xref: /petsc/src/tao/interface/taosolver_fg.c (revision bd412c90fba8895e9763ccee76c7dd2e09a982d7)
1 #include <petsc/private/taoimpl.h> /*I "petsctao.h" I*/
2 
3 /*@
4   TaoSetSolution - Sets the vector holding the initial guess for the solve
5 
6   Logically collective on tao
7 
8   Input Parameters:
9 + tao - the Tao context
10 - x0  - the initial guess
11 
12   Level: beginner
13 .seealso: `Tao`, `TaoCreate()`, `TaoSolve()`, `TaoGetSolution()`
14 @*/
15 PetscErrorCode TaoSetSolution(Tao tao, Vec x0)
16 {
17   PetscFunctionBegin;
18   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
19   if (x0) PetscValidHeaderSpecific(x0, VEC_CLASSID, 2);
20   PetscCall(PetscObjectReference((PetscObject)x0));
21   PetscCall(VecDestroy(&tao->solution));
22   tao->solution = x0;
23   PetscFunctionReturn(0);
24 }
25 
26 PetscErrorCode TaoTestGradient(Tao tao, Vec x, Vec g1)
27 {
28   Vec               g2, g3;
29   PetscBool         complete_print = PETSC_FALSE, test = PETSC_FALSE;
30   PetscReal         hcnorm, fdnorm, hcmax, fdmax, diffmax, diffnorm;
31   PetscScalar       dot;
32   MPI_Comm          comm;
33   PetscViewer       viewer, mviewer;
34   PetscViewerFormat format;
35   PetscInt          tabs;
36   static PetscBool  directionsprinted = PETSC_FALSE;
37 
38   PetscFunctionBegin;
39   PetscObjectOptionsBegin((PetscObject)tao);
40   PetscCall(PetscOptionsName("-tao_test_gradient", "Compare hand-coded and finite difference Gradients", "None", &test));
41   PetscCall(PetscOptionsViewer("-tao_test_gradient_view", "View difference between hand-coded and finite difference Gradients element entries", "None", &mviewer, &format, &complete_print));
42   PetscOptionsEnd();
43   if (!test) {
44     if (complete_print) PetscCall(PetscViewerDestroy(&mviewer));
45     PetscFunctionReturn(0);
46   }
47 
48   PetscCall(PetscObjectGetComm((PetscObject)tao, &comm));
49   PetscCall(PetscViewerASCIIGetStdout(comm, &viewer));
50   PetscCall(PetscViewerASCIIGetTab(viewer, &tabs));
51   PetscCall(PetscViewerASCIISetTab(viewer, ((PetscObject)tao)->tablevel));
52   PetscCall(PetscViewerASCIIPrintf(viewer, "  ---------- Testing Gradient -------------\n"));
53   if (!complete_print && !directionsprinted) {
54     PetscCall(PetscViewerASCIIPrintf(viewer, "  Run with -tao_test_gradient_view and optionally -tao_test_gradient <threshold> to show difference\n"));
55     PetscCall(PetscViewerASCIIPrintf(viewer, "    of hand-coded and finite difference gradient entries greater than <threshold>.\n"));
56   }
57   if (!directionsprinted) {
58     PetscCall(PetscViewerASCIIPrintf(viewer, "  Testing hand-coded Gradient, if (for double precision runs) ||G - Gfd||/||G|| is\n"));
59     PetscCall(PetscViewerASCIIPrintf(viewer, "    O(1.e-8), the hand-coded Gradient is probably correct.\n"));
60     directionsprinted = PETSC_TRUE;
61   }
