Exemplo n.º 1
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    def test_constructor(self):
        inbound_nodes = ['node1', 'node2']
        incoming_keys_mapping = {'node1': {"out1": "in1"}}
        _ = Nucleotide(inbound_nodes=inbound_nodes,
                       incoming_keys_mapping=incoming_keys_mapping)
        incoming_keys_mapping_wrong = {'node1': {"out1": "in1"},
                                       'node3': {"out1": "in2"}}
        with self.assertRaises(AttributeError):
            _ = Nucleotide(inbound_nodes=inbound_nodes,
                           incoming_keys_mapping=incoming_keys_mapping_wrong)

        inbound_nodes_with_mapping = {'node1': {"out1": "in1"},
                                      'node2': {"out2": "in2"}}
        nucleotide = Nucleotide(
            inbound_nodes=inbound_nodes_with_mapping)
        self.assertSetEqual(set(nucleotide.inbound_nodes),
                            set(inbound_nodes_with_mapping.keys()))
        self.assertDictEqual(nucleotide.incoming_keys_mapping,
                             inbound_nodes_with_mapping)
        self.assertEqual(nucleotide.name, nucleotide.__class__.__name__)

        nucleotide_name = "nucleotide_name"
        nucleotide_with_name = Nucleotide(inbound_nodes=inbound_nodes,
                                          name=nucleotide_name)
        self.assertEqual(nucleotide_with_name.name, nucleotide_name)
Exemplo n.º 2
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    def test_mode_setter(self):
        mode = 'NEW_MODE'

        class GeneHandlerDummy(GeneHandler):
            gene_name_and_nucleotide_super_cls = {
                'gene1': Nucleotide,
                'gene2': Nucleotide,
                'gene3': Nucleotide,
                'gene4': Nucleotide
            }

        genes = {
            'gene1': [
                Nucleotide(name='gene1_nucleotide1', inbound_nodes=[]),
                Nucleotide(name='gene1_nucleotide2', inbound_nodes=[]),
                Nucleotide(name='gene1_nucleotide3', inbound_nodes=[])
            ],
            'gene2': [
                Nucleotide(name='gene2_nucleotide1', inbound_nodes=[]),
                Nucleotide(name='gene2_nucleotide2', inbound_nodes=[])
            ]
        }
        gene_handler = GeneHandlerDummy(gene1=genes['gene1'],
                                        gene2=genes['gene2']).build()
        gene_handler.mode = mode
        for gene in genes.values():
            for nucleotide in gene:
                self.assertEqual(nucleotide.mode, mode)
Exemplo n.º 3
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 def test_check_class_topology_right(self):
     nucleotides = [
         _NucleotideType1(name='gene1_nucleotide1',
                          inbound_nodes=['input']),
         _NucleotideType1(name='gene1_nucleotide2', inbound_nodes=[]),
         _NucleotideType1(name='gene1_nucleotide3', inbound_nodes=[]),
         _NucleotideType2(name='gene2_nucleotide1',
                          inbound_nodes=[
                              'input', 'gene1_nucleotide1',
                              'gene1_nucleotide2'
                          ]),
         _NucleotideType2(
             name='gene2_nucleotide2',
             inbound_nodes=['gene2_nucleotide1', 'gene1_nucleotide3']),
         Nucleotide(name='gene3_nucleotide1',
                    inbound_nodes=['gene2_nucleotide1']),
         Nucleotide(
             name='gene3_nucleotide2',
             inbound_nodes=['gene2_nucleotide2', 'gene3_nucleotide1'])
     ]
     dna_helix = DNAHelix(nucleotides, self.incoming_nucleotides)
     dna_helix.build()
     self.assertTrue(
         dna_helix.check_class_topology(
             self.nucleotide_type_dependency_map))
Exemplo n.º 4
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    def test_assert_all_nucleotides_have_same_mode(self):
        mode = 'NEW_MODE'

        class GeneHandlerDummy(GeneHandler):
            gene_name_and_nucleotide_super_cls = {
                'gene1': Nucleotide,
                'gene2': Nucleotide,
                'gene3': Nucleotide,
                'gene4': Nucleotide
            }

        genes = {
            'gene1': [
                Nucleotide(name='gene1_nucleotide1', inbound_nodes=[]),
                Nucleotide(name='gene1_nucleotide2', inbound_nodes=[]),
                Nucleotide(name='gene1_nucleotide3', inbound_nodes=[])
            ],
            'gene2': [
                Nucleotide(name='gene2_nucleotide1', inbound_nodes=[]),
                Nucleotide(name='gene2_nucleotide2', inbound_nodes=[])
            ]
        }
        gene_handler = GeneHandlerDummy(gene1=genes['gene1'],
                                        gene2=genes['gene2']).build()
        gene_handler.mode = mode
        gene_handler.assert_all_nucleotides_have_same_mode()
        gene_handler.gene1['gene1_nucleotide1'].mode = 'WrongMode'
        with self.assertRaises(ValueError):
            gene_handler.assert_all_nucleotides_have_same_mode()
Exemplo n.º 5
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 def test_filter_inputs_dynamic_keys(self):
     mapping = {'node1': {'out11': 'inp11',
                          'out12': 'inp12'},
                'node2': {'out22': 'inp22',
                          'out21': '_'}}
     nucleotide = Nucleotide(
         inbound_nodes=['node1', 'node2', 'node3'],
         incoming_keys_mapping=mapping)
     nucleotide.incoming_keys = ['inp11']
     nucleotide.dynamic_incoming_keys = True
     data = {'node1': {'out11': 'value11',
                       'out12': 'value12'},
             'node2': {'out21': 'value21',
                       'out22': 'value22',
                       'out': 'value23'},
             'node3': {'out31': 'value31',
                       'out32': 'value32',
                       'out': 'value33'},
             'node4': {'out41': 'value41'}}
     data_remapped_must = {'inp11': 'value11',
                           'inp12': 'value12',
                           'inp22': 'value22',
                           'out31': 'value31',
                           'out32': 'value32',
                           'out': ['value23', 'value33']}
     data_remapped = nucleotide.filter_inputs(data)
     self.assertDictEqual(data_remapped_must, data_remapped)
Exemplo n.º 6
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 def test_construct_graph_from_nucleotides_with_cycle(self):
     nucleotides = [
         Nucleotide(name='first'),
         Nucleotide(name='second', inbound_nodes=['first']),
         Nucleotide(name='third',
                    inbound_nodes=['first', 'second', 'third']),
         Nucleotide(name='fourth', inbound_nodes=['third', 'second']),
     ]
     with self.assertRaises(ValueError):
         _ = graph_utils.construct_graph_from_nucleotides(nucleotides)
Exemplo n.º 7
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    def test_kpi_call(self, is_last_iteration):
        temp_dir = self.get_temp_dir()
        os.mkdir(os.path.join(temp_dir, "save"))
        os.mkdir(os.path.join(temp_dir, "cache"))

