English

Pure Tensor Program Rewriting via Access Patterns (Representation Pearl)

Programming Languages 2021-05-21 v1

Abstract

Tensor kernels in machine learning (ML) often correspond to pure mathematical expressions, making term rewriting an attractive strategy for optimization and mapping to specialized hardware accelerators. However, existing ML intermediate representations (IRs) tend to either be \textit{pure but high-level}, making low-level rewrites to hardware targets inexpressible, or \textit{low-level but impure}, hampering the use of term rewriting altogether. This paper introduces Glenside, a pure IR whose core abstraction -- the \textit{access pattern} -- enables low-level, layout-aware, hardware-centric program rewrites. We demonstrate how term rewriting in Glenside can be used to map program fragments to hardware accelerator invocations and automatically discover classic data layout transformations like \texttt{im2col}. Glenside establishes a new foundation for exploring further term rewriting techniques in optimizing low-level tensor programs.

Keywords

Cite

@article{arxiv.2105.09377,
  title  = {Pure Tensor Program Rewriting via Access Patterns (Representation Pearl)},
  author = {Gus Henry Smith and Andrew Liu and Steven Lyubomirsky and Scott Davidson and Joseph McMahan and Michael Taylor and Luis Ceze and Zachary Tatlock},
  journal= {arXiv preprint arXiv:2105.09377},
  year   = {2021}
}

Comments

To be published at MAPS 2021

R2 v1 2026-06-24T02:16:42.018Z