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Automated Circuit Approximation Method Driven by Data Distribution

机译:数据分布驱动的自动电路逼近方法

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We propose an application-tailored data-driven fully automated method for functional approximation of combinational circuits. We demonstrate how an application-level error metric such as the classification accuracy can be translated to a component-level error metric needed for an efficient and fast search in the space of approximate low-level components that are used in the application. This is possible by employing a weighted mean error distance (WMED) metric for steering the circuit approximation process which is conducted by means of genetic programming. WMED introduces a set of weights (calculated from the data distribution measured on a selected signal in a given application) determining the importance of each input vector for the approximation process. The method is evaluated using synthetic benchmarks and application-specific approximate MAC (multiply-and-accumulate) units that are designed to provide the best trade-offs between the classification accuracy and power consumption of two image classifiers based on neural networks.
机译:我们为组合电路的功能逼近提出了一种针对应用的数据驱动的全自动方法。我们演示了如何将应用程序级错误度量(例如分类精度)转换为在应用程序中使用的近似低级组件的空间中高效,快速搜索所需的组件级错误度量。这可以通过采用加权平均误差距离(WMED)度量来控制通过遗传编程进行的电路近似过程来实现。 WMED引入了一组权重(根据给定应用程序中对选定信号的测量数据分布计算得出),确定每个输入向量对于逼近过程的重要性。使用综合基准和特定于应用的近似MAC(乘法和累加)单元对方法进行评估,这些单元旨在在基于神经网络的两个图像分类器的分类精度和功耗之间提供最佳折衷。

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