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ortools-clone/ortools/sat/sat_solver.h

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// Copyright 2010-2022 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.
// This file implements a SAT solver.
// see http://en.wikipedia.org/wiki/Boolean_satisfiability_problem
// for more detail.
// TODO(user): Expand.
#ifndef OR_TOOLS_SAT_SAT_SOLVER_H_
#define OR_TOOLS_SAT_SAT_SOLVER_H_
#include <cstdint>
#include <functional>
#include <limits>
#include <memory>
#include <ostream>
#include <string>
#include <utility>
#include <vector>
#include "absl/container/flat_hash_map.h"
#include "absl/log/check.h"
#include "absl/strings/string_view.h"
#include "absl/types/span.h"
#include "ortools/base/hash.h"
#include "ortools/base/integral_types.h"
#include "ortools/base/logging.h"
#include "ortools/base/macros.h"
#include "ortools/base/timer.h"
#include "ortools/sat/clause.h"
#include "ortools/sat/drat_proof_handler.h"
#include "ortools/sat/model.h"
#include "ortools/sat/pb_constraint.h"
#include "ortools/sat/restart.h"
#include "ortools/sat/sat_base.h"
#include "ortools/sat/sat_decision.h"
#include "ortools/sat/sat_parameters.pb.h"
#include "ortools/util/bitset.h"
#include "ortools/util/logging.h"
#include "ortools/util/stats.h"
#include "ortools/util/strong_integers.h"
#include "ortools/util/time_limit.h"
namespace operations_research {
namespace sat {
// A constant used by the EnqueueDecision*() API.
const int kUnsatTrailIndex = -1;
// The main SAT solver.
// It currently implements the CDCL algorithm. See
// http://en.wikipedia.org/wiki/Conflict_Driven_Clause_Learning
class SatSolver {
public:
SatSolver();
explicit SatSolver(Model* model);
~SatSolver();
// TODO(user): Remove. This is temporary for accessing the model deep within
// some old code that didn't use the Model object.
Model* model() { return model_; }
// Parameters management. Note that calling SetParameters() will reset the
// value of many heuristics. For instance:
// - The restart strategy will be reinitialized.
// - The random seed and random generator will be reset to the value given in
// parameters.
// - The global TimeLimit singleton will be reset and time will be
// counted from this call.
void SetParameters(const SatParameters& parameters);
const SatParameters& parameters() const;
// Increases the number of variables of the current problem.
//
// TODO(user): Rename to IncreaseNumVariablesTo() until we support removing
// variables...
void SetNumVariables(int num_variables);
int NumVariables() const { return num_variables_.value(); }
BooleanVariable NewBooleanVariable() {
const int num_vars = NumVariables();
// We need to be able to encode the variable as a literal.
CHECK_LT(2 * num_vars, std::numeric_limits<int32_t>::max());
SetNumVariables(num_vars + 1);
return BooleanVariable(num_vars);
}
// Fixes a variable so that the given literal is true. This can be used to
// solve a subproblem where some variables are fixed. Note that it is more
// efficient to add such unit clause before all the others.
// Returns false if the problem is detected to be UNSAT.
bool AddUnitClause(Literal true_literal);
// Same as AddProblemClause() below, but for small clauses.
bool AddBinaryClause(Literal a, Literal b);
bool AddTernaryClause(Literal a, Literal b, Literal c);
// Adds a clause to the problem. Returns false if the problem is detected to
// be UNSAT.
// If is_safe is false, we will do some basic presolving like removing
// duplicate literals.
//
// TODO(user): Rename this to AddClause(), also get rid of the specialized
// AddUnitClause(), AddBinaryClause() and AddTernaryClause() since they
// just end up calling this?
bool AddProblemClause(absl::Span<const Literal> literals,
bool is_safe = true);
// Adds a pseudo-Boolean constraint to the problem. Returns false if the
// problem is detected to be UNSAT. If the constraint is always true, this
// detects it and does nothing.
//
// Note(user): There is an optimization if the same constraint is added
// consecutively (even if the bounds are different). This is particularly
// useful for an optimization problem when we want to constrain the objective
// of the problem more and more. Just re-adding such constraint is relatively
// efficient.
//
// OVERFLOW: The sum of the absolute value of all the coefficients
// in the constraint must not overflow. This is currently CHECKed().
// TODO(user): Instead of failing, implement an error handling code.
bool AddLinearConstraint(bool use_lower_bound, Coefficient lower_bound,
bool use_upper_bound, Coefficient upper_bound,
std::vector<LiteralWithCoeff>* cst);
// Returns true if the model is UNSAT. Note that currently the status is
// "sticky" and once this happen, nothing else can be done with the solver.
//
// Thanks to this function, a client can safely ignore the return value of any
// Add*() functions. If one of them return false, then ModelIsUnsat() will
// return true.
bool ModelIsUnsat() const { return model_is_unsat_; }
// TODO(user): remove this function.
bool IsModelUnsat() const { return model_is_unsat_; } // DEPRECATED
// Adds and registers the given propagator with the sat solver. Note that
// during propagation, they will be called in the order they were added.
void AddPropagator(SatPropagator* propagator);
void AddLastPropagator(SatPropagator* propagator);
void TakePropagatorOwnership(std::unique_ptr<SatPropagator> propagator) {
owned_propagators_.push_back(std::move(propagator));
}
// Wrapper around the same functions in SatDecisionPolicy.
