This is a demonstration of how gradients could be calculated using reverse-mode automatic differentiation.
let t = Tape::new();
let x = t.var(0.5);
let y = t.var(4.2);
let z = x * y + x.sin();
let grad = z.grad();
println!("z = {}", z.value()); // z = 2.579425538604203
println!("∂z/∂x = {}", grad.wrt(x)); // ∂z/∂x = 5.077582561890373
println!("∂z/∂y = {}", grad.wrt(y)); // ∂z/∂y = 0.5
This library is an experiment/demonstration/prototype and is therefore woefully incomplete. Feel free to use its ideas to build an actual AD library!
Add this to your Cargo.toml
:
[dependencies]
revad = { git = "https://github.com/Rufflewind/revad" }
and add this line to the root module of your crate:
extern crate revad;