Context-aware and Adaptive QoS Prediction for Mobile Edge Computing Services

Author(s):  
Zhi-Zhong Liu ◽  
Quan Z. Sheng ◽  
Xiaofei Xu ◽  
DianHui Chu ◽  
Wei Emma Zhang
2020 ◽  
Vol 68 (2) ◽  
pp. 1118-1131 ◽  
Author(s):  
Pengtao Zhao ◽  
Hui Tian ◽  
Kwang-Cheng Chen ◽  
Shaoshuai Fan ◽  
Gaofeng Nie

Author(s):  
Swaroop Nunna ◽  
Apostolos Kousaridas ◽  
Mohamed Ibrahim ◽  
Markus Dillinger ◽  
Christoph Thuemmler ◽  
...  

2022 ◽  
Vol 27 (2) ◽  
pp. 315-324
Author(s):  
Chao Yan ◽  
Yankun Zhang ◽  
Weiyi Zhong ◽  
Can Zhang ◽  
Baogui Xin

2019 ◽  
Vol 2019 ◽  
pp. 1-12 ◽  
Author(s):  
Wenchen Zhou ◽  
Weiwei Fang ◽  
Yangyang Li ◽  
Bo Yuan ◽  
Yiming Li ◽  
...  

Mobile edge computing (MEC) provides cloud-computing services for mobile devices to offload intensive computation tasks to the physically proximal MEC servers. In this paper, we consider a multiserver system where a single mobile device asks for computation offloading to multiple nearby servers. We formulate this offloading problem as the joint optimization of computation task assignment and CPU frequency scaling, in order to minimize a tradeoff between task execution time and mobile energy consumption. The resulting optimization problem is combinatorial in essence, and the optimal solution generally can only be obtained by exhaustive search with extremely high complexity. Leveraging the Markov approximation technique, we propose a light-weight algorithm that can provably converge to a bounded near-optimal solution. The simulation results show that the proposed algorithm is able to generate near-optimal solutions and outperform other benchmark algorithms.


Author(s):  
Jiwon Choi ◽  
Jaewook Lee ◽  
Duksan Ryu ◽  
Suntae Kim ◽  
Jongmoon Baik

With recent increases in the number of network-connected devices, the number of edge computing services that provide similar functions has increased. Therefore, it is important to recommend an optimal edge computing service, based on quality-of-service (QoS). However, in the real world, there is a cold-start problem in QoS data: highly sparse invocation. Therefore, it is difficult to recommend a suitable service to the user. Deep learning techniques were applied to address this problem, or context information was used to extract deep features between users and services. However, edge computing environment has not been considered in previous studies. Our goal is to predict the QoS values in real edge computing environments with improved accuracy. To this end, we propose a GAIN-QoS technique. It clusters services based on their location information, calculates the distance between services and users in each cluster, and brings the QoS values of users within a certain distance. We apply a Generative Adversarial Imputation Nets (GAIN) model and perform QoS prediction based on this reconstructed user service invocation matrix. When the density is low, GAIN-QoS shows superior performance to other techniques. In addition, the distance between the service and user slightly affects performance. Thus, compared to other methods, the proposed method can significantly improve the accuracy of QoS prediction for edge computing, which suffers from cold-start problem.


Sign in / Sign up

Export Citation Format

Share Document