Exemple #1
0
def _add_field_to_table(field, table):
    row = m.Row()
    row.add(m.Cell(field['name']))
    row.add(m.Cell(field['field_name']))
    field_types = None
    if not isinstance(field['type'], list):
        field_types = '%s' % _type_to_string(field['type'])
    else:
        # List of field types are supported but the user will only care
        # about the simple types so we turn them into simple names (whole
        # number, decimal number etc. and then strip out the duplicates
        unique_list = []
        # First iterate the types found in the definition to get english names
        for field_type in field['type']:
            field_type_string = _type_to_string(field_type)
            if field_type_string not in unique_list:
                unique_list.append(field_type_string)
        # now iterate the unque list and write to a sentence
        for field_type in unique_list:
            if field_types:
                field_types += ', %s' % unicode(field_type)
            else:
                field_types = unicode(field_type)
    row.add(m.Cell(field_types))
    row.add(m.Cell(field['precision']))
    table.add(row)
    # Description goes in its own row with spanning
    row = m.Row()
    row.add(m.Cell(field['description'] + ' ' + field['help_text'], span=6))
    table.add(row)
    def format_impact_summary(self):
        """Format impact summary.

        :returns: The impact summary.
        :rtype: safe.messaging.Message
        """
        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None

        if 'headings' in self.impact_summary.keys():
            row = m.Row()
            row.add(m.Cell(self.impact_summary['headings'][0], header=True))
            row.add(
                m.Cell(self.impact_summary['headings'][1],
                       header=True,
                       align='right'))
            table.add(row)

        for category in self.impact_summary['fields']:
            row = m.Row()
            row.add(m.Cell(category[0], header=True))
            row.add(m.Cell(self.format_int(category[1]), align='right'))
            # For value field, if existed
            if len(category) > 2:
                row.add(m.Cell(self.format_int(category[2]), align='right'))
            table.add(row)
        message.add(table)
        return message
Exemple #3
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    def impact_summary(self):
        """The impact summary as per category

        :returns: The impact summary.
        :rtype: safe.message.Message
        """
        affected_categories = self.affected_road_categories

        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None

        row = m.Row()
        row.add(m.Cell(tr('Summary by road type'), header=True))
        for _ in affected_categories:
            # Add empty cell as many as affected_categories
            row.add(m.Cell('', header=True))

        if self.add_unaffected_column:
            # Add empty cell for un-affected road
            row.add(m.Cell('', header=True))

        # Add empty cell for total column
        row.add(m.Cell('', header=True))
        table.add(row)

        row = m.Row()
        row.add(m.Cell(tr('Road Type'), header=True))
        for affected_category in affected_categories:
            row.add(m.Cell(affected_category, header=True, align='right'))

        if self.add_unaffected_column:
            row.add(m.Cell(tr('Unaffected'), header=True, align='right'))

        row.add(m.Cell(tr('Total'), header=True, align='right'))
        table.add(row)

        total_affected = [0] * len(affected_categories)
        for (category, road_breakdown) in self.affected_road_lengths.items():
            number_affected = sum(road_breakdown.values())
            count = affected_categories.index(category)
            total_affected[count] = number_affected

        row = m.Row()
        row.add(m.Cell(tr('All (m)')))
        for total_affected_value in total_affected:
            row.add(
                m.Cell(format_int(int(total_affected_value)), align='right'))
        if self.add_unaffected_column:
            row.add(
                m.Cell(format_int(
                    int(self.total_road_length - sum(total_affected))),
                       align='right'))

        row.add(m.Cell(format_int(int(self.total_road_length)), align='right'))
        table.add(row)

        message.add(table)

        return message
    def minimum_needs_breakdown(self):
        """Breakdown by population.

        :returns: The population breakdown report.
        :rtype: list
        """
        message = m.Message(style_class='container')
        message.add(
            m.Heading(tr('Evacuated population minimum needs'),
                      **styles.INFO_STYLE))
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None
        total_needs = self.total_needs
        for frequency, needs in total_needs.items():
            row = m.Row()
            row.add(
                m.Cell(tr('Relief items to be provided %s' % frequency),
                       header=True))
            row.add(m.Cell(tr('Total'), header=True, align='right'))
            table.add(row)
            for resource in needs:
                row = m.Row()
                row.add(m.Cell(tr(resource['table name'])))
                row.add(
                    m.Cell(tr(format_int(resource['amount'])), align='right'))
                table.add(row)
        message.add(table)
        return message
    def hazard_table(self, hazard_table):
        """ Return updated hazard table.

        :param hazard_table: hazard table.
        :type hazard_table: Table

        :returns hazard_table: Updated Hazard Table
        :rtype area_name: Table
        """
        hazard_table.caption = None

        for key, value in self.hazard_levels.iteritems():

            name = self.hazard_class_mapping[key][0]
            # This skips reporting people not affected in No zone
            if key == 'wet':
                row = m.Row()
                row.add(
                    m.Cell(
                        tr('People within hazard field ("%s") of value "%s"') %
                        (self.hazard_class_field, name),
                        header=True))
                value = format_int(population_rounding(value))
                row.add(m.Cell(value, align='right'))
            elif key == 'dry':
                continue
            else:
                row = m.Row()
                row.add(m.Cell(name, header=True))
                value = format_int(population_rounding(value))
                row.add(m.Cell(value, align='right'))
            hazard_table.add(row)

        # Total affected population
        row = m.Row()
        row.add(m.Cell(tr('Total affected people'), header=True))
        affected = format_int(
            population_rounding(self.total_affected_population))
        row.add(m.Cell(affected, align='right'))
        hazard_table.add(row)

        # Non affected population
        row = m.Row()
        unaffected = format_int(population_rounding(
            self.unaffected_population))
        row.add(m.Cell(tr('Unaffected people'), header=True))
        row.add(m.Cell(unaffected, align='right'))
        hazard_table.add(row)

        # Total Population
        row = m.Row()
        total_population = format_int(
            population_rounding(self.total_population))
        row.add(m.Cell(tr('Total people'), header=True))
        row.add(m.Cell(total_population, align='right'))
        hazard_table.add(row)

        return hazard_table
    def format_postprocessing(self):
        """Format postprocessing.

