Пример #1
0
    def __init__(self, configuration=None):
        self._configuration = configuration
        if 'problems' not in configuration or len(
                configuration['problems']) <= 0:
            raise AlgorithmError(
                'Algorithm Input missing or empty configuration problems')

        for problem in configuration['problems']:
            if problem not in AlgorithmInput._PROBLEM_SET:
                raise AlgorithmError(
                    'Problem {} not in known problem set {}'.format(
                        problem, AlgorithmInput._PROBLEM_SET))
Пример #2
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance

        Args:
            params (dict): parameters dictionary
            algo_input (EnergyInput): EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        operator = algo_input.qubit_op

        qaoa_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        operator_mode = qaoa_params.get(QAOA.PROP_OPERATOR_MODE)
        p = qaoa_params.get(QAOA.PROP_P)
        initial_point = qaoa_params.get(QAOA.PROP_INIT_POINT)

        # Set up optimizer
        opt_params = params.get(QuantumAlgorithm.SECTION_KEY_OPTIMIZER)
        optimizer = get_optimizer_instance(opt_params['name'])
        optimizer.init_params(opt_params)

        if 'statevector' not in self._backend and operator_mode == 'matrix':
            logger.debug('Qasm simulation does not work on {} mode, changing \
                            the operator_mode to paulis'.format(operator_mode))
            operator_mode = 'paulis'

        self.init_args(operator,
                       operator_mode,
                       p,
                       optimizer,
                       opt_init_point=initial_point,
                       aux_operators=algo_input.aux_ops)
Пример #3
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        operator = algo_input.qubit_op

        iqpe_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        num_time_slices = iqpe_params.get(IQPE.PROP_NUM_TIME_SLICES)
        paulis_grouping = iqpe_params.get(IQPE.PROP_PAULIS_GROUPING)
        expansion_mode = iqpe_params.get(IQPE.PROP_EXPANSION_MODE)
        expansion_order = iqpe_params.get(IQPE.PROP_EXPANSION_ORDER)
        num_iterations = iqpe_params.get(IQPE.PROP_NUM_ITERATIONS)

        # Set up initial state, we need to add computed num qubits to params
        init_state_params = params.get(
            QuantumAlgorithm.SECTION_KEY_INITIAL_STATE)
        init_state_params['num_qubits'] = operator.num_qubits
        init_state = get_initial_state_instance(init_state_params['name'])
        init_state.init_params(init_state_params)

        self.init_args(operator,
                       init_state,
                       num_time_slices,
                       num_iterations,
                       paulis_grouping=paulis_grouping,
                       expansion_mode=expansion_mode,
                       expansion_order=expansion_order)
Пример #4
0
 def set_default_properties_for_name(self,section_name):
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     name = self._parser.get_section_property(section_name,InputParser.NAME)
     self._parser.delete_section_properties(section_name)
     value = self._parser.get_section_default_properties(section_name)
     if name is not None:
         self._parser.set_section_property(section_name,InputParser.NAME,name)
     if isinstance(value,dict):
         for property_name,property_value in value.items():
             if property_name != InputParser.NAME:
                 self._parser.set_section_property(section_name,property_name,property_value)
     else:
         if value is None:
             types = self._parser.get_section_types(section_name)
             if 'null' not in types:
                 if 'string' in types:
                     value = ''
                 elif 'object' in types:
                     value = {}
                 elif 'array' in types:
                     value = []
             
         self._parser.set_section_data(section_name,value)
Пример #5
0
 def set_section(self,section_name):
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     self._parser.set_section(section_name)
     value = self._parser.get_section_default_properties(section_name)
     if isinstance(value,dict):
         for property_name,property_value in value.items():
             self._parser.set_section_property(section_name,property_name,property_value)
             
