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I'm trying to compute the following:

Y = Y0 - ( Un.(A*Y0) + Vn.(Y0*Z) )*dt

in the fastest/most efficient manner possible where Y0, Un, Vn, A, and Z are matrices dimensioned on the order of 300 X 300, "." is the matrix dot product, and "*" represents matrix multiplication.

My questions are:

  1. Is computing the computationally independent sub-matrices A2 = A*Y0 and Z2 = Y0*Z, then Un2 = Un.*A2 and Vn2 = Vn.*Z2, in parallel faster than computing them serially, such that Y = Y0 - (Un2 + Vn2)*dt? If so, what is a good example of how this parallel computation would be done?

  2. Is there some other better/recommended approach (e.g., using ATLAS)?

The language is C++ and this is to be run on a Linux or Windows platform with multi-core (at least dual) processors. I'm currently using BOOST uBLAS as the BLAS package.

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3 Answers 3

up vote 0 down vote accepted

Your problem is very small. You should try using something like Eigen (or as you mentioned ATLAS). I prefer Eigen since it is fast to use.

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OpenMP should be a quick and easy way of seeing if the parallel route would be faster.

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I agree with @genpfault, on my experiments running several loops I'm using OpenMP and it is very useful and easier to use! Here is a link of chryswoods' blog, OpenMPs basics and it is one of the easiest tutorials I have seen.

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