Multiprocessing is the use of two or more central processing units (CPUs) within a single computer system

learn more… | top users | synonyms

257
votes
5answers
91k views

Multiprocessing vs Threading Python

I am trying to understand the advantages of multiprocessing over threading. I know that multiprocessing gets around the Global Interpreter Lock, but what other advantages are there, and can threading ...
122
votes
10answers
76k views

Python multiprocessing pool.map for multiple arguments

In the Python multiprocessing library, is there a variant of pool.map which support multiple arguments? text = "test" def harvester(text, case): X = case[0] return text+ str(X) if __name__ ==...
120
votes
15answers
43k views

How should I log while using multiprocessing in Python?

Right now I have a central module in a framework that spawns multiple processes using the Python 2.6 multiprocessing module. Because it uses multiprocessing, there is module-level multiprocessing-...
117
votes
5answers
57k views

Can't pickle <type 'instancemethod'> when using python's multiprocessing Pool.map()

I'm trying to use multiprocessing's Pool.map() function to divide out work simultaneously. When I use the following code, it works fine: import multiprocessing def f(x): return x*x def go(): ...
110
votes
3answers
76k views

Python multiprocessing.Pool: when to use apply, apply_async or map?

I have not seen clear examples with use-cases for Pool.apply, Pool.apply_async and Pool.map. I am mainly using Pool.map; what are the advantages of others?
108
votes
9answers
42k views

Multiprocessing: How to use Pool.map on a function defined in a class?

When I run something like: from multiprocessing import Pool p = Pool(5) def f(x): return x*x p.map(f, [1,2,3]) it works fine. However, putting this as a function of a class: class calculate(...
86
votes
1answer
5k views

Efficiently applying a function to a grouped pandas DataFrame in parallel

I often need to apply a function to the groups of a very large DataFrame (of mixed data types) and would like to take advantage of multiple cores. I can create an iterator from the groups and use the ...
76
votes
3answers
9k views

Why does multiprocessing use only a single core after I import numpy?

I am not sure whether this counts more as an OS issue, but I thought I would ask here in case anyone has some insight from the Python end of things. I've been trying to parallelise a CPU-heavy for ...
73
votes
7answers
34k views

Keyboard Interrupts with python's multiprocessing Pool

How can I handle KeyboardInterrupt events with python's multiprocessing Pools? Here is a simple example: from multiprocessing import Pool from time import sleep from sys import exit def ...
72
votes
1answer
25k views

Python multiprocessing - Pipe vs Queue

What are the fundamental differences between queues and pipes in Python's multiprocessing package? In what scenarios should one choose one over the other? When is it advantageous to use Pipe()? ...
65
votes
6answers
13k views

Solving embarassingly parallel problems using Python multiprocessing

How does one use multiprocessing to tackle embarrassingly parallel problems? Embarassingly parallel problems typically consist of three basic parts: Read input data (from a file, database, tcp ...
60
votes
6answers
44k views

Python multiprocessing pickling error

I am sorry that I can't reproduce the error with a simpler example, and my code is too complicated to post. If I run the program in IPython shell instead of the regular python, things work out well. ...
53
votes
5answers
10k views

Share Large, Read-Only Numpy Array Between Multiprocessing Processes

I have a 60GB SciPy Array (Matrix) I must share between 5+ multiprocessing Process objects. I've seen numpy-sharedmem and read this discussion on the SciPy list. There seem to be two approaches--numpy-...
51
votes
7answers
23k views

Python multiprocessing: sharing a large read-only object between processes?

Do child processes spawned via multiprocessing share objects created earlier in the program? I have the following setup: do_some_processing(filename): for line in file(filename): if line....
49
votes
5answers
20k views

Use numpy array in shared memory for multiprocessing

I would like to use a numpy array in shared memory for use with the multiprocessing module. The difficulty is using it like a numpy array, and not just as a ctypes array. from multiprocessing import ...
48
votes
4answers
20k views

Python: what are the differences between the threading and multiprocessing modules?

