CORLD: In-Stream Correlation Manipulation for Low-Discrepancy Stochastic Computing

Sina Asadi, M. Najafi, M. Imani
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引用次数: 2

Abstract

Stochastic computing (SC) is a re-emerging computing paradigm providing low-cost and noise-tolerant designs for a wide range of arithmetic operations. SC circuits operate on uniform bit-streams with the value determined by the probability of observing 1's in the bit-stream. The accuracy of SC operations highly depends on the correlation between input bit-streams. While some operations such as minimum and maximum value functions require highly correlated inputs, some other such as multiplication operation need uncorrelated or independent inputs for accurate computation. Developing low-cost and accurate correlation manipulation circuits is an important research in SC as these circuits can manage correlation between bit-streams without expensive bit-stream regeneration. This work proposes a novel in-stream correlator and decorrelator circuit that manages 1) correlation between stochastic bit-streams, and 2) distribution of 1's in the output bit-streams. Compared to state-of-the-art solutions, our designs achieve lower hardware cost and higher accuracy. The output bit-streams enjoy a low-discrepancy distribution of bits which leads to higher quality of results. The effectiveness of the proposed circuits is shown with two case studies: SC design of sorting and median filtering.
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低差异随机计算的流内相关操作
随机计算(SC)是一种重新兴起的计算范式,为广泛的算术运算提供低成本和耐噪声的设计。SC电路在均匀的比特流上工作,其值由在比特流中观察到1的概率决定。SC操作的准确性高度依赖于输入比特流之间的相关性。虽然一些操作(如最小值函数和最大值函数)需要高度相关的输入,但其他一些操作(如乘法操作)需要不相关或独立的输入以进行精确计算。开发低成本、精确的相关处理电路是集成电路的重要研究方向,因为这些电路可以在不需要昂贵的比特流再生的情况下管理比特流之间的相关。这项工作提出了一种新的流内相关和去相关电路,它可以管理1)随机比特流之间的相关性,以及2)输出比特流中1的分布。与最先进的解决方案相比,我们的设计实现了更低的硬件成本和更高的精度。输出的比特流具有比特的低差异分布,从而获得更高质量的结果。通过两个案例研究表明了所提电路的有效性:排序的SC设计和中值滤波。
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