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Porting bioinformatics applications from grid to cloud: A macromolecular surface analysis application case study

机译:将生物信息学应用程序从网格移植到云:高分子表面分析应用案例研究

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In this paper we describe our experience in exploiting different cloud-based environments for an actual use case taken from the bioinformatics domain - the molecular surfaces analysis - that identifies similarities and possible complementarities in the protein surfaces. The analysis of macromolecular surfaces is important since protein surface conformations drive many biological reactions. We developed a workflow that performs the macromolecular surfaces analysis and provides interesting results from a scientific point of view. An important issue is represented by the fact that it is highly compute-intensive, therefore it cannot be run on a single CPU system for meaningful use cases and a parallel infrastructure is required to obtain reasonable execution time. For a decade grid infrastructures have represented suitable solutions to achieve cost effective computational power for Bioinformatics applications. However, these solutions do not offer an adequate customisation of the computational environment (e.g. installing databases and configuring virtual network) due to the rigid organisation of the storage and computational sites. Running applications on customised machines obtained by user-defined images simplifies the computing model, decreases the failure rates and therefore reduces waiting times for production analysis with respect to the canonical grid computations. For these reasons a cloud-based approach is more suitable than a pure grid paradigm. We experimented using two cloud-based approaches, based on the Worker Node On Demand Service and on OpenStack, to run the molecular surfaces analysis use case and we compared the results in terms of performance, efficiency and efforts to build the computing model with respect to grid computing.
机译:在本文中,我们描述了我们在生物信息学领域(分子表面分析)中采用的基于不同云环境的实际应用案例中的经验,该案例可识别蛋白质表面的相似性和可能的​​互补性。大分子表面的分析很重要,因为蛋白质表面构象会驱动许多生物反应。我们开发了执行大分子表面分析的工作流程,并从科学的角度提供了有趣的结果。一个重要的问题表现为它的计算量很大,因此对于有意义的用例,它不能在单个CPU系统上运行,并且需要并行基础结构来获得合理的执行时间。十年来,网格基础设施代表了合适的解决方案,可为生物信息学应用实现具有成本效益的计算能力。然而,由于存储和计算站点的刚性组织,这些解决方案不能提供对计算环境的充分定制(例如,安装数据库和配置虚拟网络)。在通过用户定义的图像获得的定制机器上运行应用程序简化了计算模型,降低了故障率,因此减少了针对规范网格计算进行生产分析的等待时间。由于这些原因,基于云的方法比纯网格范式更适合。我们基于工作者节点按需服务和OpenStack,使用两种基于云的方法进行了实验,以运行分子表面分析用例,并在性能,效率和构建计算模型的努力方面比较了结果网格计算。

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