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. */ 174abfa3b3SRichard Tran Mills PetscBool sparse_optimized; /* If PETSC_TRUE, then mkl_sparse_optimize() has been called. */ 18b8cbc1fbSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 19df555b71SRichard Tran Mills sparse_matrix_t csrA; /* "Handle" used by SpMV2 inspector-executor routines. */ 20df555b71SRichard Tran Mills struct matrix_descr descr; 21b8cbc1fbSRichard Tran Mills #endif 224a2a386eSRichard Tran Mills } Mat_SeqAIJMKL; 234a2a386eSRichard Tran Mills 244a2a386eSRichard Tran Mills extern PetscErrorCode MatAssemblyEnd_SeqAIJ(Mat,MatAssemblyType); 254a2a386eSRichard Tran Mills 264a2a386eSRichard Tran Mills #undef __FUNCT__ 274a2a386eSRichard Tran Mills #define __FUNCT__ "MatConvert_SeqAIJMKL_SeqAIJ" 284a2a386eSRichard Tran Mills PETSC_INTERN PetscErrorCode MatConvert_SeqAIJMKL_SeqAIJ(Mat A,MatType type,MatReuse reuse,Mat *newmat) 294a2a386eSRichard Tran Mills { 304a2a386eSRichard Tran Mills /* This routine is only called to convert a MATAIJMKL to its base PETSc type, */ 314a2a386eSRichard Tran Mills /* so we will ignore 'MatType type'. */ 324a2a386eSRichard Tran Mills PetscErrorCode ierr; 334a2a386eSRichard Tran Mills Mat B = *newmat; 344a2a386eSRichard Tran Mills Mat_SeqAIJMKL *aijmkl=(Mat_SeqAIJMKL*)A->spptr; 354a2a386eSRichard Tran Mills 364a2a386eSRichard Tran Mills PetscFunctionBegin; 374a2a386eSRichard Tran Mills if (reuse == MAT_INITIAL_MATRIX) { 384a2a386eSRichard Tran Mills ierr = MatDuplicate(A,MAT_COPY_VALUES,&B);CHKERRQ(ierr); 39*e9c94282SRichard Tran Mills aijmkl = (Mat_SeqAIJMKL*)B->spptr; 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; 504a2a386eSRichard Tran Mills 51*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatConvert_seqaijmkl_seqaij_C",NULL);CHKERRQ(ierr); 52*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMult_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr); 53*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultSymbolic_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr); 54*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultNumeric_seqdense_seqaijmkl_C",NULL);CHKERRQ(ierr); 55*e9c94282SRichard Tran Mills 564abfa3b3SRichard Tran Mills /* Free everything in the Mat_SeqAIJMKL data structure. Currently, this 57*e9c94282SRichard Tran Mills * simply involves destroying the MKL sparse matrix handle and then freeing 58*e9c94282SRichard Tran Mills * the spptr pointer. */ 594abfa3b3SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 604abfa3b3SRichard Tran Mills if (aijmkl->sparse_optimized) { 610632b357SRichard Tran Mills sparse_status_t stat; 624abfa3b3SRichard Tran Mills stat = mkl_sparse_destroy(aijmkl->csrA); 634abfa3b3SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 644abfa3b3SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 654abfa3b3SRichard Tran Mills } 664abfa3b3SRichard Tran Mills } 674abfa3b3SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 68*e9c94282SRichard Tran Mills ierr = PetscFree(B->spptr);CHKERRQ(ierr); 694a2a386eSRichard Tran Mills 704a2a386eSRichard Tran Mills /* Change the type of B to MATSEQAIJ. */ 714a2a386eSRichard Tran Mills ierr = PetscObjectChangeTypeName((PetscObject)B, MATSEQAIJ);CHKERRQ(ierr); 724a2a386eSRichard Tran Mills 734a2a386eSRichard Tran Mills *newmat = B; 744a2a386eSRichard Tran Mills PetscFunctionReturn(0); 754a2a386eSRichard Tran Mills } 764a2a386eSRichard Tran Mills 774a2a386eSRichard Tran Mills #undef __FUNCT__ 784a2a386eSRichard Tran Mills #define __FUNCT__ "MatDestroy_SeqAIJMKL" 794a2a386eSRichard Tran Mills PetscErrorCode MatDestroy_SeqAIJMKL(Mat A) 804a2a386eSRichard Tran Mills { 814a2a386eSRichard Tran Mills PetscErrorCode ierr; 824a2a386eSRichard Tran Mills Mat_SeqAIJMKL *aijmkl = (Mat_SeqAIJMKL*) A->spptr; 834a2a386eSRichard Tran Mills 844a2a386eSRichard Tran Mills PetscFunctionBegin; 85*e9c94282SRichard Tran Mills 86*e9c94282SRichard Tran Mills /* If MatHeaderMerge() was used, then this SeqAIJMKL matrix will not have an 87*e9c94282SRichard Tran Mills * spptr pointer. */ 88*e9c94282SRichard Tran Mills if (aijmkl) { 894a2a386eSRichard Tran Mills /* Clean up everything in the Mat_SeqAIJMKL data structure, then free A->spptr. */ 904abfa3b3SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 914abfa3b3SRichard Tran Mills if (aijmkl->sparse_optimized) { 924abfa3b3SRichard Tran Mills sparse_status_t stat = SPARSE_STATUS_SUCCESS; 934abfa3b3SRichard Tran Mills stat = mkl_sparse_destroy(aijmkl->csrA); 944abfa3b3SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 954abfa3b3SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 964abfa3b3SRichard Tran Mills } 974abfa3b3SRichard Tran Mills } 984abfa3b3SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 994a2a386eSRichard Tran Mills ierr = PetscFree(A->spptr);CHKERRQ(ierr); 100*e9c94282SRichard Tran Mills } 1014a2a386eSRichard Tran Mills 