Esempio n. 1
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    def testTrainingSubsetsOfVariablesOnlyUpdatesThoseVariables(self):
        # First, train only the weights of the model.
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            total_loss = self.ModelLoss()
            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)
            weights, biases = variables_lib2.get_variables()

            train_op = learning.create_train_op(total_loss, optimizer)
            train_weights = learning.create_train_op(
                total_loss, optimizer, variables_to_train=[weights])
            train_biases = learning.create_train_op(
                total_loss, optimizer, variables_to_train=[biases])

            with session.Session() as sess:
                # Initialize the variables.
                sess.run(variables_lib.global_variables_initializer())

                # Get the intial weights and biases values.
                weights_values, biases_values = sess.run([weights, biases])
                self.assertGreater(np.linalg.norm(weights_values), 0)
                self.assertAlmostEqual(np.linalg.norm(biases_values), 0)

                # Update weights and biases.
                loss = sess.run(train_op)
                self.assertGreater(loss, .5)
                new_weights, new_biases = sess.run([weights, biases])

                # Check that the weights and biases have been updated.
                self.assertGreater(
                    np.linalg.norm(weights_values - new_weights), 0)
                self.assertGreater(np.linalg.norm(biases_values - new_biases),
                                   0)

                weights_values, biases_values = new_weights, new_biases

                # Update only weights.
                loss = sess.run(train_weights)
                self.assertGreater(loss, .5)
                new_weights, new_biases = sess.run([weights, biases])

                # Check that the weights have been updated, but biases have not.
                self.assertGreater(
                    np.linalg.norm(weights_values - new_weights), 0)
                self.assertAlmostEqual(
                    np.linalg.norm(biases_values - new_biases), 0)
                weights_values = new_weights

                # Update only biases.
                loss = sess.run(train_biases)
                self.assertGreater(loss, .5)
                new_weights, new_biases = sess.run([weights, biases])

                # Check that the biases have been updated, but weights have not.
                self.assertAlmostEqual(
                    np.linalg.norm(weights_values - new_weights), 0)
                self.assertGreater(np.linalg.norm(biases_values - new_biases),
                                   0)
Esempio n. 2
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    def testTrainAllVarsHasLowerLossThanTrainSubsetOfVars(self):
        logdir1 = os.path.join(tempfile.mkdtemp(prefix=self.get_temp_dir()),
                               'tmp_logs1')

        # First, train only the weights of the model.
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            total_loss = self.ModelLoss()
            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)
            weights = variables_lib2.get_variables_by_name('weights')

            train_op = learning.create_train_op(total_loss,
                                                optimizer,
                                                variables_to_train=weights)

            loss = learning.train(train_op,
                                  logdir1,
                                  number_of_steps=200,
                                  log_every_n_steps=10)
            self.assertGreater(loss, .015)
            self.assertLess(loss, .05)

        # Next, train the biases of the model.
        with ops.Graph().as_default():
            random_seed.set_random_seed(1)
            total_loss = self.ModelLoss()
            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)
            biases = variables_lib2.get_variables_by_name('biases')

            train_op = learning.create_train_op(total_loss,
                                                optimizer,
                                                variables_to_train=biases)

            loss = learning.train(train_op,
                                  logdir1,
                                  number_of_steps=300,
                                  log_every_n_steps=10)
            self.assertGreater(loss, .015)
            self.assertLess(loss, .05)

        # Finally, train both weights and bias to get lower loss.
        with ops.Graph().as_default():
            random_seed.set_random_seed(2)
            total_loss = self.ModelLoss()
            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)
            loss = learning.train(train_op,
                                  logdir1,
                                  number_of_steps=400,
                                  log_every_n_steps=10)

            self.assertIsNotNone(loss)
            self.assertLess(loss, .015)
Esempio n. 3
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  def testTrainingSubsetsOfVariablesOnlyUpdatesThoseVariables(self):
    # First, train only the weights of the model.
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      total_loss = self.ModelLoss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)
      weights, biases = variables_lib2.get_variables()

      train_op = learning.create_train_op(total_loss, optimizer)
      train_weights = learning.create_train_op(
          total_loss, optimizer, variables_to_train=[weights])
      train_biases = learning.create_train_op(
          total_loss, optimizer, variables_to_train=[biases])

      with session.Session() as sess:
        # Initialize the variables.
        sess.run(variables_lib.global_variables_initializer())

