test_epoch_ctrl.py 21.3 KB
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# Copyright 2020 Huawei Technologies Co., Ltd
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""
Testing Epoch Control op in DE
"""
import itertools
import cv2
import numpy as np
import pytest

import mindspore.dataset as ds
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import mindspore.dataset.vision.c_transforms as vision
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from mindspore import log as logger

DATA_DIR = ["../data/dataset/test_tf_file_3_images/train-0000-of-0001.data"]
SCHEMA_DIR = "../data/dataset/test_tf_file_3_images/datasetSchema.json"


def diff_mse(in1, in2):
    """
    diff_mse
    """
    mse = (np.square(in1.astype(float) / 255 - in2.astype(float) / 255)).mean()
    return mse * 100

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def test_cifar10():
    """
    dataset parameter
    """
    logger.info("Test dataset parameter")
    data_dir_10 = "../data/dataset/testCifar10Data"
    num_repeat = 2
    batch_size = 32
    limit_dataset = 100
    # apply dataset operations
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    data1 = ds.Cifar10Dataset(data_dir_10, num_samples=limit_dataset)
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    data1 = data1.repeat(num_repeat)
    data1 = data1.batch(batch_size, True)
    num_epoch = 5
    # iter1 will always assume there is a next epoch and never shutdown.
    iter1 = data1.create_tuple_iterator()
    epoch_count = 0
    sample_count = 0
    for _ in range(num_epoch):
        row_count = 0
        for _ in iter1:
            # in this example, each dictionary has keys "image" and "label"
            row_count += 1
        assert row_count == int(limit_dataset * num_repeat / batch_size)
        logger.debug("row_count: ", row_count)
        epoch_count += 1
        sample_count += row_count
    assert epoch_count == num_epoch
    logger.debug("total epochs: ", epoch_count)
    assert sample_count == int(limit_dataset * num_repeat / batch_size) * num_epoch
    logger.debug("total sample: ", sample_count)


def test_decode_op():
    """
    Test Decode op
    """
    logger.info("test_decode_op")

    # Decode with rgb format set to True
    data1 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)

    # Serialize and Load dataset requires using vision.Decode instead of vision.Decode().
    data1 = data1.map(input_columns=["image"], operations=[vision.Decode(True)])

    # Second dataset
    data2 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)

    num_epoch = 5
    # iter1 will always assume there is a next epoch and never shutdown.
    iter1 = data1.create_dict_iterator()
    # iter 2 will stop and shutdown pipeline after num_epoch
    iter2 = data2.create_dict_iterator(num_epoch)
    for _ in range(num_epoch):
        i = 0
        for item1, item2 in itertools.zip_longest(iter1, iter2):
            actual = item1["image"]
            expected = cv2.imdecode(item2["image"], cv2.IMREAD_COLOR)
            expected = cv2.cvtColor(expected, cv2.COLOR_BGR2RGB)
            assert actual.shape == expected.shape
            diff = actual - expected
            mse = np.sum(np.power(diff, 2))
            assert mse == 0
            i = i + 1
        assert i == 3

    # Users have the option to manually stop the iterator, or rely on garbage collector.
    iter1.stop()
    # Expect a AttributeError since iter1 has been stopped.
    with pytest.raises(AttributeError) as info:
        iter1.__next__()
    assert "object has no attribute 'depipeline'" in str(info.value)

    with pytest.raises(RuntimeError) as info:
        iter2.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)


# Generate 1d int numpy array from 0 - 63
def generator_1d():
    """
    generator
    """
    for i in range(64):
        yield (np.array([i]),)


def test_generator_dict_0():
    """
    test generator dict 0
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])

    i = 0
    # create the iterator inside the loop declaration
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    for item in data1.create_dict_iterator(num_epochs=1):  # each data is a dictionary
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        golden = np.array([i])
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        np.testing.assert_array_equal(item["data"], golden)
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        i = i + 1

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def test_generator_dict_1():
    """
    test generator dict 1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])

    for _ in range(10):
        i = 0
        # BAD. Do not create iterator every time inside.
        # Create iterator outside the epoch for loop.
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        for item in data1.create_dict_iterator(num_epochs=1):  # each data is a dictionary
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            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

