Exemple #1
0
                    type=int,
                    nargs="*",
                    default=[0],
                    help="Devices' ids to apply distributed training")

parser.add_argument("--mxp",
                    default=False,
                    action="store_true",
                    help="Enable mixed precision")

args = parser.parse_args()

tf.config.optimizer.set_experimental_options(
    {"auto_mixed_precision": args.mxp})

strategy = setup_strategy(args.devices)

from tensorflow_asr.configs.config import Config
from tensorflow_asr.datasets.asr_dataset import ASRTFRecordDataset, ASRSliceDataset
from tensorflow_asr.featurizers.speech_featurizers import TFSpeechFeaturizer
from tensorflow_asr.featurizers.text_featurizers import CharFeaturizer
from tensorflow_asr.runners.ctc_runners import CTCTrainer
from tensorflow_asr.models.deepspeech2 import DeepSpeech2

config = Config(args.config)
speech_featurizer = TFSpeechFeaturizer(config.speech_config)
text_featurizer = CharFeaturizer(config.decoder_config)

if args.tfrecords:
    train_dataset = ASRTFRecordDataset(
        speech_featurizer=speech_featurizer,
def main():
    parser = argparse.ArgumentParser(prog="Conformer Training")

    parser.add_argument("--config",
                        type=str,
                        default=DEFAULT_YAML,
                        help="The file path of model configuration file")

    parser.add_argument("--max_ckpts",
                        type=int,
                        default=10,
                        help="Max number of checkpoints to keep")

    parser.add_argument("--tbs",
                        type=int,
                        default=None,
                        help="Train batch size per replica")

    parser.add_argument("--ebs",
                        type=int,
                        default=None,
                        help="Evaluation batch size per replica")

    parser.add_argument("--acs",
                        type=int,
                        default=None,
                        help="Train accumulation steps")

    parser.add_argument("--devices",
                        type=int,
                        nargs="*",
                        default=[0],
                        help="Devices' ids to apply distributed training")

    parser.add_argument("--mxp",
                        default=False,
                        action="store_true",
                        help="Enable mixed precision")

    parser.add_argument("--subwords",
                        type=str,
                        default=None,
                        help="Path to file that stores generated subwords")

    parser.add_argument("--subwords_corpus",
                        nargs="*",
                        type=str,
                        default=[],
                        help="Transcript files for generating subwords")

    parser.add_argument(
        "--train-dir",
        '-td',
        nargs='*',
        default=["en_ng_male_train.tsv", "en_ng_female_train.tsv"])
    parser.add_argument("--train-reg-dir",
                        '-trd',
                        nargs='*',
                        default=[
                            "libritts_train-clean-100.tsv",
                            "libritts_train-clean-360.tsv",
                            "libritts_train-other-500.tsv"
                        ])
    parser.add_argument(
        "--dev-dir",
        '-dd',
        nargs='*',
        default=["en_ng_male_eval.tsv", "en_ng_female_eval.tsv"])
    parser.add_argument("--dev-reg-dir",
                        '-drd',
                        nargs='*',
                        default=["libritts_test-other.tsv"])

    args = parser.parse_args()

    tf.config.optimizer.set_experimental_options(
        {"auto_mixed_precision": args.mxp})

    strategy = setup_strategy(args.devices)

    config = Config(args.config, learning=True)
    config.train_dir = args.train_dir
    config.dev_dir = args.dev_dir
    config.train_reg_dir = args.train_reg_dir
    config.dev_reg_dir = args.dev_reg_dir
    with open(config.speech_config) as f:
        speech_config = yaml.load(f, Loader=yaml.Loader)
    speech_featurizer = TFSpeechFeaturizer(speech_config)

    if args.subwords and os.path.exists(args.subwords):
        print("Loading subwords ...")
        text_featurizer = SubwordFeaturizer.load_from_file(
            config.decoder_config, args.subwords)
    else:
        print("Generating subwords ...")
        text_featurizer = SubwordFeaturizer.build_from_corpus(
            config.decoder_config, corpus_files=args.subwords_corpus)
        text_featurizer.save_to_file(args.subwords)

    train_dataset = Dataset(data_paths=config.train_dir,
                            speech_featurizer=speech_featurizer,
                            text_featurizer=text_featurizer,
                            augmentations=config.learning_config.augmentations,
                            stage="train",
                            cache=False,
                            shuffle=False)
    train_reg_dataset = DatasetInf(
        data_paths=config.train_reg_dir,
        speech_featurizer=speech_featurizer,
        text_featurizer=text_featurizer,
        augmentations=config.learning_config.augmentations,
        stage="train",
        cache=False,
        shuffle=False)
    eval_dataset = Dataset(data_paths=config.dev_dir,
                           speech_featurizer=speech_featurizer,
                           text_featurizer=text_featurizer,
                           stage="eval",
                           cache=False,
                           shuffle=False)
    eval_reg_dataset = DatasetInf(
        data_paths=config.dev_reg_dir,
        speech_featurizer=speech_featurizer,
        text_featurizer=text_featurizer,
        augmentations=config.learning_config.augmentations,
        stage="eval",
        cache=False,
        shuffle=False)

    conformer_trainer = MultiReaderTransducerTrainer(
        config=config.learning_config.running_config,
        text_featurizer=text_featurizer,
        strategy=strategy)

    with conformer_trainer.strategy.scope():
        # build model
        conformer = Conformer(**config.model_config,
                              vocabulary_size=text_featurizer.num_classes)
        conformer._build(speech_featurizer.shape)
        conformer.summary(line_length=120)

        optimizer = tf.keras.optimizers.Adam(
            TransformerSchedule(d_model=conformer.dmodel,
                                warmup_steps=config.learning_config.
                                optimizer_config["warmup_steps"],
                                max_lr=(0.05 / math.sqrt(conformer.dmodel))),
            beta_1=config.learning_config.optimizer_config["beta1"],
            beta_2=config.learning_config.optimizer_config["beta2"],
            epsilon=config.learning_config.optimizer_config["epsilon"])

    conformer_trainer.compile(model=conformer,
                              optimizer=optimizer,
                              max_to_keep=args.max_ckpts)
    conformer_trainer.fit(
        train_dataset,
        train_reg_dataset,
        # alpha for regularising dataset; alpha = 1 for training dataset
        1.,
        eval_dataset,
        eval_reg_dataset,
        train_bs=args.tbs,
        eval_bs=args.ebs,
        train_acs=args.acs)