Real-time performance modeling for adaptive software systems with multi-class workload

Dinesh Kumar, A. Tantawi, Li Zhang
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引用次数: 11

Abstract

Modern, adaptive software systems must often adjust or reconfigure their architecture in order to respond to continuous changes in their execution environment. Efficient autonomic control in such systems is highly dependent on the accuracy of their representative performance model. In this paper, we are concerned with real-time estimation of a performance model for adaptive software systems that process multiple classes of transactional workload. Based on an open queueing network model and an Extended Kalman Filter (EKF), experiments in this work show that: 1) the model parameter estimates converge to the actual value very slowly when the variation in incoming workload is very low, 2) the estimates fail to converge quickly to the new value when there is a step-change caused by adaptive reconfiguration of the actual software parameters. We therefore propose a modified EKF design in which the measurement model is augmented with a set of constraints based on past measurement values. Experiments demonstrate the effectiveness of our approach that leads to significant improvement in convergence in the two cases.
具有多类工作负载的自适应软件系统实时性能建模
现代的自适应软件系统必须经常调整或重新配置它们的体系结构,以便对其执行环境中的持续变化作出响应。在这种系统中,有效的自主控制高度依赖于其代表性性能模型的准确性。在本文中,我们关注的是处理多类事务工作负载的自适应软件系统的性能模型的实时估计。基于开放排队网络模型和扩展卡尔曼滤波(EKF)的实验表明:1)当输入工作量变化很小时,模型参数估计收敛到实际值的速度很慢;2)当实际软件参数自适应重构引起阶跃变化时,估计不能快速收敛到新的值。因此,我们提出了一种改进的EKF设计,其中测量模型增加了一组基于过去测量值的约束。实验证明了我们的方法的有效性,在这两种情况下显著提高了收敛性。
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