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tensorflow / purelib / tensorflow / python / keras / engine / training.py
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# Copyright 2015 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Training-related part of the Keras engine.
"""
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import collections
import numpy as np

from tensorflow.python import tf2
from tensorflow.python.data.ops import dataset_ops
from tensorflow.python.data.ops import iterator_ops
from tensorflow.python.distribute import distribute_coordinator as dc
from tensorflow.python.distribute import distribution_strategy_context
from tensorflow.python.eager import context
from tensorflow.python.eager import monitoring
from tensorflow.python.framework import constant_op
from tensorflow.python.framework import ops
from tensorflow.python.framework import tensor_shape
from tensorflow.python.framework import tensor_util
from tensorflow.python.keras import backend as K
from tensorflow.python.keras import losses
from tensorflow.python.keras import metrics as metrics_module
from tensorflow.python.keras import optimizers
from tensorflow.python.keras.distribute import distributed_training_utils
from tensorflow.python.keras.engine import network
from tensorflow.python.keras.engine import training_arrays
from tensorflow.python.keras.engine import training_distributed
from tensorflow.python.keras.engine import training_eager
from tensorflow.python.keras.engine import training_generator
from tensorflow.python.keras.engine import training_utils
from tensorflow.python.keras.mixed_precision.experimental import loss_scale_optimizer
from tensorflow.python.keras.saving import saving_utils
from tensorflow.python.keras.utils import data_utils
from tensorflow.python.keras.utils import losses_utils
from tensorflow.python.keras.utils.generic_utils import slice_arrays
from tensorflow.python.keras.utils.mode_keys import ModeKeys
from tensorflow.python.ops import array_ops
from tensorflow.python.ops import math_ops
from tensorflow.python.platform import tf_logging as logging
from tensorflow.python.training.tracking import base as trackable
from tensorflow.python.util import nest
from tensorflow.python.util.tf_export import keras_export

_keras_api_gauge = monitoring.BoolGauge('/tensorflow/api/keras',
                                        'keras api usage', 'method')


@keras_export('keras.models.Model', 'keras.Model')
class Model(network.Network):
  """`Model` groups layers into an object with training and inference features.

  There are two ways to instantiate a `Model`:

  1 - With the "functional API", where you start from `Input`,
  you chain layer calls to specify the model's forward pass,
  and finally you create your model from inputs and outputs:

  ```python
  import tensorflow as tf

  inputs = tf.keras.Input(shape=(3,))
  x = tf.keras.layers.Dense(4, activation=tf.nn.relu)(inputs)
  outputs = tf.keras.layers.Dense(5, activation=tf.nn.softmax)(x)
  model = tf.keras.Model(inputs=inputs, outputs=outputs)
  ```

  2 - By subclassing the `Model` class: in that case, you should define your
  layers in `__init__` and you should implement the model's forward pass
  in `call`.

  ```python
  import tensorflow as tf

  class MyModel(tf.keras.Model):

    def __init__(self):
      super(MyModel, self).__init__()
      self.dense1 = tf.keras.layers.Dense(4, activation=tf.nn.relu)
      self.dense2 = tf.keras.layers.Dense(5, activation=tf.nn.softmax)

    def call(self, inputs):
      x = self.dense1(inputs)
      return self.dense2(x)

  model = MyModel()
  ```

  If you subclass `Model`, you can optionally have
  a `training` argument (boolean) in `call`, which you can use to specify
  a different behavior in training and inference:

  ```python
  import tensorflow as tf

  class MyModel(tf.keras.Model):

    def __init__(self):
      super(MyModel, self).__init__()
      self.dense1 = tf.keras.layers.Dense(4, activation=tf.nn.relu)
      self.dense2 = tf.keras.layers.Dense(5, activation=tf.nn.softmax)
      self.dropout = tf.keras.layers.Dropout(0.5)

    def call(self, inputs, training=False):
      x = self.dense1(inputs)
      if training:
        x = self.dropout(x, training=training)
      return self.dense2(x)

  model = MyModel()
  ```
  """

  def __init__(self, *args, **kwargs):
    super(Model, self).__init__(*args, **kwargs)
    # initializing _distribution_strategy here since it is possible to call
    # predict on a model without compiling it.
    self._distribution_strategy = None
    # This flag is used to track if the user is using the deprecated path of
    # passing distribution strategy to compile rather than creating the model
    # under distribution strategy scope.
    self._compile_distribution = False

    self._run_eagerly = None

    # The epoch at which the checkpoint is saved. Used for fault-tolerance.
    # See `_maybe_load_initial_epoch_from_ckpt()` for more information.
    self._ckpt_saved_epoch = None

  def get_weights(self):
    """Retrieves the weights of the model.

    Returns:
        A flat list of Numpy arrays.
    """
    if self._distribution_strategy:
      with self._distribution_strategy.scope():
        return super(Model, self).get_weights()
    return super(Model, self).get_weights()

  def load_weights(self, filepath, by_name=False):
    """Loads all layer weights, either from a TensorFlow or an HDF5 file."""
    if distributed_training_utils.is_tpu_strategy(self._distribution_strategy):
      if (self._distribution_strategy.extended.steps_per_run > 1 and
          (not network._is_hdf5_filepath(filepath))):  # pylint: disable=protected-access
        raise ValueError('Load weights is not yet supported with TPUStrategy '
                         'with steps_per_run greater than 1.')
    return super(Model, self).load_weights(filepath, by_name)

  @trackable.no_automatic_dependency_tracking
  def compile(self,
              optimizer,
              loss=None,
              metrics=None,
              loss_weights=None,
              sample_weight_mode=None,
              weighted_metrics=None,
              target_tensors=None,
              distribute=None,
              **kwargs):
    """Configures the model for training.

    Arguments:
        optimizer: String (name of optimizer) or optimizer instance.
            See `tf.keras.optimizers`.
        loss: String (name of objective function), objective function or
            `tf.losses.Loss` instance. See `tf.losses`. If the model has
            multiple outputs, you can use a different loss on each output by
            passing a dictionary or a list of losses. The loss value that will
            be minimized by the model will then be the sum of all individual
            losses.
        metrics: List of metrics to be evaluated by the model during training
            and testing. Typically you will use `metrics=['accuracy']`.
            To specify different metrics for different outputs of a
            multi-output model, you could also pass a dictionary, such as
            `metrics={'output_a': 'accuracy', 'output_b': ['accuracy', 'mse']}`.
            You can also pass a list (len = len(outputs)) of lists of metrics
            such as `metrics=[['accuracy'], ['accuracy', 'mse']]` or
            `metrics=['accuracy', ['accuracy', 'mse']]`.
        loss_weights: Optional list or dictionary specifying scalar
            coefficients (Python floats) to weight the loss contributions
            of different model outputs.
            The loss value that will be minimized by the model
            will then be the *weighted sum* of all individual losses,
            weighted by the `loss_weights` coefficients.
            If a list, it is expected to have a 1:1 mapping
            to the model's outputs. If a tensor, it is expected to map
            output names (strings) to scalar coefficients.
        sample_weight_mode: If you need to do timestep-wise
            sample weighting (2D weights), set this to `"temporal"`.
            `None` defaults to sample-wise weights (1D).
            If the model has multiple outputs, you can use a different
            `sample_weight_mode` on each output by passing a
            dictionary or a list of modes.
        weighted_metrics: List of metrics to be evaluated and weighted
            by sample_weight or class_weight during training and testing.
        target_tensors: By default, Keras will create placeholders for the
            model's target, which will be fed with the target data during
            training. If instead you would like to use your own
            target tensors (in turn, Keras will not expect external
            Numpy data for these targets at training time), you
            can specify them via the `target_tensors` argument. It can be
            a single tensor (for a single-output model), a list of tensors,
            or a dict mapping output names to target tensors.
        distribute: NOT SUPPORTED IN TF 2.0, please create and compile the
            model under distribution strategy scope instead of passing it to
            compile.
        **kwargs: Any additional arguments.

    Raises:
        ValueError: In case of invalid arguments for
            `optimizer`, `loss`, `metrics` or `sample_weight_mode`.
    """
    _keras_api_gauge.get_cell('compile').set(True)
    self._run_eagerly = kwargs.pop('run_eagerly', None)

    if distribute is not None:
      if tf2.enabled():
        raise ValueError(
            'Distribute argument in compile is not available in TF 2.0 please '
            'create the model under the distribution strategy scope.')
      logging.warning('Distribute argument in compile is deprecated please '
                      'create the model under the distribution strategy scope.')
      self._distribution_strategy = distribute
      self._compile_distribution = True
    else:
      if distribution_strategy_context.has_strategy():
        # When the user builds the model in the DS scope and cross replica
        # context we want distribution strategy to be set but when building the
        # replica copies of the models internally we should not be compiling
        # with distribution strategy and use the default compilation path.
        if distribution_strategy_context.in_cross_replica_context():
          self._distribution_strategy = (
              distribution_strategy_context.get_strategy())

    # Check whether the experimental feature of distributing the Model without
    # cloning is requested.
    # TODO(b/124517980, b/124377929): Remove this temporary undocumented way
    # of enabling the feature and graduate it to the main distributed code path.
    self._cloning = kwargs.pop('cloning', False)

    self._validate_compile_param_for_distribution_strategy(self.run_eagerly,
                                                           sample_weight_mode,
                                                           target_tensors,
                                                           weighted_metrics)
    self.optimizer = optimizers.get(optimizer)
    # We've disabled automatic dependency tracking for this method, but do want
    # to add a checkpoint dependency on the optimizer if it's trackable.
    if isinstance(self.optimizer, trackable.Trackable):
      self._track_trackable(
          self.optimizer, name='optimizer', overwrite=True)
    self.loss = loss or {}
    self.loss_weights = loss_weights
    self.sample_weight_mode = sample_weight_mode
    self._compile_metrics = metrics or []
    self._compile_weighted_metrics = weighted_metrics
    if self.run_eagerly and target_tensors is not None:
      raise ValueError(
          'target_tensors argument is not supported when '
          'running a model eagerly.')

    # _training_endpoints contains a list of _TrainingEndpoint object, which has
    # all the model output/target/loss and related metadata.
    self._training_endpoints = []

    # Set tf.distribute.Strategy specific parameters.
    self._distributed_model_cache = {}
    self._distributed_function_cache = {}

    if (not context.executing_eagerly() and
        self._distribution_strategy is not None):
      # Ensures a Session is created and configured correctly for Distribution
      # Strategy.
      K.configure_and_create_distributed_session(self._distribution_strategy)
    # Initialize model metric attributes.
    self._init_metric_attributes()
    if not self.built or not self.inputs or not self.outputs:
      # Model is not compilable because it does not know its number of inputs
      # and outputs, nor their shapes and names. We will compile after the first
      # time the model gets called on training data.
      return
    self._is_compiled = True

    # Prepare list of loss functions, same size of model outputs.
    self.loss_functions = training_utils.prepare_loss_functions(
        self.loss, self.output_names)

    target_tensors = self._process_target_tensor_for_compile(target_tensors)

    for o, n, l, t in zip(self.outputs, self.output_names,
                          self.loss_functions, target_tensors):
      endpoint = _TrainingEndpoint(o, n, l)
      endpoint.create_training_target(t, run_eagerly=self.run_eagerly)
      self._training_endpoints.append(endpoint)

    # Prepare list loss weights, same size of model outputs.
    training_utils.prepare_loss_weights(self._training_endpoints, loss_weights)

    # Initialization for Eager mode execution.
    if self.run_eagerly:
      self._compile_eagerly(metrics, weighted_metrics, sample_weight_mode)
      return

    with K.get_graph().as_default():
      # Save all metric attributes per output of the model.
      self._cache_output_metric_attributes(metrics, weighted_metrics)

      # Set metric attributes on model.
      self._set_metric_attributes()

      # Invoke metric functions (unweighted) for all the outputs.
      self._handle_metrics(
          self.outputs,
          targets=self._targets,
          skip_target_masks=self._prepare_skip_target_masks(),
          masks=self._prepare_output_masks())

      # Prepare sample weight modes. List with the same length as model outputs.
      training_utils.prepare_sample_weight_modes(
          self._training_endpoints, sample_weight_mode)

      # Creates the model loss and weighted metrics sub-graphs.
      self._compile_weights_loss_and_weighted_metrics()

      # Functions for train, test and predict will
      # be compiled lazily when required.
      # This saves time when the user is not using all functions.
      self._function_kwargs = kwargs

      self.train_function = None
      self.test_function = None
      self.predict_function = None

      # Collected trainable weights, sorted in topological order.
      self._collected_trainable_weights = self.trainable_weights

      # Validate all variables were correctly created in distribution scope.
      if self._distribution_strategy and not self._compile_distribution:
        for v in self.variables:
          strategy = self._distribution_strategy
          if not strategy.extended.variable_created_in_scope(v):
            raise ValueError(
                'Variable (%s) was not created in the distribution strategy '
                'scope of (%s). It is most likely due to not all layers or '
                'the model or optimizer being created outside the distribution '
                'strategy scope. Try to make sure your code looks similar '
                'to the following.\n'
                'with strategy.scope():\n'
                '  model=_create_model()\n'
                '  model.compile(...)'% (v, strategy))

  @property
  def metrics(self):
    """Returns the model's metrics added using `compile`, `add_metric` APIs."""
    metrics = []
    if self._is_compiled:
      metrics += self._compile_metric_functions
    return metrics + super(Model, self).metrics

  @property
  def metrics_names(self):
    """Returns the model's display labels for all outputs."""
    metrics_names = []
    if self._is_compiled:
      metrics_names += self._compile_metrics_names  # Includes names of losses.

    # Add metric names from layers.
    for layer in self.layers:
      metrics_names += [m.name for m in layer._metrics]  # pylint: disable=protected-access
    metrics_names += [m.name for m in self._metrics]
    return metrics_names

  @property
  def run_eagerly(self):
    """Settable attribute indicating whether the model should run eagerly.

    Running eagerly means that your model will be run step by step,
    like Python code. Your model might run slower, but it should become easier
    for you to debug it by stepping into individual layer calls.

    By default, we will attempt to compile your model to a static graph to
    deliver the best execution performance.

