Zengwei Yao 693d84a301
Add Consistency-Regularized CTC (#1766)
* support consistency-regularized CTC

* update arguments of cr-ctc

* set default value of cr_loss_masked_scale to 1.0

* minor fix

* refactor codes

* update RESULTS.md
2024-10-21 10:35:26 +08:00

1591 lines
50 KiB
Python
Executable File

#!/usr/bin/env python3
# Copyright 2021-2023 Xiaomi Corp. (authors: Fangjun Kuang,
# Wei Kang,
# Mingshuang Luo,
# Zengwei Yao,
# Daniel Povey)
#
# 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.
"""
Usage:
export CUDA_VISIBLE_DEVICES="0,1,2,3"
# For non-streaming model training:
./zipformer/train.py \
--world-size 4 \
--num-epochs 30 \
--start-epoch 1 \
--use-fp16 1 \
--exp-dir zipformer/exp \
--full-libri 1 \
--max-duration 1000
# For streaming model training:
./zipformer/train.py \
--world-size 4 \
--num-epochs 30 \
--start-epoch 1 \
--use-fp16 1 \
--exp-dir zipformer/exp \
--causal 1 \
--full-libri 1 \
--max-duration 1000
It supports training with:
- transducer loss (default)
- ctc loss
- attention decoder loss
- cr-ctc loss (should use half the max-duration compared to regular ctc)
"""
import argparse
import copy
import logging
import warnings
from pathlib import Path
from shutil import copyfile
from typing import Any, Dict, Optional, Tuple, Union
import k2
import optim
import sentencepiece as spm
import torch
import torch.multiprocessing as mp
import torch.nn as nn
from asr_datamodule import LibriSpeechAsrDataModule
from attention_decoder import AttentionDecoderModel
from decoder import Decoder
from joiner import Joiner
from lhotse.cut import Cut
from lhotse.dataset import SpecAugment
from lhotse.dataset.sampling.base import CutSampler
from lhotse.utils import fix_random_seed
from model import AsrModel
from optim import Eden, ScaledAdam
from scaling import ScheduledFloat
from subsampling import Conv2dSubsampling
from torch import Tensor
from torch.cuda.amp import GradScaler
from torch.nn.parallel import DistributedDataParallel as DDP
from torch.utils.tensorboard import SummaryWriter
from zipformer import Zipformer2
from icefall import diagnostics
from icefall.checkpoint import load_checkpoint, remove_checkpoints
from icefall.checkpoint import save_checkpoint as save_checkpoint_impl
from icefall.checkpoint import (
save_checkpoint_with_global_batch_idx,
update_averaged_model,
)
from icefall.dist import cleanup_dist, setup_dist
from icefall.env import get_env_info
from icefall.err import raise_grad_scale_is_too_small_error
from icefall.hooks import register_inf_check_hooks
from icefall.utils import (
AttributeDict,
MetricsTracker,
get_parameter_groups_with_lrs,
setup_logger,
str2bool,
)
LRSchedulerType = Union[torch.optim.lr_scheduler._LRScheduler, optim.LRScheduler]
def get_adjusted_batch_count(params: AttributeDict) -> float:
# returns the number of batches we would have used so far if we had used the reference
# duration. This is for purposes of set_batch_count().
return (
params.batch_idx_train
* (params.max_duration * params.world_size)
/ params.ref_duration
)
def set_batch_count(model: Union[nn.Module, DDP], batch_count: float) -> None:
if isinstance(model, DDP):
# get underlying nn.Module
model = model.module
for name, module in model.named_modules():
if hasattr(module, "batch_count"):
module.batch_count = batch_count
if hasattr(module, "name"):
module.name = name
def add_model_arguments(parser: argparse.ArgumentParser):
parser.add_argument(
"--num-encoder-layers",
type=str,
default="2,2,3,4,3,2",
help="Number of zipformer encoder layers per stack, comma separated.",
)
parser.add_argument(
"--downsampling-factor",
type=str,
default="1,2,4,8,4,2",
help="Downsampling factor for each stack of encoder layers.",
)
parser.add_argument(
"--feedforward-dim",
type=str,
default="512,768,1024,1536,1024,768",
help="Feedforward dimension of the zipformer encoder layers, per stack, comma separated.",
)
parser.add_argument(
"--num-heads",
type=str,
default="4,4,4,8,4,4",
help="Number of attention heads in the zipformer encoder layers: a single int or comma-separated list.",
)
parser.add_argument(
"--encoder-dim",
type=str,
default="192,256,384,512,384,256",
help="Embedding dimension in encoder stacks: a single int or comma-separated list.",
)
parser.add_argument(
"--query-head-dim",
type=str,
default="32",
help="Query/key dimension per head in encoder stacks: a single int or comma-separated list.",
)
parser.add_argument(
"--value-head-dim",
type=str,
default="12",
help="Value dimension per head in encoder stacks: a single int or comma-separated list.",
)
parser.add_argument(
"--pos-head-dim",
type=str,
default="4",
help="Positional-encoding dimension per head in encoder stacks: a single int or comma-separated list.",
)
parser.add_argument(
"--pos-dim",
type=int,
default="48",
help="Positional-encoding embedding dimension",
)
parser.add_argument(
"--encoder-unmasked-dim",
type=str,
default="192,192,256,256,256,192",
help="Unmasked dimensions in the encoders, relates to augmentation during training. "
"A single int or comma-separated list. Must be <= each corresponding encoder_dim.",
)
parser.add_argument(
"--cnn-module-kernel",
type=str,
default="31,31,15,15,15,31",
help="Sizes of convolutional kernels in convolution modules in each encoder stack: "
"a single int or comma-separated list.",
)
parser.add_argument(
"--decoder-dim",
type=int,
default=512,
help="Embedding dimension in the decoder model.",
)
parser.add_argument(
"--joiner-dim",
type=int,
default=512,
help="""Dimension used in the joiner model.
