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Kaggle HR Dataset
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{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## HR Dataset\n",
"\n",
"Why are our best and most experienced employees leaving prematurely? Have fun with this database and try to predict which valuable employees will leave next. Fields in the dataset include:\n",
"\n",
"Satisfaction Level\n",
"Last evaluation\n",
"Number of projects\n",
"Average monthly hours\n",
"Time spent at the company\n",
"Whether they have had a work accident\n",
"Whether they have had a promotion in the last 5 years\n",
"Departments (column sales)\n",
"Salary\n",
"Whether the employee has left\n",
"\n",
"Source : Kaggle"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"import numpy as np\n",
"import pandas as pd\n",
"import matplotlib.pyplot as plt\n",
"import seaborn as sns\n",
"import re\n",
"\n",
"%matplotlib inline"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"Source = pd.read_csv('HR_comma_sep.csv')"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## A GLIMPSE AT DATA"
]
},
{
"cell_type": "code",
"execution_count": 5,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"<class 'pandas.core.frame.DataFrame'>\n",
"RangeIndex: 14999 entries, 0 to 14998\n",
"Data columns (total 10 columns):\n",
"satisfaction_level 14999 non-null float64\n",
"last_evaluation 14999 non-null float64\n",
"number_project 14999 non-null int64\n",
"average_montly_hours 14999 non-null int64\n",
"time_spend_company 14999 non-null int64\n",
"Work_accident 14999 non-null int64\n",
"left 14999 non-null int64\n",
"promotion_last_5years 14999 non-null int64\n",
"sales 14999 non-null object\n",
"salary 14999 non-null object\n",
"dtypes: float64(2), int64(6), object(2)\n",
"memory usage: 1.1+ MB\n"
]
}
],
"source": [
"Source.info()"
]
},
{
"cell_type": "code",
"execution_count": 6,
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
"<div>\n",
"<table border=\"1\" class=\"dataframe\">\n",
" <thead>\n",
" <tr style=\"text-align: right;\">\n",
" <th></th>\n",
" <th>satisfaction_level</th>\n",
" <th>last_evaluation</th>\n",
" <th>number_project</th>\n",
" <th>average_montly_hours</th>\n",
" <th>time_spend_company</th>\n",
" <th>Work_accident</th>\n",
" <th>left</th>\n",
" <th>promotion_last_5years</th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr>\n",
" <th>count</th>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" <td>14999.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>mean</th>\n",
" <td>0.612834</td>\n",
" <td>0.716102</td>\n",
" <td>3.803054</td>\n",
" <td>201.050337</td>\n",
" <td>3.498233</td>\n",
" <td>0.144610</td>\n",
" <td>0.238083</td>\n",
" <td>0.021268</td>\n",
" </tr>\n",
" <tr>\n",
" <th>std</th>\n",
" <td>0.248631</td>\n",
" <td>0.171169</td>\n",
" <td>1.232592</td>\n",
" <td>49.943099</td>\n",
" <td>1.460136</td>\n",
" <td>0.351719</td>\n",
" <td>0.425924</td>\n",
" <td>0.144281</td>\n",
" </tr>\n",
" <tr>\n",
" <th>min</th>\n",
" <td>0.090000</td>\n",
" <td>0.360000</td>\n",
" <td>2.000000</td>\n",
" <td>96.000000</td>\n",
" <td>2.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>25%</th>\n",
" <td>0.440000</td>\n",
" <td>0.560000</td>\n",
" <td>3.000000</td>\n",
" <td>156.000000</td>\n",
" <td>3.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>50%</th>\n",
" <td>0.640000</td>\n",
" <td>0.720000</td>\n",
" <td>4.000000</td>\n",
" <td>200.000000</td>\n",
" <td>3.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>75%</th>\n",
" <td>0.820000</td>\n",
" <td>0.870000</td>\n",
" <td>5.000000</td>\n",
" <td>245.000000</td>\n",
" <td>4.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" <td>0.000000</td>\n",
" </tr>\n",
" <tr>\n",
" <th>max</th>\n",
" <td>1.000000</td>\n",
" <td>1.000000</td>\n",
" <td>7.000000</td>\n",
" <td>310.000000</td>\n",
" <td>10.000000</td>\n",
" <td>1.000000</td>\n",
" <td>1.000000</td>\n",
" <td>1.000000</td>\n",
" </tr>\n",
" </tbody>\n",
"</table>\n",
"</div>"
],
"text/plain": [
" satisfaction_level last_evaluation number_project \\\n",
"count 14999.000000 14999.000000 14999.000000 \n",
"mean 0.612834 0.716102 3.803054 \n",
"std 0.248631 0.171169 1.232592 \n",
"min 0.090000 0.360000 2.000000 \n",
"25% 0.440000 0.560000 3.000000 \n",
"50% 0.640000 0.720000 4.000000 \n",
"75% 0.820000 0.870000 5.000000 \n",
"max 1.000000 1.000000 7.000000 \n",
"\n",
" average_montly_hours time_spend_company Work_accident left \\\n",
"count 14999.000000 14999.000000 14999.000000 14999.000000 \n",
"mean 201.050337 3.498233 0.144610 0.238083 \n",
"std 49.943099 1.460136 0.351719 0.425924 \n",
"min 96.000000 2.000000 0.000000 0.000000 \n",
"25% 156.000000 3.000000 0.000000 0.000000 \n",
"50% 200.000000 3.000000 0.000000 0.000000 \n",
"75% 245.000000 4.000000 0.000000 0.000000 \n",
"max 310.000000 10.000000 1.000000 1.000000 \n",
"\n",
" promotion_last_5years \n",
"count 14999.000000 \n",
"mean 0.021268 \n",
"std 0.144281 \n",
"min 0.000000 \n",
"25% 0.000000 \n",
"50% 0.000000 \n",
"75% 0.000000 \n",
"max 1.000000 "
]
},
"execution_count": 6,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"Source.describe()"
]
},
{
"cell_type": "code",
"execution_count": 7,
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
"<div>\n",
"<table border=\"1\" class=\"dataframe\">\n",
" <thead>\n",
" <tr style=\"text-align: right;\">\n",
" <th></th>\n",
" <th>satisfaction_level</th>\n",
" <th>last_evaluation</th>\n",
" <th>number_project</th>\n",
" <th>average_montly_hours</th>\n",
" <th>time_spend_company</th>\n",
" <th>Work_accident</th>\n",
" <th>left</th>\n",
" <th>promotion_last_5years</th>\n",
" <th>sales</th>\n",
" <th>salary</th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr>\n",
" <th>0</th>\n",
" <td>0.38</td>\n",
" <td>0.53</td>\n",
" <td>2</td>\n",
" <td>157</td>\n",
" <td>3</td>\n",
" <td>0</td>\n",
" <td>1</td>\n",
" <td>0</td>\n",
" <td>sales</td>\n",
" <td>low</td>\n",
" </tr>\n",
" <tr>\n",
" <th>1</th>\n",
" <td>0.80</td>\n",
" <td>0.86</td>\n",
" <td>5</td>\n",
" <td>262</td>\n",
" <td>6</td>\n",
" <td>0</td>\n",
" <td>1</td>\n",
" <td>0</td>\n",
" <td>sales</td>\n",
" <td>medium</td>\n",
" </tr>\n",
" <tr>\n",
" <th>2</th>\n",
" <td>0.11</td>\n",
" <td>0.88</td>\n",
" <td>7</td>\n",
" <td>272</td>\n",
" <td>4</td>\n",
" <td>0</td>\n",
" <td>1</td>\n",
" <td>0</td>\n",
" <td>sales</td>\n",
" <td>medium</td>\n",
" </tr>\n",
" <tr>\n",
" <th>3</th>\n",
" <td>0.72</td>\n",
" <td>0.87</td>\n",
" <td>5</td>\n",
" <td>223</td>\n",
" <td>5</td>\n",
" <td>0</td>\n",
" <td>1</td>\n",
" <td>0</td>\n",
" <td>sales</td>\n",
" <td>low</td>\n",
" </tr>\n",
" <tr>\n",
" <th>4</th>\n",
" <td>0.37</td>\n",
" <td>0.52</td>\n",
" <td>2</td>\n",
" <td>159</td>\n",
" <td>3</td>\n",
" <td>0</td>\n",
" <td>1</td>\n",
" <td>0</td>\n",
" <td>sales</td>\n",
" <td>low</td>\n",
" </tr>\n",
" </tbody>\n",
"</table>\n",
"</div>"
],
"text/plain": [
" satisfaction_level last_evaluation number_project average_montly_hours \\\n",
"0 0.38 0.53 2 157 \n",
"1 0.80 0.86 5 262 \n",
"2 0.11 0.88 7 272 \n",
"3 0.72 0.87 5 223 \n",
"4 0.37 0.52 2 159 \n",
"\n",
" time_spend_company Work_accident left promotion_last_5years sales \\\n",
"0 3 0 1 0 sales \n",
"1 6 0 1 0 sales \n",
"2 4 0 1 0 sales \n",
"3 5 0 1 0 sales \n",
"4 3 0 1 0 sales \n",
"\n",
" salary \n",
"0 low \n",
"1 medium \n",
"2 medium \n",
"3 low \n",
"4 low "
]
},
"execution_count": 7,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"Source.head()"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## DATA EXPLORATION"
]
},
{
"cell_type": "code",
"execution_count": 70,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"# Copying orginal data\n",
"xSource = Source.copy()"
]
},
{
"cell_type": "code",
