From 33f4fe5139836484f45773feb0c6d6df07dee0b0 Mon Sep 17 00:00:00 2001 From: sardq Date: Fri, 8 Nov 2024 22:14:23 +0400 Subject: [PATCH 1/3] Lab 4 all? --- Lab4/lab4.ipynb | 7034 +++++++++++++++++++++++++++++++++++++++++++++++ 1 file changed, 7034 insertions(+) create mode 100644 Lab4/lab4.ipynb diff --git a/Lab4/lab4.ipynb b/Lab4/lab4.ipynb new file mode 100644 index 0000000..50478bb --- /dev/null +++ b/Lab4/lab4.ipynb @@ -0,0 +1,7034 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Лабораторная 4" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Информация о диабете индейцев Пима" + ] + }, + { + "cell_type": "code", + "execution_count": 92, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Index(['Pregnancies', 'Glucose', 'BloodPressure', 'SkinThickness', 'Insulin',\n", + " 'BMI', 'DiabetesPedigreeFunction', 'Age', 'Outcome'],\n", + " dtype='object')\n" + ] + }, + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "0 6 148 72 35 0 33.6 \n", + "1 1 85 66 29 0 26.6 \n", + "2 8 183 64 0 0 23.3 \n", + "3 1 89 66 23 94 28.1 \n", + "4 0 137 40 35 168 43.1 \n", + ".. ... ... ... ... ... ... \n", + "763 10 101 76 48 180 32.9 \n", + "764 2 122 70 27 0 36.8 \n", + "765 5 121 72 23 112 26.2 \n", + "766 1 126 60 0 0 30.1 \n", + "767 1 93 70 31 0 30.4 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome \n", + "0 0.627 50 1 \n", + "1 0.351 31 0 \n", + "2 0.672 32 1 \n", + "3 0.167 21 0 \n", + "4 2.288 33 1 \n", + ".. ... ... ... \n", + "763 0.171 63 0 \n", + "764 0.340 27 0 \n", + "765 0.245 30 0 \n", + "766 0.349 47 1 \n", + "767 0.315 23 0 \n", + "\n", + "[768 rows x 9 columns]" + ] + }, + "execution_count": 92, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "import numpy as np\n", + "import pandas as pd\n", + "import matplotlib.pyplot as plt\n", + "import seaborn as sns\n", + "from sklearn.model_selection import train_test_split\n", + "from sklearn import set_config\n", + "\n", + "set_config(transform_output=\"pandas\")\n", + "df = pd.read_csv(\".//scv//diabetes.csv\")\n", + "print(df.columns)\n", + "df" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование выборок" + ] + }, + { + "cell_type": "code", + "execution_count": 93, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'X_train'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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614 rows × 4 columns

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" + ], + "text/plain": [ + " Pregnancies SkinThickness Insulin BMI\n", + "196 -0.838489 -1.297466 -0.688684 -0.946400\n", + "69 0.072181 0.395520 0.180416 -0.377190\n", + "494 -0.231376 -1.297466 -0.688684 -3.953317\n", + "463 0.375738 0.583630 -0.688684 -0.538054\n", + "653 -0.534932 -1.297466 -0.688684 -0.637047\n", + ".. ... ... ... ...\n", + "322 -1.142046 -0.043402 -0.688684 -0.562802\n", + "109 -1.142046 0.270114 -0.375808 0.674613\n", + "27 -0.838489 -0.356918 0.528056 -1.082516\n", + "651 -0.838489 0.144708 0.232562 0.229143\n", + "197 -0.231376 -0.482325 -0.271516 -1.119638\n", + "\n", + "[614 rows x 4 columns]" + ] + }, + "execution_count": 95, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "\n", + "preprocessing_result = pipeline_end.fit_transform(X_train)\n", + "preprocessed_df = pd.DataFrame(\n", + " preprocessing_result,\n", + " columns=pipeline_end.get_feature_names_out(),\n", + ")\n", + "\n", + "preprocessed_df" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование набора моделей для классификации" + ] + }, + { + "cell_type": "code", + "execution_count": 96, + "metadata": {}, + "outputs": [], + "source": [ + "from sklearn import ensemble, linear_model, naive_bayes, neighbors, neural_network, tree\n", + "\n", + "class_models = {\n", + " \"logistic\": {\"model\": linear_model.LogisticRegression()},\n", + " # \"ridge\": {\"model\": linear_model.RidgeClassifierCV(cv=5, class_weight=\"balanced\")},\n", + " \"ridge\": {\"model\": linear_model.LogisticRegression(penalty=\"l2\", class_weight=\"balanced\")},\n", + " \"decision_tree\": {\n", + " \"model\": tree.DecisionTreeClassifier(max_depth=7, random_state=9)\n", + " },\n", + " \"knn\": {\"model\": neighbors.KNeighborsClassifier(n_neighbors=7)},\n", + " \"naive_bayes\": {\"model\": naive_bayes.GaussianNB()},\n", + " \"gradient_boosting\": {\n", + " \"model\": ensemble.GradientBoostingClassifier(n_estimators=210)\n", + " },\n", + " \"random_forest\": {\n", + " \"model\": ensemble.RandomForestClassifier(\n", + " max_depth=11, class_weight=\"balanced\", random_state=9\n", + " )\n", + " },\n", + " \"mlp\": {\n", + " \"model\": neural_network.MLPClassifier(\n", + " hidden_layer_sizes=(7,),\n", + " max_iter=500,\n", + " early_stopping=True,\n", + " random_state=9,\n", + " )\n", + " },\n", + "}" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Обучение моделей на обучающем наборе данных и оценка на тестовом" + ] + }, + { + "cell_type": "code", + "execution_count": 97, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Model: logistic\n", + "Model: ridge\n", + "Model: decision_tree\n", + "Model: knn\n", + "Model: naive_bayes\n", + "Model: gradient_boosting\n", + "Model: random_forest\n", + "Model: mlp\n" + ] + } + ], + "source": [ + "from sklearn import metrics\n", + "\n", + "for model_name in class_models.keys():\n", + " print(f\"Model: {model_name}\")\n", + " model = class_models[model_name][\"model\"]\n", + "\n", + " model_pipeline = Pipeline([(\"pipeline\", pipeline_end), (\"model\", model)])\n", + " model_pipeline = model_pipeline.fit(X_train, y_train.values.ravel())\n", + "\n", + " y_train_predict = model_pipeline.predict(X_train)\n", + " y_test_probs = model_pipeline.predict_proba(X_test)[:, 1]\n", + " y_test_predict = np.where(y_test_probs > 0.5, 1, 0)\n", + "\n", + " class_models[model_name][\"pipeline\"] = model_pipeline\n", + " class_models[model_name][\"probs\"] = y_test_probs\n", + " class_models[model_name][\"preds\"] = y_test_predict\n", + "\n", + " class_models[model_name][\"Precision_train\"] = metrics.precision_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Precision_test\"] = metrics.precision_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Recall_train\"] = metrics.recall_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Recall_test\"] = metrics.recall_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Accuracy_train\"] = metrics.accuracy_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Accuracy_test\"] = metrics.accuracy_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"ROC_AUC_test\"] = metrics.roc_auc_score(\n", + " y_test, y_test_probs\n", + " )\n", + " class_models[model_name][\"F1_train\"] = metrics.f1_score(y_train, y_train_predict)\n", + " class_models[model_name][\"F1_test\"] = metrics.f1_score(y_test, y_test_predict)\n", + " class_models[model_name][\"MCC_test\"] = metrics.matthews_corrcoef(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Cohen_kappa_test\"] = metrics.cohen_kappa_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Confusion_matrix\"] = metrics.confusion_matrix(\n", + " y_test, y_test_predict\n", + " )" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Сводная таблица оценок качества для использованных моделей классификации\n", + "\n", + "Матрица неточностей" + ] + }, + { + "cell_type": "code", + "execution_count": 98, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "from sklearn.metrics import ConfusionMatrixDisplay\n", + "import matplotlib.pyplot as plt\n", + "\n", + "_, ax = plt.subplots(int(len(class_models) / 2), 2, figsize=(12, 10), sharex=False, sharey=False)\n", + "for index, key in enumerate(class_models.keys()):\n", + " c_matrix = class_models[key][\"Confusion_matrix\"]\n", + " disp = ConfusionMatrixDisplay(\n", + " confusion_matrix=c_matrix, display_labels=[\"Healthy\", \"Sick\"]\n", + " ).plot(ax=ax.flat[index])\n", + " disp.ax_.set_title(key)\n", + "\n", + "plt.subplots_adjust(top=1, bottom=0, hspace=0.4, wspace=0.1)\n", + "plt.show()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Точность, полнота, верность (аккуратность), F-мера" + ] + }, + { + "cell_type": "code", + "execution_count": 99, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
naive_bayes0.5645160.6285710.3271030.4074070.6775240.7077920.4142010.494382
ridge0.4943820.5526320.6168220.7777780.6465800.7012990.5488570.646154
knn0.6708070.5510200.5046730.5000000.7410420.6818180.5760000.524272
random_forest0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455
logistic0.6186440.5250000.3411210.3888890.6970680.6623380.4397590.446809
gradient_boosting0.9202130.5121950.8084110.3888890.9087950.6558440.8606970.442105
decision_tree0.7186150.4590160.7757010.5185190.8159610.6168830.7460670.486957
mlp0.4091950.4173910.8317760.8888890.5228010.5259740.5485360.568047
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 99, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "class_metrics = pd.DataFrame.from_dict(class_models, \"index\")[\n", + " [\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " \"Accuracy_train\",\n", + " \"Accuracy_test\",\n", + " \"F1_train\",\n", + " \"F1_test\",\n", + " ]\n", + "]\n", + "class_metrics.sort_values(\n", + " by=\"Accuracy_test\", ascending=False\n", + ").style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\"Accuracy_train\", \"Accuracy_test\", \"F1_train\", \"F1_test\"],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "ROC-кривая, каппа Коэна, коэффициент корреляции Мэтьюса" + ] + }, + { + "cell_type": "code", + "execution_count": 100, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
ridge0.7012990.6461540.7670370.4002710.417827
logistic0.6623380.4468090.7662960.2115010.216434
naive_bayes0.7077920.4943820.7537040.3018340.315869
knn0.6818180.5242720.7455560.2860930.286855
mlp0.5259740.5680470.7290740.1737470.240181
random_forest0.6753250.5454550.7150930.2930590.293176
gradient_boosting0.6558440.4421050.7096300.1999610.203926
decision_tree0.6168830.4869570.6128700.1830610.183927
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 100, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "class_metrics = pd.DataFrame.from_dict(class_models, \"index\")[\n", + " [\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " \"ROC_AUC_test\",\n", + " \"Cohen_kappa_test\",\n", + " \"MCC_test\",\n", + " ]\n", + "]\n", + "class_metrics.sort_values(by=\"ROC_AUC_test\", ascending=False).style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\n", + " \"ROC_AUC_test\",\n", + " \"MCC_test\",\n", + " \"Cohen_kappa_test\",\n", + " ],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "code", + "execution_count": 101, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'ridge'" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "best_model = str(class_metrics.sort_values(by=\"MCC_test\", ascending=False).iloc[0].name)\n", + "\n", + "display(best_model)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Вывод данных с ошибкой предсказания для оценки" + ] + }, + { + "cell_type": "code", + "execution_count": 102, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'Error items count: 46'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + " Pregnancies SkinThickness Insulin BMI\n", + "450 -0.838489 -0.482325 0.136961 -1.329999" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/plain": [ + "'predicted: 0 (proba: [0.81353825 0.18646175])'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/plain": [ + "'real: 0'" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "model = class_models[best_model][\"pipeline\"]\n", + "\n", + "example_id = 450\n", + "test = pd.DataFrame(X_test.loc[example_id, :]).T\n", + "test_preprocessed = pd.DataFrame(preprocessed_df.loc[example_id, :]).T\n", + "display(test)\n", + "display(test_preprocessed)\n", + "result_proba = model.predict_proba(test)[0]\n", + "result = model.predict(test)[0]\n", + "real = int(y_test.loc[example_id].values[0])\n", + "display(f\"predicted: {result} (proba: {result_proba})\")\n", + "display(f\"real: {real}\")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Подбор гиперпараметров методом поиска по сетке" + ] + }, + { + "cell_type": "code", + "execution_count": 104, + "metadata": {}, + "outputs": [], + "source": [ + "from sklearn.pipeline import Pipeline\n", + "from sklearn.preprocessing import StandardScaler\n", + "from sklearn.compose import ColumnTransformer\n", + "from sklearn.ensemble import RandomForestClassifier\n", + "import numpy as np\n", + "from sklearn import metrics\n", + "import pandas as pd\n", + "\n", + "\n", + "# Определяем числовые признаки\n", + "numeric_features = X_train.select_dtypes(include=['float64', 'int64']).columns.tolist()\n", + "\n", + "# Установка random_state\n", + "random_state = 42\n", + "\n", + "# Определение трансформера\n", + "pipeline_end = ColumnTransformer([\n", + " ('numeric', StandardScaler(), numeric_features),\n", + " # Добавьте другие трансформеры, если требуется\n", + "])\n", + "\n", + "# Объявление модели\n", + "optimized_model = RandomForestClassifier(\n", + " random_state=random_state,\n", + " criterion=\"gini\",\n", + " max_depth=5,\n", + " max_features=\"sqrt\",\n", + " n_estimators=10,\n", + ")\n", + "\n", + "# Создание пайплайна с корректными шагами\n", + "result = {}\n", + "\n", + "# Обучение модели\n", + "result[\"pipeline\"] = Pipeline([\n", + " (\"pipeline\", pipeline_end),\n", + " (\"model\", optimized_model)\n", + "]).fit(X_train, y_train.values.ravel())\n", + "\n", + "# Прогнозирование и расчет метрик\n", + "result[\"train_preds\"] = result[\"pipeline\"].predict(X_train)\n", + "result[\"probs\"] = result[\"pipeline\"].predict_proba(X_test)[:, 1]\n", + "result[\"preds\"] = np.where(result[\"probs\"] > 0.5, 1, 0)\n", + "\n", + "# Метрики для оценки модели\n", + "result[\"Precision_train\"] = metrics.precision_score(y_train, result[\"train_preds\"])\n", + "result[\"Precision_test\"] = metrics.precision_score(y_test, result[\"preds\"])\n", + "result[\"Recall_train\"] = metrics.recall_score(y_train, result[\"train_preds\"])\n", + "result[\"Recall_test\"] = metrics.recall_score(y_test, result[\"preds\"])\n", + "result[\"Accuracy_train\"] = metrics.accuracy_score(y_train, result[\"train_preds\"])\n", + "result[\"Accuracy_test\"] = metrics.accuracy_score(y_test, result[\"preds\"])\n", + "result[\"ROC_AUC_test\"] = metrics.roc_auc_score(y_test, result[\"probs\"])\n", + "result[\"F1_train\"] = metrics.f1_score(y_train, result[\"train_preds\"])\n", + "result[\"F1_test\"] = metrics.f1_score(y_test, result[\"preds\"])\n", + "result[\"MCC_test\"] = metrics.matthews_corrcoef(y_test, result[\"preds\"])\n", + "result[\"Cohen_kappa_test\"] = metrics.cohen_kappa_score(y_test, result[\"preds\"])\n", + "result[\"Confusion_matrix\"] = metrics.confusion_matrix(y_test, result[\"preds\"])" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование данных для оценки старой и новой версии модели" + ] + }, + { + "cell_type": "code", + "execution_count": 105, + "metadata": {}, + "outputs": [], + "source": [ + "optimized_metrics = pd.DataFrame(columns=list(result.keys()))\n", + "optimized_metrics.loc[len(optimized_metrics)] = pd.Series(\n", + " data=class_models[optimized_model_type]\n", + ")\n", + "optimized_metrics.loc[len(optimized_metrics)] = pd.Series(\n", + " data=result\n", + ")\n", + "optimized_metrics.insert(loc=0, column=\"Name\", value=[\"Old\", \"New\"])\n", + "optimized_metrics = optimized_metrics.set_index(\"Name\")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Оценка параметров старой и новой модели" + ] + }, + { + "cell_type": "code", + "execution_count": 106, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
Name        
Old0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455
New1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 106, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "optimized_metrics[\n", + " [\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " \"Accuracy_train\",\n", + " \"Accuracy_test\",\n", + " \"F1_train\",\n", + " \"F1_test\",\n", + " ]\n", + "].style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\"Accuracy_train\", \"Accuracy_test\", \"F1_train\", \"F1_test\"],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "code", + "execution_count": 107, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
Name     
Old0.6753250.5454550.7150930.2930590.293176
New1.0000001.0000001.0000001.0000001.000000
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" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "\n", + "\n", + "_, ax = plt.subplots(1, 2, figsize=(10, 4), sharex=False, sharey=False\n", + ")\n", + "\n", + "for index in range(0, len(optimized_metrics)):\n", + " c_matrix = optimized_metrics.iloc[index][\"Confusion_matrix\"]\n", + " disp = ConfusionMatrixDisplay(\n", + " confusion_matrix=c_matrix, display_labels=[\"Healthy\", \"Sick\"]\n", + " ).plot(ax=ax.flat[index])\n", + "\n", + "plt.subplots_adjust(top=1, bottom=0, hspace=0.4, wspace=0.3)\n", + "plt.show()\n", + "\n" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "В желтом квадрате мы видим значение 74, что обозначает количество правильно классифицированных объектов, отнесенных к классу \"Sick\". Это свидетельствует о том, что модель успешно идентифицирует объекты этого класса, минимизируя количество ложных положительных срабатываний.\n", + "\n", + "В зеленом квадрате значение 54 указывает на количество правильно классифицированных объектов, отнесенных к классу \"Healthy\". Это также является показателем хорошей точности модели в определении объектов данного класса." + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Определение достижимого уровня качества модели для второй задачи" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Подготовка данных" + ] + }, + { + "cell_type": "code", + "execution_count": 111, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin \\\n", + "count 768.000000 768.000000 768.000000 768.000000 768.000000 \n", + "mean 3.845052 120.894531 69.105469 20.536458 79.799479 \n", + "std 3.369578 31.972618 19.355807 15.952218 115.244002 \n", + "min 0.000000 0.000000 0.000000 0.000000 0.000000 \n", + "25% 1.000000 99.000000 62.000000 0.000000 0.000000 \n", + "50% 3.000000 117.000000 72.000000 23.000000 30.500000 \n", + "75% 6.000000 140.250000 80.000000 32.000000 127.250000 \n", + "max 17.000000 199.000000 122.000000 99.000000 846.000000 \n", + "\n", + " BMI DiabetesPedigreeFunction Age Outcome \n", + "count 768.000000 768.000000 768.000000 768.000000 \n", + "mean 31.992578 0.471876 33.240885 0.348958 \n", + "std 7.884160 0.331329 11.760232 0.476951 \n", + "min 0.000000 0.078000 21.000000 0.000000 \n", + "25% 27.300000 0.243750 24.000000 0.000000 \n", + "50% 32.000000 0.372500 29.000000 0.000000 \n", + "75% 36.600000 0.626250 41.000000 1.000000 \n", + "max 67.100000 2.420000 81.000000 1.000000 \n" + ] + } + ], + "source": [ + "import numpy as np\n", + "import pandas as pd\n", + "import matplotlib.pyplot as plt\n", + "import seaborn as sns\n", + "from sklearn.model_selection import train_test_split\n", + "from sklearn import set_config\n", + "\n", + "\n", + "random_state = 9\n", + "set_config(transform_output=\"pandas\")\n", + "df = pd.read_csv(\".//scv//diabetes.csv\")\n", + "print(df.describe())" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование выборок" + ] + }, + { + "cell_type": "code", + "execution_count": 112, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'X_train'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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frac_train), random_state=random_state\n", + " )\n", + "\n", + " if frac_val == 0:\n", + " return df_train, pd.DataFrame(), df_temp, y_train, pd.DataFrame(), y_temp\n", + "\n", + " relative_frac_test = frac_test / (frac_val + frac_test)\n", + "\n", + " df_val, df_test, y_val, y_test = train_test_split(\n", + " df_temp,\n", + " y_temp,\n", + " stratify=y_temp,\n", + " test_size=relative_frac_test,\n", + " random_state=random_state,\n", + " )\n", + "\n", + " assert len(df_input) == len(df_train) + len(df_val) + len(df_test)\n", + " \n", + " return df_train, df_val, df_test, y_train, y_val, y_test\n", + "\n", + "\n", + "X_train, X_val, X_test, y_train, y_val, y_test = split_stratified_into_train_val_test(\n", + " df, stratify_colname=\"Outcome\", frac_train=0.80, frac_val=0.0, frac_test=0.20, random_state=random_state\n", + ")\n", + "\n", + "display(\"X_train\", X_train)\n", + "display(\"y_train\", y_train)\n", + "display(\"X_test\", X_test)\n", + "display(\"y_test\", y_test)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование конвейера для классификации данных" + ] + }, + { + "cell_type": "code", + "execution_count": 121, + "metadata": {}, + "outputs": [], + "source": [ + "import numpy as np\n", + "from sklearn.base import BaseEstimator, TransformerMixin\n", + "from sklearn.compose import ColumnTransformer\n", + "from sklearn.discriminant_analysis import StandardScaler\n", + "from sklearn.impute import SimpleImputer\n", + "from sklearn.pipeline import Pipeline\n", + "from sklearn.preprocessing import OneHotEncoder\n", + "\n", + "class DiabetFeatures(BaseEstimator, TransformerMixin):\n", + " def __init__(self):\n", + " pass\n", + " def fit(self, X, y=None):\n", + " return self\n", + " \n", + "\n", + "columns_to_drop = [\"Pregnancies\", \"SkinThickness\", \"Insulin\", \"BMI\"]\n", + "num_columns = [\"Glucose\", \"Age\", \"BloodPressure\", \"Outcome\", \"DiabetesPedigreeFunction\"]\n", + "cat_columns = []\n", + "\n", + "num_imputer = SimpleImputer(strategy=\"median\")\n", + "num_scaler = StandardScaler()\n", + "preprocessing_num = Pipeline(\n", + " [\n", + " (\"imputer\", num_imputer),\n", + " (\"scaler\", num_scaler),\n", + " ]\n", + ")\n", + "\n", + "cat_imputer = SimpleImputer(strategy=\"constant\", fill_value=\"unknown\")\n", + "cat_encoder = OneHotEncoder(handle_unknown=\"ignore\", sparse_output=False, drop=\"first\")\n", + "preprocessing_cat = Pipeline(\n", + " [\n", + " (\"imputer\", cat_imputer),\n", + " (\"encoder\", cat_encoder),\n", + " ]\n", + ")\n", + "\n", + "features_preprocessing = ColumnTransformer(\n", + " verbose_feature_names_out=False,\n", + " transformers=[\n", + " (\"prepocessing_num\", preprocessing_num, num_columns),\n", + " (\"prepocessing_cat\", preprocessing_cat, cat_columns),\n", + " ],\n", + " remainder=\"passthrough\"\n", + ")\n", + "\n", + "\n", + "drop_columns = ColumnTransformer(\n", + " verbose_feature_names_out=False,\n", + " transformers=[\n", + " (\"drop_columns\", \"drop\", columns_to_drop),\n", + " ],\n", + " remainder=\"passthrough\",\n", + ")\n", + "\n", + "features_postprocessing = ColumnTransformer(\n", + " verbose_feature_names_out=False,\n", + " transformers=[\n", + " (\"prepocessing_cat\", preprocessing_cat, [\"Cabin_type\"]),\n", + " ],\n", + " remainder=\"passthrough\",\n", + ")\n", + "\n", + "pipeline_end = Pipeline(\n", + " [\n", + " (\"features_preprocessing\", features_preprocessing),\n", + " (\"drop_columns\", drop_columns),\n", + " ]\n", + ")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Демонстрация работы конвейера" + ] + }, + { + "cell_type": "code", + "execution_count": 122, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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614 rows × 5 columns

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" + ], + "text/plain": [ + " Glucose Age BloodPressure Outcome DiabetesPedigreeFunction\n", + "196 -0.478144 -1.029257 -0.554050 -0.731437 -0.849205\n", + "69 0.818506 -0.522334 0.804885 -0.731437 -0.843172\n", + "494 -1.268784 -0.944770 -3.473244 -0.731437 -0.888421\n", + "463 -1.015779 0.322537 0.452568 -0.731437 -0.635028\n", + "653 -0.003760 -0.522334 -0.755374 -0.731437 -0.040763\n", + ".. ... ... ... ... ...\n", + "322 0.122742 0.238050 0.049921 1.367172 -0.647095\n", + "109 -0.794400 -0.775796 0.804885 1.367172 -0.668211\n", + "27 -0.731149 -0.944770 -0.151403 -0.731437 0.055767\n", + "651 -0.098637 -0.522334 -0.453388 -0.731437 -0.007581\n", + "197 -0.414893 -0.860283 -0.352726 1.367172 0.631933\n", + "\n", + "[614 rows x 5 columns]" + ] + }, + "execution_count": 122, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "preprocessing_result = pipeline_end.fit_transform(X_train)\n", + "preprocessed_df = pd.DataFrame(\n", + " preprocessing_result,\n", + " columns=pipeline_end.get_feature_names_out(),\n", + ")\n", + "\n", + "preprocessed_df" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование набора моделей для классификации" + ] + }, + { + "cell_type": "code", + "execution_count": 123, + "metadata": {}, + "outputs": [], + "source": [ + "from sklearn.pipeline import make_pipeline\n", + "from sklearn.preprocessing import PolynomialFeatures\n", + "from sklearn import linear_model, tree, neighbors, ensemble, neural_network\n", + "\n", + "random_state = 9\n", + "\n", + "models = {\n", + " \"linear\": {\"model\": linear_model.LinearRegression(n_jobs=-1)},\n", + " \"linear_poly\": {\n", + " \"model\": make_pipeline(\n", + " PolynomialFeatures(degree=2),\n", + " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", + " )\n", + " },\n", + " \"linear_interact\": {\n", + " \"model\": make_pipeline(\n", + " PolynomialFeatures(interaction_only=True),\n", + " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", + " )\n", + " },\n", + " \"ridge\": {\"model\": linear_model.RidgeCV()},\n", + " \"decision_tree\": {\n", + " \"model\": tree.DecisionTreeRegressor(max_depth=7, random_state=random_state)\n", + " },\n", + " \"knn\": {\"model\": neighbors.KNeighborsRegressor(n_neighbors=7, n_jobs=-1)},\n", + " \"random_forest\": {\n", + " \"model\": ensemble.RandomForestRegressor(\n", + " max_depth=7, random_state=random_state, n_jobs=-1\n", + " )\n", + " },\n", + " \"mlp\": {\n", + " \"model\": neural_network.MLPRegressor(\n", + " activation=\"tanh\",\n", + " hidden_layer_sizes=(3,),\n", + " max_iter=500,\n", + " early_stopping=True,\n", + " random_state=random_state,\n", + " )\n", + " },\n", + "}" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Обучение моделей на обучающем наборе данных и оценка на тестовом¶" + ] + }, + { + "cell_type": "code", + "execution_count": 124, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Model: logistic\n", + "Model: ridge\n", + "Model: decision_tree\n", + "Model: knn\n", + "Model: naive_bayes\n", + "Model: gradient_boosting\n", + "Model: random_forest\n", + "Model: mlp\n" + ] + } + ], + "source": [ + "import numpy as np\n", + "from sklearn import metrics\n", + "\n", + "for model_name in class_models.keys():\n", + " print(f\"Model: {model_name}\")\n", + " model = class_models[model_name][\"model\"]\n", + "\n", + " model_pipeline = Pipeline([(\"pipeline\", pipeline_end), (\"model\", model)])\n", + " model_pipeline = model_pipeline.fit(X_train, y_train.values.ravel())\n", + "\n", + " y_train_predict = model_pipeline.predict(X_train)\n", + " y_test_probs = model_pipeline.predict_proba(X_test)[:, 1]\n", + " y_test_predict = np.where(y_test_probs > 0.5, 1, 0)\n", + "\n", + " class_models[model_name][\"pipeline\"] = model_pipeline\n", + " class_models[model_name][\"probs\"] = y_test_probs\n", + " class_models[model_name][\"preds\"] = y_test_predict\n", + "\n", + " class_models[model_name][\"Precision_train\"] = metrics.precision_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Precision_test\"] = metrics.precision_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Recall_train\"] = metrics.recall_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Recall_test\"] = metrics.recall_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Accuracy_train\"] = metrics.accuracy_score(\n", + " y_train, y_train_predict\n", + " )\n", + " class_models[model_name][\"Accuracy_test\"] = metrics.accuracy_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"ROC_AUC_test\"] = metrics.roc_auc_score(\n", + " y_test, y_test_probs\n", + " )\n", + " class_models[model_name][\"F1_train\"] = metrics.f1_score(y_train, y_train_predict)\n", + " class_models[model_name][\"F1_test\"] = metrics.f1_score(y_test, y_test_predict)\n", + " class_models[model_name][\"MCC_test\"] = metrics.matthews_corrcoef(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Cohen_kappa_test\"] = metrics.cohen_kappa_score(\n", + " y_test, y_test_predict\n", + " )\n", + " class_models[model_name][\"Confusion_matrix\"] = metrics.confusion_matrix(\n", + " y_test, y_test_predict\n", + " )" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Сводная таблица оценок качества для использованных моделей классификации¶\n", + "\n", + "Матрица неточностей\n" + ] + }, + { + "cell_type": "code", + "execution_count": 125, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "from sklearn.metrics import ConfusionMatrixDisplay\n", + "import matplotlib.pyplot as plt\n", + "\n", + "_, ax = plt.subplots(int(len(class_models) / 2), 2, figsize=(12, 10), sharex=False, sharey=False)\n", + "for index, key in enumerate(class_models.keys()):\n", + " c_matrix = class_models[key][\"Confusion_matrix\"]\n", + " disp = ConfusionMatrixDisplay(\n", + " confusion_matrix=c_matrix, display_labels=[\"Less\", \"More\"]\n", + " ).plot(ax=ax.flat[index])\n", + " disp.ax_.set_title(key)\n", + "\n", + "plt.subplots_adjust(top=1, bottom=0, hspace=0.4, wspace=0.1)\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 126, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
logistic1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
ridge1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
decision_tree1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
naive_bayes1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
random_forest1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
gradient_boosting1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
knn1.0000000.9818180.9906541.0000000.9967430.9935060.9953050.990826
mlp0.7293230.6857140.4532710.4444440.7508140.7337660.5590780.539326
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 126, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "class_metrics = pd.DataFrame.from_dict(class_models, \"index\")[\n", + " [\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " \"Accuracy_train\",\n", + " \"Accuracy_test\",\n", + " \"F1_train\",\n", + " \"F1_test\",\n", + " ]\n", + "]\n", + "class_metrics.sort_values(\n", + " by=\"Accuracy_test\", ascending=False\n", + ").style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\"Accuracy_train\", \"Accuracy_test\", \"F1_train\", \"F1_test\"],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "\n", + "\n", + "Почти все модели, включая логистическую регрессию, ридж-регрессию, KNN, наивный байесовский классификатор, многослойную перцептронную сеть, случайный лес, дерево решений и градиентный бустинг, демонстрируют 100% точность (1.000000) на обучающей выборке. Это указывает на то, что модели смогли подстроиться под обучающие данные, что может указывать на возможное переобучение.\n", + "\n", + "ROC-кривая, каппа Коэна, коэффициент корреляции Мэтьюса\n" + ] + }, + { + "cell_type": "code", + "execution_count": 129, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
logistic1.0000001.0000001.0000001.0000001.000000
ridge1.0000001.0000001.0000001.0000001.000000
decision_tree1.0000001.0000001.0000001.0000001.000000
knn0.9935060.9908261.0000000.9858010.985901
naive_bayes1.0000001.0000001.0000001.0000001.000000
gradient_boosting1.0000001.0000001.0000001.0000001.000000
random_forest1.0000001.0000001.0000001.0000001.000000
mlp0.7337660.5393260.6531480.3638930.380814
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 129, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "class_metrics = pd.DataFrame.from_dict(class_models, \"index\")[\n", + " [\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " \"ROC_AUC_test\",\n", + " \"Cohen_kappa_test\",\n", + " \"MCC_test\",\n", + " ]\n", + "]\n", + "class_metrics.sort_values(by=\"ROC_AUC_test\", ascending=False).style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\n", + " \"ROC_AUC_test\",\n", + " \"MCC_test\",\n", + " \"Cohen_kappa_test\",\n", + " ],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "code", + "execution_count": 130, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'logistic'" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "best_model = str(class_metrics.sort_values(by=\"MCC_test\", ascending=False).iloc[0].name)\n", + "\n", + "display(best_model)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Вывод данных с ошибкой предсказания для оценки" + ] + }, + { + "cell_type": "code", + "execution_count": 132, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'Error items count: 0'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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PregnanciesPredictedGlucoseBloodPressureSkinThicknessInsulinBMIDiabetesPedigreeFunctionAgeOutcome
\n", + "
" + ], + "text/plain": [ + "Empty DataFrame\n", + "Columns: [Pregnancies, Predicted, Glucose, BloodPressure, SkinThickness, Insulin, BMI, DiabetesPedigreeFunction, Age, Outcome]\n", + "Index: []" + ] + }, + "execution_count": 132, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "preprocessing_result = pipeline_end.transform(X_test)\n", + "preprocessed_df = pd.DataFrame(\n", + " preprocessing_result,\n", + " columns=pipeline_end.get_feature_names_out(),\n", + ")\n", + "\n", + "y_pred = class_models[best_model][\"preds\"]\n", + "\n", + "error_index = y_test[y_test[\"Outcome\"] != y_pred].index.tolist()\n", + "display(f\"Error items count: {len(error_index)}\")\n", + "\n", + "error_predicted = pd.Series(y_pred, index=y_test.index).loc[error_index]\n", + "error_df = X_test.loc[error_index].copy()\n", + "error_df.insert(loc=1, column=\"Predicted\", value=error_predicted)\n", + "error_df.sort_index()" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Пример использования обученной модели (конвейера) для предсказания" + ] + }, + { + "cell_type": "code", + "execution_count": 141, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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PregnanciesGlucoseBloodPressureSkinThicknessInsulinBMIDiabetesPedigreeFunctionAgeOutcome
5557.0124.070.033.0215.025.50.16137.00.0
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" + ], + "text/plain": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "555 7.0 124.0 70.0 33.0 215.0 25.5 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome \n", + "555 0.161 37.0 0.0 " + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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GlucoseAgeBloodPressureOutcomeDiabetesPedigreeFunction
5550.1227420.3225370.049921-0.731437-0.927636
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" + ], + "text/plain": [ + " Glucose Age BloodPressure Outcome DiabetesPedigreeFunction\n", + "555 0.122742 0.322537 0.049921 -0.731437 -0.927636" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/plain": [ + "'predicted: 0 (proba: [0.99431769 0.00568231])'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/plain": [ + "'real: 0'" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "model = class_models[best_model][\"pipeline\"]\n", + "\n", + "example_id = 555\n", + "test = pd.DataFrame(X_test.loc[example_id, :]).T\n", + "test_preprocessed = pd.DataFrame(preprocessed_df.loc[example_id, :]).T\n", + "display(test)\n", + "display(test_preprocessed)\n", + "result_proba = model.predict_proba(test)[0]\n", + "result = model.predict(test)[0]\n", + "real = int(y_test.loc[example_id].values[0])\n", + "display(f\"predicted: {result} (proba: {result_proba})\")\n", + "display(f\"real: {real}\")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Подбор гиперпараметров методом поиска по сетке" + ] + }, + { + "cell_type": "code", + "execution_count": 142, + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\numpy\\ma\\core.py:2881: RuntimeWarning: invalid value encountered in cast\n", + " _data = np.array(data, dtype=dtype, copy=copy,\n" + ] + }, + { + "data": { + "text/plain": [ + "{'model__criterion': 'gini',\n", + " 'model__max_depth': 5,\n", + " 'model__max_features': 'sqrt',\n", + " 'model__n_estimators': 10}" + ] + }, + "execution_count": 142, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "from sklearn.model_selection import GridSearchCV\n", + "\n", + "optimized_model_type = \"random_forest\"\n", + "\n", + "random_forest_model = class_models[optimized_model_type][\"pipeline\"]\n", + "\n", + "param_grid = {\n", + " \"model__n_estimators\": [10, 50, 100],\n", + " \"model__max_features\": [\"sqrt\", \"log2\"],\n", + " \"model__max_depth\": [5, 7, 10],\n", + " \"model__criterion\": [\"gini\", \"entropy\"],\n", + "}\n", + "\n", + "gs_optomizer = GridSearchCV(\n", + " estimator=random_forest_model, param_grid=param_grid, n_jobs=-1\n", + ")\n", + "gs_optomizer.fit(X_train, y_train.values.ravel())\n", + "gs_optomizer.best_params_" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Обучение модели с новыми гиперпараметрами" + ] + }, + { + "cell_type": "code", + "execution_count": 143, + "metadata": {}, + "outputs": [], + "source": [ + "optimized_model = ensemble.RandomForestClassifier(\n", + " random_state=random_state,\n", + " criterion=\"gini\",\n", + " max_depth=5,\n", + " max_features=\"log2\",\n", + " n_estimators=10,\n", + ")\n", + "\n", + "result = {}\n", + "\n", + "result[\"pipeline\"] = Pipeline([(\"pipeline\", pipeline_end), (\"model\", optimized_model)]).fit(X_train, y_train.values.ravel())\n", + "result[\"train_preds\"] = result[\"pipeline\"].predict(X_train)\n", + "result[\"probs\"] = result[\"pipeline\"].predict_proba(X_test)[:, 1]\n", + "result[\"preds\"] = np.where(result[\"probs\"] > 0.5, 1, 0)\n", + "\n", + "result[\"Precision_train\"] = metrics.precision_score(y_train, result[\"train_preds\"])\n", + "result[\"Precision_test\"] = metrics.precision_score(y_test, result[\"preds\"])\n", + "result[\"Recall_train\"] = metrics.recall_score(y_train, result[\"train_preds\"])\n", + "result[\"Recall_test\"] = metrics.recall_score(y_test, result[\"preds\"])\n", + "result[\"Accuracy_train\"] = metrics.accuracy_score(y_train, result[\"train_preds\"])\n", + "result[\"Accuracy_test\"] = metrics.accuracy_score(y_test, result[\"preds\"])\n", + "result[\"ROC_AUC_test\"] = metrics.roc_auc_score(y_test, result[\"probs\"])\n", + "result[\"F1_train\"] = metrics.f1_score(y_train, result[\"train_preds\"])\n", + "result[\"F1_test\"] = metrics.f1_score(y_test, result[\"preds\"])\n", + "result[\"MCC_test\"] = metrics.matthews_corrcoef(y_test, result[\"preds\"])\n", + "result[\"Cohen_kappa_test\"] = metrics.cohen_kappa_score(y_test, result[\"preds\"])\n", + "result[\"Confusion_matrix\"] = metrics.confusion_matrix(y_test, result[\"preds\"])" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Формирование данных для оценки старой и новой версии модели" + ] + }, + { + "cell_type": "code", + "execution_count": 144, + "metadata": {}, + "outputs": [], + "source": [ + "optimized_metrics = pd.DataFrame(columns=list(result.keys()))\n", + "optimized_metrics.loc[len(optimized_metrics)] = pd.Series(\n", + " data=class_models[optimized_model_type]\n", + ")\n", + "optimized_metrics.loc[len(optimized_metrics)] = pd.Series(\n", + " data=result\n", + ")\n", + "optimized_metrics.insert(loc=0, column=\"Name\", value=[\"Old\", \"New\"])\n", + "optimized_metrics = optimized_metrics.set_index(\"Name\")" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Оценка параметров старой и новой модели" + ] + }, + { + "cell_type": "code", + "execution_count": 145, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
Name        
Old1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
New1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 145, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "optimized_metrics[\n", + " [\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " \"Accuracy_train\",\n", + " \"Accuracy_test\",\n", + " \"F1_train\",\n", + " \"F1_test\",\n", + " ]\n", + "].style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\"Accuracy_train\", \"Accuracy_test\", \"F1_train\", \"F1_test\"],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Precision_train\",\n", + " \"Precision_test\",\n", + " \"Recall_train\",\n", + " \"Recall_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "code", + "execution_count": 146, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
Name     
Old1.0000001.0000001.0000001.0000001.000000
New1.0000001.0000001.0000001.0000001.000000
\n" + ], + "text/plain": [ + "" + ] + }, + "execution_count": 146, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "optimized_metrics[\n", + " [\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " \"ROC_AUC_test\",\n", + " \"Cohen_kappa_test\",\n", + " \"MCC_test\",\n", + " ]\n", + "].style.background_gradient(\n", + " cmap=\"plasma\",\n", + " low=0.3,\n", + " high=1,\n", + " subset=[\n", + " \"ROC_AUC_test\",\n", + " \"MCC_test\",\n", + " \"Cohen_kappa_test\",\n", + " ],\n", + ").background_gradient(\n", + " cmap=\"viridis\",\n", + " low=1,\n", + " high=0.3,\n", + " subset=[\n", + " \"Accuracy_test\",\n", + " \"F1_test\",\n", + " ],\n", + ")" + ] + }, + { + "cell_type": "code", + "execution_count": 147, + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ], + "text/plain": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "0 6 148 72 35 0 33.6 \n", + "1 1 85 66 29 0 26.6 \n", + "2 8 183 64 0 0 23.3 \n", + "3 1 89 66 23 94 28.1 \n", + "4 0 137 40 35 168 43.1 \n", + ".. ... ... ... ... ... ... \n", + "763 10 101 76 48 180 32.9 \n", + "764 2 122 70 27 0 36.8 \n", + "765 5 121 72 23 112 26.2 \n", + "766 1 126 60 0 0 30.1 \n", + "767 1 93 70 31 0 30.4 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome \n", + "0 0.627 50 1 \n", + "1 0.351 31 0 \n", + "2 0.672 32 1 \n", + "3 0.167 21 0 \n", + "4 2.288 33 1 \n", + ".. ... ... ... \n", + "763 0.171 63 0 \n", + "764 0.340 27 0 \n", + "765 0.245 30 0 \n", + "766 0.349 47 1 \n", + "767 0.315 23 0 \n", + "\n", + "[768 rows x 9 columns]" + ] + }, + "execution_count": 148, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "import numpy as np\n", + "import pandas as pd\n", + "import matplotlib.pyplot as plt\n", + "import seaborn as sns\n", + "from sklearn.model_selection import train_test_split\n", + "from sklearn import set_config\n", + "\n", + "random_state=9\n", + "set_config(transform_output=\"pandas\")\n", + "df = pd.read_csv(\".//scv//diabetes.csv\")\n", + "print(df.columns)\n", + "df" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Разделение набора данных на обучающую и тестовые выборки" + ] + }, + { + "cell_type": "code", + "execution_count": 150, + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "'X_train'" + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + " Outcome\n", + "668 0\n", + "324 0\n", + "624 0\n", + "690 0\n", + "473 0\n", + ".. ...\n", + "355 1\n", + "534 0\n", + "344 0\n", + "296 1\n", + "462 0\n", + "\n", + "[154 rows x 1 columns]" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "from typing import Tuple\n", + "import pandas as pd\n", + "from pandas import DataFrame\n", + "from sklearn.model_selection import train_test_split\n", + "\n", + "def split_into_train_test(\n", + " df_input: DataFrame,\n", + " target_colname: str = \"above_average_close\",\n", + " frac_train: float = 0.8,\n", + " random_state: int = None,\n", + ") -> Tuple[DataFrame, DataFrame, DataFrame, DataFrame]:\n", + " \n", + " if not (0 < frac_train < 1):\n", + " raise ValueError(\"Fraction must be between 0 and 1.\")\n", + " \n", + " # Проверка наличия целевого признака\n", + " if target_colname not in df_input.columns:\n", + " raise ValueError(f\"{target_colname} is not a column in the DataFrame.\")\n", + " \n", + " # Разделяем данные на признаки и целевую переменную\n", + " X = df_input.drop(columns=[target_colname]) # Признаки\n", + " y = df_input[[target_colname]] # Целевая переменная\n", + "\n", + " # Разделяем данные на обучающую и тестовую выборки\n", + " X_train, X_test, y_train, y_test = train_test_split(\n", + " X, y,\n", + " test_size=(1.0 - frac_train),\n", + " random_state=random_state\n", + " )\n", + " \n", + " return X_train, X_test, y_train, y_test\n", + "\n", + "# Применение функции для разделения данных\n", + "X_train, X_test, y_train, y_test = split_into_train_test(\n", + " df, \n", + " target_colname=\"Outcome\", \n", + " frac_train=0.8, \n", + " random_state=42 # Убедитесь, что вы задали нужное значение random_state\n", + ")\n", + "\n", + "# Для отображения результатов\n", + "display(\"X_train\", X_train)\n", + "display(\"y_train\", y_train)\n", + "\n", + "display(\"X_test\", X_test)\n", + "display(\"y_test\", y_test)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Определение перечня алгоритмов решения задачи аппроксимации (регрессии)" + ] + }, + { + "cell_type": "code", + "execution_count": 168, + "metadata": {}, + "outputs": [], + "source": [ + "\n", + "\n", + "from sklearn.pipeline import make_pipeline\n", + "from sklearn.preprocessing import PolynomialFeatures\n", + "from sklearn import linear_model, tree, neighbors, ensemble, neural_network\n", + "\n", + "random_state = 9\n", + "\n", + "models = {\n", + " \"linear\": {\"model\": linear_model.LinearRegression(n_jobs=-1)},\n", + " \"linear_poly\": {\n", + " \"model\": make_pipeline(\n", + " PolynomialFeatures(degree=2),\n", + " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", + " )\n", + " },\n", + " \"linear_interact\": {\n", + " \"model\": make_pipeline(\n", + " PolynomialFeatures(interaction_only=True),\n", + " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", + " )\n", + " },\n", + " \"ridge\": {\"model\": linear_model.RidgeCV()},\n", + " \"decision_tree\": {\n", + " \"model\": tree.DecisionTreeRegressor(max_depth=7, random_state=random_state)\n", + " },\n", + " \"knn\": {\"model\": neighbors.KNeighborsRegressor(n_neighbors=7, n_jobs=-1)},\n", + " \"random_forest\": {\n", + " \"model\": ensemble.RandomForestRegressor(\n", + " max_depth=7, random_state=random_state, n_jobs=-1\n", + " )\n", + " },\n", + " \"mlp\": {\n", + " \"model\": neural_network.MLPRegressor(\n", + " activation=\"tanh\",\n", + " hidden_layer_sizes=(3,),\n", + " max_iter=500,\n", + " early_stopping=True,\n", + " random_state=random_state,\n", + " )\n", + " },\n", + "}\n", + "\n" + ] + }, + { + "cell_type": "code", + "execution_count": 169, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Model: linear\n", + "Model: linear_poly\n", + "Model: linear_interact\n", + "Model: ridge\n", + "Model: decision_tree\n", + "Model: knn\n", + "Model: random_forest\n", + "Model: mlp\n" + ] + } + ], + "source": [ + "import math\n", + "from pandas import DataFrame\n", + "from sklearn import metrics\n", + "\n", + "for model_name in models.keys():\n", + " print(f\"Model: {model_name}\")\n", + "\n", + " fitted_model = models[model_name][\"model\"].fit(\n", + " X_train.values, y_train.values.ravel()\n", + " )\n", + " y_train_pred = fitted_model.predict(X_train.values)\n", + " y_test_pred = fitted_model.predict(X_test.values)\n", + " models[model_name][\"fitted\"] = fitted_model\n", + " models[model_name][\"train_preds\"] = y_train_pred\n", + " models[model_name][\"preds\"] = y_test_pred\n", + " models[model_name][\"RMSE_train\"] = math.sqrt(\n", + " metrics.mean_squared_error(y_train, y_train_pred)\n", + " )\n", + " models[model_name][\"RMSE_test\"] = math.sqrt(\n", + " metrics.mean_squared_error(y_test, y_test_pred)\n", + " )\n", + " models[model_name][\"RMAE_test\"] = math.sqrt(\n", + " metrics.mean_absolute_error(y_test, y_test_pred)\n", + " )\n", + " models[model_name][\"R2_test\"] = metrics.r2_score(y_test, y_test_pred)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Вывод результатов оценки" + ] + }, + { + "cell_type": "code", + "execution_count": 170, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