//
// TODO(user): Clean this up by making clients directly talk to
// SatDecisionPolicy.
void SetAssignmentPreference(Literal literal, double weight) {
decision_policy_->SetAssignmentPreference(literal, weight);
}
std::vector<std::pair<Literal, double>> AllPreferences() const {
return decision_policy_->AllPreferences();
}
void ResetDecisionHeuristic() {
return decision_policy_->ResetDecisionHeuristic();
}
void ResetDecisionHeuristicAndSetAllPreferences(
const std::vector<std::pair<Literal, double>>& prefs) {
decision_policy_->ResetDecisionHeuristic();
for (const std::pair<Literal, double>& p : prefs) {
decision_policy_->SetAssignmentPreference(p.first, p.second);
}
}
// Solves the problem and returns its status.
// An empty problem is considered to be SAT.
//
// Note that the conflict limit applies only to this function and starts
// counting from the time it is called.
//
// This will restart from the current solver configuration. If a previous call
// to Solve() was interrupted by a conflict or time limit, calling this again
// will resume the search exactly as it would have continued.
//
// Note that this will use the TimeLimit singleton, so the time limit
// will be counted since the last time TimeLimit was reset, not from
// the start of this function.
enum Status {
ASSUMPTIONS_UNSAT,
INFEASIBLE,
FEASIBLE,
LIMIT_REACHED,
};
Status Solve();
// Same as Solve(), but with a given time limit. Note that this will not
// update the TimeLimit singleton, but only the passed object instead.
Status SolveWithTimeLimit(TimeLimit* time_limit);
// Simple interface to solve a problem under the given assumptions. This
// simply ask the solver to solve a problem given a set of variables fixed to
// a given value (the assumptions). Compared to simply calling AddUnitClause()
// and fixing the variables once and for all, this allow to backtrack over the
// assumptions and thus exploit the incrementally between subsequent solves.
//
// This function backtrack over all the current decision, tries to enqueue the
// given assumptions, sets the assumption level accordingly and finally calls
// Solve().
//
// If, given these assumptions, the model is UNSAT, this returns the
// ASSUMPTIONS_UNSAT status. INFEASIBLE is reserved for the case where the
// model is proven to be unsat without any assumptions.
//
// If ASSUMPTIONS_UNSAT is returned, it is possible to get a "core" of unsat
// assumptions by calling GetLastIncompatibleDecisions().
Status ResetAndSolveWithGivenAssumptions(
const std::vector<Literal>& assumptions,
int64_t max_number_of_conflicts = -1);
// Changes the assumption level. All the decisions below this level will be
// treated as assumptions by the next Solve(). Note that this may impact some
// heuristics, like the LBD value of a clause.
void SetAssumptionLevel(int assumption_level);
// Returns the current assumption level. Note that if a solve was done since
// the last SetAssumptionLevel(), then the returned level may be lower than
// the one that was set. This is because some assumptions may now be
// consequences of others before them due to the newly learned clauses.
int AssumptionLevel() const { return assumption_level_; }
// This can be called just after SolveWithAssumptions() returned
// ASSUMPTION_UNSAT or after EnqueueDecisionAndBacktrackOnConflict() leaded
// to a conflict. It returns a subsequence (in the correct order) of the
// previously enqueued decisions that cannot be taken together without making
// the problem UNSAT.
std::vector<Literal> GetLastIncompatibleDecisions();
// Advanced usage. The next 3 functions allow to drive the search from outside
// the solver.
// Takes a new decision (the given true_literal must be unassigned) and
// propagates it. Returns the trail index of the first newly propagated
// literal. If there is a conflict and the problem is detected to be UNSAT,
// returns kUnsatTrailIndex.
//
// Important: In the presence of assumptions, this also returns
// kUnsatTrailIndex on ASSUMPTION_UNSAT. One can know the difference with
// IsModelUnsat().
//
// A client can determine if there is a conflict by checking if the
// CurrentDecisionLevel() was increased by 1 or not.
//
// If there is a conflict, the given decision is not applied and:
// - The conflict is learned.
// - The decisions are potentially backtracked to the first decision that
// propagates more variables because of the newly learned conflict.
// - The returned value is equal to trail_->Index() after this backtracking
// and just before the new propagation (due to the conflict) which is also
// performed by this function.
int EnqueueDecisionAndBackjumpOnConflict(Literal true_literal);
// This function starts by calling EnqueueDecisionAndBackjumpOnConflict(). If
// there is no conflict, it stops there. Otherwise, it tries to reapply all
// the decisions that were backjumped over until the first one that can't be
// taken because it is incompatible. Note that during this process, more
// conflicts may happen and the trail may be backtracked even further.
//
// In any case, the new decisions stack will be the largest valid "prefix"
// of the old stack. Note that decisions that are now consequence of the ones
// before them will no longer be decisions.
//
// Returns INFEASIBLE if the model was proven infeasible, ASSUMPTION_UNSAT if
// the current decision and the one we are trying to take are not compatible
// together and FEASIBLE if all decisions are taken.
//
// Note(user): This function can be called with an already assigned literal.
