I'm trying to parallelize some Python code that uses NumPy extensively with the Python multiprocessing package. Unfortunately, as noted here, the default linear algebra libraries provided by Apple (Accelerate/Veclib) cannot be run in parallel. So I'm trying to link an alternate LAPACK/BLAS when installing NumPy, in the hopes that my code can then be parallelized without crashes!
I downloaded and compiled an alternative LAPACK/BLAS. Then, following instructions here, I did:
export LAPACK=/usr/local/Cellar/lapack/3.4.2/lib/liblapack.dylib export BLAS=/usr/local/Cellar/lapack/3.4.2/lib/libblas.dylib export ATLAS=None pip install numpy
which ran fine. However, if I run
in Python, I get
atlas_threads_info: NOT AVAILABLE blas_opt_info: extra_link_args = ['-Wl,-framework', '-Wl,Accelerate'] extra_compile_args = ['-msse3', '-I/System/Library/Frameworks/vecLib.framework/Headers'] define_macros = [('NO_ATLAS_INFO', 3)] atlas_blas_threads_info: NOT AVAILABLE openblas_info: NOT AVAILABLE lapack_opt_info: extra_link_args = ['-Wl,-framework', '-Wl,Accelerate'] extra_compile_args = ['-msse3'] define_macros = [('NO_ATLAS_INFO', 3)] atlas_info: NOT AVAILABLE lapack_mkl_info: NOT AVAILABLE blas_mkl_info: NOT AVAILABLE atlas_blas_info: NOT AVAILABLE mkl_info: NOT AVAILABLE
indicating NumPy is still using Apple's LAPACK/BLAS! And indeed crashes still abound. Could anyone help me?