基于SLURM计算系统的心电特征处理性能加速

Michael Nolan, Mark Hernandez, Philip Fremont-Smith, A. Swiston, K. Claypool
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引用次数: 0

摘要

心电图(ECG)信号特征(如心率、峰内间隔时间)是生理评估中常用的数据。商用现货(COTS)软件解决方案可用于心电数据处理,但通常是为序列化数据处理而开发的,这对于大型数据集的可扩展性很差。为了解决这个问题,我们开发了一个并行心电特征生成的Matlab代码库。该库使用pMatlab和MatMPI接口,使用简单Linux资源管理实用程序(SLURM)在超级计算集群上分配计算任务。为了分析其作为并行化规模函数的性能,在林肯实验室超级计算TXGreen集群上的非人类灵长类动物数据集上执行心电处理代码。特征处理作业部署在一系列处理器数量和处理器类型上,以评估作业计算时间的总体减少情况。我们表明,单个处理时间与所使用的处理器数量呈1/n关系减少,而考虑部署和数据聚合的总计算时间对处理器数量的回报递减。总体文件处理时间的最大平均减少率为99%。
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ECG Feature Processing Performance Acceleration on SLURM Compute Systems
Electrocardiogram (ECG) signal features (e.g. Heart rate, intrapeak interval times) are data commonly used in physiological assessment. Commercial off-the-shelf (COTS) software solutions for ECG data processing are available, but are often developed for serialized data processing which scale poorly for large datasets. To address this issue, we’ve developed a Matlab code library for parallelized ECG feature generation. This library uses the pMatlab and MatMPI interfaces to distribute computing tasks over supercomputing clusters using the Simple Linux Utility for Resource Management (SLURM). To profile its performance as a function of parallelization scale, the ECG processing code was executed on a non-human primate dataset on the Lincoln Laboratory Supercomputing TXGreen cluster. Feature processing jobs were deployed over a range of processor counts and processor types to assess the overall reduction in job computation time. We show that individual process times decrease according to a 1/n relationship to the number of processors used, while total computation times accounting for deployment and data aggregation impose diminishing returns of time against processor count. A maximum mean reduction in overall file processing time of 99% is shown.
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