Visible to Intel only — GUID: GUID-DBCBE227-8EB6-49B9-9EDA-53F256911D15
Visible to Intel only — GUID: GUID-DBCBE227-8EB6-49B9-9EDA-53F256911D15
mkl_sparse_?_dotmv
Computes a sparse matrix-vector product followed by a dot product.
Syntax
sparse_status_t mkl_sparse_s_dotmv (const sparse_operation_t operation, const float alpha, const sparse_matrix_t A, const struct matrix_descr descr, const float *x, const float beta, float *y, float *d);
sparse_status_t mkl_sparse_d_dotmv (const sparse_operation_t operation, const double alpha, const sparse_matrix_t A, const struct matrix_descr descr, const double *x, const double beta, double *y, double *d);
sparse_status_t mkl_sparse_c_dotmv (const sparse_operation_t operation, const MKL_Complex8 alpha, const sparse_matrix_t A, const struct matrix_descr descr, const MKL_Complex8 *x, const MKL_Complex8 beta, MKL_Complex8 *y, MKL_Complex8 *d);
sparse_status_t mkl_sparse_z_dotmv (const sparse_operation_t operation, const MKL_Complex16 alpha, const sparse_matrix_t A, const struct matrix_descr descr, const MKL_Complex16 *x, const MKL_Complex16 beta, MKL_Complex16 *y, MKL_Complex16 *d);
Include Files
- mkl_spblas.h
Description
The mkl_sparse_?_dotmv routine computes a sparse matrix-vector product and dot product:
y := alpha*op(A)*x + beta*y d := ∑ixi*yi (real case) d := ∑iconj(xi)*yi (complex case)
where
alpha and beta are scalars.
x and y are vectors.
A is an m-by-k matrix.
conj represents complex conjugation.
op(A) is a matrix modifier.
Available options for op(A) are A, AT, or AH.
For sparse matrices in the BSR format, the supported combinations of (indexing,block_layout) are:
(SPARSE_INDEX_BASE_ZERO, SPARSE_LAYOUT_ROW_MAJOR )
(SPARSE_INDEX_BASE_ONE, SPARSE_LAYOUT_COLUMN_MAJOR )
Input Parameters
- operation
-
Specifies the operation performed on matrix A.
If operation = SPARSE_OPERATION_NON_TRANSPOSE, op(A) = A.
If operation = SPARSE_OPERATION_TRANSPOSE, op(A) = AT.
If operation = SPARSE_OPERATION_CONJUGATE_TRANSPOSE, op(A) = AH.
- alpha
-
Specifies the scalar alpha.
- A
-
Handle which contains the sparse matrix A.
- descr
-
Structure specifying sparse matrix properties.
sparse_matrix_type_t type - 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 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_t mode - 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_t diag - Specifies 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. - x
-
If operation = SPARSE_OPERATION_NON_TRANSPOSE, array of size at least k, where k is the number of columns of matrix A.
Otherwise, array of size at least m, where m is the number of rows of matrix A.
On entry, the array x must contain the vector x.
- beta
-
Specifies the scalar beta.
- y
-
If operation = SPARSE_OPERATION_NON_TRANSPOSE, array of size at least m, where k is the number of rows of matrix A.
Otherwise, array of size at least k, where k is the number of columns of matrix A.
On entry, the array y must contain the vector y.
Output Parameters
- y
-
Overwritten by the updated vector y.
- d
-
Overwritten by the dot product of x and 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. |