Revision 29 as of 2019-05-14 11:56:43

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Setting up a personal python development infrastructure

This page shows how to set up a personal python development infrastructure, how to use it, how to maintain it and make backups of your project environments.

Some examples for software installation in the field of data sciences are provided.

The infrastructure is driven by the conda packet manager which accesses the Anaconda repositories to install software.

After familiarizing yourself with conda, read further information about available platforms on which to use your infrastructure and particularities of the software packages involved.

Installing conda

To provide conda, the minimal anaconda distribution miniconda can be installed and configured for the D-ITET infrastructure with the following bash script:

#!/bin/bash

# Locations to store environments
# net_scratch is used as default, local scratch needs to be chosen explicitly
LOCAL_SCRATCH="/scratch/${USER}"
NET_SCRATCH="/itet-stor/${USER}/net_scratch"

# Installer of choice for conda
CONDA_INSTALLER_URL='https://repo.anaconda.com/miniconda/Miniconda3-latest-Linux-x86_64.sh'

# Unset pre-existing python paths
[[ -z ${PYTHONPATH} ]] || unset PYTHONPATH

# Downlad latest version of miniconda and install it
wget -O miniconda.sh "${CONDA_INSTALLER_URL}" \
    && chmod +x miniconda.sh \
    && ./miniconda.sh -b -p "${NET_SCRATCH}/conda" \
    && rm ./miniconda.sh

# Configure conda
eval "$(${NET_SCRATCH}/conda/bin/conda shell.bash hook)"
conda config --add pkgs_dirs "${NET_SCRATCH}/conda_pkgs" --system
conda config --add envs_dirs "${LOCAL_SCRATCH}/conda_envs" --system
conda config --add envs_dirs "${NET_SCRATCH}/conda_envs" --system
conda config --set auto_activate_base false
conda deactivate

# Update conda and conda base environment
conda update conda --yes
conda update -n 'base' --update-all --yes

# Show how to initialize conda
echo
echo 'Initialize conda immediately:'
echo "eval \"\$(${NET_SCRATCH}/conda/bin/conda shell.bash hook)\""
echo
echo 'Automatically initialize conda for furure shell sessions:'
echo "echo 'eval \"\$(${NET_SCRATCH}/conda/bin/conda shell.bash hook)\"' >> ${HOME}/.bashrc"

# Show how to remove conda
echo
echo 'Completely remove conda:'
echo "rm -r ${NET_SCRATCH}/conda ${NET_SCRATCH}/conda_pkgs ${NET_SCRATCH}/conda_envs ${LOCAL_SCRATCH}/conda_envs ${HOME}/.conda"

Save this script as install_conda.sh, make it executable with

chmod +x install_conda.sh

and execute the script by issuing

./install_conda.sh

Choose your preferred method of initializing conda as recommended by the script.

conda storage locations

The directories listed in the command for complete conda removal contain the following data:

/itet-stor/$USER/net_scratch/conda

The miniconda installation

/itet-stor/$USER/net_scratch/conda_pkgs

Downloaded packages

/itet-stor/$USER/net_scratch/conda_envs

Virtual environments on NAS

/scratch/$USER/conda_envs

Virtual environments on local disk

/home/$USER/.conda

Personal conda configuration

The purpose of this configuration is to store data according to its importance and prevent using up your quota. If you intend to deviate from the default configuration, consult the storage overview to choose your storage locations adequately and follow these recommendations:

Using conda

conda allows to seperate installed software packages from each other by creating so-called environments. Using environments is best practice to generate deterministic and reproducible tools.

conda takes care of dependencies common to the packages it is asked to install. If two packages have a common dependency but define a differing range of version requirements of said dependency, conda chooses the highest common version number. This means the dependency installed in an environment with both packages together might have a lower version number than in environments seperating both packages.

It is best practice to seperate packages in different environments if they don't need to interact.

For a complete guide to conda see the official documentation.

The official cheat sheet is a compact summary of common commands to get you started. An abbreviated list to get you started is shown below.

Environments

The name of the automatically installed default environment is base.

Create an environment called "my_env" with packages "package1" and "package2" installed

conda create --name my_env package1 package2

Activate the environment called "my_env"

conda activate my_env

Deactivate the current environment

conda deactivate

List available environments

conda env list

Remove the environment called "my_env"

conda remove --name my_env --all

Create a cloned environment named "cloned_env" from "original_env"

conda create --name cloned_env --clone original_env

Export the active environment definition to the file "my_env.yml"

conda env export > my_env.yml

Recreate a previously exported environment

conda env create --file my_env.yml

Creates the environment "my_env" in the specified location

This example is for creating the environment on local scratch for faster disk access

conda create --prefix /scratch/$USER/conda_envs/my_env

Update an active environment

Make sure to create a backup by exporting the active environment before updating.

conda update --update-all

Packages

Search for a package named "package1"

conda search package1

Install the package named "package1" in the active environment

conda install package1

List packages installed in the active environment

conda list

Maintenance

The cache of installed packages will consume a lot of space over time. The default location set for the package cache resides on NetScratch, the terms of use for this storage area imply to clean your cache regularly.

Remove index cache, lock files, unused cache packages, and tarballs

conda clean --all

Update conda without any active environment

conda update conda

Backup

Regular backups are recommended to be able to reproduce an environment used at a certain point in time. Before installing or updating an environment, a backup should always be created in order to be able to revert the changes.

It is not necessary to backup environments themselves, it is sufficient to backup the files of environment exports to recreate them exactly.

For a simple backup of all environments the following script can be used:

#!/bin/bash

BACKUP_DIR="${HOME}/conda_env_backup"
MY_TIME_FORMAT='%Y-%m-%d_%H-%M-%S'

NOW=$(date "+${MY_TIME_FORMAT}")
[[ ! -d "${BACKUP_DIR}" ]] && mkdir "${BACKUP_DIR}"
ENVS=$(conda env list |grep '^\w' |cut -d' ' -f1)
for env in $ENVS; do
    echo "Exporting ${env} to ${BACKUP_DIR}/${env}_${NOW}.yml"
    conda env export --name "${env}"> "${BACKUP_DIR}/${env}_${NOW}.yml"
done

Installation examples

/!\ time to install /space neu abzählen

For conda, python itself is just a software package as any other. Depending on all installation parameters it decides which python version works for all other packages. This means different environments will contain differing versions of python.

Creating an environment with a specific python version

conda create --name py37 python=3.7.3

Creating an environment with the GPU version of pytorch and CUDA toolkit 10

conda create --name pytcu10 pytorch torchvision cudatoolkit=10.0 --channel pytorch

Creating an environment with the GPU version of tensorflow and CUDA toolkit 10

conda create --name tencu10 tensorflow-gpu cudatoolkit=10.0