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ortools-clone/ortools/sat/linear_constraint_manager.h
Corentin Le Molgat b4b226801b update include guards
2025-11-05 11:54:02 +01:00

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// Copyright 2010-2025 Google LLC
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
#ifndef ORTOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_
#define ORTOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_
#include <cstddef>
#include <cstdint>
#include <string>
#include <vector>
#include "absl/container/btree_map.h"
#include "absl/container/flat_hash_map.h"
#include "absl/strings/string_view.h"
#include "absl/types/span.h"
#include "ortools/base/strong_vector.h"
#include "ortools/glop/variables_info.h"
#include "ortools/lp_data/lp_types.h"
#include "ortools/sat/integer.h"
#include "ortools/sat/integer_base.h"
#include "ortools/sat/linear_constraint.h"
#include "ortools/sat/model.h"
#include "ortools/sat/sat_parameters.pb.h"
#include "ortools/sat/synchronization.h"
#include "ortools/sat/util.h"
#include "ortools/util/strong_integers.h"
#include "ortools/util/time_limit.h"
namespace operations_research {
namespace sat {
// Stores for each IntegerVariable its temporary LP solution.
//
// This is shared between all LinearProgrammingConstraint because in the corner
// case where we have many different LinearProgrammingConstraint and a lot of
// variable, we could theoretically use up a quadratic amount of memory
// otherwise.
struct ModelLpValues
: public util_intops::StrongVector<IntegerVariable, double> {
ModelLpValues() = default;
};
// Same as ModelLpValues for reduced costs.
struct ModelReducedCosts
: public util_intops::StrongVector<IntegerVariable, double> {
ModelReducedCosts() = default;
};
// Stores the mapping integer_variable -> glop::ColIndex.
// This is shared across all LP, which is fine since there are disjoint.
struct ModelLpVariableMapping
: public util_intops::StrongVector<IntegerVariable, glop::ColIndex> {
ModelLpVariableMapping() = default;
};
// Knowing the symmetry of the IP problem should allow us to
// solve the LP faster via "folding" techniques.
//
// You can read this for the LP part: "Dimension Reduction via Colour
// Refinement", Martin Grohe, Kristian Kersting, Martin Mladenov, Erkal
// Selman, https://arxiv.org/abs/1307.5697
//
// In the presence of symmetry, by considering all symmetric version of a
// constraint and summing them, we can derive a new constraint using the sum
// of the variable on each orbit instead of the individual variables.
//
// For the integration in a MIP solver, I couldn't find many reference. The way
// I did it here is to introduce for each orbit a variable representing the
// sum of the orbit variable. This allows to represent the folded LP in terms
// of these variables (that are connected to the rest of the solver) and just
// reuse the full machinery.
//
// There are related info in "Orbital Shrinking", Matteo Fischetti & Leo
// Liberti, https://link.springer.com/chapter/10.1007/978-3-642-32147-4_6
class LinearConstraintSymmetrizer {
public:
explicit LinearConstraintSymmetrizer(Model* model)
: shared_stats_(model->GetOrCreate<SharedStatistics>()),
integer_trail_(model->GetOrCreate<IntegerTrail>()) {}
~LinearConstraintSymmetrizer();
// This must be called with all orbits before we call FoldLinearConstraint().
// Note that sum_var MUST not be in any of the orbits. All orbits must also be
// disjoint.
//
// Precondition: All IntegerVariable must be positive.
void AddSymmetryOrbit(IntegerVariable sum_var,
absl::Span<const IntegerVariable> orbit);
// If there are no symmetry, we shouldn't bother calling the functions below.
// Note that they will still work, but be no-op.
bool HasSymmetry() const { return has_symmetry_; }
// Accessors by orbit index in [0, num_orbits).
int NumOrbits() const { return orbits_.size(); }
IntegerVariable OrbitSumVar(int i) const { return orbit_sum_vars_[i]; }
absl::Span<const IntegerVariable> Orbit(int i) const { return orbits_[i]; }
// Returns the orbit number in [0, num_orbits) if var belong to a non-trivial
// orbit or if it is a "orbit_sum_var". Returns -1 otherwise.
int OrbitIndex(IntegerVariable var) const;
// Returns true iff var is one of the sum_var passed to AddSymmetryOrbit().
bool IsOrbitSumVar(IntegerVariable var) const;
// This will be only true for variable not appearing in any orbit and for
// the orbit sum variables.
bool AppearInFoldedProblem(IntegerVariable var) const;
// Given a constraint on the "original" model variables, try to construct a
// symmetric version of it using the orbit sum variables. This might fail if
// we encounter integer overflow. Returns true on success. On failure, the
// original constraints will not be usable.
