I have a dataset of 22 GB. I would like to process it on my laptop. Of course I can't load it in memory.
I use a lot sklearn but for much smaller datasets.
In this situations the classical approach should be something like.
Read only part of the data -> Partial train your estimator -> delete the data -> read other part of the data -> continue to train your estimator.
I have seen that some sklearn algorithm have the partial fit method that should allow us to train the estimator with various subsamples of the data.
Now I am wondering is there an easy why to do that in sklearn? I am looking for something like
r = read_part_of_data('data.csv') m = sk.my_model `for i in range(n): x = r.read_next_chunk(20 lines) m.partial_fit(x) m.predict(new_x)
Maybe sklearn is not the right tool for these kind of things? Let me know.