1 | from __future__ import print_function |
---|
2 | |
---|
3 | import sys, os, math, re |
---|
4 | import numpy as np |
---|
5 | import matplotlib |
---|
6 | matplotlib.use('Agg') |
---|
7 | import matplotlib.pyplot as plt |
---|
8 | sys.path.insert(0, os.path.abspath('..')) |
---|
9 | from sasmodels import generate, core |
---|
10 | from sasmodels.direct_model import DirectModel, call_profile |
---|
11 | from sasmodels.data import empty_data1D, empty_data2D |
---|
12 | |
---|
13 | try: |
---|
14 | from typing import Dict, Any |
---|
15 | except ImportError: |
---|
16 | pass |
---|
17 | else: |
---|
18 | from matplotlib.axes import Axes |
---|
19 | from sasmodels.kernel import KernelModel |
---|
20 | from sasmodels.modelinfo import ModelInfo |
---|
21 | |
---|
22 | |
---|
23 | def plot_1d(model, opts, ax): |
---|
24 | # type: (KernelModel, Dict[str, Any], Axes) -> None |
---|
25 | """ |
---|
26 | Create a 1-D image. |
---|
27 | """ |
---|
28 | q_min, q_max, nq = opts['q_min'], opts['q_max'], opts['nq'] |
---|
29 | q_min = math.log10(q_min) |
---|
30 | q_max = math.log10(q_max) |
---|
31 | q = np.logspace(q_min, q_max, nq) |
---|
32 | data = empty_data1D(q) |
---|
33 | calculator = DirectModel(data, model) |
---|
34 | Iq1D = calculator() |
---|
35 | |
---|
36 | ax.plot(q, Iq1D, color='blue', lw=2, label=model.info.name) |
---|
37 | ax.set_xlabel(r'$Q \/(\AA^{-1})$') |
---|
38 | ax.set_ylabel(r'$I(Q) \/(\mathrm{cm}^{-1})$') |
---|
39 | ax.set_xscale(opts['xscale']) |
---|
40 | ax.set_yscale(opts['yscale']) |
---|
41 | #ax.legend(loc='best') |
---|
42 | |
---|
43 | def plot_2d(model, opts, ax): |
---|
44 | # type: (KernelModel, Dict[str, Any], Axes) -> None |
---|
45 | """ |
---|
46 | Create a 2-D image. |
---|
47 | """ |
---|
48 | qx_max, nq2d = opts['qx_max'], opts['nq2d'] |
---|
49 | q = np.linspace(-qx_max, qx_max, nq2d) # type: np.ndarray |
---|
50 | data2d = empty_data2D(q, resolution=0.0) |
---|
51 | calculator = DirectModel(data2d, model) |
---|
52 | Iq2D = calculator() #background=0) |
---|
53 | Iq2D = Iq2D.reshape(nq2d, nq2d) |
---|
54 | if opts['zscale'] == 'log': |
---|
55 | Iq2D = np.log(np.clip(Iq2D, opts['vmin'], np.inf)) |
---|
56 | ax.imshow(Iq2D, interpolation='nearest', aspect=1, origin='lower', |
---|
57 | extent=[-qx_max, qx_max, -qx_max, qx_max], cmap=opts['colormap']) |
---|
58 | ax.set_xlabel(r'$Q_x \/(\AA^{-1})$') |
---|
59 | ax.set_ylabel(r'$Q_y \/(\AA^{-1})$') |
---|
60 | |
---|
61 | def plot_profile_inset(model_info, ax): |
---|
62 | p = ax.get_position() |
---|
63 | width, height = 0.4*(p.x1-p.x0), 0.4*(p.y1-p.y0) |
---|
64 | left, bottom = p.x1-width, p.y1-height |
---|
65 | inset = plt.gcf().add_axes([left, bottom, width, height]) |
---|
66 | x, y, labels = call_profile(model_info) |
---|
67 | inset.plot(x, y, '-') |
---|
68 | inset.locator_params(nbins=4) |
---|
69 | #inset.set_xlabel(labels[0]) |
---|
70 | #inset.set_ylabel(labels[1]) |
---|
71 | inset.text(0.99, 0.99, "profile", |
---|
72 | horizontalalignment="right", |
---|
73 | verticalalignment="top", |
---|
74 | transform=inset.transAxes) |
---|
75 | |
---|
76 | def figfile(model_info): |
---|
77 | # type: (ModelInfo) -> str |
---|
78 | return model_info.id + '_autogenfig.png' |
---|
79 | |
---|
80 | def make_figure(model_info, opts): |
---|
81 | # type: (ModelInfo, Dict[str, Any]) -> None |
---|
82 | """ |
---|
83 | Generate the figure file to include in the docs. |
---|
84 | """ |
---|
85 | model = core.build_model(model_info) |
---|
86 | |
---|
87 | fig_height = 3.0 # in |
---|
88 | fig_left = 0.6 # in |
---|
89 | fig_right = 0.5 # in |
---|
90 | fig_top = 0.6*0.25 # in |
---|
91 | fig_bottom = 0.6*0.75 |
---|
92 | if model_info.parameters.has_2d: |
---|
93 | plot_height = fig_height - (fig_top+fig_bottom) |
---|
94 | plot_width = plot_height |
---|
95 | fig_width = 2*(plot_width + fig_left + fig_right) |
---|
96 | aspect = (fig_width, fig_height) |
---|
97 | ratio = aspect[0]/aspect[1] |
---|
98 | ax_left = fig_left/fig_width |
---|
99 | ax_bottom = fig_bottom/fig_height |
---|
100 | ax_height = plot_height/fig_height |
---|
