Whats the difference between ThreadPool
and Pool
in multiprocessing
module. When I try my code out, this is the main difference I see:
from multiprocessing import Pool
import os, time
print("hi outside of main()")
def hello(x):
print("inside hello()")
print("Proccess id: ", os.getpid())
time.sleep(3)
return x*x
if __name__ == "__main__":
p = Pool(5)
pool_output = p.map(hello, range(3))
print(pool_output)
I see the following output:
hi outside of main()
hi outside of main()
hi outside of main()
hi outside of main()
hi outside of main()
hi outside of main()
inside hello()
Proccess id: 13268
inside hello()
Proccess id: 11104
inside hello()
Proccess id: 13064
[0, 1, 4]
With "ThreadPool":
from multiprocessing.pool import ThreadPool
import os, time
print("hi outside of main()")
def hello(x):
print("inside hello()")
print("Proccess id: ", os.getpid())
time.sleep(3)
return x*x
if __name__ == "__main__":
p = ThreadPool(5)
pool_output = p.map(hello, range(3))
print(pool_output)
I see the following output:
hi outside of main()
inside hello()
inside hello()
Proccess id: 15204
Proccess id: 15204
inside hello()
Proccess id: 15204
[0, 1, 4]
My questions are:
why is the “outside __main__()” run each time in the
Pool
?multiprocessing.pool.ThreadPool
doesn't spawn new processes? It just creates new threads?If so whats the difference between using
multiprocessing.pool.ThreadPool
as opposed to justthreading
module?
I don't see any official documentation for ThreadPool
anywhere, can someone help me out where I can find it?
The
multiprocessing.pool.ThreadPool
behaves the same as themultiprocessing.Pool
with the only difference that uses threads instead of processes to run the workers logic.The reason you see
being printed multiple times with the
multiprocessing.Pool
is due to the fact that the pool will spawn 5 independent processes. Each process will initialize its own Python interpreter and load the module resulting in the top levelprint
being executed again.Note that this happens only if the
spawn
process creation method is used (only method available on Windows). If you use thefork
one (Unix), you will see the message printed only once as for the threads.The
multiprocessing.pool.ThreadPool
is not documented as its implementation has never been completed. It lacks tests and documentation. You can see its implementation in the source code.I believe the next natural question is: when to use a thread based pool and when to use a process based one?
The rule of thumb is:
multiprocessing.pool.ThreadPool
multiprocessing.Pool
multiprocessing.Pool
due to the advantage process isolation bringsOn Python 3 you might want to take a look at the
concurrent.future.Executor
pool implementations.