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According to MKL link line advisor, you don't need to use -fopenmp with the single dynamic libray -lmkl_rt to enable multi-threading. As your gcc is old, this may be a problem. You could try to use traditional dynamic linking and compare the following settings to see whose problem it is. Threaded MKL + GNU OpenMP Link options: -Wl,--no-as-needed -L${...


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First you need to make sure that MKL is correctly installed and configured as shown here. https://software.intel.com/en-us/get-started-with-parallel-studio-xe-for-linux A permanent way is to put the following line in your .bashrc or .profile source /opt/intel/parallel_studio_xe_2016.<##>.<###>/psxevars.sh intel64 You could use the following ...


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Numpy and Scipy are popular packages. You probably can find them in Ubuntu repository. So it's better to install them with apt-get but not pip. If you want MKL support, I would suggest anaconda - a full Python distribution with MKL and other acceleration libraries integrated such as CUDA. This will make your life easier. https://www.continuum.io/...


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oopcode's answer in Python, ImportError: undefined symbol: g_utf8_skip works. The situation improved with the following. importing the c extension into python has no error. Calling the c extension from python give the following error: Intel MKL FATAL ERROR: Cannot load libmkl_mc.so or libmkl_def.so. I remember when I manually compiled numpy with mkl, the ...


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It seems some of the python distributions (e.g., anaconda) will respond to the environmental variables, while others (CentOS 7 default) not. Never dig into it further.


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You can use any library as long as you load it to the nodes. Use --packages with the libraries you would like to use


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Most scientific codes that rely on BLAS/LAPACK calls are implementation-agnostic. They usually require that the library is just linked as appropriate. You've commented that the function prototypes are the same across implementations. This allows you to just have the prototypes in some myblas.h and mylapack.h headers then link whichever library you'd like ...


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OSX clang does not support openmp, which is required by multi-thread Eigen and MKL. According to IntelĀ® Math Kernel Library Link Line Advisor, MKL does not support TBB threading with clang. But it seems to support Intel OpenMP library with the extra link option -liomp5. You could try if it works. If not, you may have to use another compiler such as gcc. ...


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Existing performance libraries such as MKL always use float/double as the data type. Comparing to converting your A to a float CSR and then calling .dot() or some MKL routines, you may find writing your own bit-mat-mul code is faster. You don't even need the multiply operation. It is only counting the bits. Edit After knowing your context on the queation, ...


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Compiling in Debug/Release - impact on code Technically, "Debug" and "Release" builds of a library are builds with different compiler switches and preprocessor macros. It's not fundamentally different from, say, compiling a library with optional features. compiler switches generally do not affect how code works at high level. There are slight differences ...



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