A Unified Framework for Throughput Analysis of Streaming Applications under Memory Constraints

Xue-Yang Zhu
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Abstract

Streaming applications are an important class of applications in real-time embedded systems, which usually run under restricted resource constraints and with real-time requirement. They are often modeled with Synchronous data flow graphs (SDFGs) or Cyclo-Static data flow graphs (CSDFGs) at the design stage. A proper analysis of the models gives a predictable design for a system. In this paper, we focus on the throughput analysis of (C)SDFGs, taking into account memory constraints. Memory related analysis needs to choose a memory abstraction that decides when the space of consumed data is released and when the required space is claimed. Different memory abstractions may lead to different achievable throughputs. The existing techniques, however, consider only a certain abstraction. If a model is implemented according to other abstractions, the analysis result may not truly evaluate the performance of the system. In this paper, we present a novel unified framework for throughput analysis of memory constrained (C)SDFGs for different abstractions, aiming to provide evaluations matching up to the corresponding implementations. Our methods are exact. Experiments are carried out on several models of real streaming applications and hundreds of synthetic graphs to evaluate the effects and performance of our methods.
内存约束下流应用吞吐量分析的统一框架
流应用程序是实时嵌入式系统中重要的一类应用程序,它通常在有限的资源约束下运行,并且具有实时性要求。它们通常在设计阶段使用同步数据流图(sdfg)或循环静态数据流图(csdfg)建模。对这些模型进行适当的分析,可以为系统提供可预测的设计。在本文中,我们关注(C) sdfg的吞吐量分析,考虑到内存约束。与内存相关的分析需要选择一个内存抽象,该抽象决定何时释放所消耗数据的空间以及何时声明所需的空间。不同的内存抽象可能导致不同的可实现吞吐量。然而,现有的技术只考虑某种抽象。如果模型是根据其他抽象实现的,那么分析结果可能无法真正评估系统的性能。在本文中,我们提出了一个新的统一框架,用于对不同抽象的内存约束(C) sdfg进行吞吐量分析,旨在提供与相应实现相匹配的评估。我们的方法是精确的。在实际流应用的几个模型和数百个合成图上进行了实验,以评估我们的方法的效果和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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