"execution_count": 71,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"Index(['satisfaction_level', 'last_evaluation', 'number_project',\n",
" 'average_montly_hours', 'time_spend_company', 'Work_accident', 'left',\n",
" 'promotion_last_5years', 'sales', 'salary'],\n",
" dtype='object')"
]
},
"execution_count": 71,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"xSource.columns"
]
},
{
"cell_type": "code",
"execution_count": 72,
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
"<div>\n",
"<table border=\"1\" class=\"dataframe\">\n",
" <thead>\n",
" <tr style=\"text-align: right;\">\n",
" <th></th>\n",
" <th>satisfaction_level</th>\n",
" <th>last_evaluation</th>\n",
" <th>number_project</th>\n",
" <th>average_montly_hours</th>\n",
" <th>time_spend_company</th>\n",
" <th>Work_accident</th>\n",
" <th>left</th>\n",
" <th>promotion_last_5years</th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr>\n",
" <th>satisfaction_level</th>\n",
" <td>1.000000</td>\n",
" <td>0.105021</td>\n",
" <td>-0.142970</td>\n",
" <td>-0.020048</td>\n",
" <td>-0.100866</td>\n",
" <td>0.058697</td>\n",
" <td>-0.388375</td>\n",
" <td>0.025605</td>\n",
" </tr>\n",
" <tr>\n",
" <th>last_evaluation</th>\n",
" <td>0.105021</td>\n",
" <td>1.000000</td>\n",
" <td>0.349333</td>\n",
" <td>0.339742</td>\n",
" <td>0.131591</td>\n",
" <td>-0.007104</td>\n",
" <td>0.006567</td>\n",
" <td>-0.008684</td>\n",
" </tr>\n",
" <tr>\n",
" <th>number_project</th>\n",
" <td>-0.142970</td>\n",
" <td>0.349333</td>\n",
" <td>1.000000</td>\n",
" <td>0.417211</td>\n",
" <td>0.196786</td>\n",
" <td>-0.004741</td>\n",
" <td>0.023787</td>\n",
" <td>-0.006064</td>\n",
" </tr>\n",
" <tr>\n",
" <th>average_montly_hours</th>\n",
" <td>-0.020048</td>\n",
" <td>0.339742</td>\n",
" <td>0.417211</td>\n",
" <td>1.000000</td>\n",
" <td>0.127755</td>\n",
" <td>-0.010143</td>\n",
" <td>0.071287</td>\n",
" <td>-0.003544</td>\n",
" </tr>\n",
" <tr>\n",
" <th>time_spend_company</th>\n",
" <td>-0.100866</td>\n",
" <td>0.131591</td>\n",
" <td>0.196786</td>\n",
" <td>0.127755</td>\n",
" <td>1.000000</td>\n",
" <td>0.002120</td>\n",
" <td>0.144822</td>\n",
" <td>0.067433</td>\n",
" </tr>\n",
" <tr>\n",
" <th>Work_accident</th>\n",
" <td>0.058697</td>\n",
" <td>-0.007104</td>\n",
" <td>-0.004741</td>\n",
" <td>-0.010143</td>\n",
" <td>0.002120</td>\n",
" <td>1.000000</td>\n",
" <td>-0.154622</td>\n",
" <td>0.039245</td>\n",
" </tr>\n",
" <tr>\n",
" <th>left</th>\n",
" <td>-0.388375</td>\n",
" <td>0.006567</td>\n",
" <td>0.023787</td>\n",
" <td>0.071287</td>\n",
" <td>0.144822</td>\n",
" <td>-0.154622</td>\n",
" <td>1.000000</td>\n",
" <td>-0.061788</td>\n",
" </tr>\n",
" <tr>\n",
" <th>promotion_last_5years</th>\n",
" <td>0.025605</td>\n",
" <td>-0.008684</td>\n",
" <td>-0.006064</td>\n",
" <td>-0.003544</td>\n",
" <td>0.067433</td>\n",
" <td>0.039245</td>\n",
" <td>-0.061788</td>\n",
" <td>1.000000</td>\n",
" </tr>\n",
" </tbody>\n",
"</table>\n",
"</div>"
],
"text/plain": [
" satisfaction_level last_evaluation number_project \\\n",
"satisfaction_level 1.000000 0.105021 -0.142970 \n",
"last_evaluation 0.105021 1.000000 0.349333 \n",
"number_project -0.142970 0.349333 1.000000 \n",
"average_montly_hours -0.020048 0.339742 0.417211 \n",
"time_spend_company -0.100866 0.131591 0.196786 \n",
"Work_accident 0.058697 -0.007104 -0.004741 \n",
"left -0.388375 0.006567 0.023787 \n",
"promotion_last_5years 0.025605 -0.008684 -0.006064 \n",
"\n",
" average_montly_hours time_spend_company \\\n",
"satisfaction_level -0.020048 -0.100866 \n",
"last_evaluation 0.339742 0.131591 \n",
"number_project 0.417211 0.196786 \n",
"average_montly_hours 1.000000 0.127755 \n",
"time_spend_company 0.127755 1.000000 \n",
"Work_accident -0.010143 0.002120 \n",
"left 0.071287 0.144822 \n",
"promotion_last_5years -0.003544 0.067433 \n",
"\n",
" Work_accident left promotion_last_5years \n",
"satisfaction_level 0.058697 -0.388375 0.025605 \n",
"last_evaluation -0.007104 0.006567 -0.008684 \n",
"number_project -0.004741 0.023787 -0.006064 \n",
"average_montly_hours -0.010143 0.071287 -0.003544 \n",
"time_spend_company 0.002120 0.144822 0.067433 \n",
"Work_accident 1.000000 -0.154622 0.039245 \n",
"left -0.154622 1.000000 -0.061788 \n",
"promotion_last_5years 0.039245 -0.061788 1.000000 "
]
},
"execution_count": 72,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"corr = xSource.corr()\n",
"corr"
]
},
{
"cell_type": "code",
"execution_count": 73,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<matplotlib.axes._subplots.AxesSubplot at 0x2047f48fa20>"
]
},
"execution_count": 73,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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PAtHGmC2+MpYUoJMxxmNZVh9gA96LDilGrmjehFXrkrl/0Eg8HhjycHc+/eY7MrOyuC7p\nymCHV6QiIiK4/d5HGT/iETweD1e0v4YyZS/geFoqr0wdRe/B44MdYpGJiIigW/eePDFsCG6Pm8TE\njpQrV460tGNMmTyJocOGc8uttzPp2Wf4ZMnHlCxViv4DBrF9+zY++3QJ9erVZ8jgAQBce931tGp1\n+RleMTRERERwV7eHGPXEY3jcbtoldqFMufM5nnaMl6eMpd/Q0cEOsdBd3rIZa9at56H+Q8ADA3r3\n4oul35KZlcXVHRN5oNvdDHziadweD50S23F+2bJ0TryScc+9wCMDhmGzQf/eD+JwOKhUsQL9ho0k\nMrIEjRvUp0XT0EtGf+eIcHLVzYOY/9x9eDweGl32b0qWvpDM9KN89PowbnpgKpde+V8Wzx3Bsg9f\nwGa30/GOEdgd3rTlladvIMIZSfPEe4iJL3OGVyt+LmvZgh/WruPRvgPw4KHvo735cunXZGZm0qVT\nR3p2u48hjw/H7fbQMekqypUry4vTZnD8+HHmLljI3AULARg1cjg9u93Ls5Of58OPFhMTG8Pg/v2C\nPLvAsoXwHYfOxObx/J3csnBZllUTbyKdAziAIcCLQCqQjbe2vD1wAbAAby34/b6fUsBkIB1vUt2D\nE3XYLXxJ/jDgV2Av3ru31LMsqxPe1eo8vCvVj/jG9sJbOvJVvpryyXhrz13Afb7XWWCMaeGLfzlw\nqzFm12nmtwtIwLui/3t9ezTQ2xjzva+PAUYZY173Pe6PtzQnEm9pz8N431E4491XPnJawf+lFgPN\n1s8JdgjFxk67deZO/xClnUeDHUKxke6OOXOnf4jzPWeqPvzn+OLn8P6g4NloU8kEO4Rio9rFVrGo\nG/mh/eUByXEu+WJZ0OdXLJJyKVxKyr2UlJ+gpPwEJeUnKCk/QUn5CUrKT1BSfoKS8sArLuUrIc+y\nrGbAqd6fX2iMeamo4xEREREJN8Xl9oWBoKS8kBhjVgJtgx2HiIiIiIQeJeUiIiIiEhL0jZ4iIiIi\nIhIwWikXERERkZAQzrdEVFIuIiIiIiFB5SsiIiIiIhIwWikXERERkZCgWyKKiIiIiPwDWZZlx/tN\n843wftN8N2PM9nztdwB98X5L/Ky/+/00Kl8RERERkZBgs9sC8nMG1wNRxpiWwCBg4h/aJwBXAZcB\nfS3LKv135qakXERERERCgs1uD8jPGVwOLAEwxiwHmv6hfQNQCogCbIDn78xNSbmIiIiIyOmVBFLz\nPc6zLCt/CXgysAZIAT40xhz9Oy+ipFxEREREQkKQyleOAfH5HtuNMS4Ay7IaAl2AGkB14ALLsm7+\nO3NTUi4iIiIicnr/AzoDWJbVAtiYry0VyAQyjTF5wCHgb9WU6+4rIiIiIhISgvTlQe8CiZZlfYe3\nZvwey7JuB+KMMdMty5oGLLMsKwf4EXjt77yIknIRERERCQnBSMqNMW7g/j88vSVf+8vAy+f6Oipf\nEREREREJMq2Ui4iIiEhI+Au3LwxZ4TszEREREZEQoZVyEREREQkJdkdQPuhZJLRSLiIiIiISZFop\nFxEREZGQEKRbIhYJJeVhqNn6OcEOoVhY2ei/wQ6h2Gj/Xt9gh1B8hPGHhM5WeuW6wQ6h2DgaUz7Y\nIRQbl1f+MdghFBu5lAh2CPIH+qCniIiIiIgEjFbKRURERCQkhHP5ilbKRURERESCTCvlIiIiIhIS\nwnmlXEm5iIiIiIQEfdBTREREREQCRivlIiIiIhISwrl8RSvlIiIiIiJBppVyEREREQkJ4VxTrqRc\nREREREKDTeUrIiIiIiISIFopFxEREZGQoA96ioiIiIhIwGilXERERERCQjh/0DN8ZyYiIiIiEiK0\nUi4iIiIiISGca8qVlIuIiIhISFD5ioiIiIiIBIxWykVEREQkJIRz+YpWykVEREREgkwr5SIiIiIS\nEsJ5pVxJuYiIiIiEhjD+oKeScjlrbrebidNms33XbpzOCAb16kblChcW6JOVnU2fEeMY1Ksb1SpX\n9D+fsnU7L72+kKlPDy3qsIPivGYNSRjdj+VX3RXsUALO7fYw6u3P2br/MCUiHAy/JYmq55f2t3++\nfiuzvlgJNhtdLqnDHW0uAeCWCXOIiyoBQMWypXjqto5Bib8wud0eRr31GVv3H6JERATDb+1QcF+s\nM8z6fCXYoEuTutzRtom/7de0dG6bMIdpD95MjQvLBiP8QuV2u5kwYw7bdu2hhDOCwQ/cc8rzRe+R\nExj84L1Ur1yBvDw3Y19+ld37DmCz2ejf8y5qVq0cpBn8PSuWL2fevHk4HA6SkpLo2KlTgfbU1FTG\njxtHTk4OZcqWpU+fPkRFRZ1y3Geffcbnn30GQE5ODjt27GDuvHnExcUBMH3aNCpVrkyXLl2KfJ5n\n4na7eeGFF9ixcydOp5NHe/emYsUTfxOWr1hRYL6dOnY87ZijR48yecoUjqel4Xa76duvHxUrVGDV\nqlXMnTcPPB4urlWLXg8+iM1WPFdTV6xYzvx5c3E4HCQmdaBjx5OPi2fGjyMnJ5syZcryaJ/HvMfF\nKca5XC6enTiBg4cO4rDbefiRR6lSpQrjxo7hyJHfADh48CAJCXUYOGhwMKYrZymkknLLsu4GEowx\ng/5i/yjgTmPMzADGtBS43xiz5SzHPWSMmWpZVkegqjFmekACDIBvV6whJzeHaeOGk2y2M/XVeYwd\n0sffvmX7Dp55+TUO//pbgXFz3/2QT5b+j6ioyKIOOSgu6tuNSndeS156ZrBDKRJfJm8nx5XHnEdv\nZ8Ou/Ux8/2sm33c9AHluN5M//JZ5j91JTKSTG8a+RucmCcRElsCDh1ceuiXI0ReuLzduI8flYk6f\nO737YtFSJne/AfDtiw++YV6/u7z7YswsOjetQ+m4GHLz8nhq4adEOkPq1Pynvln5Azk5ucwYM4zk\nrT8yZfYCxg/q7W/fvH0nz0x/nUP5zhfLVq8DYNroofyQvIVp8/6vwJjizuVyMX36dJ6bPJmoqCj6\n9e1L8xYtKF36xIXZ/HnzaNuuHYmJibz55pssXryYa6655pTjEhMTSUxMBOCFF14gKSmJuLg4Uo8e\nZcLEiezbu5d/33RTsKb7p77//ntycnOZ9OyzbN6yhRkzZzL8iSeAE/tp8nPPERUVRd9+/WjRvDmb\nNm065ZhXZs2iXdu2XHHFFaxfv569e/ZwXqlSvDJrFuPGjqVUqVK89dZbpB47xnmlSgV55idzuVzM\nmD6NSc9NISoqiv79HqN58z8cF/Pn0qZtWxITk3jzzYUsXvwx11xz7SnHbdmyhby8PCZOnMTaH37g\n9dmvMXTY4/4EPC0tjcGDB9K9R49gTTkgiusFV2EI3/cAvMoD3YIdxGkMAzDGLAmlhBxgw+atNG/c\nEID61sVs+XFngfacXBejB/WmaqUKBZ6vVP5CRg0MnT+s5ypjx27W3PxwsMMoMmt37KNVQnUAGlav\nSMqeg/42h93Ou4PuIT46kqPpWbg9HpwRDsz+w2TluOj50tt0e+FNNuzaH6ToC9faHXtpVacG8Pu+\nOOBvc9jtvDvkPt++yMTt9u4LgGcXLeXmy/7FBaXighJ3IKzfvI3mjRsAUL92Tbb8uKtAe67LxZgB\nD1Et3/miTfNLGHj/3QAcOPwL8bExRRVuodizZw8VK1YkPj4ep9NJvXr1SE5OLtAnJSWFJk2875A0\nbdqUdWvXnnHc1q1b2f3TT3Tq3BmAzKws7rjjDq5s377oJneW8s+zTkIC27Zt87edbr6nG7Np0yZ+\n+eUXBg8ZwldffUXDhg3ZvHkz1atXZ8bMmfTr35/zSpculgk5wJ49u6mQb75169UnOXljgT6bUlJo\n0qQpAE2bXsq6dWtPO65SpUrkufNwu91kZGQQEVHwYn7u3Dlcc821lCkT+u+4/VOE5HKMZVljgKZA\nWWC9MeYey7IuAyYCuUAGcBMwFKhrWdYTxpgnT7OtNsAoIA/4EegJLAQmG2O+tiyrKfA48F9gJnAe\nUBF4wRjzUr7tjAAOGGNetiwrAXjZGNPWsqybgF6AE/AAN/heo4xlWS8CK/Gt/luW1Re4FXAB3xhj\nBvq2WwO4AKgG9DHGfHLue/HvS8/MJDbmxB9Ju92OKy+PCIc3sWhYp/Ypx7VteSk/HzpcJDEWBwfe\n/ZToapWCHUaRSc/KJj76xLsgDpsNV56bCIf32j/CYefzDdsY8/YXtK5bg+gSTqKdEXRt15QbWzTg\np8NH6DX9Hd4bfK9/TKhKz8ohPuoM+2L9Vsa8/Tmt615EdAkn761IpnRcDJfVqcGsz1cEK/RCl5GZ\nSVxMtP+x44/ni4RapxwX4XDw1PMz+HrFD4zq16tIYi0sGenpxMTG+h9HR0eTnp5esE9GBrG+Pr+3\nn2ncmwsXcvsdd/gfly9fnvLly7N69epATeWcZWRknPT3Ii8vD4fDQfof2vz74TRjDh48SFxcHGNG\nj2buvHm8+dZbVK5cmQ0bNjD1+eeJjo6mX//+1ElIoHLl4lfu5J1Xwd9vxhmOiwz//jh5XHR0NIcO\nHqRnj+4cO5bK8BEn0pyjR4+yft06unfvGeBZFT19eVDxUgI4YoxJxJuYt7AsqxJwPfAm0AZ4CSiN\nN9ne9CcJuQ2YAdxojGkD7APu9j3X1dftHt/ji4EFxpgkIAl47C/GWxvoYoy5HNgEdDDGjAJ+M8Y8\nmC+WBsB/gFa+n1qWZV3ta842xnQCegN9CLLY6GgysrL8jz0et/8PrPxzxUZFkp6V43/s9nhOSq6v\naliLz0b0JDfPzQerNlHtgtJ0aVIHm81G9QvKUCo2ml+OHS/q0AtdbFQJ0rPPsC8a1eazkQ+Qm5fH\nBytTWLRiI8vNLu57fgFm3yGGvvFxWOyLmOhoMjJPnC/cbs9fPl88/nB3Fj4/lrEvvUZmVnagQiw0\ns2fPZuCAAYwcOZKMjAz/85mZmcTlS7YBYmJiyMzM9LfHxsURExtL5mnGHT9+nL1799KoUaMimEnh\nyT9P8NaYO3y//9iYGDLytfn3w2nGlCxZkhYtWgDQvHlztm3bRsn4eGrVqkWZMmWIjo6mQf367Nix\no4hm99e8Pvs1Bg3sz5MjR5x0XMTGFXxX7KTjIvbk/fH7uEXvvsMllzRhxsxXmPrCS0x6dgI5Od7z\nzrJl39KmbTv/vg4nNrstID/FQSgm5R7gAsuy5gPTgDi8q9Cj8a5gf4F3lTz3L2zrfKAC8KavNjwJ\n72r0J0Azy7LKAK2BxcBB4HrLst7AW3ri/JPt5v/tHgJmW5b1KtDwT8YlAMuNMbnGGA/wLVDP17bW\n9989QNRfmFdANahTm+VrvDWfyWY7F1WtEuSIpDhoXKMiyzZ7S5k27NpPrQrl/G3Hs7K5d+pCclwu\n7HYb0SWc2G02Fq1IZuL7XwNwKPU46VnZlCsZ+qUbjWtUYtkmb2KwYdd+alU83992PCube6fML7gv\n7DZefeQ2Zj1yG688fCtWpQsYdWfnsNgXDRNq8f0PGwBI3vojNaudeQVz8dLveP2dDwGIiiyB3W7D\nHgJ1pF27dmXc+PHMmz+fn/fvJy0tjdzcXJKTk0moU6dA37p167Jq1SoAVq9eTf169ahSpQr7TzMu\nOTmZf/3rX0U+p3NVt25dVvlW8jdv2UKN6tX9baeab52EhNOOyb/PkjdupFq1alx88cX89NNPpKam\nkpeXx5YtW6hatWqRzvFM7up6N2PHPcPceQv4+ef8891IQkLB46JO3XqsWrUSgNWrV1Gvfn2qVKnK\n/v37ThoX57uQA4iPj8flcuF2uwFYt24tTZs2LdqJyjkLxfKVdsA2Y8wtlmWdj7ccxAbcCbxmjOln\nWdZgoAfwKn9+4fELsBe4zhiTalnWtcBxY4zbsqy38K64LzLG5PlKS743xrxkWVY74I8fc8/Cm+AD\nXAJgWVYpYCTw+xniM04k7H/8C7MF6GtZVgTeUporgNeBRngvRIqNK5o3YdW6ZO4fNBKPB4Y83J1P\nv/mOzKwsrku6MtjhSZBc2aAW35ufuGvyPDweePK2Dny8ZjMZ2bnc1KohnS+pwz3PLyTCYad2xfPp\n0rQObreHx+cvoeuU+diwMfLWDiFfugJwZcPa3n0xaS4ePDx5eyc+Xr2JjJxcbmrViM5N63LPlAVE\n2H/fF3UboTxQAAAgAElEQVSDHXLAtGl+Cas2pNBjyNN4PDC01318+u33ZGRmc31S21OOaduiCaOm\nvsIDw8bgysuj9z23ERlZomgDPwcRERF0796dYUOH4vF4SExKoly5cqSlpTH5uecY9vjj3HrbbTw7\ncSJLliyhVMmSDBg48LTjAPbu3Uv58uWDPLOz16pVK9auXctjffvi8Xh4rE8fvvrqKzKzsujcqRPd\nu3dn6LBheDwekhITKVeu3CnHAHTv1o3Jkyfz0ccfExsTw4ABA4iPj+fuu+9m2OOPA9C6dWuq50v8\ni5OIiAi6de/B48OG4PZ4SErMd1xMnsSwYU9w66238eyzE/hkyRJKlirJgAGDTjvu+htu5LlJzzKg\nf19yc1107XoPUVHedbt9e/dSvnyFM0QUosK4fMXm8RSrfO9P+e6+0gJoAmTiTVaj8ZZ0uIDJQDrg\nxpuU/wwsBz4xxgw8zTaTgCfwJu/HgLuMMYcsy6oC7ABqGWN2+RLx54FfgaNAfaAu3lX1+4FsvOUz\n6cAaX4zt8NanV/fFdwT4zhgzyrKsr/CWy3zOiZryx4BbfLEsw1siM5xT1Kr/2X46vGll6PxSA2hl\no/8GO4Rio/17fYMdQvERxif0s5VeOXwvBs7W0ZjQS3gDxRZCeUGguUOyoCAwLq5Zo1i8XfXrkz0C\ncoCWfWJ60OcXUkm5/DVKyr2UlJ+gpDwfJeV+SspPUFJ+gpLyE5SUn1BckvLfnu4ZkAO0zLBpQZ9f\nKJavnDXLspoB40/RtDD/HVRERERERILhH5GUG2NWAm2DHYeIiIiI/H02W/i+e/GPSMpFREREJAwU\nk9sXBkL4Xm6IiIiIiIQIrZSLiIiISEjQN3qKiIiIiEjAaKVcREREREKCLYxrypWUi4iIiEhoCOO7\nr4TvzEREREREQoRWykVEREQkJIRz+YpWykVEREREgkwr5SIiIiISGsL4lohKykVEREQkJNhsKl8R\nEREREZEA0Uq5iIiIiISGMC5fCd+ZiYiIiIiECK2Ui4iIiEhI0C0RRUREREQkYLRSLiIiIiKhwRa+\n68lKykVEREQkNKh8RUREREREAkUr5SIiIiISEmxhXL4SvjMTEREREQkRWikPQzvtVrBDKBbav9c3\n2CEUG19cNzHYIRQb7ed2D3YIxUaJrGPBDqH4iCkf7AiKDYfHFewQig2P3RnsEOSPwrimXEm5iIiI\niIQEm77RU0REREREAkUr5SIiIiISGmzhW76ilXIRERERkSDTSrmIiIiIhIYwrilXUi4iIiIioUHl\nKyIiIiIiEihaKRcRERGRkKBbIoqIiIiISMBopVxEREREQoMtfNeTw3dmIiIiIiIhQivlIiIiIhIa\n7OF79xUl5SIiIiISEmwqXxERERERkUDRSrmIiIiIhIYwLl/RSrmIiIiISJBppVxEREREQkMY15Qr\nKRcRERGR0GAr+vIVy7LswItAIyAb6GaM2X6KftOB34wxg/7O64Tv5YaIiIiIyLm7HogyxrQEBgET\n/9jBsqyeQINzeREl5SIiIiISGuz2wPz8ucuBJQDGmOVA0/yNlmW1ApoD085paucyWEREREQkzJUE\nUvM9zrMsKwLAsqwKwHDgoXN9EdWUi4iIiEhoCM4HPY8B8fke240xLt//3wyUAz4GygMxlmVtMca8\ndrYvoqRc/pYfVn7LooUzcTgcXHHVtbRLuv6U/Za8P5/UI79yS9eCF5CvvDCauLiSJz0fatxuD6Pe\n/pyt+w9TIsLB8FuSqHp+aX/75+u3MuuLlWCz0eWSOtzR5hIAbpkwh7ioEgBULFuKp27rGJT4i9J5\nzRqSMLofy6+6K9ihBJzb7WHUh8vYeuA3SjgcDL++NVXLljqp35PvfUvJ6EgeTWpGbp6b4e9+zf6j\naeS43PRo05i2daoFIfrAcLvdjH31Lbbt3o/TGcHj3W6lSvnz/e1LvlvD/CVf47DbubhKBQbdczP2\nM7+lXGytWL6cefPm4XA4SEpKomOnTgXaU1NTGT9uHDk5OZQpW5Y+ffoQFRX1p+OOHj3KIw8/zKjR\no6lSpQpjx4zhyJEjABw8eJCEhAQGDR5cpPM8G263m+dffJkdO3fidDrp88hDVKpY0d/+/YqVzJ2/\nAIfDQYfEq+jcsQMul4uJz03h4KFD5Obmcvst/6Fli+b+MV8u/Zr3PviQyROfCcaUzlphHxcLFy5k\nxfLluFwuulx9NR06dPBva/q0aVSqXJkuXboU6RwDLjj3Kf8fcA3wpmVZLYCNvzcYY6YAUwAsy7ob\nSPg7CTn8A5Nyy7KWAvcbY7YEOY5/AdcaY548izFlgI7GmHmBi+zMXC4Xc1+ZxJMTXyMyMponB3Xj\nkmatKXVeWX+fnOwsZk4dxY5tm7i0ZbsC479c8g57f9pOQr1Lijr0Qvdl8nZyXHnMefR2Nuzaz8T3\nv2byfd4LlDy3m8kffsu8x+4kJtLJDWNfo3OTBGIiS+DBwysP3RLk6IvORX27UenOa8lLzwx2KEXi\ny827vMdFj+vYsOcgE5esYPIdSQX6vLVqM9sO/kaT6hUA+Gj9Ns6LiWL0Te1IzcjiPy++E1ZJ+dI1\nG8nJdfHqyD5s3LaLSXMX8Wzf7gBk5eTw0lsfsXDsIKIiSzBk6my+XZtCmybn9JmpoHG5XEyfPp3n\nJk8mKiqKfn370rxFC0qXPnHBPn/ePNq2a0diYiJvvvkmixcv5pprrjntOJfLxfNTplAiMtK/jd8T\n8LS0NAYPGkSPnj2LfK5n47vvl5OTk8Pkic+wecsWps+cxcgnhgHefTZtxkyen/QsUVGR9Ok/kJbN\nm7Fy9RpKloxnYL/HOJaWxgMP9/Yn5dt//JEln36Gx+MJ5rT+ssI+Lvbs2cPmTZuYMHEi2dnZ/N//\n/R8AqUePMmHiRPbt3cu/b7opWNMNN+8CiZZlfQfYgHssy7odiDPGTC+sFwndZYgQZ4xZdzYJuU9D\n4NpAxHM29u/dyYUVKhMbV5IIp5PadRqxJWVtgT65uTm0vrIL1958T4Hnt27ewI9bU2jX4caiDDlg\n1u7YR6uE6gA0rF6RlD0H/W0Ou513B91DfHQkR9OzcHs8OCMcmP2Hycpx0fOlt+n2wpts2LU/SNEX\nnYwdu1lz88PBDqPIrN19gFYXVwGgYZULSdl3uED7ut0H2bj3EDc1reN/LqneRfRq3wQAD97jJ5ys\nMzto2cg73wa1qrN55x5/W4mICGaNeJSoSO+7R3l5biKdzqDEWRj27NlDxYoViY+Px+l0Uq9ePZKT\nkwv0SUlJoUkT7++7adOmrFu79k/HzZw5k85dulC2TJmTXm/uG29wzbXXUuYUbcVJ8qbNNG3iXYyp\nk5DA1u0n7ii3e88eKlaoQHx8nHfudeuyMTmFKy6/jK533uHt5PHgsDsAOHbsGLNmz+GBHt2KfB5/\nV2EfF2vWrKF6jRo8/dRTjBwxgmbNmgGQmZXFHXfcwZXt2xf5HIuEzR6Ynz9hjHEbY+43xrQyxrQ0\nxmwxxsz7Y0JujHnt794OEUJkpdz3dkBnIAaoCYwD7sa34m1Z1v1463heAxYCe4DqwAKgPtAY+MgY\nM8S3ySctyyqH916TdxljDluWNQZoDTiAZ40xb/lW1Q8BZYAOxpi8U8S2FNgCJOC9errF9//jgBxg\nOnAAeBrIAn4F7gX+5Yv/VsuybgYeA/KAZcaYQZZlnQ/MBs7zbfcuYCjQyLKsHoV5ZXa2MjPSiYmJ\n8z+Ojo4lM/14gT6xcSVp0LgF33zxof+5o7/9wqIFM+g95BlWLPu8yOINpPSsbOKjT6xcOWw2XHlu\nIhzef+ARDjufb9jGmLe/oHXdGkSXcBLtjKBru6bc2KIBPx0+Qq/p7/De4Hv9Y8LRgXc/JbpapWCH\nUWTSs3OJ95UnATjsJ46Lw2kZvPzVGibdlsSnyTv8fWIinb6xOfRd8DkPtW960nZDWXpmFnHRUf7H\ndrsNV14eEQ4HdrudsqVKArDgk2/IzMqmeQMrWKGes4z0dGJiY/2Po6OjSU9PL9gnI4NYX5/f2083\n7rPPPqNUqVI0adKENxcuLLCdo0ePsm7dOrr36BHAGRWO/HMGsNvt5OXl4XA4yMjILNAWEx1NekYG\n0dHR/rFPjR7H3XfdSV5eHhMnP8/93e6jRGSJk16nuCrs4+LYsWMcOniQESNHcvDgQUaOGMH0GTMo\nX7485cuXZ/Xq1UUzMSk0IZGU+5QyxnSwLKsW8AHeRPdULgKSgGhgJ1AJyAB+An5Pyt8xxiywLOtB\nYLBlWZ8BNYwxl1uWFQUs9z0HMN8Y8+4ZYvvOGHO/b3tDgHfw3s+yuWVZNmAHcLkxZp9lWb2BYcCH\n4C9JGQk0NcZkWJY1x7KsROBq4H1jzMu+W+00A0bhTeSDkpC