Crates.io | ipopt |
lib.rs | ipopt |
version | 0.5.4 |
source | src |
created_at | 2018-03-01 22:14:02.411217 |
updated_at | 2020-03-09 07:27:17.889608 |
description | Rust language bindings for the Ipopt non-linear constrained optimization library. |
homepage | https://github.com/elrnv/ipopt-rs |
repository | https://github.com/elrnv/ipopt-rs |
max_upload_size | |
id | 53370 |
size | 124,905 |
ipopt-rs
A safe Rust interface to the Ipopt non-linear optimization library.
From the Ipopt webpage:
Ipopt (Interior Point OPTimizer, pronounced eye-pea-Opt) is a software package for large-scale nonlinear optimization. It is designed to find (local) solutions of mathematical optimization problems of the from
min f(x) x in R^n s.t. g_L <= g(x) <= g_U x_L <= x <= x_U
where
f(x): R^n --> R
is the objective function, andg(x): R^n --> R^m
are the constraint functions. The vectorsg_L
andg_U
denote the lower and upper bounds on the constraints, and the vectorsx_L
andx_U
are the bounds on the variablesx
. The functionsf(x)
andg(x)
can be nonlinear and nonconvex, but should be twice continuously differentiable. Note that equality constraints can be formulated in the above formulation by setting the corresponding components ofg_L
andg_U
to the same value.
This crate aims to
Solve a simple unconstrained problem using L-BFGS: minimize (x - 1)^2 + (y -1)^2
use approx::*;
use ipopt::*;
struct NLP {
}
impl BasicProblem for NLP {
// There are two independent variables: x and y.
fn num_variables(&self) -> usize {
2
}
// The variables are unbounded. Any lower bound lower than -10^9 and upper bound higher
// than 10^9 is treated effectively as infinity. These absolute infinity limits can be
// changed via the `nlp_lower_bound_inf` and `nlp_upper_bound_inf` Ipopt options.
fn bounds(&self, x_l: &mut [Number], x_u: &mut [Number]) -> bool {
x_l.swap_with_slice(vec![-1e20; 2].as_mut_slice());
x_u.swap_with_slice(vec![1e20; 2].as_mut_slice());
true
}
// Set the initial conditions for the solver.
fn initial_point(&self, x: &mut [Number]) -> bool {
x.swap_with_slice(vec![0.0, 0.0].as_mut_slice());
true
}
// The objective to be minimized.
fn objective(&self, x: &[Number], obj: &mut Number) -> bool {
*obj = (x[0] - 1.0)*(x[0] - 1.0) + (x[1] - 1.0)*(x[1] - 1.0);
true
}
// Objective gradient is used to find a new search direction to find the critical point.
fn objective_grad(&self, x: &[Number], grad_f: &mut [Number]) -> bool {
grad_f[0] = 2.0*(x[0] - 1.0);
grad_f[1] = 2.0*(x[1] - 1.0);
true
}
}
fn main() {
let nlp = NLP { };
let mut ipopt = Ipopt::new_unconstrained(nlp).unwrap();
// Set Ipopt specific options here a list of all options is available at
// https://www.coin-or.org/Ipopt/documentation/node40.html
ipopt.set_option("tol", 1e-9); // set error tolerance
ipopt.set_option("print_level", 5); // set the print level (5 is the default)
let solve_result = ipopt.solve();
assert_eq!(solve_result.status, SolveStatus::SolveSucceeded);
assert_relative_eq!(solve_result.objective_value, 0.0, epsilon = 1e-10);
let solution = solve_result.solver_data.solution;
assert_relative_eq!(solution.primal_variables[0], 1.0, epsilon = 1e-10);
assert_relative_eq!(solution.primal_variables[1], 1.0, epsilon = 1e-10);
}
See the tests for more examples including constrained optimization.
As it stands, this library is still immature in terms of platform support. There is ongoing work to improve this. For instance Windows is not currently supported until I get a Windows machine or somebody else pitches in to provide the support ;)
For details on how Ipopt binaries are acquired see ipopt-sys.
This repository is licensed under either of
at your option.