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        <idPurp>BGIS 1st Semester Final Project: “Where are there Calgary communities with statistically significant rate of Licensed Short-Term Rental during 2022Q4 - 2023Q3, and which sociospatial factors contribute to them?”- Fall 2023</idPurp>
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