@inproceedings{98514f5338a34f58a4952bd31b10e6ed,
title = "Model discovery for energy-aware computing systems: An experimental evaluation",
abstract = "We present a model-discovery methodology for energy-aware computing systems that achieves high prediction accuracy. Model discovery, or system identification, is a critical first step in designing advanced controllers that can dynamically manage the energy-performance trade-off in an optimal manner. Our methodology favors Multiple-Inputs-Multiple-Outputs (MIMO) models over a collection of Single-Input-Single-Output (SISO) models, when the inputs and outputs of the system are coupled in a nontrivial way. In such cases, MIMO is generally more accurate than SISO over a wide range of inputs in predicting system behavior. Our experimental evaluation, carried out on a representative server workload, validates our approach. We obtained an average prediction accuracy of 77\% and 76\% for MIMO power and performance, respectively. We also show that MIMO models are consistently more accurate than SISO ones.",
keywords = "control theory, energy, file compression, performance, system identification",
author = "Zhichao Li and Radu Grosu and Koundinya Muppalla and Smolka, \{Scott A.\} and Stoller, \{Scott D.\} and Erez Zadok",
year = "2011",
doi = "10.1109/IGCC.2011.6008572",
language = "English",
isbn = "9781457712203",
series = "2011 International Green Computing Conference and Workshops, IGCC 2011",
booktitle = "2011 International Green Computing Conference and Workshops, IGCC 2011",
note = "2011 International Green Computing Conference, IGCC 2011 ; Conference date: 25-07-2011 Through 28-07-2011",
}