class ChiSquareAnalysis:
    def __init__(self,
                 df_context,
                 df_helper,
                 chisquare_result,
                 target_dimension,
                 analysed_dimension,
                 significant_variables,
                 num_analysed_variables,
                 data_frame,
                 measure_columns,
                 base_dir,
                 appid=None,
                 target_chisquare_result=None):
        self._blockSplitter = "|~NEWBLOCK~|"
        self._highlightFlag = "|~HIGHLIGHT~|"
        self._dimensionNode = NarrativesTree()
        self._dimensionNode.set_name(target_dimension)
        self._data_frame = data_frame
        self._dataframe_context = df_context
        self._dataframe_helper = df_helper
        self._chisquare_result = chisquare_result
        self._target_dimension = target_dimension
        self._analysed_dimension = analysed_dimension
        self._significant_variables = significant_variables
        self._target_chisquare_result = target_chisquare_result
        self._measure_columns = self._dataframe_helper.get_numeric_columns()
        self._chiSquareLevelLimit = GLOBALSETTINGS.CHISQUARELEVELLIMIT

        self._num_analysed_variables = num_analysed_variables
        self._chiSquareTable = chisquare_result.get_contingency_table()

        significant_variables = list(
            set(significant_variables) - {analysed_dimension})
        if len(significant_variables) <= 20:
            if len(significant_variables) <= 3:
                self._second_level_dimensions = list(significant_variables)
            else:
                self._second_level_dimensions = list(significant_variables)[:3]
        else:
            self._second_level_dimensions = list(significant_variables)[:5]

        print self._second_level_dimensions

        self._appid = appid
        self._card1 = NormalCard()
        self._targetCards = []
        self._base_dir = base_dir

        self._binTargetCol = False
        self._binAnalyzedCol = False
        print "--------Chi-Square Narratives for ", analysed_dimension, "---------"
        if self._dataframe_context.get_custom_analysis_details() != None:
            binnedColObj = [
                x["colName"]
                for x in self._dataframe_context.get_custom_analysis_details()
            ]
            print "analysed_dimension : ", self._analysed_dimension
            if binnedColObj != None and self._target_dimension in binnedColObj:
                self._binTargetCol = True
            if binnedColObj != None and (
                    self._analysed_dimension in binnedColObj
                    or self._analysed_dimension in self._measure_columns):
                self._binAnalyzedCol = True

        if self._appid == None:
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1] + self._targetCards)
            self._dimensionNode.set_name("{}".format(analysed_dimension))
        elif self._appid == "2":
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1])
            self._dimensionNode.set_name("{}".format(analysed_dimension))
        elif self._appid == "1":
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1])
            self._dimensionNode.set_name("{}".format(analysed_dimension))

    def get_dimension_node(self):
        return json.loads(
            CommonUtils.convert_python_object_to_json(self._dimensionNode))

    def get_dimension_card1(self):
        return self._card1

    def _generate_narratives(self):
        chisquare_result = self._chisquare_result
        target_dimension = self._target_dimension
        analysed_dimension = self._analysed_dimension
        significant_variables = self._significant_variables
        num_analysed_variables = self._num_analysed_variables
        table = self._chiSquareTable
        total = self._chiSquareTable.get_total()

        levels = self._chiSquareTable.get_column_two_levels()
        level_counts = self._chiSquareTable.get_column_total()
        levels_count_sum = sum(level_counts)
        levels_percentages = [
            i * 100.0 / levels_count_sum for i in level_counts
        ]
        sorted_levels = sorted(zip(level_counts, levels), reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]

        top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        bottom_dim = sorted_levels[-1][1]
        bottom_dim_contribution = sorted_levels[-1][0]
        bottom_dims = [
            y for x, y in sorted_levels if x == bottom_dim_contribution
        ]

        target_levels = self._chiSquareTable.get_column_one_levels()

        target_counts = self._chiSquareTable.get_row_total()
        sorted_target_levels = sorted(zip(target_counts, target_levels),
                                      reverse=True)

        top_target_count, top_target = sorted_target_levels[0]
        second_target_count, second_target = sorted_target_levels[1]

        top_target_contributions = [
            table.get_value(top_target, i) for i in levels
        ]
        sum_top_target = sum(top_target_contributions)

        sorted_levels = sorted(zip(top_target_contributions, levels),
                               reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]
        top_target_top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        top_target_top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        top_target_bottom_dim = sorted_levels[-1][1]
        top_target_bottom_dim_contribution = sorted_levels[-1][0]

        top_target_percentages = [
            i * 100.0 / sum_top_target for i in top_target_contributions
        ]
        best_top_target_index = top_target_contributions.index(
            max(top_target_contributions))
        worst_top_target_index = top_target_contributions.index(
            min(top_target_contributions))
        top_target_differences = [
            x - y for x, y in zip(levels_percentages, top_target_percentages)
        ]
        if len(top_target_differences) > 6:
            tops = 2
            bottoms = -2
        elif len(top_target_differences) > 4:
            tops = 2
            bottoms = -1
        else:
            tops = 1
            bottoms = -1
        sorted_ = sorted(enumerate(top_target_differences),
                         key=lambda x: x[1],
                         reverse=True)
        best_top_difference_indices = [x for x, y in sorted_[:tops]]
        worst_top_difference_indices = [x for x, y in sorted_[bottoms:]]

        top_target_shares = [
            x * 100.0 / y
            for x, y in zip(top_target_contributions, level_counts)
        ]
        max_top_target_shares = max(top_target_shares)
        best_top_target_share_index = [
            idx for idx, val in enumerate(top_target_shares)
            if val == max_top_target_shares
        ]
        level_counts_threshold = sum(level_counts) * 0.05 / len(level_counts)
        min_top_target_shares = min([
            x for x, y in zip(top_target_shares, level_counts)
            if y >= level_counts_threshold
        ])
        worst_top_target_share_index = [
            idx for idx, val in enumerate(top_target_shares)
            if val == min_top_target_shares
        ]
        overall_top_percentage = sum_top_target * 100.0 / total

        second_target_contributions = [
            table.get_value(second_target, i) for i in levels
        ]
        sum_second_target = sum(second_target_contributions)

        sorted_levels = sorted(zip(second_target_contributions, levels),
                               reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]
        second_target_top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        second_target_top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        second_target_bottom_dim = sorted_levels[-1][1]
        second_target_bottom_dim_contribution = sorted_levels[-1][0]

        second_target_percentages = [
            i * 100.0 / sum_second_target for i in second_target_contributions
        ]
        best_second_target_index = second_target_contributions.index(
            max(second_target_contributions))
        worst_second_target_index = second_target_contributions.index(
            min(second_target_contributions))
        second_target_differences = [
            x - y
            for x, y in zip(levels_percentages, second_target_percentages)
        ]
        if len(second_target_differences) > 6:
            tops = 2
            bottoms = -2
        elif len(second_target_differences) > 4:
            tops = 2
            bottoms = -1
        else:
            tops = 1
            bottoms = -1
        sorted_ = sorted(enumerate(second_target_differences),
                         key=lambda x: x[1],
                         reverse=True)
        best_second_difference_indices = [x for x, y in sorted_[:tops]]
        worst_second_difference_indices = [x for x, y in sorted_[bottoms:]]

        second_target_shares = [
            x * 100.0 / y
            for x, y in zip(second_target_contributions, level_counts)
        ]
        max_second_target_shares = max(second_target_shares)
        best_second_target_share_index = [
            idx for idx, val in enumerate(second_target_shares)
            if val == max_second_target_shares
        ]
        level_counts_threshold = sum(level_counts) * 0.05 / len(level_counts)
        min_second_target_shares = min([
            x for x, y in zip(second_target_shares, level_counts)
            if y >= level_counts_threshold
        ])
        # worst_second_target_share_index = second_target_shares.index(min_second_target_shares)
        worst_second_target_share_index = [
            idx for idx, val in enumerate(second_target_shares)
            if val == min_second_target_shares
        ]
        overall_second_percentage = sum_second_target * 100.0 / total

        targetCardDataDict = {}
        targetCardDataDict['target'] = target_dimension
        targetCardDataDict['colname'] = analysed_dimension
        targetCardDataDict['num_significant'] = len(significant_variables)
        targetCardDataDict['plural_colname'] = NarrativesUtils.pluralize(
            analysed_dimension)

        targetCardDataDict["blockSplitter"] = self._blockSplitter
        targetCardDataDict["binTargetCol"] = self._binTargetCol
        targetCardDataDict["binAnalyzedCol"] = self._binAnalyzedCol
        targetCardDataDict['highlightFlag'] = self._highlightFlag
        targetCardDataDict['levels'] = levels

        data_dict = {}
        data_dict[
            'best_second_difference'] = best_second_difference_indices  ##these changed
        data_dict['worst_second_difference'] = worst_second_difference_indices
        data_dict['best_top_difference'] = best_top_difference_indices
        data_dict['worst_top_difference'] = worst_top_difference_indices
        data_dict['levels_percentages'] = levels_percentages
        data_dict['top_target_percentages'] = top_target_percentages
        data_dict['second_target_percentages'] = second_target_percentages
        data_dict['levels'] = levels
        data_dict['best_top_share'] = best_top_target_share_index
        data_dict['worst_top_share'] = worst_top_target_share_index
        data_dict['best_second_share'] = best_second_target_share_index
        data_dict['worst_second_share'] = worst_second_target_share_index
        data_dict['top_target_shares'] = top_target_shares
        data_dict['second_target_shares'] = second_target_shares
        data_dict['overall_second'] = overall_second_percentage
        data_dict['overall_top'] = overall_top_percentage

