OR-Tools  9.1
synchronization.h
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2// Licensed under the Apache License, Version 2.0 (the "License");
3// you may not use this file except in compliance with the License.
4// You may obtain a copy of the License at
5//
6// http://www.apache.org/licenses/LICENSE-2.0
7//
8// Unless required by applicable law or agreed to in writing, software
9// distributed under the License is distributed on an "AS IS" BASIS,
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11// See the License for the specific language governing permissions and
12// limitations under the License.
13
14#ifndef OR_TOOLS_SAT_SYNCHRONIZATION_H_
15#define OR_TOOLS_SAT_SYNCHRONIZATION_H_
16
17#include <cstdint>
18#include <deque>
19#include <limits>
20#include <string>
21#include <vector>
22
23#include "absl/random/bit_gen_ref.h"
24#include "absl/random/random.h"
25#include "absl/synchronization/mutex.h"
30#include "ortools/sat/integer.h"
31#include "ortools/sat/model.h"
34#include "ortools/sat/util.h"
35#include "ortools/util/bitset.h"
38
39namespace operations_research {
40namespace sat {
41
42// Thread-safe. Keeps a set of n unique best solution found so far.
43//
44// TODO(user): Maybe add some criteria to only keep solution with an objective
45// really close to the best solution.
46template <typename ValueType>
48 public:
49 explicit SharedSolutionRepository(int num_solutions_to_keep)
50 : num_solutions_to_keep_(num_solutions_to_keep) {
52 }
53
54 // The solution format used by this class.
55 struct Solution {
56 // Solution with lower "rank" will be preferred
57 //
58 // TODO(user): Some LNS code assume that for the SharedSolutionRepository
59 // this rank is actually the unscaled internal minimization objective.
60 // Remove this assumptions by simply recomputing this value since it is not
61 // too costly to do so.
62 int64_t rank = 0;
63
64 std::vector<ValueType> variable_values;
65
66 // Number of time this was returned by GetRandomBiasedSolution(). We use
67 // this information during the selection process.
68 //
69 // Should be private: only SharedSolutionRepository should modify this.
70 mutable int num_selected = 0;
71
72 bool operator==(const Solution& other) const {
73 return rank == other.rank && variable_values == other.variable_values;
74 }
75 bool operator<(const Solution& other) const {
76 if (rank != other.rank) {
77 return rank < other.rank;
78 }
79 return variable_values < other.variable_values;
80 }
81 };
82
83 // Returns the number of current solution in the pool. This will never
84 // decrease.
85 int NumSolutions() const;
86
87 // Returns the solution #i where i must be smaller than NumSolutions().
88 Solution GetSolution(int index) const;
89
90 // Returns the variable value of variable 'var_index' from solution
91 // 'solution_index' where solution_index must be smaller than NumSolutions()
92 // and 'var_index' must be smaller than number of variables.
93 ValueType GetVariableValueInSolution(int var_index, int solution_index) const;
94
95 // Returns a random solution biased towards good solutions.
96 Solution GetRandomBiasedSolution(absl::BitGenRef random) const;
97
98 // Add a new solution. Note that it will not be added to the pool of solution
99 // right away. One must call Synchronize for this to happen.
100 //
101 // Works in O(num_solutions_to_keep_).
102 void Add(const Solution& solution);
103
104 // Updates the current pool of solution with the one recently added. Note that
105 // we use a stable ordering of solutions, so the final pool will be
106 // independent on the order of the calls to AddSolution() provided that the
107 // set of added solutions is the same.
108 //
109 // Works in O(num_solutions_to_keep_).
111
112 protected:
113 // Helper method for adding the solutions once the mutex is acquired.
114 void AddInternal(const Solution& solution)
115 ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
116
118 mutable absl::Mutex mutex_;
119 int64_t num_synchronization_ ABSL_GUARDED_BY(mutex_) = 0;
120
121 // Our two solutions pools, the current one and the new one that will be
122 // merged into the current one on each Synchronize() calls.
123 mutable std::vector<int> tmp_indices_ ABSL_GUARDED_BY(mutex_);
124 std::vector<Solution> solutions_ ABSL_GUARDED_BY(mutex_);
125 std::vector<Solution> new_solutions_ ABSL_GUARDED_BY(mutex_);
126};
127
128// This is currently only used to store feasible solution from our 'relaxation'
129// LNS generators which in turn are used to generate some RINS neighborhood.
