R-锁:高能效、灵活、可编程的 CGRA

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE ACM Transactions on Reconfigurable Technology and Systems Pub Date : 2024-04-08 DOI:10.1145/3656642
Barry de Bruin, Kanishkan Vadivel, Mark Wijtvliet, Pekka Jääskeläinen, Henk Corporaal
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引用次数: 0

摘要

嵌入式、电子医疗和物联网(IoT)领域中新兴的数据驱动型应用需要复杂的设备上信号分析和数据缩减,以最大限度地提高这些能源受限设备的能效。粗粒度可重构架构(CGRA)作为超低功耗(ULP)信号处理的灵活性和能效之间的良好折中方案已被提出。现有的粗粒度可重构架构通常是专用的、特定领域的,或者只能加速简单的内核,这使得在粗粒度可重构架构上加速完整的应用并保持高能效成为一个悬而未决的问题。此外,由于 CGRA 之间缺乏指令集架构(ISA)标准化,使用当前编译器技术生成代码成为一大挑战。这项工作引入了 R-Blocks;这是一种基于 OpenASIP 工具集的 ULP CGRA,具有硬件/软件协同设计工具流。这种 CGRA 具有极高的灵活性,因为它采用了成熟的 VLIW-SIMD 执行模型,支持灵活的 SIMD 处理,同时利用软件旁路、优化的指令传输和本地 scratchpad 存储器保持了极高的能效。R-Blocks 采用商用 22 纳米 FD-SOI 技术合成,在普通 FFT 基准上实现了 115 MOPS/mW 的全系统能效,比高度调整的嵌入式 RISC-V 处理器高 1.45 倍。在多种复杂的工作负载上,R-Blocks 获得了相当高的能效,成为通用计算领域前景广阔的加速目标。
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R-Blocks: an Energy-Efficient, Flexible, and Programmable CGRA

Emerging data-driven applications in the embedded, e-Health, and internet of things (IoT) domain require complex on-device signal analysis and data reduction to maximize energy efficiency on these energy-constrained devices. Coarse-grained reconfigurable architectures (CGRAs) have been proposed as a good compromise between flexibility and energy efficiency for ultra-low power (ULP) signal processing. Existing CGRAs are often specialized and domain-specific or can only accelerate simple kernels, which makes accelerating complete applications on a CGRA while maintaining high energy efficiency an open issue. Moreover, the lack of instruction set architecture (ISA) standardization across CGRAs makes code generation using current compiler technology a major challenge. This work introduces R-Blocks; a ULP CGRA with HW/SW co-design tool-flow based on the OpenASIP toolset. This CGRA is extremely flexible due to its well-established VLIW-SIMD execution model and support for flexible SIMD-processing, while maintaining an extremely high energy efficiency using software bypassing, optimized instruction delivery, and local scratchpad memories. R-Blocks is synthesized in a commercial 22-nm FD-SOI technology and achieves a full-system energy efficiency of 115 MOPS/mW on a common FFT benchmark, 1.45 × higher than a highly tuned embedded RISC-V processor. Comparable energy efficiency is obtained on multiple complex workloads, making R-Blocks a promising acceleration target for general-purpose computing.

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来源期刊
ACM Transactions on Reconfigurable Technology and Systems
ACM Transactions on Reconfigurable Technology and Systems COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
CiteScore
4.90
自引率
8.70%
发文量
79
审稿时长
>12 weeks
期刊介绍: TRETS is the top journal focusing on research in, on, and with reconfigurable systems and on their underlying technology. The scope, rationale, and coverage by other journals are often limited to particular aspects of reconfigurable technology or reconfigurable systems. TRETS is a journal that covers reconfigurability in its own right. Topics that would be appropriate for TRETS would include all levels of reconfigurable system abstractions and all aspects of reconfigurable technology including platforms, programming environments and application successes that support these systems for computing or other applications. -The board and systems architectures of a reconfigurable platform. -Programming environments of reconfigurable systems, especially those designed for use with reconfigurable systems that will lead to increased programmer productivity. -Languages and compilers for reconfigurable systems. -Logic synthesis and related tools, as they relate to reconfigurable systems. -Applications on which success can be demonstrated. The underlying technology from which reconfigurable systems are developed. (Currently this technology is that of FPGAs, but research on the nature and use of follow-on technologies is appropriate for TRETS.) In considering whether a paper is suitable for TRETS, the foremost question should be whether reconfigurability has been essential to success. Topics such as architecture, programming languages, compilers, and environments, logic synthesis, and high performance applications are all suitable if the context is appropriate. For example, an architecture for an embedded application that happens to use FPGAs is not necessarily suitable for TRETS, but an architecture using FPGAs for which the reconfigurability of the FPGAs is an inherent part of the specifications (perhaps due to a need for re-use on multiple applications) would be appropriate for TRETS.
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