mlx/examples/cpp/linear_regression.cpp
Cheng 4f9b60dd53
Remove "using namespace mlx::core" in benchmarks/examples (#1685)
* Remove "using namespace mlx::core" in benchmarks/examples

* Fix building example extension

* A missing one in comment

* Fix building on M chips
2024-12-11 07:08:29 -08:00

55 lines
1.4 KiB
C++

// Copyright © 2023 Apple Inc.
#include <chrono>
#include <cmath>
#include <iostream>
#include "mlx/mlx.h"
#include "timer.h"
/**
* An example of linear regression with MLX.
*/
namespace mx = mlx::core;
int main() {
int num_features = 100;
int num_examples = 1'000;
int num_iters = 10'000;
float learning_rate = 0.01;
// True parameters
auto w_star = mx::random::normal({num_features});
// The input examples (design matrix)
auto X = mx::random::normal({num_examples, num_features});
// Noisy labels
auto eps = 1e-2 * mx::random::normal({num_examples});
auto y = mx::matmul(X, w_star) + eps;
// Initialize random parameters
mx::array w = 1e-2 * mx::random::normal({num_features});
auto loss_fn = [&](mx::array w) {
auto yhat = mx::matmul(X, w);
return (0.5f / num_examples) * mx::sum(mx::square(yhat - y));
};
auto grad_fn = mx::grad(loss_fn);
auto tic = timer::time();
for (int it = 0; it < num_iters; ++it) {
auto grads = grad_fn(w);
w = w - learning_rate * grads;
mx::eval(w);
}
auto toc = timer::time();
auto loss = loss_fn(w);
auto error_norm = std::sqrt(mx::sum(mx::square(w - w_star)).item<float>());
auto throughput = num_iters / timer::seconds(toc - tic);
std::cout << "Loss " << loss << ", |w - w*| = " << error_norm
<< ", Throughput " << throughput << " (it/s)." << std::endl;
}