Status EnqueueDecisionAndBacktrackOnConflict(
Literal true_literal, int* first_propagation_index = nullptr);
// Tries to enqueue the given decision and performs the propagation.
// Returns true if no conflict occurred. Otherwise, returns false and restores
// the solver to the state just before this was called.
//
// Note(user): With this function, the solver doesn't learn anything.
bool EnqueueDecisionIfNotConflicting(Literal true_literal);
// Restores the state to the given target decision level. The decision at that
// level and all its propagation will not be undone. But all the trail after
// this will be cleared. Calling this with 0 will revert all the decisions and
// only the fixed variables will be left on the trail.
void Backtrack(int target_level);
// Advanced usage. This is meant to restore the solver to a "proper" state
// after a solve was interrupted due to a limit reached.
//
// Without assumption (i.e. if AssumptionLevel() is 0), this will revert all
// decisions and make sure that all the fixed literals are propagated. In
// presence of assumptions, this will either backtrack to the assumption level
// or re-enqueue any assumptions that may have been backtracked over due to
// conflits resolution. In both cases, the propagation is finished.
//
// Note that this may prove the model to be UNSAT or ASSUMPTION_UNSAT in which
// case it will return false.
bool RestoreSolverToAssumptionLevel();
// Advanced usage. Finish the progation if it was interrupted. Note that this
// might run into conflict and will propagate again until a fixed point is
// reached or the model was proven UNSAT. Returns IsModelUnsat().
bool FinishPropagation();
// Like Backtrack(0) but make sure the propagation is finished and return
// false if unsat was detected. This also removes any assumptions level.
bool ResetToLevelZero();
// Changes the assumptions level and the current solver assumptions. Returns
// false if the model is UNSAT or ASSUMPTION_UNSAT, true otherwise.
//
// This uses the "new" assumptions handling, where all assumptions are
// enqueued at once at decision level 1 before we start to propagate. This has
// many advantages. In particular, because we propagate with the binary
// implications first, if we ever have assumption => not(other_assumptions) we
// are guaranteed to find it and returns a core of size 2.
//
// Paper: "Speeding Up Assumption-Based SAT", Randy Hickey and Fahiem Bacchus
// http://www.maxhs.org/docs/Hickey-Bacchus2019_Chapter_SpeedingUpAssumption-BasedSAT.pdf
bool ResetWithGivenAssumptions(const std::vector<Literal>& assumptions);
// Advanced usage. If the decision level is smaller than the assumption level,
// this will try to reapply all assumptions. Returns true if this was doable,
// otherwise returns false in which case the model is either UNSAT or
// ASSUMPTION_UNSAT.
bool ReapplyAssumptionsIfNeeded();
// Helper functions to get the correct status when one of the functions above
// returns false.
Status UnsatStatus() const {
return IsModelUnsat() ? INFEASIBLE : ASSUMPTIONS_UNSAT;
}
// Extract the current problem clauses. The Output type must support the two
// functions:
// - void AddBinaryClause(Literal a, Literal b);
// - void AddClause(absl::Span<const Literal> clause);
//
// TODO(user): also copy the removable clauses?
template <typename Output>
void ExtractClauses(Output* out) {
CHECK(!IsModelUnsat());
Backtrack(0);
if (!FinishPropagation()) return;
// It is important to process the newly fixed variables, so they are not
// present in the clauses we export.
if (num_processed_fixed_variables_ < trail_->Index()) {
ProcessNewlyFixedVariables();
}
clauses_propagator_->DeleteRemovedClauses();
// Note(user): Putting the binary clauses first help because the presolver
// currently process the clauses in order.
out->SetNumVariables(NumVariables());
binary_implication_graph_->ExtractAllBinaryClauses(out);
for (SatClause* clause : clauses_propagator_->AllClausesInCreationOrder()) {
if (!clauses_propagator_->IsRemovable(clause)) {
out->AddClause(clause->AsSpan());
}
}
}
// Functions to manage the set of learned binary clauses.
// Only clauses added/learned when TrackBinaryClause() is true are managed.
void TrackBinaryClauses(bool value) { track_binary_clauses_ = value; }
bool AddBinaryClauses(const std::vector<BinaryClause>& clauses);
const std::vector<BinaryClause>& NewlyAddedBinaryClauses();
void ClearNewlyAddedBinaryClauses();
struct Decision {
Decision() = default;
Decision(int i, Literal l) : trail_index(i), literal(l) {}
int trail_index = 0;
Literal literal;
};
// Note that the Decisions() vector is always of size NumVariables(), and that
// only the first CurrentDecisionLevel() entries have a meaning.
const std::vector<Decision>& Decisions() const { return decisions_; }
int CurrentDecisionLevel() const { return current_decision_level_; }
const Trail& LiteralTrail() const { return *trail_; }
const VariablesAssignment& Assignment() const { return trail_->Assignment(); }
// Some statistics since the creation of the solver.
int64_t num_branches() const;
int64_t num_failures() const;
int64_t num_propagations() const;
// Note that we count the number of backtrack to level zero from a positive
// level. Those can corresponds to actual restarts, or conflicts that learn
// unit clauses or any other reason that trigger such backtrack.
int64_t num_restarts() const;
// A deterministic number that should be correlated with the time spent in
// the Solve() function. The order of magnitude should be close to the time
// in seconds.
double deterministic_time() const;
// Only used for debugging. Save the current assignment in debug_assignment_.
