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In MPI, each rank has a unique address space and communication between them happens via message passing. I want to know how MPI works in a multicore machine which has a shared memory. If the ranks are on two different machines with no shared memory, then MPI has to use messages for communication. But if ranks are on the same physical machine (but still each rank has a different address space), will the MPI calls take advantage of the shared memory. Say for example I'm issuing an ALLREDUCE call. I have two machines M1 & M2 each with 2 cores. Rank R1, R2 are on core1 & core2 of machine M1 and R3&R4 are on C1&C2 of machine M2. How would the ALLREDUCE happen. Will there be more than 1 message transmitted? Ideally I would expect R1&R2 to do a reduce using the shared memory available to them (similarly R3&R4) followed by message exchange between M1 & M2. Is there any documentation where I can read about the implementation details of the collective operations in MPI?

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Implementation of collective operations differs from one MPI library to another. The best place to look is the source code of the concrete library that you are using/want to use.

I can tell you about how Open MPI implements collectives. Open MPI is composed of various layers at which different components (modules) live. There is the coll framework for collective operations that uses the lower-level btl framework to transfer messages. There are many different algorithms implemented in the coll framework as well as many different modules that implement those algorithms. A scoring mechanism is used to select what the library thinks is the best module for your case, but this can be easiliy overriden with MCA parameters. The most prominent one is the tuned module that is well tested and scales well on all kinds of interconnects, from shared memory to InfiniBand. The tuned module is quite oblivious as to where processes are located. It just uses the btl framework to send messages and btl takes care to use shared memory or network operations. Some of the algorithms in the tuned module are hierarchical and with proper tuning of the parameters (OMPI's great flexibility comes from the fact that many internal MCA parameters can changed without recompiling) those algorithms can be made to match the actual hierarchy of the cluster. There is another coll module called hierarch that tries its best to gather as much physical topology information as possible and to use it in order to optimise collective communications.

Unfortunately virtually all MPI implementations are written in C with very thin layers on top to provide Fortran interfaces. So I hope you have above average knowledge of C if you'd like to dive into this topic. There are also many research papers on optimisation of collective operations. Some of them are available for free, others are available through academic subscriptions.

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From what you said, i guess MPI indeed takes advantage of the shared memory. Good to know that the framework indeed takes into consideration the properties of the interconnect. I'm not a proficient C or Fortran programmer. Actually I'm more interested in the theory behind the optimizations in the collective operations. Could you please direct me to some research papers. –  arunmoezhi Jul 26 '12 at 9:09
    
See for example "Scaling Alltoall Collective on Multi-core Systems" by R. Kumar, A. Mamidala, and D.K. Panda and "Optimization of Collective Communication Operations in MPICH" by R. Thakur, R. Rabenseifner, and W. Gropp. –  Hristo Iliev Jul 26 '12 at 9:28

As this is an implementation detail of the MPI implementation you're using, I guess it's best to ask on the mailing list of whichever MPI implementation you're using. Alternatively, searching for "mpi collective" on google scholar or some other site for searching scientific papers gives you a lot of hits.

But yeah, a reasonably implementation would be to first do the reduction within a node using shared memory, in order to reduce the number of network messages.

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thanks. Google scholar indeed helped. Will start reading some of the papers. –  arunmoezhi Jul 26 '12 at 9:16

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