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"/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Abyssinian_95.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_126.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/leonberger_34.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/basset_hound_125.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_pit_bull_terrier_49.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/miniature_pinscher_7.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Ragdoll_48.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Siamese_28.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Maine_Coon_263.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Ragdoll_35.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Bombay_189.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Siamese_33.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/boxer_157.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/British_Shorthair_79.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/miniature_pinscher_177.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Bengal_133.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/keeshond_20.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pug_44.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pomeranian_108.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/havanese_60.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/chihuahua_39.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Abyssinian_125.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/samoyed_112.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Persian_87.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Sphynx_89.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Russian_Blue_59.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/english_cocker_spaniel_38.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/yorkshire_terrier_9.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/beagle_61.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Persian_271.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Sphynx_166.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/beagle_167.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_61.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Egyptian_Mau_189.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/boxer_73.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Sphynx_126.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Ragdoll_53.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/japanese_chin_186.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/great_pyrenees_110.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/japanese_chin_98.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/english_cocker_spaniel_66.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Bombay_74.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Birman_178.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Russian_Blue_215.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/miniature_pinscher_141.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/newfoundland_184.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/samoyed_61.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pomeranian_193.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/British_Shorthair_162.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Birman_79.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_pit_bull_terrier_69.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/basset_hound_186.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/boxer_13.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/wheaten_terrier_184.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_bulldog_187.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Russian_Blue_17.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/english_setter_189.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Birman_139.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/japanese_chin_200.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_bulldog_167.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/samoyed_141.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/havanese_35.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/german_shorthaired_197.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/leonberger_11.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Abyssinian_155.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/British_Shorthair_121.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/wheaten_terrier_90.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/keeshond_15.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/yorkshire_terrier_127.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_197.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_bulldog_126.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/scottish_terrier_182.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/boxer_150.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Egyptian_Mau_221.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Russian_Blue_237.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/shiba_inu_97.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/shiba_inu_146.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_24.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Abyssinian_79.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/english_setter_40.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/japanese_chin_166.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Bombay_63.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/basset_hound_90.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Bombay_132.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_103.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/american_pit_bull_terrier_174.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pomeranian_127.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/beagle_42.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Abyssinian_182.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pomeranian_59.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/basset_hound_99.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/newfoundland_6.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/wheaten_terrier_69.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Siamese_20.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/pomeranian_153.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/basset_hound_30.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_70.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/great_pyrenees_65.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/Siamese_162.jpg\n", "/kaggle/input/the-oxfordiiit-pet-dataset/images/images/saint_bernard_131.jpg\n" ] } ], "source": [ "import numpy as np \n", "import pandas as pd \n", "import os\n", "from collections import Counter\n", "import warnings\n", "warnings.filterwarnings(\"ignore\")\n", "\n", "for dirname, _, filenames in os.walk('/kaggle/input'):\n", " for filename in filenames:\n", " print(os.path.join(dirname, filename))\n" ] }, { "cell_type": "code", "execution_count": 2, "id": "6e68981a", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:26.417459Z", "iopub.status.busy": "2024-04-17T00:02:26.416830Z", "iopub.status.idle": "2024-04-17T00:02:26.430723Z", "shell.execute_reply": "2024-04-17T00:02:26.429618Z" }, "papermill": { "duration": 0.056294, "end_time": "2024-04-17T00:02:26.433339", "exception": false, "start_time": "2024-04-17T00:02:26.377045", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "['images']" ] }, "execution_count": 2, "metadata": {}, "output_type": "execute_result" } ], "source": [ "import os\n", "os.chdir(\"/kaggle/input/the-oxfordiiit-pet-dataset\")\n", "os.listdir() " ] }, { "cell_type": "code", "execution_count": 3, "id": "fd47ea92", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:26.494322Z", "iopub.status.busy": "2024-04-17T00:02:26.493688Z", "iopub.status.idle": "2024-04-17T00:02:51.025821Z", "shell.execute_reply": "2024-04-17T00:02:51.024748Z" }, "papermill": { "duration": 24.561246, "end_time": "2024-04-17T00:02:51.028377", "exception": false, "start_time": "2024-04-17T00:02:26.467131", "status": "completed" }, "tags": [] }, "outputs": [], "source": [ "images = np.load('/kaggle/input/dataset-oxford-preprocessing/images_oxford.npy')\n", "labels = np.load('/kaggle/input/dataset-oxford-preprocessing/labels_oxford.npy',allow_pickle = True)" ] }, { "cell_type": "code", "execution_count": 4, "id": "8127d49f", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.080140Z", "iopub.status.busy": "2024-04-17T00:02:51.079359Z", "iopub.status.idle": "2024-04-17T00:02:51.085052Z", "shell.execute_reply": "2024-04-17T00:02:51.084276Z" }, "papermill": { "duration": 0.033341, "end_time": "2024-04-17T00:02:51.086942", "exception": false, "start_time": "2024-04-17T00:02:51.053601", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "14779" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "len(labels)" ] }, { "cell_type": "code", "execution_count": 5, "id": "a4e682f4", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.137045Z", "iopub.status.busy": "2024-04-17T00:02:51.136283Z", "iopub.status.idle": "2024-04-17T00:02:51.152810Z", "shell.execute_reply": "2024-04-17T00:02:51.152040Z" }, "papermill": { "duration": 0.043652, "end_time": "2024-04-17T00:02:51.154721", "exception": false, "start_time": "2024-04-17T00:02:51.111069", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "Counter({'american_pit_bull_terrier': 400,\n", " 'leonberger': 400,\n", " 'english_cocker_spaniel': 400,\n", " 'Siamese': 400,\n", " 'saint_bernard': 400,\n", " 'american_bulldog': 400,\n", " 'Sphynx': 400,\n", " 'Egyptian_Mau': 400,\n", " 'Birman': 400,\n", " 'english_setter': 400,\n", " 'newfoundland': 400,\n", " 'pug': 400,\n", " 'yorkshire_terrier': 400,\n", " 'Abyssinian': 400,\n", " 'havanese': 400,\n", " 'miniature_pinscher': 400,\n", " 'chihuahua': 400,\n", " 'basset_hound': 400,\n", " 'Bombay': 400,\n", " 'British_Shorthair': 400,\n", " 'Maine_Coon': 400,\n", " 'Bengal': 400,\n", " 'japanese_chin': 400,\n", " 'shiba_inu': 400,\n", " 'wheaten_terrier': 400,\n", " 'beagle': 400,\n", " 'Persian': 400,\n", " 'great_pyrenees': 400,\n", " 'pomeranian': 400,\n", " 'samoyed': 400,\n", " 'german_shorthaired': 400,\n", " 'Ragdoll': 400,\n", " 'keeshond': 400,\n", " 'Russian_Blue': 400,\n", " 'boxer': 399,\n", " 'scottish_terrier': 398,\n", " 'staffordshire_bull_terrier': 382})" ] }, "execution_count": 5, "metadata": {}, "output_type": "execute_result" } ], "source": [ "breeds = Counter(labels)\n", "breeds" ] }, { "cell_type": "code", "execution_count": 6, "id": "e3e7d90d", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.207090Z", "iopub.status.busy": "2024-04-17T00:02:51.206376Z", "iopub.status.idle": "2024-04-17T00:02:51.212300Z", "shell.execute_reply": "2024-04-17T00:02:51.211445Z" }, "papermill": { "duration": 0.034265, "end_time": "2024-04-17T00:02:51.214169", "exception": false, "start_time": "2024-04-17T00:02:51.179904", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "(14779, 224, 224, 3)" ] }, "execution_count": 6, "metadata": {}, "output_type": "execute_result" } ], "source": [ "images.shape" ] }, { "cell_type": "code", "execution_count": 7, "id": "56d0809c", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.267027Z", "iopub.status.busy": "2024-04-17T00:02:51.266186Z", "iopub.status.idle": "2024-04-17T00:02:51.272020Z", "shell.execute_reply": "2024-04-17T00:02:51.271174Z" }, "papermill": { "duration": 0.033837, "end_time": "2024-04-17T00:02:51.273870", "exception": false, "start_time": "2024-04-17T00:02:51.240033", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "(14779,)" ] }, "execution_count": 7, "metadata": {}, "output_type": "execute_result" } ], "source": [ "labels.shape" ] }, { "cell_type": "code", "execution_count": 8, "id": "7e020d79", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.325692Z", "iopub.status.busy": "2024-04-17T00:02:51.325122Z", "iopub.status.idle": "2024-04-17T00:02:51.329446Z", "shell.execute_reply": "2024-04-17T00:02:51.328618Z" }, "papermill": { "duration": 0.032315, "end_time": "2024-04-17T00:02:51.331345", "exception": false, "start_time": "2024-04-17T00:02:51.299030", "status": "completed" }, "tags": [] }, "outputs": [], "source": [ "breeds_use = ['Sphynx','Siamese','Maine_Coon','chihuahua','saint_bernard','scottish_terrier']" ] }, { "cell_type": "code", "execution_count": 9, "id": "13d03154", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.383354Z", "iopub.status.busy": "2024-04-17T00:02:51.382724Z", "iopub.status.idle": "2024-04-17T00:02:51.504832Z", "shell.execute_reply": "2024-04-17T00:02:51.503875Z" }, "papermill": { "duration": 0.151242, "end_time": "2024-04-17T00:02:51.507277", "exception": false, "start_time": "2024-04-17T00:02:51.356035", "status": "completed" }, "tags": [] }, "outputs": [], "source": [ "selected_breeds = [breed for breed in breeds_use] # Select top 10 breeds\n", "selected_indices = [i for i, label in enumerate(labels) if label in selected_breeds] # Get indices of selected breeds\n", "\n", "images = images[selected_indices]" ] }, { "cell_type": "code", "execution_count": 10, "id": "78b76647", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.560983Z", "iopub.status.busy": "2024-04-17T00:02:51.560694Z", "iopub.status.idle": "2024-04-17T00:02:51.565211Z", "shell.execute_reply": "2024-04-17T00:02:51.564407Z" }, "papermill": { "duration": 0.031654, "end_time": "2024-04-17T00:02:51.567096", "exception": false, "start_time": "2024-04-17T00:02:51.535442", "status": "completed" }, "tags": [] }, "outputs": [], "source": [ "labels = labels[selected_indices]\n", "\n", "num_classes = len(selected_breeds)" ] }, { "cell_type": "code", "execution_count": 11, "id": "baf0e805", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.619931Z", "iopub.status.busy": "2024-04-17T00:02:51.619591Z", "iopub.status.idle": "2024-04-17T00:02:51.625428Z", "shell.execute_reply": "2024-04-17T00:02:51.624549Z" }, "papermill": { "duration": 0.034679, "end_time": "2024-04-17T00:02:51.627307", "exception": false, "start_time": "2024-04-17T00:02:51.592628", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/plain": [ "((2398, 224, 224, 3), 6)" ] }, "execution_count": 11, "metadata": {}, "output_type": "execute_result" } ], "source": [ "images.shape, num_classes" ] }, { "cell_type": "markdown", "id": "81bf1940", "metadata": { "papermill": { "duration": 0.025675, "end_time": "2024-04-17T00:02:51.678996", "exception": false, "start_time": "2024-04-17T00:02:51.653321", "status": "completed" }, "tags": [] }, "source": [ "# KMeans Clustering - 6 Breeds" ] }, { "cell_type": "code", "execution_count": 12, "id": "5fcdd048", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:02:51.734395Z", "iopub.status.busy": "2024-04-17T00:02:51.734010Z", "iopub.status.idle": "2024-04-17T00:05:13.651242Z", "shell.execute_reply": "2024-04-17T00:05:13.650303Z" }, "papermill": { "duration": 141.948118, "end_time": "2024-04-17T00:05:13.653811", "exception": false, "start_time": "2024-04-17T00:02:51.705693", "status": "completed" }, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Silhouette Score: 0.09110458655198829\n" ] }, { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "from sklearn.cluster import KMeans\n", "from sklearn.decomposition import PCA\n", "from sklearn.metrics import silhouette_score\n", "import matplotlib.pyplot as plt\n", "\n", "# Flattening the images\n", "images_flattened = images.reshape(images.shape[0], -1)\n", "\n", "# Use PCA to reduce dimensionality\n", "pca = PCA(n_components=0.95, random_state=42)\n", "images_pca = pca.fit_transform(images_flattened)\n", "\n", "# Using KMeans to cluster the images\n", "kmeans = KMeans(n_clusters=num_classes, random_state=42)\n", "clusters = kmeans.fit_predict(images_pca)\n", "\n", "# Calculating silhouette score to evaluate the clustering\n", "silhouette_avg = silhouette_score(images_pca, clusters)\n", "print(f\"Silhouette Score: {silhouette_avg}\")\n", "\n", "# Visualizing the clusters\n", "plt.scatter(images_pca[:, 0], images_pca[:, 1], c=clusters, cmap='viridis')\n", "plt.show()" ] }, { "cell_type": "markdown", "id": "a805d69d", "metadata": { "papermill": { "duration": 0.0275, "end_time": "2024-04-17T00:05:13.708808", "exception": false, "start_time": "2024-04-17T00:05:13.681308", "status": "completed" }, "tags": [] }, "source": [ "# Plotting Clusters - 6" ] }, { "cell_type": "code", "execution_count": 13, "id": "1cd844c6", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:05:13.764496Z", "iopub.status.busy": "2024-04-17T00:05:13.763487Z", "iopub.status.idle": "2024-04-17T00:05:16.993396Z", "shell.execute_reply": "2024-04-17T00:05:16.992404Z" }, "papermill": { "duration": 3.259584, "end_time": "2024-04-17T00:05:16.995374", "exception": false, "start_time": "2024-04-17T00:05:13.735790", "status": "completed" }, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Cluster 0:\n" ] }, { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "Cluster 1:\n" ] }, { "data": { "image/png": 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", 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", 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" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "Cluster 3:\n" ] }, { "data": { "image/png": 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", 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" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "Cluster 4:\n" ] }, { "data": { "image/png": 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", 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" ] }, "metadata": {}, "output_type": "display_data" }, { "name": "stdout", "output_type": "stream", "text": [ "Cluster 5:\n" ] }, { "data": { "image/png": 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45aisRUiBExZrIVaSKNPEPkPOJa1Ok9WlRZ66eolmFiNdyd79G2xv3mY6GdHvL7J69gp/7md/mq98+afZOdjjd373t3nzje/i9JA4VURRTBxHRFHE3t5e2CBxeOHxyuOrENhEscILG0rQRYkXgihNHtVy/ECYDAfk41EwCjYh0hKUOi4zHjm6so7i4zgKgZSpwFesLC+x0usym0wYHRygtGal2+DymT7NGMZzwzgWKOfR0qOFRwtQuDpD51FhlerMPcTS4zwUIjzmfKhmROKI+iKQ9a3seGh3eYyQUh5nxaUL16MWEmvr6P77OKlHj3vvqarqY6X+h+GFRXhBp73A+oUrrF99CeMqbly7zmw6gPr5B/v7JJMZzVaL6WSKNR7nBRYJwuDtBOvtj2gVfhgIhBfHVYWjDdr5B5/1aqfJkm5wdzhhVFRUzuJdcAHxrqZMCR4Qo8JmJuooQfgHyaVjU11bVy8E3gVD42VtdGsamj2mVx1dbY//OjuC0pJIKlIlWey0ub83pPA5xXyB070FFlt92mqJ0XTGguiyurTF+zfntJcMF09f4d7Nm+xvJCydXibPZli1z9bIU40sxbSAM+ssL7/E7Y1Nuuk2wlqG+znFSomykpWzbQ6MpLE0p+kdl888y7XNQ/b2drlzs0dZSJLefZImCFdg3RPgtXiLdJ7ptCK3isprOmmMcLA4n/IrX3ief/L1a+wOtpHCIZynkslxVllYg/cKJw0WC0aivaCZplxe65JVI1qthExHNJOMhWbGto4wxQSMo5QRysyxSiOqEpzH2wiHwOQF3nmsA+8d1BVcpIDKYK1DMvlUlyuJEpKsw9qZM2zdvMaVlz+D8w7twWmBEKH0rAiUZCV1oBYLyXQ6xCECHU0pIMZQQb3Xg0OmMmSLrUBHEqlDxtnV2U9EeCwSAqckojIoIUiTBlVlqMqK2TysyWh/iyjNiJKU6cEW1eA++c4GdryHmY6p8gl79++wtLReV3Y/1aX8gxBHdQfqwM0iqEIQUQcEiAcVj4d3no89r34fDuqEif+eYwAZnHNxlAQLSWXiKCTrIOy31guMBWPrvVI97kV6CLUfcpS8o2ajHO3V/uj/OghxeGQolR+/hMMTe0fsJVb4cJ8dJbVqTwJPbRuCfTmyQ0cVoGBbHlSPpBTBZoiHKk7+KNn4+CGEQOmMUkru7O6wmFakqSKOIIqjwPARAlt5lruK6VTx5ltbDMYlDR0xnRjGgzFLi23GI7gz0tikySGrTO++SacRcWp5MdhVIQEZ/F3hcKbCyRAqKwHeh4qnNZayKBkdDjnYO2Q8zTHOo3REK0uYFPkjXYNHFmiISBKlMjh2wiIjT6YzbB4cFx0pqsogVDDQsu4BqApHqjWJbrC8sEinETM+uM/udMTN6x+ysXGH3f0DpJB0Oy2e2tnjwsEu6+ef4ur5C7R+7pc5u3qO27dv8eab3wEgn80Zj8YURUFZ5HjvcM5hrCOKFM4ZvKhAGbywpI2UWLU42Bo+quX45OsGnO8pqrvvUFWniRZPUUoPSQOtApcvVDTqyN85Iq1pZCnVbIyoZrxwfolX/o9/GWcq3nj7GlJrnrt8mk4mGY3GpGnCRxu7fPPb7zOpKxLhKxhVvEdJ6gw1RCJ8Vb7OXPiwDUQCIhn6NrwPFCpXp4HEExBs+CPucI1W1qTb6zIZTxmM6s9WEFIe/CFnK0IW5Kgs+/EXB7wkbXQ589wrnHrhRboXLjPe3iFLG8wng6OXRVBRFjlVOXhwXkLiCZTCQP14cgINEfyJh1lPHJe/JSSRord4GiEUy2tnubu3y82t+xSVqRNQEudtHVC4uupQb/QiGAEvwyb3MPngqEQuHwo6BKCloJfGHM7LkPGq84mSP+yDeXwQCHCOc6dXUVLSbnZwjRHWSU71foxOu89ob0Y7SXix+QLW9Tm3VqJ1xUfvvEfaGeA7O4zEMlkkEPOMOGswyzdJu5AfFNy6/S4HhcD5hH5hOTxo8/p3JIuLY/KqIG54BruQtp7DaWA2ZDYusM5y9uwaRVXQ6a3SbDbZur7D5ODxrtlR1m04m+IwDMZTskSTJhHtfhNvc37u81f5J783YzAaI0XoH0Ma8CngcQKkk1TOoeQMpxWXz62RlROSVNFqZyRKEmlPpCO8NOSmoHAa5yc4EWFsoLpIHMZLXDnBuKq+LoMrLoVECk+Ew8kYRxU8wE8RUgriOKa/cIrh7gGTgx26K+tIIdBSH0fv3jm0VCjpMSZQUOaDPYQtQ1+YJByDxFYVQoeMpo4UWkdYYwPNVIVPSSJQSmNFqAprdeQOh4qucR7nPPN5HqoiRajQtjs9Zvt3OLjzAT4fEynBYrdBNZ8wz0tmwx08JVI/nqTeEaSwRCpHCfdQYBGCA+dC/+HDGXv3EC3qmKcT4hDUw1l6wu8EDxIsIUknkOJBpdYDOgo9GtIFH8l5cWyenBMICd1OzP5o9qmty78VD9lWVwcI6uF9vqaEhW3aH1OfEEdUu7BWv5xKnm3E/NrMcN3YUNkRDh+cHLx3x+sm64AjhMVHQZk4Pp+jZJQU4vjzqx2ST7Pw+G+FVIJOP6YoLMVQsT+a0nER3XaKdCGhHPqcAOdYX844vLDE9od7KARCS/LKgTXMRcYwL5iNd5muvoJJD/GTG7RaTbrNFOlCghgZfA3natqj0Hhhcc5TFgWj4Yj9nUPGkxxjHVJrer027W4PYw1be7uPdA0eXUVDVagkwRYWhMNiKX1BaRxOOkrjQhNbKlFagoV8VqJ9RCNtc/nMZZ6+cpEbH7zDN7+6S6uVsbt/yN7+AONAa828mtJo7gMSoVLSRpfFhT6vvfYanU6X+Tzn3t07dXARssvzPFCnGu2IONGgBdY5jDehfOUcWimsKepN9tNHanK6zEgOPmK6d4d47TJq9TylAFKLkhmgaifQEinP+ZUuzVMt2t0Wz11dZ3GhR5wk/OLP/wTC5kRRhHAF3pbk431e2luiK+f8xu5t7g9ztPA1L9JjCBvGUelYyge0FzjaHD1aCLQQWF9nGQSUrqYVPSEeoK+9ZSs9zazB0vpZzpxKuXv3Jpu7d+rm94eO5zjuAEA+tDsFm1K7xsITa82lF1/i2S/9DOdfegWTJtwez0J5WAC+voCEDfSho7UTQF1+PzY0T0q6BY725fpcxXGg5epAc7HdphzNiJSgmTZ57vwFlFZ8uLFBVZmQKXEc8/zCteOPXxtxVP3yxz/jQrk7lOkcEokWgk4as9aOGUzz2t0JlAUpwvk8SVKC3kOJYFRV9PtNnj/3LHt5ymC8x7X3NlhbtzTiBpFKmE4mbG5MSFoRzz//ZV79zOf46PrfR98o2J17tG1jZEpnsU+UxnQ7dzi92uf8Kcvr39LsDwzDPY+KIiJVotsFNi3pZKskUqGFYza7S2FKnCgxYoOzF17AFZfYHxyidZfFxSX27h4+5kUTOGeZTQuG04qlWcHgYECvnRGpJouLGg4O+YXPPcc/+urrTOYVyoOrDEaVxF7gnaASksrPEVbx1Lk1+nJG4qDXaEDhqOYTXN4in40p5zm2MjhT4vAYWVP7vKFE480UX+Z4dxTsCoRUSCRKECiRziC8BaGBT68y5L1DSpBJxOq5S9y6/h7t7gIkCVgHUeh1sNaiEKF660HEMjScVgbZDHRHpQTKaawpkd6jkHjnEMIyz4vAUawMcRJ6/ZwPtsCJ8Kc8UEmQXmJtxXyeo2ONEiV3bt5kdeU8k4Mtdq+9znw2CdXcsiBtZiSNjHxaYecl1jh88vjuY4FAURIrg1YhiSYAUSfdXE36lyIEel6G/czXVYhQcBU4H8RULl+6Qn91jTe+/dVAXzsyIT7QV7wQKFn3Ehz1oSlBEgkUDkQIMo724ViHJKCxR+XdJwiCY39AHjWD1069IvRoOBGSR4GJIQNttq6BXIgjfvncIsqW/Pxsl78jUmYP2RxRZ96deyhYqwOXkAAQCAL1UdZBiZZH1KrAs3B1oPKEuCRIJekuZ0hfMj1wTMUSB0WO1I6W0Bjr8cIiVYS14cSvnG0ivaHZtIxL2JgY3r27j9YZzht8vIid7cLqa1R39tgfDGllEUoo8LamloW1s6YC7zCmYjYZcbBzyGA0rysYmk63Q7fXI2tkaKkYT6aPPG386Ho0YoHTITugUNjCUdkKgydpaIQBKTRponEi5CcTLWnrDq++8Bqff/HzTA8GbKolslNn2bz1bRpZE5kUZCrBGMNknnN/b0xRerJmn0a7T3/lNFprTp85y4vzHCkUh/t7lEXOZDbFOouKJK1ehmpYpnmBI/Bvq8LSyFKSJMFgcM780W/0R4BWJ6LdisgyTRfBaO8DBvsbtM49g149S2EtNBw6y0hFyUrqWH9+lcVekzhJaHV6RHHdXyI1mOhBelopGs02Z2PNr3zlM/TFGPGPv8nOMEcA5ri6IajqS0vzgOaialfPeEFT1f0ZteGpK8BE4iHH8jHCOXfcaxAJTaO7wOLzz9NbXqN17wL87m+zsXWnDgC+x9D9EXeW97C0cpoLL7zEmReeY+3iBebFnG0ZeI4PXPWPr8THy+1/8LHHDe89VWlAq2NlmaMTDM3/knbWJnLQ7PZI0iZaCJ67cImqqri9vY2zFqSs6ZMh43m8z7uaeldnvo4zdkdJKTxKKtZXVji7tkomYT7YZ3PvbnCyPNhayer71KEeG6y1FLOcbr/BufPLLHT7ZDNBr9un01jj/r1tDuYCpQRRLOmcU2Qdz+KpDr3uGguLf5KPvvodDvINRrOcZpLxk6urLKwvkmrNQucim1OBXtpFVAc0FhfI8Khsg0Y3wVrJvd2CV195laFRfPROiRgXvHrmElvzKaObTYajIa30HH6WM/4+Cj+fJrwAIzzeFuwNh6z3m9hxzng0IfET2u0GUdIkGW7x5dee4V9/9w6HgykeiTclpfd4K7Eq9NpdOHeec4tNiv37qDilmpS4hsVIzWhvANJTlBVl5amsRODwpsIjKX2B9yVYTeiltDWvXCHxCO+QXuKcRBF658ynfP2FJlqFUp603WJpeY3NW9c4d/U5tHqg+iO1CsozUhz3WljrqJwnkUHsQXoN2iIrRVkWJJlksLvDnZtvM92fkLZaiDjizKVnWVo7jdJxUNWred0IgS8cxlqcMygl0Eox2NvBjkdUvSGje+8zPtimsoKqqPBOMJ/nJFGE8B5TFXjrv3f3/VRXFOGDQIqDKHpA1TwqSXjvsfUGJVVw+oOiXrAaFo93ocpx4dwl/qNf/CK+2WNn8zbb9+9y1EBu6tdR6ijzH64dSwgytHAIUWegfR2EECrAWoEzjunsCaA7HqFu1pZHFJyjJasfc3VgIB90W4TEZf2TlJLnWg36zQ7D+3dZKAperSq+lnXCteXAC4uvm8xDYBGawxvOEVvHOI4IhKxQyRA+9BsJIWs2QggFw79Phq2QUtLtNWipCQd3FcotUlo4nB7iZ3Maaag4SucRUmGCOWV9tcPW7ogkM2g3w8wV96YDnJa0X/opSE4x3Hgfs/JZZvd/h4PhjOV+J9Db6mZw78Eaw3g0YX/vgMloSmksWmk63RbdhR7NZkakdfiUvMe5J7hHQziBkZYo9pQWKuOJhETUUqhCCKJIoYXGCUlelWif8OLTL/PU+csMDgfI3iXOnV5n62DOqjbsXX8jcFCFROmYhcUllHAMxjPe/eAag+GQp59/hdXTF1FSsra+TlVVvPVmwWA4oKoMURShGiAzyMs5QmmqvMIZkDKiMo7pfBZudPF4OtTSVNJqK4QLTsnyQkpZVJTbb1JO7xKvPY3TZ5DacaonObfaZbHfpNFsoaIgxQiEq8qbOr3sQ/ZNSIQWKG/oL6T83Fd+nKYb8ea33uKjQ8HOxFNUoLxnXkfTqnYIZd2we1ToievS71Hm+3h/5kif6PHhgapFQKQ0Udaie+YCa5cus3rpCkmjwfQf/z2Ge3sPKFbHDWXf/7W99yRpxtVXP8+5V15j9eJFojjF+5LIFdiqhO8xnR+TdHyCsvDfi8pY7m4dkCQRaRqjlQyZTynIkoR2p0uz3SapHDrNkFEcenyc5dWrV/Hes7Gzi/EO78L1cqTmc9QsDjywOgR1M3xopm42mrz47LMs9hfZv3+f8d4BMgpKa6IKClji2Mj/IQHiY4SUktOnlnju6jla7TZRnKGjNfr9NVrtNqdOn2U2KvFeMplvUcgGK0trdLM1BIL11Qs01TK35veJ4hikpSo0QiUo2eFwf4HhYIZTKc1Oys7hJunqGrKKme0ZDqeOi6cXkRJeXHqG86+eY3bF8tGdD3n/zpTFS0/z8pri5rtvcH3rDvm8eNxLFjJrHoRTHI4LpvMp0kcc7I+IpWexMrR7PUrncZMJP/7iRd768BZ37x8GioT3VN6hnObC6aucXozpNBzTWejzcM6hky461szykii3jCpHZTyV9SgczoIVJdYG6RXvXO2USITQNVs8SBtU3hPhcU5R8ek7yF5IrA/XWpqmrJ46y4dvvU4xGRAtLNUOrMThQxOsktjKoIQkSlNAheZxCU4FJ0IpxXi8z/a96+zd/JDR/j0cgvmuo8IzG+yRfeHnaPeWaplMhZKSPM8p8jnVfMr+zgbNdhMBXH/7dXw1QxYjpsNtQBArgYyDMqSVHussTjkUMpwP8L175qeJLJHEka8r+6E3wtm6GduHqn1lBToOilDBsfahIldThz2SLzx3kVM9STXb5XOvfIZ/urURrh1XMwSEIIlB1cUJJ0LFQmsXaEG1sy5lLYxxlIzxgVplnhDWVMCD/j2l5HFlxzsP0h1Xs7EuNHQfUc5qW6CBC2mEExleNvDVPmeHY/pJgwN0rUAvHjABpCC1nsvzEa8qz3Ir5e8Zxf1jglRtb7zHOhekk72rKyBPTjO4EJJWq8F8WhI3GrR0QpELlFpmND7E5wVJElTzpBd4IamMIUpS0qbjW9d3qeaG508toyLP+7tjeqtX6V/8LNP9DUrfp2pd5GB4k1YzI9YS5xwOgbMOU1WMBkMODsZEStHrdekudGm2GkQ6qNbhHcZ65rPQGP6oV+6RBRoojzcOGUWQeFQq0C5Enq4uJ0oNSkjKqkQIwYVTZ/nCq5/l+ns3SdIOS81T9LsthsN9drZvsbO7i1QxwnparQ79/gI7e3sM5ylboymbW++QZG16i6t4oREI0jQljiOMNRhb4ZwhakgqNaesCkzpSeI0VDUIvFSvguxpaR5PRaOYl1SlIY4TpCSoiKiI2HqsmSL3P6LVbnJ59QJnl1v0ug2yZgsZN/nYZu0coEFEIdiQdV5BxCBjKDXNVsFn/8QrxGbMmVu3MAoQit2B55s3PXvzEE17AB+asY42v6O/pAhVDCX8UfvWY3f/lFKkcc37FRBJRWuxz/KpC6wsncIIS6ffphzs8a//2a9RFkXIeojvX532PFBL6vb7XP7M5zn3wsvEjSbeOpQ1TEcH5PP8D1RExFHnPg8CjaNmuXCKT8Ym6D3M5yV5ZRjOCqw1RFLRaCS0mp68GnK60aLbaKDjrJYM9GhXIm3JSxfOU1nH3nBIWZe5ZK2KE3pTakPkbC1uIPHWkiQp/W6X1155jWbWZHBwSNxoYWczXDEnyppQDusmdXdcVn/c19nDUFqysNSnkXVY6C3TaHQZT0fMyhn7owFpnCKkQosIO5e00yUyt4b0CussWdKgt9ggGUvO9k9z5dR5FjuLRDoiVgKlYxY7JZ1Ol8mCQssxGsva2kucWVliZ3+DM6tnaXcNq41nON2J2dy8SXwu5vVbQ+bkDO7skRYl585fZrBZcsDjV55ypsA4zd2dA164tE5SGlLpsUKwN6xAFAgXMZznxGLGj796BS1vsTuYYizoJOLc6UssL7UxB5tEzTbtRhPlDNoIrBWUuaLVS6mqkr39AUVZhSZI6ULFTWi8N3gX6m1SSDySiLqy4YNEkFYaXUtAQoRxf7T8+aOEFw6pBdiQTU6bDVbPXWBnc5Ok3QcExDJUHz04G3oqinyOteCk+FjSwwPGltz74HW27txCmjnGVGRZRtpM2B9N2d+4wftvfIPV81fptnq0+gtMS8N4NGRn4xrbt94hn45QacZ8PKSYjmn32shizDyfgQqiHN1uG4lgYg2pTsjnu3W2+kEz7+OAIIiiRMoHWVmAo6qNFzhCJSNWQaEMQBwl2dyDqmyaZHSqgq3vvEcrTbjQWUWriLIqAp1ICOIEYuWPn6OkIIqOBDHgiAwUzqtmnx4lZTzEsQIej1/yvThSevL+AXvgWMHxyP7Jhxx8Xz9LhSpNLATrcYaxEbMyYlIoioMxV/t9fj+L65d4sBbdquLlg12eb8acW11ENDL09gxnH7IG/sg6UCsuieMA70lhnQWbrzjcK4hbbdI0YjoGIRWIRcbjQ2xRkMWCqjRIdZTEdXRbKS+cX2d7aMm9YH8yR+gMvXgW1e6x8NpXuPtbfwu38CpyY4uDwZjVxU64nl1IQgggjjW9fptuv0u71SSOw7wx74Ki3HxWMBiMGQ4nzPJHn5B6dBUNA5GUlJUhIsJWhsJb4hSkE2ihkYnAihIlHY0sZaHbpJgOONzbo78gKA5uc7j1EXdu3GQ2mdBotplOZwjvibRiOpnhFy9z9rnzPPXCj/N7//C/5fbGfS4/NSBr9zCmwpqK8fCQ4eEBo9EQmUCSRVhtyYsKpSRlUaJkkN2NYoExJQhBFMV8mvzbIygcpijBeyokcaRpNGJkHKNEQmf1MqfOrdNrJzSaHbJWF5k0HvCbjsS3nQ3RnBDh+yMCi4zBhcZd4Qy9pTGv/fSXufb6Nzm48x75vECknrMdyb2xpDKeY0G5ukzqCQ1yEkgkaF9LP/qgFRFFQPH47mxnLaYsjx15lwjaq32Sbo+03ULGCtuI+bGf+QW2793h2ltvUhlD5RzC+o/ZvGOKrQjBgZKS9bNnOP3UVbJGk1gplIL5sODerRsYU9GIk3rOyR8yK0IcJXXq3/gw1PKTzGz5UUMpSafXChkgIRiOxuRVhZl6prMSKUc8121RzsYImYDK0I0IpSHSAiUdn3n6Ijfu3mE4HIXBdVKQCENZVngVszutKEpPHEWUztPOMk6vrfHcM89SFSW79+6Rz3Och6jRwiIQcowTR0brKNvnH2hFPgEQQiDThGmZ08gnOFeRpU20ajCZTdk52KelezRiTZyktHuLKK1xOKw1qETT6jsW97uc663SSzLaUYMojqkoMa5EAJnQ5F5xur9I2ljlVPcMp5bP0221eeniF5FKIKVGSs1TV1/mcDgg/sa3uXP3GutFQXNNIcQSzWbncS9ZyD6WBQrHcGK5vz9k8ewi1bxAzsd4FTE6GGN1QTOpiBrn6C4u8ye/eIY4UYzmYIsJzpcoY0jTZU6vdLh35yN87shnE2IK0sVFpuMh6ytX0eo21pY1d1vVSjehtdTXfVNS1Nl3X9OrsDgncdLh6mDXHWmPfoq4/c53abcXydodkjRDy4iFlTV2721g8jlCZHgVBqAdVQpCoC9IdEwswp4kpQzSot5jzJTh9m3G+0HZS9U9HmmzQafd5nA4YnvjfQ53Nrl8+TkG+20ODneZbN/kcPMGzlZY65FKYAtHmmky6ZDKEcdhaG87Sbl05hxFUXDv4IAsabCzfUCUpjgt6/v4Md3LQmBsqGSoI4l9dxT8CISiHjznwxA9X5MF6oqDl0Gl7+K5M5Abbm7s0I4jsrOehV6bzd0i2EstSCNfJ+uCM64kwQEM4yPqhuUji0Fd4QhBT1GFZN6TBCFk6FsBXE2lOqpecERKrisbrg4mnXNBvABLYkwYFqcTZvMKVEJ0Zxd9NcPIB1TAc0rwwuYWF5sZp5f6aJ2wV8G+f+CEHwWIR03nR5K2wSWyT0gqL9iJOGnRPvs09mCKtQLvTNiPUEi5TD45gGIWepoaGTJKjpvZl7sRpZ3y7esHzOYVrZWLqO4iVmrSM5dpP/VFDt//JmrxVYb7v0e7WdFIokAjqwP7nlS0upYkTepZVB5jDLNpzuHhkNFwSlValBK0soTB/AlVnVIqTLAWQiCrJutLHarKYKIcZ0owFqtBCRe0fUtDFsdMhyPwnvFoxNbOdxlO5mSNFlGSkpcV27u7tFtt4mhIu9Pj6is/ztS36S93OPPCj5Huv8f+3hZnWy2k8Ozv7XB/c4Ph8BAvPFGWYIShMAVWhenXCo3Eo4QijoL2/HxSUEweDwFIR5IkEWgtUVEEQlLZMFgp6y7T6HUwpqB0EWl/HZnVg2hw9e7nwFd4cVQGA7wFWVc2askzZAyyiWyu0wIuPv8c+WgX4/Yp9gvWm56zLcHm+IGQaDAHvt4owPg60BCCQwOmzs0v9CJ2J4+PmuG9r3slAATNZkQja4RNUQiSOCOKNK0rV/jCL/wit2/fYbazVa/f9xkcVattdXtdnn7+WXrLXdY6TRIVkZcl+/v73P3gA8AQ64w4ij/29KNMjxXioVkV4VzzyrD9BKiJKK04tX4KHScoAe9f+4jpdFZPF7VESqG1JtYqDI7Eh8EqUhDFmjRJ6SjP2cXnyCeDIKOXZEwPdpkcbFOpjL3BlElekDRa7AymnDl3jtXFJarxmPFogvFhcqwvK8rJHEzBZDYP1BbPx4zYk6IkAkGCceYPGI1GSB3kQbuuIi9ychxWwcHBPWzWotXqB/6/99iqoMgn5NWcZpbz1HKPdneKEBly7nBFiTEFxlqUSCjnhsl0yiEDzmaShYWLXDp9nkb7RdJ0IVAGvQufGXB7+x7NSODlHgM55fD+IjLeZn/wySfR/6jgfUgKFEFqhrwUlDJiPJsQY6lmA8q5Yf30OmcvP0Wle2zv7VIVEqVyhExIlScVkKaaTqvH0voiu/fusDfcwo3GkDfJuj3G0ymN4SHtbjckS7x7KJN+lIghpKkxIDQWi0DjMaF/yVVQgfVBANzx6WaY0yRhf+MmUZqh4xbNbo9Ov0+WpUyHu/TTM0GGVkmcrQMKGZSlpNJ4BdY6kjjC2gqlBFVesHn/PsJbsiwDZ0mbCQeHB3TbbZYXOkwmM6ajTTZwlFXJaLCLLUYoW/cUCIcLSrl4IC8LvHGoNEELWF1aZu3UOvsHe8TDEWVVIZWj1ekRxw/RfR8DhIAkEcQKlAokG0uwaQqOJbWPBuiFakdwspeXT/OZz/8Uz7/wGrqacvc3/gn3tsekuWFlbnnh0iW2D4dIbN3n42v6mUBrjzM1V0rUjvKDf4AwHdw6gXOC0czTyR43Kfl7IEQItOr6w5Halq9/J/B4L+uZR/XwvbqZox1rKHImB7scXP+QYjSh2V/AlyWXKodoN9l1hqooeXZvxHqzz/JSn6SRMKkct4xjbH0tpFInoY6bQR5wBIQI3fzfT6b+U4cQRHFKf2kBoRXTUY4xYF0tGiNihFwhHw2IonlQ+zQCqXQQmjGepW6X9YWSG5uHlFYQJwKXSIxOWP/sl6j272LLkmp+loPRfbKVJaRWeGfRUU1HMxACDMd8lnNwMGQ4nGBKQ6QlS/2M5cUulZfcOxw+Ulv7yO52a0EZAc7hmXI4meAKifSCZjNDCk23lYKVJFmKnQsaSY/xaI4UmljH3Nnb4u79LcoqdOBnWYaqM/TGWvAVC7PbXL7wLLONt0inm3ibs3nvLs1Gxsr6Wfr9LkoHo5CkMa1+xoADjHHEqcLOQzScVyUSjTEWZwR2Cr54PBkWa8KmE4ZGC+JYgleoOCVtdWk0U6pihiHGywhUHLIhzoamKVdnFTB1hF87zqIec++PKhyAShC2iYoadPptTl99hvztN0kagqzMeWbJY61gex4avFSdXYnEg7Lm0U18ZJKtgMV+AzYeMwf8oV6IKIpoNBtopRDWExtBK86gK3n6ldf42T/zZ/lf//bfopw/7Ow/JL/qj9RIBOfOngMB3TShq3VQzTE57377dXbv3sV7y2A6DpvvkdwkDwUWf8ipVk/AkEMI55hmDVrtDlJCM40RNlT1LIT1ixRplqAjRSQtWjm0dKSZIokVqAg7PaCxvI5vLzPZu0tlLHF7AVNZFpcyWoNtsm7CclOBn3G4eZuiANXqgdREWYM4E5S2YjzY5e7uAbPK1LKTQToxTLl/cgyvwKESwU45xs8U51bXscYxK0uUzkikJllskqGI04SD8U3ark1KwaEdMy5u83TrRcS6Q2ddcmuZ3t/iYPMu8/mYPJ/TO32eU1cuk3Q1w+0Zf+KFL5OlLVbWryB1Esytszgzw/kCZwwNbfmrf+pL/M7bOR+8s8FkPsdU5ZMxRwOP9+a4CKu0JxIzhFdI4ZhMSmyZsDfw9E6lFMMJ+XBAZT2Jjlg9c4rR8B7OOFItyMeGWTfl9MXLXLu+jfIxsbcU8xyH54OPbvL27gD/sbk1dZLmmJCna/Z5CD6kt4EqJQSgqbzFUyG9ROL4NAVu24srLJw6F5QUncdbw2w0Qsaa0XBId+kU0dFeVasogief56gwchqHq9UVNZWD+XQWEm5KEkeKRhSjk5g00xSmoqkVJh/jc8P+5kdhuGIteHH03p0IDc9agK0sLrIQhaquQpCXOYfDQ2azQM0y1uFlwsqp80RK1Y3Rj2cPlIT9Syl3XDHwAkStRiaPmTgeW8ejQipe+exP8b/7j/8vPH35Cu1Wi2vf/Tqv/88DbmwNsc7zVCPj5/78n+Yrv/K/57vf+T1+51//S7a37+OpaVrCUVlRqzqGionjgSyuFIEh4IHcQBwJFvqam1vmiUmwiHo/fhAb1R0VPkzwDoFHCACEP+qrA+8cB6Xjw/0BryzEJM0GTk25fPVpep0mq++/yanGIqrZ5p2NHXTcYmlxAdnpUGqwouJGNT5mBhwVtv1RkgoI97Q4llF/QpYMQVBNxafEesLuYECctEnS0EMRGCMe116kmBwiq3mwuy4MtvZSIr3nqXOniZImHwxhdPcap15eYCYzkl6bc1/4JW7/5t/Fdp5men+DySyn325gvTtW2vTOMRkXHB6OGA6nmLIiiSRrS02Wlzo0WxlaxwzGj55p8QgDDUtRmJBdUw5TekwOkdeURY4Sgvk8QiaeFm2Wun0aaUov6rHQWef+9jaj8RgpJaPhgMoYlFIsLi+htULgOTzYZ3D/FtV4l+FwzGB/j9l0QruZ4m2JkIJLFy/w0iuvMs2nqBSmakySKrwVUEaUM0u71yBKNcXMYkpLPq0opg5hH0+g4ZyjKCxxpgBJMTdIHZNmLdJmii0G3Lp+k+nU8dSVS3gZxGi9lCipQvMVcJxeOpJhPPrfVmDLuuwvQaUgG+i4zcqZM2zevg1iyrSAs72gNvTVOzCtajUqcdTu4Y/LHNaH6oYQnkwJFhZaCA4f280dJo8e/wSJptXpshB7msrTb4RMm/CShV6bVz7/OW59+CHf+t1/Bd6jVESz0WY+HYdMQ02qzZKURhSzee06ZjqhsgYvFBvXr/Mv/+Hfw5Yl1FmxI3UNf9yM9u8APJRlSWkqkiQmjSOEDXMNpNLESUzS6RBFmkhYEu1Is4pYO4TN8blFL16gmo1IFlaxHrw1zCdTklYzKNd4RZFXRC0FUlBNhlRW4nxCOTiEOEPpGBXHqKTJXEaMpzmlCYF0osLYp9KHht4nBc4LNu8N0K5Fo9FgbfEUxpRY75gZUFFMpiXCz5nJ+0iGHF67jYpvEa1fYPnSa5x/+lXSNGVeGYbjCTff+SZbW3u8/9473NvaZ2Vli9emB6w89xRNabiw8lk6zeUwOduWOG+wtqAsRuTzaZApFY6skfFjz36JjXf+Ka66Tzvtk6r4j35TP3L4mooUqjAf3LzHYmuOMxVSCVTUZvHK0ySdBmY+YTIaMRrt46OEi+ef44t/8rN851sVd65dY+Ik7YZnuL9Pq93mF37lK7z9+9/BjIZMioKD0jB2hrdubKKUpNdd5vzpszx15SKrq8vENRf61p07vPnm29ze3MHa8mMJGu8tvnZgnHeBdvUpQuuEJGmiVERVTAGHUAT6kqnwHoyzYTCaD/MNbBg+g/aSWCqwth7WFfr/Ws0mvU6HRAievXKR1cUug/GU/UnO7v4Bs7xARhKKMGkcF/pnhBDgQnXb1tnsKNakjSaNZooH5pNpcD2lx0pBM2vQbLXZ3d0jytp0FpfRWmGrxzdHKIkcaeTQMgRopp6aHHoTg+PnnD+uSEuZ8qe+8pf45X/vV1ldWiCNNKIq2Nu4Tulgx3pkHJEsLdJe6PDKa5/j1edf5k996ef5n/72/8Dvv/FVlCyRCKSIwiR1UR7TjHSc4KsKX1mOekXKChItmEzsExNkhGyorPtsakfgWK0rhOry2O6JP0BznSL4znjOuXRO/+xZfvaVVzl7/jx2vMP55nkmc0Ok56xdXGVj3kAdbDPa3CBZ7ONiuJPPw/wOAm1LclRNeYh/IUIi+WOx0GOHQfptoqiPHO4z+P332O4vsLy0QpK0QwXL+1AtFX3mE4WrZkgPwrnQRywkSkWcXlllKOZU80NEPuF8o2AsWphTZ+i/8GUGtz7AHixxOB7RamSBLmkgOG2WfDJlcDBCS8HaSpOVpRaNVkakI5ARnggha+n5R+jBPLJAQ0tZS8R6hEvJsgbtVgNTVWRZhC0K+o021kr6vSW0S8l0j3ZngdHgkPtbW0ynE6z1xJEiTWJ0khBHEVrJ0MASae7euU2aJDjnGY6G5HkOOCbzgr39A7oLq7z26msU1ZwP7rxL4SbkRYHWChVpREtRUiCEpdFrMh8WJI0EITR26pk+hsarrBGTNWJ0JJAKvEtI2wt0187RWeqzv/Eu1975kKx1AR2FiRVeqBBwCIVwOcdqU0KA1OG2M4GnKKwBa8JNSJgKuXN/h2Jwj4Veg1MXzvPum5vcGmlaiWG97TnXERwUobHQedA8mEx+tPEdJeWzRLLQa3zq6/YH8KDggikrrLFQlWhnacQCLSRVXiKrkhvXrnP1qee59e41vKnI8wlQkrYznLF450MW2Bbc3rzH+eefp9lqI/FU+ZzBvQ32NjdCebgW9Hvoz9dZqgdb3RNTxv1DkCYxSRTVDbFATZWLVOgXssWMdPF0eCwWJKlGiYpqUlCZgv6qJjn7DM12j3K4zSRtotIEKzRlVWC9Imm00c1Fxvc+xJQFKkpBRSgpKZ2hmpUUY0uMZZKHjIqSEilgvRnTUZ79uWWvtFRPRm8kHk9elMhBxSunnyPWDYqqAiIiJYnSDGUtykiUsuRjy3e//hHPXD1PvPosi/01ojQDKSnKKWWZM53lzCpBbhXvbc7YLiKy1hYySek0It768Ou8+tQXiaMMISVlNaascpx3VKUhryqipE0vaaJ1yqXeebamBRaHkE/CkMh6YrwwOGBrf5e72w1aiWU2rjj/7GsYAVt3N1hdzkjcCGzJhXNX+YnPvcKzF07RVJ/hf3zrDeajOZNoxNvvX6d0nteefpYXX36ezft3wUjsYEwzivlsts6LL7zMU5cvsrK4QKuR0WpGxFrSSFOMMwxGM/7Zv/hN/j//33/A/b1D6qkH4FVNB/F/gObyaUDFMTqOkVJgqgpjPZHzlLM5zlmsqdBRhBQRUnqksHjriKUmSsPEc+X9sQqSx9Pu9Dm7dpZqPmJteZmXXniRrYNdfver36DTbOMmI0SUYlSBSDLm8znCByUp74NsrnYKGWnSXptGmmKto5hP8c6jswTjHNs7+zSyKVnaZH//kHTlLDJOARnEMh6LKxjWSMs6K+4CG0PqQFs6MnBShOSVVpqf/qW/wlf+7F9lqd+lk6U0swyXzxHOsn7qNFcOZ9ybTNmbV+xc/4DitS8TJR3OnHuav/bX/k889bvPcPv2B5C2kWmH6Wif8WCXwikGB3tMZhMms12k8GgFpQXrJM1M1070k1CJDBBSolSY9u2dx4mj3ojgHLgQPj2oeoiaF1BXsN7Bs37rFq9Vc+5vbnLt2jUun2qzsrJGW+2xt7+P7nQ4d2qF3WqGLXN8mbOPZ/9Ivr6uljhC/wySB/dnaKyse0efDJtblVO+/dXf5PlXf5p8MEf3W2zd3GB1aY04kVjrce4oQIuh3Wc6ElBO0FJgcAihAUesFVeXMm7ef4+rL5/hF/y/5JZ+ib+rf4nes69SWI3Z+C0m0wmDac5iJ0Wpep5JHNNqRJxebtPvpbQ7DeJIhZlBQoNUeBEh1aO/3h5ZoOHLmFa7i0o11dQircAlBiUNs3lFFFsG5Tgk2QvBeuMSK+unUNWc3b0d5vmcNEmopjOEC2pQOIOzFQpPohWNRkZVGfb2948nESstabaaLK2s0er0sc6RNRo8+/xzjBmy+9G9kPUpLMZbfCSI04i0kVJMQ/axEpbeepfDe6NHtRw/ELSyOFNgC1CZRCcRzYU1eutnwI259vaHDHYntHsLVKZCI1FHk1W9J+hA1dxhZ0DFCKXBGAShGRAp8c4wHx9w684W3/7ad9i7/i5PnW1x9vwCOhIczj039zxXFx1nO4IbA8+gCDeAfKhi4AkVDaibw1NNVT05zVcAs8mEzTt3ufTCnMapGJdPyNpthPSUlaDIHR+8+TbaVkRJTK+9QlkWqDhiOJtSOUvWTDGTOfPJlOH+Pvksp5kkjMZjBvfuYOezUCo+HtT3eN/zDwMhBEmSEMXJA84rYeMWhFkCyf4m6ZWLJI2YuKHQGozVHOwOuPnhR7Ru7PPFX/nLtNfPM/M5cm8HnTS4e3sDlKbVX8K3Ftnb3sTOChQWKSqk0BjnMaUAEYM1mNkIg6XfbwcKkodOImkLx7xyNNDMPuXpzN8Pwgr0JOFQTtnd2aXRaFNYg/YaW1SYYgaxIJIROm9z450d5oXBWMdwNGI6HrK/t41QgulszubNDxhu3mKpk/LUxdN86+3bbI8K3t8Y01sYsn5mAXs4p6imVD6n8nOcsQjHcaN8GmucE5iy4t2b75OLnOpgyGGsGU0fbYPfD4cjilKouHogrxTPXDpPt7fE1u4W2/sHjLbvcXA/5tz5U6wt9bh04SIXz6winaXXbdNKmkyKAe9e38LJlKWFDoXUfPuN91hZ6XPm0nnmH3xEZ/0KL37xqaDoh2E2HpK4CpV2kFphTKAYLSy0+Ut/4Zd4+YVn+K//5n/PG+9+gPEhQxuyqLXn+SnvcsbVsz0IKmS2LKiKEq01k8E4ZDyPlN1qR9kDpa8w/oFj5nAoqXHOk7R79NZOc/f6PpOiYGv/kN3hmKIypEnG0sIih4eHVGWBc1VQi5QaRajiCa3x1pJlKVJrisrgq5IkTkiShPFsxuDgEFM6ynaDkRhRGUuv2SbW8oh/81gg8CS6qhuuQ7LMOIjqE5Ii0MLC94JnXvpx/syv/IecWV+n02wQyZoGk2Y8/dkvcW7tHE994zvc299FpynlaMhg6za9tYtImdBIE86tncEOhszNjI0777GxucVg7pgVJULOiJMZjdSRF4J5KSgrQV22Ii+ejL0uoJYulw9aG4WXdY9oPaD2qBfqeNZgoMkJEYKRaZbw/t4+pweH7M/HTKuYw1GXL599mla7x3R3yGR/wHQ7p9lo4OMUm8T8Rj4n5ziOCJL73uNqqvJRok/UlbbQlfpkGGRbVahCsHvtFnfeuk58bpXLWrK81sUYgbWWvJjgfYJWMZ6YrL3IdAimnAQqn3A0IofGEkcNkq7hZ9OvsaTu07QHPK1f5L3sLM1GwkRHzCvLwbii3UjJogTvJFpCRIOFTkqcqDDUWRwF/Tr09IoYqZ5g1Sm8ZDwZk6gYITXCpeRFhaRE+ya9xhKRUiRoKuZM7RZ74226SpCkisoUlGWOyfPQlCXCMKBYhemss/kMISFJEtIsZToeo7Sk2+2QZQlKa0pjmM5mOMBFEC9oVEegLMwHwWkScRgYaKmwQqAyQa/dRHpw0ePJHFSVQEcaZx1VYUi6y/TOXiVtt9m/dQPKMRoHKsLLBBWlWGNQSiNQQYJVxQhThjvRlHXjdxSsjooAQzk95N7dTf71N97jzXe3SSeOtt9Bju7TcDndVDHIFftDR78FV7qSN3aD7n1MaFKzLgxeK+o+dOeh3Ygx5sm4qY9gnGN5dYVup420FuU9EY7SFCjV5NKFy9x4/eucObvKdF4R6xTnBGphhV/5i3+JveEBoij5x//d30RMD9n46D3e+f1vcPHMeTZv3uQ3fu1/xRsT6u3A4+Ib/3EhRFAsUlpjrUEKcZyRCso1mv5Kj2Y3RimQ0iCNI5JNxocH6Mwx2r3J7/2Tf8Cf+z//X5kDQkTk85z9/UOai0tExnLto9vc2dyhqTyXV3u02wLhCqyvcLmlLAWZklRRzEE+RUqJMxaExNQShpJQ5XhSIAhTksvK8/b7H2KlJ00V3npMYTDWkDUbqDTjo7fe5datLU53Gkyncz5667usnbtIu9PCWcM3f+Of8uv/9F+wvtDmqfU+K52Uz1xe4bc/3OP+qORb79zm/GDCvPCUtuTyK1cxfo6yCdImYYidMaG3qxETt1for8947pUWH95dYJAbqsdIV/k4xHEg64Gt/QEH+wuoZMzh/gGRcJSVZezmbB4c8PKzz3Hq3CXStIGUikbS5rVXnudrr49YXFIcHA7Z2rhPGiWcXj1FHCV4oVl55scQaVAjjJQkUqAxjCaHQMHiUo+qklCrNEmluXLpPP/Ff/7X+a/+6/+G1995F+PtsaQnIvD7P1XylLPgwn0pZZ0ZNiVKaUxZYawJfrtwQeVHUBdjHPqYyhkG+Anp0UpSOUX33NPs399ke/+Q4eRttrd28dYiGy1cVdJKUsokwziNVCpULPICqULCbzabEScR0jsSlZA0GiQ6ZjQeUEwLIqmwrsS4iljFCKVIsgbeK4QPk7Ifx3ghpTzdpiHWHmyYlRGEAmoygAgOqlQJL33mp/mr/+n/nbWVFRpxgpYgbIWxFcILhjtbuLLgZ/7iv0/U7VGYkv27HyFNxXwyBBVj50NMNWMw2uajWx/x22/ew1lPpAS9PvT6Fc6FvS2JPflUUFQCL3SgRD4pt2wNUYurCI76IFx9b4gH07iPWhWBIFgja0pTCDgOBGzuH/D0pbOUTtBvLdJbuwRuDun73L63xQc3dljKUpLFPm8YxfX6RYV7KOlZm1zhA10ZQs8GuFrl68nwSYoy4u0bCdnGBtXWPpe7GVefPsett29w9sWLdE47cj/g7fdmLC+fotXsEkWKrNNndlDg54dkiaLyKQPRIY8XePnCAivRPZJGE1UW/KT5Ghvxf8BAOXS2gO8IptNbHIzmnF7uomW4uIWtiJRDR6IWcJIhkSF0TZ3SoS/6EeORvaJROY12grEerSVp1GBldQ1pJ1RVjnUl02rCbFCQqCZLix1yN2O1s0qjsc9CL2U2TTm9foqyqNjbP6AwFXGsg66wt0E6M46J4ggdRwgCfw3CDVCUBcPREGLFnZ073Lx3Hd90ZFETFSmqqkDEMZXNMUIgm55yMqcRd5jOcqJOBHz6WT/vLJH2SBXT6J2ic/YZ0m4/vC+doqMYpTRxuwtxA+eCA2atwxYzsJ6qmBDbObEOo069s4EtqROQ4OYlG3c2+Dt//zf4jdfvUM5zpCsoJoLVtqARh3kncaQQymOsYymFTIEvg7TtERsyqns0Sh+mnLab8QM+1RMCZz2z6YSlpT5KSbSOmU7GbN69xbtvvc9wPOL0s0+jvODO+9dxVVC7iCLPSz/2WS6dO83+wZgP3/gO17/6m1CM+bX/6X8gH0z4Z//oH3Lv2jt1loZ/V7ox/lBYY9javIc+2KupODaUwYVASEWv3eTMc8+RtlKk0gzv30RGDbb27qObbeZxmzW/zWT7Dve/+7tMZ2O2rr/L1u27WGuR3vPN199i/3DIakuhvGB3MCXWCi09Qsog+GPBRAl3728xdTAvDc54nDfkOqIVSbwXVPbJsbxBQSkMiBocDHn/3fdpt1O6nTZp0sJTYo1gfDDnq1/9DoupQuuI1z+8z3A4YmFpldOXn+bg/ga/+b/9Jv/6rbustmLSVy6wmEkunV5iZzTnm3f32D6I2Nyb0Ou2OPzdb9I73SFWEdgKZ+aYAiKVYeWMIrmJmMUo3eZA7HPXHZIXEVI9CYb3SK8mzPwROLb39/jujYw/c36dxYUuh9N90iQliiBKWsxNk253CZ00SJQnihMa7RZL/VOUZgeRCSb7M4SU9NqN0Cje6tHunWYymVGVM+y8oMDiYoVAMpnM8V7QaiUhgYILik1K02tl/Ke/+hf5f/y//hvu3t+pz9vXZ635VKksHoyxdZN3kK513iClIIpCVVvKejaFc0RKY3xVN8wKlK3b3I1B6+jY2WssnCLqLDEdbDAcjjHeoiPFzsEu7TSj0WjQEQ7nLIeTIVQloqxI0hStQ/+WqQyddocsSSiNZZLnTGYTnDPEnTYuB+UF02mOamTIJMPZEuey42F1nzakgCSCSAXxPOWhoQSinqkhEfSX1/nlv/if84Wf+iUaSQTOUc7GWG/BFERJikKgs5SyjJkVM7pykSROWFg/S1VUTPc3kYnEmpLpeMA33/mIN25uMikMzUjT7XmWFqvQ/F0XeKwLFQ3rNVqFYVZPwh37MRzN1sLXNt8fkQzDr2s6k7dhblLofK9Vu2oK4qQyXLt/H19Yfv7LX+LCU8/TXlhBCTgcweBwRrvhiRspv+M9O66uKNYKV4E65RHySF4fqBOgR9Rf4cF+ylLU3w/zueW3/tV1vPEkEjaGG/zSCiTS0FssiTPJ+N2KhooY7e/SSUq0XoBIIZoZk/mIrSLD6BaudZr28z/DM2dvouwAO6mwwEr5DsvNgnvO0Fq9QrXcYvbW3+NwPKHdmLPQSlBK4LUm0iHxopSsZa8VSIUVGo+qK6iPFo9ujkYcpAO76QLd1gJlAYeH98gnc7rNNoUbYHTEQr+N9zlSOibTMWVrkW63yfpyOyg8EJNryaLss7d/gJSSqirpdtosLC7Q6nRx3rO0vEhZ5GHaeBTjkMznBYWxWOPYPLjNpNqh1WjQ7XXY1/vMxoYkjplOLb6yWFMg6xqfThzV5uOZa+CNYbw3IW1L2mttVByHcpp1xFmHuLPAuNjh7s6Ig+E0lL/jhJvvv8l7r/8+3YU1zp69Sr+lWVrMgnqVqEuaOgYncCJib2j49tv3GJcVhTXMpo7vIrm0K1mRMDeebmrJUphMoKo83Qh0HvYLLagbOT2VF5R1ZqrXyrDmCXO2K8u3/tXvcObcWX7sJ/8kVZZQDg/5+r/6Ta69+RaLly9z5ukXGR0OWblgmR3uMxscYkxJORmTCFha6PGTv/gVBlv3SLfusX3zJn/rb/xX5PkMiQOhakPwR1Mq/uB08CdjvSpjuHnrdjAQSiFk0OCpXAgCzq0tsbDUJ9KCfDLCFjPm+7vEusnhdMKZbkJEj/a65+D2+0wGU6rhkJaS3B7NGI9vsXtYcH65TyU9DTPFAb3FPqKak+cFVhosBu8VVZFT6YQjiWfhHTOryJUMU8KfELUuCEMil5cW0BGAIZ/nJLFmNp/htEBnAtWKqXYL5nlFbyElr2Br7Lm/X/Hu3QE/H7UQ6QI398tAh9Rhfk5hLa6seGqtx/bBmGvjku2R4O79Q1bXF7h74z4ry6t4k2ONYDbPQUhyDGbWpt1e5HDyAQN/wP5gH28yrHn81CkBwRl2BudNTYPwlGWBtTnNtMF0Mqfb96hE0m4s4uI2SysLJHFCq6HQkaLRabN++hxLvT637t1jGI1QzrF7f4v0zDrGCmQ5RmOCQ2IrnHXMJnOE0kjVYDqb4l2JkBrjPUoqjAt0rk6rxZ//hS/z3//P/4CiPAos1Kd+20oEUkrKqkKI4AR4HEVZECUZUPfjEk7NuRAwaamoqgrjQTl3/FyoM/dKsXzmEhsHGwgh6LRbaK3xA4uQkqIqaWQN0jhGCMnhZEAvSkiSBlmc0Iwb5GVJJ2szL3PmeYFWwRmUSjIaDnHeY5SiKixCNfDG4EUIjORjcgJLo9ketLm4MgzBDh7jQrJAScHpM8/xZ//Kf8Hlq8+jhWc+GeNNhcbiZocU0zGd/jLTwz1uXXuf7uo689mAdL5I0mwidYKfTqjmY5RMQMXMS8P17RHjeUUsJVpLlhYrtIaqVrXyXjDJRQgkRRJo4/JJsRIP4J3FuSNbZoO0MmFfdvW9c9THqWQ9eEs4nKypTAIKJ5jNSqZlRe/cFVyacee979LsLdBcWqexcZ/t/T22RMFOI8HiEXVz/tEAWFHTwcOME388IwaOgpAnpy/Se4+wVUiUGcGHt6e4X7vNv/8ffJ4klZTGMtyzLHXDoL0mU25s57Q6SyTaMUi7zErN4WhKtP4M5y4/Q3frf8EkA0ozplQxZga9KzO8s2QLq3TOv8r7ux+R3/0t9g4ntBtxGJ+gBZFWaC3DOAqpEELhiEIfiIgC7f4R45G9oqwiXC6pTMXucJfxfEDWbBElivv3d2k3e0wnI0Z+xPrSCnlRsi0OuLJ6lSzrsLS0iEOzd5hjvUdVkl6/V0sgSqw3aA1aeTq9RcbjEe1OE4A8LxFS0mr3sFJwa+86G3s3OBwe0jQZUezRQtLIOkgvEKYkJmY6K2n1W8yrOU4a0uzx0DLiRKOUpCos08mUtCiYzQuSSGBFhJlPKMuKW3c2ub99wO7ePtsb1/k3/9vv8NvffBO5kPHX/8xf4c/90k8hoihwdSXgK8IoU4GUiiSOSbBkrSZmarkcxxzOC379g5IvLArGFZxtSSJlKZxgb1ZL20ofLpR6B3F16VISJBKbjYTZk9Cv9tDGYgXcu3GTv/3//ht89N4HfOmnfpq3v/F1Nq99wHw6pYdHKEmaNWktLtJupQwimM4LpvNJmBovBM+/8BJfv/Q0nUaDg8M9JtMRXoAVQQnp+2ac/FH958mG92GgkveANXg8Rggq4+hmKRfPnSGRkA/3KeYT0s4iWieI2YjT6306K2eI4hjtLcWwJCpLuj5lrpvIylBJz8VuTKQ8y01BKjuk7WXa7Ta7d3aZzAriJEZqsK5AJxHltKAsA/XoSPIxNBk+WYhjxeWLq6ytr1FWOQJYWzmDEwUiMiT9Fq20zRvvfIfZdEY5ldwZw8FoxuraaX7y5/80QmcsrJ7hxVdeZTj5Fs12j1//zgYvnemyFldEwnF1ucHWfEZeWXb3x5w6tcj2xj46bmHKknw+Z5yPGUwH6FSyLF6gkRmufbDJ7Vu3eeapDlvbY7Ye3+iCYwgpyNIm+IpZMcXYII95OB4wmEnsfIjwnoXFRS5ceg4rYxYW12i02libI0VMHKe8/NzL7O4cki10SToZ3/3um5R5SbPZoN3rkhcFKslIk5ioqdEK5pMJh4MpZV5QlnMajSZFGZFlSaAdeYGxhtJavDFcOrPOM1cv8OZ7H+KtD9zzT1XcNswcCTRZUcuZC4TQVEVF1mqjakrVcW8Vgc6qo3qAn/B4qaicJXJhT1OAlaGZW8WSfF4SxQlVFRJtAqhMRVEU6E6HXr8fVPx0QpymaKUoqhJnDMPhiHkxJ4siisrgkBRVjikMCkElQ6AkqwqpNboWnDCfsnrX8Xo6yZ39FZJIcmbhICTQbBBkPHXmWf7Cr/6XrK2dIvKGcjLAFjnelngl0QhGuxtMB/fZ/OA97t2/wzn9BXw55Vvf+DY/+fO/jCnnuDLHOYWdzchHh6RJymvPP8033nwf5+ecXrEkkat7H8N1l1dQVDIMjBQaT1XTC5+kXa8OI1w9Ht3Vznzdo2GdwzwUQFonUfUwPy9EUKvCo5a6JJMenfUVpoVhsrnB1lvfpXfmLKeee5W7O9uM7m2w0WqEesmRLX2ImoUISk1ShN4pVw8QPmoBl/7JWTkPGBeqt1I4pBNsbpfs5M+xOpfsH7xFS6ZEkcS5isomNCPY39uipS0yWUI4R+FK1j/z47xgv4PZvEXZrjDznJmM2TuMydcnOFsRN1q011ZYfeGn2Nx6i8Fog91MsdBOyCKFUj4EGepo0GIINryIEDJBqOiRr8EjMz1laeisdPFzxySf0FnqUhaW0lmaWY/9nX2SRsyp9bPYPCc3JXleonRKEjXpLxikiiiqPYpqRhTFRHGCkBKpJM1GRrffQ6qYOElYSleZz6bEcUyzJcNFJjUq1cydpXIR0mdMxgU+OaCoPMqDdwZjoJFkNHtNrA6GQxiwny779hiVcehEYnFU+Yzh4QEubkGmKYabVPMC7y3bW1uMRkN+/R/9LxyOPM+dWuMXXn2V6RyWraeaHOKai6hIhwDDA1jwBuEt0pUst1POt84yHO1TjrfwpUEJwaCAubFEtR52bgRzC4XzaAFKQFXzI40P1CkFpJFkXlj2R49ZCijwWMJUUiFqNSgY7e/xW//wH3Dz29+l224wGe6TT+Y0N0+zfHpEkZdgSnSc0F5aJSlm3H3vPV577TNEAmKlcPMRppxincO72rDDUbfbv9MI8oqhmd3zYABTM455/so5Tq8tko92qYqCdOE0Lh/jvafT6tFaPUO7twR48rziu9/9Ors7A57qJHz12l2mRnJuvUO/lZA1MiIlyadTzGyfu9sbzCvLpPLIWUmWJVgRpg1XeUGVG1Rdpsc7lNDHZfEnBVmW8dxLz2PI8VGHle4ZOkmf6WiLyoxQZMQuZjKeMJrkHE40N3cKTp++xP/hP/uPufL0FfYPdmi12vy1/+RXieOI3/iX/4bVToMPtofsJXBlqUEr1pxrKu6WCu8tvW5Gs9vGSUXpYTrPKUuPKUAtTvnnX/0Wt+5s0F8CVZWUI0HLaZpJwpjHO+vGOU9ezEiUJoszClNhbUVZVdy8c4/Pv3yZg91dXvzsT/G5z32Gw4mh1Wpiy5K8GjGuZoiqwXK/x5/9pT9NZSq2t++zv7XHwc4eK0sLNNpNvC8ZDnaxxtNIUpIsIVKeOI6YTYY4obDGobUA10FGEVVZUlUFlXE4PPM85+lLZ/jgg4+Y21oa/FMONLz3eGtx2Aftrk4wm81YXFlHa0UU6ZD4kWFAl/DBkbcqtMMqAn9eGIvSGiEEChcyl7pBFjkOdvfDnJw4pixKjAjv3wpPp9GimYSBpO1Wi+lsRqQ0cdagqgJ1I9Man0+Z5YKm0kwxKCRVnZzSrYz20iJSa5QQlIHd/6mu5RGc19w+WCWJDavdEZESrJ55nl/6y/83Tp25RLfdJlESM5siGzFJrJHe4nB0187x4dd+jfvX3sZIw+D+R0Rc4oNrN7i98d/z8isv0F9cIFOCchokpw2SbqfN+StP895HG2xPZiAntNISgcc6GM8laSQ4mMXBibaOCrBPUAUXHyoXwj1o0LQuqE45HMY6KmtD4opgW5SSaClRQoJwQT0tjomylBt3bvNbX/8dOmmKnc3BOPzmJmm/z9qrr/D2dBCqGQTVpCNqlKC+LzyYOrko6xP0RxK3PDkVDefhMA9T6NtaEAlBlTuuv/1N1vs/BtN1Lq3vMp4W2LJiVGqiSNJvptze3sPpEV6ntJbW+AuvZUR/9+9QHo4RWxXWOWbCsDcaMc89GEO20CJJYk49+yIH1z5P/u5dhqMx3WaCsTVFVKp6TTUIhRMaqWK81E92RSMSMdIJjHDEcQQCls50mY1yBluHRJFkobnA7p1dOssNojhhZe0MadKhmUUoZxEyQsUN2vtjDoczjHX0+j2KsqLRbNBoNOn2FhFCo7Wm3e5QFCVSRzSbXZJWm5GdsXe4xWwyotvsUZkSYR0yqnCTGSKDLE4wqiJNNLO8QnuBk0G+73HAlBZbWWSkqCY7uMPlICs4dLj5iOHMMzcCOx4z2PyQzQ/e5XM//ed58dI6XRFxaXWZOIm4u32X1Sxiebkb1Kf8kfPvAUOnGfPSs6f53a+9y6QyQQcdy7lmxKCyVC4kJ2a5YFK5IKPuBbF0QcWhXp6ZCxUDgCzWlLlh72D6GFbuAQRBJeToe8GDf6qq5KObH/HiM88QyYRxNWY2GnLz3Xfo9Jeo8hyXj2m3EnoLHbY3bjKbTehmbSY7O8z3tviJL32B/Z0tbt24WfOcH2x4f/Bk/t3p2hBCkMRR4AmHFBuxUpxa6PHc5bNEQO416copsqUzVLMhbvcundNXaGhHNdrFRSlR5zQv/+zPsfvuB+y+8R2ee/YqdHskylIc3EcmmsoYZnlJVRRYpYhURKws87yCyiJE6A1CgNAK5T3Hww85+jiflDxVUHryqWFiJmwf7rJXTHn19EtEcXDKZrMh3lVgHStNjVARcSb5Uz/zRW7evsntO9eZTme88PyzPPP00/xH/8mvUswm7N74gLlKuH8w5OkL66jRmPO9hMHQ00wTlHesr5zDNiIqZ4mbGTKKkVHKjVt3+c4bb9BfXGZeRWxuHRL5lAjBePYk9Ld4CpNjrEZJTywh1QpjFW998CGnVvtcXF1kqa3pthosrS5RlTPefePbVNu36aSaq1eusri2SrvbIS9gudejnypoRGgpiZJmGL1Xz3yYDA/IZwmtZobzjiSKmJYlzkuKomRQGbJWG2sKjBNUJkcIj6ssy+0OvVaD/HBKPV7tU61UeqXCdHJTBWU2Ad47TFmRJg0QGiMkss6RCSnx0uMtOFO78h5AEooIdSO+hzTN6C2f4d7Nd5jmM5RVxHEUAhPn0Qim4wmpjklkikg8s/mcsijxLsikax0TR4Z5UbC0sEw+yxnOCiqtsTY05VqhWOgv0Wgt4BDB4bTu8eRphEDIiMppbu+t0m+VPPfcy3zlL/2XNNuLZI0mDtjd2WB0/wb9M1doqj6JVAhraS+eQuuEw4P7zJ1ByG/Rai7wk3/ic/z+b/4ut995k9aXvkSz2aKcjLh5+x7X726DSjl1psON+3M2diSbBylrvQnnlsbkVcjWT3PwhGxyRUJlYowxfJqT6P+tEHVl2QWavLOhguGhTsJZKuuwVfmg8eQo2FAKLRVKSppKk81ydrf3+erO77K8vMT66VPc/f3f59LFi+go4s1yRunrgOWosiPEsV2XcDQb90HlorZhgpCg+pRlG74vAlURhBeMjUAJTyzg7Xdu8/NfPk/aa7E3i1k6qxiOPW98e8hip8s0L/jo/oArpyJW0jkvvXqZ8p//TQbf+ZC+dkz3J8iViH2TUiqD8AZhDVm7S5p1YLlB/+kf52DjayTxMKilEVTspBBB2UxqvIhBxkFQSMbIH8G8pUdHndKK/eGQbrdNkiYURc7goMD4gripiEyKT3JavQRnHGunzvO5l3+c86fOUc0nCGsRMkYnHbJmxUppMBakjsiLgiiOEEiSpIG1jkgnIARx0kSqCBWnxM0mTAqcd8wmA+ZzS9RQyJmkKCtUAlEpMSKnqgy00lCmjKGlm1Ri/KiW4wdCPjPkM4OQDp1GyNE+g8EAKyPSLGFmNFYqJsMD9jbvcHFtkWdeeIHz585weaWLrgqmsynriy3SRhruNlOFQX2q5i3qiLOXLvCzP/eTjMY524c5w8GQkZmymAjenAgcgmElMc4xqUK7Zun90X5xjMKJ0KvhPc00GJTB5PH0txxBSlnfSB+Hr+ViBIJbdzdZWlzBK00+mVDdvkl+cEg+z/HlnNU/8Rk+95Nf4PVvvM7h/hbxasa7b3yHqJjx4isvcev9a2zf32I2m/G9fRnH/NCHJoP/W/GERCJSSrqdDnEc4+pZK91GyktXL3Dp/GmEczR6i3ilmB3cx1iIVi+RLqxjJ7sYGXqA8vkU4yVFs0G1dppLF84wy2eMDneZzUvscESUprhmh9KGjJ2pwiwFhGBeOpQMwa6KNFp6nA0DrIQKa10LZzwxcNZyeHDAnrnPzb0NlNhgmu9xqrPOhe4pWu0WIMjSmNOLDZaXOsy7bd55+10+/Og2RVHQ7bS49dENGn9R8cLLn+MLX/xJ/vYHH1CUnqI0ZI2Exuoi1eYO7ZkjbWRoIfBlxfOv/Ulu3HqLG+P3sKYAJ7izdYiMFGvLywgp2VX7rPXWuHX7RpBAfewQoTrlfRjkaC2xkFjAGcOv//bX+eJrL3P56gtM84rIDZiNdvnW7/w6aneDqrS8tXaJL//pn8fhmE7HdDpNTp85TRw1kEmTVjNlNB0R6ZQ0yYiX+uRFSTUvmc/HWCspphNcFZGkGbPZHOtDxUBHKlS9vcU4iHXM2dOr7A7vgKvwyLqR/dNBFEVIqajMDC88Skd476jKoAAVpsyFPS44DxJBmKURRcnxLuW9p/IWLSLAI6Um0hmHwwHGWnQaMRoNkRNYW1hmeXmJyXTK7v4epiwxlSWOFHEzBe8pi4pGs8V4PCLREcW84HD/sFaoCnQvIwXaQ+QFZprjioqoozHOPsZGXYGQMZ6ImelwUD3P53/uP0NGDcpyzt7WLqPt9yhG95gc7nLz5us89fIvcG7tDLPRgCzWvPjTfwXZPc1/99/+DS4UOyyevcepp1/mK7/6H1J4QXNlDWtLrr3xJn/31369bpIvOP/siywuNNneHYQ+0r0MQYkSJUoIJoXAYx5knKVA+idow/PB6ceHPglbBxvOh4DDVmFel7IWjkQ7pMRLRakkTmuk0lyKIprWUijNcF6yu7GNnxY8e+ksq1ikjlAm2NEHvY3h7wYxKXGcVJQuBD++9lNCki/M0fhRNDX/MJBCsBQLhHccVJKDytOQcHNzn+++s8NP/YSHvMFgolg7v8jCR2/z0tWE/bFme7LCc1fPcOF0j+Vyl/f/+deRpWNkLY1Dg5p7tmNNfDYmszk4i2620TpCW4/SMXGakUQ5QiqopfiDclgYEI2IQjVDRUidoJ7kQKOMZ6TLMfFyRFxpsrmmKgzKO3Rbk+g4NNBKQUP2efHyS1w6e4V2o8GUoN6CiBC6RCeQGI+QmqI0NNuCOE4oq5JWq01ZlDjviJNQCsoaLWQUg9AoJInXNJoxlZwiMkc59ySJRAkfypKloNdsYbVFC4mxDqElURQDs0e1JJ8YxnimE4PWmsiXFFv3uLM1RTfbZI0MnXVJ0x0OJkMOdnc4f+kCq2fO4KKYCSmdVkbaaNBMa7Niq5pDWeGrInDuXImKYy49dYm/9O99mQ9ujvjgnbcwuxUHhzm7pSMDPhp7+joMDSpd+HI+NIIDx9J1YdcRRFFEXglG88fbpKG1ptloHFOnjjYdKSUqjOrGNZosXn2am69/naLIyccTbGmoypK0kVGgONgfMjs84Pr779JZPcvNjz5EeMc/+8e/wf0bt2loTf5QVvNoIxRHsqu1TuLDGt5/sA28bmZ7AqC15tT6KaRWWGeRQtJvtzi1vk6kNSprEacJZjahmgwpS49sL1O5QGcSURMrY6ZWsXN/i4279yjyCjEvUTrGe4FuNEhbLfJ8DmmbcuYQ2pN2EyLrKPf2MfMZxniEkDTTlIjQqI73aO/CnIgnLNCYFnN+7+Z3SRqSzAlWFxdZSxq0lMT5OUljEVNW5EVBs5kSacWzV57lgxsbwUFLG+R5RV5ZNja3ePq5kqeeeYr10+vcuXmbbisBPKvrS3hruDs9ZDStcNYz2t+l11nmc5/9BdrZAu++/U0mszFnVxZxSUmaCRoxLHU7NNMUYQ3mCZl06OsMu3EVEs+cB5+rkvDetY/4wuBPYWzE7HCPvc2btLtN3vtgTJ7PWXr6Ve5s3mDz9l2KwnLm9Bqrp9boZIvMJ2Py2RwtYvLCMJrt4XHEWZNGs0XlCrZv30PGink+JioyEp0yG82ROg0UVu/xrqKYV1hrOL3c5u0IilJi/KdbFUqSBJ1kzEd7eFeiVRshPNaUgCBKYiKlwp5igzqPElDlU0QUo0SYnSGVxHobBjcKkEqgowSpYvZ395nNR2ghaLZaSK1xHuIkZqHbJZ/PEdpTVRZdVCgJcRIxHo/AW7SWXLj8DNc//JA0iklVRCEMEhkyz0qCVoh6oGygvTymQENIhMzC/wrOX3mW8XAXbwak/hoJ12hFA/orDrcCt28V3N98GjkbIZRiYfEU1uacff45rrzQ4dbbOzy3exuEp7W0xtLSKeKswb0719ncHaB0xMb2PZCS2XvvkrVXQ5WTMMV9+zBmoRH6MSbTCueqQGfVmiRJnjjZKXE0rwVCv6Z3oTfDGERlkKYKSWNra1Mo8FLglMJFlmYm+eLiAu7iBeango1Ik5Rep8lSr00SaYSQLDnJHSk/RpMSMgQQWI+XoXGe4yHlITBxtfrUEwUhySJJ5ByVd+xXMHECW8I/+60PeOpUi6Ya0yh63L/Z4c/84o+ztHYeVJMv/oz7/zH3H9GWZWd+J/bb7rjr3n0vXrzwEemRCSSABAqmUCzTRbNQJEU22Vpqtno1qbU06KWhNNJAY2msiWY90JJWUy1KbHZXk2KJRZBFlkMVTCVMIn2Gj3j2+nvMdhrs8yITINlid2dlxMZKE5GJjBv7nrP3931/x2Y+J9SPCI3j0i+/yns/uMu9B6eIjSCsLOP9yAvjfTAVMgZMMUCpVPvEGNE6w5gcKRUyKhCxz89ITSBSgtRInaF0jtTPsEZDCk0MkcXjM4aDkvrEUmUD1mvLeKyxrkP6SBZzdi9eZH96kUE1wGhDlpfJSUBqlE2BVjkSH6AYqOT3awyttRRFQTkMdG1HURS0tkPnBXk5oIuRZrMlzyVOdAgTaNbpgW+NZ2QEZILM59TrFpFHsiqmDI2ug6cEtXkfadsEPUbt2azXtF4RmobNZksoLB7Bar3l7HTB1cu30CYjCsnZumE43EVpA3TJd51eROFcOhhChGCTNZ3WXLu+h5KRvdHnWd23/Je/8yFLn+C0xsOsg5ECQWTrIJfgQ/pP2thnaJC6YikVZ2tL+wx49H+SOqU+0XCo/sDyueHal97g/ts/5otfe4NHxyuG5YAHf/YDKp+0AXfvPeLw0TEvbDqkEAwHBcVkh2Az/HJDFtO+9IZ7qZFRijxPWS4hpIPXx+QAE0NPEYjnKeuJTvCswLoQiT6AlGilUUqlz+8s0lliu8G2a+rVEqcKhleeo9g7ADyt8zQxo2kCy/WcR4+OuP3Wu3TbBgYDstLg0GSTfWLXUA6mND6gh5Fmu2W7bhHeJzh9OKTZ1ggPw7KCLE9TzxiJ9YZotwgkWsGzkpQ7GYz48vOv88N7P8R1kYF1XN67RlVkjMtdqmLAbHPG7OSM1gNKceuF5znbNOk5cR3j3RHXr1/h8tVrtE3NoMz5y9/+S/zjf/D/Yjnz2LZG7uTkg4qLoxU/enDIw+sTXvx8gZKK4WiHV179GrP5IbfvvM2L167w5S+/xpsfvMVLN8Z4seTe7XtI0X1cIDzVFfsmPfR/CIyWTMucW3slL12bcPWlL1JkNcvZY9rtjMXpGZcPLvDROEeajJ2h5+jBPbp6jffpQh3mFcGuoFbMVwu23uNCZLlc0XWOTCdL3MFoCMqzOFsm15p1w2i8iwgtUrUYmxNDwCFo65q26TAyo8oNm9Z+5gYPeZkzGA9plgWrszNAYjKD6rkjSmuIIJXsjRMi0UGM/olIXClFjBEVIjIKguibKSLOul7PliUDDCJSwqOjE65eu4YWyWnLBw/Bc/TwAdIoopTsDIdoJVg7y2BYILTGbdcQPLmUxCh7O1JJMRhT5AUaSQzJhehpLCE0evQc6JJhtuVi/oh49lMOLgjGoxalEo1JCkcMkfwVye/9i/+On5xp/vrf+9+yWC1x0fP2D/+Qv/u/foXv/HbABYt1Htd/H0YrRju7PP+5z7M8nvHg8IjD1YbtfMamAaInRpeoRi7leGy7hMiHmKyIrbVYaxNq9Syt/o49NxEJ3icbcx8Q3iI7h3IO6Xw/TBNEJXE6EH3k61ev8tr+RZqyouksw+GQPDPJ8cw2YAPRZOgPHyN3shTIJ0RfHH9iwHferPbhfIJUn0RCPxh9diy7Yoy4KBmqyKgXqXcxEr3g7fszfvZ2zY3QMtmvufrFr1JMhsy3mmZ+yOHtY9758R2wGw5Pz+i6DZ97aZfL45y7H55w/3DN10YF9e4tTkc3kPJtVFYgZDLeiIiEbpgcIQ0yOqQIiF4Afp6fgcwSu0cURDHgFxkb/1PXp9Zo5ANNLg2uDWznNdFp2tBRZDlGlLTNikxrhpMRB5cuceXKNUajMaJ/YAkQkSgTcC4VY84FTJajsxyPJCdZ55kenhVCUAiIQqGyHC0gr0rqds10vENjFwx0wfGjJSITuKFC5pZOtMSoaVtLlA5dGEym0PmnDxn9ey2RivbWRULrKJVkf6ekcYHl6ZL5qm+WnOdo1uBURV1vKKe7+OhxuHThuF6X4WOKO/W9I0Rf1EZkCktSkoGYM608px5uLxMM2sQE71lgqMCGSBcjBekCEyRBeBMEPkZMJokhsqlbxFMunL1z1HX95MdaKaqyt38kkF65yPTKFa6+/jpf+Y3f4Md/9hbLR4850JJboz1aIdm/dAn7+dfZv3SNocq5/OIrHH34EX4zYxNatsESnnDJ4hM7yTzLGI9GSKUIIYnSYt9cEGM/lUkTGRdh27YcLu8/nc36xdVrSoyQ7I7HXLt0gWuX9zA64JoNdr2g7RrU+BIKT/QtnTQ0QXN6cshmU7NYbpgfz3jp+ZeJTcO9uw8oLu+RaUCV2NjSbTZ0bUvTWNrW4VwE7xhkyaLauYDquiQSlQCK4OwT6kd4RlCg8zUejfjqq9/ig7P3uHHzCuNqysHFq1R5Ti4qYogc3nvM0YPH4DrGoyGTnQnXr1/j4GCf4D1KwHR3SlklxEdGS9d11Daw9ZL7h3MmJtI5jxAwVgEdPZAQKG8teTHglc//EqODixwfP2K+esjf+PbfxboZa+/Br4i+YPOo4XT5LDRp6V0si4ovvXKLL71yk0vZhsmwRKscdq4ghOXho9tMhhMmo4L54RHXL+wTt5bj+48wmST4QLmzR6YF88OHZBEKGdnNcurZjHXdAQqpI11wyKbFB09VFCxnc4TwLJZrtBIYI/CdRNkkvI4xUrce51JzYfTTqYy11lRVST3YYbtYsJ4fM5zupfNMprP8CV0zJFseKQV13ZJlef/uhFTIRYFzDmmSJqtutoQYKasJXXOCdZ7NuqbebpHFiJdee40Pf/IjpBCYqgKlWNRr7CZg8oLJaMjZfIYXgrff/D4Bx9Zvsb2gL3hHjBKTG8aTXVRm+qC1iI/h6bjySY2evooYXeXi/ppf+81/ystXG3xIIXzB0bsceUKMZFrxwvNHNJc0/+p3/h8UeoALHeuzN8n/QsZf+ZuX+ON/ueDk8U/YBscl17Jz4RKL2YyTsxm/869+n7NNzRe/8DpHp2fcuT9P9JWeFhRDpHECnY8YVxnBe9bLBd4n62fvng0U8nydj/LCk8FZEqwr5xDOo61DWk/0Hh96AwMl0TEipeRb+wfkWYYsS7TJKJTCyL5JRiJzg8sqxk5SLmvWkwoB6F7uHfr6N8KTJiNC70AFIOmvXJ6VTiPRzTyRSKkgk4LGRqyEded5894Zt775FVb7z3P7nuXlnRFC1JzNjnnr+z/i8PCMHz04407jcJ1lbRVfuDrk1VuX+cINTxDghpeJKhk9SJPxxIgupkGDUiZZ2UaFlBGkIgqNI0MIg5QGaYYIswvm0x8af2qNRjsLyDriC4dAJKsu6yAkC1SpFKoQyNyws7vLdLqLkqlhUFqDVGiTozNB21oQCpMlJw2d5XihkDo1AgKoKt0X6JIuRJASpRWXLl1jsneFbVjg3IR6vqWuGlRWYYNju/GYPKCMwjlHlBnRedq5x7efPmT077Ma64kxIJC4pkNqwSgXrHzBysG2s4TeSu7RWc2DB494YbWiKjJGpaZp1mRmlNwgvIV4bs4t+j88SQQUUyMSHCLUNOsVp6vI8TbiQvKeDjFSEml9xAWBD6B05DwmQ8sEkHgEAyUJIbKuO542G1IpRZZ93Cie+2pLKfuJXUDrDKtzvvxb/yGP2w2Bjof37nH982+wGo6YTve5/84HDC9f4bnXPo+Siue+8CW+8/f/PiePfsS6W7NsaoIQT/p9ATjnaDZbCpNRliWKpHeBhKYkzmjPI40CIRTGPyOHIAKTGYwxTKcTLu9f4Ma1K0wupCZBNnPy4YTSB2rrWa3m5DKjunAZMxhj8mPsbIZtLTdefhElBYvjUzLpePjgEaNhjiIAkbwaEIKiOXuI9A7jPEZLcpPjpAaTMSoKJDmbKGitJQrVI0Dp5HT+WUGCoO1aRNhydeeAv/DS17hy4TJZWZGZIcJrlo1jNl9hO8t8vqYqCur1gt3dKdPpBFsnwwvnLMYYunZL6Na0mzkPj06RUvJw4Tkol1S5pm4spYx024YHd+8wPzsiywp0VnCw/wLewez4IaORoXMfMVveI64kxbBjuhvJy2dj76QUvHTrJt/+1qv8tV//JpevXsa7QB43FHu38KNrHN+/y5tvvc9ssWV/UFFUY65duYxsa2bzDRsnuHT5GpNRTqw3rFykMoYqrziYjBhNBvzBW++j85zQOhpnidHSNJo8VzhvEwIZYb1qKEcZSli6toPo8cHRuYCzok9o7vjYluCze3eVkmRZTjkcM5zscXb6GCUETW1TMSEEIbhEgxAR75P7z7ZpmAzLROHUKonjZRLImuDRUjGaTHnu5dfx9Ybt7JQoIwTBerVhRyu++3v/HOE8Qqs+Z0IijSG0lrIoWK3WxCjRytAqy2a5Yb2s09AwBETURKkw5RBd5AijQfZIuBc8DQNSITVCl1wcnvK/+63f4bmDBwRv6doUEAoSKSwxBKJIA5DnX0xDg7v/5Hd5+yPB/p7n+ecU3u2jtOTl1yS/97v/GKG/S328YXr98xz5Ab/3R9/n3Y/ucu1gnxefu8WN515hXf8JDx6dEqOj9wPDBU2uMpJ+RJBlGdb2TaGU+GcopDQkw1mAJ/ea9AEReoF/iETv8NY/CYdMjHXPpFKMicQQyMsSt6kJPmBygzIGFwVCaRo0WmlurWru5o51odOz+USvkjgF54M72dO403spn2g23DOhSQMlIhOVBuMSQaXgrEv6kigiNi94eyb48ff/mFsvv8FOs8vy/k85ff+UVdtxNF/xqE7W1p87uMCt/YucLJZkWqK9R5RDfv1//rd451EKyKW3rj3XbEmdaufYW9nS/zUIjQ8BjURKA6oEPUDoxad+zH1qjYYKGlUK8nGBiYrtaYMyiZ/XdjXBWRQVhpxhsUNhCiDFoEcTKcoK5z1d59BGYrKsL3JTWmGWFQRiL1rtvzQpEVpj65S9IXxgf++Al669xuPD91nNauaP5jjnsN6lBy9oggu4zJINIsoHBmqMzTzb+NlPDyLgbcS2Lrlv6fTilLnn5u4OTTZmfecxIXoKETg8POKj997jpXv3MVpS6h2s6+FLlSXqlAD8NvGdiAka8xZCEgvRLtPh6ix3Tj1bm1LECxnJCPgYaT248PHMKfZThDoIHOmXyE3St2zaZ2PqIs495flYLBZjSnv1QmNcYo+89o1vMX/0IQe7u2xnS+58cI9Rt8vcOz73+pf49t/4G4wnY5QIXH/pOZ7/6pfZ/v4Jd995QAz/pk4gRtg2jjDfMLDJGOF8XhdjRBEpijyJ/IA0u4mfccny71hCUJUlO+MRe/v73Lx5g4sXplRFQZZlyOGEbv4YtzojV1DkGjOoqAYDop4iswI53GPfBaSAxfEhUcNgXFGsNY8eH1IYSV6UrJrAhQtTCnmN7fyIZr2m2ayx2xU6z9HS0NYNUUUGo13yoqSzFhcdxtV49+x4owMs1gvevfsDvv3aN9kdX2Y8OiArKpTKmc3ntC7QtBbvA1IqTs7WfPDWW7z69W8yqAp++Na7vPzcdYwS1NslQUZit6HQkWGheHi84NLlIZnRrFY127pjd1ySGcV8tqJraqztMFmJILK7d4XXst/kJ3e/w9H8+yh7Ea8KxvkLtMNHiLh42ltGnmV8+1e+xG/+yre4dKHkc298nf3nXkfgEY/+FJSB6zc5GHa8/+FHdD4yf3iHLC8Y7l+km82YmJIRER02bA5nFIMxwQVUUaJFQjIvjHeQwaElyDynqVuEyIiIFIwoNK4VDKodmmZL1omEDgcQMuC8wzqJ75IVZdOm4c1n/s5GyIucYjykaqZMdw+4/+E7CDxaG7zztK6FEMizDGE0SkqMkKieAXDOYQ9RJDqnSoiS1oZ8MGS4s8NkMsFHS7vdElSgdYGqMgSpkEJQKg3BcWE0ZSVX7I+nKBGZz+cslytcCElUrgyuD2JMRbvAuo754pQr56PmGP/7M4j+PLczeDJO+Xu/9iY39j5gs/JUhWZ+tsZ2AesUmfY458lySVkVeOcoyoy/+td3WS4bvLXsTDOcb4hoLhwo1HDGD//oEYuFZ/G997m/EByvu4TCijRcGpQVN29c5f6DR4DoQ3U9yKKnBfUEBBKSJYSg656uHfW/a2kp8UIBHyPOQKII+0THjSFRctPPK0ZZjkISlQZvkTHgfUSaHGJAKUMsKtbLLWVRcMFadq3hJzowMx8/L+kdTH+OqTdGkjK/0jCvz/l4RuznBREjA41LnnUjLXpUL312Y3J+dCz4Z3/yXX7ZTPmVv/R1aizG5GSDAdNhya8Oh0x29qhEYL2aE4lY5ygzRZYPGUwv0Nxx6KzEVEUKZE8vPloIpDLJ+crLc/IZoHqdi0oNuMyIKkv14qe8PrVGQwuDwONCje081WhEPihxoSPWEYlGBEVoYZCXECNtU6O0QQiZNAecNxlF36mmv++cx+T5k0RTXRR0XXI5UlpTDQasNut0IOYlN6+9xJ/+ZIrSJwxGAxbzFp1BHjPqxhI9aCWJnUx+6rFFCZN4fU9htV2g6zxSRKrKkOeS4ODaS19gf7DDldsP+PDt95gfHdNuPJ0qODk+JS8zqsIgpWQwHKGNQpgiHfIRore0TlAYASJHhHVCNBA09ZbVJnLvZE2MMNSSSnkkIjlO9VoM0fvJeSI29D9HKranwywl0Hr/jBSA6cUSn/j72Af5CAnBdvh6i7OWg2vPI9uGv/2fvwirOT9+88dcf+lFvvJL3yTPizRF8oKyHPOt/+g/4uGH76Le/Yjw5PD6+UMs4GltQx4yBlkS8YWeFngu/A7hXNmRJn7PwjEoRMqDuHhwkVvXrzKpFLQrrG+QvkKZAjk+oCgnxPUJoV6hVo9hMETt7DOcTAgCmqahq1uCyRFFhV2vKcucTEvWmzpl3MSa9alHlwW1HrEUHpXLlBBeW6RMxZMVAdfVEMEolULCQokQgsw9G1N5SKjZqtliVSAoSVmM0Sqjazd0jidUvosHF7l7+x7rbcMf/+GfcuWF51jOF+xkFTtqwOmdxzzcv8vOuCCTng8/vMOq8YzGY2oveLioseuaGGFQ5lRlxfOfexVlikRp7BE2KRX5sCTQMeACalCwf/0S4kyziZqsOuRpmF18cl2cDvnrv/Zlrty6xdBYqu4E8fD7EBvYvYmYvgCb2zB7FzyMhiNWq4pus0AIj4sO72q6uqVxgcFgQNt22HqD9BatZNITSInWyeFQZZrhaMpwNGE0HlAUOTdffJGIInpP1zZsljPu3r6Nt2uCgxAFvqvpusC62bDtNWgKifsMszTOJ9xlUdEMh+zsXWL28BGrxW0Auk3N7PSI1XrJ/sUDxnt7RESiJkkIMiWeE0kpzvFj8woRIqPJhMnuPkdZRrdtMWUKRBQy0nUdWuqEDgePNrAzGWGMJi9ygu0Yj8cIXTNbLhEhkPdC0s4H/LkuMApG1RQjNMInGmvwPUfpM17aaP7Tv/gh33jpXYKzbFYN27Xi0aOG5VnL40dQFhGh4ItvTBgMLAJFcA4UjIYpT0WpiHMNMWY4Ifj6N4b8V789595jiwuwaQMxCqSEnekOeZ7jIwyHJVJafDA8UfvJ7ImY+ZPG6InyonHu2UE0YvxYYSX7YW/sdRQiJrH4+f8S9ysmfQXw4t5e+ve1wZQDtvYMU2bIwRgVHILA8brleL4my3J2dwyLzYbnusB2Kul00mjIvr5Bpnv9nEvlOHeeOv+0z0ZVAn1zFFPg9PUBZEry/iqwdrBpIhfHDS+98Apfef1zDDnjaHYf39UokzHaGVLIRHmqt1uCiFhrU90cFJrAom5pNprBrSsMDwraBfhzLalId0PCM+MTJpDoqWa9oIMgUsMR5aevC/r0kjmkQ2cCURm8FoTOU9uGEDqygWZcDFC2oKqqJCLqvZjh3FUgpRVmmUoHZYi9Q4Qgy7P0RYWINhKBoCxLrE38WSUFmTYQk/D28v5VXrv1ZebHD+iGNbKVmCxZxxEsUmj8MlDlhlwpZJteHvOUahgpI42NaJ0sPdtOoKscWU64cHCJSy9+kTe+9Wt85x/9A45++C5mchGvMuqm5fDRYaKg2Q5UTK4VvqGrl2zPTqlGUzrrcTFRC0TY4l3Lydmcs+0Op2tHppNH+G4l2bYQrH/SaGgBPkZc32R0faOhpWBSGpZ17/TwdLbu31jncG06exJ1ChET59a2rM/OEAhUMOjMgBpw+eo1brzyGio3ZCrHOZcuWREZOMHVazcZPf8q8g++i2/6Qk38wnkW09637TY5DEmd7nQhOb8+zp/zZ8V2D0AISVVklHnGYn7G4qRjWBpGVclw74BCZegsR+UlYjAmNiu6swcsb/8YdfE5xGC3H1IKhNa0zmFDoLMtgsiFCzvUa52oFCKjW52R6V32dwZkSnB6coq3Hm+X5FrjYkzUM9tiZEQ6nxCB6MmLDC8Ed1fN0942IIU5fv7SiwwGY65eew0TJZv1GfPVMafbyGo2Z+/ggIsHu8xOjjk83XD3zj3e+sH3efHiAb/24pcYjoeJInG64e7dO9x+fMj3/+xnTMYVeZ6zWwgq6bh9tELLiDGSKzev8cIXvvTEHST4FDUaQ2R5fERel2iu8+j4A95896cEK+nEHJk9/X2TMrmvaGXYv3SRTHpcU6NLSfTb5N7mN0gJVWYSXVZLhFG41Yz16SHeObTKkqAxdrRNS+g6WqXJW