# Copyright (c) Meta Platforms, Inc. and affiliates. # All rights reserved. # # This source code is licensed under the license found in the # LICENSE file in the root directory of this source tree. """Convolutional layers wrappers and utilities.""" import math import typing as tp import warnings import torch from torch import nn from torch.nn import functional as F from torch.nn.utils import spectral_norm, weight_norm import typing as tp import einops class ConvLayerNorm(nn.LayerNorm): """ Convolution-friendly LayerNorm that moves channels to last dimensions before running the normalization and moves them back to original position right after. """ def __init__(self, normalized_shape: tp.Union[int, tp.List[int], torch.Size], **kwargs): super().__init__(normalized_shape, **kwargs) def forward(self, x): x = einops.rearrange(x, 'b ... t -> b t ...') x = super().forward(x) x = einops.rearrange(x, 'b t ... -> b ... t') return CONV_NORMALIZATIONS = frozenset(['none', 'weight_norm', 'spectral_norm', 'time_layer_norm', 'layer_norm', 'time_group_norm']) def apply_parametrization_norm(module: nn.Module, norm: str = 'none') -> nn.Module: assert norm in CONV_NORMALIZATIONS if norm == 'weight_norm': return weight_norm(module) elif norm == 'spectral_norm': return spectral_norm(module) else: # We already check was in CONV_NORMALIZATION, so any other choice # doesn't need reparametrization. return module def get_norm_module(module: nn.Module, causal: bool = False, norm: str = 'none', **norm_kwargs) -> nn.Module: """Return the proper normalization module. If causal is True, this will ensure the returned module is causal, or return an error if the normalization doesn't support causal evaluation. """ assert norm in CONV_NORMALIZATIONS if norm == 'layer_norm': assert isinstance(module, nn.modules.conv._ConvNd) return ConvLayerNorm(module.out_channels, **norm_kwargs) elif norm == 'time_group_norm': if causal: raise ValueError("GroupNorm doesn't support causal evaluation.") assert isinstance(module, nn.modules.conv._ConvNd) return nn.GroupNorm(1, module.out_channels, **norm_kwargs) else: return nn.Identity() def get_extra_padding_for_conv1d(x: torch.Tensor, kernel_size: int, stride: int, padding_total: int = 0) -> int: """See `pad_for_conv1d`. """ length = x.shape[-1] n_frames = (length - kernel_size + padding_total) / stride + 1 ideal_length = (math.ceil(n_frames) - 1) * stride + (kernel_size - padding_total) return ideal_length - length def pad_for_conv1d(x: torch.Tensor, kernel_size: int, stride: int, padding_total: int = 0): """Pad for a convolution to make sure that the last window is full. Extra padding is added at the end. This is required to ensure that we can rebuild an output of the same length, as otherwise, even with padding, some time steps might get removed. For instance, with total padding = 4, kernel size = 4, stride = 2: 0 0 1 2 3 4 5 0 0 # (0s are padding) 1 2 3 # (output frames of a convolution, last 0 is never used) 0 0 1 2 3 4 5 0 # (output of tr. conv., but pos. 5 is going to get removed as padding) 1 2 3 4 # once you removed padding, we are missing one time step ! """ extra_padding = get_extra_padding_for_conv1d(x, kernel_size, stride, padding_total) return F.pad(x, (0, extra_padding)) def pad1d(x: torch.Tensor, paddings: tp.Tuple[int, int], mode: str = 'zero', value: float = 0.): """Tiny wrapper around F.pad, just to allow for reflect padding on small input. If this is the case, we insert extra 0 padding to the right before the reflection happen. """ length = x.shape[-1] padding_left, padding_right = paddings assert padding_left >= 0 and padding_right >= 0, (padding_left, padding_right) if mode == 'reflect': max_pad = max(padding_left, padding_right) extra_pad = 0 if length <= max_pad: extra_pad = max_pad - length + 1 x = F.pad(x, (0, extra_pad)) padded = F.pad(x, paddings, mode, value) end = padded.shape[-1] - extra_pad return padded[..., :end] else: return F.pad(x, paddings, mode, value) def unpad1d(x: torch.Tensor, paddings: tp.Tuple[int, int]): """Remove padding from x, handling properly zero padding. Only for 1d!""" padding_left, padding_right = paddings assert padding_left >= 0 and padding_right >= 0, (padding_left, padding_right) assert (padding_left + padding_right) <= x.shape[-1] end = x.shape[-1] - padding_right return x[..., padding_left: end] class NormConv1d(nn.Module): """Wrapper around Conv1d and normalization applied to this conv to provide a uniform interface across normalization approaches. """ def __init__(self, *args, causal: bool = False, norm: str = 'none', norm_kwargs: tp.Dict[str, tp.Any] = {}, **kwargs): super().__init__() self.conv = apply_parametrization_norm(nn.Conv1d(*args, **kwargs), norm) self.norm = get_norm_module(self.conv, causal, norm, **norm_kwargs) self.norm_type = norm def forward(self, x): x = self.conv(x) x = self.norm(x) return x class NormConv2d(nn.Module): """Wrapper around Conv2d and normalization applied to this conv to provide a uniform interface across normalization approaches. """ def __init__(self, *args, norm: str = 'none', norm_kwargs: tp.Dict[str, tp.Any] = {}, **kwargs): super().__init__() self.conv = apply_parametrization_norm(nn.Conv2d(*args, **kwargs), norm) self.norm = get_norm_module(self.conv, causal=False, norm=norm, **norm_kwargs) self.norm_type = norm def forward(self, x): x = self.conv(x) x = self.norm(x) return x class NormConvTranspose1d(nn.Module): """Wrapper around ConvTranspose1d and normalization applied to this conv to provide a uniform interface across normalization approaches. """ def __init__(self, *args, causal: bool = False, norm: str = 'none', norm_kwargs: tp.Dict[str, tp.Any] = {}, **kwargs): super().