Throughput driven transformations of Synchronous Data Flows for mapping to heterogeneous MPSoCs

Anastasia Stulova, R. Leupers, G. Ascheid
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引用次数: 23

Abstract

Due to energy efficiency requirements of modern embedded systems, chip vendors are inclined towards multicore architectures with different types of processing engines and non-uniform interconnect fabrics. At the same time multiple applications are intended to run concurrently on the devices with such heterogeneous architectures. This rapid growth in the complexity of the hardware and its use cases imposes new challenges on the software development tools. To overcome this complexity, model of computation based approaches are becoming increasingly promising. Synchronous Data Flow (SDF) is a popular specification formalism for streaming applications with inherently concurrent nature. However, the parallelism expressed in the original representation is often not sufficient to maximally exploit the potential of multicore platforms. In this paper we present a holistic methodology for improving the throughput of streaming applications while mapping them onto heterogeneous architectures. The approach uses transformations that adapt the parallelism in SDF according to available platform resources. We use a genetic algorithm to explore SDF instances with the objective of maximizing throughput on a target platform. Our model supports architecture heterogeneity and multi-application scenarios. The experiments indicate that our approach outperforms other techniques for exploiting parallelism on a single application in most of the test cases and enables concurrent applications optimization.
映射到异构mpsoc的同步数据流的吞吐量驱动转换
由于现代嵌入式系统对能源效率的要求,芯片供应商倾向于采用不同类型的处理引擎和不统一的互连结构的多核架构。同时,多个应用程序打算在具有这种异构体系结构的设备上并发运行。硬件及其用例复杂性的快速增长给软件开发工具带来了新的挑战。为了克服这种复杂性,基于计算模型的方法正变得越来越有前途。同步数据流(SDF)是具有固有并发性的流应用程序的流行规范形式。然而,原始表示中表达的并行性通常不足以最大限度地利用多核平台的潜力。在本文中,我们提出了一个整体的方法来提高流应用程序的吞吐量,同时将它们映射到异构架构上。该方法使用根据可用平台资源调整SDF中的并行性的转换。我们使用遗传算法来探索SDF实例,目标是在目标平台上最大化吞吐量。我们的模型支持架构异构性和多应用场景。实验表明,在大多数测试用例中,我们的方法优于其他在单个应用程序上利用并行性的技术,并支持并发应用程序优化。
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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