Esempio n. 1
0
def test_too_few_points_for_polyfit_warning():
    """Test that the correct warning is raised if data is not enough to fit."""
    fac = PolyFactory(X_VALS, order=2)
    fac._instack = [
        {
            "scale_factor": 1.0,
            "shots": 100
        },
        {
            "scale_factor": 2.0,
            "shots": 100
        },
    ]
    fac._outstack = [1.0, 2.0]
    with warns(
            ExtrapolationWarning,
            match=r"The extrapolation fit may be ill-conditioned.",
    ):
        fac.reduce()
    # test also the static "extrapolate" method.
    with warns(
            ExtrapolationWarning,
            match=r"The extrapolation fit may be ill-conditioned.",
    ):
        PolyFactory.extrapolate([1.0, 2.0], [1.0, 2.0], order=2)
Esempio n. 2
0
def test_poly_extr():
    """Test of polynomial extrapolator."""
    # test (order=1)
    fac = PolyFactory(X_VALS, order=1)
    fac.run_classical(f_lin)
    assert np.isclose(fac.reduce(), f_lin(0, err=0), atol=CLOSE_TOL)
    # test that, for some non-linear functions,
    # order=1 is bad while order=2 is better.
    seeded_f = apply_seed_to_func(f_non_lin, SEED)
    fac = PolyFactory(X_VALS, order=1)
    fac.run_classical(seeded_f)
    assert not np.isclose(fac.reduce(), seeded_f(0, err=0), atol=NOT_CLOSE_TOL)
    seeded_f = apply_seed_to_func(f_non_lin, SEED)
    fac = PolyFactory(X_VALS, order=2)
    fac.run_classical(seeded_f)
    assert np.isclose(fac.reduce(), seeded_f(0, err=0), atol=CLOSE_TOL)
Esempio n. 3
0
def test_too_few_points_for_polyfit_error():
    """Test that the correct error is raised if data is not enough to fit."""
    fac = PolyFactory(X_VALS, order=2)
    fac._instack = [
        {
            "scale_factor": 1.0,
            "shots": 100
        },
        {
            "scale_factor": 2.0,
            "shots": 100
        },
    ]
    fac._outstack = [1.0, 2.0]
    with raises(ValueError, match=r"Extrapolation order is too high."):
        fac.reduce()
Esempio n. 4
0
def test_opt_params_poly_factory(order):
    """Tests that optimal parameters are stored after calling the reduce method.
    """
    fac = PolyFactory(scale_factors=np.linspace(1, 10, 10), order=order)
    assert fac.opt_params == []
    fac.iterate(apply_seed_to_func(f_non_lin, seed=SEED))
    zne_value = fac.reduce()
    assert len(fac.opt_params) == order + 1
    assert np.isclose(fac.opt_params[-1], zne_value)
Esempio n. 5
0
def test_poly_extr():
    """Test of polynomial extrapolator."""
    # test (order=1)
    fac = PolyFactory(X_VALS, order=1)
    fac.run_classical(f_lin)
    assert np.isclose(fac.reduce(), f_lin(0, err=0), atol=CLOSE_TOL)
    # test that, for some non-linear functions,
    # order=1 is bad while order=2 is better.
    seeded_f = apply_seed_to_func(f_non_lin, SEED)
    fac = PolyFactory(X_VALS, order=1)
    fac.run_classical(seeded_f)
    assert not np.isclose(fac.reduce(), seeded_f(0, err=0), atol=NOT_CLOSE_TOL)
    seeded_f = apply_seed_to_func(f_non_lin, SEED)
    fac = PolyFactory(X_VALS, order=2)
    fac.run_classical(seeded_f)
    zne_value = fac.reduce()
    assert np.isclose(fac.reduce(), seeded_f(0, err=0), atol=CLOSE_TOL)
    exp_vals = fac.get_expectation_values()
    assert np.isclose(fac.extrapolate(X_VALS, exp_vals, order=2), zne_value)
    assert np.isclose(
        fac.extrapolate(X_VALS, exp_vals, order=2, full_output=True)[0],
        zne_value,
    )