        data_dict['num_significant'] = len(significant_variables)
        data_dict['colname'] = analysed_dimension
        data_dict['plural_colname'] = NarrativesUtils.pluralize(
            analysed_dimension)
        data_dict['target'] = target_dimension
        data_dict['top_levels'] = top_dims
        data_dict['top_levels_percent'] = round(
            top_dims_contribution * 100.0 / total, 1)
        data_dict['bottom_level'] = bottom_dim
        data_dict['bottom_levels'] = bottom_dims
        data_dict['bottom_level_percent'] = round(
            bottom_dim_contribution * 100 / sum(level_counts), 2)
        data_dict['second_target'] = second_target
        data_dict['second_target_top_dims'] = second_target_top_dims
        data_dict[
            'second_target_top_dims_contribution'] = second_target_top_dims_contribution * 100.0 / sum(
                second_target_contributions)
        data_dict['second_target_bottom_dim'] = second_target_bottom_dim
        data_dict[
            'second_target_bottom_dim_contribution'] = second_target_bottom_dim_contribution
        data_dict['best_second_target'] = levels[best_second_target_index]
        data_dict['best_second_target_count'] = second_target_contributions[
            best_second_target_index]
        data_dict['best_second_target_percent'] = round(
            second_target_contributions[best_second_target_index] * 100.0 /
            sum(second_target_contributions), 2)
        data_dict['worst_second_target'] = levels[worst_second_target_index]
        data_dict['worst_second_target_percent'] = round(
            second_target_contributions[worst_second_target_index] * 100.0 /
            sum(second_target_contributions), 2)

        data_dict['top_target'] = top_target
        data_dict['top_target_top_dims'] = top_target_top_dims
        data_dict[
            'top_target_top_dims_contribution'] = top_target_top_dims_contribution * 100.0 / sum(
                top_target_contributions)
        data_dict['top_target_bottom_dim'] = top_target_bottom_dim
        data_dict[
            'top_target_bottom_dim_contribution'] = top_target_bottom_dim_contribution
        data_dict['best_top_target'] = levels[best_top_target_index]
        data_dict['best_top_target_count'] = top_target_contributions[
            best_top_target_index]
        data_dict['best_top_target_percent'] = round(
            top_target_contributions[best_top_target_index] * 100.0 /
            sum(top_target_contributions), 2)
        data_dict['worst_top_target'] = levels[worst_top_target_index]
        data_dict['worst_top_target_percent'] = round(
            top_target_contributions[worst_top_target_index] * 100.0 /
            sum(top_target_contributions), 2)

        data_dict["blockSplitter"] = self._blockSplitter
        data_dict["binTargetCol"] = self._binTargetCol
        data_dict["binAnalyzedCol"] = self._binAnalyzedCol
        data_dict['highlightFlag'] = self._highlightFlag

        ###############
        #     CARD1   #
        ###############

        print "self._binTargetCol & self._binAnalyzedCol : ", self._binTargetCol, self._binAnalyzedCol
        if (self._binTargetCol == True & self._binAnalyzedCol == False):
            print "Only Target Column is Binned, : ", self._binTargetCol
            output = NarrativesUtils.block_splitter(
                NarrativesUtils.get_template_output(
                    self._base_dir, 'card1_binned_target.html', data_dict),
                self._blockSplitter,
                highlightFlag=self._highlightFlag)
        elif (self._binTargetCol == True & self._binAnalyzedCol == True):
            print "Target Column and IV is Binned : ", self._binTargetCol, self._binAnalyzedCol
            output = NarrativesUtils.block_splitter(
                NarrativesUtils.get_template_output(
                    self._base_dir, 'card1_binned_target_and_IV.html',
                    data_dict),
                self._blockSplitter,
                highlightFlag=self._highlightFlag)
        else:
            output = NarrativesUtils.block_splitter(
                NarrativesUtils.get_template_output(self._base_dir,
                                                    'card1.html', data_dict),
                self._blockSplitter,
                highlightFlag=self._highlightFlag)

        targetDimCard1Data = []
        targetDimcard1Heading = '<h3>Relationship between ' + self._target_dimension + '  and ' + self._analysed_dimension + "</h3>"

        toggledata = ToggleData()

        targetDimTable1Data = self.generate_card1_table1()
        targetDimCard1Table1 = TableData()
        targetDimCard1Table1.set_table_type("heatMap")
        targetDimCard1Table1.set_table_data(targetDimTable1Data)
        toggledata.set_toggleon_data({
            "data": {
                "tableData": targetDimTable1Data,
                "tableType": "heatMap"
            },
            "dataType": "table"
        })

        targetDimTable2Data = self.generate_card1_table2()
        targetDimCard1Table2 = TableData()
        targetDimCard1Table2.set_table_type("normal")
        table2Data = targetDimTable2Data["data1"]
        table2Data = [
            innerList[1:] for innerList in table2Data
            if innerList[0].strip() != ""
        ]
        targetDimCard1Table2.set_table_data(table2Data)

        toggledata.set_toggleoff_data({
            "data": {
                "tableData": table2Data,
                "tableType": "heatMap"
            },
            "dataType": "table"
        })

        targetDimCard1Data.append(HtmlData(data=targetDimcard1Heading))
        targetDimCard1Data.append(toggledata)
        targetDimCard1Data += output

        self._card1.set_card_data(targetDimCard1Data)
        self._card1.set_card_name("{}: Relationship with {}".format(
            self._analysed_dimension, self._target_dimension))

        ###############
        #     CARD2   #
        ###############

        if self._appid == None:

            key_factors = ''
            num_key_factors = len(self._second_level_dimensions)

            if len(self._second_level_dimensions) == 5:
                key_factors = ', '.join(
                    self._second_level_dimensions[:4]
                ) + ' and ' + self._second_level_dimensions[4]
            elif len(self._second_level_dimensions) == 4:
                key_factors = ', '.join(
                    self._second_level_dimensions[:3]
                ) + ' and ' + self._second_level_dimensions[3]
            elif len(self._second_level_dimensions) == 3:
                key_factors = ', '.join(
                    self._second_level_dimensions[:2]
                ) + ' and ' + self._second_level_dimensions[2]
            elif len(self._second_level_dimensions) == 2:
                key_factors = ' and '.join(self._second_level_dimensions)
            elif len(self._second_level_dimensions) == 1:
                key_factors = self._second_level_dimensions[0]

            targetCardDataDict['num_key_factors'] = num_key_factors
            targetCardDataDict['key_factors'] = key_factors
            dict_for_test = {}
            for tupleObj in sorted_target_levels[:self._chiSquareLevelLimit]:
                targetLevel = tupleObj[1]

                targetCardDataDict['random_card2'] = random.randint(1, 100)
                targetCardDataDict['random_card4'] = random.randint(1, 100)

                second_target_contributions = [
                    table.get_value(targetLevel, i) for i in levels
                ]
                sum_second_target = sum(second_target_contributions)

                sorted_levels = sorted(zip(second_target_contributions,
                                           levels),
                                       reverse=True)

                level_differences = [0.0] + [
                    sorted_levels[i][0] - sorted_levels[i + 1][0]
                    for i in range(len(sorted_levels) - 1)
                ]
                second_target_top_dims = [
                    j for i, j in sorted_levels[:level_differences.
                                                index(max(level_differences))]
                ]
                second_target_top_dims_contribution = sum([
                    i for i, j in sorted_levels[:level_differences.
                                                index(max(level_differences))]
                ])
                second_target_bottom_dim = sorted_levels[-1][1]
                second_target_bottom_dim_contribution = sorted_levels[-1][0]

                second_target_percentages = [
                    i * 100.0 / sum_second_target
                    for i in second_target_contributions
                ]
                best_second_target_index = second_target_contributions.index(
                    max(second_target_contributions))
                worst_second_target_index = second_target_contributions.index(
                    min(second_target_contributions))
                second_target_differences = [
                    x - y for x, y in zip(levels_percentages,
                                          second_target_percentages)
                ]
                if len(second_target_differences) > 6:
                    tops = 2
                    bottoms = -2
                elif len(second_target_differences) > 4:
                    tops = 2
                    bottoms = -1
                else:
                    tops = 1
                    bottoms = -1
                sorted_ = sorted(enumerate(second_target_differences),
                                 key=lambda x: x[1],
                                 reverse=True)
                best_second_difference_indices = [x for x, y in sorted_[:tops]]
                worst_second_difference_indices = [
                    x for x, y in sorted_[bottoms:]
                ]

                second_target_shares = [
                    x * 100.0 / y
                    for x, y in zip(second_target_contributions, level_counts)
                ]
                max_second_target_shares = max(second_target_shares)
                best_second_target_share_index = [
                    idx for idx, val in enumerate(second_target_shares)
                    if val == max_second_target_shares
                ]
                level_counts_threshold = sum(level_counts) * 0.05 / len(
                    level_counts)
                min_second_target_shares = min([
                    x for x, y in zip(second_target_shares, level_counts)
                    if y >= level_counts_threshold
                ])
                worst_second_target_share_index = [
                    idx for idx, val in enumerate(second_target_shares)
                    if val == min_second_target_shares
                ]
                overall_second_percentage = sum_second_target * 100.0 / total

                # DataFrame for contribution calculation

                df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                                        filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                                        select(self._second_level_dimensions).toPandas()
                df_second_dim = self._data_frame.filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                                    select(self._second_level_dimensions).toPandas()

                # if self._chisquare_result.get_splits():
                #     splits = self._chisquare_result.get_splits()
                #     idx = self._chiSquareTable.get_bin_names(splits).index(second_target_top_dims[0])
                #     idx1 = self._chiSquareTable.get_bin_names(splits).index(top_target_top_dims[0])
                #     splits[len(splits)-1] = splits[len(splits)-1]+1
                #     df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                #                         filter(col(self._analysed_dimension)>=splits[idx]).filter(col(self._analysed_dimension)<splits[idx+1]).\
                #                         select(self._second_level_dimensions).toPandas()
                #     df_second_dim = self._data_frame.filter(col(self._analysed_dimension)>=splits[idx]).\
                #                     filter(col(self._analysed_dimension)<splits[idx+1]).\
                #                     select(self._second_level_dimensions).toPandas()
                # else:
                #     df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                #                         filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                #                         select(self._second_level_dimensions).toPandas()
                #     df_second_dim = self._data_frame.filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                #                     select(self._second_level_dimensions).toPandas()

