##// END OF EJS Templates
Added support for speaker notes cells in the any place of the slides and adjacent speaker notes cells.
damianavila -
Show More
@@ -1,239 +1,246 b''
1 from __future__ import absolute_import
1 from __future__ import absolute_import
2
2
3 from converters.html import ConverterHTML
3 from converters.html import ConverterHTML
4 from converters.utils import text_cell
4 from converters.utils import text_cell
5 from converters.utils import highlight, coalesce_streams
5 from converters.utils import highlight, coalesce_streams
6
6
7 from IPython.utils import path
7 from IPython.utils import path
8 from markdown import markdown
8 from markdown import markdown
9
9
10 import os
10 import os
11 import io
11 import io
12 import itertools
12 import itertools
13
13
14
14
15 class ConverterReveal(ConverterHTML):
15 class ConverterReveal(ConverterHTML):
16 #"""
16 #"""
17 #Convert a ipython notebook to a html slideshow
17 # Convert a ipython notebook to a html slideshow
18 #based in reveal.js library.
18 # based in reveal.js library.
19 #"""
19 #"""
20
20
21 @text_cell
21 @text_cell
22 def render_heading(self, cell):
22 def render_heading(self, cell):
23 marker = cell.level
23 marker = cell.level
24 return [self.meta2str(cell.metadata),
24 return [self.meta2str(cell.metadata),
25 u'<h{1}>\n {0}\n</h{1}>'.format(cell.source, marker)]
25 u'<h{1}>\n {0}\n</h{1}>'.format(cell.source, marker)]
26
26
27 def render_code(self, cell):
27 def render_code(self, cell):
28 if not cell.input:
28 if not cell.input:
29 return []
29 return []
30 lines = []
30 lines = []
31 meta_code = self.meta2str(cell.metadata)
31 meta_code = self.meta2str(cell.metadata)
32 lines.extend([meta_code])
32 lines.extend([meta_code])
33 lines.extend(['<div class="cell border-box-sizing code_cell vbox">'])
33 lines.extend(['<div class="cell border-box-sizing code_cell vbox">'])
34 lines.append('<div class="input hbox">')
34 lines.append('<div class="input hbox">')
35 n = self._get_prompt_number(cell)
35 n = self._get_prompt_number(cell)
36 lines.append(
36 lines.append(
37 '<div class="prompt input_prompt">In&nbsp;[%s]:</div>' % n
37 '<div class="prompt input_prompt">In&nbsp;[%s]:</div>' % n
38 )
38 )
39 lines.append('<div class="input_area box-flex1">')
39 lines.append('<div class="input_area box-flex1">')
40 lines.append(highlight(cell.input))
40 lines.append(highlight(cell.input))
41 lines.append('</div>') # input_area
41 lines.append('</div>') # input_area
42 lines.append('</div>') # input
42 lines.append('</div>') # input
43 if cell.outputs:
43 if cell.outputs:
44 lines.append('<div class="vbox output_wrapper">')
44 lines.append('<div class="vbox output_wrapper">')
45 lines.append('<div class="output vbox">')
45 lines.append('<div class="output vbox">')
46 for output in coalesce_streams(cell.outputs):
46 for output in coalesce_streams(cell.outputs):
47 conv_fn = self.dispatch(output.output_type)
47 conv_fn = self.dispatch(output.output_type)
48 lines.extend(conv_fn(output))
48 lines.extend(conv_fn(output))
49 lines.append('</div>') # output
49 lines.append('</div>') # output
50 lines.append('</div>') # output_wrapper
50 lines.append('</div>') # output_wrapper
51 lines.append('</div>') # cell
51 lines.append('</div>') # cell
52 return lines
52 return lines
53
53
54 @text_cell
54 @text_cell
55 def render_markdown(self, cell):
55 def render_markdown(self, cell):
56 return [self.meta2str(cell.metadata), markdown(cell.source)]
56 return [self.meta2str(cell.metadata), markdown(cell.source)]
57
57
58 def render_raw(self, cell):
58 def render_raw(self, cell):
59 if self.raw_as_verbatim:
59 if self.raw_as_verbatim:
60 return [self.in_tag('pre', self.meta2str(cell.metadata)),
60 return [self.in_tag('pre', self.meta2str(cell.metadata)),
61 self.in_tag('pre', cell.source)]
61 self.in_tag('pre', cell.source)]
62 else:
62 else:
63 return [self.meta2str(cell.metadata), cell.source]
63 return [self.meta2str(cell.metadata), cell.source]
64
64
65 def meta2str(self, meta):
65 def meta2str(self, meta):
66 "transform metadata dict (containing slides delimiters) to string "
66 "transform metadata dict (containing slides delimiters) to string "
67 try:
67 try:
68 meta_tuple = meta[u'slideshow'].items()
68 meta_tuple = meta[u'slideshow'].items()
69 except KeyError as e: # if there is not slideshow metadata
69 except KeyError as e: # if there is not slideshow metadata
70 meta_tuple = [(u'slide_type', u'untouched')]
70 meta_tuple = [(u'slide_type', u'untouched')]
71 meta_list = [[x + ' = ' + unicode(y)] for x, y in meta_tuple]
71 meta_list = [[x + ' = ' + unicode(y)] for x, y in meta_tuple]
72 return u'\n'.join(list(itertools.chain(*meta_list)))
72 return u'\n'.join(list(itertools.chain(*meta_list)))
73
73
74 def convert(self, cell_separator='\n'):
74 def convert(self, cell_separator='\n'):
75 """
75 """
76 Specific method to converts notebook to a string representation.
76 Specific method to converts notebook to a string representation.
77
77
78 Parameters
78 Parameters
79 ----------
79 ----------
80 cell_separator : string
80 cell_separator : string
81 Character or string to join cells with. Default is "\n"
81 Character or string to join cells with. Default is "\n"
82
82
83 Returns
83 Returns
84 -------
84 -------
85 out : string
85 out : string
86 """
86 """
87
87
88 lines = []
88 lines = []
89 lines.extend(self.optional_header())
89 lines.extend(self.optional_header())
90 begin = ['<div class="reveal"><div class="slides">']
90 begin = ['<div class="reveal"><div class="slides">']
91 lines.extend(begin)
91 lines.extend(begin)
92 slides_list = self.build_slides()
92 slides_list = self.build_slides()
93 lines.extend(slides_list)
93 lines.extend(slides_list)
94 end = ['</div></div>']
94 end = ['</div></div>']
95 lines.extend(end)
95 lines.extend(end)
96 lines.extend(self.optional_footer())
96 lines.extend(self.optional_footer())
97 return u'\n'.join(lines)
97 return u'\n'.join(lines)
98
98
99 def clean_text(self, cell_separator='\n'):
99 def clean_text(self, cell_separator='\n'):
100 "clean and reorganize the text list to be slided"
100 "clean and reorganize the text list to be slided"
101 text = self.main_body(cell_separator)
101 text = self.main_body(cell_separator)
102 self.delim = [u'slide_type = untouched',
102 self.delim = [u'slide_type = untouched',
103 u'slide_type = -',
103 u'slide_type = -',
104 u'slide_type = header_slide',
104 u'slide_type = header_slide',
105 u'slide_type = slide',
105 u'slide_type = slide',
106 u'slide_type = fragment',
106 u'slide_type = fragment',
107 u'slide_type = notes',
107 u'slide_type = notes',
108 u'slide_type = skip'] # keep this one the last
108 u'slide_type = skip'] # keep this one the last
109 text_cell_render = \
109 text_cell_render = \
110 u'<div class="text_cell_render border-box-sizing rendered_html">'
110 u'<div class="text_cell_render border-box-sizing rendered_html">'
111 for i, j in enumerate(text):
111 for i, j in enumerate(text):
112 if j in self.delim and text[i - 1] == text_cell_render:
112 if j in self.delim and text[i - 1] == text_cell_render:
113 if j == self.delim[0]:
113 if j == self.delim[0]:
114 text[i - 1] = self.delim[0]
114 text[i - 1] = self.delim[0]
115 elif j == self.delim[1]:
115 elif j == self.delim[1]:
116 text[i - 1] = self.delim[1]
116 text[i - 1] = self.delim[1]
117 elif j == self.delim[2]:
117 elif j == self.delim[2]:
118 text[i - 1] = self.delim[2]
118 text[i - 1] = self.delim[2]
119 elif j == self.delim[3]:
119 elif j == self.delim[3]:
120 text[i - 1] = self.delim[3]
120 text[i - 1] = self.delim[3]
121 elif j == self.delim[4]:
121 elif j == self.delim[4]:
122 text[i - 1] = self.delim[4]
122 text[i - 1] = self.delim[4]
123 elif j == self.delim[5]:
123 elif j == self.delim[5]:
124 text[i - 1] = self.delim[5]
124 text[i - 1] = self.delim[5]
125 else:
125 else:
126 text[i - 1] = self.delim[6]
126 text[i - 1] = self.delim[6]
127 text[i] = text_cell_render
127 text[i] = text_cell_render
128 text[0] = u'slide_type = header_slide' # defensive code
128 text[0] = u'slide_type = header_slide' # defensive code
129 text.append(u'slide_type = untouched') # to end search of skipped
129 text.append(u'slide_type = untouched') # to end search of skipped
130 return text
130 return text
131
131
132 def build_slides(self):
132 def build_slides(self):
133 "build the slides structure from text list and delimiters"
133 "build the slides structure from text list and delimiters"
134 text = self.clean_text()
134 text = self.clean_text()
135 left = '<section>'
135 left = '<section>'
136 right = '</section>'
136 right = '</section>'
137 notes_start = '<aside class="notes">'
137 notes_start = '<aside class="notes">'
138 notes_end = '</aside>'
138 notes_end = '</aside>'
139 set_delim = self.delim[:6]
139 set_delim_skip = self.delim[:6] # to skip adjacent skkiped cells
140 set_delim_notes = self.delim[:5] # to show adjacent speaker notes
140 #elimination of skipped cells
141 #elimination of skipped cells
141 for i, j in enumerate(text):
142 for i, j in enumerate(text):
142 if j == u'slide_type = skip':
143 if j == u'slide_type = skip':
143 text.pop(i)
144 text.pop(i)
144 while not text[i] in set_delim:
145 while not text[i] in set_delim_skip:
145 text.pop(i)
146 text.pop(i)
147 #encapsulation of notes cells
148 for i, j in enumerate(text):
149 if j == u'slide_type = notes':
150 text.pop(i)
151 temp_list = []
152 while not text[i] in set_delim_notes:
153 temp_list.append(text.pop(i))
154 else:
155 temp_list.insert(0, notes_start)
156 temp_list.append(notes_end)
157 text[i:i] = temp_list
146 # elimination of none names
158 # elimination of none names
147 for i, j in enumerate(text):
159 for i, j in enumerate(text):
148 if j in [u'slide_type = untouched', u'slide_type = -']:
160 if j in [u'slide_type = untouched', u'slide_type = -']:
149 text.pop(i)
161 text.pop(i)
150 #generation of slides as a list of list
162 #generation of slides as a list of list
151 slides = [list(x[1]) for x in itertools.groupby(text,
163 slides = [list(x[1]) for x in itertools.groupby(text,
152 lambda x: x == u'slide_type = header_slide') if not x[0]]
164 lambda x: x == u'slide_type = header_slide') if not x[0]]
153 for slide in slides:
165 for slide in slides:
154 slide.insert(0, left)
166 slide.insert(0, left)
155 slide.append(right)
167 slide.append(right)
156 # encapsulation of each fragment
168 # encapsulation of each fragment
157 for i, j in enumerate(slide):
169 for i, j in enumerate(slide):
158 if j == u'slide_type = fragment':
170 if j == u'slide_type = fragment':
159 slide.pop(i)
171 slide.pop(i)
160 slide[i] = slide[i][:4] + \
172 slide[i] = slide[i][:4] + \
161 ' class="fragment"' + slide[i][4:]
173 ' class="fragment"' + slide[i][4:]
162 # encapsulation of each speaker note
163 for i, j in enumerate(slide):
164 if j == u'slide_type = notes':
165 slide[i] = notes_start
166 slide.append(notes_end) # the notes at the slide end
167 # encapsulation of each nested slide
174 # encapsulation of each nested slide
168 if u'slide_type = slide' in slide:
175 if u'slide_type = slide' in slide:
169 slide.insert(0, '<section>')
176 slide.insert(0, '<section>')
170 slide.append('</section>')
177 slide.append('</section>')
171 for i, j in enumerate(slide):
178 for i, j in enumerate(slide):
172 if j == u'slide_type = slide':
179 if j == u'slide_type = slide':
173 slide[i] = right + left
180 slide[i] = right + left
174 return list(itertools.chain(*slides))
181 return list(itertools.chain(*slides))
175
182
176 def save(self, outfile=None, encoding=None):
183 def save(self, outfile=None, encoding=None):
177 "read and parse notebook into self.nb"
184 "read and parse notebook into self.nb"
178 if outfile is None:
185 if outfile is None:
179 outfile = self.outbase + '_slides.' + 'html'
186 outfile = self.outbase + '_slides.' + 'html'
180 if encoding is None:
187 if encoding is None:
181 encoding = self.default_encoding
188 encoding = self.default_encoding
182 with io.open(outfile, 'w', encoding=encoding) as f:
189 with io.open(outfile, 'w', encoding=encoding) as f:
183 f.write(self.output)
190 f.write(self.output)
184 return os.path.abspath(outfile)
191 return os.path.abspath(outfile)
185
192
186 def header_body(self):
193 def header_body(self):
187 "return the body of the header as a list of strings"
194 "return the body of the header as a list of strings"
188 from pygments.formatters import HtmlFormatter
195 from pygments.formatters import HtmlFormatter
189 header = []
196 header = []
190 static = os.path.join(path.get_ipython_package_dir(),
197 static = os.path.join(path.get_ipython_package_dir(),
191 'frontend', 'html', 'notebook', 'static',)
198 'frontend', 'html', 'notebook', 'static',)
192 here = os.path.split(os.path.realpath(__file__))[0]
199 here = os.path.split(os.path.realpath(__file__))[0]
193 css = os.path.join(static, 'css')
200 css = os.path.join(static, 'css')
194 for sheet in [
201 for sheet in [
195 # do we need jquery and prettify?
202 # do we need jquery and prettify?
196 # os.path.join(static, 'jquery', 'css', 'themes', 'base',
203 # os.path.join(static, 'jquery', 'css', 'themes', 'base',
197 # 'jquery-ui.min.css'),
204 # 'jquery-ui.min.css'),
198 # os.path.join(static, 'prettify', 'prettify.css'),
205 # os.path.join(static, 'prettify', 'prettify.css'),
199 os.path.join(css, 'boilerplate.css'),
206 os.path.join(css, 'boilerplate.css'),
200 os.path.join(css, 'fbm.css'),
207 os.path.join(css, 'fbm.css'),
201 os.path.join(css, 'notebook.css'),
208 os.path.join(css, 'notebook.css'),
202 os.path.join(css, 'renderedhtml.css'),
209 os.path.join(css, 'renderedhtml.css'),
203 # our overrides:
210 # our overrides:
204 os.path.join(here, '..', 'css', 'reveal_html.css'),
211 os.path.join(here, '..', 'css', 'reveal_html.css'),
205 ]:
212 ]:
206 header.extend(self._stylesheet(sheet))
213 header.extend(self._stylesheet(sheet))
207 # pygments css
214 # pygments css
208 pygments_css = HtmlFormatter().get_style_defs('.highlight')
215 pygments_css = HtmlFormatter().get_style_defs('.highlight')
209 header.extend(['<meta charset="UTF-8">'])
216 header.extend(['<meta charset="UTF-8">'])
210 header.extend(self.in_tag('style', pygments_css,
217 header.extend(self.in_tag('style', pygments_css,
211 dict(type='"text/css"')))
218 dict(type='"text/css"')))
212 return header
219 return header
213
220
214 def template_read(self):
221 def template_read(self):
215 "read the reveal_template.html"
222 "read the reveal_template.html"
216 here = os.path.split(os.path.realpath(__file__))[0]
223 here = os.path.split(os.path.realpath(__file__))[0]
217 reveal_template = os.path.join(here, '..', 'templates',
224 reveal_template = os.path.join(here, '..', 'templates',
218 'reveal_base.html')
225 'reveal_base.html')
219 with io.open(reveal_template, 'r', encoding='utf-8') as f:
226 with io.open(reveal_template, 'r', encoding='utf-8') as f:
220 template = f.readlines()
227 template = f.readlines()
221 template = [s.strip() for s in template]
228 template = [s.strip() for s in template]
222 return template
229 return template
223
230
224 def template_split(self):
231 def template_split(self):
225 "split the reveal_template.html in header and footer lists"
232 "split the reveal_template.html in header and footer lists"
226 temp = self.template_read()
233 temp = self.template_read()
227 splitted_temp = [list(x[1]) for x in itertools.groupby(temp,
234 splitted_temp = [list(x[1]) for x in itertools.groupby(temp,
228 lambda x: x == u'%slides%') if not x[0]]
235 lambda x: x == u'%slides%') if not x[0]]
229 return splitted_temp
236 return splitted_temp
230
237
231 def optional_header(self):
238 def optional_header(self):
232 optional_header_body = self.template_split()
239 optional_header_body = self.template_split()
233 return ['<!DOCTYPE html>', '<html>', '<head>'] + \
240 return ['<!DOCTYPE html>', '<html>', '<head>'] + \
234 optional_header_body[0] + self.header_body() + \
241 optional_header_body[0] + self.header_body() + \
235 ['</head>', '<body>']
242 ['</head>', '<body>']
236
243
237 def optional_footer(self):
244 def optional_footer(self):
238 optional_footer_body = self.template_split()
245 optional_footer_body = self.template_split()
239 return optional_footer_body[1] + ['</body>', '</html>'] No newline at end of file
246 return optional_footer_body[1] + ['</body>', '</html>']
@@ -1,1306 +1,1328 b''
1 {
1 {
2 "metadata": {
2 "metadata": {
3 "name": "example_nb_tour"
3 "name": "example_nb_tour"
4 },
4 },
5 "nbformat": 3,
5 "nbformat": 3,
6 "nbformat_minor": 0,
6 "nbformat_minor": 0,
7 "worksheets": [
7 "worksheets": [
8 {
8 {
9 "cells": [
9 "cells": [
10 {
10 {
11 "cell_type": "markdown",
11 "cell_type": "markdown",
12 "metadata": {
12 "metadata": {
13 "slideshow": {
13 "slideshow": {
14 "slide_type": "-"
14 "slide_type": "-"
15 }
15 }
16 },
16 },
17 "source": [
17 "source": [
18 "# A brief tour of the IPython notebook"
18 "# A brief tour of the IPython notebook"
19 ]
19 ]
20 },
20 },
21 {
21 {
22 "cell_type": "markdown",
22 "cell_type": "markdown",
23 "metadata": {
23 "metadata": {
24 "slideshow": {
24 "slideshow": {
25 "slide_type": "fragment"
25 "slide_type": "fragment"
26 }
26 }
27 },
27 },
28 "source": [
28 "source": [
29 "Rendered by nbconvert using [Reveal.js](http://lab.hakim.se/reveal-js)!\n",
29 "Rendered by nbconvert using [Reveal.js](http://lab.hakim.se/reveal-js)!\n",
30 "\n",
30 "\n",
31 "by Dami\u00e1n Avila"
31 "by Dami\u00e1n Avila"
32 ]
32 ]
33 },
33 },
34 {
34 {
35 "cell_type": "markdown",
35 "cell_type": "markdown",
36 "metadata": {
36 "metadata": {
37 "slideshow": {
37 "slideshow": {
38 "slide_type": "slide"
38 "slide_type": "slide"
39 }
39 }
40 },
40 },
41 "source": [
41 "source": [
42 "This document will give you a brief tour of the capabilities of the IPython notebook. \n",
42 "This document will give you a brief tour of the capabilities of the IPython notebook. \n",
43 "You can view its contents by scrolling around, or execute each cell by typing `Shift-Enter`.\n",
43 "You can view its contents by scrolling around, or execute each cell by typing `Shift-Enter`.\n",
44 "After you conclude this brief high-level tour, you should read the accompanying notebook \n",
44 "After you conclude this brief high-level tour, you should read the accompanying notebook \n",
45 "titled `01_notebook_introduction`, which takes a more step-by-step approach to the features of the\n",
45 "titled `01_notebook_introduction`, which takes a more step-by-step approach to the features of the\n",
46 "system. \n",
46 "system. \n",
47 "The rest of the notebooks in this directory illustrate various other aspects and \n",
47 "The rest of the notebooks in this directory illustrate various other aspects and \n",
48 "capabilities of the IPython notebook; some of them may require additional libraries to be executed."
48 "capabilities of the IPython notebook; some of them may require additional libraries to be executed."
49 ]
49 ]
50 },
50 },
51 {
51 {
52 "cell_type": "markdown",
52 "cell_type": "markdown",
53 "metadata": {
53 "metadata": {
54 "slideshow": {
54 "slideshow": {
55 "slide_type": "notes"
55 "slide_type": "notes"
56 }
56 }
57 },
57 },
58 "source": [
58 "source": [
59 "**NOTE:** This notebook *must* be run from its own directory, so you must ``cd``\n",
59 "**NOTE:** This notebook *must* be run from its own directory, so you must ``cd``\n",
60 "to this directory and then start the notebook, but do *not* use the ``--notebook-dir``\n",
60 "to this directory and then start the notebook, but do *not* use the ``--notebook-dir``\n",
61 "option to run it from another location.\n",
61 "option to run it from another location.\n",
62 "\n",
62 "\n",
63 "The first thing you need to know is that you are still controlling the same old IPython you're used to,\n",
63 "The first thing you need to know is that you are still controlling the same old IPython you're used to,\n",
64 "so things like shell aliases and magic commands still work:"
64 "so things like shell aliases and magic commands still work:"
65 ]
65 ]
66 },
66 },
67 {
67 {
68 "cell_type": "code",
68 "cell_type": "code",
69 "collapsed": false,
69 "collapsed": false,
70 "input": [
70 "input": [
71 "pwd"
71 "pwd"
72 ],
72 ],
73 "language": "python",
73 "language": "python",
74 "metadata": {
74 "metadata": {
75 "slideshow": {
75 "slideshow": {
76 "slide_type": "header_slide"
76 "slide_type": "header_slide"
77 }
77 }
78 },
78 },
79 "outputs": [
79 "outputs": [
80 {
80 {
81 "output_type": "pyout",
81 "output_type": "pyout",
82 "prompt_number": 1,
82 "prompt_number": 1,
83 "text": [
83 "text": [
84 "u'/home/damian/Desarrollos/ipython_mtaui_slide'"
84 "u'/home/damian/Desarrollos/ipython_mtaui_slide'"
85 ]
85 ]
86 }
86 }
87 ],
87 ],
88 "prompt_number": 1
88 "prompt_number": 1
89 },
89 },
90 {
90 {
91 "cell_type": "code",
91 "cell_type": "code",
92 "collapsed": false,
92 "collapsed": false,
93 "input": [
93 "input": [
94 "ls"
94 "ls"
95 ],
95 ],
96 "language": "python",
96 "language": "python",
97 "metadata": {
97 "metadata": {
98 "slideshow": {
98 "slideshow": {
99 "slide_type": "slide"
99 "slide_type": "slide"
100 }
100 }
101 },
101 },
102 "outputs": [
102 "outputs": [
103 {
103 {
104 "output_type": "stream",
104 "output_type": "stream",
105 "stream": "stdout",
105 "stream": "stdout",
106 "text": [
106 "text": [
107 "COPYING.txt \u001b[0m\u001b[01;34mIPython\u001b[0m/ \u001b[01;35mpython-logo.svg\u001b[0m setupbase.py \u001b[01;32msetup.py\u001b[0m*\r\n",
107 "COPYING.txt \u001b[0m\u001b[01;34mIPython\u001b[0m/ \u001b[01;35mpython-logo.svg\u001b[0m setupbase.py \u001b[01;32msetup.py\u001b[0m*\r\n",
108 "\u001b[01;34mdocs\u001b[0m/ \u001b[01;32mipython.py\u001b[0m* README.rst \u001b[01;32msetupegg.py\u001b[0m* \u001b[01;34mtools\u001b[0m/\r\n",
108 "\u001b[01;34mdocs\u001b[0m/ \u001b[01;32mipython.py\u001b[0m* README.rst \u001b[01;32msetupegg.py\u001b[0m* \u001b[01;34mtools\u001b[0m/\r\n",
109 "example_nb_tour.ipynb MANIFEST.in \u001b[01;34mscripts\u001b[0m/ \u001b[01;34msetupext\u001b[0m/ tox.ini\r\n"
109 "example_nb_tour.ipynb MANIFEST.in \u001b[01;34mscripts\u001b[0m/ \u001b[01;34msetupext\u001b[0m/ tox.ini\r\n"
110 ]
110 ]
111 }
111 }
112 ],
112 ],
113 "prompt_number": 2
113 "prompt_number": 2
114 },
114 },
115 {
115 {
116 "cell_type": "code",
116 "cell_type": "code",
117 "collapsed": false,
117 "collapsed": false,
118 "input": [
118 "input": [
119 "message = 'The IPython notebook is great!'\n",
119 "message = 'The IPython notebook is great!'\n",
120 "# note: the echo command does not run on Windows, it's a unix command.\n",
120 "# note: the echo command does not run on Windows, it's a unix command.\n",
121 "!echo $message"
121 "!echo $message"
122 ],
122 ],
123 "language": "python",
123 "language": "python",
124 "metadata": {
124 "metadata": {
125 "slideshow": {
125 "slideshow": {
126 "slide_type": "slide"
126 "slide_type": "slide"
127 }
127 }
128 },
128 },
129 "outputs": [
129 "outputs": [
130 {
130 {
131 "output_type": "stream",
131 "output_type": "stream",
132 "stream": "stdout",
132 "stream": "stdout",
133 "text": [
133 "text": [
134 "The IPython notebook is great!\r\n"
134 "The IPython notebook is great!\r\n"
135 ]
135 ]
136 }
136 }
137 ],
137 ],
138 "prompt_number": 3
138 "prompt_number": 3
139 },
139 },
140 {
140 {
141 "cell_type": "heading",
141 "cell_type": "heading",
142 "level": 2,
142 "level": 2,
143 "metadata": {
143 "metadata": {
144 "slideshow": {
144 "slideshow": {
145 "slide_type": "header_slide"
145 "slide_type": "header_slide"
146 }
146 }
147 },
147 },
148 "source": [
148 "source": [
149 "Plots with matplotlib"
149 "Plots with matplotlib"
150 ]
150 ]
151 },
151 },
152 {
152 {
153 "cell_type": "markdown",
153 "cell_type": "markdown",
154 "metadata": {
155 "slideshow": {
156 "slide_type": "notes"
157 }
158 },
159 "source": [
160 "This is a speaker note in the middle of the slide..."
161 ]
162 },
163 {
164 "cell_type": "markdown",
165 "metadata": {
166 "slideshow": {
167 "slide_type": "notes"
168 }
169 },
170 "source": [
171 "And also another speaker note..."
172 ]
173 },
174 {
175 "cell_type": "markdown",
154 "metadata": {},
176 "metadata": {},
155 "source": [
177 "source": [
156 "IPython adds an 'inline' matplotlib backend,\n",
178 "IPython adds an 'inline' matplotlib backend,\n",
157 "which embeds any matplotlib figures into the notebook."
179 "which embeds any matplotlib figures into the notebook."
158 ]
180 ]
159 },
181 },
160 {
182 {
161 "cell_type": "code",
183 "cell_type": "code",
162 "collapsed": false,
184 "collapsed": false,
163 "input": [
185 "input": [
164 "%pylab inline"
186 "%pylab inline"
165 ],
187 ],
166 "language": "python",
188 "language": "python",
167 "metadata": {
189 "metadata": {
168 "slideshow": {
190 "slideshow": {
169 "slide_type": "-"
191 "slide_type": "-"
170 }
192 }
171 },
193 },
172 "outputs": [
194 "outputs": [
173 {
195 {
174 "output_type": "stream",
196 "output_type": "stream",
175 "stream": "stdout",
197 "stream": "stdout",
176 "text": [
198 "text": [
177 "\n",
199 "\n",
178 "Welcome to pylab, a matplotlib-based Python environment [backend: module://IPython.zmq.pylab.backend_inline].\n",
200 "Welcome to pylab, a matplotlib-based Python environment [backend: module://IPython.zmq.pylab.backend_inline].\n",
179 "For more information, type 'help(pylab)'.\n"
201 "For more information, type 'help(pylab)'.\n"
180 ]
202 ]
181 }
203 }
182 ],
204 ],
183 "prompt_number": 4
205 "prompt_number": 4
184 },
206 },
185 {
207 {
186 "cell_type": "code",
208 "cell_type": "code",
187 "collapsed": false,
209 "collapsed": false,
188 "input": [
210 "input": [
189 "x = linspace(0, 3*pi, 500)\n",
211 "x = linspace(0, 3*pi, 500)\n",
190 "plot(x, sin(x**2))\n",
212 "plot(x, sin(x**2))\n",
191 "title('A simple chirp');"
213 "title('A simple chirp');"
192 ],
214 ],
193 "language": "python",
215 "language": "python",
194 "metadata": {
216 "metadata": {
195 "slideshow": {
217 "slideshow": {
196 "slide_type": "slide"
218 "slide_type": "slide"
197 }
219 }
198 },
220 },
199 "outputs": [
221 "outputs": [
200 {
222 {
201 "output_type": "display_data",
223 "output_type": "display_data",
202 "png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAEICAYAAACzliQjAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJztfXl0VuWd/+fNwpawJZA9gJgwIS6gYrW0aBTQopi6i2OR\nug3tyNQ6PTPT85szUz0ztXjaHvWMHUXPWMGxSm2rUBdUtFFaRKwiWmVkKdGEQAhkgSyELPf3x+OT\n9+bmLs96732T53NODiS5z/K+ee/n+dzP9/t8n4RlWRYMDAwMDEYE0qKegIGBgYFBeDCkb2BgYDCC\nYEjfwMDAYATBkL6BgYHBCIIhfQMDA4MRBEP6BgYGBiMIhvQNUh5PP/00Lr30Ui19f/vb38a//du/\nKe3znnvuwfLlyz1/f/rpp+Ptt99WOqaBAYUhfYPIUVVVhZycHJw8eVKo/U033YRXX31V8awIEokE\nEomE8j798Je//AUXXHCB0jENDCgM6RtEitraWmzfvh15eXnYuHFj1NNxher9izL99fX1KZyJwUiE\nIX2DSLFu3TosWrQIy5cvx9q1a32vffLJJ3HqqadiwoQJmDlzJn71q18N/HzBggUD16WlpeGRRx5B\neXk5JkyYgH//93/Hvn378NWvfhWTJk3CsmXL0NPTAwCoqalBSUkJfvKTn2Dq1Kk45ZRTBvp1w4sv\nvoi5c+di8uTJ+NrXvoaPP/7Y89pPPvkEixcvRm5uLgoKCvCTn/wEAFH6J0+exIoVKzBhwgScfvrp\neP/99wfazZgxA2+++SYAYgVde+21WL58OSZOnIgnn3xy4GfLli3DhAkTcM455+Cjjz4KeKcNDAgM\n6RtEinXr1uGGG27A9ddfj1dffRWHDx92va6jowN33XUXNm3ahGPHjuGdd97B3LlzPft97bXXsGPH\nDmzbtg33338/7rjjDjzzzDP44osv8PHHH+OZZ54ZuLaxsRFHjx5FQ0MD1q5di7/7u7/Dnj17hvS5\nY8cO3HbbbXj88cfR3NyMlStXorq62tWWOn78OBYtWoTLLrsMBw8exN69e7Fw4UIAROlv3LgRN954\nI9ra2lBdXY1Vq1YNtHXaPxs3bsR1112HtrY23HTTTQM/u/7669HS0oK//du/xZVXXone3l6fd9rA\ngMCQvkFk+OMf/4gDBw6guroa5eXlqKys9FXZaWlp+Pjjj9HV1YX8/HxUVlZ6XvvP//zPyM7ORmVl\nJc444wwsWbIEM2bMwIQJE7BkyRLs2LFj0PX/8R//gczMTFxwwQW4/PLLsX79+oHfURJ+7LHHsHLl\nSpx77rlIJBK4+eabMXr0aGzbtm3I+C+++CKKiopw9913Y9SoUcjOzsZXvvKVgd8vWLAA3/jGN5BI\nJPCtb30LO3fu9Hwt8+fPR3V1NQBgzJgxAIB58+bh6quvRnp6Ov7xH/8RJ06ccJ2HgYEThvQNIsPa\ntWtxySWXYPz48QCA6667ztPiycrKwvr16/Hoo4+iqKgIS5cuxWeffebZd35+/sD/x44dO+j7MWPG\noL29feD7yZMnY+zYsQPfT58+HQcPHhzS5+eff46f//znmDx58sBXfX2967V1dXWYOXMm0/zGjRuH\nEydOoL+/3/XakpIS358lEgmUlJS4zsPAwAlD+gaRoKurC7/+9a/x5ptvorCwEIWFhfj5z3+OnTt3\nevrTl1xyCV577TUcOnQIFRUVuOOOO4TGdtonLS0t6OzsHPj+888/R1FR0ZB206ZNw7/+67+ipaVl\n4Ku9vR033HCD67V//etfmcbnnS9AFhWK/v5+1NfXu87ZwMAJQ/oGkeCFF15ARkYGdu3ahZ07d2Ln\nzp3YtWsXFixYgHXr1g25/vDhw9iwYQM6OjqQmZmJrKwspKenM49nz5hxy5750Y9+hJ6eHmzZsgUv\nvfQSrrvuuoFr6fV33HEHHn30UWzfvh2WZaGjowMvvfTSoKcGiqVLl+LgwYN46KGH0N3djePHj2P7\n9u2e4/Pi/fffx/PPP4/e3l48+OCDGDNmDM4//3zpfg2GPwzpG0SCdevW4dZbb0VJSQny8vKQl5eH\n/Px8rFq1Cr/61a+GWB39/f144IEHUFxcjNzcXGzZsgWPPPIIgKG59G7K2Pl7+/cFBQWYPHkyioqK\nsHz5cqxZswazZs0acu0555yDxx9/HKtWrUJOTg7Ky8tdFygAyM7Oxuuvv47f//73KCwsxKxZs1BT\nU+M6vtec/a795je/ifXr1yMnJwdPP/00fve733EtggYjFwlziIrBSEZNTQ2WL18+yC6JO+69917s\n3bsXTz31VNRTMUhBSCn9W2+9Ffn5+TjjjDM8r/ne976H8vJyzJkzZ0jGhIGBAT+MTjOQgRTp33LL\nLdi0aZPn719++WXs3bsXe/bswWOPPYbvfve7MsMZGGiB6jILuqGjNITByIG0vVNbW4srrrjCdWfi\nd77zHVx00UUD2Q0VFRV46623BqWrGRgYGBiEhwydnR84cAClpaUD35eUlKC+vn4I6RvVYmBgYCAG\nXt2uPXvHOSEvgqepcXH76u21sHSphepqCx99ZGH1agvTplloatIz3o9+9KNQXtcll1i4/HIL558f\nzfv6wAMWcnIs3Hijvveiv98CQL56etTN/dNPSZ+33qqmv6oqC4sXy30uPvuMzGnTJrE5HDxI2m/c\nKP4+r1nD33bRItKWp813vvMjABaOHWNvc/HFfOMcOWLhqacstLezXf/AAxYuukjdZ4z1SwRaSb+4\nuHhQVkR9fT2Ki4t1DqkcDzwAtLUBv/kNcMYZwL/8C3DttcD3vx/1zMTR0gJs3QqsXw98/jmwb1/4\nc9i8mbyXW7fqG2PfPqCwEJg2DaitVdfv//0fMHo0sH+/fF/9/cAHH5D3wbY/jBsbNpB/RefU0ED+\n/e1v+du2tZF/P/iAv+3mzcCUKXxtjhwh/9I5s2DyZL4xfvtbYPly4I9/ZLu+qQlIlQQwraRfXV09\nkMe8bds2TJo0KaX8/KYmYPVq4IkngMzM5M/vvRd44w3Ap8BirPHGG8DXvw5kZQEXXghs2RL+HHbu\nBK65hixAR4/qGWPHDuD884HZswlRq8LevcAVVwCffqqmr5wcID+fj8ScOHAAKCgAXOrEMbcHxP4W\n9fXkX97kPFofLjubr50I6Y8aRf49doztenod6/WU9D0qacQKUqR/4403Yv78+fjss89QWlqKJ554\nAmvWrMGaNWsAAJdddhlmzpyJsrIyrFy5Ev/93/+tZNJh4cc/BpYtA8rKBv88Oxu4807gwQfVj1lV\nVaW+Uwe2bgXoGR1f/zq7mlGF5maiDk85BZg715ssZN+Lujqi8isq1JL+vn1ksezsJK9FBg0NZI55\neUBjo/d1Qe/FkSPAV78qR/qVlWKkX1cHlJYCra187dragIyMJImzIj29CpmZyYWKBU1N5F+fck2D\ncPz44H9Z+u/uTo4TZ0gFcu3lab3w8MMPywwRGY4eBZ580pssbruN3CS/+AXwZeFDJQiD9D/6CPjB\nD8j/zzkH+OUvtQ85CJ9+St67tDRg1ixCoosWDb1OBemXlgJjxwIffijV1SDs2wdceSVQUkJIOydH\nvK8jR4i90dsLeFSVBhD8XjQ1AQsWiNkzACHQM88EbGX9mVFXB5x+Or+909pK/j719cCJE+z30ahR\nVSgr41P6jY1kYW1pYbteROknEsAXX5CntjjDlGHwwJNPkkf4ggL33xcWAnPmAK+9Fuq0pGFZxFqh\npeip9RHmY+kXXwDTp5P/T5tGvtcBqvSLioBDh9T129AAFBcTsuZVqU5Q0s/P9yd9ln7Ky5P+Oi8a\nGsjnWUTpHzxIPke8Sr+1lXjtvO9jRwcRC7ykf8oppC0Ljh8niwSP0p82Tf7zEAYM6bugvx945BFi\n4fjh+uuBX/86nDmpArUQ6GI2cSIwYULSlw0DlIwBovR0BcC++IL0n5/vb53w4uhRIDcXmDpVHenn\n5cmRflMTsSFFSb+pKblo8J7Fcvw4eY/7+4nFwYrWVmDSJP73sb2dPGWxvta+PmLDTZ/OTvrHjpEx\neJT+tGlAVxfb9VHCkL4L3n6bBDnPO8//uquvBl58ERA8zzsS7NlDVJI9c7aiAti1K7w5UNsF0Kv0\n6+vJjStLqHZYFiGQ3Fy1Sl9mjpZFSOfUUwkRimTytbcTAp40id0CsbcdP54ICJ5Fp62NjDdlCp8X\n3t5O3i/WbKfOTpJtNXEin9IvLmZT+pZFFrDiYkP6KYtnngFuumkwMbqhoIDcaO+9F868VGDvXjJn\nO8rKAI/S71oQBulbFiHUvDx568SO48dJJsjo0fxk5QY76Ys+jVDymziRzIuV2Ow4fpwkKEyZwm/x\ntLeTthMn8lk8ra2kzeTJfO3a28nTASvpd3UB48YRIcej9IuL2ZR+dzf5TGRlGdJPSZw8SYJhy5ax\nXV9VBXxZMTclsHfv0Gyk6dNJvn5YoLYLQG6sAwfE1Kkfjh0jgUF6M1oWIQtZUGsHUGvv5OaKp67S\nOSUSRDnzeusAIf3x40lQWoT0x48nY/MofWrvjBvHR5YdHWSRZCXwri4SzOchfR6lT4PQY8ca0k9J\nvP46sTuo5xyEVCP9ffuiJ/1Dh0ggHCA3yqhR7N4pK+zknEioU/vU2gHU2Tu5uYQ0WYOGTrS3k7gM\nwG+x2PsYP56PGCnoUwLv2JT0x45lV+108eaxd0RIn0fpG9JPcWzYQDYNsWLBAmDbNr4AVpTYvx+Y\nMWPwz2bMCI/0+/sJ0U2dmvzZ1Knq85vtpA/I2SfOfmmKpop5HztGiE+W9OkGJ161TUGVvgjpy9o7\n48axE3h3N8ntnziRz9PXqfS7ugzppyz6+0lg9oor2NtMmkQCo6ni69szZyjCVPqtreTmozskgXBI\nPyeHP0AZ1O/EifJPKJRsVZE+L/ECSfWcnS1P+jwLTmcnGY+H9Nvb+dvwevqWRf6uRUVG6Q977NhB\nHpOd9kcQzj8/NUj/5Emisqm1QlFURKwP3lQ9ERw+TFS3HWGQvqjX7URzc1LpT5ighvSzs0lfUSn9\nri6yCGdkEGLkrQFEx8/O5lswqO3CS/rZ2fykzzNOTw/5NyeH7fUY0k9hvPgisHQpf7tzzhHbyRg2\nGhpIxpHzKNX0dOJPq8xl90JT02BrB1CbUklBvXIKVaR/7BhRtABR5zKk399PSCIrixBZe7t4uqWM\n0qdPGwAhRlGlz0t61BbhCeR2dCRJn3WevPZOdzfJgho9ms22PXGC9G9IPwXx+9/zWTsUqUL69lRJ\nJwoLyc5K3YhS6YtuXLLj2LEkQcqoc4AQ0LhxpBxFRoZ8uiVA/uVV6vb2MvaOCOmHpfR57B0R0jdK\nPwXR0EBy1efP529bWUnSEGUIIAzU1ZHNSm4oKgqH9N2U/tSp6pV+S8vgcrqqlL5dFVN1LlrCwt4X\nIL6I2JU+Dxna29N58JL+yZNkx+vo0fykZ1fIvJ4+jQlRK8YPvNk7J04Y0h8ReO01YPHiwSWUWZGZ\nSQpOqSzqpQP2VEknCgvlSvuyoqlpaP30nBz5apVOtLUlbRhAzPZww/HjyfTI9HRyo4uoc9qXvayw\naDDXSfoiKZeipN/RQdomEuEo/Y4OMkeAvR0v6Xd3ExLPyCALel9fcP+G9FMQmze7V3pkRSpYPI2N\n/gXkwlD6ra1Dq1Ly7shkgd17B/QofUDO4nH2JRojkFX6TnuHpz1V3kA4pG+vxsnaTtTTTyTY1L5R\n+ikIyyIHi8iQ/ty5pGRxnHHokHfZ1zBJf9KkwT+bPFlNOqUdbW1JRQ6oDeSqIGpgsK1C+4rC3qGp\nk7Q9j9Lv7CRtgHBInxIyz1ypp89q19jHMKQ/TPHpp+RDccop4n1UVqo5SUknGhu9SV9FSQEWhEX6\nOpW+fTGRSduMi6dvV8+89o69rQzps7Zzkj6PvSNK+idO+F9vsndSEJs3AwsXyvVBSV91DRmVOHTI\n295RUVKABamu9HXaO9nZ0ZA+JUUgXNKnbWXsHValT8t9sFTEtZP+mDFG6Q9LyPr5APGps7L4jnAL\nG35Kf7iRvlPpq9hIRftVZe84A7m8hcco7L56KpE+HZcne4eXkIGkBcWbjQMYe2dYoqeHHAx+8cXy\nfcXZ4unrS5YadkNYpN/SMpT0s7PJjaXyXAJn9g5Nr5SF096R9fSdpM9L2MBQTz4VSN+y5D19VuVu\nV/o9PcEptryePs3eGTMm2AqKA0Y86b//Pik45kwjFEFlJfDJJ/L96MDRo4QEvVJSc3NJ2qTuYxPd\nlL5MSWA3nDhBSIXeuECSzGRen71GDQVv6QE77GQNiJO+nbRFUjZFMmLsbenYPKTf00NSXtPTxe0d\nXuWeSJDPf1Buv2ggly4qcceIJ/233wYuuEBNX3FW+n7WDkBuhqwsNbtWvdDfnzwtyQmVFg+1duyH\n4NCcehFSpejoICSQkZH8mShRA8msEntfIvaAk/RllD6vWhVV+vYxWckb4CdkgDwN8LQRIf2xY8k9\nFPTk0d8f7nnUbhjxpL9lCymPrAJxJ32vIC6FbounvZ2Qkp00KVSSvjOISyFTyRIYqswBsbIF9v4o\n8QFySt+efSNL+jxlwlWQPrVpWJIgROwderIVoI/0WZX+li3kDI4oMaJJv78f+NOf1JH+rFnkDNo4\nwi9Hn0I36btZOxSyhGyH03enkPX17TnpFDJK39mf6JOIrNK3E3dYSt/eLi2NTSUDyd2yAJ/Sp6TP\nslDwWkh0UcnIIJVq/Ravnh6xXf8qMaJJ/5NPiJcdpIBZUVBAbjidFoko4qD0/UhftniZHU7fnUJ2\nYXHaMYC80ldh79h99VS0dwBCmqz+fNzsHUrkiQQhfj+139trSD9SbNmizs8HyB+9rIwcSRg3jCSl\nb6/PYocupS9K+m6evqzSp/YMj29sb5+RQZQq69kKbqTPYtM4SX/0aP4cetY2dqUvQvpBi6BdvQc9\nSfT0uNubYWLEk74qa4eirIwcPh43uJU0diJq0ld1Tq4X6avw9O1EBYh56F79iZB+Xx8haEpqtPAZ\nbwYOJW6AT+3b26ans9s0zjFFdsuyPh04Pf2g+fHuBbCr9yBf3yj9CGFZJHNnpJC+81xaN+gmfbcc\nfYpUVfqq7R1Ra8aeqcSTDWPvg4KH9O1BZJ6x7ZYLTzuRlE2np6/D3qHqPWjRM0o/QuzfT4h/5ky1\n/caV9J2HirghDKVvr3Fvh0rS1+Xpqw7kOu0dkR2dTsIG+DNw3Eiftb2MYrefk6yrGBrAb+/wLiw8\n9o5R+hGCWjt2haQChvS9EVYgV5fS1xHIlbV33EifxYf260PU3gHY0yjtRAyI2zsinj6PvcMyLzuR\nB23+Mko/Qujw8wFD+n6IOpAbN6Wv0t6xg9feUeXp84xtJ1aAncBF7R2eOICMvWOUfoyhi/SLigi5\nqajzogq9vSRI6kW4FFGTvu5ArowqB7wDuSqzd0TsHTvpAvKePs+Tgj1dlGdsFUpfxErSmbIJmOyd\n2KKxkWSznH66+r7T0oDp04HPP1fftyhaWkhZgvR0/+t0nGBlR1hK38vTl1HlQDwDuU7SBdR4+mEr\nfVHS15GyyUPiAJ+9Y5R+RNiyBfja14JJUBQzZsSL9I8eZSsoN3EiWSB0nQnQ2jq48qUdYdg7Okhf\n1t6xk63IebsqPH03e0c0kMuaRimj9Ol4ImOxkLid9FkKtPHYO0bpRwRd1g7F9OlAba2+/nnB4ucD\n5GZKT9dXE9yrPAIQTiBXlvS9ArmdnfwLJSUSu+qjZMvTlwpP36m6eZW+U7HzbrKi7XTsyLWswSTO\nq/QzM4M3qpnsnRSAbtKfMSM1SR9QW+LYCeehIXaoVvq67B0nwdLywLxnAbgtIGlpwdv43fqRIX3L\nkiN9u/LmGTssT5+OQ7P0eLNxWP4eJnsn5jh2DNi9G5g3T98YcfP0eUhfp6/vPB7QDpWBXPtJUnbo\nsHcAQrq8h2e4BWABeT8e4CP93l6y2NitTl7St5M3zy5Zkeydnh4+q8a5uLDaO/bNVirtHaP0I8DW\nrYTw7R8E1Yib0j9yJB5Kv73dn/Tb29XEE/zsHRnryov0x4zh79fphVPI+vF0PjykbSdf3jmIKnaZ\ndjxWjcg4Ip6+yd6JMXRbO0DqBnIBfaRvWd62C0BuhFGj5JQ4RZiePiB2TJ4b2Yr05SxnAIgfSiIy\nB7dyCro8fRF/PgzSd9o7RunHDCpPyvJCfj4hzrgckhwHT5+eOuWXMaUqmKvT01dl73iRvkgQ1vnU\nqoL0edqHpfT7+ogVlZaWbMNr74iQOK+9Yzz9GOHECWDHDuCrX9U7TloaMG1afNR+HEjfz9qhUBXM\n1enpO/1zQMzeUaX0veyZqJS+qKfPq8BZx3KOw0vi9GAU1nkZTz9meO89YPZsb4tBJeKUthkH0vcL\n4lKoCOZSGynugVw/T59H6TuVLBCup69K6fPmz7OOJaL0ddo7RumHjDD8fIpp04C6unDGCkIqkb6s\n0u/uJjeV242li/SHm9JnOeuVIkxP3565A7DV7g+D9HnsHaP0Q0aYpF9SAhw4EM5YQTh6FMjJYbtW\np70T9ISlwtP3CxbznOzkhjACuSJKXwfpx9HTt2fu0HkGEbJu0qenjJnsnRiirw945x3g618PZ7zi\nYqC+PpyxguBXx96JVFf6XtYOQGItvCmRdoQRyBVR+qoDuaw58/39Q5VrmJ4+C4E73x9Wu4Y1T7+v\njyQn0M1fJnsnRvjoI6CwMPj0KFWIi9Lv7iYfTLcApBtSnfS9grgUKmvlUKjO05cpoUDnI+Pp826U\nEjm1S1aBs7aRHScokOtU7iZ7J0YI09oBCOnHQem3tREiZz0sZvJkUnRNNcIK5PrZO4A46ff3Dy05\nQBF1nr5qpc/jy7uNLdI2LNLnzcZhKavgfNIZ9kp/06ZNqKioQHl5Oe6///4hv6+pqcHEiRNx1lln\n4ayzzsJ//ud/yg4phLBJPy72jl85YzdE6elnZ8vVuwf87R1AnPRp2YQ0lztG5JhDlXn6Ojx91pLF\novEAt1RP3uwdXQsFD+nbrSB6fdw9fanh+/r6sGrVKmzevBnFxcU499xzUV1djdmzZw+67sILL8TG\njRulJioDyyKk/7OfhTdmTg5RbEEkpBtxIX0WpZ+VBTQ1yY2jk/Td/HxATOk7q1OK9qUrkCuj9HkP\nNgHYyTiMpwPeAmrO/v2eJFJe6W/fvh1lZWWYMWMGMjMzsWzZMmzYsGHIdZauAu2M2LuXfFimTw9v\nzEQiHr6+Xw17N0ycSNqo/pOxkr6s0tfl6XsFcQHxQK4Kq8iNeMPy9GUWHGdbVqvGTph0d3dfn3cb\nUaXPGsh19h9UlTPllf6BAwdQWlo68H1JSQnefffdQdckEgls3boVc+bMQXFxMX72s5+hsrJySF/3\n3HPPwP+rqqpQVVUlM7VBCNvaoaAWz6xZ4Y9Nwav0R41K1sBR+YTS3g7MnOl/jQrS1+XpewVxAbV5\n+qlk76hU+izpl06CBZKk7FXew6msWVIweQK5bvaOzjz9mpoa1NTUiHcASdJPMEQHzz77bNTV1WHc\nuHF45ZVXcOWVV2L37t1DrrOTvmq8/XY0pB8HpU8DuTyYNIkEc1WSvl8tfYpx4+Lr6fsp/TFj+IPf\nqpS+jkAuj9J3js26scstq4bX06ftenrc30vahoeUnfV9RJQ+T7YPL5yC+N577+XuQ8reKS4uRp1t\n22ldXR1KSkoGXTN+/HiM+/JuWbJkCXp6etDc3CwzLDeiUvpxyODhVfqA2lOsKFjtHdkqm37kDMTH\n3vHy9OOi9EUsGtqWNd1TNijL0o53HN4nA9n+o4AU6c+bNw979uxBbW0tTp48ifXr16O6unrQNY2N\njQOe/vbt22FZFnJYt4cqQEMDIT5HbDkUxCGDR5T0VR1oQsFScE2FveNnwwD6Arki9o4qTz+qPH03\ne4dFsQPutXfiQPq8TwZu9o5Opa8CUsNnZGTg4YcfxqWXXoq+vj7cdtttmD17NtasWQMAWLlyJX7z\nm9/gkUceQUZGBsaNG4dnn31WycRZsWUL2YXrlmqnGyUlwBtvhD+uHa2tQFERXxsdpB9WILery//s\ngLFj1Xv6UZZWjtreEa3b40bGLPaO2yKjmvRlrg8K5MZB6UuvOUuWLMGSJUsG/WzlypUD/7/zzjtx\n5513yg4jjKisHSA+9g5P9g6g9rxaChZPXxXp61L6YQRyoyi45vy7yGzO0mnvOLN3WNqJeO48KZgi\n10et9If9jtwoSd/YO0mEqfR1kL5X2QRAbZ5+2AXXvIKxMkpfxN4R9fRZCpzpVu52Ek8FpT+sSb+l\nBdi/Hzj77GjGz88HmpvZbgJdEMneUXlIOQWLpy9b+hiIhvRTOU9fhrhlPH3e8gVubeh4KgOzbiTe\n1+e9b0U2ZhAFhjXpv/UWMH9+dCtrejpQUAAcPBjN+EA8sncsi60MQ5wDuUFKX2Wefpj2jqzSF2lr\nWYRIeQKmgHggl2cc5xiJhL9657WPjNLXjD/8AbjoomjnELXFEwd758QJ74NN7Bg7NlkVVBR+WTZA\nvJS+l6cfZiBXh73DSt72bT5xSdnkHYN3c5ZR+prx5pvRk35hIXDoUHTji5C+anuHtf5QIiFv8UTl\n6YuUVtal9DMzycLJsnjKkj6vxy7TLorsHdrGS72PuNo7cUZTEzmuMCo/n6KwMDp7p6eHEAjvzlrV\n9g5P0TnZDVqpEsj18/RZVXpfHyn57FSOiYR4XXuAb3OWiKcvotjpeGFvzgL47R2j9CNCTQ3J2on6\nDS4oiE7pt7WRdE3WWvoUUSl9QL4UQyoFcmWVPiVdt7+vDOlTtdrf79/WTXnrUuy0Xdibs4La8G7O\nMkpfI+Jg7QDRBnJFMncAPUo/KIhLIRvM1RXI9VLmgPo8fZmNVRQypJ9IiCtv1nNrRdrF0dM3Sj9G\n+MMfgIsvjnoW0Xr6In4+oD6Qy2vv6FT6IlYMoF7p+x2XyKv03SBD+rQ9izcvqvS9iNWvpLeKlE2a\nXcOaghk0hvH0Y4KGBuLpn3lm1DOJ1t4RJf0o7R0VpO+XvSNyyhXgT/r0RufJOtKt9FkXNy/S103e\nbk8X6elT5zPyAAAgAElEQVTBu1lFArl2ZU0raHr9rdxImcfe8VP6NFXVqwx0WBiWpP+HPwAXXhhN\nvR0nogzkyij94RrI1UH6iYSa8gkAn9LXZe8A7Fk4buQdZHG42Tt0TJXWi0gbN/vFL/eexz6iCwRv\njE01YkCL6vHGG/GwdgAgLw84ckQu91wUInV3gNQN5Pb1ueeO2yFj7wQtJjz9+h2XKJNjTxEG6bsp\nb9qWl4iB4MwfFdk7QW102jtx8POBYUj6lgW8+ipw6aVRz4QgM5Oo7SNHwh9bVOmPG0cIw+9Rmwdh\n2TtUjfspKR1KH+AL5tLTmfxq77AcVxkHpe+l2IPq4biNqZrARdrIbs7iSe+MCsOO9P/yF3IDlpVF\nPZMkovL1RbN3Egm1Fk/QubV2yJB+kLUD6CV9ngCsc0cqRVoaIQ7RHbG88xElbsBf6fMqdkCcwHkK\nrgWNo1PpOxeIqDDsSJ+q/Kh9Mzui8vVFlT6g1uIJy9MPCuICyd2qvE8xQaTPs5j4KXSA3eJxK3hG\noULpB7X3I29eIqZj8rZTHQdwI2ZVKZtG6WvCpk3xsXYoolL6MqSvMm0zLHuHReknEmpTLCl4lL6X\nn0/BGsyN2t6R8fRF7R3e7B3ebBw3YvYL5PJszjJKXwM6OoB3341PEJciqg1asqSvyt4Ji/SDNmZR\n6CB9nj79NnoB7Eo/KJDLWuI4bE9ftb2jcoetzs1ZRulrQE0NcM45wXXbw0ZUG7REs3eA6Owdmewd\nFqUPiBdIUxXIDbJ3VCh9mfLIdA66PH1Re0dV9g5PCmbQGG6k77X5yyh9DXj1VeAb34h6FkNhlH58\n7B1ALJjLQvoqNlXx9OUXyJUpmkbbiyp9Fk8/rtk7spuz/DZ/GaWvAXH084HolL5o9g4wfAO5gPjx\nhn6kz7OpSqWnL2Pv9Pd7q89Uyt7RvTlLlR1klL5i7N1LSGrOnKhnMhSpqvSHYyAX4Ff6lsWmzlV6\n+mHYO5S03TLdZD19kc1ZcdmR63Y9rx3kdr1R+oqxYQNQXR2P0gtORKH0+/oIeYrGN6K0d0SVPk8g\nl4f0/UoYU6i0d2QzbwD2lEu/9iJlGFja+tk7vO3CIH2/4Kybeve63ih9xdiwAfjmN6OehTvGjyck\n3N4e3pjHjpFxRRfBKAO5MvYOayCXt2SCnzIH1NXMAfgOJpdR+rKkr7KcAm2nWumLePS6ngyM0leI\nI0eAnTuBhQujnok7Eonwc/VlMneA6OydMEifV+mzkL7qPH3ZQK5oaWQK3UpfxN4Rzd7h9eh5D1Fh\nfTKIQ1llYJiQ/osvAosWBd+YUSI/Hzh8OLzxZPx8gCj9KOwd2ZRNlkCuLtLnsXeCgsKyO3JV2DtB\n7XVszlJZUkGkjc7Arym4phAbNgBXXhn1LPyRlxcu6ctk7gDqlL5lxU/px93e4SH9KO2dVNmcpSsw\n63W91z4Ao/QVoaODHI142WVRz8QfeXlAY2N448kqfVWkf/IkOTSC9cMuQ/q6Armq7R2VgVxd9k4U\nm7PCKrjGu2s2KJDLuhAZpa8Iv/89MH8+kJsb9Uz8MVLtHZ4Km0CSPIMO5XZDlEqfx95R5enrtnfC\n3pwlkvXjZyXREta6C665XW+UvkY8+yywbFnUswhG2PZOXJQ+j7UDkGwjkdo4QLSBXF57x68/1t20\nUds7op5+WPZOX19yhyxrG50pnkbpK0BrKzkaMe5+PhCNvSOTvaNK6fOSPiBu8UQdyFVp78jUzWHt\nIypPX7W9w2O9BLVRVbbBKH1NeP55UlFThtzCQqrZO1EpfUCc9Fk9/eFk78jU3vEibdo+ioJrKlM2\nvZS16h25rJuzjNJXgGeeAW68MepZsCHVsndGjya+OiuReUGU9EXSNlPJ3tEdyI0ye4dlc1YYKZsi\nTxQ8O2z95mSUvgbU1QF//jOwdGnUM2FDqmXvJBJqLJ6w7Z1Uyd7Rnaev297p6yOB0vR0/rYiZGxZ\nZEzZYmgibVRtzjJKXxK//CUJ4LJ4uHFATg6xS/weX1VClvSB4Uv6Uds7ccnT97JnaHu/OVBy9CrW\nprrgmtd4UZM+z+Yso/Ql0NcH/M//ALffHvVM2JGeTtJKjxwJZzxVpC9bLyiOpB+1vaOyDENUKZs6\n2vrZO6oIHNB7iAq93qv2jlH6gnjjDWDKFODss6OeCR/CtHhks3eA1FP6nZ2pU4ZBd8E13Zuz/IqH\niXjztJ1u1R7URkWBNlN7RwMefzy1VD5FmMHcVLZ3RMsrR23vhO3pRxnIlWkrYu+I5PaLpmy6BXJ5\nsneM0leM/ftJ2YWbbop6JvwIK22zv5+Q9YQJcv2kmtJPFXtHpacflb0TFA8ISr0My95RlbKpYnOW\nUfqCeOABovJlCS0KhGXvtLcT4pRVFdnZ0ZG+zpTNqAO5YeTpq8je8ZuDTI5/nO0dnZuz4qL0YzAF\ndhw9Cvzv/wJ/+UvUMxFDWPaOCmsHSC2l39tLvrxIzA4Rpe9H0kB0Bdd01MOn7YMycFTbO0FkzHuY\nelTZO35KPzvbvZ8wkVJK/5FHyOlYRUVRz0QMYdk7I5H0aQkGvyMNKURIP+gJQmXtnTB35Mp4+qKB\nXJHDV/ziACotIZGCa6lWZTMGU2BDayvw0EPAli1Rz0QcYdk7KjJ3gGhJv7mZrw2rtQPoq6ff3U02\nEQUtPHHK3vF6XTo9/VSzd/wCuV7ZO2ZHrgL89Kfk4POKiqhnIo6RaO/wllYGxJU+K+nrCORmZBCy\n9yIHZ3+pYO+IKn0d9o5I9o5ue8ey+J4MjNLnQG0t8OijwI4dUc9EDmGRvmzdHQpVSp/Xx9RN+mPG\nkOtZVDnARvq03xMngtWcCk/fsvz7SU8nWVx9fe6lEgC92Tui9o7IRitaEsL5t/RS1qo2Z/X2kvfW\nbZewUfqSuOsu4O67gWnTop6JHKi9Y1l6x4mT0g8rT5+H9DMyyM3KWhKDh/RZvXhZT5/Wivci9EQi\n2OKJytP3U+B+/rzbXBMJ/lo3Ip4+D4mb2juSWL8e+Owz4J/+KeqZyGPcOPLBVVGy2A+qSD/KlE1e\n0mfdjUvBY/GwZO8A7MFcFUrfL0efQmaDFQtxh52947fIeJGsKk+fd1ExSl8QtbXAP/wD8PTTbDdd\nKiAMiyfVlb5Inj6P0gf4TufitXdY+lNB+kH3BEuuvS5PXyTdU8TeAfSTvl/e/YhU+ps2bUJFRQXK\ny8tx//33u17zve99D+Xl5ZgzZw52MBrzbW3AFVcA/+//AeecIzvL+CA/X38Gj8rsnVQpuMZL+tTX\nZ4FKeyfIiwfkg7Cs/cgEY3UsGCI7cmm7KJQ+b5mHYaH0+/r6sGrVKmzatAmffvopnnnmGezatWvQ\nNS+//DL27t2LPXv24LHHHsN3v/vdwH5bWkid/Koq4ucPJxilH4wwSJ/X3mEhfRZ7hwb/vLx42o8K\npS/j6VPi8oo/hV1wLSiGoIL0eWv2eyl3r0DxsFD627dvR1lZGWbMmIHMzEwsW7YMGzZsGHTNxo0b\nsWLFCgDAeeedh9bWVjT6SN333gO+9jVg3jzgwQfZsitSCWGQflyyd+iNz7JL1g5RT59X6Udh77CQ\ndWYmIZ/+fu9r/IqtUcjYO2lp/lkuOjJ/olb6vNk4Iv3HQelLrTsHDhxAaWnpwPclJSV49913A6+p\nr69Hfn7+oOuWLr0He/YABw4Ad91VhR//uEpmarFFWPaOStJnTW10QkTlA3I7clnBo/SDsm0oWOwd\nlqBwIpEkbK+FTEUg1y8Ya2/vRlSim7O8ctuD2vmNx0uyvIuEiL2jS+nX1NSgpqZGqg+pKSQYmcBy\nPCO6tSsqugfXXANcey0hm+GKvDzg//5P7xiqSH/UKKL4WEnPibBJPxXsHRalT/sKIn2d9g6QJH23\nv6FoPIASnxt16Mje4bVfVJC4ziqbVVVVqKqqGvj+3nvv5e5DivSLi4tRV1c38H1dXR1KSkp8r6mv\nr0dxcfGQvh57TGYmqYO8POCtt/SOoYr0gWTaZhSkz/OEIRLIZbF3LIs9ZZPV3mFdQEStGQoZe4e2\n582bl2kXdcqmSN592EpfBaQ8/Xnz5mHPnj2ora3FyZMnsX79elRXVw+6prq6GuvWrQMAbNu2DZMm\nTRpi7Ywk5OUBTU36+rcs4umryN4B5Hx9UdJPTyc3DmupYkCf0qc3dhrDnaLK3gGCrRnWlE0VSt+r\nrUggVyQgC4RD+qry7uNeT19q3cnIyMDDDz+MSy+9FH19fbjtttswe/ZsrFmzBgCwcuVKXHbZZXj5\n5ZdRVlaGrKws/PKXv1Qy8VSF7kBuRwe5WVV9uGTSNkVJH0iqfdYnjM5OYPJk9v5ZSZ/V2gH02Dte\nYAnkqrJ33OCn2Gkw1K0EhB95i5ycBaglfRV598O+9s6SJUuwZMmSQT9buXLloO8ffvhh2WGGDXST\nvqrMHYoolD6QJP2cHLbrddk7rMqctU9VpM8ayNVl7/iRsL2t828imuopqvTdFmzebBxax6i/f/AT\nn98iYXbkGgwgJ4cQM2vdF16o9PMBOdIXqbBJwRvM1WXv8Ch9FntHlacftb3DmvnDM2aQvcPbTkS5\nu11P6/s4iVwkOygOSt+QfshITwdyc4EjR/T0HyfSV6H0WaGrDINqe4enjk+c7Z0gpe+l2oNsIYDY\nQm7twgjkepGyWxtTe8eAGTotnpFK+iKbs3Qo/bjZO1EqfTdiZVkseAhcpI3oGE4iH7G1dwz4kUqk\nL1NpM2ylr2Nzlg57RxXp69yRS9vLevpOiNpCUZO+G5Hzbs4ySn8EQzfpq0rXBKLL3snK4qu0qTOQ\nqzp7h6U/WZVO5xNHT19E6avO3uEJ5Hq14d2cZZT+CIZO0h9u2TusiEsgNyxPP+pArg5Pn7bTbe+k\npydP27LDT4m7ETnvomKU/ghGKtk7sqTPe1QiRVxIn6cERZj2jmzBtf5+/8Alba/a3pHx9FVl73id\ntuWnxN3GMCdnGTBjpJB+e3t4pM97claU9k5YgVw/e4eSqF+Zi6C8+aAzAXjJm46pW+l7tQny9Fnt\nnbhX2TSkHwFGCumPRHsnVfL0gxQ3S3sdnn4YgVyvNqquH9a1dwzEoLP+TpxIP0ylr5P0Ve7IVZmn\nL7MjV/bkraD2fp5+1CmbtA3rZive6+Nee8eQfgRIpeyd7Oxoa++wwLJSK3snrIJrfvaObtIX2ZEL\nhJO9A/B7+jzXuy0QbmUcokIMpjDyMFKyd2SVPmvKJr0ZeVRUqufpswZyRVMuaXu/Amgim7PipPR5\n7R2ZzVlU5cfhJEBD+hEgO5ukjPHkobMiTvaObJ4+q9Ln3ZgF6CnDEGY9fdmCa3FV+iIB4LACuTKb\ns+Li5wOG9CNBIqHH17csPZuz4u7p81o7gJ4yDGHW3omDvaM6IAuIxQKiDOSybs4Ket1hwpB+RJg6\nVb3F09VFPEORU668YD8nlxdhefoipD8c7B2dSl22vRd5i3r6YQVy/Tx9VnvHK6ffKP0RDh2+fmsr\n30EiLMjMJB9WFivEDsuKN+nHPZCru/ZOGPZOmJ4+79MBrxrn3ZzFukBEAUP6EUEH6be0qPXzKUQs\nnhMnkguGCHhIn3djFhBtGQYVtXdU5OnLkL5M4bQ4ZO+oCuSybs4ySt8gZZQ+IJa2KePnA+Eo/e5u\nkkbnh1S2d+KaspmKm7N4ngyo0rdbokbpGwx7pR930k8kgokV4Ku9Y+ydJHQUXNOdvaNqc1ZaGvmy\nHwZjlL5BSil9EdKX8fMBvjx9EdIH2Cwenh251Mf2e3pQlbIpm6cfV6UfViCXp5YOvZ63QJu9f6P0\nDYzSDwBPnj7vqVkUrKTPqvQTiWCLR2XKZtztneFUcI1ncxYwdJEwSt/AKP0A8No7vIFcQG3glSLI\n4hkO9o5MWea4KH2dm7Pc+jdK38Ao/QDQG8SrDIAduu0dHtIPWkhU1d6JMk+fqnWRsswyWT+8pM+b\n8cND4nROrHn9RukbYOpUsiM3KHuEBzqVPm/2jqzSB9jVvijp61D6QfZOmKWVddk7MmWZZY5L5Ank\nWpZaEue1d4zSNxiC0aMJKba2qutTl9IXORxdVukD+klfh9IPsnfCPi5Rh73D2jZKT7+3lxyL6FXV\nkncDlYi941T6hvQNlNffUV1sjSIKTx9gJ32RzVlAvO2dINJnmZfsISqipRT8xtbh6bstMCI7f1Vt\nzgKGLhKm4JoBAPW+fktLfAK5qpQ+S9pmqtk7sqTf309ywINIW5e9w1qWWdTTd5JxXx+JH3ipdl4C\nF2kjUrbBKH2DIVBN+iNV6aeKvUN3abIoPj/Sp+maQbXZqVJ3K5YnU8aBZcHwe0rgrbKpmsC92vgF\nW3k2ZwFG6Rt4wCh9f7Dm6seJ9P2eHijRshyk4efHsz4tpKV5H92nm/RVevphkb6I0mddJIzSNwCg\nlvT7+gjRTpigpj874q70RTdnBdk7PMrc3qcsWQP+1oyKflhJnzeTxt5WlacvUo45iPR5A7myi4RR\n+gYA1JJ+WxshfB1ncIqkbIadvaMjkMtTd4fCz94RIWtRa4ZCVq2rbpuqSp/X3nH2b5S+AQC1pK/L\nzwfEUjaHg6fPa+0AwfYOa39paSTl0E1p88zLyyaKq6fvNmaYnr4ue8cofQMAaklfl58PRJu9E+Xm\nLFHS97J3eIq3Ad7B3DDtnZGm9FVtznKrvWOUvkHKKP0oPX2dKZs6lL4qe4f2JUv6XuQrS/osO3J5\nSyMA0ZO+rs1ZRukbAEgtpd/ezndObphKX1cgV4e9EwXpR2HvyByMHgbpiwRyZTZnGaVvAADIySEB\nWJaiYkHQqfQzMsgHluV4QQoVSp8nZVNHIDdqe0dGpVPI2Dteef4sm7NEd/O6PSHoyN5R5ekbpW/A\nhbQ0IDcXOHJEvi+dSh/gz+BJBU8/CnuHZ5467R0WtU7z/J0KV7fSjyqQG+TpyywSRukbDECVxaNT\n6QN8vr5lEdKPe/ZO2IHcri7+3b1ufYWVvUPbO0lYZnNWWKpdh6fPY++4Vdk0St8AgDrS11Vhk4In\nbfPkSaISg4ghCCykb1nxUvp+C8mJE/FR+mGQfliefkYG2ZzIcxC5bKnkoOvd6ukbpW8AQK3S123v\nsJK+CmsHYCP97m5yM6Wn8/fPQvo8Hjzgb++oUvphefqAOOmLevoipJ9IuO+ADVoowtycZZS+wQBU\nlVfWrfR5SF9FEBdgI31RlQ9Ek6cfNulHae+IKH2RzVmAO8mqLLhmau8YKINR+t5gydOXIf242zsq\nsneitHecJElLQvspXpHaO27tdJdhsCz/12Jq7xh4IlU8fZ7snVRR+mHX3lEZyJW1d1iIFBAnfepp\n248DpaQadLYur73j1k735ix6MpfXazFK38ATqki/uZmkf+pCFEqfJU9fdGMWkNr2TtTZO0EElkgM\nVfus+f1hkb7OM2+N0jfwhArSt6xw8vTj6umLbMwCgpV+V5faQG4qZu+4BWRZnxKcbVmPaFRB+kFj\n8ZZVcGbj8D5JGKVvMAAVpH/sGCET2RRJP/CkbIaZvaMzkNvVxb94+fU5XLJ3WBS7W1uWdlEGcnny\n7v2CvoD7ImGUvgEANaR/9Cgp6aATcVX6MmMFKX0R6ygVsnf6+8WJG+CLB/Cob0CtvcOTGtrfT768\nUn/dyiqMOKXf3NyMxYsXY9asWbjkkkvQ2trqet2MGTNw5pln4qyzzsJXvvIV4YkOV2RnkywAlmqS\nXtDt5wP8nr4K0qcqta/P+xoZ0s/MJDe609ul6Ozkt45U2ju6sncoabMe2yiSTeM2tqinH0b2TlCQ\nmXcfwLCsvbN69WosXrwYu3fvxsKFC7F69WrX6xKJBGpqarBjxw5s375deKLDFYmEfK5+3JT+8eNq\njm1MJILVvswCk0gE2zG8pB+GvSObvUMPVmeBjNKP0tPnJeUgJe52fZC9M+yU/saNG7FixQoAwIoV\nK/DCCy94Xmvx1OQdgZC1eI4eDUfps6ZsHjum7qzeINLv6JCLH/hZPCJKPxWyd06eVPOkwNuW1dN3\nI33VSp83u2Y4KX3haTQ2NiI/Px8AkJ+fj8bGRtfrEokEFi1ahPT0dKxcuRJ33HGH63X33HPPwP+r\nqqpQVVUlOrWUgyzpx83eOX4cOOUUNeOykL6MlRRE+ryevursnba2oT+XtXdU2UMsbXk9/fT05MYn\n6q+L2jt+C7YqO8gLupR+TU0NampqpPrwJf3Fixfj0KFDQ37+4x//eND3iUQCCQ8z7E9/+hMKCwvR\n1NSExYsXo6KiAgsWLBhynZ30RxpUKH3d9s6ECUTBs+DYMbJIqEBQrr4s6fvZMaJKP+7ZO2GSPq/S\nB5IEayf9oM9TGCTuVO48gWJVSt8piO+9917uPnyn8frrr3v+Lj8/H4cOHUJBQQEOHjyIvLw81+sK\nCwsBAFOnTsVVV12F7du3u5L+SIYKpa9KWXth4kR31emGsO2dLz9iQlBt71CitqyhQcGosneiIn0R\nT5+26+lJvlfd3cFPsrpJX2QfwLDbkVtdXY21a9cCANauXYsrr7xyyDWdnZ04/qUn0NHRgddeew1n\nnHGG6JDDFqmg9CdOJPV9WKAqkAuEY++oDOSmp5Mvpy8NiGXv6EjZVEH6LAQmq/Tt4+nI3uEJzLp5\n9FEofRUQJv0f/vCHeP311zFr1iy8+eab+OEPfwgAaGhowOWXXw4AOHToEBYsWIC5c+fivPPOw9Kl\nS3HJJZeomfkwQip4+mPHkg+9WwqhEyrtHZ3ZOwBRkyqVPu3TbSERsXfc3u9Uyd4R8fTdxtRB+rKl\nmFkOeOfJ6w8TwmtPTk4ONm/ePOTnRUVFeOmllwAAM2fOxIcffig+uxGCvDzAIw7OhDCydxKJpMUz\ndar/tartHb89DLqzd0RP5JI98QpQl73jRtoySl/njlzA3RZiOc9Xp72Tnp7cwJWWFvxa3BYVnTvm\neWB25MYAhYXAwYPi7Zub9ds7ALuvn0r2jupALuCdwRNV7R0d9o4I6bMq/dGjw7F3nGP4vSf0oBaq\n3nmVPutrDwOG9GMAWdIPQ+kD7KQfpr2jM2VTtJibSnsnlbN3nIqd1eJwLlRhkT7PGEbpG0ghN5eo\nY69NPX7o6yMkq7OWPgUL6ff0kC/RImhOREX6vb3kS+RGdbN3LGvkZe+IevrO1y1yUhdrCibdN8pL\n+kbpG0ghLQ3IzxdT+62txEoROSOWF5MmBWfwUGuHpa4LC6LK06fVO0Veh5u909tL/s48GRzD0d4R\nqezJEnh2q93vR7JpaeSL1nXiXVh4lT7rexYGDOnHBEVFYqR/5Eg41g7ApvRVWjtAdIFcUT8fcF9I\neK0dr34AvieGqLN3nOTNQvqiSt/ehrVeD50fL+mzKH1j7xj4QtTXb2oi2T9hgJX0VQVxAULofjV/\nZFM2dZG+U12LnMLlNTdZpS+bvdPdzb7JSpT0eVM2nW1YSN8eMFat9I29YxAIUdI/fDhepK8ycwfw\nr/ljWXrtHVHSd7N3eDN3vOZGiYTVJnKziHgWDbeTs1hTRkWVvkggV0Tp29uoVvomkGsQiKIioKGB\nv11TU3DevCpEofTHj/eu+dPdTW4umZ2Ofkpf5YlcIvaO29x4CJv24ZyL7JMC61OL02fXae+IKH0n\niRulbxAqUkXpBwVyVXv6EyZ4K30VJ3R5ZQfF1d7hJX23BYinjzFjBpNpb28yZz0IMkqfNwAsovTt\nC4VOpW9Zw6T2joFayHj6cVL6Ydo7Kkg/K8s9UCxD+jrtnShI396epwSE0xpibetU+iyBZ5E4gIy9\nw6P0ad0dVRltsjCkHxMUForZO3Hz9FXbO34lnWUzdwBv0pfx9N2Uvoi9QwON9uMieZ8YKGnbzzHi\nyd5xkr5MCQidgVyn0mcZKyylHyc/HzCkHxuIpmyGqfQnTQo/ZTMVlf6YMUMtIxF7x+04R16ln5Ym\nVsuGwvnUwqP0RT19kUCuc6FgGUu30ufJDAoThvRjgqlTgZYW95K8fjh8eOTaOyoOYPcjfdFAblbW\nUC9exN4Bhvr6PKRLIbNwOJ9aeBYvN6XP0jYspc8byHU+GbDW049TEBcwpB8bpKcT8nY5qMwXwz1P\nn5K+2zHLqpS+2z4AGaXvtqFMxN4BhhK2isPaZTz9MOydsJS+jL3Do/SNvWPgCV6Lp7+fFFubMkXf\nnOyIInsnI4PcnG4ZNnG1d9wygkTsHWCo0o+a9GUCuWHuyNVt7/DU3jFK38ATvBk8LS2EYMP6QI0Z\nkywc5gXVSh/wTtuMayDXi/RV2DsitpOzjzCVvqinT8m1vz/4VCtgsGq3rOiVvgnkGjCBl/TD9PMB\nElgMKrqm4xQvrw1aupW+jKfvJH2V9o5s6qdM9g5vIFdW6VMyDkp3tKt2WtwuqAihUfoGkYM3bTNM\nP58iJ4dYSl5obgYmT1Y7plcwVyXpO2MGqj19VfaOyLycxM2TveNG+mGmbLLO1d6GdVHTuSOXKn3L\nMkrfwAe8pRjCVvoAUfHNzd6/b2lRf4qXl72jInuHqkhnfRnVnr6o0nfz9GWVPk8fMvaOqKfPq8Cd\nbUQXF5VK31662Sh9A0+UlgL19ezXNzaSOvxhIjfXW+n39xPrR/WBLl72jqr0UDeLR8bTd7N3RJ9K\nVNg7Mk8L1EunVkVY9o5dtbMevGJvo2Nx4VH6QDJt0+TpG3hi2jTgiy/Yr29oAIqL9c3HDX6kf+wY\nITaZAmhu8LJ3jh0jGUWycCN91UpfNOisw97hXTjs7cMK5FIyZg2AOwk8aqUPJNM2jb1j4AlK+m45\n6W5oaCCWUJjwI30d1g7gXYpBVaZQdrY76YsGct08fVGlr8Pe4V047Bu0wg7ksr5eUaWvy9MHkqRv\n7B0DT9BjD4Ny4SniRvo6griAt9Jva1Nn7zg3aB0/Lp4O6qX040L6MkqfJ5Ar4+nTdjxlnHk9fZ3Z\nO0BysTRK38AXPBZPHElfl9L3sndUkP748e6kL7rJTKWn77SeROwdZ019EaUvYu846/aIKH1We0dE\n6fiGtdYAAA51SURBVMvaOyy7hE+cMErfIAA8pH/gQLxIX5e94xXIVUX6bvaRDOmrtHecpC+q9GWe\nFpxKn9XeGTdObFOYfTzWrKewlT7LEwh9HUbpG/hi2jSgri74uq4uQgZhHYpOESd7R6XSd/YvQ/r0\n4BF7SeS4kD7NHedRnnbFzmPv2K0py2LPYrG306n0ZTx9lnlRe8cofQNflJayKf2DB4nKD/tghuFo\n7ziVvmURu0eU9BMJQgh2iydKe8duN9FFg+dz47R3eJQ+HZc+IaQxMI69HavSp0HT/n7x1FAe0meZ\nF33fTMqmgS9YlX4Ufj4QH3unr48Qg+zmLNq/fVHp7CQ3qUzqqTMjSDRlU4XSt/chm/LJs3hRxW5Z\nfOM6lT4L6ScSSbtGxN5heV957R27p29I38ATrJ5+lKTf3OyeVqrL3nFT+u3thERZlCNL//ZFRcba\noXAuVKJKPzt7cJBZVOnTPmQ3d/GMn55OFHh3tzjp88yXxhBElD4r6fMEmOliKfKe64Qh/Zhh2jTg\n88+Dr4uK9EePJh9+txr0uuwdt5LOKqt5OpW+CtK3L1TULlJl74St9O3teRcvSuA8T2UiSh/gJ31e\npe/cr8Bi73R3G9I3CEBJCamp41e+GIiO9AFvi0eXvZOTQ/q2o7VVzW5cQJ/Sp6Tf3U2sIhG7yEn6\nIrEGex+y9hAv6VN/nmexccYCWOdL4yispG9PZWVZTGn/dJdx0N/TKH0DJmRkANOnA/v3+19XXx8d\n6XtV2tRl70yePNRSUvlUoUPp2+0dmWqgTtIXmZs9viBrD3V08LWn6ptn3MzMZB19nkJ1dLFgJX2a\nWmtZbMRMXwvr0wf19EXPUtAFQ/oxRFkZsHev/zV//Sswc2Y483HCS+nrsnfGjCH+sD0bRuVYOpS+\n3d6JmvRllb5z0eC1d3iVPs1+4iFYgN/eoYvEyZNsT2L0tbCSuF3pi1RY1QVD+jEEK+mfemo483Fi\nyhTgyJHBP7MsfaQPkH7tJZ1VWkm6lD7tU3Z3LyXc3l5CaDKefNievojSp+06O/kWKUrKrHOkqays\nY9jnxELixtM3YEYQ6R8/Tj7YYZdVpigoGHqAe3s7yaRRkULpBqevr1rp2w98VxEktts7bW3i5abt\nhEszlnj3ZkTp6YsofdpOROnzkD7vwsI7J+PpGzCjrAzYs8f799TaCXtjFoUb6euu7e9U+irjBzoW\nFLu9IxN0thOuaBE4uycvag/JePqypM+bskkXR9a58Sp9Xk/fkL5BIIKU/r590fn5gPtZvocOkcVA\nF2gwl0Kl0ncGilVYR3Z7R0bp05O9urvFbSL7wtHWxr8AyXr6IvYOfUIQCeTqUvr2QC6vp29I38AX\n06eTYmrOI/woovTzgWhIX6enP3bs4ECxigXFbu/IppdOnEj6EiV9Slb9/WLWFV006NF/PEFJUaXP\nmykDJBcYXaRPPfqODmPvGCjGqFGkBs++fe6/j1rpR2HvTJlCDoKnUJ0eal9UVPStSukDpG1Lizjp\np6Uli66Jkn57e9La4bEVZZR+Vxf/jtzOTnZ7Z/RoknN//DjbGIkEeR9bWvgCuSZl04AJZ54JfPSR\n++9GotLPzycLC0VTk9oKo3bSV/EUQYkakFf6kyfLkT6QtGhE7B2q9EVqHcl4+p2dfPPltXcSCdLm\n6FG+DCFW0rd7+iZl0yAQc+cCH37o/ruolX5ubpIEKA4e1Ev6BQWDSf/QIbL4qIJT6cuS/tSpyb0M\nskpfBenTDCURpU8XDJH9BtnZZN6i9g7Pgmm3d1gD3rykP24c+XwYT99AObxIv6uL+P1Rkn5a2tAa\nQZ9/TmIRumC3lHp7yY2al6euf1pIDiAEK2vv2PcyxEHp0w11MkqfN3MHSGZG8ZI+tZR4Fky7vcO6\nOFHS5ykR0dxsPH0DDfAi/U8/BWbNiv5QhhkzBpN+bW14pN/URMhEpvSxE/bSEiqUPiV9yyKkr8LT\nl5kXJX1RpX/8OBmf11KjCxbvecZ0sdBp79A2vPYOK+nTMg+G9A2YUFpKgkDOgOlHHwFnnBHNnOyY\nMYMQPUCyQurqwiP9gwfVWjsAIbOmJnKD9vSIH4pOQQOenZ2EvGTtndZWUohP9OlGRunn5CTHnzKF\nv21zM1kAp07la9fQQD5bIimbOu2dgwfZ3kP69GhI34AJiQRR+zt3Dv75hx+SIG/UsJP+oUPkJtD5\nwZ48ObkxRkfQuLSUFLGrryeVTlVsfKMZR7IVUalalsmQok8yIko/I4P8fXfv5id9OvemJr62ubkk\ndjVpEvvfgu634LV3Dhzgixt8/jnbApabSxbKnh7208bCgCH9GGPePODddwf/bOtWYP78aOZjx6mn\nEhIASDbRjBl6x0skknEEHUq/tJQ8rdTVEdJXgSlTyE1/6JAa0pdV+s3NYkofION+8gmfWgcGK31e\n0v/rX/nmWlBADiBKS2O3P7OyyEZI1s/TuHF8pN/QwJ/mqhuG9GOGmpqagf9fdBHw5pvJ33V0EE//\nnHPCn5cT9pTSjz/WYznZ3wuAxDJ27yZfZWVqx6LHVNbVkQVABaZMIX+vSZPkjsvLzQV27arB4cPi\nSj83l5DbqFFi6YOU9EWU/pEjxB7iiUf4kb7zc0FRUECeDngyjAoKyBMr65NjQQFZOFlIf+JEYk+p\nEhGqIEz6zz33HE477TSkp6fjgw8+8Lxu06ZNqKioQHl5Oe6//37R4UYM7B/oBQuA999PbvJ56y1C\n+HHwB8vLieJubyeW05w56sdwI/3PPiNEWlmpdix6IL1K0i8tBf70J/mbvqwM2L27Bo2Nckr/vffI\nE5qI6szLI++7iKd/+DDJOuIJvOfkEC/cLRbiRfp5eaQNz1MnvZaV9E85hfzLQvppaeR16Ix1iUCY\n9M844ww8//zzuOCCCzyv6evrw6pVq7Bp0yZ8+umneOaZZ7Br1y7RIUccsrOJ2n/+efL9734HXHVV\ntHOiyMgAZs8GduwgpD93rv4xqdLftUs96efkkBIDn3yijvTPPBN45RWguFiun/Jy4se3tIhvSJs6\nlahg0U19eXmkDAOvvUMFCm9+P32dPPbOqFGk3ezZ7G0oiesgfYDMZ9iQfkVFBWbNmuV7zfbt21FW\nVoYZM2YgMzMTy5Ytw4YNG0SHHJH49reBhx4iqvr554Hrr496RklcdhnwX/9FKoKGYTnNmwe89hp5\nL1TvU0gkgPPPB557DjjvPDV9nnkmCRLKWlFjx5LUz6ws8YPg6WsSXTSoNSMam6iv57uezvPCC/na\nFRToJX36uWMl/SlT4kf6sCRRVVVlvf/++66/e+6556zbb7994PunnnrKWrVq1ZDrAJgv82W+zJf5\nEvjiha/LtnjxYhxyJooDuO+++3DFFVf4NQUAJBjNQ8t++KmBgYGBgTb4kv7rr78u1XlxcTHq6uoG\nvq+rq0NJ3ELZBgYGBiMISlI2vZT6vHnzsGfPHtTW1uLkyZNYv349qqurVQxpYGBgYCAAYdJ//vnn\nUVpaim3btuHyyy/HkiVLAAANDQ24/PLLAQAZGRl4+OGHcemll6KyshI33HADZvNEWQwMDAwM1II7\nCqAYr7zyivU3f/M3VllZmbV69eqopxMZvvjiC6uqqsqqrKy0TjvtNOuhhx6KekqRore315o7d661\ndOnSqKcSOVpaWqxrrrnGqqiosGbPnm298847UU8pMtx3331WZWWldfrpp1s33nijdeLEiainFBpu\nueUWKy8vzzr99NMHfnb06FFr0aJFVnl5ubV48WKrpaUlsJ9Id+SaPP4kMjMz8cADD+CTTz7Btm3b\n8Itf/GLEvhcA8NBDD6GyspI5GWA446677sJll12GXbt24aOPPhqxT8u1tbV4/PHH8cEHH+Djjz9G\nX18fnn322ainFRpuueUWbNq0adDPVq9ejcWLF2P37t1YuHAhVq9eHdhPpKRv8viTKCgowNwvdzhl\nZ2dj9uzZaGhoiHhW0aC+vh4vv/wybr/99hGf2dXW1oYtW7bg1ltvBUAs04kyxflTGBMmTEBmZiY6\nOzvR29uLzs5OFMvufEshLFiwAJMdBz1s3LgRK1asAACsWLECL7zwQmA/kZL+gQMHUGrb/lhSUoID\nBw5EOKN4oLa2Fjt27MB5qnYJpRjuvvtu/PSnP0Wa6E6kYYT9+/dj6tSpuOWWW3D22WfjjjvuQKf9\nyLIRhJycHPzgBz/AtGnTUFRUhEmTJmHRokVRTytSNDY2Iv/Lgkz5+flotB8v54FI7yrz6D4U7e3t\nuPbaa/HQQw8hW7aoewrixRdfRF5eHs4666wRr/IBoLe3Fx988AH+/u//Hh988AGysrKYHuGHI/bt\n24cHH3wQtbW1aGhoQHt7O55++umopxUbJBIJJk6NlPRNHv9g9PT04JprrsG3vvUtXHnllVFPJxJs\n3boVGzduxCmnnIIbb7wRb775Jm6++eaopxUZSkpKUFJSgnPPPRcAcO211/oWOBzO+POf/4z58+cj\nNzcXGRkZuPrqq7F169aopxUp8vPzBzbQHjx4EHkMFfkiJX2Tx5+EZVm47bbbUFlZie9///tRTycy\n3Hfffairq8P+/fvx7LPP4uKLL8a6deuinlZkKCgoQGlpKXZ/eXjB5s2bcdppp0U8q2hQUVGBbdu2\noaurC5ZlYfPmzahUXXkvxVBdXY21a9cCANauXcsmFnWlF7Hi5ZdftmbNmmWdeuqp1n333Rf1dCLD\nli1brEQiYc2ZM8eaO3euNXfuXOuVV16JelqRoqamxrriiiuinkbk+PDDD6158+ZZZ555pnXVVVdZ\nra2tUU8pMtx///0DKZs333yzdfLkyainFBqWLVtmFRYWWpmZmVZJSYn1xBNPWEePHrUWLlzIlbKZ\nsCxjnBoYGBiMFJj0CAMDA4MRBEP6BgYGBiMIhvQNDAwMRhAM6RsYGBiMIBjSNzAwMBhBMKRvYGBg\nMILw/wFa1cBzw0Gh4AAAAABJRU5ErkJggg==\n",
224 "png": "iVBORw0KGgoAAAANSUhEUgAAAX0AAAEICAYAAACzliQjAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nMILw/wFa1cBzw0Gh4AAAAABJRU5ErkJggg==\n",
203 "text": [
225 "text": [
204 "<matplotlib.figure.Figure at 0xa70a0cc>"
226 "<matplotlib.figure.Figure at 0xa70a0cc>"
205 ]
227 ]
206 }
228 }
207 ],
229 ],
208 "prompt_number": 5
230 "prompt_number": 5
209 },
231 },
210 {
232 {
211 "cell_type": "markdown",
233 "cell_type": "markdown",
212 "metadata": {
234 "metadata": {
213 "slideshow": {
235 "slideshow": {
214 "slide_type": "slide"
236 "slide_type": "slide"
215 }
237 }
216 },
238 },
217 "source": [
239 "source": [
218 "You can paste blocks of input with prompt markers, such as those from\n",
240 "You can paste blocks of input with prompt markers, such as those from\n",
219 "[the official Python tutorial](http://docs.python.org/tutorial/interpreter.html#interactive-mode)"
241 "[the official Python tutorial](http://docs.python.org/tutorial/interpreter.html#interactive-mode)"
220 ]
242 ]
221 },
243 },
222 {
244 {
223 "cell_type": "code",
245 "cell_type": "code",
224 "collapsed": false,
246 "collapsed": false,
225 "input": [
247 "input": [
226 ">>> the_world_is_flat = 1\n",
248 ">>> the_world_is_flat = 1\n",
227 ">>> if the_world_is_flat:\n",
249 ">>> if the_world_is_flat:\n",
228 "... print \"Be careful not to fall off!\""
250 "... print \"Be careful not to fall off!\""
229 ],
251 ],
230 "language": "python",
252 "language": "python",
231 "metadata": {},
253 "metadata": {},
232 "outputs": [
254 "outputs": [
233 {
255 {
234 "output_type": "stream",
256 "output_type": "stream",
235 "stream": "stdout",
257 "stream": "stdout",
236 "text": [
258 "text": [
237 "Be careful not to fall off!\n"
259 "Be careful not to fall off!\n"
238 ]
260 ]
239 }
261 }
240 ],
262 ],
241 "prompt_number": 6
263 "prompt_number": 6
242 },
264 },
243 {
265 {
244 "cell_type": "markdown",
266 "cell_type": "markdown",
245 "metadata": {
267 "metadata": {
246 "slideshow": {
268 "slideshow": {
247 "slide_type": "slide"
269 "slide_type": "slide"
248 }
270 }
249 },
271 },
250 "source": [
272 "source": [
251 "Errors are shown in informative ways:"
273 "Errors are shown in informative ways:"
252 ]
274 ]
253 },
275 },
254 {
276 {
255 "cell_type": "code",
277 "cell_type": "code",
256 "collapsed": false,
278 "collapsed": false,
257 "input": [
279 "input": [
258 "%run non_existent_file"
280 "%run non_existent_file"
259 ],
281 ],
260 "language": "python",
282 "language": "python",
261 "metadata": {
283 "metadata": {
262 "slideshow": {
284 "slideshow": {
263 "slide_type": "fragment"
285 "slide_type": "fragment"
264 }
286 }
265 },
287 },
266 "outputs": [
288 "outputs": [
267 {
289 {
268 "output_type": "stream",
290 "output_type": "stream",
269 "stream": "stderr",
291 "stream": "stderr",
270 "text": [
292 "text": [
271 "ERROR: File `u'non_existent_file.py'` not found.\n"
293 "ERROR: File `u'non_existent_file.py'` not found.\n"
272 ]
294 ]
273 }
295 }
274 ],
296 ],
275 "prompt_number": 7
297 "prompt_number": 7
276 },
298 },
277 {
299 {
278 "cell_type": "code",
300 "cell_type": "code",
279 "collapsed": false,
301 "collapsed": false,
280 "input": [
302 "input": [
281 "x = 1\n",
303 "x = 1\n",
282 "y = 4\n",
304 "y = 4\n",
283 "z = y/(1-x)"
305 "z = y/(1-x)"
284 ],
306 ],
285 "language": "python",
307 "language": "python",
286 "metadata": {
308 "metadata": {
287 "slideshow": {
309 "slideshow": {
288 "slide_type": "slide"
310 "slide_type": "slide"
289 }
311 }
290 },
312 },
291 "outputs": [
313 "outputs": [
292 {
314 {
293 "ename": "ZeroDivisionError",
315 "ename": "ZeroDivisionError",
294 "evalue": "integer division or modulo by zero",
316 "evalue": "integer division or modulo by zero",
295 "output_type": "pyerr",
317 "output_type": "pyerr",
296 "traceback": [
318 "traceback": [
297 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mZeroDivisionError\u001b[0m Traceback (most recent call last)",
319 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mZeroDivisionError\u001b[0m Traceback (most recent call last)",
298 "\u001b[1;32m<ipython-input-8-dc39888fd1d2>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[0mx\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;36m1\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 2\u001b[0m \u001b[0my\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;36m4\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 3\u001b[1;33m \u001b[0mz\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0my\u001b[0m\u001b[1;33m/\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;36m1\u001b[0m\u001b[1;33m-\u001b[0m\u001b[0mx\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m",
320 "\u001b[1;32m<ipython-input-8-dc39888fd1d2>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[0mx\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;36m1\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 2\u001b[0m \u001b[0my\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;36m4\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 3\u001b[1;33m \u001b[0mz\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0my\u001b[0m\u001b[1;33m/\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;36m1\u001b[0m\u001b[1;33m-\u001b[0m\u001b[0mx\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m",
299 "\u001b[1;31mZeroDivisionError\u001b[0m: integer division or modulo by zero"
321 "\u001b[1;31mZeroDivisionError\u001b[0m: integer division or modulo by zero"
300 ]
322 ]
301 }
323 }
302 ],
324 ],
303 "prompt_number": 8
325 "prompt_number": 8
304 },
326 },
305 {
327 {
306 "cell_type": "markdown",
328 "cell_type": "markdown",
307 "metadata": {
329 "metadata": {
308 "slideshow": {
330 "slideshow": {
309 "slide_type": "slide"
331 "slide_type": "slide"
310 }
332 }
311 },
333 },
312 "source": [
334 "source": [
313 "When IPython needs to display additional information (such as providing details on an object via `x?`\n",
335 "When IPython needs to display additional information (such as providing details on an object via `x?`\n",
314 "it will automatically invoke a pager at the bottom of the screen:"
336 "it will automatically invoke a pager at the bottom of the screen:"
315 ]
337 ]
316 },
338 },
317 {
339 {
318 "cell_type": "code",
340 "cell_type": "code",
319 "collapsed": false,
341 "collapsed": false,
320 "input": [
342 "input": [
321 "magic"
343 "magic"
322 ],
344 ],
323 "language": "python",
345 "language": "python",
324 "metadata": {
346 "metadata": {
325 "slideshow": {
347 "slideshow": {
326 "slide_type": "fragment"
348 "slide_type": "fragment"
327 }
349 }
328 },
350 },
329 "outputs": [],
351 "outputs": [],
330 "prompt_number": 9
352 "prompt_number": 9
331 },
353 },
332 {
354 {
333 "cell_type": "markdown",
355 "cell_type": "markdown",
334 "metadata": {
356 "metadata": {
335 "slideshow": {
357 "slideshow": {
336 "slide_type": "header_slide"
358 "slide_type": "header_slide"
337 }
359 }
338 },
360 },
339 "source": [
361 "source": [
340 "## Non-blocking output of kernel\n",
362 "## Non-blocking output of kernel\n",
341 "\n",
363 "\n",
342 "If you execute the next cell, you will see the output arriving as it is generated, not all at the end."
364 "If you execute the next cell, you will see the output arriving as it is generated, not all at the end."
343 ]
365 ]
344 },
366 },
345 {
367 {
346 "cell_type": "code",
368 "cell_type": "code",
347 "collapsed": false,
369 "collapsed": false,
348 "input": [
370 "input": [
349 "import time, sys\n",
371 "import time, sys\n",
350 "for i in range(8):\n",
372 "for i in range(8):\n",
351 " print i,\n",
373 " print i,\n",
352 " time.sleep(0.5)"
374 " time.sleep(0.5)"
353 ],
375 ],
354 "language": "python",
376 "language": "python",
355 "metadata": {},
377 "metadata": {},
356 "outputs": [
378 "outputs": [
357 {
379 {
358 "output_type": "stream",
380 "output_type": "stream",
359 "stream": "stdout",
381 "stream": "stdout",
360 "text": [
382 "text": [
361 "0 "
383 "0 "
362 ]
384 ]
363 },
385 },
364 {
386 {
365 "output_type": "stream",
387 "output_type": "stream",
366 "stream": "stdout",
388 "stream": "stdout",
367 "text": [
389 "text": [
368 "1 "
390 "1 "
369 ]
391 ]
370 },
392 },
371 {
393 {
372 "output_type": "stream",
394 "output_type": "stream",
373 "stream": "stdout",
395 "stream": "stdout",
374 "text": [
396 "text": [
375 "2 "
397 "2 "
376 ]
398 ]
377 },
399 },
378 {
400 {
379 "output_type": "stream",
401 "output_type": "stream",
380 "stream": "stdout",
402 "stream": "stdout",
381 "text": [
403 "text": [
382 "3 "
404 "3 "
383 ]
405 ]
384 },
406 },
385 {
407 {
386 "output_type": "stream",
408 "output_type": "stream",
387 "stream": "stdout",
409 "stream": "stdout",
388 "text": [
410 "text": [
389 "4 "
411 "4 "
390 ]
412 ]
391 },
413 },
392 {
414 {
393 "output_type": "stream",
415 "output_type": "stream",
394 "stream": "stdout",
416 "stream": "stdout",
395 "text": [
417 "text": [
396 "5 "
418 "5 "
397 ]
419 ]
398 },
420 },
399 {
421 {
400 "output_type": "stream",
422 "output_type": "stream",
401 "stream": "stdout",
423 "stream": "stdout",
402 "text": [
424 "text": [
403 "6 "
425 "6 "
404 ]
426 ]
405 },
427 },
406 {
428 {
407 "output_type": "stream",
429 "output_type": "stream",
408 "stream": "stdout",
430 "stream": "stdout",
409 "text": [
431 "text": [
410 "7\n"
432 "7\n"
411 ]
433 ]
412 }
434 }
413 ],
435 ],
414 "prompt_number": 10
436 "prompt_number": 10
415 },
437 },
416 {
438 {
417 "cell_type": "markdown",
439 "cell_type": "markdown",
418 "metadata": {
440 "metadata": {
419 "slideshow": {
441 "slideshow": {
420 "slide_type": "slide"
442 "slide_type": "slide"
421 }
443 }
422 },
444 },
423 "source": [
445 "source": [
424 "## Clean crash and restart\n",
446 "## Clean crash and restart\n",
425 "\n",
447 "\n",
426 "We call the low-level system libc.time routine with the wrong argument via\n",
448 "We call the low-level system libc.time routine with the wrong argument via\n",
427 "ctypes to segfault the Python interpreter:"
449 "ctypes to segfault the Python interpreter:"
428 ]
450 ]
429 },
451 },
430 {
452 {
431 "cell_type": "code",
453 "cell_type": "code",
432 "collapsed": false,
454 "collapsed": false,
433 "input": [
455 "input": [
434 "import sys\n",
456 "import sys\n",
435 "from ctypes import CDLL\n",
457 "from ctypes import CDLL\n",
436 "# This will crash a Linux or Mac system; equivalent calls can be made on Windows\n",
458 "# This will crash a Linux or Mac system; equivalent calls can be made on Windows\n",
437 "dll = 'dylib' if sys.platform == 'darwin' else '.so.6'\n",
459 "dll = 'dylib' if sys.platform == 'darwin' else '.so.6'\n",
438 "libc = CDLL(\"libc.%s\" % dll) \n",
460 "libc = CDLL(\"libc.%s\" % dll) \n",
439 "libc.time(-1) # BOOM!!"
461 "libc.time(-1) # BOOM!!"
440 ],
462 ],
441 "language": "python",
463 "language": "python",
442 "metadata": {},
464 "metadata": {},
443 "outputs": [],
465 "outputs": [],
444 "prompt_number": "*"
466 "prompt_number": "*"
445 },
467 },
446 {
468 {
447 "cell_type": "markdown",
469 "cell_type": "markdown",
448 "metadata": {
470 "metadata": {
449 "slideshow": {
471 "slideshow": {
450 "slide_type": "header_slide"
472 "slide_type": "header_slide"
451 }
473 }
452 },
474 },
453 "source": [
475 "source": [
454 "## Markdown cells can contain formatted text and code\n",
476 "## Markdown cells can contain formatted text and code\n",
455 "\n",
477 "\n",
456 "You can *italicize*, **boldface**\n",
478 "You can *italicize*, **boldface**\n",
457 "\n",
479 "\n",
458 "* build\n",
480 "* build\n",
459 "* lists"
481 "* lists"
460 ]
482 ]
461 },
483 },
462 {
484 {
463 "cell_type": "markdown",
485 "cell_type": "markdown",
464 "metadata": {
486 "metadata": {
465 "slideshow": {
487 "slideshow": {
466 "slide_type": "slide"
488 "slide_type": "slide"
467 }
489 }
468 },
490 },
469 "source": [
491 "source": [
470 "and embed code meant for illustration instead of execution in Python:\n",
492 "and embed code meant for illustration instead of execution in Python:\n",
471 "\n",
493 "\n",
472 " def f(x):\n",
494 " def f(x):\n",
473 " \"\"\"a docstring\"\"\"\n",
495 " \"\"\"a docstring\"\"\"\n",
474 " return x**2\n",
496 " return x**2\n",
475 "\n",
497 "\n",
476 "or other languages:\n",
498 "or other languages:\n",
477 "\n",
499 "\n",
478 " if (i=0; i<n; i++) {\n",
500 " if (i=0; i<n; i++) {\n",
479 " printf(\"hello %d\\n\", i);\n",
501 " printf(\"hello %d\\n\", i);\n",
480 " x += 4;\n",
502 " x += 4;\n",
481 " }"
503 " }"
482 ]
504 ]
483 },
505 },
484 {
506 {
485 "cell_type": "markdown",
507 "cell_type": "markdown",
486 "metadata": {
508 "metadata": {
487 "slideshow": {
509 "slideshow": {
488 "slide_type": "slide"
510 "slide_type": "slide"
489 }
511 }
490 },
512 },
491 "source": [
513 "source": [
492 "Courtesy of MathJax, you can include mathematical expressions both inline: \n",
514 "Courtesy of MathJax, you can include mathematical expressions both inline: \n",
493 "$e^{i\\pi} + 1 = 0$ and displayed:\n",
515 "$e^{i\\pi} + 1 = 0$ and displayed:\n",
494 "\n",
516 "\n",
495 "$$e^x=\\sum_{i=0}^\\infty \\frac{1}{i!}x^i$$"
517 "$$e^x=\\sum_{i=0}^\\infty \\frac{1}{i!}x^i$$"
496 ]
518 ]
497 },
519 },
498 {
520 {
499 "cell_type": "markdown",
521 "cell_type": "markdown",
500 "metadata": {
522 "metadata": {
501 "slideshow": {
523 "slideshow": {
502 "slide_type": "header_slide"
524 "slide_type": "header_slide"
503 }
525 }
504 },
526 },
505 "source": [
527 "source": [
506 "## Rich displays: include anyting a browser can show\n",
528 "## Rich displays: include anyting a browser can show\n",
507 "\n",
529 "\n",
508 "Note that we have an actual protocol for this, see the `display_protocol` notebook for further details."
530 "Note that we have an actual protocol for this, see the `display_protocol` notebook for further details."
