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TinyMLOps: Operational Challenges for Widespread Edge AI Adoption

Authors :
Leroux, Sam
Simoens, Pieter
Lootus, Meelis
Thakore, Kartik
Sharma, Akshay
Publication Year :
2022

Abstract

Deploying machine learning applications on edge devices can bring clear benefits such as improved reliability, latency and privacy but it also introduces its own set of challenges. Most works focus on the limited computational resources of edge platforms but this is not the only bottleneck standing in the way of widespread adoption. In this paper we list several other challenges that a TinyML practitioner might need to consider when operationalizing an application on edge devices. We focus on tasks such as monitoring and managing the application, common functionality for a MLOps platform, and show how they are complicated by the distributed nature of edge deployment. We also discuss issues that are unique to edge applications such as protecting a model's intellectual property and verifying its integrity.<br />Comment: 4th Workshop on Parallel AI and Systems for the Edge (PAISE2022) paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.10923
Document Type :
Working Paper