                # print self._data_frame.select('Sales').show()

                distribution_second = []
                for d in self._second_level_dimensions:

                    grouped = df_second_target.groupby(d).agg({
                        d: 'count'
                    }).sort_values(d, ascending=False)
                    contributions = df_second_dim.groupby(d).agg({d: 'count'})
                    contribution_index = list(contributions.index)
                    contributions_val = contributions[d].tolist()
                    contributions_list = dict(
                        zip(contribution_index, contributions_val))
                    index_list = list(grouped.index)
                    grouped_list = grouped[d].tolist()
                    contributions_percent_list = [
                        round(y * 100.0 / contributions_list[x], 2)
                        for x, y in zip(index_list, grouped_list)
                    ]
                    sum_ = grouped[d].sum()
                    diffs = [0] + [
                        grouped_list[i] - grouped_list[i + 1]
                        for i in range(len(grouped_list) - 1)
                    ]
                    max_diff = diffs.index(max(diffs))

                    index_txt = ''
                    if max_diff == 1:
                        index_txt = index_list[0]
                    elif max_diff == 2:
                        index_txt = index_list[0] + '(' + str(
                            round(grouped_list[0] * 100.0 / sum_, 1)
                        ) + '%)' + ' and ' + index_list[1] + '(' + str(
                            round(grouped_list[1] * 100.0 / sum_, 1)) + '%)'
                    elif max_diff > 2:
                        index_txt = 'including ' + index_list[0] + '(' + str(
                            round(grouped_list[0] * 100.0 / sum_, 1)
                        ) + '%)' + ' and ' + index_list[1] + '(' + str(
                            round(grouped_list[1] * 100.0 / sum_, 1)) + '%)'
                    distribution_second.append({'contributions':[round(i*100.0/sum_,2) for i in grouped_list[:max_diff]],\
                                            'levels': index_list[:max_diff],'variation':random.randint(1,100),\
                                            'index_txt': index_txt, 'd':d,'contributions_percent':contributions_percent_list})

                targetCardDataDict['distribution_second'] = distribution_second
                targetCardDataDict['second_target'] = targetLevel
                targetCardDataDict[
                    'second_target_top_dims'] = second_target_top_dims
                targetCardDataDict[
                    'second_target_top_dims_contribution'] = second_target_top_dims_contribution * 100.0 / sum(
                        second_target_contributions)
                targetCardDataDict[
                    'second_target_bottom_dim'] = second_target_bottom_dim
                targetCardDataDict[
                    'second_target_bottom_dim_contribution'] = second_target_bottom_dim_contribution
                targetCardDataDict['best_second_target'] = levels[
                    best_second_target_index]
                targetCardDataDict[
                    'best_second_target_count'] = second_target_contributions[
                        best_second_target_index]
                targetCardDataDict['best_second_target_percent'] = round(
                    second_target_contributions[best_second_target_index] *
                    100.0 / sum(second_target_contributions), 2)
                targetCardDataDict['worst_second_target'] = levels[
                    worst_second_target_index]
                targetCardDataDict['worst_second_target_percent'] = round(
                    second_target_contributions[worst_second_target_index] *
                    100.0 / sum(second_target_contributions), 2)

                card2Data = []
                targetLevelContributions = [
                    table.get_value(targetLevel, i) for i in levels
                ]
                card2Heading = '<h3>Distribution of ' + self._target_dimension + ' (' + targetLevel + ') across ' + self._analysed_dimension + "</h3>"
                chart, bubble = self.generate_distribution_card_chart(
                    targetLevel, targetLevelContributions, levels,
                    level_counts, total)
                card2ChartData = NormalChartData(data=chart["data"])
                card2ChartJson = ChartJson()
                card2ChartJson.set_data(card2ChartData.get_data())
                card2ChartJson.set_chart_type("combination")
                card2ChartJson.set_types({
                    "total": "bar",
                    "percentage": "line"
                })
                card2ChartJson.set_legend({
                    "total": "# of " + targetLevel,
                    "percentage": "% of " + targetLevel
                })
                card2ChartJson.set_axes({
                    "x": "key",
                    "y": "total",
                    "y2": "percentage"
                })
                card2ChartJson.set_label_text({
                    "x": " ",
                    "y": "Count",
                    "y2": "Percentage"
                })
                print "self._binTargetCol & self._binAnalyzedCol : ", self._binTargetCol, self._binAnalyzedCol
                if (self._binTargetCol == True & self._binAnalyzedCol ==
                        False):
                    print "Only Target Column is Binned"
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2_binned_target.html',
                            targetCardDataDict), self._blockSplitter)
                elif (self._binTargetCol == True & self._binAnalyzedCol ==
                      True):
                    print "Target Column and IV is Binned"
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2_binned_target_and_IV.html',
                            targetCardDataDict), self._blockSplitter)
                else:
                    print "In Else, self._binTargetCol should be False : ", self._binTargetCol
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2.html', targetCardDataDict),
                        self._blockSplitter)

                card2Data.append(HtmlData(data=card2Heading))
                statistical_info_array = [
                    ("Test Type", "Chi-Square"),
                    ("Chi-Square statistic",
                     str(round(self._chisquare_result.get_stat(), 3))),
                    ("P-Value",
                     str(round(self._chisquare_result.get_pvalue(), 3))),
                    ("Inference",
                     "Chi-squared analysis shows a significant association between {} (target) and {}."
                     .format(self._target_dimension, self._analysed_dimension))
                ]
                statistical_info_array = NarrativesUtils.statistical_info_array_formatter(
                    statistical_info_array)

                card2Data.append(
                    C3ChartData(data=card2ChartJson,
                                info=statistical_info_array))
                card2Data += output2
                card2BubbleData = "<div class='col-md-6 col-xs-12'><h2 class='text-center'><span>{}</span><br /><small>{}</small></h2></div><div class='col-md-6 col-xs-12'><h2 class='text-center'><span>{}</span><br /><small>{}</small></h2></div>".format(
                    bubble[0]["value"], bubble[0]["text"], bubble[1]["value"],
                    bubble[1]["text"])
                card2Data.append(HtmlData(data=card2BubbleData))
                targetCard = NormalCard()
                targetCard.set_card_data(card2Data)
                targetCard.set_card_name("{} : Distribution of {}".format(
                    self._analysed_dimension, targetLevel))
                self._targetCards.append(targetCard)
                dict_for_test[targetLevel] = targetCardDataDict
        out = {'data_dict': data_dict, 'target_dict': dict_for_test}

        return out

    # def generate_card2_narratives(self):

    def generate_distribution_card_chart(self, __target,
                                         __target_contributions, levels,
                                         levels_count, total):
        chart = {}
        label = {'total': '# of ' + __target, 'percentage': '% of ' + __target}
        label_text = {
            'x': self._analysed_dimension,
            'y': '# of ' + __target,
            'y2': '% of ' + __target,
        }
        data = {}
        data['total'] = dict(zip(levels, __target_contributions))
        __target_percentages = [
            x * 100.0 / y for x, y in zip(__target_contributions, levels_count)
        ]
        data['percentage'] = dict(zip(levels, __target_percentages))
        chartData = []
        for val in zip(levels, __target_contributions, __target_percentages):
            chartData.append({
                "key": val[0],
                "total": val[1],
                "percentage": val[2]
            })
        # c3_data = [levels,__target_contributions,__target_percentages]
        chart_data = {'label': label, 'data': chartData}
        bubble_data1 = {}
        bubble_data2 = {}
        bubble_data1['value'] = str(
            round(
                max(__target_contributions) * 100.0 /
                sum(__target_contributions), 1)) + '%'
        m_index = __target_contributions.index(max(__target_contributions))
        bubble_data1[
            'text'] = 'Overall ' + __target + ' comes from ' + levels[m_index]

        bubble_data2['value'] = str(round(max(__target_percentages), 1)) + '%'
        m_index = __target_percentages.index(max(__target_percentages))
        bubble_data2[
            'text'] = levels[m_index] + ' has the highest rate of ' + __target

        bubble_data = [bubble_data1, bubble_data2]
        return chart_data, bubble_data

    def generate_card1_table1(self):
        table_percent_by_column = self._chiSquareTable.table_percent_by_column
        column_two_values = self._chiSquareTable.column_two_values
        header_row = [self._analysed_dimension
                      ] + self._chiSquareTable.get_column_one_levels()
        all_columns = [column_two_values] + table_percent_by_column
        other_rows = zip(*all_columns)
        other_rows = [list(tup) for tup in other_rows]
        table_data = [header_row] + other_rows
        return table_data

    def generate_card1_table2(self):
        table = self._chiSquareTable.table
        table_percent = self._chiSquareTable.table_percent
        table_percent_by_row = self._chiSquareTable.table_percent_by_row
        table_percent_by_column = self._chiSquareTable.table_percent_by_column
        target_levels = self._chiSquareTable.get_column_one_levels()
        dim_levels = self._chiSquareTable.get_column_two_levels()

        header1 = [self._analysed_dimension] + target_levels + ['Total']
        header = ['State', 'Active', 'Churn', 'Total']  #TODO remove
        data = []
        data1 = [['Tag'] + header1]

        for idx, lvl in enumerate(dim_levels):
            first_row = ['Tag'] + header
            col_2_vals = zip(*table)[idx]
            data2 = ['bold'] + [lvl] + list(col_2_vals) + [sum(col_2_vals)]

            dict_ = dict(zip(first_row, data2))
            data.append(dict_)
            data1.append(data2)

