内存资源消耗的主动测量

Marc Casas, G. Bronevetsky
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引用次数: 19

摘要

分层内存是现代硬件设计的基石,因为它以低成本提供高内存性能和容量。然而,使用多级内存和复杂的缓存管理策略使得在分层内存上运行的应用程序的性能很难优化。由于每个芯片的计算核心数量的增长速度持续快于可用内存的总量,应用程序将越来越需要内存存储容量和带宽,从而使性能优化问题变得更加关键。我们提出了一种新的方法来测量和模拟分层存储器的性能,根据应用程序对关键内存资源的利用:给定内存级别的容量和两个级别之间的带宽。这是通过主动干扰应用程序对这些资源的使用来实现的。通过观察干扰对应用程序性能的影响来衡量应用程序对资源可用性降低的敏感性。由此产生的面向资源的性能模型不仅大大简化了应用程序性能分析,而且使预测应用程序在各种资源约束下运行时的性能成为可能。这对于预测未来内存受限架构的性能非常有用。
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Active Measurement of Memory Resource Consumption
Hierarchical memory is a cornerstone of modern hardware design because it provides high memory performance and capacity at a low cost. However, the use of multiple levels of memory and complex cache management policies makes it very difficult to optimize the performance of applications running on hierarchical memories. As the number of compute cores per chip continues to rise faster than the total amount of available memory, applications will become increasingly starved for memory storage capacity and bandwidth, making the problem of performance optimization even more critical. We propose a new methodology for measuring and modeling the performance of hierarchical memories in terms of the application's utilization of the key memory resources: capacity of a given memory level and bandwidth between two levels. This is done by actively interfering with the application's use of these resources. The application's sensitivity to reduced resource availability is measured by observing the effect of interference on application performance. The resulting resource-oriented model of performance both greatly simplifies application performance analysis and makes it possible to predict an application's performance when running with various resource constraints. This is useful to predict performance for future memory-constrained architectures.
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