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  1. Churn-Prediction-Classification Churn-Prediction-Classification Public

    Developing a classification model to predict customer attrition in music subscription industry to support a data-driven customer retention strategy. Feature engineering, Predictive modeling (tree-b…

    Jupyter Notebook

  2. Machine-Learning-Algorithms Machine-Learning-Algorithms Public

    Implementation code for machine learning algorithms such as Logistic Regression, K-Nearest Neighbors, Decision Tress, Random Forest, Gradient Ascent, Cross Sectional Estimator and Principal Compone…

    Jupyter Notebook

  3. NYC-2013-Flights-Data-Analysis NYC-2013-Flights-Data-Analysis Public

    It can always be a painful experience to be at the airport with delayed flights. Can data analysis help us make wiser decisions about the when to travel and which path to take? Let's Explore!

    Jupyter Notebook 1

  4. Multi-Armed-Bandits Multi-Armed-Bandits Public

    Performance evaluation of Multi-armed Bandit Algorithms, as alternatives to conventional A/B testing, that balances exploration and exploitation during the learning process to quickly identify the …

    Jupyter Notebook

  5. Movie-Reviews-Text-Analysis Movie-Reviews-Text-Analysis Public

    Let's perform text analysis on the movie reviews along with some exploratory analysis to identify what make or destroys success of a movie at box office.

    Jupyter Notebook

  6. cerebral-health-in-tech-industry cerebral-health-in-tech-industry Public

    Assessing the comfort level of the employees in discussing mental health issue with their employers.

    R