        cacher1 = KPIMD5Cacher().build()
        kpi_plugin = DummyTpFpTnFnKPIPlugin(name="kpi_plugin1",
                                            inbound_nodes=["dataset"],
                                            cachers=[cacher1]).build()

        saver2 = KPIJsonSaver().build()
        cacher2 = KPIMD5Cacher().build()
        kpi_accumulator1 = DummyF1KPIAccumulator(
            name="kpi_acc1",
            inbound_nodes=["kpi_plugin1", "dataset"],
            cachers=[cacher2],
            savers=[saver2]).build()

        saver3 = KPIJsonSaver().build()
        cacher3 = KPIMD5Cacher().build()
        kpi_accumulator2 = _MeanKPIAccumulator(
            name="kpi_acc2",
            inbound_nodes=["kpi_acc1", "dataset"],
            incoming_keys_mapping={
                "dataset": {
                    "evaluate": "_"
                }
            },
            cachers=[cacher3],
            savers=[saver3]).build()

        kpi_evaluator = KPIEvaluator(
            plugins=kpi_plugin,
            accumulators=[kpi_accumulator1, kpi_accumulator2]).build()
        kpi_evaluator.save_target = os.path.join(temp_dir, "save")
        kpi_evaluator.cache_target = os.path.join(temp_dir, "cache")
        dataset_nucleotide = Nucleotide(name="dataset").build()
        dataset_nucleotide.generated_keys = [
            "labels", "predictions", "evaluate", "prefix"
        ]
        incoming_nucleotides = {'dataset': dataset_nucleotide}
        kpi_evaluator.build_dna(incoming_nucleotides)

        data_batch = nest_utils.combine_nested(self.data, np.array)
        kpi_evaluator.is_last_iteration = is_last_iteration
        _ = kpi_evaluator(dataset=data_batch)

        if is_last_iteration:
            last_kpi_must = {
                "kpi_acc1": self.kpis1_must[-1],
                "kpi_acc2": self.kpis2_must[-1]
            }
        else:
            last_kpi_must = {"kpi_acc1": self.kpis1_must[3]}
        self.assertAllClose(last_kpi_must, kpi_evaluator.last_kpi)
Exemplo n.º 8
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 def test_get_repeated_node_names(self):
     unique_node_names = ['first', 'second', 'third']
     repeated_node_names = ['first', 'second', 'third', 'second']
     nodes_unique_names = [
         Nucleotide([], name=name) for name in unique_node_names
     ]
     nodes_repeated_names = [
         Nucleotide([], name=name) for name in repeated_node_names
     ]
     self.assertDictEqual(
         graph_utils.get_repeated_node_names(nodes_unique_names), {})
     self.assertDictEqual(
         graph_utils.get_repeated_node_names(nodes_repeated_names),
         {'second': [Nucleotide.__name__] * 2})
Exemplo n.º 9
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    def test_build(self):
        class GeneHandlerDummy(GeneHandler):
            gene_name_and_nucleotide_super_cls = {
                'gene1': Nucleotide,
                'gene2': Nucleotide,
                'gene3': Nucleotide,
                'gene4': Nucleotide
            }

        genes = {
            'gene1': [
                Nucleotide(name='gene1_nucleotide1', inbound_nodes=["data"]),
                Nucleotide(name='gene1_nucleotide2',
                           inbound_nodes=["data", "gene1_nucleotide1"]),
                Nucleotide(name='gene1_nucleotide3',
                           inbound_nodes=["data2", "gene1_nucleotide1"])
            ],
            'gene2': [
                Nucleotide(name='gene2_nucleotide1', inbound_nodes=["data"]),
                Nucleotide(name='gene2_nucleotide2',
                           inbound_nodes=[
                               "gene2_nucleotide1", "data3",
                               "gene1_nucleotide1"
                           ])
            ]
        }
        gene3 = {
            'gene3_nucleotide1':
            Nucleotide(name='gene3_nucleotide1', inbound_nodes=[]),
            'gene3_nucleotide2':
            Nucleotide(name='gene3_nucleotide2', inbound_nodes=[])
        }
        gene4 = Nucleotide(name='gene4_nucleotide1', inbound_nodes=[])
        gene_handler = GeneHandlerDummy(gene1=genes['gene1'],
                                        gene2=genes['gene2'],
                                        gene3=gene3,
                                        gene4=gene4).build()
        genes1_dict_representation = {n.name: n for n in genes['gene1']}
        genes2_dict_representation = {n.name: n for n in genes['gene2']}
        genes3_dict_representation = gene3
        genes4_dict_representation = {"gene4_nucleotide1": gene4}
        self.assertDictEqual(genes1_dict_representation, gene_handler.gene1)
        self.assertDictEqual(genes2_dict_representation, gene_handler.gene2)
        self.assertDictEqual(genes3_dict_representation, gene_handler.gene3)
        self.assertDictEqual(genes4_dict_representation, gene_handler.gene4)

        self.assertSetEqual({"data", "data2", "data3"},
                            set(gene_handler.inbound_nodes))
        self.assertEqual(3, len(gene_handler.inbound_nodes))

