2

When I install opencv-python-headless in Google Colab, it takes 15 minutes to complete.

My code:

! pip install --upgrade pip
! pip install opencv-python-headless

Here's a notebook with this code which recreates the problem: https://colab.research.google.com/gist/mherzog01/38b6cf71942a443da072f09bc097387f/slow-install-of-opencv-python-headless.ipynb.

The process eventually completes, but I'd like to reduce the time to install.

I saw from `Building wheel for opencv-python (PEP 517) ... -` runs forever a discussion about compiling OpenCV, which could very well be what is happening here. However, this same SO post states that if you upgrade pip, it will use pre-built wheels.

Edit: Added @intsco's workaround to the Google Colab

5

Might be related to changes in OpenCV >=4.3 wheels https://github.com/skvark/opencv-python#backward-compatibility

Starting from 4.3.0 and 3.4.10 builds the Linux build environment was updated from manylinux1 to manylinux2014. This dropped support for old Linux distributions.

My workaround: pip install "opencv-python-headless<4.3"

2
  • This answer also provides a workaround to installing TensorFlow Object Detection -- just install opencv-python-headless<4.3 before running their setup. Works great!
    – mherzog
    Nov 3 '20 at 1:54
  • 1
    manylinux2014 is compatible with most GNU/Linux distributions released in 2014 or later. If your pip fails to install the manylinux2014 wheels then it's most likely just too old. The issue isn't related to manylinux2014, it's related to missing wheels as described in my answer.
    – skvark
    Nov 3 '20 at 13:42
2

The install takes a long time since pip built the package from sources. The reason for that was that a new opencv-python-headless release was published to PyPI probably around the same time you tried to install it. It takes several hours for all the pre-built wheels to appear to PyPI. I believe the install works now fast, since all the wheels are in PyPI: https://pypi.org/project/opencv-python-headless/4.4.0.46/#files

This problem can be avoided by pinning the version, e.g. pip install opencv-python-headless==4.4.0.44, and upgrading manually when needed.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.