Zengwei Yao b3e6bf66df
Add modified beam search decoding for streaming inference with emformer model (#327)
* Fix torch.nn.Embedding error for torch below 1.8.0

* Changes to fbank computation, use lilcom chunky writer

* Add min in q,k,v of attention

* Remove learnable offset, use relu instead.

* Experiments based on SpecAugment change

* Merge specaug change from Mingshuang.

* Use much more aggressive SpecAug setup

* Fix to num_feature_masks bug I introduced; reduce max_frames_mask_fraction 0.4->0.3

* Change p=0.5->0.9, mask_fraction 0.3->0.2

* Change p=0.9 to p=0.8 in SpecAug

* Fix num_time_masks code; revert 0.8 to 0.9

* Change max_frames from 0.2 to 0.15

* Remove ReLU in attention

* Adding diagnostics code...

* Refactor/simplify ConformerEncoder

* First version of rand-combine iterated-training-like idea.

* Improvements to diagnostics (RE those with 1 dim

* Add pelu to this good-performing setup..

* Small bug fixes/imports

* Add baseline for the PeLU expt, keeping only the small normalization-related changes.

* pelu_base->expscale, add 2xExpScale in subsampling, and in feedforward units.

* Double learning rate of exp-scale units

* Combine ExpScale and swish for memory reduction

* Add import

* Fix backprop bug

* Fix bug in diagnostics

* Increase scale on Scale from 4 to 20

* Increase scale from 20 to 50.

* Fix duplicate Swish; replace norm+swish with swish+exp-scale in convolution module

* Reduce scale from 50 to 20

* Add deriv-balancing code

* Double the threshold in brelu; slightly increase max_factor.

* Fix exp dir

* Convert swish nonlinearities to ReLU

* Replace relu with swish-squared.

* Restore ConvolutionModule to state before changes; change all Swish,Swish(Swish) to SwishOffset.

* Replace norm on input layer with scale of 0.1.

* Extensions to diagnostics code

* Update diagnostics

* Add BasicNorm module

* Replace most normalizations with scales (still have norm in conv)

* Change exp dir

* Replace norm in ConvolutionModule with a scaling factor.

* use nonzero threshold in DerivBalancer

* Add min-abs-value 0.2

* Fix dirname

* Change min-abs threshold from 0.2 to 0.5

* Scale up pos_bias_u and pos_bias_v before use.

* Reduce max_factor to 0.01

* Fix q*scaling logic

* Change max_factor in DerivBalancer from 0.025 to 0.01; fix scaling code.

* init 1st conv module to smaller variance

* Change how scales are applied; fix residual bug

* Reduce min_abs from 0.5 to 0.2

* Introduce in_scale=0.5 for SwishExpScale

* Fix scale from 0.5 to 2.0 as I really intended..

* Set scaling on SwishExpScale

* Add identity pre_norm_final for diagnostics.

* Add learnable post-scale for mha

* Fix self.post-scale-mha

* Another rework, use scales on linear/conv

* Change dir name

* Reduce initial scaling of modules

* Bug-fix RE bias

* Cosmetic change

* Reduce initial_scale.

* Replace ExpScaleRelu with DoubleSwish()

* DoubleSwish fix

* Use learnable scales for joiner and decoder

* Add max-abs-value constraint in DerivBalancer

* Add max-abs-value

* Change dir name

* Remove ExpScale in feedforward layes.

* Reduce max-abs limit from 1000 to 100; introduce 2 DerivBalancer modules in conv layer.

* Make DoubleSwish more memory efficient

* Reduce constraints from deriv-balancer in ConvModule.

* Add warmup mode

* Remove max-positive constraint in deriv-balancing; add second DerivBalancer in conv module.

* Add some extra info to diagnostics

* Add deriv-balancer at output of embedding.

* Add more stats.

* Make epsilon in BasicNorm learnable, optionally.

* Draft of 0mean changes..

* Rework of initialization

* Fix typo

* Remove dead code

* Modifying initialization from normal->uniform; add initial_scale when initializing

* bug fix re sqrt

* Remove xscale from pos_embedding

* Remove some dead code.

* Cosmetic changes/renaming things

* Start adding some files..

* Add more files..

* update decode.py file type

* Add remaining files in pruned_transducer_stateless2

* Fix diagnostics-getting code

* Scale down pruned loss in warmup mode

* Reduce warmup scale on pruned loss form 0.1 to 0.01.

* Remove scale_speed, make swish deriv more efficient.

* Cosmetic changes to swish

* Double warm_step

* Fix bug with import

* Change initial std from 0.05 to 0.025.

* Set also scale for embedding to 0.025.

* Remove logging code that broke with newer Lhotse; fix bug with pruned_loss

* Add norm+balancer to VggSubsampling

* Incorporate changes from master into pruned_transducer_stateless2.

* Add max-abs=6, debugged version

* Change 0.025,0.05 to 0.01 in initializations

* Fix balancer code

* Whitespace fix

* Reduce initial pruned_loss scale from 0.01 to 0.0

* Increase warm_step (and valid_interval)

* Change max-abs from 6 to 10

* Change how warmup works.

* Add changes from master to decode.py, train.py

* Simplify the warmup code; max_abs 10->6

* Make warmup work by scaling layer contributions; leave residual layer-drop

* Fix bug

* Fix test mode with random layer dropout

* Add random-number-setting function in dataloader

* Fix/patch how fix_random_seed() is imported.

* Reduce layer-drop prob

* Reduce layer-drop prob after warmup to 1 in 100

* Change power of lr-schedule from -0.5 to -0.333

* Increase model_warm_step to 4k

* Change max-keep-prob to 0.95

* Refactoring and simplifying conformer and frontend

* Rework conformer, remove some code.

