Affiliation:
1. University of Freiburg, Department of Microsystems Engineering, Freiburg, Germany
2. University of Freiburg, Department of Microsystems Engineering and Department of Mathematics
Abstract
Basic Linear Algebra Subroutines for Embedded Optimization (BLASFEO) is a dense linear algebra library providing high-performance implementations of BLAS- and LAPACK-like routines for use in embedded optimization and small-scale high-performance computing, in general. A key difference with respect to existing high-performance implementations of BLAS is that the computational performance is optimized for small- to medium-scale matrices, i.e., for sizes up to a few hundred. BLASFEO comes with three different implementations: a high-performance implementation aimed at providing the highest performance for matrices fitting in cache, a reference implementation providing portability and embeddability and optimized for very small matrices, and a wrapper to standard BLAS and LAPACK providing high performance on large matrices. The three implementations of BLASFEO together provide high-performance dense linear algebra routines for matrices ranging from very small to large. Compared to both open-source and proprietary highly tuned BLAS libraries, for matrices of size up to about 100, the high-performance implementation of BLASFEO is about 20--30% faster than the corresponding level 3 BLAS routines and two to three times faster than the corresponding LAPACK routines.
Publisher
Association for Computing Machinery (ACM)
Subject
Applied Mathematics,Software
Reference20 articles.
1. BLASFEO. 2016. Retrieved from https://github.com/giaf/blasfeo. BLASFEO. 2016. Retrieved from https://github.com/giaf/blasfeo.
2. A parallel quadratic programming method for dynamic optimization problems
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