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# VALL-E Recipe | |
In this recipe, we will show how to train [VALL-E](https://arxiv.org/abs/2301.02111) using Amphion's infrastructure. VALL-E is a zero-shot TTS architecture that uses a neural codec language model with discrete codes. | |
There are four stages in total: | |
1. Data preparation | |
2. Features extraction | |
3. Training | |
4. Inference | |
> **NOTE:** You need to run every command of this recipe in the `Amphion` root path: | |
> ```bash | |
> cd Amphion | |
> ``` | |
## 1. Data Preparation | |
### Dataset Download | |
You can use the commonly used TTS dataset to train the VALL-E model, e.g., LibriTTS, etc. We strongly recommend you use LibriTTS to train the VALL-E model for the first time. How to download the dataset is detailed [here](../../datasets/README.md). | |
### Configuration | |
After downloading the dataset, you can set the dataset paths in `exp_config.json`. Note that you can change the `dataset` list to use your preferred datasets. | |
```json | |
"dataset": [ | |
"libritts", | |
], | |
"dataset_path": { | |
// TODO: Fill in your dataset path | |
"libritts": "[LibriTTS dataset path]", | |
}, | |
``` | |
## 2. Features Extraction | |
### Configuration | |
Specify the `processed_dir` and the `log_dir` and for saving the processed data and the checkpoints in `exp_config.json`: | |
```json | |
// TODO: Fill in the output log path. The default value is "Amphion/ckpts/tts" | |
"log_dir": "ckpts/tts", | |
"preprocess": { | |
// TODO: Fill in the output data path. The default value is "Amphion/data" | |
"processed_dir": "data", | |
... | |
}, | |
``` | |
### Run | |
Run the `run.sh` as the preprocess stage (set `--stage 1`): | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 1 | |
``` | |
> **NOTE:** The `CUDA_VISIBLE_DEVICES` is set as `"0"` in default. You can change it when running `run.sh` by specifying such as `--gpu "1"`. | |
## 3. Training | |
### Configuration | |
We provide the default hyperparameters in the `exp_config.json`. They can work on a single NVIDIA-24g GPU. You can adjust them based on your GPU machines. | |
```json | |
"train": { | |
"batch_size": 4, | |
} | |
``` | |
### Train From Scratch | |
Run the `run.sh` as the training stage (set `--stage 2`). Specify an experimental name to run the following command. The tensorboard logs and checkpoints will be saved in `Amphion/ckpts/tts/[YourExptName]`. | |
Specifically, VALL-E needs to train an autoregressive (AR) model and then a non-autoregressive (NAR) model. So, you can set `--model_train_stage 1` to train AR model, and set `--model_train_stage 2` to train NAR model, where `--ar_model_ckpt_dir` should be set as the checkpoint path to the trained AR model. | |
Train an AR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 1 --name [YourExptName] | |
``` | |
Train a NAR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 2 --ar_model_ckpt_dir [ARModelPath] --name [YourExptName] | |
``` | |
<!-- > **NOTE:** To train a NAR model, `--checkpoint_path` should be set as the checkpoint path to the trained AR model. --> | |
### Train From Existing Source | |
We support training from existing sources for various purposes. You can resume training the model from a checkpoint or fine-tune a model from another checkpoint. | |
By setting `--resume true`, the training will resume from the **latest checkpoint** from the current `[YourExptName]` by default. For example, if you want to resume training from the latest checkpoint in `Amphion/ckpts/tts/[YourExptName]/checkpoint`, | |
Train an AR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 1 --name [YourExptName] \ | |
--resume true | |
``` | |
Train a NAR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 2 --ar_model_ckpt_dir [ARModelPath] --name [YourExptName] \ | |
--resume true | |
``` | |
You can also choose a **specific checkpoint** for retraining by `--resume_from_ckpt_path` argument. For example, if you want to resume training from the checkpoint `Amphion/ckpts/tts/[YourExptName]/checkpoint/[SpecificCheckpoint]`, | |
Train an AR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 1 --name [YourExptName] \ | |
--resume true \ | |
--resume_from_ckpt_path "Amphion/ckpts/tts/[YourExptName]/checkpoint/[SpecificARCheckpoint]" | |
``` | |
