Esempio n. 1
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def test_idle_buffer_3D(random):
    node = Pipeline(steps=dummy_classifier, buffer_size='5s', meta_label=None)
    start_0 = now() - pd.Timedelta('10s')
    start_1 = now()
    start_2 = now() + pd.Timedelta('10s')
    node.i_training_0.data = DummyData(start_date=start_0).next(10)
    node.i_training_1.data = DummyData(start_date=start_1).next(10)
    node.i_training_2.data = DummyData(start_date=start_2).next(10)
    node.update()
    assert len(node._X_train_indices) == 2
    assert len(node._X_train_indices) == len(node._X_train)
    assert node._X_train.shape == (2, 10, 5)
Esempio n. 2
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def test_accumulate_y_train(caplog):
    node = Pipeline(steps=dummy_classifier)
    stream = DummyData(start_date=now())
    node.i_training_0.data = stream.next()
    node.i_training_1.data = stream.next()
    node.i_training_2.data = stream.next()
    node.i_training_0.meta = { 'epoch': { 'context': { 'target': True }}}
    node.i_training_1.meta = {}
    node.i_training_2.meta = { 'epoch': { 'context': { 'target': False }}}
    node.update()
    assert node._y_train.tolist() == [True, False]
    assert caplog.record_tuples[0][2] =='Invalid label'
Esempio n. 3
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def test_accumulation_boundaries():
    node = Pipeline(steps=dummy_classifier)
    events = [
        ['accumulation_starts', ''],
        ['accumulation_stops', ''],
        ['accumulation_starts', '']
    ]
    times = pd.date_range(start='2018-01-01', periods=3, freq='1s')
    node.i_events.set(events, times, ['label', 'data'])
    node.update()
    assert node._accumulation_start == np.datetime64('2018-01-01T00:00:00')
    assert node._accumulation_stop == np.datetime64('2018-01-01T00:00:01')
Esempio n. 4
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def test_accumulate_start_stop_2D(random):
    node = Pipeline(steps=dummy_classifier, buffer_size='5s')
    start = now()
    events = [
        ['accumulation_starts', ''],
        ['accumulation_stops', '']
    ]
    times = pd.date_range(start=start, periods=2, freq='10s')
    node.i_events.set(events, times, ['label', 'data'])
    stream = DummyData(start_date=start, rate=1, jitter=0)
    node.i_training.data = stream.next(100)
    node.update()
    assert len(node._X_train) == 10
Esempio n. 5
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def test_fit_reset(caplog):
    caplog.set_level(logging.DEBUG)
    node = Pipeline(steps=dummy_classifier, event_reset='reset')
    node._status = -1 # bypass accumulation
    node._X_train = np.array([-1, 1, 1, 1])
    node._y_train = np.array([0, 1, 1, 1])
    node.i_events.data = make_event('training_starts')
    node.update()
    node.i_events.data = make_event('reset')
    node.update()
    assert caplog.record_tuples[0][2] == 'Start training'
    assert caplog.record_tuples[1][2] == 'Reset'
    assert node._status == 0
Esempio n. 6
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def test_fit_success(caplog):
    caplog.set_level(logging.DEBUG)
    node = Pipeline(steps=dummy_classifier)
    node._status = -1 # bypass accumulation
    assert hasattr(node._pipeline[0], 'n_classes_') == False
    node._X_train = np.array([-1, 1, 1, 1])
    node._y_train = np.array([0, 1, 1, 1])
    node.i_events.data = make_event('training_starts')
    while node._status != 3:
        node.update()
    assert node._pipeline[0].n_classes_ == 2
    assert caplog.record_tuples[0][2] == 'Start training'
    assert caplog.record_tuples[1][2].startswith('Model fitted in')
Esempio n. 7
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def test_fit_error(caplog):
    steps = [{
        'module': 'sklearn.dummy',
        'class': 'DummyClassifier',
        'args': {
            'strategy': 'foobar'
        }
    }]
    node = Pipeline(steps=steps)
    node.i_events.data = make_event('training_starts')
    with pytest.raises(WorkerInterrupt):
        while node._status != 3:
            node.update()
    assert caplog.record_tuples[0][2].startswith('An error occured while fitting')
Esempio n. 8
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def test_passthrough():
    node = Pipeline(steps=dummy_classifier, passthrough=True)
    streamer = DummyData()
    node.i_training.data = streamer.next()
    node.i_training_0.data = streamer.next()
    node.i_events.data = make_event('foobar')
    node.i.data = streamer.next()
    node.i_0.data = streamer.next()
    node.i_1.data = streamer.next()
    node.i.meta = {'foobar': 42}
    node.update()
    assert len(list(node.iterate('o*'))) == 3
    assert node.o.data.equals(node.i.data)
    assert node.o_0.data.equals(node.i_0.data)
    assert node.o_0.data.equals(node.i_0.data)
    assert node.o.meta == node.i.meta
Esempio n. 9
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def test_predict_3D_output():
    node = Pipeline(steps=dummy_classifier, mode='predict', meta_label='target')
    stream = DummyData(start_date=now())
    node.i_training_0.data = stream.next(5)
    node.i_training_1.data = stream.next(5)
    node.i_training_0.meta = { 'target': 0 }
    node.i_training_1.meta = { 'target': 1 }
