Actual source code: matimpl.h

  1: #pragma once

  3: #include <petscmat.h>
  4: #include <petscmatcoarsen.h>
  5: #include <petsc/private/petscimpl.h>

  7: PETSC_EXTERN PetscBool      MatRegisterAllCalled;
  8: PETSC_EXTERN PetscBool      MatSeqAIJRegisterAllCalled;
  9: PETSC_EXTERN PetscBool      MatOrderingRegisterAllCalled;
 10: PETSC_EXTERN PetscBool      MatColoringRegisterAllCalled;
 11: PETSC_EXTERN PetscBool      MatPartitioningRegisterAllCalled;
 12: PETSC_EXTERN PetscBool      MatMeshToCellGraphRegisterAllCalled;
 13: PETSC_EXTERN PetscBool      MatCoarsenRegisterAllCalled;
 14: PETSC_EXTERN PetscErrorCode MatRegisterAll(void);
 15: PETSC_EXTERN PetscErrorCode MatOrderingRegisterAll(void);
 16: PETSC_EXTERN PetscErrorCode MatColoringRegisterAll(void);
 17: PETSC_EXTERN PetscErrorCode MatPartitioningRegisterAll(void);
 18: PETSC_EXTERN PetscErrorCode MatMeshToCellGraphRegisterAll(void);
 19: PETSC_EXTERN PetscErrorCode MatCoarsenRegisterAll(void);
 20: PETSC_EXTERN PetscErrorCode MatSeqAIJRegisterAll(void);

 22: /* Gets the root type of the input matrix's type (e.g., MATAIJ for MATSEQAIJ) */
 23: PETSC_EXTERN PetscErrorCode MatGetRootType_Private(Mat, MatType *);

 25: /* Gets the MPI type corresponding to the input matrix's type (e.g., MATMPIAIJ for MATSEQAIJ) */
 26: PETSC_INTERN PetscErrorCode MatGetMPIMatType_Private(Mat, MatType *);

 28: /*
 29:   This file defines the parts of the matrix data structure that are
 30:   shared by all matrix types.
 31: */

 33: /*
 34:     If you add entries here also add them to the MATOP enum
 35:     in include/petscmat.h
 36: */
 37: typedef struct _MatOps *MatOps;
 38: struct _MatOps {
 39:   /* 0*/
 40:   PetscErrorCode (*setvalues)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], const PetscScalar[], InsertMode);
 41:   PetscErrorCode (*getrow)(Mat, PetscInt, PetscInt *, PetscInt *[], PetscScalar *[]);
 42:   PetscErrorCode (*restorerow)(Mat, PetscInt, PetscInt *, PetscInt *[], PetscScalar *[]);
 43:   PetscErrorCode (*mult)(Mat, Vec, Vec);
 44:   PetscErrorCode (*multadd)(Mat, Vec, Vec, Vec);
 45:   /* 5*/
 46:   PetscErrorCode (*multtranspose)(Mat, Vec, Vec);
 47:   PetscErrorCode (*multtransposeadd)(Mat, Vec, Vec, Vec);
 48:   PetscErrorCode (*solve)(Mat, Vec, Vec);
 49:   PetscErrorCode (*solveadd)(Mat, Vec, Vec, Vec);
 50:   PetscErrorCode (*solvetranspose)(Mat, Vec, Vec);
 51:   /*10*/
 52:   PetscErrorCode (*solvetransposeadd)(Mat, Vec, Vec, Vec);
 53:   PetscErrorCode (*lufactor)(Mat, IS, IS, const MatFactorInfo *);
 54:   PetscErrorCode (*choleskyfactor)(Mat, IS, const MatFactorInfo *);
 55:   PetscErrorCode (*sor)(Mat, Vec, PetscReal, MatSORType, PetscReal, PetscInt, PetscInt, Vec);
 56:   PetscErrorCode (*transpose)(Mat, MatReuse, Mat *);
 57:   /*15*/
 58:   PetscErrorCode (*getinfo)(Mat, MatInfoType, MatInfo *);
 59:   PetscErrorCode (*equal)(Mat, Mat, PetscBool *);
 60:   PetscErrorCode (*getdiagonal)(Mat, Vec);
 61:   PetscErrorCode (*diagonalscale)(Mat, Vec, Vec);
 62:   PetscErrorCode (*norm)(Mat, NormType, PetscReal *);
 63:   /*20*/
 64:   PetscErrorCode (*assemblybegin)(Mat, MatAssemblyType);
 65:   PetscErrorCode (*assemblyend)(Mat, MatAssemblyType);
 66:   PetscErrorCode (*setoption)(Mat, MatOption, PetscBool);
 67:   PetscErrorCode (*zeroentries)(Mat);
 68:   /*24*/
 69:   PetscErrorCode (*zerorows)(Mat, PetscInt, const PetscInt[], PetscScalar, Vec, Vec);
 70:   PetscErrorCode (*lufactorsymbolic)(Mat, Mat, IS, IS, const MatFactorInfo *);
 71:   PetscErrorCode (*lufactornumeric)(Mat, Mat, const MatFactorInfo *);
 72:   PetscErrorCode (*choleskyfactorsymbolic)(Mat, Mat, IS, const MatFactorInfo *);
 73:   PetscErrorCode (*choleskyfactornumeric)(Mat, Mat, const MatFactorInfo *);
 74:   /*29*/
 75:   PetscErrorCode (*setup)(Mat);
 76:   PetscErrorCode (*ilufactorsymbolic)(Mat, Mat, IS, IS, const MatFactorInfo *);
 77:   PetscErrorCode (*iccfactorsymbolic)(Mat, Mat, IS, const MatFactorInfo *);
 78:   PetscErrorCode (*getdiagonalblock)(Mat, Mat *);
 79:   PetscErrorCode (*setinf)(Mat);
 80:   /*34*/
 81:   PetscErrorCode (*duplicate)(Mat, MatDuplicateOption, Mat *);
 82:   PetscErrorCode (*forwardsolve)(Mat, Vec, Vec);
 83:   PetscErrorCode (*backwardsolve)(Mat, Vec, Vec);
 84:   PetscErrorCode (*ilufactor)(Mat, IS, IS, const MatFactorInfo *);
 85:   PetscErrorCode (*iccfactor)(Mat, IS, const MatFactorInfo *);
 86:   /*39*/
 87:   PetscErrorCode (*axpy)(Mat, PetscScalar, Mat, MatStructure);
 88:   PetscErrorCode (*createsubmatrices)(Mat, PetscInt, const IS[], const IS[], MatReuse, Mat *[]);
 89:   PetscErrorCode (*increaseoverlap)(Mat, PetscInt, IS[], PetscInt);
 90:   PetscErrorCode (*getvalues)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], PetscScalar[]);
 91:   PetscErrorCode (*copy)(Mat, Mat, MatStructure);
 92:   /*44*/
 93:   PetscErrorCode (*getrowmax)(Mat, Vec, PetscInt[]);
 94:   PetscErrorCode (*scale)(Mat, PetscScalar);
 95:   PetscErrorCode (*shift)(Mat, PetscScalar);
 96:   PetscErrorCode (*diagonalset)(Mat, Vec, InsertMode);
 97:   PetscErrorCode (*zerorowscolumns)(Mat, PetscInt, const PetscInt[], PetscScalar, Vec, Vec);
 98:   /*49*/
 99:   PetscErrorCode (*setrandom)(Mat, PetscRandom);
100:   PetscErrorCode (*getrowij)(Mat, PetscInt, PetscBool, PetscBool, PetscInt *, const PetscInt *[], const PetscInt *[], PetscBool *);
101:   PetscErrorCode (*restorerowij)(Mat, PetscInt, PetscBool, PetscBool, PetscInt *, const PetscInt *[], const PetscInt *[], PetscBool *);
102:   PetscErrorCode (*getcolumnij)(Mat, PetscInt, PetscBool, PetscBool, PetscInt *, const PetscInt *[], const PetscInt *[], PetscBool *);
103:   PetscErrorCode (*restorecolumnij)(Mat, PetscInt, PetscBool, PetscBool, PetscInt *, const PetscInt *[], const PetscInt *[], PetscBool *);
104:   /*54*/
105:   PetscErrorCode (*fdcoloringcreate)(Mat, ISColoring, MatFDColoring);
106:   PetscErrorCode (*coloringpatch)(Mat, PetscInt, PetscInt, ISColoringValue[], ISColoring *);
107:   PetscErrorCode (*setunfactored)(Mat);
108:   PetscErrorCode (*permute)(Mat, IS, IS, Mat *);
109:   PetscErrorCode (*setvaluesblocked)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], const PetscScalar[], InsertMode);
110:   /*59*/
111:   PetscErrorCode (*createsubmatrix)(Mat, IS, IS, MatReuse, Mat *);
112:   PetscErrorCode (*destroy)(Mat);
113:   PetscErrorCode (*view)(Mat, PetscViewer);
114:   PetscErrorCode (*convertfrom)(Mat, MatType, MatReuse, Mat *);
115:   PetscErrorCode (*matmatmultsymbolic)(Mat, Mat, Mat, PetscReal, Mat);
116:   /*64*/
117:   PetscErrorCode (*matmatmultnumeric)(Mat, Mat, Mat, Mat);
118:   PetscErrorCode (*setlocaltoglobalmapping)(Mat, ISLocalToGlobalMapping, ISLocalToGlobalMapping);
119:   PetscErrorCode (*setvalueslocal)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], const PetscScalar[], InsertMode);
120:   PetscErrorCode (*zerorowslocal)(Mat, PetscInt, const PetscInt[], PetscScalar, Vec, Vec);
121:   PetscErrorCode (*getrowmaxabs)(Mat, Vec, PetscInt[]);
122:   /*69*/
123:   PetscErrorCode (*getrowminabs)(Mat, Vec, PetscInt[]);
124:   PetscErrorCode (*convert)(Mat, MatType, MatReuse, Mat *);
125:   PetscErrorCode (*hasoperation)(Mat, MatOperation, PetscBool *);
126:   PetscErrorCode (*fdcoloringapply)(Mat, MatFDColoring, Vec, void *);
127:   PetscErrorCode (*setfromoptions)(Mat, PetscOptionItems);
128:   /*74*/
129:   PetscErrorCode (*findzerodiagonals)(Mat, IS *);
130:   PetscErrorCode (*mults)(Mat, Vecs, Vecs);
131:   PetscErrorCode (*solves)(Mat, Vecs, Vecs);
132:   PetscErrorCode (*getinertia)(Mat, PetscInt *, PetscInt *, PetscInt *);
133:   PetscErrorCode (*load)(Mat, PetscViewer);
134:   /*79*/
135:   PetscErrorCode (*issymmetric)(Mat, PetscReal, PetscBool *);
136:   PetscErrorCode (*ishermitian)(Mat, PetscReal, PetscBool *);
137:   PetscErrorCode (*isstructurallysymmetric)(Mat, PetscBool *);
138:   PetscErrorCode (*setvaluesblockedlocal)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], const PetscScalar[], InsertMode);
139:   PetscErrorCode (*getvecs)(Mat, Vec *, Vec *);
140:   /*84*/
141:   PetscErrorCode (*matmultsymbolic)(Mat, Mat, PetscReal, Mat);
142:   PetscErrorCode (*matmultnumeric)(Mat, Mat, Mat);
143:   PetscErrorCode (*ptapnumeric)(Mat, Mat, Mat); /* double dispatch wrapper routine */
144:   PetscErrorCode (*mattransposemultsymbolic)(Mat, Mat, PetscReal, Mat);
145:   PetscErrorCode (*mattransposemultnumeric)(Mat, Mat, Mat);
146:   /*89*/
147:   PetscErrorCode (*bindtocpu)(Mat, PetscBool);
148:   PetscErrorCode (*productsetfromoptions)(Mat);
149:   PetscErrorCode (*productsymbolic)(Mat);
150:   PetscErrorCode (*productnumeric)(Mat);
151:   PetscErrorCode (*conjugate)(Mat); /* complex conjugate */
152:   /*94*/
153:   PetscErrorCode (*viewnative)(Mat, PetscViewer);
154:   PetscErrorCode (*setvaluesrow)(Mat, PetscInt, const PetscScalar[]);
155:   PetscErrorCode (*realpart)(Mat);
156:   PetscErrorCode (*imaginarypart)(Mat);
157:   PetscErrorCode (*getrowuppertriangular)(Mat);
158:   /*99*/
159:   PetscErrorCode (*restorerowuppertriangular)(Mat);
160:   PetscErrorCode (*matsolve)(Mat, Mat, Mat);
161:   PetscErrorCode (*matsolvetranspose)(Mat, Mat, Mat);
162:   PetscErrorCode (*getrowmin)(Mat, Vec, PetscInt[]);
163:   PetscErrorCode (*getcolumnvector)(Mat, Vec, PetscInt);
164:   /*104*/
165:   PetscErrorCode (*getseqnonzerostructure)(Mat, Mat *);
166:   PetscErrorCode (*create)(Mat);
167:   PetscErrorCode (*getghosts)(Mat, PetscInt *, const PetscInt *[]);
168:   PetscErrorCode (*getlocalsubmatrix)(Mat, IS, IS, Mat *);
169:   PetscErrorCode (*restorelocalsubmatrix)(Mat, IS, IS, Mat *);
170:   /*109*/
171:   PetscErrorCode (*multdiagonalblock)(Mat, Vec, Vec);
172:   PetscErrorCode (*hermitiantranspose)(Mat, MatReuse, Mat *);
173:   PetscErrorCode (*multhermitiantranspose)(Mat, Vec, Vec);
174:   PetscErrorCode (*multhermitiantransposeadd)(Mat, Vec, Vec, Vec);
175:   PetscErrorCode (*getmultiprocblock)(Mat, MPI_Comm, MatReuse, Mat *);
176:   /*114*/
177:   PetscErrorCode (*findnonzerorows)(Mat, IS *);
178:   PetscErrorCode (*getcolumnreductions)(Mat, PetscInt, PetscReal *);
179:   PetscErrorCode (*invertblockdiagonal)(Mat, const PetscScalar **);
180:   PetscErrorCode (*invertvariableblockdiagonal)(Mat, PetscInt, const PetscInt *, PetscScalar *);
181:   PetscErrorCode (*createsubmatricesmpi)(Mat, PetscInt, const IS[], const IS[], MatReuse, Mat **);
182:   /*119*/
183:   PetscErrorCode (*transposematmultsymbolic)(Mat, Mat, PetscReal, Mat);
184:   PetscErrorCode (*transposematmultnumeric)(Mat, Mat, Mat);
185:   PetscErrorCode (*transposecoloringcreate)(Mat, ISColoring, MatTransposeColoring);
186:   PetscErrorCode (*transcoloringapplysptoden)(MatTransposeColoring, Mat, Mat);
187:   PetscErrorCode (*transcoloringapplydentosp)(MatTransposeColoring, Mat, Mat);
188:   /*124*/
189:   PetscErrorCode (*rartnumeric)(Mat, Mat, Mat); /* double dispatch wrapper routine */
190:   PetscErrorCode (*setblocksizes)(Mat, PetscInt, PetscInt);
191:   PetscErrorCode (*residual)(Mat, Vec, Vec, Vec);
192:   PetscErrorCode (*fdcoloringsetup)(Mat, ISColoring, MatFDColoring);
193:   PetscErrorCode (*findoffblockdiagonalentries)(Mat, IS *);
194:   /*129*/
195:   PetscErrorCode (*creatempimatconcatenateseqmat)(MPI_Comm, Mat, PetscInt, MatReuse, Mat *);
196:   PetscErrorCode (*destroysubmatrices)(PetscInt, Mat *[]);
197:   PetscErrorCode (*mattransposesolve)(Mat, Mat, Mat);
198:   PetscErrorCode (*getvalueslocal)(Mat, PetscInt, const PetscInt[], PetscInt, const PetscInt[], PetscScalar[]);
199:   PetscErrorCode (*creategraph)(Mat, PetscBool, PetscBool, PetscReal, PetscInt, PetscInt[], Mat *);
200:   /*134*/
201:   PetscErrorCode (*transposesymbolic)(Mat, Mat *);
202:   PetscErrorCode (*eliminatezeros)(Mat, PetscBool);
203:   PetscErrorCode (*getrowsumabs)(Mat, Vec);
204:   PetscErrorCode (*getfactor)(Mat, MatSolverType, MatFactorType, Mat *);
205:   PetscErrorCode (*getblockdiagonal)(Mat, Mat *); // NOTE: the caller of get{block, vblock}diagonal owns the returned matrix;
206:   /*139*/
207:   PetscErrorCode (*getvblockdiagonal)(Mat, Mat *); // they must destroy it after use
208:   PetscErrorCode (*copyhashtoxaij)(Mat, Mat);
209:   PetscErrorCode (*getcurrentmemtype)(Mat, PetscMemType *);
210:   PetscErrorCode (*zerorowscolumnslocal)(Mat, PetscInt, const PetscInt[], PetscScalar, Vec, Vec);
211:   PetscErrorCode (*adot)(Mat, Vec, Vec, PetscScalar *); /* induced vector inner product */
212:   /*144*/
213:   PetscErrorCode (*anorm)(Mat, Vec, PetscReal *); /* induced vector norm */
214:   PetscErrorCode (*adot_local)(Mat, Vec, Vec, PetscScalar *);
215:   PetscErrorCode (*anorm_local)(Mat, Vec, PetscReal *);
216:   PetscErrorCode (*getordering)(Mat, MatOrderingType, IS *, IS *);
217: };
218: /*
219:     If you add MatOps entries above also add them to the MATOP enum
220:     in include/petscmat.h
221: */

