Abstract
AbstractThe energy consumption of large-scale data centers or server clusters is expected to grow significantly in the next couple of years contributing to up to 13% of the worldwide energy demand in 2030. As the involved processing units require a disproportional amount of energy when they are idle, underutilized, or overloaded, balancing the supply of and the demand for computing resources is a key issue to obtain energy-efficient server consolidations. Whereas traditional concepts mostly consider deterministic predictions of the future workloads or only aim at finding approximate solutions, in this article, we propose an exact approach to tackle the problem of assigning jobs with (not necessarily independent) stochastic characteristics to a minimal amount of servers subject to further practically relevant constraints. As a main contribution, the problem under consideration is reformulated as a stochastic bin packing problem with conflicts and modeled by an integer linear program. Finally, this new approach is tested on real-world instances obtained from a Google data center.
Funder
Deutsche Forschungsgemeinschaft
Technische Universität Dresden
Publisher
Springer Science and Business Media LLC
Subject
Discrete Mathematics and Combinatorics,Statistics and Probability,Management Science and Operations Research,Information Systems and Management,Modeling and Simulation
Reference60 articles.
1. Andrae ASG, Edler T (2015) On global electricity usage of communication technology: trends to 2030. Challenges 6(1):117–157
2. Arjona J, Chatzipapas A, Fernandez Anta A, Mancuso V (2014) A measurement-based analysis of the energy consumption of data center servers. In: Proceedings of the 5th international conference on Future energy system (e-Energy ’14), 63–74
3. Aydin N, Muter I, Ilker Birbil S (2020) Multi-objective temporal bin packing problem: An application in cloud computing. Comput Oper Res 121, Article 104959
4. Balakrishnan N, Nevzorov VB (2003) A Primer on Statistical Distributions. John Wiley & Sons, 1st edition
5. Barnett Jr, T, Jain S, Andra U, Khurana T (2018) Cisco Visual Networking Index (VNI) Complete Forecast Update, 2017–2022. APJC Cisco Knowledge Network (CKN) Presentation, (available online:https://www.cisco.com/c/dam/m/en_us/network-intelligence/service-provider/digital-transformation/knowledge-network-webinars/pdfs/1213-business-services-ckn.pdf)
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献