//
// Preconditions: All IntegerVariable must be positive. And the constraint
// lb/ub must be tight and not +/- int64_t max.
bool FoldLinearConstraint(LinearConstraint* ct, bool* folded = nullptr);
private:
SharedStatistics* shared_stats_;
IntegerTrail* integer_trail_;
bool has_symmetry_ = false;
int64_t num_overflows_ = 0;
LinearConstraintBuilder builder_;
// We index our vector by positive variable only.
util_intops::StrongVector<PositiveOnlyIndex, int> var_to_orbit_index_;
// Orbit info index by number in [0, num_orbits);
std::vector<IntegerVariable> orbit_sum_vars_;
CompactVectorVector<int, IntegerVariable> orbits_;
};
// This class holds a list of globally valid linear constraints and has some
// logic to decide which one should be part of the LP relaxation. We want more
// for a better relaxation, but for efficiency we do not want to have too much
// constraints while solving the LP.
//
// This class is meant to contain all the initial constraints of the LP
// relaxation and to get new cuts as they are generated. Thus, it can both
// manage cuts but also only add the initial constraints lazily if there is too
// many of them.
class LinearConstraintManager {
public:
struct ConstraintInfo {
// Note that this constraint always contains "tight" lb/ub, some of these
// bound might be trivial level zero bounds, and one can know this by
// looking at lb_is_trivial/ub_is_trivial.
LinearConstraint constraint;
double l2_norm = 0.0;
double objective_parallelism = 0.0;
size_t hash;
// Updated only for deletable constraints. This is incremented every time
// ChangeLp() is called and the constraint is active in the LP or not in the
// LP and violated.
double active_count = 0.0;
// TODO(user): This is the number of time the constraint was consecutively
// inactive, and go up to 100 with the default param, so we could optimize
// the space used more.
uint16_t inactive_count = 0;
// TODO(user): Pack bool and in general optimize the memory of this class.
bool objective_parallelism_computed = false;
bool is_in_lp = false;
bool ub_is_trivial = false;
bool lb_is_trivial = false;
// For now, we mark all the generated cuts as deletable and the problem
// constraints as undeletable.
// TODO(user): We can have a better heuristics. Some generated good cuts
// can be marked undeletable and some unused problem specified constraints
// can be marked deletable.
bool is_deletable = false;
};
explicit LinearConstraintManager(Model* model)
: sat_parameters_(*model->GetOrCreate<SatParameters>()),
integer_trail_(*model->GetOrCreate<IntegerTrail>()),
integer_encoder_(*model->GetOrCreate<IntegerEncoder>()),
time_limit_(model->GetOrCreate<TimeLimit>()),
expanded_lp_solution_(*model->GetOrCreate<ModelLpValues>()),
expanded_reduced_costs_(*model->GetOrCreate<ModelReducedCosts>()),
model_(model),
symmetrizer_(model->GetOrCreate<LinearConstraintSymmetrizer>()) {}
~LinearConstraintManager();
// Add a new constraint to the manager. Note that we canonicalize constraints
// and merge the bounds of constraints with the same terms. We also perform
// basic preprocessing. If added is given, it will be set to true if this
// constraint was actually a new one and to false if it was dominated by an
// already existing one.
DEFINE_STRONG_INDEX_TYPE(ConstraintIndex);
ConstraintIndex Add(LinearConstraint ct, bool* added = nullptr,
bool* folded = nullptr);
// Same as Add(), but logs some information about the newly added constraint.
// Cuts are also handled slightly differently than normal constraints.
//
// Returns true if a new cut was added and false if this cut is not
// efficacious or if it is a duplicate of an already existing one.
bool AddCut(LinearConstraint ct, std::string type_name,
std::string extra_info = "");
// These must be level zero bounds.
bool UpdateConstraintLb(glop::RowIndex index_in_lp, IntegerValue new_lb);
bool UpdateConstraintUb(glop::RowIndex index_in_lp, IntegerValue new_ub);
// The objective is used as one of the criterion to score cuts.
// The more a cut is parallel to the objective, the better its score is.