            col_2_vals = zip(*table_percent_by_column)[idx]
            data2 = [''] + ['As % within ' + self._analysed_dimension
                            ] + list(col_2_vals) + [100.0]
            dict_ = dict(zip(first_row, data2))
            data.append(dict_)
            data1.append(data2)

            col_2_vals = zip(*table_percent_by_row)[idx]
            col_2_vals1 = zip(*table_percent)[idx]
            data2 = [''] + [
                'As % within ' + self._target_dimension
            ] + list(col_2_vals) + [round(sum(col_2_vals1), 2)]
            dict_ = dict(zip(first_row, data2))
            data.append(dict_)
            data1.append(data2)
            # col_2_vals = zip(*table_percent)[idx]
            data2 = [''] + ['As % of Total'] + list(col_2_vals1) + [
                round(sum(col_2_vals1), 2)
            ]
            dict_ = dict(zip(first_row, data2))
            data.append(dict_)
            data1.append(data2)

        out = {
            'header': header,
            'header1': header1,
            'data': data,
            'label': self._analysed_dimension,
            'data1': data1
        }
        return out
Beispiel #2
0
    def generate_narratives(self):
        regression_narrative_obj = LinearRegressionNarrative(
                                    self._df_regression_result,
                                    self._correlations,
                                    self._dataframe_helper,
                                    self._dataframe_context,
                                    self._metaParser,
                                    self._spark
                                    )
        main_card_data = regression_narrative_obj.generate_main_card_data()
        main_card_narrative = NarrativesUtils.get_template_output(self._base_dir,\
                                                        'regression_main_card.html',main_card_data)
        self.narratives['main_card'] = {}
        self.narratives["main_card"]['paragraphs'] = NarrativesUtils.paragraph_splitter(main_card_narrative)
        self.narratives["main_card"]['header'] = 'Key Measures that affect ' + self.result_column
        self.narratives["main_card"]['chart'] = {}
        self.narratives["main_card"]['chart']['heading'] = ''
        self.narratives["main_card"]['chart']['data'] = [[i for i,j in self._all_coeffs],
                                                         [j['coefficient'] for i,j in self._all_coeffs]]
        self.narratives["main_card"]['chart']['label'] = {'x':'Measure Name',
                                                            'y': 'Change in ' + self.result_column + ' per unit increase'}

        main_card = NormalCard()
        main_card_header = HtmlData(data = '<h3>Key Measures that affect ' + self.result_column+"</h3>")
        main_card_paragraphs = NarrativesUtils.block_splitter(main_card_narrative,self._blockSplitter)
        main_card_chart_data = [{"key":val[0],"value":val[1]} for val in zip([i for i,j in self._all_coeffs],[j['coefficient'] for i,j in self._all_coeffs])]
        main_card_chart = NormalChartData(data=main_card_chart_data)
        mainCardChartJson = ChartJson()
        mainCardChartJson.set_data(main_card_chart.get_data())
        mainCardChartJson.set_label_text({'x':'Influencing Factors','y': 'Change in ' + self.result_column + ' per unit increase'})
        mainCardChartJson.set_chart_type("bar")
        mainCardChartJson.set_axes({"x":"key","y":"value"})
        mainCardChartJson.set_yaxis_number_format(".2f")
        # st_info = ["Test : Regression","Threshold for p-value: 0.05", "Effect Size: Regression Coefficient"]
        chart_data = sorted(main_card_chart_data,key=lambda x:x["value"],reverse=True)
        statistical_info_array=[
            ("Test Type","Regression"),
            ("Effect Size","Coefficients"),
            ("Max Effect Size",chart_data[0]["key"]),
            ("Min Effect Size",chart_data[-1]["key"]),
            ]
        statistical_inferenc = ""
        if len(chart_data) == 1:
            statistical_inference = "{} is the only variable that have significant influence over {} (Target) having an \
             Effect size of {}".format(chart_data[0]["key"],self._dataframe_context.get_result_column(),round(chart_data[0]["value"],4))
        elif len(chart_data) == 2:
            statistical_inference = "There are two variables ({} and {}) that have significant influence over {} (Target) and the \
             Effect size ranges are {} and {} respectively".format(chart_data[0]["key"],chart_data[1]["key"],self._dataframe_context.get_result_column(),round(chart_data[0]["value"],4),round(chart_data[1]["value"],4))
        else:
            statistical_inference = "There are {} variables that have significant influence over {} (Target) and the \
             Effect size ranges from {} to {}".format(len(chart_data),self._dataframe_context.get_result_column(),round(chart_data[0]["value"],4),round(chart_data[-1]["value"],4))
        if statistical_inference != "":
            statistical_info_array.append(("Inference",statistical_inference))
        statistical_info_array = NarrativesUtils.statistical_info_array_formatter(statistical_info_array)
        main_card.set_card_data(data = [main_card_header]+main_card_paragraphs+[C3ChartData(data=mainCardChartJson,info=statistical_info_array)])
        main_card.set_card_name("Key Influencers")
        self._regressionNode.add_a_card(main_card)


        count = 0
        for measure_column in self.significant_measures:
            sigMeasureNode = NarrativesTree()
            sigMeasureNode.set_name(measure_column)
            measureCard1 = NormalCard()
            measureCard1.set_card_name("{}: Impact on {}".format(measure_column,self.result_column))
            measureCard1Data = []
            if self._run_dimension_level_regression:
                measureCard2 = NormalCard()
                measureCard2.set_card_name("Key Areas where it Matters")
                measureCard2Data = []

            measure_column_cards = {}
            card0 = {}
            card1data = regression_narrative_obj.generate_card1_data(measure_column)
            card1heading = "<h3>Impact of "+measure_column+" on "+self.result_column+"</h3>"
            measureCard1Header = HtmlData(data=card1heading)
            card1data.update({"blockSplitter":self._blockSplitter})
            card1narrative = NarrativesUtils.get_template_output(self._base_dir,\
                                                            'regression_card1.html',card1data)

            card1paragraphs = NarrativesUtils.block_splitter(card1narrative,self._blockSplitter)
            card0 = {"paragraphs":card1paragraphs}
            card0["charts"] = {}
            card0['charts']['chart2']={}
            # card0['charts']['chart2']['data']=card1data["chart_data"]
            # card0['charts']['chart2']['heading'] = ''
            # card0['charts']['chart2']['labels'] = {}
            card0['charts']['chart1']={}
            card0["heading"] = card1heading
            measure_column_cards['card0'] = card0

            measureCard1Header = HtmlData(data=card1heading)
            measureCard1Data += [measureCard1Header]
            measureCard1para = card1paragraphs
            measureCard1Data += measureCard1para

            if self._run_dimension_level_regression:
                print("running narratives for key area dict")
                self._dim_regression = self.run_regression_for_dimension_levels()
                card2table, card2data=regression_narrative_obj.generate_card2_data(measure_column,self._dim_regression)
                card2data.update({"blockSplitter":self._blockSplitter})
                card2narrative = NarrativesUtils.get_template_output(self._base_dir,\
                                                            'regression_card2.html',card2data)
                card2paragraphs = NarrativesUtils.block_splitter(card2narrative,self._blockSplitter)

                card1 = {'tables': card2table, 'paragraphs' : card2paragraphs,
                        'heading' : 'Key Areas where ' + measure_column + ' matters'}
                measure_column_cards['card1'] = card1

                measureCard2Data += card2paragraphs
                if "table1" in card2table:
                    table1data = regression_narrative_obj.convert_table_data(card2table["table1"])
                    card2Table1 = TableData()
                    card2Table1.set_table_data(table1data)
                    card2Table1.set_table_type("heatMap")
                    card2Table1.set_table_top_header(card2table["table1"]["heading"])
                    card2Table1Json = json.loads(CommonUtils.convert_python_object_to_json(card2Table1))
                    # measureCard2Data.insert(3,card2Table1)
                    measureCard2Data.insert(3,card2Table1Json)

                if "table2" in card2table:
                    table2data = regression_narrative_obj.convert_table_data(card2table["table2"])
                    card2Table2 = TableData()
                    card2Table2.set_table_data(table2data)
                    card2Table2.set_table_type("heatMap")
                    card2Table2.set_table_top_header(card2table["table2"]["heading"])
                    # measureCard2Data.insert(5,card2Table2)
                    card2Table2Json = json.loads(CommonUtils.convert_python_object_to_json(card2Table2))
                    # measureCard2Data.append(card2Table2)
                    measureCard2Data.append(card2Table2Json)


