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Is there a way to upgrade the version of python used in a virtualenv (e.g. if a bugfix release comes out)?

I could pip freeze --local > requirements.txt then remove the directory and pip install -r requirements.txt but this requires a lot of reinstallation of large libraries, for instance numpy which I use a lot.

I can see this is an advantage when upgrading from e.g. 2.6 -> 2.7, but what about 2.7.x -> 2.7.y?

Thanks

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1  
While you may be able to modify some paths, etc. to get it to work. The last thing you want is a slightly different environment from production. Just think.. if there is even one difference between how the various versions compile, you're going to loose out on all the time saved by tracking down the bug. I'd just take the time to create a brand new virtualenv and reinstall everything. –  sdolan Jun 15 '12 at 22:10

3 Answers 3

up vote 16 down vote accepted
+100

Did you see this? If I haven't misunderstand that answer, yo may try to create a new virtualenv on top of the old one. You just need to know which python is going to use your virtualenv (you will need to see your virtualenv version).

If your virtualenv is installed with the same python version of the old one and upgrading your virtualenv package is not an option, you may want to read this in order to install a virtualenv with the python version you want.

EDIT

I've tested this approach (the one that create a new virtualenv on top of the old one) and it worked fine for me. I think you may have some problems if you change from python 2.6 to 2.7 or 2.7 to 3.x but if you just upgrade inside the same version (staying at 2.7 as you want) you shouldn't have any problem, as all the packages are held in the same folders for both python versions (2.7.x and 2.7.y packages are inside your_env/lib/python2.7/).

If you change your virtualenv python version, you will need to install all your packages again for that version (or just link the packages you need into the new version packages folder, i.e: your_env/lib/python_newversion/site-packages)

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He specifically did not want to reinstall any packages if possible. Obviously you have never installed numpy from source if you do not know why it matters ;) hint: it takes a LOOOOOOOOOOOOOONG time. –  Antti Haapala Jun 16 '12 at 20:16
    
yeah, i understand that. But it seems that if he make a virtualenv in top of the other, packages are not lost, so he won't have to reinstall numpy or any other package. Nevertheless, i think he should try this in a new virtualenv in case it fails. –  marianobianchi Jun 16 '12 at 20:33
    
and yes... i have never used or install numpy, so maybe i need a pain like that in order to understand his needs :) –  marianobianchi Jun 16 '12 at 20:34
2  
It didn't work for me and looks like it's not supposed to: github.com/pypa/virtualenv/issues/437 –  Kentzo Jul 20 '13 at 7:07
1  
I tried to create a new virtualenv on top of the old one, and it did work. I did have to specify -p to point it to the right version of python. –  osa Nov 4 '13 at 3:01

I wasn't able to create a new virtualenv on top of the old one. But there are tools in pip which make it much faster to re-install requirements into a brand new venv. Pip can build each of the items in your requirements.txt into a wheel package, and store that in a local cache. When you create a new venv and run pip install in it, pip will automatically use the prebuilt wheels if it finds them. Wheels install much faster than running setup.py for each module.

My ~/.pip/pip.conf looks like this:

[global]
download-cache = /Users/me/.pip/download-cache
find-links =
/Users/me/.pip/wheels/

[wheel]
wheel-dir = /Users/me/.pip/wheels

I install wheel (pip install wheel), then run pip wheel -r requirements.txt. This stores the built wheels in the wheel-dir in my pip.conf.

From then on, any time I pip install any of these requirements, it installs them from the wheels, which is pretty quick.

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Updated: I changed the answer 5 months after I originally answered. The following method is more convenient and robust.

Side effect: it also fixes the Symbol not found: _SSLv2_method exception when you do import ssl in a virtual environment after upgrading Python to v2.7.8.

Notice: Currently, this is for Python 2.7.x only.


If you're using Homebrew Python on OS X, first deactivate all virtualenv, then upgrade Python:

brew update && brew upgrade python

Run the following commands (<EXISTING_ENV_PATH> is path of your virtual environment):

rm <EXISTING_ENV_PATH>/bin/pip
rm <EXISTING_ENV_PATH>/bin/pip2
rm <EXISTING_ENV_PATH>/bin/pip2.7
rm <EXISTING_ENV_PATH>/bin/python
rm <EXISTING_ENV_PATH>/bin/python2
rm <EXISTING_ENV_PATH>/bin/python2.7
rm -r <EXISTING_ENV_PATH>/include/python2.7
rm <EXISTING_ENV_PATH>/lib/python2.7/*
rm -r <EXISTING_ENV_PATH>/lib/python2.7/distutils
rm <EXISTING_ENV_PATH>/lib/python2.7/site-packages/easy_install.*
rm -r <EXISTING_ENV_PATH>/lib/python2.7/site-packages/pip
rm -r <EXISTING_ENV_PATH>/lib/python2.7/site-packages/pip-*.dist-info
rm -r <EXISTING_ENV_PATH>/lib/python2.7/site-packages/setuptools
rm -r <EXISTING_ENV_PATH>/lib/python2.7/site-packages/setuptools-*.dist-info

Finally, re-create your virtual environment:

virtualenv <EXISTING_ENV_PATH>

By doing so, old Python core files and standard libraries (plus setuptools and pip) are removed, while the custom libraries installed in site-packages are preserved and working, as soon as they are in pure Python. Binary libraries may or may not need to be reinstalled to function properly.

This worked for me on 5 virtual environments with Django installed.

BTW, if ./manage.py compilemessages is not working afterwards, try this:

brew install gettext && brew link gettext --force
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