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Has anyone ever done a straight up apple to apple comparison between:

  1. A C++ application calling an algorithm done in a R functions using RInside
  2. A C++ application calling the equivelant algorithm but using a one of the math libraries like GSL, LAPACK, or CBLAS?

I am trying to get benchmarks which would be faster. I am also interested in what kind of parallalzation/multithreading designs that might make the calculate faster within C++?

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up vote 1 down vote accepted

Aside from startup costs for initializing R which you only get in case 1) by your study design, the results should be identical as R itself uses the exactly same BLAS AND LAPACK libraries if built correctly.

I have a to-be updated package / vignette which proposes a benchmarking framework for exactly these questions as the issue is so easy to misunderstand -- see the CRAN page for gcbd as well as the corresponding pdf vignette.

If you build R differently (eg statically, or with its own BLAS / LAPACK sources), then you are getting different results but you are also not making an apples-to-apples comparison.

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Hey Dirk, what is the proper way as you suggest to ensure to get best performance with RInside? – heavy rocker dude Oct 26 '12 at 15:19
    
Install a fast BLAS / LAPACK library. But "usually" your overall performance will not be bounded by linear algebra performance. Also consider (Rcpp)Eigen as an alternative to BLAS / LAPACK. – Dirk Eddelbuettel Oct 26 '12 at 16:40

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