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import typing as tp |
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import numpy as np |
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import torch.nn as nn |
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from .conv import StreamableConv1d, StreamableConvTranspose1d |
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from .lstm import StreamableLSTM |
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class SEANetResnetBlock(nn.Module): |
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"""Residual block from SEANet model. |
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Args: |
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dim (int): Dimension of the input/output. |
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kernel_sizes (list): List of kernel sizes for the convolutions. |
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dilations (list): List of dilations for the convolutions. |
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activation (str): Activation function. |
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activation_params (dict): Parameters to provide to the activation function. |
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norm (str): Normalization method. |
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norm_params (dict): Parameters to provide to the underlying normalization used along with the convolution. |
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causal (bool): Whether to use fully causal convolution. |
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pad_mode (str): Padding mode for the convolutions. |
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compress (int): Reduced dimensionality in residual branches (from Demucs v3). |
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true_skip (bool): Whether to use true skip connection or a simple |
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(streamable) convolution as the skip connection. |
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""" |
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def __init__(self, dim: int, kernel_sizes: tp.List[int] = [3, 1], dilations: tp.List[int] = [1, 1], |
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activation: str = 'ELU', activation_params: dict = {'alpha': 1.0}, |
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norm: str = 'none', norm_params: tp.Dict[str, tp.Any] = {}, causal: bool = False, |
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pad_mode: str = 'reflect', compress: int = 2, true_skip: bool = True): |
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super().__init__() |
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assert len(kernel_sizes) == len(dilations), 'Number of kernel sizes should match number of dilations' |
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act = getattr(nn, activation) |
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hidden = dim // compress |
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block = [] |
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for i, (kernel_size, dilation) in enumerate(zip(kernel_sizes, dilations)): |
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in_chs = dim if i == 0 else hidden |
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out_chs = dim if i == len(kernel_sizes) - 1 else hidden |
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block += [ |
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act(**activation_params), |
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StreamableConv1d(in_chs, out_chs, kernel_size=kernel_size, dilation=dilation, |
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norm=norm, norm_kwargs=norm_params, |
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causal=causal, pad_mode=pad_mode), |
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] |
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self.block = nn.Sequential(*block) |
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self.shortcut: nn.Module |
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if true_skip: |
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self.shortcut = nn.Identity() |
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else: |
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self.shortcut = StreamableConv1d(dim, dim, kernel_size=1, norm=norm, norm_kwargs=norm_params, |
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causal=causal, pad_mode=pad_mode) |
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def forward(self, x): |
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return self.shortcut(x) + self.block(x) |
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class SEANetEncoder(nn.Module): |
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"""SEANet encoder. |
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Args: |
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channels (int): Audio channels. |
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dimension (int): Intermediate representation dimension. |
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n_filters (int): Base width for the model. |
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n_residual_layers (int): nb of residual layers. |
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ratios (Sequence[int]): kernel size and stride ratios. The encoder uses downsampling ratios instead of |
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upsampling ratios, hence it will use the ratios in the reverse order to the ones specified here |
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that must match the decoder order. We use the decoder order as some models may only employ the decoder. |
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activation (str): Activation function. |
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activation_params (dict): Parameters to provide to the activation function. |
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norm (str): Normalization method. |
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norm_params (dict): Parameters to provide to the underlying normalization used along with the convolution. |
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kernel_size (int): Kernel size for the initial convolution. |
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last_kernel_size (int): Kernel size for the initial convolution. |
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residual_kernel_size (int): Kernel size for the residual layers. |
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dilation_base (int): How much to increase the dilation with each layer. |
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causal (bool): Whether to use fully causal convolution. |
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pad_mode (str): Padding mode for the convolutions. |
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true_skip (bool): Whether to use true skip connection or a simple |
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(streamable) convolution as the skip connection in the residual network blocks. |
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compress (int): Reduced dimensionality in residual branches (from Demucs v3). |
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lstm (int): Number of LSTM layers at the end of the encoder. |
