Book Chapter10.1007/978-3-031-48465-0_55
Efficient Virtual Machine Selection for Improved Performance in Mobile Edge Computing Environments
Nouhaila Moussammi,Mohamed El Ghmary,Abdellah Idrissi +2 more
- 01 Jan 2024
- pp 420-426
TL;DR: Efficient VM selection for improved performance in MEC environments improves performance, reduces energy consumption, and enhances user satisfaction by offloading tasks from MDs to Edge servers.
read more
Abstract: Mobile applications have experienced rapid growth thanks to the Internet of Things (IoT). However, the constraints of limited resources on mobile devices (MDs) pose challenges such as processing delays, high energy consumption, and security issues. Mobile Edge Com- puting (MEC) is an effective solution to address these requirements. MEC systems offload tasks from lightweight MDs to Edge servers, where the necessary computations and processing are performed locally. This approach reduces latency, improves the user experience, and saves mobile device resources. MEC systems utilize virtual machines (VMs) sliced into smaller pieces to deliver their services. However, selecting the appropriate VM is a crucial challenge as it impacts overall performance, energy consumption, and user satisfaction. The suitable VM choice must consider the specific requirements of each task, in terms of com- puting capabilities, memory, and other resources. In this work, various approaches and techniques are explored to solve the problem of optimal VM selection in MEC systems. Decision criteria, algorithms, and strate- gies are studied to ensure optimal performance and efficient resource utilization
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
References
Service Entity Placement for Social Virtual Reality Applications in Edge Computing
Lin Wang,Lei Jiao,Ting He,Jun Li,Max Mühlhäuser +4 more
- 16 Apr 2018
TL;DR: This paper proposes ITEM, an iterative algorithm with fast and big “moves” where in each iteration, a graph is constructed to encode all the costs and convert the cost optimization into a graph cut problem, and can simultaneously determine the placement of multiple service entities.
243
An Edge-Computing Based Architecture for Mobile Augmented Reality
TL;DR: Wang et al. as discussed by the authors proposed a hierarchical computation architecture by inserting an edge layer between the conventional user layer and cloud layer, and further developed an innovative operation mechanism to improve the performance of mobile AR applications.
Joint computation and communication cooperation for mobile edge computing
Xiaowen Cao,Feng Wang,Jie Xu,Rui Zhang,Shuguang Cui +4 more
- 07 May 2018
TL;DR: In this article, a joint computation and communication cooperation approach in mobile edge computing (MEC) systems for improving the energy efficiency in mobile computing is proposed, where a basic three-node MEC system consisting of a user node, a helper node, and an access point (AP) node attached with an MEC server is considered.
132
FastVA: Deep Learning Video Analytics Through Edge Processing and NPU in Mobile
Tianxiang Tan,Guohong Cao +1 more
- 06 Jul 2020
TL;DR: In this paper, the authors proposed a framework called FastVA, which supports deep learning video analytics through edge processing and Neural Processing Unit (NPU) in mobile devices, where the major challenge is to determine when to offload the computation and when to use NPU.
79
A Density-Based Offloading Strategy for IoT Devices in Edge Computing Systems
TL;DR: This paper analyzes and builds mathematical models about whether/how to offload tasks from various IoT devices to edge servers and proposes an algorithm for IoT devices’ computation offloading decisions, which can help decide whether service relocation/migration is needed or not.
62