            # self._result_setter.set_trend_section_data({"result_column":self.result_column,
            #                                             "measure_column":measure_column,
            #                                             "base_dir":self._base_dir
            #                                             })
            # trend_narratives_obj = TimeSeriesNarrative(self._dataframe_helper, self._dataframe_context, self._result_setter, self._spark, self._story_narrative)
            # card2 =  trend_narratives_obj.get_regression_trend_card_data()
            # if card2:
            #     measure_column_cards['card2'] = card2
            #
            #
            # card3 = {}
            progressMessage = CommonUtils.create_progress_message_object(self._analysisName,"custom","info","Analyzing Key Influencers",self._completionStatus,self._completionStatus,display=True)
            CommonUtils.save_progress_message(self._messageURL,progressMessage,ignore=False)
            card4data = regression_narrative_obj.generate_card4_data(self.result_column,measure_column)
            card4data.update({"blockSplitter":self._blockSplitter})
            # card4heading = "Sensitivity Analysis: Effect of "+self.result_column+" on Segments of "+measure_column
            card4narrative = NarrativesUtils.get_template_output(self._base_dir,\
                                                                'regression_card4.html',card4data)
            card4paragraphs = NarrativesUtils.block_splitter(card4narrative,self._blockSplitter)
            # card3 = {"paragraphs":card4paragraphs}
            card0['paragraphs'] = card1paragraphs+card4paragraphs
            card4Chart = card4data["charts"]
            # st_info = ["Test : Regression", "Variables : "+ self.result_column +", "+measure_column,"Intercept : "+str(round(self._df_regression_result.get_intercept(),2)), "Regression Coefficient : "+ str(round(self._df_regression_result.get_coeff(measure_column),2))]
            statistical_info_array=[
                ("Test Type","Regression"),
                ("Coefficient",str(round(self._df_regression_result.get_coeff(measure_column),2))),
                ("P-Value","<= 0.05"),
                ("Intercept",str(round(self._df_regression_result.get_intercept(),2))),
                ("R Square ",str(round(self._df_regression_result.get_rsquare(),2))),
                ]
            inferenceTuple = ()
            coeff = self._df_regression_result.get_coeff(measure_column)
            if coeff > 0:
                inferenceTuple = ("Inference","For every additional unit of increase in {} there will be an increase of {} units in {} (target).".format(measure_column,str(round(coeff,2)),self._dataframe_context.get_result_column()))
            else:
                inferenceTuple = ("Inference","For every additional unit of decrease in {} there will be an decrease of {} units in {} (target).".format(measure_column,str(round(coeff,2)),self._dataframe_context.get_result_column()))
            if len(inferenceTuple) > 0:
                statistical_info_array.append(inferenceTuple)
            statistical_info_array = NarrativesUtils.statistical_info_array_formatter(statistical_info_array)

            card4paragraphs.insert(2,C3ChartData(data=card4Chart,info=statistical_info_array))
            measureCard1Data += card4paragraphs

            self.narratives['cards'].append(measure_column_cards)

            if count == 0:
                card4data.pop("charts")
                self._result_setter.update_executive_summary_data(card4data)
            count += 1
            measureCard1.set_card_data(measureCard1Data)
            if self._run_dimension_level_regression:
                measureCard2.set_card_data(measureCard2Data)
                sigMeasureNode.add_cards([measureCard1,measureCard2])
            sigMeasureNode.add_cards([measureCard1])
            self._regressionNode.add_a_node(sigMeasureNode)
        # self._result_setter.set_trend_section_completion_status(True)
        self._story_narrative.add_a_node(self._regressionNode)
class ChiSquareAnalysis(object):
    def __init__(self,
                 df_context,
                 df_helper,
                 chisquare_result,
                 target_dimension,
                 analysed_dimension,
                 significant_variables,
                 num_analysed_variables,
                 data_frame,
                 measure_columns,
                 base_dir,
                 appid=None,
                 target_chisquare_result=None):
        self._blockSplitter = "|~NEWBLOCK~|"
        self._highlightFlag = "|~HIGHLIGHT~|"
        self._dimensionNode = NarrativesTree()
        self._dimensionNode.set_name(target_dimension)
        self._data_frame = data_frame
        self._dataframe_context = df_context
        self._pandas_flag = df_context._pandas_flag
        self._dataframe_helper = df_helper
        self._chisquare_result = chisquare_result
        self._target_dimension = target_dimension
        self._analysed_dimension = analysed_dimension
        self._significant_variables = significant_variables
        self._target_chisquare_result = target_chisquare_result
        self._measure_columns = self._dataframe_helper.get_numeric_columns()
        self._chiSquareLevelLimit = GLOBALSETTINGS.CHISQUARELEVELLIMIT

        self._num_analysed_variables = num_analysed_variables
        self._chiSquareTable = chisquare_result.get_contingency_table()

        significant_variables = list(
            set(significant_variables) - {analysed_dimension})
        if len(significant_variables) <= 20:
            if len(significant_variables) <= 3:
                self._second_level_dimensions = list(significant_variables)
            else:
                self._second_level_dimensions = list(significant_variables)[:3]
        else:
            self._second_level_dimensions = list(significant_variables)[:5]

        print(self._second_level_dimensions)

        self._appid = appid
        self._card1 = NormalCard()
        self._targetCards = []
        self._base_dir = base_dir

        self._binTargetCol = False
        self._binAnalyzedCol = False
        print("--------Chi-Square Narratives for ", analysed_dimension,
              "---------")
        if self._dataframe_context.get_custom_analysis_details() != None:
            binnedColObj = [
                x["colName"]
                for x in self._dataframe_context.get_custom_analysis_details()
            ]
            print("analysed_dimension : ", self._analysed_dimension)
            if binnedColObj != None and self._target_dimension in binnedColObj:
                self._binTargetCol = True
            if binnedColObj != None and (
                    self._analysed_dimension in binnedColObj
                    or self._analysed_dimension in self._measure_columns):
                self._binAnalyzedCol = True

        if self._appid == None:
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1] + self._targetCards)
            self._dimensionNode.set_name("{}".format(analysed_dimension))
        elif self._appid == "2":
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1])
            self._dimensionNode.set_name("{}".format(analysed_dimension))
        elif self._appid == "1":
            self._generate_narratives()
            self._dimensionNode.add_cards([self._card1])
            self._dimensionNode.set_name("{}".format(analysed_dimension))

    def get_dimension_node(self):
        return json.loads(
            CommonUtils.convert_python_object_to_json(self._dimensionNode))

    def get_dimension_card1(self):
        return self._card1

    def _generate_narratives(self):
        chisquare_result = self._chisquare_result
        target_dimension = self._target_dimension
        analysed_dimension = self._analysed_dimension
        significant_variables = self._significant_variables
        num_analysed_variables = self._num_analysed_variables
        table = self._chiSquareTable
        total = self._chiSquareTable.get_total()

        levels = self._chiSquareTable.get_column_two_levels()
        level_counts = self._chiSquareTable.get_column_total()
        levels_count_sum = sum(level_counts)
        levels_percentages = [
            old_div(i * 100.0, levels_count_sum) for i in level_counts
        ]
        sorted_levels = sorted(zip(level_counts, levels), reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]

        top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        bottom_dim = sorted_levels[-1][1]
        bottom_dim_contribution = sorted_levels[-1][0]
        bottom_dims = [
            y for x, y in sorted_levels if x == bottom_dim_contribution
        ]

        target_levels = self._chiSquareTable.get_column_one_levels()

        target_counts = self._chiSquareTable.get_row_total()
        sorted_target_levels = sorted(zip(target_counts, target_levels),
                                      reverse=True)

        top_target_count, top_target = sorted_target_levels[0]
        second_target_count, second_target = sorted_target_levels[1]

        top_target_contributions = [
            table.get_value(top_target, i) for i in levels
        ]
        sum_top_target = sum(top_target_contributions)

        sorted_levels = sorted(zip(top_target_contributions, levels),
                               reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]
        top_target_top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        top_target_top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        top_target_bottom_dim = sorted_levels[-1][1]
        top_target_bottom_dim_contribution = sorted_levels[-1][0]

        top_target_percentages = [
            old_div(i * 100.0, sum_top_target)
            for i in top_target_contributions
        ]
        best_top_target_index = top_target_contributions.index(
            max(top_target_contributions))
        worst_top_target_index = top_target_contributions.index(
            min(top_target_contributions))
        top_target_differences = [
            x - y for x, y in zip(levels_percentages, top_target_percentages)
        ]
        if len(top_target_differences) > 6:
            tops = 2
            bottoms = -2
        elif len(top_target_differences) > 4:
            tops = 2
            bottoms = -1
        else:
            tops = 1
            bottoms = -1
        sorted_ = sorted(enumerate(top_target_differences),
                         key=lambda x: x[1],
                         reverse=True)
        best_top_difference_indices = [x for x, y in sorted_[:tops]]
        worst_top_difference_indices = [x for x, y in sorted_[bottoms:]]

        top_target_shares = [
            old_div(x * 100.0, y)
            for x, y in zip(top_target_contributions, level_counts)
        ]
        max_top_target_shares = max(top_target_shares)
        best_top_target_share_index = [
            idx for idx, val in enumerate(top_target_shares)
            if val == max_top_target_shares
        ]
        level_counts_threshold = old_div(
            sum(level_counts) * 0.05, len(level_counts))
        min_top_target_shares = min([
            x for x, y in zip(top_target_shares, level_counts)
            if y >= level_counts_threshold
        ])
        if max_top_target_shares == min_top_target_shares:
            worst_top_target_share_index = []
        else:
            worst_top_target_share_index = [
                idx for idx, val in enumerate(top_target_shares)
                if val == min_top_target_shares
            ]
        overall_top_percentage = old_div(sum_top_target * 100.0, total)

        second_target_contributions = [
            table.get_value(second_target, i) for i in levels
        ]
        sum_second_target = sum(second_target_contributions)

        sorted_levels = sorted(zip(second_target_contributions, levels),
                               reverse=True)
        level_differences = [0.0] + [
            sorted_levels[i][0] - sorted_levels[i + 1][0]
            for i in range(len(sorted_levels) - 1)
        ]
        second_target_top_dims = [
            j for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ]
        second_target_top_dims_contribution = sum([
            i for i, j in
            sorted_levels[:level_differences.index(max(level_differences))]
        ])
        second_target_bottom_dim = sorted_levels[-1][1]
        second_target_bottom_dim_contribution = sorted_levels[-1][0]

        second_target_percentages = [
            old_div(i * 100.0, sum_second_target)
            for i in second_target_contributions
        ]
        best_second_target_index = second_target_contributions.index(
            max(second_target_contributions))
        worst_second_target_index = second_target_contributions.index(
            min(second_target_contributions))
        second_target_differences = [
            x - y
            for x, y in zip(levels_percentages, second_target_percentages)
        ]
        if len(second_target_differences) > 6:
            tops = 2
            bottoms = -2
        elif len(second_target_differences) > 4:
            tops = 2
            bottoms = -1
        else:
            tops = 1
            bottoms = -1
        sorted_ = sorted(enumerate(second_target_differences),
                         key=lambda x: x[1],
                         reverse=True)
        best_second_difference_indices = [x for x, y in sorted_[:tops]]
        worst_second_difference_indices = [x for x, y in sorted_[bottoms:]]