1024a2a386eSRichard Tran Mills /* Change the type of A back to SEQAIJ and use MatDestroy_SeqAIJ() 1034a2a386eSRichard Tran Mills * to destroy everything that remains. */ 1044a2a386eSRichard Tran Mills ierr = PetscObjectChangeTypeName((PetscObject)A, MATSEQAIJ);CHKERRQ(ierr); 1054a2a386eSRichard Tran Mills /* Note that I don't call MatSetType(). I believe this is because that 1064a2a386eSRichard Tran Mills * is only to be called when *building* a matrix. I could be wrong, but 1074a2a386eSRichard Tran Mills * that is how things work for the SuperLU matrix class. */ 1084a2a386eSRichard Tran Mills ierr = MatDestroy_SeqAIJ(A);CHKERRQ(ierr); 1094a2a386eSRichard Tran Mills PetscFunctionReturn(0); 1104a2a386eSRichard Tran Mills } 1114a2a386eSRichard Tran Mills 1124a2a386eSRichard Tran Mills #undef __FUNCT__ 1134a2a386eSRichard Tran Mills #define __FUNCT__ "MatDuplicate_SeqAIJMKL" 1144a2a386eSRichard Tran Mills PetscErrorCode MatDuplicate_SeqAIJMKL(Mat A, MatDuplicateOption op, Mat *M) 1154a2a386eSRichard Tran Mills { 1164a2a386eSRichard Tran Mills PetscErrorCode ierr; 1170632b357SRichard Tran Mills Mat_SeqAIJMKL *aijmkl; 1180632b357SRichard Tran Mills Mat_SeqAIJMKL *aijmkl_dest; 1194a2a386eSRichard Tran Mills 1204a2a386eSRichard Tran Mills PetscFunctionBegin; 1214a2a386eSRichard Tran Mills ierr = MatDuplicate_SeqAIJ(A,op,M);CHKERRQ(ierr); 1220632b357SRichard Tran Mills aijmkl = (Mat_SeqAIJMKL*) A->spptr; 1230632b357SRichard Tran Mills aijmkl_dest = (Mat_SeqAIJMKL*) (*M)->spptr; 124a9041576SRichard Tran Mills ierr = PetscMemcpy(aijmkl_dest,aijmkl,sizeof(Mat_SeqAIJMKL));CHKERRQ(ierr); 1250632b357SRichard Tran Mills aijmkl_dest->sparse_optimized = PETSC_FALSE; 1260632b357SRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 1270632b357SRichard Tran Mills aijmkl_dest->csrA = NULL; 1280632b357SRichard Tran Mills if (!aijmkl->no_SpMV2) { 1290632b357SRichard Tran Mills sparse_status_t stat; 1300632b357SRichard Tran Mills stat = mkl_sparse_copy(aijmkl->csrA,aijmkl->descr,&aijmkl_dest->csrA); 1310632b357SRichard Tran Mills stat = mkl_sparse_optimize(aijmkl_dest->csrA); 1320632b357SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 1330632b357SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 1340632b357SRichard Tran Mills } 1350632b357SRichard Tran Mills aijmkl_dest->sparse_optimized = PETSC_TRUE; 1360632b357SRichard Tran Mills } 1370632b357SRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 1384a2a386eSRichard Tran Mills PetscFunctionReturn(0); 1394a2a386eSRichard Tran Mills } 1404a2a386eSRichard Tran Mills 1414a2a386eSRichard Tran Mills #undef __FUNCT__ 1424a2a386eSRichard Tran Mills #define __FUNCT__ "MatAssemblyEnd_SeqAIJMKL" 1434a2a386eSRichard Tran Mills PetscErrorCode MatAssemblyEnd_SeqAIJMKL(Mat A, MatAssemblyType mode) 1444a2a386eSRichard Tran Mills { 1454a2a386eSRichard Tran Mills PetscErrorCode ierr; 1464a2a386eSRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 147df555b71SRichard Tran Mills Mat_SeqAIJMKL *aijmkl; 148df555b71SRichard Tran Mills 149df555b71SRichard Tran Mills MatScalar *aa; 150df555b71SRichard Tran Mills PetscInt n; 151df555b71SRichard Tran Mills PetscInt *aj,*ai; 1524a2a386eSRichard Tran Mills 1534a2a386eSRichard Tran Mills PetscFunctionBegin; 1544a2a386eSRichard Tran Mills if (mode == MAT_FLUSH_ASSEMBLY) PetscFunctionReturn(0); 1554a2a386eSRichard Tran Mills 1564a2a386eSRichard Tran Mills /* Since a MATSEQAIJMKL matrix is really just a MATSEQAIJ with some 1574a2a386eSRichard Tran Mills * extra information and some different methods, call the AssemblyEnd 1584a2a386eSRichard Tran Mills * routine for a MATSEQAIJ. 1594a2a386eSRichard Tran Mills * I'm not sure if this is the best way to do this, but it avoids 1604a2a386eSRichard Tran Mills * a lot of code duplication. 1614a2a386eSRichard Tran Mills * I also note that currently MATSEQAIJMKL doesn't know anything about 1624a2a386eSRichard Tran Mills * the Mat_CompressedRow data structure that SeqAIJ now uses when there 1634a2a386eSRichard Tran Mills * are many zero rows. If the SeqAIJ assembly end routine decides to use 1644a2a386eSRichard Tran Mills * this, this may break things. (Don't know... haven't looked at it. 1654a2a386eSRichard Tran Mills * Do I need to disable this somehow?) */ 1664a2a386eSRichard Tran Mills a->inode.use = PETSC_FALSE; /* Must disable: otherwise the MKL routines won't get used. */ 1674a2a386eSRichard Tran Mills ierr = MatAssemblyEnd_SeqAIJ(A, mode);CHKERRQ(ierr); 1684a2a386eSRichard Tran Mills 169df555b71SRichard Tran Mills aijmkl = (Mat_SeqAIJMKL*) A->spptr; 170d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 171c9d46305SRichard Tran Mills if (!aijmkl->no_SpMV2) { 1720632b357SRichard Tran Mills sparse_status_t stat; 1730632b357SRichard Tran Mills if (aijmkl->sparse_optimized) { 1740632b357SRichard Tran Mills /* Matrix has been previously assembled and optimized. Must destroy old 