Skip to content

File utilities designed for scalability and performance.

License

Notifications You must be signed in to change notification settings

daos-stack/mpifileutils

 
 

Repository files navigation

mpiFileUtils

mpiFileUtils provides both a library called libmfu and a suite of MPI-based tools to manage large datasets, which may vary from large directory trees to large files. High-performance computing users often generate large datasets with parallel applications that run with many processes (millions in some cases). However those users are then stuck with single-process tools like cp and rm to manage their datasets. This suite provides MPI-based tools to handle typical jobs like copy, remove, and compare for such datasets, providing speedups of up to 20-30x. It also provides a library that simplifies the creation of new tools or can be used in applications.

Documentation is available on ReadTheDocs.

DAOS Support

mpiFileUtils supports a DAOS backend for dcp, dsync, and dcmp. Custom serialization and deserialization for DAOS containers to and from a POSIX filesystem is provided with daos-serialize and daos-deserialize. Details and usage examples are provided in DAOS Support.

Contributors

We welcome contributions to the project. For details on how to help, see our Contributor Guide

Copyrights

Copyright (c) 2013-2015, Lawrence Livermore National Security, LLC. Produced at the Lawrence Livermore National Laboratory CODE-673838

Copyright (c) 2006-2007,2011-2015, Los Alamos National Security, LLC. (LA-CC-06-077, LA-CC-10-066, LA-CC-14-046)

Copyright (2013-2015) UT-Battelle, LLC under Contract No. DE-AC05-00OR22725 with the Department of Energy.

Copyright (c) 2015, DataDirect Networks, Inc.

All rights reserved.

Build Status

The current status of the mpiFileUtils master branch is Build Status.

About

File utilities designed for scalability and performance.

Resources

License

Security policy

Stars

Watchers

Forks

Packages

No packages published

Languages

  • C 94.6%
  • Shell 3.4%
  • Other 2.0%