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Optimizing Compression Schemes for Sparse Tensor Algebra

Citation Author(s):
Tao B. Schardl, Michael Pellauer, Joel S. Emer
Submitted by:
Helen Xu
Last updated:
27 February 2023 - 7:17pm
Document Type:
Poster
Document Year:
2023
Event:
Presenters:
Helen Xu
Paper Code:
246
Categories:
Keywords:
 

This paper studies compression techniques for parallel in-memory sparse tensor algebra. We find that applying simple existing compression schemes can lead to performance loss in some cases. To resolve this issue, we introduce an optimized algorithm for processing compressed inputs that can improve both the space usage as well as the performance compared to uncompressed inputs. We implement the compression techniques on top of a suite of sparse matrix algorithms generated by taco, a compiler for sparse tensor algebra. On a machine with 48 hyperthreads, our empirical evaluation shows that compression reduces the space needed to store the matrices by over 2x without sacrificing algorithm performance.

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