package management tool
Reason this release was yanked:
Pip installing conda leads to broken UX; please install using miniconda or miniforge instead. See https://github.com/conda/conda/issues/11715
Project description
=====
Conda
=====
Conda is a cross-platform, Python-agnostic binary package manager. It is the
package manager used by `Anaconda
<http://docs.continuum.io/anaconda/index.html>`_ installations, but it may be
used for other systems as well. Conda makes environments first-class
citizens, making it easy to create independent environments even for C
libraries. Conda is written entirely in Python, and is BSD licensed open
source.
Installation
------------
Conda is a part of the `Anaconda distribution <https://store.continuum.io/cshop/anaconda/>`_. You can also download a
minimal installation that only includes conda and its dependencies, called
`Miniconda <http://conda.pydata.org/miniconda.html>`_.
Getting Started
---------------
If you install Anaconda, you will already have hundreds of packages
installed. You can see what packages are installed by running
.. code-block:: bash
$ conda list
to see all the packages that are available, use
.. code-block:: bash
$ conda search
and to install a package, use
.. code-block:: bash
$ conda install <package-name>
The real power of conda comes from its ability to manage environments. In
conda, an environment can be thought of as a completely separate installation.
Conda installs packages into environments efficiently using `hard links
<http://en.wikipedia.org/wiki/Hard_links>`_ by default when it is possible, so
environments are space efficient, and take seconds to create.
The default environment, which ``conda`` itself is installed into is called
``root``. To create another environment, use the ``conda create``
command. For instance, to create an environment with the IPython notebook and
NumPy 1.6, which is older than the version that comes with Anaconda by
default, you would run
.. code-block:: bash
$ conda create -n numpy16 ipython-notebook numpy=1.6
This creates an environment called ``numpy16`` with the latest version of
the IPython notebook, NumPy 1.6, and their dependencies.
We can now activate this environment. On Linux and Mac OS X, use
.. code-block:: bash
$ source activate numpy16
This puts the bin directory of the ``numpy16`` environment in the front of the
``PATH``, and sets it as the default environment for all subsequent conda commands.
To go back to the root environment, use
.. code-block:: bash
$ source deactivate
Building Your Own Packages
--------------------------
You can easily build your own packages for conda, and upload them to `Binstar
<https://binstar.org>`_, a free service for hosting packages for conda, as
well as other package managers. To build a package, create a recipe. See
http://github.com/conda/conda-recipes for many example recipes, and
http://docs.continuum.io/conda/build.html for documentation on how to build
recipes.
To upload to Binstar, create an account on binstar.org. Then, install the
binstar client and login
.. code-block:: bash
$ conda install binstar
$ binstar login
Then, after you build your recipe
.. code-block:: bash
$ conda build <recipe-dir>
you will be prompted to upload to binstar.
To add your Binstar channel, or the channel of others to conda so that ``conda
install`` will find and install their packages, run
.. code-block:: bash
$ conda config --add channels https://conda.binstar.org/username
(replacing ``username`` with the user name of the person whose channel you want
to add).
Getting Help
------------
The documentation for conda is at http://conda.pydata.org/docs/. You can
subscribe to the `conda mailing list
<https://groups.google.com/a/continuum.io/forum/#!forum/conda>`_. The source
code and issue tracker for conda are on `GitHub <https://github.com/conda/conda>`_.
--------
Contents:
.. toctree::
:maxdepth: 2
miniconda.rst
Conda
=====
Conda is a cross-platform, Python-agnostic binary package manager. It is the
package manager used by `Anaconda
<http://docs.continuum.io/anaconda/index.html>`_ installations, but it may be
used for other systems as well. Conda makes environments first-class
citizens, making it easy to create independent environments even for C
libraries. Conda is written entirely in Python, and is BSD licensed open
source.
Installation
------------
Conda is a part of the `Anaconda distribution <https://store.continuum.io/cshop/anaconda/>`_. You can also download a
minimal installation that only includes conda and its dependencies, called
`Miniconda <http://conda.pydata.org/miniconda.html>`_.
Getting Started
---------------
If you install Anaconda, you will already have hundreds of packages
installed. You can see what packages are installed by running
.. code-block:: bash
$ conda list
to see all the packages that are available, use
.. code-block:: bash
$ conda search
and to install a package, use
.. code-block:: bash
$ conda install <package-name>
The real power of conda comes from its ability to manage environments. In
conda, an environment can be thought of as a completely separate installation.
Conda installs packages into environments efficiently using `hard links
<http://en.wikipedia.org/wiki/Hard_links>`_ by default when it is possible, so
environments are space efficient, and take seconds to create.
The default environment, which ``conda`` itself is installed into is called
``root``. To create another environment, use the ``conda create``
command. For instance, to create an environment with the IPython notebook and
NumPy 1.6, which is older than the version that comes with Anaconda by
default, you would run
.. code-block:: bash
$ conda create -n numpy16 ipython-notebook numpy=1.6
This creates an environment called ``numpy16`` with the latest version of
the IPython notebook, NumPy 1.6, and their dependencies.
We can now activate this environment. On Linux and Mac OS X, use
.. code-block:: bash
$ source activate numpy16
This puts the bin directory of the ``numpy16`` environment in the front of the
``PATH``, and sets it as the default environment for all subsequent conda commands.
To go back to the root environment, use
.. code-block:: bash
$ source deactivate
Building Your Own Packages
--------------------------
You can easily build your own packages for conda, and upload them to `Binstar
<https://binstar.org>`_, a free service for hosting packages for conda, as
well as other package managers. To build a package, create a recipe. See
http://github.com/conda/conda-recipes for many example recipes, and
http://docs.continuum.io/conda/build.html for documentation on how to build
recipes.
To upload to Binstar, create an account on binstar.org. Then, install the
binstar client and login
.. code-block:: bash
$ conda install binstar
$ binstar login
Then, after you build your recipe
.. code-block:: bash
$ conda build <recipe-dir>
you will be prompted to upload to binstar.
To add your Binstar channel, or the channel of others to conda so that ``conda
install`` will find and install their packages, run
.. code-block:: bash
$ conda config --add channels https://conda.binstar.org/username
(replacing ``username`` with the user name of the person whose channel you want
to add).
Getting Help
------------
The documentation for conda is at http://conda.pydata.org/docs/. You can
subscribe to the `conda mailing list
<https://groups.google.com/a/continuum.io/forum/#!forum/conda>`_. The source
code and issue tracker for conda are on `GitHub <https://github.com/conda/conda>`_.
--------
Contents:
.. toctree::
:maxdepth: 2
miniconda.rst
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
conda-3.0.6.tar.gz
(98.1 kB
view hashes)