62   if (complete_print) PetscCall(PetscViewerPushFormat(mviewer, format));
63 
64   PetscCall(VecDuplicate(x, &g2));
65   PetscCall(VecDuplicate(x, &g3));
66 
67   /* Compute finite difference gradient, assume the gradient is already computed by TaoComputeGradient() and put into g1 */
68   PetscCall(TaoDefaultComputeGradient(tao, x, g2, NULL));
69 
70   PetscCall(VecNorm(g2, NORM_2, &fdnorm));
71   PetscCall(VecNorm(g1, NORM_2, &hcnorm));
72   PetscCall(VecNorm(g2, NORM_INFINITY, &fdmax));
73   PetscCall(VecNorm(g1, NORM_INFINITY, &hcmax));
74   PetscCall(VecDot(g1, g2, &dot));
75   PetscCall(VecCopy(g1, g3));
76   PetscCall(VecAXPY(g3, -1.0, g2));
77   PetscCall(VecNorm(g3, NORM_2, &diffnorm));
78   PetscCall(VecNorm(g3, NORM_INFINITY, &diffmax));
79   PetscCall(PetscViewerASCIIPrintf(viewer, "  ||Gfd|| %g, ||G|| = %g, angle cosine = (Gfd'G)/||Gfd||||G|| = %g\n", (double)fdnorm, (double)hcnorm, (double)(PetscRealPart(dot) / (fdnorm * hcnorm))));
80   PetscCall(PetscViewerASCIIPrintf(viewer, "  2-norm ||G - Gfd||/||G|| = %g, ||G - Gfd|| = %g\n", (double)(diffnorm / PetscMax(hcnorm, fdnorm)), (double)diffnorm));
81   PetscCall(PetscViewerASCIIPrintf(viewer, "  max-norm ||G - Gfd||/||G|| = %g, ||G - Gfd|| = %g\n", (double)(diffmax / PetscMax(hcmax, fdmax)), (double)diffmax));
82 
83   if (complete_print) {
84     PetscCall(PetscViewerASCIIPrintf(viewer, "  Hand-coded gradient ----------\n"));
85     PetscCall(VecView(g1, mviewer));
86     PetscCall(PetscViewerASCIIPrintf(viewer, "  Finite difference gradient ----------\n"));
87     PetscCall(VecView(g2, mviewer));
88     PetscCall(PetscViewerASCIIPrintf(viewer, "  Hand-coded minus finite-difference gradient ----------\n"));
89     PetscCall(VecView(g3, mviewer));
90   }
91   PetscCall(VecDestroy(&g2));
92   PetscCall(VecDestroy(&g3));
93 
94   if (complete_print) {
95     PetscCall(PetscViewerPopFormat(mviewer));
96     PetscCall(PetscViewerDestroy(&mviewer));
97   }
98   PetscCall(PetscViewerASCIISetTab(viewer, tabs));
99   PetscFunctionReturn(0);
100 }
101 
102 /*@
103   TaoComputeGradient - Computes the gradient of the objective function
104 
105   Collective on tao
106 
107   Input Parameters:
108 + tao - the Tao context
109 - X - input vector
110 
111   Output Parameter:
112 . G - gradient vector
113 
114   Options Database Keys:
115 +    -tao_test_gradient - compare the user provided gradient with one compute via finite differences to check for errors
116 -    -tao_test_gradient_view - display the user provided gradient, the finite difference gradient and the difference between them to help users detect the location of errors in the user provided gradient
117 
118   Note:
119     `TaoComputeGradient()` is typically used within the implementation of the optimization method,
120   so most users would not generally call this routine themselves.
