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  1. Employee_Attrition_Analysis Employee_Attrition_Analysis Public

    The Attrition Analytics Dashboard uses Power BI to analyze and visualize employee attrition trends, providing actionable insights to company for making strategic decisions.

  2. Honey_Production_Analysis_using_Python Honey_Production_Analysis_using_Python Public

    In this project, I analyzed U.S. honey production from 1998 to 2021 across different U.S. cities, explored yields, and examined production values using Matplotlib and Seaborn visualizations.

    Jupyter Notebook

  3. Oil_spill_prediction_using_ML Oil_spill_prediction_using_ML Public

    This ML project predicts oil spills using various machine learning algorithms like XGBoost and Random Forest. This project also contains saving and load of the model to make predictions on a sample…

    Jupyter Notebook 1

  4. personal-expense-tracker personal-expense-tracker Public

    A simple and user-friendly personal expense tracker using Python and Pandas PrettyTable.

    Jupyter Notebook

  5. Pre-Owned-Car-Price-prediction-using-Streamlit-App Pre-Owned-Car-Price-prediction-using-Streamlit-App Public

    In this project, I had performed exploratory analysis, visualization and prediction of used car prices and deployed the model with streamlit web app.

    Jupyter Notebook

  6. Marketing_Campaign_Analysis Marketing_Campaign_Analysis Public

    Visual and statistical insights into customer behavior across marketing campaigns using Python.

    Jupyter Notebook