In mobile edge computing (MEC), one of the important challenges is how much resources of which mobile edge server (MES) should be allocated to which user equipment (UE). The existing resource allocation schemes only consider CPU as the requested resource and assume utility for MESs as either a random variable or dependent on the requested CPU only. This paper presents a novel comprehensive utility function for resource allocation in MEC. The utility function considers the heterogeneous nature of applications that a UE offloads to MES. The proposed utility function considers all important parameters, including CPU, RAM, hard disk space, required time, and distance, to calculate a more realistic utility value for MESs. Moreover, we improve up...
Mobile edge computing (MEC) is a promising technique to meet the demands of computing-intensive and ...
Mobile Edge Computing (MEC) is a key technology for the deployment of next generation (5G and beyond...
This article describes a processing time, energy and computing resources optimization in a Mobile Ed...
Efficient utilization of computing resources has always been an important challenge for service prov...
Recent advances in Internet technologies have led to the proliferation of new distributed applicatio...
Resource allocation algorithms are conceived for minimizing the energy consumption of multiuser mobi...
The edge cloud provides heterogeneous resources, such as cores, memory, and storage which are then a...
International audienceRecently Mobile Edge Computing (MEC) promises a great latency reduction by pus...
The rapid development of mobile information industry has led to the emergence of various mobile appl...
Offloading computationally intensive tasks from user equipments (UEs) to mobile edge computing (MEC)...
This paper addresses the issue of efficient resource allocation in a Mobile Edge Computing (MEC) sys...
Mobile applications are progressively becoming more sophisticated and complex, in creasing their com...
Considering the problem of users high processing delay and energy consumption in mobile edge computi...
Multi-access edge computing (MEC) has been proposed as an approach capable of addressing latency and...
The emergence of computationally intensive Artificial Intelligence technologies has been a major fac...
Mobile edge computing (MEC) is a promising technique to meet the demands of computing-intensive and ...
Mobile Edge Computing (MEC) is a key technology for the deployment of next generation (5G and beyond...
This article describes a processing time, energy and computing resources optimization in a Mobile Ed...
Efficient utilization of computing resources has always been an important challenge for service prov...
Recent advances in Internet technologies have led to the proliferation of new distributed applicatio...
Resource allocation algorithms are conceived for minimizing the energy consumption of multiuser mobi...
The edge cloud provides heterogeneous resources, such as cores, memory, and storage which are then a...
International audienceRecently Mobile Edge Computing (MEC) promises a great latency reduction by pus...
The rapid development of mobile information industry has led to the emergence of various mobile appl...
Offloading computationally intensive tasks from user equipments (UEs) to mobile edge computing (MEC)...
This paper addresses the issue of efficient resource allocation in a Mobile Edge Computing (MEC) sys...
Mobile applications are progressively becoming more sophisticated and complex, in creasing their com...
Considering the problem of users high processing delay and energy consumption in mobile edge computi...
Multi-access edge computing (MEC) has been proposed as an approach capable of addressing latency and...
The emergence of computationally intensive Artificial Intelligence technologies has been a major fac...
Mobile edge computing (MEC) is a promising technique to meet the demands of computing-intensive and ...
Mobile Edge Computing (MEC) is a key technology for the deployment of next generation (5G and beyond...
This article describes a processing time, energy and computing resources optimization in a Mobile Ed...