2021
DOI: 10.48550/arxiv.2106.04723
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OODIn: An Optimised On-Device Inference Framework for Heterogeneous Mobile Devices

Abstract: Radical progress in the field of deep learning (DL) has led to unprecedented accuracy in diverse inference tasks. As such, deploying DL models across mobile platforms is vital to enable the development and broad availability of the nextgeneration intelligent apps. Nevertheless, the wide and optimised deployment of DL models is currently hindered by the vast system heterogeneity of mobile devices, the varying computational cost of different DL models and the variability of performance needs across DL applicatio… Show more

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References 14 publications
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