Howdah: Load Profiling via In-Band Flow Classification and P4

Antonino Angi, Alessio Sacco, Flavio Esposito, G. Marchetto, A. Clemm
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Abstract

The challenges of managing datacenter traffic increase with the complexity and variety of new Internet and Web applications. Efficient network management systems are often required to thwart delays and minimize failures. In this regard, it appears helpful to identify in advance the different classes of flows that (co)exist in the network, characterizing them into different types according to the different latency/bandwidth requirements. In this paper, we propose Howdah, a traffic identification and profiling mechanism that uses Machine Learning and a congestion-aware forwarding strategy to offer adaptation to different traffic classes with the support of programmable data-planes. With Howdah, sender and gateway elements inject in-band traffic information obtained using supervised learning. When a switch or a router receives a packet, it exploits such host-based traffic classification to adapt to a desirable traffic profile, for example, balancing the load. We compare our solutions against recent traffic engineering solutions and show the efficacy of cooperation between host traffic classification and P4-based switch forwarding policies, reducing packet transmission time in datacenter scenarios.
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Howdah:基于带内流分类和P4的负载分析
管理数据中心流量的挑战随着新的Internet和Web应用程序的复杂性和多样性而增加。通常需要高效的网络管理系统来阻止延迟和最小化故障。在这方面,提前识别网络中存在的不同类型的流似乎是有帮助的,根据不同的延迟/带宽要求将它们划分为不同的类型。在本文中,我们提出了Howdah,这是一种流量识别和分析机制,它使用机器学习和拥塞感知转发策略,在可编程数据平面的支持下提供对不同流量类别的适应。在Howdah中,发送方和网关元素注入通过监督学习获得的带内流量信息。当交换机或路由器接收到数据包时,它利用这种基于主机的流量分类来适应所需的流量配置文件,例如,平衡负载。我们将我们的解决方案与最近的流量工程解决方案进行了比较,并展示了主机流量分类与基于p4的交换机转发策略之间的协作效果,减少了数据中心场景下的数据包传输时间。
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