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Parallelized formulation of the maximum likelihood-expectation maximization algorithm for fine-grain message-passing architectures

机译:细粒度消息传递体系结构的最大似然期望最大化算法的并行表示

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Recent architectural and technological advances have led to the feasibility of a new class of massively parallel processing systems based on a fine-grain, message-passing computational model. These machines provide a new alternative for the development of fast, cost-efficient Maximum Likelihood-Expectation Maximization (ML-EM) algorithmic formulations. As an important first step in determining the potential performance benefits to be gathered from such formulations, we have developed an ML-EM algorithm suitable for the high-communications, low-memory (HCLM) execution model supported by this new class of machines. Evaluation of this algorithm indicates a normalized least-square error comparable to, or better than, that obtained via a sequential ray-driven ML-EM formulation and an effective speedup in execution time (as determined via discrete-event simulation of the Pica multiprocessor system currently under development at the Georgia Institute of Technology) of well over two orders of magnitude compared to current ray-driven sequential ML-EM formulations on high-end workstations. Thus, the HCLM algorithmic formulation may provide ML-EM reconstructions within clinical time-frames.
机译:最近的架构和技术进步导致了基于细粒度的消息传递计算模型的新型大规模并行处理系统的可行性。这些机器为开发快速,经济高效的最大似然期望最大化(ML-EM)算法公式提供了新的选择。作为确定从这些公式中收集潜在性能收益的重要第一步,我们开发了一种ML-EM算法,该算法适用于此类新型机器支持的高通信,低内存(HCLM)执行模型。对该算法的评估表明,归一化的最小二乘误差与通过顺序射线驱动的ML-EM公式获得的归一化最小二乘误差相当或更好,并且执行时间有效加快(通过Pica多处理器系统的离散事件仿真确定)与目前高端工作站上的射线驱动顺序ML-EM配方相比,佐治亚理工学院目前正在开发的)远超过两个数量级。因此,HCLM算法公式可在临床时间范围内提供ML-EM重建。

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