I just observed that when using Python3 the shuffling of a list with
random.shuffle needs approximately half the runtime when explicitly submitting the function
random.random for the
random keyword argument. I checked whether Python2 has the same problem but found that it only occurs with Python3.
I use the following code to measure the runtime of the two versions:
from timeit import Timer t1 = Timer("random.shuffle(l)", "import random; l = list(range(100000))") t2 = Timer("random.shuffle(l, random = random.random)", "import random; l = list(range(100000))") print("With default rand: %s" % t1.repeat(10,1)) print("With custom rand: %s" % t2.repeat(10,1))
According to the documentation for shuffle the same function
random.random is used in the default case when I omit the optional keyword argument
random, so there should be no difference when I give it the same function to generate the random number as in the default case.
I checked the respective sources (Python2 vs. Python3) for the
shuffle function in the
Lib/random.py folders and found that they behave the same way if I explicitly call the Python3 version with a function for the
random keyword. If I omit this argument, Python3 uses the helper function
_randbelow so there should be the root for my problem. I can't see why Python3 uses
_randbelow because it slows
shuffle down. As far as I understand it, its benefit lies in generating arbitrary large random numbers, but it should not slow down my shuffling of a list that has way fewer than 2^32 elements (100000 in my case).
Can anyone explain to me why I'm seeing such a difference in the runtimes although they should be closer together when I use Python3?
P.S.: Please note that I'm not interested why runtime with Python2 is better than with Python3, but the difference in runtime when using the argument
rand=rand.rand argument in Python3 versus not using it in Python3 only.