Fangjun Kuang 855c76655b
Add zipformer from Dan using multi-dataset setup (#675)
* Bug fix

* Change subsamplling factor from 1 to 2

* Implement AttentionCombine as replacement for RandomCombine

* Decrease random_prob from 0.5 to 0.333

* Add print statement

* Apply single_prob mask, so sometimes we just get one layer as output.

* Introduce feature mask per frame

* Include changes from Liyong about padding conformer module.

* Reduce single_prob from 0.5 to 0.25

* Reduce feature_mask_dropout_prob from 0.25 to 0.15.

* Remove dropout from inside ConformerEncoderLayer, for adding to residuals

* Increase feature_mask_dropout_prob from 0.15 to 0.2.

* Swap random_prob and single_prob, to reduce prob of being randomized.

* Decrease feature_mask_dropout_prob back from 0.2 to 0.15, i.e. revert the 43->48 change.

* Randomize order of some modules

* Bug fix

* Stop backprop bug

* Introduce a scale dependent on the masking value

* Implement efficient layer dropout

* Simplify the learned scaling factor on the modules

* Compute valid loss on batch 0.

* Make the scaling factors more global and the randomness of dropout more random

* Bug fix

* Introduce offset in layerdrop_scaleS

* Remove final combination; implement layer drop that drops the final layers.

* Bug fices

* Fix bug RE self.training

* Fix bug setting layerdrop mask

* Fix eigs call

* Add debug info

* Remove warmup

* Remove layer dropout and model-level warmup

* Don't always apply the frame mask

* Slight code cleanup/simplification

* Various fixes, finish implementating frame masking

* Remove debug info

* Don't compute validation if printing diagnostics.

* Apply layer bypass during warmup in a new way, including 2s and 4s of layers.

* Update checkpoint.py to deal with int params

* Revert initial_scale to previous values.

* Remove the feature where it was bypassing groups of layers.

* Implement layer dropout with probability 0.075

* Fix issue with warmup in test time

* Add warmup schedule where dropout disappears from earlier layers first.

* Have warmup that gradually removes dropout from layers; multiply initialization scales by 0.1.

* Do dropout a different way

* Fix bug in warmup

* Remove debug print

* Make the warmup mask per frame.

* Implement layer dropout (in a relatively efficient way)

* Decrease initial keep_prob to 0.25.

* Make it start warming up from the very start, and increase warmup_batches to 6k

* Change warmup schedule and increase warmup_batches from 4k to 6k

* Make the bypass scale trainable.

* Change the initial keep-prob back from 0.25 to 0.5

* Bug fix

* Limit bypass scale to >= 0.1

* Revert "Change warmup schedule and increase warmup_batches from 4k to 6k"

This reverts commit 86845bd5d859ceb6f83cd83f3719c3e6641de987.

* Do warmup by dropping out whole layers.

* Decrease frequency of logging variance_proportion

* Make layerdrop different in different processes.

* For speed, drop the same num layers per job.

* Decrease initial_layerdrop_prob from 0.75 to 0.5

* Revert also the changes in scaled_adam_exp85 regarding warmup schedule

* Remove unused code LearnedScale.

* Reintroduce batching to the optimizer

* Various fixes from debugging with nvtx, but removed the NVTX annotations.

* Only apply ActivationBalancer with prob 0.25.

* Fix s -> scaling for import.

* Increase final layerdrop prob from 0.05 to 0.075

* Fix bug where fewer layers were dropped than should be; remove unnecesary print statement.

* Fix bug in choosing layers to drop

* Refactor RelPosMultiheadAttention to have 2nd forward function and introduce more modules in conformer encoder layer

* Reduce final layerdrop_prob from 0.075 to 0.05.

* Fix issue with diagnostics if stats is None

* Remove persistent attention scores.

* Make ActivationBalancer and MaxEig more efficient.

* Cosmetic improvements

* Change scale_factor_scale from 0.5 to 0.8

* Make the ActivationBalancer regress to the data mean, not zero, when enforcing abs constraint.

* Remove unused config value

* Fix bug when channel_dim < 0

* Fix bug when channel_dim < 0

* Simplify how the positional-embedding scores work in attention (thanks to Zengwei for this concept)

* Revert dropout on attention scores to 0.0.

* This should just be a cosmetic change, regularizing how we get the warmup times from the layers.

* Reduce beta from 0.75 to  0.0.

* Reduce stats period from 10 to 4.

* Reworking of ActivationBalancer code to hopefully balance speed and effectiveness.

* Add debug code for attention weihts and eigs

* Remove debug statement

* Add different debug info.

* Penalize attention-weight entropies above a limit.

