LGDCMar 5, 2024

Training Machine Learning models at the Edge: A Survey

arXiv:2403.02619v334 citationsh-index: 18
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in edge computing and machine learning, but is incremental as a survey paper.

This survey tackles the under-explored problem of optimizing machine learning model training at the edge, synthesizing existing knowledge to identify challenges and future trends, with a focus on distributed methods like federated learning.

Edge computing has gained significant traction in recent years, promising enhanced efficiency by integrating artificial intelligence capabilities at the edge. While the focus has primarily been on the deployment and inference of Machine Learning (ML) models at the edge, the training aspect remains less explored. This survey, explores the concept of edge learning, specifically the optimization of ML model training at the edge. The objective is to comprehensively explore diverse approaches and methodologies in edge learning, synthesize existing knowledge, identify challenges, and highlight future trends. Utilizing Scopus and Web of science advanced search, relevant literature on edge learning was identified, revealing a concentration of research efforts in distributed learning methods, particularly federated learning. This survey further provides a guideline for comparing techniques used to optimize ML for edge learning, along with an exploration of the different frameworks, libraries, and simulation tools available. In doing so, the paper contributes to a holistic understanding of the current landscape and future directions in the intersection of edge computing and machine learning, paving the way for informed comparisons between optimization methods and techniques designed for training on the edge.

Foundations

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