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[http://www.mathworks.com/ MATLAB] is a general-purpose high-level programming package for numerical work such as linear algebra, signal processing and other calculations involving matrices or vectors of data. Visualization tools are also included for presentation of results. The basic MATLAB package is extended through add-on components including SIMULINK, and the Image Processing, Optimization, Neural Network, Signal Processing, Statistics and Wavelet Toolboxes, among others.
[http://www.mathworks.com/ MATLAB] is a general-purpose high-level programming package for numerical work such as linear algebra, signal processing and other calculations involving matrices or vectors of data. Visualization tools are also included for presentation of results. The basic MATLAB package is extended through add-on components including SIMULINK, and the Image Processing, Optimization, Neural Network, Signal Processing, Statistics and Wavelet Toolboxes, among others.


The main purpose of this page is to show how to use MATLAB on the University of Calgary [[ ARC_Cluster_Guide |ARC (Advanced Research Computing) cluster]]. It is presumed that you already have an account an ARC and have read the material on reserving resources and [[ Slurm: Running Jobs|running jobs]] with the Slurm job management system.
The main purpose of this page is to show how to use MATLAB on the University of Calgary [[ ARC_Cluster_Guide |ARC (Advanced Research Computing) cluster]]. It is presumed that you already have an account an ARC and have read the material on reserving resources and [[Running Jobs|running jobs]] with the Slurm job management system.


= <span id="license"></span>Ways to run MATLAB - License considerations =
= <span id="license"></span>Ways to run MATLAB - License considerations =

Revision as of 14:16, 9 April 2020


Introduction

MATLAB is a general-purpose high-level programming package for numerical work such as linear algebra, signal processing and other calculations involving matrices or vectors of data. Visualization tools are also included for presentation of results. The basic MATLAB package is extended through add-on components including SIMULINK, and the Image Processing, Optimization, Neural Network, Signal Processing, Statistics and Wavelet Toolboxes, among others.

The main purpose of this page is to show how to use MATLAB on the University of Calgary ARC (Advanced Research Computing) cluster. It is presumed that you already have an account an ARC and have read the material on reserving resources and running jobs with the Slurm job management system.

Ways to run MATLAB - License considerations

At the University of Calgary, Information Technologies has purchased a MATLAB Total Academic Headcount license that allows installation and use of MATLAB on central clusters, such as ARC, as well as on personal workstations throughout the University. Potentially thousands of instances of MATLAB can be run simultaneously, each checking out a license from a central license server. An alternative is to compile MATLAB code into a standalone application. When such an application is run, it does not need to contact the server for a license. This allows researchers to run their calculations on compatible hardware, not necessarily at the University of Calgary, such as on Compute Canada clusters.

Running MATLAB on the ARC cluster

Although it is possible to run MATLAB interactively, the expectation is that most calculations with MATLAB will be completed by submitting a batch job script to the Slurm job scheduler with the sbatch command.

For the purposes of illustration, suppose the following serial MATLAB code, in a file cosplot.m, is to be run. (Parallel processing cases will be considered later). If your code does not already have them, add a function statement at the beginning and matching end statement at the end.

function cosplot()
% MATLAB file example to approximate a sawtooth
% with a truncated Fourier expansion.
nterms=15;
fourbypi=4.0/pi;
np=100;
y(1:np)=pi/2.0;
x(1:np)=linspace(-2.0*pi,2*pi,np);

for k=1:nterms
 twokm=2*k-1;
 y=y-fourbypi*cos(twokm*x)/twokm^2;
end

plot(x,y)
print -dpng matlab_test_plot.png
quit
end

In preparation to run the cosplot.m code, create a batch job script, cosplot.slurm of the form:

#!/bin/bash
#SBATCH --time=01:00:00     # Adjust this to match the walltime of your job (hh:mm:ss or d-hh:mm)
#SBATCH --nodes=1           # For serial code, always specify just one node.
#SBATCH --ntasks=1          # For serial code, always specify just one task.
#SBATCH --cpus-per-task=1   # For serial code, always specify just one CPU per task.
#SBATCH --mem=4000m          # Adjust to match total memory required, in MB.
#SBATCH --partition=pawson-bf,apophis-bf,razi-bf,lattice,parallel,cpu2013,cpu2019

# Specify the name of the main MATLAB function to be run
# This would normally the same as the MATLAB source code file name without a .m suffix)
MAIN="cosplot"

echo "Starting run at $(date)"
echo "Running on compute node $(hostname)"
echo "Running from directory $(pwd)"

# Choose a version of MATLAB by loading a module:
module load matlab/r2019b
echo "Using MATLAB version: $(which matlab)"

# Use -singleCompThread below for serial MATLAB code:
matlab -nodisplay -singleCompThread -r $MAIN

echo "Finished run at $(date)"

Note that the above script using the -r option on the matlab command line. However, the MathWorks web page on running MATLAB on Linux (external link) recommends using the -batch option instead, starting with Release 2019a of MATLAB.

