OR-Tools  9.0
linear_constraint_manager.h
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13 
14 #ifndef OR_TOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_
15 #define OR_TOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_
16 
17 #include <cstddef>
18 #include <cstdint>
19 #include <vector>
20 
21 #include "absl/container/flat_hash_map.h"
22 #include "absl/container/flat_hash_set.h"
26 #include "ortools/sat/model.h"
28 #include "ortools/util/logging.h"
30 
31 namespace operations_research {
32 namespace sat {
33 
34 // This class holds a list of globally valid linear constraints and has some
35 // logic to decide which one should be part of the LP relaxation. We want more
36 // for a better relaxation, but for efficiency we do not want to have too much
37 // constraints while solving the LP.
38 //
39 // This class is meant to contain all the initial constraints of the LP
40 // relaxation and to get new cuts as they are generated. Thus, it can both
41 // manage cuts but also only add the initial constraints lazily if there is too
42 // many of them.
44  public:
45  struct ConstraintInfo {
47  double l2_norm = 0.0;
48  int64_t inactive_count = 0;
49  double objective_parallelism = 0.0;
51  bool is_in_lp = false;
52  size_t hash;
53  double current_score = 0.0;
54 
55  // Updated only for deletable constraints. This is incremented every time
56  // ChangeLp() is called and the constraint is active in the LP or not in the
57  // LP and violated.
58  double active_count = 0.0;
59 
60  // For now, we mark all the generated cuts as deletable and the problem
61  // constraints as undeletable.
62  // TODO(user): We can have a better heuristics. Some generated good cuts
63  // can be marked undeletable and some unused problem specified constraints
64  // can be marked deletable.
65  bool is_deletable = false;
66  };
67 
69  : sat_parameters_(*model->GetOrCreate<SatParameters>()),
70  integer_trail_(*model->GetOrCreate<IntegerTrail>()),
71  time_limit_(model->GetOrCreate<TimeLimit>()),
72  model_(model),
73  logger_(model->GetOrCreate<SolverLogger>()) {}
75 
76  // Add a new constraint to the manager. Note that we canonicalize constraints
77  // and merge the bounds of constraints with the same terms. We also perform
78  // basic preprocessing. If added is given, it will be set to true if this
79  // constraint was actually a new one and to false if it was dominated by an
80  // already existing one.
81  DEFINE_INT_TYPE(ConstraintIndex, int32_t);
82  ConstraintIndex Add(LinearConstraint ct, bool* added = nullptr);
83 
84  // Same as Add(), but logs some information about the newly added constraint.
85  // Cuts are also handled slightly differently than normal constraints.
86  //
87  // Returns true if a new cut was added and false if this cut is not
88  // efficacious or if it is a duplicate of an already existing one.
89  bool AddCut(LinearConstraint ct, std::string type_name,
91  std::string extra_info = "");
92 
93  // The objective is used as one of the criterion to score cuts.
94  // The more a cut is parallel to the objective, the better its score is.
95  //
96  // Currently this should only be called once per IntegerVariable (Checked). It
97  // is easy to support dynamic modification if it becomes needed.
98  void SetObjectiveCoefficient(IntegerVariable var, IntegerValue coeff);
99 
100  // Heuristic to decides what LP is best solved next. The given lp_solution
101  // should usually be the optimal solution of the LP returned by GetLp() before
102  // this call, but is just used as an heuristic.
103  //
104  // The current solution state is used for detecting inactive constraints. It
105  // is also updated correctly on constraint deletion/addition so that the
106  // simplex can be fully iterative on restart by loading this modified state.
107  //
108  // Returns true iff LpConstraints() will return a different LP than before.
110  glop::BasisState* solution_state);
111 
112  // This can be called initially to add all the current constraint to the LP
113  // returned by GetLp().
114  void AddAllConstraintsToLp();
115 
116  // All the constraints managed by this class.
118  const {
119  return constraint_infos_;
120  }
121 
122  // The set of constraints indices in AllConstraints() that should be part
123  // of the next LP to solve.
