The study delves into optimizing inventory placement for downstream fulfillment decisions in e-commerce. Three placement procedures are compared: Offline, Myopic, and Fluid, with Offline performing best overall. The theoretical contributions include a tight approximation algorithm using randomized rounding and statistical learning techniques to handle large support sizes. Experimental results on real-world data from JD.com validate the theoretical findings.
The supply chain of an e-commerce retailer involves complex interdependent decisions across various stages. The study focuses on inventory placement before fulfillment decisions in an e-commerce network of warehouses and last-mile delivery hubs. Different placement procedures are evaluated based on theoretical guarantees and empirical performance on real-world data from JD.com.
Key points include the challenging nature of joint optimization in e-commerce supply chains, the importance of upstream decisions depending on downstream dynamics, and the need for coordination between teams for effective decision-making. The study highlights the significance of accurate inventory placement for optimal fulfillment outcomes and provides insights into different approaches to address this challenge.
In eine andere Sprache
aus dem Quellinhalt
arxiv.org
Wichtige Erkenntnisse aus
by Boris Epstei... um arxiv.org 03-08-2024
https://arxiv.org/pdf/2403.04598.pdfTiefere Fragen