Effective Task Scheduling in Cloud Computing Based on Improved Social Learning Optimization Algorithm
TL;DR: SLO is a new swarm intelligence algorithm proposed by simulating the evolution process of human intelligence and has better optimization mechanism and optimization performance and is compared with existing research work on the CloudSim platform.
read more
Abstract: For the typical optimal problem of task scheduling in cloud computing, this paper proposes a novel resource scheduling algorithm based on Social Learning Optimization Algorithm (SLO). SLO is a new swarm intelligence algorithm which is proposed by simulating the evolution process of human intelligence and has better optimization mechanism and optimization performance. This paper proposes two learning operators for task scheduling in cloud computing after analyzing the characteristics of the problem of task scheduling; then, by introducing the Small Position Value (SPV) method, the two learning operators with continuous nature essence are enabled to solve the problem of task scheduling, and then the improved SLO is employed to solve the problem of cloud resource optimal scheduling. Finally, the performance of improved SLO is compared with existing research work on the CloudSim platform. Experimental results show that the approach proposed in this paper has better global optimization ability and convergence speed.
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
Human-Inspired Optimization Algorithms: Theoretical Foundations, Algorithms, Open-Research Issues and Application for Multi-Level Thresholding
TL;DR: A survey and analysis associated with modern compartment of NIOA engineered upon the perception of human behavior and intelligence is presented in this paper , stressing on its theoretical foundations, applications, open research issues and their implications on color satellite image segmentation to further develop Multi-Level Thresholding (MLT) models.
Valuable survey on scheduling algorithms in the cloud with various publications
Nidhi Bansal,Ajay K. Singh +1 more
- 11 Jun 2022
TL;DR: The paper analyzes several research articles published by various publishing houses along with their respective factors as well as their impact value and explained various approaches to stakeholders related to the issues and challenges that come with task scheduling.
6
A multi-objective load balancing and power minimization in cloud using bio-inspired algorithms
TL;DR: In this article , a stable combined process workload allocation method with Cat Swarm Optimization (MG-CSO) is introduced by addressing pre-convergence problems and optimal resource management.
6
Task scheduling to a virtual machine using a multi‐objective mayfly approach for a cloud environment
TL;DR: An entropy‐based multi objective mayfly algorithm is assessed using a convergence pattern in MOO and results prove that the recommended model has an improved performance with regard to factors such as time and utilization rate.
5
References
Genetic algorithms: a survey
M. Srinivas,Lalit M. Patnaik +1 more
TL;DR: The analogy between genetic algorithms and the search processes in nature is drawn and the genetic algorithm that Holland introduced in 1975 and the workings of GAs are described and surveyed.
2.3K
NP-complete scheduling problems
TL;DR: It is shown that the problem of finding an optimal schedule for a set of jobs is NP-complete even in the following two restricted cases, tantamount to showing that the scheduling problems mentioned are intractable.
1.5K
Cloud Computing Resource Scheduling and a Survey of Its Evolutionary Approaches
TL;DR: Through analyzing the cloud computing architecture, this survey first presents taxonomy at two levels of scheduling cloud resources, then paints a landscape of the scheduling problem and solutions, and a comprehensive survey of state-of-the-art approaches is presented systematically.
Review: Cloud computing service composition: A systematic literature review
TL;DR: By dividing the research into four main groups based on the problem-solving approaches and identifying the investigated quality of service parameters, intended objectives, and developing environments, beneficial results and statistics are obtained that can contribute to future research.
441
CLPS-GA: A case library and Pareto solution-based hybrid genetic algorithm for energy-aware cloud service scheduling
TL;DR: A more comprehensive and accurate model for OSCR is formulated and on the basis of classic multi-objective genetic algorithm, a case library and Pareto solution based hybrid Genetic Algorithm (CLPS-GA) is proposed to solve the model.
171