         # do one more time in case schema was updated
         value = self._parser.get_section_default_properties(section_name)
         for property_name,property_value in value.items():
             self._parser.set_section_property(section_name,property_name,property_value)             
     else:
         if value is None:
             types = self._parser.get_section_types(section_name)
             if 'null' not in types:
                 if 'string' in types:
                     value = ''
                 elif 'object' in types:
                     value = {}
                 elif 'array' in types:
                     value = []
             
         self._parser.set_section_data(section_name,value)
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        operator = algo_input.qubit_op

        evolution_fidelity_params = params.get(
            QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        expansion_order = evolution_fidelity_params.get(
            EvolutionFidelity.PROP_EXPANSION_ORDER)

        # Set up initial state, we need to add computed num qubits to params
        initial_state_params = params.get(
            QuantumAlgorithm.SECTION_KEY_INITIAL_STATE)
        initial_state_params['num_qubits'] = operator.num_qubits
        initial_state = get_initial_state_instance(
            initial_state_params['name'])
        initial_state.init_params(initial_state_params)

        self.init_args(operator, initial_state, expansion_order)
Пример #7
0
 def from_params(self, params):
     if EnergyInput.PROP_KEY_QUBITOP not in params:
         raise AlgorithmError("Qubit operator is required.")
     qparams = params[EnergyInput.PROP_KEY_QUBITOP]
     self._qubit_op = Operator.load_from_dict(qparams)
     if EnergyInput.PROP_KEY_AUXOPS in params:
         auxparams = params[EnergyInput.PROP_KEY_AUXOPS]
         self._aux_ops = [Operator.load_from_dict(auxparams[i]) for i in range(len(auxparams))]
Пример #8
0
 def delete_section_property(self, section_name, property_name):
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     self._parser.delete_section_property(section_name, property_name)
     if property_name == InputParser.NAME and \
         (InputParser.is_pluggable_section(section_name) or section_name == InputParser.INPUT):
         self._parser.delete_section_properties(section_name)
Пример #9
0
def _register_pluggable(pluggable_type, cls, configuration=None):
    """
    Registers a pluggable class
    Args:
        pluggable_type(str): The pluggable type
        cls (object): Pluggable class.
        configuration (object, optional): Pluggable configuration
     Returns:
        name: pluggable name
    Raises:
        AlgorithmError: if the class is already registered or could not be registered
    """
    if pluggable_type not in _REGISTERED_PLUGGABLES:
        _REGISTERED_PLUGGABLES[pluggable_type] = {}

    # Verify that the pluggable is not already registered.
    registered_classes = _REGISTERED_PLUGGABLES[pluggable_type]
    if cls in [pluggable.cls for pluggable in registered_classes.values()]:
        raise AlgorithmError(
            'Could not register class {} is already registered'.format(cls))

    try:
        pluggable_instance = cls(configuration=configuration)
    except Exception as err:
        raise AlgorithmError(
            'Could not register puggable:{} could not be instantiated: {}'.
            format(cls, str(err)))

    # Verify that it has a minimal valid configuration.
    try:
        pluggable_name = pluggable_instance.configuration['name']
    except (LookupError, TypeError):
        raise AlgorithmError(
            'Could not register pluggable: invalid configuration')

    if pluggable_name in _REGISTERED_PLUGGABLES[pluggable_type]:
        raise AlgorithmError(
            'Could not register class {}. Name {} {} is already registered'.
            format(cls, pluggable_name,
                   _REGISTERED_PLUGGABLES[pluggable_type][pluggable_name].cls))

    # Append the pluggable to the `registered_classes` dict.
    _REGISTERED_PLUGGABLES[pluggable_type][
        pluggable_name] = RegisteredPluggable(pluggable_name, cls,
                                              pluggable_instance.configuration)
    return pluggable_name
Пример #10
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        # For getting the extra operator, caller has to do something like: algo_input.add_aux_op(evo_op)
        operator = algo_input.qubit_op
        aux_ops = algo_input.aux_ops
        if aux_ops is None or len(aux_ops) != 1:
            raise AlgorithmError(
                "EnergyInput, a single aux op is required for evaluation.")
        evo_operator = aux_ops[0]
        if evo_operator is None:
            raise AlgorithmError("EnergyInput, invalid aux op.")