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disable_norm_outer_blocks (int): Number of blocks for which we don't apply norm. |
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For the encoder, it corresponds to the N first blocks. |
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""" |
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def __init__(self, channels: int = 1, dimension: int = 128, n_filters: int = 32, n_residual_layers: int = 3, |
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ratios: tp.List[int] = [8, 5, 4, 2], activation: str = 'ELU', activation_params: dict = {'alpha': 1.0}, |
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norm: str = 'none', norm_params: tp.Dict[str, tp.Any] = {}, kernel_size: int = 7, |
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last_kernel_size: int = 7, residual_kernel_size: int = 3, dilation_base: int = 2, causal: bool = False, |
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pad_mode: str = 'reflect', true_skip: bool = True, compress: int = 2, lstm: int = 0, |
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disable_norm_outer_blocks: int = 0): |
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super().__init__() |
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self.channels = channels |
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self.dimension = dimension |
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self.n_filters = n_filters |
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self.ratios = list(reversed(ratios)) |
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del ratios |
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self.n_residual_layers = n_residual_layers |
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self.hop_length = np.prod(self.ratios) |
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self.n_blocks = len(self.ratios) + 2 |
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self.disable_norm_outer_blocks = disable_norm_outer_blocks |
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assert self.disable_norm_outer_blocks >= 0 and self.disable_norm_outer_blocks <= self.n_blocks, \ |
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"Number of blocks for which to disable norm is invalid." \ |
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"It should be lower or equal to the actual number of blocks in the network and greater or equal to 0." |
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act = getattr(nn, activation) |
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mult = 1 |
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model: tp.List[nn.Module] = [ |
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StreamableConv1d(channels, mult * n_filters, kernel_size, |
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norm='none' if self.disable_norm_outer_blocks >= 1 else norm, |
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norm_kwargs=norm_params, causal=causal, pad_mode=pad_mode) |
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] |
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for i, ratio in enumerate(self.ratios): |
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block_norm = 'none' if self.disable_norm_outer_blocks >= i + 2 else norm |
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for j in range(n_residual_layers): |
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model += [ |
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SEANetResnetBlock(mult * n_filters, kernel_sizes=[residual_kernel_size, 1], |
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dilations=[dilation_base ** j, 1], |
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norm=block_norm, norm_params=norm_params, |
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activation=activation, activation_params=activation_params, |
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causal=causal, pad_mode=pad_mode, compress=compress, true_skip=true_skip)] |
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model += [ |
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act(**activation_params), |
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StreamableConv1d(mult * n_filters, mult * n_filters * 2, |
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kernel_size=ratio * 2, stride=ratio, |
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norm=block_norm, norm_kwargs=norm_params, |
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causal=causal, pad_mode=pad_mode), |
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] |
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mult *= 2 |
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if lstm: |
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model += [StreamableLSTM(mult * n_filters, num_layers=lstm)] |
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model += [ |
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act(**activation_params), |
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StreamableConv1d(mult * n_filters, dimension, last_kernel_size, |
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norm='none' if self.disable_norm_outer_blocks == self.n_blocks else norm, |
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norm_kwargs=norm_params, causal=causal, pad_mode=pad_mode) |
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] |
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self.model = nn.Sequential(*model) |
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def forward(self, x): |
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return self.model(x) |
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class SEANetDecoder(nn.Module): |
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"""SEANet decoder. |
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Args: |
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channels (int): Audio channels. |
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dimension (int): Intermediate representation dimension. |
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n_filters (int): Base width for the model. |
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n_residual_layers (int): nb of residual layers. |
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ratios (Sequence[int]): kernel size and stride ratios. |
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activation (str): Activation function. |
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activation_params (dict): Parameters to provide to the activation function. |
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final_activation (str): Final activation function after all convolutions. |
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final_activation_params (dict): Parameters to provide to the activation function. |
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norm (str): Normalization method. |
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norm_params (dict): Parameters to provide to the underlying normalization used along with the convolution. |
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kernel_size (int): Kernel size for the initial convolution. |
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last_kernel_size (int): Kernel size for the initial convolution. |
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residual_kernel_size (int): Kernel size for the residual layers. |
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dilation_base (int): How much to increase the dilation with each layer. |
