xref: /petsc/src/mat/impls/aij/seq/aijmkl/aijmkl.c (revision 19afcda94e2ebad3365cdb198a45e916fe6f5ab5)
14a2a386eSRichard Tran Mills /*
24a2a386eSRichard Tran Mills   Defines basic operations for the MATSEQAIJMKL matrix class.
34a2a386eSRichard Tran Mills   This class is derived from the MATSEQAIJ class and retains the
44a2a386eSRichard Tran Mills   compressed row storage (aka Yale sparse matrix format) but uses
54a2a386eSRichard Tran Mills   sparse BLAS operations from the Intel Math Kernel Library (MKL)
64a2a386eSRichard Tran Mills   wherever possible.
74a2a386eSRichard Tran Mills */
84a2a386eSRichard Tran Mills 
94a2a386eSRichard Tran Mills #include <../src/mat/impls/aij/seq/aij.h>
104a2a386eSRichard Tran Mills #include <../src/mat/impls/aij/seq/aijmkl/aijmkl.h>
114a2a386eSRichard Tran Mills 
124a2a386eSRichard Tran Mills /* MKL include files. */
134a2a386eSRichard Tran Mills #include <mkl_spblas.h>  /* Sparse BLAS */
144a2a386eSRichard Tran Mills 
154a2a386eSRichard Tran Mills typedef struct {
16c9d46305SRichard Tran Mills   PetscBool no_SpMV2;  /* If PETSC_TRUE, then don't use the MKL SpMV2 inspector-executor routines. */
175b49642aSRichard Tran Mills   PetscBool eager_inspection; /* If PETSC_TRUE, then call mkl_sparse_optimize() in MatDuplicate()/MatAssemblyEnd(). */
184abfa3b3SRichard Tran Mills   PetscBool sparse_optimized; /* If PETSC_TRUE, then mkl_sparse_optimize() has been called. */
19b8cbc1fbSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
20df555b71SRichard Tran Mills   sparse_matrix_t csrA; /* "Handle" used by SpMV2 inspector-executor routines. */
21df555b71SRichard Tran Mills   struct matrix_descr descr;
22b8cbc1fbSRichard Tran Mills #endif
234a2a386eSRichard Tran Mills } Mat_SeqAIJMKL;
244a2a386eSRichard Tran Mills 
254a2a386eSRichard Tran Mills extern PetscErrorCode MatAssemblyEnd_SeqAIJ(Mat,MatAssemblyType);
264a2a386eSRichard Tran Mills 
274a2a386eSRichard Tran Mills PETSC_INTERN PetscErrorCode MatConvert_SeqAIJMKL_SeqAIJ(Mat A,MatType type,MatReuse reuse,Mat *newmat)
284a2a386eSRichard Tran Mills {
294a2a386eSRichard Tran Mills   /* This routine is only called to convert a MATAIJMKL to its base PETSc type, */
304a2a386eSRichard Tran Mills   /* so we will ignore 'MatType type'. */
314a2a386eSRichard Tran Mills   PetscErrorCode ierr;
324a2a386eSRichard Tran Mills   Mat            B       = *newmat;
33a8327b06SKarl Rupp #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
344a2a386eSRichard Tran Mills   Mat_SeqAIJMKL  *aijmkl=(Mat_SeqAIJMKL*)A->spptr;
35a8327b06SKarl Rupp #endif
364a2a386eSRichard Tran Mills 
374a2a386eSRichard Tran Mills   PetscFunctionBegin;
384a2a386eSRichard Tran Mills   if (reuse == MAT_INITIAL_MATRIX) {
394a2a386eSRichard Tran Mills     ierr = MatDuplicate(A,MAT_COPY_VALUES,&B);CHKERRQ(ierr);
404a2a386eSRichard Tran Mills   }
414a2a386eSRichard Tran Mills 
424a2a386eSRichard Tran Mills   /* Reset the original function pointers. */
4354871a98SRichard Tran Mills   B->ops->duplicate        = MatDuplicate_SeqAIJ;
444a2a386eSRichard Tran Mills   B->ops->assemblyend      = MatAssemblyEnd_SeqAIJ;
454a2a386eSRichard Tran Mills   B->ops->destroy          = MatDestroy_SeqAIJ;
4654871a98SRichard Tran Mills   B->ops->mult             = MatMult_SeqAIJ;
47ff03dc53SRichard Tran Mills   B->ops->multtranspose    = MatMultTranspose_SeqAIJ;
4854871a98SRichard Tran Mills   B->ops->multadd          = MatMultAdd_SeqAIJ;
49ff03dc53SRichard Tran Mills   B->ops->multtransposeadd = MatMultTransposeAdd_SeqAIJ;
5087c2a1d7SRichard Tran Mills   B->ops->scale            = MatScale_SeqAIJ;
5187c2a1d7SRichard Tran Mills   B->ops->diagonalscale    = MatDiagonalScale_SeqAIJ;
5287c2a1d7SRichard Tran Mills   B->ops->diagonalset      = MatDiagonalSet_SeqAIJ;
5387c2a1d7SRichard Tran Mills   B->ops->axpy             = MatAXPY_SeqAIJ;
544a2a386eSRichard Tran Mills 
55e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatConvert_seqaijmkl_seqaij_C",NULL);CHKERRQ(ierr);
56e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMult_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr);
57e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultSymbolic_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr);
58e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultNumeric_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr);
59e9c94282SRichard Tran Mills 
604abfa3b3SRichard Tran Mills   /* Free everything in the Mat_SeqAIJMKL data structure. Currently, this
61e9c94282SRichard Tran Mills    * simply involves destroying the MKL sparse matrix handle and then freeing
62e9c94282SRichard Tran Mills    * the spptr pointer. */
634abfa3b3SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
64a8327b06SKarl Rupp   if (reuse == MAT_INITIAL_MATRIX) aijmkl = (Mat_SeqAIJMKL*)B->spptr;
65a8327b06SKarl Rupp 
664abfa3b3SRichard Tran Mills   if (aijmkl->sparse_optimized) {
670632b357SRichard Tran Mills     sparse_status_t stat;
684abfa3b3SRichard Tran Mills     stat = mkl_sparse_destroy(aijmkl->csrA);
694abfa3b3SRichard Tran Mills     if (stat != SPARSE_STATUS_SUCCESS) {
704abfa3b3SRichard Tran Mills       PetscFunctionReturn(PETSC_ERR_LIB);
714abfa3b3SRichard Tran Mills     }
724abfa3b3SRichard Tran Mills   }
734abfa3b3SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
74e9c94282SRichard Tran Mills   ierr = PetscFree(B->spptr);CHKERRQ(ierr);
754a2a386eSRichard Tran Mills 
764a2a386eSRichard Tran Mills   /* Change the type of B to MATSEQAIJ. */
774a2a386eSRichard Tran Mills   ierr = PetscObjectChangeTypeName((PetscObject)B, MATSEQAIJ);CHKERRQ(ierr);
784a2a386eSRichard Tran Mills 
794a2a386eSRichard Tran Mills   *newmat = B;
804a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
814a2a386eSRichard Tran Mills }
824a2a386eSRichard Tran Mills 
834a2a386eSRichard Tran Mills PetscErrorCode MatDestroy_SeqAIJMKL(Mat A)
844a2a386eSRichard Tran Mills {
854a2a386eSRichard Tran Mills   PetscErrorCode ierr;
864a2a386eSRichard Tran Mills   Mat_SeqAIJMKL *aijmkl = (Mat_SeqAIJMKL*) A->spptr;
874a2a386eSRichard Tran Mills 
884a2a386eSRichard Tran Mills   PetscFunctionBegin;
89e9c94282SRichard Tran Mills 
90e9c94282SRichard Tran Mills   /* If MatHeaderMerge() was used, then this SeqAIJMKL matrix will not have an
91e9c94282SRichard Tran Mills    * spptr pointer. */
92e9c94282SRichard Tran Mills   if (aijmkl) {
934a2a386eSRichard Tran Mills     /* Clean up everything in the Mat_SeqAIJMKL data structure, then free A->spptr. */
944abfa3b3SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
954abfa3b3SRichard Tran Mills     if (aijmkl->sparse_optimized) {
964abfa3b3SRichard Tran Mills       sparse_status_t stat = SPARSE_STATUS_SUCCESS;
974abfa3b3SRichard Tran Mills       stat = mkl_sparse_destroy(aijmkl->csrA);
984abfa3b3SRichard Tran Mills       if (stat != SPARSE_STATUS_SUCCESS) {
994abfa3b3SRichard Tran Mills         PetscFunctionReturn(PETSC_ERR_LIB);
1004abfa3b3SRichard Tran Mills       }
1014abfa3b3SRichard Tran Mills     }
1024abfa3b3SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
1034a2a386eSRichard Tran Mills     ierr = PetscFree(A->spptr);CHKERRQ(ierr);
104e9c94282SRichard Tran Mills   }
1054a2a386eSRichard Tran Mills 
1064a2a386eSRichard Tran Mills   /* Change the type of A back to SEQAIJ and use MatDestroy_SeqAIJ()
1074a2a386eSRichard Tran Mills    * to destroy everything that remains. */
1084a2a386eSRichard Tran Mills   ierr = PetscObjectChangeTypeName((PetscObject)A, MATSEQAIJ);CHKERRQ(ierr);
1094a2a386eSRichard Tran Mills   /* Note that I don't call MatSetType().  I believe this is because that
1104a2a386eSRichard Tran Mills    * is only to be called when *building* a matrix.  I could be wrong, but
1114a2a386eSRichard Tran Mills    * that is how things work for the SuperLU matrix class. */
1124a2a386eSRichard Tran Mills   ierr = MatDestroy_SeqAIJ(A);CHKERRQ(ierr);
1134a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
1144a2a386eSRichard Tran Mills }
1154a2a386eSRichard Tran Mills 
1165b49642aSRichard Tran Mills /* MatSeqAIJKL_create_mkl_handle(), if called with an AIJMKL matrix that has not had mkl_sparse_optimize() called for it,
1175b49642aSRichard Tran Mills  * creates an MKL sparse matrix handle from the AIJ arrays and calls mkl_sparse_optimize().
