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)?