A scheduling algorithm is required to efficiently manage cluster resources in a Hadoop cluster, thereby to increase resource utilization and to reduce response time. The job aware scheduling algorithm schedules non-local map tasks of jobs based on job execution time, earliest deadline first or workload of the job. In this paper, we present the performance evaluation of the job aware scheduling algorithm using MapReduce WordCount benchmark. The experimental results are compared with matchmaking scheduling algorithm. The results show that the job aware scheduling algorithm reduces average waiting time and memory wastage considerably as compared to matchmaking algorithm
The final publication is available at http://link.springer.com/chapter/10.1007/978-3-319-44039-2_21T...
Abstract—Understanding the characteristics of MapReduce workloads in a Hadoop cluster is the key to ...
We live in the era of data explosion and Data Analysis is an important functionality as deluge of da...
Copyright © 2015 Authors. This is an open access article distributed under the Creative Commons Attr...
Hadoop is a framework for storing and processing huge volumes of data on clusters. It uses Hadoop Di...
For large scale parallel applications Mapreduce is a widely used programming model. Mapreduce is an ...
MapReduce is an emerging paradigm for data intensive processing with support of cloud computing tech...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
The MapReduce framework has become the defacto scheme for scalable semi-structured and un-structured...
AbstractWith the accretion in use of Internet in everything, a prodigious influx of data is being ob...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
Abstract—While a traditional Hadoop cluster deployment assumes a homogeneous cluster, many enterpris...
The majority of large-scale data severe applications executed by data centers are based on MapReduce...
Today scenario, we live in the data age and a key metric of existing times is the amount of data tha...
Abstract — The specific choice of workload task schedulers for Hadoop MapReduce applications can hav...
The final publication is available at http://link.springer.com/chapter/10.1007/978-3-319-44039-2_21T...
Abstract—Understanding the characteristics of MapReduce workloads in a Hadoop cluster is the key to ...
We live in the era of data explosion and Data Analysis is an important functionality as deluge of da...
Copyright © 2015 Authors. This is an open access article distributed under the Creative Commons Attr...
Hadoop is a framework for storing and processing huge volumes of data on clusters. It uses Hadoop Di...
For large scale parallel applications Mapreduce is a widely used programming model. Mapreduce is an ...
MapReduce is an emerging paradigm for data intensive processing with support of cloud computing tech...
MapReduce has become a popular high performance computing paradigm for large-scale data processing. ...
The MapReduce framework has become the defacto scheme for scalable semi-structured and un-structured...
AbstractWith the accretion in use of Internet in everything, a prodigious influx of data is being ob...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
Abstract—While a traditional Hadoop cluster deployment assumes a homogeneous cluster, many enterpris...
The majority of large-scale data severe applications executed by data centers are based on MapReduce...
Today scenario, we live in the data age and a key metric of existing times is the amount of data tha...
Abstract — The specific choice of workload task schedulers for Hadoop MapReduce applications can hav...
The final publication is available at http://link.springer.com/chapter/10.1007/978-3-319-44039-2_21T...
Abstract—Understanding the characteristics of MapReduce workloads in a Hadoop cluster is the key to ...
We live in the era of data explosion and Data Analysis is an important functionality as deluge of da...