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Dynamic AI-IoT: Enabling Updatable AI Models in Ultralow-Power 5G IoT Devices

Mohammad Alselek, José M. Alcaraz Calero, Qi Wang

2023IEEE Internet of Things Journal30 citationsDOIOpen Access PDF

Abstract

This article addresses the challenge of integrating dynamic AI capabilities into ultralow-power (ULP) IoT devices, a critical necessity in the rapidly evolving landscape of 5G and potential 6G technologies. We introduce the Dynamic AI-IoT architecture, a novel framework designed to eliminate the need for cumbersome firmware updates. This architecture leverages Narrowband IoT (NB-IoT) to facilitate smooth cloud interactions and incorporates tailored firmware extensions for enabling dynamic interactions with Tiny Machine Learning (TinyML) models. A sophisticated memory management mechanism, grounded in memory alignment and dynamic AI operations resolution, is introduced to efficiently handle AI tasks. Empirical experiments demonstrate the feasibility of implementing a Dynamic AI-IoT system using ULP IoT devices on a 5G testbed. The results show model updates taking less than one second and an average inference time of approximately 46 ms.

Topics & Concepts

FirmwareComputer scienceTestbedCloud computingInternet of ThingsMicrocodeArchitectureEmbedded systemComputer architectureDistributed computingComputer networkOperating systemVisual artsArtIoT and Edge/Fog ComputingIoT Networks and ProtocolsEnergy Harvesting in Wireless Networks
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