        gene2_repeated = Nucleotide(name='gene1_nucleotide1', inbound_nodes=[])
        with self.assertRaises(AssertionError):
            _ = GeneHandlerDummy(gene1=genes['gene1'],
                                 gene2=gene2_repeated).build()
Exemplo n.º 10
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 def test_filter_inputs_empty(self):
     mapping = {'node1': {'out11': 'inp11',
                          'out12': 'inp12'},
                'node2': {'out22': 'inp22'}}
     nucleotide = Nucleotide(
         inbound_nodes=['node1', 'node2', 'node3'],
         incoming_keys_mapping=mapping)
     nucleotide.incoming_keys = ['inp11', 'inp12', 'inp22', 'out31']
     data = {'node1': {'out11': 'value11',
                       'out12': 'value12'},
             'node2': {'out21': 'value21',
                       'out22': 'value22'},
             'node3': None,
             'node4': {'out41': 'value41'}}
     self.assertIsNone(nucleotide.filter_inputs(data))
Exemplo n.º 11
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def _draw_key_connections_for_nucleotide_pair(
        nucleotide: Nucleotide,
        inbound_nucleotide: Nucleotide,
        nucleotide_plots: Dict[Nucleotide, _NUCLEOTIDE_PLOT]
) -> List[patches.FancyArrowPatch]:
    nucleotide_plot = nucleotide_plots[nucleotide]
    incoming_nucleotide_plot = nucleotide_plots[inbound_nucleotide]

    inputs_to_nucleotide = {each_inbound_node: {"": None}
                            for each_inbound_node in nucleotide.inbound_nodes}
    inputs_to_nucleotide[inbound_nucleotide.name] = {
        k: k for k in inbound_nucleotide.generated_keys_all}

    inputs_to_nucleotide_filtered = nucleotide.filter_inputs(
        inputs_to_nucleotide)
    if "" in inputs_to_nucleotide_filtered:
        del inputs_to_nucleotide_filtered[""]

    edge_patches = []
    for each_incoming_key, each_generated_key in (
            inputs_to_nucleotide_filtered.items()):
        edge_patch = _draw_edge_between_keys(
            nucleotide, inbound_nucleotide,
            each_incoming_key, each_generated_key,
            nucleotide_plot, incoming_nucleotide_plot)
        edge_patches.append(edge_patch)
    return edge_patches
Exemplo n.º 12
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    def test_topological_sort_of_nucleotides_multiple_inputs(self):
        nucleotides = [
            Nucleotide(name='input_node'),
            Nucleotide(name='first', inbound_nodes=['input_node']),
            Nucleotide(name='second', inbound_nodes=[]),
            Nucleotide(name='fourth', inbound_nodes=['first', 'third']),
            Nucleotide(name='fifth', inbound_nodes=['fourth']),
            Nucleotide(name='third', inbound_nodes=[])
        ]
        graph = graph_utils.construct_graph_from_nucleotides(nucleotides)
        nodes_sorted = graph_utils.topological_sort_of_nucleotides(graph)

        self.assertGreater(nodes_sorted.index(nucleotides[1]),
                           nodes_sorted.index(nucleotides[0]))
        self.assertGreater(nodes_sorted.index(nucleotides[3]),
                           nodes_sorted.index(nucleotides[1]))
        self.assertGreater(nodes_sorted.index(nucleotides[3]),
                           nodes_sorted.index(nucleotides[5]))
        self.assertGreater(nodes_sorted.index(nucleotides[4]),
                           nodes_sorted.index(nucleotides[3]))
        node_names_sorted_must = [
            'input_node', 'second', 'third', 'first', 'fourth', 'fifth'
        ]
        node_names_sorted = [
            each_nucleotide.name for each_nucleotide in nodes_sorted
        ]
        self.assertListEqual(node_names_sorted_must, node_names_sorted)
Exemplo n.º 13
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 def test_filter_inputs_nested_input_mapping(self):
     mapping = {'node1': {'out11:out111': 'inp11',
                          'out12': 'inp12'},
                'node2': {'out22:2': 'inp22'}}
     nucleotide = Nucleotide(
         inbound_nodes=['node1', 'node2', 'node3'],
         incoming_keys_mapping=mapping)
     nucleotide.incoming_keys = ['inp11', 'inp12', 'inp22', 'out31']
     data = {'node1': {'out11': {'out111': 'value11',
                                 'out112': 'value112'},
                       'out12': 'value12'},
             'node2': {'out21': 'value21',
                       'out22': ['value220', 'value221',
                                 'value22', 'value223']},
             'node3': {'out31': 'value31'},
             'node4': {'out41': 'value41'}}
     data_remapped_must = {'inp11': 'value11',
                           'inp12': 'value12',
                           'inp22': 'value22',
                           'out31': 'value31'}
     data_remapped = nucleotide.filter_inputs(data)
     self.assertDictEqual(data_remapped_must, data_remapped)
Exemplo n.º 14
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 def _get_model(self,
                with_metric=True,
                inputs=None,
                with_keras_layers=False,
                regularization_l1=0,
                regularization_l2=0):
     plugins = self._get_model_plugins(with_keras_layers=with_keras_layers)
     losses = self._get_loss()
     postprocessors = self._get_postprocessors()
     summary = self._get_summary()
     metric = self._get_metric() if with_metric else None
     model = Model(plugins=plugins,
                   losses=losses,
                   postprocessors=postprocessors,
                   summaries=summary,
                   metrics=metric,
                   regularization_l1=regularization_l1,
                   regularization_l2=regularization_l2).build()
     if inputs is not None:
         dataset_nucleotide = Nucleotide(name='dataset')
         dataset_nucleotide.generated_keys = list(inputs.keys())
         model.build_dna(dataset_nucleotide)
     return model
Exemplo n.º 15
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    def test_represent_predictor_through_nucleotides(self):
        class PredictorMock(object):
            def __init__(self_):
                self_._fetch_tensors = None

            @property
            def fetch_tensors(self_):
                return self_._fetch_tensors

