- Adviesdiensten
Order Fulfillment: 12 week pilot implementation
An ML based solution that can help firms deal with significant demand variability across channel & geographies
Objective: Develop a dynamic sourcing mechanism which provide best sourcing options for customer orders based on inventory availability, labor and shipping capacity constraints and consider trade-offs on Shipping costs, Penalties, Service Level Impacts and Lost sales
Key Challenges Addressed:
How do we address your challenges: The solution will fulfill customer orders using the following modules/ functionalities
Pilot outcome: An automated tool which will recommend an optimal alternate location for order fulfillment in case of stockouts at default location so to maximize the order fill rates and minimize costs
Implementation Plan The break-up of the implementation plan is as below:
This implementation uses the following native Azure components: