ValueError: 'Pool not running' when trying to loop the multiprocessing pool - python

I'm trying to run the same pool three times so that it adds the values in the same list:
import multiprocessing
def foo(name,archive):
print('hello ', name)
archive.append(f"hello {name}")
def main():
max_process = multiprocessing.cpu_count()-1 or 1
pool = multiprocessing.Pool(max_process)
manager = multiprocessing.Manager()
archive = manager.list()
arguments = ['home','away','draw']
for _ in range(3):
[pool.apply_async(foo, args=[name,archive]) for name in arguments]
pool.close()
pool.join()
print(archive)
if __name__ == '__main__':
main()
The first batch runs perfectly, but when the second batch goes, this error appears:
ValueError: Pool not running
How should I proceed to generate this looping?

As indicated by Nullman in comments, the error was in keeping pool.close() and pool.join() inside the loop, bringing them out, worked perfectly:
import multiprocessing
def foo(name,archive):
print('hello ', name)
archive.append(f"hello {name}")
def main():
max_process = multiprocessing.cpu_count()-1 or 1
pool = multiprocessing.Pool(max_process)
manager = multiprocessing.Manager()
archive = manager.list()
arguments = ['home','away','draw']
for _ in range(3):
[pool.apply_async(foo, args=[name,archive]) for name in arguments]
pool.close()
pool.join()
print(archive)
if __name__ == '__main__':
main()

Related

How to return data from a function called by multiprocessing.Process? (Python3) [duplicate]

