Map-Reduce is a programming model widely used for processing large data sets on scientific clusters. Most of the efforts and research are focused on enhancing and alleviating the drawbacks of the model proposed by Google. The requirements of Map-Reduce based applications are often unclear because of the difficulty in satisfying the overall system throughput, as well as exploring alternatives to obtain a good tradeoff between the performance of basic systems such as storage, networking and CPU. In this paper we present an evaluation of the compared performance of scaling up scientific computing systems using a Map-Reduce application model. This work is specifically focused on medium-size multi-core systems, frequently used by researchers to ...
Abstract. This paper describes the result of performance evaluation of two kinds of MapReduce applic...
Cluster computer systems assembled from commodity off-the-shelf components have emerged as a viable ...
Scientific applications are critical for solving complex problems in many areas of research, and oft...
Map-Reduce is a programming model widely used for processing large data sets on scientific clusters....
AbstractMap-Reduce is a programming model widely used for processing large data sets on scientific c...
Parallel programming languages have sought out many dif-ferent means by which many numbers of cores ...
AbstractSatisfying the global throughput targets of scientific applications is an important challeng...
AbstractParallel processing has become the most common solution for developing and executing scienti...
Abstract—MapReduce has emerged as a popular and easy-to-use programming model for numerous organizat...
Parallel processing has become the most common solution for developing and executing scientific comp...
Scientific applications will have to scale to many thousands of processor cores to reach petascale. ...
In this paper we examine how application performance scales on a state-of-the-art shared virtual mem...
Although cluster environments have an enormous potential processing power, real applications that ta...
Abstract. Performance of distributed applications largely depends on the mapping of their components...
Implementations of map-reduce are being used to perform many operations on very large data. We explo...
Abstract. This paper describes the result of performance evaluation of two kinds of MapReduce applic...
Cluster computer systems assembled from commodity off-the-shelf components have emerged as a viable ...
Scientific applications are critical for solving complex problems in many areas of research, and oft...
Map-Reduce is a programming model widely used for processing large data sets on scientific clusters....
AbstractMap-Reduce is a programming model widely used for processing large data sets on scientific c...
Parallel programming languages have sought out many dif-ferent means by which many numbers of cores ...
AbstractSatisfying the global throughput targets of scientific applications is an important challeng...
AbstractParallel processing has become the most common solution for developing and executing scienti...
Abstract—MapReduce has emerged as a popular and easy-to-use programming model for numerous organizat...
Parallel processing has become the most common solution for developing and executing scientific comp...
Scientific applications will have to scale to many thousands of processor cores to reach petascale. ...
In this paper we examine how application performance scales on a state-of-the-art shared virtual mem...
Although cluster environments have an enormous potential processing power, real applications that ta...
Abstract. Performance of distributed applications largely depends on the mapping of their components...
Implementations of map-reduce are being used to perform many operations on very large data. We explo...
Abstract. This paper describes the result of performance evaluation of two kinds of MapReduce applic...
Cluster computer systems assembled from commodity off-the-shelf components have emerged as a viable ...
Scientific applications are critical for solving complex problems in many areas of research, and oft...