124  const std::vector<ConstraintIndex>& LpConstraints() const {
125  return lp_constraints_;
126  }
127 
128  int64_t num_cuts() const { return num_cuts_; }
129  int64_t num_shortened_constraints() const {
130  return num_shortened_constraints_;
131  }
132  int64_t num_coeff_strenghtening() const { return num_coeff_strenghtening_; }
133 
134  // If a debug solution has been loaded, this checks if the given constaint cut
135  // it or not. Returns true iff everything is fine and the cut does not violate
136  // the loaded solution.
137  bool DebugCheckConstraint(const LinearConstraint& cut);
138 
139  private:
140  // Heuristic that decide which constraints we should remove from the current
141  // LP. Note that such constraints can be added back later by the heuristic
142  // responsible for adding new constraints from the pool.
143  //
144  // Returns true iff one or more constraints where removed.
145  //
146  // If the solutions_state is empty, then this function does nothing and
147  // returns false (this is used for tests). Otherwise, the solutions_state is
148  // assumed to correspond to the current LP and to be of the correct size.
149  bool MaybeRemoveSomeInactiveConstraints(glop::BasisState* solution_state);
150 
151  // Apply basic inprocessing simplification rules:
152  // - remove fixed variable
153  // - reduce large coefficient (i.e. coeff strenghtenning or big-M reduction).
154  // This uses level-zero bounds.
155  // Returns true if the terms of the constraint changed.
156  bool SimplifyConstraint(LinearConstraint* ct);
157 
158  // Helper method to compute objective parallelism for a given constraint. This
159  // also lazily computes objective norm.
160  void ComputeObjectiveParallelism(const ConstraintIndex ct_index);
161 
162  // Multiplies all active counts and the increment counter by the given
163  // 'scaling_factor'. This should be called when at least one of the active
164  // counts is too high.
165  void RescaleActiveCounts(double scaling_factor);
166 
167  // Removes some deletable constraints with low active counts. For now, we
168  // don't remove any constraints which are already in LP.
169  void PermanentlyRemoveSomeConstraints();
170 
171  const SatParameters& sat_parameters_;
172  const IntegerTrail& integer_trail_;
173 
174  // Set at true by Add()/SimplifyConstraint() and at false by ChangeLp().
175  bool current_lp_is_changed_ = false;
176 
177  // Optimization to avoid calling SimplifyConstraint() when not needed.
178  int64_t last_simplification_timestamp_ = 0;
179 
181 
182  // The subset of constraints currently in the lp.
183  std::vector<ConstraintIndex> lp_constraints_;
184 
185  // We keep a map from the hash of our constraint terms to their position in
186  // constraints_. This is an optimization to detect duplicate constraints. We
187  // are robust to collisions because we always relies on the ground truth
188  // contained in constraints_ and the code is still okay if we do not merge the
189  // constraints.
190  absl::flat_hash_map<size_t, ConstraintIndex> equiv_constraints_;
191 
192  int64_t num_simplifications_ = 0;
193  int64_t num_merged_constraints_ = 0;
194  int64_t num_shortened_constraints_ = 0;
195  int64_t num_splitted_constraints_ = 0;
196  int64_t num_coeff_strenghtening_ = 0;
197 
198  int64_t num_cuts_ = 0;
199  int64_t num_add_cut_calls_ = 0;
200  std::map<std::string, int> type_to_num_cuts_;
201 
202  bool objective_is_defined_ = false;
203  bool objective_norm_computed_ = false;
204  double objective_l2_norm_ = 0.0;
205 
206  // Total deterministic time spent in this class.
207  double dtime_ = 0.0;
208 
209  // Sparse representation of the objective coeffs indexed by positive variables
210  // indices. Important: We cannot use a dense representation here in the corner
211  // case where we have many indepedent LPs. Alternatively, we could share a
212  // dense vector between all LinearConstraintManager.
213  double sum_of_squared_objective_coeffs_ = 0.0;
214  absl::flat_hash_map<IntegerVariable, double> objective_map_;
215 
216  TimeLimit* time_limit_;
217  Model* model_;
218  SolverLogger* logger_;
219 
220  // We want to decay the active counts of all constraints at each call and
221  // increase the active counts of active/violated constraints. However this can
222  // be too slow in practice. So instead, we keep an increment counter and
223  // update only the active/violated constraints. The counter itself is
224  // increased by a factor at each call. This has the same effect as decaying
225  // all the active counts at each call. This trick is similar to sat clause
226  // management.
