云中的头:高性能计算的神经成像应用入门。

Magnetic resonance insights Pub Date : 2016-06-06 eCollection Date: 2015-01-01 DOI:10.4137/MRI.S23558
Anwar S Shatil, Sohail Younas, Hossein Pourreza, Chase R Figley
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引用次数: 8

摘要

随着更大的数据集和更复杂的分析,神经成像研究人员推动(或超越)独立计算机工作站的限制正变得越来越普遍。尽管如此,尽管诸如集群、网格和云等高性能计算平台已经被少数神经成像研究人员用于日常使用,以增加其存储和/或计算能力,但更广泛的神经成像社区对这些资源的采用仍然相对罕见。因此,当前手稿的目标是:1)告知潜在用户计算集群、网格和云之间的异同;2)突出其主要优势;3)讨论何时可以(或不可以)使用它们;4)审查它们的一些潜在问题和准入障碍;最后5)给出一些实用的建议,告诉感兴趣的新用户如何开始使用云资源分析他们的神经成像数据。尽管云计算的目标是向最终用户隐藏基础设施管理的大部分复杂性,但我们认识到,对于缺乏强大计算背景的认知神经科学家、心理学家、神经学家、放射科医生和其他神经成像研究人员来说,这仍然是一个令人生畏的领域。因此,考虑到这一点,我们的目标是提供云计算的基本介绍(包括一些基本术语,计算机体系结构,基础设施和服务模型等),对优点和缺点的实际概述,并特别关注如何将云资源用于各种神经成像应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Heads in the Cloud: A Primer on Neuroimaging Applications of High Performance Computing.

With larger data sets and more sophisticated analyses, it is becoming increasingly common for neuroimaging researchers to push (or exceed) the limitations of standalone computer workstations. Nonetheless, although high-performance computing platforms such as clusters, grids and clouds are already in routine use by a small handful of neuroimaging researchers to increase their storage and/or computational power, the adoption of such resources by the broader neuroimaging community remains relatively uncommon. Therefore, the goal of the current manuscript is to: 1) inform prospective users about the similarities and differences between computing clusters, grids and clouds; 2) highlight their main advantages; 3) discuss when it may (and may not) be advisable to use them; 4) review some of their potential problems and barriers to access; and finally 5) give a few practical suggestions for how interested new users can start analyzing their neuroimaging data using cloud resources. Although the aim of cloud computing is to hide most of the complexity of the infrastructure management from end-users, we recognize that this can still be an intimidating area for cognitive neuroscientists, psychologists, neurologists, radiologists, and other neuroimaging researchers lacking a strong computational background. Therefore, with this in mind, we have aimed to provide a basic introduction to cloud computing in general (including some of the basic terminology, computer architectures, infrastructure and service models, etc.), a practical overview of the benefits and drawbacks, and a specific focus on how cloud resources can be used for various neuroimaging applications.

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