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Accelerating Markov Random Field Inference Using Molecular Optical Gibbs Sampling Units

机译:使用分子光学吉布布采样装置加速马尔可夫随机磁场推理

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The increasing use of probabilistic algorithms from statistics and machine learning for data analytics presents new challenges and opportunities for the design of computing systems. One important class of probabilistic machine learning algorithms is Markov Chain Monte Carlo (MCMC) sampling, which can be used on a wide variety of applications in Bayesian Inference. However, this probabilistic iterative algorithm can be inefficient in practice on today's processors, especially for problems with high dimensionality and complex structure. The source of inefficiency is generating samples from parameterized probability distributions. This paper seeks to address this sampling inefficiency and presents a new approach to support probabilistic computing that leverages the native randomness of Resonance Energy Transfer (RET) networks to construct RET-based sampling units (RSU). Although RSUs can be designed for a variety of applications, we focus on the specific class of probabilistic problems described as Markov Random Field Inference. Our proposed RSU uses a RET network to implement a molecular-scale optical Gibbs sampling unit (RSU-G) that can be integrated into a processor / GPU as specialized functional units or organized as a discrete accelerator. We experimentally demonstrate the fundamental operation of an RSU using a macro-scale hardware prototype. Emulation-based evaluation of two computer vision applications for HD images reveal that an RSU augmented GPU provides speedups over a GPU of 3 and 16. Analytic evaluation shows a discrete accelerator that is limited by 336 GB/s DRAM produces speedups of 21 and 54 versus the GPU implementations.
机译:从统计和机器学习的概率算法越来越多地利用数据分析呈现了计算系统设计的新挑战和机遇。一类重要的概率机器学习算法是Markov Chain Monte Carlo(MCMC)采样,可用于贝叶斯推理的各种应用。然而,这种概率迭代算法可以在今天的处理器上实践效率低下,特别是对于高维度和复杂结构的问题。效率低下的来源正在从参数化概率分布产生样本。本文旨在解决这种采样效率效率,并提出了一种支持概率计算的新方法,利用谐振能量转移(RET)网络的原生随机性来构建基于RET的采样单元(RSU)。虽然RSU可以设计用于各种应用,但我们专注于描述为Markov随机场推断的具体概率问题。我们所提出的RSU使用RET网络来实现分子级光学吉布斯采样单元(RSU-G),可以集成到处理器/ GPU中作为专用功能单元或作为离散加速器组织成。我们通过宏观硬件原型实验证明了RSU的基本操作。基于仿真的高清图像的计算机视觉应用程序揭示了RSU增强的GPU在3和16的GPU上提供加速。分析评估显示了336 GB / S DRAM限制的离散加速器产生21和54的加速。 GPU实现。

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