        second_target_shares = [
            old_div(x * 100.0, y)
            for x, y in zip(second_target_contributions, level_counts)
        ]
        max_second_target_shares = max(second_target_shares)
        best_second_target_share_index = [
            idx for idx, val in enumerate(second_target_shares)
            if val == max_second_target_shares
        ]
        level_counts_threshold = old_div(
            sum(level_counts) * 0.05, len(level_counts))
        if min(second_target_shares) == 0:
            min_second_target_shares = min([
                x for x, y in zip(second_target_shares, level_counts) if x != 0
            ])
        else:
            min_second_target_shares = min([
                x for x, y in zip(second_target_shares, level_counts)
                if y >= level_counts_threshold
            ])
        # worst_second_target_share_index = second_target_shares.index(min_second_target_shares)
        if max_second_target_shares == min_second_target_shares:
            worst_second_target_share_index = []
        else:
            worst_second_target_share_index = [
                idx for idx, val in enumerate(second_target_shares)
                if val == min_second_target_shares
            ]
        overall_second_percentage = old_div(sum_second_target * 100.0, total)

        targetCardDataDict = {}
        targetCardDataDict['target'] = target_dimension
        targetCardDataDict['colname'] = analysed_dimension
        targetCardDataDict['num_significant'] = len(significant_variables)
        targetCardDataDict['plural_colname'] = NarrativesUtils.pluralize(
            analysed_dimension)

        targetCardDataDict["blockSplitter"] = self._blockSplitter
        targetCardDataDict["binTargetCol"] = self._binTargetCol
        targetCardDataDict["binAnalyzedCol"] = self._binAnalyzedCol
        targetCardDataDict['highlightFlag'] = self._highlightFlag
        targetCardDataDict['levels'] = levels

        data_dict = {}
        data_dict[
            'best_second_difference'] = best_second_difference_indices  ##these changed
        data_dict['worst_second_difference'] = worst_second_difference_indices
        data_dict['best_top_difference'] = best_top_difference_indices
        data_dict['worst_top_difference'] = worst_top_difference_indices
        data_dict['levels_percentages'] = levels_percentages
        data_dict['top_target_percentages'] = top_target_percentages
        data_dict['second_target_percentages'] = second_target_percentages
        data_dict['levels'] = levels
        data_dict['best_top_share'] = best_top_target_share_index
        data_dict['worst_top_share'] = worst_top_target_share_index
        data_dict['best_second_share'] = best_second_target_share_index
        data_dict['worst_second_share'] = worst_second_target_share_index
        data_dict['top_target_shares'] = top_target_shares
        data_dict['second_target_shares'] = second_target_shares
        data_dict['overall_second'] = overall_second_percentage
        data_dict['overall_top'] = overall_top_percentage

        data_dict['num_significant'] = len(significant_variables)
        data_dict['colname'] = analysed_dimension
        data_dict['plural_colname'] = NarrativesUtils.pluralize(
            analysed_dimension)
        data_dict['target'] = target_dimension
        data_dict['top_levels'] = top_dims
        data_dict['top_levels_percent'] = round(
            old_div(top_dims_contribution * 100.0, total), 1)
        data_dict['bottom_level'] = bottom_dim
        data_dict['bottom_levels'] = bottom_dims
        data_dict['bottom_level_percent'] = round(
            old_div(bottom_dim_contribution * 100, sum(level_counts)), 2)
        data_dict['second_target'] = second_target
        data_dict['second_target_top_dims'] = second_target_top_dims
        data_dict['second_target_top_dims_contribution'] = old_div(
            second_target_top_dims_contribution * 100.0,
            sum(second_target_contributions))
        data_dict['second_target_bottom_dim'] = second_target_bottom_dim
        data_dict[
            'second_target_bottom_dim_contribution'] = second_target_bottom_dim_contribution
        data_dict['best_second_target'] = levels[best_second_target_index]
        data_dict['best_second_target_count'] = second_target_contributions[
            best_second_target_index]
        data_dict['best_second_target_percent'] = round(
            old_div(
                second_target_contributions[best_second_target_index] * 100.0,
                sum(second_target_contributions)), 2)
        data_dict['worst_second_target'] = levels[worst_second_target_index]
        data_dict['worst_second_target_percent'] = round(
            old_div(
                second_target_contributions[worst_second_target_index] * 100.0,
                sum(second_target_contributions)), 2)

        data_dict['top_target'] = top_target
        data_dict['top_target_top_dims'] = top_target_top_dims
        data_dict['top_target_top_dims_contribution'] = old_div(
            top_target_top_dims_contribution * 100.0,
            sum(top_target_contributions))
        data_dict['top_target_bottom_dim'] = top_target_bottom_dim
        data_dict[
            'top_target_bottom_dim_contribution'] = top_target_bottom_dim_contribution
        data_dict['best_top_target'] = levels[best_top_target_index]
        data_dict['best_top_target_count'] = top_target_contributions[
            best_top_target_index]
        data_dict['best_top_target_percent'] = round(
            old_div(top_target_contributions[best_top_target_index] * 100.0,
                    sum(top_target_contributions)), 2)
        data_dict['worst_top_target'] = levels[worst_top_target_index]
        data_dict['worst_top_target_percent'] = round(
            old_div(top_target_contributions[worst_top_target_index] * 100.0,
                    sum(top_target_contributions)), 2)

        data_dict["blockSplitter"] = self._blockSplitter
        data_dict["binTargetCol"] = self._binTargetCol
        data_dict["binAnalyzedCol"] = self._binAnalyzedCol
        data_dict['highlightFlag'] = self._highlightFlag

        # print "_"*60
        # print "DATA DICT - ", data_dict
        # print "_"*60

        ###############
        #     CARD1   #
        ###############

        print("self._binTargetCol & self._binAnalyzedCol : ",
              self._binTargetCol, self._binAnalyzedCol)
        if len(data_dict['worst_second_share']) == 0:
            output = NarrativesUtils.block_splitter(
                NarrativesUtils.get_template_output(
                    self._base_dir, 'card1_binned_target_worst_second.html',
                    data_dict),
                self._blockSplitter,
                highlightFlag=self._highlightFlag)
        else:
            if (self._binTargetCol == True & self._binAnalyzedCol == False):
                print("Only Target Column is Binned, : ", self._binTargetCol)
                output = NarrativesUtils.block_splitter(
                    NarrativesUtils.get_template_output(
                        self._base_dir, 'card1_binned_target.html', data_dict),
                    self._blockSplitter,
                    highlightFlag=self._highlightFlag)
            elif (self._binTargetCol == True & self._binAnalyzedCol == True):
                print("Target Column and IV is Binned : ", self._binTargetCol,
                      self._binAnalyzedCol)
                output = NarrativesUtils.block_splitter(
                    NarrativesUtils.get_template_output(
                        self._base_dir, 'card1_binned_target_and_IV.html',
                        data_dict),
                    self._blockSplitter,
                    highlightFlag=self._highlightFlag)
            else:
                output = NarrativesUtils.block_splitter(
                    NarrativesUtils.get_template_output(
                        self._base_dir, 'card1.html', data_dict),
                    self._blockSplitter,
                    highlightFlag=self._highlightFlag)

        targetDimCard1Data = []
        targetDimcard1Heading = '<h3>Impact of ' + self._analysed_dimension + '  on ' + self._target_dimension + "</h3>"

        toggledata = ToggleData()

        targetDimTable1Data = self.generate_card1_table1()
        targetDimCard1Table1 = TableData()
        targetDimCard1Table1.set_table_type("heatMap")
        targetDimCard1Table1.set_table_data(targetDimTable1Data)
        toggledata.set_toggleon_data({
            "data": {
                "tableData": targetDimTable1Data,
                "tableType": "heatMap"
            },
            "dataType": "table"
        })

        targetDimTable2Data = self.generate_card1_table2()
        targetDimCard1Table2 = TableData()
        targetDimCard1Table2.set_table_type("normal")
        table2Data = targetDimTable2Data["data1"]
        table2Data = [
            innerList[1:] for innerList in table2Data
            if innerList[0].strip() != ""
        ]
        targetDimCard1Table2.set_table_data(table2Data)

        toggledata.set_toggleoff_data({
            "data": {
                "tableData": table2Data,
                "tableType": "heatMap"
            },
            "dataType": "table"
        })

        targetDimCard1Data.append(HtmlData(data=targetDimcard1Heading))
        targetDimCard1Data.append(toggledata)
        targetDimCard1Data += output

        self._card1.set_card_data(targetDimCard1Data)
        self._card1.set_card_name("{}: Relationship with {}".format(
            self._analysed_dimension, self._target_dimension))

