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OpenEye / packages / OpenEye-toolkits-python3-redhat-7-x64 2017.10.1

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Installers

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pip install

Authentication Prerequisites:
TOKEN=$(anaconda auth --create --name download-token)

To install this package run one of the following:
pip install -i https://pypi.anaconda.org/t/$TOKEN/openeye/simple openeye-toolkits-python3-redhat-7-x64
pip install -i https://pypi.anaconda.org/t/$TOKEN/openeye/label/tk_archive/simple openeye-toolkits-python3-redhat-7-x64

Description


    Linux & OS X
    ************************************************************************

    Installing OpenEye Python Toolkits
    ========================================================================

    The two **recommended** ways to install the **OpenEye Python Toolkits**
    are:

    * *Anaconda* and pip (see section :ref:`section_python_conda`)
    * *virtualenv* and pip (see section :ref:`section_python_pip`)

    .. warning::

       The above two ways are highly recommended since it is considered
       harmful to install packages into your global Python installation.

    If you do not want to use *Anaconda* or *virtualenv* you can directly
    download **OpenEye Python Toolkits** packages and use the PYTHONPATH
    environment variable, however this method is only recommended for advanced
    users.  (see section :ref:`section_python_pythonpath`).

    .. seealso::

       * :ref:`section_python_single_build` section to install
         **OpenEye Python Toolkits** across multiple Linux versions.

    .. note::

       In order to follow the
       `PEP 440 <http://www.python.org/dev/peps/pep-0440>`_ guidelines on
       versions, the version label for the python toolkit
       is |pypkgversion| instead of |pkgversion|.

    .. _section_python_conda:

    Anaconda Installation
    ------------------------------------------------------------------------

    The *Anaconda* package can be downloaded from
    https://www.continuum.io/downloads for Windows, OSX and Linux
    platforms. Follow the very simple instructions given there for
    installation. For first time users we also recommend reading
    http://conda.pydata.org/docs/test-drive.html and print out
    http://conda.pydata.org/docs/_downloads/conda-cheatsheet.pdf for
    reference.

    .. note::

       We recommend the installation of PYTHON 3 Anaconda packages.
       This version will default to Python 3 when creating new
       environments and building packages.

    After downloading and installing *Anaconda*, the **OpenEye Python
    Toolkit** package can be installed by the following steps:

    #. First create a new conda environment, we recommend using Python 3:

       .. parsed-literal::

          $ conda create -n oepython3 python=3

       .. parsed-literal::

          Using Anaconda Cloud api site https://api.anaconda.org
          Fetching package metadata: ....
          Solving package specifications: .........

          Package plan for installation in environment  /home/username/anaconda/envs/oepython3:

          The following NEW packages will be INSTALLED:

           openssl:    1.0.2h-1
           pip:        8.1.2-py35_0
           python:     3.5.2-0
           readline:   6.2-2
           setuptools: 25.1.6-py35_0
           sqlite:     3.13.0-0
           tk:         8.5.18-0
           wheel:      0.29.0-py35_0
           xz:         5.2.2-0
           zlib:       1.2.8-3

          Proceed ([y]/n)? y

       After entering "y" to proceed, a new 'oepython3' environment
       will be created with Python 3.5.

    #. Activate the newly created 'oepython3' environment:

       .. parsed-literal::

          $ source activate oepython3
          (oepython3) $

       .. warning::

          It is very important to activate a work environment before pip installing,
          otherwise packages will be installed into the global Python environment.

    #. Pip install the **OpenEye Python Toolkits** into the new environment:

       .. parsed-literal::

          (oepython3) $ pip install -i https://pypi.anaconda.org/OpenEye/simple OpenEye-toolkits
          Collecting OpenEye-toolkits
          ...
          Successfully installed OpenEye-toolkits-|pypkgversion|  OpenEye-toolkits-python3-linux-x64-|pypkgversion|


    #. Run the **OpenEye** example `oecheminfo.py` to verify the installation
       has completed successfully:

       .. parsed-literal::

          (oepython3) $ oecheminfo.py
          Installed OEChem version: |oechemversion| platform: linux-g++4.x-x64 built: |builddate|
          ...

    .. warning::

       Setting the environment variable ``PYTHONPATH`` will override the path
       to the Python modules installed in a conda environment.
       Make sure ``PYTHONPATH`` is **not** set when using a virtual environment.

    .. hint::

       We recommend using the *Anaconda* package, which is a complete suite
       containing hundreds of open source Python packages.
       If disk-space is limited, we recommend the mini version of *Anaconda*,
       namely, *Miniconda*. *Miniconda* includes conda, its dependencies and Python.

       The *Miniconda* package can be downloaded from
       http://conda.pydata.org/miniconda.html for Windows, OSX and Linux
       platforms. The instructions for installation can be found here:
       http://conda.pydata.org/docs/install/quick.html

       All the above instructions for installing the **OpenEye Python Toolkits**
       are identical whether using the  *Anaconda* or *Miniconda* packages.

