I've looked at the Sklearn stratified sampling docs as well as the pandas docs and also Stratified samples from Pandas and sklearn stratified sampling based on a column but they do not address this issue.

Im looking for a fast pandas/sklearn/numpy way to generate stratified samples of size n from a dataset. However, for rows with less than the specified sampling number, it should take all of the entries.

Concrete example:

Thank you! :)

`imblearn`

downsampling or undersampling techniques for this: imbalanced-learn.org/stable/under_sampling.html