Visible to Intel only — GUID: GUID-4AEBE13B-1F1D-414E-98A5-12C1FF214215
Visible to Intel only — GUID: GUID-4AEBE13B-1F1D-414E-98A5-12C1FF214215
cluster_sparse_solver
Calculates the solution of a set of sparse linear equations with single or multiple right-hand sides.
Syntax
call cluster_sparse_solver (pt, maxfct, mnum, mtype, phase, n, a, ia, ja, perm, nrhs, iparm, msglvl, b, x, comm, error)
Include Files
Fortran: mkl_cluster_sparse_solver.f77
Fortran 90: mkl_cluster_sparse_solver.f90
Description
The routine cluster_sparse_solver calculates the solution of a set of sparse linear equations
A*X = Bwith single or multiple right-hand sides, using a parallel LU, LDL, or LLT factorization, where A is an n-by-n matrix, and X and B are n-by-nrhs vectors or matrices.
This routine supports the Progress Routine feature. See Progress Function for details.
Input Parameters
Most of the input parameters (except for the pt, phase, and comm parameters and, for the distributed format, the a, ia, and ja arrays) must be set on the master MPI process only, and ignored on other processes. Other MPI processes get all required data from the master MPI process using the MPI communicator, comm.
- pt
-
INTEGER*8 for 64-bit architectures
Array of size 64.
Handle to internal data structure. The entries must be set to zero before the first call to cluster_sparse_solver.
CAUTION:After the first call to cluster_sparse_solver do not modify pt, as that could cause a serious memory leak.
- maxfct
-
INTEGER
Ignored; assumed equal to 1.
- mnum
-
INTEGER
Ignored; assumed equal to 1.
- mtype
-
INTEGER
Defines the matrix type, which influences the pivoting method. The Parallel Direct Sparse Solver for Clusters solver supports the following matrices:
- 1
-
real and structurally symmetric
- 2
-
real and symmetric positive definite
- -2
-
real and symmetric indefinite
- 3
-
complex and structurally symmetric
- 4
-
complex and Hermitian positive definite
- -4
-
complex and Hermitian indefinite
- 6
-
complex and symmetric
- 11
-
real and nonsymmetric
- 13
-
complex and nonsymmetric
- phase
-
INTEGER
Controls the execution of the solver. Usually it is a two- or three-digit integer. The first digit indicates the starting phase of execution and the second digit indicates the ending phase. Parallel Direct Sparse Solver for Clusters has the following phases of execution:
Phase 1: Fill-reduction analysis and symbolic factorization
Phase 2: Numerical factorization
Phase 3: Forward and Backward solve including optional iterative refinement
Memory release (phase= -1)
If a previous call to the routine has computed information from previous phases, execution may start at any phase. The phase parameter can have the following values:
- phase
- Solver Execution Steps
- 11
-
Analysis
- 12
-
Analysis, numerical factorization
- 13
-
Analysis, numerical factorization, solve, iterative refinement
- 22
-
Numerical factorization
- 23
-
Numerical factorization, solve, iterative refinement
- 33
-
Solve, iterative refinement
- -1
-
Release all internal memory for all matrices
- n
-
INTEGER
Number of equations in the sparse linear systems of equations A*X = B. Constraint: n > 0.
- a
-
DOUBLE PRECISION - for real types of matrices (mtype=1, 2, -2 and 11) and for double precision Parallel Direct Sparse Solver for Clusters Interface (iparm(28)=0)
REAL - for real types of matrices (mtype=1, 2, -2 and 11) and for single precision Parallel Direct Sparse Solver for Clusters Interface (iparm(28)=1)
DOUBLE COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for double precision Parallel Direct Sparse Solver for Clusters Interface (iparm(28)=0)
COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for single precision Parallel Direct Sparse Solver for Clusters Interface (iparm(28)=1)
Array. Contains the non-zero elements of the coefficient matrix A corresponding to the indices in ja. The coefficient matrix can be either real or complex. The matrix must be stored in the three-array variant of the compressed sparse row (CSR3) or in the three-array variant of the block compressed sparse row (BSR3) format, and the matrix must be stored with increasing values of ja for each row.
For CSR3 format, the size of a is the same as that of ja. Refer to the values array description in Three Array Variation of CSR Format for more details.
For BSR3 format the size of a is the size of ja multiplied by the square of the block size. Refer to the values array description in Three Array Variation of BSR Format for more details.
NOTE:For centralized input (iparm(40)=0), provide the a array for the master MPI process only. For distributed assembled input (iparm(40)=1 or iparm(40)=2), provide it for all MPI processes.
IMPORTANT:The column indices of non-zero elements of each row of the matrix A must be stored in increasing order.
- ia
-
INTEGER
For CSR3 format, ia(i) (i≤n) points to the first column index of row i in the array ja. That is, ia(i) gives the index of the element in array a that contains the first non-zero element from row i of A. The last element ia(n+1) is taken to be equal to the number of non-zero elements in A, plus one. Refer to rowIndex array description in Three Array Variation of CSR Format for more details.