4cn0SakVqzbLQUDlDIpL6afdkZnadsVzibEqSgLrt66ygdv/4y2s4QQaDuHcw2Bjr0y59q1i+xPB/zud9/6zILUYkhFlDGawWhI10y5cOMG9x59wOLsjMFkh7sfvM3+/iWCtdTbmnI4IARPlpfJHvVcRKtARQUh4rzHuo5us0YiyLVGj4bkUpLplFNlSY1c8J5t25BFRd2eJRv0oy1lZqjygt3xGO89VV5Q1zVxm8Kjm64FFclNmqaeF9JSgHIb5Gfs4AUwypZcMX9E8BllrmkU/OytJcF5Pno/8tU3Digzwemq5qMPN2wvSQ4OQmoQAkiZNHkheoiBIDzOa8pK84XXKu48Wvxcs6C1Zn9/DwWJriclUpBUg+c0gX6dT+o/WRdJ+ezcFT1Gn/RAJF2n6C/CCL1wO436RP/cRhEgCgqteePqZcajCVJKXIx4JFk1wCpF1ApFxOSRzBik1kiRtEXM1wzyDDsyPRv845k8QhBCUmFKwSf27mnt0r+5BIkdIoUgU4lK9dwQLpWC95aCdQ2/8vIXuXbtZb701ZeZ3/8Rhx+8z2LdIPICk2W4ztJul4To01DPBsoyxwVPcI5H6xXttuLC1THDHUm3ik9AnSRdkPhQP/nuzp+qEM+fO4lAEYXsE9w/3fWpNRreW4I3SC8osgyhNdFImjpiZcu6jgyUSYEvSEIIdF1LZy3GZAk6jKGfPku0Tvz/GGyCdZDEGPBdi1KKEBRaKRC9hsF7pBB458hMzt70ItmgRDhJ3CiiBZlLBjuQ5RrfWjKvcSoiChAOll39//f3+WkvAeRakBvBto00nUcWFS+8/k32XnwV4ZZEEXnuxVe4/tw1vvfm+1TVkMwYiqJks91wdjpje+kCKlja7ZrF4V1+8qffo9tuGE/GNE1HkIoXru3xwo196LbM53MeL4acLbdUmWG9brkw1jw6TbaJsZ8SqHPzBpEycftsIZQUbBrH6bqnTT1DL3aPYTyxnj0XRErvUAhMlpMpyThTKCVY15Zuu2b/4h5KgHOe2dFDHr31Jyzv3uVeLfjcV77FH/43/4i2TcGEsr9OElErPjls265JdJYnGwc/N1k5h5ueEepU0pBI7j58xLbesjudcu3KFabTy5AVdN4ROlDaILUh6Ao3uEh7chv30ZvEahcxPsAJQ9M04B1aQZln5GKA94YsOtbzM4QwWNuyePSQcjRmNBwxvDCl62q2a8N2u0qhkd6RSUuuFZWOECLRZMmdLbpnYt8ApDI8f+OLHFy8TJ4PsatTjud3OVmfsO0GeO/Yu3qd177+NcZ7e/zJv/ouIi748Z/+Gd/4pW/w2vO3EEjKqmI5f8Sbb37E7ZP7XN2f8Gu/8fVE2QgNd955n1JHolRcuXGd57/wJarRhBgcbZMyXaQ2OO8J3vGjx3/ETn6FD09/xro7Q25K7pwsmZ89fRqG0pJqZ8ze3i7TyRR5+SXMZBcRa+KD7xKbGcgSGRyjSrLtIjrL6ZwgRI9UgigKZJQIqfAWrLXkpkDKDE+k7jqE7S2+ncCrSJYJVotTBqMS221p6g1tW7NeL2hbh9GJC981Xcp58AEfaqIQ7O4e8J/97a/yyguXOZvP+c6fvp1Qk89gPUlXNooszxiOh2wmUybTXR7de5+bg68glcHkRZ8xkM4dby3VZIrQGiEF3nti9IgoEbYf9BGJ0bNZPKLMFKu2pXUuic/rJjVqzRalFMv1AuuTVbMwhugiWZ4xqYZMqpJSa5oQUaMhdV3T2fSsZTpjsnuR3b1LSNlTW5oZ11Z3qSR81mS+zFiqquadtzdcuwpaWqrS8YPvWb745ct87o2vc+nyZT58+3v8o//2JxSV5MqVPnFdJFTaOt9P1CWhs7SdoG0Fu7tZuj/OM5WkoSoLRmWR0ldioLMdEQVCfaw5SBOp/g6Jz0yi9S+uJC5OtYE4l0WI1GCovgGI50wp8clTOjI2mmlZMBwOIUIXAlGblLHhLHVIeRyrzQYPOAKttXSdx1pHtYHTkUmNd5+jkWrG5LgW4NxZPrFhxHlj9PRXBLog+oiA3iTGR3Lg82MQiw+YzS2Xru0xu3+b3/+//lccnjymzjMuX9ylMjmqHxbM1jVt6xgPCgSCGCXeNsQ//X/z5fKXWZU3wQWMEggRkQSUFEQhcdazbteURlFmnzQ+SlY5CJWG+38O/sCfWqMhBoKoQNQRsQNu3mGDI8sz6pVFqMDabhnFLuksYuKYGWNwziKlIvhAFBKjkkglnIf6CMBHtFK0bYMxGqMN1iYnJqQgBI9QGuvSgWrykiKvkJvIb379OteLFzg9LDmJ9/jx0ZvUdU0TFJPRgOgiTXR4/9lPDyIJplcyhdG0HRQ7l7j0ha9SjioW92/jrUEQUEpS5DllmbEz3WG73lIUirptaKxgPBnz5h/9Mb/3u99hs5ixV4IRHmctm3XNHzrFX/wPvs43X4xsW89od5dCur7z9eyODG1neLy2T+BRRext436+uNNSULeO+aZ9ZtCMT66fe1miIEpNFJqiGjAZlLimJs8KCinZ+o6P7t1nsncBgUWEwOzBB3zvt/8RhRnwwUd32P3LI4aXrlPPTnC2xguB+sXfeYTgI859wkP8HGrun+XYO1DwjFCnfPAcn53hvWc4qLgw3eXWtUtk3RzRBQICO9jHIwlti6tXuHaLNAOij8R6SVAlYrBDDI7MSJyEUkO33RDWC1ieMdEq2WdOxglVLAzOtXTC0AlJVlUErYhNkyBmoykkGCK5liA0kUj7DInBjRbMVvcpC0OIChkjy3rJetOw3DZMqilKFexdvcH44lXWqy3v/PDPiFLidMMf//SHDMoRUmoGhWD3YIcXXx7z4le/jBlOEFojETRby/bsBJmXvPFr/wG7115AymSF6boO7xwqL5Eq2RherZ7j7cd/gG0tsSkoVcV6+xjbPv0nLgSPyqZMLr/M+IWXyco8jTU2Z+c8TdC7BJcxkku2XlEOx4RmRlQ54/HFJJr3Gqksy9MVmcnRlUYXGmUUPga2TUtwCd1stmukSiiGs1uikDTbFZvthrp1SBnRKrDe1NStxyiPs8nkQZmMq5cv8blXrrK7d4Hl6uQz3a/Vesndjz6kHFR47zAKxpNdDi7dZHF6hMYz3ttHZzlRGrTStJs1IkTG42kvbE/uRgqV0K/gicERXc3J3Xdo58cordjLdxgORhitWZlVEvXGgK0bMqnoYrKizqTG6YgSkizPCUqRDQY4kRq3ajBg07aUZYFWGdlgTFlVCCkJMVK0C+TsEGs/+5DXGCLjAWTK8Ud/sGVnDFcuw+tfzKibnPfevoMphly6+jy//ssnbPwpTdsHwEWLMb6f+mpwns5KzuaO9z6yfO+HK7QCFwRS5iBLiiJnUJbI6AlBJbv6ZFuY0ud/DuX+mO7751Hs/U9d56eHFALfdxpKSHRfqEoSsg3nTkt94SAipVZoabAelIDOpoa+7RpUDLQ+sN1uOTx8zNmipsVQt45NXbPtWrK1ZxAqNjIhF5K+yeit68V5ing/YBQxPNFpPu0VEDReUun0o6TSTHukZITlY+796T9k9+Lf4+7ijK0sUNWIcWlwTuKNRhASnTMqsuyc6hSJBNp2y4//63/Ar/6lH1MVrzA+fJ2V2ONxPiG/vGC7GuOsw4jAZFzwxecukusMHyJny5aTlWTZyd40Xn58Dn+K69NDNJQlG0uyaAgyoC5oBmGIFmCMwnaR6CNlWTIZTxIaQRKnid4tQ8rksZ0OIIHSCu97L32S7a3WGmt90jlLDUJQN21yozGQAiUD4+GU3A/55o1LfPtrOd4t2V7d487hX0CrK7zp/hX5SLA8bmjsluF4RPQK+OzTwZUiHVAeylwymkwY7uykglRIdLQ0mwW7F3bZ359y89oB08kQ22qcc1SDIS5C27T8zu/8c+7cucety1NaAm1rsduGYFsOH53xz39P8tLeC2SFYjrS/OY3XuN73/8Zd53gxtUhWQlvP9riI3QxWbF2UeBiJLEo0+i+NAmy7JxHC8FTL5sF/z2Hc0QESdzb5ZXXv8BAZyzjls45ijwn14ZXXnop4f0KtNTsHFzi5quv8Pb3f4pXJfmVy3zlb/8v+M7/+T7x9AFOhZ//xftfB0jJuD65bvjez/+88YAU1LTtnm6S+vkKIdK2LcPhgOuX9nnu2kWqsEYbDSJirQO7xfsW125oNnN811DkBaIcIlUB+YCua4iuRUlJbiRBe/KBZpjvEC/sEnTJemtZzmYYLSiHQ4I0uJMTpDFs2w6d5WSyzyLpGhrrsK6jDh6pJChJvX36U/nzpZEsTg+5f3ibG9Pn2N29iggl/+S7/x3f+vyvpxwQYcnKCmUcv/Sbv4GtN/jNgpsv3uTO3Tk//Oh9gnfcuLbP51/apSozGh8YDycorfE+cO35W4xKw/7V61x6/mW0Malocx1tCCidgktNWTGodtgdXgY1oO5qmo3FymNM8Lju6TdpAti5dJ2day+Sl4boa8LqETx+i9gsiYt/zXqxZD5fEqOB6CirMT4voCzBdUgl8F5iO0c1GoB3KRBORrwIuAiL1QzrLV0vlPauxXaerlshhaZutrRt16cvg+066m2yNHUx0nlPiIJBOebFG3tMK0m2eUDFZ/venjy4x+H9x3zlL/x6KtiMwZiMmBuCFP0wL2X4GJOjlWazPKMYD5FZBkEhVEQrjes6Qgg93aKlPvqQ5vQBbdcQvGNkRjRdi4iR7XbLbDlHGsV0skP0HTvFCD3ZocpKlNKczGZYazm4eEDXdSxXa2brVS86j+R5jhCa1lmCkrhey1cFT2fdU7GrVlqwM83ZHUmGVeSP/njLD/8s8OUvKryrORituff+W1y5dgWpLLaVfHS7o8q27E4D1VCjsoy66fBes9nCj99u+d1/ueDBw4a6g20H0lQgNAQodGqwnLOsVuuertLnQPRZE+dDqV9czxq6EUXsaUkJsQi9FvFcJyHgSfPEeYaUgK5pmZ+dMBpOKfIMHwLWO9r1GqM1QQq6tkYbIGzZbgPrTlB3lm1dI9vIdb/DOyJZ60cRe1lLTK5TPYvB97SgxGJ4Wrv088tHaIIkDwEfE3IlRWITKJGQHPv4Z4Rmy6zbxV+8AUogosMGx7ppE83QORCRTCVNqPep0Xt0smavynnruw8Zv/2Yz33tPQbjCc+jubEH8jdKhJlQFDcZVhohOoK3WNvQto7NtuFk4fhgUfLI7fVo1Ke7Pr1GY+NpNx4zLmiso2s6vOywW4HMJJnRFJlmZ3eMMQZrLecFmhAyOfLI1HwYlSdue98UBx+QKjUlSIHJC3xIUKQLgRA83rYQHUKWWNux3SSrvXeXcPqdQ17UN9FZ4OrlGTdGUw5HL3IW3sdLx2hnTDEumRWf7bSKfgeGmWCYSxabgMxyDl54mbIq0HnGzuUXCS4QvOXS5QN+8ze/yfPXp0wqQxwNWK83KG3wIbJarvjgzn3e/uiQBydbRrlBE7BdS7tZM1+sOLaPmM32yY1jMNZ8/vPP8+rVAV2zYnfk4P1TpFK4zuFjcpnyMR0ubeSJuChTEuc/AU4+7Zc69ofyL1jPxphse0VU3PrKV7n63E1UiOQmY9vWFFqhhWBYDkAI2iDorGCjh9TDC+hXvsBXP/9l7MGLXPjcmPrkMb/7X/xf0NsVH+PHn/gYMdK1Leu+yfDeP0GE0ocSSTzdPRtOXQCZ1hzs7XDj2mVGuUYahTSK0KzJBhNkOSZ6zzZ0FMMJsIPUiYISZXL8aNcLsrLC4hiOhhTmKloIVF7hlcG5QH56mgwKVnOyoqLtHKPpHsuTh5RG0XqP9w6pDAHJfL7Cdo7cJGjeSNi4p/2gfbwa57h58Br7u5c5PrvPenXEu0fv88LVKzx4dIfy1mtoneG9xWQFw8mUKy+8wOz+HcaTEV9+Y4/XX3+Opq6JrqaezyjHYyYXDtBZmvSHEJgeHDCsCvZvfo6sGED0xODpmhapcjJpkIDsOqKINOGUoAOCwGzVsFtllCIjPANokMlKdkYD/NGPqWcgiwoJuOWCOLpC3QRmnefx6WPeuTcjxAHXb75EOZwQmjVRgVeS2GzQwaDRCPJ+WCMRKmPb1Tw+W1A3W1aLRRpqSYnyHhFAGpFSlyPYboMNjrbtaG1C5FqXskyUzPj8CxMuTEuGBy+gV/fR+uwzRXBHkynIDG89Ji+wHXTe4lrLwZWb1HWXRMMmJ8sLhBIcHz/m4MothBKJLuXT9DwGT/Ae17Ucvv8DwuqYxtYoqaibDeuTFIrpvUUphdCKi3v7DIqSVc+Fr8qS527eYL1c4q3DlAUAXdfR2S7RG21H8ILluqEaTZgWg5QRHtKQ5SFDprs3EfKtz3An04oRgm1x1jEeRX7rrxTEAMul5gc/aLl22XD6sGV29hHTsaCuHaOBY1AkZxTrJLUNdJ2hbhQf3gt8518v+ehuw6aNdC4x4EWvVQjeksXk+OW84/RsnlKZz+kqJA59jIFus8CH8EyiGU/Wk4u1/2GMRMGT4p4+pJYQEC6kAVuILOZLZrMzDi61aCV6qr2js47oJCrTGAmVNgyMoZY1Z01L17Zs12tuXN5lPy94x7fJ0hlQJFOV81A/EZN19jmH6llBNCKwjGkeMo6CQkXyPpD7yYnsPPfvPGDFBGs7NnWHxJMJi1MC4R0RiezRH+UF0ihuz9a0reNCWdA0DiUUi6Ma1yiE0XRdQOoVWWZoiCyExBSKrNTEGLDW4a1jqDyv7Wy54ha0J8+wRoO1xm4Da2pyXZCbDF8LlIeutpS5JpcZ6+Uaa1uaJukhtM6SBV6ELEsx6akJ4UkWgeizCISQxOBwNgmUQ1+9OdvhbIP1OnWPtuVkdco6zFgcbnn46ID5bsm4yLn7oGETPU1sWa6XVJMhKjdstivIn9K0NERyDdORxmZjqukOmZFkShIHI4JNid+XLl3j0sEVtBSgIg7IjHqS/Oqk5sKFfY6/9zOOThcoITAyHQFt1xJ94Dd/9TmmkwojBmx8TZUPMfuX2Btfo1nc5sJeS1FltNvUaJwXyQGBDemyMSrpE5ZtoghF8fT7DB8CTetAgJIKIVIyrlQKFSWyKHntV38DneXkGkJULJtk7buT5xhAKIFXAo9nOJrwyq/9Fm9MplSTHd45mnFWW771V/8WP/rDf8Hs+3/y7/SeabqO2rrkLBX/LUxRIRLP9xlYUggu7e7w8s1rHOyO0FolKmLbkA+mqMlFApJ2uyAf7dE1a4TOCdahSIWDD5ZiUCF1jhgMURLUoOgHBIpOFjR1i8SjsNBsCe2GGJLLhXcBJSOZkGiVs9lsknZpNKE+m2ObDiOhMJLWPivMW2haS9007OzsIoqWnz14jzNb03nPtt6gdIbJSro6DQMIgavP3UrUM6HIMo3IQGJZzztGu1Mm0ylZUabgR9el5zcrmNy8RDXZxTULopB4lwY1KjOJCiNAxYi3DbU745XxC/z4/s+4NJ5ysDPg3oMztNLA00WEhFDofIQ3u7jhEKlyxOxDNq2iaRfMVw2nh4+4//AhDx8uyYsh4+mY6e4B2WaBr/ssmqzCCQfaJ5GzMghlsM7z6OyQw7MVnffUm5q8yIn1Ch08UiT9n/AtIjZ4X7NpkjZDGklrO7bdmqzc5Wu//CvcurHDaHefYjBBaeD27c90v0IUTKb7bOZzJnsX6JyjXpyhlUl0KdegB0OE1gQt2LZbTh8/4oVXvpQYmqTQNOcd3lpciGxmx9SLY1TXkSmFyktyodm0NfP1irbtKMuC3eGYMssZTMZkRc5muYTg+fFPfgIhIIWmMIrQ1qy2Gzb1FikTNQYFzlqa1nF6dsSF9ZLhYNKL8RXjTCYb0s94CQExOLrOIbAYLSkKzbVrBlDY1vHBO6cIBZ97VTCoFNutx1vJKEasFzSd5PDE895HNT/8cc27H3a0LuLDx1N2oiMC0+GAwhi2MWKdZVs3JHqUSOY19PQf8XHwopTySfL2s7Yi6a79ZKMRzjUb8RNqxPPJWojEAAbJtm3orCXPk8tWUgcmcwAZBYXJyHqziNnJgpGSyCzj0vM3efX5a9yPNfgn87peO5o0vTFGkDHZtRITsvGMNBoCyLSgi5rHPlL6wEQGSgW5kiiZ0uAff++/we+/wqaeoXcuYc/usLIdAyMQIqFDwXu0UnQIPlps2XaOF6YjlFZYnxzM1otAcFumV3cJmwbfRWJr0VnKw+nWETfMMKUk+IjvHDFAaGsq/4BrYX6u0v3U1qfWaJQHGj10VCbHukBeFChhWD5cYyrDZt4wGE+IHjbbDcprlFIYk6OUJi8K6AVT0cdPIBrnwqqUuSGVIniXUg57GC9GR9O2KQHWB7bNhoeP73NcP8SMLBMz4+LBHkKdsrY5J6fweHubbWjThNA5vO+eikYD+ilLgMHQUN54gf1bt8gyTWbSHlmtqBdzQgwYI5J4XklElFRlgbXJOUpKwxe/9AZ/8sN3eHwyY73doGVCgoxWXL2ww6984TplHmgUTIZDoqhoVwtCt8aYnJ1xxc5A89ZRgiF7ozoCSQweSaF9EUFt3ZNMiaf9TnsfaH+OjvSJyZCQXNi/zksvvUJlNLkEaTQ2M9iug6JACQkioAGVGYZmysWdXaSUdBHGecHxfMX+/gGvvfE1/vjHb+Jt+3PQ9jn87bwn9LOKf+t06ly19gysLDM8d/0q08kIpSTYLdIFVDWFcoJH0DWbHuGX5FlJVJp0jWqIgWhbtDZIrVDVgO3qDC9SGmm7XbJu5qisxG3mRNfRNFuqeoswFc12g5QR79JA4VwcvV7MaTYbJqMK3yq8bRFRIJ9yAv0nVwA+PPuQ6/UeZ+v7jHIBPGR7plgeW7YvLJkMp3id0TUblFRM9va59dprtM0GKSJaZ+S7ewyrCmJEG01wHd4ZBBGFZzLdJyuHxGBxzqLzIdKU+G6LVCa9n21N3a1xvuNm9Tmcsvwo3uGNz+0zLCUfPrjH2f6S9enmqe6ZLsfI6fN8/yc/4/kbl9i7cImgL3LcvMt6eQJ6RNMs+MlbHxDikIO9PQ4/+inV+AJ5kVN3W2QMaQpqDCJPuRExpjPgdD7j/sNjXNRs6w1GVcgQoe1oXR/SJySRjrrZsFit6YLH6BzXbWjbjgu7e7zxrb/EjWsXGVWaanIRKQ1qeIDef/HPhVrw71p33vspX798i5OjB7h2TSCyPDtFCQfCIZREKo02BiUFp4dHjEc7ZEWZxswhEoLvp8cts8N7HN99l3p2DDEwqHIKk9E2DbZtERGG1QClNbPlAiEkO7t76LJkO19yspzjCRglcc4xYIRtO+q6wRPIy5xca9ZNh1EZrl2wWateXO8IMTAWgethi3waI4MY8d4l/Y2IRNVnMUTQWtJsJL//g1Pe+HzBYjOgyLO+IfB0VlFvJfceOX7w5ob3bjsOzwL2F8JXUzBuCsh96co+mc6oI7T1lqZJtPDEKUoFu1Sp0cgGO9Bs6foh7LOIbIQQ+qyqVJv5nnaSQI6kOSGkTLPgAzGkgD7vJN472u2ScZUjY0AJQZlluK5DmCxR7bwmi5HLg4odXXPjxVdYO4HINJuTObqQWBH7Rzs1diJ+XKek7yrpRZ6l/Ysx6V21Bhckj4OgDJFJiAwVGBVh8YCwOqScXieOC7SRdEHgvcOHxI7YWMHjbc2ms+yVhv1BnmhYWqf7V2es5xZXR6odi6stk4OCvStTMpMlI6UYaZsW27aECHk1JAqFsylmIXv06csHPrVGI7aKsAosZQMystlYJtMdatcSraZrPQ9XJwyv7tM0DYUsiG1E6468qPqAvpjyXWTPWex5dzGGnu9uQURClCnxVEqs7fDe9xNiR2sbThdH3Ln3Nk2Yw1Qza864a0+5kIObVwS1S1F4HIZgHNZGbBefWr6LC9B1Ed1FTDnEaIkUsXcOIAXcKI3wqZ33LmB0OvyMlgm2bhoGg5xXXv8KX33jLf75v/wDWpk85aWUTIYjfusv/gZfePlF2uYtMpNRDgx1B61rKCqJHkzY85HrFweIOxvw/tze+0l5p4Ug1+li/+QB+0xwSc8/LD9/yMQI1177HFcuHjDWmkJDFjVmPGa12Sbr1d7lTNBP5JBP9CjCRzKlGQ4rtMn4yjd+hT/7h/9P7Pyk1xiJX/gYTyf19n/MCt7RbZdIWxHXa4QCOd4nmgpPRHgHtiUvB4gIMc/TBN215KMxUkhs12G7DpUVhBDRJqNrGpCScnqRzQc/RboaYWt83SSqVb0BFGfHx9imIdPQuAjSYIoCk1WIuKbdrimznGE5wrUN22eA/nO+ggj84NGP+OD3/j9cnBiuT36JH/z0p5y+W3OzuJ70Zq5LhXBILlWDUUmW5cxOHiAJ2GZNXg7IywJQ5EWVqAGuQYq0Hzor0Caj3SxBZmTFEKEMQRnazQKVVwRbIxQ4t2ZnfJkHZ/e5dP0iwbbEsMO3v/arHL7/T/mQz54e+snlnOX/9l/+F7z74+/yv/m7/zG5/iXWp4ds50v84i5Olrz50/f4p3/4Ln/rL3+dptnQtY7F6REXJyOkWuK7hiAUSkeEjAhMCicVjmWdtFddaPBSYNjivU7U2xjRApz1PDh7zPt3zljUHUWmeGU/Z2dcsH/lgCs3X+DicE3pNUX1CtqYROuVAl1NP9N3+/T4IR+89T1EVnL3rR+ye/UGSkSqaozWWcqnkQohUiE3f/SQvf3rvatUSNNnH5gf3uf+ez9CNKeJShYDIVqIhkgkyw3rriZYy6bZYoqcQTVAKcnJ8RGDqiQrckZhSDEcMigrDh8/YLFe4ELEti14qOst3jrIS/JMYS3sjveosozgPARPaRfEbvvUZi2in3YrJVFaIWTSj2S5oSgENkr+9fc2PDqsCUIznmiMEdRth3WSR0eOdz/qWDeRED92Nkznfq9hiJYyH3Hz+pXkrtQGXNfhXEoEp9dnCHmecUCPasif02s8Q7VyWr0eM4bzVO70Xp03G5/4FxOduUf1l41j63pNSvQokfSBSgrQBmcd0TiCdbjVCtqaaZWzP84pvWLtHBMvuBAURyY1F+eBdBGQQiF6K91wTrN4Ru7g80GtfOKIFcmVwEbBcYC5j0xUYKQjQjj02W3KaoS49gWO7v2I9x7MWbSetrNAxCjFMM/YqwqKLCf02RdZXhCFoG6SsdFqtiUzgp39MYNBSQwpG2c5W3L2YMZq3pFVOaP9AdlgSNsElsc1p/dWnzpF5VNrNMIqMBiNYMdhlSXMDKvVAn3B4VpPIUp0yFmvNyxXC0pdEpxHyo4oBCbLko2tiAkKE4n2Es81GP48/VqBVGmSJ5JOoGlafIw0TcPZ/Iz3P/gzPrr7Fl1tGWUlnooHa8vJRsB6jRw4XNawO51gg8J4AdHQ6TXw2XvNW983G20EJJlOsGLwHcSIMiV5UVCvlulCCSA6B8aQFzmdtZycnCKjRNqGSW64vr+DCI66s4yKnC+++BxvvPQCdeepF2eMRxXWBprtlqrKybOANpLp9CIXd8cYeUjoA/vOM3F6dzYyJbAhQcXyiRjs6a9zKPVcGPZkCclzr36eUVVSGY2RaZKkpML3HOOUuZFUWr63WnYheWlYIMpIkRtc8HTek+U5eWZouy41KL3V3vkB+8kLInz86dLHeUYOQEjfaak8wtWgM1AZPoDcHCPyG6yP75NVQ3RZpjCmGLCtpRrtgFDEGJI70vn72LY02w1d17KzfwXnPZuTB2TFgIjEdzVZOaCzDm0cUgrarsNZUFrhXEe38ZwuNhAk3nlEqAlOkec5ykQEzTNBnwrO41YtBwdf5fn9XW4/epfTRaDQAwaFIc8rYghp4tzbMXrv0FoznuzibQPBkRcV1WCKcykNFgLBdcTe7CJGl3RsWQHe9pM7j9I5tlnhNmcU1QijJFnssMDh7H2CO+LB8hD3YEh1acxRt366GwZA5Isv3+CvfeUSu5Xk+Ee/g683xNAQuoazxUNOj454/vIBe9MJwkv0sKRrGsRknIZBMaJkQOcVSjqCC9jg2NQb2iahrBpBbgoiPu1ZzMiMYL1ecPvhCd9/MCM4z0sXSr7y0g2uPHeDYlBQ6TV7BwcML9wiG5TQnCEGI0R0xKh44t/5Ga3dC1f56N13uPXiq2y2G/YiVEWJyguilGQihbopYD2bIZREl0UazrmkR7j37o+Y3X0bg6XIC5SWBCPofG8XSmQ0GuJ9SB79rcVtHIOipAsOFVKOxmq1wrUNBEu9XbNpLSbLUApykyGlpG1bdKlBeJpNh/cC5zzb9ZLhYAdrHTo4bPB0/mm8xX1zKpMoN/hkNRpCxDNmsjfha28M+Yf/5AwRPFXu+eCjloAgRNi0cLbuRb290oLeBak35+8dlzzXL08ZTCZYlYN2zBZrPsmGShlg8glCACkmwHb1J9wKn4WTLi1BSppHJBMC531ioJxT3NOjlLAFSe+Nn+hRNsDd4xM+d21JnE6JIbBdr8mMYXRhn8VqQ9O2ZCFgtzV3PrrPr/76L5EJ2Ks0i/kW11qmPnAy1SAT3UrQO1CJ/tbvzR3SHfzs7J0LkShk0rKIj+WdUoAXgiOvOHWRqY7sAPWDt4nzYz46XTPr3QIHZdLZTYdD9gcFRkKmFSqrkLoAJD5KRIzYELAOdq9NCFGwnG9TPljrOHu0ZH3WYYaG8eURXeM4ee+E5SIwP2s4Otp+6vfrp9ZoFBOFVpKmS9zzPOSs1w3FRUXnI85aJIr5asa9+3cZFVWyZVSJBpRlGULIZOEVIjrL0MZATFMw23VY2yGkRGlDlDJFpUuND54QAsvFjLd/8n3efPP32fgZIQhWpzXlLiids/UdoYh0bkXsIHZrsqpCGsWgLGnE0wm0CiFiHSgVic4l0aZ3ZCpDKon1FilgsLNLs1rifCREh8RjcoWWguPjY0qdUwjJwDVcGuSYvTFn24ZBZijo+OiD95jIXapmTdT7CF9DlFSjEYiGGBpAo7VC0YutOHeS+JgbKaVgawOfLOif9iv9izqR888NEKVmOLmAkWB64ZiKMfnlBw9KIbQgl70fN8k1QyEQQvXTGk+mJb5z3H7nZ4imJtPgg+onDfLn2gcRP1bN/dxUKsbk3fW0N6xfUgoKo9BSoaWE4NLvdfcaEKiGY4rdK3jfoYgQWkxeIHVOs1lChHw4wbtkqemdZX74gGI4QWnF/OgB7eIUW29o646m68gnu/jO0zQ1o+EAmZXM5gs22w3eWUQEbyNN26GQaALCB7SzGPnsNGlaGV68/Aa/+uovk2WWe3c7buaP2b0i6RrDttkyHk4JMZCZIp1vwSGCR+sMJRVSCpTKE/fZWULw5HlFVgwTTdQ2SZsWU6IyIdI1K7K8BATepdDSLKsY5UMyNcV3js/tvcElM+WnH/42sdzw9t0POD06fdpbhvQdX7hkCE3N4vA2vrXEaJNDVLNlPT9BdVu+8up1NAJ0Tj6+hBkNsaFDKJGSlH1AIBGiAGFx0XH/eMGqblFGkhnZO+FliEyzWte89/5tnA+UFVwZaMxgl9/6yh4Xrr6M3r2MjjWlMAx2b5EPpxSqhnaJPX6LDo9SBaExn+l+jSdTfN1Snz5mPJlSZiXKFElJik5uW0LgguPRo4fs7V5CkoTfzWbN3ffeZHb/XQa5QQmVCh3raJqOKAVSeoKX2BApypxRWdA0G9q24ezsjCm7DIoS31qqosKZLIXCklDy7XbDarNBiJRgPp2O6XxAOE8bLdELLl59jmo0TVTTZsFo6NhkU9zTCC4VAqk0RId3ibOspEDqjKCep9q9xC//cs13/tWcw7knN+eBuoLGQufhSe3f34XXL2seH1uKXOICnC09Sgm+/OpzKJ1TR4lHcjJfEqJNd0p/QymlEPIcAU/fmwuu/8eSVLE/G3q+9PuVICU6JCMeT+QJfzo+UdWm4E2dnJWIEREjd+crFos59sIeATg5PqUcVlCUANjOEbxn3Tj2Dva5fOM6eTVk1jYslmsIHr3tEDvDpM0QMukwYmr2RD/kOxeCqz+HhOv/sSsFNAKkRqhXHSNjGnD228Sxl8x9ZOQ8I3vMixduML60x0cf/oThYMh0UFFmmkpEou3wUWLy5AKndZaGnn1N3LaK5WlgdbbEtR7nArZz2LZjMMnICsPZgxXLWUfdSDZNZFO73qjm0y1QPrVGQw4E3tTJPm8OO8OCOmzo1pZikLPcrhFEtDAs1wtaWyMiyWpvE/DBMxhY6NMJixgSihECTVPTtjVd26bY9TxPrizKIKQheEt0ljvvv8NPf/inLObHiMoz2inpvGWz8gylwUmLdhKtDLIUeAHz7RKtc5Rp6bz9tLbjf9AKIdLZJPKxnSV6hyRZMgo0wgekkEitCQhc59AyIkKHzh22c6xOjjgKmnq1YhUFewcXOLiShLzNaoHWGXXbcHJ0yMjkxHZMJWA8qlBKpMBDIvW24f7jJY2LyI/f4d79OZJJQWUkizq5JiUM5hkR6D7pLH6+GDVZyWByASF04uhGiFHQukDnHANtnkAQQogndKgoJc4HnPPo9E3gbIevW4QPCJGEXOdJ3+fAznnTE/tZj/QJoQsCEi83tTPPwtJaszudMCgLJA7yAbLaSXC+3QIR2zUpNEwrgiwQQhFlukSazQZ0hhDQbNeEtka5LVru0KxXLB6+T+gavLPYLjAeD9k4h0dT1xuazQobJePRiFgVNG3D0emC2nZ03mOUQgaBkslytIvPTqMxLgsuliXzxV2UMgzUgIPpmPrRgvUqPhEuapUhlO6piMlhJXiLEAJtMoiR6F0Sa8t0JJ9nt0YhsV1LssBM/wQEwXaJ2ic1wdWJw+s8TbPFjC5THlzj3vxNRoMxy3qGmFUM5Yg1Z09pt/oVHPXiFN8sCS7gpcJFCWrIdrHCt45xkZFlERcs5XifcjKl284ob7xO7Ws6e0LdtazmLVKDD47VepvckqRC6AKtE12tbRPi/c57H7LZ1Eids5uVvHprl6987evslSukMUSWVMaT5ROKXJHHBSwegirRO9eRWYE/fhc7u8dn+e6aLGc8nbI6OeTitevJrAGJiAKlTHJrDIHtbIbwnigF265mOzvi3T/7fbbzI66Mp3SdpSOwjjUXJlOK4QAbPNZ67Lph21gykwK7pNRomeGcp6sbTmdnTEYTZmdnNHWNkDEVcVLQdUlzUA2HHM9OEx1JKKQPtG2Lrwa9S2THdvmIvYFC7u9xEj2qyGC7/cz28nwFH7FEYnRkRuFcAN+xnj9kd5oxGSj2dzVHM8+2N59ICMMnM7/Te/jK84b//D/b4zu/v+byhcg//8MtsyVcv3zA117/IienMzpraX1kvan7ib9LGg4iJss/gXCL/r5V6dcM4P2z404IAmUykB87OokY6SJEqXrtUkIVkAKE6gdqiU62dQHrHL5t8FFy+/Z99i9dwLrAdHeK1poQ4M7jY772xuuML1zF6ZLV0SOW8xbvHO22RjF6Em1wTpB6ct/Gj8/JZ4V2ltLeJUryJAMk/fzHJYvsaRAJGROceZh7mNQ1L3/tG4yGO5S5IjYLXLtBxlSRmaLC5CV5YRBaQWgJUdB5wWwhWW8apIzYzuJ8QvJyowhSMTtpaZoO55PJgQ2R1jpa++k3tp9ao7Hd1IyGkrYN5EVO23piG4lOUjctAoF1jr1Jho8NXbdN8JZUWNfStg1N21LkFVFI6t61xRGxrqOpt3Rdg5IKYwuKckhWJmtE7zt82/Lwow85OXxM47fkuWC5duSlpspK6nmL7RSYDCc7hqOC2rbITIEQbJYtof7sJwcRsA5aG4g45sfHtE2vO7GKttmQZTl5VlA36VAWSuOcx9saF2as5gu8szz46GcE2/H8Czcpq4pgLa6tCc0avIVgiUVOduEqsEFnFZnRxGghCrZNx+HRgntHS1yMmL6BiOJ8iiMwKnXfrh/rhBjR8tP2KPh01vknqnamFHv7LJ1lZAQEgfSC1nmsS2mtuRIEJZ9wbWNMzma2555WWc6y7siLktd/+Zd487f/PixSKrOQoo88Sfxak2dgdC/CjOBAGEM2rFBFAVLhrePknfee3ub0SwpJPhigygp0jiyG5EVFpiEKRVns0SJAmjS9Emn04uqa6Lo+aFIiQodt1zSzQ0oVcOsZmxhAGhaLNVmRs5wvqQYVk8mY5XKDMQonJIvVmtNVQ9t15LlKd1R/AtvOoo3C+oiRSVj4rDxpW7dhuJexu38ZHyS71jJYaK7vvcHbP/gQKQRtV/cUCYWSEmcTVVTIlIUhlUnwuW3JihS452zHE6GokARv8S4VgAiJ0hmRQHAtwTuIsddiBEye0TbHPD78Id8/+xkXLtzAPlhzacfwnnz8tLcsCUI3c7QqiOM9UAOKvGS52MDukEF+GXX8L/BtQ8hGyGwAIlBvG0RWoncuI5xDFbvU25b7H/2EzXZLoTVRCLJc0HYtp8sF8/mG06VlOKqogbxINuBFMeQrX7rJ/niNzHaJwqCkJRtepiwyMuGIIdK2K7K9W8h8gJCGqEt8sJ/pWReVQGaKbFhSDYdJAItESpMcZNotDz/6KaeH95GmQNotq/UJdz98G+1apqMRXia3wKa2aKMpsxylVEr+XjU41yFkxPoWGzyZyejajuADTdvSBIfzkflsnoxclMJ5x6As0hlnU8bVuCgJAmSApt0ShGI03CM3GtfVBG259vJNXDFgfbLFP4VBfapBA9YFCCBFQEloO8vtd96jXT7EC810oNLAqKfq8YniMPZ/NxlI/s7fHHL5QPC3f2vInTsbyiKdXaHbsFicEjwEF2g632tMZRp4ASYTDAbVx5zkGAkBvP+k49SzctqRUAMpQcvUJAVDCOmzeiUJWoP2SCcJQfUibZ40A7uDPLneCIkUkqIsE9UsOPLgGVZjfvb2eygCt25cR5ucRdeyOpuTa91nUnmU1ulz8LE2JpJ0GaJHV6T4WPvytFeIkbVN+RdGir7hSPT4KGRvHiAgih4ciskansimXqLckqtXX6CrFzjhaYNDiESz06bA5BVCg42gSGiGi4Imarqun3b1AzqtNLXzrM5saj5cJARHjGnA2nYNzrtnV6NBK6DNKK0kOJBFZFAOWG/WqZh3EaRkXa/ZbJf4sCE6QZSKEARGexDJnk9K3TtMGWzwOJ9E3q5LiEOelzRdR2kTp1kJaLcbNqslmTTUDbguUgwV1Shju6mRTiM7xXbZkg8MDBR0kKmKTbtms7H4zdN5qRsfcQGCDWzWNevNlt1woT9sZBLfdg0ET/CWrvO4zvUQ2ZamrkEodFmiBgNKgOhpuxYpBUEp8rKgyAxVlpCKvBgzHOVIIxEhEH2CQlfLOSfrFheTc4MUSX8gpWCkoDSRS7nnUAZa//Eh8iy80k8EdIif8ybaNhtEaFk1noUOlEogQmpgFZFgHVablDSqBFIkjMaTmqpMQBEMIXqyIkdEk2wyo0BUY6pxhdGKiweXGIxHVOMJMs8xxiCAru44PT2ltR0eyXbbsZzNfk68/tSWEARdEYpdTJ5j8gwVLVIq1HAf5xPX2/nkjx6Dx9UrhG1QRKLQhK6mnR/jNzOUXVMvj7H2CF9N6Wya2p/Nlrzz4IydbM5ksqAYjijKJB7f0YawWHGydjxe1ikAMkZkDMgYcV6ASvSOX3R4eZprWOaMBpHOWtZNxw8/fI87ixmdkIhdT10vGI53sLYj0zk9vp+eo7yi6zaIPjtIKNNnIVRkeYWzHcF3KYU4eAQpzFT1KbHO1nTNmuAsUmUYoRnvXGK7fIhoNrwwvMXl1/9T/sUP/jV//GHDw5MZyGeDgiHKS8jRFYIU6BjZbJJ2pBjuUXdbLl+5yOHhAoFHioDvVrTLQ+6++yMMDd12xfDy59i7OUJEy+/+s9/l9OSMyXDEaKBpmxVGRgoJOR2bWWBcFUi3Js8GfP6Nb3L1xasoCUE4/PwBspxiijH5dI+oMoTfEITGrx/gWIK3hO08NXufocbKtQ1nZ4+5uHuJoDRRaxxACHTrBfV6wfs/+zNEt0RITXfyAAgUMVAWBYO8oLWetnN01lIWBuscQUS26zXrdcPW1oTQpWlS8Gw3LTZEYrC0nULLyHx+hg/n76OHINjULUYp8jyjC5bYBKRRaKnR1Yj96QHj/WtkKqOxFpNNeffDGiEdXdPgnsK7nHQPDiUCSoNSAiGhrj1FoXnxy1/i8MP3GRcimTFAr5M6r73S/FwK+M1vlbz8gkp0SARtm4J3pRRsWgsSbN1ASMFqeZ5od0IaQghUVZGoSOfEKUGf3B6Sm1KPEPhnxABDkEKUkYKgFTJEspACVqMJBOfwmUf11u0pTE88eV12hyV7kx0GVQVRcPXSBXZ3d1Ei6V9mZ3Pu33vEr33jS+R5gXeWs9kZ0VoQgmGRoyUoLfvv5BxZiUjkkxytcwTlWUE0pJToqqCzjsb53nELjJTJDlr2+hc+HugCBCTSOeYnd9m9/DJKRqLW6KIieE823MHkqa6LShBEJLiOECOqGCKl4jzLRQgBwdNZj3WWtrU477E+vdNERwiJ4dG5Tx9F+9QaDW1KVquWLFPJ1s52tNFS7ZYMLxQcHc/AK1rfcbY4ZbmakUmDkBlRZngEW2eJEbQ2KJVsb30MdM7SunQQFlmB97afNAi8sRghOTs5ot4sKfOMTW0Q1lGQ080DTnjMEMbDCc4qtFJk0UCeYMuSkmxQcHa6BT57+lTtIo0TGAWd0Gy2DfW2ociqfnqZXD066wFJDBbrHBFPbM4tViNSquQQ5Syu29JsFmRVxXD3AipYcg3DQUFhBEUOUrR4b+m6iG8sbQvrBhZtIETwvWgp+Miehl2T0sLbteOiThqGhfvkrOfprXMr5CfTDc6RiUi9nHPvZz/iS69/maZre3g/+W0/oZeSUBolkpvQ+f9fCkkUIelovGRPGdqzOaK16MmYN/723+H47n3yGMiqiiAEm+CRncfE5AhWZBn7V6+R5zmRyNHxEcE1TyDfp7qERGQDkILoGqKWyMGYaDKsTaFKWT5AywxvG5rVhtCsEFEQokdqxbZu2CxmiOBom5q2admu1rCas6o9m22DiRYj4XhtUWKDbTrQiqZL09JCBK4MNY9iZLbpSNauAtM7EYQQiFI+M8YDAKGB2x/c5aF9mweLedKQxchPNodQaMrVbSbTiwgETbNFIhhUI4q8xNo2USMIED3RO0CQZSVSSrK8JPqEirlui7MNQiqkNsnmtqvTpeIDUXpyLTBYpDYw3GeiJpS0HC3/GaGJZLpgWz9l2hSAygnja5APoNvQdi1KKKISNPUGpXOKUUk2X7BaHVOsR5SjA/I848N336I+O8JFz7cu3KQ9POLShQn/s9/6dR4ePuCdd+7y4O4dDnZKdnZKlsstO5UmL0fcuDXiez+6z+deeYEbty6SFcOU0BwDZqpQODaLE3J3SMwqsp3rFBdfhc0ZbvEw6YaEIrhFT338bNbs+CHKOyaDcUJVYipklRA4H5mdHlNmGfgMoyW5TEnDOs8odELQnHPE6BgMK/YvXiB0aWjQdR3b7YY2OmSwWOsgWKwPiCjIMsNwPEKISBPqZASSGZquQyqdihclMVXBsChZbTY0m5qiKLFSYBczZosF4blX2d27SBQC5QXWtviufSpDFgForZDENFmW6WfLKuPlLz5PWeXs37jKtSszMr3FhvgJAbfg3F3p+mXNX/mNAiE8QiaGQd36PjgynVvSpu9C+ICRhosXDrj/aJOKSgHebmhCg5S9FlAIhIxPGpLzLI2ngfz8u5YSEqEkXoDTERkCJugUIOo0zjlkZnrL6fgJPjHEEBkUJSKCLkuikrTWMh2NsF3LO+98QBCC0WRM4wJbt2GzrnE+UuU5rz13hZO7DzmWqtevPOkreg63SInhPV3rmcnREIJhWUKVUIPOpoDQTWfxrUeK5L6lRUI7EkldIGVymHr06DbTg1sIAcpUGDIgENtVyg2RCnSG8y1SGiBD5uM0kPBNcgizHd5ZnEhW0867dL/334uWYK2jbjqc/fRr4E/P3tY6skmGyCN6FPFtRyg7XNSoPGe0l7GaN2Qix+NYbjZMqwGudXShA5XT2YDSmrzIMMajlMF6j/WW1WKJVho1SRxQoiOIjigldWd5/PABq+WCGAK7OzvM6jPqVUu2qxBSUe4NMKXCNAOaZUu9DkQlaH1HZnLsoMYMn86DWemUaluMK4pxRd10zGYLjJHkebKHk0LiOksIAtHb4zkXcNYlpKcvqoPraOsN1nWYqqQoDMNhRSE9Bscg01QGYkgoyGabrElxiq62/Ms/vcOjlSNEsCG5OUgBuybifJrYiAAlsC8ja5FgVBufbtlsjCbLDM65xH3X6dEWQuA6y5/8f/8J3/7r/yF6ZwT0nNsYe7Hax/8d5/qgP5mEZloInBC03mGUZCdTvP6lL3L723+N6XM3eeEv/3X+/v/p/8h2u6GUGpQguEC0LqWEdym513uHyTKKsuDC/i6+ezp6oH/bUqFF2kg0JV4YrPVIHEZritEEH2G9XuE3M1ifImPEi4JgW+xmTd121LNjom1pNivauqFezpJtIZrFYsVoWKC0pg2Os9ozzkqqvKL1lrPlAh0dSkkKo8i1ouunYkomNA2RtEzncsNnYZm85Pr+a3THt/nx7CO0afBENuuW4hiqsaFtNmy3G2b1goeH98hUzldf/SV2RhOyvCIG8YRCpc41GgKcTQhmDD1FKgRUr9+wbUPwvi9OIpk2FFVF221BKKxwPD79Cd977w/ZGTquXx5Q395Q5or5090yhDLo4RRnbdJmmJLgW5xfIfF0zTEhOCbjgvm9NevTGTIYFIF2u+bixV3QFctHHzAeD8mK5B8/ygYcDDL0hR0yFcl1zt5UsNE65TJhePVzL/LKi9fJZY3Ue2kS7VpMUVHmsDi8B3KCsTPEGszei7j1AyIBLwqiGSBy95n686+O7nLx4Do2SkwAFSJCOVwAnWfs7x9w9/guQqVkZCMVPghqZ1lHj45JcIzMKPKcTGVsaJkt1jSbLdY5pIi4zhN8wDqPC4FcZ1TDId61lNWAttmm8sdoit6L3+SGYVkgZOJ3mzwDqWiaFucb6nrFeO8qTbfFOYtUGicCEJDhKerUYkRpQZapJMINkRhzqlIjQ4sSlheeLxgNJBvr+zpWPBnojYeC/+RvVuzupjC6GJJrlbXp92O0oMwVp+slkPfWqxKjUjMRokfi8a4huCcfqf/rJ6fx4ukPoj65BEQl07NGajiiVugQ8EEjjCY4ndwalUjPak87E4AWYG3S9ESZkQ0GdD5QW8tyueadD+9y8cYVFj7g13Pm9RZFziDPeOnSTapCo+886F1J06BQcO44ldCTXgtOjKLPZXr6wzwBmN6tCyUxWpMbTddZlqsNPgSyrGSyu4c2GikVnowoDF/+O/8rvvHLX+bdP/ghpz/6AQKFVJJgNwSdk2WGKBQeAapI1DQp6aJGRE90Ht81tF2Ncx6kwfUDKu89ymRoLeiaNXXd0XQO7z79Qcqn12jkDlNoyiwjKoscCPQgxzSSerNhW9coKWjbFhy44LA2BbmE4Gnrhs5FlImcncwZ7YzJspzVasViPqdtWg4uHVBrQ7SBMi+RqgAfkFJyNj/De0dmDK3vUFpRTnO6fEuVFXS1JbSOsiggD0idROQyCrZiQSELCvnpMcn+h6w8U0yv7rJ38yp6OGA2S+LtwXCQrAtFD4sFnw42D+eyoegdQgqMMan5kAGCIiIwWiN8h9+ckA8rShUgBHKtIUraLpJnAiFKtl3D3Qczvv/BWaJREvFBEIQgk5FSwYmDHSnARQZa0NmPqVPuKU+ax5MdXn3xOertluVq1UPSaQnvWc/OODs54vLBHtLZJHgk8YljSOWr6Pe47QJFUZzPFZIhgW1R0mM0XH3xJf6X//v/A01UvPfBQ87u3GW0UxC6DJWlDAktE71KSQk+ECM0bcu2rjk5OWV9NnvqByBAjB5vG/SwwlQDhDGgdDq8hEZ0DXiH8S22XtCtz4hC46SlOb1Pt1nSRs12ccz8bEGWF4TkVctmteZomSyabVtTKMFp3dF5TZ7VdPU2XeDBc7Ju0Ur0jcTH7UQIAUVq+GL/42dlGaMZDKbstnOWqw1DpQmDSD4paR+cYrctXfDcnT3kztEHDG3LT06Oeef2+/zN3/gbXLl4BRFSYzsc7pIXA+rNDKU0WVYmtEl6NBXB9fC39zjbEgEfUrbQeLyHMiVNs8T6DqNLpICsqLhWXOPNn31EE2rCU0Brf3FF+mZeKFA5frvCdVtol7jFHWJ9Bih0MWLnIOf+7Y9o10uKQcb1nQKhOqLwLA4fsXgkkkYAz3o5B++4sDvA+44oO8o85Wss1jUhFnzxG79CoR2yPSE2x8R2ifBLtMkQfg9jNHJ8DWUzYrsgLO6AXRLNGLX7ErIYod1DPksnIOWTFsqHgIq9RYAPEC2b5ZzjB7dZreaURlGUFY2zBCK5VPjeAjQQcM5hbcfDo2PUOT88kwxMQdc1xChBRpyXaKMoJqN0hgqBigIvUpMvZDpPpZHoLLkfZiKnyHLaNqHBg9GA4D1OFIi8TGdCTNQaQSSKmNz+ntIBKKUiMyBVKk5dhM3GEtrHLE8eglTs7xd8+dWcf/G9mq1Ptt5SwN5E8h//zYo3vmj6Kbrs9aeRbZPOJq1h2wUOj48wqkRmQ1Zty6bpntB7pUjT/o/pWB9Ts7RWH8vDXcQ9I65TAoFQMmkk8IDA9cV9ThKGtxGClMl+P/S5GUJgEIwVWKVR5YioMlRe0bU1a+c5Wa6pQ4BM8Wi5YhgDOssprGN3XDIeVJyuV7x65YC70rHy6df38Zy2LXoZgnxiXMMnaoCnuvr0ctl720qAILAClEji7N3JkOmFC+gsR2qDlzvEfIdv/9W/yq+8dpl/Od3j9975GW3TICPJxjovQHiE6jO/RDKvEUhC1yJicn8LzvVBi+CDTYOBpqMoBkgCTbOlaTta16Mcfw6Wyp8edUpKSq0Iq0i0irqtKacljXd0XY0kuTtEEaltzdHxCcVegbOCEBUuCLwXbNZb7j+4T1GVjEYjjg6PWCzm5FmeYLfOI0YjjFBs/QqtM6yzzOZntLbF5IogUtMTMwjRIYxAtILOCUTXke9ntJ3F112i0XQaTYbvPnuHBwFcevU6N165ijKGxemKdXNMs92S5wUxQFUVGEXfaPRJkc5CSBN5ETyClEkgM42SJdoIXNsiSBw8224xRuBlRgiCKte0bcdiWaNUmjq/894jTjd9KIyArndoAth4WLh0vBwoyGWkjumQcRHOs0Gf1mo7y9lynVLQ+wA0YwwgkFqx+/wrjHcvpBdbK45Wax48OuGVm89jeu667FXIm84jfQpDdCT4O1OapunoPMlWuBxSbzt++kf/mliv0HsDXNdh2xbvPUIHXISua5E+Eo1KoZN1i/cOW9dPX58BCKkpdq6ST6d9eFUq9r33tJuGLvjkgBZAmRIzOkjPX9OAyrEqRwmNyoe0bsbo4j7rw9s0NvL4dINznlUX2J8U3Lq0g0Xwswdzbp9suDrJMVoxNBI5yFk1lsY6CMl7XdDTxiNPROfqGdJorLdb/tF3/wn3l0fs5EN2c83DsMWuLL5QnCzPqI/fx8nIym6ZdR2hyKlty3/7z34bROTXvvxNXnvl83RdDUScbYhBE0NyoUrFnkRnBUQI3nIOrTvXAamhsF2Dsy0CjzEZr9z4Bhcmt/jHf/x/586DQ6zMWC6efsESgyfUW4Lb4uoFbn2Crc/w9TKdV1ISywPUZI9xccb07Ijjxw+QhWY6HjHc2UWbHITHx4jzLcu1Rauc9x4foah46VqZMl1sIEaPUBlXX/ki04NL+KM3CXGLU7vko2tk3T3KskRWFxDTCb4ftPsQiNtTBAo9vYwe7RNCIHyKssZ/r/1ColVqAgJgY0BHiF1gfXbI6vQ+wXe0FjrbJeOQPKPKdCoypKBUhq2xtHXD0jYMioKdwQjXdBR5QQyGpm2RUlMONDFGXNcxHFbgBUYpTJTUnUMrSVQKlCI4T5vmW3TtGqLERY8KEAT40BLqNav5ikE1RvT5RSGGpPn6THfyk3sae7lUb5GqJKO9VylDR1FVqAz0KOO3/sqSx7OWdz70+CC4eVXxn/ytAS+9IJEyDeLOnRnbDuo2nA+UOZpt+Mnb7/Daq6/TdR337t3j0cNZmhICiNAf/5FPep2Lc7EG9OLrZwfBRYBWiSEiTBqixT7AD6AQIITEKYVVlthzviJQCoibFXWQYAqENHip2bQd42GJFYraeZbLNbXzGC8YlkOGsk4uSUTyvOSVayPemp3ws+2Gc0zM981M0lT3KFAMnxDuP90l+BiZP8+tiZKErBHJhMBoRXAdnkDbtKy7LXpqGIwH/KSNvPT8NX78/PM8eusdkKB0hgwkq1whCV2Di5FgG6I3xNBrfNoaEVzyMYvJUKWut5TGgG/Zti2rukYJ6LqGYMOfC4726dnbWoPqSiKWdtGwU05xs458ZJCxZbG0aJklhb2GzXbLMtti65BAL5XhSYE/i/mck+NjjDGslyuQUKsN9+98xMH+RaJPVo55VpAXOet6y+nylJhHFu0csyvwZovNFBUF0TqcjHSuAxHImxwtDDbMU/hdKFhu1qzPuk9rO/79l4DJxYsMJxOaepMCvQpYL2fc/uguxmQJmTBpcuJc8po+JyYmY4XUSORFSZZlWEEK+FucoGMSv0kpiSKhJ3XbgY9oGZBSM58v+eCtd7n79l1ycZ6OHTG9CK4O8PZa4oHHbeREC27mkZVLsz0b+1C/p7iSS5dF9s5POsuIUuCdRwtFlIKyLMmkQnhJ13h++t6HFOMpV6cTdIgYT4K2hWLTtOSZSQntUjPKMhAaGyIyRmoHRw8f8t1/+l9j7QphrhL/f+39ebSlaVnfD3/u4Rn2fKaaq6t6gh6gGQQU/BEBxQYzIAkRo/4AXawYomLUOCzN0pigIYaIutToiktdGl3qi8IrmhWiUUEFQbBpGrHp7uruGrqmU2fY4zPd0/vHvc/pbhTpobpOVd79XeusqrNr136e59rPcF/X9b2+XylQUiOTZM599KTtFkGArRqEdVhjotrGyuMdYPcKAgi2xE4tPskhaaFEQNgSZSNtoDYeE2TscKg2ghpkjcy7DNoDZuNtrGlIJIgkRacZYTyklSmcgmEdeGh9xuEmcGi5Q/Ce+y6MOT+uWW0nSK1p5QnD2sw9YsAR0Mwr4MHjUCR8rvvs3mJzPOHec6e45frjFFXJoW6Xhz97D95Ilq47Qu0dD5z8VOxmNYa8naKV59j+PrftexEf/PQH+eO/+iAH9x9gn84IIbbQ8RaCj0lF0HHxMadJ4UDqFGuqqPiW5nhbE7KEJElIgyQIS2U3qO0mmch48e138Oef+RT91TblcG+8gnbg6zHTh/4PidDUpsLbAhyRetFeRXQOk6kUMzyNKk+z0tMkos+4tmyMCi4OK/qDAYkGIRqG04I/u/scz7n5CA+eG7HUh+FDBcdWe6Q6IFzgWc+7g7U1Tau/ip328clRZP8ocngvipSstURTXCTttSjqKbUtEK01KC9GkY1sgBACpQRSXPmOWsChZDTHDM5hiZzrzfVHKEfb0ehMKvAJIgQ6afRf8sEjg6BuDEmAJMtRmSZPNO08x7kuFzY26LbaDHo9Gu8pq4qiKMA5RjYuvFOfkmctrC3mNF5B1VS751s7z5lOh6RSo+dM1ERGo0lvG/JWNlcFiqdwCA7P5dfqf6LRDCHOMyoVZUOs05Rlh3z1NvKVLnV5gcn2JgcOZvyr/7fDfScapJI8+9kZg76MqlBIpIpSqs5AVQXqOpqkQSwFXBoVbG6ep7AZD50dM56ax+/HjmRJEI+W6QIE/Nxl/Gq620VoFb1b9HxRr2S0CbBCEJSkJQRWxoVz7OTH/kLfeaR1bG9v4ZxHJ4pOq82Zh08gUNEAt9OithZvo0z11qVLIAI+jyIlTnicaTicaj5TSx5feI/nl98JpJT4q6WjAbt0SyEFwTOfvQnxWRvAWMtsOgYkF85diJLL+Sne857/TTZoY3yFEGO0TuNnWYvwoJIsXkvO4LzHe4t1HnyIzwXXEGwDrgYCrqmjx4gKlHVNkJoszZjNZtS1IREKczUPg2ekjC6O6O5rIRKPygTBasabM0LQKBvIkw6j0ZhWK498sLyinhkQGp0GgtQ0TUNVllhjqcoCZ2ysEAuY5hkr/T7jUaRSZVnOYGmJxjUU1YykrZkWBdY5nHZQwrhp0BnojsbJACiwiiALMplQmwrnDLlO8V3FiCufbFhTU5cl3geCzMnaLUoTuHDmJEmSYJqG5X4LKQNaa5qqQuqMLI20HhMsWatFlqYQ4nyCkJJ2t49qpjgrEVKSZmnUsW8sRhh8PaapK06eOMOJz5zG1TXX5TAyYS4xGtvlhh1363gVTx3cX8YWpZwnJnt9SWutIxcZkEphg4cQpWbTVobxDkIglRpDRSeRnLjnbg4d3E+7ldHWiszGGTPjwBqD8IJcKZwIlKbBOE9ZWySBxjr+9Pffy/DUfey78QZEmkV+rQChNKlKsM6SJAnOWmgstRJ0D+1DCCgu7b152g6UFJHeQJQGrUyNdDUKFytwLuBlm5AmkWpQNzGRUjnTyZByOkYIyDtdxsNt0s4Kejomtx7XNFyX59xzZsSlwrAiC7qp5NhyizPbFaPaY6om+gNITRMsQQRi3yieh3beDrdCYK+KGtUcAZaSLkupYV82IKs9qzPN1taEqrtEW0M3TWlcwEvPeHuTQbdHwOFCydGDa7RUijU1jalRKsqXemcQbi6JqwJZ1ondMGvmev4B76LqXJ52SKSMEtUqwQkNweNMxZm//iin7/ssd1x/jAcffoiT1aW9jhgBSQjQmBLn6iiBGTyqcwSRKGwxoq62sMUU0bueLFkhWZ2yLz8EKsGKNkYPuHTyE2xdPMO0yjly0610ljp80QtWmFZRJj3rZkgausvXc+MXvQxtJ2S9/bD/uYhmCzX5G3AlihozOYW1IMVZQlWSrB4jdJex9XZcGDNX/pJ6Zwb1ikFrwXS2xZIt0HoJqTVCKabDDZpyiidSCwOgrMeGmkLNYkzzqHRmG4MIgcoZtFQYEyjqEg30Wx2caRjbmuAC1tj4nuDjLKCMxofdrIULIXY665I8z3AOqrKklaQ4ETB4dKJjpT+AcIGgQM3n5YL3eEE0n9yjCecQwBlL00T6sdIapTLayZjZ1oOMzxd0+wk9ZoS0zYH9Y/bvz/Ah+kQ4R4yJAyE8WkusjUlGVQdqAz4aJrE5rvjIPY+AbNNY5kWlx3b+H5NKiLmjuNh5XVwd5fjHICbbav59htjVcg4vFUFpvLVYKUkSTTAO4cPcaFTgtiacuzAiyy7QmJo0y+h3OxxaGvCZEydIWm0IMNmueeCz9zM7MOL46gpieZmysYxGI0gTXPBgbOy+I/4WlTZqh8wpaerqSdTEnD4V983NWQN21ym8tobCWGxjqao60iTtBh/80W+jvzSgrAz9/Uu84I5XonQbb8c418Tak29QAVQICKHQAppym8YHnGlwpsH7GmMsUigynWDrijTVVLXFWEtRVEghqZ3DhMt/k7tsiYaVnrSdUJYG3wpslkOoFeWsotPNydKMdpZRFxm+DhShJiwR6UFBIXVKkJKiKChmRazsJ4pEJ5gmVqqrssR5j5bRrVkpRZIkzEwFBEbDMVkrpRjNSHua/fv3s1kPqWclnW6bdNmS2AwXHKYyOBGoHfRaCWEmMVx58yBgPnQRCEHQGI+YFuA9zlsunD0PAWYrK6Ra0O8kNMbSX8qjGkYQCKlJsywOZRuLUkm8KWQtFB4rKrxUUUK3sdS1xVQF481LbJ1f5+G/eRBbFaRacCgPnCojVUrMlenkXN+58Y8qyO/+GeZmfnt8Te8odGRZhneO4FwcsM0SvIbgLKYycZI9QKuVk9ZT/vj9v8Pyv/wWmiwjVwoZ4jlhsbHdKQTWCUZVCVgqZ8l1wtmH7+eT//v97LvuCKvX34p3NUKCtRakxDhLqjS5TpiUFdZ7Op0OTXCYsonZzFUAIRXpYD+638bZBj3Zxhcb2Nk2ppnhgkC0VnDtBOumVMUYawxNNaOZjXBNBdYghSDNc6rxjFEBKushDAxnnnauOXpgwEPnR2glabcS2nlCL3eMy4bKB0xRo6Way/DF8y02cQPOB8z84e2uIsO+VisnZIJHhtv0WwmbFy6Qjhxis6Y5WLCxZCnslKXOKrYOgKasR5ytp6RJyvHBcfYtH6I1X+wVboh3HUSw0edg7lkSPYfiLEsIHj9PmoUQ9PMey/2DlGYyX6PEh6+zgvGpU6xsj7jUOUmvnZCovZlBezziECLeI1SCzNZAL+NMSXH2bqxTSBFIV5+NyJZpHbwlppzVFkIInNeQCFZufzb2WUdxziOSVqQSzMUw7GwISQppyvKBO/Czh5A0CKA9OAiXzuK1ICRrCF/iphsIBUmo6LQH+KRPknQI+TJ+