        dynamics_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        operator_mode = dynamics_params.get(Dynamics.PROP_OPERATOR_MODE)
        evo_time = dynamics_params.get(Dynamics.PROP_EVO_TIME)
        num_time_slices = dynamics_params.get(Dynamics.PROP_NUM_TIME_SLICES)
        paulis_grouping = dynamics_params.get(Dynamics.PROP_PAULIS_GROUPING)
        expansion_mode = dynamics_params.get(Dynamics.PROP_EXPANSION_MODE)
        expansion_order = dynamics_params.get(Dynamics.PROP_EXPANSION_ORDER)

        # Set up initial state, we need to add computed num qubits to params
        initial_state_params = params.get(
            QuantumAlgorithm.SECTION_KEY_INITIAL_STATE)
        initial_state_params['num_qubits'] = operator.num_qubits
        initial_state = get_initial_state_instance(
            initial_state_params['name'])
        initial_state.init_params(initial_state_params)

        self.init_args(operator,
                       operator_mode,
                       initial_state,
                       evo_operator,
                       evo_time,
                       num_time_slices,
                       paulis_grouping=paulis_grouping,
                       expansion_mode=expansion_mode,
                       expansion_order=expansion_order)
Пример #11
0
def deregister_pluggable(pluggable_type,pluggable_name):
    """
    Deregisters a pluggable class
    Args:
        pluggable_type(str): The pluggable type
        pluggable_name (str): The pluggable name
    Raises:
        AlgorithmError: if the class is not registered
    """
    _discover_on_demand()

    if pluggable_type not in _REGISTERED_PLUGGABLES:
        raise AlgorithmError('Could not deregister {} {} not registered'.format(pluggable_type,pluggable_name))

    if pluggable_name not in _REGISTERED_PLUGGABLES[pluggable_type]:
        raise AlgorithmError('Could not deregister {} {} not registered'.format(pluggable_type,pluggable_name))

    _REGISTERED_PLUGGABLES[pluggable_type].pop(pluggable_name)
Пример #12
0
def get_pluggable_instance(pluggable_type,pluggable_name):
    """
    Instantiates a pluggable class
    Args:
        pluggable_type(str): The pluggable type
        pluggable_name (str): The pluggable name
     Returns:
        instance: pluggable instance
    """
    _discover_on_demand()

    if pluggable_type not in _REGISTERED_PLUGGABLES:
        raise AlgorithmError('{} {} not registered'.format(pluggable_type,pluggable_name))

    if pluggable_name not in _REGISTERED_PLUGGABLES[pluggable_type]:
        raise AlgorithmError('{} {} not registered'.format(pluggable_type,pluggable_name))

    return _REGISTERED_PLUGGABLES[pluggable_type][pluggable_name].cls(
            configuration=_REGISTERED_PLUGGABLES[pluggable_type][pluggable_name].configuration)
Пример #13
0
def get_pluggable_configuration(pluggable_type,pluggable_name):
    """
    Accesses pluggable configuration
    Args:
        pluggable_type(str): The pluggable type
        pluggable_name (str): The pluggable name
    Returns:
        configuration: pluggable configuration
    Raises:
        AlgorithmError: if the class is not registered
    """
    _discover_on_demand()

    if pluggable_type not in _REGISTERED_PLUGGABLES:
        raise AlgorithmError('{} {} not registered'.format(pluggable_type,pluggable_name))

    if pluggable_name not in _REGISTERED_PLUGGABLES[pluggable_type]:
        raise AlgorithmError('{} {} not registered'.format(pluggable_type,pluggable_name))

    return _REGISTERED_PLUGGABLES[pluggable_type][pluggable_name].configuration
Пример #14
0
 def init_params(self, params, algo_input):
     """
     Initialize via parameters dictionary and algorithm input instance
     Args:
         params: parameters dictionary
         algo_input: EnergyInput instance
     """
     if algo_input is None:
         raise AlgorithmError("EnergyInput instance is required.")
     ee_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
     k = ee_params.get(ExactEigensolver.PROP_K)
     self.init_args(algo_input.qubit_op, k, algo_input.aux_ops)
Пример #15
0
def register_input(cls, configuration=None):
    """
    Registers an input class
    Args:
        cls (object): Input class.
        configuration (object, optional): Pluggable configuration
    Returns:
        name: input name
    Raises:
        AlgorithmError: if the class is already registered or could not be registered
    """
    _discover_on_demand()

