Exemple #1
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    def process(self, In):
        df = In
        if self._ctrlWidget.saveAllowed():
            kwargs = self.ctrlWidget().prepareInputArguments()
            fileName = QtGui.QFileDialog.getSaveFileName(
                None, "Save As..", "export.xlsx",
                "Excel files (*.xls *.xlsx)")[0]
            if fileName:
                with BusyCursor():
                    df.to_excel(fileName, **kwargs)

        if self._ctrlWidget.toClipbord():
            with BusyCursor():
                df.to_clipboard(excel=True)
        return
Exemple #2
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    def handleSave(self, useSelection=False, missing_value=u''):
        missing_value = unicode(missing_value)

        model = self.model()
        if useSelection:
            selection = self.selectionModel().selection().indexes()
            if selection:
                topLeft = selection[0]
                bottomRight = selection[-1]

                rows = xrange(topLeft.row(), bottomRight.row() + 1)
                columns = xrange(topLeft.column(), bottomRight.column() + 1)
            else:
                return None
        else:
            rows = xrange(model.rowCount())
            columns = xrange(model.columnCount())

        fn = self.fileSaveAs()
        if fn:
            try:
                with BusyCursor(), open(unicode(fn), 'wb') as stream:
                    if fn.endswith('.tsv'):
                        dialect = 'excel-tab'
                    else:
                        dialect = 'excel'
                    writer = csv.writer(stream, dialect=dialect)

                    # Write header
                    if self.horizontalHeadersSet:
                        header_row = []
                        if self.verticalHeadersSet:
                            header_row.append(u'')
                        for c in columns:
                            header_row.append(
                                unicode(self.horizontalHeaderItem(c)))
                        writer.writerow(header_row)

                    # Write data
                    for row in rows:
                        rowdata = []
                        if self.verticalHeadersSet:
                            rowdata.append(
                                unicode(self.verticalHeaderItem(row)))
                        for column in columns:
                            index = model.index(row, column)
                            item = model.data(index)
                            if item:
                                rowdata.append(unicode(item))
                            else:
                                rowdata.append(missing_value)
                        writer.writerow(rowdata)
                QtGui.QMessageBox.information(
                    None, 'Export table to file',
                    'File `{0}` saved successfully'.format(fn))
            except Exception, err:
                QtGui.QMessageBox.critical(
                    None, 'Export table to file',
                    'File `{2}` cannot be saved:\n{0}\n{1}'.format(
                        Exception, err, fn))
    def process(self, df):
        if df is None:
            del self.item
            self.item = None
            return {'Curve': None, 'pd.Series': None }
        if self.item is None:
            self.item = PlotDataItem(clipToView=False)

        colname = [col for col in df.columns if isNumpyNumeric(df[col].dtype)]
        self._ctrlWidget.param('Y:signal').setLimits(colname)
        colname = [col for col in df.columns if isNumpyDatetime(df[col].dtype)]
        self._ctrlWidget.param('X:datetime').setLimits(colname)

        with BusyCursor():
            kwargs = self.ctrlWidget().prepareInputArguments()
            
            #self.item = PlotDataItem(clipToView=False)
            t = df[kwargs['X:datetime']].values
            # part 1
            timeSeries = pd.DataFrame(data=df[kwargs['Y:signal']].values, index=t, columns=[kwargs['Y:signal']])

            # part 2
            #   convert time
            b = t.astype(np.dtype('datetime64[s]'))
            timeStamps = b.astype(np.int64)-kwargs['tz correct']*60*60+time.timezone
            #   now create curve
            pen = fn.mkPen(color=kwargs['color'], width=kwargs['width'], style=kwargs['style'])
            self.item.setData(timeStamps, df[kwargs['Y:signal']].values, pen=pen, name=kwargs['Y:signal'])
            
            self.item.setSymbol(kwargs['symbol'])
            if kwargs['symbol'] is not None:
                self.item.setSymbolPen(kwargs['color'])
                self.item.setSymbolBrush(kwargs['color'])
                self.item.setSymbolSize(kwargs['symbolSize'])
        return {'Curve': self.item, 'pd.Series': timeSeries }
Exemple #4
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 def togglePoints(self, enable):
     #print('togglePoints', enable)
     with BusyCursor():
         for TSitem in self.parent().TSitems().values():
             if enable:
                 symbol = 'x'
             else:
                 symbol = None
Exemple #5
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    def process(self, In):
        df = In
        if df is None:
            return

        self.CW().param('eq').setValue('')

