量化(信号处理)
卷积神经网络
计算机科学
内存占用
光子学
推论
高效能源利用
同种类的
计算科学
人工智能
算法
物理
光电子学
电气工程
工程类
操作系统
热力学
作者
Febin Sunny,Mahdi Nikdast,Sudeep Pasricha
标识
DOI:10.1145/3526241.3530364
摘要
Parameter quantization in convolutional neural networks (CNNs) can help generate efficient models with lower memory footprint and computational complexity. But, homogeneous quantization can result in significant degradation of CNN model accuracy. In contrast, heterogeneous quantization represents a promising approach to realize compact, quantized models with higher inference accuracies. In this paper, we propose HQNNA, a CNN accelerator based on non-coherent silicon photonics that can accelerate both homogeneously quantized and heterogeneously quantized CNN models. Our analyses show that HQNNA achieves up to 73.8x better energy-per-bit and 159.5x better throughput-energy efficiency than state-of-the-art photonic CNN accelerators
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