MIOpen: An Open Source Library For Deep Learning Primitives

Author:

Khan Jehandad1ORCID,Fultz Paul1ORCID,Tamazov Artem1ORCID,Lowell Daniel1ORCID,Liu Chao1ORCID,Melesse Michael1ORCID,Nandhimandalam Murali1ORCID,Nasyrov Kamil1ORCID,Perminov Ilya1ORCID,Shah Tejash1ORCID,Filippov Vasilii1ORCID,Zhang Jing1ORCID,Zhou Jing1ORCID,Natarajan Bragadeesh1ORCID,Daga Mayank1ORCID

Affiliation:

1. AMD Inc.

Abstract

Deep Learning has established itself to be a common occurrence in the business lexicon. The unprecedented success of deep learning in recent years can be attributed to: an abundance of data, availability of gargantuan compute capabilities offered by GPUs, and adoption of open-source philosophy by the researchers and industry. Deep neural networks can be decomposed into a series of different operators. MIOpen, AMD's open-source deep learning primitives library for GPUs, provides highly optimized implementations of such operators, shielding researchers from internal implementation details and hence, accelerating the time to discovery. This paper introduces MIOpen and provides details about the internal workings of the library and supported features. MIOpen innovates on several fronts, such as implementing fusion to optimize for memory bandwidth and GPU launch overheads, providing an auto-tuning infrastructure to overcome the large design space of problem configurations, and implementing different algorithms to optimize convolutions for different filter and input sizes. MIOpen is one of the first libraries to publicly support the bfloat16 data-type for convolutions, allowing efficient training at lower precision without the loss of accuracy.

Publisher

MONOMAX Limited Liability Company

Reference29 articles.

1. Abadi, M., Barham, P., Chen, J., Chen, Z., Davis, A., Dean, J., Devin, M., Ghemawat, S.,Irving, G., Isard, M., et al.: TensorFlow: A system for large-scale machine learning. In: 12th{USENIX}Symposium on Operating Systems Design and Implementation ({OSDI}16).pp. 265–283 (2016)

2. AMD GCN ISA. https://developer.amd.com/resources/developer- guides- manuals ,last ac-cessed 2020/07/15

3. AMD HIP. https://github.com/ROCm-Developer-Tools/HIP, last accessed 2020/08/13

4. AMD Inc: ROCm - Open Source Platform for HPC and Ultrascale GPU Computing, https://github.com/ROCmSoftwarePlatform, last accessed 2020/08/14

5. Belter, G., Jessup, E.R., Karlin, I., Siek, J.G.: Automating the generation of composed linearalgebra kernels. In: Proceedings of the Conference on High Performance Computing Net-working, Storage and Analysis. p. 59. ACM (2009)

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