Skip to content

Latest commit

 

History

History
9 lines (8 loc) · 560 Bytes

README.md

File metadata and controls

9 lines (8 loc) · 560 Bytes

Data-Analytics

Store Data Analytics

important steps:

  • Utilized "Find and Replace" functionality to clean and preprocess data efficiently.
  • Segmented customer age into three distinct age groups using IF formulas for enhanced demographic insights.
  • Extracted month information from date fields using the TEXT function, enabling time-based trend analysis.
  • Analyzed and visualized data through Pivot Tables, uncovering key patterns and trends.
  • Prepared a comprehensive report and shared actionable insights with stakeholders to inform decision-making.