I would like to know if there is a better way of taking advantage of python numpy array broadcasting to avoid the use of the two inner
for loops of the following minimal example :
import numpy as np # Parameters n_t = 10 n_ddl = 3 # Typical dummy M n_ddl-diagonal matrix x = np.arange(1,31) x1 = np.arange(1,21) x2 = np.arange(1,11) M = np.diag(x) + np.diag(x1, 10) + np.diag(x1, -10) + np.diag(x2, 20) + np.diag(x2, -20) # First loop remains for i in range(0,n_t): M_i = np.zeros((n_ddl,n_ddl)) # Optimize the following to get M_i for j in range(0,n_ddl,1): for k in range(0,n_ddl,1): M_i[j,k] = M[j*n_t+i,k*n_t+i]
Any suggestions to improve syntax or reduce computation time would be greatly appreciated. Thanks.
# Answer suggested using slicing # First loop remains for i in range(0,n_t): M_i_slicing = M[i:n_ddl*n_t:n_t,i:n_ddl*n_t:n_t]