source: sasmodels/sasmodels/sasview_model.py @ aa44a6a

core_shell_microgelsmagnetic_modelticket-1257-vesicle-productticket_1156ticket_1265_superballticket_822_more_unit_tests
Last change on this file since aa44a6a was aa44a6a, checked in by Torin Cooper-Bennun <torin.cooper-bennun@…>, 6 years ago

merge from beta_approx_lazy_results; include ER as intermediate result; fixed-choices params use units, not limits, to store choices

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1"""
2Sasview model constructor.
3
4Given a module defining an OpenCL kernel such as sasmodels.models.cylinder,
5create a sasview model class to run that kernel as follows::
6
7    from sasmodels.sasview_model import load_custom_model
8    CylinderModel = load_custom_model('sasmodels/models/cylinder.py')
9"""
10from __future__ import print_function
11
12import math
13from copy import deepcopy
14import collections
15import traceback
16import logging
17from os.path import basename, splitext, abspath, getmtime
18try:
19    import _thread as thread
20except ImportError:
21    import thread
22
23import numpy as np  # type: ignore
24
25from . import core
26from . import custom
27from . import product
28from . import generate
29from . import weights
30from . import modelinfo
31from .details import make_kernel_args, dispersion_mesh
32
33# pylint: disable=unused-import
34try:
35    from typing import (Dict, Mapping, Any, Sequence, Tuple, NamedTuple,
36                        List, Optional, Union, Callable)
37    from .modelinfo import ModelInfo, Parameter
38    from .kernel import KernelModel
39    MultiplicityInfoType = NamedTuple(
40        'MultiplicityInfo',
41        [("number", int), ("control", str), ("choices", List[str]),
42         ("x_axis_label", str)])
43    SasviewModelType = Callable[[int], "SasviewModel"]
44except ImportError:
45    pass
46# pylint: enable=unused-import
47
48logger = logging.getLogger(__name__)
49
50calculation_lock = thread.allocate_lock()
51
52#: True if pre-existing plugins, with the old names and parameters, should
53#: continue to be supported.
54SUPPORT_OLD_STYLE_PLUGINS = True
55
56# TODO: separate x_axis_label from multiplicity info
57MultiplicityInfo = collections.namedtuple(
58    'MultiplicityInfo',
59    ["number", "control", "choices", "x_axis_label"],
60)
61
62#: set of defined models (standard and custom)
63MODELS = {}  # type: Dict[str, SasviewModelType]
64#: custom model {path: model} mapping so we can check timestamps
65MODEL_BY_PATH = {}  # type: Dict[str, SasviewModelType]
66
67def find_model(modelname):
68    # type: (str) -> SasviewModelType
69    """
70    Find a model by name.  If the model name ends in py, try loading it from
71    custom models, otherwise look for it in the list of builtin models.
72    """
73    # TODO: used by sum/product model to load an existing model
74    # TODO: doesn't handle custom models properly
75    if modelname.endswith('.py'):
76        return load_custom_model(modelname)
77    elif modelname in MODELS:
78        return MODELS[modelname]
79    else:
80        raise ValueError("unknown model %r"%modelname)
81
82
83# TODO: figure out how to say that the return type is a subclass
84def load_standard_models():
85    # type: () -> List[SasviewModelType]
86    """
87    Load and return the list of predefined models.
88
89    If there is an error loading a model, then a traceback is logged and the
90    model is not returned.
91    """
92    for name in core.list_models():
93        try:
94            MODELS[name] = _make_standard_model(name)
95        except Exception:
96            logger.error(traceback.format_exc())
97    if SUPPORT_OLD_STYLE_PLUGINS:
98        _register_old_models()
99
100    return list(MODELS.values())
101
102
103def load_custom_model(path):
104    # type: (str) -> SasviewModelType
105    """
106    Load a custom model given the model path.
107    """
108    model = MODEL_BY_PATH.get(path, None)
109    if model is not None and model.timestamp == getmtime(path):
110        #logger.info("Model already loaded %s", path)
111        return model
112
113    #logger.info("Loading model %s", path)
114    kernel_module = custom.load_custom_kernel_module(path)
115    if hasattr(kernel_module, 'Model'):
116        model = kernel_module.Model
117        # Old style models do not set the name in the class attributes, so
118        # set it here; this name will be overridden when the object is created
119        # with an instance variable that has the same value.
