0f79429b0d | ||
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data | ||
demo | ||
models | ||
pretrained_models | ||
steps | ||
z_scripts | ||
.gitignore | ||
Dockerfile | ||
LICENSE-CODE | ||
LICENSE-MODEL | ||
README.md | ||
RealEdit.txt | ||
config.py | ||
edit_utils.py | ||
environment.yml | ||
inference_speech_editing.ipynb | ||
inference_speech_editing_scale.py | ||
inference_tts.ipynb | ||
inference_tts_scale.py | ||
main.py | ||
start-jupyter.bat | ||
start-jupyter.sh |
README.md
VoiceCraft: Zero-Shot Speech Editing and Text-to-Speech in the Wild
TL;DR
VoiceCraft is a token infilling neural codec language model, that achieves state-of-the-art performance on both speech editing and zero-shot text-to-speech (TTS) on in-the-wild data including audiobooks, internet videos, and podcasts.
To clone or edit an unseen voice, VoiceCraft needs only a few seconds of reference.
How to run inference
There are three ways:
- with Google Colab. see quickstart colab
- with docker. see quickstart docker
- without docker. see environment setup
When you are inside the docker image or you have installed all dependencies, Checkout inference_tts.ipynb
.
If you want to do model development such as training/finetuning, I recommend following envrionment setup and training.
News
⭐ 03/28/2024: Model weights for giga330M and giga830M are up on HuggingFace🤗 here!
⭐ 04/05/2024: I finetuned giga330M with the TTS objective on gigaspeech and 1/5 of librilight, the model outperforms giga830M on TTS. Weights are here. Make sure maximal prompt + generation length <= 16 seconds (due to our limited compute, we had to drop utterances longer than 16s in training data)
TODO
- Codebase upload
- Environment setup
- Inference demo for speech editing and TTS
- Training guidance
- RealEdit dataset and training manifest
- Model weights (giga330M.pth, giga830M.pth, and gigaHalfLibri330M_TTSEnhanced_max16s.pth)
- Write colab notebooks for better hands-on experience
- HuggingFace Spaces demo
- Better guidance on training/finetuning
QuickStart Colab
⭐ To try out speech editing or TTS Inference with VoiceCraft, the simplest way is using Google Colab. Instructions to run are on the Colab itself.
- To try Speech Editing
- To try TTS Inference
QuickStart Docker
⭐ To try out TTS inference with VoiceCraft, you can also use docker. Thank @ubergarm and @jayc88 for making this happen.
Tested on Linux and Windows and should work with any host with docker installed.
# 1. clone the repo on in a directory on a drive with plenty of free space
git clone git@github.com:jasonppy/VoiceCraft.git
cd VoiceCraft
# 2. assumes you have docker installed with nvidia container container-toolkit (windows has this built into the driver)
# https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/1.13.5/install-guide.html
# sudo apt-get install -y nvidia-container-toolkit-base || yay -Syu nvidia-container-toolkit || echo etc...
# 3. First build the docker image
docker build --tag "voicecraft" .
