International Journal of Emerging Trends & Technology in Computer Science
A Motivation for Recent Innovation & Research
ISSN 2278-6856
www.ijettcs.org
Call for Paper, Published Articles, Indexing Infromation
Title: |
Analysis of Dynamic Data Placement Strategy for Heterogeneous Hadoop Cluster
|
Author Name: |
Richa Jain, Amit Saxena, Dr. Manish Manoriya |
Abstract: |
ABSTRACT
MapReduce has become a very important distributed process
model for large scale data-intensive applications like Web
Data and Data Mining. Hadoop is an open source
implementation of MapReduce is wide used for large data
processing which requires low time response. This paper,
address the matter of approach to place data across nodes in
an exceedingly way that every node contains a balanced
processing load. Given an Data intensive application running
on a Hadoop MapReduce cluster, our Data placement theme
adaptively balances the number of knowledge hold on in every
node to realize improved data-processing performance.
Experimental results show that our Data placement strategy
will forever improve the MapReduce performance by
rebalancing information across nodes before playacting a data
intensive application in an exceedingly heterogeneous Hadoop
cluster. It is necessary for data placement algorithms to
partition the input and intermediate data supported the
computing capacities of the nodes within the cluster. This
Hadoop implementation assumes that each node in an
exceedingly cluster has an equivalent computing capability
which the tasks are data-local, which can increase further on
top of and scale back MapReduce performance. This paper
proposes a dynamic data placement algorithm to resolve the
unbalanced node employment downside. The planned
technique will dynamically adapt and balance data hold on in
every node supported the computing capability of every node
in an exceedingly heterogeneous Hadoop cluster. The planned
algorithm will scale back data transfer time to realize
improved Hadoop performance. The experimental results
show that the dynamic information placement policy will
decrease the time of execution and improve Hadoop
performance in an exceedingly heterogeneous cluster.
Keywords:-Hadoop, MapReduce, Heterogeneous, Data
Placement |
Cite this article: |
Richa Jain, Amit Saxena, Dr. Manish Manoriya , "
Analysis of Dynamic Data Placement Strategy for Heterogeneous Hadoop Cluster " , International Journal of Emerging Trends & Technology in Computer Science (IJETTCS),
Volume 4, Issue 4, July - August 2015 , pp.
123-130 , ISSN 2278-6856.
|