GEMMbench: a framework for reproducible and collaborative benchmarking of matrix multiplication

12 Nov 2015Anton Lokhmotov

The generic matrix-matrix multiplication (GEMM) is arguably the most popular computational kernel of the 20th century. Yet, surprisingly, no common methodology for evaluating GEMM performance has been established over the many decades of using GEMM for comparing architectures, compilers and ninja-class programmers... (read more)

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