Execution analysis of load balancing particle swarm optimization algorithm in cloud data center

Author(s):  
Manoj Agnihotri ◽  
Sahil Sharma
2018 ◽  
Vol 12 (2) ◽  
pp. 1554-1565 ◽  
Author(s):  
Li-Der Chou ◽  
Hui-Fan Chen ◽  
Fan-Hsun Tseng ◽  
Han-Chieh Chao ◽  
Yao-Jen Chang

2021 ◽  
Vol 2132 (1) ◽  
pp. 012014
Author(s):  
Yunfeng Peng ◽  
Guowei Gao ◽  
Congming Shi ◽  
Hai Liu ◽  
Jianan Wang

Abstract Parallel component applications are often deployed on heterogeneous clusters. Load balancing is very important for their performance requirement. Existing load balancing methods have high performance cost and poor balance effect. Based on the analysis of structures of parallel component applications, we established the mathematical model of load balancing for parallel components on heterogeneous clusters. We use the quantum particle swarm optimization algorithm to search the optimal solution of the proposed mathematical model and determine the best load balancing scheme. Comparing with the methods based on real-time detection and other swarm intelligence optimization algorithms, our method has lower balance cost, less number of iterations and better performance.


Sensors ◽  
2021 ◽  
Vol 21 (18) ◽  
pp. 6212
Author(s):  
Xinying Chen ◽  
Siyi Xiao

An application based on a microservice architecture with a set of independent, fine-grained modular services is desirable, due to its low management cost, simple deployment, and high portability. This type of container technology has been widely used in cloud computing. Several methods have been applied to container-based microservice scheduling, but they come with significant disadvantages, such as high network transmission overhead, ineffective load balancing, and low service reliability. In order to overcome these disadvantages, in this study, we present a multi-objective optimization problem for container-based microservice scheduling. Our approach is based on the particle swarm optimization algorithm, combined parallel computing, and Pareto-optimal theory. The particle swarm optimization algorithm has fast convergence speed, fewer parameters, and many other advantages. First, we detail the various resources of the physical nodes, cluster, local load balancing, failure rate, and other aspects. Then, we discuss our improvement with respect to the relevant parameters. Second, we create a multi-objective optimization model and use a multi-objective optimization parallel particle swarm optimization algorithm for container-based microservice scheduling (MOPPSO-CMS). This algorithm is based on user needs and can effectively balance the performance of the cluster. After comparative experiments, we found that the algorithm can achieve good results, in terms of load balancing, network transmission overhead, and optimization speed.


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