1185b49642aSRichard Tran Mills  * If called with an AIJMKL matrix for which aijmkl->sparse_optimized == PETSC_TRUE, then it destroys the old matrix
1195b49642aSRichard Tran Mills  * handle, creates a new one, and then calls mkl_sparse_optimize().
1205b49642aSRichard Tran Mills  * Although in normal MKL usage it is possible to have a valid matrix handle on which mkl_sparse_optimize() has not been
1215b49642aSRichard Tran Mills  * called, for AIJMKL the handle creation and optimization step always occur together, so we don't handle the case of
1225b49642aSRichard Tran Mills  * an unoptimized matrix handle here. */
1236e369cd5SRichard Tran Mills PETSC_INTERN PetscErrorCode MatSeqAIJMKL_create_mkl_handle(Mat A)
1244a2a386eSRichard Tran Mills {
1256e369cd5SRichard Tran Mills #ifndef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
1266e369cd5SRichard Tran Mills   /* If the MKL library does not have mkl_sparse_optimize(), then this routine
1276e369cd5SRichard Tran Mills    * does nothing. We make it callable anyway in this case because it cuts
1286e369cd5SRichard Tran Mills    * down on littering the code with #ifdefs. */
1296e369cd5SRichard Tran Mills   PetscFunctionReturn(0);
1306e369cd5SRichard Tran Mills #else
131a8327b06SKarl Rupp   Mat_SeqAIJ      *a = (Mat_SeqAIJ*)A->data;
132a8327b06SKarl Rupp   Mat_SeqAIJMKL   *aijmkl = (Mat_SeqAIJMKL*)A->spptr;
133a8327b06SKarl Rupp   PetscInt        m,n;
134a8327b06SKarl Rupp   MatScalar       *aa;
135a8327b06SKarl Rupp   PetscInt        *aj,*ai;
1366e369cd5SRichard Tran Mills   sparse_status_t stat;
1374a2a386eSRichard Tran Mills 
138a8327b06SKarl Rupp   PetscFunctionBegin;
1396e369cd5SRichard Tran Mills   if (aijmkl->no_SpMV2) PetscFunctionReturn(0);
1406e369cd5SRichard Tran Mills 
1410632b357SRichard Tran Mills   if (aijmkl->sparse_optimized) {
1420632b357SRichard Tran Mills     /* Matrix has been previously assembled and optimized. Must destroy old
1430632b357SRichard Tran Mills      * matrix handle before running the optimization step again. */
1440632b357SRichard Tran Mills     stat = mkl_sparse_destroy(aijmkl->csrA);
1450632b357SRichard Tran Mills     if (stat != SPARSE_STATUS_SUCCESS) {
1460632b357SRichard Tran Mills       PetscFunctionReturn(PETSC_ERR_LIB);
1470632b357SRichard Tran Mills     }
1480632b357SRichard Tran Mills   }
1498d3fe1b0SRichard Tran Mills   aijmkl->sparse_optimized = PETSC_FALSE;
1506e369cd5SRichard Tran Mills 
151c9d46305SRichard Tran Mills   /* Now perform the SpMV2 setup and matrix optimization. */
152df555b71SRichard Tran Mills   aijmkl->descr.type        = SPARSE_MATRIX_TYPE_GENERAL;
153df555b71SRichard Tran Mills   aijmkl->descr.mode        = SPARSE_FILL_MODE_LOWER;
154df555b71SRichard Tran Mills   aijmkl->descr.diag        = SPARSE_DIAG_NON_UNIT;
15558678438SRichard Tran Mills   m = A->rmap->n;
15658678438SRichard Tran Mills   n = A->cmap->n;
157df555b71SRichard Tran Mills   aj   = a->j;  /* aj[k] gives column index for element aa[k]. */
158df555b71SRichard Tran Mills   aa   = a->a;  /* Nonzero elements stored row-by-row. */
159df555b71SRichard Tran Mills   ai   = a->i;  /* ai[k] is the position in aa and aj where row k starts. */
16080095d54SIrina Sokolova   if ((a->nz!=0) & !(A->structure_only)) {
1618d3fe1b0SRichard Tran Mills     /* Create a new, optimized sparse matrix handle only if the matrix has nonzero entries.
1628d3fe1b0SRichard Tran Mills      * The MKL sparse-inspector executor routines don't like being passed an empty matrix. */
16358678438SRichard Tran Mills     stat = mkl_sparse_x_create_csr(&aijmkl->csrA,SPARSE_INDEX_BASE_ZERO,m,n,ai,ai+1,aj,aa);
164df555b71SRichard Tran Mills     stat = mkl_sparse_set_mv_hint(aijmkl->csrA,SPARSE_OPERATION_NON_TRANSPOSE,aijmkl->descr,1000);
165df555b71SRichard Tran Mills     stat = mkl_sparse_set_memory_hint(aijmkl->csrA,SPARSE_MEMORY_AGGRESSIVE);
166df555b71SRichard Tran Mills     stat = mkl_sparse_optimize(aijmkl->csrA);
167df555b71SRichard Tran Mills     if (stat != SPARSE_STATUS_SUCCESS) {
168f68ad4bdSRichard Tran Mills       SETERRQ(PETSC_COMM_SELF,PETSC_ERR_LIB,"Intel MKL error: unable to create matrix handle/complete mkl_sparse_optimize");
169df555b71SRichard Tran Mills       PetscFunctionReturn(PETSC_ERR_LIB);
170df555b71SRichard Tran Mills     }
1714abfa3b3SRichard Tran Mills     aijmkl->sparse_optimized = PETSC_TRUE;
172c9d46305SRichard Tran Mills   }
1736e369cd5SRichard Tran Mills 
1746e369cd5SRichard Tran Mills   PetscFunctionReturn(0);
175d995685eSRichard Tran Mills #endif
1766e369cd5SRichard Tran Mills }
1776e369cd5SRichard Tran Mills 
178*19afcda9SRichard Tran Mills /* MatSeqAIJMKL_create_from_mkl_handle() creates a sequential AIJMKL matrix from an MKL sparse matrix handle.