        :returns: The postprocessing.
        :rtype: safe.messaging.Message
        """
        # List of post processor that can't be sum up. Issue #3118
        no_total = ['Age', 'Gender', 'MinimumNeeds']

        if not self.postprocessing:
            return False
        message = m.Message()
        for postprocessor, v in self.postprocessing.items():
            table = m.Table(style_class='table table-condensed table-striped')
            table.caption = v['caption']
            attributes = v['attributes']

            if attributes:
                header = m.Row()
                # Bold and align left the 1st one.

                header.add(m.Cell(attributes[0], header=True, align='left'))
                for attribute in attributes[1:]:
                    # Bold and align right.
                    header.add(m.Cell(attribute, header=True, align='right'))
                if postprocessor not in no_total:
                    header.add(m.Cell('Total', header=True, align='right'))
                table.add(header)

                for field in v['fields']:
                    row = m.Row()
                    # First column is string
                    row.add(m.Cell(field[0]))
                    total = 0
                    for value in field[1:]:
                        try:
                            val = int(value)
                            total += val
                            # Align right integers.
                            row.add(m.Cell(self.format_int(val),
                                           align='right'))
                        except ValueError:
                            # Catch no data value. Align left strings.
                            row.add(m.Cell(value, align='left'))
                    if postprocessor not in no_total:
                        row.add(
                            m.Cell(self.format_int(round(total)),
                                   align='right'))
                    table.add(row)

            message.add(table)

            for note in v['notes']:
                message.add(m.EmphasizedText(note))

        return message
Exemple #7
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def _create_post_processor_subtable(item_list):
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    row.add(m.Cell(tr('Name'), header=True))
    row.add(m.Cell(tr('Description'), header=True))
    table.add(row)
    for item in item_list:
        row = m.Row()
        row.add(m.Cell(item['key']))
        row.add(m.Cell(item['description']))
        table.add(row)
    return table
Exemple #8
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    def impact_summary(self):
        """The impact summary as per category.

        :returns: The impact summary.
        :rtype: safe.messaging.Message
        """
        affect_types = self._impact_breakdown
        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None
        row = m.Row()
        row.add(m.Cell('', header=True))  # intentionally empty top left cell
        row.add(m.Cell('Buildings affected', header=True))
        for (category, building_breakdown) in self.affected_buildings.items():
            total_affected = [0] * len(affect_types)
            for affected_breakdown in building_breakdown.values():
                for affect_type, number_affected in affected_breakdown.items():
                    count = affect_types.index(affect_type)
                    total_affected[count] += number_affected
            row = m.Row()
            row.add(m.Cell(tr(category), header=True))
            for affected in total_affected:
                row.add(m.Cell(format_int(affected), align='right'))
            table.add(row)

        if len(self._affected_categories) > 1:
            row = m.Row()
            row.add(m.Cell(tr('Affected buildings'), header=True))
            row.add(
                m.Cell(format_int(self.total_affected_buildings),
                       align='right'))
            table.add(row)

        # Only show not affected building row if the IF does not use custom
        # affected categories
        if self._affected_categories == self.affected_buildings.keys():
            row = m.Row()
            row.add(m.Cell(tr('Not affected buildings'), header=True))
            row.add(
                m.Cell(format_int(self.total_unaffected_buildings),
                       align='right'))
            table.add(row)

        row = m.Row()
        row.add(m.Cell(tr('Total'), header=True))
        row.add(m.Cell(format_int(self.total_buildings), align='right'))
        table.add(row)
        message.add(table)
        return message
    def format_impact_table(self):
        """Impact detailed report.

        :returns: The detailed report.
        :rtype: safe.messaging.Message
        """
        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None

        # Table header
        row = m.Row()
        attributes = self.impact_table['attributes']
        # Bold and align left the 1st one.
        row.add(m.Cell(attributes[0], header=True, align='left'))
        for attribute in attributes[1:]:
            # Bold and align right.
            row.add(m.Cell(attribute, header=True, align='right'))
        table.add(row)

        # Fields
        for record in self.impact_table['fields'][:-1]:
            row = m.Row()
            # Bold and align left the 1st one.
            row.add(m.Cell(record[0], header=True, align='left'))
            for content in record[1:-1]:
                # Align right.
                row.add(m.Cell(format_int(int(content)), align='right'))
            # Bold and align right the last one.
            row.add(
                m.Cell(format_int(int(record[-1])), header=True,
                       align='right'))
            table.add(row)

        # Total Row
        row = m.Row()
        last_row = self.impact_table['fields'][-1]
        # Bold and align left the 1st one.
        row.add(m.Cell(last_row[0], header=True, align='left'))
        for content in last_row[1:]:
            # Bold and align right.
            row.add(
                m.Cell(format_int(int(content)), header=True, align='right'))
        table.add(row)

        message.add(table)

        return message
Exemple #10
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def _start_glossary_table(group):
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    row.add(m.Cell(tr('Term')), header_flag=True)
    row.add(m.Cell(tr('Description')), header_flag=True)
    table.add(row)
    return table
Exemple #11
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    def generate_analysis_result_html(self):
        """Return a HTML table of the analysis result

        :return: A file path to the html file saved to disk.
        """
        message = m.Message(style_class='report')
        # Table for affected population
        table = m.Table(style_class='table table-condensed table-striped')
        row = m.Row()
        total_people = self.tr('%s') % format_int(
            population_rounding(self.impact_data.total_affected_population))
        estimates_idp = self.tr('%s') % format_int(
            population_rounding(self.impact_data.estimates_idp))
        row.add(
            m.Cell(self.tr('Total affected population (people)'), header=True))
        row.add(m.Cell(total_people, style_class="text-right"))
        table.add(row)
        row = m.Row()
        row.add(m.Cell(self.tr('Estimates of IDP (people)'), header=True))
        row.add(m.Cell(estimates_idp, style_class="text-right"))
        table.add(row)
        message.add(table)
        # Table for minimum needs
        for k, v in self.impact_data.minimum_needs.iteritems():
            section = self.tr('Relief items to be provided %s :') % k
            # text = m.Text(section)
            row = m.Row(style_class='alert-info')
            row.add(m.Cell(section, header=True, attributes='colspan=2'))
            # message.add(text)
            table = m.Table(header=row,
                            style_class='table table-condensed table-striped')
            for e in v:
                row = m.Row()
                need_name = self.tr(e['name'])
                need_number = format_int(population_rounding(e['amount']))
                need_unit = self.tr(e['unit']['abbreviation'])
                if need_unit:
                    need_string = '%s (%s)' % (need_name, need_unit)
                else:
                    need_string = need_name
                row.add(m.Cell(need_string, header=True))
                row.add(m.Cell(need_number, style_class="text-right"))
                table.add(row)
            message.add(table)

        path = self.write_html_table('impact_analysis_report.html', message)
        return path
Exemple #12
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def _start_glossary_table(group):
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    # first col for icons if present
    row.add(m.Cell(tr('Term'), header=True))
    row.add(m.Cell(tr('Description'), header=True))
    row.add(m.Cell(tr(''), header=True))
    table.add(row)
    return table
    def impact_summary(self):
        """The impact summary as per category

