2024
DOI: 10.1145/3665868
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CARIn: Constraint-Aware and Responsive Inference on Heterogeneous Devices for Single- and Multi-DNN Workloads

Ioannis Panopoulos,
Stylianos Venieris,
Iakovos Venieris

Abstract: The relentless expansion of deep learning (DL) applications in recent years has prompted a pivotal shift towards on-device execution, driven by the urgent need for real-time processing, heightened privacy concerns, and reduced latency across diverse domains. This paper addresses the challenges inherent in optimising the execution of deep neural networks (DNNs) on mobile devices, with a focus on device heterogeneity, multi-DNN execution, and dynamic runtime adaptation. We introduce CARIn … Show more

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