Esempio n. 1
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    def testMovingAverageOptimizer(self):
        optimizer = sgd_new.SGD(learning_rate=1,
                                use_ema=True,
                                ema_momentum=0.5,
                                ema_overwrite_frequency=3)

        var1, var2 = tf.Variable(2.0), tf.Variable(2.0)
        with tf.GradientTape() as tape:
            loss = var1 + var2
        grads = tape.gradient(loss, [var1, var2])
        # First iteration: [var1, var2] = [1.0, 1.0]
        optimizer.apply_gradients(zip(grads, [var1, var2]))
        self.assertAllEqual([var1.numpy(), var2.numpy()], [1.0, 1.0])

        # Second iteration: [var1, var2] = [0.0, 0.0]
        optimizer.apply_gradients(zip(grads, [var1, var2]))
        self.assertAllEqual([var1.numpy(), var2.numpy()], [0.0, 0.0])

        # Third iteration, without EMA, we should see [var1, var2] = [-1.0, -1.0],
        # but overwriting results in [var1, var2] = [-0.125, -0.125].
        optimizer.apply_gradients(zip(grads, [var1, var2]))
        self.assertAllEqual([var1.numpy(), var2.numpy()], [-0.125, -0.125])
Esempio n. 2
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 def testSgd(self, nesterov):
   self._compare_numerical(
       sgd_old.SGD(nesterov=True), sgd_new.SGD(nesterov=True))
Esempio n. 3
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    ds_combinations.central_storage_strategy_with_two_gpus,
]

adadelta_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladadelta",
    lambda: adadelta_new.Adadelta(  # pylint: disable=g-long-lambda
        0.002, use_ema=True, ema_overwrite_frequency=None))
adagrad_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladagrad", lambda: adagrad_new.Adagrad(0.002))
adam_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladam", lambda: adam_new.Adam(0.002))
rmsprop_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentalrmsprop", lambda: rmsprop_new.RMSprop(0.002))
sgd_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentalsgdaverage",
    lambda: sgd_new.SGD(  # pylint: disable=g-long-lambda
        0.002, use_ema=True, ema_overwrite_frequency=1))

OPTIMIZER_FN = [
    adadelta_new_fn,
    adagrad_new_fn,
    adam_new_fn,
    rmsprop_new_fn,
    sgd_new_fn,
]


class OptimizerFuntionalityTest(tf.test.TestCase, parameterized.TestCase):
  """Test the functionality of optimizer."""

  def testAddVariableFromReference(self):
    optimizer = adam_new.Adam()
Esempio n. 4
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adadelta_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladadelta",
    lambda: adadelta_new.Adadelta(  # pylint: disable=g-long-lambda
        0.002,
        ema_option=optimizer_lib.EMAOption(use_ema=True,
                                           ema_overwrite_frequency=None)))
adagrad_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladagrad", lambda: adagrad_new.Adagrad(0.002))
adam_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladam", lambda: adam_new.Adam(0.002))
rmsprop_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentalrmsprop", lambda: rmsprop_new.RMSprop(0.002))
sgd_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentalsgdaverage",
    lambda: sgd_new.SGD(  # pylint: disable=g-long-lambda
        0.002,
        ema_option=optimizer_lib.EMAOption(use_ema=True,
                                           ema_overwrite_frequency=1)))

OPTIMIZER_FN = [
    adadelta_new_fn,
    adagrad_new_fn,
    adam_new_fn,
    rmsprop_new_fn,
    sgd_new_fn,
]


class OptimizerFuntionalityTest(tf.test.TestCase, parameterized.TestCase):
    """Test the functionality of optimizer."""
    def testAddVariableFromReference(self):
        optimizer = adam_new.Adam()
Esempio n. 5
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    ds_combinations.mirrored_strategy_with_two_gpus,
    ds_combinations.tpu_strategy,
    ds_combinations.cloud_tpu_strategy,
    ds_combinations.multi_worker_mirrored_2x1_cpu,
    ds_combinations.multi_worker_mirrored_2x2_gpu,
    ds_combinations.central_storage_strategy_with_two_gpus,
]

adadelta_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladadelta", lambda: adadelta_new.Adadelta(0.002))
adagrad_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladagrad", lambda: adagrad_new.Adagrad(0.002))
adam_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentaladam", lambda: adam_new.Adam(0.002))
sgd_new_fn = tf.__internal__.test.combinations.NamedObject(
    "experimentalsgd", lambda: sgd_new.SGD(0.002))

OPTIMIZER_FN = [
    adadelta_new_fn,
    adagrad_new_fn,
    adam_new_fn,
    sgd_new_fn,
]


class OptimizerFuntionalityTest(tf.test.TestCase, parameterized.TestCase):
  """Test the functionality of optimizer."""

  def testAddVariableFromReference(self):
    optimizer = adam_new.Adam()
    variable = optimizer.add_variable_from_reference(