    # Verify that the pluggable is not already registered
    if cls in [input.cls for input in _REGISTERED_INPUTS.values()]:
        raise AlgorithmError(
            'Could not register class {} is already registered'.format(cls))

    try:
        input_instance = cls(configuration=configuration)
    except Exception as err:
        raise AlgorithmError(
            'Could not register input:{} could not be instantiated: {}'.format(
                cls, str(err)))

    # Verify that it has a minimal valid configuration.
    try:
        input_name = input_instance.configuration['name']
    except (LookupError, TypeError):
        raise AlgorithmError('Could not register input: invalid configuration')

    if input_name in _REGISTERED_INPUTS:
        raise AlgorithmError(
            'Could not register class {}. Name {} {} is already registered'.
            format(cls, input_name, _REGISTERED_INPUTS[input_name].cls))

    # Append the pluggable to the `registered_classes` dict.
    _REGISTERED_INPUTS[input_name] = RegisteredInput(
        input_name, cls, input_instance.configuration)
    return input_name
Пример #16
0
 def set_section_property(self, section_name, property_name, value):
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     self._parser.set_section_property(section_name,property_name,value)
     if property_name == InputParser.NAME and \
         (InputParser.is_pluggable_section(section_name) or section_name == InputParser.INPUT):
         properties = self._parser.get_section_default_properties(section_name)
         if isinstance(properties,dict):
             properties[ InputParser.NAME] = value
             self._parser.delete_section_properties(section_name)
             for property_name,property_value in properties.items():  
                 self._parser.set_section_property(section_name,property_name,property_value)
Пример #17
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: input instance
        """
        if algo_input is not None:
            raise AlgorithmError("Unexpected Input instance.")

        oracle_params = params.get(QuantumAlgorithm.SECTION_KEY_ORACLE)
        oracle = get_oracle_instance(oracle_params['name'])
        oracle.init_params(oracle_params)
        self.init_args(oracle)
Пример #18
0
def local_pluggables(pluggable_type):
    """
    Accesses pluggable names
    Args:
        pluggable_type(str): The pluggable type
    Returns:
        names: pluggable names
    Raises:
        AlgorithmError: if the tyoe is not registered
    """
    _discover_on_demand()
    if pluggable_type not in _REGISTERED_PLUGGABLES:
        raise AlgorithmError('{} not registered'.format(pluggable_type))

    return [pluggable.name for pluggable in _REGISTERED_PLUGGABLES[pluggable_type].values()]
Пример #19
0
def deregister_input(input_name):
    """
    Deregisters am input class
    Args:
        input_name(str): The input name
    Raises:
        AlgorithmError: if the class is not registered
    """
    _discover_on_demand()

    if input_name not in _REGISTERED_INPUTS:
        raise AlgorithmError(
            'Could not deregister {} not registered'.format(input_name))

    _REGISTERED_INPUTS.pop(input_name)
Пример #20
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance

        Args:
            params (dict): parameters dictionary
            algo_input (EnergyInput): EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        operator = algo_input.qubit_op

        vqe_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        operator_mode = vqe_params.get('operator_mode')
        initial_point = vqe_params.get('initial_point')

        # Set up initial state, we need to add computed num qubits to params
        init_state_params = params.get(
            QuantumAlgorithm.SECTION_KEY_INITIAL_STATE)
        init_state_params['num_qubits'] = operator.num_qubits
        init_state = get_initial_state_instance(init_state_params['name'])
        init_state.init_params(init_state_params)

