A generic implementation of a quantified predictor on FPGAs

G. Thomas, A. Elhossini, B. Juurlink
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引用次数: 2

Abstract

Predictors are used in many fields of computer architectures to enhance performance. With good estimations of future system behaviour, policies can be developed to improve system performance or reduce power consumption. These policies become more effective if the predictors are implemented in hardware and can provide quantified forecasts and not only binary ones. In this paper, we present and evaluate a generic predictor implemented in VHDL running on an FPGA which produces quantified forecasts. Moreover, a complete scalability analysis is presented which shows that our implementation has a maximum device utilization of less than 5%. Furthermore, we analyse the power consumption of the predictor running on an FPGA. Additionally, we show that this implementation can be clocked by over 210 MHz. Finally, we evaluate a power-saving policy based on our hardware predictor. Based on predicted idle periods, this power-saving policy uses power-saving modes and is able to reduce memory power consumption by 14.3%.
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量化预测器在fpga上的通用实现
预测器用于计算机体系结构的许多领域,以提高性能。通过对未来系统行为的良好估计,可以制定策略来改进系统性能或降低功耗。如果预测器在硬件中实现,并且可以提供量化的预测,而不仅仅是二进制预测,那么这些策略将变得更加有效。在本文中,我们提出并评估了一个通用的预测器实现的VHDL在FPGA上运行,产生量化的预测。此外,给出了完整的可扩展性分析,表明我们的实现的最大设备利用率低于5%。此外,我们分析了在FPGA上运行的预测器的功耗。此外,我们表明该实现的时钟可以超过210 MHz。最后,我们基于硬件预测器评估节能策略。根据预测的空闲时间,该策略采用省电模式,能够将内存功耗降低14.3%。
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