Optimization of Large-Scale Sparse Matrix-Vector Multiplication on Multi-GPU Systems

Author:

Gao Jianhua1ORCID,Ji Weixing1ORCID,Wang Yizhuo2ORCID

Affiliation:

1. School of Artificial Intelligence, Beijing Normal University, Beijing, China

2. School of Computer Science and Technology, Beijing Institute of Technology, Beijing, China

Abstract

Sparse matrix-vector multiplication (SpMV) is one of the important kernels of many iterative algorithms for solving sparse linear systems. The limited storage and computational resources of individual GPUs restrict both the scale and speed of SpMV computing in problem-solving. As real-world engineering problems continue to increase in complexity, the imperative for collaborative execution of iterative solving algorithms across multiple GPUs is increasingly apparent. Although the multi-GPU-based SpMV takes less kernel execution time, it also introduces additional data transmission overhead, which diminishes the performance gains derived from parallelization across multi-GPUs. Based on the non-zero elements distribution characteristics of sparse matrices and the trade-off between redundant computations and data transfer overhead, this paper introduces a series of SpMV optimization techniques tailored for multi-GPU environments and effectively enhances the execution efficiency of iterative algorithms on multiple GPUs. Firstly, we propose a two-level non-zero elements-based matrix partitioning method to increase the overlap of kernel execution and data transmission. Then, considering the irregular non-zero elements distribution in sparse matrices, a long-row-aware matrix partitioning method is proposed to hide more data transmissions. Finally, an optimization using redundant and inexpensive short-row execution to exchange costly data transmission is proposed. Our experimental evaluation demonstrates that, compared with the SpMV on a single GPU, the proposed method achieves an average speedup of 2.00x and 1.85x on platforms equipped with two RTX 3090 and two Tesla V100-SXM2, respectively. The average speedup of 2.65x is achieved on a platform equipped with four Tesla V100-SXM2.

Publisher

Association for Computing Machinery (ACM)

Reference49 articles.

1. High Performance Multi-GPU SpMV for Multi-component PDE-Based Applications

2. Load-balancing Sparse Matrix Vector Product Kernels on GPUs

3. Fast Sparse Matrix-Vector Multiplication on GPUs for Graph Applications

4. Muthu Manikandan Baskaran and Rajesh Bordawekar. 2008. Optimizing Sparse Matrix-Vector Multiplication on GPUs Using Compile-Time and Run-Time Strategies. IBM Reserach Report RC24704 (W0812-047)(2008).

5. Muthu Manikandan Baskaran and Rajesh Bordawekar. 2009. Optimizing Sparse Matrix-Vector Multiplication on GPUs. IBM Research Report RC24704W0812–047 (2009).

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