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Bullet Graph.twb
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Bullet Graph.twb
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<?xml version='1.0' encoding='utf-8' ?>
<!-- build 20181.18.0706.1237 -->
<workbook source-build='2018.1.3 (20181.18.0706.1237)' source-platform='win' version='18.1' xmlns:user='http://www.tableausoftware.com/xml/user'>
<repository-location id='Superstore_us' path='/workbooks' revision='1.2' />
<preferences>
<preference name='datagrid.autoupdate.max.filesize' value='100000000000' />
<preference name='ui.discoverpane.stagingWebContentSwitch' value='1' />
<preference name='ui.encoding.shelf.height' value='24' />
<preference name='ui.registrationform.stagingWebContentSwitch' value='1' />
<preference name='ui.shelf.height' value='26' />
</preferences>
<datasources>
<datasource inline='true' name='World Indicators' version='18.1'>
<connection class='federated'>
<named-connections>
<named-connection caption='World Indicators' name='hyper.02tkzk21390wwr18vjk7f1tnp84z (copy)'>
<connection authentication='auth-none' author-locale='en_US' class='hyper' dbname='C:/Users/sissies/Documents/My Tableau Repository/Datasources/2018.1/en_US-EU/World Indicators.hyper' default-settings='yes' sslmode='' username='tableau_internal_user' />
</named-connection>
</named-connections>
<relation connection='hyper.02tkzk21390wwr18vjk7f1tnp84z (copy)' name='Extract' table='[Extract].[Extract]' type='table' />
<metadata-records>
<metadata-record class='column'>
<remote-name>Birth Rate</remote-name>
<remote-type>5</remote-type>
<local-name>[Birth Rate]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Birth Rate</remote-alias>
<ordinal>0</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>47</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Business Tax Rate</remote-name>
<remote-type>5</remote-type>
<local-name>[Business Tax Rate]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Business Tax Rate</remote-alias>
<ordinal>1</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>258</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>CO2 Emissions</remote-name>
<remote-type>20</remote-type>
<local-name>[CO2 Emissions]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>CO2 Emissions</remote-alias>
<ordinal>2</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>1012</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Country</remote-name>
<remote-type>129</remote-type>
<local-name>[Country]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Country</remote-alias>
<ordinal>3</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<approx-count>209</approx-count>
<contains-null>true</contains-null>
<collation flag='0' name='LEN_RUS' />
</metadata-record>
<metadata-record class='column'>
<remote-name>Days to Start Business</remote-name>
<remote-type>20</remote-type>
<local-name>[Days to Start Business]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Days to Start Business</remote-alias>
<ordinal>4</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>109</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Ease of Business</remote-name>
<remote-type>5</remote-type>
<local-name>[Ease of Business]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Ease of Business</remote-alias>
<ordinal>5</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>59</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Energy Usage</remote-name>
<remote-type>20</remote-type>
<local-name>[Energy Usage]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Energy Usage</remote-alias>
<ordinal>6</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>775</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>GDP</remote-name>
<remote-type>5</remote-type>
<local-name>[GDP]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>GDP</remote-alias>
<ordinal>7</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>2704</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Health Exp % GDP</remote-name>
<remote-type>5</remote-type>
<local-name>[Health Exp % GDP]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Health Exp % GDP</remote-alias>
<ordinal>8</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>113</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Health Exp/Capita</remote-name>
<remote-type>20</remote-type>
<local-name>[Health Exp/Capita]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Health Exp/Capita</remote-alias>
<ordinal>9</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>629</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Hours to do Tax</remote-name>
<remote-type>5</remote-type>
<local-name>[Hours to do Tax]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Hours to do Tax</remote-alias>
<ordinal>10</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>188</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Infant Mortality Rate</remote-name>
<remote-type>5</remote-type>
<local-name>[Infant Mortality Rate]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Infant Mortality Rate</remote-alias>
<ordinal>11</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>109</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Internet Usage</remote-name>
<remote-type>5</remote-type>
<local-name>[Internet Usage]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Internet Usage</remote-alias>
<ordinal>12</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>473</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Lending Interest</remote-name>
<remote-type>5</remote-type>
<local-name>[Lending Interest]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Lending Interest</remote-alias>
<ordinal>13</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>224</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Life Expectancy Female</remote-name>
<remote-type>20</remote-type>
<local-name>[Life Expectancy Female]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Life Expectancy Female</remote-alias>
