I have an array (called data_inputs) containing the names of hundreds of astronomy images files. These images are then manipulated. My code works and takes a few seconds to process each image. However, it can only do one image at a time because I'm running the array through a for loop:

for name in data_inputs:
    #image is manipulated

There is no reason why I have to modify an image before any other, so is it possible to utilise all 4 cores on my machine with each core running through the for loop on a different image?

I've read about the multiprocessing module but I'm unsure how to implement it in my case. I'm keen to get multiprocessing to work because eventually I'll have to run this on 10,000+ images.


4 Answers 4


You can simply use multiprocessing.Pool:

from multiprocessing import Pool

def process_image(name):

if __name__ == '__main__':
    pool = Pool()                         # Create a multiprocessing Pool
    pool.map(process_image, data_inputs)  # process data_inputs iterable with pool
  • 25
    It might be better to use: pool = Pool(os.cpu_count()) This is a more generic way of using multiprocessing.
    – Lior Magen
    Apr 13, 2016 at 12:26
  • 2
    Note: os.cpu_count() was added in Python 3.4. For Python 2.x, use multiprocessing.cpu_count().
    – dwj
    Sep 14, 2016 at 17:12
  • 40
    Pool() is the same as Pool(os.cpu_count())
    – Tim
    Sep 19, 2016 at 15:43
  • 23
    To elaborate on @Tim's comment - Pool() called without a value for processes is the same as Pool(processes=cpu_count()) regardless of whether you are using Python 3 or 2 - so the best practice in EITHER version is to use Pool(). docs.python.org/2/library/multiprocessing.html Nov 2, 2016 at 18:22
  • 12
    @LiorMagen , if I'm not mistaken, using Pool(os.cpu_count()) will make the OS freeze until the processing is over, as you don't leave the OS any free cores. For a lot of users Pool(os.cpu_count() - 1) might be a better choice
    – shayelk
    Oct 9, 2017 at 12:16

You can use multiprocessing.Pool:

from multiprocessing import Pool
class Engine(object):
    def __init__(self, parameters):
        self.parameters = parameters
    def __call__(self, filename):
        sci = fits.open(filename + '.fits')
        manipulated = manipulate_image(sci, self.parameters)
        return manipulated

    pool = Pool(8) # on 8 processors
    engine = Engine(my_parameters)
    data_outputs = pool.map(engine, data_inputs)
finally: # To make sure processes are closed in the end, even if errors happen
  • 3
    I am unable to understand what is "data_inputs" here. You haven't defined it. What value should I give it? Apr 27, 2017 at 14:17
  • 2
    It actually stems from alko's answer, I'm citing his comment (see the code block): "proces data_inputs iterable with pool". So data_inputs is an iterable (like in a standard map).
    – ponadto
    Nov 10, 2017 at 6:52
  • The python doc only shows that one can pass a function to pool.map(func, iterable[, chunksize]). When passing an object, will this object be shared by all the processes? Thus, could I have all processes write to the same list self.list_ in the object?
    – Philipp
    Oct 9, 2020 at 8:34


with Pool() as pool: 
    pool.map(fits.open, [name + '.fits' for name in datainput])
  • TypeError: 'Pool' object is not callable
    – chris
    Feb 18, 2019 at 16:18
  • 4
    Sorry my mistake it is "pool.map" not just "pool". I fixed it.
    – Spas
    Feb 19, 2019 at 18:37

I would suggest to use imap_unordered with chunksize if you are only using a for loop to iterate over an iterable. It will return results from each loop as soon as they are calculated. map waits for all results to be computed and hence is blocking.

  • Would you please provide an example of what you mean?
    – kqd
    Feb 3 at 19:04

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