Beispiel #1
0
    def run_vqe(H, ansatz, params=None):
        from pennylane.optimize import NesterovMomentumOptimizer, AdamOptimizer
        num_qubits = len(H.wires)
        num_layers = 4

        if params is None:
            params = qml.init.strong_ent_layers_uniform(num_layers, num_qubits, 3)

        cost_fn = qml.ExpvalCost(ansatz, H, dev)

        stepsize = 0.1
        opt = NesterovMomentumOptimizer(stepsize)
        max_iterations = 300
        conv_tol = 1e-8

        energy = 0

        for n in range(max_iterations):
            params, prev_energy = opt.step_and_cost(cost_fn, params)
            energy = cost_fn(params)
            conv = np.abs(energy - prev_energy)

            stepsize *= 0.99
            opt.update_stepsize(stepsize)

            if DEBUG and n % 20 == 0:
                print('Iteration = {:},  Energy = {:.8f} Ha'.format(n, energy))

            if conv <= conv_tol:
                break

        return energy, params
Beispiel #2
0
    def run_vqe_excited2(H, ansatz, gs_params, fes_params, params=None):
        from pennylane.optimize import NesterovMomentumOptimizer, AdamOptimizer
        num_qubits = len(H.wires)
        num_layers = 4

        if params is None:
            params = qml.init.strong_ent_layers_uniform(num_layers, num_qubits, 3)

        @qml.qnode(dev)
        def overlap(params, wires):
            variational_ansatz(gs_params, wires)
            qml.inv(qml.template(variational_ansatz)(params, wires))
            return qml.probs([0, 1, 2])

        @qml.qnode(dev)
        def overlap2(params, wires):
            variational_ansatz(fes_params, wires)
            qml.inv(qml.template(variational_ansatz)(params, wires))
            return qml.probs([0, 1, 2])

        def cost_fn(params, **kwargs):
            h_cost = qml.ExpvalCost(ansatz, H, dev)
            h = h_cost(params, **kwargs)
            o = overlap(params, wires=H.wires)
            o2 = overlap2(params, wires=H.wires)
            return h + 1.5 * o[0] + o2[0]

        stepsize = 0.3
        opt = NesterovMomentumOptimizer(stepsize)
        max_iterations = 300
        conv_tol = 1e-8

        energy = 0

        for n in range(max_iterations):
            params, prev_energy = opt.step_and_cost(cost_fn, params)
            energy = cost_fn(params)
            conv = np.abs(energy - prev_energy)

            stepsize *= 0.99
            opt.update_stepsize(stepsize)

            if DEBUG and n % 20 == 0:
                print('Iteration = {:},  Energy = {:.8f} Ha'.format(n, energy))

            if conv <= conv_tol:
                break

        return energy, params
    def test_step_and_cost_autograd_nesterov_multid_array(self):
        """Test that the correct cost is returned via the step_and_cost method for the
        Nesterov momentum optimizer"""
        stepsize, gamma = 0.1, 0.5
        nesmom_opt = NesterovMomentumOptimizer(stepsize, momentum=gamma)
        multid_array = np.array([[0.1, 0.2], [-0.1, -0.4]])

        @qml.qnode(qml.device("default.qubit", wires=1))
        def quant_fun_mdarr(var):
            qml.RX(var[0, 1], wires=[0])
            qml.RY(var[1, 0], wires=[0])
            qml.RY(var[1, 1], wires=[0])
            return qml.expval(qml.PauliZ(0))

        _, res = nesmom_opt.step_and_cost(quant_fun_mdarr, multid_array)
        expected = quant_fun_mdarr(multid_array)

        assert np.all(res == expected)
    def test_step_and_cost_autograd_nesterov_multiple_inputs(self):
        """Test that the correct cost is returned via the step_and_cost method for the
        Nesterov momentum optimizer"""
        stepsize, gamma = 0.1, 0.5
        nesmom_opt = NesterovMomentumOptimizer(stepsize, momentum=gamma)

        @qml.qnode(qml.device("default.qubit", wires=1))
        def quant_fun(*variables):
            qml.RX(variables[0][1], wires=[0])
            qml.RY(variables[1][2], wires=[0])
            qml.RY(variables[2], wires=[0])
            return qml.expval(qml.PauliZ(0))

        inputs = [
            np.array((0.2, 0.3), requires_grad=True),
            np.array([0.4, 0.2, 0.4], requires_grad=True),
            np.array(0.1, requires_grad=True),
        ]

        _, res = nesmom_opt.step_and_cost(quant_fun, *inputs)
        expected = quant_fun(*inputs)

        assert np.all(res == expected)