I started by exploring the sales data, visualizing sales trends over time to understand patterns and seasonality.
Utilized seasonal decomposition to break down the data into trend, seasonality, and residual components, gaining deeper insights into sales patterns.
Employed Exponential Smoothing with seasonal components to build a robust forecasting model, leveraging historical sales data.
The model accurately predicted future sales trends, enabling better decision-making and resource allocation for inventory management and business planning.
By implementing data-driven demand forecasting, businesses can optimize inventory levels, reduce stockouts, and enhance customer satisfaction.
GITHUB - https://github.com/13Anush/Demand-Forecasting-for-a-Retail-Store