In recent years there has been an extraordinary growth of large-scale data processing and related technologies in both, industry and academic communities. This trend is mostly driven by the need to explore the increasingly large amounts of information that global companies and communities are able to gather, and has lead the introduction of new tools and models, most of which are designed around the idea of handling huge amounts of data. A good example of this trend towards improved large-scale data processing is MapReduce, a programming model intended to ease the development of massively parallel applications, and which has been widely adopted to process large datasets thanks to its simplicity. While the MapReduce model was originally ...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
posterInternational audienceSystems based on the MapReduce programming model are emerging as a centr...
Recent trends in big data have shown that the amount of data continues to increase at an exponential...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
Deliverable D3.1 of MapReduce ANR projectData volume produced by scientific applications increase at...
In this paper we present a MapReduce task scheduler for shared environments in which MapReduce is ex...
Abstract—This paper develops new schedulability bounds for a simplified MapReduce workflow model. Ma...
International audienceThe MapReduce programming model is widely acclaimed as a key solution to desig...
Part 4: Green Computing and Resource ManagementInternational audienceWe present a resource-aware sch...
In this paper, we explore the feasibility of enabling the scheduling of mixed hard and soft real-tim...
Most common huge volume data processing programs do counting, sorting, merging etc. Such programs re...
Abstract—Next generation data centers will be composed of thousands of hybrid systems in an attempt ...
International audienceMapReduce is a popular programming model for distributed data processing and B...
Orientador: Islene Calciolari GarciaDissertação (mestrado) - Universidade Estadual de Campinas, Inst...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
posterInternational audienceSystems based on the MapReduce programming model are emerging as a centr...
Recent trends in big data have shown that the amount of data continues to increase at an exponential...
In recent years there has been an extraordinary growth of large-scale data processing and related te...
Deliverable D3.1 of MapReduce ANR projectData volume produced by scientific applications increase at...
In this paper we present a MapReduce task scheduler for shared environments in which MapReduce is ex...
Abstract—This paper develops new schedulability bounds for a simplified MapReduce workflow model. Ma...
International audienceThe MapReduce programming model is widely acclaimed as a key solution to desig...
Part 4: Green Computing and Resource ManagementInternational audienceWe present a resource-aware sch...
In this paper, we explore the feasibility of enabling the scheduling of mixed hard and soft real-tim...
Most common huge volume data processing programs do counting, sorting, merging etc. Such programs re...
Abstract—Next generation data centers will be composed of thousands of hybrid systems in an attempt ...
International audienceMapReduce is a popular programming model for distributed data processing and B...
Orientador: Islene Calciolari GarciaDissertação (mestrado) - Universidade Estadual de Campinas, Inst...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
MapReduce is a scalable parallel computing framework for big data processing. It exhibits multiple ...
posterInternational audienceSystems based on the MapReduce programming model are emerging as a centr...
Recent trends in big data have shown that the amount of data continues to increase at an exponential...