Skip to content
forked from cp2k/dbcsr

DBCSR: Distributed Block Compressed Sparse Row matrix library

License

Notifications You must be signed in to change notification settings

vin-huang/dbcsr

This branch is 970 commits behind cp2k/dbcsr:develop.

Folders and files

NameName
Last commit message
Last commit date

Latest commit

6cef070 · Mar 19, 2020
Mar 6, 2020
Mar 9, 2020
Mar 10, 2020
Mar 16, 2020
Mar 18, 2020
Mar 6, 2020
Mar 9, 2020
Mar 19, 2020
Mar 6, 2020
Mar 10, 2020
Nov 20, 2018
Apr 10, 2019
Jul 10, 2019
Nov 15, 2018
Nov 27, 2019
Nov 19, 2018
Mar 10, 2020
Aug 28, 2018
Mar 6, 2020
Mar 9, 2020
Mar 10, 2020
Jan 2, 2019
Mar 6, 2020
Mar 10, 2020

Repository files navigation

DBCSR: Distributed Block Compressed Sparse Row matrix library

Build Status codecov Licence GitHub Releases

DBCSR is a library designed to efficiently perform sparse matrix-matrix multiplication, among other operations. It is MPI and OpenMP parallel and can exploit Nvidia and AMD GPUs via CUDA and HIP.

How to Install

Follow the installation guide.

Documentation

Documentation is available online for the latest release.

How to Cite

To cite DBCSR, use the following paper

@article{dbcsr,
	title = {{Sparse Matrix Multiplication: The Distributed Block-Compressed Sparse Row Library}},
	journal = {Parallel Computing},
	volume = {40},
	number = {5-6},
	year = {2014},
	issn = {0167-8191},
	author = {Urban Borstnik and Joost VandeVondele and Valery Weber and Juerg Hutter}
}

To cite the DBCSR software library, use:

@misc{dbcsr-software,
	author = {The CP2K Developers Group},
	title = {{DBCSR: Distributed Block Compressed Sparse Row matrix library}},
	publisher = {GitHub},
	journal = {GitHub repository},
	year = {2020},
	url = {https://github.com/cp2k/dbcsr}
}

Contributing to DBCSR

Your contribution to the project is welcome! Please see DBCSR's contribution guidelines and this wiki page. For any help, please notify the other developers.

About

DBCSR: Distributed Block Compressed Sparse Row matrix library

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Fortran 82.2%
  • Python 8.4%
  • C++ 3.6%
  • CMake 2.7%
  • Shell 1.1%
  • Jupyter Notebook 0.6%
  • Other 1.4%