509 ]
531 ]
510 },
532 },
511 {
533 {
512 "cell_type": "markdown",
534 "cell_type": "markdown",
513 "metadata": {
535 "metadata": {
514 "slideshow": {
536 "slideshow": {
515 "slide_type": "slide"
537 "slide_type": "slide"
516 }
538 }
517 },
539 },
518 "source": [
540 "source": [
519 "### Images"
541 "### Images"
520 ]
542 ]
521 },
543 },
522 {
544 {
523 "cell_type": "code",
545 "cell_type": "code",
524 "collapsed": false,
546 "collapsed": false,
525 "input": [
547 "input": [
526 "from IPython.display import Image\n",
548 "from IPython.display import Image\n",
527 "Image(filename='../../source/_static/logo.png')"
549 "Image(filename='../../source/_static/logo.png')"
528 ],
550 ],
529 "language": "python",
551 "language": "python",
530 "metadata": {
552 "metadata": {
531 "slideshow": {
553 "slideshow": {
532 "slide_type": "skip"
554 "slide_type": "skip"
533 }
555 }
534 },
556 },
535 "outputs": [
557 "outputs": [
536 {
558 {
537 "ename": "IOError",
559 "ename": "IOError",
538 "evalue": "[Errno 2] No such file or directory: u'../../source/_static/logo.png'",
560 "evalue": "[Errno 2] No such file or directory: u'../../source/_static/logo.png'",
539 "output_type": "pyerr",
561 "output_type": "pyerr",
540 "traceback": [
562 "traceback": [
541 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mIOError\u001b[0m Traceback (most recent call last)",
563 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mIOError\u001b[0m Traceback (most recent call last)",
542 "\u001b[1;32m<ipython-input-11-d52b796e1601>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[1;32mfrom\u001b[0m \u001b[0mIPython\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdisplay\u001b[0m \u001b[1;32mimport\u001b[0m \u001b[0mImage\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 2\u001b[1;33m \u001b[0mImage\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m=\u001b[0m\u001b[1;34m'../../source/_static/logo.png'\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m",
564 "\u001b[1;32m<ipython-input-11-d52b796e1601>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[1;32mfrom\u001b[0m \u001b[0mIPython\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdisplay\u001b[0m \u001b[1;32mimport\u001b[0m \u001b[0mImage\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 2\u001b[1;33m \u001b[0mImage\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m=\u001b[0m\u001b[1;34m'../../source/_static/logo.png'\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m",
543 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36m__init__\u001b[1;34m(self, data, url, filename, format, embed, width, height)\u001b[0m\n\u001b[0;32m 495\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mwidth\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mwidth\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 496\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mheight\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mheight\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 497\u001b[1;33m \u001b[0msuper\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mImage\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0m__init__\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0murl\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0murl\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mfilename\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 498\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 499\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
565 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36m__init__\u001b[1;34m(self, data, url, filename, format, embed, width, height)\u001b[0m\n\u001b[0;32m 495\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mwidth\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mwidth\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 496\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mheight\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mheight\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 497\u001b[1;33m \u001b[0msuper\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mImage\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0m__init__\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0murl\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0murl\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mfilename\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 498\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 499\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
544 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36m__init__\u001b[1;34m(self, data, url, filename)\u001b[0m\n\u001b[0;32m 263\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0murl\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0murl\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 264\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mNone\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mfilename\u001b[0m \u001b[1;32mis\u001b[0m \u001b[0mNone\u001b[0m \u001b[1;32melse\u001b[0m \u001b[0municode\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 265\u001b[1;33m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 266\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 267\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
566 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36m__init__\u001b[1;34m(self, data, url, filename)\u001b[0m\n\u001b[0;32m 263\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0murl\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0murl\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 264\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mNone\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mfilename\u001b[0m \u001b[1;32mis\u001b[0m \u001b[0mNone\u001b[0m \u001b[1;32melse\u001b[0m \u001b[0municode\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 265\u001b[1;33m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 266\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 267\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
545 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36mreload\u001b[1;34m(self)\u001b[0m\n\u001b[0;32m 500\u001b[0m \u001b[1;34m\"\"\"Reload the raw data from file or URL.\"\"\"\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 501\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0membed\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 502\u001b[1;33m \u001b[0msuper\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mImage\u001b[0m\u001b[1;33m,\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 503\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 504\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0m_repr_html_\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
567 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36mreload\u001b[1;34m(self)\u001b[0m\n\u001b[0;32m 500\u001b[0m \u001b[1;34m\"\"\"Reload the raw data from file or URL.\"\"\"\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 501\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0membed\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 502\u001b[1;33m \u001b[0msuper\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mImage\u001b[0m\u001b[1;33m,\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mreload\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 503\u001b[0m \u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 504\u001b[0m \u001b[1;32mdef\u001b[0m \u001b[0m_repr_html_\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
546 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36mreload\u001b[1;34m(self)\u001b[0m\n\u001b[0;32m 268\u001b[0m \u001b[1;34m\"\"\"Reload the raw data from file or URL.\"\"\"\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 269\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m \u001b[1;32mis\u001b[0m \u001b[1;32mnot\u001b[0m \u001b[0mNone\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 270\u001b[1;33m \u001b[1;32mwith\u001b[0m \u001b[0mopen\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0m_read_flags\u001b[0m\u001b[1;33m)\u001b[0m \u001b[1;32mas\u001b[0m \u001b[0mf\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 271\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdata\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mf\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mread\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 272\u001b[0m \u001b[1;32melif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0murl\u001b[0m \u001b[1;32mis\u001b[0m \u001b[1;32mnot\u001b[0m \u001b[0mNone\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
568 "\u001b[1;32m/home/damian/Desarrollos/ipython_mtaui_slide/IPython/core/display.pyc\u001b[0m in \u001b[0;36mreload\u001b[1;34m(self)\u001b[0m\n\u001b[0;32m 268\u001b[0m \u001b[1;34m\"\"\"Reload the raw data from file or URL.\"\"\"\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 269\u001b[0m \u001b[1;32mif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m \u001b[1;32mis\u001b[0m \u001b[1;32mnot\u001b[0m \u001b[0mNone\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m--> 270\u001b[1;33m \u001b[1;32mwith\u001b[0m \u001b[0mopen\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mfilename\u001b[0m\u001b[1;33m,\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0m_read_flags\u001b[0m\u001b[1;33m)\u001b[0m \u001b[1;32mas\u001b[0m \u001b[0mf\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 271\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdata\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mf\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mread\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 272\u001b[0m \u001b[1;32melif\u001b[0m \u001b[0mself\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0murl\u001b[0m \u001b[1;32mis\u001b[0m \u001b[1;32mnot\u001b[0m \u001b[0mNone\u001b[0m\u001b[1;33m:\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
547 "\u001b[1;31mIOError\u001b[0m: [Errno 2] No such file or directory: u'../../source/_static/logo.png'"
569 "\u001b[1;31mIOError\u001b[0m: [Errno 2] No such file or directory: u'../../source/_static/logo.png'"
548 ]
570 ]
549 }
571 }
550 ],
572 ],
551 "prompt_number": 11
573 "prompt_number": 11
552 },
574 },
553 {
575 {
554 "cell_type": "markdown",
576 "cell_type": "markdown",
555 "metadata": {
577 "metadata": {
556 "slideshow": {
578 "slideshow": {
557 "slide_type": "slide"
579 "slide_type": "slide"
558 }
580 }
559 },
581 },
560 "source": [
582 "source": [
561 "An image can also be displayed from raw data or a url"
583 "An image can also be displayed from raw data or a url"
562 ]
584 ]
563 },
585 },
564 {
586 {
565 "cell_type": "code",
587 "cell_type": "code",
566 "collapsed": false,
588 "collapsed": false,
567 "input": [
589 "input": [
568 "Image(url='http://python.org/images/python-logo.gif')"
590 "Image(url='http://python.org/images/python-logo.gif')"
569 ],
591 ],
570 "language": "python",
592 "language": "python",
571 "metadata": {
593 "metadata": {
572 "slideshow": {
594 "slideshow": {
573 "slide_type": "-"
595 "slide_type": "-"
574 }
596 }
575 },
597 },
576 "outputs": [
598 "outputs": [
577 {
599 {
578 "html": [
600 "html": [
579 "<img src=\"http://python.org/images/python-logo.gif\"/>"
601 "<img src=\"http://python.org/images/python-logo.gif\"/>"
580 ],
602 ],
581 "output_type": "pyout",
603 "output_type": "pyout",
582 "prompt_number": 12,
604 "prompt_number": 12,
583 "text": [
605 "text": [
584 "<IPython.core.display.Image at 0xa7e68ac>"
606 "<IPython.core.display.Image at 0xa7e68ac>"
585 ]
607 ]
586 }
608 }
587 ],
609 ],
588 "prompt_number": 12
610 "prompt_number": 12
589 },
611 },
590 {
612 {
591 "cell_type": "markdown",
613 "cell_type": "markdown",
592 "metadata": {
614 "metadata": {
593 "slideshow": {
615 "slideshow": {
594 "slide_type": "slide"
616 "slide_type": "slide"
595 }
617 }
596 },
618 },
597 "source": [
619 "source": [
598 "SVG images are also supported out of the box (since modern browsers do a good job of rendering them):"
620 "SVG images are also supported out of the box (since modern browsers do a good job of rendering them):"
599 ]
621 ]
600 },
622 },
601 {
623 {
602 "cell_type": "code",
624 "cell_type": "code",
603 "collapsed": false,
625 "collapsed": false,
604 "input": [
626 "input": [
605 "from IPython.display import SVG\n",
627 "from IPython.display import SVG\n",
606 "SVG(filename='python-logo.svg')"
628 "SVG(filename='python-logo.svg')"
607 ],
629 ],
608 "language": "python",
630 "language": "python",
609 "metadata": {},
631 "metadata": {},
610 "outputs": [
632 "outputs": [
611 {
633 {
612 "output_type": "pyout",
634 "output_type": "pyout",
613 "prompt_number": 13,
635 "prompt_number": 13,
614 "svg": [
636 "svg": [
615 "<svg height=\"115.02pt\" id=\"svg2\" inkscape:version=\"0.43\" sodipodi:docbase=\"/home/sdeibel\" sodipodi:docname=\"logo-python-generic.svg\" sodipodi:version=\"0.32\" version=\"1.0\" width=\"388.84pt\" xmlns=\"http://www.w3.org/2000/svg\" xmlns:cc=\"http://web.resource.org/cc/\" xmlns:dc=\"http://purl.org/dc/elements/1.1/\" xmlns:inkscape=\"http://www.inkscape.org/namespaces/inkscape\" xmlns:rdf=\"http://www.w3.org/1999/02/22-rdf-syntax-ns#\" xmlns:sodipodi=\"http://inkscape.sourceforge.net/DTD/sodipodi-0.dtd\" xmlns:svg=\"http://www.w3.org/2000/svg\" xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n",
637 "<svg height=\"115.02pt\" id=\"svg2\" inkscape:version=\"0.43\" sodipodi:docbase=\"/home/sdeibel\" sodipodi:docname=\"logo-python-generic.svg\" sodipodi:version=\"0.32\" version=\"1.0\" width=\"388.84pt\" xmlns=\"http://www.w3.org/2000/svg\" xmlns:cc=\"http://web.resource.org/cc/\" xmlns:dc=\"http://purl.org/dc/elements/1.1/\" xmlns:inkscape=\"http://www.inkscape.org/namespaces/inkscape\" xmlns:rdf=\"http://www.w3.org/1999/02/22-rdf-syntax-ns#\" xmlns:sodipodi=\"http://inkscape.sourceforge.net/DTD/sodipodi-0.dtd\" xmlns:svg=\"http://www.w3.org/2000/svg\" xmlns:xlink=\"http://www.w3.org/1999/xlink\">\n",
616 " <metadata id=\"metadata2193\">\n",
638 " <metadata id=\"metadata2193\">\n",
617 " <rdf:RDF>\n",
639 " <rdf:RDF>\n",
618 " <cc:Work rdf:about=\"\">\n",
640 " <cc:Work rdf:about=\"\">\n",
619 " <dc:format>image/svg+xml</dc:format>\n",
641 " <dc:format>image/svg+xml</dc:format>\n",
620 " <dc:type rdf:resource=\"http://purl.org/dc/dcmitype/StillImage\"/>\n",
642 " <dc:type rdf:resource=\"http://purl.org/dc/dcmitype/StillImage\"/>\n",
621 " </cc:Work>\n",
643 " </cc:Work>\n",
622 " </rdf:RDF>\n",
644 " </rdf:RDF>\n",
623 " </metadata>\n",
645 " </metadata>\n",
624 " <sodipodi:namedview bordercolor=\"#666666\" borderopacity=\"1.0\" id=\"base\" inkscape:current-layer=\"svg2\" inkscape:cx=\"243.02499\" inkscape:cy=\"71.887497\" inkscape:pageopacity=\"0.0\" inkscape:pageshadow=\"2\" inkscape:window-height=\"543\" inkscape:window-width=\"791\" inkscape:window-x=\"0\" inkscape:window-y=\"0\" inkscape:zoom=\"1.4340089\" pagecolor=\"#ffffff\"/>\n",
646 " <sodipodi:namedview bordercolor=\"#666666\" borderopacity=\"1.0\" id=\"base\" inkscape:current-layer=\"svg2\" inkscape:cx=\"243.02499\" inkscape:cy=\"71.887497\" inkscape:pageopacity=\"0.0\" inkscape:pageshadow=\"2\" inkscape:window-height=\"543\" inkscape:window-width=\"791\" inkscape:window-x=\"0\" inkscape:window-y=\"0\" inkscape:zoom=\"1.4340089\" pagecolor=\"#ffffff\"/>\n",
625 " <defs id=\"defs4\">\n",
647 " <defs id=\"defs4\">\n",
626 " <linearGradient id=\"linearGradient2795\">\n",
648 " <linearGradient id=\"linearGradient2795\">\n",
627 " <stop id=\"stop2797\" offset=\"0\" style=\"stop-color:#b8b8b8;stop-opacity:0.49803922\"/>\n",
649 " <stop id=\"stop2797\" offset=\"0\" style=\"stop-color:#b8b8b8;stop-opacity:0.49803922\"/>\n",
628 " <stop id=\"stop2799\" offset=\"1\" style=\"stop-color:#7f7f7f;stop-opacity:0\"/>\n",
650 " <stop id=\"stop2799\" offset=\"1\" style=\"stop-color:#7f7f7f;stop-opacity:0\"/>\n",
629 " </linearGradient>\n",
651 " </linearGradient>\n",
630 " <linearGradient id=\"linearGradient2787\">\n",
652 " <linearGradient id=\"linearGradient2787\">\n",
631 " <stop id=\"stop2789\" offset=\"0\" style=\"stop-color:#7f7f7f;stop-opacity:0.5\"/>\n",
653 " <stop id=\"stop2789\" offset=\"0\" style=\"stop-color:#7f7f7f;stop-opacity:0.5\"/>\n",
632 " <stop id=\"stop2791\" offset=\"1\" style=\"stop-color:#7f7f7f;stop-opacity:0\"/>\n",
654 " <stop id=\"stop2791\" offset=\"1\" style=\"stop-color:#7f7f7f;stop-opacity:0\"/>\n",
633 " </linearGradient>\n",
655 " </linearGradient>\n",
634 " <linearGradient id=\"linearGradient3676\">\n",
656 " <linearGradient id=\"linearGradient3676\">\n",
635 " <stop id=\"stop3678\" offset=\"0\" style=\"stop-color:#b2b2b2;stop-opacity:0.5\"/>\n",
657 " <stop id=\"stop3678\" offset=\"0\" style=\"stop-color:#b2b2b2;stop-opacity:0.5\"/>\n",
636 " <stop id=\"stop3680\" offset=\"1\" style=\"stop-color:#b3b3b3;stop-opacity:0\"/>\n",
658 " <stop id=\"stop3680\" offset=\"1\" style=\"stop-color:#b3b3b3;stop-opacity:0\"/>\n",
637 " </linearGradient>\n",
659 " </linearGradient>\n",
638 " <linearGradient id=\"linearGradient3236\">\n",
660 " <linearGradient id=\"linearGradient3236\">\n",
639 " <stop id=\"stop3244\" offset=\"0\" style=\"stop-color:#f4f4f4;stop-opacity:1\"/>\n",
661 " <stop id=\"stop3244\" offset=\"0\" style=\"stop-color:#f4f4f4;stop-opacity:1\"/>\n",
640 " <stop id=\"stop3240\" offset=\"1\" style=\"stop-color:#ffffff;stop-opacity:1\"/>\n",
662 " <stop id=\"stop3240\" offset=\"1\" style=\"stop-color:#ffffff;stop-opacity:1\"/>\n",
641 " </linearGradient>\n",
663 " </linearGradient>\n",
642 " <linearGradient id=\"linearGradient4671\">\n",
664 " <linearGradient id=\"linearGradient4671\">\n",
643 " <stop id=\"stop4673\" offset=\"0\" style=\"stop-color:#ffd43b;stop-opacity:1\"/>\n",
665 " <stop id=\"stop4673\" offset=\"0\" style=\"stop-color:#ffd43b;stop-opacity:1\"/>\n",
644 " <stop id=\"stop4675\" offset=\"1\" style=\"stop-color:#ffe873;stop-opacity:1\"/>\n",
666 " <stop id=\"stop4675\" offset=\"1\" style=\"stop-color:#ffe873;stop-opacity:1\"/>\n",
645 " </linearGradient>\n",
667 " </linearGradient>\n",
646 " <linearGradient id=\"linearGradient4689\">\n",
668 " <linearGradient id=\"linearGradient4689\">\n",
647 " <stop id=\"stop4691\" offset=\"0\" style=\"stop-color:#5a9fd4;stop-opacity:1\"/>\n",
669 " <stop id=\"stop4691\" offset=\"0\" style=\"stop-color:#5a9fd4;stop-opacity:1\"/>\n",
648 " <stop id=\"stop4693\" offset=\"1\" style=\"stop-color:#306998;stop-opacity:1\"/>\n",
670 " <stop id=\"stop4693\" offset=\"1\" style=\"stop-color:#306998;stop-opacity:1\"/>\n",
649 " </linearGradient>\n",
671 " </linearGradient>\n",
650 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2987\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
672 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2987\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
651 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2990\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
673 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2990\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
652 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2587\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
674 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2587\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
653 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2589\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
675 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2589\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
654 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2248\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
676 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2248\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"77.475983\" y2=\"76.313133\"/>\n",
655 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2250\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
677 " <linearGradient gradientTransform=\"translate(100.2702,99.61116)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2250\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
656 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-11.5974,-7.60954)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2255\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
678 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-11.5974,-7.60954)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2255\" x1=\"224.23996\" x2=\"-65.308502\" xlink:href=\"#linearGradient4671\" y1=\"144.75717\" y2=\"144.75717\"/>\n",
657 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-11.5974,-7.60954)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2258\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"76.176224\" y2=\"76.313133\"/>\n",
679 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-11.5974,-7.60954)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient2258\" x1=\"172.94208\" x2=\"26.670298\" xlink:href=\"#linearGradient4689\" y1=\"76.176224\" y2=\"76.313133\"/>\n",
658 " <radialGradient cx=\"61.518883\" cy=\"132.28575\" fx=\"61.518883\" fy=\"132.28575\" gradientTransform=\"matrix(1,0,0,0.177966,0,108.7434)\" gradientUnits=\"userSpaceOnUse\" id=\"radialGradient2801\" r=\"29.036913\" xlink:href=\"#linearGradient2795\"/>\n",
680 " <radialGradient cx=\"61.518883\" cy=\"132.28575\" fx=\"61.518883\" fy=\"132.28575\" gradientTransform=\"matrix(1,0,0,0.177966,0,108.7434)\" gradientUnits=\"userSpaceOnUse\" id=\"radialGradient2801\" r=\"29.036913\" xlink:href=\"#linearGradient2795\"/>\n",
659 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-9.399749,-5.305317)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient1475\" x1=\"150.96111\" x2=\"112.03144\" xlink:href=\"#linearGradient4671\" y1=\"192.35176\" y2=\"137.27299\"/>\n",
681 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-9.399749,-5.305317)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient1475\" x1=\"150.96111\" x2=\"112.03144\" xlink:href=\"#linearGradient4671\" y1=\"192.35176\" y2=\"137.27299\"/>\n",
660 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-9.399749,-5.305317)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient1478\" x1=\"26.648937\" x2=\"135.66525\" xlink:href=\"#linearGradient4689\" y1=\"20.603781\" y2=\"114.39767\"/>\n",
682 " <linearGradient gradientTransform=\"matrix(0.562541,0,0,0.567972,-9.399749,-5.305317)\" gradientUnits=\"userSpaceOnUse\" id=\"linearGradient1478\" x1=\"26.648937\" x2=\"135.66525\" xlink:href=\"#linearGradient4689\" y1=\"20.603781\" y2=\"114.39767\"/>\n",
661 " <radialGradient cx=\"61.518883\" cy=\"132.28575\" fx=\"61.518883\" fy=\"132.28575\" gradientTransform=\"matrix(2.382716e-8,-0.296405,1.43676,4.683673e-7,-128.544,150.5202)\" gradientUnits=\"userSpaceOnUse\" id=\"radialGradient1480\" r=\"29.036913\" xlink:href=\"#linearGradient2795\"/>\n",
683 " <radialGradient cx=\"61.518883\" cy=\"132.28575\" fx=\"61.518883\" fy=\"132.28575\" gradientTransform=\"matrix(2.382716e-8,-0.296405,1.43676,4.683673e-7,-128.544,150.5202)\" gradientUnits=\"userSpaceOnUse\" id=\"radialGradient1480\" r=\"29.036913\" xlink:href=\"#linearGradient2795\"/>\n",
662 " </defs>\n",
684 " </defs>\n",
663 " <g id=\"g2303\">\n",
685 " <g id=\"g2303\">\n",
664 " <path d=\"M 184.61344,61.929363 C 184.61344,47.367213 180.46118,39.891193 172.15666,39.481813 C 168.85239,39.325863 165.62611,39.852203 162.48754,41.070593 C 159.98254,41.967323 158.2963,42.854313 157.40931,43.751043 L 157.40931,78.509163 C 162.72147,81.842673 167.43907,83.392453 171.55234,83.148783 C 180.25649,82.573703 184.61344,75.507063 184.61344,61.929363 z M 194.85763,62.533683 C 194.85763,69.931723 193.12265,76.072393 189.63319,80.955683 C 185.7441,86.482283 180.35396,89.328433 173.46277,89.484393 C 168.26757,89.650093 162.91642,88.022323 157.40931,84.610843 L 157.40931,116.20116 L 148.50047,113.02361 L 148.50047,42.903043 C 149.96253,41.109583 151.84372,39.569543 154.12454,38.263433 C 159.42696,35.173603 165.86978,33.584823 173.45302,33.506853 L 173.57973,33.633563 C 180.50991,33.545833 185.85132,36.391993 189.60395,42.162263 C 193.10315,47.454933 194.85763,54.238913 194.85763,62.533683 z \" id=\"path46\" style=\"fill:#646464;fill-opacity:1\"/>\n",
686 " <path d=\"M 184.61344,61.929363 C 184.61344,47.367213 180.46118,39.891193 172.15666,39.481813 C 168.85239,39.325863 165.62611,39.852203 162.48754,41.070593 C 159.98254,41.967323 158.2963,42.854313 157.40931,43.751043 L 157.40931,78.509163 C 162.72147,81.842673 167.43907,83.392453 171.55234,83.148783 C 180.25649,82.573703 184.61344,75.507063 184.61344,61.929363 z M 194.85763,62.533683 C 194.85763,69.931723 193.12265,76.072393 189.63319,80.955683 C 185.7441,86.482283 180.35396,89.328433 173.46277,89.484393 C 168.26757,89.650093 162.91642,88.022323 157.40931,84.610843 L 157.40931,116.20116 L 148.50047,113.02361 L 148.50047,42.903043 C 149.96253,41.109583 151.84372,39.569543 154.12454,38.263433 C 159.42696,35.173603 165.86978,33.584823 173.45302,33.506853 L 173.57973,33.633563 C 180.50991,33.545833 185.85132,36.391993 189.60395,42.162263 C 193.10315,47.454933 194.85763,54.238913 194.85763,62.533683 z \" id=\"path46\" style=\"fill:#646464;fill-opacity:1\"/>\n",
665 " <path d=\"M 249.30487,83.265743 C 249.30487,93.188283 248.31067,100.05998 246.32227,103.88084 C 244.32411,107.7017 240.52275,110.75254 234.90842,113.02361 C 230.35653,114.81707 225.43425,115.79178 220.15133,115.95748 L 218.67952,110.34316 C 224.05016,109.61213 227.83204,108.88109 230.02513,108.15006 C 234.34309,106.688 237.30621,104.44617 238.93397,101.44406 C 240.24008,98.997543 240.88339,94.328693 240.88339,87.418003 L 240.88339,85.098203 C 234.79146,87.866373 228.40711,89.240713 221.73036,89.240713 C 217.34417,89.240713 213.47457,87.866373 210.14107,85.098203 C 206.39818,82.086343 204.52674,78.265483 204.52674,73.635623 L 204.52674,36.557693 L 213.43558,33.506853 L 213.43558,70.828453 C 213.43558,74.815013 214.7222,77.885353 217.29543,80.039463 C 219.86866,82.193563 223.20217,83.226753 227.2862,83.148783 C 231.37023,83.061053 235.74667,81.482023 240.39603,78.392203 L 240.39603,34.851953 L 249.30487,34.851953 L 249.30487,83.265743 z \" id=\"path48\" style=\"fill:#646464;fill-opacity:1\"/>\n",
687 " <path d=\"M 249.30487,83.265743 C 249.30487,93.188283 248.31067,100.05998 246.32227,103.88084 C 244.32411,107.7017 240.52275,110.75254 234.90842,113.02361 C 230.35653,114.81707 225.43425,115.79178 220.15133,115.95748 L 218.67952,110.34316 C 224.05016,109.61213 227.83204,108.88109 230.02513,108.15006 C 234.34309,106.688 237.30621,104.44617 238.93397,101.44406 C 240.24008,98.997543 240.88339,94.328693 240.88339,87.418003 L 240.88339,85.098203 C 234.79146,87.866373 228.40711,89.240713 221.73036,89.240713 C 217.34417,89.240713 213.47457,87.866373 210.14107,85.098203 C 206.39818,82.086343 204.52674,78.265483 204.52674,73.635623 L 204.52674,36.557693 L 213.43558,33.506853 L 213.43558,70.828453 C 213.43558,74.815013 214.7222,77.885353 217.29543,80.039463 C 219.86866,82.193563 223.20217,83.226753 227.2862,83.148783 C 231.37023,83.061053 235.74667,81.482023 240.39603,78.392203 L 240.39603,34.851953 L 249.30487,34.851953 L 249.30487,83.265743 z \" id=\"path48\" style=\"fill:#646464;fill-opacity:1\"/>\n",
666 " <path d=\"M 284.08249,88.997033 C 283.02006,89.084753 282.04535,89.123743 281.14862,89.123743 C 276.10937,89.123743 272.18129,87.924853 269.37413,85.517323 C 266.57671,83.109793 265.17314,79.786033 265.17314,75.546053 L 265.17314,40.456523 L 259.07146,40.456523 L 259.07146,34.851953 L 265.17314,34.851953 L 265.17314,19.968143 L 274.07223,16.800333 L 274.07223,34.851953 L 284.08249,34.851953 L 284.08249,40.456523 L 274.07223,40.456523 L 274.07223,75.302373 C 274.07223,78.645623 274.96896,81.014163 276.76243,82.398253 C 278.30247,83.538663 280.74899,84.191723 284.08249,84.357423 L 284.08249,88.997033 z \" id=\"path50\" style=\"fill:#646464;fill-opacity:1\"/>\n",
688 " <path d=\"M 284.08249,88.997033 C 283.02006,89.084753 282.04535,89.123743 281.14862,89.123743 C 276.10937,89.123743 272.18129,87.924853 269.37413,85.517323 C 266.57671,83.109793 265.17314,79.786033 265.17314,75.546053 L 265.17314,40.456523 L 259.07146,40.456523 L 259.07146,34.851953 L 265.17314,34.851953 L 265.17314,19.968143 L 274.07223,16.800333 L 274.07223,34.851953 L 284.08249,34.851953 L 284.08249,40.456523 L 274.07223,40.456523 L 274.07223,75.302373 C 274.07223,78.645623 274.96896,81.014163 276.76243,82.398253 C 278.30247,83.538663 280.74899,84.191723 284.08249,84.357423 L 284.08249,88.997033 z \" id=\"path50\" style=\"fill:#646464;fill-opacity:1\"/>\n",
667 " <path d=\"M 338.02288,88.266003 L 329.11404,88.266003 L 329.11404,53.878273 C 329.11404,50.379063 328.29528,47.367213 326.66753,44.852463 C 324.78634,42.006313 322.17411,40.583233 318.82112,40.583233 C 314.73708,40.583233 309.6296,42.737343 303.4987,47.045563 L 303.4987,88.266003 L 294.58985,88.266003 L 294.58985,6.0687929 L 303.4987,3.2616329 L 303.4987,40.700203 C 309.191,36.557693 315.40963,34.481563 322.16436,34.481563 C 326.88196,34.481563 330.70282,36.070333 333.62694,39.238143 C 336.56082,42.405943 338.02288,46.353513 338.02288,51.071103 L 338.02288,88.266003 L 338.02288,88.266003 z \" id=\"path52\" style=\"fill:#646464;fill-opacity:1\"/>\n",
689 " <path d=\"M 338.02288,88.266003 L 329.11404,88.266003 L 329.11404,53.878273 C 329.11404,50.379063 328.29528,47.367213 326.66753,44.852463 C 324.78634,42.006313 322.17411,40.583233 318.82112,40.583233 C 314.73708,40.583233 309.6296,42.737343 303.4987,47.045563 L 303.4987,88.266003 L 294.58985,88.266003 L 294.58985,6.0687929 L 303.4987,3.2616329 L 303.4987,40.700203 C 309.191,36.557693 315.40963,34.481563 322.16436,34.481563 C 326.88196,34.481563 330.70282,36.070333 333.62694,39.238143 C 336.56082,42.405943 338.02288,46.353513 338.02288,51.071103 L 338.02288,88.266003 L 338.02288,88.266003 z \" id=\"path52\" style=\"fill:#646464;fill-opacity:1\"/>\n",
668 " <path d=\"M 385.37424,60.525783 C 385.37424,54.930953 384.31182,50.310833 382.19669,46.655673 C 379.68195,42.201253 375.77337,39.852203 370.49044,39.608523 C 360.72386,40.173863 355.85032,47.172273 355.85032,60.584263 C 355.85032,66.734683 356.86401,71.871393 358.91089,75.994413 C 361.52312,81.248093 365.44145,83.840823 370.66589,83.753103 C 380.47146,83.675123 385.37424,75.935933 385.37424,60.525783 z M 395.13109,60.584263 C 395.13109,68.547643 393.09395,75.175663 389.02941,80.468333 C 384.5555,86.394563 378.37584,89.367423 370.49044,89.367423 C 362.67328,89.367423 356.58135,86.394563 352.18541,80.468333 C 348.19885,75.175663 346.21044,68.547643 346.21044,60.584263 C 346.21044,53.098503 348.36455,46.801883 352.67276,41.674913 C 357.22466,36.236033 363.20937,33.506853 370.6074,33.506853 C 378.00545,33.506853 384.02914,36.236033 388.66877,41.674913 C 392.97697,46.801883 395.13109,53.098503 395.13109,60.584263 z \" id=\"path54\" style=\"fill:#646464;fill-opacity:1\"/>\n",
690 " <path d=\"M 385.37424,60.525783 C 385.37424,54.930953 384.31182,50.310833 382.19669,46.655673 C 379.68195,42.201253 375.77337,39.852203 370.49044,39.608523 C 360.72386,40.173863 355.85032,47.172273 355.85032,60.584263 C 355.85032,66.734683 356.86401,71.871393 358.91089,75.994413 C 361.52312,81.248093 365.44145,83.840823 370.66589,83.753103 C 380.47146,83.675123 385.37424,75.935933 385.37424,60.525783 z M 395.13109,60.584263 C 395.13109,68.547643 393.09395,75.175663 389.02941,80.468333 C 384.5555,86.394563 378.37584,89.367423 370.49044,89.367423 C 362.67328,89.367423 356.58135,86.394563 352.18541,80.468333 C 348.19885,75.175663 346.21044,68.547643 346.21044,60.584263 C 346.21044,53.098503 348.36455,46.801883 352.67276,41.674913 C 357.22466,36.236033 363.20937,33.506853 370.6074,33.506853 C 378.00545,33.506853 384.02914,36.236033 388.66877,41.674913 C 392.97697,46.801883 395.13109,53.098503 395.13109,60.584263 z \" id=\"path54\" style=\"fill:#646464;fill-opacity:1\"/>\n",
669 " <path d=\"M 446.20583,88.266003 L 437.29699,88.266003 L 437.29699,51.928853 C 437.29699,47.942293 436.0981,44.832973 433.70032,42.591133 C 431.30253,40.359053 428.10549,39.277123 424.11893,39.364853 C 419.8887,39.442833 415.86314,40.826913 412.04229,43.507363 L 412.04229,88.266003 L 403.13345,88.266003 L 403.13345,42.405943 C 408.26042,38.672813 412.97801,36.236033 417.28621,35.095623 C 421.35076,34.033193 424.93769,33.506853 428.02752,33.506853 C 430.14264,33.506853 432.13104,33.711543 434.00248,34.120913 C 437.50169,34.929923 440.34783,36.430973 442.54093,38.633823 C 444.98744,41.070593 446.20583,43.994723 446.20583,47.415943 L 446.20583,88.266003 z \" id=\"path56\" style=\"fill:#646464;fill-opacity:1\"/>\n",
691 " <path d=\"M 446.20583,88.266003 L 437.29699,88.266003 L 437.29699,51.928853 C 437.29699,47.942293 436.0981,44.832973 433.70032,42.591133 C 431.30253,40.359053 428.10549,39.277123 424.11893,39.364853 C 419.8887,39.442833 415.86314,40.826913 412.04229,43.507363 L 412.04229,88.266003 L 403.13345,88.266003 L 403.13345,42.405943 C 408.26042,38.672813 412.97801,36.236033 417.28621,35.095623 C 421.35076,34.033193 424.93769,33.506853 428.02752,33.506853 C 430.14264,33.506853 432.13104,33.711543 434.00248,34.120913 C 437.50169,34.929923 440.34783,36.430973 442.54093,38.633823 C 444.98744,41.070593 446.20583,43.994723 446.20583,47.415943 L 446.20583,88.266003 z \" id=\"path56\" style=\"fill:#646464;fill-opacity:1\"/>\n",
670 " <path d=\"M 60.510156,6.3979729 C 55.926503,6.4192712 51.549217,6.8101906 47.697656,7.4917229 C 36.35144,9.4962267 34.291407,13.691825 34.291406,21.429223 L 34.291406,31.647973 L 61.103906,31.647973 L 61.103906,35.054223 L 34.291406,35.054223 L 24.228906,35.054223 C 16.436447,35.054223 9.6131468,39.73794 7.4789058,48.647973 C 5.0170858,58.860939 4.9078907,65.233996 7.4789058,75.897973 C 9.3848341,83.835825 13.936449,89.491721 21.728906,89.491723 L 30.947656,89.491723 L 30.947656,77.241723 C 30.947656,68.391821 38.6048,60.585475 47.697656,60.585473 L 74.478906,60.585473 C 81.933857,60.585473 87.885159,54.447309 87.885156,46.960473 L 87.885156,21.429223 C 87.885156,14.162884 81.755176,8.7044455 74.478906,7.4917229 C 69.872919,6.7249976 65.093809,6.3766746 60.510156,6.3979729 z M 46.010156,14.616723 C 48.779703,14.616723 51.041406,16.915369 51.041406,19.741723 C 51.041404,22.558059 48.779703,24.835473 46.010156,24.835473 C 43.23068,24.835472 40.978906,22.558058 40.978906,19.741723 C 40.978905,16.91537 43.23068,14.616723 46.010156,14.616723 z \" id=\"path1948\" style=\"fill:url(#linearGradient1478);fill-opacity:1\"/>\n",
692 " <path d=\"M 60.510156,6.3979729 C 55.926503,6.4192712 51.549217,6.8101906 47.697656,7.4917229 C 36.35144,9.4962267 34.291407,13.691825 34.291406,21.429223 L 34.291406,31.647973 L 61.103906,31.647973 L 61.103906,35.054223 L 34.291406,35.054223 L 24.228906,35.054223 C 16.436447,35.054223 9.6131468,39.73794 7.4789058,48.647973 C 5.0170858,58.860939 4.9078907,65.233996 7.4789058,75.897973 C 9.3848341,83.835825 13.936449,89.491721 21.728906,89.491723 L 30.947656,89.491723 L 30.947656,77.241723 C 30.947656,68.391821 38.6048,60.585475 47.697656,60.585473 L 74.478906,60.585473 C 81.933857,60.585473 87.885159,54.447309 87.885156,46.960473 L 87.885156,21.429223 C 87.885156,14.162884 81.755176,8.7044455 74.478906,7.4917229 C 69.872919,6.7249976 65.093809,6.3766746 60.510156,6.3979729 z M 46.010156,14.616723 C 48.779703,14.616723 51.041406,16.915369 51.041406,19.741723 C 51.041404,22.558059 48.779703,24.835473 46.010156,24.835473 C 43.23068,24.835472 40.978906,22.558058 40.978906,19.741723 C 40.978905,16.91537 43.23068,14.616723 46.010156,14.616723 z \" id=\"path1948\" style=\"fill:url(#linearGradient1478);fill-opacity:1\"/>\n",
671 " <path d=\"M 91.228906,35.054223 L 91.228906,46.960473 C 91.228906,56.191228 83.403011,63.960472 74.478906,63.960473 L 47.697656,63.960473 C 40.361823,63.960473 34.291407,70.238956 34.291406,77.585473 L 34.291406,103.11672 C 34.291406,110.38306 40.609994,114.65704 47.697656,116.74172 C 56.184987,119.23733 64.323893,119.68835 74.478906,116.74172 C 81.229061,114.78733 87.885159,110.85411 87.885156,103.11672 L 87.885156,92.897973 L 61.103906,92.897973 L 61.103906,89.491723 L 87.885156,89.491723 L 101.29141,89.491723 C 109.08387,89.491723 111.98766,84.056315 114.69765,75.897973 C 117.49698,67.499087 117.37787,59.422197 114.69765,48.647973 C 112.77187,40.890532 109.09378,35.054223 101.29141,35.054223 L 91.228906,35.054223 z M 76.166406,99.710473 C 78.945884,99.710476 81.197656,101.98789 81.197656,104.80422 C 81.197654,107.63057 78.945881,109.92922 76.166406,109.92922 C 73.396856,109.92922 71.135156,107.63057 71.135156,104.80422 C 71.135158,101.98789 73.396853,99.710473 76.166406,99.710473 z \" id=\"path1950\" style=\"fill:url(#linearGradient1475);fill-opacity:1\"/>\n",
693 " <path d=\"M 91.228906,35.054223 L 91.228906,46.960473 C 91.228906,56.191228 83.403011,63.960472 74.478906,63.960473 L 47.697656,63.960473 C 40.361823,63.960473 34.291407,70.238956 34.291406,77.585473 L 34.291406,103.11672 C 34.291406,110.38306 40.609994,114.65704 47.697656,116.74172 C 56.184987,119.23733 64.323893,119.68835 74.478906,116.74172 C 81.229061,114.78733 87.885159,110.85411 87.885156,103.11672 L 87.885156,92.897973 L 61.103906,92.897973 L 61.103906,89.491723 L 87.885156,89.491723 L 101.29141,89.491723 C 109.08387,89.491723 111.98766,84.056315 114.69765,75.897973 C 117.49698,67.499087 117.37787,59.422197 114.69765,48.647973 C 112.77187,40.890532 109.09378,35.054223 101.29141,35.054223 L 91.228906,35.054223 z M 76.166406,99.710473 C 78.945884,99.710476 81.197656,101.98789 81.197656,104.80422 C 81.197654,107.63057 78.945881,109.92922 76.166406,109.92922 C 73.396856,109.92922 71.135156,107.63057 71.135156,104.80422 C 71.135158,101.98789 73.396853,99.710473 76.166406,99.710473 z \" id=\"path1950\" style=\"fill:url(#linearGradient1475);fill-opacity:1\"/>\n",
672 " <path d=\"M 463.5544,26.909383 L 465.11635,26.909383 L 465.11635,17.113143 L 468.81648,17.113143 L 468.81648,15.945483 L 459.85427,15.945483 L 459.85427,17.113143 L 463.5544,17.113143 L 463.5544,26.909383 M 470.20142,26.909383 L 471.53589,26.909383 L 471.53589,17.962353 L 474.4323,26.908259 L 475.91799,26.908259 L 478.93615,17.992683 L 478.93615,26.909383 L 480.39194,26.909383 L 480.39194,15.945483 L 478.46605,15.945483 L 475.16774,25.33834 L 472.35477,15.945483 L 470.20142,15.945483 L 470.20142,26.909383\" id=\"text3004\" style=\"font-size:15.16445827px;font-style:normal;font-weight:normal;line-height:125%;fill:#646464;fill-opacity:1;stroke:none;stroke-width:1px;stroke-linecap:butt;stroke-linejoin:miter;stroke-opacity:1;font-family:Bitstream Vera Sans\"/>\n",
694 " <path d=\"M 463.5544,26.909383 L 465.11635,26.909383 L 465.11635,17.113143 L 468.81648,17.113143 L 468.81648,15.945483 L 459.85427,15.945483 L 459.85427,17.113143 L 463.5544,17.113143 L 463.5544,26.909383 M 470.20142,26.909383 L 471.53589,26.909383 L 471.53589,17.962353 L 474.4323,26.908259 L 475.91799,26.908259 L 478.93615,17.992683 L 478.93615,26.909383 L 480.39194,26.909383 L 480.39194,15.945483 L 478.46605,15.945483 L 475.16774,25.33834 L 472.35477,15.945483 L 470.20142,15.945483 L 470.20142,26.909383\" id=\"text3004\" style=\"font-size:15.16445827px;font-style:normal;font-weight:normal;line-height:125%;fill:#646464;fill-opacity:1;stroke:none;stroke-width:1px;stroke-linecap:butt;stroke-linejoin:miter;stroke-opacity:1;font-family:Bitstream Vera Sans\"/>\n",
673 " <path d=\"M 110.46717 132.28575 A 48.948284 8.6066771 0 1 1 12.570599,132.28575 A 48.948284 8.6066771 0 1 1 110.46717 132.28575 z\" id=\"path1894\" style=\"opacity:0.44382019;fill:url(#radialGradient1480);fill-opacity:1;fill-rule:nonzero;stroke:none;stroke-width:20;stroke-miterlimit:4;stroke-dasharray:none;stroke-opacity:1\" transform=\"matrix(0.73406,0,0,0.809524,16.24958,27.00935)\"/>\n",
695 " <path d=\"M 110.46717 132.28575 A 48.948284 8.6066771 0 1 1 12.570599,132.28575 A 48.948284 8.6066771 0 1 1 110.46717 132.28575 z\" id=\"path1894\" style=\"opacity:0.44382019;fill:url(#radialGradient1480);fill-opacity:1;fill-rule:nonzero;stroke:none;stroke-width:20;stroke-miterlimit:4;stroke-dasharray:none;stroke-opacity:1\" transform=\"matrix(0.73406,0,0,0.809524,16.24958,27.00935)\"/>\n",
674 " </g>\n",
696 " </g>\n",
675 "</svg>"
697 "</svg>"
676 ],
698 ],
677 "text": [
699 "text": [
678 "<IPython.core.display.SVG at 0xa7e6e6c>"
700 "<IPython.core.display.SVG at 0xa7e6e6c>"
679 ]
701 ]
680 }
702 }
681 ],
703 ],
682 "prompt_number": 13
704 "prompt_number": 13
683 },
705 },
684 {
706 {
685 "cell_type": "markdown",
707 "cell_type": "markdown",
686 "metadata": {
708 "metadata": {
687 "slideshow": {
709 "slideshow": {
688 "slide_type": "header_slide"
710 "slide_type": "header_slide"
689 }
711 }
690 },
712 },
691 "source": [
713 "source": [
692 "#### Embedded vs Non-embedded Images"
714 "#### Embedded vs Non-embedded Images"
693 ]
715 ]
694 },
716 },
695 {
717 {
696 "cell_type": "markdown",
718 "cell_type": "markdown",
697 "metadata": {},
719 "metadata": {},
698 "source": [
720 "source": [
699 "As of IPython 0.13, images are embedded by default for compatibility with QtConsole, and the ability to still be displayed offline.\n",
721 "As of IPython 0.13, images are embedded by default for compatibility with QtConsole, and the ability to still be displayed offline.\n",
700 "\n",
722 "\n",
701 "Let's look at the differences:"
723 "Let's look at the differences:"
702 ]
724 ]
703 },
725 },
704 {
726 {
705 "cell_type": "code",
727 "cell_type": "code",
706 "collapsed": false,
728 "collapsed": false,
707 "input": [
729 "input": [
708 "# by default Image data are embedded\n",
730 "# by default Image data are embedded\n",
709 "Embed = Image( 'http://scienceview.berkeley.edu/view/images/newview.jpg')\n",
731 "Embed = Image( 'http://scienceview.berkeley.edu/view/images/newview.jpg')\n",
710 "\n",
732 "\n",
711 "# if kwarg `url` is given, the embedding is assumed to be false\n",
733 "# if kwarg `url` is given, the embedding is assumed to be false\n",
712 "SoftLinked = Image(url='http://scienceview.berkeley.edu/view/images/newview.jpg')\n",
734 "SoftLinked = Image(url='http://scienceview.berkeley.edu/view/images/newview.jpg')\n",
713 "\n",
735 "\n",
714 "# In each case, embed can be specified explicitly with the `embed` kwarg\n",
736 "# In each case, embed can be specified explicitly with the `embed` kwarg\n",
715 "# ForceEmbed = Image(url='http://scienceview.berkeley.edu/view/images/newview.jpg', embed=True)"
737 "# ForceEmbed = Image(url='http://scienceview.berkeley.edu/view/images/newview.jpg', embed=True)"
716 ],
738 ],
717 "language": "python",
739 "language": "python",
718 "metadata": {
740 "metadata": {
719 "slideshow": {
741 "slideshow": {
720 "slide_type": "slide"
742 "slide_type": "slide"
721 }
743 }
722 },
744 },
723 "outputs": [],
745 "outputs": [],
724 "prompt_number": 14
746 "prompt_number": 14
725 },
747 },
726 {
748 {
727 "cell_type": "markdown",
749 "cell_type": "markdown",
728 "metadata": {
750 "metadata": {
729 "slideshow": {
751 "slideshow": {
730 "slide_type": "skip"
752 "slide_type": "skip"
731 }
753 }
732 },
754 },
733 "source": [
755 "source": [
734 "Today's image from a webcam at Berkeley, (at the time I created this notebook). This should also work in the Qtconsole.\n",
756 "Today's image from a webcam at Berkeley, (at the time I created this notebook). This should also work in the Qtconsole.\n",
735 "Drawback is that the saved notebook will be larger, but the image will still be present offline."
757 "Drawback is that the saved notebook will be larger, but the image will still be present offline."
