In this chapter, we explain how to extract and learn run-time models that a system can use for self-aware performance and resource management in data centers. We abstract from concrete formalisms and identify extraction aspects relevant to performance models. We categorize the learning aspects into: (i) model structure, (ii) model parametrization (estimation and calibration of model parameters), and (iii) model adaptation options (change point detection and run-time reconfiguration). The chapter identifies alternative approaches for the respective model aspects. The type and granularity of each aspect depend on the characteristic of the concrete performance models.
Online Learning of Run-Time Models for Performance and Resource Management in Data Centers
DI MARCO, ANTINISCA;INVERARDI, PAOLA;
2017-01-01
Abstract
In this chapter, we explain how to extract and learn run-time models that a system can use for self-aware performance and resource management in data centers. We abstract from concrete formalisms and identify extraction aspects relevant to performance models. We categorize the learning aspects into: (i) model structure, (ii) model parametrization (estimation and calibration of model parameters), and (iii) model adaptation options (change point detection and run-time reconfiguration). The chapter identifies alternative approaches for the respective model aspects. The type and granularity of each aspect depend on the characteristic of the concrete performance models.Pubblicazioni consigliate
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