I know pip is a package manager for python packages. However, I saw the installation on IPython's website use conda to install IPython.

Can I use pip to install IPython? Why should I use conda as another python package manager when I already have pip?

What is the difference between pip and conda?

  • Reading carefully the install page you'll see full instruction to install with pip and that conda/enpgk is targeted at new users who want to get up and running with minimal effort : canopy/anaconda are standalone environement, that do not interfere with system python (like venv but more powerfull). BTW IPyhton, not iPython (upper case I) – Matt Jan 8 '14 at 12:41
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    @naught101 indeed. I cannot edit my comment anymore :_( – Matt Aug 25 '15 at 8:08
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    One difference is that many more things can be installed by pip than by conda: pip can install anything from pypi in one command. conda requires three commands: skeleton, build, install and possibly more if that doesn't work. pip can install anything from github or source in one command. conda requires writing a "recipe", which is not easy, especially since the documentation always seems to be incorrect/outdated. – endolith Feb 22 '16 at 5:31
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    Related question: What are the ADVANTAGES of pip over conda? I see lots of Anaconda advocacy below, but nothing for pip. Why is pip still the standard, if anaconda is so great? – Brian Postow Mar 16 '16 at 21:20
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    I find this quote enlightening: "Pip is a package manager, and Virtualenv is an environment manager. Conda is both." (ref.) – Atcold Jan 20 '17 at 16:29

10 Answers 10


Quoting from the Conda blog:

Having been involved in the python world for so long, we are all aware of pip, easy_install, and virtualenv, but these tools did not meet all of our specific requirements. The main problem is that they are focused around Python, neglecting non-Python library dependencies, such as HDF5, MKL, LLVM, etc., which do not have a setup.py in their source code and also do not install files into Python’s site-packages directory.

So Conda is a packaging tool and installer that aims to do more than what pip does; handle library dependencies outside of the Python packages as well as the Python packages themselves. Conda also creates a virtual environment, like virtualenv does.

As such, Conda should be compared to Buildout perhaps, another tool that lets you handle both Python and non-Python installation tasks.

Because Conda introduces a new packaging format, you cannot use pip and Conda interchangeably; pip cannot install the Conda package format. You can use the two tools side by side (by installing pip with conda install pip) but they do not interoperate either.

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    Thanks for your explanation. I'm still confused, however, with whether can Conda replace pip? i.e., can Conda do all what pip can do? – lazywei Jan 8 '14 at 12:03
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    @lazywei: I don't think it can; it doesn't look like Conda supports the wheel archive format, for example. They have different aims. – Martijn Pieters Jan 8 '14 at 12:04
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    Also, it's really easy to install any python package (that uses setuptools) from source in conda. Just create a recipe, and conda build, and it will create a re-usable package that you can share with others via binstar or similar. – naught101 Aug 25 '15 at 1:23
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    @naught101 "Just create a recipe" That's not as easy as typing pip install. – endolith Feb 20 '16 at 22:40
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    Can some explain to me what would happen if you used pip and conda to install the same package except with different version, which would python use when you import them? – Lance Ruo Zhang Jan 19 '17 at 8:23

Here is a short rundown:


  • Python packages only.
  • Compiles everything from source. EDIT: pip now installs binary wheels, if they are available.
  • Blessed by the core Python community (i.e., Python 3.4+ includes code that automatically boostraps pip).


  • Python agnostic. The main focus of existing packages are for Python, and indeed conda itself is written in Python, but you can also have conda packages for C libraries, or R packages, or really anything.
  • Installs binaries. There is a tool called conda build that builds packages from source, but conda install itself installs things from already built conda packages.
  • External. Conda is the package manager of Anaconda, the Python distribution provided by Continuum Analytics, but it can be used outside of Anaconda too. You can use it with an existing Python installation by pip installing it (though this is not recommended unless you have a good reason to use an existing installation).

In both cases:

  • Written in Python
  • Open source (conda is BSD and pip is MIT)

The first two bullet points of conda are really what make it advantageous over pip for many packages. Since pip installs from source, it can be painful to install things with it if you are unable to compile the source code (this is especially true on Windows, but it can even be true on Linux if the packages have some difficult C or FORTRAN library dependencies). Conda installs from binary, meaning that someone (e.g., Continuum) has already done the hard work of compiling the package, and so the installation is easy.

There are also some differences if you are interested in building your own packages. For instance, pip is built on top of setuptools, whereas conda uses its own format, which has some advantages (like being static, and again, Python agnostic).

