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|
| | import copy |
| | import math |
| | import warnings |
| | from typing import List, Optional, Tuple, Union |
| | import logging |
| | import torch |
| | import random |
| | from .spear_modules import ( |
| | Balancer, |
| | BiasNorm, |
| | Dropout2, |
| | Dropout3, |
| | ChunkCausalDepthwiseConv1d, |
| | ActivationDropoutAndLinear, |
| | ScaledLinear, |
| | Whiten, |
| | Identity, |
| | penalize_abs_values_gt, |
| | softmax, |
| | ScaleGrad, |
| | ScaledConv2d, |
| | ScheduledFloat, |
| | SwooshL, |
| | SwooshR, |
| | FloatLike, |
| | limit_param_value, |
| | convert_num_channels, |
| | ) |
| | from torch import Tensor, nn |
| |
|
| |
|
| | class EncoderInterface(nn.Module): |
| | def forward( |
| | self, x: torch.Tensor, x_lens: torch.Tensor |
| | ) -> Tuple[torch.Tensor, torch.Tensor]: |
| | """ |
| | Args: |
| | x: |
| | A tensor of shape (batch_size, input_seq_len, num_features) |
| | containing the input features. |
| | x_lens: |
| | A tensor of shape (batch_size,) containing the number of frames |
| | in `x` before padding. |
| | Returns: |
| | Return a tuple containing two tensors: |
| | - encoder_out, a tensor of (batch_size, out_seq_len, output_dim) |
| | containing unnormalized probabilities, i.e., the output of a |
| | linear layer. |
| | - encoder_out_lens, a tensor of shape (batch_size,) containing |
| | the number of frames in `encoder_out` before padding. |
| | """ |
| | raise NotImplementedError("Please implement it in a subclass") |
| |
|
| |
|
| | class Zipformer2(EncoderInterface): |
| | """ |
| | Args: |
| | |
| | Note: all "int or Tuple[int]" arguments below will be treated as lists of the same length |
| | as downsampling_factor if they are single ints or one-element tuples. The length of |
| | downsampling_factor defines the number of stacks. |
| | |
| | output_downsampling_factor (int): how much to downsample at the output. Note: |
| | we also downsample by a factor of 2 in the Conv2dSubsampling encoder. |
| | You should probably leave this at 2. |
| | downsampling_factor (Tuple[int]): downsampling factor for each encoder stack. |
| | Note: this is in addition to the downsampling factor of 2 that is applied in |
| | the frontend (self.encoder_embed). |
| | encoder_dim (Tuple[int]): embedding dimension of each of the encoder stacks, one per |
| | encoder stack. |
| | num_encoder_layers (int or Tuple[int])): number of encoder layers for each stack |
| | encoder_unmasked_dim (int or Tuple[int]): unmasked dimension in each of |
| | the encoder stacks for purposes of per-frame dropout (recommend 256 for |
| | now). |
| | query_head_dim (int or Tuple[int]): dimension of query and key per attention |
| | head: per stack, if a tuple.. |
| | pos_head_dim (int or Tuple[int]): dimension of positional-encoding projection per |
| | attention head |
| | value_head_dim (int or Tuple[int]): dimension of value in each attention head |
| | num_heads: (int or Tuple[int]): number of heads in the self-attention mechanism. |
| | Must be at least 4. |
| | feedforward_dim (int or Tuple[int]): hidden dimension in feedforward modules |
| | cnn_module_kernel (int or Tuple[int])): Kernel size of convolution module |
| | |
| | pos_dim (int): the dimension of each positional-encoding vector prior to projection, |
| | e.g. 128. |
| | |
| | dropout (float): dropout rate |
| | warmup_batches (float): number of batches to warm up over; this controls |
| | dropout of encoder layers. |
| | causal (bool): if True, support chunkwise causal convolution. This should |
| | not hurt WER as no modeling power is lost, but the convolution modules will be |
| | slightly slower and use more memory. Enables use of the chunk_size and |
| | left_context_chunks options in forward(), which simulates streaming |
| | decoding. |
| | chunk_size: (list of int): only set this to other than [-1] if causal; |
| | the chunk size will be randomly chosen from this list. -1 means no chunking. |
| | left_context_frames: (list of int): determines the number of left- |
| | context chunks for causal training; will be rounded to a number of |
| | chunks. Must not be less than cnn_module_kernel (after factoring in |
| | rounding and downsampling); an error will be thrown if this is violated. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | output_downsampling_factor: int = 2, |
| | downsampling_factor: Tuple[int] = (2, 4), |
| | encoder_dim: Union[int, Tuple[int]] = 384, |
| | num_encoder_layers: Union[int, Tuple[int]] = 4, |
| | encoder_unmasked_dim: Union[int, Tuple[int]] = 256, |
| | query_head_dim: Union[int, Tuple[int]] = 24, |
| | pos_head_dim: Union[int, Tuple[int]] = 4, |
| | value_head_dim: Union[int, Tuple[int]] = 12, |
| | num_heads: Union[int, Tuple[int]] = 8, |
| | feedforward_dim: Union[int, Tuple[int]] = 1536, |
| | cnn_module_kernel: Union[int, Tuple[int]] = 31, |
| | pos_dim: int = 192, |
| | dropout: FloatLike = None, |
| | warmup_batches: float = 4000.0, |
| | causal: bool = False, |
| | chunk_size: Tuple[int] = [-1], |
| | left_context_frames: Tuple[int] = [-1], |
| | ) -> None: |
| | super(Zipformer2, self).__init__() |
| |
|
| | if dropout is None: |
| | dropout = ScheduledFloat((0.0, 0.3), (20000.0, 0.1)) |
| |
|
| | def _to_tuple(x): |
| | """Converts a single int or a 1-tuple of an int to a tuple with the same length |
| | as downsampling_factor""" |
| | if isinstance(x, int): |
| | x = (x,) |
| | if len(x) == 1: |
| | x = x * len(downsampling_factor) |
| | else: |
| | assert len(x) == len(downsampling_factor) and isinstance(x[0], int) |
| | return x |
| |
|
| | self.output_downsampling_factor = output_downsampling_factor |
| | self.downsampling_factor = downsampling_factor |
| | self.encoder_dim = encoder_dim = _to_tuple(encoder_dim) |
| | self.encoder_unmasked_dim = encoder_unmasked_dim = _to_tuple( |
| | encoder_unmasked_dim |
| | ) |
| | num_encoder_layers = _to_tuple(num_encoder_layers) |
| | self.num_encoder_layers = num_encoder_layers |
| | self.query_head_dim = query_head_dim = _to_tuple(query_head_dim) |
| | self.value_head_dim = value_head_dim = _to_tuple(value_head_dim) |
| | pos_head_dim = _to_tuple(pos_head_dim) |
| | self.num_heads = num_heads = _to_tuple(num_heads) |
| | feedforward_dim = _to_tuple(feedforward_dim) |
| | self.cnn_module_kernel = cnn_module_kernel = _to_tuple(cnn_module_kernel) |
| |
|
| | self.causal = causal |
| | self.chunk_size = chunk_size |
| | self.left_context_frames = left_context_frames |
| |
|
| | for u, d in zip(encoder_unmasked_dim, encoder_dim): |
| | assert u <= d |
| |
|
| | |
| | encoders = [] |
| |
|
| | num_encoders = len(downsampling_factor) |
| | for i in range(num_encoders): |
| | encoder_layer = Zipformer2EncoderLayer( |
| | embed_dim=encoder_dim[i], |
| | pos_dim=pos_dim, |
| | num_heads=num_heads[i], |
| | query_head_dim=query_head_dim[i], |
| | pos_head_dim=pos_head_dim[i], |
| | value_head_dim=value_head_dim[i], |
| | feedforward_dim=feedforward_dim[i], |
| | dropout=dropout, |
| | cnn_module_kernel=cnn_module_kernel[i], |
| | causal=causal, |
| | ) |
| |
|
| | |
| | |
| | encoder = Zipformer2Encoder( |
| | encoder_layer, |
| | num_encoder_layers[i], |
| | pos_dim=pos_dim, |
| | dropout=dropout, |
| | warmup_begin=warmup_batches * (i + 1) / (num_encoders + 1), |
| | warmup_end=warmup_batches * (i + 2) / (num_encoders + 1), |
| | final_layerdrop_rate=0.035 * (downsampling_factor[i] ** 0.5), |
| | ) |
| |
|
| | if downsampling_factor[i] != 1: |
| | encoder = DownsampledZipformer2Encoder( |
| | encoder, |
| | dim=encoder_dim[i], |
| | downsample=downsampling_factor[i], |
| | dropout=dropout, |
| | ) |
| |
|
| | encoders.append(encoder) |
| |
|
| | self.encoders = nn.ModuleList(encoders) |
| |
|
| | if output_downsampling_factor >= 2: |
| | self.downsample_output = SimpleDownsample( |
| | max(encoder_dim), downsample=output_downsampling_factor, dropout=dropout |
| | ) |
| | else: |
| | self.downsample_output = None |
| | |
| |
|
| | def get_feature_masks(self, x: Tensor) -> Union[List[float], List[Tensor]]: |
| | """ |
| | In eval mode, returns [1.0] * num_encoders; in training mode, returns a number of |
| | randomized feature masks, one per encoder. |
| | On e.g. 15% of frames, these masks will zero out all enocder dims larger than |
| | some supplied number, e.g. >256, so in effect on those frames we are using |
| | a smaller encoer dim. |
| | |
| | We generate the random masks at this level because we want the 2 masks to 'agree' |
| | all the way up the encoder stack. This will mean that the 1st mask will have |
| | mask values repeated self.zipformer_subsampling_factor times. |
| | |
| | Args: |
| | x: the embeddings (needed for the shape and dtype and device), of shape |
| | (1, batch_size, encoder_dims0) |
| | """ |
| | num_encoders = len(self.encoder_dim) |
| | if not self.training: |
| | return [1.0] * num_encoders |
| |
|
| | (num_frames0, batch_size, _encoder_dims0) = x.shape |
| |
|
| | assert self.encoder_dim[0] == _encoder_dims0, ( |
| | self.encoder_dim[0], |
| | _encoder_dims0, |
| | ) |
| |
|
| | feature_mask_dropout_prob = 0.125 |
| |
|
| | |
| | mask1 = ( |
| | torch.rand(1, batch_size, 1, device=x.device) > feature_mask_dropout_prob |
| | ).to(x.dtype) |
| |
|
| | |
| | mask2 = torch.logical_and( |
| | mask1, |
| | ( |
| | torch.rand(1, batch_size, 1, device=x.device) |
| | > feature_mask_dropout_prob |
| | ).to(x.dtype), |
| | ) |
| |
|
| | |
| | mask = torch.cat((mask1, mask2), dim=-1) |
| |
|
| | feature_masks = [] |
| | for i in range(num_encoders): |
| | channels = self.encoder_dim[i] |
| | feature_mask = torch.ones( |
| | 1, batch_size, channels, dtype=x.dtype, device=x.device |
| | ) |
| | u1 = self.encoder_unmasked_dim[i] |
| | u2 = u1 + (channels - u1) // 2 |
| |
|
| | feature_mask[:, :, u1:u2] *= mask[..., 0:1] |
| | feature_mask[:, :, u2:] *= mask[..., 1:2] |
| |
|
| | feature_masks.append(feature_mask) |
| |
|
| | return feature_masks |
| |
|
| | def get_chunk_info(self) -> Tuple[int, int]: |
| | """ |
| | Returns chunk_size and left_context_chunks. |
| | """ |
| | if not self.causal: |
| | return -1, -1 |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | assert len(self.chunk_size) == 1, self.chunk_size |
| | chunk_size = self.chunk_size[0] |
| | else: |
| | chunk_size = random.choice(self.chunk_size) |
| |
|
| | if chunk_size == -1: |
| | left_context_chunks = -1 |
| | else: |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | assert len(self.left_context_frames) == 1, self.left_context_frames |
| | left_context_frames = self.left_context_frames[0] |
| | else: |
| | left_context_frames = random.choice(self.left_context_frames) |
| | |
| | left_context_chunks = left_context_frames // chunk_size |
