Accurate and Efficient Quantized Reservoir Computing System

Shiya Liu, Yibin Liang, Victor Gan, Lingjia Liu, Y. Yi
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引用次数: 4

Abstract

Quantization is a widely used technique to deploy deep learning models on embedded systems since this technique could reduce the model size and computation dramatically. Many quantization approaches have been proposed in recent years. Some quantization approaches are aggressive which could sufficiently reduce the model size and computation. However, the accuracy could be significantly decreased. To resolve this issue, some research groups have proposed smoother approaches to reduce accuracy loss. However, smoother approaches would use much more resources than aggressive approaches. In our work, we proposed a quantization approach which reduces resource utilization dramatically without losing much accuracy. We have successfully applied our quantization approach to the reservoir computing (RC) system. Compared to the RC system using floating-point numbers, our proposed RC system reduces the resource utilization of BRAM, DSP, Flip-Flop (FF) and Lookup Table (LUT) by 47%, 93%, 93%, and 87%, respectively, while only loses 0.08% accuracy on the NARMA10 dataset. Meanwhile, our proposed RC system uses approximately 45%, 14%, and 21% less BRAM, FF, and LUT respectively than the quantized RC system using other popular quantization approach.
准确高效的量化储层计算系统
量化是在嵌入式系统上部署深度学习模型的一种广泛使用的技术,因为这种技术可以显着减少模型的大小和计算量。近年来提出了许多量化方法。一些量化方法是积极的,可以充分减少模型的大小和计算。然而,准确性可能会显著降低。为了解决这个问题,一些研究小组提出了更流畅的方法来减少精度损失。然而,更流畅的方法会比激进的方法使用更多的资源。在我们的工作中,我们提出了一种量化方法,可以在不损失太多精度的情况下显着降低资源利用率。我们已经成功地将我们的量化方法应用于储层计算(RC)系统。与使用浮点数的RC系统相比,我们提出的RC系统将BRAM、DSP、Flip-Flop (FF)和Lookup Table (LUT)的资源利用率分别降低了47%、93%、93%和87%,而在NARMA10数据集上仅损失0.08%的精度。同时,我们提出的RC系统使用的BRAM、FF和LUT分别比使用其他流行量化方法的量化RC系统少约45%、14%和21%。
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