Outputs from the encoder and decoder model are projected
to this dimension before adding.
""",
)
parser.add_argument(
"--attention-decoder-dim",
type=int,
default=512,
help="""Dimension used in the attention decoder""",
)
parser.add_argument(
"--attention-decoder-num-layers",
type=int,
default=6,
help="""Number of transformer layers used in attention decoder""",
)
parser.add_argument(
"--attention-decoder-attention-dim",
type=int,
default=512,
help="""Attention dimension used in attention decoder""",
)
parser.add_argument(
"--attention-decoder-num-heads",
type=int,
default=8,
help="""Number of attention heads used in attention decoder""",
)
parser.add_argument(
"--attention-decoder-feedforward-dim",
type=int,
default=2048,
help="""Feedforward dimension used in attention decoder""",
)
parser.add_argument(
"--causal",
type=str2bool,
default=False,
help="If True, use causal version of model.",
)
parser.add_argument(
"--chunk-size",
type=str,
default="16,32,64,-1",
help="Chunk sizes (at 50Hz frame rate) will be chosen randomly from this list during training. "
" Must be just -1 if --causal=False",
)
parser.add_argument(
"--left-context-frames",
type=str,
default="64,128,256,-1",
help="Maximum left-contexts for causal training, measured in frames which will "
"be converted to a number of chunks. If splitting into chunks, "
"chunk left-context frames will be chosen randomly from this list; else not relevant.",
)
parser.add_argument(
"--use-transducer",
type=str2bool,
default=True,
help="If True, use Transducer head.",
)
parser.add_argument(
"--use-ctc",
type=str2bool,
default=False,
help="If True, use CTC head.",
)
parser.add_argument(
"--use-attention-decoder",
type=str2bool,
default=False,
help="If True, use attention-decoder head.",
)
parser.add_argument(
"--use-cr-ctc",
type=str2bool,
default=False,
help="If True, use consistency-regularized CTC.",
)
def get_parser():
parser = argparse.ArgumentParser(
formatter_class=argparse.ArgumentDefaultsHelpFormatter
)
parser.add_argument(
"--world-size",
type=int,
default=1,
help="Number of GPUs for DDP training.",
)
parser.add_argument(
"--master-port",
type=int,
default=12354,
help="Master port to use for DDP training.",
)
parser.add_argument(
"--tensorboard",
type=str2bool,
default=True,
help="Should various information be logged in tensorboard.",
)
parser.add_argument(
"--num-epochs",
type=int,
default=30,
help="Number of epochs to train.",
)
parser.add_argument(
"--start-epoch",
type=int,
default=1,
help="""Resume training from this epoch. It should be positive.
If larger than 1, it will load checkpoint from
exp-dir/epoch-{start_epoch-1}.pt
""",
)
parser.add_argument(
"--start-batch",
type=int,
default=0,
help="""If positive, --start-epoch is ignored and
it loads the checkpoint from exp-dir/checkpoint-{start_batch}.pt
""",
)
parser.add_argument(
"--exp-dir",
type=str,
default="zipformer/exp",
help="""The experiment dir.
It specifies the directory where all training related
files, e.g., checkpoints, log, etc, are saved
""",
)
parser.add_argument(
"--bpe-model",
type=str,
default="data/lang_bpe_500/bpe.model",
help="Path to the BPE model",
)
parser.add_argument(
"--base-lr", type=float, default=0.045, help="The base learning rate."
)
parser.add_argument(
"--lr-batches",
type=float,
default=7500,
help="""Number of steps that affects how rapidly the learning rate
decreases. We suggest not to change this.""",
)
parser.add_argument(
"--lr-epochs",
type=float,
default=3.5,
help="""Number of epochs that affects how rapidly the learning rate decreases.
""",
)
parser.add_argument(
"--ref-duration",
type=float,
default=600,
help="Reference batch duration for purposes of adjusting batch counts for setting various "
"schedules inside the model",
)
parser.add_argument(
"--context-size",
type=int,
default=2,
help="The context size in the decoder. 1 means bigram; 2 means tri-gram",
)
parser.add_argument(
"--prune-range",
type=int,
default=5,
help="The prune range for rnnt loss, it means how many symbols(context)"
"we are using to compute the loss",
)
parser.add_argument(
"--lm-scale",
type=float,
default=0.25,
help="The scale to smooth the loss with lm "
"(output of prediction network) part.",
)
parser.add_argument(
"--am-scale",
type=float,
default=0.0,
help="The scale to smooth the loss with am (output of encoder network) part.",
)
parser.add_argument(
"--simple-loss-scale",
type=float,
default=0.5,
help="To get pruning ranges, we will calculate a simple version"
"loss(joiner is just addition), this simple loss also uses for"
"training (as a regularization item). We will scale the simple loss"
"with this parameter before adding to the final loss.",
)
parser.add_argument(
"--ctc-loss-scale",
type=float,
default=0.2,
help="Scale for CTC loss.",
)
parser.add_argument(
"--cr-loss-scale",
type=float,
default=0.2,
help="Scale for consistency-regularization loss.",
)
parser.add_argument(
"--time-mask-ratio",
type=float,
default=2.5,
help="When using cr-ctc, we increase the amount of time-masking in SpecAugment.",
)
parser.add_argument(
"--attention-decoder-loss-scale",
type=float,
default=0.8,
help="Scale for attention-decoder loss.",
)
parser.add_argument(
"--seed",
type=int,
default=42,
help="The seed for random generators intended for reproducibility",
)
parser.add_argument(
"--print-diagnostics",
type=str2bool,
default=False,
help="Accumulate stats on activations, print them and exit.",
)
parser.add_argument(
"--inf-check",
type=str2bool,
default=False,
help="Add hooks to check for infinite module outputs and gradients.",
)
parser.add_argument(
"--save-every-n",
type=int,
default=4000,
help="""Save checkpoint after processing this number of batches"
periodically. We save checkpoint to exp-dir/ whenever
params.batch_idx_train % save_every_n == 0. The checkpoint filename
has the form: f'exp-dir/checkpoint-{params.batch_idx_train}.pt'
Note: It also saves checkpoint to `exp-dir/epoch-xxx.pt` at the
end of each epoch where `xxx` is the epoch number counting from 1.