121 
122   Level: developer
123 
124 .seealso: `TaoComputeObjective()`, `TaoComputeObjectiveAndGradient()`, `TaoSetGradient()`
125 @*/
126 PetscErrorCode TaoComputeGradient(Tao tao, Vec X, Vec G)
127 {
128   PetscReal dummy;
129 
130   PetscFunctionBegin;
131   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
132   PetscValidHeaderSpecific(X, VEC_CLASSID, 2);
133   PetscValidHeaderSpecific(G, VEC_CLASSID, 3);
134   PetscCheckSameComm(tao, 1, X, 2);
135   PetscCheckSameComm(tao, 1, G, 3);
136   PetscCall(VecLockReadPush(X));
137   if (tao->ops->computegradient) {
138     PetscCall(PetscLogEventBegin(TAO_GradientEval, tao, X, G, NULL));
139     PetscCallBack("Tao callback gradient", (*tao->ops->computegradient)(tao, X, G, tao->user_gradP));
140     PetscCall(PetscLogEventEnd(TAO_GradientEval, tao, X, G, NULL));
141     tao->ngrads++;
142   } else if (tao->ops->computeobjectiveandgradient) {
143     PetscCall(PetscLogEventBegin(TAO_ObjGradEval, tao, X, G, NULL));
144     PetscCallBack("Tao callback objective/gradient", (*tao->ops->computeobjectiveandgradient)(tao, X, &dummy, G, tao->user_objgradP));
145     PetscCall(PetscLogEventEnd(TAO_ObjGradEval, tao, X, G, NULL));
146     tao->nfuncgrads++;
147   } else SETERRQ(PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_WRONGSTATE, "TaoSetGradient() has not been called");
148   PetscCall(VecLockReadPop(X));
149 
150   PetscCall(TaoTestGradient(tao, X, G));
151   PetscFunctionReturn(0);
152 }
153 
154 /*@
155   TaoComputeObjective - Computes the objective function value at a given point
156 
157   Collective on tao
158 
159   Input Parameters:
160 + tao - the Tao context
161 - X - input vector
162 
163   Output Parameter:
164 . f - Objective value at X
165 
166   Note:
167     `TaoComputeObjective()` is typically used within the implementation of the optimization algorithm
168   so most users would not generally call this routine themselves.
169 
170   Level: developer
171 
172 .seealso: `Tao`, `TaoComputeGradient()`, `TaoComputeObjectiveAndGradient()`, `TaoSetObjective()`
173 @*/
174 PetscErrorCode TaoComputeObjective(Tao tao, Vec X, PetscReal *f)
175 {
176   Vec temp;
177 
178   PetscFunctionBegin;
179   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
180   PetscValidHeaderSpecific(X, VEC_CLASSID, 2);
181   PetscCheckSameComm(tao, 1, X, 2);
182   PetscCall(VecLockReadPush(X));
183   if (tao->ops->computeobjective) {
184     PetscCall(PetscLogEventBegin(TAO_ObjectiveEval, tao, X, NULL, NULL));
185     PetscCallBack("Tao callback objective", (*tao->ops->computeobjective)(tao, X, f, tao->user_objP));
186     PetscCall(PetscLogEventEnd(TAO_ObjectiveEval, tao, X, NULL, NULL));
187     tao->nfuncs++;
188   } else if (tao->ops->computeobjectiveandgradient) {
189     PetscCall(PetscInfo(tao, "Duplicating variable vector in order to call func/grad routine\n"));
190     PetscCall(VecDuplicate(X, &temp));
191     PetscCall(PetscLogEventBegin(TAO_ObjGradEval, tao, X, NULL, NULL));
192     PetscCallBack("Tao callback objective/gradient", (*tao->ops->computeobjectiveandgradient)(tao, X, f, temp, tao->user_objgradP));
193     PetscCall(PetscLogEventEnd(TAO_ObjGradEval, tao, X, NULL, NULL));
194     PetscCall(VecDestroy(&temp));
195     tao->nfuncgrads++;
196   } else SETERRQ(PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_WRONGSTATE, "TaoSetObjective() has not been called");
197   PetscCall(PetscInfo(tao, "TAO Function evaluation: %20.19e\n", (double)(*f)));
198   PetscCall(VecLockReadPop(X));
199   PetscFunctionReturn(0);
200 }
201 
202 /*@
203   TaoComputeObjectiveAndGradient - Computes the objective function value at a given point
204 
205   Collective on tao
206 
207   Input Parameters:
208 + tao - the Tao context
209 - X - input vector
210 
211   Output Parameters:
212 + f - Objective value at X
213 - g - Gradient vector at X
214 
215   Note:
216     `TaoComputeObjectiveAndGradient()` is typically used within the implementation of the optimization algorithm,
217   so most users would not generally call this routine themselves.