In the example code below, I'd like to get the return value of the function worker. How can I go about doing this? Where is this value stored?
Example Code:
import multiprocessing
def worker(procnum):
'''worker function'''
print str(procnum) + ' represent!'
return procnum
if __name__ == '__main__':
jobs = []
for i in range(5):
p = multiprocessing.Process(target=worker, args=(i,))
jobs.append(p)
p.start()
for proc in jobs:
proc.join()
print jobs
Output:
0 represent!
1 represent!
2 represent!
3 represent!
4 represent!
[<Process(Process-1, stopped)>, <Process(Process-2, stopped)>, <Process(Process-3, stopped)>, <Process(Process-4, stopped)>, <Process(Process-5, stopped)>]
I can't seem to find the relevant attribute in the objects stored in jobs.
Use shared variable to communicate. For example like this:
import multiprocessing
def worker(procnum, return_dict):
"""worker function"""
print(str(procnum) + " represent!")
return_dict[procnum] = procnum
if __name__ == "__main__":
manager = multiprocessing.Manager()
return_dict = manager.dict()
jobs = []
for i in range(5):
p = multiprocessing.Process(target=worker, args=(i, return_dict))
jobs.append(p)
p.start()
for proc in jobs:
proc.join()
print(return_dict.values())
I think the approach suggested by #sega_sai is the better one. But it really needs a code example, so here goes:
import multiprocessing
from os import getpid
def worker(procnum):
print('I am number %d in process %d' % (procnum, getpid()))
return getpid()
if __name__ == '__main__':
pool = multiprocessing.Pool(processes = 3)
print(pool.map(worker, range(5)))
Which will print the return values:
I am number 0 in process 19139
I am number 1 in process 19138
I am number 2 in process 19140
I am number 3 in process 19139
I am number 4 in process 19140
[19139, 19138, 19140, 19139, 19140]
If you are familiar with map (the Python 2 built-in) this should not be too challenging. Otherwise have a look at sega_Sai's link.
Note how little code is needed. (Also note how processes are re-used).
For anyone else who is seeking how to get a value from a Process using Queue:
import multiprocessing
ret = {'foo': False}
def worker(queue):
ret = queue.get()
ret['foo'] = True
queue.put(ret)
if __name__ == '__main__':
queue = multiprocessing.Queue()
queue.put(ret)
p = multiprocessing.Process(target=worker, args=(queue,))
p.start()
p.join()
print(queue.get()) # Prints {"foo": True}
Note that in Windows or Jupyter Notebook, with multithreading you have to save this as a file and execute the file. If you do it in a command prompt you will see an error like this:
AttributeError: Can't get attribute 'worker' on <module '__main__' (built-in)>
For some reason, I couldn't find a general example of how to do this with Queue anywhere (even Python's doc examples don't spawn multiple processes), so here's what I got working after like 10 tries:
from multiprocessing import Process, Queue
def add_helper(queue, arg1, arg2): # the func called in child processes
ret = arg1 + arg2
queue.put(ret)
def multi_add(): # spawns child processes
q = Queue()
processes = []
rets = []
for _ in range(0, 100):
p = Process(target=add_helper, args=(q, 1, 2))
processes.append(p)
p.start()
for p in processes:
ret = q.get() # will block
rets.append(ret)
for p in processes:
p.join()
return rets
Queue is a blocking, thread-safe queue that you can use to store the return values from the child processes. So you have to pass the queue to each process. Something less obvious here is that you have to get() from the queue before you join the Processes or else the queue fills up and blocks everything.
Update for those who are object-oriented (tested in Python 3.4):
from multiprocessing import Process, Queue
class Multiprocessor():
def __init__(self):
self.processes = []
self.queue = Queue()
#staticmethod
def _wrapper(func, queue, args, kwargs):
ret = func(*args, **kwargs)
queue.put(ret)
def run(self, func, *args, **kwargs):
args2 = [func, self.queue, args, kwargs]
p = Process(target=self._wrapper, args=args2)
self.processes.append(p)
p.start()
def wait(self):
rets = []
for p in self.processes:
ret = self.queue.get()
rets.append(ret)
for p in self.processes:
p.join()
return rets
# tester
if __name__ == "__main__":
mp = Multiprocessor()
num_proc = 64
for _ in range(num_proc): # queue up multiple tasks running `sum`
mp.run(sum, [1, 2, 3, 4, 5])
ret = mp.wait() # get all results
print(ret)
assert len(ret) == num_proc and all(r == 15 for r in ret)
This example shows how to use a list of multiprocessing.Pipe instances to return strings from an arbitrary number of processes:
import multiprocessing
def worker(procnum, send_end):
'''worker function'''
result = str(procnum) + ' represent!'
print result
send_end.send(result)
def main():
jobs = []
pipe_list = []
for i in range(5):
recv_end, send_end = multiprocessing.Pipe(False)
p = multiprocessing.Process(target=worker, args=(i, send_end))
jobs.append(p)
pipe_list.append(recv_end)
p.start()
for proc in jobs:
proc.join()
result_list = [x.recv() for x in pipe_list]
print result_list
if __name__ == '__main__':
main()
Output:
0 represent!
1 represent!
2 represent!
3 represent!
4 represent!
['0 represent!', '1 represent!', '2 represent!', '3 represent!', '4 represent!']
This solution uses fewer resources than a multiprocessing.Queue which uses
a Pipe
at least one Lock
a buffer
a thread
or a multiprocessing.SimpleQueue which uses
a Pipe
at least one Lock
It is very instructive to look at the source for each of these types.
It seems that you should use the multiprocessing.Pool class instead and use the methods .apply() .apply_async(), map()
http://docs.python.org/library/multiprocessing.html?highlight=pool#multiprocessing.pool.AsyncResult
You can use the exit built-in to set the exit code of a process. It can be obtained from the exitcode attribute of the process:
import multiprocessing
def worker(procnum):
print str(procnum) + ' represent!'
exit(procnum)
if __name__ == '__main__':
jobs = []
for i in range(5):
p = multiprocessing.Process(target=worker, args=(i,))
jobs.append(p)
p.start()
result = []
for proc in jobs:
proc.join()
result.append(proc.exitcode)
print result
Output:
0 represent!
1 represent!
2 represent!
3 represent!
4 represent!
[0, 1, 2, 3, 4]
The pebble package has a nice abstraction leveraging multiprocessing.Pipe which makes this quite straightforward:
from pebble import concurrent
#concurrent.process
def function(arg, kwarg=0):
return arg + kwarg
future = function(1, kwarg=1)
print(future.result())
Example from: https://pythonhosted.org/Pebble/#concurrent-decorators
Thought I'd simplify the simplest examples copied from above, working for me on Py3.6. Simplest is multiprocessing.Pool:
import multiprocessing
import time
def worker(x):
time.sleep(1)
return x
pool = multiprocessing.Pool()
print(pool.map(worker, range(10)))
You can set the number of processes in the pool with, e.g., Pool(processes=5). However it defaults to CPU count, so leave it blank for CPU-bound tasks. (I/O-bound tasks often suit threads anyway, as the threads are mostly waiting so can share a CPU core.) Pool also applies chunking optimization.
(Note that the worker method cannot be nested within a method. I initially defined my worker method inside the method that makes the call to pool.map, to keep it all self-contained, but then the processes couldn't import it, and threw "AttributeError: Can't pickle local object outer_method..inner_method". More here. It can be inside a class.)
(Appreciate the original question specified printing 'represent!' rather than time.sleep(), but without it I thought some code was running concurrently when it wasn't.)
Py3's ProcessPoolExecutor is also two lines (.map returns a generator so you need the list()):
from concurrent.futures import ProcessPoolExecutor
with ProcessPoolExecutor() as executor:
print(list(executor.map(worker, range(10))))
With plain Processes:
import multiprocessing
import time
def worker(x, queue):
time.sleep(1)
queue.put(x)
queue = multiprocessing.SimpleQueue()
tasks = range(10)
for task in tasks:
multiprocessing.Process(target=worker, args=(task, queue,)).start()
for _ in tasks:
print(queue.get())
Use SimpleQueue if all you need is put and get. The first loop starts all the processes, before the second makes the blocking queue.get calls. I don't think there's any reason to call p.join() too.
If you are using Python 3, you can use concurrent.futures.ProcessPoolExecutor as a convenient abstraction:
from concurrent.futures import ProcessPoolExecutor
def worker(procnum):
'''worker function'''
print(str(procnum) + ' represent!')
return procnum
if __name__ == '__main__':
with ProcessPoolExecutor() as executor:
print(list(executor.map(worker, range(5))))
Output:
0 represent!
1 represent!
2 represent!
3 represent!
4 represent!
[0, 1, 2, 3, 4]
A simple solution:
import multiprocessing
output=[]
data = range(0,10)
def f(x):
return x**2
def handler():
p = multiprocessing.Pool(64)
r=p.map(f, data)
return r
if __name__ == '__main__':
output.append(handler())
print(output[0])
Output:
[0, 1, 4, 9, 16, 25, 36, 49, 64, 81]
You can use ProcessPoolExecutor to get a return value from a function as shown below:
from concurrent.futures import ProcessPoolExecutor
def test(num1, num2):
return num1 + num2
with ProcessPoolExecutor() as executor:
feature = executor.submit(test, 2, 3)
print(feature.result()) # 5
I modified vartec's answer a bit since I needed to get the error codes from the function. (Thanks vertec!!! its an awesome trick)
This can also be done with a manager.list but I think is better to have it in a dict and store a list within it. That way, way we keep the function and the results since we can't be sure of the order in which the list will be populated.
from multiprocessing import Process
import time
import datetime
import multiprocessing
def func1(fn, m_list):
print 'func1: starting'
time.sleep(1)
m_list[fn] = "this is the first function"
print 'func1: finishing'
# return "func1" # no need for return since Multiprocess doesnt return it =(
def func2(fn, m_list):
print 'func2: starting'
time.sleep(3)
m_list[fn] = "this is function 2"
print 'func2: finishing'
# return "func2"
def func3(fn, m_list):
print 'func3: starting'
time.sleep(9)
# if fail wont join the rest because it never populate the dict
# or do a try/except to get something in return.
raise ValueError("failed here")
# if we want to get the error in the manager dict we can catch the error
try:
raise ValueError("failed here")
m_list[fn] = "this is third"
except:
m_list[fn] = "this is third and it fail horrible"
# print 'func3: finishing'
# return "func3"
def runInParallel(*fns): # * is to accept any input in list
start_time = datetime.datetime.now()
proc = []
manager = multiprocessing.Manager()
m_list = manager.dict()
for fn in fns:
# print fn
# print dir(fn)
p = Process(target=fn, name=fn.func_name, args=(fn, m_list))
p.start()
proc.append(p)
for p in proc:
p.join() # 5 is the time out
print datetime.datetime.now() - start_time
return m_list, proc
if __name__ == '__main__':
manager, proc = runInParallel(func1, func2, func3)
# print dir(proc[0])
# print proc[0]._name
# print proc[0].name
# print proc[0].exitcode
# here you can check what did fail
for i in proc:
print i.name, i.exitcode # name was set up in the Process line 53
# here will only show the function that worked and where able to populate the
# manager dict
for i, j in manager.items():
print dir(i) # things you can do to the function
print i, j

