I recently discovered Conda after I was having trouble installing SciPy, specifically on a Heroku app that I am developing.

With Conda you create environments, very similar to what virtualenv does. My questions are:

  1. If I use Conda will it replace the need for virtualenv? If not, how do I use the two together? Do I install virtualenv in Conda, or Conda in virtualenv?
  2. Do I still need to use pip? If so, will I still be able to install packages with pip in an isolated environment?
  • If you're interested in using conda and pip on Heroku, see for example github.com/faph/conda-pip-buildpack – faph Dec 22 '15 at 12:25
  • Thanks. I've noticed that there is quite a number of conda buildpacks for Heroku on github. What factors should I take into account when deciding which buildpack to use? – Johan Dec 22 '15 at 19:07
  • Note that you will still need to use pip if you want to install packages that aren't available directly from Continuum's servers. – ali_m Dec 22 '15 at 22:38
  • Yes, I saw that they are still on Django 1.8 (not 1.9). At the moment I will use conda where needed (scipy and numpy) and pip for everything else - but still within conda. – Johan Dec 23 '15 at 5:22
  • Most conda Heroku buildpacks originate from the one by Kenneth Reitz I think. With people tweaking them to suit their preferences. Just check if they include both conda and pip support if that's what you need. And if they support the environment.yml file. You can always quickly look through the buildpack code to see if you like the build script, for example to see how exactly environments are created. – faph Dec 23 '15 at 9:13
  1. Conda replaces virtualenv. In my opinion it is better. It is not limited to Python but can be used for other languages too. In my experience it provides a much smoother experience, especially for scientific packages. The first time I got MayaVi properly installed on Mac was with conda.

  2. You can still use pip. In fact, conda installs pip in each new environment. It knows about pip-installed packages.

For example:

conda list

lists all installed packages in your current environment. Conda-installed packages show up like this:

sphinx_rtd_theme          0.1.7                    py35_0    defaults

and the ones installed via piplike this:

wxpython-common                    <pip>
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    Is there any negative to using pip in an Anaconda environment? Is there ever a case where you would want to use pip even though a package was available through Conda? – clifgray May 12 '18 at 16:30
  • The difference is hyphen vs underscore? What if the package name has neither? How to differentiate then? – Tom Hale Oct 3 '18 at 8:01
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    The underscore or hyphen is part of the package name. This has nothing to do with pip or conda. The <pip> shows that it was installed with pip otherwise it is installed with conda. – Mike Müller Oct 3 '18 at 11:15
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    There's a big caveat with "conda knows about pip-installed packages". From my understanding, inside a conda env, pip acts independently, so conda can't uninstall pip installed packages for example – information_interchange Oct 20 '18 at 21:15

Short answer is, you only need conda.

  1. Conda effectively combines the functionality of pip and virtualenv in a single package, so you do not need virtualenv if you are using conda.

  2. You would be surprised how many packages conda supports. If it is not enough, you can use pip under conda.

Here is a link to the conda page comparing conda, pip and virtualenv:



Virtual Environments and pip

I will add that creating and removing conda environments is simple with Anaconda.

> conda create --name <envname> python=<version> <optional dependencies>

> conda remove --name <envname> --all 

In an activated environment, install packages via conda or pip:

(envname)> conda install <package>

(envname)> pip install <package>

These environments are strongly tied to conda's pip-like package management, so it is simple to create environments and install both Python and non-Python packages.


In addition, installing ipykernel in an environment adds a new listing in the Kernels dropdown menu of Jupyter notebooks, extending reproducible environments to notebooks. As of Anaconda 4.1, nbextensions were added, adding extensions to notebooks more easily.


In my experience, conda is faster and more reliable at installing large libraries such as numpy and pandas. Moreover, if you wish to transfer your the preserved state of an environment, you can do so by sharing or cloning an env.


Installing Conda will enable you to create and remove python environments as you wish, therefore providing you with same functionality as virtualenv would.

In case of both distributions you would be able to create an isolated filesystem tree, where you can install and remove python packages (probably, with pip) as you wish. Which might come in handy if you want to have different versions of same library for different use cases or you just want to try some distribution and remove it afterwards conserving your disk space.


License agreement. While virtualenv comes under most liberal MIT license, Conda uses 3 clause BSD license.

Conda provides you with their own package control system. This package control system often provides precompiled versions (for most popular systems) of popular non-python software, which can easy ones way getting some machine learning packages working. Namely you don't have to compile optimized C/C++ code for you system. While it is a great relief for most of us, it might affect performance of such libraries.

Unlike virtualenv, Conda duplicating some system libraries at least on Linux system. This libraries can get out of sync leading to inconsistent behavior of your programs.


Conda is great and should be your default choice while starting your way with machine learning. It will save you some time messing with gcc and numerous packages. Yet, Conda does not replace virtualenv. It introduces some additional complexity which might not always be desired. It comes under different license. You might want to avoid using conda on a distributed environments or on HPC hardware.

  • mind elaborating a bit more why "you might want to avoid using conda on a distributed environments or on HPC hardware"? @y.selivonchyk – Oliver Hu Jun 6 at 1:49

Another new option and my current preferred method of getting an environment up and running is Pipenv

It is currently the officially recommended Python packaging tool from Python.org


Yes, conda is a lot easier to install than virtualenv, and pretty much replaces the latter.

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    Why does Anaconda provide instructions for installing a virtual environment if it replaces them? – jmh Aug 30 '17 at 20:20
  • @jmh Anaconda doesn't replace virtual environments, it replaces the Python-specific virtual environment management tool virtualenv with a more general virtual environment management tool conda. Also, Anaconda is just a Python+ distribution that includes the Conda tool; the question (and answer) are only about Conda. – merv Apr 24 at 19:54
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    This answer doesn't add anything beyond the answers that came years before it. – merv Apr 24 at 19:54

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