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arxiv: 1406.3156 · v1 · pith:QP7CL7LEnew · submitted 2014-06-12 · 💻 cs.NE · cs.DC· cs.NI· cs.PF· cs.SY

A hybrid neuro--wavelet predictor for QoS control and stability

classification 💻 cs.NE cs.DCcs.NIcs.PFcs.SY
keywords requestsamountuserdataemphfutureobservedprovision
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For distributed systems to properly react to peaks of requests, their adaptation activities would benefit from the estimation of the amount of requests. This paper proposes a solution to produce a short-term forecast based on data characterising user behaviour of online services. We use \emph{wavelet analysis}, providing compression and denoising on the observed time series of the amount of past user requests; and a \emph{recurrent neural network} trained with observed data and designed so as to provide well-timed estimations of future requests. The said ensemble has the ability to predict the amount of future user requests with a root mean squared error below 0.06\%. Thanks to prediction, advance resource provision can be performed for the duration of a request peak and for just the right amount of resources, hence avoiding over-provisioning and associated costs. Moreover, reliable provision lets users enjoy a level of availability of services unaffected by load variations.

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