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Rethinking Packet Classification for Global Network View of Software-Defined Networking

机译:重新定义软件定义网络的全局网络视图的数据包分类

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In software-defined networking, applications are allowed to access a global view of the network so as to provide sophisticated functionalities, such as quality-oriented service delivery, automatic fault localization, and network verification. All of these functionalities commonly rely on a well-studied technology, packet classification. Unlike the conventional classification problem to search for the action taken at a single switch, the global network view requires to identify the network-wide behavior of the packet, which is defined as a combination of switch actions. Conventional classification methods, however, fail to well support network-wide behaviors, since the search space is complicatedly partitioned due to the combinations. This paper proposes a novel packet classification method that efficiently supports network-wide packet behaviors. Our method utilizes a compressed data structure named the multi-valued decision diagram, allowing it to manipulate the complex search space with several algorithms. Through detailed analysis, we optimize the classification performance as well as the construction of decision diagrams. Experiments with real network datasets show that our method identifies the packet behavior at 20.1 Mpps on a single CPU core with only 8.4 MB memory, by contrast, conventional methods failed to work even with 16 GB memory. We believe that our method is essential for realizing advanced applications that can fully leverage the potential of software defined networking.
机译:在软件定义的网络中,允许应用程序访问网络的全局视图,以便提供复杂的功能,例如面向质量的服务交付,自动故障定位和网络验证。所有这些功能通常都依赖于经过深入研究的技术,即数据包分类。与传统的分类问题来搜索在单个交换机上采取的动作不同,全局网络视图需要标识数据包的网络范围内的行为,该行为被定义为交换机动作的组合。然而,常规的分类方法不能很好地支持网络范围的行为,因为由于这些组合,搜索空间被复杂地划分了。本文提出了一种新颖的数据包分类方法,该方法可以有效地支持网络范围的数据包行为。我们的方法利用一种称为多值决策图的压缩数据结构,从而使其可以使用多种算法来操纵复杂的搜索空间。通过详细分析,我们优化了分类性能以及决策图的构建。实际网络数据集的实验表明,我们的方法可以在只有8.4 MB内存的单个CPU内核上以20.1 Mpps的速度识别数据包行为,相比之下,常规方法甚至在16 GB内存下也无法正常工作。我们认为,我们的方法对于实现可以充分利用软件定义网络潜力的高级应用程序至关重要。

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