Should I use np.random.seed or random.seed?
That depends on whether in your code you are using numpy's random number generator or the one in
The random number generators in
random have totally separate internal states, so
numpy.random.seed() will not affect the random sequences produced by
random.random(), and likewise
random.seed() will not affect
numpy.random.randn() etc. If you are using both
numpy.random in your code then you will need to separately set the seeds for both.
Your question seems to be specifically about scikit-learn's random number generators. As far as I can tell, scikit-learn uses
numpy.random throughout, so you should use
np.random.seed() rather than
One important caveat is that
np.random is not threadsafe - if you set a global seed, then launch several subprocesses and generate random numbers within them using
np.random, each subprocess will inherit the RNG state from its parent, meaning that you will get identical random variates in each subprocess. The usual way around this problem is to pass a different seed (or
numpy.random.Random instance) to each subprocess, such that each one has a separate local RNG state.
Since some parts of scikit-learn can run in parallel using joblib, you will see that some classes and functions have an option to pass either a seed or an
np.random.RandomState instance (e.g. the
random_state= parameter to
sklearn.decomposition.MiniBatchSparsePCA). I tend to use a single global seed for a script, then generate new random seeds based on the global seed for any parallel functions.