This Power BI project analyzes BlinkItβs sales data to uncover insights into item trends, outlet performance, customer ratings, and sales distribution. The goal was to transform raw retail data into a dynamic, interactive dashboard that supports data-driven decisions.
The dataset consists of retail-level item and outlet data with the following columns:
Item Fat Content, Item Identifier, Item Type, Outlet Establishment Year, Outlet Identifier
Outlet Location Tier, Outlet Size, Outlet Type, Item Visibility, Item Weight, Sales, Rating
Using Power Query Editor, I performed the following data-cleaning steps:
Replaced inconsistent text values (e.g., standardizing fat content categories)
Renamed columns for clarity
Fixed data types (e.g., numbers, dates, text)
Checked data quality using Power BI's "Column quality" and "Column distribution" features
Filtered unnecessary or null values for improved accuracy