FENXI:边缘的深度学习流量分析

Massimo Gallo, A. Finamore, G. Simon, D. Rossi
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引用次数: 4

摘要

在ISP网络的第一个汇聚点进行实时流量分析可以实现复杂的流量工程策略,但受到稀缺处理能力的限制,特别是基于深度学习(DL)的分析。专用硬件加速器的引入为增强边缘网络设备的处理能力提供了机会。然而,没有数据包处理管道能够在不干扰网络操作的情况下,在数据平面上提供基于dl的分析功能。在本文中,我们介绍了FENXI,一个利用张量处理单元(TPU)运行复杂分析的系统。FENXI的设计将转发和流量分析解耦,它们在不同的粒度(即数据包和流级别)上运行。我们设想了两个独立的模块,它们异步通信以交换网络数据和分析结果,并设计了数据结构以在不影响每包处理的情况下提取流量统计数据。我们在通用服务器上对FENXI进行了原型设计和评估,同时考虑了对抗性和现实网络条件。我们的分析表明,FENXI仅需要有限的资源就可以维持100 Gbps的线路速率流量处理,同时还可以动态适应可变的网络条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FENXI: Deep-learning Traffic Analytics at the edge
Live traffic analysis at the first aggregation point in the ISP network enables the implementation of complex traffic engineering policies but is limited by the scarce processing capabilities, especially for Deep Learning (DL) based analytics. The introduction of specialized hardware accelerators, offers the opportunity to enhance processing capabilities of network devices at the edge. Yet, no packet processing pipeline is capable of offering DL-based analysis capabilities in the data-plane, without interfering with network operations. In this paper, we present FENXI, a system to run complex analytics by leveraging Tensor Processing Unit (TPU). The design of FENXI decouples forwarding and traffic analytics which operates at different granularities i.e., packet and flow levels. We conceive two independent modules that asynchronously communicate to exchange network data and analytics results, and design data structures to extract flow level statistics without impacting per-packet processing. We prototyped and evaluated FENXI on general-purpose servers considering both adversarial and realistic network conditions. Our analysis shows that FENXI can sustain 100 Gbps line rate traffic processing requiring only limited resources, while also dynamically adapting to variable network conditions.
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