I want to know the number of CPUs on the local machine using Python. The result should be
user/real as output by
time(1) when called with an optimally scaling userspace-only program.
I want to know the number of CPUs on the local machine using Python. The result should be
If you have python with a version >= 2.6 you can simply use
import multiprocessing multiprocessing.cpu_count()
5multiprocessing is also supported in 3.x Jul 5, 2015 at 10:36
3I want to add that this doesn't work in IronPython which raises a NotImplementedError.– MatthiasFeb 23, 2016 at 15:41
5This gives the number of CPUs on available... not in use by the program!– amcAug 23, 2017 at 23:25
83On Python 3.6.2 I could only use
os.cpu_count()– AchillesSep 11, 2017 at 19:59
17Also, as noted below, this count can include "virtual" hyperthreaded cpus, which may not be what you want if you are scheduling cpu-intensive tasks. Jun 7, 2019 at 15:21
If you're interested into the number of processors available to your current process, you have to check cpuset first. Otherwise (or if cpuset is not in use),
multiprocessing.cpu_count() is the way to go in Python 2.6 and newer. The following method falls back to a couple of alternative methods in older versions of Python:
import os import re import subprocess def available_cpu_count(): """ Number of available virtual or physical CPUs on this system, i.e. user/real as output by time(1) when called with an optimally scaling userspace-only program""" # cpuset # cpuset may restrict the number of *available* processors try: m = re.search(r'(?m)^Cpus_allowed:\s*(.*)$', open('/proc/self/status').read()) if m: res = bin(int(m.group(1).replace(',', ''), 16)).count('1') if res > 0: return res except IOError: pass # Python 2.6+ try: import multiprocessing return multiprocessing.cpu_count() except (ImportError, NotImplementedError): pass # https://github.com/giampaolo/psutil try: import psutil return psutil.cpu_count() # psutil.NUM_CPUS on old versions except (ImportError, AttributeError): pass # POSIX try: res = int(os.sysconf('SC_NPROCESSORS_ONLN')) if res > 0: return res except (AttributeError, ValueError): pass # Windows try: res = int(os.environ['NUMBER_OF_PROCESSORS']) if res > 0: return res except (KeyError, ValueError): pass # jython try: from java.lang import Runtime runtime = Runtime.getRuntime() res = runtime.availableProcessors() if res > 0: return res except ImportError: pass # BSD try: sysctl = subprocess.Popen(['sysctl', '-n', 'hw.ncpu'], stdout=subprocess.PIPE) scStdout = sysctl.communicate() res = int(scStdout) if res > 0: return res except (OSError, ValueError): pass # Linux try: res = open('/proc/cpuinfo').read().count('processor\t:') if res > 0: return res except IOError: pass # Solaris try: pseudoDevices = os.listdir('/devices/pseudo/') res = 0 for pd in pseudoDevices: if re.match(r'^cpuid@[0-9]+$', pd): res += 1 if res > 0: return res except OSError: pass # Other UNIXes (heuristic) try: try: dmesg = open('/var/run/dmesg.boot').read() except IOError: dmesgProcess = subprocess.Popen(['dmesg'], stdout=subprocess.PIPE) dmesg = dmesgProcess.communicate() res = 0 while '\ncpu' + str(res) + ':' in dmesg: res += 1 if res > 0: return res except OSError: pass raise Exception('Can not determine number of CPUs on this system')
On a MacPro 1,0 running the latest Ubuntu, on an HP Laptop running a recent Debian, and on an old eMachine running an old Ubuntu, the cpus_allowed results of
/proc/self/statusare respectively ff, f and f--- corresponding to 8, 4 and 4 by your (correct) math. However the actual numbers of CPUs are respectively 4, 2 and 1. I find that counting the number of occurrences of the word "processor" in
/proc/cpuinfomay be the better way to go. (Or do I have the question wrong?) Jul 20, 2016 at 5:06
1With some further research--- if that can be said of "Googling"--- I find from the use of
/proc/cpuinfothat if for any one of the listings for each "processor" you multiply the "siblings" by the "cpu cores" you get your "Cpus_allowed" number. And I gather that the siblings refer to hyper-threading, hence your reference to "virtual". But the fact remains that your "Cpus_allowed" number is 8 on my MacPro whereas your