120        if model.name == "":
121            model.name = splitext(basename(path))[0]
122        if not hasattr(model, 'filename'):
123            model.filename = abspath(kernel_module.__file__).replace('.pyc', '.py')
124        if not hasattr(model, 'id'):
125            model.id = splitext(basename(model.filename))[0]
126    else:
127        model_info = modelinfo.make_model_info(kernel_module)
128        model = make_model_from_info(model_info)
129    model.timestamp = getmtime(path)
130
131    # If a model name already exists and we are loading a different model,
132    # use the model file name as the model name.
133    if model.name in MODELS and not model.filename == MODELS[model.name].filename:
134        _previous_name = model.name
135        model.name = model.id
136
137        # If the new model name is still in the model list (for instance,
138        # if we put a cylinder.py in our plug-in directory), then append
139        # an identifier.
140        if model.name in MODELS and not model.filename == MODELS[model.name].filename:
141            model.name = model.id + '_user'
142        logger.info("Model %s already exists: using %s [%s]",
143                    _previous_name, model.name, model.filename)
144
145    MODELS[model.name] = model
146    MODEL_BY_PATH[path] = model
147    return model
148
149
150def make_model_from_info(model_info):
151    # type: (ModelInfo) -> SasviewModelType
152    """
153    Convert *model_info* into a SasView model wrapper.
154    """
155    def __init__(self, multiplicity=None):
156        SasviewModel.__init__(self, multiplicity=multiplicity)
157    attrs = _generate_model_attributes(model_info)
158    attrs['__init__'] = __init__
159    attrs['filename'] = model_info.filename
160    ConstructedModel = type(model_info.name, (SasviewModel,), attrs) # type: SasviewModelType
161    return ConstructedModel
162
163
164def _make_standard_model(name):
165    # type: (str) -> SasviewModelType
166    """
167    Load the sasview model defined by *name*.
168
169    *name* can be a standard model name or a path to a custom model.
170
171    Returns a class that can be used directly as a sasview model.
172    """
173    kernel_module = generate.load_kernel_module(name)
174    model_info = modelinfo.make_model_info(kernel_module)
175    return make_model_from_info(model_info)
176
177
178def _register_old_models():
179    # type: () -> None
180    """
181    Place the new models into sasview under the old names.
182
183    Monkey patch sas.sascalc.fit as sas.models so that sas.models.pluginmodel
184    is available to the plugin modules.
185    """
186    import sys
187    import sas   # needed in order to set sas.models
188    import sas.sascalc.fit
189    sys.modules['sas.models'] = sas.sascalc.fit
190    sas.models = sas.sascalc.fit
191    import sas.models
192    from sasmodels.conversion_table import CONVERSION_TABLE
193
194    for new_name, conversion in CONVERSION_TABLE.get((3, 1, 2), {}).items():
195        # CoreShellEllipsoidModel => core_shell_ellipsoid:1
196        new_name = new_name.split(':')[0]
197        old_name = conversion[0] if len(conversion) < 3 else conversion[2]
198        module_attrs = {old_name: find_model(new_name)}
199        ConstructedModule = type(old_name, (), module_attrs)
200        old_path = 'sas.models.' + old_name
201        setattr(sas.models, old_path, ConstructedModule)
202        sys.modules[old_path] = ConstructedModule
203
204
205def MultiplicationModel(form_factor, structure_factor):
206    # type: ("SasviewModel", "SasviewModel") -> "SasviewModel"
207    """
208    Returns a constructed product model from form_factor and structure_factor.
209    """
210    model_info = product.make_product_info(form_factor._model_info,
211                                           structure_factor._model_info)
212    ConstructedModel = make_model_from_info(model_info)
213    return ConstructedModel(form_factor.multiplicity)
214
215
216def _generate_model_attributes(model_info):
217    # type: (ModelInfo) -> Dict[str, Any]
218    """
219    Generate the class attributes for the model.
220
221    This should include all the information necessary to query the model
222    details so that you do not need to instantiate a model to query it.
