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Blind, Adaptive and Robust Flow Segmentation in Datacenters

机译:数据中心的盲流,自适应流和鲁棒流分段

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To optimize routing of flows in datacenters, SDN controllers receive a packet-in message whenever a new flow appears in the network. Unfortunately, flow arrival rates can peak to millions per second, impairing the ability of controllers to treat them on time. Flow scheduling copes with such sheer numbers by segmenting the traffic between elephant and mice flows and by treating elephant flows in priority, as they disrupt short lived TCP flows and create bottlenecks. We propose a learning algorithm called SOFIA and able to perform optimal online flow segmentation. Our solution, based on stochastic approximation techniques, is implemented at the switch level and updated by the controller, with minimal signaling over the control channel. SOFIA is blind, i.e., it is oblivious to the flow size distribution. It is also adaptive, since it can track traffic variations over time. We prove its convergence properties and its message complexity. Moreover, we specialize our solution to be robust to traffic classification errors. Extensive numerical experiments characterize the performance of our approach in vitro. Finally, results of the implementation in a real OpenFlow controller demonstrate the viability of SOFIA as a solution in production environments.
机译:为了优化数据中心中流的路由,每当网络中出现新流时,SDN控制器都会收到一条入包消息。不幸的是,流量到达速度可能达到每秒几百万峰值,从而削弱了控制器按时处理流量的能力。流量调度通过分割大象和老鼠流之间的流量并优先处理大象流来应对此类数目,因为大象流会破坏短暂的TCP流量并造成瓶颈。我们提出了一种称为SOFIA的学习算法,该算法能够执行最佳的在线流细分。我们基于随机逼近技术的解决方案在交换机级别实施,并由控制器进行更新,并且在控制通道上的信令最少。 SOFIA是盲目的,即它忽略了流量大小分布。它也是自适应的,因为它可以跟踪流量随时间的变化。我们证明了其收敛性和消息复杂性。此外,我们对解决方案进行了专门化处理,使其能够针对流量分类错误提供强大的支持。大量的数值实验表征了我们方法在体外的性能。最后,在真正的OpenFlow控制器中的实现结果证明了SOFIA作为生产环境中的解决方案的可行性。

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