__init__() self.convtr = apply_parametrization_norm(nn.ConvTranspose1d(*args, **kwargs), norm) self.norm = get_norm_module(self.convtr, causal, norm, **norm_kwargs) self.norm_type = norm def forward(self, x): x = self.convtr(x) x = self.norm(x) return x class NormConvTranspose2d(nn.Module): """Wrapper around ConvTranspose2d and normalization applied to this conv to provide a uniform interface across normalization approaches. """ def __init__(self, *args, norm: str = 'none', norm_kwargs: tp.Dict[str, tp.Any] = {}, **kwargs): super().__init__() self.convtr = apply_parametrization_norm(nn.ConvTranspose2d(*args, **kwargs), norm) self.norm = get_norm_module(self.convtr, causal=False, norm=norm, **norm_kwargs) def forward(self, x): x = self.convtr(x) x = self.norm(x) return x class SConv1d(nn.Module): """Conv1d with some builtin handling of asymmetric or causal padding and normalization. """ def __init__(self, in_channels: int, out_channels: int, kernel_size: int, stride: int = 1, dilation: int = 1, groups: int = 1, bias: bool = True, causal: bool = False, norm: str = 'none', norm_kwargs: tp.Dict[str, tp.Any] = {}, pad_mode: str = 'reflect', **kwargs): super().__init__() # warn user on unusual setup between dilation and stride if stride > 1 and dilation > 1: warnings.warn('SConv1d has been initialized with stride > 1 and dilation > 1' f' (kernel_size={kernel_size} stride={stride}, dilation={dilation}).') self.conv = NormConv1d(in_channels, out_channels, kernel_size, stride, dilation=dilation, groups=groups, bias=bias, causal=causal, norm=norm, norm_kwargs=norm_kwargs) self.causal = causal self.pad_mode = pad_mode self.cache_enabled = False def reset_cache(self): """Reset the cache when starting a new stream.""" self.cache = None self.cache_enabled = True def forward(self, x): B, C, T = x.shape kernel_size = self.conv.conv.kernel_size[0] stride = self.conv.conv.stride[0] dilation = self.conv.conv.dilation[0] kernel_size = (kernel_size - 1) * dilation + 1 # effective kernel size with dilations padding_total = kernel_size - stride extra_padding = get_extra_padding_for_conv1d(x, kernel_size, stride, padding_total) if self.causal: # Left padding for causal if self.cache_enabled and self.cache is not None: # Concatenate the cache (previous inputs) with the new input for streaming x = torch.cat([self.cache, x], dim=2) else: x = pad1d(x, (padding_total, extra_padding), mode=self.pad_mode) else: # Asymmetric padding required for odd strides padding_right = padding_total // 2 padding_left = padding_total - padding_right x = pad1d(x, (padding_left, padding_right + extra_padding), mode=self.pad_mode) # Store the most recent input frames for future cache use if self.cache_enabled: if self.cache is None: # Initialize cache with zeros (at the start of streaming) self.cache = torch.zeros(B, C, kernel_size - 1, device=x.device) # Update the cache by storing the latest input frames if kernel_size > 1: self.cache = x[:, :, -kernel_size + 1:].detach() # Only store the necessary frames return self.conv(x) class SConvTranspose1d(nn.Module): """ConvTranspose1d with some builtin handling of asymmetric or causal padding and normalization. """ def __init__(self, in_channels: int, out_channels: int, kernel_size: int, stride: int = 1, causal: bool = False, norm: str = 'none', trim_right_ratio: float = 1., norm_kwargs: tp.Dict[str, tp.Any] = {}, **kwargs): super().__init__() self.convtr = NormConvTranspose1d(in_channels, out_channels, kernel_size, stride, causal=causal, norm=norm, norm_kwargs=norm_kwargs) self.causal = causal self.trim_right_ratio = trim_right_ratio assert self.causal or self.trim_right_ratio == 1., \ "`trim_right_ratio` != 1.0 only makes sense for causal convolutions" assert self.trim_right_ratio >= 0. and self.trim_right_ratio <= 1. def forward(self, x): kernel_size = self.convtr.convtr.kernel_size[0] stride = self.convtr.convtr.stride[0] padding_total = kernel_size - stride y = self.convtr(x) # We will only trim fixed padding. Extra padding from `pad_for_conv1d` would be # removed at the very end, when keeping only the right length for the output, # as removing it here would require also passing the length at the matching layer # in the encoder. if self.causal: # Trim the padding on the right according to the specified ratio # if trim_right_ratio = 1.0, trim everything from right padding_right = math.ceil(padding_total * self.trim_right_ratio) padding_left = padding_total - padding_right y = unpad1d(y, (padding_left, padding_right)) else: # Asymmetric padding required for odd strides padding_right = padding_total // 2 padding_left = padding_total - padding_right y = unpad1d(y, (padding_left, padding_right)) return y class SLSTM(nn.Module): """ LSTM without worrying about the hidden state, nor the layout of the data. Expects input as convolutional layout. """ def __init__(self, dimension: int, num_layers: int = 2, skip: bool = True): super().__init__() self.skip = skip self.lstm = nn.LSTM(dimension, dimension, num_layers) self.hidden = None self.cache_enabled = False def forward(self, x): x = x.permute(2, 0, 1) if self.training or not self.cache_enabled: y, _ = self.lstm(x) else: y, self.hidden = self.lstm(x, self.hidden) if self.skip: y = y + x y = y.permute(1, 2, 0) return y def reset_cache(self): self.hidden = None self.cache_enabled = True