Amber: 367 GOPS, 538 GOPS/W 16nm SoC与粗粒度可重构阵列,用于密集线性代数的灵活加速

Alex Carsello, Kathleen Feng, Taeyoung Kong, Kalhan Koul, Qiaoyi Liu, J. Melchert, Gedeon Nyengele, Maxwell Strange, Kecheng Zhang, Ankita Nayak, Jeff Setter, James J. Thomas, Kavya Sreedhar, Po-Han Chen, Nikhil Bhagdikar, Zachary Myers, Brandon D'Agostino, Pranil Joshi, S. Richardson, Rick Bahr, Christopher Torng, M. Horowitz, Priyanka Raina
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引用次数: 9

摘要

Amber是一款系统级芯片(SoC),具有粗粒度可重构阵列(CGRA),用于加速密集线性代数应用,如机器学习(ML),图像处理和计算机视觉。它的峰值能效为538.0 INT16 GFLOPS/W和483.3 BFloat16 GFLOPS/W。我们通过(1)CGRA的动态部分重构,通过允许多个应用程序同时运行来实现更高的资源利用率,(2)支持仿射访问模式的高效流存储器控制器,以及(3)低开销的超越和复杂算术运算,最大限度地提高CGRA利用率并最小化可重构性开销。与CPU, GPU和FPGA相比,Amber实现了高达3902x, 152x和88x的能量延迟产品(EDP)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Amber: A 367 GOPS, 538 GOPS/W 16nm SoC with a Coarse-Grained Reconfigurable Array for Flexible Acceleration of Dense Linear Algebra
Amber is a system-on-chip (SoC) with a coarse-grained reconfigurable array (CGRA) for acceleration of dense linear algebra applications such as machine learning (ML), image processing, and computer vision. It achieves a peak energy efficiency of 538.0 INT16 GOPS/W and 483.3 BFloat16 GFLOPS/W. We maximize CGRA utilization and minimize reconfigurability overhead through (1) dynamic partial reconfiguration of the CGRA that enables higher resource utilization by allowing multiple applications to run at once, (2) efficient streaming memory controllers supporting affine access patterns, and (3) low-overhead transcendental and complex arithmetic operations. Compared to a CPU, a GPU, and an FPGA, Amber achieves up to 3902x, 152x, and 88x better energy-delay product (EDP).
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