An Intelligent and Programmable Data Plane for QoS-Aware Packet Processing

Muhammad Saqib;Halime Elbiaze;Roch H. Glitho;Yacine Ghamri-Doudane
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Abstract

One of the main features of data plane programmability is that it allows the easy deployment of a programmable network traffic management framework. One can build an early-stage Internet traffic classifier to facilitate effective Quality of Service (QoS) provisioning. However, maintaining accuracy and efficiency (i.e., processing delay/pipeline latency) in early-stage traffic classification is challenging due to memory and operational constraints in the network data plane. Additionally, deploying network-wide flow-specific rules for QoS leads to significant memory usage and overheads. To address these challenges, we propose new architectural components encompassing efficient processing logic into the programmable traffic management framework. In particular, we propose a single feature-based traffic classification algorithm and a stateless QoS-aware packet scheduling mechanism. Our approach first focuses on maintaining accuracy and processing efficiency in early-stage traffic classification by leveraging a single input feature - sequential packet size information. We then use the classifier to embed the Service Level Objective (SLO) into the header of the packets. Carrying SLOs inside the packet allows QoS-aware packet processing through admission control-enabled priority queuing. The results show that most flows are properly classified with the first four packets. Furthermore, using the SLO-enabled admission control mechanism on top of the priority queues enables stateless QoS provisioning. Our approach outperforms the classical and objective-based priority queuing in managing heterogeneous traffic demands by improving network resource utilization.
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面向服务质量感知数据包处理的智能可编程数据平面
数据平面可编程性的主要特点之一是可以轻松部署可编程的网络流量管理框架。我们可以建立一个早期阶段的互联网流量分类器,以促进有效的服务质量(QoS)供应。然而,由于网络数据平面的内存和操作限制,要保持早期流量分类的准确性和效率(即处理延迟/管道延迟)是一项挑战。此外,为 QoS 部署全网流量特定规则会导致大量内存使用和开销。为了应对这些挑战,我们提出了新的架构组件,将高效处理逻辑纳入可编程流量管理框架。特别是,我们提出了一种基于特征的单一流量分类算法和一种无状态 QoS 感知数据包调度机制。我们的方法首先通过利用单一输入特征--连续数据包大小信息--来保持早期流量分类的准确性和处理效率。然后,我们利用分类器将服务级别目标(SLO)嵌入数据包的头部。将 SLO 嵌入数据包后,就可以通过启用了准入控制的优先队列进行 QoS 感知数据包处理。结果表明,大多数流量都能通过前四个数据包正确分类。此外,在优先队列之上使用启用了 SLO 的准入控制机制可实现无状态 QoS 供应。通过提高网络资源利用率,我们的方法在管理异构流量需求方面优于传统的基于目标的优先队列。
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