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<metadata xml:lang="en">
<Esri>
<CreaDate>20210626</CreaDate>
<CreaTime>03265800</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<MapLyrSync>TRUE</MapLyrSync>
</Esri>
<dataIdInfo>
<idCitation>
<resTitle>wildlife_sensitivity_mammals_10tm_nad83_aep</resTitle>
</idCitation>
<idAbs>This data frame provides industrial operators and government departments with information regarding the location of various sensitive species of mammals.The map service contains groups of layer information for the following various species of mammals:1) Mountain Goat and Bighorn Sheep2) Caribou3) Grizzly Bear4) Ords Kangaroo Rat5) Swift FoxFor more information on the groups and their underlying layers, refer to the descriptions of the groups or the individual layers.</idAbs>
<searchKeys>
<keyword>biota</keyword>
<keyword>planningCadastre</keyword>
<keyword>environment</keyword>
<keyword>Sheep</keyword>
<keyword>Goat</keyword>
<keyword>Oreamnos</keyword>
<keyword>americanus</keyword>
<keyword>Ovis</keyword>
<keyword>canadensis.Disease</keyword>
<keyword>buffer</keyword>
<keyword>Bighorn</keyword>
<keyword>Sheep</keyword>
<keyword>Mountain</keyword>
<keyword>Goat</keyword>
<keyword>Big-horn</keyword>
<keyword>Sheep</keyword>
<keyword>Big-Horn</keyword>
<keyword>Sheep</keyword>
<keyword>Woodland</keyword>
<keyword>Caribou</keyword>
<keyword>Rangifer</keyword>
<keyword>tarandus</keyword>
<keyword>range</keyword>
<keyword>habitat</keyword>
<keyword>threatened</keyword>
<keyword>species</keyword>
<keyword>biodiversity</keyword>
<keyword>species</keyword>
<keyword>at</keyword>
<keyword>risk</keyword>
<keyword>recovery</keyword>
<keyword>Caribou</keyword>
<keyword>distribution</keyword>
<keyword>wildlife</keyword>
<keyword>grizzly</keyword>
<keyword>bear</keyword>
<keyword>access</keyword>
<keyword>management</keyword>
<keyword>Ursus</keyword>
<keyword>arctos</keyword>
<keyword>horribilis</keyword>
<keyword>Ord's</keyword>
<keyword>Kangaroo</keyword>
<keyword>Rat</keyword>
<keyword>Dipodomys</keyword>
<keyword>ordii</keyword>
<keyword>Ords</keyword>
<keyword>Kangaroo</keyword>
<keyword>Rat</keyword>
<keyword>endangered</keyword>
<keyword>species</keyword>
<keyword>conservation</keyword>
<keyword>wildlife</keyword>
<keyword>sensitive</keyword>
<keyword>data</keyword>
<keyword>swift</keyword>
<keyword>fox</keyword>
<keyword>Vulpes</keyword>
<keyword>velox</keyword>
</searchKeys>
<idPurp>This map service provides industrial operators and government departments with information regarding the location of various sensitive species of mammals.</idPurp>
<idCredit>Copyright Government of Alberta</idCredit>
<resConst>
<Consts>
<useLimit>None</useLimit>
</Consts>
</resConst>
</dataIdInfo>
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