Proceedings Article10.1109/ICCCN.2015.7288465
Security-Aware Resource Allocation for Mobile Cloud Computing Systems
Yanchen Liu,Myung J. Lee +1 more
- 05 Oct 2015
- pp 1-8
32
TL;DR: Simulation results demonstrate that the system adaptively modifies the resource allocation policy for cloud computing, and determines whether to utilize extra resource for security implementation according to the mobile request type, the current traffic, and the cloud resource availability.
read more
Abstract: In this paper, a novel resource allocation algorithm is proposed for secure mobile cloud computing systems. The mobile request for using cloud resource is classified according to its level of security requirement and the amount of required resource for remote computing. We formulate the resource allocation problem as a semi-Markov decision process under the average reward criterion, where the average reward of states is expected to be optimized. Through maximizing the long-term reward while meeting the system requirements of the blocking probability and the amount of resource requested with a security guarantee, the optimal resource allocation policy is calculated by using the linear programming. Simulation results demonstrate that the system adaptively modifies the resource allocation policy for cloud computing, and determines whether to utilize extra resource for security implementation according to the mobile request type, the current traffic, and the cloud resource availability.
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
Citations
Adaptive Multi-Resource Allocation for Cloudlet-Based Mobile Cloud Computing System
TL;DR: The proposed multi-resource allocation strategy enhances the quality of mobile cloud service, in terms of the system throughput (the number of admitted mobile applications) and the service latency, and outperforms greedy admission control over a broad range of environments.
157
A Novel Approach of Reducing Energy Consumption by Utilizing Enthalpy in Mobile Cloud Computing
TL;DR: An optimized energy efficiency resource management technique is set forth in this study that automatically reduced the knapsack issue, energy and cost, and was benchmarked against the performance of other conventional algorithms.
A load-aware resource allocation and task scheduling for the emerging cloudlet system
Feifei Zhang,Jidong Ge,Zhongjin Li,Zhongjin Li,Chuanyi Li,Chifong Wong,Li Kong,Bin Luo,Victor Chang +8 more
TL;DR: A load-aware resource allocation and task scheduling (LA-RATS) strategy which adaptively allocates resource in MCC system for delay-tolerant and delay-sensitive mobile applications according to cloudlet’s load profile is designed and a tree generation based task backfilling algorithm is proposed to raise the utilization of the cloudlet.
34
SeCARA: A security and cost-aware resource allocation method for mobile cloudlet systems
Hassan Raei,Ensieh Ilkhani,Morteza Nikooghadam +2 more
- 01 Apr 2019
TL;DR: A security and cost-aware resource allocation (SeCARA) method is proposed that exploits an analytical performance-security model of a cloudlet to obtain some necessary performance measures, such as request rejection probability, and simulated annealing algorithms are applied to solve the optimization problems.
15
Toward Secure Resource Allocation in Mobile Cloud Computing: A Matching Game
Talal Halabi,Martine Bellaiche,Adel Abusitta +2 more
- 01 Feb 2019
TL;DR: This paper approaches the problem of resource allocation in MCC from a security perspective using an adapted version of the Gale/Shapley algorithm, which provides stability and computational efficiency and can be implemented in large-scale MCC systems in a fully distributed fashion.
12
References
•Book
Markov Decision Processes: Discrete Stochastic Dynamic Programming
Martin L. Puterman
- 15 Apr 1994
TL;DR: Puterman as discussed by the authors provides a uniquely up-to-date, unified, and rigorous treatment of the theoretical, computational, and applied research on Markov decision process models, focusing primarily on infinite horizon discrete time models and models with discrete time spaces while also examining models with arbitrary state spaces, finite horizon models, and continuous time discrete state models.
12.3K
Markov Decision Processes
P. Whittle,M. L. Puterman +1 more
TL;DR: Markov Decision Processes covers recent research advances in such areas as countable state space models with average reward criterion, constrained models, and models with risk sensitive optimality criteria, and explores several topics that have received little or no attention in other books.
Cloud Computing for Mobile Users: Can Offloading Computation Save Energy?
Kumar Karthik,Yung-Hsiang Lu +1 more
TL;DR: The cloud heralds a new era of computing where application services are provided through the Internet, but is it the ultimate solution for extending such systems' battery lifetimes?
1.7K
An Android Application Sandbox system for suspicious software detection
Thomas Blasing,Leonid Batyuk,Aubrey-Derrick Schmidt,Seyit Camtepe,Sahin Albayrak +4 more
- 13 Dec 2010
TL;DR: An Android Application Sandbox (AASandbox) is proposed which is able to perform both static and dynamic analysis on Android programs to automatically detect suspicious applications and might be used to improve the efficiency of classical anti-virus applications available for the Android operating system.