Adaptive approximate computing in edge AI and IoT applications: A review
Damsgaard, Hans Jakob; Grenier, Antoine; Katare, Dewant; Taufique, Zain; Shakibhamedan, Salar; Troccoli, Tiago; Chatzitsompanis, Georgios; Kanduri, Anil; Ometov, Aleksandr; Ding, Aaron Yi; Taherinejad, Nima; Karakonstantis, Georgios; Woods, Roger; Nurmi, Jari (2024-05)
Damsgaard, Hans Jakob
Grenier, Antoine
Katare, Dewant
Taufique, Zain
Shakibhamedan, Salar
Troccoli, Tiago
Chatzitsompanis, Georgios
Kanduri, Anil
Ometov, Aleksandr
Ding, Aaron Yi
Taherinejad, Nima
Karakonstantis, Georgios
Woods, Roger
Nurmi, Jari
05 / 2024
Journal of Systems Architecture
103114
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202404113475
https://urn.fi/URN:NBN:fi:tuni-202404113475
Kuvaus
Peer reviewed
Tiivistelmä
Recent advancements in hardware and software systems have been driven by the deployment of emerging smart health and mobility applications. These developments have modernized the traditional approaches by replacing conventional computing systems with cyber–physical and intelligent systems combining the Internet of Things (IoT) with Edge Artificial Intelligence. Despite the many advantages and opportunities of these systems within various application domains, the scarcity of energy, extensive computing needs, and limited communication must be considered when orchestrating their deployment. Inducing savings in these directions is central to the Approximate Computing (AxC) paradigm, in which the accuracy of some operations is traded off with energy, latency, and/or communication reductions. Unfortunately, the dynamics of the environments in which AxC-equipped IoT systems operate have been paid little attention. We bridge this gap by surveying adaptive AxC techniques applied to three emerging application domains, namely autonomous driving, smart sensing and wearables, and positioning, paying special attention to hardware acceleration. We discuss the challenges of such applications, how adaptive AxC can aid their deployment, and which savings it can bring based on traits of the data and devices involved. Insights arising thereof may serve as inspiration to researchers, engineers, and students active within the considered domains.
Kokoelmat
- TUNICRIS-julkaisut [20683]