[EN] A fundamental problem in fog computing networks is how to schedule the deadline-aware offloaded tasks that directly arrive from the end-users and via other fog nodes. The computational resource allocation becomes more challenging when the tasks demand different delay-deadlines. In this letter, we aim to propose a scheduling strategy to maximize the number of the completed tasks within their respective deadlines while making the network strongly stable. We exploit Lyapunov drift-plus-penalty function on the queue length to schedule the tasks in the queues. Subsequently, the scheduling policy decides the amount of task to be offloaded to the underloaded fog nodes to fully utilize the computational resources offered by all fog nodes in th...
© 2014 IEEE. Fog computing has risen as a promising architecture for future Internet of Things, 5G a...
Internet of things as a concept uses wireless sensor networks that have limitations in power, storag...
Fog networks offer computing resources with varying capacities at different distances from end users...
[EN] In this letter, we study the computational offloading scheme for the delay-aware tasks of the e...
Through offloading the computing tasks of the task nodes (TNs) to the fog nodes (FNs) located at the...
We develop a joint offloading and resource allocation framework for a multi-layer cooperative fog co...
With the rapid advancement of Internet of Things (IoT) devices, a variety of IoT applications that r...
State-of-the-art scenarios, such as Internet of Things (IoT) and Smart Cities, have recently arisen....
In the Internet of Things (IoT) ecosystem, some processing is done near data production sites at hig...
Abstract Fog computing is emerging as a promising paradigm to perform distributed, low-latency comp...
University of Technology Sydney. Faculty of Engineering and Information Technology.By enabling task ...
Abstract With the rapid development of Internet of Things (IoT) technologies, fog computing has emer...
Cloud services are the cutting edge technology, however the growing demand for the internet of thing...
Fog computing is a new computing structure that brings the cloud to the edge of the network. This st...
This research studies the current solutions present to develop a joint offloading and resource alloc...
© 2014 IEEE. Fog computing has risen as a promising architecture for future Internet of Things, 5G a...
Internet of things as a concept uses wireless sensor networks that have limitations in power, storag...
Fog networks offer computing resources with varying capacities at different distances from end users...
[EN] In this letter, we study the computational offloading scheme for the delay-aware tasks of the e...
Through offloading the computing tasks of the task nodes (TNs) to the fog nodes (FNs) located at the...
We develop a joint offloading and resource allocation framework for a multi-layer cooperative fog co...
With the rapid advancement of Internet of Things (IoT) devices, a variety of IoT applications that r...
State-of-the-art scenarios, such as Internet of Things (IoT) and Smart Cities, have recently arisen....
In the Internet of Things (IoT) ecosystem, some processing is done near data production sites at hig...
Abstract Fog computing is emerging as a promising paradigm to perform distributed, low-latency comp...
University of Technology Sydney. Faculty of Engineering and Information Technology.By enabling task ...
Abstract With the rapid development of Internet of Things (IoT) technologies, fog computing has emer...
Cloud services are the cutting edge technology, however the growing demand for the internet of thing...
Fog computing is a new computing structure that brings the cloud to the edge of the network. This st...
This research studies the current solutions present to develop a joint offloading and resource alloc...
© 2014 IEEE. Fog computing has risen as a promising architecture for future Internet of Things, 5G a...
Internet of things as a concept uses wireless sensor networks that have limitations in power, storag...
Fog networks offer computing resources with varying capacities at different distances from end users...