CASE STUDY
Demand Forecasting for Items in the Food Industry
About The Client
Our client, a key player in the global food market, operates a vast network of production and distribution channels. The complexities of managing diverse product lines and ever-changing consumer preferences encouraged them to look for innovative solutions for precise demand forecasting.
Industry | Food
Solutions | ML, DL
Location | USA
Business Challenges
- Inaccuracies in forecasting demand at the item level, leading to suboptimal inventory levels.
- Customer dissatisfaction and potential revenue loss caused by stockouts.
- Escalating costs due to excess inventory resulting from imprecise predictions and increased wastage of items.
Business Solution
- Azure ML-based scalable and cloud-based CI/CD pipeline solution
- Using statistical models like ARIMA, SARIMA, and Deep Learning
Key Outcomes
40% Improvement in Operational Efficiency
30% Increase in the Demand Prediction Accuracy
30% Reduction in Excess Inventory
25% Increase in Customer Satisfaction Scores