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def test_generator_dict_2():
    """
    test generator dict 2
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_dict_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

    # iter1 is still alive and running.
    item1 = iter1.__next__()
    assert item1
    # rely on garbage collector to destroy iter1

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def test_generator_dict_3():
    """
    test generator dict 3
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_dict_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64
    # optional
    iter1.stop()
    # Expect a AttributeError since iter1 has been stopped.
    with pytest.raises(AttributeError) as info:
        iter1.__next__()
    assert "object has no attribute 'depipeline'" in str(info.value)


def test_generator_dict_4():
    """
    test generator dict 4
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_dict_iterator(num_epochs=10)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)

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def test_generator_dict_4_1():
    """
    test generator dict 4_1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    # epoch ctrl op will not be injected if num_epochs is 1.
    iter1 = data1.create_dict_iterator(num_epochs=1)
    for _ in range(1):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)

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def test_generator_dict_4_2():
    """
    test generator dict 4_2
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    # repeat will not be injected when num repeat is 1.
    data1 = data1.repeat(1)
    # epoch ctrl op will not be injected if num_epochs is 1.
    iter1 = data1.create_dict_iterator(num_epochs=1)
    for _ in range(1):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)

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def test_generator_dict_5():
    """
    test generator dict 5
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_dict_iterator(num_epochs=11)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item["data"], golden)
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            i = i + 1
        assert i == 64

    # still one more epoch left in the iter1.
    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i])
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        np.testing.assert_array_equal(item["data"], golden)
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        i = i + 1
    assert i == 64

    # now iter1 has been exhausted, c++ pipeline has been shut down.
    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)

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# Test tuple iterator

def test_generator_tuple_0():
    """
    test generator tuple 0
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])

    i = 0
    # create the iterator inside the loop declaration
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    for item in data1.create_tuple_iterator(num_epochs=1):  # each data is a dictionary
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        golden = np.array([i])
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        np.testing.assert_array_equal(item[0], golden)
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        i = i + 1

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def test_generator_tuple_1():
    """
    test generator tuple 1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])

    for _ in range(10):
        i = 0
        # BAD. Do not create iterator every time inside.
        # Create iterator outside the epoch for loop.
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        for item in data1.create_tuple_iterator(num_epochs=1):  # each data is a dictionary
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            golden = np.array([i])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64

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def test_generator_tuple_2():
    """
    test generator tuple 2
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_tuple_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64

    # iter1 is still alive and running.
    item1 = iter1.__next__()
    assert item1
    # rely on garbage collector to destroy iter1

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def test_generator_tuple_3():
    """
    test generator tuple 3
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_tuple_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64
    # optional
    iter1.stop()
    # Expect a AttributeError since iter1 has been stopped.
    with pytest.raises(AttributeError) as info:
        iter1.__next__()
    assert "object has no attribute 'depipeline'" in str(info.value)


def test_generator_tuple_4():
    """
    test generator tuple 4
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_tuple_iterator(num_epochs=10)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64

    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)


def test_generator_tuple_5():
    """
    test generator tuple 5
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    iter1 = data1.create_tuple_iterator(num_epochs=11)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64

    # still one more epoch left in the iter1.
    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i])
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        np.testing.assert_array_equal(item[0], golden)
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        i = i + 1
    assert i == 64

    # now iter1 has been exhausted, c++ pipeline has been shut down.
    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)

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# Test with repeat
def test_generator_tuple_repeat_1():
    """
    test generator tuple repeat 1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(2)
    iter1 = data1.create_tuple_iterator(num_epochs=11)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2

    # still one more epoch left in the iter1.
    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
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        np.testing.assert_array_equal(item[0], golden)
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        i = i + 1
    assert i == 64 * 2

    # now iter1 has been exhausted, c++ pipeline has been shut down.
    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)


# Test with repeat
def test_generator_tuple_repeat_repeat_1():
    """
    test generator tuple repeat repeat 1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(2)
    data1 = data1.repeat(3)
    iter1 = data1.create_tuple_iterator(num_epochs=11)
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2 * 3