* Remove debug statements

* use larger delta but only penalize if small grad norm

* Bug fixes; change debug freq

* Change cutoff for small_grad_norm

* Implement whitening of values in conformer.

* Also whiten the keys in conformer.

* Fix an issue with scaling of grad.

* Decrease whitening limit from 2.0 to 1.1.

* Fix debug stats.

* Reorganize Whiten() code; configs are not the same as before.  Also remove MaxEig for self_attn module

* Bug fix RE float16

* Revert whitening_limit from 1.1 to 2.2.

* Replace MaxEig with Whiten with limit=5.0, and move it to end of ConformerEncoderLayer

* Change LR schedule to start off higher

* Simplify the dropout mask, no non-dropped-out sequences

* Make attention dims configurable, not embed_dim//2, trying 256.

* Reduce attention_dim to 192; cherry-pick scaled_adam_exp130 which is linear_pos interacting with query

* Use half the dim for values, vs. keys and queries.

* Increase initial-lr from 0.04 to 0.05, plus changes for diagnostics

* Cosmetic changes

* Changes to avoid bug in backward hooks, affecting diagnostics.

* Random clip attention scores to -5..5.

* Add some random clamping in model.py

* Add reflect=0.1 to invocations of random_clamp()

* Remove in_balancer.

* Revert model.py so there are no constraints on the output.

* Implement randomized backprop for softmax.

* Reduce min_abs from 1e-03 to 1e-04

* Add RandomGrad with min_abs=1.0e-04

* Use full precision to do softmax and store ans.

* Fix bug in backprop of random_clamp()

* Get the randomized backprop for softmax in autocast mode working.

* Remove debug print

* Reduce min_abs from 1.0e-04 to 5.0e-06

* Add hard limit of attention weights to +- 50

* Use normal implementation of softmax.

* Remove use of RandomGrad

* Remove the use of random_clamp in conformer.py.

* Reduce the limit on attention weights from 50 to 25.

* Reduce min_prob of ActivationBalancer from 0.1 to 0.05.

* Penalize too large weights in softmax of AttentionDownsample()

* Also apply limit on logit in SimpleCombiner

* Increase limit on logit for SimpleCombiner to 25.0

* Add more diagnostics to debug gradient scale problems

* Changes to grad scale logging; increase grad scale more frequently if less than one.

* Add logging

* Remove comparison diagnostics, which were not that useful.

* Configuration changes: scores limit 5->10, min_prob 0.05->0.1, cur_grad_scale more aggressive increase

* Reset optimizer state when we change loss function definition.

* Make warmup period decrease scale on simple loss, leaving pruned loss scale constant.

* Cosmetic change

* Increase initial-lr from 0.05 to 0.06.

* Increase initial-lr from 0.06 to 0.075 and decrease lr-epochs from 3.5 to 3.

* Fixes to logging statements.

* Introduce warmup schedule in optimizer

* Increase grad_scale to Whiten module

* Add inf check hooks

* Renaming in optim.py; remove step() from scan_pessimistic_batches_for_oom in train.py

* Change base lr to 0.1, also rename from initial lr in train.py

* Adding activation balancers after simple_am_prob and simple_lm_prob

* Reduce max_abs on am_balancer

* Increase max_factor in final lm_balancer and am_balancer

* Use penalize_abs_values_gt, not ActivationBalancer.

* Trying to reduce grad_scale of Whiten() from  0.02 to 0.01.

* Add hooks.py, had negleted to  git add it.

* don't do penalize_values_gt on simple_lm_proj and simple_am_proj; reduce --base-lr from 0.1 to  0.075

* Increase probs of activation balancer and make it decay slower.

* Dont print out full non-finite tensor

* Increase default max_factor for ActivationBalancer from 0.02 to 0.04; decrease max_abs in ConvolutionModule.deriv_balancer2 from 100.0 to 20.0

* reduce initial scale in GradScaler

* Increase max_abs in ActivationBalancer of conv module from 20 to 50

* --base-lr0.075->0.5; --lr-epochs 3->3.5

* Revert 179->180 change, i.e. change max_abs for deriv_balancer2 back from 50.0 20.0

* Save some memory in the autograd of DoubleSwish.

* Change the discretization of the sigmoid to be expectation preserving.

* Fix randn to rand

* Try a more exact way to round to uint8 that should prevent ever wrapping around to zero

* Make it use float16 if in amp but use clamp to avoid wrapping error

* Store only half precision output for softmax.

* More memory efficient backprop for DoubleSwish.

* Change to warmup schedule.