        # Set up variational form, we need to add computed num qubits, and initial state to params
        var_form_params = params.get(QuantumAlgorithm.SECTION_KEY_VAR_FORM)
        var_form_params['num_qubits'] = operator.num_qubits
        var_form_params['initial_state'] = init_state
        var_form = get_variational_form_instance(var_form_params['name'])
        var_form.init_params(var_form_params)

        # Set up optimizer
        opt_params = params.get(QuantumAlgorithm.SECTION_KEY_OPTIMIZER)
        optimizer = get_optimizer_instance(opt_params['name'])
        optimizer.init_params(opt_params)

        if 'statevector' not in self._backend and operator_mode == 'matrix':
            logger.debug('Qasm simulation does not work on {} mode, changing \
                            the operator_mode to paulis'.format(operator_mode))
            operator_mode = 'paulis'

        self.init_args(operator,
                       operator_mode,
                       var_form,
                       optimizer,
                       opt_init_point=initial_point,
                       aux_operators=algo_input.aux_ops)
        logger.info(self.print_setting())
Пример #21
0
def get_input_configuration(input_name):
    """
    Accesses input configuration
    Args:
        input_name (str): The input name
    Returns:
        configuration: input configuration
    Raises:
        AlgorithmError: if the class is not registered
    """
    _discover_on_demand()

    if input_name not in _REGISTERED_INPUTS:
        raise AlgorithmError('{} not registered'.format(input_name))

    return _REGISTERED_INPUTS[input_name].configuration
Пример #22
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: input instance
        """
        if algo_input is not None:
            raise AlgorithmError("Unexpected Input instance.")

        grover_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        num_iterations = grover_params.get(Grover.PROP_NUM_ITERATIONS)

        oracle_params = params.get(QuantumAlgorithm.SECTION_KEY_ORACLE)
        oracle = get_oracle_instance(oracle_params['name'])
        oracle.init_params(oracle_params)
        self.init_args(oracle, num_iterations=num_iterations)
Пример #23
0
def get_input_instance(input_name):
    """
    Instantiates an input class
    Args:
        input_name (str): The input name
    Returns:
        instance: input instance
    Raises:
        AlgorithmError: if the class is not registered
    """
    _discover_on_demand()

    if input_name not in _REGISTERED_INPUTS:
        raise AlgorithmError('{} not registered'.format(input_name))

    return _REGISTERED_INPUTS[input_name].cls(
        configuration=_REGISTERED_INPUTS[input_name].configuration)
Пример #24
0
    def init_params(self, params, algo_input):
        """
        Initialize via parameters dictionary and algorithm input instance
        Args:
            params: parameters dictionary
            algo_input: EnergyInput instance
        """
        if algo_input is None:
            raise AlgorithmError("EnergyInput instance is required.")

        operator = algo_input.qubit_op

        qpe_params = params.get(QuantumAlgorithm.SECTION_KEY_ALGORITHM)
        num_time_slices = qpe_params.get(QPE.PROP_NUM_TIME_SLICES)
        paulis_grouping = qpe_params.get(QPE.PROP_PAULIS_GROUPING)
        expansion_mode = qpe_params.get(QPE.PROP_EXPANSION_MODE)
        expansion_order = qpe_params.get(QPE.PROP_EXPANSION_ORDER)
        num_ancillae = qpe_params.get(QPE.PROP_NUM_ANCILLAE)
        use_basis_gates = qpe_params.get(QPE.PROP_USE_BASIS_GATES)

        # Set up initial state, we need to add computed num qubits to params
        init_state_params = params.get(
            QuantumAlgorithm.SECTION_KEY_INITIAL_STATE)
        init_state_params['num_qubits'] = operator.num_qubits
        init_state = get_initial_state_instance(init_state_params['name'])
        init_state.init_params(init_state_params)

