Description Compute Unified Device Architecture (CUDA) is a software platform for massively parallel high-performance computing on NVIDIA GPUs. This package provides a CUDA implementation of a Bayesian multilevel model for the analysis of brain fMRI data. A fMRI data set consists of time series of volume data in 4D space. Typically, volumes are collected as slices of 64 x 64 voxels. Analysis of fMRI data often relies on fitting linear regression models at each voxel of the brain. The volume of the data to be processed, and the type of statistical analysis to perform in fMRI analysis, call for high-performance computing strategies. In this package, the CUDA programming model uses a separate thread for fitting a linear regression model at eac...
Recent advances in multi-core processors and graphics card based computational technologies have pav...
Abstract — GPU based on CUDA Architecture developed by NVIDIA is a high performance computing device...
Abstract: Solving problems in bioinformatics often needs extensive computational power. Current tren...
Graphic processing units (GPUs) are rapidly gaining maturity as powerful general parallel computing ...
Compute Unified Device Architecture (CUDA) is a parallel computing platform developed by Nvidia for ...
<p>In pixel-wise parametric imaging applications, a large amount of experimental data for all image ...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
Brain decoding is the process of predicting cognitive states from medical data which consists of tho...
Functional magnetic resonance imaging (fMRI) makes it possible to non-invasively measure brain activ...
Analysis of functional magnetic resonance imaging (fMRI) data is becoming ever more computationally ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
PARALLEL PROCESSING AND APPLIED MATHEMATICS (PPAM 2017), PT IInternational audienceThis paper descri...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
Recent advances in multi-core processors and graphics card based computational technologies have pav...
Abstract — GPU based on CUDA Architecture developed by NVIDIA is a high performance computing device...
Abstract: Solving problems in bioinformatics often needs extensive computational power. Current tren...
Graphic processing units (GPUs) are rapidly gaining maturity as powerful general parallel computing ...
Compute Unified Device Architecture (CUDA) is a parallel computing platform developed by Nvidia for ...
<p>In pixel-wise parametric imaging applications, a large amount of experimental data for all image ...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
With the performance of central processing units (CPUs) having effectively reached a limit, parallel...
Brain decoding is the process of predicting cognitive states from medical data which consists of tho...
Functional magnetic resonance imaging (fMRI) makes it possible to non-invasively measure brain activ...
Analysis of functional magnetic resonance imaging (fMRI) data is becoming ever more computationally ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
PARALLEL PROCESSING AND APPLIED MATHEMATICS (PPAM 2017), PT IInternational audienceThis paper descri...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
Recent advances in multi-core processors and graphics card based computational technologies have pav...
Abstract — GPU based on CUDA Architecture developed by NVIDIA is a high performance computing device...
Abstract: Solving problems in bioinformatics often needs extensive computational power. Current tren...