diff --git a/.ipynb_checkpoints/week4_scikit_learn-checkpoint.ipynb b/.ipynb_checkpoints/week4_scikit_learn-checkpoint.ipynb index ee91827..5b153eb 100644 --- a/.ipynb_checkpoints/week4_scikit_learn-checkpoint.ipynb +++ b/.ipynb_checkpoints/week4_scikit_learn-checkpoint.ipynb @@ -670,172 +670,7 @@ }, { "cell_type": "code", - "execution_count": 8, - "id": "837d561a-25bf-4983-a768-07c3820b860b", - "metadata": {}, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - " Patient_ID Age Gender Smoking_Status Years_Smoking Cigarettes_Per_Day \\\n", - "0 P100000 76 Female Never 6 37 \n", - "1 P100001 39 Male Never 30 39 \n", - "2 P100002 85 Male Former 47 14 \n", - "3 P100003 45 Female Current 45 32 \n", - "4 P100004 48 Female Never 46 26 \n", - "\n", - " Secondhand_Smoke_Exposure Occupation_Exposure Air_Pollution_Level \\\n", - "0 Low Diesel Fumes Low \n", - "1 Low Silica Low \n", - "2 High Asbestos Low \n", - "3 Medium Silica High \n", - "4 Medium Silica Low \n", - "\n", - " Family_History ... Diet_Quality Region Income_Level Education_Level \\\n", - "0 Yes ... Poor West Middle Tertiary \n", - "1 Yes ... Average North Middle Primary \n", - "2 Yes ... Good South High Tertiary \n", - "3 No ... Good West Low Secondary \n", - "4 No ... Good North Low Tertiary \n", - "\n", - " Access_to_Healthcare Screening_Frequency Chronic_Lung_Disease \\\n", - "0 Good Regularly No \n", - "1 Poor Occasionally Yes \n", - "2 Average Regularly No \n", - "3 Average Never Yes \n", - "4 Average Regularly No \n", - "\n", - " Lung_Cancer_Stage Diagnosis_Year Survival_Status \n", - "0 Stage II 2008 Alive \n", - "1 NaN 2002 Alive \n", - "2 Stage II 2007 Deceased \n", - "3 NaN 2011 Alive \n", - "4 NaN 2016 Alive \n", - "\n", - "[5 rows x 24 columns]\n" - ] - }, - { - "name": "stderr", - "output_type": "stream", - "text": [ - "C:\\Users\\user\\AppData\\Local\\Temp\\ipykernel_8300\\3497225959.py:39: SettingWithCopyWarning: \n", - "A value is trying to be set on a copy of a slice from a DataFrame.\n", - "Try using .loc[row_indexer,col_indexer] = value instead\n", - "\n", - "See the caveats in the documentation: https://pandas.pydata.org/pandas-docs/stable/user_guide/indexing.html#returning-a-view-versus-a-copy\n", - " df_clean[\"Cluster\"] = model.row_labels_\n" - ] - }, - { - "data": { - "image/png": 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UIv6AylAeu149OScGq26wPRv9Ke2Px1savg8o9AMAAADgW7RkAD05B6WZq306OgdvfNfU0q1Xb5dgV+ekpRuyvyv0kYI+iYmJMqdl7dq16dKlS7Rs2TLatGkTfffdd8EbXPID4miiT85avvbaa/T000/LnC3s/fffl/ktOcM5YsQIzccJyy6QtvxvKiCNyFLLj9VR1WLLpKnrWWqGEkMC9Q0EAAAA4GuM/KivdyoSI9/tPDW+0FnVVa3nWRoBoJ7uvOCetLQ0uu+++yglJYViY2OpZcuWEljedNNNFLTBpTNHjx6l1NRU6Qprxg9chw4dKCkpSVdwCQAAAAAA4K4CH8lcvvfeeyV+TL8OLjmwZJyptMTXzeu0CilQ3WDzKqjrcf1SpD29Xs1/mVtTvUhC8tU8mOBZ+OUKAAAAPEnvHJX2lumdJ9Ib522k66pW7szPafSxcZYVRbVY/+fXwaUn54c51iuSQsPDqcaPauylabuagiQ2TgWdKf3V8oiT2gfMgnYYlwoAAAClTetUHiURZGo9t5I6P737cnVO9tZdtW816s3vFPpI5rI0+Hy1WGcSEtQAyNOnT1st5+vmdY7mh+Hus5aXC1vWef18AQAAAAAgsBWYTF67+Dq/zlxydVgOItevX0+tW7eWZRcvXqQdO3bQQw895LRy0pQpU6yWNV/2JuVE5NGpLhFyvZzqFUu5Rd1kyx6Isuo2C96BDCYAAAAE8vcQoxVobbcv6YI+erO6Wrrc4nte4PH54PLy5ct0+PBhqyI+e/bsofj4eCmrO2nSJHrxxRepYcOGxVOR8JyYQ4cOdbhPexONhkT4/EMBAAAAAAA+rpCCl89HVLt27aKePXsWXzdnHEeNGkVLliyhJ554QubCHD9+PKWnp1PXrl1pzZo1uua4ZPU+U212JZVubj7pN2nvr7JZHfefE6RNu96vexL7DWQwAQAAwJuMjGEs7fOypGvsopvH8gRnx0ABn8Dh88Fljx49ZD5LR0JCQuj555+XizsKI1QV2PONVXtgZnNp7+yn2oQoVIktDQgyAQAAwBuMdAHVylkXUFfdXY2cg6eqrLpzv/V297W8TaBViS1AQR8AAAAAAACAAM5clpRTN4ZJW3dVlrRnp2VLW+6HeGkLIoP3Fwhf/3URAAAAoCS4yjY62660pinRsl4LZ/NVWq53VYDI2TkESgazIIjDBgSXRcqeUt1eD49VD0mNpXHSRj14QtqjJ6pIi3kuS5cnJgwGAAAAcEZPxVM929nbxpbWqqz21um9P1rOTW8FWkf3y972gTrPZTBDcAkAAAAAAOAhhRS8EFwWiUkukPZK1UhpU7qpl0XhsWrSRsepbrKFhMylr9D7SxoAAACAFnrndHSnWJA3u4DaHkvv+ds7P61db7V0iw3U72wFFLyFQH0+uJw1axZ98cUXdODAASpTpgx17tyZZs+eTY0aNSreJjs7m6ZOnUrLly+nnJwc6tevH7311ltUrZoKDLU4O1KNtSy7uYK0sdtVcHm6XYS0NeqelvYEqfXge1BZFgAAANyhtdurJ4I0T52bJ85TC1f7chUso35GcPD5arGbN2+mRx55hLZv305r166lvLw86tu3r8xtaTZ58mRatWoVffrpp7L9qVOnaNiwYaV63gAAAAAAEHwKTd67+Dqfz1yuWbPG6vqSJUuoatWqtHv3burWrRtlZGTQe++9R8uWLaNevXrJNosXL6YmTZpIQNqxY0dNx6lUQQWrZXeqePtKQrS0uXEqg3klT3WXBd+HDCYAAAC4Yu97gqe7qDrrFuvJ7zd6v/MYGVqktyKtlsI+rjKt4H98Pri0xcEki49XU4RwkMnZzD59+hRv07hxY6pduzYlJSVpDi7LR+ao/ddXXWlTe+er41S7qK6fVi921UkW/AGCTAAAAAjm+g+e6Oar9T5qHVOqa99+Wi22IIjHXPp8t1hLhYWFNGnSJOrSpQs1b95clqWmplJkZCTFxampQ8x4vCWvAwAAAAAAAO/zq8wlj73cu3cvbd261a39cNEfvlgqnFKBQkPDKeVBlbEMP68empjaqkpszDJVyOdkd7cODaUAGUwAAABwZ05Hbx/X3nrbc3B2bnq/2+jJuGr9/qRnrs9A7xZbEMSZS78JLidMmECrV6+mLVu2UM2aNYuXJyQkUG5uLqWnp1tlL0+fPi3rHFWgnTFjhtWyuOG9KP623lTzM5XMPdtSvSgyPr9G2pzrvXK3oAT5etcVAAAAKDl6vgfo/aHanX3bLvdmhVdbWrrFaunualSgdIsNZj7fLdZkMklguWLFCtqwYQPVq1fPan3btm0pIiKC1q9fX7zs4MGDlJycTJ06dbK7z8TERBm7aXmpOAQpSQAAAAAAcE+hKcRrF18X7g9dYbkS7MqVK6lChQrF4yhjY2Nl3ktux40bR1OmTJEiPzExMTRx4kQJLB0V84mKipKLpTJ7VbdXU5iqDlvxoGqfeP4DaSdvukvayDSU9AkU6C4LAAAA9hjN9Bnpuqq3Cquz/WntmurJ7qj4PnW1AnSL9V0LFy6UtkePHlbLebqR0aNHy//nzZtHoaGhNHz4cBlL2a9fP3rrrbd0HSdPxZZUNkWNsbxcS01FkrjsPrWiRp7b9wV8Eyb1BQAAAC0Bkt4gzNk0J6725SpQtPe9Re9UJK6CY2fnrbW7rKP7o+d8wX+E+0O3WFeio6NpwYIFcgEAAAAAACgtBb4/8jB4g8uSUufbTGlP3VhO2ti/VLfY2s9tkzZ1SmdpsyuV2imCl7kzGTEAAAD4FyNdQfV2YTVSiVbrdxAt31tcdVnVkxXVer6uCv6gp1hgQ3BZ5NKzKrjM+rOMtLF/qeWpk1RQ2fy2/dLu2tiktE4RShDGDwAAAAQ2PVNlmLkzLlJvt1hX9ARpeivSaglcjUw94mi9v089YqvQDwrveEvw5mwBAAAAAADAY5C5LHI2Q3WHLZes4u3CCNUtNqeyWp+aVVTxB4IKMpgAAACByVnm0FWBHHe+F7jKWLoqtuPs2K4yre5053VV/MdVF9tg+g5VEMTVYkP9oVpsy5YtZYoRvvAUI99++23x+uzsbJmupFKlSlS+fHmpGHv69OlSPWcAAAAAAIBg4/OZy5o1a9LLL79MDRs2lMqxS5cupSFDhtAvv/xCzZo1o8mTJ9PXX39Nn376qcx5OWHCBBo2bBj9+OOPuo5TYZPKXEbcckbazO+rSBt5Qa0/vreGtGGevXvgJ7zxyyUAAAD4FqPZNj2Fcbx9LiWVcTU6BtPZFCqBMvaywOTz+TuvCTFpmevDx8THx9PcuXPptttuoypVqtCyZcvk/+zAgQPUpEkTSkpKoo4dO2reZ4PlM6UNLyroYxaVrtqLrXOkjTgZ5bk7AgEDQSYAAEDwFvRxp3up1mDN0Tnpua3W9XrOw53usK5ucyhxMvmjzceu89q+u9f9k3yZX4XVBQUFtHz5csrMzJTusbt376a8vDzq06dP8TaNGzem2rVrS3AJAAAAAAAAJcPnu8Wy33//XYJJHl/J4ypXrFhBTZs2pT179lBkZCTFxcVZbV+tWjVKTU3VdYyCK+qhiPtbXb/Q84q05TepTKYpz6/icChhwTxoHQAAwB/p6brqjaydu5xNF2J0fkvb/Tnb1tU+9dyHQOkOaxbMBX38Irhs1KiRBJIZGRn02Wef0ahRo2jz5s2G95eTkyMXSxUrnaPQiHA6101VhW34luotnHa9Wh+WidGW4BqCTAAAAP/lKoBytb2ZJ8Zcaj2Wv33HCYYxl8HML9JxnJ289tprqW3btjRr1ixq1aoVvf7665SQkEC5ubmUnl40MLIIV4vldY7wPrj4j+Ul9eNtJXBPAAAAAAAgkBWYQr128XV+kbm0VVhYKJlHDjYjIiJo/fr1MgUJO3jwICUnJ0s3WkcSExNpypQpVsvu2f0EhUWmU8y8GLmeekNZaXMrqvXRqerJzMN0l6ABMpgAAAD+x2hFVFf707Kt3nNzdBxPVr+1dzx3v9M4684L/s/ng0sOBAcMGCBFei5duiSVYTdt2kTfffedZBzHjRsngSJXkOV5MCdOnCiBpbNKsVFRUXKxdHFOfWmP3qmud22+T9qD7zSR9mz3XGlRLRb0cDbBMT5IAQAAfJOrcYZaA0VnYxdd3cad7wl6u/d6gt6qt4HcHbYQYy59V1paGt13332UkpIiwWTLli0lsLzppptk/bx58yg0NFQyl5zN7NevH7311lulfdoAAAAAAABBxeeDy/fee8/p+ujoaFqwYIFc3FHhKVUmturietLu+7mptN0m/CRtWo7qD7vrpMpkAhiFLrMAAAClr7T+DrvK1umds1LLMTy5T9t9uHPeersZ+4sC/yhrE5zBZUm5NLOWtJfHX5I2LEmNvbwzfoe000eMURveUlpnCIHGEx/0AAAAYIyRiq6eGHPpbpVVPYGY1u8azvbtqS7CwaTADwrveEvw3nMAAAAAAADwGGQuixy7u1DasKOq+2uDLSqDeX/oRGnjaqr1AN6CjCUAgDHo+QGl9bopza6gzooGOtrGG+8Rd4b7BGr2szCI83cILotUTFJVYCMyTVbLTUWPUEFU8FZ9AgAA8GUYyw5G6OkC6uw2lss9+drztfGIRh8bf7qP4D6/CqtffvllCgkJoUmTJhUvy87OpkceeYQqVapE5cuXl6qxp0+fLtXzBAAAAACA4FRgCvHaxdf5TeZy586d9Pbbb8tUJJYmT55MX3/9NX366acyVcmECRNo2LBh9OOPP+ra/4XmBdJes0FdT+msusdm1c6XNryD6iZLeyt64N4AAACAp2FuYdDDyGvDE5k2b2Tp9J6XO/NgOspgulNwCBnLwOEXweXly5dp5MiR9O6779KLL75YvDwjI0OmKlm2bBn16tVLli1evJiaNGlC27dvp44dO2o+Rpe2B6Xdnq2mGqm2XY2xLOiW6eF7AwAAACUFXWbBk9VitU7xYW9/el973gy89E4rAvoU+FfnUI/yi3vO3V4HDRpEffr0sVq+e/duysvLs1reuHFjql27NiUlJZXCmQIAAAAAAAQnn89cLl++nH7++WfpFmsrNTWVIiMjKS4uzmp5tWrVZJ0eOzY1lTZhp+oee/buLGmjN6pfbir/li1tcl+DdwQAAABKDTKY4M3Xi54uoVq3dacLrqPzddWV1dltbPft7nydzvbl791kC4N4nkufDi7//vtveuyxx2jt2rUUHR3tsf3m5OTIxVLln3IpNCycIi+q4LLi5+WkvXLXeWmr3qWKBCVvVN1mAQAAwP8YmToCgofesYiuKqfa29YoZ0Gm1mDSVYVXZ/fX3a60RqZpoSHklwr8o3OoV/j0Pedur2lpaXT99ddTeHi4XDZv3kxvvPGG/J8zlLm5uZSenm51O64Wm5CQ4HC/s2bNkuI/lpeTB9aXwD0CAAAAAAAITD6duezduzf9/vvvVsvGjBkj4yqnTZtGtWrVooiICFq/fr1MQcIOHjxIycnJ1KlTJ4f7TUxMpClTplgt6z7pbcoJC6WT/VSJ3zpfqYI+6bvjpU1JKl+0oWfvIwAAAJQedJcNXvaec093x3RWLEhrd1hvZuq1dJPVWuTI9hieKKDkrwr8YMqQoAwuK1SoQM2bN7daVq5cOZnT0rx83LhxEijGx8dTTEwMTZw4UQJLZ5Vio6Ki5GKJu8QCAAAAAACAMX4fUc2bN49CQ0Mlc8njKPv160dvvfWW7v1c6n9Z2poflZE2eajKXNb/QI3NrPbSX9KexJhLAACAgIOxmFBS81yW5DyS7h7bcpm7+wqm91Khb4889Cq/Cy43bdpkdZ0L/SxYsEAu7oiOzJP2XDPV/bXmKrX80j/VeE5TVgW39g8AAAD+A8Em2KOnO6mnj+VovZbjuyo85Kzwj9H7qqXYEd5XgcfvgksAAAAAAABfVYCpSCDrgJors+wldb1MmuoOe/nrKqrNMqkVDUvpBAEAAKDUBFMxkmCmtwCO7e2MTLfhiXkujWZQjRT08WS21ptdfKF0ILgskl85X9roFqobbP5e9WK/cL3qLhsSrsZgRpy0LgQEAAAAwQNd+gKHlnkjS2PcoJFjuQoSHe1Ly3hOvft0dbtgUEioFgsAAAAAAABuKkC3WDCpxCSZPqks7fkm6heHsIuqO2yztkelPXCyfmmdIgAAAPiQYM7MBCqj3WL1FL3RWqjHUabQWddVvd1LPVGYSOt5uvOYgP/w+eBy+vTpNGPGDKtljRo1ogMHDsj/s7OzaerUqbR8+XKrqUiqVaum6zih0QXSlj+hgsnjo9X1VnVOSnvx6Zpqw77u3ycAAAAIHKgs65+8+TzZ26dt4KQ3oNLSdVXrPrWOHXW2b0fdY7UGzfZuGygKgngqEr+4582aNaOUlJTiy9atW4vXTZ48mVatWkWffvopbd68mU6dOkXDhg0r1fMFAAAAAAAINj6fuWTh4eGUkJBw1fKMjAx67733aNmyZdSrVy9ZtnjxYmrSpAlt376dOnbsqPkYUYeipTVNU5nK6PXXSFut0UVpfx+oCvmEqLo/AAAAAHahu2zgFfTRS0vVVW92AS3J+Te1FAWyd3tvnZ8vKDShoI9PO3ToENWoUYOio6OpU6dONGvWLKpduzbt3r2b8vLyqE+fPsXbNm7cWNYlJSXpCi6zE1Q32JQfVVBZMylb2u0Xr5e2zh/qenJfFYQCAAAAOIMg07cZmTbEnedab7dYTwRpel+DnnxMXN3enX2A7/L54LJDhw60ZMkSGWfJXWJ5/OWNN95Ie/fupdTUVIqMjKS4ODVHpRmPt+R1AAAAAAAAJanAP0YeBmdwOWDAgOL/t2zZUoLNOnXq0CeffEJlypQxtE8u/MMXS+Fxlyg0IpxyQlVmsjBCvShMYWr9332QsQQAAAD9kMH0TaU1z6UvVEbVWpHW2bZmnsyKgv/z+eDSFmcpr7vuOjp8+DDddNNNlJubS+np6VbZy9OnT9sdo2nG3WptK9DGDu1NcbfeRCE5KqhM7qeiyuizan1Ik0vSmg5W8MbdAgAAgACHINO32Hse9E4PoqdyqtaxiUaqsXrqtaRluhBH27p6XQdTtdjCIJ7n0u/u+eXLl+nIkSNUvXp1atu2LUVERND69euL1x88eJCSk5NlbKYjiYmJUgzI8hJ7c88SugcAAAAAAACBx+czl//85z9p8ODB0hWWpxl57rnnKCwsjO666y6KjY2lcePG0ZQpUyg+Pp5iYmJo4sSJElg6K+YTFRUlF6tlcYX8+wmVT4qU69Hn+DrR+Saq2lPM6vLSpjf04p0FAACAgIcMZuDQmtF0dhut+3S0nSWt52FknktP0VLsyN8VEKrF+qwTJ05IIHnu3DmqUqUKde3aVaYZ4f+zefPmUWhoKA0fPlzGUfbr14/eeust3cep9aZ6KP7uXbSgMNSqiiyFFA2+BAAAAPAABJmly5tjH7UEfo7Ow8h4T72vIaPjJo0cS8++AiXILAzibrE+H1wuX77c6XqenmTBggVyAQAAAAAAgNLh88FlSTlyn8pMhlxW3WErrVHzWp7vqpbH1T8n7bmfq5baOQIAAEDgCaZCJ77OaEbPG1lGT3S19eQxHB1L62vV3vaB+jovCOJuscGbswUAAAAAAAhQs2bNovbt21OFChWoatWqNHToUCl+6k3IXBaplKB+Tak4q6y0yX1V+3qXpdK++OJ9akMU9AEAAAAvsDclRqBmdvyNN58PvWMxPZFddKegj57b2luvZV/+rtBHxlxu3ryZHnnkEQkw8/Pz6amnnqK+ffvSvn37qFy5cl45JoLLIhEfxEub1k69GMq0PS/t/DF3SHtuuEnasMzgTXMDAABAyXCn4Ap4nt45HrV0ATWyD0dcBXyutnM2t6Y7hYZcHVtvgAr6rFmzxur6kiVLJIO5e/du6tatG3mDb4TVLpw8eZLuueceqlSpEpUpU4ZatGhBu3btKl5vMpno2WeflbkveX2fPn3o0KFDpXrOAAAAAAAQfApMoV678OwYFy9etLrwMi0yMlTQzlM4eovPZy4vXLhAXbp0oZ49e9K3334rU5Bw4FixYsXibebMmUNvvPEGLV26lOrVq0fPPPOMTEnCKV+uJqtF9Hk15UjkJVXQ50S7MtJWiFfzXtb+Jl/ak93VdQAAAICSgmlLSpbRqT2c3c5RsR1356bUsy9Xy+2dq97buJN9vOo+DtG9i6AYRzljxgyrZc899xxNnz7d6e0KCwtp0qRJElc1b948eIPL2bNnU61atWjx4sXFyziAtMxavvbaa/T000/TkCHqFfj+++9TtWrV6Msvv6QRI0ZoOk7ExVxpj92s+h/X+kB1g01/WL3Iyyz/XzALAAAAUBoQZJYOV4GVq+31BF16u89q3UYPb+47GBR6sVpsYmIiTZkyxWpZVFSUy9vx2Mu9e/fS1q1byZt8vlvsV199Re3ataPbb79d+gi3adOG3n333eL1R48epdTUVOkKaxYbG0sdOnSgpKSkUjprAAAAAAAIRgVe7BbLgWRMTIzVxVVwOWHCBFq9ejVt3LiRatas6dX77vOZy7/++osWLlwoETpXONq5cyc9+uijFBkZSaNGjZLAknGm0hJfN6/TInTmWWnrPKN+aThyh+pOG7GnqE9yJU/dIwAAAAD3IIvkPj2PnbNuo5brtWQnXXVhdbRPPRzdRm8XXKPHd3ZOzvaNgj6exT08J06cSCtWrKBNmzZZ9f4M2uCS+wdz5nLmzJlynTOXnNJdtGiRBJdG8KBX24Gv5/5dg0LDwqlsOTW20hSTp9pq6npelnfK9QIAAAAYhSDTO8GO0YBPS1BkdIyls2BU7/Pu6vVir1uso2Npfe1p2S5QxlwWmnxjdgnuCrts2TJauXKlzHVpTrxxL08uguoz3WLz8vLo77//lkk4z59XU3Z4C1eAbdq0qdWyJk2aUHJysvw/ISFB2tOnT1ttw9fN6+wNhOUH1fKS8vt6r90HAAAAAACAksS9P7lCbI8ePSSmMl8+/vjj0s9cXrp0iT744ANavnw5/fTTT5Sbmyup1pCQEOm7yxNyjh8/Xibp9CSuaMRBrKU///yT6tSpI//n9C4HkevXr6fWrVvLMi7Ju2PHDnrooYc0D4TtNuVtyg8LoYhpKXK9zIba0jbtr4LY3IQwaQ9sre/R+wdgC78+AwCAXvibUbp/b/Vk5Wzpreyqp8uo3gqvRmg9/2BS4CNlbThWK2magstXX32VXnrpJWrQoAENHjxYxj7WqFFD0qmcueRuqj/88IMEmFxIZ/78+dSwYUOPnODkyZOpc+fO0i32jjvukMD2nXfekQvj4JbL6r744otyTPNUJHx+Q4cOtbtPHvRqO/C10hHu/ppPZz5TQWWkiiXp590NpA2torrR+sZLBQIZujgBAACUDqPTbWgJ2rSO2/RkkOnqPF11/9V7PABNwSUX0dmyZQs1a9bM7vobbriBxo4dK+MgecoQDjQ9FVxyJpQHoXK28fnnn5fgkaceGTlyZPE2TzzxBGVmZkrmND09nbp27Upr1qzRPMclAAAAAABAII25LA0hptLIl/qgznf8S9qyqdnSpnYsK22lP1Rhn9CpakzniR3eLd8LYAsZTAAAAO+xVxhHT0ZSy3JX6+ytd2eeS1f70LNvrcfQe7+0HP9Q4mTyR0/8ervX9j2n1afky3RXi+XM5J133klly6rgK1BcM+mwtKdeVd1gLzcvqiZrUt1nr6SpuUjQLRZKmjfGRwAAAIDxKqp6AihXxyiJ7qaeGBfpqe8j3pjmxNcUBnHEoPueP/nkk1JAZ9y4cbRt2zbvnBUAAAAAAIAfKjCFeO3i63RnLk+ePEmrVq2iJUuWSFnb+vXr05gxY2TOSUdTf/iD4++oMaLnbr8ibcUtKjMbUqjWX85VcXjw/g4BvqIkJjoGAAAIdHq6gHqq0I+9bbSen555Ll0V8HHESHdYrY+N1nMA/6Y7uAwPD6dbb71VLjyXJE9PsnTpUqnQ2r9/f8lockXZ0FD/CsPK/50rbe4PKqi80EF1izXlFpWNzfOv+wPBQ8+YCwAAACCXQZqrgE5rkKZlPKfWbrF6xkVqpWesqN4utUbGoQaKQj/IMHqLWxFTtWrVpDJrp06dJJj8/fffJYPJU5Zs2rTJc2cJAAAAAAAAgZW5ZJyx/O9//yvFff766y+ZT3L16tXUp08fmRKEpwzhIPP48eNun2DdunXt7ufhhx+mBQsWUHZ2Nk2dOpWWL19OOTk51K9fP3rrrbck8NXjRE9VuCeqZbq0td8rL+3xIaqYbrnDEdLmVXD7LgF4DYr/AAAAaFMSfyPt9S4yyp1Kru7Mz2nmTldgZ/uxvG2gKDQFb49H3cEld3n97rvv6LrrrqP777+f7rvvPoqPjy9eX65cOQn25s6d65ET5Dk2CwoKiq/v3buXbrrpJrr9dlXid/LkyfT111/Tp59+SrGxsTRhwgQaNmwY/fjjj7qOE6ViSgpdHydt9kNnpO1WMU3aH3IaSxuRXtRNFsAPINgEAADQzlXXT61/P+1t72osorPbuktvUOmNrqueGIcKARhcVq1alTZv3ixdYR2pUqUKHT161N1zK96XpZdfflm63Xbv3p0yMjLovffeo2XLllGvXr1kPWdTmzRpQtu3b6eOHTt65BwAAAAAAAC0KKDgHXOpO7jkYM6VkJAQqlOnDnlabm6uFBCaMmWKHGP37t2Ul5cn3XHNGjduTLVr16akpCRdwWWhOSHZTaUwM7Kipd2+p5m0pip5RRsgcwn+y+gvsAAAAIHGyByPnuj6qfe2WgoAudqn3oyls/25qkRbGvN4gu8w1CF4/fr1dPPNN0sGkS/8/3Xr1pG3ffnll5Senk6jR4+W66mpqRQZGUlxcaorqxmPt+R1jvDYzIsXL1pdCvPzvX7+AAAAAAAQ2ApNIV67BFzmkovlPPbYY3TbbbdJy7gL6sCBA2nevHn0yCOPkLdw1nTAgAFUo0YNt/Yza9YsmjFjhtWyhOv7UvV2/Sn8c/UrS+b1anlhgpqiJO6XSGmz/HcqT4BiyGACAADo//uo9e+nljGX7o77dJYR1Dsvp7NzNDpPpZ7vGIGW3SxEQR/tZs6cKUEkF84xe/TRR6lLly6yzlvBJVeM5ezoF198UbwsISFBuspyNtMye8nVbHmdI4mJidK11tKAe96i0LQCisxQ3V8zGqhusWUOqaAyOl1Vjc1K8P1fDAC0QpAJAADByt7fPk9VXfVGYRxPznPpqriQlqDY0W307Fvr+YD/0B1WcyDXv3//q5b37dtXCux4Cxfq4WJCgwYNKl7Wtm1bioiIkG66ZgcPHqTk5GSnBYeioqIoJibG6hIaZmhWFgAAAAAAgGKFFOK1i6/THVHdcssttGLFCnr88cetlq9cuVLGXnpDYWGhBJc8d2Z4+P9OmaceGTdunGQheToUDhInTpwogaXeSrF5ZdWTdfoeNfayRfVD0h5NV9Os1ItXU5Kc29jEY/cLwFcggwkAAOC6+6irLqp6uoA66t7qiWMY/buup1us3oymlmzkVec7RNNpgz8Hl02bNqWXXnqJNm3aVJwd5DGXPK8kz2/5xhtvWHWX9QTuDsvZyLFjx161jrvohoaG0vDhw6VQT79+/WRcqF7ZFVUSN2JneWl3N6orbY01qjrsz3eq7rEAgQxBJgAAgH6uAkU99HS1tV2n9++4N//eaxkrGqjfMwr8oPCOT01FUrFiRdq3b59czHjMo+U0JTxViKeCS+5yazKpMY+2oqOjacGCBXIBAAAAAAAAPwkujx49SoGo8m9Z0h6+R2Uo63yqlmfWUL88hO2qIG2hagACWjD9uggAAOCK1u6x3pzb0Z05KPVmKO39/dd7n7RUpA3UnlKFqBarH1dp5UCT57m0HAfpr8KuFM1zWRAlTfkn/5b21I/1pM27JkfaiJNqPUAwCIY/AAAAAJ4O0pyNXXQVrHljiIrWbrvOjql1LKir+4cfrgOb7rA6KytLiuiULVuWmjVrJmMhGRfSefnll71xjgAAAAAAAH6h0BTitYuv051y5Dkif/31VynoYzklSZ8+fWj69On05JNPkj/KrF1O2tgDqoDPpTW1pC2864ra4AIK+kBw0zNRNAAAgK/TUiBHb5EdZ/M1+tLfSVdZRyNdgm23D2aFfjBliM9kLr/88kt68803qWvXrlK0x4yzmEeOHPH0+VFBQQE988wzVK9ePSpTpox0w33hhResCvzw/5999lmqXr26bMOB7qFDaioRrbIqh8klfn+uXDLqhsslP0tdqFy+ugCAFf6jwhf+Y4I/KAAA4C/Mf7fMf8c8Gfw527ftOm/8vXW0je0x3dmnp+4XBHlweebMGapatepVyzMzM62CTU+ZPXs2LVy4UALa/fv3y/U5c+bQ/Pnzi7fh6zwFyqJFi2jHjh1Urlw5mZIkOzvb4+cDAAAAAADgSCG6xWrXrl07+vrrr2WMJTMHlP/+97+L5730pG3bttGQIUNo0KBBcr1u3br00Ucf0U8//VSctXzttdfo6aeflu3Y+++/T9WqVZMs64gRIzQdp/wdp6Q9+mc1aRO2Fko7rdvn0r68v5+0V1DQB8AudyvTAQAA+Cs9czpqLXijdY5KPfvWyki1WL3bOToe+DfdweXMmTNpwIABMsdlfn4+vf766/J/DgI3b97s8RPs3LkzvfPOO/Tnn3/SddddJ+M9t27dSq+++qqs54q1qamp0hXWLDY2ljp06EBJSUmag8vkgyqorPdlgbQnu6sxlk//pALW8KNl1IbBW1kYQBdvVLsDAADwFD2BmN5Kqc64qhqr9VjO9q33HNz5G+2JarHenMKlNBQG8VQkuu85j7Xcs2ePBJYtWrSg77//XrrJciDXtm1bj58gFwjiALFx48YUERFBbdq0oUmTJtHIkSNlPQeWjDOVlvi6eR0AAAAAAAB4l6EJKrmozrvvvksl4ZNPPqEPP/yQli1bJkWDOLDl4LJGjRo0atQoQ/vMycmRi6Vyf5ooNDyccmPU9YJoVTAo+o+ijGVR/aC8Cu7cG4DggwwmAAD4Int/lzzV9VPPfJFaj+Xs76m783KWpGCYQ7vQD8ZG+kxwGRYWRikpKXaL+njD448/Xpy9ZJwtPX78OM2aNUuCy4SEBFl++vRpqRZrxtdbt25td5982xkzZlgtq9auL1Vv35/CclUUWX+FmoIktWNZaZvftl/aXRubeOV+AgQ6BJkAAODrtE6z4SpA1DKlhye7rLrqpqv3b6+RgNvR+WsZhwpB3C3WcgqQkpCVlUWhoaFXBbiFhargDk9RwgHm+vXri9dfvHhRqsY6KjDEc3VmZGRYXapd/78xmwAAAAAAAEbnuSz00iUgu8V6Y8oRRwYPHkwvvfQS1a5dW7rF/vLLL1LMZ+zYscXnwt1kX3zxRWrYsKEEmzwvJnebHTp0qN19RkVFycVS+NB0aVP2VFb7LVQPTVhR79k/zqgMKQC4BxlMAADwBc6yj0YyfFqzdFqzn7b0VKJ1dJ5GigRppXXfwVAtthDdYvUxd0W1p6BAVVv1FJ7PkoPFhx9+mNLS0iRofOCBB+jZZ58t3uaJJ56QeTbHjx9P6enpUnRozZo1FB0drfk45w/HS1vzJ3X+BRHqRVHulJor83hURbVh8BZ/AvAod7oMAQAAeIPeoMtIN1RPVUZ1Z+yinjGanp6KxNnxAi3IDEaGgsvPPvuM4uNVMOZtFSpUkHks+eIIZy+ff/55uQAAAAAAAJSWQmQuteNArkuXLiVW0KekmKLVGM5TN4ZJG3ZFvShM4Sr7Gd8uTdpzPwfW/QbwJegyCwAAJUVP1VW93Cle44m/ha66pPpKhtDXzgdKIbgs6YI+AAAAAAAA/qIQmUvtNm7cWGJdYktS3S/MQXO++nfqWWlPxlSTVv0LACUBGUwAAPClrJnW4jS2+/Jk1tGTXE1d4ux8SqIIEARRcMmFc3jaj379+lkt/+6772R6kAEDBpA/yqyuHoozPXOlrfyRKlpUO0UFmyFfx6kNu5fWGQIEHwSZAADgC7RWW9USJHkqoHLW5Vbv3JOOtnO2b0eBNAJFCurMpe7ap08++aTdirDcXZbXedqlS5dkqpE6depQmTJlqHPnzrRz506r43Ll2OrVq8v6Pn360KFDhzx+HgAAAAAAAODBzCUHbk2bNr1qeePGjenw4cPkaf/4xz9o79699N///lemIfnggw8kgNy3bx9dc801NGfOHHrjjTdo6dKlxXNcclaV1+uZiiTuYJa0YbllpQ3PUgV+0tpFSHulugqoI9R0mABQgrT8sgoAAKCHlr8lrrq5Gpnn0lO9drTMF+mou6s7PYP0ZD1dCdQsZyEFb+ZSd3AZGxtLf/31F9WtW9dqOQeW5cqV8+S50ZUrV+jzzz+nlStXUrdu3WTZ9OnTadWqVbRw4UJ64YUXZIqSp59+moYMGSLr33//fapWrRp9+eWXNGLECM3HyrymjDpmJfViyL5OVY2NLAom6zVKkfbEjpoevY8AoB+6ywIAgDe5+vuitZups0q0npw30pvzchq5jbPz9+bcn76iEN1iteMgjrupHjlyxCqwnDp1Kt1yyy0ePbn8/HzpgmubgeTur1u3bqWjR49SamqqZDItg98OHTpQUlKSR88FAAAAAAAAPJi55G6o/fv3l26wNWuqLN6JEyfoxhtvpFdeeYU8qUKFCtSpUyfJUDZp0kQykh999JEEjtdee60EloyXW+Lr5nVa5Yw5L23lueWlPTokSi2vmydtzMIaasPr3b9fAOAZWn9RBgAA0ENr0RpX7HWLdZXBdFXB1VnRHXe78To7b292Ow60YkCFQZy5NNQtdtu2bbR27Vr69ddfJYvYsmXL4m6rnsZjLceOHSvjK8PCwuj666+nu+66i3bv3m14nzk5OXKxdOFsFIVEhJOpkcqSxv6plhdERkqbWwHzewL4C3fGugAAQHBw9rdC67hCT44/9CR3z0dLd153g05N56lGvUEgB5csJCSE+vbtKxdva9CgAW3evFmmQLl48aJUhb3zzjupfv36lJCgpgs5ffq0LDfj661bt3a4z1mzZtGMGTOslsUN70Xxt/X24j0BAAAAAIBAV4jMpT4c6HHAl5ycTLm5al5Is0cffZS8gYsF8eXChQsypyZ3z+XqsBxg8ryb5mCSA9AdO3bQQw895HBfiYmJNGXKFKtlnZ5+m0J/CqcClaik7EqqrbZbzXN58i7VPTb0qCr8AwC+T0thAgAAAFdcFexx1ZXVchtXnHVRdbVvPefjbHt3srmO4O9vcNAdXP7yyy80cOBAysrKkiAzPj6ezp49S2XLlqWqVat6PLjkQJLnsmzUqJEUDnr88cdlvOeYMWMkg8rFhV588UVq2LBh8VQkPGXJ0KFDHe4zKipKLpauu/OYtPu/v1baKnvU1CMnu6mqsbGb1EN1qY5H7x4AlDBUmgUAAE8FkVrXO9vWE1wFia4CQj1Vbh0tN1I9NlD/BhcGceZSd7XYyZMn0+DBgyWDyOMtt2/fTsePH6e2bdt6vKAPy8jIoEceeUQCyvvuu4+6du0qAWdEhJp/8oknnqCJEyfS+PHjqX379nT58mVas