首页> 外文会议>2015 IEEE 39th Annual Computer Software and Applications Conference Workshops >Flow-Aware Congestion Control to Improve Throughput under TCP Incast in Datacenter Networks
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Flow-Aware Congestion Control to Improve Throughput under TCP Incast in Datacenter Networks

机译:数据中心网络中基于TCP内播的流量感知拥塞控制可提高吞吐量

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Data enter networks (DCNs) host cloud computing and various applications. In this environment, there are mice and elephant flows and the partition/aggregate communication pattern is common, so TCP in cast may often occur. Massive mice flows directly affect the elephant flows under in cast, and the standard TCP mechanism or SDN approach with centralized controller is insufficient to solve this problem. In this paper, we focused on how a flow-aware congestion control method that takes into account flow characteristics can improve throughput under in cast. It is required to establish our long-term goal that provides different network level services based on flow characteristics. We propose a switch-based method that identifies target flows and provides different congestion control using explicit congestion notification (ECN). Although our method uses ECN, it does not require any change to TCP stacks on end nodes or a dedicated queue for the targets. In our experiments, we focused on the throughput of flows, and selected elephant flows as targets because their throughput is more sensitive than mice flows. We compared the experimental results from our method to those of standard TCP, ECN, and a dedicated queue for elephants. Our method improved the aggregate throughput of elephant flows by 1.7x to 5.1x and the good put of elephant flows by 1.9x to 5.4x compared to those of the above methods under our in cast scenario.
机译:数据输入网络(DCN)托管云计算和各种应用程序。在这种环境中,有老鼠和大象在流动,并且分区/集合通信模式是常见的,因此TCP可能经常发生。大量的鼠标直接影响铸件下的大象流动,而标准的TCP机制或带有集中控制器的SDN方法不足以解决此问题。在本文中,我们集中于考虑流量特性的流量感知拥塞控制方法如何提高铸件下的吞吐量。需要建立我们的长期目标,该目标基于流量特征提供不同的网络级别服务。我们提出了一种基于交换机的方法,该方法可识别目标流并使用显式拥塞通知(ECN)提供不同的拥塞控制。尽管我们的方法使用ECN,但它不需要对端节点上的TCP堆栈或目标专用队列进行任何更改。在我们的实验中,我们专注于流量的吞吐量,并选择大象流量作为目标,因为它们的流量比老鼠流量更敏感。我们将我们的方法的实验结果与标准TCP,ECN和专门的大象队列进行了比较。与我们在铸造场景中的上述方法相比,我们的方法将大象流量的总吞吐量提高了1.7倍至5.1倍,将大象流量的良好性能提高了1.9倍至5.4倍。

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