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# VALL-E | |
## Introduction | |
This is an unofficial PyTorch implementation of VALL-E, a zero-shot voice cloning model via neural codec language modeling ([paper link](https://arxiv.org/abs/2301.02111)). | |
If trained properly, this model could match the performance specified in the original paper. | |
## Change notes | |
This is a refined version compared to the first version of VALL-E in Amphion, we have changed the underlying implementation to Llama | |
to provide better model performance, faster training speed, and more readable codes. | |
This can be a great tool if you want to learn speech language models and its implementation. | |
## Installation requirement | |
Set up your environemnt as in Amphion README (you'll need a conda environment, and we recommend using Linux). A GPU is recommended if you want to train this model yourself. | |
For inferencing our pretrained models, you could generate samples even without a GPU. | |
To ensure your transformers library can run the code, we recommend additionally running: | |
```bash | |
pip install -U transformers==4.41.2 | |
``` | |
## Inferencing pretrained VALL-E models | |
### Download pretrained weights | |
You need to download our pretrained weights from huggingface. | |
Script to download AR and NAR model checkpoint: | |
```bash | |
huggingface-cli download amphion/valle valle_ar_mls_196000.bin valle_nar_mls_164000.bin --local-dir ckpts | |
``` | |
Script to download codec model (SpeechTokenizer) checkpoint: | |
```bash | |
mkdir -p ckpts/speechtokenizer_hubert_avg && huggingface-cli download amphion/valle SpeechTokenizer.pt config.json --local-dir ckpts/speechtokenizer_hubert_avg | |
``` | |
If you cannot access huggingface, consider using the huggingface mirror to download: | |
```bash | |
HF_ENDPOINT=https://hf-mirror.com huggingface-cli download amphion/valle valle_ar_mls_196000.bin valle_nar_mls_164000.bin --local-dir ckpts | |
``` | |
```bash | |
mkdir -p ckpts/speechtokenizer_hubert_avg && HF_ENDPOINT=https://hf-mirror.com huggingface-cli download amphion/valle SpeechTokenizer.pt config.json --local-dir ckpts/speechtokenizer_hubert_avg | |
``` | |
### Inference in IPython notebook | |
We provide our pretrained VALL-E model that is trained on 45k hours MLS dataset, which contains 10-20s English speech. | |
The "demo.ipynb" file provides a working example of inferencing our pretrained VALL-E model. Give it a try! | |
## Examining the model files | |
Examining the model files of VALL-E is a great way to learn how it works. | |
We provide examples that allows you to overfit a single batch (so no dataset downloading is required). | |
The AR model is essentially a causal language model that "continues" a speech. The NAR model is a modification from the AR model that allows for bidirectional attention. | |
File `valle_ar.py` and `valle_nar.py` in "models/tts/valle_v2" folder are models files, these files can be run directly via `python -m models.tts.valle_v2.valle_ar` (or `python -m models.tts.valle_v2.valle_nar`). | |
This will invoke a test which overfits it to a single example. | |
## Training VALL-E from scratch | |
### Preparing LibriTTS or LibriTTS-R dataset files | |
We have tested our training script on LibriTTS and LibriTTS-R. | |
You could download LibriTTS-R at [this link](https://www.openslr.org/141/) and LibriTTS at [this link](https://www.openslr.org/60). | |
The "train-clean-360" split is currently used by our configuration. | |
You can test dataset.py by run `python -m models.tts.valle_v2.libritts_dataset`. | |
For your reference, our unzipped dataset files has a file structure like this: | |
``` | |
/path/to/LibriTTS_R | |
βββ BOOKS.txt | |
βββ CHAPTERS.txt | |
βββ dev-clean | |
β βββ 2412 | |
β β βββ 153947 | |
β β β βββ 2412_153947_000014_000000.normalized.txt | |
β β β βββ 2412_153947_000014_000000.original.txt | |
β β β βββ 2412_153947_000014_000000.wav | |
β β β βββ 2412_153947_000017_000001.normalized.txt | |
β β β βββ 2412_153947_000017_000001.original.txt | |
β β β βββ 2412_153947_000017_000001.wav | |
β β β βββ 2412_153947_000017_000005.normalized.txt | |
βββ train-clean-360 | |
βββ 422 | |
β β βββ 122949 | |
β β βββ 422_122949_000009_000007.normalized.txt | |
β β βββ 422_122949_000009_000007.original.txt | |
β β βββ 422_122949_000009_000007.wav | |
β β βββ 422_122949_000013_000010.normalized.txt | |
β β βββ 422_122949_000013_000010.original.txt | |
β β βββ 422_122949_000013_000010.wav | |
β β βββ 422_122949.book.tsv | |
β β βββ 422_122949.trans.tsv | |
``` | |
Alternativelly, you could write your own dataloader for your dataset. | |
You can reference the `__getitem__` method in `models/tts/VALLE_V2/mls_dataset.py` | |
It should return a dict of a 1-dimensional tensor 'speech', which is a 16kHz speech; and a 1-dimensional tensor of 'phone', which is the phoneme sequence of the speech. | |
As long as your dataset returns this in `__getitem__`, it should work. | |
### Changing batch size and dataset path in configuration file | |
Our configuration file for training VALL-E AR model is at "egs/tts/VALLE_V2/exp_ar_libritts.json", and NAR model at "egs/tts/VALLE_V2/exp_nar_libritts.json" | |
To train your model, you need to modify the `dataset` variable in the json configurations. | |
Currently it's at line 40, you should modify the "data_dir" to your dataset's root directory. | |
``` | |
"dataset": { | |
"dataset_list":["train-clean-360"], // You can also change to other splits like "dev-clean" | |
"data_dir": "/path/to/your/LibriTTS_R", | |
}, | |
``` | |
You should also select a reasonable batch size at the "batch_size" entry (currently it's set at 5). | |
You can change other experiment settings in the `/egs/tts/VALLE_V2/exp_ar_libritts.json` such as the learning rate, optimizer and the dataset. | |
### Run the command to Train AR model | |
(Make sure your current directory is at the Amphion root directory). | |
Run: | |
```sh | |
sh egs/tts/VALLE_V2/train_ar_libritts.sh | |
``` | |
Your initial model checkpoint could be found in places such as `ckpt/VALLE_V2/ar_libritts/checkpoint/epoch-0000_step-0000000_loss-7.397293/pytorch_model.bin` | |
### Resume from existing checkpoint | |
Our framework supports resuming from existing checkpoint. | |
Run: | |
```sh | |
sh egs/tts/VALLE_V2/train_ar_libritts.sh --resume | |
``` | |
### Finetuning based on our AR model | |
We provide our AR model optimizer, and random_states checkpoints to support finetuning (No need to download these files if you're only inferencing from the pretrained model). First rename the models as "pytorch_model.bin", "optimizer.bin", and "random_states_0.pkl", then you could resume from these checkpoints. [Link to AR optimizer checkpoint](https://huggingface.co./amphion/valle/blob/main/optimizer_valle_ar_mls_196000.bin) and [Link to random_states.pkl](https://huggingface.co./amphion/valle/blob/main/random_states_0.pkl). | |
### Run the command to Train NAR model | |
(Make sure your current directory is at the Amphion root directory). | |
Run: | |
```sh | |
sh egs/tts/VALLE_V2/train_nar_libritts.sh | |
``` | |
### Inference your models | |
Since our inference script is already given, you can change the paths | |
from our pretrained model to you newly trained models and do the inference. | |
## Future plans | |
- [ ] Support more languages | |
- [ ] More are coming... | |