FedAR: Activity and Resource-Aware Federated Learning Model for Distributed Mobile Robots

02/06/2021
by   M. Hadi Amini, et al.
0

Smartphones, autonomous vehicles, and the Internet-of-things (IoT) devices are considered the primary data source for a distributed network. Due to a revolutionary breakthrough in internet availability and continuous improvement of the IoT devices capabilities, it is desirable to store data locally and perform computation at the edge, as opposed to share all local information with a centralized computation agent. A recently proposed Machine Learning (ML) algorithm called Federated Learning (FL) paves the path towards preserving data privacy, performing distributed learning, and reducing communication overhead in large-scale machine learning (ML) problems. This paper proposes an FL model by monitoring client activities and leveraging available local computing resources, particularly for resource-constrained IoT devices (eg, mobile robots), to accelerate the learning process. We assign a trust score to each FL client, which is updated based on the client's activities. We consider a distributed mobile robot as an FL client with resource limitations either in memory, bandwidth, processor, or battery life. We consider such mobile robots as FL clients to understand their resource-constrained behavior in a real-world setting. We consider an FL client to be untrustworthy if the client infuses incorrect models or repeatedly gives slow responses during the FL process. After disregarding the ineffective and unreliable client, we perform local training on the selected FL clients. To further reduce the straggler issue, we enable an asynchronous FL mechanism by performing aggregation on the FL server without waiting for a long period to receive a particular …

READ FULL TEXT
research
08/25/2023

Federated Learning in IoT: a Survey from a Resource-Constrained Perspective

The IoT ecosystem is able to leverage vast amounts of data for intellige...
research
05/31/2023

An Empirical Study of Federated Learning on IoT-Edge Devices: Resource Allocation and Heterogeneity

Nowadays, billions of phones, IoT and edge devices around the world gene...
research
09/29/2020

MAB-based Client Selection for Federated Learning with Uncertain Resources in Mobile Networks

This paper proposes a client selection method for federated learning (FL...
research
12/16/2022

SplitGP: Achieving Both Generalization and Personalization in Federated Learning

A fundamental challenge to providing edge-AI services is the need for a ...
research
03/25/2022

Sparse Federated Learning with Hierarchical Personalization Models

Federated learning (FL) is widely used in the Internet of Things (IoT), ...
research
10/27/2022

Exploiting Features and Logits in Heterogeneous Federated Learning

Due to the rapid growth of IoT and artificial intelligence, deploying ne...
research
03/01/2023

Poster: Sponge ML Model Attacks of Mobile Apps

Machine Learning (ML)-powered apps are used in pervasive devices such as...

Please sign up or login with your details

Forgot password? Click here to reset