* Reduce 1st conv channels from 64 to 32

* Add another convolutional layer

* Fix padding bug

* Remove dropout in output layer

* Reduce speed of some components

* Initial refactoring to remove unnecessary vocab_size

* Fix RE identity

* Bug-fix

* Add final dropout to conformer

* Remove some un-used code

* Replace nn.Linear with ScaledLinear in simple joiner

* Make 2 projections..

* Reduce initial_speed

* Use initial_speed=0.5

* Reduce initial_speed further from 0.5 to 0.25

* Reduce initial_speed from 0.5 to 0.25

* Change how warmup is applied.

* Bug fix to warmup_scale

* Fix test-mode

* Remove final dropout

* Make layer dropout rate 0.075, was 0.1.

* First draft of model rework

* Various bug fixes

* Change learning speed of simple_lm_proj

* Revert transducer_stateless/ to state in upstream/master

* Fix to joiner to allow different dims

* Some cleanups

* Make training more efficient, avoid redoing some projections.

* Change how warm-step is set

* First draft of new approach to learning rates + init

* Some fixes..

* Change initialization to 0.25

* Fix type of parameter

* Fix weight decay formula by adding 1/1-beta

* Fix weight decay formula by adding 1/1-beta

* Fix checkpoint-writing

* Fix to reading scheudler from optim

* Simplified optimizer, rework somet things..

* Reduce model_warm_step from 4k to 3k

* Fix bug in lambda

* Bug-fix RE sign of target_rms

* Changing initial_speed from 0.25 to 01

* Change some defaults in LR-setting rule.

* Remove initial_speed

* Set new scheduler

* Change exponential part of lrate to be epoch based

* Fix bug

* Set 2n rule..

* Implement 2o schedule

* Make lrate rule more symmetric

* Implement 2p version of learning rate schedule.

* Refactor how learning rate is set.

* Fix import

* Modify init (#301)

* update icefall/__init__.py to import more common functions.

* update icefall/__init__.py

* make imports style consistent.

* exclude black check for icefall/__init__.py in pyproject.toml.

* Minor fixes for logging (#296)

* Minor fixes for logging

* Minor fix

* Fix dir names

* Modify beam search to be efficient with current joienr

* Fix adding learning rate to tensorboard

* Fix docs in optim.py

* Support mix precision training on the reworked model (#305)

* Add mix precision support

* Minor fixes

* Minor fixes

* Minor fixes

* Tedlium3 pruned transducer stateless (#261)

* update tedlium3-pruned-transducer-stateless-codes

* update README.md

* update README.md

* add fast beam search for decoding

* do a change for RESULTS.md

* do a change for RESULTS.md

* do a fix

* do some changes for pruned RNN-T

* Add mix precision support

* Minor fixes

* Minor fixes

* Updating RESULTS.md; fix in beam_search.py

* Fix rebase

* Code style check for librispeech pruned transducer stateless2 (#308)

* Update results for tedlium3 pruned RNN-T (#307)

* Update README.md

* Fix CI errors. (#310)

* Add more results

* Fix tensorboard log location

* Add one more epoch of full expt

* fix comments

* Add results for mixed precision with max-duration 300

* Changes for pretrained.py (tedlium3 pruned RNN-T) (#311)

* GigaSpeech recipe (#120)

* initial commit

* support download, data prep, and fbank

* on-the-fly feature extraction by default

* support BPE based lang

* support HLG for BPE

* small fix

* small fix

* chunked feature extraction by default

* Compute features for GigaSpeech by splitting the manifest.

* Fixes after review.

* Split manifests into 2000 pieces.

* set audio duration mismatch tolerance to 0.01

* small fix

* add conformer training recipe

* Add conformer.py without pre-commit checking

* lazy loading and use SingleCutSampler

* DynamicBucketingSampler

* use KaldifeatFbank to compute fbank for musan

* use pretrained language model and lexicon

* use 3gram to decode, 4gram to rescore

* Add decode.py

* Update .flake8

* Delete compute_fbank_gigaspeech.py

* Use BucketingSampler for valid and test dataloader

* Update params in train.py

* Use bpe_500

* update params in decode.py

* Decrease num_paths while CUDA OOM

* Added README

* Update RESULTS

* black

* Decrease num_paths while CUDA OOM

* Decode with post-processing

* Update results

* Remove lazy_load option

* Use default `storage_type`

* Keep the original tolerance

* Use split-lazy

* black

* Update pretrained model

Co-authored-by: Fangjun Kuang <csukuangfj@gmail.com>

* Add LG decoding (#277)

* Add LG decoding

* Add log weight pushing

* Minor fixes

* Support computing RNN-T loss with torchaudio (#316)

* Support modified beam search decoding for streaming inference with Emformer model.

* Formatted imports.

* Update results for torchaudio RNN-T. (#322)

* Fixed streaming decoding codes for emformer model.

* Fixed docs.