        ###############
        #     CARD2   #
        ###############

        if self._appid == None:

            key_factors = ''
            num_key_factors = len(self._second_level_dimensions)

            if len(self._second_level_dimensions) == 5:
                key_factors = ', '.join(
                    self._second_level_dimensions[:4]
                ) + ' and ' + self._second_level_dimensions[4]
            elif len(self._second_level_dimensions) == 4:
                key_factors = ', '.join(
                    self._second_level_dimensions[:3]
                ) + ' and ' + self._second_level_dimensions[3]
            elif len(self._second_level_dimensions) == 3:
                key_factors = ', '.join(
                    self._second_level_dimensions[:2]
                ) + ' and ' + self._second_level_dimensions[2]
            elif len(self._second_level_dimensions) == 2:
                key_factors = ' and '.join(self._second_level_dimensions)
            elif len(self._second_level_dimensions) == 1:
                key_factors = self._second_level_dimensions[0]

            targetCardDataDict['num_key_factors'] = num_key_factors
            targetCardDataDict['key_factors'] = key_factors
            dict_for_test = {}
            for tupleObj in sorted_target_levels[:self._chiSquareLevelLimit]:
                targetLevel = tupleObj[1]

                targetCardDataDict['random_card2'] = random.randint(1, 100)
                targetCardDataDict['random_card4'] = random.randint(1, 100)

                second_target_contributions = [
                    table.get_value(targetLevel, i) for i in levels
                ]
                sum_second_target = sum(second_target_contributions)

                sorted_levels = sorted(zip(second_target_contributions,
                                           levels),
                                       reverse=True)

                level_differences = [0.0] + [
                    sorted_levels[i][0] - sorted_levels[i + 1][0]
                    for i in range(len(sorted_levels) - 1)
                ]
                level_diff_index = level_differences.index(
                    max(level_differences)) if level_differences.index(
                        max(level_differences)) > 0 else len(
                            level_differences
                        )  ##added for pipeline keyerror issue
                second_target_top_dims = [
                    j for i, j in sorted_levels[:level_diff_index]
                ]
                second_target_top_dims_contribution = sum([
                    i for i, j in sorted_levels[:level_differences.
                                                index(max(level_differences))]
                ])
                second_target_bottom_dim = sorted_levels[-1][1]
                second_target_bottom_dim_contribution = sorted_levels[-1][0]

                second_target_percentages = [
                    old_div(i * 100.0, sum_second_target)
                    for i in second_target_contributions
                ]
                best_second_target_index = second_target_contributions.index(
                    max(second_target_contributions))
                worst_second_target_index = second_target_contributions.index(
                    min(second_target_contributions))
                second_target_differences = [
                    x - y for x, y in zip(levels_percentages,
                                          second_target_percentages)
                ]
                if len(second_target_differences) > 6:
                    tops = 2
                    bottoms = -2
                elif len(second_target_differences) > 4:
                    tops = 2
                    bottoms = -1
                else:
                    tops = 1
                    bottoms = -1
                sorted_ = sorted(enumerate(second_target_differences),
                                 key=lambda x: x[1],
                                 reverse=True)
                best_second_difference_indices = [x for x, y in sorted_[:tops]]
                worst_second_difference_indices = [
                    x for x, y in sorted_[bottoms:]
                ]

                second_target_shares = [
                    old_div(x * 100.0, y)
                    for x, y in zip(second_target_contributions, level_counts)
                ]
                max_second_target_shares = max(second_target_shares)
                best_second_target_share_index = [
                    idx for idx, val in enumerate(second_target_shares)
                    if val == max_second_target_shares
                ]
                level_counts_threshold = old_div(
                    sum(level_counts) * 0.05, len(level_counts))
                min_second_target_shares = min([
                    x for x, y in zip(second_target_shares, level_counts)
                    if y >= level_counts_threshold
                ])
                worst_second_target_share_index = [
                    idx for idx, val in enumerate(second_target_shares)
                    if val == min_second_target_shares
                ]
                overall_second_percentage = old_div(sum_second_target * 100.0,
                                                    total)

                # DataFrame for contribution calculation
                if self._pandas_flag:
                    df_second_target = self._data_frame[(
                        self._data_frame[self._target_dimension] == targetLevel
                    ) & (self._data_frame[self._analysed_dimension] ==
                         second_target_top_dims[0])][
                             self._second_level_dimensions]
                    df_second_dim = self._data_frame[(
                        self._data_frame[self._analysed_dimension] ==
                        second_target_top_dims[0]
                    )][self._second_level_dimensions]
                else:
                    df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                                            filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                                            select(self._second_level_dimensions).toPandas()
                    df_second_dim = self._data_frame.filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                                        select(self._second_level_dimensions).toPandas()

                # if self._chisquare_result.get_splits():
                #     splits = self._chisquare_result.get_splits()
                #     idx = self._chiSquareTable.get_bin_names(splits).index(second_target_top_dims[0])
                #     idx1 = self._chiSquareTable.get_bin_names(splits).index(top_target_top_dims[0])
                #     splits[len(splits)-1] = splits[len(splits)-1]+1
                #     df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                #                         filter(col(self._analysed_dimension)>=splits[idx]).filter(col(self._analysed_dimension)<splits[idx+1]).\
                #                         select(self._second_level_dimensions).toPandas()
                #     df_second_dim = self._data_frame.filter(col(self._analysed_dimension)>=splits[idx]).\
                #                     filter(col(self._analysed_dimension)<splits[idx+1]).\
                #                     select(self._second_level_dimensions).toPandas()
                # else:
                #     df_second_target = self._data_frame.filter(col(self._target_dimension)==targetLevel).\
                #                         filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                #                         select(self._second_level_dimensions).toPandas()
                #     df_second_dim = self._data_frame.filter(col(self._analysed_dimension)==second_target_top_dims[0]).\
                #                     select(self._second_level_dimensions).toPandas()

                # print self._data_frame.select('Sales').show()

                distribution_second = []
                d_l = []
                for d in self._second_level_dimensions:
                    grouped = df_second_target.groupby(d).agg({d: 'count'})
                    contributions = df_second_dim.groupby(d).agg({d: 'count'})
                    contribution_index = list(contributions.index)
                    contributions_val = contributions[d].tolist()
                    contributions_list = dict(
                        list(zip(contribution_index, contributions_val)))
                    index_list = list(grouped.index)
                    grouped_list = grouped[d].tolist()
                    contributions_percent_list = [
                        round(old_div(y * 100.0, contributions_list[x]), 2)
                        for x, y in zip(index_list, grouped_list)
                    ]
                    sum_ = grouped[d].sum()
                    diffs = [0] + [
                        grouped_list[i] - grouped_list[i + 1]
                        for i in range(len(grouped_list) - 1)
                    ]
                    max_diff = diffs.index(max(diffs))
                    grouped_dict = dict(list(zip(index_list, grouped_list)))

                    for val in contribution_index:
                        if val not in list(grouped_dict.keys()):
                            grouped_dict[val] = 0
                        else:
                            pass

                    index_list = []
                    grouped_list = []
                    contributions_val = []

                    for key in list(grouped_dict.keys()):
                        index_list.append(str(key))
                        grouped_list.append(grouped_dict[key])
                        contributions_val.append(contributions_list[key])
                    '''
                    print "="*70
                    print "GROUPED - ", grouped
                    print "INDEX LIST - ", index_list
                    print "GROUPED LIST - ", grouped_list
                    print "GROUPED DICT - ", grouped_dict
                    print "CONTRIBUTIONS - ", contributions
                    print "CONTRIBUTION INDEX - ", contribution_index
                    print "CONTRIBUTIONS VAL - ", contributions_val
                    print "CONTRIBUTIONS LIST - ", contributions_list
                    print "CONTRIBUTIONS PERCENT LIST - ", contributions_percent_list
                    print "SUM - ", sum_
                    print "DIFFS - ", diffs
                    print "MAX DIFF - ", max_diff
                    print "="*70
                    '''

                    informative_dict = {
                        "levels": index_list,
                        "positive_class_contribution": grouped_list,
                        "positive_plus_others": contributions_val
                    }

                    informative_df = pd.DataFrame(informative_dict)
                    informative_df["percentage_horizontal"] = old_div(
                        informative_df["positive_class_contribution"] * 100,
                        informative_df["positive_plus_others"])
                    informative_df["percentage_vertical"] = old_div(
                        informative_df["positive_class_contribution"] * 100,
                        sum_)
                    informative_df.sort_values(["percentage_vertical"],
                                               inplace=True,
                                               ascending=False)
                    informative_df = informative_df.reset_index(drop=True)

                    percentage_vertical_sorted = list(
                        informative_df["percentage_vertical"])
                    percentage_horizontal_sorted = list(
                        informative_df["percentage_horizontal"])
                    levels_sorted = list(informative_df["levels"])

                    differences_list = []
                    for i in range(1, len(percentage_vertical_sorted)):
                        difference = percentage_vertical_sorted[
                            i - 1] - percentage_vertical_sorted[i]
                        differences_list.append(round(difference, 2))
                    '''
                    print "-"*70
                    print "DIFFERENCES LIST - ", differences_list
                    print "-"*70
                    '''

                    index_txt = ''
                    if differences_list:
                        if differences_list[0] >= 30:
                            print("showing 1st case")
                            index_txt = levels_sorted[0]
                            max_diff_equivalent = 1
                        else:
                            if len(differences_list) >= 2:
                                if differences_list[1] >= 10:
                                    print("showing 1st and 2nd case")
                                    index_txt = levels_sorted[0] + '(' + str(
                                        round(percentage_vertical_sorted[0], 1)
                                    ) + '%)' + ' and ' + levels_sorted[
                                        1] + '(' + str(
                                            round(
                                                percentage_vertical_sorted[1],
                                                1)) + '%)'
                                    max_diff_equivalent = 2
                                else:
                                    print("showing 3rd case")
                                    index_txt = 'including ' + levels_sorted[
                                        0] + '(' + str(
                                            round(
                                                percentage_vertical_sorted[0],
                                                1)
                                        ) + '%)' + ' and ' + levels_sorted[
                                            1] + '(' + str(
                                                round(
                                                    percentage_vertical_sorted[
                                                        1], 1)) + '%)'
                                    max_diff_equivalent = 3
                            else:
                                print("showing 3rd case")
                                index_txt = 'including ' + levels_sorted[
                                    0] + '(' + str(
                                        round(percentage_vertical_sorted[0], 1)
                                    ) + '%)' + ' and ' + levels_sorted[
                                        1] + '(' + str(
                                            round(
                                                percentage_vertical_sorted[1],
                                                1)) + '%)'
                                max_diff_equivalent = 3

                    else:
                        max_diff_equivalent = 0
                    '''
                    print "-"*70
                    print informative_df.head(25)
                    print "-"*70
                    '''

