Esempio n. 1
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def test_hamiltonian_eigenvectors(dtype, numpy, trotter):
    """Testing hamiltonian eigenvectors scaling."""
    H1 = XXZ(nqubits=2, delta=0.5, numpy=numpy, trotter=trotter)

    V1 = np.array(H1.eigenvectors())
    U1 = np.array(H1.eigenvalues())
    np.testing.assert_allclose(H1.matrix, V1 @ np.diag(U1) @ V1.T)
    # Check ground state
    np.testing.assert_allclose(H1.ground_state(), V1[:, 0])

    c1 = dtype(2.5)
    H2 = c1 * H1
    V2 = np.array(H2._eigenvectors)
    U2 = np.array(H2._eigenvalues)
    np.testing.assert_allclose(H2.matrix, V2 @ np.diag(U2) @ V2.T)

    c2 = dtype(-11.1)
    H3 = H1 * c2
    V3 = np.array(H3.eigenvectors())
    U3 = np.array(H3._eigenvalues)
    np.testing.assert_allclose(H3.matrix, V3 @ np.diag(U3) @ V3.T)

    c3 = dtype(0)
    H4 = c3 * H1
    V4 = np.array(H4._eigenvectors)
    U4 = np.array(H4._eigenvalues)
    np.testing.assert_allclose(H4.matrix, V4 @ np.diag(U4) @ V4.T)
Esempio n. 2
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def test_hamiltonian_runtime_errors(numpy):
    """Testing hamiltonian runtime errors."""
    H1 = XXZ(nqubits=2, delta=0.5, numpy=numpy)
    H2 = XXZ(nqubits=3, delta=0.1, numpy=numpy)

    with pytest.raises(RuntimeError):
        R = H1 + H2
    with pytest.raises(RuntimeError):
        R = H1 - H2
Esempio n. 3
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def test_hamiltonian_expectation(numpy, trotter):
    h = XXZ(nqubits=3, delta=0.5, numpy=numpy, trotter=trotter)
    matrix = np.array(h.matrix)

    state = utils.random_numpy_complex(8)
    norm = (np.abs(state)**2).sum()
    target_ev = (state.conj() * matrix.dot(state)).sum().real

    np.testing.assert_allclose(h.expectation(state), target_ev)
    np.testing.assert_allclose(h.expectation(state, True), target_ev / norm)
Esempio n. 4
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def test_hamiltonian_notimplemented_errors(numpy):
    """Testing hamiltonian not implemented errors."""
    H1 = XXZ(nqubits=2, delta=0.5, numpy=numpy)
    H2 = XXZ(nqubits=2, delta=0.1, numpy=numpy)

    with pytest.raises(NotImplementedError):
        R = H1 * H2
    with pytest.raises(NotImplementedError):
        R = H1 + "a"
    with pytest.raises(NotImplementedError):
        R = H2 - (2, )
    with pytest.raises(NotImplementedError):
        R = [3] - H1
Esempio n. 5
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def test_hamiltonian_expectation(numpy, trotter, density_matrix):
    h = XXZ(nqubits=3, delta=0.5, numpy=numpy, trotter=trotter)
    matrix = np.array(h.matrix)

    if density_matrix:
        state = utils.random_numpy_complex((8, 8))
        state = state + state.T.conj()
        norm = np.trace(state)
        target_ev = np.trace(matrix.dot(state)).real
    else:
        state = utils.random_numpy_complex(8)
        norm = np.sum(np.abs(state)**2)
        target_ev = np.sum(state.conj() * matrix.dot(state)).real

    np.testing.assert_allclose(h.expectation(state), target_ev)
    np.testing.assert_allclose(h.expectation(state, True), target_ev / norm)
Esempio n. 6
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def test_vqe_custom_gates_errors():
    """Check that ``RuntimeError``s is raised when using custom gates."""
    import qibo
    original_backend = qibo.get_backend()
    qibo.set_backend("custom")

    nqubits = 6
    circuit = Circuit(nqubits)
    for q in range(nqubits):
        circuit.add(gates.RY(q, theta=0))
    for q in range(0, nqubits - 1, 2):
        circuit.add(gates.CZ(q, q + 1))