    Returns:
      Boolean, whether the model should run eagerly.
    """
    if self._run_eagerly is True and not context.executing_eagerly():
      raise ValueError('You can only set `run_eagerly=True` if eager execution '
                       'is enabled.')
    if not self.dynamic:
      if self._run_eagerly is None:
        return False
      else:
        return self._run_eagerly
    else:
      if not context.executing_eagerly():
        raise ValueError('Your model contains layers that can only be '
                         'successfully run in eager execution (layers '
                         'constructed with `dynamic=True`). '
                         'You must enable eager execution with '
                         '`tf.enable_eager_execution()`.')
      if self._run_eagerly is False:
        # TODO(fchollet): consider using py_func to enable this.
        raise ValueError('Your model contains layers that can only be '
                         'successfully run in eager execution (layers '
                         'constructed with `dynamic=True`). '
                         'You cannot set `run_eagerly=False`.')
      return context.executing_eagerly()

  @run_eagerly.setter
  def run_eagerly(self, value):
    self._run_eagerly = value

  def fit(self,
          x=None,
          y=None,
          batch_size=None,
          epochs=1,
          verbose=1,
          callbacks=None,
          validation_split=0.,
          validation_data=None,
          shuffle=True,
          class_weight=None,
          sample_weight=None,
          initial_epoch=0,
          steps_per_epoch=None,
          validation_steps=None,
          validation_freq=1,
          max_queue_size=10,
          workers=1,
          use_multiprocessing=False,
          **kwargs):
    """Trains the model for a fixed number of epochs (iterations on a dataset).

    Arguments:
        x: Input data. It could be:
          - A Numpy array (or array-like), or a list of arrays
            (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
            (in case the model has multiple inputs).
          - A dict mapping input names to the corresponding array/tensors,
            if the model has named inputs.
          - A `tf.data` dataset or a dataset iterator. Should return a tuple
            of either `(inputs, targets)` or
            `(inputs, targets, sample_weights)`.
          - A generator or `keras.utils.Sequence` returning `(inputs, targets)`
            or `(inputs, targets, sample weights)`.
        y: Target data. Like the input data `x`,
          it could be either Numpy array(s) or TensorFlow tensor(s).
          It should be consistent with `x` (you cannot have Numpy inputs and
          tensor targets, or inversely). If `x` is a dataset, dataset
          iterator, generator, or `keras.utils.Sequence` instance, `y` should
          not be specified (since targets will be obtained from `x`).
        batch_size: Integer or `None`.
            Number of samples per gradient update.
            If unspecified, `batch_size` will default to 32.
            Do not specify the `batch_size` if your data is in the
            form of symbolic tensors, dataset, dataset iterators,
            generators, or `keras.utils.Sequence` instances (since they generate
            batches).
        epochs: Integer. Number of epochs to train the model.
            An epoch is an iteration over the entire `x` and `y`
            data provided.
            Note that in conjunction with `initial_epoch`,
            `epochs` is to be understood as "final epoch".
            The model is not trained for a number of iterations
            given by `epochs`, but merely until the epoch
            of index `epochs` is reached.
        verbose: 0, 1, or 2. Verbosity mode.
            0 = silent, 1 = progress bar, 2 = one line per epoch.
            Note that the progress bar is not particularly useful when
            logged to a file, so verbose=2 is recommended when not running
            interactively (eg, in a production environment).
        callbacks: List of `keras.callbacks.Callback` instances.
            List of callbacks to apply during training.
            See `tf.keras.callbacks`.
        validation_split: Float between 0 and 1.
            Fraction of the training data to be used as validation data.
            The model will set apart this fraction of the training data,
            will not train on it, and will evaluate
            the loss and any model metrics
            on this data at the end of each epoch.
            The validation data is selected from the last samples
            in the `x` and `y` data provided, before shuffling. This argument is
            not supported when `x` is a dataset, dataset iterator, generator or
           `keras.utils.Sequence` instance.
        validation_data: Data on which to evaluate
            the loss and any model metrics at the end of each epoch.
            The model will not be trained on this data.
            `validation_data` will override `validation_split`.
            `validation_data` could be:
              - tuple `(x_val, y_val)` of Numpy arrays or tensors
              - tuple `(x_val, y_val, val_sample_weights)` of Numpy arrays
              - dataset or a dataset iterator
            For the first two cases, `batch_size` must be provided.
            For the last case, `validation_steps` must be provided.
        shuffle: Boolean (whether to shuffle the training data
            before each epoch) or str (for 'batch').
            'batch' is a special option for dealing with the
            limitations of HDF5 data; it shuffles in batch-sized chunks.
            Has no effect when `steps_per_epoch` is not `None`.
        class_weight: Optional dictionary mapping class indices (integers)
            to a weight (float) value, used for weighting the loss function
            (during training only).
            This can be useful to tell the model to
            "pay more attention" to samples from
            an under-represented class.
        sample_weight: Optional Numpy array of weights for
            the training samples, used for weighting the loss function
            (during training only). You can either pass a flat (1D)
            Numpy array with the same length as the input samples
            (1:1 mapping between weights and samples),
            or in the case of temporal data,
            you can pass a 2D array with shape
            `(samples, sequence_length)`,
            to apply a different weight to every timestep of every sample.
            In this case you should make sure to specify
            `sample_weight_mode="temporal"` in `compile()`. This argument is not
            supported when `x` is a dataset, dataset iterator, generator, or
           `keras.utils.Sequence` instance, instead provide the sample_weights
            as the third element of `x`.
        initial_epoch: Integer.
            Epoch at which to start training
            (useful for resuming a previous training run).
        steps_per_epoch: Integer or `None`.
            Total number of steps (batches of samples)
            before declaring one epoch finished and starting the
            next epoch. When training with input tensors such as
            TensorFlow data tensors, the default `None` is equal to
            the number of samples in your dataset divided by
            the batch size, or 1 if that cannot be determined. If x is a
            `tf.data` dataset or a dataset iterator, and 'steps_per_epoch'
            is None, the epoch will run until the input dataset is exhausted.
        validation_steps: Only relevant if `validation_data` is provided and
            is a dataset or dataset iterator. Total number of steps (batches of
            samples) to draw before stopping when performing validation
            at the end of every epoch. If validation_data is a `tf.data` dataset
            or a dataset iterator, and 'validation_steps' is None, validation
            will run until the `validation_data` dataset is exhausted.
        validation_freq: Only relevant if validation data is provided. Integer
            or `collections.Container` instance (e.g. list, tuple, etc.). If an
            integer, specifies how many training epochs to run before a new
            validation run is performed, e.g. `validation_freq=2` runs
            validation every 2 epochs. If a Container, specifies the epochs on
            which to run validation, e.g. `validation_freq=[1, 2, 10]` runs
            validation at the end of the 1st, 2nd, and 10th epochs.
        max_queue_size: Integer. Used for generator or `keras.utils.Sequence`
            input only. Maximum size for the generator queue.
            If unspecified, `max_queue_size` will default to 10.
        workers: Integer. Used for generator or `keras.utils.Sequence` input
            only. Maximum number of processes to spin up
            when using process-based threading. If unspecified, `workers`
            will default to 1. If 0, will execute the generator on the main
            thread.
        use_multiprocessing: Boolean. Used for generator or
            `keras.utils.Sequence` input only. If `True`, use process-based
            threading. If unspecified, `use_multiprocessing` will default to
            `False`. Note that because this implementation relies on
            multiprocessing, you should not pass non-picklable arguments to
            the generator as they can't be passed easily to children processes.
        **kwargs: Used for backwards compatibility.

    Returns:
        A `History` object. Its `History.history` attribute is
        a record of training loss values and metrics values
        at successive epochs, as well as validation loss values
        and validation metrics values (if applicable).

    Raises:
        RuntimeError: If the model was never compiled.
        ValueError: In case of mismatch between the provided input data
            and what the model expects.
    """
    _keras_api_gauge.get_cell('train').set(True)
    # Legacy support
    if 'nb_epoch' in kwargs:
      logging.warning(
          'The `nb_epoch` argument in `fit` '
          'has been renamed `epochs`.')
      epochs = kwargs.pop('nb_epoch')
    if kwargs:
      raise TypeError('Unrecognized keyword arguments: ' + str(kwargs))
    self._assert_compile_was_called()

    # Case 1: distribution strategy.
    if self._distribution_strategy:
      if K.in_multi_worker_mode():
        # Multi-Worker mode runs the Keras training loop on multiple
        # servers via the Distribute Coordinator.
        def _worker_fn(_):
          """Run training inside the distributed coordinator."""
          filtered_callbacks = distributed_training_utils \
              .filter_distributed_callbacks(callbacks)
          return training_distributed.fit_distributed(
              self,
              x=x,
              y=y,
              batch_size=batch_size,
              epochs=epochs,
              verbose=verbose,
              callbacks=filtered_callbacks,
              validation_split=validation_split,
              validation_data=validation_data,
              shuffle=shuffle,
              class_weight=class_weight,
              sample_weight=sample_weight,
              initial_epoch=initial_epoch,
              steps_per_epoch=steps_per_epoch,
              validation_steps=validation_steps,
              validation_freq=validation_freq)

        # Independent worker only for now.
        return dc.run_distribute_coordinator(
            _worker_fn,
            self._distribution_strategy,
            mode=dc.CoordinatorMode.INDEPENDENT_WORKER)
      else:
        return training_distributed.fit_distributed(
            self,
            x=x,
            y=y,
            batch_size=batch_size,
            epochs=epochs,
            verbose=verbose,
            callbacks=callbacks,
            validation_split=validation_split,
            validation_data=validation_data,
            shuffle=shuffle,
            class_weight=class_weight,
            sample_weight=sample_weight,
            initial_epoch=initial_epoch,
            steps_per_epoch=steps_per_epoch,
            validation_steps=validation_steps,
            validation_freq=validation_freq)

    batch_size = self._validate_or_infer_batch_size(
        batch_size, steps_per_epoch, x)

    # Case 2: generator-like. Input is Python generator, or Sequence object,
    # or a non-distributed Dataset or iterator in eager execution.
    if data_utils.is_generator_or_sequence(x):
      training_utils.check_generator_arguments(
          y, sample_weight, validation_split=validation_split)
      return self.fit_generator(
          x,
          steps_per_epoch=steps_per_epoch,
          epochs=epochs,
          verbose=verbose,
          callbacks=callbacks,
          validation_data=validation_data,
          validation_steps=validation_steps,
          validation_freq=validation_freq,
          class_weight=class_weight,
          max_queue_size=max_queue_size,
          workers=workers,
          use_multiprocessing=use_multiprocessing,
          shuffle=shuffle,
          initial_epoch=initial_epoch)
    if training_utils.is_eager_dataset_or_iterator(x):
      # Make sure that y, sample_weights, validation_split are not passed.
      training_utils.validate_dataset_input(x, y, sample_weight,
                                            validation_split)
      if (isinstance(x, (dataset_ops.DatasetV1, dataset_ops.DatasetV2))
          and shuffle):
        training_utils.verify_dataset_shuffled(x)

      return self.fit_generator(
          x,
          steps_per_epoch=steps_per_epoch,
          epochs=epochs,
          verbose=verbose,
          callbacks=callbacks,
          validation_data=validation_data,
          validation_steps=validation_steps,
          validation_freq=validation_freq,
          class_weight=class_weight,
          workers=0,
          shuffle=shuffle,
          initial_epoch=initial_epoch)

    # Case 3: Symbolic tensors or Numpy array-like.
    # This includes Datasets and iterators in graph mode (since they
    # generate symbolic tensors).
    x, y, sample_weights = self._standardize_user_data(
        x,
        y,
        sample_weight=sample_weight,
        class_weight=class_weight,
        batch_size=batch_size,
        check_steps=True,
        steps_name='steps_per_epoch',
        steps=steps_per_epoch,
        validation_split=validation_split,
        shuffle=shuffle)

    # Prepare validation data.
    if validation_data:
      val_x, val_y, val_sample_weights = self._unpack_validation_data(
          validation_data)
      val_x, val_y, val_sample_weights = self._standardize_user_data(
          val_x,
          val_y,
          sample_weight=val_sample_weights,
          batch_size=batch_size,
          steps=validation_steps,
          steps_name='validation_steps')
    elif validation_split and 0. < validation_split < 1.:
      if training_utils.has_symbolic_tensors(x):
        raise ValueError('If your data is in the form of symbolic tensors, '
                         'you cannot use `validation_split`.')
      if hasattr(x[0], 'shape'):
        split_at = int(x[0].shape[0] * (1. - validation_split))
      else:
        split_at = int(len(x[0]) * (1. - validation_split))
      x, val_x = (slice_arrays(x, 0, split_at), slice_arrays(x, split_at))
      y, val_y = (slice_arrays(y, 0, split_at), slice_arrays(y, split_at))
      if sample_weights:
        sample_weights, val_sample_weights = (
            slice_arrays(sample_weights, 0, split_at),
            slice_arrays(sample_weights, split_at),
        )
      else:
        val_sample_weights = None
    else:
      if validation_steps:
        raise ValueError('`validation_steps` should not be specified if '
                         '`validation_data` is None.')
      val_x = None
      val_y = None
      val_sample_weights = None

    if self.run_eagerly:
      return training_generator.fit_generator(
          self, (x, y, sample_weights),
          steps_per_epoch=steps_per_epoch,
          batch_size=batch_size,
          epochs=epochs,
          verbose=verbose,
          callbacks=callbacks,
          validation_data=validation_data,
          validation_steps=validation_steps,
          validation_freq=validation_freq,
          workers=0,
          shuffle=shuffle,
          initial_epoch=initial_epoch,
          steps_name='steps_per_epoch')
    else:
      return training_arrays.fit_loop(
          self,
          x,
          y,
          sample_weights=sample_weights,
          batch_size=batch_size,
          epochs=epochs,
          verbose=verbose,
          callbacks=callbacks,
          val_inputs=val_x,
          val_targets=val_y,
          val_sample_weights=val_sample_weights,
          shuffle=shuffle,
          initial_epoch=initial_epoch,
          steps_per_epoch=steps_per_epoch,
          validation_steps=validation_steps,
          validation_freq=validation_freq,
          steps_name='steps_per_epoch')

  def evaluate(self,
               x=None,
               y=None,
               batch_size=None,
               verbose=1,
               sample_weight=None,
               steps=None,
               callbacks=None,
               max_queue_size=10,
               workers=1,
               use_multiprocessing=False):
    """Returns the loss value & metrics values for the model in test mode.

    Computation is done in batches.