179*19afcda9SRichard Tran Mills  * We need this to implement MatMatMult() using the MKL inspector-executor routines, which return an (unoptimized)
180*19afcda9SRichard Tran Mills  * matrix handle. */
181*19afcda9SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
182*19afcda9SRichard Tran Mills PETSC_INTERN PetscErrorCode MatSeqAIJMKL_create_from_mkl_handle(MPI_Comm comm,sparse_matrix_t csrA,Mat *mat)
183*19afcda9SRichard Tran Mills {
184*19afcda9SRichard Tran Mills   PetscErrorCode ierr;
185*19afcda9SRichard Tran Mills   sparse_status_t stat;
186*19afcda9SRichard Tran Mills   sparse_index_base_t indexing;
187*19afcda9SRichard Tran Mills   PetscInt nrows, ncols;
188*19afcda9SRichard Tran Mills   PetscInt *aj,*ai;
189*19afcda9SRichard Tran Mills   MatScalar *aa;
190*19afcda9SRichard Tran Mills   Mat A;
191*19afcda9SRichard Tran Mills   Mat_SeqAIJMKL *aijmkl;
192*19afcda9SRichard Tran Mills 
193*19afcda9SRichard Tran Mills   stat = mkl_sparse_x_export_csr(csrA,&indexing,&nrows,&ncols,&ai,NULL,&aj,&aa);
194*19afcda9SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
195*19afcda9SRichard Tran Mills     SETERRQ(PETSC_COMM_SELF,PETSC_ERR_LIB,"Intel MKL error: unable to complete mkl_sparse_x_export_csr()");
196*19afcda9SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
197*19afcda9SRichard Tran Mills   }
198*19afcda9SRichard Tran Mills   ierr = MatCreate(comm,&A);CHKERRQ(ierr);
199*19afcda9SRichard Tran Mills   ierr = MatSetType(A,MATSEQAIJ);CHKERRQ(ierr);
200*19afcda9SRichard Tran Mills   ierr = MatSeqAIJSetPreallocationCSR(A,ai,aj,aa);CHKERRQ(ierr);
201*19afcda9SRichard Tran Mills 
202*19afcda9SRichard Tran Mills   /* We now have an assembled sequential AIJ matrix created from copies of the exported arrays from the MKL matrix handle.
203*19afcda9SRichard Tran Mills    * Now turn it into a MATSEQAIJMKL. */
204*19afcda9SRichard Tran Mills   ierr = MatConvert_SeqAIJ_SeqAIJMKL(A,MATSEQAIJMKL,MAT_INPLACE_MATRIX,&A);CHKERRQ(ierr);
205*19afcda9SRichard Tran Mills   aijmkl = (Mat_SeqAIJMKL*) A->spptr;
206*19afcda9SRichard Tran Mills   aijmkl->csrA = csrA;
207*19afcda9SRichard Tran Mills   /* The below code duplicates much of what is in MatSeqAIJKL_create_mkl_handle(). I dislike this code duplication, but
208*19afcda9SRichard Tran Mills    * MatSeqAIJMKL_create_mkl_handle() cannot be used because we don't need to create a handle -- we've already got one,
209*19afcda9SRichard Tran Mills    * and just need to be able to run the MKL optimization step. */
210*19afcda9SRichard Tran Mills   stat = mkl_sparse_set_mv_hint(aijmkl->csrA,SPARSE_OPERATION_NON_TRANSPOSE,aijmkl->descr,1000);
211*19afcda9SRichard Tran Mills   stat = mkl_sparse_set_memory_hint(aijmkl->csrA,SPARSE_MEMORY_AGGRESSIVE);
212*19afcda9SRichard Tran Mills   stat = mkl_sparse_optimize(aijmkl->csrA);
213*19afcda9SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
214*19afcda9SRichard Tran Mills     SETERRQ(PETSC_COMM_SELF,PETSC_ERR_LIB,"Intel MKL error: unable to set hints/complete mkl_sparse_optimize");
215*19afcda9SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
216*19afcda9SRichard Tran Mills   }
217*19afcda9SRichard Tran Mills   aijmkl->sparse_optimized = PETSC_TRUE;
218*19afcda9SRichard Tran Mills 
219*19afcda9SRichard Tran Mills   *mat = A;
220*19afcda9SRichard Tran Mills   PetscFunctionReturn(0);
221*19afcda9SRichard Tran Mills }
222*19afcda9SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
223*19afcda9SRichard Tran Mills 
2246e369cd5SRichard Tran Mills PetscErrorCode MatDuplicate_SeqAIJMKL(Mat A, MatDuplicateOption op, Mat *M)
2256e369cd5SRichard Tran Mills {
2266e369cd5SRichard Tran Mills   PetscErrorCode ierr;
2276e369cd5SRichard Tran Mills   Mat_SeqAIJMKL *aijmkl;
2286e369cd5SRichard Tran Mills   Mat_SeqAIJMKL *aijmkl_dest;
2296e369cd5SRichard Tran Mills 
2306e369cd5SRichard Tran Mills   PetscFunctionBegin;
2316e369cd5SRichard Tran Mills   ierr = MatDuplicate_SeqAIJ(A,op,M);CHKERRQ(ierr);
2326e369cd5SRichard Tran Mills   aijmkl      = (Mat_SeqAIJMKL*) A->spptr;
2336e369cd5SRichard Tran Mills   aijmkl_dest = (Mat_SeqAIJMKL*) (*M)->spptr;
2346e369cd5SRichard Tran Mills   ierr = PetscMemcpy(aijmkl_dest,aijmkl,sizeof(Mat_SeqAIJMKL));CHKERRQ(ierr);
2356e369cd5SRichard Tran Mills   aijmkl_dest->sparse_optimized = PETSC_FALSE;
2365b49642aSRichard Tran Mills   if (aijmkl->eager_inspection) {
2376e369cd5SRichard Tran Mills     ierr = MatSeqAIJMKL_create_mkl_handle(A);CHKERRQ(ierr);
2385b49642aSRichard Tran Mills   }
2396e369cd5SRichard Tran Mills   PetscFunctionReturn(0);
2406e369cd5SRichard Tran Mills }
2416e369cd5SRichard Tran Mills 
2426e369cd5SRichard Tran Mills PetscErrorCode MatAssemblyEnd_SeqAIJMKL(Mat A, MatAssemblyType mode)
2436e369cd5SRichard Tran Mills {
2446e369cd5SRichard Tran Mills   PetscErrorCode  ierr;
2456e369cd5SRichard Tran Mills   Mat_SeqAIJ      *a = (Mat_SeqAIJ*)A->data;
2465b49642aSRichard Tran Mills   Mat_SeqAIJMKL *aijmkl;
2476e369cd5SRichard Tran Mills 
2486e369cd5SRichard Tran Mills   PetscFunctionBegin;
2496e369cd5SRichard Tran Mills   if (mode == MAT_FLUSH_ASSEMBLY) PetscFunctionReturn(0);
2506e369cd5SRichard Tran Mills 
2516e369cd5SRichard Tran Mills   /* Since a MATSEQAIJMKL matrix is really just a MATSEQAIJ with some
2526e369cd5SRichard Tran Mills    * extra information and some different methods, call the AssemblyEnd
2536e369cd5SRichard Tran Mills    * routine for a MATSEQAIJ.
2546e369cd5SRichard Tran Mills    * I'm not sure if this is the best way to do this, but it avoids
255d96e85feSRichard Tran Mills    * a lot of code duplication. */
2566e369cd5SRichard Tran Mills   a->inode.use = PETSC_FALSE;  /* Must disable: otherwise the MKL routines won't get used. */
2576e369cd5SRichard Tran Mills   ierr = MatAssemblyEnd_SeqAIJ(A, mode);CHKERRQ(ierr);
2586e369cd5SRichard Tran Mills 
2595b49642aSRichard Tran Mills   /* If the user has requested "eager" inspection, create the optimized MKL sparse handle (if needed; the function checks).
