A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption

We present a tool to study the trade-off between energy consumption and performance evaluation. The tool uses real traffic traces to model arrivals, and it allows to consider general discrete arrival processes. Some servers are switched on (resp. off) if the monitored QoS becomes less (resp. more) t...

Full description

Bibliographic Details
Main Authors: Marziyeh Bayati, Mohammed Dahmoune, Jean-Michel Fourneau, Nihal Pekergin, Dimitrios Vekris
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2016-12-01
Series:EAI Endorsed Transactions on Energy Web
Subjects:
Online Access:http://eudl.eu/doi/10.4108/eai.14-12-2015.2262652
id doaj-c829f5f07ae6484fa9f0cf6c3cf68085
record_format Article
spelling doaj-c829f5f07ae6484fa9f0cf6c3cf680852020-11-25T01:01:08ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on Energy Web2032-944X2016-12-013101610.4108/eai.14-12-2015.2262652A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumptionMarziyeh Bayati0Mohammed Dahmoune1Jean-Michel Fourneau2Nihal Pekergin3Dimitrios Vekris4LACL, Univ. CreteilLACL, Univ. CreteilDAVID, Univ. Versailles; jmf@prism.uvsq.frLACL, Univ. CreteilDAVID, Univ. VersaillesWe present a tool to study the trade-off between energy consumption and performance evaluation. The tool uses real traffic traces to model arrivals, and it allows to consider general discrete arrival processes. Some servers are switched on (resp. off) if the monitored QoS becomes less (resp. more) than the { up} (resp. { down}) threshold. A set of threshold couples and the cost function taking into account both the performance measure and the energy consumption are provided by the user. The tool determines the best one for this cost function among the analyzed scenarios. Our method is numerically based but it takes into account some stochastic properties of the model to speed up the computation.http://eudl.eu/doi/10.4108/eai.14-12-2015.2262652queuesenergy savingdiscrete stochastic processnumerical analysisdata center
collection DOAJ
language English
format Article
sources DOAJ
author Marziyeh Bayati
Mohammed Dahmoune
Jean-Michel Fourneau
Nihal Pekergin
Dimitrios Vekris
spellingShingle Marziyeh Bayati
Mohammed Dahmoune
Jean-Michel Fourneau
Nihal Pekergin
Dimitrios Vekris
A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
EAI Endorsed Transactions on Energy Web
queues
energy saving
discrete stochastic process
numerical analysis
data center
author_facet Marziyeh Bayati
Mohammed Dahmoune
Jean-Michel Fourneau
Nihal Pekergin
Dimitrios Vekris
author_sort Marziyeh Bayati
title A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
title_short A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
title_full A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
title_fullStr A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
title_full_unstemmed A tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
title_sort tool based on traffic traces and stochastic monotonicity to analyze data centers and their energy consumption
publisher European Alliance for Innovation (EAI)
series EAI Endorsed Transactions on Energy Web
issn 2032-944X
publishDate 2016-12-01
description We present a tool to study the trade-off between energy consumption and performance evaluation. The tool uses real traffic traces to model arrivals, and it allows to consider general discrete arrival processes. Some servers are switched on (resp. off) if the monitored QoS becomes less (resp. more) than the { up} (resp. { down}) threshold. A set of threshold couples and the cost function taking into account both the performance measure and the energy consumption are provided by the user. The tool determines the best one for this cost function among the analyzed scenarios. Our method is numerically based but it takes into account some stochastic properties of the model to speed up the computation.
topic queues
energy saving
discrete stochastic process
numerical analysis
data center
url http://eudl.eu/doi/10.4108/eai.14-12-2015.2262652
work_keys_str_mv AT marziyehbayati atoolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT mohammeddahmoune atoolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT jeanmichelfourneau atoolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT nihalpekergin atoolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT dimitriosvekris atoolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT marziyehbayati toolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT mohammeddahmoune toolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT jeanmichelfourneau toolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT nihalpekergin toolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
AT dimitriosvekris toolbasedontraffictracesandstochasticmonotonicitytoanalyzedatacentersandtheirenergyconsumption
_version_ 1725210657142341632