Using TACC's Job Submission System (and 2017 end of class review)

Table of Contents

 

Introduction:

Throughout the course we have had you running anything of substance (ie programs and scripts) on iDev nodes. This was done in large part thanks to the availability of the reservation system which allowed you to access an iDev node without having to wait. In previous years tutorials were planned around a:

  • "hurry up and get the job started its going to sit for some amount of time in the que"
  • "what can we tell them while they wait for their job to run" 
  • "DRAT! there is a typo in their command's file they have to edit and go back to the end of the que". 

Together this has enabled each of you to accomplish more tutorials than previous years while hopefully learning more.

Objectives:

  1. Familiarize yourself with TACC's job submission system.
  2. Tidy up some other loose ends from the course.

Running jobs on TACC

Understanding "jobs" and compute nodes.

When you log into lonestar using ssh you are connected to what is known as the login node or "the head node". There are several different head nodes, but they are shared by everyone that is logged into lonestar (not just in this class, or from campus, or even from texas, but everywhere in the world). Anything you type onto the command line has to be executed by the head node. The longer something takes to complete, or the more it will slow down you and everybody else. Get enough people running large jobs on the head node all at once (say a classroom full of Big Data in Biology summer school students) and lonestar can actually crash leaving nobody able to execute commands or even log in for minutes -> hours -> even days if something goes really wrong. To try to avoid crashes, TACC tries to monitor things and proactively stop things before they get too out of hand. If you guess wrong on if something should be run on the head node, you may eventually see a message like the one pasted below. If you do, its not the end of the world, but repeated messages will become revoked TACC access and emails where you have to explain what you are doing to TACC and your PI and how you are going to fix it and avoid it in the future.  

Example of how you learn you shouldn't have been on the head node
Message from root@login1.ls4.tacc.utexas.edu on pts/127 at 09:16 ...
Please do not run scripts or programs that require more than a few minutes of
CPU time on the login nodes.  Your current running process below has been
killed and must be submitted to the queues, for usage policy see
http://www.tacc.utexas.edu/user-services/usage-policies/
If you have any questions regarding this, please submit a consulting ticket.

So you may be asking yourself what the point of using lonestar is at all if it is wrought with so many issues. The answer comes in the form of compute nodes. There are 1,252 compute nodes that can only be accessed by a single person for a specified amount of time. These compute nodes are divided into different queues called: normal, development, largemem, etc. Access to nodes (regardless of what queue they are in) is controlled by a "Queue Manager" program. You can personify the Queue Manager program as: Heimdall in Thor, a more polite version of Gandalf in lord of the rings when dealing with with the balrog, the troll from the billy goats gruff tail, or any other "gatekeeper" type. Regardless of how nerdy your personification choice is, the Queue Manager has an interesting caveat: you can only interact with it using the  sbatch command. "sbatch <filename.slurm>" tells the que manager to run a set job based on information in filename.slurm (i.e. how many nodes you need, how long you need them for, how to charge your allocation, etc). The Queue manager doesn't care WHAT you are running, only HOW to find what you are running (which is specified by a setenv CONTROL_FILE commands line in your filename.slurm file). The WHAT is then handled by the file "commands" which contains what you would normally type into the command line to make things happen.

Further sbatch reading

The following are the options available for the sbatch command file (note it may be helpful to close the table of contents on the left side of the window to better see the table)

Using launcher_creator.py

To make things easier on all of us, there is a script called launcher_creator.py that you can use to automatically generate a .slurm file. This can all be summarized in the following figure:

Run the launcher_creator.py script with the -h option to show the help message so we can see what other options the script takes:

How to display all available options of the launcher_createor.py script
launcher_creator.py -h
Short optionLong optionRequiredDescription

-n

name

Yes

The name of the job.

-t

time

Yes

Time allotment for job, format must be hh:mm:ss.

-b

Bash commands

 -b OR -j must be used

Optional String of Bash commands to execute.

-j

Command list

  -b OR -j must be used

Optional Filename of list of commands to be distributed to nodes.

-a

allocation

 

The allocation you want to charge the run to. If you only have one allocation you don't need this option

-m

modules

 

Optional String of module management commands. module load launcher is always in the launcher, so there's no need to include that. Think to all the times in the class that you had to type 'module load xxxxx' while on the idev node. The same will be true for the launcher script. As you are more familiar with what types of analysis you will be doing, you will likely change your .bashrc file to limit the things you have to specify here.

-q

queue

Default: Development

The queue to submit to, like 'normal' or 'largemem', etc. You will usually want to change this to 'normal'

-w

wayness

 

Optional The number of jobs in a job list you want to give to each node. (Default is 12 for Lonestar, 16 for Stampede.)

-N

number of nodes

 

Optional Specifies a certain number of nodes to use. You probably don't need this option, as the launcher calculates how many nodes you need based on the job list (or Bash command string) you submit. It sometimes comes in handy when writing pipelines.

-e

email

 

Optional Your email address if you want to receive an email from Lonestar when your job starts and ends. If you set an environmental variable EMAIL_ADDRESS it will use that variable if you don't put anything after the -e

-l

launcher

 

Optional Filename of the launcher. (Default is <name>.sge)

-s

stdout

 

Optional Setting this flag outputs the name of the launcher to stdout.

We should mention that launcher_creator.py does some under-the-hood magic for you and automatically calculates how many cores to request on lonestar, assuming you want one core per process. You don't know it, but you should be grateful that this saves you from ever having to think about a confusing calculation that even the most seasoned computational biologists rutinely got wrong (and hence made a script to avoid having to do it anymore).