        if self._df_id != id(df):
            #print 'df new'
            self._df_id = id(df)
            self.CW().disconnect_valueChanged2upd(self.CW().param('datetime'))
            self.CW().disconnect_valueChanged2upd(self.CW().param('sig'))
            colname = [
                col for col in df.columns if isNumpyDatetime(df[col].dtype)
            ]
            self.CW().param('datetime').setLimits(colname)
            colname = [
                col for col in df.columns if isNumpyNumeric(df[col].dtype)
            ]
            self.CW().param('sig').setLimits(colname)
            self.CW().connect_valueChanged2upd(self.CW().param('datetime'))
            self.CW().connect_valueChanged2upd(self.CW().param('sig'))
            # ------------------------------------------------------
            # now update our range selectors
            kwargs = self.CW().prepareInputArguments()
            t_vals = df[kwargs['datetime']].values
            t_min = pd.to_datetime(str(min(t_vals)))
            t_max = pd.to_datetime(str(max(t_vals)))

            self.CW().disconnect_valueChanged2upd(self.CW().param('t0'))
            self.CW().disconnect_valueChanged2upd(self.CW().param('t1'))
            self.CW().param('t0').setValue(t_min.strftime('%Y-%m-%d %H:%M:%S'))
            self.CW().param('t0').setDefault(
                t_min.strftime('%Y-%m-%d %H:%M:%S'))
            self.CW().param('t1').setValue(t_max.strftime('%Y-%m-%d %H:%M:%S'))
            self.CW().param('t1').setDefault(
                t_max.strftime('%Y-%m-%d %H:%M:%S'))
            if self.CW().p['ranges'] is True:
                self.CW().connect_valueChanged2upd(self.CW().param('t0'))
                self.CW().connect_valueChanged2upd(self.CW().param('t1'))

        # get params once again
        kwargs = self.CW().prepareInputArguments()
        # ------------------------------------------------------

        with BusyCursor():
            df_out, eq_str, function, self.fig = pandas_fourier_analysis(
                df,
                kwargs['sig'],
                date_name=kwargs['datetime'],
                ranges=kwargs['ranges'],
                N_MAX_POW=kwargs['N_MAX_POW'],
                generate_plot=True)

        self.CW().param('eq').setValue(eq_str)
        self._PLOT_REQUESTED = False

        return {'params': df_out, 'f(t)': function}
Exemple #6
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    def process(self, df_gw, df_w, E):
        if df_gw is None or df_w is None:
            raise Exception(
                'Hydrograph data not found in terminals `df_gw` or `df_w`')
            return {'tlag': None}
        if E in [None, nan]:
            raise Exception('Tidal efficiency is invalid: E={0}'.format(E))
            return {'tlag': None}
        self.CW().param('tlag_grp', 'tlag = ').setValue('?')

        colname = [
            col for col in df_gw.columns
            if not isNumpyDatetime(df_gw[col].dtype)
        ]
        self.CW().param('gw').setLimits(colname)
        colname = [
            col for col in df_gw.columns if isNumpyDatetime(df_gw[col].dtype)
        ]
        self.CW().param('gw_dtime').setLimits(colname)

        colname = [
            col for col in df_w.columns if not isNumpyDatetime(df_w[col].dtype)
        ]
        self.CW().param('river').setLimits(colname)
        colname = [
            col for col in df_w.columns if isNumpyDatetime(df_w[col].dtype)
        ]
        self.CW().param('river_dtime').setLimits(colname)

        if not self.CW().param('E_grp', 'manual_E').value():
            self.CW().disconnect_valueChanged2upd(self.CW().param(
                'E_grp', 'E'))
            self.CW().param('E_grp', 'E').setValue(
                E)  # maybe this will provoke process onceagain.
            self.CW().connect_valueChanged2upd(self.CW().param('E_grp', 'E'))

        kwargs = self.CW().prepareInputArguments()
        E = kwargs['E']
        # and i would have to block the signals here...
        with BusyCursor():
            if kwargs['method'] == '1) Erskine 1991':
                tlag = timelag_erskine1991_method(
                    df_gw,
                    kwargs['gw'],
                    kwargs['gw_dtime'],
                    df_w,
                    kwargs['river'],
                    kwargs['river_dtime'],
                    E,
                    tlag_tuple=(kwargs['t1'], kwargs['t2'], kwargs['t_step']),
                    log=True)
            else:
                raise Exception('Method <%s> not yet implemented' %
                                kwargs['method'])

