In Web Services designs classical optimization techniques are not applicable. A possible solution to guarantee critical requirements is the use of an autonomic architecture, able to auto- configure and to auto-tune. This study presents MAWeS (MetaPL/HeSSE Autonomic Web Services), a framework whose aim is to support the development of self-optimizing predictive autonomic systems for Web service architectures. It adopts a simulation-based methodology, which allows to predict system performance in different status and load conditions. The predicted results are used for a feedforward control of the system, which self-tunes before the new conditions and the subsequent performance losses are actually observed.
CITATION STYLE
Mancini, E. P., Rak, M., Torella, R., & Villano, U. (2006). Predictive Autonomicity of Web Services in the MAWeS Framework. Journal of Computer Science, 2(6), 513–520. https://doi.org/10.3844/jcssp.2006.513.520
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