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?
- compiler: ifort 14.0
- 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