I am learning how to use the threading and the multiprocessing modules in Python to run certain operations in parallel and speed-up my code. I am finding hard (maybe because I don't have any ...
46
votes
2answers
39k views

Shared-memory objects in python multiprocessing

Suppose I have a large in memory numpy array, I have a function func that takes in this giant array as input (together with some other parameters). func with different paremeters can be run in ...
44
votes
3answers
20k views

Catch Ctrl+C / SIGINT and exit multiprocesses gracefully in python

How do I catch a Ctrl+C in multiprocess python program and exit all processes gracefully, I need the solution to work both on unix and windows. I've tried the following: import multiprocessing import ...
40
votes
3answers
13k views

Log output of multiprocessing.Process

Is there a way to log the stdout output from a given Process when using the multiprocessing.Process class in python?
39
votes
3answers
22k views

Python multiprocessing: How do I share a dict among multiple processes?

A program that creates several processes that work on a join-able queue, Q, and may eventually manipulate a global dictionary D to store results. (so each child process may use D to store its result ...
38
votes
2answers
27k views

how to troubleshoot an “AttributeError: __exit__” in multiproccesing in Python?

I tried to rewrite some csv-reading code to be able to run it on multiple cores in Python 3.2.2. I tried to use the Pool object of multiprocessing, which I adapted from working examples (and already ...
38
votes
23answers
116k views

Difference between multitasking, multithreading and multiprocessing?

Whats the difference between multitasking, multiprogramming & multiprocessing This comes regularly for my university OS exams and I can't find a good answer. I know quite a bit about multitasking ...
38
votes
3answers
8k views

Python Multiprocessing.Pool lazy iteration

I'm wondering about the way that python's Multiprocessing.Pool class works with map, imap, and map_async. My particular problem is that I want to map on an iterator that creates memory-heavy objects, ...
37
votes
1answer
12k views

multiprocessing.Pool: What's the difference between map_async and imap?

I'm trying to learn how to use Python's multiprocessing package, but I don't understand the difference between map_async and imap. I noticed that both map_async and imap are executed asynchronously. ...
37
votes
4answers
10k views

yet another confusion with multiprocessing error, 'module' object has no attribute 'f'

I know this has been answered before, but it seems that executing the script directly "python filename.py" does not work. I have Python 2.6.2 on SuSE Linux. Code: #!/usr/bin/python # -*- coding: utf-...
37
votes
2answers
29k views

Python: Good place to learn about `multiprocessing.Manager`? [closed]

I want to learn to use multiprocessing.Manager. I looked at the documentation but it's not easy enough for me. Anyone knows of a good tutorial or something like that?
36
votes
6answers
14k views

Exception thrown in multiprocessing Pool not detected

It seems that when an exception is raised from a multiprocessing.Pool process, there is no stack trace or any other indication that it has failed. Example: from multiprocessing import Pool def go()...
35
votes
5answers
14k views

How do SMP cores, processes, and threads work together exactly?

On a single core CPU, each process runs in the OS, and the CPU jumps around from one process to another to best utilize itself. A process can have many threads, in which case the CPU runs through ...
35
votes
6answers
12k views

Django multiprocessing and database connections

Background: I'm working a project which uses Django with a Postgres database. We're also using mod_wsgi in case that matters, since some of my web searches have made mention of it. On web form ...
34
votes
2answers
12k views

Using the multiprocessing module for cluster computing

I'm interested in running a Python program using a computer cluster. I have in the past been using Python MPI interfaces, but due to difficulties in compiling/installing these, I would prefer ...
33
votes
5answers
19k views

How can I lock a table on read, using Entity Framework?

I have a SQL Server (2012) which I access using Entity Framework (4.1). In the database I have a table called URL into which an independent process feeds new URLs. An entry in the URL table can be in ...
33
votes
3answers
2k views

Python multiprocessing doesn't seem to use more than one core

I want to use Python multiprocessing to run grid search for a predictive model. When I look at core usage, it always seem to be using only one core. Any idea what I'm doing wrong? import ...
33
votes
4answers
30k views

How to spawn parallel child processes on a multi-processor system?

