def predict_distributed(model,
                        x=None,
                        batch_size=None,
                        verbose=0,
                        steps=None,
                        callbacks=None):
  """Predict loop for Distribution Strategies."""
  distributed_training_utils.validate_inputs(
      x, None, model._distribution_strategy)
  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps, batch_size = distributed_training_utils.get_input_params(
        model._distribution_strategy, first_x_value, steps, batch_size)
  batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
  dataset = model._distribution_standardize_user_data(
      x,
      batch_size=batch_size,
      check_steps=True,
      steps_name='steps',
      steps=steps)
  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    # TODO(fchollet): why aren't callbacks supported here?
    return experimental_tpu_predict_loop(
        model, dataset, verbose=verbose, steps=steps)
  else:
    return training_arrays.predict_loop(
        model,
        dataset,
        batch_size=batch_size,
        verbose=verbose,
        steps=steps,
        callbacks=callbacks)
def evaluate_distributed(model,
                         x=None,
                         y=None,
                         batch_size=None,
                         verbose=1,
                         sample_weight=None,
                         steps=None,
                         callbacks=None):
    """Evaluate loop for Distribution Strategies."""
    distributed_training_utils.validate_inputs(x, y,
                                               model._distribution_strategy)
    first_x_value = nest.flatten(x)[0]
    if isinstance(first_x_value, np.ndarray):
        steps, batch_size = distributed_training_utils.get_input_params(
            model._distribution_strategy, first_x_value, steps, batch_size)
    batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
    dataset = model._distribution_standardize_user_data(
        x, y, sample_weight=sample_weight, batch_size=batch_size)

    if distributed_training_utils.is_tpu_strategy(
            model._distribution_strategy):
        return experimental_tpu_test_loop(model,
                                          dataset,
                                          verbose=verbose,
                                          steps=steps,
                                          callbacks=callbacks)
    else:
        return training_arrays.test_loop(model,
                                         inputs=dataset,
                                         batch_size=batch_size,
                                         verbose=verbose,
                                         steps=steps,
                                         callbacks=callbacks)
def predict_distributed(model,
                        x=None,
                        batch_size=None,
                        verbose=0,
                        steps=None,
                        callbacks=None):
  """Predict loop for Distribution Strategies."""
  distributed_training_utils.validate_inputs(
      x, None, model._distribution_strategy)
  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps, batch_size = distributed_training_utils.get_input_params(
        model._distribution_strategy, first_x_value, steps, batch_size)
  batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
  iterator = model._distribution_standardize_user_data(
      x,
      batch_size=batch_size,
      check_steps=True,
      steps_name='steps',
      steps=steps)
  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    # TODO(fchollet): why aren't callbacks supported here?
    return experimental_tpu_predict_loop(
        model, iterator, verbose=verbose, steps=steps)
  else:
    return training_arrays.predict_loop(
        model,
        iterator,
        batch_size=batch_size,
        verbose=verbose,
        steps=steps,
        callbacks=callbacks)
def predict_distributed(model,
                        x=None,
                        batch_size=None,
                        verbose=0,
                        steps=None,
                        callbacks=None):
  """Predict loop for Distribution Strategies."""
  distributed_training_utils.validate_inputs(
      x, None, model._distribution_strategy, allow_partial_batch=True)
  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps, batch_size = distributed_training_utils.get_input_params(
        model._distribution_strategy, first_x_value, steps,
        batch_size, mode=ModeKeys.PREDICT)
  batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
  dataset = model._distribution_standardize_user_data(
      x,
      batch_size=batch_size,
      repeat=False,
      allow_partial_batch=True)
  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_predict_loop(
        model, dataset, verbose=verbose, steps=steps, callbacks=callbacks)
  else:
    return training_arrays.predict_loop(
        model,
        dataset,
        batch_size=batch_size,
        verbose=verbose,
        steps=steps,
        callbacks=callbacks)
def predict_distributed(model,
                        x=None,
                        batch_size=None,
                        verbose=0,
                        steps=None,
                        callbacks=None):
  """Predict loop for Distribution Strategies."""
  distributed_training_utils.validate_inputs(
      x, None, model._distribution_strategy, allow_partial_batch=True)
  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps, batch_size = distributed_training_utils.get_input_params(
        model._distribution_strategy, first_x_value, steps,
        batch_size, mode=ModeKeys.PREDICT)
  batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
  dataset = model._distribution_standardize_user_data(
      x,
      batch_size=batch_size,
      repeat=False,
      allow_partial_batch=True)
  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_predict_loop(
        model, dataset, verbose=verbose, steps=steps, callbacks=callbacks)
  else:
    return training_arrays.predict_loop(
        model,
        dataset,
        batch_size=batch_size,
        verbose=verbose,
        steps=steps,
        callbacks=callbacks)
def evaluate_distributed(model,
                         x=None,
                         y=None,
                         batch_size=None,
                         verbose=1,
                         sample_weight=None,
                         steps=None,
                         callbacks=None):
  """Evaluate loop for Distribution Strategies."""
  distributed_training_utils.validate_inputs(x, y, model._distribution_strategy)
  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps, batch_size = distributed_training_utils.get_input_params(
        model._distribution_strategy, first_x_value, steps, batch_size)
  batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
  dataset = model._distribution_standardize_user_data(
      x, y,
      sample_weight=sample_weight,
      batch_size=batch_size)

