示例#1
0
    def test_loop_writing_2D(self):
        # pass
        station = Station()
        MockPar = MockParabola(name='Loop_writing_test_2D')
        station.add_component(MockPar)
        loop = Loop(MockPar.x[-100:100:20]).loop(MockPar.y[-50:50:10]).each(
            MockPar.skewed_parabola)
        data1 = loop.run(name='MockLoop_hdf5_test', formatter=self.formatter)
        data2 = DataSet(location=data1.location, formatter=self.formatter)
        data2.read()
        for key in data2.arrays.keys():
            self.checkArraysEqual(data2.arrays[key], data1.arrays[key])

        metadata_equal, err_msg = compare_dictionaries(data1.metadata,
                                                       data2.metadata,
                                                       'original_metadata',
                                                       'loaded_metadata')
        self.assertTrue(metadata_equal, msg='\n' + err_msg)
        self.formatter.close_file(data1)
        self.formatter.close_file(data2)
示例#2
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    def test_reading_into_existing_data_array(self):
        data = DataSet1D(location=self.loc_provider, name='test_read_existing')
        # closing before file is written should not raise error
        self.formatter.write(data)

        data2 = DataSet(location=data.location, formatter=self.formatter)
        d_array = DataArray(
            name='dummy',
            array_id='x_set',  # existing array id in data
            label='bla',
            unit='a.u.',
            is_setpoint=False,
            set_arrays=(),
            preset_data=np.zeros(5))
        data2.add_array(d_array)
        # test if d_array refers to same as array x_set in dataset
        self.assertTrue(d_array is data2.arrays['x_set'])
        data2.read()
        # test if reading did not overwrite dataarray
        self.assertTrue(d_array is data2.arrays['x_set'])
        # Testing if data was correctly updated into dataset
        self.checkArraysEqual(data2.arrays['x_set'], data.arrays['x_set'])
        self.checkArraysEqual(data2.arrays['y'], data.arrays['y'])
        self.formatter.close_file(data)
        self.formatter.close_file(data2)
示例#3
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def _slice_dataset(dataset: DataSet,
                   slice_objects: Sequence[slice],
                   output_parameter_name: Optional[str],
                   copy_metadata: bool,
                   verbose: int = 0):
    """ Slice the measurement array of a dataset and adjust the setpoints arrays accordingly """
    zarray = dataset.default_parameter_array()
    if output_parameter_name is None:
        output_parameter_name = zarray.name

    set_arrays = zarray.set_arrays
    yarray = set_arrays[0]

    scan_dimension = dataset_dimension(dataset)
    is_1d_dataset = scan_dimension == 1
    is_2d_dataset = scan_dimension == 2

    if verbose:
        print(
            f'slice_dataset: dimension {scan_dimension} slice_objects {slice_objects}'
        )

    if is_1d_dataset:
        signal_window = zarray[tuple(slice_objects)]
        dataset_window = qtt.data.makeDataSet1Dplain(
            yarray.name,
            yarray[slice_objects[0]],
            yname=output_parameter_name,
            y=signal_window,
            xunit=yarray.unit,
            yunit=zarray.unit)
    elif is_2d_dataset:
        xarray = set_arrays[1]
        signal_window = zarray[tuple(slice_objects)]
        dataset_window = qtt.data.makeDataSet2Dplain(
            xarray.name,
            xarray[0][slice_objects[1]],
            yarray.name,
            yarray[slice_objects[0]],
            zname=output_parameter_name,
            z=signal_window,
            xunit=xarray.unit,
            yunit=yarray.unit,
            zunit=zarray.unit)
    else:
        raise NotImplementedError(
            'slicing a multi-dimensional dataset of dimension {scan_dimension} is not supported'
        )

    if copy_metadata:
        dataset_window.metadata = copy.deepcopy(dataset.metadata)
    return dataset_window
示例#4
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def average_probability(data_set, location, NewIO, formatter, qubit_num=1):

    for parameter in data_set.arrays:
        if len(data_set.arrays[parameter].ndarray.shape
               ) == 2 and parameter.endswith('set'):
            data_set_new = DataSet(location=location +
                                   '_average_probability_data_' + parameter,
                                   io=NewIO,
                                   formatter=formatter)

    for parameter in data_set.arrays:
        if len(data_set.arrays[parameter].ndarray.shape) == 2:
            data = deepcopy(data_set.arrays[parameter].ndarray)
            data = np.average(data, axis=0)
            is_setpoint = data_set.arrays[parameter].is_setpoint
            name = data_set.arrays[parameter].name
            array_id = data_set.arrays[parameter].array_id
            data_set_new.add_array(
                DataArray(preset_data=data,
                          name=name,
                          array_id=array_id,
                          is_setpoint=is_setpoint))
    return data_set_new
示例#5
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    def test_xarray_example_conversion(self):
        times = pd.date_range("2000-01-01", "2000-1-31", name="time")
        shape = (31, 3)
        xarray_dataset = xr.Dataset(
            {"tmin": (("time", "location"), np.random.rand(*shape)),
                "tmax": (("time", "location"), np.random.rand(*shape)),
             }, {"time": times, "location": ["IA", "IN", "IL"]},)

