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Derzeit werden dort nur Shells und Python 3 - Notebooks angeboten, aber die Liste soll erweitert werden.
Install packages
Install individual Python kernel
Jupyter allows you to work with your own environment. You can use e.g. conda for this task. Start by creating a new conda environment:
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module purge ##just in case you are using jupyter terminal
module load Miniconda/3.1
conda create -p /gpfs/project/$USER/py310 python=3.10
conda activate /gpfs/project/$USER/py310 |
Hint: this only works if you have defined a .condarc with channels pointing to our repo server (see also Conda)
Install the programs that you need with conda install
, at least ipykernel
must be installed:
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conda install ipykernel |
Create a new file "kernel.sh" in the main directory of your environment and make it executable
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cd /gpfs/project/$USER/py310
vi kernel.sh
|
Contents of the file kernel.sh:
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#!/bin/bash
export PYTHONPATH=/gpfs/project/$USER/py310/lib/python3.10/site-packages
export PATH=/gpfs/project/$USER/py310/bin:$PATH
exec python -m ipykernel $@ |
Make the file executable with
chmod a+x kernel.sh
Create a new directory for your kernel in your /home/.local/share folder
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mkdir -p /home/$USER/.local/share/jupyter/kernels/py310
cd /home/$USER/.local/share/jupyter/kernels/py310 |
Create a new file "kernel.json" with contents (!!replace $USER with your explicit username here!!)
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{
"argv": [
"/gpfs/project/$USER/py310/kernel.sh",
"-f",
"{connection_file}"
],
"display_name": "Python 3.10 (conda)",
"language": "python",
"metadata": {
"debugger": true
}
} |
In your next jupyterhub session a new kernel with the name "Python 3.10 (conda)" will then be available.
Hint: This seems to only work with Python versions < 3.11 !