use super::*; use burn_tensor::TensorData; use burn_tensor::Tolerance; #[test] fn should_diff_log1p() { let tensor_1 = TestAutodiffTensor::<2>::from([[0.0, 1.0], [3.0, 4.0]]).require_grad(); let tensor_2 = TestAutodiffTensor::from([[6.0, 7.0], [9.0, 10.0]]).require_grad(); let tensor_3 = tensor_1.clone().matmul(tensor_2.clone().log1p()); let tensor_4 = tensor_3.matmul(tensor_2.clone()); let grads = tensor_4.backward(); let grad_1 = tensor_1.grad(&grads).unwrap(); let grad_2 = tensor_2.grad(&grads).unwrap(); let tolerance = Tolerance::default().set_half_precision_relative(1e-3); let expected = TensorData::from([[64.80622101, 75.49362183], [64.80622101, 75.49362183]]); grad_1 .to_data() .assert_approx_eq::(&expected, tolerance); let expected = TensorData::from([[22.92208481, 24.47565651], [24.72780228, 26.86416626]]); grad_2 .to_data() .assert_approx_eq::(&expected, tolerance); }