* Sorted imports for transducer_emformer/streaming_feature_extractor.py

* Minor fix for transducer_emformer/streaming_feature_extractor.py

Co-authored-by: pkufool <wkang@pku.org.cn>
Co-authored-by: Daniel Povey <dpovey@gmail.com>
Co-authored-by: Mingshuang Luo <37799481+luomingshuang@users.noreply.github.com>
Co-authored-by: Fangjun Kuang <csukuangfj@gmail.com>
Co-authored-by: Guo Liyong <guonwpu@qq.com>
Co-authored-by: Wang, Guanbo <wgb14@outlook.com>
2022-04-22 18:06:07 +08:00

1039 lines
39 KiB
Python

#!/usr/bin/env python3
# Copyright (c) 2021 University of Chinese Academy of Sciences (author: Han Zhu)
#
# See ../../../../LICENSE for clarification regarding multiple authors
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import copy
import math
import warnings
from typing import Optional, Tuple
import torch
from encoder_interface import EncoderInterface
from scaling import (
ActivationBalancer,
BasicNorm,
DoubleSwish,
ScaledConv1d,
ScaledConv2d,
ScaledLinear,
)
from torch import Tensor, nn
from icefall.utils import make_pad_mask
class Conformer(EncoderInterface):
"""
Args:
num_features (int): Number of input features
subsampling_factor (int): subsampling factor of encoder (the convolution layers before transformers)
d_model (int): attention dimension, also the output dimension
nhead (int): number of head
dim_feedforward (int): feedforward dimention
num_encoder_layers (int): number of encoder layers
dropout (float): dropout rate
layer_dropout (float): layer-dropout rate.
cnn_module_kernel (int): Kernel size of convolution module
vgg_frontend (bool): whether to use vgg frontend.
"""
def __init__(
self,
num_features: int,
subsampling_factor: int = 4,
d_model: int = 256,
nhead: int = 4,
dim_feedforward: int = 2048,
num_encoder_layers: int = 12,
dropout: float = 0.1,
layer_dropout: float = 0.075,
cnn_module_kernel: int = 31,
) -> None:
super(Conformer, self).__init__()
self.num_features = num_features
self.subsampling_factor = subsampling_factor
if subsampling_factor != 4:
raise NotImplementedError("Support only 'subsampling_factor=4'.")
# self.encoder_embed converts the input of shape (N, T, num_features)
# to the shape (N, T//subsampling_factor, d_model).
# That is, it does two things simultaneously:
# (1) subsampling: T -> T//subsampling_factor
# (2) embedding: num_features -> d_model
self.encoder_embed = Conv2dSubsampling(num_features, d_model)
self.encoder_pos = RelPositionalEncoding(d_model, dropout)
encoder_layer = ConformerEncoderLayer(
d_model,
nhead,
dim_feedforward,
dropout,
layer_dropout,
cnn_module_kernel,
)
self.encoder = ConformerEncoder(encoder_layer, num_encoder_layers)
def forward(
self, x: torch.Tensor, x_lens: torch.Tensor, warmup: float = 1.0
) -> Tuple[torch.Tensor, torch.Tensor]:
"""
Args:
x:
The input tensor. Its shape is (batch_size, seq_len, feature_dim).
x_lens:
A tensor of shape (batch_size,) containing the number of frames in
`x` before padding.
warmup:
A floating point value that gradually increases from 0 throughout
training; when it is >= 1.0 we are "fully warmed up". It is used
to turn modules on sequentially.
Returns:
Return a tuple containing 2 tensors:
- embeddings: its shape is (batch_size, output_seq_len, d_model)
- lengths, a tensor of shape (batch_size,) containing the number
of frames in `embeddings` before padding.
"""
x = self.encoder_embed(x)
x, pos_emb = self.encoder_pos(x)
x = x.permute(1, 0, 2) # (N, T, C) -> (T, N, C)
with warnings.catch_warnings():
warnings.simplefilter("ignore")
# Caution: We assume the subsampling factor is 4!
lengths = ((x_lens - 1) // 2 - 1) // 2
assert x.size(0) == lengths.max().item()
mask = make_pad_mask(lengths)
x = self.encoder(
x, pos_emb, src_key_padding_mask=mask, warmup=warmup
) # (T, N, C)
x = x.permute(1, 0, 2) # (T, N, C) ->(N, T, C)
return x, lengths
class ConformerEncoderLayer(nn.Module):
"""
ConformerEncoderLayer is made up of self-attn, feedforward and convolution networks.
See: "Conformer: Convolution-augmented Transformer for Speech Recognition"
Args:
d_model: the number of expected features in the input (required).
nhead: the number of heads in the multiheadattention models (required).
dim_feedforward: 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 = ConformerEncoderLayer(d_model=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,
d_model: int,
nhead: int,
dim_feedforward: int = 2048,
dropout: float = 0.1,
layer_dropout: float = 0.075,
cnn_module_kernel: int = 31,
) -> None:
super(ConformerEncoderLayer, self).__init__()
self.layer_dropout = layer_dropout
self.d_model = d_model
self.self_attn = RelPositionMultiheadAttention(
d_model, nhead, dropout=0.0
)
self.feed_forward = nn.Sequential(
ScaledLinear(d_model, dim_feedforward),
ActivationBalancer(channel_dim=-1),
DoubleSwish(),
nn.Dropout(dropout),
ScaledLinear(dim_feedforward, d_model, initial_scale=0.25),
)
self.feed_forward_macaron = nn.Sequential(
ScaledLinear(d_model, dim_feedforward),
ActivationBalancer(channel_dim=-1),
DoubleSwish(),
nn.Dropout(dropout),
ScaledLinear(dim_feedforward, d_model, initial_scale=0.25),
)
