I know that to seed the randomness of numpy.random, and be able to reproduce it, I should us:
import numpy as np
np.random.seed(1234)
but what does
np.random.RandomState()
do?
I know that to seed the randomness of numpy.random, and be able to reproduce it, I should us:
import numpy as np
np.random.seed(1234)
but what does
np.random.RandomState()
do?
If you want to set the seed that calls to np.random...
will use, use np.random.seed
:
np.random.seed(1234)
np.random.uniform(0, 10, 5)
#array([ 1.9151945 , 6.22108771, 4.37727739, 7.85358584, 7.79975808])
np.random.rand(2,3)
#array([[ 0.27259261, 0.27646426, 0.80187218],
# [ 0.95813935, 0.87593263, 0.35781727]])
Use the class to avoid impacting the global numpy state:
r = np.random.RandomState(1234)
r.uniform(0, 10, 5)
#array([ 1.9151945 , 6.22108771, 4.37727739, 7.85358584, 7.79975808])
And it maintains the state just as before:
r.rand(2,3)
#array([[ 0.27259261, 0.27646426, 0.80187218],
# [ 0.95813935, 0.87593263, 0.35781727]])
You can see the state of the sort of 'global' class with:
np.random.get_state()
and of your own class instance with:
r.get_state()
This method is called when RandomState is initialized. It can be called again to re-seed the generator.
It says nothing about the fact that when I call this method, I'm only affecting one global instance (or whatever), and not any of the other RandomState
instances.
numpy.random
module documentation should state clearly that the module is initialized with effectively an instance of the RandomState
. But there isn't any documentation on the module itself at all that I can find.
Feb 15, 2016 at 15:09
np.random.RandomState()
constructs a random number generator. It does not have any effect on the freestanding functions in np.random
, but must be used explicitly:
>>> rng = np.random.RandomState(42)
>>> rng.randn(4)
array([ 0.49671415, -0.1382643 , 0.64768854, 1.52302986])
>>> rng2 = np.random.RandomState(42)
>>> rng2.randn(4)
array([ 0.49671415, -0.1382643 , 0.64768854, 1.52302986])
random.seed is a method to fill random.RandomState container.
from numpy docs:
numpy.random.seed(seed=None)
Seed the generator.
This method is called when RandomState is initialized. It can be called again to re-seed the generator. For details, see RandomState.
class numpy.random.RandomState
Container for the Mersenne Twister pseudo-random number generator.
np.random.RandomState() - a class that provides several methods based on different probability distributions.
np.random.RandomState.seed() - called when RandomState() is initialised.
Seed
is a global pseudo-random generator. However, randomstate
is a pseudo-random generator isolated from others, which only impact specific variable.
rng = np.random.RandomState(0)
rng.rand(4)
# Out[1]: array([0.5488135 , 0.71518937, 0.60276338, 0.54488318])
rng = np.random.RandomState(0)
rng.rand(4)
# Out[2]: array([0.5488135 , 0.71518937, 0.60276338, 0.54488318])
It's basically as same as Seed
, but as the following, We don't assign randomstate to a variable.
np.random.RandomState(0)
# Out[3]: <mtrand.RandomState at 0xddaa288>
np.random.rand(4)
# Out[4]: array([0.62395295, 0.1156184 , 0.31728548, 0.41482621])
np.random.RandomState(0)
# Out[5]: <mtrand.RandomState at 0xddaac38>
np.random.rand(4)
# Out[6]: array([0.86630916, 0.25045537, 0.48303426, 0.98555979])
The latter is different from the former. It means that randomstate only avails inside specific variable.
It is worth mentioning this description in scikit-learn, ["Controlling randomness"] 1
and this usage example in one of the models