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 `random`

.

The random number generators in `numpy.random`

and `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 `random`

and `numpy.random`

in your code then you will need to separately set the seeds for both.

## Update

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 `random.seed()`

.

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.

`np.random.seed()`

you won't need to import anything, but for using`random.seed()`

you will need to import the`random`

module`Random`

object and set its seed instead. Read the last comment by Muhammad Alkarouri in this question for a safer workaround: stackoverflow.com/a/3717456/1524913`color_rnd`

as per that example. If I run`color_rnd.seed(1234)`

, will functions like`sklearn.cross_validation.KFold`

"know" to use it instead of whatever RNG it normally uses?`random`

directly sadly. My point was, at least then. whenever you type code, avoid to use`random`

itself directly. I'm not sure what to do in your scenario, that's a bit of a bummer. Maybe a decorator but I think you'd have to tinker with the function context but I'm not 100% sure, I'd have to have a deeper look at it to be sure.