736 ]
758 ]
737 },
759 },
738 {
760 {
739 "cell_type": "code",
761 "cell_type": "code",
740 "collapsed": false,
762 "collapsed": false,
741 "input": [
763 "input": [
742 "Embed"
764 "Embed"
743 ],
765 ],
744 "language": "python",
766 "language": "python",
745 "metadata": {
767 "metadata": {
746 "slideshow": {
768 "slideshow": {
747 "slide_type": "slide"
769 "slide_type": "slide"
748 }
770 }
749 },
771 },
750 "outputs": [
772 "outputs": [
751 {
773 {
752 "jpeg": "/9j/4AAQSkZJRgABAQEAtAC0AAD//gAdQ29weXJpZ2h0IDIwMTIgVS5DLiBSZWdlbnRz/+Ef/kV4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\nAI/3oAgjjIoAgcxNAHbj6RQDHOaAfaJinHMjg0B//9k=\n",
774 "jpeg": "/9j/4AAQSkZJRgABAQEAtAC0AAD//gAdQ29weXJpZ2h0IDIwMTIgVS5DLiBSZWdlbnRz/+Ef/kV4\naWYAAElJKgAIAAAACgAOAQIAIAAAAIYAAAAPAQIABgAAAKYAAAAQAQIAFAAAAKwAAAASAQMAAQAA\nAAEAAAAaAQUAAQAAAMwAAAAbAQUAAQAAANQAAAAoAQMAAQAAAAIAAAAyAQIAFAAAANwAAAATAgMA\nAQAAAAIAAABphwQAAQAAAPAAAADuDAAAICAgICAgICAgICAgICAgICAgICAgICAgICAgICAgIABD\nYW5vbgBDYW5vbiBQb3dlclNob3QgRzEwAAAAAAAAAAAAAAAAALQAAAABAAAAtAAAAAEAAAAyMDEy\nOjEyOjE4IDA4OjAxOjQ0ACAAmoIFAAEAAAB2AgAAnYIFAAEAAAB+AgAAJ4gDAAEAAACQAQAAAJAH\nAAQAAAAwMjIxA5ACABQAAACGAgAABJACABQAAACaAgAAAZEHAAQAAAABAgMAApEFAAEAAACuAgAA\nAZIKAAEAAAC2AgAAApIFAAEAAAC+AgAABJIKAAEAAADGAgAABZIFAAEAAADOAgAAB5IDAAEAAAAF\nAAAACZIDAAEAAAAQAAAACpIFAAEAAADWAgAAfJIHALoIAADeAgAAhpIHAAgBAACYCwAAAKAHAAQA\nAAAwMTAwAaADAAEAAAABAAAAAqADAAEAAAAgCgAAA6ADAAEAAACYBwAABaAEAAEAAACgDAAADqIF\nAAEAAADWDAAAD6IFAAEAAADeDAAAEKIDAAEAAAACAAAAF6IDAAEAAAACAAAAAKMHAAEAAAADAAAA\nAaQDAAEAAAAAAAAAAqQDAAEAAAAAAAAAA6QDAAEAAAAAAAAABKQFAAEAAADmDAAABqQDAAEAAAAA\nAAAAAAAAAAoAAAAKAAAAIAAAAAoAAAAyMDEyOjEyOjE4IDA4OjAxOjQ0ADIwMTI6MTI6MTggMDg6\nMDE6NDQABQAAAAEAAAAAAAAAIAAAAGsAAAAgAAAAAAAAAAMAAABrAAAAIAAAADgmAADoAwAAGQAB\nAAMAMAAAABwEAAACAAMABAAAAHwEAAADAAMABAAAAIQEAAAEAAMAIgAAAIwEAAAAAAMABgAAANAE\nAAAGAAIAFwAAANwEAAAHAAIAFgAAAPwEAAAIAAQAAQAAAKBZEQAJAAIAIAAAABQFAAANAAQAogAA\nADQFAAAQAAQAAQAAAAAASQImAAMAMAAAALwHAAATAAMABAAAABwIAAAYAAEAAAEAACQIAAAZAAMA\nAQAAAAEAAAAcAAMAAQAAAAAAAAAdAAMAEAAAACQJAAAeAAQAAQAAAAABAgEfAAMARQAAAEQJAAAi\nAAMA0AAAAM4JAAAjAAQAAgAAAG4LAAAnAAMABQAAAHYLAAAoAAEAEAAAAIALAADQAAQAAQAAAAAA\nAAAtAAQAAQAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAYAACAAAABQAAAAAAAAAEAP//AQAGAAEAAAAA\nAAAAAAAPAAMAAQABQAEA/3///yR31BfoA2sAwAAAAAAAAAAAAAAAAAAAAAAAQBFAEQAAAAD//wAA\n/3//fwAAAAD//zIAAgA4JisB4AAAAAAAAAAAAEQAQACgAD3/awAAAAAAAAAAAAAABQAAAAAAAAAA\nAAAAAAAAAAMAmRkAAGsAAAAAAAAA/v/6AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAASU1HOlBv\nd2VyU2hvdCBHMTAgSlBFRwAAAAAAAAAAAABGaXJtd2FyZSBWZXJzaW9uIDEuMDIAAABTY2llbmNl\nVmlldwAAAAAAAAAAAAAAAAAAAAAAAAAAAAMAAABbAgAAmwEAAAAAAAAAAAAAAAAAAEMBAAAAAAAA\nwAAAAAAAAAAAAAAAAAAAAC7///9DAQAAIAEAAAUBAAAAAAAAAAAAAEv///+g////oP///+v////5\n////AAAAAAAAAAAJAAAACgAAALb9//8W/v//5v3//0MBAADaAQAABQEAAAAAAAAAAAAAFv7//+b9\n//8AAAAAAAAAAAEAAAACAAAABQAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nABQAAAAoAAAAKAAAAFQEAABJAgAAJgUAAEcDAACaAwAAgwIAAAcEAABHAwAABAAAACkAAADYAwAA\nnQIAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAGYEAACaAwAAzAQAAP8FAAAAAAAA2AMAAJ0CAADn\n////YgQAAHQEAAC9CgAAYgQAAAAAAAAAAAAAAAAAAAEAAABDAQAA4AEAALb9//+TAgAABQEAAAIA\nAABAAAAAaAEAAJcAAAAAAAAADgQAAAAAAAAAAAAAXwQAAAAAAAAAAAAAAAAAAAAAAABAAAAAAAAA\nAFT+//8MBAAAFQQAABUEAAARBAAADgQAAAwEAAAHBAAABwQAABIEAAAOBAAA//8AAAAAAADABQAA\nKAIAAFQBAACAAAAAbwQAAKkBAAAJAQAAYwAAAAAAAAAAAAAAAwAAAAMAAAADAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA//8AAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAABkAAAANAAAAG+uB52AABAAJAAkAIAqY\nB2QAZAASABIAEgASABIAEgASABIAEgASABIAEgASABIAEgASABIAEgDu/wAAEgDu/wAAEgDu/wAA\nEgDu/+7/7v8AAAAAAAASABIAEgAIAAAAAAADAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAACAAAQAAAAIAAgACAAIAAAAAAAAAAAAAAAAAAAAAAAAAigABAAAABAAIAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAoAEAAAAAEAAIAAEAAQCAAuABAAAAAAAAAAAAAAgAgAEAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAIAAAAAAAAAAoAAQAAAAAAAACIXEK3L+FUJVCJsJVgaq7+\nSUkqAN4CAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAEAAEAAgAEAAAAUjk4\nAAIABwAEAAAAMDEwMAEQAwABAAAAIAoAAAIQAwABAAAAmAcAAAAAAAAAjScAJAEAAMCpHQDbAAAA\nQBEAAEARAAAGAAMBAwABAAAABgAAABoBBQABAAAAPA0AABsBBQABAAAARA0AACgBAwABAAAAAgAA\nAAECBAABAAAA9BMAAAICBAABAAAAEgoAAAAAAAC0AAAAAQAAALQAAAABAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA\nAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA/9j/2wCEAAkGBggGBQkIBwgK\nCQkLDRYPDQwMDRwTFRAWIR0jIiEcIB8kKTQsJCcxJx4fLT0tMTY3Ojo6Iio/RD44QjM3OTYBCQkJ\nDAoMFAwMFA8KCgoPGhoKChoaTxoaGhoaT09PT09PT09PT09PT09PT09PT09PT09PT09PT09PT09P\nT09PT//AABEIAHgAoAMBIQACEQEDEQH/xAGiAAABBQEBAQEBAQAAAAAAAAAAAQIDBAUGBwgJCgsB\nAAMBAQEBAQEBAQEAAAAAAAABAgMEBQYHCAkKCxAAAgEDAwIEAwUFBAQAAAF9AQIDAAQRBRIhMUEG\nE1FhByJxFDKBkaEII0KxwRVS0fAkM2JyggkKFhcYGRolJicoKSo0NTY3ODk6Q0RFRkdISUpTVFVW\nV1hZWmNkZWZnaGlqc3R1dnd4eXqDhIWGh4iJipKTlJWWl5iZmqKjpKWmp6ipqrKztLW2t7i5usLD\nxMXGx8jJytLT1NXW19jZ2uHi4+Tl5ufo6erx8vP09fb3+Pn6EQACAQIEBAMEBwUEBAABAncAAQID\nEQQFITEGEkFRB2FxEyIygQgUQpGhscEJIzNS8BVictEKFiQ04SXxFxgZGiYnKCkqNTY3ODk6Q0RF\nRkdISUpTVFVWV1hZWmNkZWZnaGlqc3R1dnd4eXqCg4SFhoeIiYqSk5SVlpeYmZqio6Slpqeoqaqy\ns7S1tre4ubrCw8TFxsfIycrS09TV1tfY2dri4+Tl5ufo6ery8/T19vf4+fr/2gAMAwEAAhEDEQA/\nAPFyKYRQAnQ5pMUAJijFABijFABijFABikxQAYoxQAYoxQAYoxQAYoxQBYNMNACEUlABRQAlGKAC\nigApKAFpKACigAooAKKAJ2ppoAbRQAlFABRQAUlABRQAUUAFFABRQAUUATGmmgBKKAExRQAUlABR\nQAUUAGKKAEooAKKACigCYimkUABFJigAxRQAmKMUAFFACUUAFFABRQAUUAFJQBYIpuKADFJigBMU\nYoATFGKAEooAKKACkoAKKACigAoxQB0C+H5JFVlmgwRkZkXnnHHNV5NFmS1a4JAiXqzAjuBx69az\nU7u3UpqxX+xFwTG4k6fd5/lTXs3jzuOCB0wc0+YViP7M5UNxg981I+mXSRGQwsFBwSfWndILEC27\nt0AHGfmYD+dMMZB5x+dO4h0cDy8IAx5OAeeBmmFcdxRcACknGR+dGw4zx+dMBpowaAAj3FFABRtP\npQAEEUYoAv8AnXXIEk+RyQAagd25Bd+eoxSskF7kQypypI9xUjTzugRpZCo6KWJFGgCedLuz5j7v\nXcaBPMowJHA/3jRZANeWSTh3ZuMcmmYpgHNP8ps4yvTP3hQA5LcvGWDLkH7vc/T86e9hcIATGeRk\nAdaVx2IzayhlUxsC3TPenLZTtnETdCeRii6EQlSpwRgjtSmNggcqdpJAPY/5zTAbilGcYzQAuKXa\naANqHXGj3NvO84zjI3AYPJz9fzqF9VkLOZBFuYd4+hz1GOhqLPrrbYrT0vuN/tNk2RqsTLk8MvQ5\nPXP1px1gNL5nlxK6sCrYJJx+PHSjl1v+AX6DDqShy+yHeWJBxyM857+tWBrt1tKokAV23FvIXr9c\nVPJd3dx83QpvcxyyCVo0J5yDjH5VJK0JjUxrFs3DOeDn86dmu9haMrtIjAKyr8ucBdv86tWMEl9K\nsNrA7ORgBAGbOfYe9Nuyu9EgWrsjbgsrawkVrxol8oNutflklPrnjA/E8Y6VR1vXE1TUHuIrWKGI\nEBQIlIVR0HT0rKN5O+0Vt53Ldlp16kFuwvGmmNlH5PzH5Ivun2xj1FJBbyeR9ra0PkhwDthJGOM5\nIPA5/WqV7tJ3a6XF2bViG6aG3faY1bcSVZouQMkeopyXlq9t5C20anduJKlmGeDj5sen+NaJvfR6\nENLbVCSfZJIY1ijQuD8x2sCfrzj8qaktrCVYQglQQRtyD74JNLWw7IvQanp6zZltUkAbeAIkXcOv\nIwePbNag8QaGdOYJpNr9qPCZiyAPX68459KLW1106XC/p62OVN3FvRmXKgAEKoXt+tKTayW5Ik2t\nu4Tbz9c/0ofMttfINCWRLV8CMeU55yzkkfkv+c1Zh0+xdXL3kAcPtCyhkDjn5g2PYdcdaTk0nZNt\nbIEv+HKxk0/y2TLZ+UZXJz156irE+hT2QDTKvzKCvlyq2RxyME55NJOUV73V6A1d6DYbGxVFEtzu\nZuNqhhsb345H0NNGnq9wsKq2X6FiFX/9VNyaElct3ehmwkQSSw3DbQSkTbgPYsOM/QnH4VLLqd5H\nYvaWkawKR8yQKBuHYk9T1Pes3abV+n2TTWK069SidOeOMSXpaCLPK/xt7gf41VlPnR+XCnlW6fMW\nYYLfU9z7e9XGSlqvhT0fclq2j3ZXyZCEGVUHAUmlmdyojQsUHAweo+laEgwleKM7XPGAfTmpLkXQ\nZZZ1kRxgZIwenH6UrxvbS76BqJ5hn3OZisvXH94/4/4VGjuuME+39aACSWSTBkdiQAoLEnjFO3+Y\nTwq/KehAqrCKpoH1oAnRiXDBmaQnqM5H0pZ5JLmUvNI8pHGXYk4pWV79Vsw8vwInMWz5C27PQjtU\n0OoTQRqsDFCpyGHUHOeD2/8ArUNXVmGwxbmRWB8xuDkc96mi1LyxJut4ZC/98H5fpg0WQXEEs08q\nqmBnptHrWlGLvRbYyS2jIzEqplyM8c4Ht/WplDmVldL7TGpqLV938KKNzqdxfXM091JveTrvz/Sk\naS5ktFXOIhl9ojxzxyTjmjljFJbJbId223u3uNFzLbDKOrhlIOQDjPY/5/Wo47uaMymJ9u9cMAMY\n5HT0p2TFccLuRYwC2GXkNk5//X71HLdy3Fw007tI7feJNCit+vcLv/gAZ5U2KHGFGRt6VdbVnaxS\nJshkYbcY2gDJ5GPUmk4318xp2K0t3LKMSuGA4AwOKhL5AUYwPYVSSQm29yI0lMQquyMGUkEdxSEk\nnJOaACjpQAUUAWLK/uNPm822k2P64Bx789/eprjVZ7iXfI5cDJCtjAJABIAAA6UdLdHuLlV79Vsy\nH7URwFGM5wefwp82oSSN8qpEpAG1FAH+eKhwTd3d+XQtSsrfiMluPMUkooZvQdB+dRNIW7AfTvVJ\nWEwYlzk80DGKYi9ZX0NnC4+ywyuw+/KpJQ+3IHPvmq1xcPcTNI2FzxhRgAelIBscTSSBVGSegp00\nEltM0UylHU4ZfQ0XV7dew7aX6EBpKYgooAKKACigAooAKKAFwaOlAChiM4OM1J5JKF15UAZP1pN2\nAaqkgkdB15pUfbzjIpgPa4bzFdcKy45FBkEjbpGLMeppWsBCRTTTAKKACigAooAKKACigApaAEpQ\nSOKAAnnil3ADHWgBCc0oNAAaaTQAUUAFFABRQAUUAFFAB1pxQgZI4oAbRQAUUALRQB//2ch9rbjh\ndvOPXPp7U3zLz8haErpayY8r90xycs5JH5L/AJzVmHTrJ43Zr2AMH2hZQybxz8wbHt3x1pOTS6tr\nZAl93cr+Zp/lMmWz8o+UE59+oqxcaBPZIrSqMuMr5cisCOOQQTnk0ryive6vcHq9BkVlYrGvmXG9\n2HCoGGxv9rjkfQ0xdOElyIUV8yH5SSFX9e1U5NCSuXbrQzYSqJJYbh9u4pESwHcgsOM/QnH4VJLq\nd7HZPZ2kawKc5jt1AyPUnqep71k/eav0+yafCvXqUpNMlgXdqG+2jB+ZCD5jdeg/x9aqykyx+XFH\n5VunzFmGC319T7e/1q1JS1Xwp/eS1bfdlbJlIQZVQcBCcUszuVEaFig4GD1H0/OtCRGErxRna7DG\nAR25p86XUZWSVZEYYGW4PtSur20v2DXz9Rd5nLSGYrL1xj7x/wAf8KjV2GME57f1oBhLJJIVMjsx\nA25Yk4GKXcZCeFX5SeCBTArGgfWmInjJLAgkyZ6gHIx6UTSPPIWlkaTGRljzilZXv1WzC/T8CNzE\nF+Qtuz0I7VNDqE8MarAxQqchh1BBzwe3/wBahq6sw2GLcyIwPmNwcjnvU8WqtFHMvkQOZf4nTJT/\nAHfSiyHcaJp55VVCBk8bRjrWpEbrRrHfJZusjMVVpSRn/9j/2wBDAAMCAgICAgMCAgIDAwMDBAYE\nBAQEBAgGBgUGCQgKCgkICQkKDA8MCgsOCwkJDRENDg8QEBEQCgwSExIQEw8QEBD/2wBDAQMDAwQD\nBAgEBAgQCwkLEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQ\nEBD/wAARCAHgAoADASEAAhEBAxEB/8QAHQAAAgIDAQEBAAAAAAAAAAAAAAECBQMEBgcICf/EAEUQ\nAAEDAwMCBQIEBQMCBgAEBwECAxEABCEFEjEGQQcTIlFhcYEIFDKRFSNCobFSwdHh8BYkM2Jy8QkX\nGCVDNEWSorK1/8QAGgEBAQEBAQEBAAAAAAAAAAAAAAEDAgQFBv/EADURAAICAQMCAwcEAgICAwEA\nAAABAhEDBCExEkETUWEFInGBkaHwFLHB0TLhI/EVQgYkUjP/2gAMAwEAAhEDEQA/APzIweJHFRVI\nSOOKAiEiIUI+1Y1JkkgxQEVJGBBIHeoREQnM4oBKGeKjOCOT80AwRGIPv2qEdzxHNANUq9RI+1bu\njWdjqOqW1jqOqs6ZbPLCF3byHFtspPK1BtKlkD4ST8VYpN0yN0rRoqyr4n96FAAQBUKHAkHHGagY\nAx296gHAiSJzwKBHJqgI95oAg/WfmgCIgAH60cqz7c0AoMc/tQYAB70AwPifpRtHbMd+1AChMA8Y\nOKikCP8AFAMgREUYAgJme9AIADmmR9OKAX0oAE0ADmY/apHEYoCJicCKIkwaAAI4oMmZ7d5oBcHH\neaZJJoAJIBImJpwOe9ALntj3oGcfegD680SYzNAKIxBpwZymTQCJIImjIAHINAAExEUEZnvzQDjE\nZ/al7pFAPnHelJ96AZ744pAEdooB98jHcUoMdqAZJBilIHvHvQBiaBEZNAAGO3NEE/4oAjMRQQRz\nQEx5QQoEKKyRt4gJzM/2/vWPJoA5xFBigGQDxSjgf4oBkyIPNA4zmKAWDQO5FAXJyCT2PtUSDiAJ\niqCBSrcIPAqBg8JIPzUAiMYlNRUIIJVzigIqSQCY49hUVYERMnGKAAghMwZ7mKR4McfNAIDHz7Cg\nAkEd470AjI9WPpSJnB5OaAZA7DvSKZPEUAwCZkECogQSVDPxQBtKQaCnuBQCAEd+KBE8UAwIyI96\nUAnHtQDIO2lHp4HvJNABHPsKEhIMyBQAe8E/FEAjHNAAHbj60gBGe3xQARJ+uKcAcY9s0AhIIimQ\nTgD70AEEif2o2kD3NALkZ5+lIAHAyTQEoEccfFI9sk/agCCP6cDvRjv3oBxOKXJjnuKAOOTQJ5oA\nAPJHxSIMjmR2oBjJk5zQRACgYNAASYkAYoKR9T9KAWeSB9TRBEe9AP1JjB+tCQoEEgY+KgFChEd6\nD7TIqgcnEj7UvkDmgA+80yZEyIoCInuMVIgAQO3xQAJyADJpCZgn5oAIIEmf3oBmKAIkyeKUGTia\nAYHtzRwoEe3vQBGCeR7Uu8xigDsSRNPgYkj2oAgTEZ96IJSSSZoC7PBO6P8ASP8AasZAgqjMf9iq\nwQ2wRCj81FW6SRPHFQEVDOKjtkErVEdxQCKTAzxkyagQds8/SgEoARjHNBEI++KAiYgJJnHaiDv9\n8cUAH9YgGPrSIVA7TQAI5xzwaQIJ2kRFAH6ZAH7ikrBAPegCCBgSRmjbngkd4oBpn7DFAEqj4qAC\ngDE4peo4/aqAgzAiKRyQeI96AIxunnt80AAnigAJB9/inB/SB80AhlXGBQBIn2oBbRj57U5GT34o\nBGCYHtQCqRAoBgbvagiJG7PvUAbQB6p/ehQ7bY+ntVAv0/qyCKDJMkYoA5OTQEwSInsaAAJM5Ao2\nyOYoBQAM/WaIJgUBIg7ex/4pKHBMyaANvMx+9BMCPfvQBAOATmlyZ7/NAMj1ff2xRBI+B7UADtBp\nYgkz/wAUADJkn/mngEyZHegDaZMyPvSKR/TzHbNAOADnilAmAaAZ5ImTNIA5EjFAMZACpogAfPxQ\nEc8e1PB/pg0AZByc/FGZg0Atsk9z70AK5PagGQcpAijPB4+tAIjgkdqcSrjmgCTzNIzERQFzykpG\nCB/ekciVKBoCO4lUGD9OKicFWSCaoMcEgGYIqISNoJmZqAJOyQIPBPxUFQoyBzjmgFIIBSIjFL1R\nATjvNAM9pEkUifuPagEE8gRQQqYOY4qAX0kkY4oATwJn3iqBQSYPP1ogg4x3qAQBJkR9zTVhWIPG\nKoDdKQCOaIHE0AiBkgYImmBgHnFALdk+w9qN3/tiB70AwnHpiQaUQMiTP71ABE4UfmjE4P8AeqAJ\nkAmRHzSzHNQCHeZpkd+xqgQEmYxUp2q+SPeoCMfWO9PCucfWgEc5nFHPMVQMZ7T96JITzn60AjzB\n7mjHIHxQB9gaPigGDAkgQPikVD2J+h4oAJMZH96CnEjIFAAk5M4xFChu9gTQAR2FIEEEESf2oAgi\nKZ9pA+aAQEEzwakQO+QKAR4AkZoJk5GRQBt4MCfrT9IkiPpFAI95H2ig5zOY/egAJTyOxonvP2oB\nHHb5oMzjNAERJImKIM5MCgHHY9ucUuJjk0A0yOO/akZBmBx2oB88Yx+9REZMUBJIk/FKCIIwKANu\nASDz3oMHlPNAXChyBmTFBCCBuAJHx3qggfSoCJOeMVBSSFcgSM/FQCICsjg1FQKeeDQEckcf/dQ9\nUA7c/FAG4zOB9aid5GASBmgH3KlD6VCJIIHxQEiCkApgHvSylOf3OJoBEmIiSaQCQN2cYqAABJE9\n6OxP/WaoDP6gMxSiCJH/AFoBpEGCkwMxFLEwMzQBieaCSZHtQCMEzHGKAB8g96gHA/04FG7+qIIz\nzVAHgCKUE4AOO9ABFBjOTMUAoERP2pn/AEjtUAwDEbZzURgxBP1qgIAxAB/xQobRMCTQBk5OTFBJ\nUYgmcZoAUIz7YpAmCoSM/wB6AkIHYzz9aUEgAxnIoAIHuePpQrnakfaKAIMxGPmmAJ/270BHaSI7\n/wB6kQAefpigI/7U5kTMe00AZAmZpqQ4glC0lJHII4oCG0jmcVIgARJoACZExxUSPVx8/egHAJ9J\nHvFKDyPpQEu05M0iAPv7UA0gAnaZHJogK4HGJoBE7TM/SiSUmBk0AkieZM/NMkyEq/4oBGBieTTk\nKGUyR29qAEER3AGMURnJ5/xQCIEY96BIExkjFABEGIg0doIPNACgAqJ7c0DIj5oAPsfbFOZGBECg\nLc8HmJOfmngJgDnAkTVBCEmFHgD2rGpIkgn71AIwBt7JzJFRQNwlWIoBbT7Tg4isZzgdu1ABBEmR\nnEcU4iAeYJzQEVSEiFGZ9qiQCf1ZiTioBpncSoCgiBJwJxVAiAZEGDSERlUUAYk7RQQRkRjPFABy\nCScntQc5OP8AaoBJiaAkhQj/AD2qgCI7c0HCcjt7UAgAOBz3p54JA7UAxPOMfFRHJIPOKAcJPImM\nk0oImARxUABP/t+KZgDdPPsKoADbkfePagpAwcA0BEcx+2KcHngH2oAKSFESJAmkYJMTFAI8CCfk\nU0gTxQBknGaRnPegDng/WpYz7n+1ARMz2xTEck/3oBEGSSTEUQMGDntQC2kmU8zTEiYPagGCIgij\nb9JoBbYPqE01LUrctSiVHJnM0AiO6uO2eamEEtKc3pABA2lWTM5A+3+KAiDHeSaFCYAHP9qAiTBn\n29qe4GQOeaAOwjnuKFTmSZoACRH+RRJAnbH0oB8fHvmojHq70AzBwBx80+RPYUAsHJSSKQGZkYoB\nwIJT/fvS745jmaAMnj/FB9PJ4oAG05Ko7ZoIIJAODQAEmYE++afHEg0BEgiPjvTAkSE8fFAXBBAI\nChmZPtQSqP1DiBVBASlOEg4ioKB95GMTUAoCfSCCZqO8gyJPIMCgEcEZINQXCRMxiPqagECDMYgc\n+9RBMyJH07GgGCrBmTSKSM5TVAEj6/EUZIVKsjgRQCBx8AxxQoczGMUAGMZyB2FIBUyAQCO5oBAb\nh3BHtQASv1KIP0oASJkTSzwRMigGkkCJx7e1A+exxQCSSeAIHuKFerJk/SgBJCRwD7UgEq/4qAcZ\nxweaWczBHYmgGJOI5+KUA95A4oAwmMSP801HcSDJjtyKoIhXZWRPamoEz7HNAI8c4PNMAng0Asxj\nEn2qRChnigAnsftUTJhP70AGOPnEU1cmE0BGZI/UakB7gxQACCMiZxikYk4EUAK+owSKCY5OKACI\n/p+Jokk5wOZoAIBTz9KNxxMRQDSkEgkDIqMnigHERiicYkigG4ouKBITwB6QBSgJiCM4oBDgzxRA\njbJz2oByc84pbiRjg/NAMxO4EntmkAkkRQBhJ94oPFAGQZJ7e9PBxH70Agmc/wD1SGP3oCU8mMe1\nLAEg4OKAWR9KIB5NAPIgA/egY4iPk0AgSTsAig9hNAXEgTCSfc0p7QBPM1QRIxPHesZ2qO4Yn2ow\nCgqACCr49qxkjkK49u1QCICIUoyRkZpA4JIx9KAQJGJzQCDKomgFKTG0n5pRIImPigBIKSJHf3oU\nAMBUjsaAjtgxmO9MqEwFR9BUAuBBA+tGEkRMGqBAkHBxT5zI47VAR5HPIyAKaiTAGKoAZOcSKDEy\nOBiaARJKSRkDmlMfqEiaAkcccHil7EjPegHGNpOT8UoEQY94qAIgTk0Scg/5qgAncBz759qQ7pkT\nUAgVRt7jPEzTMcTz8YqgB2kEihM5nBoAPIGY7UgARkcfvQDIM/HNASFcCaACCBtzP+1MbcJ5+aAi\nUwRifqKYAKSPnNARiR/g+1M7gTAwaAEmVFJH2mjaDmRFAIwD6RyDNODgczQBEiSYj5pcdxQDWCIj\n2ogbQAPk4oBCPemJ4x9DQBlP9IP3pjk4GDEVAIBR4SfpNB9h+9UAAkiJz8VEwMA80BIBKhBB4gUg\nQFYJoAgmVTgfNBGAdtABjiI+lIR780AyCk/2ikROSDE4xQABnjvRxxunjFANIjM8dqMlJUD/AGoB\nSO4iKfEgqkc8UAjjIPbijaZkn9+1AXJHIHcz9KS4VgcD3NVgxk7SNojjg1AfqkkzP2qAe2IPBMmK\nxECZEc5JFABSZV3+AOaXYhIBPsKAUHuM/SgzuExmKgAgkHPxE1HnJiKoEJyQeOIHNIoEAnHxQCUY\nOQQJmhOQf96gGClIyRI+KRBAJJGfYUA4MHagHHFRwFcETzVAzkgACfimUgJk57/SoCI9ozj7UwMZ\nEmqBEZx/mkU5AjP1oCRSCJB+tREn74FAAmOCIxQVGTiJ5EVANQ3AH7UYA9Q+04NUCIAGOT8Usntx\nnmoAIIkbYn4k0x6hMmU/FUCJnjHtTxtlUD4oAMciTNEj9Md5zQClPGftRCpAM5FABA5P2NPgggwR\nQC94UCRQQQMA/wCKAB3nEUH5xQAQmRt7CkcZEH6UADaBJxSyCDPegGcK4570CEkTz2oCW0e0R80l\ndtvagEYAI+9PODwfaoBcGDz9KfCoB7zFUCicxA9qQJPYT9KAZgYV2oSJ+vegERCiScfSnKckfagE\nrIA21IEYxkVEBqyP1CPmoBIJBNUDASZjNBJOQBj3oBbpIIx70CAI4PIoB+k4BMmlI5JGBQDkK9ya\nMwAO+JoAhMc/34qIE5OYNAXSSQcjM8VFRBkqn4ANW9gYlkCR75E9qipJA/T9CKgF3BPHese6RtiZ\nn9qAUgDJgxGO1EgHHbmoByZkZI4qIKhJJgH4oBQSZBIH+aRgATxxVAbhG1IIxmmSQIECT2qAh7A/\nbvTkI7k/bNAMwcgyScg09iwjzChQQDtJ7AmYE/Y/tVBEwJKeZpSMKIEe1AMj0gjt/aoGdvpP96Ae\n4EkAY7UKEYIJ+lQDCSk7QQDUVLUqSU96Ae48D/FAIJ9WfpQCAiTER3oGTgSYzRAaVAEmKWCDPPMV\nQBzgCZoEkH6RzUAJMyVD6D3pHk4NUDGTgxS5UZMfWoAlPMf3on3BkVQBEjPagY7j/mgDODGKCrkc\nExQAYgCOPagAEkAd8UAA5JIEHFEAKMiaAUqGR+9GIPaKAE+8AfemBGT/AIoBGQQZ+aCRiQM0AyPg\nR3oSJwBj5oBQDEcUQcGDj3oAJnMyDxTkiVEf3oBAmMH70CTnmgAmSIBzTgEwAcZkdqAjKlEmPrTC\nQYBERjFAEwQIBpEmAI+aAYAHajbOYigEcGYNBJ2iIAoBe0CAKkNqjO4xQC9MjAJ+vzTI5BBBPuKA\nWZmDj5pjiOM0AyBtx9qjHcHmgLgzBCcfFRkn9QyDFXcGNZhJlM5ieaj+qDjPeagF+gxEzniokhKi\nQr/pQBgZBBNRnsE8cCKARMQP+zQogCec8GgFmIT9jFIEknGYzQCgmVD2HNAAIJHbEzmoBkiSRzzU\nYODOe4qgZKc7sfSg5GcUAEEAhKQaW7ICQMRM1AIkbs0YiBOf2oB9hvMkcUAnM8TQCO4Az9aO5iRP\nzVA/TBkcfFIqAjgn39qgIkBMpUJPajHPf96oHCUgAk4NA9wKAQgiRM8E0ZwmagGqYyIjHNJPqx3j\nkcUA4zCz9qjETKs0A9wAiAZwaAYyT3mKoCYM/bFIR/Uo/eoA9Qiexj60QRMAVQLvBEFVSCZyKAWJ\nknnipYVgEH75oBE7Qecd6ScJAEYM0AHaTI+9GVcnigDmJGKRA5/YUAxMke4zQkEiKADCYJGKN39M\nEigCROUwY70biRGCfeKAckfpERzUf1GTOagGByYxQPUPjjiqBwCTBEVD524oBxgHNBIHBHvQDBI4\n5+aR5kj9qAJzkj29oojjMUAZGDjNG0QZoBcDgmeKcGIUR+9ABiMzjv8AFR3EHIxQEiAoyTA70EQY\nAmgLiSUkA9+/aomUzwZ7VQY9smdpAPzxUBtOSMewqAiUpMAAwRSKABBkkdqAQ9IJTnAme1KVdjio\nCMyDAI70wPSQo8f3qgaSMGBPEc1HbKoAx71AG0JSraSe4xUdpVyaoBXAkwB8c0CRERNQDKSE+nvx\nSkCAMfIqgIAMGD7mkBC5zHE1AELBEg/akDJwOaAAFSZMz80ZxETQD27VSMxyKM8kwfY1QAMTJH+1\nKcAASfYUASSmCnPNEDmMfFQBE5ImO4okp7Ae+aoFG4Ax/amfgEj3qARjdjI5pggGIwIkUApxJPOZ\nownKh/eqCJ7QkEEySKkhG8kSkGCeYqAW0iQKAkj/AGg1QM8hJNIk/BqAWCMiTTAyCCZFUBicKHq7\nRQPUT/sKAIlYSSB3k0/UEkAYNQESok+xoTEz7e1UBtkEyAT2FCU5yY+poBHJJI+Jpng/vQApJMd/\nieKkSDj6UBGQsk8UCCOTzNACp3QB9BT243QYoBGOAfrmjgbSYigDmDIj5pCBByKAIJ7RQBj5oAxt\nBgmKIxPtmKAUSZMfOKcAmRH3oBpIJ+KjIM/I70A5MxIikBtOQcd4oB++foKAk54oBYH6Z+9SIgTk\nn4oC2MKBE4+e9QXERJHb61WCKjIwJge/eowRJAPHHsagFIxMcQKgskjdH/WgDAB3SSRUTCvkGoCP\nCSB7YNSEgGTxHFUCgkdiJinhXb5oCJUZAHv2zSJzIE0AyT2n6UgmMlQ9/eoAJkAEZHvSIiSOO/xQ\nAIIjjkR2oGFAn+/FUAoxwokfFIhMQJEDioATBUJwfipJHoJmCO9ARTkyoz25pmT6VAYqgCeEpEFN\nL0hRMZJqAiSZxNP0jttwRVBL3zHxFRgAAHmZ4oABEkqIA4gZpmACoSVexNQEYMkxkf8ANMCARAk8\nE0ASIEwPpQRiSR9IoBY4Vx2E01AckYj2qgQUACkJJJ7k8UpH6VYPNAB5jsMcU4CYkcZFQCJ7BPxT\nMggifqO1UCJGIFAISqORQAeAQYzQNpyo8/2oAJEnGDSPvHNASIP9I7TUTJJnmgH6SIxPPNL0HgTF\nAAPpApgZiQfaTUARGeZoG5R5iDzVAgYOeRwKcA54BE0AbSSY/cDvQpXOOcUAsTiR7UKG4xmTHzQC\n2wMgUAED2FAPckSDPxmmZgxH2oBKiBtBml7YFAOTHImKNoSII/tQC9IwInuSaCSDJ9sfFAEE5/vR\nB9wZoBmDgilyYmIoC2Ue/Gf3pEQmduI7mgMYJKCkyJ/eoqKP9J+KAiuUwCPUfbGKSdxE8J5J96AQ\nKiY5B5peYOBH19qAYMxKcATio9yP0wOxmaAJURIIxg4pSZPz71ANSYGZBNRVg8gmKoGr0jKpxFEQ\nZBCTPPagIhWCdxj3+aYlJA7dqiAE4B4I+KACM7iD80AQMTEfNBAjAIx2oBQVCQc80uORMftQDCUn\nChSJ3EJgj4mqAIyUiTifilMHkQc/SoB4Bg+3FEQACMT2FABI9+KYV2yfpQCOBu4z7VGE5g/370BJ\nQmIUZFNJV3OaoIpSkkTge1BHKjiePmgACIkikQJxz71KAT3MD3o2gQR/agEYGAMe9A+J+s1QPIMz\nM4MGlBA25igAlIEj9qDyBiDzUAEiB7RmjakcGfqaoHu9XYmIpSIAMD5qANp2zz3pCM+/tVAwQCIE\n0omI+mKgApg4P/SmU7v6jiqBAwZIkTipYEkd6AiJHYH5qXwRHzUAiVYSDS2kDckZJxVA5JIUcT7C\npCD+n7mgIp9SxlMnGaRJJMH4NAIATkmmNycUApzHvx8UzyCD+woBHAH0zROQZkmgAyDBAFA4GMUA\nDOSftRIAzP0oBjcIHbkiggZTt9ooC1SUmZnHEUl7eeMGl7AxmBxkR2NKUqkAAY5oBEEEZEjmonaB\nEgjk4qAW0bY7HnNI8FIkn4OaAEkklSuR2pEkKgEiRxQARkgDcD7U8AYgyIIoCBCSYnj71IJAIBMk\n5gGgI4JKo+KIG6SRE0AADPaeI70ts55PINAHJMn/AK0ZOAP2qgUDBIH/ABT2z6gZqAUQYP0qRkD2\nJ70ApAB/wKiAcKJ/vFAMqSBxwf70EZ54ExQAUAepIJn5oKsbT3oBSoAEiaP1GM4oAg7YBz9OaDgY\nAz70AjBIV7dqZ9OQcHIoBQlOTEgU9uD7D2HFUBiJVwKRjaQO/wDaoBAEjkED4mjsAYoBiADB+aWA\ncGaABkSQSfiiNwOKoFAUCDyBFOAP1nHfE1ACk4HHOaICpEx3zQC7HnNMImYH/SqBEHBM5qZ2jIjN\nQEVRxEUAEfAAwKADM7sTSCZVAB+TVAY78CiCSNuZ+aAcH6CiQTk4NAMAEHjHGaRSSOSe9AIc5yAc\niaR90mfpxQAER7THNPnPE+1AA28ASe5oj5wMUAhHvNKO4OY9qAkTIgT/AM0injGKABzM/FGUiAff\ntQAnBB2/XFHHPegEruQfrUogyczwc1AWcH3/AE/tSJJTuiUgRHxQESBtA4nE/FQVtJkYkftQASog\nKjJ7+1R2kTJBnEntQCISMAAFXzQBwpJwPtQBAGT80jA2yQo+0UAQU+kEEe3tSgAkJScUAidwkDH1\no2gAlUEjigDG4EiRxT9x78GgFv8AiYxSx3TiYyaADCsA8YoSIgETQDiAATioFRPbH+1AMjhEyKCR\nBwSDQATwT+88UQJMzI96AUmRtEmKkRBlSo96oIzEqSJT2nFBhQzj5qAAQcA4FBKTnkgUASSNoUB/\nvSVIOAZI+lANISADPPNRwSQmc+/egGDsGUif8UoyZBIJ4oAA3eozialgYwJPaqCIxk9570EYPzUA\nJSdxwY5mgR/SfVVAAoBG7EUEYEzUApAMic0JMjbxVAz8kRRjCpJ+JoAESJUO1ECSAMxk81AISTM/\ntTnP6SJ5oBKCYJnjH/WgE7hmfiKAkkZAkZMRUQDJG0xVAAzk4PeaBtM4Ajg1AAmM8H3o4OINAEDs\nftSIBIAOKAP0wfsKDt/1R9qoCIwkT/tTyfVJJ4oA/TJ4/vRIBOT8moBJiZgDGZoiQSPTVAAExBkj\nmM0YIkgxQCJyeJpjI45yTQCiQSOKOePjNAP425oAGCOxoC0BG2eB796ir18ce/tQEFKEjECf3qOS\nAR2NQAIgREnMVFRxJ4J4A4oAJST8x37UEwnufvzQBCSZJ+1JRVuAgj2M4oBFXYnnk0u5HAPc8mgA\nhOO88RQUk/8AfagCQDxR/UYBkUAt0TAwr3FCQQc7iI96ADEQQc96WIEZ/wAUAyRkHj68Up3ek5x2\noBz6cE/X2pZBiTPeKAUg4B+xoyCZEJ7UACDERGORSUORk96AUY9Mx9eaCCRIyOMdqAACkwnuIoPx\nmOKABhQ9PHFSjck5OKAXsOPrQoGZHJFAR2mSDye0U07pAiftQAEmIB/akDBmTgRQBlI2n6igTMzQ\nBmZPahSiIkYPeKAEyTtkRQQSRnPAmlgNoyN2ffiKJT7k/NUBKZjbM0gTIAj5EUAT8Gkcdvg0BIkA\nSkx8UDOIyfagEIySO2KYSoeoqAniaADESAZpeqYj6iOagAyTER9aBBPBE4PegACYO6BM8UDABJie\n9UCIIEzPc09gHftjNQAQn0kTA5pFJ9qACFGMfSmmTgdjP3qgUZgEmaB29M1ABTP9M++aFKPIGPkU\nAAbZJE/akcjcAR71QMAFQO3gf3oVCTEZ/wAUAZgiT+1IEJnaJFQDxBgT2oJ3RtMVQWpgCJz7RzSE\nbSr34ipYMalBXJPxUQNw2kHMmJoBKAByrj4pEjIIn4/6UsCM7fSIA+KUKJAj2oAk+4Ex96e0YMGg\nIkRyDIpBRBMcc84oCUQDNREcD6g0A/TyTBzmgQBBFAInsB25oE7hIwTQDicwIjilA3ScjtmgAEhM\ngd84xUUqCjkQfrSwBITgH6mKNyTPBj2FAAiYGO80ogbwc1QCZ3wr2xTOeADFQCASMkgHGJoIjCf7\nUAp2ZiMd6JkgYzmgATG0q78HvRG2IUc4xQDO7gwO00ioTPP1qgDBPpzjM0vkCCagD7nPP/SjaBmZ\nJNABIA2kQSOaSTIgc9/mgHkjPOO/ekR/VznmgHIjGaUiPSmM0sEQYEgmTnFS2A5FAMzwT2xA5oSC\nZhPHvVAjhRxSAgnsKADgzE00wiZjPc0AEyfb70QCMj+9QC2mTIEdqP0K5nPtxQDgf3+9EpA5+1AR\nxxnjHxUlAAAiYH96AiU855pkgT6Zx7UATInv7zRIVGPtRAJ2mYJpGCsDI+1UAT2TMnmntIzI+lQA\nAAmFH6UCMAjB5qgIIxEjnilIIndxH2oBlO4DjiaU7vTgZ7UABJPJJApA5wkEUAzG4GT8UEQZBNQF\nqImZ4/4pAwQkfcVQRI4BJJmahuIPOBnioBLgztAjtNIpJIjNUCgn6dzQqCAAcEZkZmoAAjJ4oA3G\nck/WgGfSTAk/7VH3Mc/GKARG0SpIA7UgCBIj3moA27vamCkGFQI9s1ewADlROOADUYmMRQDlIByZ\n+KjC1KJxEcUA9hkTOaDAGM9jNOAIjtHOeYokyEgdu1AOdyZ7xBg1FPJ3AwMGgGE7pPtQSUgJnnig\nEpBjBxNE54AJ4HzQBO1XqieOKiYInbQDg5iMyRQEKOSZMYigCUycYPFLAlMme00AzAAk/aaJkEyK\nAiEyTHb96BuBExGe9UDMzJmPg0oE+rHagEcEAiB2zUoTux24qARgnHBpARM4AqgUCJE0yFGMCPmo\nAjaJ7cUyDHxzQBABG76/NBUMgJoBciAnE8xQATHvPNUBEkqHIHFGQn5oAExj70ogwe3vUAQcxIEc\nU8p5wKAQgiBEHk0FJABjn4qgAMcZ/ekJnI96gH6SIMn27UyIMj5oCIBAgnEYmnEYiT2oBfpn3+Ke\nFjGPfNAM4zzUPT2EigJACJJ5xzSImRt+4oA9ORAB7GgDO0/9mqBwqCCCYpRA3KBEUABJOQM0AnKe\nDQFspMzHPbvUYJ9Qk98ioCOSqeO5pJEmUAR3oCKgpKgf7e1RG4kwIJMmKlgRnb9MfWnwP0kSZmqg\nHcLAED4qMiZHbvSwODMSDI5PNLKQATmoAMATJI+lKFAZSZ947VQOBAEmR/ekEnaQRxUAA4zmRNEA\nYAGcmqBRB5mMRQoDd6YOKAYJiTPeolMplWJpyBFMdz6RRBjHMR80AFMCIGTQBwB98UAEyANs/M0i\nCRn3oBlOMTH9qiIOQc+0U4Ayr0hGJPf2oBHJH3oCMqJI4+lAG6ACZNAPaTAwORQMCVD/AO6AR9Rm\nfnNBBEEjt/agECriOBOe9MqkCIJniqAghJKe1IEcBUjuaAJCTAAnmaZJVxB71ALjMcU1JUQDIPvN\nARkgGfoABTBAG2BnIFABjcR8TxRwSSCAf++KoCCcg/GaRzzzQDSSRB7jOaNuNu75FAKY5I570DEj\nAx71APMEEc+x4pf+3d+/agApAEEj5FACknAIzn4oAkAyQDQTMwZntQCEpPNSIE+0ZBmgEQo8xn+1\nPuPUeMjtVBFRySScHHfFOZ4P1xQCGSCKAQFcYJ71AClCRAFEDkfvVBIGJkTPNRJMgjMYgZoAVJj2\npEDmT9qAaSSmCckTTHwJA96gA+nAEYpYAIk++BVBbgAGYOO4PNRVATjmOalgx7RtkkTxSCUgCD+3\n17VAIklQORPf3qIEnINANIHZP70hAIJMj2pYACeOf2oMScCD2BoAUDGFYAzNJQIg4PPFUCiRA5FB\nCYxknv7VAIiZBA9PtimoZkREUBHnIEfepAgyTGMAkUBFQEzG6KQVKiQY+lVsACB+kzHf/mpYKYMD\n2FECEQf0n4il3iM0AQMkYM4mn8GOP3qICwTMGf7UBUmJHOKoCCD+oGDSMZJH1zQCkCTA+JpgJ3Sr\nioCIGePoae3PMHgVQBkEbVT7AUREFUiacgAInilJg5JoBQc96ZhXwPYUAwQMBUe0UlHBmAR7UAGC\nckewxSiBOIAxmgGD84FLcFJjBIOaIDJJJxJFGSQBH3FAEcgk5HagpgTxOM0AtuIgR80DGQmZHvQC\niM4wKIEgEgH94ogSIT3IPFRAhRxE4FAPmAT96BtAhQzQAkCcnHekDHJ/+qAAkdqPTt55oAUP9PM0\nkqIBx9aAYEjcM570wEqBOOaoFJ2kkTHFMHIkYHeoBKVIJFG0cTjiqBAbjHIE/SgxnI+agGAORJHe\niUwZkEnFUCJJgnOOBTkgBOeD9qgIlJSZnmgSBPfv/wA0A1GYkSPkVIgKA4wOaAtcq4zHxijACvY8\nioCJAGAJn+9Y0IEz/wDVABBKt0c0gkg9z2NANKQmRA+KiltJ/URHJjtRgW3BgSmPemoRI3cUoAkT\nBBweaWQYiQJgGqCORGMUECDx8CoBEQf0wBiZp7ZV3BTg4pyBSTxjPFRCQOVGSKUB44KojmklsFWc\nweKAlEDakCkEn+k5jJntQEVCRBPzJFMwZI4jNARMR6uRx3qRTtAx9qIACoxI55ioq/UTGMniqCJI\niYODmKckxj6CgDaMgZj3qKkkc0BJIBExwKRSUgknJ4ogIxMgCn+qSYgVACkkmTBg4iiAVZODniqA\nxzP1FJQ3xBxQAEjsf70KHdYAn3HNAAAAjb9qZBUJwM0SBFIOQRiohRHGQe1KBICfifikd3scUA4g\n8wfihKd0EESOJFUCIVtgAe4ppKfK4JVmR2+tQCgkQBHvNOArkgwe9ARiSRAEd6eDkE44oAEHmPrR\ngq25/wCaoHnkxmo5Menvj3oBj33RiRSBIB9XInNQABGAZo2/c55oBDiOP96kESJ3fSgInBKTHv8A\nWiMZ4+aAl6sgH25FCSCNsgGeTQCCBuwAAPepEiY5x78UBApEgn/FMJifvFUAFZ2EZmRTMQOR7/NA\nNIB7ftS/p9WO1AIAnA+1G2ARg/WoC5KVbhgj55pQUiFeqPcVAQUBwDgewpK9IwRB4x/vQETtJBMf\nU+9BTz6gP+KAPVA25+aUHcM8ZgZqARGYVMdqFlM+kEk+3aqCHqAHqJSDkfNPaJJHA4xUsB6QMT70\nLABkdsmqBKBAI4mIIFIn24+s0AAAAbTnk0QoHgSMfagFtTn0kg5j4ojulIHfvNAKN2CPsOaRSUqw\niRzRgfAmTiKWCJMfaqgE7TKoOeagIPfIM5qWCXcyr6ClBUmBn3oAAyeCAajJkRA7VQMkD09hmBQp\nOODI5NAIiTAIM8CgJxHBHagAyCSJP3pJEjEAice9ABBAkzg+1IQPf70Ax8j98UhznHxQDCIJClZ+\naWRB5+tAIkzP7xUhke0f3oBkwqO5qIEk9h7RQCiU4gwcYoBElJOSPagHABwSZoMQEjvk0BEEgSBA\nIwRUsJHtPB9qAQlWEkimlKSOADPNEA2omQD+1QzNAMmRGwD6CmQFD9PHeqCISRndFOYBPJHvUAJC\nlAiP3pg4KoE0AgQRng0JiSJzQCVBPODmTigAJEAiRgGgHHyDFISMnk1QACgQqg7gcnPtUAQYEgYF\nGMd8R81QBGMGfpTgGABUARCu3Pc0EZmP27UAAkElFAz2Of2BoAk7pHzk9qIPGB96AvFJgbVA57xW\nJTeCYBBqMCLeciT3kVEk7gmJA4zUAwnBHBjE5qCvQDu5GI5o0BgHgHIz70jO4lKTP7RV7AgQkjMF\nXY5ppABkIPAyKgF/Udw+BigAxE1UAUDIxPHaowAiJE8GgApBJicDM0ifjioAAH37z7UJTGZxVAoB\nkHH/ABQJ9xJ+M0BESMkmJo+SSP8AeiAFI7GO80BPowJng0oEfYpzQBKcn7RQCn34FBIBkjAxFABM\nj0Y/tUcA8iZqgCDODMczT/8AiQfrzRAjBmRAPOaalEgIBzzjigEJnmZ4ppnJMj4qAW4ZViaRJOFA\ngjiqB5gmZ9jUgBEhUke9ARSBuAg/NChJPBigDZIBnGBFOAnAHFEBLwYUDn/NRI3wSeMxQDV25A5m\noye2aoGCAqVA880EkjBigATxH+1KDJOB7CoAOUhRERiaMZEfQigGTtMEziKSioqzED/FAAIkpCSZ\n7UyFSMkZ7UAJSDgwB2mkIBJ5oCQKoAUeO3zUCeSYI+KAcg/PaiNonmgAEk5GO/tQUwYPM4zQDAkS\nOPmolYAiMjNUAMGZP7UziMznNQAfj96JxHM0AEpInIPPxQQmOfVVBEA8dge9SkySRx/aoBxtzuAn\nigAZhOKAAruJEmlBJ54+aA6A5yUwaxlMSdpmIgVGCBRMSYVxnimgQtPp35GAP1fHvUsq5G+3Dykh\nrywFfozj4zWIoIMmAeZPJoHyLaYkGZ9hxUQkzIn96EGsHBIgd8VEAGCkRHelgDBGMScz3qJQg5AO\nPmgGJTJxE8TQY/TIg9xVAkpk880lbgZUD8UABO7tk8z2qKtvsTJ5oAKJE547U9pknHtPMRRAiUhI\ngj9qCITgx25oCEH2Hem3tE8gUAAA+kZ9jUf6QeAeaAWySTzTCTykAAHk0oGMgAFO6MA/enhQBI9+\nOaAiASkwYPcTTkHOI4zVAyVkYTTwJkfv2ogRUAM8kHigQqcZPvQCAIBBBBNS2zt3EY9zQAIn0f5x\nRkHIxGJoCImcH9WeJzQduZORRAP1gmD96AAYE57mgFA4AE/PvTAmQDx2ijBEE4AUR2M0ygk8x7/N\nAM5xu+ue1BQVDBwPc1QRKScJA2jgUx+nJ2Y/tUAjH6dpH0+tLG4A+80AzkzPeTFA9M7efkZoBSYE\nrx8UwRg8zxQBt/pnHc+1InI7D396oDGZzGJmgfsPigCSZxMH3qQIORmgEfY/5pqUSQAOMiagIg+k\n4xQY7cKH7UAxHJOT96NoAxmeM1QI5OOfagQTxPvAzUAwFzPsOJpCMyPrVAJBmQZj5pgndJPPPx96\nAOOFTA7Ux/q2zjNARCQJgEe80yIOIyIqA6i3srq7dLDNu4tZIgBOeRWN21dZcKFsrQoQYV2BHP0z\nXHUrq9zpxdWY1thK9oUFkgH0yeRMfbimi3cSUrxEiYIn9j9KWEiDm3cqEwSZ9zWNSSSlOzngj2o2\nRidQULLZ2mP9KgR+4qChuJUIIoiDLSm20rKVBKsgkc/SgNFRCQlSt2Oai3K01yY1NyQQJ780bYEd\nzzFVEEG1SNxM01JkbgcfXtVBEJxITPzQoGNwkD596AikE8H6VHbMSQVcxNAPYeQgKnJ+KFbQMR7i\ngDZjKTt9hUdpWAJkAxMUAhA/qie9Hzn7CqBBQKM45iltJA3AwMGfegIqChPGc0D3Jk9vmgIFRJk+\n37UQZOcD/NOQIQCc9sGgyACSB8zQASdp9+SRQFZPMR3qgZTAAOJGMUgqVcARgUAzII9UR2qKsiYn\nOPmgHumODAj2mkYmQMHtQDE7SahESqKAnkqBKufmiMCPt80AipKjMxH9qRGJjn+9EBkkDgyO9A57\nn6GgAiRPf6UAqJBg+n2oCJVAgTPuRQZ5jtigAiE4UI/vQCRBjkcHvQBuBPASfigxzE/XNABUJB2g\ngCkTujvHFUDIPBnjil/VKif2qAJKyDEZHNBMn7e9AA24ncD/AIoggQJ47CqAIVuAKY96YKp4nHvQ\nEQYBB5mpAbZG0GPaoBEKURiB8UyexJB+lABgmAM9z7UyBGNpn5zNALIOZ+tBIOPY+1UDyB/ekSkK\n94oAAONszRuIOMg1AAxgwPmmQCRIkwDxVB7PoNjcas5c21tp1ou6cStS3VOKZbKPSUoAEEKJBAJM\nEn4mrFHSDlw+20nQjpziw642m5cVtW2FBO2N5KiXErSExkk5MY+VPJKEnFN/Q9keh05dyPSvhprv\nU94xpXTnTz9w+7dLsVWiLpr8wpWwYLZ9QH6lb/0xifSZxq6N0rTXr9F+3c26rNpxflrcbV5u0xBy\nkgEqCScESSAVDYeZZskpeHj577NfRhRxpdUirt9N1FLLRVoNrdIuwssOqYcS6hJAbBSElPbaUjMk\njGYNx014baX1J1BZtapqz9zo4QhVzcKT5DzTQgKHqCgmFApTkgxwJitXkhhud2cuXWkunjy7lBpv\nhe9qTuruNuFFnoySu5ug24pCUFwIbJKEqCdylJAmBnmeahOgv2ukFFxbsrfeVuSp0EFKEjaAkz7q\nJOI9KYJyK9EpSSTfcwVPY27i/Zb063YGg2TzjHdtP6gBkH/Ukkg4zg8ZrDdaPZnTra8Zs20u3kNr\nPnIhCxyQmJ7dpAgisoLwuZcs6dPejZsui27i8e065tFfmhZrdt21PIaV5qGw6S4HFp2o2BR3YmRE\n4FcoNPCnww4tTQJhaynclAmO3NaQyuW5XFIyrtLNxxthxZbLILSVNoSd5lR3LIV7mAc+kD6VZ6h0\n1olvpf5pjXlG5TcONONLt4SG0oTCwokSSokbQJAEzzF6pJ1QajJ+Q9P6Y0UJW9revOItlsOeSuyt\nw6S+lEhKwtSChElMrg8naFRVBdWK7d9bRQ4jbulDghaSCRCh7iM0hklJ01Rw4pcGNmxdcTIWieIJ\niZ7Acmtx7QXyyl63umLhSlrT5TQWV7UpSd2UgEHcQACTKTIAgnVyS5IominT7vyg75C/LJCd0enc\nRIE/SsqdKvACpTUtgEhcjbIEkAnBPwM1OpEUWzG7ZXCCgFtSyUlQ2HdCZI7fQ1BLW1BClFJSraUg\nequkxQxZNuoStN02VkrltRKVJgAySfTnMQZkHHE6pCkJSOJEiDJ5/wClEQCFlRJHGZmokbNpUFAK\nG4E5ntiqwR25ION3f3FSuA02vaw4paOylJ2k/aT/AJoCCGlPLLbKVLwTtAzHcx9M1DaozAmO1dAm\nu3faShbjZCXU7kmOQTWQ2N22wX12i0tSE7ygwCeBPvg/tUtFowZOO/05qSWXMqQ0ZjmDS6ICW1mA\nEmTkk0Lt3EqlSCD7xQAm2dUyXtsJSoJIPMmf+Kyu2zibNpw22zctXrgyr9OPaBn9zUtcHSRg2LwA\nlUxOAcUFhwKyFAgTkVbRKYilSU/pgzQEqkAAgfShBBAEifmsmwlsq28EQZ45xFUGNQEEwJ4GaexR\nAgd6gIzKgYI7U9pSeeOYoCMEHiYOKAmSVRE