This paper has been presented at 2020 IEEE International Conference on Communications WorkshopsEnergy consumption is a major issue for modern embedded mobile computing platforms, and with new technological developments, such as IoT and Edge/Fog computing, the number of connected embedded mobile computing systems is rapidly increasing. Heterogeneous multi-core CPUs seek to improve the performance of these platforms, with a particular focus on energy efficiency. By using different techniques like DVFS, core mapping, and multi-threading, a substantial improvement in the achievable CPU energy efficiency level for Multi-processor system-on-chip (MPSoC) can be observed. However, controlling only the CPU power dissipation has a limited effect on ...
The growing number of low-power smart devices in the Internet of Things is coupled with the concept ...
In this paper, we investigate offloading policy for energy efficient mobile cloud computing. To mini...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
Mobile edge computing (MEC) has shown tremendous potential as a means for computationally intensive ...
Different libraries allow performing computer vision tasks, e.g., object recognition, in almost ever...
Limited battery and computing resources of mobile devices (MDs) induce performance limitations in mo...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
The rapid explosion of online Cloud-based services has put more pressure on Cloud service providers ...
Recently, the role of mobile devices has changed from a calling or entertaining device to a tool for...
Deploying convolutional neural networks (CNNs) in embedded devices that operate at the edges of Inte...
Energy management is a primary consideration in the design of modern smartphones, made more interest...
2017 Spring.Includes bibliographical references.Offloading mobile computations is an innovative tech...
The launch of the 5th Generation (5G) mobile network allows for wireless communication at increased ...
With the fifth-generation (5G) networks, Mobile edge computing (MEC) is a promising paradigm to prov...
Current mobile devices are unable to execute complex vision ap-plications in a timely and power effi...
The growing number of low-power smart devices in the Internet of Things is coupled with the concept ...
In this paper, we investigate offloading policy for energy efficient mobile cloud computing. To mini...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...
Mobile edge computing (MEC) has shown tremendous potential as a means for computationally intensive ...
Different libraries allow performing computer vision tasks, e.g., object recognition, in almost ever...
Limited battery and computing resources of mobile devices (MDs) induce performance limitations in mo...
Computing has undergone a significant transformation over the past two decades, shifting from a mach...
The rapid explosion of online Cloud-based services has put more pressure on Cloud service providers ...
Recently, the role of mobile devices has changed from a calling or entertaining device to a tool for...
Deploying convolutional neural networks (CNNs) in embedded devices that operate at the edges of Inte...
Energy management is a primary consideration in the design of modern smartphones, made more interest...
2017 Spring.Includes bibliographical references.Offloading mobile computations is an innovative tech...
The launch of the 5th Generation (5G) mobile network allows for wireless communication at increased ...
With the fifth-generation (5G) networks, Mobile edge computing (MEC) is a promising paradigm to prov...
Current mobile devices are unable to execute complex vision ap-plications in a timely and power effi...
The growing number of low-power smart devices in the Internet of Things is coupled with the concept ...
In this paper, we investigate offloading policy for energy efficient mobile cloud computing. To mini...
Edge-AI uses Artificial Intelligence algorithms directly embedded on a device, contrary to a remote ...