use crate::cluster::impl_generic::mean_shift_impl;
use crate::cluster::traits::mean_shift::{MeanShiftAlgorithms, MeanShiftOptions, MeanShiftResult};
use numr::error::Result;
use numr::runtime::cpu::{CpuClient, CpuRuntime};
use numr::tensor::Tensor;
impl MeanShiftAlgorithms<CpuRuntime> for CpuClient {
fn mean_shift(
&self,
data: &Tensor<CpuRuntime>,
options: &MeanShiftOptions,
) -> Result<MeanShiftResult<CpuRuntime>> {
mean_shift_impl(self, data, options)
}
}
#[cfg(test)]
mod tests {
use super::*;
use numr::runtime::cpu::CpuDevice;
fn setup() -> (CpuClient, CpuDevice) {
let device = CpuDevice::new();
let client = CpuClient::new(device.clone());
(client, device)
}
#[test]
fn test_mean_shift_basic() {
let (client, device) = setup();
#[rustfmt::skip]
let data = Tensor::<CpuRuntime>::from_slice(
&[
0.0, 0.0,
0.1, 0.1,
0.2, 0.0,
0.0, 0.2,
10.0, 10.0,
10.1, 10.1,
10.2, 10.0,
10.0, 10.2,
],
&[8, 2],
&device,
);
let options = MeanShiftOptions {
bandwidth: Some(2.0),
..Default::default()
};
let result = client.mean_shift(&data, &options).unwrap();
assert_eq!(result.labels.shape(), &[8]);
assert!(result.cluster_centers.shape()[0] >= 1);
assert_eq!(result.cluster_centers.shape()[1], 2);
}
}