432 lines
17 KiB
Plaintext
432 lines
17 KiB
Plaintext
PEP: 371
|
||
Title: Addition of the multiprocessing package to the standard library
|
||
Version: $Revision$
|
||
Last-Modified: $Date$
|
||
Author: Jesse Noller <jnoller@gmail.com>,
|
||
Richard Oudkerk <r.m.oudkerk@googlemail.com>
|
||
Status: Final
|
||
Type: Standards Track
|
||
Content-Type: text/plain
|
||
Created: 06-May-2008
|
||
Python-Version: 2.6 / 3.0
|
||
Post-History:
|
||
|
||
|
||
Abstract
|
||
|
||
This PEP proposes the inclusion of the pyProcessing [1] package
|
||
into the Python standard library, renamed to "multiprocessing".
|
||
|
||
The processing package mimics the standard library threading
|
||
module functionality to provide a process-based approach to
|
||
threaded programming allowing end-users to dispatch multiple
|
||
tasks that effectively side-step the global interpreter lock.
|
||
|
||
The package also provides server and client functionality
|
||
(processing.Manager) to provide remote sharing and management of
|
||
objects and tasks so that applications may not only leverage
|
||
multiple cores on the local machine, but also distribute objects
|
||
and tasks across a cluster of networked machines.
|
||
|
||
While the distributed capabilities of the package are beneficial,
|
||
the primary focus of this PEP is the core threading-like API and
|
||
capabilities of the package.
|
||
|
||
Rationale
|
||
|
||
The current CPython interpreter implements the Global Interpreter
|
||
Lock (GIL) and barring work in Python 3000 or other versions
|
||
currently planned [2], the GIL will remain as-is within the
|
||
CPython interpreter for the foreseeable future. While the GIL
|
||
itself enables clean and easy to maintain C code for the
|
||
interpreter and extensions base, it is frequently an issue for
|
||
those Python programmers who are leveraging multi-core machines.
|
||
|
||
The GIL itself prevents more than a single thread from running
|
||
within the interpreter at any given point in time, effectively
|
||
removing Python's ability to take advantage of multi-processor
|
||
systems.
|
||
|
||
The pyprocessing package offers a method to side-step the GIL
|
||
allowing applications within CPython to take advantage of
|
||
multi-core architectures without asking users to completely change
|
||
their programming paradigm (i.e.: dropping threaded programming
|
||
for another "concurrent" approach - Twisted, Actors, etc).
|
||
|
||
The Processing package offers CPython a "known API" which mirrors
|
||
albeit in a PEP 8 compliant manner, that of the threading API,
|
||
with known semantics and easy scalability.
|
||
|
||
In the future, the package might not be as relevant should the
|
||
CPython interpreter enable "true" threading, however for some
|
||
applications, forking an OS process may sometimes be more
|
||
desirable than using lightweight threads, especially on those
|
||
platforms where process creation is fast and optimized.
|
||
|
||
For example, a simple threaded application:
|
||
|
||
from threading import Thread as worker
|
||
|
||
def afunc(number):
|
||
print number * 3
|
||
|
||
t = worker(target=afunc, args=(4,))
|
||
t.start()
|
||
t.join()
|
||
|
||
The pyprocessing package mirrored the API so well, that with a
|
||
simple change of the import to:
|
||
|
||
from processing import process as worker
|
||
|
||
The code would now execute through the processing.process class.
|
||
Obviously, with the renaming of the API to PEP 8 compliance there
|
||
would be additional renaming which would need to occur within
|
||
user applications, however minor.
|
||
|
||
This type of compatibility means that, with a minor (in most cases)
|
||
change in code, users' applications will be able to leverage all
|
||
cores and processors on a given machine for parallel execution.
|
||
In many cases the pyprocessing package is even faster than the
|
||
normal threading approach for I/O bound programs. This of course,
|
||
takes into account that the pyprocessing package is in optimized C
|
||
code, while the threading module is not.
|
||
|
||
The "Distributed" Problem
|
||
|
||
In the discussion on Python-Dev about the inclusion of this
|
||
package [3] there was confusion about the intentions this PEP with
|
||
an attempt to solve the "Distributed" problem - frequently
|
||
comparing the functionality of this package with other solutions
|
||
like MPI-based communication [4], CORBA, or other distributed
|
||
object approaches [5].
|
||
|
||
The "distributed" problem is large and varied. Each programmer
|
||
working within this domain has either very strong opinions about
|
||
their favorite module/method or a highly customized problem for
|
||
which no existing solution works.
