This paper illustrates the effort to integrate a machine learning-based framework which can predict the remaining time to failure of computing nodes with Hadoop applications. This work is part of a larger effort targeting the development of a cloud-oriented autonomic framework to increase the availability of applications subject to software anomalies, and to jointly improve their performance. The framework uses machine-learning, software rejuvenation, and load distribution techniques to proactively prevent failures. We believe that this work allows to set a possible path towards the definition of best practices for the development of systems to support autonomic management of cloud applications, illustrating what are the issues that should be addressed by the research community. Indeed, given the scale and the complexity of modern computing infrastructures, effective autonomic management approaches of cloud applications are becoming mandatory.

Machine learning-based management of cloud applications in hybrid clouds: a hadoop case study / Avresky Dimiter, R; Pellegrini, Alessandro; DI SANZO, Pierangelo. - STAMPA. - (2017), pp. 114-119. (Intervento presentato al convegno 16th IEEE International Symposium on Network Computing and Applications tenutosi a Cambridge, Massachusetts, USA) [10.1109/NCA.2017.8171352].

Machine learning-based management of cloud applications in hybrid clouds: a hadoop case study

Pellegrini Alessandro
Co-primo
;
Di Sanzo Pierangelo
Ultimo
2017

Abstract

This paper illustrates the effort to integrate a machine learning-based framework which can predict the remaining time to failure of computing nodes with Hadoop applications. This work is part of a larger effort targeting the development of a cloud-oriented autonomic framework to increase the availability of applications subject to software anomalies, and to jointly improve their performance. The framework uses machine-learning, software rejuvenation, and load distribution techniques to proactively prevent failures. We believe that this work allows to set a possible path towards the definition of best practices for the development of systems to support autonomic management of cloud applications, illustrating what are the issues that should be addressed by the research community. Indeed, given the scale and the complexity of modern computing infrastructures, effective autonomic management approaches of cloud applications are becoming mandatory.
2017
16th IEEE International Symposium on Network Computing and Applications
Autonomic systems; availability, system monitoring; cloud; rejuvenation; hadoop
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Machine learning-based management of cloud applications in hybrid clouds: a hadoop case study / Avresky Dimiter, R; Pellegrini, Alessandro; DI SANZO, Pierangelo. - STAMPA. - (2017), pp. 114-119. (Intervento presentato al convegno 16th IEEE International Symposium on Network Computing and Applications tenutosi a Cambridge, Massachusetts, USA) [10.1109/NCA.2017.8171352].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1051456
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