
arXiv: 2309.11932
handle: 11562/1119486 , 11583/2986085
The emergence of Tiny Machine Learning (TinyML) has positively revolutionized the field of Artificial Intelligence by promoting the joint design of resource-constrained IoT hardware devices and their learning-based software architectures. TinyML carries an essential role within the fourth and fifth industrial revolutions in helping societies, economies, and individuals employ effective AI-infused computing technologies (e.g., smart cities, automotive, and medical robotics). Given its multidisciplinary nature, the field of TinyML has been approached from many different angles: this comprehensive survey wishes to provide an up-to-date overview focused on all the learning algorithms within TinyML-based solutions. The survey is based on the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) methodological flow, allowing for a systematic and complete literature survey. In particular, firstly we will examine the three different workflows for implementing a TinyML-based system, i.e., ML-oriented, HW-oriented, and co-design. Secondly, we propose a taxonomy that covers the learning panorama under the TinyML lens, examining in detail the different families of model optimization and design, as well as the state-of-the-art learning techniques. Thirdly, this survey will present the distinct features of hardware devices and software tools that represent the current state-of-the-art for TinyML intelligent edge applications. Finally, we discuss the challenges and future directions.
Article currently under review at IEEE Access
FOS: Computer and information sciences, TinyML, edge intelligence, Computer Science - Machine Learning, Efficient Deep Learning, embedded systems, Electrical engineering. Electronics. Nuclear engineering, Embedded Systems, TinyML; edge intelligence; efficient deep learning; embedded systems, Edge Intelligence, efficient deep learning, TK1-9971, Machine Learning (cs.LG)
FOS: Computer and information sciences, TinyML, edge intelligence, Computer Science - Machine Learning, Efficient Deep Learning, embedded systems, Electrical engineering. Electronics. Nuclear engineering, Embedded Systems, TinyML; edge intelligence; efficient deep learning; embedded systems, Edge Intelligence, efficient deep learning, TK1-9971, Machine Learning (cs.LG)
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