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Running
on
Zero
Running
on
Zero
# Training | |
Check your FFmpeg installation: | |
```bash | |
ffmpeg -version | |
``` | |
If not found, install it first (or skip assuming you know of other backends available). | |
## Prepare Dataset | |
Example data processing scripts, and you may tailor your own one along with a Dataset class in `src/f5_tts/model/dataset.py`. | |
### 1. Some specific Datasets preparing scripts | |
Download corresponding dataset first, and fill in the path in scripts. | |
```bash | |
# Prepare the Emilia dataset | |
python src/f5_tts/train/datasets/prepare_emilia.py | |
# Prepare the Wenetspeech4TTS dataset | |
python src/f5_tts/train/datasets/prepare_wenetspeech4tts.py | |
# Prepare the LibriTTS dataset | |
python src/f5_tts/train/datasets/prepare_libritts.py | |
# Prepare the LJSpeech dataset | |
python src/f5_tts/train/datasets/prepare_ljspeech.py | |
``` | |
### 2. Create custom dataset with metadata.csv | |
Use guidance see [#57 here](https://github.com/SWivid/F5-TTS/discussions/57#discussioncomment-10959029). | |
```bash | |
python src/f5_tts/train/datasets/prepare_csv_wavs.py | |
``` | |
## Training & Finetuning | |
Once your datasets are prepared, you can start the training process. | |
### 1. Training script used for pretrained model | |
```bash | |
# setup accelerate config, e.g. use multi-gpu ddp, fp16 | |
# will be to: ~/.cache/huggingface/accelerate/default_config.yaml | |
accelerate config | |
# .yaml files are under src/f5_tts/configs directory | |
accelerate launch src/f5_tts/train/train.py --config-name F5TTS_v1_Base.yaml | |
# possible to overwrite accelerate and hydra config | |
accelerate launch --mixed_precision=fp16 src/f5_tts/train/train.py --config-name F5TTS_v1_Base.yaml ++datasets.batch_size_per_gpu=19200 | |
``` | |
### 2. Finetuning practice | |
Discussion board for Finetuning [#57](https://github.com/SWivid/F5-TTS/discussions/57). | |
Gradio UI training/finetuning with `src/f5_tts/train/finetune_gradio.py` see [#143](https://github.com/SWivid/F5-TTS/discussions/143). | |
If want to finetune with a variant version e.g. *F5TTS_v1_Base_no_zero_init*, manually download pretrained checkpoint from model weight repository and fill in the path correspondingly on web interface. | |
If use tensorboard as logger, install it first with `pip install tensorboard`. | |
<ins>The `use_ema = True` might be harmful for early-stage finetuned checkpoints</ins> (which goes just few updates, thus ema weights still dominated by pretrained ones), try turn it off with finetune gradio option or `load_model(..., use_ema=False)`, see if offer better results. | |
### 3. W&B Logging | |
The `wandb/` dir will be created under path you run training/finetuning scripts. | |
By default, the training script does NOT use logging (assuming you didn't manually log in using `wandb login`). | |
To turn on wandb logging, you can either: | |
1. Manually login with `wandb login`: Learn more [here](https://docs.wandb.ai/ref/cli/wandb-login) | |
2. Automatically login programmatically by setting an environment variable: Get an API KEY at https://wandb.ai/authorize and set the environment variable as follows: | |
On Mac & Linux: | |
``` | |
export WANDB_API_KEY=<YOUR WANDB API KEY> | |
``` | |
On Windows: | |
``` | |
set WANDB_API_KEY=<YOUR WANDB API KEY> | |
``` | |
Moreover, if you couldn't access W&B and want to log metrics offline, you can set the environment variable as follows: | |
``` | |
export WANDB_MODE=offline | |
``` | |