218 
219   Level: developer
220 
221 .seealso: `TaoComputeGradient()`, `TaoComputeObjectiveAndGradient()`, `TaoSetObjective()`
222 @*/
223 PetscErrorCode TaoComputeObjectiveAndGradient(Tao tao, Vec X, PetscReal *f, Vec G)
224 {
225   PetscFunctionBegin;
226   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
227   PetscValidHeaderSpecific(X, VEC_CLASSID, 2);
228   PetscValidHeaderSpecific(G, VEC_CLASSID, 4);
229   PetscCheckSameComm(tao, 1, X, 2);
230   PetscCheckSameComm(tao, 1, G, 4);
231   PetscCall(VecLockReadPush(X));
232   if (tao->ops->computeobjectiveandgradient) {
233     PetscCall(PetscLogEventBegin(TAO_ObjGradEval, tao, X, G, NULL));
234     if (tao->ops->computegradient == TaoDefaultComputeGradient) {
235       PetscCall(TaoComputeObjective(tao, X, f));
236       PetscCall(TaoDefaultComputeGradient(tao, X, G, NULL));
237     } else {
238       PetscCallBack("Tao callback objective/gradient", (*tao->ops->computeobjectiveandgradient)(tao, X, f, G, tao->user_objgradP));
239     }
240     PetscCall(PetscLogEventEnd(TAO_ObjGradEval, tao, X, G, NULL));
241     tao->nfuncgrads++;
242   } else if (tao->ops->computeobjective && tao->ops->computegradient) {
243     PetscCall(PetscLogEventBegin(TAO_ObjectiveEval, tao, X, NULL, NULL));
244     PetscCallBack("Tao callback objective", (*tao->ops->computeobjective)(tao, X, f, tao->user_objP));
245     PetscCall(PetscLogEventEnd(TAO_ObjectiveEval, tao, X, NULL, NULL));
246     tao->nfuncs++;
247     PetscCall(PetscLogEventBegin(TAO_GradientEval, tao, X, G, NULL));
248     PetscCallBack("Tao callback gradient", (*tao->ops->computegradient)(tao, X, G, tao->user_gradP));
249     PetscCall(PetscLogEventEnd(TAO_GradientEval, tao, X, G, NULL));
250     tao->ngrads++;
251   } else SETERRQ(PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_WRONGSTATE, "TaoSetObjective() or TaoSetGradient() not set");
252   PetscCall(PetscInfo(tao, "TAO Function evaluation: %20.19e\n", (double)(*f)));
253   PetscCall(VecLockReadPop(X));
254 
255   PetscCall(TaoTestGradient(tao, X, G));
256   PetscFunctionReturn(0);
257 }
258 
259 /*@C
260   TaoSetObjective - Sets the function evaluation routine for minimization
261 
262   Logically collective on tao
263 
264   Input Parameters:
265 + tao - the Tao context
266 . func - the objective function
267 - ctx - [optional] user-defined context for private data for the function evaluation
268         routine (may be NULL)
269 
270   Calling sequence of func:
271 $      func (Tao tao, Vec x, PetscReal *f, void *ctx);
272 
273 + x - input vector
274 . f - function value
275 - ctx - [optional] user-defined function context
276 
277   Level: beginner
278 
279 .seealso: `TaoSetGradient()`, `TaoSetHessian()`, `TaoSetObjectiveAndGradient()`, `TaoGetObjective()`
280 @*/
281 PetscErrorCode TaoSetObjective(Tao tao, PetscErrorCode (*func)(Tao, Vec, PetscReal *, void *), void *ctx)
282 {
283   PetscFunctionBegin;
284   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
285   if (ctx) tao->user_objP = ctx;
286   if (func) tao->ops->computeobjective = func;
287   PetscFunctionReturn(0);
288 }
289 
290 /*@C
291   TaoGetObjective - Gets the function evaluation routine for the function to be minimized
292 
293   Not collective
294 
295   Input Parameter:
296 . tao - the Tao context
297 
298   Output Parameters
299 + func - the objective function