| | if left_context_chunks == 0: |
| | left_context_chunks = 1 |
| |
|
| | return chunk_size, left_context_chunks |
| |
|
| | def forward( |
| | self, |
| | x: Tensor, |
| | x_lens: Tensor, |
| | src_key_padding_mask: Optional[Tensor] = None, |
| | return_middle_out: bool = False, |
| | ) -> Tuple[Tensor, Tensor]: |
| | """ |
| | Args: |
| | x: |
| | The input tensor. Its shape is (seq_len, batch_size, feature_dim). |
| | x_lens: |
| | A tensor of shape (batch_size,) containing the number of frames in |
| | `x` before padding. |
| | src_key_padding_mask: |
| | The mask for padding, of shape (batch_size, seq_len); True means |
| | masked position. May be None. |
| | Returns: |
| | Return a tuple containing 2 tensors: |
| | - embeddings: its shape is (output_seq_len, batch_size, max(encoder_dim)) |
| | - lengths, a tensor of shape (batch_size,) containing the number |
| | of frames in `embeddings` before padding. |
| | """ |
| | outputs = [] |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | feature_masks = [1.0] * len(self.encoder_dim) |
| | else: |
| | feature_masks = self.get_feature_masks(x) |
| |
|
| | chunk_size, left_context_chunks = self.get_chunk_info() |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | |
| | attn_mask = None |
| | else: |
| | attn_mask = self._get_attn_mask(x, chunk_size, left_context_chunks) |
| |
|
| | all_hidden_states = [] |
| | for i, module in enumerate(self.encoders): |
| | ds = self.downsampling_factor[i] |
| | x = convert_num_channels(x, self.encoder_dim[i]) |
| |
|
| | x, hidden_states = module( |
| | x, |
| | chunk_size=chunk_size, |
| | feature_mask=feature_masks[i], |
| | src_key_padding_mask=( |
| | None |
| | if src_key_padding_mask is None |
| | else src_key_padding_mask[..., ::ds] |
| | ), |
| | attn_mask=attn_mask, |
| | return_middle_out=return_middle_out, |
| | ) |
| | outputs.append(x) |
| | if return_middle_out: |
| | all_hidden_states += hidden_states |
| |
|
| | |
| | |
| | |
| | |
| | x = self._get_full_dim_output(outputs) |
| | |
| | if self.output_downsampling_factor >= 2: |
| | x = self.downsample_output(x) |
| | |
| | assert self.output_downsampling_factor == 2, self.output_downsampling_factor |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | lengths = (x_lens + 1) // 2 |
| | else: |
| | with warnings.catch_warnings(): |
| | warnings.simplefilter("ignore") |
| | lengths = (x_lens + 1) // 2 |
| | else: |
| | lengths = x_lens |
| | if return_middle_out: |
| | return x, lengths, all_hidden_states |
| | else: |
| | return x, lengths |
| |
|
| | def _get_attn_mask( |
| | self, x: Tensor, chunk_size: int, left_context_chunks: int |
| | ) -> Optional[Tensor]: |
| | """ |
| | Return None if chunk_size == -1, else return attention mask of shape |
| | (seq_len, seq_len), interpreted as (tgt_seq_len, src_seq_len). True |
| | means a masked position. |
| | Args: |
| | x: embeddings after self.encoder_embed(), of shape (seq_len, batch_size, embed_dim). |
| | chunk_size: chunk size, must divide |
| | """ |
| | if chunk_size <= 0: |
| | return None |
| | assert all(chunk_size % d == 0 for d in self.downsampling_factor) |
| | if left_context_chunks >= 0: |
| | num_encoders = len(self.encoder_dim) |
| | assert all( |
| | chunk_size * left_context_chunks |
| | >= (self.cnn_module_kernel[i] // 2) * self.downsampling_factor[i] |
| | for i in range(num_encoders) |
| | ) |
| | else: |
| | left_context_chunks = 1000000 |
| |
|
| | seq_len = x.shape[0] |
| |
|
| | |
| | t = torch.arange(seq_len, dtype=torch.int32, device=x.device) |
| | |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | c = t // chunk_size |
| | else: |
| | with warnings.catch_warnings(): |
| | warnings.simplefilter("ignore") |
| | c = t // chunk_size |
| | src_c = c |
| | tgt_c = c.unsqueeze(-1) |
| |
|
| | attn_mask = torch.logical_or(src_c > tgt_c, src_c < tgt_c - left_context_chunks) |
| | if __name__ == "__main__": |
| | logging.info(f"attn_mask = {attn_mask}") |
| | return attn_mask |
| |
|
| | def _get_full_dim_output(self, outputs: List[Tensor]): |
| | num_encoders = len(self.encoder_dim) |
| | assert len(outputs) == num_encoders |
| | output_dim = max(self.encoder_dim) |
| | output_pieces = [outputs[-1]] |
| | cur_dim = self.encoder_dim[-1] |
| | for i in range(num_encoders - 2, -1, -1): |
| | d = self.encoder_dim[i] |
| | if d > cur_dim: |
| | this_output = outputs[i] |
| | output_pieces.append(this_output[..., cur_dim:d]) |
| | cur_dim = d |
| | assert cur_dim == output_dim |
| | return torch.cat(output_pieces, dim=-1) |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | x_lens: Tensor, |
| | states: List[Tensor], |
| | src_key_padding_mask: Tensor, |
| | ) -> Tuple[Tensor, Tensor, List[Tensor]]: |
| | """ |
| | Args: |
| | x: |
| | The input tensor. Its shape is (seq_len, batch_size, feature_dim). |
| | x_lens: |
| | A tensor of shape (batch_size,) containing the number of frames in |
| | `x` before padding. |
| | states: list of cached tensors of all encoder layers. For layer-i, |
| | states[i*6:(i+1)*6] is (cached_key, cached_nonlin_attn, cached_val1, cached_val2, |
| | cached_conv1, cached_conv2). |
| | src_key_padding_mask: |
| | The mask for padding, of shape (batch_size, seq_len); True means |
| | masked position. May be None. |
| | Returns: |
| | Return a tuple containing 2 tensors: |
| | - embeddings: its shape is (output_seq_len, batch_size, max(encoder_dim)) |
| | - lengths, a tensor of shape (batch_size,) containing the number |
| | of frames in `embeddings` before padding. |
| | - updated states |
| | """ |
| | outputs = [] |
| | new_states = [] |
| | layer_offset = 0 |
| |
|
| | for i, module in enumerate(self.encoders): |
| | num_layers = module.num_layers |
| | ds = self.downsampling_factor[i] |
| | x = convert_num_channels(x, self.encoder_dim[i]) |
| |
|
| | x, new_layer_states = module.streaming_forward( |
| | x, |
| | states=states[layer_offset * 6 : (layer_offset + num_layers) * 6], |
| | left_context_len=self.left_context_frames[0] // ds, |
| | src_key_padding_mask=src_key_padding_mask[..., ::ds], |
| | ) |
| | layer_offset += num_layers |
| | outputs.append(x) |
| | new_states += new_layer_states |
| |
|
| | |
| | |
| | |
| | |
| | x = self._get_full_dim_output(outputs) |
| | x = self.downsample_output(x) |
| | |
| | assert self.output_downsampling_factor == 2 |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | lengths = (x_lens + 1) // 2 |
| | else: |
| | with warnings.catch_warnings(): |
| | warnings.simplefilter("ignore") |
| | lengths = (x_lens + 1) // 2 |
| |
|
| | return x, lengths, new_states |
| |
|
| | @torch.jit.export |
| | def get_init_states( |
| | self, |
| | batch_size: int = 1, |
| | device: torch.device = torch.device("cpu"), |
| | ) -> List[Tensor]: |
| | """Get initial states. |
| | |
| | A list of cached tensors of all encoder layers. For layer-i, states[i*6:(i+1)*6] |
| | is (cached_key, cached_nonlin_attn, cached_val1, cached_val2, cached_conv1, cached_conv2). |
| | """ |
| | states = [] |
| | for i, module in enumerate(self.encoders): |
| | num_layers = module.num_layers |
| | embed_dim = self.encoder_dim[i] |
| | ds = self.downsampling_factor[i] |
| | num_heads = self.num_heads[i] |
| | key_dim = self.query_head_dim[i] * num_heads |
| | value_dim = self.value_head_dim[i] * num_heads |
| | downsample_left = self.left_context_frames[0] // ds |
| | nonlin_attn_head_dim = 3 * embed_dim // 4 |
| | conv_left_pad = self.cnn_module_kernel[i] // 2 |
| | for layer in range(num_layers): |
| | cached_key = torch.zeros(downsample_left, batch_size, key_dim).to( |
| | device |
| | ) |
| | cached_nonlin_attn = torch.zeros( |
| | 1, batch_size, downsample_left, nonlin_attn_head_dim |
| | ).to(device) |
| | cached_val1 = torch.zeros(downsample_left, batch_size, value_dim).to( |
| | device |
| | ) |
| | cached_val2 = torch.zeros(downsample_left, batch_size, value_dim).to( |
| | device |
| | ) |
| | cached_conv1 = torch.zeros(batch_size, embed_dim, conv_left_pad).to( |
| | device |
| | ) |
| | cached_conv2 = torch.zeros(batch_size, embed_dim, conv_left_pad).to( |
| | device |
| | ) |
| | states += [ |
| | cached_key, |
| | cached_nonlin_attn, |
| | cached_val1, |
| | cached_val2, |
| | cached_conv1, |
| | cached_conv2, |
| | ] |
| |
|
| | return states |
| |
|
| |
|
| | def _whitening_schedule(x: float, ratio: float = 2.0) -> ScheduledFloat: |
| | return ScheduledFloat((0.0, x), (20000.0, ratio * x), default=x) |
| |
|
| |
|
| | def _balancer_schedule(min_prob: float): |
| | return ScheduledFloat((0.0, 0.4), (8000.0, min_prob)) |
| |
|
| |
|
| | class Zipformer2EncoderLayer(nn.Module): |
| | """ |
| | Args: |
| | embed_dim: the number of expected features in the input (required). |
| | nhead: the number of heads in the multiheadattention models (required). |
| | feedforward_dim: the dimension of the feedforward network model (default=2048). |
| | dropout: the dropout value (default=0.1). |
| | cnn_module_kernel (int): Kernel size of convolution module. |
| | |
| | Examples:: |
| | >>> encoder_layer = Zipformer2EncoderLayer(embed_dim=512, nhead=8) |
| | >>> src = torch.rand(10, 32, 512) |
| | >>> pos_emb = torch.rand(32, 19, 512) |
| | >>> out = encoder_layer(src, pos_emb) |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | embed_dim: int, |
| | pos_dim: int, |
| | num_heads: int, |
| | query_head_dim: int, |
| | pos_head_dim: int, |
| | value_head_dim: int, |
| | feedforward_dim: int, |
| | dropout: FloatLike = 0.1, |
| | cnn_module_kernel: int = 31, |
| | causal: bool = False, |
| | attention_skip_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.2), (4000.0, 0.05), (16000, 0.0), default=0 |
| | ), |
| | conv_skip_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.2), (4000.0, 0.05), (16000, 0.0), default=0 |
| | ), |
| | const_attention_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.25), (4000.0, 0.025), default=0 |
| | ), |
| | ff2_skip_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.1), (4000.0, 0.01), (50000.0, 0.0) |
| | ), |
| | ff3_skip_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.1), (4000.0, 0.01), (50000.0, 0.0) |
| | ), |
| | bypass_skip_rate: FloatLike = ScheduledFloat( |
| | (0.0, 0.5), (4000.0, 0.02), default=0 |
| | ), |
| | ) -> None: |
| | super(Zipformer2EncoderLayer, self).__init__() |
| | self.embed_dim = embed_dim |
| |
|
| | |
| | self.bypass = BypassModule( |
| | embed_dim, skip_rate=bypass_skip_rate, straight_through_rate=0 |
| | ) |
| | |
| | self.bypass_mid = BypassModule(embed_dim, straight_through_rate=0) |
| |
|
| | |
| | self.attention_skip_rate = copy.deepcopy(attention_skip_rate) |
| | |
| | |
| | self.conv_skip_rate = copy.deepcopy(conv_skip_rate) |
| |
|
| | |
