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so here is my problem:

I have several different configuarion servers. I have different calculations (jobs); I can predict how long approximately each job will take to be caclulated. Also, I have priorities. My question is how to keep all machines loaded 99-100% and schedule the jobs in the best way.

Each machine can do several calculations at a time. Jobs are pushed to the machine. The central machine knows the current load of each machine. Also, I would like to to assign some kind of machine learning here, because I will know statistics of each job (started, finished, cpu load etc.).

How can I distribute jobs (calculations) in the best possible way, keeping in mind the priorities?

Any suggestions, ideas, or algorithms?

FYI: My platform .NET.

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What exatly here is .NET related? I see nothing, from an algo selection point, that actually is dependant in any way on the use of .NET. Algorythms - per definition - are langauge independant. –  TomTom Jun 15 '10 at 6:44
    
It does not matter if algo is in .NET or no :) I just mentioned that I'm working with .NET so maybe there are some functionalities already in the framework or so :) –  Lukas Šalkauskas Jun 15 '10 at 8:07
    
@Lukas I'm faced with a similar problem at the moment. Did you ever find a good solution? –  David Lively Aug 26 '11 at 15:37

4 Answers 4

  1. Look at Dryad linq. It already in academic release and may be useful.
  2. Win HPC server - enterprise solution for distributed computing from Microsoft.
  3. Some code samples which can help to build load balancing by analyzing performance counters.
  4. Microsoft has StockTrader sample application (with sources), which is example of distributable SOA with hand-written RoundRobin load balancing.
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As an alternative approach, you could use the peak performance ratio estimates of each machine to schedule jobs. This can be very effective only if you are considering CPU runtime performance of a load-balanced system. Issues concerning I/O, size of cluster, network performance, types of memory model etc. are neglected with this approach. Take a look at http://dx.doi.org/10.1145/1513895.1513901

A proposal for more accurate (near load balanced job distribution) approach will be algorithm - computer architecture dependent one. In this case, higher priority job may be scheduled to the best server that meets its demands - but you need to determine first an optimal mapping of jobs to server. You may apply also some methods of OS scheduling algorithms on multiprocessors (not uniprocessors). Hope you'll find this helpful.

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Looks like this has very little to do with .NET.

But think of your machines as 'worker threads', make a 'pool' of available machines ordered on available CPU (or other important resource), then use your knowledge of each task to push each job to the best fitted machine.

If you know all the jobs upfront, you could probably use a 'best fit' algorithm to schedule them in the correct order on the correct machines. You could also look at 'cutting stock' algorithms; http://en.wikipedia.org/wiki/Cutting_stock_problem ...

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Appliedalgo.com - it's done why re-invent the wheel when you can buy it for usd500, scheduling/execution tracking/load balancing everything –  Swab.Jat Dec 10 '13 at 16:50
    
It could very well be cheaper to buy it, depending on funding. But note that just that package is "64bit Windows 7 or above only" (according to their website). –  Jørn Jensen Dec 18 '13 at 11:49
    
It can load balance jobs even to Java, but only on 64 bit Windows. –  Swab.Jat Jan 15 '14 at 23:21

Microsoft recently published a paper on their quincy scheduler. If you are simply optimizing for CPU utilization then a very simple solver can find the global optimum. If you need optimization across more axes then obviously the problem space will be more complicated.

How big is your cluster? How do you deal with optimizing around failure cases? Do they matter? Is there IO? Does data have disk affinity? Is there more than one place to run a piece of a job? All things to consider.

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