胖树数据中心网络的预测ECMP路由协议

E. Nepolo, G. Lusilao-Zodi
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引用次数: 5

摘要

由于云计算的指数级增长,数据中心已经成为支持核心基础设施的枢纽,推动了云计算的发展。数据中心是存放不同网络设备的存储库,这些设备通过通信链路连接在一起,以收集、存储、处理和传播数据。数据中心优先考虑高数据可用性。然而,网络环境的不可预测性对数据可用性提出了挑战,这为设计足够灵活的路由协议以适应网络可用容量的突然变化提出了巨大的挑战。为了向用户提供无缝服务,由于其多路径多样性,大多数现代数据中心使用Fat-Tree作为事实上的拓扑结构,并使用等成本多路径协议(ECMP)作为主要路由协议,以便在主路径被过度使用时将数据路由到同等成本的替代路径。然而,用于实现这一目标的加权算法效率很低,因为它根据链路容量将流量分配给链路,而没有考虑该链路上已经使用的容量。在本文中,我们提出了预测等价多路径协议,该协议通过基于预测拥塞前景做出转发决策来增强ECMP的加权负载平衡算法。该协议使用丢包来计算链路的带宽利用率,并使用计算出的数据来识别拥塞最少的链路,然后使用这些数据来构建转发表。该协议在启用了Fat-Tree的数据中心中进行了测试,与ECMP加权算法相比,该协议的性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictive ECMP Routing Protocol for Fat-Tree Enabled Data Centre Networks
Due to the exponential growth of cloud computing, data centres have become the pivot for supporting the core infrastructure that propels the cloud computing evolution. Data centres are repositories that house different networking devices that are connected together using communication links to collect, store, process and disseminate data. Data centres prioritise high data availability amongst others. However, data availability is challenged by the unpredictable nature of the network environment, which presents enormous challenges in designing routing protocols that are agile enough to adjust to sudden changes in the network's available capacity. To provide seamless services to users, most modern data centres use Fat-Tree as the de-facto topology due to its multipath diversity, and the Equal-Cost Multi-Path protocol (ECMP) as the primary routing protocol to route data towards alternative paths of equal cost when the primary path is over-utilised. However, the weighted algorithm used to achieve this is inefficient, as its assigns traffic to links based on their link capacities without taking into consideration the capacity already in use on that link. In this paper, we propose the Predictive Equal-Cost Multi-Path protocol that enhances ECMP's weighted load-balancing algorithm by making forwarding decisions based on predicted congestion outlooks. The proposed protocol uses packets dropped to compute the bandwidth utilisation of links and uses the computed figures to identify the least congested links, which is then used to build forwarding tables. The protocol was tested in a Fat-Tree enabled data centre where it proved to perform better when compared to the ECMP weighted algorithm.
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