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Implementing a Model
Implement layers.
You can either implement the layers under
TTS/tts/layers/new_model.py
or in the model fileTTS/tts/model/new_model.py
. You can also reuse layers already implemented.Test layers.
We keep tests under
tests
folder. You can addtts
layers tests undertts_tests
folder. Basic tests are checking input-output tensor shapes and output values for a given input. Consider testing extreme cases that are more likely to cause problems likezero
tensors.Implement a loss function.
We keep loss functions under
TTS/tts/layers/losses.py
. You can also mix-and-match implemented loss functions as you like.A loss function returns a dictionary in a format
{βlossβ: loss, βloss1β:loss1 ...}
and the dictionary must at least define theloss
key which is the actual value used by the optimizer. All the items in the dictionary are automatically logged on the terminal and the Tensorboard.Test the loss function.
As we do for the layers, you need to test the loss functions too. You need to check input/output tensor shapes, expected output values for a given input tensor. For instance, certain loss functions have upper and lower limits and it is a wise practice to test with the inputs that should produce these limits.
Implement
MyModel
.In πΈTTS, a model class is a self-sufficient implementation of a model directing all the interactions with the other components. It is enough to implement the API provided by the
BaseModel
class to comply.A model interacts with the
Trainer API
for training,Synthesizer API
for inference and testing.A πΈTTS model must return a dictionary by the
forward()
andinference()
functions. This dictionary mustmodel_outputs
key that is considered as the main model output by theTrainer
andSynthesizer
.You can place your
tts
model implementation underTTS/tts/models/new_model.py
then inherit and implement theBaseTTS
.There is also the
callback
interface by which you can manipulate both the model and theTrainer
states. Callbacks give you an infinite flexibility to add custom behaviours for your model and training routines.For more details, see {ref}
BaseTTS <Base tts Model>
and :obj:TTS.utils.callbacks
.Optionally, define
MyModelArgs
.MyModelArgs
is a π¨ββοΈCoqpit class that sets all the class arguments of theMyModel
.MyModelArgs
must have all the fields neccessary to instantiate theMyModel
. However, for training, you need to passMyModelConfig
to the model.Test
MyModel
.As the layers and the loss functions, it is recommended to test your model. One smart way for testing is that you create two models with the exact same weights. Then we run a training loop with one of these models and compare the weights with the other model. All the weights need to be different in a passing test. Otherwise, it is likely that a part of the model is malfunctioning or not even attached to the model's computational graph.
Define
MyModelConfig
.Place
MyModelConfig
file underTTS/models/configs
. It is enough to inherit theBaseTTSConfig
to make your config compatible with theTrainer
. You should also includeMyModelArgs
as a field if defined. The rest of the fields should define the model specific values and parameters.Write Docstrings.
We love you more when you document your code. β€οΈ
Template πΈTTS Model implementation
You can start implementing your model by copying the following base class.
from TTS.tts.models.base_tts import BaseTTS
class MyModel(BaseTTS):
"""
Notes on input/output tensor shapes:
Any input or output tensor of the model must be shaped as
- 3D tensors `batch x time x channels`
- 2D tensors `batch x channels`
- 1D tensors `batch x 1`
"""
def __init__(self, config: Coqpit):
super().__init__()
self._set_model_args(config)
def _set_model_args(self, config: Coqpit):
"""Set model arguments from the config. Override this."""
pass
def forward(self, input: torch.Tensor, *args, aux_input={}, **kwargs) -> Dict:
"""Forward pass for the model mainly used in training.
You can be flexible here and use different number of arguments and argument names since it is intended to be
used by `train_step()` without exposing it out of the model.
Args:
input (torch.Tensor): Input tensor.
aux_input (Dict): Auxiliary model inputs like embeddings, durations or any other sorts of inputs.
Returns:
Dict: Model outputs. Main model output must be named as "model_outputs".
"""
outputs_dict = {"model_outputs": None}
...
return outputs_dict
def inference(self, input: torch.Tensor, aux_input={}) -> Dict:
"""Forward pass for inference.
We don't use `*kwargs` since it is problematic with the TorchScript API.
Args:
input (torch.Tensor): [description]
aux_input (Dict): Auxiliary inputs like speaker embeddings, durations etc.
Returns:
Dict: [description]
"""
outputs_dict = {"model_outputs": None}
...
return outputs_dict
def train_step(self, batch: Dict, criterion: nn.Module) -> Tuple[Dict, Dict]:
"""Perform a single training step. Run the model forward pass and compute losses.
Args:
batch (Dict): Input tensors.
criterion (nn.Module): Loss layer designed for the model.
Returns:
Tuple[Dict, Dict]: Model ouputs and computed losses.
"""
outputs_dict = {}
loss_dict = {} # this returns from the criterion
...
return outputs_dict, loss_dict
def train_log(self, batch: Dict, outputs: Dict, logger: "Logger", assets:Dict, steps:int) -> None:
"""Create visualizations and waveform examples for training.
For example, here you can plot spectrograms and generate sample sample waveforms from these spectrograms to
be projected onto Tensorboard.
Args:
ap (AudioProcessor): audio processor used at training.
batch (Dict): Model inputs used at the previous training step.
outputs (Dict): Model outputs generated at the previoud training step.
Returns:
Tuple[Dict, np.ndarray]: training plots and output waveform.
"""
pass
def eval_step(self, batch: Dict, criterion: nn.Module) -> Tuple[Dict, Dict]:
"""Perform a single evaluation step. Run the model forward pass and compute losses. In most cases, you can
call `train_step()` with no changes.
Args:
batch (Dict): Input tensors.
criterion (nn.Module): Loss layer designed for the model.
Returns:
Tuple[Dict, Dict]: Model ouputs and computed losses.
"""
outputs_dict = {}
loss_dict = {} # this returns from the criterion
...
return outputs_dict, loss_dict
def eval_log(self, batch: Dict, outputs: Dict, logger: "Logger", assets:Dict, steps:int) -> None:
"""The same as `train_log()`"""
pass
def load_checkpoint(self, config: Coqpit, checkpoint_path: str, eval: bool = False) -> None:
"""Load a checkpoint and get ready for training or inference.
Args:
config (Coqpit): Model configuration.
checkpoint_path (str): Path to the model checkpoint file.
eval (bool, optional): If true, init model for inference else for training. Defaults to False.
"""
...
def get_optimizer(self) -> Union["Optimizer", List["Optimizer"]]:
"""Setup an return optimizer or optimizers."""
pass
def get_lr(self) -> Union[float, List[float]]:
"""Return learning rate(s).
Returns:
Union[float, List[float]]: Model's initial learning rates.
"""
pass
def get_scheduler(self, optimizer: torch.optim.Optimizer):
pass
def get_criterion(self):
pass
def format_batch(self):
pass