Ml based project which uses regression technique to predict the price.

Overview

Price-Predictor

Ml based project which uses regression technique to predict the price. I have used various regression models and finds the model with lower rmse so as to predict the prices better as possible.

  • I have used flask for deployimg the model over web page created through html and css.
  • When user will enter the features of house and hit the predict button, the predicted price lable will be shown to the user.

Thanks

Owner
Garvit Verma
Garvit Verma
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