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        <SyncOnce>FALSE</SyncOnce>
        <SyncDate>20250117</SyncDate>
        <SyncTime>11112800</SyncTime>
        <ModDate>20250117</ModDate>
        <ModTime>11112800</ModTime>
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                <csUnits Sync="TRUE">Linear Unit: Meter (1.000000)</csUnits>
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    <idinfo>
        <descript>
            <langdata Sync="TRUE">en</langdata>
            <abstract>This dataset contains Level 1 Literacy Rates for Florida Counties 
with adult populations of at least 5,000.
Literacy level 1 is the lowest literacy level. Adults in this
category can perform simple tasks with text and documents, but
display difficulty using certain reading, writing, and computational 
skills considered necessary for functioning in everyday life.</abstract>
            <purpose>The data was created to serve as base information for use in GIS systems for a variety of planning and analytical purposes.</purpose>
            <supplinf>POLYGON</supplinf>
        </descript>
        <citation>
            <citeinfo>
                <origin>National Institute for Literacy</origin>
                <pubdate>2004</pubdate>
                <title>FLORIDA COUNTIES, LEVEL 1 LITERACY RATES</title>
                <ftname Sync="TRUE">literacy_county</ftname>
                <geoform Sync="TRUE">vector digital data</geoform>
                <onlink>http://www.nifl.gov</onlink>
                <othercit>State of Florida</othercit>
                <pubinfo>
                    <pubplace>Washington, DC</pubplace>
                    <publish>National Institute for Literacy</publish>
                </pubinfo>
            </citeinfo>
        </citation>
        <timeperd>
            <current>publication date</current>
            <timeinfo>
                <sngdate>
                    <caldate>2004</caldate>
                </sngdate>
            </timeinfo>
        </timeperd>
        <status>
            <progress>Complete</progress>
            <update>As needed</update>
        </status>
        <spdom>
            <bounding>
                <westbc>-87.429040</westbc>
                <eastbc>-79.872251</eastbc>
                <northbc>30.983191</northbc>
                <southbc>24.492815</southbc>
            </bounding>
            <lboundng>
                <leftbc Sync="TRUE">52652.168187</leftbc>
                <rightbc Sync="TRUE">793990.758061</rightbc>
                <bottombc Sync="TRUE">59428.989252</bottombc>
                <topbc Sync="TRUE">781582.705637</topbc>
            </lboundng>
        </spdom>
        <keywords>
            <place>
                <placekey>Florida</placekey>
            </place>
            <theme>
                <themekt>ISO 19115 Topic Category</themekt>
                <themekey>society</themekey>
            </theme>
        </keywords>
        <accconst>NONE</accconst>
        <useconst>THE DATA INCLUDED IN FGDL ARE 'AS IS' AND SHOULD NOT BE CONSTRUED AS LEGALLY BINDING. THE UNIVERSITY OF FLORIDA GEOPLAN CENTER SHALL NOT BE LIABLE FOR ANY DAMAGES SUFFERED AS A RESULT OF USING, MODIFYING, CONTRIBUTING OR DISTRIBUTING THE MATERIALS

A note about data scale: 

Scale is an important factor in data usage.  Certain scale datasets are not suitable for some project, analysis, or modeling purposes. Please be sure you are using the best available data. 

1:24000 scale datasets are recommended for projects that are at the county level. 1:24000 data should NOT be used for high accuracy base mapping such as property parcel boundaries.

1:100000 scale datasets are recommended for projects that are at the multi-county or regional level.  1:125000 scale datasets are recommended for projects that are at the regional or state level or larger.

Vector datasets with no defined scale or accuracy should be considered suspect.  Make sure you are familiar with your data before using it for projects or analysis.  Every effort has been made to supply the user with data documentation. For additional information, see the References section and the Data Source Contact section of this documentation. For more information regarding scale and accuracy, see our webpage at: http://geoplan.ufl.edu/education.html</useconst>
        <natvform>SHAPEFILE</natvform>
        <ptcontac>
            <cntinfo>
                <cntemail>Web site: http://www.fgdl.org</cntemail>
                <cntemail>Technical Support: http://www.fgdl.org/fgdlfeed.html</cntemail>
                <cntemail>For FGDL Software: http://www.fgdl.org/software.html</cntemail>
                <cntemail>FGDL Frequently Asked Questions: http://www.fgdl.org/fgdlfaq.html</cntemail>
                <cntemail>FGDL Mailing Lists: http://www.fgdl.org/fgdl-l.html</cntemail>
                <cntaddr>
                    <addrtype>mailing address</addrtype>
                    <address>431 Architecture PO Box 115706</address>
                    <city>Gainesville</city>
                    <state>Florida</state>
                    <postal>32611-5706</postal>
                </cntaddr>
                <cntorgp>
                    <cntorg>Florida Geographic Data Library (FGDL)</cntorg>
                    <cntemail>Web site: http://www.fgdl.org</cntemail>
                </cntorgp>
            </cntinfo>
        </ptcontac>
        <datacred>NATIONAL INSTITUTE FOR LITERACY</datacred>
        <crossref>
            <citeinfo>
                <othercit>National Institute For Literacy. (1998)
	The State of Literacy In America: Estimates at the Local, 
	State, and National Levels. Florida, Municipalities.
	http://www.nifl.gov

