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Here is a list of available kernels that can be selected for a jupyter notebook:

  • Note: You can not use the module system from the Beartooth cluster within a Jupyer Notebook - any environment you require needs to run within a specific kernel.

Name

Description

GPU Enabled?

Python 3

Python 3.9.5

N

Python 3.11.0

Python 3.11.0

N

PyTorch 1.13.1

Python 3.10.9

Y

Dask 23.6.0

Python 3.11.4

Dask 2023.8.1

N

Intel Python3 Base 23.0.0

This is kernel of Intel’s Distribution for Python:

Python 3.9.15

N

Intel Modin 0.17.0.1

N

Intel PyTorch 1.13.0.0

Y

Intel TensorFlow 2.11.0

N

Intel TensorFlow 2.12

N

R4.2.2

A basic R 4.2.2 environment.

N

Finding available packages:

If the kernel has been updated from a conda environment, then you can run conda list from a cell to find all the packages/libraries within it:

Python:

Call pip list -v from a cell will list all the python packages installed via the conda environment AND any packages you have installed yourself via pip install listed with a location in your home ~/.local/lib/<python-version> folder.

R:

in your home/.lc.

To find the full list of available packages, start required kernel and within a cell, run:

  • For Python: pip list

  • R: installed.packages()

Testing for GPUs:

 

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