|
||
|
||
The acceptance of this package does not preclude or recommend that
|
||
programmers working on the "distributed" problem not examine other
|
||
solutions for their problem domain. The intent of including this
|
||
package is to provide entry-level capabilities for local
|
||
concurrency and the basic support to spread that concurrency
|
||
across a network of machines - although the two are not tightly
|
||
coupled, the pyprocessing package could in fact, be used in
|
||
conjunction with any of the other solutions including MPI/etc.
|
||
|
||
If necessary - it is possible to completely decouple the local
|
||
concurrency abilities of the package from the
|
||
network-capable/shared aspects of the package. Without serious
|
||
concerns or cause however, the author of this PEP does not
|
||
recommend that approach.
|
||
|
||
Performance Comparison
|
||
|
||
As we all know - there are "lies, damned lies, and benchmarks".
|
||
These speed comparisons, while aimed at showcasing the performance
|
||
of the pyprocessing package, are by no means comprehensive or
|
||
applicable to all possible use cases or environments. Especially
|
||
for those platforms with sluggish process forking timing.
|
||
|
||
All benchmarks were run using the following:
|
||
* 4 Core Intel Xeon CPU @ 3.00GHz
|
||
* 16 GB of RAM
|
||
* Python 2.5.2 compiled on Gentoo Linux (kernel 2.6.18.6)
|
||
* pyProcessing 0.52
|
||
|
||
All of the code for this can be downloaded from:
|
||
http://jessenoller.com/code/bench-src.tgz
|
||
|
||
The basic method of execution for these benchmarks is in the
|
||
run_benchmarks.py script, which is simply a wrapper to execute a
|
||
target function through a single threaded (linear), multi-threaded
|
||
(via threading), and multi-process (via pyprocessing) function for
|
||
a static number of iterations with increasing numbers of execution
|
||
loops and/or threads.
|
||
|
||
The run_benchmarks.py script executes each function 100 times,
|
||
picking the best run of that 100 iterations via the timeit module.
|
||
|
||
First, to identify the overhead of the spawning of the workers, we
|
||
execute an function which is simply a pass statement (empty):
|
||
|
||
cmd: python run_benchmarks.py empty_func.py
|
||
Importing empty_func
|
||
Starting tests ...
|
||
non_threaded (1 iters) 0.000001 seconds
|
||
threaded (1 threads) 0.000796 seconds
|
||
processes (1 procs) 0.000714 seconds
|
||
|
||
non_threaded (2 iters) 0.000002 seconds
|
||
threaded (2 threads) 0.001963 seconds
|
||
processes (2 procs) 0.001466 seconds
|
||
|
||
non_threaded (4 iters) 0.000002 seconds
|
||
threaded (4 threads) 0.003986 seconds
|
||
processes (4 procs) 0.002701 seconds
|
||
|
||
non_threaded (8 iters) 0.000003 seconds
|
||
threaded (8 threads) 0.007990 seconds
|
||
processes (8 procs) 0.005512 seconds
|
||
|
||
As you can see, process forking via the pyprocessing package is
|
||
faster than the speed of building and then executing the threaded
|
||
version of the code.
|
||
|
||
The second test calculates 50000 Fibonacci numbers inside of each
|
||
thread (isolated and shared nothing):
|
||
|
||
cmd: python run_benchmarks.py fibonacci.py
|
||
Importing fibonacci
|
||
Starting tests ...
|
||
non_threaded (1 iters) 0.195548 seconds
|
||
threaded (1 threads) 0.197909 seconds
|
||
processes (1 procs) 0.201175 seconds
|
||
|
||
non_threaded (2 iters) 0.397540 seconds
|
||
threaded (2 threads) 0.397637 seconds
|
||
processes (2 procs) 0.204265 seconds
|
||
|
||
non_threaded (4 iters) 0.795333 seconds
|
||
threaded (4 threads) 0.797262 seconds
|
||
processes (4 procs) 0.206990 seconds
|
||
|
||
non_threaded (8 iters) 1.591680 seconds
|
||
threaded (8 threads) 1.596824 seconds
|
||
processes (8 procs) 0.417899 seconds
|
||
|
||
The third test calculates the sum of all primes below 100000,
|
||
again sharing nothing.
|
||
|
||
cmd: run_benchmarks.py crunch_primes.py
|
||
Importing crunch_primes
|
||
Starting tests ...