223: #include <petscsys.h>

225: typedef struct _p_MatRootName *MatRootName;
226: struct _p_MatRootName {
227:   char       *rname, *sname, *mname;
228:   MatRootName next;
229: };

231: PETSC_EXTERN MatRootName MatRootNameList;

233: /*
234:    Utility private matrix routines used outside Mat
235: */
236: PETSC_SINGLE_LIBRARY_INTERN PetscErrorCode MatFindNonzeroRowsOrCols_Basic(Mat, PetscBool, PetscReal, IS *);
237: PETSC_EXTERN PetscErrorCode                MatShellGetScalingShifts(Mat, PetscScalar *, PetscScalar *, Vec *, Vec *, Vec *, Mat *, IS *, IS *);

239: #define MAT_SHELL_NOT_ALLOWED (void *)-1

241: /*
242:    Utility private matrix routines
243: */
244: PETSC_INTERN PetscErrorCode MatConvert_Basic(Mat, MatType, MatReuse, Mat *);
245: PETSC_INTERN PetscErrorCode MatConvert_Shell(Mat, MatType, MatReuse, Mat *);
246: PETSC_INTERN PetscErrorCode MatConvertFrom_Shell(Mat, MatType, MatReuse, Mat *);
247: PETSC_INTERN PetscErrorCode MatShellSetContext_Immutable(Mat, void *);
248: PETSC_INTERN PetscErrorCode MatShellSetContextDestroy_Immutable(Mat, PetscCtxDestroyFn *);
249: PETSC_INTERN PetscErrorCode MatShellSetManageScalingShifts_Immutable(Mat);
250: PETSC_INTERN PetscErrorCode MatCopy_Basic(Mat, Mat, MatStructure);
251: PETSC_INTERN PetscErrorCode MatDiagonalSet_Default(Mat, Vec, InsertMode);
252: #if defined(PETSC_HAVE_SCALAPACK) && (defined(PETSC_USE_REAL_SINGLE) || defined(PETSC_USE_REAL_DOUBLE))
253: PETSC_INTERN PetscErrorCode MatConvert_Dense_ScaLAPACK(Mat, MatType, MatReuse, Mat *);
254: #endif
255: PETSC_INTERN PetscErrorCode MatSetPreallocationCOO_Basic(Mat, PetscCount, PetscInt[], PetscInt[]);
256: PETSC_INTERN PetscErrorCode MatSetValuesCOO_Basic(Mat, const PetscScalar[], InsertMode);

258: /* Scattering of dense matrices with strided PetscSF */
259: PETSC_EXTERN PetscErrorCode MatDenseScatter_Private(PetscSF, Mat, Mat, InsertMode, ScatterMode);

261: /* This can be moved to the public header after implementing some missing MatProducts */
262: PETSC_INTERN PetscErrorCode MatCreateFromISLocalToGlobalMapping(ISLocalToGlobalMapping, Mat, PetscBool, PetscBool, MatType, Mat *);

264: /* these callbacks rely on the old matrix function pointers for
265:    matmat operations. They are unsafe, and should be removed.
266:    However, the amount of work needed to clean up all the
267:    implementations is not negligible */
268: PETSC_INTERN PetscErrorCode MatProductSymbolic_AB(Mat);
269: PETSC_INTERN PetscErrorCode MatProductNumeric_AB(Mat);
270: PETSC_INTERN PetscErrorCode MatProductSymbolic_AtB(Mat);
271: PETSC_INTERN PetscErrorCode MatProductNumeric_AtB(Mat);
272: PETSC_INTERN PetscErrorCode MatProductSymbolic_ABt(Mat);
273: PETSC_INTERN PetscErrorCode MatProductNumeric_ABt(Mat);
274: PETSC_INTERN PetscErrorCode MatProductNumeric_PtAP(Mat);
275: PETSC_INTERN PetscErrorCode MatProductNumeric_RARt(Mat);
276: PETSC_INTERN PetscErrorCode MatProductSymbolic_ABC(Mat);
277: PETSC_INTERN PetscErrorCode MatProductNumeric_ABC(Mat);

279: PETSC_INTERN PetscErrorCode MatProductCreate_Private(Mat, Mat, Mat, Mat);
280: /* this callback handles all the different triple products and
281:    does not rely on the function pointers; used by cuSPARSE/hipSPARSE and KOKKOS-KERNELS */
282: PETSC_INTERN PetscErrorCode MatProductSymbolic_ABC_Basic(Mat);

284: /* CreateGraph is common to AIJ seq and mpi */
285: PETSC_INTERN PetscErrorCode MatCreateGraph_Simple_AIJ(Mat, PetscBool, PetscBool, PetscReal, PetscInt, PetscInt[], Mat *);

287: #if defined(PETSC_CLANG_STATIC_ANALYZER)
288: template <typename Tm>
289: extern void MatCheckPreallocated(Tm, int);
290: template <typename Tm>
291: extern void MatCheckProduct(Tm, int);
292: #else /* PETSC_CLANG_STATIC_ANALYZER */
293:   #define MatCheckPreallocated(A, arg) \
294:     do { \
295:       if (!(A)->preallocated) PetscCall(MatSetUp(A)); \
296:     } while (0)

298:   #if defined(PETSC_USE_DEBUG)
299:     #define MatCheckProduct(A, arg) \
300:       do { \
301:         PetscCheck((A)->product, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Argument %d \"%s\" is not a matrix obtained from MatProductCreate()", (arg), #A); \
302:       } while (0)
303:   #else
304:     #define MatCheckProduct(A, arg) \
305:       do { \
306:       } while (0)
307:   #endif
308: #endif /* PETSC_CLANG_STATIC_ANALYZER */

310: /*
311:   The stash is used to temporarily store inserted matrix values that
312:   belong to another processor. During the assembly phase the stashed
313:   values are moved to the correct processor and
314: */

316: typedef struct _MatStashSpace *PetscMatStashSpace;

318: struct _MatStashSpace {
319:   PetscMatStashSpace next;
320:   PetscScalar       *space_head, *val;
321:   PetscInt          *idx, *idy;
322:   PetscInt           total_space_size;
323:   PetscInt           local_used;
324:   PetscInt           local_remaining;
325: };

327: PETSC_EXTERN PetscErrorCode PetscMatStashSpaceGet(PetscInt, PetscInt, PetscMatStashSpace *);
328: PETSC_EXTERN PetscErrorCode PetscMatStashSpaceContiguous(PetscInt, PetscMatStashSpace *, PetscScalar *, PetscInt *, PetscInt *);
329: PETSC_EXTERN PetscErrorCode PetscMatStashSpaceDestroy(PetscMatStashSpace *);

331: typedef struct {
332:   PetscInt count;
333: } MatStashHeader;

335: typedef struct {
336:   void    *buffer; /* Of type blocktype, dynamically constructed  */
337:   PetscInt count;
338:   char     pending;
339: } MatStashFrame;

341: typedef struct _MatStash MatStash;
342: struct _MatStash {
343:   PetscInt           nmax;              /* maximum stash size */
344:   PetscInt           umax;              /* user specified max-size */
345:   PetscInt           oldnmax;           /* the nmax value used previously */
346:   PetscInt           n;                 /* stash size */
347:   PetscInt           bs;                /* block size of the stash */
348:   PetscInt           reallocs;          /* preserve the no of mallocs invoked */
349:   PetscMatStashSpace space_head, space; /* linked list to hold stashed global row/column numbers and matrix values */

351:   PetscErrorCode (*ScatterBegin)(Mat, MatStash *, PetscInt *);
352:   PetscErrorCode (*ScatterGetMesg)(MatStash *, PetscMPIInt *, PetscInt **, PetscInt **, PetscScalar **, PetscInt *);
353:   PetscErrorCode (*ScatterEnd)(MatStash *);
354:   PetscErrorCode (*ScatterDestroy)(MatStash *);

356:   /* The following variables are used for communication */
357:   MPI_Comm      comm;
358:   PetscMPIInt   size, rank;
359:   PetscMPIInt   tag1, tag2;
360:   MPI_Request  *send_waits;     /* array of send requests */
361:   MPI_Request  *recv_waits;     /* array of receive requests */
362:   MPI_Status   *send_status;    /* array of send status */
363:   PetscMPIInt   nsends, nrecvs; /* numbers of sends and receives */
364:   PetscScalar  *svalues;        /* sending data */
365:   PetscInt     *sindices;
366:   PetscScalar **rvalues;    /* receiving data (values) */
367:   PetscInt    **rindices;   /* receiving data (indices) */
368:   PetscMPIInt   nprocessed; /* number of messages already processed */
369:   PetscMPIInt  *flg_v;      /* indicates what messages have arrived so far and from whom */
370:   PetscBool     reproduce;
371:   PetscMPIInt   reproduce_count;

373:   /* The following variables are used for BTS communication */
374:   PetscBool       first_assembly_done; /* Is the first time matrix assembly done? */
375:   PetscBool       use_status;          /* Use MPI_Status to determine number of items in each message */
376:   PetscMPIInt     nsendranks;
377:   PetscMPIInt     nrecvranks;
378:   PetscMPIInt    *sendranks;
379:   PetscMPIInt    *recvranks;
380:   MatStashHeader *sendhdr, *recvhdr;
381:   MatStashFrame  *sendframes; /* pointers to the main messages */
382:   MatStashFrame  *recvframes;
383:   MatStashFrame  *recvframe_active;
384:   PetscInt        recvframe_i;     /* index of block within active frame */
385:   PetscInt        recvframe_count; /* Count actually sent for current frame */
386:   PetscMPIInt     recvcount;       /* Number of receives processed so far */
387:   PetscMPIInt    *some_indices;    /* From last call to MPI_Waitsome */
388:   MPI_Status     *some_statuses;   /* Statuses from last call to MPI_Waitsome */
389:   PetscMPIInt     some_count;      /* Number of requests completed in last call to MPI_Waitsome */
390:   PetscMPIInt     some_i;          /* Index of request currently being processed */
391:   MPI_Request    *sendreqs;
392:   MPI_Request    *recvreqs;
393:   PetscSegBuffer  segsendblocks;
394:   PetscSegBuffer  segrecvframe;
395:   PetscSegBuffer  segrecvblocks;
396:   MPI_Datatype    blocktype;
397:   size_t          blocktype_size;
398:   InsertMode     *insertmode; /* Pointer to check mat->insertmode and set upon message arrival in case no local values have been set. */
399: };