/9cZLbN28nj27tlOzdj3/85mZ6cTE\nxv/JSK8V//uCtLRUJjz5KKlHfiUnO4sKlatzRfurAxl2QMVGRZKeleN/7PZ4Tkqur2pYiyvrX8zj\n85fwwapNdG6SQJVy52Gz2ah+QRlKxUbzy7HjlC9dsqjDlwCJjXSSnp3/uMB/XHyavIOjGdk8NGcJ\nvxzPICvXRY1y53HdJbU5kHqcPvM+4z/N6tK50cXBCj8gYqOjyMjK9j/2uD1EOBz+x263mynz3+en\nA4cZ/+i92ILwBSHnavbs2WxKSWHnzp1YCQn+5zMzM4nLl1QBxMTEkJmZSWRkJJmZmcTGxRETG0tm\nRsZJ4957/31swLq1a9mxYwcTJ0zgieHDKVOmDMuWLaNt27Y48u3L4ur3Of/O4/b4446JiSYjX1tG\n5okk/dDhw4x8egzXdOnElW3bsMVsZf/+/Ux58SVycnLYvXsPL02fwQM9uhfthP6iQB0XJePjqVK5\nMk6nk8qVK1OiRAlSU1M577zzimxuQRGC54a/KpSS8nW+/+4Bov7Qlv83tMMYk2pZVjZw0BjzG4Bl\nWfmLzr7x/fc7oAveBL+Jb9UbwIl3pR3A/IXYvsy3vev+MK4ccMwYsy/fa4/Gl5QDFwPnAx9blgXe\nT/fWBCxgFoAx5jvgO8uy2v6FWALm5jsfALx1cYMeuoXjaalERcVgNq2j8w13nnF8h2tuocM13jrq\nb774kJ/37grphBygcY2KfJ2ygw6NLTbs2k+tCuX8bcezsnlk5iJevv/flIiIILqEE7vNxqIVyWz7\n+ReG3nQVh1KPk56VTbmScX/yKhJqGlctz9fmJzo0qMmGPQepdeGJmtE7Wtbnjpb1AXjvh63s/OUo\n111Sm1+PZ3D/a4sZfHUrmtcMv3cVGtWuwbc/pJDYojEbt+3i4ioVC7SPfuVNnM4IJva5L2Q/4Nm1\na1fAe468v2dP0tLSiIqKIjk5mRv//e8CfevWrcuqVatITExk9erV1K9XjypVqrB///6Txl3eurV/\n3MABA3jo4Yf9pSrr1q7l1ttuK7pJnoN6deuwfMVK2rS+nM1btlC9+onPTFStUoV9+/dzLC2N6Kgo\nNiancPONN3DkyBEGDxvOQw/0pPG/GgGQYNVmxksvAHDg4EFGj3um2CbkELjjwlmiBO+99x433Hgj\nv/32G1lZWcTHn3mBTIqvUErK//hJjiygAt7SkUuAfafpdyrNgEV4y1WSfdv4yhjTw/dVqo8DP/r6\nuv/C9poAe4HLgJQ/jPsFKGlZVgVjzM9AG2BrvrE78V5oJBpjcn2lOuvwJuWXAusty7oC78XDRxSD\nzwFERERw+72PMn7EI3g8Hq5ofw1lyl7A8bRUXpk6it6Dxwc7xCJzZYNafG9+4q7J8/B44MnbOvDx\nms1kZOdyU6uGdL6kDvc8v5AIh53aFc+nS9M6uN0eHp+/hK5T5mPDxshbO4R16co/0ZV1qvP9j3u5\na/p7eIAnb2jDx+u3k5GTy02X1jnlmJlfr+NYVjbTl65l+lLvZzReuKsjUc5QOk2fXrumDVmx0XDv\niEl4PDC85+0s+d9qMrJzqFujCu99vZzG1kXcP9qbbN3W4QraXdooyFH/PREREXTv3p1hQ4fi8XhI\nTEqiXLlypKWlMfm55xj2+OPcetttPDtxIkuWLKFUyZIMGDjwtOP+zN69eylfvnwRzezcXNayBT+s\nXcejfQfgwUPfR3vz5dKvyczMpEunjvTsdh9DHh+O2+2hY9JVlCtXlhenzeD48ePMXbCQuQu8pTuj\nRg4nMt8HXkNFYR8X5cqVIzk5mUd798bj8fBgr14h8Y7JOQvRi/a/whYKn1rOd4uZQb7yki3Ag3i/\n5nQ33oR8N96a8gXGmBa/9zPGVPdt44AxprxvNXwX3pXwY0BX4KhvW5cCccC7xpgn/8qdWnx9juCt\nO08H/ov3a1bvN8bc6utzFfAU3kT9CN56+PqcqCm/0zcfhy+2e4BYvCvl8XgvNO7DWwP/OTDNGPPc\n6WJauSW1+P9Si0DDHQvP3Okf4ovrTvpG4H+s9nOL74paUcu9qH6wQyg2DpWpHewQio0Id26wQyg2\nXPbQ/cBxYat50UXFom4k66OXA5LjRHW5P+jzC4mkvDj7u7dY9NWN/9cYU+g3bVZS7qWk/AQl5Sco\nKT9BSfkJSspPUFJ+gpLyE5SUB154vC8aYJZlVQVeP0XT139ze02ACXg/uCkiIiIif0VwvtGzSCgp\n/wuMMbuBtoW4vTVAaBZLioiIiEihU1IuIiIiIqEhjD/oqaRcREREREJDGN+nPHwvN0REREREQoRW\nykVEREQkNITxBz3Dd2YiIiIiIiFCK+UiIiIiEhrCuKZcSbmIiIiIhIYwvvtK+M5MRERERCREaKVc\nREREREKCJ4zLV7RSLiIiIiISZFopFxEREZHQoFsiioiIiIhIoGilXERERERCQxivlCspFxEREZGQ\noA96ioiIiIhIwGilXERERERCQxiXr4TvzEREREREQoRWykVEREQkNIRxTbmSchEREREJDfbwLfII\n35mJiIiIiIQIrZSHodLOo8EOoXgI46vps9V+bvdgh1BsfHHHjGCHUGy0WPtqsEMoNjye8H1L/GyV\ncGUGO4Riw1XCGewQ5A90S0QREREREQkYrZSLiIiISGgI41siKikXERERkZDgCeOkPHxnJiIiIiIS\nIrRSLiIiIiKhQR/0FBERERGRQNFKuYiIiIiEhHCuKVdSLiIiIiKhQeUrIiIiIiISKFopFxEREZHQ\nEMblK+E7MxERERGREKGVchEREREJCR7VlIuIiIiISKBopVxEREREQkMY15QrKRcRERGRkOBB5Ssi\nIiIiIhIgWikXERERkZAQzt/oGb4zExEREREJEVopFxEREZHQEMYr5UrKRURERCQk6D7lIiIiIiIS\nMFopFxEREZGQEM4f9FRSLn/LihXfs2DeXOwOB4lJHejYsXOB9tTUVCaMH0N2Tg5ly5Sld5++REVF\n8fXSr3hv0Ts4HA6qVa/Bg70exm4P3X9gbreHUW99xtb9hygREcHwWztQ9fzS/vbP1xlmfb4SbNCl\nSV3uaNvE3/ZrWjq3TZjDtAdvpsaFZYMRfqFyuz2M+nAZWw/8RgmHg+HXt6Zq2VIn9XvyvW8pGR3J\no0nNyM1zM/zdr9l/NI0cl5sebRrTtk61IERftM5r1pCE0f1YftVdwQ4l4NxuNxNmzGHbrj2UcEYw\n+IF7qFzhwgJ9srKz6T1yAoMfvJfqlSuQl+dm7MuvsnvfAWw2G/173kXNqpWDNIPCtWLFcubPm4vD\nf+7sVKA9NTWVZ8aPIycnmzJlyvJon8eIiooCICsri2FDh9D70T5UqVIlGOGfE7fbzaSXX+HHXT/h\ndDrp/1BPKlco72//buUaZi98G4fDQeer2nF1UnsWf7GUJV9+DUBOTg7bd/7EO69NIz4uFoCpM2dT\npVJFruuUGJQ5na0Vy5czb948HA4HSUlJdOx08u9//Lhx5OTkUKZsWfr06UNUVNQpx+Xl5TFl8mT2\n7tuHDXjo4YepXr06P27fzogRI6hYsSIAnbt0oU2bNkGYrZyt0M2GAsiyrCssy2ro+/8DZzm2umVZ\nywMTWfHgcrmYOX0aTz09hrHjJvDJ4o85cuRIgT4L5r9Bm7ZXMv6ZZ7moZk2WLP6I7Oxs5rz+GqPH\nPsMzE58jIyOdVStXBGkWhePLjdvIcbmY0+dOel9zBRMXLfW35bndTP7gG6b1+g9z+tzBwv+t5cjx\nDABy8/J4auGnRDrD57r4y827yHHlMafHdfROupSJS07+3b61ajPbDv7mf/zR+m2cFxPFa92u5aW7\nOjLmo/8VZchBcVHfbjSY9jT2qMhgh1Ikvln5Azk5ucwYM4wH7ryZKbMXFGjfvH0nDz4+ln0HD/mf\nW7Z6HQDTRg+lx203Mm3e/xVpzIHicrmYMX0aTz09mrHjnmHJKc6d8+fPpU3btox/ZiIX1azJ4sUf\nA7Bt61YGDujPzwd+DkbohWLZilXk5Oby4vin6XHXbbw0a46/zeVyMfWV2UwYOZTJo0bwwSef89vR\no3Rq35bJo4YzedRwrJoX8Uj3u4mPi+Vo6jEGjBzDd6vWBHFGZ8flcjF9+nSeHjWKcePHs3jx4pN/\n//Pm0bZdO56ZMIGaNWuyePHi045bscJ7jp04cSJ3de3K67NnA7Bt+3ZuuOEGxo0fz7jx48MvIbfZ\nAvNTDCgpP7V7gYrBDqK42rNnNxUqViQuPh6n00ndevVISd5YoM+mlBSaNGkKQJOml7Ju3VqcTifP\nTHzOv+qTl5eHs4SzyOMvTGt37KVVnRoANKxekZQ9J67hHHY77w65j/joSI6mZ+J2e3BGOAB4dtFS\nbr7sX1xQKi4ocQfC2t0HaHWxd/WuYZULSdl3uED7ut0H2bj3EDc1reN/LqneRfRq7333wIN3n4W7\njB27WXPzw8EOo8is37yN5o0bAFC/dk22/LirQHuuy8WYAQ9RrVIF/3Ntml/CwPvvBuDA4V+Ij40p\nqnAD6vdzZ7z/3Fmf5D85dzb1nTsBcnNzGfb4E1SpHLrvGGzcZGjWuBEA9azamO0/+tt+2ruPShXK\nEx8Xh9MZQYM6CWxI2exv37LtR3bu2cs1Ha4CIDMri7tvvYnEtq2LdhLnYM+ePVTM9/uvV68eycnJ\nBfqkpKTQpIn3nNi0aVPWrV172nGtWrXikd69ATh08CCxsd53D7Zv28bKVavo378/z02aREZGRtFO\nNMA8NntAfoqDMy7TWZZVEpgJnIc3UV0I3A7UNcZ4LMuaCnwBbAemADbgV7yJbWNgHJADTAcygV6A\nE+/f4Bt8fV8AmgIHgBrANUCeb0y0b1wPY8ye08Q4ArgYKAeU9W3v30BtoKsxZrllWX2BWwEX8I0x\nZqBvXA3gAqAa0Af4BegIXGJZ1ibf9ksBPwC1jTF5lmWNA9YYY948zW4737KsRUAFYIMxprtlWdWB\nWXj3uQd4xBiz3rKsA8aY8r7XWQC8DFT37T87MBy40ze/aGCyMWYOQZSRkUFsTKz/cXR0DOnp6Sf1\nifGdIGKiY8hIT8dut1O6tLe044P3F5GVmUnjxk0IZelZOcTnW/F02Gy48txEOLz/wCMcdj5fv5Ux\nb39O67oXEV3CyXsrkikdF8NldWow6/PQfqcgv/TsXOKjSvgfO+wn9sXhtAxe/moNk25L4tPkHf4+\nMZFO39gc+i74nIfaNy3yuIvagXc/JbpapWCHUWQyMjOJi4n2P3bY7bjy8ohweC9QGybUOuW4CIeD\np56fwdcrfmBUv15FEmugnXzujCbjFOfO35Or/O1169UrukADJD0jg7h8F1j2fMdCekYmcTEn2mKi\nozmefiKZnPv2u9x9y7/9jytceAEVLryAFT+sK5rgC0FGerr/7yJ4f7+n+tuZ//efnp7+p+McDgcT\nJ0zgu+++Y+jQoQDUtiw6dOxIrVq1WDB/PvPmzqVb9+6Bnp4Ugr9yaXAxsMAYkwQkAXcBG4DWlmVF\nAu2AD4AZQC9jTFvgY2CAb3yUMaa1L5GsDXQxxlwObAI6ANcCZY0xzYD7gN8L5SYAU3zbmwCMPUOc\nmcaYjsD/AZ2NMdf4xtxqWVYD4D9AK99PLcuyrvaNyzbGdAJ6A32MMWuAJcAAY8xuAGNMKrAM6GBZ\nlgPoBCz6k1hKAvcALYH2lmVd4JvDZGPMFb7XeuUM8zni208rgSuAG/FeLOSdYdz/s3ff8VFV+f/H\nX2mkAlJUQlfEk4QmooBYQCURRFf9ru7aBQUE6b0FBAWkKFV6UVAQ0d/u6lpwWQsrSpWahBy6UkQs\nlJBMSJn5/TFDSDBUmUwmvp+PRx4w95x753Pu3Jn5zGfOveM1by14g4ED+vLyiBfJyDj9QuJwZBAZ\nFVmgb0REBA6H+wU1w5FBZKS7Iux0Opk3dzYbN25g0JBhBBSTr4wuVWRYKdJPZuXddrpceQn5KS0b\nXM/yEZ3Jzs3l32uT+dearay2e3lu6hLsgcMMefsTfjl+oqhDv+wiQ0PO2Bfk7Yv/JO3maMZJur61\njPlfb+LTLTv5YMN2AA4dO0H7+R9zX4Pa3NvgOp/ELt4TER5OhiMz77bT6cpLyM9naLcOvDt1DGNm\nvIkj86S3QvS6hQveZOCAfrw0YniBqqXD4SAyquC3Ze7XTsfp9siS821aZEREwWPBdfpYiIwIJyPT\nkdeW4XAQ5UlE006ks+/AjzSsX7doA75MFixYwID+/RkxYsTvHv+oyMLeO/M9/lFRRERG4jjHen36\n9mXO3LlMnjKFzMxMmjVrRu3a7g+7zZo1Y9euXZQkLgK88lccXEhS/hPwoDHmbSARd5V7DvAM8ADw\nobU2B4gFphtjvsJd5T1VCrL5tnUYWGCMeQOo79lWLLAKwFr7M5Dq6VsPGOzZ3jCg4JlBv7fB8+9R\n3Ak/wBEgDIgBVltrs621LuBr4FTZYaPn332evmczB2iLOyH/r7U26xx9d1trj1hrnZ4xR3jG+T/P\nODdx+sNHfvmPCuvpmwb0xP2twbuAzyaiPvVMO8aMfZW3F7/LwR8PkpZ2nOzsbJKSthITE1egb2xc\nHe5F6N0AACAASURBVNavWwfAd+vXUaeu+8X09amTycrKInHo8LxpLP6s4TVVWJnirvxu2XuQ2pWv\nzGs7kXmSZ6e8Q1ZODoGBAYSXCiEwMIA3uj/G/O6PMa/bo5gqVzHqyXupWMb/33gbVq/Eyh3uL7O2\n7PuJ2lefPuH1iVvqsqTzQ8x77j6evf0GWte/jgduvJ5fT2TQ6c1P6ZnQmIcaGV+FLl5UP6Y2qzZs\nASBp+y5q1Tj/9ItPv/qWhf/4CICw0FIEBgYQ6Mcf4J9+pi1jxo5n0eIl/PjjQdLS0vK9dsYW6Bsb\nV4d169YCsD7fa2dJUDfWsPo791tust3OtTWq57XVqFqF/QcPcTztBNnZOWxJ2UadmOsB2JK8jRv9\nNCEHeOaZZxg7bhyL33mHHw/mf/yTiIkt+PjHxcWxzvPeuX79eurWqUO1atU4WMh6n3/+Oe+++y4A\nYaGhBAYEEBAQQGJiIta6U69NmzZxXe3Cv42S4udCzjLrA6yy1s4wxtwJtME9XWUc7sT71PeKFnja\nWvuDMeZW3FM3AJyQNwVkBHDqWbgcdxKaBDwFTDLGlMNdTQd3cv6qtfZbY0wMcL4zFVznaEsF+hhj\ngnFXmu8AFgINzrKekzM+sFhrVxpjJuOu5ideQizbgNuBD40xN+CeqgMQYoyJwj3FJ//3k6f2WzTQ\nyFr7kDEmDNhnjHnL80HIJ4KDg2nf4XmGJQ7G6XISH9+KihUrkpZ2nCmTJzIk8UX+/ujjTJwwns+W\nfUKZsmXp138gO3fuYPl/llGnTl0GD3J/kfKXBx6kWbPbfDWUP+yu+tezyn7P0xMX4cLFS4+35pP1\nKWRkZfNwswbce1Mc7aYsITgwkOsrX0mbm+LOv1E/dVdsTVbt2s/Tsz/ABbz0UHM+2bzTvS9uji10\nnbkrNnE88ySzv9rI7K/cb9bTnm5FWAk6AfbPrnmTG1m3JZmOg0ficsGQLs/xn