|
||
non_threaded (1 iters) 0.495157 seconds
|
||
threaded (1 threads) 0.522320 seconds
|
||
processes (1 procs) 0.523757 seconds
|
||
|
||
non_threaded (2 iters) 1.052048 seconds
|
||
threaded (2 threads) 1.154726 seconds
|
||
processes (2 procs) 0.524603 seconds
|
||
|
||
non_threaded (4 iters) 2.104733 seconds
|
||
threaded (4 threads) 2.455215 seconds
|
||
processes (4 procs) 0.530688 seconds
|
||
|
||
non_threaded (8 iters) 4.217455 seconds
|
||
threaded (8 threads) 5.109192 seconds
|
||
processes (8 procs) 1.077939 seconds
|
||
|
||
The reason why tests two and three focused on pure numeric
|
||
crunching is to showcase how the current threading implementation
|
||
does hinder non-I/O applications. Obviously, these tests could be
|
||
improved to use a queue for coordination of results and chunks of
|
||
work but that is not required to show the performance of the
|
||
package and core processing.process module.
|
||
|
||
The next test is an I/O bound test. This is normally where we see
|
||
a steep improvement in the threading module approach versus a
|
||
single-threaded approach. In this case, each worker is opening a
|
||
descriptor to lorem.txt, randomly seeking within it and writing
|
||
lines to /dev/null:
|
||
|
||
cmd: python run_benchmarks.py file_io.py
|
||
Importing file_io
|
||
Starting tests ...
|
||
non_threaded (1 iters) 0.057750 seconds
|
||
threaded (1 threads) 0.089992 seconds
|
||
processes (1 procs) 0.090817 seconds
|
||
|
||
non_threaded (2 iters) 0.180256 seconds
|
||
threaded (2 threads) 0.329961 seconds
|
||
processes (2 procs) 0.096683 seconds
|
||
|
||
non_threaded (4 iters) 0.370841 seconds
|
||
threaded (4 threads) 1.103678 seconds
|
||
processes (4 procs) 0.101535 seconds
|
||
|
||
non_threaded (8 iters) 0.749571 seconds
|
||
threaded (8 threads) 2.437204 seconds
|
||
processes (8 procs) 0.203438 seconds
|
||
|
||
As you can see, pyprocessing is still faster on this I/O operation
|
||
than using multiple threads. And using multiple threads is slower
|
||
than the single threaded execution itself.
|
||
|
||
Finally, we will run a socket-based test to show network I/O
|
||
performance. This function grabs a URL from a server on the LAN
|
||
that is a simple error page from tomcat. It gets the page 100
|
||
times. The network is silent, and a 10G connection:
|
||
|
||
cmd: python run_benchmarks.py url_get.py
|
||
Importing url_get
|
||
Starting tests ...
|
||
non_threaded (1 iters) 0.124774 seconds
|
||
threaded (1 threads) 0.120478 seconds
|
||
processes (1 procs) 0.121404 seconds
|
||
|
||
non_threaded (2 iters) 0.239574 seconds
|
||
threaded (2 threads) 0.146138 seconds
|
||
processes (2 procs) 0.138366 seconds
|
||
|
||
non_threaded (4 iters) 0.479159 seconds
|
||
threaded (4 threads) 0.200985 seconds
|
||
processes (4 procs) 0.188847 seconds
|
||
|
||
non_threaded (8 iters) 0.960621 seconds
|
||
threaded (8 threads) 0.659298 seconds
|
||
processes (8 procs) 0.298625 seconds
|
||
|
||
We finally see threaded performance surpass that of
|
||
single-threaded execution, but the pyprocessing package is still
|
||
faster when increasing the number of workers. If you stay with
|
||
one or two threads/workers, then the timing between threads and
|
||
pyprocessing is fairly close.
|
||
|
||
One item of note however, is that there is an implicit overhead
|
||
within the pyprocessing package's Queue implementation due to the
|
||
object serialization.
|
||
|
||
Alec Thomas provided a short example based on the
|
||
run_benchmarks.py script to demonstrate this overhead versus the
|
||
default Queue implementation:
|
||
|
||
cmd: run_bench_queue.py
|
||
non_threaded (1 iters) 0.010546 seconds
|
||
threaded (1 threads) 0.015164 seconds
|
||
processes (1 procs) 0.066167 seconds
|
||
|
||
non_threaded (2 iters) 0.020768 seconds
|
||
threaded (2 threads) 0.041635 seconds
|
||
processes (2 procs) 0.084270 seconds
|
||
|
||
non_threaded (4 iters) 0.041718 seconds
|
||
threaded (4 threads) 0.086394 seconds
|
||
processes (4 procs) 0.144176 seconds
|
||
|
||
non_threaded (8 iters) 0.083488 seconds
|
||
threaded (8 threads) 0.184254 seconds
|
||
processes (8 procs) 0.302999 seconds
|
||
|
||
Additional benchmarks can be found in the pyprocessing package's
|
||
source distribution's examples/ directory. The examples will be
|
||
included in the package's documentation.
