Ejemplo n.º 1
0
def load_training_data(params, config):
    """Load and return the training data."""
    # Load data
    if params['is_conditional']:
        raise ValueError("Not supported yet.")
    else:
        labels = None

    # Load data
    LOGGER.info("Loading training data.")
    data = load_data(config['data_source'], config['data_filename'])
    LOGGER.info("Training data size: %d", len(data))

    # Build dataset
    LOGGER.info("Building dataset.")
    dataset = get_dataset(data, labels, config['batch_size'],
                          params['data_shape'], config['use_random_transpose'],
                          config['n_jobs'])

    # Create iterator
    if params['is_conditional']:
        train_x, train_y = dataset.make_one_shot_iterator().get_next()
    else:
        train_x, train_y = dataset.make_one_shot_iterator().get_next(), None

    return train_x, train_y
Ejemplo n.º 2
0
def load_training_data(params, config):
    """Load and return the training data."""
    # Load data
    if params['is_conditional']:  # greg: ¿Qué significa este error??
        raise ValueError("Not supported yet.")
    else:
        labels = None
    LOGGER.info("Loading training data.")
    data = load_data(config['data_source'], config['data_filename'])
    LOGGER.info("Training data size: %d", len(data))

    # Build dataset
    LOGGER.info("Building dataset.")
    dataset = get_dataset(data, labels, config['batch_size'],
                          params['data_shape'], config['use_random_transpose'],
                          config['n_jobs'])

    # Create iterator
    if params[
            'is_conditional']:  # greg: ESTO NUNCA PASA, YA QUE is_conditional arroja Error Not supported yet en el método load_training_data
        # greg: ¿Que hace make_one_shot_iterator.get_next()?
        train_x, train_y = dataset.make_one_shot_iterator().get_next()
    else:
        train_x, train_y = dataset.make_one_shot_iterator().get_next(), None

    return train_x, train_y
Ejemplo n.º 3
0
def load_training_data(params, config):
    """Load and return the training data."""
    # Load data
    if params['is_conditional']:
        raise ValueError("Not supported yet.")
    else:
        labels = None
    LOGGER.info("Loading training data.")
    data = load_data(config['data_source'], config['data_filename'])
    LOGGER.info("Training data size: %d", len(data))

    # Build dataset
    LOGGER.info("Building dataset.")
    dataset = get_dataset(
        data, labels, config['batch_size'], params['data_shape'],
        config['use_random_transpose'], config['n_jobs'])

    # Create iterator
    if params['is_conditional']:
        train_x, train_y = dataset.make_one_shot_iterator().get_next()
    else:
        train_x, train_y = dataset.make_one_shot_iterator().get_next(), None

    return train_x, train_y