| | |
| | self.ff2_skip_rate = copy.deepcopy(ff2_skip_rate) |
| | self.ff3_skip_rate = copy.deepcopy(ff3_skip_rate) |
| |
|
| | self.const_attention_rate = copy.deepcopy(const_attention_rate) |
| |
|
| | self.self_attn_weights = RelPositionMultiheadAttentionWeights( |
| | embed_dim, |
| | pos_dim=pos_dim, |
| | num_heads=num_heads, |
| | query_head_dim=query_head_dim, |
| | pos_head_dim=pos_head_dim, |
| | dropout=0.0, |
| | ) |
| |
|
| | self.self_attn1 = SelfAttention(embed_dim, num_heads, value_head_dim) |
| |
|
| | self.self_attn2 = SelfAttention(embed_dim, num_heads, value_head_dim) |
| |
|
| | self.feed_forward1 = FeedforwardModule( |
| | embed_dim, (feedforward_dim * 3) // 4, dropout |
| | ) |
| |
|
| | self.feed_forward2 = FeedforwardModule(embed_dim, feedforward_dim, dropout) |
| |
|
| | self.feed_forward3 = FeedforwardModule( |
| | embed_dim, (feedforward_dim * 5) // 4, dropout |
| | ) |
| |
|
| | self.nonlin_attention = NonlinAttention( |
| | embed_dim, hidden_channels=3 * embed_dim // 4 |
| | ) |
| |
|
| | self.conv_module1 = ConvolutionModule( |
| | embed_dim, cnn_module_kernel, causal=causal |
| | ) |
| |
|
| | self.conv_module2 = ConvolutionModule( |
| | embed_dim, cnn_module_kernel, causal=causal |
| | ) |
| |
|
| | |
| | self.bypass_scale = nn.Parameter(torch.full((embed_dim,), 0.5)) |
| |
|
| | self.norm = BiasNorm(embed_dim) |
| |
|
| | self.balancer1 = Balancer( |
| | embed_dim, |
| | channel_dim=-1, |
| | min_positive=0.45, |
| | max_positive=0.55, |
| | min_abs=0.2, |
| | max_abs=4.0, |
| | ) |
| |
|
| | |
| | self.balancer_na = Balancer( |
| | embed_dim, |
| | channel_dim=-1, |
| | min_positive=0.3, |
| | max_positive=0.7, |
| | min_abs=ScheduledFloat((0.0, 0.004), (4000.0, 0.02)), |
| | prob=0.05, |
| | ) |
| |
|
| | |
| | |
| | |
| | self.balancer_ff2 = Balancer( |
| | embed_dim, |
| | channel_dim=-1, |
| | min_positive=0.3, |
| | max_positive=0.7, |
| | min_abs=ScheduledFloat((0.0, 0.0), (4000.0, 0.1), default=0.0), |
| | max_abs=2.0, |
| | prob=0.05, |
| | ) |
| |
|
| | self.balancer_ff3 = Balancer( |
| | embed_dim, |
| | channel_dim=-1, |
| | min_positive=0.3, |
| | max_positive=0.7, |
| | min_abs=ScheduledFloat((0.0, 0.0), (4000.0, 0.2), default=0.0), |
| | max_abs=4.0, |
| | prob=0.05, |
| | ) |
| |
|
| | self.whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(4.0, ratio=3.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | self.balancer2 = Balancer( |
| | embed_dim, |
| | channel_dim=-1, |
| | min_positive=0.45, |
| | max_positive=0.55, |
| | min_abs=0.1, |
| | max_abs=4.0, |
| | ) |
| |
|
| | def get_sequence_dropout_mask( |
| | self, x: Tensor, dropout_rate: float |
| | ) -> Optional[Tensor]: |
| | if ( |
| | dropout_rate == 0.0 |
| | or not self.training |
| | or torch.jit.is_scripting() |
| | or torch.jit.is_tracing() |
| | ): |
| | return None |
| | batch_size = x.shape[1] |
| | mask = (torch.rand(batch_size, 1, device=x.device) > dropout_rate).to(x.dtype) |
| | return mask |
| |
|
| | def sequence_dropout(self, x: Tensor, dropout_rate: float) -> Tensor: |
| | """ |
| | Apply sequence-level dropout to x. |
| | x shape: (seq_len, batch_size, embed_dim) |
| | """ |
| | dropout_mask = self.get_sequence_dropout_mask(x, dropout_rate) |
| | if dropout_mask is None: |
| | return x |
| | else: |
| | return x * dropout_mask |
| |
|
| | def forward( |
| | self, |
| | src: Tensor, |
| | pos_emb: Tensor, |
| | chunk_size: int = -1, |
| | attn_mask: Optional[Tensor] = None, |
| | src_key_padding_mask: Optional[Tensor] = None, |
| | ) -> Tensor: |
| | """ |
| | Pass the input through the encoder layer. |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | pos_emb: (1, 2*seq_len-1, pos_emb_dim) or (batch_size, 2*seq_len-1, pos_emb_dim) |
| | chunk_size: the number of frames per chunk, of >= 0; if -1, no chunking. |
| | feature_mask: something that broadcasts with src, that we'll multiply `src` |
| | by at every layer: if a Tensor, likely of shape (seq_len, batch_size, embedding_dim) |
| | attn_mask: the attention mask, of shape (batch_size, seq_len, seq_len) or (seq_len, seq_len), |
| | interpreted as (batch_size, tgt_seq_len, src_seq_len) or (tgt_seq_len, src_seq_len). |
| | True means masked position. May be None. |
| | src_key_padding_mask: the mask for padding, of shape (batch_size, seq_len); True means |
| | masked position. May be None. |
| | |
| | Returns: |
| | A tensor which has the same shape as src |
| | """ |
| | src_orig = src |
| |
|
| | |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | attention_skip_rate = 0.0 |
| | else: |
| | attention_skip_rate = ( |
| | float(self.attention_skip_rate) if self.training else 0.0 |
| | ) |
| |
|
| | |
| | attn_weights = self.self_attn_weights( |
| | src, |
| | pos_emb=pos_emb, |
| | attn_mask=attn_mask, |
| | key_padding_mask=src_key_padding_mask, |
| | ) |
| |
|
| | src = src + self.feed_forward1(src) |
| |
|
| | self_attn_dropout_mask = self.get_sequence_dropout_mask( |
| | src, attention_skip_rate |
| | ) |
| |
|
| | selected_attn_weights = attn_weights[0:1] |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | pass |
| | elif not self.training and random.random() < float(self.const_attention_rate): |
| | |
| | |
| | |
| | |
| | selected_attn_weights = selected_attn_weights[0:1] |
| | selected_attn_weights = (selected_attn_weights > 0.0).to( |
| | selected_attn_weights.dtype |
| | ) |
| | selected_attn_weights = selected_attn_weights * ( |
| | 1.0 / selected_attn_weights.sum(dim=-1, keepdim=True) |
| | ) |
| |
|
| | na = self.balancer_na(self.nonlin_attention(src, selected_attn_weights)) |
| |
|
| | src = src + ( |
| | na if self_attn_dropout_mask is None else na * self_attn_dropout_mask |
| | ) |
| |
|
| | self_attn = self.self_attn1(src, attn_weights) |
| |
|
| | src = src + ( |
| | self_attn |
| | if self_attn_dropout_mask is None |
| | else self_attn * self_attn_dropout_mask |
| | ) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | conv_skip_rate = 0.0 |
| | else: |
| | conv_skip_rate = float(self.conv_skip_rate) if self.training else 0.0 |
| | src = src + self.sequence_dropout( |
| | self.conv_module1( |
| | src, chunk_size=chunk_size, src_key_padding_mask=src_key_padding_mask |
| | ), |
| | conv_skip_rate, |
| | ) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | ff2_skip_rate = 0.0 |
| | else: |
| | ff2_skip_rate = float(self.ff2_skip_rate) if self.training else 0.0 |
| | src = src + self.sequence_dropout( |
| | self.balancer_ff2(self.feed_forward2(src)), ff2_skip_rate |
| | ) |
| |
|
| | |
| | src = self.bypass_mid(src_orig, src) |
| |
|
| | self_attn = self.self_attn2(src, attn_weights) |
| |
|
| | src = src + ( |
| | self_attn |
| | if self_attn_dropout_mask is None |
| | else self_attn * self_attn_dropout_mask |
| | ) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | conv_skip_rate = 0.0 |
| | else: |
| | conv_skip_rate = float(self.conv_skip_rate) if self.training else 0.0 |
| | src = src + self.sequence_dropout( |
| | self.conv_module2( |
| | src, chunk_size=chunk_size, src_key_padding_mask=src_key_padding_mask |
| | ), |
| | conv_skip_rate, |
| | ) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | ff3_skip_rate = 0.0 |
| | else: |
| | ff3_skip_rate = float(self.ff3_skip_rate) if self.training else 0.0 |
| | src = src + self.sequence_dropout( |
| | self.balancer_ff3(self.feed_forward3(src)), ff3_skip_rate |
| | ) |
| |
|
| | src = self.balancer1(src) |
| | src = self.norm(src) |
| |
|
| | src = self.bypass(src_orig, src) |
| |
|
| | src = self.balancer2(src) |
| | src = self.whiten(src) |
| |
|
| | return src |
| |
|
| | def streaming_forward( |
| | self, |
| | src: Tensor, |
| | pos_emb: Tensor, |
| | cached_key: Tensor, |
| | cached_nonlin_attn: Tensor, |
| | cached_val1: Tensor, |
| | cached_val2: Tensor, |
| | cached_conv1: Tensor, |
| | cached_conv2: Tensor, |
| | left_context_len: int, |
| | src_key_padding_mask: Tensor, |
| | ) -> Tuple[Tensor, Tensor, Tensor, Tensor, Tensor, Tensor, Tensor]: |
| | """Pass the input through the encoder layer in streaming forward mode. |
| | |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | pos_emb: (1, left_context_len+2*seq_len-1, pos_emb_dim) or |
| | (batch_size, left_context_len+2*seq_len-1, pos_emb_dim) |
| | cached_key: cached attention key tensor of left context, |
| | of shape (left_context_len, batch_size, key_dim) |
| | cached_nonlin_attn: left context for nonlin_attention module, a Tensor of shape |
| | (num_heads, batch_size, left_context_len, head_dim) |
| | cached_val1: cached left context for the first attention module, |
| | of shape (left_context_len, batch_size, value_dim) |
| | cached_val2: cached left context for the second attention module, |
| | of shape (left_context_len, batch_size, value_dim) |
| | cached_conv1: cached left context for the first convolution module, |
| | of shape (batch_size, channels, left_pad) |
| | cached_conv2: cached left context for the second convolution module, |
| | of shape (batch_size, channels, left_pad) |
| | left_context_len: number of left context frames. |
| | src_key_padding_mask: the mask for padding, of shape |
| | (batch_size, left_context_len + seq_len); True means masked position. |
| | May be None. |
| | |
| | Returns: |
| | - x, with the same shape as src |
| | - updated cached_key |
| | - updated cached_nonlin_attn |
| | - updated cached_val1 |
| | - updated cached_val2 |
| | - updated cached_conv1 |
| | - updated cached_conv2 |
| | """ |
| | src_orig = src |
| |
|
| | |
| | attn_weights, cached_key = self.self_attn_weights.streaming_forward( |
| | src, |
| | pos_emb=pos_emb, |
| | cached_key=cached_key, |
| | left_context_len=left_context_len, |
| | key_padding_mask=src_key_padding_mask, |
| | ) |
| |
|
| | src = src + self.feed_forward1(src) |
| |
|
| | na, cached_nonlin_attn = self.nonlin_attention.streaming_forward( |
| | src, |
| | attn_weights[0:1], |
| | cached_x=cached_nonlin_attn, |
| | left_context_len=left_context_len, |
| | ) |
| | src = src + na |
| |
|
| | self_attn, cached_val1 = self.self_attn1.streaming_forward( |
| | src, |
| | attn_weights=attn_weights, |
| | cached_val=cached_val1, |
| | left_context_len=left_context_len, |
| | ) |
| | src = src + self_attn |
| |
|
| | src_conv, cached_conv1 = self.conv_module1.streaming_forward( |
| | src, |
| | cache=cached_conv1, |
| | src_key_padding_mask=src_key_padding_mask[:, left_context_len:], |
| | ) |
| | src = src + src_conv |
| |
|
| | src = src + self.feed_forward2(src) |
| |
|
| | |
| | src = self.bypass_mid(src_orig, src) |
| |
|
| | self_attn, cached_val2 = self.self_attn2.streaming_forward( |
| | src, |
| | attn_weights=attn_weights, |
| | cached_val=cached_val2, |
| | left_context_len=left_context_len, |
