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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 1

  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