multiprocessing.cpu_count()answer is 4. My own
open('/proc/cpuinfo').read().count('processor')also produces 4, the number of physical cores (two dual-core processors). Jul 20, 2016 at 6:47
open('/proc/self/status').read()forgets to close the file. Use
with open('/proc/self/status') as f: f.read()instead Mar 23, 2017 at 16:36
os.cpu_count()– goetzOct 29, 2017 at 17:11
1@amcgregor In this case it's acceptable, agreed, just file handles being left open which I guess is ok if you're not writing a long running daemon/process; which I fear might end up hitting a max open file handles of the OS. It's worse when writing to a file that needs to get read again before the process ends, but that's not the case here so that's a moot point. Still a good idea to have a habit of using
withfor when you do encounter a case where you need it. Dec 11, 2018 at 17:33
len(os.sched_getaffinity(0)) is what you usually want
os.sched_getaffinity(0) (added in Python 3) returns the set of CPUs available considering the
sched_setaffinity Linux system call, which limits which CPUs a process and its children can run on.
0 means to get the value for the current process. The function returns a
set() of allowed CPUs, thus the need for
os.cpu_count() on the other hand just returns the total number of logical CPUs, that is e.g. the number of CPUs considering hyperthreading.
The difference is especially important because certain cluster management systems such as Platform LSF limit job CPU usage with
Therefore, if you use
multiprocessing.cpu_count(), your script might try to use way more cores than it has available, which may lead to overload and timeouts.
We can see the difference concretely by restricting the affinity with the
taskset utility, which allows us to control the affinity of a process.
For example, if I restrict Python to just 1 core (core 0) in my 16 core system:
taskset -c 0 ./main.py
with the test script:
#!/usr/bin/env python3 import multiprocessing import os print(multiprocessing.cpu_count()) print(os.cpu_count()) print(len(os.sched_getaffinity(0)))
then the output is:
16 16 1
nproc does respect the affinity by default and:
taskset -c 0 nproc
man nproc makes that quite explicit:
print the number of processing units available
len(os.sched_getaffinity(0)) behaves like
nproc by default.
nproc has the
--all flag for the less common case that you want to get the physical CPU count without considering taskset:
taskset -c 0 nproc --all
The documentation of
os.cpu_count also briefly mentions this https://docs.python.org/3.8/library/os.html#os.cpu_count
This number is not equivalent to the number of CPUs the current process can use. The number of usable CPUs can be obtained with
The same comment is also copied on the documentation of
From the 3.8 source under
Lib/multiprocessing/context.py we also see that
multiprocessing.cpu_count just forwards to
os.cpu_count, except that the
multiprocessing one throws an exception instead of returning None if
def cpu_count(self): '''Returns the number of CPUs in the system''' num = os.cpu_count() if num is None: raise NotImplementedError('cannot determine number of cpus') else: return num
3.8 availability: systems with a native
The only downside of this
os.sched_getaffinity is that this appears to be UNIX only as of Python 3.8.
cpython 3.8 seems to just try to compile a small C hello world with a
sched_setaffinity function call during configuration time, and if not present
HAVE_SCHED_SETAFFINITY is not set and the function will likely be missing:
psutil.Process().cpu_affinity(): third-party version with a Windows port
psutil package (
pip install psutil) had been mentioned at: https://stackoverflow.com/a/14840102/895245 but not the
cpu_affinity function: https://psutil.readthedocs.io/en/latest/#psutil.Process.cpu_affinity
import psutil print(len(psutil.Process().cpu_affinity()))
This function does the same as the standard library
os.sched_getaffinity on Linux, but they have also implemented it for Windows by making a call to the
GetProcessAffinityMask Windows API function:
So in other words: those Windows users have to stop being lazy and send a patch to the upstream stdlib :-)
Tested in Ubuntu 16.04, Python 3.5.2.