""",
)
parser.add_argument(
"--keep-last-k",
type=int,
default=30,
help="""Only keep this number of checkpoints on disk.
For instance, if it is 3, there are only 3 checkpoints
in the exp-dir with filenames `checkpoint-xxx.pt`.
It does not affect checkpoints with name `epoch-xxx.pt`.
""",
)
parser.add_argument(
"--average-period",
type=int,
default=200,
help="""Update the averaged model, namely `model_avg`, after processing
this number of batches. `model_avg` is a separate version of model,
in which each floating-point parameter is the average of all the
parameters from the start of training. Each time we take the average,
we do: `model_avg = model * (average_period / batch_idx_train) +
model_avg * ((batch_idx_train - average_period) / batch_idx_train)`.
""",
)
parser.add_argument(
"--use-fp16",
type=str2bool,
default=False,
help="Whether to use half precision training.",
)
parser.add_argument(
"--use-bf16",
type=str2bool,
default=False,
help="Whether to use bf16 in AMP.",
)
add_model_arguments(parser)
return parser
def get_params() -> AttributeDict:
"""Return a dict containing training parameters.
All training related parameters that are not passed from the commandline
are saved in the variable `params`.
Commandline options are merged into `params` after they are parsed, so
you can also access them via `params`.
Explanation of options saved in `params`:
- best_train_loss: Best training loss so far. It is used to select
the model that has the lowest training loss. It is
updated during the training.
- best_valid_loss: Best validation loss so far. It is used to select
the model that has the lowest validation loss. It is
updated during the training.
- best_train_epoch: It is the epoch that has the best training loss.
- best_valid_epoch: It is the epoch that has the best validation loss.
- batch_idx_train: Used to writing statistics to tensorboard. It
contains number of batches trained so far across
epochs.
- log_interval: Print training loss if batch_idx % log_interval` is 0
- reset_interval: Reset statistics if batch_idx % reset_interval is 0
- valid_interval: Run validation if batch_idx % valid_interval is 0
- feature_dim: The model input dim. It has to match the one used
in computing features.
- subsampling_factor: The subsampling factor for the model.
- warm_step: The warmup period that dictates the decay of the
scale on "simple" (un-pruned) loss.
"""
params = AttributeDict(
{
"best_train_loss": float("inf"),
"best_valid_loss": float("inf"),
"best_train_epoch": -1,
"best_valid_epoch": -1,
"batch_idx_train": 0,
"log_interval": 50,
"reset_interval": 200,
"valid_interval": 3000, # For the 100h subset, use 800
# parameters for zipformer
"feature_dim": 80,
"subsampling_factor": 4, # not passed in, this is fixed.
# parameters for attention-decoder
"ignore_id": -1,
"label_smoothing": 0.1,
"warm_step": 2000,
"env_info": get_env_info(),
}
)
return params
def _to_int_tuple(s: str):
return tuple(map(int, s.split(",")))
def get_encoder_embed(params: AttributeDict) -> nn.Module:
# encoder_embed converts the input of shape (N, T, num_features)
# to the shape (N, (T - 7) // 2, encoder_dims).
# That is, it does two things simultaneously:
# (1) subsampling: T -> (T - 7) // 2
# (2) embedding: num_features -> encoder_dims
# In the normal configuration, we will downsample once more at the end
# by a factor of 2, and most of the encoder stacks will run at a lower
# sampling rate.
encoder_embed = Conv2dSubsampling(
in_channels=params.feature_dim,
out_channels=_to_int_tuple(params.encoder_dim)[0],
dropout=ScheduledFloat((0.0, 0.3), (20000.0, 0.1)),
)
return encoder_embed
def get_encoder_model(params: AttributeDict) -> nn.Module:
encoder = Zipformer2(
output_downsampling_factor=2,
downsampling_factor=_to_int_tuple(params.downsampling_factor),
num_encoder_layers=_to_int_tuple(params.num_encoder_layers),
encoder_dim=_to_int_tuple(params.encoder_dim),
encoder_unmasked_dim=_to_int_tuple(params.encoder_unmasked_dim),
query_head_dim=_to_int_tuple(params.query_head_dim),
pos_head_dim=_to_int_tuple(params.pos_head_dim),
value_head_dim=_to_int_tuple(params.value_head_dim),
pos_dim=params.pos_dim,
num_heads=_to_int_tuple(params.num_heads),
feedforward_dim=_to_int_tuple(params.feedforward_dim),
cnn_module_kernel=_to_int_tuple(params.cnn_module_kernel),
dropout=ScheduledFloat((0.0, 0.3), (20000.0, 0.1)),
warmup_batches=4000.0,
causal=params.causal,
chunk_size=_to_int_tuple(params.chunk_size),
left_context_frames=_to_int_tuple(params.left_context_frames),
)
return encoder
def get_decoder_model(params: AttributeDict) -> nn.Module:
decoder = Decoder(
vocab_size=params.vocab_size,
decoder_dim=params.decoder_dim,
blank_id=params.blank_id,
context_size=params.context_size,
)
return decoder
def get_joiner_model(params: AttributeDict) -> nn.Module:
joiner = Joiner(
encoder_dim=max(_to_int_tuple(params.encoder_dim)),
decoder_dim=params.decoder_dim,
joiner_dim=params.joiner_dim,
vocab_size=params.vocab_size,
)
return joiner
def get_attention_decoder_model(params: AttributeDict) -> nn.Module:
decoder = AttentionDecoderModel(
vocab_size=params.vocab_size,
decoder_dim=params.attention_decoder_dim,
num_decoder_layers=params.attention_decoder_num_layers,
attention_dim=params.attention_decoder_attention_dim,
num_heads=params.attention_decoder_num_heads,
feedforward_dim=params.attention_decoder_feedforward_dim,
memory_dim=max(_to_int_tuple(params.encoder_dim)),
sos_id=params.sos_id,
eos_id=params.eos_id,
ignore_id=params.ignore_id,
label_smoothing=params.label_smoothing,
)
return decoder
def get_model(params: AttributeDict) -> nn.Module:
assert params.use_transducer or params.use_ctc, (
f"At least one of them should be True, "
f"but got params.use_transducer={params.use_transducer}, "
f"params.use_ctc={params.use_ctc}"
)
encoder_embed = get_encoder_embed(params)
encoder = get_encoder_model(params)
if params.use_transducer:
decoder = get_decoder_model(params)
joiner = get_joiner_model(params)
else:
decoder = None
joiner = None
if params.use_attention_decoder:
attention_decoder = get_attention_decoder_model(params)
else:
attention_decoder = None
model = AsrModel(
encoder_embed=encoder_embed,
encoder=encoder,
decoder=decoder,
joiner=joiner,
attention_decoder=attention_decoder,
encoder_dim=max(_to_int_tuple(params.encoder_dim)),
decoder_dim=params.decoder_dim,
vocab_size=params.vocab_size,
use_transducer=params.use_transducer,
use_ctc=params.use_ctc,
use_attention_decoder=params.use_attention_decoder,
)
return model
def get_spec_augment(params: AttributeDict) -> SpecAugment:
num_frame_masks = int(10 * params.time_mask_ratio)
max_frames_mask_fraction = 0.15 * params.time_mask_ratio
logging.info(
f"num_frame_masks: {num_frame_masks}, "
f"max_frames_mask_fraction: {max_frames_mask_fraction}"
)
spec_augment = SpecAugment(
time_warp_factor=0, # Do time warping in model.py
num_frame_masks=num_frame_masks, # default: 10
features_mask_size=27,
num_feature_masks=2,
frames_mask_size=100,
max_frames_mask_fraction=max_frames_mask_fraction, # default: 0.15
)
return spec_augment
def load_checkpoint_if_available(
params: AttributeDict,
model: nn.Module,
model_avg: nn.Module = None,
optimizer: Optional[torch.optim.Optimizer] = None,
scheduler: Optional[LRSchedulerType] = None,
) -> Optional[Dict[str, Any]]:
"""Load checkpoint from file.
If params.start_batch is positive, it will load the checkpoint from
`params.exp_dir/checkpoint-{params.start_batch}.pt`. Otherwise, if
params.start_epoch is larger than 1, it will load the checkpoint from
`params.start_epoch - 1`.
Apart from loading state dict for `model` and `optimizer` it also updates
`best_train_epoch`, `best_train_loss`, `best_valid_epoch`,
and `best_valid_loss` in `params`.
Args:
params:
The return value of :func:`get_params`.
model:
The training model.
model_avg:
The stored model averaged from the start of training.
optimizer:
The optimizer that we are using.
scheduler:
The scheduler that we are using.
Returns:
Return a dict containing previously saved training info.
"""
if params.start_batch > 0:
filename = params.exp_dir / f"checkpoint-{params.start_batch}.pt"
elif params.start_epoch > 1:
filename = params.exp_dir / f"epoch-{params.start_epoch-1}.pt"
else:
return None
assert filename.is_file(), f"{filename} does not exist!"
saved_params = load_checkpoint(
filename,
model=model,
model_avg=model_avg,
optimizer=optimizer,
scheduler=scheduler,
)
keys = [
"best_train_epoch",
"best_valid_epoch",
"batch_idx_train",
"best_train_loss",
"best_valid_loss",
]
for k in keys:
params[k] = saved_params[k]
if params.start_batch > 0:
if "cur_epoch" in saved_params:
params["start_epoch"] = saved_params["cur_epoch"]
return saved_params
def save_checkpoint(
params: AttributeDict,
model: Union[nn.Module, DDP],
model_avg: Optional[nn.Module] = None,
optimizer: Optional[torch.optim.Optimizer] = None,
scheduler: Optional[LRSchedulerType] = None,
sampler: Optional[CutSampler] = None,
scaler: Optional[GradScaler] = None,
rank: int = 0,
) -> None:
"""Save model, optimizer, scheduler and training stats to file.