131 : public SharedSolutionRepository<int64_t> {
132 public:
133 explicit SharedRelaxationSolutionRepository(int num_solutions_to_keep)
134 : SharedSolutionRepository<int64_t>(num_solutions_to_keep) {}
135
137};
138
140 public:
141 explicit SharedLPSolutionRepository(int num_solutions_to_keep)
142 : SharedSolutionRepository<double>(num_solutions_to_keep) {}
143
144 void NewLPSolution(std::vector<double> lp_solution);
145};
146
147// Set of partly filled solutions. They are meant to be finished by some lns
148// worker.
149//
150// The solutions are stored as a vector of doubles. The value at index i
151// represents the solution value of model variable indexed i. Note that some
152// values can be infinity which should be interpreted as 'unknown' solution
153// value for that variable. These solutions can not necessarily be completed to
154// complete feasible solutions.
156 public:
157 bool HasNewSolution() const;
158 std::vector<double> GetNewSolution();
159
160 void AddNewSolution(const std::vector<double>& lp_solution);
161
162 private:
163 // New solutions are added and removed from the back.
164 std::vector<std::vector<double>> solutions_;
165 mutable absl::Mutex mutex_;
166};
167
168// Manages the global best response kept by the solver. This class is
169// responsible for logging the progress of the solutions and bounds as they are
170// found.
171//
172// All functions are thread-safe except if specified otherwise.
174 public:
176
177 // Loads the initial objective bounds and keep a reference to the objective to
178 // properly display the scaled bounds. This is optional if the model has no
179 // objective.
180 //
181 // This function is not thread safe.
182 void InitializeObjective(const CpModelProto& cp_model);
183
184 // Reports OPTIMAL and stop the search if any gap limit are specified and
185 // crossed. By default, we only stop when we have the true optimal, which is
186 // well defined since we are solving our pure integer problem exactly.
188
189 // Returns the current solver response. That is the best known response at the
190 // time of the call with the best feasible solution and objective bounds.
191 //
192 // Note that the solver statistics correspond to the last time a better
193 // solution was found or SetStatsFromModel() was called.
194 //
195 // If full response is true, we will do more postprocessing by calling all the
196 // AddFinalSolutionPostprocessor() postprocesors. Note that the response given
197 // to the AddSolutionCallback() will not call them.
198 CpSolverResponse GetResponse(bool full_response = true);
199
200 // These "postprocessing" steps will be applied in REVERSE order of
201 // registration to all solution passed to the callbacks.
203 std::function<void(CpSolverResponse*)> postprocessor);
204
205 // These "postprocessing" steps will only be applied after the others to the
206 // solution returned by GetResponse().
208 std::function<void(CpSolverResponse*)> postprocessor);
209
210 // Adds a callback that will be called on each new solution (for
211 // statisfiablity problem) or each improving new solution (for an optimization
212 // problem). Returns its id so it can be unregistered if needed.
213 //
214 // Note that adding a callback is not free since the solution will be
215 // postsolved before this is called.
216 //
217 // Note that currently the class is waiting for the callback to finish before
218 // accepting any new updates. That could be changed if needed.
220 std::function<void(const CpSolverResponse&)> callback);
221 void UnregisterCallback(int callback_id);
222
223 // The "inner" objective is the CpModelProto objective without scaling/offset.
224 // Note that these bound correspond to valid bound for the problem of finding
225 // a strictly better objective than the current one. Thus the lower bound is
226 // always a valid bound for the global problem, but the upper bound is NOT.
227 IntegerValue GetInnerObjectiveLowerBound();
228 IntegerValue GetInnerObjectiveUpperBound();
229
230 // These functions return the same as the non-synchronized() version but
231 // only the values at the last time Synchronize() was called.
232 void Synchronize();
235
236 // Returns the current best solution inner objective value or kInt64Max if
237 // there is no solution.
238 IntegerValue BestSolutionInnerObjectiveValue();
239
240 // Returns the integral of the log of the absolute gap over deterministic
241 // time. This is mainly used to compare how fast the gap closes on a
242 // particular instance. Or to evaluate how efficient our LNS code is improving
243 // solution.
244 //
245 // Note: The integral will start counting on the first UpdatePrimalIntegral()
246 // call, since before the difference is assumed to be zero.
247 //
248 // Important: To report a proper deterministic integral, we only update it
249 // on UpdatePrimalIntegral() which should be called in the main subsolver
250 // synchronization loop.
251 //
252 // Note(user): In the litterature, people use the relative gap to the optimal
253 // solution (or the best known one), but this is ill defined in many case
254 // (like if the optimal cost is zero), so I prefer this version.
255 double PrimalIntegral() const;
257
258 // Sets this to true to have the "real" but non-deterministic primal integral.