2605b49642aSRichard Tran Mills    * (The default is to do "lazy" inspection, deferring this until something like MatMult() is called.) */
2615b49642aSRichard Tran Mills   aijmkl = (Mat_SeqAIJMKL*) A->spptr;
2625b49642aSRichard Tran Mills   if (aijmkl->eager_inspection) {
2636e369cd5SRichard Tran Mills     ierr = MatSeqAIJMKL_create_mkl_handle(A);CHKERRQ(ierr);
2645b49642aSRichard Tran Mills   }
265df555b71SRichard Tran Mills 
2664a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
2674a2a386eSRichard Tran Mills }
2684a2a386eSRichard Tran Mills 
2694a2a386eSRichard Tran Mills PetscErrorCode MatMult_SeqAIJMKL(Mat A,Vec xx,Vec yy)
2704a2a386eSRichard Tran Mills {
2714a2a386eSRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
2724a2a386eSRichard Tran Mills   const PetscScalar *x;
2734a2a386eSRichard Tran Mills   PetscScalar       *y;
2744a2a386eSRichard Tran Mills   const MatScalar   *aa;
2754a2a386eSRichard Tran Mills   PetscErrorCode    ierr;
2764a2a386eSRichard Tran Mills   PetscInt          m=A->rmap->n;
277db63039fSRichard Tran Mills   PetscInt          n=A->cmap->n;
278db63039fSRichard Tran Mills   PetscScalar       alpha = 1.0;
279db63039fSRichard Tran Mills   PetscScalar       beta = 0.0;
2804a2a386eSRichard Tran Mills   const PetscInt    *aj,*ai;
281db63039fSRichard Tran Mills   char              matdescra[6];
282db63039fSRichard Tran Mills 
2834a2a386eSRichard Tran Mills 
2844a2a386eSRichard Tran Mills   /* Variables not in MatMult_SeqAIJ. */
285ff03dc53SRichard Tran Mills   char transa = 'n';  /* Used to indicate to MKL that we are not computing the transpose product. */
286ff03dc53SRichard Tran Mills 
287ff03dc53SRichard Tran Mills   PetscFunctionBegin;
288db63039fSRichard Tran Mills   matdescra[0] = 'g';  /* Indicates to MKL that we using a general CSR matrix. */
289db63039fSRichard Tran Mills   matdescra[3] = 'c';  /* Indicates to MKL that we use C-style (0-based) indexing. */
290ff03dc53SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
291ff03dc53SRichard Tran Mills   ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
292ff03dc53SRichard Tran Mills   aj   = a->j;  /* aj[k] gives column index for element aa[k]. */
293ff03dc53SRichard Tran Mills   aa   = a->a;  /* Nonzero elements stored row-by-row. */
294ff03dc53SRichard Tran Mills   ai   = a->i;  /* ai[k] is the position in aa and aj where row k starts. */
295ff03dc53SRichard Tran Mills 
296ff03dc53SRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
297db63039fSRichard Tran Mills   mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,y);
298ff03dc53SRichard Tran Mills 
299ff03dc53SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr);
300ff03dc53SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
301ff03dc53SRichard Tran Mills   ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
302ff03dc53SRichard Tran Mills   PetscFunctionReturn(0);
303ff03dc53SRichard Tran Mills }
304ff03dc53SRichard Tran Mills 
305d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
306df555b71SRichard Tran Mills PetscErrorCode MatMult_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy)
307df555b71SRichard Tran Mills {
308df555b71SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
309df555b71SRichard Tran Mills   Mat_SeqAIJMKL     *aijmkl=(Mat_SeqAIJMKL*)A->spptr;
310df555b71SRichard Tran Mills   const PetscScalar *x;
311df555b71SRichard Tran Mills   PetscScalar       *y;
312df555b71SRichard Tran Mills   PetscErrorCode    ierr;
313df555b71SRichard Tran Mills   sparse_status_t stat = SPARSE_STATUS_SUCCESS;
314df555b71SRichard Tran Mills 
315df555b71SRichard Tran Mills   PetscFunctionBegin;
316df555b71SRichard Tran Mills 
31738987b35SRichard Tran Mills   /* If there are no nonzero entries, zero yy and return immediately. */
31838987b35SRichard Tran Mills   if(!a->nz) {
31938987b35SRichard Tran Mills     PetscInt i;
32038987b35SRichard Tran Mills     PetscInt m=A->rmap->n;
32138987b35SRichard Tran Mills     ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
32238987b35SRichard Tran Mills     for (i=0; i<m; i++) {
32338987b35SRichard Tran Mills       y[i] = 0.0;
32438987b35SRichard Tran Mills     }
32538987b35SRichard Tran Mills     ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
32638987b35SRichard Tran Mills     PetscFunctionReturn(0);
32738987b35SRichard Tran Mills   }
328f36dfe3fSRichard Tran Mills 
329df555b71SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
330df555b71SRichard Tran Mills   ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
331df555b71SRichard Tran Mills 
3323fa15762SRichard Tran Mills   /* In some cases, we get to this point without mkl_sparse_optimize() having been called, so we check and then call
3333fa15762SRichard Tran Mills    * it if needed. Eventually, when everything in PETSc is properly updating the matrix state, we should probably
3343fa15762SRichard Tran Mills    * take a "lazy" approach to creation/updating of the MKL matrix handle and plan to always do it here (when needed). */
3353fa15762SRichard Tran Mills   if (!aijmkl->sparse_optimized) {
3363fa15762SRichard Tran Mills     MatSeqAIJMKL_create_mkl_handle(A);
3373fa15762SRichard Tran Mills   }
3383fa15762SRichard Tran Mills 
339df555b71SRichard Tran Mills   /* Call MKL SpMV2 executor routine to do the MatMult. */
340df555b71SRichard Tran Mills   stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y);
341df555b71SRichard Tran Mills 
342df555b71SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr);
343df555b71SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
344df555b71SRichard Tran Mills   ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
345df555b71SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
346df555b71SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
347df555b71SRichard Tran Mills   }
348df555b71SRichard Tran Mills   PetscFunctionReturn(0);
349df555b71SRichard Tran Mills }
350d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
351df555b71SRichard Tran Mills 
352ff03dc53SRichard Tran Mills PetscErrorCode MatMultTranspose_SeqAIJMKL(Mat A,Vec xx,Vec yy)
353ff03dc53SRichard Tran Mills {
354ff03dc53SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
355ff03dc53SRichard Tran Mills   const PetscScalar *x;
356ff03dc53SRichard Tran Mills   PetscScalar       *y;
357ff03dc53SRichard Tran Mills   const MatScalar   *aa;
358ff03dc53SRichard Tran Mills   PetscErrorCode    ierr;
359ff03dc53SRichard Tran Mills   PetscInt          m=A->rmap->n;
360db63039fSRichard Tran Mills   PetscInt          n=A->cmap->n;
361db63039fSRichard Tran Mills   PetscScalar       alpha = 1.0;
362db63039fSRichard Tran Mills   PetscScalar       beta = 0.0;
363ff03dc53SRichard Tran Mills   const PetscInt    *aj,*ai;
364db63039fSRichard Tran Mills   char              matdescra[6];
365ff03dc53SRichard Tran Mills 
366ff03dc53SRichard Tran Mills   /* Variables not in MatMultTranspose_SeqAIJ. */
367ff03dc53SRichard Tran Mills   char transa = 't';  /* Used to indicate to MKL that we are computing the transpose product. */
3684a2a386eSRichard Tran Mills 
3694a2a386eSRichard Tran Mills   PetscFunctionBegin;
370969800c5SRichard Tran Mills   matdescra[0] = 'g';  /* Indicates to MKL that we using a general CSR matrix. */
371969800c5SRichard Tran Mills   matdescra[3] = 'c';  /* Indicates to MKL that we use C-style (0-based) indexing. */
3724a2a386eSRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
3734a2a386eSRichard Tran Mills   ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
3744a2a386eSRichard Tran Mills   aj   = a->j;  /* aj[k] gives column index for element aa[k]. */