        :returns: The impact summary.
        :rtype: safe.messaging.Message
        """
        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None

        row = m.Row()
        row = self.head_row(row)
        table.add(row)

        second_row = m.Row()
        second_row.add(m.Cell(tr('All')))
        second_row = self.total_row(second_row)
        table.add(second_row)

        break_row = m.Row()
        break_row.add(
            m.Cell(tr('Breakdown by Area'), header=True, align='right'))
        # intentionally empty right cells
        break_row.add(m.Cell('', header=True))
        break_row.add(m.Cell('', header=True))
        break_row.add(m.Cell('', header=True))
        break_row.add(m.Cell('', header=True))
        break_row.add(m.Cell('', header=True))
        break_row.add(m.Cell('', header=True))
        table.add(break_row)

        table = self.impact_calculation(table)
        last_row = m.Row()
        last_row.add(m.Cell(tr('Total')))
        table.add(self.total_row(last_row))

        hazard_table = m.Table(
            style_class='table table-condensed table-striped')
        hazard_table = self.hazard_table(hazard_table)

        message.add(hazard_table)
        message.add(table)

        return message
Exemple #14
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def _create_fields_table():
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    row.add(m.Cell(tr('Name'), header=True))
    row.add(m.Cell(tr('Field Name'), header=True))
    row.add(m.Cell(tr('Type'), header=True))
    row.add(m.Cell(tr('Length'), header=True))
    row.add(m.Cell(tr('Precision'), header=True))
    table.add(row)
    return table
Exemple #15
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    def _dict_to_row(keyword_value):
        """Helper to make a message row from a keyword where value is a dict.

        .. versionadded:: 3.2

        Use this when constructing a table from keywords to display as
        part of a message object. This variant will unpack the dict and
        present it nicely in the keyword value area as a nested table in the
        cell.

        We are expecting keyword value would be something like this:

            "{'high': ['Kawasan Rawan Bencana III'], "
            "'medium': ['Kawasan Rawan Bencana II'], "
            "'low': ['Kawasan Rawan Bencana I']}"

        Or by passing a python dict object with similar layout to above.

        i.e. A string representation of a dict where the values are lists.

        :param keyword_value: Value of the keyword to be rendered. This must
            be a string representation of a dict, or a dict.
        :type keyword_value: basestring, dict

        :returns: A table to be added into a cell in the keywords table.
        :rtype: safe.messaging.items.table
        """
        if isinstance(keyword_value, basestring):
            keyword_value = literal_eval(keyword_value)
        table = m.Table(style_class='table table-condensed')
        for key, value in keyword_value.items():
            row = m.Row()
            # First the heading
            if definition(key):
                name = definition(key)['name']
            else:
                name = tr(key.capitalize())
            row.add(m.Cell(m.ImportantText(name)))
            # Then the value. If it contains more than one element we
            # present it as a bullet list, otherwise just as simple text
            if isinstance(value, (tuple, list, dict, set)):
                if len(value) > 1:
                    bullets = m.BulletedList()
                    for item in value:
                        bullets.add(item)
                    row.add(m.Cell(bullets))
                elif len(value) == 0:
                    row.add(m.Cell(""))
                else:
                    row.add(m.Cell(value[0]))
            else:
                row.add(m.Cell(value))

            table.add(row)
        return table
Exemple #16
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def _make_defaults_exposure_table():
    """Build headers for a table related to exposure classes.

    :return: A table with headers.
    :rtype: m.Table
    """
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    row.add(m.Cell(tr('Name'), header=True))
    row.add(m.Cell(tr('Default values'), header=True))
    table.add(row)
    return table
Exemple #17
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def _make_defaults_table():
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    # first row is for colour - we dont use a header here as some tables
    # do not have colour...
    row.add(m.Cell(tr('')), header_flag=True)
    row.add(m.Cell(tr('Name')), header_flag=True)
    row.add(m.Cell(tr('Affected')), header_flag=True)
    row.add(m.Cell(tr('Displacement rate')), header_flag=True)
    row.add(m.Cell(tr('Default values')), header_flag=True)
    row.add(m.Cell(tr('Default min')), header_flag=True)
    row.add(m.Cell(tr('Default max')), header_flag=True)
    table.add(row)
    return table
Exemple #18
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 def _tabulate_zero_impact(self):
     thresholds = self.parameters['thresholds'].value
     message = m.Message()
     table = m.Table(style_class='table table-condensed table-striped')
     row = m.Row()
     label = m.ImportantText(
         tr('People in %.1f m of water') % thresholds[-1])
     content = '%s' % format_int(self.total_evacuated)
     row.add(m.Cell(label))
     row.add(m.Cell(content))
     table.add(row)
     table.caption = self.question
     message.add(table)
     message = message.to_html(suppress_newlines=True)
     return message
Exemple #19
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def _make_defaults_hazard_table():
    """Build headers for a table related to hazard classes.

    :return: A table with headers.
    :rtype: m.Table
    """
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    # first row is for colour - we dont use a header here as some tables
    # do not have colour...
    row.add(m.Cell(tr(''), header=True))
    row.add(m.Cell(tr('Name'), header=True))
    row.add(m.Cell(tr('Affected'), header=True))
    row.add(m.Cell(tr('Fatality rate'), header=True))
    row.add(m.Cell(tr('Displacement rate'), header=True))
    row.add(m.Cell(tr('Default values'), header=True))
    row.add(m.Cell(tr('Default min'), header=True))
    row.add(m.Cell(tr('Default max'), header=True))
    table.add(row)
    return table
    def impact_row(self, area_id, affected, percent_affected,
                   single_total_area, number_people_affected,
                   percent_people_affected):
        """Adds the calculated results into respective impact row

        :param area_id: Area id
        :type area_id: int

        :param affected: table with first and second row
        :type affected: Table

        :param percent_affected: percentage of affected area
        :type percent_affected:float

        :param single_total_area: total area of the land
        :type single_total_area:float

        :param number_people_affected: number of people affected
        :type number_people_affected:float

        :param percent_people_affected: percentage of people affected
        in the area
        :type percent_people_affected:float

        :return row: the new impact row
        :rtype row: Row
        """
        area_name = self.area_name(area_id)
        row = m.Row()
        row.add(m.Cell(area_name))
        row.add(m.Cell(format_int(int(affected)), align='right'))
        row.add(m.Cell("%.1f%%" % percent_affected, align='right'))
        row.add(m.Cell(format_int(int(single_total_area)), align='right'))
        row.add(m.Cell(format_int(int(number_people_affected)), align='right'))
        row.add(m.Cell("%.1f%%" % percent_people_affected, align='right'))
        row.add(
            m.Cell(format_int(int(self.areas_population[area_id])),
                   align='right'))

        return row
Exemple #21
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def no_population_impact_message(question):
    """Create a message that indicates that no population were impacted.