Related Resources

Literacy of Older Adults in America, U.S. Department of Education,
	National Center for Education Statistics, November 1996.

Literacy and Dependency: The Literacy Skills of Welfare Recipients
	in the United States, Educational Testing Service, 1995.</othercit>
                <pubinfo>
                    <pubplace>Washington, DC</pubplace>
                    <publish>NIFL</publish>
                </pubinfo>
                <title>FLORIDA COUNTIES, LEVEL 1 LITERACY RATES</title>
                <origin>National Institute for Literacy</origin>
                <pubdate>2004</pubdate>
                <onlink>http://www.nifl.gov</onlink>
            </citeinfo>
        </crossref>
    </idinfo>
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        <envirDesc Sync="FALSE">Esri ArcGIS 13.4.0.55405</envirDesc>
        <dataLang>
            <languageCode Sync="TRUE" value="eng"/>
            <countryCode Sync="TRUE" value="USA"/>
        </dataLang>
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            <resTitle Sync="TRUE">Study_Area_PairwiseDissolve</resTitle>
            <presForm>
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                    <southBL Sync="TRUE">59428.989252</southBL>
                    <exTypeCode Sync="TRUE">1</exTypeCode>
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            </geoEle>
        </dataExt>
        <geoBox esriExtentType="decdegrees">
            <westBL Sync="TRUE">-87.639385</westBL>
            <eastBL Sync="TRUE">-79.872251</eastBL>
            <northBL Sync="TRUE">31.04264</northBL>
            <southBL Sync="TRUE">24.480328</southBL>
            <exTypeCode Sync="TRUE">1</exTypeCode>
        </geoBox>
        <idAbs/>
        <idPurp/>
        <idCredit/>
        <resConst>
            <Consts>
                <useLimit/>
            </Consts>
        </resConst>
    <searchKeys><keyword/><keyword>2025_Keep</keyword></searchKeys></dataIdInfo>
    <metainfo>
        <langmeta Sync="TRUE">en</langmeta>
        <metstdn Sync="TRUE">FGDC Content Standards for Digital Geospatial Metadata</metstdn>
        <metstdv Sync="TRUE">FGDC-STD-001-1998</metstdv>
        <mettc Sync="TRUE">local time</mettc>
        <metc>
            <cntinfo>
                <cntorgp>
                    <cntorg>National Institute For Literacy</cntorg>
                </cntorgp>
                <cntaddr>
                    <addrtype>mailing and physical address</addrtype>
                    <city>Washington</city>
                    <state>DC</state>
                    <postal>20006-2712</postal>
                    <address>800 Connecticut Avenue</address>
                    <address>NW, Suite 200</address>
                </cntaddr>
                <cntvoice>(800) 228-8813</cntvoice>
                <cntfax>(202) 632-1512</cntfax>
                <cntinst>http://www.nifl.gov</cntinst>
            </cntinfo>
        </metc>
        <metd Sync="TRUE">20060223</metd>
    </metainfo>
    <mdLang>
        <languageCode Sync="TRUE" value="eng"/>
        <countryCode Sync="TRUE" value="USA"/>
    </mdLang>
    <mdStanName Sync="TRUE">ISO 19115 Geographic Information - Metadata</mdStanName>
    <mdStanVer Sync="TRUE">DIS_ESRI1.0</mdStanVer>
    <mdChar>
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    </mdChar>
    <mdHrLv>
        <ScopeCd Sync="TRUE" value="005"/>
    </mdHrLv>
    <mdHrLvName Sync="TRUE">dataset</mdHrLvName>
    <distinfo>
        <techpreq>This data is intended for use with a Geographic Information Systems or Remote Sensing software package.</techpreq>
        <resdesc>DOWNLOADABLE DATA</resdesc>