2aNrjkuAQAAAAAAwD0hJk4L6hAXFyfdTjmTyP/nyq1cyZWXjRo1ig4cOED+qFfvl6VN7q/6xdbYqjKXaW1UxjLqgtouSw3zBIAAgQwmAEBw0lPN1Exvl1AtxWts1+udY9PeMne7quoquuNgn45ur+c2hxInkz/qsf6fXtv3pt6eT+aVardYzhiGhqqEJ3eD5XGXHFxyFdm///6b/FVejHoo8ssXWnWHpaLYu01/FTTv2tiktE4RALzA1yr8AQCA73EVGGq5natgUuux7P19cicwNXreRtkLXANlChKzQgrebrG6g8s2bdrQzp07ZYxj9+7d6dlnn5UxlzxlSPPmzb1zlgAAAAAAABBYweXMmTPp0qVL8v+XXnpJxkFyZVYONv/zn/+Qv/r7FpWxDI1S1WFrrlIPTdm9p6T9uX7NUjw7ACgpyGQCAAQvrVVW3SkSpzVL56yCq7fYux/4u6hfYRAX9NEdXLZr1674/9wtlovnBIIa36pusKd6qi6/5xur62ltVXnYaktV0JnSsdROEQBKgZ6xIvhDCwAQmPQGnba303Obkqh27qrqrb1tnW2jJxjWUokWgmyeSwAAAAAAALiaCZlL7XheS2fOnz+veV9btmyhuXPn0u7duyklJYVWrFhhNT8lF7J97rnn6N1336X09HTq0qULLVy4ULrgWh6PpyJZtWqVFBoaPnw4vf7661S+fHld96vaY39JGz67rrQZ9dTy5gP+lPbAlet07Q8Agge6DAEA+B893U1Lco5kI8cwOp+lnmPqLTSEeaWDk+7gkoO81157TarDuiszM5NatWpFY8eOpWHDhl21fs6cOfTGG2/Q0qVLqV69evTMM89Qv379aN++fcXzWI4cOVIC07Vr11JeXh6NGTNG5rxctmyZ2+cHAAAAAACgRyEyl/qMGDFCxlu6a8CAAXKxh7OWHMQ+/fTTNGTIEFn2/vvvU7Vq1ejLL7+Uc9i/f7+M+eTqteaxoPPnz6eBAwfSK6+8QjVq1NB8LueKMpbJA9SLoWq9M9Lu/1JlLEO7F010ubeiO3cZAIIAfq0FAPBPnv78NjK+UGtvGC3jOR3dH1cZTT1jRY1MneLo/CAIg8uQkBCpFluhQgUqU6aMd86KiI4ePUqpqanUp0+f4mWcLe3QoQMlJSVJcMltXFycVZEh3p67x+7YsYNuvfVWzcfLj1aFfMqeUG3GmSrShpRV67NPxEgb4Zm7BwBBAN1lAQD8i9bupb7wo6KWwFVr4R53zltroOqsWJDReUR9lQmZS+04o3jddUXZvNBQySTy3JfctVVPMOcKB5aM92+Jr5vXcWubQQ0PD5dxoeZt7MnJyZGLpcKCfAoNQ30jAAAAAAAwrhDBpXYbN26UAJPHN168eJFOnTol3VLvuOMOeuedd2TMo6+bNWsWzZgxw2pZvZo9qUHtXhSWp8ZyJg8ySRuWpTKZtdeo65iKBACMQiYTAMB32PsM1jJ9hqPbGj2uo2O6OoaebrH2bmO53llm01WXWr3n7+y8r7qNGhkHgRxcdu/e3e7y66+/nl599VWPBZcJCQnSnj59mqpXr168nK+3bt26eJu0tDSr2+Xn50sFWfPt7UlMTKQpU6ZYLRv98z8pLPIkHfxMZWW7ttgn7S+rmkp7TeJBaVM2NvHI/QMAwNhMAAD/oLfrp73PdU+PLzTSzdRIQOjuGNFgHINpUjmpoKTSch5w//330wsvvOCp3Ul1WA4Q169fX7yMM6U8lrJTp05ynVuuXstTmZht2LCBCgsLZWymI1FRURQTE2N1CYsM89i5AwAAAAAABBvdmUvuDhsRcXVZm3LlyumeW/Ly5ct0+PBhqyI+e/bskTGTtWvXpkmTJtGLL74o81qapyLhCrDmuTCbNGlC/fv3l8B20aJFcm4TJkyQYj96KsWyI0uLxpEW3bXsAvWfrBoF0qZmVdC1PwAArZDBBAAoefayZKVZmEdPhs92e9uMqqtMq55so6ceA2f7CbS/f4WEMZeaDRo0iFauXGlVKZaDxMmTJ9NHH30k/9dq165d1LNnz+Lr5q6qo0aNoiVLltATTzwhc2HyvJWcoezatatMPWKe45J9+OGHElD27t1bCgwNHz5c5sbU63yXXGkTvldB5eksFSiH5qjk7pW8SN37BADwVhcnAADw3phLT05BYrtvrbfV0tXW6DG8QevYTHvn73AbjLkM/OCSu5xyIPftt9/K1CBr166lf/zjH5Jp/OWXX3Ttq0ePHlIcyNm0J88//7xcHOEs57Jly3QdFwAAAAAAwBtMqBar3TfffEN33nkndevWjdq3by/ZSh5ryZlLDgb91mU15vJiHXUfqs2pJK1pcBCPyAWAUoeMJTiCrDZAyXWLNVotVktlVFfH1rre3raOzkfrsext4+ox0lpx1955QRAGl5GRkfT555/T6NGjafHixZLB7Nu3L/m7sjVUd94rBWpsZU6cemgiamRJe35XVQ+XQAIAADDOm2OjAIKd3q6dRsdN6uEsqNT7Y5PWqrJa9umpQDyQFCJzqd1vv/0m7dSpUyklJUW6xP73v/+lihUryvKWLVt6/iwBAAAAAAAgsIJLnmPS3P3VPF7SXJSHlxcUqOqq/qbGq6qQz8nJKoMZml9O2tivVXuudaG0YZlIXQIAgO/wRjESgGCgpaCPpzKBevbliYq1ejOszs7RUTbWVddbR/vUUuXW35mCeFSd7uCSpwvxlC1bttDcuXNlnkrOgq5YsaJ4mhH2xRdfyBQjvP78+fNSMIiDW0vZ2dmSRV2+fDnl5ORQv3796K233qJq1arpOpdzzctKW36VejWcuUcFmfl/qaqxdZqfkvbEjppu3msAAADvwLQ2ANp5IqDR073U3X3qYXT8pp5usVqrwzo6N3v7ChQmH+oW6yre8jTdabg6deo4vejB04y0atWKFixY4HA9Tz8ye/Zsh/vgQkKrVq2iTz/9lDZv3kynTp2iYcOG6b1bAAAAAAAAASXTRbxV6plLTxowYIBcHLn33nulPXbsmN31GRkZ9N5778lUJL169ZJlXGSoSZMmtH37durYsaPmc4m+oLq9huapzGXN+aqb7JExav7LlC1FGcsozbsEAAAoFchgApRuxs8bBbeMvK89UZjI3e68Woocuaqk629MPpS5dBVvBVRw6S5O7+bl5VGfPn2KlzVu3Fjm3ExKStIVXIaOTZP25NHK0lbeoaLIMofVi6MAQSUAAPgZVG0E8KySqBar9X3rjUrR3uzOq2cqkuJth+g+DShlfh1cpqamytQocXFxVst5vCWvAwAAAAAACJSpSHJycuRiKSoqSi6+wK+DS08+KdkfVKLQsHAK63dFrp9tX/QEFagXR70mKOgDAAD+Dd1lAf7H2ftAa3dXPe8pT81FaXuOerY1ct7u3g8ttwu0arHeNGvWLJoxY4bVsueee46mT59Ofh1ccpfU/fv3y/+bNm1K119/PZW0hIQEys3NpfT0dKvs5enTp2Wdnicl7qa+FN+vH4X+parGUqR1DeHyEWrsJQAAgL/TWv0RAMhj4w2NVlV1p1us1uBYC70BrKvlgczkxalIEhMTacqUKVbLfCVraSi4TEtLoxEjRtCmTZuKAzoO7niuS54OpEqVKlRS2rZtSxEREbR+/XoaPny4LDt48CAlJydTp06ddD0prRcu8vr5AgAAAAAAGOVLXWA9ElxOnDiRLl26RH/88YdUZWX79u2jUaNG0aOPPkofffSR5n1dvnyZDh8+bDWH5p49eyg+Pl6K8vDclhwo8vQi5sCRcVaSL7GxsTRu3DgJFPk2MTExcn4cWDor5mPvSam3poD7wFJ2JVUl9sJ1YdLmFiVE952sbmzuFgAAAD+BbrMQTIxkF20zgGbuVHB19/ztnYezbYxWuXV1n7VWifVGISJf40vVYl3FW6UeXK5Zs4bWrVtXHFiau8Xy3Cl9+/bVta9du3ZJxtPMnE3kQHXJkiX01Vdf0ZgxY4rXc8bUtl/xvHnzKDQ0VDKXPI6yX79+9NZbb+m9WwAAAAAAAAEVXO5yEW+VenBZWFgoXVFt8TJep0ePHj3I5KRT8ujRo+XiTHR0tAS27k4MevTWSGmrb1HnU/2mv6U9cUGlLnMuq/XIXAIAQKALpgwDBC972UajWXs9U5G4GkPpifea1l4IRqZQ0Tsdi6Njajk/cJ+reKvUg8tevXrRY489Jt1fa9SoIctOnjxJkydPpt69e5O/Cs1RvzCc6q6u151VTdqw9iqorFBUXDa7UimdIAAAQAnDl0AI9h9RtFZX1Vqkxx6tXXC1FAvyZAVXR9u4CkiDsYCPLRMFL92JuDfffJMuXrxIdevWpQYNGsilXr16smz+/PneOUsAAAAAAADwabozl7Vq1aKff/5Zxl0eOHBAlvH4yz59+pA/M9XKlrby99HShmflS1uuq/rVJSxU/QaR/XPVUjtHAACA0oLpSyAYuCrco7UbqZbsoqspSBydk56MoKuMqztTqCBD6R9jLv1insuQkBC66aab5BIoyu4qI22mKgpLl2uq+S4LstQ40vyT6rqqIQsAAADeHjcG4E3OXqtaX8daq8s627ej4EzreEkt+zY6hlTLPt05FgLUwKM7uHzjjTecrufpSLTasmULzZ07l3bv3k0pKSm0YsUKGjp0qKzLy8ujp59+mr755hv666+/ZNoRzo6+/PLLxWM9GU9XwtOPrFq1qrhq7Ouvv07ly5fXe9cAAAAAAADcY6KgpTu4nDRpEtWsWZPCwsLsZjT1BJeZmZnUqlUrGjt2LA0bNsxqXVZWlnS/feaZZ2SbCxcuSCGhW265RUrqmo0cOVIC07Vr10pAylOXjB8/npYtW6brfoXmqraw6BHJrqpeFWV3qCC17bD90u7a+L8pWAAAAMAa5sqEQKyK7AvZOj3H0rqtqwJFWo/n6WJGEGTdYjm4q1rV/bGHAwYMkIs9nKnkgNG2mNANN9xAycnJMunn/v37Zd7NnTt3Urt27WQbLio0cOBAeuWVV6wynK5k1lLBZGS66iPdpr2abPQXulbanT80ljZ4e1ADAABohyAT/JHesYl6xkdqrThru703u6truV+ePC9H5xloQaUpiMdc+tW0jRkZGZIdjYtTc08mJSXJ/82BJeOus9w9dseOHaV4pgAAAAAAEIxMJu9dAjJzWRqys7Np2rRpdNddd1FMTIwsS01NvSqDGh4eTvHx8bJOj/pfZEp7+gbVDXb3wbrShqmisQAAAGAAMpgQSIwU8HG1D9vl3uiKa0trBlbLeTlaHmjZSPBicLlv3z6HwVvLli3J03gs5R133EEmk4kWLlzo9v5ycnLkYunvrtEUGh5OFf5WPwlUfr9A2pMT1RQlEdsqSJtdye3DAwAABB09X4QRiEJp0RvAaQ20nK1zNSWJoyDU2TQneu+Xnq6v+MHINVMQd4s1FFz27t1bAj0z7qrK17ktKFBBmacDy+PHj9OGDRuKs5YsISGB0tLSrLbPz8+XCrK8zpFZs2bRjBkzrJZV7tKXqt7Y36PnDgAAAAAAECx0B5dHjx6lkmIOLA8dOkQbN26kSpWs04adOnWi9PR0mcqkbdu2sowD0MLCQurQoYPD/SYmJtKUKVOslg388TkKjTxFGV+pIkCF91yStlzRLw9XIlXmEgAAALwLmRHwVXqzjvZuq/cYWrKiWrvp6p23U8tttHL2fg64rrQmZC41q1OnjscOfvnyZTp8WFVlNQeue/bskTGT1atXp9tuu02mI1m9erVkRM1dcXl9ZGQkNWnShPr370/3338/LVq0SILRCRMm0IgRI5xWio2KipKLpUvf1pY2p6K6XrChirSRPc5JG6GGZFIeYkwAAIASoaerIYA36a22ans7e9s6orXLqrMAUOuUKlrOQW/gGjABIvhfQR+e0qRnz57F183ZxFGjRtH06dPpq6++kuutW7e2uh1nMXv06CH///DDDyWg5K66XCV2+PDh9MYbb5To/QAAAAAAAGD+UNU1IINLDhAtx27acrbOjLOYy5Ytc/tcLnZQhXuqfasymoVhavnpFDXGM6xBoWoz/Wr2FgAAgICB7rLgaxlKI69FV/uy3U5LdVlX5+HqvPVkXI2+75zdDtnOwOE3U5F4W8Ut0dJeqklW3WND8lQwGX5JtSbElgAAAKUKQSZ4grOxi1q21TvG0UhlWXvr7Z2j1mlMXG3vaL0WnpiKJGC61pooaCG4BAAAAAAA8BATCvrANff8Je25N+tKW+/WA9LuXtNU2uo3npD2xI6i1CYAQClApgbgf/A+AHd4M0tm77Naa3dYR/vQ8vmvNQtqe0569umJrsGaz3+I27sEXw8uuWgOz2fpiKfnuSwp+36qJ23rx1T12hMzGkqbPUiNtTyVjj9gAFD6UD0TAMD3uTOlh9bPdXv7Nlol1lnAq3d6Ez3Buie60vokEwUt3cHlihUrvHMmAAAAAAAAEDzB5ZAh1vnpL774QuambN68Od1xxx269rVlyxaaO3cu7d69m1JSUiRwHTp0aPF6no5k+fLl9Pfff8u8lm3btqWXXnqJOnToULzN+fPnaeLEibRq1ariqUhef/11Kl++vK5ziWuq5rM8cqGStBXz1U8OEUWFfKJq50t7RddeAQC8C4VNAABKrneI3sI+WooFae1u6uwcPFUsyN7joGUOT2fn6UzAZSyLBPOYS7dqn86ePZvuuusuWrNmDY0bN45mzJih6/aZmZnUqlUrWrBggd311113Hb355pv0+++/09atW6lu3brUt29fOnPmTPE2I0eOpD/++IPWrl1Lq1evloB1/Pjx7twtAAAAAAAA0CnEpGUySQeaNm1KiYmJdO+999KGDRto7NixdOzYMUP74nGctplLWxcvXqTY2Fhat24d9e7dm/bv3y/nsHPnTmrXrp1sw4HuwIED6cSJE1SjRg3Nx2/wr1elDbuifmmIvKiWV9+WJe2lumWkPdcseH+JAAD/g4wmAIBzWqb2cHUbI+Phje5DS+ZS77hNLbczMhZUy/bObnMocTL5o7rvv+y1fR+770kK2Gqxp06doo4dO8r/uT158iR5S25uLr3zzjsSXHK2kyUlJVFcXFxxYMn69Okj3WN37NhBt956q+b911qnur1euC5C2qgBKjt66Fo14WVYTLa0oUdVkAkA4A/QbRYAwD5PVF91xJ3gzBPnYrSwj57zNtot1lkhokDrHhuM3AouuTJseLjaRVhYGBUWqsqqnsRdXUeMGEFZWVlUvXp16f5auXJlWZeamkpVq1a12p7PJz4+XtY5kpOTIxdLhYX5FBqKmVkAAAAAAMAdIRSsdEdTbdq0KZ6K5MqVKzR48GAptuNG71qnevbsKQWDzp49S++++64UDeKspG1QqcesWbOuGh/acHR7ajS2AxXOrS3XK5S9LG2d5hek/WP1ddLmVXDjzgAA+GFZfACAYKG1iI7eOSpt/6+FkQygs+PrOQc9fys82UMmYDKYJgpauoNLyzGRtpVjnY2XNKpcuXJ07bXXyoW73jZs2JDee+89GeuZkJBAaWlpVtvn5+dLBVle5wjfdsqUKVbLhgx+nbKeDafksWqezpqvqSDzVEKYtA3u+kvaA1vre/w+AgCUFG901QIACNQf3bRWcHW0vb11zo6v5xh67purbrBGugh7Y9jFVfuyDjUgEIPL5557jkoTd701d2nt1KkTpaeny1QmPE0J48JCvI3ldCW2oqKi5GIJXWIBAAAAAMBtJgpapRpRXb58mQ4fPlx8/ejRo9IFlsdMVqpUSea0vOWWW2SsJXeL5SlLuGjQ7bffLts3adKE+vfvT/fffz8tWrSI8vLyaMKECTJGU0+lWJb5pCoP26KoO+zJKipDeb5tnrSNI6zHaAIABAoU/QEAMFZF1VWW0UjXT62Fc5ydt5ZttZyjs/O03VZvl2J76yAIg8uKFSsWj7m0h7ukarVr1y4ZU2lm7qo6atQoCRYPHDhAS5culcCSg8327dvTDz/8QM2aNSu+zYcffigBJU9NwlVihw8fTm+88Ybeu0UXt6gxnJG/x0t7oa8qThSSq6YCPfxOY7VhQ927BgDwC0ZK6QMABDOtwae9dZ4+lpFtjVSgNRp4BxUTCvpo9tprr0nLBXweeughev755w0X1+nRo4fTQkBffPGFy31wlnPZsmWGjg8AAAAAAAClFFxyVtFs4sSJkimsX9//i9zkxqg2pZN6SMolq+vfPzZX2geaD5c2HQV9ACBIoLssAAQyZ59tWrN0euaN1FrQx8j5OmI0m2gv4+qqAq075+f31WFtmDDmEir/prrBho1W1WfPXionbY/Fj0sb3UpNSQIAEGy0fglB8AkA/sRZYKN1DKWeoNPTgZS9AFDrmFAjQbHefbsTzEMQB5fOxl8CAAAAAAAEFRMFLd3B5bBhw4r/n52dTQ8++KDMRalnnKQvOj8sS9oar1aStlIFNb/l2VZqfaVymdKeoIqldYoAAH47VxwAgK+xl0kricyZ3gyfkXkutZ6Do2Nq6Rardbmj/dg7j4BhCt7km+7gMjb2fy+Ce+65x62Db9myhebOnSvzVKakpNCKFSto6NChdrflIPbtt9+mefPm0aRJk6yq0/LYz1WrVhVXi3399depfPnyus6l8sdlpT12Z760Zf9UVWILotVPDwWvJ6gNOxq7rwAAgQ7l5QHA33lqrLm922kdc2l0fKeR8/bEZ7UnK9Oie2wQBpeLFy/22MEzMzOpVatWNHbsWKuMqC0OOrdv32537sqRI0dKYLp27VqZ53LMmDE0fvx4VJAFAAAAAIASF4Jusfrk5+fTpk2b6MiRI3T33XdThQoV6NSpUxQTE6MrYzhgwAC5OHPy5EnJTH733Xc0aNAgq3X79++nNWvW0M6dO6ldu3aybP78+TRw4EB65ZVX7Aajjpwfobq91l5SRtoqTx6Sdvevqjps2GOpasMdNTXvEwAgWKHSLAD4M1dZRVfba+kC6io7p2Wfttt6I/PqbsVce/u05fBxHmLo9MGfgsvjx49T//79KTk5mXJycuimm26S4HL27NlyfdGiRR47ucLCQrr33nvp8ccfp2bNml21PikpieLi4ooDS9anTx/pHrtjxw669dZbNR+rwmoVFGcXDak8M7uetBGd1NjL0+uKgsoKbt0lAICggiATAHyVJ8cA6vmMcxUsGqnwqnWcpjufwa6mInF1/4Lq899EQUsNLNThsccek2DuwoULVKaMyvIxDuTWr1/v0ZPjgDU8PJweffRRu+tTU1OpatWqVst4+/j4eFkHAAAAAAAAPpq5/OGHH2jbtm0UGRlptbxu3brShdVTuMgPF+b5+eefPT7dCWdY+WLpfMN8CgkPp/LHi451l5rXMnJjFWkL/hdHAwCATu4UeAAA8DfufLYZyQS66sarNZPpbN9675urY9g7v4Ap5GMK3mqxoUa6qhYUFFy1/MSJE9I91lM4iE1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N+DABAACAUmYvoNIzhtIZZ2MuPcVZl1tX5+Oqy6qWx0TrMYJynksTBS010FCHixcvOr3owUWAWrVqZXcaEZ6ihAPNv/76i1auXEm//PKLzHPJU57w7cwmT55Mq1atok8//VS65Z46dYqGDRum924BAAAAAABASWYu4+Li7FaF5WCQlxcUFGjeF4/d5Is9hw4dou3bt9PevXtlmhO2cOFCmfvyo48+on/84x+UkZFB7733Hi1btox69eol2/C8mE2aNJHb8nQpWkVvqCBtWpc8aWstj5Y2pav66SE3zn8r4foyZCwBAAC8z0gmKtA5y6wZqQZr9Li2WURXRW6MFL3xRKEcbwxx0lIIyS+ZKGgZ6hb72WefUXx8PHkTd3Fl0dEqyGOhoaEUFRVFW7duleCSu9Pm5eVJNtOscePGVLt2bRkDqie4vHitehXU/1i1mVPOS1t2XRVpL7VU5xNxMsoj9w8AAACgpGgJADBU5X/0du3UE/jp7ZpqpJKq1rGhWm/n7HzcqUTrMmD1126xQcxQcNmlSxe7c116kjlITExMpLfffpvKlStH8+bNoxMnTsj4TJaamkqRkZGSTbXE4y15nbPA1Ry8mpny8ykk3NDDAQAAAAAAIIK5v6PPRlMRERH0xRdf0Lhx4yRLGhYWJhlK7kbLXXDdMWvWLJoxY4bVsppNb6JazfrRueaRct30vcpYRt50Vm1wRnWbBQAAAAhEKLb3P1rncnTEWebP3QymFq4ygkb2rXefjm5nZB9+x0RBS3dwyeMq7Y259Ia2bdvKtCc8tjI3N5eqVKlCHTp0oHbt2sl6Hn/Jy7mSrGX2kqvM8jpHOBs6ZcoUq2XXv/o2nQ0PpRa9Dsn1i09cI+2Z3MrS1ht2QtoTJ2t64Z4CAAAA+AZvjDP0N1qnAXEn8NPaNdXRvvUEsL70nDkb/4tusUEYXHLWsHfv3hTuoAvpzz//TJ4WGxtbXORn165d9MILLxQHn5zhXL9+PQ0fPlyWHTx4kJKTk6lTp04O98fjNvliKRRdYgEAAAAAwE0hyFxq99xzz3ns4JcvX6bDhw8XXz969KhkKrkbLI+35OlFOFvJ///999/psccek+lJ+vbtWxx0crdZzkLybWJiYmjixIkSWOop5sMqtFXdXy/+s4a0hS+dkzZnY1mP3V8AAAAAf+WNaqH+Rm+3TU9W6XVWNEjvPJe2t3OnG6qrTGswvk6CWakGl5yF7NmzZ/F1c1fVUaNG0ZIlS6RwDy/jbq7Vq1en++67j5555hmrfXCRH64iy5lLLtLTr18/euutt3SfS+T7qvptXqyaSuXcqlrqekc1p6ZpTlEBo+5G7y0AAABA4HA2fUSgBRIlGUC52rc7U6g42k7PuEhX04d4sgux3zJR0NIUXJrnsPS0Hj16OC3O8+ijj8rFGZ6qZMGCBXIBAAAAAAAAHw4umzVrRs8++ywNGzZMpv5whMdEvvrqq1SnTh168sknyZ+UHX9S2tTvVMayYh813UlothqbmTK+UG140PH9BwAAAAhWlhkpf8hSOete6ur89VREdXRbR11S9Vam1XIMrfuwd7+1PiZaq986O27AMFHQ0hRczp8/n6ZNm0YPP/ww3XTTTVKttUaNGpI1vHDhAu3bt4+2bt1Kf/zxB02YMIEeeugh8jc5b6qxllUeVkHm6c2qWmx+0ZDL3Cp50iK0BAAAAHDOH7pCGjk3rUGnO/fXyGOntauqO4x2g9VyLgEzBQloCy65OiyPj+QA8uOPP6YPP/yQjh8/TleuXKHKlStTmzZtZDzkyJEjqWLFit4/awAAAAAAAB8UgsylNl27dpVLIIq4pAr5nN6gMpZV9uZLe6oLpigBAAAACLQMppaqq666vzrqfuqNDKaW83Z0Xq727ex+e+o5c6cAkd8xUdAq1chp1qxZ9MUXX9CBAweoTJky1LlzZ5o9ezY1atSoeJvs7GyaOnUqLV++3KoabLVq1Yq34XktuSvuxo0bqXz58lJtlvftaC5Oe47epQoWNfhvtrSXnrgkbf5p9WIPyQrz2P0GAAAACCa+HGS6UxVWT1Dnqtuoq+1tlzuj9bw88bzo3XcgVxUGotDSPPjmzZvpkUceoe3bt9PatWspLy9P5rDMzFTTf7DJkyfTqlWrZM5L3v7UqVNSWMisoKCABg0aRLm5ubRt2zZaunSpTGPCBYgAAAAAAABKultsiJcuvi7E5GwukBJ25swZqlq1qgSR3bp1o4yMDKpSpQotW7aMbrvtNtmGs5xNmjShpKQk6tixI3377bd08803S9BpzmYuWrRIChDx/pxVt7XUePo8abOrqe6xFfeqTOX5tqqQT/VrLkh77uei+S4BAAAAwCNKM6OppVqs3kI+Wu6P1oqzeirTGp2D0hm956n12Fq2PZQ4mfxRm0dUXOENvyzw7cekVDOXtjiYZPHx8dLu3r1bspl9+vQp3qZx48