    :param question: A question sentence that will be used as the table
        caption.
    :type question: basestring

    :returns: An html document containing a nice message saying nobody was
        impacted.
    :rtype: basestring
    """
    message = m.Message()
    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    label = m.ImportantText(tr('People impacted'))
    content = 0
    row.add(m.Cell(label))
    row.add(m.Cell(content))
    table.add(row)
    table.caption = question
    message.add(table)
    message = message.to_html(suppress_newlines=True)
    return message
    def impact_summary(self):
        """The impact summary as per category

        :returns: The impact summary.
        :rtype: safe.messaging.Message
        """
        message = m.Message(style_class='container')
        table = m.Table(style_class='table table-condensed table-striped')
        table.caption = None
        row = m.Row()
        row.add(
            m.Cell(tr('Population needing evacuation <sup>1</sup>'),
                   header=True))
        evacuated = format_int(population_rounding(self.total_evacuated))
        row.add(m.Cell(evacuated, align='right'))
        table.add(row)
        if len(self.impact_category_ordering):
            table.add(m.Row())  # add a blank line
            row = m.Row()
            row.add(m.Cell(tr('Total affected population'), header=True))
            affected = format_int(
                population_rounding(self.total_affected_population))
            row.add(m.Cell(affected, align='right'))
            table.add(row)

            for category in self.impact_category_ordering:
                population_in_category = self.lookup_category(category)
                population_in_category = format_int(
                    population_rounding(population_in_category))
                row = m.Row()
                row.add(m.Cell(tr(category), header=True))
                row.add(m.Cell(population_in_category, align='right'))
                table.add(row)

        table.add(m.Row())  # add a blank line

        row = m.Row()
        unaffected = format_int(population_rounding(
            self.unaffected_population))
        row.add(m.Cell(tr('Unaffected population'), header=True))
        row.add(m.Cell(unaffected, align='right'))
        table.add(row)
        message.add(table)
        return message
Exemple #23
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def field_mapping_help_content():
    """Helper method that returns just the content in extent mode.

    This method was added so that the text could be reused in the
    wizard.

    :returns: A message object without brand element.
    :rtype: safe.messaging.message.Message
    """
    message = m.Message()
    paragraph = m.Paragraph(
        tr('Field mapping describes the process of matching one or more fields '
           'in an attribute table to a concept in InaSAFE. The field mappings '
           'tool InaSAFE allows you to match concepts such as "elderly", '
           '"disabled people", "pregnant" and so on to their counterpart fields '
           'in either an aggregation layer or an exposure population vector '
           'layer.'))
    message.add(paragraph)
    paragraph = m.Paragraph(
        m.ImportantText(
            'Note: It is not possible to use this tool with raster population '
            'exposure data, but ratios defined in aggregation layers will be '
            'used when raster exposure population data is used.'))
    message.add(paragraph)

    paragraph = m.Paragraph(m.Image('file:///%s/img/screenshots/'
                                    'demographic-concepts-screenshot.png' %
                                    resources_path()),
                            style_class='text-center')
    message.add(paragraph)

    paragraph = m.Paragraph(
        tr('The illustration above shows the principle behind InaSAFE\'s '
           'demographic breakdown reporting system. The idea here is to support '
           'the production of a detailed demographic breakdown when carrying out '
           'an analysis with a population exposure vector dataset. So for '
           'example instead of simply reporting on the total number of people '
           'exposed to a hazard, we want to break down the affected population '
           'into distinct demographic groups. In InaSAFE by default we consider '
           'three groups:'))
    message.add(paragraph)

    bullets = m.BulletedList()
    bullets.add(
        m.Paragraph(
            m.ImportantText(tr('Gender: ')),
            tr('The gender group reports on gender specific demographics '
               'including things like the number of women of child bearing age, '
               'number of pregnant women, number of lactating women and so on.'
               )))
    bullets.add(
        m.Paragraph(
            m.ImportantText(tr('Age: ')),
            tr('The age group reports on age specific demographics including '
               'things like the number of infants, children, young adults, '
               'adults elderly people and so on.')))
    bullets.add(
        m.Paragraph(
            m.ImportantText(tr('Vulnerable people: ')),
            tr('The vulnerable people group reports on specific demographics '
               'relating to vulnerability including things like the number of '
               'infants, elderly people, disabled people and so on.')))
    message.add(bullets)
    paragraph = m.Paragraph(
        tr('In the diagram above, you can see that we have an "age" group '
           '(column on the right) which, for purposes of illustration, has two '
           'age classes: "infant" and "child" (center column). These age classes '
           'are defined in InaSAFE metadata and there are actually five classes '
           'in a default installation. In the left hand column you can see a '
           'number of columns listed from the attribute table. In this example '
           'our population data contains columns for different age ranges ('
           '0-1, 1-2, 2-4, 4-6). The field mapping tool can be used in order '
           'to combine the data in the "0 - 1" and "1 - 2" columns into a '
           'new column called "infant". In the next section of this document we '
           'enumerate the different groups and concepts that InaSAFE supports '
           'when generating demographic breakdowns.'))
    message.add(paragraph)
    paragraph = m.Paragraph(
        tr('When the tool is used, it will write additional data to the '
           'exposure or aggregation layer keywords so that your preferred '
           'concept mappings will be used when reports are generated after the '
           'analysis is carried out. You should note the following special '
           'characteristics of the field mapping tool when used for aggregation '
           'datasets versus when used for vector population exposure datasets:'
           ))
    message.add(paragraph)
    paragraph = m.Paragraph(
        m.ImportantText(tr('Aggregation datasets: ')),
        tr('For aggregation datasets, the field mapping tool uses global '
           'defaults (see the InaSAFE Options Dialog documentation for more '
           'details) or dataset level defaults to determine which ratios '
           'should be used to calculate concept values. For example, in the '
           'age group the aggregation dataset may specify that infants '
           'should by calculated as a ratio of 0.1% of the total population. '
           'Note that for aggregation datasets you can only use ratios, '
           'not counts.'))
    message.add(paragraph)
    paragraph = m.Paragraph(
        m.ImportantText(tr('Vector population exposure datasets: ')),
        tr('For exposure datasets, ratios are not supported, only counts. '
           'The field mappings carried out here will be used to generate '
           'new columns during a pre-processing step before the actual '
           'analysis is carried out.'))
    message.add(paragraph)
    paragraph = m.Paragraph(
        tr('The interplay between default ratios, aggregation layer '
           'provided ratios and population exposure layers is illustrated '
           'in the table below.'))
    message.add(paragraph)