self.conv_module = ConvolutionModule(d_model, cnn_module_kernel)
self.norm_final = BasicNorm(d_model)
# try to ensure the output is close to zero-mean (or at least, zero-median).
self.balancer = ActivationBalancer(
channel_dim=-1, min_positive=0.45, max_positive=0.55, max_abs=6.0
)
self.dropout = nn.Dropout(dropout)
def forward(
self,
src: Tensor,
pos_emb: Tensor,
src_mask: Optional[Tensor] = None,
src_key_padding_mask: Optional[Tensor] = None,
warmup: float = 1.0,
) -> Tensor:
"""
Pass the input through the encoder layer.
Args:
src: the sequence to the encoder layer (required).
pos_emb: Positional embedding tensor (required).
src_mask: the mask for the src sequence (optional).
src_key_padding_mask: the mask for the src keys per batch (optional).
warmup: controls selective bypass of of layers; if < 1.0, we will
bypass layers more frequently.
Shape:
src: (S, N, E).
pos_emb: (N, 2*S-1, E)
src_mask: (S, S).
src_key_padding_mask: (N, S).
S is the source sequence length, N is the batch size, E is the feature number
"""
src_orig = src
warmup_scale = min(0.1 + warmup, 1.0)
# alpha = 1.0 means fully use this encoder layer, 0.0 would mean
# completely bypass it.
if self.training:
alpha = (
warmup_scale
if torch.rand(()).item() <= (1.0 - self.layer_dropout)
else 0.1
)
else:
alpha = 1.0
# macaron style feed forward module
src = src + self.dropout(self.feed_forward_macaron(src))
# multi-headed self-attention module
src_att = self.self_attn(
src,
src,
src,
pos_emb=pos_emb,
attn_mask=src_mask,
key_padding_mask=src_key_padding_mask,
)[0]
src = src + self.dropout(src_att)
# convolution module
src = src + self.dropout(self.conv_module(src))
# feed forward module
src = src + self.dropout(self.feed_forward(src))
src = self.norm_final(self.balancer(src))
if alpha != 1.0:
src = alpha * src + (1 - alpha) * src_orig
return src
class ConformerEncoder(nn.Module):
r"""ConformerEncoder is a stack of N encoder layers
Args:
encoder_layer: an instance of the ConformerEncoderLayer() class (required).
num_layers: the number of sub-encoder-layers in the encoder (required).
Examples::
>>> encoder_layer = ConformerEncoderLayer(d_model=512, nhead=8)
>>> conformer_encoder = ConformerEncoder(encoder_layer, num_layers=6)
>>> src = torch.rand(10, 32, 512)
>>> pos_emb = torch.rand(32, 19, 512)
>>> out = conformer_encoder(src, pos_emb)
"""
def __init__(self, encoder_layer: nn.Module, num_layers: int) -> None:
super().__init__()
self.layers = nn.ModuleList(
[copy.deepcopy(encoder_layer) for i in range(num_layers)]
)
self.num_layers = num_layers
def forward(
self,
src: Tensor,
pos_emb: Tensor,
mask: Optional[Tensor] = None,
src_key_padding_mask: Optional[Tensor] = None,
warmup: float = 1.0,
) -> Tensor:
r"""Pass the input through the encoder layers in turn.
Args:
src: the sequence to the encoder (required).
pos_emb: Positional embedding tensor (required).
mask: the mask for the src sequence (optional).
src_key_padding_mask: the mask for the src keys per batch (optional).
Shape:
src: (S, N, E).
pos_emb: (N, 2*S-1, E)
mask: (S, S).
src_key_padding_mask: (N, S).
S is the source sequence length, T is the target sequence length, N is the batch size, E is the feature number
"""
output = src
for i, mod in enumerate(self.layers):
output = mod(
output,
pos_emb,
src_mask=mask,
src_key_padding_mask=src_key_padding_mask,
warmup=warmup,
)
return output
class RelPositionalEncoding(torch.nn.Module):
"""Relative positional encoding module.
See : Appendix B in "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context"
Modified from https://github.com/espnet/espnet/blob/master/espnet/nets/pytorch_backend/transformer/embedding.py
Args:
d_model: Embedding dimension.
dropout_rate: Dropout rate.
max_len: Maximum input length.
"""
def __init__(
self, d_model: int, dropout_rate: float, max_len: int = 5000
) -> None:
"""Construct an PositionalEncoding object."""
super(RelPositionalEncoding, self).__init__()
self.d_model = d_model
self.dropout = torch.nn.Dropout(p=dropout_rate)
self.pe = None
self.extend_pe(torch.tensor(0.0).expand(1, max_len))
def extend_pe(self, x: Tensor) -> None:
"""Reset the positional encodings."""
if self.pe is not None:
# self.pe contains both positive and negative parts
# the length of self.pe is 2 * input_len - 1
if self.pe.size(1) >= x.size(1) * 2 - 1:
# Note: TorchScript doesn't implement operator== for torch.Device
if self.pe.dtype != x.dtype or str(self.pe.device) != str(
x.device
):
self.pe = self.pe.to(dtype=x.dtype, device=x.device)
return
# Suppose `i` means to the position of query vecotr and `j` means the
# position of key vector. We use position relative positions when keys
# are to the left (i>j) and negative relative positions otherwise (i<j).
pe_positive = torch.zeros(x.size(1), self.d_model)
pe_negative = torch.zeros(x.size(1), self.d_model)
position = torch.arange(0, x.size(1), dtype=torch.float32).unsqueeze(1)
div_term = torch.exp(
torch.arange(0, self.d_model, 2, dtype=torch.float32)
* -(math.log(10000.0) / self.d_model)
)
pe_positive[:, 0::2] = torch.sin(position * div_term)
