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Minimizing Traffic Migration During Network Update in IaaS Datacenters

机译:在IaaS数据中心的网络更新期间最大程度地减少流量迁移

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The cloud datacenter network is consistently undergoing changing, due to a variety of topology and traffic updates, such as the VM migrations. Given an update event, prior methods focus on finding a sequence of lossless transitions from an initial network state to an end network state. They, however, suffer frequent and global search of the feasible end network states. This incurs non-trivial computation overhead and decision-making delay, especially in large-scale networks. Moreover, in each round of transition, prior methods usually cause the cascaded migrations of existing flows; hence, significantly disrupt production services in IaaS data centers. To tackle such severe issues, we present a simple update mechanism to minimize the amount of flow migrations during the congestion-free network update. The basic idea is to replace performing the sequence of global transitions of network states with local reschedule of involved flows, caused by an update event. We first model all involved flows due to an update event as a set of new flows, and then propose a heuristic method Lupdate. It motivates to locally schedule each new flow into the shortest path, at the cost of causing the extra migration of at most one existing flow if needed. To minimize the amount of migrated traffic, themigrated flow should be as small as possible. To further improve the success rate, we propose an enhanced method Lupdate-S. It shares the similar design of Lupdate, but permits to migrate multiple necessary flows on the shortest path allocated to each new flow. We conduct large-scale trace-driven evaluations under widely used Fat-Tree and ER data centers. The experimental results indicate that our methods can realize congestion-free network with as less amount of traffic migration as possible even when the link utilization of a majority of links is very high. The amount of traffic migration caused by our Ludpate method is 1.2 times and 1.12 times of the optimal result in the Fat-Tree and ER random networks, respectively.
机译:由于各种拓扑和流量更新(例如VM迁移),云数据中心网络不断发生变化。在给定更新事件的情况下,先前的方法集中于寻找从初始网络状态到终端网络状态的无损转换的序列。但是,他们经常对可行的终端网络状态进行全局搜索。这会带来不小的计算开销和决策延迟,尤其是在大规模网络中。此外,在每一轮过渡中,现有方法通常会导致现有流程的级联迁移;因此,极大地破坏了IaaS数据中心的生产服务。为了解决此类严重问题,我们提出了一种简单的更新机制,以在无拥塞的网络更新过程中最大程度地减少流量迁移。基本思想是用由更新事件引起的所涉及流的本地重新计划来代替执行网络状态的全局转换序列。我们首先将所有由于更新事件而涉及的流建模为一组新流,然后提出一种启发式方法Lupdate。它促使将每个新流本地调度到最短路径中,其代价是在需要时最多导致一个现有流的额外迁移。为了最大程度地减少迁移的流量,迁移的流量应尽可能小。为了进一步提高成功率,我们提出了一种增强的方法Lupdate-S。它具有与Lupdate相似的设计,但是允许在分配给每个新流的最短路径上迁移多个必要流。我们在广泛使用的Fat-Tree和ER数据中心下进行大规模跟踪驱动的评估。实验结果表明,即使大多数链路的链路利用率很高,我们的方法也可以实现尽可能少的流量迁移,实现无拥塞的网络。由我们的Ludpate方法引起的流量迁移量分别是胖树和ER随机网络中最佳结果的1.2倍和1.12倍。

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