For BSR3 format, ia(i) (i≤n) points to the first column index of row i in the array ja. That is, ia(i) gives the index of the element in array a that contains the first non-zero block from row i of A. The last element ia(n+1) is taken to be equal to the number of non-zero blcoks in A, plus one. Refer to rowIndex array description in Three Array Variation of BSR Format for more details.
The array ia is accessed in all phases of the solution process.
Indexing of ia is one-based by default, but it can be changed to zero-based by setting the appropriate value to the parameter iparm(35). For zero-based indexing, the last element ia(n+1) is assumed to be equal to the number of non-zero elements in matrix A.
NOTE:For centralized input (iparm(40)=0), provide the ia array at the master MPI process only. For distributed assembled input (iparm(40)=1 or iparm(40)=2), provide it at all MPI processes.
- ja
-
INTEGER
For CSR3 format, array ja contains column indices of the sparse matrix A. It is important that the indices are in increasing order per row. For symmetric matrices, the solver needs only the upper triangular part of the system as is shown for columns array in Three Array Variation of CSR Format.
For BSR3 format, array ja contains column indices of the sparse matrix A. It is important that the indices are in increasing order per row. For symmetric matrices, the solver needs only the upper triangular part of the system as is shown for columns array in Three Array Variation of BSR Format.
The array ja is accessed in all phases of the solution process.
Indexing of ja is one-based by default, but it can be changed to zero-based by setting the appropriate value to the parameter iparm(35).
NOTE:For centralized input (iparm(40)=0), provide the ja array at the master MPI process only. For distributed assembled input (iparm(40)=1 or iparm(40)=2), provide it at all MPI processes.
- perm
-
INTEGER
Ignored.
- nrhs
-
INTEGER
Number of right-hand sides that need to be solved for.
- iparm
-
INTEGER
Array, size 64. This array is used to pass various parameters to Parallel Direct Sparse Solver for Clusters Interface and to return some useful information after execution of the solver.
See cluster_sparse_solver iparm Parameter for more details about the iparm parameters.
- msglvl
-
INTEGER
Message level information. If msglvl = 0 then cluster_sparse_solver generates no output, if msglvl = 1 the solver prints statistical information to the screen.
Statistics include information such as the number of non-zero elements in L-factor and the timing for each phase.
Set msglvl = 1 if you report a problem with the solver, since the additional information provided can facilitate a solution.
- b
-
DOUBLE PRECISION - for real types of matrices (mtype=1, 2, -2 and 11) and for double precision Parallel Direct Sparse Solver for Clusters (iparm(28)=0)
REAL - for real types of matrices (mtype=1, 2, -2 and 11) and for single precision Parallel Direct Sparse Solver for Clusters (iparm(28)=1)
DOUBLE COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for double precision Parallel Direct Sparse Solver for Clusters (iparm(28)=0)
COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for single precision Parallel Direct Sparse Solver for Clusters (iparm(28)=1)
Array, size (n, nrhs). On entry, contains the right-hand side vector/matrix B, which is placed in memory contiguously. The b(i+(k-1)×nrhs) must hold the i-th component of k-th right-hand side vector. Note that b is only accessed in the solution phase.
- comm
-
INTEGER
MPI communicator. The solver uses the Fortran MPI communicator internally.
Output Parameters
- pt
-
Handle to internal data structure.
- perm
-
Ignored.
- iparm
-
On output, some iparm values report information such as the numbers of non-zero elements in the factors.
See cluster_sparse_solver iparm Parameter for more details about the iparm parameters.
- b
-
On output, the array is replaced with the solution if iparm(6) = 1.
- x
-
DOUBLE PRECISION - for real types of matrices (mtype=1, 2, -2 and 11) and for double precision Parallel Direct Sparse Solver for Clusters (iparm(28)=0)
REAL - for real types of matrices (mtype=1, 2, -2 and 11) and for single precision Parallel Direct Sparse Solver for Clusters (iparm(28)=1)
DOUBLE COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for double precision Parallel Direct Sparse Solver for Clusters (iparm(28)=0)
COMPLEX - for complex types of matrices (mtype=3, 6, 13, 14 and -4) and for single precision Parallel Direct Sparse Solver for Clusters (iparm(28)=1)
Array, size (n, nrhs). If iparm(6)=0 it contains solution vector/matrix X, which is placed contiguously in memory. The x(i+(k-1)× n) element must hold the i-th component of the k-th solution vector. Note that x is only accessed in the solution phase.
- error
-
INTEGER
The error indicator according to the below table:
- error
- Information
- 0
-
no error
- -1
-
input inconsistent
- -2
-
not enough memory
- -3
-
reordering problem
- -4
-
Zero pivot, numerical factorization or iterative refinement problem. If the error appears during the solution phase, try to change the pivoting perturbation (iparm(10)) and also increase the number of iterative refinement steps. If it does not help, consider changing the scaling, matching and pivoting options (iparm(11), iparm(13), iparm(21))
- -5
-
unclassified (internal) error
- -6
-
reordering failed (matrix types 11 and 13 only)
- -7
-
diagonal matrix is singular
- -8
-
32-bit integer overflow problem
- -9
-
not enough memory for OOC
- -10
-
error opening OOC files
- -11
-
read/write error with OOC files