401: #if !defined(PETSC_HAVE_MPIUNI)
402: PETSC_INTERN PetscErrorCode MatStashScatterDestroy_BTS(MatStash *);
403: #endif
404: PETSC_INTERN PetscErrorCode MatStashCreate_Private(MPI_Comm, PetscInt, MatStash *);
405: PETSC_INTERN PetscErrorCode MatStashDestroy_Private(MatStash *);
406: PETSC_INTERN PetscErrorCode MatStashScatterEnd_Private(MatStash *);
407: PETSC_INTERN PetscErrorCode MatStashSetInitialSize_Private(MatStash *, PetscInt);
408: PETSC_INTERN PetscErrorCode MatStashGetInfo_Private(MatStash *, PetscInt *, PetscInt *);
409: PETSC_INTERN PetscErrorCode MatStashValuesRow_Private(MatStash *, PetscInt, PetscInt, const PetscInt[], const PetscScalar[], PetscBool);
410: PETSC_INTERN PetscErrorCode MatStashValuesCol_Private(MatStash *, PetscInt, PetscInt, const PetscInt[], const PetscScalar[], PetscInt, PetscBool);
411: PETSC_INTERN PetscErrorCode MatStashValuesRowBlocked_Private(MatStash *, PetscInt, PetscInt, const PetscInt[], const PetscScalar[], PetscInt, PetscInt, PetscInt);
412: PETSC_INTERN PetscErrorCode MatStashValuesColBlocked_Private(MatStash *, PetscInt, PetscInt, const PetscInt[], const PetscScalar[], PetscInt, PetscInt, PetscInt);
413: PETSC_INTERN PetscErrorCode MatStashScatterBegin_Private(Mat, MatStash *, PetscInt *);
414: PETSC_INTERN PetscErrorCode MatStashScatterGetMesg_Private(MatStash *, PetscMPIInt *, PetscInt **, PetscInt **, PetscScalar **, PetscInt *);
415: PETSC_INTERN PetscErrorCode MatGetInfo_External(Mat, MatInfoType, MatInfo *);

417: typedef struct {
418:   PetscInt  dim;
419:   PetscInt  dims[4];
420:   PetscInt  starts[4];
421:   PetscBool noc; /* this is a single component problem, hence user will not set MatStencil.c */
422: } MatStencilInfo;

424: /* Info about using compressed row format */
425: typedef struct {
426:   PetscBool use;    /* indicates compressed rows have been checked and will be used */
427:   PetscInt  nrows;  /* number of non-zero rows */
428:   PetscInt *i;      /* compressed row pointer  */
429:   PetscInt *rindex; /* compressed row index               */
430: } Mat_CompressedRow;
431: PETSC_EXTERN PetscErrorCode MatCheckCompressedRow(Mat, PetscInt, Mat_CompressedRow *, PetscInt *, PetscInt, PetscReal);

433: typedef struct { /* used by MatCreateRedundantMatrix() for reusing matredundant */
434:   PetscInt     nzlocal, nsends, nrecvs;
435:   PetscMPIInt *send_rank, *recv_rank;
436:   PetscInt    *sbuf_nz, *rbuf_nz, *sbuf_j, **rbuf_j;
437:   PetscScalar *sbuf_a, **rbuf_a;
438:   MPI_Comm     subcomm; /* when user does not provide a subcomm */
439:   IS           isrow, iscol;
440:   Mat         *matseq;
441: } Mat_Redundant;

443: typedef struct { /* used by MatProduct() */
444:   MatProductType type;
445:   char          *alg;
446:   Mat            A, B, C, Dwork;
447:   PetscBool      symbolic_used_the_fact_A_is_symmetric; /* Symbolic phase took advantage of the fact that A is symmetric, and optimized e.g. AtB as AB. Then, .. */
448:   PetscBool      symbolic_used_the_fact_B_is_symmetric; /* .. in the numeric phase, if a new A is not symmetric (but has the same sparsity as the old A therefore .. */
449:   PetscBool      symbolic_used_the_fact_C_is_symmetric; /* MatMatMult(A,B,MAT_REUSE_MATRIX,..&C) is still legitimate), we need to redo symbolic! */
450:   PetscObjectParameterDeclare(PetscReal, fill);
451:   PetscBool api_user; /* used to distinguish command line options and to indicate the matrix values are ready to be consumed at symbolic phase if needed */
452:   PetscBool setfromoptionscalled;

454:   /* Some products may display the information on the algorithm used */
455:   PetscErrorCode (*view)(Mat, PetscViewer);

457:   /* many products have intermediate data structures, each specific to Mat types and product type */
458:   PetscBool          clear;   /* whether or not to clear the data structures after MatProductNumeric has been called */
459:   void              *data;    /* where to stash those structures */
460:   PetscCtxDestroyFn *destroy; /* freeing data */
461: } Mat_Product;

463: struct _p_Mat {
464:   PETSCHEADER(struct _MatOps);
465:   PetscLayout      rmap, cmap;
466:   void            *data;                                    /* implementation-specific data */
467:   MatFactorType    factortype;                              /* MAT_FACTOR_LU, ILU, CHOLESKY or ICC */
468:   PetscBool        trivialsymbolic;                         /* indicates the symbolic factorization doesn't actually do a symbolic factorization, it is delayed to the numeric factorization */
469:   PetscBool        canuseordering;                          /* factorization can use ordering provide to routine (most PETSc implementations) */
470:   MatOrderingType  preferredordering[MAT_FACTOR_NUM_TYPES]; /* what is the preferred (or default) ordering for the matrix solver type */
471:   PetscBool        assembled;                               /* is the matrix assembled? */
472:   PetscBool        was_assembled;                           /* new values inserted into assembled mat */
473:   PetscInt         num_ass;                                 /* number of times matrix has been assembled */
474:   PetscObjectState nonzerostate;                            /* each time new nonzeros locations are introduced into the matrix this is updated */
475:   PetscObjectState ass_nonzerostate;                        /* nonzero state at last assembly */
476:   MatInfo          info;                                    /* matrix information */
477:   InsertMode       insertmode;                              /* have values been inserted in matrix or added? */
478:   MatStash         stash, bstash;                           /* used for assembling off-proc mat emements */
479:   MatNullSpace     nullsp;                                  /* null space (operator is singular) */
480:   MatNullSpace     transnullsp;                             /* null space of transpose of operator */
481:   MatNullSpace     nearnullsp;                              /* near null space to be used by multigrid methods */
482:   PetscInt         congruentlayouts;                        /* are the rows and columns layouts congruent? */
483:   PetscBool        preallocated;
484:   MatStencilInfo   stencil; /* information for structured grid */
485:   PetscBool3       symmetric, hermitian, structurally_symmetric, spd;
486:   PetscBool        symmetry_eternal, structural_symmetry_eternal, spd_eternal;
487:   PetscBool        nooffprocentries, nooffproczerorows;
488:   PetscBool        assembly_subset; /* set by MAT_SUBSET_OFF_PROC_ENTRIES */
489:   PetscBool        submat_singleis; /* for efficient PCSetUp_ASM() */
490:   PetscBool        structure_only;
491:   PetscBool        sortedfull;      /* full, sorted rows are inserted */
492:   PetscBool        force_diagonals; /* set by MAT_FORCE_DIAGONAL_ENTRIES */
493: #if defined(PETSC_HAVE_DEVICE)
494:   PetscOffloadMask offloadmask; /* a mask which indicates where the valid matrix data is (GPU, CPU or both) */
495:   PetscBool        boundtocpu;
496:   PetscBool        bindingpropagates;
497: #endif
498:   char                *defaultrandtype;
499:   void                *spptr; /* pointer for special library like SuperLU */
500:   char                *solvertype;
501:   PetscBool            checksymmetryonassembly, checknullspaceonassembly;
502:   PetscReal            checksymmetrytol;
503:   Mat                  schur;                            /* Schur complement matrix */
504:   MatFactorSchurStatus schur_status;                     /* status of the Schur complement matrix */
505:   Mat_Redundant       *redundant;                        /* used by MatCreateRedundantMatrix() */
506:   PetscBool            erroriffailure;                   /* Generate an error if detected (for example a zero pivot) instead of returning */
507:   MatFactorError       factorerrortype;                  /* type of error in factorization */
508:   PetscReal            factorerror_zeropivot_value;      /* If numerical zero pivot was detected this is the computed value */
509:   PetscInt             factorerror_zeropivot_row;        /* Row where zero pivot was detected */
510:   PetscInt             nblocks, *bsizes;                 /* support for MatSetVariableBlockSizes() */
511:   PetscInt             p_cstart, p_rank, p_cend, n_rank; /* Information from parallel MatComputeVariableBlockEnvelope() */
512:   PetscBool            p_parallel;
513:   char                *defaultvectype;
514:   Mat_Product         *product;
515:   PetscBool            form_explicit_transpose; /* hint to generate an explicit mat tranpsose for operations like MatMultTranspose() */
516:   PetscBool            transupdated;            /* whether or not the explicitly generated transpose is up-to-date */
517:   char                *factorprefix;            /* the prefix to use with factored matrix that is created */
518:   PetscBool            hash_active;             /* indicates MatSetValues() is being handled by hashing */
519:   Vec                  dot_vec;                 /* work vector used by MatADot_Default() */
520: };

522: PETSC_INTERN PetscErrorCode MatAXPY_Basic(Mat, PetscScalar, Mat, MatStructure);
523: PETSC_INTERN PetscErrorCode MatAXPY_BasicWithPreallocation(Mat, Mat, PetscScalar, Mat, MatStructure);
524: PETSC_INTERN PetscErrorCode MatAXPY_Basic_Preallocate(Mat, Mat, Mat *);
525: PETSC_INTERN PetscErrorCode MatAXPY_Dense_Nest(Mat, PetscScalar, Mat);

527: PETSC_INTERN PetscErrorCode MatSetUp_Default(Mat);

529: /*
530:     Utility for MatZeroRows
531: */
532: PETSC_INTERN PetscErrorCode MatZeroRowsMapLocal_Private(Mat, PetscInt, const PetscInt *, PetscInt *, PetscInt **);

534: /*
535:     Utility for MatView/MatLoad
536: */
537: PETSC_INTERN PetscErrorCode MatView_Binary_BlockSizes(Mat, PetscViewer);
538: PETSC_INTERN PetscErrorCode MatLoad_Binary_BlockSizes(Mat, PetscViewer);

540: /*
541:     Object for partitioning graphs
542: */

544: typedef struct _MatPartitioningOps *MatPartitioningOps;
545: struct _MatPartitioningOps {
546:   PetscErrorCode (*apply)(MatPartitioning, IS *);
547:   PetscErrorCode (*applynd)(MatPartitioning, IS *);
548:   PetscErrorCode (*setfromoptions)(MatPartitioning, PetscOptionItems);
549:   PetscErrorCode (*destroy)(MatPartitioning);
550:   PetscErrorCode (*view)(MatPartitioning, PetscViewer);
551:   PetscErrorCode (*improve)(MatPartitioning, IS *);
552: };

554: struct _p_MatPartitioning {
555:   PETSCHEADER(struct _MatPartitioningOps);
556:   Mat        adj;
557:   PetscInt  *vertex_weights;
558:   PetscReal *part_weights;
559:   PetscInt   n;    /* number of partitions */
560:   PetscInt   ncon; /* number of vertex weights per vertex */
561:   void      *data;
562:   PetscBool  use_edge_weights; /* A flag indicates whether or not to use edge weights */
563: };

565: /* needed for parallel nested dissection by ParMetis and PTSCOTCH */
566: PETSC_INTERN PetscErrorCode MatPartitioningSizesToSep_Private(PetscInt, PetscInt[], PetscInt[], PetscInt[]);

568: /*
569:     Object for coarsen graphs
570: */
571: typedef struct _MatCoarsenOps *MatCoarsenOps;
572: struct _MatCoarsenOps {
573:   PetscErrorCode (*apply)(MatCoarsen);
574:   PetscErrorCode (*setfromoptions)(MatCoarsen, PetscOptionItems);
575:   PetscErrorCode (*destroy)(MatCoarsen);
576:   PetscErrorCode (*view)(MatCoarsen, PetscViewer);
577: };

579: #define MAT_COARSEN_STRENGTH_INDEX_SIZE 3
580: struct _p_MatCoarsen {
581:   PETSCHEADER(struct _MatCoarsenOps);
582:   Mat   graph;
583:   void *subctx;
584:   /* */
585:   PetscBool         strict_aggs;
586:   IS                perm;
587:   PetscCoarsenData *agg_lists;
588:   PetscInt          max_it;    /* number of iterations in HEM */
589:   PetscReal         threshold; /* HEM can filter interim graphs */
590:   PetscInt          strength_index_size;
591:   PetscInt          strength_index[MAT_COARSEN_STRENGTH_INDEX_SIZE];
592: };

594: PETSC_EXTERN PetscErrorCode MatCoarsenMISKSetDistance(MatCoarsen, PetscInt);
595: PETSC_EXTERN PetscErrorCode MatCoarsenMISKGetDistance(MatCoarsen, PetscInt *);

597: /*
598:     Used in aijdevice.h
599: */
600: typedef struct {
601:   PetscInt    *i;
602:   PetscInt    *j;
603:   PetscScalar *a;
604:   PetscInt     n;
605:   PetscInt     ignorezeroentries;
606: } PetscCSRDataStructure;

608: /*
609:     MatFDColoring is used to compute Jacobian matrices efficiently
610:   via coloring. The data structure is explained below in an example.

612:    Color =   0    1     0    2   |   2      3       0
613:    ---------------------------------------------------
614:             00   01              |          05
615:             10   11              |   14     15               Processor  0
616:                        22    23  |          25
617:                        32    33  |
618:    ===================================================
619:                                  |   44     45     46
620:             50                   |          55               Processor 1
621:                                  |   64            66
622:    ---------------------------------------------------

624:     ncolors = 4;

626:     ncolumns      = {2,1,1,0}
627:     columns       = {{0,2},{1},{3},{}}
628:     nrows         = {4,2,3,3}
629:     rows          = {{0,1,2,3},{0,1},{1,2,3},{0,1,2}}
630:     vwscale       = {dx(0),dx(1),dx(2),dx(3)}               MPI Vec
631:     vscale        = {dx(0),dx(1),dx(2),dx(3),dx(4),dx(5)}   Seq Vec

633:     ncolumns      = {1,0,1,1}
634:     columns       = {{6},{},{4},{5}}
635:     nrows         = {3,0,2,2}
636:     rows          = {{0,1,2},{},{1,2},{1,2}}
637:     vwscale       = {dx(4),dx(5),dx(6)}              MPI Vec
638:     vscale        = {dx(0),dx(4),dx(5),dx(6)}        Seq Vec

640:     See the routine MatFDColoringApply() for how this data is used
641:     to compute the Jacobian.

