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| Title | Prediction of Optimal Solvers for Sparse Linear Systems Using Deep Learning |
| Publication Type | Conference Proceedings |
| Year of Publication | 2022 |
| Authors | Funk, Y., M. Götz, and H. Anzt |
| Editor | Li, X. S., and K. Teranishi |
| Conference Name | 2022 SIAM Conference on Parallel Processing for Scientific Computing (PP) |
| Pagination | 14 - 24 |
| Date Published | 2022 |
| Publisher | Society for Industrial and Applied Mathematics |
| Conference Location | Philadelphia, PA |
| Abstract | Solving sparse linear systems is a key task in a number of computational problems, such as data analysis and simulations, and majorly determines overall execution time. Choosing a suitable iterative solver algorithm, however, can significantly improve time-to-completion. We present a deep learning approach designed to predict the optimal iterative solver for a given sparse linear problem. For this, we detail useful linear system features to drive the prediction process, the metrics we use to quantify the iterative solvers' time-to-approximation performance and a comprehensive experimental evaluation of the prediction quality of the neural network. Using a hyperparameter optimization and an ablation study on the SuiteSparse matrix collection we have inferred the importance of distinct features, achieving a top-1 classification accuracy of 60%. |
| URL | https://epubs.siam.org/doi/10.1137/1.9781611977141.2 |
| DOI | 10.1137/1.978161197714110.1137/1.9781611977141.2 |