69XkeE4yYMJLQpd\np0XTRox6fR6dE18hJzeXHu0eIzS0VKF9/Yn7tbMjQxMH43S5SIhP8Lx2pjF58kQSE4fx6KOPMWHC\nq3y2bBllypahf/+Bvg77srm96c2s37SFLv2H4sLFgO6d+e+KlTgyM7n/npZ0efZp+g0fhcvlovXd\nd3JlhfIA7DtwkOhKV/k4+j8uODiYDh06kDhkCC6Xi/iEfI//pEkkDh3Ko489xoTXXmPZsmWULVOG\n/gMGnHW9W2+9lQkTJtCvXz9yc3Lo+PzzhIaG0rVrV2bMmEFwUBDlypWje/fuvh76ZVVc5n97Q4DL\nda5cFjyJ+FTcc7+PAnWBONzJektr7V2efo2A1zg9Z/o53HPQO1lrHzXGBOCu9NbEPa/7CPAtMBp4\nHff880NAY6AJ7orwDNzV63Cgh7V21VliHA4cstbONMZ0AipZa4cbYx4EWllrOxljegN/x51srwR6\n456vfWq9GGCmtbaFMeZ53B82/g58mW/Od2/gEWvtLefYXzVxT/dp6rm9GvdcdnBX20Nxf0PQzVq7\n3hgz1HM/u4EgYLxnH8VYawd69tsM3N8s5AIfWWvHnu3+AXbs+v7cD+qfRLUdy30dQvFx/KivIyg2\nPn9ijq9DKDaabnzD1yEUG0fCo8/f6U8iMvuYr0MoNjJKlfF1CMVGrWuvLRZfV/2cvMYrOc6VdZr4\nfHznTcq9zZMM32CtXWKMqQAkAzWstcVuAqExph/wq7V2vq9jORcl5W5KyvNRUp5HSflpSspPU1J+\nmpLy05SUn1ZskvKUtd5JyuMa+3x8xeE74n3AWGNMT9yV4gFnS8iNMf8Ayp+x+Ji19gEvx4gx5k3c\nlf/7Pbc74r4KzZkGna2iLyIiIiKXzlWCr+bt86TcWpuO+4TRC+n7f14O51z33faM27Nxn3wpIiIi\nIvKH+DwpFxERERG5EC4/vhLT+ZTc7wBERERERPyEKuUiIiIi4hdK8iURlZSLiIiIiF8oLr++6Q0l\n9+OGiIiIiIifUKVcRERERPxCSZ6+UnJHJiIiIiLiJ1QpFxERERG/UJIviaikXERERET8gk70FBER\nERERr1GlXERERET8gk70FBERERERr1GlXERERET8guaUi4iIiIiI16hSLiIiIiJ+oSTPKVdSLiIi\nIiJ+QdNXRERERETEa1QpFxERERG/4IvpK8aYQGA60AA4CbS31u7M134/MAzIAeZba+dcyv2oUi4i\nIiIicnYPAmHW2luAgcBrpxqMMSHARCABaA50NMZcfSl3oqRcRERERPyCiwCv/J3HbcAyAGvtauCm\nfG2xwE5r7RFrbRawErjjUsam6SslULozwtchFAvpVeN8HUKxUSrzuK9DKDaabnzD1yEUG6sbtvN1\nCMVGbOonvg6h2AjNSvN1CMVGSb7Sh79yBfjkRM8ywLF8t3ONMcHW2pxC2tKAspdyJzraRERERETO\n7jhQOt/tQE9CXlhbaeDopdyJKuUiIiIi4hdcLp9Uyr8B7geWGmOaAlvztW0DahtjygMncE9defVS\n7kRJuYiIiIjI2f0TiDfGfAsEAO2MMY8DUdba2caY3sBnuGegzLfWHriUO1FSLiIiIiJ+weWDmdfW\nWifQ6YzFqfna/w38+4/ej5JyEREREfEL+kVPERERERHxGlXKRURERMQvqFIuIiIiIiJeo0q5iIiI\niPgFVcpFRERERMRrVCkXEREREb9QkivlSspFRERExC/46Bc9i4Smr4iIiIiI+Jgq5SIiIiLiF0ry\n9BVVykVEREREfEyVchERERHxCyW5Uq6kXERERET8QklOyjV9RURERETEx1QpFxERERG/oEsiioiI\niIiI16hSLiIiIiJ+wVmC55QrKRcRERERv1CST/RUUi5/2HdrVvL+kjcJCgzizvg23N3qL4X2+/iD\npRw78iuPt+1cxBF6j9Pp5NU5b7Fj7z5KhQQzqHM7qkZfXaBP5smT9BjxKoNeeJaaVaPJzXUyZuYb\n/HDgEAEBAfR7/mlqVa/qoxFcfk6nkzFvvMeOHw4SEhLM0PaPUq3SlXnty779jneWrSAoMJDrqkUz\nsN0jBAaWrJl0Oi4u3BWN6xMzui+rWz7t61AuG6fTybRp09i9Zw8hISH07NGDypUr57WvXrOGxYsX\nExQUREJCAq1btTrrOrt27WLGzJkEBgYSEhJC3z59KFeuHABHjx2jb58+TJ8+nVKlSvlquJfE6XQy\nfu4idu7dR0hIMIM6PUO1Qp4j3V+ewODObalZJTpv+W/HjtNuwMtMHtq7wHJ/4nQ6mTRzLrv27CUk\nJIR+XTtRpfLpsXy7dj0Ll7xPUFAgrVvexX33tARg0Xv/5Nu168jOyeGB1vfQJuFuXho/kd+OHAXg\n0OGfiTO1Gdavl0/GJX/MRb8TGmPCjDHtjTFtjTGFZ1/FnDFmiTGmha/jKAlycnJYMHcqQ16ewPAx\nr/Pfzz7k6JHfCvTJOnmSKeNH8J+P/uGjKL3nf2s3kJWVzZxXEun85CNMWbCkQPu2nXt4YegYDvx0\nOG/ZyvWbAJg1eggdH/s/Zi3+f0Uas7d99d1WsrJzeGNEL7r9/X4mLvpXXltmVhYz3vuYWUO6Mn94\nT044Mvl6Y7IPo/UOHRcX5to+7ak3aySBYaG+DuWyWrVqFVnZ2UycMIF27doxZ+7cvLacnBxmz57N\nqJEjGTd2LJ9++ilHjhw56zozZ82ic6dOjBs7llubNeO9994D4LvvvmPIkCH8duSIT8b4R/1v3Ub3\nc2T0YF544q9MXfhegfZtu/bSedg4Dhz6ucDynJwcxs56i1A/+xByppWr15GVlcW08aPp+PQTTJ+/\nMK8tJyeHaXPfZPxLiUwaPYKPPvsvvx05yqatySSnWqaOHcnk0SP4+ZdfARjWrxeTRo/g5cH9iIqM\noMtzbX0zqCLicgV45a84uJTyVCWgvbX2TWvth5c7IPEvB/btpVJ0FaKiyhAcEkJMXH22JW8q0Ccr\n+yTN727NQ38vOZWwUzZv20GThvUAqHt9LVJ37S3Qnp2Twyv9u1IjXzWneZMbGdCpLQCHfv6F0pER\nRRVukdhkd3NLg1gA6tWuybY9+/LaSgUHM394T8JC3W+oublOQkNCfBKnN+m4uDAZu3/gu0e6+TqM\nyy45OZlGjRoBEBsTw44dO/La9u3bR+XKlSldujQhISHUqVOHpKSks64zaOBAatWqBUBubm5eRTwg\nIIBXRo+mdOnSRTm0y2bztp00bVgXcD9Htp3xHMnKzmZMvy7UqFKpwPKpC9/joYTmVCxXtqhC9Yqt\n27bR+MaGAMTFXM/2nbvy2r7fd4Aq0ZUoHRVFSEgI9eJi2JK8jXUbNnFNjeoMHT2ewSPHcsvNjQps\n843FS3moTWsqlC9XpGORy+dSpq8MAeKMMU7gBSAVGAScBKoBM4G7gAbAZGvtDGNMc2AUkAvsAp63\n1mYXtnFjzAvAM4ATWGet7W6MeRMI8Gw/CnjaWptqjOkGPA64gCXW2imevieBmkA00NZau8EY0wVo\nD/wIXHWuARpjmgCTcH9oOQA8AcQAUz1jyAQ6eNrfBfZ57m8JUBdoCHxsrR1sjPnKs49iPGP4O/Az\nMMsznmjgQ2ttYmGxAxWBDtbaRzyxfQM8Yq09eK4xFBVHRjoRkVF5t8PDI8hITy/QJyqqDA1ubMxX\n//2kqMPzugyHg6iI8LzbQYGB5OTmEhwUBED9mNqFrhccFMTLU+ewYs0GRvXtUiSxFpV0RyZR4WF5\ntwMDA/L2SWBgIBXKlgFgyWf/w5F5kib1jK9C9RodFxfm0D//Q3iNKr4O47LLyMggMuL0h6rAwEBy\nc3MJCgoi/Yy28PBw0tPTz7pO+fLlAUhJSeHfH33EuHHjALjxxhuLaDTekX6e50iDQp4jH3/5DVeU\nLU3TG+qy8J/+/X6SkeEgMrLwYyTDkVGgLTw8jPSMDI6lpfHT4Z8ZPXQgP/50mMRRY1kwfTIBAQEc\nOXqMDZu30uW5Z3wxnCJVkueUX0qlfBSQAryUb1lV4K9AZyAReApoDTxvjAkA5gD/Z61tjjvJbXuO\n7bcDulprbwG2GWNOfXDYZa29CxgOjDPGxOFOcG8DbgceNMacenf/3lp7D+4kuqMx5mqgB9AUeAA4\n3/des4BnrbVNgI+BWM8YunrGMB2Y4Ol7LfAccB/wMtAbaOJZdsq31toWuBP4wbiT8dWeGBsDnfL1\nLRA7sByoZ4wpZ4ypA/xSHBLyJW/NZsTArox7eSCOjNNJuMORQWS+JL2kiwgPJ8ORmXfb6XTlvamc\nz9BuHXh36hjGzHgTR+ZJb4VY5CLDw8jINx7XGfvE6XQyadG/WJNkGdfzWQICSt4LrI6LP7eIiAgc\nDkfebafTSZDn8Y+MiCAjX5vD4SAyKuqc66xYsYKpr7/OiOHDuaKsf1eIT4kMDyc9/3PEdf7nyEdf\nrmTt5hReeHEcO/bu46Wp8/j1yDFvh+oVERHhBY4Dp8uV93hHhEfgyLdvHI5MoiIjKFM6ipsb3kBI\nSAjVq1YhJKQUR48dB2DFt6tp2fy2vG2If7pcZ1cleSrfR3Enz1nAESAMuBJ31Xepp2qcANQ4x7ba\nAV2MMSs8/U69Y3/h+fdbwOCuSNcAPvf8VQBOfbTe6Pl3nyeGWkCytfakJ8615xlPJWvtNgBr7Txr\n7QagsrX21LyM/wF1PP/fba095hn7T9ba36y1mbir96ecGftvwM3GmEXARCD/hMoCsVtrXcDbwGOe\nfTPvPLEXiUef6siLY15n9tv/5tDBA5xIO05OdjbbkjZxfUxdX4dXZOrH1GbVhi0AJG3fRa0a5z8x\n79OvvmXhPz4CICy0FIGBAQSWoMS0wfXX8M2mFAC27tjLddUqF2gfPW8pJ7NzeK3Xc3nTWEoaHRd/\nbnFxcaxbvx6AbampXFOzZl5btWrVOHjwIGlpaWRnZ5OUlERsTMxZ1/niiy/cFfKxY4mO9s+TGgtT\nP+Y6Vm3YCnieI9XP/43JjJcGMOOl/kwf0Z/aNasxrNtzVPDTaSx1Y2NYs34DACmp27m2RvW8thrV\nqrD/4I8c9xwjm5NTiIu5nnpxsazdsBGXy8Uvv/5GZmYmZUq7i2AbNm2hcaOGPhlLUSvJc8ovZfqK\nk98n867COnr8AuwHHrDWHvOcHHriHP07AJ2stZnGmM+AZp7ljYCVwK1AMmA9/7a21rqMMb2ALcDD\nhcSzA6hjjAkHsnBPL3n7HDEcNMbUttbuMMYMALZ7ltW31m4BmnuWnW/spzTy7INTsbcFjlprnzfG\nXIe7mn/qiChse2944o0EBl7A/RWZ4OBgnm7flVHDeuNyOrkzvg3lK17JibTjzJwyhr5DRvs6RK9q\n3uRG1m1JpuPgkbhcMKTLc/zn61VkOE7yYEKLQtdp0bQRo16fR+fEV8jJzaVHu8cILUHJ6Z031WfN\nVsuzwyficsGLzz/Osm/Wk3Eyi7hrqvHBitU0NNfSafQ0AB675w7uvLmBj6O+vHRc/Lk1a9aMjRs3\n0rtPH1wuF7179eLLL7/EkZnJva1b06FDB4YkJuJyuUiIj6dixYqFrpObm8uMmTO56qqreHnkSADq\n1avHU08+6eMR/nHNGzdk7ZYUOgx5BVwuhnRpx2dfr8GRmcmD8c19HZ7X3d60Md9t2kLX/kNwuVwM\n6NGF/674Gocjk/tbxfPCc8/Q/8VROF1OWre8iysrVODKChXYnJRC5z6DcLqc9OjUPq8y/sOBg1S+\n+urz3GvJUJKnrwS4XBeSU55mjAkDVgOfAXtwz5fuZK191BgTA8y01rYwxlyBe4pGjDEmARiGO5k/\njntO+OGzbL898DyQhnuqSwfc89Qr4Z52EoR7nvgeY0w/4EHclea1QDfcleQl1tplxphWwKPW2rbG\nmGc97T/jrp4Ps9Z+dZYYbsY9PcWJew76M0AcMBl35T4H9/QUp+e+mnr2S6q1tqZnG4estZU83w4c\nAcoD6bin9lQCFgPHOD0X/27cU4N+F7tnex/irvYPOucDBGza8fPFPaglVLWTO87f6U+iVOZxX4dQ\nbGSFlfF1CMXG6obtfB1CsRGb6t9zlC+nK9J9PkOy2MgM9c9KvDdUNvWLRTa8zh71So5zs7nC5+O7\n6KTcFzwnQC6x1i7zdSwXy5OUd7LWpv7B7XwE9LTW7jxfXyXlbkrKT1NSfpqS8tOUlJ+mpPw0JeWn\nKSk/rbgk5WtTj3klx2kcU9bn4/PJjwcZY6oDCwtpWmGtffHPEsOF8Ey5WQl8cSEJuYiIiIj4H58k\n5dbaH4AWF9G/ra9j+AP384fuw1rrwD0nXURERORPzenrALzIJ0m5iIiIiMjFKi5XSvGGy3VJRBER\nERERuUSqlIuIiIiIXyjJl0RUpVxERERExMdUKRcRERERv1CS55QrKRcRERERv6DpKyIiIiIi4jWq\nlIuIiIiIX3CW4N8sV6VcRERERMTHVCkXEREREb+gOeUiIiIiIuI1qpSLiIiIiF/QJRFFRERERHzM\npRM9RURERETEW1QpFxERERG/4NSJniIiIiIi4i2qlIuIiIiIX9CJniIiIiIiPqYTPUVERERExGtU\nKRcRERERv6Bf9BQREREREa9RpbwEutJ1yNchFAtHIyr5OoTiQ/siT0k+SehixaZ+4usQio1tMff6\nOoRio8LWtb4OodioEnjA1yHIGZwleE65knIRERER8QslubCi6SsiIiIiIj6mSrmIiIiI+AVdElFE\nRERERLxGlXIRERER8QtOXRJRRERERES8RZVyEREREfELJXlOuZJyEREREfELuiSiiIiIiIh4jSrl\nIiIiIuIXSvIveqpSLiIiIiLiY6qUi4iIiIhf0ImeIiIiIiI+5tJ1ykVERERExFtUKRcRERERv6AT\nPUVERERExGtUKRcRERERv6ATPUVEREREfKwkJ+WaviIiIiIi4mOqlIuIiIiIX3C6dElEERERERHx\nElXKRURERMQvlOQ55UrK5YI4nU4mz5jDrj3fExISTN9unalSOTqv/du163nrnfcICgqiVfyd3HdP\nPAAde/QjMiIcgEpXX82Anl3YvnM3E6fPplRIMLWuvYauHdoRGFj8v7RZs3o1ixcvJigoiISEBFq1\nbl2g/dixY4wbO5asrCzKV6hAr169CAsLK3S95cuX89/lywHIyspi9+7dLFq8mKioKABmz5pFlapV\nadOmTZGP80Jczn1xytGjR+nerRujRo+mWrVqjHnlFY4cOQLATz/9RExMDAMHDSrScf4Ra9as5p3F\niwgKCiI+4R5atfr9Pho/bixZWScpX74CPXv1JiwsDIDMzEwShwymR89eVKtWzRfhXzSn08m0adPY\nvWcPISEh9OzRg8qVK+e1r16zpsBj37pVq7Ous2vXLmbMnElgYCAhISH07dOHcuXKAXD02DH69unD\n9OnTKVWqlK+G6xVXNK5PzOi+rG75tK9DKRIb137NB+/OJTAoiDta/oUWCQ8W2u+zD9/h2JFf+dsz\nXQFY9sFiViz/gDJl3cdE286DiK5ao8jivhycTidTps9i1569hISE0Kd7lwLvqavWrOOtJUsJCgyk\nVfzdtGmVQG5uLhOmTmf/gYMQAD1f6MQ1NWuwY+cuJk2bSUhICLWuvYYuHZ/zi/dU+T2/SsqNMZ8D\ng6y1a40xpYCfgZHW2vGe9q+AntbaTefZzl4gxlqb6eV4BwJfWGvX5lsWBqRaa2te5LaqAw2stf++\nvFFemJWr15KVlc3rr44mJXU7M+YvYGTiQABycnKYPvdNZkwYQ1hoKN37J9Ks8c1ERUYALia+8lKB\nbU2YNpOuHZ+lbmwM8956h89XrCT+zjt8MKoLl5OTw+zZs5k0eTJhYWH07dOHJk2b5iUKAO8sXkyL\nO+8kPj6epUuX8umnn3L//fcXul58fDzx8e4PLtOmTSMhIYGoqCiOHT3Kq6+9xoH9+/nrww/7arjn\ndLn3Rbly5cjJyWHqlCmUCg3N28apBDwtLY1BAwfS8fnni3yslyonJ4c5s2cxcdIUwsLC6Ne3N02a\nnLGP3llE8xYtiI9PYOnSd/n000946KH/Y8f27bz++lR++fUXH47g4q1atYqs7GwmTpjAttRU5syd\ny4vDhgGnj5nJkyYRFhZGn759adqkCSkpKYWuM3PWLDp36kStWrX45JNPeO+99+jYsSPfffcd8994\ng988H9ZKkmv7tKfKk38hN93h61CKRE5ODovnTWT4a28SGhrOyIHtadj4dspeUSGvT9bJTOa/Pord\nO1K46ZY785bv3ZVKx57Duea6WF+Efll8s3oNWdnZTH1tLCmplpnz3uDloYMB976ZMXc+0yaOJyw0\nlB79B9OsSWNSUi0Ak8e/wqYtScx/axEvDx3MxNdn0OX59tSJjWH+W4v4YsX/aHlnCx+OzrtKcqXc\n3z5KLQdu9/z/duAz4F7IS3ZrAJt9E9rvWWvH5E/I/6C7gFsv07YuWlJKKjc3ugGAuJjrsTt257V9\nv28/VaIrUToqipCQEOrGxbAlOYVde/aSeTKLfkNfoveQ4aSkbgfg519+o25sDAB1Yw1JKduKfkAX\nad++fVSuXJnSpUsTEhJCnTp1SEpKKtAnOTmZRo0aAXDTTTexaePG8663fft2fvj+e1rfey8AjsxM\nnnjiCe66++6iG9xF8sa+mDt3Lve2aUOF8uV/d3+L3n6b+//yF8oX0lZc7dv3A9H5xhpXpy5JSVsL\n9ElJTqZRo5sAuOmmm9m0aSMA2dnZJA4dRrWqVYs87j8i/2MeGxPDjh078trO9tifbZ1BAwdSq1Yt\nAHJzc/Mq4gEBAbwyejSlS5cuyqEViYzdP/DdI918HUaRObh/D1dHVyUyqgzBISHUjm2ATd5YoE92\ndha33tWG+x9pV2D53l2pfPT+AkYO7MC/33+zCKO+fJKSt3HzjQ0BiIsxbN+xK6/th337qRwdne89\nNZYtycnceksTend7AYDDPx8mKjISgJ9/+ZU6ee+pMSQlF//31D/C6fLOX3HgV5Vy3En5UOA13Mn4\nXGCsMaYscCOwAmhpjBkJZAK/As8CNwBjgSxg9qmNGWM6AQnAY9bak2femTEmCJgFVAOigQ+ttYnG\nmNqe+y4FZACPAlcUsmw8sARYCSwCygE7822/HjAFCMgXa0NggCfWaz3rjwEGAhHGmG+ttR9e6g68\nVBkZDiIjIvJuBwUGkpubS1BQ0O/aIsLDSU/PILRqKH976H7aJLRk/8EfGTh8FAtnTiG60lVs3ppM\ng3p1WLX2OxyZv9v1xU5GejoRnhdAgPDwcNLT0wv2ycgg0tPnVPv51lv67rs8/sQTebcrVapEpUqV\nWL9+vbeG8odd7n2xfPlyypYtS6NGjVj67rsFtnP06FE2bdpEh44dvTiiyy8jI4PIiIJjzTjPPjrV\nHlenTtEFehm5x3z6dSAw32tE+hltecfEWdY59QEsJSWFf3/0EePGjQPgxhtvLKLRFL1D//wP4TWq\n+DqMIpOZkU54RFTe7fDwSDLSTxToExlVhnoNm/L15x8VWN7k9nha3vsI4eGRTHmlP5vWfc0NN9+O\nP8lwOIiMzHfsB53xfInM/54aRnp6BgBBQUGMnTCZb1atYdig/gBEV7qazVuTaFCvLqvWrifzZPF/\nT5XC+VtSvhGIMcYEAHcAg4H/Ai2B+rgr57OB26y1B4wxPYBE4CMgzFrbBMAY8zLQDXey/oi1Nvcs\n91cNWG2tbe+pxO/3bO9V4BVr7TJjzF9wJ9JdCll2SicgyVo7xBjTBHfVG2AO8Ky1NsUY8xzQH/cH\njxqe8YQCB621o4wxY3BPuSnyhBwgIiIch+P0bB+ny0lQUFBeW4bj9FeuGQ4HUVGRVK1SmSrRlQgI\nCKBalcqUKV2aX387Qv8eXZg25w0WLnmPenViCQkpvofhggULSElOZs+ePZiYmLzlDocjr0pxSkRE\nBA6Hg9DQUBwOB5FRUURERuLIyCh0vRMnTrB//34aNGhQNIP5g7y1Lz748EMCgE0bN7J7925eBzEi\nBwAAIABJREFUe/VVhr34IuXLl2flypW0aNEi71gr7hYueJOUFM8+MgX3UWRUVIG+v9tHkVFnbs6v\nnBrPKU7n6deIyIiIAq8RecfEOdZZsWIFS959lxHDh3NF2bJFNArxtvffnsGObZvZt3cn115/+gOo\nw5FOZOT5vwFxuVzcc/9jRHieLw1uupXvd2/3u6Q8IjycjHzvqS6nq8DzxZGR/z01s8Br7IDePfjt\nyBG69h7AvBlT6NezG9Nmz+Ptd5ZSt04cISEhRTcQH3DpkojFg7XWiXt6SivgkKe6/SnuaR23AV8A\nx621Bzyr/A849ay3Z2yuJXDFORJygN+Am40xi4CJuJNkAAOs8sT0obX2P2dZdsr1wFpP2xog27M8\nFpjumQv/LHCqTLLVWptjrU0HisUEw7qxMaxZvwGAlNTtXFujel5bjWpVOXDwR46npZGdnc2W5G3E\nxVzPp8u/YMa8hQD88utvZGRkUKF8Odas38DgPj14bdRwjqedoFHD4puUPvPMM4wdN47F77zDjwcP\nkuYZY1JSEjGxBeczxsXFsW7dOgDWr19P3Tp1qFatGgfPsl5SUhI33HBDkY/pUnlrX4wfP55x48cz\ndtw4rr32Wvr07ZtXKd20cSM33XxzkY/1Uj39TFvGjB3PosVL+PHH/GPdSkxMwX0UG1eHdevcs9vW\nr19Hnbp1fRHyZRMXF8c6zzc821JTuaZmzby2wh772JiYs67zxRdfuCvkY8cSHR195l2JH3v4yc4M\nGjWTKQuWcfjH/ZxIO0ZOdjY2ZRO1Yuqdd31HRjpDuj1KpiMDl8tFypb11KwVc971ips6cbGsXf8d\nACmplmtqnn5PrX7Ge+rWpGTiYgzLv/iKxUv/HwChoaEEBgYQGBDAmnXrGdS3J+NHv8TxtDQa3VB8\n31Pl3IpvifLsluOukL/jub0SGAa4gMNAGWNMtLX2R6A5sN3Tz3nGdh4A5hpjOllrZ57lvtoCR621\nzxtjrgM6eqr024Cbgf8aY54Ayp9l2SkpwC3AB8aYhsCpj7EWeNpa+4Mx5lbcU2TwjOVMTnz4Ieq2\nWxrz3abNdO03GFzQv0cXPv/qaxyZmdzXKp7O7dsyYNhInC4XrePv5MoKFbg3/i7GTppG9/6JBARA\nvx4vEBQURJXK0fRNHEFoaCka1qtL05uK/1fSwcHBdOjQgcQhQ3C5XMQnJFCxYkXS0tKYPGkSiUOH\n8uhjjzHhtddYtmwZZcuUof+AAWddD2D//v1UqlTJxyO7eN7YF2fjz/uofYeODE0cjNPlIiE+3z6a\nPJHExGE8+uhjTJjwKp8tW0aZsmXo33+gr8P+Q5o1a8bGjRvp3acPLpeL3r168eWXX+LIzOTe1q3p\n0KEDQxITcblcJMTHU7FixULXyc3NZcbMmVx11VW8PHIkAPXq1eOpJ5/08QjlcgoODuaxZ3vy6vDu\nOF0u7rj7fspXuIoTaceY//ooug8aV+h6EZFRPPzUC4xJ7ExwSCni6t9Mg5t8drrVJbvtliZs2LiJ\n7n0H4nK56NezG59/9T/Pe2oCndq3Y+Cwl3A5nbSKv5uKFStwW7OmjJ80lV4DhpCTk0PnDs8SGhpK\nlcqV6T/kRUJDQ7mhfl2a3NzI18PzquJyoqcxJhx4G7gKSAOesdb+XEi/QOBj4INz5JsABLiKy+gu\nkDGmBrAXuMZau9ez7F/AJmvtcGNMS+Bl3EnsEdyJdV2gk7X2UU//vUAMEIG7gt3aWruDMxhj6gCL\ngWPASdzTWe4GwnHPNQ/CPX/8SdxJ+JnLJuCeE/4VsBCoDKQCt1trjTGmEe758cG4E/HnPH3yx3rI\nWlvJk8wvAV601i451z46sH2rfz2oXpIZHHn+TvKnU5K/+rxYgb+rVfx5bYu519chFBsVtl6u6xP4\nvypBB87f6U+iWu24YvHi+eZXhRYu/7C2Lbio8RljegNlPLnno8At1toehfQbjXva8pslLimX81NS\n7qakXAqjpPw0JeWnKSk/TUn5aUrKT1NSXpAx5h/AOGvtas8FR7611tY5o8/DuM9fzME97fqcSbk/\nTl+57Iwxwzh98mV+7ay1e4o6HhERERH5PV/Ukj0X4+h1xuKfcM+kAPf0lbJnrFMXeBx4GPc06/NS\nUg5Ya18CXjpvRxERERH5U7HWzgPm5V/mqZSfumRQaeDoGas9jfsCHl8ANYEsY8xea+2ys92PknIR\nERER8QvFaNb1N7h/M2ct0Br4On+jtbb/qf8bY4bjnr5y1oQclJSLiIiIiJ8oLr++CcwAFhhjVuL+\nwcfHIe8E0J2X8rsySspFRERERC6CtTYDeKSQ5RMKWTb8QrappFxERERE/EIxmr5y2fnVL3qKiIiI\niJREqpSLiIiIiF9wluCfV1BSLiIiIiJ+QdNXRERERETEa1QpFxERERG/oEq5iIiIiIh4jSrlIiIi\nIuIXitGPB112qpSLiIiIiPiYKuUiIiIi4hdcXptUHuCl7V44JeUiIiIi4hd0oqeIiIiIiHiNKuUi\nIiIi4hdK8i96qlIuIiIiIuJjqpSLiIiIiF8oyXPKlZSLiIiIiF/QdcpFRERERMRrVCkvgT7/sZ6v\nQygWbqu6y9chFBtBrhxfh1BslMpx+DqEYiM0K83XIRQbFbau9XUIxcav9Rr7OoRio8y2L30dgpyh\nJE9fUaVcRERERMTHVCkXEREREb/g8tqkcv2ip4iIiIjIBdGJniIiIiIi4jWqlIuIiIiIX9CJniIi\nIiIi4jWqlIuIiIiIX3CW4EnlqpSLiIiIiPiYKuUiIiIi4hdK8pxyJeUiIiIi4hdKclKu6SsiIiIi\nIj6mSrmIiIiI+AVnCS6Vq1IuIiIiIuJjqpSLiIiIiF9wOX0dgfcoKRcRERERv+DS9BUREREREfEW\nVcpFRERExC84S/D0FVXKRURERER8TJVyEREREfELJXlOuZJyEREREfELzpKbk2v6ioiIiIiIr6lS\nLiIiIiJ+wVWCS+VKyuWSbN/8BSs/mkZgUDANbv0rDW//W4H2tKOH+XB+P3JzsgmLLMsDz40nNCyK\nrav+xer/zCM0vDT1mz3EDbc94qMRXByn08m0adPYvWcPISEh9OzRg8qVK+e1r16zhsWLFxMUFERC\nQgKtW7U66zpHjx5l8pQpnEhLw+l00qdvXypHR7Nu3ToWLV4MLhfX1a5NlxdeICAgwIejPj+n08nU\n6TPzxtire1eq5Nsvq9asZdE7SwgKCuKe+Jbc2+oecnJyeG3SFH46fJjs7Gwe//vfuKVpk7x1vvhq\nBR/8+yMmvzbeF0O6ZE6nk4kz57Fr7/eEhITQr+vzVI2ulNf+7drvWPDu+wQFBXFvyzu5L+FuPv38\nK5Z9sQKArKwsdu75nn+8OYvSUZEAvD53AdWqVOaB1vE+GdPl4HQ6GT93ETv37iMkJJhBnZ6hWvTV\nBfpknjxJ95cnMLhzW2pWic5b/tux47Qb8DKTh/YusNyfbVz7NR+8O5fAoCDuaPkXWiQ8WGi/zz58\nh2NHfuVvz3QFYNkHi1mx/APKlC0HQNvOg4iuWqPI4i5qVzSuT8zovqxu+bSvQ/GadWu+Zek7CwkM\nCuLu+NYktLqvQPvxY8eYMH4kWVknKV++At16DiA0LIwd21N5Y+50XC4X5cqVp2ffIQQGBvL6pHEc\nPnyI7OxsHvn7kzRuequPRiaXSkl5MWCMaQvEWGsHFtJ2LfAJsAZ4FShnrf1f0UZYUG5ONv9d+grt\nBr9PqdBwFox9jNoN7iKqTMW8Pqs+m0O9Wx6i/i0P8r8Pp7Lp6/ep1/QvrPhwCs8l/oOw8DIsmtiW\nmjG3cEXFqj4czYVZtWoVWdnZTJwwgW2pqcyZO5cXhw0DICcnh9mzZzN50iTCwsLo07cvTZs0ISUl\npdB15s2fz50tWnDHHXewefNm9u/bxxVlyzJv/nzGjhlD2bJlee+99zh2/DhXlC3r45Gf27erVpOV\nlcXk18azLTWV2XPnM2JYIuDeL7PmzGXqxAmEhYXSq98AbmnSmLXrv6NMmdIM6Nub42lpdO7WIy8p\n37lrF8v+s9wvT+RZuWYdWdnZTB83kmS7nRnz32LUkH6Ae1+8Pm8Bs14bTVhoGF0HDqVZ40a0vrsF\nre9uAcCkmfO4t+WdlI6K5Oix44yeNI39B3/k71Uqn+Nei7//rdtIVlY2c0YPJmn7LqYufI9xA7rm\ntW/btZdxs9/i8K9HCqyXk5PD2FlvEVqqVFGH7DU5OTksnjeR4a+9SWhoOCMHtqdh49spe0WFvD5Z\nJzOZ//oodu9I4aZb7sxbvndXKh17Duea62J9EXqRurZPe6o8+Rdy0x2+DsVrcnJymD9nGuMnziQ0\nLIzB/brRuEkzrihXPq/P0ncWcEfzu7krvhX/b+liPvv039z/4MNMn/Iq/QePILpyFZZ/9jE/Hz5E\n6rZkSpcpQ8++g0lLO07vbh1KbFLuh28PF0xzyou/24CPrbXPAH8F4nwcD78c2kW5q6oTHlmWoOBS\nVLuuEfu2ryvQJ/5vg6nX5C+4nE6OH/mRsIjSHPllP1dVNYRHXkFAYCCVa9bjwO7NPhrFxUlOTqZR\no0YAxMbEsGPHjry2ffv2UblyZUqXLk1ISAh16tQhKSnprOukpKTwyy+/MGjwYL788kvq16/Ptm3b\nqFmzJnPmzqVvv35cUa5csU/IAZJStnFToxsB9xi379yZ1/bDvn1Ujo6mdOko936Ji2NrUjJ33HYr\nzzz5hLuTy0VQYBAAx48fZ/6Ct+jcsX2Rj+Ny2JpiadywAQB1zPXYnbvy2r7ff4Aq0ZUoHRVFSEgw\n9WJj2JK8La89dccu9uzbz/33tATAkZlJ20cfJr7F7UU7CC/YvG0nTRvWBaDu9bXYtmtvgfas7GzG\n9OtCjSqVCiyfuvA9HkpoTsVyxf95cKEO7t/D1dFViYwqQ3BICLVjG2CTNxbok52dxa13teH+R9oV\nWL53Vyofvb+AkQM78O/33yzCqItexu4f+O6Rbr4Ow6v27/ue6OgqRHneN2Lj6pGctKVAn20pSTRs\n1BiAG29qzJZN33HwwD5KlynDh/96jyEDenAi7ThVqlan2W0tePzJZwH31UlOva6Kf1FSXowYY7oZ\nY1YZY741xnQ3