            self.CW().param('tlag_grp', 'tlag = ').setValue(str(tlag))
        return {'tlag': tlag}
Exemple #7
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 def load_slides(self, indexes: [QModelIndex]) -> None:
     with BusyCursor():
         self.workspace_model.beginResetModel()
         for index in indexes:
             if index.isValid():
                 item = index.model().getItem(index)
                 item.load()
         self.workspace_model.endResetModel()
         self.hub.broadcast(SlideLoadedMessage(self))
    def process(self, In):
        if isinstance(In, np.recarray):
            receivedColumns = In.dtype.names
        else:
            if In is not None:
                receivedColumns = In.columns
            else:
                with BusyCursor():
                    self.deleteAllColumns()
                    self._ctrlWidget.setFields()
                return
        with BusyCursor():
            for colName in receivedColumns:
                self._ctrlWidget.addDfColumn(colName)
                self._ctrlWidget.param(colName, 'name').setValue(colName)

            self._ctrlWidget.spw().setData(In)
            self._ctrlWidget.setFields()
        return
Exemple #9
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    def import_mask(self, file_path: str) -> None:
        with BusyCursor():
            filename, file_extension = os.path.splitext(file_path)
            file_name = os.path.basename(file_path)
            file_extension = file_extension.lower()
            if file_extension == '.tiff' or file_extension == '.tif':
                mask = Mask(file_name, file_path, MaskType.TIFF, MaskLoader)
                mask.load()

            if mask is not None:
                self.workspace_model.beginResetModel()
                self.workspace_model.workspace_data.add_slide(mask)
                self.workspace_model.endResetModel()
Exemple #10
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    def process(self, In):
        gc.collect()
        # populate USE COLUMNS param, but only on item received, not when we click button
        if not self._ctrlWidget.calculateNAllowed(
        ) and not self._ctrlWidget.applyAllowed():
            self._ctrlWidget.param('Apply to columns').clearChildren()

        with BusyCursor():
            df = copy.deepcopy(In)
            # check out http://docs.scipy.org/doc/numpy-dev/neps/datetime-proposal.html

            colnames = [
                col for col in df.columns if isNumpyDatetime(df[col].dtype)
            ] + [None]
            self._ctrlWidget.param('datetime').setLimits(colnames)
            self._ctrlWidget.param('datetime').setValue(colnames[0])

            # populate (Apply to columns) param, but only on item received, not when we click button
            if not self._ctrlWidget.calculateNAllowed(
            ) and not self._ctrlWidget.applyAllowed():
                colnames = [
                    col for col in df.columns if isNumpyNumeric(df[col].dtype)
                ]
                for col_name in colnames:  # cycle through each column...
                    self._ctrlWidget.param('Apply to columns').addChild({
                        'name':
                        col_name,
                        'type':
                        'bool',
                        'value':
                        True
                    })

            kwargs = self.ctrlWidget().prepareInputArguments()

            if self._ctrlWidget.calculateNAllowed():
                N = serfes.get_number_of_measurements_per_day(
                    df, datetime=kwargs['datetime'], log=kwargs['log'])
                self._ctrlWidget.param('N').setValue(N)

            if self._ctrlWidget.applyAllowed():
                if kwargs['N'] in [None, '']:
                    QtGui.QMessageBox.warning(
                        None, "Node: {0}".format(self.nodeName),
                        'First set number of measurements per day in parameter `N`'
                    )
                    raise ValueError(
                        'First set number of measurements per day in parameter `N`'
                    )
                result = serfes.filter_wl_71h_serfes1991(df, **kwargs)
                return {'Out': result}
Exemple #11
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    def import_slide(self, file_path: str) -> None:
        with BusyCursor():
            filename, file_extension = os.path.splitext(file_path)
            file_name = os.path.basename(file_path)
            file_extension = file_extension.lower()
            if file_extension == '.mcd':
                slide = Slide(file_name, file_path, SlideType.MCD, McdLoader)
            elif file_extension == '.tiff' or file_extension == '.tif':
                if filename.endswith('.ome'):
                    slide = Slide(file_name, file_path, SlideType.OMETIFF, OmeTiffLoader)
            elif file_extension == '.txt':
                slide = Slide(file_name, file_path, SlideType.TXT, TxtLoader)

            if slide is not None:
                self.workspace_model.beginResetModel()
                self.workspace_model.workspace_data.add_slide(slide)
                self.workspace_model.endResetModel()
                self.hub.broadcast(SlideImportedMessage(self))
Exemple #12
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    def on_pushButton_viewPlot_clicked(self):
        """ open nice graphic representation of our data"""
        with BusyCursor():
            try:
                df = self.parent().getPandasDataModel().df

