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Karant15/README.md

Hi, I'm Karan Trivedi

MS Data Analytics | Webster University (Dec 2024) 📍 Edison, NJ | Open to Opportunities | OPT Active

I build predictive models, dashboards, and data-driven solutions with a focus on healthcare, financial risk, and consumer analytics.

Tools & Skills

Python R SQL Tableau Power BI

Featured Projects

Project Description Tools
Human Capital Analysis Employee turnover prediction — 90% accuracy R, Logistic Regression, Decision Trees
Bank Loan Risk Model Loan default prediction — $3M cost reduction R, Logistic Regression
Consumer Segmentation Customer segmentation & brand loyalty prediction R, Random Forest, Clustering

Certifications

  • Lean Six Sigma Black Belt — Benchmark Six Sigma
  • Lean Six Sigma Green Belt — Benchmark Six Sigma

📫 Let's Connect

LinkedIn Email

Popular repositories Loading

  1. Human-Capital-Analysis Human-Capital-Analysis Public

    Predicting employee turnover using Logistic Regression, Decision Tree, k-NN & SVM on 14,999 employees. Decision Tree achieved 97% accuracy & 0.97 AUC. Built in R. Dataset: 10 attributes.

    R

  2. Bank-Loan-Decision-Making-Analysis Bank-Loan-Decision-Making-Analysis Public

    Predicting home improvement loan defaults using Logistic Regression & Decision Tree in R. 77.47% accuracy, 80.65% sensitivity, $1.165M cost reduction. Dataset: 5,960 applicants | 13 variables.

    R

  3. Consumer-Segmentation-Analysis Consumer-Segmentation-Analysis Public

    Consumer segmentation & brand loyalty prediction for 600 profiles using K-Means clustering, Logistic Regression & Random Forest. Built for AXANTEUS market research agency. Built in R.

    R

  4. Karant15 Karant15 Public