643: */
644: typedef struct {
645:   PetscInt     row;
646:   PetscInt     col;
647:   PetscScalar *valaddr; /* address of value */
648: } MatEntry;

650: typedef struct {
651:   PetscInt     row;
652:   PetscScalar *valaddr; /* address of value */
653: } MatEntry2;

655: struct _p_MatFDColoring {
656:   PETSCHEADER(int);
657:   PetscInt                M, N, m;          /* total rows, columns; local rows */
658:   PetscInt                rstart;           /* first row owned by local processor */
659:   PetscInt                ncolors;          /* number of colors */
660:   PetscInt               *ncolumns;         /* number of local columns for a color */
661:   PetscInt              **columns;          /* lists the local columns of each color (using global column numbering) */
662:   IS                     *isa;              /* these are the IS that contain the column values given in columns */
663:   PetscInt               *nrows;            /* number of local rows for each color */
664:   MatEntry               *matentry;         /* holds (row, column, address of value) for Jacobian matrix entry */
665:   MatEntry2              *matentry2;        /* holds (row, address of value) for Jacobian matrix entry */
666:   PetscScalar            *dy;               /* store a block of F(x+dx)-F(x) when J is in BAIJ format */
667:   PetscReal               error_rel;        /* square root of relative error in computing function */
668:   PetscReal               umin;             /* minimum allowable u'dx value */
669:   Vec                     w1, w2, w3;       /* work vectors used in computing Jacobian */
670:   PetscBool               fset;             /* indicates that the initial function value F(X) is set */
671:   MatFDColoringFn        *f;                /* function that defines Jacobian */
672:   void                   *fctx;             /* optional user-defined context for use by the function f */
673:   Vec                     vscale;           /* holds FD scaling, i.e. 1/dx for each perturbed column */
674:   PetscInt                currentcolor;     /* color for which function evaluation is being done now */
675:   const char             *htype;            /* "wp" or "ds" */
676:   ISColoringType          ctype;            /* IS_COLORING_GLOBAL or IS_COLORING_LOCAL */
677:   PetscInt                brows, bcols;     /* number of block rows or columns for speedup inserting the dense matrix into sparse Jacobian */
678:   PetscBool               setupcalled;      /* true if setup has been called */
679:   PetscBool               viewed;           /* true if the -mat_fd_coloring_view has been triggered already */
680:   PetscFortranCallbackFn *ftn_func_pointer; /* serve the same purpose as *fortran_func_pointers in PETSc objects */
681:   void                   *ftn_func_cntx;
682:   PetscObjectId           matid; /* matrix this object was created with, must always be the same */
683: };

685: typedef struct _MatColoringOps *MatColoringOps;
686: struct _MatColoringOps {
687:   PetscErrorCode (*destroy)(MatColoring);
688:   PetscErrorCode (*setfromoptions)(MatColoring, PetscOptionItems);
689:   PetscErrorCode (*view)(MatColoring, PetscViewer);
690:   PetscErrorCode (*apply)(MatColoring, ISColoring *);
691:   PetscErrorCode (*weights)(MatColoring, PetscReal **, PetscInt **);
692: };

694: struct _p_MatColoring {
695:   PETSCHEADER(struct _MatColoringOps);
696:   Mat                   mat;
697:   PetscInt              dist;         /* distance of the coloring */
698:   PetscInt              maxcolors;    /* the maximum number of colors returned, maxcolors=1 for MIS */
699:   void                 *data;         /* inner context */
700:   PetscBool             valid;        /* check to see if what is produced is a valid coloring */
701:   MatColoringWeightType weight_type;  /* type of weight computation to be performed */
702:   PetscReal            *user_weights; /* custom weights and permutation */
703:   PetscInt             *user_lperm;
704:   PetscBool             valid_iscoloring; /* check to see if matcoloring is produced a valid iscoloring */
705: };

707: struct _p_MatTransposeColoring {
708:   PETSCHEADER(int);
709:   PetscInt       M, N, m;      /* total rows, columns; local rows */
710:   PetscInt       rstart;       /* first row owned by local processor */
711:   PetscInt       ncolors;      /* number of colors */
712:   PetscInt      *ncolumns;     /* number of local columns for a color */
713:   PetscInt      *nrows;        /* number of local rows for each color */
714:   PetscInt       currentcolor; /* color for which function evaluation is being done now */
715:   ISColoringType ctype;        /* IS_COLORING_GLOBAL or IS_COLORING_LOCAL */

717:   PetscInt *colorforrow, *colorforcol; /* pointer to rows and columns */
718:   PetscInt *rows;                      /* lists the local rows for each color (using the local row numbering) */
719:   PetscInt *den2sp;                    /* maps (row,color) in the dense matrix to index of sparse matrix array a->a */
720:   PetscInt *columns;                   /* lists the local columns of each color (using global column numbering) */
721:   PetscInt  brows;                     /* number of rows for efficient implementation of MatTransColoringApplyDenToSp() */
722:   PetscInt *lstart;                    /* array used for loop over row blocks of Csparse */
723: };

725: /*
726:    Null space context for preconditioner/operators
727: */
728: struct _p_MatNullSpace {
729:   PETSCHEADER(int);
730:   PetscBool             has_cnst;
731:   PetscInt              n;
732:   Vec                  *vecs;
733:   PetscScalar          *alpha;  /* for projections */
734:   MatNullSpaceRemoveFn *remove; /* for user provided removal function */
735:   void                 *rmctx;  /* context for remove() function */
736: };

738: /*
739:    Internal data structure for MATMPIDENSE
740: */
741: typedef struct {
742:   Mat A; /* local submatrix */

744:   /* The following variables are used for matrix assembly */
745:   PetscBool    donotstash;        /* Flag indicating if values should be stashed */
746:   MPI_Request *send_waits;        /* array of send requests */
747:   MPI_Request *recv_waits;        /* array of receive requests */
748:   PetscInt     nsends, nrecvs;    /* numbers of sends and receives */
749:   PetscScalar *svalues, *rvalues; /* sending and receiving data */
750:   PetscInt     rmax;              /* maximum message length */

752:   /* The following variables are used for matrix-vector products */
753:   Vec       lvec;        /* local vector */
754:   PetscSF   Mvctx;       /* for mat-mult communications */
755:   PetscBool roworiented; /* if true, row-oriented input (default) */

757:   /* Support for MatDenseGetColumnVec and MatDenseGetSubMatrix */
758:   Mat                cmat;     /* matrix representation of a given subset of columns */
759:   Vec                cvec;     /* vector representation of a given column */
760:   const PetscScalar *ptrinuse; /* holds array to be restored (just a placeholder) */
761:   PetscInt           vecinuse; /* if cvec is in use (col = vecinuse-1) */
762:   PetscInt           matinuse; /* if cmat is in use (cbegin = matinuse-1) */
763:   /* if this is from MatDenseGetSubMatrix, which columns and rows does it correspond to? */
764:   PetscInt sub_rbegin;
765:   PetscInt sub_rend;
766:   PetscInt sub_cbegin;
767:   PetscInt sub_cend;
768: } Mat_MPIDense;

770: /*
771:    Checking zero pivot for LU, ILU preconditioners.
772: */
773: typedef struct {
774:   PetscInt    nshift, nshift_max;
775:   PetscReal   shift_amount, shift_lo, shift_hi, shift_top, shift_fraction;
776:   PetscBool   newshift;
777:   PetscReal   rs; /* active row sum of abs(off-diagonals) */
778:   PetscScalar pv; /* pivot of the active row */
779: } FactorShiftCtx;

781: PETSC_SINGLE_LIBRARY_INTERN PetscErrorCode MatTransposeCheckNonzeroState_Private(Mat, Mat);

783: /*
784:  Used by MatTranspose() and potentially other functions to track the matrix used in the generation of another matrix
785: */
786: typedef struct {
787:   PetscObjectId    id;
788:   PetscObjectState state;
789:   PetscObjectState nonzerostate;
790: } MatParentState;

792: PETSC_EXTERN PetscErrorCode MatFactorDumpMatrix(Mat);
793: PETSC_INTERN PetscErrorCode MatSetBlockSizes_Default(Mat, PetscInt, PetscInt);

795: PETSC_SINGLE_LIBRARY_INTERN PetscErrorCode MatShift_Basic(Mat, PetscScalar);

797: static inline PetscErrorCode MatPivotCheck_nz(PETSC_UNUSED Mat mat, const MatFactorInfo *info, FactorShiftCtx *sctx, PETSC_UNUSED PetscInt row)
798: {
799:   PetscReal _rs   = sctx->rs;
800:   PetscReal _zero = info->zeropivot * _rs;

802:   PetscFunctionBegin;
803:   if (PetscAbsScalar(sctx->pv) <= _zero && !PetscIsNanScalar(sctx->pv)) {
804:     /* force |diag| > zeropivot*rs */
805:     if (!sctx->nshift) sctx->shift_amount = info->shiftamount;
806:     else sctx->shift_amount *= 2.0;
807:     sctx->newshift = PETSC_TRUE;
808:     (sctx->nshift)++;
809:   } else {
810:     sctx->newshift = PETSC_FALSE;
811:   }
812:   PetscFunctionReturn(PETSC_SUCCESS);
813: }

815: static inline PetscErrorCode MatPivotCheck_pd(PETSC_UNUSED Mat mat, const MatFactorInfo *info, FactorShiftCtx *sctx, PETSC_UNUSED PetscInt row)
816: {
817:   PetscReal _rs   = sctx->rs;
818:   PetscReal _zero = info->zeropivot * _rs;

820:   PetscFunctionBegin;
821:   if (PetscRealPart(sctx->pv) <= _zero && !PetscIsNanScalar(sctx->pv)) {
822:     /* force matfactor to be diagonally dominant */
823:     if (sctx->nshift == sctx->nshift_max) {
824:       sctx->shift_fraction = sctx->shift_hi;
825:     } else {
826:       sctx->shift_lo       = sctx->shift_fraction;
827:       sctx->shift_fraction = (sctx->shift_hi + sctx->shift_lo) / (PetscReal)2.;
828:     }
829:     sctx->shift_amount = sctx->shift_fraction * sctx->shift_top;
830:     sctx->nshift++;
831:     sctx->newshift = PETSC_TRUE;
832:   } else {
833:     sctx->newshift = PETSC_FALSE;
834:   }
835:   PetscFunctionReturn(PETSC_SUCCESS);
836: }

838: static inline PetscErrorCode MatPivotCheck_inblocks(PETSC_UNUSED Mat mat, const MatFactorInfo *info, FactorShiftCtx *sctx, PETSC_UNUSED PetscInt row)
839: {
840:   PetscReal _zero = info->zeropivot;

842:   PetscFunctionBegin;
843:   if (PetscAbsScalar(sctx->pv) <= _zero && !PetscIsNanScalar(sctx->pv)) {
844:     sctx->pv += info->shiftamount;
845:     sctx->shift_amount = 0.0;
846:     sctx->nshift++;
847:   }
848:   sctx->newshift = PETSC_FALSE;
849:   PetscFunctionReturn(PETSC_SUCCESS);
850: }

852: static inline PetscErrorCode MatPivotCheck_none(Mat fact, Mat mat, const MatFactorInfo *info, FactorShiftCtx *sctx, PetscInt row)
853: {
854:   PetscReal _zero = info->zeropivot;

856:   PetscFunctionBegin;
857:   sctx->newshift = PETSC_FALSE;
858:   if (PetscAbsScalar(sctx->pv) <= _zero && !PetscIsNanScalar(sctx->pv)) {
859:     PetscCheck(!mat->erroriffailure, PETSC_COMM_SELF, PETSC_ERR_MAT_LU_ZRPVT, "Zero pivot row %" PetscInt_FMT " value %g tolerance %g", row, (double)PetscAbsScalar(sctx->pv), (double)_zero);
860:     PetscCall(PetscInfo(mat, "Detected zero pivot in factorization in row %" PetscInt_FMT " value %g tolerance %g\n", row, (double)PetscAbsScalar(sctx->pv), (double)_zero));
861:     fact->factorerrortype             = MAT_FACTOR_NUMERIC_ZEROPIVOT;
862:     fact->factorerror_zeropivot_value = PetscAbsScalar(sctx->pv);
863:     fact->factorerror_zeropivot_row   = row;
864:   }
865:   PetscFunctionReturn(PETSC_SUCCESS);
866: }

868: static inline PetscErrorCode MatPivotCheck(Mat fact, Mat mat, const MatFactorInfo *info, FactorShiftCtx *sctx, PetscInt row)
869: {
870:   PetscFunctionBegin;
871:   if (info->shifttype == (PetscReal)MAT_SHIFT_NONZERO) PetscCall(MatPivotCheck_nz(mat, info, sctx, row));
872:   else if (info->shifttype == (PetscReal)MAT_SHIFT_POSITIVE_DEFINITE) PetscCall(MatPivotCheck_pd(mat, info, sctx, row));
873:   else if (info->shifttype == (PetscReal)MAT_SHIFT_INBLOCKS) PetscCall(MatPivotCheck_inblocks(mat, info, sctx, row));
874:   else PetscCall(MatPivotCheck_none(fact, mat, info, sctx, row));
875:   PetscFunctionReturn(PETSC_SUCCESS);
876: }

878: PETSC_INTERN PetscErrorCode MatADot_Default(Mat, Vec, Vec, PetscScalar *);
879: PETSC_INTERN PetscErrorCode MatANorm_Default(Mat, Vec, PetscReal *);

881: #include <petscbt.h>
882: /*
883:   Create and initialize a linked list
884:   Input Parameters:
885:     idx_start - starting index of the list
886:     lnk_max   - max value of lnk indicating the end of the list
887:     nlnk      - max length of the list
888:   Output Parameters:
889:     lnk       - list initialized
890:     bt        - PetscBT (bitarray) with all bits set to false
891:     lnk_empty - flg indicating the list is empty
892: */
893: #define PetscLLCreate(idx_start, lnk_max, nlnk, lnk, bt) ((PetscErrorCode)(PetscMalloc1(nlnk, &lnk) || PetscBTCreate(nlnk, &(bt)) || (lnk[idx_start] = lnk_max, PETSC_SUCCESS)))

895: #define PetscLLCreate_new(idx_start, lnk_max, nlnk, lnk, bt, lnk_empty) ((PetscErrorCode)(PetscMalloc1(nlnk, &lnk) || PetscBTCreate(nlnk, &(bt)) || (lnk_empty = PETSC_TRUE, 0) || (lnk[idx_start] = lnk_max, PETSC_SUCCESS)))