* Changes to more accurately estimate OOM conditions

* Reduce cutoff from 100 to 5 for estimating OOM with warmup

* Make 20 the limit for warmup_count

* Cast to float16 in DoubleSwish forward

* Hopefully make penalize_abs_values_gt more memory efficient.

* Add logging about memory used.

* Change scalar_max in optim.py from 2.0 to 5.0

* Regularize how we apply the min and max to the eps of BasicNorm

* Fix clamping of bypass scale; remove a couple unused variables.

* Increase floor on bypass_scale from 0.1 to 0.2.

* Increase bypass_scale from 0.2 to 0.4.

* Increase bypass_scale min from 0.4 to 0.5

* Rename conformer.py to zipformer.py

* Rename Conformer to Zipformer

* Update decode.py by copying from pruned_transducer_stateless5 and changing directory name

* Remove some unused variables.

* Fix clamping of epsilon

* Refactor zipformer for more flexibility so we can change number of encoder layers.

* Have a 3rd encoder, at downsampling factor of 8.

* Refactor how the downsampling is done so that it happens later, but the 1st encoder stack still operates after a subsampling of 2.

* Fix bug RE seq lengths

* Have 4 encoder stacks

* Have 6 different encoder stacks, U-shaped network.

* Reduce dim of linear positional encoding in attention layers.

* Reduce min of bypass_scale from 0.5 to 0.3, and make it not applied in test mode.

* Tuning change to num encoder layers, inspired by relative param importance.

* Make decoder group size equal to 4.

* Add skip connections as in normal U-net

* Avoid falling off the loop for weird inputs

* Apply layer-skip dropout prob

* Have warmup schedule for layer-skipping

* Rework how warmup count is produced; should not affect results.

* Add warmup schedule for zipformer encoder layer, from 1.0 -> 0.2.

* Reduce initial clamp_min for bypass_scale from 1.0 to 0.5.

* Restore the changes from scaled_adam_219 and scaled_adam_exp220,  accidentally lost, re layer skipping

* Change to schedule of bypass_scale min: make it larger, decrease slower.

* Change schedule after initial loss not promising

* Implement pooling module, add it after initial feedforward.

* Bug fix

* Introduce dropout rate to dynamic submodules of conformer.