multiprocessing.apply_async does not actually start when passed a queue.Queue object

I am really frustrated. Why doesn't Python's multiprocessing.apply_async() actually START the process when a queue object is passed as an argument or a part of an argument?
This code works as expected:
#! /usr/bin/env python3
import multiprocessing
import queue
import time
def worker(var):
while True:
print("Worker {}".format(var))
time.sleep(2)
pool = multiprocessing.Pool(20)
m = multiprocessing.Manager()
q = queue.Queue()
for i in range(20):
pool.apply_async(worker, (i,))
print("kicked off workers")
pool.close()
pool.join()
But just by passing queue q, nothing happens when you run it now:
#! /usr/bin/env python3
import multiprocessing
import queue
import time
def worker(var,q):
while True:
print("Worker {}".format(var))
time.sleep(2)
pool = multiprocessing.Pool(20)
m = multiprocessing.Manager()
q = queue.Queue()
for i in range(20):
pool.apply_async(worker, (i,q))
print("kicked off workers")
pool.close()
pool.join()
Again; super frustrating. What the hell is going on? What am I doing wrong?
When you want to share a Queue between processes, you have to create a proxy for one with multiprocessing.managers.SyncManager.Queue.
import multiprocessing
import time
def worker(var, q):
while True:
print("Worker {}".format(var))
time.sleep(2)
if __name__ == '__main__': # Be sure to include this.
pool = multiprocessing.Pool(20)
mgr = multiprocessing.Manager()
q = mgr.Queue() # Create a shared queue.Queue object.
for i in range(20):
pool.apply_async(worker, (i,q))
print("kicked off workers")
pool.close()
print('joining pool')
pool.join()
print('done')

Why multiprocessing does not work?

