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ICCAD
2006
IEEE

Dynamic power management using machine learning

13 years 10 months ago
Dynamic power management using machine learning
Dynamic power management (DPM) work proposed to date places inactive components into low power states using a single DPM policy. In contrast, we instead dynamically select among a set of DPM policies with a machine learning algorithm. We leverage the fact that different policies outperform each other under different workloads and devices. Our algorithm adapts to changes in workloads and guarantees quick convergence to the best performing policy for each workload. We performed experiments with a policy set representing state of the art DPM policies on a hard disk drive and a WLAN card. Our results show that our algorithm adapts really well with changing device and workload characteristics and achieves an overall performance comparable to the best performing policy at any point of time. Keywords Dynamic Power Management, Machine Learning
Gaurav Dhiman, Tajana Simunic Rosing
Added 11 Jun 2010
Updated 11 Jun 2010
Type Conference
Year 2006
Where ICCAD
Authors Gaurav Dhiman, Tajana Simunic Rosing
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