  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_test_loop(
        model, dataset, verbose=verbose, steps=steps, callbacks=callbacks)
  else:
    return training_arrays.test_loop(
        model,
        inputs=dataset,
        batch_size=batch_size,
        verbose=verbose,
        steps=steps,
        callbacks=callbacks)
def evaluate_distributed(model,
                         x=None,
                         y=None,
                         batch_size=None,
                         verbose=1,
                         sample_weight=None,
                         steps=None,
                         callbacks=None):
    """Evaluate loop for Distribution Strategies."""
    # TODO(b/122314600): Remove the scope validate.
    distributed_training_utils.validate_not_in_strategy_scope()
    distributed_training_utils.validate_inputs(x, y,
                                               model._distribution_strategy)
    first_x_value = nest.flatten(x)[0]
    if isinstance(first_x_value, np.ndarray):
        steps, batch_size = distributed_training_utils.get_input_params(
            model._distribution_strategy, first_x_value, steps, batch_size)
    batch_size = model._validate_or_infer_batch_size(batch_size, steps, x)
    iterator = model._distribution_standardize_user_data(
        x,
        y,
        sample_weight=sample_weight,
        batch_size=batch_size,
        check_steps=True,
        steps_name='steps',
        steps=steps)

    if distributed_training_utils.is_tpu_strategy(
            model._distribution_strategy):
        # TODO(fchollet): why aren't callbacks supported here?
        return experimental_tpu_test_loop(model,
                                          iterator=iterator,
                                          verbose=verbose,
                                          steps=steps)
    else:
        return training_arrays.test_loop(model,
                                         inputs=iterator,
                                         batch_size=batch_size,
                                         verbose=verbose,
                                         steps=steps,
                                         callbacks=callbacks)
def fit_distributed(model,
                    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):
  """Fit loop for Distribution Strategies."""
  distributed_training_utils.validate_callbacks(callbacks, model.optimizer)
  distributed_training_utils.validate_inputs(
      x, y, model._distribution_strategy)

  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    # Until support for partial batch is implemented across all
    # functions and distribution strategy, we pass `mode` to selectively
    # relax the costraint to consume all the training samples.
    steps_per_epoch, batch_size = (
        distributed_training_utils.get_input_params(
            model._distribution_strategy, first_x_value, steps_per_epoch,
            batch_size, mode=ModeKeys.TRAIN))
  batch_size = model._validate_or_infer_batch_size(
      batch_size, steps_per_epoch, x)
  steps_name = 'steps_per_epoch'
  if isinstance(x, dataset_ops.DatasetV2):
    steps_per_epoch = training_utils.infer_steps_for_dataset(
        x, steps_per_epoch, steps_name=steps_name)
  dataset = model._distribution_standardize_user_data(
      x, y,
      sample_weight=sample_weight,
      class_weight=class_weight,
      batch_size=batch_size,
      check_steps=True,
      steps_name=steps_name,
      steps=steps_per_epoch,
      validation_split=validation_split,
      shuffle=shuffle)

