Changeset 712 for papers/SMPaT-2012_DCWoRMS/elsarticle-DCWoRMS.tex
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papers/SMPaT-2012_DCWoRMS/elsarticle-DCWoRMS.tex
r699 r712 116 116 %% Text of abstract 117 117 118 In the recent years, the issue of computing infrastructures energy-efficiency has gained great attention. In this paper we present a Data Center Workload and Resource Management Simulator (DCWoRMS) which enables modeling and simulations of computing infrastructures to estimate their performance, energy consumption, and energy-efficiency metrics for diverse workloads and management policies. 119 We discuss methods of power usage modeling available in the simulator. To this end, we compare results of simulations to measurements from the real servers. 120 To demonstrate DCWoRMS capabilities we evaluate impact of several resource management policies on overall energy-efficiency of specific workloads on heterogeneous resources. 121 118 122 \end{abstract} 119 123 … … 136 140 \section{Introduction} 137 141 138 TODO - Introduction 139 140 ... 142 Data centers are responsible for around 2\% of the global energy consumption making it equal to the demand of aviation industry \cite{koomey}. In many current data centers the actual IT equipment uses only half of the total energy (e.g. 45-62\% in \cite{hintemann}) while most of the remaining part is required for cooling and air movement resulting in poor Power Usage Effectiveness (PUE) \cite{pue} values. Large energy needs and significant $CO_2$ emissions caused that issues related to cooling, heat transfer, and IT infrastructure location are more and more carefully studied during planning and operation of data centers. 143 Even if we take ecological and footprint issues aside, the amount of consumed energy can impose strict limits on data centers. First of all, energy bills may reach millions euros making computations expensive. 144 Furthermore, available power supply is usually limited so it also may reduce data center development capabilities, especially looking at challenges related to exascale computing breakthrough foreseen within this decade. 145 146 For these reasons many efforts were undertaken to measure and study energy efficiency of data centers. Some of projects focused on data center monitoring and management \cite{games}\cite{fit4green} whereas others on prototypes of low power computing infrastructures \cite{montblanc}. Studies included aspects such as energy efficiency of networks \cite{networks} and service level agreements related to energy consumption \cite{sla}. Additionally, vendors offer a wide spectrum of energy efficient solutions for computing and cooling \cite{sgi}\cite{colt}\cite{ecocooling}. However, a variety of solutions and configuration options can be applied planning new or upgrading existing data centers. 147 In order to optimize a design or configuration of data center we need a thorough study using appropriate metrics and tools evaluating how much computation or data processing can be done within given power and energy budget and how it affects temperatures, heat transfers, and airflows within data center. 148 Therefore, there is a need for simulation tools and models that approach the problem from a perspective of end users and take into account all the factors that are critical to understanding and improving the energy efficiency of data centers, in particular, hardware characteristics, applications, management policies, and cooling. 149 These tools should support data center designers and operators by answering questions how specific application types, levels of load, hardware specifications, physical arrangements, cooling technology, etc. impact overall data center energy efficiency. 150 151 In this paper we present a Data Center Workload and Resource Management Simulator (DCWoRMS) which enables modeling and simulations of computing infrastructures to estimate their performance, energy consumption, and energy-efficiency metrics for diverse workloads and management policies. 152 We discuss methods of power usage modeling available in the simulator. To this end, we compare results of simulations to measurements from the real servers. 153 To demonstrate DCWoRMS capabilities we evaluate impact of several resource management policies on overall energy-efficiency of specific workloads on heterogeneous resources. 