300 - ctx - the user-defined context for private data for the function evaluation
301 
302   Calling sequence of func:
303 $      func (Tao tao, Vec x, PetscReal *f, void *ctx);
304 
305 + x - input vector
306 . f - function value
307 - ctx - [optional] user-defined function context
308 
309   Level: beginner
310 
311 .seealso: `Tao`, `TaoSetGradient()`, `TaoSetHessian()`, `TaoSetObjective()`
312 @*/
313 PetscErrorCode TaoGetObjective(Tao tao, PetscErrorCode (**func)(Tao, Vec, PetscReal *, void *), void **ctx)
314 {
315   PetscFunctionBegin;
316   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
317   if (func) *func = tao->ops->computeobjective;
318   if (ctx) *ctx = tao->user_objP;
319   PetscFunctionReturn(0);
320 }
321 
322 /*@C
323   TaoSetResidualRoutine - Sets the residual evaluation routine for least-square applications
324 
325   Logically collective on tao
326 
327   Input Parameters:
328 + tao - the Tao context
329 . func - the residual evaluation routine
330 - ctx - [optional] user-defined context for private data for the function evaluation
331         routine (may be NULL)
332 
333   Calling sequence of func:
334 $      func (Tao tao, Vec x, Vec f, void *ctx);
335 
336 + x - input vector
337 . f - function value vector
338 - ctx - [optional] user-defined function context
339 
340   Level: beginner
341 
342 .seealso: `Tao`, `TaoSetObjective()`, `TaoSetJacobianRoutine()`
343 @*/
344 PetscErrorCode TaoSetResidualRoutine(Tao tao, Vec res, PetscErrorCode (*func)(Tao, Vec, Vec, void *), void *ctx)
345 {
346   PetscFunctionBegin;
347   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
348   PetscValidHeaderSpecific(res, VEC_CLASSID, 2);
349   PetscCall(PetscObjectReference((PetscObject)res));
350   if (tao->ls_res) PetscCall(VecDestroy(&tao->ls_res));
351   tao->ls_res               = res;
352   tao->user_lsresP          = ctx;
353   tao->ops->computeresidual = func;
354 
355   PetscFunctionReturn(0);
356 }
357 
358 /*@
359   TaoSetResidualWeights - Give weights for the residual values. A vector can be used if only diagonal terms are used, otherwise a matrix can be give.
360    If this function is not provided, or if sigma_v and sigma_w are both NULL, then the identity matrix will be used for weights.
361 
362   Collective on tao
363 
364   Input Parameters:
365 + tao - the Tao context
366 . sigma_v - vector of weights (diagonal terms only)
367 . n       - the number of weights (if using off-diagonal)
368 . rows    - index list of rows for sigma_w
369 . cols    - index list of columns for sigma_w
370 - vals - array of weights
371 
372   Note: Either sigma_v or sigma_w (or both) should be NULL
373 
374   Level: intermediate
375 
376 .seealso: `Tao`, `TaoSetResidualRoutine()`
377 @*/
378 PetscErrorCode TaoSetResidualWeights(Tao tao, Vec sigma_v, PetscInt n, PetscInt *rows, PetscInt *cols, PetscReal *vals)
379 {
380   PetscInt i;
381 
382   PetscFunctionBegin;
383   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
384   if (sigma_v) PetscValidHeaderSpecific(sigma_v, VEC_CLASSID, 2);
385   PetscCall(PetscObjectReference((PetscObject)sigma_v));
386   PetscCall(VecDestroy(&tao->res_weights_v));
387   tao->res_weights_v = sigma_v;
388   if (vals) {
389     PetscCall(PetscFree(tao->res_weights_rows));
390     PetscCall(PetscFree(tao->res_weights_cols));
391     PetscCall(PetscFree(tao->res_weights_w));
