Python takes 17 times longer to load on my Windows 7 machine than Ubuntu 14.04 running on a VM (inside Windows on the same hardware). Anaconda3 distribution is used on Windows and Ubuntu default python3.4.

From a Bash prompt (Git bash on Windows):

$ time python3 -c "pass"

returns in 0.614s on Windows and 0.036s on Linux

When packages are loaded the situation gets worse:

$ time python3 -c "import matplotlib"

returns in 6.01s on Windows and 0.189s on Linux

Spyder takes a whopping 51s to load on Windows and 1.5s on Linux.

I have not had any luck determining why I have this performance problems. Does anyone have any ideas what I should try next?


Why is python so much slower on windows? has been suggested as a possible duplicate but my performance different is far greater and not explained simply by different library dependencies and compilers. This seems to me to be related to filesystem differences.

I had suspected antivirus on-access scans but disabled the antivirus just in case.

>>> sys.path

['', 'c:\\Anaconda3\\python34.zip', 'c:\\Anaconda3\\DLLs', 'c:\\Anaconda3\\lib', 'c:\\Anaconda3', 'c:\\Anaconda3\\lib\\site-packages', 'c:\\Anaconda3\\lib\\site-packages\\Sphinx-1.2.3-py3.4.egg', 'c:\\Anaconda3\\lib\\site-packages\\cryptography-0.8-py3.4-win-amd64.egg', 'c:\\Anaconda3\\lib\\site-packages\\nose-1.3.4-py3.4.egg', 'c:\\Anaconda3\\lib\\site-packages\\win32', 'c:\\Anaconda3\\lib\\site-packages\\win32\\lib', 'c:\\Anaconda3\\lib\\site-packages\\Pythonwin', 'c:\\Anaconda3\\lib\\site-packages\\setuptools-14.3-py3.4.egg']


A fresh install of Windows 8.1 Pro on the same PC solved the problem. After reinstalling all applications and Anaconda3 Python performance is the best I have seen. Unfortunately the root cause of this issue is still unknown.


After my IT dept installed Sophos SafeGuard encryption software and MS Endpoint Protection the problem returned. Same slow start as before. Disabling the extra software did not solve the problem so we are trying tests on other machines to trace the problem.

  • possible duplicate of Why is python so much slower on windows? May 2, 2015 at 1:24
  • 4
    my results are 0.013s win & 0.040 linux for python3 -c "pass", i.e. python works normally on win. i suppose that it's more depends to you environment, rather than python itself. Check your anaconda distribution and 3d party connected dlls, which can be not perfectly fast ans slow down python. To test that, you could install separately vanilla python3k and compare your checks.
    – Reishin
    May 2, 2015 at 2:00
  • 1
    Correction: The problem reappeared after a my IT dept installed antivirus and encryption software. Working now to see if these are the culprits.
    – Mike
    Aug 27, 2015 at 19:31
  • 1
    Sometimes antivirus is active even if you explicitly disable it (only uninstall fixes it), especially when some kind of filter driver gets installed. Have seen stuff like 50ms pauses for every registry key access due to antivirus at times. So if reinstalling AV + encryption does that, you probably have the reason. Btw. windows has some pretty good performance measurment tools (xperf/wpr/wpa) that could probably tell you exactly where the time is spent.
    – schlenk
    Aug 27, 2015 at 19:42
  • 1
    After uninstalling Sophos SafeGuard I see a huge improvement. time python3 -c "import matplotlib" now reports 20ms on Windows 8. This is faster than I was seeing in my Linux VM.
    – Mike
    Sep 24, 2015 at 18:58

3 Answers 3


The problem is solved by uninstalling Sophos SafeGuard. This is not really a satisfactory solution though since my company uses this filesystem encryption software on directories that I access daily. I have not seem any other performance problems except with Python (and apparently Ruby as well).

NOTE: Sophos SafeGuard is not antivirus software. It is an enterprise filesystem encryption system. The strange thing is that encryption is explicitly not enabled for local filesystems, such as where Python is installed.

  • if you have not picked an AV to replace it, I recommend AVG or BitDefender. Oct 6, 2015 at 0:38
  • Thanks but SafeGuard is not AV, it is filesystem encryption.
    – Mike
    Oct 6, 2015 at 21:02
  • whoops. Sorry XD I saw Sophia and I thought AV Oct 6, 2015 at 21:29

May not be relevant to your case, but I found that running python in Windows with Sophos Safeguard and Mcafee Enteprise Antivirus that python startup times were an order of magnitude slower if python was being run as an elevated process. Switching it to run as a normal process made a dramatic difference for me.

  • Interesting, I have rarely needed to run python elevated and was easily seeing an order of magnitude slowdown with Safeguard running as a normal process.
    – Mike
    Dec 9, 2015 at 7:49
  1. Perhaps a contributor to startup variance could be default loaded modules. You can use sys.modules to compare your two environments.

python -c "import sys;print(len(sys.modules))"

For me the answer is

$ time py -2 -c "pass"

real    0m0.054s
user    0m0.000s
sys     0m0.000s

$ py -2 -c "import sys;print(len(sys.modules))"

$ time py -3 -c "pass"

real    0m0.063s
user    0m0.000s
sys     0m0.000s

$ py -3 -c "import sys;print(len(sys.modules))"

And you can use virtual envs to manipulate the default loaded modules. https://virtualenv.pypa.io/en/latest/

  1. Git bash for windows seems to be misbehaving for me with python. I don't see the version banner when I launch the interpreter. I would compare start times with a cmd prompt. Or even with a python launching python. E.g.


import subprocess
import time
start = time.time()
subprocess.check_call(["python", '-c ', 'pass'])
print time.time() - start
  • I'm getting 0.047s for time python -c "pass" on my Lenovo Y410p running Win 10 but 0.585s for the same on my workstation running Win 8. The module counts for both machines are the same for Python 3.
    – Mike
    Aug 31, 2015 at 6:56

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