        <distliab>THE FGDL DATA AS PROVIDED BY CONTRIBUTING ORGANIZATIONS AND ANY PROGRAMMING SOFTWARE CREATED BY THE UNIVERSITY OF FLORIDA GEOPLAN CENTER (COLLECTIVELY THE 'MATERIALS') ARE COPYRIGHTED BY THE UNIVERSITY OF FLORIDA GEOPLAN CENTER FOR THE FGDL CONTRIBUTING AGENCIES AND ORGANIZATIONS (THE 'DATA PROVIDERS'). DO NOT REPRODUCE, REDISTRIBUTE OR RESELL THE MATERIALS, OR PROVIDE THE MATERIALS FOR FREE TO CUSTOMERS OR CLIENTS, OR PLACE THE MATERIALS FOR DOWNLOAD ON A WEBSITE. ADDITIONALLY, WHEN USING FGDL DATA OR SOFTWARE IN PROJECTS, MAPS, ETC.; YOU AGREE TO ACKNOWLEDGE THE FGDL AS A DATA SOURCE. THE MATERIALS ARE PROVIDED 'AS IS'. THE UNIVERSITY OF FLORIDA GEOPLAN CENTER MAKES NO REPRESENTATIONS OR WARRANTIES ABOUT THE QUALITY OR SUITABILITY OF THE MATERIALS, EITHER EXPRESSLY OR IMPLIED, INCLUDING BUT NOT LIMITED TO ANY IMPLIED WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE, OR NON-INFRINGEMENT. THE UNIVERSITY OF FLORIDA GEOPLAN CENTER MAKES NO WARRANTIES, GUARANTIES OR REPRESENTATIONS AS TO THE TRUTH, ACCURACY OR COMPLETENESS OF THE DATA PROVIDED BY THE FGDL CONTRIBUTING ORGANIZATIONS. THE UNIVERSITY OF FLORIDA GEOPLAN CENTER SHALL NOT BE LIABLE FOR ANY DAMAGES SUFFERED AS A RESULT OF USING, MODIFYING, CONTRIBUTING OR DISTRIBUTING THE MATERIALS.</distliab>
        <distrib>
            <cntinfo>
                <cntorgp>
                    <cntorg>Florida Geographic Data Library (FGDL)</cntorg>
                </cntorgp>
                <cntaddr>
                    <addrtype>mailing address</addrtype>
                    <address>431 Architecture PO Box 115706</address>
                    <city>Gainesville</city>
                    <state>Florida</state>
                    <postal>32611-5706</postal>
                    <country>United States</country>
                </cntaddr>
                <cntemail>Web site: http://www.fgdl.org</cntemail>
                <cntemail>Technical Support: http://www.fgdl.org/fgdlfeed.html</cntemail>
                <cntemail>For FGDL Software: http://www.fgdl.org/software.html</cntemail>
                <cntemail>FGDL Frequently Asked Questions: http://www.fgdl.org/fgdlfaq.html</cntemail>
                <cntemail>Mailing list for FGDL: http://www.fgdl.org/fgdl-l.html</cntemail>
            </cntinfo>
        </distrib>
        <stdorder>
            <digform>
                <digtinfo>
                    <transize Sync="TRUE">4.155</transize>
                    <dssize Sync="TRUE">4.155</dssize>
                </digtinfo>
            </digform>
        </stdorder>
    </distinfo>
    <dataqual>
        <posacc>
            <horizpa>
                <horizpar>This data is provided 'as is' and its horizontal positional accuracy has not been verified by GeoPlan</horizpar>
            </horizpa>
            <vertacc>
                <vertaccr>This data is provided 'as is' and its vertical positional accuracy has not been verified by GeoPlan</vertaccr>
            </vertacc>
        </posacc>
        <logic>This data is provided 'as is'. GeoPlan relied on the integrity of the original data layer's topology</logic>
        <complete>This data is provided 'as is' by GeoPlan and is complete to our knowledge.</complete>
        <attracc>
            <attraccr>GeoPlan relied on the integrity of the attribute information within the original data.</attraccr>
            <qattracc>
                <attracce>Percentage of the adult population (age 16 or older) in the city that 
is at literacy level 1. Literacy level 1 is the lowest literacy level. 
Adults in this category can perform simple tasks with text and documents, 
but display difficulty using certain reading, writing, and computational 
skills considered necessary for functioning in everyday life.

Skills that adults at level 1 can usually perform: Sign one's name, 
identify a country in a short article, locate one piece of information
in a sports article, locate the expiration date information on a driver's
license, total a bank deposit entry.