//
// Currently this should only be called once per IntegerVariable (Checked). It
// is easy to support dynamic modification if it becomes needed.
void SetObjectiveCoefficient(IntegerVariable var, IntegerValue coeff);
// Heuristic to decides what LP is best solved next. We use the model lp
// solutions as an heuristic, and it should usually be updated with the last
// known solution before this call.
//
// The current solution state is used for detecting inactive constraints. It
// is also updated correctly on constraint deletion/addition so that the
// simplex can be fully iterative on restart by loading this modified state.
//
// Returns true iff LpConstraints() will return a different LP than before.
bool ChangeLp(glop::BasisState* solution_state,
int* num_new_constraints = nullptr);
// This can be called initially to add all the current constraint to the LP
// returned by GetLp().
void AddAllConstraintsToLp();
// All the constraints managed by this class.
const util_intops::StrongVector<ConstraintIndex, ConstraintInfo>&
AllConstraints() const {
return constraint_infos_;
}
// The set of constraints indices in AllConstraints() that should be part
// of the next LP to solve.
const std::vector<ConstraintIndex>& LpConstraints() const {
return lp_constraints_;
}
// To simplify CutGenerator api.
const util_intops::StrongVector<IntegerVariable, double>& LpValues() {
return expanded_lp_solution_;
}
const util_intops::StrongVector<IntegerVariable, double>& ReducedCosts() {
return expanded_reduced_costs_;
}
// Stats.
int64_t num_constraints() const { return constraint_infos_.size(); }
int64_t num_constraint_updates() const { return num_constraint_updates_; }
int64_t num_simplifications() const { return num_simplifications_; }
int64_t num_merged_constraints() const { return num_merged_constraints_; }
int64_t num_shortened_constraints() const {
return num_shortened_constraints_;
}
int64_t num_split_constraints() const { return num_split_constraints_; }
int64_t num_coeff_strenghtening() const { return num_coeff_strenghtening_; }
int64_t num_cuts() const { return num_cuts_; }
int64_t num_add_cut_calls() const { return num_add_cut_calls_; }
const absl::btree_map<std::string, int>& type_to_num_cuts() const {
return type_to_num_cuts_;
}
// If a debug solution has been loaded, this checks if the given constraint
// cut it or not. Returns true if and only if everything is fine and the cut
// does not violate the loaded solution.
bool DebugCheckConstraint(const LinearConstraint& cut);
// Getter "ReducedCosts" API for cuts.
// One need to call CacheReducedCostsInfo() before accessing this, otherwise
// these will just always return zero.
//
// It is not possible to set together to true a set of literals 'l' such that
// sum_l GetLiteralReducedCost(l) > ReducedCostsGap(). Note that we only
// return non-negative "reduced costs" here.
void CacheReducedCostsInfo();
absl::int128 ReducedCostsGap() const { return reduced_costs_gap_; }
absl::int128 GetLiteralReducedCost(Literal l) const {
const auto it = reduced_costs_map_.find(l);
if (it == reduced_costs_map_.end()) return 0;
return absl::int128(it->second.value());
}
// This is quick. Work will happen on CacheReducedCostsInfo().
// This way if no one use the information, we don't was time.
// See for instance co-1000.mps where this can be slow and we never use
// the information.
void SetReducedCostsAsLinearConstraint(const LinearConstraint& ct) {
reduced_costs_gap_ = 0;
reduced_costs_map_.clear();
reduced_costs_is_cached_ = false;
reduced_cost_constraint_.CopyFrom(ct);
}
private:
// Heuristic that decide which constraints we should remove from the current
// LP. Note that such constraints can be added back later by the heuristic
// responsible for adding new constraints from the pool.
//
// Returns true if and only if one or more constraints where removed.
//
// If the solutions_state is empty, then this function does nothing and
// returns false (this is used for tests). Otherwise, the solutions_state is
// assumed to correspond to the current LP and to be of the correct size.
bool MaybeRemoveSomeInactiveConstraints(glop::BasisState* solution_state);
// Apply basic inprocessing simplification rules:
// - remove fixed variable
// - reduce large coefficient (i.e. coeff strenghtenning or big-M reduction).
// This uses level-zero bounds.
