企业云中异构监控数据的事件响应协调分析

Uttam Thakore, H. Ramasamy, W. Sanders
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引用次数: 0

摘要

在事件分析和响应期间,企业云管理员希望尽可能多地使用其生成的监视器数据。然而,现实情况是,决策通常是由实际可用于自动处理监视器数据的工具决定的,而不是由对事件响应的数据相关性的理解决定的。处理各种云监视器所需的大量手工工作和领域专业知识意味着许多监视器数据仍未得到检查。我们提出了一个简化事件响应数据分析复杂性的框架。我们的框架支持对度量(数值)数据和日志(半结构化、文本)数据进行协调分析,并揭示这些数据中的显著特征。作为框架的基础,我们根据分析从实验性平台即服务(PaaS)云(EPC)的所有级别收集的日志和指标所获得的见解,为监视器数据中的字段定义了分类。使用该分类法,我们提出了一种跨异构监视器进行半自动特征提取和发现的方法。然后,我们描述了一种特征聚类方法,以促进数据的有效分析,并去除冗余和无信息的特征。我们讨论了EPC中事件响应框架的应用,包括根本原因分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coordinated Analysis of Heterogeneous Monitor Data in Enterprise Clouds for Incident Response
During incident analysis and response, enterprise cloud administrators want to use as much of their generated monitor data as possible. However, the reality is that decisions are often dictated by the tools actually available to automatically process the monitor data, rather than by an understanding of the relevance of the data for incident response. The significant manual effort and domain expertise required to process diverse cloud monitors means that much monitor data remain unexamined. We propose a framework for simplifying the complexity of data analysis for incident response. Our framework enables coordinated analysis of both metric (numerical) data and log (semi-structured, textual) data and exposes salient features within those data. As a foundation for the framework, we define a taxonomy for fields within monitor data based on insights gained from analyzing logs and metrics collected from all levels of an experimental platform-as-a-service (PaaS) cloud (EPC). Using the taxonomy, we lay out a method for semi-automated feature extraction and discovery across heterogeneous monitors. We then describe a method for feature clustering to promote effective analysis of the data, and to remove redundant and uninformative features. We discuss the application of our framework for incident response within the EPC, including root cause analysis.
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