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#rev 2020-09-10 bonaccos

<<TableOfContents()>>
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We provide as many modules as possible that come with the current Debian GNU/Linux stable release. Nevertheless, that might not be enough for your needs since you may want to use the newest version of some module or one that is not part of Debian. We provide some packages that come with the current Debian GNU/Linux stable release, but usually this is because they are dependencies of an installed software. For python we strongly recommend to build own python environments with the desired python versions and packages.
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Since Python 2.6 there is an easy way to install missing or outdated modules in your home through `easy_install`. Thus, you should be able to install any module that supports `easy_install` by yourself in short time. Our recommended way to install such environments is trough `conda`, especially if you want to build a tool or toolchain where the setup will possibly be published in a paper. Alternatively, building an environment via `pyenv` is possible.
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== How to use easy_install == For just quickly trying out some python tool a local installation of `pip` is recommended.
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 || Command line help: || `easy_install --help` ||
 || Online documentation: || http://packages.python.org/distribute/easy_install.html ||
 || Install a new module: || `easy_install --user MODULENAME` ||
 || Update an existing module: || `easy_install --user -U MODULENAME` ||
== Installing your own python environment with Conda ==
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Modules will be installed in your home within `~/.local/`. You do not need to adapt the `PYTHONPATH` environment variable since python will look for modules in this directory automatically. For a detailed overview of `conda` please follow the [[Programming/Languages/Conda|Conda documentation]].

== Installing your own python versions with pyenv ==

`pyenv` is a collection of tools that allow users to manage different versions of python. The simplest case is to install python in your user space. Using this custom python installation, you will be able to install additional packages in a comfortable way, since you can install them in the "system path" (which is then somewhere within your home).

The documentation on `pyenv` can be found on its Github page at [[https://github.com/pyenv/pyenv|github.com/pyenv/pyenv]].

Here is a small howto for installing python 3.9.1 in your home:

 * Install pyenv: {{{#!highlight bash numbers=disable
curl https://raw.githubusercontent.com/pyenv/pyenv-installer/master/bin/pyenv-installer -o pyenv-installer
}}}
 Check what the script is doing and then execute it: {{{#!highlight bash numbers=disable
bash ./pyenv-installer
}}}
 You can remove the installer file afterwards.
 * Add the following lines to your `~/.profile` before sourcing `~/.bashrc`: {{{#!highlight bash numbers=disable
export PYENV_ROOT="$HOME/.pyenv"
export PATH="$PYENV_ROOT/bin:$PATH"
eval "$(pyenv init --path)"
}}}
 * In the `~/.bashrc`: {{{#!highlight bash numbers=disable
eval "$(pyenv init -)"
}}}
 * If you want to pyenv-virtualenv automatically (in the `~/.bashrc`): {{{#!highlight bash numbers=disable
eval "$(pyenv virtualenv-init -)"
}}}

 * You need a new login shell for all settings to take effect (when logged in on a Desktop environment logoff and login again)

 * Install some python version, e.g. for python 3.9.1: {{{#!highlight bash numbers=disable
env PYTHON_CONFIGURE_OPTS="--enable-shared" pyenv install 3.9.1
pyenv rehash}}}
 Note, that settting of `PYTHON_CONFIGURE_OPTS="--enable-shared"` is needed if you need to link against the libpython shared library.

 * Make sure that this new python version will be used when you run python. You only need to run this command once: {{{#!highlight bash numbers=disable
pyenv global 3.9.1}}}

 * In order to update `pyenv` run: {{{#!highlight bash numbers=disable
pyenv update}}}

=== Documentation of pyenv ===
 || Website of pyenv || https://github.com/pyenv/pyenv ||
 || Website of pyenv installer || https://github.com/pyenv/pyenv-installer ||

== Installation of a local pip ==
`pip` can be installed in a user's environment and work with the `python` version installed on the system. Every package will be installed for the user only in one location, there is no separation with virtual environments.<<BR>>

The following commands set up a local `pip` in a location of your choice. As example `/scratch/$USER/local` is used. You may use a location of your choice, preferrably outside your $HOME as not to impact your quota.