// The idea is that if we know that a given assignment is satisfiable, then
// all the learned clauses or PB constraints must be satisfiable by it. In
// debug mode, and after this is called, all the learned clauses are tested to
// satisfy this saved assignment.
void SaveDebugAssignment();
// Returns true iff the loaded problem only contains clauses.
bool ProblemIsPureSat() const { return problem_is_pure_sat_; }
void SetDratProofHandler(DratProofHandler* drat_proof_handler) {
drat_proof_handler_ = drat_proof_handler;
clauses_propagator_->SetDratProofHandler(drat_proof_handler_);
binary_implication_graph_->SetDratProofHandler(drat_proof_handler_);
}
// This function is here to deal with the case where a SAT/CP model is found
// to be trivially UNSAT while the user is constructing the model. Instead of
// having to test the status of all the lines adding a constraint, one can
// just check if the solver is not UNSAT once the model is constructed. Note
// that we usually log a warning on the first constraint that caused a
// "trival" unsatisfiability.
void NotifyThatModelIsUnsat() { model_is_unsat_ = true; }
// Adds a clause at any level of the tree and propagate any new deductions.
// Returns false if the model becomes UNSAT. Important: We currently do not
// support adding a clause that is already falsified at a positive decision
// level. Doing that will cause a check fail.
//
// TODO(user): Backjump and propagate on a falsified clause? this is currently
// not needed.
bool AddClauseDuringSearch(absl::Span<const Literal> literals);
// Performs propagation of the recently enqueued elements.
// Mainly visible for testing.
bool Propagate();
// This must be called at level zero. It will spend the given num decision and
// use propagation to try to minimize some clauses from the database.
void MinimizeSomeClauses(int decisions_budget);
// Sets the export function to the shared clauses manager.
void SetShareBinaryClauseCallback(const std::function<void(Literal, Literal)>&
shared_binary_clauses_callback) {
shared_binary_clauses_callback_ = shared_binary_clauses_callback;
}
// Advance the given time limit with all the deterministic time that was
// elapsed since last call.
void AdvanceDeterministicTime(TimeLimit* limit) {
const double current = deterministic_time();
limit->AdvanceDeterministicTime(
current - deterministic_time_at_last_advanced_time_limit_);
deterministic_time_at_last_advanced_time_limit_ = current;
}
// Simplifies the problem when new variables are assigned at level 0.
void ProcessNewlyFixedVariables();
int64_t NumFixedVariables() const {
if (!decisions_.empty()) return decisions_[0].trail_index;
CHECK_EQ(CurrentDecisionLevel(), 0);
return trail_->Index();
}
// Hack to allow to temporarily disable logging if it is enabled.
SolverLogger* mutable_logger() { return logger_; }
private:
// Calls Propagate() and returns true if no conflict occurred. Otherwise,
// learns the conflict, backtracks, enqueues the consequence of the learned
// conflict and returns false.
//
// When handling assumptions, this might return false without backtracking
// in case of ASSUMPTIONS_UNSAT.
bool PropagateAndStopAfterOneConflictResolution();
// All Solve() functions end up calling this one.
Status SolveInternal(TimeLimit* time_limit, int64_t max_number_of_conflicts);
// Adds a binary clause to the BinaryImplicationGraph and to the
// BinaryClauseManager when track_binary_clauses_ is true.
//
// If export_clause is true, then we will also export_clause that to a
// potential shared_binary_clauses_callback_.
void AddBinaryClauseInternal(Literal a, Literal b, bool export_clause);
// See SaveDebugAssignment(). Note that these functions only consider the
// variables at the time the debug_assignment_ was saved. If new variables
// were added since that time, they will be considered unassigned.
bool ClauseIsValidUnderDebugAssignment(
const std::vector<Literal>& clause) const;
bool PBConstraintIsValidUnderDebugAssignment(
const std::vector<LiteralWithCoeff>& cst, Coefficient rhs) const;
// Logs the given status if parameters_.log_search_progress() is true.
// Also returns it.
Status StatusWithLog(Status status);
// Main function called from SolveWithAssumptions() or from Solve() with an
// assumption_level of 0 (meaning no assumptions).
Status SolveInternal(int assumption_level);
// Applies the previous decisions (which are still on decisions_), in order,
// starting from the one at the current decision level. Stops at the one at
// decisions_[level] or on the first decision already propagated to "false"
// and thus incompatible.
//
// Note that during this process, conflicts may arise which will lead to
// backjumps. In this case, we will simply keep reapplying decisions from the
// last one backtracked over and so on.
//
// Returns FEASIBLE if no conflict occurred, INFEASIBLE if the model was
// proven unsat and ASSUMPTION_UNSAT otherwise. In the last case the first non
// taken old decision will be propagated to false by the ones before.
//
// first_propagation_index will be filled with the trail index of the first
// newly propagated literal, or with -1 if INFEASIBLE is returned.