1750632b357SRichard Tran Mills * matrix handle before running the optimization step again. */ 1760632b357SRichard Tran Mills sparse_status_t stat; 1770632b357SRichard Tran Mills stat = mkl_sparse_destroy(aijmkl->csrA); 1780632b357SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 1790632b357SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 1800632b357SRichard Tran Mills } 1810632b357SRichard Tran Mills } 182c9d46305SRichard Tran Mills /* Now perform the SpMV2 setup and matrix optimization. */ 183df555b71SRichard Tran Mills aijmkl->descr.type = SPARSE_MATRIX_TYPE_GENERAL; 184df555b71SRichard Tran Mills aijmkl->descr.mode = SPARSE_FILL_MODE_LOWER; 185df555b71SRichard Tran Mills aijmkl->descr.diag = SPARSE_DIAG_NON_UNIT; 186df555b71SRichard Tran Mills n = A->rmap->n; 187df555b71SRichard Tran Mills aj = a->j; /* aj[k] gives column index for element aa[k]. */ 188df555b71SRichard Tran Mills aa = a->a; /* Nonzero elements stored row-by-row. */ 189df555b71SRichard Tran Mills ai = a->i; /* ai[k] is the position in aa and aj where row k starts. */ 190df555b71SRichard Tran Mills stat = mkl_sparse_x_create_csr (&aijmkl->csrA,SPARSE_INDEX_BASE_ZERO,n,n,ai,ai+1,aj,aa); 191df555b71SRichard Tran Mills stat = mkl_sparse_set_mv_hint(aijmkl->csrA,SPARSE_OPERATION_NON_TRANSPOSE,aijmkl->descr,1000); 192df555b71SRichard Tran Mills stat = mkl_sparse_set_memory_hint(aijmkl->csrA,SPARSE_MEMORY_AGGRESSIVE); 193df555b71SRichard Tran Mills stat = mkl_sparse_optimize(aijmkl->csrA); 194df555b71SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 195df555b71SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 196df555b71SRichard Tran Mills } 1974abfa3b3SRichard Tran Mills aijmkl->sparse_optimized = PETSC_TRUE; 198c9d46305SRichard Tran Mills } 199d995685eSRichard Tran Mills #endif 200df555b71SRichard Tran Mills 2014a2a386eSRichard Tran Mills PetscFunctionReturn(0); 2024a2a386eSRichard Tran Mills } 2034a2a386eSRichard Tran Mills 2044a2a386eSRichard Tran Mills #undef __FUNCT__ 2054a2a386eSRichard Tran Mills #define __FUNCT__ "MatMult_SeqAIJMKL" 2064a2a386eSRichard Tran Mills PetscErrorCode MatMult_SeqAIJMKL(Mat A,Vec xx,Vec yy) 2074a2a386eSRichard Tran Mills { 2084a2a386eSRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 2094a2a386eSRichard Tran Mills const PetscScalar *x; 2104a2a386eSRichard Tran Mills PetscScalar *y; 2114a2a386eSRichard Tran Mills const MatScalar *aa; 2124a2a386eSRichard Tran Mills PetscErrorCode ierr; 2134a2a386eSRichard Tran Mills PetscInt m=A->rmap->n; 2144a2a386eSRichard Tran Mills const PetscInt *aj,*ai; 2154a2a386eSRichard Tran Mills 2164a2a386eSRichard Tran Mills /* Variables not in MatMult_SeqAIJ. */ 217ff03dc53SRichard Tran Mills char transa = 'n'; /* Used to indicate to MKL that we are not computing the transpose product. */ 218ff03dc53SRichard Tran Mills 219ff03dc53SRichard Tran Mills PetscFunctionBegin; 220ff03dc53SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 221ff03dc53SRichard Tran Mills ierr = VecGetArray(yy,&y);CHKERRQ(ierr); 222ff03dc53SRichard Tran Mills aj = a->j; /* aj[k] gives column index for element aa[k]. */ 223ff03dc53SRichard Tran Mills aa = a->a; /* Nonzero elements stored row-by-row. */ 224ff03dc53SRichard Tran Mills ai = a->i; /* ai[k] is the position in aa and aj where row k starts. */ 225ff03dc53SRichard Tran Mills 226ff03dc53SRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 227ff03dc53SRichard Tran Mills mkl_cspblas_xcsrgemv(&transa,&m,aa,ai,aj,x,y); 228ff03dc53SRichard Tran Mills 229ff03dc53SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr); 230ff03dc53SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 231ff03dc53SRichard Tran Mills ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr); 232ff03dc53SRichard Tran Mills PetscFunctionReturn(0); 233ff03dc53SRichard Tran Mills } 234ff03dc53SRichard Tran Mills 235d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 236ff03dc53SRichard Tran Mills #undef __FUNCT__ 237df555b71SRichard Tran Mills #define __FUNCT__ "MatMult_SeqAIJMKL_SpMV2" 238df555b71SRichard Tran Mills PetscErrorCode MatMult_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy) 239df555b71SRichard Tran Mills { 240df555b71SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 241df555b71SRichard Tran Mills Mat_SeqAIJMKL *aijmkl=(Mat_SeqAIJMKL*)A->spptr; 242df555b71SRichard Tran Mills const PetscScalar *x; 243df555b71SRichard Tran Mills PetscScalar *y; 244df555b71SRichard Tran Mills PetscErrorCode ierr; 245df555b71SRichard Tran Mills sparse_status_t stat = SPARSE_STATUS_SUCCESS; 246df555b71SRichard Tran Mills 247df555b71SRichard Tran Mills PetscFunctionBegin; 248df555b71SRichard Tran Mills 249df555b71SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 250df555b71SRichard Tran Mills ierr = VecGetArray(yy,&y);CHKERRQ(ierr); 251df555b71SRichard Tran Mills 252df555b71SRichard Tran Mills /* Call MKL SpMV2 executor