Javascript must be enabled to continue!
Optimization of cloud load balancing using fitness function and duopoly theory
View through CrossRef
PurposeCurrent industrial scenario is largely dependent on cloud computing paradigms. On-demand services provided by cloud data centre are paid as per use. Hence, it is very important to make use of the allocated resources to the maximum. The resource utilization is highly dependent on the allocation of resources to the incoming request. The allocation of requests is done with respect to the physical machines present in the datacenter. While allocating the tasks to these physical machines, it needs to be allocated in such a way that no physical machine is underutilized or over loaded. To make sure of this, optimal load balancing is very important.Design/methodology/approachThe paper proposes an algorithm which makes use of the fitness functions and duopoly game theory to allocate the tasks to the physical machines which can handle the resource requirement of the incoming tasks. The major focus of the proposed work is to optimize the load balancing in a datacenter. When optimization happens, none of the physical machine is neither overloaded nor under-utilized, hence resulting in efficient utilization of the resources.FindingsThe performance of the proposed algorithm is compared with different existing load balancing algorithms such as round-robin load (RR) ant colony optimization (ACO), artificial bee colony (ABC) with respect to the selected parameters response time, virtual machine migrations, host shut down and energy consumption. All the four parameters gave a positive result when the algorithm is simulated.Originality/valueThe contribution of this paper is towards the domain of cloud load balancing. The paper is proposing a novel approach to optimize the cloud load balancing process. The results obtained show that response time, virtual machine migrations, host shut down and energy consumption are reduced in comparison to few of the existing algorithms selected for the study. The proposed algorithm based on the duopoly function and fitness function brings in an optimized performance compared to the four algorithms analysed.
Title: Optimization of cloud load balancing using fitness function and duopoly theory
Description:
PurposeCurrent industrial scenario is largely dependent on cloud computing paradigms.
On-demand services provided by cloud data centre are paid as per use.
Hence, it is very important to make use of the allocated resources to the maximum.
The resource utilization is highly dependent on the allocation of resources to the incoming request.
The allocation of requests is done with respect to the physical machines present in the datacenter.
While allocating the tasks to these physical machines, it needs to be allocated in such a way that no physical machine is underutilized or over loaded.
To make sure of this, optimal load balancing is very important.
Design/methodology/approachThe paper proposes an algorithm which makes use of the fitness functions and duopoly game theory to allocate the tasks to the physical machines which can handle the resource requirement of the incoming tasks.
The major focus of the proposed work is to optimize the load balancing in a datacenter.
When optimization happens, none of the physical machine is neither overloaded nor under-utilized, hence resulting in efficient utilization of the resources.
FindingsThe performance of the proposed algorithm is compared with different existing load balancing algorithms such as round-robin load (RR) ant colony optimization (ACO), artificial bee colony (ABC) with respect to the selected parameters response time, virtual machine migrations, host shut down and energy consumption.
All the four parameters gave a positive result when the algorithm is simulated.
Originality/valueThe contribution of this paper is towards the domain of cloud load balancing.
The paper is proposing a novel approach to optimize the cloud load balancing process.
The results obtained show that response time, virtual machine migrations, host shut down and energy consumption are reduced in comparison to few of the existing algorithms selected for the study.
The proposed algorithm based on the duopoly function and fitness function brings in an optimized performance compared to the four algorithms analysed.
Related Results
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
CLOUD COMPUTING - NAVIGATING THE DIGITAL SKY
“Cloud Computing – Navigating the Digital Sky” is an extensive guide designed to provide a thorough understanding of cloud computing, an essential technology in today’s digital age...
Multiobjective Dynamic Resource Allocation in Cloud Computing using Harris Hawk Optimization Algorithm (MDLB-HHO)
Multiobjective Dynamic Resource Allocation in Cloud Computing using Harris Hawk Optimization Algorithm (MDLB-HHO)
Effective load balancing and resource distribution strategies are
essential for optimizing performance and resource usage in cloud
computing. Cloud computing necessitates flexible,...
Hybrid Red Fox and Remora Optimization Algorithm Expedites Optimal Load Balancing in Cloud Computing
Hybrid Red Fox and Remora Optimization Algorithm Expedites Optimal Load Balancing in Cloud Computing
Abstract
Cloud task scheduling poses a complex optimization challenge due to dynamic nature of the cloud system and varying user demands. The system's load, determined by t...
Enhanced Throttled Load Balancing for Virtual Machine Allocation in Multiple Data Centers
Enhanced Throttled Load Balancing for Virtual Machine Allocation in Multiple Data Centers
”Cloud computing” hosts software and other services in remote data centers that customers can access worldwide. The user may access all the services and applications online. The IT...
Developing Total Force Fitness and Its Components to Achieve Optimal Military Performance in Iran
Developing Total Force Fitness and Its Components to Achieve Optimal Military Performance in Iran
Abstract
Background Military personnel is the most valuable asset of the armed forces to carry out missions. The Iranian Armed Forces have not provided a comprehensive defi...
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Cloud computing has become a critical component of modern IT infrastructure, offering businesses scalability, flexibility, and cost efficiency. Unoptimized cloud migration strategi...
Hybrid Cloud Scheduling Method for Cloud Bursting
Hybrid Cloud Scheduling Method for Cloud Bursting
In the paper, we consider the hybrid cloud model used for cloud bursting, when the computational capacity of the private cloud provider is insufficient to deal with the peak number...
THE ROLE OF CLOUD COMPUTING IN SCALING E-COMMERCE BUSINESSES
THE ROLE OF CLOUD COMPUTING IN SCALING E-COMMERCE BUSINESSES
In the rapidly evolving digital landscape, e-commerce has emerged as a cornerstone of global trade, necessitating robust, scalable solutions to accommodate increasing consumer dema...