    Arguments:
        x: Input data. It could be:
          - A Numpy array (or array-like), or a list of arrays
            (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
            (in case the model has multiple inputs).
          - A dict mapping input names to the corresponding array/tensors,
            if the model has named inputs.
          - A `tf.data` dataset or a dataset iterator.
          - A generator or `keras.utils.Sequence` instance.
        y: Target data. Like the input data `x`,
          it could be either Numpy array(s) or TensorFlow tensor(s).
          It should be consistent with `x` (you cannot have Numpy inputs and
          tensor targets, or inversely).
          If `x` is a dataset, dataset iterator, generator or
          `keras.utils.Sequence` instance, `y` should not be specified (since
          targets will be obtained from the iterator/dataset).
        batch_size: Integer or `None`.
            Number of samples per gradient update.
            If unspecified, `batch_size` will default to 32.
            Do not specify the `batch_size` is your data is in the
            form of symbolic tensors, dataset, dataset iterators,
            generators, or `keras.utils.Sequence` instances (since they generate
            batches).
        verbose: 0 or 1. Verbosity mode.
            0 = silent, 1 = progress bar.
        sample_weight: Optional Numpy array of weights for
            the test samples, used for weighting the loss function.
            You can either pass a flat (1D)
            Numpy array with the same length as the input samples
            (1:1 mapping between weights and samples),
            or in the case of temporal data,
            you can pass a 2D array with shape
            `(samples, sequence_length)`,
            to apply a different weight to every timestep of every sample.
            In this case you should make sure to specify
            `sample_weight_mode="temporal"` in `compile()`. This argument is not
            supported when `x` is a dataset or a dataset iterator, instead pass
            sample weights as the third element of `x`.
        steps: Integer or `None`.
            Total number of steps (batches of samples)
            before declaring the evaluation round finished.
            Ignored with the default value of `None`.
            If x is a `tf.data` dataset or a dataset iterator, and `steps` is
            None, 'evaluate' will run until the dataset is exhausted.
        callbacks: List of `keras.callbacks.Callback` instances.
            List of callbacks to apply during evaluation.
            See [callbacks](/api_docs/python/tf/keras/callbacks).
        max_queue_size: Integer. Used for generator or `keras.utils.Sequence`
            input only. Maximum size for the generator queue.
            If unspecified, `max_queue_size` will default to 10.
        workers: Integer. Used for generator or `keras.utils.Sequence` input
            only. Maximum number of processes to spin up when using
            process-based threading. If unspecified, `workers` will default
            to 1. If 0, will execute the generator on the main thread.
        use_multiprocessing: Boolean. Used for generator or
            `keras.utils.Sequence` input only. If `True`, use process-based
            threading. If unspecified, `use_multiprocessing` will default to
            `False`. Note that because this implementation relies on
            multiprocessing, you should not pass non-picklable arguments to
            the generator as they can't be passed easily to children processes.

    Returns:
        Scalar test loss (if the model has a single output and no metrics)
        or list of scalars (if the model has multiple outputs
        and/or metrics). The attribute `model.metrics_names` will give you
        the display labels for the scalar outputs.

    Raises:
        ValueError: in case of invalid arguments.
    """
    _keras_api_gauge.get_cell('evaluate').set(True)
    self._assert_compile_was_called()

    # Case 1: distribution strategy.
    if self._distribution_strategy:
      if K.in_multi_worker_mode():
        # Multi-Worker mode runs the Keras evaluation loop on multiple
        # servers via the Distribute Coordinator.
        def _worker_fn(_):
          """Run evaluation inside the distributed coordinator."""
          filtered_callbacks = distributed_training_utils \
              .filter_distributed_callbacks(callbacks)
          return training_distributed.evaluate_distributed(
              self,
              x=x,
              y=y,
              batch_size=batch_size,
              verbose=verbose,
              sample_weight=sample_weight,
              steps=steps,
              callbacks=filtered_callbacks)

        # Independent worker only for now.
        return dc.run_distribute_coordinator(
            _worker_fn,
            self._distribution_strategy,
            mode=dc.CoordinatorMode.INDEPENDENT_WORKER)
      else:
        return training_distributed.evaluate_distributed(
            self,
            x=x,
            y=y,
            batch_size=batch_size,
            verbose=verbose,
            sample_weight=sample_weight,
            steps=steps,
            callbacks=callbacks)

    batch_size = self._validate_or_infer_batch_size(batch_size, steps, x)

    # Case 2: generator-like. Input is Python generator, or Sequence object,
    # or a non-distributed Dataset or iterator in eager execution.
    if data_utils.is_generator_or_sequence(x):
      training_utils.check_generator_arguments(y, sample_weight)
      return self.evaluate_generator(
          x,
          steps=steps,
          verbose=verbose,
          callbacks=callbacks,
          max_queue_size=max_queue_size,
          workers=workers,
          use_multiprocessing=use_multiprocessing)
    if training_utils.is_eager_dataset_or_iterator(x):
      # Make sure that y, sample_weights are not passed.
      training_utils.validate_dataset_input(x, y, sample_weight)
      return training_generator.evaluate_generator(
          self, x,
          steps=steps,
          batch_size=batch_size,
          verbose=verbose,
          workers=0,
          callbacks=callbacks)

    # Case 3: Symbolic tensors or Numpy array-like.
    # This includes Datasets and iterators in graph mode (since they
    # generate symbolic tensors).
    x, y, sample_weights = self._standardize_user_data(
        x,
        y,
        sample_weight=sample_weight,
        batch_size=batch_size,
        check_steps=True,
        steps_name='steps',
        steps=steps)

    if self.run_eagerly:
      return training_generator.evaluate_generator(
          self, (x, y, sample_weights),
          steps=steps,
          batch_size=batch_size,
          verbose=verbose,
          workers=0,
          callbacks=callbacks)
    else:
      return training_arrays.test_loop(
          self,
          inputs=x,
          targets=y,
          sample_weights=sample_weights,
          batch_size=batch_size,
          verbose=verbose,
          steps=steps,
          callbacks=callbacks)

  def predict(self,
              x,
              batch_size=None,
              verbose=0,
              steps=None,
              callbacks=None,
              max_queue_size=10,
              workers=1,
              use_multiprocessing=False):
    """Generates output predictions for the input samples.

    Computation is done in batches.

    Arguments:
        x: Input samples. It could be:
          - A Numpy array (or array-like), or a list of arrays
            (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
            (in case the model has multiple inputs).
          - A `tf.data` dataset or a dataset iterator.
          - A generator or `keras.utils.Sequence` instance.
        batch_size: Integer or `None`.
            Number of samples per gradient update.
            If unspecified, `batch_size` will default to 32.
            Do not specify the `batch_size` is your data is in the
            form of symbolic tensors, dataset, dataset iterators,
            generators, or `keras.utils.Sequence` instances (since they generate
            batches).
        verbose: Verbosity mode, 0 or 1.
        steps: Total number of steps (batches of samples)
            before declaring the prediction round finished.
            Ignored with the default value of `None`. If x is a `tf.data`
            dataset or a dataset iterator, and `steps` is None, `predict` will
            run until the input dataset is exhausted.
        callbacks: List of `keras.callbacks.Callback` instances.
            List of callbacks to apply during prediction.
            See [callbacks](/api_docs/python/tf/keras/callbacks).
        max_queue_size: Integer. Used for generator or `keras.utils.Sequence`
            input only. Maximum size for the generator queue.
            If unspecified, `max_queue_size` will default to 10.
        workers: Integer. Used for generator or `keras.utils.Sequence` input
            only. Maximum number of processes to spin up when using
            process-based threading. If unspecified, `workers` will default
            to 1. If 0, will execute the generator on the main thread.
        use_multiprocessing: Boolean. Used for generator or
            `keras.utils.Sequence` input only. If `True`, use process-based
            threading. If unspecified, `use_multiprocessing` will default to
            `False`. Note that because this implementation relies on
            multiprocessing, you should not pass non-picklable arguments to
            the generator as they can't be passed easily to children processes.


    Returns:
        Numpy array(s) of predictions.

    Raises:
        ValueError: In case of mismatch between the provided
            input data and the model's expectations,
            or in case a stateful model receives a number of samples
            that is not a multiple of the batch size.
    """
    _keras_api_gauge.get_cell('predict').set(True)
    # Case 1: distribution strategy.
    if self._distribution_strategy:
      return training_distributed.predict_distributed(self,
                                                      x=x,
                                                      batch_size=batch_size,
                                                      verbose=verbose,
                                                      steps=steps,
                                                      callbacks=callbacks)

    batch_size = self._validate_or_infer_batch_size(batch_size, steps, x)

    # Case 2: generator-like. Input is Python generator, or Sequence object,
    # or a non-distributed Dataset or iterator in eager execution.
    if data_utils.is_generator_or_sequence(x):
      return self.predict_generator(
          x,
          steps=steps,
          verbose=verbose,
          callbacks=callbacks,
          max_queue_size=max_queue_size,
          workers=workers,
          use_multiprocessing=use_multiprocessing)
    if training_utils.is_eager_dataset_or_iterator(x):
      return training_generator.predict_generator(
          self,
          x,
          steps=steps,
          batch_size=batch_size,
          verbose=verbose,
          workers=0,
          callbacks=callbacks)

    # Case 3: Symbolic tensors or Numpy array-like.
    # This includes Datasets and iterators in graph mode (since they
    # generate symbolic tensors).
    x, _, _ = self._standardize_user_data(
        x, check_steps=True, steps_name='steps', steps=steps)

    if self.run_eagerly:
      return training_generator.predict_generator(
          self,
          x,
          steps=steps,
          batch_size=batch_size,
          verbose=verbose,
          workers=0,
          callbacks=callbacks)
    else:
      return training_arrays.predict_loop(
          self,
          x,
          batch_size=batch_size,
          verbose=verbose,
          steps=steps,
          callbacks=callbacks)

  def reset_metrics(self):
    """Resets the state of metrics."""
    if hasattr(self, 'metrics'):
      for m in self.metrics:
        m.reset_states()

    # Reset the state of loss metric wrappers.
    if getattr(self, '_output_loss_metrics', None) is not None:
      for m in self._output_loss_metrics:
        m.reset_states()

    # Reset metrics on all the distributed (cloned) models.
    if self._distribution_strategy:
      distributed_training_utils._reset_metrics(self)  # pylint: disable=protected-access

  def train_on_batch(self,
                     x,
                     y=None,
                     sample_weight=None,
                     class_weight=None,
                     reset_metrics=True):
    """Runs a single gradient update on a single batch of data.

    Arguments:
        x: Input data. It could be:
          - A Numpy array (or array-like), or a list of arrays
              (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
              (in case the model has multiple inputs).
          - A dict mapping input names to the corresponding array/tensors,
              if the model has named inputs.
          - A `tf.data` dataset or a dataset iterator.
        y: Target data. Like the input data `x`, it could be either Numpy
          array(s) or TensorFlow tensor(s). It should be consistent with `x`
          (you cannot have Numpy inputs and tensor targets, or inversely). If
          `x` is a dataset or a dataset iterator, `y` should not be specified
          (since targets will be obtained from the iterator).
        sample_weight: Optional array of the same length as x, containing
          weights to apply to the model's loss for each sample. In the case of
          temporal data, you can pass a 2D array with shape (samples,
          sequence_length), to apply a different weight to every timestep of
          every sample. In this case you should make sure to specify
          sample_weight_mode="temporal" in compile(). This argument is not
          supported when `x` is a dataset or a dataset iterator.
        class_weight: Optional dictionary mapping class indices (integers) to a
          weight (float) to apply to the model's loss for the samples from this
          class during training. This can be useful to tell the model to "pay
          more attention" to samples from an under-represented class.
        reset_metrics: If `True`, the metrics returned will be only for this
          batch. If `False`, the metrics will be statefully accumulated across
          batches.

    Returns:
        Scalar training loss
        (if the model has a single output and no metrics)
        or list of scalars (if the model has multiple outputs
        and/or metrics). The attribute `model.metrics_names` will give you
        the display labels for the scalar outputs.

    Raises:
      ValueError: In case of invalid user-provided arguments.
    """
    self._assert_compile_was_called()
    # If at this point we are in the replica context, then it is okay to execute
    # the Eager code path.  The expected way to get here is to call `fit` that
    # calls `train_on_batch` on each replica.
    if (self._distribution_strategy and
        distribution_strategy_context.in_cross_replica_context()):
      raise NotImplementedError('`train_on_batch` is not supported for models '
                                'distributed with tf.distribute.Strategy.')
    # Validate and standardize user data.
    x, y, sample_weights = self._standardize_user_data(
        x, y, sample_weight=sample_weight, class_weight=class_weight,
        extract_tensors_from_dataset=True)

    # If `self._distribution_strategy` is True, then we are in a replica context
    # at this point because of the check above.  `train_on_batch` is being run
    # for each replica by `self._distribution_strategy` and the same code path
    # as Eager is expected to be taken.
    if self.run_eagerly or self._distribution_strategy:
      outputs = training_eager.train_on_batch(
          self,
          x,
          y,
          sample_weights=sample_weights,
          output_loss_metrics=self._output_loss_metrics)
    else:
      x = training_utils.ModelInputs(x).as_list()
      ins = x + (y or []) + (sample_weights or [])

      if not isinstance(K.symbolic_learning_phase(), int):
        ins += [True]  # Add learning phase value.

      self._update_sample_weight_modes(sample_weights=sample_weights)
      self._make_train_function()
      outputs = self.train_function(ins)  # pylint: disable=not-callable

    if reset_metrics:
      self.reset_metrics()

    if len(outputs) == 1:
      return outputs[0]
    return outputs

  def test_on_batch(self, x, y=None, sample_weight=None, reset_metrics=True):
    """Test the model on a single batch of samples.

    Arguments:
        x: Input data. It could be:
          - A Numpy array (or array-like), or a list of arrays
            (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
            (in case the model has multiple inputs).
          - A dict mapping input names to the corresponding array/tensors,
            if the model has named inputs.
          - A `tf.data` dataset or a dataset iterator.
        y: Target data. Like the input data `x`,
          it could be either Numpy array(s) or TensorFlow tensor(s).
          It should be consistent with `x` (you cannot have Numpy inputs and
          tensor targets, or inversely). If `x` is a dataset or a
          dataset iterator, `y` should not be specified
          (since targets will be obtained from the iterator).
        sample_weight: Optional array of the same length as x, containing
            weights to apply to the model's loss for each sample.
            In the case of temporal data, you can pass a 2D array
            with shape (samples, sequence_length),
            to apply a different weight to every timestep of every sample.
            In this case you should make sure to specify
            sample_weight_mode="temporal" in compile(). This argument is not
            supported when `x` is a dataset or a dataset iterator.
        reset_metrics: If `True`, the metrics returned will be only for this
          batch. If `False`, the metrics will be statefully accumulated across
          batches.