    # still one more epoch left in the iter1.
    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
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        np.testing.assert_array_equal(item[0], golden)
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        i = i + 1
    assert i == 64 * 2 * 3

    # now iter1 has been exhausted, c++ pipeline has been shut down.
    with pytest.raises(RuntimeError) as info:
        iter1.__next__()
    err_msg = "EOF buffer encountered. Users try to fetch data beyond the specified number of epochs."
    assert err_msg in str(info.value)


def test_generator_tuple_repeat_repeat_2():
    """
    test generator tuple repeat repeat 2
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(2)
    data1 = data1.repeat(3)
    iter1 = data1.create_tuple_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2 * 3
    # optional
    iter1.stop()
    # Expect a AttributeError since iter1 has been stopped.
    with pytest.raises(AttributeError) as info:
        iter1.__next__()
    assert "object has no attribute 'depipeline'" in str(info.value)

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def test_generator_tuple_repeat_repeat_3():
    """
    test generator tuple repeat repeat 3
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(2)
    data1 = data1.repeat(3)
    iter1 = data1.create_tuple_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2 * 3

    for _ in range(5):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2 * 3

    # rely on garbage collector to destroy iter1

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def test_generator_tuple_infinite_repeat_repeat_1():
    """
    test generator tuple infinite repeat repeat 1
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat()
    data1 = data1.repeat(3)
    iter1 = data1.create_tuple_iterator(num_epochs=11)

    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
        np.testing.assert_array_equal(item[0], golden)
        i = i + 1
        if i == 100:
            break

    # rely on garbage collector to destroy iter1


def test_generator_tuple_infinite_repeat_repeat_2():
    """
    test generator tuple infinite repeat repeat 2
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(3)
    data1 = data1.repeat()
    iter1 = data1.create_tuple_iterator(num_epochs=11)

    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
        np.testing.assert_array_equal(item[0], golden)
        i = i + 1
        if i == 100:
            break

    # rely on garbage collector to destroy iter1


def test_generator_tuple_infinite_repeat_repeat_3():
    """
    test generator tuple infinite repeat repeat 3
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat()
    data1 = data1.repeat()
    iter1 = data1.create_tuple_iterator(num_epochs=11)

    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
        np.testing.assert_array_equal(item[0], golden)
        i = i + 1
        if i == 100:
            break

    # rely on garbage collector to destroy iter1


def test_generator_tuple_infinite_repeat_repeat_4():
    """
    test generator tuple infinite repeat repeat 4
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat()
    data1 = data1.repeat()
    iter1 = data1.create_tuple_iterator()

    i = 0
    for item in iter1:  # each data is a dictionary
        golden = np.array([i % 64])
        np.testing.assert_array_equal(item[0], golden)
        i = i + 1
        if i == 100:
            break

    # rely on garbage collector to destroy iter1


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def test_generator_reusedataset():
    """
    test generator reusedataset
    """
    logger.info("Test 1D Generator : 0 - 63")

    # apply dataset operations
    data1 = ds.GeneratorDataset(generator_1d, ["data"])
    data1 = data1.repeat(2)
    iter1 = data1.create_tuple_iterator()
    for _ in range(10):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
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            np.testing.assert_array_equal(item[0], golden)
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            i = i + 1
        assert i == 64 * 2

    data1 = data1.repeat(3)
    iter1 = data1.create_tuple_iterator()
    for _ in range(5):
        i = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([i % 64])
698
            np.testing.assert_array_equal(item[0], golden)
699 700 701 702 703 704 705 706 707 708
            i = i + 1
        assert i == 64 * 2 * 3

    data1 = data1.batch(2)
    iter1 = data1.create_dict_iterator()
    for _ in range(5):
        i = 0
        sample = 0
        for item in iter1:  # each data is a dictionary
            golden = np.array([[i % 64], [(i + 1) % 64]])
709
            np.testing.assert_array_equal(item["data"], golden)
710 711 712 713 714
            i = i + 2
            sample = sample + 1
        assert sample == 64 * 3

    # rely on garbage collector to destroy iter1