AdventureWorks KPI Tracking & Analysis
I developed an interactive Power BI dashboard for AdventureWorks to track key metrics like sales,
revenue, profit, and returns. Using raw CSV data, I built a relational model and applied DAX to
calculate performance metrics. The dashboard provides insights into regional performance,
product trends, and high-value customers, helping the management team make informed decisions.
Nashville Housing Data Cleaning
Here, I demonstrated practical data cleaning techniques and advanced SQL
functionalities for enhancing data quality and preparing datasets for analysis.
I employed various SQL statements and also created CTE to standardize the data
and perform several other data cleaning tasks.View documentation here
Understanding Workforce Turnover
In this project, I analyzed employee attrition trends to uncover key factors influencing workforce turnover.
Using Power BI for data visualization, I examined attrition by demographics, department, and salary range,
providing actionable insights to improve employee retention strategies. View details here
Transborder Freight Analysis (USA–Mexico–Canada)
I conducted a comprehensive Transborder Freight Analysis using Python on 5 years of
U.S.–Mexico–Canada trade data, uncovering performance patterns and operational inefficiencies
across billions of dollars in freight movement. The analysis quantified trade flows, freight charges,
and estimated CO₂ emissions, enabling data-driven insights into cost drivers and efficiency gaps.
I applied advanced data cleaning, feature engineering, visualization, and analytical reasoning to
translate raw transportation data into actionable business intelligence. This project demonstrates
my ability to analyze complex, real-world logistics data, uncover operational risks, and deliver insights
that support strategic decision-making in supply chain, trade, and transportation operations.
Customer Segmentation Analysis
In this project, I utilized Python to analyze data collected through supermarket membership cards,
aiming to segment customers based on demographic characteristics. The analysis revealed insights
such as the prevalence of single and male customers, educational patterns across occupations, and
correlations between education levels and income. These findings were instrumental in crafting
targeted marketing strategies to enhance customer engagement and satisfaction.
In this project, I established a comprehensive database to analyze Walmart sales data,
aiming to identify top-performing branches and products, discern sales trends,
and understand customer behavior. Utilizing SQL for detailed data analysis and Power BI for
interactive visualizations, I uncovered key insights including peak sales periods, profitable
product lines, and customer purchasing patterns. These findings informed actionable
recommendations to optimize sales strategies and enhance overall performance. View documentation here