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I am trying to define custom loss and accuracy functions for each output in a two output neural network model using Keras. Let's call the two outputs: A and B.

My objectives are:

  1. Give the accuracy/loss functions for one of the outputs names such that they can be reported on the same graphs in tensorboard as the same corresponding output from older/existing models I have laying around. So for example, accuracies and losses for output A in this two output network should be viewable in the same graph in tensorboard as output A of some older model that I have. More specifically, these older models all output A_output_acc, val_A_output_acc, A_output_loss and val_A_output_loss. So I want the corresponding metric readouts for the A output in this new model to have those names as well so that they are viewable/comparable on the same graph in tensorboard.
  2. Allow for easy configuration of accuracy/loss functions so that I can swap at whim different losses/accuracies for each output without hard coding them.

I have a Modeler class that constructs and compiles a network. The relevant code follows.

class Modeler(BaseModeler):
  def __init__(self, loss=None,accuracy=None, ...):
    """
    Returns compiled keras model.  

    """
    self.loss = loss
    self.accuracy = accuracy
    model = self.build()

    ...

    model.compile(
        loss={ # we are explicit here and name the outputs even though in this case it's not necessary
            "A_output": self.A_output_loss(),#loss,
            "B_output": self.B_output_loss()#loss
        },
        optimizer=optimus,
        metrics= { # we need to tie each output to a specific list of metrics
            "A_output": [self.A_output_acc()],
                            # self.A_output_loss()], # redundant since it's already reported via `loss` param,
                                                        # ends up showing up as `A_output_loss_1` since keras
                                                        # already reports `A_output_loss` via loss param
            "B_output": [self.B_output_acc()]
                            # self.B_output_loss()]  # redundant since it's already reported via `loss` param
                                                        # ends up showing up as `B_output_loss_1` since keras
                                                        # already reports `B_output_loss` via loss param
        })

    self._model = model


  def A_output_acc(self):
    """
    Allows us to output custom train/test accuracy/loss metrics to desired names e.g. 'A_output_acc' and
    'val_A_output_acc' respectively so that they may be plotted on same tensorboard graph as the accuracies from
    other models that same outputs.

    :return:    accuracy metric
    """

    acc = None
    if self.accuracy == TypedAccuracies.BINARY:
        def acc(y_true, y_pred):
            return self.binary_accuracy(y_true, y_pred)
    elif self.accuracy == TypedAccuracies.DICE:
        def acc(y_true, y_pred):
            return self.dice_coef(y_true, y_pred)
    elif self.accuracy == TypedAccuracies.JACARD:
        def acc(y_true, y_pred):
            return self.jacard_coef(y_true, y_pred)
    else:
        logger.debug('ERROR: undefined accuracy specified: {}'.format(self.accuracy))

    return acc


  def A_output_loss(self):
    """
    Allows us to output custom train/test accuracy/loss metrics to desired names e.g. 'A_output_acc' and
    'val_A_output_acc' respectively so that they may be plotted on same tensorboard graph as the accuracies from
    other models that same outputs.

    :return:    loss metric
    """

    loss = None
    if self.loss == TypedLosses.BINARY_CROSSENTROPY:
        def loss(y_true, y_pred):
            return self.binary_crossentropy(y_true, y_pred)
    elif self.loss == TypedLosses.DICE:
        def loss(y_true, y_pred):
            return self.dice_coef_loss(y_true, y_pred)
    elif self.loss == TypedLosses.JACARD:
        def loss(y_true, y_pred):
            return self.jacard_coef_loss(y_true, y_pred)
    else:
        logger.debug('ERROR: undefined loss specified: {}'.format(self.accuracy))

    return loss


  def B_output_acc(self):
    """
    Allows us to output custom train/test accuracy/loss metrics to desired names e.g. 'A_output_acc' and
    'val_A_output_acc' respectively so that they may be plotted on same tensorboard graph as the accuracies from
    other models that same outputs.