1QC4GTEe3agCRg0BFQJMEEECRNBG5Mq/xQAZAAiCK\nz/lnfy/5r0BtShELTu7/ANMz2OY/yKlgFWjoQp3a2AkifWmfsJz9qgpstOqQUoXBIMKBTPEgg5oA\nLDiWkvyjapRQBuEyPjmmlh0gGEAKBUJUAcCT9MfvSwTsLdi4vbe2u71Fow64lty4WlSkspJAKyEg\nqIAJMAE4wKxONoQtYS5uCTAPEiuqVAhCpCjP+cU1GYgRH+agD9SvY/WjPA/xFAAkcnnP1o3QqTEz\nNAHBgJMURBCT70AbdqiTg/tQRuIhQyJMUAwCfTM+4igYTMT2wKAABknHH2FExkZ780QCCO5g9hTE\ndgCY9qoIwAScEH2qQ5M57UB9HNfiDvry8ShvRukdLYD7VykWvTNg2UKSqY3KZWYCSrbJPzMmfSOp\nvHO71S5srHpvrux6jWy1as2we6Ms1LUUfoZiCHF7lrgbexyeT8DJ7PVKMk5bq7b/AH/PPseyLi6p\n8Gjb/iOYR1Dq9vqnSXTmqNJsAyLlroxizunlhG1bai2kls4jd7yJAisumdbr6x1O00q8/C9a2xbC\nzY34u7yz2252kbw4sIeSAUH+n9ZI2zXnyaaOCSnky9Fce9fbjc6T8VdMY2/meYW/S3jT1La39+9+\nVt9Ks7hbb7yX7dDTTm1xwMhwkgeltZSJiECP0prrelfCPWNOtTb3njH0ho98Hm0rsL55TVwgqQl1\nKlr2lCYEfpUT6u4Jr3Ty4+noxY3JP0/lmUdPLGuptJ+rO+0bp9vw86T6i8IOotVtdX1TxEtVajom\ntaYy3dNKdQv/AMkBcSkoQ46l0LTtKso3JSZA+PHNf1c/mnXNUbQpXqLamxKyTkJhMAZ+McV9jJjg\n1HanSTXkzwYW3lnvt2f2/gvOmvFrU9C1NGpP6dbXSg0WoV/LIBAiFASkggEKGcZJk1qXnWdtqT+4\nW6m1qO/eQJSSIMkc9zMSZM189aJY59cX2PX4l7M6nUunulNO1dVnpXiZpGoshsi51HTbXUPJabU3\nClLC7dC9p3JbMA/q7g0kaZ0Iq/u48RNL2MFHkC6027bauAoJJICG1KQAMZzMQIMjOMs0n/8Az+6/\nPU1Ucdf5G5d6b0aHmdRset+nXQVspfbWLrDqkhQWpPkypCCVBW2SSg59SRXLaxb6Zot262z1rp+q\nNBa4csbNwocIlJjzEtrDahEAjg8AiK1g5t7xfzr/AGZyUVumRZudLvG7S6u+p9Pt3C6GylVtcTbA\nlW53alJT/pV6T3gDAisuG9OebfY/8U6eAClRcLT5LygFCQfLknP9X+r9tPeUv8H9v7OXTXJit9VZ\nsLa40+3vUqCl7g822ApRAIBkp3BJByARzkGAK6zR09E6nplnaOeIytEuEtqTci7tHXWgpO9Q2ONI\nK9p/lgJ2/qU5O0AFWvQ57s4c3BbKzntWf0bzlptdeTcpQ4RvbYWlCkAjaUIUBEjsrMjMd841rQH1\noYeU4gHc48/6tzqlHdCvTO4EASmEnaMZJrjw3WxopRO5v9N8IdGYQnT/ABSt9UZWkANp0l9hY/mq\n3eYFNq3DasEHeSNqwAfTNnonTHgV/DWLzW/HCxXdoX/Osf8Aw/dqQncqP5RKAIhKSVHaYMAGM+aP\n6hreNP4mrljbSstPEzSPwsNum98OPFC8YQu1DDlqjR7lwG4b2gup80ghLgBwVGCVYAICfJfJ6M/K\nXS3eprX82lklparB9SluJUCNpBAkj0ypIEAyATuq4JahK8kd9u6M59HCZz9laaFcOpRd65+X8x1K\nFKVaqUlCFGCs7TPpGYAPxmp6ojp6zvru2sLhN2xbwLe58paQ/tIG7aogpCh6sz9BOPZ77ddjPajo\nnOvehb+xtbHUfDe3tixtLjunXRaW9G4QVOpcMEK7HsPYVLWusvCu+aTbaV4f6tatKuvNeW5q7S3V\ntwQG0lNshKYJmdpPI9o8sNPng6WS1be/Pp5bL4G0ssJJVHfYodX17pjWNUedsek7PSbVxJS0hLzr\nnlHaoBRIMnKkk4/pGIkGsDVmx5xGp2T5ZIU3/LdPmwf0iUjn/wB0cdq9cYyS952YNq9kYbrVU3H6\nLFi3EJlLRWASkn1QVGDn/iM1iTeI2K3NesD0kLWZM8H1Yxj7D610kOTH+YeW8p8EJWoqMgADPOBj\nvV3p3XfWui2Lml6X1bq9paPILbluzeLQ2pJ/p2gxFcZMUMq6ZpNep1DJPG7g6GrqHXNdVY2F1qK1\nhnc2lTriUghSiTuUYnmPUTjHGK9E8WuktS07UANd1bpmyudi20jStQt30r8tLbexabZ1aUEwTuKQ\nVkrUoq5rDLlWKcYqNt+SLGDyXNy4PKrm4vdPvH7YXvnBsuMqUlze2rsVD3GAQfhJ7CncdRaxc2LO\nnv6vqDlvbkltty5WpCef0pJgfqP7n3r0dEZ02jhNx4NQ3d0ZJunjIhX8wzER/jFJd1cLCkquXlSO\nCsnvJ/vn6110pbBtvkyHVNRUhKHL65KELLiAXDCVEAEjPJAA+grEbp8hIFy5CRgbuBgwP2H7UpBt\nvkPzFySALhz0ggSo95x//kf3Nb7HUOrNae9p/wCfdDLh3bClKgTIPfIyBx7VJQUuQpNcGqu+UtwL\ncbaUQkIjykgGBHbvHfmc81uW2rNK2299bteS0HVpDVsjeXFIgEqOSncEmCYEmB2o42thF09yL19p\n6rb+QwUXCVpISphsoUNvqJVyMgQmCMkz74ndZvHrUWamrINhfmBSbNpK5j/WE7o+JipGD/8AYrdm\nn5i1KCoSCAAISBUVOLKCkrO3B/b4+9aKjkgCdp9IGOaaFFOcyBzPFABUkkKc3D3UM/2x/mtoq0zE\npuIJMw4MDcMfpzAn6kjiIqbg1yLeRt3qAEqmP1e1SQ3bltW55CSUyJB59hHvTdgG3kJQW3E8iZCA\nok9hJOOTxUfMSEKba3lO7cmQKoMUlRkqn2pqKiolazuJmTxQCTO4g5FHuPeqAlWSQM8TxSgCQcH3\nNQDkgyCPmg4IBORkUA0ZJ3SPaBxTSlJP64BnJxQEyypJJKk7JiZBFZmrJb6lNsOJWpICgBPqMgQJ\nHOe9ARetyNoeWUqXJJMQPUR2n2psstKQkquWAVGNqkmRzk4/39qj4BnCNORbrRLi3iUgEEBJ5kyR\njtj+9aa/JIHloWD8r/2iisAWv5ZJMKEekiJB4ioETkkmKoHPBjkc/FEJ3T7e9UC5j1cfFNfIAyfe\nIqA9QV1L0VbOuGz8ObZaQobBdXb6ymF7oMKAOITxwPcmsJ8Qm9OuUv6D0zpdkGkw15jCXXAfLSgq\n3QPV6SoKiUlSiCDXlWOb5m/kehZIx/xj9S+1b8Qfi1rNijSl9QWNhaoST5dla29tvkz61ISFKySc\nkwSTiqp/xk661TR16Jrmu2l/p6Njqbe9Y8wBSAUp2ECQYUe4EV58eg0+J9ShcvN7v6sstRkk9nSf\nZcHLv9RLvA+05+XtLd9Yc8thg7AoAxtBOOY+9aTmopWhtCitRQI3JSEmJJIxzk8n/Ar3K6owtXZb\nI6xUzoWo6Pa2qNt68wtD74S5cMpb3SlDm3ckK3ZCYmBM1zDr58nyZSQlRVO0bpwOYmMcVo5uaV9k\nZqKi3Xc1yB247049IIB9qiOjI1crYCg2TK0woAmY9sVbM9V37a0uXCTchLCLYIcdcCS2naQg7VAk\nelOJjH0rlxT5Le1FhZeIWsWU+SxYDzPPS5vtkO7kOghaZcCjyVEGZSVEiDmuwf8AGTpNxLaG/B7p\n5gflHmXPJfuUBTy2Q0HAA5gApSvbkFW6fSQkZzxdUJRjs33L1W05djmeouv9I16zatx0Npdm5bMi\n2tlWxUhLaPMS4SQDK1T5g3LKjDhEwlMc2dStiq3UrSrZJZdWtam5l5JIISQolICYMQO5mcRMeKUI\n9Lk2WUk3dHTaP4k2+nFa7voTpfUFK89QL1htKXHP6htIEJ5SiNg/0xiufXrVqt1p3+CWQCGS0tKQ\nqFmSd+T+qCB7Y4qrC421Jlc00lRlv9d0S51U3+ndMW9nbeW2j8n5rjjZUlKQpRUo7vUUkkTgqMQI\nAvbPxIsdM1qy1rTfDvpZn8mylo27ls5dMvkBQK3EXC3AVEKzAAlKTHMnic4dMpP9jm0pWkUDmv2i\ntQdu2enrBppbxdbZ9a0tiZCcqkgCBmZHNWjXV3TTNi7bK6FsF3Ljail9y5dlDxU2QsJBggBCxsMi\nHD3AivG2lUi9S7o27TrXpBN4m51Hwy0y5alwqYRdXDbY3NlIghe4bVELEqP6QOCZlqvVfhxe3DBt\nPDtdk22y404hrU3FFxRdWtDhKwfUlCktnsQgGEkk1HCbaakWMorlGPS+pfDdOq6vear0Dcv2bzDg\n062Z1NSPyz5A2qcVtlxAM+kbTkCe9Ydf6o6GunV/wLw9asrcsqQ2Hb951xKyuQsmQDA9Mbe5PsRj\n4Wd5Orr93yo66sfTVblINS0AafetOdPKN1cNoTbvC6WBbKCgSrb/AFSncmCcSDyM0xIOBj7160mu\nTJhgYk/HeKUqBjvXRBgpOADIpDCicEUBIJzzH1FRJGJJM844oCRWQoQeDmpLeUTBUVQeTUBEkAT2\n9qiJJPJn25qgZTKoJMUAEHBNQATA29/eaDmIPPf3oAIjgc/5oExkHjigHyP0n2FNIJEAQU0BGBng\nnig7jgn7VQKJIEUkqOSSJHzUAApAhQOaiQQeRHtVAKRJHqPyZp7QYBOZoBlKkmMyDEiBUVBJIhUg\nf2pQAjvMEdiakQdszMzz2+aAiP05A+9Ig5HvzQEgkJOAc0picRHxzVAEngjntRtKgOYnNQEjgZP2\n71BIEyB96AkTJzEDtUYJEknntQEmypCgpBUFjit271e/vVJXcujclCEAhCU+lIgDA9v371KV2CDo\ndYtrZ4OsLCwVJSkgrRCj+rEj6dxHxWJ15151Ty9u5Uk7UgCT8UQF5rsKJzvEEkZHHHtxSkQNoEVQ\nCpUr1Zgcz7UBKCFUA0oK1elJJH96SkExAj3oAKVExMg4mmQ0GzO/fICc4jM/7UBYF1yf1kT2moqK\ngNwXKqlFsxneDlR+napMuobdQt1HmISQVIJgKA7YzUCdO2SvXWH7p24YtU27S1qKGUrKg2knCQTJ\nIAxnOK19oGAR3AJFEtiyabbSoSlpmIn2onKiIyOKHJApPJjI5pECQdx9qtgCR34+KlIwcekUQAmP\nVHyaApQ5PPFAIkgSAYo5AkwRkUApk9h3xQAEkzPHvmgHMDAPPHNJJSDgf/dASmYM98UpElUTHvQE\ntwKRJkntUY2yUp7zkUApKYEc5NBBPqkRx9KAjCR6jkzimuIxiM81QRIVzxnNOIx/2KAREAcDHM09\np2CTnkVAIDdMkfen8wPvVAAhOEnB4oTnG0nM1ARhWU559qmnelW6fUIM+1AEHZunJpAcqCpnk0Aw\nFKIIIn2qQTMkDvk0AFCoKR75pgKjKR8k5oAxuESZ/wAVElSlRA70sCSmABHPzNTJj0pElIxEVUDG\nrjcRJPY0lBOQEgkdqAEAyeZ+lIgkxHbmgABOQYHxNCTjANAGFEQJ+lESZj7HNAMc5+tRO2YSk55o\nAgQCfalBzAoCSh8gg0o5yY5+KABKZKSBPb3oE/qgz2oCQTHIPq+aUmYHc5zQCgjIVjuKSdscTJoA\nmFbeJ7VIiDEx/egGFpVhQkTNIJzgH3oCYz6Nw2n3pqSlRmc8CKoFtO0zwOcUEcbJk44wKgHtj3k8\n0RtAKjInFAIDcMJn3+aCc5TwKAuFXKS2lAtmw4mUzHKe3/3W4/rwc8oN6LpbSm0bNyLed3pIJIUS\nCck8cwRkVxKLlTs6TrsTPVZJtCrQ9IKrQK9QtUpL07v1jhX6vb+ke1VtteWTD25y0JbK90SFbR9x\nn745xR8UiJ07M93qzN44m4/I29u80iAGG0pQolalEkfRUD4AocvtHXpztmLBCXitC0XG1RXAC5T+\nqACVJ7E+kfM3p25K5Ju6NZy40ktEM6UtLimygrcuNwCoHqACRGQcEkZpW91pjdk81c6Yp+63JU08\nHihKUzlKkx6v3BE96b+ZNr2NV19p1ltDdslpadwUoKUSuTiQTGOMVhg7sTPxVXBGMpmQTgUKAGMG\nKAWyAQkHimJUZGRFUEYjEwR+1P0kekf3qAMZ2895pkFPqJiB+9AEnhJJJ5pFMqkCAP3oAIEcHHBq\nSQNvYT3oBAHenEpHPxQZCgOQcge9ARORtWIHE0uVYBxinIEkbZAHNS2kwOKAQ2hfMA+9IhP6Qk/J\nBqgcBMgJn70J/SZTB9u9QCiJxE80D05IpQAAGSJAPOaZISkbSD9RVAyFTx+rinG0bSn3qAaUOOAh\nKTgTMZohTc8iccUA0pABk88Eiavek7PpS8unbTq7UNQsW1o/k3Fowh7YvJ9aFKTuBwMKBHOeK4yO\nai3DdnUUm9zodR8JNXGm3Gu9Mapp3UenWja3nXbB/wDnNNpJ3LXbr2uhIAkqCSkf6q4UoUPSDkcj\nvXOLKsi8n3R1kxvHXkxpSZE8cUBhUblDHY1pZmYikBQIURNRUIglPHaqBEJVkjnnM0lpXJ4ntFUD\nVuAE47fNLbOPvNAIpJMgCD7ChKSe/wBZ9qgCCFYFEZOYE1QBBkwT/wAUsE5V7CaAiEiCZP71Kc4z\n7ZoAUmTgYppQsyUjj2oBgAjHtSUkScRH+aAQMJjmeKDBM7ckd6AjITmDzimkQBgT3oAEdzxUkDEE\nA/270AEYwODnjin7DiKAAQlJAEk4qQE54E/SgGmMerMTNNWOBRAEQe5SB/igpAICRx2oAUhSTkSD\n3pBGZI5/xQHbJ8NOtLq6sLGy6Y1W4d1ZCl2CEWTpN2EglXlDbK42qBif0muZdtnWnAl23Wk/07hz\n8104Si6aOYzjLhnR6X4X9ba42LjSenL19JEnayqR/b6f2rHeeGvXOnLm56YvEKTzKOPtWUmociOS\nEnUXuU99pGsW6Rd32mvMJdUopUpralWcx+/atHyFkDbBJOPc0U1JWjq7Mam3P0rSoGfal5SwASDB\nBIgciqtwCUrUSNsRP2oKSYSEwOJoCRt3ERuSUk5EjmeKTjK2lqStCgoCSCIIoWmSDD6my75aggmC\nuMCagll11zYhtRXzAzOKWKb2ElC1cN5A7AzW1p2japqtymw07T7i5ulkhDLLSlrVGcJEk1UrdLkj\ndK2YHbZ23d8pxtSFtkhSSIIPcH2NYylQMbYBxRAQQZjtHEVNKFKkJEn2qWAUytPII+aCJAEiOxom\nALKhyDtVn3pFqAIQT3+lARLZAKRGe9RKYBCZGIroESlUDEmnEg7SRQDAJkf1R3ppSVGB78E1ARIS\nIkAUAkEknnNUAUqO08T3plKTKuTBmaAeIyD+9RA9zEcHsaUDqNH631HSdVsNVRb2zy7BsNttvtB1\nG0dtqpFVVxrV1cXLlyShClwVBCQkHM8fUT9a46UdOTZn0bqC70h11VqltsXTC7V4pElTaxtV37if\nit7qHXLK9TpI09opFhbuNkOISU7vzLziYGcbVowZyDzWLxPxFJHSn7tFC4tTrpdMFSzuJCQP7Crb\nSLLTntO1V67bdW5b2yFslOA2svNpnEzIKhBgZnkAHSbcVsSO73Lbo676Ys7i9utZ6bvNXbRZXAat\nvzfkoQ8pBS24tSYUoIJ37RG4pAOCar9O09q+aDyGmGgyseYt1avXuMJBjAGD/wA1nBT65W9tqOpO\nPSqR6B4b9EaT1L1SnUtZ0Ynpo3YTqCbRxO62YUrhresnf/SkKOe6h+qnrF7orGh2/h1do0+yYsNQ\ncfL6m2VPBagAQ482lTigBCSncEjZIBJM55MfV023tv8AQkMiV0ilu9O6X1PVUP3WqaE3c3BfS9sU\npu2Lh3KCyEBIQJUAkIhPoEgCSa/R+i9Cd1R221fqXSG2mkFTSk3AUh1yJQCdwhMwFGZAJMGIq+JK\nEG6fwo1jGGWSTdWTZ6Z6SWLzTLbVbQ3BSyGLm5uEstlRPrA9cAgwJUSCkE4xD1Pw905jRv4vpfUW\nmOL/AC6VO27uoW3mFZc2kNhKyo8E5AITnuJ1lkcd3fbsceGm6TOKtrEPvFhV4w36SrcpRiQJCZjk\nkQDxPJjNdtpWldFs6dquhXz1rf376mk2erN3Cm2bMJ9ThKF7VObk44mR6ZkVo59D3VmfTa2ZoK8N\ndRf0S216y1TSnmLp55ryzqlql5sNpBKltlzcgGcFQAPYnIG/a9A9O2Gk3txr2rXK9TZZbLVo0hlT\nRUtSSiXQ9O0t7iSlB2kgETXMpPpUkI1e5n6a07obS7N+71bR7nVL+HbZLSrhtNmlS23E+ZuSrcS2\nS2tOYUU5BBit/q7ofw30Irs27+9VcJadG9u7ZfZW4VuKacQpKRubLPlAhQSoLKuP0jzzz5U+lJPf\n7bGuOGN7yf8A2cDq/SmpaTpFlrbyWxbX5Wlr1er0x274IyJGc5xVEAFEQOK9iexgnYFMGFA59qaQ\nd+QIEVQTSOBGBXfdD9HdH690z1JquvdYt6Rf6VZoe060VbLc/PuqcSkthSRCISSqTzEVlllKMbgd\n44qUqkcS+yhsqSlSVAExHetZaVD1RgD2mtLOBBBgKmfiKWMAR9DVAECYmOwEUgDxiaAkIHqIP096\nChUgiJ5Ao0CSUED1QcUwIVgiRmZpwCQbIIITA5OKYTKt0GPbvQCSkzhPb71l2ykiPT70BFLZiBHO\nal5ZUZA+RigJBmMEYoU0N0AEHv8AFAfRjOq6FedLaNprmg65ePaYCy/qFzqryLLa7+haWfJC2W2l\nOp3ELIUsjBCk1Rap091T1g02/wCS3ZW2kqVb6dau3Plt26Ny3lBttaVLSmCVmTxkkyK8v/kptSlb\na28nuq9TeWnxpR92v9novQvjTcdLdaaTpnWHUOmIsbFDburX/mXF8NRX5LSW2wpkpW35TSW0bUKS\nnc36iqABoaX4teKXXusPX3T91otitAcSpLjyUhTGApyLxakFQHcGR6iYwa9Wvngz4kvO759Ph6ng\n0+n8LN4qia3XvT/hcz1RpWna7rGsO3ltsTrrLGqWKrcvuFwqNu8khtCCgNkbQ4gbpJExXH3HTHTI\nXqujWGlaI5q+orP5B5i+datLNhpR3vJU+PUle3ClOAbQ5iSgj5uLHnbWJNeXaq7cnuvFBKSjsbXQ\nPg2nxIvNK07UfEDRtOZ1e4NvZfmnVpLqk+WNhAKltg+YgBSkbSASCQhUUWqp8LNE6av+mr7R37/q\naw1BLTOo2l/ssnLNJUVny1I3LWo7QlUgbTwTFa4HljmyYMuNxikuidxab91tUna2fdc/AzyPqjGU\nPPdVWxz2qJ6O0XU3rfp97UH9Lukza3V3ZtlSpQUqTnHpUojcIykGAQK9Pd6a/Dh09bM2fVfW3Ues\nOjcm9RpOm2jSGbkNJ8sNr85RcQMhSgmCQCJJNevCsbT8Z79qvf8Ao4yddLw/nZz+qax4a+Iaen9F\nVptt03/A9OTZLcs9PP8A+4KSVKL7qgSrzFSkGZEAkbRArYuvA/p+0ub68b1Q6nZ6PaIurwsut2qF\nILoZ/luLKkuAuKbG5G7BUogATXzs+oyYW4wjzbXevzsevFjWTfI9lRdLHgLYdM340fpy6s7pDT7D\nydUvvzy1L9RbW2i3CU4TA3LlO9aSCAlQrzbTV9Lv2Nw2jpm4u7a3uVOvXqGlNONtmEtJUuHEoCjO\nNv6jG41nosWpUW88rk/LZfJf7LncE0sa2Mmo+H11aN6dfXTjWjaZqV65btXdyyvYhbW3eFbQVEJ8\nxMlKTJBjIIr0HwTuuqb2/OtdNabqWqahpDbvm3GmtLbcZC9qUuKdSFnarzHN25AG1MbjICfZPJm0\n76oqpR7nnhGGZdMuHycf4t2Nrb9W3xtOitN0byXiLhs3dw+XXQo7yVOFPJVlKUpiBAA5w3/hde6d\npmj3Tl/oz99qaw4m2tvzL1yw04lJaK0oBCQAklIHqwuZgVzDP4kVJ9/Kvz9zpRS2jwVI6M0VrW12\nN71DbIYS55f5sWlw20TEzK07kiZGUgyOIzXd6boX4e2W0aXqXUq23rgKC9QTZuO/lwCcpSHUhajC\nQJEQSTXzfaOb2gq/Rxtd919OP6+J69LHBTeZ78f7O06h8LPwtXVnp7HQ/ilfrvLhhxF23qzaWkpd\nRnc2pkOSkgHC45GSZjF0f4CeEeu6eNdY6utdQaZuWG27JS3m/wAwkGHPMWEEsyrYEGCkhZkpIisN\nFqtdPN4eqXTF8Ot9+2zkvPf596O9TiwKHVi3fx/6O+8QvAXwL07wkvbvpgW1z1J02+49f3FvdO7X\n7VVwltCtjkgSA4UCE+kZKlAiuNvPCHww6G0/UV3jGj6vq2qMm40vSL/Ui69aWy1rQA4LRSd1yDsI\nTKQEhSlJgiNYarV45uDXUm3T4pUvNb72edYlkVrb0+Z5zddD+HOuW+mu2IsbJ5p66Z1NLOq7WkqA\nR5ZHmg7W0lRlQWsqAXEbRu896t6W0zpu/ct7PXtPvlBYWhu2JeS3n/01LUEyRjgEGe1e3TarLOax\nzi36tfu9l9BkwKMXK1d+Zz6LJt9L1xcv+QpJ2JbQ2CSsRgiRAiTPumKvleHGvFTN0zY3T+n3QQtq\n7ZShxCUKUnDqwrY2oBSdyVKG0kAxM17Z5446UnyYRxuS2NQ9IuM3DSbq6S4kFJuDaAPllspKiqAo\nBRCQSQDAiCQcVm6Y0vp3UurdLseob1dho79401e3TLcllhSgFOQTyEyYntXWLIpy34/OxJwcI33J\ndZ9P9L2Wthno3qFOq2F2t1Vv5ramnWG/NWhCH9wCQ4UJSs7SUgLTmZA0NO6XuL5bduFIQ47tWnzD\ntSW5IUueSEkGQkE4Psa66q27nEU2rZl0Do/W+qPzD2i6S64xZJQq7eSkhm2QpYQlbi1HagFSkiVE\nDNdrdeF/Q+lWly1qXiZp93qLmlW93p9vptu4425dOqANq+655YZWhJ3KMKRggKrCWaprHHn9tr3+\nJqsdwc/I84f0h5lO9amwgkgHeM9+3/fFZXNBvba3Re3dqEWyykAqdSlTgO71IByR6SNwBAMTyJ28\nRHCi2ZXNFRuukh1lr8mjesLu0ku+sABshI3H1A47Aniuh1Pwl6p0bRP/ABHq2mnTtKcbZcbvH3Qt\nt7zUb2wgoSd5UkKOONqgSCIrjJmWOurudwxvJbjwjMxoPQ+v6K0iy1JjStR09gm4RcPOuqvjvJUt\nADYSlQQoAI3Dd5ajMkBWCzv+gmOn1aPddNvPaiX1rTqX5wohJSlIQWwIgEKIM/1ZGKinOTaqqEox\nSTTKtFnpa1rQ9bJSlC9pWi4SSVEEJgGMTkxXrOn+EvQug+FFx4h9SdUu/mb+5NhpmkItUrcuv5Sl\nedKblBDaFBvMKyRIIwfNqtU8TjCKtydcfM00+JZOqT4W5zmieHDmqWltqKPy9npl1/KXeIumi8U7\n1Bc25dKlKkDAiEpCuCTXoVl+HnovSrJmx618QFaNrD6be4RYCyQ884hYJKRtfAbKQQSHggzgRBB2\nyTcaUeX8e3yMJdST6Y386+p9T+EP4VrXovoG+e1jWdTvV6tcWtxoGkW1vsc1htRCm1PFtTqNn+hM\nn1CeAJ+SvE/wg0jS7y7u9U1JzTdTuEvXCbFxtJcS6X8NPeoeX/KJIKQrcQnA3en4eL2pknqZRiri\nuednva+lP5n1P0kPATfP8bfzZzVz4H6W9p2mXlp4h9PtvXml3F88zcuLaU2+0pX/AJdI2krUtIQU\nqwCVwYiar+hfAvVerep9H0Z/UrS3t9Tu2bdy5bdS4W0q2lRCSRKkpPEiSInvX09T7SxaTA80358J\nnkxaTJmyeHFeRY+IP4Y+vOitV1xl22YuLDRdQesnH03bIWvy9pJDe/ccLRxOSRMgxzeleBXiJrrf\n5vSenr24tFvC3bcSws717d0AbZ4iTEZHvXOH2vpsuNT6v+zTJoMsXSX/AEYEeC/XNwbRVvornl3z\nqmGHHT5aCtJAIUpUBMTkqgCCexqmuvDfrOxYVc3Gh3gbSCpRDKjCQJ3cfpjvxWq9qaVunNJ/FGb0\nOerUW0Z7rw91Ra13GiC6u7D/APhPvWi2S4ABPp9QmTwFHAmlo/hj1T1DqlnoehWDl/qF24GW2EpI\nK1mYCSoAEQOf+z6J6vFBNt7I88cbk0u7M914YeIenaXqV1ddOagzYaSpk3jq2lJbZLv/AKe4kQNw\n4rb17p7qPqRem3iX7V38zYBxJN4lRbbQpTUOnAaI2CEqIMFJ4UCeY5MWVRzwdrs/jR24yx9UJLcq\n+pOmOptNa07TdR1GyvEeSXWEW2pNXCWAVlJSrYohKvRO3mNp71uaz4P9YaH0tadXXTFm9ZXanBts\n71q4dZ2L2EuobUVNgqwCoCTxXrg/E3vt39DztqLSXcpbbovqC5s7C6tbVt7+JXDltbMpfQXlOI2y\nC3O4TuATIG4yEyQa2NS8OOstJfNtqGiutFLoYVKkkeaSobMH9UpUI5lKhyDUk+hJs7ScuCputH1L\nTbkW1/ZPWzpShwIcTtKkKAUlQB5BSQQe4INek+H9vq73Q3VnTum6RcXT+smyQA0UEpDTinCSid5G\nBlIIHeJE+XV4/Fgor/8AUfPtJPt+eZ1Caxvqfk/2OfvvDTrC2t7i9X01fli3UhLzv5dWxornYFKi\nBMGJOYMVrX3hh1fY2Vjfvac2Uak2t5ppFy2p5CULKD5rYVuaJKTAWASCCBBBPrmvDvq7cnGP/lrp\n78FRa9K9QX96dOsdGu7i6Slay0y0patqUlSjCZwEgknsAamvozqcOptk6BqBeOA1+WXuOP8ATE1z\n1qursVxabTNG+0TUrF9VrdWjiXUYUAk4gTB9j/1rWFjdKQpxFu4UAwopQTBM4P7H9q6bS2IZWdL1\nF9aWmLC4cUsgJShskk1m/hGpJYVcqsnUspX5RcKFBIVzE9j8UScuA3XJkt9Ev3mk3AZKWPM8suqw\ngKidsnEwJr1TWfw6arpXTWg6mnqXQ7rVdeV5jenW+o2yy3bqVtbWpwOFIUpSVygwUgJJ/UBXlz5/\nCa2Ztiw+Je5Ydf8A4Uuv/D7Tul7zUlae451OwHGmkXrRLai44lIwoykhE7x6ZMTIrF07+ErxS6ht\n7XUrZnSv4Rc3501OqI1NhxgXG0qDY2qKlLIHpSASoqSBkislrVKKai7fajeWilF7tUVf/wCnPryy\nRqVxrlmmwtdPFy1+YStDzS7hlwtrbUtCilvIJ3KMEAETuE3PRP4U/ETryy29MpsL3VnNrjGmt3bR\nW6wUslTm/dsBSbhlJQTunzJA8tUdLWQkrimyLRTb5N3R/wAIniXr+g2fUGi2iFWztq/c3Tt7/wCU\naYLbqmyhK3CPNmBCkykqJSCVCD0ulfgZ8TtX1m1t7MN/wu5W0EXTm1t8trQhQc/LKWHAj1gFSoCT\n+opOK4euguxVpG+5zKfwjeLy9bRov8AYQ4tldx5rl8yhkNoVtMulWyd0JiZkgc4q7e/Bt1pYdU6z\noGsOlq00e3vlJv2GhcN3NzbNBRtm/LUoKXuUkKCSdiSVn0pJGy1UHB5P/VdzNaaTn0Hlehda9Yar\nfXCtR6nvrxTbRLdo7fuNt3HYNJCCCc7SEiP0xjEWuidWWDydfbca1lSryzBtWRf+apu6SgFy4cBQ\ndyAlLkp2jalQ9Upk+ZaTDhTWKCXwSXqdrNkddUmzf6A8RV9POnV33bdCtJ0+5YtGWFJO69dbX5d0\nptSSCUkNlRSnPlJ3GSSZ+G/V/U3Tl9qut3LS1W+taNf6e0q38poXTjg2JEr/APUSHFtlaUyraCMA\nSM3p8fvUmrVf2bRzykoxu0jk9F6h6QvdS1C46zbdcecYuHLe5sglJRc+S4WRsKdu3zvK3H/SFACS\nCK97qRfVV7e611XrDHnrOyGrFAdcUUKhYCQhGChKVSZhcgEivStPFTjl3tKlu+HV/Hhcnm8ROPRd\nJ7v5F1094v3HTWhu9OWWmsLsb0fmbtNwyl//AM0hLyG1ISQAlIDiML3wQSCAoprRvvE9q903StMP\nS2m2Z095p9N201DzqgB5m9SYUpKlBJCQRtAjJgivSQcutNre9m93xvvxXbgzWRpv6Go/1XfM/wAI\n2Oade2unuOXNpbmxltK3FArbXuSN4lKTEkZwRJre6113Vuq+qka9r2m2ANy4ygmwtxZ2z6wlPmDc\nvCVcSeAZgAQK5WGPXHJbTV7Xtv5rz8jR5PdrbsZte69Vruuam/ZaFo+ltXzaHbi3WoKQotIEbVzO\n4mSAmASqIjFZf/FjusXhbXrumuOOo/Jht5ha2Sy2olB3uepHpShKY9RiDEyeI6NdKxtt7c3v9SeM\n4y6l9Dpx44dQ9OIau9P0DQkKt3G9MuEL022QtbVvG1DlsreCrCSXFJJ3AgElM1h1Lxk6YR0S9oej\n9DaP52r3Nuu7uXt63UBhuNqWx6W07nISpCwo+WZCQoprHTezlghKKnJt97W29+XyNZ6lzknS27Ua\nGseLeo9UvWHSL7NnqujsNN2Wlac6461a2SnQjzVNb1hLSypOVGQSSSTEmu6R8Rer/Da9sdf0jSv4\nZcaM4lxx63ccYef3/p8xQXJHpUBtAxNepQyqaySyy6tvLsq8vm/VHnqFNKCrf7uyPU3jj1j1f5yd\nRtdMuVXVwHW1KsULcajakNplO0AhCJgSdokmTM7K51B1TOr6h0Fcvi6cuEllAebSlFqynz/LVuML\nSCtavTDc4gekMmKMcfRGXT9P6NIT96+ks7bV9E6e6Cb6U1jpHQLbWLm7cumuok6o46sttt7vJWwj\nzG1oUVJSk7QN6CCfSrbS6hq3RzdqhLWs27iXA3doaas/OdSooO5hxxaEBJC0BOErTDm4ExB8uPT5\nVJtyck3a7UvL1S/k38THFdMlv9RXt54eP6whVnoF7bvPPLQzZuulu0Q2fK8hbiipbh3J81TkKGVJ\n2kARWDRvEROiWtu1p/SVgpDTqv8AzS7VD7ryslKVFYUmQFR6QmRG4GBWy0+WcejLK+PT69t/kZeL\nCErijMrrTRdSeZ1vWLNK9PZDNo/pKLkofvthUtTri0JEQVASYMHaknaSKPpu+1ld40nRUXSNT1Fz\n8paXouywlCVDa4kKJCcpVBJVACjPYjqGGWJO3sq7fXv349K7nM8viS25fr9Dp3P/AATqTenXGlpX\noirO2Fypy9vPzC7taXQlY/kolBAG8BQBgKyRsB0ndL6SutMuuoLJ/ULlLrULYaSFP2V5nYXFKgrb\nXtUqUcTB4TvnVqIxe6v1VLd/iL0429kzmtZbDOqWxuVhF8AfzqC0ppTTwWpJQsKAAUIBJGM+813P\nWPiBf61qzWu9Ratfl5Tyb9rT0uOlpJdUolaFFUowhk+mSoEHcCMd5sTm4tdrJiydKa4J3PVHRfR1\nxfI6BttQ1C9u2Et299fONLQm3eYIeQ42AZXCiAZSUmcSAanp3VrvT9jbavrjNu/d26f4clp5hlxZ\nZSNyHG0bQpsoB/Wo+oLCU+kKjzYsWVxU8qXW+29UayyY7qN9JxV31J0/Za8u76YsdQs7NF61cWy3\nLlP5thDZMALSAkqO6SrZykQAJBsLLXOjLi1urm+fvf4u5bqm4umPzCXHi5MoAUnZKYBKwv8Aqx6h\nHpliy7SVdXftt6fMyhkgrT47Gnq2odOs6k/Y6Dr2qr051guKeNmGllwoStTZaSvaEeYI5gQDBitO\n0t9GcsLt+/6ndZvbbY5YstsF0PKUBJUsH0QAPczAgZI66s6xp9Ccttr9d+3ZfU5axuW0tvgY16Mk\ns2WzUWX7i+Ura0hKlONbVACQAZ3EqERPp4ggnct9AuNX1d3RLXXrfYNxS4+TbtrxJhKojPwD8Unm\ncU5OD2v7enqSOPqaSfJbaL0LZ61rA6U03qrSV3j8EXTtwG2CoQPLSVAEqJUYzkDitXqPSHtK6juu\njl9V6VqFpplx5H55D6jbupTiUFQCikQYx3gc1FllJ28b8+30/NjueOOKTgpp9tuPj8DetbS9ZurN\njT9d6XcRp1yVpunSzsK1oCiVeYnc42lLcAEKAVMZXnn/AMipd41btO29tcNrQPMcdKEvFSipLoKg\nAE7SnJ7Qe+Liz9fMWtr3/b4/AxeFY26d/M9V07wWZbWjWNd1HQDZ/wAKRqlpbWmpo3aiF3IZQ3O5\nXlkLUUqB2naieTuOl4geG/V3STLWv9ROaLavPEpYsV6iw+6i32JDQSwVKVsCTAVkwAcESfl/+TjP\nLFOMleyVO/xfY+j+jlGDaa8+Tn7bRbvpe70K9uU6TqrT6W71VvbXyllSSvLLgQqUKITtIHZXM8fT\nXgr0vqPi31BoNn0TasdMdWK1C8untUuH3d/kHy0hCVLKQoNIUr0p3LUJxiT6M/tHow+JjW74vZ7f\nHn4dzxrRTnkVy2XNbnr/AOJX8QPiH4T9IaP0P0jq+jaJZWV2rTLa3SWri+uGWAlKL1Y4bUpSFgiA\nY/8Aln5G6vuOsertUIZv3brXb+3W1c2MpufLkN+pKjIZJTtG1JKkBJBImB8v2VqIS0/6nWLpck3v\n2S9O3O97n0NTjnGShh7bfU8rubHqBx/UOmr2/slK0xVwHNqm7hSy0glQQ4iSpMMwFJO0CMwc6PR+\nt6/091Hp2saBePNXlrcoWyptRCtxxAj3Ej7kV96ePFmwyhJXGS+zR8+M548iae6/g9H8c+u+u9V8\nU9c1a1uFNJ1W/eu7X8jcuOoWlxSglYVjeuOVlIWSnMGuB1y78RLG9ea1zVNRTdvOhl9tTpKlqQIg\njvACfrjmvLodPpcWKOycq71Ztmz55ylJbK+3B13SHiX4uM/wXU2ntQu9K6VfVcIQVLS2UKclaF7V\nJ3JUpUEbphUAiuo8Uur+petLHTdS1a71Kyudd0+Lq4eQQ9dXSWwC3Df6rdaUwiEAEqhRO1Shnk0+\nh8eLio9V0/33o1x5dQ4tNuqOBHU/XSei1aBc6dqaNP0138sw6HXW0W7srX5cZG4jzTGD8wmDzVvr\nfVFsm3Kbl0ofLdyncwVElvekZUPUP1SASkyAZIge7HDFFPe7fp33PI5S2pU0bOqa3rF9evWCdFbs\nHGEtMFgIdSUutpCVSlRPrWpJKgeFTAAxXoXgj47dQ+HD9y03ord/+bZSCzcMFTBSlSlqc2ISFJcE\nNlLqSFoLczGK5yYksaUJbqjXFl9+8i23RzPVfTukKQ91P0jrJ1OyuUqdctVpUzd2JKlAhaYIWnBh\nSFHBG7bxVBoHWtz05fIS3bNvW11bG3vrW9Cyw8lYwpQSZO07Vj2UkGDxWsZSzRab37/3/JlkjHHN\nSjx2O313xtttS0pnpTpvonSbPQLRxK2m3bBp+9U4oALP5kJDhlQKgncAngQK4wda2ytVN61pTDVu\nEJSsONeaVKCEgqKSdplSSqDj1EVtkUp1TqlXz8zOMox7d7PQtI6l8MOrNI0bStN0hjpzX9OSl1pa\nwXWL++3JA3LguoQUJT6CVJCwohSAoiui6A8c/FLwh6/X1Ki30n+IPuXC3nnLC2dNyh8KC1JWlMOp\nIUSCkkcdjnLRajNgm4Z9/eteq7XVDWabFqcfVjtOqfoLxV/GH4h+J7L1hrA0tiycumr1y2t7JLaX\n3Gmg0hLm2CpIQnjifrXl2r+II1Xabd670lX5YsPotVqfbeUlpISsBwyjctMq9RicARB+prtZPVzW\nRJKlVL0+O54tHpIaXH4Sdq739S28P+qeofDrq5GsdNjS9dNqLpFr+cskPthYalTqrd2CgJCpClp2\ngpODBr0TQPxI+J2o9UM63quiaX1C7d2CLA2WotWzdu4lpSRKYSnygA0kQCCohUqIJSfl5f8A7Gny\nYOOpLfuvge+CcJxnzX3PKdR69vNYTbWwu7fT3dOfdes0q022dTBWHf5lwlAW6dxXG8KwEpGDAxdK\n9Z3Oga1Y9Q2XS+ka89ptrdM3TN7ZJuLN5LoWjzlNgApKQ6kpJyFISr4DBjWGr+fO/wDQzf8ANHZ1\n8OxvdOeKOsdPsAXGouMKGoW907aoaCHHdijuV553FCkBCEgFJELVjndfdTeJ3WfUrV1daRrGuXtg\n9qLOpq8qzT+UZ1d7aUp27SAoBDiAQZX5YMASB6o5ciXTCkv+/wCzJ48b3fJQOaF1ZaXWq3l1ZPai\ny3c/lXG3Hw2+HHHFoCywr1pBWk/qSNqlIB5E21nrdg+z/E9Utbg37wetdq0IFvuDYQgpQhSYUncp\nRJTEpQTgqnyTlHK9ue52oShvZhu9X1HT7S2vrpKL3T7dg2rVtqbaNyFuIWZShKwvaF7iFwQDE5gV\n2PRfVHSmiDU9PsOtOq+nL1KlrQtu6QWVGEhCVtbErK0tKuUmMFRTkAknbD/x5ISh2fx+gyLxL8Tv\nRvWPhQNd6kfs9P8AFa1b0VzUm7NjUNUX+WurjeAoOBhxQOEqJUN+1JTkztJ9P6J6S8YPDbxSu3tJ\n6J07rMOrRpdv/GdN/wDLv2G1Fqy6HfM2soPnNJ/UCmU+1canRYs2CUsk+mTaqu/e/Lt+4w6nIptQ\n4XL+BfdUdT2l51Q8vUehOhtOXotxZ2t0m4ubsaewkLK1MtMMuKV5ZcQ7uDaFJXJWYUUivQeqtf0T\nxJ1rSL/pLrDTOmLXSdQY05STePuWb9xd3C3lXKLa4Hot5bZUoEjaQkEE5rOXsLPjhPFky3KF+W9d\nTf7Vx3Rvi9qQlJOKe9fel+zO91/xu8OvD+5ttK8U+jumtQv0t3rY162sZavHlFCkugIXtMg7idyc\nuJwncSPlPxd8fb/qPqhrr/w6sNH6RtUX/k21tYXpYcDyW0o85aUrB2wowuADuUMwa+j4uB+zf0ku\npNUlVVzzxfwv5nl8HNj1bzJpp/H+9vU+U7xOiaRc3dtrlkpajapXY/w+5SpClrSFIUpZ3SgAyRzI\n2+kyRm6Y6m6XGsC56sb1J6yCwXbWxDbarhHpQtG44bJb3jeEqMxgySPD0TlG0zRSi3uqLzXda8Pv\nJuha9K9TaPqDN6m2Xcm/ChbWwQpItlNlIKlkI/VuQML9MQBzevXfQ63mXemHNcty0lwFVx5aytQc\nJbUnZt2HZsCh6vUlSp9W1OeNZ696n8/9Gk3i7Wvz4lbplpZ3wcevrG8aZKHfy5s2CsOuoSCRKjEJ\nCkqVnA+orZv7LpW9s23dAd1FldrZJcvvzhZAU75hTLQSQophTePUqd6jgSNnKaexkop8lpYK6N1I\nM2WuX+oquUsqR59vbouFPEMkMgFSk7UpUltO2JAKju9KUCutU9JWFjbvfxrU2NVFy4l8MsNlpNqW\nwElKwuS4SVgoIAAA9WYrldduL4O2oPds2tQ1Poh3V73TtMF45oSEn8iq4bLLoX5YT5hQla0pKiAp\nSQo/pABAqfVOl9J2Tbdt0xrzF+HbZNy++5brY8pahuLDZUpW8JgDcQlRVIEpgnmcsikttvQJY+lu\n9zjW1NoK1JdJI/Soe881aaDYao7fWD1vatpF3ceRbu3aUJt1rG0EKU7DYCd6SSrACgTArd8bmKW+\nxs6+jpm2ubdfS713eh62Dly1cNbfyj+5XoSsE+akJCfWQmSojbiTWNazeW9ovTkqb/LOOh1TKkJV\n6x3k5Htg8fWuYJte+V0nsdb1EPD61Om3ugaqi+ur1zzr1gMqQzbJcbQSyEuJAlKy4AoLMCPbcaG/\n1HTNTvdR1BaW7UuXHntNILiiEKUf5SCZEAKH6uyOex4xeLKKc1T/AD85O2oR91O/Us9d6ga1vT72\n8sbyx0y1Rc2/laUyhba3FJb2fmAlI8sK9MrIIO5Z2iJiu0bS3+oWtWvn+pbG0csbb8yE3jqw5eLU\n4lBaaASdzh3lRmBtSok1F/xwdpuvvwWXvtJMVvo1ym+Ro1zasWV6XnmVvag55TaFBMFCt8JSpJnn\nIJHxUdI6cOo2p1Z3UbC2smLlpm6UXUl5pK9x8xLMhTiQEknaDHpBjcJ0eRRXV2OYwcnRu6fo2lt9\nOXPUetvpdDxdt9PYt7xoLLqQiS43laUAOJUCUgL2qSFSDFUzrVrp7u/TdNQj0NlC3HlFxtwNlJWh\nSSmJWd4HaEjMGZHqm35B1FLzNZ3UbjUHD5/lpJQE5EYSkBIkfAj7596uLXprV77ppfUGm6de3Flp\nywb+6DCgzbKWoJQndMEqweAc94rqUo417xEnN7FbcpZ07UVfw+5dUygJ2l1ISpaVJEpIQpQzJBE8\nc+1Xug3/AFFpWgamzo2rPWVvrbLlretLHltXTDSm3tgWTCiFpQdozITEzFcTUXH31yWFp7HPWtlq\nOr3ItbG0uLm4cUSlttsrWqASYAzgCrpl3pNre7c6bfuNiyLaCm5QhQvCgQogpMthYV6QASCBuBzV\nm23UHv8AlCFLeR2nQ/WHRVt1Lp9x1/YJv9EefQvULHSrRm3UbZbhcdbDu2UrBQjbAICSQCBINT1t\n1FbP3N70909p7aNMcvV31gVhDt0y04iEteejKgUFO5JwCDgHcD4o4JeP1N+7XF9/y738j0+Injar\nco76x6eubbTNJ6be1C4v7lA/O+fbIQj8zJCW2SJVtggSYlWYAApWLWlp0q/0q9dQ061DwK7dAdFw\nkhvYleVbIWpRSOdgMYmvU3k6eN7+1mCUb9CnfudOCW1RcXFy6Vm6WsBMndgJmcwJKu+6IxJy6XqT\nNsHLbUGLd5q4YFv5jjRUq3T5gXvbAIhQgjOIUR3rWStUjNNJkz1BdWF/du6E+9asvlaQUHary1IU\ngpJ5goWpKhwZNYtb1FrU7lty109i2Q2w00UW++FqQhIUs7iTuUQVHtJMAJgCxSXK3I22+djWYvXL\nK5Rd6c49butub2loXC2yMpIUI9QMGRFWFwzp5AcsLy5fbMJWt23CPLWSeYKpwntzn2qv0IjNao3/\nAMi7tJbXcNpW8pHl+WiSIUdpKZ55P6Tg13F9/wDk6u0tbjR9L1r815KTcWbl8khLgWZhwM+tJQM4\nTBI/VXnyudJYj0Y1B31mE3dneOs3mhaNcaUu1tiSti5WpAX+gqTuAWhKp4JVlXIGK9Z8O/wodY9d\n2TGva5bp0jp++UhbGuXqvLYXLgSpKSo+peT6UhSjtgDM183V67HoIrxHu9rr9z0Qwzz7Q4XY9G6Z\n8I/BrwovF3us9Z6Zrd5pF/fafqVpeKQtg+Vyq2ZG1x5SU7iPMLKSspSkq5rlfFP8X3iAm+Y0bRbO\nz09GlPODTnU6QmydQ2pYI8tAI8g7Q2JQAo7RJyZ+Zg0eb2jnc86qKXbv8Hv9qvZ+SXvllx6TFHpf\nvPt3+a/P78m638ceteuBu1Boli0tlouGGm1qabKnlqClLUtS1QVo9RVJIG6ck+aK1a00y7U8xcPX\nZUp5t5bbimkOpIISUmAoAzJBGeK/TYodFRTtLY+POW7lwVd3erffTc2DTrJU0ErhwqKlbf5ipjAJ\nkx2Biul07qC06P0Eu9P3pd127XC71LRSLJkAgoaUTJUrckle1JTsASck13ki5JRXz+Bzjl0PqKC4\nU3avpu2Bc3jbjAQt15tTWx5TfrA2qM7SVQSfUBJAkgZbW0t/4zZ3r+kX69LDzYeQqSpW3b5qQUgH\nvjuARnvVtRW+xyrbOm6Y6Q6k6vTZMNa+5abXSNl95yWbO2bTm4UuClLaZjHqkgAEkT1XWni4jSks\n9H9MB5/QNNtFWrD90hly9U7tV/NLjjSiiXDu2pghEI3SN1fL1enx6/LHFJbR3tefbdU99733Pdgy\nS0sXlT3ex5bpfVmv6Gu5XpfUV7aG9Qtm4LC1bnELQpCgriQUOLSROQSDg1b9Aafr3WfVGhdH2+vu\nMC7uW7VnzrtbTTIUvdG6FBsSVGYIBJJ719PJHGoe9FNLft5V+2x4oSk5JJ0dp4jeILekdba/b9ML\nWxp7TI0yxXbIQj840gpQX7kKBK3XEBSlL/VvUTiSK0ujfGC83iw6i6p17TkKWzY29/ZeW67ZaepS\nk3DYBCVrBbUQEBaEmVA4Vj5n/jsWbHHL0+9s9/rXw7HslqZQyON7LYtutOr7FnXtP1vpDrTUX3r6\n5P55m3sbbTWVJSEyEt2q4SmXHUQYBCdwMLKUVniZrfT6epdZsre0btrnTtcXZ2yru3BUmyQ4vbvC\nEj1JgBW4LKgoBO0IhXpUHPJG1T70cScYxaTtdjkNQ67Qp7VLrQtJsdJGoPJQba3bDjIYBCtiQ6lS\nh60JJ9eZjbE1m0/ru7GhXXSul9Naa21qGx2/uAyp15xLQ3Agk7UJT6lQlImTuKoEb5NNGa5aVp8+\nXx/0ZLO72S/7Kx3X7bUbNFu7piFXyFIat1NgNobaCidgQkepRUo+pRJ49q6a+8SLe3uH22+kGLG8\nubcW96pm5KUrcKoWpKEgIRubJBTBCVKUU7RCE9SxOS6bJHJT6mifWz/T9zco1PQuhRpVjpxRp1xZ\nu3brzv5hAClKfXjKzvA2hAIQYAKVVZ6Z4leGmjX1xqV34U2OspfaYXZWtzdvNNWi0+h5KkoMOBSR\nAVO4BKFEle4nJY8mTGk5+93a/hO/5NMuTH1uUY0uyFZdfdFaBot1Zu9A6Fd3+quhSvNW48bO1UEr\nSGn0vHa5JhQKJABSSSSK6xd4/pum2et3Wi9H9T6JaMll42BWVlu4LoS9cKCUvpKXnFCHOSlAKVJ2\nT55aeeO8jyPd7cUvol9zWGWLioKK259Tj+seofDZ8ITb6CTd2qVM3ItFpRaXDqFJS3sCUoUlPlhe\n5ZSVKWrI5NUOi6QhN4nVVdE37unr8pjb5rkJdfbKmzvbTM7ZWBBkJ4Ir0Y4TxxTlLnzMssoZJe5E\nydRdT6WlzUdIHSbDLV4+XGb64W49dJaUoLSvetKVKKk7TuKUyCcCavr7rDoJXR+kaHd9LXTOqaba\nsli8s3/Javtzri3S8hSZKxvCA4kwPLIIV+oPCyKumfrv8CKcLblE53TupOn9E6htdT1zp7TuprZb\nO563Fy+0glaMJJEKCm5iRiU8qGTgsOt7exF8bS2uLNx2Py7rF2sKbSD+gzyNpiY7CuHp885ubye6\n0vdaW1Pd36rYiy44pLp3879D0zT/ABz6bvdCsbPqvw4ZdZ05parV7SnmbN9SngGnnHnEoJXATLaC\nAlJ53A5886b1rQrC7u9Udtbt9pLTzCW1XxaWkPIU3vSUxO3dkHCuCCJFaL9RG+mS2VLbh+fO/wDo\nOWKSScd/jyvI66/1nXNP6faVd2esaxo2oJub/p4u6glT9klt2VvqCAqCQFBSFQMlREFKqw9NeIzv\nSPTSHV2/UVs/r7Ttsq9TdOMtm0TDcMwQlwGHG17gQIxmaq8V5OtyXalXCXz7vfg5ksag4qPN9+bH\n051r0k2XG+qUOuapbutqYuFtpetHCkhCUvwZLIBKyUpUVcEHBHo/gx4m+D3Ttt1Sjr/oK81dDlk8\nxbarpj7hbsrlRR5C0oWQEiUOCVZO/AG2us3Vkh0yfe/9eZcPSsik/wA9S4648bvCbrjQek9Osuib\nuwXoenqttWNvfLSq7eWpUXC3FJXsbSpSCoc+ogRyPIOvF9KpvVWvTa7htqxskKL5u0vi+eUUhKkB\nAIaJSSrYpRKdqhg+mvLpoS09Y3uqr57fZ7nozyhmfUn+f6PJNxW2dy5Uk/6e0e//AHzUUqMlQBkC\nK+kfPGsrCFbCJUIUVEHvyD/2a2n9Wcf0210s21oym2dW4H0MgOq3hIIUsZUBtkA8SY5NTbktljrh\nuNQZ3M3em3LGlhNk1cWqG7fz05IV5ZSlxxRkytQKuAeBVXrFj/CtUudOS9cq8lWwl9hTKpxyg5H3\n7e3FOpye4qjVbKylSUBKVI9XmFW0gDsM/P1xTTe3Is12guVpYccStxkKIClJBCVEcSApQB+TSr5F\nm7daQ4jRWtYtLZ5LLZQxcPOOJKS+srUkIGDGxInmCDJEgVjtLq/ubRzQbK181V1cNOBKEFTilpC0\npCQPfee08fM8xqS3LTTNDcUpIQNwUmM8+/24q807UNZ6ctFXSNLCU6navW9vcPsE/wAtQLbhbn0k\nwVpmDBMiFAEdWo0QoVqUYAMYnBrZv32X0MeRp6LXY2ApaVqPmq4KjJMZB4gUadohrbyDtj/cVvC9\ns7lTz1/arccUyUoFuEMJbcAASogJgiBnAJJme5rVlXqbNs5bN9PuIZsQ5ev3GxTylpUG20hJhKIl\nBJ/q3ZEiOZwDWdQRbuWRWEWq3g/+XClbA6ElIWBPICj+9cdKb3K/Q0nrm4uXlXD7i3VuEqUpRlRU\ne5n5pJdWgrCVwHE7VY+f+grujkm4zcWq0h0AEoS4ACDhQBB/YiukuekHhoDvUepahbsvrvGEJt20\npKNrzZdC5R6UwAPRyJiBEVxObitlZ3GLka6laLZa2zp2r3q9S0uweLJesP5anmQsk+WVplO6VEFQ\nMSJGIqCn7W6fb0XRdQuGbZ4oKnLxflpDkHcYSSAmY5k4GRMVzVpNrbn5lcl25Ks3RDyFrCPRCY2j\ngY/7/erDUuoXNZ1l3Urq0ZaS/cecq3s0hhpIJyltCRtQPaBj5rpwTdnPVtRn07qy+0pN6LBjynHU\n+W3cea4HrcbwolKkqAKiPSZBwpWATNUzrqQltaXCtQyRtwkz88/tRQUXa7hzbSRYJ1HV9TLbKVFZ\nZac8tKGwNjYBUoCBwBuPxmr/AKN6rvumdStdZsNbuLG90p1N3Yu2dukvfmEmU+rEJGcyeRg9sp4Y\nuPQka48jjJSZv9XeJbutua2NF0K30rStXuEPLtW2wUtLClLCQqAeSqCcwAOE1yOmdRX+k3Iu2GbQ\nnOHrdDiTiOFAg/8AOe1cYdIsWLw5Nvzfyo7zap5MnWklXp62bT/VnUOodTHq4FhWpm8N8XkWre3z\nt+/ds27I3f0xHaIrCNYRp2oWV5Y6Y2l6yUhxSLttD6XXUwVb0KTtKSoH0kHBgzydViUUku2xl4rb\nbZoB7e6p3yWUkq3BATgZ4+lb2ravda1qd1rD2nWlsu5cUtxFpbJZZBJJIShMJQPhIAHaK66afJym\n3sYlWa73UE2tiwgF1SA2kOAzIESZiff2M8cVZdPh2zunX1aJb6iyGXNyHCQEykgKBSRkEhWD/SO0\nzzO3GrplhtJOrR3fhDo9jf8AV9qevhq69Cv9lre/lNzi3GpTAKUqClJG0GAf6E19GeCn4JW+t9dT\nqHVVy703oVy24tkPrB1ByNwAatRLiiSNsEAZ/f4ms9oLDmjGM1TpV3W/P+u74Po4dL1QuUXfJueM\nLX4cvBxLLnh50a/e6tZJZZuH9cCnii7bfTvhgQ3BCVKhRUCBtEZJ8t66/GT4n610onpRd1bo8osr\nsL5CFsXdgWlKhbBQQGSsGVBMg4zIkeL2fp4+1Lz5G3G9k64Vc/PdV6Hp1Ob9Iljju65+Jwnh/wCL\nn8K6uX1deXVjp7rNupG1bTyk3C1MKbUo7SVFZ3KOcSvMACNDrXTunv4zcdQW2rXOo6e84y7bK1A+\nSu4Sqd4Ugr8zYChYBHYDIJFfbUs+nksMd4fLn9+Pkj5yhiy3lf8Al/B57faiXLVywttReNq075qL\ncyGytQAUoJkgHAE8kAfY02w0a4tbxV7rS7Z5LaPy7YY3JeUVDcFK3DaAJMwciMc17fejHZbnn2nL\ndl5f2Oh6Z07a3uhas2p3Ukqsb1i4QhS2iNqvMSsiUpUpJHpAIT6So7jXLXriLJLNpbamLtpBS9CU\nHYhxSUlQAVg5EExnYORXOGU5bzVMuSMY/wCLNRLN1cIUplpxaEn1FKSQME/bAP7V6L4UeF934h6/\nfaQu/TbPafpF7qC21KIcBZZWpLQTtUSorCBAH9USJkTVZ/0+NzStoYMXizUfM9R6e6b0qw6Q1zpX\npLrizZtml21/fr1BlTL2rLCFAJaQoQENKWoJSpSVK37yE4Sji+uPDronTV3WuNdV2xZTcWyHbVtS\nQQXEbnC2UlcoCgpMZUJRuJO6vh4ddl/UqMcd9XNcLivT7n082mh4STlSSOLToOidQeWenrhpl2zt\ngLlCt+19Qj1jccE7oIwBGOa+g/CHwY601LoR/rjSG9FvtReuLrTdOuHdRSzcWv8A5JG4g4AAaUlC\nCtcNrP6Rkj6cpzzt4Gqkv2/3weCLhgrJyjHof4C/HvVdadHUHS7abW3U2HgdVtkLJdXsbO4qVtzK\n/WAChCoPBrwW+6Bu9O6ittH1bW9L0/8AO71i6U6VstbSoQvyQopMoICQmcjsZr6KxZIYuuSpeXc8\nviRnPp7+Zd6n0Xq7Gh6T1JplghWmtPIsHr1xweY7eLT5i0bTCiAkQPSQB3MisXjHoNxZ9Tualqdr\nqD1xq5RqJuwSGX0PsNO7UlQKtyStW4lRyQIBBJ8WKdzjLzT/AHPY4XjbrijzRTahJ8tYSBMkVm2M\nG3O1D6XQRtONp5n/AG/vXtuzyE39Lu7VLC3ktq/MtecjYsKO3cUwocpMpODBiDwQa1CCkrBQQsHB\nnHeRH/fFWLUlsGqLzpnXf4ZcGyv7go0+8WlF4lTXnDbP6giU+pMkiCD2mCa3tN0bRta0Rdhp9s45\nriLnzWFNuj+eztgtFCiPUFAFO2SrcRGBWM7hLqXzNIe/7rKq6ubJvR2dNRp5bu0uqcuLhZCiYwlK\nIHpTBMiTJg44p2t4nTdTtn9CvbhYQhtxanbZMh3YCtGzcpK0btyc/qTkgTtrtJ1Ujm6exY2+lsK1\njVT1WGtKftGXFizdt1t+Y/IAZCUiW1ZJ9WBtg81buWeg3D0dLs6mm/8AIsxat2DxeZF05G/epaUK\nSRIRtE+smFFMVn717cGiqrfJT9Q3mj6iG3tPeuLV2ztbe2cbvHS68+8EBLqkqCQlKARCUk4TtEkg\n1ouWag5eIRd2F6GmEvF1t3ywkEokISraVqBVtKQDwojA3V3FuKVnEkm9jdv7jS9QTaXGk9OKRb6d\naMsv79yvOeMlbji0bclZISIHpSkEqIJVX3tlcaZetOKVbOq8tu42oQFoG5IVsUkiARwRxSO2zJV7\nmxpLibWyvbm96e8+3vGFWtu9vcbSy8lTayoEGFKCRBSqRDkwDtIrFh5srZS9AWdpEwkgZE9jkCu0\n1fJHwjE05cMuIWhawpKpG1UEfI/aul6kFkxZIRa6bqSmby5curC/vkFpx+1kowgKKDK0rkiYUkiT\nmpJboLh2c9+cUVgvblmACSo7oHYH6Yq/u9Z0e/sm2bG0/hTlvbwva6pf51QdJSVY2hSUKSMAA+WS\nfUrMlFvgsZJbM1LZ3VW7W5u7JL35aUMPOJwPVKkpP12KMf8AtntW6226+44mwccsxaFNykvFDbiF\nFSU/+pgmCUxx74ya5dJsqtovvD/orozXdI1+/wCr+vWenH9NtS5YWqrJ24cv38w2nZhAxlSjjGDm\ntfqnpLpDR9Dt7rQfEFvUtRUFfxHT/wAi9b+TlGzatYAdkqMiEkFBiRBOeTLkjkUVC157bfI1jjxy\nx9XVv5HL3TenvXVqmwQtSEtNpeClAhbn9RTAEA9pk/NXnUnTV7a6nqrlp063Yacblttve8pbdr5q\nlKbQHVRP6Fp3H/SriK0baScn8jGrdJHP3+lvWepnSn9QsC4wstF1l9LjWCfUHEyFCZyCau9A6P1r\nr/UmtM0JrztVcDirp++1BllhagCoQ66UpBKRwVEkjHtSU1GPW+F+wUG30ooda0C80DV7vRNUNs3d\n2Ly7d8NPpeTvRIMLbJSoSOQSPbFaSfMacbfCkAnIKSCRB9v+a7jJSVo54e5vamq6Nk0hm+de0pNy\n/wDlA6pIUD6CpRbCjsJBRPYkQCdpiDOmJds2r1OpWwcX5ss+rekICSCfTHqkgAGZSZgQTFUVshuz\nGiwuFWdxdGzeU20pKS8lB8tJVPpJ7EwY/wDice2fR9Yu9Lu0XLLFu+UNuNBu5ZS+3tWkpV6VggGF\nGCMgwQQQDVdSCtGPVXHby/WV6U1ZuuKO5plKkJ3Ek4SSY5iBiAMVlY6c1G4cvLZ1tNq/p7Ti7hu6\ndSysbOUhK4JX22CVEzirGnsmR7bmrZaW/dvKYS6yna2tyXXQhMJSVESTlRAwOSYAyahcW6W3y1br\ncdED1FEE4ziT3q2De0u41du1udHa1RdlZXP899ClLDbym0LKAQkGVepQTI5X2EmtJJabaSoAblgp\nc3EKHPYRjFc13Rbb2Z02ovs32mBrQ+nNlvp9sFm5aaBdUkuI/mXJEpIB9Awn9SZkkzzF3e3Fzdu3\nbiW0uvuKdUGm0tpCiSfSlIASJOAAAO1E1JhqibVlfrD1zbMPQwgLcWhJKW0qIAUT2BJA+pHvWvve\nAUA8pSVRuAPNdckM1hdCzvre9DCH1MrS4WnUSlRCp2nOQYE8d6sGdY1ND95fWCWbJTpD58qG1Njz\nAQlon1CFEYTmBPYmuXFN2W9qKraqCsjBM1YsWbaNJevrq28wOrDbLgfSNi0wVSiJMpPwPrEVW6QS\nNZ11NuXGdPu3lMOJQXCU7AqACQUgmQFTH0BxxSDi0pWtFukIdG31ICiIIOCRg47e/wAxVXqQ2LnT\nlm1Zvmrk3LjoJfQltY/LrKlhKFEiCSlO4bZEH3BAwMWF882t9Fo64hsBaiOEp949vmo2lyDKdQDX\nms+Wlxh1JQEOSQjPI49Q9/k+9a7rCkb3E7jblZQhZBAURmPrBGPmoubBcuXVv/DdN0Vi4t9m5T77\n7TCkvJU5tSWlkxvCQgFPaVq9zU7/AEJek3jrzbX52yccfYt3Xh5alBGN6mwrcg5Bg9/eDXDl0uvM\n1rq97yNZ1uytn7xi1bFy2uW7d12ULT6wQ5tCiASkRBKh6j3gib7us3SG9NunHdje3Y0pW1Ixgxxw\nefY0tf8AtyTdL3Tq+jvCDq3rK9GnaBpxvrnaVlu1V5uxIElSigEAAAySQB3ivqLp78LHh90P0/pW\nteNPXOlaV516izOnaXqbL9+46pKVeoKIQhKfMSFSfSUqkpgT+c9pe1JyyLS6VNz77Ljvy+a+B9PR\n6VKsmTg9V8Q+rdL8POn2NM/Db0podnpxR+Yv9TW6nUL1hhKEO/zHgdueSEHaAmASCSflbxb8XvE6\n3GlaZq+tr0xVnYF20Fvbm2eeQ4dpUpaYWvckH9ZIEKAiYPn9leyVkl+qy4pK7dyW3Lp7rlrl/TY1\n1WseNeHCSfw+B4k7rb2rXrTWo6l5CXnAh19YUpKAT+oxKiOSYBP1ms+kMPXd3+Yt9QQ3b2zqd19d\np3MpQlxsBXlkErgqBKAFEpP6cGv0/SsK2Wx8lvxHuzT1LWjdXC32dO09KW7Ji3IS3sCS2ltHmJG7\nK1FJKjmd6jA7U97qF/fOebeXTj7m1KZdWVGAIGT7AQK1jH/2Zw5diLTTakJ2qJWV7SI7V6d4eeD2\nu9Y6RfdTaqsWGhaEypZeukFtt9aCVqtkL4DikB1SZwSjbIJFeXX6yGiwvLP5GunwvNLpiVXiR1T0\nneWdj0p0dpzTWlaU84tm7WygXVyVobStbiwN20qb3pbJPl+YoAnk+duEJMpUTWukjkhiXicvdnGa\nUZS93gyW9zdNNqtm3Vhla0qW3u9KlJnaSO5Eqj6mu1Z1t/pCzt7y0fcRrbzDts8hbQT+Xt1JTtKV\npIJK0LcCpn0kA8mus+NZV0Ph8/AYpdPveRyepam7cvFxrzGgUJK0lwncuBuV9yJrSTcrylZWUEyo\nBRANbqKSpGbk3uzZsG1uqdSw2VqKJG0nGRJxjiecRXoPVPW2t9PWFp0dpGtrTb2DQbdASiVuKTDh\nJ2AkSSEkqVAAhUAGvNnxRzSjGS4dmuOXQmzln+vurHll1HUOphwj1bLhYTGewOAAo/vVEq9u1LDh\nfcKgZkq4P+1epty/yZj8Dat9XuUuWp895QYcS4ELO9MiIwTB4rsvErq7WbzU2QdSum7d6xsblpDS\nFtISs26QogKzAJcTiR7EiK8mXTwnljOSur+HbsejHmnCElF+Rwf8UvS06yu4Km3glCtxmUpyBWa2\n1nUmW/LRcEN7doSQNsfT716PDjVUY9cj3XozqDw2f8NLOdTvrDxCRqKGLUt2zSrV1lO1bTiysZWH\nABtO1ISkEk5B8V1PUAfzdtdWFsXlOCHhIU2U4ISAdpBOeOeIrHHp/D2Um3z9+P4N8mXrinX55le5\nduOpb81tmGkhsKS2lCiBJzAEnPJzXU6L1jbadot/pmnaSwxcXamXEXTh8x9otqOGlQCid0kz/QK6\nzYnOqexxiyRg25Kzt+q9Q6E6i0HT9dsdO0i2c05gs3VtbWZt3lvKUfLDm55QWFArJcQDt2JBSJBP\nlllqX8KdOo2inGblRcS2WnNpQkpI5mQMxEZEiaw00Mij05H/ACa6meOUlKCo29GvtP1K+CtbdaSU\noeedfunnD5ywlSkp9CVHcogJEiJUJIEkZdG6rt9FS4t3SLTUEuh5vyrnftSVo2pcQEkQpBkpJkSe\nK3nilLZOv4MlkSptblXY3Fldao2rVFKYtluJDi207lNpJyoJJ9UZMSJiJFWib7phF3dJuLBd4hQU\nGXwC3KpO0lAMBJBBiZBHMYLJDI1WN0/MkJQTuaNS3Vp5F8pvUHmAlCSwyWifOXuAIJBhMAqMmePm\nrV7qXT3um7jTNSsLpzVnrhtxV2p3cFtttqSgEKBUCN3ZQTESkkA1XByavb+RGUV6o6Tw/wDFrQ+l\nbPqCy1fw60PVUa3ow0xpTiVBdk+kJi6ZUSdrhKBv99yo2yI57qnq3R9fbtGbPRzp7No03bt26XVO\nNtjaPMcTuMgrc3LKZIlRAgQKz/TyU1K7XPz45+Bs88Xi6K3/AOjmVhktLW3dpUUuFtKFAhW2P1e0\ndomfitu6XrSLVoO3b79lbLctLV7cpTIg71pbJwMrCoEfqB716L80eVehdXXQmtPdMN9bWHT9/b6C\ntTNmLq4UlQduij1hJG07SoLIwYGCSQTWhqegs6S8qwutSadu2wtDqLfa40h1LpQU+YFbVDaN29JK\nTIHuRzGb2XL+2x049zDZaojTrO4TbtvN37iglq7auCjYyULS62UjneFgc4AUIO7Gm8p+5Sq/uLzz\nHFEfrXKlc5P7f4rpRp2Rvajp2kWRfvbx6ydu2C26i3t3bkpdbUoENrJQmFbCUkiBu4x2rW3f4Yyi\n5ZbRdLvLR1tSbi3Q4lvcVoJTJPqAAIUQCDwMAnhy3o62XBm6bTca3f6Z01f6i/b2H5lRYgoSlp53\nakqlZCUyUIBUSAAmZxXa6f070F1FqupHrrxOvLdWnuraL9wpV0q4CZP8opCiqTuAP6ZUCcGa8HtD\nNqsEHLS41N9l6t/jPRghimv+aTSKPWNE8LA3c2/TWu6vdXn5sC1L7KW2vywSorW4SAdxOzaAIACp\n7VVu27ltZq061uVIbccQtzY96XiAdsgKKfT6iJz6jW2DLneOPjqpNK0uE/KzLJHHFvw3aNV1pV0x\nZ2L9s2G29/lLSyhtStyhJUsCV8Y3ExmIqOsdLtaXaabqA1G0dZ1IOehDgW4yUK2kOAcTgj398Gt4\ny3pGbjas9hs/DLwMv9C0rWLLxAu9Pd8tQ1D+J2hQ276W0+ZapS0sLQl1ZSobi5Cd2wCYw2XQPhJb\nM3lzpfjNZs3FrboUhNxp6gh1xbSFKQgqQMpIdSSQM+VE7lFHNOSal+fcdXTwjldf0fQ9EstV0m28\nQby6DV95CrZu2SWXrdE7HStDikbgSobcgSYUqTXD/wDkrfcu1urh1lKwCv8AKgCewnd8f5qQt3sV\nqt2yzddbvQdR1a7ur25c9StiUrX+qPUveTOPbuPeoM3Op6hd3KbG1ccVqH/quuqWtTqt27K453cn\n35q9NK3wiKTsvOmdd6x6OvHNP6adTbuaqyqyuR6HErQ4naUKKpAG0xJ4mcGDXQ2Gg9XWj2p6lrfS\nl/qa7q1TaNXC7dhbbC1qTEBe8QEBYRt2mY7SD5c+r0+GS8SVNp1dm8MWTIvdRh6W0Hpp3UHU9Y6h\nqNotCihKG7RDW5UYbATuJUVYgD9u2/1NpHQNvNtZ9NXNo0HUI/PXrDzaUQJUFpidxBERODXx5Zdf\nk1qjFqOOrVO3L6/vR9Dp0sdPcrc78tkS1TqrpNywGlNKbTZoaFuhCUFtp1ICCQBAnKEkmPUobjkz\nXHLsNOu3nv4Z0u7dhgBbymbdSg2DMEwMA19fDGWnxKWaVPl792fPyNZcj8Nbdiitbly1sryxtbi9\ntW71hLVy0wrai4CXQsJcE5SClKo43JSYxIrmGbUuxcId8kyCGxKiYxE/Mf8AeK+jbaPKqOpXpHST\ndp+fafQy6ox+UW44X25UoQr0bSQEyYP9SfkDDrdhol7pVlcaQhw3X8xu6bWokYV6ChO1ISIJn1Kk\ngn08HCEpp+8d0uxzRtHmlFpyzcUViUGYAM98Qe/euhsrJsWduwtr8u6Eq3OEhck+4I+v9q7nLyZE\nrZ6F4cfh3R11aq1N3qzTLZkNvOt2wuGVXDobQ4tct+YFogIGdpwoKiBVVqPR3T/RGqXNtf3dq42y\nt5pK1tquN6FBSVbT5WwqSIIUYIJBEEY41PiQxKUFbfZP/aLicfEqRyuq6bo93rKrSwuwzZtjeh24\nBCClKSSDCZ3EgR9R9oNdPXl47b6PpDL+qapeOhtDLTKluJAHoQ3CiVhQUP6f6RBOaQydEOrL2Vv+\nTrp6nUS2Z6A013Y51Zrlp0+4vSXb+3QGnHjcrQFJQgwTtW44kj1QBkwBE19zpnThtLS5unG1fk3k\nMPWlsotu3LMqUp0uqK0oXwgAJjAMGCTlizzyLZbdmazwKD9579/6NNHSV8LRzVFL/KtpQldslSFk\nukrA2hQG2QCVSYEA98Vq6gvXLm+dur6/cdurknevcSp2f1Ex+qe571rHJDI77rb+zOUZR4NvSenb\n1N7Zfnby301m9cDari4UpLbQkSpwpSSAAZwCfivR+hurfCe31Wz1XxT03X+ofJKGXiw6lPmMNhKW\nwHHCSAEjaAEjCEiYMDy51k1KrA6839tvXyNsXThvxPodbr34j/IN9aeGlmx01oV/b+UuysbZTSWU\nqd8xbCnQrzHh2lZVCFkCK5xWudW+K+raQrWNct02qrpNoHW7dm0YQFESFqSEpHBMq7k9yZ+RH2dj\n0lZc0eqa7/nmfQepeoXh43SOP1CyurzXbawu+qGLVN0Ap10ONpS0iShRUncAkwknaSCQQRyK5XWL\nN3TNqNRKnFvshy3UFxCTwo8yK+7hz2owqrR8zJj3ck7MtmNJ0+0sn3W2769cL6XbO4aKW0IU2kNO\nBxKwpSpUpUEAAoT+oKIGvqml67oiLVzUNJ/LtXTKbljc2drjSkhSVA9wQQfvW8U23JmMmo0kaV1d\njUrlLiLFpg+WApLLcJ9P9QHbAEz3k12OleDHXmtdC6h4kafoFw707pbqLe71BKR5TTi/0oJ/1GRj\n5rqUlijbKl4ktjpOgOhdB6X1Z608WuldeZF/pJ1DSH22nEBIIOx8p2ytuRO7ghKh33Jo+vPFLqrr\na91TWbu6sWmFlFuqyaCUNQpG0KbanJ2tjcuCZgqO4yfk9EdbqW57xSVfFv69uf6PdJvTYVFKpN7n\nm92+h18LbtUMAISkpRugkJAKvUSZJEntJwAIFZEOaZ/C3m3LW5N+XkKadDoDSWtqt6SjbJUTsIO4\nAAEQZBH2HdbM+dabOstEWnh/Y2WvKukOdSuO72LbalxNkztUkqdSpJh4qIUiCCjZu5UkjkLi5/MS\nSVJWpRkwAIxH35/tWeOLlJ5H+I7muioGtK1KBUsgERJ4irSw0mxvQoN3zMl1llBfeSwAXEqlRmfS\nlQEqkY+sjZ2uDhFhodtc6Qh/qBPlPM2kNKS6wh5tRdSuNyFGDhKiDBgpnGJWg2ej6um7d1IL8zb5\nbJF6xbDzFDa0T5nKAsgqjhIJkc1nTcrXoddkmU12jTUXT3kF9Nvs3MytK1kkSAoiB3zGR7VppV6s\nd/jitTgypC/1qWAqcSDP1q8f0640fV7Fer2drftKaYuPJD5dbdbcSFJSpTa5SSDlO5KgcGCCK4b3\no6inyYbPT+lHrx9q76gubZgWj7jTgs/MJuE7vLaI3iErhI3iY3cYNU8swsbFLVHogwAZ7jvirFyf\nKI6NjTw6t4KCXVNs/wAxzYJISCJPx2q56i1yz143F9d2rzmpqdQFXKVIQ2tpLe31NpT/AOoSAVL3\nZO4kEma5km5Jo6TXTRzYBMpE44qZQtKACDH3itDgt7RWjW+jKuhqNydTccW0m1S0EtoRCIWpc+rc\nC6naAIgGTMVk1K20rULJrUdNSwxeXF2+lWn27bqkstekoIWtSirlQA5ASCSSaytpp1+eZ2kmqKZT\naxACSAcTFRIQEhO47wqNsYj6+9aHBt6Pp7GqXRtn9TtdPSGnHPOuN+w7EKUEehKjuUQEjESoSQJI\n11o2r270mPbNL3otbWbr7mnuMMIsrZ5laUw846+FJW5/qACRtHxntms1zrTd7bXTdzprDt0+tpz8\n4p11TqAhJCkiV7SFkgmQSNo2lIkGz6XK47IkW0qZrWblr5Fwy7YOP3DiU+S4lwjyYMqO0fq9M+0c\n1m0+wvdeurbTdOt3r7Ubl5FuzbttlSlgABKUwZJ7RHYVy9t2XnZGk8tKS4j8sltSlyCCfSM4E9sj\nnOKglCyjd2MgSOff/auiF+7q7GiXWmah0nql9a3dqhq4K23jLNyMyhUJOD8YMgFQ9Rw6lp17Zafp\nt/d3dq8jU2l3LKGrlDq0AOKbIcSkktqJbJ2qg7dqoggniKezktzt+SextdPXI1jWUMaja6a4w21d\nOlt1SLRs/wApSiUqTt9YgFCTIKglMEHaae+/Im5f/KIeQxvV5AWsFQTJjdAgmI4gVI2p9Pavzcj3\nVnR+HvUPSujX11cdYaPcaiyLdX5ZLNz5Km3zGxZIB3BJztOD7jmsF91E9aKdFpc2bgeUHUuLbS64\nUmfSZEAjuB/evLk08smZuf8AjSqv7N45lDHUeSmveoNQvg24+40dgIAbZSjv3gCa3umep16RrFlr\nD+nWN/8AkHUOi0vGd9u8EkHY4n+pJiCPavVHHGCSXYxc25dTHeawm+fuLoWmnsee4XChDKShBJmE\nAiQnsB2r0jwp1Dw013qHStB6l0i20dh5aGr7Ul37jTW0ASspSkxJE9+fvXg1WnzOKlgydLXO12vL\n0+R6tNkx9dZY2n8qLTxct/w/aF1pq1h0lfX+u6HbE/kbu2ccSHB5kBsBZmAM7icxxJrzNy701q3L\n1v07eNNvEC23ajGJGVIgkg59vqYrz+z/ANdOPXqWknwq3+Z1nlpo7Qi2/O9jX17VbR+zt7a2sFWd\n00lKHUhxTiVj1ErJVkH9IgYxXZ33hmi6sOn3F9fdKovuoGkOptlXIbVbFZIAuFGENZ9yAAZMDNer\nUZpaaClGDlv25MsWOOVtWl8Tnr7pdjRernej3etrV/TWndtxf6e6XbYK2EkgpJSrumQTwa7K/wDC\nLo/Tktqs/GnQrkFQU2yl5tYJ5ynfHbMj4rP9Vm6I5I4X7yTa7p+T+BnKCU+jquu/Y6bxY8P+lvA7\nUNE0B+5s+oDr1ra68vqCyeaWEMub0qaaZbVsEEEwpXISIAkGw8Lr/wADOpvF/p3StY0jqS/6Nt1F\nVxpdzdsKcec8sKcUhyGktpKkbtoKTtSEzPPog3nipyhT4ruq2+pFBQdM9e/FX+G/wm029s9V8Ger\n9P6et9RbSw302LtGo3ztybhSf5ZadcUBAGJA9OCSYHi2t+AHiv0tpjy9T6u1FhrT3i/dNP8AntpY\ncbBgkTIKQT9JxXwNd7Uw+zcuPT6rFcpfB78Vv8vie3DgyZIucZVRxlpoPTZ05nWuq/FNGqWjKXXR\nYtvuFxSgVKAQCoHcXHJyBlSj7muTf610C/vCNSsry7SWkMJuLpYddQB/Vk5/+MgcV9HDHPqm5xh4\nfTsrW/rx24PO5LHOpPqTPVvETxR/D9o/QGmdJ+E/Sx1K+eUo6xqOqaZ+XdUEqbW35YQ6qJIUCCTg\ndpri7Xxb0u7TZ272lsaallpxlTunW6G1raWFbkLSAlC/1HKwqBgVfZGgz4ISnr5dU3KT5tJX7tL4\nJc8b0Y66bye7p3SpfPz3/opdJtb5u1c1ZtKi0w5C0pWpKylUiCocJIURg8qGO42elNBvkXp1p/Rl\nXtqw2tS2Uvhta5G1KkyCVQtQPpBPpVxBI988sMdylscKEpqo8mtqVqL+3RfWtgpl1qRfLVcpV5zy\n3FqCkIgKCQjakj1QQSSNwAxLUm30u2SoNSFlUyDkxzPcT+9RO6o7px5O68J1dBazeX9p1fqVlpy2\nbcOsLecS2lwj9SSTzgcTXsbPgp+EjW7WyttO/EVbM6q5bW7jrN7ZFq3QtSUl1PnB4AbfVGDJgfNb\nwwSy30tJ+p5nKSnxseWg6F4e9VXeo9JOJfVplw9bW13+bK27lrepCllvI2uNKiATySDxHRNdKP8A\njEnqzr6z1LR7DQ27lDV60u5bZIDjocDdqy5udBlIggcSJiRWUE3fX2NJNqpUcLa3Hgb0tfafcazp\nGuasuzg3dl5Ytk3MOfpU8VkgFPO1IUJwcVx+reISrLrZ/qnoBu56babuzcae21cb37RIJ2JD8BRI\nBiZ/xXk02LVTn155Jx3pL1e322PXLJHHHpitzT0vX25vr1y8H5p+3lALAdBXvSSCSQE+nfmFe0Z3\nC96e0Swv9Kv9QuUh11m2W4hCWEqJc2koA+CrB+OK2y//AF49UV5IkbyvzPRPDzwD8RfEyzULbp24\ns7PTgyxcO3WGkrcc2pWUkAo78AyU4zg+g+Jf4RNH8L9DtNfT4g2moNtF20vH/NQm2F82la1MtLKi\nVekNjKQSpZEYmvi5faWWWfwtNByjvuk3a247ctJv8XsjgioqWR02eR9Sr0G0vre+0J9m6Km/KKHr\ndClNqLaQ4tSVEpIJUoDaf6ZhOBXF65o4eLa7xFvZrBSssJtgypYVBCRAiSkyJxH2n6Gkk8UUpvcy\n1CUpbC1Tpy80J0abf6b5bb4t30gPI3FpxIcQN2QCUKB++R2rd6Tc0VrT9Qt7nTrp555v8zZsfxAM\n2nnMKKlC6SuPM/lpcASkpUSsQc7T6HJzg2n9jJQ6JU0VOvap02xo6LXQPOdvLkD888/bpKFSlC1e\nWVEqQUr3JJH6gJkBW0crdvNvKDjNq2wkJSgJSVGSAAVEknJ5PaTgAQB6NPCUY++9zHLJOVR4Nvyr\nBkWN4tpq4Q4Fedb71SmDGSMieRn+1WWjdP6p1bqdvpGnKdcCypLKXFKUG0gSe2BAplzxwYpZZ8JN\n/QmLG8s1Fcs9Q6o/DHr3RhavLjqrQH7Ndgm8dvLV9xxq3K2ypDDsI3IcWUlCSobVEghW07qs7zxk\n0rw08P2PDfo69R1Lp2qp/Pa1barbhLKboKIaLIadMKDcbjumVFMenPyMWuy+014eG4Jrd96a2qz6\nU9OvZ87ypNrseV9X+InUvW1xp7VwUKTY2ibK1bQ2JbZBUUo3n1LACoG4kgADgADjrpxsMt+Xv80y\nHJEAZwB+3PzEYk/W0+GOCCxp3R4tTnlqZvJIx2yXbi5ACVuLUoCMkk/712us9KXfhu/a3er3FqrV\nFJcK9OWHEvWCigeWtcbYcBUSEyYKPUIIB6yZEpLH3Znjg2nPyOGunQ68VBRM4k1uaIjSnLlSNbuH\nmLYW1wpCmUBS/ODSyymD/SXAgE9gSa3XBny9ybOvO2+h3GgotLR1i6ebuHHHLVBfQpAWAEOxvSkh\nZlIIBIEgwDWGzsbm8v2tIdi0WVkQ62oFKyMJIAJyQAMcn61KUd7Fto6Prq4t2EW2gNafa2lxpW9i\n78lxDyrm6k+a6XUehSSrCQn0hKU8mVK49t9bJJSlJJSU+pIVgiO/B+azwp9G53krq2RAiTITmJM1\nIqwkBtPpwSO/ya2MwCjtydxJzVzqzVtZ2+lXWm3j5uHLbzXgVJhp3zFgBBSSR6Qk+qDJMCIJ5lyk\ndJbMpvLUQHSFAKJAxgkc5+9TacbDRa8glav693A9oiujkiG1qdQ23kqUAJ+tWB1nU7XTbzp9NyU2\n10+26+ymNq3GwsJUT3jzFd+9RpPYqbXBoslkpX5pcC9v8vaBEz3+1SfuXbpafNUglCEtpCUBOEiB\nxGfnk8nNO+5CVhduaddN3aWGFqRPofaS4kiIykgg4NdX4ZXPTFt1NbXnVfUmqaHZMkrXc6Wz5lyJ\nBBDcqSATxJUBB78VlqHkWKTxK5VsuDTHTklJ0jrdN0Hofrjp/Vl6Xd3v/iLTn7JrS9MatgLe8YUQ\n04s+sq84rLRIAg7lnERXn3VBtLnWr29tbJixbeeU4i1t0KS0xJktp3qUqE/pEknGSax00pN9E+Vz\n9j0ajHCMIzg9n/DoqLe1evHxb2jS1uLO1KUglRPwBUijy1hp307J3GOTXrtcHjLS7trHUUNq6dsb\nhlFvbNm6FxcoWVPYC1IASk7SchOSByTzVc03Y/l7lFw2/wDmYT5BbUAgGfVvkSccQeakX2fJWu5l\nbGpaQ23qFtcO2yrpp1ttTL21Sm1AtuJVtO4BQKgQeQTyDWK1QpSlABzzlx5JCwkBUjJn4nuM1btW\nKpmS90jUdMbs7zUbF1tm+QH7cuJKfOa3FO5J7iUqE/BrK3pZesfzaGbhC37gM2bSWysPf6wFe6Zb\nxBnd279ZlLC0pKm6++/7bnMJRmri/wAX+zQbt7i5dDbDTjq4J2oSSYH0+KakuMny323ErBkpOD+1\nS+xa7mxpyrdl0m6sy8lafT6inP8AvWxroBvFBrSDp4ASSyVKMHaJI3ZgnIn35PNcpPqu9i7UVB2k\n7UGUzMnGKz2X5JZcRePLZQEEpKUb5X2HIj610/QhrOKiSDIV34qIUoeqeRmaoDzNxkn5jtW1+ZQt\npCUNJQpCSFKEyozgx2rlqwZ2Lu2Fo9b3FmHVuwW3fMILcdgOCD3kVktNU/KNnap5LmUBaXCPQUlK\nkx8gx9Md6nSwdFpDY/gV5qDVgHVstBTKwqQlQUCreNpJG3dABGYM4g1Or6szcs29ym+fubt5BN0h\n1gIQyrcYS2QolSdu3JCYJIgxJzUblZ0pbUY9Lu7c2V9av2TTvmoSUqUpSQ0oKwsAGCqCRmRBOK3L\nPQG37RNw2TvLgSBJIOYxUnLoOoxUjO9p2r3qQtT4CAsMoTCiocwOOMGtpzp57p9wP6w65ZvBAWlL\nsoWoHghPJkVi862jHlnaxu7ZkX4l6tpL+n3nTzv5O60x8XDNyUy6FzMwqRAI4iuotvxaeNKNO1bR\nNY6l/jGm62q7dvre8bA8559tTZcLje1yU7tyUhW3cASk8V58/sfSayUZ6mHVKPD8vgdrV5IJxg9m\neO/mXPMS6mPSZA7VO8u13l49eLbbbU64XChtO1KZMwB2FfU6d7PLZFawsnaPT7DtWxYG2F01+cCw\n0FDd5YBVHxODVB+hXhP+KP8ACPovhrb2/VHgHZalf6ayi3fv3Glee8t131pUtGJ2Kd25STsmEyYq\nOtep/Cvw80e8Y8Oeuel7ZrVW9z1s3at3Lyrd5G5KF7N43QRPrKkmQdvf4ntfSvVab/jj73Uk1fMe\nP5vjbdns07jiy9V7V9zxHpzqPpd7TNff6v6a6dRdWds1e6e1ZqVNzvLRLKnG3/5f8pxSj6FQsFBA\nMgcVo2h9Oa71Rdaq8tqy09i6LlvY7vNISFbkpUpW3cIMEwCR2rpyyaZzik30pJerrm+51GEcrj5s\npeodWvdSvnVtW7Fk2Fq2tstYA9pUSY+9VFtZXLCVXltfFC0kJO3cFQocyDEdua9+JxhFI8uRNs2D\nd9QK8kO6xcLDQV5PmOKIQkqkgSYEnJitvTNLdu3FNsn8qhPlrcS0+4rzFAHMTE8/ScVJzjC5IsYt\n7M6tHTvSL+l2pt7fU13qhLyLlwKYnO4pETMjEnj3paz0d0vp/SWt63eH8zeoebYtv5/lqTBQSlCY\ngkAmRHAxHfz+LNSST5r9ztQtNyON0O20W7uLVpWnoSpwhKwtLytgnKiEpz3Mewr6H8LPEHwQ8K+o\nbb/xd0m9qOnjTUqacRbFfmXiltr3qStYEISkelSVJO9QjIVWGs0ubV5Fic6ju3x8kb6bLjwrrrf8\ns9utfx1eGnQjLK+mtAtOsHdQY/MXFs/pv5G1trlbilONqSJLyBuG2SYKZEcV82a/a6L4qdUaYzpG\ntaPaX3WGqXDrumIfuwzpBWsEFwrRGwgn9ClkBBkzArrDifszSuFr3U91t7tLb6rft3GSUNVlXSuf\n3vscunRtM6Wau7UWwcvXmbhgtPaeVhJKSgLSXRHCllKhkKAIyBGa/wCkNY0TRtP63uL15I8xDK21\nvFy4GxKFturQR/LRtU2lMk5QR8V43r4tRcmn1vbf6fiPV+ma92n7puJHWXi9quoW62i2/dTqCLGx\naYtLQvNNgLecTKEI/lIWTtAJVwPUa5LW73qx0u6Y3ooU1fOuXLDYY9KSopKlMg4H6AkqGYSQTE1v\ngeGWbwLprf8APp9DPN4kIeLWzNnpTpFrUX1jUdOuXHngQ2jzQEpUCCshIyoBMjJAH6jIBBsutfDP\nRkdY32k9M6XqDDDD3ksWF0v/AMyCd0lS/LAVtISFSEGVpAEAkezNqIYXfVWzf0PFjxSy20jptL/D\nz1Dq2vPaw5oWn6SyHPzKLEPEW5bQVFTaVOFQWf5avQFqUewzXZP2/SXh3o+i3nSui9RaV1QnQLtm\n/wDy1s67+euHC6lQQUmEMltQQqT+kKO0yJ/H6v25/wCT1ENJpZUm6dtK1W7re68tmfe0+h/S43my\nrdfFnkPWvU/ix1JpqVa5pf8AC9Mcbbt0hvR02zS0NlYSd6GwVEFpySSSfLVMwa82vLVtttTYvEHa\nf1pBhQzkSAY+1frtFpsOjh4eBbd97PjanNk1EuvIzUttPeurhphm6bKnFBtAJIzV7a+GXU171uvw\n+sWWbrVk3arJQtn0PNFaVbVKDqSUFsQTvB27czGa90sijbZ5VBvg6XpQaR0FY6hrGpMqf6k0m8SL\nFkwG7cpwp1ZiVn/RsUChSQozIrida1/Ueqbtx7ULsh15e9aniohxefUT3PyeTNeTFCU8sss+Oy/O\n9m85KGNQj35K/UdA1XSlMJ1K1XbKumEXDQdQUFba/wBCxIEpUMhQkEd61FNOtbVrblJ7xgn/AJr3\nXZ5S5udXtb63v0WfTdtbuXVwy+241JNulCFhTaR7KKgT/wDEVu9H6jZaZqL2s6kb/wDiDDJc01y1\nuPJcavUqSWnSraokJMmBBMYUKznF9LSe5qpJyTapFWxe3bmsDUHLNu6dL28NKbBC1bpgpjIPtW5q\n1wxrhLqenGbG8duXHnV26whsIUBCEtYSgJUFHH+qOwrrqUFRxvLcprmxcYeWhBlIEgBW6AexMc1Z\nO9OdRt9NsdROaNdo0h65ctmLxVsQy4+EoLiEuHBUlJbJAmNw4nKWWMUup1YUW9kaFvp1w66EbEhR\nBIkjgDNdxbaQ91J09pmltazp5btGrh55ly0Qy/bpSoqP8wpHmFW9SgAomEZ/SIyzzqpJXW/55mmO\nN2m6s5+50DSQkbNaCcwR5Y9vlVNrpe1duPKRqiCQAf0pG4GOPV81x+pmo3KH59CvFG6Uj0rQvw9M\n630i9rzOvOm/acUfIFvDTduAJdU4CTO47Y2gZB3dq5y86b0Do03Jfv8ATtWdtrlgodtXnG3Fs70q\nU4yFISoGBG5QwDxXydF7bj7RzT08INdLps3yaTwYeI2ir8Rem9B03qBi56aefZ0bWWxf2JvEje1b\nrURtXtkqKFBaCqJVsJAyK5K1Vp9pqIRfJN3apUUqLRKSpPumRg+0j7V92LlKG2zPLNKMjFeO2arh\nStPaeQzPpS4sKVHyQBNRRuUggIUpSuABWiutzh87GeyubyyfS7ardZe/pLRIP9qvXdURr2nPN9Qa\npeNPabbhOmNJa8xtUugqbUoqBbSApxYICpUIgTuHOy3XJU3VPgpEldu4h6zu3A4kTvRKSCfYzPFZ\n16PqIa89TKtkBW9RA5+uaXFPfkJN8GFK7hhotNKhDikrPY4BAzzwo/FZ29Hvltfmrm3WhpaZbUQo\nBzJHpMZyCPsaSko7vuEm9kRFmhbbq3QohqG0p80BYJmPScqGDMDEj3Eq00m8vrlliztnHFOrDaEo\nSVFSzwkAZJJ7VVJUSjBcC52BD7q1BglsJUT6MnAB471iRCVJJBMD/V3rrqct2Sq2Mjd08gjydyVg\nGFJkGIyMVt6jcaVchhen2b7S0sJS+HXw4Vvf1LHpEJJ4TmPc81Gndot7UZNOec0nVtNuta0t25tG\nFNXBtXVKbD7G7cUpPISoTkDvNWPiB1teda9Zan1bcuXPm39yu4SX7hbziQT6QXFGVbRAkntW0Zw8\nJxrdtb+m9r88jipKV3tXByZ9uATNJaVpiZTiQCO3vWZ0Q5yTNIkkADmgATkAfWpFWwQDk80BLcqQ\nqME0bjOYxmpQOwtOtVt6OrRLa3bbbFopCz3cUcT+1cfu3KISOa5jFR4IlRJKXCpKUzJ7V2PRXXg6\nTUhq/wBM/NNMu/mWdrpQtt4AQoYIMEA8TIGay1OGWbH0xdPs+aNcU1CVtWj0S48dfDRcoa8JylKm\nlBO6/AWw6XQrzEKSgSdsphYUM8GvPvEzxEX4gata3yrG2sW7awt7MtsIjzFNoALiyANy1GSSc9u1\nfK9ney8+lyLJny9dX28/i39D16jVY8kXHHGjiQ77gVHkQe1fdPAMSJIBE8VJwtmC2lQAA5M57nig\nFMSR3qSVEH1GKgMiXNqYnk4r1HRepbS20HTNFsNYYsXlNrXc6gorKrUq9QAKZyf04Eg981nkuk0K\ntpF9p2g9IaNr+ha30b1AjqFD+mqudUTe2zbCLW42q8xBSrzN6EQDu2gqPA4re8GvHXpjwt1rqbrD\nUenbHV9RuWnWLDTLqyZdYlxC0FZWAAkIlJhABMggiM/Fy4suvwTxtJTezvdV1fyj3Q6dNlU7uPp8\nDyS76vNxceamwZCsmUEjJOSf3+KsLbVrZLVvdakEMrf9YUrIMGCSOea+i9P0QUYuzDxFOVs1L3qX\nSf5TdrbOqcS6pTz0jatBgAJSRg85+RxGbvozqzRBe3bN4VsG5QlDG4eneAf1EfJ9q5yaebxOuSxy\nRUvQ1r646z0t3dvct21NFKFIQS24kK/WknCskwfmq680bqx+7avLy0vHHb8B9oLbA89KjAKADkY7\nDtFeiEccfeXLMZzf+LO70/wU8R9RZsra06U1N25vARcIVpVykWYJASVq2ZGTkAxsPOK5i96L6o0l\nou6xot7YstLLbjlxaLQlCwY2mUYNcxyQltf3OV6EdKs1pLrjyTapbZcKi6koGEkwRjuBVtZ9M9R6\n/ouq67a6O4rT9AaZVc3ikqAt2Vr2IVMgEKWpIBzWGacYvqb/AD85N8SlP3UcxZXdmdVS3dagtpoK\nAL5ecABznBJj+9bd51JqujfmrLTNcsdTZvWAlbiULIbG79O1YA3ekGYOFczIrrLpoZvcnHb0OoZp\nY/eT3Oab1LWW7g3lvfuNvTJUhzbHuMcVfaNrnUeqakzc32s3ZXZI2tOJnc2CchJGRyf71pkxYk/E\n6Va4ZlHJOui9mek9Naje3j1vpzeq3QesCbphveoi33K5SCYTJjjOQa9G6p6b8TNJ1hvT9R0u18/q\nS0Y1R3U79AL5aU7uC0uElSd2wSZ3ESO5n8xrtTjx5bzLam/lyfc0mNvHUOWes+OH4gbXQvDXTunV\nWKv/ABQblp1WmtWfl6ZbpSyhAudiVjete0CDwdyjzB+JerevPEjq7WL/AF3qDX9Quru/eL9ysuKG\n5cRMDAwAI4gVn/8AF9DGWN6zUU+r/BJUowXCrzu7fce1dTOElgxvjnzbfqZen+uutdNsVqOvPPWP\nku2xtbpIuUJQ4laFlKHAUpMOrIUIIKiQQc1z2tWGo6Si2vNQZ/8A5zzFNpUMQlZSTI5ykj7Gv1qc\nFKkuT40pTyR958Fs10c45ruiaY3fBs62xbPNF91pAT5oG4zuCUgK3RuIwBMTXsvhT0bbeElxceLH\nWvXLOkXGnXl7pVrp+nravbh24bQkOJdRu8s25Q4pBBWd+QAUyawz5JuDhGNtrvx9fxmmPGk1NvZM\n8u8VOqehNT1J1zoxnUVouDuW5dpbaCTOEhtuREd5GTxXIpS3Ya0qz1cWZaYbUlYbdS6nKJBSptUK\nUCQRmN2DiRXPs/HqceljHVV11v03X35OdRLHLI3ivp9R6xrtunW7w6JcP32npWpuxVqDKQ8GEq/l\nyASEmAMAkCSK6Xpu61LxHtNM8PtV16y0fSrC4vdRaU4nagPutJ3kkCVFQYbQmcDHGTXpzS8GDyVb\nSMUuuVI3+k9dvOgLC7a0u10vVGdZafs71m7tkPJBLTraVoVG5CkJd3ApI9UEzArqvFzw50bo/pPR\nlXPWdnqfUWtoZv0MJW28tvT/AMqgtFbqFKCDO5AaMKhAJCZArzLrnNSguXbfoq2+Ztsk4+R5h1p0\nT1D4daynReqrE2N25ZW9+lqZ/lPsJeaUCCeULT+9VCdR05xNubu0fJbCt7nnql07pHMxiBivZTmk\n1sYf4umev+Clux1yzqfTOidIaffai2yX2bRNil65dtkfzbhwPKBKS2lAUCoxAUDKSpJ5zxG8Q9UL\nt70m5b9Ovo822Nw7a6LasFDtshTQS2tpIBQU5UUwHCApQkTXzNLjb1mXHlbdU1d9127c9vRHqlKs\nKcTlL3qxOsam/duaZaWDdy4pwtWLCGW21qA/SEjCZAgcAFXE12+o3un+HunW2qpvNC6rc1/S3rVd\nvcteYdPWo5UkTKXEiNqj3UrGJrfUvpy48XS31bWu1K7fldfUmB+7Kd8b15nDNu2b9s9qA0O3H5Z1\noKT+bCcq3EQhWSn0mYwJExIrq9M6v8PdH1YXQ026v3rS83sONwy262kYx+pIJHaDCjwaajTZssHG\nM92q3Wxni1GNT3jx+fyet+L/AIs6fpim+lrfrBu+0HU0o1Vu20JzcxY+clLgtyp1AdV5ZOwpUpUE\ncmM/M2udQX2u3rt7qF4t9x0iVrQndAEJyPiK50PsSPsXLkxQUadPbfdq3vbvsthPXfrcUZ00/Jmk\nwtaXUF1Sij2+Ks+obnp29ct16HpjtgG7Rpt5tx7zPMfSkBbgMCApUq29pjPNfQ3u+xkmqdmPprTb\nLVL9FrePKQ15bjjqwpKfLCRIPqPq+gz7TXd+f0N4datd2VwpWu37L6Qi7sX2nbFy3KQSjatsK3TH\nqBHcR3rPPhyajFkjBpVXPrf9dnsaYpwxTjKSff7V/ZxY6lurTUzqtldraL7ocdZQhIASFSAJkH9q\n6DpHWeitZKLPxMv9VZtW7svhem2jCnVBwjzJWYUTAwDIBniTXl1GnyKHXp0utVVt15b16dvM0hlj\nKXTkfussOneidE6w6y/h3TNw+3oy7soTd36D/IaKvSt3ywY9IkwD3gYr3Hxm1j8KltoWkaF0z051\nKb6xddF/eNuMN/mVEJgJSkFLYBCsernvmvDrMubJnWLTy99L5b//AK7/AA9T26bFihCWTJ/i/r8v\n5OJ8Sz+HC36b0K+8M+les7R64t1qvnNcu2nELWMJDJaQmRuSoFRHxAg1yPhhovhv1jdX7PX/AFkO\nm0W9i7eNXSwp7846laUpYSlKSULO6ZONqVHmAfoQx5Zf4Tv4r68GE5YIuNx7dnX72bl5c+BOk9NW\nytMf1TUdfduXk3yLplAYbYSElvyliVFalBQOABjME1s9V9V+EFx4R9OaN0rpWp23UwuLl/XC49uZ\neVui3LSZxCDB+T3rPFp9V4nXln8lx+fyazy6SMXHGvPc4q+6c6Zs7VvVH79829wwVoabdbU+l4oO\n1K2yQQkLgKMcZE4nl7izWhKlMq/MJCoKmwogH2yBXq02aWSNzVdvLj4/Y8WfHGD9x33MNnZOXilI\nQ802oCf5roRP0JxXUad4bajqXTKuprbWNFLab78h+UVqLQuVL2FW5LRVuKIEboiSkAkmrn1McCuS\nfyVnGPE8rpHLvh1pZaDqVwNkggwPioutokONJWGzAyZO4ATx8n9q9CM2ajTbj7qWWUFbi1BKQDyT\nUVp2Sk4g595qkIkBIg0iCT9PagFMmTFGeYB+ooCXbBxTmcrkA1AZGipO1SI3A4JFSt1oS6FuNpWO\n4VOaoOqserdL6e1vSte6Q0EN3NghClp1BSbltx8BMrCdqdo3AkCSRIzjPN3t1dag6p+6QC4tW5Sy\nDKldySe5OTSSi59UTiEWt5Pcd+9av+ULTTfyykJhwpWVBZ9xPFYmHLRLTn5hlTjhTDcHaEnGTjPf\nGK4SaVWdmJISZT5ck/3qzYttLQ2kXjaw5Ki4UuwFJ2jakDaYMg5mMjiJNldbAz6v0zc6faG+DK27\naGVJUvdkOthxIBKRMA5+o7ZrDo2hXuuXQtLGyuLpwtuO7GGy6oJbQVrUQMhISFKJ7AE9jXPiLptl\nSb2NfVbL8lcBiBhIiB/etTfEggcV0nashmtWXn3AGmfM8tJcWB2SkSo/SBXV6/c2Fpqb2oadY2zD\nDyi8y2LRQZDav0hAdUpRERG4k/JpJKUaJdNFRqXU2odQau7qVyLS2euG0NRa26LdsBCAlIShsJSJ\nCRJAyZJkkmqcq2KU24gSJGTxUjFR2R03ZnNsw4yHUPAcyknKfb6jjOK1iFBsq9RQTAJ4+RNdENm0\nsdQuWH7i1srh5u2CC8ptoqS2FKCUlRA9IKiAPckCt231XUNEdT5KHLZ8tAArRBDawFAgHsQZB4IV\nNTnYFl1X4jdYda2+nW3UfUV3fM6RbC0smlq/l27M7tiEiAkEkkxySSc1h6Wd0vUOqdMZ6k1650zT\nXbhpu8vbdjznLW3KocWhvckKKUyQncJOJE11zVnU5OcnJ8s9U6Z/F94/eHFkxo/QnjP1CjT7YktN\nOLPoO8wIWVYgAxMZiqzr78Wnj54n9Pv9LdceJWrappV1dC+etHnQG3HgZBUlIAIBEgcAiYqub7nP\nJw/WniR1h1/qDmr9Vam5d3tzsD1wUBKnQhISkGABhIAqnc6m1921Ni7rN65b+WlrylvqKNif0pgm\nIECB2rHwoc13s6UnHhlf5izlZVzWZDjJGHFpjuRNaUclvoum6A9cNr1zULtm0dbuAn8s2lTheS3L\nQO4gBJcKQo8hMkAmK7Twouel/wDxEzZ9cO3g0NtN3CLYpSoXBZPlFaiMJLiWweTExXi1jn4M3Dmn\nXxNcCTyR6uLO16B1q2Hi1f22l2Fhotlf2YeYd1V9Pl2yG2ifNQ8psqyZUlSQJgSDGKPqbxm61Fxf\nanpz7bekarauaQy3crRcrS2kI3FJVJSsSmFpggGEnmviYtBjz6vrze9UIp7bN29/Ltuj6ktTPFg/\n49vedfDb+zh+oOqtcdsWdM1Jz/zNqfLedfcUt9Z3Eg7j/SkBKeTx+3KOalcAONfmFFLhyZz9K+/p\n9PjwxqC2/OD5mXNLI7Z0nSHW2ndNaRrNledN2OrXGpWi7W3cugVCz3xLrYmN/pABIMSYg5rXR1Ro\n19ojGj67oe9Vom4Wxd2joafcdXs2+aVJUFoRtMJASfUfVWksdu1scqaqqKdrXdQQtLrrwuShHloD\n6fM2JBmBPGT29zWJd9dvIDblwpSRyAa6UEnZz1OqMbKWXFKLihgSBmVfAIH+ajC3F+SyzuKjgbZV\nXRyZfyqE2f5pFyA6lYQpgyFSZO4fGAPqai+15bbCvziHCtBUUgKBbO4iDIGYAOJEEd5Aid8orSRd\ndPaew49blTjbrrj5QbcE7ggbSFfQyR9qhddQMtvXDatOQpRVtS4FqG1IwIB496jVvk5vejQu9SvN\nbuFuXtw484oIQHHVlRQhICUifYAAfQCKrlelUJVIHtXaK3ZY6DrV1oV07dMXF4z5rDrClWj/AJSy\nFoIAKoMpkjcnuJEiZGmu584qdf3LcV3+Z5rnpSbaLbqhNXDjLgdaJ9HqE5EzXVaZc/x63dRd2TF9\nduXLFtaJ81KHQ4vdEJn1plIBxyU+ocKzyQX+Xc6g62LTWOoOkx0i/wBIXXh9ZWPUlveNpVqrT7oX\ntQp4ONKbKiiVFxsFQAgMpjlRPBwu3cVtKZBIwZ+K7xqopXZJcidecfMLMnj6VAkARlJGZrQ5JpVb\nqbErWHBJJUfSRiI+ea6bVWOiU6aLnQ7m6dc/L2vmouwEuJfKP5wSEmCjfO0nO2JgzWUutNUdLpp3\nycwstqSlTTYSUiFKk+oyTP8Agfap3V49evqeuA2FKMnY2lCfsEgAftWhyYEgCd2BWRpSAoHmIMe9\nUHT9M9Z6x0lffxrp/UVWNyU+SvyCAdh+O/8A9V3HRlneeKl/dadrXXatLsrlxzUbt3UCssuvstLU\nICAQXVJKkpmJKoJE18vPpsWLK9ZGK62km/RPb7nswZJ5EtPe12bviX0R05ozbo0Pr13XNItkpVpS\nLp8W7zloSfUGZWGz5hWSjdOZg5NeQOKtFJBQlbUSJ3bgf+K20eV5VKlST8qv1X5yNZhWCajdjtbi\n3b81bqFrHlqQkhOErPBP7Gtdp3e8gblIb3ZIMkfNetJ3Z5DKlS3XF7VqWkKISpRgkdqyFTqWi2ha\ngk52zya6rzIYfy5cKUNyVqgJSOT7UPMuWpcadQttbatq0nBSocgjmRxFPQGDcpQOM8U07txPMCgM\nTCZcT/MSmSBuPA+agslRJLkk5k1QKFASCKQwCAJJoACQQTkYpAEkZqAzIaK9sAGe0wTUrm3ctHVM\nKKd6VFJ2qChg+4wfrVBkYaUtshStqDBweSK6XSNQ6UYuP/33pZm5YNs60Sy+42tLikObHY3QVJWp\nB2/pIbAIyTWORSkvcdM6g4p+8rRSXGnLtkB9DDrba8oU4RkSQP8AFbukalpdpaXFvqWitXzj23yn\nfzCm1sQSVbQMHdgZBjtnNdK2tzkeoXelXdmyxYaMiydbdWpx4vqdU6hQTtSRASAnaoyAJ354FUy2\nQYlyeOK7QNlPksNg7VKUY45/eo3RbdLZQuFHIgiB7z+1T1BaudRP3miv6VqTjru5xhba/MWogNNL\nQlMFe2AFJH6SQBggYO50n1zc9LWz9nsYfs70PNusLRuKQtsJJBOROASIMAic1lmwxzx6ZGuLK8Uu\npFfrWraZqF8xeFsuhNr5TraR5SfMEhJSZJgDafrI4zXPSZkT71pGPTFIyu9wJMSCcd/imHFqwSVA\nD612Bgz6T34PAFKY470Blau1NoLCkJcbVkpI/bPNJLjikeUt0htJKwicSfYfYVKBlduFeSEIegKj\nckGMj3rZ/ONXjDj18+fzDTaENJKNxc4Tkn9ICR89gBEkKBoKenG0AewEUlKSVEoTA9uaoEFEHCiM\nRUkqkjbHtmoC3sdHv9Vsbi6tUspRYNF93z7hDaQjA9O4jconG0So9gYNVSmXElJJSd4kbVAxmMxw\nccHNOCJ3sNJIUElPHJq8temNTUwxqN1p9zb6fcSW7txhQaIBgkKiFQcYPNcykoq2dJN8Gvr2iv8A\nTmqLsLi4trhaEtuJUw8h1BStAWk7kEgGFCUzKTIMEEVsWWrJ2uENqS4twrCECUnHvMj9qzdZYWdL\n3Jblj1lZ9U3tvY9Wa1oz9naasXfyD2xaWFobISW2gcbUHEDiYrlCVYClqI+BxTC49CUeBk6uq5ES\n4oYVkRA+BWZmzQ9bu3C32mko/SlW6XDIkJgHgGcwMGtW6OC9sOhX9S6Ud6tY1jSm2Wbs2irVy5Cb\nknZv3hHOzhO7uogVpK0ezTYm5TqDZU0wHlpAUqJUEwYGDJ7kDPORNmnCrXJmp9TpJlUnyVrCG0gy\nYkiCa7EdG9Pf/l2erf8AxVa/xUah+SOkFtYe8rYSH90bSmQRAzWGbJLHXSrtpHpxQU7t1SKHRrLR\n7hwtag9cpWSYDLRWdoEzA9s/tWDXNJvdA1e40u7sL2zftlbHGbthTT7Z/wDcg5Sc8Gu1NufSzPYv\ndDurjUWTpugaFaNXUhSrsJUt9OGxhSiQgbkFW4AEbyJjFR6+6A1LofUWrO71LTr9TtqxdebY3AeQ\nkOthexRHC0zCh2IIrJ54wyrE+WbdDnBzSpI5bc+0sLQ4W1RjaYIqBSuD6snNenYwLfpS60Oz1lNx\n1Czeu2Pkuhbdo+GXCstqDcKIMAL2kiMgEYmRUrQlSz5YwM/auVfU32LtXqbyEWidHU2m0Uu7ceCg\n8HsIbCSCnYO5JBknsI71XqScAGf810iGwy1auMOKeU8lwfoShuU/cyI/vWPatpW/7gg1L8wXGhdO\nXXUn8Su7a8sLZOn2yrxxNzcpa8xIUkbWwoytUqHpEmAT2rU1RjRrf8qjSbu5fc8gG8LzSUJS/JlL\ncKO5EbYUYJk4FcLJ1TcEuOTtwqPU+5XAQSR35qbyGAy2pt1SnSDvSUQE5xBnNaHBiMRnvWRJ3+gQ\nmI+lUFxY6R1DqGg397Y6W5cabZ3DJu7hu3Cg04oLDYK4lO4BcJmDtJ7VSlKkqgp2yeIrhNNtIrTS\nTYJB3FKU9oxTBIPH/NdkGCQSoDHv7Vc9La9rHTurM6no+5bzIV/L2lSVpKSFbh3EEzWWbHDLjeOf\nDVHeOUoSUo8oy9S63ddRao/rD1uxbKdcKiy0RsbmTCU9k+wrQYtbjU2bt9LlsgWyPPWFKQ2VAqCY\nQnG4yoHansCYgGucWNYMcYLhKizm8s3LzMa3lPMM21wEpbYbWlBbYSFKMlQ3EQVZMSokgccAUrRm\nDBEE8bj2rUzNkMlKCqOMyPatR64Sp1IAgJ5jvVBsHyUtpKfSv2n9q1XVqcWSolROSSTk0AkjgjHu\nYqRVAxkf5qg1jITHIBqPb4nmgHPoKSMEzPtUR/7jigETkROO1NK9pEgY+KAFq3KJEwO3xWRt8JUN\n6YAPY5qAyO3SlqWhtZ2TgkQSPkdqkVLKACsCeRHFOAIJddWGGN7ilYAGZNdEnw06+S2H1dI6psUM\nKNuqOSP9j+xp6HMpxjs2U+o297p9w5Y3dou0eQAlTbgIUPSOZ9+fvU9J1RjSjc/mbNm5D9q5bpC0\nBWxSkwFpnhQMQaIvKMe+1KG1N3boWpxSVpKfShECDPvk4+PmtnqG5sLR1WiaTc2l7bWNw8W9Rat1\nNLuknaASFerbCAUggEble9VcblKMuLP6pIFKTEzxQBumMR/vS3GcmaAJ9qmFA+3zQEgdpmCZ5mtx\n/TFMaPa6qq8tVJuXXWgwh0F5vYEnctPZJ3+k99qvalWDDp7lk3f27up27txZodQp9pl0NrW3PqSl\nRCgkkSAYMex4p3bli5cvrsm1tsqcUWULVuUlEnaCe5AioDXSAc+w/vQomQFRFUCTtB5GO1BUFZ2x\n2oBzBOTSSoSBIFQG5ZuMLcQxe3S0W4XKilO4gfAnJra1VjQ2Lu9b0i+urphFzts3XbdLRdY9XrWk\nKVsUfR6QSMnOMy3ZdqJI0DWRp7esuadcpsXHCyi4LSvLWtIBKQriQCCRM5FehdF6P1P1BqjHRuha\ndrL2j6w8w7c6ZaXcuOtt+okkp2giVKClJhMyRArBtZXUGn2+YlkWGLnPZLdv0PWbr8KWjdI2ur2H\nWnVVmb5hm2uEtWoDj6itUBDRCwFJIWglRSDjGMnq+gfwu+HGm9HXXiP1Fcag2iwT+YtGl3bSvzRC\nSoNoQWiFqIAHMCZIivsx9lqacM0623o/Kaj2/milk00eWqvufO3ir1vpHXXV911I2ytm0urpy4Gm\nMtJYZtytaiUNJbSlCUwE/pA/VwYri7+xtLpbbOjMlXktJQ6pO4qeWSTuz7SEwI/TxyT8fDiWCHRF\n7LZH6yU5ZHc92yrNjcpC1uMrQ02vy1qjCVmYB+cGj8suCncEpGCSY/74rW01aOSLbSispkhIHNLe\n4UFsEgqORMSB71bsG/YdN3V5p9xqjFzbBNqEqWgvJDkEgYTyea6+y8HOtL3oFXiIEWydGbuU2hdN\n0jcHVpUpKdk7pISTxXz9R7RxadpSTvq6eHzV/T1PXh0c83DXF8mt4d9Far1b1ejpC18ta3ApboL6\nWQEpEk71kAQM54EnGaoeprHVbHXbxGqG4dukvHc447vUrJkqVJmfeaQ1kJ6uWmXKipceba5+Qlpp\nRwLN2toVrrNxpuov32lo8tLifL2OJSv0YhJMZ4GYzRZavbJvvzmpNm4cQsKCFpSts4Mgp9pI+leh\n4buUX7zRj1/+r4MF7aeZ5j1rarDbSfMWoSoITIAKj2EkDPc1VKCisEd62g9qM5cimDCgoH5pk7Z2\nrgkRFdkL7