Les rapports de recherche du LIG - ISSN: 2105-0422MapReduce is a popular programming model for distributed data processing. Extensive research has been conducted on the reliability of MapReduce, ranging from adaptive and on-demand fault-tolerance to new fault-tolerance models. However, realistic benchmarks are still missing to analyze and compare the effectiveness of these proposals. To date, most MapReduce fault-tolerance solutions have been evaluated using microbenchmarks in an ad-hoc and overly simplified setting,which may not be representative of real-world applications. This paper presents MRBS, a comprehensive benchmark suite for evaluating the dependability of MapReduce systems. MRBS includes five benchmarks covering several applicat...
Abstract—Over the last 2-3 years, the importance of data-intensive computing has increasingly been r...
AbstractMapReduce is a programming model for parallel data processing widely used in Cloud computing...
Due to the growing size of compute clusters, large scale parallel applications increasingly have to ...
International audienceMapReduce is a popular programming model for distributed data processing. Exte...
International audienceMapReduce provides a convenient means for distributed data processing and auto...
MapReduce is a framework for processing large data sets much used in the context of cloud computing....
[[abstract]]The computing paradigm of MapReduce has gained extreme popularity in the area of large-s...
Tese de doutoramento, Informática (Engenharia Informática), Universidade de Lisboa, Faculdade de Ciê...
The popularity of MapReduce programming model has increased interest in the research community for i...
MapReduce is often used to run critical jobs such as scientific data analysis. However, evidence in ...
Abstract. MapReduce (MR) is the most popular solution to build applications for large-scale data pro...
In the current decade, doing the search on massive data to find “hidden” and valuable information wi...
Abstract—MapReduce is a framework for processing large data sets largely used in cloud computing. Ma...
International audienceMapReduce is a popular programming model for distributed data processing and B...
MapReduce is a programming model for parallel data processing widely used in Cloud computing environ...
Abstract—Over the last 2-3 years, the importance of data-intensive computing has increasingly been r...
AbstractMapReduce is a programming model for parallel data processing widely used in Cloud computing...
Due to the growing size of compute clusters, large scale parallel applications increasingly have to ...
International audienceMapReduce is a popular programming model for distributed data processing. Exte...
International audienceMapReduce provides a convenient means for distributed data processing and auto...
MapReduce is a framework for processing large data sets much used in the context of cloud computing....
[[abstract]]The computing paradigm of MapReduce has gained extreme popularity in the area of large-s...
Tese de doutoramento, Informática (Engenharia Informática), Universidade de Lisboa, Faculdade de Ciê...
The popularity of MapReduce programming model has increased interest in the research community for i...
MapReduce is often used to run critical jobs such as scientific data analysis. However, evidence in ...
Abstract. MapReduce (MR) is the most popular solution to build applications for large-scale data pro...
In the current decade, doing the search on massive data to find “hidden” and valuable information wi...
Abstract—MapReduce is a framework for processing large data sets largely used in cloud computing. Ma...
International audienceMapReduce is a popular programming model for distributed data processing and B...
MapReduce is a programming model for parallel data processing widely used in Cloud computing environ...
Abstract—Over the last 2-3 years, the importance of data-intensive computing has increasingly been r...
AbstractMapReduce is a programming model for parallel data processing widely used in Cloud computing...
Due to the growing size of compute clusters, large scale parallel applications increasingly have to ...