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Will Usher: Using the SALib library for conducting sensitivity analyses of models

Sensitivity analysis should be a central part of the model development process, yet software to actually perform the best-practice approaches are seldom available. In this talk, there is justification for the importance of sensitivity analysis, step-by-step examples of how to use SALib and an outline of the advantages.

Full details — http://london.pydata.org/schedule/presentation/45/ 00:00 Welcome!
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Видео Will Usher: Using the SALib library for conducting sensitivity analyses of models канала PyData
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6 октября 2015 г. 14:10:51
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