Back to Search Start Over

Symphony: Orchestrating Sparse and Dense Tensors with Hierarchical Heterogeneous Processing.

Authors :
Pellauer, Michael
Clemons, Jason
Balaji, Vignesh
Crago, Neal
Jaleel, Aamer
Lee, Donghyuk
O'Connor, Mike
Parashar, Anghsuman
Treichler, Sean
Tsai, Po-An
Keckler, Stephen W.
Emer, Joel S.
Source :
ACM Transactions on Computer Systems. Nov2023, Vol. 41 Issue 1-4, p1-30. 30p.
Publication Year :
2023

Abstract

Sparse tensor algorithms are becoming widespread, particularly in the domains of deep learning, graph and data analytics, and scientific computing. Current high-performance broad-domain architectures, such as GPUs, often suffer memory system inefficiencies by moving too much data or moving it too far through the memory hierarchy. To increase performance and efficiency, proposed domain-specific accelerators tailor their architectures to the data needs of a narrow application domain, but as a result cannot be applied to a wide range of algorithms or applications that contain a mix of sparse and dense algorithms. This article proposes Symphony, a hybrid programmable/specialized architecture that focuses on the orchestration of data throughout the memory hierarchy to simultaneously reduce the movement of unnecessary data and data movement distances. Key elements of the Symphony architecture include (1) specialized reconfigurable units aimed not only at roofline floating-point computations but also at supporting data orchestration features, such as address generation, data filtering, and sparse metadata processing; and (2) distribution of computation resources (both programmable and specialized) throughout the on-chip memory hierarchy. We demonstrate that Symphony can match non-programmable ASIC performance on sparse tensor algebra and provide 31× improved runtime and 44× improved energy over a comparably provisioned GPU for these applications. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
07342071
Volume :
41
Issue :
1-4
Database :
Academic Search Index
Journal :
ACM Transactions on Computer Systems
Publication Type :
Academic Journal
Accession number :
174872940
Full Text :
https://doi.org/10.1145/3630007