P R O J E C T S
- Analyzed NBA data in Tableau to identify 3-pointer shooting efficiency, player performance by position, and team scoring trends, identifying disparities and strategic recruitment needs.
- Evaluated player performance metrics, discovering a strong correlation between points and assists and identifying top performers.
- Utilized Tableau to create data visualizations analyzing team points distribution, highlighting top-scoring teams and individual player contributions.
- Utilized R programming language in RStudio to examine human resource data for 1,470 employees to investigate HR-related claims, effectively refuting allegations of ageism and income-based layoffs.
- Developed multivariate linear regression models to explore complex relationships between employee attributes, facilitating a deeper understanding of factors influencing monthly income and informing HR strategies, resulting in a 35% increase in predictive power compared to univariate models.
- Analyzed performance rating correlations, finding strong ties to percent salary hikes (r = 0.77) but not to monthly income or training attendance, leading to recommendations for targeted professional development programs.
- Interpreted manufacturing time series data containing 730,000 samples, investigating anomalies and identifying correlations between critical variables impacting plant performance.
- Applied statistical techniques using Python to identify linear correlations and generated data visualizations confirming the stability of critical variables.
- Developed Python visualizations to investigate fluctuations in material purity during manufacturing, indicating seamless operations and a 10% increase in desired material post-processing.
- Leveraged SQL to examine hospital patient data spanning 10 years and covering over 101,000 diabetic patients, identifying correlations between medical specialties and patient procedures and assessing the impact of race on medical treatments.
- Analyzed healthcare data to reveal equitable treatment for diabetic patients regardless of race, highlighting an inclusive approach and commitment to unbiased healthcare services.
- Translated analytical findings into actionable recommendations, including suggestions for optimizing hospital operations, enhancing patient care, and leveraging success stories for public relations initiatives.
- Utilized SQL to examine over 1.18 million transactions representing loans and grants issued from the World Bank Group to identify top borrowing countries, interest rate ranges, and investment impacts.
- Conducted financial analysis demonstrating that the number of transactions does not correlate to the total debt, highlighting India, Pakistan, and Bangladesh as the top debtors.
- Analyzed Uganda’s $88 investment in economic recovery and infrastructure development, contributing to a 6.8% economic improvement within the first half of the year.
- Conducted school performance analysis to evaluate graduation rates and demographic data of 1,800+ schools, distinguishing top and bottom performers based on graduation statistics, economically disadvantaged students, and students with high needs.
- Leveraged Tableau to investigate geographic patterns of educational outcomes, mapping graduation rates to school locations and identifying clusters of high and low-performing schools, informing allocation and policy initiatives.
- Orchestrated the development of an interactive Tableau dashboard, presenting actionable insights to an analyst team at Kaplan Inc., proposing strategies to improve student support and enhance academic success.
- I was sought out by an analytics leader at Kaplan, Inc. and asked to speak at their Internal Tableau User Group Meeting as a guest speaker about this project. My 50-minute presentation provided specific insights for Kaplan analysts. Part of the presentation can be viewed in Tableau Public here.
- Leveraged Excel to analyze customer spending patterns and demographic trends, identifying correlations between income levels and expenditure on food delivery services, with findings showing that higher-income customers generate the most revenue.
- Created data visualizations in Excel showing Campaign 6 was the most successful, and product purchases by age group indicated wine was the highest revenue-generating product across all age groups.
- Marketing recommendations included targeting higher-income customers, promoting customer retention through series-based promotions, directing wine promotions to younger and older age groups, and continuing to refine successful campaigns.