        qd = DataSet.from_xarray(xarray_dataset)
        xarray_dataset2 = qd.to_xarray()

        self.assertEqual(qd.default_parameter_array().shape, xarray_dataset.tmin.shape)
        self.assertEqual(list(xarray_dataset.coords.keys()), list(xarray_dataset2.coords.keys()))
        self.assertEqual(list(xarray_dataset.data_vars.keys()), list(xarray_dataset2.data_vars.keys()))
        self.assertEqual(xarray_dataset.tmin.shape, xarray_dataset2.tmin.shape)
示例#6
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def slice_dataset(dataset: DataSet, window: Sequence[float], axis: int = 0,
                  verbose: int = 0, copy_metadata: bool = False, output_parameter_name=None) -> DataSet:
    """ Given a dataset and a window for the horizontal axis return the dataset with selected window

    Args:
        dataset: Dataset to be slice
        window: Specification of the window to be selected
        axis: Axis used for slicing
        verbose: Verbosity level
        copy_metadata: If True then copy the metadata of the input dataset
        output_parameter_name: Name of the output array
    Returns:
        Dataset with sliced data

    """
    zarray = dataset.default_parameter_array()
    if output_parameter_name is None:
        output_parameter_name = zarray.name

    set_arrays = zarray.set_arrays
    yarray = set_arrays[0]
    scan_dimension = dataset_dimension(dataset)
    is_1d_dataset = scan_dimension == 1

    if is_1d_dataset:
        if not axis == 0:
            raise AssertionError('for a 1D dataset axis should be 0')
    else:
        xarray = set_arrays[1]

    slice_objects = [slice(0, size) for jj, size in enumerate(zarray.shape)]

    if axis == 0:
        slice_array = yarray
        start_idx = int(np.floor(np.interp(window[0], slice_array.ndarray, np.arange(slice_array.ndarray.size))))
        end_idx = int(np.interp(window[1], slice_array.ndarray, np.arange(slice_array.ndarray.size)))
        slice_objects[0] = slice(start_idx, end_idx)
    else:
        slice_array = xarray

        start_idx = int(np.floor(np.interp(window[0], slice_array.ndarray[0], np.arange(slice_array.ndarray[0].size))))
        end_idx = int(np.interp(window[1], slice_array.ndarray[0], np.arange(slice_array.ndarray[0].size)))

        slice_objects[1] = slice(start_idx, end_idx)

    return _slice_dataset(dataset, tuple(slice_objects), output_parameter_name, copy_metadata=copy_metadata, verbose=0)
示例#7
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def convert_to_probability(
    data_set,
    location,
    NewIO,
    formatter,
    threshold,
    qubit_num=1,
    repetition=100,
):
    for parameter in data_set.arrays:
        if len(data_set.arrays[parameter].ndarray.shape
               ) == 2 and parameter.endswith('set'):
            data_set_new = DataSet(location=location +
                                   '_average_probability_' + parameter,
                                   io=NewIO,
                                   formatter=formatter)


#    data_set = convert_to_01_state(data_set, threshold, qubit_num, repetition, name, unit, sweep_array)
    qubit_data_array = []
    set_array = []
    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter].ndarray
        dimension_1 = data_array.shape[0]
        arrayid = data_set.arrays[parameter].array_id
        if parameter.endswith(
                'set'):  ## or data_set.arrays[parameter].is_setpoint
            set_array.append(
                DataArray(preset_data=data_array,
                          name=parameter,
                          array_id=arrayid,
                          is_setpoint=True))

        elif not parameter.endswith('set'):
            dimension_2 = data_array.shape[1]
            probability_data = np.ndarray(shape=(dimension_1, dimension_2))

            for k in range(dimension_1):
                for l in range(dimension_2):
                    probability_data[k][l] = np.average(data_array[k][l])

            qubit_data_array.append(
                DataArray(preset_data=probability_data,
                          name=parameter,
                          array_id=arrayid,
                          is_setpoint=False))

    for array in set_array:
        data_set_new.add_array(array)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])

    return data_set_new
示例#8
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def seperate_data(data_set,
                  location,
                  NewIO,
                  formatter,
                  qubit_num=1,
                  repetition=100,
                  sweep_arrays=None,
                  sweep_names=None):
    #this function will seperate the raw data for each experiment (appended to the same seqeunce)
    #into different data files. This will make plotting and data handling easier.
    start = 0
    end = 0
    seperated_data = []
    for count, array in enumerate(sweep_arrays):

        end = start + len(sweep_arrays[count]) - 1
        seperated_data.append(
            DataSet(location=location + '_' + sweep_names[count] + '_set',
                    io=NewIO,
                    formatter=formatter))
        for parameter in data_set.arrays:
            if parameter.endswith(
                    'set') and data_set.arrays[parameter].ndarray.ndim > 1:
                name = sweep_names[count] + '_set'
            else:
                name = parameter
            if data_set.arrays[parameter].ndarray.ndim > 1:
                seperated_data[count].add_array(
                    DataArray(
                        preset_data=data_set.arrays[parameter][:, start:end],
                        name=name,
                        array_id=name,
                        is_setpoint=True))
            else:
                seperated_data[count].add_array(
                    DataArray(preset_data=data_set.arrays[parameter],
                              name=name,
                              array_id=name,
                              is_setpoint=True))
        start = end + 1

    return seperated_data
示例#9
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def analyse_RTS(dataset: DataSet, fig: int = 1) -> dict:
    time = default_setpoint_array(dataset)
    rtsdata = np.array(dataset.default_parameter_array())
    num_bins = 40
    counts, bins = np.histogram(rtsdata, bins=num_bins)
    bincentres = np.array([(bins[i] + bins[i + 1]) / 2
                           for i in range(0,
                                          len(bins) - 1)])
    par_fit, result_dict = fit_double_gaussian(bincentres, counts)
    split = result_dict['split']

    plt.figure(fig)
    plt.clf()
    plt.subplot(1, 2, 1)
    plt.plot(time[:10000], rtsdata[:10000], '.', label='signal')
    plt.xlabel('Time')
    plt.title('Selection of points')
    plt.subplot(1, 2, 2)
    _plot_rts_histogram(rtsdata, num_bins, par_fit, split, 'Histogram')
    return {}
示例#10
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def analyse_polarization_line(dataset: DataSet,
                              fig: int = 1,
                              verbose=0) -> dict:
    """  Analyse dataset with polarization line """
    if verbose:
        print('analyse_polarization_line: dataset: %s' % dataset.location)
    signal = dataset.default_parameter_array()
    delta = default_setpoint_array(dataset, signal.name)

    lever_arm = 80
    delta_uev = np.array(delta) * lever_arm
    signal = qtt.algorithms.generic.smoothImage(signal)

    kb = scipy.constants.physical_constants['Boltzmann constant in eV/K'][
        0] * 1e6
    kT = 75e-3 * kb  # effective electron temperature in ueV

    par_fit, initial_parameters, results = fit_pol_all(delta_uev, signal, kT)
    plot_polarization_fit(delta_uev, signal, results, fig)
    return {}
示例#11
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    def test_multifile(self):
        formatter = GNUPlotFormat()
        location = self.locations[1]
        data = DataSetCombined(location)

        formatter.write(data, data.io, data.location)

        filex, filexy = files_combined()

        with open(location + '/x_set.dat') as f:
            self.assertEqual(f.read(), filex)
        with open(location + '/x_set_y_set.dat') as f:
            self.assertEqual(f.read(), filexy)

        data2 = DataSet(location=location)
        formatter.read(data2)

        for array_id in ('x_set', 'y1', 'y2', 'y_set', 'z1', 'z2'):
            self.checkArraysEqual(data2.arrays[array_id],
                                  data.arrays[array_id])
示例#12
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def resample_dataset(dataset: DataSet, sample_rate: Tuple[int], copy_metadata: bool = False,
                     output_parameter_name: Optional[str] = None) -> DataSet:
    """ Given a dataset resample the measurement array

    Args:
        dataset: Dataset to be slice
        sample_rate: Tuple with for each axis the sample rate. Must be a postive integer
        copy_metadata: If True then copy the metadata of the input dataset
        output_parameter_name: Name of the output array
    Returns:
        Dataset with sliced data

    """
    zarray = dataset.default_parameter_array()
    if output_parameter_name is None:
        output_parameter_name = zarray.name

    slice_objects = tuple(slice(0, size, sample_rate[jj]) for jj, size in enumerate(zarray.shape))

    return _slice_dataset(dataset, slice_objects, output_parameter_name, copy_metadata=copy_metadata, verbose=0)
示例#13
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    def test_xarray_conversions(self):
        qd = DataSet1D(name="TestNewData_test_xarray_conversions")
        xarray_data_set = qcodes_dataset_to_xarray_dataset(qd)
        qd_transformed = xarray_dataset_to_qcodes_dataset(xarray_data_set)
        m = qd.default_parameter_array()
        mt = qd_transformed.default_parameter_array()

        for key in ["name", "unit"]:
            self.assertEqual(getattr(m, key), getattr(mt, key))
        qd2 = DataSet2D(name="TestNewData_test_xarray_conversions")
        xarray_data_set = qcodes_dataset_to_xarray_dataset(qd2)
        qd2_transformed = xarray_dataset_to_qcodes_dataset(xarray_data_set)

        m = qd2.default_parameter_array()
        mt = qd2_transformed.default_parameter_array()
        for key in ["name", "unit"]:
            self.assertEqual(getattr(m, key), getattr(mt, key))

        xds = qd.to_xarray()
        qds = DataSet.from_xarray(xds)
示例#14
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def average_multirow_dataset(dataset: DataSet,
                             number_of_repetitions: int,
                             new_values=None,
                             parameter_name: str = 'signal',
                             output_parameter_name: str = 'signal') -> DataSet:
    """ Calculate the averaged signal from a 2D dataset with repeated rows

    Args:
        dataset: Dataset containing the data to be averaged
        number_of_repetitions: Number of rows over which to average
        new_values: Optional new values for the averaged axis
        parameter_name: Name of data array to process
        output_parameter_name: Name of output array

