Real-time resource prediction engine for cloud management.

IM(2017)

引用 23|浏览48
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摘要
Predicting resource requirements for cloud services is critical for dimensioning, anomaly detection and service assurance. We demonstrate a system for real-time estimation of the needed amount of infrastructure resources, such as CPU and memory, for a given service. Statistical learning methods on server statistics and load parameters of the service are used for learning a resource prediction model. The model can be used as a guideline for service deployment and for real-time identification of resource bottlenecks.
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关键词
real-time resource prediction engine,cloud management,resource requirement prediction,cloud services,dimensioning,anomaly detection,service assurance,CPU,memory,statistical learning methods,server statistics,load parameters,service deployment,real-time resource bottleneck identification
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