2020
DOI: 10.48550/arxiv.2005.05837
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Energy-Aware DNN Graph Optimization

Abstract: Unlike existing work in deep neural network (DNN) graphs optimization for inference performance, we explore DNN graph optimization for energy awareness and savings for power-and resource-constrained machine learning devices. We present a method that allows users to optimize energy consumption or balance between energy and inference performance for DNN graphs. This method efficiently searches through the space of equivalent graphs, and identifies a graph and the corresponding algorithms that incur the least cos… Show more

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“…Hence, the two parameters always need to be analyzed together. Other works opt for optimizing energy while keeping accuracy loss within a negligible margin [102].…”
Section: Green Ai Topicsmentioning
confidence: 99%
“…Hence, the two parameters always need to be analyzed together. Other works opt for optimizing energy while keeping accuracy loss within a negligible margin [102].…”
Section: Green Ai Topicsmentioning
confidence: 99%