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MDPI, Electronics, 4(5), p. 90

DOI: 10.3390/electronics5040090

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Characterizing Energy per Job in Cloud Applications

Journal article published in 2016 by Thi Thao Nguyen Ho, Marco Gribaudo, Barbara Pernici ORCID
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Energy efficiency is a major research focus in sustainable development and is becoming even more critical in information technology (IT) with the introduction of new technologies, such as cloud computing and big data, that attract more business users and generate more data to be processed. While many proposals have been presented to optimize power consumption at a system level, the increasing heterogeneity of current workloads requires a finer analysis in the application level to enable adaptive behaviors and in order to reduce the global energy usage. In this work, we focus on batch applications running on virtual machines in the context of data centers. We analyze the application characteristics, model their energy consumption and quantify the energy per job. The analysis focuses on evaluating the efficiency of applications in terms of performance and energy consumed per job, in particular when shared resources are used and the hosts on which the virtual machines are running are heterogeneous in terms of energy profiles, with the aim of identifying the best combinations in the use of resources.