Distributed Computing has achieved tremendous development since cloud computing was proposed in 2006, and played a vital role promoting rapid growth of data collecting and analysis models, e.g., Internet of things, Cyber-Physical Systems, Big Data Analytics, etc. Hadoop has become a data convergence platform for sensor networks. As one of the core components, MapReduce facilitates allocating, processing and mining of collected large-scale data, where speculative execution strategies help solve straggler problems. However, there is still no efficient solution for accurate estimation on execution time of run-time tasks, which can affect task allocation and distribution in MapReduce. In this paper, task execution data have been collected and e...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
The mapping problem has been studied extensively and many algorithms have been proposed. However, un...
We tackle the problem of predicting the performance of MapReduce applications designing accurate pro...
Distributed Computing has achieved tremendous development since cloud computing was proposed in 2006...
Masteroppgave i informasjons- og kommunikasjonsteknologi IKT590 2011 – Universitetet i Agder, Grims...
Big data and its analysis are in the focus of current era. The volume of data production is tremendo...
In the last years, Cloud Computing has become a key technology that made possible to run application...
Nowadays MapReduce and its open source implementation, Apache Hadoop, are the most widespread soluti...
Abstract—While a traditional Hadoop cluster deployment assumes a homogeneous cluster, many enterpris...
MapReduce is a popular programming model for distributed processing of large data sets. Apache Hadoo...
MapReduce is a popular programming model for distributed processing of large data sets. Apache Hadoo...
Hadoop MapReduce is the community accepted platform that deals with the gigantic data in an efficien...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
irected Acyclic Graph (DAG) workflows are widely used for large-scale data analytics in cluster-base...
Hadoop performance modeling and job optimization for big data analytics i Big dat...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
The mapping problem has been studied extensively and many algorithms have been proposed. However, un...
We tackle the problem of predicting the performance of MapReduce applications designing accurate pro...
Distributed Computing has achieved tremendous development since cloud computing was proposed in 2006...
Masteroppgave i informasjons- og kommunikasjonsteknologi IKT590 2011 – Universitetet i Agder, Grims...
Big data and its analysis are in the focus of current era. The volume of data production is tremendo...
In the last years, Cloud Computing has become a key technology that made possible to run application...
Nowadays MapReduce and its open source implementation, Apache Hadoop, are the most widespread soluti...
Abstract—While a traditional Hadoop cluster deployment assumes a homogeneous cluster, many enterpris...
MapReduce is a popular programming model for distributed processing of large data sets. Apache Hadoo...
MapReduce is a popular programming model for distributed processing of large data sets. Apache Hadoo...
Hadoop MapReduce is the community accepted platform that deals with the gigantic data in an efficien...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
irected Acyclic Graph (DAG) workflows are widely used for large-scale data analytics in cluster-base...
Hadoop performance modeling and job optimization for big data analytics i Big dat...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
The mapping problem has been studied extensively and many algorithms have been proposed. However, un...
We tackle the problem of predicting the performance of MapReduce applications designing accurate pro...