Status ReapplyDecisionsUpTo(int level,
int* first_propagation_index = nullptr);
// Returns false if the thread memory is over the limit.
bool IsMemoryLimitReached() const;
// Sets model_is_unsat_ to true and return false.
bool SetModelUnsat();
// Returns the decision level of a given variable.
int DecisionLevel(BooleanVariable var) const {
return trail_->Info(var).level;
}
// Returns the relevant pointer if the given variable was propagated by the
// constraint in question. This is used to bump the activity of the learned
// clauses or pb constraints.
SatClause* ReasonClauseOrNull(BooleanVariable var) const;
UpperBoundedLinearConstraint* ReasonPbConstraintOrNull(
BooleanVariable var) const;
// This does one step of a pseudo-Boolean resolution:
// - The variable var has been assigned to l at a given trail_index.
// - The reason for var propagates it to l.
// - The conflict propagates it to not(l)
// The goal of the operation is to combine the two constraints in order to
// have a new conflict at a lower trail_index.
//
// Returns true if the reason for var was a normal clause. In this case,
// the *slack is updated to its new value.
bool ResolvePBConflict(BooleanVariable var,
MutableUpperBoundedLinearConstraint* conflict,
Coefficient* slack);
// Returns true iff the clause is the reason for an assigned variable.
//
// TODO(user): With our current data structures, we could also return true
// for clauses that were just used as a reason (like just before an untrail).
// This may be beneficial, but should properly be defined so that we can
// have the same behavior if we change the implementation.
bool ClauseIsUsedAsReason(SatClause* clause) const {
const BooleanVariable var = clause->PropagatedLiteral().Variable();
return trail_->Info(var).trail_index < trail_->Index() &&
(*trail_)[trail_->Info(var).trail_index].Variable() == var &&
ReasonClauseOrNull(var) == clause;
}
// Add a problem clause. The clause is assumed to be "cleaned", that is no
// duplicate variables (not strictly required) and not empty.
bool AddProblemClauseInternal(absl::Span<const Literal> literals);
// This is used by all the Add*LinearConstraint() functions. It detects
// infeasible/trivial constraints or clause constraints and takes the proper
// action.
bool AddLinearConstraintInternal(const std::vector<LiteralWithCoeff>& cst,
Coefficient rhs, Coefficient max_value);
// Makes sure a pseudo boolean constraint is in canonical form.
void CanonicalizeLinear(std::vector<LiteralWithCoeff>* cst,
Coefficient* bound_shift, Coefficient* max_value);
// Adds a learned clause to the problem. This should be called after
// Backtrack(). The backtrack is such that after it is applied, all the
// literals of the learned close except one will be false. Thus the last one
// will be implied True. This function also Enqueue() the implied literal.
//
// Returns the LBD of the clause.
int AddLearnedClauseAndEnqueueUnitPropagation(
const std::vector<Literal>& literals, bool is_redundant);
// Creates a new decision which corresponds to setting the given literal to
// True and Enqueue() this change.
void EnqueueNewDecision(Literal literal);
// Returns true if everything has been propagated.
//
// TODO(user): This test is fast but not exhaustive, especially regarding the
// integer propagators. Fix.
bool PropagationIsDone() const;
// Update the propagators_ list with the relevant propagators.
void InitializePropagators();
// Unrolls the trail until a given point. This unassign the assigned variables
// and add them to the priority queue with the correct weight.
void Untrail(int target_trail_index);
// Output to the DRAT proof handler any newly fixed variables.
void ProcessNewlyFixedVariablesForDratProof();
// Returns the maximum trail_index of the literals in the given clause.
// All the literals must be assigned. Returns -1 if the clause is empty.
int ComputeMaxTrailIndex(absl::Span<const Literal> clause) const;
// Computes what is known as the first UIP (Unique implication point) conflict
// clause starting from the failing clause. For a definition of UIP and a
// comparison of the different possible conflict clause computation, see the
// reference below.
//
// The conflict will have only one literal at the highest decision level, and
// this literal will always be the first in the conflict vector.
//
// L Zhang, CF Madigan, MH Moskewicz, S Malik, "Efficient conflict driven
// learning in a boolean satisfiability solver" Proceedings of the 2001
// IEEE/ACM international conference on Computer-aided design, Pages 279-285.
// http://www.cs.tau.ac.il/~msagiv/courses/ATP/iccad2001_final.pdf
void ComputeFirstUIPConflict(
int max_trail_index, std::vector<Literal>* conflict,
std::vector<Literal>* reason_used_to_infer_the_conflict,
std::vector<SatClause*>* subsumed_clauses);
// Fills literals with all the literals in the reasons of the literals in the
// given input. The output vector will have no duplicates and will not contain
// the literals already present in the input.
void ComputeUnionOfReasons(const std::vector<Literal>& input,
std::vector<Literal>* literals);
// Do the full pseudo-Boolean constraint analysis. This calls multiple
// time ResolvePBConflict() on the current conflict until we have a conflict
// that allow us to propagate more at a lower decision level. This level
// is the one returned in backjump_level.
void ComputePBConflict(int max_trail_index, Coefficient initial_slack,
MutableUpperBoundedLinearConstraint* conflict,
int* backjump_level);
// Applies some heuristics to a conflict in order to minimize its size and/or
// replace literals by other literals from lower decision levels. The first
// function choose which one of the other functions to call depending on the
// parameters.
