An Efficient Meta Scheduling based Virtual Consolidation for Resource Sharing in Green Cloud

Journal Title: Bonfring International Journal of Data Mining - Year 2016, Vol 6, Issue 4

Abstract

In modern researchers, cloud parallel data processing has emerging resource that to be one of the problematic application for Infrastructure-as-a-Service (IaaS) clouds. Major Cloud processing companies include starting incorporate frameworks using VM models for parallel data processing in their resource portfolio creation to easy for a client to access these services and to set out their programs. The growing computing requires from multiple requests on the main server has lead to excessive power utilization. The waiting resource in the long-term sustainability of Cloud like infrastructures in provisions of energy cost but also from cloud environmental perspective. The trouble can be addressed to require with high energy consumption resource sharing infrastructures, but in the process of resources are dynamically switch to new infrastructure. Switching is not enough to cost efficient and also need time sharing green consuming. Cloud being consists of several virtual centers like VMs under the different administrative domain, make a problem more difficult. Thus, for the reduction in energy consumption, this propose address the challenge by effectively distributing compute-intensive parallel applications on the cloud. To propose a Meta-scheduling algorithm, this exploits the heterogeneous nature of Cloud to achieve the reduction in energy consumption as the green cloud. This intent addresses these challenges by proposing a virtual file system specifically optimized for virtual machine image storage. It is based on a lazy transfer scheme coupled with object versioning that handles snapshot ting transparently in a hypervisor-independent fashion, ensuring high portability for different configurations.

Authors and Affiliations

Lakshmi Prabha S, Dhivya R.

Keywords

Related Articles

Data Integration in Big Data Environment 

 Data Integration is the process of transferring the data in source format into the destination format. Many data warehousing and data management approaches has been supported by integration tools for data migration...

Probabilistic Modelling of Hourly Rainfall Data for Development of Intensity-Duration-Frequency Relationships

The rainfall Intensity-Duration-Frequency (IDF) relationship is commonly required for planning and designing of various water resources projects. The IDF relationship is a mathematical relationship between the rainfall i...

Conditional Variables Double Sampling Plan for Weibull Distributed Lifetimes under Sudden Death Testing

n this paper, we propose a conditional sampling plan called conditional double sampling plan for lot acceptance of parts whose life time follows a Weibull distribution with known shape parameter under sudden death testin...

RST Approach for Efficient CARs Mining 

In data mining, an association rule is a pattern that states the occurrence of two items (premises and consequences) together with certain probability. A class association rule set (CARs) is a subset of association rules...

New Approach to Solve Fuzzy Linear Programming Problems by the Ranking Function 

In this paper, a new method is proposed to find the fuzzy optimal solution of fully fuzzy linear programming problems with triangular fuzzy numbers. A computational method for solving fully fuzzy linear programming probl...

Download PDF file
  • EP ID EP403399
  • DOI 10.9756/BIJDM.8303
  • Views 153
  • Downloads 0

How To Cite

Lakshmi Prabha S, Dhivya R. (2016). An Efficient Meta Scheduling based Virtual Consolidation for Resource Sharing in Green Cloud. Bonfring International Journal of Data Mining, 6(4), 39-45. https://europub.co.uk/articles/-A-403399