基于代理模型的深度神经网络硬件加速器协同优化

Hendrik Wöhrle, M. D. L. Alvarez, Fabian Schlenke, A. Walsemann, M. Karagounis, F. Kirchner
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引用次数: 1

摘要

在本文中,我们提出了一种基于22FDX/FDSOI技术的ASIC,用于使用神经网络检测人体心电图中的心房颤动。ASIC由支持软件组件的RISC-V内核和用于实现计算密集型推理的特定应用机器学习IP内核(ML-IP)组成。ASIC的设计是为了最大限度地提高能源效率。ML-IP的一个特点是它的模块化,通用和可扩展的ML-IP设计,允许指定每个计算操作的量化,并行化程度和神经网络的体系结构。这反过来又允许使用基于ml的优化技术对神经网络(nn)的硬件设计和架构进行协同优化。在这里,在给定的分类精度和速度下,通过使用概率代理模型进行多目标优化,对整个系统进行多目标优化,以提高计算效率。该模型试图用最少的训练、仿真和评估步骤找到最优的神经网络结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate Model based Co-Optimization of Deep Neural Network Hardware Accelerators
In this paper, we present an ASIC based on 22FDX/FDSOI technology for the detection of atrial fibrillation in human electrocardiograms using neural networks. The ASIC consists of a RISC-V core for supporting software components and an application-specific machine learning IP core (ML-IP), which is used to implement the computationally intensive inference. The ASIC was designed for maximum energy efficiency. A special feature of the ML-IP is its modular, generic and scalable design of the ML-IP which allows to specify the quantization of each computational operation, the degree of parallelization and the architecture of the neural network. This in turn allows the use of ML-based optimization techniques to perform co-optimization for hardware design and architecture of the neural network (NNs). Here, a multi-objective optimization of the overall system is performed with respect to computational efficiency at a given classification accuracy and speed by using a multi-objective optimization, which is carried out using a probabilistic surrogate model. This model tries to find the optimal neural network architecture with a minimum number of training, simulation and evaluation steps.
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