Skills that adults at level 1 cannot usually perform: Locate eligibility
from a table of employee benefits, locate intersection on a street map,
locate two pieces of information in a sports article, identify and enter
background information on a social security card application, calculate
total costs of purchase from an order form.

Low literacy skills are closely connected to the social problems related 
to poverty. Nearly half (43 percent) of adults in Level 1 live in poverty.
This contrasts with only four to eight percent of those at the two highest 
literacy levels.

The impact of low literacy: 

Poverty. 
Forty-three percent of adults at Level 1 were living in poverty, compared 
to 4 percent of those at Level 5.

Welfare. 
The likelihood of being on welfare goes up as literacy levels go down. 
Three out of four food stamp recipients performed in the two lowest
literacy levels.

Income. 
Adults at Level 1 earned a median income of $240 per week, comparedto $681 
for those at Level 5.

Employment Status. 
Adults at Level 1 worked an average of 19 weeks per year, compared to 44 
weeks per year for those at Level 5.

Crime. 
Seven in 10 prisoners performed in the lowest two literacy levels.

Certain scale datasets are not suitable for some project, analysis, or 
modeling purposes. Please be sure you are using the best available data.</attracce>
            </qattracc>
        </attracc>
        <lineage>
            <srcinfo>
                <srccurr>publication date</srccurr>
                <srccontr>Spatial and Attribute Information</srccontr>
                <srccite>
                    <citeinfo>
                        <title>FLORIDA COUNTIES, LEVEL 1 LITERACY RATES</title>
                        <origin>National Institue For Literacy</origin>
                        <geoform>vector digital data</geoform>
                        <onlink>http://www.nifl.gov</onlink>
                        <pubinfo>
                            <pubplace>Washington, DC</pubplace>
                            <publish>NIFL</publish>
                        </pubinfo>
                        <pubdate>2004</pubdate>
                    </citeinfo>
                </srccite>
                <srcscale>1:100,000</srcscale>
                <srccitea>NIFL</srccitea>
                <srctime>
                    <timeinfo>
                        <sngdate>
                            <caldate>2004</caldate>
                        </sngdate>
                    </timeinfo>
                    <srccurr>publication date</srccurr>
                </srctime>
            </srcinfo>
            <procstep>
                <procdesc>The FGDL cntbnd shapefile was dissolved based on name and then compared
against data from the National Institute For Literacy. Cities not in the 
Literacy study were removed. Literacy data was then added to each remaining city.

