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Commit Date  
[r23277] by tlinnet

Math-domain catching for model M61.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:52 Tree
[r23276] by tlinnet

Removed class object "back_calc" being updated per time point for model LM63.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:50 Tree
[r23275] by tlinnet

Math-domain catching for model IT99.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:49 Tree
[r23274] by tlinnet

Math-domain catching for model MP05.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:47 Tree
[r23273] by tlinnet

Math-domain catching for model TAP03.

Another check for division with 0 inserted.

2014-05-20 20:29:45 Tree
[r23272] by tlinnet

Math-domain catching for model DPL94.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:43 Tree
[r23271] by tlinnet

Math-domain catching for model TAP03.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:41 Tree
[r23270] by tlinnet

Math-domain catching for model TP02.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:40 Tree
[r23269] by tlinnet

Math-domain catching for model TSMFK01.

task #7793: (https://gna.org/task/?7793) Speed-up of dispersion models.

This is to implement catching of math domain errors, before they occur.
These can be found via the --numpy-raise function to the systemtests.

To make the code look clean, the class object "back_calc" is no longer
being updated per time point, but is updated in the relax_disp target function in
one go.

2014-05-20 20:29:38 Tree
[r23268] by tlinnet

Fix for commit 23246.

http://svn.gna.org/viewcvs/relax?view=revision&revision=23246

The testing taking a value to a power was performed wrong.

This made systemtest Relax_disp.test_hansen_cpmg_data_auto_analysis_numeric
not working.

2014-05-20 20:29:35 Tree
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