        # Get the initial weights and biases values.
        weights_values, biases_values = sess.run([weights, biases])
        self.assertGreater(np.linalg.norm(weights_values), 0)
        self.assertAlmostEqual(np.linalg.norm(biases_values), 0)

        # Update weights and biases.
        loss = sess.run(train_op)
        self.assertGreater(loss, .5)
        new_weights, new_biases = sess.run([weights, biases])

        # Check that the weights and biases have been updated.
        self.assertGreater(np.linalg.norm(weights_values - new_weights), 0)
        self.assertGreater(np.linalg.norm(biases_values - new_biases), 0)

        weights_values, biases_values = new_weights, new_biases

        # Update only weights.
        loss = sess.run(train_weights)
        self.assertGreater(loss, .5)
        new_weights, new_biases = sess.run([weights, biases])

        # Check that the weights have been updated, but biases have not.
        self.assertGreater(np.linalg.norm(weights_values - new_weights), 0)
        self.assertAlmostEqual(np.linalg.norm(biases_values - new_biases), 0)
        weights_values = new_weights

        # Update only biases.
        loss = sess.run(train_biases)
        self.assertGreater(loss, .5)
        new_weights, new_biases = sess.run([weights, biases])

        # Check that the biases have been updated, but weights have not.
        self.assertAlmostEqual(np.linalg.norm(weights_values - new_weights), 0)
        self.assertGreater(np.linalg.norm(biases_values - new_biases), 0)
Esempio n. 4
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    def testTrainWithLocalVariable(self):
        logdir = os.path.join(tempfile.mkdtemp(prefix=self.get_temp_dir()),
                              'tmp_logs')
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            tf_inputs = constant_op.constant(self._inputs,
                                             dtype=dtypes.float32)
            tf_labels = constant_op.constant(self._labels,
                                             dtype=dtypes.float32)

            local_multiplier = variables_lib2.local_variable(1.0)

            tf_predictions = LogisticClassifier(tf_inputs) * local_multiplier
            loss_ops.log_loss(tf_predictions, tf_labels)
            total_loss = loss_ops.get_total_loss()

            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)

            loss = learning.train(train_op,
                                  logdir,
                                  number_of_steps=300,
                                  log_every_n_steps=10)
            self.assertIsNotNone(loss)
            self.assertLess(loss, .015)
Esempio n. 5
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    def testTrainWithSessionConfig(self):
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            tf_inputs = constant_op.constant(self._inputs,
                                             dtype=dtypes.float32)
            tf_labels = constant_op.constant(self._labels,
                                             dtype=dtypes.float32)

            tf_predictions = LogisticClassifier(tf_inputs)
            loss_ops.log_loss(tf_predictions, tf_labels)
            total_loss = loss_ops.get_total_loss()

            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)

            session_config = config_pb2.ConfigProto(allow_soft_placement=True)
            loss = learning.train(train_op,
                                  None,
                                  number_of_steps=300,
                                  log_every_n_steps=10,
                                  session_config=session_config)
        self.assertIsNotNone(loss)
        self.assertLess(loss, .015)
Esempio n. 6
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    def testTrainWithNoInitAssignCanAchieveZeroLoss(self):
        logdir = os.path.join(tempfile.mkdtemp(prefix=self.get_temp_dir()),
                              'tmp_logs')
        g = ops.Graph()
        with g.as_default():
            random_seed.set_random_seed(0)
            tf_inputs = constant_op.constant(self._inputs,
                                             dtype=dtypes.float32)
            tf_labels = constant_op.constant(self._labels,
                                             dtype=dtypes.float32)

            tf_predictions = BatchNormClassifier(tf_inputs)
            loss_ops.log_loss(tf_predictions, tf_labels)
            total_loss = loss_ops.get_total_loss()