pe_positive[:, 1::2] = torch.cos(position * div_term)
pe_negative[:, 0::2] = torch.sin(-1 * position * div_term)
pe_negative[:, 1::2] = torch.cos(-1 * position * div_term)
# Reserve the order of positive indices and concat both positive and
# negative indices. This is used to support the shifting trick
# as in "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context"
pe_positive = torch.flip(pe_positive, [0]).unsqueeze(0)
pe_negative = pe_negative[1:].unsqueeze(0)
pe = torch.cat([pe_positive, pe_negative], dim=1)
self.pe = pe.to(device=x.device, dtype=x.dtype)
def forward(self, x: torch.Tensor) -> Tuple[Tensor, Tensor]:
"""Add positional encoding.
Args:
x (torch.Tensor): Input tensor (batch, time, `*`).
Returns:
torch.Tensor: Encoded tensor (batch, time, `*`).
torch.Tensor: Encoded tensor (batch, 2*time-1, `*`).
"""
self.extend_pe(x)
pos_emb = self.pe[
:,
self.pe.size(1) // 2
- x.size(1)
+ 1 : self.pe.size(1) // 2 # noqa E203
+ x.size(1),
]
return self.dropout(x), self.dropout(pos_emb)
class RelPositionMultiheadAttention(nn.Module):
r"""Multi-Head Attention layer with relative position encoding
See reference: "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context"
Args:
embed_dim: total dimension of the model.
num_heads: parallel attention heads.
dropout: a Dropout layer on attn_output_weights. Default: 0.0.
Examples::
>>> rel_pos_multihead_attn = RelPositionMultiheadAttention(embed_dim, num_heads)
>>> attn_output, attn_output_weights = multihead_attn(query, key, value, pos_emb)
"""
def __init__(
self,
embed_dim: int,
num_heads: int,
dropout: float = 0.0,
) -> None:
super(RelPositionMultiheadAttention, self).__init__()
self.embed_dim = embed_dim
self.num_heads = num_heads
self.dropout = dropout
self.head_dim = embed_dim // num_heads
assert (
self.head_dim * num_heads == self.embed_dim
), "embed_dim must be divisible by num_heads"
self.in_proj = ScaledLinear(embed_dim, 3 * embed_dim, bias=True)
self.out_proj = ScaledLinear(
embed_dim, embed_dim, bias=True, initial_scale=0.25
)
# linear transformation for positional encoding.
self.linear_pos = ScaledLinear(embed_dim, embed_dim, bias=False)
# these two learnable bias are used in matrix c and matrix d
# as described in "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context" Section 3.3
self.pos_bias_u = nn.Parameter(torch.Tensor(num_heads, self.head_dim))
self.pos_bias_v = nn.Parameter(torch.Tensor(num_heads, self.head_dim))
self.pos_bias_u_scale = nn.Parameter(torch.zeros(()).detach())
self.pos_bias_v_scale = nn.Parameter(torch.zeros(()).detach())
self._reset_parameters()
def _pos_bias_u(self):
return self.pos_bias_u * self.pos_bias_u_scale.exp()
def _pos_bias_v(self):
return self.pos_bias_v * self.pos_bias_v_scale.exp()
def _reset_parameters(self) -> None:
nn.init.normal_(self.pos_bias_u, std=0.01)
nn.init.normal_(self.pos_bias_v, std=0.01)
def forward(
self,
query: Tensor,
key: Tensor,
value: Tensor,
pos_emb: Tensor,
key_padding_mask: Optional[Tensor] = None,
need_weights: bool = True,
attn_mask: Optional[Tensor] = None,
) -> Tuple[Tensor, Optional[Tensor]]:
r"""
Args:
query, key, value: map a query and a set of key-value pairs to an output.
pos_emb: Positional embedding tensor
key_padding_mask: if provided, specified padding elements in the key will
be ignored by the attention. When given a binary mask and a value is True,
the corresponding value on the attention layer will be ignored. When given
a byte mask and a value is non-zero, the corresponding value on the attention
layer will be ignored
need_weights: output attn_output_weights.
attn_mask: 2D or 3D mask that prevents attention to certain positions. A 2D mask will be broadcasted for all
the batches while a 3D mask allows to specify a different mask for the entries of each batch.
Shape:
- Inputs:
- query: :math:`(L, N, E)` where L is the target sequence length, N is the batch size, E is
the embedding dimension.
- key: :math:`(S, N, E)`, where S is the source sequence length, N is the batch size, E is
the embedding dimension.
- value: :math:`(S, N, E)` where S is the source sequence length, N is the batch size, E is
the embedding dimension.
- pos_emb: :math:`(N, 2*L-1, E)` where L is the target sequence length, N is the batch size, E is
the embedding dimension.
- key_padding_mask: :math:`(N, S)` where N is the batch size, S is the source sequence length.
If a ByteTensor is provided, the non-zero positions will be ignored while the position
with the zero positions will be unchanged. If a BoolTensor is provided, the positions with the
value of ``True`` will be ignored while the position with the value of ``False`` will be unchanged.
- attn_mask: 2D mask :math:`(L, S)` where L is the target sequence length, S is the source sequence length.
3D mask :math:`(N*num_heads, L, S)` where N is the batch size, L is the target sequence length,
S is the source sequence length. attn_mask ensure that position i is allowed to attend the unmasked
positions. If a ByteTensor is provided, the non-zero positions are not allowed to attend
while the zero positions will be unchanged. If a BoolTensor is provided, positions with ``True``
