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.
翻譯成其他語言
從原文內容
arxiv.org
深入探究