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Selection of computational environments for PSP processing on scientific gateways

机译:选择科学网关上PSP处理的计算环境

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摘要

Science Gateways have been widely accepted as an important tool in academic research, due to their flexibility, simple use and extension. However, such systems may yield performance traps that delay work progress and cause waste of resources or generation of poor scientific results. This paper addresses an investigation on some of the failures in a Galaxy system and analyses of their impacts. The use case is based on protein structure prediction experiments performed. A novel science gateway component is proposed towards the definition of the relation between general parameters and capacity of machines. The machine-learning strategies used appoint the best machine setup in a heterogeneous environment and the results show a complete overview of Galaxy, a diverse platform organization, and the workload behavior. A Support Vector Regression (SVR) model generated and based on a historic data-set provided an excellent learning module and proved a varied platform configuration is valuable as infrastructure in a science gateway. The results revealed the advantages of investing in local cluster infrastructures as a base for scientific experiments.
机译:由于科学网关的灵活性,简单易用和可扩展性,它已被广泛接受为学术研究的重要工具。但是,此类系统可能会产生性能陷阱,从而延迟工作进度并造成资源浪费或产生不良的科学成果。本文针对银河系系统中的某些故障进行了调查,并分析了其影响。该用例基于执行的蛋白质结构预测实验。提出了一种新颖的科学网关组件,用于定义一般参数和机器容量之间的关系。所使用的机器学习策略指定了异构环境中的最佳机器设置,结果显示了Galaxy的完整概述,多样化的平台组织以及工作负载行为。基于历史数据集生成的支持向量回归(SVR)模型提供了出色的学习模块,并证明了多样化的平台配置作为科学网关中的基础架构非常有价值。结果显示出投资本地集群基础设施作为科学实验基础的优势。

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