多核支持的高性能安全分析

Feng Cheng, Amir Azodi, David Jaeger, C. Meinel
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引用次数: 1

摘要

系统和应用程序日志以及部署的安全措施的输出(如IDS警报、防火墙日志、扫描报告等)等信息对于管理员或安全操作员在第一时间了解系统的运行状态并在必要时采取措施非常重要。在此背景下,高性能安全分析应运而生,以解决企业大规模it基础设施在运行过程中产生的大量实时信息的快速收集、管理、处理和分析的挑战。作为下一代安全信息和事件管理(SIEM)平台的一个例子,安全分析实验室(SAL)是基于新出现的内存数据管理技术设计和实现的,该技术使得通过一致的中央存储和接口有效地组织和访问不同类型的事件信息成为可能。将来自不同来源的信息关联起来并识别出有意义的信息是另一项具有挑战性的任务,这对于快速判断当前情况并做出决策非常有意义。本文在SAL平台中引入了多核处理技术。各种相关算法,如基于k-means的算法,ROCK和QROCK聚类算法,已经实现并集成在多核支持的SAL架构中。通过实际的实验和分析,证明了应用多核处理技术可以显著提高分析性能。
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Multi-core Supported High Performance Security Analytics
Such information as system and application logs as well as the output from the deployed security measures, e.g., IDS alerts, firewall logs, scanning reports, etc., is important for the administrators or security operators to be aware at first time of the running state of the system and take efforts if necessary. In this context, high performance security analytics is proposed to address the challenges to rapidly gather, manage, process, and analyze the large amount of real-time information generated from the large scale of enterprise IT-Infrastructure while it is being operated. As an example of next generation Security Information and Event Management (SIEM) platform, Security Analytics Lab (SAL) has been designed and implemented based on the newly emerged In-Memory data management technique, which makes it possible to efficiently organize and access different types of event information through a consistent central storage and interface. To correlate the information from different sources and identify the meaningful information is another challenging task, which makes great sense for quickly judging the current situation and making the decision. In this paper, the multi-core processing technique is introduced in the SAL platform. Various correlation algorithms, e.g., k-means based algorithms, ROCK and QROCK clustering algorithms, have been implemented and integrated in the multi-core supported SAL architecture. Practical experiments are conducted and analyzed to proof that the performance of analytics can be significantly improved by applying multi-core processing technique in SAL.
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