Analog-memory-based 14nm Hardware Accelerator for Dense Deep Neural Networks including Transformers

Atsuya Okazaki, Pritish Narayanan, Stefano Ambrogio, Kohji Hosokawa, Hsinyu Tsai, Akiyo Nomura, Takeo Yasuda, Charles Mackin, Alexander M. Friz, Masatoshi Ishii, Yasuteru Kohda, Katie Spoon, An Chen, Andrea Fasoli, Malte J. Rasch, Geoffrey W. Burr. Analog-memory-based 14nm Hardware Accelerator for Dense Deep Neural Networks including Transformers. In IEEE International Symposium on Circuits and Systems, ISCAS 2022, Austin, TX, USA, May 27 - June 1, 2022. pages 3319-3323, IEEE, 2022. [doi]

Abstract

Abstract is missing.