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HADAS: Hardware-Aware Dynamic Neural Architecture Search for Edge Performance Scaling

Halima Bouzidi, Mohanad Odema, Hamza Ouarnouhgi, Mohammad Abdullah Al Faruque, Smaïl Niar

202324 citationsDOI

Abstract

Dynamic neural networks (DyNNs) have become viable techniques to enable intelligence on resource-constrained edge devices while maintaining computational efficiency. In many cases, the implementation of DyNNs can be sub-optimal due to its underlying backbone architecture being developed at the design stage independent of both: (i) potential support for dynamic computing, e.g. early exiting, and (ii) resource efficiency features of the underlying hardware, e.g., dynamic voltage and frequency scaling (DVFS). Addressing this, we present HADAS, a novel Hardware-Aware Dynamic Neural Architecture Search framework that realizes DyNN architectures whose backbone, early exiting features, and DVFS settings have been jointly optimized to maximize performance and resource efficiency. Our experiments using the CIFAR-100 dataset and a diverse set of edge computing platforms have shown that HADAS can elevate dynamic models' energy efficiency by up to 57% for the same level of accuracy scores. Our code is available at https://github.com/HalimaBouzidi/HADAS

Topics & Concepts

Computer scienceEnhanced Data Rates for GSM EvolutionArchitectureComputer architectureResource (disambiguation)Set (abstract data type)Artificial neural networkScalingFrequency scalingDistributed computingComputer engineeringArtificial intelligenceVoltageComputer networkEngineeringElectrical engineeringArtMathematicsVisual artsGeometryProgramming languageAdvanced Neural Network ApplicationsAdvanced Memory and Neural ComputingNeural Networks and Applications