| | ) |
| | src = src + self_attn |
| |
|
| | src_conv, cached_conv2 = self.conv_module2.streaming_forward( |
| | src, |
| | cache=cached_conv2, |
| | src_key_padding_mask=src_key_padding_mask[:, left_context_len:], |
| | ) |
| | src = src + src_conv |
| |
|
| | src = src + self.feed_forward3(src) |
| |
|
| | src = self.norm(src) |
| |
|
| | src = self.bypass(src_orig, src) |
| |
|
| | return ( |
| | src, |
| | cached_key, |
| | cached_nonlin_attn, |
| | cached_val1, |
| | cached_val2, |
| | cached_conv1, |
| | cached_conv2, |
| | ) |
| |
|
| |
|
| | class Zipformer2Encoder(nn.Module): |
| | r"""Zipformer2Encoder is a stack of N encoder layers |
| | |
| | Args: |
| | encoder_layer: an instance of the Zipformer2EncoderLayer() class (required). |
| | num_layers: the number of sub-encoder-layers in the encoder (required). |
| | pos_dim: the dimension for the relative positional encoding |
| | |
| | Examples:: |
| | >>> encoder_layer = Zipformer2EncoderLayer(embed_dim=512, nhead=8) |
| | >>> zipformer_encoder = Zipformer2Encoder(encoder_layer, num_layers=6) |
| | >>> src = torch.rand(10, 32, 512) |
| | >>> out = zipformer_encoder(src) |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | encoder_layer: nn.Module, |
| | num_layers: int, |
| | pos_dim: int, |
| | dropout: float, |
| | warmup_begin: float, |
| | warmup_end: float, |
| | initial_layerdrop_rate: float = 0.5, |
| | final_layerdrop_rate: float = 0.05, |
| | ) -> None: |
| | super().__init__() |
| | self.encoder_pos = CompactRelPositionalEncoding( |
| | pos_dim, dropout_rate=0.15, length_factor=1.0 |
| | ) |
| |
|
| | self.layers = nn.ModuleList( |
| | [copy.deepcopy(encoder_layer) for i in range(num_layers)] |
| | ) |
| | self.num_layers = num_layers |
| |
|
| | assert 0 <= warmup_begin <= warmup_end |
| |
|
| | delta = (1.0 / num_layers) * (warmup_end - warmup_begin) |
| | cur_begin = warmup_begin |
| | for i in range(num_layers): |
| | cur_end = cur_begin + delta |
| | self.layers[i].bypass.skip_rate = ScheduledFloat( |
| | (cur_begin, initial_layerdrop_rate), |
| | (cur_end, final_layerdrop_rate), |
| | default=0.0, |
| | ) |
| | cur_begin = cur_end |
| |
|
| | def forward( |
| | self, |
| | src: Tensor, |
| | chunk_size: int = -1, |
| | feature_mask: Union[Tensor, float] = 1.0, |
| | attn_mask: Optional[Tensor] = None, |
| | src_key_padding_mask: Optional[Tensor] = None, |
| | return_middle_out: bool = True, |
| | ) -> Tuple[Tensor, List[Tensor]]: |
| | r"""Pass the input through the encoder layers in turn. |
| | |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | chunk_size: the number of frames per chunk, of >= 0; if -1, no chunking. |
| | feature_mask: something that broadcasts with src, that we'll multiply `src` |
| | by at every layer: if a Tensor, likely of shape (seq_len, batch_size, embedding_dim) |
| | attn_mask: the attention mask, of shape (batch_size, seq_len, seq_len) or (seq_len, seq_len), |
| | interpreted as (batch_size, tgt_seq_len, src_seq_len) or (tgt_seq_len, src_seq_len). |
| | True means masked position. May be None. |
| | src_key_padding_mask: the mask for padding, of shape (batch_size, seq_len); True means |
| | masked position. May be None. |
| | return_middle_out: This is only compatibility with the DownsampledZipformer2Encoder, has no |
| | effect on the output |
| | |
| | Returns: a Tensor with the same shape as src. Also the a list of intermediate features |
| | """ |
| | pos_emb = self.encoder_pos(src) |
| | output = src |
| |
|
| | if not torch.jit.is_scripting() and not torch.jit.is_tracing(): |
| | output = output * feature_mask |
| | |
| | middle_out = [] |
| | for i, mod in enumerate(self.layers): |
| | output = mod( |
| | output, |
| | pos_emb, |
| | chunk_size=chunk_size, |
| | attn_mask=attn_mask, |
| | src_key_padding_mask=src_key_padding_mask, |
| | ) |
| | middle_out.append(output) |
| |
|
| | if not torch.jit.is_scripting() and not torch.jit.is_tracing(): |
| | output = output * feature_mask |
| |
|
| | return output, middle_out |
| |
|
| | def streaming_forward( |
| | self, |
| | src: Tensor, |
| | states: List[Tensor], |
| | left_context_len: int, |
| | src_key_padding_mask: Tensor, |
| | return_middle_out: bool = True, |
| | ) -> Tuple[Tensor, List[Tensor], List[Tensor]]: |
| | r"""Pass the input through the encoder layers in turn. |
| | |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | states: list of cached tensors of N encoder layers. For layer-i, states[i*6:(i+1)*6] is |
| | (cached_key, cached_nonlin_attn, cached_val1, cached_val2, cached_conv1, cached_conv2). |
| | left_context_len: Number of left context frames. |
| | src_key_padding_mask: the mask for padding, of shape |
| | (batch_size, left_context_len + seq_len); True means masked position. |
| | May be None. |
| | |
| | Returns: |
| | - output, a Tensor with the same shape as src. |
| | - updated states |
| | """ |
| | pos_emb = self.encoder_pos(src, left_context_len) |
| | output = src |
| |
|
| | middle_out = [] |
| | new_states = [] |
| | for i, mod in enumerate(self.layers): |
| | ( |
| | cached_key, |
| | cached_nonlin_attn, |
| | cached_val1, |
| | cached_val2, |
| | cached_conv1, |
| | cached_conv2, |
| | ) = states[i * 6 : (i + 1) * 6] |
| | ( |
| | output, |
| | new_cached_key, |
| | new_cached_nonlin_attn, |
| | new_cached_val1, |
| | new_cached_val2, |
| | new_cached_conv1, |
| | new_cached_conv2, |
| | ) = mod.streaming_forward( |
| | output, |
| | pos_emb, |
| | cached_key=cached_key, |
| | cached_nonlin_attn=cached_nonlin_attn, |
| | cached_val1=cached_val1, |
| | cached_val2=cached_val2, |
| | cached_conv1=cached_conv1, |
| | cached_conv2=cached_conv2, |
| | left_context_len=left_context_len, |
| | src_key_padding_mask=src_key_padding_mask, |
| | ) |
| | new_states += [ |
| | new_cached_key, |
| | new_cached_nonlin_attn, |
| | new_cached_val1, |
| | new_cached_val2, |
| | new_cached_conv1, |
| | new_cached_conv2, |
| | ] |
| | middle_out.append(output) |
| |
|
| | return output, new_states, middle_out |
| |
|
| |
|
| | class BypassModule(nn.Module): |
| | """ |
| | An nn.Module that implements a learnable bypass scale, and also randomized per-sequence |
| | layer-skipping. The bypass is limited during early stages of training to be close to |
| | "straight-through", i.e. to not do the bypass operation much initially, in order to |
| | force all the modules to learn something. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | embed_dim: int, |
| | skip_rate: FloatLike = 0.0, |
| | straight_through_rate: FloatLike = 0.0, |
| | scale_min: FloatLike = ScheduledFloat((0.0, 0.9), (20000.0, 0.2), default=0), |
| | scale_max: FloatLike = 1.0, |
| | ): |
| | super().__init__() |
| | self.bypass_scale = nn.Parameter(torch.full((embed_dim,), 0.5)) |
| | self.skip_rate = copy.deepcopy(skip_rate) |
| | self.straight_through_rate = copy.deepcopy(straight_through_rate) |
| | self.scale_min = copy.deepcopy(scale_min) |
| | self.scale_max = copy.deepcopy(scale_max) |
| |
|
| | def _get_bypass_scale(self, batch_size: int): |
| | |
| | |
| | |
| | |
| | if torch.jit.is_scripting() or torch.jit.is_tracing() or not self.training: |
| | return self.bypass_scale |
| | else: |
| | ans = limit_param_value( |
| | self.bypass_scale, min=float(self.scale_min), max=float(self.scale_max) |
| | ) |
| | skip_rate = float(self.skip_rate) |
| | if skip_rate != 0.0: |
| | mask = torch.rand((batch_size, 1), device=ans.device) > skip_rate |
| | ans = ans * mask |
| | |
| | |
| | straight_through_rate = float(self.straight_through_rate) |
| | if straight_through_rate != 0.0: |
| | mask = ( |
| | torch.rand((batch_size, 1), device=ans.device) |
| | < straight_through_rate |
| | ) |
| | ans = torch.maximum(ans, mask.to(ans.dtype)) |
| | return ans |
| |
|
| | def forward(self, src_orig: Tensor, src: Tensor): |
| | """ |
| | Args: src_orig and src are both of shape (seq_len, batch_size, num_channels) |
| | Returns: something with the same shape as src and src_orig |
| | """ |
| | bypass_scale = self._get_bypass_scale(src.shape[1]) |
| | return src_orig + (src - src_orig) * bypass_scale |
| |
|
| |
|
| | class DownsampledZipformer2Encoder(nn.Module): |
| | r""" |
| | DownsampledZipformer2Encoder is a zipformer encoder evaluated at a reduced frame rate, |
| | after convolutional downsampling, and then upsampled again at the output, and combined |
| | with the origin input, so that the output has the same shape as the input. |
| | """ |
| |
|
| | def __init__( |
| | self, encoder: nn.Module, dim: int, downsample: int, dropout: FloatLike |
| | ): |
| | super(DownsampledZipformer2Encoder, self).__init__() |
| | self.downsample_factor = downsample |
| | self.downsample = SimpleDownsample(dim, downsample, dropout) |
| | self.num_layers = encoder.num_layers |
| | self.encoder = encoder |
| | self.upsample = SimpleUpsample(dim, downsample) |
| | self.out_combiner = BypassModule(dim, straight_through_rate=0) |
| |
|
| | def forward( |
| | self, |
| | src: Tensor, |
| | chunk_size: int = -1, |
| | feature_mask: Union[Tensor, float] = 1.0, |
| | attn_mask: Optional[Tensor] = None, |
| | src_key_padding_mask: Optional[Tensor] = None, |
| | return_middle_out: Optional[bool] = False, |
| | ) -> Tuple[Tensor, List[Tensor]]: |
| | r"""Downsample, go through encoder, upsample. |
| | |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | feature_mask: something that broadcasts with src, that we'll multiply `src` |
| | by at every layer: if a Tensor, likely of shape (seq_len, batch_size, embedding_dim) |
| | attn_mask: the attention mask, of shape (batch_size, seq_len, seq_len) or (seq_len, seq_len), |
| | interpreted as (batch_size, tgt_seq_len, src_seq_len) or (tgt_seq_len, src_seq_len). |
| | True means masked position. May be None. |
| | src_key_padding_mask: the mask for padding, of shape (batch_size, seq_len); True means |
| | masked position. May be None. |
| | |
| | Returns: a Tensor with the same shape as src. |
| | """ |
| | src_orig = src |
| | src = self.downsample(src) |
| | ds = self.downsample_factor |
| | if attn_mask is not None: |
| | attn_mask = attn_mask[::ds, ::ds] |
| |
|
| | src, all_hidden_states = self.encoder( |
| | src, |
| | chunk_size=chunk_size // ds, |
| | feature_mask=feature_mask, |
| | attn_mask=attn_mask, |
| | src_key_padding_mask=src_key_padding_mask, |
| | ) |
| | src = self.upsample(src) |
| | |
| | src = src[: src_orig.shape[0]] |
| | if return_middle_out: |
| | all_hidden_states = [self.upsample(states)[: src_orig.shape[0]] for states in all_hidden_states] |
| | else: |
| | all_hidden_states = None |
| |
|
| | return self.out_combiner(src_orig, src), all_hidden_states |
| |
|
| | def streaming_forward( |
| | self, |
| | src: Tensor, |
