论文标题

通过硬件软件共同设计实时多任务衍射深神经网络

Real-time Multi-Task Diffractive Deep Neural Networks via Hardware-Software Co-design

论文作者

Li, Yingjie, Chen, Ruiyang, Rodriguez, Berardi Sensale, Gao, Weilu, Yu, Cunxi

论文摘要

深度神经网络(DNNS)具有实质性的计算要求,这极大地限制了其在资源受限环境中的性能。最近,在光学神经网络和基于光学计算的DNN硬件方面正在越来越多的努力,这在其功率效率,并行性和计算速度方面为深度学习系统带来了重要优势。其中,基于光衍射的自由空间衍射深神经网络(D $^2 $ nns),在相邻层中与神经元相互连接的每一层中的数百万个神经元。但是,由于实施可重新配置的挑战,部署不同的DNN算法需要重新构建并复制物理衍射系统,从而大大降低了实际应用程序场景中的硬件效率。因此,这项工作提出了一种新颖的硬件软件共同设计方法,该方法可以在D $^2 $ nns中实现强大而有噪声的多任务学习。我们的实验结果表明,多功能性和硬件效率的显着提高,也证明了在所有系统组件的宽噪声范围内提出的多任务d $^2 $ nn体系结构的鲁棒性。此外,我们为训练提出的多任务架构提供了一种特定领域的正则化算法,该算法可灵活地调整每个任务的所需性能。

Deep neural networks (DNNs) have substantial computational requirements, which greatly limit their performance in resource-constrained environments. Recently, there are increasing efforts on optical neural networks and optical computing based DNNs hardware, which bring significant advantages for deep learning systems in terms of their power efficiency, parallelism and computational speed. Among them, free-space diffractive deep neural networks (D$^2$NNs) based on the light diffraction, feature millions of neurons in each layer interconnected with neurons in neighboring layers. However, due to the challenge of implementing reconfigurability, deploying different DNNs algorithms requires re-building and duplicating the physical diffractive systems, which significantly degrades the hardware efficiency in practical application scenarios. Thus, this work proposes a novel hardware-software co-design method that enables robust and noise-resilient Multi-task Learning in D$^2$NNs. Our experimental results demonstrate significant improvements in versatility and hardware efficiency, and also demonstrate the robustness of proposed multi-task D$^2$NN architecture under wide noise ranges of all system components. In addition, we propose a domain-specific regularization algorithm for training the proposed multi-task architecture, which can be used to flexibly adjust the desired performance for each task.

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