source: sasmodels/sasmodels/kernelpy.py @ b2377b0

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Last change on this file since b2377b0 was bde38b5, checked in by Paul Kienzle <pkienzle@…>, 8 years ago

simplify kernel calling

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Line 
1"""
2Python driver for python kernels
3
4Calls the kernel with a vector of $q$ values for a single parameter set.
5Polydispersity is supported by looping over different parameter sets and
6summing the results.  The interface to :class:`PyModel` matches those for
7:class:`kernelcl.GpuModel` and :class:`kerneldll.DllModel`.
8"""
9from __future__ import division, print_function
10
11import numpy as np  # type: ignore
12from numpy import pi, cos  #type: ignore
13
14from . import details
15from .generate import F64
16from .kernel import KernelModel, Kernel
17
18try:
19    from typing import Union, Callable
20except:
21    pass
22else:
23    DType = Union[None, str, np.dtype]
24
25class PyModel(KernelModel):
26    """
27    Wrapper for pure python models.
28    """
29    def __init__(self, model_info):
30        # Make sure Iq and Iqxy are available and vectorized
31        _create_default_functions(model_info)
32        self.info = model_info
33
34    def make_kernel(self, q_vectors):
35        q_input = PyInput(q_vectors, dtype=F64)
36        kernel = self.info.Iqxy if q_input.is_2d else self.info.Iq
37        return PyKernel(kernel, self.info, q_input)
38
39    def release(self):
40        """
41        Free resources associated with the model.
42        """
43        pass
44
45class PyInput(object):
46    """
47    Make q data available to the gpu.
48
49    *q_vectors* is a list of q vectors, which will be *[q]* for 1-D data,
50    and *[qx, qy]* for 2-D data.  Internally, the vectors will be reallocated
51    to get the best performance on OpenCL, which may involve shifting and
52    stretching the array to better match the memory architecture.  Additional
53    points will be evaluated with *q=1e-3*.
54
55    *dtype* is the data type for the q vectors. The data type should be
56    set to match that of the kernel, which is an attribute of
57    :class:`GpuProgram`.  Note that not all kernels support double
58    precision, so even if the program was created for double precision,
59    the *GpuProgram.dtype* may be single precision.
60
61    Call :meth:`release` when complete.  Even if not called directly, the
62    buffer will be released when the data object is freed.
63    """
64    def __init__(self, q_vectors, dtype):
65        self.nq = q_vectors[0].size
66        self.dtype = dtype
67        self.is_2d = (len(q_vectors) == 2)
68        if self.is_2d:
69            self.q = np.empty((self.nq, 2), dtype=dtype)
70            self.q[:, 0] = q_vectors[0]
71            self.q[:, 1] = q_vectors[1]
72        else:
73            self.q = np.empty(self.nq, dtype=dtype)
74            self.q[:self.nq] = q_vectors[0]
75
76    def release(self):
77        """
78        Free resources associated with the model inputs.
79        """
80        self.q = None
81
82class PyKernel(Kernel):
83    """
84    Callable SAS kernel.
85
86    *kernel* is the DllKernel object to call.
87
88    *model_info* is the module information
89
90    *q_input* is the DllInput q vectors at which the kernel should be
91    evaluated.
92
93    The resulting call method takes the *pars*, a list of values for
94    the fixed parameters to the kernel, and *pd_pars*, a list of (value,weight)
95    vectors for the polydisperse parameters.  *cutoff* determines the
96    integration limits: any points with combined weight less than *cutoff*
97    will not be calculated.
