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Forked from learn-co-curriculum/dsc-phase-2-project-v2-3
This kernel uses the King County Housing Dataset to create a Linear Regression Model to know what features the homes our client builds should contain in order to be financially successful.
Jupyter Notebook 1
Classification machine learning models were trained and used to identify what features contributed to customer churn rate.
Jupyter Notebook 1
Using time series modeling to forecast the top 3 zipcodes to invest in Washington state.
Jupyter Notebook 1
Jupyter Notebook 1
Forked from learn-co-curriculum/dsc-running-jupyter-locally-lab
Jupyter Notebook