use crate::error::Error;
use crate::neural_network::layers::convolution::conv_2d::Conv2D;
use crate::neural_network::traits::ApplyWeights;
use ndarray::{Array2, Array4};
use serde::{Deserialize, Serialize};
use std::borrow::Cow;
#[derive(Debug, Clone, Serialize, Deserialize)]
pub struct Conv2DLayerWeight<'a> {
pub weight: Cow<'a, Array4<f32>>,
pub bias: Cow<'a, Array2<f32>>,
}
impl ApplyWeights<Conv2D> for Conv2DLayerWeight<'_> {
fn apply_to_layer(&self, layer: &mut Conv2D) -> Result<(), Error> {
layer.set_weights((*self.weight).clone(), (*self.bias).clone())?;
Ok(())
}
}