In writing some parallel code using python multiprocessing, I noticed strange performance behavior differences between running the code on my Mac laptop and a windows server machine. The Mac laptop is about twice as fast as the windows machine when I run the code serially, but was twice as slow when running with 2 cores, and it's performance plateaued with more cores (still under the total core count), while the windows machine showed decent scaling.
Poking around with cProfile, I realized that using multiple cores, the Mac was spending almost all of its time calling datetime.datetime.now
, which is used to do some internal timing, using the following context manager:
class timer:
def __init__(self):
self.timer = datetime.datetime.now
def __enter__(self):
self.start = self.timer()
return self
def __exit__(self, *arg):
self.end = self.timer()
self.elapsed = (self.end - self.start)
which is used something like:
with timer() as t:
<run some code>
total_time += t.elapsed
When I modify the code to not call datetime.datetime.now
and set self.elapsed = datetime.timedelta(0)
, I recover the proper parallel scaling.
I don't see this behavior under Windows, so I'm wondering why OSX would take a performance hit calling now()
from multiple processes. Calling two serial instances of the program does not result in one process effecting the other's performance vs a single serial run.
Does anyone have an explanation for this behavior? I'm using Python 2.7.10 on both machines.