            @property
            def feed_tensors(self_):
                return self_._feed_tensors

        tf.reset_default_graph()
        predictor = PredictorMock()
        fetch_tensors = {
            'nucleotide1': {
                'output1': 'value1',
                'output2': 'value2'
            },
            'nucleotide2': {
                'output3': 'value3',
                'output4': 'value4'
            }
        }
        feed_tensors = {
            "data1": tf.placeholder(tf.float32),
            "data2": tf.placeholder(tf.float32),
            "parameter1": tf.placeholder_with_default(10, [])
        }
        fetch_tensors_flatten = nest_utils.flatten_nested_struct(fetch_tensors)
        predictor._fetch_tensors = fetch_tensors_flatten
        predictor._feed_tensors = feed_tensors
        nucleotides = represent_predictor_through_nucleotides(predictor)
        nucleotide1_must = Nucleotide(name='nucleotide1')
        nucleotide1_must.generated_keys = ['output1', 'output2']
        nucleotide1_must.incoming_keys = ['data1', 'data2']
        nucleotide2_must = Nucleotide(name='nucleotide2')
        nucleotide2_must.generated_keys = ['output3', 'output4']
        nucleotide2_must.incoming_keys = ['data1', 'data2']
        nucleotides_must = [nucleotide1_must, nucleotide2_must]
        for nucleotide, nucleotide_must in zip(nucleotides, nucleotides_must):
            self.assertEqual(nucleotide_must.name, nucleotide.name)
            self.assertSetEqual(set(nucleotide_must.generated_keys),
                                set(nucleotide.generated_keys))
            self.assertSetEqual(set(nucleotide_must.incoming_keys),
                                set(nucleotide.incoming_keys))
Exemplo n.º 16
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def _get_gene_dummy_handler():
    nucleotide1 = _NucleotideWithProcess(
        name='nucleotide1',
        inbound_nodes=['input_node1'],
        incoming_keys_mapping={'input_node1': {
            'output1': 'input11'
        }})
    nucleotide1.incoming_keys = ['input11']
    nucleotide1.generated_keys = ['output11', 'output12']
    nucleotide2 = _NucleotideWithProcess(
        name='nucleotide2',
        inbound_nodes=['nucleotide1', 'input_node2'],
        incoming_keys_mapping={
            'nucleotide1': {
                'output11': 'input22',
            },
            'input_node2': {
                'output1': 'input21',
            }
        })
    nucleotide2.incoming_keys = ['input21', '_input22']
    nucleotide2.generated_keys = ['output21', 'output22']
    nucleotide3 = _NucleotideWithProcess(
        name='nucleotide3',
        inbound_nodes=['nucleotide1', 'nucleotide2'],
        incoming_keys_mapping={
            'nucleotide1': {
                'output11': 'input31',
            },
            'nucleotide2': {
                'output22': 'input32',
            }
        })
    nucleotide3.incoming_keys = ['input31', 'input32']
    nucleotide3.generated_keys = ['output31']
    input_node1 = Nucleotide(name='input_node1')
    input_node1.generated_keys = ['output1', 'output2']
    input_node2 = Nucleotide(name='input_node2')
    input_node2.generated_keys = ['output1']
    incoming_nucleotides = [input_node1, input_node2]
    gene_inputs = {
        'input_node1': {
            'output1': 'value11',
            'output2': 'value12'
        },
        'input_node2': {
            'output1': 'value21'
        }
    }
    gene = [nucleotide3, nucleotide1, nucleotide2]
    gene_handler = GeneHandler(gene=gene)
    gene_handler.build()
    gene_handler.build_dna(incoming_nucleotides)
    return (gene_handler, gene_inputs, input_node1, input_node2, nucleotide1,
            nucleotide2, nucleotide3)
Exemplo n.º 17
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    def test_check_class_topology(self):
        class Node1(Nucleotide):
            def __init__(self, **kwargs):
                super(Node1, self).__init__(**kwargs)

        class Node2(Nucleotide):
            def __init__(self, **kwargs):
                super(Node2, self).__init__(**kwargs)

        class Node3(Nucleotide):
            def __init__(self, **kwargs):
                super(Node3, self).__init__(**kwargs)

        dependency_map = {
            Node1: [Node1],
            Node2: [Node1, Node2],
            Node3: [Node2, Node3]
        }

        nucleotides_right = [
            Nucleotide(name='input_node', inbound_nodes=[]),
            Node1(name='n1', inbound_nodes=['input_node']),
            Node1(name='n2', inbound_nodes=['n1']),
            Node1(name='n3', inbound_nodes=['n2']),
            Node2(name='n4', inbound_nodes=['n1']),
            Node2(name='n5', inbound_nodes=['n2']),
            Node2(name='n6', inbound_nodes=['n4', 'n5']),
            Node2(name='n7', inbound_nodes=['n6'])
        ]
        incoming_nucleotides = [nucleotides_right[0]]
        nucleotides_wrong = copy.deepcopy(nucleotides_right)
        nucleotides_wrong[2] = Node2(name='n2', inbound_nodes=['n1'])
        nucleotides_all = {
            'right': nucleotides_right,
            'wrong': nucleotides_wrong
        }

        for t, nodes in nucleotides_all.items():
            graph = graph_utils.construct_graph_from_nucleotides(nodes)
            if t == 'right':
                self.assertTrue(
                    graph_utils.check_class_topology(graph, dependency_map,
                                                     incoming_nucleotides))
            else:
                with self.assertRaises(ValueError):
                    graph_utils.check_class_topology(graph, dependency_map,
                                                     incoming_nucleotides)
Exemplo n.º 18
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    def test_build_inference_meta_graph(self):
        model = ModelMock(self.num_classes).build()
        model.reset_tf_graph = MagicMock(wraps=model.reset_tf_graph)

        _, inputs = model.get_test_inputs(self.batch_size, self.data_dim)
        model_keys = {
            'predictions_raw': ['predictions_raw'],
            'losses': ['loss', 'total_loss'],
            'predictions': ['classes'],
            'summary': ['scalar_labels', 'scalar_classes'],
            'metric': ['metric']
        }
        input_shapes = {k: v.get_shape() for k, v in inputs.items()}

        with self.assertRaises(ValueError):
            # because ModelMock does not have postprocessors set,
            # it should raise error
            _ = model.build_inference_graph(inputs)

