Beispiel #1
0
def mnist(data_root_folder=None,
          one_hot=True,
          partitions=(
              0.8,
              .1,
          ),
          shuffle=False):
    """
    Loads (download if necessary) Mnist dataset, and optionally splits it to form different training, validation
    and test sets (use partitions parameters for that)
    """
    data_folder_name = 'mnist'

    if data_root_folder is None:
        data_root_folder = os.path.join(os.getcwd(), 'DATA')
        if not os.path.exists(data_root_folder):
            os.mkdir(data_root_folder)
    data_folder = os.path.join(data_root_folder, data_folder_name)

    datasets = read_data_sets(data_folder, one_hot=one_hot)
    train = Dataset(datasets.train.images, datasets.train.labels, name='MNIST')
    validation = Dataset(datasets.validation.images,
                         datasets.validation.labels,
                         name='MNIST')
    test = Dataset(datasets.test.images, datasets.test.labels, name='MNIST')
    res = [train, validation, test]
    if partitions:
        res = redivide_data(res,
                            partition_proportions=partitions,
                            shuffle=shuffle)
    return Datasets.from_list(res)
Beispiel #2
0
def redivide_data(datasets, partition_proportions=None, shuffle=False):
    """
    Function that redivides datasets. Can be use also to shuffle or filter or map examples.

    :param datasets: original datasets, instances of class Dataset (works with get_data and get_targets for
                        compatibility with mnist datasets
    :param partition_proportions: (optional, default None)  list of fractions that can either sum up to 1 or less
                                    then one, in which case one additional partition is created with
                                    proportion 1 - sum(partition proportions).
                                    If None it will retain the same proportion of samples found in datasets
    :param shuffle: (optional, default False) if True shuffles the examples
    :return: a list of datasets of length equal to the (possibly augmented) partition_proportion
    """
    all_data = np.vstack([get_data(d) for d in datasets])
    all_labels = np.vstack([get_targets(d) for d in datasets])

    all_infos = np.concatenate([d.sample_info for d in datasets])

    N = all_data.shape[0]

    if partition_proportions:  # argument check
        partition_proportions = list([partition_proportions] if isinstance(partition_proportions, float)
                                     else partition_proportions)
        sum_proportions = sum(partition_proportions)
        assert sum_proportions <= 1, "partition proportions must sum up to at most one: %d" % sum_proportions
        if sum_proportions < 1.: partition_proportions += [1. - sum_proportions]
    else:
        partition_proportions = [1. * get_data(d).shape[0] / N for d in datasets]

    if shuffle:
        permutation = np.arange(all_data.shape[0])
        np.random.shuffle(permutation)

        all_data = all_data[permutation]
        all_labels = np.array(all_labels[permutation])
        all_infos = np.array(all_infos[permutation])

    N = all_data.shape[0]
    assert N == all_labels.shape[0]

    calculated_partitions = reduce(
        lambda v1, v2: v1 + [sum(v1) + v2],
        [int(N * prp) for prp in partition_proportions],
        [0]
    )
    calculated_partitions[-1] = N

    print('datasets.redivide_data:, computed partitions numbers -',
          calculated_partitions, 'len all', N, end=' ')

    new_general_info_dict = merge_dicts(*[d.info for d in datasets])

    new_datasets = [
        Dataset(data=all_data[d1:d2], target=all_labels[d1:d2], sample_info=all_infos[d1:d2],
                info=new_general_info_dict)
        for d1, d2 in zip(calculated_partitions, calculated_partitions[1:])
        ]

    print('DONE')
    return new_datasets
Beispiel #3
0
def mnist(folder=None, one_hot=True, partitions=None, shuffle=False):
    """
    Loads (download if necessary) Mnist dataset, and optionally splits it to form different training, validation
    and test sets (use partitions parameters for that)

    :param folder:
    :param one_hot:
    :param partitions:
    :param shuffle:
    :return:
    """
    datasets = read_data_sets(folder, one_hot=one_hot)
    train = Dataset(datasets.train.images, datasets.train.labels, name='MNIST')
    validation = Dataset(datasets.validation.images, datasets.validation.labels, name='MNIST')
    test = Dataset(datasets.test.images, datasets.test.labels, name='MNIST')
    res = [train, validation, test]
    if partitions:
        res = redivide_data(res, partition_proportions=partitions, shuffle=shuffle)
        res += [None] * (3 - len(res))
    return Datasets.from_list(res)