Energy Efficient Management and Scheduling of Computational Resources
Mostra/ Apri
Creato da
Sheikhalishahi, Mehdi
Grandinetti, Lucio
Metadata
Mostra tutti i dati dell'itemDescrizione
Formato
/
Dottorato di Ricerca in Ricerca operativa, XXIV Ciclo, a.a. 2012; Information Technology has a big impact on climate change and global warming as
the current and future challenges of the world. In this PhD thesis, we focus on green
computing to address these challenges.
With the advent of new technologies, we need to explore these technologies to
see if they can address green computing. The first stages of this thesis uncover the
flux of technologies and its impact on green landscape. We envision the duality of
green computing with technological trends in other fields of computing such as high
performance computing (HPC) and cloud computing from one hand; and economy,
and business, on the other hand.
In addition, IT’s energy consumption and sustainability impact are expected to increase.
Contemporary technologies are moving towards Intelligent Computation in
order to optimize resource and energy consumption. Intelligent Computations are
done with the techniques and mechanisms of new computing technologies such as infrastructure-adapted-to-applications, virtual machine consolidation, optimization algorithms,
hardware and software co-design, and application profiling to optimize resource
consumption, and pay-as-you-go business model to reduce costs, etc.
In green world, research on minimizing energy and resource consumption through
algorithmic and software techniques such as monitoring, power-aware consolidation,
scheduling, optimization algorithms such as bin packing as well as user/application
profiling and debugging are other aspects of addressing energy efficiency. These facets
of Intelligent Computation constitute the main parts of resource management. In the
second part of this Thesis, we address some aspects of Intelligent Computation as part
of resource management and scheduling.
More specifically, we introduce the problem of resource management more precisely
and describe computing system problems from the resource management point
of view. We explore resource management components. Then, we model resource
contention metric that is one of the main metrics explored in this thesis. We develop
effective energy aware consolidation policies. Finally, we propose a novel autonomic
energy efficient resource management and scheduling algorithm; Università della CalabriaSoggetto
Ricerca operativa; Risorse energetiche
Relazione
MAT/09;