def batch_predict_loop(model, inputs, batch_size, verbose=0):
    """Predict function for eager execution when input is arrays or tensors.

  Arguments:
      model: Instance of `Model`.
      inputs: List of input arrays.
      batch_size: Integer batch size.
      verbose: Verbosity mode.

  Returns:
      Array of predictions (if the model has a single output)
      or list of arrays of predictions (if the model has multiple outputs).
  """
    outs = []
    num_samples = training_utils.check_num_samples(inputs, batch_size)
    if verbose == 1:
        progbar = generic_utils.Progbar(target=num_samples)
    batches = generic_utils.make_batches(num_samples, batch_size)
    index_array = np.arange(num_samples)
    for batch_index, (batch_start, batch_end) in enumerate(batches):
        batch_ids = index_array[batch_start:batch_end]
        inputs_batch = slice_arrays(inputs, batch_ids)

        inputs_batch = [
            ops.convert_to_tensor(val, dtype=backend.floatx())
            for val in inputs_batch
        ]

        if len(inputs_batch) == 1:
            if model._expects_training_arg:
                batch_outs = model.call(inputs_batch[0], training=False)
            else:
                batch_outs = model.call(inputs_batch[0])
        else:
            if model._expects_training_arg:
                batch_outs = model.call(inputs_batch, training=False)
            else:
                batch_outs = model.call(inputs_batch)

        if not isinstance(batch_outs, list):
            batch_outs = [batch_outs]
        if batch_index == 0:
            # Pre-allocate the results arrays.
            for batch_out in batch_outs:
                dims = batch_out.shape[1:].dims
                dims_list = [d.value for d in dims]
                shape = (num_samples, ) + tuple(dims_list)
                outs.append(
                    np.zeros(shape, dtype=batch_out.dtype.as_numpy_dtype))
        for i, batch_out in enumerate(batch_outs):
            outs[i][batch_start:batch_end] = batch_out
        if verbose == 1:
            progbar.update(batch_end)

    if len(outs) == 1:
        return outs[0]
    return outs
示例#2
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def batch_predict_loop(model, inputs, batch_size, verbose=0):
  """Predict function for eager execution when input is arrays or tensors.

  Arguments:
      model: Instance of `Model`.
      inputs: List of input arrays.
      batch_size: Integer batch size.
      verbose: Verbosity mode.

  Returns:
      Array of predictions (if the model has a single output)
      or list of arrays of predictions (if the model has multiple outputs).
  """
  outs = []
  num_samples = training_utils.check_num_samples(inputs, batch_size)
  if verbose == 1:
    progbar = generic_utils.Progbar(target=num_samples)
  batches = generic_utils.make_batches(num_samples, batch_size)
  index_array = np.arange(num_samples)
  for batch_index, (batch_start, batch_end) in enumerate(batches):
    batch_ids = index_array[batch_start:batch_end]
    inputs_batch = slice_arrays(inputs, batch_ids)

    inputs_batch = [
        ops.convert_to_tensor(val, dtype=backend.floatx())
        for val in inputs_batch
    ]

    if len(inputs_batch) == 1:
      if model._expects_training_arg:
        batch_outs = model.call(inputs_batch[0], training=False)
      else:
        batch_outs = model.call(inputs_batch[0])
    else:
      if model._expects_training_arg:
        batch_outs = model.call(inputs_batch, training=False)
      else:
        batch_outs = model.call(inputs_batch)

    if not isinstance(batch_outs, list):
      batch_outs = [batch_outs]
    if batch_index == 0:
      # Pre-allocate the results arrays.
      for batch_out in batch_outs:
        dims = batch_out.shape[1:].dims
        dims_list = [d.value for d in dims]
        shape = (num_samples,) + tuple(dims_list)
        outs.append(np.zeros(shape, dtype=batch_out.dtype.as_numpy_dtype))
    for i, batch_out in enumerate(batch_outs):
      outs[i][batch_start:batch_end] = batch_out
    if verbose == 1:
      progbar.update(batch_end)

  if len(outs) == 1:
    return outs[0]
  return outs
def _get_num_samples_or_steps(ins, batch_size, steps_per_epoch):
  """Returns total number of samples (when training in batch mode) or steps."""
  if steps_per_epoch:
    return steps_per_epoch
  return training_utils.check_num_samples(ins, batch_size, steps_per_epoch,
                                          'steps_per_epoch')
def _get_num_samples_or_steps(ins, batch_size, steps_per_epoch):
    """Returns total number of samples (when training in batch mode) or steps."""
    if steps_per_epoch:
        return steps_per_epoch
    return training_utils.check_num_samples(ins, batch_size, steps_per_epoch,
                                            'steps_per_epoch')
示例#5
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def fit_loop(model,
             inputs,
             targets,
             sample_weights=None,
             batch_size=None,
             epochs=100,
             verbose=1,
             callbacks=None,
             val_inputs=None,
             val_targets=None,
             val_sample_weights=None,
             shuffle=True,
             callback_metrics=None,
             initial_epoch=0,
             steps_per_epoch=None,
             validation_steps=None):
    """Abstract fit function for arrays of data.

  Arguments:
      model: Keras Model instance.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      batch_size: Integer batch size or None if unknown.
      epochs: Number of times to iterate over the data
      verbose: Verbosity mode, 0, 1 or 2
      callbacks: List of callbacks to be called during training
      val_inputs: List of input arrays.
      val_targets: List of target arrays.
      val_sample_weights: Optional list of sample weight arrays.
      shuffle: Whether to shuffle the data at the beginning of each epoch
      callback_metrics: List of strings, the display names of the metrics
          passed to the callbacks. They should be the
          concatenation of list the display names of the outputs of
           `f` and the list of display names of the outputs of `f_val`.
      initial_epoch: Epoch at which to start training
          (useful for resuming a previous training run)
      steps_per_epoch: Total number of steps (batches of samples)
          before declaring one epoch finished and starting the
          next epoch. Ignored with the default value of `None`.
      validation_steps: Number of steps to run validation for
          (only if doing validation from data tensors).
          Ignored with the default value of `None`.

  Returns:
      `History` object.

