A Linear Programming modeler that is easy to use, performant with large problems, and well-typed.
```rust use goodlp::{variables, variable, coincbc, SolverModel, Solution, contraint};
fn main() { variables!{ vars: a <= 1; 2 <= b <= 4; }; let solution = vars.maximise(10 * (a - b / 5) - b) .using(coin_cbc) .with(constraint!(a + 2 <= b)) .with(constraint!(1 + a >= 4 - b)) .solve()?; println!("a={} b={}", solution.value(a), solution.value(b)); println!("a + b = {}", solution.eval(a + b)); } ```
3 * x + y
, but not 3 * x * y
.Pull requests are welcome ! If you need any of the features mentioned above, get in touch. Also, do not hesitate to open issues to discuss the implementation.
If you need non-linear programming or integer variables, you can use lp-modeler. However, it is currently very slow with large problems.
You can also directly use the underlying solver libraries, such as coin_cbc or minilp if you don't need a way to express your objective function and constraints using an idiomatic rust syntax.
You can find a resource allocation problem example in
resource_allocation_problem.rs
.
This library offers an abstraction over multiple solvers. By default, it uses cbc, but you can also activate other solvers using cargo features.
| solver feature name | integer variables | no C compiler*| no additional libs** | fast |
|---------------------|---------------|-------------------|------------------------|------|
| coin_cbc
| ✅ | ✅ | ❌ | ✅
| highs
| ❌ | ❌ | ✅ | ✅
| lpsolve
| ✅ | ❌ | ✅ | ❌
| minilp
| ❌ | ✅ | ✅ | ❌
To use an alternative solver, put the following in your Cargo.toml
:
toml
good_lp = { version = "*", features = ["your solver feature name"], default-features = false }
Used by default, performant, but requires to have the cbc C library headers available on the build machine, and the cbc dynamic library available on any machine where you want to run your program.
In ubuntu, you can install it with:
bash
sudo apt-get install coinor-cbc coinor-libcbc-dev
In MacOS, using homebrew :
bash
brew install cbc
minilp is a pure rust solver, which means it works out of the box without installing anything else.
Minilp is written in pure rust, and performs poorly when compiled in debug mode. Be sure to compile your code
in --release
mode when solving large problems.
lp_solve is a free (LGPL) linear (integer) programming solver written in C and based on the revised simplex method.
good_lp uses the lpsolve crate to call lpsolve. You will need a C compiler, but you won't have to install any additional library.
HiGHS is a free (MIT) parallel linear programming solver written in C++. It currently doesn't support integer variables. It is able to use OpenMP to fully leverage all the available processor cores to solve a problem.
good_lp uses the highs crate to call HiGHS. You will need a C compiler, but you shouldn't have to install any additional library on linux (it depends only on OpenMP and the C++ standard library). More information in the highs-sys crate.
This library is published under the MIT license. The solver themselves have various licenses, please refer to their individual documentation.