    Returns:
        Averaged dataset
    """
    zarray = dataset.default_parameter_array(parameter_name)
    set_arrays = zarray.set_arrays
    xarray = set_arrays[1]
    yarray = set_arrays[0]

    if new_values is None:
        number_of_blocks = int(zarray.shape[0] / number_of_repetitions)
        new_values = np.linspace(yarray[0], yarray[-1], number_of_blocks)
    data = zarray
    ncolumns = data.shape[1]
    averaged_signal = data.transpose().reshape(
        -1, number_of_repetitions).mean(1).reshape(ncolumns, -1).transpose()

    dataset_averaged = qtt.data.makeDataSet2Dplain(xarray.name,
                                                   xarray[0],
                                                   yarray.name,
                                                   new_values,
                                                   zname=output_parameter_name,
                                                   z=averaged_signal,
                                                   xunit=xarray.unit,
                                                   yunit=yarray.unit,
                                                   zunit=zarray.unit)

    return dataset_averaged
示例#15
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def plot_dataset(dataset: DataSet,
                 parameter_names: Optional[list] = None,
                 fig: Optional[int] = 1) -> None:
    """ Plot a dataset to matplotlib figure window

    Args:
        dataset: DataSet to be plotted
        parameter_names: List of arrays to be plotted
        fig: Specification if Matplotlib figure window

    """
    if parameter_names is None:
        parameter_names = [dataset.default_parameter_name()]

    if parameter_names == 'all':
        parameter_names = [
            name for name in dataset.arrays.keys()
            if not dataset.arrays[name].is_setpoint
        ]

    default_array = dataset.default_parameter_array()

    if fig:
        plt.figure(fig)
        plt.clf()

        if len(default_array.shape) >= 2:
            if len(parameter_names) > 1:
                arrays = [
                    dataset.default_parameter_array(parameter_name)
                    for parameter_name in parameter_names
                ]
                plot_handle = MatPlot(*arrays, num=fig)

            else:
                plot_handle = MatPlot(dataset.default_parameter_array(
                    parameter_names[0]),
                                      num=fig)
        else:
            for idx, parameter_name in enumerate(parameter_names):
                if idx == 0:
                    plot_handle = MatPlot(
                        dataset.default_parameter_array(parameter_name),
                        num=fig)
                else:
                    plot_handle.add(
                        dataset.default_parameter_array(parameter_name, ))
示例#16
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def plot_dataset(dataset: DataSet, scanjob, save=True) -> None:
    """ Plot a dataset to matplotlib figure window

    Args:
        dataset: DataSet to be plotted
        scanjob: scanjob of the measurement
        save: Select if you want to save the plots

    """

    parameter_names = [
        name for name in dataset.arrays.keys()
        if not dataset.arrays[name].is_setpoint
    ]
    default_array = dataset.default_parameter_array()

    # Path for saving
    base_loc = dataset.default_io.base_location
    folder = '\\' + dataset.location + '\\'
    label = str(scanjob.get('dataset_label'))
    path = base_loc + folder + label

    # 2D plots
    if len(default_array.shape) >= 2:
        for idx, parameter_name in enumerate(parameter_names):
            plot_handle = MatPlot(dataset.arrays[parameter_name], num=idx)
            plot_handle.rescale_axis()
            if save == True:
                plt.savefig(path + str(idx) + '.png')

    # 1D plots
    else:
        for idx, parameter_name in enumerate(parameter_names):
            plot_handle = MatPlot(dataset.arrays[parameter_name], num=idx)
            plot_handle.rescale_axis()
            if save == True:
                plt.savefig(path + str(idx) + '.png')
示例#17
0
def convert_to_01_state(data_set, threshold, qubit_num=1, repetition=100):
    #data_set = convert_to_ordered_data(data_set, qubit_num, repetition, name, unit, sweep_array)

    qubit_data_array = []
    set_array = []
    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter].ndarray
        dimension_1 = data_array.shape[0]
        array_id = data_set.arrays[parameter].array_id
        if parameter.endswith(
                'set'):  ## or data_set.arrays[parameter].is_setpoint
            set_array.append(
                DataArray(preset_data=data_array,
                          name=parameter,
                          array_id=array_id,
                          is_setpoint=True))

        elif not parameter.endswith('set'):
            dimension_2 = data_array.shape[1]
            data = np.ndarray(shape=(dimension_1, dimension_2, repetition))

            for k in range(dimension_1):
                for l in range(dimension_2):
                    for j in range(repetition):
                        data[k][l][j] = 1 if np.min(
                            data_array[k][l][j * seg_size:(j + 1) *
                                             seg_size]) <= threshold else 0

            qubit_data_array.append(
                DataArray(preset_data=data,
                          name=parameter,
                          array_id=array_id,
                          is_setpoint=False))

    data_set_new = DataSet(location=new_location + '_01_state',
                           io=NewIO,
                           formatter=formatter)

    for array in set_array:
        data_set_new.add_array(array)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])

    return data_set_new
示例#18
0
def majority_vote(data_set,
                  threshold,
                  qubit_num=1,
                  repetition=100,
                  name='frequency',
                  unit='GHz',
                  sweep_array=None,
                  average=False):

    data_set = convert_to_01_state(data_set, threshold, qubit_num, repetition,
                                   name, unit, sweep_array)

    set_array = []

