The current development of high performance parallel supercomputing infrastructures are pushing the boundaries of applications of science and are bringing new paradigms into engineering practices and simulations. Earthquake engineering is also one of the major fields, which benefits from above by looking for solutions in grid computing and cloud computing techniques. Generally, earthquake simulations involve analysis of petabytes of data. Analyzing these large amounts of data in parallel in thousands of nodes in computer clusters results in gaining high performances. Open source cloud solutions such as Hadoop MapReduce, which is highly scalable and capable of processing large amount of data rapidly in parallel on large clusters provide bett...
Parallelization strategies are presented for Virtual Quake, a numerical simulation code for earthqua...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
We design and implement Mars, a MapReduce runtime system accelerated with graphics processing units ...
We design and implement Mars, a MapReduce runtime system accelerated with graphics processing units ...
Mars-HD was built over Mars, a GPU MapReduce Framework, to allow it to work in the Hadoop cluster...
General-purpose graphics processing units (GPGPU) is used for processing large data set which means ...
As the data growth rate outpace that of the processing capabilities of CPUs, reaching Petascale, tec...
We design and implement Mars, a MapReduce framework, on graphics processors (GPUs). MapReduce is a d...
Map-Reduce is a framework for processing parallelizable problem across huge datasets using a large c...
In this work we present an scientific application that has been given a Hadoop MapReduce implementat...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
As massive data sets become increasingly available, people are facing the problem of how to effectiv...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
This paper introduces MapReduce as a distributed data processing model using open source Ha-doop fra...
Parallelization strategies are presented for Virtual Quake, a numerical simulation code for earthqua...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...
We design and implement Mars, a MapReduce runtime system accelerated with graphics processing units ...
We design and implement Mars, a MapReduce runtime system accelerated with graphics processing units ...
Mars-HD was built over Mars, a GPU MapReduce Framework, to allow it to work in the Hadoop cluster...
General-purpose graphics processing units (GPGPU) is used for processing large data set which means ...
As the data growth rate outpace that of the processing capabilities of CPUs, reaching Petascale, tec...
We design and implement Mars, a MapReduce framework, on graphics processors (GPUs). MapReduce is a d...
Map-Reduce is a framework for processing parallelizable problem across huge datasets using a large c...
In this work we present an scientific application that has been given a Hadoop MapReduce implementat...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
As massive data sets become increasingly available, people are facing the problem of how to effectiv...
The parallelisation of big data is emerging as an important framework for large-scale parallel data ...
This paper introduces MapReduce as a distributed data processing model using open source Ha-doop fra...
Parallelization strategies are presented for Virtual Quake, a numerical simulation code for earthqua...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
University of Minnesota Ph.D. dissertation. June 2016. Major: Computer Science. Advisor: Mohamed Mok...