    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row()
    row.add(m.Cell(tr('Aggregation'), header=True))
    row.add(m.Cell(tr('Raster'), header=True))
    row.add(m.Cell(tr('Vector, no counts'), header=True))
    row.add(m.Cell(tr('Vector with counts'), header=True))
    row.add(m.Cell(tr('Notes'), header=True))
    table.add(row)
    row = m.Row([
        tr('No aggregation'),
        tr('Use global default ratio'),
        tr('Use global default ratio'),
        tr('Use count to determine ratio'),
        tr(''),
    ])
    table.add(row)
    row = m.Row([
        tr('Aggregation, ratio not set'),
        tr('Use global default ratio'),
        tr('Do nothing'),
        tr('Use count to determine ratio'),
        tr(''),
    ])
    table.add(row)
    row = m.Row([
        tr('Aggregation, ratio value set'),
        tr('Use aggregation layer ratio'),
        tr('Use aggregation layer ratio'),
        tr('Use count to determine ratio'),
        tr(''),
    ])
    table.add(row)
    row = m.Row([
        tr('Aggregation, ratio field mapping set'),
        tr('Use aggregation layer ratio'),
        tr('Use aggregation layer ratio'),
        tr('Use count to determine ratio'),
        tr(''),
    ])
    table.add(row)
    message.add(table)

    return message
Exemple #24
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    def _value_maps_row(value_maps_keyword):
        """Helper to make a message row from a value maps.

        Expected keywords:
        'value_maps': {
            'structure': {
                'ina_structure_flood_hazard_classification': {
                    'classes': {
                        'low': [1, 2, 3],
                        'medium': [4],
                        'high': [5, 6]
                    },
                    'active': True
                },
                'ina_structure_flood_hazard_4_class_classification':
                {
                    'classes': {
                        'low': [1],
                        'medium': [2, 3, 4],
                        'high': [5, 6, 7],
                        'very_high': [8]
                    },
                    'active': False

                }
            },
            'population': {
                'ina_population_flood_hazard_classification': {
                    'classes': {
                        'low': [1],
                        'medium': [2, 3],
                        'high': [4, 5, 6]
                    },
                    'active': False
                },
                'ina_population_flood_hazard_4_class_classification':
                {
                    'classes': {
                        'low': [1, 2],
                        'medium': [3, 4],
                        'high': [4, 5, 6],
                        'very_high': [6, 7, 8]
                    },
                    'active': True
                }
            },
        }

        :param value_maps_keyword: Value of the keyword to be rendered. This
            must be a string representation of a dict, or a dict.
        :type value_maps_keyword: basestring, dict

        :returns: A table to be added into a cell in the keywords table.
        :rtype: safe.messaging.items.table
        """
        if isinstance(value_maps_keyword, basestring):
            value_maps_keyword = literal_eval(value_maps_keyword)

        table = m.Table(style_class='table table-condensed table-striped')

        i = 0
        for exposure_key, classifications in value_maps_keyword.items():
            i += 1
            exposure = definition(exposure_key)
            exposure_row = m.Row()
            exposure_row.add(m.Cell(m.ImportantText(tr('Exposure'))))
            exposure_row.add(m.Cell(exposure['name']))
            table.add(exposure_row)

            classification_row = m.Row()
            classification_row.add(
                m.Cell(m.ImportantText(tr('Classification'))))
            active_classification = None
            for classification, value in classifications.items():
                if value.get('active'):
                    active_classification = definition(classification)
                    if active_classification.get('name'):
                        classification_row.add(
                            m.Cell(active_classification['name']))
                    break

            if not active_classification:
                classification_row.add(m.Cell(tr('No classifications set.')))
                continue
            table.add(classification_row)

            header = m.Row()
            header.add(m.Cell(tr('Class name')))
            header.add(m.Cell(tr('Values')))
            table.add(header)
            classes = active_classification.get('classes')
            # Sort by value, put the lowest first
            classes = sorted(classes, key=lambda k: k['value'])
            for the_class in classes:
                value_map = classifications[
                    active_classification['key']]['classes'].get(
                        the_class['key'], [])
                row = m.Row()
                row.add(m.Cell(the_class['name']))
                row.add(m.Cell(', '.join([str(v) for v in value_map])))
                table.add(row)

            if i < len(value_maps_keyword):
                # Empty row
                empty_row = m.Row()
                empty_row.add(m.Cell(''))
                empty_row.add(m.Cell(''))
                table.add(empty_row)

        return table
Exemple #25
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    def _threshold_to_row(thresholds_keyword):
        """Helper to make a message row from a threshold

        We are expecting something like this:

        {
            'thresholds': {
                'structure': {
                    'ina_structure_flood_hazard_classification': {
                        'classes': {
                            'low': [1, 2],
                            'medium': [3, 4],
                            'high': [5, 6]
                        },
                        'active': True
                    },
                    'ina_structure_flood_hazard_4_class_classification':
                    {
                        'classes': {
                            'low': [1, 2],
                            'medium': [3, 4],
                            'high': [5, 6],
                            'very_high': [7, 8]
                        },
                        'active': False

                    }
                },
                'population': {
                    'ina_population_flood_hazard_classification': {
                        'classes': {
                            'low': [1, 2.5],
                            'medium': [2.5, 4.5],
                            'high': [4.5, 6]
                        },
                        'active': False
                    },
                    'ina_population_flood_hazard_4_class_classification':
                    {
                        'classes': {
                            'low': [1, 2.5],
                            'medium': [2.5, 4],
                            'high': [4, 6],
                            'very_high': [6, 8]
                        },
                        'active': True
                    }
                },
            },

        Each value is a list with exactly two element [a, b], where a <= b.