<ordinal>14</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>47</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Life Expectancy Male</remote-name>
<remote-type>20</remote-type>
<local-name>[Life Expectancy Male]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Life Expectancy Male</remote-alias>
<ordinal>15</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>43</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Mobile Phone Usage</remote-name>
<remote-type>5</remote-type>
<local-name>[Mobile Phone Usage]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Mobile Phone Usage</remote-alias>
<ordinal>16</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>984</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Population 0-14</remote-name>
<remote-type>5</remote-type>
<local-name>[Population 0-14]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Population 0-14</remote-alias>
<ordinal>17</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>327</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Population 15-64</remote-name>
<remote-type>5</remote-type>
<local-name>[Population 15-64]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Population 15-64</remote-alias>
<ordinal>18</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>249</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Population 65+</remote-name>
<remote-type>5</remote-type>
<local-name>[Population 65+]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Population 65+</remote-alias>
<ordinal>19</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>168</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Population Total</remote-name>
<remote-type>20</remote-type>
<local-name>[Population Total]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Population Total</remote-alias>
<ordinal>20</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>2704</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Population Urban</remote-name>
<remote-type>5</remote-type>
<local-name>[Population Urban]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Population Urban</remote-alias>
<ordinal>21</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>693</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Region</remote-name>
<remote-type>129</remote-type>
<local-name>[Region]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Region</remote-alias>
<ordinal>22</ordinal>
<local-type>string</local-type>
<aggregation>Count</aggregation>
<approx-count>6</approx-count>
<contains-null>true</contains-null>
<collation flag='0' name='LEN_RUS' />
</metadata-record>
<metadata-record class='column'>
<remote-name>Tourism Inbound</remote-name>
<remote-type>5</remote-type>
<local-name>[Tourism Inbound]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Tourism Inbound</remote-alias>
<ordinal>23</ordinal>
<local-type>real</local-type>
<aggregation>Sum</aggregation>
<approx-count>1198</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Tourism Outbound</remote-name>
<remote-type>20</remote-type>
<local-name>[Tourism Outbound]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Tourism Outbound</remote-alias>
<ordinal>24</ordinal>
<local-type>integer</local-type>
<aggregation>Sum</aggregation>
<approx-count>889</approx-count>
<contains-null>true</contains-null>
</metadata-record>
<metadata-record class='column'>
<remote-name>Year</remote-name>
<remote-type>133</remote-type>
<local-name>[Year]</local-name>
<parent-name>[Extract]</parent-name>
<remote-alias>Year</remote-alias>
<ordinal>25</ordinal>
<local-type>date</local-type>
<aggregation>Year</aggregation>
<approx-count>13</approx-count>
<contains-null>true</contains-null>
</metadata-record>
</metadata-records>
</connection>
<column datatype='string' name='[Country]' role='dimension' semantic-role='[Country].[ISO3166_2]' type='nominal' />
<column datatype='integer' name='[Number of Records]' role='measure' type='quantitative' user:auto-column='numrec'>
<calculation class='tableau' formula='1' />
</column>
<folder name='Business' role='measures'>
<folder-item name='[Business Tax Rate]' type='field' />
<folder-item name='[Days to Start Business]' type='field' />
<folder-item name='[Ease of Business]' type='field' />
<folder-item name='[Hours to do Tax]' type='field' />
<folder-item name='[Lending Interest]' type='field' />
</folder>
<folder name='Development' role='measures'>
<folder-item name='[CO2 Emissions]' type='field' />
<folder-item name='[Energy Usage]' type='field' />
<folder-item name='[GDP]' type='field' />
<folder-item name='[Internet Usage]' type='field' />
<folder-item name='[Mobile Phone Usage]' type='field' />
<folder-item name='[Tourism Inbound]' type='field' />
<folder-item name='[Tourism Outbound]' type='field' />
</folder>
<folder name='Health' role='measures'>
<folder-item name='[Health Exp % GDP]' type='field' />
<folder-item name='[Health Exp/Capita]' type='field' />
<folder-item name='[Infant Mortality Rate]' type='field' />
<folder-item name='[Life Expectancy Female]' type='field' />
<folder-item name='[Life Expectancy Male]' type='field' />
</folder>
<folder name='Population' role='measures'>
<folder-item name='[Birth Rate]' type='field' />
<folder-item name='[Population 0-14]' type='field' />
<folder-item name='[Population 15-64]' type='field' />
<folder-item name='[Population 65+]' type='field' />
<folder-item name='[Population Total]' type='field' />
<folder-item name='[Population Urban]' type='field' />
</folder>
<layout dim-ordering='alphabetic' dim-percentage='0.237548' measure-ordering='alphabetic' measure-percentage='0.429119' parameter-percentage='0.333333' show-structure='false' />
<semantic-values>
<semantic-value key='[Country].[Name]' value='"United States"' />
</semantic-values>
</datasource>
</datasources>
<datasource-relationships>
<datasource-dependencies datasource='dataengine.42019.618651678240'>
<column datatype='string' name='[Category]' role='dimension' type='nominal' />
<column datatype='date' name='[Order Date]' role='dimension' type='ordinal' />
<column datatype='string' name='[Segment]' role='dimension' type='nominal' />