3754a2a386eSRichard Tran Mills   aa   = a->a;  /* Nonzero elements stored row-by-row. */
3764a2a386eSRichard Tran Mills   ai   = a->i;  /* ai[k] is the position in aa and aj where row k starts. */
3774a2a386eSRichard Tran Mills 
3784a2a386eSRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
379db63039fSRichard Tran Mills   mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,y);
3804a2a386eSRichard Tran Mills 
3814a2a386eSRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr);
3824a2a386eSRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
3834a2a386eSRichard Tran Mills   ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
3844a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
3854a2a386eSRichard Tran Mills }
3864a2a386eSRichard Tran Mills 
387d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
388df555b71SRichard Tran Mills PetscErrorCode MatMultTranspose_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy)
389df555b71SRichard Tran Mills {
390df555b71SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
391df555b71SRichard Tran Mills   Mat_SeqAIJMKL     *aijmkl=(Mat_SeqAIJMKL*)A->spptr;
392df555b71SRichard Tran Mills   const PetscScalar *x;
393df555b71SRichard Tran Mills   PetscScalar       *y;
394df555b71SRichard Tran Mills   PetscErrorCode    ierr;
3950632b357SRichard Tran Mills   sparse_status_t   stat;
396df555b71SRichard Tran Mills 
397df555b71SRichard Tran Mills   PetscFunctionBegin;
398df555b71SRichard Tran Mills 
39938987b35SRichard Tran Mills   /* If there are no nonzero entries, zero yy and return immediately. */
40038987b35SRichard Tran Mills   if(!a->nz) {
40138987b35SRichard Tran Mills     PetscInt i;
40238987b35SRichard Tran Mills     PetscInt n=A->cmap->n;
40338987b35SRichard Tran Mills     ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
40438987b35SRichard Tran Mills     for (i=0; i<n; i++) {
40538987b35SRichard Tran Mills       y[i] = 0.0;
40638987b35SRichard Tran Mills     }
40738987b35SRichard Tran Mills     ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
40838987b35SRichard Tran Mills     PetscFunctionReturn(0);
40938987b35SRichard Tran Mills   }
410f36dfe3fSRichard Tran Mills 
411df555b71SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
412df555b71SRichard Tran Mills   ierr = VecGetArray(yy,&y);CHKERRQ(ierr);
413df555b71SRichard Tran Mills 
4143fa15762SRichard Tran Mills   /* In some cases, we get to this point without mkl_sparse_optimize() having been called, so we check and then call
4153fa15762SRichard Tran Mills    * it if needed. Eventually, when everything in PETSc is properly updating the matrix state, we should probably
4163fa15762SRichard Tran Mills    * take a "lazy" approach to creation/updating of the MKL matrix handle and plan to always do it here (when needed). */
4173fa15762SRichard Tran Mills   if (!aijmkl->sparse_optimized) {
4183fa15762SRichard Tran Mills     MatSeqAIJMKL_create_mkl_handle(A);
4193fa15762SRichard Tran Mills   }
4203fa15762SRichard Tran Mills 
421df555b71SRichard Tran Mills   /* Call MKL SpMV2 executor routine to do the MatMultTranspose. */
422df555b71SRichard Tran Mills   stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y);
423df555b71SRichard Tran Mills 
424df555b71SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr);
425df555b71SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
426df555b71SRichard Tran Mills   ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr);
427df555b71SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
428df555b71SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
429df555b71SRichard Tran Mills   }
430df555b71SRichard Tran Mills   PetscFunctionReturn(0);
431df555b71SRichard Tran Mills }
432d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
433df555b71SRichard Tran Mills 
4344a2a386eSRichard Tran Mills PetscErrorCode MatMultAdd_SeqAIJMKL(Mat A,Vec xx,Vec yy,Vec zz)
4354a2a386eSRichard Tran Mills {
4364a2a386eSRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
4374a2a386eSRichard Tran Mills   const PetscScalar *x;
4384a2a386eSRichard Tran Mills   PetscScalar       *y,*z;
4394a2a386eSRichard Tran Mills   const MatScalar   *aa;
4404a2a386eSRichard Tran Mills   PetscErrorCode    ierr;
4414a2a386eSRichard Tran Mills   PetscInt          m=A->rmap->n;
442db63039fSRichard Tran Mills   PetscInt          n=A->cmap->n;
4434a2a386eSRichard Tran Mills   const PetscInt    *aj,*ai;
4444a2a386eSRichard Tran Mills   PetscInt          i;
4454a2a386eSRichard Tran Mills 
446ff03dc53SRichard Tran Mills   /* Variables not in MatMultAdd_SeqAIJ. */
447ff03dc53SRichard Tran Mills   char transa = 'n';  /* Used to indicate to MKL that we are not computing the transpose product. */
448a84739b8SRichard Tran Mills   PetscScalar       alpha = 1.0;
449db63039fSRichard Tran Mills   PetscScalar       beta;
450a84739b8SRichard Tran Mills   char              matdescra[6];
451ff03dc53SRichard Tran Mills 
452ff03dc53SRichard Tran Mills   PetscFunctionBegin;
453a84739b8SRichard Tran Mills   matdescra[0] = 'g';  /* Indicates to MKL that we using a general CSR matrix. */
454a84739b8SRichard Tran Mills   matdescra[3] = 'c';  /* Indicates to MKL that we use C-style (0-based) indexing. */
455a84739b8SRichard Tran Mills 
456ff03dc53SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
457ff03dc53SRichard Tran Mills   ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
458ff03dc53SRichard Tran Mills   aj   = a->j;  /* aj[k] gives column index for element aa[k]. */
459ff03dc53SRichard Tran Mills   aa   = a->a;  /* Nonzero elements stored row-by-row. */
460ff03dc53SRichard Tran Mills   ai   = a->i;  /* ai[k] is the position in aa and aj where row k starts. */
461ff03dc53SRichard Tran Mills 
462ff03dc53SRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
463a84739b8SRichard Tran Mills   if (zz == yy) {
464a84739b8SRichard Tran Mills     /* If zz and yy are the same vector, we can use MKL's mkl_xcsrmv(), which calculates y = alpha*A*x + beta*y. */
465db63039fSRichard Tran Mills     beta = 1.0;
466db63039fSRichard Tran Mills     mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,z);
467a84739b8SRichard Tran Mills   } else {
468db63039fSRichard Tran Mills     /* zz and yy are different vectors, so call MKL's mkl_xcsrmv() with beta=0, then add the result to z.
469db63039fSRichard Tran Mills      * MKL sparse BLAS does not have a MatMultAdd equivalent. */
470db63039fSRichard Tran Mills     beta = 0.0;
471db63039fSRichard Tran Mills     mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,z);
472ff03dc53SRichard Tran Mills     for (i=0; i<m; i++) {
473ff03dc53SRichard Tran Mills       z[i] += y[i];
474ff03dc53SRichard Tran Mills     }
475a84739b8SRichard Tran Mills   }
476ff03dc53SRichard Tran Mills 
477ff03dc53SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr);
478ff03dc53SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
479ff03dc53SRichard Tran Mills   ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
480ff03dc53SRichard Tran Mills   PetscFunctionReturn(0);
481ff03dc53SRichard Tran Mills }
482ff03dc53SRichard Tran Mills 
483d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
484df555b71SRichard Tran Mills PetscErrorCode MatMultAdd_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy,Vec zz)
485df555b71SRichard Tran Mills {
486df555b71SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
487df555b71SRichard Tran Mills   Mat_SeqAIJMKL     *aijmkl=(Mat_SeqAIJMKL*)A->spptr;
488df555b71SRichard Tran Mills   const PetscScalar *x;
489df555b71SRichard Tran Mills   PetscScalar       *y,*z;