        :param thresholds_keyword: Value of the keyword to be rendered. This
            must be a string representation of a dict, or a dict.
        :type thresholds_keyword: basestring, dict

        :returns: A table to be added into a cell in the keywords table.
        :rtype: safe.messaging.items.table
        """
        if isinstance(thresholds_keyword, basestring):
            thresholds_keyword = literal_eval(thresholds_keyword)

        for k, v in thresholds_keyword.items():
            # If the v is not dictionary, it should be the old value maps.
            # To handle thresholds in the Impact Function.
            if not isinstance(v, dict):
                table = m.Table(style_class='table table-condensed')

                for key, value in thresholds_keyword.items():
                    row = m.Row()
                    name = definition(key)['name'] if definition(key) else key
                    row.add(m.Cell(m.ImportantText(name)))
                    pretty_value = tr('%s to %s' % (value[0], value[1]))
                    row.add(m.Cell(pretty_value))

                    table.add(row)
                return table

        table = m.Table(style_class='table table-condensed table-striped')

        i = 0
        for exposure_key, classifications in thresholds_keyword.items():
            i += 1
            exposure = definition(exposure_key)
            exposure_row = m.Row()
            exposure_row.add(m.Cell(m.ImportantText('Exposure')))
            exposure_row.add(m.Cell(m.Text(exposure['name'])))
            exposure_row.add(m.Cell(''))
            table.add(exposure_row)

            active_classification = None
            classification_row = m.Row()
            classification_row.add(m.Cell(m.ImportantText('Classification')))
            for classification, value in classifications.items():
                if value.get('active'):
                    active_classification = definition(classification)
                    classification_row.add(
                        m.Cell(active_classification['name']))
                    classification_row.add(m.Cell(''))
                    break

            if not active_classification:
                classification_row.add(m.Cell(tr('No classifications set.')))
                classification_row.add(m.Cell(''))
                continue

            table.add(classification_row)

            header = m.Row()
            header.add(m.Cell(tr('Class name')))
            header.add(m.Cell(tr('Minimum')))
            header.add(m.Cell(tr('Maximum')))
            table.add(header)
            classes = active_classification.get('classes')
            # Sort by value, put the lowest first
            classes = sorted(classes, key=lambda k: k['value'])
            for the_class in classes:
                threshold = classifications[
                    active_classification['key']]['classes'][the_class['key']]
                row = m.Row()
                row.add(m.Cell(the_class['name']))
                row.add(m.Cell(threshold[0]))
                row.add(m.Cell(threshold[1]))
                table.add(row)

            if i < len(thresholds_keyword):
                # Empty row
                empty_row = m.Row()
                empty_row.add(m.Cell(''))
                empty_row.add(m.Cell(''))
                table.add(empty_row)

        return table
Exemple #26
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def content():
    """Helper method that returns just the content.

    This method was added so that the text could be reused in the
    other contexts.

    .. versionadded:: 3.2.2

    :returns: A message object without brand element.
    :rtype: safe.messaging.message.Message
    """

    message = m.Message()
    paragraph = m.Paragraph(
        m.Image(
            'file:///%s/img/screenshots/'
            'batch-calculator-screenshot.png' % resources_path()),
        style_class='text-center'
    )
    message.add(paragraph)

    message.add(m.Paragraph(tr(
        'With this tool you can set up numerous scenarios and run them all in '
        'one go. A typical use case may be where you define a number of e.g. '
        'flood impact scenarios all using a standard data set e.g. '
        'flood.shp. As new flood data becomes available you replace flood.shp '
        'and rerun the scenarios using the batch runner. Using this approach '
        'you can quickly produce regional contingency plans as your '
        'understanding of hazards changes. When you run the batch of '
        'scenarios, pdf reports are generated automatically and all placed in '
        'a single common directory making it easy for you to browse and '
        'disseminate the reports produced.')))

    message.add(m.Paragraph(tr(
        'When the batch process completes, it will also produce a summary '
        'report like this:')))

    table = m.Table(style_class='table table-condensed table-striped')
    row = m.Row(m.Cell(tr('InaSAFE Batch Report File')), header=True)
    table.add(row)
    table.add(m.Row(m.Cell('P: gempa bumi Sumatran fault (Mw7.8)')))
    table.add(m.Row(m.Cell('P: gempa di Yogya tahun 2006')))
    table.add(m.Row(m.Cell('P: banjir jakarta 2007')))
    table.add(m.Row(m.Cell('P: Tsunami di Maumere (Mw 8.1)')))
    table.add(m.Row(m.Cell('P: gempa Mw6.5 Palu-Koro Fault')))
    table.add(m.Row(m.Cell('P: gunung merapi meletus')))
    table.add(m.Row(m.Cell('-----------------------------')))
    table.add(m.Row(m.Cell(tr('Total passed: 6'))))
    table.add(m.Row(m.Cell(tr('Total failed: 0'))))
    table.add(m.Row(m.Cell(tr('Total tasks: 6'))))

    message.add(table)

    # message.add(m.Paragraph(tr(
    #     'For advanced users there is also the ability to batch run python '
    #     'scripts using this tool, but this should be considered an '
    #     'experimental</strong> feature still at this stage.')))

    message.add(m.Paragraph(tr(
        'Before running the Batch Runner you might want to use the \'save '
        'scenario\' tool to first save some scenarios on which you '
        'can let the batch runner do its work. This tool lets you run saved '
        'scenarios in one go. It lets you select scenarios or let run all '
        'scenarios in one go.')))
    return message
Exemple #27
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    def show_current_state(self):
        """Setup the UI for QTextEdit to show the current state."""
        right_panel_heading = QLabel(tr('Status'))
        right_panel_heading.setFont(big_font)
        right_panel_heading.setSizePolicy(
            QSizePolicy.Maximum, QSizePolicy.Maximum)
        self.right_layout.addWidget(right_panel_heading)

        message = m.Message()
        if self.layer_mode == layer_mode_continuous:
            title = tr('Thresholds')
        else:
            title = tr('Value maps')

        message.add(m.Heading(title, **INFO_STYLE))

        for i in range(len(self.exposures)):
            message.add(m.Text(self.exposure_labels[i]))

