Neural Network

Started on implementing neural network from NNFS. I've done ReLU and stopped at p.104. Softmax is not ready.
This commit is contained in:
2025-10-03 20:54:37 +02:00
parent a86410fda7
commit 88227a38fc
19 changed files with 626 additions and 15 deletions
@@ -0,0 +1,28 @@
#pragma once
#include "./core/omp_config.h"
#include "./utils/vector.h"
#include "./utils/matrix.h"
#include "./utils/random.h"
namespace neural_networks{
template <typename T>
struct activation_ReLU{
utils::Matrix<T> outputs;
void forward(utils::Matrix<T> inputs){
outputs = numerics::max(inputs, T{0});
//outputs.print();
}
};
} // end namespace neural_networks
@@ -0,0 +1,28 @@
#pragma once
#include "./core/omp_config.h"
#include "./utils/vector.h"
#include "./utils/matrix.h"
#include "./utils/random.h"
namespace neural_networks{
template <typename T>
struct activation_softmax{
utils::Matrix<T> outputs;
void forward(utils::Matrix<T> inputs){
//outputs = numerics::max(inputs, T{0});
//outputs.print();
}
};
} // end namespace neural_networks
@@ -0,0 +1,61 @@
#pragma once
#include "./core/omp_config.h"
#include "./utils/matrix.h"
#include "./utils/vector.h"
#include "./utils/random.h"
//#include <math.h>
namespace neural_networks{
template <typename T>
void create_spital_data(const uint64_t samples, const uint64_t classes, utils::Matrix<T>& X, utils::Vector<T>& y) {
const uint64_t rows = samples*classes;
T r, t;
uint64_t row_idx;
if ((rows != X.rows()) || (X.cols() != 2)){
X.resize(samples*classes, 2);
}
if (rows != y.size()){
y.resize(rows);
}
for (uint64_t i = 0; i < classes; ++i){
for (uint64_t j = 0; j < samples; ++j){
r = static_cast<T>(j)/static_cast<T>(samples);
t = static_cast<T>(i)*4.0 + (4.0+r);
row_idx = (i*samples) + j;
X(row_idx, 0) = r*std::cos(t*2.5) + utils::random(T{-0.15}, T{0.15});
X(row_idx, 1) = r*std::sin(t*2.5) + utils::random(T{-0.15}, T{0.15});
y[row_idx] = i;
}
}
/*
utils::Matrix<T> X(static_cast<uint64_t>(samples*classes), 3, T{0});
const uint64_t rows = A.rows();
const uint64_t cols = A.cols();
if (rows != x.size()) {
throw std::runtime_error("inplace_matadd_colvec: dimension mismatch");
}
for (uint64_t i = 0; i < cols; ++i) {
for (uint64_t j = 0; j < rows; ++j) {
A(j, i) += x[j];
}
}*/
}
} // end namesoace NN
@@ -0,0 +1,42 @@
#pragma once
#include "./core/omp_config.h"
#include "./utils/vector.h"
#include "./utils/matrix.h"
#include "./utils/random.h"
namespace neural_networks{
template <typename T>
struct dense_layer{
utils::Matrix<T> weights;
utils::Vector<T> biases;
utils::Matrix<T> outputs;
// Default Constructor
dense_layer() = default;
// Constructor
dense_layer(const uint64_t n_inputs, const uint64_t n_neurons){
weights.random(n_inputs, n_neurons, -1, 1);
biases.resize(n_neurons, T{0});
weights.print();
//outputs.resize()
}
void forward(utils::Matrix<T> inputs){
outputs = numerics::matadd(numerics::matmul_auto(inputs, (weights)), biases, "row");
}
};
} // end namespace neural_networks
@@ -0,0 +1,9 @@
// #include "./modules/neural_networks/neural_networks.h"
#pragma once
#include "datasets/spiral.h"
#include "layers/dense_layer.h"
#include "activation_functions/ReLU.h"