An Enhanced Data Cache with In-Cache Processing Units for Convolutional Neural Network Accelerators

Yuchao Zhou, Mai Lei, Yong-Liang Zhang, Quan Zhang, Jun Han
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引用次数: 1

Abstract

Convolutional neural network algorithms rely on large quantities of data to extract hidden information. In order to achieve good performance, a CNN accelerator should be able to easily access a wide range of memory space. However, on-chip memory has limited capacity, and needs to be manually managed by the accelerator controller. Besides, accessing off-chip memory like a DRAM array needs a physical address, which is not calculated until a memory access request arrives at a memory access control unit. Managing those issues manually complicates CNN accelerator design. Therefore, we propose a data cache enhanced with in-cache processing units, which processes segment address in parallel with data, and exploits data locality in an automatic manner. Overheads such as physical address translation, quantization, and ReLU, are offloaded from the accelerator controller.
卷积神经网络加速器的增强型数据缓存与缓存内处理单元
卷积神经网络算法依靠大量的数据来提取隐藏信息。为了获得良好的性能,CNN加速器应该能够轻松访问大范围的存储空间。然而,片上存储器的容量有限,需要由加速器控制器手动管理。此外,访问像DRAM阵列这样的片外存储器需要一个物理地址,直到存储器访问请求到达存储器访问控制单元时才计算物理地址。手动管理这些问题会使CNN加速器的设计复杂化。因此,我们提出了一种增强了缓存内处理单元的数据缓存,它与数据并行处理段地址,并以自动方式利用数据局部性。诸如物理地址转换、量化和ReLU之类的开销从加速器控制器中卸载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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