    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter].ndarray
        dimension_1 = data_array.shape[0]
        arrayid = data_set.arrays[parameter].array_id
        if parameter.endswith(
                'set'):  ## or data_set.arrays[parameter].is_setpoint
            set_array.append(
                DataArray(preset_data=data_array,
                          name=parameter,
                          array_id=arrayid,
                          is_setpoint=True))

    dimension_2 = len(sweep_array) if sweep_array is not None else 2
    #    dimension_1 = 5
    vote_data = np.ndarray(shape=(dimension_1, dimension_2, repetition))
    average_vote_data = np.ndarray(shape=(dimension_1, dimension_2))
    name = 'vote'
    arrayid = 'vote'
    for k in range(dimension_1):
        for l in range(dimension_2):
            for repe in range(repetition):
                voter = np.array([
                    data_set.digitizerqubit_1[k][l][repe],
                    data_set.digitizerqubit_2[k][l][repe],
                    data_set.digitizerqubit_3[k][l][repe],
                ])

                vote_data[k][l][repe] = 1 if np.sum(voter) >= 2 else 0

            if average:
                average_vote_data[k][l] = np.average(vote_data[k][l])
                print('average: ', average_vote_data[k][l])

    data = vote_data if not average else average_vote_data

    vote_data_array = DataArray(preset_data=data,
                                name=name,
                                array_id=arrayid,
                                is_setpoint=False)

    data_set_new = DataSet(location=new_location,
                           io=NewIO,
                           formatter=formatter)

    for array in set_array:
        data_set_new.add_array(array)
    data_set_new.add_array(vote_data_array)

    return data_set_new
def convert_to_01_state(data_set,
                        threshold,
                        loop_num,
                        qubit_num,
                        name='frequency',
                        unit='GHz',
                        sweep_array=None):
    data_set = convert_to_ordered_data(data_set, loop_num, qubit_num, name,
                                       unit, sweep_array)

    qubit_data_array = []

    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter]
        dimension_1 = data_array.shape[0]
        arrayid = data_set.arrays[parameter].array_id
        if parameter[
                -3:] == 'set':  ## or data_set.arrays[parameter].is_setpoint
            if len(data_array.shape) == 1:
                set_array1 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)
            elif len(data_array.shape
                     ) == 2 and not parameter.startswith('index'):
                set_array2 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)

        elif parameter[-3:] != 'set':
            seg_num = int(data_set.arrays[parameter].shape[1] / seg_size)
            data = np.ndarray(shape=(dimension_1, seg_num))
            setpara = np.ndarray(shape=(dimension_1, seg_num))

            for k in range(dimension_1):
                for j in range(seg_num):
                    setpara[k][j] = j
                    for i in range(seg_size):
                        if data_array.ndarray[k][j * seg_size +
                                                 i] <= threshold:
                            data[k][j] = 1
                            break
                    if i == seg_size - 1:
                        data[k][j] = 0

            set_array3 = DataArray(preset_data=setpara,
                                   name=name,
                                   array_id=name + '_set',
                                   is_setpoint=True)
            qubit_data_array.append(
                DataArray(preset_data=data,
                          name=parameter,
                          array_id=arrayid,
                          is_setpoint=False))

    data_set_new = DataSet(location=new_location,
                           io=NewIO,
                           formatter=formatter)
    data_set_new.add_array(set_array1)
    data_set_new.add_array(set_array2)
    if loop_num > 1:
        data_set_new.add_array(set_array3)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])

    return data_set_new
def convert_to_probability(data_set,
                           threshold,
                           loop_num,
                           qubit_num=1,
                           name='frequency',
                           unit='GHz',
                           sweep_array=None):

    data_set = convert_to_01_state(data_set, threshold, loop_num, qubit_num,
                                   name, unit, sweep_array)
    qubit_data_array = []
    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter]
        dimension_1 = data_array.shape[0]
        arrayid = data_set.arrays[parameter].array_id
        if parameter[
                -3:] == 'set':  ## or data_set.arrays[parameter].is_setpoint
            if len(data_array.shape) == 1:
                set_array1 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)
            if len(data_array.shape
                   ) == 2 and not parameter.startswith('index'):
                set_array2 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)

        elif parameter[-3:] != 'set':
            seg_num = int(data_set.arrays[parameter].shape[1])

            data = np.ndarray(shape=(dimension_1, loop_num))
            setpara = np.ndarray(shape=(dimension_1, loop_num))

            for k in range(dimension_1):
                #                data_k = []
                #                setpara_k = []
                state = np.ndarray(shape=(loop_num, int(seg_num / loop_num)))
                for i in range(seg_num):
                    loop = i % loop_num
                    sweep = i // loop_num
                    state[loop][sweep] = data_array.ndarray[k][i]

                for j in range(loop_num):
                    setpara[k][j] = j
                    probability = np.average(state[j])
                    data[k][j] = probability

                if loop_num > 1 and sweep_array is not None:
                    setpara[k] = sweep_array
            set_array3 = DataArray(preset_data=setpara,
                                   name=name,
                                   array_id=name + '_set',
                                   is_setpoint=True)
            #            if loop_num == 1:
            #                data = data.T[0]
            qubit_data_array.append(
                DataArray(preset_data=data,
                          name=parameter,
                          array_id=arrayid,
                          is_setpoint=False))

    data_set_new = DataSet(location=new_location,
                           io=NewIO,
                           formatter=formatter)
    data_set_new.add_array(set_array1)
    data_set_new.add_array(set_array2)
    if loop_num > 1:
        data_set_new.add_array(set_array3)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])

    return data_set_new
示例#21
0
def convert_to_ordered_data(data_set,
                            qubit_num=1,
                            repetition=100,
                            name='frequency',
                            unit='GHz',
                            sweep_array=None):

    qubit_data_array = []
    set_array = []