ehE33SSkHXSQiHBlhbyX+x0mZcNs+xK9g33SLCfRGU27S7s9wNkGKSu0lMggCEIwqxvyvE2e5Ji6pt1pUVmPNw1JEqVVhYNRUeBcoKxqkiyhNjW4OMgrfeS/y7mojQ0h8swFYBVSayTQ+LhQSUWU/5YCRCIIxmJCIGu1UUrhvUcTcNbhRfTD2SuEMDftMx6pAsXY08odSkwo6m0unrGsrLapZw3dZYX1MlaIfeTB7/DrlIodf2uhrDxFFagbgZvL04YQaJwneANhx1F+J9mYm8099sE573BfPXe4x0MQi5g6mQutBAhOxe9SKUKi8YnGNYag4zU+56ihjGMyqzh79iLjyTb9Vpu6LNg/6FHtX+GT9z2MK0qed8fzMdWYThOp4UFIcIayacjyjHFpeHhzm2Rff560PiobKUSkcPv5zKUUV4PofsTudx3m37yPym9R5TJKGDfWYz20lpbxXmDrEoejLieYsmbjoSHrKyc5ev0tc68LH+myUsXZDN+gCfi6wDbRH8daQ2NdlLK10ARHngh67Q6zKirJeWeRItK6amOxz8C1edmePMIJgvfknRTV7lLXNbNqRrvTot3OoBbUVbM7zDweTSlWSpbaK9R1pL14ISM1yPvYevMB45pdt2bnPMbEE1AEogusFGwPtyI9SBGVmRpIWimZSrFVNOeZbpQMljMab5hV20jlaXU7pDn4VEAwJEt78yBuGktd1dSVpZyMMQVYovrPbLZOtz8gbffwmcKMHVoKGI7iIJog0quSOBhpjUNLiWs8UrpYRXEhShLaQFXMmE0LitmM6aUxD33mJJPhlFQFlIJOKjicw4nZY8fUmA/ixtc8O07hcSRSIiJPcg+xU9kQ8+zIGht1qkPkbrqyYntrg3D8ACJItE5ZW17igU98nL/+5Cd53gtfyJY1MDfx6w5aBCGwwVN5GE9ntLMEKaGqCv7o//s79AcrvOot38xf/83dTM6dQgqFUorGGJJEYxpDVZZopchbeVwolQ0yBnNP47WDQKBx0LiADoFEOEg0ttUmaBWVQxJNKmpqF5hVQ5rRJk3T0NQVtmnipxiLDIE0NBSzGWVISLSm1coYjcbMZhXtRHJ6Y0q/ndJKFVmiqCc+cm2dx7pIy1AizKcQAB41MXK7rq9XB1pJiqw9SWfAqChYmjgu2obKO6qNIb20RautCIxQUnDDwf1oIyiKGdNJycrBQ7SyfqRvSh1panUJ3tJq9/AhYGxN8PEq2zEO88HNmQICLRO6oUOWQiMaGlchZKBupnRvfR5Lgw43HDzMbbcpJpfex++f/os9jVkI4FSH1spxZHuANSX1dERdrmOtQ6iASJaxYkD34PNQdgs7Okk6OAadI9jZOs41tA/cTjM6R7AFSgYkFik0obxIU9fIXg8pM9LRpxiP1lm+8UtoqYC/9Cl8aEj3PQ+nUoS3uN4E6i3k7Awq7SKUwE/PoFyJDYF6eJI06yHbK4RwZQsEa6sD7KUSawK2nuG0QuXQ6fQZ7DuM8YZyuB6lnxF450nTFD1PKJRSdLOcxAc2hlsYa2i32+CiZHfAxrWzdeTtFhUVbk61NdYwKwRp2gbnYgdbSgiCjuqw7QvyLKWoK3KlESqggsRYS+0MtXMIs0MDjHQMGRx4g/dmj2ijAWMceSbn64rYhXCmoDaOrY2CdienKC1lYWj3RRRd8AEhJM46rAMhw3z/9byjEZgWgbrZubWLSBMXCtBx7GJutrjbtRBiN9EIcwWlz1U081dRYUUISJOEJJlLG4f5AN1OomEdKI1XCdJ5nHeInSrkWoY9tIIYlwy3Nzk0WCXUFcF7rjt0kPMXtti/tEImJWtLywz6XYQQlKNtiuGQ5UMHka7L+Ysjym5Klia71Kn542GXjBZf96RJ7HpcDWbCQsRh+TBvVLm5d5kQIKTEBztPNgJpJun0+wjRBTyuKfHe0VQ1Dz7wKVZXBiQq4F2JNxVOKvzcZ612Db4p8M5gXfTLKBrPZmnxMuXo2jL7e5040ycERVXTGEsmBcOiJFH6GRFcuWwra9NY2oOM2bQiN4FEKnpZh1ldUFc1KiTMZjXBx8yp3elE11FVYZpAYz1eCowxuxJv1hiSJCH4EAdoTZzNqKqSXEZ30qqsqKqCpCWwtcRLz8pKj6XuEqPhmDxNcMawmq8wG00ofIFPHCJXOBWN7zIjEF1FSC9XNJ4cvHOUswJnBVlLc+niFkUVKGrL9rTBihSdaMoko9cfIFLBrDSRVmINWRYVkmRwWC/QUtDUDUgXXdeLGXVVs2UsznvqYka1vcmlk6fY2BzSieIs86FbeFZfcL6CiY18+Ue7GDvJx6M3PxcgEY8Oje8ltI463kqp6JPhA6aq8DVkNuPhB+/jJc+7nbhYCxhjaOcZqRSMxhP6q/uQwWBGU9pZjnQeK2FiGow1HFheoZ2knN+8xHVHjvDVX/2PSY8/jzpR/PG999BvdWKMnGNWlOg0Ie+0Y4XHOZomJs3Be8LVsmIOzBcUIJwFl2GTFZzoI/I4rKZEdDcVfobGorwhTDdwVUNt5nzi4PFCErxFuYamrkl6fZTW5N0ujfXMqimplszKhnERq1VBgLcBJeS8mhfPMilixUwQUFLjQjRhrK6O/AwA4QPXt5ZorEHVirPSsiVKyqDRDqQOtEJOXRkGy0vcJA5jhhVni4sUoeLM+TNkuk0rzzlyWJKnKQ5PsDXCO0KrE31cfANIvKnx3qF0ikpbEKK/way8QLq0jHdjUi2RsoPymttv+2Kef+trOLf+GU6d/ywtvUc3uMdApl1ax78UaRuqYhNbTvDGIgWovMWlss2DFzI2xvez9OlT3PnFh5GJQiYaN3sETU3eXkYUF1DKo3r70a0DCK1xW5+mGW2guyt0jr+cLNSYi/fQ2ncrnbXrCdOHMZPzJPuei+ysEWwdu2f5AN0/gK+H+GaCKTZRwpCkGUIqnHOUFz6N6eynGm5e0YVLOZqw1u3iuynKNVSzCdV0hpIapRI6WQfaHRSa2hisLfHOsXHpEp1ul16vR+0dw8kEoRWDbg/nHEVVoaREyTaqndI0VSx2GQfSR1WqAE1ZU2cFQcbObktrsjSlpkZHUw+UUgityNM0Prcbg3OCYHz0fgkO6S1CRlW/xjTzjsbePDQepb9JvPM0taeqSpwUtFs5qYRi4jAe/GNoJM4/6uSstZx3F6GpApPCMSujEuPuOm2eSAhUXHQLFRPVsPMs3eluPP6Z+rh9faaC8FQgBFpLVKLmFKWdZMODFAil4gC4it4h3vtIoQNECtUN1yPvO8GlrS0O75uhlKQ2DVopVpf79AbLTOq5hr5pqMoZ47qisYZ80KfOOpweTzCHj8yVMx8/tryTuMZZl0B9VXRwI6K+2fw5GfzcrDLEQXo57yrgY6HPWUxRIaQgyzKEdvQHkjJTWDHizCN3c+N1txG8wZkSay3OxAzXNkUUrXCWxjoK49goLDptc+PB/fRyzXg6pWoa8BYfPO00YziZgBBUzmPC5b8yLx91KjXUVuKtpAoGW1cMVttoJ6mNI1RRuSbvaZqpi/QS4+ZGa1F+L8jY0Wi1WlHGSyWxJSQFwkfbeuc8tbGkPnY3RpMx09mUoiohcXhlEZ2MRjZolWOdp9fpsr6+jRc2SiPkgl53icnmlCTRFL5GBLDlHtBZAjgb9bhN41EqYVKOWd8sKYqKom5o9/oc2NdHec/2ecny2hpKSrJWHk+otMaUMxIdh+pDI6nKitIbfFMynUyoqwpT19SzKaaYUY+2uHB2C2cDFZDreEszLqCE4FgHPjMCR6wwyzgCvNsxePwNcG8Vp4BHh8CVii1+BN46SluQpBmGkjOnTmFdQO/cHxG88ivv5Ev+ny/hwsaQalaw1G+zb2WZntZkUlMIz9SYOBSpFN4a9q+u8M++/v/FpoLhzHHzbS/gE8v7saNtkAJrLO1WC5XFgfSmquemTHMDQPmosMieQwBSIqXGO4sNzAdyAs7UNKaMCUAQ0EywTYNOc5LOgNoOEcGBjwmvCY6qqpFaY4YjRl5QNw3DWcOk8pQuJniOmDSIEN2bKxFb3UFEN17jI2VNiKiqlog4R1K7cCW90r4gfBA875YXs721zv/66J/QtCzZ9SvU5QRf1LjNwL7lm5GJwovARhjSjAyfuO8+bn7OAYo6cOrMabaL8zxncgt33HA7WZIgQhz4FSLOqHjTIKTAGQtSkbb6cdGCJ22lyOUcrz1OanCggowzLyJQFRcR0vD8W76Cv7l5ym/zoT29UkMImOklZPC4xiCFRGYZTSO457zl/o2GL3/1a7kFy+kH7ydbPobZfgh78S7SVjeqypRn8c6SJKAahbQ3ontrhOlJlNRkR19C3hsgJ6doVIvevpvJOsvUl+7CyYQkW8arPF6DTUMQmqTdo05SZL2BLSb4wXGyfceQ5z9LyFexzYx6fJ5mtMmVVIvrZC2OHzuA6PRpjOKhc2c5efo8dWlIU0WrnaFlQhIUVTAE55kZgw2OVrdD0zTUxtDKWiACdVnTGINOEgIVVVMRCLEQ4sASCDbe75WM9/XRZETe6ZInObXw6DTFOINSCWhFN29F3yLvmc1mVLWhMRZvbZwjaRp0ovG2wdRF7FxJeUXjuIsABIHzkeYqpMAbmMw8xhl6nZQANM7R7ncIGMK8b28aN2cRiN1iqLOCsgqMJp5ZJWhMmBvHzrclND7scADk7nB0zHYefQj8bW+WcDWIEv4tuN1iI7u7L6VABBnlVKO+UTx0KXaVtXwAfeNxigsX2RqNGU8nDNottkZTEq0xHobDCWmesVU4RBaQTcnm1pDB2jKFl1w8u876ag/RbrG7EwGYd8Bj1xc8O14kV8tDlniuzwt2zodobMhjEszgWevXaBW7Ms4LGichSJrGRn+rxlP6wAOnTyFJuX51da4AOYlFeBcpUo0LOBTOS8YGur0+B5f6JDi2hyU60SRSgNT4xjKrKoxz+CCofXQkudy4fNQpouOgEpJU5si0ZjKZUc0aVC6QIiEITzGryJMuW5dGqJ6gpdtoGSttxhgEYJ3Fi+iP4YwnS1KklCil52oRGmMsZjwmSMFsOsPWkb9MEiinNbqXIZXABst0UmKNx1kbNYuXltk+W+Aag9UgkoDwEl/uzYlpbaAuGtYfGaK7XULT4GZTlLW0BPT7HRyOajYhkZrzJ8c4L2i12+i5fX1n0CPLErIsY+Rj58KWM6rxkOH2kNo4fPDkWpCGmuloRF1VpBKcg5kPdFKBFtEh+0AGDypBEQLLiaCn4aFCRDddIoXFPoZKtdcQsR+J8yHqfLdiJ0spNa881YyHExrnSROJDRLd7nL7C17GgU6XllJ89uwFmkaRJ5J+luHx1E4wLg2p0jRFA87SzhPyNFbZJ1ToRHPwxmfzyCc+ikgFedJCzBd9wgewDpkm0VF1rn94tdwEg/dUswnB1nFBHyySBkWNUA4bAlVjqesKYxqC7uOkJ4QMFVLUZBsQNKahcZ7RrEEkKQjFxsY2XmvObUyYNJGzqwRIIUiUJBFxOD+TAuM8LsREV+KxXpCKqDMupSCE+cP9KokbQLedszJY476zD9DkjtAIZC8lO9KGqWRtcIBM5XQ7PVqqw8bWOU48fD+tbpvhRkW9dS+J1DShwgeBUBlKK3ACpTOcs/PjFTgXqOqaVmcZqTO8t7EzFhom0xFCSCoV8I2hEwze19RNRTErKYuS7fW7+Ov779pzEkHsvMb2qdIaKTTOzTixFfjAXz7I7be9EFNXOFPxD172IkJxES0DWZahdEJI+njVRnhH6jcRpiRUjyDcJto5fOsgvbVj0GxhXU3jAiu9NTAG19QE2cF6RxKI7vZopFJImSAkKKnRSQdrBb6pECHginVwBuEt3l3Z8683WKI3GFBay30PPsCJk+ewTYgqqS7eq4JKKGxDmqTxHljMSKViWhSUzrLcWcL6QCYFjbHRHGypCwTsdExjDEIrUh8ITuCCRM0HaSUKYw3Oejr9FpZIbxS1xAvIkpRMRt+HaR3NO+smzsO0EoWgRrkJS7kmUYGs3wHhKZuG+xTUVzSa8zyDEGd7hEQFSPMUWUgSGYebk36XXDgUAWcFXkpciB0NgSdNFfMKDcYG6iZwactR12Bs3EIsnOwkEzvODn6XBo6Qj6NOfe7zYNe07yq63wWg8h7p3O4aAGIRSs7fIZgnWSLMEw8eTShTjXjxC9g+fZZMeaQQdAZ9Lp49z8X1TSZFTStNSfIcu7TEaitBZm1s0ubTD5+lbLUpbj4IIRaf2am8zx3IheBxFG4r9vpu91g4CLFrH+ZjAPEsigmIxtHSjjQLUS1PAkLiQ4OUNd5LlKpBQFFKivEJpmZC1spQPtD4gHUBg8JrjXeRRhVkwr7BCpmIBsL9Xh9hS0wQFLVjfTRBzxOzmXGkSYJ6BpT1Ll9Ho3Ik7dgekkKTzpME4Txu5sn7OvLHSsV4OCFJkyjpNStoZfGi9M4hAKUkQSiUkjFblvEmIESUK23mTtiNMQQpKGclrgnIINAqQYdIHWqMpddtIRLBaGOG95KUlK0HRqwsdWnSqOhkjcF7j92jJXM5KihMQV5NKMqKvHZk0sUTUGn63RbT6QSsRacS6y3FdMrW1gZ5r4W0NelmSqfbJ1ESXxcEAnUROxkz47FC0+206WhFSxhGTUNb7XhgxGu1NIE8gXT++o3twHVB0E2gdoKhCVxqHi0kzJnjuxWMPYWM8npSSqqmBmfRiSZNU6TW+BCo6xprDEGnWGvZ3t4mSzIyoVlr9zjQKdmazugNevRabYKMsqTT2YzVXhfrLJmSdNOcTCkqY9DOofHc+qIX88hnP0PSEWgnMGUzFzEQpGkaF4wial4HEZBZ8oWP6QogOMvs4klYOYDqLRG/UYUUCV4IvAyEUBNMhSvG1GWNkxprPXVV4qxDZm0a6xmNJoxnNdaX1MYzLAw+OPK5n4mxLlbpA0jmXhlSkGcKrRLKxjGqLcZ5pFCYeSIbh4B39L33/Ex7FCFwcf0858+fQRhJz/WxAUzWkIxSrlu+hV5/GW8Mpm7Y3FqHliTL20wnU0KmwDocjlNb57iDF6BURpAKoXO0UjhrsaHBNCW1cbSlnj9XA1rFB9KsrpG1RKcdutkB+u0+0+lZtmdbDLe3cV4wKSdsl9t7HTFC8Ljg4oJeSoSvSQc3Mxjm7Fs9Su5GtCef4tCxmwijM4TpSdp5RtLZj1y9A9U9gJQS6RwUp7DnP0GQEtwM7w3tAzeTNpvMLtxDOd3C1w3uzJ8iBsfAWfAyzgz4+HCd5zzQjHDOEVRK0t+P2TpDc6kkSXJktYUJKaG9H5FfWTpG1u0xWF7hwpmLnL64TZZ3SLUDH8hbGa1WjvMwcw2uNlgbOxR4jykbghUUYQZK0taSJE0ZDDpxGD9AW6e4uqH2DpVqWiLgE4GUkdLrnEfJSF3zAlpZTl1VUUpTgBYS6W0cHPcgiKamUkYJ3eVBl6Orbbq5JNEJSZLhXINUsVt5pSFEHGgGw45KfFMFEh3v0UKCTCSqASUdxghkFuL89zzp31nLOhcNh7dGlvOXwq6ylBQ7dnY7FCk9H1TeWV/ED5BPoOB09aQZsRo/NRapYhwQcT5TEgtWwvuYBHiit5eP3W5CPNcQAtHKGF5/BKSgrA2V9dS1IUjJma1tZuMJ1+1bYblp8IcO4y0UwxGnxyXbtw5oJRKcJbi5KziPzrc8rgUkoNwjZbO/C4GYBDnvdzsPOzRhEQJK+rna4k7yJAhzK0IpHEEK0gSyxNHOBFWSMN3YZDSC9sEbEN4QXIN1jtpZinknc3mwP9IB8fHZi6OsLJPSsD4aY73HeE9lPVppfADzDLTSLttdM080mU6QIaUaVySpIktSamXI8xbFrAYPWiva3QTnHT4EmqZBohBzpSTv/a6pSaSaiCih5ucDo9ZFJSA7d4a0FtMYtJBURU2atcFCSAxeWTYuVLS7LVbW+ow2p9iJQwZFowMmeLAaJRQqCVSz2eUKxxNGAEaXRhxYVrSVJdSWUePJFBgn0K2cNBOUVYWrLamM+t1JmrK9dZ4ybXHg4BGK8SbDjYtQFQhrIMBoWmA86Cyl2+1Fc0IlwMbFcaclKRpPZed7EuZu3xoyAde14k3EIqhU4Nb5pTG2j86BSRkv9D1f/klB1m7FYUWt5q3tQFVVZK0WUmt63e5uhaisqkjT63WweJx1KClpmoZcaXKVYPEMp+N4E3XxKIUP6ADJfJCgpSVLnQ6Hjt7AytoBhuNzmKLCVPXcu0RgTRyk1FmK845Ea7BXx00weIe0NcHUWBN5mxJogOACzsWOl3EB01gcguA8wRpcXVDXBmcLpo1jPJ5RFjVeRBWMVprQeElLeFqpxFhHPXcqxQeCD2gJiRC0UkWaxP9XBNBKIHzAhWiS5j7HRfdqwPZowoc/9lF8YeiMFd1+CoUmCIduRf8VjcAHgVQOeoHr8qM8snWJrNUiFRlpOyVXbUKAyWxGJiUiOKqyJMvaOGsoiylVVSKlnA87Rv5zKwdTj6imI/rZIRKvGK4/TKESxpNzbEyHlFUFpMwmU6pybz00IgRKSLSocdUQgUS6kuc877nccKRNamfUW5/FbN6LkgkqUSTLh8mPvhSRL4GfS2prhdIHcZckUiXI9lEaf4l2r0Oz/Uma2TqzzXV6N38Zrr6E33wwKqvYCbaZ4U2FwBF8Q2MExmwglcS2VpHZGmKyQV2VpN0uWIUa3ArpADnLrmiVWacpSZrS73V4/WteiUqTSPO1lm6ny8bWFvefOEs6DFyqt/DBopXCWofFI41lWhTgHYUW7FtbozENF9c349yV9EitSZHkSU5oORrrcMYghScg5k7iglRqvLEEG/0RsiTFNQ2Na6iswwWHThQtldK4OOTay9osDwa026049OqiV0yeJXGObg8QCPN9CXgXqbb9JcmlS559azl1UZNpiZCCugmRtlnH2QqtfVQ6EgKBxDSBi5ccRRmZCbudiL9zwwGC3CGOPi7R+NzB+B161tXS+YaYaBRNMx9yn5N+5rTqnWql8C7K9PoohRy8x4ZAgsB5h3Ye4zw+TUmtROqUk0Hw14OM8Qtuwk4LigfOMHjgYa43lv6+g2xOxmw//ybKo2uUTcXc6y7GiJjsxAQPgnj0OTF19mpYmQDENa2ICZmxLv4egHm3rDaKslEgPD5EYZ7Y1ohEJi8c3gu8m9P+Go93kkYEUtVh5BuG0xm6t4LVMBmdxsuU/b0ebSlROkfgqKbbXBqO2JjMqK3H+KjWqedD4HJX5ODy4rKqTkkLWgSOHl4jTXK2izHOxyqILRytdpvJZAbCxRauSjDGkiUBrRRNVc8t0B1Kq2i2phRJImlKE4fCbfTV0FLFhaE1NLWhqmtUIvEm4J2HxtM5mKD7bXwD01FJp5uiUcigmJYzJBpTW6yztFspqVKA+YLHerkh6opqKvFpNJbLEkHmoFGe/r5VlAyYpmE8qdBB0Ol20FrS6+Zc3DjPRppQTktmoylaCZpZiSvLqLsXApnr0u50wcfFrTOWJAQSCZkWcxm+ufkQgcrGilbjQM/boKmEQQIvWIILZeD+eU62Iw2+16pTUimSPKMxDVmnhbfxJoeIzqXBWwaDPlmaEJSimmwxGW1TmYAPgouX1pk2gW67Tb+TE4TF+sCl8xfI8g7We4Q1GCnxPmCFi8NaOmFiLZ1Ol85gwNbGKZy3CAKmruaVUwlyPp9hbBywvzryDAC8a2imWwynJYNBP8pQmoo00WBLfD3DNXHoDGQUF5hNaOoy+uEEhQmCvNUi6y5RG0dVNySNQdVRMlMSDZyEVjgpo3yzMWgBrSyJHSkbaCVRPcd4j5ZR17vxsezs5lzfqwVBeAZrKebclAvDGevjhrVDBxjoNkKAmZXYrINMEopmyr6lA9x88DbcPX/O+vkNltoDprag3c+xpqAppjBYxjWGrY0LpFmOEBLTGJqmYXXfgahOFWJVLMvbLGfH2bp4N+unP4qxBrF6mO4Nt7C+eY7NzU2q2lDXDbOipKr3wJD0bwXNQnUedBfRWkMKR1KdQbhtutkSTgmCAeUmaNmmu3QDrcMvQXVW5sotAoKdS9nWgEAmbeTys+iky9iNe6O0t14iJJ7edS/DDu+jOPkx2t2YuLnxOiodoGW8L9jpFk4MEUkP1TpEPd0k+Jq6mKCGniTvkuQDmuDnfP0rh96gz75DB2kPVlBakmaa6aSg3eqQZimd8zkHDxzgLz52N+e2R+hEgncImRKUZrnXpZ13aGzJdDZja3uL4XBICG7eAY6V4OAdIfVIH+mzDnBSIBKBjrO+IAVFVeG8Q2Upa/0lTp85E1kG1uJEiJ4eiSQqwrroP2QNeTaI66pMYp1jVpv5h15pBJyNFE6CxBjPmUdmDHoC4wXTIkpDr88aVldA9QzGKKTSCBxKz+nCLuAsNI2IlBUbCzIR817GfD4hBBufATtZSJSgQgj5dyYlOwu9qynJgJhojJror6SEAvxuwiHnOoHCO9x88eoJ2LmMa+ID2jpEUzMoLe1Dx8myhI3NEUcPHOD/XDxJU1UIBdVNhzl8bkw7BIrNDdq9LisnL/JAS+M67ZgkEmdDEGKubBUXInMFWQRQ7rgnXhWIC3gXPI2NHUmEJ6i5Itlj+l8uCLzbod5FwYEgPd4qGumiNHPRgE8wUqKlRrdamO1LuP3P5bp/8h2s/9K3kbV6tFuOXIVYUGlqxpMRp7ZGUfSBSGMGQeMsSgjK8MzMQV62RKO2FmUFQQoeuXCeurHkWZdiVlKEkqquqUsbW606zh3YicWJFGSc77DO0tR1NJxTkKUJSstYeQkCU5jdh6510UApqlRFu3mlNbNpiVKCdj9ncr6htRwiB1fI2MTMNUokLHUVW+tjQhJI2hJjG7zdm1WMBCSeSSXIMhVl5CS085S1/csEb+MCWTRMZgVaBFIlaeU5bI7YuPgIhICzDYPeMu1MMxlKqvF4rthl0JEcj3eOqih21QUkkOmYULj5gLT1OzfNMK8axD+7GRzNYCmFSRBs1jBpdoRu9x5RtSgu6HUatduFiGoYXnjqpkYSSIWgmYw59Tef4aETDxLUTVipyboJys7pdhKsCVy6tMnSSpR/7LWz2AkJnkSluOAoraGyjtLUXNq4SD2ZkWcJjXNznxdJEBrvA3LHNFFKpL46FDECYOoGHzxbw03a2fUI6cnafdIkoakcfuaphhvMhltUVU1RNmSpwgqFUAqFxjYOmfdY3xhSFCVNVcdF3LyCJUIcwlcSjI1VaS1i29jNqVJ+7kQeJW5llOcUkXK10xm/mhINLRW60mzOLEmaUYxnnHzgYUg1+44eYjmV8UEiBSu9/SwPnkUiBQfaa5y0F6AqUNJSm5LDS/tIVMpkuMn2xkWUSqIbrrNMRhN0lsU5AiEJPhr2ucZwZuNT3Pfpv+SD7/sgz3vW7dz4JYcpe0MubW9RlSV146hrg3Fhz4sBQDwnRI4eHCTv7CdLc8zZv6DaPoluH8ZUGwRToGVK1l1B77sV3V2LgiDBxYW+AB8soRxG8kQ+QEiP2/prgm3Q+25BdhRZu0ZlXULaxyctrJfIpE0zOolzBb61HNWstk/hBsuo/pG4gCy2CUpDd4WibujoChVKEK0rruJQTqeYsqLf6VM1Ff1WGxUE0+kMEeCm48eZFDOWvuIfcMdzb+GRR87SynLOnjvP+tYQ6SVVXROCY211LV5bUlJXJWiFNTZSYoppHFANsfLsnUWIR+fvXFUxvLSJnNO1brz5Bh566BRFZaLSnFJI5xE4SutACaTMGVclQQiWl5fZ2rpEr9PHqYAYuT2hTu34XkC89zRG8P/5w028Lzl4IOUFN3eZTB33ny541csl1/fBOo+S0U05Vn0ju967OAi+NXQ4FxfiO/CPYXnuvry7ChZx8Yj4vLnW1ZhshBCoTFS7lNi5olbEox1ndo36tPMoaxCNJTQNvq5JKsOLdYdB3qGvFeXKEg+eHKLWt1FVgzeONa35khuv59DaGoPVNTbqmj/++F/StGF8ZD9Ca7TSkcIlxVydMNKSPWH396a5Cgorc4gQaaPBxUK4nBO+pFC78yWB2K2Qck5JD3HtFaTAekll22ihCV7gG4EKAae7iPZ+WuNLHFzZz8b6fdiyYeV5/5Dl839OS+XUTYM1FcV0i4uTKWZ+7vkQsCF+V1IIUIp8vj6/3Lh8iUblaIUkPtSCR3f0XGvfAAGpJWmq6OZdxuMJHlBohJA0jSGEmEQYY5BEilWWJwQZ27emqkBEFZvxeIyYtx0ba+bVvRSVKNpJmyA9KtXIEAd4gzTUpSVNFE1t0EHRXeow2D+gqEZIoRgNp/gr38wA5mNiXiG8Z1KC1FH2M+8NyFspPnh0kjEtt5hZQ1t6hJb4pka6JhoOtaIztfWSVprR7fXx3jEdTkjnCiKZAkyNMxWlDWQikArmrpUBFUDskEuBZC76LCTkHcEg9QxL2GoE17UEvVRwbgbDJnLt7R6uAr1z2HnFVujIhVRKRT631gQRW7kACZ5WluGrCR/8X79Nrf4x199wM0kIXLd/H7lSEARlY6mtZzwasbQUKGUgmAbjHZmAysFWXeN0ysl7P0M13qaXt3bPyTRNEUKQ5NlcZc08Ohqorw4zoTB/QAw3NtgeWXqr+1lbW4GszWw6wow3KS48TLF1CS816WA/yzcdJMtajEfbrJ96CFsZgkxodTIOJinFZISQEts0bG5ssjUsMF7Q6bWQztDKBKOixgdBKgXBOUpjHzfobUJUmnIuru2sj3GzV8FieQezsuTU+UfYmm7jmwZb1xSVpUlgcq6kxnDz9YrByip5r43WCdPxNtY6gvaMGLPWSxmOhlzfv46NsxeYFVOyPKXd7RKmE7TSmLJE6iQev7dQW2gqRLnMrBgyOHobX/pPl7hp9TY23AbnT/11/E5qwXRaUlQ1VVUzLa706O3fhpCatLtGu3cI3VrGbT2ItR5XTnHTewloVNKJ1NvuMunKsxA6I7giJhtCIpwjBIcZPYIPiiRbo1n/DK6cIrIlxOAmwuQcaTdHCIcJAaFzynJEvu9ZVGc+RZhuYqbryBBoygrf7qCaGa6cRYpvvg/dWWM62qRxY9JqAmFKKLau6JjQ4SNHaLU70f8izUiShO4gYzwto8Kd8+xbWQN3iRcuP4vnP+cmhA+UjedTf/Mgo9EULyz7l5e47shhVleWOPXwQ2xuDiHRDPoDzpy7yL2fuZfN4YggYsc7eI/f8YzQgSRJsKGmg+TIgUMcHHQ59OI7KJ5zM5PSMN4ecurMaaSG4AWdTpt2u8P1R4+wujRAKsXKoEdZV7QHA/LVdE9UleKMhpjTpsBaCUry2Yen3HcaPnLXNk0T5dqPXNdi/5E2SRpzBCkiDTKEOZ3UCqYzy9Z2VNT0Pj46Y0U/ih3ERC0AHiE0PhgEcn7sO/SjR/fvbyUYV1GiIYBUyN1nmArgmA85+TgAr0JAO0/iPTiLsjbKoBcFbI+5MWnx8hc/m0wqsrzNoUOa+z76MUJh0NbTTApqD+urJc3WNjftW+NCMeOe0ZDZrIfc3Ea0W8yyBLQmkYpExiHrODYiUMwLaFdJRyP6e0RKlAse79yjpuWxARnpoPHN0RhShfmzOXbxN9wRpn4/qXZ0W4FVf4bEGWxrhX6msNqTp4ILl87gPvm7rNltOllOsIbGFEyGl9gsJoy9xEsd92hOc9NKoQRkUqFVnGG73LhsiYYOElM4GufI2i0EgbQjqWuBDAqpJKaxTIsZIAhNQNhIFaqqGu99lMYkDst6N7/JiSgh56wnS7M4vG2jG6n3Hp1oQnBIJXDBYGqHw5O0E5y15O2MqikgxBtLgqTTbhHqQFkayqlh3+EVmsRRyQa48idnnPj3cxMcjxORyynTjLpuMMbhg6SeTaPBUFuBiXMW7VSztV0wcwHjHdZvc2TfEnmmcP0BRVnROI+3hmY6QYaajg70UpBuru48X9TBXN7Q7RZekBLyDA504eJUcrYIaBmNjroycFtf0DjBpdLz2ckVD92jMfSeuqzmUnkBJwJplkUZxzmnOUkSIBBkYHn/fpZX+9Rbp/k/v/M/+LLXvoE7v+JO2hp0AONhOisZLC1FX5KqIOBJk5TSNiiTMKwNo7pm85FzfPQPPgB1SVCCtNPG2Dg1L+ZUq0RrnAr44EmU2lNn3McheKrZDOMEK/sPMJ3N0GmKHo2ws23K9VMIJRjc+AI6a4eROo0DytbR1S1IUsaPPMR0NCK4QN7rM1jqE6SmKEpagxXkQw9zYX0LU0f54WAMqRI03uMDpFqRqkBp5qZVc1WYuRk4sU4K1kfpvqsFQggKZ7hYT6H27G9l6DxhVhjKTcuZ8AhL7dWomCeiysiF8+e5eOkShaqRTmDrDkdWDmLLhroSeKXxQVHXliQJTKcjtofbHBgsEYCmmuGlpOVT9ovrObRyA3W7YrN1PzO7wZkHH2RWN7TyDq5sKKuapjFYf3WwlYWQtLv70GmL6uInaTYfAtVF5H1k2kdmPfz2CbJWTrp0PbrVJbhirmITja0I4GcbuNkGXuQ4Gtz4EVwIJN01hIpqVkpHEQLhA0JklEVJt3uEZGlMMzpLMDNCMAQsPlshO/RFUIyR2w9Tbj2Im26Spin1RNPtX4/c/ixidokrmWlkWZtOp0+SZSz3u1hn2BqOuOHYUeq6IslzBt0Og06U/PQ4tjY2ueHYEW48fpimaTh/7gKHDhxge7jFoJ+T3XgdvRc8F+MsSEGnpTh14mGmaXQTFj4WnEIQID0aSWUdqVYY1xCamn39Ds+541Z0krK+cYliVnBx/WZuvul6mrqmaWqsCwwGA4pyQt7K6LT7FLMCUztKV0floCuMOPcQIhfdC5SCO/9Bi3MXphT1fM4CECJQVBJrIUliNzrmBhLnwFpBXQdmpWNa+LmZ7Xx2QYDWzP+eRLqgiNSpRAsS5dGJINE7UiqP3TfxuN+vJgigR1ThMvMZAx3mA/Ji3sUIxBHmELvYAkGiNardwgFbs5r/+Ym7eN4NN3Ddwf0MJ1NMrkmXungCarWHRfAXoaIXFHeffZCRCIgX30q33ULkGV5rMqnwSPR8H+ycjRFnRnYEaq6eJG3O/o0iCj4+C5yITzs3F/bYQaYlq70OIr+OkHRRStKy+6mcRpiChIrXvvxFtOuKu0+MmV68j3o2xeVdDvVb9C/+JWnWxriKYBvKYsh2NUVkLfYPehTnzmKMRcq5CiCPEreMi3OUlxuXLdFIWgkyleQhpZpUqEQi2ookUUgkeEHWbRECKKGYXKgQxmKqKIXnfczcVKIIc/nLXrtLWVf0uj2a8QaNaRAumpzE2aNAEAHV0qgMytoyWOmjcs10MsXUDUkXEp0wWF1isj2hKRumrkCrBFd4EhTT7TGudoQ96mhArILULqCVxBsPKhoD1UWBtZ6gkjgEPu92+BD/zPIMJUtMVWADTB2csY5uO0UrQbvdZjyZIrUizSQtBF2dkQtDsVlHp/bYgUQK6CUwa6Ay8d7YaUE/g7OjwIWCJMsEtQAAKcNJREFUqNIRoktzLgMiBJZSaPYwdhAX9FLHBXzwILMUlIYkIdhAnqZ4pWncfKjKC5SO1DsVBNdffwxvK0gSRIha6qcffoDR+XX6+w+QqMCzjx+lsoICT2EqLmyPeeDEfdzzwT/AjC+hEhUXO1KSdbsIoriBFglV1ZC28rnudUlylTxEfACftDl03RHWzz3MvZ/5LP3BEr1c0M0Tlg4co9vrkeU5Qic4U1KXBc76yHVuLdM+fDO0LjJZP8fs7MO0D16H7rVpdRNUmrPvqGEyndI0hkQrPAqBJVES5wOVi4N8LkTlFuujPotxASkFxgeauXTxXnbNPhfOeTaGJUpnVK4i7E/J1jLcuRJzdsLsQo27WdJfXkFrRVEUNI2hKRtEIaCXIaqUYbuiTU6v3cNIQZ5rijIaWhWTCbOqZlaUlLOCRHUhBEb1Fn/x2d9huL5J0llBrklKOwGtyJoWpnRY4ygbizGWoqiiWt8eQ+Cxk4dxW/dRjx9BZMvo3n6E7UKaE5xFa0Xa6qL6BwiuRvo60tuTPCbu9TbVhU/RmIJk6Tr8ZJ3gKrxX6MF18wWHwom56Zz3NMbhTMBLhe7tx5mSMKwRKkEnXWTnMCQtAkOEytC6i8oGVJOLeCRmNkJZUEs3XNEqc5ZpBoMuzgUa65AisLayhJSKYixYWlslb7U4efIkz77pZra2tkh0wsUL51hejbTblbVldJbQyjOyPKW/dJhiOiHRmlarw6F9qxw5up9pVVGbKLQitSKTEh8ciYgcbo2ksY4HHjnHeDZlUs+46abr0V7Q77Q5+sKDcfupotvp45xnZXmJQDxnvVQkSUo1rUitnvPDrzACmCaQzWf6hRfcfkvCnV/W5jMnLNOh48x6FO9I0zjDImUc5nXEwogx0fvKGJhOHXWzsx6BPBVkqWRjaIFAJ7e4NMrgCjx5Jki02N2ZHdnuv3eHrxIIonCHnzMk/FxARoRAL8mpraH089lIHWfyZPDIEJA+kHa7WO/5TG05U4/pna9onGO4b0BrpYOdy1lKAUpIaqWxSmGVoCOIIi9K46XE78xnIPB4UhmXy3Nh4V1lzKsCIa7vIAodiR2a2ZzOD6DmQ+yJUty+tsINa4Fed4wfHMFkz0YNbgIM9foJdHkGZSuGWxfZHA4pppasu0aWaPb1+4h6m2p6CZVkmGrKeDbl/LShtAZn1iNdaoe2FyJjSItYXDWC3fmNy4nL5wxuPIlMwMfFgfCSctTQarWx1pCkEiElxawikSnGWNq6hWsMxkbH7yRLUVphvSHPU5JUgEqp6xLnLQSBmi8mvXXoVIMCi2F5dYWkynDe0ZgC5zztTgudSJRTVLMSPw+wxeONjUPMBFKhSVWKo+bKK3vPxQd2FvvERVftAtp7Ug2pUmyOS4wNLC21YgysxRM7C875qB4U4mDveNpQ1QkH1/r0OjmzoqTVbtHtCNpSkgro93osLSUMz05p6njDUyJK8/XzgAU6GbQzODUVlFZEjwoBLRkXgyZALmFmAnKPNatFAOHicBpK0Op1o0JLokEFkjyn1e/u0nCmkxHIhHxpPy/8f/4B7W4PZw0iaKyIQ2wn/vrTPPDXn4ZOm9te+HzueNaNdDt9mqbmYx//c06e+Czrj5whKUsGgx7jyYQsTbHGgkxI0zSqqDkI1u5MVEKqd6v1ew0hJISazUc+y+mHTrM9Nhw8uI8jR47Q7vUw0y2GZx9EdVZI8i7O1lSTISLJ8B6sTHAhIPM++aDAFRPMaBPSNkneRqiMrDNjebnH9sYQgiXv9CiLCpoaiAZGOxQDF4jUSyVoAjQ+0FgfE4y5keDVAmcD588OGXS7yFbOxszSamtYSmmtrpGNKyb1JlvjTc5PLvCsg8dodTsIorNuO2/Trtt0QhsvBNNyyta0pD9oY0zNrKxpqpppYenNChASqdK4QMoFm8Vp7FpDwTmssTgj0UlOoww+SKamYWYbqjImGc5dBQoEKsXqFUKYYH1NgkT6glBPUCoOP6q8TdLKUCrg6k0QEpUvE1SCm12kOfsxfDnEqxaivx9z/q5YKZQK1d0X6bdCoGRCmNMDjJ1imknsiM8uYSZncQKypetRVRxMFkLhgqAyFktGqzWg0zuE3ThPvX2K7r4bUeWYKzmTFrzHeUu71UYoRbfdo6ktQQbGzKvziWR5/wEePHmCw4eOks/aFLMZWkd57yQJXHfdEezBg2xsbtAdLFGbhlbeJvjAgYMH+aqv+nKee+oR2ssDZpOS9//PP8BUBh8gy1NcY7j+xiNcvHiRVnfA8SMHufHYMXIpQXjarZRup0OiBGUxIwjF0tIAlUpsEZiVBf3BABkk/X19tofjOMx7hRFgbtYXC2mx6eV55cvb9JcsH/7TguWeoN0N3H5LSpYJhIgzoM4GrA14L3aLo3ZeJAFIE0mqBbPS4xxoHUg0ZHKHCvWoNG4Ijxle/nsSjc/nGL4XiN4ZUYVMA89ePUiv3SLxUX68m6RcKqacnGyzXRXIuYjA/MjRIZAGQSJi92Ea4lyLDI40RDXHnft79E+KxrvJPPEQUuCFxIno5+Xnn5OIOZlLiPkc2qNqVFcD4jkXaSLGuii+ALvG6iEElAxx/SVzTo6XKKzlyADWmvvoDh7g4MoyImljjw0ox5YPf+wS6+c32RyXdNauY1oUNEKR1jOqxtBKNWmimJRTKmuonaeq67lhYNyXTqpRMo7xl8bN15/iGaEnX7ZEw5UBW1hIA0mW4GpPt93DOYuWcj6rEaU9i2mJUPPKPDHYSmuEVhhvSdsaEo/FsLTao6gMznuG65M4dBS7diitaPdbjOoRs6KgKiIFq9XPybIUGwyuCDhjaedZdA3P51LqwdHptaKTJ5q0nTAaTy9XOJ5c7AIkSuACtJN4ETXW08xKQi8qz0xGY4I1rC7lcZbCK6SzUS51zuMLIRCspZslOBHYGBZ0Ugk+MJqWHFnu025FX4xW6kj0Emlri40T29R1iBQVH9u/h3oBlcCJoWCrAhULCHGgV0DlYqIxn82MbfY9XAQG58B5VJ6RddqkrQyVpshUI4ViOp6w0hvQEprgA+VsStLq8Op/8s/Zd/QItYkeLtIHnPSMxmNOnX6IymzhtrfI9RexPipoWc09n/4Ed334Q4R6hnINpBlIQd5pA9H7JJNJNOdzHnAkeR4TH6FRmSKr9p4vD0Teu0zwznHw+mfx0mffjmymbJy8j0sbYJqG6eYFdGeCStLIO/Yeqaq58VCALMd7B0mHpLfEbOMStPoIpaiNxzpHq7fMdBwr+vWsJEmjTwR1TXCexnnq+RyGD4LCeWoXH+Tex2E5oUK8WVwF6+UduMYzHZYELVEZ2KUZMtVoCSvXtanNjEvFaRoqPnX2Hg631qjTBtcI7KxiksJ2XXBc7KeXtxiILu1um4sXZ6xf2KAoysin15pn3/ZcQojXepL3ybJVZqOzcQYpQFVVVKbA1YFgJeNZianjAKezNvIg9xjBO5rZJZSrkUHiZuex1Trp8rHoFl1PSds9PIqwfgK1egOydzgKf2w/RH3+k7hiiPWedN/teFPQNJNIK067KN3GmI1YTBLggsEC3tXRF2J8Dje+AOkqad7CTc7gfAtXlbjggAZcjcr6BJmjW8sk+Yh6Monn/RVevPSWBwz2rZIiabe72KZg36GjXDh7niNHrmOwvIwl8IKbbmM6GjLcWOfAgQOU5Yz2/H40Gm5HFTxTIQgM+gMSqfHeUBYFBMNNx4/Q0oI8VSRHD7HS+2pOPrLOjTcc5vrjRzn9yDn2LQ8Yj4ekWZtep41wliTRVFVFq5WjlGbQ7VAUbTa2hoCgaQyp1hhr6HZbKNFhuD2iKoo9oY8KsTOc7RFCYYwjIKirhk5LkgnP8f2C2+5I2b8/Jr6EQGPi8OLcgg4h4lCvCI52DiteMJ5BWcd71s7c99891B0Xw/C36VJXNebFUCEiVSrRislsBiHQ0ikzKVjJWmyUU2qpQMbBbIh0KkkcYJZyJ32KX4ZGxSp/eFSUS80tAAUxodj5H1LI+SxGXLxaEYfP/byHoeffb5wBvnqKUnH4H6yLiYYPARIxV6WMhVohAi4oKus5NVJszASdDcWzD2u8syyvTmkvlaytBgZrhk+dTDC2otzcQKUZua24MB5B1kF4QTHcZFLXbNg46B3nQyJ9u5WmaCkYpAneB5ayhFEdaVNXdaKh0SivYysmQJZldFsdrDUY19DYBpE6ggzoVhzQrYYlSsQEI04SgVcOpwLoOFxamQKvJJ2lFqOtCd64uNgRHnRAZhJXOGzVzHX5Fa5ytNIWk2lDlmtkS+C8QJHQGWSRvtCYKMkXBFmWUtU1SarZi45GHaLEanT5hkRCV8OFyZhTTfQOsWXFwdUBg3ZG1sriTc44tBiSzMlkWhC5ks6gpSd4g7TQF45L65u4o30GK13aKqXfTamrBt01VHmJbgqUipdzvxVQLcldF6A2UZlACsjnUojOM/feACMDiYwcyb2EFwLVbtHu92ISS1QtyoXg7IkTkLV47vOfi/cSGxyNhJe++k6uu+46kizl7OmH6R08QJh7udz76Xt4+LOfZHBglWPHbua6YzdSFTVldYnP3nM3silJkwSvJdNZRZ7EwW9HrDB6a7Hzc1W12ghroxqWEBSliRKvVwGCD7ig6e07ysHeEoRA0cDm1pBiNMIhKMYT1KSON+8kpbu0ilQWZxtcVaLaA2SS4V1D0G1UZ0A1GRGyDo2LcnkehU5zbGOwjaFsPCpNAIkJIQ47N5aJsVQ2RK11P6/6we6DaceN9upAVP8oM0vWSQkuYLZA5waVaTarkiQT5EkXbwKlqbl/80GaBhQJ1ayCtMFMcpoUZN6h202omgYTBLNiSlnOcL6mrips01BKOecgK3q9o5w/dYZ2qwfGYJuKoqgx1hKaKP1tLSgpMYG599DeIpgKu30GLw0qOHRnX+yC945EzrAM6NRjRhfxbpM8SXC+pJpsYEbnCPUkJiHtg4isQzM8izUG6T2JzEHoXTqHCDXOGwiOYON9vd4+RwgetXQUkUhEfQmmI8z4DKG6GT/bhHKE6h7A2IoEgdQJMulTb56g2R4/I8OSnw+mKFHeU9Y13UGfrUtDZpMJadJmuHWBXreNd5aLJ0/MOfKeoAQm0UwnQ647fjPOO6TW9AdLVGXFaGODJEnodDos9eNrwQde9MUvoxhtc/rUKa4/cpBX/oOX89BD93N4dZkDS8tsbW7SzhNarZzh9jbLS8tMJxMGgz6TyYjxeMrRo9fRX+ozsw3ddpd6OkQJwdryCpc2NllZXaW7skSr30MnV960VEpYXpL4ILEumstVtaM2kkGu2D+QyL5gdUUhQmRRWOvncrYBpSU6ESgCvbbg8GrOzYcFnz5hqJpAngqkCVRN2O1ePN79O+xKwj/uNjZfTD+2uyEQV9UweJgvkPVc2em+S+fitSZ2/p1dpTItgCDmC2gxX949qhCFEHPxDxGN/h43yC0eTQhFnNkTIrqPBHh0kBqiT5Gcz4WwM3Yf5syQqyV2UfHPe491PjJPmH/f83coFdkF1pVUYUauezjnGRWO81uKre2aXguWV1usrcD1g8C5Fcso1dx8S4tP3FuyPnMMy4ZQe6YSyrqJLCIvqOZKrTv+Yj542jpBCo9Qkk6aoDXMGgMVzC7zMvjy+WjIyEPrd1psbW7jfcbmZBvnDFknp7/UZ1yOEBJ6S21SmTJpzSg3LM4EVCbJljTOBtIsmStMRVM/Yw1aJKwdXKacVjjn0T5K2JZmSt5KSFSCdwadKPq9Htvrkygb5hSmtvGhJjS+DLgqYEpHIlPSJGM2qmKGrlLgypv2GQelC7SV3OV6pgKWhWU4G8aKrhR0ckldN+RZgpaS4B3KB3qJwMx5iZHfGJBYpIB2Eg3+ilCxfmnCbTev0clTHBnT2TZBZQTizEWmodeCWko+fAZGDeQCUilIZLz4pwam84G5XEXOphCg93jdXBYzHnn4IZI0QUqFSlKyLKe/tMTxm27ly//R60msYH3zIiCRWY8ve/U/IRWC8XSTQwf2RalLIg2rmBUoW9NpD3jOC76YvNWJLvdCkmcpeEdTW5SUpEqCdYgAyU7SrAXBRx4/jcE6i85ShFa0uj2K6ZU/z/4ueO9oqoq6sjT1Bq4uGA032VjfwFiwwVNPZyR1gxcC66cYJ0jaHaSUFKMJbnNM3hugWy1CUIhsgClmTM+dh1aP6XhMcJZWO9IoR8NZrB7XDkTsjNngcAicUHhhiUnF3CTxsRrpV8kMPcS2f+VtnA9qHNWsIctTeknC+Kxh8Kxl/GbAKgFOslUVuGAIZVTZSoJEKoVoS86UlxiWJaJy0aSvnIKsyTKJTjOSVLK9PWRldQ1JoDHbrO47wpEbnscjD3+Gqi6pnCM0UBWWqrDxu3AC7yx13cSW+R4jqASWjiH9hDA9h8z7iGIdzDbezOgcfA7CF/jNRxBZhqu3MeU6vpwQjMOpDNk/TNo5gK0LCDW4WMCSShBkwDKXbfQC38zAW6wLWJVT1yPSvIXIciCg0iWaXBOEx6x/Gjs8h/cpfnoBl61hnIur085+gnD4ib6ii79Wt8uBQ4c4e/oRRBAcOHiUyWjI4WPH6Ff72D5/AZUIqqbGGsvaoUPknQ4H157Fg/d/hsZUrKzuI4RAMZuSpSmdbhvTOKaTMTpJWV1dYzabsHH+NL12l6XlHu12n2o2pp1lXLx4keADrU6HVGckUtPv9Uh0glKaEALLK/todQeMJmNMU5NkKQePHGbzAlTVjFS3OLB8NHYvy4LC2j1RnQKJFIrBkmQ6s1jrMU2gqkA2gQMDwZHnJuw/JGGenFvjkEqhtCBLAv2uotdeZjpSnLh/i5PnK8YldFuxWFjVc5oR7A6HCyEe17mIi8zHBCCw+/uuid9VNc48V+ySctfAcUd6NdZ+/O5wv5pnUWpuahg5I/E1OZej3Wn5CMBLiRSxIBVp5GKXTg5zjw4R2xh+zpxQCKwIcZg5hB0LxLgNri4Z9KhS5iO908beiyNK2DIXJ0iVR8kAwmC9ZVjWEBwtBaORoZcqnNGsj2ecOCtY62e0lw/RW6rY1zbcdrjF+U3H/qxL4zyVsRRCYl2gowJWawotmDWGyjisdcxqMEqhpaf2gcpGZkHzDATvCSUaT0T9wOqG5dVVkJCgkCFKjgmpcdbT7Bhv1aBNoBYlaZYg90FRWLIswQePkFGC1ghJU5d4H2i32ygVK32tbkJZV/g6EIRHZ4qW7FDNyugILj1aKvIkxTmF8IJeq005LXDOYGvL0uoyttnGVQFsoC4dKpGU4/IJBe3JqEE8kfc2LjAzUZGgraMCVO0CSkqW0oD1MG4CW5szVJaRCEcmEoajKaGpEAIGmcDYaO6SSUhVHPbJpKelJT0co/WL3PfQMtcfSNgaT1nugteK/kqHSVGyvBS4UGpObwumxpHOq8daCowL1D6qY1WeWPl3gYT4HM6SL3xLfLIqGk/m/akU5HhCXdGYGuscY59w/NizuOHWO1i/uMH1193AbOsiIe/z3l//TSYb6/TaKV/5j/8hS0eOcmH9Ekmi4sC7jZ2k2bQkzfskIpZNlNYoIajLCkXAi3ieOy8QSiK9xDgbldFMQCtNaAztPKNxDULJ6CvxJI/vmXovQtJYy/bWOq5pqKYjppMRpXFMS0NdRZfcooxDz0jJ5vY2aWXQeY4nYzrZwm6NaS+tgVCoVOMsCJlw6fRZitmUVpqS5CmNSPBJyrQ20WtECJoQVeacj93QHUqF2JH820064Kl0M56p2DnnGI0KVKEo0obgPKo2bK0LfOmpfUWq+ow3a6ZNybiZkWiJVpLJekE+aOHnlD2da7I0w5f13HMFlI7dNTxsbTzIdCbo9zskWqIEDPoPkGZtNjfHXLh4mhBixcw0RL8XE/1JqjomuuNJseex894zLSsyGfBVhY2DOBTn/hrdPwZeIeQSrncM32wjZgWhmWKraP4qs2W0gfrMZxCtNUI9w1QFSI3VE+xwg6aYYKZDgtDUxlBtnmc0HuGTFcJsSuYMIZuhpMIXU4xJQa+gg6RMD+JI8a6iWj9F0CsUlaExAd85RKnlE14gX47YeQ9N2aB1QkDQ6S3hXOD06ZOsrh0kX1rh3JmHuP6Gm6hNNEsbbw9jQSrPOX/+LP3OgDTP6S0tsb01ZLC/g08afCUo6xKlFCpvc+bUw6wsrbKyup9Lmxeoyhn79h8kb7WZTUZMZjP6yytI7xmNJmyGEatrqxSTKQcGqwhpKGtDO28xHg2ZljVpp8eZR84wWF5jNhxTFhOs8xw5/myU+vwS38/UNet9oLAJ5UakfdnQRHNQLTHWsbwkWF2NCzRXBUxjSFOFDoE8h/2rh2i3Vrm0XvKnH9vgb+6v8ARWe4JxEYfF4yhZrBp7F/AyIOXceG23mxEr3Dv7H3Yo4Y85lp3XnwyeyfcHHyLVNXj8TjdCxMLc7rzBzv1ZzBOK2J/YXVj7eScnPGb6JOz8rzklPux0csSj1LIg4mcIxFwM59HYhPmshiDOqu4+KRrDE75Yn2wsnuR7jbUYO3dFD1EVM/Gx0yFFnFN0ziPn6+dMgfWS81tDTq0b9ndSrltq0c8TfCPYrEusnOGD4v5C0DhNomPMM1PSThS9RGNFgrNxBqOlarpKUady11fJB0djYVbV1NbvJoBPFl8wHuEJ4MyZM/H7X/wEIJw5c+aJhG0Ru6cRt0XsnnrsFnFbxG4Ru73/WcRuEburOW6L2D312C3i9uRiJ0L4wqmZ955z587R6/WuncGlZwAhBCaTCYcPH0Y+QY79InZPLW6wiB0szrmng0XsnjoWsXvqWMTuqWMRu6eGxTP2qWNxzj11PNHYPaFEY4EFFlhggQUWWGCBBRZY4Mng6pC+WWCBBRZYYIEFFlhggQX+r8Ii0VhggQUWWGCBBRZYYIEFLjsWicYCCyywwAILLLDAAgsscNmxSDQWWGCBBRZYYIEFFlhggcuOp5VofOM3fiOvf/3rL9OuXHm8973v5c4772R1dRUhBHffffcV2/a1HDtjDN/3fd/HHXfcQafT4fDhw7z5zW/m3LlzV2T713LsAH74h3+YW2+9lU6nw/LyMq9+9av52Mc+dkW2fa3H7rF429vehhCCn/zJn7wi27vWY/eN3/iNu8ZhOz+vfe1rr9i2r+XYAdx777287nWvYzAY0Ol0eMlLXsLp06ef0W1e63H73PNt5+dd73rXM77taz120+mUb/u2b+Po0aO0Wi1uv/12fv7nf/6KbPtaj93Fixf5xm/8Rg4fPky73ea1r30tDzzwwGXfzrUepyeyBq6qim/91m9ldXWVbrfLG97wBi5evPiktvP/1x2N2WzGy1/+cn7sx35sr3flmkJRFNx111384A/+IHfddRfvfe97ue+++3jd616317t2TeDZz342P/MzP8OnP/1p/vzP/5zrr7+eO++8k0uXLu31rl0zeN/73sdHP/pRDh8+vNe7ck3hta99LefPn9/9+Y3f+I293qVrAg8++CAvf/nLufXWW/ngBz/IPffcww/+4A+S5/le79pVjceea+fPn+eXfumXEELwhje8Ya937arHd33Xd/GBD3yAX/u1X+Pee+/lO77jO/i2b/s23v/+9+/1rl3VCCHw+te/noceeojf/d3f5ZOf/CTHjx/n1a9+NbPZbK9376rCE1kDf+d3fie/93u/x3ve8x4+9KEPce7cOf7ZP/tnT2o7lzXReOUrX8nb3/52vuM7voPl5WUOHDjAL/zCLzCbzfimb/omer0eN998M//rf/2v3f/jnOOtb30rN9xwA61Wi1tuuYWf+qmfetznWmv59m//dpaWllhdXeX7vu/7eMtb3vK4TNJ7zzvf+c7dz3n+85/Pb//2b/+9+/umN72JH/qhH+LVr3715QzDU8K1FLvBYMAf/uEf8sY3vpFbbrmFl770pfzMz/wMf/VXf/WMV/j+LlxLsQP4+q//el796ldz44038pznPId3v/vdjMdj7rnnnssalyeCay12AGfPnuXtb387v/7rv06SJJctFk8W12Lssizj4MGDuz/Ly8uXLR5PBtda7P7dv/t3/MN/+A/5L//lv/DCF76Qm266ide97nXs37//ssblC+Fai9tjz7WDBw/yu7/7u7zqVa/ixhtvvKxxeSK41mL3kY98hLe85S288pWv5Prrr+ebv/mbef7zn89f/uVfXta4PBFcS7F74IEH+OhHP8rP/dzP8ZKXvIRbbrmFn/u5n6Msy2e8sHItxQm+8Bp4NBrxi7/4i7z73e/my7/8y3nRi17EL//yL/ORj3yEj370o088ME/KRvJz8Ja3vCV89Vd/9e7vr3jFK0Kv1wvveMc7wv333x/e8Y53BKVU+Kqv+qrw3//7fw/3339/+Nf/+l+H1dXVMJvNQgghNE0TfuiHfih8/OMfDw899FD4tV/7tdBut8Nv/dZv7X7uj/zIj4SVlZXw3ve+N9x7773hbW97W+j3+4/b9o/8yI+EW2+9NXzgAx8IDz74YPjlX/7lkGVZ+OAHP/gFj+Phhx8OQPjkJz/5dMLxpPB/S+x28Id/+IdBCBFGo9HTjs0Xwv9NsavrOrzrXe8Kg8EgXLp06bLE5+/DtR4751x41ateFX7yJ38yhBDC8ePHw0/8xE9c1hh9PlzrsXvLW94SBoNB2LdvX3j2s58d3va2t4WNjY3LHqfPt+1rNXbOudDtdsN//I//Mdx5551h37594Yu/+IvD+973vmciVI/DtRy3z8WFCxeC1jr8+q//+mWJzRfCtR67f/kv/2V48YtfHB555JHgvQ9//Md/HLrdbvjQhz502WP1ubiWY3fPPfcEIJw4ceJxrx89ejS85S1vuWwxCuHajtNj8fnWwH/0R38UgLC9vf24148dOxbe/e53P+E4XfZE4+Uvf/nu79ba0Ol0wpve9Kbd186fPx+A8Bd/8Ref93O/9Vu/NbzhDW/Y/f3AgQPhXe961+M+99ixY7vbrqoqtNvt8JGPfORxn/PWt741fN3Xfd0XPI6rJdG4FmMXQghlWYYv+qIvCl//9V//hN7/dPF/Q+x+7/d+L3Q6nSCECIcPHw5/+Zd/+fe+/3LhWo/df/pP/yl85Vd+ZfDehxD2PtG4lmL3G7/xG+F3f/d3wz333BPe9773hdtuuy285CUvCdbaL3jsTxfXcux29qPdbod3v/vd4ZOf/GR45zvfGYQQT6oY81RwLcftc/FjP/ZjYXl5OZRl+YTe/3Rxrceuqqrw5je/OQBBax3SNA2/8iu/8gWP+3LgWo5d0zTh2LFj4Wu+5mvC1tZWqOs6/Of//J8DEO68884ndPxPFNdynB6Lz7cG/vVf//WQpunfev9LXvKS8L3f+71f8HN3oJ947+OJ4XnPe97u35VSrK6ucscdd+y+duDAAQDW19d3X/vZn/1ZfumXfonTp09TliVN0/CCF7wAiK2bixcv8sVf/MWP+9wXvehFeO8BOHHiBEVR8JVf+ZWP25emaXjhC194uQ/xGcO1GDtjDG984xsJIfBzP/dzT/6gLxOutdi96lWv4u6772ZjY4Nf+IVf4I1vfCMf+9jHrjgVA66d2P3VX/0VP/VTP8Vdd92FEOLpHfRlwrUSO4B/8S/+xe7f77jjDp73vOdx00038cEPfpCv+IqveApH//RwrcRu5/9+9Vd/Nd/5nd8JwAte8AI+8pGP8PM///O84hWveKoheEq4VuL2ufilX/olvuEbvmFP51qupdj99E//NB/96Ed5//vfz/Hjx/nTP/1TvvVbv5XDhw/vCd37WoldkiS8973v5a1vfSsrKysopXj1q1/NV33VVxFCeHpBeAK4VuJ0JXHZE43P5UwLIR732s4CYSdAv/mbv8l3f/d38+M//uO87GUvo9fr8a53vetJqfBMp1MA/uf//J8cOXLkcf+WZdlTOo69wLUWu50k49SpU/zxH/8x/X7/CW/3cuNai12n0+Hmm2/m5ptv5qUvfSnPetaz+MVf/EW+//u//wlv/3LhWondn/3Zn7G+vs6xY8d2X3PO8W//7b/lJ3/yJzl58uQT3v7lwrUSu78LN954I2tra5w4cWJPEo1rJXZra2torbn99tsf9/ptt93Gn//5nz/hbV8uXCtxeyz+7M/+jPvuu4/f+q3fesLbfCZwrcSuLEt+4Ad+gPe97338o3/0j4C4gL377rv5r//1v+5JonGtxA7gRS96EXfffTej0Yimadi3bx9f8iVfwotf/OInvO2nimspTl8IBw8epGkahsMhS0tLu69fvHiRgwcPPuHPueyJxpPFhz/8Yb70S7+Ub/mWb9l97cEHH9z9+2Aw4MCBA3z84x/ny77sy4C4uLjrrrt2M77bb7+dLMs4ffr0Fa8u7SX2MnY7ScYDDzzAn/zJn7C6unp5DuoK4Wo777z31HX9tD7jSmGvYvemN73pbz1gX/Oa1/CmN72Jb/qmb3qaR3VlcDWdd4888gibm5scOnToKX/GlcRexS5NU17ykpdw3333Pe71+++/n+PHjz/No3rmcTWcc7/4i7/Ii170Ip7//Oc/vYO5wtir2BljMMYg5eP1epRSuwvUqx1Xw3k3GAyAOCD+iU98gne84x1P44ieGVwNcfp8eNGLXkSSJPzRH/3RrlLcfffdx+nTp3nZy172hD9nzxONZz3rWfzqr/4q//t//29uuOEG/sf/+B98/OMf54Ybbth9z9vf/nbe+c53cvPNN3Prrbfy0z/902xvb+9mhr1ej+/+7u/mO7/zO/He8/KXv5zRaMSHP/xh+v0+b3nLW/7ObW9tbXH69Old/4edB8mOQsbVjr2KnTGGf/7P/zl33XUXv//7v49zjgsXLgCwsrJCmqZXJgBPA3sVu9lsxo/+6I/yute9jkOHDrGxscHP/uzPcvbsWb7ma77mih3/08FexW51dfVvJbRJknDw4EFuueWWZ/agLxP2KnbT6ZT/8B/+A294wxs4ePAgDz74IN/7vd/LzTffzGte85ordvxPB3v5rPie7/kevvZrv5Yv+7Iv41WvehUf+MAH+L3f+z0++MEPXolDf1rYy7gBjMdj3vOe9/DjP/7jz/ixXm7sVez6/T6veMUr+J7v+R5arRbHjx/nQx/6EL/6q7/Ku9/97it2/E8He3nevec972Hfvn0cO3aMT3/60/ybf/NveP3rX8+dd955RY79yeBqXgMPBgPe+ta38l3f9V2srKzQ7/d5+9vfzste9jJe+tKXPuFj3PNE41/9q3/FJz/5Sb72a78WIQRf93Vfx7d8y7c8Tv7r+77v+7hw4QJvfvObUUrxzd/8zbzmNa9BKbX7nne84x3s27ePd77znTz00EMsLS3xRV/0RfzAD/zA5932+9///sdVQnc4zP/+3/97fviHf/jyH+xlxl7F7uzZs7ta3jsZ9Q7+5E/+hFe+8pWX/VgvN/YqdkopPvvZz/Irv/IrbGxssLq6ykte8hL+7M/+jOc85znP+HFfDuzlNXutYy/Pu3vuuYdf+ZVfYTgccvjwYe68807e8Y53XDP00r087/7pP/2n/PzP/zzvfOc7+fZv/3ZuueUWfud3foeXv/zlz+gxXw7s9fX6m7/5m4QQ+Lqv+7pn7BifKexl7H7zN3+T7//+7+cbvuEb2Nra4vjx4/zoj/4ob3vb257RY75c2MvYnT9/nu/6ru/i4sWLHDp0iDe/+c384A/+4DN6vE8VV/sa+Cd+4ieQUvKGN7yBuq55zWtew3/7b//tSR2jCFdiOuYyw3vPbbfdxhvf+MarshV2NWMRu6eOReyeOhaxe+pYxO6pYxG7p4ZF3J46FrF76ljE7onhWovTnnc0nghOnTrFH/zBH/CKV7yCuq75mZ/5GR5++GG+/uu/fq937arHInZPHYvYPXUsYvfUsYjdU8cidk8Ni7g9dSxi99SxiN0TwzUfpycshLuHOH36dPjSL/3S0O/3Q6/XCy972cuuiGnN/w1YxO6pYxG7p45F7J46FrF76ljE7qlhEbenjkXsnjoWsXtiuNbjdE1SpxZYYIEFFlhggQUWWGCBqxvyC79lgQUWWGCBBRZYYIEFFljgyWGRaCywwAILLLDAAgsssMAClx2LRGOBBRZYYIEFFlhggQUWuOxYJBoLLLDAAgsssMACCyywwGXHItFYYIEFFlhggQUWWGCBBS47FonGAgsssMACCyywwAILLHDZsUg0FlhggQUWWGCBBRZYYIHLjkWiscACCyywwAILLLDAAgtcdiwSjQUWWGCBBRZYYIEFFljgsuP/B66Hj2T7mJwEAAAAAElFTkSuQmCC", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import