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        <rpIndName>Renee Johnson</rpIndName>
        <rpOrgName>DNR-Lands and Minerals</rpOrgName>
        <rpPosName>ITS 3</rpPosName>
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                <faxNum>(651) 296-5939</faxNum>
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                <city>St. Paul</city>
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                <rpIndName>Hal Watson</rpIndName>
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                <rpPosName>GIS Database Coordinator</rpPosName>
                <rpCntInfo>
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                        <faxNum>(651) 297-4946</faxNum>
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                        <city>St. Paul</city>
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            <formatVer>Not Applicable</formatVer>
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        <distTranOps>
            <onLineSrc>
                <linkage>http://deli.dnr.state.mn.us/</linkage>
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            <date>
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            <citRespParty>
                <rpOrgName>Minnesota DNR - Minerals Division/Section of Wildlife</rpOrgName>
                <role>
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            <citRespParty>
                <rpOrgName>Minnesota DNR - MIS Bureau</rpOrgName>
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        <idAbs>Minnesota county boundaries derived from a combination of 1:24,000 scale PLS lines, 1:100,000 scale TIGER, 1:100,000 scale DLG, and 1:24,000 scale hydrography lines. At the time of its development (1993), the largest available scale data were assembled to create the layer.</idAbs>
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        <idPoC>
            <rpIndName>Renee Johnson</rpIndName>
            <rpOrgName>DNR-Lands and Minerals</rpOrgName>
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                    <city>St. Paul</city>
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            <keyword>Minnesota counties, boundaries</keyword>
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        <dataExt>
            <exDesc>A multitude of source dates are associated with this data set, including those associated with the original GISMO, RKI, DLG, and TIGER data set development efforts. Work on the coverage was completed during the summer/fall of 1993. Attribute restructuring to ensure conformance with DNR PLS Coding standard performed in March 1996.</exDesc>
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        <dqReport type="DQConcConsis">
            <measDesc>Data are topolocially correct using ARC/INFO 7.0.3. All polygons are closed and lines intersect where intended.</measDesc>
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            <measDesc>All Minnesota county lands are present, including off-shore islands in Lake Superior. The official state and international borders within Lake Superior are not included in this data set.</measDesc>
        </dqReport>
        <dqReport type="DQQuanAttAcc">
            <measDesc>Source table BDRY_COUNPY2.DBF: Unknown</measDesc>
        </dqReport>
        <dqReport type="DQAbsExtPosAcc">
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        </dqReport>
        <dqReport type="DQAbsExtPosAcc">
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        </dqReport>
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