I have a code in which I need to handle some big numpy arrays. For example I have a 3D array
A and I need to construct another 3d array
B using the elements of
A. However all the elements of
B are independent of each other. Example:
for i in np.arange(Nx): for j in np.arange(Ny): for k in np.arange(Nz): B[i][j][k] = A[i+1][j][k]*np.sqrt(A[i][j-1][k-1])
So it will speed up immensely if I can construct the
B array parallely. What is the simplest way to do this in python?
I also have similar matrix operations like normalizing each row of a 2D array. Example
for i in np.arange(Nx): f[i,:] = f[i,:]/np.linalg.norm(f[i,:])
This will also speed up if it runs parallely for each row. How can it be done?