Javascript must be enabled to continue!
PGWO‐AVS‐RDA: An intelligent optimization and clustering based load balancing model in cloud
View through CrossRef
SummaryLoad balancing and task scheduling in cloud have gained a significant attention by many researchers, due to the increased demand of computing resources and services. For this purpose, there are various load balancing methodologies are developed in the existing works, which are mainly focusing on allocating the tasks to Virtual Machines (VMs) based on their priority, order of tasks, and execution time. Still, it facing the major difficulties in finding the best tasks for allocation, because the sequence of patterns are normally used to categorize the relevant tasks with respect to the load. Thus, this research work intends to develop an intelligent group of mechanisms for efficiently allocating the tasks to the VMs by finding the best tasks with respect to the scheduling parameters. Initially, the user tasks are given to the load balancer unit, where the Probabilistic Gray Wolf Optimization (PGWO) technique is used to find the best fitness value for selecting the tasks. Then, the Adaptive Vector Searching (AVS) methodology is utilized to cluster the group of tasks for efficiently allocating the tasks with improved Quality of Service (QoS). Finally, the Recursive Data Acquisition (RDA) based scheduler unit can allocate the clustered tasks to the appropriate VMs in the cloud system by analyzing the properties of storage capacity, balancing load of VM, CPU usage, memory consumption, and execution time of tasks. During evaluation, the performance of the proposed load balancing model is validated by using various measures. Then, the obtained results are compared with some state‐of‐the‐art models for proving the betterment of the proposed scheme.
Title: PGWO‐AVS‐RDA: An intelligent optimization and clustering based load balancing model in cloud
Description:
SummaryLoad balancing and task scheduling in cloud have gained a significant attention by many researchers, due to the increased demand of computing resources and services.
For this purpose, there are various load balancing methodologies are developed in the existing works, which are mainly focusing on allocating the tasks to Virtual Machines (VMs) based on their priority, order of tasks, and execution time.
Still, it facing the major difficulties in finding the best tasks for allocation, because the sequence of patterns are normally used to categorize the relevant tasks with respect to the load.
Thus, this research work intends to develop an intelligent group of mechanisms for efficiently allocating the tasks to the VMs by finding the best tasks with respect to the scheduling parameters.
Initially, the user tasks are given to the load balancer unit, where the Probabilistic Gray Wolf Optimization (PGWO) technique is used to find the best fitness value for selecting the tasks.
Then, the Adaptive Vector Searching (AVS) methodology is utilized to cluster the group of tasks for efficiently allocating the tasks with improved Quality of Service (QoS).
Finally, the Recursive Data Acquisition (RDA) based scheduler unit can allocate the clustered tasks to the appropriate VMs in the cloud system by analyzing the properties of storage capacity, balancing load of VM, CPU usage, memory consumption, and execution time of tasks.
During evaluation, the performance of the proposed load balancing model is validated by using various measures.
Then, the obtained results are compared with some state‐of‐the‐art models for proving the betterment of the proposed scheme.
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...
Transient receptor potential vanilloid 4 calcium channel contributes to valve stiffening in aortic stenosis
Transient receptor potential vanilloid 4 calcium channel contributes to valve stiffening in aortic stenosis
Aortic valve stenosis (AVS) is a progressive disease characterized by fibrosis, inflammation, calcification, and stiffening of the aortic valve leaflets, which leads to impaired bl...
RDA perceptions among Malaysian catalogers
RDA perceptions among Malaysian catalogers
Purpose
– This study aims to investigate Malaysian catalogers’ awareness, familiarity and understanding of the new bibliographic content standard, i.e. Resource Des...
Modelling Agrivoltaics in a climate perspective for water-energy-food nexus analysis
Modelling Agrivoltaics in a climate perspective for water-energy-food nexus analysis
Renewable energies (REs) are increasingly important in addressing the challenge of climate change. Their development and widespread use can significantly reduce greenhouse gas emis...
The establishment of a Norwegian node in RDA
The establishment of a Norwegian node in RDA
Norway has been selected as a new national node in RDA (Research Data Alliance). Until the end of the project in May 2020, the node will be engaging with research communities, supp...
TRPV4 calcium-permeable channel contributes to valve stiffening in aortic stenosis
TRPV4 calcium-permeable channel contributes to valve stiffening in aortic stenosis
Abstract
Aortic valve stenosis (AVS) is a progressive disease marked by fibrosis, inflammation, calcification, and stiffening of the aortic valve leaflets, leading ...
Perceptions of Autonomous Vehicles: A Case Study of Jordan
Perceptions of Autonomous Vehicles: A Case Study of Jordan
Technologies for automated driving have advanced rapidly in recent years. Autonomous Vehicles (AVs) are one example of these recent technologies that deploy elements such as sensor...
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...

