source: sasmodels/sasmodels/core.py @ 0c24a82

core_shell_microgelscostrafo411magnetic_modelrelease_v0.94release_v0.95ticket-1257-vesicle-productticket_1156ticket_1265_superballticket_822_more_unit_tests
Last change on this file since 0c24a82 was 0c24a82, checked in by Paul Kienzle <pkienzle@…>, 8 years ago

put model name on compare figure

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File size: 7.4 KB
Line 
1"""
2Core model handling routines.
3"""
4from __future__ import print_function
5
6__all__ = [
7    "list_models", "load_model", "load_model_info",
8    "build_model", "precompile_dll",
9    ]
10
11import os
12from os.path import basename, dirname, join as joinpath, splitext
13from glob import glob
14
15import numpy as np # type: ignore
16
17from . import generate
18from . import modelinfo
19from . import product
20from . import mixture
21from . import kernelpy
22from . import kerneldll
23try:
24    from . import kernelcl
25    HAVE_OPENCL = True
26except Exception:
27    HAVE_OPENCL = False
28
29try:
30    from typing import List, Union, Optional, Any
31    from .kernel import KernelModel
32    from .modelinfo import ModelInfo
33except ImportError:
34    pass
35
36try:
37    np.meshgrid([])
38    meshgrid = np.meshgrid
39except Exception:
40    # CRUFT: np.meshgrid requires multiple vectors
41    def meshgrid(*args):
42        if len(args) > 1:
43            return np.meshgrid(*args)
44        else:
45            return [np.asarray(v) for v in args]
46
47# TODO: refactor composite model support
48# The current load_model_info/build_model does not reuse existing model
49# definitions when loading a composite model, instead reloading and
50# rebuilding the kernel for each component model in the expression.  This
51# is fine in a scripting environment where the model is built when the script
52# starts and is thrown away when the script ends, but may not be the best
53# solution in a long-lived application.  This affects the following functions:
54#
55#    load_model
56#    load_model_info
57#    build_model
58
59def list_models():
60    # type: () -> List[str]
61    """
62    Return the list of available models on the model path.
63    """
64    root = dirname(__file__)
65    files = sorted(glob(joinpath(root, 'models', "[a-zA-Z]*.py")))
66    available_models = [basename(f)[:-3] for f in files]
67    return available_models
68
69def load_model(model_name, dtype=None, platform='ocl'):
70    # type: (str, str, str) -> KernelModel
71    """
72    Load model info and build model.
73
74    *model_name* is the name of the model as used by :func:`load_model_info`.
75    Additional keyword arguments are passed directly to :func:`build_model`.
76    """
77    return build_model(load_model_info(model_name),
78                       dtype=dtype, platform=platform)
79
80
81def load_model_info(model_name):
82    # type: (str) -> modelinfo.ModelInfo
83    """
84    Load a model definition given the model name.
85
86    This returns a handle to the module defining the model.  This can be
87    used with functions in generate to build the docs or extract model info.
88    """
89    parts = model_name.split('+')
90    if len(parts) > 1:
91        model_info_list = [load_model_info(p) for p in parts]
92        return mixture.make_mixture_info(model_info_list)
93
94    parts = model_name.split('*')
95    if len(parts) > 1:
96        if len(parts) > 2:
97            raise ValueError("use P*S to apply structure factor S to model P")
98        P_info, Q_info = [load_model_info(p) for p in parts]
99        return product.make_product_info(P_info, Q_info)
100
101    kernel_module = generate.load_kernel_module(model_name)
102    return modelinfo.make_model_info(kernel_module)
103
104
105def build_model(model_info, dtype=None, platform="ocl"):
106    # type: (modelinfo.ModelInfo, str, str) -> KernelModel
107    """
108    Prepare the model for the default execution platform.
109
110    This will return an OpenCL model, a DLL model or a python model depending
111    on the model and the computing platform.
112
113    *model_info* is the model definition structure returned from
114    :func:`load_model_info`.
115
116    *dtype* indicates whether the model should use single or double precision
117    for the calculation.  Choices are 'single', 'double', 'quad', 'half',
