I am new to Parallel computing, I cannot understand the use of PBS systems. I have successfully install SLURM and set up processing nodes. But cannot get the idea how I can distribute a task between multiple nodes.
There are a lot of simple examples, but they just run simple "Hello World" programs and that's all.
Consider the following example, I've found on the internet.
#!/bin/bash
#SBATCH -N 4
#SBATCH -c 1
#SBATCH --time=0-00:15:00 # 30 minutes
#SBATCH --job-name="just_a_test"
module load python
python --version
Simple script that run gets the Python version.
When I run it using sbatch python.slurm, the result is saved only on the first node even if I set the number to 4. But srun -N4 /bin/hostname works fine on the other hand.
But this is not the main question.
I cannot understand what I have to write my parallel algorithm.
Any example of parallel algorithm like array sorting, matrix multiplication or whatever.
The steps that are used for example in Hadoop or just multithreaded environment.
Get input from a source.
Divide the input into chunks,the number of chunks should be related to the node count.
Send these chunk to each processing node/thread
Wait for all threads to complete
Gather processed information and show it user after merging
How can I do the same using SLURM or any PBS.
#!/bin/bash
#SBATCH -N 4
#SBATCH -c 1
#SBATCH --time=0-00:15:00 # 30 minutes
#SBATCH --job-name="just_a_test"
what I have to write here ?
Please explain this or give a good article to read about, because I haven't found any.
Thanks
The most basic way to do this is to use pbsdsh:
pbsdsh hostname
will make the hostname command execute once for each execution slot (core or thread) in your job. I will also point out that you'll need to translate your #SBATCH to their #PBS equivalents.
The more universal way to do this is through MPI implementations.
Related
I was wondering if I could ask something about running slurm jobs in parallel.(Please note that I am new to slurm and linux and have only started using it 2 days ago...)
As per the insturctions on the picture below (source : https://hpc.nmsu.edu/discovery/slurm/serial-parallel-jobs/),
I have designed the following bash script
#!/bin/bash
#SBATCH --job-name fmriGLM #job name을 다르게 하기 위해서
#SBATCH --nodes=1
#SBATCH -t 16:00:00 # Time for running job
#SBATCH -o /scratch/connectome/dyhan316/fmri_preprocessing/FINAL_loop_over_all/output_fmri_glm.o%j #%j : job id 가 [>
#SBATCH -e /scratch/connectome/dyhan316/fmri_preprocessing/FINAL_loop_over_all/error_fmri_glm.e%j
pwd; hostname; date
#SBATCH --ntasks=30
#SBATCH --mem-per-cpu=3000MB
#SBATCH --cpus-per-task=1
for num in {0..29}
do
srun --ntasks=1 python FINAL_ARGPARSE_RUN.py --n_division 30 --start_num ${num} &
done
wait
The, I ran sbatch as follows: sbatch test_bash
However, when I view the outputs, it is apparent that only one of the sruns in the bash script are being executed... Could anyone tell me where I went wrong and how I can fix it?
**update : when I look at the error file I get the following : srun: Job 43969 step creation temporarily disabled, retrying. I searched the internet and it says that this could be caused by not specifying the memory and hence not having enough memory for the second job.. but I thought that I already specifeid the memory when I did --mem_per_cpu=300MB?
**update : I have tried changing the code as said as in here : Why are my slurm job steps not launching in parallel?, but.. still it didn't work
**potentially pertinent information: our node has about 96cores, which seems odd when compared to tutorials that say one node has like 4cores or something
Thank you!!
Try adding --exclusive to the srun command line:
srun --exclusive --ntasks=1 python FINAL_ARGPARSE_RUN.py --n_division 30 --start_num ${num} &
This will instruct srun to use a sub-allocation and work as you intended.
Note that the --exclusive option has a different meaning in this context than if used with sbatch.
Note also that different versions of Slurm have a distinct canonical way of doing this, but using --exclusive should work across most versions.