    .. hint::

       When installing different versions of the toolkit (platform specific vs.
       single build) in different conda environments, ``pip`` might try to
       install the Python packages from the cache.  In order to avoid this
       problem, use the ``--no-cache-dir`` option.

    .. seealso::

      :ref:`section_python_test` section for post-installation testing of the
      **OpenEye Python Toolkits**

    .. _section_python_pip:

    Virtual Environment Installation
    ------------------------------------------------------------------------

    Assuming you have `virtualenv <http://www.virtualenv.org/en/latest/>`_ and
    `virtualenvwrapper <http://virtualenvwrapper.readthedocs.org/en/latest/>`_,
    the **OpenEye Python Toolkits** can be installed by the following steps:

    #. First create a new virtual environment:

       .. parsed-literal::

          $ mkvirtualenv oepython27

    #. Pip install **OpenEye Python Toolkits** into the new environment:

       .. parsed-literal::

          (oepython27) $ pip install -i https://pypi.anaconda.org/OpenEye/simple OpenEye-toolkits

       Or you can also pip install from a tarball downloaded from
       http://www.eyesopen.com/downloads.

       .. parsed-literal::

          (oepython27) $ pip install OpenEye-toolkits-python2.7-ubuntu-14.04-x64-|pypkgversion|.tar.gz

    #. Run the **OpenEye** example `oecheminfo.py` to verify the
       **OpenEye Python Toolkits** have been successfully installed:

       .. parsed-literal::

          (oepython27) $ oecheminfo.py
          Installed OEChem version: |oechemversion| platform: linux-g++4.x-x64 built: |builddate|
          ...

    .. warning::

       Setting the environment variable ``PYTHONPATH`` will override the path
       to the Python modules installed in a virtual environment.
       Make sure ``PYTHONPATH`` is **not** set when using a virtual environment.

    .. seealso::

      :ref:`section_python_test` section for post-installation testing of the
      **OpenEye Python Toolkits**

    .. hint::

       When installing different versions of the toolkit (platform specific vs.
       single build) in different conda environments, ``pip`` might try to
       install the Python packages from the cache.  In order to avoid this
       problem, use the ``--no-cache-dir`` option.

    .. _section_python_pythonpath:

    PYTHONPATH Installation
    ------------------------------------------------------------------------

    If you do not have root access or do not want to use *pip*, you
    can use the PYTHONPATH installation method.

    #. Download the tarball that matches the python version, operating system,
       and architecture of your target machine's configuration.
       The **OpenEye Python Toolkits** packages
       can be download from http://www.eyesopen.com/downloads.

    #. Untar the downloaded distribution tarball:

       .. parsed-literal::

          $ tar xvf OpenEye-toolkits-python2.7-ubuntu-14.04-x64-|pypkgversion|.tar.gz

       This will yield a directory structure like the following:

       .. parsed-literal::

          OpenEye-toolkits-python2.7-ubuntu-14.04-x64-|pypkgversion|/
             openeye/
                libs/
                  python2.7-ubuntu-14.04-x64/
                docexamples/
                examples/

    #. Set the ``PYTHONPATH`` environment variable in order to enable the
       Python interpreter to find the `openeye`` directory.
       The ``PYTHONPATH`` environment variable can be set in
       your shell startup script ``~/.bashrc`` For example, if the package was
       untarred into the ``/usr/local`` directory:

       .. parsed-literal::

          PYTHONPATH=/usr/local/OpenEye-toolkits-python2.7-ubuntu-14.04-x64-|pypkgversion|
          export PYTHONPATH

       The syntax and location may vary if you use a shell
       other than ``bash``.

       The equivalent can be done in Python code as follows:

       .. parsed-literal::

          $ python
          ...
          >>> import sys
          >>> sys.path.append("/usr/local/OpenEye-toolkits-python2.7-ubuntu-14.04-x64-|pypkgversion|")

       Substitute the path to the actual toolkit location.

       All the toolkit examples can be found in the ``examples``
       directory.  From the ``examples`` directory on the command line,
       the examples can be run using a command such as:

       .. parsed-literal::

          $ python oechem/oecheminfo.py
          Installed OEChem version: |oechemversion| platform: linux-g++4.x-x64 built: |builddate|
          ..

    .. _section_python_single_build:

    Common Linux Single-Build Installation
    -------------------------------------------

    The ``single-build`` Linux package contains libraries built to be
    maximally-compatible with Linux-based systems.  It is built specifically to
    take advantage of the Linux cross-version compatibility guarantees in such
    a way that the Python package will run on many common Linux platforms.

    This distribution is built on the *oldest* version of Linux supported by
    OpenEye.  This means that the libraries will only depend on older Linux system
    functions (eg. glibc).  Since Linux guarantees forwards compatibility,
    the distribution will work across many modern Linux systems.

