I'm learning keras API in tensorflow(2.3). In this guide on tensorflow website, I found an example of custom loss funciton:

```
def custom_mean_squared_error(y_true, y_pred):
return tf.math.reduce_mean(tf.square(y_true - y_pred))
```

The `reduce_mean`

function in this custom loss function will return an scalar.

Is it right to define loss function like this? As far as I know, the first dimension of the shapes of `y_true`

and `y_pred`

is the batch size. I think the loss function should return loss values for every sample in the batch. So the loss function shoud give an array of shape `(batch_size,)`

. But the above function gives a single value for the whole batch.

Maybe the above example is wrong? Could anyone give me some help on this problem?

p.s. **Why do I think the loss function should return an array rather than a single value?**

I read the source code of Model class. When you provide a loss function (please note it's a **function**, not a loss **class**) to `Model.compile()`

method, ths loss function is used to construct a `LossesContainer`

object, which is stored in `Model.compiled_loss`

. This loss function passed to the constructor of `LossesContainer`

class is used once again to construct a `LossFunctionWrapper`

object, which is stored in `LossesContainer._losses`

.

**According to the source code of LossFunctionWrapper class, the overall loss value for a training batch is calculated by the LossFunctionWrapper.__call__() method (inherited from Loss class), i.e. it returns a single loss value for the whole batch.** But the

`LossFunctionWrapper.__call__()`

first calls the `LossFunctionWrapper.call()`

method to obtain an array of losses for every sample in the training batch. Then these losses are fianlly averaged to get the single loss value for the whole batch. It's in the `LossFunctionWrapper.call()`

method that the loss function provided to the `Model.compile()`

method is called.That's why I think the custom loss funciton should return an array of losses, insead of a single scalar value. Besides, if we write a custom `Loss`

class for the `Model.compile()`

method, the `call()`

method of our custom `Loss`

class should also return an array, rather than a signal value.

I opened an issue on github. It's confirmed that custom loss function is required to return one loss value per sample. The example will need to be updated to reflect this.