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@sanelson
Created May 1, 2016 16:58
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Python Multiprocessing with simple progress tracking via queues in main process
from progressbar import ProgressBar, SimpleProgress
from multiprocessing import Process, Queue
from time import sleep
import progressbar
class Worker():
def __init__(self, name, result_queue, process):
self.name = name
self.result_queue = result_queue
self.process = process
def worker_process(result_queue, min_count, max_count):
for count in range(min_count, max_count+1):
sleep(.1)
result_queue.put(count)
return
if __name__ == '__main__':
processes = 4
count = 100
tally = 0
# Set up progress bar
progress = progressbar.ProgressBar(min_val=1, max_val=count)
# Set up workers array
workers = []
for process in range(1,processes+1):
# Set up results queue
result_queue = Queue()
# Start up worker
worker = Process(target=worker_process, args=(result_queue, 1, count//processes))
worker.daemon = True
worker.start()
# Create worker tracking object
workers.append(Worker("worker%d" % process, result_queue, worker))
while tally < count:
tally = 0
for worker in workers:
tally += worker.result_queue.get()
progress.update(tally)
progress.finish()
for worker in workers:
worker.process.join()
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