To submit the job to be executed, run:

sbatch cosplot.slurm

Standalone Applications

Note: this section is still being converted from a different web site.

If you (or your institution) own a MATLAB compiler license running on a Linux machine with an architecture similar to a WestGrid compute node you may be able to create a standalone application from your code. Such an application may then be run as a serial (or in some cases, a single-node parallel) job on an appropriate WestGrid system without using any licenses at run time. Two cases in which this approach may be useful are when there is a need to run many copies of the code simultaneously and when you need access to machines with a large amount of memory (such as Breezy, which has 256 GB per compute node). Note that the degree to which explicit parallel processing commands, such as matlabpool (or parpool in recent MATLAB versions), are supported by the MATLAB compiler depends on the compiler version. Try to use the most recent compiler available.

Creating a standalone application

The MATLAB mcc command is used to compile source code (.m files) into a standalone excecutable. There are a couple of important considerations to keep in mind when creating an executable that can be run in the WestGrid batch-oriented environment. One is that there is no graphical display attached to your session and the other is that the number of threads used by the standalone application has to be controlled.

For example, with code mycode.m a source directory src, with the compiled files being written to a directory called deploy, the following mcc command line (at the Linux shell prompt) could be used:

mkdir deploy
cd src
mcc -R -nodisplay \
 -R -singleCompThread \
 -m -v -w enable \
 -d ../deploy \
 >mycode.m

Note the option -singleCompThread has been included in order to limit the executable to just one computational thread.

In the deploy directory, an executable mycode will be created along with a script run_mycode.sh. These two files should be copied to the target machine where the code is to be run.

Running a standalone application

After the standalone executable mycode and corresponding script run_mycode.sh have been transferred to a directory on the target system (such as Hermes or Breezy) on which they will be run, a batch job script needs to be created in the same directory. Here is an example batch job script.

#!/bin/bash
#PBS -S /bin/bash

# Choose the MCR directory according to the compiler version used
MCR=/global/software/matlab/mcr/v90

# If running on Grex, uncomment the following line to set MCR_CACHE_ROOT:
# module load mcr/mcr

echo "Running on host: `hostname`"
cd $PBS_O_WORKDIR
echo "Current working directory is `pwd`"

echo "Starting run at: `date`"
./run_mycode.sh $MCR > mycode_${PBS_JOBID}.out
echo "Job finished at: `date`"

The job is then submitted as any ordinary WestGrid batch job with the qsub command. See the Running Jobs page for more information. If the above script is called matlab.pbs, it could be submitted using:

qsub -l walltime=72:00:00,mem=6gb matlab.pbs

The specified walltime and total memory (mem) limits should be adjusted to appropriate values for your particular run.

An important part of the above script is the location of the MATLAB Compiler Runtime (MCR) directory. This directory contains files necessary for the standalone application to run. The version of the MCR files specified (v90 in the example, which corresponds to MATLAB R2015b) must match the version of MATLAB used to compile the code.

A complete list of the MATLAB distributions and the corresponding compiler and MCR versions is given on the Mathworks web site. The most recent versions are listed below, along with the corresponding installation directory to which the MCR variable should be set in the example script. Not all systems have all versions installed, so, check the [/support/software/matlab/mcr/software_versions MCR versions page] or /global/software/matlab/mcr directory on the system you are proposing to use. If the MCR version you need has not been installed please write to support@westgrid.ca to request that it be installed, or use a different version of MATLAB for your compilation.

MATLAB Release Compiler Version MCR Version MCR directory*
R2009b 4.11 7.11 /global/software/matlab/mcr/v711
R2009bSP1 4.12 7.12 Not installed
R2010a 4.13 7.13 /global/software/matlab/mcr/v713
R2010b 4.14 7.14 /global/software/matlab/mcr/v714
R2011a 4.15 7.15 /global/software/matlab/mcr/v715
R2011b 4.16 7.16 /global/software/matlab/mcr/v716
R2012a 4.17 7.17 /global/software/matlab/mcr/v717
R2012b 4.18 8.0 /global/software/matlab/mcr/v80
R2013a 4.18.1 8.1 /global/software/matlab/mcr/v81
R2013b 5.0 8.2 /global/software/matlab/mcr/v82
R2014a 5.1 8.3 /global/software/matlab/mcr/v83
R2014b 5.2 8.4 /global/software/matlab/mcr/v84
R2015a 6.0 8.5 /global/software/matlab/mcr/v85
R2015b 6.1 9.0 /global/software/matlab/mcr/v90
R2016a 6.2 9.0.1 /global/software/matlab/mcr/v901
R2016b 6.3 9.1 /global/software/matlab/mcr/v91

* Please note that the MCR directories on Bugaboo are located under /usr/local/matlab-mcr but links are available from /global/software/matlab/mcr so either location may be specified.

