into multiple files
train Train model If D_0.pth or G_0.pth not found, automatically download from hub.
train-cluster Train k-means clustering
vc Realtime inference from microphone
Thanks goes to these wonderful people (emoji key):
This project follows the all-contributors specification. Contributions of any kind welcome!
Footnotes
-
If you register a referral code and then add a payment method, you may save about $5 on your first month's monthly billing. Note that both referral rewards are Paperspace credits and not cash. It was a tough decision but inserted because debugging and training the initial model requires a large amount of computing power and the developer is a student. โฉ