GRanDE: Graphical Representation and Design Space Exploration of Embedded Systems

Rajesh Kedia, Mahesh Balakrishnan, K. Paul
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Abstract

Tasks executing computer vision and machine learning algorithms are becoming popular on embedded platforms. A key characteristic of such tasks is the presence of modes providing different levels of application performance in terms of metrics like accuracy. The system designer has the flexibility to select an appropriate mode for executing such tasks. Secondly, the designer also has the traditional flexibility of choosing suitable components to build the execution platform. Thirdly, the system performance might vary with various external factors (known as context), and during the initial stages of system design, the designer might have the flexibility to support only a subset of the possible contexts. This three-fold flexibility in the hands of the designer has not been explored simultaneously in prior works and raises the complexity of designing embedded systems many-fold. In this paper, we address the design of such systems through a novel framework named GRanDE (Graphical Representation and Design Space Exploration). GRanDE consists of a comprehensive graphical representation to capture the three aspects of the design space discussed earlier. Further, we transform this representation into Constraint Logic Programming (CLP) constructs, which could be used to interactively explore and prune the design space. We demonstrate the applicability of the proposed framework on an embedded system named MAVI having ~1.3 million design points. The generated CLP program could prune up to 99.74% of the design space of MAVI.
嵌入式系统的图形表示与设计空间探索
执行计算机视觉和机器学习算法的任务在嵌入式平台上变得越来越流行。这类任务的一个关键特征是,就准确性等度量而言,存在提供不同级别应用程序性能的模式。系统设计人员可以灵活地选择执行此类任务的适当模式。其次,设计人员还具有选择合适组件构建执行平台的传统灵活性。第三,系统性能可能会随着各种外部因素(称为上下文)而变化,并且在系统设计的初始阶段,设计者可能具有只支持可能上下文的子集的灵活性。在之前的工作中,设计师手中的这种三倍灵活性并没有同时被探索,并且增加了设计嵌入式系统的复杂性。在本文中,我们通过一个名为GRanDE(图形表示和设计空间探索)的新框架来解决这种系统的设计问题。GRanDE由一个全面的图形表示组成,以捕捉前面讨论的设计空间的三个方面。此外,我们将这种表示转换为约束逻辑规划(CLP)结构,可用于交互式地探索和修剪设计空间。我们证明了所提出的框架在具有约130万个设计点的嵌入式系统MAVI上的适用性。生成的CLP程序最多可以精简MAVI设计空间的99.74%。
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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