An Introduction to Gauss Paul D. Baines University of California, Davis November 20 th 2012.
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Transcript of An Introduction to Gauss Paul D. Baines University of California, Davis November 20 th 2012.
An Introduction to Gauss
Paul D. BainesUniversity of California, Davis
November 20th 2012
http://wiki.cse.ucdavis.edu/support:systems:gauss
12 node compute cluster (2 x 16 cores per node)
1 TB storage per node ~ 11 TB storage on head node 64GB RAM per node Total 416 cores (inc. head node)
What is Gauss?
Running large numbers of independent jobs Running long-running jobs Running jobs involving parallel computing Running large-memory jobs
What is Gauss good for?
Running simple, fast jobs (just use your laptop)
Running interactive R sessions Running GPU-based calculations
What Gauss is not designed for…
Create your public/private key (see Wiki for details) Provide CSE with your public key and campus
username (via email to [email protected]) Log in to Gauss via ssh:
(e.g., ssh –X [email protected]) When you ssh into Gauss, you log in to the head node If you just directly type R at the command line, you
will be running R on the head node (Please do not do this !) To use the compute nodes you submit jobs via SLURM SLURM manages which jobs runs on which nodes
Gauss Overview
Head Node
SLURM
Compute Node
1
Compute Node
2
Compute Node
3
Compute Node
…
Compute Node
12
Gauss Structure
Important commands to know:
sbatch (submit a job to Gauss) sarray (submit an array job to Gauss) squeue (check the status of running jobs) scancel (cancel a job)
Examples (more detailed examples later):
squeue # view all running jobssqueue –u pdbaines # check all jobs scancel –u pdbaines # cancel all of pdbaines’ jobsscancel 19213 # cancel job 19213
SLURM Basics
The compute resources (CPU’s, memory) are shared across all Gauss users.
When users submit jobs, SLURM allocates resources. You must be sure to request sufficient resources (e.g.,
cores, memory) for your jobs to run Resource requests are made when submitting your job (via
your sbatch or sarray scripts) Resources are allocated as per user requests, but strict
limits are not enforced If you use more memory than you requested it can
~massively~ slow down yours (and others) jobs! To check the memory usage of your jobs you can use the
‘myjobs’ command (see examples later)
Resource Allocation on Gauss
Gauss is a shared resource – your bad code can (potentially) ruin someone elses simulation!
Test your code thoroughly before running large jobs
Make sure you request the correct amount of resources for your jobs
Regularly check memory usage for long-running jobs
Be considerate of others!
Gauss Etiquette
To use Gauss you need to know some basic Linux commands (these work on a Mac terminal too)
You should already be, or quickly get, familiar with the following commands:
ls, cd, cp, mv, rm, pwd, cat, tar, grep
It helps if you learn how to use a command line editor such as vim or nano. (hint: use vim )
Aside: Linux Basics
Bob has been given a large dataset by a collaborator and told to analyze it in. The dataset is large and the job will take about 3 days to complete so he doesn’t want to use his laptop!
Bob can submit the job on Gauss, and keep on working on other stuff in the meantime.
Ways to use Gauss: Example 1
Code files:
bob_example_1.Rbob_example_1.sh
To submit:
sbatch bob_example_1.sh
Example 1 cont…
Example 1 Code: SLURM script
How do you know how much memory to request? Run small trial jobs!
Use the ‘myjobs’ command e.g.,
pdbaines@gauss:~/Examples/Example_3$ myjobsTue Nov 20 10:27:45 PST 2012 - pdbaines has jobs running on: c0-11jobs for pdbaines on c0-11USER PID %CPU %MEM VSZ RSS TTY STAT START TIME COMMANDpdbaines 13932 99.0 0.3 408424 216492 ? R 10:25 3:12 Rpdbaines 13949 99.1 0.3 434308 242336 ? R 10:25 3:12 Rpdbaines 13975 99.1 0.2 367720 175780 ? R 10:25 3:12 Rpdbaines 13995 99.1 0.3 425100 233172 ? R 10:25 3:12 R
VSZ and RSS give a rough indication of how much memory your job is using (in Kb)e.g., The above R jobs are using ~350-450Mb each.
Allocating Resources
Bob has been given 3 more datasets to analyze by his collaborator (or three new analyses to perform on the same dataset).
He just needs to set up the same thing as example 1 multiple times.
Ways to use Gauss: Example 2
Code files:
bob_example_2A.R, bob_example_2B.R, bob_example_2C.Rbob_example_2A.sh,bob_example_2B.sh,bob_example_2C.sh,
To submit:
sbatch bob_example_2A.shsbatch bob_example_2B.shsbatch bob_example_2B.sh
Example 2 cont…
Example 2 Code: SLURM script
Bob has developed a new methodology for analyzing super-complicated data.
He wants to run a simulation to prove to the world how awesome his method is compared to his competitors methods.
He decides to simulate 100 datasets, and analyze each of them with his method, and his competitors methods.This is done using an array job.
Ways to use Gauss: Example 3
Bob writes an R script to randomly generate and analyze one dataset at a time
He would like to run the script 100 times on Gauss To do this, he write a shell script to submit to SLURM Each run must use a different random seed, o/w he will
analyze the same dataset 100 times! He will also need to write an R script to combine the results
from all 100 jobs He will also need a shell script to submit the post-processing
portion of the analysis (Note: I have described this process in detail on the Gauss
page of the CSE Wiki: http://wiki.cse.ucdavis.edu/support:systems:gauss)
Example 3 cont…
Code files:
bob_example_3.RBob_post_process.R
To submit:
sarray bob_example_3.shsbatch bob_post_process.sh
Example 3 cont…
Example 3: SLURM script
Example 3: Modified R Code
To copy results back from Gauss to your laptop:
Archive them e.g.,tar –cvzf all_results.tar.gz my_results/
• Copy them by either using a file transfer (sftp) program, or, just use the command line (Linux/Mac users) e.g.,
scp [email protected]:~/all_results.tar.gz ./
Retrieving your results
Gauss can be setup to run parallel computing jobs using MPI, OpenMP etc.
SLURM submit files need to be modified to specify number of tasks, CPU’s, memory per CPU etc.
New (free) software can be installed on Gauss at your request by emailing help@cse
More Advanced Usage
Pre-requisite Linux skills: http://code.google.com/edu/tools101/linux/basics.html
Gauss/SLURM Links: http
://wiki.cse.ucdavis.edu/support:general:security:ssh#moving_and_copying_keys
http://wiki.cse.ucdavis.edu/support:faq:getting_started http://wiki.cse.ucdavis.edu/support:systems:gauss http://wiki.cse.ucdavis.edu http://www.sph.umich.edu/biostat/computing/cluster/slurm.html https://computing.llnl.gov/linux/slurm/faq.html https://computing.llnl.gov/linux/slurm/documentation.html
References