I have a simple matrix multiplication code in python (numpy)
import numpy as np import time a = np.random.random((70000,3000)); b = np.random.random((3000,100)); t1=time.time() c = np.dot(a,b); t2=time.time() print 'Time passed is %2.2f seconds' %(t2-t1
It needs about 16 seconds to complete the multiplication (c = np.dot(a,b);) on one core. However when I run the same multiplication on Matab, it needs about 1 second on (6 cores) to complete the multiplication.
So, Why Matlab is 2.6 times faster than numpy for matrix multiplication? (The performance per core is important for me)
UPDATE I have tried the same thing this time using Eigen. And its performance is slightly better than Matlab. Eigen uses the same Blas implementation as Numpy uses. So the Blas implementation and not be the source of the drawback in the performance.
To make sure that the installed numpy used BLAS, I np.show_config()
enter code here blas_info: libraries = ['blas'] library_dirs = ['/usr/lib64'] language = f77 lapack_info: libraries = ['lapack'] library_dirs = ['/usr/lib64'] language = f77 atlas_threads_info: NOT AVAILABLE blas_opt_info: libraries = ['blas'] library_dirs = ['/usr/lib64'] language = f77 define_macros = [('NO_ATLAS_INFO', 1)] atlas_blas_threads_info: NOT AVAILABLE lapack_opt_info: libraries = ['lapack', 'blas'] library_dirs = ['/usr/lib64'] 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