Self-Adaptive PSO Memetic Algorithm For Multi Objective Workflow Scheduling in Hybrid Cloud

Self-Adaptive PSO Memetic Algorithm For

Multi Objective Workflow Scheduling in Hybrid Cloud

Padmaveni Krishnan and John Aravindhar

Department of Computer Science and Engineering, Hindustan Institute of Technology and Science, India

Abstract: Cloud computing is a technology in distributed computing that facilitate pay per model to solve large scale problems. The main aim of cloud computing is to give optimal access among the distributed resources. Task scheduling in cloud is the allocation of best resource to the demand considering the different parameters like time, makespan, cost, throughput etc. All the workflow scheduling algorithms available cannot be applied in cloud since they fail to integrate the elasticity and heterogeneity in cloud. In this paper, the cloud workflow scheduling problem is modeled considering make span, cost, percentage of private cloud utilization and violation of deadline as four main objectives. Hybrid approach of Particle Swarm Optimization (PSO) and Memetic Algorithm (MA) called Self-Adaptive Particle Swarm Memetic Algorithm (SPMA) is proposed. SPMA can be used by cloud providers to maximize user quality of service and the profit of resource using an entropy optimization model. The heuristic is tested on several workflows. The results obtained shows that SPMA performs better than other state of art algorithms.

Keywords: Cloud computing, memetic algorithm, particle swarm optimization, self-adaptive particle swarm memetic algorithm.

Received April 3, 2017; accepted May 29, 2017
Full text  
Read 1471 times Last modified on Tuesday, 27 August 2019 01:35
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…