    :return:    accuracy metric
    """

    acc = None
    if self.accuracy == TypedAccuracies.BINARY:
        def acc(y_true, y_pred):
            return self.binary_accuracy(y_true, y_pred)
    elif self.accuracy == TypedAccuracies.DICE:
        def acc(y_true, y_pred):
            return self.dice_coef(y_true, y_pred)
    elif self.accuracy == TypedAccuracies.JACARD:
        def acc(y_true, y_pred):
            return self.jacard_coef(y_true, y_pred)
    else:
        logger.debug('ERROR: undefined accuracy specified: {}'.format(self.accuracy))

    return acc


  def B_output_loss(self):
    """
    Allows us to output custom train/test accuracy/loss metrics to desired names e.g. 'A_output_acc' and
    'val_A_output_acc' respectively so that they may be plotted on same tensorboard graph as the accuracies from
    other models that same outputs.

    :return:    loss metric
    """

    loss = None
    if self.loss == TypedLosses.BINARY_CROSSENTROPY:
        def loss(y_true, y_pred):
            return self.binary_crossentropy(y_true, y_pred)
    elif self.loss == TypedLosses.DICE:
        def loss(y_true, y_pred):
            return self.dice_coef_loss(y_true, y_pred)
    elif self.loss == TypedLosses.JACARD:
        def loss(y_true, y_pred):
            return self.jacard_coef_loss(y_true, y_pred)
    else:
        logger.debug('ERROR: undefined loss specified: {}'.format(self.accuracy))

    return loss


  def load_model(self, model_path=None):
    """
    Returns built model from model_path assuming using the default architecture.

    :param model_path:   str, path to model file
    :return:             defined model with weights loaded
    """

    custom_objects = {'A_output_acc': self.A_output_acc(),
                      'A_output_loss': self.A_output_loss(),
                      'B_output_acc': self.B_output_acc(),
                      'B_output_loss': self.B_output_loss()}
    self.model = load_model(filepath=model_path, custom_objects=custom_objects)
    return self


  def build(self, stuff...):
    """
    Returns model architecture.  Instead of just one task, it performs two: A and B.

    :return:            model
    """

    ...

    A_conv_final = Conv2D(1, (1, 1), activation="sigmoid", name="A_output")(up_conv_224)

    B_conv_final = Conv2D(1, (1, 1), activation="sigmoid", name="B_output")(up_conv_224)

    model = Model(inputs=[input], outputs=[A_conv_final, B_conv_final], name="my_model")
    return model

The training works fine. However, when I go to load the model for inference later, using the above load_model() function, Keras complains that it doesn't know about the custom metrics I have given it:

ValueError: Unknown loss function:loss

What seems to be happening is that Keras is appending the returned function created in each of the custom metric functions above (def loss(...), def acc(...)) to the dictionary key given in the metrics parameter of the model.compile() call. So, for example the key is A_output and we call the custom accuracy function, A_output_acc() for it, which returns a function called acc. So the result is A_output + acc = A_output_acc. This means that I can't name those returned functions: acc/loss something else, because that will mess up the reporting/graphs. This is all fine and well, BUT I don't know how to write my load function with a properly defined custom_objects parameter (or define/name my custom metrics functions for that matter) so that Keras knows which custom accuracy/loss functions are to be loaded with each output head.

More to the point, it seems to be wanting a custom_objects dictionary of the following form in load_model() (which won't work for obvious reasons):

custom_objects = {'acc': self.A_output_acc(),
                  'loss': self.A_output_loss(),
                  'acc': self.B_output_acc(),
                  'loss': self.B_output_loss()}

instead of:

custom_objects = {'A_output_acc': self.A_output_acc(),
                  'A_output_loss': self.A_output_loss(),
                  'B_output_acc': self.B_output_acc(),
                  'B_output_loss': self.B_output_loss()}

Any insights or work-arounds?

Thanks!

EDIT:

I've confirmed the reasoning above about key/function name concatenation IS correct for the metrics parameter of Keras' model.compile() call. HOWEVER, for the loss parameter in model.compile(), Keras just concatenates the key with the word loss, yet expects the name of the custom loss function in the custom_objects parameter of model.load_model()...go figure.

0

Remove the () at the end of your losses and metrics and that should be it. It'll look like this instead

loss={ 
       "A_output": self.A_output_loss,
       "B_output": self.B_output_loss
      }

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