o+90i21I2uthtFvcNuNm4LSnC0SkgHaDnP3EzmINI4Qp0q/QlSsAcAGr2OVfU/IslsW\nKbNp6x1B0PqcUly32GEpAEKCu8ycR2rCblm3sHbdTbTq31pIX6gtoJnGMEK3d5PpHHfNW+UabLg1\nEXSktlCCUg9+awlSiok574Fd8HJNOADtqBUR6cUBINlSDE/vxUQhWT3FAXvSfWvUfQ+qDV+mNTes\nbxKVth1uJAWlSFYOMpUR96qbq5evrly7eO9xxRUoxFZrFBZHlXL2O3kk4qD4RiZecaVuQEE5HqSF\nc/BoQFhZMSR8TWlb2cGZDQWsBIj3ntW/petav05duXehanc2TjrDtqtxlwoK2XUFtxBjlKkqUkjg\ngkVJRUk4y4Km4u0aDhK0laj65JINQQvb6kHM+9UhuX2s3V68m4d8lKkstsAMMpaG1CQkYQAN0JBK\nuSZJJJJMLbUHWVLbLyihUSCTBjIn3qKKSpFbsxOXSitW1ZgiPrWKQOYIHcV0QcHBCueKEk/6ZJNA\nZE5JEjkd8U14V/SCAIoDUkEbe9CuOJ96AU/sKQEQAM8UAHGDSORwMUACSJ4jmj0wSRH3oAgiQOKY\ncUFSpI/agJtOFDgUhSkxwQc12Om+JPiDpjDbGm9da5ZMNJCUNsai8kISN2AAoAf+ov8A/vV7mqpO\nL2ZGk+Tnde1vVde1J3V9d1O41G+udvnXFy8p1xe1ISmVKJJhIAGeABVYVqUDPv71Lvdl4FvPBJ+l\nBzlI+1AHJj/PNBgH0jAoBDnjFPB4j6UAhM8UxzyDQElKEiE/OKFLO0ST7UAt3uRUftFAOY70Ezz7\n0A/SIz9IpYgj9qAME4j/AIpgwYgZoA3EcTxFZmVpCpPaoD2Porqa+626csvDrVdfZsNK0ZT1202s\npSlW9Ki4slRgFKQrgFRkBIJMV9NWWpeFngMzeaF4W9faD1FrDrQYOpM7Up85DiZUlS8pbKVODaCQ\nqAok4AexPZ+DT5MjeytyW/MpO2/v9j43/wAgyanPihgwq06U/SO/H03OM8Q+muqum/DPWPF7qTqz\nR9TubxDWnWyG7oPOeYsbACkAFO1sE7pwQn3rh/CT8RGn6boVl034gXX5jS9DZU0wxucSt1sknYhS\nTAVBj1ECAn2r6eoaWXpm9mtzx6fT/qdO3jj0uLXT8l6/FnhNu2rVdT/I6PZP3jry1eShCCpxYGf0\niewn9663WuhrnQumk65qFhcsu2jrdtfpfUhpbLznmKQjyyorVuQgK3bUgQQQcE/FlNRl03uz9Mt0\ncQ9faetktBD4M7pkEH7H/vmumauuibbpzVba3t9Qury6u2Pya7hpDaRbI3lSjtUYWZQIyI3ZqyU1\nVF2ZpW2n9OI0S+/OnUG9XW60bJCUpLHkwvzFOEiZny9sf+6e1Z2OiFvMsOXqrpvzlRPklIP0MGcV\n482senTlKt3tvzsenHp1laSv1Oo0vwXutRuFadpRffdDYdWkrZBSjalSlEKhQCRJOOBUbbpbQOjr\nl6+1vUX9Rs7VtwflGX0tlbqkKS2oKE/pWUq4zEYr5mP23+oyLDGNt87Pb5tU/ke1+zlii8nVVfDc\nnothofQOkXWuavqFpc3+s6Sv+FNW9wh5TJdK2lqdSk/y1BIXCVZEgxkGuVVqN1rNv+Vt7dN0ttsJ\n8zJVBgCZr1YYZMmbJqM3uq0l8Ev5bf2PPkqEI4oO3y/z4Ft09ob1pY6hqOqdLWl6GbdQSLlt7alS\nvSlUtrABCiCJxP7VxVzpN1bvoReOgGcSSYE5r16bURyZJ9Mr8uPL85Ms2JwhG1RvO6e+1YOXnnOt\nNPqCUogjzkyfUJwUgpI+v0MUkJaXKkghJwCa9eOXVZ5pKjbvEF21aDLDm4qJMpx9jWJsNW90Hkqa\n2nltRVgx7xXaZyRv7/z3UeS2lsNDb6DM/eBWBVwtxaNxgIAAhPt/muuSJUXGndSa3p98/q2nXSLa\n4fLhWtppDZAcSpK0pgDakpWoFKYEGIxVS49vHqAnOZqJVsdN2YVHEYiOajtnIxmeK6IZQAo88Z4o\n8vO7k+1QE9pCCBIMcE81j/mFJ24jmPaiAIkqCgkGCDmCK27bTr2/Sp63t1FtKglSkjAJmJ9uD+1B\nweg6F4OeLD9lb37fReqLsrpWy2dDCgi4JBgNqiFTBgd4rrm/ADrwMJuP4fdsOpbDq2FK2vNAgH1p\nmR+oc+9VcWzPxIvg2umvDjp/SrHXNT68s/ztvYWyUpbNyplxpbiVeW4kyN0KSkFJn0rUeQK8O1W8\ntHdReNh535RK1flw6sFYR/SFEYMD2rzxWXx5Nv3KVLun3+XBqq6V5hbXoabSogBQMkKQMgGRzzkC\nsN7eechtDSUBWSYSP+K3IaJBJ3buTUoP9RJByaoGNoSQRzxRIAAPB5oBkASR9p7VIHBIMyewoCQT\nBkfWKHCSUwfgGKA1fUQSCKU4FAImeO4zSPxmgDvEUQRMnJ5BoCImTFM9sQTQBJ5/tSwZJ70AxiKz\nou3EoLazuB/egMCzKjQSPYTxQCgn3pgDMjigAAnI7cUsHIPNAPiRH1+KWAZBNAHfOKBgcUAoMxUg\neIzjFABM8kUoE4JPagHieDx/ejcYjtQCPuKZiRgn3+tABAxBxQJIgCfvQDgAYGf7UTjmIoCaHFIM\ngzOIrN5zjipcKue1Adv4e+Fet+JNh1DeaVr+i2DfT1g5qD7ep36bdVwlDa1lDIP/AKiyGyAn3KR3\nrh1JU3KSoHE5HFKdWyJ26MjLrls6h5tz1IO5MV0HWvXfUfXnUD3UHVepu3l++lpDrzhJUoIQEJk/\nCUgD4FL2oVvZk62uOj7y8sP/AAeHW7dGnsIuVP24ZUq6gl0wFrlIUYCpEpSPSKrP4iwkIt0voWht\nI9QSUjj55jiaw6JUk9zVyXVaM3U3VlxrzWn2X5ezba0u3Nu241bIacdSVqXLigJWoFZAKiTAAmAA\nJaXrG5pKL/qPUrcoUNgQSpCRCs8yDwMDucjvmtPGONRa6q8/UryycupOvgeisfiN8VumNNXoHTvi\n1rR0u6tDbPW4QlSdixCk+pPcYJGSCRMGvKtX1i/v7gm41S5uUpjap1R/aJrx+z/ZGj9nuU8GJRct\n3Xn/AB8jXPqsuZKMpXX58zQ/MvQFBwmDICsgGtjTtVvtMeNxZvONqPJSoiQDxivqyhGSqStHmTa3\nR1HUnin1T1HcXrqTb2DGovF962smg0zMztSgYSgESEjArTc6x1HXddVrPVFo3rK12v5UIWS2EBLP\nltKT5cZbASQMglIkESDh+lwwnLJij0t29uFf9drNfHyOKhN2lS352NlvqzU7DRFaZ+atXbbASh1k\nLWggqP8ALUcpHqJIEZVXHukqWXCf1GaafDHHKUo93+UczyOaSfYtNM112xurW4Q035ls4lxKljcC\nQZ9STII9xGRT6m6juuptcvdcumLW3fvn3LhaLZhLLSVLJJCUIASkZwkAADAFaLGlLqOer3ekqiRt\nxHz8mmkQpKomtTk2rvULi6YbYcX6GydoHGeTWoYgEd+aiVAiBMCYipSQc4kZIoDIgJwTwOZqSEk4\nJkHtQGS6VDaUAfGOwrEG1rAInOPeT7UQM6LN4Ml5KJRO0/Bz/wAGu30/Tbrw7btNS6idvrK51Kza\n1PSvyVy2fSV+hxZBJQfScEbscZrPIpyi/D5LFRbqXB9Rs/8A4mHj11D0fpnQFtpdhd32nMKbavEs\nF24eSlCkha55UEnKu5EnNfPd7459Ti4tdY6d0220S+tmyhV7piSy64N24+YR+vMTPI5mulN30t7l\ncItbIoPEHxY6i8RFHUNcQlTzjYaW6gbAraQRIGD3rgU5hJhPvXSJ6ETuTEKx9KRThQ4PPFUgRIGC\nZqSJ4MER7UAlwREx81sWRtU3TRvQ4pgLBdDcbymcxMiYnmowReeD7yndqWx2CUgAfbiolUqnuaAn\ntUVESQPenBUQlJJAMiKoNQmIOcYikP07QP8ApQETGR8RTP6sE5FAIzM0jI+9AEEEHj5+KPqZigAE\n574peqeaAYwdsH70jINAAzTEftQCIzIOKP7g8mgDsT+0UgTwO9ANPJBOO1B5jH/FAZnGFtNtuOFE\nOpKkgKBIgxkAyn71hIJIEUAHmTxQBmY+1APJEYg0AJCiIIzxQBJPf6UTOOKADBGBzmlicn7UA4JM\nTIoGMDH0oBEjvmKcexoBgn+0VkbE5UTEdqgNhNyAgJSozOYOKwrWVHdHxQEFOLJ5omTJgmgAqgwB\n+1ZHXGChpLDa0rCClxSlghatxykQNo27RBnIJnMACCVpAKSgGRg+1MQrBjnkcVQSYcZQtKnWw4B/\nSSYP7EGsbhSVkpJ+9TuBFYPCAIEGsjbyPLCVMpMGZJzFALc2EiEEqJPJx8f71e9NdT6r0f1Fb9Qd\nPKYZurRW5kuMoeRO3aSUOApPJ5FcZILJFxlwzqEnCSkuUVWrXV1d3q3bx0LcUSokREnOAMd+1aZJ\nOJn2rqEVGKUeCSbk7YpPCqI4J+9dEJY/1AxUioCFJwY/vUAgqFblc+0045MYOQJqgFRHApAQQTg+\n/vUBMTM9prKJ2lUSB7CajA0tuXJI3BKECSSeKi88s7AkJHlpgbf80BsK1N91xC3DO1IBE4MYk/NX\nWp9R2Ov29zedRG+u9XPkt2z/AOYBbQwhO0NlG2TCQkAyIjg1z0LqUu4NCz1Viz01bVtZXH5lx0Fb\nwehBbggo2xOcZngH3xs6zr+lXllbW2k6IvTXkpIuSHypLpJnAgQIMRWMsWSWSMlKknuq5VbfQ2jk\ngotNb9vQo1KKwIASn2mRUdqh6sZxXp4MRpSVEITJUSAAO9Laudo/eKAkFqbQlopQQkyT7zGKjG5c\nxHx2HxQDbIK07wdvcAwTW2NOvFtpKbdewgkQCZHNRtLkqTfBr+T5ZUlSVKSJGBUggKADalbhzPtV\nsgbiPQVDtAOae71gACqDUCSJPNLBBzB96AX9MhIxUQBHMEUAbtxJ980t0cCaAfMjMClx89yaABGe\n3eg8wMZ+1AKZIAOPmiJxHNAMfpOKJHEn96AM9+KMQCQPmgCDAEUZIGI+lAG0xBOKYEHOKAyPhr0B\nDqlqj1yMAzwM5/tWKMEkZ+KAifkk1IZMCf2oAEjO74zQe5/waAcmeIMe9RMGIwKAZE/amU++B8UB\nEfX+1M7hjifagBJEwTiO9HBkEGBFAERn35qSVYJ+1AMkDIEj3NAURkfsKAUp7Hn4oJAwAKACqYHH\nviknB7wKAZxPeKX0oCQkYxj3pEwYk49qAODtGTTBAEGgAEe1WF5qFo/ZWVra2CLdy2QoPvpWoquF\nFRVJBJAgEJ9MSEgnJNRoFcSd0kx7UHaRB96oAE+/1oBjtNAPg4NOACJz2xQCEkg1lTJTgCfrzUBs\ntWO+1XceYz6VBOwqIUZBMj4wP3Fai0kE+nAPaonZWqIBU4Eic/Wp+e6lMFRIPuK6IZCsbQGwIPv7\n1Ax+kj781APsBOSM4rJZJt1XLSbpxbbJUN60ICylPeEkgE/Eio7rYq5M77iGQlDao9JCVJx3ifmt\nMrWoyc0iGS9ODuGe3tU0JC4SVwU8H3FUghKTuBiDj3qKlnjb/agNiw9F0287at3KGVBbjbm7YpIO\nQopIUAeMEUBtx242qVlxUTNS97LVmZgIt73YEJeDayIUTC4J7j3r0voTTm9Q1+xK0PKbUha1W26f\nSEmRBx35r5ntTI8enlNeT+W3J7NFFPMk/Nfueg+N/QHh3oOqs33hygu6LeJebcXqrzSbkPBACill\nB3ISFrVBjICcnNfO76WDdFKGy2sqIIJ9I+Kx9iaiepw9c22/VVdNrb5c9jT2jiWLJSSRpr2hwFKu\n/PzNMJBUoFEJE5/77V9s+cakn9MzBqJk8igEqRyk/WiOTFAICRP7fSg8zuPFAKfTE0cZ4oAIIE49\noml3jv7zxQDBlQjMUEyJwDQAO6QeaEmDkcCgCDOc0EZgmgAnETRtPYUAD3JjtQeYAigARz2pnsQY\nIoAAT3JppbK5jsCSPpQEcZ/2oPxgcUAuDk80ETwmfc0AxkZMRxQT2Ij/AHoAHPfPFMnckSAI+M0A\nCD9BQREiRFAJIRMyYpgRjmc0AzJEdvpSM4IMj6UA8nIj5pYMx2oBRMkUYnOPmgCI7TTMDJ+xoABJ\n70E/80AAgZ7mgTEniaAe4xAMTimNuU5oBTPBjvQRnJ5oAORAHOINA+tAAPtgT7U5I5P2oBznvU0k\n7gR9agLGwvjZpJU0041IUptaQQSOPp3rDrF5b6herubK1btW1gfy0D0gxn7TNZqDU+pP5HfUumqN\nEJG31AzTATtIUea1OCQgduBQlBncR8/WoA3GCSYk0inO2YFUEgmREnGK2bxdg88g2Fqu3QGkBaVu\n+ZKwIUoGBAJkgdpiTXNO7XBU1W5rhKZmZ7cVIBO8EgpA5zVIWTlpbKtR5LaVOb1bXN+Vgeye3Iyf\napCxfZSzdPacplsw0hwAlBWkZkKnJ9v7Vk5Ncs0UXJ+6jp9E0FzVdLv9P0w27F8E3Fy5+Zfbt2yw\ny0XFBKnFjcopBhsDcTAEkgDkWfPaufM8lJ2iYIkRtrjHLquzvJHpSaNZvd5kKO31TIwImvROgNR6\neXeNq1zVBaptmSkvf1RPb5gn/itJwUqsx6pRT6eTW6p6p0R7Vby10DzrizdcDjT7qQlxCtoKxIIm\nTuH7VyV5pi22l3jd00sBUEeYN2eBHJrqMVDZHKcmve5K9KCpJx6v7Vk2zzJkAccV2U045kZFAI2k\nSR2iKAiJCimf2FIkk4HzNAIkDjk0pBHIoBHI5pkQOTNAIyBMZFB5Gee9AORMAmkfYUAAyOKf1Jk0\nAoyMU+ACZmgCRMmgSe+KACSBnvUTPsJFASEEZGOKR45FAMicbhB70cHAM+00AAzjII9qO8zJNALl\nXJondCcUAu5jNPB4HHzQAAc9ozUoESOxoBAg4pmM5P7UAfpzH0NIHtQDOCAc/FGBkY70AgCRMCiZ\nIBx2oAGP9qQHByT9KAZMyAIpj3zQCxwKZE5FAL9IH+Kcgd5FAAnlJ/6U+e5oA+BEUpPuaANwH1p7\niAAPeaARyP8AimKAMg4+0mpg7YAzQDV6jzSITACTn5qAmlJWNoBNZF2vkPqZuHAkIkEj1Z+KX2BA\nACSMzQSj6n4oCPpUncOeKU8CY+tATICQFSM81EbZgYPagGBJkYUKZB3ert3oDMglbwU24pKwUkbc\nZ+KtlXOrWdnc6XqKVpbc8q68tyNyiZ2qE5MhZ/c1nNRlSZpjco20T0N+0VfNqvAWrUKlZmTtPIE9\n/mtjqzXNCutUvnNF0hNq2+UeWCskohABPYEkgnjk1g8eV51JOopcebtftX3O1OCxtNb2cwvMAgie\naAoAA/717DAmCtY4EDE++ayAOI/lr3QeIFQG3Z2lk8Hw9d+WR+gkYP1mtmw6f1DUdrto15jYuW7Y\nuE7UBxZO0bjwMc1nPKsabnwdRj1cFAUqACTzwaW0CZitTkXIhMEz3zSPOcjiBQEcTjHagkdqAQz7\nUyqRjmgA44OMcUsTH/c0AZIiMUjM5NAOCIz9qBFABp8nt9aAXfOaBGJNABxEEx80/Tx3oAMfFB78\niKACIwDJ4oxHf39qAM/qgx70GD/zQAPc8UiAaAPmMe/tRn7c0ARmP2p+xkUAE9/fgUSBk/eKAWd3\nc0+e8AUAGZwJ+3FLkxFASO2OeKUnCu9AEz/vROKAIx8UADhJ/tQBmZg++KYwO1AKMU4PfM96AXGT\n+1MwTO0UAET27e1MDBIoBkGRI4GZoIzJiOKAQJKp+1CjzA4oATlWalIScpJoAztgwe9SCxzAxQHT\n9Ko6VuWLqz11dzbXDiN9pdIcAbQtMn1Agkg7Qkf/ACPxVC8lpTq0he/JyDz8154PJ4klLjav6NJK\nPSmue5FDUqCUEq3HAisTiFNuLbWCFIJSUxkH/mtk96MxIHpA7VIglcJBJGMCaoI7Z5TGa2F2N4xb\nNXbto6lh8q8p1SCEr24O094kT9qWkDCFKzHvTVs2gboOPp9KAFBTTiYwYBEGn5sKKlEqPAJpyCZu\nCEbQfn96xOObyg5JGCYogNcFIJJArGNpVkk5H0qg27S4ZTKVpkgzJPArcTqdt+hbO8EEEwK4km2d\nJ0ZbD+HOb03balYTB47Ca1ytLLRVbvLQsLCk7VREHHH2rndtp8DatiqM9u54owRnFanIsZgSKiRI\n9poCJKQTgGBTmaAioZk96aRjM/FAET2ge9KAPmgD2nFAPsKAODPzRIAwBQBiZ96cZkUAhjA5okfv\nQDBPtNBwPrQCIEf7UbiPegAcE0Z+nxQBBJOPk0SY5oB8mIikcg9qABgHNEgY5xmgGZHqH7mkfc8U\nA5JHejjnBoAMz70hPtQDzn3og7ZmgAcAEH2oyDOD3+lAAgnmiBHegADBmf3p7oOOJoBTzijgbo+K\nAP6aP6dpzQEkJK1hKR6jgVuPac81ZquR6kpX5ayMgHt++a5cqBpyO9TEKkTAroEnWFISmOV5Aq+6\nH8O+uPEjUbnR+g+mb7W7yytV3r7FojetthJAU4R7AqSPqoDvUTsFjrPgz4p6Ho+hdQX3ReoK03qS\n1Xe6Xc2gTdIuWUbd6gWSrbt3pkKggmCJmuOdtL1i3ZunrR5ti5Ciy4pshLm0wraeDBwY4qgxk8Ad\nqFGgATEbvijI4FAZUOhLexSEkyDM5+lWty5aG2t2re1baBQCtQWVKWZOT7fQewrOSdqmVV3PSL6z\n6J6N8O9M1e00xd91FcuOt3D7r6VsJSYLexsAKSoIJJkqyUnFeTtKDj25RkqJJ+a8OglPKp5Zt7tp\nJ9kj2ayEcXTjiu1v1bMSFq3DHJip29q7cOlsFKSBMqUEgD719HhWeI6S81PSL3pnTtPcSWb+yu3E\nO+W2CnyChoBX/wAtyVkiYJM4qm1LW7/UmrS1u7tTzVg1+Xt07QlKG5JgAe5JJ7mvPp8coJqfm6+D\nexrkkm/d8kaBSTE5n3FM5POeMV6TIzXghaJmdiR/asGCI/eouANYAKT3IH+KEmJkcjueaoG6UkJA\nMADj2qJJEE8/egBJ5mCKeSZAGPY96AyIWpBwpQxkTQHVckkn60oECFHBiKiMHgAUBGMmRiowCTB4\n/agAkmQeZoHH09qAXfj96UHiBPzQAqYzRkYOfagCcdopT2/zQEhjtmkefrQBJn6Ubu4oAkH/ACaD\nB7xQDJkYJM0ADOMigEckBM/AoiRigHE9oj3pEiIOfoKAIJHf6U5B95jigF8zk0x9TQCOefuafeR2\noCI4px3GMdzQDGccn2pGaAZBB4iiO0igCTzzNEwcHE0As/q/enIiJ5oAmc+9MicAAJ9zQC+nb3ow\nBBPzQBJ5+KATPM9qABjKoo3AgCPoaAEqKVBSTBGayKfeUCnzCQSMSYmKgID+/IFOSE89qoPrb8Lv\n4e9L6m6MV4q22gdLeLV02h9jUOhP4u5Y6jYMTtTcIUDCnCNxShSQIIKVFeE/TvhL+Kb8HXhj0890\nzbdNX/h7qvSts8hzSta0VSNSKkypbYdAUVuKJwFrSoyJA7QHzl4G/js0nwG6o6z0HSundW1vw41T\nVbnUenLB1aLe50vzHSrywJWkNlKspB/UkKEFSp9J6F8bOjfxi/ib6f6HuemtO07wx6f0/UNTtunt\nVZYR/E9ReaU2t1xoEoW6F3K1ICSSNq3JkmKD59/Eb+CzxY8I+sFo6f6cvOqtF1Ft/ULd/QNNuX0W\nLKF+pt5ICy0EBSYUpRBTmZBA+cPjj2oBgEjFfV/4O+qehtfsOoOheqvA/oPXV9M9K6x1G1quoacX\nby5dYhxDTqiYLY37cAGAM0AvDXpDp/8AEz0H4z65p/SPh50Lqtu70wnS1uKFhp+mpLlwH/LdXuLZ\ndDQ3f6lQK9C6d8AOkOjXPw5dOdSad0d1Fea71PrDGtX2lOt3ttqLIKVNNrdAAcCAYg8EEUBxn4nm\ntd0fw9vbe86Z/DnbWb+otW7bvRTq3NYZIUVAx5pCUkNhKzt4Md6858Nul+nL78K/i11de6JZXGta\nRqugtWF8toF+2Q68sOJQvlIUAJjmuYxjBVFFlJydsr/wo+FNt4s+MmnWGtWLt109oTLuv66htsul\ndlbAKU1sTlRcX5bcDP8AMxxXv2q+GXhno34lfD/qDVPDRnSPD3xr0dVgjR9RsPLXomqLbDK2kIWB\n5bjdx5CguBh5UYqkNbS/wv8AT2j/AIbuqujOpdLZX4uXJ1nX9HIZl9Nho921bvMonMO/z1ISP1hQ\nInbV90b4V+H2m+O9r4LWfhp0xrmr9EeFb1zqTOoWrSmtQ6kWhl7c8pRSClPmNoBKhtCljcOaoNHr\nfww0JrproS98Y/BboTw/651HrzS7HT9M6cuW1s6xpC3UB9Ttu288jYJjeVkkwMBUKl+J3pRPRmld\nesaH0D+Gm00ayW9aWgsiodSMNKcDaFJbDsJuE7gT6YEExigLDxn/AA1+HHVt90rfeE+jWlt1N0pp\n2hXnVXTjDASNQ0u4DajfNIH6ygqUl3H6cmITv5frTonwr8FNN8V/Gu48MND6nubfxIuuiunNEvkk\n6XpiUsqfLrrDak7xt9IQSIhJEbpqLcFV+HnWfDPx68d9Lae8Cuh9CXZ9K6m5fWqUrOk3l4hG5p5T\nDiiGEIwDCif1EqOI5P8AFExf6P01o2m3/SXgDZfnL5T6bvw5Wty8T5TZSW31F1QDSvNBiMqbGcZo\nPm0+xogcGM8YoAGSYjFTYb3FRPA/zQExEknOeP8ArQlQC0rUgwDkc0BBSffM1FXpMbQPoaADJGDG\nZikqYz96AiUxHfvSAOcfeKARgyT2FBgRBP7UAQYntRyc9uKAX17UHk+1AA+PpSA7CgJDEE5FH9UA\njNAKRgTFKTxQDkDn3oPJIOBQDkgmIBmkME4maAcZGKODB5H9qAABEgmaSTB7UAyAZpQPmKAOOBNA\ng8xQB8xNAEz7e1ABMGcUzgY4+tAInPppwYzQD4Gc+xpYAknvQBPeOKIIwDNAHbbye1APtQDHwZNR\nnuKAkFROPj6Uv0jjg0ACTmMij4oAyBPbinJIA7/5oBERzzwa3NG0q813V7LRLBKDc6hctWrO9QSn\nzHFBKZUcASRmgP1m/Cp0Gj8IHhJf2Pjrq/QnTj97frvU6ijUwHn0FCQGXS4hG5SCn0htSwd+ADM/\nJH/4hPjn4ReNPUvTLnhZqlvqq9JZuWtRv0aWphThUW/KSHnEpcdSIchMbQZIJ3UB8ixke/xWaxvr\nzTL631LT7p22u7R1D7D7SilbTiVApUkjIIIBB+KA/R78HXTXi7+JDpNfiV1v+KPr9qzsdQd0x3SN\nJeNorzG0oX6rggpUClxBhKJAMbgePjP8U/S3THRfjr1L0v0n0rrPTlnpzzbarDVroXLwcLaVF0Ob\n1lSHQpLolaj/ADOYgADycggERBruvCvxO6h8Ib3Wde0fR7a6T1FoN908pV2hflhq4SlLi0FJErTt\nEcj3FAYtC8Qde6S8O+r/AAxb0dn8n1wvS7i5efQsPtizdccaLQkAhRdIMg8CIrsekPxF9b9EWnht\n0/a9L6e654Z6te6npyH23Q7cvXagVIdSFDAxASAc96AweIHjZ031poWp9O234e+g+m9TvnUTqWms\n3Sb1hxLqVq2+Y6pMq2lBBTwpXfNQ8JvHq+8IumOp+gNS8Oenup9K6kuLS4vrPXG34Qu3Ki3AbWgj\nKpz7CgOmH4m9VstB6i03wm6T6b8NL/qC1smrm56cVesXixb3ClpbYc8xRQtZdO4gjchsJnseZ1/8\nQvix1B0A34ZdeXmpa7eWuuNa7per6vdXL+qWD4QEeW04tRPlqGdpBAUZGagOt178Vvjdq3jton4h\n9Q6caY1bp2xTYs2ibR9FkbcIcS4lYKt0LLzij6sEiOBXG9L+PnXGn+JXWviEzpVrqmtdfWGq6fet\nLQ4pLaL4y4poJUCNgEJBkADjFUEtM/EH1bp3RfSnQOtaBp2rK6C6gb1nQb29Q6LywKXErXZhQUJY\nUpElBEgxBG1IHT+JX4hbfxAc1tOufht6HseoepA6tzVWra8F6HnZ/nthTpBXukj0kT2oDA/+JDxX\nvPGTQ/GbpzRxYaz05p9npBZtGHV277LDQbU08kkkhaZChIjkQQCN3S/xRdd6X1T1xqHUvQGh6/0/\n1xfnVtd6Z1exccs0PKVKXmiTvaWDgLk8CZISRKorM1n+LDXNF6z0zrvp3wg6I0nSNE0q70G20iy0\n5xq1LN1l3znUqDjqzk+pUZUQAVKJ4bxM8TNF656ZtbbR/AfpLo1IvEvjVNFYuUuPBKHEFkqccUkp\nJVuIAmUDPNUh56jQdcebS61o1+6hxIUlSLZZSQRggxkVoqQ42tSVpKVAwUnkR2NABEGBxNZ1Etth\nHBMg0BjbEmJ71MoUZhMDNAQMA8nPPtSJ/wBMgxwaASTzMxQQPaPvQCmBE4iozBiM0BEgjPf+1IT/\nAFAZoAJTxQIIxkUAuMyTig8THHvQDMkGCY5NERkigAEE/emZ7g0Auf8AenAiMx/igFAHbmhMntMd\n6AYIGI70CQZHIzFAKZ4ETQTIigAcY5owTzHYUA8kRxHtSVJ4oAmM4+9AMcCaABI5xijP2oAwBQeM\npj2xQDAAmTS3EnOfaaAZM5maIE+4JoA5zzPejKlRzJigEcY+c08R896ARMCAARTwMzjjmgA/SKJJ\nEAwKAACQfbmgHHHH96AQmQR9KMHGBQDn3+1Zba5ftHm7q2fcZfZWHG3G1FKkKBkKSRkEGIIoD7q6\nI6o/AB13rPR9j1H0R1l1Z1z1Y9p2n3buo6nfPpt7+4KG1B15y4bC0JcWZUEqwJA7V9Y9Vfgg/Dlr\n3RWqdJaN4caRoNxf23ksara2/mXdo4I2OIWslRIIEifUJB5oD8jNf8PdSt/EXXfD7olN51c7o99e\nWrL+m2K1rumrdSgt9LSNygjagqOSAnMxVKjp7XF3un2D2mPWruqKQm0N0nyG3tytgUFuQnbuwVTA\ngycUB+jXhB+EH8U/4f8AQdO6m8KfFfSBq1y0l/W+j9WQtWmuvd0pdQVAr2hI3hKDIjftNeE/jn6Z\n09xdn4j9VeGnVfQ3iPruoBnV7S8vP4hpV+2hmPPtLpO5Mp2tJ8vcnalQARAmgPkj2j3r69V0t4X9\nT/g58IUeJnitcdEN2+r9QKtHGenndV/NKNynekhtxHl7QE5Mzu+KA9T1Pwn0nrb8Vfh9qKrhOqdJ\n9BeGuh669d3CU2jd6lgLFmhXmna0XXfLJStX6QsE4Jqp8XuhNd1Px68AfxA6rpuk22p9S9VaJpHV\nTOkXjV3asavb3bIQoONKUn+awEqCdxIDcHNAfNXiKQPxi9UDmfEy9/8A+qun+Mcj/wDU/wCI2P8A\n+sr/AP8ARNAd5+Fd2+6Q8FPGDxc8P9NYvvEPptrTrfTXl2qbl7S7J9xSbi6ZbIPq2gyqDtCJPpKg\nfRvC7rDqzxt8GbTrnxtSNS1TpTxC6Zt+j+orq3Si6u1P37abuzDiUjzEIblzM5OT6RAE/wAXvjTf\n21z4j9Iab+LDVr143r+nK6IPRoaYS0t4Nu2358kyENqWd8SrZAgmR5N+EPxQ0Hw30jxCTrj3UnTf\n8as7Czt+uNE0lN8vp9aXVqKHNwO1D+EmPUfLxkBSQPoix0vxB6X1nxC8aD1do/iX1rb+HOm6t0Nq\n7ehoZdf09x9xDt6u0UkEXLSUBUncYWkEn9I8S8IPHDx18W/FTwlZ8Sb261vQrLru0VaatdaW2FJu\nSpJVbpuktjASd3lBXcEiEpiUD0/pjqlvpDwx8VtTf8a9T8L0u+NN8wNX0/R16k4/Nu8fyxaQpJSl\nW3funBaAjNU/gx4s6TY9ReOXXnVfVl14v6BZdNaVaXV7qOnmxc1KxcuWm3m/IWpRQUB51KZOSgGQ\nDig73pzwL6B6e8NOnunkazbdQeG/XHizo2q6NcrcB/NWDtqtKbZ7uFh1BZWME/BMDwvxX/EV+KS6\n6/8AEXwxTZXH8Faa1DTH+l0aE2/a6dpbe5KXEths7UobCVh7iIVMRQHsPiH4ko6N6D8IbAfit1/w\n1eX4WaBcI0Sw6Zd1Bq6JZWA+XkuJCFKKdm0gwGwe9fn1e3l3qN6/qF68p65uXVPPOKypa1GVKPyS\nSaAxkifRyPjNImTyc0BIKwcYPagLIxmgJLO4BRB98VEwBxkZoASBtiM1GSkcc0AxgniKjjbuzB+K\nAhnucUjkSYoABJHHAoHvANAGIPvRPqEfXNAAz2/an7Y/Y0Ah7YgZoweTQASJPagiZxQB8ZgdqYB5\nP2FALHfmjt9aADj9WKJIGftQADn45oVGcSZ70ARIniPmjJxPHagGQDwP70iIUJIPzQCMz9KIMExx\nQDBEiAaZjgEwfegAwcRSgAQZoB9p7DvR7jmgETIgJ+kUDjk4+aAcE896WAfmgHE/f/FIR3OaAZAi\nRP7UxJAyPrQEUg8x2/tQBMzgUAD/ALxTPHHzFABMHIkfFPIH+1AZGLh63ebuLZ5bTrSgttaFFKkK\nBkEEZBBGDX6g+Avjb1709+Cvq3xx8Q/E4dTauyxcp0xt59pxdgtP/l7Vp4oG7zVvKSs7yVFKkd5k\nDL+AXwP0fwW6Hs/FXxGuLex6q8RXGrPSk3awhbVs4kuMsJn/APivbC4RzCWxAIIPp/4x/wAPujfi\nH8PD07ZXFoz1vpLL+qdO73EpdeCNgeZIJnyllTSSrhK1NEnsQOL6N/FP1ho34PrfxUa6GX1N1F0S\n5/AOq9OuL1VncWjtufKVcLltalKgsrWiEwHFmRsNfmH1l4o+IPiDY6bpXWPVmpatZaOt9WnMXVwp\n1Np5xSVpbKySE+hAAJIASAIoDljujBwMV2C9S8UOqel+nvD5Nvq+paNppfvtEsGbEr2i4f8AKccb\nKUblhb6fLmSN42iDigOl1XxB/ET1V0zedLX7vUV7o+oWVpp92wjSgEvWunKX5DSlIbCillQcxOCF\nTkGtbonV/wAQHTfTK2ehrDqZGgW+oWnU5UxpCn7dm6tjvZvAstqCNvln1AgEIIMgEUB33VHjB+OH\nra0e6J6oX1zftuIa1NzT19N7Vlu3eQ6h4pSwFbEOttnd+mQAfasWt+NX41/FDpO+6f1W76z13QNV\nZQxdNtdPBTTzbiUOIG9tifUlbahBylaSMESB5l4c634w+G3Vumaz4anqHSdf1ELYsDZ2yy5ep3lC\n20tlJD6d6IKYUNyYiRjtvEDr/wDFz4h6+1q3XiOtb2/6GuW7ryVaIq3Z0h9tIcS4u3baS00oJAVK\n0AlPOKA891+w8SutmNW8XNe0PXNSs769U5qWv/w5YtFXS1SoKeQgNJUSf0yOeKvehvEfx38AbzU1\n9H6nr/Sy0us22qWz9nLAccQpTSH2H0Kb3qQlZSFpkpCoxNAXt/15+KzUutmvGm8ueuRr1otOnN6y\njTnWm2Zc8sWyQlsNJSXF7PKAgqVG0k1c9XeKn4zuteq7BfVSutbjW+jH2tWt7JHT35f+Hu5Ldwu1\naZSgHCoWtGRuzE0BT9FeOP4n/D1OsHojXuoNNGu3X8e1Hy9KQvz3bhsui4O5owFtoUsEQkpSVDAJ\nqm648afHfqQ3mq9edRao6nrLSGbN5+6sW2U6lpzNwpTewhtIUhLyF+tH9SVAnBFAQtF/iAuPDzTP\nDuy0nq5/pLU9QGqaVZI0x5bNxdhpS/Mt1bJJ8sLXCDEBSo5Nd31B41/jc1boq56M6h1XrxehjZpl\n0peiqbeWVEJSw7dBkPKKvMCdq3CVbwCDOQMvSHj/APjZ0/pvT9D6M1nrFWj6Np7FvaN2nT6Hm2LR\nsKab9XkE7R5K0BROS2rMg141b9JeIXWWvagiz6T13VNWCzd37dtpzrryFOHdvWhCZSFFU8AZxQFb\nqHTXUuktPv6noGpWjdsplD6n7RxsNKeQXGQokDaVoBUmf1JBIkVWjI+vvQDHaASKmnPAgfFAMk8E\ng/WkruBwaAUhXJk8RSKjO0GgIkH6TmCKUhMnmgESSYAMVEhIyTNAAJFGMermgFJjjHtTmcx8UATH\nJoHHMUA8jvSH/tOfrQARmc0Az/0oAB7e9PgwB8CgEQJgmKMcA4oAMGZp5JEAAUAsn5AoOMjP1oBi\nDmCfcUs+85oA4PzR9fY0AAwaWc0A4BEg0do70AERgmaDJMn3zQASDgcUSZmaAOfrRMjIyTigCRji\nnyMj7UAjBHpEUEGJFABxHJimJPA/agCMH1ZoNANPBFKQTzQBGZJ4+KOOSZ96AlsE/TkxW3YatqWm\nJcasrx1tp5TanmQqWntityA4gylYChICgRQHqPjF+Kfxi8ddF6f0LxB1q1fa6eecuWHbO2TbLeeU\nEgOuBEI3JAISUpTG9XvVP0B+IDxT8PPEfSfFKz6ovNX1nR0KYbGsXL1227brSUrZXK9xbIUTAUIM\nEQQDQGDxE8cfEPxL1jqHU9Y1b8hb9VXbV/qumaYFW1jcPtoCULUyFEKUAJlUknJJOa4EgRgyZ4FA\nKAeTntXuPhl+JDSvDqz6VuleHz2pa50s1b6ezefxkM272nt62NWU2WPIUQ8XfMbDvmFIQsfy1FIN\nAXmsfjN6h1ZjR7xPRlja61pjzNy9fNPgNXrrd8q5Wt1gNhJLoUUOQYWVLVHqKar7z8T2i6pp/Umk\n3/hilNpqF0y7oTDF3ZOI0a2t7VNtbW4N1YvLIQhCCpxldu4o7juSVSAOpu/xuWmr9R3Gtaz4VlVh\nc3F+/caRa6uwm0uxcXwuk+eHrN1SnE7G0KcbLaj5aVNllW7d5jrXj9qOpdMa109p2kXOmK1VHSiW\nn2NSX/5U6LpqrKUDaCfOlLn6gUbAmV/qoDd1D8SGpax40ueLGq6Ap1i40p7RnNNbvQytq2fsl2z6\nmH0NgMuqU688Fhsw44SQvO7f6r/FA/qnh674a9N9GJsdN8q2s2bnVbxGqXaLVq3eaILi2EfziX1K\nDqA3sSlKEpAE0BV6L429KtdP9JaX1b0Dqus3HSDLdky2z1F+W028tE6gb3y7i0NusrUpalIUoOBJ\nSEnZuSFVc9efiS6a8VtK1hnr/wAL7pGqa0vTLq7vNC6iVbIcu7Bu/aYdWm7YunFDyb5Lakl2T+XR\ntUkHaAN27/GJrbnUmja1YdD6Y1aaZf3V69bvLQ7cPB+5deKW7oNpcYKUu7QpMwpIXH9NbfS34vbP\nodOkaZ074ZuPaTof5MWY1XWk3l835Nzd3Cl/mPy6EeZ5l3LR8rY35eUOblSBge/GFqF50610/qvQ\nbF0bPTbDSrK9N/Fy1b2+jO6eptaw1/MQp55y6SkgFCnHUgq37hT+Inj30T4q9Kt9N9Q+GX8F/wDD\nNmq16Sf0rUFuKYbDbLSGLsPSHEhLKVlTQaBcLivL3OrUAOn6a/GHo+gdN6H0894Ti8GnWDFheum+\nsUi6S3pN3pwWAdPUVkovFK2XZumwE7EoSlRrW0L8Xlh002mw0bwwaasmn1XLKhe2rNy2VXtvcqbS\nbeyat0Nq8hSFJbYQYckFJB3AFx+LTQ9a03qRjqbwmbeu+qLbTGLtdleWQtmjYJu27csW15YXTbH8\nm5Qg+XtIU0VIKN6hWDS/xM9AaZqHUWpjwl1R9/q2ytLbVkXWuadesBy3U0W1ss3elPNIH8tUhxLp\n9QKVJKZIHmfWXi3r3WHQPSfh9eKfGn9J/mUslx8LL6XFjyguEJJLTf8ALSSTCcJ2jFcKYkyQIoAE\niYiptPLYVKVkH3oCRA5T/ftUVQTIAOaAiqTUcR80AGTnOKMDjMcUBEknjsaRyZoAUDEYijA/SDmg\nCAPej5M4oBRz2p5+kUAf1Z7UcEiDigAzMzxSg4PHagHIHNM94kUAuCIok5P35oBgT6hiog+/2FAP\nng8dqJj24oA5/wB6QEZigGQPfFHGCM0ARjHfNMgA5oBJGAZNKBEgmaAZ57H70Z+vvQDED6x2pgA8\nA80BE+0HFA5igHGMkUEAExQCGMA0Ce/egHnJHtmgYke/zQEeMTUhzgkUAEjAHvP1oEfT/mgHtmAA\nZJigBU88+9APkYP96cEEAyaAIIxAV9KiAIMCScUAtvIn/rTTCjGfaaACkDO44zSwCIoBx7j+1Ke4\n+lABkED5oPsfegHGe32oSeP+aAiIn6d6kDMkf/dAAymDB7cUgSMnHzQEonMz3o24/wAUAoj4HfNM\nFUCD9KAYM5GDRMmD9OKAiSQOCJ9qkM5OB7UAhHPtUlBQIAOOeaAyQQMyJM0oBVHzmgIKgCJ+DUYA\nMzP+9AJZ9X1E0p7zQCJnAoJI4EzigCe5GDRnmgDcEn27YoySQKAM8EfFLHegBJn60TNAMiTHFAPa\nKAX0ozk5+aAlO4cwIxSHIzigAATMz96JBoBGIkU+eKAMqEhMRijcR3/vQCxyKcn270ACe4pEgniJ\noB4gZoOeeaAJAP1+aZUfkfSgEdscGaAOwI+9APjvPao5AmYoBjGMz80R7/egDjGccUAk59+RQDJ7\nzzQZIBkQaAJGccZ+lBBHBxQBj2inMe2KAMdgJ+KkIiD3oCSErJ3ESB3pqSCYAg/71AR2wcg0oKRI\nxNAJRJk9hSCucCqAJjmRNIEDBoBztnk/WicQRP3oAJE98e1IkGgAQDFOPbPaaAIMQRA5mlJ45+BQ\nDkc5xT3Ddxj2oBSQCB3oSQDPb6UACPfHNMDkESD84oAJG2Rj2oBPtQATtIzJ7UwRnJn60AJyCT8U\nBXZNAZVLk5Pt9airJg+/vQESTEHBNQJMUAjnAEmlweMUAEwc8D4omDQCIwMcUAx/1NAAE96MjvQD\nBB5HxNA28c0Ao5+KBOaAYoj70ATjiPqKBnn6CgAgfftQYH6s/SgBUftSH6TKf2oBke4pA0ATFOMm\nDwKARmKY7cfBoBboPv8AWnuEZH0oBTGYpnsKAAeQBz70QY45oB8fM0k/NAA4xxQdvE8UASaQBHE/\nFAPnMc5oIzxFAGI+tEE0AAEAzFAwmSKACR7UwBMTOaAkBkSOfapAEnjn9qgN9q0ccT6USMSJrYTp\nNyqCGTP0rKWRR5O4wb4NZ+wcYXC0RAnIrSUgp/prSMupWctVsyOYzUSDxFdEIgExj6UzA7GIyKAJ\nBEUSeeKAkfYDjNQGcj2mgJEgg0oyFESBigAnsDj3oMnBJ/egA5/+qBFAAJ4AHFMAH6UAo7ZimEki\nAI/3oAgjjIoAgcxNAHbj6RQDHOaAfaJinHMjg0B//9k=\n",
753 "output_type": "pyout",
775 "output_type": "pyout",
754 "prompt_number": 15,
776 "prompt_number": 15,
755 "text": [
777 "text": [
756 "<IPython.core.display.Image at 0xa81892c>"
778 "<IPython.core.display.Image at 0xa81892c>"
757 ]
779 ]
758 }
780 }
759 ],
781 ],
760 "prompt_number": 15
782 "prompt_number": 15
761 },
783 },
762 {
784 {
763 "cell_type": "markdown",
785 "cell_type": "markdown",
764 "metadata": {
786 "metadata": {
765 "slideshow": {
787 "slideshow": {
766 "slide_type": "skip"
788 "slide_type": "skip"
767 }
789 }
768 },
790 },
769 "source": [
791 "source": [
770 "Today's image from same webcam at Berkeley, (refreshed every minutes, if you reload the notebook), visible only with an active internet connexion, that should be different from the previous one. This will not work on Qtconsole.\n",
792 "Today's image from same webcam at Berkeley, (refreshed every minutes, if you reload the notebook), visible only with an active internet connexion, that should be different from the previous one. This will not work on Qtconsole.\n",
771 "Notebook saved with this kind of image will be lighter and always reflect the current version of the source, but the image won't display offline."
793 "Notebook saved with this kind of image will be lighter and always reflect the current version of the source, but the image won't display offline."
772 ]
794 ]
773 },
795 },
774 {
796 {
775 "cell_type": "code",
797 "cell_type": "code",
776 "collapsed": false,
798 "collapsed": false,
777 "input": [
799 "input": [
778 "SoftLinked"
800 "SoftLinked"
779 ],
801 ],
780 "language": "python",
802 "language": "python",
781 "metadata": {
803 "metadata": {
782 "slideshow": {
804 "slideshow": {
783 "slide_type": "slide"
805 "slide_type": "slide"
784 }
806 }
785 },
807 },
786 "outputs": [
808 "outputs": [
787 {
809 {
788 "html": [
810 "html": [
789 "<img src=\"http://scienceview.berkeley.edu/view/images/newview.jpg\"/>"
811 "<img src=\"http://scienceview.berkeley.edu/view/images/newview.jpg\"/>"
790 ],
812 ],
791 "output_type": "pyout",
813 "output_type": "pyout",
792 "prompt_number": 16,
814 "prompt_number": 16,
793 "text": [
815 "text": [
794 "<IPython.core.display.Image at 0xa818b4c>"
816 "<IPython.core.display.Image at 0xa818b4c>"
795 ]
817 ]
796 }
818 }
797 ],
819 ],
798 "prompt_number": 16
820 "prompt_number": 16
799 },
821 },
800 {
822 {
801 "cell_type": "markdown",
823 "cell_type": "markdown",
802 "metadata": {
824 "metadata": {
803 "slideshow": {
825 "slideshow": {
804 "slide_type": "skip"
826 "slide_type": "skip"
805 }
827 }
806 },
828 },
807 "source": [
829 "source": [
808 "Of course, if you re-run the all notebook, the two images will be the same again."
830 "Of course, if you re-run the all notebook, the two images will be the same again."
809 ]
831 ]
810 },
832 },
811 {
833 {
812 "cell_type": "markdown",
834 "cell_type": "markdown",
813 "metadata": {
835 "metadata": {
814 "slideshow": {
836 "slideshow": {
815 "slide_type": "header_slide"
837 "slide_type": "header_slide"
816 }
838 }
817 },
839 },
818 "source": [
840 "source": [
819 "### Video"
841 "### Video"
820 ]
842 ]
821 },
843 },
822 {
844 {
823 "cell_type": "markdown",
845 "cell_type": "markdown",
824 "metadata": {
846 "metadata": {
825 "slideshow": {
847 "slideshow": {
826 "slide_type": "-"
848 "slide_type": "-"
827 }
849 }
828 },
850 },
829 "source": [
851 "source": [
830 "And more exotic objects can also be displayed, as long as their representation supports \n",
852 "And more exotic objects can also be displayed, as long as their representation supports \n",
831 "the IPython display protocol.\n",
853 "the IPython display protocol.\n",
832 "\n",
854 "\n",
833 "For example, videos hosted externally on YouTube are easy to load (and writing a similar wrapper for other\n",
855 "For example, videos hosted externally on YouTube are easy to load (and writing a similar wrapper for other\n",
834 "hosted content is trivial):"
856 "hosted content is trivial):"
835 ]
857 ]
836 },
858 },
837 {
859 {
838 "cell_type": "code",
860 "cell_type": "code",
839 "collapsed": false,
861 "collapsed": false,
840 "input": [
862 "input": [
841 "from IPython.display import YouTubeVideo\n",
863 "from IPython.display import YouTubeVideo\n",
842 "# a talk about IPython at Sage Days at U. Washington, Seattle.\n",
864 "# a talk about IPython at Sage Days at U. Washington, Seattle.\n",
843 "# Video credit: William Stein.\n",
865 "# Video credit: William Stein.\n",
844 "YouTubeVideo('1j_HxD4iLn8')"
866 "YouTubeVideo('1j_HxD4iLn8')"
845 ],
867 ],
846 "language": "python",
868 "language": "python",
847 "metadata": {
869 "metadata": {
848 "slideshow": {
870 "slideshow": {
849 "slide_type": "slide"
871 "slide_type": "slide"
850 }
872 }
851 },
873 },
852 "outputs": [
874 "outputs": [
853 {
875 {
854 "html": [
876 "html": [
855 "\n",
877 "\n",
856 " <iframe\n",
878 " <iframe\n",
857 " width=\"400\"\n",
879 " width=\"400\"\n",
858 " height=\"300\"\n",
880 " height=\"300\"\n",
859 " src=\"http://www.youtube.com/embed/1j_HxD4iLn8\"\n",
881 " src=\"http://www.youtube.com/embed/1j_HxD4iLn8\"\n",
860 " frameborder=\"0\"\n",
882 " frameborder=\"0\"\n",
861 " allowfullscreen\n",
883 " allowfullscreen\n",
862 " ></iframe>\n",
884 " ></iframe>\n",
863 " "
885 " "
864 ],
886 ],
865 "output_type": "pyout",
887 "output_type": "pyout",
866 "prompt_number": 17,
888 "prompt_number": 17,
867 "text": [
889 "text": [
868 "<IPython.lib.display.YouTubeVideo at 0xa81856c>"
890 "<IPython.lib.display.YouTubeVideo at 0xa81856c>"
869 ]
891 ]
870 }
892 }
871 ],
893 ],
872 "prompt_number": 17
894 "prompt_number": 17
873 },
895 },
874 {
896 {
875 "cell_type": "markdown",
897 "cell_type": "markdown",
876 "metadata": {
898 "metadata": {
877 "slideshow": {
899 "slideshow": {
878 "slide_type": "skip"
900 "slide_type": "skip"
879 }
901 }
880 },
902 },
881 "source": [
903 "source": [
882 "Using the nascent video capabilities of modern browsers, you may also be able to display local\n",
904 "Using the nascent video capabilities of modern browsers, you may also be able to display local\n",
883 "videos. At the moment this doesn't work very well in all browsers, so it may or may not work for you;\n",
905 "videos. At the moment this doesn't work very well in all browsers, so it may or may not work for you;\n",
884 "we will continue testing this and looking for ways to make it more robust. \n",
906 "we will continue testing this and looking for ways to make it more robust. \n",
885 "\n",
907 "\n",
886 "The following cell loads a local file called `animation.m4v`, encodes the raw video as base64 for http\n",
908 "The following cell loads a local file called `animation.m4v`, encodes the raw video as base64 for http\n",
887 "transport, and uses the HTML5 video tag to load it. On Chrome 15 it works correctly, displaying a control\n",
909 "transport, and uses the HTML5 video tag to load it. On Chrome 15 it works correctly, displaying a control\n",
888 "bar at the bottom with a play/pause button and a location slider."
910 "bar at the bottom with a play/pause button and a location slider."