xlQHBgOPGGOGAG2B3saYxr6MM8txgtDw0nm3S4VFkuk4UaBPQEAATmcus0fcx/d2\nDTVjmlL+qhr8cnAnJ47/QvZJB3tSV5GdlVHU4V+SjIwMIiMi8m4HBgaSm5sLQPoZbeHh4aSnp591\nnZ9++omoqCheGT2aK6+6iqWeqviWLVt4tl07Xn7pJf71r3+xf//+ohvgJcrIyCAyMjLvdv79kpHh\nKNAWER5OekYG4eHhREREkJGRwcujx9L26SfJzc3ltclT6dT+OcLDw4t8HJdDekYGUZEFH++cvGPE\nQVS+YyEiPJwT6aeP/UXv/5O2f/9r3u3oq68iztQugqi9L93hICri9GMalG+/ADSIqc3VFcsXWOfj\nL7/hirKlaXpD3SKLsyhkZqQTHhGVdzs8PJKM9IKvnZFRZajXsOnv1m1yezxtXxjIwJensyNlM5vW\nfe31eH3l0D//gys7x9dheFVGRgYR+V4fw8LDychIP6NPel6f8PAI0jPSOX78GHZbMvfe9xAjRr3G\nls0b2LJ5A+Hh4YRHRODIyGD86OE8/vSzRTqeouR0urzyVxxo+krxcS3uqvhtntvLgc+AMbintowy\nxoQAh6y1a30R4Ff/msi+nRs4vN9S+Zr6ecuzMtMJiyj9u/5BwSE8P+IT9qR8y4fzB/BUv7dp+bdB\n/L8Z3QiPuoJK1esQHlWuKIdwySIiInA4Tn+V6nQ6CQpyVyIiIyLIyNfmcDiIjIo66zplypShaVP3\nm26TJk1YsGABcbGx1K5dm/Ll3clJvbp12b17N1WrFu+pPWeO0eV05e2XiIjwAvslw3E6ST/888+M\nGPkK97dpzV0tmpNqt3Pw4EGmTJ9BVlYWP/ywjxmz59C5Y4eiHdAf4D4OMvNuO10ugvOOkXAyMgvu\niyjPvkg7kc6+Az/SsH7JSkBPiQwPJ/0s++VsPvpyJRDAui0p7Ni7j5emzmP8gG5U8NOq+ftvz2DH\nts3s27uTa6+vk7fc4UgnMvL3r51ncrlc3HP/Y0REuhP6Bjfdyve7t3PDzf7/TcqfzaKF89iWspXv\n9+ymtjk9FSnT4SAyMqpA34iISByODEJDQ3E4MoiMjKJ06bJUiq5Cteru8wka3tiYXTss9RvcyC8/\nH2bMyKG0avMAd7RoWaTjKkr+OL3xQqlSXnzcBNQAPvf8VQCKVamsxYO9eKrvW/R89RuO/PwDjvSj\n5OZk8cOO9VS5tmGBvp8uGs7e1NWAu5IeEBCAMzeHQz+k8HT/xfxfx8n8emg31Wrd6IuhXLS4uDjW\nrV8PwLbUVK6pWTOvrVq1ahw8eJC0tDSys7NJSkoiNibmrOvExcWxbp17uk/S1q3UqFGD6667ju+/\n/55jx46Rm5tLamoq1atXL9IxXoo6cbGsXXd6jDVrnj7xrHq1ahw4eJDjnv2yNSmZuJgYjhw5wqDE\nF2nf7hlaJbhPYIwx1zNnxjReHTOawQP6Ub16Nb9KyAHqxhpWf+eeipBst3NtjdOPX42qVdh/8BDH\n006QnZ3DlpRt1Im5HoAtydu4sYQm5AD1Y65j1YatACRt30Wt6lXOu86MlwYw46X+TB/Rn9o1qzGs\n23N+m5ADPPxkZwaNmsmUBcs4/ON+TqQdIyc7G5uyiVox9c67viMjnSHdHiXTkYHL5SJly3pq1oop\ngsjlcnvi6ecYOWYSbyz6B4d+PEBa2nGys7NJTtqMiSk4OzUmti4b1q0BYMP6tcTVqc/VlaLJzHTw\n48EDAKQkb6Va9ZocPfIbwxP78XS7jrRMuLfIxyWXhyrlxcdmIBxoba11GWN6AVuAu/L1cVIMPkgF\nBYfQ8pGBvDPpOVwuFw1u/Stlyl2NI/0oHy9M5OHOr3PzXU/x6aLhrPxoGgGBgbR6YjiBQe7Dbd7I\nhwgOCaVJfDsiSpc/z70VD82aNWPjxo307tMHl8tF7169+PLLL3FkZnJv69Z06NCBIYmJuFwuEuLj\nqVixYqHrAHRo357Jkyfz8SefEBkRQf/+/SldujRt27YlcehQAG6//XZq5kv8i6tbb2nKho2b6Nmn\nPy5c9OnZgy++WoHD4aBN61Y83/45Bg99EafTRauEllSsWIHps+Zw4sQJFi15l0VL3gVg1IgXCQ0N\n9fFo/pjbm97M+k1b6NJ/KC5cDOjemf+uWIkjM5P772lJl2efpt/wUbhcLlrffSdXVnAf+/sOHCS6\n0lU+jt57mjduyNotKXQY8gq4XAzp0o7Pvl6DIzOTB+Ob+zq8IhUcHMxjz/bk1eHdcbpc3HH3/ZSv\ncBUn0o4x//VRdB80rtD1IiKjePipFxiT2JngkFLE1b+ZBjeVzJP4/iyCg4Np1/4FXhraH6fTyd0J\nralQ8UrS0o4zbfKrDEx8iUcefZIpE8aw/LOPKF2mLL37JxISEkKXHv2YMH4kuFyY2Drc1PgW5s6a\nSvqJNJYueYulS94CYOiIsX7/uloYl9PXEXhPQEn+GsBfnLr6CvAr8CAQCqwFugFP4bkyizGmDTAe\n6GKt/fJs21u4Aj2owG1Vd52/059EkKtkz8+8GKVySu4VHS5WaFaar0MoNraXqn/+Tn8Sv9bz6WlL\nxco12876VvunE3dd5WJxjd7+Mx1eyXHGdQr3+fhUKS8GrLVv5rt55sWZ38zX72Pg4yIISURERKTY\ncZbgYrKSchERERHxCyV5hofP5yeLiIiIiPzZqVIuIiIiIn6huFxT3BtUKRcRERER8TFVykVERETE\nL5TgKeVKykVERETEP7g0fUVERERERLxFlXIRERER8Qsl+TrlqpSLiIiIiPiYKuUiIiIi4hc0p1xE\nRERERLxGlXIRERER8QsluVKupFxERERE/EIJzsk1fUVERERExNdUKRcRERERv1CSp6+oUi4iIiIi\n4mOqlIuIiIiIX3CV4B8PUlIuIiIiIn7BqekrIiIiIiLiLaqUi4iIiIhfKMnTV1QpFxERERHxMVXK\nRURERMQvlORLIiopL4GaV7G+DqFYyKaUr0MoNlyBIb4OodjIKaV9cYorQF+WnlIl8ICvQyg2ymz7\n0tchFBt7Yu/0dQjFRlx28cgtSnJSrldkEREREREfU6VcRERERPyCUyd6ioiIiIiIt6hSLiIiIiJ+\nQXPKRURERETEa1QpFxERERG/UJJ/PEhJuYiIiIj4BWcJnr6ipFxERERE5CIYY8KBt4GrgDTgGWvt\nz2f06QM8DjiB0dbaf55rm5pTLiIiIiJ+weV0eeXvEnQGtlprbwcWAon5G40xVwA9gFuABGDS+Tao\npFxERERE5OLcBizz/P9ToOUZ7enA90Ck5895vg1q+oqIiIiI+AVfnOhpjHkO6HXG4p+AY57/pwFl\nC1l1H5ACBAGvnO9+lJSLiIiIiF9wOc9bcL7srLXzgHn5lxlj/gGU9twsDRw9Y7XWQDRwjef2Z8aY\nb6y1a892P5q+IiIiIiJycb4B7vX8vzXw9RntRwAHcNJam4k7ab/iXBtUpVxERERE/EIxuiTiDGCB\nMWYlkIX7KisYY3oDO621HxpjWgKrjTFOYCWw/FwbVFIuIiIiInIRrLUZwCOFLJ+Q7/8vAi9e6DaV\nlIuIiIiIX9AveoqIiIiI+NglXlPcL+hETxERERERH1OlXERERET8girlIiIiIiLiNaqUi4iIiIhf\ncLqK/seDiooq5SIiIiIiPqZKuVwQp9PJ1Okz2b1nDyEhIfTq3pUqlSvnta9as5ZF7ywhKCiIe+Jb\ncm+re8jJyeG1SVP46fBhsrOzefzvf+OWpk04cvQok6a8TtqJEzidTvr36UXl6Ggfju7CrFmzmncW\nLyIoKIj4hHto1ap1gfZjx44xftxYsrJOUr58BXr26k1YWFih6+Xk5DDhtVf56fBPBAUG0q17T6pV\nq8bYMa9w5MhvAPz000/ExMQyYOAgXwz3nNasXs3ixYsJCgoiISGBVq1/vy/GjR1LVlYW5StUoFev\nXu59cZb13n33XdasXk1OTg5t7ruPe+65J29bs2fNokrVqrRp06ZIx3ihLue+yM3NZcrkyew/cIAA\noGu3btSsWZNdO3cyfPhwKnuec/e2aUPz5s19MNoL43Q6mTRzLrv27CUkJIR+XTtRpfLp5/i3a9ez\ncMn7BAUF0rrlXdx3T0sAFr33T75du47snBweaH0PbRLu5qXxE/ntiPvXqw8d/pk4U5th/Xr5ZFyX\nwul0MmX6rLx90ad7lwL7YtWadby1ZClBgYG0ir+bNq0SyM3NZcLU6ew/cBACoOcLnbimZg127NzF\npGkzCQkJoda119Cl43MEBvpXbW3dmm9Z+s5CAoOCuDu+NQmt7ivQfvzYMSaMH5n3Otqt5wBCw8LY\nsT2V/9/encdrPef/H3+cFqftZCm0yDo82xiUUJYs2QbfMWMGww8lZQ+pSA2RCJUYOxEqy/jyHbvB\nYCzRqv1F1lQKg9I5ref6/fH+nM6ixHTO9b46n9f9drtu51pPz8+n61zX6/P+vJcH7ruDTCbDlltu\nxcWXXUmNGjX42y03snjxV6xatYo/nXQaHfbrFGnLqs4WHfag5ZDLGH/46bGj5ITq3Kc854pySQcB\n35vZNEn/a2Z/qKTf+xnQMlnq9Fdn+ZnnTAaWJDc/NbOuG5MzV73z7nhWrlzJyGE3MXvOHO65bxSD\n/joAgNWrV3P3vfdx24jh1KmTzyV9+rH/vh14f+IkGjYsoN9ll7Jk6VLOvbAX+++3L/eNepBDD+nM\nwQcewNQPpjFv3pc5X5SvXr2ae++5mxG33EqdOnXoc9ml7Lvvfmy55ZZrnzNu3BgO7tyZLl2O4PHH\nH+OFF57nuOOOX+fr5syZw5o1axg2bARTJk/modEPcuWAgWsL8KVLl3LFFf04u0ePWJu8XqtXr+ae\ne+7hlpEjqVOnDpf17s2++1XYF2PH0vmQQ+jSpQuPP/44L7zwAscdd9w6Xzdv3jxmz5rFzcOGsWLF\nCp588kkAfvj+e24eNoz5X37JH088Mdbm/qzK3hezZ88GYNiwYUybNo2HRo/mr1ddxUdz53LCCSfw\nhz/+Mdam/ipvjZ/AypUruf2mIcya8yF3jHqI6wb0A8I+u/2+B7lr+A3Uyc/nwn4D6dihPV98OZ+Z\nc4zbhg5mxYoVPPbUMwBrC/ClP/7IJVdezflnnRlpq/47b49/j5WrVnHbsKHMmmPcdf8DXDuwPxD2\nxZ33jeL2ETdRJz+fXn3703HfDsyaYwCMvOl6pk6bwaiHx3DtwP6M+NudnN+zO21atWTUw2N47Y03\nOfyQzhG37tdZvXo1o+69nZtG3EV+nTr073MhHfbtyBZbbrX2OY+PG81BBx/GoV2O4snHx/LSC89w\n3O9P5I5bb6Zv/0E0bdacf770HF8v/oo5s2dS0LAhF1/Wn6VLl3DphWdXu6J8597daX7a8axZVhQ7\nSs6ozkV5Lh5idwOaAVRWQV4ZWdZFUh0gz8w6J5dqWZADzJg1m/bt9gagVcuWfDh37trHvpg3j2ZN\nm1JQ0IDatWvTpnVrps+YyUEHdOKM004NT8pkqFmjJgAzZ8/m62++oV//gbz2+hvsscfuWd+eX2ve\nvC9o2qwZBQUF1K5dm9Zt2jJjxvRyz5k1cybt2rUHoH37fZg6dcp6X9e8eXPWFK+huLiYwsJCatUq\nf3w8ZszDHHfc8Wy1VaOsbeMvNW/ePJqV2aY2bdowY8aMcs+ZOXMm7dq1A6B9+/ZMnTJlva+bNGkS\nO+60E4OvvZZBV19Nhw4dAChavpxTTz2VQw87LOvb+EtV9r7o2LEjF/XqBcDiRYuoX78+AHM/+oj3\nJ0ygT58+3DJiBIWFhdnd0F9p+uzZdNh7LwBat9yND+d+vPaxz+fNp3nTJhQ0CJ8Xu7f4/ra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LuNJumB9TyUMbNuWQ2TIyR1AS4F8kvuM7ND4yXKPkmnAMcDhwCvJXfXBNqaWZtowSKSdCqwhvC+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\n2f8HP/bMBcfyF50AAAAASUVORK5CYII=\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x2047dd3a320>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"fig, ax = plt.subplots(figsize=(12,8)) \n",
"sns.heatmap(corr, xticklabels=corr.columns.values, yticklabels=corr.columns.values, cmap='coolwarm', annot=True)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"From the correlation matrix, it is clear that the following columns are having good relationship:\n",
"\n",
"number_project and last_evaluation, \n",
"\n",
"number_project and average_montly_hour\n"
]
},
{
"cell_type": "code",
"execution_count": 111,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<matplotlib.axes._subplots.AxesSubplot at 0x2040f5964a8>"
]
},
"execution_count": 111,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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TJFXJgpMkVcmCkyRVqemjutTF1OOP8NDO63sdQ31iauIxAAZac72xSlq4qccfYe73Wy9N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\nJElV+l+mWQ7RMHFOhgAAAABJRU5ErkJggg==\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x2040f67c128>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"fig, ax = plt.subplots(figsize=(7,5)) \n",
"sns.boxplot( y=xSource[\"last_evaluation\"])"
]
},
{
"cell_type": "code",
"execution_count": 109,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<matplotlib.axes._subplots.AxesSubplot at 0x20401733b38>"
]
},
