利用随机电路进行快速准确的计算

Armin Alaghi, J. Hayes
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引用次数: 99

摘要

随机计算是一种低成本的设计技术,在图像处理等领域有着广阔的应用前景。SC使算术运算能够在使用超小型和低功耗电路的随机比特流上执行。然而,由于随机数固有的随机波动,精确的计算往往需要较长的运行时间。我们提出了新的SN生成技术,可以更好地权衡准确性和运行时。首先,我们分析了一种称为渐进精度(PP)的特性,它允许计算精度随着运行时间系统地增长。其次,借鉴蒙特卡罗方法,我们证明了用可预测的低差异(LD)序列代替通常的伪随机数源可以大大提高SC性能。最后,我们评估了LD随机数在SC中的使用,并表明它们可以比现有的随机设计产生更快和更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and accurate computation using stochastic circuits
Stochastic computing (SC) is a low-cost design technique that has great promise in applications such as image processing. SC enables arithmetic operations to be performed on stochastic bit-streams using ultra-small and low-power circuitry. However, accurate computations tend to require long run-times due to the random fluctuations inherent in stochastic numbers (SNs). We present novel techniques for SN generation that lead to better accuracy/run-time trade-offs. First, we analyze a property called progressive precision (PP) which allows computational accuracy to grow systematically with run-time. Second, borrowing from Monte Carlo methods, we show that SC performance can be greatly improved by replacing the usual pseudo-random number sources by low-discrepancy (LD) sequences that are predictably progressive. Finally, we evaluate the use of LD stochastic numbers in SC, and show they can produce significantly faster and more accurate results than existing stochastic designs.
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