    hamiltonian = XXZ(nqubits=nqubits)
    initial_parameters = np.random.uniform(0, 2 * np.pi, 2 * nqubits + nqubits)
    v = VQE(circuit, hamiltonian)
    # compile with custom gates
    with pytest.raises(RuntimeError):
        best, params = v.minimize(initial_parameters,
                                  method="BFGS",
                                  options={'maxiter': 1},
                                  compile=True)
    # use SGD with custom gates
    with pytest.raises(RuntimeError):
        best, params = v.minimize(initial_parameters,
                                  method="sgd",
                                  compile=False)
    qibo.set_backend(original_backend)
Esempio n. 7
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def test_hamiltonian_eigenvalues(dtype, numpy, trotter):
    """Testing hamiltonian eigenvalues scaling."""
    H1 = XXZ(nqubits=2, delta=0.5, numpy=numpy, trotter=trotter)

    H1_eigen = H1.eigenvalues()
    hH1_eigen = np.linalg.eigvalsh(H1.matrix)
    np.testing.assert_allclose(H1_eigen, hH1_eigen)

    c1 = dtype(2.5)
    H2 = c1 * H1
    hH2_eigen = np.linalg.eigvalsh(c1 * H1.matrix)
    np.testing.assert_allclose(H2._eigenvalues, hH2_eigen)

    c2 = dtype(-11.1)
    H3 = H1 * c2
    hH3_eigen = np.linalg.eigvalsh(H1.matrix * c2)
    np.testing.assert_allclose(H3._eigenvalues, hH3_eigen)
Esempio n. 8
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def test_hamiltonian_overloading(dtype, numpy):
    """Test basic hamiltonian overloading."""
    def transformation_a(a, b):
        c1 = dtype(0.1)
        return a + c1 * b

    def transformation_b(a, b):
        c1 = dtype(2)
        c2 = dtype(3.5)
        return c1 * a - b * c2

    def transformation_c(a, b, use_eye=False):
        c1 = dtype(4.5)
        if use_eye:
            return a + c1 * np.eye(a.shape[0]) - b
        else:
            return a + c1 - b

    def transformation_d(a, b, use_eye=False):
        c1 = dtype(10.5)
        c2 = dtype(2)
        if use_eye:
            return c1 * np.eye(a.shape[0]) - a + c2 * b
        else:
            return c1 - a + c2 * b

    H1 = XXZ(nqubits=2, delta=0.5, numpy=numpy)
    H2 = XXZ(nqubits=2, delta=1, numpy=numpy)

    hH1 = transformation_a(H1.matrix, H2.matrix)
    hH2 = transformation_b(H1.matrix, H2.matrix)
    hH3 = transformation_c(H1.matrix, H2.matrix, use_eye=True)
    hH4 = transformation_d(H1.matrix, H2.matrix, use_eye=True)

    HT1 = transformation_a(H1, H2)
    HT2 = transformation_b(H1, H2)
    HT3 = transformation_c(H1, H2)
    HT4 = transformation_d(H1, H2)

    np.testing.assert_allclose(hH1, HT1.matrix)
    np.testing.assert_allclose(hH2, HT2.matrix)
    np.testing.assert_allclose(hH3, HT3.matrix)
    np.testing.assert_allclose(hH4, HT4.matrix)
Esempio n. 9
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def test_hamiltonian_exponentiation(numpy, trotter):
    from scipy.linalg import expm
    H = XXZ(nqubits=2, delta=0.5, numpy=numpy, trotter=trotter)
    target_matrix = expm(-0.5j * np.array(H.matrix))
    np.testing.assert_allclose(H.exp(0.5), target_matrix)

    H = XXZ(nqubits=2, delta=0.5, numpy=numpy, trotter=trotter)
    _ = H.eigenvectors()
    np.testing.assert_allclose(H.exp(0.5), target_matrix)
Esempio n. 10
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def test_trotter_hamiltonian_make_compatible(nqubits):
    """Test that ``make_compatible`` method works for ``X`` Hamiltonian."""
    h0target = X(nqubits)
    h0 = X(nqubits, trotter=True)
    h1 = XXZ(nqubits, delta=0.5, trotter=True)
    assert not h1.is_compatible(h0)
    assert not h0.is_compatible(h1)
    np.testing.assert_allclose(h0.matrix, h0target.matrix)

    h0c = h1.make_compatible(h0)
    assert not h1.is_compatible(h0)
    assert h1.is_compatible(h0c)
    assert h0c.is_compatible(h1)
    np.testing.assert_allclose(h0.matrix, h0target.matrix)
    np.testing.assert_allclose(h0c.matrix, h0target.matrix)
    # for coverage
    h0c = h1.make_compatible(h0c)
    assert not h1.is_compatible("test")
    h2 = XXZ(nqubits, delta=0.5, trotter=True)
    h2.parts[0].pop((0, 1))
    assert not h1.is_compatible(h2)
Esempio n. 11
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def test_vector_state_expectation(backend, dense):
    from qibo.hamiltonians import XXZ
    ham = XXZ(nqubits=5, delta=0.5, dense=dense)
    matrix = K.to_numpy(ham.matrix)

    state = np.random.random(32) + 1j * np.random.random(32)
    norm = np.sum(np.abs(state)**2)
    target_ev = np.sum(state.conj() * matrix.dot(state)).real
    state = states.VectorState.from_tensor(state)

    K.assert_allclose(state.expectation(ham), target_ev)
    K.assert_allclose(state.expectation(ham, True), target_ev / norm)
Esempio n. 12
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def test_hamiltonian_expectation_errors():
    h = XXZ(nqubits=3, delta=0.5)
    state = utils.random_numpy_complex((4, 4, 4))
    with pytest.raises(ValueError):
        h.expectation(state)
    with pytest.raises(TypeError):
        h.expectation("test")
Esempio n. 13
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def test_vqe(method, options, compile, filename):
    """Performs a VQE circuit minimization test."""
    import qibo
    original_backend = qibo.get_backend()
    if method == "sgd" or compile:
        qibo.set_backend("matmuleinsum")
    else:
        qibo.set_backend("custom")

    original_threads = get_threads()
    if method == 'parallel_L-BFGS-B':
        if 'GPU' in qibo.get_device():  # pragma: no cover
            pytest.skip("unsupported configuration")
        qibo.set_threads(1)

    nqubits = 6
    layers = 4

    circuit = Circuit(nqubits)
    for l in range(layers):
        for q in range(nqubits):
            circuit.add(gates.RY(q, theta=1.0))
        for q in range(0, nqubits - 1, 2):
            circuit.add(gates.CZ(q, q + 1))
        for q in range(nqubits):
            circuit.add(gates.RY(q, theta=1.0))
        for q in range(1, nqubits - 2, 2):
            circuit.add(gates.CZ(q, q + 1))
        circuit.add(gates.CZ(0, nqubits - 1))
    for q in range(nqubits):
        circuit.add(gates.RY(q, theta=1.0))

    hamiltonian = XXZ(nqubits=nqubits)
    np.random.seed(0)
    initial_parameters = np.random.uniform(0, 2 * np.pi,
                                           2 * nqubits * layers + nqubits)
    v = VQE(circuit, hamiltonian)
    best, params = v.minimize(initial_parameters,
                              method=method,
                              options=options,
                              compile=compile)
    if method == "cma":
        # remove `outcmaes` folder
        import shutil
        shutil.rmtree("outcmaes")
    if filename is not None:
        utils.assert_regression_fixture(params, filename)
    qibo.set_backend(original_backend)
    qibo.set_threads(original_threads)
Esempio n. 14
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def test_vector_state_expectation(backend, trotter):
    original_backend = qibo.get_backend()
    qibo.set_backend(backend)
    from qibo.hamiltonians import XXZ
    ham = XXZ(nqubits=5, delta=0.5, trotter=trotter)
    matrix = np.array(ham.matrix)

    state = np.random.random(32) + 1j * np.random.random(32)
    norm = np.sum(np.abs(state)**2)
    target_ev = np.sum(state.conj() * matrix.dot(state)).real
    state = states.VectorState.from_tensor(state)

    np.testing.assert_allclose(state.expectation(ham), target_ev)
    np.testing.assert_allclose(state.expectation(ham, True), target_ev / norm)
    qibo.set_backend(original_backend)