# extract upper/lower triangular part of a numpy matrix?

I have a matrix `A` and I want 2 matrices `U` and `L` such that `U` contains the upper triangular elements of A (all elements above and not including diagonal) and similarly for `L`(all elements below and not including diagonal). Is there a `numpy` method to do this?

e.g

``````A = array([[ 4.,  9., -3.],
[ 2.,  4., -2.],
[-2., -3.,  7.]])
U = array([[ 0.,  9., -3.],
[ 0.,  0., -2.],
[ 0.,  0.,  0.]])
L = array([[ 0.,  0.,  0.],
[ 2.,  0.,  0.],
[-2., -3.,  0.]])
``````
-

Try `numpy.triu` (triangle-upper) and `numpy.tril` (triangle-lower).
To the OP: It's often useful to know that they take a `k` argument, too, for which diagonal to extract above or below (which can be really useful when you need it!). Additionally, there are the functions `np.triu_indices`, `np.tril_indices`, `np.triu_indices_from`, and `np.tril_indices_from` to generate indices to index the upper or lower triangle with. (The "from" versions just take an input array instead of a shape) –  Joe Kington Jan 18 '12 at 5:17