use numr::error::Result;
use numr::runtime::wgpu::WgpuRuntime;
use numr::tensor::Tensor;
use crate::optimize::global::GlobalOptions;
use crate::optimize::global::impl_generic::simulated_annealing::simulated_annealing_impl;
use crate::optimize::global::traits::SimulatedAnnealingAlgorithms;
use crate::optimize::global::traits::simulated_annealing::SimulatedAnnealingResult;
use numr::runtime::wgpu::WgpuClient;
impl SimulatedAnnealingAlgorithms<WgpuRuntime> for WgpuClient {
fn simulated_annealing<F>(
&self,
f: F,
lower_bounds: &Tensor<WgpuRuntime>,
upper_bounds: &Tensor<WgpuRuntime>,
options: &GlobalOptions,
) -> Result<SimulatedAnnealingResult<WgpuRuntime>>
where
F: Fn(&Tensor<WgpuRuntime>) -> Result<f64>,
{
let result = simulated_annealing_impl(self, f, lower_bounds, upper_bounds, options)
.map_err(|e| {
numr::error::Error::backend_limitation("wgpu", "simulated_annealing", e.to_string())
})?;
Ok(SimulatedAnnealingResult {
x: result.x,
fun: result.fun,
iterations: result.iterations,
nfev: result.nfev,
converged: result.converged,
})
}
}