Tensor algebra is essential for data-intensive workloads in various computational domains. Computational scientists face a trade-off between the specialization degree provided by dense tensor algebra and the algorith- mic efficiency that leverages the structure provided by sparse tensors. This paper presents StructTensor, a framework that symbolically computes structure at compilation time. This is enabled by Structured Tensor Unified Representation (STUR), an intermediate language that can capture tensor computations as well as their sparsity and redundancy structures. Through a mathematical view of lossless tensor computations, we show that our symbolic structure computation and the related optimizations are sound. Finally, for different tensor computation workloads and structures, we experimentally show how capturing the symbolic structure can result in outperforming state-of-the-art frameworks for both dense and sparse tensor algebra.
Wed 25 OctDisplayed time zone: Lisbon change
14:00 - 15:30 | |||
14:00 18mTalk | Run-Time Prevention of Software Integration Failures of Machine Learning APIs OOPSLA Chengcheng Wan East China Normal University, Yuhan Liu University of Chicago, Kuntai Du University of Chicago, Henry Hoffmann University of Chicago, Junchen Jiang University of Chicago, Michael Maire University of Chicago, Shan Lu Microsoft; University of Chicago DOI | ||
14:18 18mTalk | Compiling Structured Tensor Algebra OOPSLA Mahdi Ghorbani University of Edinburgh, Mathieu Huot University of Oxford, Shideh Hashemian University of Edinburgh, Amir Shaikhha University of Edinburgh DOI | ||
14:36 18mTalk | Perception Contracts for Safety of ML-Enabled Systems OOPSLA Angello Astorga University of Illinois at Urbana-Champaign, Chiao Hsieh Kyoto University, P. Madhusudan University of Illinois at Urbana-Champaign, Sayan Mitra University of Illinois at Urbana-Champaign DOI | ||
14:54 18mTalk | Languages with Decidable Learning: A Meta-theorem OOPSLA Paul Krogmeier University of Illinois at Urbana-Champaign, P. Madhusudan University of Illinois at Urbana-Champaign DOI | ||
15:12 18mTalk | Deep Learning Robustness Verification for Few-Pixel Attacks OOPSLA DOI |