Heterogeneous Job Consolidation for Power Aware Scheduling with Quality of Service

Cite this publication

​Heterogeneous Job Consolidation for Power Aware Scheduling with Quality of Service​
Armenta-Cano, F.; Tchernykh, A.; Cortés-Mendoza, J.; Yahyapour, R. ; Drozdov, A. Y.; Bouvry, P. & Kliazovich, D. et al.​ (2015)
​RuSCDays'15 - The Russian Supercomputing Days​, Moscow, Russia.

Documents & Media

License

GRO License GRO License

Details

Authors
Armenta-Cano, Fermín; Tchernykh, Andrei; Cortés-Mendoza, Jorge; Yahyapour, Ramin ; Drozdov, Alexander Yu.; Bouvry, Pascal; Kliazovich, Dzmitry; Avetisyan, Arutyun
Abstract
In this paper, we present an energy optimization model of Cloud computing, and formulate novel energy-aware resource allocation problem that provides energy-efficiency by heterogeneous job consolidation taking into account types of applications. Data centers process heterogeneous workloads that include CPU intensive, disk I/O intensive, memory intensive, network I/O intensive and other types of applications. When one type of applications creates a bottleneck and resource contention either in CPU, disk or network, it may result in degradation of the system performance and increasing energy consumption. We discuss energy characteristics of applications, and how an awareness of their types can help in intelligent allocation strategy to improve energy consumption.
Issue Date
2015
Conference
RuSCDays'15 - The Russian Supercomputing Days
Conference Place
Moscow, Russia
Event start
2015-09-25
Language
English

Reference

Citations