98
99    Call :meth:`release` when done with the kernel instance.
100    """
101    def __init__(self, kernel, model_info, q_input):
102        # type: (callable, ModelInfo, List[np.ndarray]) -> None
103        self.dtype = np.dtype('d')
104        self.info = model_info
105        self.q_input = q_input
106        self.res = np.empty(q_input.nq, q_input.dtype)
107        self.kernel = kernel
108        self.dim = '2d' if q_input.is_2d else '1d'
109
110        partable = model_info.parameters
111        kernel_parameters = (partable.iqxy_parameters if q_input.is_2d
112                             else partable.iq_parameters)
113        volume_parameters = partable.form_volume_parameters
114
115        # Create an array to hold the parameter values.  There will be a
116        # single array whose values are updated as the calculator goes
117        # through the loop.  Arguments to the kernel and volume functions
118        # will use views into this vector, relying on the fact that a
119        # an array of no dimensions acts like a scalar.
120        parameter_vector = np.empty(len(partable.call_parameters)-2, 'd')
121
122        # Create views into the array to hold the arguments
123        offset = 0
124        kernel_args, volume_args = [], []
125        for p in partable.kernel_parameters:
126            if p.length == 1:
127                # Scalar values are length 1 vectors with no dimensions.
128                v = parameter_vector[offset:offset+1].reshape(())
129            else:
130                # Vector values are simple views.
131                v = parameter_vector[offset:offset+p.length]
132            offset += p.length
133            if p in kernel_parameters:
134                kernel_args.append(v)
135            if p in volume_parameters:
136                volume_args.append(v)
137
138        # Hold on to the parameter vector so we can use it to call kernel later.
139        # This may also be required to preserve the views into the vector.
140        self._parameter_vector = parameter_vector
141
142        # Generate a closure which calls the kernel with the views into the
143        # parameter array.
144        if q_input.is_2d:
145            form = model_info.Iqxy
146            qx, qy = q_input.q[:, 0], q_input.q[:, 1]
147            self._form = lambda: form(qx, qy, *kernel_args)
148        else:
149            form = model_info.Iq
150            q = q_input.q
151            self._form = lambda: form(q, *kernel_args)
152
153        # Generate a closure which calls the form_volume if it exists.
154        form_volume = model_info.form_volume
155        self._volume = ((lambda: form_volume(*volume_args)) if form_volume
156                        else (lambda: 1.0))
157
158    def __call__(self, call_details, values, cutoff, magnetic):
159        # type: (CallDetails, np.ndarray, np.ndarray, float, bool) -> np.ndarray
160        if magnetic:
161            raise NotImplementedError("Magnetism not implemented for pure python models")
162        #print("Calling python kernel")
163        #call_details.show(values)
164        res = _loops(self._parameter_vector, self._form, self._volume,
165                     self.q_input.nq, call_details, values, cutoff)
166        return res
167
168    def release(self):
169        # type: () -> None
170        """
171        Free resources associated with the kernel.
172        """
173        self.q_input.release()
174        self.q_input = None
175
176def _loops(parameters, form, form_volume, nq, call_details, values, cutoff):
177    # type: (np.ndarray, Callable[[], np.ndarray], Callable[[], float], int, details.CallDetails, np.ndarray, np.ndarray, float) -> None
178    ################################################################
179    #                                                              #
180    #   !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!   #
181    #   !!                                                    !!   #
182    #   !!  KEEP THIS CODE CONSISTENT WITH KERNEL_TEMPLATE.C  !!   #
183    #   !!                                                    !!   #
184    #   !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!   #
185    #                                                              #
186    ################################################################
187    n_pars = len(parameters)
188    parameters[:] = values[2:n_pars+2]
189    scale, background = values[0], values[1]
190    if call_details.num_active == 0:
191        norm = float(form_volume())