* Introduce minimum probs in the SimpleCombiner

* Add bias in weight module

* Remove dynamic weights in SimpleCombine

* Remove the 5th of 6 encoder stacks

* Fix some typos

* small fixes

* small fixes

* Copy files

* Update decode.py

* Add changes from the master

* Add changes from the master

* update results

* Add CI

* Small fixes

* Small fixes

Co-authored-by: Daniel Povey <dpovey@gmail.com>
2022-11-15 16:56:05 +08:00

223 lines
7.5 KiB
Python

# Copyright 2021 Xiaomi Corp. (authors: Fangjun Kuang, Wei Kang)
#
# 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 random
from typing import Optional, Tuple
import k2
import torch
import torch.nn as nn
from encoder_interface import EncoderInterface
from scaling import penalize_abs_values_gt
from icefall.utils import add_sos
class Transducer(nn.Module):
"""It implements https://arxiv.org/pdf/1211.3711.pdf
"Sequence Transduction with Recurrent Neural Networks"
"""
def __init__(
self,
encoder: EncoderInterface,
decoder: nn.Module,
joiner: nn.Module,
encoder_dim: int,
decoder_dim: int,
joiner_dim: int,
vocab_size: int,
decoder_giga: Optional[nn.Module] = None,
joiner_giga: Optional[nn.Module] = None,
):
"""
Args:
encoder:
It is the transcription network in the paper. Its accepts
two inputs: `x` of (N, T, encoder_dim) and `x_lens` of shape (N,).
It returns two tensors: `logits` of shape (N, T, encoder_dm) and
`logit_lens` of shape (N,).
decoder:
It is the prediction network in the paper. Its input shape
is (N, U) and its output shape is (N, U, decoder_dim).
It should contain one attribute: `blank_id`.
joiner:
It has two inputs with shapes: (N, T, encoder_dim) and (N, U, decoder_dim).
Its output shape is (N, T, U, vocab_size). Note that its output contains
unnormalized probs, i.e., not processed by log-softmax.
"""
super().__init__()
assert isinstance(encoder, EncoderInterface), type(encoder)
assert hasattr(decoder, "blank_id")
self.encoder = encoder
self.decoder = decoder
self.joiner = joiner
self.decoder_giga = decoder_giga
self.joiner_giga = joiner_giga
self.simple_am_proj = nn.Linear(
encoder_dim,
vocab_size,
)
self.simple_lm_proj = nn.Linear(decoder_dim, vocab_size)
if decoder_giga is not None:
self.simple_am_proj_giga = nn.Linear(encoder_dim, vocab_size)
self.simple_lm_proj_giga = nn.Linear(decoder_dim, vocab_size)
def forward(
self,
x: torch.Tensor,
x_lens: torch.Tensor,
y: k2.RaggedTensor,
libri: bool = True,
prune_range: int = 5,
am_scale: float = 0.0,
lm_scale: float = 0.0,
) -> torch.Tensor:
"""
Args:
x:
A 3-D tensor of shape (N, T, C).
x_lens:
A 1-D tensor of shape (N,). It contains the number of frames in `x`
before padding.
y:
A ragged tensor with 2 axes [utt][label]. It contains labels of each
utterance.
libri:
True to use the decoder and joiner for the LibriSpeech dataset.
False to use the decoder and joiner for the GigaSpeech dataset.
prune_range:
The prune range for rnnt loss, it means how many symbols(context)
we are considering for each frame to compute the loss.
am_scale:
The scale to smooth the loss with am (output of encoder network)
part
lm_scale:
The scale to smooth the loss with lm (output of predictor network)
part
Returns:
Return the transducer loss.
Note:
Regarding am_scale & lm_scale, it will make the loss-function one of
the form:
lm_scale * lm_probs + am_scale * am_probs +
(1-lm_scale-am_scale) * combined_probs
"""
assert x.ndim == 3, x.shape
assert x_lens.ndim == 1, x_lens.shape
assert y.num_axes == 2, y.num_axes
assert x.size(0) == x_lens.size(0) == y.dim0
encoder_out, x_lens = self.encoder(x, x_lens)
assert torch.all(x_lens > 0)
if libri:
decoder = self.decoder
simple_lm_proj = self.simple_lm_proj
simple_am_proj = self.simple_am_proj
joiner = self.joiner
else:
decoder = self.decoder_giga
simple_lm_proj = self.simple_lm_proj_giga
simple_am_proj = self.simple_am_proj_giga
joiner = self.joiner_giga
# Now for the decoder, i.e., the prediction network
row_splits = y.shape.row_splits(1)
y_lens = row_splits[1:] - row_splits[:-1]
blank_id = decoder.blank_id
sos_y = add_sos(y, sos_id=blank_id)
# sos_y_padded: [B, S + 1], start with SOS.
sos_y_padded = sos_y.pad(mode="constant", padding_value=blank_id)
# decoder_out: [B, S + 1, decoder_dim]
decoder_out = decoder(sos_y_padded)
# Note: y does not start with SOS
# y_padded : [B, S]
y_padded = y.pad(mode="constant", padding_value=0)
y_padded = y_padded.to(torch.int64)
boundary = torch.zeros(
(x.size(0), 4), dtype=torch.int64, device=x.device
)
boundary[:, 2] = y_lens
boundary[:, 3] = x_lens
lm = simple_lm_proj(decoder_out)
am = simple_am_proj(encoder_out)
# if self.training and random.random() < 0.25:
# lm = penalize_abs_values_gt(lm, 100.0, 1.0e-04)
# if self.training and random.random() < 0.25:
# am = penalize_abs_values_gt(am, 30.0, 1.0e-04)
with torch.cuda.amp.autocast(enabled=False):
simple_loss, (px_grad, py_grad) = k2.rnnt_loss_smoothed(
lm=lm.float(),
am=am.float(),
symbols=y_padded,
termination_symbol=blank_id,
lm_only_scale=lm_scale,
am_only_scale=am_scale,
boundary=boundary,
reduction="sum",
return_grad=True,
)
# ranges : [B, T, prune_range]
ranges = k2.get_rnnt_prune_ranges(
px_grad=px_grad,
py_grad=py_grad,
boundary=boundary,
s_range=prune_range,
)
# am_pruned : [B, T, prune_range, encoder_dim]
# lm_pruned : [B, T, prune_range, decoder_dim]
am_pruned, lm_pruned = k2.do_rnnt_pruning(
am=joiner.encoder_proj(encoder_out),
lm=joiner.decoder_proj(decoder_out),
ranges=ranges,
)
# logits : [B, T, prune_range, vocab_size]
# project_input=False since we applied the decoder's input projections
# prior to do_rnnt_pruning (this is an optimization for speed).
logits = joiner(am_pruned, lm_pruned, project_input=False)
with torch.cuda.amp.autocast(enabled=False):
pruned_loss = k2.rnnt_loss_pruned(
logits=logits.float(),
symbols=y_padded,
ranges=ranges,
termination_symbol=blank_id,
boundary=boundary,
reduction="sum",
)
return (simple_loss, pruned_loss)