Difference between revisions of "Staff Priorities - Masha"
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=== Yesterday === | === Yesterday === | ||
+ | * Was out on Wednesday | ||
* Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive | * Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive | ||
* Trac ticket #366: Adopt Pandas Python package for reading forecasts files in: | * Trac ticket #366: Adopt Pandas Python package for reading forecasts files in: | ||
− | ** | + | ** Posted a question about HDF5 format support by Pandas to the user group, got response: Pandas don't support reading of numpy arrays from HDF5 format files. Have to keep h5py package to read and write HDF5 format of forecasts within CSEP. |
+ | * Request from Alvaro G.: to generate missing forecasts from 2015/08. Set up reprocessing on csep-op. | ||
* Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts: | * Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts: | ||
** Generating one-day forecasts | ** Generating one-day forecasts | ||
Line 10: | Line 12: | ||
=== Today === | === Today === | ||
* Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive | * Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive | ||
+ | ** Add locking of top-level 'trunk' directory for working copies to avoid race condition by 'svn cleanup' | ||
* Trac ticket #366: Adopt Pandas Python package for reading forecasts files in | * Trac ticket #366: Adopt Pandas Python package for reading forecasts files in | ||
+ | ** Keep h5py package to handle HDF5 format forecasts | ||
+ | * Request from Alvaro G.: post reprocessed forecasts and results from 2015/08 for Alvaro. | ||
* Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts: | * Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts: | ||
** Generating one-day forecasts | ** Generating one-day forecasts |
Revision as of 19:47, 12 November 2015
Current Activities
Yesterday
- Was out on Wednesday
- Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive
- Trac ticket #366: Adopt Pandas Python package for reading forecasts files in:
- Posted a question about HDF5 format support by Pandas to the user group, got response: Pandas don't support reading of numpy arrays from HDF5 format files. Have to keep h5py package to read and write HDF5 format of forecasts within CSEP.
- Request from Alvaro G.: to generate missing forecasts from 2015/08. Set up reprocessing on csep-op.
- Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts:
- Generating one-day forecasts
Today
- Trac ticket #368: 'svn cleanup' causes failures for other sub-directories of ANSS working copy of archive
- Add locking of top-level 'trunk' directory for working copies to avoid race condition by 'svn cleanup'
- Trac ticket #366: Adopt Pandas Python package for reading forecasts files in
- Keep h5py package to handle HDF5 format forecasts
- Request from Alvaro G.: post reprocessed forecasts and results from 2015/08 for Alvaro.
- Re-run test case using best available catalog for Canterbury experiment with zero days of delay for providing slip models to the forecasts:
- Generating one-day forecasts
Blocked: No
Followups:
- With John Y.:
- csep-op: Added my email to recipients list for Oceanic Transform Faults status email, got email sent to my account, but not to the mailing list.
TODO
- Trac ticket #353: Optimize RELM N-test by avoiding event to bin look up when masking bit is set for the whole forecast