| | states: List[Tensor], |
| | left_context_len: int, |
| | src_key_padding_mask: Tensor, |
| | return_middle_out: bool = False, |
| | ) -> Tuple[Tensor, List[Tensor], list[Tensor]]: |
| | r"""Downsample, go through encoder, upsample, in streaming forward mode. |
| | |
| | Args: |
| | src: the sequence to the encoder (required): shape (seq_len, batch_size, embedding_dim). |
| | states: list of cached tensors of N encoder layers. For layer-i, states[i*6:(i+1)*6] is |
| | (cached_key, cached_nonlin_attn, cached_val1, cached_val2, cached_conv1, cached_conv2). |
| | left_context_len: Number of left context frames. |
| | src_key_padding_mask: the mask for padding, of shape (batch_size, left_context_len+seq_len); |
| | True means masked position. May be None. |
| | |
| | Returns: |
| | - output, a Tensor with the same shape as src. |
| | - updated states |
| | """ |
| | src_orig = src |
| | src = self.downsample(src) |
| |
|
| | src, new_states, all_hidden_states = self.encoder.streaming_forward( |
| | src, |
| | states=states, |
| | left_context_len=left_context_len, |
| | src_key_padding_mask=src_key_padding_mask, |
| | ) |
| | src = self.upsample(src) |
| | |
| | src = src[: src_orig.shape[0]] |
| | if return_middle_out: |
| | all_hidden_states = [self.upsample(states) for states in all_hidden_states] |
| | else: |
| | all_hidden_states = None |
| |
|
| | return self.out_combiner(src_orig, src), new_states, all_hidden_states |
| |
|
| |
|
| | class SimpleDownsample(torch.nn.Module): |
| | """ |
| | Does downsampling with attention, by weighted sum, and a projection.. |
| | """ |
| |
|
| | def __init__(self, channels: int, downsample: int, dropout: FloatLike): |
| | super(SimpleDownsample, self).__init__() |
| |
|
| | self.bias = nn.Parameter(torch.zeros(downsample)) |
| |
|
| | self.name = None |
| | self.dropout = copy.deepcopy(dropout) |
| |
|
| | self.downsample = downsample |
| |
|
| | def forward(self, src: Tensor) -> Tensor: |
| | """ |
| | x: (seq_len, batch_size, in_channels) |
| | Returns a tensor of shape |
| | ( (seq_len+downsample-1)//downsample, batch_size, channels) |
| | """ |
| | (seq_len, batch_size, in_channels) = src.shape |
| | ds = self.downsample |
| | d_seq_len = (seq_len + ds - 1) // ds |
| |
|
| | |
| | |
| | pad = d_seq_len * ds - seq_len |
| | src_extra = src[src.shape[0] - 1 :].expand(pad, src.shape[1], src.shape[2]) |
| | src = torch.cat((src, src_extra), dim=0) |
| | assert src.shape[0] == d_seq_len * ds |
| |
|
| | src = src.reshape(d_seq_len, ds, batch_size, in_channels) |
| |
|
| | weights = self.bias.softmax(dim=0) |
| | |
| | weights = weights.unsqueeze(-1).unsqueeze(-1) |
| |
|
| | |
| | ans = (src * weights).sum(dim=1) |
| |
|
| | return ans |
| |
|
| |
|
| | class SimpleUpsample(torch.nn.Module): |
| | """ |
| | A very simple form of upsampling that mostly just repeats the input, but |
| | also adds a position-specific bias. |
| | """ |
| |
|
| | def __init__(self, num_channels: int, upsample: int): |
| | super(SimpleUpsample, self).__init__() |
| | self.upsample = upsample |
| |
|
| | def forward(self, src: Tensor) -> Tensor: |
| | """ |
| | x: (seq_len, batch_size, num_channels) |
| | Returns a tensor of shape |
| | ( (seq_len*upsample), batch_size, num_channels) |
| | """ |
| | upsample = self.upsample |
| | (seq_len, batch_size, num_channels) = src.shape |
| | src = src.unsqueeze(1).expand(seq_len, upsample, batch_size, num_channels) |
| | src = src.reshape(seq_len * upsample, batch_size, num_channels) |
| | return src |
| |
|
| |
|
| | class CompactRelPositionalEncoding(torch.nn.Module): |
| | """ |
| | Relative positional encoding module. This version is "compact" meaning it is able to encode |
| | the important information about the relative position in a relatively small number of dimensions. |
| | The goal is to make it so that small differences between large relative offsets (e.g. 1000 vs. 1001) |
| | make very little difference to the embedding. Such differences were potentially important |
| | when encoding absolute position, but not important when encoding relative position because there |
| | is now no need to compare two large offsets with each other. |
| | |
| | Our embedding works done by projecting the interval [-infinity,infinity] to a finite interval |
| | using the atan() function, before doing the fourier transform of that fixed interval. The |
| | atan() function would compress the "long tails" too small, |
| | making it hard to distinguish between different magnitudes of large offsets, so we use a logarithmic |
| | function to compress large offsets to a smaller range before applying atan(). |
| | Scalings are chosen in such a way that the embedding can clearly distinguish invidual offsets as long |
| | as they are quite close to the origin, e.g. abs(offset) <= about sqrt(embedding_dim) |
| | |
| | |
| | Args: |
| | embed_dim: Embedding dimension. |
| | dropout_rate: Dropout rate. |
| | max_len: Maximum input length: just a heuristic for initialization. |
| | length_factor: a heuristic scale (should be >= 1.0) which, if larger, gives |
| | less weight to small differences of offset near the origin. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | embed_dim: int, |
| | dropout_rate: FloatLike, |
| | max_len: int = 1000, |
| | length_factor: float = 1.0, |
| | ) -> None: |
| | """Construct a CompactRelPositionalEncoding object.""" |
| | super(CompactRelPositionalEncoding, self).__init__() |
| | self.embed_dim = embed_dim |
| | assert embed_dim % 2 == 0 |
| | self.dropout = Dropout2(dropout_rate) |
| | self.pe = None |
| | assert length_factor >= 1.0 |
| | self.length_factor = length_factor |
| | self.extend_pe(torch.tensor(0.0).expand(max_len)) |
| |
|
| | def extend_pe(self, x: Tensor, left_context_len: int = 0) -> None: |
| | """Reset the positional encodings.""" |
| | T = x.size(0) + left_context_len |
| |
|
| | if self.pe is not None: |
| | |
| | |
| | if self.pe.size(0) >= T * 2 - 1: |
| | self.pe = self.pe.to(dtype=x.dtype, device=x.device) |
| | return |
| |
|
| | |
| | x = torch.arange(-(T - 1), T, device=x.device).to(torch.float32).unsqueeze(1) |
| |
|
| | freqs = 1 + torch.arange(self.embed_dim // 2, device=x.device) |
| |
|
| | |
| | |
| | compression_length = self.embed_dim**0.5 |
| | |
| | |
| | |
| | |
| | x_compressed = ( |
| | compression_length |
| | * x.sign() |
| | * ((x.abs() + compression_length).log() - math.log(compression_length)) |
| | ) |
| |
|
| | |
| | |
| | |
| | |
| | length_scale = self.length_factor * self.embed_dim / (2.0 * math.pi) |
| |
|
| | |
| | |
| | |
| | x_atan = (x_compressed / length_scale).atan() |
| |
|
| | cosines = (x_atan * freqs).cos() |
| | sines = (x_atan * freqs).sin() |
| |
|
| | pe = torch.zeros(x.shape[0], self.embed_dim, device=x.device) |
| | pe[:, 0::2] = cosines |
| | pe[:, 1::2] = sines |
| | pe[:, -1] = 1.0 |
| |
|
| | self.pe = pe.to(dtype=x.dtype) |
| |
|
| | def forward(self, x: Tensor, left_context_len: int = 0) -> Tensor: |
| | """Create positional encoding. |
| | |
| | Args: |
| | x (Tensor): Input tensor (time, batch, `*`). |
| | left_context_len: (int): Length of cached left context. |
| | |
| | Returns: |
| | positional embedding, of shape (batch, left_context_len + 2*time-1, `*`). |
| | """ |
| | self.extend_pe(x, left_context_len) |
| | x_size_left = x.size(0) + left_context_len |
| | |
| | |
| | pos_emb = self.pe[ |
| | self.pe.size(0) // 2 |
| | - x_size_left |
| | + 1 : self.pe.size(0) // 2 |
| | + x.size(0), |
| | :, |
| | ] |
| | pos_emb = pos_emb.unsqueeze(0) |
| | return self.dropout(pos_emb) |
| |
|
| |
|
| | class RelPositionMultiheadAttentionWeights(nn.Module): |
| | r"""Module that computes multi-head attention weights with relative position encoding. |
| | Various other modules consume the resulting attention weights: see, for example, the |
| | SimpleAttention module which allows you to compute conventional attention. |
| | |
| | This is a quite heavily modified from: "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context", |
| | we have to write up the differences. |
| | |
| | |
| | Args: |
| | embed_dim: number of channels at the input to this module, e.g. 256 |
| | pos_dim: dimension of the positional encoding vectors, e.g. 128. |
| | num_heads: number of heads to compute weights for, e.g. 8 |
| | query_head_dim: dimension of the query (and key), per head. e.g. 24. |
| | pos_head_dim: dimension of the projected positional encoding per head, e.g. 4. |
| | dropout: dropout probability for attn_output_weights. Default: 0.0. |
| | pos_emb_skip_rate: probability for skipping the pos_emb part of the scores on |
| | any given call to forward(), in training time. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | embed_dim: int, |
| | pos_dim: int, |
| | num_heads: int, |
| | query_head_dim: int, |
| | pos_head_dim: int, |
| | dropout: float = 0.0, |
| | pos_emb_skip_rate: FloatLike = ScheduledFloat((0.0, 0.5), (4000.0, 0.0)), |
| | ) -> None: |
| | super().__init__() |
| | self.embed_dim = embed_dim |
| | self.num_heads = num_heads |
| | self.query_head_dim = query_head_dim |
| | self.pos_head_dim = pos_head_dim |
| | self.dropout = dropout |
| | self.pos_emb_skip_rate = copy.deepcopy(pos_emb_skip_rate) |
| | self.name = None |
| |
|
| | key_head_dim = query_head_dim |
| | in_proj_dim = (query_head_dim + key_head_dim + pos_head_dim) * num_heads |
| |
|
| | |
| | |
| | |
| | |
| | |
| | self.in_proj = ScaledLinear( |
| | embed_dim, in_proj_dim, bias=True, initial_scale=query_head_dim**-0.25 |
| | ) |
| |
|
| | self.whiten_keys = Whiten( |
| | num_groups=num_heads, |
| | whitening_limit=_whitening_schedule(3.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.025, |
| | ) |
| |
|
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | self.balance_keys = Balancer( |
| | key_head_dim * num_heads, |
| | channel_dim=-1, |
| | min_positive=0.4, |
| | max_positive=0.6, |
| | min_abs=0.0, |
| | max_abs=100.0, |
| | prob=0.025, |
| | ) |
| |
|
| | |
| | self.linear_pos = ScaledLinear( |
| | pos_dim, num_heads * pos_head_dim, bias=False, initial_scale=0.05 |
| | ) |
| |
|
| | |
| | self.copy_pos_query = Identity() |
| | self.copy_query = Identity() |
| |
|
| | def forward( |
| | self, |
| | x: Tensor, |
| | pos_emb: Tensor, |
| | key_padding_mask: Optional[Tensor] = None, |
| | attn_mask: Optional[Tensor] = None, |
| | ) -> Tensor: |
| | r""" |
| | Args: |
| | x: input of shape (seq_len, batch_size, embed_dim) |
| | pos_emb: Positional embedding tensor, of shape (1, 2*seq_len - 1, pos_dim) |
| | key_padding_mask: a bool tensor of shape (batch_size, seq_len). Positions that |
| | are True in this mask will be ignored as sources in the attention weighting. |