223
224    All the attributes should be immutable to avoid accidents.
225    """
226
227    # TODO: allow model to override axis labels input/output name/unit
228
229    # Process multiplicity
230    non_fittable = []  # type: List[str]
231    xlabel = model_info.profile_axes[0] if model_info.profile is not None else ""
232    variants = MultiplicityInfo(0, "", [], xlabel)
233    for p in model_info.parameters.kernel_parameters:
234        if p.name == model_info.control:
235            non_fittable.append(p.name)
236            variants = MultiplicityInfo(
237                len(p.choices) if p.choices else int(p.limits[1]),
238                p.name, p.choices, xlabel
239            )
240            break
241
242    # Only a single drop-down list parameter available
243    fun_list = []
244    for p in model_info.parameters.kernel_parameters:
245        if p.choices:
246            fun_list = p.choices
247            if p.length > 1:
248                non_fittable.extend(p.id+str(k) for k in range(1, p.length+1))
249            break
250
251    # Organize parameter sets
252    orientation_params = []
253    magnetic_params = []
254    fixed = []
255    for p in model_info.parameters.user_parameters({}, is2d=True):
256        if p.type == 'orientation':
257            orientation_params.append(p.name)
258            orientation_params.append(p.name+".width")
259            fixed.append(p.name+".width")
260        elif p.type == 'magnetic':
261            orientation_params.append(p.name)
262            magnetic_params.append(p.name)
263            fixed.append(p.name+".width")
264
265
266    # Build class dictionary
267    attrs = {}  # type: Dict[str, Any]
268    attrs['_model_info'] = model_info
269    attrs['name'] = model_info.name
270    attrs['id'] = model_info.id
271    attrs['description'] = model_info.description
272    attrs['category'] = model_info.category
273    attrs['is_structure_factor'] = model_info.structure_factor
274    attrs['is_form_factor'] = model_info.effective_radius_type is not None
275    attrs['is_multiplicity_model'] = variants[0] > 1
276    attrs['multiplicity_info'] = variants
277    attrs['orientation_params'] = tuple(orientation_params)
278    attrs['magnetic_params'] = tuple(magnetic_params)
279    attrs['fixed'] = tuple(fixed)
280    attrs['non_fittable'] = tuple(non_fittable)
281    attrs['fun_list'] = tuple(fun_list)
282
283    return attrs
284
285class SasviewModel(object):
286    """
287    Sasview wrapper for opencl/ctypes model.
288    """
289    # Model parameters for the specific model are set in the class constructor
290    # via the _generate_model_attributes function, which subclasses
291    # SasviewModel.  They are included here for typing and documentation
292    # purposes.
293    _model = None       # type: KernelModel
294    _model_info = None  # type: ModelInfo
295    #: load/save name for the model
296    id = None           # type: str
297    #: display name for the model
298    name = None         # type: str
299    #: short model description
300    description = None  # type: str
301    #: default model category
302    category = None     # type: str
303
304    #: names of the orientation parameters in the order they appear
305    orientation_params = None # type: List[str]
306    #: names of the magnetic parameters in the order they appear
307    magnetic_params = None    # type: List[str]
308    #: names of the fittable parameters
309    fixed = None              # type: List[str]
310    # TODO: the attribute fixed is ill-named
311
312    # Axis labels
313    input_name = "Q"
314    input_unit = "A^{-1}"
315    output_name = "Intensity"
316    output_unit = "cm^{-1}"
317
318    #: default cutoff for polydispersity
319    cutoff = 1e-5
320
321    # Note: Use non-mutable values for class attributes to avoid errors
322    #: parameters that are not fitted
323    non_fittable = ()        # type: Sequence[str]
324
325    #: True if model should appear as a structure factor
326    is_structure_factor = False
327    #: True if model should appear as a form factor
328    is_form_factor = False
329    #: True if model has multiplicity
330    is_multiplicity_model = False
331    #: Multiplicity information
332    multiplicity_info = None # type: MultiplicityInfoType
333
334    # Per-instance variables
335    #: parameter {name: value} mapping
336    params = None      # type: Dict[str, float]
337    #: values for dispersion width, npts, nsigmas and type
338    dispersion = None  # type: Dict[str, Any]
339    #: units and limits for each parameter
340    details = None     # type: Dict[str, Sequence[Any]]
341    #                  # actual type is Dict[str, List[str, float, float]]
342    #: multiplicity value, or None if no multiplicity on the model
343    multiplicity = None     # type: Optional[int]
344    #: memory for polydispersity array if using ArrayDispersion (used by sasview).