259 // If this is true, then there is no need to manually call
260 // UpdatePrimalIntegral() but it is not an issue to do so.
262
263 // Updates the inner objective bounds.
264 void UpdateInnerObjectiveBounds(const std::string& update_info,
265 IntegerValue lb, IntegerValue ub);
266
267 // Reads the new solution from the response and update our state. For an
268 // optimization problem, we only do something if the solution is strictly
269 // improving.
270 //
271 // TODO(user): Only the following fields from response are accessed here, we
272 // might want a tighter API:
273 // - solution_info
274 // - solution
275 // - solution_lower_bounds and solution_upper_bounds.
277
278 // Changes the solution to reflect the fact that the "improving" problem is
279 // infeasible. This means that if we have a solution, we have proven
280 // optimality, otherwise the global problem is infeasible.
281 //
282 // Note that this shouldn't be called before the solution is actually
283 // reported. We check for this case in NewSolution().
284 void NotifyThatImprovingProblemIsInfeasible(const std::string& worker_info);
285
286 // Adds to the shared response a subset of assumptions that are enough to
287 // make the problem infeasible.
288 void AddUnsatCore(const std::vector<int>& core);
289
290 // Sets the statistics in the response to the one of the solver inside the
291 // given in-memory model. This does nothing if the model is nullptr.
292 //
293 // TODO(user): Also support merging statistics together.
295
296 // Returns true if we found the optimal solution or the problem was proven
297 // infeasible. Note that if the gap limit is reached, we will also report
298 // OPTIMAL and consider the problem solved.
299 bool ProblemIsSolved() const;
300
301 // Returns the underlying solution repository where we keep a set of best
302 // solutions.
304 return solutions_;
305 }
307 return &solutions_;
308 }
309
310 // This should be called after the model is loaded. It will read the file
311 // specified by --cp_model_load_debug_solution and properly fill the
312 // model->Get<DebugSolution>() vector.
313 //
314 // TODO(user): Note that for now, only the IntegerVariable value are loaded,
315 // not the value of the pure Booleans variables.
317
318 // Debug only. Set dump prefix for solutions written to file.
319 void set_dump_prefix(const std::string& dump_prefix) {
320 dump_prefix_ = dump_prefix;
321 }
322
323 // Display improvement stats.
325
326 // This is here for the few codepath that needs to modify the returned
327 // response directly. Note that this do not work in parallel.
328 //
329 // TODO(user): This can probably be removed.
331 absl::MutexLock mutex_lock(&mutex_);
332 return &best_response_;
333 }
334
335 private:
336 void TestGapLimitsIfNeeded() ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
337 void FillObjectiveValuesInBestResponse()
338 ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
339 void SetStatsFromModelInternal(Model* model)
340 ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
341 void UpdatePrimalIntegralInternal() ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
342
343 void RegisterSolutionFound(const std::string& improvement_info)
344 ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
345 void RegisterObjectiveBoundImprovement(const std::string& improvement_info)
346 ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_);
347
348 const bool enumerate_all_solutions_;
349 const WallTimer& wall_timer_;
350 ModelSharedTimeLimit* shared_time_limit_;
351 CpObjectiveProto const* objective_or_null_ = nullptr;
352
353 mutable absl::Mutex mutex_;
354
355 // Gap limits.
356 double absolute_gap_limit_ ABSL_GUARDED_BY(mutex_) = 0.0;
357 double relative_gap_limit_ ABSL_GUARDED_BY(mutex_) = 0.0;
358
359 CpSolverResponse best_response_ ABSL_GUARDED_BY(mutex_);
360 SharedSolutionRepository<int64_t> solutions_ ABSL_GUARDED_BY(mutex_);
361
362 int num_solutions_ ABSL_GUARDED_BY(mutex_) = 0;
363 int64_t inner_objective_lower_bound_ ABSL_GUARDED_BY(mutex_) =
364 std::numeric_limits<int64_t>::min();
365 int64_t inner_objective_upper_bound_ ABSL_GUARDED_BY(mutex_) =
366 std::numeric_limits<int64_t>::max();
367 int64_t best_solution_objective_value_ ABSL_GUARDED_BY(mutex_) =
368 std::numeric_limits<int64_t>::max();
369
370 IntegerValue synchronized_inner_objective_lower_bound_ ABSL_GUARDED_BY(
371 mutex_) = IntegerValue(std::numeric_limits<int64_t>::min());
372 IntegerValue synchronized_inner_objective_upper_bound_ ABSL_GUARDED_BY(
373 mutex_) = IntegerValue(std::numeric_limits<int64_t>::max());
374
375 bool update_integral_on_each_change_ ABSL_GUARDED_BY(mutex_) = false;
376 double primal_integral_ ABSL_GUARDED_BY(mutex_) = 0.0;
377 double last_absolute_gap_ ABSL_GUARDED_BY(mutex_) = 0.0;
378 double last_primal_integral_time_stamp_ ABSL_GUARDED_BY(mutex_) = 0.0;
379
380 int next_callback_id_ ABSL_GUARDED_BY(mutex_) = 0;
381 std::vector<std::pair<int, std::function<void(const CpSolverResponse&)>>>
382 callbacks_ ABSL_GUARDED_BY(mutex_);
383
384 std::vector<std::function<void(CpSolverResponse*)>> postprocessors_
385 ABSL_GUARDED_BY(mutex_);
386 std::vector<std::function<void(CpSolverResponse*)>> final_postprocessors_
387 ABSL_GUARDED_BY(mutex_);
388
389 // Dump prefix.
