def run_test(self):
        try:
            with open(configuration_space_path) as fh:
                cs = pcs_parser.read(fh)
        except:
            with open(configuration_space_path) as fh:
                cs = pcs_new_parser.read(fh)

        default = cs.get_default_configuration()
        cs._check_configuration_rigorous(default)
        for i in range(10):
            neighborhood = ConfigSpaceNNI.util.get_one_exchange_neighbourhood(
                default, seed=i)

            for shuffle, n in enumerate(neighborhood):
                n.is_valid_configuration()
                cs._check_configuration_rigorous(n)
                if shuffle == 10:
                    break

        # Sample a little bit
        for i in range(10):
            cs.seed(i)
            configurations = cs.sample_configuration(size=5)
            for j, c in enumerate(configurations):
                c.is_valid_configuration()
                cs._check_configuration_rigorous(c)
                neighborhood = ConfigSpaceNNI.util.get_one_exchange_neighbourhood(
                    c, seed=i)

                for shuffle, n in enumerate(neighborhood):
                    n.is_valid_configuration()
                    cs._check_configuration_rigorous(n)
                    if shuffle == 20:
                        break
Exemplo n.º 2
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 def test_read_configuration_space_conditional_with_two_parents(self):
     config_space = list()
     config_space.append("@1:0:restarts {F,L,D,x,+,no}[x]")
     config_space.append("@1:S:Luby:aryrestarts {1,2}[1]")
     config_space.append("@1:2:Luby:restarts [1,65535][1000]il")
     config_space.append("@1:2:Luby:restarts | @1:0:restarts in {L}")
     config_space.append(
         "@1:2:Luby:restarts | @1:S:Luby:aryrestarts in {2}")
     cs = pcs.read(config_space)
     self.assertEqual(len(cs.get_conditions()), 1)
     self.assertIsInstance(cs.get_conditions()[0], AndConjunction)
Exemplo n.º 3
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    def test_random_neigbor_conditional(self):
        mini_autosklearn_config_space_path = os.path.join(
            os.path.dirname(__file__), 'test_searchspaces',
            'mini_autosklearn_original.pcs')
        with open(mini_autosklearn_config_space_path) as fh:
            cs = read(fh)

        cs.seed(1)
        configuration = cs.get_default_configuration()
        for i in range(100):
            new_config = get_random_neighbor(configuration, i)
            self.assertNotEqual(configuration, new_config)
Exemplo n.º 4
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    def test_spear(self):
        '''
            simply getting some random configuration from spear pcs
        '''
        file_path = os.path.join(os.path.dirname(__file__), '..',
                                 'test_files', 'spear-params.pcs')

        with open(file_path) as fp:
            pcs_str = fp.readlines()
            cs = pcs.read(pcs_str)

        for i in range(100):
            config = cs.sample_configuration()
            print(config.get_dictionary())
Exemplo n.º 5
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    def test_read_write(self):
        # Some smoke tests whether reading, writing, reading alters makes the
        #  configspace incomparable
        this_file = os.path.abspath(__file__)
        this_directory = os.path.dirname(this_file)
        configuration_space_path = os.path.join(this_directory, "..",
                                                "test_searchspaces")
        configuration_space_path = os.path.abspath(configuration_space_path)
        configuration_space_path = os.path.join(configuration_space_path,
                                                "spear-params-mixed.pcs")
        with open(configuration_space_path) as fh:
            cs = pcs.read(fh)

        tf = tempfile.NamedTemporaryFile()
        name = tf.name
        tf.close()
        with open(name, 'w') as fh:
            pcs_string = pcs.write(cs)
            fh.write(pcs_string)
        with open(name, 'r') as fh:
            pcs_new = pcs.read(fh)

        self.assertEqual(pcs_new, cs, msg=(pcs_new, cs))
Exemplo n.º 6
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    def test_impute_inactive_values(self):
        mini_autosklearn_config_space_path = os.path.join(
            os.path.dirname(__file__), 'test_searchspaces',
            'mini_autosklearn_original.pcs')
        with open(mini_autosklearn_config_space_path) as fh:
            cs = read(fh)

        cs.seed(1)
        configuration = cs.sample_configuration()
        new_configuration = impute_inactive_values(configuration)
        self.assertNotEqual(id(configuration), id(new_configuration))
        self.assertEqual(len(new_configuration._values), 11)
        for key in new_configuration:
            self.assertIsNotNone(new_configuration[key])
        self.assertEqual(new_configuration['random_forest:max_features'], 10)
Exemplo n.º 7
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def run_test(configuration_space_path):
    if not '2017_11' in configuration_space_path:
        return

    with open(configuration_space_path) as fh:
        cs = pcs_parser.read(fh)

    print('###')
    print(configuration_space_path, flush=True)

    sampling_time = []
    neighborhood_time = []
    validation_times = []