matplotlib.image as mpimg\n", "\n", "# Create a dictionary to store the images for each cluster\n", "clustered_images = {i: [] for i in range(num_classes)}\n", "\n", "# Assign each image to its cluster\n", "for i, cluster in enumerate(clusters):\n", " clustered_images[cluster].append(images[i])\n", "\n", "# Plot the images for each cluster\n", "for cluster in clustered_images:\n", " print(f\"Cluster {cluster}:\")\n", " \n", " # Create a new figure for the cluster\n", " plt.figure(figsize=(10, 10))\n", " \n", " # Plot the first 10 images of the cluster\n", " for i in range(min(10, len(clustered_images[cluster]))):\n", " plt.subplot(1, 10, i+1)\n", " plt.xticks([])\n", " plt.yticks([])\n", " plt.grid(False)\n", " plt.imshow(clustered_images[cluster][i], cmap=plt.cm.binary)\n", " plt.xlabel(f\"Image {i+1}\")\n", " \n", " # Show the plot\n", " plt.show()" ] }, { "cell_type": "code", "execution_count": 14, "id": "0e55ec6b", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:05:17.068188Z", "iopub.status.busy": "2024-04-17T00:05:17.067840Z", "iopub.status.idle": "2024-04-17T00:05:31.022850Z", "shell.execute_reply": "2024-04-17T00:05:31.021937Z" }, "papermill": { "duration": 13.993791, "end_time": "2024-04-17T00:05:31.025621", "exception": false, "start_time": "2024-04-17T00:05:17.031830", "status": "completed" }, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Silhouette Score: 0.28697606337382614\n" ] }, { "data": { "image/png": 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RU+7Oy8tj9uzZSCnp6emZkhqpmMUy1RjtvKMhKbsrbwQ2KU0ipJSYppmSVNB4SMnr9VJVVUUoFKKgoGDMhASTF1OyLIuDBw/S1NTEmjVryM3NxbKspAB7e3s7HR0dVFdXY5omeXl5FBQUTKlbaCKRjvWmQ/su0QWdm5ubco1Ufn7+mONR09VSGgk2SY0Mm5QmAf3blKdimo+VlM6cOUN1dTXl5eVkZGTQ2to61mUDk+O+83q9VFZWous6W7Zswe12x1UrYnC5XJSWllJaWhqPXcRIKuYWillRY3njTpc77bU6X+K8Q323J7NGKt0xpYnCSCQFkb3hrrvu4rLLLuPiiy+esLmnK2xSmmAM1qY8lbfX0ZJSouWxevVqiouLqaurm/B26OM9v6mpiX379lFeXs7ixYtTloaJxS4S3ULt7e0DOrfGSOq1FI8aC9LhvoPRkcNgNVKdnZ10dHRw/PhxvF5vyjVS6ZQ3msy6rKFI6sEHH2TRokWTNu90gk1KE4hU+x4NhtGQUm9vL5WVlRiGwebNm+NWw0QlS8TcjWM9P2YpHj58mLq6OlauXDkul2KiW2jevHmYphnfzE6cOMH+/fsHxKMSN46zze03GDTrEKgWpLYMtBkDfp8uUhpPnZLD4aCoqIiioiJgdDVSE6XoMFpMdSwrRlJer3dUWbRnM2xSmgAMVXs0GqRKKPX19Rw4cICKigoWLVqU9IBMRDr2RKh8SynZtWsXlmWxadOmQR+m8WwohmEwY8YMZsyIbM6Jm9nBgwcJh8PxWpqCgoIxzzNeTMimKU/gDtyOpk4AEoULS7+MkPNLoPU9vukkpYnapEdTI2Wa5mvSUhoMMXf2cEosryXYpDROjKXv0WAYiZRM0+TAgQO0trZy/vnnx98uRzNGKhgvsXV3d2OaJpmZmSxfvnxKHuDEzUwphd/vj8ejYv2GpJTU19fH41GTvXlPSIxHhnAHbkVTZ1A4AReCIIb1KCqcQdj1H0nzpUtZYbLmHa5GKhwOU1lZmZQ0MRXJMOlyG9qWko2UIKXkzJkzhMNhSktLx/VADEcosboel8vF5s2bcbvdox5jNOsYy4Ya6890/PhxhBCsWrVqXOsYK4QQZGRkkJGRQXl5OVJKmpqaqKmpoampicOHD8czwGLxqPHoDU4mdOsRNNWEwgNE1qhwIOjBMJ8g7PgkaH1rTwcpTRUZ9q+Reu6551i2bFncSp6qGql0paJ7vV6ysrKmfN50wCalMSCxTXlnZyd+vz9lGZ+hMBihKKWora2lpqaGuXPnsnDhwmEfsnS572Lt1H0+H+eddx579+4d8ZxYAHeyoWlavF342rVrsSwrHo86deoU1dXVZGVlxUkqLy8vLQKjg0GTJwFJjJBiiBCTD2gCZkd+Ng2z7yZ73uzsbEpKSqioqJiyGinLsqb8+2FZFoFAwCYlG4Ojv7tuIjTrYCApmabJ/v376ejoYO3atfGMpdGMMdZ1jGaD6+zspLKyktzcXDZt2hRPg5+u0HU9KQMsFAoNCK7n5ubGragYoY0F492slVYKCMAk8VEVmFHrqe878VoXRk1E7IUmcd6pqpFKx/X29vYC2KRkIxlD1R5NBil1dXVRVVWFx+Nh8+bNKT88ExVTSmUMpRSnT5/m8OHDLFq0iDlz5iCEiCtXTDcMtSan00lJSQklJSUAA+JRQFIRb6ouoYm4B6b+Zhz8DkFrlIQMBEFAYukXg5aRNN9r2X2XiNj3czhymKwaqXQI0Hq9XsAmJRsJGK72SNf1caVQx6BpGqFQiJMnT3LkyBHmz5/P/PnzR/XAT5T7bqQxEq249evXxx/82PmQvk1yvPB4PJSVlVFWVoZSit7eXtrb2+MuIYfDkRSPmtQNSssg6Po6ztBX0FQLEAAcWNpGQs7PDzg8XaSUDksJhiel/pioGql0WEperxe32z1sX6vXEs6NqxwH+rcp7/+FnAjrBCIPWmtrK62trQM2+lQxFe67WNKF2+0etCnhdCSlsa5DCEF2djbZ2dnMmTMHy7IGfduOEVReXl7SxjER1y+NNQS0v6PJ59BUG5a2CqUvHXDcazH7brg5YXSk1B9jrZFKR0p4LPNuujxPkw2blIZAortuuNqj8RabQiQuU1tbG5fhGWs22GS772I1UsMlXSSS0nAwTcmrr56ms8vPgvlFzJ8/MMV9ukHX9biq+YIFC5K6th45coRAIEBOTg4FBQXx78+EQNOQ2uUMN9q5lOgQu68TOW+qNVKBQACPxzOlFlNvby8ZGRkjH/gagU1Kg2A0tUfjiSkppeLuulgh6GS0Qx/vGImSRkPVSCWeD8NvkkePNnHXj5+iobELKRUOh87KFaXc8rEryMiYnPTsydi0+3dtjW1k7e3tSCnZvXt3kqtvMt920xlTmmp31lgL1EeDoWqkTpw4QX19PfX19Unp55NZIxVLB7ctpXMUo5UKGqt1EgqF2LdvH729vVxwwQV0d3fT0tIy1mXH1xLLTBrrF7i/+87n81FZWYkQIknSaCiMREqhkMkPfvgkDY2dZGa6cDp1/L4wr+6p5be/287NH710TOueDkjcyJ599lmWL19OIBCgra2NY8eOxVOUYyQ1VL3ZWHCuue+mWuonViPV0NBARUUFGRkZcUvqxIkTCCGSMvsmskbqXCqcBZuU4kisPRqu71F/jMV9197eTlVVFXl5eWzevBmHw0Fvb++43YCxB3U8fu9ESykmplpWVsaSJUtSFlOFoUlpx0tHaW7pJjvbjdNhgIDMLBeWlOzec4re3gBZWRO3WacLQgiysrIoLi6O19HE4lH19fUcOnQIj8cTJ6j8/PxxBbLTQUrpFIFNl9UgpcQwjHiscSpqpM6lwlmwSQkYn1TQaNx3SimOHz/O8ePHWbx4MRUVFUm9aCYiSSE2z1ghhMCyLGpqajh9+jSrVq0alZjqSKTU2tqLtCQORzJpOhw6oaBJR4dvwkkpXW6tRMRab+Tn5zN//nxM04y/aSc2OYyR1FiaHJ6NCQdjnTdd/YUGU3SY7Bopr9drx5TOJYzUpnwkpEomwWCQvXv34vf72bhxIzk5OWMaZzjE1j6ecUzTxO/309LSwqZNm0b9hjYSKZWX56MbOqFgGJerL34UDJpkZbkoKpqcN8LpVjtlGEZS9lcgEIjHo2KB9dE0OTzXLKV0kVIqXoiJrpGyLaVzBP1rj8YaOI3VKQ23KbS2trJ3714KCwtZs2bNoG6aibSUxjpOW1sbBw4cQAjBpk2bxuQCHImUNqyfx5yKAo4dayFsSpxOA78/4jK9aPNC3O7pqUM32XC73UlNDr1eb5ykUmlymA7SPRdJaSzad+OtkTrXSOnc6bGbACklLS0tNDQ0AKk34hsMw7nMpJQcOXKEPXv2sHjxYs4777wh4wYToQwRu47RjhMTU3311VeZPXs2hmGMu+XzUJukpml89j+u4bzzygHw+8N4PA5ef8Uy3v2ujWOeczpiPPVRWVlZzJ49m9WrV3PxxRezatWqeKD9pZdeYseOHdTU1NDc3JykMjKVGEsR60RgultKIyFWI7V48WI2btzIli1bmD17NuFwmJqaGrZu3cru3bt5+eWXefjhh+np6RnUffetb32LDRs2kJ2dTXFxMddddx01NTVJxwQCAT7+8Y9TWFhIVlYW119/PU1NTUnHnD59mmuvvZaMjAyKi4v57Gc/O6Az9HPPPcfatWtxuVwsXLiQ3/zmNwPWc/fddzN37lzcbjcbN25k165dY7o/55SllFh71NraSnd3d1xeZqyIfUH7v0EFAgGqqqoIhUJceOGFI/ZCmagi3NGmhSdmAW7cuDGufD6ZayguyuH2297CqVMtdHb6mD27gJyc8YtlDreeqcZEWi4x9eu8vLwhmxx6PB4sy6K9vX1Ak8PJwmTUC6U6b7p6KU1GCvxQNVJPPPEEX/3qV+nu7mbWrFmUlpZy+eWXs379egzD4Pnnn+fjH/84GzZswDRNvvSlL3HVVVfF3YMAn/nMZ3j44Yf5y1/+Qm5uLrfccgtve9vbePHFF4HIvnXttdcyc+ZMtm/fTkNDA+973/twOBx885vfBODEiRNce+21fPSjH+UPf/gDTz/9NB/+8IcpLS3l6quvBuC+++7j1ltv5Z577mHjxo3ceeedXH311dTU1MRLJlLFOUNK/ZMZDMOYMM06SHaZtbS0sHfvXoqLi1m3bl1KWVUTRUqjGaerq4s9e/aQk5MTzwLs6uqasp5MpaW5lJWNXrliLHAaPSDPADMhTW/ZE4XBmhyeOnWKpqampCaHiaKyk0EciRqQU4l0khIw6YQfKy34wAc+wPve9z7e+973AvDqq6/yve99D7fbTW1tLY899ljSeb/5zW8oLi5m9+7dvO51r6Orq4tf/epX/PGPf+Tyyy8H4Ne//jXLli3jpZde4sILL+SJJ57gwIEDPPXUU5SUlHD++efzta99jc9//vN85Stfwel0cs899zBv3jy+973vAbBs2TK2bdvGD37wgzgpff/73+emm27igx/8IAD33HMPDz/8MPfeey9f+MIXRnX9Z/fTmSKklIRCIUzTRAiBpmkTplkXeyAty0JKSU1NDZWVlSxdupRVq1alnOY7laQUE1PdtWsXc+bMYc2aNfFA61j7KSViIop4JwrCOkSO/ASXrvo2Hv+7cQfejR5+PN3LmlC4XC5yc3PjAr4bNmygqKiIrq4uKisr2bp1K/v27aO+vh6fzzdhn026UrPTUbAL6ck21DSNcDjMlVdeyV//+ldaWlrYunXroGvo6uoCiHdb3r17d/zcGJYuXUpFRQU7duwAYMeOHaxatSrJY3T11VfT3d1NdXV1/JjEMWLHxMYIhULs3r076RhN07jyyivjx4wGr2lLabg25RNJSrqu4/P5qKqqQko5pqy1qXLfJYqprlu3bkC78KkSdZ0SyBbcgf9A0EoYHRAIdRpn6L8JiiyksWVSp5/KDTvRaklshpdYQzPRTQ7PpXYZEHnxjL3UTiUSZYY0TWP+/PkDjpFS8ulPf5otW7awcuVKABobG3E6neTl5SUdW1JSQmNjY/yY/iGM2L9HOqa7uzvuarQsa9BjDh06NOrrfc2S0ki1RxNFSjHs2bOHWbNmsXTp0jGZ9zFSGu+DPhy59fb2smfPnngH28FqJcaSKDHYGNOBlBzh+xC0IcnGkhaGcIFyI+jEEf4DwUkipXRlwg2lzdi/hmawJoeJorKpfn/TabGki5TSMa/P5xsxJv3xj3+c/fv3s23btila1eThNUlKqdQeTUS2W8xdZ1kWCxcuZOHChWMeKzGLbzJI6cyZM1RXV4/Ywfa15L7T1DEiqzCA6AuIEChlRLu6Ti7GbUXIVgzzYYRqQ2qLsPSrk9qfJyLV781QTQ7b29tH3eQwXe67dM6bDlLq7e0dVmbolltu4aGHHuKFF16gvLw8/vOZM2cSCoXo7OxMspaampriSRUzZ84ckCUXy85LPKZ/xl5TUxM5OTl4PB50XUfX9UGPGU3hfQyvKVJKrD0aSSpovJaS1+ulqqoKiNSYjKXVRCISEybG88XvTwiWZXHo0CEaGxtHFFONnQ/jI8fpQkqKHASgBuhrS5QY/s0z3dDM53AFv42gG1CAhhR/IuD+LmizBhw/1s8rscmhUipJVHakJofpdN+lo2V9Olqhx8RgBwsHKKX4xCc+wd///neee+455s2bl/T7devW4XA4ePrpp7n++usB4kotmzZtAmDTpk184xvfoLm5OZ4l9+STT5KTk8Py5cvjxzzyyCNJYz/55JPxMZxOJ+vWrePpp5/muuuuAyKf0dNPP80tt9wy6mt+zZCSlBLTNFOWChoPKTU0NFBdXR3XhNu+ffuE6taNd5zYGKMVU4VkVYiJ0M8bCjH36mQ2yTONt6BbzyHoAZygFOBDIDCN10/avOMmZNmLM/g9oAtFLggDVBBNncQV/DZBz52DnjZeghBCkJGRQUZGRrzJYX9Nt8Qmh5Ot1D0U0mkppYMMhxJk/fjHP84f//hHHnjgAbKzs+MxoFjSS25uLjfeeCO33norBQUF5OTk8IlPfIJNmzZx4YUXAnDVVVexfPly3vve9/Ltb3+bxsZGbrvtNj7+8Y/Hn82PfvSj/PjHP+Zzn/scH/rQh3jmmWe4//77efjhh+NrufXWW3n/+9/P+vXrueCCC7jzzjvxer3xbLzR4KwnpaHalI+EsQipJrZwSMxYmQhX4ESTUnNzM3v37o3HuVK1viZKP2+48wOBAJWVlXR2dsbjGQUFBRNeXyONdZjyfRjhP+AwvAiCKByY2sWEjQ9M2DwTDcN6Ao2OPkICEC6UCqHJ/SBbQEu2eCfDMhVCkJOTQ05OzqBNDnt6ehBCcOTIkUGbHE4W0kUO6XLfxRQf+uOnP/0pAJdeemnSz3/961/zgQ98AIAf/OAHaJrG9ddfTzAY5Oqrr+YnP/lJ/Fhd13nooYe4+eab2bRpE5mZmbz//e/njjvuiB8zb948Hn74YT7zmc/wwx/+kPLycn75y1/G08EB3vnOd9LS0sLtt98e98o89thjY6oDPatJabg25SNB1/U4oaXyRevt7aWyshJd1wdYHROlWzcRSQYQiR+1t7ezcuVKSktLR70OGB85DkdKHR0dVFZWUlBQwNKlS+np6aG9vT1eXxNzFRUUFExI/6Gw80Z81mU01P6K+fNmIfWLkMbqcY2ZKsa8dtVFxGXXf+M1gDDQBQwkpcm2Hvo3OWxsbOTYsWNYljWgyWFBQcGw8ajxQEo5rFbcZCEdiQ7hcJhQKDQoKaXyIuJ2u7n77ru5++67hzxmzpw5A9xz/XHppZeyZ8+eYY+55ZZbxuSu64+zlpRG2/eoP2JvWqmQUqzjakVFBYsWLRpw/ERl8o2X3ILBIL29vei6Pqa09NgaYOItpVht1OHDh1myZAllZWWEw2EyMjLi8Qyfz0d7ezvt7e0cP34cwzDiG1xBQcGYU5elVsbRM1dQvvjSKdlUxmu1SO08FA7AByS6bfwoCoGKQeecapeWrus4nU6WLo20Z0+MR9XV1SGljOu5FRQUTFiPoXQWz061hdbb2wtg91Oazhiu9mg0SJQHGsrlYJomBw4coKWlZdgkgXSoMfRHrEeTruvMmzdvzAKOgwmqSinZ8dIxdr96Ciklq1fN5uKLl2AYg28MgyVbVFdX09bWxvr168nPzx9wnYn1NbNnz473H2pvb48rK4/V1Xe2deyUxjpkeDW6fAWlwoADCAAOTMf1Q2bgpbuvUf9urb29vXR0dCQ1OYwlTBQUFIw5nngupYR7vV7AJqVpC6UUoVAoqYhtPBliwJAWTk9PD5WVlTidTrZs2TJsl9CxxKeGGmcsYqonTpzg2LFjLFmyhNbW1kGPixFLe7uXVSvLmDt3cILt776TUvL9O59g18snMM3INb64/SjPvlDDbV98E07nwK9QIin5fD727NmDYRhD1kYNhsT+QwsWLEhKXZ4sV9+4IbuBFpCjT4Ptj6DrWzjCd6GbWxEEUKIM03EdpuOGQY9PlyDrUHMKIQY0wou9ZIy3yWE666Om2lKK9VJKRwwtXThrSCkmFfT8889z3nnnDVAiGC1iSgz9SUApRV1dHYcOHWLu3LksWLBgxAdgIhIdYPSkFA6H2bt3b7ylem5uLu3t7QPcR/ur6/j2dx+jo8OLUqDrgpUry/nybW8ZkVSeefYgu3adwHBo5OS40YSGPxDkQHU9Dzy4h3e8fcOQ58c0AGfNmpVy59qh0D91eSyuvklLU5e9OIN3YMidgInCzco5yxBq09jH1DIIu75A2HEr4Aeyh9XsS0cK/mgslsSXDOhr39De3j7qJofpKmJNl6U0ka3VzwZMe1Lq36Z8IpUY+o8Vk+Bpb29n7dq18QLDkTCRllKq48R0zbKysuJiqrExEonN5wvxjW89THe3H4dDR9cE4bBFZeVp7rzrST73H9ckjSulpK7Oy7YXj7JmzTxefuUkpmWRl9cnne9xu/D5wrz8yolBSQki0iQtLS2sWLGCWbMG1tWMB6N19Y26a6cMYZh/QbdeANWL0hZgGv+CNNYMergreCu6rAI0FAbgpaJ4F6b135h8dXwXqzmBkWNpY7aUpAl0AnmgjW47GI91FmvfMFyTw8R4VKIlfK5ZSueS6w6mOSkNJhVkGMakkFJXVxdVVVV4PB62bNkyKn/3RMaUUqnvqa2tpaamhgULFjBv3rykjaH/Wh59bC89PQGcTgNDjzzILpdGIBBm167jBAKheGO9msON3HnXE9TXdyBEPS7XdpzOwa1AIQTB0MDPIRwO4/P58Pv9KbXsmAgM5uqLWVEHDhyIZ2fW1dUxY8aM4d88TRNn6JPoqjqabJCJZu1AkwcI8TmkcUHy3OY+dFkNGChiGZlOlOrFoZ7DlO2gjc+qTwWjJggpcZj3opuPI1Q3SmRi6VcQdtw0ZMxq3HMOg1SaHMasKNM002YppSPRYVq4pqcQ05aUEq2jxFTvibaUTNPk1KlTHD58mPnz5zN//vwxZfKFw+Fxr2ckcoslXrS1tQ0qpgoDtesaGrtQSsUJKT6XLgiFLdravJSVOfH5QvzPtx+hta0XXRe4nA5CYROfL4QQEAqbOB2Rr4tpWUhLsmzJTKoP1PPIo/vo7Q0we3YeFeUSXYcFCxZMCSENBqfTGe9Po5Siq6uLV199Nb7BORyOuBWVKEiqWYdwBT+JoA2AyLcgiGQeQjVhhP9MqD8pySoiLrvkt1kpdXQ9hCYPIrXJFX6F0ROEI/QjDOsfkXNxIVQHDvN+UB2E3belNMZkJRzEmhzGGh1KKenu7qa9vZ2GhgZ6e3s5fPgwHR0d8ZeRqUgRl1KOOQN0rDjXus7CNCSlkWqPJpKUhBAcO3aMQCAw5CafCnRdJxAIjHs9I4mpxhIvhksY6G9tVcwuQAiBackkYrIshcfjoKgoQhxPPV1Ne7uXzEwnlmmiG4Isp4suK4BlSTo7vTgcDpSSSEtRVJSNAr502//FEyBefkWRk+PivTcsnzaB2ZirD2DVqlUIIeKuvpggaSSWkcPy4k8jtPbYmURqhQIITqEojOjlyW7QcuLjK1FEpAOMSaKbTWgS0JHa+JMeUkXKpCTb0a0nAQ0lIjEeRRaoTgxrG2FZC9rsEYeZquSKxCaHEGmlMHPmTMLhcLzJYf941GR8/9IVU7Ldd2lErPZouL4lE0VKnZ2d8Q98y5Yt43oDmkj33WDX1tDQwP79+5kzZw4LFy4c9sHoP8Ybrl7F/X99mY4OH9LQ0DQtTiJr18zhJ/c8w/7qM3R3+QmbFpmaC0uAlAqv108o6qLLyXbT0xtCSkVWlovzzivn8Sf2Y1kWDodGrNizpyfEPx85xqpVA+X1pwMSC0CBuKuPwENotCGlQBMKECAEIBH4UQRBZBFJz+6DpV+B4kcImlEIIgWvYXRhYbEYtAVTcl2jSXTQ5GEEvggRJY5BFhqd6NYBrGlESoPNm5eXF0+aCAaDcVdfzF0bE5UtKCggKytrwuqj7JjS5GNakFKiVNBItUcxl9t45jp58iRHjhzB7XYze/bscZvkk1WnJKXk0KFDNDQ0sHr16pTaCvd33zmdBl/98nX897cfoampm3A4QiKrVpZz+Egj7W1eNF0QDkukVLS3e6NnJrsjOzoDCAHZWW5CIYvHn6jGNGOEFOmGKhBYluTMmV68vuC478dwkFIiJUPWSiViuA0p5upzBC2ECSgnEAQkSkXOEyiU6sXULgKtn36gZhB0fQ1X8IsIOomJp/YGCyDnq1PWRXM0BKFEHjHyTE6iCKPQ49bTSEhnEWvivIntxGOZmTGSOnnyZFLMsaCgICUNyMGQLkvJdt9NMUbqe9Qf47GUQqEQ+/bto6enhwsuuIATJ05MCJlMhqKD3++nsrISpRSbNm1KOYNssGSJBfOL+cU9H6D6QD2trT0sWzaLv/z1Far21pKV5UY3ItZVe7tv2LGVivxXkJ9JU3MXSkWcXLH6EtOKEJtSim0vnmDB/HmDppzHEEsdH81brM8f4t5fv8jLL58gGDQpKMzkzdeu5po3rEx5jMFg6UtxmBpCKCIbdQiBItr7gm5vKbuPLsXhejmpgFfTNKSxBr/2dwzrnwjZQFjN5bm9Hi65ZKDywmRhdKS0GKnNQ5cHkcoBwgkqjKAbJeYhtfUTPudEYjgyHKrJYXt7e1KTw8T6qFRfStNBwkMphL+WkVZSGotUkGEYY0oqiCke5ObmsmXLFhwOR1qLXgdDrN4pVt8zc+ZMli1bNqoHYbi1rFheFv97dXV9pFYramkEg6lZnz5/EI9HxzDAssCSkS9RMBjGNPvmffCfBzh8uJOvfPmtZGYMHv8a7aYmpeTr33iYmsONCASaLmhs7OLXv32RYCjMdW8ZPGU7cb4hx9YuRopyNHWaiBXhAMIgQLIYV/HPWZfviL+BV1dXY1lWUgFvRsY7EEJEv59bU76uicCo0qQ1jaDr87gDtyNUPUJJIq0xZhFyfX7YeqgxzzmBGG19VKzJ4bx58+JNDhNjiqk2OUxn9t25hLSQ0nikgkabVKCU4vjx4xw/fpzFixdTUVGRlMk3mbGg0UIIQUtLC8ePHx9zfU+qoq66kWxRhcOp3QelFKFwGKfDQTgciTH5/ZE/Y3C7dXRd4/CRJv583y5u/ODFo76OwVBZVceRo80YhobLFYntKKnj84d56KG9vOVNq8e+SWoaAfePcQc+h6aOAhJwIpmLaVyLUHW4XEuT3ERer5f29nZaW1s5duxYPKsvNzd3Qq53tEh8hqSU/OFkJQ/WHaTXDLEou5CPLd7E0tyokoe2gID7V+jWU2iyDqnNxNKvAi31mq50tZAYDxkO1+Tw0KFDhEKhpHhUdnb2hLRzGSu8Xi8zZsyY0jnTjbSQkhACy7JGbMQ3GEbjKgsGg+zduxe/3x9XPBjrWCOtabzkFgwGaW1tRUo5ZjFVSL1z7Pp1c6mtbScUMqMuttQC5bomcBhO/P4AS5eWUjG7kKefOYiUFrou8HhcGLpCaBqmGebll0/ESamry8f+6npcToOVK8tGmGkg9u6rw7IkbldfsoHQNAxDp7snQENDF2Vl42i2qJUSyPhfkEcxwo9jmE8haMRh/hKH+Xss/UJCzi+C5kxKW66oqIi3dUhsjvfqq68OcPVNFvp/5re++ggvNJ9AoVBAY6CHnW21/HD9m7lwRtStqLmxtDcx1icgHZaSlHJC502lyWHMzRcOh6echO2Y0hRirG8cqSY6tLW1sXfvXvLz81mzZs2gulpTVV80EhLFVIuLi8f1JUx1LW+/fj1VVbUcP9GCzxeKZ+SNCCHo7glQWJDFxz56OQvmF9PZ6efVV0+SG1V9CIdCoCIvH6FQxBq+/6+v8MST+/H2BhGaoLAgk399xzqkhEM1jeTkuHnDVSvJzh5aYzAz04kQxGNZMcTcgJmZg7sJR7+RZGNYTyPojKpy6wh60K3ncZhlhJ0fHnBGYlZfRUUF27Zto6ysjI6ODvbv3x9XzI4d4/F4RpHCHcKw/o5uvYTCiWm8EWlcknRIoit0V2ttnJAc8T5diqC0+Nb+53jg0veN8n4Msaw0tJCIke9k1UcN1uSwvb2dlpYWwuEw1dXVFBYWxj/Lya5bsmNKZwFGsm6klBw7doyTJ0+ydOlSysvLh83km4j6orFaXLFMwKNHj7JkyRL8fv+4MgshdfddZoaLb379bTz2eDVVe2s509BBbW07QxlZ2VlOPB4XnV2+yAYXCvH0MweZUzGDZUtnsqfyFOGwiSNaYCuVxLIkixYV88yzB3ngwT0opcjOcSNlpKj3O997AoglO8Df/7GHj37kEl538eJB13Dl5cv4xwOV+ANhPB5HPL3dNC2WLZuVJIU0GFJNmzbMxxGqA0URiMjLkyIXoYLo5jODktJg88ycOTNJMTu2uR09ehSn05lUwDvk5i57cQc+hKZOErNmDet5TPMyQs5vxOM/iaT0YP1BFAoDCSqaQCQEmtKo83fRGQqQ5xya/FNFOhIdhisXmWgkNjmcO3cuzz33HPPnz8fn88XlrDIzM5PiURPd5NBOCT8LMJzMUCAQoKqqilAolJLETToTHcLhMPv27aO7uzvuWjx69CihUGjIc5oCp2kJ1VHqnkehc/Dmfam67wDcbifXvXUN1711DUePNvHvn7ufUGggKWZlOZk7r4gjh5vweJw4HDqBQJjHn9iPrgne+a8X8OzzNZyp70DTTZSUWFKRl5fBO67fwK9/sw0zbFFU3Pd5KKmwLIWug8sV+Rr6/WF++rPnOW9V+aAEk5+fyfv+3yZ++7/b8fv7LNyiGdl87OZLU7rmVCBUR/Qv/a15J6gekDLlZABIVsyOdXCNBdtjxZ+JzfFycnLim64z9AM0dYJI4oWDCDEFMaxnsKwnsLQ3AMkEoWRj9LjE74EiEifTUYw/jtp/zqlC7DlLhyJ6zNqNxXpDoVD8czx8+DDBYHDCmxz29vamTRklXUgbKY31SzWUVRLLWCsqKmLdunUpvbGkK9Ghu7ubPXv2xMVU4zI3Q5Bbd7iNP9V/h5ZgHQqJQKPcvYh3lX0Wt5G8eSeOIaXkwMEzWFKxYlnZsDU9ObketOhHEvtolCLqLlMcP96CJ8NJhieyVpfToLPLxwvbjvCud23k61/9F/7399vZU3WaQCBIxew8bvrwlSxcWEJrey8OR98GL6UkGOpT7NCiE7tcBoFAmEcf28e737Vx0HVefdUKzltVzqOP7aOr28+8eTO46vUr4uuaCEhtDiBAhSLp0rGbQQClLR4VIQ2G/sH2YDAY1+rbt29fkqtvYf6LkbXEi3YF4AL8GOYjWI6BpPTWov082jALC4ERJSalImXAs92Q7xyFQK3sRZNHUMKDEsnXnq6YUqxtzVQi9qKXGHZwOp0UFxfH6wf9fj/t7e10dHRMWJNDn89nW0rTHf1JSUrJkSNHOH36NMuXL6esLPUA+kQnOoz05pjYFmMwnb2hSOl/a79JW7gBDYFAR2FxOlDDn898hw9UfDnp2NgYz79wiF/eu5WuTj8KRXaWmxtuuJA3vXHwVuDHjjZjOHRyXDo+X8Rac7kcZHhcdHX7UApyciJFh7H3b5fLgd8forGxiwXzi/n0p64C4MCBA2iaxuJFJQAUF+fQ3uZFSYXQIgW2MWNusPvV0eEHYj2gjnPsWAsFhZlcftlSMjxOSktz+dAHLxryPkdODmBYDyDkKXTK0LTUFN8BLP0qpPaPiKyQykBhIOgFXJjGW1MeJ9UNyOVyJYmRJrr65mZ5ceggifYQExqxiJrAP+h8r8s/zMY8Jy91FhFWfWtwCosvLupJbfFSYlj3o4cfQlOdgI6lzSXsvBmlL40eMvXZd+ls8AfDuw09Hg9lZWXxeFTscxxrk8NYhqcdU5rmSCQSv99PVVUVpmmOKWNtIoteYXh3Rqz7amtr65BtMQYjpWPeKtrDjWgINBH7uDQsFabOf4S2UEOSK08IQV1dN/f9dQ/BoBlVXNDo6vbzy1++QNGMLDZeMFD6JjvHHS0cVWRmOrDMSHC8vaMXy4rEfNrbvWhCEAqbEWYSgswMJ4UFyfe9f+fZq65cwfHjzbS1e8nOdifFzRKtNykj92/RomLa2nu542v/5MyZLiyp0AT89W+7+fQnruD884cvStWsA7gC/46gnehCufw8DyGrGFg77LmRATIIur6GM/gjdFmNIIQSswg7rsdyvHHE04d1n8paNNmE1BaANjBTsL+rT/MtQ8g9CKWQUiGVRAiJpoE3vAThkgNdtiKXe1dt5e7T6/hnczG9ps7iTB+fnLuH8wovI5XUHt16DEfoD9HsvTzARJcHEaHvEHR9H7TctLnv0lWwC6knaA3mso2JytbX13Pw4EEyMzPjltRQTQ7PxZjS1L9yRDFe911TUxPbt28nKytrzCnUExVTSmytPhh6e3vZsWMHfr+fzZs3D9mnaTBSqg8cR6EQ/T4qEY0NNARODBhjx85GgkETt9uBwzBwGDput4OwafG3/3t1wLyhUAhvbz15uQ56e8N0dYXo9Ybw+cNYVt9mFwya+AORn1lSYVkRN1x7hzdpvP6kdPFFi/nXt19AXm4GXm+QcEhSUJCJrguCQZNw2Ir/WVycxRWXL+XOu56mtq4T3dDIzHDgdBl0dwf44Y+fGTTuFYeUOIO3RZW+nUAmChcuh5cs+ZVIPCgVaLMJeb6N3/Mb/J6fEnD/BsvxL6mdO+i6GnD5P4PH/0Fcwc/i9r8HR+A70X5GQ8N03gzCg6aFMHQTwwijayZhM49d+1axdetWDux/AV3tR1lNkXOMK9A0wSfm7uXxC3bx4uZt/Gb1M6zNDRJ2XJvScnXzMcAErTQiraRloyhFyHp065nIJaXBakmnpdRfHHo00HU93lpl/fr1XHzxxcyfPx+lFMeOHWPr1q288sorHD9+nI6Ojvg+4PV6B40pvfDCC7z5zW9m1qxZCCH4xz/+kfR7pRS33347paWleDwerrzySo4cOZJ0THt7O+95z3vIyckhLy+PG2+8kd7e3qRj9u7dy8UXXxyXZPv2t789YC1/+ctfWLp0KW63m1WrVvHII4+M6R7FkDZSGitiG96+fftYvnw5K1euHFd6+UTFlIBBx2poaGDHjh0UFRWxYcOGEduq9x9jhnMWIqK+1u/oSGypyFk+YIz29gCCWD2YRCqFFn2gGps6k47v6upi+/btOJ1O3nD12iH37P4PoxACl0sHFA88+Cq9vYE4WfQnJYC3vmUNd37/3Xz+s2/kP7/0Jn7zqw/y1recT1aWCyVB1zWWLSvla1+5jvZ2H4cPN2EYGk6nEa9FcrsNenr8PPd8zdD3UL6CphqIxGBib546ltTRaEaTO4Y8d/ABi0CbN+oGeJBwz6TEFbwNXb4c/Y0HgR+H9U8c4R8PO4Y01hBwfRcpVhC5Jg+WcTFmzm+58MKLeN3aHaws/z7Ly35NWeaXaTnx7xw8sYre8MXRV5lWNDpR5BByfgy0hSMvXEo01YSi33dVcyIATUbIL12W0muhwV+syeGSJUu48MIL2bRpE7NmzcLv97N//37e+MY3ctVVVzFz5kxqa2sHPE9er5fVq1dz9913Dzr+t7/9be666y7uuecedu7cSWZmJldffXVStvF73vMeqqurefLJJ3nooYd44YUX+MhHPhL/fXd3N1dddRVz5sxh9+7dfOc73+ErX/kKP//5z+PHbN++nXe/+93ceOON7Nmzh+uuu47rrruO/fv3j/nenFXuO5/Px549ewBYv359XMp+rJhI912sIDgGKSU1NTXU19dz3nnnUVJSktI4/UlpaeYGsvQ8eqyOSO0PAoVEoihxzabEnezKitTrGLS2BfB6gwljR1ox5Ob2Bbnr6uo4ePBgvFng088+NuTaEhUbnE6D3FwPbreDlpYetm47wr799RiGznmrytl4QTEe98DNKiPDyZqo600pxfv+3ybe9c4NNDZ0k5vriWfcHappQEqFriePoWsCKaGt3Ttg7Pj1q1YiWWaxxAALQQhdizitHOG/E9RWgzZ5fvr+G4gmt6PJ4xFVbhETA3WhVAe6+TRhx0eGVVKQxgUE+vVxAnAGvoOhPYfSMvCGs3G5wpR79pHhu5+XD70VXS2jrKgOd0YeRubVZHlmp/YWqmkoUYRQx/otJBTJ6dOK4td5rpDSZIuxut1uZs2aFS8h+MY3vsEDDzzAvffey1vf+laysrK44ooruPnmm7nooou45ppruOaaawYdSynFnXfeyW233cZb3xqJgf7ud7+jpKSEf/zjH7zrXe/i4MGDPPbYY7z88susXx/ROvzRj37EG9/4Rr773e8ya9Ys/vCHPxAKhbj33ntxOp2sWLGCyspKvv/978fJ64c//CFveMMb+OxnPwvA1772NZ588kl+/OMfc88994zpXpw17ruGhga2b98el6sfTWfYoTCRvZn6i6nu3LmTjo4ONm/enBIh9R8j8Wc3lH+ebD0fhcLCQgGFjlLeXfbZQcfIyXEMqDeSUiElXHbJUqSUVFdXU1NTw9q1a+MJF41N3dExRlingGAgTEeHj2AwHLeQAoEwW7cd5g9/rORgTQu//+MOfvXrF3jq6eohVcOdDoM5cwqTUsArKgpxu4wkLT2AUFii630JFIPB0lcTIaQQYAF+wIxnFGqyEmfoGyO6zSYSmjyOwIT+lgduBF6Eqhv9oPIMutyJElkobQYSF1IVIPQcCrOPcOEFs1m15m2Q8f84076Zqr2n2bZtG/v27aO+vh6/3z/s8KZxJQIdZBPIEEgvgkaUKMHUL4ss4Rxy302lxJAQgnXr1nHjjTfS09NDc3Mzf/nLX1i4cGFKdZUnTpygsbGRK6+8Mv6z3NxcNm7cyI4dEU/Bjh07yMvLixMSwJVXXommaezcuTN+zOte97qkAuGrr76ampoaOjo64sckzhM7JjbPWDDtLSXLsuLtG1atWkVJSQn19fUTFguaSFKyLCueml5SUsKyZctG9UUeKvuuxF3Bp+b/iMPe3bSG6il1z2dB5nlDjnHmjA9NE0nWDUTSu72+ADt37kQpxebNm5Nk/MtK86muPpOQCj74OgNBk0CCgGtOtjuemRcMhDl5qoOm5h4yMiKqBS/tPM4ru0/y0Y9cNmKBK0CGx8nFFy/iiSer8XqDOBx6xA1pKebNm8Ga84fp9aOVYWqbMeTzgI/EWh1JDkoUo8n9aPJFpHbJkMOMF4kvXUqUotCJEGXiy1QIhQslUntpSYQm64AAiqgumor9kYWgFU3W4naXJb1991fLdrvdSQW8iYF2S38LYUcHuvkYmmoh0rBwPmHHR+Pt3dNhKaVLBDadDf7cbjcXX3wxF1+cmoZkY2MjwICX4ZKSkvjvGhsbB7TCiWUHJh4zb968AWPEfpefn09jY+Ow84wF05qUent7qaqqQtM0Nm/eHG/fMJFut1hR3Hi/cJqmcfr0aRobG0edmp44xlAxLk3TWJq9Adgw7BhCCHp6w7hcBm6XEVf/NhwGXm+QnTsP0thYSHNziH8+0sDaNXN487Xn4XY7ed97N/Ps84cIh4e/t4l1TACBYF8+l1LEezbNnVOIlJK2di97Kmv55a9f4NZPXZXSvf7why5C0wQvbD1CIBDGMHRWrp7FJz5++Yjnh1xfh9B/Y1j/JNZ8MBDyoLvmoQkDIdvRrUMDpHomC5Z+GUrci6ZqUSqbSAKGF0EYS78UtNELuEqtmAjB+aLjxcjXDziRWvJG0V+dwDTNeOHnsWPH8Pv90cLPPEoKGsj0BDGNqzCNN6PJGiADqa1Kiq2lg5TSQQ6QPjHWsdQ2ne2YtqR05swZqqurmT17NosXL076Io630V/iODB+l0AwGCQcDtPW1paSksRQGI0yxOEjTTz+xH56ewMsmF/EtdeuJjPDhaZpuFwafr9E82i4PU78/hDd3RF3zfETPZw81YvLZaBpGkePNrFvfx23ffFNFBZm8dF/u5Sf/fy5JGJyuxwsWVLCkSMtZGQ4CYVNlAKfL4hpSsJhSShkYhgaHZ1epASXSyMUMjlU04jPF1ERf+aZgxw71swXP38ts8uHbz2vaRof/tDF/L8bNtLQ2EVhQVbcGhv5RjoJuW9HeI8jaEJRhjfQRY5LizOpEmNr9JYKBqSEawZB15dxBb8eaRVBb0TDTruAkPPWsU2izUVqq9CtHchoIowmetBUL5a+MZKcMQwMw2DGjBlxBepAIEBv56vk6l/GZdWj+SQKNz5rI9L973gyBxJnOlxp56KlNFrMnDkTgKamJkpL+8pFmpqaOP/88+PHNDc3J51nmibt7e3x82fOnElTU1PSMbF/j3RM7PdjwbRTdDBNk4MHD9Lc3Dxkt9WJLHqFyBdurJpVHR0dVFZWomkaS5YsGZckSKqk9Je/vsyf798Vj+XseOkYjz+xnzu+8i/MmJHBogU57NvfhS/aUiKxV5JSIK1IfKm4OJuAP8ShQw08+9whli4pJTfHww3vWsXxE+3omoeKOTN40xvP48XtRzl6rIXMLCeZOPH5QgSDIUwTTFPS0eGltzcYjwN1dITo7a0nFDLRNIGmRZI06us7+O//eYRvfO1NHDlyhMzMTDyebI4f76a7N8DssnxWrSqLbwBut5N5c4vGdD+lsQXD/BtKxPzwEqFaUSIL09gypjHHCqUvJeD+HZrcjlAtKG0ZMlqEOlaEnJ/EGTLRZDUeRw+a8GDp6wk5PznqsdxOyM39BZqsR5GLpQywuskynudkfZDTbdcNcPWdS4kO6bCUYr2URnuP582bx8yZM3n66afjJNTd3c3OnTu5+eabAdi0aROdnZ3s3r2bdevWAfDMM88gpWTjxo3xY/7zP/+TcDgc12Z88sknWbJkSTy2v2nTJp5++mk+/elPx+d/8skn2bRp05ivO62WUv/U4Z6eHqqqqnA4HGzZsmXI9OmJIqVY3cF4xVQXL15MfX39uB/QVEipvr6D+//6MuGwRVaWCyEioqTNLT389GfP8uX/ejMXbizC5clnz57TcULSNIEQkTIdISJEFQiEcXucdPcEuP8vuxCaRigYRiGZWZLJZ//j9RQX5QCwbFkpbreDtrZeAv4w4X5JCJ2dyYHzRDLUNI1w2ELXIwR28lQrP/jhQ7zzHWs5crSFfz60je6eEAKB02mwYEERF21ZTG1dB4UFWVx26WLc7tHLCIUd70Soo2iymky3F51uENmYjneCNrCAeCIx6HdB05DaCEoUo4FWQMj9dYR1iOOnt5I/YwV5OZvHNJRubUWTdSgKQLjRBaAVIVQL88uO4yqYQ3t7b5KrLxwO4/f7ycvLmzJyeq1m3w2G4RTCe3t7OXr0aPzfJ06coLKyMq5S/+lPf5qvf/3rLFq0iHnz5vFf//VfzJo1i+uuuw6AZcuW8YY3vIGbbrqJe+65h3A4zC233MK73vWuuLbfDTfcwFe/+lVuvPFGPv/5z7N//35++MMf8oMf/CA+76c+9SkuueQSvve973Httdfy5z//mVdeeSUpbXy0mBbuO6VUvMp5zpw5LFy4cNgvwHCirKNBTENrtGOFw2H2799PV1cXGzZsIC8vj8bGxnHXPKVCSk89c4Bg0CQzw4kQkXtkGDqGrlFzuBG/P4xhaNz4gfXcnxXg6WfO4HQ6yMl209bujVbEK3KXdZC9sBEjlEPojIfWNouS4hyUgs4uP21tPj7z73/ms//+Bs5fXUHF7EKWLy3lhW1Hhl2fx+MgHLaSMudirsDEQtw9le2Ulzdz6FAjgQCUFOeilKSnx8fLr5zm5VdOR18a4M/37+JTn7iStWtG2V5cyyFkfBWH+V3gaQS+SExHhUYtqjoapCqIO2Hz6Utp7ekhs2DOmMcQqgGwQCS/CCo8aPiYUSCYMSOi3h7rOVRTU8ORI0c4evTogLYck4V0Kjqkw1KKxdH745VXXuGyyy6L//vWWyNu4Pe///385je/4XOf+xxer5ePfOQjdHZ2ctFFF/HYY48lvej/4Q9/4JZbbuGKK65A0zSuv/567rrrrvjvc3NzeeKJJ/j4xz/OunXrmDFjBrfffntSLdPmzZv54x//yG233caXvvQlFi1axD/+8Q9Wrlw55utOOymZpkl1dTVtbW2sWbMmpS6LE5k1N9oC2u7ubiorK8nIyEgSU52INaWSeBHwhyObXr/nUmga0uoTOq2urubKy9eyc1d7dP/VImrcnh6Wf6QGd1EAoSlQgtUbDOr/bwWdpxz4fMF49l1Hh5fvfO8x/v3TV7N27Rw6OodPI4aIJZTapix45NH9eDwOimZkRxsNQlOzN55A4XJpKKno6vLz3e8/xpdvu4KyspJRuTQc1m8xrKfQjCAKF4JGnOGfIVQrYdenUhrjbMB4XWlSKwN0UIEkYhL4UaIA6JNE8ng8eDwejh49GncPtbW10djYyOHDh/F4PHGCmuh2DueSpTSc7t2ll1467HMmhOCOO+7gjjvuGPKYgoIC/vjHPw67hvPOO4+tW7cOe8w73vEO3vGOdwx7zGiQVlKKqWW73W62bNmScu3RRJNSqmPFik1HI6Y6GiQqQwz1AJy3ejaPPr6PUMjC5Ypp7knCYZPS0jxOHD8EECf44qKdHDnajNcbwNA1Ft90BE+xH2kJVFgDXeHIDjP77Qd49Rvno2k6mgCpIjJCXm+QBx6qpKGpi0M1DSNew0iZexDRu8vKctLdHUATIqrPB6Zp4fdHxGCFEOi6jubQ0HSLQMDkuecPs3RJXVxlO7bxDd2LqBvdfACQBMPZuHUXCA2lOjHMRwjr/4pDPoJuPgWqB6XNI+y4AWmM3R+eLoyflC5Gan9Gk0fjGYICLyCxjCtBG+hKV0qh6zqZmZnk5OQwb948TNOMd249cuQIgUBgyPbiY1rnORRTOhfFWCGNpKSU4sCBA8yaNYsFCxZMWkv0iRjLsiwOHDhAS0vLkNbcROjoDSdXFMPGDfNYsmQmBw82ROI0msC0JA6HzupVOfG30oyMDP5830ucPBVp3GdZCj3HS2a5DykFmtIRRqRthGmaaBkhZqxpoWvvLJSK1ARpmk6Gx8mpU610dnixrPFLMkUIyR3PgjMtKx47Qqi4laRpfXEZLarksKeqjfozQcrKcli9KkR390kOHDhAdnZ2nKRycnL6zpN70ehFkQlJTb89CDrxBN+LoAeFBugRiaJgNUH+E2lcMa7rHJeLSUqgC3ANq/SQiHEnHWhOgq7bcAW/jyaPAAGUyMDSriFsfGCIZQ50pRmGQVFREUVFkeSUWDuHxPbiMYIqKCgYVnZrqDnTRUoT3cBvJJyLYqyQ5uy7WJbHaDFRKeEwMpl4vV4qKyvRdZ3NmzcPm3wxkZbScMd89fa3cu9vXmTnzmP4A2Fmzchg+dJMli6ZzVPPNHHo0CmefraT6gMNKAWa02TOm2vJX9WO5lCgwOnU0KJN7KSSKCSOvCDhUBiiCSgejwECDF3Q0tozIbESt9uBJgSd3X6kVNGiziBebxCXS4+TksOhRzY8FVGKUErR0eHF7w9z/EQbhw618OlPXsnMmVm0tbXR3t5ObW0tIKkobSMv1012ZiYuNJIISQWiYq0KQaQqPSJum4XCADpxhn5FQLtsQMzJ3xvgwR8/TvW2GlwZTq76wCVseOOaAdeolOKVcDt3vfB7mgO95DszeNfc87hh7vkj3h/NfApn6NcIdQbQkNp5BF23gjZMwXAU4461aHMIen6IsA4jVDtSWwja4O50pVRKRJjYzkFKGS/gbWhooKamZtSuvnS0YIfIi+lktz7vj6HEWF/rSKv7bqwuL13Xh+3QOtqxhiKlxsZG9u/fT3l5+YBaqf6YKEsplXbmbreTj330Mj76kUviahdeXzY/+8XL+AMBlFA0NEbjP5pk+c2HyCzz9Q0gICxDCGUglIZUEhD0nM4kYgwp3G6drCw3vb0B1l20mKqq03R0+AZZzegQCITjdUtut0HRjGy6unx4fSECAYvMTCd+fziaKGFimjLaoVZQNisv0gLdkjS39PDAg5V88hNXxFULCL2II/SjiJiokoQCbkKahsPoBTIiBC06iLWz6PtTIuhGiUJQrightAB9BajtDR187rKv0dHUFa9T3fPUflZctAR/t5/m2jbyZ+byri9dx865vfw+VIuKfkV7zBDfOfACR3vauH3V0BaYZm7FFfwmkQJYF5F2ES/hDnyagPvXoOUMee5EJlcoffEA+d+h5huN1aJpGrm5ueTm5o7Z1ZfOmFI63HeJdUbnCtKeEj4WGIYxonZXqhjMwkkUU125cmVKhWATqTieyjiBQIDKykosy2LDho3cevtvKH/3frLn9YKQBFrd1D1ehuayyJzlQ1kCZWloDguhx5plm/EktHB7JkbzLDQtgJSKcEji94VYuKCYa65excmTrUD7uK4tO9tNQX4GnV0+/H6TmTMjBZkFhVnk5ytaWntYuXwWhTOyeGHrEYLBSJGupgnKy/Pim5Gua+i6RuXeWtraeigszAZ5Cnf4GwjRBSIT0PDovSgpsCwHLqMXZA9oFgoNJdxo+OjLGLFAhYncGY2ISgII6xBC1fOTW7bS0diJputoRiQhxQya7Hv+YPz6ult7+J8bfkz3m0tQN5Si0Vf2IIEH6g7wbwsvoMQz+NuvI/z7SGIB+XHZDKXCaKoRw/w7pvP9Q97bqa4ZipHSeOYcydUnhEjK6nO73Wl136UjJdx2350lmMyYUuJmv2nTppS/FJFanFTap408zkikFCvYLSwsZMWKFbyy7xgl73oZZ04IpQRKgafEz8IbjtNbmxmpT4peogwLNBRCJ2osCLpPZlL7l6WU5GeTkeGhpbUbKSXvueFCcnI8fOm2v9HrHVxQNfXrgpUrZ/HJj7+e737/sXj6ulIKl8tA1zU0TSMYMvm3my7hvf9vE7W17Wx78SjPPlcTd+uEQiatbb34/WGEgDu+/hCbNy3khjdvQ6MrWmcT3TyUE6G1oelLOFpbxJyZZxDqEEEzC2kJMlx+hIhYiRFuMhGEsLSIqKsj8B10WQX4ObA9B4RAM2JkMbQtkf3PJjreUgTZETeTEAJNKSyl+M+qxznt7aLXDFHizuLGhRt4U1mkiFaTJ1E4+nScAIQDlIxK/QyNs5GU+iMVV59SCsMwME1zSmM86bKUbFI6SzBZpNTa2kpVVdWYxFR1XU9JwXckDEdKSilOnz7N4cOHWbx4MRUVFQghOKa/gCMnhDQ1kFqkW6hSaC6Jp8TXzxWjIU2FJiQoOPDzhfSeiKT75rlMdF3D5dQJhRVLlpRwx9f/SU9vAIdDTymzbii4XA727KnlG9/6J3n5Gfh8IXy+YLxWLCPDiVKKBfMjCh4ZHicL5s/g+edrCAZCnDnTSWFhFu3tvQQCYUCQne3Gkoqnnz3E6y84RFkRfYQEUVVZB0K1crzxvcwon4uLf8PtDKLIR0oLjZ6ISI8CpfyYMp8e42ayQn9Ely8hKQBmYpqRLrYCE4UDJYcmJQFkP9ZKzzsGul5eaT8TP+aEt4Pbq56kJdDLBxesR4lMhEpusoaKfBeUGD62kC5Smizrob+rLxwO09nZyeHDh2lpaaGhoWFCs/pGgp19N3U4K913E53oYJomR48e5cSJEyxbtozy8vKRTxxknMly3x3z7uWU9xDe5hAZLaWsX78+LvMBYOU2I3pBykRpbwFSoDms6J8KGZZoDhB6VP9NwfKbjtG0s4hTD8yhpbWbUMiKq4t/9WsP0tMdIMPjxOcfXwxP1zUMXXDseGskgYK+TDvTtOju9lNQkMnVVy0H4NFH9/HLX2/rK8INS+rqOqL3SOB2G8wsycXtdtDU1M3xkxrlRZH0+CRiwkRFg/WSGZjGNRjm3xG0IjQn4ERhIZlFp/8CjjduoqOjnvWLn8LpMNB0Dw4XlM7VqD0iI2Skjfw5i7AVJ4qY+y7mNHWISCxLKg0LxS+Pvsx7563F0i/BYd6PUj7AEz2+G4UbS3/TyHNOISnFvqNTNWesKV5dXR0zZ84kNzc3Ho86deoUmqYNcPVNJNLhvrNJ6SzCRFpKEOnVpGnauMVUJ0q5PPbA95pd/O7012gLN0Q2W0PgKc9kkauM/MRiRj1aTKoSAvcGoCuEEnQcyiV/aRe6K6HoVoEMgOZQlGxqxluXQevuPo05w4CODl/EgvCHBvQ2Gi16e4NoWmSDNk0rmkQRjG7ckeueNSuPkpJcXn7lBD/75dYhXWR5eRnMLMmJF9x6PA6e2bmMi9YfQ4h2UDlE4kI9gIFpRDZ0pRRhxydQYgaG+SioNhCLMB1vwdT/BU+mxooisMIncfp1QiEnvT4vVk83b/+kzo9uhXAYhGahRvioey+fESGi+DVE/oy8a0dT1oVEKQ2fFaay4wzr8/8NTR5Fk1UIOqNneQg73oc0Vg2cREoM8/cY5uO8bnkDujYLFX4rpn79pKlVxDAZ7rtUEEtDz8jIICMjI8nV19bWxpkzZ6ipqSEjIyMpq2+8Vs5UF88qpeyY0tmEiSKljo4OGhoacDqdbN68eVw+6slIdLi//vu0hutBCQQ6QoBf9vLn+u9y64J7MKJtBNbkXUZ15y40Z8Qa0l3EyUc4FPnLumjfn0fOwm6MjMiGqsIC0JDhiJuv+MKWOCkJAZZFgiUz/uuCvu614bA1wBXodOpRtxz8+f5Xho3ZSCnjhATg94fp8c0h5LwVZ/inaEQy7BQZmMZbsRzXAc9HDtY0TOd7MJ3vGXJ8XZ+J4ZiBYbThySpBWhZb3hTCYXTwp+9pnDnpRHfpZOZm0NHQNeD81Zcv541zl7Pd7aPe30WR0U2ps5En22f1O1IRS6xwaTpoboKuH6LJHejWy4CbsOMa0AaXD3KEfhBvzyGEwuAUhH6KcHQTdt4IwMneDnrCAZbkFuEcQ0v3oRAjh+kgyJro6ps/fz7hcDhuRdXU1BAMBsnLy4uTVFZW1qjXnS6ZITslfIoxnuy78ZCSUopTp05x5MgR8vPzcTgc4w6aTrT7rjPYwpnAMVACXeh990pBUPrY0/Us5Z5FvND6V9rDTZheB3pGED3Ra6FAhkEYioIVnQS6DAy3hQonPlyRWiBHZnJPpNGgv7BuauckLFOBzxfG4Yisq65u+Cw/ny9Mb28Ah8Ogp8ePQrFl8wKkcyUB45KoEncQS79gyDqbYaG5MY0rcIT/BLIOTWTjcQW49K0+LrpuE63Bm+K1Uc/+ZjuVDxwi6A3hznRx1Ycu5V/+4w1UVVXx4U1vBMDp/yzNvgM8u6sUU0Us2ohqhkAC+U43K3Kj6eeahtS2IEdSMZcNGNaTgAYiH9PyYTjcaHSghx9gV8+l3LZ3Kw3+HgA8hoP3zl3DRxePrTawP9KhEA6pudEcDgfFxcUUFxejlErK6jt58iSapiUV8KaiJDPdZIZeyzjnLCXTNNm3bx9dXV2sX7+ezs5OOjs707YmU5q83Pk4R3r3YAiDTGc55eFy9h7YgfRINKElPfwCgURxpHc3jzf/FhktDDVy6HvxBpQUKBnNFLMUmqEiHh0BffU50b8LCLSOvr28rgkQgsLCTPz+ED09qWfoRVK9I1cUIzSHESGlkR7+WbNyCAZNvL4QWZkuLtqykKteH4lFoXmQ2sBaoFQ30NOH6vnf2/9C88kWSirm8aH/7GHukm6U8GBpWzAdN5DnycL0Sp74wzZ6TwW58Lq1bHrPGgKmH6UUx44dQ0pJIBDA7XajtHJK3bt5b1kjv60rxUJgRT2pDgFfXDb6ZoO6tSeaPp6XcJEAmTQHQnz8lUfxWRINgQC8ZoifH91FtsPJe+YNLPgdLdLV12i0sZ1EV195eTlSSrq7u2lvb4+LQGdmZo7o6ptqSynmvrNJ6SxBjABG+7bW09PDnj178Hg8cTHVnp6eKa0vSkTA9PHzU1+k02whziaZVZxu28ca6xp0oUdJp+8hVNHjTvoPxgkJ4tndkWMsQIr4kLE75G/2YGRYaC6JMgXCUPGcgMwKL7OvqaX20bKk+Qa/1kjiwutet5idO0/Q0e7F5U69yt4wtEhfJykBFScnd3SMxYuKqayqG/RcXRf8zzevp7m5h57eIBWzC8jOTi2oPZI19+RvX+Cnn/pN/L7V1sArT8Inv+vg6veoeALFtr/t5Icf+QVWzK25Fbbd9zJfvO+TLFhfwZkzZ+js7GTHjh1kZGRQWryKBTOe5QsLdrEhdz6/rqugLaQxwxmmOVzGF6oeR1U9xkx3Nv++7GKuLF048rWIzKg8kknyY2zx09PL8FsSA4GIbuBCSiwUvzuxZ0JIKZ1q3eMhQ03TyMvLIy8vL2VX30TMO1oEAgEsy7JJaaoxnuw7GN3bS319PQcOHGDevHlJWnsT2Vp9tOM80nwvnWYzAoHAQBGR++lwnyazRLHQez6HvbuxlIlAg+gRHi0bv+yXOixAqKgNpEey0DQ9oloQSXeG1t0zaN41gznXnsaVb8ZFDSwTHG5J6esaAah9dHhJGykjG/wLLxyJys0Qjwf1h69Iw1eko3QwgorSLp1wa4iMDGdEZkgqTEuiFMyeHelG+5lPXcm/3fx7AsHkDEsh4F3vvAC320n7sUbu/tRvaattA03DM7eEN976Jt797guSNg/NfAUjfD8XL9+LUxRA8DLCjvcOEBgNhUx+fuvv+rqKx6G4+wtw5dv34VT7sXxP8aObc+KEJDQRuYaQyfc/cA+/PXkXpaWltLa2snHjRjo6Omhra2Pv8Tczt/gxLs49ySX5p2kOz+aal88nIPvKCBoCPXxuzyP8SM3gsoIaQCL18zH1q0FL3pyktgkliiItJ5QRfVkxgV4OeWdE19Z3H4SmgbRoC45flQOmt/tuNEjF1RfLdJ3I5KqR4PV6AWxSOluQ2DF2JFKyLIuDBw/S1NQ0qJjqRHaxHa2ldNRbCRAhHBU7N8Iuld3P8d7Z/8X99d/nhG8fEguBoMhZzrq8K3is+TcDBxR93jlh0MdSgBUUtFbmkV3hx5lr9plPAnQHmAGFbgiKNrRS+2QZmCM/+E5n5N4HAmayizGaCNg5zyBY0DdOyKVRmwP5Uke1hdA1LW75FRVlx11weXmZfPUrb+HHP3mW5qZupFLk5Li56vUrefvb1rLtbzv5/od+1rcQaeE/eoa//cdvqTvTwec/ew0AmvkSzuDXEPRgGAKDejD/F918Ektfj9SXYenXgGbw/J+291k+cUTWZpnw1F9mcs17unjqj12EgxGRVKGJ+J9KKrxdPiqf3s+CCyKJCckb3lK83ndwpvNVuro6+U5dFwEZSZKIar2jAAl8v+YYV1zwCqChWZVo+iuEnP+ZTEyak5DzMziD30KjHbfDQkNHUUyhez50t6CkTCImBXj0iXnkz1ZLaTgM5epraWkBYOfOnSm5+iYCvb29aJo2qb2ppivOSlKKacSZpjmsSKLP52PPnj1xMdXBPuCJtJRGS0qmihSBJqXXqsj2FJJBDM3ghtmfozvcxpnAcfIdxZS45xCSAR5v/m18Qx8UCaQjJGhOxQXf2BMRZB0EhhusoMJwm7gLAwSahlenjhGPw9DJyBBJ8SSlIOQhiZAiG4lCKggscDPHadDe7kXXNRYuKOK9791MSXGfttvSJaXc9YN3cfBQI35/iMWLSsjJiXx+P7v1fwdflC/Iyw/upuata1iyeCaO8P9GVcCLCZt+dMPCoBXBMTTrJFg6UvyWgPsuutt6hr3ennYdcNLREqmxYogNue1MJwsYmC0nhCArK4esrEspKYfmlt+BL/YxRT//6N9OB7IAidLmgvKjWfsxrMcxtesjg8kAvz76d+6vbaYzfAUznJK35bbwgWWLEO7reP+CAM+2/BVTKYzodzKqW8FlJRPTcTddMaWpnDfm6nO73dTW1nLRRRfR2dlJW1sbhw4dIhwOJxXwjiWrbyjE0sHTQfzpxlnpvov12hmOTJqamti3bx9lZWUsWbJkyC/yRNUXjYXc8rUSWszaSFKwiGQhxMosZ2csih+X4ygkx1EY/7dTczPLPZ/6wLHUJopaUGIIQopBc4AMCcyekeNDUip8vqELav1F0TfIaE5FzN0jUPisMF+8421kSA0hFAUFfRbA0eMtnDrZSm6uh/NWlbNieXIadW+nD2/n0C4oWdvMrpdPsmRhLpo8DrijBCIxourgEThQGGiqFlfwq1z0tq/zh6/+bchxL35LZM5Nb+jhDz+YkZwrEoXQBGuujHTcHFE924jd44GfiUNIlNmJ32xBN3JxGQrNqgTH9SB7uW3Pj3i4KSN+Zm1A465ACR3uBdy6Ip9V+fBvizbyiyO7MKMWuECwMreE21ZdBkBImvhMkzzn2IpM0+G+G6kB5mQhlnnndDqTXH0+ny/J1afrelIBb6r94QZDb2+vTUpnG4YiASklhw8fpq6uLiUx1YmuL0rlYVVKUVdXx4wzK2grOYPEQhJbg8KBm9cVvn3YMd4x6zP86PinsRhO2SIaU0r1IgR0H8/C9E1AawAx8B/xRIPoHzNmZMU/Q58/xM9+8TzV1WcIBk0MQ6OkOJcPf2gL5eX5/PPhvbz66mlCvpGknESkwy46Ch0RvT8O3U+fvRBjFCcRJe4DlFRIVl+2nKpnDwwYcc3rgpTOiaiWL1wZYPEaF4dfDQ2QGlpz5SpmlBWklM15fcVKvrH/2aTPJvb31xU0oWkKQw/j8/tRjgDd/nZaQ8cxsh7hkSYPilghbuQTlgj+dLqKm5dciMdw8pGFF3Bd+XL+fKoKrxnmipIFXDBjNk3+Hr6w5zH2dTVF3KIOFx+Yv44PLFg34poTkQ5LKZ6lyT6cgb9HGhKKbCz9MkzjXTCBdViJGCx2LYQgMzOTzMxMZs+ejZSSrq4u2tvb481As7Ky4gSVm5s7Klffuap7B9OAlMZS4wKDk1IgEKCqqgrTNFMWU53ImBKM/AaZ2DDwivPfzGrHKp5q+QPt4UYEGvmUskG9lSwjd9j5chyFLM3eQHXPjmGOSnYLjQTLr3Hs/vkpHDkyPC0WgRl6XxEvxGk3y+Fg57NHOFqQwaYL5+N2O7nvvl28+uppMjKcFBdlEwxZ1NV3cM/Pn8fldnD0aEtc/QGnAaHBydhYMJNLLl4EmhOpr8OwnkWpUCS+BsQISUVVwCPEZaGpNv7r/27lp5/8LS/cv4Nw0MThgsvf1smnvtMYTayWSFHMHY9+ie9/6AF2P7EXy7QwHAZb/mUDn7jnxpTvzzsqVvFMQw072uqTPptSl49vLtkJmoZTz8ThdCCUm161AV+njxe6TiCpSOL8SKKMIqwUzzef5A2zFgNQ7M7ik0v66p1C0uQ92++jNeiLWM5AZzjAXTXb0YXgvfPXprz+dMSUpJTMyKkh03oYQQ/gQKgWNHkCTR4j5P7ypMybSo1SLCEiPz+fBQsWEA6H41bUwYMHCYfDSVl9I1lBMVKyLaWzCP3JpK2tjaqqKoqKili+fHnKbyUTGVOC4b/Afr+fPXv2IISINwwsoIDF2X2bQU1NTcrr8eiZ8ay8AfZQgnspJcpXsP9HyzB7J6aRmdMHzi5JKDfauDBhHteJIH9+ZReaEPzpvl189COXsPvV0zidOjnR9G6P20DLz6C2tp1gKHI/4u8uy+aiVR2NzxV/bHMzefvNr6ekJELoIedH0QIn0NRpdJFYQ+UGNAQhpAxw/FAB5GVSukjj4z/+IK9//yXsfe4ARRUeLn/Lq6B2IZFIbQ0h54dwarP4wh8/gZQSb6ePzLyMAZ95KpvJTze+nedP38X9da0ElZMrCn28r2wXhuYDHKA6EEJD6ueTVfCvrJyRwZ6D/b9bybaWMcwL3h9PVNEW9KEj0GLdeZXCRHHv8d2jIqV0uO+klCwofT4aJyyJx/WE6ka3XkQzq5DG6kmZd7QJDQ6Hg5KSEkpKSga4+o4fP45hGEkFvP1j47aldBYiJsqqlOL48eMcP358TGKqmqZNiK96pK6xMQXymTNnsmzZsmFjXKm2wJjhKAMGcdClahol4Oh9cwi0TOxDkHvUJFhmIGe5CAsJXklGXYg8y4kz24FpWrS3ebn7p88BCpcz2W2o64JAcBCCnpGL3LAU7XAtwhtAdxqUrl/Ajd/4V1afV9F3nFZKwP0TDOshzpx5nrKSYzj0TiItKjr5+y8L+P135+Dr0YGvkj8zD4fHQfPJ1simi+BXn8vgs7+7g1WXLBuwDE3TyC4YmLKrVCRF/M/f+geHXjpK7oxsrv/sm6hYWjbg2EvKP8CVxXdGWmQoL9EcORQ64CKsX4Hl+BBokSSPt5XN4IcnFaYSKFT8o1YIPJrJ4t5fsHfvDRQUFFNYWJiU3LO7vT6y7qRMyUhbja5QgN5wkCxHanGQdMR2pNlJlqcZRUZSookiG0ETunwFycST0njVHIZz9dXW1nLgwIG4qy8/Px+3201vb++kp4PffffdfOc736GxsZHVq1fzox/9iAsuuGBS50wFaSel8bjvgsEgu3fvxufzsXHjRnJyhu7MOdw4MDFFeUKIAVaOUooTJ05w7NixlEgz1Sy+E95qXmj9v3hiRPKk/f4cDNHaJWnByb/PofWVkgGHaJqI69WNBRows8fBhflzaW/3sufQaXRDx5UVIR+HISADurv95OZ66PUGCARC9HqD0dqqYebOyUTftAK32+DiixbxbzcNrorwp289yYM/fo6gLwSinCVrK7jjN3vZ/VwuP/9KGSoWZkLR3tDZt3ZDA6Xo7fTyrRt+xL1Hvo87I7WkgIZjTfzkhj8Q8va9XGz7v1288wtv4V8//9Z+NymHsPt2LKsaI/hzdHUARSbgRODFYT2P0tchtQsByMx6OzfN/jn3nJ6FTHDiaSg+t6COhaWnaOg+yqnGiNXtdWmUFxRRUTyTHIcrknYetXIsJeNfEYFKIquRkBZLSWlRHUjZ76sdc8lOTpv0iVZz6O/qC4VC8QLep59+mo997GMsWbIEwzDYv38/K1asmPB7fd9993Hrrbdyzz33sHHjRu68806uvvpqampqKC4untC5Rou0k9JYEZNzKSwsZNOmTTgcY/tCJtY8TbT+XaKk0QUXXEBu7vBxotgYI7nvTGny94a78SsvGgYyMdlBDc9F0gQZ0lASAq0eGp4vpX1fpGg1e0EXs17XiHtGkFC3g/ZXZtK0O3+Y0YaH2+3A43HQ6w3g8TjQdBGvbYpB1yPqDuXl+ezbVz8q8Ve3y0DXderrO/H3BnjkZ0/R3tjJ2tefx7qrzuN3t/+Ff/zw0b4TFNTsltx0yVIycxJKw/rfMBF1vwmBhiTgDfDwT5/i+n+PqI0HfAFeuP8lQv4wW962gfySvKTTf3LzbyOElGCxKqm4778f5JJ3bqZkbhFIiSafwTCfQagepFaEpk6gRC5KRD4PpRSaOo0Rvp+QESEltAX82/KPcH7O//Cz08W0hDKY5Q7x3oJ6Li/PRFMWMwtqua+ngt8110QKkLuh+JSLNzlK0AAr9kaSAAW8b/v93H/RDSm9nKUj0UEqN+298yhzH0apzGgDRIWgHcjENC6blHknW/fO6XTGXX1Llixh4cKF3HnnnezatYsLLriAvLw8rrrqKn7yk5+QkTF8qUaq+P73v89NN93EBz/4QQDuueceHn74Ye69916+8IUvTMgcY8VZR0qxRncdHR0UFhZy/vnnj+stYigLZyxIjE/19vayZ88e3G53XNIo1fVIKZFS8mr3M+zv3o6pQpS7F/G6wn8hw8hhb/dWfFY3OjomCa6+EQgJQNNBKmh5uQh/s4euIxHrsmh9C3PfdiLSbwlwFwfIntODo7CUuieGV3gYCi6XznVvXcsFG+bhyXCyb389Pl8IZ9RNZ1omzrmNzMgymVlaTnW1iEsOCQEohTUMRxUUeGjvCBA+3cz7530SM5r88OjPn6Fk3gza6jsGPa+7Xaenc7A7Fctf7/uJ0DSwLM4cawLgn3c/wR++9jfCgTAK+O1/3c9l797Cx370gcjYrT00HGnqGy5xdKn483//g0/dcxOO0F0Y1sNACBDoMgSYWGoRMqYLqCwUJobcjub9F6S+npDzQ6At4KLiUi6ZsRelzUFKSXubH0EmIPjZCcXPT+xKmrtZBfmjeYa3Fi7g722DlxIc623n73UHuL5i5RB3vA/pSnQ41vhGSov8CFUfJSRQZBB2vBu0sX1PU5l3qnTvNE1j7dq1zJ49m5KSEn74wx/y4osvsn379gkrpA2FQuzevZsvfvGLSfNeeeWV7NgxXOLU1CDtpDSaL7Zpmuzfv5+Ojg6KioomrFhtogtoGxsb2b9/P7Nnz2bx4sWjWqOmaZjS5E/13+a4bx+xiFFD4DjVPTv4UMVX6THbUKgR0sGHgAAjUzLrsiaUJZj7lloathVTsqUZ3Zl0GMIJpZc20vhiCaZ3cFIdzMUnBDgdArfbiRBQWpoHwOsuWsxjj++ntydA5oI2FrzjGI7MiLpEm3WSuRl5dD52PlIKNE1gmRZt7YPXJDmdOj09IRxScuSfO5GWTNKYbTrROuxtiInVjgQlI+POXTGb6m01/Pb2+5GmRNO1SD6eafH077cya2EJ133qGrraeoZVWd/xj1f4zN1bMKxHAYESkZIFaXXyn4eX8HDzXIJKxyUUbyo5xTcWdYIGGg1o1j/R/S/h9/wcpS8HWQkyhFLRx1hF0uXvPe1isNeTgDTJzslBa+tLjk9MkJfAg8f38vq8ihE7uQ7nvqv1drK95TSFrgwuL5k/YVaGlJKgWULA/WMM859o8gRKZGLpr5+UBIfEedOhEJ6fn4/L5eLyyy/n8ssvn7CxW1tbsSyLkpJkl31JSQmHDh2asHnGirSTUqro6emhsrIybnmcOHFiUlqijwdCCE6dOkVLSwurVq0asUZqMGiaRoN+iBO+/QgEGkY07ibxWd082vwbVmVfFKWqYXa/vmDB0IdYoDktyi5vQPQVvSRcEOhOReHqNpq2D2ztresauh4h4pjbTdcF56+uwOdrx+HIYe++Ot507Wo0TeMjN12CEIKntr3K/BuOYrgtpBmxTISuyF/ZgRaqoev5FQD09PiHXLthCNweJ/ndXXRFCSm+SQqGaVeenBo+5L2RET0+JRVZeZlcfdPl/Pe77kKaEt3oU25XQsOyJI/+4hmu+9Q1lC2aieHSMQdL0ABC/jA7//EAr3tDAEWf7/7D+zfxYkefqzSoBH9rnEtT0MG9522LxpksBM04Qz8n5PwEmrULzTqCjhOPy4ughxBL6LWG/l5UdjSgCQ2lJEZCh16pIt8nJSV79uxJau9QWFg4wNIfjJRMKfn0K/9kR9vp6HiQ43DxzdVXs6V47pBrShVxctDyMZ3vG/d4qSIdbSt8Ph+zZ0+O5TfdMfU6IWNAfX09L730EjNnzmT9+vW4XK4J7T47EaoOoVAoHrDctGnTmAgJIgR5xnEIiUSjr4+SiCo+HPfu46GmXzCio05EkhiGPcRQyBDJ3cMTEZ3CM3NwclBKRl2NfWuRUlFb1044rNB1QVe3n5/94jk+94X7uf2r/2DmzFwqrmzBcFnIsACpgdJQZoQVs5Y1Y4aDUXHMoS3B81ZV8PU73kpOtN3F8NaoSvgvApdnaL+gECCtiFhsdmEWX3ng33E6Ddrq2wfMFVGpEHGZIk3TOP/KFcOsBXY/3ZlEh7V+ZxIhJeLFjjJO+wui/9IBgSZfBa2AkPMLmI7rMZmJP1SIaVyP6fw82jBkm683sTSzN1Jwq/rugYxm8r1ryXouvvhiVq1ahdvtpq6ujm3btvHyyy9z7NgxOjs74+7l/hv1Hfue5sXWU0il0BBoCLrCQf791UdoD4xfCDYdFkts3qlu8Of1eicsftQfM2bMQNd1mpqakn7e1NQ05n1rIjGtScmyLKqrqzl06BDnn38+ixYtim8IhmFgmmNwXw2C8ao6dHV1sX37doQQLF68eFypnJqmIaN5Vf032kjlvoWpwmiDGbn9ZW9GeI6EBpozIeA/xHieEj+z31CLMze5X5KUka60iaSkFDQ391BX76OpuZu6ug6ef+EwDY1dnDjewp/uewnT1R2lB63PhyQiLjXdZdHV66W5uTvhngj06H+xWxIMhiksyGLB2rmReaOK40qq6AUNnYJ43YdbWPu67qgYrUI3FLquIq5Nl4Hm6Ltx3g4vd938K3zdPopmR6SeLNPCDEf/MyMtVPKKNIzQH9DMPbzlU1cOe9/zSuehcCGIXONPT/ZPFU9Md4anWvt3rI3+XivCdL6fbv6H3Uc/jOl8H5pRyPn5A63a2Ggfm/0k31iylUzdRKIIK4tw9AuwNn8WbyhdHNd8W7BgARs2bOCiiy5i9uzZBAIB9u3bx9atW2lqasLv9xMIBAiYJrtb63j8zGEUYAgNTURqoXQEQWly7/FXhr0nqSBdenuvtQZ/TqeTdevW8fTTT8d/JqXk6aefZtOmTZMy52iQdvfdUG+4Pp+PysrKeKFp/yDfRFpK4xkrJimyYMECmpubx70WIQT5wdl0OOuQykITfUoRsQ3WIZyE1OByOyIaJEg1k3sAcQ3ycWTP8ZIzx0fxphZO/aOC1j0jd3MNBCQd7b3ohsGs0jx0XSMQCNDV5SXQ5k4QQOqr8BWaQgu72HjBElqauzl0KHI/lYoeKfqSxrKzIunZna3dCbOq6PHJ/05E8ewwW/+ZR1tTJNnCCkeEATUN3Jk64YDCMvu+C1IqTh+o56YVn+WD//1OXn1yX3LMSEX+d+W/dmGYD6J4kuYD84a9Nxe+7U2YeieG9SRCNfJwc2JtSIKSbnT9Bc6YxmDkJUxqGwaMmfgcbZ4xmz0dZwakTX+g/DDn51ognDyw/hW+f7yCfT05eIx8rim7gPfPWzvo5ut0Opk5cyYzZ85EKUVvby9HjhzB5/Px2ef/xg6rHTNhNqlkVMsxUhMlleK0t3PYe5IK0mUpWZY1Lh27sWCyu87eeuutvP/972f9+vVccMEF3HnnnXi93ng2XjqRdlIaDM3Nzezdu5dZs2axdOnSQb+I6XbfSSk5ePAgjY2N8ZYY7e3t49bR0zSNWd5ldBWcpC18BktZURGZviCRxUh+OdBk9P5EPD5DiVrHoRKFrxO4QoYEVlAHFLrHYs5bT9NxMI8MRxYej4Pm5qHVtf0Bi6IiD5ou8Hq9WJZFYWEuZ14qo/jCZgyPibQEyIgrUSBYlbOZaz99NaGQyQc+8ht6eoNoMupSi95aIWDhIid7X97HM7/bSlTUIqWC4ebaQUoHFFz8Lzm4M/J4/He1g19Lt5+fffJ3g905QHB0bw5SKyTgbeWez55kUHaP4o5/+R6/PPAdpL4CFXqWYCxRYYhzvnF4Oc+0FvJfi3ZT6JpFyPlvyStIiO/8+WQVPzmya8CtyNXDfGbeARB5AMz2BPjBisOgWrD0iwm5PzbkehMhhCA7O5vs7GweDNSz1WobcIxFxLWrCy0eW6rIzEtp/OHwWmyXMRQmu+vsO9/5TlpaWrj99ttpbGzk/PPP57HHHhuQ/JAOTCtSklJy5MgRTp8+zcqVKyktHcoNkV5LKRAIsGfPHpRSSVbcRMSmdF0HqfHhuV/noYZfcMj7CpYK4xAuNCUIEUCpEeaQArDQHVGrIYXnOPasKwvCXgNnlollgQzGTCmBFdDQ3RZFG1oI7s8mHB75Wr3eIC5nZPzs7GwAHDITsfMizPU70DNCCEOhpEaFtpprSt/Hi0dP861HttG6GFBORBhyTpm4uyKsNHdOAevWLOShnzxJKBDG4TJwGCGUpZBKEPQz4kVHrlfErZ5jlW3MXngGiG0EA88f2G+pDy8/GeSr722LtFSJZun3yxmJo7Opi5/96iEuePt6dNYBfx1qlQB0SRePtVbwYucc/n7R9czQki3VxCLje4+9gkQldZ2VUtJtOfh17SJuntvSb46xFUcrpXiiqza+Si1a0hobTRIhJgU4hcZbcudhmua4agHTEdtJx7xKqUm3lABuueUWbrnllkmdYyxIOynF3nxiYqrhcJhNmzaN+IFMNCmlauEMp7E32tiUz+xlR/s/6TbbmZOxjPNzLo2nlXeF2zju24+lIi4bUwVjzqnhB1VExEdjcZqgjsJCc/U/JuHvMYhInKnzcC6FqzqisSbZJ0dtKYRQGB6T7qAVVeMeGkJEYj9SusjNzUYpRUenD7fb4IbL3sjs2e/jpVPbUK4g55euJ8co4MCZFv7jL0/0uciEQDkUXQsNtEMh3H5BS2svr7zaQvns8ohMTsxVpEfq+kcKlcYIKVIPpVBK0VRrsGJD4vcpRTaPQkp4+Ylg9MyB5/X/1P76+Iv8bPbplGbQ0JAoekz4bs0+/ntNcgwqZimZUtIWioqtJnbfjX6ndncVgqqP5PoDKB+gY+mjl5YJWmH80e9mLLEi2aKPIFt3ckvxStpr66k/fDTef6iwsHDUJR3pspReazGl6Y60kxL0bfQzZsxg3bp1Kb1NxbTvJgKpEJxSilOnTnHkyBGWLl1KeXn5gAdkNI3+Kjuf46GmXyKjrrh9Pdt4tvV+bpjxJaSUPNb8W/yyBwNnfIMxZRiJhSYMLNVPH69/Cnj034ZbI+wXmD4Lw9NHVkNeJ5AztxfLb2BkhxBuktx60oKuYzn4fKGkN/TcRV2UXtqAMztMoNVN3ZOzCDVnkZ3jxh+Q+HydKCIqD5dftoylS0uxLIst8y9OeuB/8OSOQWI2kQvzzXVScEoQClk8+M+9fOXzV+P8+t8JBUJoHh0hzKGTNhKHTIg5CdF34/bvHL9MjcwAkUKiWbjECfEtPEaAQ38wMUtkV9tA92KMlDSIusz6SV3JSFVSrsNA0IVSfSRiaaux9GtTu7jE9UiijUH6PqzEuqflOcV8aMH6pDqlWKvxtrY2Tp06ha7rw4qS9se5ln1nk1Ka0NbWxquvvjrkRj8UptJ9l1i0u2HDBvLy8sa1Jp/ZnURIMXitLv7R9iPmyyup9x+NJNUmPIQ6BgrJXPcKFmav5tWOp2kNN/S58wa5dZYVRik9ojZtWmiO5PiRaWnUnSoCAeUVTegaaIakoyaHko394gVRSyq2DwUCJnm5HrIvPMqsy88gtMgvMkr95C3rpP6BxbznbZdzouMInacNMrwVbFy/gNXnRfT/lFID9O2Otw6uwgCKoC7xPbATgI5sD8+vK+ctt1zF33/wCEGfBWgjpsEnjpfovgsHof54/41nMKu0/00WyceFBUoHMcw6lFPQfXWfC86BJIyOU0hCKnnTHS69O2kVQqBpGhsKytjeejpiVUR/Z6LQheCNs99BD8VkaFWAA0vfhGn8ayQFc5QQQrA6q4jdvc1YCbahiq7566tfz/zswqRzPB4PZWVllJWVJYmSnj59mgMHDpCTkxO3orKzswcQUDoTHaZy3pj7zlYJTxNi2nWjfSuYqkQHr9fLnj17cDgcbN68edgsnFQtpRfb/xknJJGU/qtoNespEzG16MGhaxoFjpkYyomQAjXUS3Z0iIiOW6SzLIDpFRgZioP75nLkYJ9AbNWuRSxaWstMRwcZM/3J1peKxJvQYNbrGqk5notSilu/eCmPGy9iKYU0+w7WDEXF9YfZph1FzAAxQ8PtLKai7N+HfcAzHA68wUQrMOFNPDGG1ePnH1/6E3ft/BpzV87m0V8+Q83Oo4T84X48EbNCxhY7SURRWZiWegfDEZMYQeBduQRNn54Lzr57EPv4Fmb08MeL/4Mv7X2BR87UJJ0XkyC9cEYF/ZFI7F8//yres+0+GgJ9CSixmM/Hdj+HAJZkX8H31l1LkZHBt/Y/zzNNx/BbYQqdGdwwd3VKLSyklHxu9ga+cHo7J70d8burC41PL9k8gJD6o78oaTAYjFtRdXV1AEnFuy6X65yxlHw+H0qpeAz2XEPaSUkIMSYz1TCMlDu9jgRd1wmFBrb2jmUBlpeXs3jx4pQafQ02Tn90m+1D/k6hCBk+ZrrmURs4hJKyL2CNiUDg1rO5r/67ETfNSM+oBprL7Mu8VhEF7JOHZiQRUgxHDs0mY62fuRXN0dohkAE9blHoLgvXjL56pScOP4haYaELA81QUStMoIQJIpJR5xAOLCVpCzVwX/33+Oicb1Nb28Ejj1ZRd6advFwPy9bPZsXSWbzxvEX8dntVwor6NvyM6pYkelGW5Fef/xO3/9+tlMybwX+87o7YTRxwVweONzD1uj9cHkVmjqJolsnr3+nnmv/n5Vdfc/P3XxT2cxMOcv4Qw568aynk9FNHiP6Zb/j4+dGtnO7tjLYeVEl62NmGk88uvxiAR+tr+HttNT4rzLKMAjaqyMtSvjODBy99P784uov7T+2lIxwpHYjVIingUE8L7972JxZk5lPVFSmg1ISgKdDDD2tepNcMcfPiCwe9J1JK/ll/iIda9pHZ5ea/Vl5OrxXiuabj5DrcvHfuGgrcoy/6dLlclJaWUlpailKKnp4e2traOHPmDDU1NWRkRHpWpYOcptpS8nq9ALb77mzDRKp7909QUEpx9OhRTp48OWIW4HDjDIUKz1Kqe7YPPgYGGaE8Lih4J39u/A5B6UuSzJmhl1HT/UqEkFLl4oTjhADdbXH06NASJkcPz6ZiQXMkcUCLHG/6I2nhCAh19W2qJ2ubKV+uENJCiIjsEIK4kKpOxHVoCA0kdISaeWLvU/z5rlq6u/10FUKnEqhnTsGzkOt2Mjs/h9qO7qQ16U1esp49NSB0dnTPCfy9Af7nPXejBpXX6c8OqRwTQfn8EHc90RZPpACNj3y5mbWvX8Ztb4/VpPU/L0p4Q03jNvr9SGFFI0Y1vjy2Hz005Cq9ZohdrXU82XiUZxqPxSNS1V1NPIrBMt9qyjJyaQt6+dOpKnrCwQFjxK602wxS2dWILjScWrR9i9IISpM/nazixoXrcfZrL+43Q7xvx1841tMemdsPW3fV8aZZy/jq6uELhkcDIQQ5OTnk5OQwb968eBfXEydO0NHRwQsvvEB+fj6FhYUUFBRMmvJBDFNtKXm9XgzDmPLaqOmCtJPSWK2ciSalmPsuFAqxd+9efD4fF1544ahM6FTdd+tyr+D5tr/is7oHZCstz74QDYMS51w+OPvLPNT0K2oDh4ltU23mmcg5qdy2YbxWweDQcYRAwImW+AwK0AwLoQuUJWja0afZ1l5VQNmVZ1BCgamwhIWm961PJJhymtAwVZhndu+iuzsPNctJR34sWUWBEnQFQnQHg2xZ30VTQwHdTTqhfxzAU90/lTkCb6eP77zvbppPtzLQIhrsRgx14/r/XNHWpHPd/FKEgCVrgnzi281ULNBYdenrqFjxEqer65LOH8lBGCpzIZxawnEqmjItmevp4bAvb8gxBJE06y/vfYqANBGAgYbQBJaU9GJyx76n+dnGt/GTwzvpCQejbSr6X1Xf3YipL8SgCYEhNLxWiINdLazupwzx39UvcLSnLS4hJABLwYP1B9jTXk+Ww8WGwnJuXLCeHGdqvadSQayLa3t7e7zNQ1tbGy0tLRw5cgS32x0nqPz8/AknkHRYSjHL8FxE2klprJjIlhOxmFJ3dzd79uwhOzt7TD2aUo1zaZrGTRXf4I/136YlVAcodAyWZ1/IG4o+wB9z7+b3Z7YjkTSHTkXOQUcqlTohRZGoghD/GeB0hfH7Bn8TczqT22HE4lFmQKPh+Zl07C+I/zrQ4qG1soCiNW1gyKQaVo1I8F0qk7AKo5AR7ik/RUaJh8M5iQ+diKSyE1nvsTMWmy7ZSqjLQeWfsge0MoxvrlJR+XQ1fbrX/Y9IvOrRQNDZasQTQva95OYz15bzjk8FqXx1P8svW0jDsTqi3rERCUkZ8P7vtHDhuhZOB7LI0Zp4qWsWTk3wtpJarnv16kFTyftfTSASuIu69yQqQRy9sqMhstauyJ8aGtYgTSD7Kz0k3pvIvwS5joGk8nzzcQAMTUNKFSlojroFT/u70PxwqLuFJxuP8PtN7xyTG284KKXQdZ2srCyysrKYM2cOpmnS2dlJW1sbhw8fJhgMkpeXFyepzMzMcbv3p9pSmoqus9MZ04KUxtp9dqL073Rdx+fzsXPnTubPn8/8+fPH9EUeTUp4rnMGN8/7Nt1mO93hdma6KpBIvrXrmzz7UhY93cUIocgvzGDthTVkZVjomoYQGqYaOW4FDNgp4+U5wMKldex7dcGgpy1enpB2HCW19uocTty/ANPnwDSgZ7YOmiDzjMnJ++YTaMqgeGMzjiyLYKcThSRzZoiQDMSTOmJKSZnlXnKuPYq5c2XfgkTyYnu6shCWAz0rxNI7JAdvcqL8ocRl9bvQoTI9xrEhaQLdiIxjmeDt1vnN1zKAQ5H/4kOPUKiLIifHZH5PF0uzAizNakaSwbriFUhtPpa+kqD1JDBClkQCzCR7K4KgtAiYJi5t5MdaEClqDUkLpyaickASS0nmZRYwNyt/wDlBaSYl5lgJz6wGeHQHppI0+nu5s+ZF7lj9+pSvJxUMFksyDIMZM2YwY0Ykm9Hn88UTJo4fP47D4YgnS+Tn54/6RTMWt55qS+lczbyDaUJKY8VEZOBJKWloaMDv97N27VqKiorGPNZoSCmGHKOAHCNiedy793958PHieB2JUoK2llyefXQdV775ZTxuGU2BSw2DRjui+/SCxQ10dmRReyJZVqRifiNzFyarBwsRES41fQ7alhiYWX0PaCjfSQ8m1rYiGp+fRWamC10XBKSXSz7XSrf7VMQ6IrJ006eBJthbvTBq6gxOHIbDRKhIbCZjQQ+z3nEZZ37/DMi+ph1joZu5583m5N7BpYQGQIJpgmE4UDLBzcjAvw4PQU+7g2/+22x2vjOfT/5wKZbzjaD1FcHmOrfiDQxPSqlM959Vj3PNrCXUdLcSHsRKiuF989ZQ6snhB4e2EUrIo89xuPna+YOTSUVGHod7WuMvkIlJGLHUdUNohJG81Ho6hdWODqkkOGRkZJCRkUF5eTmWZcXTzk+cOEF1dfWAtPORXj5jz/NUZ99NhIV3tuKcJqWYikQgEMDj8YyLkCZiPfe/0IpSA2M9pqlzoGoeazceSXmsoTawxJjC2o1HWLbiJCePz0QImLugAXfG4JZnzrxeeufTR0gJz4uJQfASP0XN3bScKMTwKTKFwWXiRh7jf/CZvZjBiHySZkikBj6vO2Gcgav1dhrs/FIGnjMhPAskrY8+Fyek/tcoRpHy3VrbzuIL5nN41/GUjkcS72g77rRyBU/d18H/nteOe/HDvK1iBZ9csgWA9YXlPFh/cHzjA1tbTvI/q6/m0foaDvYMHocDWJJTxBvLlrKuoIw/nKyk2d9DjxmiPeTn1t0Pc17eTD69dAtlGbnxc25edCGf3fMIYSUH3HFHQmxKiGQraizY19HA3Ydf4kB3M7rQ2FBYzhusfArF8KnmiUgszl24cCGBQCBuRdXW1iKESCreHSyxIEZKU2kp9fb22pZSujFW9914SKCjo4PKykoKCwuZP38+Bw4cGNM4iRiLpZSIto6hXQttzTljHjcGb6+L/Xvm09Gag6ZLyipaWLbqJPPLmnHlB4dNLxeGwpsXXd8gL3CdHdl0OrJgUcS66Q6AnqkjAk6kFJw6PpMzDYWgQUnp0CnxACgwcVJ33jJm7N2Ld78PsCag0gg0XePrj36Buz/2a3Y8+EqkrmmSofr9I/uRZlrmefjNsVfpDAW4fdUVvH/+Wh6qP5RkfYwFprSQGrxn7vnctu/J+M81RDS+qJDAid5IkfKinBnctvJy3rXtTxzrbYvP/mTjUba3nOJ3m/+VBdGao0tnzudrq6/iRzXbOeNPzo4MKYlTAiJSkLymoH+7jdRxsKuZW155kF4zhBZNIHm64Sivak7uLkktE3YwuN1uZs2axaxZs5BSxtPOY0r/WVlZ8VhUbm5uPNYshJhSq+Vcd9+d1ekdYyGlmFzQK6+8wvz581m1ahVOp3NCEibGaykZw7yNafr4NquuzgyeeWQ9jfWFBIMO/D4XRw+V8+xja2k/kE373rzhB1Ak6A0Ng2hsKOSB//i/58j1Lub5p8+nunoeHe05dLTmcGjf3NQWrQm6Lp83+DT0V1QabG0Df3b+5SswDINP/fwm/tz4M97yiatTW8uEUGIEWigimKpQPFR3kDZvDwuyC7li5oLxRMAAyDCcODWD1QWl8Qw5XfT1oYpZyok9l/58qopjvW0IIhaPQ2joCLxWmG/ufzZ+3D/rDvK30/sw5cAXBAuFX1n4pUmuw8UnFo+9L89PDu+g1wzh0Rx4DAcZhgOXbtAhQ/y95fCYx02Epmnk5uYyf/78eM+oiooKgsEg+/fvZ+vWrezdu5eGhoYpJyU70eEsxmj172JNA9va2li/fj35+ZFg7ngtnBjGM45lWcydCTVDhDvc7iC9XRn/n70zj4+ivvv4e2aPbO47gQA5CIFw5+AW8SiKCipq61Gf6mM9nlpsqz20lz69rdq7tmovtba2Pt4HiiICHoBADnISCEkIhCS7ubPZe2aePzYz7CabZDcXsfJ5vWjN7uxvfrM78/v+vtfnQ3SsfVAZ+UDYbQbKirLpaItBFBVmZlhoORWHLA9+sKy9EfRlG5me2zbsmL3HI4NI5CiIgoCC1/Nt7bPzj3fCsHpCuM0GXJonefCOcegpDL9wRMZH8t8PXovb7daqN6+993I+eOFjOpu7gp/jAIRqrqyrYr20QIqCW5H5+553WZeQzp3xuWQYo9lqrqXLbUeSZVyKjAjDZIf88dn0xQDMioxjUVwKZV2tyIriVwY+IzxakyeXZZltPuJ8KlQdpIruVo5bO7mv5C2O9LYP8uSMog5JkbVw3dLYVH6St4FZY5CqqOq2ICAgiqd/T70o4pAUqvsGS2WMBwJpRrW3t2M2m5FlmX379mleVFxc3ITmmNSc0qcVU8IojaVXKVjPxGazUVJSgk6nY/Xq1ZhMp0tex4uyaLQKtpIk8deaH5K9rJ4GSwFOx+C8kqU1nnffjCcppYs1F1QwlFNl7TXx3psFyPLpAwIxN/iivnYa7RZv7iAju4Xpad7Qjrr8uPtEDv9lHmGpEs6UoR5GBVEERe5niu7/Ta0etVR7lJ6Gj1yE78LqiyE7jwQwRhgwmAwsXb+Q/3n4C4RHhyPLMpamdt587F1sPQ5u/sm1/POHL2JpHGrBG27uod27niQDttXxGAQBRfF6MqsWLWW6YqK9vZ3FHTJ5xhwSpyfyuqOJfzVXBW2Qrpm1kLtzz9H+fnzFVWzZ/yqHulpQ8LJrZEfF88cVmwF46lgR/2gooc3pZZD19Gsg+V6RW5a56v1/DBlWdMsSJp0eWVZwKRIZUQljMkgAYeLge0xtIDcGeG+84asZFRsbS1VVFdnZ2bS3t3P48GHcbrdf2XlERMS4elKfZjJWmCJGabQI1phYLBbKysqYPn16QNFAnU7njbWPkb5kNHpKDoeDXYfepiW2FqNJYcPlRVRXzKL5ZCLW3vBBx7eZ4yjdn0PBqsBFDwf35PoZpGBgs0Zgs3p7SlqaEolP7OHcz5QhiKB4oOSneXhceuSYfsXAgHV9/f+lrqCDntHRGabwI/6GYuAowy0FigLOPjfhkQbuezQKUXweWczn2V8c5/8eeh25n3bivX98yIx501hy/nzKdg0sNhh+zqFeUdMPcxAQkGUZGYWksAhWpmZ6xR37cx3d3d20t7ezsMMQ9LemRyArKsHvtQi9kSfXfI4mWw/V3WZmR8VrnHRPHSvi90f2IvsULSh4DZOhX5zP+9rI1++bDjbpxr6knJOSycsnKnHLEgZRh9Jv8EQELkjMHPP4oUDtUUpOTiY5ORlFUfzKzo8dO4bRaPQrOx9rM7/VatVK3D+N+EQbJb1eP6wRUBSFuro66urqWLhwIWlpgZOvvuwQYzVKofDxqcUW7anH+nniRPR6WLS0EbstLKBRAmhqTB7SKHV1jn2H1dkeQ1VZJgvzGpDcIrJLjy1Nh9sEWn23z+Xp9B4kj8GrIgsgDum7MOIS63OIrs1OzI46BpqeUPekXeY+rkh+j2UX2jjvytd57sE4/0p0BZpqWuhsbglx5NBMrS0vBjnB2E8t5O3r+cnSi7V7rtNl449HPqak4xR2yY3Z3hu0l+RB4VfVH5Ibk8yyRH/PeEZEDDMiThfKyLLMMw0lyIqMUfDSRzl9yPzU6jr12lTZjKEgKzIeRUEviHyuP3w4Fnxt3hoOdTRT19ehlavrEFmgi+bS1DljHj8UDGycFQSByMhIIiMjmTVrFpIk0dXVRUdHB8eOHcNut49JMwq8UZ1PKxkrTBGjNBHhO7fbTXl5Ob29vaxcuZKYmKGr19RFQZKkkJvrBs4HgusAVyt+5s6di9vUxLEu8F3tbX1D815JkogsEziEN075+BP1KSzMa8B2MhIB6EsccDKf80huA4IbFIMwssUYmJcKxP4jKKAISPFhdF45j8TXj8Coe6RPT/TgexEcfK//Nd/kteBlRrD5FZQFe08G1zElGwXavpFJojGcmeGxLIhL5dbsZSSZImm193JvyVsc6grdKPqdA4VHa/ayOC6VY9YOEsMi+UJWHnNj/FsdulwOul0OdILYn7cRCJO9xkjGGyJbk5TBHnMDbmQtvzQU3P1hv+sylpATM/YdfpQhjL+vuZYXT5Szr+0EBlHHxdNzMB05NWYvJFSMtFHV6XQkJiaSmJhITk6OphnV0dHB8ePHEUVRC/MFoxkFXqM00Xx+UxlTwiiNFkOxe/f29lJSUkJERASrV68e8UZQk95jLXZQb97hjJIsyxw+fJjm5mYKCgq8TXwuEx93veWl4elfRKNi7HS0DWVIFbo7I4lP7Bv0TmSUnT5rYA/LGOZCknTIkoAoysiyTmvUHQiPR4ciQ0SajYXfKKdld6HP+j7YPzC4IblThFg9TaYRGCcGnTNAlkgA9CKi04PiCd07GhEK/R4tQwwefHtuUN6SKCDrBTocVjwfNpMfJdN9dRe/7fmIN04dHrfavtKuZsq6mlHn/k7zEe7JXcv1mUu1YyL0RnT9SrXa9EQRgyzgViTWJmWyNiWD6h4zZocVfAolfKFHID0qnvSIOK7LWMLq5MGyGqOFSa/nxqx8bszK117bfbR50vngQqUYGkkzKjo6WjNSMTExAa/n01599x9XEt7c3My+ffuYPn06hYWFQe1MhhorVPh6XIHgcrk4cOAAnZ2drF69msREb3w/wZhKYdyFeAlpZBRkchcd10TzBkPggx1L6ekebHzyVw5dMutyGpE8OhRFRKdXiI23DnlsZLSX1E0XJlNxNEs97dBjR0CkVeGa1dM4naEINH/f5W2oY04jZlejduT4wjuioihBqdWONJa35nBoyJEica+1kPHFChJ+3cDuH7/DN/PvZ/9Xt/Yrw44fdAgYENADLlnit4c/osvl0N436fXkxU9HRsEleZBlGY8k4VK8THm7zMf4acVOLA6rN8+EopWXq5hNOH/I38RL6/6L3yzbNK4GaSicCT2lsYT0Vc2o7OxsVqxYwTnnnMPMmTOx2+2Ul5fz4YcfUl5ezqlTp3A4Tv8+oRQ6/PSnP2XNmjVEREQMKT7a2NjIxo0biYiIICUlhW9961uDqpZ37dpFQUEBYWFhzJkzh6eeemrQOH/4wx/IzMzEZDKxcuVK9u/f7/e+w+Fgy5YtWtjymmuuobW1ddA4I2FKGKWxhO/UL1f1QCorK1m6dCk5OTkhjTteRmkoj6unp4c9e/YQFhbGypUrB7nnl6XeylXTt5BmysakRBER6WL5OdU+ct0qvAu5LIlUlvr38Dgceg4dDC7m7nIahk1iz19S512sRQVzy0AetMDGZun5cdTNeiPgfH0OI6BvEWhIGUTH+Ag5Dsbge2NefqBG2iFdqZCgb/cQ969WBKf/hUYc6iX58SBpj4KEBwUnMq5+Q2mXPfzmw60cOXKE9vZ2JEniOwvP95ZzA05Fxu1zN+gFHUZRp0l2eEvSve/GGsL42ZIN3GXKHsQiPpFQVYqnuqc0HFTNqIULF7J27Vry8vKIioqiubmZvXv38vOf/5wvf/nLiKIY9Gba5XLxuc99jjvvvDPg+5IksXHjRlwuF3v27OHpp5/mqaee4oEHHtCOqa+vZ+PGjVxwwQWUlpZy9913c9ttt/H2229rxzz33HN8/etf53//938pLi5m6dKlbNiwAbPZrB1zzz338Prrr/P888+ze/duTp06xdVXXx3y9/SJDt+phQ5Op5NDhw7hcrlYvXr1qGr8x6ssPFCvUnNzMxUVFSOSvS6OOYfFMeews/INPhD/SdrMDnR6Dx63Aa1FVG2CVKCrw3839f47eafpe4JAT1c0mXNO0VA7uADk4J75rFxbTWx8H4pvf5NAf/hN8S92EMCUX8GBquBpYAYll9Swno8hVvQCgmssftJIwbXT7zfU6BFExf96h5prAIx2lpF7u7B8OWOUnx5+HuqdGBEfh6IoWknzQ86jOANoxwuAoX/hDxN0IHsLW+5beD4zI2JZ2V9EsetI06Q2lJ4Juh+YONmKQJpRNpuNiooKKisrufnmm/n73//OJZdcwsaNG8nKCtxE/sMf/hAgoGcD8M4771BVVcW7775LamoqeXl5/PjHP+a+++7jBz/4AUajkccff5ysrCx++ctfAjB//nw+/PBDfv3rX7Nhg7e5/Fe/+hW33347t9xyCwCPP/44W7du5W9/+xvf/va36e7u5q9//SvPPvssF154IQBPPvkk8+fPZ9++faxaFVg0MhCmhKc0Wuh0OpxOJ3v37sVoNLJq1apRN52NVwOtr3FTFIWamhrNe8vOzh7yQT58ysKv3/mIJ3YeoNHlJTH1Tkc9Xugf0/dcp+drbokNySCBt6eoqTEw35/k0bNn12I+eHfJ4DcFZZDzkD77FN1h9RgMQ9H2qH0m6i038HsQfP7vtHfimJPAcDCkxQ37/uBzDe35OG2Cj0E6fYwy6F/gMUa7RAseBVzjG8IbiPlJ05k3bx5r1qzBM3sazZLde278vxEF/J4DnSCiCALTwqNYnZyOKIoaJdiZMEqTTVI6WbIVBoOBjRs38swzz2AymfjLX/7CBRdcwKuvvsqf/vSnUY+7d+9eFi9eTGrqaeLlDRs20NPTQ2VlpXbM+vX+Io0bNmxg7969gNcbKyoq8jtGFEXWr1+vHVNUVITb7fY7Jjc3l/T0dO2YYPGJ9ZQURaGjowObzca8efPIzMwc0w073p6S2+3m0KFD2O12Vq1aNWSM2CPJ3Pn31yg+fkrb4YqCQM6CWTSdSMbj9v2J/A1T2qzTLAxtrXEhzzXM5ArYqOsLa+9IVUAK6bPaQBF4981CTXF2KOQlJbO/tYWglnABui6bg2B1Ed7YM+htMS4CxTpYXXXIwUZ8L1ApYGD4l0EIAV/1e3sYN0rRC2AMfn+oY7B430j4wNLA5bMWIAgC+3uatWmpmSLfUK5HkdErXjl2jyyjF0VmR532gM+E13ImPaXJZAgHb/Xd0qVLufHGG/nGN74xprFaWlr8DBKg/d3S0jLsMT09Pdjtdjo7O5EkKeAxhw8f1sYwGo2D8lqpqanaeYLFlPCUQjUmkiRRUVFBU1MTBoOBrKysMe+gxtMoWa1W9u7diyAIwxokgIfefJ+ifoOk7lhlBWoqM7D2DG0QYuL6WLC4AdkDbeZodLrQa6ZnZY2tBBkULt60j+aWeOrrpmHrM+G0D+WtCSzPTKPIYibwoj/Eqi0KdF6/kK6LBocvMjcuw9NjH+3kA85x4NyGD8kNPF4IbM5GiOvZlsUGMbfTkAn9wd3dWs/xfhLWxLDB95XvzN0o2GUPLllCRsEtSzxd87FmGM6kp/RJzikFez6bzcbixYs1zr1A/1Rj8J+IT5ynZLfbKSkpQRAEli5dSllZ2biMO15GSVEUqquryczMDKrY4u3KWsDrHfkMQuAiXC9EUeb8DSVUlmZRdyRtyLLuoWAMcxMVbaO2emwVUxGRTkoPzsPtHuo28s7fFAbfWH8uRcdbvBxp2qWpptinGk/LK/mPZMufRnh1G2Ene70vhBlo3FE+pvmPF4ajPVJGIK5zzIvAvCW030HBm+9x9mtrhQneRdMxjNaWU5F4qHI3f1y5mRsz8/hL7QHcircFQUDQPKVA01WAF5sPQ3sPl6fOJTbWa0THQ9F1l7me3a31RBoMXJe+hIwA4oLqsWdCHvxMSKED7NmzR+PmDITZs2cHNd60adMGVcmpFXHTpk3T/n9glVxraysxMTGEh4ej0+nQ6XQBj/Edw+Vy0dXV5ect+R4TLKaEpxQs2tvb2bNnD7GxsVoF23goz8LoKIJ8oSgKtbW12O120tPTmTt3blAPrd01OAcTzLNeUzmLYzUzgjZI4REOLrtmD1dc9yFLlx+loy203Xkg2PpMASrzfCEAIgtTpmN3SXxw5Lj35YD9TgO8jgDNmr2rTovi4XTjaekc7dSDRjC9wEO9puig7b/SvE3FPpDDBLovSeLEw/No/sFcdPrgH0MjIiIwOzoBURAwCKd38UZh+B393vZG3mg6TJQhjG8vPB+d4JWFkPtNUrjOQEH8jP6xRMJFPVF6I5E6AwpQYrATFRWlLU4HDx7k2LFjdHV1hZyPtXtc3LjnOb5Z/CavNVXxr4ZDfPaDf/JozZ6Ax58pozTZnpJqlPLy8sjNzR3yX7DVeatXr6a8vNyvSm779u3ExMSwYMEC7ZgdO3b4fW779u2sXu1lejcajRQWFvodI8syO3bs0I4pLCzEYDD4HVNTU0NjY6N2TLCYEp7SSIu3oijU19dz7Ngx5s+fz8yZ3gogvV4/Lpx1MHoyVQCPx0N5eTk9PT3ExMSERBESF2Gi3Wr3oyYaSVoqJq6Po9WzghpfFGVyFx9nTm6TxgBxtGp4gtbQMOC3U4RBLxWdaKXoROsQjl/wu23FNCVuVyA4Y2VdE0/vpSn0npdA3FYLBosLR04EvZ9J9KPjCHYr5C18FJAVOGXrRVIUFCR0CIiCiF4UcQ1HuwX8oWYvl02fyzXpi1iVlM5fjx2g1d7L/NgUvpi9jNv2vYQIGH047ARBQBSgw20nKyuL1NRU9u3bR3p6Oh0dHZSXl6Moikatk5iYOOKi+bPK3RzusSAiaOzkbkXmqbpi1iRlUJA4w+/4T4unZLPZMBqNAQUHA6GxsVFrzpUkidLSUgDmzJlDVFQUF198MQsWLOALX/gCDz/8MC0tLXz/+99ny5Yt2jm+9KUv8eijj3LvvffyxS9+kffee4//+7//Y+vWrdp5vv71r3PzzTezbNkyVqxYwW9+8xv6+vq0arzY2FhuvfVWvv71r2uNwV/5yldYvXp1SJV3MEWM0nBQF/zu7m5WrFihhQ5g/Djr1LFG4ynZbDaKi4sxGo2sXr2asrKykIzbjauW8vt39/VHs/obOuknNNCDe4AjKAgKvT3hyFJw1yvLIrIsamvg8boUujpGEgzs92AUBrhtIxU9q/XqvldBgHCdL4JnTjCeGFzsMBkYoYzBD3KYgCcljN7PJNKzob+yMUJP1+fG3tOjAO7+EF2Xx9tsKdPfQ6RI6Ee4f3UItDn7qO/rpNvl4NEjeznS24ZeEInQG7F6XMyIiOFwj2XAJklBViDVFKX9rdPp/KQeVMG8pqYmqqurNeaCxMREYmJiBm08d7d6lX/1PqzfBryG6dnjh6aMUZrs81qt1pBYxx944AGefvpp7e/8/HwAdu7cyfnnn49Op+ONN97gzjvv1Nplbr75Zn70ox9pn8nKymLr1q3cc889/Pa3v2XmzJn85S9/0crBAa677josFgsPPPAALS0t5OXlsW3bNr/ih1//+teIosg111yD0+lkw4YN/PGPfwz5O5gyRimQ+qzVaqWkpASTycSaNWsG7b58jdJYOOvUsUI1Sm1tbRw6dIi0tDTmzZuHKIpBj2N1uHhk24fsOXqcMIMOp1vSFr3oMANfWJzBJees4KvPP0NjKyiKQEyMjZ7ucKRQ9InwErjmLjpBmzmako/nDnPkgNLpkFIGwgDD47OUayHGoQYMzjCZKswhmLDQIYiCJpEQ8P0Bfwc8Ui/S9HDueE4raKj7lxi9kR5PIKonBVlRONrbxg/LdmCXT+94trfUcqD9JA/lbeBDcwN2yaPJRLgVCb0gckNmHuBdqH0XzYE9Ny6Xi/b2djo6Ojh06BCCINAaLrDP046g17Nu2mwcsmdQWYggiKDIdLkGF6+cicZZmPzqu1Cl0J966qkhe5RUZGRk8Oabbw57zPnnn09JScmwx9x1113cddddQ75vMpn4wx/+wB/+8IdhxxkJU8YoDURraytlZWWkp6eTk5MT8IYUBGHMuSAVas9TMFAUhYaGBmpra1mwYAEzZpze1QXT72R1uLjit8/QZR98PgUIN+ixOt3MjI/jpTu+wm9rv0q3ZKGiJJPurkhCKV0GtN6bqgEMEP4Yj6V+KFohn/f9/hzOSA1G+38tJvW3B5ioJWI4gxQsRIcEDg8EEWo0CCIeRfErxx6hejwoBGqKhdNhwh8cejdgUUSX28Efj37Mtxeez29rPqLH7b0/w0UD2dEJ7G1rpNNl55K44dsvjEYj06dPZ/r06ciyzPeLt/GO+ZiWu3rPfEwrrlAU2WuM8LKNAyyITRk05qfFU1Iphia7H2sqYcoZJUVROHLkCI2NjSxevHjEyo2JZGIIBF/12uXLlw+qyw9mnEe2fagZpECLkNlq5+/lx0mZcYirl2Wj9NdDqUSrgjBy3skXqWkdAFiHIGodPwxT6h3oLcEnRBjM9YTpsa5KI3bfqdFPcZww5HQlSHi+ha6Lk4jb3o7glOk9NwHX3AC7X8W/P2g8oEMY0iipGK5Kr6yrhd8s28TGGbl8aG5gT9tx3jhZTUV3KxXdrbzTfJRnDMX8jyEzqPm811rHdksdCGASvMwkblnG3X9PuxQZsd8YKUC0IYxbsgsHjXMmc0qT6Sl92hnCYQoZJUEQNLogh8PB6tWrgyIlDFUSfbhxRjJuajm6KIqD1GtDGWdvrZdkdKRd8WPv7ach/O988HEqbea5ml7RaYM0ssdkMLqZv8hb9WY0unE5xxbmDB0jXGWgyN4wh/etmTUljNJwiH2zjdg3Tzc2x7zbjn1+JC3fzyYmLByr24WCghygVnysJkonikj9RikUGXXf8+9urWfzrIUUJKRxf9l2nLJEuM6AKHqZxdtddp7xNPDZIMZ79WQVkqJgEvWnZTJEEVlyYxINGAWRbo8TAZhGGHdE59J9yox+gBbRwJDhZGGyq+8+7QzhMIWMUnd3N0VFRcTGxrJ69eqgdVNGEvoLFiMZk87OTkpKSkhJSWHBggVD7tqC8ZQG5s76Xx30Sp/LzStvzOrnvvPFyA+nKEqkTO+iYOVR9EbvfGZlmqkuzxxqViGfYxAC2p/BlEQjn3sY6EUcWbGY6rtDmtpkQdGBEOA2Cq/uY90/rfzXPWso0vXxd0u1X05nPCAwoN9tlMFAo6jjzabD/KLqfXo9Xo/eIXswCXr0ooheFjgl22mydTMjYvjWgr7+3JY4QPhRAHSCwI71t9Fk7yFSZyQCUVN0PX78uJ9Wkdvt/tSE70ZLlfafgiljlGpra0lPTw+ZnWG8wnfDjdPY2EhNTQ3z5s1j1qxZw84vmNzU8tkz2VZ+1Ge5GGrhUPzIWEMzFAIrzqlGLW5yuUSOVAVXRn56TgPPN9QiJwx9iPZdjV+YyjUjZsoapUEGyefyT35wgtYfGjnPE0VmGHzPXh6yJzMcDIIOtyRpP8FwarFDwSiIOD1uHqr+AKeP0fQoMn0eF1H6MEREPEh0OG0jGqVFcakc6mrW6IoAZNlbzTc7KgFRFJkVGacdn5aWpsnCq4qu9fX19PX1odfrOX78OImJiURGRk6456Qoyhlpnj3rKU0RFBYWjqpPaDxzSgPHkWWZ6upqWltbKSwsJCFheHJQdZyRruNbl6zlwyPHsTpdDLdYC4KCogiIokrOGjxkWeREQxKzMtoQ9VBTkYEkhRqGGMowjYCxrhUj2DF923hSC00eFLub/639gC/MLsCeDHLj2MbTCYKXIaMfLkVCJ4jMjoinvq9jVAbv63PP4dnjh3DLEiZBh90n/6QALtmDR5EJF3TkRPuT+ZZ3NvN0XTHHrB3EGU1smjGfmzLzefNUDR1OOx5FArwqtmE6Hf+Ts3LIeYiiqKm1zpkzh2PHjtHe3k53dzf19fUYDAbNi4qPj58QRVo1ojHZzbNnPaUpgomQRA91HF9j4nQ6KS0tRZIkVq9eTXh4cEUCwRil+MhwXvnK53lw6/t8cOwobrcwiJlBEBQiomz09Y7+Bi3Zn0vpAa+Yn+QZ+24vsJ+kDDhiYiE4PJgOt4184FTAAOPqiTMgo/DP+hKt0mwskAKEgVPCImi0dQXVUTbwmM+nL+XGucv4Xe0+dKKIQafH6Zb9PC6nLGEQRM4zpWLyMQTvm+u5/9B2bB4XggAnbd1Ud1uomtHKX1Zew4OVOynrakFWFGZHxXPXvDUhCQPqdDoiIyNZuHAhkiTR3d1Ne3s7x44dw263ExcXpxmpUPp8hoO6rpwN300upoxRGi0mInzX3d1NSUkJ8fHxLFq0KKSdUrDzSYiK4JHrLuG5kxXU9BXRdDyZ2poZuJx6YuOtLFxaz6mmRCpLZofsJflCUQS6OoJnmPCH/6qq+L12+hW/vwc13AYea1SzcUokPlf1yeHGGnCpXZu9jYaecTBIA6F+u80OKwL9lEPC0OXhEaJBW2zVMN0V6QsBCBN1uDwSAgKROgN22Y3HxwDGiAZyjDG4XC5EUUQURR6t2Uufx0WMPgyhP3/U53ax7dQRrstYwhMrr8Yjy8jIGMXQlx3f3I5Op9O8qJycHGw2m5aLqqurw2g0+nlRo/V01M3lZHtKA9m4P22YMkZpPNRnxwLVmJw6dYrKykrmzJkzKjmMUHWZzk28mqN9pczIsDAzox3AWwKuwIoFcKqxh872kRgYAiPU0vHACGB4hj0pI/TCBtWCqg0Usfckgl5Eb7YRXmmZ8gbJE6/HmR5GeI0d0dFf6mwU6Lo8ld7PJE3YeZUB/y0I3ubnMFGHW/Z6O0ZRR5zBhMXZhwsJvQKSIiHJCoviU1kY710M16Rksu1UDS7Zgw7BzyDpgS7JyV/7jpHblUNh/AxO9HZw0taFUdR5z9v/+0foDPR6nGxvrmVuTHJ/Tml0v+DAggOr28nvavbwgbkeu+QhMzKO/569jHMXLaKrq4v29naOHDmCy+Ua5EUFC0mSNFbuycLZnNIUMkqjxXhV34miiNvtpqqqiry8PJKTA4vfBTNOKPNJC5/N5dPuYJv5aVyyHQXQC0aSunL4fP5XYcOPKKqxUFWWMUBbaWSMv0Ea61hDeVD+5xEEbwuTDBjabURWtfvyiE9CkNAXwVUlqkfpOz3oOz3IIpz6/mxQwJkdAWHB77bHo4HWrUgYBK+RMAgiLkViXUoWP156MV8veoOSjlO4ZQmdIFCQmMYvCzdqn/3uogs42tNGvbUDh49XFyaIhCGi0+nplVw8c/wQq1Oz0LsMDPKEldP/LY7Dou7L6CDLMncdeJWqHks/5a9AZbeZB8q288Diz7B++hwSExP9vKi2tjZqa2sxmUyagYqLixvWC5rscnDw9imdDd99wqHT6XC7h1I7DQ4ul4vKykoURRlR/yiY+YRasLE0dh2Lo9dwrK8ct+Ik07SI9+s+pMvcQ+7xDRQsUHhav42DH2ePel5nDgP38DBS8YSinD5SNugD+mqTY5h85+tvFgcVGQ74pChDREkvnTekeZ0DBe+FBbFAj8dWQFIUDIAky7gVGQFICYvEpDfwp9XX0GTr5mhPGzGGMLadOsIte15AQaYwcRa3ZC/j+XU38urJah49vAeL00qkoEfEq5AqCAI6WeBITxuiKJIek0BmZDxHetswiToEQURRZPokN0ZRx4VJWXg8Hs3rGE2ORpZlrZjhnZZaDve0ESbqMfUTxyqKTLfbyV+PHWD99DmA11uMjIwkMjKSWbNm4fF4NC9KlYWPj4/XjNTAvPFkV97B2T4lmEJGaSzhO4fDMerz9vb2UlxcrO1OxtpNPVpZdVHUkxPtJVNUPa3q6mrNa+sMb+TokXa6OwPdsJPvPwSHoUvdg5qvSyLiUOvIx00IBhrQAB7dgCMHIm6rBV2vm64rUpESjV5WpWE8phidkdW6eBpxcNjVjUDoza++cEinw9oK8O/GMva2NfLs2huYERGLSTTw5Y9f5nhfp0aM+ubJako7TvHYys1clb6Qj8z17GiuRVAUDEbjaZJWFCL0p/vn7llwLvcWv0mv+3Q7hF4UuXLmArJjEjU2fzhNDxaKgfIN3xV1nERSZKLE0+cXBBGjqOOErRu7x0W4fjBLuV6vJykpiaSkJObOnYvNZqO9vR2z2czRo0cJDw/386LOlKcUisrAfyKmjFEaLcZS6KDy62VmZpKZmcmOHTvGvDsaa+GFyooOXsbfpCRvHmJJ7FrOu/iHVB3KpKkxCYc9rL9ib3