390 std::string dump_prefix_;
391
392 // Used for statistics of the improvements found by workers.
393 std::map<std::string, int> primal_improvements_count_ ABSL_GUARDED_BY(mutex_);
394 std::map<std::string, int> dual_improvements_count_ ABSL_GUARDED_BY(mutex_);
395
396 SolverLogger* logger_;
397};
398
399// This class manages a pool of lower and upper bounds on a set of variables in
400// a parallel context.
402 public:
404
405 // Reports a set of locally improved variable bounds to the shared bounds
406 // manager. The manager will compare these bounds changes against its
407 // global state, and incorporate the improving ones.
408 void ReportPotentialNewBounds(const CpModelProto& model_proto,
409 const std::string& worker_name,
410 const std::vector<int>& variables,
411 const std::vector<int64_t>& new_lower_bounds,
412 const std::vector<int64_t>& new_upper_bounds);
413
414 // Returns a new id to be used in GetChangedBounds(). This is just an ever
415 // increasing sequence starting from zero. Note that the class is not designed
416 // to have too many of these.
417 int RegisterNewId();
418
419 // When called, returns the set of bounds improvements since
420 // the last time this method was called with the same id.
421 void GetChangedBounds(int id, std::vector<int>* variables,
422 std::vector<int64_t>* new_lower_bounds,
423 std::vector<int64_t>* new_upper_bounds);
424
425 // Publishes any new bounds so that GetChangedBounds() will reflect the latest
426 // state.
427 void Synchronize();
428
429 private:
430 const int num_variables_;
431 const CpModelProto& model_proto_;
432
433 absl::Mutex mutex_;
434
435 // These are always up to date.
436 std::vector<int64_t> lower_bounds_ ABSL_GUARDED_BY(mutex_);
437 std::vector<int64_t> upper_bounds_ ABSL_GUARDED_BY(mutex_);
438 SparseBitset<int64_t> changed_variables_since_last_synchronize_
439 ABSL_GUARDED_BY(mutex_);
440
441 // These are only updated on Synchronize().
442 std::vector<int64_t> synchronized_lower_bounds_ ABSL_GUARDED_BY(mutex_);
443 std::vector<int64_t> synchronized_upper_bounds_ ABSL_GUARDED_BY(mutex_);
444 std::deque<SparseBitset<int64_t>> id_to_changed_variables_
445 ABSL_GUARDED_BY(mutex_);
446};
447
448template <typename ValueType>
450 absl::MutexLock mutex_lock(&mutex_);
451 return solutions_.size();
452}
453
454template <typename ValueType>
457 absl::MutexLock mutex_lock(&mutex_);
458 return solutions_[i];
459}
460
461template <typename ValueType>
463 int var_index, int solution_index) const {
464 absl::MutexLock mutex_lock(&mutex_);
465 return solutions_[solution_index].variable_values[var_index];
466}
467
468// TODO(user): Experiments on the best distribution.
469template <typename ValueType>
472 absl::BitGenRef random) const {
473 absl::MutexLock mutex_lock(&mutex_);
474 const int64_t best_rank = solutions_[0].rank;
475
476 // As long as we have solution with the best objective that haven't been
477 // explored too much, we select one uniformly. Otherwise, we select a solution
478 // from the pool uniformly.
479 //
480 // Note(user): Because of the increase of num_selected, this is dependent on
481 // the order of call. It should be fine for "determinism" because we do
482 // generate the task of a batch always in the same order.
483 const int kExplorationThreshold = 100;
484
485 // Select all the best solution with a low enough selection count.