  val_dataset = None
  if validation_data:
    val_x, val_y, val_sample_weights = model._unpack_validation_data(
        validation_data)
    distributed_training_utils.validate_inputs(
        val_x, val_y, model._distribution_strategy)
    first_valx_value = nest.flatten(val_x)[0]
    if isinstance(first_valx_value, np.ndarray):
      validation_steps, _ = distributed_training_utils.get_input_params(
          model._distribution_strategy, first_valx_value, validation_steps,
          batch_size)
    steps_name = 'validation_steps'
    if isinstance(val_x, dataset_ops.DatasetV2):
      validation_steps = training_utils.infer_steps_for_dataset(
          val_x, validation_steps, steps_name=steps_name)
    val_dataset = model._distribution_standardize_user_data(
        val_x, val_y,
        sample_weight=val_sample_weights,
        class_weight=None,
        batch_size=batch_size,
        check_steps=True,
        steps_name=steps_name,
        steps=validation_steps,
        validation_split=validation_split,
        shuffle=shuffle)
  elif validation_split:
    raise ValueError('validation_split argument is not supported with '
                     'distribution strategies.')

  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_fit_loop(
        model,
        dataset,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_dataset=val_dataset,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps,
        validation_freq=1)
  else:
    return training_arrays.fit_loop(
        model,
        dataset,
        batch_size=batch_size,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_inputs=val_dataset,
        shuffle=shuffle,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps,
        validation_freq=validation_freq)
Example #9
0
def fit_distributed(model,
                    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):
    """Fit loop for Distribution Strategies."""
    distributed_training_utils.validate_callbacks(callbacks, model.optimizer)
    distributed_training_utils.validate_inputs(x, y,
                                               model._distribution_strategy)

    first_x_value = nest.flatten(x)[0]
    if isinstance(first_x_value, np.ndarray):
        # Until support for partial batch is implemented across all
        # functions and distribution strategy, we pass `mode` to selectively
        # relax the costraint to consume all the training samples.
        steps_per_epoch, batch_size = (
            distributed_training_utils.get_input_params(
                model._distribution_strategy,
                first_x_value,
                steps_per_epoch,
                batch_size,
                mode=ModeKeys.TRAIN))
    batch_size = model._validate_or_infer_batch_size(batch_size,
                                                     steps_per_epoch, x)
    dataset = model._distribution_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)

    val_dataset = None
    if validation_data:
        val_x, val_y, val_sample_weights = model._unpack_validation_data(
            validation_data)
        distributed_training_utils.validate_inputs(
            val_x, val_y, model._distribution_strategy)
        first_valx_value = nest.flatten(val_x)[0]
        if isinstance(first_valx_value, np.ndarray):
            validation_steps, _ = distributed_training_utils.get_input_params(
                model._distribution_strategy, first_valx_value,
                validation_steps, batch_size)
        val_dataset = model._distribution_standardize_user_data(
            val_x,
            val_y,
            sample_weight=val_sample_weights,
            class_weight=None,
            batch_size=batch_size,
            check_steps=True,
            steps_name='validation_steps',
            steps=validation_steps,
            validation_split=validation_split,
            shuffle=shuffle)
    elif validation_split:
        raise ValueError('validation_split argument is not supported with '
                         'distribution strategies.')

    if distributed_training_utils.is_tpu_strategy(
            model._distribution_strategy):
        return experimental_tpu_fit_loop(model,
                                         dataset,
                                         epochs=epochs,
                                         verbose=verbose,
                                         callbacks=callbacks,
                                         val_dataset=val_dataset,
                                         initial_epoch=initial_epoch,
                                         steps_per_epoch=steps_per_epoch,
                                         validation_steps=validation_steps,
                                         validation_freq=1)
    else:
        return training_arrays.fit_loop(model,
                                        dataset,
                                        batch_size=batch_size,
                                        epochs=epochs,
                                        verbose=verbose,
                                        callbacks=callbacks,
                                        val_inputs=val_dataset,
                                        shuffle=shuffle,
                                        initial_epoch=initial_epoch,
                                        steps_per_epoch=steps_per_epoch,
                                        validation_steps=validation_steps,
                                        validation_freq=validation_freq)
def fit_distributed(model,
                    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):
  """Fit loop for Distribution Strategies."""
  distributed_training_utils.validate_callbacks(callbacks, model.optimizer)
  distributed_training_utils.validate_inputs(
      x, y, model._distribution_strategy)