  Raises:
      ValueError: in case of invalid arguments.
  """
    model._make_train_function()
    f = model.train_function

    sample_weights = sample_weights or []
    val_sample_weights = val_sample_weights or []
    if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
        ins = inputs + targets + sample_weights + [1]
        if val_inputs:
            val_ins = val_inputs + val_targets + val_sample_weights + [1]
    else:
        ins = inputs + targets + sample_weights
        if val_inputs:
            val_ins = val_inputs + val_targets + val_sample_weights
    if not val_inputs:
        val_ins = []

    do_validation = False
    if val_inputs:
        do_validation = True
        if (steps_per_epoch is None and verbose and inputs
                and hasattr(inputs[0], 'shape')
                and hasattr(val_inputs[0], 'shape')):
            print('Train on %d samples, validate on %d samples' %
                  (inputs[0].shape[0], val_inputs[0].shape[0]))
    if validation_steps:
        do_validation = True
        if steps_per_epoch is None:
            raise ValueError('Can only use `validation_steps` '
                             'when doing step-wise '
                             'training, i.e. `steps_per_epoch` '
                             'must be set.')

    out_labels = model.metrics_names
    if do_validation:
        callback_metrics = copy.copy(out_labels) + [
            'val_' + n for n in out_labels
        ]
    else:
        callback_metrics = copy.copy(out_labels)

    num_train_samples = training_utils.check_num_samples(
        ins, batch_size, steps_per_epoch, 'steps_per_epoch')
    if num_train_samples is not None:
        index_array = np.arange(num_train_samples)

    model.history = cbks.History()
    all_callbacks = [
        cbks.BaseLogger(stateful_metrics=model.stateful_metric_names)
    ]
    if verbose:
        if steps_per_epoch is not None:
            count_mode = 'steps'
        else:
            count_mode = 'samples'
        all_callbacks.append(
            cbks.ProgbarLogger(count_mode,
                               stateful_metrics=model.stateful_metric_names))
    all_callbacks += (callbacks or []) + [model.history]
    callbacks = cbks.CallbackList(all_callbacks)
    out_labels = out_labels or []

    # it's possible to callback a different model than self
    # (used by Sequential models)
    if hasattr(model, 'callback_model') and model.callback_model:
        callback_model = model.callback_model
    else:
        callback_model = model

    callbacks.set_model(callback_model)

    callbacks.set_params({
        'batch_size': batch_size,
        'epochs': epochs,
        'steps': steps_per_epoch,
        'samples': num_train_samples,
        'verbose': verbose,
        'do_validation': do_validation,
        'metrics': callback_metrics or [],
    })
    callbacks.on_train_begin()
    callback_model.stop_training = False
    for cbk in callbacks:
        cbk.validation_data = val_ins

    # To prevent a slowdown, we find beforehand the arrays that need conversion.
    feed = model._feed_inputs + model._feed_targets + model._feed_sample_weights
    indices_for_conversion_to_dense = []
    for i in range(len(feed)):
        if issparse is not None and issparse(
                ins[i]) and not K.is_sparse(feed[i]):
            indices_for_conversion_to_dense.append(i)

    for epoch in range(initial_epoch, epochs):
        # Reset stateful metrics
        for m in model.stateful_metric_functions:
            m.reset_states()
        # Update callbacks
        callbacks.on_epoch_begin(epoch)
        epoch_logs = {}
        if steps_per_epoch is not None:
            for step_index in range(steps_per_epoch):
                batch_logs = {}
                batch_logs['batch'] = step_index
                batch_logs['size'] = 1
                callbacks.on_batch_begin(step_index, batch_logs)
                try:
                    outs = f(ins)
                except errors.OutOfRangeError:
                    logging.warning(
                        'Your dataset iterator ran out of data; '
                        'interrupting training. Make sure that your dataset '
                        'can generate at least `steps_per_epoch * epochs` '
                        'batches (in this case, %d batches).' %
                        steps_per_epoch * epochs)
                    break

                if not isinstance(outs, list):
                    outs = [outs]
                for l, o in zip(out_labels, outs):
                    batch_logs[l] = o

                callbacks.on_batch_end(step_index, batch_logs)
                if callback_model.stop_training:
                    break

            if do_validation:
                val_outs = test_loop(model,
                                     val_inputs,
                                     val_targets,
                                     sample_weights=val_sample_weights,
                                     batch_size=batch_size,
                                     steps=validation_steps,
                                     verbose=0)
                if not isinstance(val_outs, list):
                    val_outs = [val_outs]
                # Same labels assumed.
                for l, o in zip(out_labels, val_outs):
                    epoch_logs['val_' + l] = o
        else:
            if shuffle == 'batch':
                index_array = training_utils.batch_shuffle(
                    index_array, batch_size)
            elif shuffle:
                np.random.shuffle(index_array)

            batches = make_batches(num_train_samples, batch_size)

            for batch_index, (batch_start, batch_end) in enumerate(batches):
                batch_ids = index_array[batch_start:batch_end]
                try:
                    if isinstance(ins[-1], int):
                        # Do not slice the training phase flag.
                        ins_batch = slice_arrays(ins[:-1],
                                                 batch_ids) + [ins[-1]]
                    else:
                        ins_batch = slice_arrays(ins, batch_ids)
                except TypeError:
                    raise TypeError('TypeError while preparing batch. '
                                    'If using HDF5 input data, '
                                    'pass shuffle="batch".')
                batch_logs = {}
                batch_logs['batch'] = batch_index
                batch_logs['size'] = len(batch_ids)
                callbacks.on_batch_begin(batch_index, batch_logs)
                for i in indices_for_conversion_to_dense:
                    ins_batch[i] = ins_batch[i].toarray()

                outs = f(ins_batch)
                if not isinstance(outs, list):
                    outs = [outs]
                for l, o in zip(out_labels, outs):
                    batch_logs[l] = o

                callbacks.on_batch_end(batch_index, batch_logs)
                if callback_model.stop_training:
                    break

                if batch_index == len(batches) - 1:  # Last batch.
                    if do_validation:
                        val_outs = test_loop(model,
                                             val_inputs,
                                             val_targets,
                                             sample_weights=val_sample_weights,
                                             batch_size=batch_size,
                                             verbose=0)
                        if not isinstance(val_outs, list):
                            val_outs = [val_outs]
                        # Same labels assumed.
                        for l, o in zip(out_labels, val_outs):
                            epoch_logs['val_' + l] = o
        callbacks.on_epoch_end(epoch, epoch_logs)
        if callback_model.stop_training:
            break
    callbacks.on_train_end()
    return model.history
示例#6
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def test_loop(model,
              inputs,
              targets,
              sample_weights=None,
              batch_size=None,
              verbose=0,
              steps=None):
    """Abstract method to loop over some data in batches.

