def test__int(self):
        name = 'test__int'
        datatype = int
        targ = np.random.randint(100)

        res = get_fake_value(name, datatype, seed=0)
        self.assertTrue(isinstance(res, int))
        self.assertEqual(targ, res)
    def test__float(self):
        name = 'test__float'
        datatype = float
        targ = 1000. * np.random.random()

        res = get_fake_value(name, datatype, seed=0)
        self.assertTrue(isinstance(res, float))
        self.assertEqual(targ, res)
    def test__str(self):
        name = 'test__str'
        datatype = str
        targ = str(np.random.randint(100000))

        res = get_fake_value(name, datatype, seed=0)
        self.assertTrue(isinstance(res, str))
        self.assertEqual(targ, res)
    def test__sampling_rate(self):
        name = 'sampling_rate'
        datatype = pq.Quantity
        targ = 10000.0 * pq.Hz

        res = get_fake_value(name, datatype)
        self.assertTrue(isinstance(res, pq.Quantity))
        self.assertEqual(res.units, pq.Hz)
        assert_arrays_equal(targ, res)

        self.assertRaises(ValueError, get_fake_value, name, datatype, dim=1)
        self.assertRaises(ValueError, get_fake_value, name, np.ndarray)
    def test__t_stop(self):
        name = 't_stop'
        datatype = pq.Quantity
        targ = 1.0 * pq.millisecond

        res = get_fake_value(name, datatype)
        self.assertTrue(isinstance(res, pq.Quantity))
        self.assertEqual(res.units, pq.millisecond)
        assert_arrays_equal(targ, res)

        self.assertRaises(ValueError, get_fake_value, name, datatype, dim=1)
        self.assertRaises(ValueError, get_fake_value, name, np.ndarray)
    def test__ndarray(self):
        name = 'test__quantity'
        datatype = np.ndarray
        dim = 2

        size = []
        for i in range(int(dim)):
            size.append(np.random.randint(100) + 1)
        targ = np.random.random(size) * pq.millisecond

        res = get_fake_value(name, datatype, dim=dim, seed=0)
        self.assertTrue(isinstance(res, np.ndarray))
        assert_arrays_equal(targ, res)
示例#7
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 def test_attr_changes(self):
     """ gets an object, changes its attributes, saves it, then compares how
     good the changes were saved. """
     iom = NeoHdf5IO(filename=self.test_file)
     for obj_type in objectnames:
         obj = fake_neo(obj_type=obj_type, cascade=False)
         iom.save(obj)
         orig_obj = iom.get(obj.hdf5_path)
         for attr in obj._all_attrs:
             if hasattr(orig_obj, attr[0]):
                 setattr(obj, attr[0], get_fake_value(*attr))
         iom.save(orig_obj)
         test_obj = iom.get(orig_obj.hdf5_path)
         assert_objects_equivalent(orig_obj, test_obj)
示例#8
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 def test_attr_changes(self):
     """ gets an object, changes its attributes, saves it, then compares how
     good the changes were saved. """
     iom = NeoHdf5IO(filename=self.test_file)
     for obj_type in class_by_name.keys():
         obj = fake_neo(obj_type=obj_type, cascade=False)
         iom.save(obj)
         orig_obj = iom.get(obj.hdf5_path)
         attrs = (classes_necessary_attributes[obj_type] +
                  classes_recommended_attributes[obj_type])
         for attr in attrs:
             if hasattr(orig_obj, attr[0]):
                 setattr(obj, attr[0], get_fake_value(*attr))
         iom.save(orig_obj)
         test_obj = iom.get(orig_obj.hdf5_path)
         assert_objects_equivalent(orig_obj, test_obj)
    def test__datetime(self):
        name = 'test__datetime'
        datatype = datetime

        res = get_fake_value(name, datatype)
        self.assertTrue(isinstance(res, datetime))