Big Bayes is the computationally intensive co-application of big data and large, expressive Bayesian models for the analysis of complex phenomena in scientific inference and statistical learning. Standing as an example, Bayesian multidimensional scaling (MDS) can help scientists learn viral trajectories through space-time, but its computational burden prevents its wider use. Crucial MDS model calculations scale quadratically in the number of observations. We partially mitigate this limitation through massive parallelization using multi-core central processing units, instruction-level vectorization and graphics processing units (GPUs). Fitting the MDS model using Hamiltonian Monte Carlo, GPUs can deliver more than 100-fold speedups over seri...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Anyone working in machine learning requires a particular balance between multiple disciplines. A sol...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Much of statistical computing is memory-bandwidth limited, not floating-pointing operation throughpu...
This thesis aims to scale Bayesian machine learning (ML) to very large datasets. First, I propose a ...
This work expounds a computationally expedient strategy for the fully Bayesian treatment of high-dim...
Many applications in Bayesian statistics are extremely computationally intensive. However, they are ...
This article describes advances in statistical computation for large-scale data analy-sis in structu...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
Bayesian statistics has emerged as a leading paradigm for the analysis of complicated datasets and f...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
Abstract—Explosive growth in data and availability of cheap computing resources have sparked increas...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
Computational Phylogenetics is classed as a grand challenge data driven problem in the fourth paradi...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Anyone working in machine learning requires a particular balance between multiple disciplines. A sol...
Computational intensity and sequential nature of estimation techniques for Bayesian methods in stati...
Much of statistical computing is memory-bandwidth limited, not floating-pointing operation throughpu...
This thesis aims to scale Bayesian machine learning (ML) to very large datasets. First, I propose a ...
This work expounds a computationally expedient strategy for the fully Bayesian treatment of high-dim...
Many applications in Bayesian statistics are extremely computationally intensive. However, they are ...
This article describes advances in statistical computation for large-scale data analy-sis in structu...
Abstract Motivation Bayesian inference is widely used nowadays and relies largely on Markov chain Mo...
Bayesian statistics has emerged as a leading paradigm for the analysis of complicated datasets and f...
Computer simulations play a vital role in the modeling of infectious diseases. Different modeling re...
Abstract—Explosive growth in data and availability of cheap computing resources have sparked increas...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
Computational Phylogenetics is classed as a grand challenge data driven problem in the fourth paradi...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Anyone working in machine learning requires a particular balance between multiple disciplines. A sol...