392     PetscCall(PetscMalloc1(n, &tao->res_weights_rows));
393     PetscCall(PetscMalloc1(n, &tao->res_weights_cols));
394     PetscCall(PetscMalloc1(n, &tao->res_weights_w));
395     tao->res_weights_n = n;
396     for (i = 0; i < n; i++) {
397       tao->res_weights_rows[i] = rows[i];
398       tao->res_weights_cols[i] = cols[i];
399       tao->res_weights_w[i]    = vals[i];
400     }
401   } else {
402     tao->res_weights_n    = 0;
403     tao->res_weights_rows = NULL;
404     tao->res_weights_cols = NULL;
405   }
406   PetscFunctionReturn(0);
407 }
408 
409 /*@
410   TaoComputeResidual - Computes a least-squares residual vector at a given point
411 
412   Collective on tao
413 
414   Input Parameters:
415 + tao - the Tao context
416 - X - input vector
417 
418   Output Parameter:
419 . f - Objective vector at X
420 
421   Notes:
422     `TaoComputeResidual()` is typically used within the implementation of the optimization algorithm,
423   so most users would not generally call this routine themselves.
424 
425   Level: advanced
426 
427 .seealso: `Tao`, `TaoSetResidualRoutine()`
428 @*/
429 PetscErrorCode TaoComputeResidual(Tao tao, Vec X, Vec F)
430 {
431   PetscFunctionBegin;
432   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
433   PetscValidHeaderSpecific(X, VEC_CLASSID, 2);
434   PetscValidHeaderSpecific(F, VEC_CLASSID, 3);
435   PetscCheckSameComm(tao, 1, X, 2);
436   PetscCheckSameComm(tao, 1, F, 3);
437   if (tao->ops->computeresidual) {
438     PetscCall(PetscLogEventBegin(TAO_ObjectiveEval, tao, X, NULL, NULL));
439     PetscCallBack("Tao callback least-squares residual", (*tao->ops->computeresidual)(tao, X, F, tao->user_lsresP));
440     PetscCall(PetscLogEventEnd(TAO_ObjectiveEval, tao, X, NULL, NULL));
441     tao->nfuncs++;
442   } else SETERRQ(PetscObjectComm((PetscObject)tao), PETSC_ERR_ARG_WRONGSTATE, "TaoSetResidualRoutine() has not been called");
443   PetscCall(PetscInfo(tao, "TAO least-squares residual evaluation.\n"));
444   PetscFunctionReturn(0);
445 }
446 
447 /*@C
448   TaoSetGradient - Sets the gradient evaluation routine for the function to be optimized
449 
450   Logically collective on tao
451 
452   Input Parameters:
453 + tao - the Tao context
454 . g - [optional] the vector to internally hold the gradient computation
455 . func - the gradient function
456 - ctx - [optional] user-defined context for private data for the gradient evaluation
457         routine (may be NULL)
458 
459   Calling sequence of func:
460 $      func (Tao tao, Vec x, Vec g, void *ctx);
461 
462 + x - input vector
463 . g - gradient value (output)
464 - ctx - [optional] user-defined function context
465 
466   Level: beginner
467 
468 .seealso: `Tao`, `TaoSolve()`, `TaoSetObjective()`, `TaoSetHessian()`, `TaoSetObjectiveAndGradient()`, `TaoGetGradient()`
469 @*/
470 PetscErrorCode TaoSetGradient(Tao tao, Vec g, PetscErrorCode (*func)(Tao, Vec, Vec, void *), void *ctx)
471 {
472   PetscFunctionBegin;
473   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
474   if (g) {
475     PetscValidHeaderSpecific(g, VEC_CLASSID, 2);
476     PetscCheckSameComm(tao, 1, g, 2);
477     PetscCall(PetscObjectReference((PetscObject)g));
478     PetscCall(VecDestroy(&tao->gradient));
479     tao->gradient = g;
480   }
481   if (func) tao->ops->computegradient = func;
