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This project focuses on analyzing company sales data to better understand revenue generation, product performance, and overall business trends throughout the year. Using Python (Pandas, Matplotlib, and Seaborn) inside a Jupyter Notebook, the analysis provides insights into which products and categories perform best, how revenue is distributed across different time periods, and what patterns exist in pricing and sales.Tools & Libraries
Python
Jupyter Notebook
Pandas
Seaborn