101 | ax_width = ax_height/ratio # square axes |
---|
102 | fig = plt.figure(figsize=aspect) |
---|
103 | ax2d = fig.add_axes([0.5+ax_left, ax_bottom, ax_width, ax_height]) |
---|
104 | plot_2d(model, opts, ax2d) |
---|
105 | ax1d = fig.add_axes([ax_left, ax_bottom, ax_width, ax_height]) |
---|
106 | plot_1d(model, opts, ax1d) |
---|
107 | #ax.set_aspect('square') |
---|
108 | else: |
---|
109 | plot_height = fig_height - (fig_top+fig_bottom) |
---|
110 | plot_width = (1+np.sqrt(5))/2*fig_height |
---|
111 | fig_width = plot_width + fig_left + fig_right |
---|
112 | ax_left = fig_left/fig_width |
---|
113 | ax_bottom = fig_bottom/fig_height |
---|
114 | ax_width = plot_width/fig_width |
---|
115 | ax_height = plot_height/fig_height |
---|
116 | aspect = (fig_width, fig_height) |
---|
117 | fig = plt.figure(figsize=aspect) |
---|
118 | ax1d = fig.add_axes([ax_left, ax_bottom, ax_width, ax_height]) |
---|
119 | plot_1d(model, opts, ax1d) |
---|
120 | |
---|
121 | if model_info.profile: |
---|
122 | plot_profile_inset(model_info, ax1d) |
---|
123 | |
---|
124 | # Save image in model/img |
---|
125 | path = os.path.join('model', 'img', figfile(model_info)) |
---|
126 | plt.savefig(path, bbox_inches='tight') |
---|
127 | #print("figure saved in",path) |
---|
128 | |
---|
129 | def gen_docs(model_info): |
---|
130 | # type: (ModelInfo) -> None |
---|
131 | """ |
---|
132 | Generate the doc string with the figure inserted before the references. |
---|
133 | """ |
---|
134 | |
---|
135 | # Load the doc string from the module definition file and store it in rst |
---|
136 | docstr = generate.make_doc(model_info) |
---|
137 | |
---|
138 | # Auto caption for figure |
---|
139 | captionstr = '\n' |
---|
140 | captionstr += '.. figure:: img/' + figfile(model_info) + '\n' |
---|
141 | captionstr += '\n' |
---|
142 | if model_info.parameters.has_2d: |
---|
143 | captionstr += ' 1D and 2D plots corresponding to the default parameters of the model.\n' |
---|
144 | else: |
---|
145 | captionstr += ' 1D plot corresponding to the default parameters of the model.\n' |
---|
146 | captionstr += '\n' |
---|
147 | |
---|
148 | # Add figure reference and caption to documentation (at end, before References) |
---|
149 | pattern = '\*\*REFERENCE' |
---|
150 | match = re.search(pattern, docstr.upper()) |
---|
151 | |
---|
152 | if match: |
---|
153 | docstr1 = docstr[:match.start()] |
---|
154 | docstr2 = docstr[match.start():] |
---|
155 | docstr = docstr1 + captionstr + docstr2 |
---|
156 | else: |
---|
157 | print('------------------------------------------------------------------') |
---|
158 | print('References NOT FOUND for model: ', model_info.id) |
---|
159 | print('------------------------------------------------------------------') |
---|
160 | docstr += captionstr |
---|
161 | |
---|
162 | open(sys.argv[2],'w').write(docstr) |
---|
163 | |
---|
164 | def process_model(path): |
---|
165 | # type: (str) -> None |
---|
166 | """ |
---|
167 | Generate doc file and image file for the given model definition file. |
---|
168 | """ |
---|
169 | |
---|
170 | # Load the model file |
---|
171 | model_name = os.path.basename(path)[:-3] |
---|
172 | model_info = core.load_model_info(model_name) |
---|
173 | |
---|
174 | # Plotting ranges and options |
---|
175 | opts = { |
---|
176 | 'xscale' : 'log', |
---|
177 | 'yscale' : 'log' if not model_info.structure_factor else 'linear', |
---|
178 | 'zscale' : 'log' if not model_info.structure_factor else 'linear', |
---|
179 | 'q_min' : 0.001, |
---|
180 | 'q_max' : 1.0, |
---|
181 | 'nq' : 1000, |
---|
182 | 'nq2d' : 1000, |
---|
183 | 'vmin' : 1e-3, # floor for the 2D data results |
---|
184 | 'qx_max' : 0.5, |
---|
185 | #'colormap' : 'gist_ncar', |
---|
186 | 'colormap' : 'nipy_spectral', |
---|
187 | #'colormap' : 'jet', |
---|
188 | } |
---|
189 | |
---|
190 | # Generate the RST file and the figure. Order doesn't matter. |
---|
191 | gen_docs(model_info) |
---|
192 | make_figure(model_info, opts) |
---|
193 | |
---|
194 | if __name__ == "__main__": |
---|
195 | process_model(sys.argv[1]) |
---|