//
// Precondidtion: is_marked_ should be set to true for all the variables of
// the conflict. It can also contains false non-conflict variables that
// are implied by the negation of the 1-UIP conflict literal.
void MinimizeConflict(
std::vector<Literal>* conflict,
std::vector<Literal>* reason_used_to_infer_the_conflict);
void MinimizeConflictExperimental(std::vector<Literal>* conflict);
void MinimizeConflictSimple(std::vector<Literal>* conflict);
void MinimizeConflictRecursively(std::vector<Literal>* conflict);
// Utility function used by MinimizeConflictRecursively().
bool CanBeInferedFromConflictVariables(BooleanVariable variable);
// To be used in DCHECK(). Verifies some property of the conflict clause:
// - There is an unique literal with the highest decision level.
// - This literal appears in the first position.
// - All the other literals are of smaller decision level.
// - Ther is no literal with a decision level of zero.
bool IsConflictValid(const std::vector<Literal>& literals);
// Given the learned clause after a conflict, this computes the correct
// backtrack level to call Backtrack() with.
int ComputeBacktrackLevel(const std::vector<Literal>& literals);
// The LBD (Literal Blocks Distance) is the number of different decision
// levels at which the literals of the clause were assigned. Note that we
// ignore the decision level 0 whereas the definition in the paper below
// doesn't:
//
// G. Audemard, L. Simon, "Predicting Learnt Clauses Quality in Modern SAT
// Solver" in Twenty-first International Joint Conference on Artificial
// Intelligence (IJCAI'09), july 2009.
// http://www.ijcai.org/papers09/Papers/IJCAI09-074.pdf
//
// IMPORTANT: All the literals of the clause must be assigned, and the first
// literal must be of the highest decision level. This will be the case for
// all the reason clauses.
template <typename LiteralList>
int ComputeLbd(const LiteralList& literals);
// Checks if we need to reduce the number of learned clauses and do
// it if needed. Also updates the learned clause limit for the next cleanup.
void CleanClauseDatabaseIfNeeded();
// Activity management for clauses. This work the same way at the ones for
// variables, but with different parameters.
void BumpReasonActivities(const std::vector<Literal>& literals);
void BumpClauseActivity(SatClause* clause);
void RescaleClauseActivities(double scaling_factor);
void UpdateClauseActivityIncrement();
std::string DebugString(const SatClause& clause) const;
std::string StatusString(Status status) const;
std::string RunningStatisticsString() const;
// Marks as "non-deletable" all clauses that were used to infer the given
// variable. The variable must be currently assigned.
void KeepAllClauseUsedToInfer(BooleanVariable variable);
// Use propagation to try to minimize the given clause. This is really similar
// to MinimizeCoreWithPropagation(). It must be called when the current
// decision level is zero. Note that because this do a small tree search, it
// will impact the variable/clauses activities and may add new conflicts.
void TryToMinimizeClause(SatClause* clause);
// This is used by the old non-model constructor.
Model* model_;
std::unique_ptr<Model> owned_model_;
BooleanVariable num_variables_ = BooleanVariable(0);
// Internal propagators. We keep them here because we need more than the
// SatPropagator interface for them.
BinaryImplicationGraph* binary_implication_graph_;
LiteralWatchers* clauses_propagator_;
PbConstraints* pb_constraints_;
// Ordered list of propagators used by Propagate()/Untrail().
std::vector<SatPropagator*> propagators_;
std::vector<SatPropagator*> non_empty_propagators_;
// Ordered list of propagators added with AddPropagator().
std::vector<SatPropagator*> external_propagators_;
SatPropagator* last_propagator_ = nullptr;
// For the old, non-model interface.
std::vector<std::unique_ptr<SatPropagator>> owned_propagators_;
// Keep track of all binary clauses so they can be exported.
bool track_binary_clauses_;
BinaryClauseManager binary_clauses_;
// Pointers to singleton Model objects.
Trail* trail_;
TimeLimit* time_limit_;
SatParameters* parameters_;
RestartPolicy* restart_;
SatDecisionPolicy* decision_policy_;
SolverLogger* logger_;
// Used for debugging only. See SaveDebugAssignment().
VariablesAssignment debug_assignment_;
// The stack of decisions taken by the solver. They are stored in [0,
// current_decision_level_). The vector is of size num_variables_ so it can
// store all the decisions. This is done this way because in some situation we
// need to remember the previously taken decisions after a backtrack.
int current_decision_level_ = 0;
std::vector<Decision> decisions_;
// The trail index after the last Backtrack() call or before the last
// EnqueueNewDecision() call.
int last_decision_or_backtrack_trail_index_ = 0;
// The assumption level. See SolveWithAssumptions().
int assumption_level_ = 0;
std::vector<Literal> assumptions_;
// The size of the trail when ProcessNewlyFixedVariables() was last called.
