An Overview of Cloud Simulation Enhancement Using the Monte-Carlo Method

2018 18th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGRID)(2018)

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摘要
In the cloud computing model, cloud providers invoice clients for resource consumption. Hence, tools helping the client to budget the cost of running their application are of pre-eminent importance. However, the opaque and multi-tenant nature of clouds, make job runtimes both variable and hard to predict. In this paper, we propose an improved simulation framework that takes into account this variability using the Monte-Carlo method. We consider the execution of batch jobs on an actual platform, scheduled using typical heuristics based on the user estimates of tasks' runtimes. We model the observed variability through simple distributions to use as inputs to the Monte-Carlo simulation. We show that, our method can capture over 90% of the empirical observations of total execution times.
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关键词
cloud computing,computer simulation,monte carlo methods
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