Args:
params:
It is returned by :func:`get_params`.
model:
The training model.
model_avg:
The stored model averaged from the start of training.
optimizer:
The optimizer used in the training.
sampler:
The sampler for the training dataset.
scaler:
The scaler used for mix precision training.
"""
if rank != 0:
return
filename = params.exp_dir / f"epoch-{params.cur_epoch}.pt"
save_checkpoint_impl(
filename=filename,
model=model,
model_avg=model_avg,
params=params,
optimizer=optimizer,
scheduler=scheduler,
sampler=sampler,
scaler=scaler,
rank=rank,
)
if params.best_train_epoch == params.cur_epoch:
best_train_filename = params.exp_dir / "best-train-loss.pt"
copyfile(src=filename, dst=best_train_filename)
if params.best_valid_epoch == params.cur_epoch:
best_valid_filename = params.exp_dir / "best-valid-loss.pt"
copyfile(src=filename, dst=best_valid_filename)
def compute_loss(
params: AttributeDict,
model: Union[nn.Module, DDP],
sp: spm.SentencePieceProcessor,
batch: dict,
is_training: bool,
spec_augment: Optional[SpecAugment] = None,
) -> Tuple[Tensor, MetricsTracker]:
"""
Compute loss given the model and its inputs.
Args:
params:
Parameters for training. See :func:`get_params`.
model:
The model for training. It is an instance of Zipformer in our case.
batch:
A batch of data. See `lhotse.dataset.K2SpeechRecognitionDataset()`
for the content in it.
is_training:
True for training. False for validation. When it is True, this
function enables autograd during computation; when it is False, it
disables autograd.
spec_augment:
The SpecAugment instance used only when use_cr_ctc is True.
"""
device = model.device if isinstance(model, DDP) else next(model.parameters()).device
feature = batch["inputs"]
# at entry, feature is (N, T, C)
assert feature.ndim == 3
feature = feature.to(device)
supervisions = batch["supervisions"]
feature_lens = supervisions["num_frames"].to(device)
batch_idx_train = params.batch_idx_train
warm_step = params.warm_step
texts = batch["supervisions"]["text"]
y = sp.encode(texts, out_type=int)
y = k2.RaggedTensor(y)
use_cr_ctc = params.use_cr_ctc
use_spec_aug = use_cr_ctc and is_training
if use_spec_aug:
supervision_intervals = batch["supervisions"]
supervision_segments = torch.stack(
[
supervision_intervals["sequence_idx"],
supervision_intervals["start_frame"],
supervision_intervals["num_frames"],
],
dim=1,
) # shape: (S, 3)
else:
supervision_segments = None
with torch.set_grad_enabled(is_training):
simple_loss, pruned_loss, ctc_loss, attention_decoder_loss, cr_loss = model(
x=feature,
x_lens=feature_lens,
y=y,
prune_range=params.prune_range,
am_scale=params.am_scale,
lm_scale=params.lm_scale,
use_cr_ctc=use_cr_ctc,
use_spec_aug=use_spec_aug,
spec_augment=spec_augment,
supervision_segments=supervision_segments,
time_warp_factor=params.spec_aug_time_warp_factor,
)
loss = 0.0
if params.use_transducer:
s = params.simple_loss_scale
# take down the scale on the simple loss from 1.0 at the start
# to params.simple_loss scale by warm_step.
simple_loss_scale = (
s
if batch_idx_train >= warm_step
else 1.0 - (batch_idx_train / warm_step) * (1.0 - s)
)
pruned_loss_scale = (
1.0
if batch_idx_train >= warm_step
else 0.1 + 0.9 * (batch_idx_train / warm_step)
)
loss += simple_loss_scale * simple_loss + pruned_loss_scale * pruned_loss
if params.use_ctc:
loss += params.ctc_loss_scale * ctc_loss
if use_cr_ctc:
loss += params.cr_loss_scale * cr_loss
if params.use_attention_decoder:
loss += params.attention_decoder_loss_scale * attention_decoder_loss
assert loss.requires_grad == is_training
info = MetricsTracker()
with warnings.catch_warnings():
warnings.simplefilter("ignore")
info["frames"] = (feature_lens // params.subsampling_factor).sum().item()
# Note: We use reduction=sum while computing the loss.
info["loss"] = loss.detach().cpu().item()
if params.use_transducer:
info["simple_loss"] = simple_loss.detach().cpu().item()
info["pruned_loss"] = pruned_loss.detach().cpu().item()
if params.use_ctc:
info["ctc_loss"] = ctc_loss.detach().cpu().item()
if params.use_cr_ctc:
info["cr_loss"] = cr_loss.detach().cpu().item()
if params.use_attention_decoder:
info["attn_decoder_loss"] = attention_decoder_loss.detach().cpu().item()
return loss, info
def compute_validation_loss(
params: AttributeDict,
model: Union[nn.Module, DDP],
sp: spm.SentencePieceProcessor,
valid_dl: torch.utils.data.DataLoader,
world_size: int = 1,
) -> MetricsTracker:
"""Run the validation process."""
model.eval()
tot_loss = MetricsTracker()
for batch_idx, batch in enumerate(valid_dl):
loss, loss_info = compute_loss(
params=params,
model=model,
sp=sp,
batch=batch,
is_training=False,
)
assert loss.requires_grad is False
tot_loss = tot_loss + loss_info
if world_size > 1:
tot_loss.reduce(loss.device)
loss_value = tot_loss["loss"] / tot_loss["frames"]
if loss_value < params.best_valid_loss:
params.best_valid_epoch = params.cur_epoch
params.best_valid_loss = loss_value
return tot_loss
def train_one_epoch(
params: AttributeDict,
model: Union[nn.Module, DDP],
optimizer: torch.optim.Optimizer,
scheduler: LRSchedulerType,
sp: spm.SentencePieceProcessor,
train_dl: torch.utils.data.DataLoader,
valid_dl: torch.utils.data.DataLoader,
scaler: GradScaler,
spec_augment: Optional[SpecAugment] = None,
model_avg: Optional[nn.Module] = None,
tb_writer: Optional[SummaryWriter] = None,
world_size: int = 1,
rank: int = 0,
) -> None:
"""Train the model for one epoch.
