利用ELK堆栈分析卫生系统日志文件

D. Uday, G. Mamatha
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引用次数: 5

摘要

随着机器数据的增长,日志记录变得越来越重要。日志记录有助于调查和诊断理想应用程序的执行问题。日志不仅用于发现问题,还用于搜索所需的数据。ELK堆栈缩写为Elasticsearch、Logstash和Kibana,主要以日志为中心。由于大多数日志集中在一个位置,因此它可以从一个位置查看过程流并根据来自各种应用程序的日志查询问题。ELK支持许多日志管理和检查用例,这些用例可以从信息中获得经验。这将发现信息所定义的内容,以及为实现业务需求需要做什么。在目前的情况下,卫生系统的缺陷和系统位置的识别是非常困难的,因此我们提出了一种利用ELK堆栈对卫生系统日志细节进行调查的方法,可以帮助识别现有安全防护上的缺陷,从而为框架提供保证。通过这种方式,它可以从从信息中分离出来的数据中学习,这样它就可以帮助我们跟踪系统中的缺陷,以及需要优先考虑的系统的健康状况。Log数据根据系统优先级和国家进行过滤,因为要识别系统状态和系统位置,这在Kibana仪表板上显示出来。帮助服务工程师在较短的时间内定位系统的缺陷和位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of Health System Log Files using ELK Stack
With the growth of machine data, logging is progressively critical. Logging helps in investigating and diagnosing the issues for the execution of ideal applications. The logs are not only used for discovering issues but also for searching the required data. The ELK stack abbreviated as Elasticsearch, Logstash, and Kibana is mainly centered around the logs. As the majority of logs are centered at one spot so that it can be able to see the procedure stream and query the questions against logs from all kind of applications from one spot. ELK underpins many log the executives and examination use cases that can get experiences from information. This finds what the information is defining all about and what needs to be done for the accomplishment of the business needs. In the current scenario the identification of the defect in the health system and system location is much difficult, So we propose a method to investigation on the log details of the health systems can give the assistance on identifying the defect on the existing safe guards using ELK stack, which in turn gives the assurance to the frameworks, by this it can have a learning from the data that was separated from the information so it can be able to assist us with keeping track of the defects in the system and the health of the system needs to be prioritized. The Log data is filtered based on system priority and country, because to identify the system state and location of the system, and this is visualized on the Kibana dashboard. This helps service engineers to identify the defect and location of system with short period of time.
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