Efficient workload management in geographically distributed data centers leveraging autoregressive models
Contributo in Atti di convegno
Data di Pubblicazione:
2016
Abstract:
The opportunity of using Cloud resources on a pay-as-you-go basis and the availability of powerful data centers and
high bandwidth connections are speeding up the success and popularity of Cloud systems, which is making on-demand computing
a common practice for enterprises and scientific communities. The reasons for this success include natural business distribution,
the need for high availability and disaster tolerance, the sheer size of their computational infrastructure, and/or the desire to provide
uniform access times to the infrastructure from widely distributed client sites. Nevertheless, the expansion of large data centers
is resulting in a huge rise of electrical power consumed by hardware facilities and cooling systems. The geographical distribution
of data centers is becoming an opportunity: the variability of electricity prices, environmental conditions and client requests,
both from site to site and with time, makes it possible to intelligently and dynamically (re)distribute the computational workload
and achieve as diverse business goals as: the reduction of costs, energy consumption and carbon emissions, the satisfaction of
performance constraints, the adherence to Service Level Agreement established with users, etc. This paper proposes an approach
that helps to achieve the business goals established by the data center administrators. The workload distribution is driven by a
fitness function, evaluated for each data center, which weighs some key parameters related to business objectives, among which,
the price of electricity, the carbon emission rate, the balance of load among the data centers etc. For example, the energy costs can
be reduced by using a "follow the moon" approach, e.g. by migrating the workload to data centers where the price of electricity
is lower at that time. Our approach uses data about historical usage of the data centers and data about environmental conditions to
predict, with the help of regressive models, the values of the parameters of the fitness function, and then to appropriately tune the
weighs assigned to the parameters in accordance to the business goals. Preliminary experimental results, presented in this paper,
show encouraging benefits.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
data center; autoregressive model; workload management; energy efficiency
Elenco autori:
Altomare, Albino; Mastroianni, Carlo; Cesario, Eugenio
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