Abstract — Large scale adoption of MapReduce computations on public clouds is hindered by the lack of trust on the participat-ing virtual machines, because misbehaving worker nodes can compromise the integrity of the computation result. In this paper, we propose a novel MapReduce framework, Cross Cloud MapRe-duce (CCMR), which overlays the MapReduce computation on top of a hybrid cloud: the master that is in control of the entire computation and guarantees result integrity runs on a private and trusted cloud, while normal workers run on a public cloud. In order to achieve high accuracy, CCMR proposes a result integrity check scheme on both the map phase and the reduce phase, which combines random task replication, random task verification, ...
International audienceThe MapReduce programming model, proposed by Google, offers a simple and effic...
Abstract—MapReduce has become increasingly popular as a powerful parallel data processing model. To ...
[Abstract] Scientific computation and data intensive analyses are ever more frequent. On the one han...
Abstract — Large scale adoption of MapReduce computations on public clouds is hindered by the lack o...
MapReduce, a parallel computing paradigm, has been gaining popularity in recent years as cloud vendo...
MapReduce, a parallel computing paradigm, has been gaining popularity in recent years as cloud vendo...
MapReduce is a framework for processing large data sets much used in the context of cloud computing....
We are living in Internet world. Information or data is required on demand wherever, whenever requir...
Tese de doutoramento, Informática (Engenharia Informática), Universidade de Lisboa, Faculdade de Ciê...
Abstract—MapReduce is a framework for processing large data sets largely used in cloud computing. Ma...
10.1145/2523616.2525944Proceedings of the 4th Annual Symposium on Cloud Computing, SoCC 2013
MapReduce is a popular distributed data-processing system for analyzing big data in cloud environmen...
Abstract—We propose an approach for allowing users to assess the integrity of distributed queries co...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
We propose an approach for allowing users to assess the integrity of distributed queries computed by...
International audienceThe MapReduce programming model, proposed by Google, offers a simple and effic...
Abstract—MapReduce has become increasingly popular as a powerful parallel data processing model. To ...
[Abstract] Scientific computation and data intensive analyses are ever more frequent. On the one han...
Abstract — Large scale adoption of MapReduce computations on public clouds is hindered by the lack o...
MapReduce, a parallel computing paradigm, has been gaining popularity in recent years as cloud vendo...
MapReduce, a parallel computing paradigm, has been gaining popularity in recent years as cloud vendo...
MapReduce is a framework for processing large data sets much used in the context of cloud computing....
We are living in Internet world. Information or data is required on demand wherever, whenever requir...
Tese de doutoramento, Informática (Engenharia Informática), Universidade de Lisboa, Faculdade de Ciê...
Abstract—MapReduce is a framework for processing large data sets largely used in cloud computing. Ma...
10.1145/2523616.2525944Proceedings of the 4th Annual Symposium on Cloud Computing, SoCC 2013
MapReduce is a popular distributed data-processing system for analyzing big data in cloud environmen...
Abstract—We propose an approach for allowing users to assess the integrity of distributed queries co...
<p>The computer industry is being challenged to develop methods and techniques for affordable data p...
We propose an approach for allowing users to assess the integrity of distributed queries computed by...
International audienceThe MapReduce programming model, proposed by Google, offers a simple and effic...
Abstract—MapReduce has become increasingly popular as a powerful parallel data processing model. To ...
[Abstract] Scientific computation and data intensive analyses are ever more frequent. On the one han...