Title :
Analysis of a Self-Organizing Algorithm for Energy Saving in Data Centers
Author :
Mastroianni, Carlo ; Meo, Michela ; Papuzzo, Giuseppe
Author_Institution :
eco4cloud srl, ICAR, Rende, Italy
Abstract :
The Cloud computing paradigm allows users to satisfy their increasing need for on-demand and remote computational services. These services are provided by data centers that often consume a huge amount of electrical power. Recently the ecoCloud algorithm has been proposed as a solution for saving energy by consolidating Virtual Machines on as few servers as possible, so as to hibernate the remaining servers and save energy. The ecoCloud approach founds on probabilistic processes: mapping and migration of VMs are driven by Bernoulli trials whose success probability depends on the utilization of single servers. These processes are self-organizing and decentralized, which makes them particularly efficient in large data centers. While in previous work the performance evaluation of ecoCloud was based on artificial traces, in this paper, a mathematical analysis is presented along with simulations fed with logs of real VMs. Results show that efficiency is very close to the theoretical minimum and comparable to that of one of the best centralized algorithms devised so far; in addition, ecoCloud notably reduces the frequency of events, such as VM migrations and server switches, that can deteriorate the quality of service.
Keywords :
cloud computing; computer centres; mathematical analysis; probability; virtual machines; Bernoulli trials; cloud computing paradigm; data centers; ecoCloud algorithm; ecoCloud approach; energy saving; mathematical analysis; probabilistic processes; remote computational services; self-organizing algorithm; success probability; virtual machines; Analytical models; Availability; Mathematical model; Probabilistic logic; Quality of service; Servers; Virtual machining;
Conference_Titel :
Parallel and Distributed Processing Symposium Workshops & PhD Forum (IPDPSW), 2013 IEEE 27th International
Conference_Location :
Cambridge, MA
Print_ISBN :
978-0-7695-4979-8
DOI :
10.1109/IPDPSW.2013.184