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Privacy-Aware Scheduling SaaS in High Performance Computing Environments

机译:高性能计算环境中的隐私感知调度SaaS

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Hybrid clouds have gained popularity in recent times in a variety of organizations due to their ability to provide additional capacity in a public cloud, to augment private cloud capacity, when it is needed. However, scheduling distributed applications’ jobs (e.g, workflow tasks) on hybrid cloud resources introduces new challenges. One key problem is the danger of exposing private data and jobs in a third-party public cloud infrastructure, for example in healthcare applications. In this article, we tackle the problem of designing workflow scheduling algorithms to meet customers’ deadlines, while not compromising data and task privacy requirements. Our work is different from most studies on workflow scheduling where the main goal is to achieve a balance between desirable, yet incompatible constraints, such as meeting the deadline and/or minimizing the execution time. Although many others have addressed the trade-off between cost and time, or privacy and cost, their work still suffers from an insufficient consideration of the trade-off between privacy and time. To address such shortcomings in the literature, we present a new SaaS scheduling broker composed of MPHC-P1, MPHC-P2, and MPHC-P3 policies to preserve privacy while scheduling the workflows’ tasks under customers’ deadlines. We evaluated our approach using real workflows running on a VMware based hybrid cloud. Results demonstrate that under our scheduling policies, MPHC-P2 and MPHC-P3 are promising in time-critical scenarios by reducing the total cost by 10-20 percent compared to alternatives. Overall, results show that our approach is efficient in reducing the cost of executing workflows while satisfying both their privacy and deadline constraints.
机译:由于混合云能够在需要时在公共云中提供额外的容量,以增加私有云的容量,因此最近在各种组织中变得越来越流行。但是,在混合云资源上调度分布式应用程序的工作(例如工作流任务)会带来新的挑战。一个关键问题是在第三方公共云基础架构(例如医疗保健应用程序)中暴露私有数据和作业的危险。在本文中,我们解决了设计工作流调度算法以满足客户的截止日期,同时又不损害数据和任务隐私要求的问题。我们的工作与大多数工作流调度研究不同,后者的主要目标是在理想的但不兼容的约束之间取得平衡,例如满足最后期限和/或最小化执行时间。尽管许多其他人已经解决了成本与时间或隐私与成本之间的权衡问题,但他们的工作仍然受到对隐私与时间之间的权衡问题的考虑不足。为了解决文献中的此类缺陷,我们提供了一个新的SaaS调度代理,该代理由MPHC-P1,MPHC-P2和MPHC-P3策略组成,可以在客户的期限内调度工作流程的任务时保护隐私。我们使用在基于VMware的混合云上运行的实际工作流程评估了我们的方法。结果表明,在我们的调度策略下,MPHC-P2和MPHC-P3在时间紧迫的情况下很有希望,与替代方案相比,总成本降低了10-20%。总体而言,结果表明,我们的方法可有效降低工作流程的执行成本,同时满足其隐私和期限限制。

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