            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)

            loss = learning.train(train_op,
                                  logdir,
                                  number_of_steps=300,
                                  log_every_n_steps=10)
            self.assertLess(loss, .1)
Esempio n. 7
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  def testNoneGlobalStep(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = BatchNormClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(
          total_loss, optimizer, global_step=None)

      global_step = variables_lib2.get_or_create_global_step()

      with session.Session() as sess:
        # Initialize all variables
        sess.run(variables_lib.global_variables_initializer())

        for _ in range(10):
          sess.run([train_op])
        global_step = global_step.eval()
        # Since train_op don't use global_step it shouldn't change.
        self.assertAllClose(global_step, 0)
Esempio n. 8
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  def testTrainWithSessionWrapper(self):
    """Test that slim.learning.train can take `session_wrapper` args.

    One of the applications of `session_wrapper` is the wrappers of TensorFlow
    Debugger (tfdbg), which intercept methods calls to `tf.Session` (e.g., run)
    to achieve debugging. `DumpingDebugWrapperSession` is used here for testing
    purpose.
    """
    dump_root = tempfile.mkdtemp()

    def dumping_wrapper(sess):  # pylint: disable=invalid-name
      return dumping_wrapper_lib.DumpingDebugWrapperSession(sess, dump_root)

    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      loss = learning.train(
          train_op, None, number_of_steps=1, session_wrapper=dumping_wrapper)
    self.assertIsNotNone(loss)

    run_root = glob.glob(os.path.join(dump_root, 'run_*'))[-1]
    dump = debug_data.DebugDumpDir(run_root)
    self.assertAllEqual(0,
                        dump.get_tensors('global_step', 0, 'DebugIdentity')[0])
Esempio n. 9
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    def testTrainWithEpochLimit(self):
        logdir = os.path.join(tempfile.mkdtemp(prefix=self.get_temp_dir()),
                              'tmp_logs')
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            tf_inputs = constant_op.constant(self._inputs,
                                             dtype=dtypes.float32)
            tf_labels = constant_op.constant(self._labels,
                                             dtype=dtypes.float32)
            tf_inputs_limited = input_lib.limit_epochs(tf_inputs,
                                                       num_epochs=300)
            tf_labels_limited = input_lib.limit_epochs(tf_labels,
                                                       num_epochs=300)

            tf_predictions = LogisticClassifier(tf_inputs_limited)
            loss_ops.log_loss(tf_predictions, tf_labels_limited)
            total_loss = loss_ops.get_total_loss()

            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)

            loss = learning.train(train_op, logdir, log_every_n_steps=10)
        self.assertIsNotNone(loss)
        self.assertLess(loss, .015)
        self.assertTrue(
            os.path.isfile('{}/model.ckpt-300.index'.format(logdir)))
        self.assertTrue(
            os.path.isfile(
                '{}/model.ckpt-300.data-00000-of-00001'.format(logdir)))
Esempio n. 10
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  def testResumeTrainAchievesRoughlyTheSameLoss(self):
    logdir = os.path.join(
        tempfile.mkdtemp(prefix=self.get_temp_dir()), 'tmp_logs')
    number_of_steps = [300, 301, 305]

    for i in range(len(number_of_steps)):
      with ops.Graph().as_default():
        random_seed.set_random_seed(i)
        tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
        tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

        tf_predictions = LogisticClassifier(tf_inputs)
        loss_ops.log_loss(tf_predictions, tf_labels)
        total_loss = loss_ops.get_total_loss()

        optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

        train_op = learning.create_train_op(total_loss, optimizer)

        loss = learning.train(
            train_op,
            logdir,
            number_of_steps=number_of_steps[i],
            log_every_n_steps=10)
        self.assertIsNotNone(loss)
        self.assertLess(loss, .015)
Esempio n. 11
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  def testTrainWithTrace(self):
    logdir = os.path.join(
        tempfile.mkdtemp(prefix=self.get_temp_dir()), 'tmp_logs')
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()
      summary.scalar('total_loss', total_loss)