            classification = self.get_classification(
                self.exposure_combo_boxes[i])
            if self.layer_mode == layer_mode_continuous:
                thresholds = self.thresholds.get(self.exposures[i]['key'])
                if not thresholds or not classification:
                    message.add(m.Paragraph(tr('No classifications set.')))
                    continue
                table = m.Table(
                    style_class='table table-condensed table-striped')
                header = m.Row()
                header.add(m.Cell(tr('Class name')))
                header.add(m.Cell(tr('Minimum')))
                header.add(m.Cell(tr('Maximum')))
                table.add(header)
                classes = classification.get('classes')
                # Sort by value, put the lowest first
                classes = sorted(classes, key=lambda k: k['value'])
                for the_class in classes:
                    threshold = thresholds[classification['key']]['classes'][
                        the_class['key']]
                    row = m.Row()
                    row.add(m.Cell(the_class['name']))
                    row.add(m.Cell(threshold[0]))
                    row.add(m.Cell(threshold[1]))
                    table.add(row)
            else:
                value_maps = self.value_maps.get(self.exposures[i]['key'])
                if not value_maps or not classification:
                    message.add(m.Paragraph(tr('No classifications set.')))
                    continue
                table = m.Table(
                    style_class='table table-condensed table-striped')
                header = m.Row()
                header.add(m.Cell(tr('Class name')))
                header.add(m.Cell(tr('Value')))
                table.add(header)
                classes = classification.get('classes')
                # Sort by value, put the lowest first
                classes = sorted(classes, key=lambda k: k['value'])
                for the_class in classes:
                    value_map = value_maps[classification['key']][
                        'classes'].get(the_class['key'], [])
                    row = m.Row()
                    row.add(m.Cell(the_class['name']))
                    row.add(m.Cell(', '.join([str(v) for v in value_map])))
                    table.add(row)
            message.add(table)

        # status_text_edit = QTextBrowser(None)
        status_text_edit = QWebView(None)
        status_text_edit.setSizePolicy(
            QSizePolicy.Ignored,
            QSizePolicy.Ignored)

        status_text_edit.page().mainFrame().setScrollBarPolicy(
            Qt.Horizontal,
            Qt.ScrollBarAlwaysOff)
        html_string = html_header() + message.to_html() + html_footer()
        status_text_edit.setHtml(html_string)
        self.right_layout.addWidget(status_text_edit)
Exemple #28
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    def _generate_tables(self, aoi_mode=True):
        """Parses the postprocessing output as one table per postprocessor.

        TODO: This should rather return json and then have a helper method to
        make html from the JSON.

        :param aoi_mode: adds a Total in aggregation areas
        row to the calculated table
        :type aoi_mode: bool

        :returns: The html.
        :rtype: str
        """
        message = m.Message()

        for processor, results_list in self.output.iteritems():

            self.current_output_postprocessor = processor
            # results_list is for example:
            # [
            # (PyQt4.QtCore.QString(u'Entire area'), OrderedDict([
            #        (u'Total', {'value': 977536, 'metadata': {}}),
            #        (u'Female population', {'value': 508319, 'metadata': {}}),
            #        (u'Weekly hygiene packs', {'value': 403453, 'metadata': {
            #         'description': 'Females hygiene packs for weekly use'}})
            #    ]))
            # ]

            # sorting using the first indicator of a postprocessor
            sorted_results = sorted(
                results_list,
                key=self._sort_no_data,
                reverse=True)

            # init table
            has_no_data = False
            table = m.Table(
                style_class='table table-condensed table-striped')
            table.caption = self.tr('Detailed %s report') % (tr(
                get_postprocessor_human_name(processor)).lower())

            # Dirty hack to make "evacuated" comes out in the report.
            # Currently only MinimumNeeds that calculate from evacuation
            # percentage.
            if processor == 'MinimumNeeds':
                if 'evacuation_percentage' in self.function_parameters.keys():
                    table.caption = self.tr(
                        'Detailed %s report (for people needing '
                        'evacuation)') % (
                            tr(get_postprocessor_human_name(processor)).lower()
                        )
                else:
                    table.caption = self.tr(
                        'Detailed %s report (affected people)') % (
                            tr(get_postprocessor_human_name(processor)).lower()
                        )

            if processor in ['Gender', 'Age']:
                table.caption = self.tr(
                    'Detailed %s report (affected people)') % (
                        tr(get_postprocessor_human_name(processor)).lower())

            header = m.Row()
            header.add(str(self.attribute_title).capitalize())
            for calculation_name in sorted_results[0][1]:
                header.add(self.tr(calculation_name))
            table.add(header)

            # used to calculate the totals row as per issue #690
            postprocessor_totals = OrderedDict()

            for zone_name, calc in sorted_results:
                row = m.Row(zone_name)

                for indicator, calculation_data in calc.iteritems():
                    value = calculation_data['value']
                    value = str(unhumanize_number(value))
                    if value == self.aggregator.get_default_keyword('NO_DATA'):
                        has_no_data = True
                        value += ' *'
                        try:
                            postprocessor_totals[indicator] += 0
                        except KeyError:
                            postprocessor_totals[indicator] = 0
                    else:
                        value = int(value)
                        try:
                            postprocessor_totals[indicator] += value
                        except KeyError:
                            postprocessor_totals[indicator] = value
                    row.add(format_int(value))
                table.add(row)

            if not aoi_mode:
                # add the totals row
                row = m.Row(self.tr('Total in aggregation areas'))
                for _, total in postprocessor_totals.iteritems():
                    row.add(format_int(total))
                table.add(row)

            # add table to message
            message.add(table)
            if has_no_data:
                message.add(m.EmphasizedText(self.tr(
                    '* "%s" values mean that there where some problems while '
                    'calculating them. This did not affect the other '
                    'values.') % (
                        self.aggregator.get_default_keyword(
                            'NO_DATA'))))

        return message
Exemple #29
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    def _generate_tables(self, aoi_mode=True):
        """Parses the postprocessing output as one table per postprocessor.

        TODO: This should rather return json and then have a helper method to
        make html from the JSON.