        # lets set postprocessord to some mock value
        model.postprocessors = {"postprocessor1": Nucleotide()}
        _ = model.build_inference_graph(inputs)

        self.assertEqual(tf.estimator.ModeKeys.PREDICT, model.mode)
        model.reset_tf_graph.assert_called_once_with()

        inputs_from_coll = tf_collections_utils.collection2nested(
            CollectionNames.INPUTS)
        inputs_connected_names_must = ['data']
        self.assertSetEqual(set(inputs_from_coll),
                            set(inputs_connected_names_must))

        predictions_from_coll = tf_collections_utils.collection2nested(
            CollectionNames.PREDICTIONS)
        self.assertSetEqual(set(predictions_from_coll),
                            set(model_keys['predictions']))

        for k in inputs_connected_names_must:
            shape = input_shapes[k]
            shape_res = inputs_from_coll[k].shape
            shape_must = shape
            self.assertTrue(
                np.all([
                    a == b
                    for a, b in zip(shape_res.as_list(), shape_must.as_list())
                ]))
Exemplo n.º 19
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    def test_add(self):
        nucleotide1 = Nucleotide(name="nucleotide1")
        nucleotide2 = Nucleotide(name="nucleotide2",
                                 inbound_nodes=["nucleotide1"])
        nucleotide3 = Nucleotide(name="nucleotide3")
        nucleotide4 = Nucleotide(name="nucleotide4",
                                 inbound_nodes=["nucleotide2", "nucleotide3"])

        nucleotide5 = Nucleotide(name="nucleotide5")
        nucleotide6 = Nucleotide(name="nucleotide6",
                                 inbound_nodes=["nucleotide4"])
        nucleotide7 = Nucleotide(
            name="nucleotide7",
            inbound_nodes=["nucleotide5", "nucleotide3", "nucleotide6"])

        incoming_nucleotides1 = [nucleotide1]
        incoming_nucleotides2 = [nucleotide3, nucleotide4, nucleotide5]
        nucleotides1 = [nucleotide2, nucleotide3, nucleotide4]
        nucleotides2 = [nucleotide6, nucleotide7]

        incoming_nucleotides12 = [nucleotide1, nucleotide5]
        nucleotides12 = [
            nucleotide2, nucleotide3, nucleotide4, nucleotide6, nucleotide7
        ]

        dna_helix1 = DNAHelix(nucleotides1, incoming_nucleotides1).build()
        dna_helix2 = DNAHelix(nucleotides2, incoming_nucleotides2).build()
        dna_helix12 = dna_helix1 + dna_helix2

        dna_helix12_must = DNAHelix(nucleotides12,
                                    incoming_nucleotides12).build()

        self.assertEqual(7, len(dna_helix12_must.get()))
        self.assertEqual(5, len(dna_helix12_must.get(False)))

        self.assertTrue(dna_helix12.built)
        self.assertDictEqual(dna_helix12_must.as_dict(), dna_helix12.as_dict())
        self.assertSetEqual(set(dna_helix12_must.incoming_nucleotides),
                            set(dna_helix12.incoming_nucleotides))
        self.assertSetEqual(set(dna_helix12_must.nucleotides),
                            set(dna_helix12.nucleotides))
        self.assertListEqual(dna_helix12_must.topological_order,
                             dna_helix12.topological_order)
Exemplo n.º 20
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    def test_construct_graph_from_nucleotides(self):
        nucleotides = [
            Nucleotide(name="input_node1"),
            Nucleotide(name="input_node2"),
            Nucleotide(name='first', inbound_nodes=['input_node1']),
            Nucleotide(name='second', inbound_nodes=['first', 'input_node2']),
            Nucleotide(name='fourth', inbound_nodes=['first', 'third']),
            Nucleotide(name='fifth', inbound_nodes=['fourth']),
            Nucleotide(name='third', inbound_nodes=['first', 'second']),
            Nucleotide(name='sixth')
        ]
        graph = graph_utils.construct_graph_from_nucleotides(nucleotides)

        edges_must = {(nucleotides[0], nucleotides[2]),
                      (nucleotides[1], nucleotides[3]),
                      (nucleotides[2], nucleotides[3]),
                      (nucleotides[2], nucleotides[4]),
                      (nucleotides[2], nucleotides[6]),
                      (nucleotides[3], nucleotides[6]),
                      (nucleotides[4], nucleotides[5]),
                      (nucleotides[6], nucleotides[4])}

        self.assertSetEqual(set(nucleotides), set(graph.nodes))
        self.assertSetEqual(edges_must, set(graph.edges))
Exemplo n.º 21
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    def test_build_dna_and_properties(self):
        class _NucleotideType1(Nucleotide):
            pass

        class _NucleotideType2(Nucleotide):
            pass

        class _NucleotideType3(Nucleotide):
            pass

        class _InputNucleotide(Nucleotide):
            pass

        class _GeneHandlerDummy(GeneHandler):
            gene_name_and_nucleotide_super_cls = {
                'gene1': _NucleotideType1,
                'gene2': _NucleotideType2,
                'gene3': _NucleotideType3
            }
            nucleotide_type_dependency_map = {
                _NucleotideType1: [_NucleotideType1],
                _NucleotideType2: [_NucleotideType1, _NucleotideType2],
                _NucleotideType3: [_NucleotideType2, _NucleotideType3]
            }

        incoming_nucleotides = [
            _InputNucleotide(name='input', inbound_nodes=[])
        ]
        genes_right_type_dependency = {
            'gene1': [
                _NucleotideType1(name='gene1_nucleotide1',
                                 inbound_nodes=['input']),
                _NucleotideType1(name='gene1_nucleotide2', inbound_nodes=[]),
                _NucleotideType1(name='gene1_nucleotide3', inbound_nodes=[])
            ],
            'gene2': [
                _NucleotideType2(name='gene2_nucleotide1',
                                 inbound_nodes=[
                                     'input', 'gene1_nucleotide1',
                                     'gene1_nucleotide2'
                                 ]),
                _NucleotideType2(
                    name='gene2_nucleotide2',
                    inbound_nodes=['gene2_nucleotide1', 'gene1_nucleotide3'])
            ],
            'gene3': [
                Nucleotide(name='gene3_nucleotide1',
                           inbound_nodes=['gene2_nucleotide1']),
                Nucleotide(
                    name='gene3_nucleotide2',
                    inbound_nodes=['gene2_nucleotide2', 'gene3_nucleotide1'])
            ]
        }

