2. Bumps interface¶
sasmodels.bumps_model¶
Wrap sasmodels for direct use by bumps.
Model is a wrapper for the sasmodels kernel which defines a
bumps Parameter box for each kernel parameter. Model accepts keyword
arguments to set the initial value for each parameter.
Experiment combines the Model function with a data file loaded by
the sasview data loader. Experiment takes a cutoff parameter controlling
how far the polydispersity integral extends.
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class
sasmodels.bumps_model.Experiment¶ Bases:
sasmodels.direct_model.DataMixinBumps wrapper for a SAS experiment.
data is a
data.Data1D,data.Data2Dordata.Sesansobject. Usedata.empty_data1D()ordata.empty_data2D()to define \(q, \Delta q\) calculation points for displaying the SANS curve when there is no measured data.model is a
Modelobject.cutoff is the integration cutoff, which avoids computing the the SAS model where the polydispersity weight is low.
The resulting model can be used directly in a Bumps FitProblem call.
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nllf() → float¶ Return the negative log likelihood of seeing data given the model parameters, up to a normalizing constant which depends on the data uncertainty.
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numpoints() → float¶ Return the number of data points
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parameters() → Dict[str, Parameter]¶ Return a dictionary of parameters
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plot(view: Optional[str] = None) → None¶ Plot the data and residuals.
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residuals() → numpy.ndarray¶ Return theory minus data normalized by uncertainty.
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save(basename: str) → None¶ Save the model parameters and data into a file.
Not Implemented except for sesans fits.
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simulate_data(noise: Optional[float] = None) → None¶ Generate simulated data.
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theory() → numpy.ndarray¶ Return the theory corresponding to the model parameters.
This method uses lazy evaluation, and requires model.update() to be called when the parameters have changed.
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update() → None¶ Call when model parameters have changed and theory needs to be recalculated.
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property
resolution¶ sasmodels.Resolutionapplied to the data, if any.
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class
sasmodels.bumps_model.Model(model: KernelModel, **kwargs: Dict[str, Union[float, Parameter]])¶ Bases:
objectBumps wrapper for a SAS model.
model is a runnable module as returned from
core.load_model().cutoff is the polydispersity weight cutoff.
Any additional key=value pairs are model dependent parameters.
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parameters() → Dict[str, Parameter]¶ Return a dictionary of parameters objects for the parameters, excluding polydispersity distribution type.
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state() → Dict[str, Union[Parameter, str]]¶ Return a dictionary of current values for all the parameters, including polydispersity distribution type.
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