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      loss = learning.train(
          train_op,
          logdir,
          number_of_steps=300,
          log_every_n_steps=10,
          trace_every_n_steps=100)
    self.assertIsNotNone(loss)
    for trace_step in [1, 101, 201]:
      trace_filename = 'tf_trace-%d.json' % trace_step
      self.assertTrue(os.path.isfile(os.path.join(logdir, trace_filename)))
Esempio n. 12
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  def testEmptyUpdateOps(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = BatchNormClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer, update_ops=[])

      moving_mean = variables_lib2.get_variables_by_name('moving_mean')[0]
      moving_variance = variables_lib2.get_variables_by_name('moving_variance')[
          0]

      with session.Session() as sess:
        # Initialize all variables
        sess.run(variables_lib.global_variables_initializer())
        mean, variance = sess.run([moving_mean, moving_variance])
        # After initialization moving_mean == 0 and moving_variance == 1.
        self.assertAllClose(mean, [0] * 4)
        self.assertAllClose(variance, [1] * 4)

        for _ in range(10):
          sess.run([train_op])
        mean = moving_mean.eval()
        variance = moving_variance.eval()
        # Since we skip update_ops the moving_vars are not updated.
        self.assertAllClose(mean, [0] * 4)
        self.assertAllClose(variance, [1] * 4)
Esempio n. 13
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  def testTrainAllVarsHasLowerLossThanTrainSubsetOfVars(self):
    logdir1 = os.path.join(
        tempfile.mkdtemp(prefix=self.get_temp_dir()), 'tmp_logs1')

    # First, train only the weights of the model.
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      total_loss = self.ModelLoss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)
      weights = variables_lib2.get_variables_by_name('weights')

      train_op = learning.create_train_op(
          total_loss, optimizer, variables_to_train=weights)

      loss = learning.train(
          train_op, logdir1, number_of_steps=200, log_every_n_steps=10)
      self.assertGreater(loss, .015)
      self.assertLess(loss, .05)

    # Next, train the biases of the model.
    with ops.Graph().as_default():
      random_seed.set_random_seed(1)
      total_loss = self.ModelLoss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)
      biases = variables_lib2.get_variables_by_name('biases')

      train_op = learning.create_train_op(
          total_loss, optimizer, variables_to_train=biases)

      loss = learning.train(
          train_op, logdir1, number_of_steps=300, log_every_n_steps=10)
      self.assertGreater(loss, .015)
      self.assertLess(loss, .05)

    # Finally, train both weights and bias to get lower loss.
    with ops.Graph().as_default():
      random_seed.set_random_seed(2)
      total_loss = self.ModelLoss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)
      loss = learning.train(
          train_op, logdir1, number_of_steps=400, log_every_n_steps=10)

      self.assertIsNotNone(loss)
      self.assertLess(loss, .015)
Esempio n. 14
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 def build_train_op(self, loss, train_step):
     learning_rate = lr_decay**(
         train_step / learning_rate_decrease_step) * learning_rate_init
     momentum = 1 - learning_rate
     optimizer = tf.train.MomentumOptimizer(learning_rate=learning_rate,
                                            momentum=momentum)
     train_op = learning.create_train_op(loss, optimizer=optimizer)
     return train_op
def optimize_nn(deep_nn_template, images, labels, device_id, name_prefix,
                algorithm_params, loss_func):
    model_input_params = ModelInputParams(x=images,
                                          y=labels,
                                          device_id=device_id,
                                          is_training=True)
    tensor_outputs = deep_nn_template(model_input_params,
                                      algorithm_params=algorithm_params)

    with tf.name_scope(name_prefix + '_loss'):
        cross_entropy_l = loss_func(tensor_outputs, labels)
        cross_entropy = tf.reduce_mean(cross_entropy_l)
    with tf.name_scope(name_prefix + '_optimizer'):
        global_step = tf.train.get_or_create_global_step()

