# Copyright 2010-2017 Google # 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. """Linear programming examples that show how to use the APIs.""" from __future__ import print_function from ortools.linear_solver import linear_solver_pb2 from ortools.linear_solver import pywraplp def RunLinearExampleNaturalLanguageAPI(optimization_problem_type): """Example of simple linear program with natural language API.""" solver = pywraplp.Solver('RunLinearExampleNaturalLanguageAPI', optimization_problem_type) infinity = solver.infinity() # x1, x2 and x3 are continuous non-negative variables. x1 = solver.NumVar(0.0, infinity, 'x1') x2 = solver.NumVar(0.0, infinity, 'x2') x3 = solver.NumVar(0.0, infinity, 'x3') solver.Maximize(10 * x1 + 6 * x2 + 4 * x3) c0 = solver.Add(10 * x1 + 4 * x2 + 5 * x3 <= 600, 'ConstraintName0') c1 = solver.Add(2 * x1 + 2 * x2 + 6 * x3 <= 300) sum_of_vars = sum([x1, x2, x3]) c2 = solver.Add(sum_of_vars <= 100.0, 'OtherConstraintName') SolveAndPrint(solver, [x1, x2, x3], [c0, c1, c2]) # Print a linear expression's solution value. print(('Sum of vars: %s = %s' % (sum_of_vars, sum_of_vars.solution_value()))) def RunLinearExampleCppStyleAPI(optimization_problem_type): """Example of simple linear program with the C++ style API.""" solver = pywraplp.Solver('RunLinearExampleCppStyle', optimization_problem_type) infinity = solver.infinity() # x1, x2 and x3 are continuous non-negative variables. x1 = solver.NumVar(0.0, infinity, 'x1') x2 = solver.NumVar(0.0, infinity, 'x2') x3 = solver.NumVar(0.0, infinity, 'x3') # Maximize 10 * x1 + 6 * x2 + 4 * x3. objective = solver.Objective() objective.SetCoefficient(x1, 10) objective.SetCoefficient(x2, 6) objective.SetCoefficient(x3, 4) objective.SetMaximization() # x1 + x2 + x3 <= 100. c0 = solver.Constraint(-infinity, 100.0, 'c0') c0.SetCoefficient(x1, 1) c0.SetCoefficient(x2, 1) c0.SetCoefficient(x3, 1) # 10 * x1 + 4 * x2 + 5 * x3 <= 600. c1 = solver.Constraint(-infinity, 600.0, 'c1') c1.SetCoefficient(x1, 10) c1.SetCoefficient(x2, 4) c1.SetCoefficient(x3, 5) # 2 * x1 + 2 * x2 + 6 * x3 <= 300. c2 = solver.Constraint(-infinity, 300.0, 'c2') c2.SetCoefficient(x1, 2) c2.SetCoefficient(x2, 2) c2.SetCoefficient(x3, 6) SolveAndPrint(solver, [x1, x2, x3], [c0, c1, c2]) def SolveAndPrint(solver, variable_list, constraint_list): """Solve the problem and print the solution.""" print(('Number of variables = %d' % solver.NumVariables())) print(('Number of constraints = %d' % solver.NumConstraints())) result_status = solver.Solve() # The problem has an optimal solution. assert result_status == pywraplp.Solver.OPTIMAL # The solution looks legit (when using solvers others than # GLOP_LINEAR_PROGRAMMING, verifying the solution is highly recommended!). assert solver.VerifySolution(1e-7, True) print(('Problem solved in %f milliseconds' % solver.wall_time())) # The objective value of the solution. print(('Optimal objective value = %f' % solver.Objective().Value())) # The value of each variable in the solution. for variable in variable_list: print(('%s = %f' % (variable.name(), variable.solution_value()))) print('Advanced usage:') print(('Problem solved in %d iterations' % solver.iterations())) for variable in variable_list: print( ('%s: reduced cost = %f' % (variable.name(), variable.reduced_cost()))) activities = solver.ComputeConstraintActivities() for i, constraint in enumerate(constraint_list): print(('constraint %d: dual value = %f\n' ' activity = %f' % (i, constraint.dual_value(), activities[constraint.index()]))) def main(): all_names_and_problem_types = ( list(linear_solver_pb2.MPModelRequest.SolverType.items())) for name, problem_type in all_names_and_problem_types: # Skip non-LP problem types. if not name.endswith('LINEAR_PROGRAMMING'): continue # Skip problem types that aren't supported by the current binary. if not pywraplp.Solver.SupportsProblemType(problem_type): continue print(('\n------ Linear programming example with %s ------' % name)) print('\n*** Natural language API ***') RunLinearExampleNaturalLanguageAPI(problem_type) print('\n*** C++ style API ***') RunLinearExampleCppStyleAPI(problem_type) if __name__ == '__main__': main()