345    _persistency_dict = None # type: Dict[str, Tuple[np.ndarray, np.ndarray]]
346
347    def __init__(self, multiplicity=None):
348        # type: (Optional[int]) -> None
349
350        # TODO: _persistency_dict to persistency_dict throughout sasview
351        # TODO: refactor multiplicity to encompass variants
352        # TODO: dispersion should be a class
353        # TODO: refactor multiplicity info
354        # TODO: separate profile view from multiplicity
355        # The button label, x and y axis labels and scale need to be under
356        # the control of the model, not the fit page.  Maximum flexibility,
357        # the fit page would supply the canvas and the profile could plot
358        # how it wants, but this assumes matplotlib.  Next level is that
359        # we provide some sort of data description including title, labels
360        # and lines to plot.
361
362        # Get the list of hidden parameters given the multiplicity
363        # Don't include multiplicity in the list of parameters
364        self.multiplicity = multiplicity
365        if multiplicity is not None:
366            hidden = self._model_info.get_hidden_parameters(multiplicity)
367            hidden |= set([self.multiplicity_info.control])
368        else:
369            hidden = set()
370        if self._model_info.structure_factor:
371            hidden.add('scale')
372            hidden.add('background')
373            self._model_info.parameters.defaults['background'] = 0.
374
375        self._persistency_dict = {}
376        self.params = collections.OrderedDict()
377        self.dispersion = collections.OrderedDict()
378        self.details = {}
379        for p in self._model_info.parameters.user_parameters({}, is2d=True):
380            if p.name in hidden:
381                continue
382            self.params[p.name] = p.default
383            if p.limits and type(p.limits) is list and len(p.limits) > 1:
384                self.details[p.id] = [p.units if not p.choices else p.choices, p.limits[0], p.limits[1]]
385            else:
386                self.details[p.id] = [p.units if not p.choices else p.choices, None, None]
387            if p.polydisperse:
388                self.details[p.id+".width"] = [
389                    "", 0.0, 1.0 if p.relative_pd else np.inf
390                ]
391                self.dispersion[p.name] = {
392                    'width': 0,
393                    'npts': 35,
394                    'nsigmas': 3,
395                    'type': 'gaussian',
396                }
397
398    def __get_state__(self):
399        # type: () -> Dict[str, Any]
400        state = self.__dict__.copy()
401        state.pop('_model')
402        # May need to reload model info on set state since it has pointers
403        # to python implementations of Iq, etc.
