<?xml version="1.0" encoding="UTF-8" standalone="no"?><metadata xml:lang="en">
    <Esri>
        <CreaDate>20231114</CreaDate>
        <CreaTime>17064300</CreaTime>
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        <SyncOnce>TRUE</SyncOnce>
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    <dataIdInfo>
        <idCitation>
            <resTitle>GNLCC Projects</resTitle>
        </idCitation>
        <idAbs>&lt;div&gt;A core function of Region 6 Science Applications is to strategically identify and support applied landscape science, and to support its partners' capacity to interpret and use the science. These pages contain information on how projects are selected, project details and products, including the partnerships that are engendered and funds leveraged.&lt;br /&gt;&lt;/div&gt;&lt;div&gt;&lt;br /&gt;&lt;/div&gt;LR6 Science Applications has funded various strategic science support projects since 2010 that are closely tied to the Region, FWS Program, and partner priorities. This dataset has cataloged much of the information needed to track the projects and distribute information. One layer (Projects polygon) and 12 non-spatial tables (ConsvTargets,Deliverables,Deliverables_File_Detail,EcotypicArea,Funding_Recipients_Dispersal,Funding_Source,FundReportingInKind,Goals,PrjContacts,PrjContacts_additional_groups,Stressors,StatesProvinces) make up the dataset.</idAbs>
        <searchKeys>
            <keyword>PTS</keyword>
            <keyword>Project Tracking System</keyword>
            <keyword>Region 6</keyword>
            <keyword>Science Applications</keyword>
        </searchKeys>
        <idPurp>LR6 Science Applications project and product metadata.  LR6 Science Applications has funded various strategic science support projects since 2010 that are closely tied to the Region, FWS Program, and partner priorities.</idPurp>
        <idCredit>Matthew M Heller, Great Northern LCC/ U.S. Fish and Wildlife Service, Cartographer (GIS Administrator/Data Manager), 20151008, GNLCC Strategic Science Support Projects: .</idCredit>
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