Using an alternative BLAS for R has several advantages, see e.g. https://cran.r-project.org/web/packages/gcbd/vignettes/gcbd.pdf.
Microsoft R Open https://mran.revolutionanalytics.com/documents/rro/installation/#sysreq is using Intel's MKL instead of the default Reference BLAS to speed up calculations.
My question is:
What would be the exact steps to link Intel's MKL library **manually to R**'s most recent version on Windows (https://cran.r-project.org/bin/windows/base/)?
UPDATE 20-07-2016: Here is very detailed description on how to build a OpenBLAS-based Rblas.dll for 64-bit R for Windows for R ≥ 3.3.0: http://www.avrahamadler.com/r-tips/build-openblas-for-windows-r64/
just tried for R 3.5.1 installation. I installed Microsoft R Open alongside with the CRAN R and copy libiomp5md.dll and overwrite Rblas.dll, Rlapack.dll from MRO MKL counterparts to link to CRAN R on Windows (similar to another answer above but need to copy the file libiomp5md.dll as well). This worked out fine and the CRAN R runs as fast as MRO according to the version.compare package on Github (https://github.com/andrie/version.compare)
Easier solution than having to recompile R against the Intel MKL libraries on Windows is just to
options(repos=r)
withoptions(repos="https://cran.rstudio.com")
(or your favourite CRAN repository - you can also use "https://cran.revolutionanalytics.com", the MRO repository that has the latest daily builds of all packages) to make sure that it will install the latest CRAN packages as opposed to the outdated mran.microsoft.com mirror that has outdated package versions, frozen at the 15th of April 2019. Also comment out lines 153, 154 and 155 with a #Then restart RStudio to check that it works, with small SVD benchmark on my Intel Core i7-4700HQ 2.4GHz 4 core/8 thread laptop:
That same benchmark without Intel MKL installed ran at
so we get a >8 fold speed increase here!
Screenshot of Microsoft R Open 6.2 with Intel MKL up and running:
Alternatively, if you don't like copying files from MRO to your latest R installation, you can also copy the files from the free Intel MKL installation to your R installation to get multithreaded operation (as outlined in the other answer below):
Copy all the contents from inside these folders
to
Not sure what's up with Microsoft, and why they are no longer updatig MRO... And why they also dropped Mac OS X support...
I hope that, given that Intel MKL is free now, the R core people will sooner or later provide a precompiled R version that is compiled to use the Intel MKL libs, or possibly detect at run time if Intel MKL is installed, and if it is, use it. I think this is important, especially since the easy availability of a good multithreaded BLAS also determines how one would develop packages - e.g. if a good multithreaded BLAS would be available for all OSes one would veer towards using RcppArmadillo, which falls back on whatever BLAS one has installed (but on Windows would give drastically worse timings if Intel MKL is not installed), and if not RcppEigen would be the best option, as that has its own multithreaded matrix algebra, irrespective of the BLAS against which R is compiled......
On Ubuntu btw it's very easy to make R use Intel MKL, without having to recompile R, as outlined here: https://github.com/eddelbuettel/mkl4deb
PS Slight problem is that running setMKLthreads(4) will crash RStudio (that was already a problem in the official MRO 3.5.3 though) but it does work OK in the R console...
I was able to link R 3.6.0 with custom dlls you create using the builder. Basically you have to export the same symbols
Rblas.dll
andRlapack.dll
do. Start theCompiler 19.0 Update 4 for Intel 64 Visual Studio 2017 environment
command prompt:Get the symbols:
Edit both files deleting the "header" and "footer" and have all the lines with the symbol names (ex.:
248 F7 00138CE0 dgeevx_
) be likedgeevx_
(only with the names). Copy thebuilder
directory to somewhere in your pc and inside it run:Edit
undefined_symbols_list
keep only the names in each line and create a new list with the differenceWith
dumpbin /dependents Rlapack.dll
, you can see that they depend onlibiomp5md.dll
, which you can find inside theredist
folder in mkl installation.Method 2
This method uses more disk space, but it's simpler. Copy all the contents from inside these folders
to
Inside the destination folder, create 2 copies of
mkl_rt.dll
and rename one of themRblas.dll
and the otherRlapack.dll
replacing the originals and also keepingmkl_rt.dll
.