Even though you have solved your problem which turned out to be something else, and that you have already specified --mem_per_cpu=300MB in your sbatch script, I would like to add that in my case, my Slurm setup doesn't allow --mem_per_cpu in sbatch, only --mem. So the srun command will still allocate all the memory and block the subsequent steps. The key for me, is to specify --mem_per_cpu (or --mem) in the srun command.
I want to run two programs using mpi in parallel in the same job script. In SLURM I would usually just write a script for sbatch (shortened):
#SBATCH --nodes=1
#SBATCH --ntasks-per-node=4
mpirun program1 &
mpirun program2
This works fine.
The two programs will internally communicate with each other and coordinate execution. So overcommiting is fine. Moreover, they require each other and cannot run as stand-alone in the present configuration.
However, if I want to extend this to several nodes, e.g.
#SBATCH --nodes=2
#SBATCH --ntasks-per-node=2
SLURM does not start the first job in the background. Instead, it starts in the foreground, fails because it does not find the second step and the second then also fails -- because it does not find the first.
I am a bit at a loss here because that is the suggested solution (e.g. Run a "monitor" task alongside mpi task in SLURM) to similar problems and I do not see a reason why this should not work over several nodes. Indeed it does, for instance on PBS.
You can run your Multiple Program Multiple Data (MPMD) application like this:
mpirun -np x program1 : -np y program2
I am new to Slurm and I also found the related questions about this topic. However, I am still confused about several points of how to use srun. According to the official document, srun will typically first allocate resources and then run the parallel jobs. For example, I want to run 20 tasks and if I submit my job based on the following script, I am not sure how many tasks are created. Because sbatch only takes care of allocating resources instead of executing program.
#!/bin/sh
#SBATCH -n 20
#SBATCH --mpi=pmi2
#SBATCH -o myoutputfile.txt
module load mpi/mpich-x86_64
mpirun mpiprogram < inputfile.txt
If I am trying to run sequential program like the following, I am not whether there will be a difference or not. For example, I can simply remove the srun command in this script. What will happen?
#!/bin/sh
#SBATCH -n 1
#SBATCH -N 1
srun tar zxf julia-0.3.11.tar.gz
echo "prefix=/software/julia-0.3.11" > julia/Make.user
cd julia
srun make
The first example will spawn 20 tasks ; sbatch will request 20 CPUs and also set up the environment so that mpirun knows how many CPUs were requested for the job. mpirun will then spawn as many processes as were allocated (provided that OpenMPI was compiled with Slurm support).
The #SBATCH --mpi=pmi2 part is meant for srun so it will have no effect if srun is not called in the submission script.
In the second example, there will be no difference in the number of processes spawned as only one is needed. But, with srun, the output of sstat will be more reliable, the management of signals will be more precise, and the buffering of the output will be more controlled (via the srun command line options).
If you request multiple tasks, srun will instantiate that many processes. It can be an MPI program, or a sequential program that adapts its behaviour based on the SLURM_PROC_ID environment variable.
Also you can run multiple srun in the same submission script. Each instance of srun (called a "step") is then accounted separately in the accounting (sacct).
Finally, srun can use a subset of the allocation and organise the micro-scheduling of many small tasks in a single job (see the example in the srun manpage).
I have access to a large GPU cluster (20+ nodes, 8 GPUs per node) and I want to launch a task several times on n GPUs (1 per GPU, n > 8) within one single batch without booking full nodes with the --exclusive flag.
I managed to pre-allocate the resources (see below), but I struggle very hard with launching the task several times within the job. Specifically, my log shows no value for the CUDA_VISIBLE_DEVICES variable.
I know how to do this operation on fully booked nodes with the --nodes and --gres flags. In this situation, I use --nodes=1 --gres=gpu:1 for each srun. However, this solution does not work for the present question, the job hangs indefinitely.
In the MWE below, I have a job asking for 16 gpus (--ntasks and --gpus-per-task). The jobs is composed of 28 tasks which are launched with the srun command.