482   if (ctx) tao->user_gradP = ctx;
483   PetscFunctionReturn(0);
484 }
485 
486 /*@C
487   TaoGetGradient - Gets the gradient evaluation routine for the function being optimized
488 
489   Not collective
490 
491   Input Parameter:
492 . tao - the Tao context
493 
494   Output Parameters:
495 + g - the vector to internally hold the gradient computation
496 . func - the gradient function
497 - ctx - user-defined context for private data for the gradient evaluation routine
498 
499   Calling sequence of func:
500 $      func (Tao tao, Vec x, Vec g, void *ctx);
501 
502 + x - input vector
503 . g - gradient value (output)
504 - ctx - [optional] user-defined function context
505 
506   Level: beginner
507 
508 .seealso: `Tao`, `TaoSetObjective()`, `TaoSetHessian()`, `TaoSetObjectiveAndGradient()`, `TaoSetGradient()`
509 @*/
510 PetscErrorCode TaoGetGradient(Tao tao, Vec *g, PetscErrorCode (**func)(Tao, Vec, Vec, void *), void **ctx)
511 {
512   PetscFunctionBegin;
513   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
514   if (g) *g = tao->gradient;
515   if (func) *func = tao->ops->computegradient;
516   if (ctx) *ctx = tao->user_gradP;
517   PetscFunctionReturn(0);
518 }
519 
520 /*@C
521   TaoSetObjectiveAndGradient - Sets a combined objective function and gradient evaluation routine for the function to be optimized
522 
523   Logically collective on tao
524 
525   Input Parameters:
526 + tao - the Tao context
527 . g - [optional] the vector to internally hold the gradient computation
528 . func - the gradient function
529 - ctx - [optional] user-defined context for private data for the gradient evaluation
530         routine (may be NULL)
531 
532   Calling sequence of func:
533 $      func (Tao tao, Vec x, PetscReal *f, Vec g, void *ctx);
534 
535 + x - input vector
536 . f - objective value (output)
537 . g - gradient value (output)
538 - ctx - [optional] user-defined function context
539 
540   Level: beginner
541 
542   Note:
543   For some optimization methods using a combined function can be more eifficient.
544 
545 .seealso: `Tao`, `TaoSolve()`, `TaoSetObjective()`, `TaoSetHessian()`, `TaoSetGradient()`, `TaoGetObjectiveAndGradient()`
546 @*/
547 PetscErrorCode TaoSetObjectiveAndGradient(Tao tao, Vec g, PetscErrorCode (*func)(Tao, Vec, PetscReal *, Vec, void *), void *ctx)
548 {
549   PetscFunctionBegin;
550   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
551   if (g) {
552     PetscValidHeaderSpecific(g, VEC_CLASSID, 2);
553     PetscCheckSameComm(tao, 1, g, 2);
554     PetscCall(PetscObjectReference((PetscObject)g));
555     PetscCall(VecDestroy(&tao->gradient));
556     tao->gradient = g;
557   }
558   if (ctx) tao->user_objgradP = ctx;
559   if (func) tao->ops->computeobjectiveandgradient = func;
560   PetscFunctionReturn(0);
561 }
562 
563 /*@C
564   TaoGetObjectiveAndGradient - Gets the combined objective function and gradient evaluation routine for the function to be optimized
565 
566   Not collective
567 
568   Input Parameter:
569 . tao - the Tao context
570 
571   Output Parameters:
572 + g - the vector to internally hold the gradient computation
573 . func - the gradient function
574 - ctx - user-defined context for private data for the gradient evaluation routine
575 
576   Calling sequence of func:
577 $      func (Tao tao, Vec x, PetscReal *f, Vec g, void *ctx);
578 
