import nlopt from numpy import * def myfunc(x, grad): if grad.size > 0: grad[0] = 0.0 grad[1] = 0.5 / sqrt(x[1]) return sqrt(x[1]) def myconstraint(x, grad, a, b): if grad.size > 0: grad[0] = 3 * a * (a*x[0] + b)**2 grad[1] = -1.0 return (a*x[0] + b)**3 - x[1] opt = nlopt.opt(nlopt.LD_MMA, 2) opt.set_lower_bounds([-float('inf'), 0]) opt.set_min_objective(myfunc) opt.add_inequality_constraint(lambda x,grad: myconstraint(x,grad,2,0), 1e-8) opt.add_inequality_constraint(lambda x,grad: myconstraint(x,grad,-1,1), 1e-8) opt.set_xtol_rel(1e-4) x = opt.optimize([1.234, 5.678]) minf = opt.last_optimum_value() print("optimum at ", x[0], x[1]) print("minimum value = ", minf) print("result code = ", opt.last_optimize_result())