81

I have a script that's successfully doing a multiprocessing Pool set of tasks with a imap_unordered() call:

p = multiprocessing.Pool()
rs = p.imap_unordered(do_work, xrange(num_tasks))
p.close() # No more work
p.join() # Wait for completion

However, my num_tasks is around 250,000, and so the join() locks the main thread for 10 seconds or so, and I'd like to be able to echo out to the command line incrementally to show the main process isn't locked. Something like:

p = multiprocessing.Pool()
rs = p.imap_unordered(do_work, xrange(num_tasks))
p.close() # No more work
while (True):
  remaining = rs.tasks_remaining() # How many of the map call haven't been done yet?
  if (remaining == 0): break # Jump out of while loop
  print "Waiting for", remaining, "tasks to complete..."
  time.sleep(2)

Is there a method for the result object or the pool itself that indicates the number of tasks remaining? I tried using a multiprocessing.Value object as a counter (do_work calls a counter.value += 1 action after doing its task), but the counter only gets to ~85% of the total value before stopping incrementing.

73

There is no need to access private attributes of the result set:

from __future__ import division
import sys

for i, _ in enumerate(p.imap_unordered(do_work, xrange(num_tasks)), 1):
    sys.stderr.write('\rdone {0:%}'.format(i/num_tasks))
  • 7
    I see the print out only after the code exit (not every iteration). Do you have a suggestion? – Hanan Shteingart Nov 6 '14 at 10:47
  • @HananShteingart: It works fine on my system (Ubuntu) with both Python 2 and 3. I've used def do_word(*a): time.sleep(.1) as an example. If it doesn't work for you then create a complete minimal code example which demonstrates your issue: describe using words what do you expect to happen and what happens instead, mention how do you run your Python script, what is your OS, Python version and post it as a new question. – jfs Dec 1 '14 at 17:13
  • 11
    I had the same problem as @HananShteingart: it's because I was trying to use Pool.map(). I didn't realise that only imap() and imap_unordered() work in this way - the documentation just says "A lazier version of map()" but really means "the underlying iterator returns results as they come in". – simonmacmullen Mar 24 '15 at 16:01
  • @simonmacmullen: both the question and my answer use imap_unordered(). Hanan's issue is probably due to sys.stderr.write('\r..') (overwriting the same line to show the progress). – jfs Mar 24 '15 at 19:55
  • 2
    Also possible! I mainly wanted to document a stupid assumption I'd made - in case anyone else reading this made it too. – simonmacmullen Mar 25 '15 at 12:00
80

My personal favorite -- gives you a nice little progress bar and completion ETA while things run and commit in parallel.

from multiprocessing import Pool
import tqdm

pool = Pool(processes=8)
for _ in tqdm.tqdm(pool.imap_unordered(do_work, tasks), total=len(tasks)):
    pass
  • 43
    what if pool returns a value? – Nickpick Feb 6 '17 at 10:57
  • 9
    I created an empty list called result before the loop then inside the loop just do result.append(x). I tried this with 2 processes and used imap instead of map and everything worked as I wanted it to @nickpick – bs7280 Jul 12 '17 at 22:08
  • 2
    so my progress bar is iterating to new lines instead of progressing in-place, any idea why this might be? – Austin May 31 '18 at 15:26
  • 1
    don't forget to pip install tqdm – Mr. T Sep 7 '18 at 21:50
  • 3
    @bs7280 By result.append(x) did you mean result.append(_) ? What is x? – jason Apr 5 at 23:18
22

I found that the work was already done by the time I tried to check it's progress. This is what worked for me using tqdm.

pip install tqdm

from multiprocessing import Pool
from tqdm import tqdm

tasks = range(5)
pool = Pool()
pbar = tqdm(total=len(tasks))

def do_work(x):
    # do something with x
    pbar.update(1)

pool.imap_unordered(do_work, tasks)
pool.close()
pool.join()
pbar.close()

This should work with all flavors of multiprocessing, whether they block or not.

  • 3
    I think creates a bunch of threads, and each thread is counting independently – nburn42 Apr 26 at 21:44
  • I have functions within functions which results in a pickling error. – ojunk Oct 14 at 13:59
20

Found an answer myself with some more digging: Taking a look at the __dict__ of the imap_unordered result object, I found it has a _index attribute that increments with each task completion. So this works for logging, wrapped in the while loop:

p = multiprocessing.Pool()
rs = p.imap_unordered(do_work, xrange(num_tasks))
p.close() # No more work
while (True):
  completed = rs._index
  if (completed == num_tasks): break
  print "Waiting for", num_tasks-completed, "tasks to complete..."
  time.sleep(2)

