pypesto.select.postprocessors
Process a model selection ModelProblem after calibration.
Functions
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Change a PEtab Select model ID to a binary string. |
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Combine multiple postprocessors into a single postprocessor. |
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Create a TSV table of model selection results. |
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Save the parameter estimation result. |
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Produce a waterfall plot. |
- pypesto.select.postprocessors.model_id_binary_postprocessor(problem)[source]
Change a PEtab Select model ID to a binary string.
Changes the model ID in-place to be a string like
M_ijk, wherei,j,k, etc. are1if the parameter in that position is estimated, or0if the parameter is fixed.To ensure that other postprocessors (e.g.
report_postprocessor()) use this new model ID, when in use with amulti_postprocessor(), ensure this is before the other postprocessors in thepostprocessorsargument ofmulti_postprocessor().- Parameters:
problem (
ModelProblem) – A model selectionModelProblemthat has been optimized.
- pypesto.select.postprocessors.multi_postprocessor(problem, postprocessors=None)[source]
Combine multiple postprocessors into a single postprocessor.
See
save_postprocessor()for usage hints.
- pypesto.select.postprocessors.report_postprocessor(problem, output_filepath, criteria=None)[source]
Create a TSV table of model selection results.
- pypesto.select.postprocessors.save_postprocessor(problem, output_path='.', use_model_hash=False)[source]
Save the parameter estimation result.
When used, first set the output folder for results, e.g. with
functools.partial(). This is because postprocessors should take only a single parameter: an optimized model.from functools import partial output_path = 'results' pp = partial(save_postprocessor, output_path=output_path) selector = pypesto.select.ModelSelector( problem=problem, model_postprocessor=pp, )
- Parameters:
- pypesto.select.postprocessors.waterfall_plot_postprocessor(problem, output_path='.')[source]
Produce a waterfall plot.
See
save_postprocessor()for usage hints and argument documentation.