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Commit Date  
[r22356] by bugman

Added text about '~' on MS Windows to the dispersion GUI tutorial in the manual.

The home directory ~ on MS Windows will not work, so this is now explained.

2014-02-27 12:29:00 Tree
[r22355] by tlinnet

Fixed to send in offset to find_intensity_keys() which allow system test to pass.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

This is the first fix to allow system test to pass: relax -s Relax_disp.test_bug_21344_sparse_time_spinlock_acquired_r1rho_fail_relax_disp
A better solution is described in: http://thread.gmane.org/gmane.science.nmr.relax.devel/5107 which will be implemented.

2014-02-27 11:43:20 Tree
[r22354] by tlinnet

Added experiment id to dictionary, where dict() keys are offset_point_time.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-27 10:05:58 Tree
[r22353] by tlinnet

Replaced dictionary keys in unit test, to easier access the original data.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-27 10:05:57 Tree
[r22352] by tlinnet

Re-created the testing dictionary to easier to convert to collections.OrderedDict() if this can be supported in all relax python versions.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-27 10:05:55 Tree
[r22351] by tlinnet

Modified unit test for find_intensity_keys() to simulate method in sim_pack_data().

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-27 08:16:03 Tree
[r22350] by tlinnet

Manually reverted the temporary change of r22349 and 22348.

The command used was:

svn merge -r22349:r22347

Reference: http://www.mail-archive.com/relax-devel@.../msg05012.html

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r22349 | tlinnet | 2014-02-26 17:58:34 +0100 (Wed, 26 Feb 2014) | 3 lines

Undo of unintentional adding of code in api.py.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.
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r22348 | tlinnet | 2014-02-26 17:56:16 +0100 (Wed, 26 Feb 2014) | 3 lines

Modified unit test for find_intensity_keys() to simulate method in sim_pack_data().

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.
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2014-02-27 08:10:32 Tree
[r22349] by tlinnet

Undo of unintentional adding of code in api.py.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-26 16:58:34 Tree
[r22348] by tlinnet

Modified unit test for find_intensity_keys() to simulate method in sim_pack_data().

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-26 16:56:16 Tree
[r22347] by tlinnet

Added unit test for find_intensity_keys() in R1rho analysis.

Regarding bug #21344, (https://gna.org/bugs/index.php?21344) - Handling of in sparse acquired R1rho dataset with missing combinations of time and spin-lock field strengths.

2014-02-26 16:43:22 Tree
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