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  1. Weather-Time-Series-Analysis-using-Statistical-Methods-and-Deep-Learning-Models Weather-Time-Series-Analysis-using-Statistical-Methods-and-Deep-Learning-Models Public

    This project conducts a thorough analysis of weather time series data using diverse statistical and deep learning models. Each model was rigorously applied to the same weather time series data to a…

    Jupyter Notebook

  2. Synthetic-to-Real-Image-Classifier Synthetic-to-Real-Image-Classifier Public

    The CGI2Real_Multi-Class_Image_Classifier categorizes humans, horses, or both using transfer learning from Inception CNN. Trained on synthetic images, it can also classify real ones.

    Jupyter Notebook

  3. Naples-Diaper-Market-Geo-Analytics-for-Potential-Estimation Naples-Diaper-Market-Geo-Analytics-for-Potential-Estimation Public

    Analyzing Fater company's diaper market potential and enhancing revenue estimation for Naples stores: A Socio-Demographic, Territorial, and Points of Interest Perspective

    Python 1

  4. Financial-Stock-Analysis-and-Clustering Financial-Stock-Analysis-and-Clustering Public

    Analyzed 157 US Energy stocks (Jan-Dec '23), identified Bullish/Bearish trends and risk categories. Used KMeans, Hierarchical, Spectral Clustering, revealing balanced returns and low volatility. In…

    Jupyter Notebook 1 1

  5. Employee-Turnover-Insights-using-Survival-Analysis Employee-Turnover-Insights-using-Survival-Analysis Public

    Analyzed employee turnover (Jan 2022 - Mar 2023) at my former organization, considering trends, departmental attrition, and tenure insights. Used predictive analytics from the 2022 Employee Engagem…

    Python 1