Beispiel #1
0
def test_integration_median_relative_absolute_error_with_output_transform():

    np.random.seed(1)
    size = 105
    np_y_pred = np.random.rand(size, 1)
    np_y = np.random.rand(size, 1)
    np.random.shuffle(np_y)
    np_median_absolute_relative_error = np.median(
        np.abs(np_y - np_y_pred) / np.abs(np_y - np_y.mean()))

    batch_size = 15

    def update_fn(engine, batch):
        idx = (engine.state.iteration - 1) * batch_size
        y_true_batch = np_y[idx:idx + batch_size]
        y_pred_batch = np_y_pred[idx:idx + batch_size]
        return torch.from_numpy(y_pred_batch), torch.from_numpy(y_true_batch)

    engine = Engine(update_fn)

    m = MedianRelativeAbsoluteError()
    m.attach(engine, "median_absolute_relative_error")

    data = list(range(size // batch_size))
    median_absolute_relative_error = engine.run(
        data, max_epochs=1).metrics["median_absolute_relative_error"]

    assert np_median_absolute_relative_error == pytest.approx(
        median_absolute_relative_error)
Beispiel #2
0
    def _test(n_epochs, metric_device):
        metric_device = torch.device(metric_device)
        n_iters = 80
        size = 151
        y_true = torch.rand(size=(size, )).to(device)
        y_preds = torch.rand(size=(size, )).to(device)

        def update(engine, i):
            return (
                y_preds[i * size:(i + 1) * size],
                y_true[i * size:(i + 1) * size],
            )

        engine = Engine(update)

        m = MedianRelativeAbsoluteError(device=metric_device)
        m.attach(engine, "mare")

        data = list(range(n_iters))
        engine.run(data=data, max_epochs=n_epochs)

        assert "mare" in engine.state.metrics

        res = engine.state.metrics["mare"]

        np_y_true = y_true.cpu().numpy().ravel()
        np_y_preds = y_preds.cpu().numpy().ravel()

        e = np.abs(np_y_true - np_y_preds) / np.abs(np_y_true -
                                                    np_y_true.mean())
        np_res = np.median(e)

        assert pytest.approx(res) == np_res