Learning about Python Multiprocessing (from a PMOTW article) and would love some clarification on what exactly the join()
method is doing.
In an old tutorial from 2008 it states that without the p.join()
call in the code below, "the child process will sit idle and not terminate, becoming a zombie you must manually kill".
from multiprocessing import Process
def say_hello(name='world'):
print "Hello, %s" % name
p = Process(target=say_hello)
p.start()
p.join()
I added a printout of the PID
as well as a time.sleep
to test and as far as I can tell, the process terminates on its own:
from multiprocessing import Process
import sys
import time
def say_hello(name='world'):
print "Hello, %s" % name
print 'Starting:', p.name, p.pid
sys.stdout.flush()
print 'Exiting :', p.name, p.pid
sys.stdout.flush()
time.sleep(20)
p = Process(target=say_hello)
p.start()
# no p.join()
within 20 seconds:
936 ttys000 0:00.05 /Library/Frameworks/Python.framework/Versions/2.7/Reso
938 ttys000 0:00.00 /Library/Frameworks/Python.framework/Versions/2.7/Reso
947 ttys001 0:00.13 -bash
after 20 seconds:
947 ttys001 0:00.13 -bash
Behavior is the same with p.join()
added back at end of the file. Python Module of the Week offers a very readable explanation of the module; "To wait until a process has completed its work and exited, use the join() method.", but it seems like at least OS X was doing that anyway.
Am also wondering about the name of the method. Is the .join()
method concatenating anything here? Is it concatenating a process with it's end? Or does it just share a name with Python's native .join()
method?
The join()
method, when used with threading
or multiprocessing
, is not related to str.join()
- it's not actually concatenating anything together. Rather, it just means "wait for this [thread/process] to complete". The name join
is used because the multiprocessing
module's API is meant to look as similar to the threading
module's API, and the threading
module uses join
for its Thread
object. Using the term join
to mean "wait for a thread to complete" is common across many programming languages, so Python just adopted it as well.
Now, the reason you see the 20 second delay both with and without the call to join()
is because by default, when the main process is ready to exit, it will implicitly call join()
on all running multiprocessing.Process
instances. This isn't as clearly stated in the multiprocessing
docs as it should be, but it is mentioned in the Programming Guidelines section:
Remember also that non-daemonic processes will be automatically be joined.
You can override this behavior by setting the daemon
flag on the Process
to True
prior to starting the process:
p = Process(target=say_hello)
p.daemon = True
p.start()
# Both parent and child will exit here, since the main process has completed.
If you do that, the child process will be terminated as soon as the main process completes:
daemon
The process’s daemon flag, a Boolean value. This must be set before start() is called.
The initial value is inherited from the creating process.
When a process exits, it attempts to terminate all of its daemonic child processes.