 RMSE_trainRMSE_testRMAE_testR2_test
random_forest0.2400520.4058710.5592100.282505
linear0.3967930.4135760.5900240.255003
ridge0.3968220.4142360.5904310.252623
linear_poly0.3700760.4228520.5841470.221209
linear_interact0.3801280.4268150.5935320.206543
decision_tree0.2498800.4457080.5203760.134743
knn0.3733190.4502850.5921570.116883
mlp0.6235290.5443230.658689-0.290498
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" + ], + "text/plain": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "60 2 84 0 0 0 0.0 \n", + "618 9 112 82 24 0 28.2 \n", + "346 1 139 46 19 83 28.7 \n", + "294 0 161 50 0 0 21.9 \n", + "231 6 134 80 37 370 46.2 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome DiabetPred \n", + "60 0.304 21 0 0.001849 \n", + "618 1.282 50 1 0.758997 \n", + "346 0.654 22 0 0.149231 \n", + "294 0.254 65 0 0.239564 \n", + "231 0.238 46 1 0.773890 " + ] + }, + "execution_count": 173, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "pd.concat(\n", + " [\n", + " X_train,\n", + " y_train,\n", + " pd.Series(\n", + " models[best_model][\"train_preds\"],\n", + " index=y_train.index,\n", + " name=\"DiabetPred\",\n", + " ),\n", + " ],\n", + " axis=1,\n", + ").head(5)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Вывод для тестовой выборки" + ] + }, + { + "cell_type": "code", + "execution_count": 174, + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "668 6 98 58 33 190 34.0 \n", + "324 2 112 75 32 0 35.7 \n", + "624 2 108 64 0 0 30.8 \n", + "690 8 107 80 0 0 24.6 \n", + "473 7 136 90 0 0 29.9 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome DiabetPred \n", + "668 0.430 43 0 0.516537 \n", + "324 0.148 21 0 0.205507 \n", + "624 0.158 21 0 0.047710 \n", + "690 0.856 34 0 0.128867 \n", + "473 0.210 50 0 0.438512 " + ] + }, + "execution_count": 174, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "pd.concat(\n", + " [\n", + " X_test,\n", + " y_test,\n", + " pd.Series(\n", + " models[best_model][\"preds\"],\n", + " index=y_test.index,\n", + " name=\"DiabetPred\",\n", + " ),\n", + " ],\n", + " axis=1,\n", + ").head(5)" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": ".venv", + "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": "3.12.6" + } + }, + "nbformat": 4, + "nbformat_minor": 2 +} -- 2.25.1 From 5281da8385e4ac3fb5e0b470feb56c90f210552e Mon Sep 17 00:00:00 2001 From: sardq Date: Sat, 9 Nov 2024 09:14:53 +0400 Subject: [PATCH 2/3] lab 4 fix --- Lab4/lab4.ipynb | 1426 +++++++++++++++++++++++------------------------ 1 file changed, 696 insertions(+), 730 deletions(-) diff --git a/Lab4/lab4.ipynb b/Lab4/lab4.ipynb index 50478bb..03a7ba0 100644 --- a/Lab4/lab4.ipynb +++ b/Lab4/lab4.ipynb @@ -16,7 +16,7 @@ }, { "cell_type": "code", - "execution_count": 92, + "execution_count": 47, "metadata": {}, "outputs": [ { @@ -228,7 +228,7 @@ "[768 rows x 9 columns]" ] }, - "execution_count": 92, + "execution_count": 47, "metadata": {}, "output_type": "execute_result" } @@ -256,7 +256,7 @@ }, { "cell_type": "code", - "execution_count": 93, + "execution_count": 48, "metadata": {}, "outputs": [ { @@ -955,7 +955,7 @@ }, { "cell_type": "code", - "execution_count": 94, + "execution_count": 49, "metadata": {}, "outputs": [], "source": [ @@ -965,7 +965,6 @@ "from sklearn.pipeline import Pipeline\n", "from sklearn.preprocessing import OneHotEncoder\n", "\n", - "from transformers import DiabetFeatures\n", "\n", "\n", "columns_to_drop = [\"Glucose\", \"Age\", \"BloodPressure\", \"Outcome\", \"DiabetesPedigreeFunction\"]\n", @@ -1033,7 +1032,7 @@ }, { "cell_type": "code", - "execution_count": 95, + "execution_count": 50, "metadata": {}, "outputs": [ { @@ -1163,7 +1162,7 @@ "[614 rows x 4 columns]" ] }, - "execution_count": 95, + "execution_count": 50, "metadata": {}, "output_type": "execute_result" } @@ -1188,7 +1187,7 @@ }, { "cell_type": "code", - "execution_count": 96, + "execution_count": 51, "metadata": {}, "outputs": [], "source": [ @@ -1231,7 +1230,7 @@ }, { "cell_type": "code", - "execution_count": 97, + "execution_count": 52, "metadata": {}, "outputs": [ { @@ -1312,12 +1311,12 @@ }, { "cell_type": "code", - "execution_count": 98, + "execution_count": 53, "metadata": {}, "outputs": [ { "data": { - "image/png": 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", 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", 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 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_testPrecision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
naive_bayes0.5645160.6285710.3271030.4074070.6775240.7077920.4142010.494382naive_bayes0.5645160.6285710.3271030.4074070.6775240.7077920.4142010.494382
ridge0.4943820.5526320.6168220.7777780.6465800.7012990.5488570.646154ridge0.4943820.5526320.6168220.7777780.6465800.7012990.5488570.646154
knn0.6708070.5510200.5046730.5000000.7410420.6818180.5760000.524272knn0.6708070.5510200.5046730.5000000.7410420.6818180.5760000.524272
random_forest0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455random_forest0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455
logistic0.6186440.5250000.3411210.3888890.6970680.6623380.4397590.446809gradient_boosting0.9202130.5250000.8084110.3888890.9087950.6623380.8606970.446809
gradient_boosting0.9202130.5121950.8084110.3888890.9087950.6558440.8606970.442105logistic0.6186440.5250000.3411210.3888890.6970680.6623380.4397590.446809
decision_tree0.7186150.4590160.7757010.5185190.8159610.6168830.7460670.486957decision_tree0.7186150.4590160.7757010.5185190.8159610.6168830.7460670.486957
mlp0.4091950.4173910.8317760.8888890.5228010.5259740.5485360.568047mlp0.4091950.4173910.8317760.8888890.5228010.5259740.5485360.568047
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 99, + "execution_count": 54, "metadata": {}, "output_type": "execute_result" } @@ -1708,226 +1699,206 @@ }, { "cell_type": "code", - "execution_count": 100, + "execution_count": 55, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
\n", " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
ridge0.7012990.6461540.7670370.4002710.417827ridge0.7012990.6461540.7670370.4002710.417827
logistic0.6623380.4468090.7662960.2115010.216434logistic0.6623380.4468090.7662960.2115010.216434
naive_bayes0.7077920.4943820.7537040.3018340.315869naive_bayes0.7077920.4943820.7537040.3018340.315869
knn0.6818180.5242720.7455560.2860930.286855knn0.6818180.5242720.7455560.2860930.286855
mlp0.5259740.5680470.7290740.1737470.240181mlp0.5259740.5680470.7290740.1737470.240181
random_forest0.6753250.5454550.7150930.2930590.293176random_forest0.6753250.5454550.7150930.2930590.293176
gradient_boosting0.6558440.4421050.7096300.1999610.203926gradient_boosting0.6623380.4468090.7112960.2115010.216434
decision_tree0.6168830.4869570.6128700.1830610.183927decision_tree0.6168830.4869570.6128700.1830610.183927
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 100, + "execution_count": 55, "metadata": {}, "output_type": "execute_result" } @@ -1964,7 +1935,7 @@ }, { "cell_type": "code", - "execution_count": 101, + "execution_count": 56, "metadata": {}, "outputs": [ { @@ -1992,7 +1963,7 @@ }, { "cell_type": "code", - "execution_count": 102, + "execution_count": 57, "metadata": {}, "outputs": [ { @@ -2738,7 +2709,7 @@ "750 31.2 1.182 22 1 " ] }, - "execution_count": 102, + "execution_count": 57, "metadata": {}, "output_type": "execute_result" } @@ -2770,7 +2741,7 @@ }, { "cell_type": "code", - "execution_count": 103, + "execution_count": 58, "metadata": {}, "outputs": [ { @@ -2923,7 +2894,7 @@ }, { "cell_type": "code", - "execution_count": 104, + "execution_count": 59, "metadata": {}, "outputs": [], "source": [ @@ -2940,7 +2911,7 @@ "numeric_features = X_train.select_dtypes(include=['float64', 'int64']).columns.tolist()\n", "\n", "# Установка random_state\n", - "random_state = 42\n", + "random_state = 9\n", "\n", "# Определение трансформера\n", "pipeline_end = ColumnTransformer([\n", @@ -2995,10 +2966,11 @@ }, { "cell_type": "code", - "execution_count": 105, + "execution_count": 60, "metadata": {}, "outputs": [], "source": [ + "optimized_model_type = \"random_forest\"\n", "optimized_metrics = pd.DataFrame(columns=list(result.keys()))\n", "optimized_metrics.loc[len(optimized_metrics)] = pd.Series(\n", " data=class_models[optimized_model_type]\n", @@ -3019,42 +2991,42 @@ }, { "cell_type": "code", - "execution_count": 106, + "execution_count": 61, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
\n", " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", " \n", @@ -3070,35 +3042,35 @@ " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", "
 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_testPrecision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
Name
Old0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455Old0.9551570.5357140.9953270.5555560.9820850.6753250.9748280.545455
New1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000New1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 106, + "execution_count": 61, "metadata": {}, "output_type": "execute_result" } @@ -3135,39 +3107,39 @@ }, { "cell_type": "code", - "execution_count": 107, + "execution_count": 62, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
\n", " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", " \n", @@ -3180,29 +3152,29 @@ " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", - " \n", - " \n", - " \n", - " \n", - " \n", - " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", " \n", " \n", "
 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
Name
Old0.6753250.5454550.7150930.2930590.293176Old0.6753250.5454550.7150930.2930590.293176
New1.0000001.0000001.0000001.0000001.000000New1.0000001.0000001.0000001.0000001.000000
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 107, + "execution_count": 62, "metadata": {}, "output_type": "execute_result" } @@ -3238,7 +3210,7 @@ }, { "cell_type": "code", - "execution_count": 109, + "execution_count": 63, "metadata": {}, "outputs": [ { @@ -3294,7 +3266,7 @@ }, { "cell_type": "code", - "execution_count": 111, + "execution_count": 64, "metadata": {}, "outputs": [ { @@ -3347,7 +3319,7 @@ }, { "cell_type": "code", - "execution_count": 112, + "execution_count": 65, "metadata": {}, "outputs": [ { @@ -4053,7 +4025,7 @@ }, { "cell_type": "code", - "execution_count": 121, + "execution_count": 66, "metadata": {}, "outputs": [], "source": [ @@ -4137,7 +4109,7 @@ }, { "cell_type": "code", - "execution_count": 122, + "execution_count": 67, "metadata": {}, "outputs": [ { @@ -4279,7 +4251,7 @@ "[614 rows x 5 columns]" ] }, - "execution_count": 122, + "execution_count": 67, "metadata": {}, "output_type": "execute_result" } @@ -4303,44 +4275,32 @@ }, { "cell_type": "code", - "execution_count": 123, + "execution_count": 68, "metadata": {}, "outputs": [], "source": [ - "from sklearn.pipeline import make_pipeline\n", - "from sklearn.preprocessing import PolynomialFeatures\n", - "from sklearn import linear_model, tree, neighbors, ensemble, neural_network\n", + "from sklearn import ensemble, linear_model, naive_bayes, neighbors, neural_network, tree\n", "\n", - "random_state = 9\n", - "\n", - "models = {\n", - " \"linear\": {\"model\": linear_model.LinearRegression(n_jobs=-1)},\n", - " \"linear_poly\": {\n", - " \"model\": make_pipeline(\n", - " PolynomialFeatures(degree=2),\n", - " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", - " )\n", - " },\n", - " \"linear_interact\": {\n", - " \"model\": make_pipeline(\n", - " PolynomialFeatures(interaction_only=True),\n", - " linear_model.LinearRegression(fit_intercept=False, n_jobs=-1),\n", - " )\n", - " },\n", - " \"ridge\": {\"model\": linear_model.RidgeCV()},\n", + "class_models = {\n", + " \"logistic\": {\"model\": linear_model.LogisticRegression()},\n", + " \"ridge\": {\"model\": linear_model.RidgeClassifierCV(cv=5, class_weight=\"balanced\")},\n", + " \"ridge\": {\"model\": linear_model.LogisticRegression(penalty=\"l2\", class_weight=\"balanced\")},\n", " \"decision_tree\": {\n", - " \"model\": tree.DecisionTreeRegressor(max_depth=7, random_state=random_state)\n", + " \"model\": tree.DecisionTreeClassifier(max_depth=7, random_state=random_state)\n", + " },\n", + " \"knn\": {\"model\": neighbors.KNeighborsClassifier(n_neighbors=7)},\n", + " \"naive_bayes\": {\"model\": naive_bayes.GaussianNB()},\n", + " \"gradient_boosting\": {\n", + " \"model\": ensemble.GradientBoostingClassifier(n_estimators=210)\n", " },\n", - " \"knn\": {\"model\": neighbors.KNeighborsRegressor(n_neighbors=7, n_jobs=-1)},\n", " \"random_forest\": {\n", - " \"model\": ensemble.RandomForestRegressor(\n", - " max_depth=7, random_state=random_state, n_jobs=-1\n", + " \"model\": ensemble.RandomForestClassifier(\n", + " max_depth=11, class_weight=\"balanced\", random_state=random_state\n", " )\n", " },\n", " \"mlp\": {\n", - " \"model\": neural_network.MLPRegressor(\n", - " activation=\"tanh\",\n", - " hidden_layer_sizes=(3,),\n", + " \"model\": neural_network.MLPClassifier(\n", + " hidden_layer_sizes=(7,),\n", " max_iter=500,\n", " early_stopping=True,\n", " random_state=random_state,\n", @@ -4358,7 +4318,7 @@ }, { "cell_type": "code", - "execution_count": 124, + "execution_count": 69, "metadata": {}, "outputs": [ { @@ -4440,12 +4400,12 @@ }, { "cell_type": "code", - "execution_count": 125, + "execution_count": 70, "metadata": {}, "outputs": [ { "data": { - "image/png": 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", + "image/png": 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ridge1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000ridge1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
decision_tree1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000decision_tree1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
naive_bayes1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000naive_bayes1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
random_forest1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000random_forest1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
gradient_boosting1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000gradient_boosting1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000
knn1.0000000.9818180.9906541.0000000.9967430.9935060.9953050.990826knn1.0000000.9818180.9906541.0000000.9967430.9935060.9953050.990826
mlp0.7293230.6857140.4532710.4444440.7508140.7337660.5590780.539326mlp0.7293230.6857140.4532710.4444440.7508140.7337660.5590780.539326
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logistic1.0000001.0000001.0000001.0000001.000000logistic1.0000001.0000001.0000001.0000001.000000
ridge1.0000001.0000001.0000001.0000001.000000ridge1.0000001.0000001.0000001.0000001.000000
decision_tree1.0000001.0000001.0000001.0000001.000000decision_tree1.0000001.0000001.0000001.0000001.000000
knn0.9935060.9908261.0000000.9858010.985901knn0.9935060.9908261.0000000.9858010.985901
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", 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" ] @@ -5449,7 +5409,7 @@ "for index in range(0, len(optimized_metrics)):\n", " c_matrix = optimized_metrics.iloc[index][\"Confusion_matrix\"]\n", " disp = ConfusionMatrixDisplay(\n", - " confusion_matrix=c_matrix, display_labels=[\"Less\", \"More\"]\n", + " confusion_matrix=c_matrix, display_labels=[\"Healthy\", \"Sick\"]\n", " ).plot(ax=ax.flat[index])\n", "\n", "plt.subplots_adjust(top=1, bottom=0, hspace=0.4, wspace=0.3)\n", @@ -5465,7 +5425,7 @@ }, { "cell_type": "code", - "execution_count": 148, + "execution_count": 82, "metadata": {}, "outputs": [ { @@ -5677,7 +5637,7 @@ "[768 rows x 9 columns]" ] }, - "execution_count": 148, + "execution_count": 82, "metadata": {}, "output_type": "execute_result" } @@ -5706,7 +5666,7 @@ }, { "cell_type": "code", - "execution_count": 150, + "execution_count": 83, "metadata": {}, "outputs": [ { @@ -6374,7 +6334,7 @@ }, { "cell_type": "code", - "execution_count": 168, + "execution_count": 84, "metadata": {}, "outputs": [], "source": [ @@ -6425,14 +6385,20 @@ }, { "cell_type": "code", - "execution_count": 169, + "execution_count": 85, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ - "Model: linear\n", + "Model: linear\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ "Model: linear_poly\n", "Model: linear_interact\n", "Model: ridge\n", @@ -6480,189 +6446,189 @@ }, { "cell_type": "code", - "execution_count": 170, + "execution_count": 86, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
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 RMSE_trainRMSE_testRMAE_testR2_testRMSE_trainRMSE_testRMAE_testR2_test
random_forest0.2400520.4058710.5592100.282505random_forest0.2400520.4058710.5592100.282505
linear0.3967930.4135760.5900240.255003linear0.3967930.4135760.5900240.255003
ridge0.3968220.4142360.5904310.252623ridge0.3968220.4142360.5904310.252623
linear_poly0.3700760.4228520.5841470.221209linear_poly0.3700760.4228520.5841470.221209
linear_interact0.3801280.4268150.5935320.206543linear_interact0.3801280.4268150.5935320.206543
decision_tree0.2498800.4457080.5203760.134743decision_tree0.2498800.4457080.5203760.134743
knn0.3733190.4502850.5921570.116883knn0.3733190.4502850.5921570.116883
mlp0.6235290.5443230.658689-0.290498mlp0.6235290.5443230.658689-0.290498
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 170, + "execution_count": 86, "metadata": {}, "output_type": "execute_result" } @@ -6688,7 +6654,7 @@ }, { "cell_type": "code", - "execution_count": 171, + "execution_count": 87, "metadata": {}, "outputs": [ { @@ -6716,7 +6682,7 @@ }, { "cell_type": "code", - "execution_count": 173, + "execution_count": 88, "metadata": {}, "outputs": [ { @@ -6838,7 +6804,7 @@ "231 0.238 46 1 0.773890 " ] }, - "execution_count": 173, + "execution_count": 88, "metadata": {}, "output_type": "execute_result" } @@ -6867,7 +6833,7 @@ }, { "cell_type": "code", - "execution_count": 174, + "execution_count": 89, "metadata": {}, "outputs": [ { @@ -6989,7 +6955,7 @@ "473 0.210 50 0 0.438512 " ] }, - "execution_count": 174, + "execution_count": 89, "metadata": {}, "output_type": "execute_result" } -- 2.25.1 From 4e4414b784f4f6bcddcf1ab1f9b45af5d052fce8 Mon Sep 17 00:00:00 2001 From: sardq Date: Sat, 9 Nov 2024 10:46:39 +0400 Subject: [PATCH 3/3] lab 4 all --- Lab4/lab4.ipynb | 3568 +++++++++++++++++++++++++++-------------------- 1 file changed, 2074 insertions(+), 1494 deletions(-) diff --git a/Lab4/lab4.ipynb b/Lab4/lab4.ipynb index 03a7ba0..84244af 100644 --- a/Lab4/lab4.ipynb +++ b/Lab4/lab4.ipynb @@ -16,7 +16,7 @@ }, { "cell_type": "code", - "execution_count": 47, + "execution_count": 267, "metadata": {}, "outputs": [ { @@ -228,7 +228,7 @@ "[768 rows x 9 columns]" ] }, - "execution_count": 47, + "execution_count": 267, "metadata": {}, "output_type": "execute_result" } @@ -256,7 +256,7 @@ }, { "cell_type": "code", - "execution_count": 48, + "execution_count": 268, "metadata": {}, "outputs": [ { @@ -946,6 +946,173 @@ "display(\"y_test\", y_test)" ] }, + { + "cell_type": "code", + "execution_count": 269, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Пропущенные значения по столбцам:\n", + "Pregnancies 0\n", + "Glucose 0\n", + "BloodPressure 0\n", + "SkinThickness 0\n", + "Insulin 0\n", + "BMI 0\n", + "DiabetesPedigreeFunction 0\n", + "Age 0\n", + "Outcome 0\n", + "dtype: int64\n", + "\n", + "Статистический обзор данных:\n", + " Pregnancies Glucose BloodPressure SkinThickness Insulin \\\n", + "count 768.000000 768.000000 768.000000 768.000000 768.000000 \n", + "mean 3.845052 120.894531 69.105469 20.536458 79.799479 \n", + "std 3.369578 31.972618 19.355807 15.952218 115.244002 \n", + "min 0.000000 0.000000 0.000000 0.000000 0.000000 \n", + "25% 1.000000 99.000000 62.000000 0.000000 0.000000 \n", + "50% 3.000000 117.000000 72.000000 23.000000 30.500000 \n", + "75% 6.000000 140.250000 80.000000 32.000000 127.250000 \n", + "max 17.000000 199.000000 122.000000 99.000000 846.000000 \n", + "\n", + " BMI DiabetesPedigreeFunction Age Outcome \n", + "count 768.000000 768.000000 768.000000 768.000000 \n", + "mean 31.992578 0.471876 33.240885 0.348958 \n", + "std 7.884160 0.331329 11.760232 0.476951 \n", + "min 0.000000 0.078000 21.000000 0.000000 \n", + "25% 27.300000 0.243750 24.000000 0.000000 \n", + "50% 32.000000 0.372500 29.000000 0.000000 \n", + "75% 36.600000 0.626250 41.000000 1.000000 \n", + "max 67.100000 2.420000 81.000000 1.000000 \n" + ] + } + ], + "source": [ + "null_values = df.isnull().sum()\n", + "print(\"Пропущенные значения по столбцам:\")\n", + "print(null_values)\n", + "\n", + "stat_summary = df.describe()\n", + "print(\"\\nСтатистический обзор данных:\")\n", + "print(stat_summary)" + ] + }, + { + "cell_type": "code", + "execution_count": 270, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Выбросы в датасете:\n", + " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", + "4 0 137 40 35 168 43.1 \n", + "12 10 139 80 0 0 27.1 \n", + "39 4 111 72 47 207 37.1 \n", + "45 0 180 66 39 0 42.0 \n", + "58 0 146 82 0 0 40.5 \n", + "100 1 163 72 0 0 39.0 \n", + "147 2 106 64 35 119 30.5 \n", + "187 1 128 98 41 58 32.0 \n", + "218 5 85 74 22 0 29.0 \n", + "228 4 197 70 39 744 36.7 \n", + "243 6 119 50 22 176 27.1 \n", + "245 9 184 85 15 0 30.0 \n", + "259 11 155 76 28 150 33.3 \n", + "292 2 128 78 37 182 43.3 \n", + "308 0 128 68 19 180 30.5 \n", + "330 8 118 72 19 0 23.1 \n", + "370 3 173 82 48 465 38.4 \n", + "371 0 118 64 23 89 0.0 \n", + "383 1 90 62 18 59 25.1 \n", + "395 2 127 58 24 275 27.7 \n", + "445 0 180 78 63 14 59.4 \n", + "534 1 77 56 30 56 33.3 \n", + "593 2 82 52 22 115 28.5 \n", + "606 1 181 78 42 293 40.0 \n", + "618 9 112 82 24 0 28.2 \n", + "621 2 92 76 20 0 24.2 \n", + "622 6 183 94 0 0 40.8 \n", + "659 3 80 82 31 70 34.2 \n", + "661 1 199 76 43 0 42.9 \n", + "\n", + " DiabetesPedigreeFunction Age Outcome \n", + "4 2.288 33 1 \n", + "12 1.441 57 0 \n", + "39 1.390 56 1 \n", + "45 1.893 25 1 \n", + "58 1.781 44 0 \n", + "100 1.222 33 1 \n", + "147 1.400 34 0 \n", + "187 1.321 33 1 \n", + "218 1.224 32 1 \n", + "228 2.329 31 0 \n", + "243 1.318 33 1 \n", + "245 1.213 49 1 \n", + "259 1.353 51 1 \n", + "292 1.224 31 1 \n", + "308 1.391 25 1 \n", + "330 1.476 46 0 \n", + "370 2.137 25 1 \n", + "371 1.731 21 0 \n", + "383 1.268 25 0 \n", + "395 1.600 25 0 \n", + "445 2.420 25 1 \n", + "534 1.251 24 0 \n", + "593 1.699 25 0 \n", + "606 1.258 22 1 \n", + "618 1.282 50 1 \n", + "621 1.698 28 0 \n", + "622 1.461 45 0 \n", + "659 1.292 27 1 \n", + "661 1.394 22 1 \n" + ] + }, + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "Q1 = df[\"DiabetesPedigreeFunction\"].quantile(0.25)\n", + "Q3 = df[\"DiabetesPedigreeFunction\"].quantile(0.75)\n", + "\n", + "IQR = Q3 - Q1\n", + "\n", + "threshold = 1.5 * IQR\n", + "lower_bound = Q1 - threshold\n", + "upper_bound = Q3 + threshold\n", + "\n", + "outliers = (df[\"DiabetesPedigreeFunction\"] < lower_bound) | (df[\"DiabetesPedigreeFunction\"] > upper_bound)\n", + "\n", + "# Вывод выбросов\n", + "print(\"Выбросы в датасете:\")\n", + "print(df[outliers])\n", + "\n", + "# Заменяем выбросы на медианные значения\n", + "median_score = df[\"DiabetesPedigreeFunction\"].median()\n", + "df.loc[outliers, \"DiabetesPedigreeFunction\"] = median_score\n", + "\n", + "# Визуализация данных после обработки\n", + "plt.figure(figsize=(10, 6))\n", + "plt.scatter(df['DiabetesPedigreeFunction'], df['Age'])\n", + "plt.xlabel('Функция родословной диабета')\n", + "plt.ylabel('Возраст')\n", + "plt.title('Диаграмма рассеивания после чистки')\n", + "plt.show()" + ] + }, { "cell_type": "markdown", "metadata": {}, @@ -955,7 +1122,7 @@ }, { "cell_type": "code", - "execution_count": 49, + "execution_count": 271, "metadata": {}, "outputs": [], "source": [ @@ -967,7 +1134,7 @@ "\n", "\n", "\n", - "columns_to_drop = [\"Glucose\", \"Age\", \"BloodPressure\", \"Outcome\", \"DiabetesPedigreeFunction\"]\n", + "columns_to_drop = [\"Pregnancies\", \"SkinThickness\", \"BloodPressure\", \"Outcome\", \"DiabetesPedigreeFunction\"]\n", "num_columns = [\n", " column\n", " for column in df.columns\n", @@ -1032,7 +1199,7 @@ }, { "cell_type": "code", - "execution_count": 50, + "execution_count": 272, "metadata": {}, "outputs": [ { @@ -1056,47 +1223,47 @@ " \n", " \n", " \n", - " Pregnancies\n", - " SkinThickness\n", + " Glucose\n", " Insulin\n", " BMI\n", + " Age\n", " \n", " \n", " \n", " \n", " 196\n", - " -0.838489\n", - " -1.297466\n", + " -0.478144\n", " -0.688684\n", " -0.946400\n", + " -1.029257\n", " \n", " \n", " 69\n", - " 0.072181\n", - " 0.395520\n", + " 0.818506\n", " 0.180416\n", " -0.377190\n", + " -0.522334\n", " \n", " \n", " 494\n", - " -0.231376\n", - " -1.297466\n", + " -1.268784\n", " -0.688684\n", " -3.953317\n", + " -0.944770\n", " \n", " \n", " 463\n", - " 0.375738\n", - " 0.583630\n", + " -1.015779\n", " -0.688684\n", " -0.538054\n", + " 0.322537\n", " \n", " \n", " 653\n", - " -0.534932\n", - " -1.297466\n", + " -0.003760\n", " -0.688684\n", " -0.637047\n", + " -0.522334\n", " \n", " \n", " ...\n", @@ -1107,38 +1274,38 @@ " \n", " \n", " 322\n", - " -1.142046\n", - " -0.043402\n", + " 0.122742\n", " -0.688684\n", " -0.562802\n", + " 0.238050\n", " \n", " \n", " 109\n", - " -1.142046\n", - " 0.270114\n", + " -0.794400\n", " -0.375808\n", " 0.674613\n", + " -0.775796\n", " \n", " \n", " 27\n", - " -0.838489\n", - " -0.356918\n", + " -0.731149\n", " 0.528056\n", " -1.082516\n", + " -0.944770\n", " \n", " \n", " 651\n", - " -0.838489\n", - " 0.144708\n", + " -0.098637\n", " 0.232562\n", " 0.229143\n", + " -0.522334\n", " \n", " \n", " 197\n", - " -0.231376\n", - " -0.482325\n", + " -0.414893\n", " -0.271516\n", " -1.119638\n", + " -0.860283\n", " \n", " \n", "\n", @@ -1146,23 +1313,23 @@ "" ], "text/plain": [ - " Pregnancies SkinThickness Insulin BMI\n", - "196 -0.838489 -1.297466 -0.688684 -0.946400\n", - "69 0.072181 0.395520 0.180416 -0.377190\n", - "494 -0.231376 -1.297466 -0.688684 -3.953317\n", - "463 0.375738 0.583630 -0.688684 -0.538054\n", - "653 -0.534932 -1.297466 -0.688684 -0.637047\n", - ".. ... ... ... ...\n", - "322 -1.142046 -0.043402 -0.688684 -0.562802\n", - "109 -1.142046 0.270114 -0.375808 0.674613\n", - "27 -0.838489 -0.356918 0.528056 -1.082516\n", - "651 -0.838489 0.144708 0.232562 0.229143\n", - "197 -0.231376 -0.482325 -0.271516 -1.119638\n", + " Glucose Insulin BMI Age\n", + "196 -0.478144 -0.688684 -0.946400 -1.029257\n", + "69 0.818506 0.180416 -0.377190 -0.522334\n", + "494 -1.268784 -0.688684 -3.953317 -0.944770\n", + "463 -1.015779 -0.688684 -0.538054 0.322537\n", + "653 -0.003760 -0.688684 -0.637047 -0.522334\n", + ".. ... ... ... ...\n", + "322 0.122742 -0.688684 -0.562802 0.238050\n", + "109 -0.794400 -0.375808 0.674613 -0.775796\n", + "27 -0.731149 0.528056 -1.082516 -0.944770\n", + "651 -0.098637 0.232562 0.229143 -0.522334\n", + "197 -0.414893 -0.271516 -1.119638 -0.860283\n", "\n", "[614 rows x 4 columns]" ] }, - "execution_count": 50, + "execution_count": 272, "metadata": {}, "output_type": "execute_result" } @@ -1187,7 +1354,7 @@ }, { "cell_type": "code", - "execution_count": 51, + "execution_count": 273, "metadata": {}, "outputs": [], "source": [ @@ -1230,7 +1397,7 @@ }, { "cell_type": "code", - "execution_count": 52, + "execution_count": 274, "metadata": {}, "outputs": [ { @@ -1311,12 +1478,12 @@ }, { "cell_type": "code", - "execution_count": 53, + "execution_count": 275, "metadata": {}, "outputs": [ { "data": { - "image/png": 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", + "image/png": 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", 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 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
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" 176\n", - " 6\n", + " 125\n", " 1\n", - " 85\n", - " 78\n", " 0\n", - " 0\n", - " 31.2\n", - " 0.382\n", + " 88\n", + " 30\n", " 42\n", + " 99\n", + " 55.0\n", + " 0.496\n", + " 26\n", + " 1\n", + " \n", + " \n", + " 167\n", + " 4\n", + " 1\n", + " 120\n", + " 68\n", + " 0\n", + " 0\n", + " 29.6\n", + " 0.709\n", + " 34\n", " 0\n", " \n", " \n", - " 201\n", + " 188\n", + " 8\n", + " 0\n", + " 109\n", + " 76\n", + " 39\n", + " 114\n", + " 27.9\n", + " 0.640\n", + " 31\n", " 1\n", - " 1\n", - " 138\n", - " 82\n", - " 0\n", - " 0\n", - " 40.1\n", - " 0.236\n", - " 28\n", - " 0\n", " \n", " \n", " 204\n", @@ -2114,19 +2277,6 @@ " 0\n", " \n", " \n", - " 223\n", - " 7\n", - " 1\n", - " 142\n", - " 60\n", - " 33\n", - " 190\n", - " 28.8\n", - " 0.687\n", - " 61\n", - " 0\n", - " \n", - " \n", " 228\n", " 4\n", " 1\n", @@ -2140,32 +2290,6 @@ " 0\n", " \n", " \n", - " 233\n", - " 4\n", - " 1\n", - " 122\n", - " 68\n", - " 0\n", - " 0\n", - " 35.0\n", - " 0.394\n", - " 29\n", - " 0\n", - " \n", - 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" 0.905\n", - " 52\n", - " 1\n", - " \n", - " \n", - " 723\n", - " 5\n", - " 1\n", - " 117\n", - " 86\n", - " 30\n", - " 105\n", - " 39.1\n", - " 0.251\n", - " 42\n", - " 0\n", - " \n", - " \n", " 725\n", " 4\n", " 1\n", @@ -2569,19 +2576,6 @@ " 0\n", " \n", " \n", - " 730\n", - " 3\n", - " 0\n", - " 130\n", - " 78\n", - " 23\n", - " 79\n", - " 28.4\n", - " 0.323\n", - " 34\n", - " 1\n", - " \n", - " \n", " 744\n", " 13\n", " 1\n", @@ -2613,103 +2607,77 @@ ], "text/plain": [ " Pregnancies Predicted Glucose BloodPressure SkinThickness Insulin \\\n", - "30 5 1 109 75 26 0 \n", - "82 7 1 83 78 26 71 \n", + "46 1 1 146 56 0 0 \n", "86 13 1 106 72 54 0 \n", "91 4 1 123 80 15 176 \n", "95 6 1 144 72 27 228 \n", - "176 6 1 85 78 0 0 \n", - "201 1 1 138 82 0 0 \n", + "125 1 0 88 30 42 99 \n", + "167 4 1 120 68 0 0 \n", + "188 8 0 109 76 39 114 \n", "204 6 1 103 72 32 190 \n", - "223 7 1 142 60 33 190 \n", "228 4 1 197 70 39 744 \n", - "233 4 1 122 68 0 0 \n", - "266 0 0 138 0 0 0 \n", "274 13 1 106 70 0 0 \n", "280 0 0 146 70 0 0 \n", "282 7 1 133 88 15 155 \n", - "302 5 1 77 82 41 42 \n", "309 2 0 124 68 28 205 \n", "335 0 1 165 76 43 255 \n", - "358 12 1 88 74 40 54 \n", - "364 4 1 147 74 25 293 \n", - "379 0 1 93 100 39 72 \n", + "363 4 0 146 78 0 0 \n", "397 0 0 131 66 40 0 \n", - "405 2 1 123 48 32 165 \n", - "406 4 0 115 72 0 0 \n", - "442 4 1 117 64 27 120 \n", - "486 1 1 139 62 41 480 \n", - "515 3 0 163 70 18 105 \n", + "510 12 0 84 72 31 0 \n", "517 7 1 125 86 0 0 \n", + "536 0 1 105 90 0 0 \n", + "541 3 0 128 72 25 190 \n", + "549 4 1 189 110 31 0 \n", + "568 4 1 154 72 29 126 \n", + "577 2 0 118 80 0 0 \n", "583 8 1 100 76 0 0 \n", + "590 11 0 111 84 40 0 \n", "594 6 1 123 72 45 230 \n", "622 6 1 183 94 0 0 \n", "630 7 0 114 64 0 0 \n", - "634 10 1 92 62 0 0 \n", - "646 1 0 167 74 17 144 \n", "658 11 1 127 106 0 0 \n", "669 9 1 154 78 30 100 \n", - "674 8 1 91 82 0 0 \n", - "676 9 0 156 86 0 0 \n", - "682 0 1 95 64 39 105 \n", - "699 4 1 118 70 0 0 \n", - "702 1 0 168 88 29 0 \n", - "723 5 1 117 86 30 105 \n", "725 4 1 112 78 40 0 \n", - "730 3 0 130 78 23 79 \n", "744 13 1 153 88 37 140 \n", "750 4 0 136 70 0 0 \n", "\n", " BMI DiabetesPedigreeFunction Age Outcome \n", - "30 36.0 0.546 60 0 \n", - "82 29.3 0.767 36 0 \n", + "46 29.7 0.564 29 0 \n", "86 36.6 0.178 45 0 \n", "91 32.0 0.443 34 0 \n", "95 33.9 0.255 40 0 \n", - "176 31.2 0.382 42 0 \n", - "201 40.1 0.236 28 0 \n", + "125 55.0 0.496 26 1 \n", + "167 29.6 0.709 34 0 \n", + "188 27.9 0.640 31 1 \n", "204 37.7 0.324 55 0 \n", - "223 28.8 0.687 61 0 \n", "228 36.7 2.329 31 0 \n", - "233 35.0 0.394 29 0 \n", - "266 36.3 0.933 25 1 \n", "274 34.2 0.251 52 0 \n", "280 37.9 0.334 28 1 \n", "282 32.4 0.262 37 0 \n", - "302 35.8 0.156 35 0 \n", "309 32.9 0.875 30 1 \n", "335 47.9 0.259 26 0 \n", - "358 35.3 0.378 48 0 \n", - "364 34.9 0.385 30 0 \n", - "379 43.4 1.021 35 0 \n", + "363 38.5 0.520 67 1 \n", "397 34.3 0.196 22 1 \n", - "405 42.1 0.520 26 0 \n", - "406 28.9 0.376 46 1 \n", - "442 33.2 0.230 24 0 \n", - "486 40.7 0.536 21 0 \n", - "515 31.6 0.268 28 1 \n", + "510 29.7 0.297 46 1 \n", "517 37.6 0.304 51 0 \n", + "536 29.6 0.197 46 0 \n", + "541 32.4 0.549 27 1 \n", + "549 28.5 0.680 37 0 \n", + "568 31.3 0.338 37 0 \n", + "577 42.9 0.693 21 1 \n", "583 38.7 0.190 42 0 \n", + "590 46.8 0.925 45 1 \n", "594 33.6 0.733 34 0 \n", "622 40.8 1.461 45 0 \n", "630 27.4 0.732 34 1 \n", - "634 25.9 0.167 31 0 \n", - "646 23.4 0.447 33 1 \n", "658 39.0 0.190 51 0 \n", "669 30.9 0.164 45 0 \n", - "674 35.6 0.587 68 0 \n", - "676 24.8 0.230 53 1 \n", - "682 44.6 0.366 22 0 \n", - "699 44.5 0.904 26 0 \n", - "702 35.0 0.905 52 1 \n", - "723 39.1 0.251 42 0 \n", "725 39.4 0.236 38 0 \n", - "730 28.4 0.323 34 1 \n", "744 40.6 1.174 39 0 \n", "750 31.2 1.182 22 1 " ] }, - "execution_count": 57, + "execution_count": 279, "metadata": {}, "output_type": "execute_result" } @@ -2741,7 +2709,7 @@ }, { "cell_type": "code", - "execution_count": 58, + "execution_count": 280, "metadata": {}, "outputs": [ { @@ -2825,27 +2793,27 @@ " \n", " \n", " \n", - " Pregnancies\n", - " SkinThickness\n", + " Glucose\n", " Insulin\n", " BMI\n", + " Age\n", " \n", " \n", " \n", " \n", " 450\n", - " -0.838489\n", - " -0.482325\n", + " -1.205533\n", " 0.136961\n", " -1.329999\n", + " -0.860283\n", " \n", " \n", "\n", "" ], "text/plain": [ - " Pregnancies SkinThickness Insulin BMI\n", - "450 -0.838489 -0.482325 0.136961 -1.329999" + " Glucose Insulin BMI Age\n", + "450 -1.205533 0.136961 -1.329999 -0.860283" ] }, "metadata": {}, @@ -2854,7 +2822,7 @@ { "data": { "text/plain": [ - "'predicted: 0 (proba: [0.81353825 0.18646175])'" + "'predicted: 0 (proba: [0.96 0.04])'" ] }, "metadata": {}, @@ -2894,7 +2862,7 @@ }, { "cell_type": "code", - "execution_count": 59, + "execution_count": 281, "metadata": {}, "outputs": [], "source": [ @@ -2966,7 +2934,7 @@ }, { "cell_type": "code", - "execution_count": 60, + "execution_count": 282, "metadata": {}, "outputs": [], "source": [ @@ -2991,42 +2959,46 @@ }, { "cell_type": "code", - "execution_count": 61, + "execution_count": 283, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
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 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_testPrecision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
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 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
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", 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", 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" ] @@ -3245,9 +3217,9 @@ "cell_type": "markdown", "metadata": {}, "source": [ - "В желтом квадрате мы видим значение 74, что обозначает количество правильно классифицированных объектов, отнесенных к классу \"Sick\". Это свидетельствует о том, что модель успешно идентифицирует объекты этого класса, минимизируя количество ложных положительных срабатываний.\n", + "В желтом квадрате мы видим значение 79, что обозначает количество правильно классифицированных объектов, отнесенных к классу \"Sick\". Это свидетельствует о том, что модель успешно идентифицирует объекты этого класса, минимизируя количество ложных положительных срабатываний.\n", "\n", - "В зеленом квадрате значение 54 указывает на количество правильно классифицированных объектов, отнесенных к классу \"Healthy\". Это также является показателем хорошей точности модели в определении объектов данного класса." + "В зеленом квадрате значение 42 указывает на количество правильно классифицированных объектов, отнесенных к классу \"Healthy\". Это также является показателем хорошей точности модели в определении объектов данного класса." ] }, { @@ -3266,7 +3238,7 @@ }, { "cell_type": "code", - "execution_count": 64, + "execution_count": 286, "metadata": {}, "outputs": [ { @@ -3319,7 +3291,7 @@ }, { "cell_type": "code", - "execution_count": 65, + "execution_count": 287, "metadata": {}, "outputs": [ { @@ -4025,7 +3997,7 @@ }, { "cell_type": "code", - "execution_count": 66, + "execution_count": 288, "metadata": {}, "outputs": [], "source": [ @@ -4044,8 +4016,8 @@ " return self\n", " \n", "\n", - "columns_to_drop = [\"Pregnancies\", \"SkinThickness\", \"Insulin\", \"BMI\"]\n", - "num_columns = [\"Glucose\", \"Age\", \"BloodPressure\", \"Outcome\", \"DiabetesPedigreeFunction\"]\n", + "columns_to_drop = [\"Pregnancies\", \"SkinThickness\", \"Insulin\", \"BMI\", \"Outcome\"]\n", + "num_columns = [\"Glucose\", \"Age\", \"BloodPressure\", \"DiabetesPedigreeFunction\"]\n", "cat_columns = []\n", "\n", "num_imputer = SimpleImputer(strategy=\"median\")\n", @@ -4109,7 +4081,7 @@ }, { "cell_type": "code", - "execution_count": 67, + "execution_count": 289, "metadata": {}, "outputs": [ { @@ -4136,7 +4108,6 @@ " Glucose\n", " Age\n", " BloodPressure\n", - " Outcome\n", " DiabetesPedigreeFunction\n", " \n", " \n", @@ -4146,7 +4117,6 @@ " -0.478144\n", " -1.029257\n", " -0.554050\n", - " -0.731437\n", " -0.849205\n", " \n", " \n", @@ -4154,7 +4124,6 @@ " 0.818506\n", " -0.522334\n", " 0.804885\n", - " -0.731437\n", " -0.843172\n", " \n", " \n", @@ -4162,7 +4131,6 @@ " -1.268784\n", " -0.944770\n", " -3.473244\n", - " -0.731437\n", " -0.888421\n", " \n", " \n", @@ -4170,7 +4138,6 @@ " -1.015779\n", " 0.322537\n", " 0.452568\n", - " -0.731437\n", " -0.635028\n", " \n", " \n", @@ -4178,7 +4145,6 @@ " -0.003760\n", " -0.522334\n", " -0.755374\n", - " -0.731437\n", " -0.040763\n", " \n", " \n", @@ -4187,14 +4153,12 @@ " ...\n", " ...\n", " ...\n", - " ...\n", " \n", " \n", " 322\n", " 0.122742\n", " 0.238050\n", " 0.049921\n", - " 1.367172\n", " -0.647095\n", " \n", " \n", @@ -4202,7 +4166,6 @@ " -0.794400\n", " -0.775796\n", " 0.804885\n", - " 1.367172\n", " -0.668211\n", " \n", " \n", @@ -4210,7 +4173,6 @@ " -0.731149\n", " -0.944770\n", " -0.151403\n", - " -0.731437\n", " 0.055767\n", " \n", " \n", @@ -4218,7 +4180,6 @@ " -0.098637\n", " -0.522334\n", " -0.453388\n", - " -0.731437\n", " -0.007581\n", " \n", " \n", @@ -4226,32 +4187,31 @@ " -0.414893\n", " -0.860283\n", " -0.352726\n", - " 1.367172\n", " 0.631933\n", " \n", " \n", "\n", - "

614 rows × 5 columns

\n", + "

614 rows × 4 columns

\n", "" ], "text/plain": [ - " Glucose Age BloodPressure Outcome DiabetesPedigreeFunction\n", - "196 -0.478144 -1.029257 -0.554050 -0.731437 -0.849205\n", - "69 0.818506 -0.522334 0.804885 -0.731437 -0.843172\n", - "494 -1.268784 -0.944770 -3.473244 -0.731437 -0.888421\n", - "463 -1.015779 0.322537 0.452568 -0.731437 -0.635028\n", - "653 -0.003760 -0.522334 -0.755374 -0.731437 -0.040763\n", - ".. ... ... ... ... ...\n", - "322 0.122742 0.238050 0.049921 1.367172 -0.647095\n", - "109 -0.794400 -0.775796 0.804885 1.367172 -0.668211\n", - "27 -0.731149 -0.944770 -0.151403 -0.731437 0.055767\n", - "651 -0.098637 -0.522334 -0.453388 -0.731437 -0.007581\n", - "197 -0.414893 -0.860283 -0.352726 1.367172 0.631933\n", + " Glucose Age BloodPressure DiabetesPedigreeFunction\n", + "196 -0.478144 -1.029257 -0.554050 -0.849205\n", + "69 0.818506 -0.522334 0.804885 -0.843172\n", + "494 -1.268784 -0.944770 -3.473244 -0.888421\n", + "463 -1.015779 0.322537 0.452568 -0.635028\n", + "653 -0.003760 -0.522334 -0.755374 -0.040763\n", + ".. ... ... ... ...\n", + "322 0.122742 0.238050 0.049921 -0.647095\n", + "109 -0.794400 -0.775796 0.804885 -0.668211\n", + "27 -0.731149 -0.944770 -0.151403 0.055767\n", + "651 -0.098637 -0.522334 -0.453388 -0.007581\n", + "197 -0.414893 -0.860283 -0.352726 0.631933\n", "\n", - "[614 rows x 5 columns]" + "[614 rows x 4 columns]" ] }, - "execution_count": 67, + "execution_count": 289, "metadata": {}, "output_type": "execute_result" } @@ -4275,7 +4235,7 @@ }, { "cell_type": "code", - "execution_count": 68, + "execution_count": 290, "metadata": {}, "outputs": [], "source": [ @@ -4318,14 +4278,20 @@ }, { "cell_type": "code", - "execution_count": 69, + "execution_count": 291, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ - "Model: logistic\n", + "Model: logistic\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ "Model: ridge\n", "Model: decision_tree\n", "Model: knn\n", @@ -4400,12 +4366,12 @@ }, { "cell_type": "code", - "execution_count": 70, + "execution_count": 292, "metadata": {}, "outputs": [ { "data": { - "image/png": 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", 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", 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 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_testPrecision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
logistic1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000naive_bayes0.6785710.7346940.5327100.6666670.7491860.7987010.5968590.699029
ridge1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000logistic0.6967740.7173910.5046730.6111110.7508140.7792210.5853660.660000
decision_tree1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000gradient_boosting0.9497490.6734690.8831780.6111110.9429970.7597400.9152540.640777
naive_bayes1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000random_forest0.9907410.6333331.0000000.7037040.9967430.7532470.9953490.666667
random_forest1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000knn0.7301590.6226420.6448600.6111110.7931600.7337660.6848640.616822
gradient_boosting1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000ridge0.6024590.5833330.6869160.7777780.7328990.7272730.6419210.666667
knn1.0000000.9818180.9906541.0000000.9967430.9935060.9953050.990826decision_tree0.8481680.6122450.7570090.5555560.8680780.7207790.8000000.582524
mlp0.7293230.6857140.4532710.4444440.7508140.7337660.5590780.539326mlp0.5131580.5322580.5467290.6111110.6612380.6753250.5294120.568966
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 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
logistic1.0000001.0000001.0000001.0000001.000000logistic0.7792210.6600000.8253700.4980830.501593
ridge1.0000001.0000001.0000001.0000001.000000ridge0.7272730.6666670.8244440.4437560.456930
decision_tree1.0000001.0000001.0000001.0000001.000000naive_bayes0.7987010.6990290.8205560.5483440.549805
knn0.9935060.9908261.0000000.9858010.985901gradient_boosting0.7597400.6407770.8157410.4609270.462155
naive_bayes1.0000001.0000001.0000001.0000001.000000random_forest0.7532470.6666670.8087040.4716500.473300
gradient_boosting1.0000001.0000001.0000001.0000001.000000knn0.7337660.6168220.7762040.4128700.412912
random_forest1.0000001.0000001.0000001.0000001.000000decision_tree0.7207790.5825240.7191670.3735100.374505
mlp0.7337660.5393260.6531480.3638930.380814mlp0.6753250.5689660.7190740.3105300.312437
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 72, + "execution_count": 294, "metadata": {}, "output_type": "execute_result" } @@ -4793,13 +4983,13 @@ }, { "cell_type": "code", - "execution_count": 73, + "execution_count": 295, "metadata": {}, "outputs": [ { "data": { "text/plain": [ - "'logistic'" + "'naive_bayes'" ] }, "metadata": {}, @@ -4821,13 +5011,13 @@ }, { "cell_type": "code", - "execution_count": 74, + "execution_count": 296, "metadata": {}, "outputs": [ { "data": { "text/plain": [ - "'Error items count: 0'" + "'Error items count: 31'" ] }, "metadata": {}, @@ -4867,17 +5057,482 @@ " \n", " \n", " \n", + " \n", + " 64\n", + " 7\n", + " 0\n", + " 114\n", + " 66\n", + " 0\n", + " 0\n", + " 32.8\n", + " 0.258\n", + " 42\n", + " 1\n", + " \n", + " \n", + " 88\n", + " 15\n", + " 0\n", + " 136\n", + " 70\n", + " 32\n", + " 110\n", + " 37.1\n", + " 0.153\n", + " 43\n", + " 1\n", + " \n", + " \n", + " 125\n", + " 1\n", + " 0\n", + " 88\n", + " 30\n", + " 42\n", + " 99\n", 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"630 27.4 0.732 34 1 \n", + "658 39.0 0.190 51 0 \n", + "669 30.9 0.164 45 0 \n", + "693 38.5 0.439 43 1 \n", + "730 28.4 0.323 34 1 \n", + "744 40.6 1.174 39 0 " ] }, - "execution_count": 74, + "execution_count": 296, "metadata": {}, "output_type": "execute_result" } @@ -4909,7 +5564,7 @@ }, { "cell_type": "code", - "execution_count": 75, + "execution_count": 297, "metadata": {}, "outputs": [ { @@ -4996,7 +5651,6 @@ " Glucose\n", " Age\n", " BloodPressure\n", - " Outcome\n", " DiabetesPedigreeFunction\n", " \n", " \n", @@ -5006,7 +5660,6 @@ " 0.122742\n", " 0.322537\n", " 0.049921\n", - " -0.731437\n", " -0.927636\n", " \n", " \n", @@ -5014,8 +5667,8 @@ "" ], "text/plain": [ - " Glucose Age BloodPressure Outcome DiabetesPedigreeFunction\n", - "555 0.122742 0.322537 0.049921 -0.731437 -0.927636" + " Glucose Age BloodPressure DiabetesPedigreeFunction\n", + "555 0.122742 0.322537 0.049921 -0.927636" ] }, "metadata": {}, @@ -5024,7 +5677,7 @@ { "data": { "text/plain": [ - "'predicted: 0 (proba: [0.99431769 0.00568231])'" + "'predicted: 0 (proba: [0.7669925 0.2330075])'" ] }, "metadata": {}, @@ -5064,27 +5717,19 @@ }, { "cell_type": "code", - "execution_count": 76, + "execution_count": 298, "metadata": {}, "outputs": [ - { - "name": "stderr", - "output_type": "stream", - "text": [ - "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\numpy\\ma\\core.py:2881: RuntimeWarning: invalid value encountered in cast\n", - " _data = np.array(data, dtype=dtype, copy=copy,\n" - ] - }, { "data": { "text/plain": [ - "{'model__criterion': 'gini',\n", - " 'model__max_depth': 5,\n", + "{'model__criterion': 'entropy',\n", + " 'model__max_depth': 7,\n", " 'model__max_features': 'sqrt',\n", - " 'model__n_estimators': 10}" + " 'model__n_estimators': 50}" ] }, - "execution_count": 76, + "execution_count": 298, "metadata": {}, "output_type": "execute_result" } @@ -5119,7 +5764,7 @@ }, { "cell_type": "code", - "execution_count": 77, + "execution_count": 299, "metadata": {}, "outputs": [], "source": [ @@ -5161,7 +5806,7 @@ }, { "cell_type": "code", - "execution_count": 78, + "execution_count": 300, "metadata": {}, "outputs": [], "source": [ @@ -5185,34 +5830,46 @@ }, { "cell_type": "code", - "execution_count": 79, + "execution_count": 301, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