        genes_wrong_type_dependency = {
            'gene1': [
                _NucleotideType1(name='gene1_nucleotide1',
                                 inbound_nodes=['input']),
                _NucleotideType1(name='gene1_nucleotide2',
                                 inbound_nodes=['input']),
                _NucleotideType1(name='gene1_nucleotide3',
                                 inbound_nodes=['input'])
            ],
            'gene2': [
                _NucleotideType2(
                    name='gene2_nucleotide1',
                    inbound_nodes=['gene1_nucleotide1', 'gene1_nucleotide2']),
                _NucleotideType2(
                    name='gene2_nucleotide2',
                    inbound_nodes=['gene2_nucleotide1', 'gene1_nucleotide3'])
            ],
            'gene3': [
                _NucleotideType3(name='gene3_nucleotide1',
                                 inbound_nodes=['gene2_nucleotide1']),
                _NucleotideType3(
                    name='gene3_nucleotide2',
                    inbound_nodes=[
                        'gene1_nucleotide2',
                        # not allowed
                        'gene3_nucleotide1'
                    ])
            ]
        }
        gene_handler_wrong_dependency = _GeneHandlerDummy(
            **genes_wrong_type_dependency).build()
        with self.assertRaises(ValueError):
            gene_handler_wrong_dependency.build_dna(incoming_nucleotides)

        gene_handler = _GeneHandlerDummy(**genes_right_type_dependency).build()
        gene_handler.build_dna(incoming_nucleotides)

        dna_must = {
            'gene1_nucleotide1':
            DNAConnection(incoming={'input'}, outgoing={'gene2_nucleotide1'}),
            'gene1_nucleotide2':
            DNAConnection(incoming=set(), outgoing={'gene2_nucleotide1'}),
            'gene1_nucleotide3':
            DNAConnection(incoming=set(), outgoing={'gene2_nucleotide2'}),
            'gene2_nucleotide1':
            DNAConnection(
                incoming={'gene1_nucleotide1', 'gene1_nucleotide2', 'input'},
                outgoing={'gene2_nucleotide2', 'gene3_nucleotide1'}),
            'gene2_nucleotide2':
            DNAConnection(incoming={'gene1_nucleotide3', 'gene2_nucleotide1'},
                          outgoing={'gene3_nucleotide2'}),
            'gene3_nucleotide1':
            DNAConnection(incoming={'gene2_nucleotide1'},
                          outgoing={'gene3_nucleotide2'}),
            'gene3_nucleotide2':
            DNAConnection(incoming={'gene2_nucleotide2', 'gene3_nucleotide1'},
                          outgoing=set())
        }
        sorted_nucleotide_names_must = {
            'gene1':
            ['gene1_nucleotide2', 'gene1_nucleotide3', 'gene1_nucleotide1'],
            'gene2': ['gene2_nucleotide1', 'gene2_nucleotide2'],
            'gene3': ['gene3_nucleotide1', 'gene3_nucleotide2']
        }
        self.assertDictEqual(dna_must, gene_handler.dna_helix.as_dict(False))
        self.assertDictEqual(sorted_nucleotide_names_must,
                             gene_handler.sorted_nucleotide_names)

        inbound_nodes_must = ['input']
        self.assertListEqual(inbound_nodes_must, gene_handler.inbound_nodes)

        inbound_nodes_all_nucleotides_must = {
            'gene1_nucleotide1': ['input'],
            'gene1_nucleotide2': [],
            'gene1_nucleotide3': [],
            'gene2_nucleotide1':
            ['input', 'gene1_nucleotide1', 'gene1_nucleotide2'],
            'gene2_nucleotide2': ['gene2_nucleotide1', 'gene1_nucleotide3'],
            'gene3_nucleotide1': ['gene2_nucleotide1'],
            'gene3_nucleotide2': ['gene2_nucleotide2', 'gene3_nucleotide1']
        }
        inbound_nodes_all_nucleotides = (
            gene_handler.get_property_from_all_genes('inbound_nodes'))
        self.assertDictEqual(inbound_nodes_all_nucleotides_must,
                             inbound_nodes_all_nucleotides)
Exemplo n.º 22
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    def test_check_node2node_connection(self):
        dataset_node = Nucleotide(name='data', inbound_nodes=[])
        dataset_node.generated_keys = ['image', 'labels', 'temp']

        node_cnn1 = Nucleotide(name='cnn',
                               inbound_nodes=['data'],
                               incoming_keys_mapping={
                                   'data': {
                                       'image': 'inputs_cnn',
                                       'temp': 'inputs_optional'
                                   }
                               })
        node_cnn1.incoming_keys = [
            'inputs_cnn', '_inputs_optional', '_inputs_optional_2'
        ]
        node_cnn1.generated_keys = ['predictions']

        node_loss = Nucleotide(
            name='loss',
            inbound_nodes=['data', 'cnn'],
            incoming_keys_mapping={'cnn': {
                'predictions:0': 'logits:0'
            }})
        node_loss.incoming_keys = ['logits', 'labels']

        node_loss_wrong = Nucleotide(
            name='loss',
            inbound_nodes=['data', 'cnn'],
            incoming_keys_mapping={'cnn': {
                'predictions': 'logits2'
            }})
        node_loss_wrong.incoming_keys = ['logits', 'labels']

        nodes_all = {
            'right': [dataset_node, node_cnn1, node_loss],
            'wrong': [dataset_node, node_cnn1, node_loss_wrong]
        }
        for t, nodes in nodes_all.items():
            nodes = {n.name: n for n in nodes}
            if t == 'right':
                self.assertTrue(
                    graph_utils.check_node2node_connection(
                        nodes['loss'], [nodes[k] for k in ['data', 'cnn']]))
            else:
                with self.assertRaises(ValueError):
                    graph_utils.check_node2node_connection(
                        nodes['loss'], [nodes[k] for k in ['data', 'cnn']])
Exemplo n.º 23
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    def test_check_graph_connections(self):
        dataset_node = Nucleotide(name='data', inbound_nodes=[])
        dataset_node.generated_keys = ['image', 'labels', 'temp']

        node_cnn = Nucleotide(
            name='cnn',
            inbound_nodes=['data'],
            incoming_keys_mapping={'data': {
                'image': 'inputs_cnn'
            }})
        node_cnn.incoming_keys = ['inputs_cnn']
        node_cnn.generated_keys = ['predictions']