// Note that the trail contains only fixed literals (that is literals of
// decision levels 0) before this point.
int num_processed_fixed_variables_ = 0;
double deterministic_time_of_last_fixed_variables_cleanup_ = 0.0;
// Used in ProcessNewlyFixedVariablesForDratProof().
int drat_num_processed_fixed_variables_ = 0;
// Tracks various information about the solver progress.
struct Counters {
int64_t num_branches = 0;
int64_t num_failures = 0;
int64_t num_restarts = 0;
// Minimization stats.
int64_t num_minimizations = 0;
int64_t num_literals_removed = 0;
// PB constraints.
int64_t num_learned_pb_literals = 0;
// Clause learning /deletion stats.
int64_t num_literals_learned = 0;
int64_t num_literals_forgotten = 0;
int64_t num_subsumed_clauses = 0;
// TryToMinimizeClause() stats.
int64_t minimization_num_clauses = 0;
int64_t minimization_num_decisions = 0;
int64_t minimization_num_true = 0;
int64_t minimization_num_subsumed = 0;
int64_t minimization_num_removed_literals = 0;
};
Counters counters_;
// Solver information.
WallTimer timer_;
// This is set to true if the model is found to be UNSAT when adding new
// constraints.
bool model_is_unsat_ = false;
// Increment used to bump the variable activities.
double clause_activity_increment_;
// This counter is decremented each time we learn a clause that can be
// deleted. When it reaches zero, a clause cleanup is triggered.
int num_learned_clause_before_cleanup_ = 0;
// Temporary members used during conflict analysis.
SparseBitset<BooleanVariable> is_marked_;
SparseBitset<BooleanVariable> is_independent_;
SparseBitset<BooleanVariable> tmp_mark_;
std::vector<int> min_trail_index_per_level_;
// Temporary members used by CanBeInferedFromConflictVariables().
std::vector<BooleanVariable> dfs_stack_;
std::vector<BooleanVariable> variable_to_process_;
// Temporary member used when adding clauses.
std::vector<Literal> literals_scratchpad_;
// A boolean vector used to temporarily mark decision levels.
DEFINE_STRONG_INDEX_TYPE(SatDecisionLevel);
SparseBitset<SatDecisionLevel> is_level_marked_;
// Temporary vectors used by EnqueueDecisionAndBackjumpOnConflict().
std::vector<Literal> learned_conflict_;
std::vector<Literal> reason_used_to_infer_the_conflict_;
std::vector<Literal> extra_reason_literals_;
std::vector<SatClause*> subsumed_clauses_;
// When true, temporarily disable the deletion of clauses that are not needed
// anymore. This is a hack for TryToMinimizeClause() because we use
// propagation in this function which might trigger a clause database
// deletion, but we still want the pointer to the clause we wants to minimize
// to be valid until the end of that function.
bool block_clause_deletion_ = false;
// "cache" to avoid inspecting many times the same reason during conflict
// analysis.
VariableWithSameReasonIdentifier same_reason_identifier_;
// Boolean used to include/exclude constraints from the core computation.
bool is_relevant_for_core_computation_;
// The current pseudo-Boolean conflict used in PB conflict analysis.
MutableUpperBoundedLinearConstraint pb_conflict_;
// The deterministic time when the time limit was updated.
// As the deterministic time in the time limit has to be advanced manually,
// it is necessary to keep track of the last time the time was advanced.
double deterministic_time_at_last_advanced_time_limit_ = 0;
// This is true iff the loaded problem only contains clauses.
bool problem_is_pure_sat_;
DratProofHandler* drat_proof_handler_;
mutable StatsGroup stats_;
std::function<void(Literal, Literal)> shared_binary_clauses_callback_ =
nullptr;
DISALLOW_COPY_AND_ASSIGN(SatSolver);
};
// Tries to minimize the given UNSAT core with a really simple heuristic.
// The idea is to remove literals that are consequences of others in the core.
// We already know that in the initial order, no literal is propagated by the
// one before it, so we just look for propagation in the reverse order.
//
// Important: The given SatSolver must be the one that just produced the given
// core.
//
// TODO(user): One should use MinimizeCoreWithPropagation() instead.
void MinimizeCore(SatSolver* solver, std::vector<Literal>* core);
// ============================================================================
// Model based functions.
//
// TODO(user): move them in another file, and unit-test them.
// ============================================================================
inline std::function<void(Model*)> BooleanLinearConstraint(
int64_t lower_bound, int64_t upper_bound,
std::vector<LiteralWithCoeff>* cst) {
return [=](Model* model) {
model->GetOrCreate<SatSolver>()->AddLinearConstraint(
/*use_lower_bound=*/true, Coefficient(lower_bound),
/*use_upper_bound=*/true, Coefficient(upper_bound), cst);
};
}
inline std::function<void(Model*)> CardinalityConstraint(
int64_t lower_bound, int64_t upper_bound,
const std::vector<Literal>& literals) {
return [=](Model* model) {
std::vector<LiteralWithCoeff> cst;
cst.reserve(literals.size());
for (int i = 0; i < literals.size(); ++i) {
cst.emplace_back(literals[i], 1);
}
model->GetOrCreate<SatSolver>()->AddLinearConstraint(
/*use_lower_bound=*/true, Coefficient(lower_bound),
/*use_upper_bound=*/true, Coefficient(upper_bound), &cst);
};
}
inline std::function<void(Model*)> ExactlyOneConstraint(
const std::vector<Literal>& literals) {
return [=](Model* model) {
std::vector<LiteralWithCoeff> cst;
cst.reserve(literals.size());
for (const Literal l : literals) {
cst.emplace_back(l, Coefficient(1));
}
model->GetOrCreate<SatSolver>()->AddLinearConstraint(
/*use_lower_bound=*/true, Coefficient(1),
/*use_upper_bound=*/true, Coefficient(1), &cst);
};
}
inline std::function<void(Model*)> AtMostOneConstraint(
const std::vector<Literal>& literals) {
return [=](Model* model) {
std::vector<LiteralWithCoeff> cst;
cst.reserve(literals.size());
for (const Literal l : literals) {
cst.emplace_back(l, Coefficient(1));
}
model->GetOrCreate<SatSolver>()->AddLinearConstraint(
/*use_lower_bound=*/false, Coefficient(0),
/*use_upper_bound=*/true, Coefficient(1), &cst);
};
}
inline std::function<void(Model*)> ClauseConstraint(
absl::Span<const Literal> literals) {
return [=](Model* model) {
model->GetOrCreate<SatSolver>()->AddProblemClause(literals,
/*is_safe=*/false);
};
}
// a => b.
