This is an old revision of the document!
Cluster is up and running now. Anyone with a CS account who wishes to test it out should do so.
Feedback is requested:
#ai-cluster Discord channel or email Phil Kauffman (kauffman@cs dot uchicago dot edu).
Knowledge of how to use Slurm already is preferred at this stage of testing.
The information from the older cluster mostly applies and I suggest you read that documentation: https://howto.cs.uchicago.edu/techstaff:slurm
Summary of nodes installed on the cluster
There are a set of front end nodes that give you access to the Slurm cluster. You will connect through these nodes and need to be on these nodes to submit jobs to the cluster.
You will use the FE nodes to transfer your files onto the cluster storage infrastructure. The network connections on those nodes are 2x 10G each.
kauffman3 is my CS test account.
$ ssh firstname.lastname@example.org
I've created a couple scripts that run some of the Slurm commands but with more useful output. cs-sinfo and cs-squeue being the only two right now.
kauffman3@fe01:~$ cs-sinfo NODELIST NODES PARTITION STATE CPUS S:C:T MEMORY TMP_DISK WEIGHT AVAIL_FEATURES REASON GRES a[001-006] 6 geforce* idle 64 2:16:2 190000 0 1 'turing,geforce,rtx2080ti,11g' none gpu:rtx2080ti:4 a[007-008] 2 quadro idle 64 2:16:2 383000 0 1 'turing,quadro,rtx8000,48g' none gpu:rtx8000:4
kauffman3@fe01:~$ cs-squeue JOBID PARTITION USER NAME NODELIST TRES_PER_NSTATE TIME
# List the device number of the devices I've requested from Slurm. # These numbers map to /dev/nvidia?
kauffman3@fe01:~$ cat ./show_cuda_devices.sh #!/bin/bash hostname echo $CUDA_VISIBLE_DEVICES
Give me all four GPUs on systems 1-6
kauffman3@fe01:~$ srun -p geforce --gres=gpu:4 -w a[001-006] ./show_cuda_devices.sh a001 0,1,2,3 a002 0,1,2,3 a006 0,1,2,3 a005 0,1,2,3 a004 0,1,2,3 a003 0,1,2,3
# give me all GPUs on systems 7-8 # these are the Quadro RTX 8000s
kauffman3@fe01:~$ srun -p quadro --gres=gpu:4 -w a[007-008] ./show_cuda_devices.sh a008 0,1,2,3 a007 0,1,2,3
CUDA_VISIBLE_DEVICES: Displays relative gpu device number available to you.
By default all usage is tracked and charged to a users default account. A fairshare value is computed and used in prioritizing a job on submission.
Details are being worked out for anyone that donates to the cluster. This will be some sort of tiered system where you get to use a higher priority when you need it.
You will need to charge an account on job submission
--account=<name> and most likely select the priority level you wish to use and that you are allowed to use:
Do we have a max job runtime?
Yes. 4 hours. This is done per partition. You are expected to write your code to accommodate for this.
PartitionName=geforce Nodes=a[001-006] Default=YES DefMemPerCPU=2900 MaxTime=04:00:00 State=UP Shared =YES PartitionName=quadro Nodes=a[007-008] Default=NO DefMemPerCPU=5900 MaxTime=04:00:00 State=UP Shared= YES