  Arguments:
      model: Keras Model instance.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      batch_size: integer batch size or `None`.
      verbose: verbosity mode.
      steps: Total number of steps (batches of samples)
          before declaring predictions finished.
          Ignored with the default value of `None`.

  Returns:
      Scalar 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.
  """
    model._make_test_function()
    f = model.test_function

    sample_weights = sample_weights or []
    if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
        ins = inputs + targets + sample_weights + [0]
    else:
        ins = inputs + targets + sample_weights

    if hasattr(model, 'metrics'):
        for m in model.stateful_metric_functions:
            m.reset_states()
        stateful_metric_indices = [
            i for i, name in enumerate(model.metrics_names)
            if str(name) in model.stateful_metric_names
        ]
    else:
        stateful_metric_indices = []

    num_samples = training_utils.check_num_samples(ins, batch_size, steps,
                                                   'steps')
    outs = []
    if verbose == 1:
        if steps is not None:
            progbar = Progbar(target=steps)
        else:
            progbar = Progbar(target=num_samples)

    # To prevent a slowdown, we find beforehand the arrays that need conversion.
    feed = model._feed_inputs + model._feed_targets + model._feed_sample_weights
    indices_for_conversion_to_dense = []
    for i in range(len(feed)):
        if issparse is not None and issparse(
                ins[i]) and not K.is_sparse(feed[i]):
            indices_for_conversion_to_dense.append(i)

    if steps is not None:
        for step in range(steps):
            batch_outs = f(ins)
            if isinstance(batch_outs, list):
                if step == 0:
                    for _ in enumerate(batch_outs):
                        outs.append(0.)
                for i, batch_out in enumerate(batch_outs):
                    if i in stateful_metric_indices:
                        outs[i] = batch_out
                    else:
                        outs[i] += batch_out
            else:
                if step == 0:
                    outs.append(0.)
                outs[0] += batch_outs
            if verbose == 1:
                progbar.update(step + 1)
        for i in range(len(outs)):
            if i not in stateful_metric_indices:
                outs[i] /= steps
    else:
        batches = make_batches(num_samples, batch_size)
        index_array = np.arange(num_samples)
        for batch_index, (batch_start, batch_end) in enumerate(batches):
            batch_ids = index_array[batch_start:batch_end]
            if isinstance(ins[-1], int):
                # Do not slice the training phase flag.
                ins_batch = slice_arrays(ins[:-1], batch_ids) + [ins[-1]]
            else:
                ins_batch = slice_arrays(ins, batch_ids)
            for i in indices_for_conversion_to_dense:
                ins_batch[i] = ins_batch[i].toarray()

            batch_outs = f(ins_batch)

            if isinstance(batch_outs, list):
                if batch_index == 0:
                    for batch_out in enumerate(batch_outs):
                        outs.append(0.)
                for i, batch_out in enumerate(batch_outs):
                    if i in stateful_metric_indices:
                        outs[i] = batch_out
                    else:
                        outs[i] += batch_out * len(batch_ids)
            else:
                if batch_index == 0:
                    outs.append(0.)
                outs[0] += batch_outs * len(batch_ids)
            if verbose == 1:
                progbar.update(batch_end)
        for i in range(len(outs)):
            if i not in stateful_metric_indices:
                outs[i] /= num_samples
    if len(outs) == 1:
        return outs[0]
    return outs
示例#7
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def predict_loop(model, inputs, batch_size=32, verbose=0, steps=None):
    """Abstract method to loop over some data in batches.

  Arguments:
      model: Keras Model instance.
      inputs: list of tensors to be fed to `f`.
      batch_size: integer batch size.
      verbose: verbosity mode.
      steps: Total number of steps (batches of samples)
          before declaring `_predict_loop` finished.
          Ignored with the default value of `None`.

  Returns:
      Array of predictions (if the model has a single output)
      or list of arrays of predictions
      (if the model has multiple outputs).
  """
    model._make_predict_function()
    f = model.predict_function

    if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
        ins = inputs + [0]
    else:
        ins = inputs

    num_samples = training_utils.check_num_samples(inputs, batch_size, steps,
                                                   'steps')
    if verbose == 1:
        if steps is not None:
            progbar = Progbar(target=steps)
        else:
            progbar = Progbar(target=num_samples)

    indices_for_conversion_to_dense = []
    for i in range(len(model._feed_inputs)):
        if (issparse is not None and issparse(inputs[i])
                and not K.is_sparse(model._feed_inputs[i])):
            indices_for_conversion_to_dense.append(i)

    if steps is not None:
        # Step-based predictions.
        # Since we do not know how many samples
        # we will see, we cannot pre-allocate
        # the returned Numpy arrays.
        # Instead, we store one array per batch seen
        # and concatenate them upon returning.
        unconcatenated_outs = []
        for step in range(steps):
            batch_outs = f(ins)
            if not isinstance(batch_outs, list):
                batch_outs = [batch_outs]
            if step == 0:
                for batch_out in batch_outs:
                    unconcatenated_outs.append([])
            for i, batch_out in enumerate(batch_outs):
                unconcatenated_outs[i].append(batch_out)
            if verbose == 1:
                progbar.update(step + 1)
        if len(unconcatenated_outs) == 1:
            return np.concatenate(unconcatenated_outs[0], axis=0)
        return [
            np.concatenate(unconcatenated_outs[i], axis=0)
            for i in range(len(unconcatenated_outs))
        ]
    else:
        # Sample-based predictions.
        outs = []
        batches = make_batches(num_samples, batch_size)
        index_array = np.arange(num_samples)
        for batch_index, (batch_start, batch_end) in enumerate(batches):
            batch_ids = index_array[batch_start:batch_end]
            if ins and isinstance(ins[-1], int):
                # Do not slice the training phase flag.
                ins_batch = slice_arrays(ins[:-1], batch_ids) + [ins[-1]]
            else:
                ins_batch = slice_arrays(ins, batch_ids)
            for i in indices_for_conversion_to_dense:
                ins_batch[i] = ins_batch[i].toarray()

            batch_outs = f(ins_batch)
            if not isinstance(batch_outs, list):
                batch_outs = [batch_outs]
            if batch_index == 0:
                # Pre-allocate the results arrays.
                for batch_out in batch_outs:
                    shape = (num_samples, ) + batch_out.shape[1:]
                    outs.append(np.zeros(shape, dtype=batch_out.dtype))
            for i, batch_out in enumerate(batch_outs):
                outs[i][batch_start:batch_end] = batch_out
            if verbose == 1:
                progbar.update(batch_end)
        if len(outs) == 1:
            return outs[0]
        return outs
示例#8
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def fit_loop(model,
             inputs,
             targets,
             sample_weights=None,
             batch_size=None,
             epochs=100,
             verbose=1,
             callbacks=None,
             val_inputs=None,
             val_targets=None,
             val_sample_weights=None,
             shuffle=True,
             initial_epoch=0,
             steps_per_epoch=None,
             validation_steps=None):
  """Abstract fit function for arrays of data.