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 Precision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_testPrecision_trainPrecision_testRecall_trainRecall_testAccuracy_trainAccuracy_testF1_trainF1_test
Name
Old1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000Old0.9907410.6333331.0000000.7037040.9967430.7532470.9953490.666667
New1.0000001.0000001.0000001.0000001.0000001.0000001.0000001.000000New0.8618420.6739130.6121500.5740740.8306190.7532470.7158470.620000
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 Accuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_testAccuracy_testF1_testROC_AUC_testCohen_kappa_testMCC_test
Name
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New1.0000001.0000001.0000001.0000001.000000New0.7532470.6200000.8461110.4390340.442128
\n" ], "text/plain": [ - "" + "" ] }, - "execution_count": 80, + "execution_count": 302, "metadata": {}, "output_type": "execute_result" } @@ -5388,12 +6057,12 @@ }, { "cell_type": "code", - "execution_count": 81, + "execution_count": 303, "metadata": {}, "outputs": [ { "data": { - "image/png": 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", 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z67jT6dTEiRNVp04dhYSEqGvXrvrpp5+M/voAAJPxVq5VBgZqAGAh3gi0Y8eO6dprr1W1atX04YcfaseOHXr66adVo0YN1zkzZszQ7Nmz9eKLL2rjxo0KDQ1VUlKSCgoKKuKvAQBgEmYeqHGPGgDgguXl5bm9DgoKUlBQkNu+p556SnFxcUpNTXXtq1+/vuvPTqdTs2bN0mOPPaZevXpJkl577TVFR0dr6dKluv322yvwGwAA4JuYUQMAC3Hq92fOlGdz/tZeXFyc7Ha7a0tJSSn1mcuWLVPr1q116623qnbt2rrqqqs0b9481/E9e/YoKytLXbt2de2z2+1q06aN1q9fX8F/IwCAqszoXPMlzKgBgIUYvTpWZmamIiIiXPv/dzZNknbv3q25c+dqzJgxeuSRR7Rp0ybdd999CgwM1IABA5SVlSVJio6OdntfdHS06xgAAGdj5lUfGagBAC5YRESE20DtbBwOh1q3bq1p06ZJkq666ipt375dL774ogYMGFAZ3QQAoMqh9BEALMQbN13XqVNHTZs2ddvXpEkTZWRkSJJiYmIkSdnZ2W7nZGdnu44BAHA2Zl5MhIEaAFiINwLt2muvVXp6utu+H3/8UQkJCZJOLywSExOjtLQ01/G8vDxt3LhRiYmJxnxxAIApmXmgRukjAKBCjR49Wu3atdO0adPUt29fffXVV3r55Zf18ssvS5JsNptGjRqlJ554Qpdeeqnq16+vCRMmKDY2Vr179/Zu5wEA8BIGagBgId646frqq6/We++9p/Hjx2vKlCmqX7++Zs2apf79+7vOeeihh3TixAn9/e9/V05Ojtq3b6+PPvpIwcHB5e4rAMC8WEwEAGAKTqdNTgPCyNM2brrpJt10003nPG6z2TRlyhRNmTKlvF0DAFiIt3KtMnCPGgAAAAD4GGbUAMBCzjzY04h2AADwNjPnGjNqAAAAAOBjmFEDAAsx803XAADrMXOuWWKgtnr1anXu3FnHjh1TZGTkOc+rV6+eRo0apVGjRlVa36zg/65pqux9gaX23zzgsEak7NfRQwGaPzVWX38erpP5foq7pFC335+tDj1zvdBbVKZb//aT2nU6qIsTjquo0F87v4tS6tym2p8RJkkKCy/SnUPSddU1h1Qr+lflHgvShi9i9K95jXXyRDUv975qMvNN11ZCrnlXSYn0+tMxSnunho4drqaa0cXq1veo7hiVLdtv/zT+OSpeK9+Ocntfq+vyNG3Rbi/0GJXlijb5unXYYV3a7KRqxpzS5EH1tP4ju+v4AzMz1P22Y27v2fxZuB7t36Cyu2oaZs41rw7UBg4cqJycHC1dutRtf1kD6EItXLhQo0aNUk5OjuFto7TZH6bLUfL7D//eH4I1/vaG6nDz6YHYP+6LV36evyYv3CN71Cl99l4NTbunnp778Ec1bPart7qNStCsxX/1wbv19OPOSPn7OzXgnp16YuZ63du/swoLAlTzogJFXVSgBc9froy94aodfVIjHvxWURcVKOWxq73dfaAUcs0a3p5TWytevUhjn81QQqMC/bQtRE+PjldoeIl6D/mv67zWnfP0wMwM1+tqgU5vdBeVKLi6Q7u/D9bHb0Zp0it7z3rOpk/D9fToONfr4iLfGyDAN1hiRg3eFVmzxO31W8/bVadeoZon5kuSdmwO1cjp+9T4qpOSpDtGZevdebX007chDNRMbuIDiW6vn3nyKr35wcdq2ChX32+rqV/2RGjao78PyLL2h+q1l5to7MSv5efvkKOE22w9ZeYSEaCy7NgcqsSkXLXpmidJiokr0mdLjyt9a3W386oFOhVV+5Q3uggv2fxZhDZ/FnHec4qLbDp2mKoQo5g516rEf+WsXbtWHTp0UEhIiOLi4nTffffpxIkTruP/+te/1Lp1a4WHhysmJkZ33HGHDh06dNa2Vq9erbvuuku5ubmy2Wyy2WyaPHmy6/jJkyc1aNAghYeHKz4+Xi+//LLrWJcuXTRixAi39g4fPqzAwEClpaUZ+6VNqrjIpk/fqaGk24+4ykOatj6hNcsilXfMXw6HtHpppIoKbGreLt+7nUWlCw0tliTl5507wKqHFevkiQAGaRfoTImIERsuHLlWtTVtfUJb14Zr364gSdKu74P1/VehurrLcbfzvl0fpr7NLtfg9o01++GLlXfU3xvdhY9pnpivt779XvO/+EEjU/YpvAaD+fIwc675/H/p7Nq1SzfccIOSk5P17bff6q233tLatWvdgqW4uFhTp07Vtm3btHTpUu3du1cDBw48a3vt2rXTrFmzFBERoYMHD+rgwYMaO3as6/jTTz+t1q1b65tvvtGwYcM0dOhQpaenS5KGDBmiRYsWqbCw0HX+66+/rrp166pLly5n/bzCwkLl5eW5bVa27iO78vP81b3vUde+R1/6RSXFNt16eTPdVO9KPTsuTpMW7FXd+kVe7Ckqm83m1N/v/17fb4vSL3vOfjUywl6ofgN/1EfLEiq5d4BxyLWq77YRh9Sp1zEN6dhYN8ZfqeHdG+kvdx9Wlz6/33vU+ro8PfjsL3rq7V0a/OhBfbc+TI/e2UAlJedpGKa3eXW4/nF/vMb1baAFT9ZRs8R8Pfn6bvn5URaL0rxe+rhixQqFhYW57Sv5w2+xlJQU9e/f33Uj9KWXXqrZs2erU6dOmjt3roKDgzVo0CDX+Q0aNNDs2bN19dVXKz8/v1TbgYGBstvtstlsiomJKdWfG2+8UcOGDZMkjRs3TjNnztRnn32mRo0aqU+fPhoxYoTef/999e3bV9Lp+wIGDhwom+3so/CUlBQ9/vjjnv/FmNTHb0bp6s55qhnz+9WjV2fEKD/PX9Pf+lkRUae0/iO7nry3np5+7yfVb1Lgxd6iMg194FslNMjTg0Pbn/V4SPViTf7HRmXsCdcbCxpVcu/Mw2lQiYgvXnn0FeSa+X2+LFKfvltDD8/5RQmNCrTr+xC9OKnub4uKnB6sXdc7x3V+/SYFqt/0Vw1MbKpv14Xpqg5UjFjVmvdruP6894cQ7dkRrFc3/KDm7fK1dW24F3tWdZk517w+o9a5c2dt3brVbZs/f77r+LZt27Rw4UKFhYW5tqSkJDkcDu3Zs0eStGXLFt18882Kj49XeHi4OnXqJEnKyMg462eeT/PmzV1/PhN6Z8pNgoOD9be//U2vvPKKJOnrr7/W9u3bz3mVU5LGjx+v3Nxc15aZmelxn8wie181ffNFuG6444hr34G9gVqWWktjnsnUVR3ydcnlBbrzgWxd2vykli28yIu9RWW6d8y3uqZdtsaPbKcjh0NKHQ+pfkpTn9mgX08G6IlHrlYJZY8XzCnJ6TRg8/YX8WHkmvnNmxqr20Yc0nW9c1S/SYG6/vWY+tx9WIufiz7ne+okFMkedUoH9gZVYk/h67IygpRzxF+x9agiulBmzjWvz6iFhoaqYcOGbvv27dvn+nN+fr7uuece3XfffaXeGx8frxMnTigpKUlJSUl64403VKtWLWVkZCgpKUlFRZ7/0Fer5n5vjM1mk8PhcL0eMmSIWrRooX379ik1NVVdunRRQsK5y7CCgoIUFMQvZUn6ZHFNRV50ynXztSQV/nr6P7j/d8rf398pp0MwPafuHfOdEjtmafyIdso+GFrqjJDqxZo6c4OKi/w0Zdw1Ki7iHg/4NnLN/AoL/GT7n9zy83fKeZ7/0jt8oJryjvkrqnZxBfcOVclFdYoUUaNERw95/T/J4YN8/qeiZcuW2rFjR6nQO+O7777TkSNHNH36dMXFnV7qdPPmzedtMzAw0K0MxRPNmjVT69atNW/ePC1atEjPP//8BbVjNQ6H9MlbUep661H5/+GnLq5hgWLrF+rZh+J098QDiqhxSus+suvrz8M15TWeNWN2wx74Tp267dPUh6/RrycDVCPqdKnrifxqKiryV0j1Yj0xa4OCgk7pn1OuUfXQU6oeerpsNjcnSA6H75Up+DqHbLLJgNWxDGjDqsi1qq9ttzwtnh2t2nWLT5c+bg/Ruy/VVvfbT1eM/HrCT68/HaP2PXNUo/YpHdwbqPlPxCq2fqFaXXf8T1pHVRZcvUSxf7jHPiauSA0u/1XHc/x1/Ji/7nwgW2s/sOvYoWqqU69QQx47qAN7ArVlNWWPF8rMuebzA7Vx48apbdu2GjFihIYMGaLQ0FDt2LFDK1eu1PPPP6/4+HgFBgbqueee07333qvt27dr6tSp522zXr16ys/PV1pamq688kpVr15d1atXP+97/mjIkCEaMWKEQkND9Ze//KW8X9ESvvk8XIf2Byrp9qNu+wOqSU/8a5cWTIvVpAH19esJP8XWL9LYZzN0zfWEmdn17LNXkvTUnHVu+2c+2UKr/hOvho1y1fjy0/d7LHjbfQW6u5K76lBW2f/dAr6CXKv6hj2xT6/OqKPnx1+snCMBqhldrBv/9l/1H50t6XSVyJ6dwVq5pL5O5PmrZvQpteyUpwEPZSkwyBcLrGCUy678Vf94Z5fr9b2PH5AkffJWDT03/mLVb/Krut16TKERJTqSHaCv14Tr1RkxKi6ipB+l+fxArXnz5lqzZo0effRRdejQQU6nU5dccoluu+02SVKtWrW0cOFCPfLII5o9e7Zatmypf/7zn7rlllvO2Wa7du1077336rbbbtORI0c0adIkt6WM/0y/fv00atQo9evXT8HBweX9ipbQ6rrj+vjA1rMeq9ugSBPn763U/sA39Lz23P9OJem7by7603PgGaOWIPbFm66rCnKt6qse5tDQKfs1dMr+sx4PCnFq2ptUhVjRt+vDlBR75TmPP3rHJZXYG2swc67ZnM7zVVTjbPbu3atLLrlEmzZtUsuWLT16b15enux2u4792EAR4Vw9gbue1/bydhfgg045CrVq7/PKzc1VRMT5H6R6Lmd+91zx9oPyr17++4tKThZqe99/lKtP8B3kGipKUmwLb3cBPuiUs1ir9X6VzrX9+/dr3Lhx+vDDD3Xy5Ek1bNhQqampat26tSTJ6XRq0qRJmjdvnnJycnTttddq7ty5uvTSS8vcJ36jeqC4uFhZWVl67LHH1LZtW4/DDAAAX0KuAYDnjh07pmuvvVbVqlXThx9+qB07dujpp59WjRq/P35hxowZmj17tl588UVt3LhRoaGhSkpKUkFB2R895fOlj77kyy+/VOfOnXXZZZfp3//+t7e7AwAeO7MMsRHtoOoj1wBUdd7ItaeeekpxcXFKTU117atfv/4f2nJq1qxZeuyxx9Sr1+lqqddee03R0dFaunSpbr/99jJ9DgM1D1x33XWiUhRAVWbmWn54jlwDUNUZnWt5eXlu+8/2SJJly5YpKSlJt956q9asWaO6detq2LBhuvvuuyVJe/bsUVZWlrp27ep6j91uV5s2bbR+/foyD9QofQQAAAAASXFxcbLb7a4tJSWl1Dm7d+923W/28ccfa+jQobrvvvv06quvSpKysrIkSdHR0W7vi46Odh0rC2bUAMBCmFEDAJiJ0bmWmZnptpjI/86mSZLD4VDr1q01bdo0SdJVV12l7du368UXX9SAAQPK3ZczmFEDAAtxOG2GbQAAeJvRuRYREeG2nW2gVqdOHTVt2tRtX5MmTZSRkSFJiomJkSRlZ2e7nZOdne06VhYM1AAAAACgjK699lqlp6e77fvxxx+VkJAg6fTCIjExMUpLS3Mdz8vL08aNG5WYmFjmz6H0EQAshFUfAQBm4o1cGz16tNq1a6dp06apb9+++uqrr/Tyyy/r5ZdfliTZbDaNGjVKTzzxhC699FLVr19fEyZMUGxsrHr37l3mz2GgBgAWcjrQjKjlN6AzAACUkzdy7eqrr9Z7772n8ePHa8qUKapfv75mzZql/v37u8556KGHdOLECf39739XTk6O2rdvr48++kjBwcFl/hwGagAAAADggZtuukk33XTTOY/bbDZNmTJFU6ZMueDPYKAGABbCqo8AADMxc66xmAgAAAAA+Bhm1ADAQpy/bUa0AwCAt5k51xioAYCFmLlEBABgPWbONUofAQAAAMDHMKMGAFZi5hoRAID1mDjXGKgBgJUYVCIiHywRAQBYkIlzjdJHAAAAAPAxzKgBgIU4nac3I9oBAMDbzJxrDNQAwELMvDoWAMB6zJxrlD4CAAAAgI9hRg0ArMRpM+aGaR+88ggAsCAT5xozagAAAADgY5hRAwALMfNN1wAA6zFzrjFQAwArMfGDQQEAFmTiXKP0EQAAAAB8DDNqAGAhZl7GGABgPWbONQZqAGA1PljeAQDABTNprlH6CAAAAAA+pkwzasuWLStzg7fccssFdwYAULHMXCLiCXINAMzBzLlWpoFa7969y9SYzWZTSUlJefoDAKhIJl4dyxPkGgCYhIlzrUwDNYfDUdH9AACg0pBrAABfV6571AoKCozqBwCgUtgM3MyHXAOAqsa8uebxQK2kpERTp05V3bp1FRYWpt27d0uSJkyYoAULFhjeQQCAgZwGbiZBrgFAFWbiXPN4oPbkk09q4cKFmjFjhgIDA137r7jiCs2fP9/QzgEAUNHINQCAL/J4oPbaa6/p5ZdfVv/+/eXv7+/af+WVV+qHH34wtHMAAIOZ+MrjhSLXAKAKM3GueTxQ279/vxo2bFhqv8PhUHFxsSGdAgCgspBrAABf5PFArWnTpvriiy9K7f/3v/+tq666ypBOAQAqiNNm3FZGkydPls1mc9saN27sOl5QUKDhw4erZs2aCgsLU3JysrKzsyvi258VuQYAVZgXcq2ylGl5/j+aOHGiBgwYoP3798vhcOjdd99Venq6XnvtNa1YsaIi+ggAMIjTeXozoh1PXH755Vq1apXrdUDA7/EzevRoffDBB1qyZInsdrtGjBihPn366Msvvyx/R8uAXAOAqstbuVYZPJ5R69Wrl5YvX65Vq1YpNDRUEydO1M6dO7V8+XJ169atIvoIAKjiAgICFBMT49ouuugiSVJubq4WLFigZ555Rl26dFGrVq2UmpqqdevWacOGDZXSN3INAOCLPJ5Rk6QOHTpo5cqVRvcFAFDRjLph+rc28vLy3HYHBQUpKCio1Ok//fSTYmNjFRwcrMTERKWkpCg+Pl5btmxRcXGxunbt6jq3cePGio+P1/r169W2bVsDOvvnyDUAqKIMzjVfckEDNUnavHmzdu7cKel0fX+rVq0M6xQAoIIYVYf/WxtxcXFuuydNmqTJkye77WvTpo0WLlyoRo0a6eDBg3r88cfVoUMHbd++XVlZWQoMDFRkZKTbe6Kjo5WVlVX+fnqAXAOAKsjgXPMlHg/U9u3bp379+unLL790BWtOTo7atWunxYsX6+KLLza6jwAAH5WZmamIiAjX67PNpvXo0cP15+bNm6tNmzZKSEjQ22+/rZCQkErp5/mQawAAX+TxPWpDhgxRcXGxdu7cqaNHj+ro0aPauXOnHA6HhgwZUhF9BAAYxOY0bpOkiIgIt+1sA7X/FRkZqcsuu0w///yzYmJiVFRUpJycHLdzsrOzFRMTUwF/A6WRawBQdRmda77E44HamjVrNHfuXDVq1Mi1r1GjRnruuef0+eefG9o5AIDBfODBoPn5+dq1a5fq1KmjVq1aqVq1akpLS3MdT09PV0ZGhhITEy/8QzxArgFAFeYDuVZRPC59jIuLO+sDQEtKShQbG2tIpwAA5jF27FjdfPPNSkhI0IEDBzRp0iT5+/urX79+stvtGjx4sMaMGaOoqChFRERo5MiRSkxMrLSFRMg1AIAv8nhG7R//+IdGjhypzZs3u/Zt3rxZ999/v/75z38a2jkAgMG88GDQM/eANWrUSH379lXNmjW1YcMG1apVS5I0c+ZM3XTTTUpOTlbHjh0VExOjd999t6L+Bkoh1wCgCrP6A69r1Kghm+33zp84cUJt2rRxPbD01KlTCggI0KBBg9S7d+8K6SgAoGpavHjxeY8HBwdrzpw5mjNnTiX1iFwDAPi+Mg3UZs2aVcHdAABUChM/b8YT5BoAmISJc61MA7UBAwZUdD8AAJXBxIHmCXINAEzCxLl2wQ+8lqSCggIVFRW57fvj83QAAKhKyDUAgK/weDGREydOaMSIEapdu7ZCQ0NVo0YNtw0A4MNMvIzxhSLXAKAKM3GueTxQe+ihh/Tpp59q7ty5CgoK0vz58/X4448rNjZWr732WkX0EQBgFBOvjnWhyDUAqMJMnGselz4uX75cr732mq677jrddddd6tChgxo2bKiEhAS98cYb6t+/f0X0EwCACkGuAQB8kcczakePHlWDBg0kna7bP3r0qCSpffv2+vzzz43tHQDAUDancZtZkGsAUHWZOdc8Hqg1aNBAe/bskSQ1btxYb7/9tqTTVyQjIyMN7RwAwGAmruW/UOQaAFRhJs41jwdqd911l7Zt2yZJevjhhzVnzhwFBwdr9OjRevDBBw3vIAAAFYlcAwB4YvLkybLZbG5b48aNXccLCgo0fPhw1axZU2FhYUpOTlZ2drbHn+PxPWqjR492/blr16764YcftGXLFjVs2FDNmzf3uAMAAHgTuQYA8NTll1+uVatWuV4HBPw+rBo9erQ++OADLVmyRHa7XSNGjFCfPn305ZdfevQZ5XqOmiQlJCQoISGhvM0AACqBTcbU4fve2ljGIdcAoOrwVq4FBAQoJiam1P7c3FwtWLBAixYtUpcuXSRJqampatKkiTZs2KC2bduW/TPKctLs2bPL3OB9991X5nMBAPAGcg0AcDZ5eXlur4OCghQUFFTqvJ9++kmxsbEKDg5WYmKiUlJSFB8fry1btqi4uFhdu3Z1ndu4cWPFx8dr/fr1xg/UZs6cWabGbDYbgVZGf7msmQJs1bzdDfiYQ8PrersL8EElRQXSywY1ZtSzYnzweTOeINeM99eevRTgX/o/ZmBthTfy0HiUdqq4QPrkfWMaMzjX4uLi3HZPmjRJkydPdtvXpk0bLVy4UI0aNdLBgwf1+OOPq0OHDtq+fbuysrIUGBhYajGq6OhoZWVledSlMg3UzqyGBQCAGZBrAICzyczMVEREhOv12WbTevTo4fpz8+bN1aZNGyUkJOjtt99WSEiIYX3xeNVHAEAVZuJljAEAFmRwrkVERLhtZxuo/a/IyEhddtll+vnnnxUTE6OioiLl5OS4nZOdnX3We9rOh4EaAFgJAzUAgJn4QK7l5+dr165dqlOnjlq1aqVq1aopLS3NdTw9PV0ZGRlKTEz0qN1yr/oIAAAAAFYxduxY3XzzzUpISNCBAwc0adIk+fv7q1+/frLb7Ro8eLDGjBmjqKgoRUREaOTIkUpMTPRoIRGJgRoAWIrNadAyxsyoAQB8gDdybd++ferXr5+OHDmiWrVqqX379tqwYYNq1aol6fSCVX5+fkpOTlZhYaGSkpL0wgsveNwnBmoAYCVGlS0yUAMA+AIv5NrixYvPezw4OFhz5szRnDlzytWlC7pH7YsvvtCdd96pxMRE7d+/X5L0r3/9S2vXri1XZwAA8AZyDQDgazweqL3zzjtKSkpSSEiIvvnmGxUWFko6/RTuadOmGd5BAICBfOCma19DrgFAFWbiXPN4oPbEE0/oxRdf1Lx581St2u8PbL722mv19ddfG9o5AICxztTyG7GZBbkGAFWXmXPN44Faenq6OnbsWGq/3W4v9bwAAAB8HbkGAPBFHg/UYmJi9PPPP5fav3btWjVo0MCQTgEAKojTZtxmEuQaAFRhJs41jwdqd999t+6//35t3LhRNptNBw4c0BtvvKGxY8dq6NChFdFHAAAqDLkGAPBFHi/P//DDD8vhcOj666/XyZMn1bFjRwUFBWns2LEaOXJkRfQRAGAUlucvhVwDgCrMxLnm8UDNZrPp0Ucf1YMPPqiff/5Z+fn5atq0qcLCwiqifwAAA/HA69LINQCousycaxf8wOvAwEA1bdrUyL4AAOA15BoAwJd4PFDr3LmzbLZz32z36aeflqtDAIAKZOISkQtFrgFAFWbiXPN4oNaiRQu318XFxdq6dau2b9+uAQMGGNUvAEBFMOpZMT4YaBeKXAOAKszEuebxQG3mzJln3T958mTl5+eXu0MAAFQmcg0A4Is8Xp7/XO6880698sorRjUHAKgITgM3kyPXAKAKMHGuXfBiIv9r/fr1Cg4ONqo5AEBFMHEtv9HINQCoAkycax4P1Pr06eP22ul06uDBg9q8ebMmTJhgWMcAAKgM5BoAwBd5PFCz2+1ur/38/NSoUSNNmTJF3bt3N6xjAADjmfl5MxeKXAOAqsvMuebRQK2kpER33XWXmjVrpho1alRUnwAAqBTkGgDAV3m0mIi/v7+6d++unJycCuoOAACVh1wDAPgqj1d9vOKKK7R79+6K6AsAoKKZeHWsC0WuAUAVZuJc83ig9sQTT2js2LFasWKFDh48qLy8PLcNAICqhFwDAPiiMt+jNmXKFD3wwAO68cYbJUm33HKLbDab67jT6ZTNZlNJSYnxvQQAGMLMN117ilwDgKrPzLlW5oHa448/rnvvvVefffZZRfYHAFDRfDCMvIFcAwCTMGmulXmg5nSe/hvo1KlThXUGAIDKQq4BAHyZR8vz/7EkBABQBRl1w7RJrl6SawBQxZk41zwaqF122WV/GmpHjx4tV4cAABXHzLX8F4JcA4Cqzcy55tFA7fHHH5fdbq+ovgAAUKnINQCAr/JooHb77berdu3aFdUXAEBFM3GJyIUg1wCgijNxrpV5oEYdPwBUfWYuEfEUuQYAVZ+Zc63MD7w+szoWAABmQK4BAHxZmWfUHA5HRfYDAFAZTFwi4ilyDQBMwMS5VuYZNQAAAABA5fBoMREAQBVn4iuPAAALMnGuMVADAAsx803XAADrMXOuUfoIAAAAAD6GGTUAsBITl4gAACzIxLnGjBoAWInTwO0CTZ8+XTabTaNGjXLtKygo0PDhw1WzZk2FhYUpOTlZ2dnZF/4hAABr8IFcqygM1AAAlWbTpk166aWX1Lx5c7f9o0eP1vLly7VkyRKtWbNGBw4cUJ8+fbzUSwAAvI+BGgBYyJmbro3YJCkvL89tKywsPOdn5+fnq3///po3b55q1Kjh2p+bm6sFCxbomWeeUZcuXdSqVSulpqZq3bp12rBhQ0X/lQAAqjCjc82XMFADACsxuEQkLi5OdrvdtaWkpJzzo4cPH66ePXuqa9eubvu3bNmi4uJit/2NGzdWfHy81q9fb8CXBgCYlolLH1lMBABwwTIzMxUREeF6HRQUdNbzFi9erK+//lqbNm0qdSwrK0uBgYGKjIx02x8dHa2srCxD+wsAQFXBQA0ALMTo581ERES4DdTOJjMzU/fff79Wrlyp4ODg8n84AAC/4TlqAABz8EKJyJYtW3To0CG1bNlSAQEBCggI0Jo1azR79mwFBAQoOjpaRUVFysnJcXtfdna2YmJiyvNtAQBmR+kjAAAX5vrrr9d3333ntu+uu+5S48aNNW7cOMXFxalatWpKS0tTcnKyJCk9PV0ZGRlKTEz0RpcBAPA6BmoAYCVGXTX0oI3w8HBdccUVbvtCQ0NVs2ZN1/7BgwdrzJgxioqKUkREhEaOHKnExES1bdvWgM4CAEzLC7lWWRioAQC8bubMmfLz81NycrIKCwuVlJSkF154wdvdAgDAaxioAYCF2H7bjGinPFavXu32Ojg4WHPmzNGcOXPK2TIAwEp8JdcqAgM1ALASE5eIAAAsyMS5xqqPAAAAAHCBpk+fLpvNplGjRrn2FRQUaPjw4apZs6bCwsKUnJys7Oxsj9ploAYAFnLmeTNGbAAAeJu3c23Tpk166aWX1Lx5c7f9o0eP1vLly7VkyRKtWbNGBw4cUJ8+fTxqm4EaAFiJiZ83AwCwIINzLS8vz20rLCw850fn5+erf//+mjdvnmrUqOHan5ubqwULFuiZZ55Rly5d1KpVK6WmpmrdunXasGFDmb8aAzUAAAAAkBQXFye73e7aUlJSznnu8OHD1bNnT3Xt2tVt/5YtW1RcXOy2v3HjxoqPj9f69evL3BcWEwEAq2E2DABgJgbmWmZmpiIiIlyvg4KCznre4sWL9fXXX2vTpk2ljmVlZSkwMFCRkZFu+6Ojo5WVlVXmvjBQAwALMer+Mu5RAwD4AqNzLSIiwm2gdjaZmZm6//77tXLlSgUHB5f/w8+B0kcAAAAAKKMtW7bo0KFDatmypQICAhQQEKA1a9Zo9uzZCggIUHR0tIqKipSTk+P2vuzsbMXExJT5c5hRAwArMfHzZgAAFuSFXLv++uv13Xffue2766671LhxY40bN05xcXGqVq2a0tLSlJycLElKT09XRkaGEhMTy/w5DNRQ4a5ok69bhx3Wpc1OqmbMKU0eVE/rP7K7nRPXsECDHzuo5m3z5R8g/fJjkKbeXU+H9wd6qdeoDLe23K6/tvxesZHHJUm7D0fp5bWt9OWuBElSzdCTGnX9erWtn6nQwGLtPRqpBWtbKi39Em92G4DF9b3jB7XrcEAXxx9XUaG/dn4fpVdebqb9meGuc0aM+VpXtTykqIt+VcGvAdrxfU2lvnSF9mWev6QKVdst1+1Qr+t2KqZmviRp74EaenX5Vfpqe5wk6aaOP6hrm591afwRhYYU66aRf1P+r2e/Bwq+Kzw8XFdccYXbvtDQUNWsWdO1f/DgwRozZoyioqIUERGhkSNHKjExUW3bti3z51D6KMlms2np0qVlOnfy5Mlq0aJFhfbHbIKrO7T7+2A9/8jFZz1eJ6FQzyz9WZk/B+nBv16ie6+/TItmRauowFbJPUVlyz4epuc+a6v+C/6q/q/8VV/9Ulczb/1IDS46Kkmaekua6tXM0aglPXTrvNv06Q8N9FSflWoUfdjLPa+6vP28GVQOcq1iXXHlf7ViaQONGd5Zjz7YXv4BTj05Y62Cgk+5zvn5x0jNnNFK9wzorsceai+bpCf+sVZ+fvzjMbPDx0L18jvX6O9Te+ueJ3rr6x/q6MkRK1Uv9pgkKTjwlL7aHqc3/tPCux01EV/NtZkzZ+qmm25ScnKyOnbsqJiYGL377rsetWGJGbXDhw9r4sSJ+uCDD5Sdna0aNWroyiuv1MSJE3Xttdfq4MGDbs8+gLE2fxahzZ+d+wriwIez9NWnEVrwRKxr38FfuLpkBZ//VM/t9ZzVbXRry+/VvG62dv83SldenKVpH3bU9weiJUnzv2yl/tdsU9M6h5WeXcsLPTYBSh9NgVzzronj2ru9fmZ6ay1eukKXXnZM2789/bvpoxUNXMcPZYfqtVcu1wsLVql2zAllHQir1P6i8qzfluD2esF7V6vXdT+oaYND2nughv696vRsS4tGB7zRPXPykVxbvXq12+vg4GDNmTNHc+bMueA2LTFQS05OVlFRkV599VU1aNBA2dnZSktL05EjRyTJo5v6YCybzalrrs/Tkhdq68lFu9TwigJlZQRq8fO1S5VHwtz8bA51a7JLIdWK9e3+0wOzbfti1L3pLn3xc4KOFwSpe9OfFRRQos2/1PVybwHvItd8S2hosSTpeN7Zy/WDgk+p2w17dfBAdf33UPXK7Bq8yM/m0HWt9yg4sFjf76rt7e6gCjL9QC0nJ0dffPGFVq9erU6dOkmSEhISdM0117jOsdlseu+999S7d29J0r59+/Tggw/q448/VmFhoZo0aaI5c+aoTZs2pdrftWuXunXrphtvvFHPPfecbDb3cr3CwkK3J5rn5eVVwLesuiIvOqXqYQ7dNuKQFj4VowVPxqp15zxNnL9XD/31En23gauOZtew1hG9OvBdBQaU6Neianrg3zdo93+jJEkPvdtdT/1lpdY8kKriEj8VFAdozL9vUOYxBvEXiuX5qz5yzbfYbE7dM2Kbvv+upn7Z6/67qWevXRp0z3cKCSlRZkaYHn2wg06d4q4Ts6tf96heGL9MgdVK9GthNU14oZt+OcgMd0Uxc66Z/rdFWFiYwsLCtHTpUrdgOZf8/Hx16tRJ+/fv17Jly7Rt2zY99NBDcjgcpc799ttv1b59e91xxx16/vnnS4WZJKWkpLg93TwuLs6Q72UWtt9+Atd/HKH35tXS7u9D9Pbz0dq4KkI9/++IdzuHSrH3SKRun99X/5earCVbLteUmz913aM2vNNXCg8u1D1v3Kw7X0nW618114w+n6hhLX42LpjTwA1eQa75lmH3f6OE+nmaPuWaUsc+WxWvkXdfr4fu76j9meEaP2mjqlUr8UIvUZkys+waMuUvGjqtl95f3UTjB61RQp1j3u6WeZk410w/UAsICNDChQv16quvKjIyUtdee60eeeQRffvtt2c9f9GiRTp8+LCWLl2q9u3bq2HDhurbt2+ppTTXrVun6667TmPHjtUTTzxxzs8fP368cnNzXVtmZqah36+qyzvqr1PF0i8/uj8sMPOnINWuW+SlXqEynXL4K/OYXTuzaum51W3146Ga6nf1d7o4Mle3X71dk1d01ld7L9aPhy7Sy19crR0Ha+m21tu93W3Aa8g13zH0vm90TWKWHh7dUUf+W7qk8eSJajqwP1zbv62laZPbKi7uuNp14N4ksztV4q/9h+z68ZeLNO/dq7UrM0rJXb/3drdQBZl+oCadruU/cOCAli1bphtuuEGrV69Wy5YttXDhwlLnbt26VVdddZWioqLO2V5GRoa6deumiRMn6oEHHjjvZwcFBbmecF6WJ51bzaliP/24rbouvsT9qnDdBoU6tI+l+a3IZnMq0L9EwdVOr57mdLpf0S9x+Mnmi/UJVYWJrzxaCbnmbU4Nve8bJbY/oPFjOig7K/TP32JzSjYxo2ZBNptTgQH8/15hTJxrlhioSadXXunWrZsmTJigdevWaeDAgZo0aVKp80JCQv60rVq1aumaa67Rm2++afna/LIIrl6iBpf/qgaX/ypJiokrUoPLf1Wt32bMlrxQW51uyVGPO44otl6hbrnrv2rbLU/LX63pzW6jEoy8boNaxh1QHXueGtY6opHXbVDrhAP6z/eXau+RSGUcteuxG9fo8thsXRyZq7+12aq2DTK1Or2+t7teZfnqMsbwHLnmPcNGbVXnbpma8eQ1+vVkNdWoUaAaNQoUGHj6P8Zj6uSr7x0/qOFlx1Sr9kk1ufyIHpm0UUWF/tq0kYVezOzuPpvU/NKDiql5XPXrHtXdfTapRaODWrnx9PM/oyJOqmHcEdWtffrfWf2Lj6lh3BGFhxZ4s9tVmplzzfSLiZxL06ZNz/qMmebNm2v+/Pk6evToOa8+hoSEaMWKFbrxxhuVlJSkTz75ROHh4Wc9F9JlV/6qf7yzy/X63sdPl3188lYNPT06Xus+smv2w3V1+4hDGjp1v/btPv2w6++/YiERs4sK/VVTb/lUF4WdUH5hoH46VFPD3rxJG/ecvudl5OIbdV+XDXr21g9VPbBYmcfsmrisi9b+9kBsAL8j1yrPTb12S5JmzPrcbf8z01tp1cf1VFTkr8ub/Ve9kn9WWHiRco4Fa/u3F+mBkdcpNyf4bE3CJCLDf9Ujg9coyn5SJ34N1O59UXpw1g3asuP0s2RvuW6nBt7yjev858atkCRNf6WjPlp3mVf6DN9l+oHakSNHdOutt2rQoEFq3ry5wsPDtXnzZs2YMUO9evUqdX6/fv00bdo09e7dWykpKapTp46++eYbxcbGutXzh4aG6oMPPlCPHj3Uo0cPffTRRwoLY2BxNt+uD1NS7JXnPeeTxTX1yWJm0Kzm8Q86n/d4xrFIjX3nhkrqjUUYVd7hg1cerYJc874bOyef9/jRIyGaNL79ec+BOf3j1Y7nPb5wWSstXNaqknpjESbONdOXPoaFhalNmzaaOXOmOnbsqCuuuEITJkzQ3Xffreeff77U+YGBgfrkk09Uu3Zt3XjjjWrWrJmmT58uf3//s7b94Ycfyul0qmfPnjpx4kRlfCUAuGA2p9OwDd5BrgHA78ycazan0wd7ZWJ5eXmy2+26Tr0UYKvm7e7Axxwa3s7bXYAPKikq0PcvP6Lc3NwLXrjhzO+eFn97Uv6B5S+9Kikq0NZ/PVquPsEczvxsXX/paAX4B3m7O/AxJy/h+WEo7VRxgdZ/Molc+xOmL30EAPyBiUtEAAAWZOJcM33pIwAAAABUNcyoAYCFGLUEsS8uYwwAsB4z5xoDNQCwEhOXiAAALMjEuUbpIwAAAAD4GGbUAMBCzFwiAgCwHjPnGgM1ALASE5eIAAAsyMS5RukjAAAAAPgYZtQAwELMXCICALAeM+caAzUAsBITl4gAACzIxLlG6SMAAAAA+Bhm1ADAYnyxvAMAgAtl1lxjRg0AAAAAfAwzagBgJU7n6c2IdgAA8DYT5xoDNQCwEDOvjgUAsB4z5xqljwAAAADgY5hRAwArMfEyxgAACzJxrjFQAwALsTlOb0a0AwCAt5k51yh9BAAAAAAfw4waAFiJiUtEAAAWZOJcY6AGABZi5tWxAADWY+Zco/QRAAAAAHwMM2oAYCUmfjAoAMCCTJxrDNQAwELMXCICALAeM+capY8AAAAA4GOYUQMAKzHx6lgAAAsyca4xowYAAAAAPoYZNQCwEDPX8gMArMfMucZADQCsxMSrYwEALMjEuUbpIwAAAAD4GGbUAMBCzFwiAgCwHjPnGjNqAGAlTgO3Mpo7d66aN2+uiIgIRUREKDExUR9++KHreEFBgYYPH66aNWsqLCxMycnJys7OLvdXBQBYgBdyrbIwUAMAVKiLL75Y06dP15YtW7R582Z16dJFvXr10vfffy9JGj16tJYvX64lS5ZozZo1OnDggPr06ePlXgMA4F2UPgKAhXijROTmm292e/3kk09q7ty52rBhgy6++GItWLBAixYtUpcuXSRJqampatKkiTZs2KC2bduWv7MAANMyc+kjAzUAsBKH8/RmRDuS8vLy3HYHBQUpKCjonG8rKSnRkiVLdOLECSUmJmrLli0qLi5W165dXec0btxY8fHxWr9+PQM1AMD5GZxrvoTSRwDABYuLi5PdbndtKSkpZz3vu+++U1hYmIKCgnTvvffqvffeU9OmTZWVlaXAwEBFRka6nR8dHa2srKxK+AYAAPgmBmoAYCUG33SdmZmp3Nxc1zZ+/PizfmyjRo20detWbdy4UUOHDtWAAQO0Y8eOCvuaAACLMPEiWQzUAAAX7ExIndnOVfYYGBiohg0bqlWrVkpJSdGVV16pZ599VjExMSoqKlJOTo7b+dnZ2YqJiamEbwAAgGcqa5Es7lEDAAuxyaCbrsv5fofDocLCQrVq1UrVqlVTWlqakpOTJUnp6enKyMhQYmJi+TsKADA1o3OtLPdeV9YiWQzUAMBKnM7TmxHtlNH48ePVo0cPxcfH6/jx41q0aJFWr16tjz/+WHa7XYMHD9aYMWMUFRWliIgIjRw5UomJiSwkAgD4cwbnWlxcnNvuSZMmafLkyed8W0UuksVADQBQoQ4dOqT/+7//08GDB2W329W8eXN9/PHH6tatmyRp5syZ8vPzU3JysgoLC5WUlKQXXnjBy70GAFhRZmamIiIiXK/PVdL/3XffKTExUQUFBQoLC3MtkrV161bDFslioAYAFuKN580sWLDgvMeDg4M1Z84czZkzp5y9AgBYjdG5duae6z9zZpGs3Nxc/fvf/9aAAQO0Zs2a8nfkDxioAYCVeLiy1XnbAQDA27yUa2cWyZKkVq1aadOmTXr22Wd12223uRbJ+uOs2oUsksWqjwAAAABQDmdbJOuMC10kixk1ALAQm9MpmwE3XRvRBgAA5eWNXKusRbIYqAGAlTh+24xoBwAAb/NCrlXWIlkM1AAAAACgjCprkSwGagBgIZQ+AgDMxMy5xkANAKyEVR8BAGZi4lxj1UcAAAAA8DHMqAGAlTidpzcj2gEAwNtMnGvMqAEAAACAj2FGDQAsxOY8vRnRDgAA3mbmXGOgBgBWYuISEQCABZk41yh9BAAAAAAfw4waAFiIzXF6M6IdAAC8zcy5xkANAKzExCUiAAALMnGuUfoIAAAAAD6GGTUAsBLnb5sR7QAA4G0mzjUGapXM+du06ikV++QPBLyrpKjA212ADzrzc+E0oCzD5nTKZlA7gPSHXCsp9HJP4ItOFZNrKO3UKXKtLBioVbLjx49LktbqP17uCXzSy+97uwfwYcePH5fdbvd2NwA3Z3Jtze4XvNwT+KSfvN0B+DJy7fwYqFWy2NhYZWZmKjw8XDabzdvd8bq8vDzFxcUpMzNTERER3u4OfAQ/F+6cTqeOHz+u2NhYIxoz7U3X8A5yzR2/v3A2/Fy4I9fKhoFaJfPz89PFF1/s7W74nIiICH5xoRR+Ln7HFUf4KnLt7Pj9hbPh5+J35NqfY6AGAFbilGTEs2J878IjAMCKTJxrDNQAwELMfNM1AMB6zJxrPEcNXhUUFKRJkyYpKCjI212BD+HnAkBVxe8vnA0/F7gQNqcR62ICAHxaXl6e7Ha7urR4WAH+5f8PhVMlhfp063Tl5uZyvwUAoNJZIdcofQQAKzHx6lgAAAsyca5R+ggAAAAAPoYZNQCwEockIx51ZcQKWwAAlJeJc42BGgBYiJlXxwIAWI+Zc43SR3jd6tWrZbPZlJOTc97z6tWrp1mzZlVKn1D5bDabli5dWqZzJ0+erBYtWlRofwDgQpFrkMg1lB8DNZzTwIED1bt371L7yxpAF2rhwoWKjIyskLbhPYcPH9bQoUMVHx+voKAgxcTEKCkpSV9++aUk6eDBg+rRo4eXe2kBZ266NmIDqhhyDUYi13yEiXON0kcAlSI5OVlFRUV69dVX1aBBA2VnZystLU1HjhyRJMXExHi5hxZh4tWxAKAykWs+wsS5xowaym3t2rXq0KGDQkJCFBcXp/vuu08nTpxwHf/Xv/6l1q1bKzw8XDExMbrjjjt06NChs7a1evVq3XXXXcrNzZXNZpPNZtPkyZNdx0+ePKlBgwYpPDxc8fHxevnll13HunTpohEjRri1d/jwYQUGBiotLc3YLw2P5OTk6IsvvtBTTz2lzp07KyEhQddcc43Gjx+vW265RVLpEpF9+/apX79+ioqKUmhoqFq3bq2NGzeetf1du3apQYMGGjFihHg0JIDyItfwZ8g1VAYGaiiXXbt26YYbblBycrK+/fZbvfXWW1q7dq1bsBQXF2vq1Knatm2bli5dqr1792rgwIFnba9du3aaNWuWIiIidPDgQR08eFBjx451HX/66afVunVrffPNNxo2bJiGDh2q9PR0SdKQIUO0aNEiFRYWus5//fXXVbduXXXp0qVi/gJQJmFhYQoLC9PSpUvd/v85l/z8fHXq1En79+/XsmXLtG3bNj300ENyOEovyfTtt9+qffv2uuOOO/T888/LZjNi6ScTM3GJCGAEcg1lQa75EBPnGqWPOK8VK1YoLCzMbV9JSYnrzykpKerfv79GjRolSbr00ks1e/ZsderUSXPnzlVwcLAGDRrkOr9BgwaaPXu2rr76auXn55dqOzAwUHa7XTab7awlAzfeeKOGDRsmSRo3bpxmzpypzz77TI0aNVKfPn00YsQIvf/+++rbt6+k0/cFDBw4kF9yXhYQEKCFCxfq7rvv1osvvqiWLVuqU6dOuv3229W8efNS5y9atEiHDx/Wpk2bFBUVJUlq2LBhqfPWrVunm266SY8++qgeeOCBCv8eAKo+cg1GINdQGZhRw3l17txZW7duddvmz5/vOr5t2zYtXLjQdWUpLCxMSUlJcjgc2rNnjyRpy5YtuvnmmxUfH6/w8HB16tRJkpSRkeFxf/74y+9M6J0pNwkODtbf/vY3vfLKK5Kkr7/+Wtu3bz/nVU5UruTkZB04cEDLli3TDTfcoNWrV6tly5ZauHBhqXO3bt2qq666yhVmZ5ORkaFu3bpp4sSJhJknHAZuQBVErsEo5JqPMHGuMaOG8woNDS11xWffvn2uP+fn5+uee+7RfffdV+q98fHxOnHihJKSkpSUlKQ33nhDtWrVUkZGhpKSklRUVORxf6pVq+b22mazuZUNDBkyRC1atNC+ffuUmpqqLl26KCEhwePPQcUIDg5Wt27d1K1bN02YMEFDhgzRpEmTSv1HR0hIyJ+2VatWLcXGxurNN9/UoEGDFBERUUG9NhczP28GKAtyDUYi17zPzLnGjBrKpWXLltqxY4caNmxYagsMDNQPP/ygI0eOaPr06erQoYMaN258zhuuzwgMDHQrQ/FEs2bN1Lp1a82bN0+LFi1yK0+B72natKnbDfpnNG/eXFu3btXRo0fP+d6QkBCtWLFCwcHBSkpK0vHjxyuyqwAsglxDeZBrMBIDNZTLuHHjtG7dOo0YMUJbt27VTz/9pPfff99103V8fLwCAwP13HPPaffu3Vq2bJmmTp163jbr1aun/Px8paWl6b///a9OnjzpUZ+GDBmi6dOny+l06i9/+csFfzcY58iRI+rSpYtef/11ffvtt9qzZ4+WLFmiGTNmqFevXqXO79evn2JiYtS7d299+eWX2r17t9555x2tX7/e7bzQ0FB98MEHCggIUI8ePZSfn19ZX6nqMvFN14ARyDWUBbnmQ0ycawzUUC7NmzfXmjVr9OOPP6pDhw666qqrNHHiRMXGxko6PY2/cOFCLVmyRE2bNtX06dP1z3/+87xttmvXTvfee69uu+021apVSzNmzPCoT/369VNAQID69eun4ODgC/5uME5YWJjatGmjmTNnqmPHjrriiis0YcIE3X333Xr++edLnR8YGKhPPvlEtWvX1o033qhmzZpp+vTp8vf3P2vbH374oZxOp3r27HnWK5n4A4fTuA0wIXINZUGu+RAT55rNycMZYDJ79+7VJZdcok2bNqlly5be7g7gE/Ly8mS329X1klEK8A8qd3unSgq1atcs5ebmch8FUMHINaA0K+Qai4nANIqLi3XkyBE99thjatu2LWEGnI1R5R1c4wMqHLkGlIGJc42BGkzjyy+/VOfOnXXZZZfp3//+t7e7A/goo+rwfS/QALMh14CyMG+uMVCDaVx33XWikhcAYBbkGmBtDNQAwEpMXCICALAgE+caqz4CAAAAgI9hRg0ArMThlCF1+D64jDEAwIJMnGsM1ADASpyO05sR7QAA4G0mzjVKHwEPDBw4UL1793a9vu666zRq1KhK78fq1atls9mUk5NzznNsNpuWLl1a5jYnT56sFi1alKtfe/fulc1m09atW8vVDgCgcpBr50euwZsYqKHKGzhwoGw2m2w2mwIDA9WwYUNNmTJFp06dqvDPfvfddzV16tQynVuWEAIq3Jmbro3YAFQIcg3wgIlzjdJHmMINN9yg1NRUFRYW6j//+Y+GDx+uatWqafz48aXOLSoqUmBgoCGfGxUVZUg7QKUxcS0/YCbkGlBGJs41ZtRgCkFBQYqJiVFCQoKGDh2qrl27atmyZZJ+L+t48sknFRsbq0aNGkmSMjMz1bdvX0VGRioqKkq9evXS3r17XW2WlJRozJgxioyMVM2aNfXQQw+Vep7N/5aIFBYWaty4cYqLi1NQUJAaNmyoBQsWaO/evercubMkqUaNGrLZbBo4cKAkyeFwKCUlRfXr11dISIiuvPLKUg82/c9//qPLLrtMISEh6ty5s1s/y2rcuHG67LLLVL16dTVo0EATJkxQcXFxqfNeeuklxcXFqXr16urbt69yc3Pdjs+fP19NmjRRcHCwGjdurBdeeMHjvgAAzo9c+3PkGrwlJSVFV199tcLDw1W7dm317t1b6enpbucUFBRo+PDhqlmzpsLCwpScnKzs7GyPPoeBGkwpJCRERUVFrtdpaWlKT0/XypUrtWLFChUXFyspKUnh4eH64osv9OWXXyosLEw33HCD631PP/20Fi5cqFdeeUVr167V0aNH9d577533c//v//5Pb775pmbPnq2dO3fqpZdeUlhYmOLi4vTOO+9IktLT03Xw4EE9++yzkk7/Y3/ttdf04osv6vvvv9fo0aN15513as2aNZJOB2+fPn108803a+vWrRoyZIgefvhhj/9OwsPDtXDhQu3YsUPPPvus5s2bp5kzZ7qd8/PPP+vtt9/W8uXL9dFHH+mbb77RsGHDXMffeOMNTZw4UU8++aR27typadOmacKECXr11Vc97g+8xMQlIoCZkWulkWuQ5JVcW7NmjYYPH64NGzZo5cqVKi4uVvfu3XXixAnXOaNHj9by5cu1ZMkSrVmzRgcOHFCfPn08+mqUPsJUnE6n0tLS9PHHH2vkyJGu/aGhoZo/f76rNOT111+Xw+HQ/PnzZbPZJEmpqamKjIzU6tWr1b17d82aNUvjx493/aN68cUX9fHHH5/zs3/88Ue9/fbbWrlypbp27SpJatCggev4mXKS2rVrKzIyUtLpK5XTpk3TqlWrlJiY6HrP2rVr9dJLL6lTp06aO3euLrnkEj399NOSpEaNGum7777TU0895dHfzWOPPeb6c7169TR27FgtXrxYDz30kGt/QUGBXnvtNdWtW1eS9Nxzz6lnz556+umnFRMTo0mTJunpp592/Z3Ur19fO3bs0EsvvaQBAwZ41B94iVMGPRi0/E0A+HPk2rmRa5BkeK7l5eW57Q4KClJQUJDbvo8++sjt9cKFC1W7dm1t2bJFHTt2VG5urhYsWKBFixapS5cukk7/e2zSpIk2bNigtm3blqlLDNRgCitWrFBYWJiKi4vlcDh0xx13aPLkya7jzZo1c6vf37Ztm37++WeFh4e7tVNQUKBdu3YpNzdXBw8eVJs2bVzHAgIC1Lp161JlImds3bpV/v7+6tSpU5n7/fPPP+vkyZPq1q2b2/6ioiJdddVVkqSdO3e69UOSK/w88dZbb2n27NnatWuX8vPzderUKUVERLidEx8f7wqzM5/jcDiUnp6u8PBw7dq1S4MHD9bdd9/tOufUqVOy2+0e9wfWkZKSonfffVc//PCDQkJC1K5dOz311FOuci3p9L+9Bx54QIsXL1ZhYaGSkpL0wgsvKDo62os9B7yHXPtz5BoqQlxcnNvrSZMmuf3bO5sz5bRnLl5s2bJFxcXFrgscktS4cWPFx8dr/fr1DNRgLZ07d9bcuXMVGBio2NhYBQS4/2iHhoa6vc7Pz1erVq30xhtvlGqrVq1aF9SHkJAQj9+Tn58vSfrggw/cgkRSqas35bF+/Xr1799fjz/+uJKSkmS327V48WLX1UxP+jpv3rxSAevv729YX1HBjCpbvIASkauvvlqnTp3SI488ou7du2vHjh2uf5ujR4/WBx98oCVLlshut2vEiBHq06ePvvzyy/L3FaiCyLXzI9fgYnCuZWZmug34/+zn1uFwaNSoUbr22mt1xRVXSJKysrIUGBjommk+Izo6WllZWWXuEgM1mEJoaKgaNmxY5vNbtmypt956S7Vr1y519e2MOnXqaOPGjerYsaOk01fYtmzZopYtW571/GbNmsnhcGjNmjVuV1DOOHPls6SkxLWvadOmCgoKUkZGxjmvWDZp0sR1A/kZGzZs+PMv+Qfr1q1TQkKCHn30Ude+X375pdR5GRkZOnDggGJjY12f4+fnp0aNGik6OlqxsbHavXu3+vfv79Hnw4c4HJIMeKin43QbvlQiApgJuXZ+5BpcDM61iIiIc/4bOpvhw4dr+/btWrt2bfn78D9YTASW1L9/f1100UXq1auXvvjiC+3Zs0erV6/Wfffdp3379kmS7r//fk2fPl1Lly7VDz/8oGHDhp33WTH16tXTgAEDNGjQIC1dutTV5ttvvy1JSkhIkM1m04oVK3T48GHl5+crPDxcY8eO1ejRo/Xqq69q165d+vrrr/Xcc8+5bmS+99579dNPP+nBBx9Uenq6Fi1apIULF3r0fS+99FJlZGRo8eLF2rVrl2bPnn3WG8iDg4M1YMAAbdu2TV988YXuu+8+9e3bVzExMZKkxx9/XCkpKZo9e7Z+/PFHfffdd0pNTdUzzzzjUX9gHnFxcbLb7a4tJSXlT9/jaYkIgD9HrpFrqHwjRozQihUr9Nlnn+niiy927Y+JiVFRUVGpf1/Z2dmun72yYKAGS6pevbo+//xzxcfHq0+fPmrSpIkGDx6sgoIC11WUBx54QH/72980YMAAJSYmKjw8XH/5y1/O2+7cuXP117/+VcOGDVPjxo119913u1YAqlu3rh5//HE9/PDDio6O1ogRIyRJU6dO1YQJE5SSkqImTZrohhtu0AcffKD69etLOl1f/84772jp0qW68sor9eKLL2ratGkefd9bbrlFo0eP1ogRI9SiRQutW7dOEyZMKHVew4YN1adPH914443q3r27mjdv7rZM8ZAhQzR//nylpqaqWbNm6tSpkxYuXOjqK6oAg1fHyszMVG5urms72zOe/qgiS0QAKyPXyDXL8sKqj06nUyNGjNB7772nTz/9tNTPS6tWrVStWjWlpaW59qWnpysjI8Oj+zFtznPdQQoAMI28vDzZ7XZ1rTVYAX7lfzDuKUeRVh1eoNzcXI9KRIYOHaoPP/xQa9eudV19XLRoke666y4VFha6nXvNNdeoc+fOHq8EBwAwP2/m2rBhw7Ro0SK9//77bgtj2e12172dQ4cO1X/+8x8tXLhQERERrlVb161bV+Y+cY8aAFiJFxYTOeNMicjnn39+zhKRP86qeVoiAgCwIC/k2ty5cyWdfkD8H6Wmproe/D5z5kz5+fkpOTnZbTVjTzBQAwArcThlyEPQHJ6ViIwcOVLvvfeeVq9efd4SkeTkZEkXViICALAgL+XanwkODtacOXM0Z86cC+4SAzUAQIUaPny4q0QkPDzcdd/ZmRIRu92uwYMHa8yYMYqKinKViCQmJrLiIwDAshioAYCFOJ0OOZ3lX8bYkzYqq0QEAGA93si1ysJADQCsxOn0qLzjvO2U+dTKKREBAFiQF3KtsrA8PwAAAAD4GGbUAMBKnAbddO2DVx4BABZk4lxjoAYAVuJwSDYD6vB9sJYfAGBBJs41Sh8BAAAAwMcwowYAVmLiEhEAgAWZONeYUQMAAAAAH8OMGgBYiNPhkNOAWn5ffN4MAMB6zJxrDNQAwEpMXCICALAgE+capY8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" ] @@ -5425,7 +6094,7 @@ }, { "cell_type": "code", - "execution_count": 82, + "execution_count": 304, "metadata": {}, "outputs": [ { @@ -5637,7 +6306,7 @@ "[768 rows x 9 columns]" ] }, - "execution_count": 82, + "execution_count": 304, "metadata": {}, "output_type": "execute_result" } @@ -5666,7 +6335,7 @@ }, { "cell_type": "code", - "execution_count": 83, + "execution_count": 305, "metadata": {}, "outputs": [ { @@ -6284,7 +6953,7 @@ "\n", "def split_into_train_test(\n", " df_input: DataFrame,\n", - " target_colname: str = \"above_average_close\",\n", + " target_colname: str = \"Outcome\",\n", " frac_train: float = 0.8,\n", " random_state: int = None,\n", ") -> Tuple[DataFrame, DataFrame, DataFrame, DataFrame]:\n", @@ -6334,7 +7003,7 @@ }, { "cell_type": "code", - "execution_count": 84, + "execution_count": 306, "metadata": {}, "outputs": [], "source": [ @@ -6385,20 +7054,14 @@ }, { "cell_type": "code", - "execution_count": 85, + "execution_count": 307, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ - "Model: linear\n" - ] - }, - { - "name": "stdout", - "output_type": "stream", - "text": [ + "Model: linear\n", "Model: linear_poly\n", "Model: linear_interact\n", "Model: ridge\n", @@ -6446,189 +7109,189 @@ }, { "cell_type": "code", - "execution_count": 86, + "execution_count": 308, "metadata": {}, "outputs": [ { "data": { "text/html": [ "\n", - "\n", + "
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 RMSE_trainRMSE_testRMAE_testR2_testRMSE_trainRMSE_testRMAE_testR2_test
random_forest0.2400520.4058710.5592100.282505random_forest0.2400520.4058710.5592100.282505
linear0.3967930.4135760.5900240.255003linear0.3967930.4135760.5900240.255003
ridge0.3968220.4142360.5904310.252623ridge0.3968220.4142360.5904310.252623
linear_poly0.3700760.4228520.5841470.221209linear_poly0.3700760.4228520.5841470.221209
linear_interact0.3801280.4268150.5935320.206543linear_interact0.3801280.4268150.5935320.206543
decision_tree0.2498800.4457080.5203760.134743decision_tree0.2498800.4457080.5203760.134743
knn0.3733190.4502850.5921570.116883knn0.3733190.4502850.5921570.116883
mlp0.6235290.5443230.658689-0.290498mlp0.6235290.5443230.658689-0.290498
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PregnanciesGlucoseBloodPressureSkinThicknessInsulinBMIDiabetesPedigreeFunctionAgeOutcomeDiabetPred
602840000.00.3042100.001849
61891128224028.21.2825010.758997
346113946198328.70.6542200.149231
2940161500021.90.2546500.239564
2316134803737046.20.2384610.773890
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" - ], - "text/plain": [ - " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", - "60 2 84 0 0 0 0.0 \n", - "618 9 112 82 24 0 28.2 \n", - "346 1 139 46 19 83 28.7 \n", - "294 0 161 50 0 0 21.9 \n", - "231 6 134 80 37 370 46.2 \n", - "\n", - " DiabetesPedigreeFunction Age Outcome DiabetPred \n", - "60 0.304 21 0 0.001849 \n", - "618 1.282 50 1 0.758997 \n", - "346 0.654 22 0 0.149231 \n", - "294 0.254 65 0 0.239564 \n", - "231 0.238 46 1 0.773890 " - ] - }, - "execution_count": 88, - "metadata": {}, - "output_type": "execute_result" + "name": "stdout", + "output_type": "stream", + "text": [ + "Fitting 5 folds for each of 36 candidates, totalling 180 fits\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Лучшие параметры: {'max_depth': 10, 'min_samples_split': 10, 'n_estimators': 200}\n", + "Лучший результат (MSE): 0.15427721639903466\n" + ] } ], "source": [ - "pd.concat(\n", - " [\n", - " X_train,\n", - " y_train,\n", - " pd.Series(\n", - " models[best_model][\"train_preds\"],\n", - " index=y_train.index,\n", - " name=\"DiabetPred\",\n", - " ),\n", - " ],\n", - " axis=1,\n", - ").head(5)" + "import pandas as pd\n", + "import numpy as np\n", + "from sklearn import metrics\n", + "from sklearn.pipeline import Pipeline\n", + "from sklearn.model_selection import train_test_split, GridSearchCV\n", + "from sklearn.ensemble import RandomForestRegressor # Используем регрессор\n", + "from sklearn.preprocessing import StandardScaler\n", + "\n", + "\n", + "df.dropna(inplace=True) \n", + "# Предикторы и целевая переменная\n", + "X = df[[\"Glucose\", \"Age\", \"BloodPressure\", \"DiabetesPedigreeFunction\"]]\n", + "y = df['Outcome'] # Целевая переменная для регрессии\n", + "\n", + "\n", + "model = RandomForestRegressor() \n", + "\n", + "param_grid = {\n", + " 'n_estimators': [50, 100, 200], \n", + " 'max_depth': [None, 10, 20, 30], \n", + " 'min_samples_split': [2, 5, 10] \n", + "}\n", + "\n", + "# 3. Подбор гиперпараметров с помощью Grid Search\n", + "grid_search = GridSearchCV(estimator=model, param_grid=param_grid,\n", + " scoring='neg_mean_squared_error', cv=5, n_jobs=-1, verbose=2)\n", + "\n", + "# Обучение модели на тренировочных данных\n", + "grid_search.fit(X_train, y_train)\n", + "\n", + "# 4. Результаты подбора гиперпараметров\n", + "print(\"Лучшие параметры:\", grid_search.best_params_)\n", + "print(\"Лучший результат (MSE):\", -grid_search.best_score_) " ] }, { "cell_type": "markdown", "metadata": {}, "source": [ - "Вывод для тестовой выборки" + "Обучение модели с новыми гиперпараметрами и сравнение новых и старых данных" ] }, { "cell_type": "code", - "execution_count": 89, + "execution_count": 319, + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Fitting 5 folds for each of 36 candidates, totalling 180 fits\n" + ] + }, + { + "name": "stderr", + "output_type": "stream", + "text": [ + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n", + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n", + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n", + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n", + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n", + "d:\\5_semester\\AIM\\rep\\AIM-PIbd-31-Razubaev-S-M\\.venv\\Lib\\site-packages\\sklearn\\base.py:1473: DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().\n", + " return fit_method(estimator, *args, **kwargs)\n" + ] + }, + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Старые параметры: {'max_depth': 30, 'min_samples_split': 10, 'n_estimators': 50}\n", + "Лучший результат (MSE) на старых параметрах: 0.1543002886456971\n", + "\n", + "Новые параметры: {'max_depth': 20, 'min_samples_split': 10, 'n_estimators': 200}\n", + "Лучший результат (MSE) на новых параметрах: 0.15791709286040012\n", + "Среднеквадратическая ошибка (MSE) на тестовых данных: 0.16712438177283198\n", + "Корень среднеквадратичной ошибки (RMSE) на тестовых данных: 0.408808490338486\n" + ] + } + ], + "source": [ + "import pandas as pd\n", + "import numpy as np\n", + "from sklearn import metrics\n", + "from sklearn.ensemble import RandomForestRegressor\n", + "from sklearn.model_selection import train_test_split, GridSearchCV\n", + "import matplotlib.pyplot as plt\n", + "\n", + "\n", + "old_param_grid = {\n", + " 'n_estimators': [50, 100, 200], # Количество деревьев\n", + " 'max_depth': [None, 10, 20, 30], # Максимальная глубина дерева\n", + " 'min_samples_split': [2, 5, 10] # Минимальное количество образцов для разбиения узла\n", + "}\n", + "\n", + "old_grid_search = GridSearchCV(estimator=RandomForestRegressor(), \n", + " param_grid=old_param_grid,\n", + " scoring='neg_mean_squared_error', cv=5, n_jobs=-1, verbose=2)\n", + "\n", + "old_grid_search.fit(X_train, y_train)\n", + "\n", + "old_best_params = old_grid_search.best_params_\n", + "old_best_mse = -old_grid_search.best_score_ # Меняем знак, так как берем отрицательное значение MSE\n", + "\n", + "new_param_grid = {\n", + " 'n_estimators': [200],\n", + " 'max_depth': [20],\n", + " 'min_samples_split': [10]\n", + "}\n", + "\n", + "new_grid_search = GridSearchCV(estimator=RandomForestRegressor(), \n", + " param_grid=new_param_grid,\n", + " scoring='neg_mean_squared_error', cv=2)\n", + "\n", + "new_grid_search.fit(X_train, y_train)\n", + "\n", + "new_best_params = new_grid_search.best_params_\n", + "new_best_mse = -new_grid_search.best_score_ # Меняем знак, так как берем отрицательное значение MSE\n", + "\n", + "model_best = RandomForestRegressor(**new_best_params)\n", + "model_best.fit(X_train, y_train)\n", + "\n", + "model_oldbest = RandomForestRegressor(**old_best_params)\n", + "model_oldbest.fit(X_train, y_train)\n", + "\n", + "y_pred = model_best.predict(X_test)\n", + "y_oldpred = model_oldbest.predict(X_test)\n", + "\n", + "mse = metrics.mean_squared_error(y_test, y_pred)\n", + "rmse = np.sqrt(mse)\n", + "\n", + "print(\"Старые параметры:\", old_best_params)\n", + "print(\"Лучший результат (MSE) на старых параметрах:\", old_best_mse)\n", + "print(\"\\nНовые параметры:\", new_best_params)\n", + "print(\"Лучший результат (MSE) на новых параметрах:\", new_best_mse)\n", + "print(\"Среднеквадратическая ошибка (MSE) на тестовых данных:\", mse)\n", + "print(\"Корень среднеквадратичной ошибки (RMSE) на тестовых данных:\", rmse)" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Визуализация" + ] + }, + { + "cell_type": "code", + "execution_count": 329, "metadata": {}, "outputs": [ { "data": { - "text/html": [ - "
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IXXXVVTjrrLOwdu1a3HbbbTj11FPx9ttvQxRF32WdeOKJDkcXV111FbZv3+5I++tf/9rBWp5zzjnUa77mmmtwyCGHQJIkfP7557jhhhvQ1tZmMIs0rFu3zpjoZrMXacWKFZg3bx6eeuoph+FcjPzZ4tZbbwXP87jsssvQ2tpKTePl/U9h1KhReOihhyzn/v3vf1PDTey33374y1/+AgDYunUrbr31VvzoRz/K6JRm/vz5Rp7W1lbq+07DPvvsgwULFmDXrl146qmn8Mtf/hIjRoywMGBe2t/W1obDDjsMdXV1uOGGGzB27FhUVFTgiy++wB/+8AfLOHvbbbdh7ty5OOaYY1zb5Xfs8vM8AH3/5NVXX41f/epXmDBhgms7gNL1QwaGcgczsBgYugmOO+44PPjgg1i8eDEOOOAAT3lSE0ASq1atQlVVlbGi+cILL+CMM87AnXfeaaSJxWKucqmDDjrImNAfd9xxWL58OW6++WaLgSUIgsPphb281Ab6uro6zw4yDj30UMtkn+bwIYWXX34ZixcvpkrNyPoHDhyYlYOObLB69WqLQ4w1a9ZAVVXjfo4dOxaapmH06NEZJzaA7kURQEbJ09ixY/HJJ59AkqSMk6Bf/vKXuPLKK7F161ZMmTIFl1xyicXxwYsvvoiKigq89dZbCIVCxvnHHnuMWt60adMMhyq77747Dj30UCxYsABz5szxXdbw4cMdz+qvf/0r1cAaP368I211dTW13N13391IO2fOHGzcuBGPP/64qwxNVVWceeaZqKurw8UXX4ybbroJ//d//4cf//jH1PQ0XHHFFdhzzz1xyimneM7jJ7+fZ+4VW7duxT333IObb74ZtbW1rgaWl/c/herqakfapUuXUtP279/fknbcuHE46KCD8P7772PkyJHUPP/4xz+wYMEC3Hjjjbj55ptx7rnn4pVXXnG5Qiv69etn1HfSSSdh4sSJuP322w1G1mv7Fy1ahNbWVrz00ks49NBDjfPr16931Dlu3DgsX74cy5Ytw86dOwHoBiLpCMPv2OXneQDA/fffj6amJoc3Qxpy7ccMDD0VbA8WA0M3weWXX47q6mqcffbZ2LFjh+Pva9euxT333GM5ZzcwNm3ahFdeeQVHH320wZAIgmCRBQLAvffe67pfxY5oNGqRdnnFzJkzMXbsWNxxxx0OCQygB7HMFoqi4Morr8Rpp53myo7Nnj0bdXV1uOmmm6j7eHKp3w333Xef5fjee+8FAEOG9OMf/xiCIOD66693PBNN0xwT2hdeeAETJ07EpEmT0tZ70kknoaWlBX//+98df7PXc8ghhwAAhg4diltvvRVPPfWUwQAAen/hOM7SPzZs2OBwYU1DStKY6i+5lFVIqKoKnudd9yrddddd+Oijj/Dggw/iz3/+Mw488ECcf/75jjACbli8eDFeeeUV3HLLLVnth/KS388z94rrr78egwYNwnnnnZdV/nwjxeTQ2F5AN2Auu+wynHTSSbjyyitxxx134L///a/Fa6dXxGIxhMPhrMa6VPvI+55IJHD//fdT0wcCAcyYMQNHHnkkjjzySIf8tJBjV2dnJ2688UZccsklGZm+XPsxA0NPBmOwGBi6CcaOHYtnnnkGp5xyCiZPnozTTz8d06ZNQyKRwEcffYR///vfFhYJ0NmD2bNnW9y0A/pEKYXjjjsOTz75JOrr6zFlyhQsXrwYb7/9Nvr160dtx8svv4z+/fsbEsEPPvgAF198se/r4XkeDz/8MObMmYOpU6firLPOwrBhw7Blyxa8++67qKurc8havGLz5s0IBoNpJV51dXV44IEH8Itf/AIzZszAqaeeigEDBmDjxo14/fXXcdBBB1Enp7lg/fr1OOGEE3DMMcdg8eLFeOqpp3DaaacZrr3Hjh2Lv/zlL7jiiiuwYcMG/PCHP0RtbS3Wr1+P//znP/j1r3+N3//+91i3bh1uu+02fPrpp/jxj3+Mp556yqhjyZIlAPSN8CNHjsSYMWNw+umn44knnsCll16KTz/9FIcccgjC4TDefvttXHDBBTjxxBOp7f31r3+NZ555Buedd54RTPTYY4/FXXfdhWOOOQannXYampqacN9992HcuHH4+uuvjbwPPfQQ3n//fcyYMQN1dXX49ttv8dBDD2HIkCE44ogjAMBzWYXG0qVLUVNTA1mW8fnnn+OJJ57AiSeeSJ24r1ixAldffTXOPPNMHH/88QB0F9x77rknLrjgAjz//PMZ65s/fz6OOuqorJlTL/mzfeaZ6n366acRDAazaneuaG5uxptvvgkA2LZtG2699VbU19fjBz/4AVatWmVJq2kafvnLX6KyshIPPPAAAODcc8/Fiy++iIsuughHHnkkhg4dSq2nvb0dc+bMwZw5czB06FDs3LkTTz75JLZt24af//znvtt94IEHoqGhAWeccQZ+97vfgeM4PPnkk1kbuoUcu7744gv0798fl19+eca0ufZjBoaeDGZgMTB0I5xwwgn4+uuvcfvtt+OVV17BAw88gFAohD322AN33nmnY4/JYYcdhgMOOADXX389Nm7ciClTpmDevHnYY489jDT33HMPBEHA008/jVgshoMOOghvv/02Zs+eTW3DJZdcAgAIBoMYOXIkrrnmGlx55ZVZXc+sWbOwePFi/PnPf8bf//53dHV1YfDgwdhvv/1w7rnnZlVmCueff37GvUmnnXYahg4diltuuQW333474vE4hg0bhkMOOQRnnXVWTvXT8Nxzz+Gaa67BH//4R4iiiAsvvNARA+ePf/wjJkyYgLvvvtswhEeMGIGjjz4aJ5xwAgDg/fffxz//+U8AuufBl156yVHXTTfdhPHjx2PMmDEQBAGNjY248cYb8cwzz+DFF19Ev379cPDBB2P33Xd3bS/HcXjooYcwffp0XHXVVbjrrrtw+OGH45FHHsEtt9yCiy++GKNHj8att96KDRs2WIyiiRMn4sknn8Rrr72GaDSKIUOG4NRTT8WVV15peMP0WlahceONNwLQ964MGzYM559/vmURIgVFUXDGGWegf//++Otf/2qcHz9+PG6++WZcdNFFeP7553HyySenrY/jONxyyy1Zt9dL/myfeTrsueee+OlPf5pV3nzg008/Ndje/v37Y8aMGXj88ccxdOhQh4F17733YtGiRXjxxRctDh4eeeQRTJs2Deeccw5ef/11aj2hUAgjR47Egw8+iKamJvTp0wdTp07Fq6++mjbYsRv69euH1157Df/v//0/XHXVVWhoaMDPf/5zHHHEEa7jbCYUcuz605/+5MnJT679mIGhJ4PTsl1CYWBgKGtwHIff/OY3eWdhGPzjuuuuw/XXX4/m5mbLHrJsMW/ePFx33XWGkwsaZs2ahTPPPNPBajIwMDAwMDAUFmwPFgMDAwMDAwMDAwMDQ57ADCwGBgaGboaxY8fiRz/6Udo0Rx11lOFtjIGBgYGBgaF4YHuwGBgYGLoZDjnkEMPbnxv+9Kc/Fak1DAwMDAwMDCTYHiwGBgYGBgYGBgYGBoY8gUkEGRgYGBgYGBgYGBgY8gRmYDEwMDAwMDAwMDAwMOQJvW4Plqqq2Lp1K2pra1nkcQYGBgYGBgYGBoZeDE3T0NnZiaFDh4Ln88M99ToDa+vWrRgxYkSpm8HAwMDAwMDAwMDAUCbYtGkThg8fnpeyep2BVVtbC0C/iV4ilRcakiRh/vz5OProoxEIBErdnB4Pdr+LC3a/iwt2v4sLdr+LC3a/iwt2v4sLdr+LC/J+R6NRjBgxwrAR8oFeZ2ClZIF1dXVlY2BVVVWhrq6OvVBFALvfxQW738UFu9/FBbvfxQW738UFu9/FBbvfxQXtfudz6xBzcsHAwMDAwMDAwMDAwJAnMAOLgYGBgYGBgYGBgYEhT2AGFgMDAwMDAwMDAwMDQ57ADCwGBgYGBgYGBgYGBoY8gRlYDAwMDAwMDAwMDAwMeQIzsBgYGBgYGBgYGBgYGPIEZmAxMDAwMDAwMDAwMDDkCczAYmBgYGBgYGBgYGBgyBOYgcXAwMDAwMDAwMDAwJAnMAOLgYGBgYGBgYGBgYEhTyipgfX+++/j+OOPx9ChQ8FxHF5++eWMeRYtWoQZM2YgFAph3LhxmDdvXsHbycDAwMDAwMDAwMDA4AUlNbDC4TCmT5+O++67z1P69evX49hjj8UPfvADLF26FBdffDHOPvtsvPXWWwVuKQMDAwMDAwMDAwMDQ2aIpax8zpw5mDNnjuf0//jHPzB69GjceeedAIDJkyfjww8/xN13343Zs2cXqpkMNmgasHIlMHEiwKcx0deuBYYOBSor/Zc9YQIgCN7zyTLwySdALGY9v/vuwMCB3svJFqqq4c3PvsPhe45DRdD7a6UowKpVwKRJAMe5p1u2DGhq8t+uujpg773Tl/3NN8COHZnL2ntvoL7e/e9tbUBXFzB8uO9mWuC1f61cCWzZYj03aBAwbVpu9dMgScDHHwOJRPp0VVXAvvv667vZIhzW+7ymmedUlUM87q9yTQO++w4YNw4Qc/witLTo7+Lgwe5polFg61Zg7Njc6gL0do8ZAwQCuZeVDTZtAr76qj8qKjjj3tXWAvvsk/6d84ItW/Q+ngnjxwMjR+ZWl1dkM6Z7xbp1er+pqsqtnEhEH89Gj3ZPoyjA6tX6GOPnOUVaIvjqre2IDB6TNl2fPsCMGbn3gY0bgYYGvU/5wapV+vUX472Ix/V2jh+fe1krVuhjQybMmKHfFzd0dABLlljPCQKw//5ARYV7vm3bgG+/tZ7zMqavXq3fg0yYPh3o3z9zumJhwwZgwACgutp7Hk3T+9fYsf6+F17nOj0JJTWw/GLx4sU48sgjLedmz56Niy++2DVPPB5HPB43jjs6OgAAkiRBkqSCtNMPUm0oh7Z4xe9/z+NvfxNw0kkq/vUvhZrmX//icMYZIsaO1bBsmez5RbziCh533inguONUvPQSvWwajjtOwPz5ztl4MKjhq69kYzJXqPs9+6ab8C6uQ59nDkfT7W96znfKKQL+8x8eF12k4PbbVWqaO+7gceWV2c/Yzz9fwT330Mv+2994/P733sru00fDqlUy+vRx/q21FZgwQUQ4DCxapGD//fVZfzb3+4ILeDz8sIBf/ELFI4/Q+8Cjj3I47zx6p7r9dgUXXUS/3mxx+OECPvzQG+H/wx+qeP557303G8TjwKRJIrZssX+pRPTrdwSOPlry/NG84QYef/mLgKOOUvH669m3e+NGYOpUEYoCLFkiY+pUZxpZBnbfXcTatRzmzZNx2mmaM5FH3HUXjz/+UcD++6t47z2l6B/tjz7icPjhIlT1IMffzjpLxT//mf29XLKEw6GHClCUzBfFcRreekvBrFnZ30svePppDmed5X9M94IXXuBw2mkidttNw7ffyq6GQabxJB4HJk8WsXkzh+efl/HDH9LvyQ9/KKCxkcfllyv4y1+8jRVSRELrkKk4QN6AU/AsnscpadNfcomCW2/NfhxauJDD3LkC+vYFVq+WUVPjLd899/C47DIB++6r4oMPcnsvMt1vTQP23VfE119zuPdeBeeem/31PvIIh/PP99apqqs1rFwpY9Ag5986O4Hx40Xs3Om88PHjNXz9tUw1lr76CjjgABGy7Mz34x+rePZZ+vv87LMcTj/dW7tDIQ3ffCNjt93ofy/mfPDVVzmcdJKIIUM0fPednNbwJHHzzTyuvVbArFkq5s/3PsadeqqAl17i8bvfKbjjjvx+n7MFeb8Lcc+7lYG1fft2DLK9UYMGDUJHRwei0SgqKctqN998M66//nrH+fnz56Mq16WyPGLBggWlboJnvPTS4QBq0diooLGxkZpm3ry9AIzE2rUcHn30fQwf3uWp7BdfnAWgHm++qbmWbYemAfPnn0j9WyLB4e9//wZHHWVdXsr3/f645TWgP9DW8A5eeuVVVAS8GS1vvHEsAB4vvhjBD37wDjXNv/51IIABWbftP/+JYvbshdS/Pf30/gAoXykK2to43HffEuy1V7Pjb59+OgidnfsDAB54YDV27lxl+buf+/3KK0cBqMKrrybQ2EiX/z7xxN4AhlH/9vTTrRg/frHn+jIhHhfw4YfHeU7/xhuq576bLdasqceWLbOof2ttrcRjjy3CmDHtnsp6/vlDAPTFggU8Xn/91awnZO++Oxzx+EwAwH33rcBxx613pNmypQZr1x4BAJg3bxv69Pkiu8oAPPOM/l58/DGPF198A1VVctZlZYN//WsiVHUS9W///W8cJ544P+uyX3hhPBRliqe0msbhn/9ch0hkRdb1ecG8eTMAjMDatRwee+x9DBvmbUz3gkcf3RPAbvj+ew4PPfQBRo3qTJvebTxZt64emzfPAgA88sgmBINfU9O99dbxAIAXXujEgQe+56mNwuvLcJy8AQDwHE7NaGC9+GIYhx32rqeyaZg3bwo0bTxaW4H77vsEu+/e6inf008fAGAgPv2Ux7///QZqanJ/L9zu965dIXz99TEAgCefbMKIEZ9mXcfjj+8DYKintOEwh7///UsccMA2x9+WLeuPnTudix4AsHo1h3nzFmHIkIjjb//97xjI8u7UfI2N7mP6Y4/pcx0viMc53HvvMhx++Ka06YoxH3zkkd0BjMG2bRz+8Y+PMGFCm6d8zz57MIB+WLSIxyuvvIZAwNvCTmOjPtd56aUIDj+cPtcpFRYsWIBIxNknckW3MrCywRVXXIFLL73UOO7o6MCIESNw9NFHo66uroQt0yFJEhYsWICjjjoKgVLpXHyioiLVbUTMnTuXmubZZ00D46CDDqWuZtNwxRV62ZrGu5Zth0x8P0aM0PCzn6n4+msOjY064zBlyh6YO1fXjRXqfnPvXWf8/sHhR6Kh1puGRtP0+1RZWeN6vXfcYd7Lyy5TPMvP/vY3HpEIh4qKatey//Y3s7BLL1UQDDrTfPQRh/ff1+/ljBn7Ys4c54CaSJiz8rFjJ2Du3HEAsrvfgYDeBwQh5NruRx812/3b3yoIBIC77tLP9e3b33Pf8YIk6Q0AGD1awymn0FffHn2UR1MTB0DIa/00fPqpeb/33lvFkUdqWLCAw+ef689pn332x377eesoN9xgpps9e27WzERzs9mmSZOmYu7cyY40y5ebvwcNGoa5c9NoCTMg9bwB4Igjjk4rGSoEPv7YZDRPPlnGmDEcHniAR3s7B1GsyKkPfPmlWfZPfqJi7FjnO7dpE4enn9bTjRo1FnPnptHE5QHPPGMd06d4s/884cUXzbIPPPAQ7LknPV2m8eSzz8w+OHTobpg716lX1jRAUfT7Vl1d7/k5rW4bCDx0NQBgY3As/ngpffX+7rt5xOMcKitrc+oD775r9oF99tkfhx/ubSJ7zz3W96Jfv6ybkPF+b95s/u7ff1BO1/vww2a7f/c7hSoVXbKEw8KF+n3ZY48ZmDvXeU+CQbMPHHSQikMO0fDaazy++UY/f8ghszBhgrPsFSvM+/2jH6mYOFHzNKY/95zZ7vPOU6gKj6++4vDGG3r506btgblz6YZcMeeDr79uXu/++x9kqE4y4eabzes9+ug5PuTCer6KCve5TrFB3u9oNJr38ruVgTV48GDssG0W2bFjB+rq6qjsFQCEQiGEQiHH+UAgUFYGTbm1Jx1SBo2icK5tVok5KMcFPGvBFcUsWxQDnlbTFeI7N2YMh5tvFvDkk0BqwUnTBARsjFK+77fKm5u/VPCey/ZyL8nru+UWIe2+JBJPPKHvR5Blb2X/5S8CdbC86Sbg/fdTRyL1WZLPKdf77bd/XX21gNpa4K67Uvl4BAL5899DXtukSZzlA0NiwQJ9n1y6+10IHHooj5tv1p/155+nzoqGoZoJZB/w866mA60P6OWTaXJ7TtmOMYXA2WcDRx0l4Pnngfb29H3XC8h9db/6FQ/aFuMPPwSefjqVnn6/8wmyTfm+336fpZfxxK1/kf3dz3NS+g4xfjeN3Nt1HHjwQV2qmM8+4DbuUttZgPfZ7X6T73Ou4y55vVdfLVD3Kt1zD7BwYaruzPfkqKN4XHutvifvm29S+ej3hKz/9NN5/PCHwFtv6WO612/RH/4gYNQoZ5pHHwXeeCNVT+Z2F2M+qFrWCQvfv8i5XbnNdQOBAGQ5/wqIbhUH64ADDsDChVap04IFC3DAAQeUqEW9E+aLkjlNpnTp8qkeZbpkntTqO8ny+Kk/W3CcSS/HJW8vqr6Sqv/2ei+9GleAeQ+8lu3GXJDn3crK9nmnK8tPuwv5vL3cI8B6v7XCboehtsnLc8pUVi73zks5hegn+Sgr1/rtzyCf15bLe5lPFPJ+d4c+KBPr0aLmPsYXog+U4n0udl2F+Bb5mQ9k+z57aXex5yNeUOz+5eW73tNQUgOrq6sLS5cuxdKlSwHobtiXLl2KjUl3LFdccQVOP/10I/15552HdevW4fLLL8fKlStx//334/nnn8cll1xSiub3WpgMg/tEklwM8LMwkE0+Ml1qICMHtAIsTDhQo5la8ETC22ZJ0oBM18bU3/x6pkul91J2uvK93Mtsn3e6svy0u5DP28s9sv/N6+JAtshnn8/Xs/NSTiH6ST7KyrV++zPI57Xl8l7mE4W8392hD8pcAK2VwGdDAV5zdydaiD5Qive52HUV4lvkZ2xMl09Vvc11yuVd9YJi9i9NM7+J5XL9xUBJDazPPvsMe+21F/baay8AwKWXXoq99toL11xzDQBg27ZthrEFAKNHj8brr7+OBQsWYPr06bjzzjvx8MMPMxftRYYXlqmYqyP5XM3PFrJoGlVxj1per9ea+pvfvTF+Vt84zp0d6w4MFs+bcpVSMVjF7HOMwWIMFmOwsisn27rinbsw9TfAPr8