Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Enhanced Throttled Load Balancing for Virtual Machine Allocation in Multiple Data Centers

View through CrossRef
”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 industry has benefited greatly from the proliferation of cloud computing. On the flip side, organizations moved their operations to the cloud as a result of industrial automation. A surge in demand for cloud computing was directly correlated to the quick migration of businesses. Businesses looking to minimize expenses without sacrificing service quality will find this approach to be ideal. Considering the meteoric rise of cloud computing, service providers are delighted. Contrarily, distributing resources is a challenging task. Cloud computing overcomes some of its most fundamental obstacles, one of which is the load-balancing approach employed by load-balancers to economically optimize costs while minimizing time expenditures. Quick services for cloud customers and minimal cost for cloud providers are the goals of the optimal resource allocation method. This research suggests a novel approach to increase task processing time, which can aid in increasing cloud computing’s load balancing capabilities. The proposed method Enhanced Throttled Load Balancing Algorithm (ETLBA) is an upgrade to the original Throttled Algorithm, which efficiently performs resource allocation and load balancing. The proposed ETLBA is contrasted with the existing algorithms, Round Robin, Active Monitoring Load Balancing Algorithm (AMLBA) and Throttled Load Balancing Algorithm (TLBA) to display the efficacy. Cloud Analyst tool simulates the proposed and existing methods. According on the results of the simulations, the proposed algorithm ETLBA achieves better outcomes than the popular existing algorithms in terms of processing time, request processing time, and datacenter cost. It shows 18% reduction in response time, 7% reduction in data center processing time, 16% reduction in data center request processing time and 4% less data center cost compared to the existing solutions. ETLBA performs better by selecting virtual machines using a prioritized indextable and consumption index. It limits idling resources, improves response as well as reduces processing times, and cloud costs compared to conventional solutions.
Title: Enhanced Throttled Load Balancing for Virtual Machine Allocation in Multiple Data Centers
Description:
”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 industry has benefited greatly from the proliferation of cloud computing.
On the flip side, organizations moved their operations to the cloud as a result of industrial automation.
A surge in demand for cloud computing was directly correlated to the quick migration of businesses.
Businesses looking to minimize expenses without sacrificing service quality will find this approach to be ideal.
Considering the meteoric rise of cloud computing, service providers are delighted.
Contrarily, distributing resources is a challenging task.
Cloud computing overcomes some of its most fundamental obstacles, one of which is the load-balancing approach employed by load-balancers to economically optimize costs while minimizing time expenditures.
Quick services for cloud customers and minimal cost for cloud providers are the goals of the optimal resource allocation method.
This research suggests a novel approach to increase task processing time, which can aid in increasing cloud computing’s load balancing capabilities.
The proposed method Enhanced Throttled Load Balancing Algorithm (ETLBA) is an upgrade to the original Throttled Algorithm, which efficiently performs resource allocation and load balancing.
The proposed ETLBA is contrasted with the existing algorithms, Round Robin, Active Monitoring Load Balancing Algorithm (AMLBA) and Throttled Load Balancing Algorithm (TLBA) to display the efficacy.
Cloud Analyst tool simulates the proposed and existing methods.
According on the results of the simulations, the proposed algorithm ETLBA achieves better outcomes than the popular existing algorithms in terms of processing time, request processing time, and datacenter cost.
It shows 18% reduction in response time, 7% reduction in data center processing time, 16% reduction in data center request processing time and 4% less data center cost compared to the existing solutions.
ETLBA performs better by selecting virtual machines using a prioritized indextable and consumption index.
It limits idling resources, improves response as well as reduces processing times, and cloud costs compared to conventional solutions.

Related Results

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,...
Zhong-Yong as dynamic balancing between Yin-Yang opposites
Zhong-Yong as dynamic balancing between Yin-Yang opposites
Purpose The purpose of this paper is to comment on Peter Ping Li’s understanding of Zhong-Yong balancing, presented in his article titled “Global implications of the indigenous epi...
Crane Load Moment System For Offshore Crane Operations
Crane Load Moment System For Offshore Crane Operations
Abstract History has shown that dependency upon the crane operator to monitor loads and boom angle or load radius do not allow the margin necessary to perform the...
Fuzzy Dynamic Load Balancing in Virtualized Data Centers of SaaS Cloud Provider
Fuzzy Dynamic Load Balancing in Virtualized Data Centers of SaaS Cloud Provider
Cloud computing provides a robust infrastructure that can facilitate computing power as a utility service. All the virtualized services are made available to end users in a pay-as-...
EFEKTIFITAS PELATIHAN LABORATORIUM VIRTUAL SEBAGAI MEDIA PEMBELAJARAN BAGI GURU KIMIA
EFEKTIFITAS PELATIHAN LABORATORIUM VIRTUAL SEBAGAI MEDIA PEMBELAJARAN BAGI GURU KIMIA
EFFECTIVITY OF VIRTUAL LABORATORY TRAINING AS A LEARNING MEDIA FOR CHEMISTRY TEACHERSAchmad Lutfi, SukarminUniversitas Negeri Surabaya, Indonesia achmadlutfi@unesa.ac.idAbstractThe...
Improved Model of Load Balancing in the Infocommunication Network
Improved Model of Load Balancing in the Infocommunication Network
The paper proposes an improved mathematical model of load balancing in the infocommunication network (ICN), corresponding to the Traffic Engineering (TE) concept principles. The mo...
Optimization of cloud load balancing using fitness function and duopoly theory
Optimization of cloud load balancing using fitness function and duopoly theory
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 import...
Solar-Powered Wireless Load Cell Application in Kuwait's Field
Solar-Powered Wireless Load Cell Application in Kuwait's Field
Abstract Artificial-lift systems account for a major portion of Kuwait's heavy-oil production infrastructure. Among these, the sucker rod pump remains the most ec...

Back to Top