xCbOGRDhISe4iKsVF7eAaSZ5TMD+MZ8TPqcSxKJqLS4jeuetlTxQwP9ytEf9RF9EddIEHXlSl0Xp825Dg9kot3JK8RVvDmZGQU7FLoOVNfUladOkcFGvo6+UHpO/xixeU8d/wQx21dxIeFa8UHHlnmlK2bf9aX8LV557DAaWQXAi4RDIo3jOYtnhD4zLQ52vlWJafzl9XX8PSxYo72thFvCOfK9AVcNsNLTivLstb3I8uy3zOiFksM99z5MjqE6wwBf3tZUQgTdRiCKKTw9aLS09PxeDx0dnbS1tZGVVUVkiQRGRmJJEk4HI6A7C0Tgb6+vrM0Q2d6AmPFaIyAKsjX0NDAkiVLSE1N1XZxY2UcH62nBF4ao+LiYi1M4RtOcONEL+pYkn+CJfkncXtg7+5c2i2xISvPqhAEmRnpFubkNhEbbwPgWM10TCYPDrt3TEkK5RYRxtlSKHRfkk3v6hlElFtABNviFPRdThKfqxrPEwWAamrGwQuVvUPYF4y8A/Y1bg7Jg0mnxyTqNWnyYGBEZGZEHNU9ZoyCzlsN129QXIrEB6317Nmzh332YyiyorGBg9e7EQWB0o5miouLWWyM55qMxbxyskpjd9AJIkvjp3HnXH/xtrkxyfw0fwOB4Fs5B2iGSTVWarHSUF6Ur9cyPyYFBYUOl50ovZEwnUHrnzonYYbWpBsK9Ho9ycnJJCcnoygKfX19HD9+nL6+Pvbu3UtERITmRcXGxk5IWE8971lPaYpgsqrvPB4PZWVl9Pb2smrVKu0GUB+EsRZNjNZT6urqori4WKMxeu+99/yM26zweRjFMJyyAz0G9EaBCy86RmePzKmTCVSWBM43iaKMLAd+gBRFpK01jsLVRwEo2juXk8cHMzQHh3H2W3yiZ3J8ONZ16SArIAq4ww0TErBMz09j/vnZvP3rD4aYDKGftf9WcKeF4VgS2mIjoeBWZAyCSJiowy57vOXeog5Jkf2q4lTE6U18d8kFPNdQ5p2tSu8j9C/4koCiE8jOzkZfUYckS/T12byS13o9ep0OWVFw9lrRRehYunQpy3U6Ns6az9aTh3HIbtYkZ3LRtDljWph9PSNZlv3+BfKiVE/pgUPb2XbqSD+7Ol5v0OPCgMDMyDi+Mf/cUc9JhSAIREVFkZCQgNPpZPHixZoXVVlZiSRJfoKGwQryBYOz1XdTyCiNFqFU3/X19VFcXIzJZGL16tUB9ZlG6+WoGI2n1NTURFVVFTk5OWRkZGi7RN9xjKKJZXEXsadjKx5c/TILCpFRsH5pPG57C0cO+zOqi6LMOReW09kRSUXx6VCL6tAoCjgcYbS1xmIKd/oZpMDl5MMFqkIxEyEs7L6blf4F1ljcMu6l4XPyM3ho5wP09PTQ8HETNXvq8M8ajdIEiuCYG0HrN2aP6uMuWUISvN5EtN5IdnQi1d1mJEXRZhQm6pkREcO1GUv4/GxvXvJwt4WSjlN+uRhFVpBRmBkey89P7KfM0YETGYviJFYJw+RW6HHYkJFZGBHH7Nmztc8uiZ/OkvixCxUGwkADpeaffL0ot9vN2+31bD11GFlREBEQEVD9x9UpGfw87xIiAuSSRgvVOzMYDKSkpJCSkoKiKFitVtra2mhubqampobIyEg/QcOxGOuz1Xf/AUYpWM/EYrFw6NAhZs6cydy5cwPeOOPRiKsaE1/lzqGgynScOHHCL3/kO44vLky+HpMQzfvtL+DCW9whINIndbEo30xKWhtHqmbgdBqJje9lwZIGTOEe7JbMASf2Ny29vRG0nDpNoaRNe5ANCjVhFKgUYKjm2wHf1TD2z7l8Ot2KQuwHJ0Kcz2CIepHPfmMTG//nIj5+vZjk9CS+8cSX+cqK7+K0q0J5IxukQNN1ZoTR8p05yLFjFKAURBbFpfLNheexOH4a5Z0t7LUc53C3hZoeC50um3cD4TPNW+cs57WTVbQ7bQiS0l80oaBDoMttp7a5XRPZk4FOyYlR0KEHco1xXJqQqTHiq8UBiYmJE0Ln44uBYT5JkjTWhn91HtZYLCQUJLzGScArDz+eBkk998B1QhAEoqOjiY6OJisrC7fbTXt7O+3t7aOShR94PrvdftZTOtMTGCtGMiS+gnwLFy4kLW3oRPN4GCXfmPlwlTtqGNFqtQYsQw9klKp69vF+x/O4OF3hpCDT5vFKOSSldpGU2jXoXI0nohiuViwxqYe+3sGJ3NDLKIbrRRp4XLCfDQCdSN+qmYguieiPxyBjIcDNP7qW6n1H+eK8u5E9MgiQmBaP2xNim0GkHvr6w8g6cORE0Pyt2RAxtkdMAH6WdwkbZpxWDF4cP43XT1axs/UYsqIgCNDQ18Ejle9zytbLNxeuI8Zo4u9rruOHZe9S2tmMrMhkRMaRF5fGKyer0Aki+n5xPY8s4UFBUBTumL6Em/LX8ZGlgRddJ+h12snq6mFtZzuUu4iPj9eM1ETv6BVF4dixYzQ3N+PMTKGtvGTQMTJeg9vrdmjNruOV7wmm+s5gMAyShW9rawtaFt4XVqsV4GxO6UxPQMVEcN9JkkRFRQWdnZ2sWLGC2NjhGY3HQ8XWNwwx1A1ts9koLi4mLCyMVatWBdxNDTRKna5WXml5DI8SSOZ6aNitEZg71HkMNgZR0Q4S4p3odWaO1XgVdNV2GiWglzTc7xTsbziUARrw+nCUFAJYl6eNySgJOoFd/95DQ3kjIPQXBCi0newIcSBIfHglpdY2jE0OnLMj8KSOT55BAboHyIO3Oay8fKISGcWnT0fBqUg8f7yM23JWEGc0MSsqjr+s+aw3FIa3iOGr+19DQUEvnL43VQ0mDwo35a/jx+U7eONkteaVlNLKB6YI/lRwBYY+F21tbRw9ehSTyURycjJJSUnEx8ePa/JfURRqamqwWCwsX76c+yq2D/sdzY5M0J7d0ZScB0Kolbi+svCzZ88OKAuvelEJCQmDnvu+vj6AT72nNKVYW0ZjmFSjNFCjyG638/HHH2uCgSMZJHWsseaUfMMOgdDZ2cm+fftISEigsLBwSPfe1ygpisKH7a/hUULbvYvoaWvxpbYZ/P3OmNWGhIfImD7SM08TnQ42SELAzw839nDH6nRj+J5lb/xRCR9bWEzxKByv8oYAdQYRUScg6kN/JAQEIl5tRU6PwL46HmmcDJKKracO+/29s6UOtyRhFE7PVWVucMoePmitB6C+t4PvFG/j2g/+yR37XuTNpsOE9xsxWVH5DL35GwGv0SpqO8EbJ6uR8ZZXh+v0GESRNoeNR458RHp6OgUFBZx//vnMnTtXU2LetWsXhw4doqmpaUTplpGgKApVVVW0tbWxbNkyIiIiNGn2ofA/87ybO9/nz+Px4HK58Hg8Wo4qFIy1T0mVhV+4cCFr165lyZIlmEwmTpw4wUcffcTBgwepr6+np6cHRVGw2WyEhYUFFSJtaGjg1ltvJSsri/DwcLKzs/nf//1fXC7/TWtZWRnnnnsuJpOJWbNm8fDDDw8a6/nnnyc3NxeTycTixYt58803/d5XFIUHHniA6dOnEx4ezvr16zl69KjfMR0dHdx4443ExMQQFxfHrbfeqnl+oWLKeEqjhU6nQ1EUvxxOR0cHpaWlpKamMn/+/KB3O+MRvlO71gM9ACdPnqS6upp58+aRnj48Q7JvbkqWZdqcJxkpmNbTHU55cTZdHVGIosy0GR2kTGs/PaYgaIuRisho7+7MQBjnnnOKqsQ+jh5JxuU0EB7hortrYkI0RqMbuz2IxXsob0kAPGMnNpU9/mOPRM00iHSo/9Zq23eS2V9dS11vOwLenEcwCOvvqXEOI/hX1tnMr6s+4Gu55yCKIuF6g7cqEf9dpUqYa9LpKWo/yV37X8XmcaOgICBQ0nGKc5IzEAURjyKjVwQUFK3wPS9+Oi/3K8WGiTqNHkgviHgEmeLOZq1wQq/XD0r+WywWLWwVFRVFUlISycnJI4atfCHLMpWVlfT09LBs2TKtP2heTBKlnafQKwLuAcXxGRGxFCbNBEZfcj7UXMYrhyaKIrGxscTGxpKdnY3T6dS8qBMnTvDd736X5ORkUlNT6erqGlEm5/Dhw8iyzBNPPMGcOXOoqKjg9ttvp6+vj1/84hcA9PT0cPHFF7N+/Xoef/xxysvL+eIXv0hcXBx33HEHAHv27OGGG27gwQcfZNOmTTz77LNs3ryZ4uJiFi1aBMDDDz/M7373O55++mmysrK4//772bBhA1VVVdrvc+ONN9Lc3Mz27dtxu93ccsst3HHHHTz77LMhf1eCElgG9YzA5XINoco6NCRJYvv27Vx44YUYDAZOnDhBTU0Nubm5zJoViqgdFBUVkZycPKLBGAnbt2/3k3NXQxFNTU3k5eWRmJg44hj79+8nLS2NadOm4ZTs/P7413ApQ+sIdXVG8P47eYPKv8MjHUguEy63NyEsCIImm6DXS1x2zV5MYjhh+tM9UZ19VirL0jl1MhGnQ09wXlAontJwTHZCgEOVAX97DzPVtJPw6pEQzjs0dAad1/7JCtIQxi7gnWkAneLt7flz0+/4efVuPjQfxyl7cMsjm6ZgjJJaBn5d5lK+tfA8bB4XF737F6xuJ2GiHkEQ+ptaPcQYTOy8+H+49v1/UNvboRkXub9HSYfA+amzea/lmN/SnhgWwT/WXs8vKt/nvZZjmkelwil7EAWRjy+9a8Q+IDVsZbFYaG9vRxAEv2KJofoAZVmmvLwcm81GQUGBX6l1q72Xz+7+Jz1uBzpBQFFkPIBJ1PNI4WWcP21oCq6BJee+a8xwjbtVVVWEh4eTlZU17PWOFbIs88477/Dcc8/x1ltv4XQ6WbVqFZdddhm33XYbKSnBtWk88sgjPPbYY9TV1QHw2GOP8b3vfY+WlhYtIvPtb3+bV155hcOHvd73ddddR19fH2+88YY2zqpVq8jLy+Pxxx9HURTS0tL4xje+wTe/+U3Aq6KQmprKU089xfXXX091dTULFizgwIEDLFu2DIBt27Zx2WWXcfLkyWHz+IHwiQ/fqTeT2+2msrKS2tpali1bFrJBgomRwfB4PBQXF2OxWFi1alVQBgm816WGHYp73sOlDE+lVLo/J2A/kr3PxILZImF6HQpq2EbAqNNxzQV6jKLBzyBZLCbeenUZ9bXTcDqMeG+R8Qvd6UTfsUYwSEOdSgCdxUbc6+NjkAAkt4QiK/6e0kiXbPAaKlmSiU6MJiEiiocLN7Ln0i9z4NK7uGr6/GE/Dl7RPFmWGS5IpEdAkmXeOHkYm8dFhN7I3blrMYg6nLKEXXLjlCWMOj3fWriObpeDBmsnOkHQvB1REDAK3v6mMLfCHWFZnBM/i+WJs7gjZyVbL7yFGRGxrEpORxDA7ePpy4qCpEBGZFxQjalq2GrJkiWcd955LF26lLCwMOrq6ti9ezcHDx6koaEBq9WqGQhJkjh06BB2u53CwsJBvT+p4dE8vvIqcmOTEQUBUdQxMyKGB5asH9YgAZpnZzQaMRqNWohMFEXNi3K5XLjdbs27gskjZBVFkUsuuYTrr7+ejIwMGhoauPnmmzl48GBIFGrd3d1+HtbevXtZt26dX4pgw4YN1NTU0NnZqR2zfv16v3E2bNjA3r17Aaivr6elpcXvmNjYWFauXKkds3fvXuLi4jSDBLB+/XpEUeTjjz8O4Zvw4hMfvlPd8NLSUgRBYM2aNaOmBBmPQgd1HFmWtYIGk8nEqlWrgmaKUBQFvV5PXV0dVquVY+Hl/X0ZRjwEjq0H5sTz4pQZtt1zE0/vKaXe0sGshFj++5x8yu3b+KgLZFlC7O/q3717FpI01MITqB4vtI2EJA8smBih6i7AKYUeJ6lPHgrpvEHNTZIR8OaVZI+MqBMRdSKKJCNJMp40I/oeGawer62WBQTZWxVy2e0X+o3V2dnJyg6RHToj3ZJ/nF9E4Bvz17LtxGEqrBbc/Qx3qrke6Ke5URABu+TiWG8H82KTWD99DnOjk/h7fTEt9l6mR8TwxexlLIhLpdXeq403EArQ0d3Ft9dcGTDPek36Yv5dX0qdtRNPf65JUbwSGF/NPSfk71QUReLj44mPjycnJwe73U5bWxttbW0cO3aMsLAwEhMT6erqQhRFCgsLh3xOFsan8ty6G2l32HDJHlJNUSEXMqjHB9O4q5LIThZUiqGZM2dy++23c/vttwf92draWn7/+99roTuAlpaWQV6eqtXU0tJCfHw8LS0tg/SbUlNTaWlp0Y7z/dxQxwz05vR6PQkJCdoxoeATb5S6urqQZZmwsDDy8/PHtLMZj0IHdZzOzk7q6+tJS0tj3rx5QT08am5MlmVyc3Pp7u6mra0Ne68T2eRdmIZav4ejGrLaRKJMRrZcuMLv9TzjBZT07KRP6sFIGF0dEdjt6oIw1HijeUj7sx1+6aGhvKUgRosc334UFYUXLWHFxnzOvW4Nf7jzrxx8uxSPy4OoEwlbkEjdlunE9YoYf3MEodnuLbYwicRemc21912pjdPS0kJVVRXF8TK9LW6Mgg5D/0bFo8i4UXi6rsTbX+Rz/qywaBqdvZpR8jXbMuCRJH5Z9T4VXS14FJlYg4kbs/L55bJNfteRGh5NangUTbYeLbQI4JYlROD6BUNXoupFkafPuY6fV+ziQ0sDLslDVnQiX563inNTxh7GCg8PZ9asWcyaNQtJkrBYLJrukSAIVFRUaBV9Q20uE03jxw0XqHFXkiRsNhu9vb2kpqZqcxuPir7hYLVaMZvNIxrC6upqcnNztb+bmpq45JJL+NznPheSIZuq+EQbJZUJwWAwkJWVNWZXe7zCdx6Ph9raWubPnx90GNG3ix38GY311qt4oeU3SHiG6TcdpkdICfwQReljuXLal3nL/DdKDwscKp0RaOAxISlWoa27f4YBK/qCwMBiB50wKMk/EKJORJHlkDSl+npsXHKr1+O595kt9HZYaag4wbSsFE5FOvnqgdfpiHcR9ds8xFN2nO02XHMicUVFsvLNRzHpDCyPSmG9PZpleXn8sfItQMHgszs3IuKW3JidgyuT6py9fn8PnLqMQnFHkyac0eGy84eavUiyzJ25/jx0X809h/tL38EpexAQ+osdYEXCTC7IyGU4xBhN/KzgkuC/uFFClmUaGxuJjIxkzZo1OBwOLBYLzc3NHD58mMjISK1YIjY2dsK9FtXYOBwOysrKSEtL0zyA0ZDIhoq+vj7mzp3LO++8M+xxs2efZgc5deoUF1xwAWvWrOFPf/qT33HTpk2jtdWfZV/9e9q0acMe4/u++tr06dP9jsnLy9OOMZvNfmN4PB46Ojq0z4eCKWWUQqnQqamp4dSpU+Tn53P48OFxywWNpZxVnZfL5SI7Ozskg+Rb1n565+ahyVmHSRfBoqhzKLd+gJ9D5LNqGcNcuJwDq9m8B8dHDF3llh4+j/jW/6L4wB7kEBZwFSa9HkcA7kE16paaforw7jBOnkgY4M3JMGwmZeCAgl/Rg3NeAuE1Q/cTyVLoHm9jVZPf39EJUeQsy+KD5z+mr9vOrUsW8G/pKJ0uO0qKSPhJGeHtFjrmRuHJicIhedje0UBjVBIXJ1wY8PuUgrCSIoElK7zc3PgVKMgoPH70Y67LXEqCjwdx6YxcYg3hPHFkH7XdFsIQuSJjEXctWBvcl9GP+t4O/nx0P1XdrUToDVw0fS43zy4Y82Lscrm0Xr0lS5ag0+mIiooiKipKY0pQw3ylpaUAJCYmahu1sZAmD4e+vj4OHjxIWloac+bM0dakgSznvhtI1YMaqxdls9lISEjw84KGQ1NTExdccAGFhYU8+eSTg869evVqvve97+F2u7Xva/v27cybN4/4+HjtmB07dnD33Xdrn1MLtQCysrKYNm0aO3bs0IxQT08PH3/8MXfeeac2RldXF0VFRRQWFgJo3J0rV64M+XuYUkYpGLhcLkpLS3G5XKxevZqIiIhx83DGklNyu92UlpbidDqJiYkZJBg2FHw9JPXmBijt2c3u9uexSd4ddaQumoKoCymyvttfxIufozEzvZ26o75VLqffvHhhzrBz+OuHJcgK6AQhqEVThU4QeODK8/n+SzsAhUH2UoGo6D7qjyUFCC+OYtcr9P+PomBdmjqsUfL7mCj0cwUOD1uvHZfDhdHkDQ/ufm4Pf773n9h67KAo6Ax61l68mNn/nccbW56np7W3nyQW3JkRtH17DlK0nqN9HWxvqWVVcjrHetu95dc+7AkjYShzOhTDhozC1z9+jSfXXee3sVuZOBNTRA4ufQYFBQUhUd4AVHW1smX/K3S5HNq5a3raONB2gkdXXDnqBdjpdFJcXExERASLFy8OOI7BYGD69OlMnz4dRVG0UHZDQwOVlZXExsZqBioqKmpcvKihDBKMzHI+Fq0oFaEI/DU1NXH++eeTkZHBL37xCywWi/ae6p18/vOf54c//CG33nor9913HxUVFfz2t7/l17/+tXbs1772Nc477zx++ctfsnHjRv79739z8OBBzesSBIG7776bn/zkJ+Tk5Ggl4WlpaWzevBmA+fPnc8kll3D77bfz+OOP43a7ueuuu7j++utDrryDT5hRUgX5YmJiKCgo0HoIxksSfbQ5JZXoNSIiglWrVlFaWhrUOL47L1+DVN9XwduWp5EUD2K/N2GVujnU9z4GTHhwYhDCcCoO1GVqUV4d5tY4rD3+8fb0mAgunzfDb7fki26bgy6bQxNHDRaJkeE8fdvVpMZE8bcPiqk1dyAKaKEiWYFpsRGcOJ6IzaYuhr5FDmNbRNyZcdiz4wg/1jXiscEYJOj31PsXkqbaFh67+2mcNhdGkx5BFHE73Xz8ahHFbx/C7fR4o6IGASQFQ52NxN/W0/lALg7Jw0fmBr65YB07W2o5ZevF3e/nKCN8y8NROw33ybKeZp7e8SYHdVaaZBvRxnCWypGsNaWwbNmyUfXb/Lr6Q7pcDqJ0RsR+Mly7x8P+9hO813qM9dOH3+wEgsPhoLi4mOjoaBYuXBjUwi0IAnFxccTFxTFnzhwcDofmRdXV1WE0GjUDlZCQMKowvmqQZsyYQXZ29ohGbqhc1FBhPvW/R5pDsNRN27dvp7a2ltraWmbOnOn3nhpxiY2N5Z133mHLli0UFhaSlJTEAw88oPUoAaxZs4Znn32W73//+3z3u98lJyeHV155RetRArj33nvp6+vjjjvuoKuri7Vr17Jt2za/nN8///lP7rrrLj7zmc8giiLXXHMNv/vd74K6loGYUn1Kahd2ILS0tFBeXk5WVtagm6a4uJjExEQyMjLGdP4TJ07Q2trqV9o4Etra2jh06BAzZsxg3rx5CIJASUkJ8fHxZGZmDvk53xCAr0ECePbkz2lwVGHAR+lTUXDjJFafRI+nA1AQ0eHBh+VB1tHVsBRL0wycso282SYumZGDvcOD1WolLi5O04xRhcQcHg/nP/Q3ZHmk5dJbVnz50rmck5PBeXMztIeszWpjyz/eoKGtq7+JGdLiYvjmxWu4+7m3Al09aqm5ThDQiwIuKVi1ILT8kr7ZSsoz5cF+akTojXqu+86VnDx8iqajLdSW1BMeHX66UMDlwWU/XUmnAOgEFIOA4JZBFLD8bgm2eJEbMpby7cUX0OVy8LvDH7HX0oCswIrEmey1NGJ2WgNer+qt6vqp3AUEDKIOl+RmuG2XQdARJojYZY9m+EQEzo2byUPLNgbtuauQZZm1bz+OW5b8FGYVRaHX4+LStHkh553sdjtFRUXEx8ezYMGCcfFuJEnSZCXa2tpwOp3Ex8drxRLBXHeoBmkkDPSi1CV2JC/qrrvuIi0tjQcffHBM5/+kY8p7SoqicPToURobG1m6dGnARrKJ6C8KBo2NjdTU1DB//ny/3cpw8hXqTaqeZ6BBAujweBOPvq8LggCKgCjoWBpzHpW9e/EoLnToidYnsDTmPOZGFFCW8D5lc3ZqHHk7xQ+ZM/0zvL8vguKSchRZJjM6jM/On0XOrBkkJyczLzWRquY2RsKyjDS+f/n5g15PiorguS9dS/nJVqqbLcxJSaAgI40b//wCgff+au8T6HUiHmmkJtPA70qx40vn43F7ePbHL3nP2O9dedwejEYDkkf2M0jQf2WS1wgrAgiygtzUhyEhlmszlwAQZzTxwJLP+H2uqP0k/7P3RZyK/z1iEEQKEmZwoP0kRh9GBQCdqEMKEPoTUHNQMn2yRJTOiCxLCAg4FYmPupp45v13WBSdrC3UcXFxQS28wx0S6sJts9koKioiKSmJ3NzccSta0Ol0mpekiuS1tbXR2tpKTU0NERER2nUHEuezWq0UFRWNm0GC0LWi1GND8ZT+kzGljZLb7aasrIy+vr6ATNoqJtsoybJMdXW15lWpScORxhmqoGEgInUx9Hja/KiTvJ9RiNLFcVnKF7kw4TqanMeI0sWRavIyUJR276K0excKEC5Ge3tSrE5+/tYpXM7Tu93ydg+NB+v5QVQUR5sqWZZzkiNmI54h+5MgPT6GuIgwrvnDvzEZdGxYlMN/rVridw2LZ6ayeKa3n6HH4eCYWc35BH7Q9aKIyxOiQVI5cQQQbSEyeY8EBfRGHQgCbod3bLfdjdvu1sJXASF580qKKCDPCuem2YXMjh66SfrXVR/iHhCgEIAvzM7nwmlzuGXP87gVmTAf0lSPImMS9YiKgk2REPBKWiiKjNCfr/KWnUsIgohep0NUdPRJLppTI7hyerYm3wKMyLAgiiKLYlPZ334SSZbRqZVpkoReELlo+pxBnxkKfX19FBUVkZqayty5cyesik4V54uKiiIzMxO3201HR4d23Yqi+BVLuFyucTdIAxGMVpQ69+7u7rNGiSlmlHxvCqvVSklJCeHh4axevXrYaptQ1WeHQjACfWqhhdvtZvXq1QHDA4HGGaqgIRDyYy+k1XwcDy50ijcf48GFiI6CWO+u26SPJFu/xO9zFb17kJCI1Hl7UASg6lAWTqceUVQw9FPayLJCt8PJyycbmL10L3ZXF8tWxLBvryqPMHhurT1WTnT2aIXcR80f89HRRh77wqaAxtXmdIPi1eULlNIJ0+t5+LMX8ecPiqhoMg8+wPutDf7Tp5I8av8YZCsCof8yVIPkC3mIvJTQPy9BgYhlqTx2yfUsS5wZ8FiAj8wNVHa3IAqCRjGkKDJOWeKVE1V8JXctS+KnU9JxCofs8QrZKV5xPpfi0TSQVHaOGIOJi6bn8GpjJZIioQgiAjKyjFZcIYgiqamppKamakUDFouF+vp6KioqtLDuQDmKexacy5c/foVOl11T0BUFgXOSM1gXZM+SmgeeyIV/KBgMBr/r7unpoa2tjcbGRiorK7Vc1cDG0IlCoGIJ9Z/FYmHPnj3Dhvw/LZhSRkmFurOZNWtWUDsrvV4/ZmZiGNlTslqtFBcXExUV5VdoMRADjdJQBQ1DIS/mPFqdxznUs0sLw+kFPYWxF7EwevWQn7NJPYgDundaW725I0UGp6xS+3sXteL6U6TM7yJan4i10zcsOriHyCnJ6EUB0aeKrPREC+9U1nLJ4rkMREp0JLERJjr77Oj6udd8l/V7LlrFmpx01uSkc8HDf8PqHMHr8a2RUCCipIXICstwnwgZer0Oj3t4T1kQQR+mx+3w7xlbev5Cvvvvr2KKCNzw6ZFl9KLI7ta6fsJTX4ZvEb2g0ON2Umdt548rN/Ojsh3sbq3DKXkwijov9xwC4XoDigJ22Y1OEPlp3gaWmBJ4q7EKKyApMijgQtI48y72KUjwLRrwZViwWCzU1tZiMpm03qC5cUk8veZa/nJsP5VdrUToDFw8fR6fz1oaVIFCT08PxcXFpKen+/XWnAkIgqARoqampnLw4EEtnHfgwAG/vsCEhIQJFzOE015UR0cH11xzDeeddx4PPfTQhJ93qmNKGSVV1Kuuro5Fixb5NWsNh8kI36mGMj09nZycnGENi2+/03AFDcNhQ/JNrIi9hCrrPgAWRa8h1pA07GcSjdPpdLcGCPv5F2yrkSOnW8HWNZ2YRB3dPUHcCgp4FMlnDIVtFYGNkiiK3HpuAb96Z8+gIgqdINBmtWnfySWLcnihqGr4c3tk0AkgyaT+vRhd2/CecbBl4N7JegsKZEkO/BmftJgig8clIYoCsqQgiAJXfe1Sbv7xdQGH/vuxIp5rKKPN2UeE3kByWCQg9CvFKnhkud9gK+gEkViDiQi9kZ8XXIpHlrF5XHxu9z8w938evJuKCMGATXLzf3WllFoFXAGCoAqQYopiVfLQBMO+DAtqw2NbWxvl5eXIskxiYiL/k7yIpPnnh1RS3tXVRUlJCVlZWVNq92+1Wjl48CCzZs0iO9vLmSfLslYscfToUex2OwkJCZqRUouCJgJdXV1ceeWVZGRk8OKLL4Zctv+fiClllDo7Ozlx4gQrV64kJiYm6M9NpFFSFIXjx49z9OjREZVrVaiekm9iMxSDpCLemMI5CVcEffzy2ItptNdgk3swCGGAQmS0A7s98I3uchl5a8cMRFFhpAp2AfAEKNS09FiRJClgGe61yxcRbtDz4Jsf4PZpZpUUhb99WIK5t4/7Lz+fr128mr3HTtDU1TtgBAFk2ZuzUV+RwOjwBKxEE0VBC7Pp9CIeV5D3hAyRKVFYzQPP34/+04sGEdkto0injWzyrES+8MPPBfzYH2v28rfag0j9fUrdLgedThsALkVCGTA9jyJzwwf/4mvzz+HKWQvRiyIxRhM2yTOYulbwGramzjbEuCQUN8SJYdhkj8ZZByCGUFs7UI7CN9xVVVWl9QYlJycTGRk55P3c2dlJSUkJOTk5oyJGnigEMkjgfTZVddh58+ZpxRIqBVJ4eLh23XFxcePG4tDT08PVV19NcnIyzz///FmD1I8pZZQSExM599xzQ+4zGO/mWdXTkGWZqqoqTf0yLi4u6HE8Ho+fEuZkxNLTI+azIflmPup8lR6PV0cpXG9kuJ4gb8JVHJaOJ0wn4hyCIeFEezfvvfceKSkpWl5Cfbi6bQ6Ot3X5GSTtvIrCW+VH+dJ5y6k1t9Nl7Rs8uEcewE0kYGixolMMYJCR+kNt+jAdeoMej8uD7PJKYusNemRJCYrZQQF6zb0jdk4pHgVRJ6KylCoKWE628+QPnuXab13p18Tp8Hh4/ngZsiITbThdJWj3uHHL0pB6SxZnHz849C6dLjv/ne1tTZgVGUNVl9nPA/ZIEqCwOHkmXXgQFDDqDRg5nXvtdTtwDrR8QcI33JWdnR2wN0j9vRMSErSFur29nUOHDjFv3jxmzJgxwlkmD729vRQVFQUVSoyMjCQyMpKMjAzNe7RYLJSXlyNJkl+xxEA282BhtVr57Gc/S0REBC+//PKoSaT/EzGljBIwqsa38Sp0UM+tKAput5uSkhIkSWLVqlUhMTTo9Xra29uprKwkJSWFxMTESYlRAyyIXklu5HLa3acQBR2nIg9xkuPeuQ06WkAUQRRlPJ7+pLigoPRz5alFChmJcRzRKun84ZRkdNMzONHby4+ff5dTVjuC4s3POD3ysAwRbknmS8+8hrnHitPjzbmIgvd1RcEbrvMhcBXcEjG7juPq86mGE7xCfS6PG0EAU1QYTpsLl8ONqBO8HqDifd1hdfqH4gbMZyB/+YCvCgQwmgxIHgnJIyMIXqO+75ViMs+bri3UycnJNGKn1+3COOB+Nun0uIbRTgKvx/TXowf4r6wC9KLILdnL+W7JNmweNwZRRFIUPIpMjD6MOxet5bWT1eyxNOCRJfT9bO9KP/lrbkxwWjwjwWQyMXPmTGbOnKn1BlksFqqrq3G73SQmJhIWFsbJkydZuHBh0KH3yUAoBmkgBnqPvb29WCwWTbAzOjpaM1DBihnabDauvfZadDodr732Wsg9ZP/pmHJGaTQYz/AdeHVJysrKiImJYfHixUEbFLWgISUlhYiICI2ev7y8nISEBM2bGO3uaiSoORqHx8Ousi5sLg+rZs/gw9pGFEXBIHqJTFX5CAEw6vRI9K/cXuEGwvTe78ElyRh0AiuyZ3Kkn7FBTbnoBAGdAB4FKls7eG5/hV95t2uEggEVjR09ABh1p0tnw0QRh9MNioLokkAUCLPYSdx7EsXchz5Mz5LzFnDONSvptvRQ8q63gbbw4qWs/+91/HHLkxS9cwi3y4Mp0sTKjflExkfy5hPvojfoBnlQ6jIyXKRLr9chSTIuhwtZ8j+y40QXq1aswuawYbFYqKyspNndB4qMJAt+BBayovT3FvVzqgU4qwhYPU4qu1pYmpDGRWk59LgdPHH0Y9ocfaAozIlM4H/zLmJ6RAzXZS5l68lqLyu4KCAg4Ja9HtoX5wTfCB4sBvYGWa1WGhoaOHHCKy3f2NiIzWYjOTmZ6OjoSa24G4ixGKSBEASBmJgYYmJiyM7OxuVyad5jY2Mjoij6ldoHWjccDgc33HADLpeLbdu2BU0r9GnClGJ0AEZVRdfe3k5FRQXnnXfemM6tKApvv/02Op2OzMzMQfxXw2G4goa+vj4sFgtms5menh5iYmI0AzXWvoQeTzvvtf2bBlsVEhItx+aw92Asrn71VFEQMOkEbP1/+/7YYXqd1n/idHkZA7wNm14DpRMFPr9yCVfkzeOGJ573Vo35PGhOtwedKJKZFMfR1nb0OhFJlkdF7GrU+zeLOhxuQCHz39UYracr82y9DmbMncajB4bvenfYHLSf7CRxZjymCBPl71fzwOUPe+UmULyCfgz2iobiLp+3Yg41+2sDn0yAa+7ZyE0/utY7Rv+O+uaPX6DO0Y0RsZ8pXMAue4jUG5HxMiMEgg5vuPe5dZ9nbkyyNubhw4c51Hyc5UvyyE7yZ19usnXz66oP2G85QZ/s9moQijrSI+O4MSuPK2YtHPb7Gguam5upqqpiyZIlxMbGavmY9vZ2raotOTl51BRAo4VqkDIyMiZFPbarq0szUjabjfj4eK3MPjExEZfLxY033khbWxvvvPNO0OmATxumnKekSjuHgvHgvlMUhYaGBgBycnKCrhgKhqFBjVFnZmbidDqxWCxaCa7acZ6SkhK0+6/CIdv4V9NDdLrNiIKOjvZIdu+PRJElr8Kr4t2Z93kUlmem0eNwYnd5aO2x4uz3ahRFQVIUFAGyEmK5ftUSDtafIjLMyOeWzWfuNO+iuCxrBvuOncTh9vgRt67KnsmB+iYQvGXPo93ieCQJo4/BE3QCOCWkNhtymB5REHA5PQgCrNxYMOJ4pggTM+ZOp/jdct760w6sXX3EJEXTbe72m6OvERpq6ud+diUz56cNbZQU2P9WqWaU1B31QysuZ8v+V2h32vD0S6MbEbgmbAbdYSIvd9QOIl8V8HpPM8NjNIOkNmt3dnZyxap1AavBZkTE8otlm/ja/lf5yOIN18qKwtGeNn5WsROrx8Xns/JH/N5CRVNTEzU1NeTl5WmqymlpaaSlpflVtdXU1OB0OrWqtuTk5AnNo0ymQQLvc5+QkEBCQgJz587FZrNpBurOO+/k6NGjTJs2ja6uLj788MOzBmkYTDlPyeVyhWyUrFYre/fu5aKLLhrVOWVZpqKigvb2djweD6tWrSI6OnrEzw3UQAq1oMHj8dDe3o7ZbKatrQ1RFDUPyjd5PBQ+6niNDzpexiiY0It6du+eReOJGARBQRQEBEVEEAU8kkxCZDjbvn4TAOUnW/nW82/TZXNoyfOU6EgevXEj6YlxAc/l8nj46db32XW4AZdHIsyg58LcTL676Twu/uXT9DoC7/pDgU4QEEVBCy9OMzvQ/+OQT6hNITw6nLBwI2HhRlZsLODz9181ZG/Qn775DNv+slP7vKIo6I169AYdjj7nkEZIwNuLlL00gzt+dRNz8jLZUvhtTtY0Bz5eFEhJT+JPFb8Y9J7V5eTfxw9R29tOiimSa2YuJNzhFbd79mQ577haceAfSozQG/ndsstZkZyOLMuUl5fT19dHQUHBsAv5oY5T/M8+L01ShN6oXXOPx0mKKYrXL/jvoOTMg8WJEyc4evQoeXl5fjLcgaAoCjabN7zZ1tZGV1cXUVFRmoEKdUM2HNT+qMkySCOhvb2dLVu2UFZWhtvtpru7m/Xr1/ONb3yDc88990xPb8phynlKo4GaU/KtTgoWTqeTkpISFEVh9erV7N27Nyivy7chdrQ6Knq9Xus4V3eVFouFqqoqrconJSXFK/QXID7d7KwDFPT9zAA2++k+FgXF6y31E3tanaeNxuKZqbz2lc/zRtkRTnZ0Mzc1kYsXzhn2Gox6PT+88kJcGz20W20kRkVons2KrJnsqK4L+fp94Q0aKngkBZ0gsHR6Aj/60vlUrCxg3+tF9LZbqS1twN5rx97rZUd//Y/vUPHhYR7eef+g76e2tIG3/7oTWZbR93tasizjcUvMXpLON5/+MncWfhuPwzNoHqJO4Be7HiBrsZfgV5ZlzMfbhux9UhSFucuzB70OEGUM47Ycf8VfYiAlJYWfLFjAt7q7ea+uipfMNXR7XMwyRXNzRh6Lo5KRJInS0lI8Hg/Lli0bsWR4r6URd38BhHY9/cwRHU4bdb3tzI1NHnaMYHH8+HHq6uooKCgIatcvCIJfxMBXL6m4uDiofEwwUA1SZmbmlOiP8ng83HvvvdTW1vLxxx+TkpJCWVkZW7duPdNTm7KYckZpNOE7X9qOUGLWqosfFxfH4sWL0el0QRVNhMrQEAwG9kr09PRgsVioq6ujoqIiYKGEtxfJG6YRBYHoKCdtbeEo/fQ+3iZNBRSIj/Cv8DHq9VxdsCDkeRr1eqbH+feQ3XvJOWM2SiLw4DUX0WN3MCc2AsVupaqiAnEGXHn/ep766gt4nG6MEUbNeLqdHhrKT/Du0+9rirEq3v7re0iSjN6o13JV3t9Kpq6skejEaP5a+Uu+c9nPaD7S6he7kyWF71z8M+5//h4Wrs31dt7r+g12AH5ZQ5ieG76zOeRrVtkVri5Yw9Ws0UI+FouFjz76CEEQMBqNLFiwIChRu8j+5lqZfpZx9XoUGVEQiDSMTx9MXV0djY2NFBYWhtRP6AtfvSRZljXqI7UwyJfpO9jm1Z6eHoqKiqZMw64kSXzlK1+hqKiIXbt2aXRGS5cuZenSpWd4dlMXU84ojQbqrmqoJs5AaG1tpaysjNmzZzN79mzNsIxklCbCIA2Eb4/InDlzsNlsmM1mTSY6JiaG5ORksmPyOSIU4VLsGOQw5uWe5HhjDLIsongZ0JBkr/f42WUTl+hOiIogMyGWho7u/vkzKLekBwIVQusFkBEIM+g5d16mX3jJd7FqKDuBIpwOmQqCgCFMj6PPwYG3SgcZJadtiHBi/xgeh4v2jnZyL8ykpdaMIinow7ybEkVWcPQ5eXTL3/jWM1v4ze1P4LS7NC/Jd+MkiAJ3/fFWZswNvgTa4fHgkSWijP5VmBEREaSnp5OamkpRURGiKBIREUFZWZnmSSQnJ5OYmBjwPr9sxnz+UnsAq8dFjD4MQRCQZBmXLLE4bhozImKDnmMgqIwrJ0+epLCwMKgQdzAQRZH4+Hji4+P98jFq8+pITN8w9QySLMvcc889fPjhh+zcuXNUYnefVvxHGCU1l+PxeEYMcSiKQl1dHXV1dSxevHiQhvxQ6rNqQYPK7jtRBikQIiIitHCE0+mkra0Ns9lMR10fyUk5tETUYFesRMQLrFhzjNID2bhceiRFwajXcVXBAm4+J29C53jrugJ+8NouZNnrtalCfxq0enL1Ra9hUQQdKHDOnPRB+Q7fxUpv0CO5+z8jK8ioWjWnfxvf32PZJXl88MLHyJKE2L9pkRUFRVJInBnHE99+hv2vl+C2e3yMjUpg6s1ttTa28YPNv8DaYUVv1OF2evnuFEUBAQxhBq68awPnX7smqO/ouLWThyt2UdzRhEuRidaHcXX6Qu6at0ZbaO12uyZkqYrg+VZ2HT16VGsxUBdqNc+UaIpgy7w1/O7wR/R4Tlexppii+N7iCwPOKVgoisKRI0doaWlh2bJlE1rKrBrn9PR0Le/qy3CemJioGWeDwTAlDdK9997Lu+++y86dO0lPH5rm6SwGY8oVOvgyIYSCd999l5UrVw67e5MkiYqKCjo7OykoKAgYeti/fz9paWl++khjLWiYKHg8Ho4cOUJ1ezEdUfUgKswMm0t+3DqO9brpc7lZk51OlGly6Ev+9XEZf/2gGGt/0YNJ319uLsnIKJjCHcyY2UlDXTIejw5F8TbrLkhL4fH/ugKTMXCISpZl7rzt91Tbe9EJAtG1XUSc6MHlcKMoCuu/uoa8DQu0xtW4uDgUReHra/+Xhgpv74wgeHnrdAaRnFWzqdl7zBvWUzhNwipAmMnorST0SMj9DbKmyDB0Bj2yLON2eoX+jCYjP932beYWBs4lDUSXy8ENH/yTU7aeQRV3MyNieeacawmXBIqKikhOTh5Wc0htMbBYLHR3dxMVFaVde3R0NMd6O3j+eBmdLhvZ0Ulcl7mUOOPoK93UcvS2tjYKCwsnlAtupHmosugWi4W+vj6ioqLo6+sjPT09pBaOiYIsy3zve9/jxRdfZNeuXcyZE7zEx1l48R9jlHbu3El+fv6QSVeHw0FJSQkABQUFQzawqouCursJVgNpsqGKH546dYqlS5cSGxtLV1cXZrMZi8WC2+3Wwj1JSUlB5STGA7IsU1LXSEPtUeanz2Du3LnUWTp4rvURjNHthOuicLkEamvjcThEkqa1c92Cjcw1ruPd6jp0gsDFi7KJ6Pd4XR4PW/6xlfKTrUhqFZ6sYDraQeJbx8hbN5/vvXC3ViRisXiZw5OTk4mJjOXFB9/k4LZDuOwuUjOTOefGZbz+q+3Yu51ExIbjcXuw9zi0+esMOnR6EbfTg96gw+ORiIrz7yVTxf7+evjXRCcE5zH8sWYvfz7yMdIQgujL49O4yZPKjBkzQlpcfRs429ra0Ov1moGKj48fc1+QoihUVVXR2dlJYWHhlGIfMJvNlJeXEx4ejt1uJywszG9jMtnPqqIo/PCHP+SZZ55h586d5ObmTur5/1PwHxG+g+FzQd3d3ZSUlJCQkMDChQuHfVB9x/E1SFPFO4LTHp/VamX58uVaA67aJzFv3jx6e3sxm800NDRQWVmphXsmuj+kq6uLnhP15M/NJisrC0EQSEsOI9zejXq7GY0KCxZ4aYvsnl7+/cEJPq74h8aR96t39nDL2nxuWVvAE7sPUn6yFVEQMBj1eFwSkqjgnJdI4bJcvnf3VVopvUoF09XVhcViobHpOIuvzea8Ly0nKSnJW4rc1oXb7vGK+QF6gx5RLyL3NxdLHglZktHpRBaem0v57mpkj4yoP73ASR6ZiJhwIuOC9xiqu83IPgZpYG9UWWcLUXMXk5OTE+DTQ8NoNA7qC/Kl//H93UMl/JRlmcrKSnp7e1m2bNmU4mfr7u6msrKSOXPmkJGRgSRJtLe3D2I4Vyv6JprsVFEUHnzwQZ566inee++9swZpDPiPN0otLS2Ul5eTnX16kQxmnKlqkJxOJ6WlpYiiyPLlywM+bL50KGqhhMVioaWlhZqaGqKjo/0YJcbr2tTO/vnz5/sldiPESIyCCbts9Ttekj001CdRfMgDCOj7+ewcbg9/2l3EnJRE3quuR0HRys91JhFFUXB4JE4mGgbthgVB8Eua9/X10dLSQm1tLR6Ph8jISAzhBhw9Dujf9IdHm3D2ufC4vN5R2pxpXP31jRSuX8yWwu/S192HMdyIqBNxO70hw1WXF4S0E4/SD08tpQgQljJ8r89IGFjBabVasVgsNDU1UV1drRXIBPO7q/1RNpuNwsLCCaPGGg26u7spLi4mOztbi2jodLqAHHUnTpygqqpKu/akpCQ/4tzxgKIo/OpXv+Kxxx7jvffeY9GiReM29qcRU84ojfZmGUjKqlYK1dfXs3TpUlJSgiOmVAsdJrrCbjRQ1Xjj4uK0JHgwiIiIICMjg4yMDFwulxbmqqurw2QyaYwSsbGxo7pWlQ2jvr7er7NfhSjqmR+9guLu93BKNgyCERkJl+yk7shcFAWMOgGh/3qMeHn3/rn3EHaXW1NbVSH0UyH1uUZu2DUYDFgsFmJjY8nNzaWzs5MF583h4Gvl2HrtGML0IHsJTGMSo/j9gQeJSzmda/zaE7fxh688SW+7FVlR0Bt05F24kNsf+a+QvqOrZi3gnVNHcPmwdvt6TeF6I9nRYzNKvhAEgejoaKKjo5k9e7ZWIKP+7mFhYVp4Nz4+3u9ekiSJsrIynE4nhYWFU0pSIZBBGoiBHHUDr92X4XysIU5FUfj973/Pr3/9a955552zpd7jgCmXU5IkaVSM3wcOHGDatGnMmjULSZIoLy+nq6srpNJVNaHb1dXF7NmzxyUmP15ob2+nrKxMI5YcD0OphjzUPJQoitpOOlieMvU7M5vN5OfnD9m34pE9bDX/hVpbCR7FjYhIjD6RF17Ipcfuxqj3P5fT7WFmfAxpcdEcaGgiTH+630hWFJweiSvycvnepnVDzs1ut1NUVERsbKyfEfd4PDxy8x8pfqcMj1tCECA8xsTV37+UtVesHNS86XJ5+Oilj+lp62XxuvnMXpIx4vcSCL+ufJ8n64oG5ZQMgsjm9EU8sOQzoxo3VEiSpMkxtLW1aY3aqoGqrKxEkiTy8/MnLRcZDFThwOEM0khQGc5VI+VyubRrD1WKQlEUnnjiCX70ox+xbds2Vq1aNao5nYU//mOMUklJCfHx8UybNo3i4mJ0Oh35+flB7/LUcJ3NZqOhoYG2tjYURdG8iMkmk/RFU1MThw8fHhQWG0+oZcehFEqoxt9ms5Gfnx9UErzTZeak4wiRulgywxfy3397mcPNbRh1ouYpKbKMS5IpzEjjS+cv56v/ehOH290vxa4gKwrRpjD+cfs1TIsNvOHo7e2luLiY1NRU5s2bF9CINx1p5tCuKqITo5h/XraWj1GVR1UDPZ6hq33m43y36E3aPQ5vQ6s+jIvT5vL9RReckSIaXzE/s9mM1WrVCIlTU1PHTBg8XhgPgzQQKsO5aqB6eno0KYqRGM4VReHJJ5/ku9/9Llu3bj1LFzSOmHJGSZZl3G73yAcOQFlZGTqdDrPZTFJSUkjhrUANsWrCXF2k1R2VSvszGTtINQR54sQJli5dOiK/2HieV43Jm81m+vr6iI+P1/JQJpMJl8tFaWkpgiCQl5c36u/j7fJafvDae0iygr6fNcEjyehEkV9dfwmrs2ex79hJfr9jHw3tXQjA/OnJfOvStcxNTQw4ZmdnJ6WlpVpvV6he5cCS6+joaG1zMpYcnG/z6Yz5OdgMAjkxSRpP3ZmEqh8GkJqaSnt7Ox0dHYSHh2vGeajG1YmGapDmzJkzoUq2vpWM7e3tfhIdvg3LiqLwzDPP8K1vfYvXX3+d888/f8Lm9GnEf4xR2r9/P52dncydOzekhSgYhgZ1R2U2m7VFeqL1kSRJorKykp6eHvLz88/ojtVut2vGuauri8jISJxOJ9HR0SxdunTMAoZ/fr+If+w9hMPt9ZDDjXruWLeMz69a4necy+NBFMVhSUXNZjMVFRXMnTvXr9dstFAXKrPZTHt7+6jLjhVFoaamBrPZTEFBwZTS0XG5XBQXFxMWFsaSJUu0xddXdVUttfdllZgM4crJMkgDoUYO1Gt3Op3s3LmTmJgYoqOj+d///V9eeuklLr744kmb06cFn3ijpCgKtbW11NXVkZycTEHByLIGvucaSgNpOKi0P6o+UmxsrFb5Mx59HC6Xi0OHDqEoCnl5eVMq0dzW1kZZWRlGoxGn00lYWJh27aMtlACwuVy8X9OAKIqsm5eJaRQL3smTJzly5AiLFi0KurAlFPjmYiwWC7IsawZquEValmWqqqq0HOdU6vVxOp0UFxcTERHB4sWLhzSyauOqeu2qXpB6/RNxTWfKIA2EynD+2GOP8dxzz1FdXU1GRgY33ngjmzZtYvny5VMm9/yfgClnlBRFwRVEVRV4d3Ll5eX09PRoKpjBlGOOJ0OD0+nUvIiOjg4iIyO1RXo0pad9fX2UlJRoNDNT6Wa3WCxaeb1vb4gqvSEIQsiFEuMBtfqvoaGBvLw84uPjJ+WcAxfpQL1gat7NbrcP2bRt87hwSh5iDaZJDY85HA6Kior8KI2ChS8/XWdnJ5GRkdq1j4cMhWqQcnJyxsXjHQ+8/vrrfPGLX+SJJ55Ar9fz+uuv89Zbb/Hwww9z2223nenp/cfgE2uUVI4wg8FAXl4eTU1NdHd3k5eXN+L4E8XQoNLxq4t0qF5EZ2cnhw4dCrmrfzKgFlssXLhwEF8g+Ic7zGYzbrd7UnJwalistbWVgoKCcSMJDRWB8lCJiYm0t7ejKAqFhYWDvoMT1i4erNjJoc5mJGSmm2K4NWc5m2bOn/D5qpWJ8fHxLFiwYEz3mtvt1vjpVF2wkchjh0NnZyclJSXjFoIdD7z11lvcfPPNPPnkk3zuc5/TXvd4PHg8ninVWPxJxyfSKKk3bUpKCgsWLEAURRobG7FYLBQWFg47tizLSJI04f1HQ3kRqampg/pC4HTj6bx586bMgwinCWwbGxuDLrbwzcFZLBasVqsW6klJSRm3B1gVZ+zt7aWgoGDKhMVcLhetra1aw67JZNLyj2oeyupyct0Hz3LK3oNBFBERcckewnR6frT0Yi5KC43ZIRTYbDaKiopISkoalmNvNAiUiwlEHjsUpqJB2rFjBzfccAN/+tOfuOGGG6bUZvE/EVPOKIE3JDYUmpqaqKqqYu7cuaSnp2s3SFNTE01NTaxYsSLg5yZDcmIo+NK/mM1mJEkiKSmJlJQUEhMTOX78OI2NjSxZsmRQ4+mZhCrD3dHRQX5+/qiT83a7Xbt2VXFUXaRH213v8XgoKyvD5XJRUFAwpfJuap4mPDycBQsW+IX5ZFkmKSmJ99wW/n6qggi9Ab2oVnXJ9LidLIhN5R/nXj8hc7NarRQVFTF9+nRycnIm9DnwVZsdijzW9/xT0SC9//77fO5zn+P3v/89N99881mDNAmYGuyiQUAN01RXV5Ofn09GRobfDTIc953qHZ0phgaV/iU3N5dzzz1Xk7Wura1l586dNDQ0kJGRMWrBtImAx+OhtLSUnp4eli9fPqZqsfDwcNLT01m2bBnr1q0jPT2d3t5e9u/fz0cffURNTQ2dnZ1Bizu6XC6KiopQFCUoRdbJhN1u58CBA0RHR7NkyRKNPWDBggWsW7dO8+hKLSeQFQmlnz0ERUEQvJWFDX2dEzK33t5eDh48yIwZMybcIMFptdnMzEyWL1+u/fZWq5WDBw/y4YcfUl1drZVgTzWD9NFHH3Httdfyy1/+clwM0s9//nMEQeDuu+/WXnM4HGzZsoXExESioqK45ppraG1t9ftcY2MjGzduJCIigpSUFL71rW8N6uXctWuXlrOcM2cOTz311KDz/+EPfyAzMxOTycTKlSvZv3//mK5nojDlaIZgsPqsx+Ph0KFD9PX1sWrVqoALZCCjpOrsqK9PBcogVcAvIiKCrq4uwCuNbTabqaurG9QPdCagSsQbDAaWL18+bqW/Lo+H7dUNtPZYWTQjhfMXLRqklTNSs7KaS4yOjmbRokVThrUdvF5IcXExKSkpARt2fcUbs/oaOHSiC0EQkGUJyePxaoIhE6vXD9KHGitUmXCVEeRMYCjy2MrKSlwuF9HR0YiiiMvlOuMbjf379/PZz36Wn/3sZ9x+++1j/i0OHDjAE088wZIl/m0O99xzD1u3buX5558nNjaWu+66i6uvvpqPPvoI8KYBNm7cyLRp09izZw/Nzc3cdNNNGAwGfvaznwFQX1/Pxo0b+dKXvsQ///lPduzYwW233cb06dPZsGEDAM899xxf//rXefzxx1m5ciW/+c1v2LBhAzU1NRNSqToWTMnwncvl0oySzWbTeiiGa9Ls6OigrKxMa2QbWNAwlUhVbTYbJSUlREZGajLsMDjMpRKnqk2bk4G+vj6Ki4u1BPh4Lfoljc18/+UddPbZkWUFnSiSnRLP7z5/GXER4ZrKrJqHcjqdWrI8OTkZg8FAb2+vlksciqXhTEFd9GfOnEl2dvaIcyvvbOGOfS/iliUi9UZQwCG5cckSq/UJ3BCV5SdBMZbfQa1kmz17NhkZo6NImih0dHRQUlKi9RZaLBZ6e3tDIo8dbxQXF3P55ZfzwAMPcPfdd4/53FarlYKCAv74xz/yk5/8hLy8PH7zm9/Q3d1NcnIyzz77LJ/97GcBNOaWvXv3smrVKt566y02bdrEqVOnNDn1xx9/nPvuuw+LxYLRaOS+++5j69atVFRUaOe8/vrr6erqYtu2bQCsXLmS5cuX8+ijjwLe6NGsWbP4yle+wre//e0xXd94Y0p6Sio6OzspLi5m+vTp5ObmDvtgDpScGE3/0WSgq6uL0tJSpk+fzty5c/3mpoa50tPTNeJUs9nMsWPHNNc9JSVlWPqT8ZjbeFf/OTwevvfSu3T02QnT6dHpBdySxJHWdh54+T1+d+PGQZLYKsN1Y2MjVVVVmpjbzJkzB31vZxoqg0QoyqeL46dxa/Zy/nbsIL0eFygKelEkPzGNhwsvx9HbpzUCq3koX7XVYNHR0UFpaSk5OTlntNcnENS5+dJnqeSxaiWfSh47WTpJZWVlXHHFFXz7298eF4MEsGXLFjZu3Mj69ev5yU9+or1eVFSE2+1m/fr12mu5ubmkp6drRmnv3r0sXrxYM0gAGzZs4M4776SyspL8/Hz27t3rN4Z6jBomVMPd3/nOd7T3RVFk/fr17N27d8zXN96YkkZJEAROnDhBdXU18+bNC4rrSq/X+0lOTEWD1NLSQlVVVVALhNFoZMaMGcyYMQOPx6OVmh88eBCDwaCFueLj48flGltbW6msrJyQxWtb2VE6+xyE6fUalZBR1CO73JSeaKHNaiMp6rQ20UCG65MnT3L48GHCw8M5ceIEnZ2d2vWPtwxBqFB7t0aTC7lt7gouSsvh1RNV2DwuViTP4vyU2YiiSFRYuNZ719PTg8Viob6+noqKCi3Em5SUNGzFYXt7O4cOHWLevHnMmDFjrJc6rlANUm5u7iA+x7CwMGbOnMnMmTP9GpZ9dZImQryyqqqKTZs2cffdd3PvvfeOy33173//m+LiYg4cODDovZaWFoxG4yBh0tTUVFpaWrRjfA2S+r763nDH9PT0YLfb6ezsRJKkgMccPnx4TNc3EZhyRklRFKqrqzl58iQFBQVBV6PpdDpkWcbj8aAoypQySL7SDosXLyY5OTmkz+v1eqZNm8a0adOQZZmOjg7MZjNlZWXAyHmYkdDY2Ehtbe2EMSGc6upFURR0A34PnSgiyQrNXb1+RskXTU1NHDlyRNstut1urZqroaFB20WrvWCTmWNqaWmhsrJyyN6tYJARFc9X558z5Pu+eShfbazW1lZqamqGrGazWCyUlZWxYMECpk+fPqq5TRRUYxnIIA2ETqfTrs/XQB8/fpzKykri4uI0AzWWEPfhw4e1vMz9998/LmvHiRMn+NrXvsb27dvP9jGFgClnlNSKnVWrVgV9k6lGSBRFSktLtTDXmU6Wgjd2e/jwYdra2li+fPmYmzvVxsSkpCTmz5+vkcYePnxYY/ZWd9EjFSj4SqoXFBQMKSU/VuROT0IUBdyyjFE8bTTdsky4QU9W0mAGhoEsDWp/lMFg0JLl6i7abDb7FUqMtmkzFKiURkuXLiUpKWnCzjMQvtpYarO2ukirHrRer6ehoWFQ2GcqIBSDNBADDbTdbteu/+jRo0RERGhhzri4uKANS21tLZs2beKmm27iRz/60bhtZouKijSuQxWSJPH+++/z6KOP8vbbb+Nyuejq6vJ79lpbW7VNzrRp0wZVyanVeb7HDKzYa21tJSYmhvDwcHQ6HTqdLuAxo91MTSSmnFECNAqbYKCG6wRBYNWqVZjNZo19QA1zpKSknBHlTLfbrfXSrFixYtx3SwNVVlUJdDXMo5LGBjLQauOpWvI9kYUU58/LZFZ8LMfbu/o9JhG3LIECF+RmEWXyn5uiKBw5coSWlhaWLVs2pCEfuItWmzaPHDmC0+n0Y5QYzw2K6vXm5+dPCqXRUDAYDEyfPp3p06drHvTx48fp6OhAFEVaW1u1fNRU0EUai0EKhPDwcGbNmsWsWbPweDyDKjmDIY9taGhg06ZNfO5zn+Ohhx4aV0/7M5/5DOXl5X6v3XLLLeTm5nLfffcxa9YsDAYDO3bs4JprrgGgpqaGxsZGVq9eDcDq1av56U9/itls1qIY27dvJyYmhgULFmjHvPnmm37n2b59uzaG0WiksLCQHTt2sHnzZsD7/O/YsYO77rpr3K53vDAlq+88Hk9QRsk3fyQIgt8N5XA4MJvNtLa20t3dTUxMDKmpqeNGmjoS7HY7JSUlhIeHs3jx4klhVPaFSnsTiDRWr9dz6NAhTchtMjzKlu5e7n9pB4db2pEUmTC9nvPmZfL9y8/zY/2WZZnKykq6u7spKCggIiJwWG84KIpCX1+fRpprtVqJi4vTSu1H+/v7Sk8UFBRMqb4y8IY6a2pqtP4otZJRlR6ZSPLUkaAapPnz5094OHEoXkLVSKnXf+LECTZs2MCll17KH/7wh0kJ/Z5//vla9R3AnXfeyZtvvslTTz1FTEwMX/nKVwDYs2cP4PWs8vLySEtL4+GHH6alpYUvfOEL3HbbbX4l4YsWLWLLli188Ytf5L333uOrX/0qW7du9SsJv/nmm3niiSdYsWIFv/nNb/i///s/Dh8+POW86U+sUQqloEGt5jGbzXR0dGiMAhMlYtbd3a2FEefNm3fGe2kcDod2/Z2dnQiCgMlkYtGiReNCnhkKTnR009Ldy9zUJGIj/D1HX5aG/Pz8cfNu1Q2KSh6q5mFCKZRQFXZVKqupIn6n4sSJExw9ejSg96a2GviSp6oGeqIqOX0xmQYpEHxZJerq6vjxj3/Mueeey4cffsi6dev485//PGnkwQONksPh4Bvf+Ab/+te/cDqdbNiwgT/+8Y9+YbXjx49z5513smvXLiIjI7n55pv5+c9/7rfR3bVrF/fccw9VVVXMnDmT+++/n//+7//2O/ejjz7KI488QktLC3l5efzud79j5cqVk3HZIWFKGqWR1GfHUmGnJspVfZzw8HDNQI1HJZdaxqsqZE6VYgs4rcYaGRmJXq/X9IHGQ3pirHC5XJSUlKDX68dFo2ko+JLmtre3YzAYBvHSDcRUlp4A/3DiSHlB3zxUW1sber3ej9l9vDdQZ9ogDURXVxdPPfUU//rXvzhy5Ajx8fFs2rSJyy+/nMsuu2xKhDk/7fhEGaWBDA1jbYhV49Ctra20tbVhNBpHvUArikJjYyPHjh2bsCq2saCjo4NDhw6RkZFBVlYWgiD4kcZaLBZEUdSuf6wNm6FAZWmIiooaVtNnvDFQH0lRFD9OQrX3bSTpiTMJlSx3NOFElVVB/f09Ho8W4hqPPJSqvTVVDBJ4qxIvu+wyFi9ezJNPPsm+fft47bXX2LVrF/v27Ztyv++nEZ8YozSeGkhDnbOjo4PW1lYsFgs6nU5boEdq2JNlWVMVzcvLIzY2dtzmNR5QGch9mxQHwneBMpvNmoCd7wI9EVCpeZKTk8edsToUqHkI9fpVdmubzYZOpwsoPXEmoea3mpqaxkWyQ1EUent7NQM91jycapAWLFgwZSq82tvb2bhxI3PmzOG5556bUr/nWZzGJ8IoDVfQMBEYuEAriuK3QPueXxUatNvt5OfnT6nQjm9/1JIlS4IuXfZNFJvNZhwOh1bJplL+jAdU+huVj22qhDrV6y8rK8Pj8SDL8rirC491fkeOHKG1tXXC8luB8lDBivhNRYPU1dXFpk2bmDFjBi+++OKUaBc5i8CYOmyWPvC94QfmjyYjtKOyes+fP59169ZpOY7Dhw+ze/duysvLaW1tpa+vjwMHDiDLMsuXLz/ji5UvVFb1xsZGli1bFlIvjSAIxMXFkZOTw5o1a1i5ciUxMTE0Njaye/duioqKOHHiBA6HY9Tzs1gsFBcXM2fOnKC44iYTTqeTqqoqYmNjOf/881m7di3Tpk2jra2Njz76iL1793Ls2DF6enqCZjYfL6gFF2azmWXLlk1YwYVKeVVYWMh5551HVlaWxkP5wQcfaOzeauRChVqSPZUMUk9PD1dddRUpKSk8//zzIRukxx57jCVLlhATE0NMTAyrV6/mrbfe0t4/y/Q9vpiSnpIsy7jd7ilHGaR2lJvNZlpaWnA4HJhMJrKzs8fVgxgr1DyIzWYbd+/NbrdrHqRaaq96UMEukKdOndJUbKdaOaqqyBoXFxeQkHZgoYAv5dNE87IpikJVVRWdnZ1nrODCl93bYrH4KQyDl6pn0aJFU+Z3tVqtXHXVVZhMJt54441RfWevv/46Op2OnJwcFEXh6aef5pFHHqGkpISFCxdy5513snXrVp566imN6VsURT+m77y8PKZNm8YjjzyiMX3ffvvtg8q6v/SlL3HbbbexY8cO7