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Main Authors: Pitstick, Kevin, Novakouski, Marc, Lewis, Grace A., Ozkaya, Ipek
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.08583
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author Pitstick, Kevin
Novakouski, Marc
Lewis, Grace A.
Ozkaya, Ipek
author_facet Pitstick, Kevin
Novakouski, Marc
Lewis, Grace A.
Ozkaya, Ipek
contents Increasing rate of progress in hardware and artificial intelligence (AI) solutions is enabling a range of software systems to be deployed closer to their users, increasing application of edge software system paradigms. Edge systems support scenarios in which computation is placed closer to where data is generated and needed, and provide benefits such as reduced latency, bandwidth optimization, and higher resiliency and availability. Users who operate in highly-uncertain and resource-constrained environments, such as first responders, law enforcement, and soldiers, can greatly benefit from edge systems to support timelier decision making. Unfortunately, understanding how different architecture approaches for edge systems impact priority quality concerns is largely neglected by industry and research, yet crucial for national and local safety, optimal resource utilization, and timely decision making. Much of industry is focused on the hardware and networking aspects of edge systems, with very little attention to the software that enables edge capabilities. This paper presents our work to fill this gap, defining a reference architecture for edge systems in highly-uncertain environments, and showing examples of how it has been implemented in practice.
format Preprint
id arxiv_https___arxiv_org_abs_2406_08583
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Defining a Reference Architecture for Edge Systems in Highly-Uncertain Environments
Pitstick, Kevin
Novakouski, Marc
Lewis, Grace A.
Ozkaya, Ipek
Software Engineering
Increasing rate of progress in hardware and artificial intelligence (AI) solutions is enabling a range of software systems to be deployed closer to their users, increasing application of edge software system paradigms. Edge systems support scenarios in which computation is placed closer to where data is generated and needed, and provide benefits such as reduced latency, bandwidth optimization, and higher resiliency and availability. Users who operate in highly-uncertain and resource-constrained environments, such as first responders, law enforcement, and soldiers, can greatly benefit from edge systems to support timelier decision making. Unfortunately, understanding how different architecture approaches for edge systems impact priority quality concerns is largely neglected by industry and research, yet crucial for national and local safety, optimal resource utilization, and timely decision making. Much of industry is focused on the hardware and networking aspects of edge systems, with very little attention to the software that enables edge capabilities. This paper presents our work to fill this gap, defining a reference architecture for edge systems in highly-uncertain environments, and showing examples of how it has been implemented in practice.
title Defining a Reference Architecture for Edge Systems in Highly-Uncertain Environments
topic Software Engineering
url https://arxiv.org/abs/2406.08583