MapReduce is an emerging paradigm for data intensive processing with support of cloud computing technology. MapReduce provides convenient programming interfaces to distribute data intensive works in a cluster environment. The strengths of MapReduce are fault tolerance, an easy programming structure and high scalability. A variety of applications have adopted MapReduce including scientific analysis, web data processing and high performance computing. Data Intensive computing systems, such as Hadoop and Dryad, should provide an efficient scheduling mechanism for enhanced utilization in a shared cluster environment. The problems of scheduling map-reduce jobs are mostly caused by locality and synchronization overhead. Also, there is a need to s...
Data generation has increased drastically over the past few years due to the rapid development of In...
Abstract—MapReduce has achieved tremendous success for large-scale data processing in data centers. ...
Copyright © 2015 Authors. This is an open access article distributed under the Creative Commons Attr...
For large scale parallel applications Mapreduce is a widely used programming model. Mapreduce is an ...
Hadoop is a framework for storing and processing huge volumes of data on clusters. It uses Hadoop Di...
MapReduce is a programming model used by Google to process large amount of data in a distributed com...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
Recent trends in big data have shown that the amount of data continues to increase at an exponential...
MapReduce has achieved tremendous success for large-scale data processing in data centers. A key fea...
MapReduce is a powerful platform for large-scale data processing. To achieve good performance, a Map...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
MapReduce has been widely used as a Big Data processing platform. As it gets popular, its scheduling...
AbSTRACT Hadoop-MapReduce is one of the dominant parallel data processing tool designed for large sc...
In present day scenario cloud has become an inevitable need for majority of IT operational organizat...
Data generation has increased drastically over the past few years due to the rapid development of In...
Abstract—MapReduce has achieved tremendous success for large-scale data processing in data centers. ...
Copyright © 2015 Authors. This is an open access article distributed under the Creative Commons Attr...
For large scale parallel applications Mapreduce is a widely used programming model. Mapreduce is an ...
Hadoop is a framework for storing and processing huge volumes of data on clusters. It uses Hadoop Di...
MapReduce is a programming model used by Google to process large amount of data in a distributed com...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
Recent trends in big data have shown that the amount of data continues to increase at an exponential...
MapReduce has achieved tremendous success for large-scale data processing in data centers. A key fea...
MapReduce is a powerful platform for large-scale data processing. To achieve good performance, a Map...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
MapReduce has been widely used as a Big Data processing platform. As it gets popular, its scheduling...
AbSTRACT Hadoop-MapReduce is one of the dominant parallel data processing tool designed for large sc...
In present day scenario cloud has become an inevitable need for majority of IT operational organizat...
Data generation has increased drastically over the past few years due to the rapid development of In...
Abstract—MapReduce has achieved tremendous success for large-scale data processing in data centers. ...
Copyright © 2015 Authors. This is an open access article distributed under the Creative Commons Attr...