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Until today, I was convinced that for large problems, one need to resort to C++, C or Fortran. However, in a recent benchmark, I got the result for a %*% t(a), where a is a lower triangular matrix of 18000x18000 of class dgCMatrix, in 5 seconds using the r-evolution package and multi-threading.

However, even when using Intel ifort compiler, parallel computing and BLAS routines built into the MKL library, the Fortran code always need about a minute for the same problem. Does anyone know what the trick is, and how to make use of it in pure languages like C or Fortran?

Specifications

  • compiler: ifort 14.0
  • mkl:
    • version 11.1
    • in the module header of the fortran code: use mkl95_blas, only trmm
    • the compiler options: -i8 -I$(MKLROOT)/include/intel64/ilp64 -I$(MKLROOT)/include
    • the linker options: $(MKLROOT)/lib/intel64/libmkl_blas95_ilp64.a \ -Wl,--start-group $(MKLROOT)/lib/intel64/libmkl_intel_ilp64.a \ $(MKLROOT)/lib/intel64/libmkl_intel_thread.a \ $(MKLROOT)/lib/intel64/libmkl_core.a \ -Wl,--end-group -liomp5 -lpthread -lm
    • in addition in both, compling and linking: -i-static -O3 -parallel
  • local BLAS
    • f77 BLAS library
    • compiled with -O3 -parallel
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With differences like that, perhaps you have issues with cache collisions. –  paddy Sep 19 '13 at 5:10
2  
dgCMatrix is for sparse matrices, BLAS is for dense matrices. No wonder there is some speed difference... And anyway, dgCMatrix is written in C, so your previous assumption is not contradicted. –  Jean-Claude Arbaut Sep 19 '13 at 5:18
1  
Ok, I am closer to the solution. I included a external blas library compiled on my computer. Compared to the benmark of the mkl (1 minute) I got the result from the dtrmm function in four seconds, which is slightly faster than R. The world has turned upside up again. Cheers and thanks –  user1407220 Sep 19 '13 at 7:19
2  
OT instead of a %*% t(a) recommended way is tcrossprod(a) –  Marek Sep 19 '13 at 8:01
4  
@user1407220. Now that you have better results with dtrmm, it would be nice to give a clue about what you did (as asked by steabert), in order to understand why your previous program was so slow. –  Jean-Claude Arbaut Sep 19 '13 at 8:22
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