コード例 #1
0
        "model_dir": model_dir,
        "model_blueprint": model_blueprint,
        "exist_model": exist_model,
        "start_epoch": train_stage,
        "epochs": epochs,
        "use_gpu": use_gpu,
        "gpu_id": gpu_id,
        "max_change": 10.,
        "benchmark": benchmark,
        "suffix": suffix,
        "report_times_every_epoch": report_times_every_epoch,
        "report_interval_iters": report_interval_iters,
        "record_file": "train.csv"
    })

    trainer = trainer.SimpleTrainer(package)

    if run_lr_finder and utils.is_main_training():
        trainer.run_lr_finder("lr_finder.csv",
                              init_lr=1e-8,
                              final_lr=10.,
                              num_iters=2000,
                              beta=0.98)
        endstage = 3  # Do not start extractor.
    else:
        trainer.run()

#### Extract xvector
if stage <= 4 <= endstage and utils.is_main_training():
    # There are some params for xvector extracting.
    data_root = "data"  # It contains all dataset just like Kaldi recipe.
コード例 #2
0
    }, {
        "model_dir": model_dir,
        "model_blueprint": model_blueprint,
        "exist_model": exist_model,
        "start_epoch": train_stage,
        "epochs": epochs,
        "use_gpu": use_gpu,
        "gpu_id": gpu_id,
        "benchmark": benchmark,
        "suffix": suffix,
        "report_times_every_epoch": report_times_every_epoch,
        "report_interval_iters": report_interval_iters,
        "record_file": "train.csv"
    })

    trainer = trainer.SimpleTrainer(package, stop_early=stop_early)

    if run_lr_finder and utils.is_main_training():
        trainer.run_lr_finder("lr_finder.csv",
                              init_lr=1e-8,
                              final_lr=10.,
                              num_iters=2000,
                              beta=0.98)
        endstage = 3  # Do not start extractor.
    else:
        trainer.run()

#### Extract xvector
if stage <= 4 <= endstage and utils.is_main_training():
    # There are some params for xvector extracting.
    data_root = "data"  # It contains all dataset just like Kaldi recipe.