                columns = self.parent().getPandasHeaderModel().selectedColumns(
                )  #consider only the selected columns
                datetime_cols = [
                    col for col in columns if isNumpyDatetime(df[col].dtype)
                ]
                numeric_cols = [
                    col for col in columns if isNumpyNumeric(df[col].dtype)
                ]
                datetime_col = datetime_cols[0] if len(
                    datetime_cols
                ) > 0 else None  #plot with x=datetime if possible

                if self.checkBox_separateSubplots.isChecked(
                ) and len(numeric_cols) > 1:
                    '''
                        Do the plotting of each selected numerical column on an individual subplot
                    '''
                    f, axes = plt.subplots(len(numeric_cols), sharex=True)
                    for ax, numeric_col in zip(axes, numeric_cols):
                        df.plot(x=datetime_col, y=numeric_col, ax=ax)
                        legend = ax.legend(shadow=True)
                    # Fine-tune figure; make subplots close to each other and hide x ticks for all but bottom plot.
                    #f.subplots_adjust(hspace=0)
                    plt.setp([a.get_xticklabels() for a in f.axes[:-1]],
                             visible=False)
                else:
                    '''
                        Plot all selected numerical columns together on a single subplot
                    '''
                    f, ax = plt.subplots(1)
                    for numeric_col in numeric_cols:
                        df.plot(x=datetime_col, y=numeric_col, ax=ax)
                    legend = ax.legend(shadow=True)

                f.show()
            except Exception as exp:
                self._parent.setException(exp)
                return
Exemple #13
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    def process(self, In):
        df = In

        self._ctrlWidget.param('Period Check Params', 'Warnings').setValue('?')
        colname = [col for col in df.columns if isNumpyNumeric(df[col].dtype)]
        self._ctrlWidget.param('column').setLimits(colname)
        colname = [col for col in df.columns if isNumpyDatetime(df[col].dtype)]
        self._ctrlWidget.param('datetime').setLimits(colname)

        kwargs = self._ctrlWidget.prepareInputArguments()

        with BusyCursor():
            peaks = detectPeaks_ts(df,
                                   kwargs.pop('column'),
                                   plot=self._plotRequired,
                                   **kwargs)
            self._ctrlWidget.param('Period Check Params', 'Warnings').setValue(
                str(len(peaks[peaks['check'] == False])))

        return {'peaks': peaks}
Exemple #14
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 def process(self, In):
     df = In
     if df is not None:
         # when we recieve a new dataframe into terminal - update possible selection list
         if not self._ctrlWidget.plotAllowed():
             colname = [col for col in df.columns if isNumpyNumeric(df[col].dtype)]
             self._ctrlWidget.param('y').setLimits(colname)
             self._ctrlWidget.param('x').setLimits(colname)
         
         if self._ctrlWidget.plotAllowed():
             kwargs = self.ctrlWidget().prepareInputArguments()
             with BusyCursor():
                 if self._ctrlWidget.param('plot overheads').value() is True:
                     y_name = kwargs['y'][0]
                     x_name = kwargs['x'][0]
                     overhead_name = y_name+' - '+x_name
                     df[overhead_name] = df[y_name]-df[x_name]
                     kwargs['y'] = [overhead_name]
                 
                 plot_pandas.plot_pandas_scatter_special1(df, **kwargs)
                 
                 if self._ctrlWidget.param('plot overheads').value() is True:
                     del df[overhead_name]
Exemple #15
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    def process(self, W_peaks, GW_peaks):
        N_md = '?'
        df_w = W_peaks
        df_gw = GW_peaks

        colname = [
            col for col in df_w.columns if isNumpyDatetime(df_w[col].dtype)
        ]
        self._ctrlWidget.param('Closest Time',
                               'Match Column').setLimits(colname)

        kwargs = self._ctrlWidget.prepareInputArguments()
        with BusyCursor():
            mode = kwargs.pop('Match Option')
            if mode == 'Closest Time':
                matched_peaks = match_peaks(df_w, df_gw,
                                            kwargs.pop('Match Column'),
                                            **kwargs)

