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We do stats and such on large sets of data. Right now it is all done on one machine. We're studying the feasibility of moving to a map-reduce paradigm where we decompose the data into subsets, run some operations on that, then combine the results.

Is there any sort of mathematical test that can be applied to a set of operations to determine if the data they operate on can be decomposed?

Or maybe a list somewhere saying what can and cannot be decomposed?

For instance, I didn't think there was a way to decompose standard deviation, but there is...

edit: added tags

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3 Answers 3

Variance, as well as the mean can be calculated online (in a single pass), see wikipedia. There's also a parallel algorithm.

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Parallel computing is best suited to problem which are "embarrassingly parallel" i.e., there is no dependency between any two tasks. Please check out http://en.wikipedia.org/wiki/Embarrassingly_parallel

Also, In cases where the operations are commutative or associative, MapReduce programs can easily be optimized for better performance.

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Take a look at this paper: http://www.janinebennett.org/index_files/ParallelStatisticsAlgorithms.pdf . They have algorithms for many common statistical problems, and there is open source code available.

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