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Neuroscience instrumentation and distributed analysis of brain activity data: a case for eScience on global Grids

机译:神经科学仪器和大脑活动数据的分布式分析:全球网格上的eScience案例

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The distribution of knowledge (by scientists) and data sources (advanced scientific instruments), and the need for large-scale computational resources for analyzing massive scientific data are two major problems commonly observed in scientific disciplines. Two popular scientific disciplines of this nature are brain science and high-energy physics. The analysis of brain-activity data gathered from the MEG (magnetoencephalography) instrument is an important research topic in medical science since it helps doctors in identifying symptoms of diseases. The data needs to be analyzed exhaustively to efficiently diagnose and analyze brain functions and requires access to large-scale computational resources. The potential platform for solving such resource intensive applications is the Grid. This paper presents the design and development of MEG data analysis system by leveraging Grid technologies, primarily Nimrod-G, Grid bus, and Globus. It describes the composition of the neuroscience (brain-activity analysis) application as parameter-sweep application and its on-demand deployment on global Grids for distributed execution. The results of economic-based scheduling of analysis jobs for three different optimizations scenarios on the world-wide Grid testbed resources are presented along with their graphical visualization.
机译:知识的分布(由科学家)和数据源(先进的科学仪器)以及对用于分析大量科学数据的大规模计算资源的需求是科学学科中普遍观察到的两个主要问题。这种性质的两个流行科学学科是脑科学和高能物理学。从MEG(脑磁图)仪收集的大脑活动数据的分析是医学领域的重要研究课题,因为它有助于医生识别疾病的症状。需要对数据进行详尽的分析,以有效地诊断和分析大脑功能,并且需要访问大规模的计算资源。网格是解决此类资源密集型应用程序的潜在平台。本文介绍了利用网格技术(主要是Nimrod-G,Grid总线和Globus)来设计和开发MEG数据分析系统。它描述了作为参数扫描应用程序的神经科学(脑活动分析)应用程序的组成及其在全局网格上按需部署以进行分布式执行的情况。给出了在全球Grid测试平台资源上针对三种不同优化方案的分析作业的基于经济计划的结果,以及它们的图形化可视化。

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