Sparse Matrix-Vector multiplication (SpMV) is an essential kernel for parallel numerical applications. SpMV displays sparse and irregular data accesses, which complicate its vectorization. Such difficulties make SpMV to frequently experiment non-optimal results when run on long vector ISAs exploiting SIMD parallelism. In this context, the development of new optimizations becomes fundamental to enable high performance SpMV executions on emerging long vector architectures. In this paper, we improve the state-of-the-art SELL-C-σ sparse matrix format by proposing several new optimizations for SpMV. We target aggressive long vector architectures like the NEC Vector Engine. By combining several optimizations, we obtain an average 12% improvement over SELL-C-σ considering a heterogeneous set of 24 matrices. Our optimizations boost performance in long vector architectures since they expose a high degree of SIMD parallelism.
Wed 3 MarDisplayed time zone: Eastern Time (US & Canada) change
10:00 - 11:00 | |||
10:00 15mTalk | EGEMM-TC: Accelerating Scientific Computing on Tensor Cores with Extended Precision Main Conference Boyuan Feng UC Santa Barbara, Yuke Wang UC Santa Barbara, Guoyang Chen Alibaba Group US Inc., Weifeng Zhang Alibaba Group US Inc., Yuan Xie UCSB, Yufei Ding UC Santa Barbara Link to publication | ||
10:15 15mTalk | Efficiently Running SpMV on Long Vector Architectures Main Conference Constantino Gómez Barcelona Supercomputing Center, Filippo Mantovani Barcelona Supercomputing Center, Erich Focht NEC, Marc Casas Barcelona Supercomputing Center Link to publication | ||
10:30 15mTalk | Improving Communication by Optimizing On-Node Data Movement with Data Layout Main Conference Tuowen Zhao University of Utah, Mary Hall University of Utah, Hans Johansen Lawrence Berkeley National Laboratory, Samuel Williams Lawrence Berkeley National Laboratory Link to publication | ||
10:45 15mTalk | Sparta: High-Performance, Element-Wise Sparse Tensor Contraction on Heterogeneous Memory Main Conference Jiawen Liu University of California, Merced, Jie Ren University of California, Merced, Roberto Gioiosa Pacific Northwest National Laboratory, Dong Li University of California, Merced, Jiajia Li Pacific Northwest National Laboratory Link to publication |