Application of Distributed Graphs for Facilitation of Scalable Botnet Detection and Response

Mangadevi Atti, Manas Kumar Yogi
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Abstract

Botnets pose a significant threat to modern network environments, exploiting compromised devices to carry out malicious activities such as distributed denial-of-service attacks, spam campaigns, and data theft. Traditional centralized detection systems often struggle to handle the scale and complexity of botnet attacks, leading to delays in detection and response. In response to these challenges, this paper explores the application of distributed graphs for facilitating scalable botnet detection and response. Distributed graphs offer a promising approach for modelling and analyzing complex network structures, enabling efficient detection of botnet propagation patterns and anomalous behaviour across distributed computing environments. The paper presents an overview of distributed graph-based botnet detection systems, discussing their architecture, design considerations, and key concepts such as graph partitioning, vertex-centric computation, and message passing in distributed graph algorithms. Case studies illustrate the practical application of distributed graph-based botnet detection in diverse network environments, highlighting success stories, challenges encountered, and lessons learned from deploying distributed graph systems in production cybersecurity operations. Finally, the paper discusses challenges and open research questions in the field of distributed graph-based botnet detection, addressing issues such as graph partitioning strategies, fault tolerance, privacy-preserving techniques, and integration with other security tools. It proposes potential avenues for future research and development in scalable botnet detection using distributed graphs, emphasizing the importance of adaptive threat response, collaboration with industry partners, and continuous improvement in detection algorithms for enhancing cybersecurity resilience against botnet attacks.
应用分布式图谱促进可扩展的僵尸网络检测和响应
僵尸网络对现代网络环境构成了重大威胁,它利用被入侵的设备开展恶意活动,如分布式拒绝服务攻击、垃圾邮件活动和数据盗窃。传统的集中式检测系统往往难以应对僵尸网络攻击的规模和复杂性,导致检测和响应延迟。为了应对这些挑战,本文探讨了分布式图在促进可扩展僵尸网络检测和响应方面的应用。分布式图为复杂网络结构的建模和分析提供了一种前景广阔的方法,可在分布式计算环境中高效检测僵尸网络的传播模式和异常行为。本文概述了基于分布式图的僵尸网络检测系统,讨论了这些系统的架构、设计注意事项以及分布式图算法中的图分割、以顶点为中心的计算和消息传递等关键概念。案例研究说明了基于分布式图的僵尸网络检测在不同网络环境中的实际应用,重点介绍了在生产网络安全行动中部署分布式图系统的成功案例、遇到的挑战和吸取的经验教训。最后,本文讨论了基于分布式图的僵尸网络检测领域的挑战和开放研究问题,涉及图分割策略、容错、隐私保护技术以及与其他安全工具的集成等问题。论文提出了利用分布式图进行可扩展僵尸网络检测的未来研究和开发的潜在途径,强调了自适应威胁响应、与行业伙伴合作以及不断改进检测算法对于提高网络安全抵御僵尸网络攻击能力的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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