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Main Authors: Laskaridis, Stefanos, Venieris, Stylianos I., Kouris, Alexandros, Li, Rui, Lane, Nicholas D.
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2210.10514
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author Laskaridis, Stefanos
Venieris, Stylianos I.
Kouris, Alexandros
Li, Rui
Lane, Nicholas D.
author_facet Laskaridis, Stefanos
Venieris, Stylianos I.
Kouris, Alexandros
Li, Rui
Lane, Nicholas D.
contents In the last decade, Deep Learning has rapidly infiltrated the consumer end, mainly thanks to hardware acceleration across devices. However, as we look towards the future, it is evident that isolated hardware will be insufficient. Increasingly complex AI tasks demand shared resources, cross-device collaboration, and multiple data types, all without compromising user privacy or quality of experience. To address this, we introduce a novel paradigm centered around EdgeAI-Hub devices, designed to reorganise and optimise compute resources and data access at the consumer edge. To this end, we lay a holistic foundation for the transition from on-device to Edge-AI serving systems in consumer environments, detailing their components, structure, challenges and opportunities.
format Preprint
id arxiv_https___arxiv_org_abs_2210_10514
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle The Future of Consumer Edge-AI Computing
Laskaridis, Stefanos
Venieris, Stylianos I.
Kouris, Alexandros
Li, Rui
Lane, Nicholas D.
Machine Learning
In the last decade, Deep Learning has rapidly infiltrated the consumer end, mainly thanks to hardware acceleration across devices. However, as we look towards the future, it is evident that isolated hardware will be insufficient. Increasingly complex AI tasks demand shared resources, cross-device collaboration, and multiple data types, all without compromising user privacy or quality of experience. To address this, we introduce a novel paradigm centered around EdgeAI-Hub devices, designed to reorganise and optimise compute resources and data access at the consumer edge. To this end, we lay a holistic foundation for the transition from on-device to Edge-AI serving systems in consumer environments, detailing their components, structure, challenges and opportunities.
title The Future of Consumer Edge-AI Computing
topic Machine Learning
url https://arxiv.org/abs/2210.10514