8Only available on Unix. Jun 7, 2019 at 15:24
2Works on jupyter notebook!– PaulSep 4, 2020 at 16:58
2This solution is also necessary for HPC situations where a compute node might have 48 cores but you only requested 10 of them. os.cpu_count() will tell you there's 48 cores but as @CiroSantilli郝海东冠状病六四事件法轮功 says you run into all sorts of problems if you try to use that. os.sched_getaffinity(0) will report what was actually requested from the scheduler eg. PBS– PaulDec 3, 2020 at 8:09
AttributeError: 'Process' object has no attribute 'cpu_affinity'Mar 11, 2021 at 19:10
2@Anentropic thanks for this info, what a shame. mac users gotta look into
psutiland upstream to stdlib then as well it seems then :-) Mar 11, 2021 at 20:05
Another option is to use the
psutil library, which always turn out useful in these situations:
>>> import psutil >>> psutil.cpu_count() 2
This should work on any platform supported by
psutil(Unix and Windows).
Note that in some occasions
multiprocessing.cpu_count may raise a
psutil will be able to obtain the number of CPUs. This is simply because
psutil first tries to use the same techniques used by
multiprocessing and, if those fail, it also uses other techniques.
15This one is really good, considering that used method allows to find out is the CPU cores are logical ore physical ones.
psutil.cpu_count(logical = True)Oct 28, 2019 at 15:18
Hi @Bakuriu, Is there any way to get the number of cpu cores being used by a specific process using psutil?– saichandApr 7, 2020 at 7:37
5@Devilhunter On Windows on my Intel i7-8700
psutil.cpu_count()gives 12 (it's a 6-core CPU with hyperthreading). This is because the default argument of
logicalis True, so you explicitly need to write
psutil.cpu_count(logical = False)to get the number of physical Cores. Apr 24, 2020 at 17:36
psutil.Process().cpu_affinity()is what most users will want I believe as explained at: stackoverflow.com/a/55423170/895245 BTW. Aug 26, 2020 at 22:57
answer needs updation Jun 8, 2022 at 12:38
In Python 3.4+: os.cpu_count().
multiprocessing.cpu_count() is implemented in terms of this function but raises
None ("can't determine number of CPUs").
7See also the documentation of
len(os.sched_getaffinity(0))might be better, depending on the purpose.– AlbertOct 8, 2018 at 14:00
2@Albert yes, the number of CPUs in the system (
os.cpu_count()—what OP asks) may differ from the number of CPUs that are available to the current process (
os.sched_getaffinity(0)).– jfsOct 8, 2018 at 14:13
I know. I just wanted to add that for other readers, who might miss this difference, to get a more complete picture from them.– AlbertOct 9, 2018 at 7:41
os.sched_getaffinity(0)is not available on BSD, so the use of
os.cpu_count()is required (without other external library, that is). May 14, 2019 at 14:23
1It should be noted os.sched_getaffinity does not seem to be available on Windows.– manu3dJun 8, 2019 at 12:33
If you want to know the number of physical cores (not virtual hyperthreaded cores), here is a platform independent solution:
Note that the default value for
True, so if you do want to include hyperthreaded cores you can use:
This will give the same number as
multiprocessing.cpu_count(), neither of which have the
logical keyword argument.
