Fog computing for next-generation internet of things: fundamental, state-of-the-art and research challenges
In recent times, the Internet of Things (IoT) applications, including smart transportation, smart
healthcare, smart grid, smart city, etc. generate a large volume of real-time data for decision …
healthcare, smart grid, smart city, etc. generate a large volume of real-time data for decision …
Experts and intelligent systems for smart homes' Transformation to Sustainable Smart Cities: A comprehensive review
In this constantly evolving landscape of urbanization, the relationship between technology
and automation, in regards to sustainability, holds immense significance. The intricate …
and automation, in regards to sustainability, holds immense significance. The intricate …
Layer-wised model aggregation for personalized federated learning
Abstract Personalized Federated Learning (pFL) not only can capture the common priors
from broad range of distributed data, but also support customized models for heterogeneous …
from broad range of distributed data, but also support customized models for heterogeneous …
Resource management in cloud and cloud-influenced technologies for internet of things applications
The trend of adopting Internet of Things (IoT) in healthcare, smart cities, Industry 4.0, and so
on is increasing by means of cloud computing, which provides on-demand storage and …
on is increasing by means of cloud computing, which provides on-demand storage and …
Federated unlearning: Guarantee the right of clients to forget
The Right to be Forgotten gives a data owner the right to revoke their data from an entity
storing it. In the context of federated learning, the Right to be Forgotten requires that, in …
storing it. In the context of federated learning, the Right to be Forgotten requires that, in …
End-edge-cloud collaborative computing for deep learning: A comprehensive survey
The booming development of deep learning applications and services heavily relies on
large deep learning models and massive data in the cloud. However, cloud-based deep …
large deep learning models and massive data in the cloud. However, cloud-based deep …
A survey on collaborative learning for intelligent autonomous systems
This survey examines approaches to promote Collaborative Learning in distributed systems
for emergent Intelligent Autonomous Systems (IAS). The study involves a literature review of …
for emergent Intelligent Autonomous Systems (IAS). The study involves a literature review of …
Adaptive vertical federated learning on unbalanced features
Most of the existing FL systems focus on a data-parallel architecture where training data are
partitioned by samples among several parties. In some real-life applications, however …
partitioned by samples among several parties. In some real-life applications, however …
Reviewing the transformational impact of edge computing on real-time data processing and analytics
OT Modupe, AA Otitoola, OJ Oladapo… - Computer Science & IT …, 2024 - fepbl.com
Edge computing has emerged as a pivotal paradigm shift in the realm of data processing
and analytics, revolutionizing the way organizations handle real-time data. This review …
and analytics, revolutionizing the way organizations handle real-time data. This review …
Federated Learning for Mobility Applications
The increasing concern for privacy and the use of machine learning on personal data has
led researchers to introduce new approaches to machine learning. Federated learning is …
led researchers to introduce new approaches to machine learning. Federated learning is …