MetaTinyML: End-to-End Metareasoning Framework for TinyML Platforms

Mozhgan Navardi, Edward Humes, Tinoosh Mohsenin

Published: 2024, Last Modified: 27 Feb 2026IEEE Embed. Syst. Lett. 2024EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Efficiently deploying deep neural networks on resource-limited embedded systems is crucial to meet real-time and power consumption requirements. Utilizing metareasoning as a higher-level controller along with tiny machine learning (TinyML) can enhance energy efficiency and reduce latency on such systems by overseeing available resources. This study introduces MetaTinyML, a comprehensive metareasoning framework for self-guided navigation on TinyML platforms. The framework adapts its decision-making process by factoring in environmental changes to select the most suitable algorithms for the current scenario. Implementation of MetaTinyML on an NVIDIA Jetson Nano 4-GB system integrated with a Jetbot ground vehicle demonstrated up to 50% power consumption enhancement. View a video demonstration of the MetaTinyML framework at: Video.
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