routine to do the MatMult. */ 253df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y); 254df555b71SRichard Tran Mills 255df555b71SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr); 256df555b71SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 257df555b71SRichard Tran Mills ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr); 258df555b71SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 259df555b71SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 260df555b71SRichard Tran Mills } 261df555b71SRichard Tran Mills PetscFunctionReturn(0); 262df555b71SRichard Tran Mills } 263d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 264df555b71SRichard Tran Mills 265df555b71SRichard Tran Mills #undef __FUNCT__ 266ff03dc53SRichard Tran Mills #define __FUNCT__ "MatMultTranspose_SeqAIJMKL" 267ff03dc53SRichard Tran Mills PetscErrorCode MatMultTranspose_SeqAIJMKL(Mat A,Vec xx,Vec yy) 268ff03dc53SRichard Tran Mills { 269ff03dc53SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 270ff03dc53SRichard Tran Mills const PetscScalar *x; 271ff03dc53SRichard Tran Mills PetscScalar *y; 272ff03dc53SRichard Tran Mills const MatScalar *aa; 273ff03dc53SRichard Tran Mills PetscErrorCode ierr; 274ff03dc53SRichard Tran Mills PetscInt m=A->rmap->n; 275ff03dc53SRichard Tran Mills const PetscInt *aj,*ai; 276ff03dc53SRichard Tran Mills 277ff03dc53SRichard Tran Mills /* Variables not in MatMultTranspose_SeqAIJ. */ 278ff03dc53SRichard Tran Mills char transa = 't'; /* Used to indicate to MKL that we are computing the transpose product. */ 2794a2a386eSRichard Tran Mills 2804a2a386eSRichard Tran Mills PetscFunctionBegin; 2814a2a386eSRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 2824a2a386eSRichard Tran Mills ierr = VecGetArray(yy,&y);CHKERRQ(ierr); 2834a2a386eSRichard Tran Mills aj = a->j; /* aj[k] gives column index for element aa[k]. */ 2844a2a386eSRichard Tran Mills aa = a->a; /* Nonzero elements stored row-by-row. */ 2854a2a386eSRichard Tran Mills ai = a->i; /* ai[k] is the position in aa and aj where row k starts. */ 2864a2a386eSRichard Tran Mills 2874a2a386eSRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 2884a2a386eSRichard Tran Mills mkl_cspblas_xcsrgemv(&transa,&m,aa,ai,aj,x,y); 2894a2a386eSRichard Tran Mills 2904a2a386eSRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr); 2914a2a386eSRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 2924a2a386eSRichard Tran Mills ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr); 2934a2a386eSRichard Tran Mills PetscFunctionReturn(0); 2944a2a386eSRichard Tran Mills } 2954a2a386eSRichard Tran Mills 296d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 2974a2a386eSRichard Tran Mills #undef __FUNCT__ 298df555b71SRichard Tran Mills #define __FUNCT__ "MatMultTranspose_SeqAIJMKL_SpMV2" 299df555b71SRichard Tran Mills PetscErrorCode MatMultTranspose_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy) 300df555b71SRichard Tran Mills { 301df555b71SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 302df555b71SRichard Tran Mills Mat_SeqAIJMKL *aijmkl=(Mat_SeqAIJMKL*)A->spptr; 303df555b71SRichard Tran Mills const PetscScalar *x; 304df555b71SRichard Tran Mills PetscScalar *y; 305df555b71SRichard Tran Mills PetscErrorCode ierr; 3060632b357SRichard Tran Mills sparse_status_t stat; 307df555b71SRichard Tran Mills 308df555b71SRichard Tran Mills PetscFunctionBegin; 309df555b71SRichard Tran Mills 310df555b71SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 311df555b71SRichard Tran Mills ierr = VecGetArray(yy,&y);CHKERRQ(ierr); 312df555b71SRichard Tran Mills 313df555b71SRichard Tran Mills /* Call MKL SpMV2 executor routine to do the MatMultTranspose. */ 314df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y); 315df555b71SRichard Tran Mills 316df555b71SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz - a->nonzerorowcnt);CHKERRQ(ierr); 317df555b71SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 318df555b71SRichard Tran Mills ierr = VecRestoreArray(yy,&y);CHKERRQ(ierr); 319df555b71SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 320df555b71SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 321df555b71SRichard Tran Mills } 322df555b71SRichard Tran Mills PetscFunctionReturn(0); 323df555b71SRichard Tran Mills } 324d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 325df555b71SRichard Tran Mills 326df555b71SRichard Tran Mills #undef __FUNCT__ 3274a2a386eSRichard Tran Mills #define __FUNCT__ "MatMultAdd_SeqAIJMKL" 3284a2a386eSRichard Tran Mills PetscErrorCode MatMultAdd_SeqAIJMKL(Mat A,Vec xx,Vec yy,Vec zz) 3294a2a386eSRichard Tran Mills { 3304a2a386eSRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 3314a2a386eSRichard Tran Mills const PetscScalar *x; 3324a2a386eSRichard Tran Mills PetscScalar *y,*z; 3334a2a386eSRichard Tran Mills const MatScalar *aa; 3344a2a386eSRichard Tran Mills PetscErrorCode