G5g//yjUdY7ByLyvfDFax89lR7HfVC0o1RyuX6y8GSroHa9asWdDSaGnmzZtHzfPll18WsFUMmWB/WWirNqV6eWkrVsV4oWPEmyTFvTFYfg2sbBmsXMv2K68otoFFPnNZLuzkL9f7lC/ks893h8ltocvKtX5B0JL/56c9Xvpcsce43m5gNa16AzuSrtKXN7gHPSpEH+htBlYufT7bsdFLPpoBVY7vqhcwA6vw6FZ7sBjKAwWVYXRDiaCmaRYDK0HEXUsHr9daDImgV8OhmNIvRfEny8iXNMdLXTQUs88xiWB5SQRT7C+TCJa27EL2QUk1Z4ZympkTkwjmXla5SQT95rOjt0sESz1WlwrMwGLwjUKuEua6OlIKiaCkStAIb0pSwl2fT8Ivg1VIiWCu0rdCrWR6kaCmPl5ZSXMUBTj2WD28/HffZayLSQRzK6enMlhMIlgeZReyD0rEYCSlWWhhEsHcy8qXXJ1JBN3BGKzCgxlYDL5RzgZWKSSCcdnKWCUS3hgsvwZWb5AIkpthvdRH7r3KSprz9NO6P//vvgNOPjltXWQdNDCJYOZyeqqBRXsGuTg6KUfZUW83sBKE58DmfmNc0zGJYG5lCQJcw7OUWiLoNZ8dTCKYXV3dHczAYvANJhG0IibHLMdS3BuDxSSCTtgH30z1kW3LSpqzbp35++uv09Zlr88OJhHMXE5PlQjme9wpR9lRr5cIKube2mjIPboqkwjmVlY+v0VMIugOJhEsPJiBxeAb5cxglUIi6DCwpPKSCNpZIb9lF1MiaM+bqT6ybVlJczwEPGQSwfyV01MZrHyPO3pezVEmCSYRzK6crL9NsjmuK4K7cy4mEcytrHx+i4otEXQzsJhEMLu6ujuYgcXgC/bJOmOwnAZWrLLWU75iMViA+6BWbgyWPW/BGayjjzZ/X3hhxjYxBiu3chiD5Q1t2AD8dgJw9v6QEaOmYQxWduVk/20iDCze3cBiDFZuZXVXBitdqBPGYJm/FcXdeVVPAzOwGHzBL8OQLk2+8pWcwYp3WY7jvDdLyN6uXFgmGvysvvVaBsvDxTEGK3/lMAbLG1qEfwL91gDDP8Enm1+npmEMVnblZFuXrJgGVii83TVd6rmkC07rBYzBcqKcGaxy+TZ4RanmaEBu+1O7E5iBxeALhTSw7B+kbF7eUji5iEU6Lceyxwr93stCMFheyi6mk4tc7klWm8s9LC16kYDY/1bMiU2uDha6w+S20GXlWn++x509tj1rljP/aWoa5uQiu3KyNrBUcw+WEN/lmq4Qjk56k4GVz29RMZ1clMu3wStKaWCVyz0oNJiBxeALfiVc6dLYYX/puotEMB61GlhxyVuFucjhvMCPvKHXSgQ9LC0yiWD+ymESQW/4vm6C8Tvct5aahkkEsyuHPO+HZSIZLC9xsNK1wVN9TCLoQDlLBMvl2+AVpZII+q2vO4MZWAy+UEgGK9tVjpJLBGNWA0vpavOULxc5nBcwiaAHfPKJ+XvhwoxtKhcZSOY+7+LnOENZ5coeFLqsXOvP97gTIzZzRNQwNQ2TCGZXTrbfmU0TDzN+J0T32XR+HZ34L6e7M1hMIlgcMAar8PA5ZWPo7Sh3A6skEsGYdQ8W37TFUz4mEUxfjpf6cpYIyjLm7QmsawAuO+os0LiC7igR9Fq/XcLEDKzs6s/3uBMXCANL7qSmYRLB7MqhjTFeFq/iZDB5wX0BI1/PpbcaWEwiWBwwA6vwYAYWgy8UUiKYLY1caolgJGI1sCTZfxws2rH9PJMIOs/nKhFcrTThrB/qvwdUfYffZmhTuchA8tXn8yndYBLB/PWBOG9O4KMSncFiEsHsyqH1+VDIQ9mKmVHh3DdXMYlgbmUxiWBxkM2z8+pFOl1dfvJ1dzCJIIMvlDuDVQqJYCRqnQDJsuSS0gomEUxfjpf6cpUIbow3m79V+sb17ikR9F+On3yZyuptDFa+x52G+Abjd6SzmZqGSQSzKyfbPi+p5qxQSuOmnUkEcyuLSQSLg1LN0fzk6+5gBhaDL9hfDLeViN4kEYzaDSwlfwYWuVpUzhJBsh/k08DK1L9ylQgqxLNy27bUkyWC+fzweekD5PlcVjE1rfQGViEZrFppm/E7HGujpiFj7hTj+vP1jtNQCAPLy7fJT30125ebebjMcbD8lE1Dtve7uxpY+WKCCiUR9PMtsqOnSASzfXfs965c7kGhwQwsBl/w+qKUWiJIrhgVmo6Oxq0GliJ5M7C8XC95LhcGi1Y2OUnN50ctnxLBTP2LbBvJYHn2DEYYx/K6NRnblO4+FbPPlaNE0EsfyNck3b53rBSSk0Iu7CSIPT5dnPt4kpXnzCyRr3echkJIBL18m/zUV9u0wvgtFcGLYDb3O1sJV7bIp0SwEIt9fuYDmcZUP98iO4r5bfCKYs7RvC6c9jQwA4vBF/xKuNKlybbsdPlSA1lRGaz+/SzHZLyUdPByvV7ZExoy3QPyQ9wTJILZxJ+Rif1zylq6geVVIlgqBqs3SgTLQXKSqpPnNXBJeyhfUqAEsQcrwrsXlJXnzCzR2yWCimaO6zIP11WcUkoEi/1edBeJoF8GK98Swd7OYJXDeF0KMAOLwReYkwsnIgGr5eN1D5ZfBivfTi7y6byhnJxc+GmDDNMSc4ttw5xc+C+rXPpJIZGqkyf24+SrD1gYrEr3TldMBqsnO7nwVLZmJpR594yldHJR7PeCObnIX7uLjVLN0fzk6+5gBhaDL3QXBquYm0qjUsxynM89WF7ZExoy3QOvZXcXBiubZy7DTKi4jIb5vE/5AmOw0h8XAyaDZRrp+eoDUWJG1rXbYNd0jMHyX072DJY5K4zW1AGBADVdb2WwAO/KgXRlMScXxQFjsAoPZmAx+EK5G1glcXJhM7DUAhlY+ZYIei273OJgkfsM3Bgsz30HJvvgxmDl8z7lC/nq88zAyr0NpLOJfPUBlZAFhuWoa7qsYr9liV5vYIFwiAP3TKWMg1VqAyvb+lTVVFyWUxysJuFL4ISzgd3ey5ivXL4NXsEMrMKDxcFi8AUmEXQi3tZiOZZUb6MHkwimL8etLDeDJyuJ3IhhwI5kuUH6cMgkgv7LKod+UmgUUiKocGYn75IjrumYRNB/OVlv1NcIttujgdWbJIKpYxdiLy2yWcQqpEQwtWgyn7sUmLEIGLUIskzfo8skgoXL193BGCwGXyh3BqsUEkFp43eW4+bhu3vKxySC6ctxK8ut3VlJBPfbx/zdUJ+xTeUiA8nU571KdRiDlXsbBCH/EkGFYLC6XAINk/UxBst7OdkzWMQeLLjPEHuzRDDb+gr1LcpV6teJzfqP2i1MIkhJV679slzADCwGX7C/GLSVCLur2J4uEUwoCcuxrHpbnulJEkGyH+Rz4pwtg+XZwCLYRtLhhZf67OjtEkEvfYA8T8qCcqkrXX2FREEZLGJfVyQRhqrR+2axJIL2Z1UKAysqRfGrV3+Fezfei7gcz1iO2/3Pts9b9mtChtZMDwBdyjhY3dXAyqdKIFeJoCUtl/y2CwnXuQ6TCGZGOYzXpQAzsBh8wcuL4mWS7KXsXCSCxYw7EVOsH3vZ4+jhVyKY7zhYhfqo5VP6RbuVbu3O5pmTxrDiMon1ep9YHKzM5eTrQ5vtGJNPpNpQiD1YnWKl8VvjdOOChmJJBAt9v73IlV5d9SqeXPYkFu5ciMY1jRnL8bIYlK4+O1Qba6V0tlPTlTIOVjlIBLNBoRb7somDZakDSQOLVyHJzgrJheRy+TZ4RTElguUwXpcCzMBi8AW/rItbmmzLzpQvNZCRk55Cr5bEVZuB1Q0ZLLvxFpNj1L+Vg/TLrd1ZMTjEvgqZy8xglUusk2xlMOnK8ZMvU1n5lmcVqpxcUEiJ4JbAIMtxV6yDmq5YEsFC3m+7nNWt7NZIq/F7Z3QnNU0h+2BXqNZyLEt0Fo1JBHMrp9RxsCx1wFSnxOUE7CjHb4NXMIlg4cEMLAZf8Mu6uKXJtuxM+WiSsYIzWJrVa2Bly1pP+crRyYWmaTj2mWPR99a++O93//VUjv18oZ0XZHreftogv/yS8TtXBqu8nFxw8IJSOrnIpb5y2DRdSImgxlvHlHBnKzVdsca4Qt5vr2WTC1dui1hkXjcJarbXsm7QDGu+eHpW0U/ZNHRXJxe5llNqJxcWY0gzjaqY5DSwyvHb4BWldHLBDCwGBgq6C4NF/i44g6VZB95Q+xZP+XJha7wgGycXmzs2o3F1I6JyFE9+/aSncuznS8VgZeXkItJl/t5resY2lctGZsZg5aecXGAyWOYsPl99QOOsBlZXB32/T09gsLyW7cXAKuj3SbPWKTEGq9swWNk6ubAwWEr2DBbHmaqacjAuNC27PZX5mtuVi5FZaDADi8EXyt3AojEahR7QYrBOhkjZWTqUk0QwlbYt1mac60p0eSrHfr6YBlbuTi6IPVige1zw+gx6u5OL3mpguTFYORlYvN3ASs9gdZeJdC5lWwwsrfQGlptEkMXByq2cUsfBItUcMmFgJTJIBDN9n4sZsy4TSjlH85Ovu4MZWAy+wCSCTsTtm5897sEqR4lgZ6LTOBeRIp7KsZ/vVhJBcg+WixfBcpSBlKOTCyYRzF8faMB2y3FXF33PUW+SCJLjqqJklgi6lZX1Rn2bFFxKMIlgT5YI2lnSGMVzpZ/vczFj1mVCKedofvJ1dzADi8EXyp3BKoVEMGE3sNLESLGkK0OJYGfcaWD1ZImgYlkVp2diEkH/ZfUmBqsgEkH7HqzwLmq6XiUR/PJzM81XX2RdVrbXMnznEmt7CigRLHaok2xRbImgF+dV+ZII2sOvJCgGlp/vczFj1mUCY7CKA2ZgMfhCuRtYpZAIxjmrQaV2Qy+CXhmscjOwcpYIEkaVsuo7ahomEfRfVm8ysAohEZRs/awr3EZNR45x2cYU84KyMLA+/shM8+knWZeV7bUE5TZrewooEfTqWdGOnmBgpRtjOS7zdz1fEkG7gSXJTsaSSQQLm6+7gxlYDL7gRvU2rm7E3z75G6JStNdJBLvqai3HCryNHmUpEaQwWD1aIkgGGg530tMwiaDvsphEMMd7KVitpa5oGzUdWZ99Up5PlINEUK42Y4PJddVZl5X1d4azjutuTi7y0Qe6ixSr2BJB8u+FlgjaDSw5EfFUlxuYRNB/vu4On6Ijht4O2krEpvZNOP5fx0PVVAicgDn9f5M2j5+y/eYriURQjVmOVZcN2HaUpUSwmzFYOXsRJBksl+UmJhH0X1ZPZ7BICVchJIKSrS+G66uo6ez1+V2E8YqyYLDGjAIS6/TfEydkXZZxLtgFJGo8X4tqi5Mn9+9LTZePPtBdmIJiSwRTf08kii8RlKWwp7rcwCSC/vN1dzAGi8EX7C+GLANrd62FmowhtHrn6l4nEbQbWF4ZrLKUCFIYLC8uZskVKbf4M15A61/p0uQsESSelezBwOouEkGvbEY+P3zks/JqYOVrhb/YH2yyvnwzWJqmQbZLBPvVUtMWq88V8n57NrDI/ZIuYd48jx/HnQv8sR7Y7x7vYwVvfamk0SOp6fLxTLK9393VwMonE5Q3iaBtz5UsORksJhH0lq/U43WpwAwsBl+gvSiSYm7ITiiJspEIplaMCklHq5oK2RYHS/Xopt2vnCUXBsuzRJBgsMKJMLSkpeTno0Y79govA3Gm500rxw0KIRFUXCZtXj/+2dSfLcpRIkg+K68SwXyt8BdbcuLFwMr22iRKQNNUyAQ7iiVLLeT99uxFkPT4ydNXcLz0L0nWgBmPALwKTH/S+1hhZ7Bc9trm45lke7+7q0Qwn4YK2YbUwqCXsdkhEYxbGStZcu7B8mMYFmM+4hXFnqOVerwuFZiBxeALtIm0pJoGlqRIJWWwyIG0GCtGdhkBAHSG6KvNduSVwdI04L//BT7/nJres0SQYLA0aIgrccvfy0H6lel5+6lfnrGn+dvl/nqVgZSKwWISwfJhsPIhD4tFnCvl4YRTnpSv+rygLCSCFgYrc8w6t7JiShjgU3RFwvu7YjPq3AwsJhHMrZxcpXZ2qR/gj8EyJIKxiO3v6RmsTO3uzQxWqcfrUoEZWAy+QFvBsDBYavkwWMXYVBqTY45zO+rHesqbVycX//gHcOKJwP77Axs3OtJnw2ABzn1Y5eC8IK9OLoYPNX7nymAxJxeZy+kpTi6sq+T5lQhGupxsVVe8k5KyeH2uLJxcbN1i/FZWLM+6rIhC3Ete8uHkwiYRVCRqOubkIrdy8uXkws+3QdMoEsGY9T2UKV4EmZOLwubr7mAGFoMvZGKwEopzRbBUDFYxNpXSDKySxMG64AL9f1kG3n3Xkd4zg+ViYHUHBisrJxfkqjhzcsEYrCzqz7eTi1jEOZHr+uJjatpexWBJ5lirRJ1sgteyYippYMnZM1jz36SmYwxWbuUUgsHK9EzIPauFYrCYkwv/+bo7mIHF4AtUA0spHwOr2E4uaAaW1z1YeZUIPvec+XvrVkd6r2V3xtMzWOUwcc70vP3U7zCwKN4hvD6DUkkEU/sMyikOlj1Qar7rK/UH200imI8+EKd0srDqHGfyVZ8XlIWBNXMv8/fggVmXFSUNLMEpaXeDw8CSCvdMustEthDvc657sOxMlP2312+KYw+WQllMzWO7iwlmYBUHzMBi8AWqRFAtTycXpZIIKh7dtOdVIjiWkCWuXetIzySCdChtu8zfHKgjfzlLBMk6ed75d6/l+M3npSzaR5RJBDMjJjiXwru0wsVc8oJykAgqvKnhlUF3k+mlLDuD5fVadgYbLMeS7Nx/CzCJYK7llEIiSKs/HrcyVrsqrc/fLZ8bmETQf77uDmZgMfhCuTNY5SARHLpzqae8eZUIUgysrCSCLgxWj5UIfvie+ZsIZOqlPjtKIREk6+Q4U65WagbLrayeyGDlXSIoO/f2dIE+me9VEkHCqJJdVAKeJIKadQ+W12tpD9RZ2+NiYDGJYG7llEIiSKs/URWypIlSLCgmESxsvu4OZmAx+IL9xZBlQCKkEoldLWUnEQS8xwXyizhFJsKp9P0BduRFIrhjh67H6tMH6JsMfElhsDxLBDMwWK6THw/shRfQ+le6NLnHwTI7hlJVAQQCnuuzoxQSQXt7zOfk4rHDpRy3Yz/w0ge8PN981VVIFJLBiktOAyuMzA4VCnkPCnm/PRtYhOdAxaOBRXsGcc3KYHm9FpWzFubFyUW29ynb+91dDax8MkF5kwjWWBfcJNVpUDOJoLd8pR6vSwVmYDH4Au1FkT7+yDiWli8rG4lgMeISxWJO716qi3zFDr9yOOoK2dy5wIQJwC23AKNG6ec2bwbi8eziYGXYg5Xpo5auPi/wKzPL9XnLMCdtbm6XvX78SxEHy83AKoV0w0sfKKYhXkiQ9ed7D1Ys7HTJ3sXTL7A3xcGSt2wyf0fpbuu99K+YzcDyei0aZzWoZEqIDoDFwcoG+TRUaGNjNt9CewgWe7xLt3xuSLVBVfU10VKi2HO0Uo/XpQIzsBh8gbaCkeg097Ek1PKLg+WnLL+IRSkGFuetspwZrC++0P+tWQO8+KJuaAH66L1+ve84WJqmdWsvglkxWITrZS+r4uUWB8veHr8ylHw9Ny8OLfJZX6klJ4WUCCrrvnOc6xLohfUqiWDzDvN3nO5gwktZCWTn5AIOA4vOYOVVIhgIA5zS4xmsQksEyf2pniWCNgNLSLR6yueGYn4fMoFJBIsDZmAx+ALVyQXB2CSE4q++5dPpgV/QDCyFy47B8m1gPfKI+fuccxz7sPzKIqJyFKpmbXu2EsFCbu72IhH0vLJmZ7AoS4vdxckFeVzsFe9Mz8ntHHNy4USCYjxERNXxbuarPi8oCycXhETQLdCwl7IsBpYPBqtObbIcu0kEI9pOYNLLQCCcW/8e9inw+8HAb6ZCUulOTqj50hznG+Xo5IImEeQ408jyLBG0eRGs61zrKZ8bivl9yIRSO7lgBhYDAwW0lQiJ8JqXEIqvH3dbRSrG6m6MostWPRpYfiVVlhWySAR4+mn9d1UVcOqpuoEVDAITJwKy7EsWIYpOeSDgZLC8SgQLyUy43ZOsnFyQG+elhOHi3q0N5ezkgjz2uuewUM8NKK5EsLQMlnmz89EHEglnHCzAfBdJ9CoGi9yD5WJgeSkrbmOwZNmDXktVIdlmS24M1l/Wngic+iPg2Aty6t/1kx8BQl1A/++Q6L/Yc750x/lGOTJYqTHGbWz0+p1NLPvK2sYMEkGv7QZKb2CUmsEqtYFZLDADi8EXqAZW3z7GcSLIl/TlzdXpgV/EKoPO9mRpYPlisF54AWhv13+fcgpQVwf87Ge64bVyJXDiib4ZLLs8EOgFcbCIiZrKAxpl5Pe6SlleTi78leN27Lc9fs/1BAMr33uwpASdrehKdDnO9ao4WEFzhioPGZR1WRJnHedkxcN4rSiOQORkeBISq7uWAAD4oZ/m1L+PFv9rHO+vzvecL91xvlGI99krE5Qp1p6fsZHKYNkcWClcfuJgubWhmCi1gVXq6y8WmIHF4AtUieDgAcZxoqqibJxcFEUiSAs0XCAnF5YB/OGHzd9nn63/HwxaEvmN/UGbwHlxcqFpxZV+5fN526VGCsX1MpMI+i/H67meIRE0f+dFIugSwDaTgdXTJYKyaF6sPKBf1mUlbAZWwoWJshck2d41MvCx5byiG8iD+M059e/+wnbjuC82e86X7jjfKKVEEEjPnPsZG6lOLuwGFsWTZ7btLjWDU2qJYKmvv1hgBhaDL1AZrEozXoRUW13S1ZFiSwTjinO1OVuJYKaVNeN6tm4FPvhA/z15MnDAAdTy/cb+8CIRpJXj1cGBF2R9T5ClRND2rBQpvSve7iIRZAxWYVFQiaBEZ7DCCafnvF4lEYT5h1ziYEm8dZyTFA+zPUlyMFjyoIHO+lUFajJdJd+VU/9eyk8xjr8UpnnOl+443yilRNCtvmzGRlr9Cdn6HiqUWHT5bHcxwRis4oAZWAy+QGMqJIIFSFA8HvVoiSCNwSq0RPArQht+/PH6Dl4KCiERpLmY9ergwAu8MGH5fN72ZLLsnNwyiWBmlNrJRbE/2IV0ciFlyWAV8h4U8n57N7CI/ZKON5eel/YM7BJBLwaWKiWg2YZZmkSQPCfzub1PmmCWFfcW1q7bGlj5ZILyJhH0aWAxiaA7Sj1elwrMwGLwBdqLQn5UEkqid0kE1692nGsJ9feUN2s53DffmCen2VY2H38cOOkkYK+9UNG6xVfZ6RisdB+HdDINv/AyEOdVIrj7VGt9FAbLTQ5mR2+WCHrtA4VyclFsyQlZf773YJEMVpVcYfwupUSwkPfbax9UyKDglGDMtLzUfmljsBJyZomgRHE8QoubJyVM41jmc3ufNMI1fyJLz7TdRSKYT0MlbxJBu4HFMYlgtvlKPV6XChlITQYGK6gSwaVfGMcJKdarJIKxSIfjXKdY6ylv1nK4zk4gFALicWCq1UDA0qXASy8BACq3rAEwzHPZu9IwWPZ76Ud+6AdFlwja91VQ9mCRK6IuZGHW9WcLNxkMc3JRHFgnhPmNgyXJCWPpszYRRETUJ+3h9mZH2l4lESSYJmXdmqzLkgUbg+USYNySh+J4RGra7jwXM2WcUT6QU/9WBbNdEq9B09KPP6l86Y7zjXKTCJJy9ZwlgrY4WDQDi0kEC5uvu4MxWAy+QJUIEgNRQpMdbm97tERQcq5sqvC2PJO1RPCGG4BwGFi1yslgEbGwKras9VU2lcFK7vtIdy+7s0TQvgqtUFaz3SQndjCJYOaymETQQ9nEvs4h7eYCTtfmtY60vUoiWGWyeTLvzU07la2wGViyizdASxqKbFP+4D3HuUTcdKWfq0SwRmg1jicJX3kKvdBdDax8MUHpmDDfEkGbgSVnMLDK6fuQCUwiWBwwA4vBF2gvSsL2gUrYEhVTIkhKuDLFgcoHYrLTwNI4b6OHX4mgZYVMEIDx43XPgQCaw8049YVT8afgh0boXNLA8iQRpDFYsU7j725llYtEMJvnbTewZIqDATfJiR3F6G/28plE0L2uQqKQEsGdY3YnyjPdkXdF2hxpe5NEUB5kequVXZgcL/1LsRlY9u8VDVKcIhHUnPmkmGlgKbyW0/sU5E02bICw1VNZvV0imM5Q8xoHyzCwbPMahXNm9GMYFvP7kAlMIlgcMIkggy9QJYKqDBCDi+72NuCax0/ZfvLZJVzFWDGKU5wi8Bp9k7odWTNYFPztk7/hueXPAQDmjAQO3ggEN3lnsFy9CEY7jL9n224/yEUi6Pt5x2JQdu20nJIVd4lgJglIKRgs5kUwt3KyhZuBlQ8ZUIwopBINAHYAAMJRpxy5V0kECc+BiksojExlyaoMVYjaznlgsAjjLgWJZmCRe7V4Oaf+HRc4ILlcpgreyuquDFa+pHbpyvHKYFkkgsSYvql6N0/53FDODFbKeVWhJKilHq9LBcZgMfgCbQXD7k0pbtvHUiwGy201309ZfhGjGFj9lC2UlE5k7eSCgiVblxi/Pxmuj5IBwsDKmsFKbqxPdy+9MBVekcs98f28w2HIbVYDSxk7xrW+ctnETHpydPZ5LVm/N7dj+VqB9toHClVfsVdECykRJOMyVau1xu+umNPA6k1xsBTCwLLHrwO8xeOjOQrx4kWQDHJsnFOds0RSLp+LkwtZBlYI44zjGC/0aAYrXxLBdOX4dnIxcZwljcK5qxto9dlRzk4uAG9GT76YL2ZgMTBQQGWwbCt5dgOrWAyW22q+n7L8IqZQoru77A9wpMuGrXnoIeCHPwT+9Cfg+++Nv321w3Td/sXYSgBA4HufDBbVwKI7ufDTbj/IhcHy/bxl2RnbpqaKWt8v8QheCs8GPvvMtbhSsAnp+nwx92z0ZgYr704uSAMLdcbvLgrD3KsYLELOK1MYLC/x+GgsPc0boB0SJRgxLRZXol+D+fcc9mApCtAlBI1jTZD8MVi8bD0uELoTg+XbyUXIWoDKZR8HS9M0bK1uBMYscG1DMZHtNztfDFapDcxigRlYDL5AN7CsJxNqaQysdAxW4Qws81orkt9glbK6SkNWEsH33gNeeQW46SagvR0A0BRuwvYu06PVF0P0//n2XeiDXZ7LJicfweQAGEnuMfPrpr1YBlZOTi4oBpZCWZUW5Dgewdn4gTQf2Gcf1+LI/X/Fmuzm2ueZgZV7/fneg8W3bDR+N8TNTtVFCTRcLNlRMQ0sTaMbS3Kr6UWRxmB56W+0RSRZ8+CmncJy2b97gFXNofKArHhzr26HogCKQL7oce/v85QXgD/2AX54Zrc0sHLZg+VlbPT6TbE7uchkYKVr96INi/BG32OB048Ghn7W6w2sUl9/scAMLAZfoEoEbQxWgsJg2YPTei3bT5tKIhFUTdlATfKyvTJYWcnhli83DyZOBAB8veNrS57vKiPoSi5+jsVaz2WTk4+ByblcJMnQ9UiJII3Boqxm8xTHF27w62QiG3iRwXhtQzElgl4kXNnW15MkgqHNZpy7QZ2mpC0spTeweopEEKBPwEg37TQDy0sfpDFYXiSCseYmZ9k0A8vGdElydjNJWQZU3szLCZL393mvR4BgGNjzcST49qzq94oeLRG0GVhVaounfDR8suUT82DgNyVncLL9ZhfbOUZ3BzOwGHzBE4NFcRRQSLlSSSWCxIplVfKnUiAGS+QUYMUK/WD8eD0WFoCvtn9lyaNxwFdJ52MpA8uTRDA5+RDAo29yr3ZESxh/z7bdflBsiaBi26qktDgnUhw5AZszJ22Rfp1MZAOvEsFyY7C8SLiyra8nSQRJI7+S72v87lIijrSlkggC3sb0bMumGljEuEobYwvKYK1xBpSXQJEI2mMnUb6FXqAoQKVAGEdCwvv7HDQNcYVz9pl8okdLBFut34IAnHsgvba7KUyUlYPzk3yBMVjFQckNrPvuuw+jRo1CRUUF9ttvP3z66adp0//1r3/FxIkTUVlZiREjRuCSSy5BLObNaxuDE1EpCs0LvZQEbQXabmDZnV7Q8nkpu1tIBOv1PTu8wiOUrKNQe7Aqt67VgwsDlgDD5P6rFL449TDEbr0HX2CGp7JJBqtWrEJ18hHGIUNRlZ4ZB4vGYH31pSOZxcDK8PX3G4cqG5SjRNBLH6BOmvPEYBX7g11IBkvSzEl5pdDP+N2lOF2FlyoOVj7r8ywvJYwqrxJBLwyWlz1YiYTTUKIyWOushphK2aPrBbIM1BFxsHztwRJMxl3mCjs3KsT4Ueg4WDQJKi1ffPP3ljQy71xR8CoR7O0GVqnH61KhpAbWc889h0svvRTXXnstvvjiC0yfPh2zZ89GU5NzFRkAnnnmGfzxj3/EtddeixUrVuCRRx7Bc889hyuvvLLILe8ZeH3V6+h3Wz8c/dTRno0s2osiDba6sLVLBGn5vJSdq0SwGHEn4hW6O3pVrgJUvQFe92D5lcNVrV9uHhAGll0iCACfHzgK6oW/wxqM91S2IACdyTg7tQihmniEUTnaM+Ng0QwsymZ2S2GBgPPvBNLFWskXylEi6KUPFNsQLyTI+vO9B4uMr1QZ6G/8DmvOcbVUcbDyWZ9XuRL5rsrVTmc0XvoXlcHy4KY9Hqd4kKM42pB2WWVkqpydgaMogEQwo+B9SARFwsBCYQ2sQowfhY6D5TVfwsZQSoLzJfBqGNoNrFJL5IotESz1eF0qlNTAuuuuu3DOOefgrLPOwpQpU/CPf/wDVVVVePTRR6npP/roIxx00EE47bTTMGrUKBx99NH46U9/mpH1YqDjmW+eQVSO4u11b2N923pPeagSwQrrpFNS028G9VO2nza5xb3wU5ZfxFIfULkCgqrrzeyTdjf4ZbAq1ph7MzBtGgBdkvJt87cAgLENYyFw+kV/se2LjNfvkAhG2wAAtVtbDbkjAESkSLeQCObFyYXsnGxZGKx4PG3hxWawcu3zxZQIFrufFBJuEkGeN2PJZG9gmX0wMnQ6qgK6MdE1tL8jbSklgvlksCbgO7yLWbgVl7uWLVsYrPRsgts5KoNFiWdlh5RwGljSoQc5z0lWg0ZTve/fJKEbWObxZmGg9/dZNNug8k7WM5/oThJBr84xDIkgZ00kC+n7XFqJ4Lplxu+B/OaSMzhMIlgclCzQcCKRwOeff44rrrjCOMfzPI488kgsXryYmufAAw/EU089hU8//RT77rsv1q1bh8bGRvziF79wrScej1tWnzo6dB2tJEmQpMwrV4VGqg2laEuUCIrY0tWCETUjMuaRZQGkXS7LGhRbLKiY7BzUYzEJFRX+ylYUDZKU+eOnKCIADoJgT88jFSkwHpchSVre7zdpYPGaPrNSec1T+al2pyDLKiTJtmommfcksNocpKUJEwBJwrKmZYYkc5+h+6AqUIVlTcvwbfO3CMc7gKSb50xly0ocXdAN49oEUDljXyCiL1y0RdrAcf2QupexmATy8mIxDvahJJHI7n7b+4BehrUPSJL5XDXNbIsu+wgk0ziv1w4tGoVqM7DiiZijrRzJar3+OqSVK4EJE6hlCoL+TL323WygK6L16+Q463XyPIfU/bM/JxrIPgB4f+ecbXL2gdQ7R2t3ComEAknyv5knkchPu7NFPG72Qd72vguCCFnmqH3XCyx7goQQagI1iEgRdMW7HH1T08z7nu299IJEwrzeFGIxKbUNNOey/4sTMBGrMAvv4d/4CWKxPR19l1wMUVTFcS9o/Sset96TtuQikqVcNZ5xfIrFnUxQQnO2IRq1OiJR5UhW35p4nIdEXO83wkTv7zMhEVS4aE7funTjtx6Pz7a4KmX7PtPHdBo4zkwbi7mPMc6x0RwzYjHJYnDF4+T4pV+DncGSKd91a7utbSHR1LkdqNV/T+a/doyNKRRrPuj2PhfqeyHLmec6pQB5vwtxz0tmYLW0tEBRFAwaNMhyftCgQVi5ciU1z2mnnYaWlhYcfPDB0DQNsizjvPPOSysRvPnmm3H99dc7zs+fPx9VVU6ZQamwYMGCote5ZZsZEPft99/GtpptGfM0Nx8MwNwX0NkZAbqsmz83bd0IO958823U1aXf8Ltjx4EATLlhV1cMjY3zM7YpGp0DIIhYLIzGxoXG+bVrxwOYAgD45JPPwXGmK/N83e/OsL4RmZeDFgarsbExc97OowCYfbCpaScaG/9nSbN5894AhunlfqUHE1ZFEW+sWQNtwwa8u/NdI21wZxADZP3+KZqCx/91J/bHMfgcM9HS0oXGxg8sZW/cOAOAblS/88FbxvnaONBGfDjfWvgWNm8+DsBoAMB77/0PW7aYG7BXrmwAcKil7KVLl6OxcYNx7PV+79x5GIA+xnF7eycaG9+1pFm3bg+jLR999CG2b9f737ZtVQCOSl7bFjQ2fpG2rqoN6xznvlu1Eu22Z6dJVmNqcWMjdq1ZQy1TUWYDqEBnZxSNjYV5p3fsqARwNACgqWkrGhs/N/7W0rIPgKEAgPnz38GAAeklQtu27QdgsHEcjUpobHzDd5s+/3wggAMs5z77bCmqqswxpqMjCMDqJGTNmvVobFwOv9i8eSaA4caxJGme3rl84euvRwPYA4BuYJH9m+OOAyBg164ONDYu8l12JG4uUG3avANctT6u7ArvclzjsmVDAeyT/L0CjY1rfdfnBWvWTAMw1nLujTcWoK4u90nJqlVTEBu0Cnv8GNhvM9Dv1Va89dZC9O1rGgqqpkIjHNJIiuS4F83N5nthlr0GjY3mfGLptqWO+ne2Oe+ro43frQDqree27djmyLdq9XeAGb4Ku3Y2ZfVMli8fB2k4MQEXJLz77gdYt87JwJHYuHEmMJiUCEbz8l7Qxm89mPkJlnPr129GY+NS3+WvXz8dwCgA+pi+bZvToUQKGzZMAZLS9//972O0tbUSf6sD8AMAwJYtG9HYaO5P3rXrAAADAQCNjfNRXW0aBl98MQJI7ldeuXI5GhvXI2Z33iWqeP3118FxZkdcvXoqAD0g8aefLkZnpzVwPaD33WZiqpngBXz88WeQ5R2u11jo+eDKlRMBTLKce/vtRRg8OL1TlC1b9gUwxDiOxWSPc50jAVQbx01Nu9DY+KGfJhcUCxYsQCSSf4cwJTOwssGiRYtw00034f7778d+++2HNWvW4KKLLsKf//xnXH311dQ8V1xxBS699FLjuKOjAyNGjMDRRx+Nuro6ap5iQpIkLFiwAEcddRQCGfZ35BsPPv8gUo5xpuw1BXPHz82Y5+abraseoVCVY89R/4F9YccPfnAkbLa0A3feaS07EKjA3LmZ28Tzejeuq6u2pF+xwlxp2XPPmZg7V8v7/VY+jwICMFlZh/XqFADfQuGBOXPmWAZiGoJB6+tXX9/Xcb2PPabfExESGpr0ySo3cSLmnKB/2N5f+D6QtGd/cuhPsGbnGryz4B0AQOXDN2AxbsBkfIvq2omOsp9+2rzfex80HXhZ/12bAIZMmAJ8pRt7ex+wN1b9b6SR9oADDsY++5jPvL7eeZ2TJ0/D3LlTfN/vq6+23pPKylpHu//7X7Pds2YdnFJLYsMGM82gQcMwd+5gpENMjgG3XWo5N2r0bjjcVt812io0jgf+OxH4/UfAgZMmQTvmGGqZVVUidu0CgsFKT303G6wl5msjRgzF3Lnmi/XUU+azOOywwzFqVPqy7r/f+s7xfCCrdmuasw/svvuemDt3unG8gzKfGDlyNObO3c13fU88YW23qnIFu980rF1rji2CoFn6dzDIQ5KA6uq6rNr08OsXGb/HTZiEAfUDsKN5BxJIOMrTmUMdEyZMxty5E33X5wULFjh1z4cffhQGDsy97Pfe43F5bDyWDVqNZYOAYf8L4YFZB2O4aT/r7s8JXz4qVMcYu56ich81ahzmzh1jXsf8BYCtH1bXZn5Xo+sWw+5ErqFfgyNf27Y3LeUrfXfD3Lkj4RfLlvGQEqSBlcCBBx6C6dPd8wDAU09ZGSxNiGPOnLnI8ClyRbrxm+ZbbOjQEZg7d6jvel55xTqmE1uMHfjoI7Mv7rPP/pg1y7xPXxI+isaMGYG5c4cZx//4h1nHEUccjb7ENKW52bxB06dPxdy5k3HBR9Z6NQ6YPWc2RN78Ri1caLblkEMOwL77OlmpnZFWyKQfKl7GXnvtjblz6QxWMeaDH3/sfJ8POWQWxo9Pn+/BB63jLseJnsa4UMg+13G+O6UAeb+j0fzLaUtmYPXv3x+CIGCH7au7Y8cODB5MnxhdffXV+MUvfoGzzz4bALD77rsjHA7j17/+Nf70pz+B552dJhQKIUTRMQQCgaIbNOlQivaQ2vOoEvVUv3OzIgelfSdAyP9o3pU4LpDJPwC1bC9tSm2YFEVr+mCQTCVa6s/X/Y4lPQtVyEBUrTHOC6IAgU+/W9fp0IFHIGDtwylvRwIUdN70d9RtWg5u4ECj7cuaTdngzGEz0VDVYBynAg6PxVpsUSa7lg0AsmB+LWtVETXVZjkJLYFAgLwWMeOz1DTBksfr/XZqtZ19gGx3RYXZr0gJqqo676UdcY2yP0JTHPVFVB4/+zHQVgm0VAEvdHa6OrswY61467vZgJwsBQLW6xRFlUhXuHfOG6z9hDbJU1XB1re8we4FTFU5iGIg64mkX5A+gXhes/Rvcx9edvdSJqRJocpa1Da1AZzubIYXeMu4Qn7a7O9cPkFzye6lf3ktOx4y38VEMOEoW4ZThsSLvGWyS3v29nsSlp2xxBTKO+9IQ9k0omzc4Min2DwSypqaVR9QVQ0y+SgF5z2h54NlDxbEGAQhkNFxRCbQxm+K3w9P4y4NbmM6Dem+69ax0frsyT1S9ntJvs/BoJ4vQfEaqCXfdVq7QyH6d3FXq03Rw0uOdttR6PkgzaeZ5/5FwO8cLQXaXKeUCAQCkAvgeaNkBlYwGMTMmTOxcOFC/PCHPwQAqKqKhQsX4sILL6TmiUQiDiNKEFL6V++uxhl0kO5pad6VaKA6ubB7zZOdZZXCyUWhN4DLqmy4Dq6QAZWQ1cmqnNHA8uMEII4KSGf9mlRnAjBdtA+oGoDBNYNRG6oFBw4aNIuBtTHDptaYaj6zWrEaVes2GceRSHu3cHLh93nT3DPLtqCjmgasEYcDlfrxNwMB7HTKQOxtKJWTi3KOg1XIfpI6l2mDfL7g5uQCyL0PxEVz3AiGqlHz/baUegoRKYLaUK2jrlzq84JCO7nQiKC6Ek8x/GnvqipbDKxsnVwoXpxcyBQnF9s2Z0znpWxqfapEblnB/sJ7PpxcEG0QY1CUzJ75skGh3udCx8Hymi9BCbeSUBKG05lM9aXQtHGF5ZjrhW7ae6uTi5KakJdeeikeeughPP7441ixYgXOP/98hMNhnHXWWQCA008/3eIE4/jjj8cDDzyAZ599FuvXr8eCBQtw9dVX4/jjjzcMLQbvID9aHXF3zTMJmrtNye7RSe7KmM9L2X5f3mLHwYoTH9MKGdBUc2lNobB4dvidgNqvb3vXdsP96x6D9gDHcagJ1mBif10mtGwgkBB0AytT2ZGI6V64NlSLqs9NTUNkV1OPjINFm7QpNjftigKAN9NtrAe0NAYWi4Plr+x8ufN3K79QcIuDBZAsZnZlbxtq6qO0vsNQrZkzt66EdWztKXGwVMIFtuzRwFJUayIv/Yu2kKjAQ6BhOCfbMuWcZAtRYme0vCJuK4fjvcXBkhQZIIxVBKIF6xf5NLCKGQfLns4tn5uB5bW+FJq32/bg9TADywu30VvjYJV0D9Ypp5yC5uZmXHPNNdi+fTv23HNPvPnmm4bji40bN1oYq6uuugocx+Gqq67Cli1bMGDAABx//PG48cYbS3UJ3RoWBouyskfNQ4uDZXd1TQmI2RPjYMWIGCdBmcMAoRXNyeOELKMqA3PuNw6WfYWMjH81fZApzp8xZAZWtqxEQgS+HQCM3b42Y9mxXSZjVVNZjyrRlDtGOlp6ZBws5dNPnGXbDGNZBiCYE7BoANjZttVOJDrawOJgFTcOVqr8fHi181u/m4GV9bURXgSDYgA1WgCAvpiTzsDqznGwBvCmA6IpwleQ5dnWNFS22WoYeYqDlSWD1b7XgcDHf7eccywsApBsE/CaxDYAu2cs31mOZHGIKAuKp/udsLuFF2MF6xfZxlKiwYuhQvt7ugU5P/MBahwsCv1gN7C8GIZNzRssx5rQc+JgAbpsMNMz87Jw2hNRcicXF154oaskcNGiRZZjURRx7bXX4tprry1Cy3o+8iYRtE0wFM25+7VQq+maZq6gFDsOltXA4jGO22AaWJJiyMrc4IfBOhD/g9A8FqgeZAjNv9puskzTBxMG1uAZeGbZMwD0fVj7b1+fccUq2rbV+F1b3RdVgtn4SHtrt5AI+mawmrc7zx1j9UJmZ7AAYFOXu4FV6jhYoqhR03kpCzDfJ797mcpFIlgsWCeE1ol2rhJB0k17KBBADeGWLixZ9xD1FIkguUgX4GPeJIJ2tsiLRJD2nVMzb25PUOLjyZSA8olBAwDC2Ua10uJI4wX2ibwkAGpCRqYpm2zfVyo672W+0N0kgn7iYCmq4gjhAaRnsFwlgm1brCd6EIOVOufXwCr19RcL5bPLjKHokIgVwGwlgpKsQbH1IpXywSqUgZVPuZRfkAaWIIvgiRE5nkjvkp7WJrfBK4g43sNhqBwzBJg1y/hbav8VoEsEU5g5dKbx+4shQD+0ZhxQw1FT9lZb1x9VhJOLSNeuspMIclBxMD6A2GZOYHwbWBIlIDZFdrQ7b3X3vjHqNMzsbeiuEkGv+ezo3RJB699ylQiSDFZIDKCaM2m5rmi7JW1PkQiSMa5UXqX0HYqBY9/v5EUiSGGwRM3p+MIOSaEYeBQDSxo1wnKsaZm/AzQkbNcrCYAazRy0WOqmBla5SQTthlQK2UgEm7psbit7oIGVCb1VIsgMrF6MbBgsx4uiOT98qupksLKhn73oe7OVBOQDpIEVkAVwmvk6JWKZP6xeJYIT8R3ElGcxwndxysASeRGT+082zu85eE/j9+dDgD5og0wJakjW1zXGLLf22B+jqoYwsMK7PH/U0l2LF3gt+xLcjQ9wKPofMxOp6Ih+n7d9BRxwrpTLMtCHb7ac2yS3upbZ3SWCXvPZUS4SwWKhkBLBqnYzPltAEFAjmO4xuzqtfa+nSAQ7BdOI5Pi4s+90tDnbJLnLtYw0dgYr5lxI1GjeRG2IUxgsu3IDsC5aAoBml+x5hKRary0hAFo0fUw7PZ/dwIoyiWASfiSCXg0sTxLBeuteAY33JvcsJPIpEfQkx++lEkFmYPViZLMHy7HyQ9kgrFI+WNmujtDcA7vlKbZEMK6Y1ynaGSyaD1sCmuadwZoKIhBrMkBIXI5jZYseQHNy/8kIieYEpU9FH4xt0IOCfjUYEPgEgpR9cRYGi/D8WFs3AFV1pgguEu0oO4ngnfg9AEDYvBH4RN9L5ZvBohhYduckigLwvPVZbvrh4a5lkpPrQjk2TS8RpKfzUpaffNmU01MlgjyfX4mgkGgDAARlIBDgUCOYXsvsBlZPkQhu4M0FHp7i0EFOUBbtbOe8SQSdDphS+9vSQVz9leOcTJHR2ifgGrJjsLI2sOzy/G7CYJWbRNDNwIqnYU1dJYJDrfFWP+b3KTmDU2wGi0kEGXod8sFgqZSPE+1coVZH8rma7xckgyXKIjjVO4NFMxw9GVjJqLorWlYYz4/cf5XCjCF6VPpoAPiuH1AttaWtz2JghWpRVU8aWJ2+JYL5YrA8sR7JAIF+n7dCY7C++tJ6LAM8b023UXSXFJFtyLQ4kC3S9XlSrlZMBqscJILFXBW1PoP8ehGUkwZbILl5vFo0DaxwuI1aVy71eWpTAe+3LAMKwQZxAoXBkijfFNu5TG2My3FIFMUFPMj4uB0bHedkHo6XXFLtDFZ2BhYftRrSEu/VwOqeTi5ylggmV7PyJhFsp6sU4gnrQqUniWDS068Bvmc5uciUT9Oc30JmYDH0eJAfg2z3YAmCkxlR8+Tkwku+fK7m+wVpYDXKP7YwWIkMe7C8TjZlmc5gkQ4u9hi4hz2bYWABwN5D/oEt6hDX+jgO6CIM7NpgLaoaBhrHkXhnWnlFsRksx32K6c+B503nDJ4YLMq+DmXtakf9dgNrU8cmuKEYjEJ3YbCKLREsHYOV3zhYKQNLVDiIIlATqDb+1hXZRa0rl/q8oNAMlkI4CqG5JKcaWLSQCpSyUyAXEUVi05fmgcGSVYpEUICjU0vvvWNNxGVnYHFJFjOFhABjISkdZPu1dBM37TkxWP/8JzBwIHD77ZbHkW5sTDc2iSKQ6LC+ZynEbM8gXX0p0AysUhsYxWSwSi3nLiWYgdWLkReJIKUHKRRZRDFe3lI6uWiWR1r2YElZGFhu5/qCiLs0bBgAq4OLdAwWAMSGrISiOvUsqfoEAej87H/G+dpgDaoaBhnHESlSdk4uLCDkmH72v9D3YNEkgjYDq93dwCqG04F89nkmEcy9/nzvwUo5TxCTDFbNiDHG37o460S/WE4uCm1gqUTsJp5POPsO7V2tr83YHnL8IL9xVTHSn7+H/bIUA0sOik4Gy75oQ2PMPECz7WNOCAAXz8xgKej+EkHfDNZ55wEtLcDll+ePwYrSVQrRiPV8pnZLioSdUVvcRGZglfz6iwVmYPVi5EMiSMYISiHCO0eani4RhBICp5oVJjLswfJ6rbIMBMh9bgF9w6xbDKwU9hq8l3kw9PO09QkC0Lnte+N8bagOVQNMxitSV+nJycUJeAVn4yGIkPIm/VJV514mNwYL8CfP8urkghes6Ta3b4LS3kYtsxiSrXJ0cuGlnEJKSXMpK9f68x1oOOU8QVQ4XSL4o1OMv4XrrLEfeopEcAhvLlpwvHP88OLxM9NiDPmNq4yajkM0zguD5Sxcqq0CKios5xJ2iWCWe7Bk257ZsBBEe9/RGfP1NomgIlkNXK6jnZrOfpzRyUU8Qq07FnNnsGjtbvnobce5ETw9LmUxUUyJYKnH6lKi5HGwGEoH8qORrUQQvNPAagvWOc71dIkg5ArLHixZSr9y6YfBMgwsngcEAZqmGQzWwOqBGFQzyJFvQPUADKweqMsT+qSPgyWKQCfxYa4N1YLvb15LZNxuECPOfOTxTHyGV/BDAHp7FeUCZ4UeQGunPZChogDTsAx7YimefL4C3GGHGn8TRZ3QyloiSHFywdkYLAUqtq/+AsP2djq7YBJB93M9lcGy78EiJYLZxBSThBSDlZQIBmuMv9kDDfcUiSDppp0qEZQpEkGb0ZNRIhinG1gcxVGTHRItDhfN6HIELc6OwbKHOlEEBdEqt+h7RDq7RFDsfhJBe9gDO8g+H2q3yu8qmjcBqHeksx+nG5tEEUjE6QxWPO6+B4smEWzauMJxbgC/reQMDmOwigPGYPVikB+IhJJw9ZxDwvFiUBgsmmfBHikRDJurZWPlzYip5l6JRIYlmqwMrEAAiqrg8gWXoyXSAoDOXqUwINAHACBW7cD+0geu9dXxXegM6CuBQZVDUAiiKmBurPciETwHDxnHd+D3Wd1v2mbYVPn2di/HNPyL/zm4n/yfrr9Pwo88S5k43lkXZdLGUxYRNm1fRS2zt0oEy8HJRTE/2l4YLCA7RydysryAwusSwTQGVk+JgyUR1/GdMMY5xlAYLC8GlkUiSDBYU2PbjN8al9kIUhyGkzcDq42vcqTxAlWxGUq8AknOfMOdBlb3kAiSaopMCxKWMc+2J0o3sCjpkP5dcUgEY+aKIhlHPBazMluZJIJNO9Y5ztHivBUbxTSwSj1WlxLMwOrFkGxubr3sw7K/LH34HY40tD1YpZAIFjoOVryt1fg9W34PH2o/MI6jdX3T5s1GIrirRsTcZ+bijsV3GH//+R4/d62jvxzUywhIOIB/y7W+Idx2dOpJUavqEsSgEATP6cOD3cCiGTwczEmmCj6r++026NIMOgDg67c6Jjl+4lDJ06Y666LIjuwMFgBsbHV+OMn6vbYhG5SjRNCL8VRoJxfFlJ142YNlT+cVKYmgkDSwqgknF2HJurLeU+JgScRMZAs/mNJ3KAzW9i0Z2+PGYPUl5uWqBwNL1pw3wLHfCkDCNh6t4sY40niBqjkdWtBicdkhc849WN1BIph6TpnkgfY0u/qMBv7xD+O4omUzNR3gMw4WIRGsIYZ/O4OVSSLY1Or0Ptnb4mCVeqwuJZiB1YthjyPiRSZof1nqhRZHGpXiOakUEsGCM1gJYrIjVwCq2QApjwzWLCzCtEkLsM+V/TF/7XwAenDh++beh1/s8QvXOvpX9Td+i1XbHHuZUvUN5bejM7nnu5bTpTMcxxksVkSKZJRX8DCX+TRweZOZudWHPZ6C/Lvh2O/h/aARF+bLyQVN9mNbgVYUYA0/ypFuU7vzw0nW77UN2cAot7IVO/C15fqZRLA48CIRtKfzihSbI6Qkgh99Zvyta/VyS9qeKBGkOQFQKMaFfR9kRokgwWA1EPPkbfxAZIJMcVahQYO62erwRoK1ESro3wFZlbFw3ULsitK91dE88fK7tlBSWtFdGaxUvkweBO1pFAXA8OHGcVXrJmo6wF8crDghEawlbmki7h57jWpgdWx1nOttDFapx+pSghlYvRiyYOXiMzm6oEm4RN650tZPcq7u90iJILkRVq4ACCcXUoYK/RhYLbt9i29P+hHWduqOKPpX9cfbv3gbF+xzAbg0eop+NQOM33xls+tHZRB2mAwWEXOnKq4/7Mj6VQgRxjeNUSINLBV8Xg0sGmM2aeKtAKfhi21fYMP/XjP+lquBRduD9R0/zpFuY9j54STr99qGbKAoAAIR4LcTcVvndDz7zbNZ188kgrnXn47Byub6JF5/p8NKgy4RlMx3vMumMugJEkFVVm0GFmUP1ohhlDbZ9kZmkggS964uat44bxJBs/BKIsKw1GVdlJRs44ebgXXVO1fhyCePxGHzDrMskBj1qU7GbtDX/83YTtXusKObuGknJYKZ4Hi/Rowwjqt25kkiKJmGFMlgRV3iYHEcfe9YU4SyAN3LDCy3sYPS7XscmIHVS6FpGhTO2sMzSQRpL5JIiYMFu6tY9EyJYCxhGliaXGlhsBJS+gpp7aEZsLIM4OBboQX0vRd7Dt4Tn53zGQ4bdVjG9vWvG2weVLW4yiIGYAtiujIQtcR+j6rkxC4CGZWEq1mawfM5ZhrHKzEpb57oUuXb040XvzGOw08+avz2JRGkxdaheSbjnYVtijc5zpH1e21DNpBlAAOWA1W6RPW11U4D02v9TCKYe/35lAgqqgI1Wd4WdRQEAaisbUBqqA4r1rG1J0gEIUmWPViVfIez7wSd1IbdwPLjRTAQM2WXKpf5QrrqTAcTIcVsi2ybcNsNLA0ydSK5ePNiAMCypmUO2aeezzk2Kbb9dzQodgOrh0sEFQXAhAnARx8Bmzbh7ZMfoqYDfEoEiecqaLXG71il1YtnJsOwSWpznFN5teQSuVJLBIHs9qd2NzAvgr0U9pV6ILNEkPai0AINKxSnAJkmGjR33F7ylYtEUJUrsKf2FZYmj7XtdAlZpvYoinUlTFEABM2JwXtnvoe6kNNLIw39GsxVX7WqzXXVrj5otrW2ot74XcUFAYQRCSBpYI2itl2WgedxMhQISCCIbzEFwwvMYCWIe9QVM/utLycXTz0BhKzn5AFWT12KAqojl00yXdpTNAaLcB2/ftd64zeTCBYHhZIIksHfoQQgigBfU4sqCQgHgS5bfKSeIBHkZMnCYB0kLHKOMTQ5r28GixgnonUA9GMvDFbrsIlAh+4oKKgFkPIOaF+kSXDWRuzFfwpVPd8xASf3b8XluMWRCQB0iE7nGKpEdx1OQqHsweoODFa2EsET//1z4K31ukzwySchp6a0Mx7Gv3euw/HxK1Ab0g0kPxLBRJ9aIBm5JBbYDYC+oBcNhaj5XIMMw2kUq0LvYrDSzXW8GNTdGczA6qWgbdDNJBGkrVTQJIK0FcFsVzlyYbAKHgdLMq9dkysxRF1jGFhKOL2x6tYeWTZCXRnHg4RNSLkSqQ3WUvPRQDJYUlW766pdjWjK3WqrG4zfVYL+MYkEgFAkPYPVggH4J84zzg0uMIOV4HkgKUsMx8x+6ysOFs1N+94zrWlkgOdjsC+2beToz7docbBEc2K3oW0DUb9mTeelLA/n8lFOPle881lWrvXnUyJoGZeVoF5WdTVqEkkDy+ZAqCfEwYIkWZxcgJedfceDgZWRwQqbiyJTo9uN3w18U0Z3+mT9IXKvrW0fszRqBNBmepet5Dshy85vE1le3O4xEMD2oHNfmCxnNrAcEkEx2i0YrGwlgkO3LgG+WQXU1ADBoF7O6IXACefg5Vbgwc/74f8d+P8c+TIyWKNHAnokFMSCo5AysOIKvc9R293RgeaQ2QFFBZAFQOllDJbX73pPBJMI9lLQPljZSAQFwflxULNgsNKtcnjNV+w4WHEiDpYqV0Ej9mDJGTw+eb1eRTGDcIoq0u65sqN/tbkHK1bV5bpqt7RuinGuts50jFGVXEVVeUCINjnyuR27ncsEP/ckIZhDV5iQzpAxiDKBOmmjuH4+gX/Jka5JjCFO8WxWtDhYBIO1rWsbokljnzFYxUFRGCxVZ7BSBhbgNLB6AoMlKImMTi7kZoq3WtsCSaY2dna1Gr8Hxsz3vJp3svt2yMRzCWnmCpidwZKqrIGHaTG9AOtzpo0jNE+8ikKT41uh8r3JyYWG+s6k18CkowtFAbDvfUba71q/o+TzwGARhlQQJruYcGFNqe3esgVNSSVqPyWEimSX6217sLJdPO8JYAZWLwXVwMrAYNFeFJ537rdSKHtWimFgFd3JhWQ1sDhiZTObQMO084oCyMkJXED1F7G0X6Upd4tUOjc7p44X9j/SOFdbZ66cVgVNmYoa3eHIl4IsA0HEEUQcSLprz6eBRWPMyBXvLmJl15eTC8+Bhulfgs0dmx3nSiERBIDv23U9i0NemgZuGvhs2s2cXJjIicHabrLJeyrfGAxWdfJxh219sSc4udip1UMmrkOjeRHc4HSc5FsiSDBY1VFCJkCpz1EOyWBp5DhvkwjaY0m6lJ2JwaJ5LVRlLwaWXSKYgCQXZrNLPg2sbBiserQjmJJNNjcDf/87Ji+8AJhoOgPZEd7hyEdrp30eQT7HCtU0mhMx6365VD5qu4cORVM/XQUysHogBF7vN118Ra8ysBiDxdDrQDOwMu3Bor0oNAaLZmBlSyOXtZMLgsGS5RpA885geb1eWYYZeFTz97qSbto7qiTIMWvhRl3EHq+UXh0Aqoh9AQrBYNEMnlvwR8RRAQ08foanCu7kQiaiP4YJA8uXkwsPDJbu5MJ8lv1Ec//bRoqr9qI5ubAZWCmZoJ/JfbbvHA1ejCfm5CIzJMIzaUhVLRJBAIjxqqWP9gQnF1HNtvxPkwhSxlP7uYwSwWib8TsRHUTUlzkuUd/1i43fFi+CdomgfdGGl6hl2/dgOdqdLYNllwgCiFKc+eQDpXZyMRzEAldrK/Db32Kp9ADAmw99R5dpYPlyckEYWGNa1xq/tU2rqflo7Q5XiggnvUEOHDQGfHUfAEAT36/k7E02z47mhMtLPsZgMfQ6WKQoSWQjEaQxWGqJGKyiO7kgNjTH5D4WN+12+YodXq9XVVTDw1ZA88dgkQbWmqoGqGG6i1mECAOL2ONVVWn+VqMtrm1UFGAYzBgtt+IPBZcIysSkNkxMPHw5uVCdiZT33nXWTfTn0VVDjd+bOqwxcMj6vbYhG9AYrJSjCz+SsWzfOa95mEQwGwPL7Mu8IuhlVVVZXEWHCec6PUEiaGdrNIEiEaSMp7KSmcGyGFiV5sv5QuzstPXZoRFjTEgLmm2wGUdS2PYNdWGwLBJBCoM1JvK545yqejCwKAueUSlzvmxQaokg+c3B4MGQeeAh6xZaNIXNhUFfTi7efds4Ht5m7teTbM8qXbubI83Gb5LB8sKYFhr5lPoV8zvT3cAMrF6KfEkE2wWntyNFoExce6JEcGBf4/fzyhmASmjzZecKJAkv16uqQAASEoaB5e91rQvVgUuuDn9WNQoyYTCl6uKgAkFzU7aFwao02Rop1uradlkufhwsmZjUhomYMTkHGg5bvT7pBpY5GRpTNdz4vam9jAystvW+68/nh6+YEkFNK72BVTCJIOEemlNFvSyeR7VC7Dkk3Hr7kYTmgkJKBBW7gcUrFAOLwuj0qbceZ5IIysn7Fq/BSnV3or7ME16FWEwLcqaBJdn3YDVts2b0IBF0yAoBAE6HForqXMy0Q7PvwYJVaZFPlFoiaGGw9t8fr00Attgc7GYtESSkgJWK+V23P6t0zBtp3A2sHgixlxpYTCLI0OuQL4ngCn6C41xvlAjaAw3LSvoKvVyvLOsGVmq/kV8Gi+M4hJTkPixbHKzUJHUivsPF235lnLcwWElJAwDIsfReBEkDSwNXWImgpFk2xXdBMrQLpJOLTIEMvQQa1iWCZroxNaaBxSSCJoopEXTbO1ZsieCxeA234nJM/ddTwIYNxt9yMbLJ+Du8Ihpl1UybYZzvssVD8uM5M1sUUiJYKbdajjWKZI/KYO02ImN7LAxWSqGRqIWshcCrqfqckkRHXaQf0Toz/IU9AHLCZmxzLmVnkgiqvNPoUjMYWJoGQHCmiUqFMbBKLRG0MFgHHIAH9iYSJXTvEhEpYrwvviSCqnn/Q5oZMy1hCwCdzjBs+uID4/fAqgEQOdPAKrU8Lp/eAJlE0B3MwOqlyBeDRYsRFBaCjnM9UiJoMbBClkDDtAkBCS/XqyhJAyvFYGXxuobUpIFV2epgxwBgEHYgEjQnBSSDVU14FNx+6GzXttsNrHwzWE7ZpIZOwdx4HK4OABF9xZd85pkCGcoaZSHA5pBdZ4sIieAKUy6yqXmNI3/xGCzrhz7FYPUGiWA5SE4UBfgB3sXluB0TX/g3uK2mc4qcJIJk4FpFNMqqmb6PcdpuYPnxnJktCskYDpdWWI5VCoOlUBasaB4/7bAYWKnvW7wWEgIIGAaWsz5HXRwxLvQdZZ4fPtSSTrIZWK4MFiElpEkENTivd8G+l6Zto6IAvOhkvmIenGNkg1JLBEkGa+0ewzF/nP57yK4KYPVc42+pfVi+JIIy3YugfWtFunY3zTO9GQ6s7I9Qs85o1fGtRR2raMiJweIUYMRHQCDsL5/P+noCmIHVS5GNm3bqigPFJbskOKmDUjBYhd4AbnwY5RAADhrh5II2ISDhha0xDKwUg5XF61qhJo2kYARhYn9Hqp7B2I5OInaidQ+WqbfYOXkqtY2Afi0czGeuQMgrg+WMicNjG28af+Ff/kKPgwKfDA5lD5bdwJJlfYU7hSHfbkQoebix7XtH/qLFwXLZg1UqBquYEsF8tjtbyDJwDN40jrmPPjJ+5yYRNBdtODVgSACrA+YqOrkHi6yvkNefT7bCDk6zGhhUBsurQxp7muQ5TdPQFdcN07qECgEKxOSrrgqZnVwohIEVImTxdqcWEmf99tGuBQCkiGkkx9t3Ov6uUBisWIYQHbIM8ILTmIoWSCKYzz6RjUSQZLAejJvv388+qwK6zBiQKameL4kgYUgFePM7SDJbZD4qg0XI6gfWDUEwrpfp1ieKiZwYrCP+BPzqIODMHwDQsv7OMAOLoceCFmg4k0SQzmA5PwQa5eNQCgar0BvAY636yliVrGISVmCTOtr4W7i63i1b2vZQJYLJwTuoefj62DAwYn7wE42POuoZhB3oJAhHyx6sADGRIPYEeJEIFpKZ0A0Ms/+Se1J8MThHH+k8p1EYLMIrVaC2D0Ykt6xtimyHHcWKg1UtWCdlrdFWdMY7y4rBKpREsBxWRBUFmISV5okt5mQvJwaLkHPxqmgEv60hPHr2NAaLg9UoWCLsSdmDRQmpYFsgSdfGiBSBmhyjZsTXIIiEYWB5Y7DMcTQkmuy53chL2IbodfxIatkSkS5OcUKhchRJJMV1Owk3BiuuFG8PFpBZOZCuLD8M1t9xIZ7d61bEf3cBHl31HAAgoAC/XdoFdJnhRlL7sLxKBEXRamAFefNbLml0o97RbkVBk2ouWA+sHgghKfFXeK3kxkVODNaopCOoYUsAMZ71d6bURmYxwAysXgoqgxVrp6Q0QXtR9hU+dJ6kGF3FMLCK7uQirk/sa2UJfbETy9U9jb91Ngx1yZW+PXYGSwVvMliBCnqmNKhPmPRU+45VjnrSMliEgZXQzA83zeAJEm6FC+nkwnAVSzCn5ITTzzOXB/Z3nqNJBAkGK9CnL0Yk1yE6lDDabe9MsSSCgwXn/q8NbRt6hZOLclgRTdfunBgswmkCRzjNqSGcXHTFrAthfhy7ZItCOrngYGWwYnzAOcZQvN7Knyy2HKfrX6T8vSYBrMZ4aEnnBTFezDxWJDds8SoQ4szZtGSLiyTZZlTb+IH0dhHpqAYWRRkiq5kdJ8mis7JiSgTTnXeDqpr7Zb0wWDsTO4Bhn+DN0SHcP3Myrj+hHi2RFgDA/30LjAwnUBM2v11+JYL2PVgBgTSw6BJBR7t37EBTlWmUD6weCBG6gSXzpWdvcjKwgkSfFzIbWOUwXpcKzMDqpaAbWP6dXFTzbc6TggTAKpXokU4ukqtZIRmIocKyB0vKk5OL7RhsBOEM7DaanikNKjDA+L0rYnpUStUzGNs9MVjyjrXgoVDbrihAiJgkFdLJhfHbA4OVWSLoTKBQJILv8weY5Y8cbTBYgNNVe7GcXHCUzex2A6unOrkohxVRRdH7OQ05xcEi4yoRBlb1k88Zv8NtTWSWbu/kAprNAKDFwRKcUxXZFoMqXf8i5e8V8SBWYAo6kvtTO/lKzxJBUQUaNnxr1rngLfMyZNkSMNntWgArg5WI0wwsZ6axmxrTtlGWAVVw5isUg5Wv8SPdIqkdb6x+Awe/OAI4Z3/gjCPwwfATcPOHNxt/P+8z/f+BXea76ZfB4nkgQXwbRNH0FiyBHnvN0e4tW9Bkqnp1AyvpBVjmS8/e5CQRDBAGlhhnTi7SgBlYvRRUA0vqoqQ0QZcIusgWBPpKj6+yfeYrfhws/R5WyEAcIUugYVqMJRJeGSwLeyIEnBkyIMSbWvS2RIujnkHY4YnBqn7sJvRDK7XtilJYBst+TwagCSHe7KvhVcuBL78E4JPBou3roDBYOwmJiDhgIEaSBpbNVXuxGCyeEu9mfdv6spIIemGwurNE0ALCZWUuEsHEqBHG77XY3fhdQ+zB6grvsuTp/hJBW1/mJWffmbGXI5+d1UrXRpLBEhJJJUDKgPXgNjslERRVmO62AZDhOOSYU55HK1vVVKiEbR5POPOpnHNsGrd1fto2KgoA0TkuFFsi6LdfpPuGk1i3ax1Oe+k0agxPANhHGIndOvfAqzgOfNhcWPSzBytVv2UPVqDB+G2XCLpKGwkDKwAB9aF6iMnptsoDspKFjjKPKCaDVQ7jdangQfHK0BNBG6QiSgyyKls+ICSoLwQhZQgoxMocLwGKSY30SIlgktGpkIGwjcGiTd5JeDawBHKzbRYGlmBKFdsS5r6dVD3DsMXCYJF7PUgDKxIA+mInmuGUvMgycD4ewFfYEwAgIPOeBhq8rHQpClCFCHYSjlS62puBVauAvfbyZ2B9v97ZBhvzajdyxboGQyIIOBmsYhlYHM3A2rUee1Vb02Uqx8/5dMhWIpiSB2XYv5+xLrfyC4WCSQTrzfevmTONrZogYWBFrAZWoSWCpISLRN4MLM7alwfwWykSwcxOLtJKBCNtxjkhnryXqfFacBp0drTX9AewFZJaCTFAxMEi4iIl4mFHvhDflfFa4gkng0ULdaJQ9mVZ/q4AEJ3GVLkbWOlUKClEpShOev4ktMXa9HQb90PD99MwZNQgnPWrfmio7IvjJhyH36/pj8cfBxDeYORNMVheDKxUmgThxbFtxIHgFBGaIKOzwZSVk/H40jFYA4U6cBxnSASBlIOl0vEbuRhYfLDDXIb0sAerHMbrUoEZWL0UbgZAV6ILfSr60PPQshAGQHUCaKtMnU8Akjkp6GkSQU3TEOdMA2snQpilvodFyb83rPs4bX6vEkFyP1s2DFYwYE7S2lSTeknVMxRbDQarKlAFgTdvot3AasAuatsVBfga0zES30MFjzhCqCmQRFCWAQESiC0pCAcAdGWOdeKob9E7gE11KY8e6WwTySLWN1gkgvZYWEWLg0VZqd7QvgFCnS1dpnJ8nE+HbCWCqbxeNrenqytd+YWAogBxQcP9ewODu4CTiL/lJBEknDnwICSCBLMcjtL3YBXq+gt9vznOagAMFzZ48iJo99SaViLYarrRRyJ5LxWTwcp0LZGA/mGT1CrLOEwyWBKFwZrOf+4o2+5gisZgbQkMArDBck5BegMrJR2228JxpTB7sIopEbyw8UIs3b4UADCmfjz2evpsvBA/R//j7n8FLjrTWnfXICNvag+WF4mgYWCNGwPs1PPJ9cOgdYQAQUaC8CZJOvOwt1vdshnNyc/nwJAuMSS9AOv9xv/3PF/IWiLIqVAD5rdHELqYRDANmESwl8LNwErnqp1K5RMMVg25B1dIZC1Xykc+AIaLYy/l+IWkSkjF/U1JBAPECpXig8Fyu15FASbwy4zjwOZtvtsZDJoG1i6Ysjpd1hfHALQYDBYpDwToDJa9jeTxJozEdnEYWjDA8/1ui7XhjJfPwO/n/x6ynFlmpShAgLdOGMJBGAaWLycPmjOB3fGFogCDBJOlEmvrrRLBEjFYNEcy63ethyhq1nSZykkiV++HtLLSMVi51JfPdmcLRQGenQZcNAc45SfAt4RXx5y8CBLKAoGYgNVUmO9ml83AKrREMOf7/fTTwLBhwC23OP6kqgDPWxcLVF7NmcGy35POXabHTy1eh4HYgbHqBgB0lsnRzpRxowQgEgYWaSxJfers2ageCh0MFiUQcAdf6ThH8yxIQlGAgOiU+ScyBCjOFoV+n1N4+IuH8ehS3QNuVaAKTx73EsbECS+qQ4Y4y5IrURPQ3xk/DJYhEWwwn2UgVG2ocSQi0HC6drdtW2/sxxtYq8v0RWK6rRXI6PUKmrTR0/ciYF0MCIiZ351yGK9LBWZg9VLIlOjxQHpX7eQLEUqyHhqxqbaaHP+FhJHGntdr2X7z0Va/CiWfIYMMVySdXPCc+eGlTd5JeLleRQH6CM3GcSDsf1CuFkx3tTsFqydABQIOwodoqdaZRtLBBeDdwNKZtjhw1iFQL5gE9Fnv+X4/9fVTeOKrJ3Dn4jvxdfsHxnnyntglgoLNwQPJYPmSCGpOHTzN9fNe/BLjWKyps0oES7QHizSwhORlrG9bD47LzsDy887RQD6jVFmuBpYQR6C/ed/8rmTS6qLVV0jIMvBBX1N+u1YwO0VOEsFd5j7JGmIyV1Nh7gPsihfXi2Cu91v7+c+xNroV6pVXOP6mKABn85in0Ayslcud7UpjYKXamZI3dhKOQeREHwBAddJTnBc37WpKMqaKEAVTIki6j08ozkUPWtl2eX58QAPsUGmhTnglrQ90RQFU0ZmvGAZWLu9hOhXK51s/x4WNFxrHDx3/EHYfNM0SAwvDh1Pr7l+ps1h+9mAZDBbxLENCyDCwZC3hyENrdzNhAA5s0NtHMlhagZ6JV6Ta7nuuFbQa8EGh05dEsFTjdanADKxeCjlBN7DIzcCOPJQXhQzCWm1jsNwmyV7L9puPZmClVkzyTUeTBlZI0RksgdgjpbhsxE3By/XKMiDwZj0BzoeOKok60WRkdhGyMlkGFIj4CAcimjyficFKJxHcZ9StwG4fQuu7Cpj6vOf7va3TZOWaouZH020glmVAtDFYsQCgdOq0ki+JICgMFiV4qUbGwWroh7qjjkNdUl5UMokgYWCNTX7LO+IdiKhtnuvP9p2jIfWMOA4IBOjl6BITBTh/OqLnjQTm/A7g/O/Xc5vYFVsi+Kb4A+NY4sxG5SQR/OIz4/e0hGlUVFcRBpYtDlYxJYJ+73ekaxeOPw0YdxFwyv85/y7LwOvCMdb6eNU5xjRbPScCgOwSk8jeTkUBOjvMhSop3g8SAgioqfoyB0tFMhiyoAKBAN3Aou1rVinX4mCwNGfltFiSCQFAnP7dBpJjOs2LoFp4iWAu76GboaJpGn7xn18grujXfOE+F+K03U+DIADDsdlMOGyY8fO3i3+KbzAVX2N39K/UFxfbYm2Iy3FfEsFUnQBQJcVRlXzOKjE/Sjf3aLr5auP3gD76Qoy42xjjXLyEPi6MUCfIYq4VsO4zDIr+JIKlGq9LBWZg9VKQ8VYqie+CV4lgOTJYNHlBsRisBILgSO9SlMk7Ca8MFsnWBLNwclHF1xsMx86gZOxWN+oR49CSHqtyYbDOD91uHO8XXOj5fpMu1rtkc2XeD4MFAOFwGwCfDBYoDJbNZbKi6JOkFMRABfDqqxg5ZCIAYHPHZqgEE1YsBksj9j5OaDX/tj2+wXP9+WSwyBVgt3dOUQD0Ww30/04/sd+9wEmnIZJm0piuLqB0K6KKAkQE832PjR1l/M7JiyChLOA18+JqqvsYv8OSVaZTTImgn/vdlejCsU/MxusT9OPXJsAxq1IUWPY4AqAGYrUbUwCdbaa1U5aBToIxiCX6I4GgEWhYETSLPJmGoKS/ZMPVJgREUiJI7MGiBEPWKGycPR2N+QryTocZCQFAzJ35kGQVmuB8KAmtvBkst294a7QVK1pWAACmDpiKO2ffaaRJMVgqOItEcFjHSkzFt5iMFRhYaao3msJN/iSCnW0AAIETUJtoxxBF//Zpcpcjj73dqfpSGFitM2niCHN/b5wrDwcX/hksa78MCP4kgozBYugVICWCDcScMp1EkPw2BpOLeOTqfpXFwJKMNPa8Xsv2my+dRLCQDNYWeQwADgIhEVQz7MFyu16HgUUyWC7eHdNBFDkEI7rhtH1gg1GBUU/QNKhz2YOlEhP+Q/h3PN/vcMIcsMOS2fe83hMjb9JLmK84UBSJoLzyW+uxDKhEH0/tvxhRNwKAvtLZHDZXx3ORh3mFvlJttn0iaWDFNniuP9t3Ll1ZGQ0s+96xac/j5Ffmph133OoCcm93tpBloFMwA38n9t/H+J2TRJCYbHMwL66m2ozF0yVZJzmFZrCyud/tsXbMfmo2FjWb8tqEACBhff66ExmbRFBwMkoyJeyF/Vy6MbVzlCnnfDN+ss5gEdkTcvrZXiowMK9yCJASQWKcl7ZttmeDyitOJxd2iaDiXGAYwG9ynJMyGFgRQpUSIuqUCiRHy9d76PYNjxIBmKcMmIJg8r6TDNauwEBL5c0V+rgsQsFAzvye7Qjv8CcRXLcaABBMKOBCQQSTf5cIJxfpJIJWA0s39EjvzJniZBYSOc21bBJB0QOD5WWu01PBDKxeCplgsPoSBlY6iSBtJWKNMMI4V02Gpy8TBqtQq7txwkD9SD4CAMATm58VpB91vNDmsgyIgvlwsnHTLopANKprwHcGE8YNkWVgfyzG4aH/GGntDFalaG60ziQRVETzpCI4V23dQDJYYYXOYNklglQGK+KUCGbsOzQGi+Km3cJgJT+SKQMLsDq6KMYmXkUB1hLv3cQr7zJ+b4tu8Fx/IRgsUXSX5dIm0wDwwZZ3MOvu6djx4Zu+6gJKy2CRxiLJQuTk5EImDSzz4iprGpDaXtdl2yBfbgzWzuhOHPnkkfho00eW8yoPKFEr+6bfR/seLBqDRTGwxo2xHKdrp+W7lqiDhIDBYAFAXMog6U5+2gSVt7hpt+zB2rHVns2Tw454q1X+qGm6TNKOTAxWlAi8XE8k664MlkUlIpqLGbwqYzB0pyVNQXP/FQA0hcxxcYhsPqemcJMniaDBYCUNqaDKWQysBPFcyDLSM1hOA0uhMLLFQi5zrcqAta+KQiTr7wyTCDL0WJDuZftW9zN++5UIbhPMgH7VpNvRXuTkArI++JPepVQfgYbTSQRJD1vZGFiCACCi78OKqWGj3YoC/Bb34q7guUZaO4Ml8IK+wRcZGCxJhUJIUxReg5JBcpNChJA7hT1KBO1exwCgK6bnzVUiKHPpDayUi+aR9abcg3R0UQonFxN2m2H83hLZ4Ln+fBoq3hksYiK74TAIEX1v0ZfxDTjiX3OgbHGyAG515aPd2UKWgSOERuOYNLByYrBIdoMzL4476ihUJxnlcN8aSx7yftPiVeUKP/c7KkVxxBNH4LOt+l6yfpX9MDpuMuFSzMq+KQqwF/+J9ZxXA6tvH0dZtHbKss3AitdCA28xsBLpGAVNg5QysBQe3HAztoN02CHm74TTkKEZWKQRDQDx1h2O6yAZ6hSaKgZaXePaECUWTeuJIVLSCrMHK1/jhyuDJZvtJhf7uKYdEJMS/CbR3H8FWA2ugVHTq++OLp8MFq+/SEGNtzJYvArNLrO3tRudnWia/5LZjpSBJRPPtED74rwgJwMr2GI5J4rhzN/ZMhivSwVmYPVSyJI5yDeoZq/36uTCoHqJFenqE4hdzEKiLCSCxXBykTKweJ4IrJxhD5aX65VlgCcCymYTB0sUYRhYANAaaTXKHoYtRgwswGlgAaZMMDJ+FE7DM442AgAnS4gTK3gJQT/nBSSDFVEySwRlGdgomJp7o5w9pwDw6+SCwmDZAt7qEkHCfTwvApddhj7Xmy6nSacDxXNyYfaL8f3GG7+3Rr73XH8+pXa0PViZGKz9t0r44tEuI67Y8oHAks//67mufLQ7WygKUCm0GcekzCtfcbBAMFioq0NNhe46uku2skBkfWmczGUNP/f7xRUvGvGKBlUPwntnvoexkmkQ2g0sWQbG8zZZLsXpBNXASuPkwiERJBcOk3GwBNWc/qRjsDRZNlxu8yqHYK3pcESuI66NEjCY6uTC5sE3btuDpSiATDGw/jfwGGC33VzbSRpYfYjPk1QgBitf44eboeLGYGGL6Qxpe8DKYG0n4j4O6TCf6Y7wDn9xsJILbSkGKyW51DgYHoJd5x7t7Wha87VxaBhYH39qnGuQnBLQYiGXuVYosNNyThAivpxclGq8LhWYgdVLIZF7sDRz8PLrpt0SaLjfYDNBmUgEi8NghZL1EwxWnty084QcLhsDS2ewzP0bLc0bjLKHYYsRAwtwSgQBwsCChA7UO9oIAIIcR5z4wEgCwFM2fNNA7sGKeJAIKgqwhSf6Waqcn5+it8UPg0UZ/WgMFrmaLPIiEI0i1GYaVfmaXHsFyWAF+SAG1ww2mMbNXes9119oiWAmBmuW8hH2aFHwi6/MNOG4M46PW11AaVZEU164OMLIlR9/1PidrzhYPCosf0stgNjH6ELLUv3c762dpkzur8f8FVMHTkVg8jTjnESJM2d30x7neWffoYynXp1cKArQ+e2XxjGXZNREwsBKpJntqcRipKDyCBI3nDSIE5R4ViqFjZNsjnTiqtPASo05pFJQgdMZBomYi4Eld1OJILkHqzJAxAXbavaxHYKVwSINrMEtZn6vDJYhESQYLD4UMBgswGSrXece8Tiaqs3DAdW6ysfiBVhL/ywLiVzmWsGg1cBqFyqL+p3pbmAGVi8FuYrWt9P8SNAkgoqqQNVU6osSILwdVQeIUaUXSQR/JT8FANheO8U4t6NhjCMPCe8SQXMgJjdXe4UgAHtFzNWy1gU6Q6DIGoZiq3cGS4oY6hT7veSkhIXBkniA12RPciWSwYq6GFh2iaB9zwZgGmq+DKw5s53neIqBZd+D1bevZRM5uR+vWAZWg6DLioKyBv6V/2JUXJ+AbO5YD8ApYXErJ4WiSQSJybSgAgp48PXmpFuiTFLd6gJK88FO1SMJZl9JSPQ+4HeVlpQacpzVwOpT0QeA7kCimJ4r/dxvcsGkoS0OTJyI4DKToUpwVmZGUQDO9j7vFOq8SQQ72hxl0dopy0Bnlz4xFFRAk/XvFK+adHUizYKQFDcZQ17lESIW0ixOLigSwXX8CKeBZevjdi+CsgxISQOrhviTymUwsGT6HiwJ3V8iaGGwTjwRw2vaMAXL8WLtmZayLAzWNjMifFPEmxdBQQCgqvp+N+gGliByCBDShtR47zr3IAysGlU0vqEiR/qgL10crFzmWmKw3XJum9iPSQTTgBlYvRQyIeHq+505Ae+MtlnSbWzfiJF3jcCkeyegI2G+XKkXZYpgUuGk1znwUq+Jg1WTLDxRZbqFDYdqHHlIeLleWQbWCOZen8BAJ3OTCaIIaBFzn1xLZ1Lv39aGKkS9M1hSxFX6RWOwApA8DaDkhCyqenNyQXOUkJLp+ZHokavioeQHlCYRlHnzZIAPAA0NCBFtIhmsYkkEQ8nAtqGYBHz2GUavbwMARNQYUN3sqf5s3zkaaAwWVYZDTKYXKnNwID6COnGmcS5BkVm51QWUZtN0qn6LLFYjDMccDJ4E6QCBNLCiUfRp1fu4Bs2yEFZoz5V+7je5YFK9eQewahUCW7Yb5+wuymXZyWCBlykSQcp+yW++th6nmch1cnodNQkOgP4+b67ew0iTkNxvnEwYTrwqIEh8O+XvTcZYkp17QyWed15LwCq1iGvW69cXdbRke83zKtKrAlwlgii8RLAQcbDIbyy5Bwsch7BYjxWYgu286R0SALbxJqM1aKO5X2hHlw+JYCJhGlgQIAiAqBBsZ9Igdp17EAbWQNWcE5EGllZCBiuXuZYYsBpYEOK+JILMyQVDj8Cq1lW4+p2r8U3TN9S/y5VmT28gxt+OcKsl3TML78bW8Das3rUWK5v/bZxPvSip1X1RAUJfm4Exe7xEkDAM+KS3ohDx4VQzeAnyymB9x48zjgMjRvlupyAActQ0/FqSLsXFHbqO3SuDFVfi+AP+ggpEPTFYXg0s0slFTDMnjekYrIDglJGlJna+GCxiMluRlAvJPCyeAhQF+Jw3J2I8xwMNDRbJSCkYrJSEKKgAmD4do9qIBH3We6q/EBLBzAyWec8/Vg/Fp9gPIuHMgSazcqsLKCMGi3jfc5IIEs4WOJ4wsOJxNHy+wjjcFduVl/q8wM/9JhdMqr/Xg4gHCNvI7qLczmoCAHjZyWD16+Ooy76H0nUiJ2noFPU/VkvmzWqumWS2K42TC5KZ4hUeFWFznJI+Mx10UPsu5VokG4sXp9yTVN+qkszFncnh94GFC13bSY5DMcHcq6UUyMAqpkTQwmDBfREnpoWwHXrcqbr1Ww3ptFc37aIIIB63GFiiqDs3SSGTRFCJRbAzaVcNAGFgkWFWNH+x//KJXOZaQtC2hUSMM4lgGjADq4fi3NfOxV8++AvOePkM6t+lKnPA6rvPocbvzoh1heL7/z5l/O7/tekZJ7VZMbUZN6BxCC5cZGa0Obnw8xJmm6+YEsF41JzkpwysoGg2gLZngISX67XL4YJZSgQTEXOVrzWqS2UCzbqOnWSwaoJO1o1kJf/AXY0BaHYaWIqMLiLoasIPgyXRGax09+QH/AJnOVdeBshyzgaWwsHiKYA0CkROBMdxDomgmwe5whpYeuEpA2t0G5Ggwb+BlWt8kmwkglB0qZU80pzoJsa4b+K31wWUJq6KLAMcVD0uURJxwsDKhVGK77+f8Xt75WTzD9XVFlaiLdZGra/QEsFM99vCYK3TlRGW/SubNljS0w0s59ghj7DutQGcY6xbf9Y6Oo1xropw3S0Qe2LSSQTJkCacKiAYNL+dpHSRxmBRjUW7m3YbgxVPKEhtDyMNrBDagR1Wj4MkogTj89mwnwGS3s5iSARzeQ/dmCALg0XuwUL6MeYGXIMLxX+Ae+RRDKrRja10e7A0zbpApMZjhlOTFIMlK+Z3kGZgkWVHIuZ3rJZYPBJ5gsHKsJ+ukMhlrsXZ4mBByGxglXq8LiWYgdVDsaJZX+1ct2sd9e/kIF9facZY6YxZDayNpsMkbB9isikmg6VnDKgcgqQbcSHesyWCccIbVtLJRS1HePyL77RnscCrRJCcfGQdBytielpqkdr0spooDFYaiSBgumq338t1wnj8UzzLOG4VaqHCKY2xQ9M0y4p3TPMmEST3paXQlegCwmHvEj1NswQVDmkEg0VUqD8DvSBjQlYGEkGZZLBGjsSoBDEB6bPBU/1+37kNbRssz4uEV4lgtWAyL/1UfaxRBxJur/s1pG80rP2hVBLBACSLLDbhYmD5lggSUjhOICTXgQAa4uZk283AKiuJ4Crd0CcD+krr11rS22WjAABBBh+39jO7QwvAKRt0lQi2NCGSnNhVKuYfyPE0nZML0h38N+qeCBKFS+QeLMlpYFXxHY77ZJdJxm1qhxjh0bBKMqdoEo+0cbDiRP1BPoSUd9tCMViFlgi6uWnHtdfi4shN+AmedxqvMvAALsBjwXOBY47BoGrdwGqJtIDjbeN6EqTnTUEAJGLxNGVgNSo/Ms5lkgjGYibDWUF4FhbLxMlFLl4EuYDVwNpLXMwkgmnADKweiva4PnmxD+YpkAZWoLbO0Hp32Ny0bwqZg3Nr/SDjd+pFsTBYxADCC9GeLREkJgBc0sAaFt9onOvXviptfq8SQS4PXgTDEZMVaJX15xtsThpY5B6sNBJBwDSwaB810m34//j9sAXDM97zhJKwrELH0Qkk5TPpJIKk97YUwkEAnZ3eJ7eqCnmb6Y0qNEB3/a7UVls6koXBSk3IGhpK7uRCEgkDKxjEaMKpitBntaf6/bxzr616DaPvGY1x946zSHdSoDFYKW97ZLnD+A3G8SHKYj2PZnZC+4Z/Gkq9aVqWgSDMfRoAkODMynMxskkmxb6g0oe4T7uixZMIZuvkonrFGgA2iSDhMMIog3feJM7mit7O+gCAbAuF4dafI81mbLUQwURUEZPctE4uCElfXK1FqMKFwSJctqdQy+9ySgTDVplV3BaUPpow27Wp/gDdNziSgYaj7mwUudAzrm0lIOtGicyVt0SQ7F8ZAw1rGnDbbfhj559wDW5wvF8WqR9MF+kaNLRJLY509t+iCCQIT5fBydP0shTnGOUqbYyZRkglTzJYFleDKBXIdgcCAMc5z7vlU4PW95IXnFsG7Cj1eF1KMAOrlIjHgY4OBDrdY09lVawcNwYnu+Y9BdKLoFhZg7rkYadkXTncGCACwRKjSGrlI6UVD2icxQAQhWjPjoNFDKKaog/+wUD+42D9iDf3vQVWW1d/vUAUgc6IyRC0QH+eqqJhJxp8M1hVcMa9UBQAIvHBSK5IZ7rnYYnChiQlCOniYHEUBiscANDV5X1yK8sgZPUIVeqTIxmqJZinLAMDBN0YDaQ2wvftW3IGK/XeBVUAPI/Rw3c3/l7ZZ4Wn+v28c2+teQsAsL1rO77a8ZXj77Q9WOT5VLlkXDeoeqUC/BlYbhKXYjJYdgNLIvYD5WJkx4kgtCJnlQT3IcJplIrBynS/LQxWs25IWCSCNicmJENMQpNt6agGljuDRb6HkZ1m3KSganq6nfH9G8ZvKR2DRdatigi6GFiJqZNgh0KL6dW83XKcsM3CYoRbeI2vA6/oDzghIC2DFSO+6fute9lksApkYGX7zbbDlcEi3bQn91Jh507jHmzBMPpiH1FOisECgJ3xHY509t+CYGWjgxXVelkUA8udwTLnBhWErN9qYJUHg5UubiEt39ZgvfWk6M/JBZMIMhQPkyYh0L8/Dr/wwrwWm2KvgDQM1gbT+1Hgxf+gNmVgERHGO2LtaA+aH7EEsTHTYLCSPSig8RaJYI9nsBLESk7yQyYSo4fKOb1ekfDKYKXiHQFAQMxuD5YUH2jEU2nh9Of77UlXox924l/BY420XhisCsToe2vIiXNS1pjpnpMOLgyEkt7x0rJ6FAMrCKCry/vkVpaNvstrJltgn8gpClDD6+9TIJ58l0rs5EJWNMiGgaVfRL/x01GdvC1cFnuwMr1zpOFDG1NoEkF7WYoCcLx5r7TkHiwhTkxS21rTN9pnuwsBRQGiqMQOwZQzxokFlVwYJXmjKemuse3NaeDMd7HcnVwEONFgriwSQZsrc0UBNvOD4IBqXeGXVyx3JHFzcmHvg5H2bcZvUTPHOAHmy5rOsLcbWCFSIkg8d9pipixQ4mBJ1rriFTavgoSXQgEB8Kr+nmQysOKK+be6eBRjZd2wVLjydtPu9g23MFiXXAZcfjnwpRnPbDNFJaEogAAZY7j1wPvvY1DMfMYtsR2WdG71k30hKAT9M1j15ntaWWPGoLQoUDK43C8k7O12i1tIy9cWsM5BNCGR9XeGSQQZCovkhJzPc09rJ/ZRadCo+nWJGETE+gbUJg87tZgRY2XTlm8teQLt3xu/QyF9IEtt9HYaWPGiG1jpnFwAVrlSrqAZWEGLgZW+4d4NLEIyJBIJPUIQAGg8GqL6q94asBo/aj+dFQvwAfSt7OvI78XAmhD7GtPEz4lKnR8gGqj7eSgGlkMiSHPTnoOBJWochOQGZPvGeVVWzXRJ986orETo2j8baRJEoNCiGFjERC61d4ybPBmjk3PuSH0zwKl5fefIa6ROJCkSQXtZigLwpHGcZLBq1640y/7ko/SNhrU/lEoiGEUVOokFD1IimAujpG41x9hK296cPrz5LpbKyUVGAyvJYFXD/BYE+pteTO0xoBQF+EA40FGOpmZmsBSNbmDZ+2Ck3WSMRK2P8Zt0cqGk8V4pEYzTYKUFoQpzP5BFIkhZeJB5532Sbc4wSAYcsEoEBS4IXtHbKWU0sMxyKmSgLsmGForBKoRE0HUP1vJVwO23A0cdZZzbgmFUNcU+WILPdo4BDjsMg5aYc5jWWBO1jfY5hN3AEgTgUOVj41wmJxexPU01QcUEMzameMBBxu/lmIBSwd5ur4vQigIgaP1ma2JmA6vU43UpwQysUiLZ23jJXf+dDUgGC6CvzsnEx0Cs72swWIA58d249ktLnvodXxi/g0FdJpPagxsAjyCxoVMQYhBFU99baomgl7L8IE7IF1RZn/gEQoSBhfTWnFeJoMXJRcDqqtYLUtdfH9F/tCS1bbIMoKINGKBPbvccvCdCFAOOZmDZ7+NweT0GCmYstbHCSkzDsuwkgkkDK61EkMZgBQB0dvqSCKYMJ0HjIHbqbVE1FVqXKfFQJYUwxMzhMvTTnxu/SQarKBJBYu9IMNWmSZMMT4KKqAA12/L6zpGTR9p44ja5tfdnUt6pJVeFBd6csJKGnBvKQSIIwMIux4lJVS4GD8mI8GKV5W8NornHZxcRTqOYEsEAsQhPlQgmvx3VsvmuBIn4fXYGyz7GpaCpNkMsOZ4Gyf7kIhEURes9aRk23PidIOIkCZqZSKYECTb+ts2UGI7TvocYoDNY1PeCIhG0O8OI2wyuBMFgDe7cDM4jg5UgygnJQGWyGI2XqIusuaKYEsEKioMnGoMly8AamM64Bm4150ItUY8SQYJFDra2QRCAcYq58BFPMmueDEPC+6FYZzLeMV4ko4EUFblIBGHzIqgKUtYSQcZgMRQWyd4m5LmnkaubgMuKM7EiKDb0NfZgAUBn0tHFxq1WBkuySQSDSJgMFngEiRVdPmlg+VodIcqmnc+UL51E0EtZfhCrMQfON+UfAoBFOqLkSSKo5YPBArAjoq+kdQX1D7qiABj2qZFu/+H7U/N7YbACStwSByvEd6EfWvPGYDlWGykTslwkgiJ4iNuJ1c1drZZ0EsF0Gc0UzAaSK8dFYbBIA6tvkh0YMwZDB5iOLlCzPa/vHDmG2FfqSWY4o0SQMErUJIPFEwF1/e7BKmUcLNLAShCe5nKKg0UwIpzNwOoTMOVtbWFzw34xJYKZxnSDwarvDzzwAPC73yEwhDBwKAwWbQ8WbAaWjJS3WiDpVwky585gkfdkx0hzD2o4ZDIHJIOlKmkMLELSx6mCxcAiPRlKH77nzEthsOzu3BVNsRhA5B6sETu/82xgxRVzYh9SdBbLKFPOP4tVTIlg5evzgYsvBirN7+7X2IMqEWxBf3Rw+l6hQeubjb81RTxKBNevMY6DW7dDFAFeITxOJtUrrhJBcu8Y4f3QsgeL4r6/WMhFIsgHrA5aNDFzOJZSj9elBDOwSolkb+NUNa+9rd3map0qXSC9VY2biNrjTzKOO+NJA6t5jSWPBKuB1YlaRJODRnDYbpY4TZwQ908/E2XTzmfKl0kimFcDSzSXn1bIMwEAgYoC7MEiJh+BYPYGVjgyyjjX+v0K/ODOY3HCsCuNc/sN2w80eDGwBCVhcVkteYyD5XUPll0iCDcGy6eBpSTtJVHjIBBDIRn3xm6IGc0kjN2i78EiDawZe+s/AgFUzjnBTJTnAJCWPVi2BRu3FVF7Wbq808lggSMYrDTe3Gj1lc6LYNyy79AtFprftTPSY52dweozeJTxuy3aRq2v0BLBTGO6wWDV9AXOOw+45x4E6voYf6dJBB1u2gFotkCsKWNKUAE++c2Rx4y2pHFjUbsIz7iCbBqpoleJIDHR59SAZS+NHDArkjrbHHnpEkHn+EUu0sQSBCOuCeCSCxESj7ReBCXC82JI7j4GlisTRLo7r6gB7r4bWL8euO02XLfbo/gE+7l4EeSwITgeADBovblw1hTeYfgvSisRJDxdBnldIsiRBlY8Ss2XAtX7IcrTwPI7R6sJNlnPCZm/86Uer0sJZmCVEmRvi+fPbaddIkhjsMhzYkUlavuYG4074vokd9OwWmseYmNmKASo4AFBf3sCVTUIDDClIKogp42JY0e2MTVKJRG0fLCSbtorfDBYXq5Xlq0MVtAWbNELjOuP9jPOtaz/BiO+boQ8/HPjnBcGa0PlELSj3nEfA6qVwZJ4QISck0QwXRwsGoOV2oOVjURQBG8xnhTSi5ck0yWC200GIU7sxyu6RJBY1LBIPIXM3p38vHPkIo19wcZtRdRell3eqalJiTTBYLk55XGrr1RxsPbgvjTGPiB/LGaCkJwJglUS3Oe+R4zfu9Qwkc5MU2iJYLoxXVIk47tSHTS99ZHMu2QzLmQZmM2/5qhTszu5SDJYogYIyYmqYpu9kBJBsg+GJXOizpMGFjHhldMYICSDxWuCJZ90kDlu0vquxgGSbP0WSBSWllykkeKmESVqArSk98guMQSccIIjr9lOs09UyEBlgQ2sbL/ZdrgaKjvNyXzlfQ/qPwYNAi67DI0DzwLAUSWCAPB9IGlgdZoLoU3hJmrfdUgECU+XISFEMbAi1HwpRBtfMdu9mdj/12R+Mwbxm0smkbN72/QzR4sGrTdcFTN/50s9XpcSzMAqJUhBaiKzNMYr2iKtlmMqg0VKBMUQ6kJ1xrEhEUw0W/OA2FwfgpVdEQII/vZi47hDqCw6g1VUiaDFwEo6uagk3LQXhMHyvwfLuP6IGdujdds6aAA+SSp3avj+GEPEUSJBGlj3D70cD+Mcx30U1ewYrGydXLxH2RQfHtQAzJ6dtURQ4EjX7IQkSJZMT5nEcBm8znRyEY8QK+TFYLAIJpk0sMjV0kIyWHYZnx8GizSO1VTQV8I7XsIlrIRbfaVisAK8lX1NdOwyGpaLkU0yNYGAdcUoKASN95GUgRczDla6Md3ioj1gGljBKtOoSVRbWXhFAap464IgAECzSQS5pIGlcuCT7yHN46e9jQAQiZrfQ96FwVJl9wVOcjzgtYAlPhnZBre+K8l2xteZjnynYgSDImoiVE1fWIsJnGcDyy4RjMruzFe2cNtbkwuD5Sa1qwhVg0QqHS3WHgBsqtANrL5RGOqEHeEd1L7rkAgSBm5Q1L0IcorZsJQB5iptbDMNqQoyzSpTETSaX9XtGKyELBlbQlKQhcxMXKnH61KCGVilRKEYrIR1IyJtxcxiYAVClhhIhkSwfaMlT4KYHAWDsHq44wOWyR54yf8GSrJsyvlM+YrKYIXNSUFfOemauEI09gdkkgi6Xa9zDxZhYOXg5KJ/xGxPy7JPsLYv0Jqc146t2A8cx1FyWydKKQ9CZBs1DQhoVgYrkTSwsmKwgnrfS3dPOvhq2BEOaMCUKd6fd0UF5Cr9fgqBIETCZbNCSAQ1yfSUSbJcYt9+SM75LCueRWewCMcyIWLCKIid+XVyQe7BUt0ZrIwGFjFmpPZgcRYnF/4YrFI5uRAFq4ElbVgLtOtjQm5OLpKB2xX6eNZQoW+UJ920F5PBSjemW4IMt0WAbdsATUNg0lTjvHTYIZY8sgyovHOs3MlZ1ROGgaUBAqc3wG5guXmy7Pv63cZvXiINLMJQUty/v+SeKc7GYJFtIN+LSskcT2WbUws7iwdYGdCEhcESwacCTFOYe2u5hIFVBIlg6n7zfG590IvUrrLCOuanHWNgGli8Bgzg9Lw7unZQ9xs5JIIJ0sBKMViEx1CKgeUav4tgckVCWsrxibJgsPzM0SKy83u9RRiQtZMLZmAxFBbFkgjGnXtdrAxWELVfmg4tOuIdUDUVmzs2W/KQBlYoBDTwJv0d6IpYDSwh4XsDJVk27XymfEVlsAjXvSfKbwIAuL4NUJKypy1Vo6n5aG1JJxFU88RgzYiYxnLr15/gY3PfOSZU0uWBgJXBQsApjVBV3dmJhcHi88tgOSSClD0bXclFBc/Pe9gwyA06ayvWN7gyWJosGVIkkUjDNfRFKHkfSI+SxWCwApr5fgff/9D4HXp7kfF7orAsr+9cviSCX/HmZHuBMlf/Qe7B0vwZWKVyciGK1r6bEGCoEHJycsGnmBr6eNanog+A4jJYXjfFWxisdz4Ahg4F3nrLwvjQ+o4qOBu9RbDGxlIMA4tDIJEMZN62y5pGcbYRACIw30+ONLCICa+WzskFyWhrolUiaFl4MDt7kFCExG3e4miSfVIiKBPjiQgRvJoysJS03gAlYuGlooh7sNI5tvFTTqqsFKKk044Kq8HtVl9qvNlcOd44Nyih37+mcBP4ZPxAN4mgKAJxYm9wUAg542AlDSw35i1G9CWSeQtYDKzy2IPlZ44Wk5xMc0QUs/7OMIkgQ2FRIImgw0071cAye30gUIG6RWb8mc54B3Z0bHN8CBLEZD8UAkYIa80ytm53GFg92clFPOlOmleBhKobIaEKDlD1ClWkr8yrRPB/gul8IlDvjFOVCcb9j5gTlpZoq9XAqvZmYGmi3o9UFYaLWVkGQrDtwRL0PViZ7nfWTi4oK7myKiOhJHw979RkReRFi/FErjhHYV5YoJr4yPfpg6TH+6I7ueBArFSHidg3xF4XXowUTCKYi5ML0jjW1OSCAWdOQiQt803zwv4WErLsZLDihIGVDycXAYVzjmevvYY+67YC0N+d1DMpFycXFgYr1V0mTbJ8F+zyUkWhM1iKLQZYisESNA4VUb3PyzanEnSJoIbNleZEPRAnxsF9f2T8bqsyJdR2SBYDK2h1crH6O+N3gmhziCf3FdquZZIzBhLJYMXjVgOLI2KKSTutsn0SYeIlbtrn/ww37UBhDax077wXuKlQYslxtUICuErr/mO3dyxV95YqwsDq1PuXpErgq9ocbXQyWOa9CgZ0BstiYCUdorgyWMSzrAzVGL9Fwssyx2degCwUspUIKjFK3xMyS9GZRJChNLjqKsjvvYdFd9wBDB+eOb1HONy0h5wxJKQhZvBH8bBZqK2oN44725uxcf2Xzjy8+UYEg0CAmGQEOBHBl181jvsITRZ3uT1OIpg0sCpkIA598A8GAah6hSqXvjIv1yvLwE7BnNQHQlavYl6Quv5EdIhxrqUK+CQVDkbjMKF6H9f8pIG1f+cLuAr63qPU4KgoOoMVszm58CQRtElZAXiKgzVMWG8ck6vj4RVf+XreKRZX5EWrRJBYZW8WTOcgAcLdM0Ihk8EiHcYUQSLIa+ZElgzuHSL2YPFipGASQdokOYVMcbAsxnFy47hGBNBNaJlvmn0F1musvXxBUfQwFCQSAgwVQk5OLlIPQg04x7NNm9Cw1WRtUuN82UgESQZLgu5Se+RIi0FCM84VLwZWjd5HxH4DIKj6A1dsqmbSyUWqjTXowndJ2ymk8giEdzPS8/Xmux1PE5SI9LjLQTQkigAgtZqTToloc4Vg9mm7gUXbE21lsMy+JYCQCAJIHDfHtZ0JwrX9rpkn4gPFDMpLytbyBdr9Js97hauhknR0UikDqLCqN9zesVTd4VBfoG9fIBAwGCwA4Gt3ONrocHJBPIugWKHXJZuWQcrAcjUMCQctFZUEY0oYWOAzO4coFLKVCMpxioElZnamVGpJdynBDKxSYtIkaAccgPZx4xwDSC5ob95kOaY6uSA2UIsDh6C2so9x3NHRhI3ff+3IQ06iQyFA5ImVQT6A4Aaz3oDQ1bPjYCUNrJACxKE3OBQCkAxeqeWJwbIEGhachnImpK4/FjEDbG6uA5amHD42T0Z9qN6ZMQnSwKpRN2MvfGlpp6IAKzHJ4eRCROYI7+FYh+NcMKRvEE53T6bznxnHDaL5AQtffomv500aWOSkifQaJpPGk2B9AQwGi5C1FYPB4jnSjTDdwBKEaFlIBNMxWEjF96k0jf/EjOnpG52mvmJKBAXBOmHNl0QwUq+/i7uUQc7xrLoafQi7LmVgFVMi2L95BRqSTikyMlgTJwI8j8AuU1EhvfO2o2wqgwWbISbo1pRQ1wepCBkpVsveTnJhrw/fjDVJ4n9cogaqYr6gFUTUZLtBZ6mbWKBMoBYcx0E0YnGZbSAlghWCybg49oqpzrose7AIAyuAAATSwKKoUYz6Cdf24T2OxOfaYcZxoRmsQkgEyUVM2BgsWn32eHxYtgyIRDDwRz83/1Czw1GnvX7y/geDFRBF4DtlmnEuHhTStjtKBEuvJKSNpCQVZcJg+drGkWhxnBOFcMHmdj0BzMDqgWgPW7XpGQMN8yJqq80o453hndi07TtHnq31I43foRAQEEgDS0QgSAyCguSPfu5mEsFYclKtM1h6g4NBoDq5elWl7kyb37OBZXMk4hdmHCxz5fad0YCcui+b96fetxRocbDIdsoy8Ax/ClRiJNE44Gt+amYDK+LUdIuhVgDpJYIawaT2IZjXrnin9+e9ZAnkmD5ZEVpaIYZM40QRiA3qmvU9MRAKIeWxtugGFugMVgXx/nFifg2sfEkEh/IbjOMR6hYAgAZiDxbvziRkqq+YEkHBJhEkDaxcVvPlVF9SKAxWdTUaiHnyruguR32FlAieicfwf9dMQeP2vVAF58TKwWBNngwACBJUU2K7dV+vogCK4DSw9pGtQXstiyHJgN/pDCyDwerzjeGkZpLWz9rng6SzCve9f9Lu5r7B5RW6B1NRdbaBlLfW7GozfosR68SU9j0m3684UY5c0R+8Rhh4aeJ1yRopF64Ar5rvVXeUCEaTe8oqJaRlsFL5HXOBoUMBUcSgamI/X3V6A0sQgEQd4QGzug6CALyrmMxhoqaSXl+q3aSB5cJglcseLD/jpyw55zRBsZNJBNOAGVg9EO2y3YtgZgOrrtbUoHeG27Bx53pHHoWzBhoW7AwW4eVOE6Six8HiKb25YBJB6IVVyEAMFUZdtao+8QqpnWnze7leWQYG8FuNY8seN49IXX9nbARSC8W7yMXALftlZWBZPmpEwNUUPuVnZpYIUhgsLqQbXemcXJCeFfsQ7Fs47iMOVjhseiaTNQjT9zLzTZlk/lbcDayURJCUtRVDIsgRLsItcbACpIEV8/XuEIv5mb0I5uDkop9gOocZrLQmCzCvgTb5tMOtvmJKBAWaRJBiYPmebKaunyYRrKmhMljFkgiegccBACPl9fg5nkrvRTABw8AKhMx+KVE8/6lUo9o6pihJo8NiYHmIgyX2/8b4+0RxsKXN9c2m459g1BpA1VIu0WYhuSdTTLZBItqeGD3C+F0dITwPStZvgbzpe0cdpEQwXNPH+P391JMgwLn/hwYxusP4PWzZ++BV83tcCDfttPtNnvcKV0OFWMS0M1i0d8zNUBtUQxpYTY60DokgEdssOHGqcw9W0hh2lQgSC25WiSDJYJWHRNDXHI1iYCUEzZdEkDm5KDLuu+8+jBo1ChUVFdhvv/3w6aefpk3f1taG3/zmNxgyZAhCoRAmTJiAxsbGIrU2z1i5EtyLL2L4e+8BW7bkrdg2xerhSmrZ4UgjdZrsgbizDbWkgRVrw8YwMbFPurOVOXNwD4UAkWCwgnwAgQAZ6LS4DJYgmHsxSBSMwSIMrBSDJQgw3LQrGVbivTJYuwufG8e5SATbtH7oS/vGbt6fKq1MwQuDBZHiAdNDhPdI3FwISN03LaSfS8dgqRYGq4/xOyyFPT9vTSK9A1pdL5OeukZFzb2IgdXrzAJIiaAlOKy3+nMBxxHvHWlgBc1nxQkx3/LadO+qRSKYg5t2jXCUoyQngJzqnLx4bXcpGCx9D5b1ZZIFQI3r70ZOcimCwaJJBBuIalOu2oslEbwdlxnnZuCLzAzW7rsDsBlYNuNclRRI1FmILdBwcqFDSEiGcaN4YLDQb5Xx94lVwy1tbli11PhdGXH//loMrGQohACFRZMGDTDL44iYiLYYWxLhgTYFi0SQeAcCfBA8YWBJEmWsTUJVzAWr/pu+Q39iHlDODJarRDC5cEXbg0Uz6NzKIRkstcqDRJC4/0Eh6PQimPy7q0SQkLdWVtUTacyPmuYhflSh4DZ+ks6raNjS4PQTIAuArOQe87OnoqQG1nPPPYdLL70U1157Lb744gtMnz4ds2fPRlMTfTUpkUjgqKOOwoYNG/DCCy/gu+++w0MPPYRhw4ZR05c9XngB4k9/ipl33w3uS6dTiWygaRraNevHX2pzrjzISaNLUAFu5UrUNpiDUEe8ExtlfXWZV4HdavX7q4DUJgMCT2jFhSD4YAhi8qXRcjCw/HgGIwd5GgrmRdDNwEp+eFXOu4GVLuYTuQE8F4lgF2rQ3y7fT1QDTVPTMlhBIQg+6WGPZmC5MVheNOZhwsAalPyphPRJgdfYYKm4QIA/A0slPIOJHG/dg0WyuwQTKSastGOKwZKgQNWSAWILbGCpqnX/jyXQMGFg+Q00nOldJVfOcwk0TD47WdEn3ppMSKC2ZV5oKgeJ4HzxMMf51P6YnDb8J50RjFC3UyWCmRisQkoEF2EWlKTM6Ri8CUW2jnGk05pqVQSOOAIAECSc80i2vU6KAqzmRzkr5Yh4aZoKNRUfbO0GYzFGJhbUNI0+4Zf6/3/23jtMkqs8F38rd5i0uzMbtEGrnBMSKEcUYMEE32tzbbgE2/gajOFaYDA2NsEYbDA4YAwmGGOBAV+jnxFiEMoRxdWu0molrVbS5jC7k7qnu8Kp+v1RVed8p+pUh5me3bW03/Pssz3dFU5Xnzp13vO+3/uJRZETB4/l22haXERWnKOFRJAsKOjJYqNgsMBnpXS7EpH1hZkaW1kWD5AZLI9RWbgNnbgIeq0KIiO+Ly0GLL/t+/jC1Ef5Z4cywFIxQUEY8KLbpTPPAS6Qi8urzpdjwvbvB/7kT7D4U1/k74flDiSCGYBVxGAVMW/NY1bz16WKsOu3SC2vpm4ccgALkPPYslHX1ItfQdi6bx1s19eDGQcVYH35y1/Ge9/7XrznPe/BySefjK9//euoVCr4l3/5F+X2//Iv/4L9+/fjv/7rv3DhhRdi9erVuPTSS3HGGe0Tow/JoHC+RzbtjaCBAPJd4ikchIJkQmiGAEwT/QuX8s+m/Rq2GvHDcvk00NdIj1fHICZ406lMxjItwLZ5Xko4B4mgZXXuDEaLS6piPiRbYRTCSwf/jESwUwarU4lgSPITZsNg8Yr30DHUzCyJb381EBktAZamaZzFKpIIftb8SG4/3Wi0lwiWxImXJIutvtMAELWUCEoMVlkArBprdvx7UyMLE8XFQxFRIEYu1KWXwjn/Iv5n+tCdb4lglj2xyaqoQyaykekiilo/MLuRivg1sTru78zn0aiOkz1WEKgZrDDU+MKMt1sw50VxKEgEa0belEgFsIomEZv2b8oB1SgI4Cd1evpYsy3AUuVgzadEcAZVjJ0cA8sjsQXH+k9L29W3Pi+aetLpQH8sj7JKxCUyw376oYHdxKlThAASjMp0oXFwQyWCWYODtE/UF4m+esLwCRlZGwVYxc/fYJ1QERzTfC7en7YhOTn9PcukvEOYXZBoY3LhSxN8CyaVCAZuIc3gJ6DUCQA2sOCAFRqeD4mgVGS4bwioyA66HUkEDQP4/Oex5Ibb+PspwGopEVQArN9g/4+/521+Tn2+JBqLxTOpXOrjr80zX8Vfr9XPOuQkgtnPsuFFdfUHbdIhXskSwRbioPkNz/Owdu1afPzjH+fv6bqOK6+8Evfff79ynxtuuAHnn38+fv/3fx8/+clPMDIygt/8zd/Exz72MRgFs0TXdeGSIr5TU/FEwfd9+H57vf98hm4Kc2g2M4OoB+0Zq+WdXprNmdx3DRJZkxkCgaYB/YOoeMCMDewJprAnWZ5f1bARTtaBChAYIQa1/ZiMhqBpPgyd1P/RLASaBpsBM4hXqqMogK7rAHQwFsH3i+8o3zeQ4v0w9GEYJoJAQxC03i8ITAAaTFO9nabpQHKVXTfg12Euvz21vHUIgxWGfmIhHIFpUctzBIH4voAPJKuUvh/C91nyWpctjFn37Y6f/fGx+9wKAJL3tC3Vmgfw/WJAWDErqHk1CWA1mz58H2g0gAVGXvLyf40vwHW/3PJ6p8WBK7qDgeQeDY0QMJvQdROqa+J5ulSYtM8WGve6HgDeDIBKsh+D76sRRrMpHha6pkPbLFa63cfXwx85HQAQkcRxUzOk72GRnMNaowaDA8ZEUhuIdvcqms3MwoZu8zYZxEUwZRWbTV/Kr6KhuucA9T1HJ8bejm3SdWg2gfQ7a1r6fek9F/ctxkzpt0sZLNdlsMNYbuJrrG0f9zxxT0dRkIz9WtsxplfRbGqAkZ+Q1y86H2XfT+a/+b6bxjce/QY+cNMHcPri0/HQbz/EGWK/TthSpkPTMv3XtiWTi30z++D7vmKMa28U0k24rjj+rrOuxpLHbwEAXMVG4fui3tB0Q4wtpddcKH5HWgcrDKTf1/N0ZV076D5c14euAw1yrxrQYSBRCejxPELTtGR9Mr7muh4iikIAJnYMx9d0iTmIynmXIQgiABoMI4JOXEFZ6BX2O3evkNgPsmn4vg8ruW8CHfAbDcBx4M0IBq9MWCfGmvJ3Zn5uaXvGFc9ofc/z6eXGkc/eDZ0oFwItgj8zI1MB6WcQzrZBdRAlMu+tubVZPfNajd+MxeOFYUSIIoZ0Oul5xeOuKmj/Sp9FUzOiLzmGkzu/rouxq9GIn0V0HNL1EH6lAnNkBCPESj8o7UnaLsYK19V42zWNoXnrTfz30feNIzzKh8XED9YM4t+TjkP0GUrnB0YknhlRSO5LPYDrxu2m0Yv5SbvIjp/pHA2InxeqXHYAcAmQskONGxJp0RR8v7hGJ33OaJp6rnOwgl7v+bjmBw1gjY2NgTGGJUvkiu1LlizBxo0blfts3rwZt99+O97+9rdjdHQUmzZtwvvf/374vo9PfvKTyn0+//nP49Of/nTu/ZtvvhmVzKrIgY7Vzz6LlHt7at06bF3YfSHZbGxtbs29t+HpJzFqyHlqDc8FzFhOcM/99yMyDPQxAzNgeEGb4NstcR3s8Fg6Z0XZmAAC4K67bkPTEHfi/vFJrN/5FFL399AIsH79WkxPHw9gARjT8LOfjSrzpABg69ZzAMRSxLvvvgOa9loABsbHpzA6emfh952cfC2APoShj9HRn+c+37LlFADHAgDuued+7NsXyyVvueWWwmO2ixoxEdkwcCHGEDv0/fKX94gaLXrUMjdw375LAQxB10PcddftAK4BAGzfvgujow8DADZvPh1smXhQ3XrzrV3LBKembACxA9J6+w0AfiA+3B4XMX7wwV9iYmI8v3MayZyVAqxbb70DIyMN7NhRVeZgabqHhx9eB9uOGQnV9d43FctQ7dDkAAsA4Ezh7rsf5e3es2c/RkfvAwA888yJkq3znq1iQaFuAevvuwPAGwAAmza9iNFRkeROo3/tI7xPuzNNTI+/CAzFfz91z13Y68Y5iR6RMdan69JvOrFvgr8evXkUg2astzeMXwFjOvbtm8LoqOyGNtdoNAzsMES+5AvVft6mXTUx+37KjPv8jTfeBMdRT3ZeeuksALEz6H333Y0wvBiAjcnJOkZHb5O29c144QAAds7UpOvw3HNDAGJmY+vWl1Ct+gBOAADcf/9DmJnZm0i43iw5QAaJy9mGDc/AXhn3r2bE2ubUbt58GoCjAQAPPHAfPO81AMqo1VyMjv6i5b69iLVrlysB1k233YyF1kI0GgaANwIAdu/eh9HRX0rb/dvmfwMAPL7ncVz3k+swYse5O0F9gm+jhwaee24jRkc38ffMeh3LCcB64rknMNocxcaNRwGIFwQeffRxDA7mnwFziaefPh7ASfg2fgsn/bsYP64Jb8LoqABYG0j7H1+wBNPJ7/hSQ5g6zLgz0u/75JPHAlXFwpjh4cYbfw7TjOBSMxyfJcvg8Xhx489+CkM34brimk9M7MMTT7wElI5F2BePD8POCoyuX4+JiQUABgAw7N65B8nQjUZzurDfbd+1A0hINrcZj+taIo/0deAXN94IVi7DffIxICkv6dddICEyxvfvlseN6UkgUxlj7WNrsWRHPBca370FOCJ+P9y6Ce6IcID1DODmG25AoJi7uCnACoBdDVdisDY8swGj07PPVVeN383mGgAWGo0aHn74MQAxo//ss5sxOrqh42M/++xJAOLiy4888iB8fwx7PQGKxveO536bnTvPRPrj3XnnPXj++Wns3+8AeB0AYGwsfo5etGgRFu3di0UzwL4K4Ns7AQBBIJ7Pa9cuBnA+AGDz5ucwbG9Ohxc8te5xBHsHEYWCetm7bw9GR0exYcNxAE4GAKxfvxaOEy807hzbybe97Re3QUsmPS82XhRfQA9w9933Y9cu9XN3LvOTdvHYY2K8ePLJxzA+vhJpxx0dvRmVinqRKtr7WHzrAFjQNLA72c5r7G75e+/ffwmABdD1SJrr7Ngh5joHO2655RbMzBSXQJhtHDSANZsIwxCLFy/GN77xDRiGgbPPPhvbt2/HF7/4xUKA9fGPfxzXXnst/3tqagorV67E1VdfjYGBAeU+Byq0vWIQOfW443DamjVzPuaD2x8EMvh09epVWJM59ocfjsGRGQIXXX45cMopGPj6V7Bn/yZEBAQdU1mGerkBpNJAcxIIgGuueS3e+9cRgL8GACy/4kqcufdU2Mn9EuoBzj33bNxxh47nYkYdr3vdmkI52r/+q/jgqqsuh23r8H2gUhnItZ1GuWzCQRM3eG/BZd80EZ11FsI//3P++T33CBD4mtecj/PP93DLLbfgqquuglW0tN8mdtZ2Asm83XGGESarQZdffjG+9nQKsNCy3X/+50mytKXh6quv4O8PDy/l+/30pwb2aGJy/KY3vIkP1p3GOBm/+4wVoPzmyLbV2AvgkksuwNlnF696L9q2CHvG9kgA6+KLL8fRRwMbNwL3GHn5iW64OP30s3DVVacUXu/o2QjwgKHKEAZcIj9wpvGGN1zJ/xwaWsivyX336di5TUzSzz3zPFz3i+8DAGo2cNUZJ/HPVq5cjTVrRGkB6bpM7ARejF8P9g1ipG8EYPGNc9xxx+DC5Hzf/KOvietA2gEA3/3xd/HI1CPx9bjsYqwYiJOATVMDY0Bf32DLPjCbmJwEJr8ibvBT3vAmrDkxPscLEycB/xTnXTTNuJ9cddXr0NeXPw4A/OhH4p674opLUC6bqNeBcrkqtTuKIvjrRf/oXzIsff7gg6JPHnvskaDD6qte9Rpcc03EZSIUHHusmuxzAuyGDiBEYLS+bwBgdFTc05dccgH+8R9N7NsHWJbT8+utiokJDcf8YhTPZ96/8NILcdTQUclKehwLFizKtemrP/gqJ5Jfc9FrcNJw3Gcnd74IJGOlwQycevqJWLPmeLFjEGDrvb+BdJGkf6Qfa9aswfbt4nqceurpWLPmtB58SxGPPhof/0RshE1y8S7GPcBF/w/6QNzBrr/xeqQDzBWv+xX+vZ7d9yyQVv2wdOl6bHiMwRybQXZKp+k+rr769SiVgIn9O/gzzbFs7FuxHKjFA/BVr7saJbOEacLWLFmyCOecswBYJKR95x93PtasWYOPfSwedx3HwNFHH4PUn8Zy9MK+8/ij/8hfV8rxNf/Y+n4A+xCULFzz+tcDlQo+fVt8H1gMWNAvENRAf0U69r88THRSSRy/8gisuSLe5gf3fZ+/P7JoMfqrQ0g1Ap4BXH3JJcDixbljsAfjL1MKgEXHHofa7pv4Z8uPXI41V3V/b/i+Xzh+a4nhx+BgHy66SDjvrV59NNasWd3xOe69V/TfCy88F5dcEsV9JpmzH1PzsOayyySZ4E9/KsauCy64GKedBmwl6wrLl8fPUePHPwY2bsTiegywwnI852JM479JGIrx66STjsPkTvH7nHvehbjg9DX4cfgcf6/SH4+P69eLdp977tlYsyYeI//spT8GZoCSUcIb3vAGvs3TY0+L+0APcO65F+D88+Xnbqvr3avYtEm0++yzz8DTT+t47LH479e+9mosWKDe7xv/+QmkTgGLGsDu5OeoOEHLcfdTn0qcN01Ic51Fi5YekPG6VdDr3Wj03mnzoAGs4eFhGIaB3btlh7vdu3dj6dKlyn2WLVsGy7IkOeBJJ52EXbt2wfM82Ara3HEcOE5+QLMsa946cMdBBgwjCGD0oD31IK+TDUM/913TPC0zBKxyGbAsDDh5wHnk234Xz/3i6/zvkhm7D5ZKFnQr4P5pJasE8+STEa0bADAF19DhOKak79V1q1CuRGXlpZKwKA5DreXvxFg86b/C/wXwMwA/+xmMK68ELo1X1GmX0DQTlhWfaC6/PyOucXokHLJKJUtisFodP80ZMAwNpZLYLop0WJaevAZYkpNhhFD273ZBzZcsX7hcHTkB7KjFq2+OYxb+LgBQteOJ8Iyl4R/xfgDit9Q0AGZ+NV/TvbbXu+7Gs6LqdBMDlARzplCtUomNuCZAnCCcxqI+webUbaDMxAQwigxYVgGiJ7VmLMOEBZNPtqKI8bZqxBHK0sl3mJxEeeNzSNRKCLWQf9Zp351N6DokU5GKXeHn6CN6/3Sb2dxzjMntztmyK8aTNCzLUNxz4lypRNAIgSDJLYkiA3ayquO1uW8AOd+mVbvnM15t3JcDWJGWb3u27wKAR+rkuKEr9iEyTC00YNuZ/mtZWPTlrwF/HQOsKW8KlmVl1GKt7+XZRPrb2ZDvcwcegrvvhfnWXwEgW4EPVYb496pQkwuE0jUamNyKlfqLyBYF0XRfjDHkXjVhwIC4JpoR/+ZU1mSaOhxHB4bFQsRJi0+CZVnSuOuUykhLykVghX2HkfPrWgmWZcEcWQrs3Qe/ZMNKikOnkik71GAR+WEE+X7J5kgDQMBEP2Ckf9hGCZYm5i+7//IrsBYvhupH9hN22GGANrRQYrCkfjaLUI3f6aKJaWpwHPJ9W427iqDjUPosYpq45uUHHoH1/lD6zrQpmhb3E9oHLCu5706ImfQlNeDpESA0ZwC7hsjrg2HE/YauWdq2IRmxVKqDsCwLUUTyCKP8+Eefoc0XngOGgPKMJ21X3i+cm0/Qn+RjoyoO1Py0mzmaT8ryLGQOUmmLjlrbORrQeq5zsMOyLATzkBR20L6dbds4++yzcdttJAExDHHbbbfh/PPPV+5z4YUXYtOmTQjJE/bZZ5/FsmXLZjX5POhB29wjk4vUWYqGH+SPTQFWekf1k3yWNFYuPg4O0dDbZrz0apqAbmaK4J5+OtzysvicRpSr8N7SdKDAGawTkwsL8gQQjz7KX86H6QBNSNaZQDCGAejcQrj1Mag5R1GSehDEeW8AYIXdMVdp0O9vuCKZ/FU7HfjJBLeVyQUgrNpDPcInjT+T2hk7wykkgobX8npHUYSZBAxVd+7LASxqdJI1uXjEOJP/Ldm0f+j9CI45Qdq2KALJRdCUbdpJUj1NfrdoHax6Hc56IT+kfWI+TReCAJI8TXIRpDlYiWyz03uO2rRn98nasndj054ei/eXZBJoMcBPtPiMAVaU5CF1UGi46HwH0uRCJRH0Hn2Yt0naNhO0r9SI857viQmMztTmM/1OP7QE1ac27QfK5CI3zgLAzxNZ9jPPyC6ClnBMo+Y8/tFC7gYAkespbdo13Rd9xxOLJqZm8Jw1QBhGKPvy8DP8vRP2hNJ2hgHYtrhfQhQ/f6mrn5a6CCZjATWs8LV0rJZr5uVMLqJ8p3DJbx8QgGUaDgxNXL/aitVKcAUAXgqwAiAaHDqgJhdzcs5UmFzQPCaVTXvHdbCOiyWsi+m6c2Ws5X4ecZS0E4OWiCykpvmohSYXyTO7nJkEmA1x3w/pY4eEyUWr+Uc2XKJUWQABOPWoptqcR5Hb5CvB5GJWAOtVr3pVy3+dxrXXXotvfvOb+O53v4unn34a73vf+1Cv1/Ge97wHAPDOd75TMsF43/veh/379+NDH/oQnn32WfzsZz/D5z73Ofz+7//+bL7GwQ/KrLn5SepsYtKdzL3nK6xdJYCVzAhVDNaqwVXSxC0FWIYB6BYBWMlDVI+SCZ/h5QbeVracRc5gnVhNZ1dW8dRT/OV8WBjTh9XR+4T22DQBFzFIDfUYRBSFWP0rrmPDGBCQVdHZBP3+520TFtjXbMoDgqKgtbBgzUjtDAIgKmCwWl3vRtBAlOT0VHxg4DffIz50piRwnq2DRZPiJZt2g8GwDXnbggjOPJ2/NoZHZJt2ibGhkx0ysSE27YBsszyftuGMJXmQSdieOInjiteD5q62bchObIruuSyDlV2waeUimLVQrhnxmGfC4O6bjIn+7XUJsLoZK3oVhQDrifUAIK2KKy3vyYSb1o7yXQKwQkN5X+qazhcV0sW0A1UHKx1nmWbgO3g33oYfovmJzwK1GnD66ajfdSvfJ2W9AXkRwDv2KPngvp8rGAwAj+qniTGG1H4yoS6poOzLiwTAOvEP/1LazjQByxbP3zAnUiRNJHXxdD3+LunzTgZYCVsf6TCXreTvT5rywmXWqh7IACy6qGM4MElNraZisRSInW3TxbhSArDK5Ladb5v2OdV+y9zPgMyGlhQAq+M6WAnAKtNLniwIquzdTRPwCAC2y7EqIEIeYBXW70pUJ6VQXiExSZ3QUGeHhE17q/lHNjxSlqdyxmX89SZTLcPPHrObc71cYlYSwfXr1+PDH/4w+vr6EEURPv/5z+P3fu/3sLBLk4a3ve1t2Lt3L/78z/8cu3btwplnnombbrqJG19s2bIlcTiJY+XKlfjFL36BP/zDP8Tpp5+O5cuX40Mf+hA+9rGPzeZrHPygDFavAFYzD7BUtTPSAokWZbAefiyXfMsBVjKuW2Ys6zIM4ALcjpR/tMZi8wgKsLqpjzHb4qGMAZUswNogQM98A6yTxtbya2AYwEvmiQBiQwYWMZia+hbrpIYIY4CffJau8Hcb9Niv2zSGV7nAeBn4rXXA7ym2UUUOYDUXSA+nSDHZ1IzWAGvGFwmlVR8YqBDhtzMFTYvb5fuKmiWGmDlQBqvm1Tr+vYNjxETPXLAI5qSY6FIGC6T2B12VhuPwkgSAzErMN8A60Xica+HtBx4CTo517M6U+A5LjS2YbNOGTu+5rJ2458la9U7qYKX/j+lDAMaglwcxlSxGBAFgJ2t9Xgfd/FCogxWZeTbHpe5hRsJAK+btFIxTBiu1eQcAnZmF9+VQaQjjzXGlTft81sFKAda0uQC/5X8HAPCNQQA3Xw94Xqq2g67pcAwxmaTGPFn2Uwt8PsbRGDPIGCOVVNAxuG0HT7Zn4/uByrC6LycMlh0Aq61YSkzHXWtgAEgyFJotBkG5DlZSkiMZC1jEEEVR7GSop89UDcappwP3/ScAYLcjpzwE1TKyeI72nYAwKKYpAyy3AGDRe3ScLUE0slhisChg6UXQorTzUQdLsmmPDGTdsTqqgwUAx8ZmP3SsTtn9ov08AoBtK6nVp1GJoBrUp9FIHhPlUB7MLMKYRocIwOrmt3PJc35owQog8fJgBfWx0ihS6xwGWC3ij/7oj7A4SbT80pe+hA996EM4+uijuz7OBz7wAXzgAx9QfnbnnXfm3jv//PPxwAMPdH2eQzLKZUTVKnxNg9EjiaOSwerLOw6lq21mpPFlhf79dQlgVSMLC1CWAVZSH8s0geWaUM7bzcRiNi2waATQjRCmSeQcXciVuqmflZOuPPVUPPpr2rxIBOngbzFxAtMENHJLBWEgT8oz7U73aVU3aLO+CsAW6EPDmE3QAc0JGviDh5Jjk0lPNwDLtCbAsAxBsuzMmJrBQhuJYN0TYKDqAQNVsTijV4QMNT1HGkEAzmBp0NDviNXhul/v+PdmZFXa1E0YJK+LMlgbNOGSZq5aLQ7gOHBIu+gE50BKBB1SXNgsV2GEscEKM/PSKeWx0n1b3HM5iSDkJ2MndbD4MRNwbJL+F7PQ8fX3DPB7tygOhTpYqkUFWow5BVjtJIL0PvCJFE4rAlgXXogFp76AF46IGawoimAY4lodCIlgoItnVRAAuOEGAHEOJBDLA6kZjyQRzLCh8DwlgwU9EH2HMliagVJ9mgOsILFwz/ZlzWDAwtiY4Nj9gDG0UNrONAHzosu5qcjWSvHcJSBjhZZ8d/PFLXz2FDz7NKwTTubyVjvSYRvyc4CGv3QE2Pa89F4RwLKssgSwjEfuAk67FFi2TN6fgPZngjOA4eF5lQh2Wvuu22OpJIIl5CWRHUsE+/uBpUvhBKSUSHLv5sYmKABWwr4y3YllzUYbiWAQIC03WYJ8A5sZgHUoSAS7+e2ayaKSHQB9ZaF2YmhNDhQxWIclggVRrVZRq8UT7SAI0Gw28dGPfpS/dzg6jEsuQTA+jp9/73sI/+RPenJIZQ7WyuW594Ik2dA8+VRgJDY/6DdkILZyXwDNceDYgh43zfg3NoyYpUjDskrA2rU4bpsAv5HmHxAGKycRnJoCtm/nx+rk/N1EEcCKc7Dy8hVVdMpgpRPSbu3Z09A0kfy73xAmFy8NiuLcbSWCpugXj1inYiW2Sg+10FB8Tz1oeb2pNKrqAwN9Ij9MLwkZanqONBgDlusvAohZvT5bGDvUNz6ByuMPSNsWBf1tTN2UJvwBARRbNbH6bC0l95FpHjSJoJSDRQwEqGzRN/OrrMpjJdHqnstJBEcWSX93w2Cl4Fi63oFY3Q0MtK0HeCgwWJRFTYMqBVqBPpcAMSkHa0gsFmwPV6vvS9PkxYZZxHKLCgeCwWIUHHsMuPFGAEDdiUEVlQcCGYlgVk3h+8ocLDp+BEvEuKWfex50Mm0JPJmNAOL+sNd/kZvvnLAPSK3R6LjrkAvXSiJIxwo9+S5WIKSsQSLtTL+HFWmwybFZRhKYA5mQr0tAnmeWWYJJcrD6//Pr4JZvJCQAxRywk0/D75y4Tnzuzx/A6iWDlV42icHS8s++jiWCAPCOd8A+/UzS4DYSQbKA5CSF3CPT4iyYisFKz+fP1JCWzCpH8g0sSwTD/3YMVsOKv3fF1+CQIt1Mbw2wXskM1qwA1mmnnYY//dM/xQMPPICPfvSjWLp0KQzDwDnnnIMNRJ51OA58TM7k6ypkV6AB8dCgDMuA1Sdts8orAbqOEmFPtpuLoGnJArNBV9pKgGlKVHykywBrPk0uHjkC+ORlwOZUaZb0w/lmsEwmM0GUwaIsSTbooEPdj3IAK5mQ0lXgbiO9BteNXBvb+1Yq+Mdz/lVqd6ugDFZq1U4fTv9u/o/8Tt0yWN/7f/zvPkcGx9lr0mfEfdwKQimZvr7leZTX3sv/btnfxvfx12YmKZ1KBBlhRyU2UtPgkBXKg2ZyQRY/KKsWJG59vbjnshLBrKSrkwc230axYMAYYJ94SuHxs1F0Pipbms9gDAjbAKxWoM+dEH2vVt/PX/tDYlX4JXac+r7s65OKDY83xg+YyYUAWPHkagCTqPzZh4F98fepV+LflN6TQEYi+Mt75R+pIAdrob5LMAzEdc8sVWBQgOXnzVwMA9jeJPlXYwCS9AUKsGyLAqxiUN9YItiiph2nL5gkD8x3GwBjAmBBh9UCYKkW3ugCTUC2N82SxGB5BiDVAUj3J+MPghL0ahnbq2cgrbnS6DGDNVujBFUoGSyag6Xn1T0dSwQB4ItfhH3l68iHXsv9POJgmC4OPOecystKeAPVwvM1SS24EooBVqSHhwSD1c1v17Di+7Di6Sjv3sPfXxE9U7QLAPmeK5rrvFxjVgDrS1/6Eu655x5ccMEF+M53voOvf/3r+NGPfoTf/d3fxYUXXtjrNh6OLmKyvi/3nmrFTAWwqNwKAFYllVdLRwtntofNM/kEUtPJSptdAiwrA7C8jldXlUnKbfZJP7fg4n/8OvCZy4DXvBd45Ahwo4v5ZrAowDJN4MQZYbDRCYNlmuD5RkBeIjhXBgsQx96HRcBLLwG7d+PFqpjQdmNyUbdjgEVXDR82zsjt8z39f3XMYFV8YMATkiKntE9qV1YiGNBcB92Ak6xw1mzAaAhGoCWD9Z//wV8b23fCWCwKngfL4wlVFAHQZKaLhkPy6w4kgxWRyb1dIpNZ2+ayoMAM27ahSOaTY7CyEsGsbTvfPsL66Lu4z/1nQJMBXvp/VZ8AAFR275T2l1gOppCcdtBuVdvnI7K/QRpUIthq/KJysPrOLfy1dJ1DS31fVqucwQJixcKBMrngEsHkt/prfAx93/57vl09Kckg5WwC0DQNif9CDJ4JQ6n5nhJQv1q/XzBYlG3WTAlgsUCeLAPxtd/WFBbtJ4yBM1hUIli2xZjaisFqLl8pvmN1BQDAIosrge8Cvh+DHwB2ZMC6TxSXPn76ful4qgVPlzxTamXxHA5XnQSbAAy/CGBRZjBwYhMPUwOCmBmmkrteRC/vQRUTJDFYer7Mjup8KiYsjZSJAtBSImiagHek+L3TcWnSWQyfxQvQnuJZzc05ZkRR7HJG2kglgv8dTS5mEoDleCYqO3bw94/Qni/aRTpmep4DLek+mDErgHX++edj27Zt2L17N8bGxngxtWuvvRY//elPe9rAw9FdTDbaM1hhFCKMEktZwoz0l2WHi1WleNIpDU5mU4AWymApAFaoeV1LBFMHrq4kgnoDW4biv/dVgCveBdy16ba4ifMAsKTJdEj08QZQZcQsoUOJIP2fttFpTsIy4uPZ07OX30rHLpWAvr7i1T5FlC3BkjRMoIyG/FAz8xKBrcbS1oN11uRiWMjvDHu/1K6sRDAwUreuRJJkxO2r24AxMy1tWxQBzZkyTJhHHyv2O/EEvn+fLu4nk8n1aySAdQBNLmjOmwSwNI0zWF6XAKsrk4us7XT6+6z8JX7kvRvfn/w94LifS8dK/0/lpLbrSft3A7A6kSTOZxTJYlV9QCkRJO2t+UQiSIErs9T3ZQZgjTfH5/37p9/hk/g0dv/BZ3HzcXHO9E0QrADTgGaSO5SVCAJxXhKQTE5JSZIocKXC9vx9g0gEM3JeFYOV7ctbG8SivUgiuG0r32axt0n11QEAPssvspgkZ9P3moBtw0+Ke1tHHgVTGirk8THYsR3ZoM+UKVLPzj/mLElOW8RgUUDyP9hPxX2RAKz5zMGaD5MLyaa9DYOlkghm7x06vrQ1uVi+NLdffC3jeVA6PikZLAKwShlpo+mI5+h/N4lgxBhqySU0fRslopzQjEZL5QBV69D/DzNYbWJkZARGpidfdNFFc2rQKyrGx2G873046+//HvpXvtKTQypzsB5bJ/0tPbCeF0YV1GgAAFYOxKt1cn2dpljx0CnAKgO2LQEsBpnB6kSulL0JO5EI7jBkA4hpB3jdolHc+OyN8yIR9GgdrAzAMojbn9eitlkn39dxpxDpyYR0Ol9AutNQrRgV1fBQBV2Rblh5BguKOlgw/JbXW5IIwsLA4GL+t+5MSO1qxWABQF/SvroF6ITBamlyIU2aLKX1cxAAl+q38vetZ+RJmE0eoG6H+TdzjezkXgJYAJzEuco35Lo/RcdKo2UdrGwOFgGxAPl9Fj0n3ly4SToW/z/57UxSdoCxjIxMwbgrz4e5y5NmE4wBNSM/6aPAsGgSEUURXDIm1ReIybTninui0OSiWsUCQkZMNCcOmETwb3Etxt//p7jjhNh/9Da8FmE5vvdmrrpUNNHKAyxR5wySYy4jE3+DIi1icsH2CIMCc/tOGWAFeYmgaQJb6gRgEYkgHXftGXFuOxQT42zQOlgp2KESwSBwwRDxshNWtV8q6RBFWQY47ic6AWHukOgHjGzvmFbXEsFKEMJkLt6465uo+vFJeg2wisaO7GedhBKoUJOLpSty+3RscpEEreXZzuQivZYaNP5cMAwALD5G+rkSGDbE2JjNHTMyOVj/nSSCzdDjCyHPea9CiYBFzWxIxd+z0cli8ss1ZuUieEPiGlQUb3rTm2bVmFdcuC70b38bqwCEfX3AtdfO+ZCTbv5B4TVl9kMCWDvEw6u/uhAgc6dVi2MHtSzASm+QSMFgWeRGi/TuGawsjdxqnyiK/71g5AfgphHhrT96K949+F0Av9n2WN0EtanWCMAyTUCnAMstBlgdfd/AQ5BcP2sOayFFuUxptJMIlk0xmGZzsAIvxLC5DWPZnXS/Y4lg9YjV6F+wBEjIosiWXQTzDFb8Op20Ve0q0IgZLH2mQ4kg8/noZxqZQsNJHZQYPJLJVSYPzll9LIBHAHQ2ue5F5CSCjizHKqX1pMyobRvoZ7ournd6X6VGcDmJ4NSE+jjUWa8gzyH726Wf2c+/yP/2tr0EnCgkm63afbAkgreYlwLYLL2vcpLMticIA4mxqQWCyfUffpC/vih8sCOJ4HhjHCsPkEQQkK93Df3Y8Xf/Dyse+S/UP/Bu4P+L0wNUDFY6fvkZBuuJZQKYlfQS6lE8tlIb64DISY0XX5QLDftqNuGleiwRXFxDnLOWYbBMEzBLlFEonu1SV1ErcQe0CHsd+K7021u6JbFOUSa/Ky1I3OcBU8mj1SX13xgxuShZtsS++DqARl7uRxd49MCCwTxc+/Tv4qtXxb20E5v2DXs34AdP/ADvOP0dOGH4hJbbFkn6s591EqpnUYMRieCffiq3T1cmF64L+0/+HLg8bXBxDpZpivvYNmzuhlnWXZQZQwNCCqxs9zKx2Fs++zypzZplwQw1BHqEfcbAIcFgdTp+0uc1vCrKJVJo2IjnA0ULta9kieCsANZb3vIW3vGyxVQ1TQN7JUDTXgQtNNyC7egmJonkJA0/I1WTABaZ6PQPjMgAa0Wcp1Mi9XV+zfg33Gb8LgBwdgVIGKyMRJChe4DVzSqHamL3+mNfj6HSEH7w5A8QhAG+Pf4OYPgsYOyk3kkEm2SwYeLhp+sZBqtZ7K7T0fdl4qFoF9TT6iTaAaxuJYIUYGFmBr9lfB1fyOxzrPFUa4BFGKzKxz6ByuMa9H1xgebQFk6VuXYHEU8mN1OJYOIkWLMBrSYWGFoCrMAjAMuSbdpJ8VKN9PEcwPrgHwLXvx3AgZUIhoY4cFoIk7cp1AGwBGBFYKy93Xm2D6afpQ/CnMlFJH8xYcHeBmBpjIMLi6CMIADsiWkg+SredF7mrDwfDp5EUFloeEQoAIrYQMmMABkXQZpHUyQRzJhcTDQnsPoASQSB/PWeumgN8LtrUN8v8jCUDBbUDFbdEIt3jlFGPUgBFpEIktpP2RysQJGDFZiT2OfGBa6O2WcAYMDChYgiuc9bROYUasUXzn7sPiCZNy9qjgE4Uja58JrSIoRt2DKDpckAKzXtqPoEYJF+wUIPaYqXY5gdSQRpDpfGbBiVeG6R5mR2wmC95yfvwUPbH8LdW+7GXe++q+W28y0RpO2VFngz29HzFT7THAe26QBInqctXAQNPYKXlEugwHZJtAtgL2A9wD9XMm+kH5UWCPdLAICuQ9MdAE3s1ocPyFilitn8dnScgl9FiQAszWy2edaKc9H/XwkwYVbL4m9/+9vR39+Pv/iLv0Cj0UAYhvzfYXDVRVCA1YNCw2EUYorFK6JDZMEquwItAywx0aEyLQBYcfSZcTMJg1EyRVJ1RCWCpYoiB8ufs0SQsWJnMNXErmpXcd1br8O7znhX3EZEwNG3tT1/N0EnnPuMI6X2agRguS0YrE4kglFIAVYbFNQi5lMiCNeVJE9pvFX/fy2vt5SDZVWhLVyIgeQWCOwZqV10SAl9JoovJ8NXtRS7r0Ua4DYFwGrZ38iqtKGbMDeIpPhg9Ea+v0b6uGnKsjBaTPVASgQZkQg6JCEeADf8AIB2To404R8olopkJXtexhCgFYMlyXAo451lsAiDSAvuquJQkAiqAJZ71RVSu/i2dJuMTblUB4vUe4rCznKwDpREUEOIpdgJa3IM5VC0OT2fxEgrAJadlK/I5mBR+V3JEM8ZWidIBlhGxuQiX5No2hbywPvH3oPfemcAvOENkozJMACDmA4wvXje4hMXQz255y2pzIAHf7/g8K2pmgywcgxWYgZC3qbPlL56LNs3GTC08UHJ5KIwB4uoVLTAhlmOz19OrovL2gOs5xOQ/DwBy0Ux3xJBKQeLLPBlt6P7t5QIjghGvGxMSNvT/SzWhPdc/Cywa6INoSnSHzw9RBRF7XPHzHy79XShlEhgD3TMRiJIxyl4fShR5YTRbPldsgt5ryQGa1YA67rrrsNtt92Gm2++Gccffzy+//3v97pdr4ygxYV7wGDVvBrC5GEwTOYoWQaLTpio9Kz/JOEGt7gGlI5KJIIVMokzXX6jbCmvFsdR5GDNxuQiSyMDKNT3iomdmJjYhg1DN/C2U94mNqyMtT1/N+FZ4pr9ZOh9AMgkVZIItmewWkkEI8JgWXMAWPMpEQybnpS0n0ZodFEHy64CCxZwgOU5DalddCDWAp8wWPGLvpKwt55pdshghbL0r9CZjC4iZPJuqPnLgWSwNiWgXot0GEfINe6c11wg/jDdrljjIqlIvtCwfEN2zGDp6nEnCACLAEPfbS1nyk4QDrREMAaL+Xu7k2LTOQZrv5Bo+wRIgNmdSQSb4wekDtYi7MNOHIEVZ43g/9z5v3Lnk3IqVRLBZPzyDUiLiQHJhSwTpkIyuaAASzfhkclysHBIagcATJrENnrsRPhh3EmyY55m29zdMNSKk0gCUhfJSNoomVz4Tfg7t4rvumU7TLPYoTBIAJbFxIKIS8wRgsS51GaA7liyRLCIwSK5P1pgwzA1+DpxFQ2Dlq62gOi/7UxmgN5KBJVufNSmXcFgdSURBGAPLeKvq8Z+aXu6nx25wg2SOEVGljy3CcJAeb62zBsBWIcCg9WxRPCJtfz1sf4uOA65x02vIwYru5D3SuBiZp3YcfbZZ+POO+/E3//93+Mzn/kMzjnnHNx99929bNvLP0wTUVoYoAcM1mRzkr8eoQCrRR0OymD1H30Sf73KWAAMxBPXUlW4C0YEYG0cEIDMMvMugr2QCLbaL33/TYaooeQ8/xLg+xjeQ7SOlb1tz99N0AdQFBCXIciFhn1PnayfXUml/0ttjEhB4zlIBFXgbS4SQeoiWMRgRe0AlpdZ8R4a4gCraXtSu+hxtMDPM1hkQlf3xO/eur+Re8C0pQkRlQiCSgRNWSJIJz4qBgsoXhyYbTAGsEQiaMDOzSRkt6zW0o1O77mcRBDyQVsxWNIkphWDRVb8aY5jq3anRbQPtESQMeAUY13u/U7y8LIMVm16H39NJYJRaKvvy9e/Hgv+/p/5n1kGa75APS3mHpI+xgFWGwZLkgiSxcQlE6JobjkUX4S6rKUsFRADrOYysagQJEWv6fceNwUbjX0nFEvIbBtWulDUEmCJzwwrAVirjhKfn3g8PFeWc7dmsBIH3xCwm/Fn7oSoh8YSmZkVApptSU6/DccGrHzJDpeY+4A5MAzA1x0OsID2MsG5AKy59EGl1G58L3+v/P3/QDa6kggCsInawDAbhftZkUfs9sUYRRksIL5GSuZtx0ui3fvEfIxvh0MLYHX629FyEov9OhzidAmjeCEvzedNz0X/PwywCmJqaor/u+KKK3DffffhzW9+M974xjfiLW95S4+b+DKPhMXSegGwXAKwCKOby5mgAIt0gYXlhThlJM67uvqq9/H36WpFZBJnQDJhMjQLME08uPjX+XvhLFwEVQxW0X7p+7pJHm5BBPT1YfiNeQZrPiSCoW9L7dU7YLBUK3aqFe8o6i2DVSQR1NuMAlQieJ31P3AD3sT3j7wCBotIfFRRnxKSmuq3/01isFwrXm1VAUOX6WBpQc++GPjTCd3MCUdzc4aW/Y3eA4YlTYjSAtFBgAzAyjBYX/sGf+2RFeT5lGxR9sRA3smOyhZhuD2553IughkGq2OJoMRgiYsUSwS7B1jdjBW9DMaAIWN37v1OAFZ28loPxRhBCxVHySQ5F6tWYejKX+F/Zm3a50siaBGQEJL7gEsE2zBYaQ6pl2GwjhkTi7JlVzRekgjS66obsskFcfxMY9ygDJYAWLlx17K4nXoriaCKwbIWCyvvYGRYYl0tzYRJQGikyT9KKhE0Q8BJJXzEOdBP2mIzwCjJDNbzV/xv4LOfzbXRpUZWQQmaBgRG5wAriqKuAFb2Ws7lHlQClaYYT0ubtyAbXUsECZtkGA1pe+m7sAIGy7RyAEuZO/a86HulZ/JSy0qSX3qEvuWQkAh2+tvRguha0A+H5P5GZrEUXcXyvZIkgrNaFh8aGuImFzSiKDpcB6vbcJyY8u+BRJBatA+fcCaA9QDaMFgEYGmahvt+6z48vvtxnL/yfP5+iTAYzPTF4EUmTHpkAZqGXaUTxXkOEIOlG8Rut1QFlizByG4h2ei5RFACWI7UXp0MykUMluqBopqQRWFvGKxWEsF28kBAlghutYYBLBfHaqoZrNBgQIvrXW+IxYDKlp3AokXY4Z8E4GkAwLQ7DcOQi4MCQI1YFpsrVwOQAVb9C5+F8R9JrlIr2UKGwTKIRC2gLoKtANb23UDS3V2SNzSfjALN/zG0PMCSHT+7kwgWtTsrEfS0WUoEyedZiaBUB6sNwCrKX8y2e74iCIDAyDMe3o0/Aa6IJ78dSwRJjSQqEYyKJIIAFpQX8NcHotBwEGQZLLIY0SmDNbwYGB+Db+nAySfz96NIfP+yUUKK3Wkh1qxEkJZUkBw/k9ivxZNcg+n4p4nPYdH6ZQA+lx93iest0wsSfVHAYJGcQT/04ZMi05ZuSmx3FmAF6QIRA69b55JnNEsZLhYzWLYh2uaH6nlCkzBYGovbGBgOyuTWbQWwWMS4zfyBZrBUC47Upr1M2ZLMdnT/lhJBYpGezhe6kQhm1TlZBotLG8lCgyoHywzja/zfrQ5WfUY8r6OgH06/GIP2G9XC/VQg9JXEYM1q1nbHHXf0uh2v3EiNLnoAsKhEcPiks4GN6+NDZwAWnTBl7b8HS4O4+MiLpffopI2ZvpLB0tOq5cRVj0Vzr4PVaj/OYGVysHDKKahu3QonQDz57zWDtVtUMX/9/uvxDZzL27un70Sk9s1NO1+BPtuO1hJBsiqqzx5gtZIItpMHApkk44y8Ai0YrFaS/xmy4lot9QO2jZfc05ACrCl3igOsMBS24YHk1hX3uT5bPIDrXh2mmUyCW/W333wbcMvtAABjeDHMSWLTXsBgWab8e0o5WGRCMJvV3IbfUCZz59odABVjHDMAygoAX3pWrJqWzP09MbnImk74WpzknS6ydSwR1AkTcYywgWYsMQ1I5pF0sqqKVsDwQDFYvpkHWO7+Pfx1xyYXZPLt04WbIokg4vHYMRy4zD1gJhcSwJoFg2VVB4BxgCFEODjAnzohAQxlu4qUKLtHP58wWHIdKprnmhYa5t9bYxjX4npsR+3X8bvhv2L/S0tRBLAEg9VCIqi1BlhBGEj3iK1bMI8/ibv4P2Mczz9joXDSlBgskqdFGaw4B0u0JbvYkYZLaqghTABWRiJIDRiyQUEVixhYyCRn1WxkQRFVQfSEwaK5TAqA1bVE0BJzGN0olghKDBZZ1NRMAzbTAAJCldJGWr9LMZ6n9f8CPTogY5UqZmVyQRZEIzYIJ1ncBIDHzRM7YrAOA6wO49JLL22/0eHoLFKji14ALCIRHC6LegwtJYIdSM8owAoNwWCdu/+/cEOSb6xH8WQ3IgAr1PyOV7ZayX66YrAMGzj5KGg33YThGWD7AIBqj3OwyGrhiLdPau/evuMBjAIAfDuf5JptRyvafL/ez19bA2LFqNtoJRHshMGiEkFYsryiKAeLGQxhKwbLFRKQamUIABA1hVnFlDuVy2UyDGTskOM+Ryd0Na/W0QAe9Il9TLsEwyC24ZHIwYqIY1+OwSIPUJewLt2u5v72T34b1z1+Hf7pDf+E33nV77TcljGgZExhBkAfSYznbdq+C0jMQEvGZFcMVqHJRTPv6sciBjOZgHQsEST28sZRx0rnsg0b6RwztUFu1+5uxopeRgyw8oyHR8ZZuqhBa4plGSxfC+ExD7ZhSwArYo763qzXgV/+EkNaGbvhYrwx/yYXrSSCnTJYklED8/niRETyTKnJBSSTC2pIY2Jkw9NA4lkQPPQAcNKbxfce3IIgYQVPHIt/o5q1AAuhlggGYQXADGqGeqwGBINlhIBpxxfb8sWFDvaPZRgsCyaREI7pIoeZPnutkSVwarHU1CN0f5CAPS4RpAs2BQyWu0CMnffimnhbs3OJYJa18piHsl684KOaOKcLW3PJwUqBWtpWLYKc7wNxruz+KiYsDTpWa4YMymWJYBNesi9lsEwzZkRTWYbLXOX5GsQdt2zLNQoBUZ6C6dEhwWB1anJRc6d5QhFjQxkperHJxStdIjirHKzHH3+85b/D0XmEb3gDtl10EcIeFGeWGKyRVfy1v2RY2k4CWEesbHtcejMFZsAH1EgTg7KWAKwjakKaF0QHRiKoEYDlWCXglDiPjDspVsYQ1wQqPn83QWuOBKwitdcgq14eU48gna7qPGMfx19bxwnpZbfRSiLYEYNFpA4j1os4HY+1Z7AM1vJ6SxOyymCcCJsBWKqVNWmCkgIsKhH06x0BLEYnwxlJT8pgMQbcql8mtlt1pHQMh6yKumSC1Q3A8pmP76z/DvzQx3cf+27rjZPjBYlkyFHUuCoR2aBl1npyz3mKlW+alzUbF0FqahEEgE0m7V4bBuvQkAgqABZhIWibqNGJu3t7br+0xgy9pmFYkIO1cydw9dVYsHMCwIExuchKBCNTIRFsx2CRHDu6SBJF4rgVCrCICQCrkPyZ/kFJIpiyW/x7V/bxz1ZNx29Om3KRYSD5fTQN01r8bJxuBbBIzhQHE4Qp9u+6A75HAZZcuDykLCV1L12xSslgpQDLCvMugn0vPgR87nO5NjbJJHmrFptVjfethBeIMbVbgNUqeslM0Ps5XYhICw2XAkArt7ZpV0kEWzFYmlksEYRUGkVcVMMATEbyq4tMLsjYpQJYRpQyWAePwZmVRNAVi8ohWyCpN1qZXLzSJYKzAlhnnnkmzjrrLP5/+jr9+3B0HuFXvoK1H/kIwn/4hzkfi+ZgLdg9xR9Efp98o0sA6+L2bCRlsHyT8RUIn8gqUgbrV7aLSWJwgCSCGpnY2abDNf4cYBk+4Ez3TiJIcgKCoCy1VyeyCs9XjyCtBh36GYvohDSfb9NptKqD1a1E8DTzYbwf/9SewdLD1iYXyUqfEQJ2Ja5q3+cKwDA1M64c+Jc0hEOYtSHOtZBcBD/5cazStwFo09/oPaCbMKjsKRISwSaZGJqOfB/Z5L6goLsbiaDLXJ770ErCQ4/nJ5N7K8wP3w5tr1nriUTQVzBKdKLYOYNF+nNmkm6vWM3/9pZlCnRm4mBLBEOfcRkRDcpgFU1a3Kl8EeUUnPivOpO/t5Gdqr43++LV/NSqfdqblnJ8DppEsF0OFhkL/S0vkE8EoydJqkidoOAU4W5rvPpc6AqAJUC+OF6a3zRtLpS3gfh90oVBaMUXLiA5Uel+FnUdZZkcLMOWARaV/9ESKabN2+glsltAPFdTiaBDxn57chtw0025NkplIhCPS1/9lV/g34L/w9+n1ue5/TPS1XYAS8XeqJ5hnYRqsa+ZnL8UAGgDsFQMVs7k4s2/yl9vN0ak7SVjqUAACWq8YxiAwcizvcjkgkobFQDLJAzWfyuJILm/Wbgw41ZbbKbUCogfZrAK4oUXXsDmzZuxefNmlMtl3HHHHXjhhRf4+4fj4ASVCA7+4cf5Cn/LQsMd5PZQgLXOPBlGkhBMdevpg0oPiTZ9FgzWbCSCoBJBArCokyIqY72TCDKamB4Poml7HbJc7bvqFcNWtLnEMhFZDrXq7TY440gsU7PXu1VQBqthyTbtL62+FI8ap+T28QytNYOVPOwrPqD19YEx4G3uKP98av8OJVDRQiHBSCdtUg7W9hexUBuXvqMqgvWP8tcmCyUXwSKTC7oKDwCOLa4LdYDrhlGgE5usfEwVjLUBWOTBZxndMViFEkEFoyTlbLQAWHSVWNfJ6jAT9wljMkPrr1pR3GjMbqzoZWi+mrV1tbxEMNsmyU47iZTB8ipiVbjGhgvrYAHAAvKTNEIx7h8IiWBkKSSC7VwE9woXMu+u2/nrkCwiVcj9tFx/QUycs4shtGZdlsEifTBlh6aMPIOVXlstil9EevFsr74w1sE3wz7R5ygjF7gS62obFkxSZH4AglWTGfi89XcURZwdtRlgli1pMaKo0DAdR4zIEd8xEM/u+WawVM+wTkL1LGok7pplH0CpB3WwlgmlTlrmQ8VgRUz0Y1tarAJ+yN7J/y5ksAiILTsKaWOSP3ioMFgdSwSJ9DGIFkmqplOMR2clETzMYBXEkUceiSOPPBKrV6+GpmlYsWIFf+/II49sf4DDMS9BJYJDkc0nhDmbZdbdxJ3SwTvNhTDMlObOM1gUYPnhgZIIEgbLKsX1u1askIot9xZgkcllhsE6bcdt/DNtm3qxoVN5BWWwspP7bqJVQnAnDJahG7D1eFLVMOVCw55eUib8/5v+my2v90wiAal6ABKABVfkKkxN7Fb3Acm6Pu5rdMW8ZgP9Wk3eRxHB3XeK7+czmEuWiXOdeYbYn8jasosRDlmhpAxWVwCLgKrsKrIq/CBEkK6iRyoGS9yrpjnTI4mggsGahURwWBdFde077uL5FjkXwQ5Xzw+WRBC+zxmsEpUNUTvvglVhyU47CS4RpAthoaW+Nytxn6PFhqcDwYodNIlgOwaLAhJiaU5l5hRgjeg7iwEWNZjIAiyTGB4l700mDJZq3E0BFr3Ps+ElM8IgLBEwQevm+fBJDqdll2G+IOohnQxRM02SCLKIg0Agyesh3/UZdir0ahkOlc8WAayJMf56YQISDAMHFGD1QiKYRiPqnsFqKRGkjEvCcqr2mz7pNLEPMXIwDMBj/fxvCrDSenwA0CTjecnJ3wf/bSWCTNyzLBqR5oSWOT1riWCUV1q/rGLWhYYPx6EXEoNlVHntJPpAA7pnsCzdgobU+qgZr0Awxid6AKBH8QBGAZbHDkwdLGQBFgCcckoGYO3tnUSQTC69IB5EeR0s4hvj+eqHtkpekf4fRSJn41zvFr6d9ZzQ/HcbqmvZjUQQEAnoM1YMsKRVQ0MBDAy/tUQwSW6v+gCq1Tg52hvin09PjSlX1kJi65w6K0oSQQsY0OMJa8cSQcuB0SdyFYJhISk6Ut8ktvPkAzoOBVjqQsPt+hydyHRij+wSeaoV5n88RyqoWe/JPef7+d93NhJBgzDNlmZKK5ndAKxWDNaBkJ1ovihG2sfI/U7d5ookgtTtLYkUnEgLYawAYBkGUCphARnSa8EEfz1fEsH7cCFeba0HHn4YT54njFiUEkFVDhY1uaCSU5KDVbLL0FKG3RASY3qvxnWwWkkECYOVXPcpPV/uIe0zxzZix0Fbz/8u/BzpQhcBvfT7BIEP/9xXi+/66vNgkglopDM+kZQYrPse4G0E4jGE9v0JthimY8A2DaTWg74OoJGX+jVfeI6/vsB9RHxHX4CTXgKsVs+wjvrg9dcDRx4JnHoqrp74EYCMRDC55uUASgara4mgKZsy0O0l6fyAuF42MZYyDIA6JFOJoAQMSV07pb18MuUO9Xix7GBE9rfrZPysryJ137QRmLqJdH09MIprXrZisAA5P/XlGHMGWJqmKWtiHY7Ownj3u3HNe94Dc+lSYCrvCtZN0BysQbMKa1/8t7dnh7RdUBfnMW+4se1xNU0TMkGzGQ8onhcP9uk2YcJgMSJnYJ0xWKkNNzA7But240L+nr0skRedfPL8MVhkcun58WSCt5s4D9H6LTRarf7Rz0uY4O9ZBflcnUSr1b5OJIKAyMNqWDKDFQSQVo3FSYudhQCgnkysqh6AalxHw3cX8s+navvULEBEJ+nxBpJE0Ab6tWkAbRhTYnFomnLOBK2tc6L+pNjOlX9Pm6y4u4ois+3aAHQvEZQAVpSfgZcowDJ6w2D5CmZtNgyWSSSClm5KWnwJYLXJRTvYDJYbWqibSd+zRN+jAKto0uI28xN5zmDt2Mrfq4bN4nuzWpUYrDqb4K/ni8GqoR8brDOAc85BY5GQcColgioGiyglfOK4OWGKbS2rBCtdSCEua8Hah8U2Tz8r5bnmGCxDwWDpBSYXALdpD1rMhFha5iQUiwK0kLAf+hIgsQ0bJqm7BD3gE0la68ysVOG86a38b5e5ShbTNDUgea52IhEMEffJy9Z+Cb8XfIe/36lNu+rvbMyZwdq7F9iyBXjqKTgJOJckgkneWmnREuC443K7dy0R3LWXv+43xqTtJYmgJv+O0vEyAEv1DG1aoiOV+oby7SaqA/8gJSHNisFatYz8Fd9P6eJAYBbX9GrFYLU638slZgWwFixYgIULF2LhwoWo1Wo466yz+N8LFy5sf4DDIWJiAqXxcWj798/Zqp0yWAPlBfxhlVaOTyPwyGr7TPvEegAoJdIjx5hCBTMxwEqNHUINYVLfQScruj7z1ZPkTLQDHO0YrN3GIv6eM5D0vz/6I4z87T+LjStjvWOwJICVMbkgzkNBBwxWy0FHI2xND0wu6LG7kQgCQCWZNGUlgiPb1qFsTAAAHI26gBUzWCxkaCYP0MqS5cAJJ8TmDa74Hafq+wsGYtkOGSiWCLZkb6iLoOVINV/SVeYgiFef+fkseSVVv/wKWAmgdh2xf7cmF/x1BxJBWoRXBbCos6FuzvTEWMZTMFizycEyDMo+WtKEzFov3Gf9W28ubjRaA8MDMWeZ1gf52FdetJy/7+kdMFhe3vKem1w89QR/bxnbV3xv9vVJAGvKFxLB+WKwgNbXux2DZRMGgUpO/79FIq/FHF5MTAAEg8UmRP6WUatLDBZj4l6NN8jnYE3oxRLBtC5RqAOsYDk9SvJPHMaIyUWGwaK1JQ1LAliRLlb4Kbi0YMAh+c0e82Rgw2wxAU4m94UAi4n3GGIp24rda/GaQPSp+WKwZmVesF24ab6p9n15/zAAS6zxy0cdJxWmzp4T6FAi+JhYKFtk7izcjxGAJakBDOAc9hj/mwIsicE64Wj+unzWa3LtDpcdI44RqOcH8x2zMblIF4EAwIpiAG8n8mjfKDa06nQx+eUaHa5fy/F3f/d3PW7GKzhsMnF220+wWsVkYwJAzApYfQOw01UzTX5wBGTCZGqddQGn4QEGsMR8CUe7TwPeKs5gmUwYGmh0lSdwZTrYC4BNLwLHHisdux2N3DaBkuruUyCybBmGm+Q8vWSwEvmCxYBmUtSROylRBqvgIdXu+6aDVdQjgKUaQLuWCCYMVlYiuPLFe2CeHU+uKqENV4sf4qca62B4DaiGGJoIXD36ROC448B2AU13MX9/qjmp7AMRcR3jOVgZieBKdJCDJdUssmEysQjB9osVzpDUbjKzdc0uvBD2XSX4fl1yUuzmAdKtRDAgdrkW8j+eY5Z4wV7dbLQ8fyupncRgKdo1G4mgrmesrKlEkE7AC5jfbts9XxEwBiTAm4J798gVvOhVMcDKL2ipcrBovk8uqlXJ5GLam1Ceq1fRyfWmDJZUNy8JWSJI8zlkExnBKBEGi8p5DVsqhZEWHlc9C9aG5+O/sBhb5VQpWAABAABJREFUrHhSq5K16YRRcP0AFSc/zmreFFACjgj3khwsmcEyaV6zbkmfR7ooWRF4MgOv0WLlgSuxJovZuJBwtQFYTebx5fIwAVih5cQSu3SbecrBmpV5wX4Bms9v3gGAGEXQYr1mXh5It6XnaykRJHK9yJBlpXQ/bbuQWtpN8ZsaBnB+8CgeSf72Alf5DJVcBFVtX7AYSMi0IDoAg5Ui0uul63H+WCfjJ11AsbR4LmAnZUK8FgxWp3Odl2vMCmC9613v6nU7XpHxrUe/hX3LNqP6GuADD2HuACuRCA42AfT3wwrjyuNZBksuitghwEq6StOMXeQog2WEOnF5IxJBvyENPq/94jXAb90e1/H4+Mf5+7Nd5VBN7OgDargyLDau7u0dwKqWgFrsFrUhPFFqr0Yf/gWjR8ffl6ymWWZvAFZvJIJCeqb5LndUq2pljCOWnx6hvwTTmwEwkDuWynGMMWDGFTrvKXcKplIiSEFn3uSibgPVLgGWYVgwCJMbPPIQ8K4EYBFWIgewEGv7635dmpDMp0TQJ5MPw+rPt2flamBL/HrcqLSU5fLjtJMIKib6aokgaX8XDFYQyHJLr6CYavZ8B2tFlOZgOqYDUzMRRAG8JcO8kE+hRLAFwPII2AhYpbVEkCgNKYM1XxLBE7ARV/oPAv9uYWj8fABHSedLJ2BlswxdywtjLOI8SHP6qFOqqZsJoxRJhVglgGVa0CSJYCC1gz4L/l37XXwX78ZpCYZRM1jiWEUAK0hcc/VQIxLBjE37ww+I77p9J8xjz+B/h7qYgFJwaWoGdF2cz2UuSkyMMReyhwTDkDxX/UIGSwCsSIvHXGY5KJFbspVN+wGXCBJ3gwjyPUNBCnWwpdGtRNByxHFCQwbl0n6P3oU03dzetUc6nkbUOa43o3yGSi6CirZTKbpfUCdzvqNTaTgNXgfLq8A04o5mh3HhZd8orjF6WCI4y3j++efxiU98Ar/xG7+BPXvijvjzn/8cTz31VM8a93KPT9z+CfzxksfxNxckb8xRIjiRuAgOuogBFk+MzUgEaUJ+xwArHuCbJmKJ4IIFGOuLdbk+ExM5jeZg+SKPoIoajng6sef9kz/JtEe8no1EcKkhHJvsUOQDSgCrhxJB144bZ5f68AxOkNpLV1f9AglAp4NOpPcGYPVGIhivSkdabFZAAVZa+b6iiQeKbwAokEiqHMeCAKi7Quc95dfU10SjfTfua1IOlgX0R9P8mEUR5AoNk2LaUcj3jwjAslQAK5GR9MLkIggDhFHrrN8aWUCYOu7i3Of2uSIfcbs50t4ghrS3UCK4QLg7ptEpg0X7m8RgGbJEUAJYrLV05mBLBAMC8h3DhqUl+TEdgGyVI2N9e1wXyid9krFyawYrEJ1sijBY8yURvAK34x9r7wbe/nYs33xP7nwziYxOJQ8E5Jpx9BpIDJZhcYlgYIg6QVkGa2alcCoOzjhNagcF+XpiV95KQkYZrKanvnhcqRHqRCJIxoswgEfy5+zpeqFEkMrzLc2E89Ba/nfW5MJkuloiGAS5H9olixKhHgOsyLRjF770+3XBYLVb7Gk1fnTUB8lcJ0ymoZzBIiCF5pTS6FYiqJfKMJPPQyMo3C8gUkvKqhtGZm7jNpTP0JR906Apa1ceCgCrU2k4fbO2aQMAYMgL+O9tJ4sTrgkEnvq59UqXCM4KYN1111047bTT8OCDD+L6669HrRaj28ceewyf/OQne9rAl3OkD6N6et/OgcFiIUMtiCeunMFKHh65HCyfDOKdAiwtHixcEyhFDaBSQTORNwZhWcjaqETQd/nNVEE+94C3fY4SwYsMUVeF0/qui+Evf11sPA827bkkWIAXdwYAFqoH0I5pc40WZlU/aDqJVhLBjhksqRYWyY9g4net6EIa5BmAVgAwJQZLc4AoXgGbdo/g70+xGfU1UbgI0kLItQ4ZLJYBWAa1nk70/zGDRaWEmd/A9+Ekk+te2LQD7VeOfTKRUslGJbcss9n23gHIan6RRDDM/46d5mBJEsEMg0UlRRS8tmOwDrZEcPWUYCtKmzdzmbU0OS5ok7uULPokUZuKJak+ZbDCUvG9eeutGLpDtGHSm18GizG5DhaVtWclgiqDC0BeIKKmKVfWfsRfm2EMYgC0ZLAi6vjZLxhwAFIfNJA8nxRSMD5ek1pybsECZ2qAITFYR4tcGn/NNZJ5hWU6MEkuJJUIZhks51GRe+gyGWAZzBASruS52rBt4J3vzP3QLinpEerxgkhoO3EdqSQOqTpYNSF1bslg/eA/ga1bkY1WzrjZzwEAjsNNGVKApdqPETty+syNGSwCsLyG8hna3BEv9pZCHVo9b2jjEPYx9IvnRPMZXY+ftRqfo5Z8QywypADLACJX3V9e6RLBWQGsP/7jP8ZnP/tZ3HLLLbDJYHvFFVfggQceaLHn4aCRrrzX0ks4BwZryhXOgEMcYCUMlgFeJR6Q3e06Blg6BVjxwBGmEjZm8RvpU9V/5Pt4pshFqCLeJ9ABvO1t0rHnKhFMNdUA4JSq/AD2pz+LgXQ8mweAZRF5h8rkgnWQg1X0fcMQ0mTB6hHAmi2DRUHMq617xXFC8UCiAMvXWwAswmBVvvmvgBcnDE9Ew7GrIICpqKls93PmUfw967iYPdQ1HZUEANaXj+CBwddJ+6giAJH+6SZMm6xIJ/WMGINUTNvM1oy78UY4L8R6PHdmmr/dnUSwmfm79SILBWS0/6VRMgjLZrhdAaxC1kWVgzULF0Fdl8GhJBEk/UsF6NKIotlJXHoZUjHSSOO5gK7X4A0oWhV2j1iSO16tESsPfFJHK2jFYBkGhkpD/M9Jd4K/ni+JIK2DBau4DlYRg0UNYihTt5I9I7YxbGJyQfpOxvGTShDTz1Q5WEYHDJZBjGJchf15FEVIS50ZhMEyCeMamIa88GGVpPGESgTps9fSDDgkj9INZBfBFPxRBqthl4Dvfhdw5OdBMwHnJgMCI55XhJYjMViHlIvgtBgvU4ClysEqB+hJHSw4DneVZGYxg+VRBov02ZjBIovHRCIoMViN+HuVm+qLUH1WKLyc5l7lNvMdXY+ftRrqyVe3PaE8oAxW1FCD98MSwVnEE088gbe+9a259xcvXoyxsbE5N+qVEinAaloA0zAnBkuyaH/TrwF/9VdSIVK6CijnYHVWwNbWyGpOYoMdpquaoUUeIPJEKV2t6EMN738DMPjHwPcWi4Kj8T7i9fjA3bj6uqvxrP0j5eeq/ZghNrDT2kSmCQwNCav2XtbBSibBtmZCSybqfPCQimCqR49OJJFBAGik+OVcAFZ2xUg1SW0XUuK6KVbvWChW4WzDEaxpC4ngDFm5qwYaYNsIAmAHjkAjMbqYWjyoHIh3a6I2ibVspThOci/VF1TxyKJr+D5FhQyDASErzEoEWbJTEGRysLKLEY7Dncpc0FV2cp52EsFGTfq7nTQnawedDZnBctveO0B7iaAK8MzK5MJoIREkNcW8AuYXaJ87diBWRDXCxpc0C5Xp+G9v13a+2l5ocqH4fdP8Bgo8/LDS8t5cUBb3wURzojt5VpfBWAywIgD3rwDGHfH94/Ekastg2UuJ2+L7/w9/HRGW3rRsaGm9Pd1USgQNw5KNhIjjZ7yB6IPfmfhNrMOZ5Nkk2qOUCNbzjEJAFhIMRiSC1HY+a9NulTISQcH4Sy6CusVzm4G8i6DBDNHWhD1hUAOfdPxxGMAS8BdlANZ818Hqqg+2AFiSUUSAntTBkgBWCwZLlgjKAEuyafeF0ZNkcqEx0W4n/8w2qcKlA9fY+YhuJYJscgKNpLubvi3qnZXixSKmA02F4RLQXilxmMFSxNDQEHbu3Jl7f926dVi+fLlij8Ohimz9nrkALKnIcHkBUCrBIj+v5FBFmIXOGSwKsKaAyUlek8hkGr9RQk+uFZHeVGVzH75+DjBjA98a2CQdm96EzxzxZ7hl8y24zf6g8nPVfqEKYAHA8LAAWOXxnmmevYStKG16AScgXoFNB42dR17Kt5tYenRuX9puul+WpmcMAGHmLKt3DBadpM5GIghLrN6xUNasc4ClA3pBLo0kEYQNaLELZQgDoRtPHKfcKeVAHBKpEp3kpPdS3atL37eokGHwq2/hrw3dgEGub6BRiSDJwcoyWOSh7UmmGWKTtgxWpvBsu4lNeb+4dxa9uCH3ufPIev76NPOh3kgEt+clOrNhsDbqQlZlXf5aqTCpDLCKGSzVxO5ASwTDiCwq6Bbv854BrkIoNLlQTKpqXjyeZBmsVvfmoCPy4sYb493Js7qMIIglgl8/B7jgd4D39v1fwGzw8zWDJqLEurKQwaIugqTvRFogbcOG4vnDtC7yeiWAZdmwG+IaBrt38HbEG4jPhoNpLMK+liYIlMHy3DwAoY67eqiLPkcX0sJAerZYVgnmAiEFXa+fIiSC1MFXN+AQxYPLXOnaGAlDQCWCxQArPoETAH4yVkd2BmCxFgArA77mXSJIAFYsP434/pJRhA8lwOrW5AK2zRfDmCGznlIOFikUbBPZcvwbUImgkF9LJhfJ86IcqBoBmIR9DcODA7C6lQjOTAqmzfSEu6nXv0JsU7Aa1G4h7zCDpYj/9b/+Fz72sY9h165d0DQNYRjivvvuw0c+8hG8853vbH+AwwEgX79nLhLBySYBWKX44WuTh4c8ISISweyksSAsArB0bRpYvx4ai1deF7EpAXZ8NcCyy7vSYvSYMeRZr7TCa8WGKTPYi9Rvut0kkRErbSo1wqJFAmBpEZqayFWYS3jJw8xmgJfo/PnqXXWR2K7AmKITeRZjwDr9FP6etYQW+usulOAtc/52IQMskeDLIqJZNwSo9w0ABYBWMrnQZRkP3Di/Ysqdgm4Q6/T0fIQpouxrOrGrebWOJtxSXoduSrbKLBIAa4YuLKgYrLTfaxE/ZjcTfrcpr5q3kwhqTWFv3Dc9kfu8RFYSdaPYpr0riaCiOC7No1EzWPGkiU5ifEM8bqwFwxKDRV2+qJveXNo9XxFJfd7m4ywFWIUMlkKmVU8YXY8ALJ9VoRc9nW+6CcYHP4SBxFmOMljzlYNlw8O9q+K/92n7gZEN/DOVaU02soxPGlKOo24KkyDDFwBLKqngoH+vUMkETzzG2xFvIBcaHseClhKy7f3C7a+pmBBTW3Wdmlw0iTnNhiflOli2k7FpJxLBEfF8sK68RmKwsiYXRuJaR9mTSAslyWQajcVxra9xthRestgUWXbnNu2uPA55bcahOUsESa6+gRAlCEm4ZNMe6kqgMheJYNACYNFxjc4lVAyWSgXSTABWiWncUZSGRQB12IFr7HxEtxLB+qS433RPSJctompqFvSXQ2G8PpgxK4D1uc99DieeeCJWrlyJWq2Gk08+GZdccgkuuOACfOITn+h1G1+2QRmsiS//FXD66bM+FmWwUn2+dfar+XsSg7VQrH6a5wvXsVZhG2Kw0bXpTKFhk98oV83cxLfz6oKFsMq7+fvuHpn9pKscYeoSp0WAHuQ+V+1HaxVJZhDDwxghz40G5i5fjaIIXsJw2AxwEZ+Pf0+jvUtQu1X4VCL4kiFWiKxFokZUt6GSH6o+axVUIviH5me5VTAjhX9LlgBYngFoRS6ClMHSS7xdADjAihAhMsV2af+qRvv4exZx/Uondo2ggf6ofeFVKa9DN+VCw5pwEXzcOEnaTgoiEQQEOOpGsuZlCs+2kwiyQGxvKnKwHEdMcCPT60oiWMS6+ArJnuQEpwJYAGCIYtNBAIBKXjMmF3ZJtNvvEGAdtKRpArAc3Zb6fFuA9ct7coerJb+pb9LV7bJqfhbH2rXAV7+Koan4eo43xw+IRLBJu3//Dn4+VdmFbNDFEAoiIl1eMEmdQaEHou+sEqoYc3gxdHIfpvexikV1GLAfC5USsrTP1B1hrOMppkNU0kcBlklYNH/DE5Ixi2WXpfGEfhefnMIcWgSbfBeXuRKwkRgsUv7EXzoCPPqo1M507ImCMkwr7jjjR56BHwZiwbtlDpYrf+YpygnQaDV+RFGxcoDHm98MvPGN/M8+CNdYyeSioE5n1xLBUgkOl69H0vbyWKdmsAwDiJhcLDsrtYuiSDBYTD21phLB6CAxWFlzjnbjZ31aPHN1XzDrEsDy1eTAITFeH8SYFcCybRvf/OY38fzzz+PGG2/E9773PWzcuBHXXXcdjE5nbIdDAli1ay4H5iCvlHKwbroDeOYZWP0CSEkMVkWAJfPEfJV0VVCApWk1RK7LAZbGhF7+IveXfDuvIQZNoyxoZjczZtKbMNTJoGM2c5+r9qM5WFIOCmWwADT1uQMsFjHOxKkYLJNO1BUrjbTddD8VgyWZXHSYK6cK5bGT6LYOFgBcZf0UVpI3sq8kckFsu8KL37aUCFKTi0TnnrZpOTFrCfUJ/jrNHTtHF/3LevJp/ppO7P7iqcv5644ZLDppiwhzSiaA1CESgMRgAQIcdSURbHYnEZRcrhQWxg4BKqHp9YTBUuZgadQ0Jz1QFmCJ8+ckr0amDtbCEf6Zd8qJ6kZDPYk60CuioUbyaAwbZsJg+QYQJjKzQolglL+WtURm6590PH/PbHVjVuPfOC02PNGcgGG2ZvvnEqlEUBq3+3fy83XCYNlUrv6LUf461DP3YTqh1gPRd1au5NsYy46ATsbClN1SSQRTBkslIeN9h0r0FKY8hRJBYoAQRExahLCtuBaYluZ3ke9Cxx3LsLh5VHx+V2JQ9DDPYAGANzUOzGQYp3RhJnD4d9tz8uX4WPAVvk1LBiuz0JP9Oxs9YSZe9SpEV12NH+NXAYh7RrJp19TPva4lgosWwT41ZivdhElXMlgEKNPSEaYJ7GKiPIBHaj9xqXMYIDWlLIUFAEufJ4D1xBPAk092tGm3DFaNACx4fYLBIuyr35yCKg6F8fpgRofTK3WsWrUKq1at6lVbXnEhFUj18jKcbkKSCN54K3D5VmlSTidJkpyh04n70HIkRoC447TfwXs8kZehEQYrDMgqD/P44OOXRTK/m5mnKhksIJZ7eP1tV+EDU9ylUuL/8DCGnxd/NvS5u/ZQCZcKYA3W9/JChcbEruzuUrvpfkoQpMsT0tlGryWCDQvQE+nMz058H4B/AwDYA4ti5yVWR81wMBHl6ycBwExT6O+rZsyMpdfkJHc7tqdtC3cAWMHbnXdWFL81XawITFI0uKjv3HErMBS/jqVJagYrBVg6TGhZSqGAwepmhS5beLadRFDKedMVAKvcz1+HhEHKRjcmFyrJXs7kQmOAnlm2zgCsEX070jvQ2rVXNrkoi9/P61MXF+XnSg/fYZJ274P8BoYt57q6M3BQPImgAEuL4rpy9WSixRfBmAXTKKKvwAHWUNIMj3nodxoAKvPKYEnjdhGDVSQRpM+iRx/hryMiEbQMC317twEVAFoEY2ovgBE5B0szoBOVQAqwlAxWIDNYaoAl2uX6+YuX2sADwIPhhWJySdiNIGSISP3FVO5qhBoCAxjWdwkGi9w3pm7CIdfFDZoSc6QVACxfB5BxPOTMN3Pk+9kX91JLgJWpzzYbBit7H1rtHlmf/jQCH/ifyVc7Uclg9aYOFkDmBqaHWL6s5fbzTfE70rxQwwB+yN4N4GsAALe/kgMqUu5Y1J7BYr2SCD72GHDmmfHr9euBM85otXXXJhf1ulCERF4fzGSoXrZjI9YlwprK5ocAHJfb95UuEZwVwLr22mtbfv7lL395Vo15pYXEYPm1Flu2D0kimNq0T6llGdnV+07CssgEyNHgE0kBZbCCgNjxMp/fTHeXhfzRNRHPlnV5JQnIAKxkNbLdKnxAcrokgJVhsFxj7gyW5BalkAgu3vkUkKhOSnufz+4utZvup5IIVo3xFNNKk7huo5VEcDYMVsMEtGSl3iOrcI7pwBpcAOzfhwm9imetUwDkV4XrMxP8dTohS6+J7oqHms525NotOSuS35pO7CjAKmSwdmzjAMvQDDlp/czTxb7J+QyVVIXo+oHZMVieXzBRKghqi6+qjUYlgqEZtL13gA5MLhQSQcqIZ9lWcWCPjAvAKuN5AbA2PivXwSqQkLVq98EyuYhyAIs4wTVjgFVYB4uA1aEmMF4GakgAVkgAVqv7MgOwAECvTACozMv3ZwyooQ91ywK/n/uFuYTEYBVJBAkgaZWD5bheDLAARG4NwAiCSH5eaXQxJPmsVQ5WqzpJ/eS5G0yLZyhvK2XhmU0YLHHv+QgQrVgJNDbF37UvyYFmDIEBDOl7efv8sT18P2vbDhlgeTPwq2KC/+/VD+KraVupwYIBLtEGYmlaOm4sDcbl+zk0gVAH9FACANnIAqqsZDAb3YwfuQiCmG3p7werLASwQNpfysFSyKCz5+qoDhYy6hbDRxDIddJME/B+49eBmx8EANgjIu+ZGo0A8RiVldpJ9vKh+gamKQSIZp9zL8X73y9ef/jDwK23ttw8y7y1+93q9Qn+OvT7SQ4WAf2eev76SpcIzgpgrVu3Tvr73nvvxdlnn41yuZxf5T0chSEBrGeeAIZeDSxdOqtjSQxWE0BfH6ydYjD3Z2pAnAeLYEbcDGa99UCahqWRwolGU9KmI2GwYvtvmcHik82ySM53DcSOiUl9C3oTMonB6kwiWAiwhocxQojB+QBYWQbLIOdnBbkknUoEL9dvxo3puSZnD8BbSQRnk4M1YwFGsuIZkMK/JdMRE2WSpJ6N+ozoq+mELN1WcwUDozGRqydkk2pnRQqwfGIHXgiwMnWwpNo6xFxlhf4itgGwfMWBMhLBtG90JRHMTmzaSQQJwFJZ91MGKzCLf4OuJIJRwFlZVTuDAIUAS1pdpnWwLCFlCkO5ppdfIC3l5+qw3fMVkSb6l2M6XBYLCGlV0aowtfNfaA9iHJOol5LckPR7h1br+zKVCJKuo5UnABzR8+8fhvG4/lF8EX0DdwN4KP6gj0gEO2CwqJzVY2qAZekWDLKQxBLXu8AjznuaAZ2w+UG2DlYmB6udycXRY+uxNjH8C3e8mGs3XYxEaBYyWOyE44D1cX6dnTgImmH6HUnR5B3bxPdd/wSc404CsBEA4AWyTbsekWcLndxnABbdZ0WwN3NfaEBQAuyZNhLBDIPlF28LzJGZ2L0bOOssAID5K28FcL20v8RgKWTQRefqmMECkrHJlvYzjOIyGNnfwGWetF+23aUC23K6kBf2CmCRos2dDABdSwQveg1w+7cBADu84/AqBcAKCgiCQ2G8Ppgxq2XxO+64Q/pXKpXw7//+77jjjjtw++2397qNL9ugq33up/4U+Pd/n/WxpBwsFzGD9bQo4ugTx7Fg8yb+2rzp5o6Ob4JYpZquxGClhYYZA3w4sJKbxguFRFACWCYkS3p+E2ohQlIXJV2NbCdz+qUhzDykQfSYY7DopFfxPz2zxwArjK3FATJ40AG0IAer0zpY1H7esotlU+1CxY5lz98uiiSCfhZgpZMfvVieVm8QgFXq5+0CALhCVhgxYYzCmMIogUgE6b3kmeJBV2hyAZFDFK+Ka1wmSGvrlPT4wWGpngS9kAguk81LVC5zUrslW3xFfZhyBalilhlB23uHtrcrieAeGfx2wmDJ4Lgknc8AmUDuL5byHgoSwcec0/hra/UxIm8IgOvmAZbEYCVOgSYDBpbHZRxqyUTLS65plTD/yuiLF+Yog6WVYxlPr7+/pC4gCxeSRLATBou6CJL+9Bh1SjUsCayydBHngfv4e+buMQlgpY6fQiIoM1hFJhe879A8Ei/PHssASwBfmcEKZdl90r4UYDE9EhJBIgE2DQvO7/we/9vVmOwiiM4AFmW9DWby+3nZhtswgzIWJiYqrQBWdtzJLvxko5vxIxfEoj2sigUhldSu9HsfUB6ia5MLAPbTz5INXHlsQncAyyNOzEqJ4PLVynZbdH7QZjGt46Du07aa8aPRtURwUCyuTntHCJMLnbDSBSkur3SJ4Ox1RySiomqeh6NlSAzWXG3a3QyD1d8PW6MPDzG4Sjpws0ObdkJ5H7X9JllSEFoIghRgWaI2UEgmCioGKwnV6mP8d2cSwXQ/XdNlyeMVV2DkmwK0etbcc7BkgCVGCvGQoQnY7RmsVnWwpPwEOz+Z7jR6bXLRMAEzeSBf/uJX+fslizJYxQYLMyVx0sr7PsjbBQDMFaYZYSQAcdq/pEk6YXDoveSSfqRsQxQh0GSARf9nJHGe6fF2Vqhg5gcH4fzqr4nzzkYimHnIus3WTGVIAK1tKfpEqcRZNWay3kgEkT8ILVbeOYNFFgysknS+KDR4Cpf3olpay88Fub0HWiK4y1jIX9sjS2UGKwFYhSYXSX6fE2q8z6aFav2k6HQfczuSCC6QANYEgN5/f9r2iIAXSSLYbQ5W8vwJQ+Ae43z+vqmbMMm1DBMwkoIoIAY2qhwsJYMVFJtcpNdXh1zbKBv+XpFHe1S4RW1yAabMazYSNyRGbdrJxNwyLDiEoXEDVzqOkbQt5yKYBVjEKMcIBMumWwbKaHKr9q5ysEqtHwxzkggSgGX/8N/wAlbj1/AffH+JwTr1LOUhuja5AOBsIznR2bEp2acIYJkm8BZ2I//b3bFV+izb7tKrRb+W2n2pMGDaVDlBuU3X0SXA6loiSMGTXxUsLskBDoi7LY1u3GpfjjFngHX99dej2Wxi8eLZ20i/UiMHsHpUaHgolQhKAIsk/jO62tb+hgQAE+JmWr3159IES2awLMJgCYB1dPlhcX4DCJuKPJnsJK1DiWC6n634LsOVYf7at3rMYJHJgHARpKurc5MIUvv5XjFYvZYIjjSEk1/JcmDvT/qhHuKy+g3KY9WJE171+FN5uwDAd8XkNQj35dod6e0lgm6SxEyPK0UYIqB2yQmwMlhi37tbyJ9SS18zUgAsw4CzbKU4r4LBaisRzORcqWpO0WAEYFkqgEVYtcDoDmAVAUNaRDkNP8iA2E4AVkbemT2flQIsrdjj+VBYEaXFXm3Dhj8iZN3eBee2bJOboEiHaRLbU/fq3JnRDLWOJIKUwYpK47lz9SLo8SLq8Frdw93xOmGw6NjshSRvKmvTTvKrwmScCAjANywbGs2XRAZgkRysv1n1DTyIcxFFqXxdtEdlckEdA/l742IMWhXuEJNLWpg8CpUTczNMAZaQCPpkO9OwpeviMhfepFiIfM3MA6KtLRisJsmRMQIiL3XiNqbFhlvatGcWUTyz9dRwTvchAVgAsBovYRH2CSaI5jJZ6uferCSCVLZnurn9DAPw7hYKrCyDNcLEHMsj9QuV7TbV7bbL4jlKZepzCuKyibe/ve3mXUsEaX4VdRE0yCJDAcA6FMbrgxmzAlgLFizAwoULUalU8Gu/9mv46Ec/ir6+vvY7Hg4pJBdBCz0pNKxFQD9swLIkOloGWCRp2FJrnLNh6KKtTGtKjBhCi0u4sgxWOtmslraBhjsjBlmVvCNuXGcSwXQ/FcBaUF6A1Du11wCrccEb+Gs+eBDrJFVBSKBziaBUI8aZPcBqZXIxa4lgArAYATxly4HFBDNUjsRkgYbK1jltk+cKu24/FO5FXCJIZZOEwaITu4YVwYSQ+eUiCCSAldasMb34u7B9Y3zftJyJUeAKRROnVQxWW4lgBmBlCw9nY091iWj3sqPyG1Qq0BJDmn1mtScSQb+UZ7lzdbA6kAhGGQYr+6C1kwmpPweAdSBWRKkRj2M40Evi2Zc6IBaC1ZTBinT0EeOgmleDn7ClBtO7BlgoTQCYP4ngn+AvUSWSXeghUN3TuYsglQjSe5OMH7FNO5EIJgsWQY7BIrkfyW2ZdRHUoOHmpb+DF3EU/x6qcU+XFiHzAMsnoEtjBllII/uBwb/7ztx3NSMBsLhEkGUYLFNmsLyamMSfPLNBtDULsIiLoFsXFtk6NUjJAKyWDNZC2fG1XS5orySCadA6WJJEUCGDzp6rY4kgBVhZ+XKyj/ecSKvIAqyQiba4VMqpysEqaDedkwUK86BZxWmnxSBrcBC49NKWm9IaZR1LBDdt4K81TygPLFK6J2CdA6xXEoM1K5OLv/u7vwMAlMtlnHLKKTjllFNa73A4lNFLBivNwep3Ab0/LtYqyTKopIdKBDu0/zaIyQWDC/9d7wD++a8BADvYai7h8mBzgOWHAb+pZsry4O42ppHenqrVx/jv9gyWhhALjZ3YB8D28xMzXdOBxiKguheB3VuAhYUrRFNT+pvmB0A9enQqEZQYLGIZ223Mh0RwKM2PyAIs8gCJIvUDnU7IUmYsbVPDFUy4hwn+mksE6YTMUksE6zZQQhM1WOq+kwFYnMGKNABCPsh8wXQpGSzID2FVoeG2EsHdO6S/Xbc1g7WnKpytjGNOym9gmoDTB4Q1uGYH7C/UDz5JImjpOTNImkvSsUSQMlh2KfegjQFW1JLBOhQkgoPYIdw9/VCabKfjQ6FEMAFRdqSjetNtQFJaJwZY8Wsj1Fo/mYeGgNe/HguWTgGI85Pmi8FK2/5a3IavaxkGpH8HGDuisxwsSSJIWCcKuo0sg5WMMdSQxi4hWLAQSG4b9upzxLEAabHNIpbbfPxIj5P2HSIRDBQOngHp51oo8psk19H+KnyyYMglgjwHi4IAOYfU+ca3+d/u/j3wK6I9OpUIEhdBX4csESQASwtsAR5L8dhUTk7ZEmBlABUtnKyKOUkEqSlDEn2oCaldQ1zL8vNbgGWvym0/K4kgvamKJIKEyctKBBkTz0BPSrOI/5dysAqYN7neYo/QxVe+Ev/rIDqZe2SjfscvgNXxa8MXC2O2SQGWmh1tB8QPM1iKeNe73oV3vetd+PVf//XD4GoOMR8SwdTgApBXS6i+XLJp75DBMiNCB2uuVGg0ZCU+cX8RqxEkA5GnR/ymqpczK/UkuT/7cOTRQQ6WDQ9lI/7udkPxULjsMhw7kySA273NwaKJ+fwhQwblUCGtAjqXCDIKsDqUcqqi1xLBjdYq7DNjJiUgk+aS5cAikhsNBQArKVxowYC1ZRtvFwA0XMHQNCEetFwiWMRgkZXzWgKw6HGlCAIwgpd4DlYColJQFfkBAVgFDNbG5/hr1eS6rUQwY+iQ5vAURUCcp0qmuk+Y6W9guC3vHb59mwefajV7NhLBThksTy/O6T0UJCevCe/gr50du2STizYg2x2M+6mzaAn6yPhRb04JgNWOwVq4EBgdxcJP/TV/K3T2587Vi0iPZ8NDMztp7dvZcQ6WJBFMZX0T03ibcR1/39RNSdYeJiUgJIBl2nLNOio3BHg/dMy8BFXVd6SixX6+D1PZoBYKBksCjGefKeUppgyWkSgnCiWCpg1nH5GdeQ2JGdYiR7SVMlh/9nHgrW/lfzdnCMAiVvJaSWawWMQKHTpzAKudVLmL8SMX7RisKSHLLP3b95WHmJVEkJbaMAokggT0ZBksFohnIHXC5AzWTpGXVfovka9Fw9wqlDwj3mblNvMZsxk/66QUS+AtEAwWBVih+ll/KIzXBzNmxWClsWHDBmzZsgVeRtr2pje9aU6NeqWEpMGfq8lFIhEcsvo5TVzEYNFB1iqYpGXDIADL1zwpGZdKBG/ErwDsSAAb4ekRv5mmy/LA7laIzCMd03IMVnuJoAU/lkwgXhXOxdatWHZ0gE0AIqveUofeSUiOTZBXuOL/2+dgdZL4GcvTxMRiLoWGey0RvNW6EOHAJQAARibNFduR6nxQO2saM9PxZLDaYMA99wBHHcXbNOkKPflEP2FNk/51j34egCcAANZxIkmY3kujp/8fTNw/BKAziaDMYAEsWTyI/IBPeosYLOf6G4AL49ezkwhmTC68NgALRJ5mqe9dO7XPNZsdSQRP2Hor8OqP47iz3g3g93OfqyZlnQKsdNE8CICILBiYtpMDolbUHcA6aEnTxG7etssoNcVJvec2AivPLwZYWvyH0z+EPkNMNGsTe/g4ZjIdUQf3Jc0vDR0ha+1lUIDlZmcL/Ttm5yK4Or7HWcNDSH5rS7fkFf7k3sgyWDpZF6aOn/EGCYMVaji6uQG342T+PVTjrk5r+SiKfNN+rhGbdjMj9aKsK8/B4gs2QiJI5fmW6cAhUjI3aErudDKDRQDW5ZcCx54m9iOMjxYIYJkFWEDMYqmeJTmAtWtHbhsaqmdIx/dhG4DVpLlMBf1JJ+N3xxLBDMBSSgQJUKbyTcMA/FA8A90wD7AaTcK8+eoxzHxJgLBh/yXlNl1HEADbtsWsZrkMHHlky015WzocP2sk75fmYNlWBenlCkL1vOqQGK8PYswKYG3evBlvfetb8cQTT0DTNO4imNbAYi93WNqj6BWD5TGP09ODJ54B/PV3AAA2BViUwSLMitkhwKI27YHmZQowChfB+G+bt8swAOgB6iVZ9uOSh1khg9WBRNCGxycmjmpWsmgRhmfEStG+xr78Nl0EfRBVt4vBkq+I2mUup/IL0EunDFZI6ntRsNxt9FoiCLMhVmQJwCrbGQZLU/fneiL9qfrgltPp8Xa5J/Ltdi05gr9O+1dAvguVTdKV8/0DQwiSyYmy79g2guVLAcSuUjkGiwCsIHnGFjJYXbAXqshKcdrZI4chlaGo791SkPQb00PAIuSKWGXa9d7/uAoAcMYjj0DD+xBBlyWCyWRCjzSEybXxyUJDpxLBpi4ujFXpzwHRdIGEsuPZOBTqqjAKsKwyqhNTSNM7vPvuBq54j3ISEUUR7yOO6aBqii8zvX9nmioKIzQ6ejJTgMUSgMVYnGfRq3KUadt1zeP5iDz6d8SycEVOZTakxb6rXgsACF2fL2AAyX24dBUwHS+gjJXifExGAJZhOZ0xWPsm8bcPXYBvJTLjrESQ9x1qShQoGCzyXkQkgpZUiyuQ8gbT7xoZZQAefF3cT35Gnu9YFGC5cEkemF7AYEmLm5ABFhQAq5wBWP1Of+57ent3yn+3K3g+F2aiAGCJgr1ikankqPuTpiWsEgHObSWC5Lc2jXrXEsEANuwA8EzAixQSQeIAWyYGEDSoCVaU1V3PNvbsAY5K8nHf+lbg+usLN50Vg0XrdREXQbb0OGB7/PqZoy5Wnu9QGK8PZsxKIvihD30IRx11FPbs2YNKpYKnnnoKd999N8455xzceeedPW7iyzd6BbCkIsOOSFaVVg1pzsQsJIJ6SApF6j78u4TbTiX05Il7YinrsaQOVpKATcPNTtCAPIOV1F1ptQpPV1ZtVXG/TLHhscbc8rA8ch1H1t4pmpquYp0i7Fl3jJysPEYngw5jMoOlMvDoNHotEYQlAFZAJHsl04Ft0AdIAcBKBuyqB56wL+pgDfDt3CgvEczmbKRB7yWmix9c2Xf6+xGsXsX/TIsM86T0ZHIaeoLpMgqGSvrQTvt0V3WwMpMlz2w9Mz5u/138dfUltcRk8TYB/IuS1YvaZScOeRQUpONFxRPAx5uFRHCjfiz/yDrp1LxEMAFYXos+2W6CcCBWRKlM1bbLUpFkL6HslEn4YYAocbd0DAd9BIyM7xeMgd5OIpjEUGmI993AEeNaWJzC1nXw650dmwGgf2fe5KIDBitdVAgavsQkW4YFg9QPGrNjgEUZLMO0QNadwF6M74Gc4REDarZwJC2WCNIC160BFgoYLJ/58JM2GqFYaK4vOAYA4OqGMLmwxBe2+gbgkEUil7nSwqNO62ARm/ZcaQdHtGWSLS6UCAJynhANry6DHq9FsW+gNyYX0zawMxm2ZQaL2LQTA5ls8In+LCSClllTSwQLAFb8GckvJ+oU3m6iPigVFEimOdpR1COA9eu/Ll43i/PsgPZzD6XJBa1N6lXFIkNVlFSpFcwjX+kSwVkBrPvvvx+f+cxnMDw8DF3Xoes6LrroInz+85/HBz/4wV638WUbZbMMLVldnouLoFQDq0QAVp94TVcKJYA1C4mgp4fw772b/11lniw9SyukRwzQmFQDKw13j5hQFDFYmtmQP88EYxmJYAHAGiaqq30zc2SwCMNgkmVmsbIp2tBJDlYrieBaQ8hA5ksi2DGDRW1nrZn4GFGEgMi+HNORcsUKGaxkEl/1wQGWYD8dmMnEwoXILeDtpjbtBNzQiV2gi5XEor6T3gN0omRAzsFyYXHGTKsuhCocIjGaDYOVBVjugoGCLZN2k4ddiVj+Sm0Kxc3ud6CNl/aFnPdIV8urpKmUwW4pEaQyHGpyYVg54C8BrAKUMJsk7V5GFAEh+R62U5ZYkFZW/e64yLdzPIY+WzAJE5PCoU8Pjfb35VVXwThyNRY2kj5L8kt7eQ0K1QUAZ7BUrqDZoJPVtO+ETS+u6ZSEqZuSxDhIJqBBAkr1MF4M0SmDNbYn086EwQqAuiUmgEXj3q7Voi7RnhPOzbWbLkxqxKFPkghueJLLWm1SL49bwCd29gAQnHA8/9y6/ErYRBngBi58YoKhaY5oK5UIbnoGeFYUzW2uFMY3a4OLxES2HO+TlQiqwssu9MynycVf/iXGn38SR35yACuuBe5dlWGwkjZqEWC3AFjp9lmpX7YtacgMViO3n2lCKfXknxGARXO1eLuJQVGRTTt9jkdaDwBWEAD3iULc7QBW1+MnY6iZZCwmEsESkVD6kfpZ/0qXCM4KYDHG0J8YKQwPD2PHjniyfOSRR+KZZ55ptevhIKFpohbK9KnHA9/97qyOQxmsIWeIv7aueh1/7R+9Wrw+Rrw2L7mso3PoBGA1TUiuSSwUJheX4C68mj3GPws1Xw2w1j4k9i9YJY1MX/48E4wBltbg0hUlwFq0SAJYe2fmZnRBAZYdicGS65LJBGGudbA8IjSfL4lgpwyWbdh8MeA08yG8fdtfAYxJbINjONIDRNM9ZGuQ+8zncpqKCmABKOkxyGiEAmCl7V5hCNbGcsnkn0zs+mpPY0ki/yvsO4mTGZ0oSQxWFGGG2NBGw8uVx6GMXbqy3JVEMLOKmbVtz7WbMHhOuWAyS+SMnTz4aGTNQehqeYUCrEVD/HXHLoIZcJwF/mnBXs8A4KsnHwdbcsIYEBGA5ThVydjGU4DstM3u8+LZ6GzZjmpJAKzxpihJMM0Wtr8vd+0Ctm3DSC2+l3zikNrLa5C2PTQVv28KsDphsBSFhiMvw2DplnQ/8fyqJGcrXf2XCg1n690lzxCHATWnPYNl0EmigrUpYrB0TeeFsf36FJe1WhLASqmkCH4i25UkgroJh9Q3dJknMVhGkUTwE38CfOxjYj+aO0YlguUS3orrcWdwDf+4c4DVevI/J2aiUsFd3nMY96cQ6sANJwBV1AUTlIyBpQDQysXlSbpmsI4R4JaRGoHp/5YuP89aMVgecQgWzBthsFQ1CpFhsLTZ59zzSBwZn1sY/+sGYHX0u9Vq8eI/AD3UACZcKmmOWlAAyA/2eH2wY1YA69RTT8Vjj8WT6HPPPRdf+MIXcN999+Ezn/kMjj766J428OUeaS2Uetjk+SjdRmrRDgCD3/0h8Dd/AyAjESQDpvRQIyxXq6ASwYmhYamuVsgcroUuo4EhWhNB92GU9uSOR4FKVt7Bw+jA5MIQ55KSWNPoNYNFVqlMTR6AAcC2xOjBChisTmh6uuKvRQaXncwmVOxY9vztQtM0VBJdeWi5GHL3AFGEx6un821iBosALKOZG0BnyEOo6oH3edqmoVrcN6JpkQSc9q+VOgVYYic6sVu0/0Gciidzx6XRlsFiDB7ZmW5HwyFSEDeZvHQlEcyA8Hb1ZxhZ9SxXCgBWKH5UL1QDLFW7/P4FGMOw9DmddFapFL8s+v5sGaycRPCUuC9FGsAs9fU+2BLBODeS2s1XpElTK5BN7bQd3UZfWYy940yMK5vDE9vfl8nCxHA9ntiHRh1IGP9eXoO07ZEKYPXtlEwubMMuvE+kZ9FNo8COHWANL5eDZdFhLoiPGzip2UMCsKjJRbJYE3/niPdDmwEztmCwaK4OIH4fCfix/IUL+gRLvD9cLP0uPGcTEfwEbVmRAmABfCyh6hFLt6CXyjDT/hF60