实现自进化速率限制器的自主弹性策略

Azman Ali, D. Hutchison, P. Angelov, Paul Smith
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引用次数: 1

摘要

针对网络基础设施的分布式拒绝服务攻击是网络服务提供商面临的主要挑战之一。尽管最近低容量应用级攻击有所增加,但基于容量的DDoS攻击仍然占主导地位,最近观察到的峰值流量速率为80Gbps。这促使我们需要更有效的方法来处理这些问题。与此同时,服务提供商正在努力获得合适的技术、资源和专业知识,以提供更有弹性和更可靠的服务。帮助解决这个问题的解决方案之一是采用自主弹性策略,系统地协调与弹性相关的活动,例如检测和减轻攻击。在本文中,我们研究了一种自主流量限速器的实现——一种可用于缓解DDoS攻击的功能——它利用AnYa算法,一种自主学习系统(ALS)算法,提供了对支持自主弹性策略至关重要的高级功能。这些特性包括自构建和对在线学习的支持。在我们的研究中,我们通过实验展示了如何自主地实现补救和恢复过程,以响应操作策略的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an autonomous resilience strategy the implementation of a self evolving rate limiter
Distributed Denial of Service (DDoS) attacks on network infrastructure are one of the major challenges facing network service providers. Despite the recent rise of low-volume application-level attacks, volume-based DDoS attacks still dominate, with peak traffic rates of 80Gbps being observed recently. This prompts the need for more efficient ways to deal with them. Meanwhile, service providers are struggling to acquire the right technology, resources and expertise to offer more resilient and reliable services. One of the solutions to help address this issue is to adopt an autonomous resilience strategy that systematically coordinates resilience related activities such as detecting and mitigating attacks. In this paper, we study an implementation of an autonomous traffic rate limiter - a function that can be used to mitigate DDoS attacks - that capitalises on the AnYa algorithm, an autonomous learning systems (ALS) algorithm that provides advanced features that are crucial to support an autonomous resilience strategy. These features include self-structuring and support for online learning. In our study, we experimentally show how remediation and recovery processes can be realized autonomously, in response to changes in the operational policy.
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