作者
Muhammad Abdullah Hanif, Faiq Khalid, Muhammad Shafique
发表日期
2019/6/2
图书
Proceedings of the 56th Annual Design Automation Conference 2019
页码范围
1-6
简介
Approximate Computing (AC) has emerged as a means for improving the performance, area and power-/energy-efficiency of a digital design at the cost of output quality degradation. Applications like machine learning (e.g., using DNNs-deep neural networks) are highly computationally intensive and, therefore, can significantly benefit from AC and specialized accelerators. However, the accuracy loss introduced because of approximations in the DNN accelerator hardware can result in undesirable results. This paper presents a novel method to design high-performance DNN accelerators where approximation error(s) from one stage/part of the design is "completely" compensated in the subsequent stage/part while offering significant efficiency gains. Towards this, the paper also presents a case-study for improving the performance of systolic array-based hardware architectures, which are commonly used for …
引用总数
2019202020212022202320241897104
学术搜索中的文章
MA Hanif, F Khalid, M Shafique - Proceedings of the 56th Annual Design Automation …, 2019