ierr; 3354a2a386eSRichard Tran Mills PetscInt m=A->rmap->n; 3364a2a386eSRichard Tran Mills const PetscInt *aj,*ai; 3374a2a386eSRichard Tran Mills PetscInt i; 3384a2a386eSRichard Tran Mills 339ff03dc53SRichard Tran Mills /* Variables not in MatMultAdd_SeqAIJ. */ 340ff03dc53SRichard Tran Mills char transa = 'n'; /* Used to indicate to MKL that we are not computing the transpose product. */ 341a84739b8SRichard Tran Mills PetscScalar alpha = 1.0; 342a84739b8SRichard Tran Mills PetscScalar beta = 1.0; 343a84739b8SRichard Tran Mills char matdescra[6]; 344ff03dc53SRichard Tran Mills 345ff03dc53SRichard Tran Mills PetscFunctionBegin; 346a84739b8SRichard Tran Mills matdescra[0] = 'g'; /* Indicates to MKL that we using a general CSR matrix. */ 347a84739b8SRichard Tran Mills matdescra[3] = 'c'; /* Indicates to MKL that we use C-style (0-based) indexing. */ 348a84739b8SRichard Tran Mills 349ff03dc53SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 350ff03dc53SRichard Tran Mills ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 351ff03dc53SRichard Tran Mills aj = a->j; /* aj[k] gives column index for element aa[k]. */ 352ff03dc53SRichard Tran Mills aa = a->a; /* Nonzero elements stored row-by-row. */ 353ff03dc53SRichard Tran Mills ai = a->i; /* ai[k] is the position in aa and aj where row k starts. */ 354ff03dc53SRichard Tran Mills 355ff03dc53SRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 356a84739b8SRichard Tran Mills if (zz == yy) { 357a84739b8SRichard 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. */ 358a84739b8SRichard Tran Mills mkl_xcsrmv(&transa,&m,&m,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,y); 359a84739b8SRichard Tran Mills } else { 360a84739b8SRichard Tran Mills /* zz and yy are different vectors, so we call mkl_cspblas_xcsrgemv(), which calculates y = A*x, and then 361a84739b8SRichard Tran Mills * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */ 362ff03dc53SRichard Tran Mills mkl_cspblas_xcsrgemv(&transa,&m,aa,ai,aj,x,z); 363ff03dc53SRichard Tran Mills for (i=0; i<m; i++) { 364ff03dc53SRichard Tran Mills z[i] += y[i]; 365ff03dc53SRichard Tran Mills } 366a84739b8SRichard Tran Mills } 367ff03dc53SRichard Tran Mills 368ff03dc53SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr); 369ff03dc53SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 370ff03dc53SRichard Tran Mills ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 371ff03dc53SRichard Tran Mills PetscFunctionReturn(0); 372ff03dc53SRichard Tran Mills } 373ff03dc53SRichard Tran Mills 374d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 375ff03dc53SRichard Tran Mills #undef __FUNCT__ 376df555b71SRichard Tran Mills #define __FUNCT__ "MatMultAdd_SeqAIJMKL_SpMV2" 377df555b71SRichard Tran Mills PetscErrorCode MatMultAdd_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy,Vec zz) 378df555b71SRichard Tran Mills { 379df555b71SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 380df555b71SRichard Tran Mills Mat_SeqAIJMKL *aijmkl=(Mat_SeqAIJMKL*)A->spptr; 381df555b71SRichard Tran Mills const PetscScalar *x; 382df555b71SRichard Tran Mills PetscScalar *y,*z; 383df555b71SRichard Tran Mills PetscErrorCode ierr; 384df555b71SRichard Tran Mills PetscInt m=A->rmap->n; 385df555b71SRichard Tran Mills PetscInt i; 386df555b71SRichard Tran Mills 387df555b71SRichard Tran Mills /* Variables not in MatMultAdd_SeqAIJ. */ 388df555b71SRichard Tran Mills sparse_status_t stat = SPARSE_STATUS_SUCCESS; 389df555b71SRichard Tran Mills 390df555b71SRichard Tran Mills PetscFunctionBegin; 391df555b71SRichard Tran Mills 392df555b71SRichard Tran Mills 393df555b71SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 394df555b71SRichard Tran Mills ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 395df555b71SRichard Tran Mills 396df555b71SRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 397df555b71SRichard Tran Mills if (zz == yy) { 398df555b71SRichard 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, 399df555b71SRichard Tran Mills * with alpha and beta both set to 1.0. */ 400df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,1.0,y); 401df555b71SRichard Tran Mills } else { 402df555b71SRichard 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 403df555b71SRichard Tran Mills * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */ 404df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_NON_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y); 405df555b71SRichard Tran Mills for (i=0; i<m; i++) { 406df555b71SRichard Tran Mills z[i] += y[i]; 407df555b71SRichard Tran Mills } 408df555b71SRichard Tran Mills } 409df555b71SRichard Tran Mills 410df555b71SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr); 411df555b71SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 412df555b71SRichard Tran Mills ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 