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In many applications today, there is a need to develop programs or tools that perform very heavy calculations or DB activity that can't be done in real time from scratch. The problem is that the requirements for these programs is that they expect results in real time. Examples of this range from analytics, generating reports, heavy image processing, etc. Sometimes it is just dealing with huge data sets, but many times it is just heavy processing on a small/mid-sized data set.

What are some resources to learn practical architectural solutions to these types of problems?

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Google and Amazon both have articles and papers that describe this problem and their solutions. For boxed solutions Amazon has a lot of resources on it's MapReduce (although this isn't realtime) that could give you a better path. – sean Dec 13 '12 at 16:56
Yes, MapReduce could be a good solution for problems that lend themselves to that approach. Things like linear algebra aren't as amenable to MapReduce; they need MPI on top of it. – duffymo Dec 13 '12 at 16:58
1. MapReduce, at least in Hadoop and MongoDB, is never recommended to use synchronously, but rather to prepare some pre-calculated data - which is what TO doesn't want. 2. Depends on the specific nature and amount of processing and data processed. One could mention GPGPU and so. – Victor Sergienko Dec 14 '12 at 10:13

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