区分云环境监测的数据收集

You Meng, Zhongzhi Luan, Zhendong Cheng, D. Qian
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引用次数: 8

摘要

在越来越多的信息处理应用中,数据采用连续数据流的形式,而不是传统的存储数据库。寻求在云环境中提供监控服务的监控系统必须准备好在不影响系统性能的情况下优雅地处理大量数据收集。在本文中,我们证明了通过使用紧急数据的概念,系统可以缩短大多数“紧急”查询的响应时间,同时保证较低的带宽消耗。我们认为监控数据可以被不同地对待。有些数据捕捉到的是关键系统事件,这些数据的到来会显著影响监控的反应速度,我们称之为紧急数据。高速的紧急数据采集有助于系统在遇到致命错误时及时采取行动。另一方面,降低其他人的收集速度可能会占用更多的带宽。在此基础上,提出了几种以减少紧急数据量为核心的紧急数据收集策略,并对其进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differentiating data collection for cloud environment monitoring
In a growing number of information processing applications, data takes the form of continuous data streams rather than traditional stored databases. Monitoring systems that seek to provide monitoring services in cloud environment must be prepared to deal gracefully with huge data collection without compromising system performance. In this paper, we show that by using a concept of urgent data, system can shorten the response time for most `urgent' queries while guarantee lower bandwidth consumption. We argue that monitoring data can be treated differently. Some data capture critical system events, the arrival of these data will significantly influence the monitoring reaction speed, we call them urgent data. High speed urgent data collection would help system to act in real time when facing fatal error. On the other hand, slowing down the collection speed of others may render more bandwidth. Then several urgent data collection strategies that focus on reducing the urgent data volume are also proposed and evaluated to guarantee the efficiency.
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