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A review on TinyML: State-of-the-art and prospects

Partha Pratim Ray

2021Journal of King Saud University - Computer and Information Sciences395 citationsDOIOpen Access PDF

Abstract

Machine learning has become an indispensable part of the existing technological domain. Edge computing and Internet of Things (IoT) together presents a new opportunity to imply machine learning techniques at the resource constrained embedded devices at the edge of the network. Conventional machine learning requires enormous amount of power to predict a scenario. Embedded machine learning – TinyML paradigm aims to shift such plethora from traditional high-end systems to low-end clients. Several challenges are paved while doing such transition such as, maintaining the accuracy of learning models, provide train-to-deploy facility in resource frugal tiny edge devices, optimizing processing capacity, and improving reliability. In this paper, we present an intuitive review about such possibilities for TinyML. We firstly, present background of TinyML. Secondly, we list the tool sets for supporting TinyML. Thirdly, we present key enablers for improvement of TinyML systems. Fourthly, we present state-of-the-art about frameworks for TinyML. Finally, we identify key challenges and prescribe a future roadmap for mitigating several research issues of TinyML.

Topics & Concepts

Computer scienceKey (lock)Enhanced Data Rates for GSM EvolutionReliability (semiconductor)Edge deviceDomain (mathematical analysis)Resource (disambiguation)Edge computingState (computer science)Data scienceArtificial intelligenceDistributed computingSystems engineeringPower (physics)Computer securityEngineeringCloud computingComputer networkMathematical analysisAlgorithmMathematicsOperating systemQuantum mechanicsPhysicsAdvanced Memory and Neural ComputingIoT and Edge/Fog ComputingAdvanced Neural Network Applications
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