"execution_count": 109,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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JUlPqzuheCpyUmZvaDCNJUtO2Z4fxeyPibyPiZW0GkiSpSbWKLjPfAOwL3AZ8ICJ+EBF/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\ni06SVDSLTpJUtP8FuCl2qxbrsukAAAAASUVORK5CYII=\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x20401610940>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"fig, ax = plt.subplots(figsize=(7,5)) \n",
"sns.boxplot( y=xSource[\"average_montly_hours\"])"
]
},
{
"cell_type": "code",
"execution_count": 74,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"<class 'pandas.core.frame.DataFrame'>\n",
"RangeIndex: 14999 entries, 0 to 14998\n",
"Data columns (total 23 columns):\n",
"satisfaction_level 14999 non-null float64\n",
"last_evaluation 14999 non-null float64\n",
"number_project 14999 non-null int64\n",
"average_montly_hours 14999 non-null int64\n",
"time_spend_company 14999 non-null int64\n",
"Work_accident 14999 non-null int64\n",
"left 14999 non-null int64\n",
"promotion_last_5years 14999 non-null int64\n",
"sales 14999 non-null object\n",
"salary 14999 non-null object\n",
"IT 14999 non-null int64\n",
"RandD 14999 non-null int64\n",
"accounting 14999 non-null int64\n",
"hr 14999 non-null int64\n",
"management 14999 non-null int64\n",
"marketing 14999 non-null int64\n",
"product_mng 14999 non-null int64\n",
"sales 14999 non-null int64\n",
"support 14999 non-null int64\n",
"technical 14999 non-null int64\n",
"high 14999 non-null int64\n",
"low 14999 non-null int64\n",
"medium 14999 non-null int64\n",
"dtypes: float64(2), int64(19), object(2)\n",
"memory usage: 2.6+ MB\n"
]
}
],
"source": [
"# Changing categorical data to hot code encoding and contatenating it to the source data\n",
"\n",
"salesDummies = pd.get_dummies(xSource['sales']).astype('int64')\n",
"salaryDummies = pd.get_dummies(xSource['salary']).astype('int64')\n",
"xTemp = pd.concat([xSource,salesDummies,salaryDummies], axis=1)"
]
},
{
"cell_type": "code",
"execution_count": 78,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"# Dropping the categorical columns and using hot encoded values\n",
"xTemp.drop(['sales', 'salary'], axis=1, inplace=True)\n",
"xSource = xTemp.copy()"
]
},
{
"cell_type": "code",
"execution_count": 83,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"<class 'pandas.core.frame.DataFrame'>\n",
"RangeIndex: 14999 entries, 0 to 14998\n",
"Data columns (total 20 columns):\n",
"satisfaction_level 14999 non-null float64\n",
"last_evaluation 14999 non-null float64\n",
"number_project 14999 non-null int64\n",
"average_montly_hours 14999 non-null int64\n",
"time_spend_company 14999 non-null int64\n",
"Work_accident 14999 non-null int64\n",
"left 14999 non-null int64\n",
"promotion_last_5years 14999 non-null int64\n",
"IT 14999 non-null int64\n",
"RandD 14999 non-null int64\n",
"accounting 14999 non-null int64\n",
"hr 14999 non-null int64\n",
"management 14999 non-null int64\n",
"marketing 14999 non-null int64\n",
"product_mng 14999 non-null int64\n",
"support 14999 non-null int64\n",
"technical 14999 non-null int64\n",
"high 14999 non-null int64\n",
"low 14999 non-null int64\n",
"medium 14999 non-null int64\n",
"dtypes: float64(2), int64(18)\n",
"memory usage: 2.3 MB\n"
]
}
],
"source": [
"xSource.info()"
]
},
{
"cell_type": "code",
"execution_count": 85,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"y = xSource['left']\n",
"X = xSource.drop('left', axis=1)"
]
},
{
"cell_type": "code",
"execution_count": 86,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"(14999, 19) (14999,)\n"
]
}
],
"source": [
"print(X.shape, y.shape)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## TRAIN AND TEST DATA"
]
},
{
"cell_type": "code",
"execution_count": 92,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"from sklearn.model_selection import train_test_split"
]
},
{
"cell_type": "code",
"execution_count": 93,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.3, random_state = 42)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# MACHINE LEARNING"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Model evaluation"
]
},
{
"cell_type": "code",
"execution_count": 99,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"from sklearn.metrics import classification_report,confusion_matrix,accuracy_score,mean_absolute_error"
]
},
{
"cell_type": "code",
"execution_count": 100,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"def modelEvaluation(orginalValues, predictedValues):\n",
" print(\"MEAN ABSOLUTE ERROR: \\n\",mean_absolute_error(orginalValues, predictedValues))\n",
" print(\"-------------------------------------------------------\")\n",
" print(\"ACCURACY SCORE: \\n\",accuracy_score(orginalValues, predictedValues))\n",
" print(\"-------------------------------------------------------\")\n",
" print(\"CONFUSION MATRIX: \\n\",confusion_matrix(orginalValues, predictedValues))\n",
" print(\"-------------------------------------------------------\")\n",
" print(\"CLASSIFICATION REPORT: \\n\",classification_report(orginalValues, predictedValues))"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## 1. Random forest classifier"
]
},
{
"cell_type": "code",
"execution_count": 94,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"from sklearn.ensemble import RandomForestClassifier"
]
},
{
"cell_type": "code",
"execution_count": 105,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"rf = RandomForestClassifier(n_estimators=1000, random_state=40)"
]
},
{
"cell_type": "code",
"execution_count": 106,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"RandomForestClassifier(bootstrap=True, class_weight=None, criterion='gini',\n",
" max_depth=None, max_features='auto', max_leaf_nodes=None,\n",
" min_impurity_split=1e-07, min_samples_leaf=1,\n",
" min_samples_split=2, min_weight_fraction_leaf=0.0,\n",
" n_estimators=1000, n_jobs=1, oob_score=False, random_state=40,\n",
" verbose=0, warm_start=False)"
]
},
"execution_count": 106,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"rf.fit(X_train, y_train)"
]
},
{
"cell_type": "code",
"execution_count": 107,
"metadata": {
"collapsed": true
},
"outputs": [],
"source": [
"predictions = rf.predict(X_test)"
]
},
{
"cell_type": "code",
"execution_count": 108,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"MEAN ABSOLUTE ERROR: \n",
" 0.0133333333333\n",
"-------------------------------------------------------\n",
"ACCURACY SCORE: \n",
" 0.986666666667\n",
"-------------------------------------------------------\n",
"CONFUSION MATRIX: \n",
" [[3418 10]\n",
" [ 50 1022]]\n",
"-------------------------------------------------------\n",
"CLASSIFICATION REPORT: \n",
" precision recall f1-score support\n",
"\n",
" 0 0.99 1.00 0.99 3428\n",
" 1 0.99 0.95 0.97 1072\n",
"\n",
"avg / total 0.99 0.99 0.99 4500\n",
"\n"
]
}
],
"source": [
"modelEvaluation(y_test, predictions)"
]
},
{
"cell_type": "code",
"execution_count": 123,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<matplotlib.axes._subplots.AxesSubplot at 0x204101ce940>"
]
},
"execution_count": 123,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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MWWXb+cCemXl7+f0g4Jsl/PaXa7gTuCAi3kLzrO5vgPHznOOXwLSIOIjm7/WZ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\nSpIkqTj/A3NeEFJT61blAAAAAElFTkSuQmCC\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x2040ff52208>"
]
},
"metadata": {},
"output_type": "display_data"
}
],
"source": [
"fig, ax = plt.subplots(figsize=(10,10))\n",
"sns.barplot(rf.feature_importances_,X_train.columns)"
]
}
],
"metadata": {
"kernelspec": {
"display_name": "Python 3",
"language": "python",
"name": "python3"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 3
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
"version": "3.6.3"
}
},
"nbformat": 4,
"nbformat_minor": 2
}
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