  Arguments:
      model: Keras Model instance.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      batch_size: Integer batch size or None if unknown.
      epochs: Number of times to iterate over the data
      verbose: Verbosity mode, 0, 1 or 2
      callbacks: List of callbacks to be called during training
      val_inputs: List of input arrays.
      val_targets: List of target arrays.
      val_sample_weights: Optional list of sample weight arrays.
      shuffle: Whether to shuffle the data at the beginning of each epoch
          concatenation of list the display names of the outputs of
           `f` and the list of display names of the outputs of `f_val`.
      initial_epoch: Epoch at which to start training
          (useful for resuming a previous training run)
      steps_per_epoch: Total number of steps (batches of samples)
          before declaring one epoch finished and starting the
          next epoch. Ignored with the default value of `None`.
      validation_steps: Number of steps to run validation for
          (only if doing validation from data tensors).
          Ignored with the default value of `None`.

  Returns:
      `History` object.

  Raises:
      ValueError: in case of invalid arguments.
  """
  model._make_train_function()
  f = model.train_function

  sample_weights = sample_weights or []
  val_sample_weights = val_sample_weights or []
  if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
    ins = inputs + targets + sample_weights + [1]
  else:
    ins = inputs + targets + sample_weights

  do_validation = False
  if val_inputs:
    do_validation = True
    if (steps_per_epoch is None and verbose and inputs and
        hasattr(inputs[0], 'shape') and hasattr(val_inputs[0], 'shape')):
      print('Train on %d samples, validate on %d samples' %
            (inputs[0].shape[0], val_inputs[0].shape[0]))
  if validation_steps:
    do_validation = True
    if steps_per_epoch is None:
      raise ValueError('Can only use `validation_steps` '
                       'when doing step-wise '
                       'training, i.e. `steps_per_epoch` '
                       'must be set.')

  num_train_samples = training_utils.check_num_samples(
      ins, batch_size, steps_per_epoch, 'steps_per_epoch')
  count_mode = 'steps' if steps_per_epoch else 'samples'
  callbacks = cbks.configure_callbacks(
      callbacks,
      model,
      do_validation=do_validation,
      val_inputs=val_inputs,
      val_targets=val_targets,
      val_sample_weights=val_sample_weights,
      batch_size=batch_size,
      epochs=epochs,
      steps_per_epoch=steps_per_epoch,
      samples=num_train_samples,
      validation_steps=validation_steps,
      verbose=verbose,
      count_mode=count_mode)

  if num_train_samples is not None:
    index_array = np.arange(num_train_samples)

  # To prevent a slowdown, we find beforehand the arrays that need conversion.
  feed = model._feed_inputs + model._feed_targets + model._feed_sample_weights
  indices_for_conversion_to_dense = []
  for i in range(len(feed)):
    if issparse is not None and issparse(ins[i]) and not K.is_sparse(feed[i]):
      indices_for_conversion_to_dense.append(i)

  callbacks.on_train_begin()
  for epoch in range(initial_epoch, epochs):
    # Reset stateful metrics
    for m in model.stateful_metric_functions:
      m.reset_states()
    # Update callbacks
    callbacks.on_epoch_begin(epoch)
    epoch_logs = {}
    if steps_per_epoch is not None:
      # Step-wise fit loop.
      for step_index in range(steps_per_epoch):
        batch_logs = {'batch': step_index, 'size': 1}
        callbacks.on_batch_begin(step_index, batch_logs)
        try:
          outs = f(ins)
        except errors.OutOfRangeError:
          logging.warning('Your dataset iterator ran out of data; '
                          'interrupting training. Make sure that your dataset '
                          'can generate at least `steps_per_epoch * epochs` '
                          'batches (in this case, %d batches). You may need to'
                          'use the repeat() function when building your '
                          'dataset.' %
                          steps_per_epoch * epochs)
          break

        if not isinstance(outs, list):
          outs = [outs]
        for l, o in zip(model.metrics_names, outs):
          batch_logs[l] = o

        callbacks.on_batch_end(step_index, batch_logs)
        if callbacks.model.stop_training:
          break

      if do_validation:
        val_outs = test_loop(
            model,
            val_inputs,
            val_targets,
            sample_weights=val_sample_weights,
            steps=validation_steps,
            verbose=0)
        if not isinstance(val_outs, list):
          val_outs = [val_outs]
        # Same labels assumed.
        for l, o in zip(model.metrics_names, val_outs):
          epoch_logs['val_' + l] = o
    else:
      # Sample-wise fit loop.
      if shuffle == 'batch':
        index_array = training_utils.batch_shuffle(index_array, batch_size)
      elif shuffle:
        np.random.shuffle(index_array)

      batches = make_batches(num_train_samples, batch_size)

      for batch_index, (batch_start, batch_end) in enumerate(batches):
        batch_ids = index_array[batch_start:batch_end]
        try:
          if isinstance(ins[-1], int):
            # Do not slice the training phase flag.
            ins_batch = slice_arrays(ins[:-1], batch_ids) + [ins[-1]]
          else:
            ins_batch = slice_arrays(ins, batch_ids)
        except TypeError:
          raise TypeError('TypeError while preparing batch. '
                          'If using HDF5 input data, '
                          'pass shuffle="batch".')
        batch_logs = {}
        batch_logs['batch'] = batch_index
        batch_logs['size'] = len(batch_ids)
        callbacks.on_batch_begin(batch_index, batch_logs)
        for i in indices_for_conversion_to_dense:
          ins_batch[i] = ins_batch[i].toarray()

        outs = f(ins_batch)
        if not isinstance(outs, list):
          outs = [outs]
        for l, o in zip(model.metrics_names, outs):
          batch_logs[l] = o

        callbacks.on_batch_end(batch_index, batch_logs)
        if callbacks.model.stop_training:
          break

        if batch_index == len(batches) - 1:  # Last batch.
          if do_validation:
            val_outs = test_loop(
                model,
                val_inputs,
                val_targets,
                sample_weights=val_sample_weights,
                batch_size=batch_size,
                verbose=0)
            if not isinstance(val_outs, list):
              val_outs = [val_outs]
            # Same labels assumed.
            for l, o in zip(model.metrics_names, val_outs):
              epoch_logs['val_' + l] = o
    callbacks.on_epoch_end(epoch, epoch_logs)
    if callbacks.model.stop_training:
      break
  callbacks.on_train_end()
  return model.history
示例#9
0
def test_loop(model,
              inputs,
              targets,
              sample_weights=None,
              batch_size=None,
              verbose=0,
              steps=None):
  """Abstract method to loop over some data in batches.

  Arguments:
      model: Keras Model instance.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      batch_size: integer batch size or `None`.
      verbose: verbosity mode.
      steps: Total number of steps (batches of samples)
          before declaring predictions finished.
          Ignored with the default value of `None`.

  Returns:
      Scalar 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.
  """
  model._make_test_function()
  f = model.test_function

  sample_weights = sample_weights or []
  if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
    ins = inputs + targets + sample_weights + [0]
  else:
    ins = inputs + targets + sample_weights

  if hasattr(model, 'metrics'):
    for m in model.stateful_metric_functions:
      m.reset_states()
    stateful_metric_indices = [
        i for i, name in enumerate(model.metrics_names)
        if str(name) in model.stateful_metric_names
    ]
  else:
    stateful_metric_indices = []

  num_samples = training_utils.check_num_samples(
      ins, batch_size, steps, 'steps')
  outs = []
  if verbose == 1:
    if steps is not None:
      progbar = Progbar(target=steps)
    else:
      progbar = Progbar(target=num_samples)

  # To prevent a slowdown, we find beforehand the arrays that need conversion.
  feed = model._feed_inputs + model._feed_targets + model._feed_sample_weights
  indices_for_conversion_to_dense = []
  for i in range(len(feed)):
    if issparse is not None and issparse(ins[i]) and not K.is_sparse(feed[i]):
      indices_for_conversion_to_dense.append(i)

  if steps is not None:
    for step in range(steps):
      batch_outs = f(ins)
      if isinstance(batch_outs, list):
        if step == 0:
          for _ in enumerate(batch_outs):
            outs.append(0.)
        for i, batch_out in enumerate(batch_outs):
          if i in stateful_metric_indices:
            outs[i] = batch_out
          else:
            outs[i] += batch_out
      else:
        if step == 0:
          outs.append(0.)
        outs[0] += batch_outs
      if verbose == 1:
        progbar.update(step + 1)
    for i in range(len(outs)):
      if i not in stateful_metric_indices:
        outs[i] /= steps
  else:
    batches = make_batches(num_samples, batch_size)
    index_array = np.arange(num_samples)
    for batch_index, (batch_start, batch_end) in enumerate(batches):
      batch_ids = index_array[batch_start:batch_end]
      if isinstance(ins[-1], int):
        # Do not slice the training phase flag.
        ins_batch = slice_arrays(ins[:-1], batch_ids) + [ins[-1]]
      else:
        ins_batch = slice_arrays(ins, batch_ids)
      for i in indices_for_conversion_to_dense:
        ins_batch[i] = ins_batch[i].toarray()

      batch_outs = f(ins_batch)

      if isinstance(batch_outs, list):
        if batch_index == 0:
          outs.extend([0.] * len(batch_outs))
        for i, batch_out in enumerate(batch_outs):
          if i in stateful_metric_indices:
            outs[i] = batch_out
          else:
            outs[i] += batch_out * len(batch_ids)
      else:
        if batch_index == 0:
          outs.append(0.)
        outs[0] += batch_outs * len(batch_ids)
      if verbose == 1:
        progbar.update(batch_end)
    for i in range(len(outs)):
      if i not in stateful_metric_indices:
        outs[i] /= num_samples
  if len(outs) == 1:
    return outs[0]
  return outs
示例#10
0
def predict_loop(model, inputs, batch_size=32, verbose=0, steps=None):
  """Abstract method to loop over some data in batches.

  Arguments:
      model: Keras Model instance.
      inputs: list of tensors to be fed to `f`.
      batch_size: integer batch size.
      verbose: verbosity mode.
      steps: Total number of steps (batches of samples)
          before declaring `_predict_loop` finished.
          Ignored with the default value of `None`.

  Returns:
      Array of predictions (if the model has a single output)
      or list of arrays of predictions
      (if the model has multiple outputs).
  """
  model._make_predict_function()
  f = model.predict_function

  if model.uses_learning_phase and not isinstance(K.learning_phase(), int):
    ins = inputs + [0]
  else:
    ins = inputs

  num_samples = training_utils.check_num_samples(
      inputs, batch_size, steps, 'steps')
  if verbose == 1:
    if steps is not None:
      progbar = Progbar(target=steps)
    else:
      progbar = Progbar(target=num_samples)

  indices_for_conversion_to_dense = []
  for i in range(len(model._feed_inputs)):
    if (issparse is not None and issparse(inputs[i]) and
        not K.is_sparse(model._feed_inputs[i])):
      indices_for_conversion_to_dense.append(i)