413df555b71SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 414df555b71SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 415df555b71SRichard Tran Mills } 416df555b71SRichard Tran Mills PetscFunctionReturn(0); 417df555b71SRichard Tran Mills } 418d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 419df555b71SRichard Tran Mills 420df555b71SRichard Tran Mills #undef __FUNCT__ 421ff03dc53SRichard Tran Mills #define __FUNCT__ "MatMultTransposeAdd_SeqAIJMKL" 422ff03dc53SRichard Tran Mills PetscErrorCode MatMultTransposeAdd_SeqAIJMKL(Mat A,Vec xx,Vec yy,Vec zz) 423ff03dc53SRichard Tran Mills { 424ff03dc53SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 425ff03dc53SRichard Tran Mills const PetscScalar *x; 426ff03dc53SRichard Tran Mills PetscScalar *y,*z; 427ff03dc53SRichard Tran Mills const MatScalar *aa; 428ff03dc53SRichard Tran Mills PetscErrorCode ierr; 429ff03dc53SRichard Tran Mills PetscInt m=A->rmap->n; 430ff03dc53SRichard Tran Mills const PetscInt *aj,*ai; 431ff03dc53SRichard Tran Mills PetscInt i; 432ff03dc53SRichard Tran Mills 433ff03dc53SRichard Tran Mills /* Variables not in MatMultTransposeAdd_SeqAIJ. */ 434ff03dc53SRichard Tran Mills char transa = 't'; /* Used to indicate to MKL that we are computing the transpose product. */ 435a84739b8SRichard Tran Mills PetscScalar alpha = 1.0; 436a84739b8SRichard Tran Mills PetscScalar beta = 1.0; 437a84739b8SRichard Tran Mills char matdescra[6]; 4384a2a386eSRichard Tran Mills 4394a2a386eSRichard Tran Mills PetscFunctionBegin; 440a84739b8SRichard Tran Mills matdescra[0] = 'g'; /* Indicates to MKL that we using a general CSR matrix. */ 441a84739b8SRichard Tran Mills matdescra[3] = 'c'; /* Indicates to MKL that we use C-style (0-based) indexing. */ 442a84739b8SRichard Tran Mills 4434a2a386eSRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 4444a2a386eSRichard Tran Mills ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 4454a2a386eSRichard Tran Mills aj = a->j; /* aj[k] gives column index for element aa[k]. */ 4464a2a386eSRichard Tran Mills aa = a->a; /* Nonzero elements stored row-by-row. */ 4474a2a386eSRichard Tran Mills ai = a->i; /* ai[k] is the position in aa and aj where row k starts. */ 4484a2a386eSRichard Tran Mills 4494a2a386eSRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 450a84739b8SRichard Tran Mills if (zz == yy) { 451a84739b8SRichard 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. */ 452a84739b8SRichard Tran Mills mkl_xcsrmv(&transa,&m,&m,&alpha,matdescra,aa,aj,ai,ai+1,x,&beta,y); 453a84739b8SRichard Tran Mills } else { 454a84739b8SRichard Tran Mills /* zz and yy are different vectors, so we call mkl_cspblas_xcsrgemv(), which calculates y = A*x, and then 455a84739b8SRichard Tran Mills * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */ 4564a2a386eSRichard Tran Mills mkl_cspblas_xcsrgemv(&transa,&m,aa,ai,aj,x,z); 4574a2a386eSRichard Tran Mills for (i=0; i<m; i++) { 4584a2a386eSRichard Tran Mills z[i] += y[i]; 4594a2a386eSRichard Tran Mills } 460a84739b8SRichard Tran Mills } 4614a2a386eSRichard Tran Mills 4624a2a386eSRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr); 4634a2a386eSRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 4644a2a386eSRichard Tran Mills ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 4654a2a386eSRichard Tran Mills PetscFunctionReturn(0); 4664a2a386eSRichard Tran Mills } 4674a2a386eSRichard Tran Mills 468d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 469df555b71SRichard Tran Mills #undef __FUNCT__ 470df555b71SRichard Tran Mills #define __FUNCT__ "MatMultTransposeAdd_SeqAIJMKL_SpMV2" 471df555b71SRichard Tran Mills PetscErrorCode MatMultTransposeAdd_SeqAIJMKL_SpMV2(Mat A,Vec xx,Vec yy,Vec zz) 472df555b71SRichard Tran Mills { 473df555b71SRichard Tran Mills Mat_SeqAIJ *a = (Mat_SeqAIJ*)A->data; 474df555b71SRichard Tran Mills Mat_SeqAIJMKL *aijmkl=(Mat_SeqAIJMKL*)A->spptr; 475df555b71SRichard Tran Mills const PetscScalar *x; 476df555b71SRichard Tran Mills PetscScalar *y,*z; 477df555b71SRichard Tran Mills PetscErrorCode ierr; 478df555b71SRichard Tran Mills PetscInt m=A->rmap->n; 479df555b71SRichard Tran Mills PetscInt i; 480df555b71SRichard Tran Mills 481df555b71SRichard Tran Mills /* Variables not in MatMultTransposeAdd_SeqAIJ. */ 482df555b71SRichard Tran Mills sparse_status_t stat = SPARSE_STATUS_SUCCESS; 483df555b71SRichard Tran Mills 484df555b71SRichard Tran Mills PetscFunctionBegin; 485df555b71SRichard Tran Mills 486df555b71SRichard Tran Mills ierr = VecGetArrayRead(xx,&x);CHKERRQ(ierr); 487df555b71SRichard Tran Mills ierr = VecGetArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 488df555b71SRichard Tran Mills 489df555b71SRichard Tran Mills /* Call MKL sparse BLAS routine to do the MatMult. */ 490df555b71SRichard Tran Mills if (zz == yy) { 491df555b71SRichard 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, 492df555b71SRichard Tran Mills * with alpha