软件事务内存中的并发调节:一种有效的基于模型的方法

P. D. Sanzo, Francesco Del Re, Diego Rughetti, B. Ciciani, F. Quaglia
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引用次数: 26

摘要

软件事务性内存(STM)是公认的并发应用程序的有效编程范例。另一方面,在STM中要处理的一个核心问题是(动态地)调节并发程度,以提供最佳性能。我们通过提出并发级别的自我调节方法来解决这个问题,该方法依赖于一个参数分析性能模型,该模型旨在预测STM应用程序作为实际工作负载配置文件的函数的可伸缩性。通过根据模型的预测动态改变并发线程的数量,调节方案允许在应用程序的整个生命周期内实现最佳性能。后者是通过回归分析为特定的应用程序/平台定制的,这是基于轻量级采样阶段的。我们还提供了一个集成在开源TinySTM框架内的基于模型的并发自我调节架构的实际实现,以及基于标准STM基准应用程序的实验研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regulating Concurrency in Software Transactional Memory: An Effective Model-based Approach
Software Transactional Memory (STM) is recognized as an effective programming paradigm for concurrent applications. On the other hand, a core problem to cope with in STM deals with (dynamically) regulating the degree of concurrency, in order to deliver optimal performance. We address this problem by proposing a self-regulation approach of the concurrency level, which relies on a parametric analytical performance model aimed at predicting the scalability of the STM application as a function of the actual workload profile. The regulation scheme allows achieving optimal performance during the whole lifetime of the application via dynamic change of the number of concurrent threads according to the predictions by the model. The latter is customized for a specific application/platform through regression analysis, which is based on a lightweight sampling phase. We also present a real implementation of the model-based concurrency self-regulation architecture integrated within the open source TinySTM framework, and an experimental study based on standard STM benchmark applications.
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