Most common huge volume data processing programs do counting, sorting, merging etc. Such programs require to perform first a computation on each record that is it requires to map an operation to each record. Then combine the output of these operations in appropriate way to get the answer that is apply a reduce operation to groups of records. MapReduce runtime environment takes care of parallelizing their execution and coordinating their inputs/outputs. Here we are concern about energy efficiency in MapReduce framework so we are proposing dynamic scheduling of workload which offers dynamic load balancing method. Load balancing is the methodology of distributing the load among different node of a distributed framework to enhance both resource...
MapReduce is a famous model for data-intensive parallel com-puting in shared-nothing clusters. One o...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
Part 4: Green Computing and Resource ManagementInternational audienceWe present a resource-aware sch...
The majority of large-scale data intensive applications carried out by information centers are based...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
[[abstract]]MapReduce is a distributed and parallel computing model for data-intensive tasks with fe...
Abstract—The majority of large-scale data intensive appli-cations executed by data centers are based...
Running multiple instances of the MapReduce framework concurrently in a multicluster system or datac...
The majority of large-scale data intensive applications executed by data centers are based on MapRed...
The success of modern applications depends on the insights they collect from their data repositories...
Summary Hadoop is a large-scale distributed processing infrastructure, designed to efficiently distr...
Deliverable D3.1 of MapReduce ANR projectData volume produced by scientific applications increase at...
International audienceThe MapReduce programming model is widely acclaimed as a key solution to desig...
Over the last ten years MapReduce has emerged as one of the staples of distributed computing both in...
Abstract—MapReduce has become a popular framework for Big Data applications. While MapReduce has rec...
MapReduce is a famous model for data-intensive parallel com-puting in shared-nothing clusters. One o...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
Part 4: Green Computing and Resource ManagementInternational audienceWe present a resource-aware sch...
The majority of large-scale data intensive applications carried out by information centers are based...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
[[abstract]]MapReduce is a distributed and parallel computing model for data-intensive tasks with fe...
Abstract—The majority of large-scale data intensive appli-cations executed by data centers are based...
Running multiple instances of the MapReduce framework concurrently in a multicluster system or datac...
The majority of large-scale data intensive applications executed by data centers are based on MapRed...
The success of modern applications depends on the insights they collect from their data repositories...
Summary Hadoop is a large-scale distributed processing infrastructure, designed to efficiently distr...
Deliverable D3.1 of MapReduce ANR projectData volume produced by scientific applications increase at...
International audienceThe MapReduce programming model is widely acclaimed as a key solution to desig...
Over the last ten years MapReduce has emerged as one of the staples of distributed computing both in...
Abstract—MapReduce has become a popular framework for Big Data applications. While MapReduce has rec...
MapReduce is a famous model for data-intensive parallel com-puting in shared-nothing clusters. One o...
MapReduce is a popular parallel computing paradigm for large-scale data processing in clusters and d...
Part 4: Green Computing and Resource ManagementInternational audienceWe present a resource-aware sch...