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I've installed and been using the Anaconda python distribution, and I have started using the Anaconda (conda) envs. I can use the standard conda install... command to put packages from the distribution into my environments, but to use anything outside (i.e. Flask-WTF, flask-sqlalchemy, alembic) I need to use pip install in the active env. However, when I look at the contents of the env, either in the directory, or using conda list these pip installed packages don't show up.

Using pip freeze and pip list just lists every package I've ever installed.

Is there a way to keep track of what is in each of my Anaconda envs (both pip and conda installed)?

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Use pip installed with conda, e.g. ~/anaconda/bin/pip. Use it to install packages into a conda environment, as well as to see the union of packages installed with this pip and with conda install. –  osa Dec 21 '14 at 1:48

4 Answers 4

up vote 31 down vote accepted

conda will only keep track of the packages it installed. And pip will give you the packages that were either installed using the pip installer itself or they used setuptools in their setup.py so conda build generated the egg information. So you have basically three options.

  1. You can take the union of the conda list and pip freeze and manage packages that were installed using conda (that show in the conda list) with the conda package manager and the ones that are installed with pip (that show in pip freeze but not in conda list) with pip.

  2. Install in your environment only the python, pip and distribute packages and manage everything with pip. (This is not that trivial if you're on Windows...)

  3. Build your own conda packages, and manage everything with conda.

I would personally recommend the third option since it's very easy to build conda packages. There is a git repository of example recipes on the continuum's github account. But it usually boils down to:

 conda skeleton pypi PACKAGE
 conda build PACKAGE

or just:

conda pipbuild PACKAGE

Also when you have built them once, you can upload them to https://binstar.org/ and just install from there.

Then you'll have everything managed using conda.

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I just tried to ~/anaconda/bin/pip install memory-profiler and conda install numba, and they are both shown in ~/anaconda/bin/pip freeze. –  osa Dec 21 '14 at 1:50

There is a branch of conda (new-pypi-install) that adds better integration with pip and PyPI. In particular conda list will also show pip installed packages and conda install will first try to find a conda package and failing that will use pip to install the package.

This branch is scheduled to be merged later this week so that version 2.1 of conda will have better pip-integration with conda.

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I'd like to point out that this is already working in conda 2.2.3 (and probably before that). The way it works is that if you try to conda install package and it can't find a conda recipe, it tries to install it via pip (and then keeps track of it). It even helpfully suggests installing pip if not in your environment. Thanks Travis for all your work! –  jorgeca Dec 5 '13 at 3:09
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Clarification, since I've misread this several times. @Travis means I think that if one is running inside a conda, then running pip will first search for conda packages? The reverse is definitely not true - conda install does not look for pypi packages, not even items on pypi.binstar.org. This is as of conda 3.5.2. –  AnneTheAgile Jun 4 '14 at 18:23

I followed @Viktor Kerkez's answer and have had mixed success. I found that sometimes this recipe of

conda skeleton pypi PACKAGE

conda build PACKAGE

would look like everything worked but I could not successfully import PACKAGE. Recently I asked about this on the Anaconda user group and heard from @Travis Oliphant himself on the best way to use conda to build and manage packages that do not ship with Anaconda. You can read this thread here, but I'll describe the approach below to hopefully make the answers to the OP's question more complete...

Example: I am going to install the excellent prettyplotlib package on Windows using conda 2.2.5.

1a) conda build --build-recipe prettyplotlib

You'll see the build messages all look good until the final TEST section of the build. I saw this error

File "C:\Anaconda\conda-bld\test-tmp_dir\run_test.py", line 23 import None SyntaxError: cannot assign to None TESTS FAILED: prettyplotlib-0.1.3-py27_0

1b) Go into /conda-recipes/prettyplotlib and edit the meta.yaml file. Presently, the packages being set up like in step 1a result in yaml files that have an error in the test section. For example, here is how mine looked for prettyplotlib

test:   # Python imports   imports:
    - 
    - prettyplotlib
    - prettyplotlib

Edit this section to remove the blank line preceded by the - and also remove the redundant prettyplotlib line. At the time of this writing I have found that I need to edit most meta.yaml files like this for external packages I am installing with conda, meaning that there is a blank import line causing the error along with a redundant import of the given package.

1c) Rerun the command from 1a, which should complete with out error this time. At the end of the build you'll be asked if you want to upload the build to binstar. I entered No and then saw this message:

If you want to upload this package to binstar.org later, type:

$ binstar upload C:\Anaconda\conda-bld\win-64\prettyplotlib-0.1.3-py27_0.tar.bz2

That tar.bz2 file is the build that you now need to actually install.

2) conda install C:\Anaconda\conda-bld\win-64\prettyplotlib-0.1.3-py27_0.tar.bz2

Following these steps I have successfully used conda to install a number of packages that do not come with Anaconda. Previously, I had installed some of these using pip, so I did pip uninstall PACKAGE prior to installing PACKAGE with conda. Using conda, I can now manage (almost) all of my packages with a single approach rather than having a mix of stuff installed with conda, pip, easy_install, and python setup.py install.

For context, I think this recent blog post by @Travis Oliphant will be helpful for people like me who do not appreciate everything that goes into robust Python packaging but certainly appreciate when stuff "just works". conda seems like a great way forward...

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Using conda version 3.5.2, the command $ conda build --build-recipe XXX ; Errors out with ' unrecognized arguments: --build-recipe'. Full response is; usage: conda-build [-h] [-c] [--no-binstar-upload] [--output] [-s] [-t] [--no-test] [-V] [-q] RECIPE_PATH [RECIPE_PATH ...] conda-build: error: unrecognized arguments: --build-recipe –  AnneTheAgile Jun 19 '14 at 19:59

conda env export lists all conda and pip packages in an environment. conda-env must be installed in the conda root (conda install -c conda conda-env).

To write an environment.yml file describing the current environment:

conda env export > environment.yml

References:

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