        learning_rate = tf.train.exponential_decay(
            algorithm_params["learning_rate"],
            global_step,
            algorithm_params["learning_rate_decay_step"],
            algorithm_params["learning_rate_decay_factor"],
            staircase=True)

        if isinstance(algorithm_params["optimizer"], tuple) or isinstance(
                algorithm_params["optimizer"], list):
            if algorithm_params["optimizer"][0] == "MomentumOptimizer":
                optimizer = tf.train.MomentumOptimizer(
                    learning_rate,
                    momentum=algorithm_params["optimizer"][1],
                    name="nn_core/Momentum")
        else:
            if algorithm_params["optimizer"] == "AdamOptimizer":
                optimizer = tf.train.AdamOptimizer(learning_rate,
                                                   name="nn_core/Adam")

        # None means TPU
        if device_id is None:
            optimizer = tf.contrib.tpu.CrossShardOptimizer(optimizer)

        train_step = create_train_op(cross_entropy,
                                     optimizer,
                                     global_step=global_step)

        # This part is required for batch normalization to work
        update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS)
        if update_ops:
            updates = tf.group(*update_ops)
            cross_entropy = control_flow_ops.with_dependencies([updates],
                                                               cross_entropy)

    return tensor_outputs.y_conv, cross_entropy, learning_rate, train_step
Esempio n. 16
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  def testRecordTrainOpInCollection(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)
      train_op = learning.create_train_op(total_loss, optimizer)

      # Make sure the training op was recorded in the proper collection
      self.assertTrue(train_op in ops.get_collection(ops.GraphKeys.TRAIN_OP))
Esempio n. 17
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  def testTrainWithNoneAsLogdirWhenUsingTraceRaisesError(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      with self.assertRaises(ValueError):
        learning.train(
            train_op, None, number_of_steps=300, trace_every_n_steps=10)
Esempio n. 18
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  def testTrainWithNoneAsInitWhenUsingVarsRaisesError(self):
    logdir = os.path.join(
        tempfile.mkdtemp(prefix=self.get_temp_dir()), 'tmp_logs')
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      with self.assertRaises(RuntimeError):
        learning.train(train_op, logdir, init_op=None, number_of_steps=300)
Esempio n. 19
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  def create_train_op(self, learning_rate=1.0, gradient_multiplier=1.0):
    tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
    tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

    tf_predictions = LogisticClassifier(tf_inputs)
    loss_ops.log_loss(tf_predictions, tf_labels)
    total_loss = loss_ops.get_total_loss()

    optimizer = gradient_descent.GradientDescentOptimizer(
        learning_rate=learning_rate)

    if gradient_multiplier != 1.0:
      variables = variables_lib.trainable_variables()
      gradient_multipliers = {var: gradient_multiplier for var in variables}
    else:
      gradient_multipliers = None

    return learning.create_train_op(
        total_loss, optimizer, gradient_multipliers=gradient_multipliers)
Esempio n. 20
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  def testTrainWithNoInitAssignCanAchieveZeroLoss(self):
    logdir = os.path.join(
        tempfile.mkdtemp(prefix=self.get_temp_dir()), 'tmp_logs')
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      loss = learning.train(
          train_op, logdir, number_of_steps=300, log_every_n_steps=10)
      self.assertIsNotNone(loss)
      self.assertLess(loss, .015)
Esempio n. 21
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    def testUseUpdateOps(self):
        with ops.Graph().as_default():
            random_seed.set_random_seed(0)
            tf_inputs = constant_op.constant(self._inputs,
                                             dtype=dtypes.float32)
            tf_labels = constant_op.constant(self._labels,
                                             dtype=dtypes.float32)

            expected_mean = np.mean(self._inputs, axis=(0))
            expected_var = np.var(self._inputs, axis=(0))
            expected_var = self._addBesselsCorrection(16, expected_var)

            tf_predictions = BatchNormClassifier(tf_inputs)
            loss_ops.log_loss(tf_predictions, tf_labels)
            total_loss = loss_ops.get_total_loss()
            optimizer = gradient_descent.GradientDescentOptimizer(
                learning_rate=1.0)

