Algorithms for Right-sizing Heterogeneous Data Centers

Author:

Albers Susanne1ORCID,Quedenfeld Jens1ORCID

Affiliation:

1. Technical University of Munich, Germany

Abstract

Power consumption is a dominant and still growing cost factor in data centers. In time periods with low load, the energy consumption can be reduced by powering down unused servers. We resort to a model introduced by Lin, Wierman, Andrew, and Thereska [ 23 , 24 ] that considers data centers with identical machines and generalize it to heterogeneous data centers with d different server types. The operating cost of a server depends on its load and is modeled by an increasing, convex function for each server type. In contrast to earlier work, we consider the discrete setting, where the number of active servers must be integral. Thereby, we seek truly feasible solutions. For homogeneous data centers ( d =1), both the offline and the online problem were solved optimally in References [ 3 , 4 ]. In this article, we study heterogeneous data centers with general time-dependent operating cost functions. We develop an online algorithm based on a work function approach that achieves a competitive ratio of 2 d + 1 + ε for any ε > 0. For time-independent operating cost functions, the competitive ratio can be reduced to 2 d + 1. There is a lower bound of 2d shown in Reference [ 5 ], so our algorithm is nearly optimal. For the offline version, we give a graph-based (1+ε)-approximation algorithm. Additionally, our offline algorithm is able to handle time-variable data-center sizes.

Funder

European Research Council

Publisher

Association for Computing Machinery (ACM)

Subject

Computational Theory and Mathematics,Computer Science Applications,Hardware and Architecture,Modeling and Simulation,Software

Reference33 articles.

1. On Energy Conservation in Data Centers

2. On Energy Conservation in Data Centers

3. Optimal Algorithms for Right-Sizing Data Centers

4. Susanne Albers and Jens Quedenfeld. 2018. Optimal algorithms for right-sizing data centers—Extended version. arxiv:cs.DS/1807.05112.

5. Susanne Albers and Jens Quedenfeld. 2021. Algorithms for energy conservation in heterogeneous data centers. In Proceedings of the 12th International Conference on Algorithms and Complexity (CIAC’21). Springer, 75–89.

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