{{{#!highlight bash numbers=disable
export PYTHONUSERBASE=/scratch/$USER/local
mkdir -p $PYTHONUSERBASE/bin
export PIP_USER=true
export PATH=$PYTHONUSERBASE/bin:$PATH
wget https://bootstrap.pypa.io/get-pip.py -O ~/.local/bin/get-pip.py
python3 ~/.local/bin/get-pip.py -vvv --user
}}}
Set default installations to the user's environment permanently (stored in `~/.config/pip/pip.conf`):
{{{#!highlight bash numbers=disable
pip config set install.user true
}}}

The exported environment variables will be lost after closing the shell. To enable local pip on demand, add the following function to your `.bashrc`: {{{#!highlight bash numbers=disable
function localpip {
    PYTHONUSERBASE=/scratch/$USER/local
    PATH=$PYTHONUSERBASE/bin:$PATH
    export PYTHONUSERBASE PATH
}
}}}
When you open a new shell, entering the command `localpip` will call the function and initialize your local pip installation.

=== pip cache ===
`pip` uses a cache which is by default stored under `~/.cache/pip` or `$XDG_CACHE_HOME/pip` if it is set to a non-default location. This cache tends to fill up quickly and should occasionally be cleared with
{{{#!highlight bash numbers=disable
pip cache purge
}}}
It is advisable to set the cache's location to the local scratch disk to avoid using up quota:

 1. Create a directory for the cache: {{{#!highlight bash numbers=disable
mkdir -p /scratch/$USER/pip_cache
}}}
 1. Temporarily set the environment variable to tell `pip` to use a different cache location: {{{#!highlight bash numbers=disable
export PIP_CACHE_DIR=/scratch/$USER/pip_cache/
}}}
 or store the location permanently (in `~/.config/pip/pip.conf`): {{{#!highlight bash numbers=disable
pip config set global.cache-dir /scratch/$USER/pip_cache
}}}
 1. Check if the cache location is correct: {{{#!highlight bash numbers=disable
pip cache info
}}}

=== Installation of additional or newer packages with pip ===

Once you installed your custom python with the explanations given above, you are ready to install additional or newer packages the easy way. The usage of `pip` is very easy. The following command installs the package `numpy`.
{{{#!highlight bash numbers=disable
pip install numpy
}}}
while the next command would upgrade an existing installation of `numpy`
{{{#!highlight bash numbers=disable
pip install --upgrade numpy
}}}

=== pip package management ===
Show installed packages:
{{{#!highlight bash numbers=disable
pip list --user
}}}

Show installed packages with their dependencies:
{{{#!highlight bash numbers=disable
pip freeze user | cut -d '=' -f 1 | xargs -r pip show | grep -E '^(Name|Required-by):'
}}}

Show installed packages without dependencies:
{{{#!highlight bash numbers=disable
pip list --user --not-required --format freeze --exclude pip --exclude setuptools
}}}

Show outdated packages
{{{#!highlight bash numbers=disable
pip list --user --outdated
}}}

Update all outdated packages:
{{{#!highlight bash numbers=disable
pip list --user --outdated |
    awk '{if ($2 ~ /[0-9\.]+/) print $1}' |
    xargs -r pip install --user --upgrade
}}}

For advanced usage of `pip`, please consult the [[https://pip.pypa.io/en/stable/user_guide/|official user guide]].

== Installation of Python packages that are not available in the archives of pip ==

Here we provide some shell script snippets for installing frequently asked packages which cannot be installed through `pip`. These scripts just provide an example installation. You might have to adapt some paths in order to make the package work correctly with the version of python you are using (e.g. if you run your custom python provided through `pyenv`).