    Returns:
        Scalar test loss (if the model has a single output and no metrics)
        or list of scalars (if the model has multiple outputs
        and/or metrics). The attribute `model.metrics_names` will give you
        the display labels for the scalar outputs.

    Raises:
        ValueError: In case of invalid user-provided arguments.
    """
    self._assert_compile_was_called()
    if (self._distribution_strategy and
        distribution_strategy_context.in_cross_replica_context()):
      raise NotImplementedError('`test_on_batch` is not supported for models '
                                'distributed with tf.distribute.Strategy.')
    # Validate and standardize user data.
    x, y, sample_weights = self._standardize_user_data(
        x, y, sample_weight=sample_weight, extract_tensors_from_dataset=True)

    # If `self._distribution_strategy` is True, then we are in a replica context
    # at this point.
    if self.run_eagerly or self._distribution_strategy:
      outputs = training_eager.test_on_batch(
          self,
          x,
          y,
          sample_weights=sample_weights,
          output_loss_metrics=self._output_loss_metrics)
    else:
      x = training_utils.ModelInputs(x).as_list()
      inputs = x + (y or []) + (sample_weights or [])

      self._update_sample_weight_modes(sample_weights=sample_weights)
      self._make_test_function()
      outputs = self.test_function(inputs)  # pylint: disable=not-callable

    if reset_metrics:
      self.reset_metrics()

    if len(outputs) == 1:
      return outputs[0]
    return outputs

  def predict_on_batch(self, x):
    """Returns predictions for a single batch of samples.

    Arguments:
        x: Input data. It could be:
          - A Numpy array (or array-like), or a list of arrays
            (in case the model has multiple inputs).
          - A TensorFlow tensor, or a list of tensors
            (in case the model has multiple inputs).
          - A `tf.data` dataset or a dataset iterator.

    Returns:
        Numpy array(s) of predictions.

    Raises:
        ValueError: In case of mismatch between given number of inputs and
          expectations of the model.
    """
    if (self._distribution_strategy and
        distribution_strategy_context.in_cross_replica_context()):
      raise NotImplementedError(
          '`predict_on_batch` is not supported for models distributed with'
          ' tf.distribute.Strategy.')
    # Validate and standardize user data.
    inputs, _, _ = self._standardize_user_data(
        x, extract_tensors_from_dataset=True)
    # If `self._distribution_strategy` is True, then we are in a replica context
    # at this point.
    if self.run_eagerly or self._distribution_strategy:
      inputs = training_utils.cast_if_floating_dtype(inputs)
      if isinstance(inputs, collections.Sequence):
        # Unwrap lists with only one input, as we do when training on batch
        if len(inputs) == 1:
          inputs = inputs[0]

      return self(inputs)  # pylint: disable=not-callable

    self._make_predict_function()
    outputs = self.predict_function(inputs)

    if len(outputs) == 1:
      return outputs[0]
    return outputs

  def fit_generator(self,
                    generator,
                    steps_per_epoch=None,
                    epochs=1,
                    verbose=1,
                    callbacks=None,
                    validation_data=None,
                    validation_steps=None,
                    validation_freq=1,
                    class_weight=None,
                    max_queue_size=10,
                    workers=1,
                    use_multiprocessing=False,
                    shuffle=True,
                    initial_epoch=0):
    """Fits the model on data yielded batch-by-batch by a Python generator.

    The generator is run in parallel to the model, for efficiency.
    For instance, this allows you to do real-time data augmentation
    on images on CPU in parallel to training your model on GPU.

    The use of `keras.utils.Sequence` guarantees the ordering
    and guarantees the single use of every input per epoch when
    using `use_multiprocessing=True`.

    Arguments:
        generator: A generator or an instance of `Sequence`
          (`keras.utils.Sequence`)
            object in order to avoid duplicate data
            when using multiprocessing.
            The output of the generator must be either
            - a tuple `(inputs, targets)`
            - a tuple `(inputs, targets, sample_weights)`.
            This tuple (a single output of the generator) makes a single batch.
            Therefore, all arrays in this tuple must have the same length (equal
            to the size of this batch). Different batches may have different
              sizes.
            For example, the last batch of the epoch is commonly smaller than
              the
            others, if the size of the dataset is not divisible by the batch
              size.
            The generator is expected to loop over its data
            indefinitely. An epoch finishes when `steps_per_epoch`
            batches have been seen by the model.
        steps_per_epoch: Total number of steps (batches of samples)
            to yield from `generator` before declaring one epoch
            finished and starting the next epoch. It should typically
            be equal to the number of samples of your dataset
            divided by the batch size.
            Optional for `Sequence`: if unspecified, will use
            the `len(generator)` as a number of steps.
        epochs: Integer, total number of iterations on the data.
        verbose: Verbosity mode, 0, 1, or 2.
        callbacks: List of callbacks to be called during training.
        validation_data: This can be either
            - a generator for the validation data
            - a tuple (inputs, targets)
            - a tuple (inputs, targets, sample_weights).
        validation_steps: Only relevant if `validation_data`
            is a generator. Total number of steps (batches of samples)
            to yield from `generator` before stopping.
            Optional for `Sequence`: if unspecified, will use
            the `len(validation_data)` as a number of steps.
        validation_freq: Only relevant if validation data is provided. Integer
            or `collections.Container` instance (e.g. list, tuple, etc.). If an
            integer, specifies how many training epochs to run before a new
            validation run is performed, e.g. `validation_freq=2` runs
            validation every 2 epochs. If a Container, specifies the epochs on
            which to run validation, e.g. `validation_freq=[1, 2, 10]` runs
            validation at the end of the 1st, 2nd, and 10th epochs.
        class_weight: Dictionary mapping class indices to a weight
            for the class.
        max_queue_size: Integer. Maximum size for the generator queue.
            If unspecified, `max_queue_size` will default to 10.
        workers: Integer. Maximum number of processes to spin up
            when using process-based threading.
            If unspecified, `workers` will default to 1. If 0, will
            execute the generator on the main thread.
        use_multiprocessing: Boolean.
            If `True`, use process-based threading.
            If unspecified, `use_multiprocessing` will default to `False`.
            Note that because this implementation relies on multiprocessing,
            you should not pass non-picklable arguments to the generator
            as they can't be passed easily to children processes.
        shuffle: Boolean. Whether to shuffle the order of the batches at
            the beginning of each epoch. Only used with instances
            of `Sequence` (`keras.utils.Sequence`).
            Has no effect when `steps_per_epoch` is not `None`.
        initial_epoch: Epoch at which to start training
            (useful for resuming a previous training run)

    Returns:
        A `History` object.

    Example:

    ```python
        def generate_arrays_from_file(path):
            while 1:
                f = open(path)
                for line in f:
                    # create numpy arrays of input data
                    # and labels, from each line in the file
                    x1, x2, y = process_line(line)
                    yield ({'input_1': x1, 'input_2': x2}, {'output': y})
                f.close()

        model.fit_generator(generate_arrays_from_file('/my_file.txt'),
                            steps_per_epoch=10000, epochs=10)
    ```
    Raises:
        ValueError: In case the generator yields data in an invalid format.
    """
    if self._distribution_strategy:
      raise NotImplementedError('`fit_generator` is not supported for '
                                'models compiled with tf.distribute.Strategy.')
    _keras_api_gauge.get_cell('train').set(True)
    return training_generator.fit_generator(
        self,
        generator,
        steps_per_epoch=steps_per_epoch,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        validation_data=validation_data,
        validation_steps=validation_steps,
        validation_freq=validation_freq,
        class_weight=class_weight,
        max_queue_size=max_queue_size,
        workers=workers,
        use_multiprocessing=use_multiprocessing,
        shuffle=shuffle,
        initial_epoch=initial_epoch,
        steps_name='steps_per_epoch')

  def evaluate_generator(self,
                         generator,
                         steps=None,
                         callbacks=None,
                         max_queue_size=10,
                         workers=1,
                         use_multiprocessing=False,
                         verbose=0):
    """Evaluates the model on a data generator.

    The generator should return the same kind of data
    as accepted by `test_on_batch`.

    Arguments:
        generator: Generator yielding tuples (inputs, targets)
            or (inputs, targets, sample_weights)
            or an instance of `keras.utils.Sequence`
            object in order to avoid duplicate data
            when using multiprocessing.
        steps: Total number of steps (batches of samples)
            to yield from `generator` before stopping.
            Optional for `Sequence`: if unspecified, will use
            the `len(generator)` as a number of steps.
        callbacks: List of `keras.callbacks.Callback` instances.
            List of callbacks to apply during evaluation.
            See [callbacks](/api_docs/python/tf/keras/callbacks).
        max_queue_size: maximum size for the generator queue
        workers: Integer. Maximum number of processes to spin up
            when using process-based threading.
            If unspecified, `workers` will default to 1. If 0, will
            execute the generator on the main thread.
        use_multiprocessing: Boolean.
            If `True`, use process-based threading.
            If unspecified, `use_multiprocessing` will default to `False`.
            Note that because this implementation relies on multiprocessing,
            you should not pass non-picklable arguments to the generator
            as they can't be passed easily to children processes.
        verbose: Verbosity mode, 0 or 1.

    Returns:
        Scalar test loss (if the model has a single output and no metrics)
        or list of scalars (if the model has multiple outputs
        and/or metrics). The attribute `model.metrics_names` will give you
        the display labels for the scalar outputs.

    Raises:
        ValueError: in case of invalid arguments.

    Raises:
        ValueError: In case the generator yields data in an invalid format.
    """
    if self._distribution_strategy:
      raise NotImplementedError('`evaluate_generator` is not supported for '
                                'models compiled with tf.distribute.Strategy.')
    _keras_api_gauge.get_cell('evaluate').set(True)
    return training_generator.evaluate_generator(
        self,
        generator,
        steps=steps,
        max_queue_size=max_queue_size,
        workers=workers,
        use_multiprocessing=use_multiprocessing,
        verbose=verbose,
        callbacks=callbacks)

  def predict_generator(self,
                        generator,
                        steps=None,
                        callbacks=None,
                        max_queue_size=10,
                        workers=1,
                        use_multiprocessing=False,
                        verbose=0):
    """Generates predictions for the input samples from a data generator.

    The generator should return the same kind of data as accepted by
    `predict_on_batch`.

    Arguments:
        generator: Generator yielding batches of input samples
            or an instance of `keras.utils.Sequence` object in order to
            avoid duplicate data when using multiprocessing.
        steps: Total number of steps (batches of samples)
            to yield from `generator` before stopping.
            Optional for `Sequence`: if unspecified, will use
            the `len(generator)` as a number of steps.
        callbacks: List of `keras.callbacks.Callback` instances.
            List of callbacks to apply during prediction.
            See [callbacks](/api_docs/python/tf/keras/callbacks).
        max_queue_size: Maximum size for the generator queue.
        workers: Integer. Maximum number of processes to spin up
            when using process-based threading.
            If unspecified, `workers` will default to 1. If 0, will
            execute the generator on the main thread.
        use_multiprocessing: Boolean.
            If `True`, use process-based threading.
            If unspecified, `use_multiprocessing` will default to `False`.
            Note that because this implementation relies on multiprocessing,
            you should not pass non-picklable arguments to the generator
            as they can't be passed easily to children processes.
        verbose: verbosity mode, 0 or 1.

    Returns:
        Numpy array(s) of predictions.

    Raises:
        ValueError: In case the generator yields data in an invalid format.
    """
    if self._distribution_strategy:
      raise NotImplementedError('`predict_generator` is not supported for '
                                'models compiled with tf.distribute.Strategy.')
    _keras_api_gauge.get_cell('predict').set(True)
    return training_generator.predict_generator(
        self,
        generator,
        steps=steps,
        max_queue_size=max_queue_size,
        workers=workers,
        use_multiprocessing=use_multiprocessing,
        verbose=verbose,
        callbacks=callbacks)

  def _validate_compile_param_for_distribution_strategy(
      self, run_eagerly, sample_weight_mode, target_tensors, weighted_metrics):
    # Validate that arguments passed by the user to `compile` are supported by
    # tf.distribute.Strategy.
    if self._distribution_strategy:
      if sample_weight_mode:
        raise NotImplementedError('sample_weight_mode is not supported with '
                                  'tf.distribute.Strategy.')
      if weighted_metrics:
        raise NotImplementedError('weighted_metrics is not supported with '
                                  'tf.distribute.Strategy.')
      if target_tensors:
        raise ValueError('target_tensors is not supported with '
                         'tf.distribute.Strategy.')

      if run_eagerly:
        raise ValueError(
            'We currently do not support enabling `run_eagerly` with '
            'distribution strategy.')

      if (distributed_training_utils.is_distributing_by_cloning(self) and
          (not self.built or not self.inputs or not self.outputs)):
        raise ValueError(
            'We currently do not support distribution strategy with a '
            '`Sequential` model that is created without `input_shape`/'
            '`input_dim` set in its first layer or a subclassed model.')

  def _process_target_tensor_for_compile(self, target_tensors):
    if self.run_eagerly:
      # target tensor is not supported with run_eagerly. Create a list with None
      # as placeholder for each output.
      return [None for _ in self.output_names]

    if target_tensors not in (None, []):
      if isinstance(target_tensors, list):
        if len(target_tensors) != len(self.outputs):
          raise ValueError(
              'When passing a list as `target_tensors`, '
              'it should have one entry per model output. '
              'The model has %s outputs, but you passed target_tensors=%s' %
              (len(self.outputs), target_tensors))
      elif isinstance(target_tensors, dict):
        unexpected_target_tensor_names = set(target_tensors.keys()).difference(
            self.output_names)
        if unexpected_target_tensor_names:
          raise ValueError(
              'Unknown entry in `target_tensors` dictionary: "{name}". '
              'Only expected the following keys: {keys}'.format(
                  name=unexpected_target_tensor_names,
                  keys=str(self.output_names)))
        tmp_target_tensors = []
        for name in self.output_names:
          tmp_target_tensors.append(target_tensors.get(name, None))
        target_tensors = tmp_target_tensors
      elif tensor_util.is_tensor(target_tensors):
        target_tensors = [target_tensors]
      else:
        raise TypeError('Expected `target_tensors` to be a list or tuple or '
                        'dict or a single tensor, but got:', target_tensors)
    else:
      # In case target tensor is empty or None, create a list with Nones
      # that has same length as self.output_names. With that, the None check of
      # target tensor can be skipped downstream.
      target_tensors = [None for _ in self.output_names]
    return target_tensors

  def _compile_eagerly(self, metrics, weighted_metrics, sample_weight_mode):
    if isinstance(self.optimizer, loss_scale_optimizer.LossScaleOptimizer):
      # TODO(reedwm): Support this.
      raise ValueError('We currently do not support enabling `run_eagerly` '
                       'with a LossScaleOptimizer.')