The training loss from the mean of all frames is saved in
`params.train_loss`. It runs the validation process every
`params.valid_interval` batches.
Args:
params:
It is returned by :func:`get_params`.
model:
The model for training.
optimizer:
The optimizer we are using.
scheduler:
The learning rate scheduler, we call step() every step.
train_dl:
Dataloader for the training dataset.
valid_dl:
Dataloader for the validation dataset.
scaler:
The scaler used for mix precision training.
spec_augment:
The SpecAugment instance used only when use_cr_ctc is True.
model_avg:
The stored model averaged from the start of training.
tb_writer:
Writer to write log messages to tensorboard.
world_size:
Number of nodes in DDP training. If it is 1, DDP is disabled.
rank:
The rank of the node in DDP training. If no DDP is used, it should
be set to 0.
"""
model.train()
tot_loss = MetricsTracker()
saved_bad_model = False
def save_bad_model(suffix: str = ""):
save_checkpoint_impl(
filename=params.exp_dir / f"bad-model{suffix}-{rank}.pt",
model=model,
model_avg=model_avg,
params=params,
optimizer=optimizer,
scheduler=scheduler,
sampler=train_dl.sampler,
scaler=scaler,
rank=0,
)
for batch_idx, batch in enumerate(train_dl):
if batch_idx % 10 == 0:
set_batch_count(model, get_adjusted_batch_count(params))
params.batch_idx_train += 1
batch_size = len(batch["supervisions"]["text"])
try:
with torch.cuda.amp.autocast(
enabled=params.use_autocast, dtype=params.dtype
):
loss, loss_info = compute_loss(
params=params,
model=model,
sp=sp,
batch=batch,
is_training=True,
spec_augment=spec_augment,
)
# summary stats
tot_loss = (tot_loss * (1 - 1 / params.reset_interval)) + loss_info
# NOTE: We use reduction==sum and loss is computed over utterances
# in the batch and there is no normalization to it so far.
scaler.scale(loss).backward()
scheduler.step_batch(params.batch_idx_train)
scaler.step(optimizer)
scaler.update()
optimizer.zero_grad()
except Exception as e:
logging.info(f"Caught exception: {e}.")
save_bad_model()
display_and_save_batch(batch, params=params, sp=sp)
raise
if params.print_diagnostics and batch_idx == 5:
return
if (
rank == 0
and params.batch_idx_train > 0
and params.batch_idx_train % params.average_period == 0
):
update_averaged_model(
params=params,
model_cur=model,
model_avg=model_avg,
)
if (
params.batch_idx_train > 0
and params.batch_idx_train % params.save_every_n == 0
):
save_checkpoint_with_global_batch_idx(
out_dir=params.exp_dir,
global_batch_idx=params.batch_idx_train,
model=model,
model_avg=model_avg,
params=params,
optimizer=optimizer,
scheduler=scheduler,
sampler=train_dl.sampler,
scaler=scaler,
rank=rank,
)
remove_checkpoints(
out_dir=params.exp_dir,
topk=params.keep_last_k,
rank=rank,
)
if batch_idx % 100 == 0 and params.use_autocast:
# If the grad scale was less than 1, try increasing it. The _growth_interval
# of the grad scaler is configurable, but we can't configure it to have different
# behavior depending on the current grad scale.
cur_grad_scale = scaler._scale.item()
if cur_grad_scale < 8.0 or (cur_grad_scale < 32.0 and batch_idx % 400 == 0):
scaler.update(cur_grad_scale * 2.0)
if cur_grad_scale < 0.01:
if not saved_bad_model:
save_bad_model(suffix="-first-warning")
saved_bad_model = True
logging.warning(f"Grad scale is small: {cur_grad_scale}")
if cur_grad_scale < 1.0e-05:
save_bad_model()
raise_grad_scale_is_too_small_error(cur_grad_scale)
if batch_idx % params.log_interval == 0:
cur_lr = max(scheduler.get_last_lr())
cur_grad_scale = scaler._scale.item() if params.use_autocast else 1.0
logging.info(
f"Epoch {params.cur_epoch}, "
f"batch {batch_idx}, loss[{loss_info}], "
f"tot_loss[{tot_loss}], batch size: {batch_size}, "
f"lr: {cur_lr:.2e}, "
+ (f"grad_scale: {scaler._scale.item()}" if params.use_autocast else "")
)
if tb_writer is not None:
tb_writer.add_scalar(
"train/learning_rate", cur_lr, params.batch_idx_train
)
loss_info.write_summary(
tb_writer, "train/current_", params.batch_idx_train
)
tot_loss.write_summary(tb_writer, "train/tot_", params.batch_idx_train)
if params.use_autocast:
tb_writer.add_scalar(
"train/grad_scale", cur_grad_scale, params.batch_idx_train
)
if batch_idx % params.valid_interval == 0 and not params.print_diagnostics:
logging.info("Computing validation loss")
valid_info = compute_validation_loss(
params=params,
model=model,
sp=sp,
valid_dl=valid_dl,
world_size=world_size,
)
model.train()
logging.info(f"Epoch {params.cur_epoch}, validation: {valid_info}")
logging.info(
f"Maximum memory allocated so far is {torch.cuda.max_memory_allocated()//1000000}MB"
)
if tb_writer is not None:
valid_info.write_summary(
tb_writer, "train/valid_", params.batch_idx_train
)
loss_value = tot_loss["loss"] / tot_loss["frames"]
params.train_loss = loss_value
if params.train_loss < params.best_train_loss:
params.best_train_epoch = params.cur_epoch
params.best_train_loss = params.train_loss
def run(rank, world_size, args):
"""
Args:
rank:
It is a value between 0 and `world_size-1`, which is
passed automatically by `mp.spawn()` in :func:`main`.
