I'm trying to run a python script on a slurm cluster, and I'm using python's built-in
I'm using quite a simple set up, where for testing purpose, the example is:
len(arg_list) Out: 5 threads = multiprocessing.Pool(5) output = threads.map(func, arg_list)
func is applied 5 times in parallel on 5 arguments in
arg_list. What I want to know is how to allocate the correct amount of cpu's/tasks in slurm for this to work as expected. This is what the relevant part of my slurm batch script looks like:
#!/bin/bash # Runtime and memory #SBATCH --time=90:00:00 #SBATCH --mem-per-cpu=2G # For parallel jobs #SBATCH --cpus-per-task=10 ##SBATCH --nodes=2 #SBATCH --ntasks=1 ##SBATCH --ntasks-per-node=4 #### Your shell commands below this line #### srun ./script_wrapper.py 'test'
As you can see, at the moment I have
cpus-per-task=10. Note that the main bulk of func contains a scipy routine which tends to run on two cores (i.e uses 200% cpu usage, which is why I want 10 cpus and not 5).
Is this the correct way to allocate resources for my purposes, because at the moment the job takes a lot longer than expected (more like it's running in a single thread).
Do I need to set
ntasks=5 instead? Because my impression from online documentation was that
ntasks=5 would instead call
srun ./script_wrapper.py 'test' five times instead, which is not what I want. Am I right in that assumption?
Also, is there a way to easily check stuff like CPU usage and all the process id's of the python tasks called by multiprocessing.Pool? At the moment I'm trying with
sacct -u <user> --format=JobID,JobName,MaxRSS,Elapsed,AveCPU, but the
MaxRSS fields always come up empty for some reason (?) and while I see the first script as a process, I don't see the 5 others that should be called by multiprocessing. Example:
JobID JobName MaxRSS Elapsed AveCPU ------------ ---------- ---------- ---------- ---------- 16260892 GP 00:13:07 16260892.0 script_wr+ 00:13:07