579 + x - input vector
580 . f - objective value (output)
581 . g - gradient value (output)
582 - ctx - [optional] user-defined function context
583 
584   Level: beginner
585 
586 .seealso: `Tao`, `TaoSolve()`, `TaoSetObjective()`, `TaoSetGradient()`, `TaoSetHessian()`, `TaoSetObjectiveAndGradient()`
587 @*/
588 PetscErrorCode TaoGetObjectiveAndGradient(Tao tao, Vec *g, PetscErrorCode (**func)(Tao, Vec, PetscReal *, Vec, void *), void **ctx)
589 {
590   PetscFunctionBegin;
591   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
592   if (g) *g = tao->gradient;
593   if (func) *func = tao->ops->computeobjectiveandgradient;
594   if (ctx) *ctx = tao->user_objgradP;
595   PetscFunctionReturn(0);
596 }
597 
598 /*@
599   TaoIsObjectiveDefined - Checks to see if the user has
600   declared an objective-only routine.  Useful for determining when
601   it is appropriate to call `TaoComputeObjective()` or
602   `TaoComputeObjectiveAndGradient()`
603 
604   Not collective
605 
606   Input Parameter:
607 . tao - the Tao context
608 
609   Output Parameter:
610 . flg - `PETSC_TRUE` if function routine is set by user, `PETSC_FALSE` otherwise
611 
612   Level: developer
613 
614 .seealso: `Tao`, `TaoSetObjective()`, `TaoIsGradientDefined()`, `TaoIsObjectiveAndGradientDefined()`
615 @*/
616 PetscErrorCode TaoIsObjectiveDefined(Tao tao, PetscBool *flg)
617 {
618   PetscFunctionBegin;
619   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
620   if (tao->ops->computeobjective == NULL) *flg = PETSC_FALSE;
621   else *flg = PETSC_TRUE;
622   PetscFunctionReturn(0);
623 }
624 
625 /*@
626   TaoIsGradientDefined - Checks to see if the user has
627   declared an objective-only routine.  Useful for determining when
628   it is appropriate to call `TaoComputeGradient()` or
629   `TaoComputeGradientAndGradient()`
630 
631   Not Collective
632 
633   Input Parameter:
634 . tao - the Tao context
635 
636   Output Parameter:
637 . flg - `PETSC_TRUE` if function routine is set by user, `PETSC_FALSE` otherwise
638 
639   Level: developer
640 
641 .seealso: `TaoSetGradient()`, `TaoIsObjectiveDefined()`, `TaoIsObjectiveAndGradientDefined()`
642 @*/
643 PetscErrorCode TaoIsGradientDefined(Tao tao, PetscBool *flg)
644 {
645   PetscFunctionBegin;
646   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
647   if (tao->ops->computegradient == NULL) *flg = PETSC_FALSE;
648   else *flg = PETSC_TRUE;
649   PetscFunctionReturn(0);
650 }
651 
652 /*@
653   TaoIsObjectiveAndGradientDefined - Checks to see if the user has
654   declared a joint objective/gradient routine.  Useful for determining when
655   it is appropriate to call `TaoComputeObjective()` or
656   `TaoComputeObjectiveAndGradient()`
657 
658   Not Collective
659 
660   Input Parameter:
661 . tao - the Tao context
662 
663   Output Parameter:
664 . flg - `PETSC_TRUE` if function routine is set by user, `PETSC_FALSE` otherwise
665 
666   Level: developer
667 
668 .seealso: `TaoSetObjectiveAndGradient()`, `TaoIsObjectiveDefined()`, `TaoIsGradientDefined()`
669 @*/
670 PetscErrorCode TaoIsObjectiveAndGradientDefined(Tao tao, PetscBool *flg)
671 {
672   PetscFunctionBegin;
673   PetscValidHeaderSpecific(tao, TAO_CLASSID, 1);
674   if (tao->ops->computeobjectiveandgradient == NULL) *flg = PETSC_FALSE;
675   else *flg = PETSC_TRUE;
676   PetscFunctionReturn(0);
677 }
678