    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter].ndarray
        dimension_1 = data_array.shape[0]
        array_name = parameter
        array_id = data_set.arrays[parameter].array_id

        if parameter.endswith('set'):
            if data_array.ndim == 2 and parameter.startswith('index'):
                dimension_2 = int(data_array.shape[-1] / 2 / (repetition + 1) /
                                  seg_size / qubit_num)
                sweep_array = sweep_array if sweep_array is not None else np.linspace(
                    0, dimension_2 - 1, dimension_2)
                data_array = np.array(
                    [sweep_array for k in range(dimension_1)])
                array_name = name + '_set'
                array_id = name + '_set'
            if data_array.ndim != 3 or not parameter.startswith('index'):
                set_array.append(
                    DataArray(preset_data=data_array,
                              name=array_name,
                              array_id=array_id,
                              is_setpoint=True))

        elif not parameter.endswith('set') and data_array.ndim == 2:

            data_num = int(data_array.shape[-1] / 2 / (repetition + 1) *
                           repetition)
            qubit_data_num = int(data_num / qubit_num)

            dimension_2 = int(data_array.shape[-1] / 2 / (repetition + 1) /
                              seg_size / qubit_num)
            qubit_data = np.ndarray(shape=(qubit_num, dimension_1, dimension_2,
                                           int(qubit_data_num / dimension_2)))

            for k in range(dimension_1):
                raw_data = data_array[k][::2]
                raw_marker = data_array[k][1::2]
                for seg in range(seg_size * qubit_num * dimension_2):
                    if raw_marker[seg] > 0.2:  ##  a better threshold ???
                        break
                data = raw_data[seg:data_num + seg]
                print('seg', seg)
                data_reshape = data.reshape(int(data_num / seg_size), seg_size)
                print('data_shape', data_reshape.shape)
                for l in range(dimension_2):
                    for q in range(qubit_num):

                        qubit_data[q][k][l] = data_reshape[qubit_num * l +
                                                           q::dimension_2 *
                                                           qubit_num].reshape(
                                                               seg_size *
                                                               repetition, )
                        n = 2 if q == 0 else q
                        if q >= 2:
                            n = q + 1
                        qubit_data_array.append(
                            DataArray(preset_data=qubit_data[q],
                                      name=parameter + 'qubit_%d' % (n),
                                      array_id=array_id + 'qubit_%d' % (n),
                                      is_setpoint=False))

        elif not parameter.endswith('set') and data_array.ndim == 3:
            data_num = int(data_array.shape[-1] / 2 / (repetition + 1) *
                           repetition)
            qubit_data_num = int(data_num / qubit_num)

            dimension_2 = data_array.shape[1]
            print('qubit_num, dimension_1, dimension_2, int(qubit_data_num)',
                  qubit_num, dimension_1, dimension_2, int(qubit_data_num))
            qubit_data = np.ndarray(shape=(qubit_num, dimension_1, dimension_2,
                                           int(qubit_data_num)))

            for k in range(dimension_1):
                for l in range(dimension_2):
                    raw_data = data_array[k][l][::2]
                    raw_marker = data_array[k][l][1::2]
                    for seg in range(seg_size * qubit_num):
                        if raw_marker[seg] > 0.2:  ##  a better threshold ???
                            break
                    data = raw_data[
                        seg:data_num +
                        seg]  ## here data consists both data from qubit1 and qubit2
                    for q in range(qubit_num):
                        data_reshape = data.reshape(int(data_num / seg_size),
                                                    seg_size)
                        qubit_data[q][k][l] = data_reshape[
                            q::qubit_num].reshape(seg_size * repetition, )
                        n = 2 if q == 0 else q
                        qubit_data_array.append(
                            DataArray(preset_data=qubit_data[q],
                                      name=parameter + 'qubit_%d' % (n),
                                      array_id=array_id + 'qubit_%d' % (n),
                                      is_setpoint=False))

    data_set_new = DataSet(location=new_location + '_ordered_raw_data',
                           io=NewIO,
                           formatter=formatter)
    for array in set_array:
        data_set_new.add_array(array)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])

    return data_set_new
示例#22
0
def _parse_1d_dataset(dataset: DataSet) -> tuple:
    y_data = np.array(dataset.default_parameter_array())
    x_data = np.array(qtt.data.default_setpoint_array(dataset))
    return x_data, y_data
]
arrays4 = [data1, data2, data3]
data_set_2 = new_data(
    arrays=arrays3,
    location=None,
    loc_record={
        'name': 'T1',
        'label': 'Vread_sweep'
    },
    io=NewIO,
)

data_set_2.save_metadata()

test_location = '2017-08-18/20-40-19_T1_Vread_sweep'

data_set_3 = DataSet(
    location=test_location,
    io=NewIO,
)
data_set_3.read()
AWGpara_array = data_set_3.arrays['AWGpara_set'].ndarray
index0_array = data_set_3.arrays['index0_set'].ndarray
digitizer_array = data_set_3.arrays['digitizer_digitizer'].ndarray