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    pip no longer builds everything from source. If a wheel is available, pip install --use-wheel <package> will install a built package. See here: wheel.readthedocs.org/en/latest. However my personal experience with wheel is that so few scientific wheel packages are available that it is purely academic. And of course pip install mostly doesn't work either on windows if your build environment isn't set up exactly right. So at the moment, conda ftw. – Caleb Hattingh Jan 9 '14 at 0:37
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    Wheels are still new, and not used by default, so it's not surprising that there aren't really many of them yet. Wheel still fits into the category of "Python specific", though, meaning it can be a poor fit for non-Python packages, or Python packages that depend on non-Python packages. – asmeurer Jan 11 '14 at 20:31
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    For an idea of the kind of things you can use conda to handle, checkout out github.com/conda/conda-recipes. Also, this answer leaves out the fact that conda is an environment manager as well, whereas with pip you have to fall back to something horrible like virtualenv. – naught101 Aug 25 '15 at 1:18
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    I had to downvote this: the second bullet point is just a historical note now, but you go on it later on too. The main difference these days is that pip is a package manager while conda is more of an environment manager. – Shep Dec 22 '16 at 15:44
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    It's true that pip can compile from source but this is becoming less and less frequent as more package move to wheel: these days I can install most of what I need in a few seconds with pip. So it's not that this answer is wrong, it's just becoming slightly outdated as pip has improved quite a lot in the last few years – Shep Dec 24 '16 at 19:21

The other answers give a fair description of the details, but I want to highlight some high-level points.

pip is a package manager that facilitates installation, upgrade, and uninstallation of python packages. It also works with virtual python environments.

conda is a package manager for any software (installation, upgrade and uninstallation). It also works with virtual system environments.

One of the goals with the design of conda is to facilitate package management for the entire software stack required by users, of which one or more python versions may only be a small part. This includes low-level libraries, such as linear algebra, compilers, such as mingw on Windows, editors, version control tools like Hg and Git, or whatever else requires distribution and management.

For version management, pip allows you to switch between and manage multiple python environments.

Conda allows you to switch between and manage multiple general purpose environments across which multiple other things can vary in version number, like C-libraries, or compilers, or test-suites, or database engines and so on.

Conda is not Windows-centric, but on Windows it is by far the superior solution currently available when complex scientific packages requiring compilation are required to be installed and managed.

I want to weep when I think of how much time I have lost trying to compile many of these packages via pip on Windows, or debug failed pip install sessions when compilation was required.

As a final point, Continuum Analytics also hosts (free) binstar.org (now called anaconda.org) to allow regular package developers to create their own custom (built!) software stacks that their package-users will be able to conda install from.

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    Per your final point, the third-party conda-forge project has rapidly become the industry-standard approach to publishing Anaconda packages. We recently published several conda-forge-hosted packages for our multiphysics biology simulator – and cannot recommend the process enough. There's a GitHub PR-based peer review component to submitting new recipes to conda-forge, but the advantages in terms of conda-forge automation strongly outweigh the upfront time investment. Bam! – Cecil Curry Jun 7 '18 at 3:59
  • @CecilCurry I've imported Keras in my code, installed anaconda on my mac and Keras is both conda installed and pip installed. So, when running my code in terminal, how do I know which keras is being imported(the pip one or the conda one)? – jay Dec 31 '18 at 12:48

Not to confuse you further, but you can also use pip within your conda environment, which validates the general vs. python specific managers comments above.

conda install -n testenv pip
source activate testenv
pip <pip command>

you can also add pip to default packages of any environment so it is present each time so you don't have to follow the above snippet.

  • I thought this was not recommended? – endolith Feb 20 '16 at 22:42
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    It's fully recommended to use pip inside of conda. It's better to install using conda, but for any packages that don't have a conda build, it's perfectly acceptable to use pip. – Bradley Kreider May 26 '16 at 17:08
  • nit: seems like the phrase would be fully supported? fully recommended implies, better to use pip than conda, within a conda enviornment, to my mind,a nd I'm not sure that is what you/they mean? – Hugh Perkins Jun 29 '17 at 9:59

Quote from Conda for Data Science article onto continuum website:

Conda vs pip

Python programmers are probably familiar with pip to download packages from PyPI and manage their requirements. Although, both conda and pip are package managers, they are very different:

  • Pip is specific for Python packages and conda is language-agnostic, which means we can use conda to manage packages from any language Pip compiles from source and conda installs binaries, removing the burden of compilation
  • Conda creates language-agnostic environments natively whereas pip relies on virtualenv to manage only Python environments Though it is recommended to always use conda packages, conda also includes pip, so you don’t have to choose between the two. For example, to install a python package that does not have a conda package, but is available through pip, just run, for example:
conda install pip
pip install gensim

For WINDOWS users

"standard" packaging tools situation is improving recently:

  • on pypi itself, there are now 48% of wheel packages as of sept. 11th 2015 (up from 38% in may 2015 , 24% in sept. 2014),

  • the wheel format is now supported out-of-the-box per latest python 2.7.9,

"standard"+"tweaks" packaging tools situation is improving also:

  • you can find nearly all scientific packages on wheel format at http://www.lfd.uci.edu/~gohlke/pythonlibs,

  • the mingwpy project may bring one day a 'compilation' package to windows users, allowing to install everything from source when needed.

