Difference between revisions of "Sample SLURM Scripts"
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− | [[Category: | + | [[Category:Scheduler]] |
− | { | + | Back to [[Slurm]] |
+ | {|align=right | ||
+ | |__TOC__ | ||
+ | |} | ||
+ | Below are a number of sample scripts that can be used as a template for building your own SLURM submission scripts for use on HiPerGator 2.0. These scripts are also located at: /data/training/SLURM/, and can be copied from there. If you choose to copy one of these sample scripts, please make sure you understand what each <code>#SBATCH</code> directive means before using the script to submit your jobs. Otherwise, you may not get the result you want and may waste valuable computing resources. | ||
− | + | '''Note:''' There is a maximum limit of 3000 jobs per user. | |
− | + | See [[Annotated SLURM Script]] for a step-by-step explanation of all options. | |
− | |||
− | |||
==Memory requests== | ==Memory requests== | ||
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Requesting more memory than needed will not speed up analyses. Based on their experience of finding their personal computers run faster when adding more memory, users often believe that requesting more memory will make their analyses run faster. This is not the case. An application running on the cluster will have access to all of the memory it requests, and we never swap RAM to disk. If an application can use more memory, it will get more memory. Only when the job crosses the limit based on the memory request does SLURM kill the job. | Requesting more memory than needed will not speed up analyses. Based on their experience of finding their personal computers run faster when adding more memory, users often believe that requesting more memory will make their analyses run faster. This is not the case. An application running on the cluster will have access to all of the memory it requests, and we never swap RAM to disk. If an application can use more memory, it will get more memory. Only when the job crosses the limit based on the memory request does SLURM kill the job. | ||
− | ==Basic, | + | ==Basic, Single-Threaded Job== |
− | This script can serve as the template for many single-processor applications. The mem-per-cpu flag can be used to request the appropriate amount of memory for your job. Please make sure to test your application and set this value to a reasonable number based on actual memory use. The %j in the | + | This script can serve as the template for many single-processor applications. The mem-per-cpu flag can be used to request the appropriate amount of memory for your job. Please make sure to test your application and set this value to a reasonable number based on actual memory use. The <code>%j</code> in the <code>--output</code> line tells SLURM to substitute the job ID in the name of the output file. You can also add a <code>-e</code> or <code>--error</code> line with an error file name to separate output and error logs. |
− | + | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | |
− | + | ''Expand to view example'' | |
− | + | <div class="mw-collapsible-content" style="padding: 5px;"> | |
− | < | + | <pre> |
#!/bin/bash | #!/bin/bash | ||
#SBATCH --job-name=serial_job_test # Job name | #SBATCH --job-name=serial_job_test # Job name | ||
Line 37: | Line 39: | ||
echo "Running plot script on a single CPU core" | echo "Running plot script on a single CPU core" | ||
− | python | + | python /data/training/SLURM/plot_template.py |
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date | date | ||
− | </ | + | </pre> |
+ | </div> | ||
+ | </div> | ||
+ | ==Multi Threaded Jobs vs Message Passing Interfaces== | ||
+ | For information and examples on scripts that allow for multiple threads or communication between jobs, view [[Multi-Threaded & Message Passing Job Scripts]] | ||
==Hybrid MPI/Threaded job== | ==Hybrid MPI/Threaded job== | ||
− | This script can serve as a template for hybrid MPI/ | + | This script can serve as a template for hybrid MPI/SMP applications. These are MPI applications where each MPI process is multi-threaded (usually via either '''OpenMP''' or '''POSIX Threads''') and can use multiple processors. |
