Python 3.3 includes in its standard library the new package
venv. What does it do, and how does it differ from all the other packages that match the regex
This is my personal recommendation for beginners: start by learning
pip, tools which work with both Python 2 and 3 and in a variety of situations, and pick up other tools once you start needing them.
Now on to answer the question: what is the difference between these similarly named things: venv, virtualenv, etc?
PyPI packages not in the standard library:
virtualenvis a very popular tool that creates isolated Python environments for Python libraries. If you're not familiar with this tool, I highly recommend learning it, as it is a very useful tool.
It works by installing a bunch of files in a directory (eg:
env/), and then modifying the
PATHenvironment variable to prefix it with a custom
env/bin/). An exact copy of the
python3binary is placed in this directory, but Python is programmed to look for libraries relative to its path first, in the environment directory. It's not part of Python's standard library, but is officially blessed by the PyPA (Python Packaging Authority). Once activated, you can install packages in the virtual environment using
pyenvis used to isolate Python versions. For example, you may want to test your code against Python 2.7, 3.6, 3.7 and 3.8, so you'll need a way to switch between them. Once activated, it prefixes the
PATHenvironment variable with
~/.pyenv/shims, where there are special files matching the Python commands (
pip). These are not copies of the Python-shipped commands; they are special scripts that decide on the fly which version of Python to run based on the
PYENV_VERSIONenvironment variable, or the
.python-versionfile, or the
pyenvalso makes the process of downloading and installing multiple Python versions easier, using the command
pyenv-virtualenvis a plugin for
pyenvby the same author as
pyenv, to allow you to use
virtualenvat the same time conveniently. However, if you're using Python 3.3 or later,
pyenv-virtualenvwill try to run
python -m venvif it is available, instead of
virtualenv. You can use
pyenv-virtualenv, if you don't want the convenience features.
virtualenvwrapperis a set of extensions to
virtualenv(see docs). It gives you commands like
lssitepackages, and especially
workonfor switching between different
virtualenvdirectories. This tool is especially useful if you want multiple
pyenv-virtualenvwrapperis a plugin for
pyenvby the same author as
pyenv, to conveniently integrate
pipenvaims to combine
virtualenvinto one command on the command-line. The
virtualenvdirectory typically gets placed in
XXXbeing a hash of the path of the project directory. This is different from
virtualenv, where the directory is typically in the current working directory.
pipenvis meant to be used when developing Python applications (as opposed to libraries). There are alternatives to
pipenv, such as
poetry, which I won't list here since this question is only about the packages that are similarly named.
pyvenv(not to be confused with
pyenvin the previous section) is a script shipped with Python 3.3 to 3.7. It was removed from Python 3.8 as it had problems (not to mention the confusing name). Running
python3 -m venvhas exactly the same effect as
venvis a package shipped with Python 3, which you can run using
python3 -m venv(although for some reason some distros separate it out into a separate distro package, such as
python3-venvon Ubuntu/Debian). It serves the same purpose as
virtualenv, but only has a subset of its features (see a comparison here).
virtualenvcontinues to be more popular than
venv, especially since the former supports both Python 2 and 3.
I would just avoid the use of
virtualenv after Python3.3+ and instead use the standard shipped library
venv. To create a new virtual environment you would type:
$ python3 -m venv <MYVENV>
virtualenv tries to copy the Python binary into the virtual environment's bin directory. However it does not update library file links embedded into that binary, so if you build Python from source into a non-system directory with relative path names, the Python binary breaks. Since this is how you make a copy distributable Python, it is a big flaw. BTW to inspect embedded library file links on OS X, use
otool. For example from within your virtual environment, type:
$ otool -L bin/python python: @executable_path/../Python (compatibility version 3.4.0, current version 3.4.0) /usr/lib/libSystem.B.dylib (compatibility version 1.0.0, current version 1238.0.0)
Consequently I would avoid
pyvenv is deprecated.
pyenv seems to be used often where
virtualenv is used but I would stay away from it also since I think
venv also does what
pyenv is built for.
venv creates virtual environments in the shell that are fresh and sandboxed, with user-installable libraries, and it's multi-python safe.
Fresh: because virtual environments only start with the standard libraries that ship with python, you have to install any other libraries all over again with
pip install while the virtual environment is active.
Sandboxed: because none of these new library installs are visible outside the virtual environment, so you can delete the whole environment and start again without worrying about impacting your base python install.
User-installable libraries: because the virtual environment's target folder is created without
sudo in some directory you already own, so you won't need
sudo permissions to install libraries into it.
multi-python safe: because when virtual environments activate, the shell only sees the python version (3.4, 3.5 etc.) that was used to build that virtual environment.
pyenv is similar to
venv in that it lets you manage multiple python environments. However with
pyenv you can't conveniently rollback library installs to some start state and you will likely need
admin privileges at some point to update libraries. So I think it is also best to use
In the last couple of years I have found many problems in build systems (emacs packages, python standalone application builders, installers...) that ultimately come down to issues with
virtualenv. I think python will be a better platform when we eliminate this additional option and only use
EDIT: Tweet of the BDFL,
I use venv (in the stdlib) and a bunch of shell aliases to quickly switch.