    # Sample a little bit
    for i in range(10):
        cs.seed(i)
        start_time = time.time()
        configurations = cs.sample_configuration(size=n_configs)
        end_time = time.time()
        sampling_time.append(end_time - start_time)

        for j, c in enumerate(configurations):
            #c.is_valid_configuration()

            if i == 0:
                neighborhood = ConfigSpaceNNI.util.get_one_exchange_neighbourhood(
                    c, seed=i * j)

                start_time = time.time()
                validation_time = []
                for shuffle, n in enumerate(neighborhood):
                    v_start_time = time.time()
                    n.is_valid_configuration()
                    v_end_time = time.time()
                    validation_time.append(v_end_time - v_start_time)
                    if shuffle == 10:
                        break
                end_time = time.time()
                neighborhood_time.append(end_time - start_time -
                                         np.sum(validation_time))
                validation_times.extend(validation_time)

    print('Average time sampling %d configurations' % n_configs,
          np.mean(sampling_time))
    print('Average time retrieving a nearest neighbor',
          np.mean(neighborhood_time))
    print('Average time checking one configuration', np.mean(validation_times))
Exemplo n.º 8
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 def test_read_configuration_space_easy(self):
     expected = StringIO()
     expected.write('# This is a \n')
     expected.write(
         '   # This is a comment with a leading whitespace ### ffds \n')
     expected.write('\n')
     expected.write('float_a [-1.23, 6.45] [2.61] # bla\n')
     expected.write('e_float_a [.5E-2, 4.5e+06] [2250000.0025]\n')
     expected.write('int_a [-1, 6] [2]i\n')
     expected.write('log_a [4e-1, 6.45] [1.6062378404]l\n')
     expected.write('int_log_a [1, 6] [2]il\n')
     expected.write('cat_a {a,"b",c,d} [a]\n')
     expected.write('@.:;/\?!$%&_-<>*+1234567890 {"const"} ["const"]\n')
     expected.seek(0)
     cs = pcs.read(expected)
     self.assertEqual(cs, easy_space)
Exemplo n.º 9
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    def test_read_new_configuration_space_conditional(self):
        # More complex search space as string array
        complex_cs = list()
        complex_cs.append("preprocessing categorical {None, pca} [None]")
        complex_cs.append("classifier categorical {svm, nn} [svm]")
        complex_cs.append("kernel categorical {rbf, poly, sigmoid} [rbf]")
        complex_cs.append("C real [0.03125, 32768] [32]log")
        complex_cs.append("neurons integer [16, 1024] [520] # Should be Q16")
        complex_cs.append("lr real [0.0001, 1.0] [0.50005]")
        complex_cs.append("degree integer [1, 5] [3]")
        complex_cs.append("gamma real [0.000030518, 8] [0.0156251079996]log")

        complex_cs.append("C | classifier in {svm}")
        complex_cs.append("kernel | classifier in {svm}")
        complex_cs.append("lr | classifier in {nn}")
        complex_cs.append("neurons | classifier in {nn}")
        complex_cs.append("degree | kernel in {poly, sigmoid}")
        complex_cs.append("gamma | kernel in {rbf}")

        cs_new = pcs_new.read(complex_cs)
        self.assertEqual(cs_new, conditional_space)

        # same in older version
        complex_cs_old = list()
        complex_cs_old.append("preprocessing {None, pca} [None]")
        complex_cs_old.append("classifier {svm, nn} [svm]")
        complex_cs_old.append("kernel {rbf, poly, sigmoid} [rbf]")
        complex_cs_old.append("C [0.03125, 32768] [32]l")
        complex_cs_old.append("neurons [16, 1024] [520]i # Should be Q16")
        complex_cs_old.append("lr [0.0001, 1.0] [0.50005]")
        complex_cs_old.append("degree [1, 5] [3]i")
        complex_cs_old.append("gamma [0.000030518, 8] [0.0156251079996]l")

        complex_cs_old.append("C | classifier in {svm}")
        complex_cs_old.append("kernel | classifier in {svm}")
        complex_cs_old.append("lr | classifier in {nn}")
        complex_cs_old.append("neurons | classifier in {nn}")
        complex_cs_old.append("degree | kernel in {poly, sigmoid}")
        complex_cs_old.append("gamma | kernel in {rbf}")

        cs_old = pcs.read(complex_cs_old)
        self.assertEqual(cs_old, cs_new)
Exemplo n.º 10
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    def test_read_configuration_space_conditional(self):
        # More complex search space as string array
        complex_cs = list()
        complex_cs.append("preprocessing {None, pca} [None]")
        complex_cs.append("classifier {svm, nn} [svm]")
        complex_cs.append("kernel {rbf, poly, sigmoid} [rbf]")
        complex_cs.append("C [0.03125, 32768] [32]l")
        complex_cs.append("neurons [16, 1024] [520]i # Should be Q16")
        complex_cs.append("lr [0.0001, 1.0] [0.50005]")
        complex_cs.append("degree [1, 5] [3]i")
        complex_cs.append("gamma [0.000030518, 8] [0.0156251079996]l")

        complex_cs.append("C | classifier in {svm}")
        complex_cs.append("kernel | classifier in {svm}")
        complex_cs.append("lr | classifier in {nn}")
        complex_cs.append("neurons | classifier in {nn}")
        complex_cs.append("degree | kernel in {poly, sigmoid}")
        complex_cs.append("gamma | kernel in {rbf}")

        cs = pcs.read(complex_cs)
        self.assertEqual(cs, conditional_space)