is not allowed to attend while ``False`` values will be unchanged. If a FloatTensor
is provided, it will be added to the attention weight.
- Outputs:
- attn_output: :math:`(L, N, E)` where L is the target sequence length, N is the batch size,
E is the embedding dimension.
- attn_output_weights: :math:`(N, L, S)` where N is the batch size,
L is the target sequence length, S is the source sequence length.
"""
return self.multi_head_attention_forward(
query,
key,
value,
pos_emb,
self.embed_dim,
self.num_heads,
self.in_proj.get_weight(),
self.in_proj.get_bias(),
self.dropout,
self.out_proj.get_weight(),
self.out_proj.get_bias(),
training=self.training,
key_padding_mask=key_padding_mask,
need_weights=need_weights,
attn_mask=attn_mask,
)
def rel_shift(self, x: Tensor) -> Tensor:
"""Compute relative positional encoding.
Args:
x: Input tensor (batch, head, time1, 2*time1-1).
time1 means the length of query vector.
Returns:
Tensor: tensor of shape (batch, head, time1, time2)
(note: time2 has the same value as time1, but it is for
the key, while time1 is for the query).
"""
(batch_size, num_heads, time1, n) = x.shape
assert n == 2 * time1 - 1
# Note: TorchScript requires explicit arg for stride()
batch_stride = x.stride(0)
head_stride = x.stride(1)
time1_stride = x.stride(2)
n_stride = x.stride(3)
return x.as_strided(
(batch_size, num_heads, time1, time1),
(batch_stride, head_stride, time1_stride - n_stride, n_stride),
storage_offset=n_stride * (time1 - 1),
)
def multi_head_attention_forward(
self,
query: Tensor,
key: Tensor,
value: Tensor,
pos_emb: Tensor,
embed_dim_to_check: int,
num_heads: int,
in_proj_weight: Tensor,
in_proj_bias: Tensor,
dropout_p: float,
out_proj_weight: Tensor,
out_proj_bias: Tensor,
training: bool = True,
key_padding_mask: Optional[Tensor] = None,
need_weights: bool = True,
attn_mask: Optional[Tensor] = None,
) -> Tuple[Tensor, Optional[Tensor]]:
r"""
Args:
query, key, value: map a query and a set of key-value pairs to an output.
pos_emb: Positional embedding tensor
embed_dim_to_check: total dimension of the model.
num_heads: parallel attention heads.
in_proj_weight, in_proj_bias: input projection weight and bias.
dropout_p: probability of an element to be zeroed.
out_proj_weight, out_proj_bias: the output projection weight and bias.
training: apply dropout if is ``True``.
key_padding_mask: if provided, specified padding elements in the key will
be ignored by the attention. This is an binary mask. When the value is True,
the corresponding value on the attention layer will be filled with -inf.
need_weights: output attn_output_weights.
attn_mask: 2D or 3D mask that prevents attention to certain positions. A 2D mask will be broadcasted for all
the batches while a 3D mask allows to specify a different mask for the entries of each batch.
Shape:
Inputs:
- query: :math:`(L, N, E)` where L is the target sequence length, N is the batch size, E is
the embedding dimension.
- key: :math:`(S, N, E)`, where S is the source sequence length, N is the batch size, E is
the embedding dimension.
- value: :math:`(S, N, E)` where S is the source sequence length, N is the batch size, E is
the embedding dimension.
- pos_emb: :math:`(N, 2*L-1, E)` or :math:`(1, 2*L-1, E)` where L is the target sequence
length, N is the batch size, E is the embedding dimension.
- key_padding_mask: :math:`(N, S)` where N is the batch size, S is the source sequence length.
If a ByteTensor is provided, the non-zero positions will be ignored while the zero positions
will be unchanged. If a BoolTensor is provided, the positions with the
value of ``True`` will be ignored while the position with the value of ``False`` will be unchanged.
- attn_mask: 2D mask :math:`(L, S)` where L is the target sequence length, S is the source sequence length.
3D mask :math:`(N*num_heads, L, S)` where N is the batch size, L is the target sequence length,
S is the source sequence length. attn_mask ensures that position i is allowed to attend the unmasked
positions. If a ByteTensor is provided, the non-zero positions are not allowed to attend
while the zero positions will be unchanged. If a BoolTensor is provided, positions with ``True``
are not allowed to attend while ``False`` values will be unchanged. If a FloatTensor
is provided, it will be added to the attention weight.
Outputs:
- attn_output: :math:`(L, N, E)` where L is the target sequence length, N is the batch size,
E is the embedding dimension.
- attn_output_weights: :math:`(N, L, S)` where N is the batch size,
L is the target sequence length, S is the source sequence length.
"""
tgt_len, bsz, embed_dim = query.size()
assert embed_dim == embed_dim_to_check
assert key.size(0) == value.size(0) and key.size(1) == value.size(1)
head_dim = embed_dim // num_heads
assert (
head_dim * num_heads == embed_dim
), "embed_dim must be divisible by num_heads"
scaling = float(head_dim) ** -0.5
if torch.equal(query, key) and torch.equal(key, value):
# self-attention
q, k, v = nn.functional.linear(
query, in_proj_weight, in_proj_bias
).chunk(3, dim=-1)
