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&lt;td&gt;type: String&lt;br /&gt;width: 2&lt;br /&gt;precision: 0&lt;/td&gt;
&lt;td&gt;2020 Census state FIPS code
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&lt;td&gt;type: String&lt;br /&gt;width: 3&lt;br /&gt;precision: 0&lt;/td&gt;
&lt;td&gt;2020 Census county FIPS code
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&lt;td&gt;type: String&lt;br /&gt;width: 6&lt;br /&gt;precision: 0&lt;/td&gt;
&lt;td&gt;2020 Census tract code

&lt;/td&gt;
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&lt;td&gt;2020 Census block group number
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&lt;td&gt;Census block group identifier; a concatenation of the current state FIPS code, county FIPS code, census tract code, and block group number.
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&lt;td&gt;2020 translated legal/statistical area description and the block group number
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&lt;td&gt;2020 Census functional status
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&lt;td&gt;2020 Census land area (unadjusted - matches raw Census TIGER data)
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&lt;td&gt;2020 Census water area (unadjusted - matches raw Census TIGER data)
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&lt;td&gt;2020 Census latitude of the internal point (unadjusted - matches raw Census TIGER data)
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        <keyword>2020 Adjusted Block Groups</keyword><keyword>Demographics</keyword><keyword>Cambridge</keyword><keyword>CambMA</keyword></searchKeys>
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                <atprecis Sync="TRUE">0</atprecis>
                <attscale Sync="TRUE">0</attscale>
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