        node_flatten = Nucleotide(
            name='flatten',
            inbound_nodes=['cnn'],
            incoming_keys_mapping={'cnn': {
                'predictions': 'inputs_flatten'
            }})
        node_flatten.incoming_keys = ['inputs_flatten']
        node_flatten.generated_keys = ['predictions']

        node_mlp = Nucleotide(
            name='mlp',
            inbound_nodes=['flatten'],
            incoming_keys_mapping={'flatten': {
                'predictions': 'inputs_mlp'
            }})
        node_mlp.incoming_keys = ['inputs_mlp']
        node_mlp.generated_keys = ['predictions']

        node_mlp_wrong = Nucleotide(
            name='mlp',
            inbound_nodes=['flatten'],
            incoming_keys_mapping={'flatten': {
                'predictions': 'inputs'
            }})
        node_mlp_wrong.incoming_keys = ['inputs_mlp']
        node_mlp_wrong.generated_keys = ['predictions']

        node_loss = Nucleotide(
            name='loss',
            inbound_nodes=['data', 'mlp'],
            incoming_keys_mapping={'mlp': {
                'predictions': 'logits'
            }})
        node_loss.incoming_keys = ['labels', 'logits']

        node_loss_wrong = Nucleotide(name='loss',
                                     inbound_nodes=['data', 'mlp'])
        node_loss_wrong.incoming_keys = ['labels', 'logits']

        node_pp = Nucleotide(
            name='pp',
            inbound_nodes=['mlp'],
            incoming_keys_mapping={'mlp': {
                'predictions': 'inputs_pp'
            }})
        node_pp.incoming_keys = ['inputs_pp']

        nodes_all = {
            'right': [[
                dataset_node, node_cnn, node_flatten, node_mlp, node_loss,
                node_pp
            ]],
            'wrong': [[
                dataset_node, node_cnn, node_flatten, node_mlp_wrong,
                node_loss, node_pp
            ],
                      [
                          dataset_node, node_cnn, node_flatten, node_mlp_wrong,
                          node_loss_wrong, node_pp
                      ]]
        }

        for test_mode, nodes_case in nodes_all.items():
            for nodes in nodes_case:
                graph = graph_utils.construct_graph_from_nucleotides(nodes)
                if test_mode == 'right':
                    self.assertTrue(graph_utils.check_graph_connections(graph))
                else:
                    with self.assertRaises(ValueError):
                        graph_utils.check_graph_connections(graph)
Exemplo n.º 24
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    def _get_callbacks_and_incoming_nucleotides():
        def side_effect_callback_on_iteration_end(nucleotide: Nucleotide,
                                                  **inputs):
            return {
                k: '_'.join([nucleotide.name, k])
                for k in nucleotide.generated_keys_all
            }

        input_node1 = Nucleotide(name='input_node1')
        input_node1.generated_keys = ['output1', 'output2']
        input_node2 = Nucleotide(name='input_node2')
        input_node2.generated_keys = ['output1']
        input_node1.process = MagicMock(return_value=None)
        input_node2.process = MagicMock(return_value=None)

        callback1 = CoordinatorCallback(
            name='callback1',
            inbound_nodes=['input_node1'],
            incoming_keys_mapping={'input_node1': {
                'output1': 'input11'
            }})
        callback1.incoming_keys = ['input11']
        callback1.generated_keys = ['output11', 'output12']
        callback2 = CoordinatorCallback(
            name='callback2',
            inbound_nodes=['callback1', 'input_node2'],
            incoming_keys_mapping={
                'callback1': {
                    'output11': 'input22',
                },
                'input_node2': {
                    'output1': 'input21',
                }
            })
        callback2.incoming_keys = ['input21', '_input22']
        callback2.generated_keys = ['output21', 'output22']
        callback3 = CoordinatorCallback(
            name='callback3',
            inbound_nodes=['callback1', 'callback2'],
            incoming_keys_mapping={
                'callback1': {
                    'output11': 'input31',
                },
                'callback2': {
                    'output22': 'input32',
                }
            })
        callback3.incoming_keys = ['input31', 'input32']
        callback3.generated_keys = ['output31']

        callback1.on_iteration_end = MagicMock(side_effect=partial(
            side_effect_callback_on_iteration_end, nucleotide=callback1))
        callback2.on_iteration_end = MagicMock(side_effect=partial(
            side_effect_callback_on_iteration_end, nucleotide=callback2))
        callback3.on_iteration_end = MagicMock(side_effect=partial(
            side_effect_callback_on_iteration_end, nucleotide=callback3))

        callbacks = [callback1.build(), callback2.build(), callback3.build()]
        incoming_nucleotides = {
            'input_node1': input_node1.build(),
            'input_node2': input_node2.build()
        }

        return callbacks, incoming_nucleotides
Exemplo n.º 25
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def _get_dna():
    nucleotide1 = Nucleotide(name="nucleotide1")
    nucleotide1.generated_keys = ["y"]

    nucleotide2 = Nucleotide(name="nucleotide2", inbound_nodes=["nucleotide1"])
    nucleotide2.incoming_keys = ["y"]
    nucleotide2.generated_keys = ["z"]

    nucleotide3 = Nucleotide(name="nucleotide3",
                             inbound_nodes=["nucleotide1", "nucleotide2"])
    nucleotide3.dynamic_incoming_keys = True
    nucleotide3.generated_keys = ["w"]
    nucleotide3.dynamic_generated_keys = True

    nucleotide4 = Nucleotide(name="nucleotide4", inbound_nodes=["nucleotide3"])
    nucleotide4.incoming_keys = ["y", "z", "w"]

    nucleotides_list = [nucleotide2, nucleotide3, nucleotide4]
    incoming_nucleotides_list = [nucleotide1]

    dna_must = {
        'nucleotide2':
        DNAConnection(incoming={'nucleotide1'}, outgoing={'nucleotide3'}),
        'nucleotide3':
        DNAConnection(incoming={'nucleotide1', 'nucleotide2'},
                      outgoing={'nucleotide4'}),
        'nucleotide4':
        DNAConnection(incoming={'nucleotide3'}, outgoing=set()),
    }
    topological_sort_must = ["nucleotide2", "nucleotide3", "nucleotide4"]