    # Prepare sample weight modes. List with the same length as model outputs.
    training_utils.prepare_sample_weight_modes(
        self._training_endpoints, sample_weight_mode)
    # Prepare sample weights.
    self._prepare_sample_weights()
    # Save all metric attributes per output of the model.
    self._cache_output_metric_attributes(metrics, weighted_metrics)
    self.total_loss = None
    # Set metric attributes on model.
    self._set_metric_attributes()

    self._collected_trainable_weights = self.trainable_weights

  def _update_sample_weight_modes(self, sample_weights=None):
    """Updates sample weight modes based on training/eval inputs.

    If model contains `_sample_weight_modes` we check if the input
    `sample_weights` corresponds to the sample weight modes.
      1. If sample weight mode for output i is 'temporal', we do not
        change it as the `temporal` mode has been set by the user.
      2. Set sample weight mode to be 'samplewise' for output i if sample
        weight mode was not set before and sample weight inputs are given.
      3. Reset sample weight mode to None for output i if sample weight mode
        was set to 'samplewise' but there is no sample weight input.

    Args:
      sample_weights: List of sample weights of the same length as model outputs
        or None.
    """
    if not self._is_compiled:
      return
    if not sample_weights:
      sample_weights = [None] * len(self._training_endpoints)
    for endpoint, sample_weight in zip(self._training_endpoints,
                                       sample_weights):
      if endpoint.sample_weight_mode == 'temporal':
        # If sample weight mode for endpoint is 'temporal', do nothing.
        continue
      if endpoint.sample_weight_mode is None and sample_weight is not None:
        # Set sample weight mode to be 'samplewise' for output i if sample
        # weight mode was not set before and sample weight inputs are given.
        endpoint.sample_weight_mode = 'samplewise'
      elif (endpoint.sample_weight_mode == 'samplewise' and
            sample_weight is None):
        # Reset sample weight mode to None for output i if sample weight mode
        # was set to 'samplewise' but there is no sample weight input.
        endpoint.sample_weight_mode = None

  def _recompile_weights_loss_and_weighted_metrics(self):
    if not self._is_compiled:
      return False
    recompile = any([e.sample_weights_mismatch()
                     for e in self._training_endpoints])

    if recompile:
      self._compile_weights_loss_and_weighted_metrics()
    return recompile

  @trackable.no_automatic_dependency_tracking
  def _compile_weights_loss_and_weighted_metrics(self):
    """Compiles the model loss and weighted metric sub-graphs."""

    with K.get_graph().as_default():
      self._prepare_sample_weights()

      masks = self._prepare_output_masks()

      # Compute weighted metrics.
      self._handle_metrics(
          self.outputs,
          targets=self._targets,
          skip_target_masks=self._prepare_skip_target_masks(),
          sample_weights=self.sample_weights,
          masks=masks,
          return_weighted_metrics=True)

      # Compute total loss.
      # Used to keep track of the total loss value (stateless).
      # eg., total_loss = loss_weight_1 * output_1_loss_fn(...) +
      #                   loss_weight_2 * output_2_loss_fn(...) +
      #                   layer losses.
      self.total_loss = self._prepare_total_loss(masks)

  def _prepare_skip_target_masks(self):
    """Boolean mask for whether the target in the output list should be skipped.

    If the loss function corresponding to a model output is None, then this
    output will be skipped during total loss calculation and feed targets
    preparation.

    Returns:
      A boolean list for whether the corresponding target in the output list
      should be skipped during loss calculation.
    """
    return [l is None for l in self.loss_functions]

  def _prepare_output_masks(self):
    """Returns masks corresponding to model outputs."""
    return [getattr(x, '_keras_mask', None) for x in self.outputs]

  def _prepare_total_loss(self, masks):
    """Computes total loss from loss functions.

    Arguments:
        masks: List of mask values corresponding to each model output.

    Returns:
        A list of loss weights of python floats.

    Raises:
        TypeError: If model run_eagerly is True.
    """
    if self.run_eagerly:
      raise TypeError('total loss can not be computed when compiled with '
                      'run_eagerly = True.')
    total_loss = None
    with K.name_scope('loss'):
      for endpoint, mask in zip(self._training_endpoints, masks):
        if endpoint.should_skip_target():
          continue
        y_true = endpoint.training_target.target
        y_pred = endpoint.output
        loss_fn = endpoint.loss_fn
        loss_weight = endpoint.loss_weight
        loss_name = endpoint.loss_name()
        sample_weight = endpoint.sample_weight

        with K.name_scope(loss_name):
          if mask is not None:
            mask = math_ops.cast(mask, y_pred.dtype)
            # Update weights with mask.
            if sample_weight is None:
              sample_weight = mask
            else:
              # Update dimensions of weights to match with mask if possible.
              mask, _, sample_weight = (
                  losses_utils.squeeze_or_expand_dimensions(
                      mask, None, sample_weight))
              sample_weight *= mask

          if hasattr(loss_fn, 'reduction'):
            per_sample_losses = loss_fn.call(y_true, y_pred)
            weighted_losses = losses_utils.compute_weighted_loss(
                per_sample_losses,
                sample_weight=sample_weight,
                reduction=losses_utils.ReductionV2.NONE)
            loss_reduction = loss_fn.reduction

            # `AUTO` loss reduction defaults to `SUM_OVER_BATCH_SIZE` for all
            # compile use cases.
            if loss_reduction == losses_utils.ReductionV2.AUTO:
              loss_reduction = losses_utils.ReductionV2.SUM_OVER_BATCH_SIZE

            # Compute the stateless loss value.
            output_loss = losses_utils.reduce_weighted_loss(
                weighted_losses, reduction=loss_reduction)
          else:
            # Compute the stateless loss value for a custom loss class.
            # Here we assume that the class takes care of loss reduction
            # because if this class returns a vector value we cannot
            # differentiate between use case where a custom optimizer
            # expects a vector loss value vs unreduced per-sample loss value.
            output_loss = loss_fn(y_true, y_pred, sample_weight=sample_weight)

        if len(self.outputs) > 1:
          # Keep track of stateful result tensor for the loss.
          # TODO(b/120571621): Directly call metric when the bug is fixed.
          aggregated_output_loss = (
              distributed_training_utils.call_replica_local_fn(
                  endpoint.output_loss_metric,
                  output_loss,
                  strategy=self._distribution_strategy))
          self._compile_metrics_tensors[loss_name] = aggregated_output_loss

        # Scale output loss for distribution. For custom losses we assume
        # reduction was mean.
        if (getattr(loss_fn, 'reduction',
                    losses_utils.ReductionV2.SUM_OVER_BATCH_SIZE) ==
            losses_utils.ReductionV2.SUM_OVER_BATCH_SIZE):
          output_loss = losses_utils.scale_loss_for_distribution(output_loss)

        if total_loss is None:
          total_loss = loss_weight * output_loss
        else:
          total_loss += loss_weight * output_loss
      if total_loss is None:
        if not self.losses:
          raise ValueError('The model cannot be compiled '
                           'because it has no loss to optimize.')
        else:
          total_loss = 0.

      # Add regularization penalties and other layer-specific losses.
      custom_losses = self.get_losses_for(None) + self.get_losses_for(
          self.inputs)
      if custom_losses:
        total_loss += losses_utils.scale_loss_for_distribution(
            math_ops.add_n(custom_losses))
    return total_loss

  def _get_callback_model(self):
    """Returns the Callback Model for this Model."""

    if hasattr(self, '_replicated_model') and self._replicated_model:
      # When using training_distributed, we set the callback model
      # to an instance of the `DistributedModel` that we create in
      # the `compile` call. The `DistributedModel` is initialized
      # with the first replicated model. We need to set the callback
      # model to a DistributedModel to allow us to override saving
      # and loading weights when we checkpoint the model during training.
      return self._replicated_model
    if hasattr(self, 'callback_model') and self.callback_model:
      return self.callback_model
    return self

  def _make_callback_model(self, grouped_model):
    first_replicated_model = self._distribution_strategy.unwrap(
        grouped_model)[0]
    # We initialize the callback model with the first replicated model.
    self._replicated_model = DistributedCallbackModel(first_replicated_model)
    self._replicated_model.set_original_model(self)

  def _validate_or_infer_batch_size(self, batch_size, steps, x):
    """Validates that the `batch_size` provided is consistent with InputLayer.

    It's possible that the user specified a static batch size in their
    InputLayer. If so, this method checks the provided `batch_size` and `x`
    arguments are consistent with this static batch size. Also, if
    `batch_size` is `None`, this method will attempt to infer the batch size
    from the static batch size of the InputLayer. Lastly, ValueError will be
    raised if `x` is a tf.data.Dataset and `batch_size` is specified as we
    expect users to provide batched datasets.

    Arguments:
      batch_size: The batch_size provided as an argument to
        fit/evaluate/predict.
      steps: The steps provided as an argument to fit/evaluate/predict.
      x: The data passed as `x` to fit/evaluate/predict.

    Returns:
      The validated batch_size, auto-inferred from the first layer if not
      provided.
    """
    if batch_size is not None and isinstance(x, dataset_ops.DatasetV2):
      raise ValueError('The `batch_size` argument must not be specified when'
                       ' using dataset as an input.')

    layers = super(Model, self).layers  # Avoids the override in Sequential.
    if layers:
      first_layer = layers[0]
      static_batch_size = training_utils.get_static_batch_size(first_layer)
      if static_batch_size is not None:
        split_batch_size = self._distribution_strategy and \
            distributed_training_utils.global_batch_size_supported(
                self._distribution_strategy)
        if split_batch_size:
          num_replicas = self._distribution_strategy.num_replicas_in_sync

        # Check `batch_size` argument is consistent with InputLayer.
        if batch_size is not None:
          if split_batch_size:
            if batch_size % num_replicas != 0:
              raise ValueError('The `batch_size` argument value {} cannot be '
                               'divisible by number of replicas {}'.format(
                                   batch_size, num_replicas))
            per_replica_batch_size = batch_size // num_replicas
          else:
            per_replica_batch_size = batch_size

          if per_replica_batch_size != static_batch_size:
            raise ValueError('The `batch_size` argument value {} is '
                             'incompatible with the specified batch size of '
                             'your Input Layer: {}'.format(
                                 per_replica_batch_size, static_batch_size))

        # Check Dataset/Iterator batch size is consistent with InputLayer.
        if isinstance(x, (dataset_ops.DatasetV2, iterator_ops.Iterator,
                          iterator_ops.IteratorV2)):
          ds_batch_size = tensor_shape.as_dimension(
              nest.flatten(dataset_ops.get_legacy_output_shapes(x))[0][0]).value
          if ds_batch_size is not None:
            if split_batch_size:
              if ds_batch_size % num_replicas != 0:
                raise ValueError(
                    'The batch output shape of your `Dataset` {} '
                    'cannot be divisible by number of replicas {}'.format(
                        ds_batch_size, num_replicas))
              ds_batch_size = ds_batch_size // num_replicas

            if ds_batch_size != static_batch_size:
              raise ValueError('The batch output shape of your `Dataset` is '
                               '{}, which is incompatible with the specified '
                               'batch size of your Input Layer: {}'.format(
                                   ds_batch_size, static_batch_size))

        # Set inferred batch size from the InputLayer.
        if steps is None:
          batch_size = static_batch_size

    if batch_size is None and steps is None:
      # Backwards compatibility
      batch_size = 32
    return batch_size

  def _list_functions_for_serialization(self):
    """If available, saves a trace of call using self.inputs."""
    all_functions = super(Model, self)._list_functions_for_serialization()
    try:
      # pylint:disable=pointless-statement
      self.inputs
      self.input_names
      # pylint:enable=pointless-statement
    except AttributeError:
      # If the model does not have inputs set, because it was not called or its
      # input shapes were not recorded, we won't have a signature so can't trace
      # a function. But the user may still save an object with this Model
      # attached; we won't fail the whole tf.saved_model.save.
      pass
    else:
      if '_default_save_signature' not in all_functions:
        all_functions['_default_save_signature'] = (
            saving_utils.trace_model_call(self))
    return all_functions

  def _prepare_sample_weights(self):
    """Sets sample weight attribute on the model."""
    # List with the same length as model outputs.
    for endpoint in self._training_endpoints:
      endpoint.populate_sample_weight()

  def _cache_output_metric_attributes(self, metrics, weighted_metrics):
    """Caches metric name and function attributes for every model output."""
    output_shapes = []
    for output in self.outputs:
      if output is None or output.shape.rank is None:
        output_shapes.append(None)
      else:
        output_shapes.append(output.shape.as_list())
    self._per_output_metrics = training_utils.collect_per_output_metric_info(
        metrics, self.output_names, output_shapes, self.loss_functions)
    self._per_output_weighted_metrics = (
        training_utils.collect_per_output_metric_info(
            weighted_metrics,
            self.output_names,
            output_shapes,
            self.loss_functions,
            is_weighted=True))

  def _add_unique_metric_name(self, metric_name, output_index):
    """Makes the metric name unique and adds it to the model's metric name list.

      If there are multiple outputs for which the metrics are calculated, the
      metric names have to be made unique by appending an integer.

    Arguments:
      metric_name: Metric name that corresponds to the metric specified by the
          user. For example: 'acc'.
      output_index: The index of the model output for which the metric name is
        being added.

    Returns:
      string, name of the model's unique metric name
    """
    if len(self.output_names) > 1:
      metric_name = '%s_%s' % (self.output_names[output_index], metric_name)
    j = 1
    base_metric_name = metric_name
    while metric_name in self._compile_metrics_names:
      metric_name = '%s_%d' % (base_metric_name, j)
      j += 1

    return metric_name

  @property
  def _all_metrics_tensors(self):
    """Returns a dictionary that maps metric names to metric result tensors.

