🌙

大规模服务系统中的分布式速度缩放

Distributed Speed Scaling in Large-Scale Service Systems

Operations Research · 2025
被引 0
人大 AFT50UTD24ABS 4*

中文导读

提出一种去中心化算法,让每个服务器根据空闲时间自主调整处理速度,无需通信即可实现全局最优,旨在降低大型数据中心的能耗。

Abstract

Smart Servers, Smarter Speed Scaling: A Decentralized Algorithm for Data Center Efficiency A team of researchers from Georgia Tech and the University of Minnesota has introduced a cutting-edge algorithm designed to optimize energy use in large-scale data centers. As detailed in their paper “Distributed Rate Scaling in Large-Scale Service Systems,” the team developed a decentralized method allowing each server to adjust its processing speed autonomously without the need for communication or knowledge of system-wide traffic. The algorithm uses idle time as a local signal to guide processing speed, ensuring that all servers converge toward a globally optimal performance rate. This innovation addresses a critical issue in modern computing infrastructure: balancing energy efficiency with performance under uncertainty and scale. The authors demonstrate that their approach not only stabilizes the system but achieves asymptotic optimality as the number of servers increases. The work is poised to significantly reduce energy consumption in data centers, which are projected to account for up to 8% of U.S. electricity use by 2030.

运营管理计算机科学能源效率数据中心