探索在IaaS云中长期执行科学工作负载的投资组合调度

Kefeng Deng, Junqiang Song, Kaijun Ren, A. Iosup
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引用次数: 44

摘要

科学应用程序的长期执行通常会导致动态工作负载和不同的应用程序需求。当执行使用从IaaS云提供的资源时,因此与消费相关的支付,必须找到有效的在线调度算法。投资组合调度,从广泛的投资组合中动态地选择合适的策略,可能为这个问题提供一个解决方案。然而,从可能有数十种选择的在线政策中选择正确的政策仍然具有挑战性。在这项工作中,我们引入了一个抽象模型来探讨这个选择问题。在此模型的基础上,我们提出了一个综合的投资组合调度程序,其中包括数十个配置和分配策略。我们提出了一种算法,可以扩大在有限时间内(可能是在线)选择最佳策略的机会。通过基于跟踪的模拟,我们评估了投资组合调度程序的各个方面,并发现与最佳组成策略相比,性能提高了7%到100%,并且对突发工作负载有很高的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring portfolio scheduling for long-term execution of scientific workloads in IaaS clouds
Long-term execution of scientific applications often leads to dynamic workloads and varying application requirements. When the execution uses resources provisioned from IaaS clouds, and thus consumption-related payment, efficient and online scheduling algorithms must be found. Portfolio scheduling, which selects dynamically a suitable policy from a broad portfolio, may provide a solution to this problem. However, selecting online the right policy from possibly tens of alternatives remains challenging. In this work, we introduce an abstract model to explore this selection problem. Based on the model, we present a comprehensive portfolio scheduler that includes tens of provisioning and allocation policies. We propose an algorithm that can enlarge the chance of selecting the best policy in limited time, possibly online. Through trace-based simulation, we evaluate various aspects of our portfolio scheduler, and find performance improvements from 7% to 100% in comparison with the best constituent policies and high improvement for bursty workloads.
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