O. Sentieys, Silviu-Ioan Filip, David Briand, D. Novo, Etienne Dupuis, Ian O’Connor, A. Bosio
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引用次数: 2

摘要

卷积神经网络(cnn)用于深度学习(DL)的设计和实现目前受到工业界和学术界的广泛关注。然而,cnn所涉及的计算工作量对于低功耗嵌入式设备来说通常是无法达到的,并且在数据中心上运行时仍然非常昂贵。通过放松对完全精确操作的需要,近似计算大大提高了性能和能源效率。在这种情况下,深度学习是非常相关的,因为利用精度来达到足够的计算将显著提高性能,同时在用户约束的范围内保持结果的质量。该项目旨在探索近似如何提高深度学习应用中硬件加速器的性能和能效。本文介绍了与cnn近似相关的主要概念和技术,以及在equiatedl框架中获得的初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AdequateDL: Approximating Deep Learning Accelerators
The design and implementation of Convolutional Neural Networks (CNNs) for deep learning (DL) is currently receiving a lot of attention from both industrials and academics. However, the computational workload involved with CNNs is often out of reach for low power embedded devices and is still very costly when running on datacenters. By relaxing the need for fully precise operations, approximate computing substantially improves performance and energy efficiency. Deep learning is very relevant in this context, since playing with the accuracy to reach adequate computations will significantly enhance performance, while keeping quality of results in a user-constrained range. AdequateDL is a project aiming to explore how approximations can improve performance and energy efficiency of hardware accelerators in DL applications. This paper presents the main concepts and techniques related to approximation of CNNs and preliminary results obtained in the AdequateDL framework.
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