<column-instance column='[Order Date]' derivation='Month' name='[mn:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Category]' derivation='None' name='[none:Category:nk]' pivot='key' type='nominal' />
<column-instance column='[Segment]' derivation='None' name='[none:Segment:nk]' pivot='key' type='nominal' />
<column-instance column='[Order Date]' derivation='Month-Trunc' name='[tmn:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Order Date]' derivation='Year-Trunc' name='[tyr:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Order Date]' derivation='Year' name='[yr:Order Date:ok]' pivot='key' type='ordinal' />
</datasource-dependencies>
<datasource-dependencies datasource='federated.0z0pi331stuxay1ce6y5f1yxvsw9'>
<column datatype='string' name='[Category]' role='dimension' type='nominal' />
<column datatype='date' name='[Order Date]' role='dimension' type='ordinal' />
<column datatype='string' name='[Segment]' role='dimension' type='nominal' />
<column-instance column='[Order Date]' derivation='Month' name='[mn:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Category]' derivation='None' name='[none:Category:nk]' pivot='key' type='nominal' />
<column-instance column='[Segment]' derivation='None' name='[none:Segment:nk]' pivot='key' type='nominal' />
<column-instance column='[Order Date]' derivation='Month-Trunc' name='[tmn:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Order Date]' derivation='Year-Trunc' name='[tyr:Order Date:ok]' pivot='key' type='ordinal' />
<column-instance column='[Order Date]' derivation='Year' name='[yr:Order Date:ok]' pivot='key' type='ordinal' />
</datasource-dependencies>
<datasource-relationship source='dataengine.42019.618651678240' target='federated.0z0pi331stuxay1ce6y5f1yxvsw9'>
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<map key='[dataengine.42019.618651678240].[none:Category:nk]' value='[federated.0z0pi331stuxay1ce6y5f1yxvsw9].[none:Category:nk]' />
<map key='[dataengine.42019.618651678240].[none:Segment:nk]' value='[federated.0z0pi331stuxay1ce6y5f1yxvsw9].[none:Segment:nk]' />
<map key='[dataengine.42019.618651678240].[tmn:Order Date:ok]' value='[federated.0z0pi331stuxay1ce6y5f1yxvsw9].[tmn:Order Date:ok]' />
<map key='[dataengine.42019.618651678240].[tyr:Order Date:ok]' value='[federated.0z0pi331stuxay1ce6y5f1yxvsw9].[tyr:Order Date:ok]' />
<map key='[dataengine.42019.618651678240].[yr:Order Date:ok]' value='[federated.0z0pi331stuxay1ce6y5f1yxvsw9].[yr:Order Date:ok]' />
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</datasource-relationship>
</datasource-relationships>
<mapsources>
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</mapsources>
<worksheets>
<worksheet name='Bullet Graph'>
<table>
<view>
<datasources>
<datasource name='World Indicators' />
</datasources>
<datasource-dependencies datasource='World Indicators'>
<column datatype='string' name='[Region]' role='dimension' type='nominal' />
<column datatype='real' name='[Tourism Inbound]' role='measure' type='quantitative' />
<column datatype='integer' name='[Tourism Outbound]' role='measure' type='quantitative' />
<column-instance column='[Region]' derivation='None' name='[none:Region:nk]' pivot='key' type='nominal' />
<column-instance column='[Tourism Inbound]' derivation='Sum' name='[sum:Tourism Inbound:qk]' pivot='key' type='quantitative' />
<column-instance column='[Tourism Outbound]' derivation='Sum' name='[sum:Tourism Outbound:qk]' pivot='key' type='quantitative' />
</datasource-dependencies>
<aggregation value='true' />
</view>
<style>
<style-rule element='axis'>
<format attr='height' field='[World Indicators].[sum:Tourism Outbound:qk]' value='83' />
</style-rule>
<style-rule element='cell'>
<format attr='height' field='[World Indicators].[none:Region:nk]' value='35' />
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<style-rule element='refline'>
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<style-rule element='refband'>
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<style-rule element='table-div'>
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<format attr='div-level' scope='cols' value='10' />
</style-rule>
</style>
<panes>
<pane selection-relaxation-option='selection-relaxation-allow'>
<view>
<breakdown value='auto' />
</view>
<mark class='Automatic' />
<encodings>
<lod column='[World Indicators].[sum:Tourism Inbound:qk]' />
</encodings>
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<reference-line axis-column='[World Indicators].[sum:Tourism Outbound:qk]' enable-instant-analytics='true' fill-above='true' fill-below='true' formula='average' id='refline1' label-type='none' percentage-bands='true' probability='95' scope='per-pane' symmetric='false' value-column='[World Indicators].[sum:Tourism Inbound:qk]' z-order='1'>
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<reference-line-value percentage='80' />
</reference-line>
<style>
<style-rule element='mark'>
<format attr='size' value='1' />
</style-rule>
</style>
</pane>
</panes>
<rows>[World Indicators].[none:Region:nk]</rows>
<cols>[World Indicators].[sum:Tourism Outbound:qk]</cols>
</table>
</worksheet>
</worksheets>
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<edge name='left'>
<strip size='160'>
<card type='pages' />
<card type='filters' />
<card type='marks' />
</strip>
</edge>
<edge name='top'>
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<card type='columns' />
</strip>
<strip size='2147483647'>
<card type='rows' />
</strip>
<strip size='30'>
<card type='title' />
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<viewpoint>
<selection-collection>
<node-selection select-tuples='false'>
<oriented-node-reference orientation='horizontal'>
<node-reference>
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</node-reference>
<page-reference />
</oriented-node-reference>
</node-selection>
</selection-collection>
<highlight>
<color-one-way>
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</color-one-way>
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