Skip to content

Custom Spawner for Jupyterhub to start slurm jobs when users log in

Notifications You must be signed in to change notification settings

mkgilbert/slurmspawner

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

61 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

slurmspawner for Jupyterhub

This is a custom spawner for Jupyterhub that is designed for installations on clusters using Slurm scheduling software. Some of the code and inspiration for this came directly from Andrea Zonca's blog post where he explains his implementation for a spawner that uses SSH and Torque. His github repo is found here.

Dependencies

  • This spawner creates slurm jobs when users log in, so it must be installed in an environment running Slurm.
  • Also, jupyterhub and its dependencies must be installed. See the jupyterhub readme for instructions on setting up jupyterhub

Installation

  1. from root directory of this repo (where setup.py is), run pip install -e .

  2. add lines in jupyterhub_config.py

       c = get_config()
       c.JupyterHub.spawner_class = 'slurmspawner.SlurmSpawner'

Configuration

There are several values you can set in jupyterhub_config.py that override the default Slurm SBATCH options that get submitted by SlurmSpawner. Currently, the variables you can change are:

  • job_name (String)
  • partition (String)
  • memory (Integer)
  • time (String in format dd-hh:mm:ss)
  • qos (String)
  • output (String output file. Note that this will be appended to /home/$USER, so any subdirectories must already exist in the user's home directory.)
  • cpus_per_task (Integer)
  • ntasks (Integer)

Some of the other SBATCH options are not included because they would interfere with how SlurmSpawner works. For example, workdir needs to be /home/$USER because this is where jupyterhub will land you when you log in. If the submitting user isn't the owner of workdir the job will fail silently. If you would like access to other directories, it may be easiest to use the extra_launch_script variable described below to create soft links for the user on submission of the SlurmSpawner job.

You can add more functionality to the basic job script by specifying a bash script snippet. This is done with the extra_launch_script variable. For example, if you would like to make sure the user has a certain binary added to their path when they log in and also make soft links to an nfs "scratch" directory, your "snippet" would look like:

   export PATH=/path/to/binary:${PATH}
   ln -s /scratch/${USER} ${HOME}

Now just add

   c.SlurmSpawner.extra_launch_script = /path/to/snippet

to your jupyterhub_config.py file and that's it! When you run jupyterhub and a user logs in, it will set the path and soft links every time.

Logging

There is quite verbose debug logging in SlurmSpawner (probably too verbose), so when testing this out it might help to set c.Spawner.debug = True in jupyterhub_config.py. This way you can see exactly what script is being sent to Slurm, and the jobid and status of all running servers each time they are polled.

About

Custom Spawner for Jupyterhub to start slurm jobs when users log in

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages