mirror of https://github.com/coqui-ai/TTS.git
177 lines
5.7 KiB
Python
177 lines
5.7 KiB
Python
from abc import ABC, abstractmethod
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from typing import Dict, List, Tuple
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import torch
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from coqpit import Coqpit
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from torch import nn
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class BaseTrainerModel(ABC, nn.Module):
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"""Abstract 🐸TTS class. Every new 🐸TTS model must inherit this.
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"""
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@staticmethod
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@abstractmethod
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def init_from_config(config: Coqpit):
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"""Init the model from given config.
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Override this depending on your model.
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"""
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...
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@abstractmethod
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def forward(self, input: torch.Tensor, *args, aux_input={}, **kwargs) -> Dict:
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"""Forward ... for the model mainly used in training.
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You can be flexible here and use different number of arguments and argument names since it is intended to be
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used by `train_step()` without exposing it out of the model.
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Args:
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input (torch.Tensor): Input tensor.
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aux_input (Dict): Auxiliary model inputs like embeddings, durations or any other sorts of inputs.
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Returns:
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Dict: Model outputs. Main model output must be named as "model_outputs".
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"""
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outputs_dict = {"model_outputs": None}
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...
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return outputs_dict
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@abstractmethod
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def inference(self, input: torch.Tensor, aux_input={}) -> Dict:
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"""Forward ... for inference.
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We don't use `*kwargs` since it is problematic with the TorchScript API.
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Args:
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input (torch.Tensor): [description]
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aux_input (Dict): Auxiliary inputs like speaker embeddings, durations etc.
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Returns:
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Dict: [description]
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"""
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outputs_dict = {"model_outputs": None}
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...
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return outputs_dict
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def format_batch(self, batch: Dict) -> Dict:
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"""Format batch returned by the data loader before sending it to the model.
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If not implemented, model uses the batch as is.
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Can be used for data augmentation, feature ectraction, etc.
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"""
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return batch
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def format_batch_on_device(self, batch:Dict) -> Dict:
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"""Format batch on device before sending it to the model.
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If not implemented, model uses the batch as is.
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Can be used for data augmentation, feature ectraction, etc.
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"""
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return batch
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@abstractmethod
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def train_step(self, batch: Dict, criterion: nn.Module) -> Tuple[Dict, Dict]:
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"""Perform a single training step. Run the model forward ... and compute losses.
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Args:
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batch (Dict): Input tensors.
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criterion (nn.Module): Loss layer designed for the model.
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Returns:
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Tuple[Dict, Dict]: Model ouputs and computed losses.
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"""
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outputs_dict = {}
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loss_dict = {} # this returns from the criterion
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...
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return outputs_dict, loss_dict
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def train_log(self, batch: Dict, outputs: Dict, logger: "Logger", assets: Dict, steps: int) -> None:
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"""Create visualizations and waveform examples for training.
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For example, here you can plot spectrograms and generate sample sample waveforms from these spectrograms to
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be projected onto Tensorboard.
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Args:
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ap (AudioProcessor): audio processor used at training.
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batch (Dict): Model inputs used at the previous training step.
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outputs (Dict): Model outputs generated at the previoud training step.
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Returns:
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Tuple[Dict, np.ndarray]: training plots and output waveform.
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"""
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...
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@abstractmethod
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def eval_step(self, batch: Dict, criterion: nn.Module) -> Tuple[Dict, Dict]:
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"""Perform a single evaluation step. Run the model forward ... and compute losses. In most cases, you can
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call `train_step()` with no changes.
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Args:
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batch (Dict): Input tensors.
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criterion (nn.Module): Loss layer designed for the model.
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Returns:
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Tuple[Dict, Dict]: Model ouputs and computed losses.
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"""
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outputs_dict = {}
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loss_dict = {} # this returns from the criterion
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...
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return outputs_dict, loss_dict
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def eval_log(self, batch: Dict, outputs: Dict, logger: "Logger", assets: Dict, steps: int) -> None:
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"""The same as `train_log()`"""
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...
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@abstractmethod
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def load_checkpoint(self, config: Coqpit, checkpoint_path: str, eval: bool = False, strict: bool = True) -> None:
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"""Load a checkpoint and get ready for training or inference.
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Args:
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config (Coqpit): Model configuration.
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checkpoint_path (str): Path to the model checkpoint file.
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eval (bool, optional): If true, init model for inference else for training. Defaults to False.
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strcit (bool, optional): Match all checkpoint keys to model's keys. Defaults to True.
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"""
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...
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@staticmethod
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@abstractmethod
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def init_from_config(config: Coqpit, samples: List[Dict] = None, verbose=False) -> "BaseTrainerModel":
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"""Init the model from given config.
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Override this depending on your model.
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"""
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...
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@abstractmethod
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def get_data_loader(
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self,
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config: Coqpit,
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assets: Dict,
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is_eval: True,
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data_items: List,
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verbose: bool,
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num_gpus: int):
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...
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# def get_optimizer(self) -> Union["Optimizer", List["Optimizer"]]:
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# """Setup an return optimizer or optimizers."""
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# ...
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# def get_lr(self) -> Union[float, List[float]]:
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# """Return learning rate(s).
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# Returns:
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# Union[float, List[float]]: Model's initial learning rates.
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# """
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# ...
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# def get_scheduler(self, optimizer: torch.optim.Optimizer):
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# ...
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# def get_criterion(self):
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# ...
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