paddlespeech.t2s.models.vits.flow module
Basic Flow modules used in VITS.
This code is based on https://github.com/jaywalnut310/vits.
- class paddlespeech.t2s.models.vits.flow.ConvFlow(in_channels: int, hidden_channels: int, kernel_size: int, layers: int, bins: int = 10, tail_bound: float = 5.0)[source]
Bases:
LayerConvolutional flow module.
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x, x_mask[, g, inverse])Calculate forward propagation. Args: x (Tensor): Input tensor (B, channels, T). x_mask (Tensor): Mask tensor (B, 1, T). g (Optional[Tensor]): Global conditioning tensor (B, channels, 1). inverse (bool): Whether to inverse the flow. Returns: Tensor: Output tensor (B, channels, T). Tensor: Log-determinant tensor for NLL (B,) if not inverse.
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook
- forward(x: Tensor, x_mask: Tensor, g: Optional[Tensor] = None, inverse: bool = False) Union[Tensor, Tuple[Tensor, Tensor]][source]
Calculate forward propagation. Args:
- x (Tensor):
Input tensor (B, channels, T).
- x_mask (Tensor):
Mask tensor (B, 1, T).
- g (Optional[Tensor]):
Global conditioning tensor (B, channels, 1).
- inverse (bool):
Whether to inverse the flow.
- Returns:
- Tensor:
Output tensor (B, channels, T).
- Tensor:
Log-determinant tensor for NLL (B,) if not inverse.
- class paddlespeech.t2s.models.vits.flow.DilatedDepthSeparableConv(channels: int, kernel_size: int, layers: int, dropout_rate: float = 0.0, eps: float = 1e-05)[source]
Bases:
LayerDilated depth-separable conv module.
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x, x_mask[, g])Calculate forward propagation. Args: x (Tensor): Input tensor (B, in_channels, T). x_mask (Tensor): Mask tensor (B, 1, T). g (Optional[Tensor]): Global conditioning tensor (B, global_channels, 1). Returns: Tensor: Output tensor (B, channels, T).
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook
- forward(x: Tensor, x_mask: Tensor, g: Optional[Tensor] = None) Tensor[source]
Calculate forward propagation. Args:
- x (Tensor):
Input tensor (B, in_channels, T).
- x_mask (Tensor):
Mask tensor (B, 1, T).
- g (Optional[Tensor]):
Global conditioning tensor (B, global_channels, 1).
- Returns:
- Tensor:
Output tensor (B, channels, T).
- class paddlespeech.t2s.models.vits.flow.ElementwiseAffineFlow(channels: int)[source]
Bases:
LayerElementwise affine flow module.
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x, x_mask[, inverse])Calculate forward propagation. Args: x (Tensor): Input tensor (B, channels, T). x_mask (Tensor): Mask tensor (B, 1, T). inverse (bool): Whether to inverse the flow. Returns: Tensor: Output tensor (B, channels, T). Tensor: Log-determinant tensor for NLL (B,) if not inverse.
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook
- forward(x: Tensor, x_mask: Tensor, inverse: bool = False, **kwargs) Union[Tensor, Tuple[Tensor, Tensor]][source]
Calculate forward propagation. Args:
- x (Tensor):
Input tensor (B, channels, T).
- x_mask (Tensor):
Mask tensor (B, 1, T).
- inverse (bool):
Whether to inverse the flow.
- Returns:
- Tensor:
Output tensor (B, channels, T).
- Tensor:
Log-determinant tensor for NLL (B,) if not inverse.
- class paddlespeech.t2s.models.vits.flow.FlipFlow(name_scope=None, dtype='float32')[source]
Bases:
LayerFlip flow module.
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x, *args[, inverse])Calculate forward propagation. Args: x (Tensor): Input tensor (B, channels, T). inverse (bool): Whether to inverse the flow. Returns: Tensor: Flipped tensor (B, channels, T). Tensor: Log-determinant tensor for NLL (B,) if not inverse.
