Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.

Table of Contents
outlinetrue

What is Slurm?

Slurm (previously Simple Linux Utility for Resource Management), is a modern, open source job scheduler that is highly scaleable and customizable; currently, Slurm is implemented on the majority of the TOP500 supercomputers. Job schedulers enable large numbers of users to fairly and efficiently share large computational resources.

Cluster prerequisites

Before being able to take advantage of our computational resources, you must first set up your environment. This is pretty straightforward, but there are a few steps:

SSH access setup

You need to have your SSH keys set up to access cluster resources. If you haven't done this already, please set up your ssh keys.

Environment setup

While still logged in to an SCU login node, run the following:

Code Block
languagebash
titleSetting up the slurm environment
cat - >> ~/.bashrc <<'EOF'

if [ -n "$SLURM_JOB_ID" ]
then
        source /etc/slurm/slurm_source/slurm_source.sh
fi

alias squeue_long='squeue -o "%.18i %.9P %.8j %.8u %.8T %.10M %.11l %.6b  %.6D %R"'

EOF
source ~/.bashrc

This command simply references a Slurm environment script (if resources have been requested and allocated), and also provides an alias for a more informative squeue command

SCU clusters and job partitions

Available SCU HPC resources

The SCU uses Slurm to manage the following resources:

General purpose cluster:

  • The panda cluster (33 nodes): CPU-only cluster intended for general use

CyroEM cluster: 

  • The cryoEM cluster (18 nodes): 15 CPU-only nodes, 3 GPU (P100) nodes. Available only for analysis of cryoEM data

PI-specific clusters:

  • The Edison cluster (9 GPU nodes):  5 k40m and 4 k80 nodes reserved for the H. Weinstein lab
  • node178: GPU (p100) node reserved for the Accardi and Huang labs
  • node179: GPU (p100) node reserved for the Boudker lab
  • node180: GPU (p100) node reserved for the Blanchard lab
  • cantley-node0[1-2] (2 nodes): GPU (V100) nodes reserved for the Cantley lab 

All jobs, except those submitted the Edison cluster, should be submitted via our Slurm submission node: curie.pbtech. Jobs submitted to the Edison cluster should be submitted from its submission node, edison-mgmt.pbtech.

Warning

Note: Unless you perform cryoEM analysis, or otherwise have specific PI-granted privileges, you will only be able to submit jobs to the panda cluster.

Please see About SCU for more information about our HPC infrastructure.

Slurm partitions

Slurm groups nodes into sets referred to as 'partitions'. The above resources belong to one or more Slurm partitions, with each partition possessing its own unique job submission rules. Some nodes belong to multiple partitions because this affords the SCU the configuration flexibility needed to ensure fair allocation of managed resources.

Panda cluster partitions:

  • panda: 33 CPU-only nodes, 7-day runtime limit, only 50 jobs allowed to run concurrently
  • panda_array: 33 CPU-only nodes, 7-day runtime limit, up to 100,000 jobs allowed to run concurrently 
Warning

Jobs submitted to panda_array partition will always allow jobs in panda partition to run first–so it is recommended that you submit to panda partition unless running large numbers of jobs.  

CryoEM cluster:

  • cryo-cpu: 15 CPU-only nodes, 2-day runtime limit
  • cryo-gpu 3 GPU nodes, 2-day runtime limit

Edison cluster:

...

Table of Contents
outlinetrue


...

What is Slurm?

Slurm (previously Simple Linux Utility for Resource Management), is a modern, open source job scheduler that is highly scaleable and customizable; currently, Slurm is implemented on the majority of the TOP500 supercomputers. Job schedulers enable large numbers of users to fairly and efficiently share large computational resources.

Please see About SCU for more information about our HPC infrastructure.


...

