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Energy-Efficient Pattern Recognition Hardware With Elementary Cellular Automata

机译:具有基本蜂窝自动机的节能模式识别硬件

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摘要

The development of power-efficient Machine Learning Hardware is of high importance to provide Artificial Intelligence (AI) characteristics to those devices operating at the Edge. Unfortunately, state-of-the-art data-driven AI techniques such as deep learning are too costly in terms of hardware and energy requirements for Edge Computing (EC) devices. Recently, Cellular Automata (CA) have been proposed as a feasible way to implement Reservoir Computing (RC) systems in which the automaton rule is fixed and the training is performed using a linear regression model. In this work we show that Reservoir Computing based on CA may arise as a promising AI alternative for devices operating at the edge due to its intrinsic simplicity. For this purpose, a new low-power CA-based reservoir hardware is proposed and implemented in a FPGA (known as ReCA circuitry). The use of Elementary Cellular Automata (ECA) is able to further simplify the RC structure to implement a power efficient AI system suitable to be implemented in EC applications. Experiments have been conducted on the well-known MNIST handwritten digits database, obtaining competitive results in terms of processing time, circuit area, power and inference accuracy.
机译:节能机械学习硬件的发展高度重视,为在边缘运行的设备提供人工智能(AI)特性。遗憾的是,在边缘计算(EC)设备的硬件和能量要求方面,最先进的数据驱动的AI技术是太昂贵的。最近,已经提出了蜂窝自动机(CA)作为实现储层计算(RC)系统的可行方法,其中自动化规则是固定的,并且使用线性回归模型执行训练。在这项工作中,我们示出了基于CA的储层计算,这是由于其固有的简单性而在边缘操作的设备的替代方案。为此目的,提出了一种新的低功耗CA基储库硬件,并在FPGA(称为RECA电路)中实现。使用基本蜂窝自动机(ECA)能够进一步简化RC结构以实现适合于EC应用中实现的功率有效的AI系统。在众所周知的Mnist手写数字数据库上进行了实验,从处理时间,电路区域,功率和​​推理精度方面获得竞争力。

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