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causal (bool): Whether to use fully causal convolution. |
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pad_mode (str): Padding mode for the convolutions. |
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true_skip (bool): Whether to use true skip connection or a simple. |
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(streamable) convolution as the skip connection in the residual network blocks. |
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compress (int): Reduced dimensionality in residual branches (from Demucs v3). |
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lstm (int): Number of LSTM layers at the end of the encoder. |
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disable_norm_outer_blocks (int): Number of blocks for which we don't apply norm. |
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For the decoder, it corresponds to the N last blocks. |
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trim_right_ratio (float): Ratio for trimming at the right of the transposed convolution under the causal setup. |
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If equal to 1.0, it means that all the trimming is done at the right. |
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""" |
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def __init__(self, channels: int = 1, dimension: int = 128, n_filters: int = 32, n_residual_layers: int = 3, |
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ratios: tp.List[int] = [8, 5, 4, 2], activation: str = 'ELU', activation_params: dict = {'alpha': 1.0}, |
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final_activation: tp.Optional[str] = None, final_activation_params: tp.Optional[dict] = None, |
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norm: str = 'none', norm_params: tp.Dict[str, tp.Any] = {}, kernel_size: int = 7, |
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last_kernel_size: int = 7, residual_kernel_size: int = 3, dilation_base: int = 2, causal: bool = False, |
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pad_mode: str = 'reflect', true_skip: bool = True, compress: int = 2, lstm: int = 0, |
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disable_norm_outer_blocks: int = 0, trim_right_ratio: float = 1.0): |
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super().__init__() |
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self.dimension = dimension |
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self.channels = channels |
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self.n_filters = n_filters |
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self.ratios = ratios |
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del ratios |
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self.n_residual_layers = n_residual_layers |
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self.hop_length = np.prod(self.ratios) |
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self.n_blocks = len(self.ratios) + 2 |
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self.disable_norm_outer_blocks = disable_norm_outer_blocks |
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assert self.disable_norm_outer_blocks >= 0 and self.disable_norm_outer_blocks <= self.n_blocks, \ |
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"Number of blocks for which to disable norm is invalid." \ |
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"It should be lower or equal to the actual number of blocks in the network and greater or equal to 0." |
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act = getattr(nn, activation) |
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mult = int(2 ** len(self.ratios)) |
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model: tp.List[nn.Module] = [ |
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StreamableConv1d(dimension, mult * n_filters, kernel_size, |
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norm='none' if self.disable_norm_outer_blocks == self.n_blocks else norm, |
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norm_kwargs=norm_params, causal=causal, pad_mode=pad_mode) |
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] |
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if lstm: |
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model += [StreamableLSTM(mult * n_filters, num_layers=lstm)] |
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for i, ratio in enumerate(self.ratios): |
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block_norm = 'none' if self.disable_norm_outer_blocks >= self.n_blocks - (i + 1) else norm |
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model += [ |
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act(**activation_params), |
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StreamableConvTranspose1d(mult * n_filters, mult * n_filters // 2, |
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kernel_size=ratio * 2, stride=ratio, |
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norm=block_norm, norm_kwargs=norm_params, |
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causal=causal, trim_right_ratio=trim_right_ratio), |
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] |
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for j in range(n_residual_layers): |
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model += [ |
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SEANetResnetBlock(mult * n_filters // 2, kernel_sizes=[residual_kernel_size, 1], |
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dilations=[dilation_base ** j, 1], |
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activation=activation, activation_params=activation_params, |
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norm=block_norm, norm_params=norm_params, causal=causal, |
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pad_mode=pad_mode, compress=compress, true_skip=true_skip)] |
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mult //= 2 |
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model += [ |
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act(**activation_params), |
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StreamableConv1d(n_filters, channels, last_kernel_size, |
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norm='none' if self.disable_norm_outer_blocks >= 1 else norm, |
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norm_kwargs=norm_params, causal=causal, pad_mode=pad_mode) |
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] |
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if final_activation is not None: |
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final_act = getattr(nn, final_activation) |
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final_activation_params = final_activation_params or {} |
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model += [ |
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final_act(**final_activation_params) |
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] |
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self.model = nn.Sequential(*model) |
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def forward(self, z): |
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y = self.model(z) |
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return y |
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