897: static inline PetscErrorCode PetscLLInsertLocation_Private(PetscBool assume_sorted, PetscInt k, PetscInt idx_start, PetscInt entry, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnkdata, PetscInt *PETSC_RESTRICT lnk)
898: {
899:   PetscInt location;

901:   PetscFunctionBegin;
902:   /* start from the beginning if entry < previous entry */
903:   if (!assume_sorted && k && entry < *lnkdata) *lnkdata = idx_start;
904:   /* search for insertion location */
905:   do {
906:     location = *lnkdata;
907:     *lnkdata = lnk[location];
908:   } while (entry > *lnkdata);
909:   /* insertion location is found, add entry into lnk */
910:   lnk[location] = entry;
911:   lnk[entry]    = *lnkdata;
912:   ++(*nlnk);
913:   *lnkdata = entry; /* next search starts from here if next_entry > entry */
914:   PetscFunctionReturn(PETSC_SUCCESS);
915: }

917: static inline PetscErrorCode PetscLLAdd_Private(PetscInt nidx, const PetscInt *PETSC_RESTRICT indices, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscBT bt, PetscBool assume_sorted)
918: {
919:   PetscFunctionBegin;
920:   *nlnk = 0;
921:   for (PetscInt k = 0, lnkdata = idx_start; k < nidx; ++k) {
922:     const PetscInt entry = indices[k];

924:     if (!PetscBTLookupSet(bt, entry)) PetscCall(PetscLLInsertLocation_Private(assume_sorted, k, idx_start, entry, nlnk, &lnkdata, lnk));
925:   }
926:   PetscFunctionReturn(PETSC_SUCCESS);
927: }

929: /*
930:   Add an index set into a sorted linked list
931:   Input Parameters:
932:     nidx      - number of input indices
933:     indices   - integer array
934:     idx_start - starting index of the list
935:     lnk       - linked list(an integer array) that is created
936:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
937:   output Parameters:
938:     nlnk      - number of newly added indices
939:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from indices
940:     bt        - updated PetscBT (bitarray)
941: */
942: static inline PetscErrorCode PetscLLAdd(PetscInt nidx, const PetscInt *PETSC_RESTRICT indices, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscBT bt)
943: {
944:   PetscFunctionBegin;
945:   PetscCall(PetscLLAdd_Private(nidx, indices, idx_start, nlnk, lnk, bt, PETSC_FALSE));
946:   PetscFunctionReturn(PETSC_SUCCESS);
947: }

949: /*
950:   Add a SORTED ascending index set into a sorted linked list - same as PetscLLAdd() bus skip 'if (_k && _entry < _lnkdata) _lnkdata  = idx_start;'
951:   Input Parameters:
952:     nidx      - number of input indices
953:     indices   - sorted integer array
954:     idx_start - starting index of the list
955:     lnk       - linked list(an integer array) that is created
956:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
957:   output Parameters:
958:     nlnk      - number of newly added indices
959:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from indices
960:     bt        - updated PetscBT (bitarray)
961: */
962: static inline PetscErrorCode PetscLLAddSorted(PetscInt nidx, const PetscInt *PETSC_RESTRICT indices, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscBT bt)
963: {
964:   PetscFunctionBegin;
965:   PetscCall(PetscLLAdd_Private(nidx, indices, idx_start, nlnk, lnk, bt, PETSC_TRUE));
966:   PetscFunctionReturn(PETSC_SUCCESS);
967: }

969: /*
970:   Add a permuted index set into a sorted linked list
971:   Input Parameters:
972:     nidx      - number of input indices
973:     indices   - integer array
974:     perm      - permutation of indices
975:     idx_start - starting index of the list
976:     lnk       - linked list(an integer array) that is created
977:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
978:   output Parameters:
979:     nlnk      - number of newly added indices
980:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from indices
981:     bt        - updated PetscBT (bitarray)
982: */
983: static inline PetscErrorCode PetscLLAddPerm(PetscInt nidx, const PetscInt *PETSC_RESTRICT indices, const PetscInt *PETSC_RESTRICT perm, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscBT bt)
984: {
985:   PetscFunctionBegin;
986:   *nlnk = 0;
987:   for (PetscInt k = 0, lnkdata = idx_start; k < nidx; ++k) {
988:     const PetscInt entry = perm[indices[k]];

990:     if (!PetscBTLookupSet(bt, entry)) PetscCall(PetscLLInsertLocation_Private(PETSC_FALSE, k, idx_start, entry, nlnk, &lnkdata, lnk));
991:   }
992:   PetscFunctionReturn(PETSC_SUCCESS);
993: }

995: #if 0
996: /* this appears to be unused? */
997: static inline PetscErrorCode PetscLLAddSorted_new(PetscInt nidx, PetscInt *indices, PetscInt idx_start, PetscBool *lnk_empty, PetscInt *nlnk, PetscInt *lnk, PetscBT bt)
998: {
999:   PetscInt lnkdata = idx_start;

1001:   PetscFunctionBegin;
1002:   if (*lnk_empty) {
1003:     for (PetscInt k = 0; k < nidx; ++k) {
1004:       const PetscInt entry = indices[k], location = lnkdata;

1006:       PetscCall(PetscBTSet(bt,entry)); /* mark the new entry */
1007:       lnkdata       = lnk[location];
1008:       /* insertion location is found, add entry into lnk */
1009:       lnk[location] = entry;
1010:       lnk[entry]    = lnkdata;
1011:       lnkdata       = entry; /* next search starts from here */
1012:     }
1013:     /* lnk[indices[nidx-1]] = lnk[idx_start];
1014:        lnk[idx_start]       = indices[0];
1015:        PetscCall(PetscBTSet(bt,indices[0]));
1016:        for (_k=1; _k<nidx; _k++) {
1017:        PetscCall(PetscBTSet(bt,indices[_k]));
1018:        lnk[indices[_k-1]] = indices[_k];
1019:        }
1020:     */
1021:     *nlnk      = nidx;
1022:     *lnk_empty = PETSC_FALSE;
1023:   } else {
1024:     *nlnk = 0;
1025:     for (PetscInt k = 0; k < nidx; ++k) {
1026:       const PetscInt entry = indices[k];

1028:       if (!PetscBTLookupSet(bt,entry)) PetscCall(PetscLLInsertLocation_Private(PETSC_TRUE,k,idx_start,entry,nlnk,&lnkdata,lnk));
1029:     }
1030:   }
1031:   PetscFunctionReturn(PETSC_SUCCESS);
1032: }
1033: #endif

1035: /*
1036:   Add a SORTED index set into a sorted linked list used for LUFactorSymbolic()
1037:   Same as PetscLLAddSorted() with an additional operation:
1038:        count the number of input indices that are no larger than 'diag'
1039:   Input Parameters:
1040:     indices   - sorted integer array
1041:     idx_start - starting index of the list, index of pivot row
1042:     lnk       - linked list(an integer array) that is created
1043:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1044:     diag      - index of the active row in LUFactorSymbolic
1045:     nzbd      - number of input indices with indices <= idx_start
1046:     im        - im[idx_start] is initialized as num of nonzero entries in row=idx_start
1047:   output Parameters:
1048:     nlnk      - number of newly added indices
1049:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from indices
1050:     bt        - updated PetscBT (bitarray)
1051:     im        - im[idx_start]: unchanged if diag is not an entry
1052:                              : num of entries with indices <= diag if diag is an entry
1053: */
1054: static inline PetscErrorCode PetscLLAddSortedLU(const PetscInt *PETSC_RESTRICT indices, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscBT bt, PetscInt diag, PetscInt nzbd, PetscInt *PETSC_RESTRICT im)
1055: {
1056:   const PetscInt nidx = im[idx_start] - nzbd; /* num of entries with idx_start < index <= diag */

1058:   PetscFunctionBegin;
1059:   *nlnk = 0;
1060:   for (PetscInt k = 0, lnkdata = idx_start; k < nidx; ++k) {
1061:     const PetscInt entry = indices[k];

1063:     ++nzbd;
1064:     if (entry == diag) im[idx_start] = nzbd;
1065:     if (!PetscBTLookupSet(bt, entry)) PetscCall(PetscLLInsertLocation_Private(PETSC_TRUE, k, idx_start, entry, nlnk, &lnkdata, lnk));
1066:   }
1067:   PetscFunctionReturn(PETSC_SUCCESS);
1068: }

1070: /*
1071:   Copy data on the list into an array, then initialize the list
1072:   Input Parameters:
1073:     idx_start - starting index of the list
1074:     lnk_max   - max value of lnk indicating the end of the list
1075:     nlnk      - number of data on the list to be copied
1076:     lnk       - linked list
1077:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1078:   output Parameters:
1079:     indices   - array that contains the copied data
1080:     lnk       - linked list that is cleaned and initialize
1081:     bt        - PetscBT (bitarray) with all bits set to false
1082: */
1083: static inline PetscErrorCode PetscLLClean(PetscInt idx_start, PetscInt lnk_max, PetscInt nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT indices, PetscBT bt)
1084: {
1085:   PetscFunctionBegin;
1086:   for (PetscInt j = 0, idx = idx_start; j < nlnk; ++j) {
1087:     idx        = lnk[idx];
1088:     indices[j] = idx;
1089:     PetscCall(PetscBTClear(bt, idx));
1090:   }
1091:   lnk[idx_start] = lnk_max;
1092:   PetscFunctionReturn(PETSC_SUCCESS);
1093: }

1095: /*
1096:   Free memories used by the list
1097: */
1098: #define PetscLLDestroy(lnk, bt) ((PetscErrorCode)(PetscFree(lnk) || PetscBTDestroy(&(bt))))

1100: /* Routines below are used for incomplete matrix factorization */
1101: /*
1102:   Create and initialize a linked list and its levels
1103:   Input Parameters:
1104:     idx_start - starting index of the list
1105:     lnk_max   - max value of lnk indicating the end of the list
1106:     nlnk      - max length of the list
1107:   Output Parameters:
1108:     lnk       - list initialized
1109:     lnk_lvl   - array of size nlnk for storing levels of lnk
1110:     bt        - PetscBT (bitarray) with all bits set to false
1111: */
1112: #define PetscIncompleteLLCreate(idx_start, lnk_max, nlnk, lnk, lnk_lvl, bt) \
1113:   ((PetscErrorCode)(PetscIntMultError(2, nlnk, NULL) || PetscMalloc1(2 * nlnk, &lnk) || PetscBTCreate(nlnk, &(bt)) || (lnk[idx_start] = lnk_max, lnk_lvl = lnk + nlnk, PETSC_SUCCESS)))

1115: static inline PetscErrorCode PetscIncompleteLLInsertLocation_Private(PetscBool assume_sorted, PetscInt k, PetscInt idx_start, PetscInt entry, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnkdata, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscInt newval)
1116: {
1117:   PetscFunctionBegin;
1118:   PetscCall(PetscLLInsertLocation_Private(assume_sorted, k, idx_start, entry, nlnk, lnkdata, lnk));
1119:   lnklvl[entry] = newval;
1120:   PetscFunctionReturn(PETSC_SUCCESS);
1121: }

1123: /*
1124:   Initialize a sorted linked list used for ILU and ICC
1125:   Input Parameters:
1126:     nidx      - number of input idx
1127:     idx       - integer array used for storing column indices
1128:     idx_start - starting index of the list
1129:     perm      - indices of an IS
1130:     lnk       - linked list(an integer array) that is created
1131:     lnklvl    - levels of lnk
1132:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1133:   output Parameters:
1134:     nlnk     - number of newly added idx
1135:     lnk      - the sorted(increasing order) linked list containing new and non-redundate entries from idx
1136:     lnklvl   - levels of lnk
1137:     bt       - updated PetscBT (bitarray)
1138: */
1139: static inline PetscErrorCode PetscIncompleteLLInit(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscInt idx_start, const PetscInt *PETSC_RESTRICT perm, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt)
1140: {
1141:   PetscFunctionBegin;
1142:   *nlnk = 0;
1143:   for (PetscInt k = 0, lnkdata = idx_start; k < nidx; ++k) {
1144:     const PetscInt entry = perm[idx[k]];

1146:     if (!PetscBTLookupSet(bt, entry)) PetscCall(PetscIncompleteLLInsertLocation_Private(PETSC_FALSE, k, idx_start, entry, nlnk, &lnkdata, lnk, lnklvl, 0));
1147:   }
1148:   PetscFunctionReturn(PETSC_SUCCESS);
1149: }

1151: static inline PetscErrorCode PetscIncompleteLLAdd_Private(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscReal level, const PetscInt *PETSC_RESTRICT idxlvl, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt, PetscInt prow_offset, PetscBool assume_sorted)
1152: {
1153:   PetscFunctionBegin;
1154:   *nlnk = 0;
1155:   for (PetscInt k = 0, lnkdata = idx_start; k < nidx; ++k) {
1156:     const PetscInt incrlev = idxlvl[k] + prow_offset + 1;

1158:     if (incrlev <= level) {
1159:       const PetscInt entry = idx[k];

1161:       if (!PetscBTLookupSet(bt, entry)) PetscCall(PetscIncompleteLLInsertLocation_Private(assume_sorted, k, idx_start, entry, nlnk, &lnkdata, lnk, lnklvl, incrlev));
1162:       else if (lnklvl[entry] > incrlev) lnklvl[entry] = incrlev; /* existing entry */
1163:     }
1164:   }
1165:   PetscFunctionReturn(PETSC_SUCCESS);
1166: }

1168: /*
1169:   Add a SORTED index set into a sorted linked list for ICC
1170:   Input Parameters:
1171:     nidx      - number of input indices
1172:     idx       - sorted integer array used for storing column indices
1173:     level     - level of fill, e.g., ICC(level)
1174:     idxlvl    - level of idx
1175:     idx_start - starting index of the list
1176:     lnk       - linked list(an integer array) that is created
1177:     lnklvl    - levels of lnk
1178:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1179:     idxlvl_prow - idxlvl[prow], where prow is the row number of the idx
1180:   output Parameters:
1181:     nlnk   - number of newly added indices
1182:     lnk    - the sorted(increasing order) linked list containing new and non-redundate entries from idx
1183:     lnklvl - levels of lnk
1184:     bt     - updated PetscBT (bitarray)
1185:   Note: the level of U(i,j) is set as lvl(i,j) = min{ lvl(i,j), lvl(prow,i)+lvl(prow,j)+1)
1186:         where idx = non-zero columns of U(prow,prow+1:n-1), prow<i
1187: */
1188: static inline PetscErrorCode PetscICCLLAddSorted(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscReal level, const PetscInt *PETSC_RESTRICT idxlvl, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt, PetscInt idxlvl_prow)
1189: {
1190:   PetscFunctionBegin;
1191:   PetscCall(PetscIncompleteLLAdd_Private(nidx, idx, level, idxlvl, idx_start, nlnk, lnk, lnklvl, bt, idxlvl_prow, PETSC_TRUE));
1192:   PetscFunctionReturn(PETSC_SUCCESS);
1193: }

1195: /*
1196:   Add a SORTED index set into a sorted linked list for ILU
1197:   Input Parameters:
1198:     nidx      - number of input indices
1199:     idx       - sorted integer array used for storing column indices
1200:     level     - level of fill, e.g., ICC(level)
1201:     idxlvl    - level of idx
1202:     idx_start - starting index of the list
1203:     lnk       - linked list(an integer array) that is created
1204:     lnklvl    - levels of lnk
1205:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1206:     prow      - the row number of idx
1207:   output Parameters:
1208:     nlnk     - number of newly added idx
1209:     lnk      - the sorted(increasing order) linked list containing new and non-redundate entries from idx
1210:     lnklvl   - levels of lnk
1211:     bt       - updated PetscBT (bitarray)

1213:   Note: the level of factor(i,j) is set as lvl(i,j) = min{ lvl(i,j), lvl(i,prow)+lvl(prow,j)+1)
1214:         where idx = non-zero columns of U(prow,prow+1:n-1), prow<i
1215: */
1216: static inline PetscErrorCode PetscILULLAddSorted(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscInt level, const PetscInt *PETSC_RESTRICT idxlvl, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt, PetscInt prow)
1217: {
1218:   PetscFunctionBegin;
1219:   PetscCall(PetscIncompleteLLAdd_Private(nidx, idx, level, idxlvl, idx_start, nlnk, lnk, lnklvl, bt, lnklvl[prow], PETSC_TRUE));
1220:   PetscFunctionReturn(PETSC_SUCCESS);
1221: }

1223: /*
1224:   Add a index set into a sorted linked list
1225:   Input Parameters:
1226:     nidx      - number of input idx
1227:     idx   - integer array used for storing column indices
1228:     level     - level of fill, e.g., ICC(level)
1229:     idxlvl - level of idx
1230:     idx_start - starting index of the list
1231:     lnk       - linked list(an integer array) that is created
1232:     lnklvl   - levels of lnk
1233:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1234:   output Parameters:
1235:     nlnk      - number of newly added idx
1236:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from idx
1237:     lnklvl   - levels of lnk
1238:     bt        - updated PetscBT (bitarray)
1239: */
1240: static inline PetscErrorCode PetscIncompleteLLAdd(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscReal level, const PetscInt *PETSC_RESTRICT idxlvl, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt)
1241: {
1242:   PetscFunctionBegin;
1243:   PetscCall(PetscIncompleteLLAdd_Private(nidx, idx, level, idxlvl, idx_start, nlnk, lnk, lnklvl, bt, 0, PETSC_FALSE));
1244:   PetscFunctionReturn(PETSC_SUCCESS);
1245: }

1247: /*
1248:   Add a SORTED index set into a sorted linked list
1249:   Input Parameters:
1250:     nidx      - number of input indices
1251:     idx   - sorted integer array used for storing column indices
1252:     level     - level of fill, e.g., ICC(level)
1253:     idxlvl - level of idx
1254:     idx_start - starting index of the list
1255:     lnk       - linked list(an integer array) that is created
1256:     lnklvl    - levels of lnk
1257:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1258:   output Parameters:
1259:     nlnk      - number of newly added idx
1260:     lnk       - the sorted(increasing order) linked list containing new and non-redundate entries from idx
1261:     lnklvl    - levels of lnk
1262:     bt        - updated PetscBT (bitarray)
1263: */
1264: static inline PetscErrorCode PetscIncompleteLLAddSorted(PetscInt nidx, const PetscInt *PETSC_RESTRICT idx, PetscReal level, const PetscInt *PETSC_RESTRICT idxlvl, PetscInt idx_start, PetscInt *PETSC_RESTRICT nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscBT bt)
1265: {
1266:   PetscFunctionBegin;
1267:   PetscCall(PetscIncompleteLLAdd_Private(nidx, idx, level, idxlvl, idx_start, nlnk, lnk, lnklvl, bt, 0, PETSC_TRUE));
1268:   PetscFunctionReturn(PETSC_SUCCESS);
1269: }

1271: /*
1272:   Copy data on the list into an array, then initialize the list
1273:   Input Parameters:
1274:     idx_start - starting index of the list
1275:     lnk_max   - max value of lnk indicating the end of the list
1276:     nlnk      - number of data on the list to be copied
1277:     lnk       - linked list
1278:     lnklvl    - level of lnk
1279:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1280:   output Parameters:
1281:     indices - array that contains the copied data
1282:     lnk     - linked list that is cleaned and initialize
1283:     lnklvl  - level of lnk that is reinitialized
1284:     bt      - PetscBT (bitarray) with all bits set to false
1285: */
1286: static inline PetscErrorCode PetscIncompleteLLClean(PetscInt idx_start, PetscInt lnk_max, PetscInt nlnk, PetscInt *PETSC_RESTRICT lnk, PetscInt *PETSC_RESTRICT lnklvl, PetscInt *PETSC_RESTRICT indices, PetscInt *PETSC_RESTRICT indiceslvl, PetscBT bt)
1287: {
1288:   PetscFunctionBegin;
1289:   for (PetscInt j = 0, idx = idx_start; j < nlnk; ++j) {
1290:     idx           = lnk[idx];
1291:     indices[j]    = idx;
1292:     indiceslvl[j] = lnklvl[idx];
1293:     lnklvl[idx]   = -1;
1294:     PetscCall(PetscBTClear(bt, idx));
1295:   }
1296:   lnk[idx_start] = lnk_max;
1297:   PetscFunctionReturn(PETSC_SUCCESS);
1298: }

1300: /*
1301:   Free memories used by the list
1302: */
1303: #define PetscIncompleteLLDestroy(lnk, bt) ((PetscErrorCode)(PetscFree(lnk) || PetscBTDestroy(&(bt))))

1305: #if !defined(PETSC_CLANG_STATIC_ANALYZER)
1306:   #define MatCheckSameLocalSize(A, ar1, B, ar2) \
1307:     do { \
1308:       PetscCheckSameComm(A, ar1, B, ar2); \
1309:       PetscCheck(((A)->rmap->n == (B)->rmap->n) && ((A)->cmap->n == (B)->cmap->n), PETSC_COMM_SELF, PETSC_ERR_ARG_INCOMP, "Incompatible matrix local sizes: parameter # %d (%" PetscInt_FMT " x %" PetscInt_FMT ") != parameter # %d (%" PetscInt_FMT " x %" PetscInt_FMT ")", ar1, \
1310:                  (A)->rmap->n, (A)->cmap->n, ar2, (B)->rmap->n, (B)->cmap->n); \
1311:     } while (0)
1312:   #define MatCheckSameSize(A, ar1, B, ar2) \
1313:     do { \
1314:       PetscCheck(((A)->rmap->N == (B)->rmap->N) && ((A)->cmap->N == (B)->cmap->N), PetscObjectComm((PetscObject)(A)), PETSC_ERR_ARG_INCOMP, "Incompatible matrix global sizes: parameter # %d (%" PetscInt_FMT " x %" PetscInt_FMT ") != parameter # %d (%" PetscInt_FMT " x %" PetscInt_FMT ")", ar1, \
1315:                  (A)->rmap->N, (A)->cmap->N, ar2, (B)->rmap->N, (B)->cmap->N); \
1316:       MatCheckSameLocalSize(A, ar1, B, ar2); \
1317:     } while (0)
1318: #else
1319: template <typename Tm>
1320: extern void MatCheckSameLocalSize(Tm, int, Tm, int);
1321: template <typename Tm>
1322: extern void MatCheckSameSize(Tm, int, Tm, int);
1323: #endif

1325: #define VecCheckMatCompatible(M, x, ar1, b, ar2) \
1326:   do { \
1327:     PetscCheck((M)->cmap->N == (x)->map->N, PetscObjectComm((PetscObject)(M)), PETSC_ERR_ARG_SIZ, "Vector global length incompatible with matrix: parameter # %d global size %" PetscInt_FMT " != matrix column global size %" PetscInt_FMT, ar1, (x)->map->N, \
1328:                (M)->cmap->N); \
1329:     PetscCheck((M)->rmap->N == (b)->map->N, PetscObjectComm((PetscObject)(M)), PETSC_ERR_ARG_SIZ, "Vector global length incompatible with matrix: parameter # %d global size %" PetscInt_FMT " != matrix row global size %" PetscInt_FMT, ar2, (b)->map->N, \
1330:                (M)->rmap->N); \
1331:   } while (0)

1333: /*
1334:   Create and initialize a condensed linked list -
1335:     same as PetscLLCreate(), but uses a scalable array 'lnk' with size of max number of entries, not O(N).
1336:     Barry suggested this approach (Dec. 6, 2011):
1337:       I've thought of an alternative way of representing a linked list that is efficient but doesn't have the O(N) scaling issue
1338:       (it may be faster than the O(N) even sequentially due to less crazy memory access).

1340:       Instead of having some like  a  2  -> 4 -> 11 ->  22  list that uses slot 2  4 11 and 22 in a big array use a small array with two slots
1341:       for each entry for example  [ 2 1 | 4 3 | 22 -1 | 11 2]   so the first number (of the pair) is the value while the second tells you where
1342:       in the list the next entry is. Inserting a new link means just append another pair at the end. For example say we want to insert 13 into the
1343:       list it would then become [2 1 | 4 3 | 22 -1 | 11 4 | 13 2 ] you just add a pair at the end and fix the point for the one that points to it.
1344:       That is 11 use to point to the 2 slot, after the change 11 points to the 4th slot which has the value 13. Note that values are always next
1345:       to each other so memory access is much better than using the big array.

1347:   Example:
1348:      nlnk_max=5, lnk_max=36:
1349:      Initial list: [0, 0 | 36, 2 | 0, 0 | 0, 0 | 0, 0 | 0, 0 | 0, 0]
1350:      here, head_node has index 2 with value lnk[2]=lnk_max=36,
1351:            0-th entry is used to store the number of entries in the list,
1352:      The initial lnk represents head -> tail(marked by 36) with number of entries = lnk[0]=0.

1354:      Now adding a sorted set {2,4}, the list becomes
1355:      [2, 0 | 36, 4 |2, 6 | 4, 2 | 0, 0 | 0, 0 | 0, 0 ]
1356:      represents head -> 2 -> 4 -> tail with number of entries = lnk[0]=2.

1358:      Then adding a sorted set {0,3,35}, the list
1359:      [5, 0 | 36, 8 | 2, 10 | 4, 12 | 0, 4 | 3, 6 | 35, 2 ]
1360:      represents head -> 0 -> 2 -> 3 -> 4 -> 35 -> tail with number of entries = lnk[0]=5.

1362:   Input Parameters:
1363:     nlnk_max  - max length of the list
1364:     lnk_max   - max value of the entries
1365:   Output Parameters:
1366:     lnk       - list created and initialized
1367:     bt        - PetscBT (bitarray) with all bits set to false. Note: bt has size lnk_max, not nln_max!
1368: */
1369: static inline PetscErrorCode PetscLLCondensedCreate(PetscInt nlnk_max, PetscInt lnk_max, PetscInt **lnk, PetscBT *bt)
1370: {
1371:   PetscInt *llnk, lsize = 0;

1373:   PetscFunctionBegin;
1374:   PetscCall(PetscIntMultError(2, nlnk_max + 2, &lsize));
1375:   PetscCall(PetscMalloc1(lsize, lnk));
1376:   PetscCall(PetscBTCreate(lnk_max, bt));
1377:   llnk    = *lnk;
1378:   llnk[0] = 0;       /* number of entries on the list */
1379:   llnk[2] = lnk_max; /* value in the head node */
1380:   llnk[3] = 2;       /* next for the head node */
1381:   PetscFunctionReturn(PETSC_SUCCESS);
1382: }

1384: /*
1385:   Add a SORTED ascending index set into a sorted linked list. See PetscLLCondensedCreate() for detailed description.
1386:   Input Parameters:
1387:     nidx      - number of input indices
1388:     indices   - sorted integer array
1389:     lnk       - condensed linked list(an integer array) that is created
1390:     bt        - PetscBT (bitarray), bt[idx]=true marks idx is in lnk
1391:   output Parameters:
1392:     lnk       - the sorted(increasing order) linked list containing previous and newly added non-redundate indices
1393:     bt        - updated PetscBT (bitarray)
1394: */
1395: static inline PetscErrorCode PetscLLCondensedAddSorted(PetscInt nidx, const PetscInt indices[], PetscInt lnk[], PetscBT bt)
1396: {
1397:   PetscInt location = 2;      /* head */
1398:   PetscInt nlnk     = lnk[0]; /* num of entries on the input lnk */

1400:   PetscFunctionBegin;
1401:   for (PetscInt k = 0; k < nidx; k++) {
1402:     const PetscInt entry = indices[k];
1403:     if (!PetscBTLookupSet(bt, entry)) { /* new entry */
1404:       PetscInt next, lnkdata;

1406:       /* search for insertion location */
1407:       do {
1408:         next     = location + 1;  /* link from previous node to next node */
1409:         location = lnk[next];     /* idx of next node */
1410:         lnkdata  = lnk[location]; /* value of next node */
1411:       } while (entry > lnkdata);
1412:       /* insertion location is found, add entry into lnk */
1413:       const PetscInt newnode = 2 * (nlnk + 2); /* index for this new node */
1414:       lnk[next]              = newnode;        /* connect previous node to the new node */
1415:       lnk[newnode]           = entry;          /* set value of the new node */
1416:       lnk[newnode + 1]       = location;       /* connect new node to next node */
1417:       location               = newnode;        /* next search starts from the new node */
1418:       nlnk++;
1419:     }
1420:   }
1421:   lnk[0] = nlnk; /* number of entries in the list */
1422:   PetscFunctionReturn(PETSC_SUCCESS);
1423: }

