This is an extension of the question posed here (quoted below)
I have a matrix (2d numpy ndarray, to be precise):
A = np.array([[4, 0, 0], [1, 2, 3], [0, 0, 5]])
And I want to roll each row of A independently, according to roll values in another array:
r = np.array([2, 0, -1])
That is, I want to do this:
print np.array([np.roll(row, x) for row,x in zip(A, r)]) [[0 0 4] [1 2 3] [0 5 0]]
Is there a way to do this efficiently? Perhaps using fancy indexing tricks?
The accepted solution was:
rows, column_indices = np.ogrid[:A.shape, :A.shape] # Use always a negative shift, so that column_indices are valid. # (could also use module operation) r[r < 0] += A.shape column_indices = column_indices - r[:,np.newaxis] result = A[rows, column_indices]
I would basically like to do the same thing, except when an index gets rolled "past" the end of the row, I would like the other side of the row to be padded with a NaN, rather than the value move to the "front" of the row in a periodic fashion.
np.pad somehow? But I can't figure out how to get that to pad different rows by different amounts.