预防性地减少黑天鹅事件对工作表现的影响(愿景文件)

A. Bondi
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引用次数: 0

摘要

最近的web过载事件表明,需要在负载下测试系统性能,这些负载反映了使用模式的极端变化,远远超出了正常的预期范围。这些负载有时是预期的,甚至是计划好的。预期负荷的例子包括:当流行摇滚音乐会门票开始销售时,当提交人口普查表格的截止日期临近时,当绝望的人群在大流行期间试图报名接种疫苗时,交易或请求提交量激增。意外负荷的例子包括,随着covid - 19封锁的开始,美国许多州的失业救济申请激增,以及在2019年英国脱欧公投前,英国议会请愿网站上签署人的地理分布被反复询问。我们将考虑这些示例的软件性能分支以及它们提出的架构问题。我们将讨论如何使用建模和性能测试以及评估体系结构和设计的已知流程来识别可能由负载突然增加或负载模式更改引起的潜在性能问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Preventively Minimizing the Performance Impact of Black Swans (Vision Paper)
Recent episodes of web overloads suggest the need to test system performance under loads that reflect extreme variations in usage patterns well outside normal anticipated ranges. These loads are sometimes expected or even scheduled. Examples of expected loads include surges in transactions or request submission when popular rock concert tickets go on sale, when the deadline for the submission of census forms approaches, and when a desperate population is attempting to sign up for a vaccination during a pandemic. Examples of unexpected loads are the surge in unemployment benefit applications in many US states with the onset of COVID19 lockdowns and repeated queries about the geographic distribution of signatories on the U.K. Parliament's petition website prior to a Brexit vote in 2019. We will consider software performance ramifications of these examples and the architectural questions they raise. We discuss how modeling and performance testing and known processes for evaluating architectures and designs can be used to identify potential performance issues that would be caused by sudden increases in load or changes in load patterns.
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