I would like to use RMSE to compare more than two data samples (10 to be exact). I found this function which is used to compare two data samples the actual and predicted samples of a model. I am wondering if I can use the same or similar function to compute RMSE of the 10 data samples in one go.

```
RMSE = sklearn.metrics.mean_squared_error(datasample1, datasample2, squared=False)
```

`datasample1`

should be a list of 10 numbers and`datasample2`

as well.`y_true`

and`y_pred`

(2 inputs) or for your case`datasample1`

and`datasample2`

. If you have 10 inputs (I don't know how it will be computed loss or distance between 10 values!), it would be a custom loss function, and you should implement the operations yourself.