− | Our testing has found that it is best to be very specific about how you want your MPI ranks laid out across nodes and even sockets (multi-core CPUs). SLURM and OpenMPI have some conflicting behavior if you leave too much to chance. Please refer to the full SLURM sbatch documentation, as well as the information in the MPI example above. | + | Our testing has found that it is best to be very specific about how you want your MPI ranks laid out across nodes and even sockets (multi-core CPUs). '''SLURM''' and '''OpenMPI''' have some conflicting behavior if you leave too much to chance. Please refer to the full '''SLURM''' ''sbatch'' documentation, as well as the information in the MPI example above. |
The following example requests 8 tasks, each with 4 cores. It further specifies that these should be split evenly on 2 nodes, and within the nodes, the 4 tasks should be evenly split on the two sockets. So each CPU on the two nodes will have 2 tasks, each with 4 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets. | The following example requests 8 tasks, each with 4 cores. It further specifies that these should be split evenly on 2 nodes, and within the nodes, the 4 tasks should be evenly split on the two sockets. So each CPU on the two nodes will have 2 tasks, each with 4 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets. | ||
− | + | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | |
− | + | ''Expand to see example.'' | |
− | < | + | <div class="mw-collapsible-content" style="padding: 5px;"> |
+ | <pre> | ||
#!/bin/bash | #!/bin/bash | ||
#SBATCH --job-name=hybrid_job_test # Job name | #SBATCH --job-name=hybrid_job_test # Job name | ||
Line 183: | Line 73: | ||
pwd; hostname; date | pwd; hostname; date | ||
− | module load | + | module load gcc/9.3.0 openmpi/4.1.1 raxml-ng/1.1.0 |
− | srun --mpi= | + | srun --mpi=$HPC_PMIX raxml-ng ... |
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date | date | ||
− | </ | + | </pre> |
+ | </div> | ||
+ | </div> | ||
The following example requests 8 tasks, each with 8 cores. It further specifies that these should be split evenly on 4 nodes, and within the nodes, the 2 tasks should be split, one on each of the two sockets. So each CPU on the two nodes will have 1 task, each with 8 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets. | The following example requests 8 tasks, each with 8 cores. It further specifies that these should be split evenly on 4 nodes, and within the nodes, the 2 tasks should be split, one on each of the two sockets. So each CPU on the two nodes will have 1 task, each with 8 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets. | ||
Also note setting OMP_NUM_THREADS so that OpenMP knows how many threads to use per task. | Also note setting OMP_NUM_THREADS so that OpenMP knows how many threads to use per task. | ||
− | + | * Note that MPI gets -np from SLURM automatically. | |
− | + | * Note there are many directives available to control processor layout. | |
− | < | + | ** Some to pay particular attention to are: |
+ | *** --nodes if you care exactly how many nodes are used | ||
+ | *** --ntasks-per-node to limit number of tasks on a node | ||
+ | *** --distribution one of several directives ([http://slurm.schedmd.com/sbatch.html see also] --contiguous, --cores-per-socket, --mem_bind, --ntasks-per-socket, --sockets-per-node) to control how tasks, cores and memory are distributed among nodes, sockets and cores. While SLURM will generally make appropriate decisions for setting up jobs, careful use of these directives can significantly enhance job performance and users are encouraged to profile application performance under different conditions. | ||
+ | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | ||
+ | ''Expand to see example.'' | ||
+ | <div class="mw-collapsible-content" style="padding: 5px;"> | ||
+ | <pre> | ||
#!/bin/bash | #!/bin/bash | ||
#SBATCH --job-name=LAMMPS | #SBATCH --job-name=LAMMPS | ||
Line 212: | Line 109: | ||
date;hostname;pwd | date;hostname;pwd | ||
− | module load | + | module load gcc/12.2.0 openmpi/4.1.5 |
export OMP_NUM_THREADS=$SLURM_CPUS_PER_TASK | export OMP_NUM_THREADS=$SLURM_CPUS_PER_TASK | ||
− | srun --mpi= | + | srun --mpi=$HPC_PMIX /path/to/app/lmp_gator2 < in.Cu.v.24nm.eq_xrd |
date | date | ||
− | </ | + | </pre> |
− | + | </div> | |
− | + | </div> | |
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==Array job== | ==Array job== | ||
− | Please see the [[ | + | Please see the [[SLURM Job Arrays]] page for information on job arrays. Note that we use the simplest 'single-threaded' process example from above and extending it to an array of jobs. Modify the following script using the parallel, mpi, or hybrid job layout as needed. |
− | + | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | |
− | + | ''Expand to see script.'' | |
− | < | + | <div class="mw-collapsible-content" style="padding: 5px;"> |
+ | <pre> | ||
#!/bin/bash | #!/bin/bash | ||
#SBATCH --job-name=array_job_test # Job name | #SBATCH --job-name=array_job_test # Job name | ||
Line 248: | Line 141: | ||
date | date | ||
− | </ | + | </pre> |
− | + | </div> | |
+ | </div> | ||
+ | <br> | ||
Note the use of %A for the master job ID of the array, and the %a for the task ID in the output filename. | Note the use of %A for the master job ID of the array, and the %a for the task ID in the output filename. | ||
== GPU job == | == GPU job == | ||
− | Please see [[ | + | Please see [[GPU Access]] for more information regarding the use of HiPerGator GPUs. Note that the order in which the environment modules are loaded is important. |
− | |||
− | |||
+ | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | ||
+ | ''Expand to view VASP script'' | ||
+ | <div class="mw-collapsible-content" style="padding: 5px;"> | ||
+ | <pre> | ||
#!/bin/bash | #!/bin/bash | ||
#SBATCH --job-name=vasptest | #SBATCH --job-name=vasptest | ||
Line 270: | Line 167: | ||
#SBATCH --mem-per-cpu=7000mb | #SBATCH --mem-per-cpu=7000mb | ||
#SBATCH --partition=gpu | #SBATCH --partition=gpu | ||
− | #SBATCH -- | + | #SBATCH --gpus=a100:4 |
#SBATCH --time=00:30:00 | #SBATCH --time=00:30:00 | ||
module purge | module purge | ||
− | module load cuda/ | + | module load cuda/12.2.0 intel/2020 openmpi/4.1.5 vasp/6.4.1 |
+ | |||
+ | srun --mpi=${HPC_PMIX} vasp_gpu | ||
+ | |||
+ | </pre> | ||
+ | </div> | ||
+ | </div> | ||
+ | |||
+ | <div class="mw-collapsible mw-collapsed" style="width:70%; padding: 5px; border: 1px solid gray;"> | ||
+ | ''Expand to view NAMD script '' | ||
+ | <div class="mw-collapsible-content" style="padding: 5px;"> | ||
+ | <pre> | ||
+ | #!/bin/bash | ||
+ | #SBATCH --job-name=stmv | ||
+ | #SBATCH --output=std.out | ||
+ | #SBATCH --error=std.err | ||
+ | #SBATCH --nodes=1 | ||
+ | #SBATCH --ntasks=1 | ||
+ | #SBATCH --ntasks-per-socket=1 | ||
+ | #SBATCH --cpus-per-task=4 | ||
+ | #SBATCH --distribution=block:block | ||
+ | #SBATCH --time=30:00:00 | ||
+ | #SBATCH --mem-per-cpu=1gb | ||
+ | #SBATCH --mail-type=NONE | ||
+ | #SBATCH --mail-user=some_user@ufl.edu | ||
+ | #SBATCH --partition=gpu | ||
+ | #SBATCH --gpus=a100:2 | ||
+ | |||
+ | module load cuda/11.0.207 intel/2020.0.166 namd/2.14b2 | ||
+ | |||
+ | echo "NAMD2 = $(which namd2)" | ||
+ | echo "SBATCH_CPU_BIND_LIST = $SBATCH_CPU_BIND_LIST" | ||
+ | echo "SBATCH_CPU_BIND = $SBATCH_CPU_BIND " | ||
+ | echo "CUDA_VISIBLE_DEVICES = $CUDA_VISIBLE_DEVICES" | ||
+ | echo "SLURM_CPUS_PER_TASK = $SLURM_CPUS_PER_TASK " | ||
− | + | gpuList=$(echo $CUDA_VISIBLE_DEVICES | sed -e 's/,/ /g') | |
+ | N=0 | ||
+ | devList="" | ||
+ | for gpu in $gpuList | ||
+ | do | ||
+ | devList="$devList $N" | ||
+ | N=$(($N + 1)) | ||
+ | done | ||
+ | devList=$(echo $devList | sed -e 's/ /,/g') | ||
+ | echo "devList = $devList" | ||
− | </ | + | namd2 +p$SLURM_CPUS_PER_TASK +idlepoll +devices $devList stmv.namd |
+ | </pre> | ||
+ | </div> | ||
+ | </div> |
Latest revision as of 14:31, 10 July 2024
Back to Slurm
Below are a number of sample scripts that can be used as a template for building your own SLURM submission scripts for use on HiPerGator 2.0. These scripts are also located at: /data/training/SLURM/, and can be copied from there. If you choose to copy one of these sample scripts, please make sure you understand what each #SBATCH
directive means before using the script to submit your jobs. Otherwise, you may not get the result you want and may waste valuable computing resources.
Note: There is a maximum limit of 3000 jobs per user.
See Annotated SLURM Script for a step-by-step explanation of all options.
Memory requests
A large number of users request far more memory than their jobs use (100-10,000 times!). As an example, since August 1st, looking at groups that have run over 1,000 jobs, there are 28 groups whose users have requested 100x the memory used in over half of those jobs. Groups often find themselves with jobs pending due to having reached their memory limits (QOSGrpMemLimit).
While it is important to request more memory than will be used (10-20% is usually sufficient), requesting 100x, or even 10,000x, more memory only reduces the number of jobs that a group can run as well as overall throughput on the cluster. Many groups, and our overall user community, will be able to run far more jobs if they request more reasonable amounts of memory.
The email sent when a job finishes shows users how much memory the job actually used and can be used to adjust memory requests for future jobs. The SLURM directives for memory requests are the --mem or --mem-per-cpu. It is in the user’s best interest to adjust the memory request to a more realistic value.
Requesting more memory than needed will not speed up analyses. Based on their experience of finding their personal computers run faster when adding more memory, users often believe that requesting more memory will make their analyses run faster. This is not the case. An application running on the cluster will have access to all of the memory it requests, and we never swap RAM to disk. If an application can use more memory, it will get more memory. Only when the job crosses the limit based on the memory request does SLURM kill the job.
Basic, Single-Threaded Job
This script can serve as the template for many single-processor applications. The mem-per-cpu flag can be used to request the appropriate amount of memory for your job. Please make sure to test your application and set this value to a reasonable number based on actual memory use. The %j
in the --output
line tells SLURM to substitute the job ID in the name of the output file. You can also add a -e
or --error
line with an error file name to separate output and error logs.
Expand to view example
#!/bin/bash #SBATCH --job-name=serial_job_test # Job name #SBATCH --mail-type=END,FAIL # Mail events (NONE, BEGIN, END, FAIL, ALL) #SBATCH --mail-user=email@ufl.edu # Where to send mail #SBATCH --ntasks=1 # Run on a single CPU #SBATCH --mem=1gb # Job memory request #SBATCH --time=00:05:00 # Time limit hrs:min:sec #SBATCH --output=serial_test_%j.log # Standard output and error log pwd; hostname; date module load python echo "Running plot script on a single CPU core" python /data/training/SLURM/plot_template.py date
Multi Threaded Jobs vs Message Passing Interfaces
For information and examples on scripts that allow for multiple threads or communication between jobs, view Multi-Threaded & Message Passing Job Scripts
Hybrid MPI/Threaded job
This script can serve as a template for hybrid MPI/SMP applications. These are MPI applications where each MPI process is multi-threaded (usually via either OpenMP or POSIX Threads) and can use multiple processors.
Our testing has found that it is best to be very specific about how you want your MPI ranks laid out across nodes and even sockets (multi-core CPUs). SLURM and OpenMPI have some conflicting behavior if you leave too much to chance. Please refer to the full SLURM sbatch documentation, as well as the information in the MPI example above.
The following example requests 8 tasks, each with 4 cores. It further specifies that these should be split evenly on 2 nodes, and within the nodes, the 4 tasks should be evenly split on the two sockets. So each CPU on the two nodes will have 2 tasks, each with 4 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets.
Expand to see example.
#!/bin/bash #SBATCH --job-name=hybrid_job_test # Job name #SBATCH --mail-type=END,FAIL # Mail events (NONE, BEGIN, END, FAIL, ALL) #SBATCH --mail-user=email@ufl.edu # Where to send mail #SBATCH --ntasks=8 # Number of MPI ranks #SBATCH --cpus-per-task=4 # Number of cores per MPI rank #SBATCH --nodes=2 # Number of nodes #SBATCH --ntasks-per-node=4 # How many tasks on each node #SBATCH --ntasks-per-socket=2 # How many tasks on each CPU or socket #SBATCH --mem-per-cpu=100mb # Memory per core #SBATCH --time=00:05:00 # Time limit hrs:min:sec #SBATCH --output=hybrid_test_%j.log # Standard output and error log pwd; hostname; date module load gcc/9.3.0 openmpi/4.1.1 raxml-ng/1.1.0 srun --mpi=$HPC_PMIX raxml-ng ... date
The following example requests 8 tasks, each with 8 cores. It further specifies that these should be split evenly on 4 nodes, and within the nodes, the 2 tasks should be split, one on each of the two sockets. So each CPU on the two nodes will have 1 task, each with 8 cores. The distribution option will ensure that MPI ranks are distributed cyclically on nodes and sockets.
Also note setting OMP_NUM_THREADS so that OpenMP knows how many threads to use per task.
- Note that MPI gets -np from SLURM automatically.
- Note there are many directives available to control processor layout.
- Some to pay particular attention to are:
- --nodes if you care exactly how many nodes are used
- --ntasks-per-node to limit number of tasks on a node
- --distribution one of several directives (see also --contiguous, --cores-per-socket, --mem_bind, --ntasks-per-socket, --sockets-per-node) to control how tasks, cores and memory are distributed among nodes, sockets and cores. While SLURM will generally make appropriate decisions for setting up jobs, careful use of these directives can significantly enhance job performance and users are encouraged to profile application performance under different conditions.