Slurm partitions -  BRB Cluster 

BRB

SCU cluster partitions:

  • scu-cpu: 22 cpu nodes, 7-day runtime limit
  • scu-gpu: 6 gpu nodes, 2-day runtime limit

CryoEM partitions:

  • cryo-cpu: 14 CPU-only nodes, 7-day runtime limit
  • cryo-gpu: 6 GPU nodes, 2-day runtime limit
  • cryo-gpu-v100: 2 GPU, 2-day runtime limit
  • cryo-gpu-p100: 3 GPU, 2-day runtime limit

PI-specific cluster partitions:

  • accardi_gpu: 4 GPU nodes, 2-day runtime lim
  • accardi_cpu: 1 CPU node, 7-day runtime limit
  • boudker_gpu: 2 GPU nodes, 7-day runtime limit

  • boudker_gpu-p100: 3 GPU nodes, 7-day runtime limit
  • boudker_cpu: 2 CPU nodes, 7-day runtime limit
  • sackler_ cpu: 1 CPU node, 7-day runtime limit
  • sackler_ gpu: 1 GPU node, 7-day runtime limit
  • hwlab-rocky_gpu: 12 GPU nodes, 7-day runtime limit
  • eliezer-gpu: 1 GPU node, 7-day runtime limit

Other specific cluster partitions:

  • scu-res: 1 GPU, 7-day runtime limit


Of course, the above will be updated as needed; regardless, to see an up-to-date description of all available partitions, using the command sinfo scu-login02. For a description of all the nodes' # CPU cores, memory (in Mb), runtime limits, and partition, use this command:

Code Block
sinfo -N -o "%25N %5c %10m %15l %25R"

Interactive Session

Code Block
srun -n1 --pty --partition=scu-cpu --mem=8G bash -i


To request specific numbers of GPUs, you should add your request to your srun/sbatch:  

Below is an example of requesting 1 GPU - can request up to 4 GPUs on a single node

Code Block
--gres=gpu:1


...

A simple job submission example

...

Code Block
languagebash
titlehello_slurm.sh
#! /bin/bash -l

#SBATCH --partition=pandascu-cpu   # cluster-specific 
#SBATCH --nodes=1  
#SBATCH --ntasks=1 
#SBATCH --job-name=hello_slurm
#SBATCH --time=00:02:00   # HH/MM/SS
#SBATCH --mem=1G   # memory requested, units available: K,M,G,T
#SBATCH --output hello_slurm-%j.out
#SBATCH --error hello_slurm-%j.err

source ~/.bashrc

echo "Starting at:" `date` >> hello_slurm_output.txt
sleep 30
echo "This is job #:" $SLURM_JOB_ID >> hello_slurm_output.txt
echo "Running on node:" `hostname` >> hello_slurm_output.txt
echo "Running on cluster:" $SLURM_CLUSTER_NAME >> hello_slurm_output.txt
echo "This job was assigned the temporary (local) directory:" $TMPDIR >> hello_slurm_output.txt

exit

...

Next, there are several #SBATCH lines. These lines describe the resource allocation we wish to request:

--partition=pandascu-cpu:

Cluster resources (such as specific nodes, CPUs, memory, GPUs, etc) can be assigned to groups, called partitions. Additionally, the same resources (e.g. a specific node) may belong to multiple cluster partitions. Finally, partitions may be assigned different job priority weights, so that jobs in one partition move through the job queue more quickly than jobs in another partition.

Every job submission script must request a specific partition--otherwise, the default is used. To see what partitions are available on your cluster, click here, or execute the command: sinfo

...

the number of concurrently running tasks. Tasks can be thought of as processes; this is explained in more detail in Advanced Job Submissionsbe thought of as processes. For this simple serial job, we only need 1 concurrently-running task/process. Also, by default, each task is allocated a single CPU core. For additional information on parallel/multicore environments, click here.

--cpus-per-task=1:

the number of allocated CPUs.

--job-name=test_job:

The job's name--this will appear in the job queue, and is publicly-viewable.

...

The number of concurrently running tasks. Tasks can be thought of as processes; this is explained in more detail in Advanced Job Submissions. For this simple serial job, we only need 1 concurrently-running task/process. Also, by default, each task is allocated a single CPU core. For additional information on parallel/multicore environments, click here.

...

Code Block
languagebash
titleRequest an interactive session with X11 forwarding
ssh -X pascal
 
ssh -X curiecwid@scu-login01.med.cornell.edu
 
srun --x11 -n1 --pty --partition=pandascu-cpu --mem=8G bash -i

To test the session, try the following command:

...