=== nlopt ===
{{{#!highlight bash numbers=disable
#!/bin/bash

# Installation script for nlopt library

VERSION=2.3
INSTALLDIR=$HOME/.local
BUILDDIR=/scratch/$USER/nlopt

mkdir -p $BUILDDIR
cd $BUILDDIR

wget "http://ab-initio.mit.edu/nlopt/nlopt-${VERSION}.tar.gz"
tar -xvvzkf nlopt-${VERSION}.tar.gz
cd nlopt-${VERSION}

./configure \
        --enable-shared \
        --prefix=$INSTALLDIR \
        OCT_INSTALL_DIR=$INSTALLDIR/octave/oct \
        M_INSTALL_DIR=$INSTALLDIR/octave/m/ \
        MEX_INSTALL_DIR=$INSTALLDIR/mex \
        GUILE_INSTALL_DIR=$INSTALLDIR/guile

make
make install
}}}

== Debugging python code ==
To debug `python` code with Visual Studio Code, Microsoft provides the [[https://microsoft.github.io/debug-adapter-protocol/|Debug Adapter Protocol (DAP)]] and a `python` implementation [[https://github.com/microsoft/debugpy|debug.py]].

For details consult the section [[https://code.visualstudio.com/docs/python/debugging|Python debugging in VS Code]] in the official VS Code manual
----
[[CategoryLXSW]]

Python

We provide some packages that come with the current Debian GNU/Linux stable release, but usually this is because they are dependencies of an installed software. For python we strongly recommend to build own python environments with the desired python versions and packages.

Our recommended way to install such environments is trough conda, especially if you want to build a tool or toolchain where the setup will possibly be published in a paper. Alternatively, building an environment via pyenv is possible.

For just quickly trying out some python tool a local installation of pip is recommended.

Installing your own python environment with Conda

For a detailed overview of conda please follow the Conda documentation.

Installing your own python versions with pyenv

pyenv is a collection of tools that allow users to manage different versions of python. The simplest case is to install python in your user space. Using this custom python installation, you will be able to install additional packages in a comfortable way, since you can install them in the "system path" (which is then somewhere within your home).

The documentation on pyenv can be found on its Github page at github.com/pyenv/pyenv.

Here is a small howto for installing python 3.9.1 in your home:

  • Install pyenv:

    curl https://raw.githubusercontent.com/pyenv/pyenv-installer/master/bin/pyenv-installer -o pyenv-installer
    

    Check what the script is doing and then execute it:

    bash ./pyenv-installer
    
    You can remove the installer file afterwards.
  • Add the following lines to your ~/.profile before sourcing ~/.bashrc:

    export PYENV_ROOT="$HOME/.pyenv"
    export PATH="$PYENV_ROOT/bin:$PATH"
    eval "$(pyenv init --path)"
    
  • In the ~/.bashrc:

    eval "$(pyenv init -)"
    
  • If you want to pyenv-virtualenv automatically (in the ~/.bashrc):

    eval "$(pyenv virtualenv-init -)"
    
  • You need a new login shell for all settings to take effect (when logged in on a Desktop environment logoff and login again)
  • Install some python version, e.g. for python 3.9.1:

    env PYTHON_CONFIGURE_OPTS="--enable-shared" pyenv install 3.9.1
    pyenv rehash
    

    Note, that settting of PYTHON_CONFIGURE_OPTS="--enable-shared" is needed if you need to link against the libpython shared library.

  • Make sure that this new python version will be used when you run python. You only need to run this command once:

    pyenv global 3.9.1
    
  • In order to update pyenv run:

    pyenv update
    

Documentation of pyenv

Installation of a local pip

pip can be installed in a user's environment and work with the python version installed on the system. Every package will be installed for the user only in one location, there is no separation with virtual environments.