inline std::function<void(Model*)> Implication(Literal a, Literal b) {
return [=](Model* model) {
model->GetOrCreate<SatSolver>()->AddBinaryClause(a.Negated(), b);
};
}
// a == b.
inline std::function<void(Model*)> Equality(Literal a, Literal b) {
return [=](Model* model) {
model->GetOrCreate<SatSolver>()->AddBinaryClause(a.Negated(), b);
model->GetOrCreate<SatSolver>()->AddBinaryClause(a, b.Negated());
};
}
// r <=> (at least one literal is true). This is a reified clause.
inline std::function<void(Model*)> ReifiedBoolOr(
const std::vector<Literal>& literals, Literal r) {
return [=](Model* model) {
std::vector<Literal> clause;
for (const Literal l : literals) {
model->Add(Implication(l, r)); // l => r.
clause.push_back(l);
}
// All false => r false.
clause.push_back(r.Negated());
model->Add(ClauseConstraint(clause));
};
}
// enforcement_literals => clause.
inline std::function<void(Model*)> EnforcedClause(
absl::Span<const Literal> enforcement_literals,
absl::Span<const Literal> clause) {
return [=](Model* model) {
std::vector<Literal> tmp;
for (const Literal l : enforcement_literals) {
tmp.push_back(l.Negated());
}
for (const Literal l : clause) {
tmp.push_back(l);
}
model->Add(ClauseConstraint(tmp));
};
}
// r <=> (all literals are true).
//
// Note(user): we could have called ReifiedBoolOr() with everything negated.
inline std::function<void(Model*)> ReifiedBoolAnd(
const std::vector<Literal>& literals, Literal r) {
return [=](Model* model) {
std::vector<Literal> clause;
for (const Literal l : literals) {
model->Add(Implication(r, l)); // r => l.
clause.push_back(l.Negated());
}
// All true => r true.
clause.push_back(r);
model->Add(ClauseConstraint(clause));
};
}
// r <=> (a <= b).
inline std::function<void(Model*)> ReifiedBoolLe(Literal a, Literal b,
Literal r) {
return [=](Model* model) {
// r <=> (a <= b) is the same as r <=> not(a=1 and b=0).
// So r <=> a=0 OR b=1.
model->Add(ReifiedBoolOr({a.Negated(), b}, r));
};
}
// This checks that the variable is fixed.
inline std::function<int64_t(const Model&)> Value(Literal l) {
return [=](const Model& model) {
const Trail* trail = model.Get<Trail>();
CHECK(trail->Assignment().VariableIsAssigned(l.Variable()));
return trail->Assignment().LiteralIsTrue(l);
};
}
// This checks that the variable is fixed.
inline std::function<int64_t(const Model&)> Value(BooleanVariable b) {
return [=](const Model& model) {
const Trail* trail = model.Get<Trail>();
CHECK(trail->Assignment().VariableIsAssigned(b));
return trail->Assignment().LiteralIsTrue(Literal(b, true));
};
}
// This can be used to enumerate all the solutions. After each SAT call to
// Solve(), calling this will reset the solver and exclude the current solution
// so that the next call to Solve() will give a new solution or UNSAT is there
// is no more new solutions.
inline std::function<void(Model*)> ExcludeCurrentSolutionAndBacktrack() {
return [=](Model* model) {
SatSolver* sat_solver = model->GetOrCreate<SatSolver>();
// Note that we only exclude the current decisions, which is an efficient
// way to not get the same SAT assignment.
const int current_level = sat_solver->CurrentDecisionLevel();
std::vector<Literal> clause_to_exclude_solution;
clause_to_exclude_solution.reserve(current_level);
for (int i = 0; i < current_level; ++i) {
clause_to_exclude_solution.push_back(
sat_solver->Decisions()[i].literal.Negated());
}
sat_solver->Backtrack(0);
model->Add(ClauseConstraint(clause_to_exclude_solution));
};
}
// Returns a string representation of a SatSolver::Status.
std::string SatStatusString(SatSolver::Status status);
inline std::ostream& operator<<(std::ostream& os, SatSolver::Status status) {
os << SatStatusString(status);
return os;
}
} // namespace sat
} // namespace operations_research
#endif // OR_TOOLS_SAT_SAT_SOLVER_H_