#
#print('loop.data_set: %s' % LP.data_set)
#
#data = LP.run()
#
示例#24
0
    def test_from_server(self, gdm_mock):
        mock_dm = MockDataManager()
        gdm_mock.return_value = mock_dm
        mock_dm.location = 'Mars'
        mock_dm.live_data = MockLive()

        # wrong location or False location - converts to local
        data = DataSet(location='Jupiter',
                       data_manager=True,
                       mode=DataMode.PULL_FROM_SERVER)
        self.assertEqual(data.mode, DataMode.LOCAL)

        data = DataSet(location=False,
                       data_manager=True,
                       mode=DataMode.PULL_FROM_SERVER)
        self.assertEqual(data.mode, DataMode.LOCAL)

        # location matching server - stays in server mode
        data = DataSet(location='Mars',
                       data_manager=True,
                       mode=DataMode.PULL_FROM_SERVER,
                       formatter=MockFormatter())
        self.assertEqual(data.mode, DataMode.PULL_FROM_SERVER)
        self.assertEqual(data.arrays, MockLive.arrays)

        # cannot write except in LOCAL mode
        with self.assertRaises(RuntimeError):
            data.write()

        # cannot finalize in PULL_FROM_SERVER mode
        with self.assertRaises(RuntimeError):
            data.finalize()

        # now test when the server says it's not there anymore
        mock_dm.location = 'Saturn'
        data.sync()
        self.assertEqual(data.mode, DataMode.LOCAL)
        self.assertEqual(data.has_read_data, True)

        # now it's LOCAL so we *can* write.
        data.write()
        self.assertEqual(data.has_written_data, True)

        # location=False: write, read and sync are noops.
        data.has_read_data = False
        data.has_written_data = False
        data.location = False
        data.write()
        data.read()
        data.sync()
        self.assertEqual(data.has_read_data, False)
        self.assertEqual(data.has_written_data, False)
示例#25
0
def dataset_dimension(dataset: DataSet) -> int:
    """ Return dimension of DataSet """
    return len(dataset.default_parameter_array().set_arrays)
示例#26
0
    def test_to_server(self, gdm_mock):
        mock_dm = MockDataManager()
        mock_dm.needs_restart = True
        gdm_mock.return_value = mock_dm

        data = DataSet(location='Venus',
                       data_manager=True,
                       mode=DataMode.PUSH_TO_SERVER)
        self.assertEqual(mock_dm.needs_restart, False, data)
        self.assertEqual(mock_dm.data_set, data)
        self.assertEqual(data.data_manager, mock_dm)
        self.assertEqual(data.mode, DataMode.PUSH_TO_SERVER)

        # cannot write except in LOCAL mode
        with self.assertRaises(RuntimeError):
            data.write()

        # now do what the DataServer does with this DataSet: init_on_server
        # fails until there is an array
        with self.assertRaises(RuntimeError):
            data.init_on_server()

        data.add_array(MockArray())
        data.init_on_server()
        self.assertEqual(data.noise.ready, True)

        # we can only add a given array_id once
        with self.assertRaises(ValueError):
            data.add_array(MockArray())
def convert_to_ordered_data(data_set,
                            loop_num,
                            qubit_num,
                            name='frequency',
                            unit='GHz',
                            sweep_array=None):
    #    Dimension = '1D'
    for parameter in data_set.arrays:
        data_array = data_set.arrays[parameter]
        dimension_1 = data_array.shape[0]
        arrayid = data_set.arrays[parameter].array_id
        if parameter.endswith('set'):
            if data_array.ndarray.ndim == 1:
                set_array1 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)
            elif data_array.ndarray.ndim == 2 and not parameter.startswith(
                    'index'):
                set_array2 = DataArray(preset_data=data_array.ndarray,
                                       name=parameter,
                                       array_id=arrayid,
                                       is_setpoint=True)

        elif not parameter.endswith('set'):

            data_num = int(data_set.arrays[parameter].shape[1] / 2 /
                           (repetition + 1) * repetition)

            qubit_data_num = int(data_num / qubit_num)

            data = np.ndarray(shape=(dimension_1, data_num))
            marker = np.ndarray(shape=(dimension_1, data_num))
            setpara = np.ndarray(shape=(dimension_1, qubit_data_num))

            qubit_data = np.ndarray(shape=(qubit_num, dimension_1,
                                           qubit_data_num))
            qubit_data_array = []
            for k in range(dimension_1):
                raw_data = data_array[k][::2]
                raw_marker = data_array[k][1::2]
                for seg in range(seg_size * loop_num):
                    if raw_marker[seg] > 0.1:  ##  a better threshold ???
                        break
                data[k] = raw_data[seg:data_num + seg]
                marker[k] = raw_marker[seg:data_num + seg]
                if sweep_array is None:
                    setpara[k] = np.linspace(0, data_num - 1, qubit_data_num)
                else:
                    sa = np.vstack(
                        [np.repeat(sweep_array, int(seg_size), axis=0)] *
                        repetition)
                    setpara[k] = sa.reshape(sa.size, )

