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cudaBayesreg: Parallel Implementation of a Bayesian Multilevel Model for fMRI Data Analysis

机译:CUDABAYESREG:用于FMRI数据分析的贝叶斯多级模型的平行实施

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Graphic processing units (GPUs) are rapidly gaining maturity as powerful general parallel computing devices. A key feature in the development of modern GPUs has been the advancement of the programming model and programming tools. Compute Unified Device Architecture (CUDA) is a software platform for massively parallel high-performance computing on Nvidia many-core GPUs. In functional magnetic resonance imaging (fMRI), the volume of the data to be processed, and the type of statistical analysis to perform call for high-performance computing strategies. In this work, we present the main features of the R-CUDA package cudaBayesreg which implements in CUDA the core of a Bayesian multilevel model for the analysis of brain fMRI data. The statistical model implements a Gibbs sampler for multilevel/hierarchical linear models with a normal prior. The main contribution for the increased performance comes from the use of separate threads for fitting the linear regression model at each voxel in parallel. The R-CUDA implementation of the Bayesian model proposed here has been able to reduce significantly the run-time processing of Markov chain Monte Carlo (MCMC) simulations used in Bayesian fMRI data analyses. Presently, cudaBayesreg is only configured for Linux systems with Nvidia CUDA support.
机译:图形处理单元(GPU)正在快速获得成熟度,作为强大的一般并行计算设备。现代GPU开发的一个关键特征是编程模型和编程工具的进步。计算统一设备架构(CUDA)是一种在NVIDIA多核GPU上大规模并行高性能计算的软件平台。在功能磁共振成像(FMRI)中,要处理的数据的体积以及对高性能计算策略进行呼叫的统计分析的类型。在这项工作中,我们介绍了R-CUDA封装CudabayesReg的主要特点,它在CUDA中实现了贝叶斯多级模型的核心,用于分析脑FMRI数据。统计模型为多级/分层线性模型实现GIBBS采样器,具有正常的先前。增加性能的主要贡献来自使用单独的线程,以并行地拟合每个体素的线性回归模型。这里提出的贝叶斯模型的R-CUDA实施能够显着降低Markov链Monte Carlo(MCMC)模拟的Markov Chain Monte Carlo(MCMC)模拟的运行时处理。目前,CudabayesReg仅为具有NVIDIA CUDA支持的Linux系统配置。

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