However, I did find that swapping the imap_unordered for a map_async resulted in much faster execution, though the result object is a bit different. Instead, the result object from map_async has a _number_left attribute, and a ready() method:

p = multiprocessing.Pool()
rs = p.map_async(do_work, xrange(num_tasks))
p.close() # No more work
while (True):
  if (rs.ready()): break
  remaining = rs._number_left
  print "Waiting for", remaining, "tasks to complete..."
  time.sleep(0.5)
  • 3
    I tested this for Python 2.7.6 and rs._number_left appears to be the number of chunks remaining. So if rs._chunksize isn't 1 then rs._number_left won't be the number of list items remaining. – Allen Aug 19 '14 at 21:14
  • Where should I put this code? I mean this is not executed until the content of rs is knowns and it is a bit late or not? – Wakan Tanka Aug 23 '15 at 22:24
  • @WakanTanka: It goes in the main script after it spins off the extra threads. In my original example, it goes in the "while" loop, where rs has already launched the other threads. – MidnightLightning Aug 24 '15 at 11:58
  • 1
    Could you please edit your question and/or answer to show minimum working example. I do not see rs in any loop, I'm multiprocessing newbie and this would help. Thank you very much. – Wakan Tanka Aug 24 '15 at 12:07
  • 1
    At least in python 3.5, the solution using _number_left does not work. _number_left represents the chunks that remain to be processed. For example, if I want to have 50 elements passed to my function in parallel, then for a thread pool with 3 processes _map_async() creates 10 chunks with 5 elements each. _number_left then represents how many of these chunks have been completed. – mSSM Jan 16 '16 at 20:55
8

I know that this is a rather old question, but here is what I'm doing when I want to track the progression of a pool of tasks in python.

from progressbar import ProgressBar, SimpleProgress
import multiprocessing as mp
from time import sleep

def my_function(letter):
    sleep(2)
    return letter+letter

dummy_args = ["A", "B", "C", "D"]
pool = mp.Pool(processes=2)

results = []

pbar = ProgressBar(widgets=[SimpleProgress()], maxval=len(dummy_args)).start()

r = [pool.apply_async(my_function, (x,), callback=results.append) for x in dummy_args]

while len(results) != len(dummy_args):
    pbar.update(len(results))
    sleep(0.5)
pbar.finish()

print results

Basically, you use apply_async with a callbak (in this case, it is to append the returned value to a list), so you don't have to wait to do something else. Then, within a while-loop, you check the progression of the work. In this case, I added a widget to make it look nicer.

The output:

4 of 4                                                                         
['AA', 'BB', 'CC', 'DD']

Hope it helps.

  • gotta change: [pool.apply_async(my_function, (x,), callback=results.append) for x in dummy_args] for (pool.apply_async(my_function, (x,), callback=results.append) for x in dummy_args) – David Przybilla Aug 28 '15 at 14:10
  • That's not true. A generator object will not work here. Checked. – swagatam Jul 13 '16 at 18:04
  • why not just callback=lambda x: pbar.update(1)? – zeawoas Nov 11 at 10:37
3

I created a custom class to create a progress printout. Maby this helps:

from multiprocessing import Pool, cpu_count


class ParallelSim(object):
    def __init__(self, processes=cpu_count()):
        self.pool = Pool(processes=processes)
        self.total_processes = 0
        self.completed_processes = 0
        self.results = []

    def add(self, func, args):
        self.pool.apply_async(func=func, args=args, callback=self.complete)
        self.total_processes += 1

    def complete(self, result):
        self.results.extend(result)
        self.completed_processes += 1
        print('Progress: {:.2f}%'.format((self.completed_processes/self.total_processes)*100))

    def run(self):
        self.pool.close()
        self.pool.join()

    def get_results(self):
        return self.results
3

As suggested by Tim, you can use tqdm and imap to solve this issue. I've just stumbled upon this problem and tweaked the imap_unordered solution, so that I can access the results of the mapping. Here's how it works:

from multiprocessing import Pool
import tqdm

pool = multiprocessing.Pool(processes=4)
mapped_values = list(tqdm.tqdm(pool.imap_unordered(do_work, range(num_tasks)), total=len(values)))

In case you don't care about the values returned from your jobs, you don't need to assign the list to any variable.

1

Try this simple Queue based approach, which can also be used with pooling. Be mindful that printing anything after the initiation of the progress bar will cause it to be moved, at least for this particular progress bar. (PyPI's progress 1.5)

import time
from progress.bar import Bar

def status_bar( queue_stat, n_groups, n ):

    bar = Bar('progress', max = n)  

    finished = 0
    while finished < n_groups:

        while queue_stat.empty():
            time.sleep(0.01)

        gotten = queue_stat.get()
        if gotten == 'finished':
            finished += 1
        else:
            bar.next()
    bar.finish()


def process_data( queue_data, queue_stat, group):

    for i in group:

        ... do stuff resulting in new_data

        queue_stat.put(1)

    queue_stat.put('finished')  
    queue_data.put(new_data)

def multiprocess():

    new_data = []

    groups = [[1,2,3],[4,5,6],[7,8,9]]
    combined = sum(groups,[])

    queue_data = multiprocessing.Queue()
    queue_stat = multiprocessing.Queue()

    for i, group in enumerate(groups): 

        if i == 0:

            p = multiprocessing.Process(target = status_bar,
                args=(queue_stat,len(groups),len(combined)))
                processes.append(p)
                p.start()

        p = multiprocessing.Process(target = process_data,
        args=(queue_data, queue_stat, group))
        processes.append(p)
        p.start()

    for i in range(len(groups)):
        data = queue_data.get() 
        new_data += data

    for p in processes:
        p.join()
0

for anybody looking for a simple solution working with Pool.apply_async():

from multiprocessing import Pool
from tqdm import tqdm
from time import sleep


def work(x):
    sleep(0.5)
    return x**2

n = 10

p = Pool(4)
pbar = tqdm(total=n)
res = [p.apply_async(work, args=(
    i,), callback=lambda _: pbar.update(1)) for i in range(n)]
results = [p.get() for p in res]

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