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In R I am doing the following:

L = ... # some sparse matrix L
chol_factor = Matrix::chol(L)

b = # some vector
z = Matrix::solve(chol_factor, b)

where solve will be smart about efficiently calculating things via the Cholesky factor. I have been using scipy.sparse for most of my code, but there doesn't seem to be a Cholesky decomposition implementation available, nor a way to efficiently solve using the factor. Is there an equivalent way to do this in python?

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1 Answer 1

up vote 1 down vote accepted

This can be done via scipy's sparse LU decomposition.

import numpy as np
from scipy.sparse import linalg as sla

L = # some sparse matrix 
lu = sla.splu(L)

b = # some vector
z = lu.solve(b)
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