仅使用近似无表LNS ALU训练神经网络

M. Arnold, E. Chester, Corey Johnson
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引用次数: 4

摘要

对数系统(LNS)在允许近似计算的应用程序中非常有用,例如使用多层神经网络进行分类,该神经网络计算前几层输入的加权和的非线性函数。监督学习有两个阶段:训练(为期望的分类找到合适的权重)和推理(使用具有近似乘积和的权重)。一些研究人员观察到,推理中的LNS alu可以通过低精度和近似(允许低成本,无表实现)来最小化面积和功耗。然而,少数使用LNS进行训练的作品报告至少部分系统需要精确的LNS。本文描述了一种新颖的近似LNS ALU,它简单地实现为逻辑(没有表),使整个反向传播训练在LNS中发生,成本是定点实现的三分之一。
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Training Neural Nets using only an Approximate Tableless LNS ALU
The Logarithmic Number System (LNS) is useful in applications that tolerate approximate computation, such as classification using multi-layer neural networks that compute nonlinear functions of weighted sums of inputs from previous layers. Supervised learning has two phases: training (find appropriate weights for the desired classification), and inference (use the weights with approximate sum of products). Several researchers have observed that LNS ALUs in inference may minimize area and power by being both low-precision and approximate (allowing low-cost, tableless implementations). However, the few works that have also trained with LNS report at least part of the system needs accurate LNS. This paper describes a novel approximate LNS ALU implemented simply as logic (without tables) that enables the entire back-propagation training to occur in LNS, at one-third the cost of fixed-point implementation.
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