| | attn_mask: mask of shape (seq_len, seq_len) or (batch_size, seq_len, seq_len), |
| | interpreted as ([batch_size,] tgt_seq_len, src_seq_len) |
| | saying which positions are allowed to attend to which other positions. |
| | Returns: |
| | a tensor of attention weights, of shape (hum_heads, batch_size, seq_len, seq_len) |
| | interpreted as (hum_heads, batch_size, tgt_seq_len, src_seq_len). |
| | """ |
| | x = self.in_proj(x) |
| | query_head_dim = self.query_head_dim |
| | pos_head_dim = self.pos_head_dim |
| | num_heads = self.num_heads |
| |
|
| | seq_len, batch_size, _ = x.shape |
| |
|
| | query_dim = query_head_dim * num_heads |
| |
|
| | |
| | q = x[..., 0:query_dim] |
| | k = x[..., query_dim : 2 * query_dim] |
| | |
| | p = x[..., 2 * query_dim :] |
| | assert p.shape[-1] == num_heads * pos_head_dim |
| |
|
| | q = self.copy_query(q) |
| | k = self.whiten_keys(self.balance_keys(k)) |
| | p = self.copy_pos_query(p) |
| |
|
| | q = q.reshape(seq_len, batch_size, num_heads, query_head_dim) |
| | p = p.reshape(seq_len, batch_size, num_heads, pos_head_dim) |
| | k = k.reshape(seq_len, batch_size, num_heads, query_head_dim) |
| |
|
| | |
| | q = q.permute(2, 1, 0, 3) |
| | p = p.permute(2, 1, 0, 3) |
| | k = k.permute(2, 1, 3, 0) |
| |
|
| | attn_scores = torch.matmul(q, k) |
| |
|
| | use_pos_scores = False |
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | |
| | use_pos_scores = True |
| | elif not self.training or random.random() >= float(self.pos_emb_skip_rate): |
| | use_pos_scores = True |
| |
|
| | if use_pos_scores: |
| | pos_emb = self.linear_pos(pos_emb) |
| | seq_len2 = 2 * seq_len - 1 |
| | pos_emb = pos_emb.reshape(-1, seq_len2, num_heads, pos_head_dim).permute( |
| | 2, 0, 3, 1 |
| | ) |
| | |
| |
|
| | |
| | |
| | pos_scores = torch.matmul(p, pos_emb) |
| | |
| | |
| | |
| | if torch.jit.is_tracing(): |
| | (num_heads, batch_size, time1, n) = pos_scores.shape |
| | rows = torch.arange(start=time1 - 1, end=-1, step=-1) |
| | cols = torch.arange(seq_len) |
| | rows = rows.repeat(batch_size * num_heads).unsqueeze(-1) |
| | indexes = rows + cols |
| | pos_scores = pos_scores.reshape(-1, n) |
| | pos_scores = torch.gather(pos_scores, dim=1, index=indexes) |
| | pos_scores = pos_scores.reshape(num_heads, batch_size, time1, seq_len) |
| | else: |
| | pos_scores = pos_scores.as_strided( |
| | (num_heads, batch_size, seq_len, seq_len), |
| | ( |
| | pos_scores.stride(0), |
| | pos_scores.stride(1), |
| | pos_scores.stride(2) - pos_scores.stride(3), |
| | pos_scores.stride(3), |
| | ), |
| | storage_offset=pos_scores.stride(3) * (seq_len - 1), |
| | ) |
| |
|
| | attn_scores = attn_scores + pos_scores |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | pass |
| | elif self.training and random.random() < 0.1: |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | attn_scores = penalize_abs_values_gt( |
| | attn_scores, limit=25.0, penalty=1.0e-04, name=self.name |
| | ) |
| |
|
| | assert attn_scores.shape == (num_heads, batch_size, seq_len, seq_len) |
| |
|
| | if attn_mask is not None: |
| | assert attn_mask.dtype == torch.bool |
| | |
| | |
| | |
| | |
| | attn_scores = attn_scores.masked_fill(attn_mask, -1000) |
| |
|
| | if key_padding_mask is not None: |
| | assert key_padding_mask.shape == ( |
| | batch_size, |
| | seq_len, |
| | ), key_padding_mask.shape |
| | attn_scores = attn_scores.masked_fill( |
| | key_padding_mask.unsqueeze(1), |
| | -1000, |
| | ) |
| |
|
| | |
| | |
| | |
| | |
| | attn_weights = softmax(attn_scores, dim=-1) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | pass |
| | elif random.random() < 0.001 and not self.training: |
| | self._print_attn_entropy(attn_weights) |
| |
|
| | attn_weights = nn.functional.dropout( |
| | attn_weights, p=self.dropout, training=self.training |
| | ) |
| |
|
| | return attn_weights |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | pos_emb: Tensor, |
| | cached_key: Tensor, |
| | left_context_len: int, |
| | key_padding_mask: Tensor, |
| | ) -> Tuple[Tensor, Tensor]: |
| | r""" |
| | Args: |
| | x: input of shape (seq_len, batch_size, embed_dim) |
| | pos_emb: Positional embedding tensor, of shape (1, left_context_len+2*seq_len-1, pos_dim) |
| | cached_key: cached attention key tensor of left context, |
| | of shape (left_context_len, batch_size, key_dim) |
| | left_context_len: number of left context frames. |
| | key_padding_mask: a bool tensor of shape (batch_size, seq_len). Positions that |
| | are True in this mask will be ignored as sources in the attention weighting. |
| | |
| | Returns: |
| | - attention weights, of shape (hum_heads, batch_size, seq_len, seq_len2), |
| | interpreted as (hum_heads, batch_size, tgt_seq_len, src_seq_len). |
| | - updated cached attention key tensor of left context. |
| | """ |
| | x = self.in_proj(x) |
| | query_head_dim = self.query_head_dim |
| | pos_head_dim = self.pos_head_dim |
| | num_heads = self.num_heads |
| |
|
| | seq_len, batch_size, _ = x.shape |
| |
|
| | query_dim = query_head_dim * num_heads |
| |
|
| | |
| | q = x[..., 0:query_dim] |
| | k = x[..., query_dim : 2 * query_dim] |
| | |
| | p = x[..., 2 * query_dim :] |
| | assert p.shape[-1] == num_heads * pos_head_dim |
| |
|
| | |
| | assert cached_key.shape[0] == left_context_len, ( |
| | cached_key.shape[0], |
| | left_context_len, |
| | ) |
| | k = torch.cat([cached_key, k], dim=0) |
| | |
| | cached_key = k[-left_context_len:, ...] |
| |
|
| | |
| | k_len = k.shape[0] |
| |
|
| | q = q.reshape(seq_len, batch_size, num_heads, query_head_dim) |
| | p = p.reshape(seq_len, batch_size, num_heads, pos_head_dim) |
| | k = k.reshape(k_len, batch_size, num_heads, query_head_dim) |
| |
|
| | |
| | q = q.permute(2, 1, 0, 3) |
| | p = p.permute(2, 1, 0, 3) |
| | k = k.permute(2, 1, 3, 0) |
| |
|
| | attn_scores = torch.matmul(q, k) |
| |
|
| | pos_emb = self.linear_pos(pos_emb) |
| | seq_len2 = 2 * seq_len - 1 + left_context_len |
| | pos_emb = pos_emb.reshape(-1, seq_len2, num_heads, pos_head_dim).permute( |
| | 2, 0, 3, 1 |
| | ) |
| | |
| |
|
| | |
| | |
| | pos_scores = torch.matmul(p, pos_emb) |
| |
|
| | if torch.jit.is_tracing(): |
| | (num_heads, batch_size, time1, n) = pos_scores.shape |
| | rows = torch.arange(start=time1 - 1, end=-1, step=-1) |
| | cols = torch.arange(k_len) |
| | rows = rows.repeat(batch_size * num_heads).unsqueeze(-1) |
| | indexes = rows + cols |
| | pos_scores = pos_scores.reshape(-1, n) |
| | pos_scores = torch.gather(pos_scores, dim=1, index=indexes) |
| | pos_scores = pos_scores.reshape(num_heads, batch_size, time1, k_len) |
| | |
| | |
| | |
| | else: |
| | pos_scores = pos_scores.as_strided( |
| | (num_heads, batch_size, seq_len, k_len), |
| | ( |
| | pos_scores.stride(0), |
| | pos_scores.stride(1), |
| | pos_scores.stride(2) - pos_scores.stride(3), |
| | pos_scores.stride(3), |
| | ), |
| | storage_offset=pos_scores.stride(3) * (seq_len - 1), |
| | ) |
| |
|
| | attn_scores = attn_scores + pos_scores |
| |
|
| | assert attn_scores.shape == ( |
| | num_heads, |
| | batch_size, |
| | seq_len, |
| | k_len, |
| | ), attn_scores.shape |
| |
|
| | if key_padding_mask is not None: |
| | assert key_padding_mask.shape == (batch_size, k_len), key_padding_mask.shape |
| | attn_scores = attn_scores.masked_fill( |
| | key_padding_mask.unsqueeze(1), |
| | -1000, |
| | ) |
| |
|
| | attn_weights = attn_scores.softmax(dim=-1) |
| |
|
| | return attn_weights, cached_key |
| |
|
| | def _print_attn_entropy(self, attn_weights: Tensor): |
| | |
| | (num_heads, batch_size, seq_len, seq_len) = attn_weights.shape |
| |
|
| | with torch.no_grad(): |
| | with torch.cuda.amp.autocast(enabled=False): |
| | attn_weights = attn_weights.to(torch.float32) |
| | attn_weights_entropy = ( |
| | -((attn_weights + 1.0e-20).log() * attn_weights) |
| | .sum(dim=-1) |
| | .mean(dim=(1, 2)) |
| | ) |
| | logging.info( |
| | f"name={self.name}, attn_weights_entropy = {attn_weights_entropy}" |
| | ) |
| |
|
| |
|
| | class SelfAttention(nn.Module): |
| | """ |
| | The simplest possible attention module. This one works with already-computed attention |
| | weights, e.g. as computed by RelPositionMultiheadAttentionWeights. |
| | |
| | Args: |
| | embed_dim: the input and output embedding dimension |
| | num_heads: the number of attention heads |
| | value_head_dim: the value dimension per head |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | embed_dim: int, |
| | num_heads: int, |
| | value_head_dim: int, |
| | ) -> None: |
| | super().__init__() |
| | self.in_proj = nn.Linear(embed_dim, num_heads * value_head_dim, bias=True) |
| |
|
| | self.out_proj = ScaledLinear( |
| | num_heads * value_head_dim, embed_dim, bias=True, initial_scale=0.05 |
| | ) |
| |
|
| | self.whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(7.5, ratio=3.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | def forward( |
| | self, |
| | x: Tensor, |
| | attn_weights: Tensor, |
| | ) -> Tensor: |
| | """ |
| | Args: |
| | x: input tensor, of shape (seq_len, batch_size, embed_dim) |
| | attn_weights: a tensor of shape (num_heads, batch_size, seq_len, seq_len), |
| | with seq_len being interpreted as (tgt_seq_len, src_seq_len). Expect |
| | attn_weights.sum(dim=-1) == 1. |
| | Returns: |
| | a tensor with the same shape as x. |
| | """ |
| | (seq_len, batch_size, embed_dim) = x.shape |
| | num_heads = attn_weights.shape[0] |
| | assert attn_weights.shape == (num_heads, batch_size, seq_len, seq_len) |
| |
|
| | x = self.in_proj(x) |
| | x = x.reshape(seq_len, batch_size, num_heads, -1).permute(2, 1, 0, 3) |
| | |
| | value_head_dim = x.shape[-1] |
| |
|
| | |
| | x = torch.matmul(attn_weights, x) |
| | |
| |
|
| | x = ( |
| | x.permute(2, 1, 0, 3) |
| | .contiguous() |
| | .view(seq_len, batch_size, num_heads * value_head_dim) |
| | ) |
| |
|
| | |
| | x = self.out_proj(x) |
| | x = self.whiten(x) |
| |
|
| | return x |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | attn_weights: Tensor, |
| | cached_val: Tensor, |
| | left_context_len: int, |
| | ) -> Tuple[Tensor, Tensor]: |
| | """ |
| | Args: |
| | x: input tensor, of shape (seq_len, batch_size, embed_dim) |
| | attn_weights: a tensor of shape (num_heads, batch_size, seq_len, seq_len), |
| | with seq_len being interpreted as (tgt_seq_len, src_seq_len). Expect |
| | attn_weights.sum(dim=-1) == 1. |
| | cached_val: cached attention value tensor of left context, |
| | of shape (left_context_len, batch_size, value_dim) |
| | left_context_len: number of left context frames. |
| | |
| | Returns: |
| | - attention weighted output, a tensor with the same shape as x. |
| | - updated cached attention value tensor of left context. |
| | """ |
| | (seq_len, batch_size, embed_dim) = x.shape |