"Conda" packaging remains better for the market it serves, and highlights areas where the "standard" should improve.

(also, the dependency specification multiple-effort, in standard wheel system and in conda system, or buildout, is not very pythonic, it would be nice if all these packaging 'core' techniques could converge, via a sort of PEP)


Quoting from Conda: Myths and Misconceptions (a comprehensive description):


Myth #3: Conda and pip are direct competitors

Reality: Conda and pip serve different purposes, and only directly compete in a small subset of tasks: namely installing Python packages in isolated environments.

Pip, which stands for Pip Installs Packages, is Python's officially-sanctioned package manager, and is most commonly used to install packages published on the Python Package Index (PyPI). Both pip and PyPI are governed and supported by the Python Packaging Authority (PyPA).

In short, pip is a general-purpose manager for Python packages; conda is a language-agnostic cross-platform environment manager. For the user, the most salient distinction is probably this: pip installs python packages within any environment; conda installs any package within conda environments. If all you are doing is installing Python packages within an isolated environment, conda and pip+virtualenv are mostly interchangeable, modulo some difference in dependency handling and package availability. By isolated environment I mean a conda-env or virtualenv, in which you can install packages without modifying your system Python installation.

Even setting aside Myth #2, if we focus on just installation of Python packages, conda and pip serve different audiences and different purposes. If you want to, say, manage Python packages within an existing system Python installation, conda can't help you: by design, it can only install packages within conda environments. If you want to, say, work with the many Python packages which rely on external dependencies (NumPy, SciPy, and Matplotlib are common examples), while tracking those dependencies in a meaningful way, pip can't help you: by design, it manages Python packages and only Python packages.

Conda and pip are not competitors, but rather tools focused on different groups of users and patterns of use.

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    I'm not sure this is really true, beyond a market positioning perspective. For example, look at pytorch, which offers three types of install: conda, pip, source, pytorch.org , and recommends: conda – Hugh Perkins Jun 29 '17 at 10:00
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    "Installing Python packages in isolated environments" is kind of the main thing most Python developers use pip for. – Nick Sep 20 '17 at 19:56
  • @Nick isn't it when the developer is already in 'that' virtual environment? I think pip works in virtual environment and installs package as if it's installing for a system.But as sanchos.s said, it installs only python packages and doesn't take care for the underlying libraries. anyone please correct me if I'm wrong. – Chan Kim Jan 20 '18 at 12:26

pip is for Python only

conda is only for Anaconda + other scientific packages like R dependencies etc. NOT everyone needs Anaconda that already comes with Python. Anaconda is mostly for those who do Machine learning/deep learning etc. Casual Python dev won't run Anaconda on his laptop.

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    explained in layman's terms – Galapagos May 3 '18 at 5:02
  • simple explaination, but I was taught to go directly to Anaconda's website and download the Python 2.x or 3.x distribution. Why? > because it contains all packages that a student will need. Numpy, Scipy, matpliotlib, sklearn etc. This is exactly why there is a gap in understanding the finer fundamental details. Student – Rene Duchamp Sep 6 '18 at 20:03

Can I use pip to install iPython?

Sure, both (first approach on page)

pip install ipython

and (third approach, second is conda)

You can manually download IPython from GitHub or PyPI. To install one of these versions, unpack it and run the following from the top-level source directory using the Terminal:

pip install .

are officially recommended ways to install.

Why should I use conda as another python package manager when I already have pip?

As said here:

If you need a specific package, maybe only for one project, or if you need to share the project with someone else, conda seems more appropriate.

Conda surpasses pip in (YMMV)

  • projects that use non-python tools
  • sharing with colleagues
  • switching between versions
  • switching between projects with different library versions

What is the difference between pip and conda?

That is extensively answered by everyone else.


I may have found one further difference of a minor nature. I have my python environments under /usr rather than /home or whatever. In order to install to it, I would have to use sudo install pip. For me, the undesired side effect of sudo install pip was slightly different than what are widely reported elsewhere: after doing so, I had to run python with sudo in order to import any of the sudo-installed packages. I gave up on that and eventually found I could use sudo conda to install packages to an environment under /usr which then imported normally without needing sudo permission for python. I even used sudo conda to fix a broken pip rather than using sudo pip uninstall pip or sudo pip --upgrade install pip.

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