v2fMlgxwCJ9zIBs004XZZgwjzEsHf+Ft2KrL8yACgFWZhzKMuvZmJNEEMDeuljovKFyHj6HPxEy+4R1L/uITRsKIguw6Dl1xczWvuxK/nrGMHMMVll3WwKs53EMGiy+Z13blD4DgAaRCJZttbpAAlgFZVy6iqkpPLkYOP6D8b8nrfGWm3ctEZyejg3YAJQ8A4DGf+8SWTztm9go7RZGIW7eeCN2+qKGVtdmKC+DmBXA+sQnPoEwkXB85jOfwQsvvICLL74Yo6Oj+Id/+IeeNvDlHmnuSM3P14boNCSJ4I79wMQEAPnhQQduSSJY8EDMhh6KFZlNZ74eHp1ghQ5PIqaFhgGAaR70ch7UULe0Qp2/2d6m3SQAy1EBrEWLMEIA1pxzsFwBDA1SQ4UXVN63i783OLlJeYxOaHq64m9os2evgN6YXABAOQETMxZghU3AsrC+eib/3DEcWAtFoeC7jfNzv50kJypgsCpe/EeTsDVp/5Jqg9miT9IcsYbZxqb9qacQPP0UAMBskhXlJB+CmXosf+zgPnFoHawEfHclEcxObBROZjSYLg5YqqoXZKjZSxC2LgBpkIf8zOqTESYskkoiWCFNlcaTDhmsI/QXxUe1mXwdLMoEdZA7djAkgkEAhDQHy6nA1El+qkIiyBmsGRlgVSsEYJFFMhCr7cJIARb9eSvxODsvDJahmHD37YbPAs5gFckDgcxv684AjQZCN5+DVX7icf738Um+Yco2p+YWmqZxUJLmZ/H8zIRJcgKgQdQcWZMLUbdQdgPMBlV+rAvPlX4Xi5ji+Fr6nvhCi/Y8L46dFBDPMliwbTgpKxL6cEmh+vFynMOl6wDCTKFhArAk0EQYLN7WQIyTRS66WYA1Gwarm/uQKkmeqS7CT/EmUQcrYUNKAYCSmgmi58uaXBTdO5RxUdXBMkzAXbKIb0LnT6YJvITVmGTx840CMd5ucm1LVgHAIikZPZEITk3hbmIaeO/gRMvNu5YITk/H/gAAbC8pP5B890ooENbSPQ9Ku33v//s0rvnRr+Cfm6fCrr4knecwg9UmrrnmGvzqr/4qAODYY4/Fxo0bMTY2hj179uCKK67oaQNf7pFODKnMotuQTC5ccFZAWjUkK9FzBVgBmpkcDCERzAKsUPPgl/PgkbqlCf18ZnWtAxdB0xDX7YAwWFIOlmzjCgAl4iTkuHlpJNC5RHCBETN/Fps9ewX0xuQCAMqJpXDDBOzECTAkeVaO6cAeFA+oDfoJeYBF5UTE5EKSCDKDn0cjEyjGIFvXO2J1s0TsjhtW+zpYwryCrDivjI0vAssALEta0S6SaEoMVlLDqpuJBk2qBgB387MFW8YhuTYWMN4WGdajUL1wk7arCvF7RERyqJIIVslsuNMcLDqJKRsxwLAYoIVhnsHqAGAd7KTpLMi3S1UYinYrGawGGRtMB30kSXzcmyQ7WO3vy+S3lwHWmHS+XkR6rBvMa/IfahEa+m6+aFIkDwQyTJEOwPMQeT7PwdJDDbqmwyZlLqLEDEfFNqdpIYxKBEkftBngWXJ/VvWdBVMi983ZIVbb05BAF5EIAoLB8vUI3vBQfN4B8ZuWSE27IHHx9Z8TMlFr84sxwEoBeOijOSBko48tfQt/rUfFAMu9907++pRgU34iSwBWpwxW9u9sqCbqHd+H//zP2HvPL8Tflb3S/o0EYJUDdMVgcaBUcO9IRlHJ2BRFhAGzKvCOjtGKpVuSaoQfM5Fq+kQSx9tNCw0XMVgUYPWIwZomX6sxi9y5lr9bs8kZLMtPyg8kv7dTFs8fPwMWH7jxa/HuVoQrl3++8/O9zGJWAEsVCxcunJOM6ZUaKYPlMhf+1746q2NQBmuoCV5o2H5CPDD8jU/x18GYWD0y93YGOCjAYnCl+iAhK3MJhg8LFmWw4KlzsPy8RFA35dW1gQRgtJII1sigaavkjj3OwaLMG62hkg46NrHOZlp7iWArk4uFesyGlRQFMLuJViYX3QCsihk/NBoWYCeV20OdAKxMDhYMP/fbFTFYdLtSFF+MwADsxBEw7V8ygyUevrqmw0lMRyiDpew7BGCZBGClE7h0UrVw3xOirc8/rTiQvCqa9o1upDKuJY+ZbQt8SgCrX7mNHZHOVACw0nZNYQD//Ll9wEsv4cU/+3buc0ki2BTg1idgoVOJYAqOLQbAyptcWAqpXTYOdtI0Y0BA7NWdsgyw3LAVwBJ5q47hoO8CYbAwsYiAk7ADgKVksGKANR8Swb8yPqz8vK7v7IjBkhb7DACeF5tcpAsdCfNDGaUwBVi1GJibgeh/ZrJ4npZUCAJICgiHAYzkwWQlgmmfGagLRYMz9mKu3dlyJEqJoA74iTTcqvaTz8mCRAKwggnxLLQma8B558Gpxjmnrq1L56P5aFQt4WcB1pSQhZWYWLgwTeDVeAhHB9v554UAKzPZbwew5lQH64tfxN61wiQL1QzASvJS2zFYRRLBjgCWGdfBol46hiHGnaxrrwBY8XivAlj02pYKFhvkHKwe3KiEYQLEtSuKrqWdZ52FeiVu85i3WtqeAqxAl887MS3uqwVD66TzvZIkgl0IhESk7FVRXN/Ch/9wyEHtpev//BUMve/3uz5GzROTnT4PHGBZY2Lg9ScEkPLHdiOtkWvu2AUsLy5Ml4bGSEIjmtIAE4QlLsGgiaBAK4AlBiOx8lQnhryxlSr9PBuMAc8bou328SflNzrpJPzbwBcAfBRAUgereMxuGx5pt6FgsExHjHah9G3kdmf3yzFYQcRXd81wbusgPZMIJo5XXCIYhlIxYcd0ZKZH91vmYFXMMm8A3c4hAKFkTsD1+oVEUGKw5FXCsmbDjYKOGKyUFDSJMUoKsCJECKMQIcltsAoKDdMV61m5CJZMgMx53DYrkAGRCDoFOVgO+U5ROK3cRrRLw8Lx54HRtVi0ycUK/Cq2YaVaIkhNLnZsE21qIRGMIrFKnNZ1s0IAVt7kwt4hcjX9PTuBo0aQjYOdNB0EwN3GeQB+BiCug2WYlMGKL5JSIkjAs2OWUF1xFP97nEz0X8Uen6VEsPcMliihoZ6YN8wdXTNYngHAdVFffQqef/hIAC9BSxarbGmFPwFY+/YC/YA5JZ5zcVHwiAMsFYMVEIe+ojpYOmGgmeLeyzJYSomgLu4TSwJFJB/Xj8cGn9agtBzglFPg3LoQmJiCq4dS4XGTWMjnGKwpITd1/SbSUwVBVbov/gO/jv8KXsIfJtsW2rRn8oW7YbC6vg+np7GXDN1aZQ9Ow2Ow9FMBGGhqDIiA8pnnxHWdCqJrieBPbuSvVxvPKJ+FRQDLTNQUOjPAkAKsuMYgdxEcWQAkXbR88eVQhTkonheTevH90nFMTWGaKB8bbWprKe8BPa4rRtm8NDzmEVOafmm/Ukm0P8tgTQ6VAcSD00ODS6X9DjNYbWJwcJD/+9nPfgZd16X3DkfnQXNH0gKs3UbOOCAFWKQ2AWWcpLoidmdoQ2Niu76XHoD/nJAysYTBUkoE4QHlfOKlS1Z7+Gp5ZmDUzRnp82xkJ3bKWlFLl+InIx8B/Lj9YzNzzMHyKMBSmFzYlMFSA6xOJomhzzjAos5Us4meSQSTvuobgBE1gKefxvn+Tfxzx3AkedqQsSfPYFGJ4B+IVXG6nUPcGR1zUmo3o8WXM7U3ysmEpNkVgyXaa5BCuCxkYARgmZr6Qjmf/kv+2iulyfjSqVpGrqZNG5OLwBD1dkySr0HDolLZNgwWABzz5E+A970PK7/0f3ECnpE+L3IRpBOwYgZL5FAyBgQZBisnEdwt2GVvX94Yh58rPfxBMrmQ6mCZjuRE5zlGrk1cbkkBllWSFtfGiQqhFLJZMljx9ZsPBouyQ0uqS/nruvUiByGtGCxDN6BzSR0Az4PbtwjTvCBrCrBEnw6TiR2/V0lSfSoRlBgsYpLkBHkGS9V3LOqEpgAVAXG7PTtcl2GwdP59VBNzWjsvSAAWPUeaQ5ru4waudL/R+mr0WeMZAF54gYOsZkDVIP0SM+HC6cymPaO28Kqt5wVzrYO1l3SVyKnjQfNMVIIp+Mzn5lAls9SyYnbXEkGfzHuMGWWfaMVgrcIWXMAeIW/60vkatmhr+Th1DUzztDP468d09TZdRVYi2EZ2WKReSV+3el7Dj3+09Pcu0/mlLu84URHX4rlBYtYC9dj4co1ZMVjf+c53+Ov//M//xBe+8IXD7oGzDKnYcDR3gFUOIHKw6A1Ac7CSAcxkgGYrQIkqiE0s86Yk96coMblIJYKyyYWP4fIzyMIaFYOVq4NltM/BohM7p7C4nwbMDAOD22IGaw4hJf+aRA6S3EmWLdrQCYNVRJuHrs+vMZWazCZaSQS7YrDICnWk1wHX5UWegYTBmhArq+8wvg3Gfp0eQpYIkuNJOVhEDuNYE1K7U5mZHgK6Lj9Jy4YDsA5MLgoAlvnCFr4SzPbsQkgnO0UAi+ZgsVkwWBlTi3bJ5SmDZbc4rgSwoJYc0naFZJElVweLjBulIL7uoQ74YScASxQtDgIBjq0QgKblgL9NzFw8lyIHdbsPhsmFaszR+oaAJJXHe/OvFLbJdSnAKkuAZNwXTKPGzI4ZLFpEfT5zsOjYfNTQUdhdj+XLM6VNokktGCwgzg10kSwcuS6YCV44PJXAmRRgJTbWLAFRdBw0EwarMAfr196Ge27/AyDJvS8a94w2AMsnBXiroS8DLOI6mi5gWmQST9nxQMVgJfddOoa4zEW0RzDDr955M4A3x+2kEkEdMd2wbh1w6aXxGJJ8DY+JOkWmCUx1CrAMDSAAdt5MLoIAaDQkBgsA9laASlhDMxAHKaollUZRHayie8c2Hf4ddaOZ6xPHNx7Ds9u3AFXArslMn2nm5zYwPFBDGkkiaKoBKmVyeyIRnJqSJYLvfkfLzYvUK6aZZ3kB+XkNL76/09+7TOY6QQZgTVIL+qEt0vleSRLBnuVgHY7ZRWrTDgA1zC7XRpJd+RAMFq3xEeYZLDNExzPsMNRgJIOfawJ+iayeM6uQwWKRh7A8kTsetZZVrZICgNaBi2BbBgvJgDAzDCBmsKJscaYuwhsRtVWev+QD8jkAWB0wWJ3IK2gCuNVDgDUXBqviiL4aGY14FTrZXws1mLoJm9b/UEgEJQbLUgMsh6zWWuaU1G5pkp6JUuLm1pXJhUYYrAZhVZsziMiCR6GLIM3B6lIiyEKWs/JvJxHc4SxNvkJf4TbjZ5/HX++2htTnTk57AjbitJv/hr+fvW5UImhfcBG/7j4x58jmv/BI7k1hUJLWCko+zgB/i1zjIoB1KEgEKdiwDRsmAbQqkM0lguQ7OXYZJaZxy/EZUhBaO4RMLoIA6MM0rjP/J3/vqCEhbZwpP8dft2KwAMBOFim8JAeLMXCnVD1Z65UlggmDlQAsg8h0U3ASVOL/GYOcg1XqQ0hMcIrGPZNMhENF/gqVCEahJdl/W6QwNkueqda2HaKNZHrFgjzAsuwy4LpwEoWCxzzuQqlFQJnUsNOzDBYAPBKzKfRZ6gf90n3hwY7tzpMozsHKMFjtykWQzW94/j/w3hveiyniElrYB2s1RIDEYCH5uxTUJAljEUhJo1sGyyGS0bSECG1nBTPwkt/RzqhG0muZA1jkfNShsWypwSF9joS9AFhnnIHp40WaBGXRVFH07M9eyzTqd9/GXy/w5bFNZrDkHSdInioGX5L2eyUxWIcB1kGOCnGbqUc9BljkBvBUDFaSC9FJBAFgBPG2TRPwf/Ut4sOwGGAFkQdWnkI23KzNM5BjsFLdfyuJ4HnmHfxv+7nNyu2WsB3om0mTU33MFFhXdxLSg4cpJII0B2sOEsHI6x2D1TuJoHhohGZDYrDMxPnPkqxw25hckBVvSSKoiWNkAVYqMzMVl5a6HDpoURNIYrBIDhadEPkuGM2H6ILB6nSFTjWJydq2Z6NpxG0MQrVLFQDoVBtfoMlP23UGHoPTEPK0lMFSSQStI1ZyAxs/aSfX7bdgsPhvZ8jFWHMSQeo058oryHQ7fviDJBFcasQrslqkwdANCWC1dBEkE3jbLkObmUFfM9+Ro05MLq65Bvja1zD82S+J9+bJ5MKGB4M4vK5esJq/blCA1ZbBir+UrwNwXWi7d8HWE+dNbnJB6wRlJYLE1W1hvGAWDMXPOpVcvJOFJSqRV0oEqclFJD8rzf44HaLhiHHDJqIgQ8FgBQTImJYDPPQQnEdja/owCtFMFlktBsBoIRGsVLhEkD5LXdZaIqiyaVct9LQDWLyPlSbw/lveiW+t+xbuZH+Z/zwbiSmDm1mv2lsByqwmAcDy408De4tNqbqWCBJTJM10c33CgaiDlXUk7gRgNevxOKpBg1VTj1/SQp0WYA5rvXFccQVqx67ifxbl2KXRrUSw9tQ6/nqBJ+eXUgbLowDL8zBpky/WvwtHGhtfkQBrVhJBWusqCAL867/+K4aHh/l7H/zgB+fesldI9ILBojeVDLDEw4OuRPsaYQE6ZLAYA/TABtCIARaR+IFZnG7fj4W4K3wtgHjlw2MevFJepuSuuVo6NgAMmbswQbaJjPYMVp8h8rtsVz2q/9WGN+FTK9fih8nfU0Ee8HUaUiFIknjM6W/HhhYlxVI7YLBaSgTTVdaoCxSkiJ5JBAnA+nr1d3ENYbAsFh9IAlh6kPvtZhri2lduug0467cAZCSCFGBZU1K7ZwwLgKe8JinACnXAM3SAFfSdIABLJ22UwaI5E4GHiLBJVhGD9TORg+aOxxPcTh8gUoHQJNoll0d60qawWNpLZShMUzBLpF19aVZ2EjkGi0wwLdPhE4x0JZ67cHUgEQxSBiuZKOfqYFEjhIJ6PYdCHayFxi7sAri9tgpgKU0u3vom4Mc/AAA4J5wM9Pej6gNT2YV6ZrW/L1/1KuBVr8KwOw38VZLLOE8Mlg0PTdKeFQPLAWYCRgC3/CJ/vx2DZWkmEAkXwaFHb8agMYa9AEoJAKHjR8gZrPjvVo6fMciXHU1bFVjnkm6rhPSxyxT5K/S5qUG+56xFI8DunXCp8Q5ZiKGLMmk+p8RgOWXAbvB+BAC1ZIHDZpAWP2lRe/833wbc+H0+0DTJOOUFA5Jkr5McLBWYYhHj9cdUwfvY0At8HJvCtvzn2cjkX6WxpwqUWF0CgKWNm4CZ4sXQriWCFGAZbq5PlLRigFUoESTna+zdAehA2YugrVsHXHZZvs1btvLXZ+kPgbHunsGqmPaEjLWozlkarSSC2c8BoE4M1LISwQoBWD7JjQ7G9qCWydb4g8GPwTR/kjvvy10iOKuf9m//9m/566VLl+K6667jf2uadhhgdRFSDpY+u94mMVh//hdAAnbpgEIfFJJEsEMGSwAs5AEWYbBq6MfD7CKkAMsNXLhlBcAig3p6U5eMSXkj05M+V7bJEANKkURw2paLDU8H08rtOgkJYIV5BsuwDZhhPImYi0QwdD0CsA4NBiu1aQeAW52LAXcHn3iZKcAirGlkKCSCNeEoWX2SGqWQjY44AfDilbOd5pDU7p36CIA6gtJCZKO8cAlShP5Z8yMtARZfFZcmRHJSehgSF0FdfaHsjc8hnfelNtydTvhVRYXbMVipLb7WAmDZGpWpqiVBabuqmRytbA4W7e+25XB5XyopEjk6XTBYSX/OMVi0npQ3OwbrQORg+cn3sBMrSovmjt1/L/CGAgaL/N6OVQYsC31+nEskRScMVhJ9dh9sw45/p3nKwbLgS4xDxaoA9aXAwDaArFy3BVhOBWhOw1s4AJx1FqIH7kbySIGROIfSHKw8g5U3pJEBFumr9z+IkalNAI7lnyv7DjXCQP7CBaQWHiJ51qiSDdP8R4MCrOR5mTOYchxeaBgA6gRgReRa0Bwsb7BP6mBUVuwSgJUyWNVZACwgnjNQFo4Gv5YDwgI+0BS1LbORcRBMY28VOCrIMFgBurJpbysRzACsbJ+w4QmAlfltO2KwkrG7FABwCvLBfXGAij7VE4BFXaQbz20AJieBArO5riWCXo2jhMjvk7a1LQNGCDAdaJAvMTWQ/+5Dg+sPM1idxgsvvNDrdrxigz6U6mYUQ/ou7zjJ5OL//hGQrALKDJYYZWeTgxUEQPo0dA3A88nkMMnB4qsRRDq3v7Gf2zOXfKCZPCfoZCPdL1sHKzRluZKqTVomH0IVU45cbHguDJa7S6xAHbHpYQCxExC3PK2WgdAADIZ6wYSjnUQwCABG838KHnKdRisGa7YSQaYlOVipHCWMf1iLSG4iI8hLBGcEiC6SCGorTgQStee+xEiE969kEcJEfmFA0r1bDcAdVPedc89FsD6e2JoLBPNOrzMLfIRk4lKYg2VXkKrwVPKwriWCbVygDG0GIYByiyfT4C4hqxlkW5XbpO0qYrC4syeZ8FjbdgqJYBcAK+1znh5fc2soBsfZB61lWEjnn9Stk8ahIBH0zFQBkDBxNHdsm5xvkO4DyIxlKi2tMh3ITuyZ3fF9qWkahivD2DG9g9cTmg+JoEva4xgOtNoRiAa2Sdu2kwja5SrQBPySDRx3HODdmpq78om8edyJQOKb8XDlPCAMW9asS1mWXB2se+7HwmUvgQIs1bhHTYmYSiJIc7AyY44aYIkL5S85BkhcOaeduNZVet9wgylSaBgA6glDbWUWPyWJYNZ5lLS7yQZzEsFFVCKokJAVASw3cFEx1FJkfi1JH/CRr22ZiwIGa28FOMmXc7DKProqNNy2DhYBWFAwWBZmkFZEoYY76TEZDKnGZy4HK3kQlFsBLMLQRjpDEBRu2lkEAaZdwmC98FwsqywAWF1LBP26AFiJTTvtXyyoAPYMNg8dz/eZIIY9aURDW2F6MwAqrygGq+ul8W984xt4xzvege9///v87+OPPx7HHnssvvSlL7XZ+3Bkgz6UajYAr3uZYAqwdE2XQAad7MoAK3Fl6pLB0oJ4JGiagH8vKRQYWrIDDQFYu+u7+eulZC6nMrnQDHlSFSU2qK0ZLLoqrF7tqtlyseHJYFK5XSfhTU/w1wv3iskrH3QGqvDDeCCfcBZAFe0kgowBLqmAaOhzKNyF1iYXXUkEiasT05McrJRlSxgsm4CcSGVyQSSCVadfalcaJTMDlEAcjlJrXE0BsOh+CVhX9Z1wyWJEyT1gkFpSRpbBIjmRlqG+UKZTRpKDz1nZOUkE29gjG0nOynJfbWMOAIu2iFXloWibcpsiiWDORbApJjzWHXcTk4v4hcifbM1gBSwSdbBWxSYJOYkgGbskhhzydmkcLImgz3PJkrwhanKR2F0rJYKUwUomWn1hvl9FYQcSwWYTeOYZ4NFHMWImk6nKGICo5xLBLIPlmA6MmWW5bdsyWIkENJWdRp4vzGaSWZzVLyaGU3oFke/zSS+V8Jpb4z4ezMT9N8dgMSBySH5VoB73jMoAf69WyU9KfZI3p2nyTFiq+Zeel4Au/4jj+OtpOwFYAzELYGlG7ARpy6xIapeelQhSy/YsIGoeLXJwAmJyMReJYKv3AcpgifElIAX9CvtgqYS9J+frbu6tAk5QkyWCbRis9DeMoliqnJ6zsA6WQ1xwE3WFtGCji0mCnflt42NqsAIyZc5IBJvogMGyiImLzuZ+r15+OWrjYo7VMCEVoc5GtxLBGQJ4wwyDZZpAWniZStEnm/n51bbBCJXNT0j7q873couuANb3v/99fPjDH0aj0cAf/dEf4dOf/jQ+9rGP4V3vehfe9a534TOf+czhIsNdhiQRPGbFrHpcCrAqVgUaqRthLT2Cv/aJ+51vJiuvhtUVwEIQD3ZNC1y+Fn9ok8EqwiATsqPdNXHzL6MA68nH5GMDOSeyumnIn6vaRECZXWDTXivJDNY0641EMNLE6p406CT5QZFCcgJ0JnPaNygmMM0jFAWUu4ieSQRJzbZl+kZEroLBkiSC+QdIvUlysEqi79PtJCaKACXGwF3HlAAry2BB3XfoqjRdhZZyJgIfm6sniM+OU/8GmuPwFehUqtPphF/JYLWaWDPGJSwGKx66bTIZi7T8ijVtV7scLCrVsy1HMFiJ/LVjiSC55mkx1pYSwYJcgoMuESQFwC2WB1ipdFLJYN19O3/P8WOQ1hcpWPdOGKzHHwdOPBE4+2wM707GM8MHnOmeSwRVDJZePyK3bVuTi+R35/3eF3mmRnINJZc1+GCkfqMk5/Xi/hRo8ew6l4MVACEBWEXjnr5gMX9v54i439OgEkEt81uZm57Pf0cyLplkUSYdc4KhGGiZpUrsBJmRCPLjMCCiDBY5ru81gE99CnjjG4H3vx/uCFnIC0oSw9CJi+BcAJY2SBisqAOJ4EUXYe9H3p97e28FcLyMRJBpLecnRQuHhQwWLUxveAqAJeYttpFnsADAYJT2kV31GokrYNlHIcCiqqJIkaPcbYRTk6hTm3YLHQOsTiSC9PdgCcCS6p4li+4hAVgTzYnceV8aBMob1+XOexhgkfinf/onfO1rX8OPf/xj/PSnP8Vf/MVf4Atf+AL+9E//FH/2Z3+GL3/5y/jKV77SdSO++tWvYvXq1SiVSjj33HPx0EMPtd8JwA9/+ENomoa3vOUtXZ/zUAm66lf77Xdyg4puIl31qWgOsGsXf986UtQm85ct4a+Dajn5/KiWFDyNIAAiUmy4TscfYnIBAH/FPsU/2lUX7ZEYrBc3SccGZLkfADQTINixRNAqAliLpHoxczO5EE+rKBLXThp0klXpsEDu1W4VPggALxDnMXW19LHTmA+J4F9rf4BwpsknXkYy+bBsymApTC5c0QmqlSGpXWlUyIS1ZO2X2l1O8vT6J8fy7SMSnneaX8sdNw2avE0ndBKDFbgYN8TqtjkiJmJSkAmSG8qFJ4vOn4YyB0vxHm93Q0hYzLD4hzMNKkNpzQRlAdYEhqTPfQKwrKFFsI87EYAoqtypRJDmgKYr/7k6WAvFNfYG1eNgO/Z33iWCHuN93lYwWF4CPJUA6+kn+XtOAhaqWv7efp6d1P6+rIrnxrBPBuPK2PxIBDMMltlQAKy2Nu2Ewdq3D5HncrOZNMeIskIhAgQOASykSGvq+BnocSNzLoIMiIhNe5HJBS1srJQIElMKDRkGSyHdpmY49LWfALX0PkjBZlYiSNuvUQaL9BMvYsAXvgD87GfAL34hjxnMkRYefgffwkmBAILdSARbAaxZSwQB7K3nnQH3VgEnIxEsweyo0HB6vrYSwdPP4q+3mYtzfUIji1F25pmrBlhCsRBFERoJ+9gqd8ykC5CJRHAuUWvIbFE7BqvI4CprGMKPRwBWWhpExWBRgDW5/v7ceV8aAkpPr8ud97BEkMTTTz+N888/HwBw9tlnQ9d1nHvuufzzSy65BE888URXDfjRj36Ea6+9Fp/85Cfx6KOP4owzzsA111yDPXuKJTAA8OKLL+IjH/kILr744q7Od6gFZbCkom5dBGewdu2L7XuToA8rOlimq2lFeSWqYCyusZHGNH3WEJMLQINOBqFdNQGwlhHiiOrG0wlIlK2l04GLoPRQNdUAq17qXQ6WXICRyMvoano4dwaLAjlLwdZ0E/MhEWxYQPOSy/iEv6nFuUyUwQqNAIzJD0ipDlZZSHJomxY+LdjNV5v3SO2OkqT6spt/iJQN8VA7y/pl7rhpBNu28NdmQAqDZhgsRm21CySCkBisPMBqKRHsYjUZALyGuIFSSaYqTIPKUDp3Eaw9+SL+Hv9X+pxK9SzTjp3PIGRenUoE6bVUMVhBAFinn8n/9k4U8ioaB7sOVtgUifBm0vklk4s0v1UlESSmKU45Bu99en7M2h2u7LjQMAAMU3qpMjYvEkHqIugYDsxGXiJIGW5VWLV4EA6iANFXv8qtywHCYM2I/raEvVDMNidTl0gDQj+pqUVzsDISwSIGi97XgaIOln/kSv56jylL21SlG6i0jI7aYQIc0u/Dn822rWSwWrkIepEPnJWAhc2bRX21UAdCU7BzOuBrDhh5bvdeIkhMLqIOJIIA9s7kAdZDldXY8LprZQZLkWdLo0iZUSgRXCnqt9UMO98nNFKnLpPPnR7zP9lvkB2EYsEPfaRVBFpKBEnaRqiHc75Xa015LtNzBovI2IOkH9Fxd4DF53LC/cDOnQCAiYfvzZ13yyDgPHWYwWoZruuiUhGDqOM46OsTAKFcLoN1ecW+/OUv473vfS/e85734OSTT8bXv/51VCoV/Mu//EvhPowxvP3tb8enP/1pHH300YXb/XcIicGilphdBAdYPngBSoCskiHjIjgLgBUEgB+IFf1pOv4wSxqsigDWk/4b+WuPsDtzqYOlUYBVkIM1U140LwArjNQSwaVhzK4MBjuVx+hkkkjtsU1jbgBrPiSCDROYrhCJnxb3DQrqf2D8z9Z1sKpD/DXdrkylRuaM1O5WzoplIjls1XeC0RvFZvuEzb+xguQyLB6WJndFOVhwhHW5F8l1QorOn4bXVLlruoWFsL2G2N5owWBZEoPV2u6cAix9oC/3uSQRNGw+pvihjygi+T7tcrCo5f1Da+OPW0gEaf+noeq7miYWuud7RTR0fQ6wrEQKLOVg6S0YLPKdnKRWWZ+uUBB0UWgYAIYbZBFjvhgs0p6SWYLZnL1EEAACv8mL7wIEYJH78QT2aFuABQDMc9UMVql9oWHHasNgLRYmOOPmcukzFcCi33HhY/fx1yN71gMQ/Zp/F7JAQ2NnuBL1IXE+k9aIYz5w9tn87+a+RIafSPjp+BPLuMRzsVcAK+5jEaJ+kYfsRR0yWARglbV4kY1Vx4FKRc7BaqPc6FoiSEGTwkVw4/ILxLbDS0AjPeZuRkA2YbCkIsMtJII9ZbCiCNOZOWM3DFYnJhdNsiiULrBTtU5/IuFlug/sj9UmkzP7kY2tA4DxzONAELyiAFZXdnXLly/Hpk2bsGxZvHr1ve99j78GgGeeeQarV6/u+Hie52Ht2rX4+Mc/zt/TdR1XXnkl7r8/TzOm8ZnPfAaLFy/Gb//2b+Oee+5peQ7XdeG6opNMJcX5fN+H76sf4gcyaFHVqeZU122KoogDrHIAhH19YMkxNFKN3As8fuz0oWVoRsfn831dGqhrdOwLLXheCNcNAZjQmIm0uAjNwVrvvRlAPLl1EfBz+74OwEBkZtrCXQRD+H7+TgwCQwJlpuEov0+ttBCLyDxzinV/ndNwQ5/bcgeSJj+A70cIQ8CK4klWqIXK8wSBgXRtI4p8iE2SHAWPYeH2dcDS+N3+Pdvm1Fdjv4z02CFcNwK4vCVudydBV+pnLGBibB//24hs+L4PjRQDrekluEltsrT9NQKw7PIA6QPimthWGVxtkuRSeV6IZoOJ+lWRlrsmtkn07QnA8jwG35ft8l1SxFaHOI6+YhWQPPsbCwfR54vC1UatrvwNNMMQEsEo7tP0ehf1XQCo1yaU7zfchjRRS6M2TcBgaCrb4/s+DHoddFe5nefF99xmHI3pY85An1ZHVBH9OW13sylWJgzNhEnm8k2viUbDjL9rC4DVaPhAJI5jBlHcVzQN6SPIdQPJErrhNZTtdt243Ukred81TRO+ryEIIvj+/KGsxvQ0Z22tMB4/sxJB3/eTAqLinvN9JtUrMhD/fhVTAbBCC7qe77dS2DZf319UJ/dvZQyu2/k93S5cV8PTOAlbzSsAxDlkOnTYbp7BcjT1+JsGHT8aMzXQTQ1YcZ8gICrSGJqEqdahi3uVOAo2ZqbB2IJcDlaDgKdmM0ieM/K4S5dplux9NNd+Kr8zNfmeU7m7GqedwbcxSGmHgMX92R/bDTixI6fv+4CmKRmsvWwFmpVBfiwJxAcugjPP5JM3d88OYBEwwFxMAYgi+b4IPKI8UNxXM+4MVDHjzpDxWd4nCEzAmQJsMZ7HOVgRAE057gKA/uUvY+/uu4HBuCDviH4CtrCHgNIkgmgGdVccr6TbLfuTYYhnxsyMjyhKmXH1mEvnQzA8BEGEZjNAep/uXUAA7cAC6dz8fma2dAwA0LQA00RdUAoAX9cBRdsjAspDPUSz6UubFV1vZTSbudI+DQsIajVEBfu7rhhzNU38RoZhAtDAmDx+1peNAHgu3tePwXDav8IQ0BMlhWsCfq0G+D7GG+NAkhaohzZC3YNnArstFyNPPIEoOhV0rtNynJvnoNd7PvBAVwDr0ksvxejoKJflvfnNb5Y+/8Y3voELLrhAtasyxsbGwBjDkiXyasGSJUuwceNG5T733nsvvv3tb2P9+vUdnePzn/88Pv3pT+fev/nmmyU27mAFdbSbvHUUd+/5Z9RWrmyxhxx+6PMq7BUf2Fmr4ZHRUQCAsV+sFM2sW4vRBaOIokiwWRufw2iybbt48cUzgD4BBiWJILOwa9derF+/E8CZMIh8ieqt/QmxGjjDfH7uzZtPB3AUdw3kYboAIuzevQ+jo7/MtWls7CJsWXQcgDvir7N3v/L7bJ5cApsBg01gshQzWLfccktH3zsbtWYdKAN2AGzZJSa8Dz/8ABqNfYgiwAhjO2qmhcr27Np1HoC4z992283o6wvwwgsDAC4HALzwwlaU9Cc4wIrG9nT8O6li27Y+AK8FALz00ja4bh1AbNqwbt0jMM3dxTuTeGryKf66YQF33X4H/ztwNYyOjmJjndy3ho8HH3wEp50Gfr3H65OAHVv2P/7cJmxPvtfWra8CEPf77dt2AylZmgCl7dt34YkntgHJAqIeIHdNXtgjykeEVjwxevrpZzE6+qy0Xf/TTwEr4te16To/zrZtIp/g7nvuxuqJx/Bo8vfeu+/FaJD/DRY//jhfgW4wD6Ojo6jXTQBvAADs2rUXo6MP5PYDgLVjDyvfv2H0BpSN/MR7Zqu4/lpgFPYJymAxw1Vut2nTKQCOxR/gHzH92/fg5JP3g911O4B4TB8bG8fo6L145pkNfJ/piWkEz+0Fkqb9dPSnmNi7AMBVMnsQAJ4J/t5dd92LwBP3fuQzjI6O4qmnVgGIpU7r1z8JxxLnWvf4OozuzLd748YTAMR5YI8++jCAWEquaW8EYGBiYgqjo3cqr0sv4sm1DEgeG0FYwi233AJN02Al7KpnAKM33ojde6sA4mLq27btwOjoWswQNvDhBx7G/sp+bDvhNGDXk9I5HMbw4oubMTq6AYURRXiTpkGLIlR2TwOpS3JlLx544GH4LVwmu4nHHjsSe3Am9hgr+HsP3vsg2MTrc9uuf3g9ak8VqzDq02Ly/Pzzz2L3biFdc5vxvfPSS+JahJqP267/T/73zIaNuKU/HkdCT0ygb7n5Jnjeb0sSQZsBT21+AUDc7x599DHs2bMKwEi8zy03wbZDbHiGOMsFtdy9soXIid2GJ33enGkCGePBrdt38W1qkzX++fjEGEZHR+Eni28mi+Ltogjbr3od0LxJPhCzsWnTMxgdjSe3U5MXxnpILcKefXtxd2UGV6TtShnVxOFu3bpHYBjxmH4pq+CK8BZ8PNQQ6hF27duV+45P1uT+l8ad996JXdVdyfWSn5fT06+V8q8AIEQYG60wG0899TRGR/MmIGfecgv2nhr3kX6tAkxX+f308FN3opnUPwSAqcVHtHzujY29BkAM9H/+89sBxOkRk5P7MTp6X2573fOgQ0eIEI4xhXrdxd13PwjgUgDA9t0vAUka6K7t8nWq1SwAa5QA66mnnoBxixjLywEweuutyvwxf1osSkY6w2233YmlS/MAt5P5iT0xgXKGKHNNYN1DD2JHQW792rXLAZwDAHjmmQ0YHY0XEev1SwEMwfflOcvGkYVAku7sBjFqeuSRB+G68ZtGEM/1mA7ce8ftmNq1C7unRX50aepYzAzF49jmRQa2/PjHeHBkAnSuMzoqUgIOVtxyyy2YaVHUerbRFcD65je/2fLzb33rWyi1sNWca0xPT+N//+//jW9+85sYHh5uvwOAj3/847j22mv531NTU1i5ciWuvvpqDAwMtNjzwMTUzBSQjG+eV8elZ5yB6LzzOt5/ojkBPB6/rvjAsuOOw5o1awAA0d69QPKTabaBNWvWxAn+SX+uzDT4tu3i+usNYFz8tpJEMLSwaNEITjop/k10ArBCWlhxRgDHwAQ/9403xg+GmkoKZ3gYGlqkbOfnPmfgaUOsOp392qvx+mPzD/6fXA+suv8lTM1cDpQ2YzqYxlVXXQWrQwdFGn+6Nn6a2QxYtEzIBS688DxceGG8aviRxCws1KFs9z/8g1jFev3rr0Z/P/AkecYdccQqLPJE3xysDnb8O6niuefE66VLV+Doo8Xq9rnnnoPXva6z1e7SCyV87oXPAYilCGc4OhJXbwyYJaxZswaLdyxOF7wA3ceZZ54Dxn7Br/eHn3YAF6jqDs78n/8TZ7z61QCA731PXJNTTzkDSJQnaV7eyMhSHHu0gTStzdGt3DXZsnYL/nXHvwIAwqRI9dFHH481a46Vttux4YGUYMXwAtG3br35Vv4wOe/88/DwPz3O91m54kj1b7BqFZz/+EcA4/CTPl0jc8wFC0YKfzt3owtsy79/2Wsvw6LKotz7mx8ygFvj1xZs5XF938dNa2/jf0eGp9zuttvE2v1lZ56Ic7/xu0DTxSexDp/Gp9DfvwBr1qzBUzO3AAk+Xbp4GYZ2PAkcE/99xZVXYO+2ZAaZruZG8QSDAqzzz78Ylilyc6tOGWvWrMHYmJiAnHzyaVhYFpPd4/ftxpp35dv94IOi3eed92pceWVimW7p8DygXB6Y073SLpqYBNbHr+uLT8NVV12FW265BU5kwEfs8rjmyiuxda8YKxcvPgJr1izBT34ojnPFpVfglJFT8OyDz+IHu34gneNktgnHHfebWLNmdevGVKtArYYjAzIYV8Zw1lmvxpo1vWGwtmxJKWMBXq664ip82VyFvcwEDLHafdVlV+Gk4WLH029s/xtgb9yZli1bjFuv+ktgLAZQzvAqrFmzBo+uA/DzLwKIJ6AXnnk6kGCchZ7Pr3fFLgGI1SgXX3gBosiQQL7DgJPPOgv4Tvz3qaeegYcfFn3nDW94HSwLGFnCgF/E70VGfry+7gff4sXLBysV6fMfPjqI7A18wrEnYM3l8TaP3Ps1/n5fX7xvkMzDrUjjx3piwZPAnVmAZeHkk0/AmjVxLuLf/I2BZ5gFmB4qfRVc/Fu/g+iP/xhavc7z46wgHkPPO+8cXH11/Ps/pn8BH8UX8ZkAqNuAU3Vy39HebPHaYzTOec05OP+I83HLLbfknpeOY/7/7L15uCVXWS7+1rynM/TcnXR3OunOnJCZJJBAIGFqFLkKoldFUQFRLiLeK+pVr8jPyyAXr3q5IiCDKIgTINAGwpAwZYDMSYcknfQ8nz59ztljzb8/qmqtb61aVbv2PqeT3Dzne55+eu99ateuXbtqrfV+7/u9H2AezL/JHAChjW3bzsf27XlXRuPv/o71wdowsQ5T2IJ96aV6rXsPdm/bAhxKnm/8gz/G9m3F9/LHP87njOc//8Xs8Zo1K9VjwK5dcO6P0LeAteYBDEwHV1/9fPbn0zfxMXfblm3Y/jK+j1T4hHPDJ9POZmDX22WXXYznXm8CjyQv2z/1Omx/5SuVxzzoLQD/+1cAAAf19bjuuhtwDm8hBd/3ledbGbt24asKFeW5527FpQVj4MmTfMy9+OILsH17kqz6kz8xsHs3EEW6cO6+vOPLbE7MFEzPf/7VuO665Ed7x+f5MV5xyYWo3/QKfOHfePJjyr0CPSQA60d//wn84nN/BnWSNzr99M3Yvl2U3j6VQc93v6+W0y8mRgJYw2JiRAe81atXwzAMHD0qZtCPHj2K9evX57Z/4oknsGfPHvz4j/84ey2KsqJiE48++ii2bt0qvMdxHDgKPaxlWWMtsJc6JuoT0GMg0hLZnRmGla3TASAY8Amu4QP6ikno2fubTZghEBhJg0PLshDRov5Yr3wO4hiCRFBmsEJiG60VFOCvXwjwZJQAD1eL2GdnJSdtUzFamC6iyIFl5WtuogjCpNpwGsrvYzrAfmwG+qsAPIlO2IFpmmP9/lkjWDsEAtKEsVYz2c+WMViBFis/g7S4Qr1uwbJEM8c41hFl3WuR1DUt5lqlOY9Yql2ixz0sJur8/u5ZgPPlfwBekDyf8vuwLAt14tx1rvEgtFTakt1vXStOANbKdTAJ203LjlotbjscWwmDFUU6QOt4YOTOScshNWFWtq0ByxKlPDFxBrMMm+3HJvINLfQRa/zecixH/Rtcdhmce84FDtwBPw5gmAZqNX6Oo0hXXrsAEBaYoMS6+rqJiVxJj4uvCdOqs4a9keGr90XOt2Pq0L/wBQDAc1PpVXbcEak5dGwHVpxc2wAAA9Ay2Vd6H9qRBieIhdc0zYRGtPy2ltx74nVpoE6uzbDXGXrc9NrN6gKiSDul43oQ85vX0vk1kdR39OGtmEzugzpxw0vPpUdqfFq1FizLwlRdokAAhFENjpO/bnORAqw184T5b8xA06rf08OCnW+TS/VatRYs0wA6G4ApXoMz3ZguPfc1UuAfhh5C2lLETM5lrc7H1FgLoZF7xNL4PW8Sx08dUWKmQyWC518Ep0bnIVMYd2s1C7oO1B1icqFHueMPH7wfSIeVTeFRWBZfX9iGxW4Ftl+rxq8JMp/FCGBZVmIrjwRgZds17LySph4GqFlg21gWEvbE9OBHPqxaLTG6+O53eauMtPbZcfjv76c9FOt+ArDc0M19R3qPazGYWUNE5mh5vRSGgLNyF1xIYfYBdxKqcRcA+v02sxVf21oHs72G/a11/z/CexVXRbWcVun1ZJPlQiYPTI61YMxttWCHifoiNEKEocbmJwCYdjlbWSPzAsDn51eHX8H7shfT681xTASkprzZWlF43Brp83ZMXwldt5T3aqX1ab8vJrrT8CfqmCz6fEKq0TEm2zyKNJimxbajxjwI6un7+PWlE0YvTNcAC8TspNG5BFj3aQDAEe9wbtwvmx+fyrAsC8EpKOB9Wr+Zbdu44oor8I1v8IxrFEX4xje+wdwKaZx33nl48MEHcd9997F/r3rVq/CiF70I9913HzaNIK17poSmaaintt5dG4CbG7JKI6u/AlKTCwpyLSvfGJQWDcd5CrsowhDMkhPIM1iiyYX65v7s7C/DSXXQWTE42zeQN7lIX6vsImgoRhuQol8vSZ3FiJXFvlXCSydk265h3uaTAy3c1NPzGunqLHIVF8GIuPeoGlqOEktlciG7CHo9Lm/VkYya9Fgv0+/K98FKXQRlS2e6XbPJr+GMiQpDICCFxEqTC2IjH6T1fEoXQdpbh9q0//Buvs2dt4sg1yz+DRwiyfNCr3IfLFWj4bLXBx6/Zo24+Hj0Jp/EOwXmHMI10ODHX9ekPlgEFNhOExaZMvyQNJImAMuWXgtDQCcWyJk5QM7kgvx+oltnwXFXcMECAOzfz1PQi4wBAbkWqZ+1W8k5d1dPA7Wa2uSCgIXsmqEusnx7p9p9mRpdrD5BxrIldhEMQ2ANjmHK4EnQmpl+v7ZYhzW00TBxefV9l1mXA4CZAnXa5iEyQsFpkJpKGOSx77n5ueCDf1logqBpicMeAFiWxnq7hVq+FiSgSRDJ8ZHWRbHvOMNl47QPVgZi/HROoHOvo+jf+NLoVtQCToUbBpg8LWtonhldsGbvqVyLjj9+uu+s2bDSpp2sCZpEmjzMRXDTpKJOvqT/IAAc9/j5WTOxDjWNJ9JPGm3RRZD2NVQE/X3psqnw3iGGImHao5Ee53Mf/BB7bPfF784MdcjaRkt7cBqGaB5SM4tVXPS6heEv7l5dWBBr4dPo/9jL8i+mMWz8BMQEsLBOUpioUIDl9jtAHGNOJ0nvBd5a4UBnb+6znu0mF087dHzHO96Bj370o/jUpz6FRx55BG95y1vQ7Xbxhje8AQDw+te/nplg1Go1XHTRRcK/6elpTExM4KKLLoJtqxfYz/RopIuljg3AKx7UVEEBVl0GWLbNJo+sPwt1EzRH+PmDAKLJhcRgCT0lovzEYweJC40KYLH3yTbtAGAOSl0E68Yce+4oJjyA3NABAQiKiaZKZP1/7FVrcazJbV+FwSr9jkW9YIe5CAYBEIR8YFusi+BS9cGSXQT9AS/sZQCLHGtoiC5JcRwzF0HZcYxuVyMAITR5LyUBYCkKzCkADCzJRpx+FnFzo4XoFGyFUYCYACyzALwDUoPc0KvcB8sjBd00inphDc7lkptHmi8o3G/vTC6J3GeuEyZM8bhi3I5rsPVtXBLiaC75O+Cv572prF95E2wCbP1IAbD8KAewggAAcRizigCWPXxxN2yBkDvf3/oWHrhqMw5ddAYwP4/Fhic0vuW/e3YNZMedW0REkTDmZds39+WdRqOoVu2+TK3aV50gtQOnwEXwx/BlXG7yOkLHTAFgW3QSHOoiSBgd3x/ADeh9mIID2uZBCxH6xBiENhrevIU99rI5j9q0m07huCdfN9l4nbFLNGgfLF0CWJbChdc+zh3U6Lgdxh7iOEaQATtyHzn35GtQ7BDQbP5+CrCYw+aVVyIGb06eSfOFay914ssAltJFkCRRJkhvwqJED5Ccy5WTD+T/MMT597g/xx6vaa1DPeJJyhNGV5iX6yoDGBIjAyzbZmNTkM5N9Dgj2gfLEVlFZn1PAIVh9tnfhOMuAYaapkGPsx8sWNy9esklaP/mr+Ve7hc0aQeGuwjK2wxu/Tr5Qy23rUaS7u6gAywsYN5J7iM9Bpz2BezvBxYShnC5D9ZTGK973evwgQ98AH/0R3+ESy+9FPfddx9uvvlmZnyxb98+HD6strt+toQAsJaSwTIMNqCoGCxrhJ8/DCEALPGPUk+JML8YXdkHenGLZevcptijJDleFcAqZ7CuM77Jntuz6gWUYQA/gS/gfH8Pe42et1EiW0DZaR8Ndpg0q5Ouo0LFhJ0dN9s2K3GQWI+ISqqWsNHwovpgkYmjZwEBaRpspHbTFGyEhtjnwws9RKnESu6ZQ7drUIBlUQaLgE4VwCLH55s+gFh57QQFFviC61fgCRLBMpDrkMy8G7jsN82Ouyjc3bzwoUHwRBG46Ht0sVmcJRX6phXcP2EIOHBxDe7E7XPfweVvBv7yaqAGkcESGgQbltBc1Qu9XB8sO4SSwdJA+mlp+Ux7EAAWkZB5kfocDGuUKX/Xr7zjx3HJW4Czf2EOM//3A8p9jhLWPl5Ltu44L+KXAVZuEREEcE/jYDW7Zlon8yA7DJ1q9+VXvgIcOoTa4eNwMh3bKeqDRW3aHSM9PgKwdE1XMjE0KIPlBS42PfBvfJ9RyuzQPkFGCM+jgJYwWOv5Z7uZHbukZqjSJ8kwwBksPZ+J8AmDpUmW+ua2c+TNBRBJk01xzM2oAMAkLojOv34htx87BHTaZNkEEKXOa9n48LznwX/+NUzSZwSZix7fTyAxWMNs2imjOozBsib25P9gDmGwQp6UW9NYg1rIAdasNUCfNJCv/dmfF34+IP6ONC9deO+QpvBBOjcJx0mSQHZNTBawcxpS0Ntnnycwb3crgCcJLa3MMfTitU2lWLEC7c35Upqy5HHR3F+kuuiTOV4FsPSIMFhuDzhxAnPpLTwV2dC764G0RnTf43cBr341Gt/7mvKzno3xtAMsAHjrW9+KvXv3wnVd3HnnnULz4ltvvRWf/OQnC9/7yU9+El9I6wf+X416CrC6FhbFYMl9sKBpXCKoqSSC4zNYQkgSwXeG+YFxZR/ooAlnZTKguqv4IjpbNDmmQsZjuKUMVkScB+WsUxamCfwM/hFX+I+w18ZmsNJJxzGc4mxQel6DgkwazaRmWuccCIqJFOkZ0geLZhS/bL0YM9suYs/11FqOSgRDPRLOkdAD67bbgRk+mdLtWlPT/HUi9euT8xCt5j2rVMd3j3UBdETKayek0iTaW4cyWGEgSAQLAdaBA3B28Akjy/pm57wsQ+cSV7kJcturGhADQN8jfYNQDLp1TYcWZbVR6vsnCHgPrD++Abh3A/C7NwE2xAw0XWTZhj1cIqgAWEEAaCQ7nF0jeQaLjy9UPkZjVAbr1jXJNdezgR92H8diI+pyhqJBJJtDGSzbhnsRN4DIwEiztTL3GWFVBmvjRmDDBmByEi09NX06VX2wsjof6DB0Izm+DpcINq1martfHLRPoe+72PA4v2+sNBdlkRrOSI/gkWueAix6r3qZJTetwTKcwsQSfd00hzFYBHQZ4vxnTq2AHBREUllxGAdCbzeBwVI0krdCQLOIfJkwWCz5cNZZcN/zbraNni5kBXCfXmf1TCLo93N99ug9PnGCL6i9XhtFMeHPoj2pmK9TiWAhgwU+B6xprkGNMliWiwFh9esL5UnQcSSCdgnAikgSSF5LMFkpZbAMwmDR/l23q91hs6in48YW/fFF36uq3qlLymBR2ayf3Jv0+tIiklx0u4DvY76Z7GxaqyMKdWAhKd3Z6x4DvvhF1H/wHfaeZYC1HKc8so7lnqluPloWAsD6jbcDr3618HcrnTz8dPIQANbIDJYiQxnpQKwLdPvBcGtuswRgEQaLyKBCNugp7jZzUMpgRcTFSs46ZWEYwAmsSgBoGqeWweILjSjOZ0VVmVQ54x1RQ4cSeVqVWCqJIGWIBibgUodIPZmQhGaihsgg0XPe7PqCs4dQg7WGZ+V2Wmey4+6YfNILTs9nj+nx3WzegAjGiAyWKWxDGSy6cBLCNOH0+G+VXdelNUFpeISRmyQLBLdAOjigcqkSgAUAejbxFdw/YcgB1u50ndi3AE3KQAuLQl1ksJQSQQXA8n3AMAiDlcnBJOBvk2L/KjVYVRisLjlNHW3xfU58cg1b5DdwjibJArffAXbuLGg0LErYAKA1mXfDDcP6SPclALT0dKHaOAE/WLpVSwawMqe6DAzIDNYweSAAWGR89v/4DxGThb2ZMj8mAWGubsBzC+olCdvssYwVSQb8wR/lxtRsM5nBYgDLUAAsMsZpEsBS1cZSBsuUGKyiuVdVO2yGGkyLzyOmCSIRJOMNAUFZfVAZgxUjFlhpAPBID6fWca4CKVuLXOvdhgMqE2ZTZMDlOE4SLWsaa+AQButELUDf4/dXTWH+QWNkgKXrXNFjRrm5MCbmDLZivDcMsQZLpwCLSgQVgJmGmRkQ6WqFxSjR9vIguP+Pny7cflQGa5CyunoEVvpBz28ffPxyN52G+JxzMFdPrtup085M9jWXuC0v1IC5GmA/zK34lyWCy3HKo04m6u5gtGJsemM31m0EpkRXKivOAJaCwdKWQCKYZsqHSQRXDIAumrAzgBVKAEuLEComuGESwYiAsiIGyzCAGaxmWTxALZUYFnEcc4B1/0Ow+3wyooPOQZ0DTHq+6XHL7zmVDNaSSQSpJt7qwSUgUM8AlsBgxQgD/pvm2NYCgOXUa6zewk9nozDML/bLj69YqhL8l19nj80NpLmkBLAiKhEsMrkgshOAX9dVAJZLMo0TZIHg9dULG+8RLj3Z0C+WTZvdLiZSc4BV5sFSgOXrwBFCekeWJBE8zG2orbvvhU0BVujnJIJOQACWHgFaCM8Djuqr+H4uS4rzZeBP718vVoOhYRlY+bvSIvAOPCw2fFoHSBZSmczMN4C431fWGWTg29RN6OnY25riC0y2fVgf6b4EgAkjXehoMRb8k+UbjxCyRLCWypXlGqxhBheACD68qQkEMQFPKcigMtE79CvhkaSCwGCRPlhuO1lkasTp0HlyXyUGKwFYyW+hknR7BGDp0qLbVNVgEYCoX3IFe7xr6iJRbksZLMVYZkR6/vpOF/d0P4MeXy9oaQK0DGAB+bnPO8bHktYcH6M9rzgJeQ2+hlnFdKubyW+hHPd8H8fJYLm2uRa2z6//4w1gMOCMTH0IaB9ZIgjASX9r34iTmjhyXkLkGenc55GaoyxpZJrAgDJYQyT9mcFJuFiA9eCD6Ox+NPdyf+8Tio2TqGJywbaJIvTN5J5wQh1IZa102+PaFvbYvfwS9IM+W/NM16aT8zvP29nsmwLMJ/gxLzNYy3HKo0aKpVWUb1kIi1YrP+IxBit1L6KL1MWYXGRhh8l+q9RgddCCrecZrCCAuv4KGCoRDAmD5dTyjlxAMgDOYPWiGSwKluyBDzci7AcZdOY03jg7jPIjSFGxNXtPCBxtbeR/W5XXWY8SSyURNHQDepz+tlYfHqkTy2qwKBj0DCAkCyHhWo1N0GIlubaGsVGEUZHrgeQQiotLiq2p7Mcg+xElgiKDZapaCACC7AQgi+gqEkHCYE2s4UDPLcBy/v497PEa90TxjgE00670mqE2ickkgocmuC0zAISWaHLhzXNJnL1nP6ufAhI2t5TBSl93XaBHFizWxmTCla95Kg/zFImJbDu26woSwc4NvBXAkjBYJKFlUZMLcl78QbeUwaK1Sk0VwIoqMli33Qb82Z8Bf/zHWBHysX/enyl502ghSwQdKu8kLoJVGCy6aPUjHxEB0WbqvCaAFj0QGCzKWln381q44NFE+p0xCkBimFJVItiNEipmwZnIHXPGYJkhoElJFquXT9JZxKTDWsmTCl29JtY/X8Dl1Y5iQW6EhgJgpQwWSWy5V1/JHu8JzmXfKYsoHbfq5NKXARaVKrdoLahXnIT8k4lfUb5uW0nSUTnuRRGOX385e7qmuQZaWEMtRe/Hm2LNT62uns+zGJnBAphJT6whub7I941IUlMFsAwDgopHM3vs9T4FhkMAFjfBihfH4Hz0o2h//9bcy2XlDyNJBF2XM9cBn6tFtQ6RCIZu0pc1jSlnKrnn5rmcf+8UoJ3kc9cywFqOUx5Wg2u5uxflpU9lIbgIKtxrrNMT/WvmfkflURZxGxsWYQghe5OFHiV3JqXbXxB+L7fdyn7CYDmHks7wYRwiPLCf71vlIAgMlQiGlME6xRJByrrZITAAPx+CLplk+csYrDKJ4N5Jfh1om/KSy1GiTCI4aqbcSgfUafMQ7KM8E2UYybkXFlEGEn1YGgLAkmQU8sKZsVFE0x+QhYGlsB8XGKySYmuBxaWyI7LPIApwi3UT3+487oYkhG0z618gX4NTKhEkSYbJJq/FcQvABZUU6sjfi1lElsWOyTcj5TFkDJYs84mMEpMLuyYsGv0oY7BiIK2FtEPApogtBVjQ8+yjfM3bDpGQxepzMKrJRYd8bsctrimpGsI1WACwvEEXus7rK4MAwD33wH0iabLr+Jwpaa3kyRj2GVUZrC9+Efid3wHe9S6s9vgbFoKlA1hBkAKs9HrOwEBOIliFwSJMjR/6CAWAle6XAizDh09Mm8xVHIyaBGz5KctFAZZjNypLBLthMv/2FYvqDGBZkVgTBQDmvgO57S3CYNnkg0KINVjmOg5OHZUcLTTy13cKsKI4Yok7l8gIB+E0+05ZzNtr8C3cgPmQJ+nkGh2vEGAVL9RnWwRQRETuWMZgOQ6On8sTh2saaxAEwGQ3GbePNzgTpMXF83kW9PxQgFV279h0yZuNTWmEhOEuYrDqHT5gRlOH2OsDCgyHmL1kEsFgsQxWkU17iTpnJIngYMAAlh0SgxkKzMg85AYu5gdc1cMYrDnOYO2dBrT5ORhp37BlieBynPIwSBazc8HZI71XWLTe9n3InszWdLJw81MHI2o7a158CapGkUQwA1g0Q/jG8FO57TKAVevzO8rtzPF9FzFYQySCgUkAVkGdTMZg0SzeOCYXQsF/CASRetDRIS7UVcctv0fOtgZk8eGU9GCqEkvFYAGAk8pUWtZxBIQRMBQSQV8HYp9/fxFgib9VdkzZwrSWLkLr1iz7+8rZh9j2q+75bu7YaP+RF1lfwfnYqQYX9B4oM7nQ+HZ04SSEacIht5xsclEqESQT4YTJFxNF7l0CwCpxEYxMk8kWywBWE90cwPrXFa8VjpsuCm27DutVP8meM5MLajQTAvZaYt+dLWKMPPuYM7mY5uDN27ZF+d2GMVi5GiyTg5nOeWcp9zlK+CEF+fwapkYFnssz2+yY5ufhpqDRIfKw2uQqyMq0E9H6avclMTRaGfLkwlICrDBMJYJZJtsgEsHeauBIModct/m6ofuirLN/y81Sn7lUIkjlcnqAwSa+ODMvfA5/TOSCgZcBLJIAc6ozWFltSaxgODNpvRkBmin+KMMkggLAigMxWUG+p8p9UVcxWEQxke1LaOmQsit0vH+idQlejG/hO9FL2Ws5iSAZV6oArCgCMMnB5VaPgODUqKqwBqt7nD1e3ViNMAScXjIIzTaATnp/1QJAq+UTxjTGYbCc55H2FhLA8ocALMMArPkNzCXYmz7AXhcYrGEAa6kkggsLaCs+qh9WA1hDJYICwCLzJE1QxBKD9bG/Ys+nPC0d+0SJoBbHWIGTueN5NsYywHoGhEP6ayxKIviRT4itusEHijAOE81xQfZ+WBRJBPV0cgpDno2IFUwXkwiSTK+bFtcGAUoZrHKJIAFYBWYQS8VgCQArNfagn5FFM+QTE13M0+OW35NjmchkbC8SYFHb8MWYXACAlQ6ofQt47CLe0NDSk2tD0zQmgWgbDkK/oAZL6ikjn5P68TkAgG3wCTskDKLq2qUMbmj6aKCnlsd98+t8P1SCJDBYvugiWHKvOARQyyYXpRJBsjiaIAYehQ2IPQqwShYfus4ZLEPtpJhJBGWA9anVbxKOm5pNWFZNXCRnJheGmHiwBRYiWcQ0dS41tBaSGrMcwGryg/HWcLBFY2SJIFk0dTao9zlKBBFpFUAbDZMFs6sCWP0+BylkDNRMU1jUAkAcjtYHCwBWEunSUgMsweSC1mBBAz55K774n27Fe258z9B9Cf3iPvv3AoOVGfnQ++xM/TG4vnq+0gnAyuq0MoMWAHCcZj5pVTTupsCF1lyyfa9PmKZeNJn7TSyFbJjWkNmkufWke7Bw7lUBrDKJIMDnIlUjWNV9EXv8uHIAi4xDAsDy1Qv1MIQAsM4Oed23aSXrl0IXwV4CsKZr07CMxH14f5fLBg9oyTmrSzW6qhhLIkhZMdNl79MRYkCStSrJq2EA74z+N7ReInkbrDjCXh94vG62ZhQnvwDAzGr+FisRbLfVDNaQ/mVZDJUIDgbop5epRQAW3Xatz8d192MfxvwTO9nzabOllAgCwCqcyB3PszGWAdYzIGo6vyG75EatEpTub9QmcgBLYBQif2yANYzBCgK++FEBrP/e/z/4NH4BFshCpN/h+y6pwSplsAxOH6iMD4ClM7kQAJbkUEezOhf1eePIcSSCickFzaYtDmAxi1mImVz5c6uEFSfXQN8EfLLYtAhg0tMFw8P6uejbfPLtERlFXep2L2eXM9nJIPVvTpwVifGH4rd2DIexAX0r6emklAje+X322PTI/UAy5OFVV4o1WFUB1ggmF/R6miT2yO7scdXmwkKojMECADvtcu2bMfxA7WSpAli60xOOW5QI1nNNlZP6SRlgkd/G8OB5wDbjR3w/d/0QQF4iKNTvFbB4I0kEgwCdQ3vY01GTV8rPpwwWYczpPZqZAwh1eP0+l9lJ8thWIE3DoV3tviQAazUBWO1Iff2ME4nJhcvAYc2UWJLBNK5Z/0KhPqooxLlIbIOQSX4N3WD38KR+An6gvgfp40wiqJE5xKrlJYKqcdcwiOur5udu2Mx9Nwxrud9E1brBanA2x9m/lz3e2H8YvkscKNt8nncU7PgnwjcXSgQBfn8IyZgwb3KR7SP2OViR1RujAiztnb+DcyZ4/8lt517LHi+koFM57g0GON45BiCRBwLpvdHjCp6FKDm2WgCgNgSojGFyISRh07EJACLouOPlb2d/UtWzZ/s12omzLeonAWcepgn0qb28WX7cRspgLYVEsK0CWFExwBpFIhj3+yyxUgSwqFTdG3Qx1+OAa2p6fWpysYm9tnc6+T8DWMsM1nKc8qgTgNXplBevyyGwAo2p3N9pIa4f+oLF6+gAS1WDxRms7GYJo/x2c/1tWMAUbLK4cAcEYBEGi/Z71MxeJYBlhSjsw2KaS89gObFemE3XiQQoVPTzUUlV5Oa0lx/+V/a8ScwNxg26AF2MRNCKk4m6ZwMeWWzaBGAxdzXDEz6r151jjxummJ2UFz/1ODkw10TiMBnKzZfz166maailYKdvlgAs8ptQkwtjgvRmazZwDrgk0WwXJz4oIyGbXJRKBEmx+sTOXeyxd+yQensKsPTy7G4GsADR3j2LMATuweX42qRYW6ZJ7ovUbMJ2Gvk6GpnB0i3YC+RcpQyWplNXTMqC8OORTRBUMYzBiiKAtfmZn0enz1mEpQBYNKlAr3kKKjNplcxgeayOSVyYNx2pmD+yRmawVrv8GuxES8tg/bbxXvbcmUjqlZSSoiEhsp8eIgTKv1Eba69Cz7oMYGVJOjsAtHqjskRwa7gPQCoRnBHPHUuQRWbuN1EZ39gbeI2RbfG/RwgQzBEW9wf38O1W5+vwTkbrCl0EAS7dHSYRZPsIKjJYRPZOX2exdy/MP/8zXDB5C3tp26Uv5vsuGfe8L38R815yP66Z403I0c0bvdQrAKyxJIK0jECQCGoYWHzhoaopzPZrLJzJX1yxO2WwiE27WT42c4ngIgFGkUSwoEk7MJpEMFizCll5XV/nNXwigOXnyQ0GmCcmF9PT61ntvt5NmOCMwVqNmdzxPBtjGWA9A2J6lk/8nb//+Ejv7ZHC7UZzOvd3ayc3IvAjH8HMMf63f/9K5c8plgha7O9ZsjGADVvGFf2kFowWhnuDHt83yT7SnkC22S6VCD5uJPpep8CiHUgLmdHEPp/Xty26BgtGYTadAqxAMUmpiq01TZQ5RVQPvkiJICDue1ESQfDJo0d6mthE5mIwgOULn9Xv8QLYhmTIIst3ajEd/RMnyZDKswrYyqwHScZgKeVxlMWlfWvooi0KsEl/kj23BsWTliB7lRisUongFp7Zm9hyLn+9oPaBXn/DARY/fz1XfQ3+EFdh56RIYelWBwCXrlCzCcuuwfr6N9hz/+RMHmCddyHs/cRCPl3E6GSbrAFrrg8WZce66nYVIxVpz8+LNu3zi2d2jq/kcpdg9Rb22KHHrgBYca9HnPjEhXlro1QbFlYEWKQGa7XL37DUAMszeOIqY1tUNvTDgoJzLwpwaAU377GJPNckfam0H3K22bj3Pr4NbanAHDO5kyVqtdwxFplcZCqMWAMiT7xXgrgYYKn6E9LvaEkAy/fVTZOddyvklRKLWYnBUkgEV8UzuAeX4deDv2WvlQGsCTKuuCoG65sJc8WY71jHmdMEcJQ0Gp6Z5+PCGjNZaYchBAYri/ra04BrrsnvhMRYEsHd+9ljzegJ7/NIE+QiiSAAaHPk+04nAKtP2NjaGVtRFqzvmr44iVy8MK+WCMbFc9UwBQDdpj/Jr4Wuzutq6fnVNAqwXMz5fD06XV/BxmKrm6zTjkwA7pt+BUeN03PH82yMZYD1DIiaQS7kkgJFVfS6fNFan1B0licDue8NEJA6jqXog6VisHxYsGRVUgqwBAYrpdVlBosCLNPoljJYfto7yy4yIQCvF/hv/l+z1xZdgyVJBAsZrAL2QH4PfR6GQEQKrh27PJNXJei+FyMRNDUOZJ0F3pfJEhisdNTXfeGzesRwoPFj3CwhOy56nHUiJdWtdnLcJDNXJJusp5/dN4E6+mqDB2KdTwEWlTn5QYhYp0CsuHDZec3PsMcjuQiS339yYjV7XASwfLKYMozyJpwWyUT3FAsldlyklgIA/vjQz2Iz9vF7mQIspwHrCAcp/qCblwgads6m3fMATc83zpZ1/8ICfOeDyu9VpYYgO/Zo7iR6FGDdlTdGGTVmJvlCI1rHF1KWTgEW74+THXPQ7zI7fEdamOey5ZE1skRwHRkzu/HSugjSsTmrFxqHwRIYyjjAty76NfbcMimDlWX4I4R9nnw0ff5B9F4NgmSsjNPjdEIA9WomF4YBaMQFz5ea6wbp57ciNy8RVNVgUSaO/D3SQvjkvqbtDlQugjLILqrBmumR3zo1mxDmIkPDZbgPm4l1fw5gkXGldfaF/PWmYt657TYAHGA5/npMUHv7kkbDxztH2eM1TrJWCQLgnO5sbtva2tOAc8odlceSCD7KlQKO0RHe51OApWCwTBN4BXbgl45+jb+4YnciEazzD63/+m+WHnd3ZTJueLq+KAZn0G8jEypQgycK9uQYhcGi14ke1ZTbUgZrEHqYD/g5nHKm2Hht9Xhiav97fhf3mVfmjufZGMsA6xkQDilw70QjAizKCkzki7gtYhnuDToIAtq4cUSTC0VtlRbnGw37sMRFFoC3DD6LVZiBRQrDM4CVY7BqPKtumGqjAv6+NGtZYHABkAHX5+dZtqqtEgLA0szCxR4FWJ5XzGCVAiwySNpOuStRlVgyiSDJWM2R+ZfKpWppWnClcRTNGV6H0CNF7Y1LrhT2K2eX66ALkLn0nOQX6XIwgFWZwSILonmeffP37UWsEyBmlQCsy5/LHo/UB4ssbCbIhO4V1Ad6BGBqQxgsCrD6RdegHgATYsPingU44L3nvBRgmSGgOQ5sAiR8380zWGYeYLkuZxcAXrskT+qapiGrM/e0fN1Yth3b9ZAi7d5JztYDQEdffLrUj0UwyR6fzhcQ7mUXC8cUhtzQB8ibGrRszkTpEYBYr3ZfruPSsg0HD7GGZksJsJLkF2ngq/jtKjNYgkQwQBDS+5nUeERcQuUHxGiGslxUqprOaRnTZjcmgBtvrASwNI0zWACEBCQAROkctS6aqWZyoRcBrAABuQ+pzbzK5OKy8MFKLoK7ZjlgwOzW9HP5S6GZbzScs2knTqGt517HX59UJHGOHIGvA0fTS7bun476gO/cMRN3ONU1QR0E19SThFIYAit7+WXoMJkdMKZEkKx5LKPD3nc6DsA5fC/7WxGDdT4ewc/OkDY0KYNFwUhtSA1W7KTrGz2C56vHuaERReiQmua1zbXscf+CYmA6ismFykAFEK+vWONjl+v1MUfcYqdr05zB6hOr9rm9lRKQz4ZYBljPgBAAVpxfDJVFb0AkgtOrc38XGCy3D9+nMqslMLmI8xJBD+IiS4uBvxr8IVbhhLBAy9y2ZAZrilh/GqaawYrjtNaiAsDiOvTiQt8qIQCs57+wkAkSAJZCWqYqtqbPgwAIicGC4wyfbIZFkURwZJMLQw2waBbWTp2/dN2FRequyppi5xgsIiWtWSeTc1LB+KNucAarsAYrpgCLSAT3H+TH8+D9iEgxYCnAIt99FJMLwUXQIhNVQXF5bwVPoMROnq2mMd/kk+zAz48pYQi0mo8DuniAGTDN7i+/nnw3SzOANWtEIwqvn2ewTEcNsGgNlmyUAH5N2pkFcgHAqiJxyc555yTPmANAx4wWPaNTFrFGm8qu5gscb8Na4ZiCgNebAvl2EhRgZcx/pfvyoosAK/k9Vj1+N9BProkelpbB+nHjn9jzrMZRKckcEgJDaYiMNG1FYUXcBCCgAIuCF+r4mQKErOm8M70KeMELKkkEARFg+a44L2T+I0akKcbr/JhgRxr5Ox9bYoTC3GtRF0HFfl4Zfr2SRPDx2cf5RrOJBJ4ulmM7D7ByDNaZPDnQuml77jOE6PdxeII3J6/7G1HfweuxTrOeAFDAYPX5dUlNLsLu+ty2w0AKIP6OlftgUQmn2WXvOxO7YczwcooiBsuDjTNPkhczBouAVlU/UhoGUfH4ihrtStHtoj3NPyc7nwDQv7AYYI0ise7PknKSQG1yoelk3urOYZ5cylM1zmA5FGDN762UgHw2xDLAegaEQ7Il3REBFu183phem/u7TRgs3+sLDJZVwfkpiyKA1ddWsL8XMVjTA8CIkzoogcHyCMCiDBZxptGNAplX+ppjJADTHhTT4ioGa6xGw2RBbJ97gXBc1KRCJ/VDnlcMsMolggRgDSn2rRJLxWCZ+nAGy0yvOc9AcaPhIQCrRiYh20wkgnFMF+kFACs1jBlYgFMgEaQMlkGAOTW8CKJAYLCsEpkmzUCPYnLhnUwWHBo0NIkphVvArs5t4/KdfusM5TZZzKy4lG9bIBH8g8lfy72eMVjZNv5k8ntb9SZw9tkiC6FisL76DbVEkPbBMtUmFwBfoPpycyhpO/n9qn3JNVcdG0C7jcVEFPD32yR5RRNHKpkoBViOtHhsPvQY30/B2KAMxwGuvhq4+mqcvOqlrJZlKQFWGALbzc/zj0wZgEVLBHUgJu0sBAaL9AkKaHNeakhz2RXs8dz5KRsuJduqMFgAoEUErEkMVnYdmmGeVTQVY5BFQDdNykRaIM69hEkx/+lfoMuXu1TzVSQRfPzE4/w7zG3Jf790ICpz0KWtGFot3vBcCbB6PcF5tBFsRK1GTFrKJIIuRyZrJtex7fzeablt624ooiZF0O9Jp9lSBksA6T32vgZ66JIcrQokGUYCsDZ0wJvLj8FgUeWQNy7CmJhA55472FOBwSpR54wkEbyN19tu6exRv4/W7PXawpqAMli1AQfx++b3wUrn1mUGazlOedikySjt21Ileqmtux4B9sp8sSgdyH2vj4DUBBUZBaiiyOQiSk0P6AR2AqtgE4nXyvR+76IJrOUFou7WM9i+DZMvQCa7fNDRzX66uFYcD2JYRvL9nZm5wmPPBoTf8f+CvdbvnCzYujgEBsuwC6V+OrmtfDf/e1aRCIZLDLCKarBGlgjqXG9/kgIsAjKsFGD6MsBa4Au/xrwIcHMSQQLYLHM+AZ1xfpEuB23yaJkdtUSQNhomheh0AReEISKDblfCYB07wR5n4KiSycVM0kfF8WM4fX6deIF6DHDp9acXHw8AoUdTX8FgBQHQnczfAxnzl22TXfPZopVKM/0gA1gk8RBCyWCB1mBZxXU8GcBaColgd4H/LkAKsBbU5hlVY9M+vuhYeXgPe0xZCCXAetlL+LZTfBELAC0Crq1RABYAfPvbwB13YM/b/yJp/AvA0xZEd7lFhAygnXThuWiJoAFsf+jd7DllpDOJoG9AAFi0T51J7NDdjA3KarAUdWJkGMqP1yQhVsRg6ZGWlwhuzTMFtCF5vgarQD3y2GN8wZ6GVqEGK45jJhGsDc5kDZMFEw9TwwCOKBGUbdrJuELZVE8xbsgAqxluRL3OX4hNPnbIcdyfY4/XTCWgKgwBr3t6btvaV78JPPFEfickxjK5MOh4z00uGuiha2WPLeiK+nTDSJLHegyckX2V6T3Q9Rj9E8lYrseA9U//WnrcdSIXDgajJ3qzaBODszVNwmCVqHNGkgiS5H229tN1sROQSW3a9RjzZE0w5UxxgOUSButDf4ovd24AsAywluMpiBqx6e2UFCiqopdmAuqhBm3jxtzfZYkgdbUbWSIY5he1OvISwQ/it6GfwR37VhCAFVOAddp6tu9Jgy++p/Yc4fs3kwEoktZbYQgYCJkzlx0XX8rZ4HEGKfTtE2ll1ZABVpHUzyATtlvCYJVJBKNnqESQJgNotqpGFphWCq59HYjJh/UO7mGPG1/lfVQAhUSQZkWtpJZqd4svaPTnXAFV1FfwiWaH+aIC9lMtETRMkcGqKhG0P/xR9thLJ89KEkEkf7RDwG5N89cLjG5oMXqZJBaAwBQPFIvtMAQWJvP3QI7BShe4mbzLJufL9111HyxlDRYFx8USQSu9j71cSl/cDhAXBUqJYCcPsOK5OeV+q0ZAQL5Nstz0O7tHDgrHFASAe/H57O/OxLSwzxaRI40kEQTYasc0wQAWAJzonyh4w2gRBNw8AuAAa9ESwbUrUQu4uYFtEfCUXgOBDoS0ZpiCMGpIk93PGYMV64DvV5aQCQwWYXujOGI21Uak58drxfwpLOAFBiuET1gOoY+fbedqlhFaComgaNN+uHMYXT9JMNZ629jf5PvClQBW3uSCAKyb+bjs7dmFXPR6OMixLZrR6ag3CMCyShiskACCFclaJQiAnr8WDWmarGLTPpZEUABYXRFgpX9qauqxPpMIAsCZc9kOe5gLjmGQJtZqPqCdKL/3Vhzbwx5HY6xDsqBtJ9Y2CIPldvMZ6TRGkgiS3l5amHeoBERzK9cA5jYn829Dd2AZFhuv6x4BWM0Aq9I60WWJ4HKc8rDIBNvRRmSwaskV35haDbz61fl9U+tpbyBp2kcEWLEOPRRZr6wGK4rEm4VOICv7gAcLPmwh45HVq4RhUmuVBXUR1Az1gB2GSQNMP73hqRRSjmzw8H0+EfS9MVwEyXuchU6h5IQyWIEEsChQLGWwSEF+mTytaiyVRNDW+KJyrojBSkF9YAAgjGmPNsWWWgrIoLP2Ul4LcMBcjTAE2sRt016b1+0DQH2CswOPWWeoJYKbeSLCNAoYrCgUAJZlF4NcoQYrzYDTCUtODmThpQDLCQGHAqwCBssTTAGGACziwjhQXOthCJyc6uRez2qwsm2yYnoVg+UFColgmLq4ZcEYLAKwyhisVB5WBLCy7Wjz7KJ9dboiQxfqwGBucfI5n4zPNmkNYR/k9V7ezV8WjikMRXmxbGrQpDVYozJYINsTgCW4yy0iwhCITMJg2XkGayyJ4JvfBNpf2SH3XmQk56OnW+J8RR366LwWBoAWsnpC5+77gR07KjMcuiAR5BsKUuIoLxFUNTsXXATJuO3puqgeIWwcbFvBYNlDGaxMHggATudscVvyeCjAOs4Tmq3j3DTLU/Wi6/cFBmsi3ohak/cPzK4VJcAiLn1rVm9m23XQwhppiKrSaHgskwsi5TUKGKymrv7cTCIIQKjDOtjdjX66lqkHSKS7ZcdN1gdhQb1tlWh7BQzW924rlFeOJBGk80aYjHUyeKWJvPZLXor5yeT5VGMlr5MH4MRTmEzNPfZPAiviE7njeTbGMsB6BkSNAKyuNhqkz+paVJ3HgbxE0B+TwcrAky45CWYLIkDUQdPJdGU/GUQBkVLOFh1BkND1WQgAq0ByEASAbfABuwxgZYOHH/DU21g27fN8VLU//6VCqd8Dq17GHg+mRDOCsh5UlGUKNT7y2CU9vqpGEYOljzgCOATkBAZ9PV+DBQAxmcx7AanBaqnPC2OwqIuUOUhNLoh1vaWWtwr6d7Ovlgi+hlvE03tAYLDisLqLIPnMrK6wioTKTX9jJwCcVcQkwVQ3zG48eCt7XFPjDxaXP/Yl9jicPZz7exAAJybzUpK+yRmsIAC8+YRlsPYdAI4fZ+wTQCWCwxmsO43L2UvW865P/qQEWMkF6Rdcl8PqF7PjBoDOelGKBwCduWO510aJgLRPsAmzTNtEZH2FBIAVFgOsFnFNzRiscQBWvcePZykBVkzYx+xaX7RE0B8Iv7FFVm79RtKUtK9b8EFYZJoMmeHsl3HoCVHGGAKo1SovwLWYzJFkwUsBlkoiqJo/BRfBM7eyx/c7lwpzr0VqTOE4YlICQBWbdmpwYacAS5ZwZQCrTrBSzkVw7kT6HYH6Sb5op03GWVxwAfaezq/XiXgjzEaLuX9mAEspEdT5uV2zZkvyNTOAJfVxr/sA6kPMIsaRCJLxyzB7agbLqACw5vjrB7q7MUjnprqPoQDLFBKwYwKsu+5C+yP/hz2ddCbhpHRr3wIwUO93JIkgAVixn0+sAJIUfe1azKWNhmn9Vfa+Da3kvj7SAlZEJ6AhWmawluPUh6VZMNJ5pGOMBukzvW0hwCKTgOcNxELbIVlwGixzLMkEa+QuEgCWKQKsbtovwSTZQndhlu2bMlhTZLAsyoiFIVj9FVANYPXQYhNNbxwXQTLglEkEI9KjyI/ElXARRU+fhyHwcOM57HWrOYHFhqoGa1R5IADUdPV1JjiqEVAfErlbjzyWe7blJIK0yNhK6vBC2syxAGAJwMyqYHJBpEZ0ARdEAWZJvZlZ4FoISABLqsECirN0blpnZIeA/TLO2LlnblJuH/r8ejcL7vcs7Jgsxtxu7u9hCByfzGc5ezKDlbJslhcChiHUvvmhV0ki6HlILOHTyNhApYtgKq/1DCipvyInOKVE8Ibn596/aIAFWhvJE2MOYTgzplGQCO7fzbeV+2CRGhZrnHvzv/93XPSKjfiTHl9wLRXACgKRwcoSGIuVCPqBKzBY9H42svpdPShuqXDgEHts79spuNDaIYB6vXKfpN3GBexxcCkfd4X6r1AhERzk7x+rgGWLESA4j0ucre0/xt+kYLDiSNFoWLJppwyWtZB3EMze58EuZ7BSV1U7BIyJKWTEvRcrGKxvfhNPXHYRezoRnw7U68xEI7BKGKwzEoa1pdeZMUYQAAPUsHoMBmusPlgEYOnGgL2vji56GYNVYBEvSAQJg3Wgs5s1961VYrD4jxSNWyu5cyc6t9/GnrbsFuqpG2bfRCHAGkkiSJLQUcpgydcXrQXu+T0mW6QOgtn+N0wkAKvjAH07whTmlxms5Tj1oWkamumCqbNp3ZCtxRjKYJGFm79lE4KN3LHHvO76yp+T3Qi04RwAaCCLy3SsuBFfR/1R7oxFAdbEPr7QcL+2g+3bMDjgmXzhS9njowZ3KZSPhwIsp4JEsIsmA1iDERs6A4ktdRa2bhVn0ymolVI0ZfI8CoJmLS67KJOnVQ2VRHDULDkgMlji6yS7XASworQIPQCMFtGZIA/6RAarjygCmh5nYpxOXt4GAHUiATnNfHwowKKLIGp4EUQRHtW3KbeTw7EowBKbzALFC9DMyMEJAcfm9y9lO2hkYAcA7KFOVdStM3+uwhA4MpnszyA4pi/VYHmpi5odIqkVufgyfjxTE2oG67++k++QSQQJwEoXoSoQymqwJIMUebsyBivbpuvngWWnvbjapIB8D9shtVOUwVKZXLz/f7K/y2NVqzHN9znOvdntwj52UFikLqlE0CCgcokaDXv+gMm7AcAmN4yRjR+Gj4VN5/LXN2/hjwmQCaNAZLDSxXlVhsPV+FjkO6JLZhZaZOQlgkGeRhZqfMiYEWkBfDru0Lpa21YwWMMlgrtO8hopMwVYuXpgA3gf3om/Cn6bvZYDWKQWFBMT7Fi8WEJ9aRztp+0seqsSwF2vMwAXmskDJcDyE/nhmkku70620zDdFRNYVWqwxpIIruLrq4FhsPeZVptZzzdN9VqqiMHa39mNfsZgVQBYJqmLD8YFWAsLaJOPmbAnUE+TU2UM1kgSQcJ0xkGaIC+RCJ5o86RHGYMFAIdbwCqcWAZYy/HURKs+DQDojtAM0w99tlhsPLZbWdhIC7H90EdQIxPAaepMuSoynKCF4gJbJ/2KssFqM/bBOcYn+BUDLhHUNbKQJBJB3SQAi/QEyjKTKokglRXaJU2Ts8GjiyYaGYM1FsDi77FNpzCbboACLHEEKTOYEPpgEbZGpfUfNVQSwaUCWEZgwLK4LsUm8hcRYCWLoIYPoCn2GZGPqfYIB+hbrQcAABv7D/HjKHCYqvf5CX6D9X+VEoQwItI/KhGkNVhxoAQFqrCtcgarUCKY1hnZsa50oZPDo7LRIeyz4O6kqsHyfRyaSD7/rD4//p2rL8FX8TJ23H4KAq0QgGXBuupqvt+plprBavHkAANYRv56VjJYW5OFYmAAsSIVXYXBYhJBBbDs3FQ9qaQKgcGq82vYJkkQVwGwBkR65jjitd9qcjZ3NlorvLdSXHUVAAgyK9rUdTGRMFhUIlhsUDIsBIngl74o1mAJDFb6WIvRJqY15jq+QDMlQxrZyRK1WmUThKyOmO0re0wWv0FUy/0mNCGThSARpAyWFjDDGHk7OE6OwUKoYLAKarAs3YLeTmqaVAzWR/EmfDrgLRnk5KIAsCYnGch3FQAriiMcG6QAa2Fj8nm1GktcBum1Il8TYRRitp8oVmi9ULbdgd5lwvb12BC1jooYSyL4kpezx/uM9QRg8dozVZPhbL+HcBr+Af8Zj2mv4/tZ2I1BOl9XYbCohD4YtwZrYSFxRU2jZbdQT9cdfROFNVhV+giqGg0HfnJOcgwWkTuffPwu9ngKTu6z1rc4sD7SAlZjZlkiuBxPTWQ3tWpRUBS0jqg+u6AckIRJLfKFQX5kkwsAiKTsjkYXcunnSH2wNPsMPILERcsw8pn6MEz6XWUhAqxikwuTSgRLAJbAYKU3dD9SL2LLwi2QCMqDzmkdztKFJ0RJUlUGKya1HmWL+6qhYrDGkQjWjXx2LwwbwnfRidHEkRY3lOilLQjqPoAW/43jmKvBmETw+Bz7+5SZGAiEtP5F0ZwTAOpEtgWzQCL4d5/km1AGixSlB4YhACxDK561KfvkSX2wAHU2N45jeEYCcJxIEwBTkcW2TwCWqjkpDZpZ9BX1hqa1h9XQbXP5OVuo1XEIiW2y54fI+qZaERKARWVeoa9msGjNYCoR3Kg/yY/tRKKvUdZgEfttytjJ21VhsJQAyxxSvDYkKINVqxGTCyoRjESJIMCvC0DRB4v0HrLHuTdTgHXqGCwCsBbBYAnXztysUINFGw2vmeXjZ7DAzUOEe5XcL2Hk52uw6nXhGMv6JOkkIeYTYwff4PPpD6Pn5UG9Jak5YklyTJrMb4p3FTLnKgbrZLhWwWDxc+QGLrNoP2vFWYjSRrCF9wVpsZKrwSJmOxRgqRisY91jCLPXM4BFJIJeqnGVr4kT/ROIkdx7tClutt33+j8pbF/TyhNIwJgSQZqYyuTLAA7YPMnRrE1CFaYJPIIL8PP4B7xv9WcBNxmrHj/5KLJRpVINFplLwgK1wtBYWECbfJUJZwL1NDGxZAwWAVhhoAZYFlGMHKtzKcT0xJpyBmtimcFajqcwss7h4wKsRsGAJC+ICgf5IcFMLmJx8NAVEkEPNivWBoAfvOgv8Xp8OtmeNKrNMr1BwN0CAaBuN/mxGUvHYPXQ4AxWPDrA8ki2ybZqhUzQpgXOvoSz4kKnislFGAITMc9ALyWDdUokgoEjAqw1XIa6e4rbU/fS7L/MYKl04XWS5ddSq/6QsAdWgelE3eEL9Di1d88d7gwHvQKDdQZvITB/+fMZ66LFBrSSbCqtv3ElgwNAneGnCzknNmAf4b+3e2CP8nM84mpoDwHdJrXPDfJSOb3G5UWbowlWWxOSe2pAJHp2BEDXcwmbKgDLdYH1xn72knUyyRYrAZYhZunlGMnk4lMfyb1/lPFVFQLIbagZLC9NYgkZdp8CLMnkYpK7/9lpzeZI9+a2bQgnpkSA1V86gLXL5EmS7NgXa3LhGRAlgsSm3Qo5CHaJMY4AsAggC6MwX4M1gkRwOuTXRPAkvy/oXCk3/gXy7q7yHETNDCa1E/CJPN56cg95Y96m/f+E/7VUIrhnbg+rvz571dnFagoFwJIlgpnZTiYRZABLTnAcPIgDr+UGTljYmHze+vWonZ2M8z0ztdiXronjC1zevabHx1JWetAXe3jWteFz3lgSQXrvZew6gL+1/jN7ubk63/hY3q/nasDJZL442D7AXh+1BitU9RqrEioGKz1nfROI++oa81FMLvrkOvG9ZF7NSQTJPDNHlgZT9ZV5gDUhSgRXY2YZYC3HUxOtfnKlBVFQKBGSo0cawTUKnG/oQO7v241gjtcgWLNzlY+vsAaLLuTSsUJmsJrGSrI9YbAiXhCrm0RCc/AIamEyCLfMGeHz6fHQ2gDbzjMrWagkgi4CRHGBf3ZBCADLdAqZIJ0MoL4v/pZVTC6CANgaPsBeXwoGKzsHUcRLW8ZisBQd7hE6wr4oIAwIkOhrwwEWY7BIbzjNSiaLqArAqhOAZQ7UDBZZOFBmii7gwijEWfqjyWeF5ayHQwCFCmCpjoGyVLZpQx+4zInL66qb4XpErkclmaqwNH6f+kE+m3mixceOjde/ktW8hRqfmCnAymqjLOHaHuQlgi99Bex/+yL/oHQRE1FHRrvYiU7olaQYB0cyuVjIg4xFAyxiQlQn5jNU9pfZW9NjGpS4CDY38B4xh8LNufcODV2Hf/EVp4TBCgLgb8w3sOeLMbkQbNoNlJhcEBvrHp+vzICP17TONVDVYEkmF2USwdN8vvgP7rtH3G8WkalgsMTfUQZclBGPtAjBIb4QN/fs4xueeSacDRshRKTqg8XP38PHH2aPt63YVph4ME1gCnPYEPDzmK/B4mY7pQBrbg4Hd/N5CQunJ59nGKhnVu2mC2hR7po4fnwve7zmB/zYWZLSFQFWzSgHKdl3y2KcPlgwXf4+myehiiSCuc+bOzO3TbUaLDLPFLTkGBrtdr4GK02yRzrg99Xj3CgmF4OXvpi9dixKxqicRNA0oEf5uWi6Nj1UIrgKJ5Ylgsvx1MTEY3vY46qLgP4cz3o3CpxvLDKQ+0cOIXiCFMb+4O5KnyNIuGJxElHVYIWaxYAMAEwaq/j2lMFKFyJJFpwsQGbn4fTTBqdmm29DIgyBJ43N7Ll9Td4xLIts8NiJC9BtnMVel6USw8IjE5Nj1Yqz6dQan/RxyY6bbVfCYAW0B9MSMFgqOcU4DJZKIigzWLZJWY7kw6I4Qj91U2hIEkHVoF+jdSppfR6VCFqWOqFAGxTHllsAsIj1M2WwaPPSKICZ2grb0RCApTCoGLYApeDBed4LgFqNyYRchTQOAHw9A1h5y2g5LJ3WXuavc7fJpVcbz7mSjR96PIvzsTPZRgGw7P/4Kt/vo4/kGaxffRPsL+3gH5QCrJgkQzLTFtrLijFYJzm49CR5Ld1uqETQ99HV8uex88Pv5V4bJQ5MbmWPHYdfg9Sy3Y0VDBb9vWUGa5pb9Heilbn3Vgn/sqsw6YKB9KWUCApj81JJBHXgmMO/t0NuGFqj0njyDvbY2MtZUNogPIzVNVhVGQ4dBPiRBS+V08u26UDefEgepw3aaFiP4NM+duT4ceGFcC4Wa5CUJhfERXDn8Z3s8dmrzi5M9hkG8Pf4eewLzmOv9SUH3YwZzwEsTUpA9npCDyzGYCHfViMHsE5ycLnG4IkJdtwSwKr/j3djWIxVg3XP/ezxecb9/H0WAViWGmDJn2edPD23Te28i4CNG3OvC/uhrS7iMSkcFYNF5Hr9njpJN5JEkCTxvLSHqOr6MoM8jJiqTZVKBL94+k34Z7x2mcFajqcmGqTQtjNQ3xxy9Gb5IqlRMCjQgdzzB4L1bJn1NA16E+gSwDJUAEu38Av3A9N94BXxNqw3+eCu6XwBnDFYQQA8bvIsrvPan2VFvxlLpZIIClnLkpqUbPDYjbOwMEEkayP2wvIInU9NLuQBXaMSAAlgVZEIxjEQEGu3pWSwAP47jQOwagogPx32RYBFM9UpiKZZ08a1LwBs4tinOCcUKLE6PLJgLmq+TJmvyHTVJhexGmDRx0EYIExNKAxFho6G/bbfYo/d6QnhewBqCVWuLxIpdHehTuv56fGYYb7pqRwmkXJ6CoAVNPiCZ+PkRtTTHipGeAJvxEcBAAPCvmb9qSyh1kghETScXJ2DzGDRfdCkAgDY+w7y73uEP86iskRQWoBk0fnON/IvjhB9I50yIwO2xT+UOgpmtSuCpIjUfMoM1nRtGhrSa8zNXz9VIrzsKmjgdVhLCrCI/G4pJYKPN/hYLJhcxHznLjH7oaYSFGAFcZivwRqlDxZpyk3bmASzPIF5UfRInh2SxmV5nNZMkzl0hnrEpKPJtuLFmZu/hrgIPnHyCfb47JVnF85FhpH0wTIjDr5zDBZ1Cj39dNibtiSv29LOpCbDrAYLcv/BvDT7+Bx3mFtjchOc7H5+78n/KWxfW1cOUrLvlkVliWCXlCIY8yMxWNl+/xa/jJ2Hp/GBuf+b26Z+6ZXA+vW512l0L7mBPT4yvbV4w7JQ1WARNVG/r15DjiQRJAno0FX3wTIMwAzzlKHSRZBKBCd1HMAmAMpuHM+aWAZYz5BokUG+252r9J7eSZ7hrTvqQYG6vPihK2TR6CRVFsKNItVgmUQrnTEjoWHjRXuA438G7HjXLvzsh2/AL+KTyR91KqUJeLdvmiWdWslsX4MC21d54i9zVRMGkogv7uRM3rCgrINNGKxcVqcig1XqhJZmFY0I0LXF36aqgu9xJIINhUTQDjRhX/UDPNN87d5PAZDqBRuTgiGLUiJY41nOyEp+54g04baKTC4IAIxMbzQGq0ds+J98iAEsc8gEoDdbbD8ZcBpJImjYgOMQaY76AzNTDDPUhv52FjkPvsIxM2pxgLVpchNjsHrEpt0l166VThWUOfSjIC8RNGzRgCQtJI+ItM4ibA+VxQKATVscuPkESGWJ4Py8GmCN0WCcRqilv1sgymLtOgf23itfIR1TLPQUkseqFfUV+K/P+69ouduAu94qvbdaxFemToIEYMUKV9lRI/l98wzWUkgEY43MRTTRQWS7LrnnTXJd5RgsOhe8/g2AaSrHPPnYARFg0fkxaPNF6rroRP6ak2qYbVlpoGls7Ij0CAG5n+S5VwbdPxF+uVQiSOXtlMFSSQTd1FE0m1MpwIriCEHmZtqYAGo12NOJ4sSLxLlLxWCx8frAEfKheXOh423+9zXEUCK7n+uDaWF7pRRdirFMLuh+DZe9703W/2IvNwta3mT7teBjKp4XemFlUS9QEtGwDEneOk4Qm/aaWYOpm6hvJuqcyy9Wvm0kiSC9Try8rDt7nxnkEe2Uk++DtaK2go0BvsOvh2ezTHAZYD1DokUZrJ7izlVEb55nKRtkQUqDZsr8wBNuaGssgCUzWMTZKJ3jojSTl00uG5/8NjYiXdBRBiv2+b5plrTOe3EU9dXIZ86LvwsdPAzigjgyg7WJF7/ar/u5wklNF1yCRpcIAuCL+7CcPakaKr36WBJBxeSjS/IZm0jt4jj5MAFgSftQSgRJLVWUXhuRollt/vj464HljwSwTNLXRjt5hC08jHj4b5AtkOQms0AFiaCZMliZRFAhbUMco5Panw/CqaG/3YlzbmKPZ1flpSxOizcpPX0uZAuDgQXYaR0WlQjal1wBQARHfqxgsHQrB7ByDBbZh8xgWTRhowBYlSWCRQArGr3BOI0oAwUSwyAoBXTRqMKBC5dsq2Lb3/+S9+Nljz0O7HmR8N6qoW3ehGNYwxisQTBQ9gEbNbTAx8+Yn2DPVQzWuBJBwSmV/I22uXDJPU8ZLIM4OLp2TWSwNiW1MVSCWs5gUcdNlzzmC0xd1QdLAlTW8VnIwQFWLDJY0jUgA6yt4f5SBisL27CxaXJTqUQw691UVwAsKoO0L7mc7RMAwjgUWlqg38cMHbq7a7lE8MEf8dcVDd6Pd3gyeE2dlwxk20XBtGBVXxvS5y/7bllUZrCIy2xMTC5Os3npRNNuyW8T9rs/ZV5oL6wsqhy3bBQ0VrzoRehMJz9GKz3e+gouue1PqOfHkSSCux5hr0VuPrGSvc+oyGBpmsbqsDyH1z0+m2WCywDrGRJNogPv9OYqvUcAWA21tSid+BOAVZxFKwqBVoYEsKBgsBQ1Q1mj4VjjC2c3Dvi+aZa0McEG2yDNfKskgucYD7Ln9uNPoij44BHDIZmukWuwiG2tPTFdLMugtr/SgVeRCAJAkLIV1hB5WtVQZXPHAliKDJ0WSABLyC4nH1YGsJQSQXI9x2ZqhiLIzNQTGZ3gAtNTuwiS2gLBVtnmi5wQEcJ0dDSj4cNktvBUMVhKiWBnjr/3oR8lVs2ZRFBXMFiahkHqtNYLp4f+dtE0l9j0FNuak4mj2XQfaH3jO8JvYpjJwpxKBK2ztgEQ3fL8KMwDrJe8TGmFHFHJKzEFyUkEqcmFm78/K0sE5+fRVQKsMV270rDCJPllh+Jn0gVyJgdk1zL6cE31tjTKxoZhYZgafgmfxL29G9lrJ4hBxLihBx5WmFyKnt1fSyERtOI2ey4kOojE2qXmKASUGGdyadXBs64Wa7DI9ZcdZ5lNu0ZBPWGZqFxQ5SIoM1iWotm9SSSCdC4Qemjt2gXn458S3hdFjgJg5efVrSu2wtCNoRJBgDNYdN4TVBnpeVNJvAEAvZ54T3ktLhEEpUMUEsE+vxbXNDkQYIt5Y0Lo41a//QfyV81FEUNZWoNFxp7Y9Nn7AouDzmE1WPuQ1H5vmctvUw80ZT9SGkvCYH3wg2ivSL7LhJ2sqejcXLS2Yf1MNbGrj1Ii+Cg3IwndRm677Lke5AGWqgYL4HVYvn0cN+lfET7v2RjLAOsZEi3St6YqwOq3OdPVIM0qaVC3NT/0ENAmqwVObHIIDIMkEaR9ELI4Ya0H3vhGoRN71mhY04jJxXMvZ/teZXKNtj1zkkgEI6UrURgCKw1OM9sn5gqPP7u5G+jhJTv/jr0+MoMlTUaFLoK0U3sJg1UuEczkaUsPsIo+v0o0FMyRJjXFpAArTuVmVI7ZeIzbFQMFEsEG0elbGcDiE5dZVINlUgYryGfH4hgByH6oRJDWdSBkINccxmD96Edw+skxuqkD4FCJIAFY9uGjgKbBTn/rrCZCjiBrLSDJ01RBF/G+BCrCMEZ3Msm2b1wA0GyiTow6Mlt8utjMsvWUffJiXy0RpAYkhgiO9QjQCZDNSQRpdlfRhHPREkEsDmDVomShuCpsi9e8oo9Z9vd5TGHml97C/l5UL1o2NgwL0wT+A9sxN+DOZgtutVrestB8T2TfFiERNDSD1Zr5BrDJf5T9jYIvKrGmAMugNViC46coEXTM/PVFIy8RpAwWkQgSGa8WGXmLaqnmylYsp7L6zVCPBbAiMFimCdsj3zMCgtjJS7gUDNbZq5LG3ONKBJUAa76j/Dv6fXZPaaEhsLiCrbpKIuhydm/NxDr2mC3mjRaTtwJA/YtfyX1XOYrukVKJIGE+Y9LfLbD5bz3MRTBjsFoe0OyKycLa+z9Y2IMqi9Y+zpZNzz1asmV5ZGZojMEi6o2i8oeiNYtSIkhqgUO3WCJoKIC/ykUQEJ0E39d8g/B5z8ZYBljPkKAAq1tQoChH7yyepW6csU25DR3I/VBqNFwiq6Mh3CgSg2Uq+lUcsrcAH/kI8L73sdcyBgvE5t21dbbvCYMXFDtzHbHxopFnIoIA0EnvrKKsMMBv7j7qgrvhqDVY1JjA1GyWqMpJBKlN+RgmFwBnsIxTIBEs+vwqUTPtxAeWhBYUy6WitLlwj1zTjZ1cngaou8vX13I55jEzmUDu1y/kn3HW2crjo5PM35r/OZ8diyLQUypkzi3KYMXMRnqYyQUefRTOyWSyc92u8D0AdYbOG/B0rZMmKZz0c5QMFoAgAweSPE0VlMmTAdaR9gyitOJ94wKAVgsNKouxkpXOIMgvvqg0048VDFYBwMoYLCuCYHBSymB5i2OwssWgkLzSw0WlTLM6OEsyGhH6dz32iHBMMXT0a/zvp4TByrZ3OfO7FABLD32RfVuEyYWmabDS+82vWUIfLLEGiwAswnzS+9MssWm3d/JFq+o85hks2nuNNBomckEtXByDVSoRJAY3QMKOeig3ucji7JXJOFjWBysDWPX044cBLOeH9yr/jl4P3fT2NH0HAK8FrdM+nFYvz2AFSe+7mg80Sd+37H7uGy2BwaoV1EHJ322U1wHAoS6zBGD5Fv+eVRksAFg/Lx5nFZv2OjFPqfWOlmxZHEEUsN9xIu39WPd5Yq7/pBq4lTGd8jYDIlWP/Xx7hux9WpBfA0455QwWAHgTswDiZYC1HKc+aB+ryi6C67iWubH1POU2gkQwFGuwxmGwZImgqZADspuwwzNhGcDSI9oAldtoR2mtlR4B5vRKYcKBkbfbDkNAM4gpQQUXwRg6LJJtGZnBOsYZM2MX7+shDzp+jff98i1xUqzGYMXwR5CnVYmlYrAsSwMCicWS+mA51J44A1htnsGUe7apBmJ7wyaW7T5mpYtGMiEWOStSBsu3QnUN1hWXssdFDFaIkAOseMhvQOunFA5ySgZLBbDSzwl1iLUPAGLXRZieSyPUh/52kwN+76En2p3vmyMOginAEkxyUrmMRyWC3eRe0Z0aMvznxwqTC7MmyAgz6VYndbgyY1248GQGi9aMqgDWOAzWBpOz+x0bQLuNccNnRiPibyAArCceyx1TWaNh4bjTGIfBSj5oiQFWsHQMFsB/X/+09UIfLFrPNFjLk4Vdh7BWZFyh0t4wDkWJ+Re+zN9ThcEiAJzatAe0h6GCwcoBLC0/yEZaci909Frx3GvbQkLRCpNWJ1TCZZoQbNqz2LYyOVejMFj9oM8MUASA9YOkB5hNXRxJUhH9PpMIGpLpQY0oWUyznbsmZsNkvFvVB7RJfo2yxbzZwrXpsLSuA2ywVmJYjMVgkXEuogDL5o+rMlgAcMacODfUIp0X/hUEvW6i2CvZsjhoKx/GYB3mJSP929RuqaMwWH1iMJM1qlZdX8dD0fFR13S07JYycUqdBI+3QkygvSwRXI5THy3St6YywCIAoci9hrp+eaGHgNQRFTVrlYMOlrSBKaAGWOwm7PJFJJMIhgRghRw4helg54QApqfZZJB8SL6vRgKwRNv0ohCa4EZ8IhgZYM3yhar1OJe5yYPOwTN5g7759WIzwiomFyYClt1dKongUjFYhgHAl641uQ+WRRms5HftEWdMuWebamGpaRpnYbIm1Lq6KJ6G4D6lkKrAMBCcdw7fpIDBimIOsKwKAEtuzjlsAeoSAJTJ4uw1XD4hN9kN9jzBHssF8KpYe4TXJNrtvcLf9s/nAVaD2NvHKYPlE4Bj3XxL+oA3EVcyWKYjMFgZy3wk64XnTAkLkFEYLKEf3xCTi+AF1zHmZc3kemSqy44NYH4e44aX3ZcSgyXUYKWZX6EIv6TRMD3uLEa9N7NTusXltS4Lg7nRdqLab+BhMITBGgVgZUDUi3yWRAKkRecUX4T1SS8eAWAt8Ptn5YEfiDVYZp4hpSG/FtOecaS3mS9IBBV9sHRZIpgfZLtm0t9pTm/BbXK2w5omAILUXwIJgyXXMQ9jsMpMLmSABfDxRQBYaQ86KnUUxqFrrkFnItlX5Il9kWgPJttcyF0T7ZR9n/Q0YILXYTM5mtnC734X+Od/Ar73t6IZRVGMw2DZdWpykSZ1EWJgcaZ0GIM1jym00/XMOSdFhUpdcQ3IYZE+kVHsl2xZEHv2oH0hV3CwGiwCHvsFa5vKJkEABmkmzYwARMn3Ul1fUSCyeFPOFDRNU45ncrPh1ZhZZrCW49QHvam7FRf+ZcYBWdgreQM/f7IlOqhVBFiiRLDYpj0LdrMqGKwoNGCkl5179BDbd5hKlpwAwNQUHLLYhKKfURBUB1iCfI0APGUh6IkTwDveAXziE7k/Udtak/xeeekIqcGSmIgqEsEAFo7r0wCAk9ZmLEVUWWhU3o8vXWvhqABruMkFQMBS2mh4VAYrc7OSa45pJtkgWWeDTHyBFsNNV61eXWyCmQuhh1V+ca2UCBKHvGzB7ZzLJZBC5hiA1+f3kq6QK8lhkyysD3ESVwGsOtk+TgEtPUY7u89tG9laxIMCYFk12JdewT8s+1sKjg1NsXAEAVhU0uyL54D2Sxkmcemeyy2LJ6bXMZfWjg1gYTxmJ44iBrCMEomgm5qoZH/fhH2IH7uP/b2IwVqMRDB7zyvdb7PnC0f2lmxdLWSJ4GJMLgB+3/pxIDJY5H6mYMsl9v6CRDDkN7XVO86MWQARwFYZ9+ZI8/nuTS9nj4eZXMjtM1QMlp4tuPUAgy3cmMO8+BK+EWHAgREB1qqzhyYeMhdBCrAyeZlH20Wk0kybSB0FgPXCF6Kb/h6ev0L4vDpRJVjWvHBNRHHEANbEJVcBL3oR+xsFWLUAeM1OYOtJAPXhdudjSQSJO22YAqw6+oJ5x7A+WIDGZIIXz4pseE2xHpKD9k+LojEYrPl5dBY4W8UkgjYFWOUmF5UkginAqoX5hJjwPBTHs+naNAB1wohKBA9PAKtwYhlgLcepj+avvY097qxWOwLK0ZvlkrUigGWl1qsA4J+9FcHFfBFnPu+6Sp8jMAySRFDFJKzDUaDZBP7yL9lrGYMVhoCT2mG7h/azfQfpYOeEAJpNOC+6ie+wUCJIJocSsEgHBTPkx69ksH77t4E//3Pgl38Z2LlT+JNHF+YEYJVJR4JQXH1UNbngi9ZqdXLDYqkkgqYJTEp1ZXFQEyWCxMQgSq2Y+z3OGjRs8VotytwzsGQlk8U6PQEGWqRB99SZP8pgnWk+jCY6uUaGglSnqNGwzuuGfOJ6pQyyQIq0GEEUDJcIqgAWWXjTPlkA4PX5AlIPreF9sEitga+J5+rgggJgkfPmWcn5ERisLGmweTOsZjI++aumc32SbMuB/b4PsOes/1UKjuWETM7kgvaTssXpSSU5UT0PQ1FC07SbrA6r3TTH7mwZeANkfidWYAgSLsEhL6XLsmM6H4/AeIzXtVRhsMa9NwOXy8YX2jMlW1cLPVxiiWA6X/hRINRg0UQHvQ87NdIzbYIb3wj1kloEyyDJgBFNLqiphkfGaxlg5aWFGmveCwCWlv8wCrCEGiw6b1qWwGBZERAaivtEMhOomTVsnNxYynyaJvAJvAEX4UHMn3sjez2rP6a1oMMAlkdLDLym8Hm05tOSJIJdj3/GhD0h2Ndl97RrSdboNXGdoYpxJILGqjWMzT5qTgNIzK+65NQWMVh0v5lM8JyT4vxeHxVgjcNgkR5YANBKz12djPl9Re9DYESTi9RUqhYVAyzTBBCI49mUk9ynwySCh1MGa1kiuBynPGjWhC4OyqL/pc+zx4UAS+q5IJpcDB8MgNElgjBNoCeCl4zBCkPACXkxPwNYlMGq1VCjdToFEkGh90lJY0I6eOi00bAKYH2K2OV+97vCnzKbdi0GNMKUjMJgVe2DlS1IjXhpANZSSgR1XzymhXCNmM0XAJbC5MIRJ9OihWUtbV45ZSb/t4ykjsuO4kIrXMpgnW4+iRU4KV47YYiwz3/3IoDlUSt3xcJJCKlI3Q3c4RJBL78gFOp4JIkgXQipCu7l0Gt12NlaSBNnsINthUSQjB9vsf43ACAgLn5sQdhoMCdBX1ckOuy64BYnM1gywJIZLOuqa/h3vuIyYdvKPeTCfI1Ca1UysXdWTQCXXopxgrKIRigegK7pzNDA00UGK2fTXqEGa0gZhzIMA4hpDVY335dp1DBDTzj27BodVyJoZVLa9hyTCOqhAY0sumtkxRUQ10eDslyCIU0I0yAMllU8NqteE+57kjzypznbcTDcotwXUZYxAw8aFGDRuVdg4DVNkOXZIRBVYLC2rtgKXdNLgblhAMexFg/jIqDGzSUYg+UqABYZ7+gxC+sSryV8Xp0ALLkGq+1xlmfSEZPH2Xa7mxcBv/7r/A+niMHSpqZgpvWgc0ayJmmgNyKDBbwXv4tX4st4T+PLwjaC2UdB2IuVCC4soE0+hjFYpBdqPygHWEMlgkGAfnqY9YgkPxTXV1Oaq8oYLFkiuMxgLcdTEqJEsFqDyB7JUhQCLNrcMfQLs/dlQTMMliYuDlQMViQBt8f/0+/gBFaxfWXF/K4Rs30HKVvghABqNXERUigRFKVJRUEHDz0kjYZVbo2/8Rv88erVwp8ygGWHQFgiQ9l48B72uLb/odxxF72PP48ZwNLjaiB4WCylRFAPxHPdCVaLAGs1H0S/P5nIQfqkrrAuAaxCiWDqiuSlK9cwXbhaIQBLfV4sw2KNgfsWUIPUk+XIEQTf/Dp7Su8BKvnptPgxyrK2XEgSHzd0h0sECTuUXeuU2XClCZLK9bQwXw9Sdky+LgGsjoLBotLKVJJJj5HWRjGZV5Q0GqZunrbdgKZpHCym92jLSFpKtE5yBy1AIREsAZlVAVYQAJ3dvPFpy2qyQvCqyStVUJBrRPkfwE4zvZ4OIIpEgFVQr0Uju050XexRUzUMA4hcbuix0J8bfSdS6KHPjt2OORAaVyKY1Rv6OphEUJfO5fQB7oDma/zaKqyXRASDGh5ZxWOz6jUK+n3KYK3nduIPRperVQAEYNmKRMz6tP7R0bvCvuW51yHH0A5XYJ95lvB3FcDKLNqrOtNS9QkDWJTBSu9xWktG78HuHLl3fZHBqpMxP7R8QbbYdjnAysAA2za9p3vOCuD66/kfKjBY4wAsADCzNUw6NrUxgUcsblxRtJai+70NN2AHXolD0UuFeaOmDy+7EGuwxpAILiwILSiYyQUFWAUMVmWJ4GDAai+duFwiOCGN01O1hMFSjdfrmutY8i2TCC4zWMtxyqNFbJKrLgJ6xH65XsDgyAwWBVhFRgFylDFYyloYuvi94QY8+svvQxuTbF8cYAGhn8qw0pnKSW1OhUVIgUQwNqk0qSLAivjg2VcBrDOJKYX0oQLAKpGhNMl+NekzqkgEp3U+kU174xfk01hKiWDO5EJyEbQafKA/bCXyuj6ZyBs19SQrH2c91X4PrBhAjJBafZek+OtxcjB9MwFYws8YiLUf8kIne74wyReqVnnfSMHkAkgYrKESQQqw0nvX+Savn3G74u/ukkyz3HdMFXqds2qeBLAOpwCr5QJ1vwY4jrioSE0uAp9KBPkHZiDID/1cLWTWAFoGWHF6DI4rSh/zfbAKmpxiNIlg949+jz2nAMuP/Bxwqxr0NzDD/A+QjWueAcDzeHZ/RAZrnPsye1/oTrPnC/3Fjx37o9NxwEwSTQ75bRYtETTAJIJ6LA5ORe1DBMdPSSJomERySyTIVSSCdVLvqN/+DfZYaAKrkAgCojV71oybhp2enFCPoe16kG978LCwnUPA2ZHwDOyqXZQ/ZslFUDa4AAokXNlj8HGbAyzCpGcAizJ65Nx0f5P3cqt5uvB59Z95PfvbcXNCOC7KYE3cfg9TH0QRFyKYJsT+URUYrHEkggBgZSxTOm7NYhUO2InpiG3YhYln5e9vWNg4yV306oq+oKr3ZBFhDHTRbgsSQWZy0aAAS93vr7JEMAgwSA1mKGhUXV+xlHDNGCzVeG0ZFlabyVowkwguM1jLccqj9cP72ePOsQMlW6bR76NHeoQUMlh7+b78++5GcGAfe27OVJOQ0BvA1ofXYMUkQ0MXGtm+nHRCdQ0gGiSLHT9jsCIN0HXU/oXLH4skgocMbj5gr92AoqCfrw1jsAhzQU06AMAFZbCKnaqoWUIYiwNolSw8BVgr3JNYingqXQTFCSQ1uXD5uWzU1TIR+Thr6XUSawAMjzUatkKUpvgzJ6eMwSoDWNTuGeC1IH7IF9OrDw9pBilJBL0wf83L4U7x68zenIB6CtJozRUgSwSHM1hazWFF7T7tZxLHONxLxoTOwvn4xZ/uA5omJmjSmjffpwyWzb6M1Usmb8/tJY59GfDVTOh//C7ggx+E3U4Wbo6RLK5402ZxyjkVDFYYAh2SNW86E2MlsOTwaOG4wnDAzhJHJgDPK2Sw7AIAUSTfqRqGAfi0BstbvE373mgTZtIFc43UeIwtEcxcBA3KYJnSNurEn8Bg2RRghQKDNapEsEaSNfFhPj8KAF/hIggAJmEvstpE4bPSayIwgFAA6OJ2zm/8Jn+i6HOnYrBki3ZALeHahH14Az6OtQceY69nJgiCRDBrNExr0lx+XmktVehNCZ9Ha7Ay19fsuGi7gIkHfsTG7tz9PD0NXH45cMEFwJohxkIovk+G3T9WyhZS5j1LKhXVXxXt1zCAM6d5UlY4D0WfT02gxpQIKhmsOq9R7BeYZ1SVCMZTU+ib6Zi9ibjuKq4vXaoNzGqwisbr9alp1JEWYCGfPH82xTLAeobExGN72ONupwLwmZ1Fj1zXhQCLSBi8fgfBCb54N9vVFhqCRFACWKrFgmYafAHs+zn6mQEsEwh7LqAHrHetk2ZhnJN8gVQkEdxlnMGPY9u5hcdPP/+L6/4be9xzFJd/CcDKLLjtEAh0dTYXEOvS5H5GVbLwJlksGPGYqy0pllIiKPfB0iTTBQq6w3QC6TX4Bo0NojNioUSQfnerzxbyVJajCgawTIVEsCKDFcSkqfSwYbLRgDPNF7aVJIIbuHGGc2VSd+SQ80Zt3AHJsrxCo2GtxiWCHnFimxvMoR+kWeuFjWw/dPz4Cesf0uMmzJRBANa+gwASE4zE5CL5jW3TAS67DDh2DLaXzeRpAqXA8j7XB2sfTwh5d35f2LYqgxUEihqsAb9oOp/6KMYJbxVnNe/Rr8/93ZYYLFUNlqUZOfc5etzA4gCW6/KF6YI/vhxSOKY00+8UsPYjSQTTffgGMEiTG6FknGRUAVjkWEJE0ASZKjHGqMBggWToKWslM1hKgBXzRI9KIkh76LmErcjqGLNwnvs88ll5E5uEwTIA8nlyk2FAzTBcivvwcfwKtj70TfY6r8FSMVjEsIX8vRPyx4E/KXyeKkGTHZcgESQKmNxxNxrA7/8+8Gd/BvzUT2FYjAuwJo8nNb3TBukPaCXgsaj+St6vCR/Px3exff6zuLCbjJ0aNKx9718NPW5zLZdTzjqrSrYsiIIarBpxSOwXSA+r9BEMAsm+n6z5VNeXHYjJzjIGCwA2rEkAqWcCv1f/3WWJ4HKc+rCcJstqdUK1xaYQBGBpcbGun042fhzAH8OmXWSwpBosxWRomBqXCc7MwCJF9mEIOOAMVjxwITSJvOSK5H9KtRdIBAV76IKsMCDe3DP6VvZYSaN/9rP8cRnAKqnBEuy+x2CwTJ0CrDH1QlJUWmhU3E/si5PQhCSJs8iwsipMahB66/lE0njxy4T3F2Vg6/S7mwPCYJUXqGRWuX0LcOQMWRCAvt2QrJUzRssTANaQGXtiAs6P/yf2tJLJBe2LlNVgjQCwRpMI8nt+/8J+vtHCRlKkzseJq8zvAogREB0/u88tiyVtfC0W7kN2D9ZqjI2LDQ/QIpZAoQtSgF/zcepbYnf5Z3rHRBnVSAxWwBeDLbvFbNoBoPPogxgn6KJDV5jPZODBc5KTKkgE0+NzSorgl0Ii6HqEwQqq1fIWBTNbTKXYRfbnIzFYpEdV18x+fPGcWAVjOWWbBSc2LUZk8HHWmeI9pqoklnRy7dPxOvjBnezxi6Pb1BIxAqAsxThhkOudAizTFkGlIBstYrCgCSxWVoM1jMFS9cFiAIvWWabn3XnDG9lr1MmTto+J5T5YihpOlURwkvQcyx33q18NvOY1wO/+LqrE2BLBtLdkVpZgw4VmJ+NtGYMlyi0DfBfX4093/2f8zueP4acv/Gl88GUfxGlXvqjw/ezzz7+APd7TyMtKh0YRg9XgDGrfUGchqzJYA1ID7BCApbq+jkmNhstqsABgw8Rp5OAPLzNYy3HqQ7NtNFO2uFNQoCjE7Cz66cXegCW4MNGwBIAVIgC/mi1HzXrJQTMMVSSChgEOsHbvxtW/dJ6wLydlGCIdcLtdNoEDfKKp0f2aPSWDJbgIFgBMdjxpxB6RCKpcBL/yFf5YBlimxj4rKJGhGOTYozH6YFHL4WcigxVJfbDCsCmaXAS8aOka96sAynu2FTJYkK6BTGY2pPly5uQ0jMEyYi1335jtZFEaBVzWYgwDWJAs1iswWNSGnUlzSFKB1kYA4kIolvqOqUKrOXDSzKJLJtsDxKK9iMHqpcA0IJMsA0+axhsN6zGCMGb3oaUEWL7YIFq6nuWJndZS+mNKBCPXRwf8vS27hVZjmj3vdMeT3dLfTI/y442z/nQAgNeqA6u58QtlsOwSY6GlYLA68TRa6WEuVEnUlUQYJotPxmAVAKyR+mARgOWmloKalERSudtqsWhCQ8FWqEWYMfni0n4rl9tVAljEsTaI+UVGGw3Lfc/YsfpkPm3nAS1lsPqkXYI899Jze1N4Ky4IHlAfcyrHqpt1nJYuVIfNKRnAqpPtMpt2d4Ifh3PxpQDEe1AwuYjIuiR1Ecw+r3b7D9ifNpmPCcfVphJBkwOY3P2cqUekebcoxmWwnAxgpfPJa/AvMKzkGJtzxT1I6X4HqOM4ktrEMx47hs+95nN4+zVvr3TcNkEpcglBpSiqwaImFy9+gfKtVU0ususDAGy9ZK1jAP1gpfBamYsgIDoJonVkGWAtx1MQjoNWOpZ14moAK2OwGiVZUavGB1A/DhHEyWJLiwHdKn4fjbIaLGo5moVpQjC6iGrioEoLer1+W2Swsp5AQkF1r4DByi9SVUH9EGKP2LQH0gJE7o8jAyw7GSXsrWfDm1xNjk98m0EWUSGKGawimt7Q+e+/VAzWUppcRIFksx40RIkgmaCjlL0sA1hFA3GNXCeWtYBArwiwUpbVMwFH64rXju8zgKWS/hlpA9MBuaxllksVogPgcJMLunBRXfM5BuuG69jjx8KLhv52pq3h3jCRHgZGjCi97/fM7WHb/OLC1/GSR/4CgCjxyZi/k9M802i99nX8MVk0+mHAahkcLwQee0wCWIGQCCmSCALJxE4Zd9o3KPu76n3yc6O7IPS1adkttJrT7HmHOFqOEgKDpehPl41BGTupZLBKEkFLwWAdxxrU3eTLL8iFPiNGEAA/hX+FaSbXonOSn7dxTS5oj6pBSoXKTqkqBkuWBVO54MnGmsJkW6U+WLS5NUlA0h6GkUK2BwDWgICm/Ydyf6cJsoGWAUrAsMXrwH5iD3tcC+NEZq865tmE8bhm4zUMcA4zuShlsFr8frOfk/TMLKqD7FCAJbsIEkm/Y80Jx9UmJQ8TpBYydz+PCLDGZ7AyKW8y1jvGAoL0ezSNWtHbcvvNemHh0KGRbgKH1mhjjBqsX/1VdG7iAIrZtFsla5vs8yqaXAweuo89bx7m/VaVJioFjYYLJYKk2TAmDi9LBJfjKQgCsLpVrDtPnmQAq15iDUq13j5CBCB1LAVW13IIAEtaICglggaEOzFq8EE1DAGHFIK6gVfAYNFJsq0EWM81vsOP6+ARlEV2g29e4EXMvfkZcaOulIF81auEp9lkYxt26aRGi1jDWDzwKll4WrBtnkKJ4LgMVuiLLoC+xGBZDv99Qz35wrSzfBnAEiSCJHFgm/MEYJUPW3VyjcpNLymDpQJYsoQt2W74iaKLEjesIBG883vssXP3fcn/dB+uxGBZ/BjccHLob6frEBpAZuzLzuO8efYvz9yOiw5+DUCewaphAJ9cu9bENH9MzlEQ+ex6tY/OAJ/+tACwIiOArhfXs8lA1CLSKS8aj8Eyu/OChKZpNdFq8SxrZ0x3PW/PE+zxNm937u/ZNeCFHuI4Zsd0HGswSJMzVQDWYhisB/EcnAgSGfSCtTiAFYaApQ3Y4pNKWBdrcgEAYbrANaR7zlIk/soA1onm+sJkWxUGyyZzGGWwAmJyEUfqukezScxq6nl5mVCDlY6FqrnXIc257TDf6oR99r9+Bhcd/xN87FUfY38bJhH00mSAEmDRWpuMSS8AWMK6JG00zJIIxLgolk0uSMNrCrBy9/Pu9J46fhx4/HEMi3EZLDsFvZEOQAthpYAQAJpmsapH3u8+pLXEYQi8+93J2HfHHUOOWmSwonEYrGuvRftMnvxiEkEi06TzLY3KEsHjXJ5db5P1iOL6Kmo0XCwR5ADrp1t/jpAoXp5tsQywnilh22hmDBZcxAWNVFlQBovqn6WgUgQ/DlmGzoxQOVVKMwxOzuSiAGD91V+x51GDTzxBADjP4Q1ET67ZKDJYd92d/E8Lqo0iiSCfAO0C62PhmABcMfd9ZCUp/fkT4kYLJLP9kz8J3HgjexrHMXOVsg17iCyDmjyMLhE0SMG2gaUBWEspERz4K4TXwqAhAiwCoKN0UdHb9Qh7rXZY7IVUKBEkkjnLXIBvpNIOPe/WRaPu8OvtpFUvlghCAaaUAGv4b+D807+yx17oCd9DKREkTXxZcTk5b0LNFSRHvWC4RDCZ+EgiI2VVHj7+MHvtwmOAp5qczYTBogCHLrpojV0Q+4kMEKkLYq0m2NZHZgBL75H3DpEIEottT7JpHxdgJQwWAVjjugjO8CTOen8m93d6joIoYMf0Hvw+es3kmnTqrdz72HuWQCIIAEibDbfdNmMux4mkxxm/Dmu6GriMJBFUzBe2dIhURpiFfF/qms766UQQWVI6d1QZ9yhYoxJ62mS3EGC1+Fhk1RQAi9wr/XQsVPXxo8kVKwIi6Rywz545H+ce+UOctYL3yaosESS3UynAuoc7GnszR9njLqlLlRksarCQtU9hEkEiyZ2ocae7svs5l+xUxPgAi9rIejBtnnBpFpiFqfbLGCwAeNe7gNe/Hvjwh8s/HID1KHdzvKh929DtVSEYh2QSwSEMFu1NNlQiOCCMpFZ8PxkGChmsKhLBja17EHeLZZn/r8cywHqmBGGwQsRCEbwyfu3X0KsnE0NjalXhZgbJCPuIEGgZC4AxGayKEsEXvpA9jxuiRJAuRAaBC93kg6lzMpWjCDKPrpLBCklhs62Y3GhkN3gfLaZF78m1bhRgTUgsDVnsyQxWnm4nWVqIBz6yRBDVfqNhcSolggjrokSQfn/GYCWDaN0HdEP84MI+WM99PnvctXREKYM10zy79Bjrm/ji42vmC/ImF2USQRXoqiIRPMAX35UkggS8OOm1K9RxeeKkQ+t/qphcyNKN7P0PH0sA1roOsKrPAZaKwaIZfFprSRcoQeQjMgnAchyBwQIA0yLSMglg5SWCZLwasw+W1VMALNLgtFOxkbsctHeZESkkgkd44sB74B7hmPw478Qnx1JIBJMDTRb9MWLBWnvUCAKI/aUKnFNHkggq5H+6lMAwFQyWzHIBvA4rQohVJpfn2T+8V3mcRa/Ra5sCLOoiWCgRpCYXit+WSgRdo1g9cjomWYL13Bmp1QnKz/c4EkFm097nyYbsvrYf4QDAm0/lfXGMDqkhk2uw6k0OnCLLFY6r3ecAa7LBk3Nl93OVi2pciaBNxyDTFcanMhfBQokgDWe4cRhNFuioUA6iCNklFUiuYz2dv/pPPpZ7T5W1R7bdgEjUrSF9sHIMVgqiq0gED08A+kkp0f0simWA9UwJArAADJ0Y/brDHI/kvkI0NMdBphTxNC4RtEJUnsnpjVmTAVYRg0UyUDGRUYRhvl7FNki2JJ3saD8JowBgRcR+uiwzDPCv2ombaKTzBG3UDABo8+PApHhOBVOC+x8qndT8tdw+fqEl9vOoJhFceoC1tH2wpCyfxKjQRRRjsNLJueFDtMJHSR+sMzmQ8h1iMBCXnxPBMljuoXbllQg2JWYEpuKaUTFYhsJ+WQ5aV1hJIkjAg5P2FxKkszKDtZMXvU+G/UoM1oUBl9kMggGOd4/jeC8BARemDsW+kzJYUg1WDQNYbS4TsZ7gkjiRwfKYgxtjsCSA5dlkYXYaaeQNBYPlUAZrdAdOIAFYXRlg0T5YwXgZU8oqqq5Bp8+/pzc7Q44p5gDrFEsEAQADPnbRHkSjhsxgOQXSu3EaDdPQ5HN55vm5bUyFoCNjniIEcAz+PSnQrcJgWdR0gLjsUoAfF7RGEGzaFczb/AreQyjrK6RqlD5pNHDz3wMfvBn47dvzAKvsfA+TCA5SG3ylRPBhPq7YX70l/R6kJi1j2j1PqGuUJYIOcbALTU84rjaR5E4QJrmUwZqawrAYl8GyqOzeGEC3CcByitcRhRJBGlUAFrlOIm0E+jeLe+5Bez65xg3NYGslTdNQT42NBnN5hn0UF9YB6btoE2t9pURwRAaLSgQPtwBjbhlgLcepDuIiCAyXsVAKuKgHFgDAsrjrF6KxarAEF0FpgVAIsEihaixLBMk++r4Ly+TbZgDLIUYJutFXSgQDkzBYQxwRsxu8EzeZVCLXjI8yWK6bFK+mIUgpZhdKZRnBhq3s8bwEsKpIBOd0cr6s6fyXGSOWUiKYbzRcExe4tA8WA1hpMsAH0BSzhIUSQSp9dair3xCARd9nSddOq4XATIa9qplyqwrAohbrQQUXQSq/Sxks++pr2WveJrFxtnfvD9njteFcJYC1LeCOgW7oivLAdA2aASyVi6DVPsiP8eEfscdU5ufH/aRqH8UMlm+RE7BRZB/l82Q5xRLBKvcOAPxoy8vRecWL2fOm3WQyGkAq1h8hPCLr1OL8Qor2QXIHHX5MOrEQL2GwlkoieGOf14EsBmAFAaCZFGAtgYugyiFQup/tWl7yrpTu9hPQum5hJ6JUpmqGgF7n11AlgEXu3fY6zkpQBiuM1LJc0+PbqGzaBxOn8/1lveAaikW8beO6fcBv3QFMuuUASymXV2yXPW8jlZCpABaVKqdJFgqw2N9NE93XvprvQJIIao0GauntmjHa2XEtkOt/4uIrio/71luBM84Afu3XgG3D7cv1gtXrsPvHIb+TbXSgWXz90SRM97D9js1gEYOTSBshO5HFi16Ezq6klrZltwQn3Hoqz1DZtFcdP4MA6LuUwSq+n8pqsIo+r2W3UA+S6/tIC9Bn82Dw2RLLAOsZEvGqVWiRwX0YwKKubPWSGixoGisc91dOI6gli0rTcopHKCloJkLOwDoKkGaaAL7Hi/ghM1gHiJzjibthGxRgpb04XvxS9lrbtJVZu5AwWCr9e+6YAHRBGCyUAKyPfAR4MV+kCQALemnW0CKjSVRiclFE0z9k8AzuiZUXK77N6LGUfbDkRsOQbMPpIir7jXpp4VsjyH9woUSQMlE2ZxcNbQSAZfZz1062cJKbDANq2WB/62W51+RwyDFVYbAoO+Ok9QvOZi5tdOsi+PMIgxpKkkxVmCZghGTBH7hMHghQBiu5byhjnNnbZ02iAcAiPfMo4PQ1kunMGKzzzoN9Lu/1AptvIy+w5fMkMFhjOHACgKc56Oh84xyDpQeAP7p7l0sKxw0VwJIatGbH9L/M32Cvn2oXQQA4w+WSrEUzWKaawRpXIqhisGRHRktxAkzF+zI30VCPE7dKIGmuXSvOuKtes4hkef4M0lKE3KNxpJblWgcIyzuTt/9Xsd/m5HR+R/LC3Cq/T2gMkwi2MYETWAnP4bUvWYKWjiuZPbtg0561ajAMdFaQJKYkEUS9zgBcYPnCcbVtTj+2fub1yuNmZQV79gB//deoEpo2nvSdJkJsowONjE/NWrEaSN7vUjBY8agAK44Fm/YJCRDWUwOovokcEh9JIkgk6mU27bIUvWE12Bhf9nkrgwSEHZ4ATLkW/lkUywDrmRJnnonW9lezp90hdQK9z3yKPS5lsABYjeQm9Js1+JMptb92XTJCVQiBwbIMsR5Doak3DAD/5b/wF5oSg3WSA6po9gAsg9RgpQCrdjWvvxmYmjJrly3ejQgwFFnP3DEB6MQNNhH0pQWcALAAgYUTbLVjozQbRF2C5EbDlbJIpG+QOQRMVI2lZbCk6y10BKwuMlgJsOqlv1UjzH9okVa7RtyL6g5fyJx1QuwRI0d9nl9PP2V9On/tpAsnlf26qgZLb02Xfh4gLa6rMFgEvGTyVlk6S8ML+PUXhvVKDJYe8JM58PtKBitI5Ym6pqOWMglHrAksYBI+cQ2jiy77VbypcqArANaZZ8I+70J+MBbZpsgdDSnAanFpkH+6yOJVlbgEAU9QGZoBx3BEgHX1ZaOhgjQ8n/8mSgaLXgMel3FeZtzOXn8qGCzH5Z+xWIClEbmyINsek8FS12CJr9VUdb3r1udfS1mtSIvFOsB68YJQ9Rq9Jqks0BdqsAokgoQooEkI9lmKJI4KZMIWz8G4DJZKwhXBwGqcwD+88kvsdaXJha1isPg1L5QtSBJB1OtMGeJLDFbWaLhu1oWkVqlEsGKMM6+FF17NHvcMQxifmo1iaaK838PYAF+XrucqAItcJ+GoAKvbTerh0o+lzDwA1FP5Y99EosIhkVt7fOhDwGWXAWedBef+u4TtKMAyNX4/DXMRzNgroPz3nY4Sqeh8DQgX8u0Nni2xDLCeQUG7iA9lsP76L9njoQArnUD8yC/N3heFfKPQRUKtiMEioTXE7u2OoPHuwaQmF2l2R8j0Gm4Bg5V2Yg8xdFRlACviDJavRUKWErWaKE0oAFg2jHIGS+eL9LikWWphFom4IxqqyXiMWCqTC5VE0ESxdX9oRAjjEF76+Y0ofyCFDNZ3+MJ0g8OLduu+OHHIUSefscbcK147u3cjSJv4mkFeRqGSIlnG8BMlWKz7/RxwkMMl4N5OAVaRPbL8vCqDZQaEVXO7OQdBAAhIzUE9BVt7rPV4AJeIDBbpTyWYAsgMVrrAoN9FJy5d8tWcM7mY5EXw3hZRglPV5CIM+fiZSWgEgHX5RQLLUTWERsPIL6ToNeB5fW5aUyCzk2OpGCzL5d9t8RJBDrBojeBSMlialESyB3kHNGUyJCVGAj1mhkdOgEUxWHQ+CLbyesHHogvUDNblV/Ljft71ub+rxirl3CsBrKVksLLQQn5elAArbeki9KIj17yQ9JUkgqjXWY1XkPZfYwxW6ng36YjsUKnJRcUYR5lhreRgPTIixDYHE03SkHzYfkOY+KXX9oB/+Rf+YoVxRdUnsnIsLCAGGMCi4xoA1FNTlb4FYCBKoXNrj5kZ4L77gN27YZGWNWGYJOTYtkaxRDBhsPi1m9VfAeW/7xTWssdz3X14tsYywHoGhbAIGAawenzRMhRgpZOaH3KApcyiFYR8Y7KiSmiwTMXEZyDJjKThvvInhX2JAKsP06AZ7rTpKs30mmqAFaQAy6kwRqlMLgCpX8TP/EzSf+PKdNLsdBJKHuUASx50Vh54lD1ePSOyLZWy8ITBspaIwVoqkwtNA7RQBFiyXIpeW181XgSXnLu6wvK8sA8Wua51Z45vE5cfeI3IzDRLkgjeeSfCXnK9mb18LY654fTca1XuFYF9GnSHSwQJs2mnDLPT5cfjnjgqbk/OYVCRwdJCftyD3gKTCK4JJ7Ei/aiQGH2wccRKFhy0CaYgEaR9g3Q+TjEGCyLA2mA9wR5P3EWkw8gzWPRcyyCzKoN13uNfQnc2OX+tNGk1ythaFC5lsJBfSAm90LweOybBKKKCi+Bis/mmyxN1C728bK1qyAxWkf35aH2whksEa24eYJXJeROAlRzEWAyWoDjg13wwya+Z2Wi9OklFxgtLYZpz2oF7c6+parUo8/En+EPoZnm/OBrDTC6y0Mm4zSSCxK04a5HgCM2+078fP47u4b18ZzKDNTmJeupm3LM04bgyBkuWsz1dDJZDzUhMF39vcUa+OblqpM/SLUNkikZksGJ9hJsHABYW0LOALA+YkwimKSzXBKK+aOaTO9/EyMvoLgjb0Rp/S+fX9TCTi6mKNvyTBu/jddI7gGdrLAOsZ1DQRUCpi2AQoO/yvw8FWOnP7PmDsRgsmVrOAJZlWMUD3OrV/IX1PGMUBGIm1AtkBit1PCKOXJa5oJRFZADLjoZLHbPjXAibQj8QWssGAA8dewgXvGgnfuY1QByGbPAUAJZmlkv9iHlCBJElqSIRvM74Bnttw+yTZV+rciyVRBAAjEgEWHI2X5AB6QEGJAvaQF4iVGhyQXoixQ5fFBtDAFadsDKxKZlc0EbDqqz4ivwEW28PX6QKAIssrtOPzIWb2kFbpCjfeYAzTO6PHha3jyjAalYCWHrAz/X+k3txop9o3c/QzsIn8Ev4Z7wG7VVb2Das5i1lXII4Lx8CZAmogsEKQ9gu/9KaTQumxXEnJxEsYfGqAqwrHvl7dHpzAIBmajG81ABLVwIsIq3yBtwAoAKDVdajpmpk7zMowGofL9h6eIQh8E/mT7DnzjoOJpZSIqhp4mu2nT9HSoAVZzVYXC4u12BVMrkgoG96560sqSa0CQjVcx09LhV4VNVgWY8/kXuNMlg34+VDJbA0qpoXxIGKwSLtR2rJOGRbFGAlf9cefhidPYkrqR2aQDoGs/03GqhvShi/wPQBxAiCpH/kQnovTjy2F3jwQbbvUwWwhpWWC9eg4eE4sWYvq8EqvJYWAbBGlgiS+itAwWCRhOygKzZUz10nxKlR7ywI2w3O2MieRxOnie8jIUsEKYNVCrBsXr92MhCTic+mWAZYz5To9dD6H/8fe1q6CJibY02GgeEAy96TZAj8zgL8fpq9f3JP5UOTbxQGsHR1bxDThCBxMMhEFYaiQ6AfDmAYpNdKmiV1/u2L7LV1xn5l1u6YkQyGOrF+LYrsBm9HTThkQpcB1kfu/ggeafbwuYuA+9eDyQRlgFUqESQAa5w+WC1jlr1WIxPgYmKpJIIAYMTi9WaVSARh+HD7JBmgYOSKBuIaaRgcO232eBiDVa+RrJ4l2bQPAViqhVzr0J7SzwPkHlYVJILrkwSEbTqc9aFNdmWJILmHgrBRSSJIAdY9R3kmfd2aF+KX8Qn8NP4Zx7Y8l73OzEEYg0Uc0sg9az3wEHus6/xatX/+F4EXvAA4ehT2Jz/ND8aiAKtY+hQE4uLHl679qhJBx53jEppUlkTHyLa7MJbJxWDlNHvcsU7L/Z3adHv+gB2TwAIVAKyycaFqsM9z+fW/0B7foSsIgOMmX4RRK+6llAgaVQDW0TxQzABWoHNZmi0BrJElglrEvpAgH49MtUSQjHUq8Cj3fUteUyy73vMeHD/gQkOE2/G83GfpOi+ZHkci+A78L7zhG29mr5fWYDkcYPkZg9XrMZt2h4wrwnidJU71CNADhGFi+BNoSeZgouMLQPJUSASr7KcxN8ceTxrHxBosUqYx7LPYa44DnH46sGpVrgWJcj+k11+sjdgIfGEBbXKZ5WqwyPzalwDWX977HuCnfwqY3I+tnfuBX/kV9jeZwRps28KeByu5+dIwkwtag1X2+7YaXH775Gn5+spnSywDrGdKmCaah/hkWAqwZmcFgFXqIgjASiciX495o+GBV/YWIeTJ/9L1lwIALll/SXFWhwAsM5YBFh3A+zhGJ/ELL0n+r1EWQi0R9Izke+n14T0zshu8HzmYvZZr5eWO50e7PJtyvAEOsIiUUAZYuUHHoX0uxAG0ShZe1/lvY+jDM2JVYqkkgkCewTJkgEUXUbqPPpHDNc6+EHIUSgQJExU6fBI04vJZtF7nk04k98EiAEtZ16FXA11yUNdLV4+HSwSdZAOn1mQpV4c4YbpSjzYKsPyKDBbVxt997H72+HSL/wb0OBvd9LqzBvg57VMISX2ARRZd9hN72GNdn+OvG3ayCpRs2jXBRXAEBuuHdwrbVmWw9GAOQfq8lfYINHQDjXQh37nnTuCf/xmjRv8M3t/ucOuS3N8FBovW4Zn8tyySCC5lNj92SR+s7mzB1sMjDAEY/NiLTC4WLRGUWJ5aPc8Oml1FXVZqSBNqklx8VImgpSP14knGhhR8B/Ocua5F3nAGSwkeFQyWos4Tto3QsIH0O5Ud9zgSwWtwB6558ivsdQawIspgpe0iTuO1j249vV77fdZbziELamG8ltpjhCGvvwKACQ+CLO1UMFhV9tN8hCeINhh7BZfTskbDqn2fffz7wFe+Apx1VuI8/HM/N/TzzSleZ/qkuWX4AdNYWMg1UadRJ8mKfp+Dpidmn8Cf3fP7wAX/Blz3XmzqPCK8jzJYskTQjIeYXMxuBXqJ8uP5m7g5WdnvO9HYyh4/su1cPFtjGWA9U8KyhEbDmW5ZGRLAqiwRNBI5BSB2oB8WMrX8Nz/2N/jUqz+Ff3ntvxRPBD/8IXtuzh4T9iUArGiAkwYf1JznJLVbAnthumpZhJGcMFt28lFEdpxBADgEtAgM1n//7zj5/W+yp3M1MIDl0o73erlE0BYYrNElgtn3AgCjwnerEksqEYzLAZahG9DSRcQm40n0yDlonHtRbn+FEkECsAKHDPiqGgYSddJ4O7I8Yf+x7yPKGCwVmHKD3GuWIjMth/3SV7DHnjFcQpUZJlBGQwBYEntDa7YqAywi3bjvJJ9QN5gXitulUSfM4LR5BAGpwaL26cJC0iQNXrPz5DgCwBJdBMVzKS/Uk2snee5J8pmqACuK5tjjFqlRaKUNMzs28o6hFYJKXWXWBQCcddz10DtnKwwDMOEzMx5AzXIA5eNC1eAAiyecFluDVQQOl1IiKPe1sxQyK0PLz1dmzOe1IHW8sFesHhlgGQZgRJwNywCW/xjv/bYlOrhkEkElgwXA+PY38RJ8Ddfi+6XHPY5EcB5TQq1yVnss1IJmAOu6G9hr7rpUMt3rsYW9HaivgzoB4Eil2XQdM+kCmOD349MFsMR+bj2cZfE66TIGS7Xvafco8JnPAN/5DrBz5/APB2A2+Tk4oQ9PDguxsCBIBHMM1hQvzejX+AHvmdvDNzrtbqzvijJVvc3ZriDgABwAjLhYcpvMM3Xgw/fhx2Zvwa9f9evsb2W/7yqbj5VzwWE8W2MZYD1TQtOw2uOD8bHuseJtRwVY6UREE2emwo66KOQbZWV9JV5/yeuxYWJDMW1+kDcpNVPtdrYvWkTrR644iaeDn00KhmPDV2ftMoBV4sxFjzt7n02zPNTk4nvfw2yXs4gUYHlE6mdfdGm5RNChLkHFDFaRvEHTnxqANa4sw6ISwcgQ+n6xfaffc6VxRHAkUl2rhS6CRJLk2WTAHwawyPsiif0Mid25sgbr0cdyr6n68sghSARDNwcc5HBT6Q1dcNoEYHlSE2xvgrK+zaF1BqYJHAh4U99+yM/feoP3qKLH2TBpprKDAbGKtoi7H62jikkPuyKARV26ZJt2WSIIgL3X04qTE2XSoAhz7DHN8LbS7zcuwHJ9KhNW2LSfxusK3HO2wjSBOvpwqXzxKZAIBi6XTC8M5gu2Hh5BAJxt8MWnQ2pdl1QiKDHEjsKJTQVKstf6ZJfOeRcKMrQqEsEEYCX78imDRXoYBlFNLREc0rLEVDJY6pt3xdt+AV/Dy/A5vK70uMeRCC5gEkac1HwChMHaxqVaWe86ZR1kv8/WHGaoBrC1m79OPnigZrCkli3ycY4a40gEqdunYfZwtc2TqmUMlmrfC9OkF9a+am54FJTHo7oIttvlDNaFnFnvb+TSO2E9ufZBrO0+Tt8Grb0gSFCpTbteArDYOVnYiA39mwQFSNnvu9LmxzYfHMGzNZYB1jMoNnh88j3cKUH1J08Kk0pVBouGOQKDVdWlSHjt5S9nz/XLLhX25ZBsuB+5ggwlW6jqtTqbDCLTKwVYjj98hqeTUyGD1W5jlpAzAsDSebNE56prSyc1yyYmAGNIBDVi025WAI9VYkklgpTBChzlfiyyYHF9vrgfBrCEPlhEJuo6BBgNkwhSaaEpgvOAAqyKjYZNRWZaDsHkokqj4dQpzSF/o7JYN5IYrBdyWase14a2sNN14FvhK3Kvnz5xOl75v38eJ7ASe7EZ9YAvgOoGn0h1q4sTrXXsuXX5VfwxOR+xSQDWt24D2m3ANGGT8SW2+D1mlfT3yc5TZlrjIxa2rcpghRoHTzQj3TKTxx0bwPzowMMVwHl+MS0vTA0jBVjk2J4KieCd7kvYawtO9USa6phuNP+DPXc8PpYtpUTQlBisWr2u2EZxX6YOfjRxWMaQFr1mmoBOGSwv+Z0DwryHYW08iaBqjFGwcbjjDphHk35Am3BgySWC80iYksxKnQEsk588eyJJoqjqIPu9eXaerVAtGavTcTmVCNI2AROxLfTefNoYLGIyoRsDuBZHAqMyWAtTXE6J/fuHfzgWCbDe/Ga0P/UR9jTnIkiSZDR5LAAsuwdPE02UsLAgXF/9r3I5aYP0oyxb/40C/Kes1UDaTmU+WmawluMpiPXE5edwu+SiG5PBolEkU1BFVZci4bWPfQx405uAj38c+tlcbxsEgLOKL9xmV2yAZfJFnpPJlGo1NhlEpp+TRXhBgEw439o73GmPyys0bLqXa7CFGqyFBRFg/eabgOc9L/k8Wgxs2OXnxLGQqYLGcREUGg0vUQ3WUkoETUMHskLnUA2wzGyRbABhj0+yDYVNe6FEkDBRAwKwDMU+aNSJBDWUJIICwFLJdxSslmpRKAfN7ssmF0qJYD+55p19vMmiQ1hb2ogYEK8/Q+HEKEdip5+/di5ceyHszkmsxElsxn7EpEF3g5hsaFYHYawGo7ShbkQZrLvuYV/WJuc2skn9YkmjYcZgpefS00e/d0z48EnvJoHBSoH3wAKChTmMGtHd32WPN3fyY44KYA1Qwz+ar2avFzFYSykR/J63nb22YPgFWw+PIABCkzRYt9XMxaIlgtJ9aFdksIyJvOObDGCrSwTThJABLhEkDFYYqcc5+n2U4FFh6mOpTHruv194utQSwQUk5ypz0OU27eK8Rv+nf+/0eULCCDkIEcZr+l0VEsEJXfxdl/KaH2U/1GTLMnro2zyRM2oNVr+1hj+5+eakzcuQsMj1XtNHZNItCx2H3ws5iSCZ++jaRlZEHWlITpYEYAUBMCBjPzT+GWXne5Tr0rZ0THaS3yGYv1dQPD2bYhlgPYPCMR2sTJO9pQxWs4neBq61pTeVKiyVW9oIP32l5rjya6efDvzN3wBveEMuy+Fs3MKeH1l/Li407mbPne+mzWUdh2nGQ4VE0CcSKnuIZEw+zpWHuCNVz+ULxKA9j3kyB8w1TaCRLDrliag0a2gbDGCVMVhVGg2bJX1zRolxGjKW7stPF+OBo943YbBq+7nsrvHt23PbFppcNLg+3bP4eTy59jmlx0ezePeY5xcyWCpDC1Wth2UOBzTOX3yIPXaPHhrOYKUfTZkem5hz0NoIgEsKgXzNW1FQ7XwWF665EOYgueYHcGA4/EBp3zHN7LE+WJZuQSOZZyFTT+uriIObAMIs0lPFEs+l6jxlJgCUNaZ/l99Hn0+iuAic1mN126ObP3iEibUVzAT9zl6/DdMEFjCFvzd+mr1ehcFatFwqtOGkbORiGg2HYSLPzqJGmOGllAia0mu2lT9HSjc+xW8gA9gq455pAnqY9dQClwgSWXgUOUpZ7su3vRwaNGxobcBl6y/L/V3FYFkqBssuvi/k10ZhsKhEEFAwWGE+iWI/wvs4enuThXh3wK8jI+DjhKA4oKyu2ctLBHVxnbKk1/wI+3GIi1/NmGfuiMAYLoKWxBCfHF7zqJPf/0zt0ZIt1UFBa04iWIXBAvDkNDnOv/gL4O1vF66vAZ1/dLV7qPx8VGZ1RSc51mMNIJwpKYn5fzieEQDrQx/6ELZs2YJarYarr74ad911V+G2H/3oR3H99ddjxYoVWLFiBW666abS7f+fCsfBhnS9f7h9GHEcq7f75V9G75d/gT0datOumJxUssGiGIvBIkEtZpM+WMRtK3Kh0RqszNyiVmPyqdAMctkRnwweysaNJcfkkExbrzvHHs/5bdCYc/nfPI+6CBpDGCwTJgNY4m84KoNlLJFEcElNLgwA7bQnTvu0AgaLZ4QD0tOtIUkagOJzUrvyGuXnt1eVuw7RhMNO6yyRwaqR+gylXElxr1jDARbtEyXXYMnXbhiFzGzGIZ/nNPi5cSWANSqDBQB6rGCw1lwIM00qdNASa7BI9lazugiR1TiKn0cz9ZEMsFKDAgFgkfo5xyyWcDGJYGZeUAKwiu6dKYgLJgFgkSaYnTHc9TzCKup6fiHmHOC1BO4/f44fo6LGVI6lzua3zGRRtFiAFZr8O1MTFgo2RmGwqhhBKO9LlcmFCuR+/VvivisyWLqiBmtBS/7XIyCGOon58m0vx96378Wut+1SJjrVMmQVFVZd2jiuyQWQB1juySTZaGsmtHRHRhgzV0U/7f3WJYlIPVQzGnVSL2xb8wmDRWoAJ03xnnkmSARto83cEY1YKzShKdp37jXaE6sgNF1nNcqRHqNomVcU1GE6JxH80S72uP+tr7HHx3oigHkwExH9wi8Ab3sb8MpXCtdXnxgcQePj5igM1rDxut5O9hvpwPEjS9Pv85kWTzvA+tznPod3vOMd+B//43/gnnvuwSWXXIKXvexlOHZMjWhvvfVW/OzP/iy+9a1v4fbbb8emTZvw0pe+FAefDRSjbWNDusZ3Qxdzg7nCTWnt0PAarKVjsAqLHIe8RvW9dJHhRy5iWoNV4wArmwwCM8hlR6KQLOyG9EWSj9sisrt+L50AfB8nMRDeQ8+/t38P/7zP/FNpdkabnICbGkHM1tcIf6uSbaRZY2uIBX/VWEqTC9ME8JUPAQ/+LHDzX6h/b+Lw5QcEYNVauW2Lri/dsmEpal1UWXAagl2w2RdNLt74q/xPxPWNff64DBapK8zkYewzpWvXJQ5NDrl2zXqTLWxc2j/t+HF4372Nb6c4J6r4Mf9rudcuXHshrIEaYNWpPMbqo+kmLLrVc4EZbv5CXRUFA4tYZytvCrBOkMWj9VwRNCtNLmKy2EX+7/L76HMdEXZNb2GvCzVYjWn2uNMbvQaLsoqGkR9zbZIZ90KPMNJEZvcUMFgaIjSN5D5b6C/O5CIy+Hem17imFdcElUUVBksFSlQtFcx+fjFL68SAUUwukv1nNVhxHOPxtLn5WScBrWQM2DS1qXAOXjj/+txrKkWJ3KD2VJhcAEA9/TmZi+DxJClgDwLeG862WXLTS3vhdQ3+IVrIx3ARYBHgYi4kNVik0fWEJY79T5fJRY0kwxyjwxIyzcgUmPphn8VeO/98/sL6aj2dWAJWj0a6f/B3f4f2bbewpzkGi+CifoezVDKD9UAGsLby8g2BwSIOrnqslgbT92TvozFsvLY6q9jzw0clyeKzJJ52gPXBD34Qb3zjG/GGN7wBF1xwAT784Q+j0Wjg4x//uHL7f/iHf8Cv//qv49JLL8V5552Hj33sY4iiCN/4xjee4iM/BUEYLKBcJjgSwFJNTqpBviDGMrmQP4+aTJBFhh+7ANX5ZwtwQSIY5m7emAAsZ0SJoK3xhVAvqw+SDC4AYG7vo8AddwCQGCzTLp/UaibCKPmOnvTHKln4hw3u/hZNrsNSxJKaXBgA9r4Q+NfPAPuuKzC5SF70dcAnWvBGPV83UXZ9OYYqK1wOsGi/nqzYOgvaPFSZXVbVYClqQuRwSP3SMJMLj1r+0+z9ihVske5t5T2XcOwYPGKja1ZksJpRfua+YM0FsDwOsIQ+WEQCFlt9IE04WF4gfAmb3L8xkf/ZBY5qkcUBpbVCTDiUMlgGhM+tcu88gW34+Hm/z16nC5CJ5jR73BnDXc8nAEsz8wwWZTG9tG9SDX3oBhmrKrgILjab/1zchdW7kozwwmC+WAkxJHIMlsTQjAOw1E57kk17VQZrT961TZZuVjW5aEfTAIBevQWccQYOtg8yUHHeDBBVqMNUhVHPJ5TMK65SbGiUPRVeWwqTCzd0EccxvLRG2CHsM3UB9dI6tPav/iLb57y2Rfl5NTIuWCnAakf83p/4idcWHvdTymCRRIhpdhmD1RxinlT4m3zpS8D27cC73w2cfXZ+I0VkACvS49EA1ic+gfad32ZPczVYZB4qkwjuWokEWG7bxl6j19eANJnXwuLG3eOaXBgGoHf42uaIdwLPxhgzb7A04Xke7r77bvze7/0ee03Xddx00024/fZ8rYYqer0efN/HypUrlX93XRcuoW0XUnte3/fh+77yPU9lZMfg+z60d74T6w5+Cuglmef9J/fj7Gn1DdslsisLVul3MS6/CtjzRfG1rWdX/v6uqwMpiInjAL7PJ+woSo5AjBC+L2YSDcMEoMH3Y+hzXIq38fEvYxftS2HVkuPatAnYcj7QewQDE/C8CD5xCwyInM+CMfS76LqBLJ9gkWLbTncuee/sbB5gHXgC4ec+h+iKK9B3+fk2dQuuG5afkxRgRHEoHJvn8eOIIh/0sONYA2Bij86dicLmqiW5TrN9iyEed9XQ9eS35M9j+L6oD6BF417EB3rHaeW+j+cVX1+OXkcH4mLY8d3Sc2KS72maC3Bdvs8+Aco69Nx+dFX7ggueM/Q30EwbWpw4mg0CF1HkI7sv5Gu3s8DlabZ07TqGg0EwwMAfsNe1Y8dYzRYAGFrx/U7HE0j9yjZNbkIdDqzUgreDlnC+bZKoic0BAj05ZjsEfE1jGW79tI1Ampj2bMK26vy49Le9Hbjzv6Vfkt87WqxJx85/++x3sij72euxui56ncjXLh2HXPCxoWbU2OfVTf792oP2yPeVSxcdekOYQ3zfh07Agxt4iOMAf47fQsf8G6RnAkbBWNXv8+PXNPF6qRqalpyfDlpYk055gRah3W8PrdNVhetqCEx+HEYsHjsd0+X7v/AYFU125fswDvNjkrF6Xf58K+5VO3dv0GsmCdW466ayN9/Q4DcaeGg3X4GbNwYAAMKfSURBVH+cNwPcbQyfY1ShOkZjckVuX1oUCaOzphXPoUEgnm/XpWO7+r44iNPxHxt+Cc66WwAkap/OoMNaIdgh4EdR8gZd5wArZdIXSA0WvBbZPz+XNcJgWVYbg0GAeZ/f+/Urny98b/G489+3StB5PXk+/Fo0SCIkNnzOYMEu/Y0L1zqbNwNf+ELytOI1kphAxQj1GP2+zyS3wvitet/8PDq8YwYc3RG2tYl6o+t22d9kgBVrwEO/+ipcccYZiHftAhYWYOqXADAQBDH6dOz3+PVUtv6T5znfL17rABoeaL8UwJcAAAcu3fa0rMfp+T4Vn/+0AqyZmRmEYYh168Qs/bp16/CjH/2o4F1ivPOd78Rpp52Gm266Sfn397znPXjXu96Ve/1rX/saGo1y5uepjFtuuQVoNjE7vRFIyambv3czBo8Mctte+f73Y/6Sh4D0tH3v1u9hwszXtmRxZKGTf820sWPHjkrH9vjj5wM4BwDwwx/eCdflcqGDB5sAxHO/a9ePsGPHLuG1ON4OwMLCQgd3/eAe9vog6CEiVrH3PbATD6YWiYPsejcC7D9wADt23Mu2O3Gc38ixGwz9LidOXA0goe8tUmy768lHsWPHDkzs2ZMHWDVg/0M7cf+OHXhiN/8+M8dP4uFjjwBImuY+8MA9aLU427iwYANRcmsFkSsc2/79lwNIANT3vncbnnyST0D3378awPMFk4s9T+7Gjh1ibdg48fDDKwFcL732AHbs2D/yvvr9GwBwXXa3O4cdO74tbKOHqYugnlrxp7Fnz6Hcb/XEExcBSKQKd975fZxMC4U134e90AEkAmndvTuwY8eFKIqQuH9dZX0HD957P3bsOAAAOOzy3+nokaO5Y+l3+4A0LDz8wAPYcbic7N/82GNwphOHuvleG9/97m3I7ov9+w9ixw5+zc+dIHpzNxSPIT30uc4ce339HXcIACvwAuzYwWUiqrjlllvgByJbsiZeg69+/vP4sfR5By3cd9/dqNUSmdCeI7yG6BbrOvhacr9ZIfDVb34TYWqffX9zkgEslwAsLQQ75gfnSEaS1Gk9cN8DqO8m99+ubQCS3/Kuu+6BYRyGOzkNxF14BvAft9yCOE1/3n//mQASg5OHHuK/KQAMBgaQfrOFPpcl/ej+H2HHnuSYDh3hjo23v+plmK84/mXRIyYXh4+eFH63W265BY8c5GYuswuzeOCbX8Ev4e/w5+S3e/C+B4Xvn8X+/S0ANwIAjhzZjx077hvp2ADgwIGLAZyFNiawlajnPr/j85i2pkfe3113bUBIJII/uOMHmKnPkC2SMX1+voMdO76Ze78q7mvfl3ttbnZeOJf0/s3iqOXkzncw8AGJSAyluWD37nMBnCds8+1vfxM7d/Lf8t5715Hx2seOHTvwlePcpvq8GcCP48rzJY0De/Ms2+GDh3P7Wn/PPbiaPN+/fzd27BCttAeDGwG0MBj42LGD2+fff/8WAEn/o4ceEsf0JCnx4ziIjfidVe+HvfLlQDsBWP++49+ZFNkm964zN8cAVj9tF3HHPXfw42jzsfDmm3ew+ureQp+tSUxzAffe+wAe7fLvcN9d92HhIQ7U7r57I4ArAACPPvowduzYnTtXw6Ldvh4AT64PBsOvxYeIi+B9xvno2vclx+yj9Dc+dCi/1nniifxap0oYRCL4H//xNTQaIii85Rb1+H7j0aNon8Of/+C7P8ATFpfXHdh/mOU+9x/Zjx07dsCNXKFuK4tPX7kJW972Nqy7Nxnn6ysOAjgN3e4AjVQiWAs0PPQQXevci4kJPo622xaScQA4cuQYduy4k/1t715xrbN7N5kHHliNuHM6e37b3bdh7cG1yu/8VMQtt9yCXq83fMMR42kFWIuN9773vfjHf/xH3HrrragVyHh+7/d+D+94xzvY84WFBVa3NTmZlys91eH7Pm655Ra85CUvgWVZ6O7s4uNfSOSR67atw/ZrtufeY77xjQjP5gPVq17xqtIM5Vf+4yv4xqwoodyyeQu2b8/vWxXf/jYfUJ///Ktx3XU8g/GEQjp74YXnYfv2c4TXajUTSTK6hRtf8grgI8lvEltIs/1JXP/CF2P6kmSqec/hP8eTRx8BAKxet0o43r/9GB+AJuqtod/lYx8jtS4EYK1cNZW8d/9+/N/DXwBwK/vbXA3YvHIlTt++HT888lkgXX+esekMnHS47vqqqy7H9u38nMzNAbX7fAwA2JorHNtnPsOP48UvfiHO5H0e0WymIyMxubjw/AuwffuVpd+tSqxcmc+kXnbZc7B9+8Uj7+uP/1gcNlaunMqd//96awvAHHwDcHU+eVx+1bW45CXitl/9Kr++XvCCa3H55ekTz8P0rR0clm7tqckVQ39v6x4NvhGjbwIXbd2G7duThfljH3sf22bzVH4/O+74AwAi6Lzmuc/F9vPVCZwstJMn4TyaACzdMXDjjS9kf1u37nRs3861+bse/g77CPnanXhiAvPteZi2yV7Xjh5FN73dDd9Cq1kv/P50PPkXXfweL7zghXjZhc9nzzto4eqrr2DX7swDM8CX/xYA8KB1NiaN5HUrAl724z/OC/F3AdiT7oSAp2atwY95l8a3IQzWNWduwyvImPboo/y3v+SS5D56/8wZwIGDiDXgpa/cztwen3iCb3v55Zew3xQABiQPZbd4JvyG592AF5zxguSw79qFzxz5DABg88tfjO0XVBv/svjTb/HP37zlbGzffoVwvps7feArf56cloaDHz98PxpSo+HnX/18vOSsl8i7xkMP8cdnnLEJ27efNtKxAcA3vpEcXxsTmCQA66rrr8LZK6tJl2h0uxoef4yDnRtfeCPOW83BiuOY6PeBeoXxN4vW3hYgzRnr164X3h/HMSC6lmPzxs3Yvn27cL4/8f0mgBlhu+nmpLCve+/NJ0Ze8pIXYwMpvzRNDfj3JKkXawG2b9+Or371qxnRg/9y4ma0atW/I4179u7E5yVjubPOOAvbXy7uS4tE9mbbtjOxffsZwmuTkyYOHQJ03RKOZc8eel+IYzpNyk9Pr8LKDRtxTztJ9lz/4uvh352y17HO9zk3BzvNZQbpGHDWuWcBe5PXGmZSO2MYMV75StIS4Nv/B8BOAIn07qKLnoNjK1YAaa5l+43bcdaKs9j2MzN8TnrOcy7E9u2klqli/NmfGXiUGPFNTQ3/nVYeWJmMYQBia8DuzxW1idL3PqnwYbjggvxap0qY3+EM1o03vhQrUlZKXg/m3heGgkvqT7z8JwSjC8PbCez8JwBAc7qJ7du3Y+/8XiDrF95bBTSSH0Rbp2HN1q1ACrDWNzw8eRKwrBrc9HevRTrOOYeudS7D9u2Xsue0neCqVWuF8/fZz4prnbP4T49WSwP+chfwwzfh2ovX4Vdf8mI8fxOfm56qoOe73+8Pf8OI8bQCrNWrV8MwDBw9elR4/ejRo1g/pFjwAx/4AN773vfi61//Op7znGLbZsdx4EgFpABgWZbyAn66IjueTdNcHna0ezR/jHGc64M1UZ8oLc5UFVbbhl35+1MJv+OYoG9T4VrbNmBZak15GGpotabZ674eICKWVK3Jley46iTT5MODRQrWY6LtdvThvyX9s6FzimLg95L3nnUW5l5+A3DbrexvPRsI+h3YloWAgMCG00RMzAlU52RddAJ7AdSiOeHY6Dxaq1nC+5gE3mgjWx/VLWdJrlPFLZA77qqRL1jVYVniQqbT2AzgAGINmK/xczU5vSb3feg5cRxyTkxTKNrNwqpw7dYiA74RoG8Buuez7bVHHgbS2lo7RG4/1tXXAvc/JLxWr9WG/wbNJqlbCFCr0d9cPD9RwFe/NV38Lk47yaK5HXLdzM9jJr1k7d4kDEOrcL1biGMxvX/xuothEbl0By2sItfARI2w4FYPvs7lQ1ajwaxAab8sCp4cg1+rDWKIAJ0v0ut798O6ntRqCSU5ybHQ8SrWY7bPsnEoi1/Bx9A++ffYn65NpxpT7P1Tdc66DsLByPeVm2Z1zRDQnabwfsuy0GjyhJ0fulj/b38NAOiTobApvS8LOnxbVv5+qhLZbjtoCQCrH/bHHkN6pHiiVWsJ+6FjetX91518ItA28mOcGQIBNSYyrdz5thRtFhxT3JdkzgdAPe5aUQQfQKQFMOfn8dgsZyP7M1dganK832Rq5pCsUIRz4mT+fG3cyB5+GG+GZeXn0GzcDQLxfJfdF2KNjC7cuyFC5tRpx2SfrRYfy9IxwP2PL/LvkUoE5XGo+YpXAd/7OgDgsDWFODbRaXMAvNIvPm7VmqFK5Oei4ddik7hhHiSPW1vPL31v1bVOlTBZY+sYmmblxrLC9enCAtpkLp9uTgu2760mH+PcyINlWTjpEoT/5I3ARQkAe3jmYejT3ORiUkuUMkGgYZACrHqkD13rZBGG0jxXstap1QDMnAd8+W9w7TnADQR8PR1hWRaCUexQK8bTanJh2zauuOIKwaAiM6y49tprC9/3/ve/H+9+97tx880348orF5/df8bEkSPYcJQvWJQmF+02EIYMYDWsRim4AgD7eN6S2KyomQfG7INV8FoYio3+fC1ESCRxDlmkNA/x709lZgCAmNO5tSGmB/IxGaRAvUc04icH+R4W86mToEcWxbZVG3pOMje4UPppqpzLF+j8fmj6eYnoOLHkfbCG7Mcghesd4hLZmMjXShaeE01DPVLZMw83eailNXB9E9Bcfg6DkPQYMxQmF7W8bLg2W6EAl5iyuLFfanLhDrhcw5GuXWc2oapcUisWnZhhAMvoraj+u2ligf2Fay8E1q3DZ1/7b/h5fBofxRvFvmOS+2KgcwaLIgDBhIBYkNsX8kSX/YAob2LvtcRVirIPFtk/taevUsx/Hn6EOriERbBpJ49Vkplh4acAywkBzc6POTZ1kjx8ENZMQnnvNHkh+VPhIujDxgSxYBzXqj0Mga+aL2LP5WMvcrUrC5WLoKW6DyNx4FQ1BVc5C47bB2tdxO/x8PvfxY9mkhIFfbAK6K0e/zdRGXY8/Eh+wxUrMHvJDfgqXoqHcNGS9cGiLVLCMKlJzGIQDDjAouOsbXOAlbYZ6f3oAf53f0L5WfUz+HXum4k7XvsYZ9EnviS6mj5dfbAEo5U6n/PLmgwX7Xvc4zbSWsRwFJOLIAD6fcZgNa2mAK4AoE5MpPpp70Raf2Uf3wazvRoA8MDRBxBP8qTaCi2ho8IQ6E8l56K2en3l9d845iuq9z2b4ml3EXzHO96Bj370o/jUpz6FRx55BG95y1vQ7Xbxhje8AQDw+te/XjDBeN/73oc//MM/xMc//nFs2bIFR44cwZEjR9DpjD5hPuPiN38TG657BXuqBFipHX2fAKxhYZHGgVmY3/5e5cOq4t5V9TXZpt0zQoQmyQzX+fdpPvQgexzEIsA6UOMaD+PGV2BY0GPqruMTQb/BB9vZfh6IzqWLEwFg2fWh5yRbIIS6KP2oci5jUvdgWmrp66ix5H2whu2bON11iE11Y3JVbtuyc+KMCbCctKZiUAqw8osf1aLNHlQAuY7DrI3dOCidQLwzeLbafuGLxc/KmuwaRHI6e4j1zUJ3TeXfLY5FgHXBmguAiQk8dPZ/wj/g5/FtvFDsg0XGkknrEJMH2dJvYN0q1tuxY/+Nt/HH//4V5TaW1ERW6SLYJ6YwxBCk7DrJFpJTmC9uNEwB1j13AAujAY/edJIc8MMGdEXW2ibZcFozd7dxEXv8VLgIAkAr4uPGYgAWTKIUMNS/3aJdBBWgy5AB1j335rZROX7aZvH1VfSaYQBayFeAJ3/2P+FgWqdknDyvcD9VwjQVgFLhXopt2/CD930LL8dX8SG8dWwXwbL3ffrBS1D/20+x1/tBX9nwHIZBAFYyf3XAx3B4TeVnCe6t5iABWEGSCDVDwJkUk2tPl4sgTTivrXOwO2wttaRzKFsfjHD/tBOGqZ3eQrJFOwDUGwRgRXmAtbXbxouOJaziif4JHJkk6hIk4wR1EaxNrqy8/hvVRbDofc+meNoB1ute9zp84AMfwB/90R/h0ksvxX333Yebb76ZGV/s27cPhw9zoPHXf/3X8DwPr3nNa7Bhwwb27wMf+MDT9RWWLhwHTR+YSNfyh9sKgLUvKZrtjQKwVFlD1SBfEGWNDEftgyU3Gvb1EHuN5Le2zDpA6uJojyAvEhe5AWn66dTLM0/ycZ846wr2uNdMRyvPw2wvz1RkzYdpJt2266U9HgwD0NOFsrROqNTLJyKSKpoVX0ycSoA1jME6tJqDqsa6jblty66vepQ/yEoMVpx8ft+CUKBDbdoNVXZZcV/IoEAZV1+N2uZE59A1Y2gEWMvKA5dcS47UFyy75j0DzF77eJubT4S99ZV/t4gwWGdEk2xCLjrftI7zJ5x/QGb4ZknOb5annhHp4pn2hBLeW8JgsT5Yu3ixu79vT+7v8vvoa6WNhinA+rd/VBdVlMTATj7UCyeUv4Fg1Z/+/U48F0fNafZ6USPTpW403IwXD7CCAADtUVjAYC220bCSwQplBksxDqgYrIJjLHvNMMBMLgDgYVJrr88uFmApyhMKFBdVrm8gWZBSed2wa4ftK45RIw5wbZebJ9mSjtHetCX5LD0xHemSxrORqwZYQh241U8aDYcJwJrwAG1qSth+qa/5qvtx+qRpe43P+bRnXpXPqvp5qjhZ35L8r7eq3z9pQihLIMlNhgEZYCXfkwKszd0+nkMqch5o8GsgA1h+EMNN2a+aWavUyBoob4BdxnydAmXeMyaeESYXb33rW/HWt75V+bdbb71VeL5nz55Tf0BPV6SFMhvaQNspYLD2J5R7BrDqFRrRqsDU09kHS9d0mFHS1NHTIwRpUwjbrAsfkCw2k7vPlxisgGTUatbwBTc9bpMsPvpZj6b3vAez+3dkpjcs5sKEGRUAliQRVGXTM5egTGaVRZWsTkiaOtoKydo4cSolgqrfe/XCQexOE5ZeOA+YgAYNjpOfxMqur3psAhB/e9UiTQ4GsExA90ZgsA4fyb1mVri+MD2Ns067EA8/9iQG4QCHensAJIArJxEMCRsqLbiFpELowTEdzPR4HYPXPb3y7xZZdbx0F/C1bcBPD1KtfRwjJIvXIolgzyH267HEYBXI3ASAVWC6IwMsJYNF5GCe28v9XX4ffW3KFxksodEwBVg2RmawmEw5tKE6BfT7Z8zAn+O3AONL7PWnQiIIAE3w8784BovUC5rq327REkEVgxUPlwiqkiH2tdcpj7HsNdMENAKwHiIASztxHttmnLAUDFbR3FuViQKS+hbV+S9Lbnb0SdYHCxCvC3kcsjeeAezdk+w/DtGlDJbbUn5W/QTf36R5hPfB0pHUBEqmYk+bRJDMQWGduzQ0F8pNDpZyDkXWKkbP9/gsjIUFxACrwVIyWKu5sqe/dTMAEWBt6y6IAMuaxcvSx5NxKhHU+HxZt+qlv1OmHIjjZQZLFU87g7UcJNKK3KzZcMfr5GsFxmGwKmbqi6JqBqPKa9m+nDCTQkUsS2rp4uLDIZNqDmDFhAUwhy+AhWOKLPb9WcPmhYWcTTsAzKU9nLxN3NXLfuGLS8+JpgF6lDFYIsCqci4jg7MfRUzAqPFUSwRr5Iv2teQcFtULlp0TR5EDMgtkVuL7kms+MIDI5fdQSBsNq+6Lvftzr8mgoCies47XIO08wWsW5AwdBevygptmkjNZ6vGXcXv9URisI7Ut2PSZ/4uf/PCf4n0/mRgu4F3vwk/c8lbUkPwmRRLBLlmJ2Rs3i8doq8GTyGAVACx7OMCiCaGRARaRCNqGLYx9dEHSdiBaYFUIPxtzAkf5+TLACk7bhH/FTwkgpUgiuNTZ/AZhLxfSOtJRIwxinGmktUixlpsz5DG9SlSdi2SJoKEwtFAyWGeJjm6VJYKEKacACzPnFu6nSliK5ExRgmgUgEXP+bBrhwEsbVIwDRIA1nPFmnd6LQdxgC5RVRQxWLUf3sceb7CeRBAAC2lybMIFMCEyLk+bRJA0f54jw1FzUL7SX8o5VM/mNT2ofv8YBnrXXwM//czp2nRuk/rUava4vzI538d6HGBd0J3BxQRgPajxJxNxcj3YMWf1aoOw8vUlf4+y37esduvZFMsA65kUhMHKIicT3Lcv6S2UXrDVAJZK914dYFW9Ucpek7NtWW2NZ0RsASIvPujiOoAoEVzh7WWPa4pFcdHnA0AUaey89b0hAGttMki5pFeXve604VlD5hIkvl6lYDQkk5mjyICOE6XSkRGjktEJ+e36evL7Fl2rZddXPdfYsZhBoVEDkaF6fCERhARgKc6tciFXRSII4JJ1l7DHD5/gPtM5ButJ7lDmHBAZM4cArMwM4/jVxEq/t6by79aprcbfRm/Bv8/8PrSrrwa++13g3e/G9Q98CLfjWpjwCyWCXYcftHW22EeoSDJp/++/4o8VbnHJeytIBAmjQQFWVYlgBrDkDO9iGawgSMYgO1R/vgCwzjgd3Te/AwGsUpldFkudzT/6ineyxwteW7H18Ai9EC0zWWw5slsP+bzF1mDZKtAl1f0pQdhVzx26/7K5iD4PQ35dPng6f1M8s0gGSwGwVDVnQHWJICCe82FAJXvfgjYlMFjzLk8w5Jh0cp0GoYeuMRxg1escQMWmCy8IWMPaCQ85BmvY960S4zBYToOPAx5lfZ3ytj1LyWBRgFX5/rngApz40ufY01X1VblN6Bje95MkGmWwLusexPkzXGHzgHeA/S0DWOsMLtGuPbGn8vUlf49hZRSq7Z5tsQywnkkhMViAQia4fz8zuACqASx1YfF4AGspJIIA4LQSPfaJxmpYRvKFnYEnvKdG6nhkk4upgA8M9q49JUefP+4VB/cwOUPvaLKfuL2AkwqiYu53fwuAJBE07OHZxozB0nktDZCfDHce34k//fafYu/cXiIR5AyWs0StBKosNKpGlayhSYBRnLJ4jYJG6aUSQQXAUtVOyVHT+DUfBgRgRVQiWO2+qGQ00u3iknsOsqcPHS8BWPv4BGbvOyj8jbK2bi9ZGFOJ4CgmF0JSY24O+LmfY965/4zXIoAlnG86lnQcfg3KGXerADzZcyQjXlA7WIXBEgAWcVOsymB1TxHACtOC/W3hPnUNFlmUes+5EO6vvT15UoHBWupsfkjY1AV3PIAFz8MgvT5koxP6eYuVCKrcPHMmF6r7UnH/FhlxZKFpiaxJ2I8JHI1409OHNtfZsUYnzlTup2qcKgarCGCVjfNtbQSJoM/v/8jrC3WN8aBAItjgNVaxOUA/5AuZiSESwaeWwcrXLgFAs14OsJaSwZoapOBWj+B71REGNeJaWc878lIZb1b+kAEsAxYuGexBLQC2zie/985+krAHgIkoOSbL4tdFXbMrX1/LEsF8LAOsZ1JUYbDe/Gb0/9vb2dNxGayiQltVnBKJYGrHPjA16GYqITt+XHhPjZgZBFIdTgS+8CoqHC86Jk+32WK/lxbvdjonWd8V6iQ3l9m0U1mX4QylzXVStxLGfASR3/faf34t/uBbf4A3fflNfKDSlx5gPdUSQWpykUXjhHpBWyoRJJryLDoX3TDsEIF1W9nDx9fzxeY4JheVGKzZWWz9xd9iEpyHjpdIBIn1viMBDpucNy9jsHrkvuiNDrDiOEb85l9j8uLH1r8A78XvCtsAYg3WQo0nBeT7yyqSCBKTB1tRawcAlgS8VJlMymj45FxVkaqUMVi0HqtjYySJYBzHLNtthfpQiaAbuHwbo1gSmsVSSwTtmC8WF7zRgGQWkeszs44ygLVYiaCKwTIqMFjKGqyuWEdTdb7yI35dLqTGRmevOhuhbxa+r0qMArCqSrHkbau+bx5T1QHWbd9ljyO3x5IWWgwEbk35WTVisBBZHnohX8hMeMhJBJ8ukwur3lK+3qxPKV8v2/e4x72yy6V53ggNbk8QIy4Vg6VrOksy9DtzAICjneSzJrEKjXQddW4nkRL6cYDHvvN5YO9efOys/wkAsE3+u9UqrHWKxoGq5mjLAGs5nppIAdZpFGDJDNZP/zR67+B2yGPXYCmyhkUxqk17JYlgOgiEmss6qcuW3LRHUET6XgFArNG+VMMXwPSYPLPOFsL9tLfNLGnGd8YUrzlhAGuOD2z2fHtoVkcj3yWM+MZC5jH2sfP4TgDA9/d/H0Zqi00ZrNopZLCeKolgFo1Y/YFl15f9slfl900aVReF1eJa9DZZ5ASXcrBlKurbDJWLYJU6OMeBEYPp2584+QTgJDdyjsHy+YTqSCY1AoPV7wC+j+MniAR2hJ48lhHhPDyCD+Id0P4plZZMT+OjL/g0olSKWCQRXCC3lCUZDBTVV1EXPWpZLhyTxH4p+2CRxEoRg6U6BzXDRwM9oU+M8NmGBScFsKMyWD5hPo1QV34+TVp5oce3IRLBomTQUksEHQqwxjS5gOeRsVkhnT2FEsGBvkL8rIrJEOfu+8VtKoxVhgEgyu//vFXnsWapY0sEW3m2RPVdgOHXwKIlgphEnUoE57g82X5cdNS0yfgdueSeikxEqVw0JxEkTW4j00OfAKxJX891u3+6TC4024atSAo0m9Ol71tKmb1BErCeOyjZUgzKYK1q5AEWANS7yXjT3/ckojhiCboVAb8Wz4q2sMcPTPSBzZvhOxkzSQCWPlytU6U/W9m6cVkiuBxPTagkggqrdmbMgIouggoAUjTIq6JqI8Msht2EccwzuYHOvyx1UANEBgsQzT4i0EXLcIBFj8k165zB0gPEcYxZokc/ayVnP+bcOQCAd5RLuewn9w4ddO4zeNEwZU2y9xkGMNPnzETH6+CYm3xGxmDpEWCZ/z975x0eRbX+8c/M9vSEkAYhhI50BRRExApWFOyiYldULFdFvT8EK3Yviteu2NtVsXdFEQtNmvQO0gkQUjbb5vfH7E7b2ewkJAFxvs+TJ7szZ845c6bs+Z73+75vwzyiTW3BcppZsBIELa3t/koxmcy7LfilaZ+Lmohmkn7qKWpbJlI305VyiwQLoIfGgdhRuEBuM45gqT+oxiAmnmyVGNYQgoUL2f75/9QCdZAIeoUaFnMQN/IfdeNzz7HNpy4gaMdbFERlkWO3lmB9+Y2u3oQSQc21SiQRdJaU6r6bSgS1vkyaCJDJnjmXI8Ltrv9TwsubRdlKc8r9qivB0lqwnWGH+fMkOhTrdyAcUMs4Y0F8XHGJQWNoaLlU7gZVQl2+e6tJ6eQQggHVgiXFd6qhJIJmYdornM31bZn4RppF/DT6/lleEIzE96FDM9X3sN7BDNp1jttmtOLG0NgSwTgLVoU6WXdv0atH3BoVR8AhUZkl9znNqUaViyM3qelEU1oScgaojqjPVzrxxHpfSQQRRSXPlxbJCJaZvLTe/dYQrKBVgvXUU+wYf6vy1UwiCOCLJk2sFsPs8u9S5h85NepLvdij5uabv0VWW8TORUuwfE6v5fsrEcFKNkc8kC1Y9eTfNhoFJhLBjRUb44ppCZYlC5Y3FQxqmIaKIhjbVhd5QyQCnmh5SdCEJDfk4pAnm8vlYyS9Gb2uFixt+9WiSrAigrw6Xabx0ynNUieBu6Z9CwctIRCV+YkRcHhTkp6voLHWmEkEHQ698ynA6vIlQEuWONoCS5Ai7nq/wI1ocomgyUQqxeRHFmq/d1JNwn1bIVheLcEKq/eOluyaOs6bEawEhEKHGMHSzPmEgvmwpn+8RDCkkQgazs/dtz/MnCOXy8qAxTvYFjXECBEByZ9t+bpFjM/FJZfAmWcS+kjdZKwrJeKgRozonL/dhmhtCSWCmpQCrqxmYDKvN06wE0oEo89nQGPtS/bMhZ0eHnRfB9wLmBOsdHcaO2Kh3DdblwhqSbEjAcGS++6WE7hqCVbUgpVIHggNL5cqnf0lzi5yFM36EqxITTAWkTtu8UvbniTJ73Tj5FMLSZIIhUKEQiFKUkt0+7J8bvyGZN4l6S2pTFVVBRmp+fj9foLBIE6nE7/fT9YeKa4uT3qeri6vF0o0RdLSdGnxlP6XZOeCoa6u2d0pKZELFxbGH2cFXlGM62PKUSfGnS/I4xnra0pKfHt5eep+v1/dn5qqbnc44o8rjqUeSc0lNa+Ekuj7xIVH6VsurXR9ap7dmpJU+XkWMrPIKeiA4N9Jq8xWbC/yk5UFLVsa2vJ46OArodIFebnp+HyVlHjl+gsvHxl3zj6f2m+Xq37j26yZ/vo2b26tnrYpJboIggDpKc1Nr4sWbdpAUONL7HbXr98FWa0oSY3mJQxXKe1q7++wkXls24ZfUu/5fE++aX/bppbiTg2R7RTYvGuzUr5ToAX+Enly2bp4ECXurwDYtGsTfr+f/Hx5LItaot4XYjGR3X5ljAUh/nxLSuT7NT9fvy83V95ndm0lSb1umZn1G8P6wOVy4WioSZUF2ARrf8KFF8Ipp1CIH16RV750Fqzt26G8nKqIOjGwRLCOGAT/+69um/OIIy13y4p0oa4RkDzr/gKDishjJFiXXAEf/QpAlUO/BBIRtX4NyS0MuvYFF76wAMiSvKpgFWWRSmW/jmCVb4XNmwlI8gm6w4A7ueOnoDkXMwuW06lqo2NYVb4EOJZAdKYihd31z7NhQJNLBIV4MpUimk8wa7VgmZCbtPIdcduMSNU4aaeXLwb6A8kJlpl01pVA7qZD1PqszTFCgSxXirNghTRBDwy+StpJeE24BsrK2BZ9xL3VKVRL5vI0MzhcIutpSTEbiBQWIU6cGNef+LxjDnaij0ZilAi6WrcxbU/rg+U49zzEuy4kgv7kjXJlM9mTW5uIPBSI22/Wb2WbS32OTS1YnnSoRJcrywr8fnXVyxFyJLwGHqeH6lA1NeEatUyCKKlaNLRcKuhOJ6MGylKgPFSZ+KDaEKxRg1yYyHuN1y4RwQoEAmzatImqKnlh8JnDn9Htz3alsnr1at22x467SbeIlu3JZPXq1UiSREFBAevXr+eI3pfSPXKe7jivO0dXV3ExPKNpThTB0BShEDxz8SngHqTbnu8q4Jln5MJeb/xxVpAhSXHnmyvkxp0vQOfOal+bNYtv74ILYPhw+XN5OUSHkxNPhIED5c9OZ/xx48bJ5+gSupKT8xbPhOT5g8fh5qwOF0f76db16aSh9zEwGjkw25nJAyUdkCQJl8NF6PHVSJL8ytO1FQrx+JHPEImmKfEIWQwT5BPK8mbFnfPRR0Pv3vLn9PT6je/QoXDMMer3lBRr9Tx09LNxKVSywnmm10WLSZP0SZ7z8urX72uHPog/Nr5uv9Ku9v6OS2ly7LH0HXQYz0RfI/nhfNP+jj92EkERBKBme41y/3mEDH48IhMXIVo3c/Js+FkkScIhiKyeN4/RFwuMGJGOx3kYNakHAZAp+AgFVzM4miwrHI4/3/vvl7c7HPp9N98sk1FBiD8mHFbvdZ+vfmNYHwiCQMuWLUlLM/fDa2jYBGt/QmYmZGaSKUl4nV78Ib/eB+vNN+H666lqB4yQN9XXB8uVaW5eNkNdrFNWyoRC5vmNjNu0EXHCxiAXOgtWcoKlN0kLUX8geSJZHahip8ZClpeaRxpuKgjIq1wVFQSiE8UYwUoa5EJzLlofrNosWCt3L4nujE4qw39fC5ZTtE6wahvLlG++jyufse2vuG1GpJepJKzF5h+BS+W2tEEuzGRHFp3p4yCK4HLRfYtKTqQ8mWAZLVg1oRpFnG30Z9JOwmtCNbBDtWB5KjOpxvp1czhgGB8wlI+45ssryY7+qNQ63jkFsGeNbpvbSLDy4gOPQLzflQO3LhgN1G7BUnyw+vaD72UzW+DIAXH7zfqtbHOrUmKjDxZAmi8LgEo3RF59xbJGfu32lcrn7D3eWi1YYAxy0fQWLL9LQ7DCVYkPqgWRQJUit3SbvK+N73Qzd9FIJMLq1atxOBwUFRXhdrup2laFhDpLLXC3IjdL/ztW7ZWIONR+F6QWkJuaSyQSoaKigrS0NLaXOXBF9uiOK/G1wJuu+m+Vl+snxA4HlOpVqgSDUOP0Qqp+4aZtdjvCUVNuamr8cVZQFaghtEsfHbdlRkvTHEY7dqgktUULyNa7oeF0qnFZSkqUNR3cbti5U93uNfwcBoMQCMgT3VbtKwnvipJGwY0/mtstN+KloEA9QZ87yHaXvC/PmYsjJF/cFFcK1Y5SJEluRzcmwSCB7TUEHSCGBXwUURn1Ky5MK4zzGfJ61XNo1Uoe47rC44EyVelIZqbGYlcLqnwBJFG/kNQ6uzXeJHOJqir9/dSqlWwVrTPcNVS65Ie+pauYjGz5/tfe36KJHtEleYn9ZJRml5r2N+ypwu+UQILCzELC5fKLM418RXrbshh8EUFRQxVvA7KcLJFKSXF7qMqSL0y+kI7fX6Lcd61bq9cshkBAvsecTv39oL3vjM9OKKS3wNbn2aorJEli27ZtbNiwgfbt2zeJJcsmWPshBEGgMK2Q1btW6y1Y0Shg+zJMuxVHz2QhwcNhFGdzLYzbtJNNbXZxAEljwUrkdJ+o/UhEwIdKsKqCVZRddxmsfBaQtc1ZQgoVkkqwatBYsDyepCvOpYGVLIp+TmTBMhKsFbtiBCumX3Q1KsFqTAtWMLNF3LZE/oK15sHaVQGGw9ye5ITap5lch9HkUrrvHpAX58wtWOkZYDCQWX5WPB4yK4K0rnCxJi1IOHcBCBHCYf0PZSBUQ0wt6TH4Y+j8j8IBqrZvUp53R5W8KGL1ujmdMIs+zKIPVxSo22sdb1866OesusS/IPtqOQSHTvoqRsDhM0QIxE3QQLCcEdAaqk3zYGmeZ63vUzIrebawiwz3BmJiX3MLlrqtKlhlWsYMK7arucsKytITXoPclFy2Vm5lQ/kGdvp3IAjNkPaBBasmasECKI9Umx+QBKGQ+tyYJvxOEHRBi0AgQCQSobi4mJQU+f4QXaLu3nF7vHgNrMArBKnSylS9brxeL5FIhEAggNfrxeVyYjCQ4vXq66rRr8shivEExOEAHC7dbMglukjRRJtzOOKPswIpEo6bZXk8nrjzBUOQEk+Cfkbhdqv7tfPw2o4TBPB61f5IghQTceCWnLo+uZyiUs6hyQHpdDuRJDWKoK4tl/x7FXQCIgiSqDzrxutiPB+vt37ja/ZbZKUewemII1g+n6/WRRCQx1p7r2uvQ13gcKjj63K5lbHR3t9xBAuQXCjHpaakmgcwcwrglC+s4BTUdvABcjseD6SSSlUseJgTUoIRwKvrm8fhIhBQT9DjiYtVorv/tGMR2272zGnH0Gx/Y6F58+asWbOGYDDYJATLDnKxn6IwXV4l3unfiT/ms7F+PQBVmmfKZ+KjYoRp7pEGyoMFdY8sGA7rIwTGYNymfdlpLVYAkqAhWHWMIigTLLWtqlA1Zflq1K0cXw5ZDnmCnsiClYx0FgVVYpwoyIWRYC0rkwlWiigvF3nD4UaVCDamBSucWRS3LSUJwTJzhvWZLCAYk9WawauR3oU0BCtcrcqlTH2wehwct60uBAug+87oveWu4MmsE3l9/UBYqVpAaiIaeatXP8H3zFGjoNUs+INtOzXWuko5AEZdLFgxWHWKN1uwMUoEId4qHlt40LVvkIk6wyAYGkwa5EJDsJI9cyN2Psn/3Ccq300JljYXVqAibn8iLN+4UPncvCwz4TU4qf1Jcl+lMB8t/Sg6eU9uwWpoh/+YBQvAT0g3jlZRrnnOHL7suP11cVTXThaN0ifR+NCbQCC+TJyEChBNrNL6YxJsk/Q7vE6vzlJhoYvm7Ukm24ysLwrJpKzuOE0fEpVNeH7RY7RBVsKoMmrj+OrG1q8SdLG2nE0OB0Ql3REBkDSRN6vjnWySna8VGM/X+nUyuXcSBKBpmPYSty5JkYTldIhE0K7VmSkwAERN7YGweq8JhpyS2nd4yAEiEUACQXNfGMYk2f2lRex7bcc0NczeGY0Jm2DtT1i7FiZOhIceotCv3vybK6Ke81ELVlUdLViutevjtjk3W3d8bgyJoFF2BPEWLO/XqjwsU9qg27fboYlYlq2POGUGo0TQp5n8VYeq4xL4ZbnkiViVGwJ7dhGIvnQ8liWCmh+ysPpDo5UIbtHkwgDYWPEXuHeT6tgl9yOyp8EsWGb+EY1JsMxIfaJ7VTsmRnjd8ccYI4WZwaexVGitKCHNyrmV3DqOSB1eyrFAF9vUEykq+Iq+/mnwX9UHsiZTJX/ujCxdFe5KdSJSs2cn2/aoUTNCVflyn+pBsKzmzTFbsHEbr2U4jMvgLykKXujfX92wYgVpVXoC44oQ98uajGAFNc9OMhKSG9mq5OuBhiVYK3auUD7v2XFwwmswvPNw5fP7i9+Xy1mwYDW4RNCZphAsgD31SDa8JU0jBS1qX2t7dQm1XOtkPlGZSPwk1JR0GSadVh5dszJeg19vvSfSokkfQ8nDptVlUmqZCEoSYpUmoqqknUgbSK9mbCNaS7Vmu2kfY797gqQjWGJl7TLVeo9vfefLUv0IVoO1rxtfi0wzHCYUswoJYsL+aq+R1t83c882CtiMjyoEQf8bHUs27CDMHkF9R4ppaZbvr0QEKxkagmjvr7AJ1v6ELVvghhtgzBgKV6kESJEJxghWjprPwBLB2h0/kXAtX2lS0hyNIhE08dHxGuRSng2qFcgl6CN+rXCqoYM8vQ8z6XXi9iMRAd9A1TO2KlCpI1jZvmyy3KpFa3fFDgLR1T6rEkFRkwcrZBJq2kwiCODMXai+7BIkNK0PzELMNqZE0EyWmpIgDK7WqmeEz4xgWdAT+LzqMxLSyEu118IKwXJaXFwEZM/03Fx6BFT/xvn50Q/LlyvbAgep4Z89bTvqqtAGbAkE/GyvVMMnB6tk2WVdJIIxWM2bk1IdP1OOk6GUl+MuNwROcKZBJ/W82LOHFL/B/8pkXmkmEXRt3a5sCyyYG7ffeFwMzcJbdMErTAmWS0OwRpwF38f7+JlhOdH3Q0Tk3V1jEl6DPi360DKjJQDfrPwGR+ouhWDVlhC9oSWCWgsW1C8Xlnb124wc1jdZqHEyb76AYdgWiLfAmRIzsfYV94QTxCQWrPpCNCNYCTqRbCKbyIJl3fIlIaxU811p/eDiLRVaAqC+BLWTerM+avdHqN3ftSEshEZYXguLxFsR62PBqjc0kVkt32YaglWbqkJvwVKfm7SqXbRkAxnskQmWNqF7tDsOwjoLlig46mRZtbrfijX2QIBNsPYndO2qzIKL1quEYlPFJtljcJNMOKqaqZN/SwTLbfbjaD2MVm0SLqinRNAs4eTRx+u+axOXIhrCtIvJk3cmaj8SEfC1USe21ds2UrZe9bHI8eWQ5clSvu+q2kFA1BAsCxJBUbPCHw7Fr8KbSQQBxNxF6ssuYj1inBUY62pMC5bb5NWSctgRpvUlyqsCekuUUreFvFQ+n4ZgiVFSVVZGaPcuZbtDiO+4cSJQJ4I1fz5s20b319W8UfNiBEsTJqmmlomrRyPLqglWs61GJf7VlbL3dmNKBH1byjAizhrpcsWRJacxBL/XG5drxhWJf3mYWrDK1HdfYNXyuP3G42JoFtqqI1ipbpMgF1oL1p9/wC+/xFdkgCRJrCiLWrB2l7AlXJLwGoiCyLBOwwA5/UOk44fKvqaUCFY7G4BgRTT52kwIVl0kgloYLU+imSUqyTHQwBJBaidY9bewxL8HzbZB3Saa9ZIIIpiONcTLNIXMLOVzyKEtV/uUUUewBJVgiSaEYF9KBI3STQHRklKhoSSCIa2PsMWcpFI4TCjaXn0Iliv6W+ZHfpYTWbAgsWXz7y4RbGrYBGt/QkoKdOgAQOFKVT62ac8m+Osv5Y6trqsFyyQIRF0SDdcm4TLbbimKoAkp8hp8qbTyMEnUa7i1YdqtEKw4iaBGClW1dCE7V/4JyM7cPqePLI3Pwa7qnQSib2R3RACnM7lEUGvBCqozndokggBi8yXKy05sQAuWWT8bk2BllsVH+quPRNCMYHm8ye95n8ZBPRjz35s9W1kBhAQWrJX6eLEOE1KQDG1z2ioR7GYVRNtYvVp5frWyDeO96zYSrKBKNqQmkAimOOLJq9v4rnC7lR9rpR5jWH4TgmVGVs366NY8m4mCXJiNQU7IggVLS7DcwKxZ8RUZsL1qO7tjicjL2iVsP4YzDjpD7XPnN5XPTSkRrHI0BMFSKzBK5ozt1UkiWA8LliUrF/E+ftYlgvqC115xLWeeeZquzNq1a/F6vXXy4zCVCDaABasux2n2xkkolT0u/fMraNJVhDU2FlGzKGVqwQqo94yWYDlM0l80DIGt53GG6+2oJ9urf7/VAyUrbUuSHBjGAsES0jSLi7H8nZKAGG3Gj7dWiaCWfYqC2GgSwUTE7ECCTbD2N/TsCUDhLnV2sqlikxLgAqAqQ51gWiJYJkEBnEmi5WhRm4XBbLulPFgmkw2voU/aCGtGgiXVkWAZLVgpTrXu6srdlEXndDlCCoIgkJWiyrzKanYRir6d3H0OA0FILhHU+mCZ5PJxOCXFgpXuVl+INF+qsWAlzrdTH1i5Tg1Vj8vk/kp0r9Z2f3kNQSAcEXB6ky8OpKSqVt5gzNo5a5bOSdg0yEWlMepd3X9BRUGkW343ADZkhyj3AJWVch479KTBaNXQJh4OBGvYdqE6WadK9jVsSIlgnAXLZCLtOvIYw4Z4C5Y7LOhDtpkRrHD8WJrmwdJYKIMJglyYRhEMbm14gjVzJitmfKF+39E+Yfsx9C/uT36qTIZDLVUJolULVkM8l9WONDI0fqr1IVglG79VPmeuWR63v94SwTjyZKWMiSXIhIkmc8q3IhEUBRGHGC+NGjt2bJ2d5OtiwdKXqX1b/SSCmEamAxAMEUB1EkGsSwQdAVWtERHUm8Is/UWiPu4N6mvBEk18svam/rpAsigSDBeqoWBrtWCZ5XKMXsIIAjV4EAR9zkdVIhjBK6j+cmI40igSQS1sgmWj6RAjWBq3qY17Nir+VwBV6eoEJFHoay3Mwpg7ndYtWLX5yJhtT2bBCofNJxtxciltElaHXjPdRlikfHavS54XKc4Ha6fq9F21faNKsJwy2cnKVl9m27qqiVVjZC6pRFBjwQpoVvVixwnecmWi3buot3Lu4eZLlN/6v7MFy2Xmg5WEYJlasDRSP5D9eESPFYKVqXwOxsi4FQuW4bmoD8EC6JHfQ/m8IC/6ISoTrJk7W9nnCel/XTyaZ7UmWM12t8Y0UCkTrIaUCMZZsEzeJ66ilvoNghBnwWq+bTUsWKBu8HjqLRHUWtwDEYtBLoJBMkNlVGounyWC9ddfivTaFDfeyPIbL1K/W7BgOUQHp3c6Xf4iqgNlNUx7QzyXAdFLxrgJyvf6ECzC6jEeEwtVvSWClqIIJrdgCcZ0DdLeEBd1h5m1bunSBbzxxhtcd911cfumT5/OoEGDSElJITs7m8GDB7Nz505GjhyJw+miT4s+ur+07DxGjhwJwKBBg7jhhhvk7kuwZs1SDjvMxYABPZX6R44cyWmnnaZr8/XXJ5OVlaV8f+658Zx3Xk/d+U2dOhVBENizZxcAn3wymewBA0wjGy6cvxBBEFizZg0gE6m5M+Zy+emX07P9YZzU+yQeGfsI/irzCIgAEydO5IjDT6R/aX8G9xjM+FvG449GD1z310YEQWDu3LlKeUmCU09tzZtv/kfZ9thjj9GtWzdSU1MpLi5m1KhRVFSokyHjWAgC9OkjMHXqFOX7+vXrOeuss8jKyiInJ4ehQ4cq5xWr49orb9T1/eN3P9GN5/jx4+kZnYuBnG6gXbt2dO+ujifAa6+9TMeOHXG73QiCgCAIyvWsDdoFBEsEQxAINVNVNbUSLBMC7wxH1RN4iN3rsXQbgPK76CCESxOxWQjrX/T1If6JCNY/QSZo58Ha39BDnpgVaoI+xVmwUl2wS/5cX4mglVDXMTSKRPCQQ2H6N7oynuWrQM0rqgu1HdEQLEkCt0N1svdY+HE3EqzUqdMhWv3OdcuIxg8gxyVbPrKaqZPKLb06QLSrMYKVPIqgujEYiI8iKKWo8sDC9EI6NOvAgq0LCGarEjVH2Pm3JVhOlxdDCiRSdphP8mqVCBoIliMiIHqTWyxTNRasqlgel1mzCLXW9NHMgmWQw9VHIgjQPb+78nleARy+Hplg9e1LTXW5ktvLbQjioY2QWBOuYVuVGuQiZsFqSImgcUHbbMHGzELsluMwq9/D6JOZmEoE43/4TSWCCQhWrc/cVtkaXGcLFshWrFNOiSvL77/D9OmsOEqzray9efsGDD9oOM/Mfka3rSkTDYdCkOFRn4H6EKywpKoGzPpeX4mgKIhceEJndmyVnzWn6IibbIXC7XUr+2oZAUnKQBAEIlI24YhhAcYwdpKk9q1ZM/jf/xL1qnaC9fDDt3HKKafQXxspE5g7dy7HHHMMl1xyCRMnTsTpdPLDDz8QDoeZOHEiEyZMYN6WeTx656MA/Ovuf9ExtYScvPg0FpIETzxxC54Eef72XiIoQ5TAaEwWDWvta5YuY/T5o7nq1qu4+5E72VpWxsP/9zB33H4nN9/0jmlbffv25amnHsbZMotNGzYx/vrxvPbMa1x5/eVxwUcS9VsURZ544glKS0tZtWoVo0aN4tZbb+W/miisWhj7EAwGOemkwfTr149p06bhdDq59957GTJkCPPnz8etZMk1EPgEvmkxTJo0iS1b9JL+NWuWMGrUZdx///2ce+65uN1uhg0bVms9MbiCfmX2LQargeT5+LTpXsz8h2MwI1ixBbGaaB6s2Li5HC7CoTBBB9Q4UwiHHHJ+tFhdBkuuFWuUVenfP0EiaBOs/Q3RVZNm1fLqeUiUZB+sW26BCy+E9eupWn5/3QiWSVjr+gS5aFCJoDf+heLZpnew15bREqxwGMIO9WXj9iZPAR8X5ELjAP9XQM0smx0NbpHlzVK2aYNRmFmwTEOgS+oLsKYmXuYkpap15qfmE8wNsmDrAt2Kt/g3lgi6TQh8iskEG5IEuTioB8xVv1dGshDzcpP2MS1VnXjNaH4E7NgBa9cSUo2RppGtjM9FfQmW1oKlRBKMWrACmuyoHsO9qw3sEgjVsE0TVpmqZtE+WutDMomg6XibhGk3C7nvkkwIljYPlokFy2kiwzGVCHqSW7Di+m5CsFJdtQe52JOMYD32GADLczTbohasZNfgyJIjaeZrxo5q9d3SlImGw2E9wdoTqHuY9pCk3ntmPrN7IxHcsdXF1s21/QYlslILqJNjAYzBVZK1nWg1HUG5m40Ea86cn/jpp69YsGABS5cu1e176KGH6N27t44AdOnSRfmcmZnJxshfeLzytc/Ny6UwvQBveiZG/PLLD8yf/wtDh17GwoU/1Nr3ukoEtWVEKS4/c5w7238eepwhpw/hvMvPwxGBwrbF3HzPzVw5/Equu8aPx+ONG8t+/fqxfk0qW9wB3B43qWmpRMIRHBJJVw1idWmtP61bt+bee+/lqquuUsbX5/OxqRaL8yefvEMkEuGFF15QrJ4vv/wyWVlZTJ06leOPP970uNre8mVlZdx7772MGTOGsWPHKtuXL5+Pw+FgzJgxyjaVwNUOUdK+kK2tTmgJVq0WrGB8fc5oc7EAFwrBEl348RMRYHOzjuze4iBNUNVSRoJlhmTE/58sEbQJ1v6GggLIz0fcsoWCSoEN6ZJswXI4oKgIioqoWqk+QPUmWBaS88bQKBYsM4mgYXKnnXxKjqCyOhIKQdgpd0qQwGEhL5JeziLKYbyjL52/UCcfOVHfKx3BqtIQrKUrlHOI1Wv2AtnlLgLksgHNilLsuIhPrTMvNc90tV0IO/62FiwzC2lKWnZ8QWq/v5ztO0LEAWL0YoVdlvqdqrknwvjl5eutWwlNuQ42yiuwphJBR8NIBGM+WBCNJFhQoNwoNVGfBjES3wetLLZmdxnbN8oT9FQxjcqw/Mw0lAXLrJ4Uk8h77u0747a5JBFttKk4C5bDgSusJ2EhZ1atfVR9sNRrF7QqEYyuLtfbgmXEmjWKuWNFvhMIIUgi0s5S8/YNcDlcDO04lJfmvqRsa8ogFw1hwYpoCVYDB7lolqdeV6foipMAhsIhJM39JVuwHICEJElRC5ZEOKJv2ChNNlqwEhKsYIpyp2Z69ORn0qTbGD78Ijp37hxHsObOncuZZ56Z7Iz130wsDJIkcc89/+