• Skip to sidebar navigation
  • Skip to content

Bitbucket

  • Projects
  • Repositories
    • View all public repositories
  • Help
    • Online help
    • Learn Git
    • Welcome to Bitbucket
    • Keyboard shortcuts
  • Log In
David Young
  1. David Young

vchoi_fork

Vailin Choi
my_hdf5_fork
Public
Actions
  • Clone
  • Download

Learn more about cloning repositories

You have read-only access

Navigation
  • Source
  • Commits
  • Graphs
  • Branches
  • Network
  • Latest Activities

Commits

MuQun Yang
d17d42acd0f
MuQun Yang committed 6916816a56308 Aug 2006
[svn-r12553] This check-in includes the following part of parallel optimization codes:

1. Provide another option for users to do independent IO with MPI file setview(collectively)
2. With the request of collective IO from users, using Independent IO with MPI file setview if we find collective IO is not good for the applications for IO per chunk(multi-chunk IO) case. Previously we used pure independent IO and that actually performed small IO(IO each row) for this case. The recent performance study suggested the independent IO with file setview can acheieve significantly better performance than collective IO when not many processes participate in the IO.
3. For applications that explicitly choose to do collective IO per chunk case, the library won't do any optimization(gather/broadcast) operations. The library simply passes the collective IO request to MPI-IO. 

Tested at copper, kagiso, heping, mir and tungsten(cmpi and mpich)
Kagiso is using LAM, t_mpi test was broken even.
The cchunk10 test  failed at heping and mir. I suspected it was an MPICH problem. Will investigate later.
Everything passed at copper.
at tungsten: the old cmpi bug(failed at esetw) is still there. Other tests passed.
Some sequential fheap tests failed at kagiso.

Changed files

  • Git repository management for enterprise teams powered by Atlassian Bitbucket
  • Atlassian Bitbucket v4.4.1
  • Documentation
  • Contact Support
  • Request a feature
  • About
  • Contact Atlassian
Atlassian