jasper-asr/jasper/evaluate.py

360 lines
12 KiB
Python

# Copyright (c) 2019 NVIDIA Corporation
import argparse
import copy
# import math
import os
from pathlib import Path
from functools import partial
from ruamel.yaml import YAML
import nemo
import nemo.collections.asr as nemo_asr
import nemo.utils.argparse as nm_argparse
from nemo.collections.asr.helpers import (
# monitor_asr_train_progress,
process_evaluation_batch,
process_evaluation_epoch,
)
# from nemo.utils.lr_policies import CosineAnnealing
from training.data_loaders import RpycAudioToTextDataLayer
logging = nemo.logging
def parse_args():
parser = argparse.ArgumentParser(
parents=[nm_argparse.NemoArgParser()],
description="Jasper",
conflict_handler="resolve",
)
parser.set_defaults(
checkpoint_dir=None,
optimizer="novograd",
batch_size=64,
eval_batch_size=64,
lr=0.002,
amp_opt_level="O1",
create_tb_writer=True,
model_config="./train/jasper10x5dr.yaml",
work_dir="./train/work",
num_epochs=300,
weight_decay=0.005,
checkpoint_save_freq=100,
eval_freq=100,
load_dir="./train/models/jasper/",
warmup_steps=3,
exp_name="jasper-speller",
)
# Overwrite default args
parser.add_argument(
"--max_steps",
type=int,
default=None,
required=False,
help="max number of steps to train",
)
parser.add_argument(
"--num_epochs", type=int, required=False, help="number of epochs to train"
)
parser.add_argument(
"--model_config",
type=str,
required=False,
help="model configuration file: model.yaml",
)
parser.add_argument(
"--encoder_checkpoint",
type=str,
required=True,
help="encoder checkpoint file: JasperEncoder.pt",
)
parser.add_argument(
"--decoder_checkpoint",
type=str,
required=True,
help="decoder checkpoint file: JasperDecoderForCTC.pt",
)
parser.add_argument(
"--remote_data",
type=str,
required=False,
default="",
help="remote dataloader endpoint",
)
parser.add_argument(
"--dataset",
type=str,
required=False,
default="",
help="dataset directory containing train/test manifests",
)
# Create new args
parser.add_argument("--exp_name", default="Jasper", type=str)
parser.add_argument("--beta1", default=0.95, type=float)
parser.add_argument("--beta2", default=0.25, type=float)
parser.add_argument("--warmup_steps", default=0, type=int)
parser.add_argument(
"--load_dir",
default=None,
type=str,
help="directory with pre-trained checkpoint",
)
args = parser.parse_args()
if args.max_steps is None and args.num_epochs is None:
raise ValueError("Either max_steps or num_epochs should be provided.")
return args
def construct_name(
name, lr, batch_size, max_steps, num_epochs, wd, optimizer, iter_per_step
):
if max_steps is not None:
return "{0}-lr_{1}-bs_{2}-s_{3}-wd_{4}-opt_{5}-ips_{6}".format(
name, lr, batch_size, max_steps, wd, optimizer, iter_per_step
)
else:
return "{0}-lr_{1}-bs_{2}-e_{3}-wd_{4}-opt_{5}-ips_{6}".format(
name, lr, batch_size, num_epochs, wd, optimizer, iter_per_step
)
def create_all_dags(args, neural_factory):
yaml = YAML(typ="safe")
with open(args.model_config) as f:
jasper_params = yaml.load(f)
vocab = jasper_params["labels"]
sample_rate = jasper_params["sample_rate"]
# Calculate num_workers for dataloader
total_cpus = os.cpu_count()
cpu_per_traindl = max(int(total_cpus / neural_factory.world_size), 1)
# perturb_config = jasper_params.get('perturb', None)
train_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
train_dl_params.update(jasper_params["AudioToTextDataLayer"]["train"])
del train_dl_params["train"]
del train_dl_params["eval"]
# del train_dl_params["normalize_transcripts"]
if args.dataset:
d_path = Path(args.dataset)
if not args.train_dataset:
args.train_dataset = str(d_path / Path("train_manifest.json"))
if not args.eval_datasets:
args.eval_datasets = [str(d_path / Path("test_manifest.json"))]
data_loader_layer = nemo_asr.AudioToTextDataLayer
if args.remote_data:
train_dl_params["rpyc_host"] = args.remote_data
data_loader_layer = RpycAudioToTextDataLayer
# data_layer = data_loader_layer(
# manifest_filepath=args.train_dataset,
# sample_rate=sample_rate,
# labels=vocab,
# batch_size=args.batch_size,
# num_workers=cpu_per_traindl,
# **train_dl_params,
# # normalize_transcripts=False
# )
#
# N = len(data_layer)
# steps_per_epoch = math.ceil(
# N / (args.batch_size * args.iter_per_step * args.num_gpus)
# )
# logging.info("Have {0} examples to train on.".format(N))
#
data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
sample_rate=sample_rate, **jasper_params["AudioToMelSpectrogramPreprocessor"]
)
# multiply_batch_config = jasper_params.get("MultiplyBatch", None)
# if multiply_batch_config:
# multiply_batch = nemo_asr.MultiplyBatch(**multiply_batch_config)
#
# spectr_augment_config = jasper_params.get("SpectrogramAugmentation", None)
# if spectr_augment_config:
# data_spectr_augmentation = nemo_asr.SpectrogramAugmentation(
# **spectr_augment_config
# )
#
eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
if args.remote_data:
eval_dl_params["rpyc_host"] = args.remote_data
del eval_dl_params["train"]
