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Now and Next-Generation Sequencing Techniques: Future of Sequence Analysis Using Cloud Computing

机译:现在和下一代测序技术:使用云计算进行序列分析的未来

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摘要

Advances in the field of sequencing techniques have resulted in the greatly accelerated production of huge sequence datasets. This presents immediate challenges in database maintenance at datacenters. It provides additional computational challenges in data mining and sequence analysis. Together these represent a significant overburden on traditional stand-alone computer resources, and to reach effective conclusions quickly and efficiently, the virtualization of the resources and computation on a pay-as-you-go concept (together termed “cloud computing”) has recently appeared. The collective resources of the datacenter, including both hardware and software, can be available publicly, being then termed a public cloud, the resources being provided in a virtual mode to the clients who pay according to the resources they employ. Examples of public companies providing these resources include Amazon, Google, and Joyent. The computational workload is shifted to the provider, which also implements required hardware and software upgrades over time. A virtual environment is created in the cloud corresponding to the computational and data storage needs of the user via the internet. The task is then performed, the results transmitted to the user, and the environment finally deleted after all tasks are completed. In this discussion, we focus on the basics of cloud computing, and go on to analyze the prerequisites and overall working of clouds. Finally, the applications of cloud computing in biological systems, particularly in comparative genomics, genome informatics, and SNP detection are discussed with reference to traditional workflows.
机译:测序技术领域的进步极大地加快了巨大序列数据集的产生。这对数据中心的数据库维护提出了直接的挑战。它在数据挖掘和序列分析中提出了其他计算难题。这些因素共同构成了传统独立计算机资源的沉重负担,并且为了快速有效地得出有效结论,近来,资源虚拟化和按需付费概念(统称为“云计算”)的计算出现了。数据中心的总体资源(包括硬件和软件)可以公开获得,然后称为公共云,该资源以虚拟模式提供给根据使用资源付费的客户。提供这些资源的上市公司示例包括Amazon,Google和Joyent。计算工作量转移到提供程序,该提供程序还随时间实现了所需的硬件和软件升级。通过互联网在云中创建了与用户的计算和数据存储需求相对应的虚拟环境。然后执行任务,将结果传输给用户,并在所有任务完成后最终删除环境。在此讨论中,我们重点介绍云计算的基础知识,然后继续分析云的前提条件和整体工作。最后,参考传统工作流程讨论了云计算在生物系统中的应用,特别是在比较基因组学,基因组信息学和SNP检测中的应用。

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