The node with rank 0 is responsible for saving checkpoint.
world_size:
Number of GPUs for DDP training.
args:
The return value of get_parser().parse_args()
"""
params = get_params()
params.update(vars(args))
fix_random_seed(params.seed)
if world_size > 1:
setup_dist(rank, world_size, params.master_port)
setup_logger(f"{params.exp_dir}/log/log-train")
logging.info("Training started")
if args.tensorboard and rank == 0:
tb_writer = SummaryWriter(log_dir=f"{params.exp_dir}/tensorboard")
else:
tb_writer = None
device = torch.device("cpu")
if torch.cuda.is_available():
device = torch.device("cuda", rank)
logging.info(f"Device: {device}")
sp = spm.SentencePieceProcessor()
sp.load(params.bpe_model)
# <blk> is defined in local/train_bpe_model.py
params.blank_id = sp.piece_to_id("<blk>")
params.sos_id = params.eos_id = sp.piece_to_id("<sos/eos>")
params.vocab_size = sp.get_piece_size()
if not params.use_transducer:
if not params.use_attention_decoder:
params.ctc_loss_scale = 1.0
else:
assert params.ctc_loss_scale + params.attention_decoder_loss_scale == 1.0, (
params.ctc_loss_scale,
params.attention_decoder_loss_scale,
)
if params.use_bf16: # amp + bf16
assert torch.cuda.is_bf16_supported(), "Your GPU does not support bf16!"
assert not params.use_fp16, "You can only use either fp16 or bf16"
params.dtype = torch.bfloat16
params.use_autocast = True
elif params.use_fp16: # amp + fp16
params.dtype = torch.float16
params.use_autocast = True
else: # fp32
params.dtype = torch.float32
params.use_autocast = False
logging.info(f"Using dtype={params.dtype}")
logging.info(f"Use AMP={params.use_autocast}")
logging.info(params)
logging.info("About to create model")
model = get_model(params)
num_param = sum([p.numel() for p in model.parameters()])
logging.info(f"Number of model parameters: {num_param}")
if params.use_cr_ctc:
assert params.use_ctc
assert not params.enable_spec_aug # we will do spec_augment in model.py
spec_augment = get_spec_augment(params)
else:
spec_augment = None
assert params.save_every_n >= params.average_period
model_avg: Optional[nn.Module] = None
if rank == 0:
# model_avg is only used with rank 0
model_avg = copy.deepcopy(model).to(torch.float64)
assert params.start_epoch > 0, params.start_epoch
checkpoints = load_checkpoint_if_available(
params=params, model=model, model_avg=model_avg
)
model.to(device)
if world_size > 1:
logging.info("Using DDP")
model = DDP(model, device_ids=[rank], find_unused_parameters=True)
optimizer = ScaledAdam(
get_parameter_groups_with_lrs(model, lr=params.base_lr, include_names=True),
lr=params.base_lr, # should have no effect
clipping_scale=2.0,
)
scheduler = Eden(optimizer, params.lr_batches, params.lr_epochs)
if checkpoints and "optimizer" in checkpoints:
logging.info("Loading optimizer state dict")
optimizer.load_state_dict(checkpoints["optimizer"])
if (
checkpoints
and "scheduler" in checkpoints
and checkpoints["scheduler"] is not None
):
logging.info("Loading scheduler state dict")
scheduler.load_state_dict(checkpoints["scheduler"])
if params.print_diagnostics:
opts = diagnostics.TensorDiagnosticOptions(
512
) # allow 4 megabytes per sub-module
diagnostic = diagnostics.attach_diagnostics(model, opts)
if params.inf_check:
register_inf_check_hooks(model)
librispeech = LibriSpeechAsrDataModule(args)
if params.full_libri:
train_cuts = librispeech.train_all_shuf_cuts()
# previously we used the following code to load all training cuts,
# strictly speaking, shuffled training cuts should be used instead,
# but we leave the code here to demonstrate that there is an option
# like this to combine multiple cutsets
# train_cuts = librispeech.train_clean_100_cuts()
# train_cuts += librispeech.train_clean_360_cuts()
# train_cuts += librispeech.train_other_500_cuts()
else:
train_cuts = librispeech.train_clean_100_cuts()
def remove_short_and_long_utt(c: Cut):
# Keep only utterances with duration between 1 second and 20 seconds
#
# Caution: There is a reason to select 20.0 here. Please see
# ../local/display_manifest_statistics.py
#
# You should use ../local/display_manifest_statistics.py to get
# an utterance duration distribution for your dataset to select
# the threshold
if c.duration < 1.0 or c.duration > 20.0:
# logging.warning(
# f"Exclude cut with ID {c.id} from training. Duration: {c.duration}"
# )
return False
# In pruned RNN-T, we require that T >= S
# where T is the number of feature frames after subsampling
# and S is the number of tokens in the utterance
# In ./zipformer.py, the conv module uses the following expression
# for subsampling
T = ((c.num_frames - 7) // 2 + 1) // 2