elif torch.equal(key, value):
# encoder-decoder attention
# This is inline in_proj function with in_proj_weight and in_proj_bias
_b = in_proj_bias
_start = 0
_end = embed_dim
_w = in_proj_weight[_start:_end, :]
if _b is not None:
_b = _b[_start:_end]
q = nn.functional.linear(query, _w, _b)
# This is inline in_proj function with in_proj_weight and in_proj_bias
_b = in_proj_bias
_start = embed_dim
_end = None
_w = in_proj_weight[_start:, :]
if _b is not None:
_b = _b[_start:]
k, v = nn.functional.linear(key, _w, _b).chunk(2, dim=-1)
else:
# This is inline in_proj function with in_proj_weight and in_proj_bias
_b = in_proj_bias
_start = 0
_end = embed_dim
_w = in_proj_weight[_start:_end, :]
if _b is not None:
_b = _b[_start:_end]
q = nn.functional.linear(query, _w, _b)
# This is inline in_proj function with in_proj_weight and in_proj_bias
_b = in_proj_bias
_start = embed_dim
_end = embed_dim * 2
_w = in_proj_weight[_start:_end, :]
if _b is not None:
_b = _b[_start:_end]
k = nn.functional.linear(key, _w, _b)
# This is inline in_proj function with in_proj_weight and in_proj_bias
_b = in_proj_bias
_start = embed_dim * 2
_end = None
_w = in_proj_weight[_start:, :]
if _b is not None:
_b = _b[_start:]
v = nn.functional.linear(value, _w, _b)
if attn_mask is not None:
assert (
attn_mask.dtype == torch.float32
or attn_mask.dtype == torch.float64
or attn_mask.dtype == torch.float16
or attn_mask.dtype == torch.uint8
or attn_mask.dtype == torch.bool
), "Only float, byte, and bool types are supported for attn_mask, not {}".format(
attn_mask.dtype
)
if attn_mask.dtype == torch.uint8:
warnings.warn(
"Byte tensor for attn_mask is deprecated. Use bool tensor instead."
)
attn_mask = attn_mask.to(torch.bool)
if attn_mask.dim() == 2:
attn_mask = attn_mask.unsqueeze(0)
if list(attn_mask.size()) != [1, query.size(0), key.size(0)]:
raise RuntimeError(
"The size of the 2D attn_mask is not correct."
)
elif attn_mask.dim() == 3:
if list(attn_mask.size()) != [
bsz * num_heads,
query.size(0),
key.size(0),
]:
raise RuntimeError(
"The size of the 3D attn_mask is not correct."
)
else:
raise RuntimeError(
"attn_mask's dimension {} is not supported".format(
attn_mask.dim()
)
)
# attn_mask's dim is 3 now.
# convert ByteTensor key_padding_mask to bool
if (
key_padding_mask is not None
and key_padding_mask.dtype == torch.uint8
):
warnings.warn(
"Byte tensor for key_padding_mask is deprecated. Use bool tensor instead."
)
key_padding_mask = key_padding_mask.to(torch.bool)
q = (q * scaling).contiguous().view(tgt_len, bsz, num_heads, head_dim)
k = k.contiguous().view(-1, bsz, num_heads, head_dim)
v = v.contiguous().view(-1, bsz * num_heads, head_dim).transpose(0, 1)
src_len = k.size(0)
if key_padding_mask is not None:
assert key_padding_mask.size(0) == bsz, "{} == {}".format(
key_padding_mask.size(0), bsz
)
assert key_padding_mask.size(1) == src_len, "{} == {}".format(
key_padding_mask.size(1), src_len
)
q = q.transpose(0, 1) # (batch, time1, head, d_k)
pos_emb_bsz = pos_emb.size(0)
assert pos_emb_bsz in (1, bsz) # actually it is 1
p = self.linear_pos(pos_emb).view(pos_emb_bsz, -1, num_heads, head_dim)
p = p.transpose(1, 2) # (batch, head, 2*time1-1, d_k)
q_with_bias_u = (q + self._pos_bias_u()).transpose(
1, 2
) # (batch, head, time1, d_k)
q_with_bias_v = (q + self._pos_bias_v()).transpose(
1, 2
) # (batch, head, time1, d_k)
# compute attention score
# first compute matrix a and matrix c
# as described in "Transformer-XL: Attentive Language Models Beyond a Fixed-Length Context" Section 3.3
k = k.permute(1, 2, 3, 0) # (batch, head, d_k, time2)
matrix_ac = torch.matmul(
q_with_bias_u, k
) # (batch, head, time1, time2)
# compute matrix b and matrix d
matrix_bd = torch.matmul(
q_with_bias_v, p.transpose(-2, -1)
) # (batch, head, time1, 2*time1-1)
matrix_bd = self.rel_shift(matrix_bd)
attn_output_weights = (
matrix_ac + matrix_bd
) # (batch, head, time1, time2)
attn_output_weights = attn_output_weights.view(
bsz * num_heads, tgt_len, -1
)
assert list(attn_output_weights.size()) == [
bsz * num_heads,
tgt_len,
src_len,
]
if attn_mask is not None:
if attn_mask.dtype == torch.bool:
attn_output_weights.masked_fill_(attn_mask, float("-inf"))
else:
attn_output_weights += attn_mask
if key_padding_mask is not None:
attn_output_weights = attn_output_weights.view(
bsz, num_heads, tgt_len, src_len
)
attn_output_weights = attn_output_weights.masked_fill(
key_padding_mask.unsqueeze(1).unsqueeze(2),
float("-inf"),
)
attn_output_weights = attn_output_weights.view(
bsz * num_heads, tgt_len, src_len
)
attn_output_weights = nn.functional.softmax(attn_output_weights, dim=-1)
attn_output_weights = nn.functional.dropout(
attn_output_weights, p=dropout_p, training=training
)
attn_output = torch.bmm(attn_output_weights, v)
assert list(attn_output.size()) == [bsz * num_heads, tgt_len, head_dim]
attn_output = (
attn_output.transpose(0, 1)
.contiguous()
.view(tgt_len, bsz, embed_dim)
)
attn_output = nn.functional.linear(
attn_output, out_proj_weight, out_proj_bias
)
if need_weights:
# average attention weights over heads
attn_output_weights = attn_output_weights.view(
