Is it possible to construct a
numpy matrix from a function? In this case specifically the function is the absolute difference of two vectors:
S[i,j] = abs(A[i] - B[j]). A minimal working example that uses regular python:
import numpy as np A = np.array([1,3,6]) B = np.array([2,4,6]) S = np.zeros((3,3)) for i,x in enumerate(A): for j,y in enumerate(B): S[i,j] = abs(x-y)
[[ 1. 3. 5.] [ 1. 1. 3.] [ 4. 2. 0.]]
It would be nice to have a construction that looks something like:
def build_matrix(shape, input_function, *args)
where I can pass an input function with it's arguments and retain the speed advantage of numpy.