I have a Python script that I want to use as a controller to another Python script. I have a server with 64 processors, so want to spawn up to 64 child processes of this second Python script. The ...
32
votes
3answers
4k views

Multiprocessing Bomb

I was working the following example from Doug Hellmann tutorial on multiprocessing: import multiprocessing def worker(): """worker function""" print 'Worker' return if __name__ == '...
32
votes
3answers
11k views

does single thread application utilize multi core in android?

Does single thread application use all the 4 core in a Quad-core phone. I searched this a lot and found some articles that says yes and some saying no. some articles even say the android OS doesn't ...
31
votes
6answers
21k views

How can I recover the return value of a function passed to multiprocessing.Process?

In the example code below, I'd like to recover 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(...
31
votes
3answers
15k views

Processing single file from multiple processes in python

I have a single big text file in which I want to process each line ( do some operations ) and store them in a database. Since a single simple program is taking too long, I want it to be done via ...
31
votes
3answers
14k views

Is *this* really the best way to start a second JVM from Java code?

This is a followup to my own previous question and I'm kind of embarassed to ask this... But anyway: how would you start a second JVM from a standalone Java program in a system-independent way? And ...
31
votes
2answers
651 views

Python 3: Catching warnings during multiprocessing

Too long; didn't read The warnings.catch_warnings() context manager is not thread safe. How do I use it in a parallel processing environment? Background The code below solves a maximization problem ...
30
votes
1answer
11k views

Sharing a result queue among several processes

The documentation for the multiprocessing module shows how to pass a queue to a process started with multiprocessing.Process. But how can I share a queue with asynchronous worker processes started ...
29
votes
3answers
15k views

Is shared readonly data copied to different processes for Python multiprocessing?

The piece of code that I have looks some what like this: glbl_array = # a 3 Gb array def my_func( args, def_param = glbl_array): #do stuff on args and def_param if __name__ == '__main__': ...
29
votes
2answers
18k views

Python multiprocessing and a shared counter

I'm having troubles with the multiprocessing module. I'm using a Pool of workers with its map method to load data from lots of files and for each of them I analyze data with with a custom function. ...
29
votes
3answers
12k views

How to best perform Multiprocessing within requests with the python Tornado server?

I am using the I/O non-blocking python server Tornado. I have a class of GET requests which may take a significant amount of time to complete (think in the range of 5-10 seconds). The problem is ...
28
votes
2answers
14k views

How do you pass a Queue reference to a function managed by pool.map_async()?

I want a long-running process to return its progress over a Queue (or something similar) which I will feed to a progress bar dialog. I also need the result when the process is completed. A test ...
28
votes
1answer
7k views

Concurrent.futures vs Multiprocessing in Python 3

Python 3.2 introduced Concurrent Futures, which appear to be some advanced combination of the older threading and multiprocessing modules. What are the advantages and disadvantages of using this for ...
28
votes
1answer
8k views

Understanding Multiprocessing: Shared Memory Management, Locks and Queues in Python

Multiprocessing is a powerful tool in python, and I want to understand it more in depth. I want to know when to use regular Locks and Queues and when to use a multiprocessing Manager to share these ...
26
votes
4answers
9k views

Celery parallel distributed task with multiprocessing

I have a CPU intensive Celery task. I would like to use all the processing power (cores) across lots of EC2 instances to get this job done faster (a celery parallel distributed task with ...
26
votes
2answers
9k views

Python Process Pool non-daemonic?

Would it be possible to create a python Pool that is non-daemonic? I want a pool to be able to call a function that has another pool inside. Thanks.
26
votes
3answers
14k views

Parallelizing a Numpy vector operation

Let's use, for example, numpy.sin() The following code will return the value of the sine for each value of the array a: import numpy a = numpy.arange( 1000000 ) result = numpy.sin( a ) But my ...
26
votes
1answer
19k views

Python Multiprocessing Exit Elegantly How?

import multiprocessing import time class testM(multiprocessing.Process): def __init__(self): multiprocessing.Process.__init__(self) self.exit = False def run(self): ...