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from dataclasses import dataclass, field |
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from .shared_configs import BaseGANVocoderConfig |
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@dataclass |
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class ParallelWaveganConfig(BaseGANVocoderConfig): |
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"""Defines parameters for ParallelWavegan vocoder. |
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Args: |
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model (str): |
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Model name used for selecting the right configuration at initialization. Defaults to `gan`. |
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discriminator_model (str): One of the discriminators from `TTS.vocoder.models.*_discriminator`. Defaults to |
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'parallel_wavegan_discriminator`. |
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discriminator_model_params (dict): The discriminator model kwargs. Defaults to |
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'{"num_layers": 10}` |
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generator_model (str): One of the generators from TTS.vocoder.models.*`. Every other non-GAN vocoder model is |
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considered as a generator too. Defaults to `parallel_wavegan_generator`. |
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generator_model_param (dict): |
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The generator model kwargs. Defaults to `{"upsample_factors": [4, 4, 4, 4], "stacks": 3, "num_res_blocks": 30}`. |
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batch_size (int): |
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Batch size used at training. Larger values use more memory. Defaults to 16. |
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seq_len (int): |
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Audio segment length used at training. Larger values use more memory. Defaults to 8192. |
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pad_short (int): |
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Additional padding applied to the audio samples shorter than `seq_len`. Defaults to 0. |
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use_noise_augment (bool): |
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enable / disable random noise added to the input waveform. The noise is added after computing the |
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features. Defaults to True. |
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use_cache (bool): |
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enable / disable in memory caching of the computed features. It can cause OOM error if the system RAM is |
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not large enough. Defaults to True. |
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steps_to_start_discriminator (int): |
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Number of steps required to start training the discriminator. Defaults to 0. |
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use_stft_loss (bool):` |
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enable / disable use of STFT loss originally used by ParallelWaveGAN model. Defaults to True. |
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use_subband_stft (bool): |
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enable / disable use of subband loss computation originally used by MultiBandMelgan model. Defaults to True. |
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use_mse_gan_loss (bool): |
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enable / disable using Mean Squeare Error GAN loss. Defaults to True. |
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use_hinge_gan_loss (bool): |
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enable / disable using Hinge GAN loss. You should choose either Hinge or MSE loss for training GAN models. |
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Defaults to False. |
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use_feat_match_loss (bool): |
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enable / disable using Feature Matching loss originally used by MelGAN model. Defaults to True. |
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use_l1_spec_loss (bool): |
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enable / disable using L1 spectrogram loss originally used by HifiGAN model. Defaults to False. |
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stft_loss_params (dict): STFT loss parameters. Default to |
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`{"n_ffts": [1024, 2048, 512], "hop_lengths": [120, 240, 50], "win_lengths": [600, 1200, 240]}` |
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stft_loss_weight (float): STFT loss weight that multiplies the computed loss before summing up the total |
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model loss. Defaults to 0.5. |
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subband_stft_loss_weight (float): |
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Subband STFT loss weight that multiplies the computed loss before summing up the total loss. Defaults to 0. |
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mse_G_loss_weight (float): |
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MSE generator loss weight that multiplies the computed loss before summing up the total loss. faults to 2.5. |
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hinge_G_loss_weight (float): |
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Hinge generator loss weight that multiplies the computed loss before summing up the total loss. Defaults to 0. |
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feat_match_loss_weight (float): |
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Feature matching loss weight that multiplies the computed loss before summing up the total loss. faults to 0. |
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l1_spec_loss_weight (float): |
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L1 spectrogram loss weight that multiplies the computed loss before summing up the total loss. Defaults to 0. |
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lr_gen (float): |
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Generator model initial learning rate. Defaults to 0.0002. |
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lr_disc (float): |
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Discriminator model initial learning rate. Defaults to 0.0002. |
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optimizer (torch.optim.Optimizer): |
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Optimizer used for the training. Defaults to `AdamW`. |
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optimizer_params (dict): |
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Optimizer kwargs. Defaults to `{"betas": [0.8, 0.99], "weight_decay": 0.0}` |
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lr_scheduler_gen (torch.optim.Scheduler): |
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Learning rate scheduler for the generator. Defaults to `ExponentialLR`. |
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lr_scheduler_gen_params (dict): |
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Parameters for the generator learning rate scheduler. Defaults to `{"gamma": 0.5, "step_size": 200000, "last_epoch": -1}`. |
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lr_scheduler_disc (torch.optim.Scheduler): |
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Learning rate scheduler for the discriminator. Defaults to `ExponentialLR`. |
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lr_scheduler_dict_params (dict): |
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Parameters for the discriminator learning rate scheduler. Defaults to `{"gamma": 0.5, "step_size": 200000, "last_epoch": -1}`. |
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""" |
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model: str = "parallel_wavegan" |
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discriminator_model: str = "parallel_wavegan_discriminator" |
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discriminator_model_params: dict = field(default_factory=lambda: {"num_layers": 10}) |
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generator_model: str = "parallel_wavegan_generator" |
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generator_model_params: dict = field( |
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default_factory=lambda: {"upsample_factors": [4, 4, 4, 4], "stacks": 3, "num_res_blocks": 30} |
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) |
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batch_size: int = 6 |
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seq_len: int = 25600 |
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pad_short: int = 2000 |
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use_noise_augment: bool = False |
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use_cache: bool = True |
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steps_to_start_discriminator: int = 200000 |
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use_stft_loss: bool = True |
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use_subband_stft_loss: bool = False |
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use_mse_gan_loss: bool = True |
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use_hinge_gan_loss: bool = False |
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use_feat_match_loss: bool = False |
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use_l1_spec_loss: bool = False |
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stft_loss_params: dict = field( |
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default_factory=lambda: { |
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"n_ffts": [1024, 2048, 512], |
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"hop_lengths": [120, 240, 50], |
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"win_lengths": [600, 1200, 240], |
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} |
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) |
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stft_loss_weight: float = 0.5 |
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subband_stft_loss_weight: float = 0 |
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mse_G_loss_weight: float = 2.5 |
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hinge_G_loss_weight: float = 0 |
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feat_match_loss_weight: float = 0 |
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l1_spec_loss_weight: float = 0 |
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lr_gen: float = 0.0002 |
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lr_disc: float = 0.0002 |
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optimizer: str = "AdamW" |
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optimizer_params: dict = field(default_factory=lambda: {"betas": [0.8, 0.99], "weight_decay": 0.0}) |
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lr_scheduler_gen: str = "StepLR" |
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lr_scheduler_gen_params: dict = field(default_factory=lambda: {"gamma": 0.5, "step_size": 200000, "last_epoch": -1}) |
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lr_scheduler_disc: str = "StepLR" |
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lr_scheduler_disc_params: dict = field( |
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default_factory=lambda: {"gamma": 0.5, "step_size": 200000, "last_epoch": -1} |
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) |
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scheduler_after_epoch: bool = False |
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