bsz, num_heads, tgt_len, src_len
)
return attn_output, attn_output_weights.sum(dim=1) / num_heads
else:
return attn_output, None
class ConvolutionModule(nn.Module):
"""ConvolutionModule in Conformer model.
Modified from https://github.com/espnet/espnet/blob/master/espnet/nets/pytorch_backend/conformer/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, bias: bool = True
) -> None:
"""Construct an ConvolutionModule object."""
super(ConvolutionModule, self).__init__()
# kernerl_size should be a odd number for 'SAME' padding
assert (kernel_size - 1) % 2 == 0
self.pointwise_conv1 = ScaledConv1d(
channels,
2 * channels,
kernel_size=1,
stride=1,
padding=0,
bias=bias,
)
# after pointwise_conv1 we put x through a gated linear unit (nn.functional.glu).
# For most layers the normal rms value of channels of x seems to be in the range 1 to 4,
# but sometimes, for some reason, for layer 0 the rms ends up being very large,
# between 50 and 100 for different channels. This will cause very peaky and
# sparse derivatives for the sigmoid gating function, which will tend to make
# the loss function not learn effectively. (for most layers the average absolute values
# are in the range 0.5..9.0, and the average p(x>0), i.e. positive proportion,
# at the output of pointwise_conv1.output is around 0.35 to 0.45 for different
# layers, which likely breaks down as 0.5 for the "linear" half and
# 0.2 to 0.3 for the part that goes into the sigmoid. The idea is that if we
# constrain the rms values to a reasonable range via a constraint of max_abs=10.0,
# it will be in a better position to start learning something, i.e. to latch onto
# the correct range.
self.deriv_balancer1 = ActivationBalancer(
channel_dim=1, max_abs=10.0, min_positive=0.05, max_positive=1.0
)
self.depthwise_conv = ScaledConv1d(
channels,
channels,
kernel_size,
stride=1,
padding=(kernel_size - 1) // 2,
groups=channels,
bias=bias,
)
self.deriv_balancer2 = ActivationBalancer(
channel_dim=1, min_positive=0.05, max_positive=1.0
)
self.activation = DoubleSwish()
self.pointwise_conv2 = ScaledConv1d(
channels,
channels,
kernel_size=1,
stride=1,
padding=0,
bias=bias,
initial_scale=0.25,
)
def forward(self, x: Tensor) -> Tensor:
"""Compute convolution module.
Args:
x: Input tensor (#time, batch, channels).
Returns:
Tensor: Output tensor (#time, batch, channels).
"""
# exchange the temporal dimension and the feature dimension
x = x.permute(1, 2, 0) # (#batch, channels, time).
# GLU mechanism
x = self.pointwise_conv1(x) # (batch, 2*channels, time)
x = self.deriv_balancer1(x)
x = nn.functional.glu(x, dim=1) # (batch, channels, time)
# 1D Depthwise Conv
x = self.depthwise_conv(x)
x = self.deriv_balancer2(x)
x = self.activation(x)
x = self.pointwise_conv2(x) # (batch, channel, time)
return x.permute(2, 0, 1)
class Conv2dSubsampling(nn.Module):
"""Convolutional 2D subsampling (to 1/4 length).
Convert an input of shape (N, T, idim) to an output
with shape (N, T', odim), where
T' = ((T-1)//2 - 1)//2, which approximates T' == T//4
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,
) -> 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-1)//2 - 1)//2, out_channels)
layer1_channels:
Number of channels in layer1
layer1_channels:
Number of channels in layer2
"""
assert in_channels >= 7
super().__init__()
self.conv = nn.Sequential(
ScaledConv2d(
in_channels=1,
out_channels=layer1_channels,
kernel_size=3,
padding=1,
),
ActivationBalancer(channel_dim=1),
DoubleSwish(),
ScaledConv2d(
in_channels=layer1_channels,
out_channels=layer2_channels,
kernel_size=3,
stride=2,
),
ActivationBalancer(channel_dim=1),
DoubleSwish(),
ScaledConv2d(
in_channels=layer2_channels,
out_channels=layer3_channels,
kernel_size=3,
stride=2,
),
ActivationBalancer(channel_dim=1),
DoubleSwish(),
)
self.out = ScaledLinear(
layer3_channels * (((in_channels - 1) // 2 - 1) // 2), out_channels
)
# set learn_eps=False because out_norm is preceded by `out`, and `out`
# itself has learned scale, so the extra degree of freedom is not
# needed.
self.out_norm = BasicNorm(out_channels, learn_eps=False)
# constrain median of output to be close to zero.
self.out_balancer = ActivationBalancer(
channel_dim=-1, min_positive=0.45, max_positive=0.55
)
def forward(self, x: torch.Tensor) -> torch.Tensor:
"""Subsample x.
Args:
x:
Its shape is (N, T, idim).
Returns:
Return a tensor of shape (N, ((T-1)//2 - 1)//2, odim)
"""
# On entry, x is (N, T, idim)
x = x.unsqueeze(1) # (N, T, idim) -> (N, 1, T, idim) i.e., (N, C, H, W)
x = self.conv(x)
# Now x is of shape (N, odim, ((T-1)//2 - 1)//2, ((idim-1)//2 - 1)//2)
b, c, t, f = x.size()
x = self.out(x.transpose(1, 2).contiguous().view(b, t, c * f))
# Now x is of shape (N, ((T-1)//2 - 1))//2, odim)
x = self.out_norm(x)
x = self.out_balancer(x)
return x
if __name__ == "__main__":
feature_dim = 50
c = Conformer(num_features=feature_dim, d_model=128, nhead=4)
batch_size = 5
seq_len = 20
# Just make sure the forward pass runs.
f = c(
torch.randn(batch_size, seq_len, feature_dim),
torch.full((batch_size,), seq_len, dtype=torch.int64),
warmup=0.5,
)