We propose a novel model, called JCDME, for the allocation of Virtual Elements (VEs), with the goal of minimizing the energy consumption in a Software-Defined Cloud Data Center (SDDC). More in detail, we model the energy consumption by considering the computing costs of the VEs on the physical servers, the costs for migrating VEs across the servers, and the costs for transferring data between VEs. In addition, JCDME introduces a weight parameter to avoid an excessive number of VE migrations. Specifically, we propose three different strategies to solve the JCDME problem with an automatic and adaptive computation of the weight parameter for the VEs migration costs. We then evaluate the considered strategies over a set of scenarios, ranging from a small sized SDDC up to a medium sized SDDC composed of hundreds of VEs and hundreds of servers. Our results demonstrate that JCDME is able to save up to an additional 7% of energy w.r.t. previous energy-aware algorithms, without a substantial increase in the solution complexity.
Canali, C., Chiaraviglio, L., Lancellotti, R., Shojafar, M. (2018). Joint Minimization of the Energy Costs from Computing, Data Transmission, and Migrations in Cloud Data Centers. IEEE TRANSACTIONS ON GREEN COMMUNICATIONS AND NETWORKING, 2(2), 580-595 [10.1109/TGCN.2018.2796613].
Joint Minimization of the Energy Costs from Computing, Data Transmission, and Migrations in Cloud Data Centers
Chiaraviglio, Luca;
2018-01-01
Abstract
We propose a novel model, called JCDME, for the allocation of Virtual Elements (VEs), with the goal of minimizing the energy consumption in a Software-Defined Cloud Data Center (SDDC). More in detail, we model the energy consumption by considering the computing costs of the VEs on the physical servers, the costs for migrating VEs across the servers, and the costs for transferring data between VEs. In addition, JCDME introduces a weight parameter to avoid an excessive number of VE migrations. Specifically, we propose three different strategies to solve the JCDME problem with an automatic and adaptive computation of the weight parameter for the VEs migration costs. We then evaluate the considered strategies over a set of scenarios, ranging from a small sized SDDC up to a medium sized SDDC composed of hundreds of VEs and hundreds of servers. Our results demonstrate that JCDME is able to save up to an additional 7% of energy w.r.t. previous energy-aware algorithms, without a substantial increase in the solution complexity.File | Dimensione | Formato | |
---|---|---|---|
tgcn_final.pdf
solo utenti autorizzati
Licenza:
Copyright dell'editore
Dimensione
839.57 kB
Formato
Adobe PDF
|
839.57 kB | Adobe PDF | Visualizza/Apri Richiedi una copia |
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.