优化值预测的ILP处理器:设计空间探索方法

IF 2.2 3区 工程技术 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Ling Yang, Zhong Zheng, Libo Huang, Run Yan, Sheng Ma, Yongwen Wang, Weixia Xu
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引用次数: 0

摘要

值预测是一种微架构技术,通过推测性地打破真正的数据依赖关系来增强处理器性能。它已经证明在单线程和多线程工作负载中都可以提高性能,使其成为一种吸引人的微体系结构方法。虽然高性能的价值预测器可以达到令人印象深刻的准确性,但它们也可能在面积、功耗和复杂性方面产生巨大的成本。因此,需要能够在性能和开销之间取得良好平衡的轻量级值预测技术。然而,使用有限的资源设计具有优越性能的值预测器是一个紧迫的挑战,因为不适当的参数配置可能导致成本超支和处理器性能下降。因此,本研究为最先进的EVES值预测器提出了一个设计空间探索框架,旨在有效地在受限的RAM资源内配置值预测器的设计参数。此外,本文还在广泛的工作负载范围内评估了所探索的值预测器的性能。所探索的值预测器在从2KB到16KB的RAM大小范围内表现出高效率,同时保持可接受的计算复杂性。此外,结果表明,探索的值预测器在2KB约束下实现了最佳效率,最高的加速成本比达到每KB 8.74%,大约是目前最先进的值预测器的三倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing value prediction for ILP processors: A design space exploration approach
Value prediction is a microarchitectural technique that enhances processor performance by speculatively breaking true data dependencies. It has demonstrated improved performance in both single-threaded and multi-threaded workloads, rendering it an appealing microarchitectural approach. While high-performance value predictors can achieve impressive accuracy, they may also incur significant costs in terms of area, power consumption, and complexity. Therefore, there is a demand for lightweight value prediction techniques capable of striking a favorable balance between performance and overhead. However, designing value predictors with superior performance using limited resources presents an urgent challenge, as inappropriate parameter configurations may result in cost overruns and degraded processor performance. Consequently, this work proposes a design space exploration framework for the state-of-the-art EVES value predictor, aiming to efficiently configure the design parameters of the value predictor within constrained RAM resources. Additionally, the article evaluates the performance of the explored value predictor across a wide range of workloads. The explored value predictors exhibit high efficiency across RAM sizes ranging from 2KB to 16KB while maintaining acceptable computational complexity. Furthermore, the results indicate that the explored value predictor achieves optimal efficiency under the 2KB constraint, with the highest acceleration-to-cost ratio reaching 8.74% per KB, approximately three times greater than that of the current state-of-the-art value predictor.
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来源期刊
Integration-The Vlsi Journal
Integration-The Vlsi Journal 工程技术-工程:电子与电气
CiteScore
3.80
自引率
5.30%
发文量
107
审稿时长
6 months
期刊介绍: Integration''s aim is to cover every aspect of the VLSI area, with an emphasis on cross-fertilization between various fields of science, and the design, verification, test and applications of integrated circuits and systems, as well as closely related topics in process and device technologies. Individual issues will feature peer-reviewed tutorials and articles as well as reviews of recent publications. The intended coverage of the journal can be assessed by examining the following (non-exclusive) list of topics: Specification methods and languages; Analog/Digital Integrated Circuits and Systems; VLSI architectures; Algorithms, methods and tools for modeling, simulation, synthesis and verification of integrated circuits and systems of any complexity; Embedded systems; High-level synthesis for VLSI systems; Logic synthesis and finite automata; Testing, design-for-test and test generation algorithms; Physical design; Formal verification; Algorithms implemented in VLSI systems; Systems engineering; Heterogeneous systems.
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