| | num_heads = attn_weights.shape[0] |
| | seq_len2 = seq_len + left_context_len |
| | assert attn_weights.shape == (num_heads, batch_size, seq_len, seq_len2) |
| |
|
| | x = self.in_proj(x) |
| |
|
| | |
| | assert cached_val.shape[0] == left_context_len, ( |
| | cached_val.shape[0], |
| | left_context_len, |
| | ) |
| | x = torch.cat([cached_val, x], dim=0) |
| | |
| | cached_val = x[-left_context_len:, ...] |
| |
|
| | x = x.reshape(seq_len2, batch_size, num_heads, -1).permute(2, 1, 0, 3) |
| | |
| | value_head_dim = x.shape[-1] |
| |
|
| | |
| | x = torch.matmul(attn_weights, x) |
| | |
| |
|
| | x = ( |
| | x.permute(2, 1, 0, 3) |
| | .contiguous() |
| | .view(seq_len, batch_size, num_heads * value_head_dim) |
| | ) |
| |
|
| | |
| | x = self.out_proj(x) |
| |
|
| | return x, cached_val |
| |
|
| |
|
| | class FeedforwardModule(nn.Module): |
| | """Feedforward module in Zipformer2 model.""" |
| |
|
| | def __init__(self, embed_dim: int, feedforward_dim: int, dropout: FloatLike): |
| | super(FeedforwardModule, self).__init__() |
| | self.in_proj = nn.Linear(embed_dim, feedforward_dim) |
| |
|
| | self.hidden_balancer = Balancer( |
| | feedforward_dim, |
| | channel_dim=-1, |
| | min_positive=0.3, |
| | max_positive=1.0, |
| | min_abs=0.75, |
| | max_abs=5.0, |
| | ) |
| |
|
| | |
| | self.out_proj = ActivationDropoutAndLinear( |
| | feedforward_dim, |
| | embed_dim, |
| | activation="SwooshL", |
| | dropout_p=dropout, |
| | dropout_shared_dim=0, |
| | bias=True, |
| | initial_scale=0.1, |
| | ) |
| |
|
| | self.out_whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(7.5), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | def forward(self, x: Tensor): |
| | x = self.in_proj(x) |
| | x = self.hidden_balancer(x) |
| | |
| | x = self.out_proj(x) |
| | x = self.out_whiten(x) |
| | return x |
| |
|
| |
|
| | class NonlinAttention(nn.Module): |
| | """This is like the ConvolutionModule, but refactored so that we use multiplication by attention weights (borrowed |
| | from the attention module) in place of actual convolution. We also took out the second nonlinearity, the |
| | one after the attention mechanism. |
| | |
| | Args: |
| | channels (int): The number of channels of conv layers. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | channels: int, |
| | hidden_channels: int, |
| | ) -> None: |
| | super().__init__() |
| |
|
| | self.hidden_channels = hidden_channels |
| |
|
| | self.in_proj = nn.Linear(channels, hidden_channels * 3, bias=True) |
| |
|
| | |
| | |
| | |
| | |
| | self.balancer = Balancer( |
| | hidden_channels, |
| | channel_dim=-1, |
| | min_positive=ScheduledFloat((0.0, 0.25), (20000.0, 0.05)), |
| | max_positive=ScheduledFloat((0.0, 0.75), (20000.0, 0.95)), |
| | min_abs=0.5, |
| | max_abs=5.0, |
| | ) |
| | self.tanh = nn.Tanh() |
| |
|
| | self.identity1 = Identity() |
| | self.identity2 = Identity() |
| | self.identity3 = Identity() |
| |
|
| | self.out_proj = ScaledLinear( |
| | hidden_channels, channels, bias=True, initial_scale=0.05 |
| | ) |
| |
|
| | self.whiten1 = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(5.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | self.whiten2 = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(5.0, ratio=3.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | def forward( |
| | self, |
| | x: Tensor, |
| | attn_weights: Tensor, |
| | ) -> Tensor: |
| | """. |
| | Args: |
| | x: a Tensor of shape (seq_len, batch_size, num_channels) |
| | attn_weights: a Tensor of shape (num_heads, batch_size, seq_len, seq_len) |
| | Returns: |
| | a Tensor with the same shape as x |
| | """ |
| | x = self.in_proj(x) |
| |
|
| | (seq_len, batch_size, _) = x.shape |
| | hidden_channels = self.hidden_channels |
| |
|
| | s, x, y = x.chunk(3, dim=-1) |
| |
|
| | |
| |
|
| | s = self.balancer(s) |
| | s = self.tanh(s) |
| |
|
| | s = s.unsqueeze(-1).reshape(seq_len, batch_size, hidden_channels) |
| | x = self.whiten1(x) |
| | x = x * s |
| | x = self.identity1(x) |
| |
|
| | (seq_len, batch_size, embed_dim) = x.shape |
| | num_heads = attn_weights.shape[0] |
| | assert attn_weights.shape == (num_heads, batch_size, seq_len, seq_len) |
| |
|
| | x = x.reshape(seq_len, batch_size, num_heads, -1).permute(2, 1, 0, 3) |
| | |
| | x = torch.matmul(attn_weights, x) |
| | |
| | x = x.permute(2, 1, 0, 3).reshape(seq_len, batch_size, -1) |
| |
|
| | y = self.identity2(y) |
| | x = x * y |
| | x = self.identity3(x) |
| |
|
| | x = self.out_proj(x) |
| | x = self.whiten2(x) |
| | return x |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | attn_weights: Tensor, |
| | cached_x: Tensor, |
| | left_context_len: int, |
| | ) -> Tuple[Tensor, Tensor]: |
| | """. |
| | Args: |
| | x: a Tensor of shape (seq_len, batch_size, num_channels) |
| | attn_weights: a Tensor of shape (num_heads, batch_size, seq_len, seq_len) |
| | cached_x: left context, a Tensor of shape |
| | (num_heads, batch_size, left_context_len, head_dim) |
| | left_context_len: number of left context frames. |
| | Returns: |
| | - a Tensor with the same shape as x |
| | - updated left context with same shape as cached_x |
| | """ |
| | x = self.in_proj(x) |
| |
|
| | (seq_len, batch_size, _) = x.shape |
| | hidden_channels = self.hidden_channels |
| |
|
| | s, x, y = x.chunk(3, dim=-1) |
| |
|
| | |
| | s = self.tanh(s) |
| |
|
| | s = s.unsqueeze(-1).reshape(seq_len, batch_size, hidden_channels) |
| | x = x * s |
| |
|
| | (seq_len, batch_size, embed_dim) = x.shape |
| | num_heads = attn_weights.shape[0] |
| | assert attn_weights.shape == ( |
| | num_heads, |
| | batch_size, |
| | seq_len, |
| | left_context_len + seq_len, |
| | ) |
| |
|
| | x = x.reshape(seq_len, batch_size, num_heads, -1).permute(2, 1, 0, 3) |
| | |
| |
|
| | |
| | assert cached_x.shape[2] == left_context_len, ( |
| | cached_x.shape[2], |
| | left_context_len, |
| | ) |
| | x_pad = torch.cat([cached_x, x], dim=2) |
| | |
| | cached_x = x_pad[:, :, -left_context_len:, :] |
| |
|
| | x = torch.matmul(attn_weights, x_pad) |
| | |
| | x = x.permute(2, 1, 0, 3).reshape(seq_len, batch_size, -1) |
| |
|
| | x = x * y |
| |
|
| | x = self.out_proj(x) |
| | return x, cached_x |
| |
|
| |
|
| | class ConvolutionModule(nn.Module): |
| | """ConvolutionModule in Zipformer2 model. |
| | Modified from https://github.com/espnet/espnet/blob/master/espnet/nets/pytorch_backend/zipformer/convolution.py |
| | |
| | Args: |
| | channels (int): The number of channels of conv layers. |
| | kernel_size (int): Kernerl size of conv layers. |
| | bias (bool): Whether to use bias in conv layers (default=True). |
| | |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | channels: int, |
| | kernel_size: int, |
| | causal: bool, |
| | ) -> None: |
| | """Construct a ConvolutionModule object.""" |
| | super(ConvolutionModule, self).__init__() |
| | |
| | assert (kernel_size - 1) % 2 == 0 |
| |
|
| | bottleneck_dim = channels |
| | self.causal = causal |
| |
|
| | self.in_proj = nn.Linear( |
| | channels, |
| | 2 * bottleneck_dim, |
| | ) |
| | |
| | |
| |
|
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | self.balancer1 = Balancer( |
| | bottleneck_dim, |
| | channel_dim=-1, |
| | min_positive=ScheduledFloat((0.0, 0.05), (8000.0, 0.025)), |
| | max_positive=1.0, |
| | min_abs=1.5, |
| | max_abs=ScheduledFloat((0.0, 5.0), (8000.0, 10.0), default=1.0), |
| | ) |
| |
|
| | self.activation1 = Identity() |
| |
|
| | self.sigmoid = nn.Sigmoid() |
| |
|
| | self.activation2 = Identity() |
| |
|
| | assert kernel_size % 2 == 1 |
| |
|
| | self.depthwise_conv = ( |
| | ChunkCausalDepthwiseConv1d(channels=bottleneck_dim, kernel_size=kernel_size) |
| | if causal |
| | else nn.Conv1d( |
| | in_channels=bottleneck_dim, |
| | out_channels=bottleneck_dim, |
| | groups=bottleneck_dim, |
| | kernel_size=kernel_size, |
| | padding=kernel_size // 2, |
| | ) |
| | ) |
| |
|
| | self.balancer2 = Balancer( |
| | bottleneck_dim, |
| | channel_dim=1, |
| | min_positive=ScheduledFloat((0.0, 0.1), (8000.0, 0.05)), |
| | max_positive=1.0, |
| | min_abs=ScheduledFloat((0.0, 0.2), (20000.0, 0.5)), |
| | max_abs=10.0, |
| | ) |
| |
|
| | self.whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=_whitening_schedule(7.5), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | self.out_proj = ActivationDropoutAndLinear( |
| | bottleneck_dim, |
| | channels, |
| | activation="SwooshR", |
| | dropout_p=0.0, |
| | initial_scale=0.05, |
| | ) |
| |
|
| | def forward( |
| | self, |
| | x: Tensor, |
| | src_key_padding_mask: Optional[Tensor] = None, |
| | chunk_size: int = -1, |
| | ) -> Tensor: |
| | """Compute convolution module. |
| | |
| | Args: |
| | x: Input tensor (#time, batch, channels). |
| | src_key_padding_mask: the mask for the src keys per batch (optional): |
| | (batch, #time), contains True in masked positions. |
| | |
| | Returns: |
| | Tensor: Output tensor (#time, batch, channels). |
| | |
| | """ |
| |
|
| | x = self.in_proj(x) |
| |
|
| | x, s = x.chunk(2, dim=-1) |
| | s = self.balancer1(s) |
| | s = self.sigmoid(s) |
| | x = self.activation1(x) |
| | x = x * s |
| | x = self.activation2(x) |
| |
|
| | |
| |
|
| | |
| | x = x.permute(1, 2, 0) |
| |
|
| | if src_key_padding_mask is not None: |
| | x = x.masked_fill(src_key_padding_mask.unsqueeze(1).expand_as(x), 0.0) |
| |
|
| | if ( |
| | not torch.jit.is_scripting() |
| | and not torch.jit.is_tracing() |
| | and chunk_size >= 0 |
| | ): |
| | |
| | assert ( |
| | self.causal |
| | ), "Must initialize model with causal=True if you use chunk_size" |
| | x = self.depthwise_conv(x, chunk_size=chunk_size) |
| | else: |
| | x = self.depthwise_conv(x) |
| |
|
| | x = self.balancer2(x) |
| | x = x.permute(2, 0, 1) |
| |
|
| | x = self.whiten(x) |
| | x = self.out_proj(x) |
| |
|
| | return x |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | cache: Tensor, |
| | src_key_padding_mask: Tensor, |
| | ) -> Tuple[Tensor, Tensor]: |
| | """Compute convolution module in streaming forward mode. |
| | |
| | Args: |
| | x: Input tensor (#time, batch, channels). |
| | cache: cached left context for depthwise_conv of shape |
| | (#batch, channels, left_pad) |
| | src_key_padding_mask: the mask for the src keys per batch (optional): |
| | (batch, #time), contains True in masked positions. |
| | |
| | Returns: |
| | - Output tensor (#time, batch, channels). |
| | - Updated cache (#batch, channels, left_pad) |
| | """ |
| |
|
| | x = self.in_proj(x) |
| |
|
| | x, s = x.chunk(2, dim=2) |
| | s = self.sigmoid(s) |
| | x = x * s |
| | |
| |
|
| | |
| | x = x.permute(1, 2, 0) |
| |
|
| | if src_key_padding_mask is not None: |
| | x = x.masked_fill(src_key_padding_mask.unsqueeze(1).expand_as(x), 0.0) |
| |
|
| | x, cache = self.depthwise_conv.streaming_forward(x, cache=cache) |
