Pervasive AI for IoT Applications: Resource-efficient Distributed
Artificial Intelligence
- URL: http://arxiv.org/abs/2105.01798v1
- Date: Tue, 4 May 2021 23:42:06 GMT
- Title: Pervasive AI for IoT Applications: Resource-efficient Distributed
Artificial Intelligence
- Authors: Emna Baccour, Naram Mhaisen, Alaa Awad Abdellatif, Aiman Erbad, Amr
Mohamed, Mounir Hamdi, Mohsen Guizani
- Abstract summary: Artificial intelligence (AI) has witnessed a substantial breakthrough in a variety of Internet of Things (IoT) applications and services.
This is driven by the easier access to sensory data and the enormous scale of pervasive/ubiquitous devices that generate zettabytes (ZB) of real-time data streams.
The confluence of pervasive computing and artificial intelligence, Pervasive AI, expanded the role of ubiquitous IoT systems.
- Score: 45.076180487387575
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Artificial intelligence (AI) has witnessed a substantial breakthrough in a
variety of Internet of Things (IoT) applications and services, spanning from
recommendation systems to robotics control and military surveillance. This is
driven by the easier access to sensory data and the enormous scale of
pervasive/ubiquitous devices that generate zettabytes (ZB) of real-time data
streams. Designing accurate models using such data streams, to predict future
insights and revolutionize the decision-taking process, inaugurates pervasive
systems as a worthy paradigm for a better quality-of-life. The confluence of
pervasive computing and artificial intelligence, Pervasive AI, expanded the
role of ubiquitous IoT systems from mainly data collection to executing
distributed computations with a promising alternative to centralized learning,
presenting various challenges. In this context, a wise cooperation and resource
scheduling should be envisaged among IoT devices (e.g., smartphones, smart
vehicles) and infrastructure (e.g. edge nodes, and base stations) to avoid
communication and computation overheads and ensure maximum performance. In this
paper, we conduct a comprehensive survey of the recent techniques developed to
overcome these resource challenges in pervasive AI systems. Specifically, we
first present an overview of the pervasive computing, its architecture, and its
intersection with artificial intelligence. We then review the background,
applications and performance metrics of AI, particularly Deep Learning (DL) and
online learning, running in a ubiquitous system. Next, we provide a deep
literature review of communication-efficient techniques, from both algorithmic
and system perspectives, of distributed inference, training and online learning
tasks across the combination of IoT devices, edge devices and cloud servers.
Finally, we discuss our future vision and research challenges.
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