Running a job

Now that we have an understanding of what the different parts of running a job is, let's actually run a job. Our goal of this sample job will be to provide you with something to look back on and remember what you did whlie you were here. As a saftey measure, you can not submit jobs from inside an idev node (similarly you can not run a commands file that submits new jobs on the compute nodes). So check if you are on an idev node (showq -u), and if so, logout before continuing. Navigate to the $SCRATCH directory before doing the following.

how to make a sample commands file
# remember that things after the # sign are ignored by bash and most all programing languages
cds  # move to your scratch directory
nano commands
 
# the following lines should be entered into nano
echo "My name is _____ and todays date is:" > BDIB.output.txt
date >> BDIB.output.txt
echo "I have just demonstrated that I know how to redirect output to a new file, and to append things to an already created file. Or at least thats what I think I did" >> BDIB.output.txt
 
echo "i'm going to test this by counting the number of lines in the file that I am writing to. So if the next line reads 4 I remember I'm on the right track" >> BDIB.output.txt
wc -l BDIB.output.txt >> BDIB.output.txt
 
echo "I know that normally i would be typing commands on each line of this file, that would be executed on a compute node instead of the head node so that my programs run faster, in parallel, and do not slow down others or risk my tacc account being locked out" >> BDIB.output.txt
 
echo "i'm currently in my scratch directory on lonestar. there are 2 main ways of getting here: cds and cd $SCRATCH:" >>BDIB.output.txt
pwd >> BDIB.output.txt
 
echo "over the last week I've conducted multiple different types of analysis on a variety of sample types and under different conditions. Each of the exercises was taken from the website https://wikis.utexas.edu/display/bioiteam/Genome+Variant+Analysis+Course+2017" >> BDIB.output.txt
 
echo "using the ls command i'm now going to try to remind you (my future self) what tutorials I did" >> BDIB.output.txt
 
ls -1 >> BDIB.output.txt
 
echo "the contents of those directories (representing the data i downloaded and the work i did) are as follows: ">> BDIB.output.txt
ls */* >> BDIB.output.txt
 
echo "the commands that i have run on the headnode are: " >> BDIB.output.txt
history >> BDIB.output.txt
 
echo "the contents of this, my commands file, which i will use in the launcher_creator.py script are: ">>BDIB.output.txt
cat commands >> BDIB.output.txt
 
echo "finally, I will be generating a job.slurm file using the launcher_creator.py script using the following command:" >> BDIB.output.txt
echo 'launcher_creator.py -w 1 -N 1 -n "what_i_did_at_BDIB_2017" -t 00:02:00 -a "UT-2015-05-18"' >> BDIB.output.txt # this will create a my_first_job.slurm file that will run for 2 minutes
echo "and i will send this job to the que using the the command: sbatch what_i_did_at_BDIB_2017.slurm" >> BDIB.output.txt  # this will actually submit the job to the Queue Manager and if everything has gone right, it will be added to the development queue.

 
ctrlo # keyboard command to write your nano output
crtlx # keyboard command to close the nano interface
wc -l commands  # use this command to verify the number of lines in your commands file.
# expected output:
31 commands

# if you get a much larger number than 31 edit your commands file with nano so each command is a single line as they appear above. 
launcher_creator.py -w 1 -N 1 -n "what_i_did_at_BDIB_2017" -t 00:02:00 -a "UT-2015-05-18"
sbatch what_i_did_at_BDIB_2017.slurm

Interrogating the launcher queue

Here are some of the common commands that you can run and what they will do or tell you:

CommandPurposeOutput(s)
showq -uShows only your jobs

Shows all of your currently submitted jobs, a state of:

"qw" means it is still queued and has not run yet

"r" means it is currently running

scancel <job-ID>

Delete a submitted job before it is finished running

note: you can only get the job-ID by using showq -u

There is no confirmation here, so be sure you are deleting the correct job.

There is nothing worse than deleting a job that has sat a long time by accident because you forgot something on a job you just submitted.

showqYou are a nosy person and want to see everyone that has submitted a jobTypically a huge list of jobs, and not actually informative

If the queue is moving very quickly you may not see much output, but don't worry, there will be plenty of opportunity once you are working on your own data.

 

Evaluating your first job submission

Based on our example you may have expected 1 new file to have been created during the job submission (BDIB.output.txt), but instead you will find 2 extra files as follows: what_i_did.e(job-ID), and what_i_did.o(job-ID). When things have worked well, these files are typically ignored. When your job fails, these files offer insight into the why so you can fix things and resubmit. 

Many times while working with NGS data you will find yourself with intermediate files. Two of the more difficult challenges of analysis can be trying to decide what files you want to keep, and remembering what each intermediate file represents. Your commands files can serve as a quick reminder of what you did so you can always go back and reproduce the data. Using arbitrary endings (.out in this case) can serve as a way to remind you what type of file you are looking at. Since we've learned that the scratch directory is not backed up and is purged, see if you can turn your intermediate files into a single final file using the cat command, and copy the new final file, the .slurm file you created, and the 3 extra files to work. This way you should be able to come back and regenerate all the intermediate files if needed, and also see your final product.

make a single final file using the cat command and copy to a useful work directory
# remember that things after the # sign are ignored by bash 
cat BDIB.output.txt > end_of_class_job_submission.final.output 
mkdir $WORK/BDIB_GVA_2017
mkdir $WORK/BDIB_GVA_2017/end_of_course_summary/  # each directory must be made in order to avoid getting a no such file or directory error
cp end_of_class_job_submission.final.output $WORK/BDIB_GVA_2017/end_of_course_summary/
cp what_i_did* $WORK/BDIB_GVA_2017/end_of_course_summary/  # note this grabs the 2 output files generated by tacc about your job run as well as the .slurm file you created to tell it how to run your commands file

cp commands $WORK/BDIB_GVA_2017/end_of_course_summary/

 

Return to GVA2017 to work on any additional tutorials you are interested in.