490df555b71SRichard Tran Mills   PetscErrorCode    ierr;
491df555b71SRichard Tran Mills   PetscInt          m=A->rmap->n;
492df555b71SRichard Tran Mills   PetscInt          i;
493df555b71SRichard Tran Mills 
494df555b71SRichard Tran Mills   /* Variables not in MatMultAdd_SeqAIJ. */
495df555b71SRichard Tran Mills   sparse_status_t stat = SPARSE_STATUS_SUCCESS;
496df555b71SRichard Tran Mills 
497df555b71SRichard Tran Mills   PetscFunctionBegin;
498df555b71SRichard Tran Mills 
49938987b35SRichard Tran Mills   /* If there are no nonzero entries, set zz = yy and return immediately. */
50038987b35SRichard Tran Mills   if(!a->nz) {
50138987b35SRichard Tran Mills     PetscInt i;
50238987b35SRichard Tran Mills     ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
50338987b35SRichard Tran Mills     for (i=0; i<m; i++) {
50438987b35SRichard Tran Mills       z[i] = y[i];
50538987b35SRichard Tran Mills     }
50638987b35SRichard Tran Mills     ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
50738987b35SRichard Tran Mills     PetscFunctionReturn(0);
50838987b35SRichard Tran Mills   }
509df555b71SRichard Tran Mills 
510df555b71SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
511df555b71SRichard Tran Mills   ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
512df555b71SRichard Tran Mills 
5133fa15762SRichard Tran Mills   /* In some cases, we get to this point without mkl_sparse_optimize() having been called, so we check and then call
5143fa15762SRichard Tran Mills    * it if needed. Eventually, when everything in PETSc is properly updating the matrix state, we should probably
5153fa15762SRichard Tran Mills    * take a "lazy" approach to creation/updating of the MKL matrix handle and plan to always do it here (when needed). */
5163fa15762SRichard Tran Mills   if (!aijmkl->sparse_optimized) {
5173fa15762SRichard Tran Mills     MatSeqAIJMKL_create_mkl_handle(A);
5183fa15762SRichard Tran Mills   }
5193fa15762SRichard Tran Mills 
520df555b71SRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
521df555b71SRichard Tran Mills   if (zz == yy) {
522df555b71SRichard Tran Mills     /* If zz and yy are the same vector, we can use mkl_sparse_x_mv, which calculates y = alpha*A*x + beta*y,
523df555b71SRichard Tran Mills      * with alpha and beta both set to 1.0. */
524db63039fSRichard Tran Mills     stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,1.0,z);
525df555b71SRichard Tran Mills   } else {
526df555b71SRichard Tran Mills     /* zz and yy are different vectors, so we call mkl_sparse_x_mv with alpha=1.0 and beta=0.0, and then
527df555b71SRichard Tran Mills      * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */
528db63039fSRichard Tran Mills     stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,z);
529df555b71SRichard Tran Mills     for (i=0; i<m; i++) {
530df555b71SRichard Tran Mills       z[i] += y[i];
531df555b71SRichard Tran Mills     }
532df555b71SRichard Tran Mills   }
533df555b71SRichard Tran Mills 
534df555b71SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr);
535df555b71SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
536df555b71SRichard Tran Mills   ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
537df555b71SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
538df555b71SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
539df555b71SRichard Tran Mills   }
540df555b71SRichard Tran Mills   PetscFunctionReturn(0);
541df555b71SRichard Tran Mills }
542d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
543df555b71SRichard Tran Mills 
544ff03dc53SRichard Tran Mills PetscErrorCode MatMultTransposeAdd_SeqAIJMKL(Mat A,Vec xx,Vec yy,Vec zz)
545ff03dc53SRichard Tran Mills {
546ff03dc53SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
547ff03dc53SRichard Tran Mills   const PetscScalar *x;
548ff03dc53SRichard Tran Mills   PetscScalar       *y,*z;
549ff03dc53SRichard Tran Mills   const MatScalar   *aa;
550ff03dc53SRichard Tran Mills   PetscErrorCode    ierr;
551ff03dc53SRichard Tran Mills   PetscInt          m=A->rmap->n;
552db63039fSRichard Tran Mills   PetscInt          n=A->cmap->n;
553ff03dc53SRichard Tran Mills   const PetscInt    *aj,*ai;
554ff03dc53SRichard Tran Mills   PetscInt          i;
555ff03dc53SRichard Tran Mills 
556ff03dc53SRichard Tran Mills   /* Variables not in MatMultTransposeAdd_SeqAIJ. */
557ff03dc53SRichard Tran Mills   char transa = 't';  /* Used to indicate to MKL that we are computing the transpose product. */
558a84739b8SRichard Tran Mills   PetscScalar       alpha = 1.0;
559db63039fSRichard Tran Mills   PetscScalar       beta;
560a84739b8SRichard Tran Mills   char              matdescra[6];
5614a2a386eSRichard Tran Mills 
5624a2a386eSRichard Tran Mills   PetscFunctionBegin;
563a84739b8SRichard Tran Mills   matdescra[0] = 'g';  /* Indicates to MKL that we using a general CSR matrix. */
564a84739b8SRichard Tran Mills   matdescra[3] = 'c';  /* Indicates to MKL that we use C-style (0-based) indexing. */
565a84739b8SRichard Tran Mills 
5664a2a386eSRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
5674a2a386eSRichard Tran Mills   ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
5684a2a386eSRichard Tran Mills   aj   = a->j;  /* aj[k] gives column index for element aa[k]. */
5694a2a386eSRichard Tran Mills   aa   = a->a;  /* Nonzero elements stored row-by-row. */
5704a2a386eSRichard Tran Mills   ai   = a->i;  /* ai[k] is the position in aa and aj where row k starts. */
5714a2a386eSRichard Tran Mills 
5724a2a386eSRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
573a84739b8SRichard Tran Mills   if (zz == yy) {
574a84739b8SRichard Tran Mills     /* If zz and yy are the same vector, we can use MKL's mkl_xcsrmv(), which calculates y = alpha*A*x + beta*y. */
575db63039fSRichard Tran Mills     beta = 1.0;
576969800c5SRichard Tran Mills     mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,z);
577a84739b8SRichard Tran Mills   } else {
578db63039fSRichard Tran Mills     /* zz and yy are different vectors, so call MKL's mkl_xcsrmv() with beta=0, then add the result to z.
579db63039fSRichard Tran Mills      * MKL sparse BLAS does not have a MatMultAdd equivalent. */
580db63039fSRichard Tran Mills     beta = 0.0;
581db63039fSRichard Tran Mills     mkl_xcsrmv(&transa,&m,&n,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,z);
582969800c5SRichard Tran Mills     for (i=0; i<n; i++) {
5834a2a386eSRichard Tran Mills       z[i] += y[i];
5844a2a386eSRichard Tran Mills     }
585a84739b8SRichard Tran Mills   }
5864a2a386eSRichard Tran Mills 
5874a2a386eSRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr);
5884a2a386eSRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
5894a2a386eSRichard Tran Mills   ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
5904a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
5914a2a386eSRichard Tran Mills }
5924a2a386eSRichard Tran Mills 
593d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
594df555b71SRichard Tran Mills PetscErrorCode MatMultTransposeAdd_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy,Vec zz)
595df555b71SRichard Tran Mills {
596df555b71SRichard Tran Mills   Mat_SeqAIJ        *a = (Mat_SeqAIJ*)A->data;
597df555b71SRichard Tran Mills   Mat_SeqAIJMKL     *aijmkl=(Mat_SeqAIJMKL*)A->spptr;
598df555b71SRichard Tran Mills   const PetscScalar *x;
599df555b71SRichard Tran Mills   PetscScalar       *y,*z;
600df555b71SRichard Tran Mills   PetscErrorCode    ierr;
601969800c5SRichard Tran Mills   PetscInt          n=A->cmap->n;
602df555b71SRichard Tran Mills   PetscInt          i;
603df555b71SRichard Tran Mills 