| |
|
| | x = x.permute(2, 0, 1) |
| |
|
| | x = self.out_proj(x) |
| |
|
| | return x, cache |
| |
|
| |
|
| | class ScalarMultiply(nn.Module): |
| | def __init__(self, scale: float): |
| | super().__init__() |
| | self.scale = scale |
| |
|
| | def forward(self, x): |
| | return x * self.scale |
| |
|
| | class ConvNeXt(nn.Module): |
| | """ |
| | Our interpretation of the ConvNeXt module as used in https://arxiv.org/pdf/2206.14747.pdf |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | channels: int, |
| | hidden_ratio: int = 3, |
| | kernel_size: Tuple[int, int] = (7, 7), |
| | layerdrop_rate: FloatLike = None, |
| | ): |
| | super().__init__() |
| | self.padding = ((kernel_size[0] - 1) // 2, (kernel_size[1] - 1) // 2) |
| | hidden_channels = channels * hidden_ratio |
| | if layerdrop_rate is None: |
| | layerdrop_rate = ScheduledFloat((0.0, 0.2), (20000.0, 0.015)) |
| | self.layerdrop_rate = layerdrop_rate |
| |
|
| | self.depthwise_conv = nn.Conv2d( |
| | in_channels=channels, |
| | out_channels=channels, |
| | groups=channels, |
| | kernel_size=kernel_size, |
| | padding=self.padding, |
| | ) |
| |
|
| | self.pointwise_conv1 = nn.Conv2d( |
| | in_channels=channels, out_channels=hidden_channels, kernel_size=1 |
| | ) |
| |
|
| | self.hidden_balancer = Balancer( |
| | hidden_channels, |
| | channel_dim=1, |
| | min_positive=0.3, |
| | max_positive=1.0, |
| | min_abs=0.75, |
| | max_abs=5.0, |
| | ) |
| |
|
| | self.activation = SwooshL() |
| | self.pointwise_conv2 = ScaledConv2d( |
| | in_channels=hidden_channels, |
| | out_channels=channels, |
| | kernel_size=1, |
| | initial_scale=0.01, |
| | ) |
| |
|
| | self.out_balancer = Balancer( |
| | channels, |
| | channel_dim=1, |
| | min_positive=0.4, |
| | max_positive=0.6, |
| | min_abs=1.0, |
| | max_abs=6.0, |
| | ) |
| | self.out_whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=5.0, |
| | prob=(0.025, 0.25), |
| | grad_scale=0.01, |
| | ) |
| |
|
| | def forward(self, x: Tensor) -> Tensor: |
| | if torch.jit.is_scripting() or torch.jit.is_tracing() or not self.training: |
| | return self.forward_internal(x) |
| | layerdrop_rate = float(self.layerdrop_rate) |
| |
|
| | if layerdrop_rate != 0.0: |
| | batch_size = x.shape[0] |
| | mask = ( |
| | torch.rand((batch_size, 1, 1, 1), dtype=x.dtype, device=x.device) |
| | > layerdrop_rate |
| | ) |
| | else: |
| | mask = None |
| | |
| | |
| | return self.forward_internal(x, mask) |
| |
|
| | def forward_internal( |
| | self, x: Tensor, layer_skip_mask: Optional[Tensor] = None |
| | ) -> Tensor: |
| | """ |
| | x layout: (N, C, H, W), i.e. (batch_size, num_channels, num_frames, num_freqs) |
| | |
| | The returned value has the same shape as x. |
| | """ |
| | bypass = x |
| | x = self.depthwise_conv(x) |
| | x = self.pointwise_conv1(x) |
| | x = self.hidden_balancer(x) |
| | x = self.activation(x) |
| | x = self.pointwise_conv2(x) |
| |
|
| | if layer_skip_mask is not None: |
| | x = x * layer_skip_mask |
| |
|
| | x = bypass + x |
| | x = self.out_balancer(x) |
| |
|
| | if x.requires_grad: |
| | x = x.transpose(1, 3) |
| | x = self.out_whiten(x) |
| | x = x.transpose(1, 3) |
| |
|
| | return x |
| |
|
| | def streaming_forward( |
| | self, |
| | x: Tensor, |
| | cached_left_pad: Tensor, |
| | ) -> Tuple[Tensor, Tensor]: |
| | """ |
| | Args: |
| | x layout: (N, C, H, W), i.e. (batch_size, num_channels, num_frames, num_freqs) |
| | cached_left_pad: (batch_size, num_channels, left_pad, num_freqs) |
| | |
| | Returns: |
| | - The returned value has the same shape as x. |
| | - Updated cached_left_pad. |
| | """ |
| | padding = self.padding |
| |
|
| | |
| | T = x.size(2) - padding[0] |
| |
|
| | bypass = x[:, :, :T, :] |
| |
|
| | |
| | assert cached_left_pad.size(2) == padding[0], ( |
| | cached_left_pad.size(2), |
| | padding[0], |
| | ) |
| | x = torch.cat([cached_left_pad, x], dim=2) |
| | |
| | cached_left_pad = x[:, :, T : padding[0] + T, :] |
| |
|
| | |
| | x = torch.nn.functional.conv2d( |
| | x, |
| | weight=self.depthwise_conv.weight, |
| | bias=self.depthwise_conv.bias, |
| | padding=(0, padding[1]), |
| | groups=self.depthwise_conv.groups, |
| | ) |
| | x = self.pointwise_conv1(x) |
| | x = self.hidden_balancer(x) |
| | x = self.activation(x) |
| | x = self.pointwise_conv2(x) |
| |
|
| | x = bypass + x |
| | return x, cached_left_pad |
| |
|
| |
|
| | class Conv2dSubsampling(nn.Module): |
| | """Convolutional 2D subsampling (to 1/2 length). |
| | |
| | Convert an input of shape (N, T, idim) to an output |
| | with shape (N, T', odim), where |
| | T' = (T-3)//2 - 2 == (T-7)//2 |
| | |
| | It is based on |
| | https://github.com/espnet/espnet/blob/master/espnet/nets/pytorch_backend/transformer/subsampling.py # noqa |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | in_channels: int, |
| | out_channels: int, |
| | layer1_channels: int = 8, |
| | layer2_channels: int = 32, |
| | layer3_channels: int = 128, |
| | dropout: FloatLike = 0.1, |
| | ) -> None: |
| | """ |
| | Args: |
| | in_channels: |
| | Number of channels in. The input shape is (N, T, in_channels). |
| | Caution: It requires: T >=7, in_channels >=7 |
| | out_channels |
| | Output dim. The output shape is (N, (T-3)//2, out_channels) |
| | layer1_channels: |
| | Number of channels in layer1 |
| | layer1_channels: |
| | Number of channels in layer2 |
| | bottleneck: |
| | bottleneck dimension for 1d squeeze-excite |
| | """ |
| | assert in_channels >= 7 |
| | super().__init__() |
| |
|
| | |
| | |
| | |
| | |
| | |
| |
|
| | self.conv = nn.Sequential( |
| | nn.Conv2d( |
| | in_channels=1, |
| | out_channels=layer1_channels, |
| | kernel_size=3, |
| | padding=(0, 1), |
| | ), |
| | ScaleGrad(0.2), |
| | Balancer(layer1_channels, channel_dim=1, max_abs=1.0), |
| | SwooshR(), |
| | nn.Conv2d( |
| | in_channels=layer1_channels, |
| | out_channels=layer2_channels, |
| | kernel_size=3, |
| | stride=2, |
| | padding=0, |
| | ), |
| | Balancer(layer2_channels, channel_dim=1, max_abs=4.0), |
| | SwooshR(), |
| | nn.Conv2d( |
| | in_channels=layer2_channels, |
| | out_channels=layer3_channels, |
| | kernel_size=3, |
| | stride=(1, 2), |
| | ), |
| | Balancer(layer3_channels, channel_dim=1, max_abs=4.0), |
| | SwooshR(), |
| | ) |
| |
|
| | |
| | self.convnext = ConvNeXt(layer3_channels, kernel_size=(7, 7)) |
| |
|
| | |
| | self.out_width = (((in_channels - 1) // 2) - 1) // 2 |
| | self.layer3_channels = layer3_channels |
| |
|
| | self.out = nn.Linear(self.out_width * layer3_channels, out_channels) |
| | |
| | |
| | |
| | self.out_whiten = Whiten( |
| | num_groups=1, |
| | whitening_limit=ScheduledFloat((0.0, 4.0), (20000.0, 8.0), default=4.0), |
| | prob=(0.025, 0.25), |
| | grad_scale=0.02, |
| | ) |
| |
|
| | |
| | |
| | self.out_norm = BiasNorm(out_channels) |
| | self.dropout = Dropout3(dropout, shared_dim=1) |
| |
|
| | def forward( |
| | self, x: torch.Tensor, x_lens: torch.Tensor |
| | ) -> Tuple[torch.Tensor, torch.Tensor]: |
| | """Subsample x. |
| | |
| | Args: |
| | x: |
| | Its shape is (N, T, idim). |
| | x_lens: |
| | A tensor of shape (batch_size,) containing the number of frames in |
| | |
| | Returns: |
| | - a tensor of shape (N, (T-7)//2, odim) |
| | - output lengths, of shape (batch_size,) |
| | """ |
| | |
| | x = x.unsqueeze(1) |
| | |
| | |
| | |
| | x = self.conv(x) |
| | x = self.convnext(x) |
| |
|
| | |
| | b, c, t, f = x.size() |
| |
|
| | x = x.transpose(1, 2).reshape(b, t, c * f) |
| | |
| |
|
| | x = self.out(x) |
| | |
| | x = self.out_whiten(x) |
| | x = self.out_norm(x) |
| | x = self.dropout(x) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | x_lens = (x_lens - 7) // 2 |
| | else: |
| | with warnings.catch_warnings(): |
| | warnings.simplefilter("ignore") |
| | x_lens = (x_lens - 7) // 2 |
| | assert x.size(1) == x_lens.max().item(), (x.size(1), x_lens.max()) |
| |
|
| | return x, x_lens |
| |
|
| | def streaming_forward( |
| | self, |
| | x: torch.Tensor, |
| | x_lens: torch.Tensor, |
| | cached_left_pad: Tensor, |
| | ) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]: |
| | """Subsample x. |
| | |
| | Args: |
| | x: |
| | Its shape is (N, T, idim). |
| | x_lens: |
| | A tensor of shape (batch_size,) containing the number of frames in |
| | |
| | Returns: |
| | - a tensor of shape (N, (T-7)//2, odim) |
| | - output lengths, of shape (batch_size,) |
| | - updated cache |
| | """ |
| | |
| | x = x.unsqueeze(1) |
| |
|
| | |
| | x = self.conv(x) |
| |
|
| | |
| | x, cached_left_pad = self.convnext.streaming_forward( |
| | x, cached_left_pad=cached_left_pad |
| | ) |
| |
|
| | |
| | b, c, t, f = x.size() |
| |
|
| | x = x.transpose(1, 2).reshape(b, t, c * f) |
| | |
| |
|
| | x = self.out(x) |
| | |
| | x = self.out_norm(x) |
| |
|
| | if torch.jit.is_scripting() or torch.jit.is_tracing(): |
| | assert self.convnext.padding[0] == 3 |
| | |
| | x_lens = (x_lens - 7) // 2 - 3 |
| | else: |
| | with warnings.catch_warnings(): |
| | warnings.simplefilter("ignore") |
| | |
| | assert self.convnext.padding[0] == 3 |
| | x_lens = (x_lens - 7) // 2 - 3 |
| |
|
| | assert x.size(1) == x_lens.max().item(), (x.shape, x_lens.max()) |
| |
|
| | return x, x_lens, cached_left_pad |
| |
|
| | @torch.jit.export |
| | def get_init_states( |
| | self, |
| | batch_size: int = 1, |
| | device: torch.device = torch.device("cpu"), |
| | ) -> Tensor: |
| | """Get initial states for Conv2dSubsampling module. |
| | It is the cached left padding for ConvNeXt module, |
| | of shape (batch_size, num_channels, left_pad, num_freqs) |
| | """ |
| | left_pad = self.convnext.padding[0] |
| | freq = self.out_width |
| | channels = self.layer3_channels |
| | cached_embed_left_pad = torch.zeros(batch_size, channels, left_pad, freq).to( |
| | device |
| | ) |
| |
|
| | return cached_embed_left_pad |
| |
|
| |
|
| | def _test_zipformer_main(causal: bool = False): |
| | batch_size = 5 |
| | seq_len = 20 |
| | |
| |
|
| | c = Zipformer2( |
| | encoder_dim=(64, 96), |
| | encoder_unmasked_dim=(48, 64), |
| | num_heads=(4, 4), |
| | causal=causal, |
| | chunk_size=(4,) if causal else (-1,), |
| | left_context_frames=(64,), |
| | ) |
| | batch_size = 5 |
| | seq_len = 20 |
| | |
| | f = c( |
| | torch.randn(seq_len, batch_size, 64), |
| | torch.full((batch_size,), seq_len, dtype=torch.int64), |
| | ) |
| | f[0].sum().backward() |
| | c.eval() |
| | f = c( |
| | torch.randn(seq_len, batch_size, 64), |
| | torch.full((batch_size,), seq_len, dtype=torch.int64), |
| | ) |
| | f |
| |
|
| |
|
| | if __name__ == "__main__": |
| | logging.getLogger().setLevel(logging.INFO) |
| | torch.set_num_threads(1) |
| | torch.set_num_interop_threads(1) |
| | _test_zipformer_main(False) |
| | _test_zipformer_main(True) |
| |
|