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            <keyword>solar</keyword>
            <keyword>deep solar</keyword>
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            <keyword>convergent solar</keyword>
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        <idPurp>A map that can be used to visualze various aspects of census tracts related to solar adoption. The data is sourced from Deep Solar from Stanford, Seeds II from NREL, and some calculations done by the Convergent Solar Group at UTK</idPurp>
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