del eval_dl_params["eval"]
data_layers_eval = []
# if args.eval_datasets:
for eval_datasets in args.eval_datasets:
data_layer_eval = data_loader_layer(
manifest_filepath=eval_datasets,
sample_rate=sample_rate,
labels=vocab,
batch_size=args.eval_batch_size,
num_workers=cpu_per_traindl,
**eval_dl_params,
)
data_layers_eval.append(data_layer_eval)
# else:
# logging.warning("There were no val datasets passed")
jasper_encoder = nemo_asr.JasperEncoder(
feat_in=jasper_params["AudioToMelSpectrogramPreprocessor"]["features"],
**jasper_params["JasperEncoder"],
)
jasper_encoder.restore_from(args.encoder_checkpoint, local_rank=0)
jasper_decoder = nemo_asr.JasperDecoderForCTC(
feat_in=jasper_params["JasperEncoder"]["jasper"][-1]["filters"],
num_classes=len(vocab),
)
jasper_decoder.restore_from(args.decoder_checkpoint, local_rank=0)
ctc_loss = nemo_asr.CTCLossNM(num_classes=len(vocab))
greedy_decoder = nemo_asr.GreedyCTCDecoder()
# logging.info("================================")
# logging.info(f"Number of parameters in encoder: {jasper_encoder.num_weights}")
# logging.info(f"Number of parameters in decoder: {jasper_decoder.num_weights}")
# logging.info(
# f"Total number of parameters in model: "
# f"{jasper_decoder.num_weights + jasper_encoder.num_weights}"
# )
# logging.info("================================")
#
# # Train DAG
# (audio_signal_t, a_sig_length_t, transcript_t, transcript_len_t) = data_layer()
# processed_signal_t, p_length_t = data_preprocessor(
# input_signal=audio_signal_t, length=a_sig_length_t
# )
#
# if multiply_batch_config:
# (
# processed_signal_t,
# p_length_t,
# transcript_t,
# transcript_len_t,
# ) = multiply_batch(
# in_x=processed_signal_t,
# in_x_len=p_length_t,
# in_y=transcript_t,
# in_y_len=transcript_len_t,
# )
#
# if spectr_augment_config:
# processed_signal_t = data_spectr_augmentation(input_spec=processed_signal_t)
#
# encoded_t, encoded_len_t = jasper_encoder(
# audio_signal=processed_signal_t, length=p_length_t
# )
# log_probs_t = jasper_decoder(encoder_output=encoded_t)
# predictions_t = greedy_decoder(log_probs=log_probs_t)
# loss_t = ctc_loss(
# log_probs=log_probs_t,
# targets=transcript_t,
# input_length=encoded_len_t,
# target_length=transcript_len_t,
# )
#
# # Callbacks needed to print info to console and Tensorboard
# train_callback = nemo.core.SimpleLossLoggerCallback(
# tensors=[loss_t, predictions_t, transcript_t, transcript_len_t],
# print_func=partial(monitor_asr_train_progress, labels=vocab),
# get_tb_values=lambda x: [("loss", x[0])],
# tb_writer=neural_factory.tb_writer,
# )
#
# chpt_callback = nemo.core.CheckpointCallback(
# folder=neural_factory.checkpoint_dir,
# load_from_folder=args.load_dir,
# step_freq=args.checkpoint_save_freq,
# checkpoints_to_keep=30,
# )
#
# callbacks = [train_callback, chpt_callback]
callbacks = []
# assemble eval DAGs
for i, eval_dl in enumerate(data_layers_eval):
(audio_signal_e, a_sig_length_e, transcript_e, transcript_len_e) = eval_dl()
processed_signal_e, p_length_e = data_preprocessor(
input_signal=audio_signal_e, length=a_sig_length_e
)
encoded_e, encoded_len_e = jasper_encoder(
audio_signal=processed_signal_e, length=p_length_e
)
log_probs_e = jasper_decoder(encoder_output=encoded_e)
predictions_e = greedy_decoder(log_probs=log_probs_e)
loss_e = ctc_loss(
log_probs=log_probs_e,
targets=transcript_e,
input_length=encoded_len_e,
target_length=transcript_len_e,
)
# create corresponding eval callback
tagname = os.path.basename(args.eval_datasets[i]).split(".")[0]
eval_callback = nemo.core.EvaluatorCallback(
eval_tensors=[loss_e, predictions_e, transcript_e, transcript_len_e],
user_iter_callback=partial(process_evaluation_batch, labels=vocab),
user_epochs_done_callback=partial(process_evaluation_epoch, tag=tagname),
eval_step=args.eval_freq,
tb_writer=neural_factory.tb_writer,
)
callbacks.append(eval_callback)
return callbacks
def main():
args = parse_args()
# name = construct_name(
# args.exp_name,
# args.lr,
# args.batch_size,
# args.max_steps,
# args.num_epochs,
# args.weight_decay,
# args.optimizer,
# args.iter_per_step,
# )
# log_dir = name
# if args.work_dir:
# log_dir = os.path.join(args.work_dir, name)
# instantiate Neural Factory with supported backend
neural_factory = nemo.core.NeuralModuleFactory(
placement=nemo.core.DeviceType.GPU,
backend=nemo.core.Backend.PyTorch,
# local_rank=args.local_rank,
# optimization_level=args.amp_opt_level,
# log_dir=log_dir,
# checkpoint_dir=args.checkpoint_dir,
# create_tb_writer=args.create_tb_writer,
# files_to_copy=[args.model_config, __file__],
# cudnn_benchmark=args.cudnn_benchmark,
# tensorboard_dir=args.tensorboard_dir,
)
args.num_gpus = neural_factory.world_size
# checkpoint_dir = neural_factory.checkpoint_dir
if args.local_rank is not None:
logging.info("Doing ALL GPU")
# build dags
callbacks = create_all_dags(args, neural_factory)
# evaluate model
neural_factory.eval(callbacks=callbacks)
if __name__ == "__main__":
main()