// Returns true if the terms of the constraint changed.
bool SimplifyConstraint(LinearConstraint* ct);
// Helper method to compute objective parallelism for a given constraint. This
// also lazily computes objective norm.
void ComputeObjectiveParallelism(ConstraintIndex ct_index);
// Multiplies all active counts and the increment counter by the given
// 'scaling_factor'. This should be called when at least one of the active
// counts is too high.
void RescaleActiveCounts(double scaling_factor);
// Removes some deletable constraints with low active counts. For now, we
// don't remove any constraints which are already in LP.
void PermanentlyRemoveSomeConstraints();
// Make sure the lb/ub are tight and fill lb_is_trivial/ub_is_trivial.
void FillDerivedFields(ConstraintInfo* info);
const SatParameters& sat_parameters_;
const IntegerTrail& integer_trail_;
const IntegerEncoder& integer_encoder_;
// Set at true by Add()/SimplifyConstraint() and at false by ChangeLp().
bool current_lp_is_changed_ = false;
// Optimization to avoid calling SimplifyConstraint() when not needed.
int64_t last_simplification_timestamp_ = 0;
util_intops::StrongVector<ConstraintIndex, ConstraintInfo> constraint_infos_;
// The subset of constraints currently in the lp.
std::vector<ConstraintIndex> lp_constraints_;
// We keep a map from the hash of our constraint terms to their position in
// constraints_. This is an optimization to detect duplicate constraints. We
// are robust to collisions because we always relies on the ground truth
// contained in constraints_ and the code is still okay if we do not merge the
// constraints.
absl::flat_hash_map<size_t, ConstraintIndex> equiv_constraints_;
// Reduced costs data used by some routing cuts.
bool reduced_costs_is_cached_ = false;
absl::int128 reduced_costs_gap_ = 0;
absl::flat_hash_map<Literal, IntegerValue> reduced_costs_map_;
LinearConstraint reduced_cost_constraint_;
int64_t num_constraint_updates_ = 0;
int64_t num_simplifications_ = 0;
int64_t num_merged_constraints_ = 0;
int64_t num_shortened_constraints_ = 0;
int64_t num_split_constraints_ = 0;
int64_t num_coeff_strenghtening_ = 0;
int64_t num_cuts_ = 0;
int64_t num_add_cut_calls_ = 0;
absl::btree_map<std::string, int> type_to_num_cuts_;
bool objective_is_defined_ = false;
bool objective_norm_computed_ = false;
double objective_l2_norm_ = 0.0;
// Total deterministic time spent in this class.
double dtime_ = 0.0;
// Sparse representation of the objective coeffs indexed by positive variables
// indices. Important: We cannot use a dense representation here in the corner
// case where we have many independent LPs. Alternatively, we could share a
// dense vector between all LinearConstraintManager.
double sum_of_squared_objective_coeffs_ = 0.0;
absl::flat_hash_map<IntegerVariable, double> objective_map_;
TimeLimit* time_limit_;
ModelLpValues& expanded_lp_solution_;
ModelReducedCosts& expanded_reduced_costs_;
Model* model_;
LinearConstraintSymmetrizer* symmetrizer_;
// We want to decay the active counts of all constraints at each call and
// increase the active counts of active/violated constraints. However this can
// be too slow in practice. So instead, we keep an increment counter and
// update only the active/violated constraints. The counter itself is
// increased by a factor at each call. This has the same effect as decaying
// all the active counts at each call. This trick is similar to sat clause
// management.
double constraint_active_count_increase_ = 1.0;
int32_t num_deletable_constraints_ = 0;
};
// Before adding cuts to the global pool, it is a classical thing to only keep
// the top n of a given type during one generation round. This is there to help
// doing that.
//
// TODO(user): Avoid computing efficacity twice.
// TODO(user): We don't use any orthogonality consideration here.
// TODO(user): Detect duplicate cuts?
class TopNCuts {
public:
explicit TopNCuts(int n) : cuts_(n) {}
// Adds a cut to the local pool.
void AddCut(
LinearConstraint ct, absl::string_view name,
const util_intops::StrongVector<IntegerVariable, double>& lp_solution);
// Empty the local pool and add all its content to the manager.
void TransferToManager(LinearConstraintManager* manager);
private:
struct CutCandidate {
std::string name;
LinearConstraint cut;
};
TopN<CutCandidate, double> cuts_;
};
} // namespace sat
} // namespace operations_research
#endif // ORTOOLS_SAT_LINEAR_CONSTRAINT_MANAGER_H_