Exemple #1
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 def test_cplex_ising_direct(self):
     algo = get_algorithm_instance('CPLEX.Ising')
     algo.init_args(self.algo_input.qubit_op, display=0)
     result = algo.run()
     self.assertEqual(result['energy'], -20.5)
     x_dict = result['x_sol']
     x = np.array([x_dict[i] for i in sorted(x_dict.keys())])
     np.testing.assert_array_equal(maxcut.get_graph_solution(x),
                                   [1, 0, 1, 1])
     self.assertEqual(maxcut.maxcut_value(x, self.w), 24)
 def test_cplex_ising_direct(self):
     try:
         algo = CPLEX_Ising(self.algo_input.qubit_op, display=0)
         result = algo.run()
         self.assertEqual(result['energy'], -20.5)
         x_dict = result['x_sol']
         x = np.array([x_dict[i] for i in sorted(x_dict.keys())])
         np.testing.assert_array_equal(maxcut.get_graph_solution(x),
                                       [1, 0, 1, 1])
         self.assertEqual(maxcut.maxcut_value(x, self.w), 24)
     except AquaError as e:
         self.skipTest(str(e))
Exemple #3
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 def test_cplex_ising_via_run_algorithm(self):
     params = {
         'problem': {
             'name': 'ising'
         },
         'algorithm': {
             'name': 'CPLEX.Ising',
             'display': 0
         }
     }
     result = run_algorithm(params, self.algo_input)
     self.assertEqual(result['energy'], -20.5)
     x_dict = result['x_sol']
     x = np.array([x_dict[i] for i in sorted(x_dict.keys())])
     np.testing.assert_array_equal(maxcut.get_graph_solution(x),
                                   [1, 0, 1, 1])
     self.assertEqual(maxcut.maxcut_value(x, self.w), 24)
Exemple #4
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    def test_qaoa(self, w, p, solutions):
        self.log.debug('Testing {}-step QAOA with MaxCut on graph\n{}'.format(
            p, w))
        np.random.seed(0)
        optimizer = get_optimizer_instance('COBYLA')
        qubitOp, offset = maxcut.get_maxcut_qubitops(w)
        qaoa = get_algorithm_instance('QAOA.Variational')
        qaoa.setup_quantum_backend(backend='statevector_simulator', shots=100)
        qaoa.init_args(qubitOp, 'matrix', p, optimizer)

        result = qaoa.run()
        x = maxcut.sample_most_likely(result['eigvecs'][0])
        graph_solution = maxcut.get_graph_solution(x)
        self.log.debug('energy:             {}'.format(result['energy']))
        self.log.debug('time:               {}'.format(result['eval_time']))
        self.log.debug('maxcut objective:   {}'.format(result['energy'] +
                                                       offset))
        self.log.debug('solution:           {}'.format(graph_solution))
        self.log.debug('solution objective: {}'.format(
            maxcut.maxcut_value(x, w)))
        self.assertIn(''.join([str(int(i)) for i in graph_solution]),
                      solutions)
Exemple #5
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    def test_qaoa(self, w, p, solutions):
        self.log.debug('Testing {}-step QAOA with MaxCut on graph\n{}'.format(
            p, w))
        np.random.seed(0)

        backend = Aer.get_backend('statevector_simulator')
        optimizer = COBYLA()
        qubitOp, offset = maxcut.get_maxcut_qubitops(w)

        qaoa = QAOA(qubitOp, optimizer, p, operator_mode='matrix')
        quantum_instance = QuantumInstance(backend)

        result = qaoa.run(quantum_instance)
        x = maxcut.sample_most_likely(result['eigvecs'][0])
        graph_solution = maxcut.get_graph_solution(x)
        self.log.debug('energy:             {}'.format(result['energy']))
        self.log.debug('time:               {}'.format(result['eval_time']))
        self.log.debug('maxcut objective:   {}'.format(result['energy'] +
                                                       offset))
        self.log.debug('solution:           {}'.format(graph_solution))
        self.log.debug('solution objective: {}'.format(
            maxcut.maxcut_value(x, w)))
        self.assertIn(''.join([str(int(i)) for i in graph_solution]),
                      solutions)