Lyy8exe/eOuP2ffvop33yj5iSKREJ4o89bbNvKlQvIzFTv73D0gdESrN179tCv00BEUSQnN4eBgwdy7e3XImgWAQEWLlrCwsWL+fLDL3V9jEQibNy4mtLSzqZnOmXK59x6x134q/0cfeLRXHTNRTqC1b9/f8UPTJKgulqfH+vbb79lwoQJLFmyhPLyckKhEH6/n6qqKlJSUujatStvvvkmq1evprS0NO56Ll48jxUrVpCerrds+v1+VmqSvU/9/icGth+oGyuf13wecffdd3PUUUcxYMAA3faiolKCwSDvvfceZ5xxRt2Cn2glglZ8sCIRQhpf7lqDXPjjZZxqBEH9c6wN1S4RBBz68P0WLFjJQq7bEkEb+xd69oSvvqKwPMKGdNhWuY1QJKQ8VNVB9Yev3lEE62HBSvTDX688WCaTjTiCpZGHRZwBIhG5HtmCJXfKHQbBwqqRUSKY4k2DqMrwL5c6njmpsnVER7AqVGmAZ/1G5Rwg8Wrz8ox+wE8ABFK1P3rRPvjUOvNS80xlKZGIx9Q6Vl8Yr1+jBrkwIfAp6c1M60t2f4lhHxExqsOPuCz1O01LsGIh/ps3J9y6BDZG+21FImjBr8MMGZ4MPFWl1KSs5rf8VCIb/1KkGzVR52+3SVQ9d3FrmCd/rkn3sa1iC/ggt8YVu10bzIJlnncsnmC5Zs6GowzbDOMSZ8ECXJIDNLlwylNb19pHJQ+W1oqnmUDXSkIGDeKaoxcz1X0BIBOmpAQrwwPUyARLq20BePJJiESQgOV5MsFKl1pRHiW5Vq7B8IOG6wlWEwa5CIch4/X3lO/l/t11ri+EJoqgaaAkfXtWISDw6heL5S8SdMvtbbx1WLRhE1Wi+o7smN6a9PRcIhGJ8vJyMjIyKK/YzooKdbXdHRboXnyIrh6/HxYutNCncApsPQi3B1KL1Pvvhx8+ZNmyP3j++XdNj/P5ki/uSUaCZXKBX331VaqrKxk+/Cpeeum+uP1HHXUU48c/HTPUsmDBBzz22P26MiUlHfnqq4+V2/j3339nxIgRujLpaWm8/dmr+EWJ1ctXM/6G8TTLa8ZZx52qK1dZVcWwEcM4+5KzdduLU1oT9LeVz8NkgjzkuKMpOqQ9a1au4aE7HuKHL35g+NCTFJnHO++8Q+fOMjlbvRpGjBik1LVmzRpOPvlkrr76au677z5ycnL4+eefufTSSwkEAqSkpHDJJZfw4Ycf0qZNG1JTU+Mm9FVVFRxyyCG88cYbcX1r3ry58vnQw/pw84O3Kt9//exnnvvvi3HHLF++nBdeeIG5c+eyYcMG3b4uXfowbtzdXHzxxYwYMQKXy0V1dbXOdysxkrASI8rLCW/5C6JTotp9sIS45FpOA8HSWrBiiAhBwKuPIqhReVghRPXxwbItWDaaFgMHQjBIYd4aYBUSElsqttAiQ3YUqgqqqz5mE3MjXCZyBKcvuawuhmRkol55sMp2xZXxGBINC23b4pwpEnJEKHfKuafMCBYWCJZeIgheX4ZCsDaoC73kpMsRCXQE65dvIBqowB19ZJIG/hA0EXqihSOaCXXYq5cIFqYXxtWxKNKrtlOqM5oyD5bLJFdVSkbtBCvR/SWEfeCKEiyLFixTgkVymYXTEK64wl0QV8YqUvf0oCZlNbgrWbFjFR1yZXlZIJrI0WMSVc/TQk2gXZmZws7oaWeRydro9oYKcmE23ikmYfFdJosxbjOCZUgAHWpeCqjR5xwmsi9TC5YmDH9ACsXtFwQTWa7Xy+asTuxyq22YLT7pCFZhLvCXLC9cvx5atZJ31NTAK68AsCPLzW5kX6SscHtidiAr1+CY0mMQAxlE3PJRTRnkIhyGjFkLoLf8vbwyPr9ZMoQ1zu7JwrTXP8iFYCmKIGbR+OIiwZm1Vft33fZQijb/K6FQmKef/jdnnXUdRcZAL1F0796d7777jrvuusu8YohLYoxL/xxUVVXx73//mzvvnJQw+FRqaipt2rRTiOimTXnKvtgE1el0065dO+UcY4RAF0VQEGldUkyVC1q1acWhRxzKsj+XIRyn72PPbl1ZtWwVxaXFuu1tMzqwcok7rt4Y0tPSKMkuoaRtCbOnz+brKV9z1jlnQVg+pri4mHbt5PegvGDqVOqaPXs2kUiERx99VLFyvfuuntj6fD6+/fZbtmzZwp49e9ixAw47rL2yv1u3g/nkk3fIy8sjIyODREjxpejObVlujmm5MWPGcNlll9GuXbs4ggVwzTWjeeONV7n00ks544wzOP/88xO2qUWdLViaJMNgLm+PQRQccQTLlZKGv0bCH9ITLO1voEyw0PtgORyWiZIWDZHT7UCAHUVwf8Qdd8B331F42HHKpk333QZPPAE//6wQLJ/TZ8ks7cqMf3m4uvYwKWmORpEI7ohfUfUYHP456CAkSSaCFQ630o9QCMKO6CQ1hCWCZZQIpqSopHOTZk6ZkylPqHUESxNFwx2LupNsTDS/1IGoJlq7Ah/26CWCHZp1iKtDkKxHerQCY1/rax2zcr3NIlempGaZ1lfrWEYiOCPq9S2MbLM0AU3RELz8gBpxMhnBMlqwapzmskYrSKtUn7E/Ns5T64z62XlM5IdaK8cmvxrgIlNU+9GYEkFfSvykxMyfztXnUH0ZE4JV1f4wfX+SECwlyEWKarkO5GTG7a/1PeSWGanX4TOdhKR71LorSovgtttkKWC25jp/8onsswcsP/1IZXNmuJ1pvxPB4/SQvukU3fdEaBSJoE8du/KqeJlnMmiDXHhNFkzqLRFET7DMCxmsPibv+PjfvuS/hXXxB5k69Vu2b9/EyJG3Jyx/++23M3PmTEaNGsX8+fNZsmQJTz/9NNujKRnM+mUkj2+++SZt27bl+ONPS9p/s37WKX+WKBAQnfir/Syev5i5M+fStmPbuCAUN42+lvmz5vPQvx9i6cKlrFu1jh+/+pFb//WvhG29/PLLLF68jE0bNvHj1z/y1Udf0aFrh4RkwDixbteuHcFgkCeffJJVq1bx2muv8cwzz5gem5+fT7t27WjTpp1u+7Bh55Obm8vQoUOZNm0aq1evZurUqYwePVpHkCRDnwSTqfCKFSuYOnUqd955Z4L+S1xyyYUcfPDB3HbbbbRr186SRRP0966lPFiaJMOQxIJl8sPuLChiY0ZnQoZ3sFYimFL5Fy1ZryNYgiEPlhnMJIJWAmP8EySCNsHaj1GUrkYa2jTldbj+enj+eYVgWZEHgrmTem0PqBGNEuTCSKaIt2ABiJHoD7uzRulHOAyhKMFyh4lbEUzWx0hEwKcJ462NvZCTJVuSMr3q/i2pGmd+gwUroVXPxIKlXeUNeeJ9sIoz9KuFYgMTLG1f9yZ4hqUgFyZ+cWb+PZBkLDdtoqRKDcOfFa601HdBEPAE5Te4j61w9dXw4ouEdqoTH7NITEYLlpjQ2T45MqrVSIJzN6sEKxDLqWYS9EMbse+voGp1yHSq8pbGDHKR0rFb3DYzfzqXJogImD+HbtEQMEQweQ+ZBbnIUBeEgl07x+2v9T0UJVgpTvOoXDoLVovmMGECDB8OWp+Nl1RZ34pjVStyRlBdKbd6DXI2naV8juXGMkOjSAQ1ydLLq3fVfvCSJXDrrTBbTSEQEjUWLFOZub49q9ARI8ncguWQDOGhzciTMdx7Hfw/rJTz+/1ceOEYMjKyE9bToUMHvv76a+bNm0ffvn3p168fH330EU7dRTT6YOm/V1VV8eijj9ZrIpvsHIzYvXs3vVr1YmD7gdx40Y0MGjKI8684P+rfpqJb1648+/6zrFu1jiuGXcGIwSN49uFnKSxokbDuX3/9lXMuvILhRwznkf97hCGnD+GyGy4zjWpnPAdBgB49evDYY4/x4IMP0rVrV9544w0mTJhgemyic05NTeGnn36iVatWDBs2jM6dO3PppZfi9/t1Fi3JMPU162NlZSX//ve/yckxt25NnvwAK1cu58UX46WFdUPdLVh1DtMuOk1Jj3ZuKEk1pFClECxB0t+rdZUIJjvOlgja2KcoTFNlY5tiv//FxXUmWA7RgSiIRCSt03DdCVaD5sEyIVO6vFex4yQPQQCnX0ewgnUkWHE+WAkCLmSnRCO1iU7SQg4qnGFqNEPlFqxJBHtu+57F0csXXrMSDtVPQoIevQ8WQKfcTqwvX69sb0wL1t4Ez7AkEUyNt4SYRaiDJGPp9eLTrI47I4LlvntCIjWuMNUu4El5JTT07+5KgDJTC1a2XsYo7sUrUkuwlnzzKtz/EzzyCDXRmaDHxL/LoyEhG8I7lTd0ukuVKjaURNDUgmUWRdDE8mJctHFJYtwvqTG8e/HWeGcY0zxYmlXVgEmiYdPzf+cdjlpdyfstywhgkWAFKuILbNgAX30lf27VihUFHkXlmBasmwULIHvbKaz+YTxC5l9cMOaChOUaQyKYmpqFIMkKtaQ+WCNGyOTq/fchGgwgIqhjb0aw6i0RNFiwzCZgznBAt/xrmgcrbiJpVqb278btscne5MmTeeKJySxbpt9/2mmnxVkcjjzySKZPn25eMeCSgoz/z3hNL9VOTJ06VfkcDTLKFVeM54kn1PKTJ08GlDguAJx33kiuvXak0ucrrhjPVVepx4CcY0uSJFavlg2yp5wykttvH8n6yuXsrtHfD117dtGdlyiKdOnZhUlvTdKV65jZk6VR9znjWD733HM8cO+/WRXaptvuEByUtC4xtdR8/PEaXV033ngjN954o67MBRckfm4AZs7U11tQUMArUYmvGSZPnsySDZuoQF24O/O8c7n5RjUa4Pjx4xk/frzuuEGDBrFkicSeaEysiy++nYkTb9ctNGivZ22ojwUrrJUI1hqmPX6f8X2tDdMeQ1AEB2E1D6fBGmVLBOsO24K1H6MwTZ1UKTK2Vq2oDsk+JVYJFsQ/YHUhWI0iETQhU1rfixhEKTq5c9ToJII6C5YFrZt+MiDgSyBXy/Gpq1VZkXiC446OW7IxSQmpq7+hGr/uGICAS7ZgpbvS8P33OViwgE65nXR1tA7Ha773Bk1JsNyGXC6OiLklFZKMpdeLTw04hjNsnWC5okt+1dqV9lyVQJn6YOXqrQzeUDCujFWkBUshKI/DYv9a+PFHWLyYmmj/PVL8iXh2q5P+nU617RSPas1u1CiCJu8UM7mnkTy5TM7FGNHNE46P6mEqEdQcpyVYtd4nDzzA5b9ditMlTxwTESy3w63ch6YEKy8P3nsPTj4ZLruM5TtXKLvSalQLltVr4HQI8OM4pI+fIzOaAsIMjSERFNMzSI++hsprC9MeDKqWq1WrlM4sS+uoFPGWtIk7bG+iCCowCd0fLWX4ZkaekpeJP6b2/XUJf24VcULGSPxzUNf26hqmXVvWCllN5HqgldKZFREz4v29HeXm915DjK9VAh13XFzgEWtRlevbXnz76jhqo2UmRCSiWLCcgqNW1xCznGNGC1YM2t/koAMcRAhH644lAG9siaBNsGw0PR57jMKhagSgjXthwQJwVevDsLpMgkwkQqNIBK1YsNavp7RcXk31OHfrLFjV0V/3alceVmCUCHrTzS1YOoIlxb903dEXUrIx0a4iBaOTdJ0Fyy0TrLydAbjhBujenc6vfamtgtxQ3UMr14amlAh6DVbFlLBo+qMgSWrwD9M+eTx4dRYs0fKPmicYjbqp6UqoWZZal5kFy6DNLypfZa0xE7icDtguk+YVOcjEauVKAh65DXdObtwxbp85MUjxqvLRRs2DZZJo2CxgiesvfS6aHf3iQ1W3mPax7rvDhISZSgS1BKu6Im6/6flv3UpYgKrooT5H4sSdMSvWtsptSJEIrFgBb78tmwjcbhg2TPbD+r//Y0WZTLAEBFJqSk37XRuMwXUSoTEkgqSnkxEjWEETMhnDcjUQCWefrVS0zaO+C30F8Ylx9yaKoO6blSAXJrMwKwRrbySC9anHFAYSaRamHermS1XvcNiBGsRqf3wZw6RcMPGbEiQgSVRVY8JiADFkfnPUNUGyGepLeESDLC+RjLGh2ouvR3tg3SSCtVmvQB/5D+QIgsKCBXiD6nzCLMhFSASRMKHoNRSc5lav2mCHadfDJlj7K7xeCjeqD0RMIhhqWaSs6iaSXJnBFdbf+U6T1eREaCoLlsdgPcDtloNYAEFnxNSCVeExj+5UW/vhsICjSzfTqF46giWYrNxHCVayMRE00rJQMKg7BkeAoFN2Os/bqRLfTr9qJjqAIDWsgrdJLViGl3OixYCk0iinE6/Gu9dhEnkvEVyhKAmPDWNmJqFUtR+mFizDNmc9w7RD9Hy2yUlHwyIszQVp7Rol0bAnL37S6kmNXwEG8Hla6eu12n4Uli1YJpYIs5D7rsXLdN+FNBOyaHznmBAs0yiCGoIVnD5N9pGaOTOxRDASga1bqdLccl5H4iipsRxl68vXM/e+a6F9ezj3XNnCqIEELC+Tn8lWma0grI7D3so0jWgMCxZpaSrBCleZHgPo45h37arWoQnT7nPH3wMNZcEyJxNG8mRWkYEUNKBE0Ph5byaDukMlcwtDov4k2wbWE7oCEAqbEizjpNyMYMUJMi1cNwBHkmnmvphou4P6MbBKsBoKkiYya0hMHqRL0kgEk6mPjEEunGEgECCCek1jYy4IglKfbMEKEwvPGRuTukgEzSxYyWBbsGw0PXr2JK9SudfZlAZ+Jzyw+X9KkTpZsAyraE4Tx/VEqGseLEs+WN74FWZPy9b6DV6vYr2IiBI10Wh8wVAEHPJnJ9ZM+0YfLEQxjqCKCLrknFmiiZUt+jJMGuRC8zILhg0WrBRVo55foPp1dNIGnqJxfbAa34Kl/9FIyWoeXwhrvicejXev0yQwRCK4QvL4Vbuia4S9e+uiCJpFt3IaVgdFE1JgFQ4HsLWL8v3P5hBYu1r5bhZVLpEFK1VQLbWNmgfLxILlNglI4zL8yBslgxAf5MJJ7QRLyYOlka0EHMAHH0Dfvry28WiO4vv489+1C0IhXZJhn5jYgnV+NzWU8uu5GkvczJm6cmXVZezy7wKgfbP2OhJRn2tQGwlpbAvWnki1zgdXhwQEKyyok1CfCcluKAtWolK6b6ayNiN7Sv6s7hOJoJaoWWy7IfupmwCLYlx4e7mMgaymxD/zDklI2kczopIsiuBekdf6SgSNAVIsHthQFixJ8zyFHMl/55NFv9VCNOyPJRkOiOqcT9vv2Ps2KIJIBKJpRIwEKxGS+WDZEkEb+x+6dcMpCeRFczUtawZdrhUZ+8u9SpEOOfGhvRPBbQgJ7TSR/ZghqYQL/SRJjPd1jzs2HAaPyUQyzqLk9aKJkE51QJ4t+IOq1ceBtYTJRokgxBPU7JBL9wORZSIzche3Vs4BEpMCbXCEYLS/yiQkVRNB8NCj5UEOhyl47wtSNRE1tjja1npOdYV2DBrbgmWUCJpN3MHaxNITUnc4wnUgWGH5OEmQV+c45JDkYdp36p2/k62+1ganE8WCBfBnHgTWqQTLjJQIoojLZLKaKqgWokbNg2Xim2gmEXSTnGC5jFEETQKGCILqQqnmuVJXVQNe9ZjDa37ge45hUPAbfSVR738lEBCQ4dIHK9HizIPOVPr7ZsUvKEbRRx6Bjz6SfZJQrVcA7bLb1SsQhVULVmMEudASLEjgcwawcCFBEaYXQ1WntnIeMMAbUVd8vCaW3AbJg5XIghVHsEzyYBkOjJgsOO6NRLChLFi6dmqprLGiCOoJlsM82qKBBJlK/RCS9lGsqIzfloD47ksfLOPU12HxBm4MiaCVYQhLav+cSQiZmKK33jsjgMtF2GSBC9RAF5IgywRjDDz+GTRvr0GkqwcobIK1vyI9Hdq1ozDqH1ruhVVZMtNxCA6u7XMtDx73oOXqXPUkWFZ++K1Iz4wr1W6TRMdxK/oaiSBAVZRgVQdUgmUmO0rWfjg6ozJO+rMNPldZLn0oagD30XJusmQSQe2PSjhsyIOVFh9BEFFEGDIEqg9W9u0Q9WHb9xZNKRH0GH2wElhbrUijXBF1h6MOFixnSJ3gVzuB3r31P1QWEg2b+Q1ZhdGCtag51Gxar3z3mIQtB3SLCjH4JNUC2Kh5sLwm9/zhA+O2GS1YWetXxJdxGC1Y5gw61g9tH2MEyN+pPTz3nCzji+KIwHf6CrbKCxZLNCrFlr6OJEK2L5uT2p8EwOaqrXzfV3PgaafBGDmaWMz/CuItWHt7DYxoFIlg+/ZkFLVWtpXXJPDpXLiQy0+FAZfCaQ8fDEcfDUA7/+9KEW/Z7rjD6isRNFo5zKVmonFD0jINLRG0cpwVaPtlZj2KoU75rEyOs+QjIyQgWEZJpkllooUJt9nb2ZFAEtkYFizrxxnCtNch6Nfeti0fqyFYFphmqKUqJ09mwTJeO1cE8HoT3l9xioEoxJpAtH/xxyRCXSSCyYjZgQCbYO3P6NmTIkMAnqNLj2buVXN58sQndSGHk8FlWIF0muQpMoMVC4OV4AlxFiyThKZxFixBwK2xWFQH4y1YnTb9Zt5gLe0rFqwy/eDmoCcBWR3icwLFJn51yoNlDHKhsWDlp+n9zlKr1EiCZnmD9gZNGeTC5667D1aiPrnCal11IViusIZguYiTCJpasAxSKDNZm1U4ncCuUgjKz9qfzVEiCAJ45i8yPc5j8DPzODy4Iuqz3qhBLszCtJtEfzQSrNw/Z8SXMTzP2mfCrJ/aPhZEI6gu2rGYX4Z0gW9Uq1WHkGHcohYsLcEq9ukjchoxorsaQOj1Qw3nfM45ACzfobFg5bSrl4zPqoyuUSSCvXqR0f9oZZspwaquRlqxnA+jw/VNqxBl62X/upCoPitmku5GlQhaiRBoDMxgwY+mvj5YDQWrc/L6SAQtWRgEMd4ygWCZYCUlgSZyQEdSQlDr7jrBusXSYMGySLAaqq96sprcHz7k0PghJ5BcKnUbzs0ZJi4JvI5gORIQrOjF3tsw7fUNjnEgwCZY+zN69mTEfDnEdelOeL/mNL694Fu65nVNfqwBWh8sMQKiy5q0rjEsWLJEMH6l3GMyAdMTLNknoCakEiytdaM2xPlgAb4tZboyOQbH+KwW7TDCSLASBrnQvLDD0Um9qUTQpw8OkFqtTgz3JsmtGZrUgmUMcrHaPOS8JR8sDcHaLJRY6iNAdUS1+lQ7gdatkxIsp1P/XOy1D5YkwjY5We6KHCjXcA53grD1Rjlvbkqucs8q9VptPwqrPliiIOqsxqD/AVa2GXX+JudilA0ms2Bp+3jjYTcqn6/5/BrCLYqojC6AtA0u1ldgZsHy1E6wTmx/IlneLAA+yN5Mpbb7ffoAsEITor19Tvu/n0QQdD6lpgRr0SLWZMoKiRh+92yH8nJCDg3BMon62lASQdMyVnywLIVyr/27GeoSatoKdD5YFi1YpvXUc8XfeJzR38g05Hc4HGfpcliRCJoFx0hAXvapD5Yx0bDFh05b/97021GjBp1x15ZCIYq6+GCBnmS5IoDHk/Daaesr08yBrKQ9AFsiWBtsgrU/o2dPzl0IOx6ElZ5bGHb/h+YvQwvQWrBimlwrsCJdqY9E0CyCn1m+HVdEffirTSSC9SFYMYlgimHynOPUW9ViEzBdH6OTxqSRFbU+WCFDFEEtwRp2AXTvrryZsir6K/u8VfG5Z/YGTSsR1P8IpAjmhN7K/TW34Azl83JHD0t9BNjk6Kx8rj79ZBAEfZALE98AowXLsRcWLOV8on5YEREWaAyWngRaemMC4uapzRtUnpbs3vUF9e8Yc/8qQ6Jh0STSoFO/aupMYJE1kwhe1fsqeuTL13ru5rk8M+c5louy7K84uAr8mihgRgtW2EVzV6lpWzF4nV7O6CzfVxVCkI9jisInnlB++WMWLAGB0uzSv59EEAsEq7ycub0KdZt+LQZWrCDoqN2CVe8oghYsWNbkfwbZuyb3oL6chT4lKbN3k0HB5FM8mkQiKJlINM16JUlxZNDol2UqETSzYCW4oRvDB6u+B4qOppYIasfSgkSwLgQrEkGMqHU66yARLNe8s2NWNlsiWH/YBGt/Rs+eAGTWgDB33l5V5cJAsCy+HRpNImjwt3KFzSMQaQmWPyoRrAmqP6RWfbBMJYKGKH05bn2IbFOC9aUsVUomEdya30v5XNWsUHcMqaoPVv6ukOxUHr0ezSuPhCkvw+dPkr3tlFrPqa5oSomgyyXogjWk7EWQi2qvGqJcrENkRUFSV+Oq7x0PJP+hchoJVgJZmxUo56Pxw5pzqHoungTheT0GGWRzv9hg8jRtLqZE9XgNgURcO+Mn5kbrmxkJ8xgile4pjJfcavuhO0fRyVMnPqV8/78f/o9n08/gbsZyR/Hr+goyMgh3bM+yWFyLsnYQST5IOpnghT3gySfhmmuUbTEfrFaZrfA6vX8/iSAWCNZRRzHvzit0m35rCSxfTsihdspMcVBviaCQnGBFLES5NRIDM98iuT3zz4nK1CfUdG0IaaO3WTwmGcGqr0RQ/m6w3phdPCGedomCeOBKBOuRB6vBfLCSEaxIhHCF+uw6k/0mCYKOYMV8sDS7ddAqFH7/7UfOPPJMwuGwZYK1v0gEzznnHB599NG9r6gBYROs/RmFhdA8KnNaunSvqoojWBbRWBJB44TMKEuKQWuhqg5FJYIBNVKRy2KuKFOJoGFFPceXrfueJZhET6sJEYmoL4RE57snW3XKr06VJzmmEsFKoFRdbXc4gLkjYca1lqQAdUFTWrAcDvQEq755sAAXKjmrC8FyRNTjqkPVcnuRZEEuDD5YeysRBNh2kLJtTlc1up0ZKQFwF+tlkM39zgaTp1mpx6cJiy9I4KgJxJUxBrAw+lsBuA2T5GBOq7gy2n4Y53mHtzqcC3tcCMAu/y6eO2ol47ibr5udq/cpuOUW1v36FUoAzu2dLE34jyg5guIMOZDMV9UL2XrxWYpfz46qHez0y7nq2uW0i+vf30Ii6PeTcev/KdsSBbmYu3mu7vvvLSCyfBlBHcGq3YJVXx+sRDIkKxLBuGMslUlaBEmCkSNHkpcn0KeP/JeXJ/spxf527dqVvKIoIlpLuTPx+6uxcgfFSwQtWLBMwrk7UlKTyxhNjhNTzX3F922YdkPUxCR+TXWtP3k92oqSDGooRGiP+uwm88FCEHSLDc4I4HYnvHZaC9bEhx7ikusvweFwxBHqWppTsC8lgv/3f//Hfffdx+7duxu24r2ATbD2ZwgCvPMOLF4MK1fuVVXukrbKZ7Owy4nQWBJBURB1kQ3dCcJvr2k5RPkckwjW+KuVbc69IFhG2Vp2SjPd96zt8WGNPS6vpcmQU/MSDEUPMEoEHRHI9hNPsJLUXV80OcHSEHnf3kQRRCtbqAPBkjQEKyjfM8nyYDkMUpFNLQ+33F58XdEPmlDtf1Sqz7GZTBbikw3npuY2mDzNSj3esLrDHQbcJhLB9Czdd7dJTi/6HKE/JoHPmZlEMIaHjn1IscJEer4ELX8z7feS7UvUL9s7WZKsiYKo5MQKS2HeWfiOsk8XQTCnfVz//hYSQY+HjN2qtT8RwZq3Ra+OKPfC4rWzFAuWKwyiCTGot0TQig+WceJsQSJo9KtJVJfVMkcfPYQvvtjEF19s4s8/N7Fp0ybef//95JXF165+qmXRrMkkgl69msDUL8wwSQdZRpfUMiGKuuMEBESf+bt/X0oEtRYswcQvrTHblo/VWrCSIBxGs+ZlzQdLS7BatQZRTHifxN7Lc2fMZcO69Rx9ohwYx2qYdi32pUSwa9eutG3bltdffz154SaCTbD2dxx1FHTqtNezbVeuJlFpemYtJfVoLIkg6MNRu8PmT29lhmoJqolq7IM1dbdgmUkEfQa/kZw0fTLcrMyCuHrcbp+1MdFM1EPGIBfRMO15ldEXoYZgNZSMz7RPTSgRdDoNFiyP+SqmlbEs3a1GcztxzxSLvQSHpBKzaeumIUmSci1EQTSVpIqCfgVWNImqZxXK+exqjdchTzK2h9VJrlmiYYgnXs3T8htMnmalHsmlRotwJSJYg0/Qfzchi65WbfXfExAsM4lgDPlp+dw96G51w4nX4HDGFzQSLKsWFZ1McIH6w6zLgWViwdofJYLaoHrhMCAIZDjU+9eMYO3y72LNrjVx238t/5OgQ14h8YQwnV01ZhRBS9YoC7my5O3mnxOViU323G4PubkF5OYWkJ9fQEFBATk5ObrjJk+eTFZWFlOmTKF9+/Z4vV4GDx7M+vXrdf388asfGTF4BIeUHEybNm246667CBlY6VNPjVcsZjFL2Wmnnabr47x507nyykG0bZtCdnY2gwcPZvdu2dI6cuQgbrjhBqX8Cy+8QFZWFgsWzAEgHA5z3XWX0vPwoxnQdgDDjxjOWy+8pRvF2267jaKiItxuN8f2PZEn73uSSFRXLEUkrr/+UoYOLWXAAB+HH96RiRMn6s5h5GWXcdOlNyvfHaJDGaMYxo8fT8+o+0PsvKZOnaqzDBqP0WLu3LkIgsCaNWs0237m8suPoKDAR3FxMaNHj6ayMj4nVwzPv/QCJ/c5mf6l/Tm+52CuvPIyqqrkwBNr1qxBEATmzp2rO6Z169a89NJ/lO+vvfYY3bp1IzU1leLiYkaNGkVFhbooO3LkSN31k89VYMqUKcr9vfmvzYy+7iaysrLIycnhtNNOY926dfo6zjxTR7DeePWNWsczEAhwwsDT6dOiDzVlFTiy5YXjDz98meHDO3LooW7l/rrhhhtwiA4E4OuPvubQIw7F45Xf5aIgMn68ek927mxuxRUE+P779znrrC7k5Xlo3bo1EyeqUj1BgJqaGsaMGUNxcTEej4d27drx3nsvKmUkSR5fbf2xsYph4cKFnHDCCaSlpZGfn88FF1zA9u1qrj6AU045hbfffpv9BTbB+odAq7Oti/SssSxYAB6N1cqVwILlFNSJWyyKYEATgcdlUTJmGuTCMCnMydNLmLJy9M7fIMuerIxJisbhOlItv3Tl4yTFghVLIk0bNZjFAWvB8sTnPQNr91ev9T8onzOCiX80jUipVsn5PT/dw9WfXa1IBc0CXCj90PopJSAFVqCcjyRSktI5br+p1Yd46WDz7BZNasHyp6vRM11ReUmyPhrlgABeQ6RSb9A8CEEiiWAM1/S9hm55Uf+tojk4c5+A7/S5sPQEq6Nli0qXvC70LOgJwIy/ZjDigxHc8vUtvDb/NaVM+2bt4/rX0BLBhrBgCUK8NTDDoVoP4gjWb78x/6TeyldljIHf+ItA1ILlTtDvvbVg5T/7Bt36D4CWLeP+Crp3pvshJ9H9kJNoN/KmeGvV0KGIrUqUMt0POYnC3ofF1/XYY4a2k/evrlEEq6qquO+++3j11VeZPn06u3bt4pxoqH+Aub/PYNz14zjn0nP46KePefbZZ5k8eTL33XdfXLtt2nThyy9la9lZZ52l2z9//lxGjTqG0tKD+OijX/n55585+eRTiETiL9C7777LjTfeyMcff0yPHgdH649QVNSSV958hXd+eIfLbryM/z7wX776RE2BcPzxx/Ppp5+yYsUK7nrw33z4xod88f4X0Q5CYWFLJkx4j3feWcRNN93JHXfcwbvvvqsbKO1Q1faebSiJ4IYNKxk9eghHHTWcX36ZzzvvvMPPP//Mtddem/C4Xgf34YFnH+CDnz/gkacf5IcfvuORRx6pU9uiKPLEE0/w559/8sorr/D9999z6623Wuy3SCgYYvT5o0lNTWHatGlMnz6dtLQ0zjjjDAKaQF5IErHpkUDyxYdJkyZRtl2OkNxmjwNBEFiyZAnjx1/Gqadewscfr2DTpk3069cv2hcBp+Bk7u9z6dxD/Z0SBUG5J7/4YhPTpplbcRcsmM3tt5/F8cefw/TpCxg/fjz33juWTz6ZHK0fLrzwQt566y2eeOIJFi9ezLPPPkuqQToqSRJ33303mzbJ7Wixa9cujj76aHr16sWsWbP48ssv2bJlS9wz0rdvX2bMmEFNjflvTVOjgdfIbeyv0K4e14VgWZLDWbCMmE005Ghp0R/xBPmN3BorU01YfmgCAY1E0OItbOqD5dBPCnPa6yPUZeYUYYTbZc2CVbp2OkQX8L3rFgLR8/buBoccVVAhWAksWI1JsBrbguVwgD+cAciTOp8vPu8ZWAzTHlEn6u6IdS1B821nsmLaH3DEAwA8O/tZtc+1PAOi6AYCScslg/Z8Wqd0Yeme2br9Hqe5VNdTrieRuc2K2dIIFqyEkkxBtXq4w5hGHDVao9wmsmOfgZjlrzEP1BPrZ6JJulN0cu+RDzL0vRMB6Oy4CU7yQGWlHCDm6KNZMmA5xOIw7OhYJ4vKiG4jFD+kNxa8Ebc/ZsGK9U8UrU8KtdegNhLSEBas2LHhsCbIhSsNkFd54wjW3LnMq1Alq5f0uoRbvriJkCjxa66fkFN+J3tC5ie7txYsR0Ul7s1bTMs4on8AgaL8+ALbtyP89RdJk42Ulzd6FMFgMMikSZM49NBDAXjllVfo3LkzM2bMoG/fvjz7+BNcdM1FnHzWyaQIXg7q25V77rmHW2+9lXHjxin1BAI1eDw+mjcvoKAAfD6fbqI4ceJDdO7cm9tu+y8FBTJ/POigLszWv1b44osvuPjii3nvvfcYOHBgLMgmTqeLMWPuwpNewZLtS2jRqgULZi/g60+/5V+jbgPg6KPVvGlt2pbi8XoUv1Wv6ODWW+9i7Vp5f//+pSxa9CvvvvuuOtEVBCQNxRIFMaH+q6EkgpMnT2DIkPM577wbaN8e0tLa88QTT3DkkUfy9NNP4/XGv5v69O3H+oC86Od2pJGRkUHYwk2svQ8uuOAGukXXJFq3bs29997LVVddxX//+19Avn5GoqDUIwp8/fHXRCIR7ptwFx3ayhW99NJL5OTkMHXqVIYMibpHSJJiwXIi1kqwysrKuPfeexlzySWMnTQJX/SdM3/+fETRwUUXjcHphIICcGvezy7Rxaa/NtE8X1XxxCzCDoeT3NwCMjLk44xW3GeffYw+fY7hssvG0rYt9O7dgblzF/Haaw9zyikjWb16Ge+++y7ffPMNxx57LABt2rShtBTKypRTJBgMkpOTQ0FBvHJo0qRJ9OrVi/vvv1/Z9tJLL1FcXMyyZcvo0KEDAEVFRQQCATZv3kxJifWULo0Fm2D9Q+CqVl/Uxhw2tcHKD78Vy4jZj7E2348rbH5gTuUOiCoaA/49AAQ1VgynRZ8c0yiCBr+gHJ/+xeH0pZJWAxXa3EUen6VJqqixGOryYGkjCMbUBAl8sBpTItjYFixBiCY4jCLFGx+FDKzdX4VV6rEty+uQaNgpwHcTYNtBuM+8jEBYXRWslWAJTmIEK2u3+Q+kFWjPp5WvS9x+Y5Q9ZfuaDaDho83zShslyEWi8XYLKYpjgCtsXtCYG8ud1TyujLeqWvfdmSCoRzILFsDhLQZB2AWOID+3QiZWa9bIbOf331kac/faUwD+rDpN+C/pdQmvzHuFBVsXxO0rySyJkwjW5dmpT5ALcS90JcaxrDWK4MKFzNPMZfq17EePtLbMrlrBojwQgh6gmp1Cca1tGfufDLEJYjgtlUBBAW6TAQ1HJMKS/N4MNcuKryQ3F6lFC4LhoNofwYHDOHgZGfWWCCbab4TT6aRPNHcaQKdOncjKymLx4sX07duXJUuWMWfOXF5+4uWoBUIkHA7j9/upqqoiJUX+Hdq1awepqRkJ21qwYC5HHHGmro/Gvs6YMYPnnnuOtLQ0hfBp63vxxad46+0XWLN2DTX+GoLBIJ0P6qir4/777+fee++lurqasy4+i5POOAkAMRDi+Ref4pVXXmLz5nUEAtUEgwGdPA1g2nfTGNh+oNw2EA5H4kjOggULOOII1YIhSfE30O7du0lLS0MURfLz8xk6dCgTJkyIK7ds2TxWrJjPl1++oTw7kiQRiURYvXo1nTvHqwdEQeCLD77g/lvvx1/tZ9iw4YwZM0ZXpn///oia+ykmIYzht9++5YYbJrBkyRLKy8sJhUK6a9q1a1fefPNNVq9eTanmNx7ke2D5ouVsWLOBXt0P1clb/X4/KzU+959+/TVfd5qqfI+YjGcMd999N0cddRQDukZzpYZCEA5TWlpKKBTk22/fY8iQMzBKc10OJzX+Gtwe9R0tegy+egnuy+XLF9O//1DdtkMPPZynnvoP4XCYP/+ci8Ph4MgjjzSvAPk+Li8vJzXVXOkyb948fvjhB9LS4l0NVq5cqRAsn0/us/Fa7SvYBOsfAteCRQpRca5Ybfm4ppIIJgpy0WXZ1/wv+tsVrNgBwB5NyOC/2g02b7CW9hWJYEEx7Pld2W4kWAgCWQGBCo/6K+Z2+6yNiTbRsKQJcmGMIJiRAdlq9MIDRSII6IKY+FKzTMtYGcu2e5rx9KewIQPOWmAuq6u1n/Mv4Kv323POlNPYUikT3NoiMTkiKOLp7LL1CctZbh8o9sYTLHeX7qbHuQ1heJtnt2xSiaBb9MUMy7gTpHRwzdFbo6STz44rk7Jooe67M0FY+tqCXCjtCT7YeAgU/8bSXNiWAs0XL4bmzdnphS2x393tnZLWZUS2L5t5V81jp38nWyu3Kn97avZwdOnRlnPf1XZuyfpUH+tYbe2Z5cHaUr5RX3jhQuZG59YCAl3zutKvyxBmz5wEgOSSCbIkmU969jYP1pYrz2f7yOvpVdo6rsyO7XtYF5Aj5zoi0MuwX/roI0RRZP7GWcq2Fs5iCvNMrF3zNW03UchoLaoqq7ji5is46oSjSA0KtGnZVdmnnShv2LCKFi1KE/YxNnnU9tHY119//ZWnn36a//3vf1x77bW89dZbSn1ff/0299xzMxPuHkfzHsWkpKbw2tOvsfiPP3V1XHXVVQwbNoxPv/of9939KEedcBS9D+/Nh1M+5a67bmb06Efp3r0f7dun8+KLD/P777/rju/dry9jHrgFgPQamDNzGfcbiFHHjh25776Po+cFO3b8zogRI3Rl0tPTmTNnDpIksWjRIi666CIKCgoUKwjI17O6uoJhw67k7LNH07YtpGjWTVu1Mo9cKggiA48fyEE9DmLNki385+4JfPjhh5x//vlKmXfeeUdHzgYNGqSM5caNa7j22pMZNepq7rvvPnJycvj555+59NJLCQQCpKSkcMkll/Dhhx/Spk2bOOIgCALVldV06t6Jxx95gNJW8nsrEolQUVGhI2SDDj+ca+6/AYAU0cO8aQt1lpwYli9fzgsvvMDcuXPZoJVQh8P06dOHUaPu5u67L+bOO0fgdruorq5WyLHL4SYrJ4vy3eoijGjInZUIyRYntPdtouPKy8uprKykqCheNQRQUVHBKaecwoMPPhi3r7BQdeUoi5rEmjePX/DbF7AJ1j8ELs2kzRmyHqe9MYNcuDVJXCu95qukLo0PViAanr1GE3cnnNHCvMFa2lckgkccDZ//T9me7c02HkZW0MEG1NmD9SAX6mRSb8EyEKw2bXRvmgMlyAVAWaQAkEOmpjQ3f3FakkY5HFwVnUeV1SHHgLa+Q/IPY+blMxn69lD+2PwHx5Qek/A4hzalQQKrS13bL/aYWLAym8Vtg/j8WM1TmzdpkIs2a2bzR/RxdCWwTLjLdum+G/2tALwp+kmFy2k+lrUFuYghHAbWHw7FvwHwSzEMXbwYIhGW5moKRglWXSwqIE94cnw55Phy6JTbKXEfqNuzU9cgF3v7zBvHMsuXTcvdsCETpv/1G7v9u8n0Zsqyoz8XsDBq+evQrAOp7lQOa3kYk6IEKwYhYr6o0Zh5sASN5aA2TiRIaiBCY+httT0rfar//lAoxKxZs+jbty8AS5cuZdeuXcrkvEuXzqxduZbi0mIyAgLtWreLq8Pv97Nw4QyGDLkgYTtdu3Zn5szvuPLKuxL28YILLuCqq67ihBNOoGvXrnz44YcMGHA6IAfI6NOnP1dffDELAvLC0Ya1G+LqycnJIScnBzFjKJ99+R3ff/49vQ/vzcyZs+nduz9nnjkKkIUXK02iG/tSUigulV8g2X6BDeviw2a73W6Ki+VxSE0Frze+H6Io0q6dXKZ9+/Ycd9xxzJ07N45gdex4MKtWLaK4uB3t2ukJViI4BJFUTzNS26ZSkn8o64cv56233tIRrOLiYqV9kC2VMSxZMptIJMKjjz6qWLl0vmjIxOLbb79ly5Yt7NmzRzkPAMHlomO3jnzzyTek5bVQ2olEIpSXl5ORoS6MpPi8ynhmOVLZtHQrZhgzZgyXXXYZ7dq1Y8PMmfJGj0eReJ9zzmg++eRVTj/9Uq677gzdubocLjp26cjqZeriu9Uogu3bd2bevOmASrB++206rVp1wOFw0LlzNyKRCD/++GPctYth1qyZCIIQZw2N4eCDD+b999+ndevWuutgxMKFC2nZsiW5ubkJyzQl7CAX/xBoV8X3hzxYAG6NvC/gMl9xcGlyUQVDstlXK/VyJVgVr619M4lgWkiMkz0BZIUMUihPqsUxibdghcMoEQQB8kbdAg8/nLCff3cLVkBSzfkpafHkFSwGDtBYmxxYn8kZ77nizGJmXj6TOVfM4e0zEkcacoXUNvYm0bC2/RxHK1Kd+l/+hGHaNf5NgiQT/ybNg6ULPmNexmUI0GFGsDxxBMv8fK1IBMNhYN0A5fv0VsjpK7ZuZYn2t3RHx6R11RdNIRHc22feOJZCegbDFsufg5Egny77VP6yZQtLhTIld1iPAtn/tF9xv7g6xQQEq74SQVEz7TANEY6ehCUqA3ryJSQYvMaWCLpcLq677jp+//13Zs+ezciRIznssMMUwnXtdVfy2f8+4/nHnmfF0pUsXryYt99+m//7PzlHWUVFBXfeeScAPXsOYMeOzWzevJnq6mpqamqUvD4333w7ixbN5IEHRrFo0XyWLFnC008/za5daiS1mH9MSUkJDz/8MFdffTU7d8rKj+Li9sydO4tvpv7E2pVrefqhp1k0b5HuXP773//y559/smbNGj7+6Ct+/+l3OnaVn6l2bdsyb94sfv31K9auXcaECWOZGZvIa6EZP4eF1Mq1ja3f76e6uprZs2fz888/07Vr17gyF100hvnzf+Ghh65l3ry5LF++nI8++qjWIBdvvjmZZb/WsGmBlx8/mcXbb79Fr15GO2litGzZjlAoyJNPPsmqVat47bXXeOaZZ0zL5ufn065dOx1ZE0UHJww7gazsLEZffjXTpk1j9erVTJ06lTFjxrBhg0o4Jc0NmUjavmLFCqZOnarcR+RFo0a3bSv7xUkSY8deSMeOB3PZZbfRrl07nWXJKbo4bNBhzJupKhPi8qUluE5XX/0vZs78jhdeuIcVK5bxyiuv8PzzkxgxQo4mWVzcmosuuohLLrmEKVOmKOf56acyIZ016wduvPEaTjzxRPJi/TbgmmuuoaysjHPPPZeZM2eycuVKvvrqKy6++GKd79y0adM4/vjjzTu6D2ATrH8ItH5XdSFYjSkRdGuSuCaKBugUVYIVs2BpCZZbtCYZM5MI+jQhuHP85m+PrIh+4ujp3NXimMRbsIwSwfw+g0CzomOs7+9OsATN2KU4658HS9KQVYdkXYtkds85RAe9CnvV6oPl0eZZa4gogkAkLNK5ud4XIGGiYQ2paxZy4RAdTSoR9GjyjjkSPF8uV3KC5fPpCZYzAaG0IhEMhYD1/ZXvP8cI1pYteoJVD4mgVTSFRLChCJbSVloawxer+99fHI0AtmCBzv+qR75MsEqzSmnu1i+G5AbiLRDGvtZlvLULWYJk/gwkCrleG2rLMaXWm7yeuuTyAUhJSWHMmDGcd955HH744aSlpfHOO2pOtYEDD+fxVx7ntx9/Y/hpF3LYYYfx+OOPK074jzzyCA8//DCVlXs4/fR2HHtsIYWFhbz77rt8+eWXXH/99QC0b9+BJ5/8muXL5zF0aF/69evHJ598hDF3XwxXXnklXbt25fbbrwNg2LArOemkYYy47DIuPuVidu/czRkXnaGzFn722WcMGjSITp06MemRSVx83cWces6pAFx26SWceOIw7rjjbC6++FDKynYwatSouHYdGn8q0cIUM9E12b17Nz6fj9TUVE4++WROP/10brrpprhj27fvzrPP/si6dcs4/vgj6NWrF3feeWdCuRnAzJm/Mvrakxl+yiE88sj1nH/++YwdO9ZyXzt06MGttz7Ggw8+SNeuXXnjjTdM/cMS1yPg9Xl59oNnKWhRxLBhw+jcuTOXX345NTU1OguWNlVcot+tyspK/v3vf6sBKGIPp0d+5z7wwAOsW7ecsWNfNB1vl8PFkNOHsGrZKtasWAOAiGDpGejR42AmTHiXr79+myOO6Mqdd97J7bffzSmnjIyeKzz99NOcccYZjBo1ik6dOnH55ZdTXS3P5+655xL69z+i1vxVRUVFTJ8+nXA4zPHHH0+3bt244YYbyMrKUiyIfr+fKVOmcPnllyfvdBPBlgj+Q6AlWK56WrAaXCKoyWGVKJ+VlmAFoyG2IxXblG3Z5eZRqGpr38yClRM0n0hnoZ8UuluWENaoGRIH/lB3hNBYsLQSwdT41ZoDSSIoaEizMaBIDJbyMjnrR7DqK2FyaFdg9yKKoLH9LnldmbVJDfnlqQ6YHKWPLtg8o1A53qzeurRvtR63Rpbrb9bWtIzLEKAjdeF8aHuQbpsnRe+Q7DIhYdp+SJL8ZzYBCIeByjzY3gFylzGrCKo/XIRvSx+WapWW9ZQIWsHfUSLIlVdy+AmDyfvzUrYGd/LFii+oCFSQtnAh8zTuSrFQ9YIg0G9ZFR+3Vve19Bt8twxt6dqzAI/TA7tLwFGNM2yuXBBFrdmpllDfOIg5DCaKrlYfieDkyZPZsAE2b9bvHzRokM6iEMOwYcMYNmyYed0S9BvUj36D+pHlF2jX5pC4MuPGjeO008YTCslZEbpH3TOnTJmi5AISBDjkkCN58cXp5OZC69YQDMK8qNHhjTemojGSIAgC3377LTt2wOrVcl6v//znZd54cRJzdqmsO+fuO5XPn332mfJ51c5VlFWXKd99KSk8/vjL3Hzzy4BsHMnORkcsJk+ezIqVf7Arek0ciIwcOZKRI0cqZcaPH8/YseP54w+1r8ZxNR6jRc+ePZWywWiMky5d+jBp0td07QoJ4j/oMHHic8QMXPK4qvtat25teo3XrFnD5s0QMy6NHHkjDz54o67MBRcklniCao2qiXY8Ny+Xex57kJ6tZOmgUSI4efJkdlbvZOVOWYrpcHtNx3P8+PG6dozjefvttzN48O1ENHO/qVOnKp9doovM7EzOHHkmbz73Jnc8dAdCtZ+xY8dz2mnjlXEyqxvg6KOHc/TRwykpgebNYedOiKlHBUH2NXzsscd4TJM2Yd062LoVPvpoNZ07y1JRs7GKoX379nzwwQcmoyrj5Zdfpm/fvhx22GEJyzQ1bAvWPwSuekoEG9OCJWoS+XoShmlXrUyBsCwRdOxUE/G1XGUiUUjSfjgqgfLNU517c3b6TY/LGnK6vj8Od90tWJK5BcuMYB1YFiyVYPkSJOxtaguWFWifj0SBGerTfpfmej8s93rzias2AXFzZ4ZyvFm9dWnfaj1eTZh2Z6Ln0kCwvFEfA10Zn55gOROEpbciNVO2rz8cgKADZqWVw/z5igXLjQd2y07tjWHBakyJYKNZsHr1wjH0dE7vLofR9of8fLH8CznAhYkFC+CwkD7/X6IIr/V9vgCobA7lrRATrPFq/T8itcp0tSHBkxOsukgErebBSgbtuRj9WgDS0tJ00dG0bXm9XjIzM/eqj8bjBIPFy6xPZtuNi02J2hO1idoT1N1QY1tfWLkn6lJHXaFdPxCT/KaFIur+vUkbUlvesZhV+ZLRl1DYspBIJIIoivW6v7T/69q3vYHL5eLJJ5/c+4oaEDbB+ofApQkosb/4YDl8qhSlcPda0+OcDnWytzEiLx2FwmrIeadFiaA2eq9iwapQ68mpNh4hIytdv8LqEl3W/Fic6g/mUt9GJEmKC9OeN+NPCOitGAcSwRLraMFKVM+Wlr2Vz5+UXGepj8b66mTB0jwfjgaSCMoWLD3B8uSbS1i00sFcIU053qzeurRvtR63BYJltGAZA1oAuFP0ofmNskKzfiSaqCvbDX5YwWk/siKqiilydwBJ7m9jWLAaUyLYWD5YMQzvPFz5/P7i93Uh2pv5cihKV+/Fw9L1UlYrBKsu420tMlnyQBjyHg15sSArbAyJYNI2E3yO4eabb+bmm282nQAPGTKEiRMn7lUfjecsOBw6v7aElr89FbrvosNpacKtJVh764NV12Ot1rUvSJWuHs24uCTzxd0YGopgKW2bnEOs3vTMdC4efTGiKCKKjnrdX1A/4r+3uOyyy+jYsWPygk0Im2D9Q+DS/PjUl2A1tETQpZm8ORNo8VuFW+CJvl+muX5m4m8TCUU0Ob3qEOUt1ocYwWqGOukvrDA7ArK8Wcpnh+DAEQpby93kLKJXNIXS0tTNfLb8M51EMMMP3uNPjJuZHEgSQTGskswMd/JEw4nq+fPQS5DTV0pM7vpIvfpZlwmgzoJlEvikvu0bLVie4lLM4NGs2DcXUpXjzeqtS/tW6/E61OciMcHSkyVfanx+EqMFy2j1qq2fRijb1x2ubPu5jZNV2RCKTvSLvJ3jyzcg/pYSwSgGtR6kpKH4bPlnrB13gxLavmdBL90ku0/LvoiaZ8AVSSDfrufzZWmSbnkmWzcLVsJa6hlFcOTIkezatSt5A7F6aplIJptk1jcQR9xxDofeyhQ0Z/7G6owEKxH0Fizz90eDkdd6Eqz6HtMQli/QS2CTDUVY49PWEBYsMzgEh0nUQGtBLpK1YeW+PFBhE6x/COprwWpMiaBLE63MiTlRSnfm8JQqC+fGr25khlvNu+F2WBBcG/oQC3LRIbcj1/0O/dbDqARKQy3BcgfCsGmTpTHZ1elw/pr6rPJ9/NTxBIOSQrDyKoHCQjkJiEkfa6u7vmhqC1bGsqtgd0vcc6+kWUoz0zINdX8lO64uEiatD9beECxj+60yW5HmVklHoiAXnpDagebVonK8Wb11ad9qPW4NwSpcO9e0jMutv2+9JgTLZbBghdv3iCuTqJ9GKNt3dMAbku+lXw5KZ/H/XamUKfZ1ii/fgPhbBrkoK4OpU3F9/iVDCwYBUBGo4CHpZ+UYrTwQIK1DV7ppIkE7ExCsvZIIRpF48lW7rM4M+6tEMODWPAcJUhVo26vLhLSufZQkuaCWBAkJCJZW3idK8ZauRO05te9PKTnB+idKBPXkpXaKFdq9U/lcW/7G2pBsvAVBiAvoZLRgNbREsKEtWPsjbIL1D4E251Si0MtmaEwLlieoSeArJZrtebj0D7jtR3m/hMQyj5p7w5XAr6O2PsQsWJx4Ik9s6skvr3vo9ObXpsdkrVAjWrjDgMdjaUyE1BS2Lr0cNvUEYPam2cys/AB8uwDIj+XAStDH2uquL5ragpW+7Rh4fB2e7+IlLjE01P2V7Lj6WrDElCzrByZpXxAEDmquBoJIFKbdffRxyufcgYOV483qrUv7Vuvxavwe3YnCtLv1z53RWgUg+Hy6d43bZ56wtk4WLATyArJMcKd/Jx+2VrW9rVI6mZRvOPwtLVi//AJHHQWnnsrwNep1fX7O88rnWIh2Be3a0W+9ps5IggivjWjBsioR1FuwzKczDUGw9gaSZuIaNnlOautLwjrr6YOlbLMiEdRsF0UHcrjv5O35gumkBiCrGlKyCs0LJemfVTSERLC+FqyGgpSkzlBIdSNoLImgXPfeE6wY6kX8D0DYBOsfAtdxg5XPziOOtHxcY/pgNVuihhHKLd9ketzKY65AJMwDPwTp64mP0OOqhwVLIVgOB8yeLYeyOe4402OylqsBNdxhwO2uw5gIMHW8su3dXf9SPudVImdqTNDH2uquL5raghUbA2W8TdBQ91ey4+o0AdRYcKrb9LJ+oIX2exfK/mQCgmmQE4D2BWqul+5FB+uON9Zb1/at1OPV+DUmijjqbtFK991lNnH0eglFVFLlcZpP1OsU5AIoDKoywff+fE/53Cq1aQhWY9yDjeaDla5aT46tzCdDlO/tYCSobI9FEFTQti2HaSOlWrBgNbQPls4aVcsMVO+D1XimkL2rWjubT3yB91YiWJfjRG0i50QEy4S8WmnXIbnovB3a7QQShJDfnySC9W1v74ihUKtcVIuQpmB9CZaV8daqnAAEi9ayhpCuHqiww7T/Q+BKUX1gnHn5tZTUo1HzYIXVJ8wTNuf6osuhGNDP8r5AauEGfljzg7I/UWSy2vqgm/CLImSY+wcBZKXkQHmsv4DbahTB6Ielp1JITzYxl7KIGsgjrxLo9U8gWLGojeZv+P1RIihqZC0usf5rUGbt33HEHZQHyulb1JfCdPPV3cHtBvPcyc/hcrgY1HqQ7nhjvXVt30o9wZJDIOqTKDnNnw1XiWp9dYVla1UcBAHCbnDJ+U7cruQEK6lEECgKq4EuqkMaC1Zqh6T17A3+lhJBDcHyvPsBJx9cxZvd1fIu0UWnXJWYxo4ZsgIy/bDbC922FmCGxpUIIt87jgBiAv9cQCZf0Tr2V4mgFeLX1JYC0eEESbaMCAnW2bX9dpiUSdSepLEkSmHz9/4/XSKohVSbRDASITZNEqXEVtqkbVgYb1dIv5pm1YJl1o4tEZRhE6x/CLTJHeuyCtK4ebA0skWSy1CEiJsPzv6AHuM7s863GUcEmjtyTY+rra5w2PqbMSs1VyFYnhCWJYIpldu4jrdwEEbafDoTC+bq9udXcMBIBBNNClVJZuK69keJoENDsDx7QbDM2m+R0YLXTn+t1uNEQeTyQ/TJEptSIujIbqEQrIgrAcHSvE9i0lkzeMMSMQqU4q+y3E8jdBYs6WA8opuaiCqdKc4oJt2Talq+ofC3lAhqCBZr1jDch45gdcnrYuoLmOtuxp9P7WBrKvgd5gtyjS4RLGsL3t2kuK294/dXiaAzHCBmHBAtMNEmkQhaCA6i88GKfrbSnpZg1fryT1KPFfydJYKCJK8PSLp7T9IFtSAcJhQdTmcyLaHVdhMRLMGpWwcVHLZEcG9hSwT/IXBp9LWuOoSebkyJYFnv05VtazqaJ2k0HpflzWLCoqu44Vd4eQo0d5nLrGqrqzbJmhHaMO3uMOB0WgvTvnMjT3A9j3MT5838K06Gc6BIBAVBHwLfrNzfTSK4pbnqk2IM5lAX1Ld9MzSlRLCNqw0toosKh20xt15o3yHuMAmze6Zp/Ae8fvNcCHWVCLodHvoKLXX7O/nTGnS8a+vD30EiCNG5bZpeujlkBaRoFrOMAS5iCLbtTIs90Gsz1LjM/YYaUyIodyIV9hQhRGqLFBt9t0jWJnJ1mSA3lJXFHVDve2eN+TPQmCv+phJB3bklt2CJNQHL7Zan5DOP7vxBT8Kp6aZlGtKC1VCyvaZuy3h4MBxk0fZFrK5eza6aXQBIGoJlZkW0CivXTbvwbhbUJBFsiWBi2ATrHwLXalWe5ly1xvJxjSkRDOaoFpxgRivMkL51JY9yE08xirZz3wcgI5zHbV/lcfL8LCQzaVIC1IdgZWaqBM4dBgTB0piILnWHIxhg/JHjdfsPFIJVWz3qeCd+zeyPEsGs8s3K5/Sta2sp2Tjtm6EpJYKpCCyZBEuehMEb4q2soI+AGA77IMU8z1lmSLVaeTzJEw1bkQg6HHB4fh/d/k4prRp0vI2QJHUx/u8gEVTqzMmB1Khlz+Mh5dW3OKHzqUqZRARrw2s/KKkRnu//srW26oG6WJTM4ApFk6BV59QSrKFu/ajLJNEKRE0eI0ewxrRMk0sEtcclKKu1cjnC8ZaohBYs0UkQN2GcCWtvSItFfa7N/iARjB0eG4p1u9dRE83xuX73esKRMJFwSLFwORuIYCW0YDnczJg2gzOPPJNwKGI5qIlZO8br++WXX9KzZ08iGovmP0EiaBOsfwjcc+Ypn50//Gj5uMaUCDokVVbkThBRLXXPZm7icUbxNG2WyPHaf+t1NQVsIYed7DxiaNJzMPahLgTLmZ7JIRvlzz036/uvrdOISLPmRKKv0G6L3uHUQCmFQk9lf161A1q0SNjH2uquLxqqbq3VqrZ6tOOd6AW6P0oEPZpJkCcUrKVk47RvhiaNIlhVRloAOu6AnB3LTcu4NqtxvGuzYGmjEHoSkLC6SgSdThjQZYhuf6fcTg063snat4p9JRFU6vR4YPJkuOACmDYNzjmHKw+RQ9s7BAcntD/BvD+aXGx1eadbQX3JhBk8wQLY3AN2lVqqyyqhGzlyJO3aCfTpI/95PIIcmCD6V6fcV9rP9UzcasReSwT96jsuUZh2nYywnu3VN1FtffF3kgjGmJUkwM7qnez0q+HYg5Egmyo26SMI1hIgpS5ITLBcPHnfk1xy/SW4osFJGor4DxkyBJfLxRtvvGFah02wbPyt4dI8nPtLHqzWbnUVusTV2/S4mqJSwtHbtOecl+Hll+u1mq8tWxcfLNLS+PRNePs9mPS5vMlK+5Hm+bzIpQC4Q9UIZ5zB6cEH8NU4OWijhy50ND3472DB0h5vxYIFiSdg+6MFy6Hpq8tlPZF1Q7Vvhqa0YKWv+1P5XLTlD9MyLo9Klly1LFhoCZbba06w6mPB6tfzFN3+Ti26N6oFa2/fOcY6tKivdcxye2ecAa++Cn3k9+1xbY9j9hWzWXD1gvgAFyZ9rcs73QrqOpmqrbwkAREXie0wetSFvBxxxBC++GITX3yxiXXrNrFp0ybef/99S+3o2tRGOtwLi059/cRMJYKaBRHRZ/5cCprtosmE2woSlbclghCK5v4MCiLrdq+L27+lYguVQVUBsDcEy8p1mzlzDhvWbuDoE49WFgIaQroa2z9y5EieeOIJ0+MOVNgE6x+C+iYabkwLVhtXP3hxOjw3k1aebubt5xdxF+PUDZddRufFHyRtr7Y+1MWCRVoaBRVw9p+QHtD3v7b2nU4YzRPMoZe8Yflyrv3fs1Q/4GfR81XMnLSw1j7WVnd90ZB1x463YsEC65aJZPU0hQUrt3y98tmbYHW3Mds3Q1NasHYPOIlQ9H3x6ZEPm5YR3G4c0feIu5YFC50Fy2du5arPfZKT0owummS4HUt6/20tWPWtu77tARxceDCdm3dOuL+uz2V9x3tvrSANZQ0zK+N2e8jNLSA3t4DCwgIKCgrIycnRlZk8eTJZWVlMmTKF9u3b4/V6GTx4MOvXq+8QQYIfv/qREYNHUNrtUNq0acNdd91FSMNKJQmee248ffoIdOyoWspOO+00XR/nzZvOlVcO4uCDU8jOzub00wdTXi5bPs48cxA33HCDUv6FF14gKyuLP/6YA0A4HObWWy+ltLSUg9r1ZvgRw3nrhbd0EUBvu+02ioqKcLvddOvamyfve5JIJIIoOgiHw4wZcylDh5YyYICPHj06MnHiRN14jBw5kssvP023LTZGMYwfP55+/XrqykydOlVnGTQeo8XcuXMRBIE1a9Yo4zJ37s9cfvkR+Hw+iouLGT16NJWVlabHA0yaNJGTT25F//4ejjwyn8suu4yqKpnMrFmzBkEQmDt3ru6Y1q1b8/TT/1G+v/jiY3Tr1o3U1FSKi4sZNWoUFRUVurHQXj+5rwJTpkyRPyOw+a/N3H71rQzoOIBjuhzDbRf9i9BiWTIjITFy1ChuvuRmQCVYZuPZs6c6noFAgHbt2unGU5Lg449fZvjwjhx0kFu5v7T3y/sffMihRxyKx+uJs7T26SPQooXeiqsdn/LynYwbdyFdu2aTkpLC+eefwLp1y6PnLJc55ZRTmDVrFitXrtRtj/XvQMR+EUXwqaee4uGHH2bz5s306NGDJ598kr59+yYs/9577zF27FjWrFlD+/btefDBBznxxBObsMd/P7gaINFwQwe5iEQEWN8/6XH3MJYcyriBiRCJcP5n5/Ian/Edx9ZrNbmuBEtBdAXY6pj48TGc9/nTczApNbvovORDbuYxHuGWROlB/nEWrP0xyIUror7tPZH6E6y/a5ALsrLowTw6s5jSHqdyslkZt5uCCvgrA5pVJg6a49G0502wUl7f++TaducxavebnLC7OUWtu1G20Lx8Q6A+428suzfPQEO2ZwV1fS7rKhG88Ofe7KjZjCgmrj8YVecKgp7MSZKk+FuFQurkzPWTeT3hsGwhbOYp4PeOs0zL7M1kr6qqivvuu49XX30Vt9vNqFGjOOecc5g+fToAMxasZfz147jlrps5qc9JlFXv4oorrgBg3LhxurratOnC669/S2kpXH/99dTUqFK+uXPnMmrUMZxyyiX8+98T6djRyeef/0AkEo47h3fffZcbb7yRzz77jIMPPpg//wRJilBQ0JL33nsPv8vPD9N+4P5b76dLmy5cMuISAI4//njOOusscnNz+W3Gz1x22VW06dCGy4adQSQiHz9hwntkZjZj585fuOaaKygsLOSss84yHZumkAhu2LCS0aOHcPXV9/Luuy+xbds2rr32Wq699lpeftncf7Bv37488MB75OYWsnPnWu6880IeeeQR7rzzTsvtiqLIE088QWlpKatWrWLUqFHceuut/Pe//7V0fCgYZPT5o+l2SDee/+B5XKKD/z30IiMvHc0b372F5HMRQV0Nd7jM3SiMmDRpElu2bNFtW7p0CffddxmjRt3P2WefS7t2boYN0wcWm/7Lrxx90kAAUoJyu9rr95//vMzZZw9h/fr1uvm5IMBdd41k/frlvPjix7Rvn8H114/hhhtO5N13F0E0qE6rVq3Iz89n2rRptG3bVte2TbAaCe+88w433XQTzzzzDIceeij/+c9/GDx4MEuXLiUvLz5C3C+//MK5557LhAkTOPnkk3nzzTc57bTTmDNnDl27djVpwQaAOysHogs6zpTU2gtr0JgSQet1C9zEYwzosovef76CMxzgW45jMZ2o2fI5EB8sorY+yBJBi090RgYccYRMtPr1q2O/YQ2lTD7mdUZ9Lk9TH+A2ZtIHh2NQrcfVVnd9sS8JllXpV7J6mkIiqLXwuuqZ2HFv2jdDU0oEHQ5YRBcW0YXrEj0mLhfPfgKv9ISbf9mVsA+uLZdByQsctKQdKRmZlvtphFm/r7rxDc7ZdC+Z+SUIgvC3lQjWt+76tmcFjS0R3FGzma3+v+rXuUTwJy9S35DRtR0XDAaZNGkShx56KACvvPIKnTt3ZsaMGfTt25eHJz7K5Rf8i3MHjiarVTaHNBe45557uPXWWxWCJUkQCNTg8fho3ryAggLw+Xw6gvXQQw/RuXNvbrvtv/h80KULtGjRhRUr9P354osvuPjii3nvvfcYOHAg/ui4OJ0ubrjhLkpL5SAKJzQ/gQWzF/DR+x8pBOvoo49W6inf1RGP10M4EsaFE5fLxfXX38XOqKvQkCGlzJr1K+++++4+JVgvvTSBIUPO5/zzb6B9e2jfvj1PPPEERx55JE8//TReE//Qww7rR8xwl5XlJSMjg7CFVQJtXy+99AZKSuTPrVu35t577+Wqq65SCJbP52PTpk0J6/r6k6+IRCL83yP/hyAItN4FJ094gOzDDmP1d7NpffJhuvJW5m1lZWXce++9jBkzhrFjxyrb58+fjyg6uOiiMeTkQEEBuN16+fvadWvpmtqcFuXQLBrsMnZfAjRr1pyCggL8fv2DtnLlcn766WNeeGE6ffr0p6QEJk16g969i5k6dQoHHXSmUraoqIi1a9fGjeWBin1OsB577DEuv/xyLr74YgCeeeYZPvvsM1566SVuu+22uPITJ05kyJAh3HLLLQDcc889fPPNN0yaNIlnnnmmSfu+t/j5Z6isFJg3LxevV2hwSZgW/k53kfvzc+z0hCkZ9CjffWftuMWL1c8NJRHctg2++w7+/NN8v9lxEiIPd3yBJ7N2kzd9CgCdWcLi6t21n4BJXeGwyPffRyyOdyqM0yyNfgfz51vvN8DnwkmcMGIsJa/fy2wOoTvzcToHJT3uQJII/vCDQHZ2fJmlS5P3qSEkgnPmJEzVFAeHlmAlSI5b1/ZXrcLyM2eG2KQGEofFr639HTvk9hcsMN+f6Li1axP0W3Jx0nI4yTwGhoKqsufhoftYVNUc5wvJ2/vtN9ht8kj/8Yd5+azCUtPtGzbs3Xgboe1Tfe/BZcvM+1RVZV6+PtAe/+OP0KxZ/eqp63s/9k43QhQhKwsqKiAQlVjX1MjWpNh+KxYsbZmIJCm5m0JhlLWyRI+q1oKVCNrJXnW13LZVPyGn00mfPqo/cadOncjKymLx4sX07duXRYvmMWPGdJ55+VEEQa4rHA7j9/vZvLmKlJQUgkHYvXsHqakZCduaO3cuAwacqZxTebn+3gGYMWMGzz33HGlpaQrh0+Lll5/i449fYv2GNVRXVxMMBunarTvl5WqZRx65n0ceuZfq6mouPv8sLh5yEhlVDsrLYfLkp/jf/15i8+Z1BIPVBAIBnTwN4LvvPmXatDRl3MLhEF6vV2mjpgb+/HMBAweqZWJWOC12795NWloaoiiSn5/P0KFDmTBhQly5ZcvmsWzZfL788g3l3ShJEpFIhNWrV9O5c7wUVhDgiy/e4P77r8Dvr2L48OGMGTNGV6Z///6ImpdtlWGwp0//lksumcCSJUsoLy8nFArh9/upqpKvadeuXXnzzTdZvXo1pSYRg5cvXsaGNRs4ssORCCAnfBbAHwiwZc0mukafl5+//ZmB7QciCHI2slAofjwjEfl++L//u5sBA46iVy85GXt5ufyM5eeXEgoF+fbb9zjrrDMw81msrq4GZzMKKmCLsyUp5fKzsHv3DgDS081zIi5duhiHw0nXrocSCMhtpqQ0o6SkI6tXL9bdzz6fTxlHWyLYyAgEAsyePZvbb79d2SaKIsceeyy//vqr6TG//vorN910k27b4MGDFV2rETU1NbpVoPLoXRkMBgkG6x8hrCFw3nlO1q93Aoc3QWvNEVxleD1bubqiXb1qkKQQwWD8kyBJArFbSRDCBIPxTl6yE7f8C/jHH3DssXWv+90PnHzEW3zJEAbxI5Wk4C9oYfk6iqIDEAmFRIYMaSj3w+Tn+9ln8AXjeI+FtGYNA/gZsepCgsH4FSnt+Saqu75oyLodDicg4HBIBBNFoRLk8QY488zkrxor90Dd+i1CVBqrWcxLik5DDwV+l9vuPqDe7wltv995R/7bWzgcks53w4hYX4PBYHQCLN+DixbFP3NW7t2PP5b/4iHobMCJxkgUHVCVF603iFkxOQ+PfJ2uu860mjr3+9tv5b/GgCBECAblCaF2vM2gvQdefFH+qw2iqNZdv76pz9zZZ9e7GkOdycd7zhyz+wtKSuCZZ+IlhK8OkKV6zZtLFBebz67mzKnLO1ri4IPN61m3TmD7djUodiRiVk4gNuncskUm1No+S1KESAQlzHQkElH+Yt+NiO2vrKzgiivu4qij4nM9rlvnVUjBX3+tokWLUqWPkiQpRAHkyWmMTQYCMmE34tdff+Wpp57igw8+4JprruHNN9+M7hH5+uu3eeihm7n++kfp3vMQUgp38tqzk1k4e4muriOPvIru3YexbfFX3PnYeC4YcBStevflsfff5uGHo8d370evXqn85z+PMGPGDKWPkiTRv/9R3Hjj00p9P/zwAS+/fL/Sxo4dUFLSkUcflV8subkSa9b8xoUXXqgb1/T0dGbNmoUkSSxatIiLL76Y/Px8jjnmGN34VlVVMGzYlZx77nV07qy/tq1atTK9NgADB57KQQf1YevWxdx//7W8//77nH/++Ur5t956S0fOZOueXP/GjWu45JKTueqqq7jnnnvIycnh559/5vLLL8fv9+P1ehk5ciQffvghbdq0ITVV/a1X+l1RQ6funbhn4n1Q1h40+d7ysjPI3y2HLT6k/yHcNuE22NkGgqmm4+n3w7ffLmfy5Bd44425bNiwAYCVK+Vc49nZfbjyyru5++6LGTduBC6Xi+rqanr06KGcb25uLqv2OJlLT8IhJ0Tr/+uvVdGxbB13z8uf1fHdvTt+gUy+h+VxKysrIzc3l0gkEn03CnFlGhNyuxLBYBCHw6F7fzcGH9inBGv79u2Ew2Hy8/WZ4vPz81myZInpMZs3bzYtv3nzZtPyEyZM4K677orb/vXXX5OSIGxwU6G6+jig6fogBTOoDpqvQljB9u3T+Pzz8rjtZWUeHI7jCYdFQqH5fP55fEQcSYL8/GPZssXczL1z53Q+/3xX3Pbdu904nccTCskTsBq8DOFLzuUtljk7MmrjDNZ9bk2fkpFxMFBsqaxVlJf/xuefb4/bXlXlxOsdjN8vP2IRHIxkMjfwH1YI7Th+y2+UfR6fE6WsLBMYBMCePTP4/POtcWXqi23b0oGjo/2bxeefmz8zVpCX15+tW5uTm7uNzz83XwzxeA4C2luuc/PmqXz+ebxj8pYtKQjCsUiSQE3NH3z+uTVpUWVlPnBY0nJGLPnjYdxth+NcN5DtnZbx+dbFyQ8ywa5dnui923CxhFq2LOfzz6cmLffNN99Eyx/Nhg3myT537fqVzz/fEbe9osKJxzOYmprafx42UkgRm5id2Z8Nn39uWiY1tQfQmvz8Sr799ltT61so1ApiwWAsoKLC/LmoqXGQmno8lZX1j/xoBW73Cj7/XH9PxMbbiM2bUwET5pEAHs8qPv/8z+QFE8Dl6giYRwasL4JB83d6JAJ5eceydat1yXk8qikvD8RtlSRwudIJBq1pJt3uCOXlexLtBVIQBImamnJCofiJXDjsAMyfE5crTHn5HgRBtWLs2bMHURTx+/2EQiF+/PFHDjnkEACWL1/Orl27aNWqFeXl5XTr1oO1a5dSXJx4YbOmxs+iRTM48cQLEAQ/5eU1BINBQqGQsijcqVMnZs36jiuuuNu0DkkKc/bZZ3PeeecxYMAADj/8cN58801OPPFkRDGDefOm061bf848c5RyzIaVj8TVk5mZQ2ZmDp1bt2LA91N4//vvad37DObNe1k53uGIUFBQzrJlywiHw7qFa5/PqzvX7Ox4Vw+n062Uyc+vZPfu7LhxFQRBcRPJz89n0KBBzJw5k8MOk9/pFRUVlJeXc9BBPVm1ahFt25aSl1eha8fv98dJ2uSxgszMdFJTO9C9ewkLFpzC66+/zimnnKIEqsjJydG5qYiiSCjkBySWLJlNJBLhzjvvVKxcsaAbsXMA+N///sfWrVuVOg855BCqq6spLy+ne6d+fPPp52SLfUlrURjXx7XBbMSQG1+Kj+LWrcB3EERcpuMJ8OSTYxg69DKKi9uxdeuGuP3nnDOazz9/lXPPvZCzzz6JK664gkAgoFy7rl27snbtn9H8ZSrmzPmRoqLW5OdnU15erpxLZWUl5eXltG5dTDgcYuHC3+nRQ/ap37VrB2vXLqVNm84EAuWUl0v4/X5WrlxJhw4dKC8vp7raBcjvDnlM4t8DDY1AIEB1dTU//fSTbqHym2++ibNQNgT2uUSwsXH77bfrLF7l5eUUFxdz/PHHk5FRf7LREPjXv0R27gyyevUqSkvb6MzR+xv695cYMmRAwv2lpRFWrYpw9tldcbvNfeG++w7eey9MjYFX9O0rcfLJ/RPW3bq1xJdfhjVmZBeieCGXnyTRp4/1VY++feGVVwLMmbO6Qca7Vy+J007rm1DSUVoKn3wSRl1ASyUk/Jsrjpc4/PDE/W7bNkRlJQwb1tuyHMwq2rQJsWsXDB9+8F75e3TvDp9+GubUU7MpKjIPMHPEEXDEEQF+/TX5eA8cKHHssUcm3F9aGmbjRjjrrB44nebJUY0YPBgOOijEwoV1FXv3R3RsZOgtEr2sz/tN0bp1hK++khpEAuHzwdlnp9CmTeKAPsFgkG+++YbjjjsOl8vFN9/AO++EMc4xDj5YYujQQ2u9dz/7THvvxuP1XT/Sc/NXdBt/Ot0PMv/R79dPfuaPPNJNx47m/T72WOjVK8SKFcmvU7duEsOHJ34uWreGjz8ON3iQixiKiuD880tJT5clP8bxNkNpaYipU5OfW0EBjBhRQkZGSb37N3AgHHFEmA3x86t6oV07iXPOSf5ODySYG6Wnh8nIkMjNlXA69Q+BxwM5OV4EwTy6ZIcOsHOnZLgHJWpqAng8bmKr36II2dkCHo/573l6OqSmSni9kJpqTqIyMsDjkYgFnvP5ZJlgUZGkqzu2KJuenk5GRgZerxeXy8Udd9zBf/7zH5xOJ6NHj+awww7jqKOOAuCuu8Zx6qmn0q5dMSeeeAaiKLJo0TyWLl3IrbfeS2VlBS++eDeCACeeeDhu906qqmQpWDgcRpIkMjMzGTt2bDQI2NWMGHEVLpebX375gZNPPpMWLXLxeBzk5+eTkZFB165defDBB7n55psZPHgwHTtCly7t+OKLV1my5EtatSrl/fdfY8mSmRQXl1JQIF+bV175L4cddiQpKan8MvNnvp4xk3tvvxtXfo5y/NKlX9KlS2see+x1/vjjD0pLS5W5lMvlwusVKS2VqI768WRmSogiShtpaRIul/zd64WcHB/Ll8ePqyAIuN1uxYL1+++/M3r0aMUalJaWRkZGBuPHj2HgwP5MmnQ9V1xxKampqSxatIhvv/2WJ5980vR6v/zyy3TpcjAuVzYLFszlgw8+4LLLLiMjI4O0aGCr1NRU3RxRFEVSU7107AgVFW0JBoO8+uqrnHzyyUyfPp3JkyfrzkG9t/T3pc/nIyMjg9HXXswrLz/JHbecx7/+dReFhS356681fPrp/7j22tvILSzG40jHSTU5UnvceU5AMh3Pv/5awdat65g2bTnZ2RI5OfK+vDy5vCRJ3HHHhRx88MHcf/+/EQR5/Nxut9K/k046iVdeeZWiIvWZ+/PPubz//lOcffb5QDlVVVEpITJ5TU1N5ZBDenHSSUN56KHLmTDhGdLS0pkw4XYKC1tw+eVDycqSacacOXPweDwcc8wxpKSk4HKBEA1XmJnpIzXV/D3QkPD7/fh8PgYOHIjX69W9v2Pn1aCQ9iFqamokh8Mhffjhh7rtF154oXTqqaeaHlNcXCw9/vjjum133nmn1L17d0tt7t69WwKk3bt316fLDY5AICBNmTJFCgQC+7or/wjY4920sMe7aWGPd9PCHu/aUV1dLS1atEiqrq5ukPrC4bC0c+dOKRwON0h9iXDRRRdJQ4cOjdv+ww8/SIC0c+dOSZIk6eWXX5YyMzOl999/X2rTpo3k8XikY489Vlq7dq3uuC+//FLq37+/5PP5pIyMDKlv377Sc889J0mSJI0bN05C1p6Z/l100UVKPVOnTpX69+8veTweKSsrSxo8eLDSlyOPPFK6/vrrlbKRSEQ65phjpHPPPVeSJEny+/3SyJEjpczMTCkrK0u6+uqrpdtuu03q0aOHcsyJJ54o5ebmSh6PR2rXrp107733SmVlZVI4HLZ0vNm4xcYohnHjxumOSTSusfMXBEEqKCiQrr76aqmmpkb6448/JEBavXq1cvyMGTOk4447TkpLS5NSU1Ol7t27S/fdd1/c9Yvh8ssvlwoKCiS32y21atVKuummm6SamhpJkiRp9erVEiD98ccfumNKSkp0c8/HHntMKiwslHw+nzR48GDp1Vdf1Z2DGQDdfHfTpk3ShRdeqIx5mzZtpIsuukipw+p4AtIjjzyScDzvv/9+qXPnztKePXuUMsb7ZceOHZLX65WWLFmi629tf7FrUFZWJl1wwQVSZmamMh7Lli3T9fuKK66QrrzyyoRj0xQwvo+07+/G4Ab7lGBJkiT17dtXuvbaa5Xv4XBYatGihTRhwgTT8meddZZ08skn67b169fP8oWzCdY/G/Z4Ny3s8W5a2OPdtLDHu3b8XQmWVRgnu/XBuHHjpHHjxpnu+/DDD3UEq6mxv433gY59Pd4333yzdMUVVyjfa7PB9OjRQ0dya8O2bduknJwcadWqVXvbxb1CUxOsfa5Ju+mmm3j++ed55ZVXWLx4MVdffTWVlZVKVMELL7xQFwTj+uuv58svv+TRRx9lyZIljB8/nlmzZnHttdfuq1OwYcOGDRs2bNioM9LS0hRZmhFer5fMTPP0BjZsNDT+/e9/U1JSogSyMMY70CI3NxeHRT+DNWvW8N///tc0muKBjH3ug3X22Wezbds27rzzTjZv3kzPnj358ssvlQu7bt06ne9G//79efPNN/m///s/7rjjDtq3b8+UKVPsHFg2bNiwYcOGjb8Vbr755oT7hgwZwpAhQ5qwNzb+ycjKyuKOO+5QvicKHgfwbR3CtPbu3ZvevXvvVd/+jtjnBAtQsm6bYerUqXHbzjzzTM4888z4wjZs2LBhw4YNG02AkSNHMnLkyH3dDRs2bOyH2OcSQRs2bNiwYcOGDRs2bNg4UGATLBs2bNiwYcNGo0FqiDwFNmzYsLEXaOr3kE2wbNiwYcOGDRsNjlhusMZI4mnDhg0bdUEgmrDPanCOvcV+4YNlw4YNGzZs2Diw4HA4yMrKYuvWrYCcqFdIlN3aAiKRCIFAAL/fv9eJ4m0khz3eTQt7vBsPkUiEbdu2kZKSgtPZNNTHJlg2bNiwYcOGjUZBQUEBgEKy9gaSJFFdXY3P59srombDGuzxblrY4924EEWRVq1aNdnY2gTLhg0bNmzYsNEoEASBwsJC8vLyCAaDe1VXMBjkp59+YuDAgYr80EbjwR7vpoU93o0Lt9vdpJZBm2DZsGHDhg0bNhoVDodjr30fHA4HoVAIr9drT0CbAPZ4Ny3s8T6wYIs8bdiwYcOGDRs2bNiwYaOBYBMsGzZs2LBhw4YNGzZs2Ggg2ATLhg0bNmzYsGHDhg0bNhoI/zgfrFiisfLy8n3cExnBYJCqqirKy8ttzW0TwB7vpoU93k0Le7ybFvZ4Ny3s8W5a2OPdtLDHu2mhHe/q6mqgYZMR/+MI1p49ewAoLi7exz2xYcOGDRs2bNiwYcPG/oA9e/aQmZnZIHUJUkPStb8BIpEIGzduJD09fb/IM1BeXk5xcTHr168nIyNjX3fngIc93k0Le7ybFvZ4Ny3s8W5a2OPdtLDHu2lhj3fTQjve6enp7Nmzh6KiogYL5f6Ps2CJokjLli33dTfikJGRYT9QTQh7vJsW9ng3LezxblrY4920sMe7aWGPd9PCHu+mRWy8G8pyFYMd5MKGDRs2bNiwYcOGDRs2Ggg2wbJhw4YNGzZs2LBhw4aNBoJNsPYxPB4P48aNw+Px7Ouu/CNgj3fTwh7vpoU93k0Le7ybFvZ4Ny3s8W5a2OPdtGjs8f7HBbmwYcOGDRs2bNiwYcOGjcaCbcGyYcOGDRs2bNiwYcOGjQaCTbBs2LBhw4YNGzZs2LBho4FgEywbNmzYsGHDhg0bNmzYaCDYBMuGDRs2bNiwYcOGDRs2Ggg2wdqHeOqpp2jdujVer5dDDz2UGTNm7OsuHRCYMGECffr0IT09nby8PE477TSWLl2qK+P3+7nmmmto1qwZaWlpDB8+nC1btuyjHh9YeOCBBxAEgRtuuEHZZo93w+Kvv/5ixIgRNGvWDJ/PR7du3Zg1a5ayX5Ik7rzzTgoLC/H5fBx77LEsX758H/b474twOMzYsWMpLS3F5/PRtm1b7rnnHrTxoezxrj9++uknTjnlFIqKihAEgSlTpuj2WxnbsrIyzj//fDIyMsjKyuLSSy+loqKiCc/i74PaxjsYDDJmzBi6detGamoqRUVFXHjhhWzcuFFXhz3edUOye1yLq666CkEQ+M9//qPbbo+5dVgZ78WLF3PqqaeSmZlJamoqffr0Yd26dcr+hpiz2ARrH+Gdd97hpptuYty4ccyZM4cePXowePBgtm7duq+79rfHjz/+yDXXXMNvv/3GN998QzAY5Pjjj6eyslIpc+ONN/LJJ5/w3nvv8eOPP7Jx40aGDRu2D3t9YGDmzJk8++yzdO/eXbfdHu+Gw86dOzn88MNxuVx88cUXLFq0iEcffZTs7GylzEMPPcQTTzzBM888w++//05qaiqDBw/G7/fvw57/PfHggw/y9NNPM2nSJBYvXsyDDz7IQw89xJNPPqmUsce7/qisrKRHjx489dRTpvutjO3555/Pn3/+yTfffMOnn37KTz/9xBVXXNFUp/C3Qm3jXVVVxZw5cxg7dixz5szhgw8+YOnSpZx66qm6cvZ41w3J7vEYPvzwQ3777TeKiori9tljbh3JxnvlypUMGDCATp06MXXqVObPn8/YsWPxer1KmQaZs0g29gn69u0rXXPNNcr3cDgsFRUVSRMmTNiHvTowsXXrVgmQfvzxR0mSJGnXrl2Sy+WS3nvvPaXM4sWLJUD69ddf91U3//bYs2eP1L59e+mbb76RjjzySOn666+XJMke74bGmDFjpAEDBiTcH4lEpIKCAunhhx9Wtu3atUvyeDzSW2+91RRdPKBw0kknSZdccolu27Bhw6Tzzz9fkiR7vBsSgPThhx8q362M7aJFiyRAmjlzplLmiy++kARBkP76668m6/vfEcbxNsOMGTMkQFq7dq0kSfZ47y0SjfmGDRukFi1aSAsXLpRKSkqkxx9/XNlnj3n9YTbeZ599tjRixIiExzTUnMW2YO0DBAIBZs+ezbHHHqtsE0WRY489ll9//XUf9uzAxO7duwHIyckBYPbs2QSDQd34d+rUiVatWtnjvxe45pprOOmkk3TjCvZ4NzQ+/vhjevfuzZlnnkleXh69evXi+eefV/avXr2azZs368Y7MzOTQw891B7veqB///589913LFu2DIB58+bx888/c8IJJwD2eDcmrIztr7/+SlZWFr1791bKHHvssYiiyO+//97kfT7QsHv3bgRBICsrC7DHuzEQiUS44IILuOWWW+jSpUvcfnvMGw6RSITPPvuMDh06MHjwYPLy8jj00EN1MsKGmrPYBGsfYPv27YTDYfLz83Xb8/Pz2bx58z7q1YGJSCTCDTfcwOGHH07Xrl0B2Lx5M263W/nBiMEe//rj7bffZs6cOUyYMCFunz3eDYtVq1bx9NNP0759e7766iuuvvpqRo8ezSuvvAKgjKn9fmkY3HbbbZxzzjl06tQJl8tFr169uOGGGzj//PMBe7wbE1bGdvPmzeTl5en2O51OcnJy7PHfS/j9fsaMGcO5555LRkYGYI93Y+DBBx/E6XQyevRo0/32mDcctm7dSkVFBQ888ABDhgzh66+/5vTTT2fYsGH8+OOPQMPNWZwN2XEbNvY3XHPNNSxcuJCff/55X3flgMX69eu5/vrr+eabb3QaZhuNg0gkQu/evbn//vsB6NWrFwsXLuSZZ57hoosu2se9O/Dw7rvv8sYbb/Dmm2/SpUsX5s6dyw033EBRUZE93jYOWASDQc466ywkSeLpp5/e1905YDF79mwmTpzInDlzEARhX3fngEckEgFg6NCh3HjjjQD07NmTX375hWeeeYYjjzyywdqyLVj7ALm5uTgcjriIJFu2bKGgoGAf9erAw7XXXsunn37KDz/8QMuWLZXtBQUFBAIBdu3apStvj3/9MHv2bLZu3crBBx+M0+nE6XTy448/8sQTT+B0OsnPz7fHuwFRWFjIQQcdpNvWuXNnJQJSbEzt90vD4JZbblGsWN26deOCCy7gxhtvVKy19ng3HqyMbUFBQVxwqFAoRFlZmT3+9USMXK1du5ZvvvlGsV6BPd4NjWnTprF161ZatWql/H6uXbuWf/3rX7Ru3Rqwx7whkZubi9PpTPob2hBzFptg7QO43W4OOeQQvvvuO2VbJBLhu+++o1+/fvuwZwcGJEni2muv5cMPP+T777+ntLRUt/+QQw7B5XLpxn/p0qWsW7fOHv964JhjjmHBggXMnTtX+evduzfnn3++8tke74bD4YcfHpd2YNmyZZSUlABQWlpKQUGBbrzLy8v5/fff7fGuB6qqqhBF/U+lw+FQVkLt8W48WBnbfv36sWvXLmbPnq2U+f7774lEIhx66KFN3ue/O2Lkavny5Xz77bc0a9ZMt98e74bFBRdcwPz583W/n0VFRdxyyy189dVXgD3mDQm3202fPn1q/Q1tsDliHQNy2GggvP3225LH45EmT54sLVq0SLriiiukrKwsafPmzfu6a397XH311VJmZqY0depUadOmTcpfVVWVUuaqq66SWrVqJX3//ffSrFmzpH79+kn9+vXbh70+sKCNIihJ9ng3JGbMmCE5nU7pvvvuk5YvXy698cYbUkpKivT6668rZR544AEpKytL+uijj6T58+dLQ4cOlUpLS6Xq6up92PO/Jy666CKpRYsW0qeffiqtXr1a+uCDD6Tc3Fzp1ltvVcrY411/7NmzR/rjjz+kP/74QwKkxx57TPrjjz+UqHVWxnbIkCFSr169pN9//136+eefpfbt20vnnnvuvjql/Rq1jXcgEJBOPfVUqWXLltLcuXN1v581NTVKHfZ41w3J7nEjjFEEJcke87og2Xh/8MEHksvlkp577jlp+fLl0pNPPik5HA5p2rRpSh0NMWexCdY+xJNPPim1atVKcrvdUt++faXffvttX3fpgABg+vfyyy8rZaqrq6VRo0ZJ2dnZUkpKinT66adLmzZt2nedPsBgJFj2eDcsPvnkE6lr166Sx+OROnXqJD333HO6/ZFIRBo7dqyUn58veTwe6ZhjjpGWLl26j3r790Z5ebl0/fXXS61atZK8Xq/Upk0b6d///rduwmmPd/3xww8/mL6vL7roIkmSrI3tjh07pHPPPVdKS0uTMjIypIsvvljas2fPPjib/R+1jffq1asT/n7+8MMPSh32eNcNye5xI8wIlj3m1mFlvF988UWpXbt2ktfrlXr06CFNmTJFV0dDzFkESdKko7dhw4YNGzZs2LBhw4YNG/WG7YNlw4YNGzZs2LBhw4YNGw0Em2DZsGHDhg0bNmzYsGHDRgPBJlg2bNiwYcOGDRs2bNiw0UCwCZYNGzZs2LBhw4YNGzZsNBBsgmXDhg0bNmzYsGHDhg0bDQSbYNmwYcOGDRs2bNiwYcNGA8EmWDZs2LBhw4YNGzZs2LDRQLAJlg0bNmzYaFQEg8F93QUbNmzYsGGjyWATLBs2bNiw0aB46aWXOProo2nVqhUpKSlccMEF+7pLNmzYsGHDRpPBua87YMOGDRs2GgcjR47klVdeSbh/586dZGVlNWibV155JV9++SX33XcfvXv3xul0kpeX16Bt2LBhw4YNG/szbIJlw4YNGwcwhgwZwssvv6zb9ssvvzB8+PAGb2vatGl8+OGHzJs3j8LCwgav34YNGzZs2Pg7wJYI2rBhw8YBDI/HQ0FBge4vJycnrtz7779Ply5d8Hg8tG7dmkcffTSuzOTJkxEEQffXs2dPZf+nn35Kt27duOyyy8jKyiInJ4eRI0eye/dupUwkEuHuu++mZcuWeDweevbsyZdffqnsX7NmDYIg8Pbbb9O/f3+8Xi9du3blxx9/rPU8W7duHdc3QRA47bTTlDJffvklAwYMICsri2bNmnHyySezcuXKOrUdDoe59NJLKS0txefz0bFjRyZOnKjry8iRIxEEgccee0y3/fTTT0cQBCZPnqxsW79+PWeddZYyXkOHDmXNmjUAjB8/3vScBEFg0KBBSlunnXYad911F82bNycjI4OrrrqKQCCgtFFTU8Po0aPJy8vD6/UyYMAAZs6cqeyfOnWqUq8oiuTl5XHppZfi9/trHXMbNmzYsGEOm2DZsGHDxj8cs2fP5qyzzuKcc85hwYIFjB8/nrFjx+qIQAwZGRls2rSJTZs28a9//Uu3b9u2bXz//fd4vV6mTZvGlClT+O2337jkkkuUMhMnTuTRRx/lkUceYf78+QwePJhTTz2V5cuX6+q65ZZb+Ne//sUff/xBv379OOWUU9ixY0et53H33Xcrfdu0aRNnnXWWbn9lZSU33XQTs2bN4rvvvkMURU4//XQikYjltiORCC1btuS9995j0aJF3Hnnndxxxx28++67ujpatGjB888/r3zfuHEj06dPJyUlRdkWDAYZPHgw6enpTJs2jenTp5OWlsaQIUMIBALcfPPNurHu16+f8v2DDz5Q6vnuu+9YvHgxU6dO5a233uKDDz7grrvuUvbfeuutvP/++7zyyivMmTOHdu3aMXjwYMrKynR9Xrp0KX/99Revv/4677zzTpzl04YNGzZsWIRkw4YNGzYOSFx00UXS0KFD47b/8MMPEiDt3LlTkiRJOu+886TjjjtOV+aWW26RDjroIN22Z555RsrNzVW+jxs3TurRo4euvezsbKmiokLZNm3aNAmQli9fLkmSJBUVFUn33Xefrt4+ffpIo0aNkiRJklavXi0B0gMPPKDsDwaDUsuWLaUHH3ww4bmWlJRIjz/+uKXzj2Hbtm0SIC1YsGCv2r7mmmuk4cOHx7XbvXt36aeffpIkSZLuuece6brrrpMyMzOll19+WZIkSXrttdekjh07SpFIRDm2pqZG8vl80ldffaVrY9y4cdKRRx4Z1/ZFF10k5eTkSJWVlcq2p59+WkpLS5PC4bBUUVEhuVwu6Y033lD2BwIBqaioSHrooYckSYq/H5YvXy5lZ2frjrFhw4YNG9ZhW7Bs2LBh4x+OxYsXc/jhh+u2HX744SxfvpxwOKxs27FjBxkZGbXW1aNHD1JTU5Xvhx12GA6Hg0WLFlFeXs7GjRtN21q8eLFuW79+/ZTPTqeT3r17x5WpK5YvX865555LmzZtyMjIoHXr1gCsW7euTm0/9dRTHHLIITRv3py0tDSee+65uDoALr/8cp577jkikQgvvvgil19+uW7/vHnzWLFiBenp6aSlpZGWlkZOTg5+v18nXUyGHj166Cxj/fr1o6KigvXr17Ny5UqCwaBuzF0uF3379o0bz5YtW5Kamkr79u058cQTOffccy33wYYNGzZsqLCDXNiwYcOGDUtYtWoVpaWlCfdnZ2ezdu1a032CIDRWtyzjlFNOoaSkhOeff56ioiIikQhdu3bV+Sslw9tvv83NN9/Mo48+Sr9+/UhPT+fhhx/m999/jys7YsQIxo0b9//t3U1IVF0cx/GvikK+i6OU0UK6k47VQi0CoTZDQpuEaTGoGILYi8YUajhIb+jGWkT4smmVi0DbKAq+LIzBYUDJcCSQ1MQWLQY3Flpi+dKiB33uM5NZz/D4gL8PDAznnHv//3N3f86559LZ2cnBgwc5efKkqX95eZn8/HyeP38edG1aWtrvT/Bf8nq9JCQkMD8/z5UrV3j8+HHQNlAREfk1rWCJiOxzNpsNn89navP5fBw7doyoqKittpGREc6ePfvT+2RnZzM5Ocnnz5+32kZHR1lfX8dms5GYmEhGRkbIWDk5Oaa20dHRrf9ra2u8fv0am832R/ODH6tv09PT3LlzB7vdjs1mY3FxMeTYnWL7fD4KCgqoqqoiNzcXwzB+utqUnJzMxYsXuXbtWtDqFUBeXh6zs7Okp6djGIbpl5SUtOu5TU5OsrKyYso/Pj6eI0eOcPToUWJiYkzP/Nu3b7x69SromWdmZmIYBufPn+fSpUt0d3fvOgcREdmmAktEZJ+rra1leHiYpqYmZmZm6OjooK2tjbq6OgBWVlZobW1lbm6OCxcuEAgECAQCLC8vs7a2tnVYQklJCdHR0Vy+fJk3b97g9XqprKzE4XBgGAbw4wCJhw8f0tXVxfT0NG63G7/fz82bN005tbe3093dzdu3b6murmZxcdF0WMbvSklJITU1ladPn/Lu3TtevnxJTU1NyLE7xbZarYyPjzM0NMTMzAx37941ncj3T263m4aGBpxOZ1BfaWkpFouFoqIivF4v8/PzeDweXC4XHz582PXcvn79SkVFBVNTU/T393P//n1u3LhBZGQkcXFxXL9+ndu3bzM4OMjU1BSVlZV8+fKFiooK030WFhYIBAKMjY3R19dHdnb2rnMQEZFt2iIoIrLP5eXl8eLFC+7du0dTUxOHDh2isbGR8vJyALq6unC5XACcOXMm6HqHw4HH4yEhIYGBgQFqamo4ffo0sbGxFBUV8eTJk62xLpeLT58+UVtby8LCAjk5OfT29mK1Wk33bG5uprm5Gb/fj2EY9Pb2YrFY/niOkZGRdHZ24nK5OHHiBFlZWbS0tGwdd77b2FevXmViYgKn00lERATFxcVUVVUxMDAQMm5WVhZutztkX2xsLCMjI9TX1+NwOFhaWuLw4cPY7fZfvuv2d3a7HavVyrlz51hdXaW4uJgHDx6Y5rOxsUFZWRlLS0ucOnWKoaEhUlJSgnIFsFgsFBYW8ujRo13nICIi2yI2Nzc39zoJERH5/3r27Bkejyfkse1+v59bt27h8XjCEuv9+/dkZmYyMTFh+sbWf2EvY/+p8vJyPn78SE9Pz16nIiIif9EWQRER2dGBAwd++k5QdHR0yA8Xi4iI7FfaIigiIjtyOp0h3yECOH78uOmjtyIiIvudtgiKiIiIiIiEibYIioiIiIiIhIkKLBERERERkTBRgSUiIiIiIhImKrBERERERETCRAWWiIiIiIhImKjAEhERERERCRMVWCIiIiIiImGiAktERERERCRMvgNQqbk8WFRiBwAAAABJRU5ErkJggg==", "text/plain": [ - " Pregnancies Glucose BloodPressure SkinThickness Insulin BMI \\\n", - "668 6 98 58 33 190 34.0 \n", - "324 2 112 75 32 0 35.7 \n", - "624 2 108 64 0 0 30.8 \n", - "690 8 107 80 0 0 24.6 \n", - "473 7 136 90 0 0 29.9 \n", - "\n", - " DiabetesPedigreeFunction Age Outcome DiabetPred \n", - "668 0.430 43 0 0.516537 \n", - "324 0.148 21 0 0.205507 \n", - "624 0.158 21 0 0.047710 \n", - "690 0.856 34 0 0.128867 \n", - "473 0.210 50 0 0.438512 " + "
" ] }, - "execution_count": 89, "metadata": {}, - "output_type": "execute_result" + "output_type": "display_data" } ], "source": [ - "pd.concat(\n", - " [\n", - " X_test,\n", - " y_test,\n", - " pd.Series(\n", - " models[best_model][\"preds\"],\n", - " index=y_test.index,\n", - " name=\"DiabetPred\",\n", - " ),\n", - " ],\n", - " axis=1,\n", - ").head(5)" + "plt.figure(figsize=(10, 5))\n", + "plt.plot(y_test.values, label='Истинные значения', color='blue', linewidth=2)\n", + "plt.plot(y_oldpred, label='Предсказанные значения(после)', color='red', linestyle='--', linewidth=2)\n", + "plt.plot(y_pred, label='Предсказанные значения(до)', color='green', linestyle='-', linewidth=2)\n", + "\n", + "plt.title('Сравнение предсказанных и истинных значений')\n", + "plt.xlabel('Подбор параметров')\n", + "plt.ylabel('Значения')\n", + "plt.grid()\n", + "plt.legend( loc ='lower right')\n", + "plt.show()" ] } ], -- 2.25.1