            N_md = matched_peaks['md_N'].count()

        self._ctrlWidget.param('MATCHED/PEAKS').setValue('{0}/{1}'.format(
            N_md, len(df_w)))
        return {'matched': matched_peaks}
Exemple #16
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    def process(self, tides):
        if tides is None:
            return
        if self._df_id != id(tides):
            #print 'df new'
            self._df_id = id(tides)
            self.CW().param('tides_grp', 'n_sig').setValue(len(tides)-1)

            self.CW().disconnect_valueChanged2upd(self.CW().param('tides_grp', 'A'))
            self.CW().disconnect_valueChanged2upd(self.CW().param('tides_grp', 'omega'))
            self.CW().disconnect_valueChanged2upd(self.CW().param('tides_grp', 'phi'))

            colname = [col for col in tides.columns if isNumpyNumeric(tides[col].dtype)]
            self.CW().param('tides_grp', 'A').setLimits(colname)
            self.CW().param('tides_grp', 'omega').setLimits(colname)
            self.CW().param('tides_grp', 'phi').setLimits(colname)

            self.CW().param('tides_grp', 'A').setValue(colname[0])
            self.CW().param('tides_grp', 'omega').setValue(colname[1])
            self.CW().param('tides_grp', 'phi').setValue(colname[2])

            self.CW().connect_valueChanged2upd(self.CW().param('tides_grp', 'A'))
            self.CW().connect_valueChanged2upd(self.CW().param('tides_grp', 'omega'))
            self.CW().connect_valueChanged2upd(self.CW().param('tides_grp', 'phi'))

            self.CW().disconnect_valueChanged2upd(self.CW().param('W'))
            W = tides[self.CW().p['tides_grp', 'A']][0]  # 1st value from column `A`
            self.CW().param('W').setValue(W)
            self.CW().param('W').setDefault(W)
            self.CW().connect_valueChanged2upd(self.CW().param('W'))


        kwargs = self.CW().prepareInputArguments()

        kwargs['tides'] = {}
        for i in xrange(len(tides)):
            if not np.isnan(tides.iloc[i][kwargs['df_A']]) and np.isnan(tides.iloc[i][kwargs['df_omega']]):
                continue  #skipping 0-frequency amplitude
            kwargs['tides'][str(i)] = {}
            kwargs['tides'][str(i)]['A']     = tides.iloc[i][kwargs['df_A']]
            kwargs['tides'][str(i)]['omega'] = tides.iloc[i][kwargs['df_omega']]
            kwargs['tides'][str(i)]['phi']   = tides.iloc[i][kwargs['df_phi']]

            #print i, ': a={0}, omega={1}, phi={2}'.format(kwargs['tides'][str(i)]['A'], kwargs['tides'][str(i)]['omega'], kwargs['tides'][str(i)]['phi']  )

        with BusyCursor():
            if kwargs['eq'] == 'tide':
                df = generate_tide(kwargs['t0'], kwargs['dt'], kwargs['tend'], components=kwargs['tides'], W=kwargs['W'], F=kwargs['F'], label=kwargs['label'], equation=kwargs['eq'])
            elif kwargs['eq'] == 'ferris':
                df = generate_tide(kwargs['t0'], kwargs['dt'], kwargs['tend'], components=kwargs['tides'], W=kwargs['W'], F=kwargs['F'], label=kwargs['label'], equation=kwargs['eq'],
                    D=kwargs['ferris']['D'], x=kwargs['ferris']['x'])
            elif kwargs['eq'] == 'xia':
                df = generate_tide(kwargs['t0'], kwargs['dt'], kwargs['tend'], components=kwargs['tides'], W=kwargs['W'], F=kwargs['F'], label=kwargs['label'], equation=kwargs['eq'],
                    x=kwargs['xia']['x'],
                    alpha=kwargs['xia']['alpha'], beta=kwargs['xia']['beta'], theta=kwargs['xia']['theta'],
                    L=kwargs['xia']['L'], K1=kwargs['xia']['K1'], b1=kwargs['xia']['b1'],
                    K=kwargs['xia']['K'], b=kwargs['xia']['b'],
                    K_cap=kwargs['xia']['K_cap'], b_cap=kwargs['xia']['b_cap'])

            else:
                df = None
        return {'sig': df}
Exemple #17
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 def copyAll(self):
     """Copy all data to clipboard."""
     with BusyCursor():
         self.serialize(useSelection=False)
Exemple #18
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 def copySel(self):
     """Copy selected data to clipboard."""
     with BusyCursor():
         data = self.serialize(useSelection=True)
     if data:
         QtGui.QApplication.clipboard().setText(data)
Exemple #19
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    def process(self, df, md_peaks):
        E = None
        self.CW().param('E = ').setValue(str(E))
        self.CW().param('gw').setWritable(True)