        # Set up iqft, we need to add num qubits to params which is our num_ancillae bits here
        iqft_params = params.get(QuantumAlgorithm.SECTION_KEY_IQFT)
        iqft_params['num_qubits'] = num_ancillae
        iqft = get_iqft_instance(iqft_params['name'])
        iqft.init_params(iqft_params)

        self.init_args(operator,
                       init_state,
                       iqft,
                       num_time_slices,
                       num_ancillae,
                       paulis_grouping=paulis_grouping,
                       expansion_mode=expansion_mode,
                       expansion_order=expansion_order,
                       use_basis_gates=use_basis_gates)
Пример #25
0
def register_pluggable(cls, configuration=None):
    """
    Registers a pluggable class
    Args:
        cls (object): Pluggable class.
        configuration (object, optional): Pluggable configuration
     Returns:
        name: pluggable name
    """
    _discover_on_demand()
    pluggable_type = None
    for type,c in _PLUGGABLES.items():
        if issubclass(cls, c):
            pluggable_type = type
            break

    if pluggable_type is None:
        raise AlgorithmError('Could not register class {} is not subclass of any known pluggable'.format(cls))

    return _register_pluggable(pluggable_type,cls,configuration)
Пример #26
0
 def save_to_file(self,filename):
     if self.is_empty():
         raise AlgorithmError("Empty input data.")
             
     self._parser.save_to_file(filename) 
Пример #27
0
 def init_params(self, params, algo_input):
     if algo_input is None:
         raise AlgorithmError("EnergyInput instance is required.")
     self._ins.parse(algo_input.qubit_op.save_to_dict()['paulis'])
     self._params = params
Пример #28
0
    def setup_quantum_backend(self,
                              backend='local_statevector_simulator',
                              shots=1024,
                              skip_transpiler=False,
                              timeout=None,
                              wait=5,
                              noise_params=None):
        """
        Setup the quantum backend.

        Args:
            backend (str): name of selected backend
            shots (int): number of shots for the backend
            skip_transpiler (bool): flag of skipping gate mapping, be aware that only
                                     basis gates of the backend are executed others are skipped.
            timeout (float or None): seconds to wait for job. If None, wait indefinitely.
            wait (float): seconds between queries
            noise_params (dict): the noise setting for simulator

        Raises:
            AlgorithmError: set backend with invalid Qconfig
        """
        operational_backends = self.register_and_get_operational_backends(
            self.qconfig)
        if self.EQUIVALENT_BACKENDS.get(backend,
                                        backend) not in operational_backends:
            raise AlgorithmError(
                "This backend '{}' is not operational for the quantum algorithm\
                , please check your Qconfig.py, or select any one below: {}".
                format(backend, operational_backends))

        self._backend = backend
        self._qjob_config = {'timeout': timeout, 'wait': wait}

        shots = 1 if 'statevector' in backend else shots
        noise_params = noise_params if 'simulator' in backend else None

        if backend.startswith('local'):
            self._qjob_config.pop('wait', None)

        my_backend = get_backend(backend)
        self._execute_config = {
            'shots': shots,
            'skip_transpiler': skip_transpiler,
            'config': {
                "noise_params": noise_params
            },
            'basis_gates': my_backend.configuration['basis_gates'],
            'coupling_map': my_backend.configuration['coupling_map'],
            'initial_layout': None,
            'max_credits': 10,
            'seed': self._random_seed,
            'qobj_id': None,
            'hpc': None
        }

        info = "Algorithm: '{}' setup with backend '{}', with following setting:\n {}\n{}".format(
            self._configuration['name'], my_backend.configuration['name'],
            self._execute_config, self._qjob_config)

        logger.info('QISKit Core version {}'.format(qiskit_version))
        logger.info(info)
Пример #29
0
 def set_section_text(self, section_name, value):  
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     self._parser.set_section_data(section_name, value)
Пример #30
0
 def delete_section_text(self, section_name):  
     if self._parser is None:
         raise AlgorithmError('Input not initialized.')
         
     self._parser.delete_section_text(section_name)