Result Details
Automated Circuit Approximation Method Driven by Data Distribution
Mrázek Vojtěch, Ing., Ph.D., DCSY (FIT)
Sekanina Lukáš, prof. Ing., Ph.D., DCSY (FIT)
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.
digital circuit, approximate circuit, functional approximation, neural network
@inproceedings{BUT156843,
author="Zdeněk {Vašíček} and Vojtěch {Mrázek} and Lukáš {Sekanina}",
title="Automated Circuit Approximation Method Driven by Data Distribution",
booktitle="Design, Automation and Test in Europe Conference",
year="2019",
pages="96--101",
publisher="European Design and Automation Association",
address="Florence",
doi="10.23919/DATE.2019.8714977",
isbn="978-3-9819263-2-3",
url="https://www.fit.vut.cz/research/publication/11821/"
}