Authors: Yayla, Mikail
Title: A vision for edge AI
Other Titles: robust binarized neural networks on emerging resource-constrained hardware
Language (ISO): en
Abstract: Edge Artificial Intelligence is progressively pervading all aspects of our life. However, to perform complex tasks, a massive amount of matrix multiplications needs to be computed. At the same time, the available hardware resources for computation are highly limited. The pressing need for efficiency serves as the motivation for this dissertation. In this dissertation, we propose a vision for highly-resource constrained future intelligent systems that are comprised of robust Binarized Neural Networks operating with approximate memory and approximate computing units, while being able to be trained on the edge.
Subject Headings: Embedded system
Edge AI
Machine learning
HW/SW codedesign
Non-volatile memory
Error tolerance
Efficient training
Subject Headings (RSWK): Künstliche Intelligenz
Eingebettetes System
Maschinelles Lernen
Fehlertoleranz
URI: http://hdl.handle.net/2003/42431
http://dx.doi.org/10.17877/DE290R-24267
Issue Date: 2024
Appears in Collections:Entwurfsautomatisierung für Eingebettete Systeme

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