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Predictive Resource Management for Wearable Computing
Achieving crisp interactive response in resource-intensive applications such as augmented reality, language translation, and speech recognition is a major challenge on resource-poor wearable hardware. In this paper we describe a solution based on multi-fidelity computation supported by predictive resource management. We show that such an approach can substantially reduce both the mean and the variance of response time. On a benchmark representative of augmented reality, we demonstrate a 60% reduction in mean latency and a 30% reduction in the coefficient of variation. We also show that a history-based approach to demand prediction is the key to this performance improvement: by applying simple machine learning techniques to logs of measured resource demand, we are able to accurately model resource demand as a function of fidelity.
author = {Dushyanth Narayanan and M. Satyanarayanan},
title = {Predictive Resource Management for Wearable Computing},
booktitle = {First International Conference on Mobile Systems, Applications, and Services (MobiSys2003)},
year = {2003},
address = {San Francisco, CA},
url = {https://www.usenix.org/conference/mobisys2003/predictive-resource-management-wearable-computing},
publisher = {USENIX Association},
month = may
}