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A cloud computing-based modified symbiotic organisms search Algorithm (AI) for optimal task scheduling

Zubair, Ajoze Abdulraheem and Abd. Razak, Shukor and Ngadi, Md. Asri and Al-Dhaqm, Arafat and Yafooz, Wael M. S. and M. Emara, Abdel Hamid and Saad, Aldosary and Al-Aqrabi, Hussain (2022) A cloud computing-based modified symbiotic organisms search Algorithm (AI) for optimal task scheduling. Sensors, 22 (4). pp. 1-21. ISSN 1424-8220

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Official URL: http://dx.doi.org/10.3390/s22041674

Abstract

The search algorithm based on symbiotic organisms’ interactions is a relatively recent bio-inspired algorithm of the swarm intelligence field for solving numerical optimization problems. It is meant to optimize applications based on the simulation of the symbiotic relationship among the distinct species in the ecosystem. The task scheduling problem is NP complete, which makes it hard to obtain a correct solution, especially for large‐scale tasks. This paper proposes a modified symbiotic organisms search‐based scheduling algorithm for the efficient mapping of heterogeneous tasks to access cloud resources of different capacities. The significant contribution of this technique is the simplified representation of the algorithm’s mutualism process, which uses equity as a measure of relationship characteristics or efficiency of species in the current ecosystem to move to the next generation. These relational characteristics are achieved by replacing the original mutual vector, which uses an arithmetic mean to measure the mutual characteristics with a geometric mean that enhances the survival advantage of two distinct species. The modified symbiotic organisms search algorithm (G_SOS) aims to minimize the task execution time (makespan), cost, response time, and degree of imbalance, and improve the convergence speed for an optimal solution in an IaaS cloud. The performance of the proposed technique was evaluated using a CloudSim toolkit simulator, and the percentage of improvement of the proposed G_SOS over classical SOS and PSO‐SA in terms of makespan minimization ranges between 0.61–20.08% and 1.92–25.68% over a large‐scale task that spans between 100 to 1000 Million Instructions (MI). The solutions are found to be better than the existing standard (SOS) technique and PSO.

Item Type:Article
Uncontrolled Keywords:cloud computing, cloud resource management, convergence speed, ecosystem, geometric mean, symbiotic organisms search algorithm, task scheduling
Subjects:Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Divisions:Computing
ID Code:103998
Deposited By: Yanti Mohd Shah
Deposited On:09 Jan 2024 00:49
Last Modified:09 Jan 2024 00:49

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