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DATE
2010
IEEE

Enhanced Q-learning algorithm for dynamic power management with performance constraint

13 years 8 months ago
Enhanced Q-learning algorithm for dynamic power management with performance constraint
- This paper presents a novel power management techniques based on enhanced Q-learning algorithms. By exploiting the submodularity and monotonic structure in the cost function of a power management system, the enhanced Q-learning algorithm is capable of exploring ideal trade-offs in the power-performance design space and converging to a better power management policy. We further propose a linear adaption algorithm that adapts the Lagrangian multiplier to search for the power management policy that minimizes the power consumption while delivering the exact required performance. Experimental results show that, comparing to the existing expert-based power management, the proposed Q-learning based power management achieves up to 30% and 60% reduction in power saving for synthetic workload and real workload, respectively while in average maintain a performance within 7% variation of the given constraint.
Wei Liu, Ying Tan, Qinru Qiu
Added 02 Aug 2010
Updated 02 Aug 2010
Type Conference
Year 2010
Where DATE
Authors Wei Liu, Ying Tan, Qinru Qiu
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