and beta both set to 1.0. */ 493df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,1.0,y); 494df555b71SRichard Tran Mills } else { 495df555b71SRichard 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 496df555b71SRichard Tran Mills * we add the contents of vector yy to the result; MKL sparse BLAS does not have a MatMultAdd equivalent. */ 497df555b71SRichard Tran Mills stat = mkl_sparse_x_mv(SPARSE_OPERATION_TRANSPOSE,1.0,aijmkl->csrA,aijmkl->descr,x,0.0,y); 498df555b71SRichard Tran Mills for (i=0; i<m; i++) { 499df555b71SRichard Tran Mills z[i] += y[i]; 500df555b71SRichard Tran Mills } 501df555b71SRichard Tran Mills } 502df555b71SRichard Tran Mills 503df555b71SRichard Tran Mills ierr = PetscLogFlops(2.0*a->nz);CHKERRQ(ierr); 504df555b71SRichard Tran Mills ierr = VecRestoreArrayRead(xx,&x);CHKERRQ(ierr); 505df555b71SRichard Tran Mills ierr = VecRestoreArrayPair(yy,zz,&y,&z);CHKERRQ(ierr); 506df555b71SRichard Tran Mills if (stat != SPARSE_STATUS_SUCCESS) { 507df555b71SRichard Tran Mills PetscFunctionReturn(PETSC_ERR_LIB); 508df555b71SRichard Tran Mills } 509df555b71SRichard Tran Mills PetscFunctionReturn(0); 510df555b71SRichard Tran Mills } 511d995685eSRichard Tran Mills #endif /* PETSC_HAVE_MKL_SPARSE_OPTIMIZE */ 512df555b71SRichard Tran Mills 513df555b71SRichard Tran Mills 5144a2a386eSRichard Tran Mills /* MatConvert_SeqAIJ_SeqAIJMKL converts a SeqAIJ matrix into a 5154a2a386eSRichard Tran Mills * SeqAIJMKL matrix. This routine is called by the MatCreate_SeqMKLAIJ() 5164a2a386eSRichard Tran Mills * routine, but can also be used to convert an assembled SeqAIJ matrix 5174a2a386eSRichard Tran Mills * into a SeqAIJMKL one. */ 5184a2a386eSRichard Tran Mills #undef __FUNCT__ 5194a2a386eSRichard Tran Mills #define __FUNCT__ "MatConvert_SeqAIJ_SeqAIJMKL" 5204a2a386eSRichard Tran Mills PETSC_INTERN PetscErrorCode MatConvert_SeqAIJ_SeqAIJMKL(Mat A,MatType type,MatReuse reuse,Mat *newmat) 5214a2a386eSRichard Tran Mills { 5224a2a386eSRichard Tran Mills PetscErrorCode ierr; 5234a2a386eSRichard Tran Mills Mat B = *newmat; 5244a2a386eSRichard Tran Mills Mat_SeqAIJMKL *aijmkl; 525c9d46305SRichard Tran Mills PetscBool set; 526*e9c94282SRichard Tran Mills PetscBool sametype; 5274a2a386eSRichard Tran Mills 5284a2a386eSRichard Tran Mills PetscFunctionBegin; 5294a2a386eSRichard Tran Mills if (reuse == MAT_INITIAL_MATRIX) { 5304a2a386eSRichard Tran Mills ierr = MatDuplicate(A,MAT_COPY_VALUES,&B);CHKERRQ(ierr); 5314a2a386eSRichard Tran Mills } 5324a2a386eSRichard Tran Mills 533*e9c94282SRichard Tran Mills ierr = PetscObjectTypeCompare((PetscObject)A,type,&sametype);CHKERRQ(ierr); 534*e9c94282SRichard Tran Mills if (sametype) PetscFunctionReturn(0); 535*e9c94282SRichard Tran Mills 5364a2a386eSRichard Tran Mills ierr = PetscNewLog(B,&aijmkl);CHKERRQ(ierr); 5374a2a386eSRichard Tran Mills B->spptr = (void*) aijmkl; 5384a2a386eSRichard Tran Mills 539df555b71SRichard Tran Mills /* Set function pointers for methods that we inherit from AIJ but override. 540*e9c94282SRichard Tran Mills * We also parse some command line options below, since those determine some of the methods we point to. 541*e9c94282SRichard Tran Mills * Note: Currently the transposed operations are not being set because I encounter memory corruption 542df555b71SRichard Tran Mills * when these are enabled. Need to look at this with Valgrind or similar. --RTM */ 5434a2a386eSRichard Tran Mills B->ops->duplicate = MatDuplicate_SeqAIJMKL; 5444a2a386eSRichard Tran Mills B->ops->assemblyend = MatAssemblyEnd_SeqAIJMKL; 5454a2a386eSRichard Tran Mills B->ops->destroy = MatDestroy_SeqAIJMKL; 546c9d46305SRichard Tran Mills 5474abfa3b3SRichard Tran Mills aijmkl->sparse_optimized = PETSC_FALSE; 548d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 549d995685eSRichard Tran Mills aijmkl->no_SpMV2 = PETSC_FALSE; /* Default to using the SpMV2 routines if our MKL supports them. */ 550d995685eSRichard Tran Mills #elif 551d995685eSRichard Tran Mills aijmkl->no_SpMV2 = PETSC_TRUE; 552d995685eSRichard Tran Mills #endif 5534abfa3b3SRichard Tran Mills 5544abfa3b3SRichard Tran Mills /* Parse command line options. */ 555c9d46305SRichard Tran Mills ierr = PetscOptionsBegin(PetscObjectComm((PetscObject)A),((PetscObject)A)->prefix,"AIJMKL Options","Mat");CHKERRQ(ierr); 556c9d46305SRichard Tran Mills ierr = PetscOptionsBool("-mat_aijmkl_no_spmv2","NoSPMV2","None",(PetscBool)aijmkl->no_SpMV2,(PetscBool*)&aijmkl->no_SpMV2,&set);CHKERRQ(ierr); 557c9d46305SRichard Tran Mills ierr = PetscOptionsEnd();CHKERRQ(ierr); 558d995685eSRichard Tran Mills #ifndef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 559d995685eSRichard Tran Mills if(!aijmkl->no_SpMV2) { 560d995685eSRichard 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"); 561d995685eSRichard Tran Mills aijmkl->no_SpMV2 = PETSC_TRUE; 562d995685eSRichard Tran Mills } 563d995685eSRichard Tran Mills #endif 