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graphs** – Line charts showing sales performance over time.  \n📊 **Product comparison charts** – Bar plots for revenue and unit sales of different products.  \n🗺️ **Regional sales heatmaps** – Showing sales distribution across different locations.  \n\n## 🛠️ Technologies Used  \n- **Python (Pandas, Matplotlib, Seaborn, plotly, NumPy)** for analysis \u0026 visualization.  \n- **Jupyter Notebook** for writing, running, and documenting the project.  \n- **Data Cleaning \u0026 Preprocessing** to enhance data quality.  \n\n## 🚀 Future Enhancements  \n- Implement **time-series forecasting** for future sales predictions.  \n- Create **interactive dashboards** with **Plotly**.    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