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rohitkulkarni08/README.md

📈 Data Scientist & Data Engineer | Master's in Statistics and Data Science @ Rutgers University | Passionate about Machine Learning & Data-Driven Insights 🌟

I'm Rohit Kulkarni, a Data Scientist and Engineer with a passion for using data to drive impactful decisions. I'm currently pursuing my Master's in Statistics & Data Science at Rutgers University. I specialize in statistical modeling, machine learning, and data engineering.

Connect with me on 📧 LinkedIn | 📧 Email

About Me

🎓 Masters Science in Statistics & Data Science at Rutgers University

💼 Data Engineer & Data Scientist at Fractal Analytics

  • Developed a Portfolio Optimization for a prominent CPG company, to help identify delisting opportunities for underperforming products
  • Automated 10+ end-to-end ETL and CI/CD pipelines reducing manual activities by over 40%
  • Migrated 60+ notebooks from Python to PySpark improving runtime by 85%
  • Lead the technical activities of the US track of the project, managing a team of 3

📊 Skills and Certifications

  • Staistical Modeling | Machine Learning | Data Wrangling | Data Engineering | Cloud Computing | Data Mining
  • Python | R | SQL | PySpark | Microsoft Azure| PowerBI | Hadoop | Apache Spark
  • Microsoft Certified Azure Data Engineer Associate (DP-203)

🚀 Projects

  • Enhancing Predictive Model Reliability with Bootstrap Techniques: Enhanced the reliability and computational efficiency of predictive models by implementing Bag of Little Bootstraps (BLB) across large datasets, achieving superior scalability and accuracy in uncertainty estimation
  • Optimized E-Commerce Sales Analysis with Azure ETL Pipeline: Built an advanced ETL pipeline leveraging Microsoft Azure and PySpark to analyze and optimize e-commerce sales, providing actionable insights through detailed data processing and analysis.
  • Enhancing Predictive Model Reliability with Bootstrap Techniques: Applied both standard Bootstrap and the Bag of Little Bootstraps (BLB) methods to assess the reliability and efficiency of predictive models in large datasets, offering scalable and robust statistical analysis
  • Automated ETL Pipeline for Enhanced Movie Data Insights: Developed a comprehensive, automated ETL pipeline using Microsoft Azure to efficiently process and analyze IMDb movie ratings data, ensuring seamless integration and storage in sophisticated reporting frameworks
  • NFL Player Evaluation: Conducted regression analysis and hypothesis testing to evaluate NFL players, establishing the significance of key factors beyond physical attributes
  • Flight Price Estimation: Predicted flight prices using several regression algorithms like XGBoost, SVR, RandomForestRegressor, achieving 95% accuracy score
  • Customer Churn Rate Prediction: Analyzed customer retention in online food sales, and leveraged machine learning models to predict customer churn rate with 92% classification accuracy

More projects in my GitHub repo..

Languages and Tools

azure c cplusplus docker git hadoop java mongodb mssql mysql pandas python pytorch scikit_learn seaborn tensorflow

Pinned Loading

  1. Azure-ETL-AmazonSalesAnalysis Azure-ETL-AmazonSalesAnalysis Public

    A comprehensive ETL pipeline and sales analysis project leveraging Microsoft Azure and PySpark, designed to optimize e-commerce sales by providing actionable insights through detailed data analysis.

    Jupyter Notebook

  2. Azure-ETL-Pipeline-MovieAnalytics Azure-ETL-Pipeline-MovieAnalytics Public

    This project demonstrates an ETL pipeline using Microsoft Azure for IMDb Movie Rating Dataset analysis. It covers data extraction from Azure Blob Storage, transformation with Azure Databricks, and …

    Jupyter Notebook

  3. Flight-Price-Estimation Flight-Price-Estimation Public

    Predict flight prices using machine learning. This project involves data preprocessing, exploratory analysis, feature engineering, and model training with various regression algorithms to accuratel…

    Jupyter Notebook

  4. Customer-Churn-Analysis Customer-Churn-Analysis Public

    This is a customer churn prediction project using machine learning algorithms like Logistic Regression, Random Forest, K-Nearest Neighbors, Support Vector Machine, XGBoost, and Gradient Boosting. T…

    Jupyter Notebook

  5. Baseball-Lahman-SQL-Analysis Baseball-Lahman-SQL-Analysis Public

    Dive into the world of baseball with an in-depth analysis of players using the Lahman Baseball Database. Explore comprehensive player statistics and insights to gain a deeper understanding of playe…

  6. Online-Food-Sales-Customer-Retention Online-Food-Sales-Customer-Retention Public

    A comprehensive analysis of customer retention in online food sales using various machine learning models and data preprocessing techniques.

    Jupyter Notebook