examples/notebook/linear_solver/simple_mip_program_mb.ipynb
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First, you must install ortools package in this colab.
%pip install ortools
Integer programming examples that show how to use the APIs.
import math
from ortools.linear_solver.python import model_builder
def main():
# Create the model.
model = model_builder.Model()
# x and y are integer non-negative variables.
x = model.new_int_var(0.0, math.inf, "x")
y = model.new_int_var(0.0, math.inf, "y")
print("Number of variables =", model.num_variables)
# x + 7 * y <= 17.5.
model.add(x + 7 * y <= 17.5)
# x <= 3.5.
model.add(x <= 3.5)
print("Number of constraints =", model.num_constraints)
# Maximize x + 10 * y.
model.maximize(x + 10 * y)
# Create the solver with the SCIP backend, and solve the model.
solver = model_builder.Solver("scip")
if not solver.solver_is_supported():
return
status = solver.solve(model)
if status == model_builder.SolveStatus.OPTIMAL:
print("Solution:")
print("Objective value =", solver.objective_value)
print("x =", solver.value(x))
print("y =", solver.value(y))
else:
print("The problem does not have an optimal solution.")
print("\nAdvanced usage:")
print("Problem solved in %f seconds" % solver.wall_time)
main()