Passing arguments to a standalone application

In most programs there are a number of input data values that determine the specific calculation to be performed. In order to avoid recompiling your code for each change of these key input parameters, you can pass one or more arguments to the main function (as will be illustrated in the next section on reading parameters from a file). The arguments to be passed to the code are appended to the line in your batch job script that runs your compiled code. In the example given here, a single file name, params.in, is passed as an argument to the standalone application. The idea is that multiple parameters can be specified in this parameter file, rather than parsing multiple command-line arguments. Here is an example batch job script example.

Caution: the command line arguments are interpreted as text by the compiled program, even if they appear to be numbers. So, you may need to use a str2num function call to convert character strings to numerical values.

#!/bin/bash
#PBS -S /bin/bash

# Choose the MCR directory according to the compiler version used
MCR=/global/software/matlab/mcr/v90

echo "Running on host: `hostname`"
cd $PBS_O_WORKDIR
echo "Current working directory is `pwd`"

echo "Starting run at: `date`"
./run_mycode.sh $MCR params.in > mycode_${PBS_JOBID}.out
echo "Job finished at: `date`"

Reading parameters from a file

To complete the example in the previous section of passing a parameter file name, params.in, as an argument to a compiled MATLAB code, here we illustrate one possible way of structuring the parameter file and using the parameters that are read. The main program used in the example will call the MATLAB built-in function bench, which runs a series of numerical and graphical tests (although the graphical part will not be meaningful here). The bench function itself takes an argument, the number of repetitions of the set of tests to run.

For the parameter file format, we assume a fairly general form that is a subset of MATLAB syntax, in which a variable is assigned a value, followed by a semicolon and an optional comment. Extra lines not matching this format are generally ignored, although the parsing logic doesn't correctly handle all cases. In particular there should be no spaces between the variable name and the equal sign when assigning values. In the file, params.in, one could have:

# A comment line that will be ignored.
% Another line that will be ignored.
nreps=3; % Number of repetitions of the bench command to execute.
output_file=bench_output; % Output file name
b=42; % Another variable

Here is a program that reads the params.in file, using the nreps parameter to control the number of calculations to perform.

function bench_ppn_test(command_line_arg)

% Pass a single parameter file name as the command line argument
% Assume the file name does not contain any spaces.

% Run the MATLAB bench command the number of times, nreps, specified
% in the parameter file.

% 2014-01-21, 2014-02-06 DSP

message=['Command line string: ',command_line_arg];
disp(message)

% Parse the command line for the argument

params_file=sscanf(command_line_arg,'%s')

message=['Parameters file name: ',params_file];
disp(message)

% Assign a default value to the number of repetitions

nreps=1;

% Read the parameters file to see if the default nreps should be
% over-ridden.

fid = fopen(params_file);

line=fgetl(fid);
while ischar(line)
% Ignore lines that do not have an equal sign.
equal_index=strfind(line,'=');
if isempty(equal_index)
%disp('Skipping line without =:');
%disp(line);
else
% Take variable name to be the text to the left of the equal sign.
name=strtrim(sscanf(line(1:equal_index-1),'%s'));

% Find semicolon
semicolon_index=strfind(line,';');
if isempty(semicolon_index)
disp('Semicolon missing from line:');
disp(line);
else
%disp('Processing line:');
%disp(line);
value=line(equal_index+1:semicolon_index-1);

% Make sure that eval doesn't change the type of numeric variables.
% Note that if(eval( ['exist ' name])) can't be used directly.
% http://www.mathworks.com/help/matlab/matlab_prog/variables-in-nested-and-anonymous-functions.html

eval( ['exist ' name ';']);
if (ans)
disp('Assigning new value for variable:')
if (isa(eval(name), 'numeric'))
eval([name ' = str2num(value)'])
else
eval([name ' = value'])
end
else
disp('Initializing variable:')
eval([name ' = value'])
end % end test for name
end % end test for semicolon
end % end test for equal sign
line=fgetl(fid);
end % end while

fclose(fid);
disp('Finished reading parameters file');

message=['Setting number of bench repetitions to ',num2str(nreps)];
disp(message)

% Find the number of cores assigned to the job

coresenv=str2num(getenv('PBS_NUM_PPN'))
if(isempty(coresenv))
coresenv=1
end

% Set number of computational threads to coresenv
% Note Mathworks warns that the maxNumCompThreads function will
% be removed in future versions of MATLAB.

default_cores = maxNumCompThreads(coresenv)

% Calling bench with argument nreps read from the parameters file.

tic
bench(nreps)
toc

quit;