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook
- forward(x: Tensor, *args, inverse: bool = False, **kwargs) Union[Tensor, Tuple[Tensor, Tensor]][source]
Calculate forward propagation. Args:
- x (Tensor):
Input tensor (B, channels, T).
- inverse (bool):
Whether to inverse the flow.
- Returns:
- Tensor:
Flipped tensor (B, channels, T).
- Tensor:
Log-determinant tensor for NLL (B,) if not inverse.
- class paddlespeech.t2s.models.vits.flow.LogFlow(name_scope=None, dtype='float32')[source]
Bases:
LayerLog flow module.
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x, x_mask[, inverse, eps])Calculate forward propagation. Args: x (Tensor): Input tensor (B, channels, T). x_mask (Tensor): Mask tensor (B, 1, T). inverse (bool): Whether to inverse the flow. eps (float): Epsilon for log. Returns: Tensor: Output tensor (B, channels, T). Tensor: Log-determinant tensor for NLL (B,) if not inverse.
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook
- forward(x: Tensor, x_mask: Tensor, inverse: bool = False, eps: float = 1e-05, **kwargs) Union[Tensor, Tuple[Tensor, Tensor]][source]
Calculate forward propagation. Args:
- x (Tensor):
Input tensor (B, channels, T).
- x_mask (Tensor):
Mask tensor (B, 1, T).
- inverse (bool):
Whether to inverse the flow.
- eps (float):
Epsilon for log.
- Returns:
- Tensor:
Output tensor (B, channels, T).
- Tensor:
Log-determinant tensor for NLL (B,) if not inverse.
- class paddlespeech.t2s.models.vits.flow.Transpose(dim1: int, dim2: int)[source]
Bases:
LayerTranspose module for paddle.nn.Sequential().
Methods
__call__(*inputs, **kwargs)Call self as a function.
add_parameter(name, parameter)Adds a Parameter instance.
add_sublayer(name, sublayer)Adds a sub Layer instance.
apply(fn)Applies
fnrecursively to every sublayer (as returned by.sublayers()) as well as self.buffers([include_sublayers])Returns a list of all buffers from current layer and its sub-layers.
children()Returns an iterator over immediate children layers.
clear_gradients()Clear the gradients of all parameters for this layer.
create_parameter(shape[, attr, dtype, ...])Create parameters for this layer.
create_tensor([name, persistable, dtype])Create Tensor for this layer.
create_variable([name, persistable, dtype])Create Tensor for this layer.
eval()Sets this Layer and all its sublayers to evaluation mode.
extra_repr()Extra representation of this layer, you can have custom implementation of your own layer.
forward(x)Transpose.
full_name()Full name for this layer, composed by name_scope + "/" + MyLayer.__class__.__name__
load_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
named_buffers([prefix, include_sublayers])Returns an iterator over all buffers in the Layer, yielding tuple of name and Tensor.
named_children()Returns an iterator over immediate children layers, yielding both the name of the layer as well as the layer itself.
named_parameters([prefix, include_sublayers])Returns an iterator over all parameters in the Layer, yielding tuple of name and parameter.
named_sublayers([prefix, include_self, ...])Returns an iterator over all sublayers in the Layer, yielding tuple of name and sublayer.
parameters([include_sublayers])Returns a list of all Parameters from current layer and its sub-layers.
register_buffer(name, tensor[, persistable])Registers a tensor as buffer into the layer.
register_forward_post_hook(hook)Register a forward post-hook for Layer.
register_forward_pre_hook(hook)Register a forward pre-hook for Layer.
set_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
set_state_dict(state_dict[, use_structured_name])Set parameters and persistable buffers from state_dict.
state_dict([destination, include_sublayers, ...])Get all parameters and persistable buffers of current layer and its sub-layers.
sublayers([include_self])Returns a list of sub layers.
to([device, dtype, blocking])Cast the parameters and buffers of Layer by the give device, dtype and blocking.
to_static_state_dict([destination, ...])Get all parameters and buffers of current layer and its sub-layers.
train()Sets this Layer and all its sublayers to training mode.
backward
register_state_dict_hook