— Guido van Rossum (@gvanrossum) October 22, 2020
Added below "Conclusion" paragraph
I've went down the
pipenv rabbit hole (it's a deep and dark hole indeed...) and since the last answer is over 2 years ago, felt it was useful to update the discussion with the latest developments on the Python virtual envelopes topic I've found.
This answer is NOT about continuing the raging debate about the merits of pipenv versus venv as envelope solutions- I make no endorsement of either. It's about PyPA endorsing conflicting standards and how future development of virtualenv promises to negate making an either/or choice between them at all. I focused on these two tools precisely because they are the anointed ones by PyPA.
As the OP notes, venv is a tool for virtualizing environments. NOT a third party solution, but native tool. PyPA endorses venv for creating VIRTUAL ENVELOPES: "Changed in version 3.5: The use of venv is now recommended for creating virtual environments".
pipenv- like venv - can be used to create virtual envelopes but additionally rolls-in package management and vulnerability checking functionality. Instead of using
pipenv delivers package management via Pipfile. As PyPA endorses pipenv for PACKAGE MANAGEMENT, that would seem to imply
pipfile is to supplant
HOWEVER: pipenv uses virtualenv as its tool for creating virtual envelopes, NOT venv which is endorsed by PyPA as the go-to tool for creating virtual envelopes.
So if settling on a virtual envelope solution wasn't difficult enough, we now have PyPA endorsing two different tools which use different virtual envelope solutions. The raging Github debate on venv vs virtualenv which highlights this conflict can be found here.
The Github debate referenced in above link has steered virtualenv development in the direction of accommodating venv in future releases:
prefer built-in venv: if the target python has venv we'll create the environment using that (and then perform subsequent operations on that to facilitate other guarantees we offer)
So it looks like there will be some future convergence between the two rival virtual envelope solutions, but as of now pipenv- which uses
virtualenv - varies materially from
Given the problems pipenv solves and the fact that PyPA has given its blessing, it appears to have a bright future. And if virtualenv delivers on its proposed development objectives, choosing a virtual envelope solution should no longer be a case of either pipenv OR venv.
An oft repeated criticism of Pipenv I saw when producing this analysis was that it was not actively maintained. Indeed, what's the point of using a solution whose future could be seen questionable due to lack of continuous development? After a dry spell of about 18 months, Pipenv is once again being actively developed. Indeed, large and material updates have since been released.
Let's start with the problems these tools want to solve:
My system package manager don't have the Python versions I wanted or I want to install multiple Python versions side by side, Python 3.9.0 and Python 3.9.1, Python 3.5.3, etc
Then use pyenv.
I want to install and run multiple applications with different, conflicting dependencies.
Then use virtualenv or venv. These are almost completely interchangeable, the difference being that virtualenv supports older python versions and has a few more minor unique features, while venv is in the standard library.
I'm developing an /application/ and need to manage my dependencies, and manage the dependency resolution of the dependencies of my project.
Then use pipenv or poetry.
I'm developing a /library/ or a /package/ and want to specify the dependencies that my library users need to install
Then use setuptools.
I used virtualenv, but I don't like virtualenv folders being scattered around various project folders. I want a centralised management of the environments and some simple project management
Then use virtualenvwrapper. Variant: pyenv-virtualenvwrapper if you also use pyenv.
- pyvenv. This is deprecated, use venv or virtualenv instead. Not to be confused with pipenv or pyenv.
Jan 2020 Update
@Flimm has explained all the differences very well. Generally, we want to know the difference between all tools because we want to decide what's best for us. So, the next question would be: which one to use? I suggest you choose one of the two official ways to manage virtual environments:
- pyenv - manages different python versions,
- all others - create virtual environment (which has isolated python version and installed "requirements"),
pipenv want combine all, in addition to previous it installs "requirements" (into the active virtual environment or create its own if none is active)
So maybe you will be happy with pipenv only.
But I use: pyenv + pyenv-virtualenvwrapper, + pipenv (pipenv for installing requirements only).
apt install libffi-dev
install pyenv based on https://www.tecmint.com/pyenv-install-and-manage-multiple-python-versions-in-linux/, but..