7What is difference between a logical CPU and not not a logical one? on my laptop:
multiprocessing.cpu_count() #8Oct 14, 2016 at 7:39
4@user305883 assuming you have a x86 CPU, you have hyperthreading on this machine, i.e. each physical core corresponds to two hyperthreads ('logical' cores). Hyperthreading allows the physical core to be used to execute instructions from thread B when parts of it are idle for thread A (e.g. waiting for data being fetched from the cache or memory). Depending on your code one can get one or a few tens of percents of additional core utilization but it is far below the performance of a real physical core. Sep 18, 2017 at 13:29
By far the best answer, but it's very difficult to find among all the others. Nov 17, 2021 at 14:46
These give you the hyperthreaded CPU count
These give you the virtual machine CPU count
Only matters if you works on VMs.
Not really. As noted,
multiprocessing.cpu_count()will return hyperthreaded cpu counts, not the actual physical cpu count. Jun 7, 2019 at 15:25
2Yes. I reworded. It's typically # of cores x 2. What I mean is that if you are on a virtual machine, that carved out 8 cores, but your host machine is 20 core physically, first set of command give you 20, second set of command give you 8.– yangliu2Jun 7, 2019 at 20:03
For python version above 3.4 you can use
import os os.cpu_count()
If you are looking for an equivanlent of linux command
nproc. You have this option
multiprocessing.cpu_count() will return the number of logical CPUs, so if you have a quad-core CPU with hyperthreading, it will return
8. If you want the number of physical CPUs, use the python bindings to hwloc:
#!/usr/bin/env python import hwloc topology = hwloc.Topology() topology.load() print topology.get_nbobjs_by_type(hwloc.OBJ_CORE)
hwloc is designed to be portable across OSes and architectures.
This may work for those of us who use different os/systems, but want to get the best of all worlds:
import os workers = os.cpu_count() if 'sched_getaffinity' in dir(os): workers = len(os.sched_getaffinity(0))
Can't figure out how to add to the code or reply to the message but here's support for jython that you can tack in before you give up:
# jython try: from java.lang import Runtime runtime = Runtime.getRuntime() res = runtime.availableProcessors() if res > 0: return res except ImportError: pass
You can also use "joblib" for this purpose.
import joblib print joblib.cpu_count()
This method will give you the number of cpus in the system. joblib needs to be installed though. More information on joblib can be found here https://pythonhosted.org/joblib/parallel.html
Alternatively you can use numexpr package of python. It has lot of simple functions helpful for getting information about the system cpu.
import numexpr as ne print ne.detect_number_of_cores()
1joblib uses the underlying multiprocessing module. It's probably best to call into multiprocessing directly for this.– ogriselFeb 27, 2017 at 14:55
If you are using torch you can do:
import torch.multiprocessing as mp mp.cpu_count()
the mp library in torch has the same interface as the main python one so you can do this too as the commenter mentioned:
python -c "import multiprocessing; print(multiprocessing.cpu_count())"
hope this helps! ;) it's always nice to have more than 1 option.
4This answer should NOT be the first answer. Why to use
torch, a deep learning framework, for a such easy task? Just run:
python -c "import multiprocessing; print(multiprocessing.cpu_count())"May 17, 2021 at 11:40
@EliSimhayev oh I forgot that actually the torch mp module has the same interface so they are the same but will add details ;) and no it's not the first answer, there are some before me :) May 17, 2021 at 15:37
Another option if you don't have Python 2.6:
import commands n = commands.getoutput("grep -c processor /proc/cpuinfo")
2Thanks! This is only available on Linux though, and already included in my answer.– phihagAug 29, 2014 at 20:36
If you are looking for printing the number of cores in your system.
import os no_of_cores = os.cpu_count() print(no_of_cores)
This should help.
6This solution is already provided in this existing answer. When answering old questions, please ensure that your answer provides a distinct and valuable contribution to the Q&A. Sep 21, 2021 at 17:25
1ok thanks will provide suitable information. Sep 21, 2021 at 17:40
/proc/<PID>/statushas some lines that tell you the number of CPUs in the current cpuset: look for
import torch.multiprocessing; mp.cpu_count()