                if qubit_num > 1:
                    data_reshape = data[k].reshape(int(data_num / seg_size),
                                                   seg_size)
                    for q in range(qubit_num):
                        qubit_data[q][k] = np.append(
                            np.array([]), data_reshape[q::qubit_num])
                elif qubit_num == 1:
                    qubit_data[0][k] = data[k]

            set_array3 = DataArray(preset_data=setpara,
                                   name=name,
                                   array_id=name + '_set',
                                   is_setpoint=True)
            for q in range(qubit_num):
                qubit_data_array.append(
                    DataArray(preset_data=qubit_data[q],
                              name=parameter + 'qubit_%d' % (q + 1),
                              array_id=arrayid + 'qubit_%d' % (q + 1),
                              is_setpoint=False))

    data_set_new = DataSet(location=new_location,
                           io=NewIO,
                           formatter=formatter)
    data_set_new.add_array(set_array1)
    data_set_new.add_array(set_array2)
    if loop_num != 1:
        data_set_new.add_array(set_array3)
    for q in range(qubit_num):
        data_set_new.add_array(qubit_data_array[q])
#    data_set_new.add_array(data_array4)
    return data_set_new
示例#28
0
def plot_dataset(dataset: DataSet, win: pyplot.PlotWindow = None):
    """
    Plot the given dataset.

    If a window is given, then the dataset will be appended into the window,
    attempting to match the PlotItem to the correct dataset using the title.

    If a matching plot is not found, a new plot will be inserted.

    Args:
        dataset [qcodes.DataSet]: The qcodes dataset to plot.
        win Union[pyplot.PlotWindow, None]: The window to plot into, or none if
            we should create a new window.
    """
    if win is None:
        win = pyplot.PlotWindow(title='ID: {}'.format(dataset.run_id))
        appending = False
    elif isinstance(win, pyplot.PlotWindow):
        appending = True
    else:
        raise TypeError(
            f"Unexpected type for win. Expected pyplot.PlotWindow, got {type(win)}."
        )

    # Plot each dependant dataset in the data
    data = dataset.to_pandas_dataframe_dict()
    for param in data:
        param = dataset.paramspecs[param]
        dep_params = [dataset.paramspecs[p] for p in param._depends_on]

        if len(dep_params) == 1:
            plot = None
            if appending:
                plot = find_plot_by_paramspec(win, dep_params[0], param)
                plot.plot_title += f" (id: {dataset.run_id})"
                if not plot.left_axis.checkParamspec(param):
                    raise ValueError(
                        f"Left axis label/units incompatible. "
                        f"Got: {param}, expecting: {plot.left_axis.label}, {plot.left_axis.units}."
                    )
                if not plot.bot_axis.checkParamspec(dep_params[0]):
                    raise ValueError(
                        f"Bottom axis label/units incompatible. "
                        f"Got: {dep_params[0]}, expecting: {plot.bot_axis.label}, {plot.bot_axis.units}."
                    )

            if plot is None:
                plot = win.addPlot()
                plot.plot_title = (
                    f"{dep_params[0].name} ({dep_params[0].label}) "
                    f"v.<br>{param.name} ({param.label}) "
                    f"(id: {dataset.run_id})")

            c_data = data[param.name]
            if c_data.isna().all(axis=None):
                # No data in plot
                continue
            add_line_plot(plot, c_data, x=dep_params[0], y=param)
        elif len(dep_params) == 2:
            plot = None
            if appending:
                plot = find_plot_by_paramspec(win, dep_params[0],
                                              dep_params[1])
                plot.plot_title += f" (id: {dataset.run_id})"
                if not plot.left_axis.checkParamspec(dep_params[1]):
                    raise ValueError(
                        f"Left axis label/units incompatible. "
                        f"Got: {dep_params[1]}, expecting: {plot.left_axis.label}, {plot.left_axis.units}."
                    )
                if not plot.bot_axis.checkParamspec(dep_params[0]):
                    raise ValueError(
                        f"Bottom axis label/units incompatible. "
                        f"Got: {dep_params[0]}, expecting: {plot.bot_axis.label}, {plot.bot_axis.units}."
                    )
                histogram = plot.items[0].histogram
                if not histogram.axis.checkParamspec(param):
                    raise ValueError(
                        f"Color axis label/units incompatible. "
                        f"Got: {param}, expecting: {histogram.axis.label}, {histogram.axis.units}."
                    )

            if plot is None:
                plot = win.addPlot()
                plot.plot_title = (
                    f"{dep_params[0].name} ({dep_params[0].label}) "
                    f"v.<br>{dep_params[1].name} ({dep_params[1].label}) "
                    f"(id: {dataset.run_id})")
            c_data = data[param.name].unstack().droplevel(0, axis=1)
            if c_data.isna().all(axis=None):
                # No data in plot
                continue
            add_image_plot(plot,
                           c_data,
                           x=dep_params[0],
                           y=dep_params[1],
                           z=param)
        else:
            raise ValueError(
                "Invalid number of dimensions in dataset. Can only plot 1D or 2D traces."
            )

    return win