Impact at a Glance
- 50% more accurate forecasts compared to the output of existing forecasting systems.
- Optimized Inventory – SKU-level insights reduced excess stock, avoiding stockouts.
- Lifecycle Forecasts – Dynamic adjustment to reflect SKU lifecycle changes
- Improved Resource Planning – Precise demand prediction minimizes lead times.
About the client
Business Challenge
Demand forecasting is a critical success factor in discrete manufacturing, particularly when lead times are long, and product lifecycles are short. The client, a discrete manufacturer of CCTV cameras, faced several challenges in managing demand forecasting due to data complexity.
a) Long Lead Times: Ordering raw material orders required a lead time of 3-4 months, adding pressure to ensure demand accuracy.
b) Problem of Data Availability: Sales, inventory, and distributed inventory data were not simultaneously available. Inventory data was updated only on the 5th of each month. Real-time data inferencing was not feasible due to infrastructure constraints.
c) Short Product Lifecycles: The client witnessed rapid changes in SKU demand. SKUs 6–12 months old experienced diminishing demand. Newer SKUs required accurate ramp-up forecasts to avoid lost sales opportunities.
d) Limitations in Internal Forecasting: Existing methods lacked the sophistication to adapt to evolving trends and patterns, with only moderate accuracy.
Solution: A Three-Tiered Forecasting Model Powered by Zunō.Predict
To address data unavailability challenges, we began by preprocessing the data, integrating historical information, and filling gaps using statistical methods. This ensured a reliable foundation for analysis despite incomplete data. Incremental updates were synchronized with inventory data, received on the 5th of each month, to refine forecasts dynamically.
Next, we built a robust three-layered prediction framework. Time-series modeling focused on localized SKU-level sales trends and historical data to generate precise forecasts. Hierarchical modeling combined inventory and sales pipeline data across distributed locations, ensuring regional accuracy.
Additionally, SKU-level adjustments accounted for product lifecycle dynamics by scaling down forecasts for aging SKUs while amplifying predictions for newer ones. Advanced forecasting techniques further enhanced the framework.
Time-series analysis uncovered trends, seasonality, and anomalies, while machine learning algorithms adapted to SKU lifecycle phases for greater accuracy.
Finally, scenario planning simulated demand under varying lead-time conditions, optimizing sourcing decisions to align inventory with business needs.
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