adelie.matrix.lazy_cov#
- adelie.matrix.lazy_cov(mat: ndarray, *, copy: bool = False, n_threads: int = 1)[source]#
- Creates a lazy covariance matrix. - The lazy covariance matrix \(A\) uses the underlying matrix \(X\) given by - matto compute the values of \(A = X^\top X\) dynamically. It only computes rows of \(A\) on-the-fly that are needed when calling its member functions. This is useful in- adelie.solver.gaussian_cov()where the covariance method must be used but the dimensions of \(A\) are too large to construct the entire matrix as a dense matrix.- Note - This matrix only works for covariance method! - Parameters:
- mat(n, p) ndarray
- The data matrix from which to lazily compute the covariance. 
- copybool, optional
- If - True, a copy of- matis stored internally. Otherwise, a reference is stored instead. Default is- False.
- n_threadsint, optional
- Number of threads. Default is - 1.
 
- Returns:
- wrap
- Wrapper matrix object.