I am sure it is not network issue. Some of my machine install packages using pip is very fast while some other machine is pretty slow, from the logs, I suspect the slow is due to it will compile the package, I am wondering how can I avoid this compilation to make the pip installation fast. Here's the logs from the slow pip installation.

Collecting numpy==1.10.4 (from -r requirements.txt (line 1))
  Downloading numpy-1.10.4.tar.gz (4.1MB)
    100% |████████████████████████████████| 4.1MB 95kB/s
Requirement already satisfied (use --upgrade to upgrade): wheel==0.26.0 in ./lib/python2.7/site-packages (from -r requirements.txt (line 2))
Building wheels for collected packages: numpy
  Running setup.py bdist_wheel for numpy ... -
  Stored in directory: /root/.cache/pip/wheels/66/f5/d7/f6ddd78b61037fcb51a3e32c9cd276e292343cdd62d5384efd
Successfully built numpy
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    Notice ` Stored in directory: /root/.cache/pip/wheels/66/f5/d7/f6ddd78b61037fcb51a3e32c9cd276e292343cdd62d5384efd`: it's cacheing the build output (which it'll reuse) -- I imagine you occasionally get a slow installation when you miss this cache (especially for really slow-to-compile packages like numpy) Commented Feb 2, 2016 at 2:58
  • Some packages need to be compiled. I don't think there's any way around that.
    – Chris
    Commented Feb 2, 2016 at 3:10
  • it may be a network issue, as pypi is using multiple servers (CDN) for delivery, other issues, that may be an issue: for some of the machines it is finding wheels (prebuild) packages and for some it is compiling from source
    – Jerzyk
    Commented Jul 1, 2016 at 9:40
  • @Chris Sometimes using an older version of Python will get around building dependencies.
    – dstromberg
    Commented May 31, 2022 at 15:59

4 Answers 4


The slowness is due to compilation indeed. But there is now the manylinux tag. Which allows the installation of pre-compiled distributions. See for example the PyPI page of numpy to see if a manylinux package is provided for your Python version.

Update (2021-06)

Since this answer received some attention lately, there are now many manylinux tags for precompiled packages (no pun intended).

  • 1
    how would I indicate to pip that I want to use the wheel?
    – vidstige
    Commented Jan 15, 2018 at 13:25
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    I don't know whether you can force pip to do so. For my environments, pip chose the precompiled packages automatically (if applicable, I guess). But I suppose you need a sufficiently new version of pip. Try pip install --upgrade pip setuptools wheel before pip install numpy.
    – code_onkel
    Commented Jan 15, 2018 at 13:30
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    @code_onkel I'm concerned by pip performance on Windows. Afaik pip has a cache for packages and wheels nowadays. Still installing PyGLM numpy numba Pillow takes up to 25 seconds with cache. With venv-update it's almost instant with their pip-faster tool but it's limited to pip 18+ and venv-update is not quite maintained. Do you please know others tools out there like pip-fasterand more reliable or any tips to speed up pip through configuration?
    – khelkun
    Commented Feb 17, 2022 at 9:18
  • 1
    @khelkun I did not test on windows, but it seems that even with caching, pip checks PyPI for each package. Also, 25 seconds does not seem terribly bad, depending on your hardware. Did you rule out network and disk latency?
    – code_onkel
    Commented Feb 19, 2022 at 14:32

In case anyone was having the network issue and landed on this page like me:

I noticed slowness on my machine because pip install would get stuck in network calls while trying to create socket connections (sock.connect()). As discussed here, this can happen when the host supports IPv6 but your network doesnt. As instructed here, I checked if this was true by disabling IPv6 on my Ubuntu machine as follows :

sysctl net.ipv6.conf.all.disable_ipv6=1

I was no longer hanging in network calls after this change.

However, I am not sure if this is a sustainable solution since we are all slowly moving to IPv6.


For me, I was running into this issue with pip 22.0.4, Ubuntu 20.04.4 LTS. I was installing tensorflow-gpu, which already takes too much time, but the pip was unusually very slow. The above solutions didn't make any sense to me, so I did the following:

  • Do not run pip commands with sudo.
  • sudo apt-get update && sudo apt-get upgrade
  • Reboot the server/computer

I know it doesn't seem to be a permanent solution, but it fixed the issue for me.


If you are using Anaconda, try updating pip, this solved it for me.

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