MapReduce has achieved tremendous success for large-scale data processing in data centers. A key feature distinguishing MapReduce from previous parallel models is that it interleaves parallel and sequential computation. Past schemes, and especially their theoretical bounds, on general parallel models are therefore, unlikely to be applied to MapReduce directly. There are many recent studies on MapReduce job and task scheduling. These studies assume that the servers are assigned in advance. In current data centers, multiple MapReduce jobs of different importance levels run together. In this paper, we investigate a schedule problem for MapReduce taking server assignment into consideration as well. We formulate a MapReduce server-job organizer ...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
Abstract—MapReduce has achieved tremendous success for large-scale data processing in data centers. ...
MapReduce is an emerging paradigm for data intensive processing with support of cloud computing tech...
Abstract—This paper develops new schedulability bounds for a simplified MapReduce workflow model. Ma...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
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...
In this paper, we explore the feasibility of enabling the scheduling of mixed hard and soft real-tim...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
ABSTRACT MapReduce is a scalable parallel computing framework for big data processing. It exhibits m...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
Data generation has increased drastically over the past few years due to the rapid development of In...
In this paper we present a MapReduce task scheduler for shared environments in which MapReduce is ex...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...
Abstract—MapReduce has achieved tremendous success for large-scale data processing in data centers. ...
MapReduce is an emerging paradigm for data intensive processing with support of cloud computing tech...
Abstract—This paper develops new schedulability bounds for a simplified MapReduce workflow model. Ma...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
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...
In this paper, we explore the feasibility of enabling the scheduling of mixed hard and soft real-tim...
Cloud computing has emerged as a model that harnesses massive capacities of data centers to host ser...
ABSTRACT MapReduce is a scalable parallel computing framework for big data processing. It exhibits m...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
Data generation has increased drastically over the past few years due to the rapid development of In...
In this paper we present a MapReduce task scheduler for shared environments in which MapReduce is ex...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
MapReduce can speed up the execution of jobs operating over big data. A MapReduce job can be divided...