        :param aoi_mode: adds a Total in aggregation areas
        row to the calculated table
        :type aoi_mode: bool

        :returns: The html.
        :rtype: str
        """
        message = m.Message()

        for processor, results_list in self.output.iteritems():
            self.current_output_postprocessor = processor
            # results_list is for example:
            # [
            # (PyQt4.QtCore.QString(u'Entire area'), OrderedDict([
            #        (u'Total', {'value': 977536, 'metadata': {}}),
            #        (u'Female population', {'value': 508319, 'metadata': {}}),
            #        (u'Weekly hygiene packs', {'value': 403453, 'metadata': {
            #         'description': 'Females hygiene packs for weekly use'}})
            #    ]))
            # ]
            # sorting using the first indicator of a postprocessor
            sorted_results = sorted(results_list,
                                    key=self._sort_no_data,
                                    reverse=True)

            # init table
            has_no_data = False
            table = m.Table(style_class='table table-condensed table-striped')
            name = get_postprocessor_human_name(processor).lower()
            translated_name = tr(name)

            if name == 'building type':
                table.caption = tr('Closed buildings')
            elif name == 'road type':
                table.caption = tr('Closed roads')
            elif name == 'people':
                table.caption = tr('Affected people')

            # Dirty hack to make "evacuated" come out in the report.
            # Currently only MinimumNeeds that calculate from evacuation
            # percentage.
            if processor == 'MinimumNeeds':
                if 'evacuation_percentage' in self.function_parameters.keys():
                    table.caption = tr(
                        'Detailed %s report '
                        '(for people needing evacuation)') % translated_name
                else:
                    table.caption = tr('Detailed %s report '
                                       '(affected people)') % translated_name

            if processor in ['Gender', 'Age']:
                table.caption = tr('Detailed %s report '
                                   '(affected people)') % translated_name

            empty_table = not sorted_results[0][1]
            if empty_table:
                # Due to an error? The table is empty.
                message.add(table)
                message.add(
                    m.EmphasizedText(
                        tr('Could not compute the %s report.') %
                        translated_name))
                continue

            header = m.Row()
            header.add(str(self.attribute_title).capitalize())
            for calculation_name in sorted_results[0][1]:
                header.add(self.tr(calculation_name))
            table.add(header)

            # used to calculate the totals row as per issue #690
            postprocessor_totals = OrderedDict()

            null_index = 0  # counting how many null value in the data
            for zone_name, calc in sorted_results:
                if isinstance(zone_name, QPyNullVariant):
                    # I have made sure that the zone_name won't be Null in
                    # run method. But just in case there is something wrong.
                    zone_name = tr('Unnamed Area %s' % null_index)
                    null_index += 1
                if name == 'road type':
                    # We add the unit 'meter' as we are counting roads.
                    # proper format for i186
                    zone_name = tr('%(zone_name)s (m)') % {
                        'zone_name': tr(zone_name)
                    }
                row = m.Row(zone_name)

                for indicator, calculation_data in calc.iteritems():
                    value = calculation_data['value']
                    value = str(unhumanize_number(value))
                    if value == self.aggregator.get_default_keyword('NO_DATA'):
                        has_no_data = True
                        try:
                            postprocessor_totals[indicator] += 0
                        except KeyError:
                            postprocessor_totals[indicator] = 0
                    else:
                        value = int(value)
                        try:
                            postprocessor_totals[indicator] += value
                        except KeyError:
                            postprocessor_totals[indicator] = value
                    row.add(format_int(value))
                table.add(row)

            if not aoi_mode:
                # add the totals row
                row = m.Row(self.tr('Total in aggregation areas'))
                for _, total in postprocessor_totals.iteritems():
                    row.add(format_int(total))
                table.add(row)

            # add table to message
            message.add(table)
            if has_no_data:
                message.add(
                    m.EmphasizedText(
                        self.
                        tr('"%s" values mean that there where some problems while '
                           'calculating them. This did not affect the other '
                           'values.') %
                        (self.aggregator.get_default_keyword('NO_DATA'))))
            caption = m.EmphasizedText(
                self.tr(
                    'Columns and rows containing only 0 or "%s" values are '
                    'excluded from the tables.' %
                    self.aggregator.get_default_keyword('NO_DATA')))
            message.add(m.Paragraph(caption, style_class='caption'))

        return message
Exemple #30
0
    def _keyword_to_row(self, keyword, value, wrap_slash=False):
        """Helper to make a message row from a keyword.

        .. versionadded:: 3.2

        Use this when constructing a table from keywords to display as
        part of a message object.

        :param keyword: The keyword to be rendered.
        :type keyword: str

        :param value: Value of the keyword to be rendered.
        :type value: basestring

        :param wrap_slash: Whether to replace slashes with the slash plus the
            html <wbr> tag which will help to e.g. wrap html in small cells if
            it contains a long filename. Disabled by default as it may cause
            side effects if the text contains html markup.
        :type wrap_slash: bool

        :returns: A row to be added to a messaging table.
        :rtype: safe.messaging.items.row.Row
        """
        row = m.Row()
        # Translate titles explicitly if possible
        if keyword == 'title':
            value = tr(value)
        # # See #2569
        if keyword == 'url':
            if isinstance(value, QUrl):
                value = value.toString()
        if keyword == 'date':
            if isinstance(value, QDateTime):
                value = value.toString('d MMM yyyy')
            elif isinstance(value, datetime):
                value = value.strftime('%d %b %Y')
        # we want to show the user the concept name rather than its key
        # if possible. TS
        keyword_definition = definition(keyword)
        if keyword_definition is None:
            keyword_definition = tr(keyword.capitalize().replace('_', ' '))
        else:
            try:
                keyword_definition = keyword_definition['name']
            except KeyError:
                # Handling if name is not exist.
                keyword_definition = keyword_definition['key'].capitalize()
                keyword_definition = keyword_definition.replace('_', ' ')

        # We deal with some special cases first:

        # In this case the value contains a DICT that we want to present nicely
        if keyword in [
                'value_map', 'inasafe_fields', 'inasafe_default_values'
        ]:
            value = self._dict_to_row(value)
        elif keyword == 'value_maps':
            value = self._value_maps_row(value)
        elif keyword == 'thresholds':
            value = self._threshold_to_row(value)
        # In these KEYWORD cases we show the DESCRIPTION for
        # the VALUE keyword_definition
        elif keyword in ['classification']:
            # get the keyword_definition for this class from definitions
            value = definition(value)
            value = value['description']
        # In these VALUE cases we show the DESCRIPTION for
        # the VALUE keyword_definition
        elif value in []:
            # get the keyword_definition for this class from definitions
            value = definition(value)
            value = value['description']
        # In these VALUE cases we show the NAME for the VALUE
        # keyword_definition
        elif value in [
                'multiple_event', 'single_event', 'point', 'line', 'polygon'
                'field'
        ]:
            # get the name for this class from definitions
            value = definition(value)
            value = value['name']
        # otherwise just treat the keyword as literal text
        else:
            # Otherwise just directly read the value
            value = get_string(value)

        key = m.ImportantText(keyword_definition)
        row.add(m.Cell(key))
        row.add(m.Cell(value, wrap_slash=wrap_slash))
        return row