Visible to Intel only — GUID: GUID-C769701C-2F95-4F2B-9B44-7209FB7E6929
Visible to Intel only — GUID: GUID-C769701C-2F95-4F2B-9B44-7209FB7E6929
mkl_sparse_?_lu_smoother
Computes an action of a preconditioner which corresponds to the approximate matrix decomposition for the system (see description below).
Syntax
sparse_status_t mkl_sparse_s_lu_smoother (const sparse_operation_t op, const sparse_matrix_t A, const struct matrix descr descr, const float *diag, const float *approx_diag_inverse, float *x, const float *b);
sparse_status_t mkl_sparse_d_lu_smoother (const sparse_operation_t op, const sparse_matrix_t A, const struct matrix descr descr, const double *diag, const double *approx_diag_inverse, double *x, const double *b);
sparse_status_t mkl_sparse_c_lu_smoother (const sparse_operation_t op, const sparse_matrix_t A, const struct matrix descr descr, const MKL_COMPLEX8 *diag, const MKL_COMPLEX8 *approx_diag_inverse, MKL_COMPLEX8 *x, const MKL_COMPLEX8 *b);
sparse_status_t mkl_sparse_z_lu_smoother (const sparse_operation_t op, const sparse_matrix_t A, const struct matrix descr descr, const MKL_COMPLEX16 *diag, const MKL_COMPLEX16 *approx_diag_inverse, MKL_COMPLEX16 *x, const MKL_COMPLEX16 *b);
Include Files
- mkl_spblas.h
Description
This routine computes an update for an iterative solution x of the system Ax=b by means of applying one iteration of an approximate preconditioner which is based on the following approximation:
, where E is an approximate inverse of the diagonal (using exact inverse will result in Gauss-Seidel preconditioner), L and U are lower/upper triangular parts of A, D is the diagonal (block diagonal in case of BSR format) of A.
The mkl_sparse_?_lu_smoother routine performs these operations:
r = b - A*x /* 1. Computes the residual */ (L + D)*E*(U + D)*dx = r /* 2. Finds the update dx by solving the system */ y = x + dx /* 3. Performs an update */
This is also equal to the Symmetric Gauss-Seidel operation in the case of a CSR format and 1x1 diagonal blocks:
(L + D)*x^1 = b - U*x /* Lower solve for intermediate x^1 */ (U + D)*x = b - L*x^1 /* Upper solve */
This routine is supported only for non-transpose operation, real data types, and CSR/BSR sparse formats. In a BSR format, both diagonal values and approximate diagonal inverse arrays should be passed explicitly. For CSR format, diagonal values should be passed explicitly.
Input Parameters
- operation
-
Specifies the operation performed on matrix A.
SPARSE_OPERATION_NON_TRANSPOSE, op(A) := A
NOTE:Transpose and conjugate transpose (SPARSE_OPERATION_TRANSPOSE and SPARSE_OPERATION_CONJUGATE_TRANSPOSE) are not supported.
Non-transpose, op(A)= A.
- A
-
Handle which contains the sparse matrix A.
- descr
-
Structure specifying sparse matrix properties.
sparse_matrix_type_ttype - Specifies the type of a sparse matrix:
SPARSE_MATRIX_TYPE_GENERAL
The matrix is processed as is.
SPARSE_MATRIX_TYPE_SYMMETRIC
The matrix is symmetric (only the requested triangle is processed).
SPARSE_MATRIX_TYPE_HERMITIAN
The matrix is Hermitian (only the requested triangle is processed).
SPARSE_MATRIX_TYPE_TRIANGULAR
The matrix is triangular (only the requested triangle is processed).
SPARSE_MATRIX_TYPE_DIAGONAL
The matrix is diagonal (only diagonal elements are processed).
SPARSE_MATRIX_TYPE_BLOCK_TRIANGULAR
The matrix is block-triangular (only the requested triangle is processed). Applies to BSR format only.
SPARSE_MATRIX_TYPE_BLOCK_DIAGONAL
The matrix is block-diagonal (only diagonal blocks are processed). Applies to BSR format only.
sparse_fill_mode_tmode - Specifies the triangular matrix part for symmetric, Hermitian, triangular, and block-triangular matrices:
SPARSE_FILL_MODE_LOWER
The lower triangular matrix part is processed.
SPARSE_FILL_MODE_UPPER
The upper triangular matrix part is processed.
sparse_diag_type_tdiag - Specifies the diagonal type for non-general matrices:
SPARSE_DIAG_NON_UNIT
Diagonal elements might not be equal to one.
SPARSE_DIAG_UNIT
Diagonal elements are equal to one.
NOTE:Only SPARSE_MATRIX_TYPE_GENERAL is supported.
- diag
-
Array of size at least m, where m is the number of rows (or nrows * block_size * block_size in case of BSR format) of matrix A.
The array diag must contain the diagonal values of matrix A.
- approx_diag_inverse
-
Array of size at least m, where m is the number of rows (or the number of rows * block_size * block_size in case of BSR format) of matrix A.
The array approx_diag_inverse will be used as E, approximate inverse of the diagonal of the matrix A.
- x
-
Array of size at least k, where k is the number of columns (or columns * block_size in case of BSR format) of matrix A.
On entry, the array x must contain the input vector.
- b
-
Array of size at least m, where m is the number of rows ( or rows * block_size in case of BSR format ) of matrix A. The array b must contain the values of the right-hand side of the system.
Output Parameters
- x
-
Overwritten by the computed vector y.
Return Values
The function returns a value indicating whether the operation was successful or not, and why.
SPARSE_STATUS_SUCCESS |
The operation was successful. |
SPARSE_STATUS_NOT_INITIALIZED |
The routine encountered an empty handle or matrix array. |
SPARSE_STATUS_ALLOC_FAILED |
Internal memory allocation failed. |
SPARSE_STATUS_INVALID_VALUE |
The input parameters contain an invalid value. |
SPARSE_STATUS_EXECUTION_FAILED |
Execution failed. |
SPARSE_STATUS_INTERNAL_ERROR |
An error in algorithm implementation occurred. |
SPARSE_STATUS_NOT_SUPPORTED |
The requested operation is not supported. |