564c9d46305SRichard Tran Mills 565c9d46305SRichard Tran Mills if(!aijmkl->no_SpMV2) { 566d995685eSRichard Tran Mills #ifdef PETSC_HAVE_MKL_SPARSE_OPTIMIZE 567df555b71SRichard Tran Mills B->ops->mult = MatMult_SeqAIJMKL_SpMV2; 568df555b71SRichard Tran Mills /* B->ops->multtranspose = MatMultTranspose_SeqAIJMKL_SpMV2; */ 569df555b71SRichard Tran Mills B->ops->multadd = MatMultAdd_SeqAIJMKL_SpMV2; 570df555b71SRichard Tran Mills /* B->ops->multtransposeadd = MatMultTransposeAdd_SeqAIJMKL_SpMV2; */ 571d995685eSRichard Tran Mills #endif 572c9d46305SRichard Tran Mills } else { 5734a2a386eSRichard Tran Mills B->ops->mult = MatMult_SeqAIJMKL; 574c9d46305SRichard Tran Mills /* B->ops->multtranspose = MatMultTranspose_SeqAIJMKL; */ 5754a2a386eSRichard Tran Mills B->ops->multadd = MatMultAdd_SeqAIJMKL; 576c9d46305SRichard Tran Mills /* B->ops->multtransposeadd = MatMultTransposeAdd_SeqAIJMKL; */ 577c9d46305SRichard Tran Mills } 5784a2a386eSRichard Tran Mills 5794a2a386eSRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatConvert_seqaijmkl_seqaij_C",MatConvert_SeqAIJMKL_SeqAIJ);CHKERRQ(ierr); 580*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMult_seqdense_seqaijmkl_C",MatMatMult_SeqDense_SeqAIJ);CHKERRQ(ierr); 581*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultSymbolic_seqdense_seqaijmkl_C",MatMatMultSymbolic_SeqDense_SeqAIJ);CHKERRQ(ierr); 582*e9c94282SRichard Tran Mills ierr = PetscObjectComposeFunction((PetscObject)B,"MatMatMultNumeric_seqdense_seqaijmkl_C",MatMatMultNumeric_SeqDense_SeqAIJ);CHKERRQ(ierr); 5834a2a386eSRichard Tran Mills 5844a2a386eSRichard Tran Mills ierr = PetscObjectChangeTypeName((PetscObject)B,MATSEQAIJMKL);CHKERRQ(ierr); 5854a2a386eSRichard Tran Mills *newmat = B; 5864a2a386eSRichard Tran Mills PetscFunctionReturn(0); 5874a2a386eSRichard Tran Mills } 5884a2a386eSRichard Tran Mills 5894a2a386eSRichard Tran Mills #undef __FUNCT__ 5904a2a386eSRichard Tran Mills #define __FUNCT__ "MatCreateSeqAIJMKL" 5914a2a386eSRichard Tran Mills /*@C 5924a2a386eSRichard Tran Mills MatCreateSeqAIJMKL - Creates a sparse matrix of type SEQAIJMKL. 5934a2a386eSRichard Tran Mills This type inherits from AIJ and is largely identical, but uses sparse BLAS 5944a2a386eSRichard Tran Mills routines from Intel MKL whenever possible. 5954a2a386eSRichard Tran Mills Collective on MPI_Comm 5964a2a386eSRichard Tran Mills 5974a2a386eSRichard Tran Mills Input Parameters: 5984a2a386eSRichard Tran Mills + comm - MPI communicator, set to PETSC_COMM_SELF 5994a2a386eSRichard Tran Mills . m - number of rows 6004a2a386eSRichard Tran Mills . n - number of columns 6014a2a386eSRichard Tran Mills . nz - number of nonzeros per row (same for all rows) 6024a2a386eSRichard Tran Mills - nnz - array containing the number of nonzeros in the various rows 6034a2a386eSRichard Tran Mills (possibly different for each row) or NULL 6044a2a386eSRichard Tran Mills 6054a2a386eSRichard Tran Mills Output Parameter: 6064a2a386eSRichard Tran Mills . A - the matrix 6074a2a386eSRichard Tran Mills 6084a2a386eSRichard Tran Mills Notes: 6094a2a386eSRichard Tran Mills If nnz is given then nz is ignored 6104a2a386eSRichard Tran Mills 6114a2a386eSRichard Tran Mills Level: intermediate 6124a2a386eSRichard Tran Mills 6134a2a386eSRichard Tran Mills .keywords: matrix, cray, sparse, parallel 6144a2a386eSRichard Tran Mills 6154a2a386eSRichard Tran Mills .seealso: MatCreate(), MatCreateMPIAIJMKL(), MatSetValues() 6164a2a386eSRichard Tran Mills @*/ 6174a2a386eSRichard Tran Mills PetscErrorCode MatCreateSeqAIJMKL(MPI_Comm comm,PetscInt m,PetscInt n,PetscInt nz,const PetscInt nnz[],Mat *A) 6184a2a386eSRichard Tran Mills { 6194a2a386eSRichard Tran Mills PetscErrorCode ierr; 6204a2a386eSRichard Tran Mills 6214a2a386eSRichard Tran Mills PetscFunctionBegin; 6224a2a386eSRichard Tran Mills ierr = MatCreate(comm,A);CHKERRQ(ierr); 6234a2a386eSRichard Tran Mills ierr = MatSetSizes(*A,m,n,m,n);CHKERRQ(ierr); 6244a2a386eSRichard Tran Mills ierr = MatSetType(*A,MATSEQAIJMKL);CHKERRQ(ierr); 6254a2a386eSRichard Tran Mills ierr = MatSeqAIJSetPreallocation_SeqAIJ(*A,nz,nnz);CHKERRQ(ierr); 6264a2a386eSRichard Tran Mills PetscFunctionReturn(0); 6274a2a386eSRichard Tran Mills } 6284a2a386eSRichard Tran Mills 6294a2a386eSRichard Tran Mills #undef __FUNCT__ 6304a2a386eSRichard Tran Mills #define __FUNCT__ "MatCreate_SeqAIJMKL" 6314a2a386eSRichard Tran Mills PETSC_EXTERN PetscErrorCode MatCreate_SeqAIJMKL(Mat A) 6324a2a386eSRichard Tran Mills { 6334a2a386eSRichard Tran Mills PetscErrorCode ierr; 6344a2a386eSRichard Tran Mills 6354a2a386eSRichard Tran Mills PetscFunctionBegin; 6364a2a386eSRichard Tran Mills ierr = MatSetType(A,MATSEQAIJ);CHKERRQ(ierr); 6374a2a386eSRichard Tran Mills ierr = MatConvert_SeqAIJ_SeqAIJMKL(A,MATSEQAIJMKL,MAT_INPLACE_MATRIX,&A);CHKERRQ(ierr); 6384a2a386eSRichard Tran Mills PetscFunctionReturn(0); 6394a2a386eSRichard Tran Mills } 640