一般数据流参与者在已知计算模型中的分类

C. Zebelein, J. Falk, C. Haubelt, J. Teich
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引用次数: 34

摘要

由于异构复杂性需求,信号处理领域的应用通常由包含动态和静态数据流参与者的数据流图建模。因此,为参与者建模所采用的符号必须具有足够的表现力,以适应动态数据流参与者。另一方面,像对待动态数据流参与者一样对待静态数据流参与者会阻碍设计工具将特定领域的优化方法应用于模型的静态部分,例如,静态调度。在本文中,我们提出了一种通用的符号和方法,将用这种符号表示的参与者分为同步和循环静态计算数据流模型。这使得使用统一的描述性语言来表达参与者的行为成为可能,同时仍然保留了将特定领域的优化方法应用于系统部分的优势。在实验中,我们可以将我们提出的自动分类与静态单处理器调度方法相结合,将一般数据流图应用程序的延迟和吞吐量提高57%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of General Data Flow Actors into Known Models of Computation
Applications in the signal processing domain are often modeled by data flow graphs which contain both dynamic and static data flow actors due to heterogeneous complexity requirements. Thus, the adopted notation to model the actors must be expressive enough to accommodate dynamic data flow actors. On the other hand, treating static data flow actors like dynamic ones hinders design tools in applying domain-specific optimization methods to static parts of the model, e.g., static scheduling. In this paper, we present a general notation and a methodology to classify an actor expressed by means of this notation into the synchronous and cyclo-static dataflow models of computation. This enables the use of a unified descriptive language to express the behavior of actors while still retaining the advantage to apply domain-specific optimization methods to parts of the system. In experiments we could improve both latency and throughput of a general data flow graph application using our proposed automatic classification in combination with a static single-processor scheduling approach by 57%.
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