CPG & Retail, Data Analytics
A leading grocery supermarket chain wanted to reduce its inventory wastage and sales opportunity loss – the two main outcomes of inaccurate demand forecasting. It sought accurate predictions to optimize the inventory of its highly perishable items. Since sales of such items are highly dependent on price fluctuations, weather conditions, and seasonal demand patterns, among other factors, the company knew it needed an accurate prediction model to minimize its losses. With this goal in mind, it approached Netscribes to gain timely and accurate predictions to optimize its replenishment cycles across outlets.
Knowing exactly how much inventory to carry is paramount to grocery retail success. Overstocking can lead to loses due to wastage, while understocking translates into missed opportunities. Given that perishable goods have quick replenishment cycles, product indentation and allocation also needs to be quick. To overcome these challenges, a leading grocery supermarket chain turned to data analytics to predict the demand of perishable items and plan their inventory accordingly.
By implementing the recommended inventory planning model, the supermarket chain achieved: