I am wondering how does Keras compute a metric (a custom one or not).

For example, suppose I have the following metric which yields the maximal error between the prediction and the ground truth:

def max_error(y_true, y_pred):

    import keras.backend as K

    return K.max(K.abs(y_true-y_pred))

Is the output scalar metric computed on all mini-batches and then averaged or is the metric directly computed on the whole dataset (training or validation)?

3 Answers 3


Something additional to know with respect to the metric for the VALIDATION set:

Contrary to what is suggested in another answer, I just saw that the metric on the validation set is calculated in batches, and then averaged (of course the trained model at the end of the epoch is used, in contrast to how the metric score is calculated for the training set).

If you want to compute it on the whole validation data at once, you have to use a callback as described in the accepted answer of guangshengzuo (see https://keras.io/guides/writing_your_own_callbacks/ for more details).

Sure, for the usual metrics, there will not be any difference whether you calculate first in batches and average, or do it all in one big batch. BUT for custom metrics, there very well can be: I just had a case where the metric would tune a parameter, based on the data.

Edit: added link on callbacks, in response to comment

  • Do you have by any chance an example code for this custom callback (since you have become the accepted answer)? Jul 18, 2019 at 12:41
  • 1
    Also, in the case of a custom callback metric, is there a way to add it to Tensorboard? Jul 18, 2019 at 12:44

There is a difference between the metric on training dataset and on validation dataset. For the val set the metric is calculated at epoch end for your whole val dataset. For the train set: The metric is calculated on batch end and the average keeps getting updated till epochs end.

As you can see the metric for the train set is evaluated on the fly with each batch was evaluated using different weights. That's why the train metric shows sometimes strange behaviour.

  • Ok, indeed for some metrics, averaging over mini-batches does not make sense, as it is the case for my max_error' metric. I have thus added my metrics to stateful_metrics in the BaseLogger to accumulate the metrics over mini-batches.
    – floflo29
    Mar 19, 2018 at 10:19
  • Actually it's never a good idea: Imagine fist epoch and your model is not trained at all. Then after the first batch you evaluate something on a barely trained model. This will be averaged with all the other batches. This includes batches at the end of the epoch, which already uses a much better model. You can see the metric for the train dataset as a on the fly metric which you shouldn't take very seriously. I always recommend to write your own custom callback, in which you calculate and print your desired metrics yourself. That way you're sure what's happening.
    – dennis-w
    Mar 19, 2018 at 10:24
  • I understand, but as my model converges, the phenomenom you describe will have its influence neglectible no? But I agree that the validation metrics are the most interesting values to monitor to check my model performances.
    – floflo29
    Mar 19, 2018 at 10:39
  • Yep you're right. So if it doesn't bother you, you're good to go
    – dennis-w
    Mar 19, 2018 at 10:43
  • 2
    Are you sure that the metric is computed on the whole validation dataset and not averaged? Because when I use the evaluate() function the metrics values depend on the batch_size argument.
    – floflo29
    Mar 19, 2018 at 12:33

Dennis has already explain this clearly.

One more thing to point out, if you want compute the metric over all train datasets, Or like your custome metric function could just be computed on single pass and no averaging, you could try use the keras callback and define the on_epoch_end, in on_epoch_end method you could compute this on whole train data.

like this :

 def on_epoch_end(self, epoch, logs={}):
     y_pred = self.model.predict(self.X_train, verbose=0)
     score = max_error(self.y_train, y_pred)
     y_val_pred = self.model.predict(self.X_val, verbose=0)
     val_score = max_error(self.y_val, y_val_pred)
     print("\n ROC-AUC - epoch: %d - train score: %.6f \n - val score: %.6f" % (epoch+1, score, val_score))

And you need pass the train data and val data to model.fit's validation_data parameter.

  • That's what I've done using self.model.evaluate within on_epoch_end
    – floflo29
    Mar 19, 2018 at 16:53
  • if you do as code above, then the metric is evaluate on all train datas Mar 20, 2018 at 2:01
  • using batch_size=self.y_val.size in evaluate works too. Thanks
    – floflo29
    Mar 20, 2018 at 7:33

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.