192        if norm > 0.0:
193            return (scale/norm)*form() + background
194        else:
195            return np.ones(nq, 'd')*background
196
197    pd_value = values[2+n_pars:2+n_pars + call_details.num_weights]
198    pd_weight = values[2+n_pars + call_details.num_weights:]
199
200    pd_norm = 0.0
201    spherical_correction = 1.0
202    partial_weight = np.NaN
203    weight = np.NaN
204
205    p0_par = call_details.pd_par[0]
206    p0_is_theta = (p0_par == call_details.theta_par)
207    p0_length = call_details.pd_length[0]
208    p0_index = p0_length
209    p0_offset = call_details.pd_offset[0]
210
211    pd_par = call_details.pd_par[:call_details.num_active]
212    pd_offset = call_details.pd_offset[:call_details.num_active]
213    pd_stride = call_details.pd_stride[:call_details.num_active]
214    pd_length = call_details.pd_length[:call_details.num_active]
215
216    total = np.zeros(nq, 'd')
217    for loop_index in range(call_details.num_eval):
218        # update polydispersity parameter values
219        if p0_index == p0_length:
220            pd_index = (loop_index//pd_stride)%pd_length
221            parameters[pd_par] = pd_value[pd_offset+pd_index]
222            partial_weight = np.prod(pd_weight[pd_offset+pd_index][1:])
223            if call_details.theta_par >= 0:
224                cor = cos(pi / 180 * parameters[call_details.theta_par])
225                spherical_correction = max(abs(cor), 1e-6)
226            p0_index = loop_index%p0_length
227
228        weight = partial_weight * pd_weight[p0_offset + p0_index]
229        parameters[p0_par] = pd_value[p0_offset + p0_index]
230        if p0_is_theta:
231            cor = cos(pi/180 * parameters[p0_par])
232            spherical_correction = max(abs(cor), 1e-6)
233        p0_index += 1
234        if weight > cutoff:
235            # Call the scattering function
236            # Assume that NaNs are only generated if the parameters are bad;
237            # exclude all q for that NaN.  Even better would be to have an
238            # INVALID expression like the C models, but that is too expensive.
239            Iq = form()
240            if np.isnan(Iq).any(): continue
241
242            # update value and norm
243            weight *= spherical_correction
244            total += weight * Iq
245            pd_norm += weight * form_volume()
246
247    if pd_norm > 0.0:
248        return (scale/pd_norm)*total + background
249    else:
250        return np.ones(nq, 'd')*background
251
252
253def _create_default_functions(model_info):
254    """
255    Autogenerate missing functions, such as Iqxy from Iq.
256
257    This only works for Iqxy when Iq is written in python. :func:`make_source`
258    performs a similar role for Iq written in C.  This also vectorizes
259    any functions that are not already marked as vectorized.
260    """
261    _create_vector_Iq(model_info)
262    _create_vector_Iqxy(model_info)  # call create_vector_Iq() first
263
264
265def _create_vector_Iq(model_info):
266    """
267    Define Iq as a vector function if it exists.
268    """
269    Iq = model_info.Iq
270    if callable(Iq) and not getattr(Iq, 'vectorized', False):
271        #print("vectorizing Iq")
272        def vector_Iq(q, *args):
273            """
274            Vectorized 1D kernel.
275            """
276            return np.array([Iq(qi, *args) for qi in q])
277        vector_Iq.vectorized = True
278        model_info.Iq = vector_Iq
279
280def _create_vector_Iqxy(model_info):
281    """
282    Define Iqxy as a vector function if it exists, or default it from Iq().
283    """
284    Iq, Iqxy = model_info.Iq, model_info.Iqxy
285    if callable(Iqxy):
286        if not getattr(Iqxy, 'vectorized', False):
287            #print("vectorizing Iqxy")
288            def vector_Iqxy(qx, qy, *args):
289                """
290                Vectorized 2D kernel.
291                """
292                return np.array([Iqxy(qxi, qyi, *args) for qxi, qyi in zip(qx, qy)])
293            vector_Iqxy.vectorized = True
294            model_info.Iqxy = vector_Iqxy
295    elif callable(Iq):
296        #print("defaulting Iqxy")
297        # Iq is vectorized because create_vector_Iq was already called.
298        def default_Iqxy(qx, qy, *args):
299            """
300            Default 2D kernel.
301            """
302            return Iq(np.sqrt(qx**2 + qy**2), *args)
303        default_Iqxy.vectorized = True
304        model_info.Iqxy = default_Iqxy
305
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