    This maps metric names from `model.metric_names` to result tensors.
    Just like model.metric_names, this includes loss names and tensors.
    """
    metrics_tensors = {}
    if self._is_compiled:
      metrics_tensors.update(self._compile_metrics_tensors)
    metrics_tensors.update(super(Model, self)._all_metrics_tensors)
    return metrics_tensors

  def _init_metric_attributes(self):
    """Initialized model metric attributes."""
    # List of all metric names in the model. This includes loss metrics.
    self._compile_metrics_names = ['loss']
    # List of stateful metric functions. Used for resetting metric state during
    # training/eval. This includes loss metric functions.
    self._compile_metric_functions = []
    # Dict of all aggregated metric result tensors. This includes aggregated
    # loss result tensors.
    self._compile_metrics_tensors = {}

  def _set_per_output_metric_attributes(self, metrics_dict, output_index):
    """Sets the metric attributes on the model for the given output.

    Arguments:
      metrics_dict: A dict with metric names as keys and metric fns as values.
      output_index: The index of the model output for which the metric
        attributes are added.

    Returns:
      Metrics dict updated with unique metric names as keys.
    """
    updated_metrics_dict = collections.OrderedDict()
    for metric_name, metric_fn in metrics_dict.items():
      metric_name = self._add_unique_metric_name(metric_name, output_index)

      # Update the name on the metric class to be the unique generated name.
      metric_fn._name = metric_name  # pylint: disable=protected-access
      updated_metrics_dict[metric_name] = metric_fn
      # Keep track of metric name and function.
      self._compile_metrics_names.append(metric_name)
      self._compile_metric_functions.append(metric_fn)
    return updated_metrics_dict

  def _set_metric_attributes(self):
    """Sets the metric attributes on the model for all the model outputs."""
    # Add loss metric names to the model metric names list.
    if len(self._training_endpoints) > 1:
      metric_names = [
          e.loss_name() for e in self._training_endpoints
          if not e.should_skip_target()
      ]
      self._compile_metrics_names.extend(metric_names)

    updated_per_output_metrics = []
    updated_per_output_weighted_metrics = []
    for i, endpoint in enumerate(self._training_endpoints):
      if endpoint.should_skip_target():
        updated_per_output_metrics.append(self._per_output_metrics[i])
        updated_per_output_weighted_metrics.append(
            self._per_output_weighted_metrics[i])
        continue
      updated_per_output_metrics.append(
          self._set_per_output_metric_attributes(self._per_output_metrics[i],
                                                 i))
      updated_per_output_weighted_metrics.append(
          self._set_per_output_metric_attributes(
              self._per_output_weighted_metrics[i], i))

    # Create a metric wrapper for each output loss. This computes mean of an
    # output loss across mini-batches (irrespective of how we reduce within a
    # batch).
    if len(self._training_endpoints) > 1:
      for endpoint in self._training_endpoints:
        endpoint.output_loss_metric = metrics_module.Mean()

    self._per_output_metrics = updated_per_output_metrics
    self._per_output_weighted_metrics = updated_per_output_weighted_metrics

  def _call_metric_fn(self, metric_fn, y_true, y_pred, weights, mask=None):
    # TODO(b/120571621): Remove this function when the bug is fixed.
    """Helper function to call metric function with distribution strategy."""
    return distributed_training_utils.call_replica_local_fn(
        training_utils.call_metric_function,
        metric_fn,
        y_true,
        y_pred,
        weights=weights,
        mask=mask,
        strategy=self._distribution_strategy)

  def _handle_per_output_metrics(self,
                                 metrics_dict,
                                 y_true,
                                 y_pred,
                                 mask,
                                 weights=None):
    """Calls metric functions for a single output.

    Arguments:
      metrics_dict: A dict with metric names as keys and metric fns as values.
      y_true: Target output.
      y_pred: Predicted output.
      mask: Computed mask value for the current output.
      weights: Weights to be applied on the current output.

    Returns:
      A list of metric result tensors.
    """
    metric_results = []
    for metric_name, metric_fn in metrics_dict.items():
      with K.name_scope(metric_name):
        metric_result = self._call_metric_fn(metric_fn, y_true, y_pred, weights,
                                             mask)
        metric_results.append(metric_result)
        if not self.run_eagerly:
          self._compile_metrics_tensors[metric_name] = metric_result

    return metric_results

  def _handle_metrics(self,
                      outputs,
                      targets=None,
                      skip_target_masks=None,
                      sample_weights=None,
                      masks=None,
                      return_weighted_metrics=False,
                      return_weighted_and_unweighted_metrics=False):
    """Handles calling metric functions.

    Arguments:
      outputs: List of outputs (predictions).
      targets: List of targets.
      skip_target_masks: Optional. List of boolean for whether the corresponding
        target should be ignored or not.
      sample_weights: Optional list of sample weight arrays.
      masks: List of computed output mask values.
      return_weighted_metrics: Flag that indicates whether weighted metrics
        should be computed instead of unweighted metrics. This flag is ignored
        when `return_weighted_and_unweighted_metrics` is enabled.
      return_weighted_and_unweighted_metrics: Flag that is used to indicate
        whether both weighted and unweighted metrics should be computed. When
        this is not enabled, we use `return_weighted_metrics` param to indicate
        whether weighted or unweighted metrics should be returned.

    Returns:
      A list of metric result tensors.
    """
    # TODO(scottzhu): Update this to use the new training_endpoints. Currently
    # the eager and graph logic is bit different.
    skip_target_masks = skip_target_masks or [False] * len(outputs)
    metric_results = []
    with K.name_scope('metrics'):
      # Invoke all metrics added using `compile`.
      for i in range(len(outputs)):
        if skip_target_masks[i]:
          continue
        output = outputs[i] if outputs else None
        target = targets[i] if targets else None
        output_mask = masks[i] if masks else None

        if (return_weighted_and_unweighted_metrics or
            not return_weighted_metrics):
          metric_results.extend(
              self._handle_per_output_metrics(self._per_output_metrics[i],
                                              target, output, output_mask))
        if return_weighted_and_unweighted_metrics or return_weighted_metrics:
          metric_results.extend(
              self._handle_per_output_metrics(
                  self._per_output_weighted_metrics[i],
                  target,
                  output,
                  output_mask,
                  weights=sample_weights[i] if sample_weights else None))
    return metric_results

  def _check_trainable_weights_consistency(self):
    """Check trainable weights count consistency.

    This will raise a warning if `trainable_weights` and
    `_collected_trainable_weights` are inconsistent (i.e. have different
    number of parameters).
    Inconsistency will typically arise when one modifies `model.trainable`
    without calling `model.compile` again.
    """
    if not hasattr(self, '_collected_trainable_weights'):
      return

    if len(self.trainable_weights) != len(self._collected_trainable_weights):
      logging.log_first_n(
          logging.WARN, 'Discrepancy between trainable weights and collected'
          ' trainable weights, did you set `model.trainable`'
          ' without calling `model.compile` after ?', 1)

  def _make_train_function(self):
    has_recompiled = self._recompile_weights_loss_and_weighted_metrics()
    metrics_tensors = [
        self._all_metrics_tensors[m] for m in self.metrics_names[1:]
    ]
    self._check_trainable_weights_consistency()
    # If we have re-compiled the loss/weighted metric sub-graphs then create
    # train function even if one exists already. This is because
    # `_feed_sample_weights` list has been updated on re-copmpile.
    if getattr(self, 'train_function') is None or has_recompiled:
      inputs = (self._feed_inputs +
                self._feed_targets +
                self._feed_sample_weights)
      if not isinstance(K.symbolic_learning_phase(), int):
        inputs += [K.symbolic_learning_phase()]

      with K.get_graph().as_default():
        with K.name_scope('training'):
          # Training updates
          updates = self.optimizer.get_updates(
              params=self._collected_trainable_weights, loss=self.total_loss)
      # Unconditional updates
      updates += self.get_updates_for(None)
      # Conditional updates relevant to this model
      updates += self.get_updates_for(self.inputs)

      with K.name_scope('training'):
        # Gets loss and metrics. Updates weights at each call.
        fn = K.function(
            inputs, [self.total_loss] + metrics_tensors,
            updates=updates,
            name='train_function',
            **self._function_kwargs)
        setattr(self, 'train_function', fn)

  def _make_test_function(self):
    has_recompiled = self._recompile_weights_loss_and_weighted_metrics()
    metrics_tensors = [
        self._all_metrics_tensors[m] for m in self.metrics_names[1:]
    ]
    # If we have re-compiled the loss/weighted metric sub-graphs then create
    # test function even if one exists already. This is because
    # `_feed_sample_weights` list has been updated on re-copmpile.
    if getattr(self, 'test_function') is None or has_recompiled:
      inputs = (self._feed_inputs +
                self._feed_targets +
                self._feed_sample_weights)

      with K.name_scope('evaluation'):
        updates = self.state_updates
        # Return loss and metrics, no gradient updates.
        # Does update the network states.
        fn = K.function(
            inputs, [self.total_loss] + metrics_tensors,
            updates=updates,
            name='test_function',
            **self._function_kwargs)
        setattr(self, 'test_function', fn)

  def _make_predict_function(self):
    if not hasattr(self, 'predict_function'):
      self.predict_function = None
    if self.predict_function is None:
      inputs = self._feed_inputs
      # Gets network outputs. Does not update weights.
      # Does update the network states.
      kwargs = getattr(self, '_function_kwargs', {})
      with K.name_scope(ModeKeys.PREDICT):
        self.predict_function = K.function(
            inputs,
            self.outputs,
            updates=self.state_updates,
            name='predict_function',
            **kwargs)

  def _make_execution_function(self, mode):
    if mode == ModeKeys.TRAIN:
      self._make_train_function()
      return self.train_function
    if mode == ModeKeys.TEST:
      self._make_test_function()
      return self.test_function
    if mode == ModeKeys.PREDICT:
      self._make_predict_function()
      return self.predict_function

  def _distribution_standardize_user_data(self,
                                          x,
                                          y=None,
                                          sample_weight=None,
                                          class_weight=None,
                                          batch_size=None,
                                          validation_split=0,
                                          shuffle=False,
                                          epochs=1,
                                          allow_partial_batch=False):
    """Runs validation checks on input and target data passed by the user.

    This is called when using tf.distribute.Strategy to train, evaluate or serve
    the model.

    Args:
      x: Input data. A numpy array or `tf.data` dataset.
      y: Target data. A numpy array or None if x is a `tf.data` dataset.
      sample_weight: An optional sample-weight array passed by the user to
        weight the importance of each sample in `x`.
      class_weight: An optional class-weight array by the user to
        weight the importance of samples in `x` based on the class they belong
        to, as conveyed by `y`.
      batch_size: Integer batch size. If provided, it is used to run additional
        validation checks on stateful models.
      validation_split: Float between 0 and 1.
        Fraction of the training data to be used as validation data.
      shuffle: Boolean whether to shuffle the training data before each epoch.
      epochs: Integer epochs. If > 1, repeat the numpy training data epochs
        times when converting to training dataset.
      allow_partial_batch: Boolean whether to enforce that all batches have the
        same size.

    Returns:
      Dataset instance.

    Raises:
      ValueError: In case of invalid user-provided data.
      RuntimeError: If the model was never compiled.
    """
    if class_weight:
      raise NotImplementedError('`class_weight` is currently not supported '
                                'when using tf.distribute.Strategy.')

    if (sample_weight is not None and sample_weight.all() and
        distributed_training_utils.is_tpu_strategy(
            self._distribution_strategy)):
      raise NotImplementedError('`sample_weight` is currently not supported '
                                'when using TPUStrategy.')

    if (self.stateful and distributed_training_utils.is_tpu_strategy(
        self._distribution_strategy) and self._distribution_strategy.
        num_replicas_in_sync != 1):
      raise ValueError('Single core must be used for computation on '
                       'stateful models. Consider adding `device_assignment` '
                       'parameter to TPUStrategy using\n'
                       'topology = tf.contrib.distribute.'
                       'initialize_tpu_system()\n'
                       'device_assignment = tf.contrib.tpu.DeviceAssignment('
                       'topology, core_assignment=tf.contrib.tpu.'
                       'SINGLE_CORE_ASSIGNMENT)\n'
                       'tpu_strategy = tf.contrib.distribute.TPUStrategy('
                       'device_assignment=device_assignment)')

    # Validates `steps` and `shuffle` arguments right at the beginning
    # since we use it to construct the dataset object.
    # TODO(anjalisridhar): Remove this check once we refactor the
    # _standardize_user_data code path. This check is already present elsewhere
    # in the codebase.
    if isinstance(x, dataset_ops.DatasetV2):
      if shuffle:
        training_utils.verify_dataset_shuffled(x)

    strategy = self._distribution_strategy
    with strategy.scope():
      # We should be sure to call get_session() inside the strategy.scope()
      # so the strategy can affect the session options.
      if ops.executing_eagerly_outside_functions():
        session = None
      else:
        session = K.get_session()

      first_x_value = nest.flatten(x)[0]
      if isinstance(first_x_value, np.ndarray):
        x = distributed_training_utils.list_to_tuple(x)
        if y is not None:
          y = distributed_training_utils.list_to_tuple(y)
          if sample_weight is not None:
            sample_weight = distributed_training_utils.list_to_tuple(
                sample_weight)
            in_tuple = (x, y, sample_weight)
          else:
            in_tuple = (x, y)
        else:
          in_tuple = x

        ds = strategy.extended.experimental_make_numpy_dataset(in_tuple,
                                                               session=session)
        if shuffle:
          # We want a buffer size that is larger than the batch size provided by
          # the user and provides sufficient randomness. Note that larger
          # numbers introduce more memory usage based on the size of each
          # sample.
          ds = ds.shuffle(max(1024, batch_size * 8))
        if epochs > 1:
          ds = ds.repeat(epochs)

        # We need to use the drop_remainder argument to get a known static
        # input shape which is required for TPUs.
        drop_remainder = (not allow_partial_batch and
                          strategy.extended.experimental_require_static_shapes)

        # TODO(b/131720208): We still drop remainder here if number of examples
        # is divisible by batch size, as sometimes dynamic padder will time out
        # with keras.metrics.CategoricalAccuracy() metric.
        if distributed_training_utils.is_tpu_strategy(
            strategy) and not drop_remainder:
          dataset_size = first_x_value.shape[0]
          if dataset_size % batch_size == 0:
            drop_remainder = True

        x = ds.batch(batch_size, drop_remainder=drop_remainder)
      else:
        assert isinstance(x, dataset_ops.DatasetV2)
        training_utils.validate_dataset_input(x, y, sample_weight,
                                              validation_split)
    return x

  def _standardize_user_data(self,
                             x,
                             y=None,
                             sample_weight=None,
                             class_weight=None,
                             batch_size=None,
                             check_steps=False,
                             steps_name='steps',
                             steps=None,
                             validation_split=0,
                             shuffle=False,
                             extract_tensors_from_dataset=False):
    """Runs validation checks on input and target data passed by the user.

