Designing Application-Specific Heterogeneous Architectures from Performance Models

Thanh Cong, François Charot
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引用次数: 2

Abstract

In this paper, we propose an approach for designing application-specific heterogeneous systems based on performance models through combining accelerator and processor core models. An application-specific program is profiled by the dynamic execution trace and is used to construct a data flow model of the accelerator. Modeling of the processor is partitioned into an instruction set architecture (ISA) execution and a micro-architecture specific timing model. These models are implemented on FPGAs to take advantage of their parallelism and speed up the simulation when architecture complexity increases. This approach aims to ease the design of multi-core multi-accelerator architecture, consequently contributes to explore the design space by automating the design steps. A case study is conducted to confirm that presented design flow can model the accelerator starting from an algorithm, validate its integration in a simulation framework, allowing precise performance to be estimated. We also assess the performance of our RISC-V single-core and RISC-V-based heterogeneous architecture models.
从性能模型设计特定于应用程序的异构体系结构
本文提出了一种结合加速器和处理器核心模型的基于性能模型的异构系统设计方法。通过动态执行跟踪对特定应用程序进行分析,并用于构建加速器的数据流模型。处理器的建模分为指令集体系结构(ISA)执行和特定于微体系结构的时序模型。这些模型在fpga上实现,以利用其并行性,并在架构复杂性增加时加快仿真速度。该方法旨在简化多核多加速器架构的设计,从而通过自动化设计步骤来探索设计空间。通过实例研究,验证了所提出的设计流程可以从算法开始对加速器进行建模,验证了其在仿真框架中的集成,从而可以准确地估计加速器的性能。我们还评估了我们的RISC-V单核和基于RISC-V的异构架构模型的性能。
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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