I am trying to use a deep learning model for time series prediction, and before passing the data to the model I want to scale the different variables as they have widely different ranges.
I have normally done this "on the fly": load the training subset of the data set, obtain the scaler from the whole subset, store it and then load it when I want to use it for testing.
Now the data is pretty big and I will not load all the training data at once for training.
How could I go to obtain the scaler? A priori I thought of doing a one-time operation of loading all the data just to calculate the scaler (normally I use the sklearn scalers, like StandardScaler), and then load it when I do my training process.
Is this a common practice? If it is, how would you do if you add data to the training dataset? can scalers be combined to avoid that one-time operation and just "update" the scaler?