#!/usr/bin/env bash
#SBATCH --job-name=somename
#SBATCH --partition=gpu
#SBATCH --nodes=1-10
#SBATCH --ntasks=16
#SBATCH --gpus-per-task=1
for i in {1..28}
do
srun echo $(hostname) $CUDA_VISIBLE_DEVICES &
done
wait
The output of this script should look like this:
nodeA 1
nodeR 2
...
However, this is what I got:
nodeA
nodeR
...
When you write
srun echo $(hostname) $CUDA_VISIBLE_DEVICES &
the expansion of the $CUDA_VISIBLE_DEVICES variable will be performed on the master node of the allocation (where the script is run) rather than on the node targeted by srun. You should escape the $:
srun echo $(hostname) \$CUDA_VISIBLE_DEVICES &
By the way, the --gpus-per-task= appeared in the sbatch manpage in the 19.05 version. When you use it with an earlier option, I am not sure how it goes.
I've installed Slurm on a 2-node cluster. Both nodes are compute nodes, one is the controller also. I am able to successfully run srun with multiple jobs at once. I am running GPU jobs and have confirmed I can get multiple jobs running on multiple GPUs with srun, up to the number of GPUs in the systems.
However, when I try running sbatch with the same test file, it will only run one batch job, and it only runs on the compute node which is also the controller. The others fail, with an ExitCode of 1:0 in the sacct summary. If I try forcing it to run on the compute node that's not the controller, it won't run and shows the 1:0 exit code. However, just using srun will run on any compute node.
I've made sure the /etc/slurm/slurm.conf files are correct with the specs of the machines. Here is the sbatch .job file I am using:
#!/bin/bash
#SBATCH --job-name=tf_test1
#SBATCH --output=/storage/test.out
#SBATCH --error=/storage/test.err
#SBATCH --ntasks=2
#SBATCH --cpus-per-task=1
#SBATCH --mem-per-cpu=2000
##SBATCH --mem=10gb
#SBATCH --gres=gpu:1
~/anaconda3/bin/python /storage/tf_test.py
Maybe there is some limitation with sbatch I don't know about?
sbatch creates a job allocation and launches what is called the 'batch step'.
If you aren't familiar with what a job step is, I recommend this page: https://slurm.schedmd.com/quickstart.html
The batch step runs the script passed to it from sbatch. The only way to launch additional job steps is to invoke srun inside the batch step. In your case, it would be
srun ~/anaconda3/bin/python /storage/tf_test.py
This will create a job step running tf_test.py on each task in the allocation. Note that while the command is the same as when you run srun directly, it detects that is inside an allocation via environment variables from sbatch. You can split up the allocation into multiple job steps by running srun with flags like -n[num tasks] instead. ie
#!/bin/bash
#SBATCH --ntasks=2
srun --ntasks=1 something.py
srun --ntasks=1 somethingelse.py
I don't know if you're having any other problems because you didn't post any other error messages or logs.
If using srun on the second node works and using sbatch with the submission script you mention fails without any output written, the most probable reason would be that /storage does not exist, or is not writable by the user, on the second node.
The slurmd logs on the second node should be explicit about this. The default location is /var/log/slurm/slurmd.log, but check the output of scontrol show config| grep Log for definitive information.
Another probable cause that lead to the same behaviour would be that the user is not defined or has a different UID on the second node (but then srun would fail too)
#damienfrancois answer was closest and maybe even correct. After making sure the /storage location was available on all nodes, things run with sbatch. The biggest issue was the /storage location is shared via NFS, but it was read-only for the compute nodes. This had to be changed in /etc/exports to look more like:
/storage *(rw,sync,no_root_squash)
Before it was ro...
The job file I have that works is also a bit different. Here is the current .job file:
#!/bin/bash
#SBATCH -N 1 # nodes requested
#SBATCH --job-name=test
#SBATCH --output=/storage/test.out
#SBATCH --error=/storage/test.err
#SBATCH --time=2-00:00
#SBATCH --mem=36000
#SBATCH --qos=normal
#SBATCH --mail-type=ALL
#SBATCH --mail-user=$USER#nothing.com
#SBATCH --gres=gpu
srun ~/anaconda3/bin/python /storage/tf_test.py