A high performance hierarchical caching framework for mobile edge computing environments

Author(s):  
Saibal Ghosh ◽  
Dharma P Agrawal
2020 ◽  
Vol 160 ◽  
pp. 643-660 ◽  
Author(s):  
Mahdi Abbasi ◽  
Azad Shokrollahi ◽  
Mohammad R. Khosravi ◽  
Varun G. Menon

Author(s):  
Jialei Liu ◽  
Ao Zhou ◽  
Chunhong Liu ◽  
Tongguang Zhang ◽  
Lianyong Qi ◽  
...  

2017 ◽  
Vol 6 (3) ◽  
pp. 17 ◽  
Author(s):  
Muhammad Habib ur Rehman ◽  
Prem Jayaraman ◽  
Saif Malik ◽  
Atta Khan ◽  
Mohamed Medhat Gaber

Entropy ◽  
2021 ◽  
Vol 23 (9) ◽  
pp. 1146
Author(s):  
Peng Huang ◽  
Minjiang Deng ◽  
Zhiliang Kang ◽  
Qinshan Liu ◽  
Lijia Xu

Mobile edge computing (MEC) focuses on transferring computing resources close to the user's device, and it provides high-performance and low-delay services for mobile devices. It is an effective method to deal with computationally intensive and delay-sensitive tasks. Given the large number of underutilized computing resources for mobile devices in urban areas, leveraging these underutilized resources offers tremendous opportunities and value. Considering the spatiotemporal dynamics of user devices, the uncertainty of rich computing resources and the state of network channels in the MEC system, computing resource allocation in mobile devices with idle computing resources will affect the response time of task requesting. To solve these problems, this paper considers the case in which a mobile device can learn from a neighboring IoT device when offloading a computing request. On this basis, a novel self-adaptive learning of task offloading algorithm (SAda) is designed to minimize the average offloading delay in the MEC system. SAda adopts a distributed working mode and has a perception function to adapt to the dynamic environment in reality; it does not require frequent access to equipment information. Extensive simulations demonstrate that SAda achieves preferable latency performance and low learning error compared to the existing upper bound algorithms.


2018 ◽  
Vol 2018 ◽  
pp. 1-8 ◽  
Author(s):  
Yan Li ◽  
Yan Guo

In the era of big data, traditional computing systems and paradigms are not efficient and even difficult to use. For high performance big data processing, mobile edge computing is emerging as a complement framework of cloud computing. In this new computing architecture, services are provided within a close proximity of mobile users by servers at the edge of network. Traditional collaborative filtering recommendation approach only focuses on the similarity extracted from the rating data, which may lead to an inaccuracy expression of user preference. In this paper, we propose a cultural distance-aware service recommendation approach which focuses on not only the similarity but also the local characteristics and preference of users. Our approach employs the cultural distance to express the user preference and combines it with similarity to predict the user ratings and recommend the services with higher rating. In addition, considering the extreme sparsity of the rating data, missing rating prediction based on collaboration filtering is introduced in our approach. The experimental results based on real-world datasets show that our approach outperforms the traditional recommendation approaches in terms of the reliability of recommendation.


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