Abstract

Cloud Computing is rapidly being utilized to operate informational technological services by outstanding technologies for a variety of benefits, including dynamically improved resources planning and a new service delivery method. The Cloud computing process is occurred by allowing the client devices for data access through the internet from a remote server, computers, and the databases. An internet connection is linked among the front end users such as client device, network, browser, and software application with the back end that constitutes of servers, computers, and database. For satisfying the demands of the Service Level Agreement (SLA), providers of cloud service should reduce the usage of energy. Capacity reservations oriented system is available by clouds’ providers to permit users for customizing Virtual Machines (VMs) having specified age and geographic resources, reduces the amount to be paid for cloud services. To overcome the aforementioned issue, an Improved Spider Monkey Optimization (ISMO) approach is proposed for cloud center optimization. The VM consolidation architecture based on the proposed ISMO algorithm decreases energy usage while attempting to prevent Service Level Agreement breaches. The accessibility of hosts or virtual machines (VMs) for task performance is measured by fitness. If the number of tasks to be handled increases the hosts of VMs available at right state. The proposed VM consolidation architecture decreases energy usage while also attempting to prevent Service Level Agreement breaches and also provide energy-efficient computing in data centers. The proposed approach may be utilized to provide energy-efficient computing in data centers. The energy efficiency of the proposed ISMO method is achieved 28266 whereas, the existing algorithm showed an energy efficiency of 6009 and 10001.

Highlights

  • Cloud computing allows the system to have customization Resources on a required network like networks, storage and applications [1]

  • The proposed virtual machines (VMs) consolidation architecture decreases energy usage while attempting to prevent Service Level Agreement breaches and provide energy-efficient computing in data centers

  • The parameters are evaluated based on energy consumption, Performance Degradation due to Migration (PDM), Service Level Agreement (SLA) and Number of VM migration are employed for evaluating the effectiveness of the Improved Spider Monkey Optimization (ISMO) method with existing methods which are discussed as follows:

Read more

Summary

INTRODUCTION

Cloud computing allows the system to have customization Resources on a required network like networks, storage and applications [1]. The IaaS model, cloud data centers consist of many VMs by a single PM with the help of virtualization technology and IaaS suppliers provide compute storage and memory resources to the cloud clients. The Green cloud computing technology is used for handling an efficient data and accomplishing them to secure the resources. It lowers energy utilization which boosts the growth of cloud computing facilities. An increase in Network (or client) devices communicating with the application, prevailing User Interface, Software, Service Cloud Runtime, Storage, Infrastructure, Management, Security data center in cloud computing result in high energy consumption [7].

LITERATURE REVIEW
AND DISCUSSION
Performance Metrics
Comparative Analysis
CONCLUSION
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call