The following steps were performed during Geoplan QAQC processing

-Dissolved FGDL cntbnd shapefile based on NAME
-Deleted AREA, PERIMETER, and FGDLCODE fields from attribute table
-Added LITERACY and LEV1 fields to attribute table
-Added literacy data per city from The State of Literacy 
 In America: Estimates at the Local, State, and National 
 Levels.
-Added DESCRIPT field based on NAME to attribute table</procdesc>
                <procdate>2004</procdate>
            </procstep>
        </lineage>
    </dataqual>
    <spref>
        <horizsys>
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                    <plance>coordinate pair</plance>
                    <coordrep>
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                        <ordres>0.002048</ordres>
                    </coordrep>
                    <plandu>meters</plandu>
                </planci>
            </planar>
            <cordsysn>
                <projcsn>Albers Conical Equal Area</projcsn>
                <horizdn>HPGN</horizdn>
                <ellips>Geodetic Reference System 80</ellips>
                <semiaxis>6378137.000000</semiaxis>
                <denflat>298.257222</denflat>
                <geogcsn Sync="TRUE">GCS_North_American_1983_HARN</geogcsn>
            </cordsysn>
            <geodetic>
                <horizdn Sync="TRUE">D_North_American_1983_HARN</horizdn>
                <ellips Sync="TRUE">Geodetic Reference System 80</ellips>
                <semiaxis Sync="TRUE">6378137.000000</semiaxis>
                <denflat Sync="TRUE">298.257222</denflat>
            </geodetic>
        </horizsys>
    </spref>
    <distInfo>
        <distributor>
            <distorTran>
                <onLineSrc>
                    <orDesc Sync="TRUE">002</orDesc>
                    <linkage Sync="FALSE">withheld</linkage>
                    <protocol Sync="TRUE">Local Area Network</protocol>
                </onLineSrc>
                <transSize Sync="TRUE">4.155</transSize>
            </distorTran>
            <distorFormat>
                <formatName Sync="TRUE">Shapefile</formatName>
            </distorFormat>
        </distributor>
        <distFormat>
            <formatName Sync="TRUE">File Geodatabase Feature Class</formatName>
        </distFormat>
        <distTranOps>
            <transSize Sync="TRUE">0.000</transSize>
        </distTranOps>
    </distInfo>
    <spdoinfo>
        <direct Sync="TRUE">Vector</direct>
        <ptvctinf>
            <esriterm Name="Study_Area_PairwiseDissolve">
                <efeatyp Sync="TRUE">Simple</efeatyp>
                <efeageom Sync="TRUE" code="4"/>
                <esritopo Sync="TRUE">FALSE</esritopo>
                <efeacnt Sync="TRUE">0</efeacnt>
                <spindex Sync="TRUE">TRUE</spindex>
                <linrefer Sync="TRUE">FALSE</linrefer>
            </esriterm>
        </ptvctinf>
    </spdoinfo>
    <refSysInfo>
        <RefSystem>
            <refSysID>
                <identCode Sync="TRUE" code="0">Albers Conical Equal Area (Florida Geographic Data Library)</identCode>
            </refSysID>
        </RefSystem>
    </refSysInfo>
    <spatRepInfo>
        <VectSpatRep>
            <geometObjs Name="Study_Area_PairwiseDissolve">
                <geoObjTyp>
                    <GeoObjTypCd Sync="TRUE" value="002"/>
                </geoObjTyp>
                <geoObjCnt Sync="TRUE">0</geoObjCnt>
            </geometObjs>
            <topLvl>
                <TopoLevCd Sync="TRUE" value="001"/>
            </topLvl>
        </VectSpatRep>
    </spatRepInfo>
    <eainfo>
        <detailed Name="Study_Area_PairwiseDissolve">
            <enttyp>
                <enttypl>LITERACY_COUNTY</enttypl>
                <enttypt Sync="TRUE">Feature Class</enttypt>
                <enttypc Sync="TRUE">0</enttypc>
                <enttypd>LITERACY_COUNTY.DBF</enttypd>
                <enttypds>NIFL</enttypds>
            </enttyp>
            <attr>
                <attrlabl Sync="TRUE">OBJECTID</attrlabl>
                <attalias Sync="TRUE">OBJECTID</attalias>
                <attrtype Sync="TRUE">OID</attrtype>
                <attwidth Sync="TRUE">4</attwidth>
                <atprecis Sync="TRUE">0</atprecis>
                <attscale Sync="TRUE">0</attscale>
                <attrdef Sync="TRUE">Internal feature number.</attrdef>
                <attrdefs Sync="TRUE">Esri</attrdefs>
                <attrdomv>
                    <udom Sync="TRUE">Sequential unique whole numbers that are automatically generated.</udom>
                </attrdomv>
            </attr>
            <attr>
                <attrlabl Sync="TRUE">Shape</attrlabl>
                <attalias Sync="TRUE">Shape</attalias>
                <attrtype Sync="TRUE">Geometry</attrtype>
                <attwidth Sync="TRUE">0</attwidth>
                <atprecis Sync="TRUE">0</atprecis>
                <attscale Sync="TRUE">0</attscale>
                <attrdef Sync="TRUE">Feature geometry.</attrdef>
                <attrdefs Sync="TRUE">ESRI</attrdefs>
                <attrdomv>
                    <udom Sync="TRUE">Coordinates defining the features.</udom>
                </attrdomv>
            </attr>
            <attr>
                <attrlabl Sync="TRUE">Shape_Length</attrlabl>
                <attalias Sync="TRUE">Shape_Length</attalias>
                <attrtype Sync="TRUE">Double</attrtype>
                <attwidth Sync="TRUE">8</attwidth>
                <atprecis Sync="TRUE">0</atprecis>
                <attscale Sync="TRUE">0</attscale>
                <attrdef Sync="TRUE">Length of feature in internal units.</attrdef>
                <attrdefs Sync="TRUE">Esri</attrdefs>
                <attrdomv>
                    <udom Sync="TRUE">Positive real numbers that are automatically generated.</udom>
                </attrdomv>
            </attr>
            <attr>
                <attrlabl Sync="TRUE">Shape_Area</attrlabl>
                <attalias Sync="TRUE">Shape_Area</attalias>
                <attrtype Sync="TRUE">Double</attrtype>
                <attwidth Sync="TRUE">8</attwidth>
                <atprecis Sync="TRUE">0</atprecis>
                <attscale Sync="TRUE">0</attscale>
                <attrdef Sync="TRUE">Area of feature in internal units squared.</attrdef>
                <attrdefs Sync="TRUE">Esri</attrdefs>
                <attrdomv>
                    <udom Sync="TRUE">Positive real numbers that are automatically generated.</udom>
                </attrdomv>
            </attr>
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    </eainfo>
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