1. Breaking the Interaction Wall: A DLPU-Centric Deep Learning Computing System
- Author
-
Qi Guo, Zhiwei Xu, Zeng Xi, Zidong Du, Zhao Yongwei, Yunji Chen, Limin Cheng, Li Ling, and Ninghui Sun
- Subjects
Computer science ,business.industry ,Deep learning ,Computation ,Scalar (physics) ,Parallel computing ,Computing systems ,Theoretical Computer Science ,Computational Theory and Mathematics ,Hardware and Architecture ,Task analysis ,Process control ,Artificial intelligence ,Central processing unit ,business ,Field-programmable gate array ,Software - Abstract
Due to the broad successes of deep learning, many CPU-centric artificial intelligent computing systems employ specialized devices such as GPUs, FPGAs, and ASICs, which can be named as Deep Learning Processing Units (DLPUs), for processing computation-intensive deep learning tasks. The separation between the scalar control operations mapped on CPUs and the vector computation operations mapped on DLPUs causes the frequent and costly interactions between CPUs and DLPUs, leading to the Interaction Wall. Moreover, the increasing algorithm complexity and DLPU computation speed would further aggravate the interaction wall substantially.
- Published
- 2022