The following commands set up a local pip in a location of your choice. As example /scratch/$USER/local is used. You may use a location of your choice, preferrably outside your $HOME as not to impact your quota.

export PYTHONUSERBASE=/scratch/$USER/local
mkdir -p $PYTHONUSERBASE/bin
export PIP_USER=true
export PATH=$PYTHONUSERBASE/bin:$PATH
wget https://bootstrap.pypa.io/get-pip.py -O ~/.local/bin/get-pip.py
python3 ~/.local/bin/get-pip.py -vvv --user

Set default installations to the user's environment permanently (stored in ~/.config/pip/pip.conf):

pip config set install.user true

The exported environment variables will be lost after closing the shell. To enable local pip on demand, add the following function to your .bashrc:

function localpip {
    PYTHONUSERBASE=/scratch/$USER/local
    PATH=$PYTHONUSERBASE/bin:$PATH
    export PYTHONUSERBASE PATH
}

When you open a new shell, entering the command localpip will call the function and initialize your local pip installation.

pip cache

pip uses a cache which is by default stored under ~/.cache/pip or $XDG_CACHE_HOME/pip if it is set to a non-default location. This cache tends to fill up quickly and should occasionally be cleared with

pip cache purge

It is advisable to set the cache's location to the local scratch disk to avoid using up quota:

  1. Create a directory for the cache:

    mkdir -p /scratch/$USER/pip_cache
    
  2. Temporarily set the environment variable to tell pip to use a different cache location:

    export PIP_CACHE_DIR=/scratch/$USER/pip_cache/
    

    or store the location permanently (in ~/.config/pip/pip.conf):

    pip config set global.cache-dir /scratch/$USER/pip_cache
    
  3. Check if the cache location is correct:

    pip cache info
    

Installation of additional or newer packages with pip

Once you installed your custom python with the explanations given above, you are ready to install additional or newer packages the easy way. The usage of pip is very easy. The following command installs the package numpy.

pip install numpy

while the next command would upgrade an existing installation of numpy

pip install --upgrade numpy

pip package management

Show installed packages:

pip list --user 

Show installed packages with their dependencies:

pip freeze user | cut -d '=' -f 1 | xargs -r pip show | grep -E '^(Name|Required-by):'

Show installed packages without dependencies:

pip list --user --not-required --format freeze --exclude pip --exclude setuptools

Show outdated packages

pip list --user --outdated

Update all outdated packages:

pip list --user --outdated |
    awk '{if ($2 ~ /[0-9\.]+/) print $1}' |
    xargs -r pip install --user --upgrade

For advanced usage of pip, please consult the official user guide.

Installation of Python packages that are not available in the archives of pip

Here we provide some shell script snippets for installing frequently asked packages which cannot be installed through pip. These scripts just provide an example installation. You might have to adapt some paths in order to make the package work correctly with the version of python you are using (e.g. if you run your custom python provided through pyenv).

nlopt

#!/bin/bash

# Installation script for nlopt library

VERSION=2.3
INSTALLDIR=$HOME/.local
BUILDDIR=/scratch/$USER/nlopt

mkdir -p $BUILDDIR
cd $BUILDDIR

wget "http://ab-initio.mit.edu/nlopt/nlopt-${VERSION}.tar.gz"
tar -xvvzkf nlopt-${VERSION}.tar.gz
cd nlopt-${VERSION}

./configure \
        --enable-shared \
        --prefix=$INSTALLDIR \
        OCT_INSTALL_DIR=$INSTALLDIR/octave/oct \
        M_INSTALL_DIR=$INSTALLDIR/octave/m/ \
        MEX_INSTALL_DIR=$INSTALLDIR/mex \
        GUILE_INSTALL_DIR=$INSTALLDIR/guile

make
make install

Debugging python code

To debug python code with Visual Studio Code, Microsoft provides the Debug Adapter Protocol (DAP) and a python implementation debug.py.

For details consult the section Python debugging in VS Code in the official VS Code manual


CategoryLXSW

Programming/Languages/Python (last edited 2023-11-06 08:33:58 by stroth)