    raise_build_error = False
    yield (nucleotides_list, incoming_nucleotides_list, dna_must,
           topological_sort_must, raise_build_error)

    nucleotide3 = Nucleotide(name="nucleotide3",
                             inbound_nodes=["nucleotide1", "nucleotide2"])
    nucleotide3.incoming_keys = []
    nucleotide3.generated_keys = ["w"]

    nucleotides_list = [nucleotide2, nucleotide3, nucleotide4]
    raise_build_error = True
    yield (nucleotides_list, incoming_nucleotides_list, dna_must,
           topological_sort_must, raise_build_error)

    nucleotides_list = [
        Nucleotide(name='first', inbound_nodes=['input_node1']),
        Nucleotide(name='second', inbound_nodes=['first', 'input_node2']),
        Nucleotide(name='fourth', inbound_nodes=['first', 'third']),
        Nucleotide(name='fifth', inbound_nodes=['fourth']),
        Nucleotide(name='third', inbound_nodes=['first', 'second'])
    ]
    incoming_nucleotides_list = [
        Nucleotide(name='input_node1'),
        Nucleotide(name='input_node2')
    ]
    dna_must = {
        'first':
        DNAConnection(incoming={'input_node1'},
                      outgoing={'second', 'fourth', 'third'}),
        'second':
        DNAConnection(incoming={'first', 'input_node2'}, outgoing={'third'}),
        'third':
        DNAConnection(incoming={'first', 'second'}, outgoing={'fourth'}),
        'fourth':
        DNAConnection(incoming={'first', 'third'}, outgoing={'fifth'}),
        'fifth':
        DNAConnection(incoming={'fourth'}, outgoing=set())
    }
    topological_sort_must = ["first", "second", "third", "fourth", "fifth"]
    raise_build_error = False
    yield (nucleotides_list, incoming_nucleotides_list, dna_must,
           topological_sort_must, raise_build_error)

    nucleotides_list = [
        Nucleotide(name='first', inbound_nodes=['input_node1']),
        Nucleotide(name='second', inbound_nodes=[]),
        Nucleotide(name='fourth', inbound_nodes=['first', 'third']),
        Nucleotide(name='fifth', inbound_nodes=['fourth']),
        Nucleotide(name='third', inbound_nodes=['first', 'second'])
    ]

    incoming_nucleotides_list = [Nucleotide(name='input_node1')]
    dna_must = {
        'first':
        DNAConnection(incoming={'input_node1'}, outgoing={'fourth', 'third'}),
        'second':
        DNAConnection(incoming=set(), outgoing={'third'}),
        'third':
        DNAConnection(incoming={'first', 'second'}, outgoing={'fourth'}),
        'fourth':
        DNAConnection(incoming={'first', 'third'}, outgoing={'fifth'}),
        'fifth':
        DNAConnection(incoming={'fourth'}, outgoing=set())
    }
    topological_sort_must = ["second", "first", "third", "fourth", "fifth"]
    raise_build_error = False
    yield (nucleotides_list, incoming_nucleotides_list, dna_must,
           topological_sort_must, raise_build_error)

    nucleotides_list = [
        Nucleotide(name='first', inbound_nodes=[]),
        Nucleotide(name='second', inbound_nodes=[]),
        Nucleotide(name='fourth', inbound_nodes=['first', 'third']),
        Nucleotide(name='fifth', inbound_nodes=['fourth']),
        Nucleotide(name='third', inbound_nodes=['first', 'second'])
    ]

    incoming_nucleotides_list = []
    dna_must = {
        'first': DNAConnection(incoming=set(), outgoing={'fourth', 'third'}),
        'second': DNAConnection(incoming=set(), outgoing={'third'}),
        'third': DNAConnection(incoming={'first', 'second'},
                               outgoing={'fourth'}),
        'fourth': DNAConnection(incoming={'first', 'third'},
                                outgoing={'fifth'}),
        'fifth': DNAConnection(incoming={'fourth'}, outgoing=set())
    }
    topological_sort_must = ["first", "second", "third", "fourth", "fifth"]
    raise_build_error = False
    yield (nucleotides_list, incoming_nucleotides_list, dna_must,
           topological_sort_must, raise_build_error)
Exemplo n.º 26
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    def test_get_nucleotide_signature(self):
        node = Nucleotide(
            name='cnn',
            inbound_nodes=['data'],
            incoming_keys_mapping={'data': {
                'image': 'inputs_cnn'
            }})
        node.incoming_keys = ['inputs1', 'inputs2', '_input_optional']
        node.generated_keys = ['predictions', '_predictions_optional']

        node.__doc__ = """
            Attributes
            ----------
            incoming_keys : list
                * inputs1 : inputs1 to node
                * inputs2 : inputs2 to node
                * inputs_wrong : wrong description
                * input_optional : optional inputs
            generated_keys : list
                * predictions : predictions 1
                * predictions_optional : optional predictions
            """
        args_must = {
            'inputs1': 'inputs1 to node',
            'inputs2': 'inputs2 to node',
            'input_optional': 'optional inputs'
        }
        returns_must = {
            'predictions': 'predictions 1',
            'predictions_optional': 'optional predictions'
        }
        args, returns = nucleotide_utils.get_nucleotide_signature(node)

        self.assertSetEqual({'inputs1', 'inputs2', 'input_optional'},
                            set(args))
        self.assertSetEqual({'predictions', 'predictions_optional'},
                            set(returns))
        self.assertDictEqual(args_must, args)
        self.assertDictEqual(returns_must, returns)

        node.__doc__ = None
        node.process = MagicMock(return_value=0)
        node.process.__doc__ = """
            Parameters
            ----------
            inputs1
                inputs1 to node
            inputs2
                inputs2 to node
            inputs_wrong
                wrong description
            input_optional
                optional inputs

            Returns
            -------
            predictions
                predictions 1
            predictions_optional
                optional predictions
            """
        args, returns = nucleotide_utils.get_nucleotide_signature(node)
        self.assertDictEqual(args_must, args)
        self.assertDictEqual(returns_must, returns)