    The distribution is built using a later g++ compiler toolchain.
    This allows us to take advantage of optimizations and language features
    only available in later g++ compiler versions (we're not tied to the g++ from
    the older Linux OS).  This does create a new dependency on later versions
    of C++ runtime libraries (libstdc++.so, libgcc_s.so, libgomp.so).  These
    three files are included and installed with the OpenEye libraries in the
    Python ``site-packages`` directory, hence no additional configuration is
    required to use the ``single-build`` package.

    For a PIP installation on linux, the default behavior is to install the
    single-build Python package. In order to override this behavior and use the
    older autodetect mechanism to install the platform-specific package one can
    set the ``OE_PIP_ARCH`` environment variable to the value ``old`` before
    executing the ``pip install`` command.  Alternately, one can set
    the ``OE_PIP_ARCH`` environment variable to a specific version string to
    install exactly that version. The ``single-build`` distributions
    include the string ``linux-x64`` in the name, so a ``pip list`` can be used
    to identify whether the single-build or platform-specific distribution has
    been installed.

    .. note::

       In previous toolkits, ``OE_ARCH`` was used by the installer for both
       Python packages and applications.  This caused confusion since the
       platform names could be different for the applications and the
       Python packages on a platform.  Now ``OE_ARCH`` is used exclusively
       by the applications and ``OE_PIP_ARCH`` is used exclusively by Python.

    Example of installing the single-build distribution with *Anaconda*:

    .. parsed-literal::

       $ export OE_PIP_ARCH=linux-x64
       $ conda create -n oepython3-sb python=3
       $ source activate oepython3-sb
       (oepython3-sb) $ pip install -i https://pypi.anaconda.org/OpenEye/simple OpenEye-toolkits
       ...
       Successfully installed OpenEye-toolkits-|pypkgversion| OpenEye-toolkits-python3-linux-x64-|pypkgversion|
       $ oecheminfo.py
       Installed OEChem version: |oechemversion| platform: linux-g++4.x-x64 built: |builddate|
       ...

    Because the ``single-build`` has an extra dependency on later g++ runtime
    libraries, there is a potential issue relating to the load order of C++
    runtime libraries.  It will arise only if one is using the OpenEye toolkits
    with other C++ based Python modules in the same Python environment.  If the
    other C++ based module is linked to a different libstdc++ library, it is
    important that the *newest* libstdc++ library loads first.  Adjust the import
    order of C++ modules so that the python module which references the latest
    libstdc++ runtime is loaded first.  The OpenEye python libraries ship with
    ABI version 3.4.22(dual), which is the latest runtime for g++ compilers
    available as of January, 2017.  Generally one should import openeye
    first.  Only if the other module is built against a later g++ version (some
    time in the future) should one import the other module first.

    If there is a runtime libstdc++ issue, it will typically result in a runtime
    error message containing either  ``GLIBCXX`` or ``CXXABI``, as in the
    following example:

    .. parsed-literal::

       /usr/lib/x86_64-linux-gnu/libstdc++.so.6: version 'GLIBCXX_3.4.21'
       not found (required by python)

    .. _section_python_test:

    Unusual Installation Environments
    ------------------------------------------------------------------------

    For assistance with unusual installation environments such as systems
    without network access or heterogeneous clusters, please contact
    support at [email protected].

    Integration Testing
    ========================================================================

    The **OpenEye Python Toolkits** ship with a simple set of integration
    tests to make sure all the libraries function as intended. The test suite
    is not as exhaustive as the test suite used internally, it is just meant to
    ensure the **OpenEye Python Toolkits** infrastructure is working as intended.

    .. warning::

       Running the integration test requires *scripttest* and *nose*
       Python packages. These packages will be installed on-the-fly, if
       necessary. Again using *conda* or *virtualenv* environments
       will insure that these packages will not be installed into the global
       Python environment.

    To run the integration test suite (after activating the environment
    into which **OpenEye Python Toolkits** has been installed), execute the
    following command:

    .. parsed-literal::

       $ python -m openeye.examples.openeye_tests

    A message like the following will be shown if all the tests were run
    successfully::

       Collecting nose
         Using cached nose-1.3.7-py2-none-any.whl
       Installing collected packages: nose
       Successfully installed nose-1.3.7
       Collecting scripttest
       Installing collected packages: scripttest
       Successfully installed scripttest-1.3
       .........................................
       ----------------------------------------------------------------------
       Ran 41 tests in 95.877s

       OK


    Tests are skipped when the license is invalid/expired/doesn't exist or
    if functionally is not supported on the OS/platform.
    For example, when using an license file that contains only license
    for the **OEChem TK**, a large number of tests will be skipped::

       SSSSSSSSSSSSSSS.......SSSSSSSSSSSSSSSSSSS
       ----------------------------------------------------------------------
       Ran 41 tests in 0.956s

       OK (SKIP=34)

    Similarly, FastROCS tests are skipped on OS X, Windows, and Linux systems
    without appropriate GPU hardware since FastROCS functionality is not available.

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