404        #state.pop('_model_info')
405        return state
406
407    def __set_state__(self, state):
408        # type: (Dict[str, Any]) -> None
409        self.__dict__ = state
410        self._model = None
411
412    def __str__(self):
413        # type: () -> str
414        """
415        :return: string representation
416        """
417        return self.name
418
419    def is_fittable(self, par_name):
420        # type: (str) -> bool
421        """
422        Check if a given parameter is fittable or not
423
424        :param par_name: the parameter name to check
425        """
426        return par_name in self.fixed
427        #For the future
428        #return self.params[str(par_name)].is_fittable()
429
430
431    def getProfile(self):
432        # type: () -> (np.ndarray, np.ndarray)
433        """
434        Get SLD profile
435
436        : return: (z, beta) where z is a list of depth of the transition points
437                beta is a list of the corresponding SLD values
438        """
439        args = {} # type: Dict[str, Any]
440        for p in self._model_info.parameters.kernel_parameters:
441            if p.id == self.multiplicity_info.control:
442                value = float(self.multiplicity)
443            elif p.length == 1:
444                value = self.params.get(p.id, np.NaN)
445            else:
446                value = np.array([self.params.get(p.id+str(k), np.NaN)
447                                  for k in range(1, p.length+1)])
448            args[p.id] = value
449
450        x, y = self._model_info.profile(**args)
451        return x, 1e-6*y
452
453    def setParam(self, name, value):
454        # type: (str, float) -> None
455        """
456        Set the value of a model parameter
457
458        :param name: name of the parameter
459        :param value: value of the parameter
460
461        """
462        # Look for dispersion parameters
463        toks = name.split('.')
464        if len(toks) == 2:
465            for item in self.dispersion.keys():
466                if item == toks[0]:
467                    for par in self.dispersion[item]:
468                        if par == toks[1]:
469                            self.dispersion[item][par] = value
470                            return
471        else:
472            # Look for standard parameter
473            for item in self.params.keys():
474                if item == name:
475                    self.params[item] = value
476                    return
477
478        raise ValueError("Model does not contain parameter %s" % name)
479
480    def getParam(self, name):
481        # type: (str) -> float
482        """
483        Set the value of a model parameter
484
485        :param name: name of the parameter
486
487        """
488        # Look for dispersion parameters
489        toks = name.split('.')
490        if len(toks) == 2:
491            for item in self.dispersion.keys():
492                if item == toks[0]:
493                    for par in self.dispersion[item]:
494                        if par == toks[1]:
495                            return self.dispersion[item][par]
496        else:
497            # Look for standard parameter
498            for item in self.params.keys():
499                if item == name:
500                    return self.params[item]
501
502        raise ValueError("Model does not contain parameter %s" % name)
503
504    def getParamList(self):
505        # type: () -> Sequence[str]
506        """
507        Return a list of all available parameters for the model
508        """
509        param_list = list(self.params.keys())
510        # WARNING: Extending the list with the dispersion parameters
511        param_list.extend(self.getDispParamList())
512        return param_list
513
514    def getDispParamList(self):
515        # type: () -> Sequence[str]
516        """
517        Return a list of polydispersity parameters for the model
518        """
519        # TODO: fix test so that parameter order doesn't matter
520        ret = ['%s.%s' % (p_name, ext)
521               for p_name in self.dispersion.keys()
522               for ext in ('npts', 'nsigmas', 'width')]
523        #print(ret)
524        return ret
525
526    def clone(self):
527        # type: () -> "SasviewModel"
528        """ Return a identical copy of self """
529        return deepcopy(self)
530
531    def run(self, x=0.0):
532        # type: (Union[float, (float, float), List[float]]) -> float
533        """
534        Evaluate the model
535
536        :param x: input q, or [q,phi]
537
538        :return: scattering function P(q)
539
540        **DEPRECATED**: use calculate_Iq instead
541        """
542        if isinstance(x, (list, tuple)):
543            # pylint: disable=unpacking-non-sequence
544            q, phi = x
545            return self.calculate_Iq([q*math.cos(phi)], [q*math.sin(phi)])[0]
546        else:
547            return self.calculate_Iq([x])[0]
548
549
550    def runXY(self, x=0.0):
551        # type: (Union[float, (float, float), List[float]]) -> float
552        """
553        Evaluate the model in cartesian coordinates
554
555        :param x: input q, or [qx, qy]
556
557        :return: scattering function P(q)
558
559        **DEPRECATED**: use calculate_Iq instead
560        """
561        if isinstance(x, (list, tuple)):
562            return self.calculate_Iq([x[0]], [x[1]])[0]
563        else:
564            return self.calculate_Iq([x])[0]
565
566    def evalDistribution(self, qdist):
567        # type: (Union[np.ndarray, Tuple[np.ndarray, np.ndarray], List[np.ndarray]]) -> np.ndarray
568        r"""
569        Evaluate a distribution of q-values.
570
571        :param qdist: array of q or a list of arrays [qx,qy]
572
573        * For 1D, a numpy array is expected as input
574
575        ::
576
577            evalDistribution(q)
578
579          where *q* is a numpy array.
580
581        * For 2D, a list of *[qx,qy]* is expected with 1D arrays as input
582
583        ::
584
585              qx = [ qx[0], qx[1], qx[2], ....]
586              qy = [ qy[0], qy[1], qy[2], ....]
587
588        If the model is 1D only, then
589
590        .. math::
591
592            q = \sqrt{q_x^2+q_y^2}
593
594        """
595        if isinstance(qdist, (list, tuple)):
596            # Check whether we have a list of ndarrays [qx,qy]
597            qx, qy = qdist
598            return self.calculate_Iq(qx, qy)
599
600        elif isinstance(qdist, np.ndarray):
601            # We have a simple 1D distribution of q-values
602            return self.calculate_Iq(qdist)
603
604        else:
605            raise TypeError("evalDistribution expects q or [qx, qy], not %r"
606                            % type(qdist))
607
608    def calc_composition_models(self, qx):
609        """
610        returns parts of the composition model or None if not a composition
611        model.
612        """
613        # TODO: have calculate_Iq return the intermediates.
614        #
615        # The current interface causes calculate_Iq() to be called twice,
616        # once to get the combined result and again to get the intermediate
617        # results.  This is necessary for now.
618        # Long term, the solution is to change the interface to calculate_Iq
619        # so that it returns a results object containing all the bits:
620        #     the A, B, C, ... of the composition model (and any subcomponents?)
621        #     the P and S of the product model
622        #     the combined model before resolution smearing,
623        #     the sasmodel before sesans conversion,
624        #     the oriented 2D model used to fit oriented usans data,
625        #     the final I(q),
626        #     ...
627        #
628        # Have the model calculator add all of these blindly to the data
629        # tree, and update the graphs which contain them.  The fitter
630        # needs to be updated to use the I(q) value only, ignoring the rest.
631        #
632        # The simple fix of returning the existing intermediate results
633        # will not work for a couple of reasons: (1) another thread may
634        # sneak in to compute its own results before calc_composition_models
635        # is called, and (2) calculate_Iq is currently called three times:
636        # once with q, once with q values before qmin and once with q values
637        # after q max.  Both of these should be addressed before
638        # replacing this code.
639        composition = self._model_info.composition
640        if composition and composition[0] == 'product': # only P*S for now
641            with calculation_lock:
642                self._calculate_Iq(qx)
643                # for compatibility with sasview 4.3
644                results = self._intermediate_results()
645                return results["P(Q)"], results["S(Q)"]
646        else:
647            return None
648
649    def calculate_Iq(self, qx, qy=None):
650        # type: (Sequence[float], Optional[Sequence[float]]) -> np.ndarray
651        """
652        Calculate Iq for one set of q with the current parameters.
653
654        If the model is 1D, use *q*.  If 2D, use *qx*, *qy*.
655
656        This should NOT be used for fitting since it copies the *q* vectors
657        to the card for each evaluation.
658        """
659        ## uncomment the following when trying to debug the uncoordinated calls
660        ## to calculate_Iq
661        #if calculation_lock.locked():
662        #    logger.info("calculation waiting for another thread to complete")
663        #    logger.info("\n".join(traceback.format_stack()))
664
665        with calculation_lock:
666            return self._calculate_Iq(qx, qy)
667
668    def _calculate_Iq(self, qx, qy=None):
669        if self._model is None:
670            self._model = core.build_model(self._model_info)
671        if qy is not None:
672            q_vectors = [np.asarray(qx), np.asarray(qy)]
673        else:
674            q_vectors = [np.asarray(qx)]
675        calculator = self._model.make_kernel(q_vectors)
676        parameters = self._model_info.parameters
677        pairs = [self._get_weights(p) for p in parameters.call_parameters]
678        #weights.plot_weights(self._model_info, pairs)
679        call_details, values, is_magnetic = make_kernel_args(calculator, pairs)
680        #call_details.show()
681        #print("================ parameters ==================")
682        #for p, v in zip(parameters.call_parameters, pairs): print(p.name, v[0])
683        #for k, p in enumerate(self._model_info.parameters.call_parameters):
684        #    print(k, p.name, *pairs[k])
685        #print("params", self.params)
686        #print("values", values)
687        #print("is_mag", is_magnetic)
688        result = calculator(call_details, values, cutoff=self.cutoff,
689                            magnetic=is_magnetic)
690        #print("result", result)
691        self._intermediate_results = getattr(calculator, 'results', None)
692        calculator.release()
693        #self._model.release()
694        return result
695
696    def calculate_ER(self):
697        # type: () -> float
698        """
699        Calculate the effective radius for P(q)*S(q)
700
701        :return: the value of the effective radius
702        """
703        if self._model_info.ER is None:
704            return 1.0
705        else:
706            value, weight = self._dispersion_mesh()
707            fv = self._model_info.ER(*value)
708            #print(values[0].shape, weights.shape, fv.shape)
709            return np.sum(weight * fv) / np.sum(weight)
710
711    def calculate_VR(self):
712        # type: () -> float
713        """
714        Calculate the volf ratio for P(q)*S(q)
715
716        :return: the value of the volf ratio
717        """
718        if self._model_info.VR is None:
719            return 1.0
720        else:
721            value, weight = self._dispersion_mesh()
722            whole, part = self._model_info.VR(*value)
723            return np.sum(weight * part) / np.sum(weight * whole)
724
725    def set_dispersion(self, parameter, dispersion):
726        # type: (str, weights.Dispersion) -> None
727        """
728        Set the dispersion object for a model parameter
729
730        :param parameter: name of the parameter [string]
731        :param dispersion: dispersion object of type Dispersion
732        """
733        if parameter in self.params:
734            # TODO: Store the disperser object directly in the model.
735            # The current method of relying on the sasview GUI to
736            # remember them is kind of funky.
737            # Note: can't seem to get disperser parameters from sasview
738            # (1) Could create a sasview model that has not yet been
739            # converted, assign the disperser to one of its polydisperse
740            # parameters, then retrieve the disperser parameters from the
741            # sasview model.
742            # (2) Could write a disperser parameter retriever in sasview.
743            # (3) Could modify sasview to use sasmodels.weights dispersers.
744            # For now, rely on the fact that the sasview only ever uses
745            # new dispersers in the set_dispersion call and create a new
746            # one instead of trying to assign parameters.
747            self.dispersion[parameter] = dispersion.get_pars()
748        else:
749            raise ValueError("%r is not a dispersity or orientation parameter"
750                             % parameter)
751
752    def _dispersion_mesh(self):
753        # type: () -> List[Tuple[np.ndarray, np.ndarray]]
754        """
755        Create a mesh grid of dispersion parameters and weights.
756
757        Returns [p1,p2,...],w where pj is a vector of values for parameter j
758        and w is a vector containing the products for weights for each
759        parameter set in the vector.
760        """
761        pars = [self._get_weights(p)
762                for p in self._model_info.parameters.call_parameters
763                if p.type == 'volume']
764        return dispersion_mesh(self._model_info, pars)
765
766    def _get_weights(self, par):
767        # type: (Parameter) -> Tuple[np.ndarray, np.ndarray]
768        """
769        Return dispersion weights for parameter
770        """
771        if par.name not in self.params:
772            if par.name == self.multiplicity_info.control:
773                return self.multiplicity, [self.multiplicity], [1.0]
774            else:
775                # For hidden parameters use default values.  This sets
776                # scale=1 and background=0 for structure factors
777                default = self._model_info.parameters.defaults.get(par.name, np.NaN)
778                return default, [default], [1.0]
779        elif par.polydisperse:
780            value = self.params[par.name]
781            dis = self.dispersion[par.name]
782            if dis['type'] == 'array':
783                dispersity, weight = dis['values'], dis['weights']
784            else:
785                dispersity, weight = weights.get_weights(
786                    dis['type'], dis['npts'], dis['width'], dis['nsigmas'],
787                    value, par.limits, par.relative_pd)
788            return value, dispersity, weight
789        else:
790            value = self.params[par.name]
791            return value, [value], [1.0]
792
793def test_cylinder():
794    # type: () -> float
795    """
796    Test that the cylinder model runs, returning the value at [0.1,0.1].
797    """
798    Cylinder = _make_standard_model('cylinder')
799    cylinder = Cylinder()
800    return cylinder.evalDistribution([0.1, 0.1])
801
802def test_structure_factor():
803    # type: () -> float
804    """
805    Test that 2-D hardsphere model runs and doesn't produce NaN.
806    """
807    Model = _make_standard_model('hardsphere')
808    model = Model()
809    value2d = model.evalDistribution([0.1, 0.1])
810    value1d = model.evalDistribution(np.array([0.1*np.sqrt(2)]))
811    #print("hardsphere", value1d, value2d)
812    if np.isnan(value1d) or np.isnan(value2d):
813        raise ValueError("hardsphere returns nan")
814
815def test_product():
816    # type: () -> float
817    """
818    Test that 2-D hardsphere model runs and doesn't produce NaN.
819    """
820    S = _make_standard_model('hayter_msa')()
821    P = _make_standard_model('cylinder')()
822    model = MultiplicationModel(P, S)
823    value = model.evalDistribution([0.1, 0.1])
824    if np.isnan(value):
825        raise ValueError("cylinder*hatyer_msa returns null")
826
827def test_rpa():
828    # type: () -> float
829    """
830    Test that the 2-D RPA model runs
831    """
832    RPA = _make_standard_model('rpa')
833    rpa = RPA(3)
834    return rpa.evalDistribution([0.1, 0.1])
835
836def test_empty_distribution():
837    # type: () -> None
838    """
839    Make sure that sasmodels returns NaN when there are no polydispersity points
840    """
841    Cylinder = _make_standard_model('cylinder')
842    cylinder = Cylinder()
843    cylinder.setParam('radius', -1.0)
844    cylinder.setParam('background', 0.)
845    Iq = cylinder.evalDistribution(np.asarray([0.1]))
846    assert Iq[0] == 0., "empty distribution fails"
847
848def test_model_list():
849    # type: () -> None
850    """
851    Make sure that all models build as sasview models
852    """
853    from .exception import annotate_exception
854    for name in core.list_models():
855        try:
856            _make_standard_model(name)
857        except:
858            annotate_exception("when loading "+name)
859            raise
860
861def test_old_name():
862    # type: () -> None
863    """
864    Load and run cylinder model as sas-models-CylinderModel
865    """
866    if not SUPPORT_OLD_STYLE_PLUGINS:
867        return
868    try:
869        # if sasview is not on the path then don't try to test it
870        import sas
871    except ImportError:
872        return
873    load_standard_models()
874    from sas.models.CylinderModel import CylinderModel
875    CylinderModel().evalDistribution([0.1, 0.1])
876
877def magnetic_demo():
878    Model = _make_standard_model('sphere')
879    model = Model()
880    model.setParam('M0:sld', 8)
881    q = np.linspace(-0.35, 0.35, 500)
882    qx, qy = np.meshgrid(q, q)
883    result = model.calculate_Iq(qx.flatten(), qy.flatten())
884    result = result.reshape(qx.shape)
885
886    import pylab
887    pylab.imshow(np.log(result + 0.001))
888    pylab.show()
889
890if __name__ == "__main__":
891    print("cylinder(0.1,0.1)=%g"%test_cylinder())
892    #magnetic_demo()
893    #test_product()
894    #test_structure_factor()
895    #print("rpa:", test_rpa())
896    #test_empty_distribution()
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