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Predicting-Customer-Churn-For-a-Telecom-Company-
Predicting-Customer-Churn-For-a-Telecom-Company- PublicLogistic Regression (Unpenalized, Lasso, Ridge), Support Vector Machine, KNN, Gradient Boosting, Random Forest Implemented
Jupyter Notebook 1
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Predicting-the-Success-of-a-Bank-Marketing-Campaign
Predicting-the-Success-of-a-Bank-Marketing-Campaign PublicBusiness Value: Advice bank on best customer profile to target, to ensure successful subscription to a new product through a marketing campaign.
Jupyter Notebook 2
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Sound-Track-Emotion-Recognition-Project---Classification
Sound-Track-Emotion-Recognition-Project---Classification PublicJupyter Notebook
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Predicting-NBA-Players-Salaries---Regression
Predicting-NBA-Players-Salaries---Regression PublicTables joined using SQLdf, data preprocessing including feature engineering (binning), several regression models tested.
R
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