r777kFl3TfddJMf0/fzzz8/JZm+x4IpaZQkScLlck1ZUlWVwmXGjBkYDAbMZjN9fX1+Ia4zFR5wuVyUlpYiCMKwrOrjdS41Sd7e3h4UaawaTgxWxXYyMZL0xEAMLJRQ83BqocB45uHU/i1VZXcq0Nb4Kgw3Nzdjt9uJjIxkxowZJCcnj6rHbDxhs9m0ptStW7eOSRNsIBISEnjkkUf47Gc/e5bpe5wxJRkd/vSnP9HV1cWVV1455cqq1X4Q391gdnY2NpsNs9nMyZMnqa6uPiO6SKokRlRUFIsWLZrw3guj0agRZwYijfUtFAE4evQozc3NFBYWTrnG0+7ubkpKSpg1a1bQ+a2BjBJqHq62ttaPUWOsmxRZljXPdyqJGqrEuQ6Hg4aGBnJzYk8DHQAAN2lJREFUcwE02p9Q8lDjDbvdzvXXX4/b7Wbbtm3jZpAkSeL555+nr6+P1atXn2X6ngBMSaOUkJDA888/zwMPPMCSJUvYvHkzV1555RnNPajJ5ebm5oA8cREREWRmZpKZmenHJlFTU6OFuFJTUycs5KI27Kampp4RrSFf0thAnHQqi3thYeG47ljHA2q5/Fj0htQ8XFxcHHPmzNEYNdRNilooEaoHIUkSZWVlOJ1OCgsLp4xBUqFGDXw3abNmzcLtdmu0P8XFxYii6NcPNZEbJqfTyX/913/R09PDO++8My4boPLyclavXo3D4SAqKoqXX36ZBQsWUFpaepbpe5wxJY3Sddddx7XXXovFYuGVV17hxRdf5Mc//jG5ubmagZrM8mE1R9PX18eKFStGXFRMJpOfLpKag6mtrdXYJFQ2gfGAWu00VRp2fT0It9tNSUkJNpsNURTZv39/SKSxEw1VEmE85R0EQSAqKoqoqCiysrI0Ro2BHsRI2liSJFFaWqoZ86mSs1RhNpspLy9n8eLFg3IaBoPBj9lezUOpxMG+8hPjaWhdLhc33XQTra2tvPvuu+NGMjxv3jxKS0vp7u7mhRde4Oabb2b37t3jMvZZ+GNKGiXwPtgpKSnccccd3H777XR2dvLqq6/y4osv8vDDDzN79myuuOIKrrrqKhYuXDhhCWan00lpaSk6nY4VK1aEvDD4hrh82STq6+s1NomxCPep5LNjkU+YKKj5LVEUOeecc9Dr9RppbF1dHZWVleMW4hoN1P6tiU7Mm0wmjThU9SAGamMNVJj1eDyUlJQgCAIFBQVn3HgPxHAGaSDUatbExETmzZs3SMBxtF7kQLjdbm699VYaGhrYuXPnuOYsjUYjc+bMAaCwsJADBw7w29/+luuuu+4s0/c4Y2rd6UNAEAQSEhK45ZZbuOWWW+ju7ub111/npZde4oILLiAtLY3NmzezefNm8vLyxs1AWa1WSkpKxk0a3Fd2wZdN4uDBgyGzSSiKonXz5+fnT7miAYfDoVEa+ea31LJaNcSlsrpXV1ePC2lqsFBzg5MtPTHQg1DDnKrCrBreOnHiBAaDgaVLl04aL1uwCMUgDcRAAceBXmRERIRmpENhVfF4PHzpS1+iurqanTt3TvhvKsuyFlI9y/Q9vpiS1XehoLe3lzfffJOXXnqJN998k8TERK644go2b97M8uXLR/1At7e3U1ZWNimNnb45GLPZPCKbhCzLVFdX09HRQX5+/pTL0ahVbKrmUzDf3UDSWN8wZ2Rk5Lh+//X19ZpO05mUnvCFWijR0tJCU1OTprCqGumpQn8zFoM0EtSNmtlspq2tLeg8lCRJbNmyhX379rFr165xkcXwxXe+8x0uvfRS0tPT6e3t5dlnn+Whhx7i7bff5qKLLjrL9D3O+MQbJV/YbDbefvttXnzxRd544w2ioqI0A7V69eqgDdTJkyepqak5I6qdI7FJyLKsJb7z8/OnRGmwL7q6uigtLQ2pim0gBpLmmkwmzUCNpYpLURRqa2s1ap6pVgHodDopLi4mIiKC2bNna/1QqvSIeh+cqVLr1tZWKioqJsQgDYQsy5o+ltlsxuVy+fHyqaFeWZb52te+xq5du9i5cyfp6enjPpdbb72VHTt20NzcTGxsLEuWLOG+++7joosuAs4yfY83/qOMki8cDgfvvvsuL774Iq+99hoGg4HLL7+czZs3s3bt2oC5Id9Fa+nSpWd8F60K16kGyu12a7ITU9EgqQUXOTk5zJo1a1zGlCRJW5x9OQkH5mBGgsqE0NbWRkFBwZSTnnA4HBQVFRETEzMoRzpQekXtB5vMUmvVIC1ZsoTk5OQJP58v1H4o9R7o7e3lscceY+HChVgsFnbv3s3OnTvJysqa1HmdxcTgP9Yo+cLtdrNz505eeOEFXn31VSRJYtOmTWzevJnzzz8fo9GI1WrltddeIz09nfz8/Cm3aFmtVoqKijAYDCiKgsPh8KtiO9OVWSpLw0TSy4yWNFZtPO3p6aGgoGBK0UHBaRaJhISEEcOdvv1g7e3tozbSoaC1tZXKykoWL1486QYpEOx2O48++igvvPAClZWVZGVl8bnPfY4rrriClStXTrkc3FmEhk+FUfKFx+Phgw8+4IUXXuCVV17BZrOxfv16ysrKiI6OZvv27VMmfq9CDYnNmDFDqwDq6+ujtbVVY5NISEggNTX1jFSxNTQ0UFdXx9KlS0lMTJyUcwZi9Q5kpNU+H4fDMSWlJ2w2G0VFRSQnJ4fcXxbISPtKb4xHxd5UM0jg/e1/8IMf8I9//IM33niDhoYGXn31VbZu3crf//53Nm7ceKaneBZjwKfOKPlCkiSeffZZ7rrrLqKjozUDtXnzZi666KIp4S2plVnDhcRUNglV+lytYktJSZnQEJ+iKBw9epRTp06d0RyNL92NKrsQHx9PUlKSVkKbn59/xr3JgVC93+nTp5OTkzOmMJwvL6MqAa72Ao22UKKlpYXKysozErIbCoqi8OCDD/KnP/2JnTt3snDhQu09leB0qpXPn0Vo+FQbpV27dnHVVVfx5S9/mR/+8IccPHiQF198kZdffpnm5mYuvvhirrzySi699NIx69WMBo2NjdTW1oYkGqiySZjNZrq6ujQ2ifFOkPtWAE61HI3dbufUqVMcP34cSZKIiYkhNTX1jBYJDERvby9FRUXMnDlzQphKVEYJdaMSKnHuVDVIv/zlL/ntb3/Le++9x9KlS8/0lM5iAjAlpSsmC6Io8stf/pKf/vSn6PV6Vq1axSOPPMKRI0f44IMPmD9/Pj//+c/JzMzkuuuu45///CddXV0TLlegUhrV1dVRUFAQUqWTyiaxbNky1q1bR1paGh0dHezZs4d9+/ZRV1eH1Wod0/wkSeLQoUP09PSwYsWKKWWQwNsL09raSmJiImvXrmXGjBnad6DKTvT29k667ISK7u5uioqKyMjIYM6cORNSqBAZGUlmZiYrVqzg3HPPJS0tjc7OTvbu3cuePXs4evQo3d3dAb+DlpYWqqqqWLp06ZQySL/73e/4zW9+w9tvvz0qg/Tggw+yfPlyoqOjSUlJYfPmzdTU1Pgdc1aG4szjU+0pBQNFUaioqOCFF17g5ZdfpqamhgsuuIArr7ySTZs2kZCQMK6LipqU7+7uHteCC1VyobW1lfb29lGzSai0QZPBQj4aqJo/8fHxzJ8/3y/xP1B2wmg0+slOTEYVmypsOBaevbFgYC+QSgmVkpJCfHw8ZrOZqqqqkEQhJxqKovD444/z4x//mG3btrFq1apRjXPJJZdw/fXXs3z5cjweD9/97nepqKigqqpKe87OylCceZw1SiFAFc578cUXeemllygrK+Pcc89l8+bNXH755aSkpIxpYXO73Rw6dEi78ScqKa+WWav5B5XROzU1ddguepWlISIigsWLF0+5Kic1RzNt2jTmzp077G/h27BssVgQBEFbnBMSEiakiq2jo4PS0tJxLZkfC3wLJVRtJEVRyMjIICsra0rkZhRF4W9/+xvf+973ePPNN1m7du24jW2xWEhJSWH37t2sW7eO7u7uszIUUwCf6vBdqBAEgdzcXL73ve9x8OBBDh8+zCWXXMKzzz7L3LlzufTSS3nsscdoamoKOTTkcDg4ePAgOp2OZcuWTWiVmE6nIzU1lcWLF3PeeeeRm5uLx+OhtLSU999/n+rqatrb2/1URVWV3bi4OJYsWTLlDFJ3dzcHDx5k5syZIxokOE0au3DhQtatW8fixYsRRZHq6mo/deGBYZnRoq2tjdLSUubNmzclDBL4KyyrVZ0pKSlYLBZ27dpFcXExJ0+exOl0npH5KYrCM888w3e/+11ee+21cTVI4L1nAI2iayQZCmBIGYqenh4qKyu1YwLJUKhjqDIUvsf8p8pQjAZnfiv0CYUgCGRnZ3PvvffyrW99i8bGRl566SVeeukl7rvvPpYvX86VV14ZlCZUb28vJSUlJCUlkZubOymS7yp8Gb19d84VFRUam0RUVBR1dXXMmjVrykmXw2kPZM6cOaPq6BdFkYSEBBISEpg3bx49PT1YLBaOHTs2LrpIKjXPmWAICQbNzc0cPnyYvLw8raRfLZRQ34uJidE8ycnIISqKwnPPPcc3v/lNXn75Zc4///xxHV+WZe6++27OOeccFi1aBHhzaWdlKM48zhqlcYAgCGRkZHDPPfdw9913c+rUKV5++WVefPFF7r//fpYuXaoZqIGLusqxp4ZMzuSC78vmnJubS3d3Nw0NDRw5cgRRFDUp9PFWVR0L1AV//vz548J5JggCsbGxxMbG+pHGqrpIoZbbq0wIU0ki3BfNzc1UV1cP6jGLjIzUiiVURgmLxUJdXR3h4eGagZooRomXXnqJr371q/zf//2fRuczntiyZQsVFRV8+OGH4z72WYwNZ43SOEMQBGbMmMFdd93Fli1bMJvNfppQ8+fP58orr2Tz5s3s3r2bf//73zzzzDPMnDnzTE/dD4IgYLfbaW9vZ9GiRURGRmqaUBUVFSQmJpKamnpG2SQmQ3oiMjKSrKwsTRdJLbc/cuSIVsWlepOB5lddXT2lyqp9obJwjNT0HBYW5qcwPFC8T/0OxisX99prr/GlL32JZ599lssuu2zM4w3EXXfdxRtvvMH777/v99xNmzbtrAzFFMBZozSBEASB1NRU/ud//oc77riDjo4OTRPq5z//OTqdjhtuuIGuri7S0tImNWw3Eo4fP86xY8f8QjoxMTFkZ2dr3sPx48f9NJFSUlImjU1ClZ7wnd9EY6B4o1osUldXN4g0tqmpiSNHjkwqy0UoCNYgDYReryc1NZXU1FQ/8b6qqio8Ho8fo8RoNitvvvkmt956K08//TRXXnllyJ8fDoqi8JWvfIWXX36ZXbt2DeLKOytDMTVwtvpukiFJEl/72td44YUX2LJlC8XFxbz99tvMmDFD04RaunTpGTNQvqS0+fn5xMbGDnv8ZLNJKIpCQ0MDDQ0N5Ofnj5uy6FgwsMwavL+zWmU3lTYbcNog5eXljZsOl6IomoCjxWLRqK/UfGUw98K7777L5z//ef785z9zww03jMu8fPHlL3+ZZ599lldffZV58+Zpr8fGxmp8iGdlKM48zhqlScYf//hHfve737Ft2zYyMzOB05pQL774Im+99RZJSUl+mlCTtaiNlaVhotkkVFqj5uZmCgoKzgjLxkior6+nrq6OxMRErTlVXZiHI42dLEyEQQoEdbNisVjo7u4esVBi9+7dXHvttTz66KPcdNNNE5KnGmrMJ598UpOIOCtDceZx1ihNMtxut8bNFgg2m41t27bx4osvsnXrVqKjo7niiiu48sorQ9KEChWSJFFeXo7dbh8XWQyXy6UZqI6ODiIjIzWqn9GI9imKopWqTzVaI/DOr76+nsbGRo0HcCBprMvl0oT7zkQurqmpiZqamgk3SAPhcrn8pDfUUGdrayurV69m3759XHPNNfzyl7/ktttum3LVnWcxuThrlKYwHA4H27dv1zShwsLC2LRpE1dddRXnnHPOuC1qbreb0tJSgAlhaVCZFNTwlroopaamBsUmIcsyFRUV9Pb2UlhYOOV0pNSQ56lTpygsLAxY9OBLGuvL7D5ZyrJnyiANhBrqrK+vZ/Pmzej1ekRR5Nprr+VXv/rVlPttz2LycdYofULgcrn8NKEURWHjxo1cddVVnHfeeaMuMHA4HJSUlBAeHj4pLA2hskmo0hNOp5OCgoJJl+UYCSpPYWtrK4WFhUF7cANzcROpLDtVDNJA7Nu3j6985SskJibS0NBAZ2cnl112GQ8++CCzZ88+09M7izOEs0bpEwiPx8P777+vaULZ7XY2btzI5s2bufDCC4Pebfb19VFcXKyJy012Ql6WZa1AQKX6UXNQ8fHxSJI0oR7cWOGrZltYWDhqYzJQWTYyMlL7HqKiosYUzjp58iRHjhwhPz//jCsp++LQoUNs3LiR++67j3vvvReA0tJSXnnlFe66664pWUJ/FpODs0bpEw5Jkvjoo480yY3u7m4uueQSTRNqqIWyu7ubkpISTTjwTMfxAwnWAYSHh2ululMJiqJQVVVFZ2cnhYWF46ZmOzDUGRYWphmo4XgJA2GqGqTKykouvfRSvva1r/H973//jN97ZzG1cNYo/QdBlmX279+vMZq3trZqmlCXXHKJVq32wQcf4HQ6ycnJOSNM1SPBbrdz8OBBRFFElmXcbjdJSUmkpqaOm6LqWKDmuKxWKwUFBROWB5EkSWtUDZU0dqoapMOHD3PppZdy++238+Mf//isQTqLQZhaDRRnMSaIosiqVav4xS9+wdGjR9m9ezfz5s3jZz/7maYJ9c1vfpMrr7wSSZKmpEGy2WwcPHiQhIQE1qxZw9q1a1m2bBkRERHU1taye/duSktLOXXqFG63e9LnJ8sy5eXl9PX1sWzZsglNzOt0OlJSUgaRxlZVVfmRxkqS5Pe5qWqQjh49yqZNm7j55pv50Y9+NGqD9P7773P55ZeTlpaGIAi88sorfu8risIDDzzA9OnTCQ8PZ/369Rw9etTvmI6ODm688UZiYmKIi4vj1ltvHaQzpqoAmEwmZs2axcMPPzxoLs8//zy5ubmYTCYWL148qGn2LELHWU/pUwBVE+ree+9l+/btZGdnk5WVxebNm9m4ceO4a0KNFr29vRQXFw8rPeFbwWa1WieVTUItunC5XBQUFJyxkKKv9LnZbMbhcGil5i6XSxOHnAqNxSrq6+u55JJLuPrqq/n1r389pvzlW2+9xUcffURhYSFXX301L7/8ssaMAPDQQw/x4IMP8vTTT5OVlcX9999PeXk5VVVV2ibi0ksvpbm5mSeeeAK3280tt9zC8uXLefbZZwHo6elh7ty5rF+/nu985zuUl5fzxS9+kd/85jfccccdgLehdt26dTz44INs2rSJZ599loceeoji4mKN5PUsQsdZo/QpgKIo3H///Tz++OO88cYbxMXF8cILL/DSSy9RXl7OunXrNE2o5OTkM2KgVPG7UIhpJ5NNQi26kCSJ/Pz8KZXjslqtWCwWTp48icPhIDo6mrS0tAlj1QgVjY2NXHLJJVx66aX84Q9/GNeCGkEQ/IySoiikpaXxjW98g29+85uAN3+amprKU089xfXXX091dTULFizgwIEDLFu2DIBt27Zx2WWXcfLkSdLS0njsscf43ve+pzGHA3z729/mlVde0Zi8r7vuOvr6+njjjTe0+axatYq8vDwef/zxcbvGTxvOhu8+BXA4HBw+fJgPP/yQVatWkZuby/e//32Kioqorq7m4osv5h//+Ac5OTlceumlPP7445w6dWrS5MLb29spLi4mOzub2bNnB20UIyIiNMnvtWvXkpqaitls5sMPP2T//v00NDRgs9nGPD+Px0NxcTGKopxRD2koREVFodfr8Xg8LFmyhLS0NO17+Pjjj6mvr6evr++MzO3UqVNs3LiR9evXj7tBCoT6+npaWlr8tIpiY2NZuXKlnyZSXFycZpAA1q9fjyiKfPzxx9ox69at8/O+N2zYQE1NDZ2dndoxw+kmncXocJaQ9VOA8PBwXnjhhUGvC4LAnDlztLLcxsZGTVX33nvvZcWKFf/f3pmHNXVtbfwNYEBAjBSccQRBHEBBELQOlSsqCg7XVm8fRaVYKOhVqIpWodpbtcIjVhzAWsX2tlIRh1oUi0ChDkWZREZFRBAkqAgol0HI+v7wyykhiAOBBNi/58kfOWflnH0i5j17n7XexbXc0NPTa5UZlKxaT4jX/fX09DgHAaFQiJycHC7FulevXm/tJiFu/66iogITExO52wQ1RUFBAXJyciS8AMWmseJUc3HLCXGxbmu1nGhIcXEx7OzsMGHCBAQFBbVJyYG4p1FTvYoa9jtq3HJcRUUF2traEjGNDVsb9k3q0aPHK/smiY/BeDeYKDEA/N0TysPDA2vXrkVRURHXtHDz5s0wNTXlBOptZjPNUVRUhMzMTIwaNUrqR6Il8Pl89OvXD/369ZNIsc7Ly5Ny827uOmpra5GUlARVVVW5muQ2R35+Pu7evdukOW3D76GhaWxSUhJUVFS4TD6BQCDza3v06BHmzJmDsWPH4siRIwop5gzFRPH+lzUiLy8PTk5OGDx4MLp27YqhQ4fCx8cHtbW1EnGyyJSRVdZOe0fcE2rVqlWIjo5GQUEBnJycEBcXBzMzM0yYMAHffPMNsrOz33mJLz8/nzMGlaUgNaZLly7o06cPTExMMGXKFOjr66O6uhqJiYm4fPkytxzT+DpqamqQkJAAdXV1hRekN0lqELecGDVqFCZPnozhw4dzmYRxcXFIT0/Ho0ePpDL53oUnT55gzpw5MDIywg8//NCmKfxi49TmehX17t0bJSUlEvvr6upQWlr62p5IDc/xqhjWE6llKN7/tEZkZWVBJBIhKCgI6enp8Pf3R2BgIDZt2sTFVFRUYPr06Rg4cCASExPh6+uLL7/8EocOHeJirl69isWLF8PJyQnJyclcm4i0tDQuZteuXdi7dy8CAwMRHx8PDQ0N2Nraorq6mov5+OOPkZ6ejsjISK5RmDgbpyPC4/HQu3dvuLi44OLFi3j48CFWr16NhIQEjB8/HhYWFvjPf/6D9PR0ruC1OYgIubm53I9pW/YaUlZW5n6Yp0yZAiMjI9TV1eHmzZuIi4vjDF/FaelaWloYOXKkwgvS69qLNEZJSQk6OjowNjbGpEmTYGJiAhUVFWRlZSE2Nhapqal4+PAh6urq3npcZWVlcHBwwKBBg3D8+PE2f/42ePBg9O7dG1FRUdy2iooKxMfHS/REKisrQ2JiIhcTHR0NkUjEuXRbWVkhLi5OouwgMjIShoaGXJq9lZWVxHnEMeLzMN6Ndpl95+vri4MHDyI3NxcAZJIpI6usnc6C2AH73LlzCAsLw++//47+/fvDwcEB8+bNw+jRo6V+zBW19YRIJEJZWRlKSkogFApRW1sLdXV1GBgYKES7ica0RJCao6WmsRUVFbC3t4e2tjbOnDnTapl/z58/R05ODgBgzJgx2L17N6ZOnQptbW0MGDAA33zzDXbu3CmREp6amiqVEi4UChEYGMilhJubm3Mp4eXl5TA0NMT06dOxYcMGpKWlYcWKFfD395dICZ88eTJ27twJOzs7hISEYPv27SwlvIUo3i3gG1BeXi5hLCmLTBlZZe10Fng8HgQCAZYsWYIzZ85AKBRi27ZtyMvLg62tLUaNGoVNmzbh+vXrEIlEqKurg7e3NwoKCjBu3DiFESTg5cxBW1ubS+YQt5bIzs7mZg5CofCdZg6yRtwRWNaCBLz8N+3WrRuGDh0KKysrWFtbQ1tbG0VFRfjzzz9x48YN3L9/H1VVVVKfff78ORYsWIBu3brh9OnTrZqKnpCQgDFjxmDMmDEAAA8PD4wZMwbe3t4AgPXr12PVqlVYuXIlxo0bh+fPnyMiIkJiTD/99BOMjIwwbdo0zJo1CxMnTpRYWenevTt+//133Lt3D2ZmZvD09IS3t7fEqoi1tTV+/vlnHDp0CCYmJpwXJROkltHuEh1ycnIQEBAAPz8/bpssMmVklbXTWenWrRsWLVqERYsWobKyEhERETh16hQcHBygpaUFHR0dPH78GMuXL5e5C7YseP78ORITE9GnTx8YGBiAx+Nh2LBhXDfVu3fvIi0tjStS1dXVbfOlqfv373OFsbIWpKYQp9wPGjQINTU1nHHunTt3oKmpifLycvTo0QPGxsZYuHAhVFRUcPbsWZn5AL6KKVOmNPssk8fjYdu2bdi2bdsrY7S1tblZ0asYPXo0/vzzz2ZjFi5ciIULFzY/YMZbIbeZkpeXF3g8XrMv8dKbmMLCQsyYMQMLFy6Es7OznEbOeB0aGhpYsGABfvrpJ+Tm5qJnz54oLCwEEeEf//gH1qxZg9jYWIWYeQAvnSQSEhLQv39/TpCAlz9uWlpa0NfXh7W1NSwtLaGlpYX8/HzExsYiKSkJDx48kEq6aQ3aWpAao6qqCj09PYwdOxaTJ0/GwIEDERsbixkzZmDEiBHIycnBli1bFPKGg9G+kNtMydPTU6o9cGMa9lQpKirC1KlTYW1tLTHNBmSTKdMwa6dPnz4SMaamplzM67J2GH/z7NkzzJ07F5qamsjJyYGamhqio6MRFhbGtbwW94RqvPzaVpSXlyMpKQmDBg2Smm03RlNTE5qamhgyZAjnJiFuL969e3eus66sl67y8vK4ZSQtLS2ZHvtdEGc0+vj4IDs7G0KhEEZGRvjwww+hpqYGZ2dnbN26Vd7DZLRT5CZKurq6b9wzpbCwEFOnToWZmRmOHj0q9QDdysoKX3zxBV68eMEtqbwqU2bNmjXc5xpmyjTM2hGLkDhrx9XVlTuGOGvHzMwMgHTWDuNv1NTUMHPmTKxdu5Zb0pkxYwZmzJiBgwcPIi4uDqGhofj0009RU1PD9YSaOnVqm9jjiK2NhgwZ8tbmtA2Xtqqrq7ki1du3b6Nbt25csW5LZw6KJkhiamtrsXTpUgiFQly6dAna2tp48eIF4uLi8OTJE3kPj9GOUfjsu8LCQkyZMgUDBw7EsWPHJDKhxLMTWWXKyCJrh/H2iHtCiR8Ul5eXY+bMmZg7dy5sbGxaZUmotLQUKSkpMDAwgJ6ensyO29BF4cmTJy1yk8jLy0NeXh7Gjh2rUIIk/rvPyclBdHQ0dHR05D0kRgdC4UUpODgYy5cvb3Jfw6GnpqbCzc0NN27cgI6ODlatWoUNGzZIxIeGhmLz5s3Iy8uDgYEBdu3ahVmzZkkcz8fHB4cOHcLjx4+hqamJmpoaqKqqoqysDMDLHzN3d3ecO3cOACAQCPDkyRNoamrC0dERO3bskCgW/OOPP+Dh4YH09HTo6elh8+bNUsuW+/fvh6+vL4qLi2FiYoKAgABYWFhw+6urq+Hp6YmQkBDU1NTA1tYWBw4ckErK6AiIRCLEx8dzAiUUCmFra8v1hNLU1GzxOR4/fozU1FQYGRm1ahp/44Z9b+Mmce/ePdy/f1/hBKmurg4rV65EamoqYmJiOuTfIEO+KLwoyQsfHx8IBAI8ePAA33//PSdKYurr62FqaorevXvD19cXDx8+xNKlS+Hs7Izt27cDePnDMnLkSLi4uOCTTz7hlg/Dw8Nha2sLAPjll1+wdOlSBAYGwtLSEnv27EFoaCiys7O5TD9XV1eEh4cjODgY3bt3h7u7O5SUlHDlypU2/U7aGpFIhKSkJM6Pr6CgADY2NnBwcMCsWbPeyb9N7LU3YsSINn0OWF9fLyFQKioqnEAJBAKJ6xALkpmZmUKlztfX1+Ozzz5DfHw8YmNjJZ69ypPX3dQx2hdMlF5DcHAw1qxZIyVKFy5cwOzZs1FUVMTdLQYGBmLDhg149OgR+Hw+NmzYgPDwcAnXiEWLFqGsrAwREREAAEtLS4wbNw779u0D8PKHWE9PD6tWrYKXlxfKy8uhq6uLn3/+Gf/85z8BvHS5GD58OK5du4bx48e3wbcgf8Q9oUJDQ3Hq1CncuXMHH3zwARwcHDB79mz06NHjtQIlFAqRlpYmc6+9t0UkEnE+dA07yvbq1Qvl5eXIz89XOEESiURYvXo14uLiEBMTI9Mlz5bwJjd1jPZFuyyeVQSuXbuGUaNGSSxf2NraoqKiAunp6VxMcwW7tbW1SExMlIhRUlKCjY0NF5OYmIgXL15IxBgZGWHAgAGdyiKfx+Nh1KhR2LZtG27duoWUlBRYW1sjKCgIQ4YMgYODA44cOYKSkpIma1iKioqQnp6O0aNHy/3HSklJCbq6ulIdZW/evIm7d++ie/fuqKqqkokPnSwQiUT4/PPPER0djUuXLimMIAHA7t274ezsjOXLl8PY2BiBgYFQV1fHkSNH5D00xjvCROkdeVUxrnhfczEVFRWoqqrC48ePUV9f/9qCXT6fL2W42Zkt8nk8HoYPH44tW7YgKSkJGRkZsLGxwQ8//AADAwPMmjULQUFBePjwIYgI/v7+CAsLg4mJyRtnfLYVYjcJPp8PHo+HESNGQENDA7dv3+bcJIqLi+VW0yUSibBp0yaEh4fj0qVLGDRokFzG0RRvclPHaH90KlF6l4JdhmIj7gnl5eWF+Ph43LlzB/b29ggLC4OhoSEmTpyI7du3Q0dHR8KaSpHIzc1Ffn4+zM3N0bdvXwwbNgwTJkyAubk51NXVkZubi9jYWKSkpKCoqEjCJLQ1EYlE+PLLLxEaGopLly5BX1+/Tc77przJTR2j/dHubIZawtsW7DZH7969cf36dYltb1qwq6Wlha5du0JZWRnKysqvLeqtra1FWVmZxGyJWeRLw+PxMGjQIHh6esLDwwObN2+Gv78/zMzM4OLigqCgIK4n1Ju2XG9t7t69i4KCAqlnSGI3CbGjhNgoNT8/HxkZGW9llPouEBF27NiBH3/8EdHR0TA0NJT5ORiMpuhUovQ2Bbuvw8rKCl9//TVKSkq4ZxSRkZHQ0tKCsbExF9O4Z1PDgl0+nw8zMzNERUVh7ty5AF7enUZFRcHd3R0AYGZmhi5duiAqKgoLFiwAAGRnZyM/P59Z5DfDjh07EBQUhCtXrsDU1BRCoRBnzpxBWFgYtm7dihEjRnACNWzYMLkIlFiQzM3NX5vq3tBNoqqqCkKhsNXcJIgIfn5+CAoKQlRUFEaMGNHiY7YGOjo6r72pY7Q/WPbdK8jPz0dpaSl+/fVX+Pr6csaM+vr60NTU5FLC+/bti127dqG4uBhLlizBJ598IpUS7ubmhhUrViA6OhqrV6+WSgl3dHREUFAQLCwssGfPHpw4cQJZWVncsoSrqyvOnz+P4OBgaGlpYdWqVQBeFgQzmubChQvQ09OTcmwmIpSWlnICFRUVBQMDA67lxvDhw9tEoN5GkJqjoZvE06dPOTeJnj17QkND462PR0TYu3cvfH19ERkZyTmXKCqWlpawsLBAQEAAgJc3dQMGDIC7uzu8vLzkPDrGO0GMJnF0dCQAUq+YmBguJi8vj2bOnEldu3YlHR0d8vT0pBcvXkgcJyYmhkxNTYnP59OQIUPo6NGjUucKCAigAQMGEJ/PJwsLC/rrr78k9ldVVdFnn31GPXr0IHV1dZo3bx49fPiwNS67UyESiejp06d07Ngxsre3JzU1NRo2bBitW7eOrly5Qs+ePaPKykqZv1JTU+n8+fMkFApletynT5/S7du36fLly3T27Fm6dOkSpaamUnFxMT1//vy1n3/+/Dn5+fmRQCCQ+htUVEJCQkhVVZWCg4MpIyODVq5cSQKBgIqLi+U9NMY7wmZKHQBWPCgbKioqEB4ejrCwMERERKBnz55wcHDA3LlzYWZm1uIOtPT/XXcfPHgAMzMzmbhTvIrGbhKqqqrcEl9TRcdEhO+//x5btmxBeHg4Jk6c2GpjkzX79u3j/v5NTU2xd+9e5kXZjmGi1M5hxYOtQ2VlJS5cuIBTp04hPDwcAoEA9vb2cHBwgKWl5Vt3oyUi3L17F4WFha0uSI2pr6/HkydPIBQKOTcJXV1daGlpoWfPnlBWVsaPP/6IdevW4dy5c5gyZUqbjY3BaAwTpXbO6xwhGC2nqqoKkZGRCAsLw7lz56CmpoY5c+Zg3rx5sLa2lvA6bAp5ClJjRCIRSktLUVJSgqCgIJw8eRJmZma4fPkyzpw5gxkzZshtbAwGwESpXVNbWwt1dXWcPHmSy94DAEdHR5SVleHs2bPyG1wHpba2FlFRUQgLC8PZs2fB4/Ewe/ZszJs3D++//75UT6iGgmRubv5OyQetRW1tLXx9fXH8+HFUVFSgvr4e9vb2mD9/Puzt7RUiZZ7R+ehUxbMdDVY82Pbw+XzMnDkThw8fxsOHD3H8+HHw+XysXLkSQ4YMgYuLCy5cuICamhqu+DQ1NVXhBAkAIiIisGfPHuzZswclJSW4cOECevbsie+++44JEkNudKo6JQZDlqioqGDatGmYNm0a9u/fj8uXLyMsLAxr1qxBRUUFRo4ciczMTISFhSmcIJ0/fx5OTk744YcfYG9vDwAYP358pzH4ZSgubKbUjmHFg4qDsrIyJk+ejL179yIvLw/29va4efMm+vXrB3t7eyxduhRhYWF4/vy5vIeKS5cuYdmyZTh8+DBXkM1gKApMlNoxDR0hxIgdIZjbg3wgImzatAnR0dFISkrCzZs3ER0dDX19fXz11VcYNGgQFi9ejJCQEJSXl7f5+GJjY/Gvf/0LBw4cwKJFi2R+/K+//hrW1tZQV1eXMhEWk5+fDzs7O6irq6Nnz55Yt26dlOHsH3/8gbFjx0JVVRX6+voIDg6WOs7+/fsxaNAgqKmpwdLSUsr2q7q6Gm5ubnjvvfegqamJBQsWSN3AMRQQeRRHMWQHKx5UPPz8/Cg7O1tqe319PaWkpNDmzZvJ2NiYVFVVaebMmRQYGEgFBQVvVODaktfFixdJU1OTvvvuOxKJRK1y7d7e3rR7927y8PCg7t27S+2vq6ujkSNHko2NDSUnJ9P58+dJR0eHNm7cyMXk5uaSuro6eXh4UEZGBgUEBJCysjJFRERwMSEhIcTn8+nIkSOUnp5Ozs7OJBAISCgUcjEuLi6kp6dHUVFRlJCQQOPHjydra+tWuW6G7GCi1AF4nSMEQ/EQiUSUnp5OW7duJVNTU+rSpQvZ2NjQvn37KC8vT+YCFR0dTVpaWrRv375WE6SGHD16tElROn/+PCkpKUncNB08eJC0tLSopqaGiIjWr19PI0aMkPjcRx99RLa2ttx7CwsLcnNz497X19dT3759aceOHUREVFZWRl26dKHQ0FAuJjMzkwDQtWvXZHKNjNaBLd91ANzd3XH//n3U1NQgPj6+2Wr2uLg4zJkzB3379gWPx8OZM2ck9hMRvL290adPH3Tt2hU2Nja4c+eORExpaSk+/vhjaGlpQSAQwMnJSepZSWpqKt5//32oqalBT08Pu3btkhpLaGgojIyMoKamhlGjRkmZ13ZkeDwejI2N4e3tjaSkJKSnp+ODDz7AsWPHoK+vDzs7O4meUC0hMTER8+fPx9atW/HZZ5/JNbOONcdkvA4mSp2MyspKmJiYYP/+/U3u37VrF/bu3YvAwEDEx8dDQ0MDtra2qK6u5mI+/vhjpKenIzIyEr/99hvi4uKwcuVKbn9FRQWmT5+OgQMHIjExEb6+vvjyyy9x6NAhLubq1atYvHgxnJyckJycjLlz52Lu3LkSreM7CzweDwYGBti4cSPXE2rOnDk4efIkDA0NYWtri3379qGgoOCtBermzZtwcHDAxo0b8e9//1vuqd6sOSbjtch5psaQIwDo9OnT3HuRSES9e/cmX19fbltZWRmpqqrS8ePHiYgoIyODANCNGze4mAsXLhCPx6PCwkIiIjpw4AD16NGDW44hItqwYQMZGhpy7z/88EOys7OTGI+lpSV9+umnMr3G9oxIJKKCggL69ttvadKkSaSiokIWFhb09ddfU1pa2muX+K5fv07vvfceffXVVy1astuwYUOT5sQNX5mZmRKfedXynbOzM02fPl1iW2VlJQGg8+fPExGRgYEBbd++XSImPDycAND//vc/KiwsJAB09epViZh169aRhYUFERH99NNPxOfzpc4/btw4Wr9+/Vt/B4y2g82UGBz37t1DcXGxxJJH9+7dYWlpyS15XLt2DQKBAObm5lyMjY0NlJSUEB8fz8VMmjRJwt3A1tYW2dnZePr0KRfT3BIN4+UMqn///li9ejX++OMPFBQUYNmyZYiOjsaYMWPw/vvvw9fXF7dv35aaQWVlZWH27NlwdXXFF1980aIZkqenJzIzM5t9vU1zzKZKGMT7mosRN8d8k1KIhs0xXxXDUEyYKDE4xMsar1sWaWz0qqKiAm1t7dcuvzQ8x6ti2NJK0/B4PPTu3Ruurq6IjIxEUVER3NzcuGeI48ePx/bt25GRkYE7d+5g9uzZWLZsGbZu3driJTtdXV0YGRk1+2psr/QqrKyscOvWLZSUlHDbmmqO2bDMQRzTVHNMMY1LIRo2xxTDmmO2D5ijA4PRzuDxeNDR0YGTkxNWrFiBsrIy/Prrrzh16hT8/PxQX1+PFStWYMeOHS1ut/G2iJtj5ufno76+HikpKQD+bo45ffp0GBsbY8mSJVxzzM2bN8PNzY1r6+7i4oJ9+/Zh/fr1XHPMEydOIDw8nDuPh4cHHB0dYW5uzjXHrKysxPLlywG8nOE7OTnBw8MD2traXHNMKysr5lqh6Mh7/ZAhP9DomdLdu3cJACUnJ0vETZo0iVavXk1ERN9//z0JBAKJ/S9evCBlZWU6deoUEREtWbKEHBwcJGKio6MJAJWWlhIRkZ6eHvn7+0vEeHt70+jRo1t+YZ2YsrIy2rhxI9XV1cnl/Kw5JqOlMFHqxDQWJXGig5+fH7etvLy8yUSHhIQELubixYtNJjrU1tZyMRs3bpRKdJg9e7bEeKysrFiiA4PRyWGi1Ml49uwZJScnU3JyMgGg3bt3U3JyMt2/f5+IiHbu3EkCgYDOnj1Lqamp5ODgQIMHD6aqqiruGDNmzKAxY8ZQfHw8Xb58mQwMDGjx4sXc/rKyMurVqxctWbKE0tLSKCQkhNTV1SkoKIiLuXLlCqmoqJCfnx9lZmaSj48PdenShW7dutV2XwaDwVA4mCh1MmJiYppcXnF0dCSil7OlLVu2UK9evUhVVZWmTZsmZZnz5MkTWrx4MWlqapKWlhYtX76cnj17JhFz8+ZNmjhxIqmqqlK/fv1o586dUmM5ceIEDRs2jPh8Po0YMYLCw8Nb7boZDEb7gIkSo03Yvn07mZubk6amJunq6pKDgwNlZWVJxIifAWhra5OGhgbNnz9fysPv/v37NGvWLOratSvp6urS559/3uTziDFjxhCfz6ehQ4c2+Txi3759NHDgQFJVVSULCwuKj4+X+TUzGIy3h6WEM9qE2NhYuLm54a+//kJkZCRevHiB6dOno7KykotZu3Ytzp07h9DQUMTGxqKoqAjz58/n9tfX18POzg61tbW4evUqjh07huDgYHh7e3Mx9+7dg52dHaZOnYqUlBSsWbMGn3zyCS5evMjF/PLLL/Dw8ICPjw+SkpJgYmICW1tbiTRlBoMhJ+StiozOSUlJCQGg2NhYInozA822MvNkMBjyg82UGHJB3EtIW1sbwJsZaLaVmWdnJS8vD05OThg8eDC6du2KoUOHwsfHB7W1tRJxsjDbJRkZ/zI6HkyUGG2OSCTCmjVrMGHCBIwcORLAmxlotpWZZ2clKysLIpEIQUFBSE9Ph7+/PwIDA7Fp0yYuRlZmu7Iw/mV0UOQ9VWN0PlxcXGjgwIFUUFDAbXsTA822MvNk/M2uXbto8ODB3HtZmO3KyviX0TFhMyVGm+Lu7o7ffvsNMTEx6N+/P7f9TQw028rMk/E35eXl3BIrIBuzXVkZ/zI6JkyUGG0CEcHd3R2nT59GdHQ0Bg8eLLH/TQw028rMk/GSnJwcBAQE4NNPP+W2ycJsV1bGv4yOCRMlRpvg5uaG//73v/j555/RrVs3FBcXo7i4GFVVVQAkDTRjYmKQmJiI5cuXSxhoNjTzvHnzJi5evNikmWdubi7Wr1+PrKwsHDhwACdOnMDatWu5sXh4eOC7777DsWPHkJmZCVdXVwkzz46Gl5cXeDxes6+srCyJzxQWFmLGjBlYuHAhnJ2d5TRyRmeEuYQz2oSDBw8CAKZMmSKx/ejRo1i2bBkAwN/fH0pKSliwYAFqampga2uLAwcOcLHKysr47bff4OrqCisrK2hoaMDR0RHbtm3jYgYPHozw8HCsXbsW3377Lfr374/Dhw/D1taWi/noo4/w6NEjeHt7o7i4GKampoiIiJC6c+8oeHp6ct/xq2jYD6moqAhTp06FtbW1RAID0LIl1Ib7xdv69OkjEWNqasrFNK4bq6urQ2lpKVtm7ejI+6EWg8FQHB48eEAGBga0aNGiJp3GZWG2KyvjX0bHhIkSo8Nz4MABGjVqFHXr1o26detG48eP57L1iJi9kZgHDx6Qvr4+TZs2jR48eEAPHz7kXmJkZbYrC+NfRseEiRKjw/Prr79SeHg43b59m7Kzs2nTpk3UpUsXSktLI6KXKep6enoUFRVFCQkJNH78eLK2tuY+X1dXRyNHjiQbGxtKTk6m8+fPk46ODm3cuJGLyc3NJXV1dfLw8KCMjAwKCAggZWVlioiI4GJCQkKIz+fTkSNHKD09nZydnUkgEJBQKGy7L6MZjh492qRZb+MFFVmY7crK+JfR8WCixOiU9OjRgw4fPszsjRgMBYNl3zE6FfX19QgJCUFlZSWsrKyYvRGDoWCw7DtGp+DWrVuwsrJCdXU1NDU1cfr0aRgbGyMlJaVN7I2ePn36SnujxunYDEZnhokSo1NgaGiIlJQUlJeX4+TJk3B0dERsbKy8h8VgMBrBRInRKeDz+dDX1wfw0j3ixo0b+Pbbb/HRRx9x9kYNZ0uN62quX78ucby3tTdSVlZm9kYMxhvAnikxOiUikQg1NTXM3ojBUDTknWnBYLQ2Xl5eFBsbS/fu3aPU1FTy8vIiHo9Hv//+OxG9TAkfMGAARUdHU0JCAllZWZGVlRX3eXFK+PTp0yklJYUiIiJIV1e3yZTwdevWUWZmJu3fv7/JlHBVVVUKDg6mjIwMWrlyJQkEAqmaKAajM8NEidHhWbFiBQ0cOJD4fD7p6urStGnTOEEi+rt4tkePHqSurk7z5s2TKBglIsrLy6OZM2dS165dSUdHhzw9PZssnjU1NSU+n09Dhgxpsng2ICCABgwYQHw+nywsLOivv/5qlWtmMNorPCIiec/WGAwGg8EA2DMlBoPBYCgQTJQYDAaDoTAwUWIwGAyGwsBEicFgMBgKAxMlBoPBYCgMTJQYDAaDoTAwUWIwGAyGwsBEicFgMBgKAxMlBoPBYCgMTJQYDAaDoTAwUWIwGAyGwvB/NxUAWfl/M3gAAAAASUVORK5CYII=", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "from mpl_toolkits.mplot3d import Axes3D\n", "from sklearn.cluster import KMeans\n", "from sklearn.decomposition import PCA\n", "from sklearn.metrics import silhouette_score\n", "import matplotlib.pyplot as plt\n", "\n", "# Flattening the images\n", "images_flattened = images.reshape(images.shape[0], -1)\n", "\n", "# Use PCA to reduce dimensionality\n", "pca = PCA(n_components=3, random_state=42) \n", "images_pca = pca.fit_transform(images_flattened)\n", "\n", "# Using KMeans to cluster the images\n", "kmeans = KMeans(n_clusters=num_classes, random_state=42)\n", "clusters = kmeans.fit_predict(images_pca)\n", "\n", "# Calculating silhouette score to evaluate the clustering\n", "silhouette_avg = silhouette_score(images_pca, clusters)\n", "print(f\"Silhouette Score: {silhouette_avg}\")\n", "\n", "fig = plt.figure()\n", "ax = fig.add_subplot(111, projection='3d')\n", "ax.scatter(images_pca[:, 0], images_pca[:, 1], images_pca[:, 2], c=clusters, cmap='viridis')\n", "plt.show()\n" ] }, { "cell_type": "code", "execution_count": 15, "id": "bafb1c69", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:05:31.099133Z", "iopub.status.busy": "2024-04-17T00:05:31.098784Z", "iopub.status.idle": "2024-04-17T00:05:34.225430Z", "shell.execute_reply": "2024-04-17T00:05:34.224497Z" }, "papermill": { "duration": 3.167059, "end_time": "2024-04-17T00:05:34.229114", "exception": false, "start_time": "2024-04-17T00:05:31.062055", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/html": [ " \n", " " ] }, "metadata": {}, "output_type": "display_data" }, { "data": { "text/html": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import plotly.express as px\n", "import pandas as pd\n", "\n", "# Assuming images_pca is a numpy array and clusters is your labels\n", "df = pd.DataFrame(images_pca, columns=['PC1', 'PC2', 'PC3'])\n", "df['cluster'] = clusters\n", "\n", "fig = px.scatter_3d(df, x='PC1', y='PC2', z='PC3', color='cluster')\n", "fig.show()\n" ] }, { "cell_type": "markdown", "id": "959511fe", "metadata": { "papermill": { "duration": 0.036637, "end_time": "2024-04-17T00:05:34.303962", "exception": false, "start_time": "2024-04-17T00:05:34.267325", "status": "completed" }, "tags": [] }, "source": [ "# KMeans Clustering - 2 Clusters" ] }, { "cell_type": "code", "execution_count": 16, "id": "006f45fd", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:05:34.379179Z", "iopub.status.busy": "2024-04-17T00:05:34.378826Z", "iopub.status.idle": "2024-04-17T00:07:49.762136Z", "shell.execute_reply": "2024-04-17T00:07:49.761075Z" }, "papermill": { "duration": 135.423802, "end_time": "2024-04-17T00:07:49.764365", "exception": false, "start_time": "2024-04-17T00:05:34.340563", "status": "completed" }, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Silhouette Score: 0.17433983115308654\n" ] }, { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "from sklearn.cluster import KMeans\n", "from sklearn.decomposition import PCA\n", "from sklearn.metrics import silhouette_score\n", "import matplotlib.pyplot as plt\n", "\n", "# Flatten the images\n", "images_flattened = images.reshape(images.shape[0], -1)\n", "\n", "# Use PCA to reduce dimensionality\n", "pca = PCA(n_components=0.95, random_state=42)\n", "images_pca = pca.fit_transform(images_flattened)\n", "\n", "# Use KMeans to cluster the images\n", "kmeans = KMeans(n_clusters=2, random_state=42)\n", "clusters = kmeans.fit_predict(images_pca)\n", "\n", "# Calculate silhouette score to evaluate the clustering\n", "silhouette_avg = silhouette_score(images_pca, clusters)\n", "print(f\"Silhouette Score: {silhouette_avg}\")\n", "\n", "# Visualize the clusters\n", "plt.scatter(images_pca[:, 0], images_pca[:, 1], c=clusters, cmap='viridis')\n", "plt.show()" ] }, { "cell_type": "markdown", "id": "48b42c19", "metadata": { "papermill": { "duration": 0.037013, "end_time": "2024-04-17T00:07:49.840313", "exception": false, "start_time": "2024-04-17T00:07:49.803300", "status": "completed" }, "tags": [] }, "source": [ "# Plotting Clusters - 6" ] }, { "cell_type": "code", "execution_count": 17, "id": "d1ee5fc0", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:07:49.915535Z", "iopub.status.busy": "2024-04-17T00:07:49.915170Z", "iopub.status.idle": "2024-04-17T00:07:51.132714Z", "shell.execute_reply": "2024-04-17T00:07:51.131622Z" }, "papermill": { "duration": 1.258635, "end_time": "2024-04-17T00:07:51.135723", "exception": false, "start_time": "2024-04-17T00:07:49.877088", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "image/png": 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", "text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import matplotlib.pyplot as plt\n", "\n", "# Create a figure to display the images\n", "fig = plt.figure(figsize=(10, 3))\n", "\n", "# For each cluster\n", "for cluster in np.unique(clusters):\n", " # Get the indices of the images belonging to this cluster\n", " indices = np.where(clusters == cluster)[0]\n", " # Select only the top 10 images\n", " indices = indices[:10]\n", " \n", " # For each index\n", " for i, index in enumerate(indices):\n", " # Create a subplot for each image\n", " ax = fig.add_subplot(len(np.unique(clusters)), 10, cluster * 10 + i + 1)\n", " # Display the image\n", " ax.imshow(images[index])\n", " # Set the title of the subplot to the cluster number\n", " ax.title.set_text(f\"Cluster {cluster}\")\n", " # Remove the axis\n", " plt.axis('off')\n", "\n", "# Show the plot\n", "plt.show()\n", "\n" ] }, { "cell_type": "code", "execution_count": 18, "id": "88d94cc7", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:07:51.219361Z", "iopub.status.busy": "2024-04-17T00:07:51.219003Z", "iopub.status.idle": "2024-04-17T00:08:04.146071Z", "shell.execute_reply": "2024-04-17T00:08:04.145167Z" }, "papermill": { "duration": 12.970966, "end_time": "2024-04-17T00:08:04.147901", "exception": false, "start_time": "2024-04-17T00:07:51.176935", "status": "completed" }, "tags": [] }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Silhouette Score: 0.3871081286600878\n" ] }, { "data": { "image/png": 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"text/plain": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "from sklearn.cluster import KMeans\n", "from sklearn.decomposition import PCA\n", "from sklearn.metrics import silhouette_score\n", "from mpl_toolkits.mplot3d import Axes3D\n", "import matplotlib.pyplot as plt\n", "\n", "# Flattening the images\n", "images_flattened = images.reshape(images.shape[0], -1)\n", "\n", "# Use PCA to reduce dimensionality\n", "pca = PCA(n_components=3, random_state=42) \n", "images_pca = pca.fit_transform(images_flattened)\n", "\n", "# Using KMeans to cluster the images\n", "kmeans = KMeans(n_clusters=2, random_state=42)\n", "clusters = kmeans.fit_predict(images_pca)\n", "\n", "# Calculating silhouette score to evaluate the clustering\n", "silhouette_avg = silhouette_score(images_pca, clusters)\n", "print(f\"Silhouette Score: {silhouette_avg}\")\n", "\n", "# Visualizing the clusters\n", "fig = plt.figure()\n", "ax = fig.add_subplot(111, projection='3d')\n", "ax.scatter(images_pca[:, 0], images_pca[:, 1], images_pca[:, 2], c=clusters, cmap='viridis')\n", "plt.show()\n" ] }, { "cell_type": "code", "execution_count": 19, "id": "6998d12f", "metadata": { "execution": { "iopub.execute_input": "2024-04-17T00:08:04.232379Z", "iopub.status.busy": "2024-04-17T00:08:04.231736Z", "iopub.status.idle": "2024-04-17T00:08:04.300654Z", "shell.execute_reply": "2024-04-17T00:08:04.299785Z" }, "papermill": { "duration": 0.114265, "end_time": "2024-04-17T00:08:04.303890", "exception": false, "start_time": "2024-04-17T00:08:04.189625", "status": "completed" }, "tags": [] }, "outputs": [ { "data": { "text/html": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import plotly.express as px\n", "import pandas as pd\n", "\n", "# Assuming images_pca is a numpy array and clusters is your labels\n", "df = pd.DataFrame(images_pca, columns=['PC1', 'PC2', 'PC3'])\n", "df['cluster'] = clusters\n", "\n", "fig = px.scatter_3d(df, x='PC1', y='PC2', z='PC3', color='cluster')\n", "fig.show()" ] } ], "metadata": { "kaggle": { "accelerator": "nvidiaTeslaT4", "dataSources": [ { "datasetId": 112480, "sourceId": 268736, "sourceType": "datasetVersion" }, { "sourceId": 171094458, "sourceType": "kernelVersion" }, { "sourceId": 172380227, "sourceType": "kernelVersion" } ], "dockerImageVersionId": 30683, "isGpuEnabled": true, "isInternetEnabled": true, "language": "python", "sourceType": "notebook" }, "kernelspec": { "display_name": "Python 3", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.10.13" }, "papermill": { "default_parameters": {}, "duration": 355.517771, "end_time": "2024-04-17T00:08:04.967955", "environment_variables": {}, "exception": null, "input_path": "__notebook__.ipynb", "output_path": "__notebook__.ipynb", "parameters": {}, "start_time": "2024-04-17T00:02:09.450184", "version": "2.5.0" } }, "nbformat": 4, "nbformat_minor": 5 }