- Some to pay particular attention to are:
Expand to see example.
#!/bin/bash #SBATCH --job-name=LAMMPS #SBATCH --output=LAMMPS_%j.out #SBATCH --mail-type=END,FAIL #SBATCH --mail-user=<email_address> #SBATCH --nodes=4 # Number of nodes #SBATCH --ntasks=8 # Number of MPI ranks #SBATCH --ntasks-per-node=2 # Number of MPI ranks per node #SBATCH --ntasks-per-socket=1 # Number of tasks per processor socket on the node #SBATCH --cpus-per-task=8 # Number of OpenMP threads for each MPI process/rank #SBATCH --mem-per-cpu=2000mb # Per processor memory request #SBATCH --time=4-00:00:00 # Walltime in hh:mm:ss or d-hh:mm:ss date;hostname;pwd module load gcc/12.2.0 openmpi/4.1.5 export OMP_NUM_THREADS=$SLURM_CPUS_PER_TASK srun --mpi=$HPC_PMIX /path/to/app/lmp_gator2 < in.Cu.v.24nm.eq_xrd date
Array job
Please see the SLURM Job Arrays page for information on job arrays. Note that we use the simplest 'single-threaded' process example from above and extending it to an array of jobs. Modify the following script using the parallel, mpi, or hybrid job layout as needed.
Expand to see script.
#!/bin/bash #SBATCH --job-name=array_job_test # Job name #SBATCH --mail-type=FAIL # Mail events (NONE, BEGIN, END, FAIL, ALL) #SBATCH --mail-user=email@ufl.edu # Where to send mail #SBATCH --ntasks=1 # Run a single task #SBATCH --mem=1gb # Job Memory #SBATCH --time=00:05:00 # Time limit hrs:min:sec #SBATCH --output=array_%A-%a.log # Standard output and error log #SBATCH --array=1-5 # Array range pwd; hostname; date echo This is task $SLURM_ARRAY_TASK_ID date
Note the use of %A for the master job ID of the array, and the %a for the task ID in the output filename.
GPU job
Please see GPU Access for more information regarding the use of HiPerGator GPUs. Note that the order in which the environment modules are loaded is important.
Expand to view VASP script
#!/bin/bash #SBATCH --job-name=vasptest #SBATCH --output=vasp.out #SBATCH --error=vasp.err #SBATCH --mail-type=ALL #SBATCH --mail-user=email@ufl.edu #SBATCH --nodes=1 #SBATCH --ntasks=8 #SBATCH --cpus-per-task=1 #SBATCH --ntasks-per-node=8 #SBATCH --distribution=cyclic:cyclic #SBATCH --mem-per-cpu=7000mb #SBATCH --partition=gpu #SBATCH --gpus=a100:4 #SBATCH --time=00:30:00 module purge module load cuda/12.2.0 intel/2020 openmpi/4.1.5 vasp/6.4.1 srun --mpi=${HPC_PMIX} vasp_gpu
Expand to view NAMD script
#!/bin/bash #SBATCH --job-name=stmv #SBATCH --output=std.out #SBATCH --error=std.err #SBATCH --nodes=1 #SBATCH --ntasks=1 #SBATCH --ntasks-per-socket=1 #SBATCH --cpus-per-task=4 #SBATCH --distribution=block:block #SBATCH --time=30:00:00 #SBATCH --mem-per-cpu=1gb #SBATCH --mail-type=NONE #SBATCH --mail-user=some_user@ufl.edu #SBATCH --partition=gpu #SBATCH --gpus=a100:2 module load cuda/11.0.207 intel/2020.0.166 namd/2.14b2 echo "NAMD2 = $(which namd2)" echo "SBATCH_CPU_BIND_LIST = $SBATCH_CPU_BIND_LIST" echo "SBATCH_CPU_BIND = $SBATCH_CPU_BIND " echo "CUDA_VISIBLE_DEVICES = $CUDA_VISIBLE_DEVICES" echo "SLURM_CPUS_PER_TASK = $SLURM_CPUS_PER_TASK " gpuList=$(echo $CUDA_VISIBLE_DEVICES | sed -e 's/,/ /g') N=0 devList="" for gpu in $gpuList do devList="$devList $N" N=$(($N + 1)) done devList=$(echo $devList | sed -e 's/ /,/g') echo "devList = $devList" namd2 +p$SLURM_CPUS_PER_TASK +idlepoll +devices $devList stmv.namd