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Probabilistic estimation of the application-level impact of precision scaling in approximate computing applications

机译:近似计算应用中精度缩放对应用程序级别影响的概率估计

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摘要

The introduction of Approximate Computing (AxC) into software allows achieving several optimizations such as performance improvement, energy reduction, and area reduction by paying with a decreased precision of the computed results. In order to find an effective balance in the application of approximate operators within the software, the approximation techniques proposed in the literature run several versions of the software with different configurations of the given technique. The common issue of this kind of approaches is the lack of a methodology to estimate the impact of the approximation at the application-level accuracy without facing time intensive simulations.In this paper, we evaluate the application-level accuracy by means of a Bayesian network modeling the propagation of the approximation across data. Once modeled the required classes of accuracy, the approach predicts the probability of the outcomes to reach each accuracy class. We performed experiments on a set of well-known target applications, both resilient and non-resilient to approximation. Specifically, as case study applications we used matrix multiplication, Discrete Cosine Transform (DCT), a Finite Impulse Response (FIR) filter and an image blending algorithm. Results show that the proposed approach is able to estimate the approximation error with good accuracy (98-99%) and very low computation time (i.e., few seconds, in the worst case).
机译:将近似计算(AxC)引入软件后,可以通过降低计算结果的精度来实现多项优化,例如性能改进,能耗降低和面积减少。为了在软件中近似运算符的应用中找到有效的平衡,文献中提出的近似技术使用给定技术的不同配置来运行软件的多个版本。这种方法的普遍问题是缺乏一种无需面对时间密集型仿真就可以估计近似值对应用程序级精度的影响的方法。在本文中,我们通过贝叶斯网络评估了应用程序级精度。为数据之间的近似传播建模。对所需的精度等级进行建模后,该方法将预测结果达到每个精度等级的可能性。我们对一组众所周知的目标应用程序进行了实验,这些应用程序具有近似的弹性和非弹性。具体而言,作为案例研究应用程序,我们使用了矩阵乘法,离散余弦变换(DCT),有限冲激响应(FIR)滤波器和图像混合算法。结果表明,所提出的方法能够以良好的准确性(98-99%)和非常短的计算时间(即在最坏的情况下为几秒钟)估计近似误差。

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