                    distribution_second.append({
                        'contributions': [
                            round(i, 2) for i in
                            percentage_vertical_sorted[:max_diff_equivalent]
                        ],
                        'levels':
                        levels_sorted[:max_diff_equivalent],
                        'variation':
                        random.randint(1, 100),
                        'index_txt':
                        index_txt,
                        'd':
                        d,
                        'contributions_percent':
                        percentage_horizontal_sorted
                    })
                '''
                  print "DISTRIBUTION SECOND - ", distribution_second
                  print "<>"*50
                  '''
                targetCardDataDict['distribution_second'] = distribution_second
                targetCardDataDict['second_target'] = targetLevel
                targetCardDataDict[
                    'second_target_top_dims'] = second_target_top_dims
                targetCardDataDict[
                    'second_target_top_dims_contribution'] = old_div(
                        second_target_top_dims_contribution * 100.0,
                        sum(second_target_contributions))
                targetCardDataDict[
                    'second_target_bottom_dim'] = second_target_bottom_dim
                targetCardDataDict[
                    'second_target_bottom_dim_contribution'] = second_target_bottom_dim_contribution
                targetCardDataDict['best_second_target'] = levels[
                    best_second_target_index]
                targetCardDataDict[
                    'best_second_target_count'] = second_target_contributions[
                        best_second_target_index]
                targetCardDataDict['best_second_target_percent'] = round(
                    old_div(
                        second_target_contributions[best_second_target_index] *
                        100.0, sum(second_target_contributions)), 2)
                targetCardDataDict['worst_second_target'] = levels[
                    worst_second_target_index]
                targetCardDataDict['worst_second_target_percent'] = round(
                    old_div(
                        second_target_contributions[worst_second_target_index]
                        * 100.0, sum(second_target_contributions)), 2)

                card2Data = []
                targetLevelContributions = [
                    table.get_value(targetLevel, i) for i in levels
                ]
                impact_target_thershold = old_div(
                    sum(targetLevelContributions) * 0.02,
                    len(targetLevelContributions))
                card2Heading = '<h3>Key Drivers of ' + self._target_dimension + ' (' + targetLevel + ')' + "</h3>"
                chart, bubble = self.generate_distribution_card_chart(
                    targetLevel, targetLevelContributions, levels,
                    level_counts, total, impact_target_thershold)
                card2ChartData = NormalChartData(data=chart["data"])
                "rounding the chartdata values for key drivers tab inside table percentage(table data)"
                for d in card2ChartData.get_data():
                    d['percentage'] = round(d['percentage'], 2)
                    d_l.append(d)
                card2ChartJson = ChartJson()
                card2ChartJson.set_data(d_l)
                card2ChartJson.set_chart_type("combination")
                card2ChartJson.set_types({
                    "total": "bar",
                    "percentage": "line"
                })
                card2ChartJson.set_legend({
                    "total": "# of " + targetLevel,
                    "percentage": "% of " + targetLevel
                })
                card2ChartJson.set_axes({
                    "x": "key",
                    "y": "total",
                    "y2": "percentage"
                })
                card2ChartJson.set_label_text({
                    "x": " ",
                    "y": "Count",
                    "y2": "Percentage"
                })
                print("self._binTargetCol & self._binAnalyzedCol : ",
                      self._binTargetCol, self._binAnalyzedCol)
                if (self._binTargetCol == True & self._binAnalyzedCol ==
                        False):
                    print("Only Target Column is Binned")
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2_binned_target.html',
                            targetCardDataDict), self._blockSplitter)
                elif (self._binTargetCol == True & self._binAnalyzedCol ==
                      True):
                    print("Target Column and IV is Binned")
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2_binned_target_and_IV.html',
                            targetCardDataDict), self._blockSplitter)
                else:
                    print("In Else, self._binTargetCol should be False : ",
                          self._binTargetCol)
                    output2 = NarrativesUtils.block_splitter(
                        NarrativesUtils.get_template_output(
                            self._base_dir, 'card2.html', targetCardDataDict),
                        self._blockSplitter)

                card2Data.append(HtmlData(data=card2Heading))
                statistical_info_array = [
                    ("Test Type", "Chi-Square"),
                    ("Chi-Square statistic",
                     str(round(self._chisquare_result.get_stat(), 3))),
                    ("P-Value",
                     str(round(self._chisquare_result.get_pvalue(), 3))),
                    ("Inference",
                     "Chi-squared analysis shows a significant association between {} (target) and {}."
                     .format(self._target_dimension, self._analysed_dimension))
                ]
                statistical_info_array = NarrativesUtils.statistical_info_array_formatter(
                    statistical_info_array)

                card2Data.append(
                    C3ChartData(data=card2ChartJson,
                                info=statistical_info_array))
                card2Data += output2
                card2BubbleData = "<div class='col-md-6 col-xs-12'><h2 class='text-center'><span>{}</span><br /><small>{}</small></h2></div><div class='col-md-6 col-xs-12'><h2 class='text-center'><span>{}</span><br /><small>{}</small></h2></div>".format(
                    bubble[0]["value"], bubble[0]["text"], bubble[1]["value"],
                    bubble[1]["text"])
                card2Data.append(HtmlData(data=card2BubbleData))
                targetCard = NormalCard()
                targetCard.set_card_data(card2Data)
                targetCard.set_card_name("{} : Distribution of {}".format(
                    self._analysed_dimension, targetLevel))
                self._targetCards.append(targetCard)
                dict_for_test[targetLevel] = targetCardDataDict
        out = {'data_dict': data_dict, 'target_dict': dict_for_test}

        return out

    # def generate_card2_narratives(self):

    def generate_distribution_card_chart(self, __target,
                                         __target_contributions, levels,
                                         levels_count, total, thershold):
        chart = {}
        label = {'total': '# of ' + __target, 'percentage': '% of ' + __target}
        label_text = {
            'x': self._analysed_dimension,
            'y': '# of ' + __target,
            'y2': '% of ' + __target,
        }
        data = {}
        data['total'] = dict(list(zip(levels, __target_contributions)))
        __target_percentages = [
            old_div(x * 100.0, y)
            for x, y in zip(__target_contributions, levels_count)
        ]
        data['percentage'] = dict(list(zip(levels, __target_percentages)))
        chartData = []
        for val in zip(levels, __target_contributions, __target_percentages):
            chartData.append({
                "key": val[0],
                "total": val[1],
                "percentage": val[2]
            })
        # c3_data = [levels,__target_contributions,__target_percentages]
        chart_data = {'label': label, 'data': chartData}
        bubble_data1 = {}
        bubble_data2 = {}
        bubble_data1['value'] = str(
            round(
                old_div(
                    max(__target_contributions) * 100.0,
                    sum(__target_contributions)), 1)) + '%'
        m_index = __target_contributions.index(max(__target_contributions))
        bubble_data1[
            'text'] = 'Overall ' + __target + ' comes from ' + levels[m_index]
        intial = -1
        for k, v, i in zip(__target_contributions, __target_percentages,
                           list(range(len(__target_contributions)))):
            if k > thershold:
                if intial < v:
                    intial = v
                    bubble_data2['value'] = str(round(intial)) + '%'
                    #m_index = __target_percentages.index(i)
                    bubble_data2['text'] = levels[
                        i] + ' has the highest rate of ' + __target
        bubble_data = [bubble_data1, bubble_data2]
        return chart_data, bubble_data

    def generate_card1_table1(self):
        table_percent_by_column = self._chiSquareTable.table_percent_by_column
        column_two_values = self._chiSquareTable.column_two_values
        header_row = [self._analysed_dimension
                      ] + self._chiSquareTable.get_column_one_levels()
        all_columns = [column_two_values] + table_percent_by_column
        other_rows = list(zip(*all_columns))
        other_rows = [list(tup) for tup in other_rows]
        table_data = [header_row] + other_rows
        return table_data

    def generate_card1_table2(self):
        table = self._chiSquareTable.table
        table_percent = self._chiSquareTable.table_percent
        table_percent_by_row = self._chiSquareTable.table_percent_by_row
        table_percent_by_column = self._chiSquareTable.table_percent_by_column
        target_levels = self._chiSquareTable.get_column_one_levels()
        dim_levels = self._chiSquareTable.get_column_two_levels()

        header1 = [self._analysed_dimension] + target_levels + ['Total']
        header = ['State', 'Active', 'Churn', 'Total']  #TODO remove
        data = []
        data1 = [['Tag'] + header1]

        for idx, lvl in enumerate(dim_levels):
            first_row = ['Tag'] + header
            col_2_vals = list(zip(*table))[idx]
            data2 = ['bold'] + [lvl] + list(col_2_vals) + [sum(col_2_vals)]

            dict_ = dict(list(zip(first_row, data2)))
            data.append(dict_)
            data1.append(data2)

            col_2_vals = list(zip(*table_percent_by_column))[idx]
            data2 = [''] + ['As % within ' + self._analysed_dimension
                            ] + list(col_2_vals) + [100.0]
            dict_ = dict(list(zip(first_row, data2)))
            data.append(dict_)
            data1.append(data2)

            col_2_vals = list(zip(*table_percent_by_row))[idx]
            col_2_vals1 = list(zip(*table_percent))[idx]
            data2 = [''] + [
                'As % within ' + self._target_dimension
            ] + list(col_2_vals) + [round(sum(col_2_vals1), 2)]
            dict_ = dict(list(zip(first_row, data2)))
            data.append(dict_)
            data1.append(data2)
            # col_2_vals = zip(*table_percent)[idx]
            data2 = [''] + ['As % of Total'] + list(col_2_vals1) + [
                round(sum(col_2_vals1), 2)
            ]
            dict_ = dict(list(zip(first_row, data2)))
            data.append(dict_)
            data1.append(data2)

        out = {
            'header': header,
            'header1': header1,
            'data': data,
            'label': self._analysed_dimension,
            'data1': data1
        }
        return out