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  1. Applied-Statistics-Project Applied-Statistics-Project Public

    This project uses Plotting distribution, Visualization and Hypothesis Testing to validate statistical evidence and leverage information to make effective decisions.

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  2. Supervised-Learning-Project Supervised-Learning-Project Public

    This project uses the most popular classification techniques to predict the outcomes after extensively working on EDA treating missing values and imbalanced data.

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  3. Ensemble-techniques Ensemble-techniques Public

    This project is based on the case study of a telecommunication company, which is facing a customer churn issue. The project aims at understanding the pattern of the data and predicting customers wh…

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  4. Unsupervised-Learning Unsupervised-Learning Public

    Part 1 - To segment cars into various categories by fuel consumption and other attributes Part 2 - To classify a given silhouette as one of three types of vehicle, using a set of features extracted…

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  5. Feature-Engineering-Model-Tuning Feature-Engineering-Model-Tuning Public

    The project was accomplished by employing supervised learning, ensemble modeling, and unsupervised learning techniques to build and train a prediction model to identify Pass/Fail yield of a particu…

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  6. Neural-Network-and-Deep-Learning Neural-Network-and-Deep-Learning Public

    Part A: To build a machine learning model to predict the signal quality of a communication equipment using various parameters. Part B: To develop a digit classifier using the Street View Housing Nu…

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