I use Python extensively on my Mac OS X, for both numerical applications and web development (roughly equally). I checked the number of Python installations I had on my laptop recently, and was shocked to find four:

Came with Mac OS X:
Python 2.7.6 (default, Sep  9 2014, 15:04:36)
[GCC 4.2.1 Compatible Apple LLVM 6.0 (clang-600.0.39)] on darwin

Installed via Homebrew
Python 2.7.10 (default, Jul 13 2015, 12:05:58)
[GCC 4.2.1 Compatible Apple LLVM 6.1.0 (clang-602.0.53)] on darwin

Installed via Anaconda/Miniconda
Python 2.7.10 |Anaconda 2.3.0 (x86_64)| (default, Oct 19 2015, 18:31:17)
[GCC 4.2.1 (Apple Inc. build 5577)] on darwin
Anaconda is brought to you by Continuum Analytics.
Please check out: http://continuum.io/thanks and https://anaconda.org

Came with the downloaded .pkg from python.org
Python 2.7.6 (default, Sep  9 2014, 15:04:36)
[GCC 4.2.1 Compatible Apple LLVM 6.0 (clang-600.0.39)] on darwin

I decided to unify all of this, and use conda. I removed the Homebrew version and the Python.org download (kept the main system one). Conda is great for numerical computing, because I can install Jupyter/Numpy/Pandas in the root environment, and not have to bother install virtualenvs for every project.

But now my entire web development workflow is messed up. None of my virtualenvs work, since apparently one's not supposed to use conda and virtualenv together. I tried to create conda environments from the requirements.txt file. One package I was using with django was "markdown_deux", which is not available in the Conda repo. I looked at ways of building it, but creating a recipe takes a lot of effort (create YAML file, etc..)

Has anyone found a good compromise for this? I'm thinking of going back to the homebrew version for general use, and writing an alias for changing the path back to the conda version as necessary. Though this will also require tracking which one I'm using now..

  • 1
    May I ask how did you find out there were four? What's the command you used to find those python distributions?
    – thuyein
    Jan 6, 2017 at 5:25
  • You can try something like this in Mac or Linux: locate python | grep "bin/python" Jan 6, 2017 at 18:02

2 Answers 2


I use Homebrew Python for all my projects (data science, some web dev).

Conda is nothing fancy, you can have the same packages by hand with a combination of pip and Homebrew science. Actually, it is even better because you have more control on what you install.

You can use your virtualenvs only when you do web development. For the numerical applications you will probably want to have the latest versions of your packages at all times.

If you want to update all your packages at once with pip, you can use this command:

sudo -H pip freeze --local | grep -v '^\-e' | cut -d = -f 1  | xargs -n1 sudo -H pip install -U

EDIT: This answer is old, if you want a more up-to-date comparison, I found this nice blog article which compares the two approaches:


I still use Homebrew Python, and pip / pipenv over conda.

  • 3
    What do you mean by "You can use your virtualenvs only when you do web development."? I use it for scikit-learn, that works fine. Nov 19, 2015 at 16:51
  • 2
    Conda comes with more than 300 packages. I doubt all are useful for one's domain of expertise. Another point is that brew packages requires brew python. It is a pain to change it to anaconda (I tried).
    – Kirell
    Dec 17, 2015 at 19:44
  • 5
    I totally agree with you, Anaconda is nothing but a pip + virtualenv (+ virtualenvwrapper). However recently I have discovered one limit to the built-in Python (which is not "because of" Python): some libraries can only be installed on Anaconda, and not with Python. My example is Gurobi (a linear optimizer). Dec 16, 2016 at 7:30
  • 9
    Homebrew science is deprecated. This question and answer needs updating -- the whole issue of installing Python on Mac has changed. Caveat Emptor! Apr 6, 2018 at 18:44
  • 3
    What's the/a new way we're supposed to use now @stonecanyon ?
    – WillC
    Jul 22, 2018 at 9:59

Workflow that I've found the best:

  • Use conda for virtual environment management. Never use / install into system python.

  • Use pip to install into the active virtual environment, just like normal.

  • Use conda packages only for hard to install software, such as Qt.

Automation / extras

  • Use autoenv or direnv and automatically activate virtual environments when you enter a directory by putting the conda command inside the .env or .envsrc file.

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