Automatic Generation of Efficient Linear Algebra Programs

5 Jul 2019Henrik BarthelsChristos PsarrasPaolo Bientinesi

The level of abstraction at which application experts reason about linear algebra computations and the level of abstraction used by developers of high-performance numerical linear algebra libraries do not match. The former is conveniently captured by high-level languages and libraries such as Matlab and Eigen, while the latter expresses the kernels included in the BLAS and LAPACK libraries... (read more)

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