  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps_per_epoch, batch_size = (
        distributed_training_utils.get_input_params(
            model._distribution_strategy, first_x_value, steps_per_epoch,
            batch_size, is_training=True))
  batch_size = model._validate_or_infer_batch_size(
      batch_size, steps_per_epoch, x)
  iterator = model._distribution_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)

  val_iterator = None
  if validation_data:
    val_x, val_y, val_sample_weights = model._unpack_validation_data(
        validation_data)
    distributed_training_utils.validate_inputs(
        val_x, val_y, model._distribution_strategy)
    first_valx_value = nest.flatten(val_x)[0]
    if isinstance(first_valx_value, np.ndarray):
      validation_steps, _ = distributed_training_utils.get_input_params(
          model._distribution_strategy, first_valx_value, validation_steps,
          batch_size)
    val_iterator = model._distribution_standardize_user_data(
        val_x, val_y,
        sample_weight=val_sample_weights,
        class_weight=None,
        batch_size=batch_size,
        check_steps=True,
        steps_name='validation_steps',
        steps=validation_steps,
        validation_split=validation_split,
        shuffle=shuffle)
  elif validation_split:
    raise ValueError('validation_split argument is not supported with '
                     'distribution strategies.')

  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_fit_loop(
        model,
        iterator,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_iterator=val_iterator,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps)
  else:
    return training_arrays.fit_loop(
        model,
        iterator,
        batch_size=batch_size,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_inputs=val_iterator,
        shuffle=shuffle,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps)
def fit_distributed(model,
                    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):
  """Fit loop for Distribution Strategies."""
  distributed_training_utils.validate_callbacks(callbacks, model.optimizer)
  distributed_training_utils.validate_inputs(
      x, y, model._distribution_strategy)

  first_x_value = nest.flatten(x)[0]
  if isinstance(first_x_value, np.ndarray):
    steps_per_epoch, batch_size = (
        distributed_training_utils.get_input_params(
            model._distribution_strategy, first_x_value, steps_per_epoch,
            batch_size, is_training=True))
  batch_size = model._validate_or_infer_batch_size(
      batch_size, steps_per_epoch, x)
  dataset = model._distribution_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)

  val_dataset = None
  if validation_data:
    val_x, val_y, val_sample_weights = model._unpack_validation_data(
        validation_data)
    distributed_training_utils.validate_inputs(
        val_x, val_y, model._distribution_strategy)
    first_valx_value = nest.flatten(val_x)[0]
    if isinstance(first_valx_value, np.ndarray):
      validation_steps, _ = distributed_training_utils.get_input_params(
          model._distribution_strategy, first_valx_value, validation_steps,
          batch_size)
    val_dataset = model._distribution_standardize_user_data(
        val_x, val_y,
        sample_weight=val_sample_weights,
        class_weight=None,
        batch_size=batch_size,
        check_steps=True,
        steps_name='validation_steps',
        steps=validation_steps,
        validation_split=validation_split,
        shuffle=shuffle)
  elif validation_split:
    raise ValueError('validation_split argument is not supported with '
                     'distribution strategies.')

  if distributed_training_utils.is_tpu_strategy(model._distribution_strategy):
    return experimental_tpu_fit_loop(
        model,
        dataset,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_dataset=val_dataset,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps,
        validation_freq=1)
  else:
    return training_arrays.fit_loop(
        model,
        dataset,
        batch_size=batch_size,
        epochs=epochs,
        verbose=verbose,
        callbacks=callbacks,
        val_inputs=val_dataset,
        shuffle=shuffle,
        initial_epoch=initial_epoch,
        steps_per_epoch=steps_per_epoch,
        validation_steps=validation_steps,
        validation_freq=validation_freq)