2022
DOI: 10.3311/ppee.17671
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Extreme Value Analysis for Time-variable Mixed Workload

Abstract: Proper timeliness is vital for a lot of real-world computing systems. Understanding the phenomena of extreme workloads is essential because unhandled, extreme workloads could cause violation of timeliness requirements, service degradation, and even downtime. Extremity can have multiple roots: (1) service requests can naturally produce extreme workloads; (2) bursts could randomly occur on a probabilistic basis in case of a mixed workload in multiservice systems; (3) workload spikes typically happen in deadline … Show more

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“…One of the primary reasons for the adoption of Weibull and other extreme value distributions is their ability to model the occurrence of extreme events, such as production spikes or declines. These distributions have tail properties that allow for the estimation of extreme quantiles, enabling analysts to assess the likelihood of rare events and plan for potential risks associated with them [36].…”
Section: Introductionmentioning
confidence: 99%
“…One of the primary reasons for the adoption of Weibull and other extreme value distributions is their ability to model the occurrence of extreme events, such as production spikes or declines. These distributions have tail properties that allow for the estimation of extreme quantiles, enabling analysts to assess the likelihood of rare events and plan for potential risks associated with them [36].…”
Section: Introductionmentioning
confidence: 99%