<?xml version="1.0" encoding="UTF-8" standalone="no"?><metadata xml:lang="en">
    
    <Esri>
        
        <CreaDate>20210923</CreaDate>
        
        <CreaTime>10174400</CreaTime>
        
        <ArcGISFormat>1.0</ArcGISFormat>
        
        <SyncOnce>TRUE</SyncOnce>
        
    </Esri>
    
    <dataIdInfo>
        
        <idAbs>Break and Enters that occurred in Toronto between 2014 to 2019.  This layer is used in the &lt;a href='https://k12.esri.ca/resourcefinder/data/files/ProximityHotSpotAnalysis_Tutorial.pdf' target='_blank' rel='nofollow ugc noopener noreferrer'&gt;Proximity and Hot Spot Analysis in ArcGIS Online tutorial.&lt;/a&gt;</idAbs>
        
        <searchKeys>
            
            <keyword>break and enter</keyword>
            
            <keyword>Toronto</keyword>
            
            <keyword>2014 to 2019</keyword>
            
            <keyword>ArcCanada</keyword>
            
            <keyword>crime</keyword>
            
            <keyword>crime in Toronto</keyword>
            
            <keyword>Canada</keyword>
            
        </searchKeys>
        
        <idPurp>Break and Enters that occurred in Toronto between 2014 to 2019. This layer is used in the Proximity and Hot Spot Analysis in ArcGIS Online tutorial.</idPurp>
        
        <idCredit>Toronto Police Service, Toronto Open Data</idCredit>
        
        <resConst>
            
            <Consts>
                
                <useLimit/>
                
            </Consts>
            
        </resConst>
        
    </dataIdInfo>
    
    <Binary>
        
        <Thumbnail>
            
            <Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAAQABAAD/2wBDAAgGBgcGBQgHBwcJCQgKDBQNDAsLDBkSEw8UHRofHh0a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</Data>
            
        </Thumbnail>
        
    </Binary>
    
</metadata>