A library for butterfly and hierarchical matrix factorizations.
-
Updated
Jun 3, 2024 - C
A library for butterfly and hierarchical matrix factorizations.
A system of linear equations solver with a parallel LU Decomposition algorithm implemented using Pthreads at its core. C/C++ implementations with and without pivoting. Thoroughly documented and benchmarked on an intel linux system and a macbook pro with Apple Silicon M3pro chip. This project was developed as a project at Portland State University
SuiteSparse: a suite of sparse matrix packages by @DrTimothyAldenDavis et al. with native CMake support
C Programming Project To Improve Skills Through Exercises, Tasks, And Solutions.
M4RI is a library for fast arithmetic with dense matrices over GF(2)
Rank-Revealing QR factorization
M4RIE is a library for fast arithmetic with dense matrices over GF(2^e) for 2 ≤ e ≤ 16 (Mirror)
best CPU/GPU sparse solver for large sparse matrices
Cosine Sine Decomposition
QR/RQ/QL/LQ factorizations
This library include files that can be used for complex matrix computations. The library has been written in C/C++ and should be compatible with any microcontroller. Also includes Arduino codes that use the library for matrix computation.
This application contains a set of examples for all mayor linear algebraic algorithms. Within the source code there are definitions and complex descriptions to the different aspects of computing bidimentional arrays of any size. This project focuses in computing systems of equations of nxn size.
(Python, R, C) Sparse binary matrix factorization with hinge loss
Code of the paper "Enhancing Network Embedding with Auxiliary Information: An Explicit Matrix Factorization Perspective"
Projeto feito pra matéria MAC300 - Análise de casos de decomposição de matrizes pelo método LU e resolução de sistemas triangulares, para dois tipos diferentes de linguagens de programação: C e Fortran.
Recommender System toolkit
Add a description, image, and links to the matrix-factorization topic page so that developers can more easily learn about it.
To associate your repository with the matrix-factorization topic, visit your repo's landing page and select "manage topics."