    node.i_events.data = make_event('training_starts')
    while node._status != 3:
        node.update()
    node.i_0.data = stream.next(5)
    node.i_1.data = stream.next(5)
    node.i_0.meta = {'index': 0}
    node.i_1.meta = {'index': 1}
    node.update()
    assert len(node.o_events.data) == 2
    assert node.o_events.meta == {'epochs': [{'index': 0}, {'index': 1}]}
Esempio n. 10
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def test_predict():
    # classifier = [
    #     {'module': 'test_node_ml', 'class': 'Flattener'},
    #     {'module': 'sklearn.dummy', 'class': 'DummyClassifier', 'args': {'strategy': 'most_frequent'}}
    # ]
    node = Pipeline(steps=dummy_classifier, mode='predict', meta_label='target')
    node.i_training_0.set([-1], [now()], meta={ 'target': 0 })
    node.i_training_1.set([1], [now()], meta={ 'target': 1 })
    node.i_training_2.set([1], [now()], meta={ 'target': 1 })
    node.i_training_3.set([1], [now()], meta={ 'target': 1 })
    node.i_events.data = make_event('training_starts')
    while node._status != 3:
        node.update()
    node.i_0.set([-1], [now()])
    node.i_1.set([1], [now()])
    node.i_2.set([1], [now()])
    node.i_3.set([1], [now()])
    node.update()
    assert list(node._out) == [1, 1, 1, 1]
Esempio n. 11
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def test_transform_3D_output(random):
    pipeline = [
        {'module': 'test_ml', 'class': 'Vectorizer'},
        {'module': 'test_ml', 'class': 'DummyTransformer'},
        {'module': 'test_ml', 'class': 'Shaper', 'args': { 'shape': (2, -1, 5) }}
    ]
    node = Pipeline(steps=pipeline, mode='fit_transform', meta_label=None)
    columns = ['A', 'B', 'C', 'D', 'E']
    stream = DummyData(start_date=now())
    node.i_0.data = stream.next()
    node.i_1.data = stream.next()
    node.i_0.data.columns = columns
    node.i_1.data.columns = columns
    node.i_0.meta = {'index': 0}
    node.i_1.meta = {'index': 1}
    node.update()
    assert len(list(node.iterate('o_*'))) == 2
    assert np.array_equal(node.i_0.data.index.values, node.o_0.data.index.values)
    assert list(node.i_0.data.columns) == columns
    assert list(node.i_1.data.columns) == columns
    assert node.o_0.meta == node.i_0.meta
    assert node.o_1.meta == node.i_1.meta
Esempio n. 12
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def test_trim_3D(random):
    node = Pipeline(steps=dummy_classifier)
    node.i_training_0.data = DummyData(start_date='2018-01-01T00:00:00').next()
    node.i_training_1.data = DummyData(start_date='2018-01-01T00:00:10').next()
    node.i_training_2.data = DummyData(start_date='2018-01-01T00:00:20').next()
    node.i_training_3.data = DummyData(start_date='2018-01-01T00:00:30').next()
    node.i_training_0.meta = { 'epoch': { 'context': { 'target': 1 }}}
    node.i_training_1.meta = { 'epoch': { 'context': { 'target': 2 }}}
    node.i_training_2.meta = { 'epoch': { 'context': { 'target': 3 }}}
    node.i_training_3.meta = { 'epoch': { 'context': { 'target': 4 }}}
    node._accumulation_start = np.datetime64('2017-12-31T00:00:00')
    node._accumulation_stop = np.datetime64('2018-01-01T00:01:00')
    node._status = 1
    node.update()
    node._dimensions = 0 # Bypass accumulation
    start = np.datetime64('2018-01-01T00:00:05')
    stop = np.datetime64('2018-01-01T00:00:25')
    node._accumulate(start, stop)
    assert len(node._X_train_indices) == 2
    assert len(node._X_train) == 2
    assert len(node._y_train) == 2
    assert node._y_train.tolist() == [2, 3]
Esempio n. 13
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def test_3D_training(random):
    node = Pipeline(steps=dummy_classifier)
    node.i_training_0.data = DummyData().next()
    node.update()
    assert node._dimensions == 3
Esempio n. 14
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def test_transform():
    node = Pipeline(steps=dummy_transformer, fit=False, mode='transform', meta_label=None)
    node.i.data = DummyData().next()
    node.update()
    expected = node.i.data.values * 2
    assert np.array_equal(expected, node._out)
Esempio n. 15
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def test_receive_3D_invalid_label(caplog):
    node = Pipeline(steps=dummy_classifier, mode='fit_predict')
    node.i_0.data = DummyData().next()
    node.update()
    assert caplog.record_tuples[0][2] == 'Invalid label'
    assert node._X == None
Esempio n. 16
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def test_receive_2D():
    node = Pipeline(steps=dummy_transformer, fit=False, mode='transform')
    node.i.data = DummyData().next()
    node.update()
    assert node._X.shape == (10, 5)
    assert node._dimensions == 2
Esempio n. 17
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def test_3D_no_training(random):
    node = Pipeline(steps=dummy_classifier, mode='fit_predict')
    node.i_0.data = DummyData().next()
    node.update()
    assert node._dimensions == 3
Esempio n. 18
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def test_2D_no_training(random):
    node = Pipeline(steps=dummy_transformer, mode='fit_transform')
    node.i.data = DummyData().next()
    node.update()
    assert node._dimensions == 2