227  double constraint_active_count_increase_ = 1.0;
228 
229  int32_t num_deletable_constraints_ = 0;
230 };
231 
232 // Keep the top n elements from a stream of elements.
233 //
234 // TODO(user): We could use gtl::TopN when/if it gets open sourced. Note that
235 // we might be slighlty faster here since we use an indirection and don't move
236 // the Element class around as much.
237 template <typename Element>
238 class TopN {
239  public:
240  explicit TopN(int n) : n_(n) {}
241 
242  void Clear() {
243  heap_.clear();
244  elements_.clear();
245  }
246 
247  void Add(Element e, double score) {
248  if (heap_.size() < n_) {
249  const int index = elements_.size();
250  heap_.push_back({index, score});
251  elements_.push_back(std::move(e));
252  if (heap_.size() == n_) {
253  // TODO(user): We could delay that on the n + 1 push.
254  std::make_heap(heap_.begin(), heap_.end());
255  }
256  } else {
257  if (score <= heap_.front().score) return;
258  const int index_to_replace = heap_.front().index;
259  elements_[index_to_replace] = std::move(e);
260 
261  // If needed, we could be faster here with an update operation.
262  std::pop_heap(heap_.begin(), heap_.end());
263  heap_.back() = {index_to_replace, score};
264  std::push_heap(heap_.begin(), heap_.end());
265  }
266  }
267 
268  const std::vector<Element>& UnorderedElements() const { return elements_; }
269 
270  private:
271  const int n_;
272 
273  // We keep a heap of the n lowest score.
274  struct HeapElement {
275  int index; // in elements_;
276  double score;
277  const double operator<(const HeapElement& other) const {
278  return score > other.score;
279  }
280  };
281  std::vector<HeapElement> heap_;
282  std::vector<Element> elements_;
283 };
284 
285 // Before adding cuts to the global pool, it is a classical thing to only keep
286 // the top n of a given type during one generation round. This is there to help
287 // doing that.
288 //
289 // TODO(user): Avoid computing efficacity twice.
290 // TODO(user): We don't use any orthogonality consideration here.
291 // TODO(user): Detect duplicate cuts?
292 class TopNCuts {
293  public:
294  explicit TopNCuts(int n) : cuts_(n) {}
295 
296  // Add a cut to the local pool
297  void AddCut(LinearConstraint ct, const std::string& name,
299 
300  // Empty the local pool and add all its content to the manager.
301  void TransferToManager(
303  LinearConstraintManager* manager);
304 
305  private:
306  struct CutCandidate {
307  std::string name;
308  LinearConstraint cut;
309  };
310  TopN<CutCandidate> cuts_;
311 };
312 
313 } // namespace sat
314 } // namespace operations_research
315 
316 #endif // OR_TOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_
A simple class to enforce both an elapsed time limit and a deterministic time limit in the same threa...
Definition: time_limit.h:105
bool ChangeLp(const absl::StrongVector< IntegerVariable, double > &lp_solution, glop::BasisState *solution_state)
void SetObjectiveCoefficient(IntegerVariable var, IntegerValue coeff)
ConstraintIndex Add(LinearConstraint ct, bool *added=nullptr)
const absl::StrongVector< ConstraintIndex, ConstraintInfo > & AllConstraints() const
const std::vector< ConstraintIndex > & LpConstraints() const
bool AddCut(LinearConstraint ct, std::string type_name, const absl::StrongVector< IntegerVariable, double > &lp_solution, std::string extra_info="")
Class that owns everything related to a particular optimization model.
Definition: sat/model.h:38
void AddCut(LinearConstraint ct, const std::string &name, const absl::StrongVector< IntegerVariable, double > &lp_solution)
void TransferToManager(const absl::StrongVector< IntegerVariable, double > &lp_solution, LinearConstraintManager *manager)
const std::vector< Element > & UnorderedElements() const
void Add(Element e, double score)
const std::string name
const Constraint * ct
IntVar * var
Definition: expr_array.cc:1874
GRBmodel * model
Collection of objects used to extend the Constraint Solver library.
int index
Definition: pack.cc:509