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Balanced Energy-Aware and Fault-Tolerant Data Center Scheduling.

Muhammad ShaukatWaleed AlasmaryEisa AlanaziJunaid ShujaSajjad A MadaniChing-Hsien Hsu
Published in: Sensors (Basel, Switzerland) (2022)
Fault tolerance, performance, and throughput have been major areas of research and development since the evolution of large-scale networks. Internet-based applications are rapidly growing, including large-scale computations, search engines, high-definition video streaming, e-commerce, and video on demand. In recent years, energy efficiency and fault tolerance have gained significant importance in data center networks and various studies directed the attention towards green computing. Data centers consume a huge amount of energy and various architectures and techniques have been proposed to improve the energy efficiency of data centers. However, there is a tradeoff between energy efficiency and fault tolerance. The objective of this study is to highlight a better tradeoff between the two extremes: ( a ) high energy efficiency and ( b ) ensuring high availability through fault tolerance and redundancy. The main objective of the proposed Energy-Aware Fault-Tolerant (EAFT) approach is to keep one level of redundancy for fault tolerance while scheduling resources for energy efficiency. The resultant energy-efficient data center network provides availability as well as fault tolerance at reduced operating cost. The main contributions of this article are: ( a ) we propose an Energy-Aware Fault-Tolerant (EAFT) data center network scheduler; ( b ) we compare EAFT with energy efficient resource scheduling techniques to provide analysis of parameters such as, workload distribution, average task per servers, and energy consumption; and ( c ) we highlight effects of energy efficiency techniques on the network performance of the data center.
Keyphrases
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