tokens = sp.encode(c.supervisions[0].text, out_type=str)
if T < len(tokens):
logging.warning(
f"Exclude cut with ID {c.id} from training. "
f"Number of frames (before subsampling): {c.num_frames}. "
f"Number of frames (after subsampling): {T}. "
f"Text: {c.supervisions[0].text}. "
f"Tokens: {tokens}. "
f"Number of tokens: {len(tokens)}"
)
return False
return True
train_cuts = train_cuts.filter(remove_short_and_long_utt)
if params.start_batch > 0 and checkpoints and "sampler" in checkpoints:
# We only load the sampler's state dict when it loads a checkpoint
# saved in the middle of an epoch
sampler_state_dict = checkpoints["sampler"]
else:
sampler_state_dict = None
train_dl = librispeech.train_dataloaders(
train_cuts, sampler_state_dict=sampler_state_dict
)
valid_cuts = librispeech.dev_clean_cuts()
valid_cuts += librispeech.dev_other_cuts()
valid_dl = librispeech.valid_dataloaders(valid_cuts)
if not params.print_diagnostics:
scan_pessimistic_batches_for_oom(
model=model,
train_dl=train_dl,
optimizer=optimizer,
sp=sp,
params=params,
spec_augment=spec_augment,
)
scaler = GradScaler(enabled=params.use_autocast, init_scale=1.0)
if checkpoints and "grad_scaler" in checkpoints:
logging.info("Loading grad scaler state dict")
scaler.load_state_dict(checkpoints["grad_scaler"])
for epoch in range(params.start_epoch, params.num_epochs + 1):
scheduler.step_epoch(epoch - 1)
fix_random_seed(params.seed + epoch - 1)
train_dl.sampler.set_epoch(epoch - 1)
if tb_writer is not None:
tb_writer.add_scalar("train/epoch", epoch, params.batch_idx_train)
params.cur_epoch = epoch
train_one_epoch(
params=params,
model=model,
model_avg=model_avg,
optimizer=optimizer,
scheduler=scheduler,
sp=sp,
train_dl=train_dl,
valid_dl=valid_dl,
scaler=scaler,
spec_augment=spec_augment,
tb_writer=tb_writer,
world_size=world_size,
rank=rank,
)
if params.print_diagnostics:
diagnostic.print_diagnostics()
break
save_checkpoint(
params=params,
model=model,
model_avg=model_avg,
optimizer=optimizer,
scheduler=scheduler,
sampler=train_dl.sampler,
scaler=scaler,
rank=rank,
)
logging.info("Done!")
if world_size > 1:
torch.distributed.barrier()
cleanup_dist()
def display_and_save_batch(
batch: dict,
params: AttributeDict,
sp: spm.SentencePieceProcessor,
) -> None:
"""Display the batch statistics and save the batch into disk.
Args:
batch:
A batch of data. See `lhotse.dataset.K2SpeechRecognitionDataset()`
for the content in it.
params:
Parameters for training. See :func:`get_params`.
sp:
The BPE model.
"""
from lhotse.utils import uuid4
filename = f"{params.exp_dir}/batch-{uuid4()}.pt"
logging.info(f"Saving batch to {filename}")
torch.save(batch, filename)
supervisions = batch["supervisions"]
features = batch["inputs"]
logging.info(f"features shape: {features.shape}")
y = sp.encode(supervisions["text"], out_type=int)
num_tokens = sum(len(i) for i in y)
logging.info(f"num tokens: {num_tokens}")
def scan_pessimistic_batches_for_oom(
model: Union[nn.Module, DDP],
train_dl: torch.utils.data.DataLoader,
optimizer: torch.optim.Optimizer,
sp: spm.SentencePieceProcessor,
params: AttributeDict,
spec_augment: Optional[SpecAugment] = None,
):
from lhotse.dataset import find_pessimistic_batches
logging.info(
"Sanity check -- see if any of the batches in epoch 1 would cause OOM."
)
batches, crit_values = find_pessimistic_batches(train_dl.sampler)
for criterion, cuts in batches.items():
batch = train_dl.dataset[cuts]
try:
with torch.cuda.amp.autocast(
enabled=params.use_autocast, dtype=params.dtype
):
loss, _ = compute_loss(
params=params,
model=model,
sp=sp,
batch=batch,
is_training=True,
spec_augment=spec_augment,
)
loss.backward()
optimizer.zero_grad()
except Exception as e:
if "CUDA out of memory" in str(e):
logging.error(
"Your GPU ran out of memory with the current "
"max_duration setting. We recommend decreasing "
"max_duration and trying again.\n"
f"Failing criterion: {criterion} "
f"(={crit_values[criterion]}) ..."
)
display_and_save_batch(batch, params=params, sp=sp)
raise
logging.info(
f"Maximum memory allocated so far is {torch.cuda.max_memory_allocated()//1000000}MB"
)
def main():
parser = get_parser()
LibriSpeechAsrDataModule.add_arguments(parser)
args = parser.parse_args()
args.exp_dir = Path(args.exp_dir)
world_size = args.world_size
assert world_size >= 1
if world_size > 1:
mp.spawn(run, args=(world_size, args), nprocs=world_size, join=True)
else:
run(rank=0, world_size=1, args=args)
torch.set_num_threads(1)
torch.set_num_interop_threads(1)
if __name__ == "__main__":
main()