  if steps is not None:
    # Step-based predictions.
    # Since we do not know how many samples
    # we will see, we cannot pre-allocate
    # the returned Numpy arrays.
    # Instead, we store one array per batch seen
    # and concatenate them upon returning.
    unconcatenated_outs = []
    for step in range(steps):
      batch_outs = f(ins)
      if not isinstance(batch_outs, list):
        batch_outs = [batch_outs]
      if step == 0:
        for batch_out in batch_outs:
          unconcatenated_outs.append([])
      for i, batch_out in enumerate(batch_outs):
        unconcatenated_outs[i].append(batch_out)
      if verbose == 1:
        progbar.update(step + 1)
    if len(unconcatenated_outs) == 1:
      return np.concatenate(unconcatenated_outs[0], axis=0)
    return [
        np.concatenate(unconcatenated_outs[i], axis=0)
        for i in range(len(unconcatenated_outs))
    ]
  else:
    # Sample-based predictions.
    outs = []
    batches = make_batches(num_samples, batch_size)
    index_array = np.arange(num_samples)
    for batch_index, (batch_start, batch_end) in enumerate(batches):
      batch_ids = index_array[batch_start:batch_end]
      if ins and isinstance(ins[-1], int):
        # Do not slice the training phase flag.
        ins_batch = slice_arrays(ins[:-1], batch_ids) + [ins[-1]]
      else:
        ins_batch = slice_arrays(ins, batch_ids)
      for i in indices_for_conversion_to_dense:
        ins_batch[i] = ins_batch[i].toarray()

      batch_outs = f(ins_batch)
      if not isinstance(batch_outs, list):
        batch_outs = [batch_outs]
      if batch_index == 0:
        # Pre-allocate the results arrays.
        for batch_out in batch_outs:
          shape = (num_samples,) + batch_out.shape[1:]
          outs.append(np.zeros(shape, dtype=batch_out.dtype))
      for i, batch_out in enumerate(batch_outs):
        outs[i][batch_start:batch_end] = batch_out
      if verbose == 1:
        progbar.update(batch_end)
    if len(outs) == 1:
      return outs[0]
    return outs
示例#11
0
def fit_loop(model,
             inputs,
             targets,
             sample_weights=None,
             class_weight=None,
             val_inputs=None,
             val_targets=None,
             val_sample_weights=None,
             batch_size=None,
             epochs=1,
             verbose=1,
             callbacks=None,
             shuffle=True,
             callback_metrics=None,
             initial_epoch=0,
             steps_per_epoch=None,
             validation_steps=None):
  """Fit function for eager execution.

  Arguments:
      model: Instance of the model that is being executed in Eager mode.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      class_weight: Optional class-weight array to weight the importance of
          samples in `inputs` based on the class they belong to, as conveyed by
          `targets`.
      val_inputs: Input data for validation.
      val_targets: Target data for validation.
      val_sample_weights: Sample weight data for validation.
      batch_size: Integer batch size or None if unknown.
      epochs: Number of times to iterate over the data
      verbose: Verbosity mode, 0, 1 or 2
      callbacks: List of callbacks to be called during training
      shuffle: Whether to shuffle the data at the beginning of each epoch
      callback_metrics: List of strings, the display names of the metrics
          passed to the callbacks. They should be the
          concatenation of list the display names of the outputs of
           `f` and the list of display names of the outputs of `f_val`.
      initial_epoch: Epoch at which to start training
          (useful for resuming a previous training run)
      steps_per_epoch: Total number of steps (batches of samples)
          before declaring one epoch finished and starting the
          next epoch. Ignored with the default value of `None`.
      validation_steps: Number of steps to run validation for (only if doing
        validation from data tensors). Ignored with default value of `None`.

  Returns:
      `History` object.

  Raises:
    ValueError: In case of invalid argument values.
  """
  # Required for eager execution
  with backend.learning_phase_scope(1):
    do_validation = False
    if val_inputs:
      do_validation = True
      if (steps_per_epoch is None and verbose and inputs and
          hasattr(inputs[0], 'shape') and hasattr(val_inputs[0], 'shape')):
        print('Train on %d samples, validate on %d samples' %
              (inputs[0].shape[0], val_inputs[0].shape[0]))

    num_train_samples = None
    out_labels = None
    if steps_per_epoch is None or model._is_compiled:
      out_labels = model.metrics_names
      if do_validation:
        callback_metrics = copy.copy(out_labels) + [
            'val_' + n for n in out_labels
        ]
      else:
        callback_metrics = copy.copy(out_labels)

    if steps_per_epoch is None:
      if sample_weights:
        feed_data = inputs + targets + sample_weights
      else:
        feed_data = inputs + targets
      num_train_samples = training_utils.check_num_samples(
          feed_data,
          batch_size=batch_size,
          steps=steps_per_epoch,
          steps_name='steps_per_epoch')

      if num_train_samples is not None:
        index_array = np.arange(num_train_samples)

    model.history = cbks.History()
    callbacks = [cbks.BaseLogger()] + (callbacks or []) + [model.history]
    if verbose:
      if steps_per_epoch is not None:
        count_mode = 'steps'
      else:
        count_mode = 'samples'
      callbacks += [cbks.ProgbarLogger(count_mode)]
    callbacks = cbks.CallbackList(callbacks)

    # it's possible to callback a different model than self
    # (used by Sequential models)
    if hasattr(model, 'callback_model') and model.callback_model:
      callback_model = model.callback_model
    else:
      callback_model = model

    callbacks.set_model(callback_model)

    callbacks.set_params({
        'batch_size': batch_size,
        'epochs': epochs,
        'steps': steps_per_epoch,
        'samples': num_train_samples,
        'verbose': verbose,
        'do_validation': do_validation,
        'metrics': callback_metrics or [],
    })
    callbacks.on_train_begin()
    callback_model.stop_training = False
    for cbk in callbacks:
      if not val_inputs:
        cbk.validation_data = []
      elif isinstance(val_inputs, iterator_ops.EagerIterator):
        cbk.validation_data = val_inputs
      elif val_sample_weights:
        cbk.validation_data = val_inputs + val_targets + val_sample_weights
      else:
        cbk.validation_data = val_inputs + val_targets

    for epoch in range(initial_epoch, epochs):
      callbacks.on_epoch_begin(epoch)
      epoch_logs = {}

      if steps_per_epoch is not None:
        iterator_fit_loop(
            model,
            inputs,
            class_weight,
            steps_per_epoch=steps_per_epoch,
            callback_model=callback_model,
            out_labels=out_labels,
            epoch_logs=epoch_logs,
            val_inputs=val_inputs,
            val_targets=val_targets,
            val_sample_weights=val_sample_weights,
            epochs=epochs,
            verbose=verbose,
            callbacks=callbacks,
            callback_metrics=callback_metrics,
            validation_steps=validation_steps,
            do_validation=do_validation)
      else:
        batch_fit_loop(
            model,
            inputs,
            targets,
            epoch_logs=epoch_logs,
            index_array=index_array,
            out_labels=out_labels,
            callback_model=callback_model,
            batch_size=batch_size,
            sample_weights=sample_weights,
            val_inputs=val_inputs,
            val_targets=val_targets,
            val_sample_weights=val_sample_weights,
            callbacks=callbacks,
            shuffle=shuffle,
            num_train_samples=num_train_samples,
            do_validation=do_validation)
      callbacks.on_epoch_end(epoch, epoch_logs)
      if callback_model.stop_training:
        break
  callbacks.on_train_end()
  return model.history
示例#12
0
def batch_test_loop(model,
                    inputs,
                    targets,
                    batch_size,
                    sample_weights=None,
                    verbose=0):
  """Test function for eager execution when input is given as arrays or tensors.