            train_op = learning.create_train_op(total_loss, optimizer)

            moving_mean = variables_lib2.get_variables_by_name(
                'moving_mean')[0]
            moving_variance = variables_lib2.get_variables_by_name(
                'moving_variance')[0]

            with session.Session() as sess:
                # Initialize all variables
                sess.run(variables_lib.global_variables_initializer())
                mean, variance = sess.run([moving_mean, moving_variance])
                # After initialization moving_mean == 0 and moving_variance == 1.
                self.assertAllClose(mean, [0] * 4)
                self.assertAllClose(variance, [1] * 4)

                for _ in range(10):
                    sess.run([train_op])
                mean = moving_mean.eval()
                variance = moving_variance.eval()
                # After 10 updates with decay 0.1 moving_mean == expected_mean and
                # moving_variance == expected_var.
                self.assertAllClose(mean, expected_mean)
                self.assertAllClose(variance, expected_var)
Esempio n. 22
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  def testTrainWithEpochLimit(self):
    logdir = os.path.join(tempfile.mkdtemp(prefix=self.get_temp_dir()),
                          'tmp_logs')
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)
      tf_inputs_limited = input_lib.limit_epochs(tf_inputs, num_epochs=300)
      tf_labels_limited = input_lib.limit_epochs(tf_labels, num_epochs=300)

      tf_predictions = LogisticClassifier(tf_inputs_limited)
      loss_ops.log_loss(tf_predictions, tf_labels_limited)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      loss = learning.train(train_op, logdir, log_every_n_steps=10)
    self.assertIsNotNone(loss)
    self.assertLess(loss, .015)
    self.assertTrue(os.path.isfile('{}/model.ckpt-300.index'.format(logdir)))
    self.assertTrue(os.path.isfile('{}/model.ckpt-300.data-00000-of-00001'.format(logdir)))
Esempio n. 23
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  def testTrainWithSessionConfig(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      tf_predictions = LogisticClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()

      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      session_config = config_pb2.ConfigProto(allow_soft_placement=True)
      loss = learning.train(
          train_op,
          None,
          number_of_steps=300,
          log_every_n_steps=10,
          session_config=session_config)
    self.assertIsNotNone(loss)
    self.assertLess(loss, .015)
Esempio n. 24
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  def testUseUpdateOps(self):
    with ops.Graph().as_default():
      random_seed.set_random_seed(0)
      tf_inputs = constant_op.constant(self._inputs, dtype=dtypes.float32)
      tf_labels = constant_op.constant(self._labels, dtype=dtypes.float32)

      expected_mean = np.mean(self._inputs, axis=(0))
      expected_var = np.var(self._inputs, axis=(0))
      expected_var = self._addBesselsCorrection(16, expected_var)

      tf_predictions = BatchNormClassifier(tf_inputs)
      loss_ops.log_loss(tf_predictions, tf_labels)
      total_loss = loss_ops.get_total_loss()
      optimizer = gradient_descent.GradientDescentOptimizer(learning_rate=1.0)

      train_op = learning.create_train_op(total_loss, optimizer)

      moving_mean = variables_lib2.get_variables_by_name('moving_mean')[0]
      moving_variance = variables_lib2.get_variables_by_name('moving_variance')[
          0]

      with session.Session() as sess:
        # Initialize all variables
        sess.run(variables_lib.global_variables_initializer())
        mean, variance = sess.run([moving_mean, moving_variance])
        # After initialization moving_mean == 0 and moving_variance == 1.
        self.assertAllClose(mean, [0] * 4)
        self.assertAllClose(variance, [1] * 4)

        for _ in range(10):
          sess.run([train_op])
        mean = moving_mean.eval()
        variance = moving_variance.eval()
        # After 10 updates with decay 0.1 moving_mean == expected_mean and
        # moving_variance == expected_var.
        self.assertAllClose(mean, expected_mean)
        self.assertAllClose(variance, expected_var)