Abstract — Applying high level parallel runtimes to data/compute intensive applications is becoming increasingly common. The simplicity of the MapReduce programming model and the availability of open source MapReduce runtimes such as Hadoop, are attracting more users to the MapReduce programming model. Recently, Microsoft has released DryadLINQ for academic use, allowing users to experience a new programming model and a runtime that is capable of performing large scale data/compute intensive analyses. In this paper, we present our experience in applying DryadLINQ for a series of scientific data analysis applications, identify their mapping to the DryadLINQ programming model, and compare their performances with Hadoop implementations of the ...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
Data is growing at every moment which makes it almost impossible to process all of it. More than a d...
Applying high level parallel runtimes to data/compute intensive applications is becoming increasingl...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
In this work we present an scientific application that has been given a Hadoop MapReduce implementat...
Abstract — Cloud Computing is emerging as a new computational paradigm shift.Hadoop MapReduce has be...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
In the recent years, large-scale data analysis has become critical to the success of modern enterpri...
Abstract—Cloud-based systems and the datacenter computing environment present a series of challenges...
International audienceThe exponential growth of scientific and business data has resulted in the evo...
Cloud Computing has gained a lot of popularity in recent years because of the flexibility that it of...
The exponential growth of scientic and business data has resulted in theevolution of the cloud compu...
As the data growth rate outpace that of the processing capabilities of CPUs, reaching Petascale, tec...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
Data is growing at every moment which makes it almost impossible to process all of it. More than a d...
Applying high level parallel runtimes to data/compute intensive applications is becoming increasingl...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
In this work we present an scientific application that has been given a Hadoop MapReduce implementat...
Abstract — Cloud Computing is emerging as a new computational paradigm shift.Hadoop MapReduce has be...
Big Data such as Terabyte and Petabyte datasets are rapidly becoming the new norm for various organi...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
In the recent years, large-scale data analysis has become critical to the success of modern enterpri...
Abstract—Cloud-based systems and the datacenter computing environment present a series of challenges...
International audienceThe exponential growth of scientific and business data has resulted in the evo...
Cloud Computing has gained a lot of popularity in recent years because of the flexibility that it of...
The exponential growth of scientic and business data has resulted in theevolution of the cloud compu...
As the data growth rate outpace that of the processing capabilities of CPUs, reaching Petascale, tec...
Cloud computing, with its promise of virtually infinite resources, seems to suit well in solving res...
Big Data analytics is increasingly performed using the MapReduce paradigm and its open-source implem...
Data is growing at every moment which makes it almost impossible to process all of it. More than a d...