Symbiotic and sensitivity-aware architecture for globally-optimal benefit in self-adaptive cloud

Tao Chen, R. Bahsoon
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引用次数: 32

Abstract

Due to the uncertain and dynamic demand for Quality of Service (QoS) in cloud-based systems, engineering self-adaptivity in cloud architectures require novel approaches to support on-demand elasticity. The architecture should dynamically select an elastic strategy, which optimizes the global benefit for QoS and cost objectives for all cloud-based services. The architecture shall also provide mechanisms for reaching the strategy with minimal overhead. However, the challenge in the cloud is that the nature of objectives (e.g., throughput and the required cost) and QoS interference could cause overlapping sensitivity amongst intra- and inter-services objectives, which leads to objective-dependency (i.e., conflicted or harmonic) during optimization. In this paper, we propose a symbiotic and sensitivity-aware architecture for optimizing global-benefit with reduced overhead in the cloud. The architecture dynamically partitions QoS and cost objectives into sensitivity independent regions, where the local optimums are achieved. In addition, the architecture realizes the concept of symbiotic feedback loop, which is a bio-directional self-adaptive action that not only allows to dynamically monitor and adapt the managed services by scaling to their demand, but also to adaptively consolidate the managing system by re-partitioning the regions based on symptoms. We implement the architecture as a prototype extending on decentralized MAPE loop by introducing an Adaptor component. We then experimentally analyze and evaluate our architecture using hypothetical scenarios. The results reveal that our symbiotic and sensitivity-aware architecture is able to produce even better global benefit and smaller overhead in contrast to other non sensitivity-aware architectures.
自适应云中全局最优效益的共生和敏感感知架构
由于基于云的系统对服务质量(QoS)的不确定性和动态需求,云架构中的工程自适应性需要新的方法来支持按需弹性。体系结构应该动态地选择弹性策略,以优化所有基于云的服务的QoS和成本目标的全局收益。体系结构还应提供以最小开销实现策略的机制。然而,云中的挑战是目标的性质(例如,吞吐量和所需成本)和QoS干扰可能导致服务内部和服务间目标之间的重叠敏感性,从而导致优化期间的目标依赖性(即冲突或调和)。在本文中,我们提出了一种共生和敏感性感知架构,用于优化全局效益,同时减少云中的开销。该体系结构动态地将QoS和代价目标划分到与灵敏度无关的区域中,在这些区域中实现局部最优。此外,该体系结构实现了共生反馈回路的概念,这是一种生物方向的自适应行为,不仅可以通过扩展需求来动态监控和适应被管理服务,还可以通过根据症状重新划分区域来自适应地巩固管理系统。我们通过引入Adaptor组件,将该体系结构实现为分散MAPE循环的扩展原型。然后,我们使用假设的场景对我们的架构进行实验分析和评估。结果表明,与其他非敏感性感知体系结构相比,我们的共生和敏感性感知体系结构能够产生更好的全局效益和更小的开销。
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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