    Also standardizes the data to lists of arrays, in order.

    Also builds and compiles the model on the fly if it is a subclassed model
    that has never been called before (and thus has no inputs/outputs).

    This is a purely internal method, subject to refactoring at any time.

    Args:
      x: Input data. It could be:
        - A Numpy array (or array-like), or a list of arrays
          (in case the model has multiple inputs).
        - A TensorFlow tensor, or a list of tensors
          (in case the model has multiple inputs).
        - A dict mapping input names to the corresponding array/tensors,
          if the model has named inputs.
        - A `tf.data` dataset or a dataset iterator.
      y: Target data. Like the input data `x`,
        it could be either Numpy array(s) or TensorFlow tensor(s).
        It should be consistent with `x` (you cannot have Numpy inputs and
        tensor targets, or inversely). If `x` is a dataset or a
        dataset iterator, `y` should not be specified
        (since targets will be obtained from the iterator).
      sample_weight: An optional sample-weight array passed by the user to
        weight the importance of each sample in `x`.
      class_weight: An optional class-weight array by the user to
        weight the importance of samples in `x` based on the class they belong
        to, as conveyed by `y`. If both `sample_weight` and `class_weight` are
        provided, the weights are multiplied.
      batch_size: Integer batch size. If provided, it is used to run additional
        validation checks on stateful models.
      check_steps: boolean, True if we want to check for validity of `steps` and
        False, otherwise. For example, when we are standardizing one batch of
        data for train_on_batch/predict_on_batch/test_on_batch APIs, `steps`
        value is not required and we should not check for its validity in these
        cases.
      steps_name: The public API's parameter name for `steps`.
      steps: Integer or `None`. Total number of steps (batches of samples) to
        execute.
      validation_split: Float between 0 and 1.
        Fraction of the training data to be used as validation data.
      shuffle: Boolean whether to shuffle the training data before each epoch.
      extract_tensors_from_dataset: Boolean. When `x` is a dataset instance,
        this indicates whether to extract actual tensors from the dataset or
        instead output the dataset instance itself.
        Set to True when calling from `train_on_batch`/etc.

    Returns:
      A tuple of 3: inputs (arrays or dicts, depending on whether `x` was a dict
      or not), target arrays, sample-weight arrays.
      If the model's input and targets are symbolic, these lists are empty
      (since the model takes no user-provided data, instead the data comes
      from the symbolic inputs/targets).

    Raises:
      ValueError: In case of invalid user-provided data.
      RuntimeError: If the model was never compiled.
    """
    if isinstance(x, (dataset_ops.DatasetV1, dataset_ops.DatasetV2)):
      # Graph mode dataset. We'll pass the dataset as-is (unless
      # `extract_tensors_from_dataset` is True, in which case we extract
      # the tensors from the dataset and we output them.
      training_utils.validate_dataset_input(x, y, sample_weight,
                                            validation_split)
      if shuffle:
        training_utils.verify_dataset_shuffled(x)

      is_dataset = True
      if extract_tensors_from_dataset:
        # We do this for `train_on_batch`/etc.
        x, y, sample_weight = training_utils.extract_tensors_from_dataset(x)
    elif isinstance(x, iterator_ops.Iterator):
      # Graph mode iterator. We extract the symbolic tensors.
      training_utils.validate_dataset_input(x, y, sample_weight,
                                            validation_split)
      iterator = x
      x, y, sample_weight = training_utils.unpack_iterator_input(iterator)
      is_dataset = True
    else:
      is_dataset = False

    # Validates `steps` argument based on x's type.
    if check_steps:
      training_utils.check_steps_argument(x, steps, steps_name)

    # First, we build/compile the model on the fly if necessary.
    all_inputs = []
    is_build_called = False
    is_compile_called = False
    # Whether this is a subclassed model that expects dictionary inputs
    # rather than list inputs (e.g. FeatureColumn-based models).
    dict_inputs = False
    if not self.inputs:
      # We need to use `x_input` to set the model inputs.

      # If input data is a dataset iterator in graph mode or if it is an eager
      # iterator and only one batch of samples is required, we fetch the data
      # tensors from the iterator and then standardize them.
      if isinstance(x, (dataset_ops.DatasetV1, dataset_ops.DatasetV2)):
        x_input, y_input, _ = training_utils.extract_tensors_from_dataset(x)
      else:
        x_input = x
        y_input = y
      # We type-check that `x_input` and `y_input` are either single arrays
      # or lists of arrays.
      if isinstance(x_input, (list, tuple)):
        if not all(isinstance(v, np.ndarray) or
                   tensor_util.is_tensor(v) for v in x_input):
          raise ValueError('Please provide as model inputs either a single '
                           'array or a list of arrays. You passed: x=' + str(x))
        all_inputs += list(x_input)
      elif isinstance(x_input, dict):
        dict_inputs = True
        keys = sorted(x_input.keys())
        all_inputs = [x_input[k] for k in keys]
      else:
        if (not isinstance(x_input, np.ndarray) and
            not tensor_util.is_tensor(x_input)):
          raise ValueError('Please provide as model inputs either a single '
                           'array or a list of arrays. You passed: x=' + str(x))
        all_inputs.append(x_input)

      # Build the model using the retrieved inputs (value or symbolic).
      # If values or generated from a dataset, then in symbolic-mode
      # placeholders will be created to match the value shapes.
      is_build_called = True
      if is_dataset:
        cast_inputs = nest.map_structure(lambda v: v.shape, x_input)
      elif training_utils.has_tensors(x_input):
        cast_inputs = training_utils.cast_if_floating_dtype(x_input)
      else:
        cast_inputs = x_input
      self._set_inputs(cast_inputs)
    else:
      y_input = y
      dict_inputs = isinstance(self.inputs, dict)

    if not self._is_compiled and self.optimizer:
      # On-the-fly compilation of the model.
      if y_input is not None:
        # We need to use `y` to set the model targets.
        if training_utils.has_tensors(y_input):
          y_input = training_utils.cast_if_floating_dtype(y_input)
        if isinstance(y_input, (list, tuple)):
          if not all(isinstance(v, np.ndarray) or
                     tensor_util.is_tensor(v) for v in y_input):
            raise ValueError('Please provide as model targets either a single '
                             'array or a list of arrays. '
                             'You passed: y=' + str(y))
          all_inputs += list(y_input)
        elif isinstance(y_input, dict):
          raise ValueError('You cannot pass a dictionary as model targets.')
        else:
          if (not isinstance(y_input, np.ndarray) and
              not tensor_util.is_tensor(y_input)):
            raise ValueError('Please provide as model targets either a single '
                             'array or a list of arrays. '
                             'You passed: y=' + str(y))
          all_inputs.append(y_input)

      # Typecheck that all inputs are *either* value *or* symbolic.
      # TODO(fchollet): this check could be removed in Eager mode?
      if any(tensor_util.is_tensor(v) for v in all_inputs):
        if not all(tensor_util.is_tensor(v) for v in all_inputs):
          raise ValueError('Do not pass inputs that mix Numpy arrays and '
                           'TensorFlow tensors. '
                           'You passed: x=' + str(x) + '; y=' + str(y))

      if is_dataset or context.executing_eagerly():
        target_tensors = None
      else:
        # Handle target tensors if any passed.
        if y_input is not None:
          if not isinstance(y_input, (list, tuple)):
            y_input = [y_input]
          target_tensors = [v for v in y_input if _is_symbolic_tensor(v)]
        else:
          target_tensors = None
      is_compile_called = True
      self.compile(
          optimizer=self.optimizer,
          loss=self.loss,
          metrics=self._compile_metrics,
          weighted_metrics=self._compile_weighted_metrics,
          loss_weights=self.loss_weights,
          target_tensors=target_tensors,
          run_eagerly=self.run_eagerly,
          cloning=self._cloning)

    # In graph mode, if we had just set inputs and targets as symbolic tensors
    # by invoking build and compile on the model respectively, we do not have to
    # feed anything to the model. Model already has input and target data as
    # part of the graph.
    # Note: in this case, `any` and `all` are equivalent since we disallow
    # mixed symbolic/value inputs.
    if (not self.run_eagerly and is_build_called and is_compile_called and
        not is_dataset  and any(_is_symbolic_tensor(v) for v in all_inputs)):
      return [], [], None

    # What follows is input validation and standardization to list format,
    # in the case where all inputs are value arrays.

    if self.run_eagerly:
      # In eager mode, do not do shape validation
      # since the network has no input nodes (placeholders) to be fed.
      feed_input_names = self.input_names
      feed_input_shapes = None
    elif not self._is_graph_network:
      # Case: symbolic-mode subclassed network. Do not do shape validation.
      feed_input_names = self._feed_input_names
      feed_input_shapes = None
    else:
      # Case: symbolic-mode graph network.
      # In this case, we run extensive shape validation checks.
      feed_input_names = self._feed_input_names
      feed_input_shapes = self._feed_input_shapes

    # Standardize the inputs.
    if not isinstance(x, (dataset_ops.DatasetV1, dataset_ops.DatasetV2)):
      # TODO(fchollet): run static checks with dataset output shape(s).
      x = training_utils.standardize_input_data(
          x,
          feed_input_names,
          feed_input_shapes,
          check_batch_axis=False,  # Don't enforce the batch size.
          exception_prefix='input')

    if y is not None:
      if not self._is_graph_network:
        feed_output_names = self._feed_output_names
        feed_output_shapes = None
        # Sample weighting not supported in this case.
        # TODO(fchollet): consider supporting it.
        feed_sample_weight_modes = [None for _ in self.outputs]
      else:
        feed_output_names = self._feed_output_names
        feed_output_shapes = self._feed_output_shapes
        feed_sample_weight_modes = self._sample_weight_modes

      # Standardize the outputs.
      y = training_utils.standardize_input_data(
          y,
          feed_output_names,
          # Don't enforce target shapes to match output shapes.
          # Precise checks will be run in `check_loss_and_target_compatibility`.
          shapes=None,
          check_batch_axis=False,  # Don't enforce the batch size.
          exception_prefix='target')

      # Generate sample-wise weight values given the `sample_weight` and
      # `class_weight` arguments.
      sample_weights = training_utils.standardize_sample_weights(
          sample_weight, feed_output_names)
      class_weights = training_utils.standardize_class_weights(
          class_weight, feed_output_names)
      sample_weights = [
          training_utils.standardize_weights(ref, sw, cw, mode)
          for (ref, sw, cw, mode) in zip(y, sample_weights, class_weights,
                                         feed_sample_weight_modes)
      ]
      # Check that all arrays have the same length.
      if not self._distribution_strategy:
        training_utils.check_array_lengths(x, y, sample_weights)
        if self._is_graph_network and not self.run_eagerly:
          # Additional checks to avoid users mistakenly using improper loss fns.
          training_utils.check_loss_and_target_compatibility(
              y, self._feed_loss_fns, feed_output_shapes)

      # If sample weight mode has not been set and weights are None for all the
      # model outputs, return None (we do not create placeholders for
      # sample weights) so we do not want to feed any value.
      is_sample_weight_mode_set = any(
          s is not None for s in feed_sample_weight_modes)
      if (not is_sample_weight_mode_set and
          all(s is None for s in sample_weights)):
        sample_weights = None  # If the list contains only None, return None
    else:
      y = []
      sample_weights = None

    if self.stateful and batch_size:
      # Check that for stateful networks, number of samples is a multiple
      # of the static batch size.
      if x[0].shape[0] % batch_size != 0:
        raise ValueError('In a stateful network, '
                         'you should only pass inputs with '
                         'a number of samples that can be '
                         'divided by the batch size. Found: ' +
                         str(x[0].shape[0]) + ' samples')

    # If dictionary inputs were provided, we return a dictionary as well.
    if dict_inputs and not isinstance(x, (dataset_ops.DatasetV1,
                                          dataset_ops.DatasetV2)):
      x = dict(zip(feed_input_names, x))
    return x, y, sample_weights

  def _unpack_validation_data(self, validation_data):
    if (isinstance(validation_data, (iterator_ops.Iterator,
                                     iterator_ops.IteratorV2,
                                     dataset_ops.DatasetV2))):
      val_x = validation_data
      val_y = None
      val_sample_weight = None
    elif len(validation_data) == 2:
      val_x, val_y = validation_data  # pylint: disable=unpacking-non-sequence
      val_sample_weight = None
    elif len(validation_data) == 3:
      val_x, val_y, val_sample_weight = validation_data  # pylint: disable=unpacking-non-sequence
    else:
      raise ValueError(
          'When passing a `validation_data` argument, '
          'it must contain either 2 items (x_val, y_val), '
          'or 3 items (x_val, y_val, val_sample_weights), '
          'or alternatively it could be a dataset or a '
          'dataset or a dataset iterator. '
          'However we received `validation_data=%s`' % validation_data)
    return val_x, val_y, val_sample_weight

  # TODO(omalleyt): Consider changing to a more descriptive function name.
  def _set_inputs(self, inputs, outputs=None, training=None):
    """Set model's input and output specs based on the input data received.

    This is to be used for Model subclasses, which do not know at instantiation
    time what their inputs look like.

