As I understand, RF has an internal in-the-bag and out-of-bag validation technique such that 1/3 of the data is withheld (out of bag) and 2/3 of the data is used to train the rf model.

My question is that if above is true, why is there a need to partition the dataset and consequently use the xtest & ytest parameters.

Please consider the question in terms of regression and not classification.