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  5. Amber: A 16-nm System-on-Chip With a Coarse- Grained Reconfigurable Array for Flexible Acceleration of Dense Linear Algebra

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Article
English
2023

Amber: A 16-nm System-on-Chip With a Coarse- Grained Reconfigurable Array for Flexible Acceleration of Dense Linear Algebra

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English
2023
IEEE Journal of Solid-State Circuits
Vol 59 (3)
DOI: 10.1109/jssc.2023.3313116

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Mark Horowitz
Mark Horowitz

Stanford University

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Kathleen Feng
Taeyoung Kong
Kalhan Koul
+19 more

Abstract

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 is designed using an agile accelerator–compiler codesign flow; the compiler updates automatically with hardware changes, enabling continuous application-level evaluation of the hardware–software system. To increase hardware utilization and minimize reconfigurability overhead, Amber features the following: 1) dynamic partial reconfiguration (DPR) of the CGRA for higher resource utilization by allowing fast switching between applications and partitioning resources between simultaneous applications; 2) streaming memory controllers supporting affine access patterns for efficient mapping of dense linear algebra; and 3) low-overhead transcendental and complex arithmetic operations. The physical design of Amber features a unique clock distribution method and timing methodology to efficiently layout its hierarchical and tile-based design. Amber achieves a peak energy efficiency of 538 INT16 GOPS/W and 483 BFloat16 GFLOPS/W. Compared with a CPU, a GPU, and a field-programmable gate array (FPGA), Amber has up to 3902 $\times $ , 152 $\times $ , and 107 $\times $ better energy-delay product (EDP), respectively.

How to cite this publication

Kathleen Feng, Taeyoung Kong, Kalhan Koul, Jackson Melchert, Alex Carsello, Qiaoyi Liu, Gedeon Nyengele, Maxwell Strange, Keyi Zhang, Ankita Nayak, Jeff Setter, James J. Thomas, Kavya Sreedhar, Po‐Han Chen, Nikhil Bhagdikar, Zach A. Myers, Brandon D’Agostino, Pranil Joshi, Stephen Richardson, Christopher Torng, Mark Horowitz, Priyanka Raina (2023). Amber: A 16-nm System-on-Chip With a Coarse- Grained Reconfigurable Array for Flexible Acceleration of Dense Linear Algebra. IEEE Journal of Solid-State Circuits, 59(3), pp. 947-959, DOI: 10.1109/jssc.2023.3313116.

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Publication Details

Type

Article

Year

2023

Authors

22

Datasets

0

Total Files

0

Language

English

Journal

IEEE Journal of Solid-State Circuits

DOI

10.1109/jssc.2023.3313116

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