Train a NAR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 2 --ar_model_ckpt_dir [ARModelPath] --name [YourExptName] \ | |
--resume true \ | |
--resume_from_ckpt_path "Amphion/ckpts/tts/[YourExptName]/checkpoint/[SpecificNARCheckpoint]" | |
``` | |
If you want to **fine-tune from another checkpoint**, just use `--resume_type` and set it to `"finetune"`. For example, If you want to fine-tune the model from the checkpoint `Amphion/ckpts/tts/[AnotherExperiment]/checkpoint/[SpecificCheckpoint]`, | |
Train an AR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 1 --name [YourExptName] \ | |
--resume true \ | |
--resume_from_ckpt_path "Amphion/ckpts/tts/[YourExptName]/checkpoint/[SpecificARCheckpoint]" \ | |
--resume_type "finetune" | |
``` | |
Train a NAR model, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 2 --model_train_stage 2 --ar_model_ckpt_dir [ARModelPath] --name [YourExptName] \ | |
--resume true \ | |
--resume_from_ckpt_path "Amphion/ckpts/tts/[YourExptName]/checkpoint/[SpecificNARCheckpoint]" \ | |
--resume_type "finetune" | |
``` | |
> **NOTE:** The `--resume_type` is set as `"resume"` in default. It's not necessary to specify it when resuming training. | |
> | |
> The difference between `"resume"` and `"finetune"` is that the `"finetune"` will **only** load the pretrained model weights from the checkpoint, while the `"resume"` will load all the training states (including optimizer, scheduler, etc.) from the checkpoint. | |
> **NOTE:** The `CUDA_VISIBLE_DEVICES` is set as `"0"` in default. You can change it when running `run.sh` by specifying such as `--gpu "0,1,2,3"`. | |
## 4. Inference | |
### Configuration | |
For inference, you need to specify the following configurations when running `run.sh`: | |
| Parameters | Description | Example | | |
| --------------------- | -------------------------------------------------------------------------------------- | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | | |
| `--infer_expt_dir` | The experimental directory of NAR model which contains `checkpoint` | `Amphion/ckpts/tts/[YourExptName]` | | |
| `--infer_output_dir` | The output directory to save inferred audios. | `Amphion/ckpts/tts/[YourExptName]/result` | | |
| `--infer_mode` | The inference mode, e.g., "`single`", "`batch`". | "`single`" to generate a clip of speech, "`batch`" to generate a batch of speech at a time. | | |
| `--infer_text` | The text to be synthesized. | "`This is a clip of generated speech with the given text from a TTS model.`" | | |
| `--infer_text_prompt` | The text prompt for inference. | The text prompt should be aligned with the audio prompt. | | |
| `--infer_audio_prompt` | The audio prompt for inference. | The audio prompt should be aligned with text prompt.| | |
| `--test_list_file` | The test list file used for batch inference. | The format of test list file is `text\|text_prompt\|audio_prompt`.| | |
### Run | |
For example, if you want to generate a single clip of speech, just run: | |
```bash | |
sh egs/tts/VALLE/run.sh --stage 3 --gpu "0" \ | |
--infer_expt_dir Amphion/ckpts/tts/[YourExptName] \ | |
--infer_output_dir Amphion/ckpts/tts/[YourExptName]/result \ | |
--infer_mode "single" \ | |
--infer_text "This is a clip of generated speech with the given text from a TTS model." \ | |
--infer_text_prompt "But even the unsuccessful dramatist has his moments." \ | |
--infer_audio_prompt egs/tts/VALLE/prompt_examples/7176_92135_000004_000000.wav | |
``` | |
We have released pre-trained VALL-E models, so you can download the pre-trained model and then generate speech following the above inference instruction. Specifically, | |
1. The pre-trained VALL-E trained on [LibriTTS](https://github.com/open-mmlab/Amphion/tree/main/egs/datasets#libritts) can be downloaded [here](https://huggingface.co./amphion/valle-libritts). | |
2. The pre-trained VALL-E trained on the part of [Libri-light](https://ai.meta.com/tools/libri-light/) (about 6k hours) can be downloaded [here](https://huggingface.co./amphion/valle_librilight_6k). | |
```bibtex | |
@article{wang2023neural, | |
title={Neural codec language models are zero-shot text to speech synthesizers}, | |
author={Wang, Chengyi and Chen, Sanyuan and Wu, Yu and Zhang, Ziqiang and Zhou, Long and Liu, Shujie and Chen, Zhuo and Liu, Yanqing and Wang, Huaming and Li, Jinyu and others}, | |
journal={arXiv preprint arXiv:2301.02111}, | |
year={2023} | |
} | |
``` |