889 ]
911 ]
890 },
912 },
891 {
913 {
892 "cell_type": "code",
914 "cell_type": "code",
893 "collapsed": false,
915 "collapsed": false,
894 "input": [
916 "input": [
895 "from IPython.display import HTML\n",
917 "from IPython.display import HTML\n",
896 "video = open(\"animation.m4v\", \"rb\").read()\n",
918 "video = open(\"animation.m4v\", \"rb\").read()\n",
897 "video_encoded = video.encode(\"base64\")\n",
919 "video_encoded = video.encode(\"base64\")\n",
898 "video_tag = '<video controls alt=\"test\" src=\"data:video/x-m4v;base64,{0}\">'.format(video_encoded)\n",
920 "video_tag = '<video controls alt=\"test\" src=\"data:video/x-m4v;base64,{0}\">'.format(video_encoded)\n",
899 "HTML(data=video_tag)"
921 "HTML(data=video_tag)"
900 ],
922 ],
901 "language": "python",
923 "language": "python",
902 "metadata": {
924 "metadata": {
903 "slideshow": {
925 "slideshow": {
904 "slide_type": "skip"
926 "slide_type": "skip"
905 }
927 }
906 },
928 },
907 "outputs": [
929 "outputs": [
908 {
930 {
909 "ename": "IOError",
931 "ename": "IOError",
910 "evalue": "[Errno 2] No such file or directory: 'animation.m4v'",
932 "evalue": "[Errno 2] No such file or directory: 'animation.m4v'",
911 "output_type": "pyerr",
933 "output_type": "pyerr",
912 "traceback": [
934 "traceback": [
913 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mIOError\u001b[0m Traceback (most recent call last)",
935 "\u001b[1;31m---------------------------------------------------------------------------\u001b[0m\n\u001b[1;31mIOError\u001b[0m Traceback (most recent call last)",
914 "\u001b[1;32m<ipython-input-18-8b8f5414a141>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[1;32mfrom\u001b[0m \u001b[0mIPython\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdisplay\u001b[0m \u001b[1;32mimport\u001b[0m \u001b[0mHTML\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 2\u001b[1;33m \u001b[0mvideo\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mopen\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m\"animation.m4v\"\u001b[0m\u001b[1;33m,\u001b[0m \u001b[1;34m\"rb\"\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mread\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 3\u001b[0m \u001b[0mvideo_encoded\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mvideo\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mencode\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m\"base64\"\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 4\u001b[0m \u001b[0mvideo_tag\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;34m'<video controls alt=\"test\" src=\"data:video/x-m4v;base64,{0}\">'\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mformat\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mvideo_encoded\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 5\u001b[0m \u001b[0mHTML\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mvideo_tag\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
936 "\u001b[1;32m<ipython-input-18-8b8f5414a141>\u001b[0m in \u001b[0;36m<module>\u001b[1;34m()\u001b[0m\n\u001b[0;32m 1\u001b[0m \u001b[1;32mfrom\u001b[0m \u001b[0mIPython\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mdisplay\u001b[0m \u001b[1;32mimport\u001b[0m \u001b[0mHTML\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[1;32m----> 2\u001b[1;33m \u001b[0mvideo\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mopen\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m\"animation.m4v\"\u001b[0m\u001b[1;33m,\u001b[0m \u001b[1;34m\"rb\"\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mread\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0m\u001b[0;32m 3\u001b[0m \u001b[0mvideo_encoded\u001b[0m \u001b[1;33m=\u001b[0m \u001b[0mvideo\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mencode\u001b[0m\u001b[1;33m(\u001b[0m\u001b[1;34m\"base64\"\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 4\u001b[0m \u001b[0mvideo_tag\u001b[0m \u001b[1;33m=\u001b[0m \u001b[1;34m'<video controls alt=\"test\" src=\"data:video/x-m4v;base64,{0}\">'\u001b[0m\u001b[1;33m.\u001b[0m\u001b[0mformat\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mvideo_encoded\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n\u001b[0;32m 5\u001b[0m \u001b[0mHTML\u001b[0m\u001b[1;33m(\u001b[0m\u001b[0mdata\u001b[0m\u001b[1;33m=\u001b[0m\u001b[0mvideo_tag\u001b[0m\u001b[1;33m)\u001b[0m\u001b[1;33m\u001b[0m\u001b[0m\n",
915 "\u001b[1;31mIOError\u001b[0m: [Errno 2] No such file or directory: 'animation.m4v'"
937 "\u001b[1;31mIOError\u001b[0m: [Errno 2] No such file or directory: 'animation.m4v'"
916 ]
938 ]
917 }
939 }
918 ],
940 ],
919 "prompt_number": 18
941 "prompt_number": 18
920 },
942 },
921 {
943 {
922 "cell_type": "markdown",
944 "cell_type": "markdown",
923 "metadata": {
945 "metadata": {
924 "slideshow": {
946 "slideshow": {
925 "slide_type": "header_slide"
947 "slide_type": "header_slide"
926 }
948 }
927 },
949 },
928 "source": [
950 "source": [
929 "## Local Files\n",
951 "## Local Files\n",
930 "\n",
952 "\n",
931 "The above examples embed images and video from the notebook filesystem in the output\n",
953 "The above examples embed images and video from the notebook filesystem in the output\n",
932 "areas of code cells. It is also possible to request these files directly in markdown cells\n",
954 "areas of code cells. It is also possible to request these files directly in markdown cells\n",
933 "if they reside in the notebook directory via relative urls prefixed with `files/`:\n",
955 "if they reside in the notebook directory via relative urls prefixed with `files/`:\n",
934 "\n",
956 "\n",
935 " files/[subdirectory/]<filename>"
957 " files/[subdirectory/]<filename>"
936 ]
958 ]
937 },
959 },
938 {
960 {
939 "cell_type": "markdown",
961 "cell_type": "markdown",
940 "metadata": {
962 "metadata": {
941 "slideshow": {
963 "slideshow": {
942 "slide_type": "slide"
964 "slide_type": "slide"
943 }
965 }
944 },
966 },
945 "source": [
967 "source": [
946 "For example, in the example notebook folder, we have the Python logo, addressed as:\n",
968 "For example, in the example notebook folder, we have the Python logo, addressed as:\n",
947 "\n",
969 "\n",
948 " <img src=\"files/python-logo.svg\" />\n",
970 " <img src=\"files/python-logo.svg\" />\n",
949 "\n",
971 "\n",
950 "<img src=\"/files/python-logo.svg\" />"
972 "<img src=\"/files/python-logo.svg\" />"
951 ]
973 ]
952 },
974 },
953 {
975 {
954 "cell_type": "markdown",
976 "cell_type": "markdown",
955 "metadata": {
977 "metadata": {
956 "slideshow": {
978 "slideshow": {
957 "slide_type": "skip"
979 "slide_type": "skip"
958 }
980 }
959 },
981 },
960 "source": [
982 "source": [
961 "and a video with the HTML5 video tag:\n",
983 "and a video with the HTML5 video tag:\n",
962 "\n",
984 "\n",
963 " <video controls src=\"files/animation.m4v\" />\n",
985 " <video controls src=\"files/animation.m4v\" />\n",
964 "\n",
986 "\n",
965 "<video controls src=\"/files/animation.m4v\" />\n",
987 "<video controls src=\"/files/animation.m4v\" />\n",
966 "\n",
988 "\n",
967 "These do not embed the data into the notebook file,\n",
989 "These do not embed the data into the notebook file,\n",
968 "and require that the files exist when you are viewing the notebook.\n",
990 "and require that the files exist when you are viewing the notebook.\n",
969 "\n",
991 "\n",
970 "### Security of local files\n",
992 "### Security of local files\n",
971 "\n",
993 "\n",
972 "Note that this means that the IPython notebook server also acts as a generic file server\n",
994 "Note that this means that the IPython notebook server also acts as a generic file server\n",
973 "for files inside the same tree as your notebooks. Access is not granted outside the\n",
995 "for files inside the same tree as your notebooks. Access is not granted outside the\n",
974 "notebook folder so you have strict control over what files are visible, but for this\n",
996 "notebook folder so you have strict control over what files are visible, but for this\n",
975 "reason it is highly recommended that you do not run the notebook server with a notebook\n",
997 "reason it is highly recommended that you do not run the notebook server with a notebook\n",
976 "directory at a high level in your filesystem (e.g. your home directory).\n",
998 "directory at a high level in your filesystem (e.g. your home directory).\n",
977 "\n",
999 "\n",
978 "When you run the notebook in a password-protected manner, local file access is restricted\n",
1000 "When you run the notebook in a password-protected manner, local file access is restricted\n",
979 "to authenticated users unless read-only views are active."
1001 "to authenticated users unless read-only views are active."
980 ]
1002 ]
981 },
1003 },
982 {
1004 {
983 "cell_type": "markdown",
1005 "cell_type": "markdown",
984 "metadata": {
1006 "metadata": {
985 "slideshow": {
1007 "slideshow": {
986 "slide_type": "header_slide"
1008 "slide_type": "header_slide"
987 }
1009 }
988 },
1010 },
989 "source": [
1011 "source": [
990 "### External sites\n",
1012 "### External sites\n",
991 "\n",
1013 "\n",
992 "You can even embed an entire page from another site in an iframe; for example this is today's Wikipedia\n",
1014 "You can even embed an entire page from another site in an iframe; for example this is today's Wikipedia\n",
993 "page for mobile users:"
1015 "page for mobile users:"
994 ]
1016 ]
995 },
1017 },
996 {
1018 {
997 "cell_type": "code",
1019 "cell_type": "code",
998 "collapsed": false,
1020 "collapsed": false,
999 "input": [
1021 "input": [
1000 "HTML('<iframe src=http://en.mobile.wikipedia.org/?useformat=mobile width=700 height=350></iframe>')"
1022 "HTML('<iframe src=http://en.mobile.wikipedia.org/?useformat=mobile width=700 height=350></iframe>')"
1001 ],
1023 ],
1002 "language": "python",
1024 "language": "python",
1003 "metadata": {
1025 "metadata": {
1004 "slideshow": {
1026 "slideshow": {
1005 "slide_type": "slide"
1027 "slide_type": "slide"
1006 }
1028 }
1007 },
1029 },
1008 "outputs": [
1030 "outputs": [
1009 {
1031 {
1010 "html": [
1032 "html": [
1011 "<iframe src=http://en.mobile.wikipedia.org/?useformat=mobile width=700 height=350></iframe>"
1033 "<iframe src=http://en.mobile.wikipedia.org/?useformat=mobile width=700 height=350></iframe>"
1012 ],
1034 ],
1013 "output_type": "pyout",
1035 "output_type": "pyout",
1014 "prompt_number": 19,
1036 "prompt_number": 19,
1015 "text": [
1037 "text": [
1016 "<IPython.core.display.HTML at 0xa71412c>"
1038 "<IPython.core.display.HTML at 0xa71412c>"
1017 ]
1039 ]
1018 }
1040 }
1019 ],
1041 ],
1020 "prompt_number": 19
1042 "prompt_number": 19
1021 },
1043 },
1022 {
1044 {
1023 "cell_type": "markdown",
1045 "cell_type": "markdown",
1024 "metadata": {
1046 "metadata": {
1025 "slideshow": {
1047 "slideshow": {
1026 "slide_type": "header_slide"
1048 "slide_type": "header_slide"
1027 }
1049 }
1028 },
1050 },
1029 "source": [
1051 "source": [
1030 "### Mathematics\n",
1052 "### Mathematics\n",
1031 "\n",
1053 "\n",
1032 "And we also support the display of mathematical expressions typeset in LaTeX, which is rendered\n",
1054 "And we also support the display of mathematical expressions typeset in LaTeX, which is rendered\n",
1033 "in the browser thanks to the [MathJax library](http://mathjax.org). \n",
1055 "in the browser thanks to the [MathJax library](http://mathjax.org). \n",
1034 "\n",
1056 "\n",
1035 "Note that this is *different* from the above examples. Above we were typing mathematical expressions\n",
1057 "Note that this is *different* from the above examples. Above we were typing mathematical expressions\n",
1036 "in Markdown cells (along with normal text) and letting the browser render them; now we are displaying\n",
1058 "in Markdown cells (along with normal text) and letting the browser render them; now we are displaying\n",
1037 "the output of a Python computation as a LaTeX expression wrapped by the `Math()` object so the browser\n",
1059 "the output of a Python computation as a LaTeX expression wrapped by the `Math()` object so the browser\n",
1038 "renders it. The `Math` object will add the needed LaTeX delimiters (`$$`) if they are not provided:"
1060 "renders it. The `Math` object will add the needed LaTeX delimiters (`$$`) if they are not provided:"
1039 ]
1061 ]
1040 },
1062 },
1041 {
1063 {
1042 "cell_type": "code",
1064 "cell_type": "code",
1043 "collapsed": false,
1065 "collapsed": false,
1044 "input": [
1066 "input": [
1045 "from IPython.display import Math\n",
1067 "from IPython.display import Math\n",
1046 "Math(r'F(k) = \\int_{-\\infty}^{\\infty} f(x) e^{2\\pi i k} dx')"
1068 "Math(r'F(k) = \\int_{-\\infty}^{\\infty} f(x) e^{2\\pi i k} dx')"
1047 ],
1069 ],
1048 "language": "python",
1070 "language": "python",
1049 "metadata": {
1071 "metadata": {
1050 "slideshow": {
1072 "slideshow": {
1051 "slide_type": "slide"
1073 "slide_type": "slide"
1052 }
1074 }
1053 },
1075 },
1054 "outputs": [
1076 "outputs": [
1055 {
1077 {
1056 "latex": [
1078 "latex": [
1057 "$$F(k) = \\int_{-\\infty}^{\\infty} f(x) e^{2\\pi i k} dx$$"
1079 "$$F(k) = \\int_{-\\infty}^{\\infty} f(x) e^{2\\pi i k} dx$$"
1058 ],
1080 ],
1059 "output_type": "pyout",
1081 "output_type": "pyout",
1060 "prompt_number": 20,
1082 "prompt_number": 20,
1061 "text": [
1083 "text": [
1062 "<IPython.core.display.Math at 0xa71406c>"
1084 "<IPython.core.display.Math at 0xa71406c>"
1063 ]
1085 ]
1064 }
1086 }
1065 ],
1087 ],
1066 "prompt_number": 20
1088 "prompt_number": 20
1067 },
1089 },
1068 {
1090 {
1069 "cell_type": "markdown",
1091 "cell_type": "markdown",
1070 "metadata": {
1092 "metadata": {
1071 "slideshow": {
1093 "slideshow": {
1072 "slide_type": "slide"
1094 "slide_type": "slide"
1073 }
1095 }
1074 },
1096 },
1075 "source": [
1097 "source": [
1076 "With the `Latex` class, you have to include the delimiters yourself. This allows you to use other LaTeX modes such as `eqnarray`:"
1098 "With the `Latex` class, you have to include the delimiters yourself. This allows you to use other LaTeX modes such as `eqnarray`:"
1077 ]
1099 ]
1078 },
1100 },
1079 {
1101 {
1080 "cell_type": "code",
1102 "cell_type": "code",
1081 "collapsed": false,
1103 "collapsed": false,
1082 "input": [
1104 "input": [
1083 "from IPython.display import Latex\n",
1105 "from IPython.display import Latex\n",
1084 "Latex(r\"\"\"\\begin{eqnarray}\n",
1106 "Latex(r\"\"\"\\begin{eqnarray}\n",
1085 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1107 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1086 "\\end{eqnarray}\"\"\")"
1108 "\\end{eqnarray}\"\"\")"
1087 ],
1109 ],
1088 "language": "python",
1110 "language": "python",
1089 "metadata": {},
1111 "metadata": {},
1090 "outputs": [
1112 "outputs": [
1091 {
1113 {
1092 "latex": [
1114 "latex": [
1093 "\\begin{eqnarray}\n",
1115 "\\begin{eqnarray}\n",
1094 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1116 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1095 "\\end{eqnarray}"
1117 "\\end{eqnarray}"
1096 ],
1118 ],
1097 "output_type": "pyout",
1119 "output_type": "pyout",
1098 "prompt_number": 21,
1120 "prompt_number": 21,
1099 "text": [
1121 "text": [
1100 "<IPython.core.display.Latex at 0xa71404c>"
1122 "<IPython.core.display.Latex at 0xa71404c>"
1101 ]
1123 ]
1102 }
1124 }
1103 ],
1125 ],
1104 "prompt_number": 21
1126 "prompt_number": 21
1105 },
1127 },
1106 {
1128 {
1107 "cell_type": "markdown",
1129 "cell_type": "markdown",
1108 "metadata": {
1130 "metadata": {
1109 "slideshow": {
1131 "slideshow": {
1110 "slide_type": "slide"
1132 "slide_type": "slide"
1111 }
1133 }
1112 },
1134 },
1113 "source": [
1135 "source": [
1114 "Or you can enter latex directly with the `%%latex` cell magic:"
1136 "Or you can enter latex directly with the `%%latex` cell magic:"
1115 ]
1137 ]
1116 },
1138 },
1117 {
1139 {
1118 "cell_type": "code",
1140 "cell_type": "code",
1119 "collapsed": false,
1141 "collapsed": false,
1120 "input": [
1142 "input": [
1121 "%%latex\n",
1143 "%%latex\n",
1122 "\\begin{aligned}\n",
1144 "\\begin{aligned}\n",
1123 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1145 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1124 "\\end{aligned}"
1146 "\\end{aligned}"
1125 ],
1147 ],
1126 "language": "python",
1148 "language": "python",
1127 "metadata": {},
1149 "metadata": {},
1128 "outputs": [
1150 "outputs": [
1129 {
1151 {
1130 "latex": [
1152 "latex": [
1131 "\\begin{aligned}\n",
1153 "\\begin{aligned}\n",
1132 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1154 "\\nabla \\times \\vec{\\mathbf{B}} -\\, \\frac1c\\, \\frac{\\partial\\vec{\\mathbf{E}}}{\\partial t} & = \\frac{4\\pi}{c}\\vec{\\mathbf{j}} \\\\\n",
1133 "\\end{aligned}"
1155 "\\end{aligned}"
1134 ],
1156 ],
1135 "output_type": "display_data",
1157 "output_type": "display_data",
1136 "text": [
1158 "text": [
1137 "<IPython.core.display.Latex at 0xa71472c>"
1159 "<IPython.core.display.Latex at 0xa71472c>"
1138 ]
1160 ]
1139 }
1161 }
1140 ],
1162 ],
1141 "prompt_number": 22
1163 "prompt_number": 22
1142 },
1164 },
1143 {
1165 {
1144 "cell_type": "markdown",
1166 "cell_type": "markdown",
1145 "metadata": {
1167 "metadata": {
1146 "slideshow": {
1168 "slideshow": {
1147 "slide_type": "skip"
1169 "slide_type": "skip"
1148 }
1170 }
1149 },
1171 },
1150 "source": [
1172 "source": [
1151 "There is also a `%%javascript` cell magic for running javascript directly,\n",
1173 "There is also a `%%javascript` cell magic for running javascript directly,\n",
1152 "and `%%svg` for manually entering SVG content."
1174 "and `%%svg` for manually entering SVG content."
1153 ]
1175 ]
1154 },
1176 },
1155 {
1177 {
1156 "cell_type": "markdown",
1178 "cell_type": "markdown",
1157 "metadata": {
1179 "metadata": {
1158 "slideshow": {
1180 "slideshow": {
1159 "slide_type": "header_slide"
1181 "slide_type": "header_slide"
1160 }
1182 }
1161 },
1183 },
1162 "source": [
1184 "source": [
1163 "# Loading external codes\n",
1185 "# Loading external codes\n",
1164 "* Drag and drop a ``.py`` in the dashboard\n",
1186 "* Drag and drop a ``.py`` in the dashboard\n",
1165 "* Use ``%load`` with any local or remote url: [the Matplotlib Gallery!](http://matplotlib.sourceforge.net/gallery.html)\n",
1187 "* Use ``%load`` with any local or remote url: [the Matplotlib Gallery!](http://matplotlib.sourceforge.net/gallery.html)\n",
1166 "\n",
1188 "\n",
1167 "In this notebook we've kept the output saved so you can see the result, but you should run the next\n",
1189 "In this notebook we've kept the output saved so you can see the result, but you should run the next\n",
1168 "cell yourself (with an active internet connection)."
1190 "cell yourself (with an active internet connection)."
1169 ]
1191 ]
1170 },
1192 },
1171 {
1193 {
1172 "cell_type": "markdown",
1194 "cell_type": "markdown",
1173 "metadata": {
1195 "metadata": {
1174 "slideshow": {
1196 "slideshow": {
1175 "slide_type": "slide"
1197 "slide_type": "slide"
1176 }
1198 }
1177 },
1199 },
1178 "source": [
1200 "source": [
1179 "Let's make sure we have pylab again, in case we have restarted the kernel due to the crash demo above"
1201 "Let's make sure we have pylab again, in case we have restarted the kernel due to the crash demo above"
1180 ]
1202 ]
1181 },
1203 },
1182 {
1204 {
1183 "cell_type": "code",
1205 "cell_type": "code",
1184 "collapsed": false,
1206 "collapsed": false,
1185 "input": [
1207 "input": [
1186 "%pylab inline"
1208 "%pylab inline"
1187 ],
1209 ],
1188 "language": "python",
1210 "language": "python",
1189 "metadata": {},
1211 "metadata": {},
1190 "outputs": [
1212 "outputs": [
1191 {
1213 {
1192 "output_type": "stream",
1214 "output_type": "stream",
1193 "stream": "stdout",
1215 "stream": "stdout",
1194 "text": [
1216 "text": [
1195 "\n",
1217 "\n",
1196 "Welcome to pylab, a matplotlib-based Python environment [backend: module://IPython.zmq.pylab.backend_inline].\n",
1218 "Welcome to pylab, a matplotlib-based Python environment [backend: module://IPython.zmq.pylab.backend_inline].\n",
1197 "For more information, type 'help(pylab)'.\n"
1219 "For more information, type 'help(pylab)'.\n"
1198 ]
1220 ]
1199 }
1221 }
1200 ],
1222 ],
1201 "prompt_number": 23
1223 "prompt_number": 23
1202 },
1224 },
1203 {
1225 {
1204 "cell_type": "code",
1226 "cell_type": "code",
1205 "collapsed": false,
1227 "collapsed": false,
1206 "input": [
1228 "input": [
1207 "%load http://matplotlib.sourceforge.net/mpl_examples/pylab_examples/integral_demo.py"
1229 "%load http://matplotlib.sourceforge.net/mpl_examples/pylab_examples/integral_demo.py"
1208 ],
1230 ],
1209 "language": "python",
1231 "language": "python",
1210 "metadata": {},
1232 "metadata": {},
1211 "outputs": [],
1233 "outputs": [],
1212 "prompt_number": 24
1234 "prompt_number": 24
1213 },
1235 },
1214 {
1236 {
1215 "cell_type": "code",
1237 "cell_type": "code",
1216 "collapsed": false,
1238 "collapsed": false,
1217 "input": [
1239 "input": [
1218 "#!/usr/bin/env python\n",
1240 "#!/usr/bin/env python\n",
1219 "\n",
1241 "\n",
1220 "# implement the example graphs/integral from pyx\n",
1242 "# implement the example graphs/integral from pyx\n",
1221 "from pylab import *\n",
1243 "from pylab import *\n",
1222 "from matplotlib.patches import Polygon\n",
1244 "from matplotlib.patches import Polygon\n",
1223 "\n",
1245 "\n",
1224 "def func(x):\n",
1246 "def func(x):\n",
1225 " return (x-3)*(x-5)*(x-7)+85\n",
1247 " return (x-3)*(x-5)*(x-7)+85\n",
1226 "\n",
1248 "\n",
1227 "ax = subplot(111)\n",
1249 "ax = subplot(111)\n",
1228 "\n",
1250 "\n",
1229 "a, b = 2, 9 # integral area\n",
1251 "a, b = 2, 9 # integral area\n",
1230 "x = arange(0, 10, 0.01)\n",
1252 "x = arange(0, 10, 0.01)\n",
1231 "y = func(x)\n",
1253 "y = func(x)\n",
1232 "plot(x, y, linewidth=1)\n",
1254 "plot(x, y, linewidth=1)\n",
1233 "\n",
1255 "\n",
1234 "# make the shaded region\n",
1256 "# make the shaded region\n",
1235 "ix = arange(a, b, 0.01)\n",
1257 "ix = arange(a, b, 0.01)\n",
1236 "iy = func(ix)\n",
1258 "iy = func(ix)\n",
1237 "verts = [(a,0)] + list(zip(ix,iy)) + [(b,0)]\n",
1259 "verts = [(a,0)] + list(zip(ix,iy)) + [(b,0)]\n",
1238 "poly = Polygon(verts, facecolor='0.8', edgecolor='k')\n",
1260 "poly = Polygon(verts, facecolor='0.8', edgecolor='k')\n",
1239 "ax.add_patch(poly)\n",
1261 "ax.add_patch(poly)\n",
1240 "\n",
1262 "\n",
1241 "text(0.5 * (a + b), 30,\n",
1263 "text(0.5 * (a + b), 30,\n",
1242 " r\"$\\int_a^b f(x)\\mathrm{d}x$\", horizontalalignment='center',\n",
1264 " r\"$\\int_a^b f(x)\\mathrm{d}x$\", horizontalalignment='center',\n",
1243 " fontsize=20)\n",
1265 " fontsize=20)\n",
1244 "\n",
1266 "\n",
1245 "axis([0,10, 0, 180])\n",
1267 "axis([0,10, 0, 180])\n",
1246 "figtext(0.9, 0.05, 'x')\n",
1268 "figtext(0.9, 0.05, 'x')\n",
1247 "figtext(0.1, 0.9, 'y')\n",
1269 "figtext(0.1, 0.9, 'y')\n",
1248 "ax.set_xticks((a,b))\n",
1270 "ax.set_xticks((a,b))\n",
1249 "ax.set_xticklabels(('a','b'))\n",
1271 "ax.set_xticklabels(('a','b'))\n",
1250 "ax.set_yticks([])\n",
1272 "ax.set_yticks([])\n",
1251 "show()\n"
1273 "show()\n"
1252 ],
1274 ],
1253 "language": "python",
1275 "language": "python",
1254 "metadata": {
1276 "metadata": {
1255 "slideshow": {
1277 "slideshow": {
1256 "slide_type": "skip"
1278 "slide_type": "skip"
1257 }
1279 }
1258 },
1280 },
1259 "outputs": [
1281 "outputs": [
1260 {
1282 {
1261 "output_type": "display_data",
1283 "output_type": "display_data",
1262 "png": "iVBORw0KGgoAAAANSUhEUgAAAW0AAAEJCAYAAABfZHZuAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3Xl0VPX5x/H3ZJssJCbIEjbZwlICyhYWN1BUlmJFUbQS\n2+JWCwjaWij+RFERRHtoDYK1Kggqim1Ri1K3AlWEsAkBQoAQSEgQQhBCyD7b748BFAkhy8zcuZPP\n6xxOD8nMfJ9jycOH537v91pcLpcLERExhSCjCxARkZpT0xYRMRE1bRERE1HTFhExETVtERETUdMW\nETGRapv2U089xUsvvXT29//3f/9HSkqK14sSEZGqWarbp52Tk8Ntt93Gli1bcDqddO7cmU2bNhEX\nF+fLGkVE5LSQ6r7Ztm1bLr30UrZt28aRI0fo3bu3GraIiIGqbdoA999/P4sWLSI/P597773XFzWJ\niMgFVDseAbDZbHTv3h2Hw0FmZiYWi8VXtYmIyE9cNGmHhoZy/fXXExcXd8GGrUYuIlI3tT3+6aJN\n2+l0kpqayj//+U+PLhyoZsyYwYwZM4wuQ0Sq4eufU5cLevaEuXNhyJAfvl6XwFvtlr9du3bRqVMn\nbrjhBjp27FjrDxcREUhNhZISuO66+n9WtUm7W7duZGVl1X8VEZEGbP58GD8egjxwO6PuiPSwwYMH\nG12CiFyEL39O8/Phk09g3DjPfN5Fd4/U6EMsFs20RUSq8NxzcOAAvP76+d+rS+9U0xYR8RK7HTp0\ngI8+gl69zv9+XXqnxiMiIl6yYgW0aVN1w64rNW0RES+ZPx8mTPDsZ2o8IiLiBRkZ7i1+OTlgtVb9\nGo1HRET8xIIF8MADF27YdaWkLSLiYadOQdu2sH07tG594dcpaYuI+IElS9yjkeoadl0paYuIeJDT\nCV27whtvwDXXVP9aJW0REYN98glccglcfbV3Pl9NW0TEg+bOhUcfBW+dWK2mLSLiIVu3wr59cMcd\n3ltDTVtExEP+8hd4+GEIDfXeGroQKSLiAd99B4mJsH8/1PT557oQKSJikPnzITm55g27rpS0RUTq\nqbTUfTPN+vWQkFDz9ylpi4gYYPFiuPLK2jXsulLSFhGpB7sdOneGt992N+7aUNIWEfGxf/zDfbt6\nbRt2Xalpi4jUkcsFzz8Pf/qT79ZU0xYRqaNPP3U37uHDfbemmraISB2dSdneumW9KmraIiJ1sG4d\nHDwIY8b4dl01bRGROpgzB/74RwgJ8e262vInIlJL6ekwZAgcOAAREXX/HG35ExHxgVmzYNKk+jXs\nulLSFhGphT173A84yMqCmJj6fZaStoiIl82cCZMn179h15WStohIDe3dC1dd5X7QwSWX1P/zlLRF\nRLxo5kz3LNsTDbuulLRFRGogM9N9voinUjYoaYuIeM1zz8HEicambAAfbwsXETGfrCz4+GN3yjaa\nkraIyEU884w7ZcfGGl2JkraISLXS092n+WVmGl2Jm5K2iEg1nngCpkwxbl/2T2n3iIjIBWzYALff\n7t6f7Y1b1rV7RETEgx5/HJ580pgzRi5ETVtEpApffgm5uTBunNGVnEtNW0TkJ1wud8p+9lnfn5d9\nMWraIiI/8cEHYLPBHXcYXcn5dCFSRORHKishMRHmz4ebbvLuWroQKSJST6+8AgkJ3m/YdaWkLSJy\n2vHj0LUrrF7tTtveVpfeqaYtInLa738PpaXwt7/5Zj01bRGROtq3DwYMcN+23ry5b9bUTFtEpI6m\nToU//MF3Dbuu/GwHooiI7331FWzeDG+/bXQlF6ekLSINmt3ufoTYnDn+dbv6hahpi0iD9re/uc/J\nvvNOoyupGV2IFJEG6+hR99a+1auhe3ffr6/dIyIitXDvve6UPXeuMevXpXfqQqSINEjr17ufSLN7\nt9GV1I5m2iLS4Dgc7mc+vvCC/zyRpqbUtEWkwbn33vXY7YWMHWt0JbWnpi0iDcq2bQUsWZJA69az\nsViMrqb2NNMWkQZl5Mj9wGcMGNDI6FLqRElbRBqMJ57YQn7+pdx11wGjS6kzNW0RaRDy8op5/vmW\nTJy4naioYNNuU1bTFpEGYdiwrbRunUZyclssZhxmn6aZtogEvPnzt5ORkcAHH2Se/ZqStoiIHzp2\nrIxHH40hOXkDrVpFAShpi4j4qyFDttC0aTmTJrU55+tmTdpq2iISsObO3cHOne1ZvnzfOV83c9LW\neEREAlJu7immTGnM/fen0rr1+XuylbRFRPzI9ddvp02bIh58sJ3RpXiUmraIBJzHH99AdnYrVqxw\nXvA1Zk3aGo+ISEDZsiWf559vz2OP7aBp08gqX2PmmbaStogEDJvNyQ03HKFPn/3cfvtl1b7WrElb\nTVtEAsaIEeuw28N46aWW1b7OzElb4xERCQivvJLOf//biZdfPonVevE8atakraYtIqa3b98JHn44\njvvu+4bu3Rtf9PVmTtoaj4iIqdntTq68MpNOnQp46KG2NX6fWZO2mraImNrQod9QWhrJ8uVNjC7F\nJzQeERHTevbZraxZ04FXXz1BRETtMqjTeeE93P5MTVtETGn16jyeeqo1jz22ia5d42r1XovFovGI\niIivHD1ayogRZVx/fSpjxrSv9ft1IVJExEccDhe9e6fRtGkxs2e3q/PnKGmLiPjAddd9zYkT0Xzy\nCQQF1S0xmzlpa6YtIqYxfnwq69ZdxsKFJ4iODqvXZ5k1aatpi4gpLFiQzt/+1pE5c3aRkHBJvT5L\nSVtExIu++CKbhx9uyu9+t5bBg5t75DOVtEVEvCAtrYARI4IZPvwb7r23+pP7GgJdiBQRv3Xw4CkG\nDCikd+8dPP10zW9RrwmzJm01bRHxSydOlHP55Qdo0yaHl1/2bMI280xbTVtE/E5pqY2f/SyNyMhi\nlixpXuetfdVR0hYR8YDycgddumzBZnPw0UeNCA0N9vgaStoiIh5QUeGga9dNFBc7+OCDoFofAlUb\nStoiIvXgbtgbOXECPvjAUu+bZ6pj5qStLX8iYriyMjtduqRy/HgQy5e7uOQSq9fXVNIWEamDoqJK\nunTZRkUFfPCB0ycN28xHsyppi4hhjhwpoX37XTidxXz0UTCXXOK9kchPqWmLiNRCZuZxEhKyiY4+\nwgcfRBEZGWp0Saagpi0iPrdqVS6JiUW0b7+ff/yjCVar7ye1etyYiEgN/P3vu7jxRivXXbeZN99s\n6ZUbZy7GzLtHdCFSRHxm8uT1zJuXwP33f8Vvf1v7x4R5klln2mraIuJ1NpuTwYPXsmFDe2bN2sSN\nN7YztB4lbRGRC8jKOsmAAVlUVFhZunQfHTt65jzs+jJr0tZMW0S8ZunS3XTtWkSTJnmsXOmiY8cY\no0sCtE9bROQcDoeL0aPXkpzchNtv38Tbb7ciIsJ/tvRpPCIiclp6+vdcd102p05FM3/+Fvr18+zD\nCzxFSVtEGrzp0zdx+eV24uMP8fnnZfTr18TokgKOkraI1FtmZiE33bSb3Nx4Hn10A7/8ZSujS7oo\nJW0RaXCcTheTJ6+ja9dKrNYC/vOfQ6Zo2Jppi0iDs3JlDvfcc5zi4sZMm7aeW29tbXRJtaKkLSIN\nQk5OEX36rGXkyEiuuCKLVatOmq5hK2mLSMArKqrkN7/ZwIcfdqFt22Lee28HHTsaeyt6fZg1aatp\ni0i1ysrsPPTQRt55px2XXOI6fRt6vNFl1YuStogEnMLCCiZO3MSyZW2IjAxiypSNjB7dBogyujSP\nUNKWgONwOMnK+p7du0+Sm1tMfn4Zx4/bKCx0UlQEFRUubDYnTqcLpxNcrmCCgiAszInV6iIiwkJU\nVDBRUSE0bhxKs2ahtGoVQdu20bRvH0tcXJSpE0+g2rPnOOPHp7NmTVdiY108+mgad97ZCmhjdGke\nY+Y/d2raDdyhQ0V8+WU2qaknSE+3kZMTxvHjl1BWFovD0QywEhpqISwMrNZgrFY7VqsDq9VGWJiD\n4GALFgsEBYHF4sDptGC3B2GzhWCzWbDZLFRWOqioCKGiIhSbzYrdHo7TaQVKCA4uxGo9TnR0EZde\nWkF8vIu2bUNJSIike/c4+vVrTnx8tNH/mQKe0+ni9dd388ILx8nKSqRt21JeeGEDgwe3ACKNLs8r\nlLTF7+XlneSddzJZtaqQHTusFBS0xm5vRni4ldjYYFq0KKFPn2I6dSqiY8fv6dQpn5iY4B99QjDu\nH+C6/hBXnv51ApcLjh+v5ODBErKzK8nNdXD4MOTnB5OZGczy5VBaasFmC8FiOUpExBHi4gpp1aqS\nhIRgevRoRL9+TRkwoJUeU1UPaWkFPPnkLj77rA0ORwj9+x/h+edttG+vOxn9lZp2ADt8+BSvvprO\nihXFZGQ0o6ysPY0aBdOmjZ2rry7jqqvK6d//GKGhQUDE6V++YbHApZeGcemlYfTqdaFXFeJwnODA\ngVJ27CghM9NOTk4Q33wTwccfB1FSEozD4SQkJJeYmALi40tJSIAePaLo378JV1/dgrg4/RH/qZ07\njzFr1m5Wrozm5MnLaNPGxsSJ2xkzphXBwe2MLs9nlLTFL3zzzUHmzs1k9epGnDjRjZiYMLp0qWDS\npDyGDy+jUaMQoKnRZdZYcLCFhIQoEhKquvh1lNLS70hLO8GOHWVkZjrZvTuMr792MmdOOHZ7BcHB\nJ4mOPkqLFqV06AA9ekTSv39T+vW7lBYt3KOdQGezOVm6NJMlS46ycWMcxcWtaNGiglGjjvDrX5cQ\nExMHxBldpk9ppi2G2rLlEE8/vZsvv4ynvDye1q2Dufnmo9x9t5MmTcIAc2/Pqk5kZAgDBzZl4MCf\nfqeUsrJt7Nx5jO3bS9i7186+fVbWrYvhz38uwW53YrE0Ijq6gObNi2nf3km3buH07RtHUlJj2rcP\nItSkU5dTp2y8/34W//53AZs2hXLkSGdCQ5106HCC3/ymgNGjTxEdHQvEGl2qoZS0xaeKisqZNm0z\n770XyokTXWnTJogHHjjAmDHFhIdHA7p4FxERTlJSa5KSzv9ecXEGe/YcZseOYvbudZCba+Xbb6OZ\nP78JdntboCXh4d/TuHEhrVtX0LGjhcREd1Pv1+9SYmODz/9QH3O5YO/e43z66SHWrSti+3YXubmx\nlJS0x2q10bp1EVddVc7NNxeTmBgH+P+ZIL6ipC0+s25dLr///R42buxBTEw4Q4ce4sEHXcTGxgD+\n8VQQM2jUqBF9+nSiT5/zv1dWlkdOzibS090N/eDBENaubcTHHzempMSBwxFFUFAZ4eH5REWVEhtb\nSdOmTpo2tdCyZTCtWoXRokUEzZtHEh8fRfPmUTRrFkFY2MUbhcsFFRVOCgqKOXiwmJycEg4eLCUv\nr4y8vApycy0cPhxOYWEsZWXxQBCRkXaaNTtFhw4ljBx5nBtuKKRJkwgC+V9YnqCkLV61ZMlOpk0r\n4vDhn9G5s4uUlJ0MHBgLmOvMBzOIiIiga9cOdO1a1XfLqKzcQWbmKTIzKzh0qIL8fBfHjgWRkRHG\nxo0RlJYGUVlpx2634XBU4nSGAmGAHajAYnEBjrP/Cy5crjBcLisQDjgBC0FBDkJDy7FaS4mKKiU6\nuoJmzSoYPNhBp06H6dEjj7ZtYwgKsuC+TmGeaxVGU9IWr5k371tmzKiksLAt1167n4ULM2jSpLHR\nZTVoYWGhJCY2JjGxulfZTv8qAsBud1BcbKe4uBKbzYHN5sThAJfLgssF4eFBREYGER0dSmRkGEFB\nPz7LLez0L/EkJW3xqDfe2M5jj9k4daoZw4ZtZerUICIjNZM0q5CQYGJjg4mNtRpdiqCkLR70+edZ\njBt3iCNHOjF8+EamTXMQHq5mLeJpStpSLzk5Jxg1aitpaT3p3z+DJUtyiI3VvFpEzqWHIBjM6XQx\nfvwaOnQo58QJF8uW7eDll1sQG2vSTcIiJuF0Oo0uoU6UtA305ZfZjBlzlNLSljz+eBqjRunqv4gv\nmHmmraRtAJvNwS23/Jebboqme/cjrFp1Ug1bxIfM3LSVtH3s669zGDmyAIejGfPnb6VfP11kFDGC\nWS9EKmn7iMvl4sEHv2LQoCh69Mjniy/K6devYR3SI+IvlLSlWvn5pxg48Fvy8loxe/YWbrhBtxeL\nGE1JW6q0YsVeLrvsEHY7fPJJATfcoMPlRYxm5qStpu1Fkyev5ZZb4hg6dB/LlzeicWPdiiziL8ya\ntDUe8QKbzcG1165m06bOzJy5maFDWxhdkogECDVtD8vPP0XPntsoLm7Ce+9l0759M6NLEpEq6OYa\n4dAhSEoqwuUqYeVKK5GRVT0iS0SMppm2kJ4OAwdCQkIad9yxkshI459sIiIXZtaZtpq2B6xfD9df\nD7NnQ//+qxvEw2JFzExJuwH77DO45RZ4800YO9boakSkppS0G6Bly+BXv4IPP4Thw42uRkRqysxJ\nWxci6+jtt2HqVPjyS+jRw+hqRKS2zJq01bTr4McN+2c/M7oaEaktJe0G5J13YMoUNWwRszNr0tZM\nuxaWLoU//tHdsLt1M7oaEWmIlLRr6KOP4A9/UMMWCRRmTdpq2jXw1VfwwAOwciUkJhpdjYjUl5ln\n2hqPXERaGtxxB7z7LvTta3Q1IuIpZk3aatrVyMqCESNg/nwYMsToakTEU5S0A1BBAQwdCk8+Cbff\nbnQ1IuJpStoBpKICbr0VxoyB3/7W6GpExNMsFouadqBwueD++6FFC5g50+hqRMQbNB4JILNmwe7d\nsHgxBOm/jim8//77DBo0iJ07dxpdipiIknYAeP99ePVV+Pe/ITLS6Gqkpn7+859jtVpJ1H5MaQC0\nT/u0bdtgwgT44gv3aETMY/PmzfTq1cvU/+QV31PSNrHjx2H0aJg3D3r2NLoaqa0NGzZgsVj49NNP\nmTVrFvv27TO6JPFzZv4LvsE3bacTkpPhF7+Au+4yuhq5mPfee48hQ4aQnJxMTk4O4G7aY8eOZdiw\nYVx77bUsWLDA4CrFDJS0TeqZZ6C4GF54wehK5GI2b97MX/7yF/76179SUlLCs88+y5EjR3C5XPQ4\nfaj5999/T2FhocGVir8zc9Ju0DPtTz6B11+HzZshNNToauRi5s2bx8CBA+ncuTMul4vmzZuTkZFB\nzx/NtFJTU7nyyisNrFLMQknbZHJyYNw49yPD4uONrkYuZufOnezatYsbb7wRq9XKhx9+yHPPPUdU\nVBTR0dEAHDx4kH379pGcnGxwteLvzJy0G2TTttvh7rvhscfgqquMrkZqYuXKlQDnpeikpCSCgoL4\n+OOPeffdd3nllVcIDw83okQxGbMm7QY5Hnn6aYiKcjdtMYf//e9/dOjQgbi4uHO+brFYmDx5MgAj\nR440ojQxITMn7QbXtNesgTfegG+/1R2PZnHw4EGOHj3K1VdfbXQpEkDMmrQbVNs6dgzuuQcWLtQc\n20w2bdoEQPfu3Q2uRMR4DaZpu1xw331w550wbJjR1UhtbNmyBYCf6UnK4kFmTdoNZjyycCEcPAj/\n+IfRlUhtbdmyhbCwMNq3b290KRIgNNP2c9nZ8Kc/wapVEBZmdDVSGzk5ORw/fpxu3boRHBxsdDkS\nQMyatAN+POJ0wr33uneKnL5pTkxk69atAHTu3NngSiSQmDlpB3zTXrAAysq0vc+svv32WwASEhIM\nrkQCjVmTdkCPRzIz3Xuyv/kG9C9rc9qxYwfgH03b4XDUeURjt9sJCQnoHzdTUdL2Qw4H/OY37gfz\n6l/W5nTixAny8vKwWCx07NjR0FpWrVp19q7Muli0aBFpaWkerEjqy6xJO2Cb9oIF7nQ9YYLRlUhd\nbd++HYC4uDhiY2O9vl5ubi6PPPIIKSkpzJ49++wP9ZYtW9i6dSs333xznT973LhxLFy4kAMHDtTo\n9Y899hhjx47VXZ5eoqTtZ3Jz3WORv/9ddz2a2Zmm7YvRiM1mY+LEiQwZMoTvv/+ejz76iJKSEoqL\ni0lJSWHixIn1+vyQkBCmTZvGU089hd1uv+jr58yZQ+/evcnPz6/XunJhStp+wuVyp+tJk6BrV6Or\nkfo486DeTp06eX2t9evX891339G7d2/GjBlDSkoKjRo1YtGiRQwfPhyr1VrvNeLj4+nYsSMff/zx\nRV8bHBysHTNSpYBr2suXw759MHWq0ZVIfTgcDnbt2gX4pmlv2bKFuLg4WrVqRWJiIv369aOsrIwP\nP/yQESNGeGydO++8k8WLF3vs86TulLT9QGGhO2G/9hp4IBiJgbKzsykvL8disfikaaenp9OtW7dz\nvrZ27VpatmxJTEyMx9bp3LkzJ0+eZPfu3R77TKk9i8Vi2qYdUHuQ/vQn97MedUa2+Z1J2cHBwXTo\n0MFr68yYMYPjx4+TlpZGu3btmDRpEq1atWLq1Kls2LCByy+//ILvzcjIYOXKlQQFBXH48GGeeOIJ\nli9fzqlTpygoKODBBx+kdevW57wnKCiInj17kpqaStcfze+ysrJYtGgRMTExhIeHExoaet4xtPVd\nW35g5guRAdO0U1Ph3/+G0z/rYnJnmnaHDh28ur95xowZHDp0iFGjRjFhwgQGDx589nt79+7l1ltv\nrfJ9eXl5rFixgilTppz9nHHjxjFjxgycTicPPPAAXbp0YezYsee997LLLmPv3r1nf5+WlsbkyZOZ\nO3cuvXv3BqC0tJTx48dX2Vzqs7b8wKxJOyDGIw4HTJzofjivD3aGiQ+cadpdunTx+lp79uwBzr9V\n/rvvvjv7KLOfeuedd3j44YfP/r6srIyYmBh69OhBfHw8ycnJF9wiGB0dzXfffQeA0+lkxowZJCUl\nnW3YAJGRkdx0001VNpb6rC1uZk7aAdG033gDIiJAwSIwOBwO9u3bB/jmONa9e/fSqFEjWrZsec7X\ni4uLL9i077nnHiIiIs7+fseOHfTr1w+A5s2bM2nSpAvOwmNjYykuLgbc2xrz8vK44ooralxvfdaW\nH5g1aZt+PPL99zB9Onz+OZj4L0/5kezsbCorK7FYLD5r2lVtr7NYLDidzirf8+MGn52dTUFBAX37\n9q3Rek6n82zDOLMPuzZNtj5ri5uStoGmT4cxY6AWQUX83Jl5b0hIiE/GI3v37q1ynejoaIqKii76\n/s2bNxMaGnrORcu8vLwLvr6oqOhsgm/evDkA5eXltS27TmvLD8yatE3dtL/91r0v+5lnjK5EPCkz\nMxNw3wkZGhrq1bVOnjxJfn5+ldsKW7ZsSWFh4XlfLy8vJyUl5ewIZ8OGDXTq1OnsDThOp5O33nqr\n2jVbtWoFcHYOfeZGoh9zOBweX1vMz7RN2+WChx+G556DanZGiQmdaUi+eCbkmYuQVTXtnj17VnlW\nyDfffMNbb73F/v37yc7OJjc3l7AfPV1j4cKF1V4IPHDgwNmxT3BwME8++SRr1649+5cVwLFjx1ix\nYgUAhw4d8tja8gOzJm3TzrTfew8qKmDcOKMrEU8707QTExO9vtbu3buJjo6ucqY9cOBA5s6de97X\n+/Tpw80338zu3bvZs2cPb775Js8//zyzZs0iNDSUQYMGXfAvHLvdzvbt25k0adLZryUlJZGSksJr\nr71GixYtiIyMJCQkhJ///OcsXryYRx55hLFjxzJq1Kh6rS0/MPNM25RNu7wcpk2DJUt0IFSgOXNz\niMVi8VnTTkpKIqiKP0i9evXi2LFjFBQU0LRp07Nfj42N5cknnzzntTNmzKjReunp6cTHx5+X7Lt3\n784LL7xw3ut//etfn/P7+qwt5zJr0jZly0tJgV694Nprja5EPC0rKwtw76Zo166dV9ZYvHgxE06f\n2btr1y6GDBlS5evCwsK48847effddz229tKlS3XTix8wc9I2XdMuKHDfRDNnjtGViDfs378fcM+T\nvWXlypWEhYWRmZlJaGjoBZs2wK9+9SvWrVtXo10kF5Odnc2RI0c0c/YTSto+8vTTcPfdehpNoDrT\ntHv16uW1Ne655x6aNm3KokWLePHFF6t9hFh4eDjTp09n5syZ9fohr6io4MUXX+S5554zdcoLFGb+\n/8BUM+09e2DZMsjIMLoS8ZYzOyi8mbRHjhxZqyfCJCYmMnr0aJYtW8Zdd91VpzUXLVrEhAkTdIiT\nHzFr0jZV054yxf2rSROjKxFvyczMJCIi4pwT8PxB//796d+/f53f/9BDD3mwGqkvJW0f+PprSEtz\nJ20JTIcPH+bUqVMkJSXV+annIjVl1qRtipm2ywWPP+6eZ4eHG12NeEvG6blXnz59DK5ExH+Zoml/\n9pn7YKjkZKMrEW9KT08HOHtinYg3KWl7idPpTtkzZ4L+xRzYdu7cSVRUlE9uqpGGzcwzbb9v2v/6\nl/uuxws8QEQCRHl5OTt37qR///5V3p0o4mlmTdp+fSHSbncfvZqSorOyA93mzZuprKxk0KBBRpci\nDYCStpe89RbEx8ONNxpdiXjan//8Z375y19it9sB+PTTT4mJian27kQRT1LS9rCKCpgxA959Vyk7\nEG3cuBGbzYbT6eTIkSOsWrWK++677+y50CLeZLFY1LQ9bdEiSEyEK680uhLxhiuuuILGjRtTVFTE\nM888w2WXXXbeiXYicj6/HI9UVsLs2fCTEyglgEyYMIH09HRGjRpFWFgY8+bNIySk6gxht9t55ZVX\n+Ne//sWyZct49NFH9UgtqTclbQ9avBi6doUBA4yuRLwlNjaWl19+uUavnT17Np06dWL06NEUFhby\n6quv6gwPqRddiPQgmw1mzYKnnjK6EvEHmZmZfPHFF9x2222A+6k2vXv3NrgqCQRmTdp+17SXLIGE\nBM2yxW3jxo307Nnz7HMQN27cSFJSEqdOnTK4MjEzJW0PsdncD+rVLFvOiImJocnpYx1LS0tZvXo1\nl19+Of/5z38MrkzMzqxJ269m2u+8A+3awTXXGF2J+IuhQ4eybds2PvvsMyorKxk2bBjr1q3zu6Nb\nxVzMnLT9pmnb7e6U/dprRlci/iQsLIzp06cbXYYEILMmbb8Zj/zzn+67HwcPNroSEQl0Zk7aftG0\nXS73g3qnTjW6EhFpKJS06+Hzz93jkREjjK5ERMS/+UXTnjPH/exHncgpIr6ipF1HmzZBVhbU8SHX\nIiK1ppkp2rWWAAAC/UlEQVR2PcyZA7//PYSGGl2JiDQkZk3ahm7527sXvvrKfdaIiIivKGnX0Ysv\nwvjxEBVlZBUi0hApadfS4cPu5z/u3WtUBSLSUClp10FKCowdC6ePlRAR8Skl7VooLYXXX4fUVCNW\nF5GGTkm7lt56C666Cjp2NGJ178rNzTW6BBG5iIyMDNMmbZ83bacT/vpXeOQRX6/sG2raIv4vIyPD\n6BLqzOdN+/PPwWqFQYN8vbKIyA+UtGvoTMo28UhJRAKAWZu2xeWBys081BcRMVJtW7BHdo+Y9W8s\nERGzMfzsERERqTk1bRERE1HTFhExETVtD7r11lvp27cv3bt35zU9oVjE72RnZ9OjRw+jy6gXv3ka\neyBYuHAhcXFxlJWV0a9fP0aPHk3jxo2NLktEAoiStge99NJL9OzZk4EDB5KXl0dmZqbRJYnIT9jt\ndpKTk+nWrRt33HEHZWVlRpdUK2raHrJmzRr++9//kpqayrZt2+jZsycVFRVGlyUiP7Fnzx4mTJjA\nrl27iImJYcGCBUaXVCtq2h5SVFREXFwc4eHh7N69m1QdYSjil9q0acPAgQMBSE5OZu3atQZXVDtq\n2h4ybNgw7HY73bp1Y9q0aWf/UIiIf/nxHdwul8t0d3TrQqSHhIWFsXLlSqPLEJGLOHjwIKmpqQwY\nMIClS5dyzTXXGF1SrShpi0iDYbFY6NKlC/Pnz6dbt26cPHmS3/3ud0aXVSseOTBKRER8Q0lbRMRE\n1LRFRExETVtExETUtEVEDLJp0yauuOIKKioqKCkpoXv37uzatava9+hCpIiIgaZPn055eTllZWW0\nadOGqVOnVvt6NW0REQPZbDb69u1LREQE69evv+jNPhqPiIgY6NixY5SUlFBcXFyjw6uUtEVEDPSL\nX/yCu+++m/3793P48GHmzZtX7et1G7uIiEGWLFmC1Wrlrrvuwul0cuWVV7JmzRoGDx58wfcoaYuI\nmIhm2iIiJqKmLSJiImraIiImoqYtImIiatoiIiaipi0iYiL/DycIU5TELLbPAAAAAElFTkSuQmCC\n",
1284 "png": "iVBORw0KGgoAAAANSUhEUgAAAW0AAAEJCAYAAABfZHZuAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
1263 "text": [
1285 "text": [
1264 "<matplotlib.figure.Figure at 0xa705fec>"
1286 "<matplotlib.figure.Figure at 0xa705fec>"
1265 ]
1287 ]
1266 }
1288 }
1267 ],
1289 ],
1268 "prompt_number": 25
1290 "prompt_number": 25
1269 },
1291 },
1270 {
1292 {
1271 "cell_type": "heading",
1293 "cell_type": "heading",
1272 "level": 1,
1294 "level": 1,
1273 "metadata": {
1295 "metadata": {
1274 "slideshow": {
1296 "slideshow": {
1275 "slide_type": "header_slide"
1297 "slide_type": "header_slide"
1276 }
1298 }
1277 },
1299 },
1278 "source": [
1300 "source": [
1279 "IPython rocks!"
1301 "IPython rocks!"
1280 ]
1302 ]
1281 },
1303 },
1282 {
1304 {
1283 "cell_type": "markdown",
1305 "cell_type": "markdown",
1284 "metadata": {},
1306 "metadata": {},
1285 "source": [
1307 "source": [
1286 "Just my little contribution... I have a lot of work to do but this is an exciting beginning!\n",
1308 "Just my little contribution... I have a lot of work to do but this is an exciting beginning!\n",
1287 "\n",
1309 "\n",
1288 "You can check [here](https://github.com/ipython/nbconvert/pull/69) for more information about this PR."
1310 "You can check [here](https://github.com/ipython/nbconvert/pull/69) for more information about this PR."
1289 ]
1311 ]
1290 },
1312 },
1291 {
1313 {
1292 "cell_type": "markdown",
1314 "cell_type": "markdown",
1293 "metadata": {},
1315 "metadata": {},
1294 "source": [
1316 "source": [
1295 "And you can find me at:\n",
1317 "And you can find me at:\n",
1296 "\n",
1318 "\n",
1297 "* [@damian_avila](https://twitter.com/damian_avila)\n",
1319 "* [@damian_avila](https://twitter.com/damian_avila)\n",
1298 "* [OQUANTA](http://www.oquanta.info)\n",
1320 "* [OQUANTA](http://www.oquanta.info)\n",
1299 "* [BLOG](http://www.damian.oquanta.info)"
1321 "* [BLOG](http://www.damian.oquanta.info)"
1300 ]
1322 ]
1301 }
1323 }
1302 ],
1324 ],
1303 "metadata": {}
1325 "metadata": {}
1304 }
1326 }
1305 ]
1327 ]
1306 } No newline at end of file
1328 }
General Comments 0
You need to be logged in to leave comments. Login now