Big Omics Data Experience.

Patricia Kovatch, Anthony Costa, Zachary Giles, Eugene Fluder, Hyung Min Cho, Svetlana Mazurkova
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引用次数: 9

Abstract

As personalized medicine becomes more integrated into healthcare, the rate at which human genomes are being sequenced is rising quickly together with a concomitant acceleration in compute and storage requirements. To achieve the most effective solution for genomic workloads without re-architecting the industry-standard software, we performed a rigorous analysis of usage statistics, benchmarks and available technologies to design a system for maximum throughput. We share our experiences designing a system optimized for the "Genome Analysis ToolKit (GATK) Best Practices" whole genome DNA and RNA pipeline based on an evaluation of compute, workload and I/O characteristics. The characteristics of genomic-based workloads are vastly different from those of traditional HPC workloads, requiring different configurations of the scheduler and the I/O subsystem to achieve reliability, performance and scalability. By understanding how our researchers and clinicians work, we were able to employ techniques not only to speed up their workflow yielding improved and repeatable performance, but also to make more efficient use of storage and compute resources.

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大组学数据经验。
随着个性化医疗越来越多地融入医疗保健,人类基因组测序的速度正在迅速上升,随之而来的是计算和存储需求的加速。为了在不重新构建行业标准软件的情况下实现最有效的基因组工作负载解决方案,我们对使用统计数据、基准测试和可用技术进行了严格的分析,以设计最大吞吐量的系统。我们分享了基于计算、工作负载和I/O特性评估的“基因组分析工具包(GATK)最佳实践”全基因组DNA和RNA管道优化系统的设计经验。基于基因组的工作负载的特征与传统的HPC工作负载有很大的不同,需要不同的调度器和I/O子系统配置来实现可靠性、性能和可伸缩性。通过了解我们的研究人员和临床医生的工作方式,我们不仅能够采用技术来加快他们的工作流程,产生改进的和可重复的性能,而且还可以更有效地利用存储和计算资源。
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Big Omics Data Experience. Mapping to Irregular Torus Topologies and Other Techniques for Petascale Biomolecular Simulation.
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