Abstract

Cloud computing has emerged as the most favorable computing platform for researchers and industry. The load balanced task scheduling has emerged as an important and challenging research problem in the Cloud computing. Swarm intelligence-based meta-heuristic algorithms are considered more suitable for Cloud scheduling and load balancing. The optimization procedure of swarm intelligence-based meta-heuristics consists of two major components that are the local and global search. These algorithms find the best position through the local and global search. To achieve an optimized mapping strategy for tasks to the resources, a balance between local and global search plays an effective role. The inertia weight is an important control attribute to effectively adjust the local and global search process. There are many inertia weight strategies; however, the existing approaches still require fine-tuning to achieve optimum scheduling. The selection of a suitable inertia weight strategy is also an important factor. This paper contributed an adaptive Particle Swarm Optimisation (PSO) based task scheduling approach that reduces the task execution time, and increases throughput and Average Resource Utilization Ratio (ARUR). Moreover, an adaptive inertia weight strategy namely Linearly Descending and Adaptive Inertia Weight (LDAIW) is introduced. The proposed scheduling approach provides a better balance between local and global search leading to an optimized task scheduling. The performance of the proposed approach has been evaluated and compared against five renown PSO based inertia weight strategies concerning makespan and throughput. The experiments are then extended and compared the proposed approach against the other four renowned meta-heuristic scheduling approaches. Analysis of the simulated experimentation reveals that the proposed approach attained up to 10%, 12% and 60% improvement for makespan, throughput and ARUR respectively.

Highlights

  • IntroductionCloud Computing has revolutionized computing technology, where computing resources are accessed globally through the Internet [1]

  • The results concerning the makespan for the AdPSO and available state-ofthe-art approaches are plotted in Figure 1 for i_hilo, c_hilo, c_lohi, and i_lohi instances of the HCSP benchmark dataset. These results shows that Simple Random Inertia Weight (SRIW), Chaotic Random Inertia Weight (CRIW) approaches has shown poor makespan performance for all the four instances of HCSP dataset

  • The AdPSO technique is capable to lower the makespan for all instances of HCSP dataset and improved by 1–7 % on i_hilo, 2–11% on c_hilo, 1–5%

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Summary

Introduction

Cloud Computing has revolutionized computing technology, where computing resources are accessed globally through the Internet [1]. These resources are provided in the form of services that can be and dynamically scaled-up and scaled-down by the. The Cloud services are provided on a pay-as-go basis [4] to the users. A Cloud service provider acquires Cloud resources and provides these resources to the Cloud users according to their requirements. A Cloud data center represents the computing power of a Cloud which may contain hundreds of thousands of host machines. Each host on the data center may have one or more Virtual

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