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An automated design flow for approximate circuits based on reduced precision redundancy

机译:基于降低的精度冗余的近似电路的自动设计流程

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Reduced Precision Redundancy (RPR) is a popular Approximate Computing technique, in which a circuit operated in Voltage Over-Scaling (VOS) is paired to a reduced-bitwidth and faster replica so that VOS-induced timing errors are partially recovered by the replica, and their impact is mitigated. Previous works have provided various examples of effective implementations of RPR, which however suffer from three limitations: first, these circuits are designed using ad-hoc procedures, and no generalization is provided; second, error impact analysis is carried out statistically, thus neglecting issues like non-elementary data distribution and temporal correlation. Last, only dynamic power was considered in the optimization. In this work we propose a new generalized approach to RPR that allows to overcome all these limitations, leveraging the capabilities of state-of-the-art synthesis and simulation tools. By sacrificing theoretical provability in favor of an empirical input-based analysis, we build a design tool able to automatically add RPR to a preexisting gate-level netlist. Thanks to this method, we are able to confute some of the conclusions drawn in previous works, in particular those related to statistical assumptions on inputs; we show that a given inputs distribution may yield extremely different results depending on their temporal behavior.
机译:降低精度冗余(RPR)是一种流行的近似计算技术,该技术将以电压超标(VOS)操作的电路与缩小的位宽和更快的副本配对,从而由副本部分恢复VOS引起的定时误差,并减轻了它们的影响。先前的工作提供了RPR有效实施的各种示例,但是它们受到三个限制:首先,这些电路是使用ad-hoc程序设计的,没有提供概括性的说明;其次,错误影响分析是在统计上进行的,因此忽略了诸如非基本数据分布和时间相关性之类的问题。最后,在优化中仅考虑动态功率。在这项工作中,我们提出了一种新的RPR通用方法,该方法可以利用最先进的综合和仿真工具的功能来克服所有这些限制。通过牺牲理论可验证性,转而支持基于经验的输入分析,我们构建了一种设计工具,能够自动将RPR添加到现有的门级网表中。由于采用了这种方法,我们能够对先前工作中得出的某些结论进行混淆,特别是那些与投入的统计假设有关的结论。我们表明,给定的输入分布可能会根据其时间行为而产生截然不同的结果。

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