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On the predictive performance of queueing network models for large-scale distributed transaction processing systems

机译:大型分布式事务处理系统的排队网络模型的预测性能

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Automated business processes running on distributed transaction processing (DTP) systems characterize the IT backbone of services industries. New web services standards such as BPEL have increased the importance of DTP systems in business practice. IT departments are forced to meet pre-defined quality-of-service metrics, therefore performance prediction is essential. Unfortunately, the complexity of multiple interacting services running on multiple hardware resources as well as the volatility in the demand for these services can make performance analysis extremely difficult. While business process automation has been a dominant topic in the recent years, surprisingly little has been published on performance modelling of large-scale DTP systems. In this paper, we will describe these systems with respect to the workloads and technical features, and compare the predictive accuracy of different types of queueing models and discrete event simulations experimentally. The experiments are based on two real-world DTP systems and respective data sets of a telecom company. Overall, we found that while the results for average utilization scenarios are quite similar, the effort to implement and run analytic solutions is much lower. As long as standard distributional assumptions of analytical models hold, they provide a reliable and fast methodology to explore differentrndemand mix scenarios even for large-scale systems. The difficulty to estimate service and arrival time parameters and demand mix for the respective queueing network models can largely be reduced with appropriate tooling. Often, this information is missing in IT departments. Also, complex event conditions and error handling in DTP systems can make the analysis difficult. For many DTP applications, however, performance modelling could provide valuable decision support for service level management.
机译:在分布式事务处理(DTP)系统上运行的自动化业务流程是服务行​​业IT骨干的特征。诸如BPEL之类的新Web服务标准增加了DTP系统在商业实践中的重要性。 IT部门被迫满足预定义的服务质量指标,因此性能预测至关重要。不幸的是,在多个硬件资源上运行的多个交互服务的复杂性以及对这些服务的需求的波动都使性能分析变得极为困难。尽管业务流程自动化已成为近年来的主要话题,但令人惊讶的是,有关大规模DTP系统的性能建模的文献很少。在本文中,我们将针对工作负载和技术特征来描述这些系统,并通过实验比较不同类型的排队模型和离散事件模拟的预测准确性。实验基于两个现实世界的DTP系统和一家电信公司的相应数据集。总体而言,我们发现,尽管平均利用率方案的结果非常相似,但是实施和运行分析解决方案的工作量却要低得多。只要分析模型的标准分布假设成立,即使对于大规模系统,它们也提供了可靠且快速的方法来探索不同需求的混合方案。借助适当的工具,可以大大降低估计各个排队网络模型的服务和到达时间参数以及需求混合的难度。通常,IT部门缺少此信息。同样,复杂的事件条件和DTP系统中的错误处理也会使分析变得困难。但是,对于许多DTP应用程序,性能建模可以为服务级别管理提供有价值的决策支持。

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