Ziv Bar-Yossef, T.S. Jayram, et al.
Journal of Computer and System Sciences
Grid computing platforms dissipate massive amounts of energy. Energy efficiency, therefore, is an essential requirement that directly affects its sustainability. Resource management systems deploy rule-based approaches to mitigate this cost. However, these strategies do not consider the patterns of the workloads being executed. In this context, we demonstrate how a solution based on Deep Reinforcement Learning is used to formulate an adaptive power-efficient policy. Specifically, we implement an off-reservation approach to overcome the disadvantages of an aggressive shutdown policy and minimise the frequency of shutdown events. Through simulation, we train the algorithm and evaluate it against commonly used shutdown policies using real traces from GRID’5000. Based on the experiments, we observed a reduction of 46% on the averaged energy waste with an equivalent frequency of shutdown events compared to a soft shutdown policy.
Ziv Bar-Yossef, T.S. Jayram, et al.
Journal of Computer and System Sciences
Chai Wah Wu
Linear Algebra and Its Applications
Peter Wendt
Electronic Imaging: Advanced Devices and Systems 1990
A. Gupta, R. Gross, et al.
SPIE Advances in Semiconductors and Superconductors 1990