The growth in the use of computationally intensive statistical procedures, especially with big data, has necessitated the usage of parallel computation on diverse platforms such as multicore, GPUs, clusters and clouds. However, slowdown due to interprocess communication costs typically limits such methods to "embarrassingly parallel" (EP) algorithms, especially on non-shared memory platforms. This paper develops a broadlyapplicable method for converting many non-EP algorithms into statistically equivalent EP ones. The method is shown to yield excellent levels of speedup for a variety of statistical computations. It also overcomes certain problems of memory limitations
Much of statistical computing is memory-bandwidth limited, not floating-pointing operation throughpu...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Sketches are probabilistic data structures that can provide approx- imate results within mathematica...
In Divide & Recombine (D&R), data are divided into subsets, analytic methodsare applied to each subs...
Designing scalable estimation algorithms is a core challenge in modern statistics. Here we introduce...
This paper introduces the concept of statistical parallelism. The aim of which is to improve computa...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Theoretically, many modern statistical procedures are trivial to parallelize. However, practical de...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In high performance computing environments, we observe an ongoing increase in the available numbers ...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Abstract –We consider estimation of arbitrary range partitioning of data values and ranking of frequ...
AbstractI borrow themes from statistics—epsecially the Bayesian ideas underlying average-case analys...
This is a draft of the first half of a book to be published in 2014 under the Chapman & Hall imp...
Parallel computation has a long history in econometric computing, but is not at all wide spread. We ...
Much of statistical computing is memory-bandwidth limited, not floating-pointing operation throughpu...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Sketches are probabilistic data structures that can provide approx- imate results within mathematica...
In Divide & Recombine (D&R), data are divided into subsets, analytic methodsare applied to each subs...
Designing scalable estimation algorithms is a core challenge in modern statistics. Here we introduce...
This paper introduces the concept of statistical parallelism. The aim of which is to improve computa...
This paper presents two complementary statistical computing frameworks that address challenges in pa...
Theoretically, many modern statistical procedures are trivial to parallelize. However, practical de...
As technology progresses, the processors used for statistical computation are not getting faster: th...
In high performance computing environments, we observe an ongoing increase in the available numbers ...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Abstract –We consider estimation of arbitrary range partitioning of data values and ranking of frequ...
AbstractI borrow themes from statistics—epsecially the Bayesian ideas underlying average-case analys...
This is a draft of the first half of a book to be published in 2014 under the Chapman & Hall imp...
Parallel computation has a long history in econometric computing, but is not at all wide spread. We ...
Much of statistical computing is memory-bandwidth limited, not floating-pointing operation throughpu...
We explore how the big-three computing paradigms---symmetric multiprocessor, graphical processing un...
Sketches are probabilistic data structures that can provide approx- imate results within mathematica...