154 155 TODO - update 141 156 142 157 The remaining part of this paper is organized as follows. In Section~2 we give a brief overview of the current state of the art concerning modeling and simulation of distributed systems, like Grids and Clouds, in terms of energy efficiency. Section~3 discusses the main features of DCWoRMS. In particular, it introduces our approach to workload and resource management, presents the concept of energy efficiency modeling and explains how to incorporate a specific application performance model into simulations. Section~4 discusses energy models adopted within the DCWoRMS. In Section~5 we present some experiments that were performed using DCWoRMS utilizing real testbed nodes models to show varius types of popular resource and scheduling technics allowing to decrease the total power consumption of the execution of a set of tasks. Section~6 focuses on the role of DCWoRMS within the CoolEmAll project. Final conclusions and directions for future work are given in Section~7. … … 507 522 % \bibitem{} 508 523 524 \bibitem[15]{fit4green} [15] A. Berl, E. Gelenbe, M. di Girolamo, G. Giuliani, H. de Meer, M.-Q. Dang, K. Pentikousis. Energy-Efficient Cloud Computing. The Computer Journal, 53(7), 2010. 525 509 526 \bibitem{CloudSim} Rodrigo N. Calheiros, Rajiv Ranjan, Anton Beloglazov, Cesar A. F. De Rose, and Rajkumar Buyya, CloudSim: A Toolkit for Modeling and Simulation of Cloud Computing Environments and Evaluation of Resource Provisioning Algorithms, Software: Practice and Experience (SPE), Volume 41, Number 1, Pages: 23-50, ISSN: 0038-0644, Wiley Press, New York, USA, January, 2011. 510 527 … … 513 530 \bibitem{DCD_Romonet} http://www.datacenterdynamics.com/blogs/ian-bitterlin/it-does-more-it-says-tin\%E2\%80\%A6 514 531 532 \bibitem[16]{networks} [16] E. Gelenbe and C. Morfopoulou. Power savings in packet networks via optimised routing. Mobile Networks and Applications, 17(1):152â159, February 2012. 533 515 534 \bibitem{Ghislain} Ghislain Landry Tsafack Chetsa, Laurent LefÚvre, Jean-Marc Pierson, Patricia Stolf, Georges Da Costa. âDNA-inspired Scheme for Building the Energy Profile of HPC Systemsâ. In: International Workshop on Energy-Efficient Data Centres, Madrid, Springer, 2012 516 535 536 \bibitem[6]{games} [6] A. Kipp, L. Schubert, J. Liu, T. Jiang, W. Christmann, M. vor dem Berge (2011). Energy Consumption Optimisation in HPC Service Centres, Proceedings of the Second International Conference on Parallel, Distributed, Grid and Cloud Computing for Engineering, B.H.V. Topping and P. IvaÌnyi, (Editors), Civil-Comp Press, Stirlingshire, Scotland 537 517 538 \bibitem{GreenCloud} D. Kliazovich, P. Bouvry, and S. U. Khan, A Packet-level Simulator of Energy- aware Cloud Computing Data Centers, Journal of Supercomputing, vol. 62, no. 3, pp. 1263-1283, 2012 518 539 540 \bibitem[17]{sla} [17] S. Klingert, T. Schulze, C. Bunse. GreenSLAs for the Energy-efficient Management of Data Centres. 2nd International Conference on Energy-Efficient Computing and Networking (e-Energy), 2011. 541 519 542 \bibitem{GSSIM} S. Bak, M. Krystek, K. Kurowski, A. Oleksiak, W. Piatek and J. Weglarz, GSSIM - a Tool for Distributed Computing Experiments, Scientific Programming Journal, vol. 19, no. 4, pp. 231-251, 2011. 520 543 521 544 \bibitem{GSSIM_Energy} M. Krystek, K. Kurowski, A. Oleksiak, W. Piatek, Energy-aware simulations with GSSIM. Proceedings of the COST Action IC0804 on Energy Efficiency in Large Scale Distributed Systems, 2010, pp. 55-58. 522 545 546 \bibitem[2]{hintemann} [2] Hintemann, R., Fichter, K. (2010). Materialbestand der Rechenzentren in Deutschland, Eine Bestandsaufnahme zur Ermittlung von Ressourcen- und Energieeinsatz, UBA, Texte, 55/2010 547 548 \bibitem[8]{koomey} 549 [8] Koomey, Jonathan. 2008. "Worldwide electricity used in data centers." Environmental Research Letters. vol. 3, no. 034008. September 23 550 551 552 553 % web links 554 523 555 \bibitem{GWF} http://gwa.ewi.tudelft.nl/ 524 556 … … 530 562 531 563 564 \bibitem[19]{colt} [19] Colt Modular Data Centre, http://www.colt.net/uk/en/products-services/data-centre-services/modular-data-centre-en.htm 565 566 \bibitem[20]{coolemall} [20] The CoolEmAll project website, http://coolemall.eu 567 568 \bibitem[21]{ecocooling} [21] EcoCooling, http://www.ecocooling.org 569 570 \bibitem[22]{montblanc} [22] The MontBlanc project website, http://www.montblanc-project.eu/ 571 572 \bibitem[23]{pue} [23] The Green Grid Data Center Power Efficiency Metrics: PUE and DCiE, http://www.thegreengrid.org/Global/Content/white-papers/The-Green-Grid-Data-Center-Power-Efficiency-Metrics-PUE-and-DCiE 573 574 \bibitem[24]{sgi} [24] SGI ICE Cube Air, http://www.sgi.com/products/data\_center/ice\_cube\_air/ 575 576 532 577 \end{thebibliography} 533 578
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