# 4. Try to start an existing container otherwise create a new one passing in all GPUs
./start-jupyter.sh # linux
start-jupyter.bat # windows
# 5. now open a webpage on the host box to the URL shown at the bottom of:
docker logs jupyter
# 6. optionally look inside from another terminal
docker exec -it jupyter /bin/bash
export USER=(your_linux_username_used_above)
export HOME=/home/$USER
sudo apt-get update
# 7. confirm video card(s) are visible inside container
nvidia-smi
# 8. Now in browser, open inference_tts.ipynb and work through one cell at a time
echo GOOD LUCK
Environment setup
conda create -n voicecraft python=3.9.16
conda activate voicecraft
pip install -e git+https://github.com/facebookresearch/audiocraft.git@c5157b5bf14bf83449c17ea1eeb66c19fb4bc7f0#egg=audiocraft
pip install xformers==0.0.22
pip install torchaudio==2.0.2 torch==2.0.1 # this assumes your system is compatible with CUDA 11.7, otherwise checkout https://pytorch.org/get-started/previous-versions/#v201
apt-get install ffmpeg # if you don't already have ffmpeg installed
apt-get install espeak-ng # backend for the phonemizer installed below
pip install tensorboard==2.16.2
pip install phonemizer==3.2.1
pip install datasets==2.16.0
pip install torchmetrics==0.11.1
# install MFA for getting forced-alignment, this could take a few minutes
conda install -c conda-forge montreal-forced-aligner=2.2.17 openfst=1.8.2 kaldi=5.5.1068
# conda install pocl # above gives an warning for installing pocl, not sure if really need this
# to run ipynb
conda install -n voicecraft ipykernel --no-deps --force-reinstall
If you have encountered version issues when running things, checkout environment.yml for exact matching.
Inference Examples
Checkout inference_speech_editing.ipynb
and inference_tts.ipynb
Training
To train an VoiceCraft model, you need to prepare the following parts:
- utterances and their transcripts
- encode the utterances into codes using e.g. Encodec
- convert transcripts into phoneme sequence, and a phoneme set (we named it vocab.txt)
- manifest (i.e. metadata)
Step 1,2,3 are handled in ./data/phonemize_encodec_encode_hf.py, where
- Gigaspeech is downloaded through HuggingFace. Note that you need to sign an agreement in order to download the dataset (it needs your auth token)
- phoneme sequence and encodec codes are also extracted using the script.
An example run:
conda activate voicecraft
export CUDA_VISIBLE_DEVICES=0
cd ./data
python phonemize_encodec_encode_hf.py \
--dataset_size xs \
--download_to path/to/store_huggingface_downloads \
--save_dir path/to/store_extracted_codes_and_phonemes \
--encodec_model_path path/to/encodec_model \
--mega_batch_size 120 \
--batch_size 32 \
--max_len 30000
where encodec_model_path is avaliable here. This model is trained on Gigaspeech XL, it has 56M parameters, 4 codebooks, each codebook has 2048 codes. Details are described in our paper. If you encounter OOM during extraction, try decrease the batch_size and/or max_len.
The extracted codes, phonemes, and vocab.txt will be stored at path/to/store_extracted_codes_and_phonemes/${dataset_size}/{encodec_16khz_4codebooks,phonemes,vocab.txt}
.
As for manifest, please download train.txt and validation.txt from here, and put them under path/to/store_extracted_codes_and_phonemes/manifest/
. Please also download vocab.txt from here if you want to use our pretrained VoiceCraft model (so that the phoneme-to-token matching is the same).
Now, you are good to start training!
conda activate voicecraft
cd ./z_scripts
bash e830M.sh
License
The codebase is under CC BY-NC-SA 4.0 (LICENSE-CODE), and the model weights are under Coqui Public Model License 1.0.0 (LICENSE-MODEL). Note that we use some of the code from other repository that are under different licenses: ./models/codebooks_patterns.py
is under MIT license; ./models/modules
, ./steps/optim.py
, data/tokenizer.py
are under Apache License, Version 2.0; the phonemizer we used is under GNU 3.0 License.
Acknowledgement
We thank Feiteng for his VALL-E reproduction, and we thank audiocraft team for open-sourcing encodec.
Citation
@article{peng2024voicecraft,
author = {Peng, Puyuan and Huang, Po-Yao and Li, Daniel and Mohamed, Abdelrahman and Harwath, David},
title = {VoiceCraft: Zero-Shot Speech Editing and Text-to-Speech in the Wild},
journal = {arXiv},
year = {2024},
}
Disclaimer
Any organization or individual is prohibited from using any technology mentioned in this paper to generate or edit someone's speech without his/her consent, including but not limited to government leaders, political figures, and celebrities. If you do not comply with this item, you could be in violation of copyright laws.