|
from dataclasses import dataclass, field |
|
|
|
from TTS.vocoder.configs.shared_configs import BaseVocoderConfig |
|
from TTS.vocoder.models.wavernn import WavernnArgs |
|
|
|
|
|
@dataclass |
|
class WavernnConfig(BaseVocoderConfig): |
|
"""Defines parameters for Wavernn vocoder. |
|
Example: |
|
|
|
>>> from TTS.vocoder.configs import WavernnConfig |
|
>>> config = WavernnConfig() |
|
|
|
Args: |
|
model (str): |
|
Model name used for selecting the right model at initialization. Defaults to `wavernn`. |
|
mode (str): |
|
Output mode of the WaveRNN vocoder. `mold` for Mixture of Logistic Distribution, `gauss` for a single |
|
Gaussian Distribution and `bits` for quantized bits as the model's output. |
|
mulaw (bool): |
|
enable / disable the use of Mulaw quantization for training. Only applicable if `mode == 'bits'`. Defaults |
|
to `True`. |
|
generator_model (str): |
|
One of the generators from TTS.vocoder.models.*`. Every other non-GAN vocoder model is |
|
considered as a generator too. Defaults to `WaveRNN`. |
|
wavernn_model_params (dict): |
|
kwargs for the WaveRNN model. Defaults to |
|
`{ |
|
"rnn_dims": 512, |
|
"fc_dims": 512, |
|
"compute_dims": 128, |
|
"res_out_dims": 128, |
|
"num_res_blocks": 10, |
|
"use_aux_net": True, |
|
"use_upsample_net": True, |
|
"upsample_factors": [4, 8, 8] |
|
}` |
|
batched (bool): |
|
enable / disable the batched inference. It speeds up the inference by splitting the input into segments and |
|
processing the segments in a batch. Then it merges the outputs with a certain overlap and smoothing. If |
|
you set it False, without CUDA, it is too slow to be practical. Defaults to True. |
|
target_samples (int): |
|
Size of the segments in batched mode. Defaults to 11000. |
|
overlap_sampels (int): |
|
Size of the overlap between consecutive segments. Defaults to 550. |
|
batch_size (int): |
|
Batch size used at training. Larger values use more memory. Defaults to 256. |
|
seq_len (int): |
|
Audio segment length used at training. Larger values use more memory. Defaults to 1280. |
|
|
|
use_noise_augment (bool): |
|
enable / disable random noise added to the input waveform. The noise is added after computing the |
|
features. Defaults to True. |
|
use_cache (bool): |
|
enable / disable in memory caching of the computed features. It can cause OOM error if the system RAM is |
|
not large enough. Defaults to True. |
|
mixed_precision (bool): |
|
enable / disable mixed precision training. Default is True. |
|
eval_split_size (int): |
|
Number of samples used for evalutaion. Defaults to 50. |
|
num_epochs_before_test (int): |
|
Number of epochs waited to run the next evalution. Since inference takes some time, it is better to |
|
wait some number of epochs not ot waste training time. Defaults to 10. |
|
grad_clip (float): |
|
Gradient clipping threshold. If <= 0.0, no clipping is applied. Defaults to 4.0 |
|
lr (float): |
|
Initila leraning rate. Defaults to 1e-4. |
|
lr_scheduler (str): |
|
One of the learning rate schedulers from `torch.optim.scheduler.*`. Defaults to `MultiStepLR`. |
|
lr_scheduler_params (dict): |
|
kwargs for the scheduler. Defaults to `{"gamma": 0.5, "milestones": [200000, 400000, 600000]}` |
|
""" |
|
|
|
model: str = "wavernn" |
|
|
|
|
|
model_args: WavernnArgs = field(default_factory=WavernnArgs) |
|
target_loss: str = "loss" |
|
|
|
|
|
batched: bool = True |
|
target_samples: int = 11000 |
|
overlap_samples: int = 550 |
|
|
|
|
|
epochs: int = 10000 |
|
batch_size: int = 256 |
|
seq_len: int = 1280 |
|
use_noise_augment: bool = False |
|
use_cache: bool = True |
|
mixed_precision: bool = True |
|
eval_split_size: int = 50 |
|
num_epochs_before_test: int = ( |
|
10 |
|
) |
|
|
|
|
|
grad_clip: float = 4.0 |
|
lr: float = 1e-4 |
|
lr_scheduler: str = "MultiStepLR" |
|
lr_scheduler_params: dict = field(default_factory=lambda: {"gamma": 0.5, "milestones": [200000, 400000, 600000]}) |
|
|