486 tmp_indices_.clear();
487 for (int i = 0; i < solutions_.size(); ++i) {
488 const auto& solution = solutions_[i];
489 if (solution.rank == best_rank &&
490 solution.num_selected <= kExplorationThreshold) {
491 tmp_indices_.push_back(i);
492 }
493 }
494
495 int index = 0;
496 if (tmp_indices_.empty()) {
497 index = absl::Uniform<int>(random, 0, solutions_.size());
498 } else {
499 index = tmp_indices_[absl::Uniform<int>(random, 0, tmp_indices_.size())];
500 }
501 solutions_[index].num_selected++;
502 return solutions_[index];
503}
504
505template <typename ValueType>
507 absl::MutexLock mutex_lock(&mutex_);
508 AddInternal(solution);
509}
510
511template <typename ValueType>
513 const Solution& solution) {
514 int worse_solution_index = 0;
515 for (int i = 0; i < new_solutions_.size(); ++i) {
516 // Do not add identical solution.
517 if (new_solutions_[i] == solution) return;
518 if (new_solutions_[worse_solution_index] < new_solutions_[i]) {
519 worse_solution_index = i;
520 }
521 }
522 if (new_solutions_.size() < num_solutions_to_keep_) {
523 new_solutions_.push_back(solution);
524 } else if (solution < new_solutions_[worse_solution_index]) {
525 new_solutions_[worse_solution_index] = solution;
526 }
527}
528
529template <typename ValueType>
531 absl::MutexLock mutex_lock(&mutex_);
532 solutions_.insert(solutions_.end(), new_solutions_.begin(),
533 new_solutions_.end());
534 new_solutions_.clear();
535
536 // We use a stable sort to keep the num_selected count for the already
537 // existing solutions.
538 //
539 // TODO(user): Introduce a notion of orthogonality to diversify the pool?
541 if (solutions_.size() > num_solutions_to_keep_) {
542 solutions_.resize(num_solutions_to_keep_);
543 }
544 num_synchronization_++;
545}
546
547} // namespace sat
548} // namespace operations_research
549
550#endif // OR_TOOLS_SAT_SYNCHRONIZATION_H_
int64_t max
Definition: alldiff_cst.cc:140
int64_t min
Definition: alldiff_cst.cc:139
#define CHECK_GE(val1, val2)
Definition: base/logging.h:702
Class that owns everything related to a particular optimization model.
Definition: sat/model.h:38
void AddNewSolution(const std::vector< double > &lp_solution)
void NewLPSolution(std::vector< double > lp_solution)
void NewRelaxationSolution(const CpSolverResponse &response)
void InitializeObjective(const CpModelProto &cp_model)
CpSolverResponse GetResponse(bool full_response=true)
SharedSolutionRepository< int64_t > * MutableSolutionsRepository()
void AddFinalSolutionPostprocessor(std::function< void(CpSolverResponse *)> postprocessor)
void set_dump_prefix(const std::string &dump_prefix)
void AddSolutionPostprocessor(std::function< void(CpSolverResponse *)> postprocessor)
void NewSolution(const CpSolverResponse &response, Model *model)
void NotifyThatImprovingProblemIsInfeasible(const std::string &worker_info)
void AddUnsatCore(const std::vector< int > &core)
void SetGapLimitsFromParameters(const SatParameters &parameters)
const SharedSolutionRepository< int64_t > & SolutionsRepository() const
int AddSolutionCallback(std::function< void(const CpSolverResponse &)> callback)
void UpdateInnerObjectiveBounds(const std::string &update_info, IntegerValue lb, IntegerValue ub)
std::vector< Solution > new_solutions_ ABSL_GUARDED_BY(mutex_)
Solution GetRandomBiasedSolution(absl::BitGenRef random) const
std::vector< int > tmp_indices_ ABSL_GUARDED_BY(mutex_)
std::vector< Solution > solutions_ ABSL_GUARDED_BY(mutex_)
int64_t num_synchronization_ ABSL_GUARDED_BY(mutex_)=0
void AddInternal(const Solution &solution) ABSL_EXCLUSIVE_LOCKS_REQUIRED(mutex_)
ValueType GetVariableValueInSolution(int var_index, int solution_index) const
SatParameters parameters
CpModelProto const * model_proto
SharedResponseManager * response
GRBmodel * model
MPCallback * callback
Definition: cleanup.h:22
void STLStableSortAndRemoveDuplicates(T *v, const LessFunc &less_func)
Definition: stl_util.h:75
Collection of objects used to extend the Constraint Solver library.
STL namespace.
int index
Definition: pack.cc:509