604df555b71SRichard Tran Mills   /* Variables not in MatMultTransposeAdd_SeqAIJ. */
605df555b71SRichard Tran Mills   sparse_status_t stat = SPARSE_STATUS_SUCCESS;
606df555b71SRichard Tran Mills 
607df555b71SRichard Tran Mills   PetscFunctionBegin;
608df555b71SRichard Tran Mills 
60938987b35SRichard Tran Mills   /* If there are no nonzero entries, set zz = yy and return immediately. */
61038987b35SRichard Tran Mills   if(!a->nz) {
61138987b35SRichard Tran Mills     PetscInt i;
61238987b35SRichard Tran Mills     ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
61338987b35SRichard Tran Mills     for (i=0; i<n; i++) {
61438987b35SRichard Tran Mills       z[i] = y[i];
61538987b35SRichard Tran Mills     }
61638987b35SRichard Tran Mills     ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
61738987b35SRichard Tran Mills     PetscFunctionReturn(0);
61838987b35SRichard Tran Mills   }
619f36dfe3fSRichard Tran Mills 
620df555b71SRichard Tran Mills   ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr);
621df555b71SRichard Tran Mills   ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
622df555b71SRichard Tran Mills 
6233fa15762SRichard Tran Mills   /* In some cases, we get to this point without mkl_sparse_optimize() having been called, so we check and then call
6243fa15762SRichard Tran Mills    * it if needed. Eventually, when everything in PETSc is properly updating the matrix state, we should probably
6253fa15762SRichard Tran Mills    * take a "lazy" approach to creation/updating of the MKL matrix handle and plan to always do it here (when needed). */
6263fa15762SRichard Tran Mills   if (!aijmkl->sparse_optimized) {
6273fa15762SRichard Tran Mills     MatSeqAIJMKL_create_mkl_handle(A);
6283fa15762SRichard Tran Mills   }
6293fa15762SRichard Tran Mills 
630df555b71SRichard Tran Mills   /* Call MKL sparse BLAS routine to do the MatMult. */
631df555b71SRichard Tran Mills   if (zz == yy) {
632df555b71SRichard Tran Mills     /* If zz and yy are the same vector, we can use mkl_sparse_x_mv, which calculates y = alpha*A*x + beta*y,
633df555b71SRichard Tran Mills      * with alpha and beta both set to 1.0. */
634db63039fSRichard Tran Mills     stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,1.0,z);
635df555b71SRichard Tran Mills   } else {
636df555b71SRichard Tran Mills     /* zz and yy are different vectors, so we call mkl_sparse_x_mv with alpha=1.0 and beta=0.0, and then
637df555b71SRichard Tran Mills      * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */
638db63039fSRichard Tran Mills     stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,z);
639969800c5SRichard Tran Mills     for (i=0; i<n; i++) {
640df555b71SRichard Tran Mills       z[i] += y[i];
641df555b71SRichard Tran Mills     }
642df555b71SRichard Tran Mills   }
643df555b71SRichard Tran Mills 
644df555b71SRichard Tran Mills   ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr);
645df555b71SRichard Tran Mills   ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr);
646df555b71SRichard Tran Mills   ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr);
647df555b71SRichard Tran Mills   if (stat != SPARSE_STATUS_SUCCESS) {
648df555b71SRichard Tran Mills     PetscFunctionReturn(PETSC_ERR_LIB);
649df555b71SRichard Tran Mills   }
650df555b71SRichard Tran Mills   PetscFunctionReturn(0);
651df555b71SRichard Tran Mills }
652d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */
653df555b71SRichard Tran Mills 
65487c2a1d7SRichard Tran Mills PetscErrorCode MatScale_SeqAIJMKL(Mat inA,PetscScalar alpha)
655db63039fSRichard Tran Mills {
656db63039fSRichard Tran Mills   PetscErrorCode ierr;
657db63039fSRichard Tran Mills 
65887c2a1d7SRichard Tran Mills   PetscFunctionBegin;
659db63039fSRichard Tran Mills   ierr = MatScale_SeqAIJ(inA,alpha);CHKERRQ(ierr);
660db63039fSRichard Tran Mills   ierr = MatSeqAIJMKL_create_mkl_handle(inA);CHKERRQ(ierr);
661db63039fSRichard Tran Mills   PetscFunctionReturn(0);
662db63039fSRichard Tran Mills }
663df555b71SRichard Tran Mills 
66487c2a1d7SRichard Tran Mills PetscErrorCode MatDiagonalScale_SeqAIJMKL(Mat A,Vec ll,Vec rr)
66587c2a1d7SRichard Tran Mills {
66687c2a1d7SRichard Tran Mills   PetscErrorCode ierr;
66787c2a1d7SRichard Tran Mills 
66887c2a1d7SRichard Tran Mills   PetscFunctionBegin;
66987c2a1d7SRichard Tran Mills   ierr = MatDiagonalScale_SeqAIJ(A,ll,rr);CHKERRQ(ierr);
67087c2a1d7SRichard Tran Mills   ierr = MatSeqAIJMKL_create_mkl_handle(A);CHKERRQ(ierr);
67187c2a1d7SRichard Tran Mills   PetscFunctionReturn(0);
67287c2a1d7SRichard Tran Mills }
67387c2a1d7SRichard Tran Mills 
67487c2a1d7SRichard Tran Mills PetscErrorCode MatDiagonalSet_SeqAIJMKL(Mat Y,Vec D,InsertMode is)
67587c2a1d7SRichard Tran Mills {
67687c2a1d7SRichard Tran Mills   PetscErrorCode ierr;
67787c2a1d7SRichard Tran Mills 
67887c2a1d7SRichard Tran Mills   PetscFunctionBegin;
67987c2a1d7SRichard Tran Mills   ierr = MatDiagonalSet_SeqAIJ(Y,D,is);CHKERRQ(ierr);
68087c2a1d7SRichard Tran Mills   ierr = MatSeqAIJMKL_create_mkl_handle(Y);CHKERRQ(ierr);
68187c2a1d7SRichard Tran Mills   PetscFunctionReturn(0);
68287c2a1d7SRichard Tran Mills }
68387c2a1d7SRichard Tran Mills 
68487c2a1d7SRichard Tran Mills PetscErrorCode MatAXPY_SeqAIJMKL(Mat Y,PetscScalar a,Mat X,MatStructure str)
68587c2a1d7SRichard Tran Mills {
68687c2a1d7SRichard Tran Mills   PetscErrorCode ierr;
68787c2a1d7SRichard Tran Mills 
68887c2a1d7SRichard Tran Mills   PetscFunctionBegin;
68987c2a1d7SRichard Tran Mills   ierr = MatAXPY_SeqAIJ(Y,a,X,str);CHKERRQ(ierr);
69087c2a1d7SRichard Tran Mills   if (str == SAME_NONZERO_PATTERN) {
69187c2a1d7SRichard Tran Mills     /* MatAssemblyEnd() is not called if SAME_NONZERO_PATTERN, so we need to force update of the MKL matrix handle. */
69287c2a1d7SRichard Tran Mills     ierr = MatSeqAIJMKL_create_mkl_handle(Y);CHKERRQ(ierr);
69387c2a1d7SRichard Tran Mills   }
69487c2a1d7SRichard Tran Mills   PetscFunctionReturn(0);
69587c2a1d7SRichard Tran Mills }
69687c2a1d7SRichard Tran Mills 
6974a2a386eSRichard Tran Mills /* MatConvert_SeqAIJ_SeqAIJMKL converts a SeqAIJ matrix into a
6984a2a386eSRichard Tran Mills  * SeqAIJMKL matrix.  This routine is called by the MatCreate_SeqMKLAIJ()
6994a2a386eSRichard Tran Mills  * routine, but can also be used to convert an assembled SeqAIJ matrix
7004a2a386eSRichard Tran Mills  * into a SeqAIJMKL one. */
7014a2a386eSRichard Tran Mills PETSC_INTERN PetscErrorCode MatConvert_SeqAIJ_SeqAIJMKL(Mat A,MatType type,MatReuse reuse,Mat *newmat)
7024a2a386eSRichard Tran Mills {
7034a2a386eSRichard Tran Mills   PetscErrorCode ierr;
7044a2a386eSRichard Tran Mills   Mat            B = *newmat;
7054a2a386eSRichard Tran Mills   Mat_SeqAIJMKL  *aijmkl;
706c9d46305SRichard Tran Mills   PetscBool      set;
707e9c94282SRichard Tran Mills   PetscBool      sametype;
7084a2a386eSRichard Tran Mills 
7094a2a386eSRichard Tran Mills   PetscFunctionBegin;
7104a2a386eSRichard Tran Mills   if (reuse == MAT_INITIAL_MATRIX) {
7114a2a386eSRichard Tran Mills     ierr = MatDuplicate(A,MAT_COPY_VALUES,&B);CHKERRQ(ierr);
7124a2a386eSRichard Tran Mills   }
7134a2a386eSRichard Tran Mills 
714e9c94282SRichard Tran Mills   ierr = PetscObjectTypeCompare((PetscObject)A,type,&sametype);CHKERRQ(ierr);
715e9c94282SRichard Tran Mills   if (sametype) PetscFunctionReturn(0);
716e9c94282SRichard Tran Mills 
7174a2a386eSRichard Tran Mills   ierr     = PetscNewLog(B,&aijmkl);CHKERRQ(ierr);
7184a2a386eSRichard Tran Mills   B->spptr = (void*) aijmkl;
7194a2a386eSRichard Tran Mills 
720df555b71SRichard Tran Mills   /* Set function pointers for methods that we inherit from AIJ but override.
