An Auto-tuning Method for Run-time Data Transformation for Sparse Matrix-Vector Multiplication (2407.00019v1)
Abstract: In this paper, we research the run-time sparse matrix data transformation from Compressed Row Storage (CRS) to Coordinate (COO) storage and an ELL (ELLPACK/ITPACK) format with OpenMP parallelization for sparse matrix-vector multiplication (SpMV). We propose an auto-tuning (AT) method by using the $D_{mat}i$ - $R_{ell}i$ graph, which plots the derivation/average for the number of non-zero elements per row ($D_{mat}i$) and the ratio, SpMV speedups/transformation time from the CRS to ELL ($R_{ell}i$ ). The experimental results show the ELL format is very effective in the Earth Simulator 2. The speedup factor of 151 with the ELL-Row inner-parallelized format is obtained. The transformation overhead is also very small, such as 0.01 to 1.0 SpMV time with the CRS format. In addition, the $D_{mat}i$ - $R_{ell}i$ graph can be modeled for the effectiveness of transformation according to the $D_{mat}i$ value.
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