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Repository Details

Our client is a large Real Estate Investment Trust (REIT). They invest in houses, apartments, and condos(complex of buildings) within a small county in New York state. As part of their business, they try to predict the fair transaction price of a property before it's sold. They do so to calibrate their internal pricing models and keep a pulse on the market.

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