大规模业务的潜在故障检测

Moshe Gabel, A. Schuster, Ran Gilad-Bachrach, N. Bjørner
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引用次数: 23

摘要

意外的机器故障及其导致的服务中断和数据丢失给数据中心管理带来了挑战。现有的故障检测技术依赖于领域知识、宝贵的(通常不可用的)训练数据、文本控制台日志或侵入式服务修改。我们假设许多机器故障不是突然变化的结果,而是长时间性能下降的结果。这在我们的实验中得到了证实,在我们的实验中,超过20%的机器故障都是在这种潜在故障之前发生的。我们提出了一种主动预防故障的方法。我们提出了一个新的框架,统计潜在故障检测仅使用普通机器计数器收集作为标准做法。我们在此框架内演示了三种检测方法。派生测试是独立于领域和无监督的,既不需要背景信息也不需要调优,并且可以扩展到非常大的服务。我们对测试的假阳性率提供了强有力的保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latent fault detection in large scale services
Unexpected machine failures, with their resulting service outages and data loss, pose challenges to datacenter management. Existing failure detection techniques rely on domain knowledge, precious (often unavailable) training data, textual console logs, or intrusive service modifications. We hypothesize that many machine failures are not a result of abrupt changes but rather a result of a long period of degraded performance. This is confirmed in our experiments, in which over 20% of machine failures were preceded by such latent faults. We propose a proactive approach for failure prevention. We present a novel framework for statistical latent fault detection using only ordinary machine counters collected as standard practice. We demonstrate three detection methods within this framework. Derived tests are domain-independent and unsupervised, require neither background information nor tuning, and scale to very large services. We prove strong guarantees on the false positive rates of our tests.
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