.. but instead of pyenv-virtualenv install pyenv-virtualenvwrapper (which can be standalone library or pyenv plugin, here the 2nd option):
$ pyenv install 3.9.0 $ git clone https://github.com/pyenv/pyenv-virtualenvwrapper.git $(pyenv root)/plugins/pyenv-virtualenvwrapper # inside ~/.bashrc add: # export $VIRTUALENVWRAPPER_PYTHON="/usr/bin/python3" $ source ~/.bashrc $ pyenv virtualenvwrapper
Then create virtual environments for your projects (workingdir must exist):
pyenv local 3.9.0 # to prevent 'interpreter not found' in mkvirtualenv python -m pip install --upgrade pip setuptools wheel mkvirtualenv <venvname> -p python3.9 -a <workingdir>
and switch between projects:
workon <venvname> python -m pip install --upgrade pip setuptools wheel pipenv
Inside a project I have the file requirements.txt, without fixing the versions inside (if some version limitation is not neccessary). You have 2 possible tools to install them into the current virtual environment: pip-tools or pipenv. Lets say you will use pipenv:
pipenv install -r requirements.txt
this will create Pipfile and Pipfile.lock files, fixed versions are in the 2nd one. If you want reinstall somewhere exactly same versions then (Pipfile.lock must be present):
Remember that Pipfile.lock is related to some Python version and need to be recreated if you use a different one.
As you see I write requirements.txt. This has some problems: You must remove a removed package from Pipfile too. So writing Pipfile directly is probably better.
So you can see I use pipenv very poorly. Maybe if you will use it well, it can replace everything?
EDIT 2021.01: I have changed my stack to:
pyenv + pyenv-virtualenvwrapper + poetry. Ie. I use no apt or pip installation of virtualenv or virtualenvwrapper, and instead I install
pyenv-virtualenvwrapper. This is easier way.
Poetry is great for me:
poetry add <package> # install single package poetry remove <package> poetry install # if you remove poetry.lock poetry will re-calculate versions
As a Python newcomer this question frustrated me endlessly and confused me for months. Which virtual environment and package manager(s) should I invest in learning when I know that I will be using it for years to come?
The best article answering this vexing question is https://jakevdp.github.io/blog/2016/08/25/conda-myths-and-misconceptions/ by Jake Vanderplas. Although a few years old, it provides practical answers and the history of Python package and virtual environment managers from the trenches as these state-of-the-art was developing.
So why use pip at all, when conda does everything that pip and venv variants do?
The answer is, "because you MUST use pip if a conda package is simply not available." Many times a required package is only available in pip format and there is no easy solution but to use pip. You can learn to use
conda build but if you are not the package maintainer, then you must convince the package owner to generate a conda package for each new release (or do it yourself.)
These pip-based packages differ along many important and practical dimensions:
- active support (versus dying or dead)
- levels of adoption near the Python ecosystem "core" versus "on the fringes" (i.e., integrated into Python.org distro)
- easy to figure out and use (for beginners)
I will answer your question for two packages from dimension of package maturity and stability.
venv and virtualenv are the most mature, stability, and community support. From the online documentation you can see that virtualenv is in version 20.x as of today. virtualenv
virtualenv is a tool to create isolated Python environments. Since Python 3.3, a subset of it has been integrated into the standard library under the venv module. The venv module does not offer all features of this library, to name just a few more prominent:
is slower (by not having the app-data seed method), is not as extendable, cannot create virtual environments for arbitrarily installed python versions (and automatically discover these), is not upgrade-able via pip, does not have as rich programmatic API (describe virtual environments without creating them).
virtualenvwrapper is set of scripts to help people use virtualenv (it is a "wrapper" that not well-maintained, its last update was in 2019. virtualenvwrapper
My recommendation is to avoid ALL pip virtual environments whenever possible. Use conda instead. Conda provides a unified approach. It is maintained by teams of professional open source developers and has a reputable company providing funding and a commercially supported version. The teams that maintain pip, venv, virtualenv, pipenv, and many other pip variants have limited resources by comparison. The pip virtual environment plurality is frustrating for beginners. The pip-based virtual environment tools complexity, fragmentation, fringe and unsupported packages, and wildly inconsistent support drove me to use conda. For data science work, my recommendation is that to use a pip-based virtual environment manager as a last resort when conda packages do not exist.
The differences between the venv variants still scare me because my time is limited to learn new packages. pipenv, venv, pyvenv, pyenv, virtualenv, virtualenvwrapper, poetry, and others have dozens of differences and complexities that take days to understand. I hate going down a path and find support for a package goes belly-up when a maintainer resigns (or gets too busy to maintain it). I just need to get my job done.
In the spirit of being helpful, here are a few links to help you dive in over your head, but not get lost in Dante's Inferno (re: pip).
Choosing "core" Python packages to invest in for your career (long-term), versus getting a job done short term) is important. However, it is a business analysis question. Are you trying to simply get a task done, or a professional software engineer who builds scalable performant systems that require the least amount of maintenance effort over time? IMHO, conda will take you to the latter place more easily than dealing with pip-plurality problems. conda is still missing 1-step pip-package migration tools that make this a moot question. If we could simply convert pip packages into conda packages then pypi.org and conda-forge could be merged. Pip is necessary because conda packages are not (yet) universal. Many Python programmers are either too lazy to create conda packages, or they only program in Python and don't need conda's language-agnostic / multi-lingual support.
Keep it simple! I need one package that does 90% of what I need and guidance and workarounds for the 10% remaining edge cases.
Check out the articles linked herein to learn more about pip-based virtual environments.
I hope this is helpful to the original poster and gives pip and conda aficionados some things to think about.