    Args:
      inputs: Single array, or list of arrays. The arrays could be placeholders,
        Numpy arrays, data tensors, or TensorShapes.
        - if placeholders: the model is built on top of these placeholders,
          and we expect Numpy data to be fed for them when calling `fit`/etc.
        - if Numpy data or TensorShapes: we create placeholders matching the
          TensorShapes or shapes of the Numpy arrays. We expect Numpy data to be
          fed for these placeholders when calling `fit`/etc.
        - if data tensors: the model is built on top of these tensors.
          We do not expect any Numpy data to be provided when calling `fit`/etc.
      outputs: None, a data tensor, or a list of tensors. If None, the
        outputs will be determined by invoking `self.call()`, otherwise the
        provided value will be used.
      training: Boolean or None. Only relevant in symbolic mode. Specifies
        whether to build the model's graph in inference mode (False), training
        mode (True), or using the Keras learning phase (None).
    Raises:
      ValueError: If dict inputs are passed to a Sequential Model where the
        first layer isn't FeatureLayer.
    """
    inputs = self._set_input_attrs(inputs)

    if outputs is None:
      kwargs = {'training': training} if self._expects_training_arg else {}
      try:
        outputs = self(inputs, **kwargs)
      except NotImplementedError:
        # This Model or a submodel is dynamic and hasn't overridden
        # `compute_output_shape`.
        outputs = None

    self._set_output_attrs(outputs)

  @trackable.no_automatic_dependency_tracking
  def _set_input_attrs(self, inputs):
    """Sets attributes related to the inputs of the Model."""
    if self.inputs:
      raise ValueError('Model inputs are already set.')

    if self.__class__.__name__ == 'Sequential' and not self.built:
      if tensor_util.is_tensor(inputs):
        input_shape = (None,) + tuple(inputs.shape.as_list()[1:])
      elif isinstance(inputs, tensor_shape.TensorShape):
        input_shape = (None,) + tuple(inputs.as_list()[1:])
      elif isinstance(inputs, dict):
        # We assert that the first layer is a FeatureLayer.
        if not training_utils.is_feature_layer(self.layers[0]):
          raise ValueError('Passing a dictionary input to a Sequential Model '
                           'which doesn\'t have FeatureLayer as the first layer'
                           ' is an error.')
        input_shape = (None,)
      else:
        input_shape = (None,) + tuple(inputs.shape[1:])
      self._build_input_shape = input_shape

    # On-the-fly setting of symbolic model inputs (either by using the tensor
    # provided, or by creating a placeholder if Numpy data was provided).
    model_inputs = training_utils.ModelInputs(inputs)
    inputs = model_inputs.get_symbolic_inputs()
    self.inputs = model_inputs.get_symbolic_inputs(return_single_as_list=True)
    self.input_names = model_inputs.get_input_names()

    self._feed_inputs = []
    self._feed_input_names = []
    self._feed_input_shapes = []

    for k, v in model_inputs.as_dict():
      if K.is_placeholder(v):
        self._feed_input_names.append(k)
        self._feed_inputs.append(v)
        self._feed_input_shapes.append(K.int_shape(v))

    return inputs

  @trackable.no_automatic_dependency_tracking
  def _set_output_attrs(self, outputs):
    """Sets attributes related to the outputs of the Model."""
    outputs = nest.flatten(outputs)
    self.outputs = outputs
    self.output_names = training_utils.generic_output_names(outputs)
    # TODO(scottzhu): Should we cleanup the self._training_endpoints here?
    self.built = True

  @property
  def _targets(self):
    """The output target tensors for the model."""
    return [
        e.training_target.target
        for e in self._training_endpoints
        if e.has_training_target()
    ]

  @property
  def _feed_targets(self):
    return [
        e.training_target.target
        for e in self._training_endpoints
        if e.has_feedable_training_target()
    ]

  @property
  def _feed_output_names(self):
    return [
        e.output_name
        for e in self._training_endpoints
        if e.has_feedable_training_target()
    ]

  @property
  def _feed_output_shapes(self):
    return [
        e.feed_output_shape
        for e in self._training_endpoints
        if e.has_feedable_training_target()
    ]

  @property
  def _feed_loss_fns(self):
    return [
        e.loss_fn
        for e in self._training_endpoints
        if e.has_feedable_training_target()
    ]

  @property
  def _loss_weights_list(self):
    return [e.loss_weight for e in self._training_endpoints]

  @property
  def _output_loss_metrics(self):
    if hasattr(self, '_training_endpoints'):
      return [
          e.output_loss_metric
          for e in self._training_endpoints
          if e.output_loss_metric is not None
      ]
    return None

  @property
  def sample_weights(self):
    return [e.sample_weight for e in self._training_endpoints]

  @property
  def _sample_weight_modes(self):
    return [e.sample_weight_mode for e in self._training_endpoints]

  @property
  def _feed_sample_weights(self):
    return [e.sample_weight for e in self._training_endpoints
            if e.sample_weight is not None]

  def _maybe_load_initial_epoch_from_ckpt(self, initial_epoch, mode):
    """Maybe load initial epoch from ckpt considering possible worker recovery.

    When `_ckpt_saved_epoch` attribute is not None in a `Model` object at the
    time the training starts, this is under multi-worker training setting and
    indicates the worker is recovering from previous failure. In this case,
    infer `initial_epoch` from `self._ckpt_saved_epoch` to continue previous
    unfinished training from certain epoch.

    Arguments:
      initial_epoch: The original initial_epoch user passes in in `fit()`.
      mode: The training mode.

    Returns:
      If the training is recovering from previous failure under multi-worker
      training setting, return the epoch the training is supposed to continue
      at. Otherwise, return the `initial_epoch` the user passes in.
    """
    # TODO(rchao): Add recovery for validation case
    # (when mode == ModeKeys.TEST).
    if mode == ModeKeys.TRAIN and self._ckpt_saved_epoch is not None:
      # The most recently saved epoch is one epoch prior to the epoch it failed
      # at, so return '_ckpt_saved_epoch' plus one.
      return int(self._ckpt_saved_epoch) + 1
    return initial_epoch

  def _assert_compile_was_called(self):
    # Checks whether `compile` has been called. If it has been called,
    # then the optimizer is set. This is different from whether the
    # model is compiled
    # (i.e. whether the model is built and its inputs/outputs are set).
    if not self.optimizer:
      raise RuntimeError('You must compile your model before '
                         'training/testing. '
                         'Use `model.compile(optimizer, loss)`.')


class DistributedCallbackModel(Model):
  """Model that is used for callbacks with tf.distribute.Strategy."""

  def __init__(self, model):
    super(DistributedCallbackModel, self).__init__()
    self.optimizer = model.optimizer

  def set_original_model(self, orig_model):
    self._original_model = orig_model

  def save_weights(self, filepath, overwrite=True, save_format=None):
    self._replicated_model.save_weights(filepath, overwrite=overwrite,
                                        save_format=save_format)

  def save(self, filepath, overwrite=True, include_optimizer=True):
    # save weights from the distributed model to the original model
    distributed_model_weights = self.get_weights()
    self._original_model.set_weights(distributed_model_weights)
    # TODO(anjalisridhar): Do we need to save the original model here?
    # Saving the first replicated model works as well.
    self._original_model.save(filepath, overwrite=True, include_optimizer=False)

  def load_weights(self, filepath, by_name=False):
    self._original_model.load_weights(filepath, by_name=False)
    # Copy the weights from the original model to each of the replicated models.
    orig_model_weights = self._original_model.get_weights()
    distributed_training_utils.set_weights(
        self._original_model._distribution_strategy, self,  # pylint: disable=protected-access
        orig_model_weights)

  def __getattr__(self, item):
    # Whitelisted atttributes of the model that can be accessed by the user
    # during a callback.
    if item not in ('_setattr_tracking', '_layers'):
      logging.warning('You are accessing attribute ' + item + ' of the '
                      'DistributedCallbackModel that may not have been set '
                      'correctly.')
    return super(DistributedCallbackModel, self).__getattr__(item)


class _TrainingEndpoint(object):
  """A container for the training output/target and related entities.

  In the case of model with multiple outputs, there is a one-to-one mapping
  between model output (y_pred), model target (y_true), loss, metrics etc.
  By unifying these entities into one class, different entity can access
  information between each other, rather than currently access different list of
  attributes of the model.
  """

  def __init__(self,
               output,
               output_name,
               loss_fn,
               loss_weight=None,
               training_target=None,
               output_loss_metric=None,
               sample_weight=None,
               sample_weight_mode=None):
    """Initialize the _TrainingEndpoint.

    Note that the output and output_name should be stable as long as the model
    structure doesn't change. The training_target suppose to be mutable since
    the information is provided via `compile()`

    Args:
      output: the output tensor of the model.
      output_name: the unique name of the output tensor.
      loss_fn: the loss function for the output tensor.
      loss_weight: float, the weights for the loss.
      training_target: the _TrainingTarget for the model.
      output_loss_metric: the metric object for the loss function.
      sample_weight: the weights for how a sample is weighted during metric and
        loss calculation. Could be None.
      sample_weight_mode: string, 'temporal', 'samplewise' or None. The mode for
        how the sample_weight is populated.
    """
    self._output = output
    self._output_name = output_name
    self._loss_fn = loss_fn
    self._loss_weight = loss_weight
    self._training_target = training_target
    self._output_loss_metric = output_loss_metric
    self._sample_weight = sample_weight
    self._sample_weight_mode = sample_weight_mode

  @property
  def output(self):
    return self._output

  @property
  def output_name(self):
    return self._output_name

  @property
  def shape(self):
    return K.int_shape(self.output)

  @property
  def loss_fn(self):
    return self._loss_fn

  @property
  def loss_weight(self):
    return self._loss_weight

  @loss_weight.setter
  def loss_weight(self, value):
    self._loss_weight = value

  @property
  def training_target(self):
    return self._training_target

  @training_target.setter
  def training_target(self, value):
    self._training_target = value

  def create_training_target(self, target, run_eagerly=False):
    """Create training_target instance and update the self.training_target.

    Note that the input target should just be a tensor or None, and
    corresponding training target will be created based on the output and
    loss_fn.

    Args:
      target: the target tensor for the current output. Could be None.
      run_eagerly: boolean, whether the model is in run_eagerly mode.

    Raises:
      ValueError if the training_target field for the current instance has
      already been populated.
    """
    if self.has_training_target():
      raise ValueError('The training_target field for the _TrainingEndpoint '
                       'instance has already been populated')
    if run_eagerly:
      # When run_eagerly, the target tensor is ignored, and the None placeholder
      # is created instead.
      self.training_target = _TrainingTarget(
          None, feedable=True, skip_target_weights=False)
      return

    if self.should_skip_target():
      self.training_target = _TrainingTarget(None)
    else:
      if target is not None and not K.is_placeholder(target):
        feedable = False
        skip_target_weights = True
      else:
        feedable = True
        skip_target_weights = False

      if target is None:
        target_dtype = losses.LABEL_DTYPES_FOR_LOSSES.get(
            self.loss_fn, K.dtype(self.output))

        target = K.placeholder(
            ndim=len(self.shape),
            name=self.output_name + '_target',
            sparse=K.is_sparse(self.output),
            dtype=target_dtype)

      self.training_target = _TrainingTarget(
          target,
          feedable=feedable,
          skip_target_weights=skip_target_weights)

  @property
  def output_loss_metric(self):
    return self._output_loss_metric

  @output_loss_metric.setter
  def output_loss_metric(self, value):
    self._output_loss_metric = value

  @property
  def sample_weight(self):
    return self._sample_weight

  @sample_weight.setter
  def sample_weight(self, value):
    self._sample_weight = value

  @property
  def sample_weight_mode(self):
    return self._sample_weight_mode

  @sample_weight_mode.setter
  def sample_weight_mode(self, value):
    self._sample_weight_mode = value

  def should_skip_target(self):
    return self._loss_fn is None

  def should_skip_target_weights(self):
    return (self.should_skip_target() or self.training_target is None or
            self.training_target.skip_target_weights)

  def has_training_target(self):
    return self.training_target is not None

  def has_feedable_training_target(self):
    return (not self.should_skip_target() and
            self.training_target is not None and self.training_target.feedable)

  def loss_name(self):
    if self._loss_fn is not None:
      return self._output_name + '_loss'
    return None

  @property
  def feed_output_shape(self):
    """The output shape for the feedable target."""
    if not self.has_feedable_training_target():
      return None

    if ((isinstance(self.loss_fn, losses.LossFunctionWrapper) and
         self.loss_fn.fn == losses.sparse_categorical_crossentropy)) or (
             isinstance(self.loss_fn, losses.SparseCategoricalCrossentropy)):
      if K.image_data_format() == 'channels_first':
        return (self.shape[0], 1) + self.shape[2:]
      else:
        return self.shape[:-1] + (1,)
    elif (not isinstance(self.loss_fn, losses.Loss) or
          (isinstance(self.loss_fn, losses.LossFunctionWrapper) and
           (getattr(losses, self.loss_fn.fn.__name__, None) is None))):
      # If the given loss is not an instance of the `Loss` class (custom
      # class) or if the loss function that is wrapped is not in the
      # `losses` module, then it is a user-defined loss and we make no
      # assumptions about it.
      return None
    else:
      return self.shape

  def sample_weights_mismatch(self):
    """Check if the sample weight and the mode match or not."""
    # If there is a mismatch between sample weight mode and the placeholders
    # created, then recompile the sub-graphs that depend on sample weights.
    return (
        (self.sample_weight_mode is not None and self.sample_weight is None) or
        (self.sample_weight_mode is None and self.sample_weight is not None))

  def populate_sample_weight(self):
    """Populate the sample weight and based on the sample weight mode."""
    if (self.should_skip_target_weights() or
        self.sample_weight_mode is None or context.executing_eagerly()):
      self._sample_weight = None
      return

    assert self.sample_weight_mode in ['temporal', 'samplewise']
    if self.sample_weight_mode == 'temporal':
      default_value = [[1.]]
      shape = [None, None]
    else:
      # self.sample_weight_mode == 'samplewise'
      default_value = [1.]
      shape = [None]

    self._sample_weight = array_ops.placeholder_with_default(
        constant_op.constant(default_value, dtype=K.floatx()),
        shape=shape,
        name=self.output_name + '_sample_weights')


class _TrainingTarget(object):
  """Container for a target tensor (y_true) and its metadata (shape, loss...).

  Arguments:
    target: A target tensor for the model. It may be `None` if the
      output is excluded from loss computation. It is still kept as None
      since each output of the model should have a corresponding target. If
      the target is None, the rest of the attributes will be None as well.
    feedable: Boolean, whether the target is feedable (requires data to be
      passed in `fit` or `train_on_batch`), or not (model compiled with
      `target_tensors` argument).
    skip_target_weights: Boolean, whether the target should be skipped during
      weights calculation.
  """

  def __init__(self, target, feedable=False, skip_target_weights=True):
    self._target = target
    self._feedable = feedable
    self._skip_target_weights = skip_target_weights

  @property
  def target(self):
    return self._target

  @property
  def feedable(self):
    return self._feedable

  @property
  def skip_target_weights(self):
    return self._skip_target_weights


def _is_symbolic_tensor(x):
  return tensor_util.is_tensor(x) and not isinstance(x, ops.EagerTensor)