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Gerogiannis, Gerasimos; Yesil, Serif; Lenadora, Damitha; Cao, Dingyuan; Mendis, Charith; Torrellas, Josep (, International Symposium on Computer Architecture (ISCA), June 2023.)
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Yesil, Serif; Heidarshenas, Azin; Morrison, Adam; Torrellas, Josep (, Proceedings of the 28th ACM SIGPLAN Annual Symposium on Principles and Practice of Parallel Programming)Sparse Matrix-Vector Multiplication (SpMV) is an essential sparse kernel. Numerous methods have been developed to accelerate SpMV. However, no single method consistently gives the highest performance across a wide range of matrices. For this reason, a performance prediction model is needed to predict the best SpMV method for a given sparse matrix. Unfortunately, predicting SpMV’s performance is challenging due to the diversity of factors that impact it. In this work, we develop a machine learning framework called WISE that accurately predicts the magnitude of the speedups of different SpMV methods over a baseline method for a given sparse matrix. WISE relies on a novel feature set that summarizes a matrix’s size, skew, and locality traits. WISE can then select the best SpMV method for each specific matrix. With a set of nearly 1,500 matrices, we show that using WISE delivers an average speedup of 2.4× over using Intel’s MKL in a 24-core server.more » « less
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Yesil, Serif; Moreira, José E.; Torrellas, Josep (, International Conference on Supercomputing)
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Heidarshenas, Azin; Yesil, Serif; Skarlatos, Dimitrios; Misailovic, Sasa; Morrison, Adam; Torrellas, Josep (, 34th International Conference on Supercomputing 2020)null (Ed.)
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