  Arguments:
      model: Model instance that is being evaluated in Eager mode.
      inputs: List of input arrays.
      targets: List of target arrays.
      batch_size: Integer batch size.
      sample_weights: Optional list of sample weight arrays.
      verbose: Verbosity mode.

  Returns:
      Scalar 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.
  """
  outs = []
  feed_data = inputs + targets
  if sample_weights:
    feed_data += sample_weights
  num_samples = training_utils.check_num_samples(
      feed_data, batch_size=batch_size)
  if verbose == 1:
    progbar = generic_utils.Progbar(target=num_samples)
  batches = generic_utils.make_batches(num_samples, batch_size)
  index_array = np.arange(num_samples)
  for batch_index, (batch_start, batch_end) in enumerate(batches):
    batch_ids = index_array[batch_start:batch_end]
    inputs_batch = slice_arrays(inputs, batch_ids)
    targets_batch = slice_arrays(targets, batch_ids)
    if sample_weights:
      sample_weights_batch = slice_arrays(sample_weights, batch_ids)
    else:
      sample_weights_batch = None

    inputs_batch = [
        ops.convert_to_tensor(val, dtype=backend.floatx())
        for val in inputs_batch
    ]
    targets_batch = [
        ops.convert_to_tensor(val, dtype=backend.floatx())
        for val in targets_batch
    ]
    if sample_weights:
      sample_weights_batch = [
          ops.convert_to_tensor(val, dtype=backend.floatx())
          if val is not None else None for val in sample_weights_batch
      ]

    loss_outs, loss, loss_metrics = _model_loss(
        model,
        inputs_batch,
        targets_batch,
        sample_weights=sample_weights_batch,
        training=False)
    metrics_results = _eager_metrics_fn(model, loss_outs, targets_batch)
    batch_outs = []
    for _, v in zip(model.metrics_names,
                    [backend.mean(loss)] + loss_metrics + metrics_results):
      batch_outs.append(tensor_util.constant_value(v))

    if isinstance(batch_outs, list):
      if batch_index == 0:
        for _ in enumerate(batch_outs):
          outs.append(0.)
      for i, batch_out in enumerate(batch_outs):
        outs[i] += batch_out * len(batch_ids)
    else:
      if batch_index == 0:
        outs.append(0.)
      outs[0] += batch_outs * len(batch_ids)

    if verbose == 1:
      progbar.update(batch_end)

  for i in range(len(outs)):
    outs[i] /= num_samples
  if len(outs) == 1:
    return outs[0]
  return outs
示例#13
0
def fit_loop(model,
             inputs,
             targets,
             sample_weights=None,
             class_weight=None,
             val_inputs=None,
             val_targets=None,
             val_sample_weights=None,
             batch_size=None,
             epochs=1,
             verbose=1,
             callbacks=None,
             shuffle=True,
             callback_metrics=None,
             initial_epoch=0,
             steps_per_epoch=None,
             validation_steps=None):
    """Fit function for eager execution.

  Arguments:
      model: Instance of the model that is being executed in Eager mode.
      inputs: List of input arrays.
      targets: List of target arrays.
      sample_weights: Optional list of sample weight arrays.
      class_weight: Optional class-weight array to weight the importance of
          samples in `inputs` based on the class they belong to, as conveyed by
          `targets`.
      val_inputs: Input data for validation.
      val_targets: Target data for validation.
      val_sample_weights: Sample weight data for validation.
      batch_size: Integer batch size or None if unknown.
      epochs: Number of times to iterate over the data
      verbose: Verbosity mode, 0, 1 or 2
      callbacks: List of callbacks to be called during training
      shuffle: Whether to shuffle the data at the beginning of each epoch
      callback_metrics: List of strings, the display names of the metrics
          passed to the callbacks. They should be the
          concatenation of list the display names of the outputs of
           `f` and the list of display names of the outputs of `f_val`.
      initial_epoch: Epoch at which to start training
          (useful for resuming a previous training run)
      steps_per_epoch: Total number of steps (batches of samples)
          before declaring one epoch finished and starting the
          next epoch. Ignored with the default value of `None`.
      validation_steps: Number of steps to run validation for (only if doing
        validation from data tensors). Ignored with default value of `None`.

  Returns:
      `History` object.

  Raises:
    ValueError: In case of invalid argument values.
  """
    # Required for eager execution
    with backend.learning_phase_scope(1):
        do_validation = False
        if val_inputs:
            do_validation = True
            if (steps_per_epoch is None and verbose and inputs
                    and hasattr(inputs[0], 'shape')
                    and hasattr(val_inputs[0], 'shape')):
                print('Train on %d samples, validate on %d samples' %
                      (inputs[0].shape[0], val_inputs[0].shape[0]))

        num_train_samples = None
        out_labels = None
        if steps_per_epoch is None or model._is_compiled:
            out_labels = model.metrics_names
            if do_validation:
                callback_metrics = copy.copy(out_labels) + [
                    'val_' + n for n in out_labels
                ]
            else:
                callback_metrics = copy.copy(out_labels)

        if steps_per_epoch is None:
            if sample_weights:
                feed_data = inputs + targets + sample_weights
            else:
                feed_data = inputs + targets
            num_train_samples = training_utils.check_num_samples(
                feed_data,
                batch_size=batch_size,
                steps=steps_per_epoch,
                steps_name='steps_per_epoch')

            if num_train_samples is not None:
                index_array = np.arange(num_train_samples)

        model.history = cbks.History()
        callbacks = [cbks.BaseLogger()] + (callbacks or []) + [model.history]
        if verbose:
            if steps_per_epoch is not None:
                count_mode = 'steps'
            else:
                count_mode = 'samples'
            callbacks += [cbks.ProgbarLogger(count_mode)]
        callbacks = cbks.CallbackList(callbacks)