        if df is not None:
            for name in ['river', 'gw', 'datetime']:
                self.CW().disconnect_valueChanged2upd(self.CW().param(name))
            colname = [
                col for col in df.columns if isNumpyNumeric(df[col].dtype)
            ]
            self.CW().param('river').setLimits(colname)
            self.CW().param('gw').setLimits(colname)
            colname = [
                col for col in df.columns if isNumpyDatetime(df[col].dtype)
            ]
            self.CW().param('datetime').setLimits(colname)

            for name in ['river', 'gw', 'datetime']:
                self.CW().connect_valueChanged2upd(self.CW().param(name))

            kwargs = self.ctrlWidget().prepareInputArguments()

            if kwargs['method'] == '1) STD':
                E = tidalEfficiency_method1(df, kwargs['river'], kwargs['gw'])
                E_c = None

            elif kwargs['method'] == '2) Cyclic amplitude' or kwargs[
                    'method'] == '3) Cyclic STD':
                if md_peaks is None:
                    msg = 'To use method `{0}` please provide "matched-peaks" data in terminal `md_peaks` (a valid data-set can be created with node `Match Peaks`)'.format(
                        kwargs['method'])
                    QtGui.QMessageBox.warning(
                        None, "Node: {0}".format(self.nodeName), msg)
                    raise ValueError(msg)
                self.CW().disconnect_valueChanged2upd(self.CW().param('gw'))
                self.CW().param('gw').setWritable(False)
                self.CW().param('gw').setLimits(['see matched peaks'])
                self.CW().connect_valueChanged2upd(self.CW().param('gw'))

                mPeaks_slice = md_peaks.loc[~md_peaks['md_N'].isin(
                    [np.nan, None])]  # select only valid cycles

                if kwargs['method'] == '2) Cyclic amplitude':
                    E, E_cyclic = tidalEfficiency_method2(
                        mPeaks_slice['tidal_range'],
                        mPeaks_slice['md_tidal_range'])

                elif kwargs['method'] == '3) Cyclic STD':
                    with BusyCursor():
                        river_name = mPeaks_slice['name'][0]
                        well_name = mPeaks_slice['md_name'][0]
                        E, E_cyclic = tidalEfficiency_method3(
                            df, river_name, well_name, kwargs['datetime'],
                            mPeaks_slice['time_min'], mPeaks_slice['time_max'],
                            mPeaks_slice['md_time_min'],
                            mPeaks_slice['md_time_max'])

                # now do nice output table
                E_c = pd.DataFrame({
                    'N': mPeaks_slice['N'],
                    'md_N': mPeaks_slice['md_N'],
                    'E_cyclic': E_cyclic,
                })
            else:
                raise Exception('Method <%s> is not yet implemented' %
                                kwargs['method'])

            self.CW().param('E = ').setValue('{0:.4f}'.format(E))
        return {'E': E, 'E_cyclic': E_c}
Exemple #20
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    def process(self, In):
        df = In

        self.CW().param('check_grp', 'MIN_grp', 'warn').setValue('?')
        self.CW().param('check_grp', 'MAX_grp', 'warn').setValue('?')
        self.CW().param('check_grp', 'ALL_grp', 'warn').setValue('?')
        self.CW().param('check_grp', 'warn_sum').setValue('?')
        self.CW().param('out_grp', 'raw_nmin').setValue('?')
        self.CW().param('out_grp', 'raw_nmax').setValue('?')
        self.CW().param('out_grp', 'raw_n_all').setValue('?')
        self.CW().param('out_grp', 'n_cycles').setValue('?')
        self.CW().param('Peak Detection Params', 'order').setValue('?')
        if df is None:
            return {'raw': None, 'peaks': None}
        colname = [col for col in df.columns if isNumpyNumeric(df[col].dtype)]
        self.CW().param('column').setLimits(colname)
        colname = [col for col in df.columns if isNumpyDatetime(df[col].dtype)]
        self.CW().param('datetime').setLimits(colname)

        kwargs = self.CW().prepareInputArguments()
        kwargs['split'] = True

        with BusyCursor():
            kwargs['order'] = prepare_order(
                kwargs['T'], kwargs['hMargin'],
                prepare_datetime(df, datetime=kwargs['datetime']))
            self.CW().param('Peak Detection Params',
                            'order').setValue(str(kwargs['order']))