1425: static inline PetscErrorCode PetscLLCondensedClean(PetscInt lnk_max, PETSC_UNUSED PetscInt nidx, PetscInt *indices, PetscInt lnk[], PetscBT bt)
1426: {
1427:   const PetscInt nlnk = lnk[0]; /* num of entries on the list */
1428:   PetscInt       next = lnk[3]; /* head node */

1430:   PetscFunctionBegin;
1431:   for (PetscInt k = 0; k < nlnk; k++) {
1432:     indices[k] = lnk[next];
1433:     next       = lnk[next + 1];
1434:     PetscCall(PetscBTClear(bt, indices[k]));
1435:   }
1436:   lnk[0] = 0;       /* num of entries on the list */
1437:   lnk[2] = lnk_max; /* initialize head node */
1438:   lnk[3] = 2;       /* head node */
1439:   PetscFunctionReturn(PETSC_SUCCESS);
1440: }

1442: static inline PetscErrorCode PetscLLCondensedView(PetscInt *lnk)
1443: {
1444:   PetscFunctionBegin;
1445:   PetscCall(PetscPrintf(PETSC_COMM_SELF, "LLCondensed of size %" PetscInt_FMT ", (val,  next)\n", lnk[0]));
1446:   for (PetscInt k = 2; k < lnk[0] + 2; ++k) PetscCall(PetscPrintf(PETSC_COMM_SELF, " %" PetscInt_FMT ": (%" PetscInt_FMT ", %" PetscInt_FMT ")\n", 2 * k, lnk[2 * k], lnk[2 * k + 1]));
1447:   PetscFunctionReturn(PETSC_SUCCESS);
1448: }

1450: /*
1451:   Free memories used by the list
1452: */
1453: static inline PetscErrorCode PetscLLCondensedDestroy(PetscInt *lnk, PetscBT bt)
1454: {
1455:   PetscFunctionBegin;
1456:   PetscCall(PetscFree(lnk));
1457:   PetscCall(PetscBTDestroy(&bt));
1458:   PetscFunctionReturn(PETSC_SUCCESS);
1459: }

1461: /*
1462:  Same as PetscLLCondensedCreate(), but does not use non-scalable O(lnk_max) bitarray
1463:   Input Parameters:
1464:     nlnk_max  - max length of the list
1465:   Output Parameters:
1466:     lnk       - list created and initialized
1467: */
1468: static inline PetscErrorCode PetscLLCondensedCreate_Scalable(PetscInt nlnk_max, PetscInt **lnk)
1469: {
1470:   PetscInt *llnk, lsize = 0;

1472:   PetscFunctionBegin;
1473:   PetscCall(PetscIntMultError(2, nlnk_max + 2, &lsize));
1474:   PetscCall(PetscMalloc1(lsize, lnk));
1475:   llnk    = *lnk;
1476:   llnk[0] = 0;             /* number of entries on the list */
1477:   llnk[2] = PETSC_INT_MAX; /* value in the head node */
1478:   llnk[3] = 2;             /* next for the head node */
1479:   PetscFunctionReturn(PETSC_SUCCESS);
1480: }

1482: static inline PetscErrorCode PetscLLCondensedExpand_Scalable(PetscInt nlnk_max, PetscInt **lnk)
1483: {
1484:   PetscInt lsize = 0;

1486:   PetscFunctionBegin;
1487:   PetscCall(PetscIntMultError(2, nlnk_max + 2, &lsize));
1488:   PetscCall(PetscRealloc(lsize * sizeof(PetscInt), lnk));
1489:   PetscFunctionReturn(PETSC_SUCCESS);
1490: }

1492: static inline PetscErrorCode PetscLLCondensedAddSorted_Scalable(PetscInt nidx, const PetscInt indices[], PetscInt lnk[])
1493: {
1494:   PetscInt location = 2;      /* head */
1495:   PetscInt nlnk     = lnk[0]; /* num of entries on the input lnk */

1497:   for (PetscInt k = 0; k < nidx; k++) {
1498:     const PetscInt entry = indices[k];
1499:     PetscInt       next, lnkdata;

1501:     /* search for insertion location */
1502:     do {
1503:       next     = location + 1;  /* link from previous node to next node */
1504:       location = lnk[next];     /* idx of next node */
1505:       lnkdata  = lnk[location]; /* value of next node */
1506:     } while (entry > lnkdata);
1507:     if (entry < lnkdata) {
1508:       /* insertion location is found, add entry into lnk */
1509:       const PetscInt newnode = 2 * (nlnk + 2); /* index for this new node */
1510:       lnk[next]              = newnode;        /* connect previous node to the new node */
1511:       lnk[newnode]           = entry;          /* set value of the new node */
1512:       lnk[newnode + 1]       = location;       /* connect new node to next node */
1513:       location               = newnode;        /* next search starts from the new node */
1514:       nlnk++;
1515:     }
1516:   }
1517:   lnk[0] = nlnk; /* number of entries in the list */
1518:   return PETSC_SUCCESS;
1519: }

1521: static inline PetscErrorCode PetscLLCondensedClean_Scalable(PETSC_UNUSED PetscInt nidx, PetscInt *indices, PetscInt *lnk)
1522: {
1523:   const PetscInt nlnk = lnk[0];
1524:   PetscInt       next = lnk[3]; /* head node */

1526:   for (PetscInt k = 0; k < nlnk; k++) {
1527:     indices[k] = lnk[next];
1528:     next       = lnk[next + 1];
1529:   }
1530:   lnk[0] = 0; /* num of entries on the list */
1531:   lnk[3] = 2; /* head node */
1532:   return PETSC_SUCCESS;
1533: }

1535: static inline PetscErrorCode PetscLLCondensedDestroy_Scalable(PetscInt *lnk)
1536: {
1537:   return PetscFree(lnk);
1538: }

1540: /*
1541:       lnk[0]   number of links
1542:       lnk[1]   number of entries
1543:       lnk[3n]  value
1544:       lnk[3n+1] len
1545:       lnk[3n+2] link to next value

1547:       The next three are always the first link

1549:       lnk[3]    PETSC_INT_MIN+1
1550:       lnk[4]    1
1551:       lnk[5]    link to first real entry

1553:       The next three are always the last link

1555:       lnk[6]    PETSC_INT_MAX - 1
1556:       lnk[7]    1
1557:       lnk[8]    next valid link (this is the same as lnk[0] but without the decreases)
1558: */

1560: static inline PetscErrorCode PetscLLCondensedCreate_fast(PetscInt nlnk_max, PetscInt **lnk)
1561: {
1562:   PetscInt *llnk;
1563:   PetscInt  lsize = 0;

1565:   PetscFunctionBegin;
1566:   PetscCall(PetscIntMultError(3, nlnk_max + 3, &lsize));
1567:   PetscCall(PetscMalloc1(lsize, lnk));
1568:   llnk    = *lnk;
1569:   llnk[0] = 0;                 /* nlnk: number of entries on the list */
1570:   llnk[1] = 0;                 /* number of integer entries represented in list */
1571:   llnk[3] = PETSC_INT_MIN + 1; /* value in the first node */
1572:   llnk[4] = 1;                 /* count for the first node */
1573:   llnk[5] = 6;                 /* next for the first node */
1574:   llnk[6] = PETSC_INT_MAX - 1; /* value in the last node */
1575:   llnk[7] = 1;                 /* count for the last node */
1576:   llnk[8] = 0;                 /* next valid node to be used */
1577:   PetscFunctionReturn(PETSC_SUCCESS);
1578: }

1580: static inline PetscErrorCode PetscLLCondensedAddSorted_fast(PetscInt nidx, const PetscInt indices[], PetscInt lnk[])
1581: {
1582:   for (PetscInt k = 0, prev = 3 /* first value */; k < nidx; k++) {
1583:     const PetscInt entry = indices[k];
1584:     PetscInt       next  = lnk[prev + 2];

1586:     /* search for insertion location */
1587:     while (entry >= lnk[next]) {
1588:       prev = next;
1589:       next = lnk[next + 2];
1590:     }
1591:     /* entry is in range of previous list */
1592:     if (entry < lnk[prev] + lnk[prev + 1]) continue;
1593:     lnk[1]++;
1594:     /* entry is right after previous list */
1595:     if (entry == lnk[prev] + lnk[prev + 1]) {
1596:       lnk[prev + 1]++;
1597:       if (lnk[next] == entry + 1) { /* combine two contiguous strings */
1598:         lnk[prev + 1] += lnk[next + 1];
1599:         lnk[prev + 2] = lnk[next + 2];
1600:         next          = lnk[next + 2];
1601:         lnk[0]--;
1602:       }
1603:       continue;
1604:     }
1605:     /* entry is right before next list */
1606:     if (entry == lnk[next] - 1) {
1607:       lnk[next]--;
1608:       lnk[next + 1]++;
1609:       prev = next;
1610:       next = lnk[prev + 2];
1611:       continue;
1612:     }
1613:     /*  add entry into lnk */
1614:     lnk[prev + 2] = 3 * ((lnk[8]++) + 3); /* connect previous node to the new node */
1615:     prev          = lnk[prev + 2];
1616:     lnk[prev]     = entry; /* set value of the new node */
1617:     lnk[prev + 1] = 1;     /* number of values in contiguous string is one to start */
1618:     lnk[prev + 2] = next;  /* connect new node to next node */
1619:     lnk[0]++;
1620:   }
1621:   return PETSC_SUCCESS;
1622: }

1624: static inline PetscErrorCode PetscLLCondensedClean_fast(PETSC_UNUSED PetscInt nidx, PetscInt *indices, PetscInt *lnk)
1625: {
1626:   const PetscInt nlnk = lnk[0];
1627:   PetscInt       next = lnk[5]; /* first node */

1629:   for (PetscInt k = 0, cnt = 0; k < nlnk; k++) {
1630:     for (PetscInt j = 0; j < lnk[next + 1]; j++) indices[cnt++] = lnk[next] + j;
1631:     next = lnk[next + 2];
1632:   }
1633:   lnk[0] = 0;                 /* nlnk: number of links */
1634:   lnk[1] = 0;                 /* number of integer entries represented in list */
1635:   lnk[3] = PETSC_INT_MIN + 1; /* value in the first node */
1636:   lnk[4] = 1;                 /* count for the first node */
1637:   lnk[5] = 6;                 /* next for the first node */
1638:   lnk[6] = PETSC_INT_MAX - 1; /* value in the last node */
1639:   lnk[7] = 1;                 /* count for the last node */
1640:   lnk[8] = 0;                 /* next valid location to make link */
1641:   return PETSC_SUCCESS;
1642: }

1644: static inline PetscErrorCode PetscLLCondensedView_fast(const PetscInt *lnk)
1645: {
1646:   const PetscInt nlnk = lnk[0];
1647:   PetscInt       next = lnk[5]; /* first node */

1649:   for (PetscInt k = 0; k < nlnk; k++) {
1650: #if 0 /* Debugging code */
1651:     printf("%d value %d len %d next %d\n", next, lnk[next], lnk[next + 1], lnk[next + 2]);
1652: #endif
1653:     next = lnk[next + 2];
1654:   }
1655:   return PETSC_SUCCESS;
1656: }

1658: static inline PetscErrorCode PetscLLCondensedDestroy_fast(PetscInt *lnk)
1659: {
1660:   return PetscFree(lnk);
1661: }

1663: PETSC_EXTERN PetscErrorCode PetscCDCreate(PetscInt, PetscCoarsenData **);
1664: PETSC_EXTERN PetscErrorCode PetscCDDestroy(PetscCoarsenData *);
1665: PETSC_EXTERN PetscErrorCode PetscCDIntNdSetID(PetscCDIntNd *, PetscInt);
1666: PETSC_EXTERN PetscErrorCode PetscCDIntNdGetID(const PetscCDIntNd *, PetscInt *);
1667: PETSC_EXTERN PetscErrorCode PetscCDAppendID(PetscCoarsenData *, PetscInt, PetscInt);
1668: PETSC_EXTERN PetscErrorCode PetscCDMoveAppend(PetscCoarsenData *, PetscInt, PetscInt);
1669: PETSC_EXTERN PetscErrorCode PetscCDAppendNode(PetscCoarsenData *, PetscInt, PetscCDIntNd *);
1670: PETSC_EXTERN PetscErrorCode PetscCDRemoveNextNode(PetscCoarsenData *, PetscInt, PetscCDIntNd *);
1671: PETSC_EXTERN PetscErrorCode PetscCDCountAt(const PetscCoarsenData *, PetscInt, PetscInt *);
1672: PETSC_EXTERN PetscErrorCode PetscCDIsEmptyAt(const PetscCoarsenData *, PetscInt, PetscBool *);
1673: PETSC_EXTERN PetscErrorCode PetscCDSetChunkSize(PetscCoarsenData *, PetscInt);
1674: PETSC_EXTERN PetscErrorCode PetscCDPrint(const PetscCoarsenData *, PetscInt, MPI_Comm);
1675: PETSC_EXTERN PetscErrorCode PetscCDGetNonemptyIS(PetscCoarsenData *, IS *);
1676: PETSC_EXTERN PetscErrorCode PetscCDGetMat(PetscCoarsenData *, Mat *);
1677: PETSC_EXTERN PetscErrorCode PetscCDSetMat(PetscCoarsenData *, Mat);
1678: PETSC_EXTERN PetscErrorCode PetscCDClearMat(PetscCoarsenData *);
1679: PETSC_EXTERN PetscErrorCode PetscCDRemoveAllAt(PetscCoarsenData *, PetscInt);
1680: PETSC_EXTERN PetscErrorCode PetscCDCount(const PetscCoarsenData *, PetscInt *_sz);

1682: PETSC_EXTERN PetscErrorCode PetscCDGetHeadPos(const PetscCoarsenData *, PetscInt, PetscCDIntNd **);
1683: PETSC_EXTERN PetscErrorCode PetscCDGetNextPos(const PetscCoarsenData *, PetscInt, PetscCDIntNd **);
1684: PETSC_EXTERN PetscErrorCode PetscCDGetASMBlocks(const PetscCoarsenData *, const PetscInt, PetscInt *, IS **);

1686: PETSC_SINGLE_LIBRARY_VISIBILITY_INTERNAL PetscErrorCode MatFDColoringApply_AIJ(Mat, MatFDColoring, Vec, void *);

