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Hopefully this isn't a repeat question but I'm having an issue balancing a workload on my local cluster. This is my current MPI hostfile:

#The Hostfile for Open MPI
#Master Node, 'slots=2' is used because we are running an 2-core machine
localhost slots=2

#Slave nodes, 8-core machines as well
slave1-ip slots=2
slave2-ip slots=2
slave3-ip slots=2

When I run mpirun -np 4 --hostfile my_hostfile program, it will prefer to do all of the calculations on the local host first.

For example, in my nqueens code, the distribution of calculations at the end are:

Node 1 computed load of 1963
Node 2 computed load of 0
Node 3 computed load of 0
Node 4 computed load of 1

However, when I modify my hostfile so that the line localhost slots=2 to localhost slots=1, all of the calculations are run on the slave nodes and I get a much more even distribution:

Node 1 computed load of 497
Node 2 computed load of 486
Node 3 computed load of 493
Node 4 computed load of 488

Is there a way to load balance on the master thread so that it will spread work over both the master and slave nodes when I have localhost slots=2? Is there some sort of config file that will specify this? I have tried the --loadbalance flag and that did nothing.

P.S. I followed this tutorial when setting up my cluster:

share|improve this question
This probably depends on the used program. Does it dynamically distribute work on the available MPI ranks? It could just mean, that the time needed to offload the work to a different rank is relatively large compared to the amount of time each load takes to compute. This could lead to a situation where the localhost repeatedly assigns itself new load, as it has already finished its previous work and never reaches higher ranks. – Nils_M Jun 24 '14 at 13:58

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