ROL
ROL_NonlinearCGStep.hpp
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43
44#ifndef ROL_NONLINEARCGSTEP_H
45#define ROL_NONLINEARCGSTEP_H
46
47#include "ROL_Types.hpp"
48#include "ROL_Step.hpp"
49#include "ROL_NonlinearCG.hpp"
50
56
57namespace ROL {
58
59template <class Real>
60class NonlinearCGStep : public Step<Real> {
61private:
62
63 ROL::Ptr<NonlinearCG<Real> > nlcg_;
66 const bool computeObj_;
67
68 std::string ncgName_;
69
70public:
71
72 using Step<Real>::initialize;
73 using Step<Real>::compute;
74 using Step<Real>::update;
75
85 NonlinearCGStep( ROL::ParameterList &parlist,
86 const ROL::Ptr<NonlinearCG<Real> > &nlcg = ROL::nullPtr,
87 const bool computeObj = true )
88 : Step<Real>(), nlcg_(nlcg), enlcg_(NONLINEARCG_USERDEFINED),
89 verbosity_(0), computeObj_(computeObj) {
90 // Parse ParameterList
91 verbosity_ = parlist.sublist("General").get("Print Verbosity",0);
92 // Initialize secant object
93 ROL::ParameterList& Llist = parlist.sublist("Step").sublist("Line Search");
94 if ( nlcg == ROL::nullPtr ) {
95 ncgName_ = Llist.sublist("Descent Method").get("Nonlinear CG Type","Oren-Luenberger");
96 enlcg_
98 nlcg_ = ROL::makePtr<NonlinearCG<Real>>(enlcg_);
99 }
100 else {
101 ncgName_ = Llist.sublist("Descent Method").get("User Defined Nonlinear CG Name",
102 "Unspecified User Define Nonlinear CG Method");
103 }
104 }
105
108 AlgorithmState<Real> &algo_state ) {
109 ROL::Ptr<StepState<Real> > step_state = Step<Real>::getState();
110 Real one(1);
111
112 // Compute search direction
113 nlcg_->run(s,*(step_state->gradientVec),x,obj);
114 s.scale(-one);
115 }
116
118 AlgorithmState<Real> &algo_state ) {
119 Real tol = std::sqrt(ROL_EPSILON<Real>());
120 ROL::Ptr<StepState<Real> > step_state = Step<Real>::getState();
121
122 // Update iterate
123 algo_state.iter++;
124 x.plus(s);
125 (step_state->descentVec)->set(s);
126 algo_state.snorm = s.norm();
127
128 // Compute new gradient
129 obj.update(x,true,algo_state.iter);
130 if ( computeObj_ ) {
131 algo_state.value = obj.value(x,tol);
132 algo_state.nfval++;
133 }
134 obj.gradient(*(step_state->gradientVec),x,tol);
135 algo_state.ngrad++;
136
137 // Update algorithm state
138 (algo_state.iterateVec)->set(x);
139 algo_state.gnorm = (step_state->gradientVec)->norm();
140 }
141
142 std::string printHeader( void ) const {
143 std::stringstream hist;
144
145 if( verbosity_>0 ) {
146 hist << std::string(109,'-') << "\n";
148 hist << " status output definitions\n\n";
149 hist << " iter - Number of iterates (steps taken) \n";
150 hist << " value - Objective function value \n";
151 hist << " gnorm - Norm of the gradient\n";
152 hist << " snorm - Norm of the step (update to optimization vector)\n";
153 hist << " #fval - Cumulative number of times the objective function was evaluated\n";
154 hist << " #grad - Number of times the gradient was computed\n";
155 hist << std::string(109,'-') << "\n";
156 }
157
158 hist << " ";
159 hist << std::setw(6) << std::left << "iter";
160 hist << std::setw(15) << std::left << "value";
161 hist << std::setw(15) << std::left << "gnorm";
162 hist << std::setw(15) << std::left << "snorm";
163 hist << std::setw(10) << std::left << "#fval";
164 hist << std::setw(10) << std::left << "#grad";
165 hist << "\n";
166 return hist.str();
167 }
168 std::string printName( void ) const {
169 std::stringstream hist;
170 hist << "\n" << ncgName_ << " "
172 return hist.str();
173 }
174 std::string print( AlgorithmState<Real> &algo_state, bool print_header = false ) const {
175 std::stringstream hist;
176 hist << std::scientific << std::setprecision(6);
177 if ( algo_state.iter == 0 ) {
178 hist << printName();
179 }
180 if ( print_header ) {
181 hist << printHeader();
182 }
183 if ( algo_state.iter == 0 ) {
184 hist << " ";
185 hist << std::setw(6) << std::left << algo_state.iter;
186 hist << std::setw(15) << std::left << algo_state.value;
187 hist << std::setw(15) << std::left << algo_state.gnorm;
188 hist << "\n";
189 }
190 else {
191 hist << " ";
192 hist << std::setw(6) << std::left << algo_state.iter;
193 hist << std::setw(15) << std::left << algo_state.value;
194 hist << std::setw(15) << std::left << algo_state.gnorm;
195 hist << std::setw(15) << std::left << algo_state.snorm;
196 hist << std::setw(10) << std::left << algo_state.nfval;
197 hist << std::setw(10) << std::left << algo_state.ngrad;
198 hist << "\n";
199 }
200 return hist.str();
201 }
202}; // class NonlinearCGStep
203
204} // namespace ROL
205
206#endif
Contains definitions of custom data types in ROL.
Provides the interface to apply upper and lower bound constraints.
int verbosity_
Verbosity setting.
std::string printName(void) const
Print step name.
void update(Vector< Real > &x, const Vector< Real > &s, Objective< Real > &obj, BoundConstraint< Real > &con, AlgorithmState< Real > &algo_state)
void compute(Vector< Real > &s, const Vector< Real > &x, Objective< Real > &obj, BoundConstraint< Real > &bnd, AlgorithmState< Real > &algo_state)
std::string print(AlgorithmState< Real > &algo_state, bool print_header=false) const
std::string printHeader(void) const
Print iterate header.
NonlinearCGStep(ROL::ParameterList &parlist, const ROL::Ptr< NonlinearCG< Real > > &nlcg=ROL::nullPtr, const bool computeObj=true)
Constructor.
ROL::Ptr< NonlinearCG< Real > > nlcg_
NonlinearCG object (used for quasi-Newton)
Provides the interface to evaluate objective functions.
virtual void gradient(Vector< Real > &g, const Vector< Real > &x, Real &tol)
Compute gradient.
virtual Real value(const Vector< Real > &x, Real &tol)=0
Compute value.
virtual void update(const Vector< Real > &x, UpdateType type, int iter=-1)
Update objective function.
virtual void initialize(Vector< Real > &x, const Vector< Real > &g, Objective< Real > &obj, BoundConstraint< Real > &con, AlgorithmState< Real > &algo_state)
Initialize step with bound constraint.
ROL::Ptr< StepState< Real > > getState(void)
Definition ROL_Step.hpp:73
Defines the linear algebra or vector space interface.
virtual Real norm() const =0
Returns where .
virtual void scale(const Real alpha)=0
Compute where .
virtual void plus(const Vector &x)=0
Compute , where .
Real ROL_EPSILON(void)
Platform-dependent machine epsilon.
Definition ROL_Types.hpp:91
ENonlinearCG
@ NONLINEARCG_USERDEFINED
@ DESCENT_NONLINEARCG
std::string EDescentToString(EDescent tr)
ENonlinearCG StringToENonlinearCG(std::string s)
State for algorithm class. Will be used for restarts.
ROL::Ptr< Vector< Real > > iterateVec