1688: typedef struct {
1689:   Vec              diag;
1690:   PetscBool        diag_valid;
1691:   Vec              inv_diag;
1692:   PetscBool        inv_diag_valid;
1693:   PetscObjectState diag_state, inv_diag_state;
1694:   PetscInt        *col;
1695:   PetscScalar     *val;
1696: } Mat_Diagonal;

1698: #if PetscDefined(HAVE_CUDA)
1699: PETSC_INTERN PetscErrorCode MatADot_Diagonal_SeqCUDA(Mat, Vec, Vec, PetscScalar *);
1700: PETSC_INTERN PetscErrorCode MatANormSq_Diagonal_SeqCUDA(Mat, Vec, PetscReal *);
1701: #endif
1702: #if PetscDefined(HAVE_HIP)
1703: PETSC_INTERN PetscErrorCode MatADot_Diagonal_SeqHIP(Mat, Vec, Vec, PetscScalar *);
1704: PETSC_INTERN PetscErrorCode MatANormSq_Diagonal_SeqHIP(Mat, Vec, PetscReal *);
1705: #endif
1706: #if PetscDefined(HAVE_KOKKOS_KERNELS)
1707: PETSC_INTERN PetscErrorCode MatADot_Diagonal_SeqKokkos(Mat, Vec, Vec, PetscScalar *);
1708: PETSC_INTERN PetscErrorCode MatANormSq_Diagonal_SeqKokkos(Mat, Vec, PetscReal *);
1709: #endif

1711: PETSC_EXTERN PetscLogEvent MAT_Mult;
1712: PETSC_EXTERN PetscLogEvent MAT_MultAdd;
1713: PETSC_EXTERN PetscLogEvent MAT_MultTranspose;
1714: PETSC_EXTERN PetscLogEvent MAT_MultHermitianTranspose;
1715: PETSC_EXTERN PetscLogEvent MAT_MultTransposeAdd;
1716: PETSC_EXTERN PetscLogEvent MAT_MultHermitianTransposeAdd;
1717: PETSC_EXTERN PetscLogEvent MAT_ADot;
1718: PETSC_EXTERN PetscLogEvent MAT_ANorm;
1719: PETSC_EXTERN PetscLogEvent MAT_Solve;
1720: PETSC_EXTERN PetscLogEvent MAT_Solves;
1721: PETSC_EXTERN PetscLogEvent MAT_SolveAdd;
1722: PETSC_EXTERN PetscLogEvent MAT_SolveTranspose;
1723: PETSC_EXTERN PetscLogEvent MAT_SolveTransposeAdd;
1724: PETSC_EXTERN PetscLogEvent MAT_SOR;
1725: PETSC_EXTERN PetscLogEvent MAT_ForwardSolve;
1726: PETSC_EXTERN PetscLogEvent MAT_BackwardSolve;
1727: PETSC_EXTERN PetscLogEvent MAT_LUFactor;
1728: PETSC_EXTERN PetscLogEvent MAT_LUFactorSymbolic;
1729: PETSC_EXTERN PetscLogEvent MAT_LUFactorNumeric;
1730: PETSC_EXTERN PetscLogEvent MAT_QRFactor;
1731: PETSC_EXTERN PetscLogEvent MAT_QRFactorSymbolic;
1732: PETSC_EXTERN PetscLogEvent MAT_QRFactorNumeric;
1733: PETSC_EXTERN PetscLogEvent MAT_CholeskyFactor;
1734: PETSC_EXTERN PetscLogEvent MAT_CholeskyFactorSymbolic;
1735: PETSC_EXTERN PetscLogEvent MAT_CholeskyFactorNumeric;
1736: PETSC_EXTERN PetscLogEvent MAT_ILUFactor;
1737: PETSC_EXTERN PetscLogEvent MAT_ILUFactorSymbolic;
1738: PETSC_EXTERN PetscLogEvent MAT_ICCFactorSymbolic;
1739: PETSC_EXTERN PetscLogEvent MAT_Copy;
1740: PETSC_EXTERN PetscLogEvent MAT_Convert;
1741: PETSC_EXTERN PetscLogEvent MAT_Scale;
1742: PETSC_EXTERN PetscLogEvent MAT_AssemblyBegin;
1743: PETSC_EXTERN PetscLogEvent MAT_AssemblyEnd;
1744: PETSC_EXTERN PetscLogEvent MAT_SetValues;
1745: PETSC_EXTERN PetscLogEvent MAT_GetValues;
1746: PETSC_EXTERN PetscLogEvent MAT_GetRow;
1747: PETSC_EXTERN PetscLogEvent MAT_GetRowIJ;
1748: PETSC_EXTERN PetscLogEvent MAT_CreateSubMats;
1749: PETSC_EXTERN PetscLogEvent MAT_GetOrdering;
1750: PETSC_EXTERN PetscLogEvent MAT_RedundantMat;
1751: PETSC_EXTERN PetscLogEvent MAT_IncreaseOverlap;
1752: PETSC_EXTERN PetscLogEvent MAT_Partitioning;
1753: PETSC_EXTERN PetscLogEvent MAT_PartitioningND;
1754: PETSC_EXTERN PetscLogEvent MAT_Coarsen;
1755: PETSC_EXTERN PetscLogEvent MAT_ZeroEntries;
1756: PETSC_EXTERN PetscLogEvent MAT_Load;
1757: PETSC_EXTERN PetscLogEvent MAT_View;
1758: PETSC_EXTERN PetscLogEvent MAT_AXPY;
1759: PETSC_EXTERN PetscLogEvent MAT_FDColoringCreate;
1760: PETSC_EXTERN PetscLogEvent MAT_TransposeColoringCreate;
1761: PETSC_EXTERN PetscLogEvent MAT_FDColoringSetUp;
1762: PETSC_EXTERN PetscLogEvent MAT_FDColoringApply;
1763: PETSC_EXTERN PetscLogEvent MAT_Transpose;
1764: PETSC_EXTERN PetscLogEvent MAT_FDColoringFunction;
1765: PETSC_EXTERN PetscLogEvent MAT_CreateSubMat;
1766: PETSC_EXTERN PetscLogEvent MAT_MatSolve;
1767: PETSC_EXTERN PetscLogEvent MAT_MatTrSolve;
1768: PETSC_EXTERN PetscLogEvent MAT_MatMultSymbolic;
1769: PETSC_EXTERN PetscLogEvent MAT_MatMultNumeric;
1770: PETSC_EXTERN PetscLogEvent MAT_Getlocalmatcondensed;
1771: PETSC_EXTERN PetscLogEvent MAT_GetBrowsOfAcols;
1772: PETSC_EXTERN PetscLogEvent MAT_GetBrowsOfAocols;
1773: PETSC_EXTERN PetscLogEvent MAT_PtAPSymbolic;
1774: PETSC_EXTERN PetscLogEvent MAT_PtAPNumeric;
1775: PETSC_EXTERN PetscLogEvent MAT_Seqstompinum;
1776: PETSC_EXTERN PetscLogEvent MAT_Seqstompisym;
1777: PETSC_EXTERN PetscLogEvent MAT_Seqstompi;
1778: PETSC_EXTERN PetscLogEvent MAT_Getlocalmat;
1779: PETSC_EXTERN PetscLogEvent MAT_RARtSymbolic;
1780: PETSC_EXTERN PetscLogEvent MAT_RARtNumeric;
1781: PETSC_EXTERN PetscLogEvent MAT_MatTransposeMultSymbolic;
1782: PETSC_EXTERN PetscLogEvent MAT_MatTransposeMultNumeric;
1783: PETSC_EXTERN PetscLogEvent MAT_TransposeMatMultSymbolic;
1784: PETSC_EXTERN PetscLogEvent MAT_TransposeMatMultNumeric;
1785: PETSC_EXTERN PetscLogEvent MAT_MatMatMultSymbolic;
1786: PETSC_EXTERN PetscLogEvent MAT_MatMatMultNumeric;
1787: PETSC_EXTERN PetscLogEvent MAT_Getsymtransreduced;
1788: PETSC_EXTERN PetscLogEvent MAT_GetSeqNonzeroStructure;
1789: PETSC_EXTERN PetscLogEvent MATMFFD_Mult;
1790: PETSC_EXTERN PetscLogEvent MAT_GetMultiProcBlock;
1791: PETSC_EXTERN PetscLogEvent MAT_CUSPARSECopyToGPU;
1792: PETSC_EXTERN PetscLogEvent MAT_CUSPARSECopyFromGPU;
1793: PETSC_EXTERN PetscLogEvent MAT_CUSPARSEGenerateTranspose;
1794: PETSC_EXTERN PetscLogEvent MAT_CUSPARSESolveAnalysis;
1795: PETSC_EXTERN PetscLogEvent MAT_HIPSPARSECopyToGPU;
1796: PETSC_EXTERN PetscLogEvent MAT_HIPSPARSECopyFromGPU;
1797: PETSC_EXTERN PetscLogEvent MAT_HIPSPARSEGenerateTranspose;
1798: PETSC_EXTERN PetscLogEvent MAT_HIPSPARSESolveAnalysis;
1799: PETSC_EXTERN PetscLogEvent MAT_SetValuesBatch;
1800: PETSC_EXTERN PetscLogEvent MAT_CreateGraph;
1801: PETSC_EXTERN PetscLogEvent MAT_ViennaCLCopyToGPU;
1802: PETSC_EXTERN PetscLogEvent MAT_DenseCopyToGPU;
1803: PETSC_EXTERN PetscLogEvent MAT_DenseCopyFromGPU;
1804: PETSC_EXTERN PetscLogEvent MAT_Merge;
1805: PETSC_EXTERN PetscLogEvent MAT_Residual;
1806: PETSC_EXTERN PetscLogEvent MAT_SetRandom;
1807: PETSC_EXTERN PetscLogEvent MAT_FactorFactS;
1808: PETSC_EXTERN PetscLogEvent MAT_FactorInvS;
1809: PETSC_EXTERN PetscLogEvent MAT_PreallCOO;
1810: PETSC_EXTERN PetscLogEvent MAT_SetVCOO;
1811: PETSC_EXTERN PetscLogEvent MATCOLORING_Apply;
1812: PETSC_EXTERN PetscLogEvent MATCOLORING_Comm;
1813: PETSC_EXTERN PetscLogEvent MATCOLORING_Local;
1814: PETSC_EXTERN PetscLogEvent MATCOLORING_ISCreate;
1815: PETSC_EXTERN PetscLogEvent MATCOLORING_SetUp;
1816: PETSC_EXTERN PetscLogEvent MATCOLORING_Weights;
1817: PETSC_EXTERN PetscLogEvent MAT_H2Opus_Build;
1818: PETSC_EXTERN PetscLogEvent MAT_H2Opus_Compress;
1819: PETSC_EXTERN PetscLogEvent MAT_H2Opus_Orthog;
1820: PETSC_EXTERN PetscLogEvent MAT_H2Opus_LR;
1821: PETSC_EXTERN PetscLogEvent MAT_CUDACopyToGPU;
1822: PETSC_EXTERN PetscLogEvent MAT_HIPCopyToGPU;

1824: #if defined(PETSC_CLANG_STATIC_ANALYZER)
1825:   #define MatGetDiagonalMarkers(SeqXXX, bs)
1826: #else
1827:   /*
1828:    Adds diagonal pointers to sparse matrix nonzero structure and determines if all diagonal entries are present

1830:    Rechecks the matrix data structure automatically if the nonzero structure of the matrix changed since the last call

1832:    Potential optimization: since the a->j[j] are sorted this could use bisection to find the diagonal

1834:    Developer Note:
1835:    Uses the C preprocessor as a template mechanism to produce MatGetDiagonal_Seq[SB]AIJ() to avoid duplicate code
1836: */
1837:   #define MatGetDiagonalMarkers(SeqXXX, bs) \
1838:     PetscErrorCode MatGetDiagonalMarkers_##SeqXXX(Mat A, const PetscInt **diag, PetscBool *diagDense) \
1839:     { \
1840:       Mat_##SeqXXX *a = (Mat_##SeqXXX *)A->data; \
1841: \
1842:       PetscFunctionBegin; \
1843:       if (A->factortype != MAT_FACTOR_NONE) { \
1844:         if (diagDense) *diagDense = PETSC_TRUE; \
1845:         if (diag) *diag = a->diag; \
1846:         PetscFunctionReturn(PETSC_SUCCESS); \
1847:       } \
1848:       PetscCheck(diag || diagDense, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "At least one of diag or diagDense must be requested"); \
1849:       if (a->diagNonzeroState != A->nonzerostate || (diag && !a->diag)) { \
1850:         const PetscInt m = A->rmap->n / bs; \
1851: \
1852:         if (!diag && !a->diag) { \
1853:           a->diagDense = PETSC_TRUE; \
1854:           for (PetscInt i = 0; i < m; i++) { \
1855:             PetscBool found = PETSC_FALSE; \
1856: \
1857:             for (PetscInt j = a->i[i]; j < a->i[i + 1]; j++) { \
1858:               if (a->j[j] == i) { \
1859:                 found = PETSC_TRUE; \
1860:                 break; \
1861:               } \
1862:             } \
1863:             if (!found) { \
1864:               a->diagDense        = PETSC_FALSE; \
1865:               *diagDense          = a->diagDense; \
1866:               a->diagNonzeroState = A->nonzerostate; \
1867:               PetscFunctionReturn(PETSC_SUCCESS); \
1868:             } \
1869:           } \
1870:         } else { \
1871:           if (!a->diag) PetscCall(PetscMalloc1(m, &a->diag)); \
1872:           a->diagDense = PETSC_TRUE; \
1873:           for (PetscInt i = 0; i < m; i++) { \
1874:             PetscBool found = PETSC_FALSE; \
1875: \
1876:             a->diag[i] = a->i[i + 1]; \
1877:             for (PetscInt j = a->i[i]; j < a->i[i + 1]; j++) { \
1878:               if (a->j[j] == i) { \
1879:                 a->diag[i] = j; \
1880:                 found      = PETSC_TRUE; \
1881:                 break; \
1882:               } \
1883:             } \
1884:             if (!found) a->diagDense = PETSC_FALSE; \
1885:           } \
1886:         } \
1887:         a->diagNonzeroState = A->nonzerostate; \
1888:       } \
1889:       if (diag) *diag = a->diag; \
1890:       if (diagDense) *diagDense = a->diagDense; \
1891:       PetscFunctionReturn(PETSC_SUCCESS); \
1892:     }
1893: #endif