        # it's possible to callback a different model than self
        # (used by Sequential models)
        if hasattr(model, 'callback_model') and model.callback_model:
            callback_model = model.callback_model
        else:
            callback_model = model

        callbacks.set_model(callback_model)

        callbacks.set_params({
            'batch_size': batch_size,
            'epochs': epochs,
            'steps': steps_per_epoch,
            'samples': num_train_samples,
            'verbose': verbose,
            'do_validation': do_validation,
            'metrics': callback_metrics or [],
        })
        callbacks.on_train_begin()
        callback_model.stop_training = False
        for cbk in callbacks:
            if not val_inputs:
                cbk.validation_data = []
            elif isinstance(val_inputs, iterator_ops.EagerIterator):
                cbk.validation_data = val_inputs
            elif val_sample_weights:
                cbk.validation_data = val_inputs + val_targets + val_sample_weights
            else:
                cbk.validation_data = val_inputs + val_targets

        for epoch in range(initial_epoch, epochs):
            callbacks.on_epoch_begin(epoch)
            epoch_logs = {}

            if steps_per_epoch is not None:
                iterator_fit_loop(model,
                                  inputs,
                                  class_weight,
                                  steps_per_epoch=steps_per_epoch,
                                  callback_model=callback_model,
                                  out_labels=out_labels,
                                  epoch_logs=epoch_logs,
                                  val_inputs=val_inputs,
                                  val_targets=val_targets,
                                  val_sample_weights=val_sample_weights,
                                  epochs=epochs,
                                  verbose=verbose,
                                  callbacks=callbacks,
                                  callback_metrics=callback_metrics,
                                  validation_steps=validation_steps,
                                  do_validation=do_validation)
            else:
                batch_fit_loop(model,
                               inputs,
                               targets,
                               epoch_logs=epoch_logs,
                               index_array=index_array,
                               out_labels=out_labels,
                               callback_model=callback_model,
                               batch_size=batch_size,
                               sample_weights=sample_weights,
                               val_inputs=val_inputs,
                               val_targets=val_targets,
                               val_sample_weights=val_sample_weights,
                               callbacks=callbacks,
                               shuffle=shuffle,
                               num_train_samples=num_train_samples,
                               do_validation=do_validation)
            callbacks.on_epoch_end(epoch, epoch_logs)
            if callback_model.stop_training:
                break
    callbacks.on_train_end()
    return model.history
示例#14
0
def batch_test_loop(model,
                    inputs,
                    targets,
                    batch_size,
                    sample_weights=None,
                    verbose=0):
    """Test function for eager execution when input is given as arrays or tensors.

  Arguments:
      model: Model instance that is being evaluated in Eager mode.
      inputs: List of input arrays.
      targets: List of target arrays.
      batch_size: Integer batch size.
      sample_weights: Optional list of sample weight arrays.
      verbose: Verbosity mode.

  Returns:
      Scalar 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.
  """
    outs = []
    feed_data = inputs + targets
    if sample_weights:
        feed_data += sample_weights
    num_samples = training_utils.check_num_samples(feed_data,
                                                   batch_size=batch_size)
    if verbose == 1:
        progbar = generic_utils.Progbar(target=num_samples)
    batches = generic_utils.make_batches(num_samples, batch_size)
    index_array = np.arange(num_samples)
    for batch_index, (batch_start, batch_end) in enumerate(batches):
        batch_ids = index_array[batch_start:batch_end]
        inputs_batch = slice_arrays(inputs, batch_ids)
        targets_batch = slice_arrays(targets, batch_ids)
        if sample_weights:
            sample_weights_batch = slice_arrays(sample_weights, batch_ids)
        else:
            sample_weights_batch = None

        inputs_batch = [
            ops.convert_to_tensor(val, dtype=backend.floatx())
            for val in inputs_batch
        ]
        targets_batch = [
            ops.convert_to_tensor(val, dtype=backend.floatx())
            for val in targets_batch
        ]
        if sample_weights:
            sample_weights_batch = [
                ops.convert_to_tensor(val, dtype=backend.floatx())
                if val is not None else None for val in sample_weights_batch
            ]

        loss_outs, loss, loss_metrics = _model_loss(
            model,
            inputs_batch,
            targets_batch,
            sample_weights=sample_weights_batch,
            training=False)
        metrics_results = _eager_metrics_fn(model, loss_outs, targets_batch)
        batch_outs = []
        for _, v in zip(model.metrics_names,
                        [backend.mean(loss)] + loss_metrics + metrics_results):
            batch_outs.append(tensor_util.constant_value(v))

        if isinstance(batch_outs, list):
            if batch_index == 0:
                for _ in enumerate(batch_outs):
                    outs.append(0.)
            for i, batch_out in enumerate(batch_outs):
                outs[i] += batch_out * len(batch_ids)
        else:
            if batch_index == 0:
                outs.append(0.)
            outs[0] += batch_outs * len(batch_ids)

        if verbose == 1:
            progbar.update(batch_end)

    for i in range(len(outs)):
        outs[i] /= num_samples
    if len(outs) == 1:
        return outs[0]
    return outs
示例#15
0
          Ignored with the default value of `None`.

  Returns:
      Array of predictions (if the model has a single output)
      or list of arrays of predictions
      (if the model has multiple outputs).
  """
  model._make_predict_function()
  f = model.predict_function

        # Callbacks batch end.
        batch_logs = cbks.make_logs(model, batch_logs, batch_outs, mode)
        callbacks._call_batch_hook(mode, 'end', batch_index, batch_logs)
        progbar.on_batch_end(batch_index, batch_logs)

  num_samples = training_utils.check_num_samples(
      inputs, batch_size, steps, 'steps')
  if verbose == 1:
    if steps is not None:
      progbar = Progbar(target=steps)
    else:
      progbar = Progbar(target=num_samples)

  indices_for_conversion_to_dense = []
  for i in range(len(model._feed_inputs)):
    if (issparse is not None and issparse(inputs[i]) and
        not K.is_sparse(model._feed_inputs[i])):
      indices_for_conversion_to_dense.append(i)

  if steps is not None:
    # Step-based predictions.
    # Since we do not know how many samples