@inproceedings{1d18ba3a4c434304a95dd4116f0bda2f,
title = "Optimal Threshold Policies for Robust Data Center Control",
abstract = "With the simultaneous rise of energy costs and demand for cloud computing, efficient control of data centers becomes crucial. In the data center control problem, one needs to plan at every time step how many servers to switch on or off in order to meet stochastic job arrivals while trying to minimize electricity consumption. This problem becomes particularly challenging when servers can be of various types and jobs from different classes can only be served by certain types of server, as it is often the case in real data centers. We model this problem as a robust Markov Decision Process (i.e., the transition function may not be known precisely). We give sufficient conditions (which seem to be reasonable and satisfied in practice) guaranteeing that an optimal threshold policy exists. This property can be exploited in the design of an efficient solving method that we provide. Finally, we present some experimental results demonstrating the practicability of our approach and compare with a previous related approach based on model predictive control.",
keywords = "Data center control, Markov decision process, Robustness, Threshold policy",
author = "Paul Weng and Zeqi Qiu and John Costanzo and Xiaoqi Yin and Bruno Sinopoli",
note = "Publisher Copyright: {\textcopyright} Springer International Publishing AG 2018.; 4th International Conference on Advanced Engineering Theory and Applications, AETA 2017 ; Conference date: 07-12-2017 Through 09-12-2017",
year = "2018",
doi = "10.1007/978-3-319-69814-4\_10",
language = "English",
isbn = "9783319698137",
series = "Lecture Notes in Electrical Engineering",
publisher = "Springer Verlag",
pages = "104--114",
editor = "Kim, \{Sang Bong\} and Dao, \{Tran Trong\} and Ivan Zelinka and Duy, \{Vo Hoang\} and Phuong, \{Tran Thanh\}",
booktitle = "AETA 2017 - Recent Advances in Electrical Engineering and Related Sciences - Theory and Application",
}