721969800c5SRichard Tran Mills    * We also parse some command line options below, since those determine some of the methods we point to. */
7224a2a386eSRichard Tran Mills   B->ops->duplicate        = MatDuplicate_SeqAIJMKL;
7234a2a386eSRichard Tran Mills   B->ops->assemblyend      = MatAssemblyEnd_SeqAIJMKL;
7244a2a386eSRichard Tran Mills   B->ops->destroy          = MatDestroy_SeqAIJMKL;
725c9d46305SRichard Tran Mills 
7264abfa3b3SRichard Tran Mills   aijmkl->sparse_optimized = PETSC_FALSE;
727d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
728d995685eSRichard Tran Mills   aijmkl->no_SpMV2 = PETSC_FALSE;  /* Default to using the SpMV2 routines if our MKL supports them. */
729a8327b06SKarl Rupp #else
730d995685eSRichard Tran Mills   aijmkl->no_SpMV2 = PETSC_TRUE;
731d995685eSRichard Tran Mills #endif
7325b49642aSRichard Tran Mills   aijmkl->eager_inspection = PETSC_FALSE;
7334abfa3b3SRichard Tran Mills 
7344abfa3b3SRichard Tran Mills   /* Parse command line options. */
735c9d46305SRichard Tran Mills   ierr = PetscOptionsBegin(PetscObjectComm((PetscObject)A),((PetscObject)A)->prefix,"AIJMKL Options","Mat");CHKERRQ(ierr);
736c9d46305SRichard Tran Mills   ierr = PetscOptionsBool("-mat_aijmkl_no_spmv2","NoSPMV2","None",(PetscBool)aijmkl->no_SpMV2,(PetscBool*)&aijmkl->no_SpMV2,&set);CHKERRQ(ierr);
7375b49642aSRichard Tran Mills   ierr = PetscOptionsBool("-mat_aijmkl_eager_inspection","Eager Inspection","None",(PetscBool)aijmkl->eager_inspection,(PetscBool*)&aijmkl->eager_inspection,&set);CHKERRQ(ierr);
738c9d46305SRichard Tran Mills   ierr = PetscOptionsEnd();CHKERRQ(ierr);
739d995685eSRichard Tran Mills #ifndef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
740d995685eSRichard Tran Mills   if(!aijmkl->no_SpMV2) {
741d995685eSRichard Tran Mills     ierr = PetscInfo(B,"User requested use of MKL SpMV2 routines, but MKL version does not support mkl_sparse_optimize();  defaulting to non-SpMV2 routines.\n");
742d995685eSRichard Tran Mills     aijmkl->no_SpMV2 = PETSC_TRUE;
743d995685eSRichard Tran Mills   }
744d995685eSRichard Tran Mills #endif
745c9d46305SRichard Tran Mills 
746c9d46305SRichard Tran Mills   if(!aijmkl->no_SpMV2) {
747d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE
748df555b71SRichard Tran Mills     B->ops->mult             = MatMult_SeqAIJMKL_SpMV2;
749969800c5SRichard Tran Mills     B->ops->multtranspose    = MatMultTranspose_SeqAIJMKL_SpMV2;
750df555b71SRichard Tran Mills     B->ops->multadd          = MatMultAdd_SeqAIJMKL_SpMV2;
751969800c5SRichard Tran Mills     B->ops->multtransposeadd = MatMultTransposeAdd_SeqAIJMKL_SpMV2;
752d995685eSRichard Tran Mills #endif
753c9d46305SRichard Tran Mills   } else {
7544a2a386eSRichard Tran Mills     B->ops->mult             = MatMult_SeqAIJMKL;
755969800c5SRichard Tran Mills     B->ops->multtranspose    = MatMultTranspose_SeqAIJMKL;
7564a2a386eSRichard Tran Mills     B->ops->multadd          = MatMultAdd_SeqAIJMKL;
757969800c5SRichard Tran Mills     B->ops->multtransposeadd = MatMultTransposeAdd_SeqAIJMKL;
758c9d46305SRichard Tran Mills   }
7594a2a386eSRichard Tran Mills 
760db63039fSRichard Tran Mills   B->ops->scale              = MatScale_SeqAIJMKL;
76187c2a1d7SRichard Tran Mills   B->ops->diagonalscale      = MatDiagonalScale_SeqAIJMKL;
76287c2a1d7SRichard Tran Mills   B->ops->diagonalset        = MatDiagonalSet_SeqAIJMKL;
76387c2a1d7SRichard Tran Mills   B->ops->axpy               = MatAXPY_SeqAIJMKL;
764db63039fSRichard Tran Mills 
765db63039fSRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatScale_SeqAIJMKL_C",MatScale_SeqAIJMKL);CHKERRQ(ierr);
7664a2a386eSRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatConvert_seqaijmkl_seqaij_C",MatConvert_SeqAIJMKL_SeqAIJ);CHKERRQ(ierr);
767e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMult_seqdense_seqaijmkl_C",MatMatMult_SeqDense_SeqAIJ);CHKERRQ(ierr);
768e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultSymbolic_seqdense_seqaijmkl_C",MatMatMultSymbolic_SeqDense_SeqAIJ);CHKERRQ(ierr);
769e9c94282SRichard Tran Mills   ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultNumeric_seqdense_seqaijmkl_C",MatMatMultNumeric_SeqDense_SeqAIJ);CHKERRQ(ierr);
7704a2a386eSRichard Tran Mills 
7714a2a386eSRichard Tran Mills   ierr    = PetscObjectChangeTypeName((PetscObject)B,MATSEQAIJMKL);CHKERRQ(ierr);
7724a2a386eSRichard Tran Mills   *newmat = B;
7734a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
7744a2a386eSRichard Tran Mills }
7754a2a386eSRichard Tran Mills 
7764a2a386eSRichard Tran Mills /*@C
7774a2a386eSRichard Tran Mills    MatCreateSeqAIJMKL - Creates a sparse matrix of type SEQAIJMKL.
7784a2a386eSRichard Tran Mills    This type inherits from AIJ and is largely identical, but uses sparse BLAS
7794a2a386eSRichard Tran Mills    routines from Intel MKL whenever possible.
78090147e49SRichard Tran Mills    MatMult, MatMultAdd, MatMultTranspose, and MatMultTransposeAdd
78190147e49SRichard Tran Mills    operations are currently supported.
78290147e49SRichard Tran Mills    If the installed version of MKL supports the "SpMV2" sparse
78390147e49SRichard Tran Mills    inspector-executor routines, then those are used by default.
78490147e49SRichard Tran Mills 
7854a2a386eSRichard Tran Mills    Collective on MPI_Comm
7864a2a386eSRichard Tran Mills 
7874a2a386eSRichard Tran Mills    Input Parameters:
7884a2a386eSRichard Tran Mills +  comm - MPI communicator, set to PETSC_COMM_SELF
7894a2a386eSRichard Tran Mills .  m - number of rows
7904a2a386eSRichard Tran Mills .  n - number of columns
7914a2a386eSRichard Tran Mills .  nz - number of nonzeros per row (same for all rows)
7924a2a386eSRichard Tran Mills -  nnz - array containing the number of nonzeros in the various rows
7934a2a386eSRichard Tran Mills          (possibly different for each row) or NULL
7944a2a386eSRichard Tran Mills 
7954a2a386eSRichard Tran Mills    Output Parameter:
7964a2a386eSRichard Tran Mills .  A - the matrix
7974a2a386eSRichard Tran Mills 
79890147e49SRichard Tran Mills    Options Database Keys:
79990147e49SRichard Tran Mills .  -mat_aijmkl_no_spmv2 - disables use of the SpMV2 inspector-executor routines
80090147e49SRichard Tran Mills 
8014a2a386eSRichard Tran Mills    Notes:
8024a2a386eSRichard Tran Mills    If nnz is given then nz is ignored
8034a2a386eSRichard Tran Mills 
8044a2a386eSRichard Tran Mills    Level: intermediate
8054a2a386eSRichard Tran Mills 
80690147e49SRichard Tran Mills .keywords: matrix, MKL, sparse, parallel
8074a2a386eSRichard Tran Mills 
8084a2a386eSRichard Tran Mills .seealso: MatCreate(), MatCreateMPIAIJMKL(), MatSetValues()
8094a2a386eSRichard Tran Mills @*/
8104a2a386eSRichard Tran Mills PetscErrorCode  MatCreateSeqAIJMKL(MPI_Comm comm,PetscInt m,PetscInt n,PetscInt nz,const PetscInt nnz[],Mat *A)
8114a2a386eSRichard Tran Mills {
8124a2a386eSRichard Tran Mills   PetscErrorCode ierr;
8134a2a386eSRichard Tran Mills 
8144a2a386eSRichard Tran Mills   PetscFunctionBegin;
8154a2a386eSRichard Tran Mills   ierr = MatCreate(comm,A);CHKERRQ(ierr);
8164a2a386eSRichard Tran Mills   ierr = MatSetSizes(*A,m,n,m,n);CHKERRQ(ierr);
8174a2a386eSRichard Tran Mills   ierr = MatSetType(*A,MATSEQAIJMKL);CHKERRQ(ierr);
8184a2a386eSRichard Tran Mills   ierr = MatSeqAIJSetPreallocation_SeqAIJ(*A,nz,nnz);CHKERRQ(ierr);
8194a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
8204a2a386eSRichard Tran Mills }
8214a2a386eSRichard Tran Mills 
8224a2a386eSRichard Tran Mills PETSC_EXTERN PetscErrorCode MatCreate_SeqAIJMKL(Mat A)
8234a2a386eSRichard Tran Mills {
8244a2a386eSRichard Tran Mills   PetscErrorCode ierr;
8254a2a386eSRichard Tran Mills 
8264a2a386eSRichard Tran Mills   PetscFunctionBegin;
8274a2a386eSRichard Tran Mills   ierr = MatSetType(A,MATSEQAIJ);CHKERRQ(ierr);
8284a2a386eSRichard Tran Mills   ierr = MatConvert_SeqAIJ_SeqAIJMKL(A,MATSEQAIJMKL,MAT_INPLACE_MATRIX,&A);CHKERRQ(ierr);
8294a2a386eSRichard Tran Mills   PetscFunctionReturn(0);
8304a2a386eSRichard Tran Mills }
831