118    or 'fast'.  If *dtype* ends with '!', then force the use of the DLL rather
119    than OpenCL for the calculation.
120
121    *platform* should be "dll" to force the dll to be used for C models,
122    otherwise it uses the default "ocl".
123    """
124    composition = model_info.composition
125    if composition is not None:
126        composition_type, parts = composition
127        models = [build_model(p, dtype=dtype, platform=platform) for p in parts]
128        if composition_type == 'mixture':
129            return mixture.MixtureModel(model_info, models)
130        elif composition_type == 'product':
131            from . import product
132            P, S = models
133            return product.ProductModel(model_info, P, S)
134        else:
135            raise ValueError('unknown mixture type %s'%composition_type)
136
137    # If it is a python model, return it immediately
138    if callable(model_info.Iq):
139        return kernelpy.PyModel(model_info)
140
141    numpy_dtype, fast, platform = parse_dtype(model_info, dtype, platform)
142
143    source = generate.make_source(model_info)
144    if platform == "dll":
145        #print("building dll", numpy_dtype)
146        return kerneldll.load_dll(source['dll'], model_info, numpy_dtype)
147    else:
148        #print("building ocl", numpy_dtype)
149        return kernelcl.GpuModel(source, model_info, numpy_dtype, fast=fast)
150
151def precompile_dlls(path, dtype="double"):
152    # type: (str, str) -> List[str]
153    """
154    Precompile the dlls for all builtin models, returning a list of dll paths.
155
156    *path* is the directory in which to save the dlls.  It will be created if
157    it does not already exist.
158
159    This can be used when build the windows distribution of sasmodels
160    which may be missing the OpenCL driver and the dll compiler.
161    """
162    numpy_dtype = np.dtype(dtype)
163    if not os.path.exists(path):
164        os.makedirs(path)
165    compiled_dlls = []
166    for model_name in list_models():
167        model_info = load_model_info(model_name)
168        if not callable(model_info.Iq):
169            source = generate.make_source(model_info)['dll']
170            old_path = kerneldll.DLL_PATH
171            try:
172                kerneldll.DLL_PATH = path
173                dll = kerneldll.make_dll(source, model_info, dtype=numpy_dtype)
174            finally:
175                kerneldll.DLL_PATH = old_path
176            compiled_dlls.append(dll)
177    return compiled_dlls
178
179def parse_dtype(model_info, dtype=None, platform=None):
180    # type: (ModelInfo, str, str) -> (np.dtype, bool, str)
181    """
182    Interpret dtype string, returning np.dtype and fast flag.
183
184    Possible types include 'half', 'single', 'double' and 'quad'.  If the
185    type is 'fast', then this is equivalent to dtype 'single' with the
186    fast flag set to True.
187    """
188    # Assign default platform, overriding ocl with dll if OpenCL is unavailable
189    if platform is None:
190        platform = "ocl"
191    if platform=="ocl" and not HAVE_OPENCL:
192        platform = "dll"
193
194    # Check if type indicates dll regardless of which platform is given
195    if dtype is not None and dtype.endswith('!'):
196        platform = "dll"
197        dtype = dtype[:-1]
198
199    # Convert special type names "half", "fast", and "quad"
200    fast = (dtype=="fast")
201    if fast:
202        dtype = "single"
203    elif dtype=="quad":
204        dtype = "longdouble"
205    elif dtype=="half":
206        dtype = "f16"
207
208    # Convert dtype string to numpy dtype.
209    if dtype is None:
210        numpy_dtype = generate.F32 if platform=="ocl" and model_info.single else generate.F64
211    else:
212        numpy_dtype = np.dtype(dtype)
213
214    # Make sure that the type is supported by opencl, otherwise use dll
215    if platform=="ocl":
216        env = kernelcl.environment()
217        if not env.has_type(numpy_dtype):
218            platform = "dll"
219            if dtype is None:
220                numpy_dtype = generate.F64
221
222    return numpy_dtype, fast, platform
223
224if __name__ == "__main__":
225    print("\n".join(list_models()))
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