I am trying to implement distributed genetic algorithm (island model) using MPI. All the nodes will repeatedly generate new populations and will exchange best individuals after every k iterations.I wish to make the exchange random such that any process can send a message to any other process. So after every k iterations, each process will send a message to a randomly selected process. However, I am not sure how to implement this with MPI. From this post -Sending data to randomly selected hosts by using MPICH2 I got the idea that asynchronous communication will be helpful but I am not sure how exactly.
Random communication patterns are difficult to implement in MPI. MPI is based on all ranks having a deterministic set of communication patterns.
For a point to point solution, each rank will call MPI_Irecv on MPI_ANY_SOURCE. When the data exchange happens, each rank can call MPI_Send to the specific target rank. The target rank will need to call MPI_Irecv again to prepare for the next iteration. When the job is complete, any unused MPI_Irecv calls can be MPI_Cancel'd.
For a collective approach, each rank will call MPI_Alltoall or MPI_Alltoallv (if the amount of data exchanged varies). Each rank will only populate data to the single rank that is randomly selected to receive data. This kind of "sparse" data exchange is farily common with MPI_Alltoall. The collective can be expensive, but it does allow for hard synchronization every k iterations, and avoids the cleanup of MPI_Cancel.