TL;DR how to link ATLAS/MKL to existing Numpy without rebuilding.
I have used Numpy to calculate with the large matrix and I found that it is very slow because Numpy only use 1 core to do calculation. After doing a lot of search I figure that my Numpy does not link to some optimized library like ATLAS/MKL. Here is my config of numpy:
>>>import numpy as np >>>np.__config__.show() blas_info: libraries = ['blas'] library_dirs = ['/usr/lib'] language = f77 lapack_info: libraries = ['lapack'] library_dirs = ['/usr/lib'] language = f77 atlas_threads_info: NOT AVAILABLE blas_opt_info: libraries = ['blas'] library_dirs = ['/usr/lib'] language = f77 define_macros = [('NO_ATLAS_INFO', 1)] atlas_blas_threads_info: NOT AVAILABLE openblas_info: NOT AVAILABLE lapack_opt_info: libraries = ['lapack', 'blas'] library_dirs = ['/usr/lib'] language = f77 define_macros = [('NO_ATLAS_INFO', 1)] atlas_info: NOT AVAILABLE lapack_mkl_info: NOT AVAILABLE blas_mkl_info: NOT AVAILABLE atlas_blas_info: NOT AVAILABLE mkl_info: NOT AVAILABLE
For this reason, I want to link ATLAS/MKL to Numpy. However, my Numpy is installed from PIP so I don't want to install manually because I want to use the latest version. I have done some search but they are only for building from scratch. For this reason, my question are:
- Are there any way to link ATLAS/MKL to Numpy without rebuilding again?
- I have found that the config info is saved in _config_.py in the installed folder of Numpy. So will modifying it solve my problem? If yes, would you please show me how?