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I would like to know what tools, frameworks or libraries you would use, to spread your C++ application across multiple machines.
Im searching for a way to create a framework/environment, in which a master-server can hand many seperated Jobs to different seperated clients, who give back their result on a special Job. The results and jobs should be instances of "normal" C++ classes, so some sort of serialization would be nice.

It needs to be in C++ because i am from a scientific background and all frameworks i would like to use are written in it.

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Already asked but didn't get too far: stackoverflow.com/questions/257245/… –  Manuel Feb 13 '10 at 17:10

8 Answers 8

MPI is really cool! Info on Open MPI setup here, and there are some good tutorials here.

There's a simple example here: http://www.slac.stanford.edu/comp/unix/farm/mpi.html

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There is the boost::mpi library, also, that attempts to interface with the mpi libraries in a c++ manner. –  rcollyer Feb 13 '10 at 17:11

OpenMPI and/or OpenMP combinations work the best. We use OpenMPI on our supercomputing cluster to process large scientific jobs that require weeks of computing time.

As an additional note, MPI has C++ bindings from Boost::MPI which supports lovely stuff like serialization of STL types (valarray, vectors, strings, etc.) to allow easier message-passing on your part.

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+1 for Boost MPI. –  Manuel Feb 13 '10 at 18:00
    
+1 for Boost MPI. I would not recommend OpenMP though; I've tried it recently and it's very un-C++ (exceptions not allowed even across constructs that would not really have any problem, most compilers still don't support iterators at all and while the most recent standard does, it only supports random access iterators etc.). Basically OpenMP is good for numerics, but not much beyond (and I am not sure whether there is practical distributed rather than just multi-thread implementation anyway). –  Jan Hudec May 30 at 7:31

Combine the above two answers - MPI to communicate across clusters, OpenMP to parallelise for cores on clusters. If you have graphics cards, throw CUDA etc into the mix too. That's what our distributed clusters do at work.

Edit: too slow.

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sweet. what kind of jobs do you run on that? –  carlsborg Aug 1 '10 at 17:01
    
MPI will happily parallelise for multiple cores on each node, can optimize away copying the data if the memory is shared and it will be much easier than mixing two tools with different quirks and limitations. –  Jan Hudec May 30 at 7:36

Checkout www.zircomp.com. zNet is a C++ framework that is intended for multi-core and distributed core programming, supports streaming of build-in and custom types without any inheritance, transparently supports auto-discovery and load balancing and specifically oriented towards making application scalable on any hardware.

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codeproject.com has a nice tutorial on RCF, which simplifies thedefinition of remote methods, serialization of results and even network transport. You may want to give it a try.

But as it is C++, it doesn't give you the comfort of Java RMI (e.g. mobile code).

CORBA is also a possibility, but it's often "overkill" as it includes writing special interface definitions.

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If you want something at enterprise scale (and cost) you might take a look at DataSynapse GridServer or Platform Symphony, both of which are cross platform and used to great effect in academic and financial environments. I've developed GridServer installations, for example, that scale to more than 20k cores in datacentres spread around the world.

If you're specifically of a scientific bent -- while a researcher I worked a little with Condor and a lot with EGEE which support large numbers of scientists -- and it's possible that you might be able to piggyback on their resources, especially if there's someone at your institution that's already involved.

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I used FlowVR to develop a distributed 3D flood simulation application.

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You might investigate using CloudIQ Engine from Appistry. It allows you to distribute your C++ algorithms across any number of servers for processing. It also provides for process flow management for tasks. As part of the framework, failover is included, so if a task dies midstream (say someone pulls the plug on a machine), that task is automatically restarted on another node. And if that happens as part of a process flow, the whole flow does not have to be restarted, only the latest task. The framework automatically checkpoints your work at each step.

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