NILGJul 7, 2021

Management of Resource at the Network Edge for Federated Learning

arXiv:2107.03428v212 citations
AI Analysis

It addresses resource limitations for deploying federated learning on edge devices, but is incremental as it primarily surveys existing work and discusses future directions.

The paper reviews resource management challenges for federated learning at the network edge, focusing on problems like resource discovery, deployment, load balancing, migration, and energy efficiency, without presenting new experimental results or concrete numbers.

Federated learning has been explored as a promising solution for training at the edge, where end devices collaborate to train models without sharing data with other entities. Since the execution of these learning models occurs at the edge, where resources are limited, new solutions must be developed. In this paper, we describe the recent work on resource management at the edge, and explore the challenges and future directions to allow the execution of federated learning at the edge. Some of the problems of this management, such as discovery of resources, deployment, load balancing, migration, and energy efficiency will be discussed in the paper.

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