            #peaks = detectPeaks_ts(df, kwargs.pop('column'), plot=self._plotRequired, **kwargs)
            extra, raw, peaks = full_peak_detection_routine(
                df,
                col=kwargs.pop('column'),
                date_col=kwargs.pop('datetime'),
                IDs2mask=kwargs.pop('IDs2mask'),
                valid_range=kwargs.pop('valid_range'),
                plot=self._plotRequired,
                **kwargs)

            n_warn_min = len(extra['warnings']['MIN'])
            n_warn_max = len(extra['warnings']['MAX'])
            n_warn_all = len(extra['warnings']['ALL'])
            self.CW().param('check_grp', 'MIN_grp',
                            'warn').setValue(n_warn_min)
            self.CW().param('check_grp', 'MAX_grp',
                            'warn').setValue(n_warn_max)
            self.CW().param('check_grp', 'ALL_grp',
                            'warn').setValue(n_warn_all)
            self.CW().param('check_grp',
                            'warn_sum').setValue(n_warn_min + n_warn_max +
                                                 n_warn_all)
            self.CW().param('out_grp', 'raw_nmin').setValue(extra['raw_nmin'])
            self.CW().param('out_grp', 'raw_nmax').setValue(extra['raw_nmax'])
            if raw is not None:
                self.CW().param('out_grp',
                                'raw_n_all').setValue(len(raw.index))
            if peaks is not None:
                self.CW().param('out_grp',
                                'n_cycles').setValue(len(peaks.index))

        return {'raw': raw, 'peaks': peaks}
Exemple #21
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 def process(self, display=True):
     kwargs = self.ctrlWidget().prepareInputArguments()
     with BusyCursor():
         df = pd.read_csv(**kwargs)
     return {'Out': df}
Exemple #22
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 def save_workspace(self, path: str) -> None:
     with BusyCursor():
         self.workspace_model.save_workspace(path)
    def process(self, tides):
        #print datetime.datetime.now(), "\t>>> update called",
        df = None

        if id(tides) != self._tides_id or tides is None:
            logger.debug(
                'clearing genCurveNodeCtrlWidget_v2 (Tide Components Section) on_process()'
            )
            #print 'setting tides components'
            self._tides_id = id(tides)
            if hasattr(self, '_ctrlWidget'):
                self._ctrlWidget.clearTideComponents()

            if tides is None:
                #print '\t > returning None'
                return {'sig': None}

            self._ctrlWidget.on_tides_received(tides)

        kwargs = self._ctrlWidget.prepareInputArguments()
        # now prepare the amplitudes
        kwargs['tides'] = {}
        for i in xrange(len(tides)):
            if not np.isnan(tides.iloc[i][kwargs['df_A']]) and np.isnan(
                    tides.iloc[i][kwargs['df_omega']]):
                continue  #skipping 0-frequency amplitude
            kwargs['tides'][str(i)] = {}
            kwargs['tides'][str(i)]['A'] = tides.iloc[i][kwargs['df_A']]
            kwargs['tides'][str(i)]['omega'] = tides.iloc[i][
                kwargs['df_omega']]
            kwargs['tides'][str(i)]['phi'] = tides.iloc[i][kwargs['df_phi']]

        # finally do the calculations
        with BusyCursor():
            #print '\t > doing the calculations'
            if kwargs['eq'] == 'tide':
                df = generate_tide(kwargs['t0'],
                                   kwargs['dt'],
                                   kwargs['tend'],
                                   components=kwargs['tides'],
                                   W=kwargs['W'],
                                   F=kwargs['F'],
                                   label=kwargs['label'],
                                   equation=kwargs['eq'])

            elif kwargs['eq'] == 'ferris':
                df = generate_tide(kwargs['t0'],
                                   kwargs['dt'],
                                   kwargs['tend'],
                                   components=kwargs['tides'],
                                   W=kwargs['W'],
                                   F=kwargs['F'],
                                   label=kwargs['label'],
                                   equation=kwargs['eq'],
                                   D=kwargs['ferris']['D'],
                                   x=kwargs['x'])

            elif kwargs['eq'] == 'xia':
                df = generate_tide(kwargs['t0'],
                                   kwargs['dt'],
                                   kwargs['tend'],
                                   components=kwargs['tides'],
                                   W=kwargs['W'],
                                   F=kwargs['F'],
                                   label=kwargs['label'],
                                   equation=kwargs['eq'],
                                   x=kwargs['x'],
                                   alpha=kwargs['xia']['alpha'],
                                   beta=kwargs['xia']['beta'],
                                   theta=kwargs['xia']['theta'],
                                   L=kwargs['xia']['L'],
                                   K1=kwargs['xia']['K1'],
                                   b1=kwargs['xia']['b1'],
                                   K=kwargs['xia']['K'],
                                   b=kwargs['xia']['b'],
                                   K_cap=kwargs['xia']['K_cap'],
                                   b_cap=kwargs['xia']['b_cap'])

