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CaDAnCE: A Criticality-aware Deployment And Configuration Engine

机译:CARACE:一种关键性感知部署和配置引擎

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Predictable deployment and configuration (D&C) of components in response to dynamic environmental changes or system mode changes is essential for ensuring open distributed real-time and embedded (DRE) system real-time QoS. This paper provides three contributions to research on the predictability of D&C for component-based open DRE systems. First, we describe how the dependency relationships among different components and their criticality levels can cause deployment order inversion of tasks, which impedes deployment predictability. Second, we describe how to minimize D&C latency of mission-critical tasks with a multi-graph dependency tracing and graph recomposition algorithm called CaDAnCE. Third, we empirically evaluate the effectiveness of CaDAnCE on a representative open DRE system case study based on NASA Earth Science Enterprise's Magnetospheric Multi-Scale (MMS) mission system. Our results show that CaDAnCE avoids deployment order inversion while incurring negligible (<1%) performance overhead, thereby significantly improving D&C predictability.
机译:响应于动态环境变化或系统模式变化的组件的可预测部署和配置(D&C)对于确保开放分布式实时和嵌入式(DRE)系统实时QoS是必不可少的。本文为基于组件的开放式DRE系统的D&C的可预测性进行了三项贡献。首先,我们描述了不同组件之间的依赖关系如何以及它们的临界级别可以导致任务的部署顺序反转,这阻碍了部署可预测性。其次,我们描述了如何利用多图依赖性跟踪和图形重新编译算法将任务关键任务的D&C延迟最小化。第三,我们明确评估了基于美国宇航局科学企业的磁体多尺度(MMS)任务系统的代表开放DRE系统案例研究的效果。我们的结果表明,CARANCE避免了部署订单反转,同时产生可忽略的(<1%)性能开销,从而显着提高了D&C的可预测性。

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