This project performs an exploratory data analysis (EDA) on an e-commerce sales dataset to uncover trends, sales performance, and other key insights. The notebook uses Python libraries such as Pandas and Plotly for data processing and visualization.
-
Identifying Sales Trends: Understand peak and low sales periods for better inventory and marketing decisions.
-
Customer Behavior Insights: Analyze purchasing patterns based on time and region.
-
Profitability Analysis: Determine which products or categories drive the most revenue.
-
Optimizing Shipping Strategies: Compare order and shipping dates to improve logistics.
-
Data-Driven Decision Making: Helps businesses make informed strategies to boost revenue and efficiency.
Programming Language: Python Libraries: Pandas, Plotly Data Format: CSV Development Environment: Jupyter Notebook ðŸ¦