Parallel and Efficient Sensitivity Analysis of Microscopy Image Segmentation Workflows in Hybrid Systems.

Willian Barreiros, George Teodoro, Tahsin Kurc, Jun Kong, Alba C M A Melo, Joel Saltz
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引用次数: 6

Abstract

We investigate efficient sensitivity analysis (SA) of algorithms that segment and classify image features in a large dataset of high-resolution images. Algorithm SA is the process of evaluating variations of methods and parameter values to quantify differences in the output. A SA can be very compute demanding because it requires re-processing the input dataset several times with different parameters to assess variations in output. In this work, we introduce strategies to efficiently speed up SA via runtime optimizations targeting distributed hybrid systems and reuse of computations from runs with different parameters. We evaluate our approach using a cancer image analysis workflow on a hybrid cluster with 256 nodes, each with an Intel Phi and a dual socket CPU. The SA attained a parallel efficiency of over 90% on 256 nodes. The cooperative execution using the CPUs and the Phi available in each node with smart task assignment strategies resulted in an additional speedup of about 2×. Finally, multi-level computation reuse lead to an additional speedup of up to 2.46× on the parallel version. The level of performance attained with the proposed optimizations will allow the use of SA in large-scale studies.

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混合系统显微图像分割工作流程的并行高效灵敏度分析。
我们研究了在高分辨率图像的大型数据集中分割和分类图像特征的算法的高效灵敏度分析(SA)。算法SA是评估方法和参数值变化的过程,以量化输出的差异。SA对计算的要求很高,因为它需要使用不同的参数多次重新处理输入数据集,以评估输出的变化。在这项工作中,我们介绍了通过针对分布式混合系统的运行时优化和重用来自不同参数运行的计算来有效加速SA的策略。我们在具有256个节点的混合集群上使用癌症图像分析工作流来评估我们的方法,每个节点都具有英特尔Phi和双插槽CPU。该算法在256个节点上实现了90%以上的并行效率。通过智能任务分配策略,利用每个节点中可用的cpu和Phi进行协同执行,可获得约2倍的额外加速。最后,在并行版本上,多级计算重用导致了高达2.46倍的额外加速。所提出的优化所达到的性能水平将允许在大规模研究中使用SA。
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Parallel processing of spatial batch-queries using xBR+-trees in solid-state drives Predicting the Energy-Consumption of MPI Applications at Scale Using Only a Single Node Parallel and Efficient Sensitivity Analysis of Microscopy Image Segmentation Workflows in Hybrid Systems. FTS 2016 Workshop Keynote Speech Letter from the general chair
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