Back in the old days of Python, to call a function with arbitrary arguments, you would use
apply still exists in Python2.7 though not in Python3, and is generally not used anymore. Nowadays,
is preferred. The
multiprocessing.Pool modules tries to provide a similar interface.
Pool.apply is like Python
apply, except that the function call is performed in a separate process.
Pool.apply blocks until the function is completed.
Pool.apply_async is also like Python's built-in
apply, except that the call returns immediately instead of waiting for the result. An
ApplyResult object is returned. You call its
get() method to retrieve the result of the function call. The
get() method blocks until the function is completed. Thus,
pool.apply(func, args, kwargs) is equivalent to
pool.apply_async(func, args, kwargs).get().
In contrast to
Pool.apply_async method also has a callback which, if supplied, is called when the function is complete. This can be used instead of calling
import multiprocessing as mp import time def foo_pool(x): time.sleep(2) return x*x result_list =  def log_result(result): # This is called whenever foo_pool(i) returns a result. # result_list is modified only by the main process, not the pool workers. result_list.append(result) def apply_async_with_callback(): pool = mp.Pool() for i in range(10): pool.apply_async(foo_pool, args = (i, ), callback = log_result) pool.close() pool.join() print(result_list) if __name__ == '__main__': apply_async_with_callback()
may yield a result such as
[1, 0, 4, 9, 25, 16, 49, 36, 81, 64]
pool.map, the order of the results may not correspond to the order in which the
pool.apply_async calls were made.
So, if you need to run a function in a separate process, but want the current process to block until that function returns, use
Pool.map blocks until the complete result is returned.
If you want the Pool of worker processes to perform many function calls asynchronously, use
Pool.apply_async. The order of the results is not guaranteed to be the same as the order of the calls to
Notice also that you could call a number of different functions with
Pool.apply_async (not all calls need to use the same function).
Pool.map applies the same function to many arguments.
Pool.apply_async, the results are returned in an order corresponding to the order of the arguments.
f is only executed in ONE of the workers of the pool. So ONE of the processes in the pool will run
pool.map(f, iterable): This method chops the iterable into a number of chunks which it submits to the process pool as separate tasks. So you take advantage of all the processes in the pool.