            elif kwargs['eq'] == 'song':
                df = generate_tide(kwargs['t0'],
                                   kwargs['dt'],
                                   kwargs['tend'],
                                   components=kwargs['tides'],
                                   W=kwargs['W'],
                                   F=kwargs['F'],
                                   label=kwargs['label'],
                                   equation=kwargs['eq'],
                                   x=kwargs['x'],
                                   order=kwargs['song']['order'],
                                   b=kwargs['song']['b'],
                                   n_e=kwargs['song']['n_e'],
                                   kf=kwargs['song']['K'],
                                   b2msl=kwargs['song']['b2msl'])
            else:
                df = None

        return {'sig': df}
Exemple #24
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    def _update_images(self):
        with BusyCursor():
            try:
                image = self.data['image']
                image_markers = self.data['image_markers']
            except KeyError:
                # some data (like image) is not defined/loaded
                return

            try:
                roi, _ = self.data['roi'].getArraySlice(
                    image, self.imageView.imageItem)
            except AttributeError:
                # self.data['roi'] is None
                roi = None

            # first check if some markers are outside the ROI position and remove them
            if roi:
                mask = np.ones_like(image_markers)
                mask[roi] = 0

                for cc in zip(*image_markers.nonzero()):
                    label = image_markers[cc]
                    if mask[cc]:
                        # marker is outside ROI
                        image_markers[cc] = 0
                        self.data['lb_act_map'].pop(label, None)

                # reduce image size to ROI
                image = image[roi]
                image_markers = image_markers[roi]

            th = float(self.box_threshold.value())
            # compute threshold overlay
            image_th = _compute_threshold_image(image, th)

            if image_markers.any():
                image_watershed = _compute_watershed(image_th, image_markers)
            else:
                # no markers are present
                image_watershed = np.zeros_like(image)

            # compute overlay
            # todo: soft-code alpha
            colors = []
            try:
                label_to_action = self.data['lb_act_map']
                for i, action in label_to_action.items():
                    if action == mACTION_ADD:
                        color = mACCEPT_COLORS[i % len(mACCEPT_COLORS)]
                    else:
                        color = mIGNORE_COLORS[i % len(mIGNORE_COLORS)]
                    colors.append(color)
            except KeyError:
                pass
            # add the color for threshold areas
            colors.append(THRESHOLD_COLOR)
            # to color the threshold(ed) area (i.e. the background) a different color, we assign a dummy label (-1)
            tmp = np.zeros_like(image)
            tmp[image_th == BACKGROUND_LABEL] = -1

            # todo: soft-code alpha
            image_overlay = label2rgb(tmp + image_watershed,
                                      image,
                                      alpha=0.4,
                                      bg_label=BACKGROUND_LABEL,
                                      bg_color=None,
                                      colors=colors)

            # draw markers
            for cc in zip(*image_markers.nonzero()):
                label = image_markers[cc]
                action = label_to_action[label]
                color = mCROSS_COLORS[
                    0] if action == mACTION_ADD else mCROSS_COLORS[1]
                # todo: soft-code size
                _draw_cross(image_overlay, cc, 20, color)

            if roi:
                # restore images to the proper size
                tmp = np.zeros(shape=self.imageView.image.shape[0:2],
                               dtype=image_watershed.dtype)
                tmp[roi] = image_watershed
                image_watershed = tmp

                tmp = np.stack([self.data['image'] / 255 for _ in range(3)],
                               axis=-1)
                tmp[roi] = image_overlay
                image_overlay = tmp

                tmp = np.ones_like(self.data['image']) * BACKGROUND_LABEL
                tmp[roi] = image_th
                image_th = tmp

            # save to data container
            self.data['image_watershed'] = image_watershed
            self.data['image_th'] = image_th
            self.data['image_overlay'] = image_overlay
            # update image view
            self._update_imageview()
Exemple #25
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 def load_workspace(self, path: str) -> None:
     with BusyCursor():
         self.clear()
         self.workspace_model.beginResetModel()
         self.workspace_model.load_workspace(path)
         self.workspace_model.endResetModel()