Multi Scheduling Reactive Resource Sharing for Dynamic Dataflow in Cloud Environment

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

Abstract

In recent years cloud parallel data processing has emerged to be one of the killer applications for Infrastructure-as-a-Service (IaaS) clouds. Major Cloud computing companies have started to integrate frameworks for parallel data processing in their product portfolio making it easy for customers to access these services and to deploy their programs. The growing computing demand from industry and academia has lead to excessive power consumption which not only impacting long term sustainability of Cloud like infrastructures in terms of energy cost but also from environmental perspective. The problem can be addressed by replacing with more energy efficient infrastructures, but the process of switching to new infrastructure is not only costly but also time consuming. Cloud being consist of several extended centers under different administrative domain, make problem more difficult. Thus, for reduction in energy consumption, the proposed work address the challenge by effectively distributing compute-intensive parallel applications on cloud. This proposes a Meta scheduling algorithm which exploits the heterogeneous nature of Cloud to achieve reduction in energy consumption.

Authors and Affiliations

Gokila L, Poongodi V, Thangadurai Dr. K

Keywords

Related Articles

Factorial Dimensions of Employee Engagement in Public and Private Sector Banks

Employee engagement is the level of commitment and involvement an employee has towards his organization and its values. An engaged employee is aware of business context, and works with colleagues to improve performance w...

An Analytical Study on Early Diagnosis and Classification of Diabetes Mellitus 

Diabetes mellitus (DM) is a chronic, general, life-threatening syndrome occurring all around the world. It is characterized by hyperglycemia occurring due to abnormalities in insulin secretion which would in turn result...

Improving Efficiency of Apriori Algorithms for Sequential Pattern Mining 

Computer Systems are exposed to an increasing number of different types of security threats due to the expanding of internet in recent years. How to detect network intrusions effectively becomes an important security tec...

On the Study of Risk Factors of Ca. Cervix and Ca. Breast: a Case Study in Assam

Ca.cervix and ca.breast are the most common life threatening cancers among women worldwide and the same is true for north east region of India also. So these two cancers remain a serious public health problem worldwide....

Consensus Clustering for Microarray Gene Expression Data 

Cluster analysis in microarray gene expression studies is used to find groups of correlated and co-regulated genes. Several clustering algorithms are available in the literature. However no single algorithm is optimal fo...

Download PDF file
  • EP ID EP403436
  • DOI 10.9756/BIJDM.8307
  • Views 133
  • Downloads 0

How To Cite

Gokila L, Poongodi V, Thangadurai Dr. K (2016). Multi Scheduling Reactive Resource Sharing for Dynamic Dataflow in Cloud Environment. Bonfring International Journal of Data Mining, 6(4), 46-52. https://www.europub.co.uk/articles/-A-403436