|
||
|
||
Maintenance
|
||
|
||
Richard M. Oudkerk - the author of the pyprocessing package has
|
||
agreed to maintain the package within Python SVN. Jesse Noller
|
||
has volunteered to also help maintain/document and test the
|
||
package.
|
||
|
||
API Naming
|
||
|
||
While the aim of the package's API is designed to closely mimic that of
|
||
the threading and Queue modules as of python 2.x, those modules are not
|
||
PEP 8 compliant. It has been decided that instead of adding the package
|
||
"as is" and therefore perpetuating the non-PEP 8 compliant naming, we
|
||
will rename all APIs, classes, etc to be fully PEP 8 compliant.
|
||
|
||
This change does affect the ease-of-drop in replacement for those using
|
||
the threading module, but that is an acceptable side-effect in the view
|
||
of the authors, especially given that the threading module's own API
|
||
will change.
|
||
|
||
Issue 3042 in the tracker proposes that for Python 2.6 there will be
|
||
two APIs for the threading module - the current one, and the PEP 8
|
||
compliant one. Warnings about the upcoming removal of the original
|
||
java-style API will be issued when -3 is invoked.
|
||
|
||
In Python 3000, the threading API will become PEP 8 compliant, which
|
||
means that the multiprocessing module and the threading module will
|
||
again have matching APIs.
|
||
|
||
Timing/Schedule
|
||
|
||
Some concerns have been raised about the timing/lateness of this
|
||
PEP for the 2.6 and 3.0 releases this year, however it is felt by
|
||
both the authors and others that the functionality this package
|
||
offers surpasses the risk of inclusion.
|
||
|
||
However, taking into account the desire not to destabilize
|
||
Python-core, some refactoring of pyprocessing's code "into"
|
||
Python-core can be withheld until the next 2.x/3.x releases. This
|
||
means that the actual risk to Python-core is minimal, and largely
|
||
constrained to the actual package itself.
|
||
|
||
Open Issues
|
||
|
||
* Confirm no "default" remote connection capabilities, if needed
|
||
enable the remote security mechanisms by default for those
|
||
classes which offer remote capabilities.
|
||
|
||
* Some of the API (Queue methods qsize(), task_done() and join())
|
||
either need to be added, or the reason for their exclusion needs
|
||
to be identified and documented clearly.
|
||
|
||
Closed Issues
|
||
|
||
* The PyGILState bug patch submitted in issue 1683 by roudkerk
|
||
must be applied for the package unit tests to work.
|
||
|
||
* Existing documentation has to be moved to ReST formatting.
|
||
|
||
* Reliance on ctypes: The pyprocessing package's reliance on
|
||
ctypes prevents the package from functioning on platforms where
|
||
ctypes is not supported. This is not a restriction of this
|
||
package, but rather of ctypes.
|
||
|
||
* DONE: Rename top-level package from "pyprocessing" to
|
||
"multiprocessing".
|
||
|
||
* DONE: Also note that the default behavior of process spawning
|
||
does not make it compatible with use within IDLE as-is, this
|
||
will be examined as a bug-fix or "setExecutable" enhancement.
|
||
|
||
* DONE: Add in "multiprocessing.setExecutable()" method to override the
|
||
default behavior of the package to spawn processes using the
|
||
current executable name rather than the Python interpreter. Note
|
||
that Mark Hammond has suggested a factory-style interface for
|
||
this[7].
|
||
|
||
References
|
||
|
||
[1] PyProcessing home page
|
||
http://pyprocessing.berlios.de/
|
||
|
||
[2] See Adam Olsen's "safe threading" project
|
||
http://code.google.com/p/python-safethread/
|
||
|
||
[3] See: Addition of "pyprocessing" module to standard lib.
|
||
http://mail.python.org/pipermail/python-dev/2008-May/079417.html
|
||
|
||
[4] http://mpi4py.scipy.org/
|
||
|
||
[5] See "Cluster Computing"
|
||
http://wiki.python.org/moin/ParallelProcessing
|
||
|
||
[6] The original run_benchmark.py code was published in Python
|
||
Magazine in December 2007: "Python Threads and the Global
|
||
Interpreter Lock" by Jesse Noller. It has been modified for
|
||
this PEP.
|
||
|
||
[7] http://groups.google.com/group/python-dev2/msg/54cf06d15cbcbc34
|
||
|
||
[8] Addition Python-Dev discussion
|
||
http://mail.python.org/pipermail/python-dev/2008-June/080011.html
|
||
|
||
Copyright
|
||
|
||
This document has been placed in the public domain.
|
||
|
||
|
||
|
||
Local Variables:
|
||
mode: indented-text
|
||
indent-tabs-mode: nil
|
||
sentence-end-double-space: t
|
||
fill-column: 70
|
||
coding: utf-8
|
||
End:
|