I have this code:
import multiprocessing
def worker():
print 'Worker'
return
if __name__ == '__main__':
jobs = []
for i in range(5):
p = multiprocessing.Process(target=worker)
jobs.append(p)
p.start()
For whatever reason it prints 'Worker' two times and stops. Does anyone know why? What am I doing wrong?
Starting multiprocessing tasks in Python on a defined value of "cores", you better choose to create a Pool and start the Process inside of that Pool.
pool = multiprocessing.Pool()
for i in range(5):
pool.apply_async(worker)
pool.close()
But if you like to do it on your way, I think you have to add a p.join():
import multiprocessing
def worker():
print 'Worker'
return
if __name__ == '__main__':
jobs = []
for i in range(5):
p = multiprocessing.Process(target=worker)
jobs.append(p)
p.start()
p.join()

Python multiprocessing.pool failed to stop after finishing all the tasks

I have implemented a parser like this,
import multiprocessing
import time
def foo(i):
try:
# some codes
except Exception, e:
print e
def worker(i):
foo(i)
time.sleep(i)
return i
if __name__ == "__main__":
pool = multiprocessing.Pool(processes=4)
result = pool.map_async(worker, range(15))
while not result.ready():
print("num left: {}".format(result._number_left))
time.sleep(1)
real_result = result.get()
pool.close()
pool.join()
My parser actually finishes all the processes but the results are not available ie, it's still inside the while loop and printing num left : 2. How I stop this? And I don't want the value of real_result variable.
I'm running Ubuntu 14.04, python 2.7
Corresponding part of my code looks like,
async_args = ((date, kw_dict) for date in dates)
pool = Pool(processes=4)
no_rec = []
def check_for_exit(msg):
print msg
if last_date in msg:
print 'Terminating the pool'
pool.terminate()
try:
result = pool.map_async(parse_date_range, async_args)
while not result.ready():
print("num left: {}".format(result._number_left))
sleep(1)
real_result = result.get(5)
passed_dates = []
for x, y in real_result:
passed_dates.append(x)
if y:
no_rec.append(y[0])
# if last_date in passed_dates:
# print 'Terminating the pool'
# pool.terminate()
pool.close()
except:
print 'Pool error'
pool.terminate()
print traceback.format_exc()
finally:
pool.join()
My bet is that you have faulty parse_date_range,
which causes a worker process to terminate without producing any result or py exception.
Probably libc's exit is called by a C module/lib due to a realy nasty error.
This code reproduces the infinite loop you observe:
import sys
import multiprocessing
import time
def parse_date_range(i):
if i == 5:
sys.exit(1) # or raise SystemExit;
# other exceptions are handled by the pool
time.sleep(i/19.)
return i
if __name__ == "__main__":
pool = multiprocessing.Pool(4)
result = pool.map_async(parse_date_range, range(15))
while not result.ready():
print("num left: {}".format(result._number_left))
time.sleep(1)
real_result = result.get()
pool.close()
pool.join()
Hope this'll help.

Multiprocessing works with standalone method but not with class instance method

I use multiprocessing lib to test python multi process, but I meet some problems. I have test code 1:
import multiprocessing
def test(name):
print 'processing.....'
tmp = 0
for i in xrange(1000000000):
tmp += i
print 'process done'
if __name__ == '__main__':
pools = multiprocessing.Pool()
for i in xrange(2):
pools.apply_async(test)
pools.close()
pools.join()
result is:
processing
processing
done
done
Code 2:
import multiprocessing
class Test:
def test(name):
print 'processing.....'
tmp = 0
for i in xrange(1000000000):
tmp += i
print 'process done'
if __name__ == '__main__':
t = Test()
pools = multiprocessing.Pool()
for i in xrange(4):
pools.apply_async(t.test)
pools.close()
pools.join()
this result is nothing, this pools don't call t.test! I can't understand what happended. Why is this?
instead of using pool, you can simply collect the jobs in a list:
import multiprocessing
class Test(multiprocessing.Process):
def run(self):
print 'processing.....'
tmp = 0
for i in xrange(10):
tmp += i
print 'process done'
return 1
if __name__ == '__main__':
jobs = []
for i in range(5):
t = Test()
jobs.append(t)
t.start()
the list jobs will be able to tell you if the process has finished or not, ultimately giving you the same effect as using pool.
if you wanna make sure that all jobs are done:
if __name__ == '__main__':
jobs = []
for i in range(5):
t = Test()
jobs.append(t)
t.start()
not_done = any(job.is_alive() for job in jobs)
while not_done:
not_done = any(job.is_alive() for job in jobs)
print 'job all done'

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