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clsuter user manual : Noor use matlab at noor : MATLAB GUI LOAD FROM CLUSTER





1. First you have to have an account at noor. If not call ithelpdesk for that.
2. Then login as
3. Load matlab under your account

load matlab/R2012b
4.  Run matlab by following command

/opt/share/MATLAB/matlab.R2012b


Load matlab GUI
===========
module load matlab
bsub -XF -I -q rh6_interactive matlab -desktop




Following is the basic for using cluster noor:
Following is the basic for using any tool in noor cluster:

http://rcweb.kaust.edu.sa/KAUST/ResearchComputing/wiki/up2speed

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