ZUu3ZtCS4Zty1atLDqJstdZy9evCjVawEAAAAAAEqMyYsXH+cz1WoKCwtp0qRJ1KVLF2revLksS01NlcxjXFyc1bYcSPI68zaWgaV5vXmdVuU6nJW27FeVpQ3PUs9exV8ipD2fUtUHw3EAAAAA/+fNKTQ8wdW4R09MZ2K0CI87+9RD775djcX09PmBnwaXXDzHGc4qGsFjL/fu3SvTnXgbFwbii6WIf8dQaFg4RV5S3WBT7leFfcJ2V5C2oMEVaUOPlvH6+QEAAAAEs9IuAOSp7rHO1ukNUI0UxtH7ONrbTutjb2SuSq1zZPqbED/IMPpMcFm3bl0KCVGVVS3x0E1ezgV29JowYQKtXr2atmzZQjVr1ixenpCQIIV60tPTrbKXp0+flnXmbX766Ser/fF68zp7uJLsjBkzrJbVbHoT1WrWT/e5AwAAAAAAgIHg8pdffvHYwTkgnThxIq1YsYI2bdpE9erVs1rftm1bioiIoPXr19Pw4cNl2cGDByV72qlTJ7nO7UsvvURpaWlSDIhx5dmYmBhq2rSp3eMmJibSlClTrJYN7zmXQo9epoOPRqljJ6gutRc3qn6wh2pGS4tesQAAAAAlo7TmRjQ6vYaz7rOeztLpyY5qvR/uPN5G7pfL8x1C/slEQUt3cNmqVavi/3OW8vXXX6c9e/ZIUR2eNkRvV1iuBLty5UqqUKFC8RjJ2NhYmfeS23HjxkkgyEV+OGDkYJQDSq4Uy3jqEg4i7733XpozZ47s4+mnn5Z9R0WpQNEWL7ddl9GiorTRh1VWdleOCnRDHiyUNiwyV22Yjm6xAAAAAKXFl8Znah0n6Yl5Lm23txe4ujuPpbNusa4CUVf3y50ut+A/3ErEPfnkk/TCCy9QdnY2zZs3T3dwuXDhQqkQ26NHD6pevXrx5eOPPy7ehvfLU41w5pKnJ+Gurl988UXx+rCwMOlSyy0Hnffccw/dd9999Pzzz7tz1wAAAAAAAPQzoVqsIZxxfP/992nw4MEybcgtt9xC8+fP13x7LVNsRkdH04IFC+TiSJ06deibb74hd+RHqYxlhb/VOcUdVnF3Xjn1EIXmq+XpDd06DAAAAAD4QPEfPVVXHa030qW1JIrXaOnu6ulz0FqwSEshIn8X4gdBoE8Gl1w4xzyusVmzZsWFdPxR/s0XpL2hxlFp1627XtpyJ9X6+KHqP+k7/ldwCAAAAAC8T09lVK28Ud1UyzkYDej0TEXijWq77nZHxrQjwcGt4JIzj6GhKsPHlWK1ZCIBAAAAAAAClomClu7gsmLFisVTkVy+fJnatGlTHGD6s6x9qqDPt2nlpe3aY5+0f73WWNqMT4oylnVK6wwBAAAAglNJVY31dMbPSBdQV5Vn7e3H6NyZnhQoc1RCCQeXXGDH3jyX/q7836otaJIpbdL2JtJWK/rp4WID1YbkB959BwAAAPA3WsdFeoLebqfunIOr6qz2gjdXYysdnZeW83QUsLq6z8E95tJEwUp3cDl69GiPHXzWrFlS+fXAgQMy9Ujnzp1p9uzZ1KhRo+Jt3nnnHZmu5Oeff6ZLly7RhQsXKC4uzmo/58+flylKVq1aJVlUrizLU6SUL6+ykAAAAAAAAOBjwSVP+ZGSkkJVq1Z1++CbN2+W+Sjbt29P+fn59NRTT8m8lfv27aNy5crJNllZWdS/f3+5JCYm2t3PyJEj5ZzWrl1LeXl5NGbMGBo/frwEpVpd7qYylk0qnpd2/34VwIaOVUWK8g9XkTYiPczNew0AAAAQ3LxZ3MUb1WK1Ziad3S8tmTxn612dk71tjRb60ZJdNPocanls/J6Jgpbu4NKTRXvWrFljdX3JkiUStPK0JjynJZs0aZK0mzZtsruP/fv3y3527txJ7dq1k2U8HcrAgQPplVdeoRo1amg6l8qxKrj8c2N9aaNaqRf5yVQ1FjP2gAoqsxIM3VUAAAAAKOKNaqaeoLUarNYuoZbbaR2TqDUgtBcAOgpA9T7O9gJuV8cCYIYq8XhrzGVGhnrxxsfHa75NUlKSdJM1B5asT58+0j12x44dXjlPAAAAAAAAR/NchnjpEpBTkSQkOE7fFRQUGDqRwsJCyVJ26dKFmjdvrvl2qampV3XRDQ8PlwCV12mVnllG2rAcmxVXwuwvBwAAAAC3eLIQjtFjG5lD01VVVi3ZRVcFcLSev5HHz5OPu69ln32CiYKWoeDys88+05Vd1ILHXu7du5e2bt1K3paTkyMXS7mZRCER4UQts+R63ZiL0h47FCPt5VpePy0AAAAAn1EaQUNJHsudqT28GZwZHYPpbJ+uztdZ8OzNHwBcjV2FIAguuUssZxc9UdDHbMKECbR69WrasmUL1axZNJ+kjixqWlqa1TIuDsQVZB1lWLlK7YwZM6yWxQ3vRfG39TZw9gAAAAAAAIo/dF8NyII+vC+eQmTFihVSsKdevXq699GpUydKT0+XIkBt27aVZRs2bJButh06dLB7G646O2XKFKtlvR5ZRKFrwil2tJrwsmqZy9Jm/azub91HD0i7a6Oa/xIAAAAgkPlq0Z3S7BZrZJ5ITzFS0MfVPlwt17KN3nk57RU5cniMIU7vDgRCcLlx40aPdYnlrrA8XcjKlSupQoUKxWMkY2NjZd5Lxsv4cvjwYbn++++/y7a1a9eW82jSpIlMU3L//ffTokWLZCoSzoSOGDHCYaXYqKgouVgKDVMPRYMKZ6Xd8vn10lbOzJf25KyGasOOHrnrAAAAAH6hNMdFepMn7oeRINNVN1i9wZqWY9ju29V2nhh3amRMqdHxpz7HREFLd7VYzi5ywRxb3BX16aef1rWvhQsXSoXYHj16UPXq1YsvH3/8cfE2HDC2adNGgkfGU5Tw9a+++qp4mw8//JAaN25MvXv3lilIunbtSu+8847euwYAAAAAABCUXnrpJercuTOVLVtWZuMokcwlB27r1q2j6667rngZd0kdPXq0dHN98cUXPdrFdvr06XJxhjOYnAF1R2Z1Nb1KRp7KmLYZsk/ao4cbS5sdb2jWFgAAAICAEqiZTC2FbhzR0gXU0+fmLLun9TnyRJEgrVlGLdVtA6VbbIifZi5zc3Pp9ttvl2GH7733nqF96I6Y7rvvPrrxxhtpz5490gX1qaeekus333wz/fzzz4ZOAgAAAAAAAEoPFzydPHkytWjRwvA+dGcuOTNZsWJF6cp6zTXXSPXYzZs3U/v27cmfRdr86LLrpJp7pKCtir/Dr5TGWQEAAABoF+jTh/haVtZINk9rxk/r1CTOzkfv+Rt5/QR64SdDTCU7paK9ejJ+Nc/l1KlTpejOgw8+SJ988onfB5Ysp696QyQdqi9tl+uOSHtiser+G/NEsrQHtqr1AAAAAL4GX/S9Uy3WaIEce/s2UujG09wJIrXuI5hfiyFeDC7tTan43HPPuRxG6LPB5RtvvFH8fy6uc/fdd8vUHpzNZI8++qhnzxAAAAAAAADI3pSKzrKWTz75JM2ePdvpPvfv3y/FUUsluJw3b57Vda7uumTJEvk/d5H11+AyMqJA2qzL6iH58WADaWs+dkbajFdqqw0xFQkAAAD4uGDOGnmCO/NButrOaMbS2XOq93n2xBQqRosDOcsUB85UJCav7VpvF1juccqFV52pX99zPTN1B5dHjx71aFr3iy++oAMHDsi8llz6liPrRo0ayfrz589Lmvf777+n5ORkqlKlCg0dOpReeOEF6ZZrxuseeughmYOzfPnyNGrUKNm3vSlTHKkXd17aA7nqNk2rnZb28HI1v+Xlu9Sgy9CjhnoSAwAAAJQ4LePywP2unkaqreo9l5LoyupJWrsSW2571TZ+Wi3Wl3D8xJeSEu5OqVoONBs0aKAriLPEhYAeeeQRGbPJ82Ry5dm+ffvSvn37qFy5cnTq1Cm5vPLKK9S0aVM6fvy4jPPkZZ999pnso6CggAYNGkQJCQm0bds2SklJkYq2ERERNHPmTKN3DwAAAAAAIGimIklOTpbkHrccY/HsIOzaa6+VBJ4WISYtk01ayMrKookTJ9LSpUvl+p9//impVF7G1WO5X69RZ86coapVq0rQyeM57fn000/pnnvuoczMTAlqv/32W5kGhQPOatWqyTaLFi2iadOmyf4iIyM1HbvxdNXdN+HGk9IeO1nZan3tz8OkTemIzCUAAAD4v2DPYLqTbXQ1n6WzfRut6Gp7LGfdS/VWidV6Oy3npWdfrs7jjyG+UaRGr053/8tr+05aNtVr++bus+YYzxL3DuWZQrQINzKI9Ndff6VNmzZR//79i5f36dNHqhS5E1xmZKgXUnx8vNNtYmJiirOlSUlJMheLObBk/fr1k26yf/zxB7Vp00bTsQuLYtAKkaq0b4U9qi9z7MAUaa9USjB6twAAAAB8TrCPy3Q2vs/R1CKOxhu6E1Q6oicANHp+Wm7nKIjUOlWKnvGnAfMaNJFf4jo65lo6RukOLr/88kv6+OOPqWPHjlLAx6xZs2Z05IiavsOIwsJCmjRpEnXp0oWaN29ud5uzZ8/KeMvx48cXL0tNTbUKLJn5Oq8DAAAAAAAA7ws32nXVFndTtQw29eKxl3v37qWtW7faXX/x4kUZW8ljL92dx8Xe5KPXtD1KoZHhdD67rFy/UhSvXvm5urT5PdT2ESd9Y4JSX6ZlvigAAADwDcH6t1pPt01P7FvrPJfuFO4xkpl0l9ZjG8pg+mlBn5BCClq6g8t27drR119/LWMsmTmg/Pe//02dOnUydBITJkyg1atX05YtW6hmzZpXrb906ZJ0wa1QoQKtWLFCivWYcSGfn376yWr706dPF6/TOvlozXs6U+37ulLG9+o2keZDhKqm/oo8aY/eguDSFU9WSgMAAADwBmdjF42Og/RGoOpNWgJerd14A2YakSDuFlsqwSVXYB0wYIBUdOUKr6+//rr8nyu1ciEePbiWEAepHDDyGM569erZzVjyGEqez+Wrr76i6Ohoq/Uc0L700kuUlpZWnFFdu3atjMvkLKfWyUf7/WAdbAIAAAAAAIAXg8uuXbtKWdqXX35ZCunwHJTXX399cWEdvV1hly1bRitXrpSspHmMJM9hyfNecmDJU5NwhdoPPvhArvOF8XwtYWFhsp6DyHvvvZfmzJkj+3j66adl344mGLU3+WhM+QKe2IQi+qtqseUicqX94/c60h5/vOgniIMU8LyZXUTGEgAAAHyBlsI4Wm5jb7mWbrGOGClyo3VOSXe+47k6L1fdff0tqxuMU5F4gqF5NXhuy3fffdftgy9cuFBa29K2ixcvllK4P//8M+3YsaN4fhVLPMdm3bp1JcDkLrVcHZazmDw/5qhRo+j555/XdS5HtqsgkkLVqyGhjQp0Gy25LK0pXPWPPXoLBbyArdwFAAAAUAK0VF11xEjwpjWINBIUGz1fCE5uT9rI85788ssv1LJlS5mORA9XU2xy0KllGs46derQN998o+vYAAAAAAAAHmcK3tSlW8HlW2+9RY8++qiMlTx+/DjNnj2bJk+eTP6obNML0l7ZW1Hav49VkTaus3qI0luqgj6RaeRT0IUVAAAAwDP0ZvD0FP5xt1usNwrmaLm/ru6j1vP1xNyfEODB5aJFiyTA5Hkneezkc88957fBZWhRd9i8mmrKkeprVLnYCsezpI09FiltSkfyKejCCgAAAOBZWscNOupm6mi9N87RaGDnbL2RCrpaOevOGyhBZkjwJi7NE20Y8/fffxePl+zevTslJyd76rwAAAAAAAAgWDKXPBWJec7J8PBwue6vLqRWkLZm7XPSRv9DdYM9vPcaacOy1XyeIV68i56o4AUAAAAApTvPpScyb57IGBqtFqulgq6rLK1HigMNIf9koqClO3M5bNiw4kt2djY9+OCD8v+xY8fqPvisWbOoffv2Mg0Jz1E5dOhQOnjQeq6PBx54QKrT8tQkPP3IkCFD6MCBA1bbcMZ00KBBVLZsWdnP448/7teBLgAAAAAA+G+32BAvXQIuc/nll1/SHXfcIcHePffcY7Xuvvvu07WvzZs3y3yUHGByMPjUU0/JvJX79u2TKUVY27ZtaeTIkVS7dm06f/48TZ8+XbbhqUh4GpKCggIJLBMSEmjbtm2UkpIi58EZ1ZkzZ2o+l5CiMPtkakWrXxwStqv2Yh2VucxTCU6vwPhJAAAAgNJTEt/BtGY39UwToncOSq2303JejtZ7Y5oW8H0hJi1zfVjggI4DOM4QetqZM2dkvxx0duvWze42v/32G7Vq1YoOHz4sGc1vv/2Wbr75Zjp16hRVq1atuNDQtGnTZH+RkaoQjyttv/0/ac+dLYoe81W0aSpUV8PLqUxo6NEyVJoQeAIAAAB4jpb5Ih2td7QvPV1ujXbBdXbers5L63Ij52n0ftrb5lCifxYKvXHoXK/t+4cvH6eA6harMxbVJSNDvaDi4+Ptrs/MzKTFixfL1Ce1atWSZUlJSdSiRYviwJL169ePLl68SH/88YfXzhUAAAAAAADc6BbL2cBKlSqRpxUWFtKkSZOoS5cu1Lx5c6t1PN3JE088IcFlo0aNaO3atcUZydTUVKvAkpmv8zqtLhxSAW33jvuk/fFYPWlDD6nuudEtL0t7hUo3c4mMJQBAcELPFYDS443COEa7xQbS/OmB+rkW4gdjI0s1uLx06ZIU3WEcWJ4+fZoWLFggYyNDQkKoadOm9PDDD18V5OnBYy/37t1LW7duvWodj7m86aabpDvuK6+8ImM+f/zxR4qOjjZ0rJycHLlYKojOoZCIcDqcUVmuh4Wr/rA5NVTV2NwLZaVVtXEBACCYlcYXokD78gVQ2jxSzVTHdkbHRTq6fWlVntU6ftMRPd15wf+47BbLhXa4WA4HdoyDumuvvZY+/vhjCTjLly9Py5cvp4YNG9L27UXVb3SaMGECrV69mjZu3Eg1a9a8an1sbKzsn8dhfvbZZ1ItdsWKFbKOz42DXUvm67zOUZVa3qflJePrjYbOHQAAAAAAoJjJixd/z1zy/JVRUVF05coVuf7Pf/5TqsRyV1XOWprHYT700EM0depUCT614ttNnDhRAsVNmzbJWEott+GLOfPYqVMneumllygtLa24yBB3m42JiZGMqj2JiYk0ZcoUq2X9fphBoZHnKGWfyr62aX9Y2t2X66jj5ukengoAAAHKE/O5AYD/0Jpt1JK9c7SNu5lNI7d1VXxHy21sl7tbFAmCoFsszy/JXWPZnj17aMmSJcWBJeP/83jJNm3a6O4Ku2zZMlq5cqVkQc1jJDmTyFOd/PXXX5Ih5alH+BxOnDhBL7/8sqwbOHCgbMvrOIi89957ac6cObKPp59+WvbNQbE9vNx2XeWYXH6508l4bol+PVFD2jofq/uZXzZM2rTrdd1FAAAIAgg2AQKDo2DR1Xp3pvLQGmSWxJR1RvbtTnVY2+MGihA/yDB6i6Z0HGcHOchjPK7y2LFjV23D805ytlCPhQsXSoXYHj16UPXq1Ysv5mPxmMoffvhBAknuinvnnXdKEMrzWZqzlDw1Cnep5ZbPk7OqPM/l888/r+tcAAAAAAAA3FZo8t4lEDKXnJW88cYbZdzjXXfdRf/4xz+ksE7nzp1lPXeFffzxx6XQjienNalRowZ98803LvdTp04dTds5k/6q6v7aPXG/tBGhBdL+fUotPz4kzq39AwBA8DDSbQ0ASpaeAjnudje1t41e7mRHtR7bWUVX2230ZiidbVeSFXHBB4LL1q1b06pVq2j8+PF0/PhxysvLkyDT3DWWs4b333+/dEv1V2daqW6vcTmqKuzpf6vxn2f+qcZ2xvyktsuyXyMIAAD8RGkHdwgqAXz3s8BRcOMqqPTG54qrgMte4OpOgOdq31r35eqxCYpqsSYKWprnueSuq3/++adUauW5LnleSlaxYkVq0KABlSun5oMEAAAAAACA4KM5uDRr3LixXM6ePSvXK1dW80L6u/ymmdIe3Fxf2pwb86VtOiNd2kP3qyqyIfn/K2QEAAD+pySKYgCA79OSSTP6OeGJzxdXhX+MHN9TmU13bmsvUxxon8MhyFxqk56eTv/3f/8nBXcuXLhQnLkcMWIEvfjiixQX57/jEqtVVNVwT1SPlLbKNvXQHB6r+sHWXK+qyJ7srtYDAIB/88bE6QAQGN1itVaLNdPTBdRT4wvdCdL0jMk02gUYn5vBSfPkjefPn6cOHTrQ0qVLafjw4fSvf/1LLsOGDZOpSbhSqzng1GrWrFnUvn17qQDL1V+HDh1KBw8edFj8Z8CAATLO88svv7Ral5ycTIMGDaKyZcvKfri4UH6+yjwCAAAAAACUGJPJe5dAyVzy1B6RkZF05MgRmY7Edh3PN8ntvHnzNB988+bNMh8lB5gcDD711FOyn3379l01hvO1116zmlvTrKCgQALLhIQEmaIkJSVFpiKJiIigmTNnaj6XsFA1hrTldX9Luy9dFfQJKSr5mzxQPVRhqvcsAAAEEXSlBQgORue11NIN1dV8llrPzd6xXJ2H0YysO1zN4+np44GfBZecLXz77bevCiwZB3ZcKfbBBx/UFVyuWbPG6jpnQDnzuHv3burWrVvx8j179kiWdNeuXTIPpqXvv/9egtF169bJuXFl2xdeeIGmTZtG06dPl4BYi4JClcQ9tE6NuSxooKrEVl2vbp8Tp9ajWiwAgG8pyYAPX4QAAoezrqtGK6Ha0jKe05vcHTOq57Zagkmt5+nvU5KE+H6CsfS7xXJGsFmzZg7XN2/enFJTU906mYwM9UKKj48vXpaVlUV33303LViwQIJYW0lJSdSiRQuroLdfv3508eJF+uOPP9w6HwAAAAAAAF1MXrwESuaSq8IeO3aMatasaXf90aNHrYJCvXhqk0mTJlGXLl0kUDWbPHkyde7cmYYMGWL3dhzQ2mZTzdf1BLuZuSpDGX1OXc+urh6aM+3Vs1hjs2qzEjTH4wAAUALQZRUAjHD2meHoc8UTmTVvZOk8XdVWS5EjrVlcPed21bb2v/5DIASXnA3kSrFr1669qqtpTk4OPfPMM9S/f3/DJ8JjL/fu3Utbt24tXvbVV1/Rhg0b6JdffiFP4vPli6WopeUpNCycbnjiJ7m+LrmRtKGbzW8ENSYTAAB8k96JvgEAHNHbLVYPrbfV083UVTDs6Pw92S3W0T70VKK1d3x/FOIHhXe8RXMajov1cCXXhg0byvhKDvxWrlxJL7/8sizbv38/zZgxw9BJTJgwgVavXk0bN260yoxyYMkFhHiKk/DwcLkwrlbbo0cP+T93lT19+rTV/szX7XWjNVepjY2Ntbqc3Lfe0LkDAAAAAACAjswlB308vvHhhx+mxMREmRqEcQXXm266id58802qVauWroPzPiZOnEgrVqygTZs2Ub16qkKr2ZNPPkn/+Mc/rJbx+EouGjR48GC5zlOgvPTSS5SWlibFgBhnV2NiYqhp06Z2j8vnP2XKFKtlrVe+RmkROfT1uvbq3Mxhdw11P6PTr65UCwAA+pRGFhEZSwDwFr1dRPVwlSV1Noemo3144vPQk/Neusys+mu32EIKWpqDS8bB37fffivzWR46dEiWXXvttYbHWnJX2GXLlkkGlOe6NI+R5EximTJlJPNoL/tYu3bt4kCUpy7hIPLee++VjCrv4+mnn5Z9R0VF2T0uL7ddFxKh66EAAAAAAAAAC4YiqooVK9INN9xA7lq4cKG05i6uZosXL6bRo0dr2kdYWJh0qX3ooYcki8nzY44aNUq68erRstZJaUNrq0xlymsNpI39RXWxvdjaXDQIGUwAAKNQfAcA/IHWgj6eLPSjtciOvfV6P1NLsxeJJ8Zz+rqQIB5zWarpOnPXWndvU6dOHfrmm2/cOpc9x9RYzyqVLkmbVVf1iy33cJ60ES/nF22pbd5MAABwzEj3KQCA0qK3e2lJB1J6g+GSOLYtfK4HB/QFBQAAAAAA8BQTBS0El0Xi4y9Le+ZQJWkLr1OZypzttaUtq2YmAQAIWiX5qzN+2QYAb3OWXfTUXJT2uq46O77tbeydi739ae2268nzdnQbIwV//H3qkauYgje6RHBZJCupsrSxHc5L26DiOWkrRmZJu/e1lmq7BIy5BIDghPGSABCsPFkZ1VOBlL1z0LpvV/dHS3devd1gnW0faPNcBjMElwAAAAAAAB4SEryJSwSXZqGqbg/l5KqH5M/PGkp7pWgmlDons6U91yy6lM4QAMA3IIMJAIHOaJdVLV0/XWUwPTE3pavzNPL57amuts6yogEzz2UQK9XgctasWfTFF1/QgQMHZF7Lzp070+zZs6lRo/8NcORpSjZv3mx1uwceeIAWLVpUfD05OVmmItm4cSOVL19epiLhfYeHa797mU1zpG1YMV3aP5uWlTbinNrHiYlF0edBBJcAEBjcDQ4RVAKAP9MypYe7XT69OZ7T2ZhLW3rO09F+PPXDojtTqPgNU/CmLks1uOSg8ZFHHqH27dtTfn4+PfXUU9S3b1/at2+fzFdpdv/991vNW1m2rAr8WEFBAQ0aNIgSEhJo27ZtlJKSQvfddx9FRETQzJkzS/w+AQAAAAAABKNSDS7XrFljdX3JkiVUtWpV2r17N3Xr1s0qmOTg0Z7vv/9egtF169ZRtWrVqHXr1vTCCy/QtGnTaPr06RQZqW1eyka1U6U9v1RVhw1vVnRstZjiN0ZJe7K7gTsKAOCDMBcZAAQzPdVi9dJze6NVVrVkAF1lYt0p6OPqGLbZUGdFjmyv+3tBn5BCClo+NeYyI0O9kOLj462Wf/jhh/TBBx9IgDl48GB65plnirOXSUlJ1KJFCwkszfr16yfdZP/44w9q06aNpmMf21JH2jLDVbXYkL3qHHKKTiUsJ4hfJQBQ6jANCACAZ2mpXqr1s1dLl1dPVFW1dztn22oNNp0FoZ76+4Mxl8HBZ4LLwsJCmjRpEnXp0oWaN29evPzuu++mOnXqUI0aNei3336TjOTBgwdlrCZLTU21CiyZ+TqvAwAAAAAAKDEmjLksdTz2cu/evbR161ar5ePHjy/+P2coq1evTr1796YjR45QgwYNDB0rJydHLpYK8/MpNDycLl1WBXtC6mVKG/nT/8Z+AgCUFq1dmQAAwDijFVE9UY3V3W6yeo7riYq04ISJgpZPBJcTJkyg1atX05YtW6hmzZpOt+3QoYO0hw8fluCSu8r+9NNPVtucPn1aWkfjNLmS7IwZM6yW1b63E9UZ1YVCi14NYaGqG2zotqJ9Juaq/+xFtVgAKH0YLwkAUPL0dpO1d1tvBJmuzkvrenvn72pcpKvKs1rPAQJDaGke3GQySWC5YsUK2rBhA9WrV8/lbfbs2SMtZzBZp06d6Pfff6e0tLTibdauXUsxMTHUtGlTu/tITEyU8Z2Wl1p3qaAVAAAAAADAqBCTyWsXXxde2l1hly1bRitXrqQKFSoUj5GMjY2VeS+56yuvHzhwIFWqVEnGXE6ePFkqybZs2VK25alLOIi89957ac6cObKPp59+WvYdFaUqvNri5bbrypXlJyuPUr9QhX3SW+RLG9dePURlP1YFhK4UVZEFAPBFnqp0CAAQ6IwUmHFVAEdPBtBVJlNPt1ijXWk9US1WKz1FjsB/lWpwuXDhQml79OhhtXzx4sU0evRomUaEpxh57bXXKDMzk2rVqkXDhw+X4NEsLCxMutRydVjOYvL8mKNGjbKaF1OLSwtqSRs19oza78HK0sYeVUEmhfhUT2IAAKfwBxv8CX4MgdKgpXup0TGXtsv17MsIR8d3FWRqCYodHcNVIK5lKpKAZfL9DKO3hJd2t1hnOJjcvHmzy/1wNdlvvvnGg2cGAAAAAAAAeiANV+Rs66Lhp7uqSFOvy9/Spp5SGc2CMqV3bgAAAIEM3bkh0F6L3ngtu1M1Vut5OOu66k4V26BTSEELwWWR3FpqapK6Nc5Ke+TvqtKGx6v15U6pNst+AVoAAABwE6ogg6/SG6xpqRbrqPuo3nOydzxvBn5Gq8XqCYaNPiZQ+hBcAgAAAAAAeEgIxlxCuX2qeuyxAtUtNq7KZWkv5KvusmFHI0rx7AAAAHybN7OLyFhCaXNVvMbIvtydD1LLPJdai+44u52jjKvegj5aXHU+Q3TvAoJ5nstZs2ZR+/btZRqSqlWr0tChQ+ngwYNXbZeUlES9evWSSrA8fyVPRXLlypXi9efPn6eRI0fKuri4OBo3bhxdvqyCQwAAAAAAgBJjMnnv4uNKNXPJlWB5PkoOMPPz8+mpp56SeSv37dsngaQ5sOzfvz8lJibS/PnzKTw8nH799VcKDf1fXMyBZUpKCq1du5by8vJozJgxNH78eJkjU6sqe/KkrT/whLTJn9WXNuQ6NSK34sFsaS/VifbgIwAAABAY3J2yAcCXuJqiw8iUHq4K4ti7jb3ttZyvq/eXkfehq7GVJTnu0+eZfD8IDMjgcs2aNVbXlyxZIhnM3bt3S3aSTZ48mR599FF68skni7dr1KhR8f/3798v+9m5cye1a9dOlnEQOnDgQHrllVeoRo0ams7l+D0F0naLypL2oKrnQ+GZKog9emuktGGZ7txjAACA4IaJ1MEfuCpW485rVm+3WFeFrrRs6+gcHB3TE4xUtUUhH/9Xqt1ibWVkqBdUfLwq0ZqWlkY7duyQgLNz585UrVo16t69O23durX4NpzZ5K6w5sCS9enTRzKbfFsAAAAAAIASU+jFi4/zmYI+hYWFNGnSJOrSpQs1b95clv3111/STp8+XbKQrVu3pvfff5969+5Ne/fupYYNG1JqaqoEn5a46ywHqLxOK1NhiLRJf9eVtlZnNc/l4aNq7pE6K9X6lI4+FY8DAAAYVprd1ZCtBH98T+jtLqtn3+6cm9ZMq6Ouqs66sOK9Cn4ZXPLYSw4YLbOSHHCyBx54QMZRsjZt2tD69evpP//5jxQEMiInJ0culsIjrlBoRDjlZqmqsBnf1JQ2tKfaLuJi8ZaGjgkAAOBrgnpMFICPdBfVOubS0X6cnZ/e97iRbutaz1fLeQdK99iQIB5z6RNpuAkTJtDq1atp48aNVLOmCupY9erVpW3atKnV9k2aNKHk5GT5f0JCgnSftcTFgbiCLK+zh4PS2NhYq8uFL7Z44Z4BAAAAAAAEh1JNw5lMJpo4cSKtWLGCNm3aRPXq1bNaX7duXSnIYzs9yZ9//kkDBgyQ/3fq1InS09OlCFDbtm1l2YYNGyTr2aFDB7vH5cqzU6ZMsVrW/uW3KfTXcOo0cL9cT8q8TtrKG9X8lye7q26xAAAAgUZPVgZZTggUzrJkWudy1Lrc1Tp/7rXgqottUM5zaQrezGV4aXeF5elCVq5cKXNdmsdIciaxTJkyFBISQo8//jg999xz1KpVKxlzuXTpUjpw4AB99tlnxVlMnqrk/vvvp0WLFslUJJwJHTFihMNKsVFRUXKxlN2AXwR5FBmqqsY2aHRK2r8rV5TW3F024qT17QAAAIIJutJCIHM1XYgnXu9GK6Q6Oxe9Y0X1dHXV+1horYILgalUg8uFCxdK26NHD6vlixcvptGjR8v/uchPdna2TEnCXV05yOT5LBs0aFC8/YcffigBJRf64Sqxw4cPpzfeeKOE7w0AAAAAAAQ9U/BmLkNM3DcVqPXXz0h76XK0tNHRedKOuS5J2o/n9pM2vSG6xwIAgH9BxgDgakYygLbbmWl5bzm6jd5MoJZqsVr3aaSAkdbb6vnccXQfDyVOJn/Uv8X/eW3fa35/iXwZSp8WufKzmlvzhpvUmMudm5tI++nnKqg8107F4GGZCC4BQB98sYfShtceQOlwZ8yllnGcjvZtNKh053xcVX7VExSD//KJarEAAAAAAAABodCLFy85duwYjRs3Tgqscu0bHoLIdW9yc3N17QeZyyLVOqsCPoffaSxt/B1npE0rW0naOl/nS3uye2SpnSMA+KeSmDcNAAD00TKno9aunnq6hGrN1rmaB9NIttHR+WnpBguB7cCBAzLbxttvv03XXnst7d27VwqmZmZm0iuvvKJ5Pwgui/ydqrrFhva7Im3Ir1WkLaykgsq06xFUAoBn6BnLgwAUAMA7jASAWquxOuNqW61Te2g5b3eDZb33zdmxgkmIH5a04dk3+GJWv359mQ6SC7DqCS7RLRYAAAAAAACsZGRkUHy8SsD5ReZy1qxZ9MUXX0galvv2du7cmWbPnk2NGjUq7vvL/X7t+eSTT+j222+X/ycnJ9NDDz1EGzdupPLly9OoUaNk3+Hh2u9efPxl1ZbJkvbPS2qOzDJ/q320ukUV+tm1URX6AYDgUpK/wAbjr7wAAP74Wa81y6jlGK4yg96Yc1NLN1lPd4t11jsnYAr7mLyXuczJyZGLpaioKLl40uHDh2n+/Pm6spalHlxu3ryZHnnkEWrfvj3l5+fTU089RX379qV9+/ZRuXLlqFatWpSSkmJ1m3feeYfmzp1LAwYMkOsFBQU0aNAgSkhIoG3btsn29913H0VERNDMmTM1n8v5wyoqP1tWvajL/aUempCigbMp04vm1ezukbsOAH4GE8cDAIBWzrqslsTUHlppOYar8zIaJGs6/hBj9yuQzZo1i2bMmGG1jAvvTJ8+3e72Tz75pCTvnNm/fz81bqzqzrCTJ09KF1lO5PG4S78JLtesWWN1fcmSJVS1alXavXs3devWjcLCwiRotLRixQq64447JEPJvv/+ewlG161bR9WqVaPWrVvTCy+8QNOmTZMHOTISYyUBAAAAAKCEFHovc5mYmEhTpkyxWuYsazl16lQaPXq0033y+EqzU6dOUc+ePaVHKSf19Ar3tX69zFHfXg469+zZQwsWLChelpSURC1atJDA0qxfv37STfaPP/6gNm3aaDp2ZLoafpoTl6fOoZfKmKZ/V13a5IHqoQrLNHjnACBoqgsCAEBwcJW105IBdLVvT3QR1ZoF1VIkyJMCphtsCXaLjdLZBbZKlSpy0YIzlhxYtm3blhYvXkyhoaH+G1xy6dtJkyZRly5dqHnz5na3ee+996hJkyYSSZulpqZaBZbMfJ3Xae2rXJifT6E6xmgCAAAAAAAEgpMnT1KPHj2oTp06Ms7yzBk1LSOz7UnqjM9EUzz2kudT2bp1q931V65coWXLltEzzzzjlb7KTca2pWbj2tPBz66T66lRMdI2WJcu7ZG7kZkAgNL7dRcAAHyXls9/vfNVap0PUwu983RqOR+j7PX8CbgMpsn/piJZu3atFPHhS82aNa3WmXTcH58ILidMmECrV6+mLVu2XHVnzD777DPKysqSYj2WOJL+6aefrJadPn26eJ3WvsotPlhAO/8Ip6g4dT30UDlpjw9V1+t8ky1tct9oQ/cRAEpXSQR+CCoBAAJrmIPWYMxR8KZl37ZcdVm1dztHxXUc0VOUx9E+jf5ddVbQB0oPj8t0NTbT5+e55CiYA0su0rNhwwaH046Yu8TecsstV/UZ7tSpE/3++++UlpZmFXnHxMRQ06ZN7e6L+ynzestLSIRPxNkAAAAAAODPTCbvXXxceGl3heWuritXrqQKFSoUj5GMjY2VeS/NOD3LWc1vvvnmqn3w1CUcRN577700Z84c2cfTTz8t+9Yz2DWsgirkY4pXGcq4r1Tm8lLtEGkzr/Hs3DEAULJc/SqKX08BAMDdTJ+WaUNcdXd1lQU10vXW0XUthX08NSWKlmlOwP+VanC5cOFCaXnwqCWuTmSZlv3Pf/4j3WU5kLTF05Vwl1quDstZTJ4fc9SoUfT888/rO5mTqrtrXLOz0p4fpILKMc22S/vu7q7SRpxEkAkQiIyMPwEAAP9l73NebxBpVtpjBt0ZS+lqe0/9HQyqauuFvp9hDMjgUuvg0JkzZ8rFEa5qZC+rCQAAAAAAACUDAw2LXNNazWt58lc1r2XPbr9Ju2FiF2kTakRKe65ZqZ0iQNAryWxiwP6aCgAAXu/F4qw7rN59aOmW6mid0UJERm7jqexpQDAVUrBCcFnkyocqqAyvq7rDHkivKu2FDqq7bNSFUjw5APBKxTqA/2/vPKCkKLY+XsAuOWcQScIjiyRJKlFBlKwIIggSFIUnwoeIPERQQH2oTwTBpxLkYQCRoCIgEh5hyahklSCCZFiEJQi7/Z1/zes5PUP3TE/XzPbMzv93Tp+e6e7qru6urrr31q26hJD4JRQ3zXC6l0bCdTZY/oIpgqHMFmv3WYRrrGZMosWvW6yrs8USQgghhBBCCMkYsOfyfxTvfUiuM33oCYdSppWnq/LCNU+PZuEfL8n1xTK5XcsjIcScuLSKEkIIiZoJfYJtNzun3TiXdtq0YO1gqL2mkYhFacflNsOQxp5LV5gwYYKoV6+eDENStGhR0aFDB7F//36fYxBaBGFGihcvLmeCrV27tpg/f77PMefOnRPdu3eX8Srz588v+vTpIy5d8iiDdtm/prxcqjyzWy5bj90ql2x/anK5WjS7XAgh4QUNi76ogsYpwzVQhBBC0g3/diRc7ZMR/ZxWbZa+Pdi1zdrPYGnD0U5aXcN/u537sHuvJHZwVblcs2aNjEe5ceNG8d1334nr16/LcCMpKSneY3r27CkVzsWLF4udO3eKTp06iS5duogdO3Z4j4FiuXv3bnkOhCVBTMz+/fu7dFeEEEIIIYSQuEXTIrdEOZk0u/FA0oHTp0/LHkwonffcc4/cljt3bhkPE72XOoUKFRKvv/666Nu3r9i7d6+oWrWq2LJli6hbt67cv3TpUtGmTRtx9OhRUbJkSVvXvuObUXKdfMRjzcly2aN3ayWuynWFd1Pl+lA7usWS+CbDurAQQgiJK+y4xdpJY7Y/FFfQcMy6qjpTayjndppfO3nxP+aXEc+JWOT+W5+N2Lm//f0dEc1E1ZjLCxc8BapgwYLebY0aNRKff/65eOCBB6TL69y5c8XVq1dF06ZN5f6kpCS5XVcsQcuWLUXmzJnFpk2bRMeOHe1dOzmnXGcpeE2uG9Q+LNf5Eq/I9caadcJ2n4TEMhzfSAghJKMSaMyk2X675zE7V7C0wUKA2MmX0zbbbKwo2/0Q0KKm7y5+lcu0tDQxePBg0bhxY1G9enXvdiiTjzzyiOytTEhIEDlz5hQLFiwQFSpU8I7JRG+nERwHBRX7CCGEEEIIIYTEkXKJsZe7du0S69at89k+atQokZycLFasWCEKFy4sFi5cKMdcrl27VtSoUcPRta5duyYXI1l3J4jMCQkiz28eS8MPnW6R61vGedxjC+TyuMdeLMNJfQgBjDlJCCEkoxFKb2Eo5wnlXNHajjqJkRm3aOy5dJWBAwd6J+IpVaqUd/uBAwfE5MmTpdJZrVo1ua1mzZpSsZwyZYqYNm2anEX21KlTPue7ceOGnEEW+6xmqR0zZozPtnwP3CvyP3ifuPPBvfL/6p8qy/WhYR4lNC3VU0gyeyKWEBLVuNkwRVtjSAghhJhhpuzZdUkN1tZFwi3WCU7dYUO5pl2FPL5CkaSJeMXV2WIxlxAUS7i5rly5UpQr54kxqXP58mW5xvhJI1myZJFutKBhw4ayZ3Pbtm3e/TgX9tevX9/0uiNGjJDjO41LvlbNI3CHhBBCCCGEEBIfJLjtCvvJJ5+IRYsWyViX+hjJfPnyiRw5cojKlSvLsZVPPvmkmDhxohx3CbdYPeQIqFKlimjdurXo16+f7MlEOBMorF27drWcKTZbtmxyMZJ4NasQV4X476aq8n+ximfluuDzHsU2LZfn+EPtIvhACAkTTmeLI4QQQkjohNLOOnW1DWd+QnFt9d9nN/92ejAzrFyi0S3WFRBiBOgzv+rMmDFD9OrVSyQmJoolS5aIF154QbRt21ZcunRJKpuzZs2SoUZ05syZIxXKFi1ayF7Ozp07i0mTJoWUlzJ1j8p1nYK/y/WSOY3k+sLLF+U613KGICHuoqIgZtjKmxBCCEnHUCTpOXNqsGsFyrfdUClW++24sIYj9IjdfJHYwVXl0k6IzYoVK4r58+cHPAYzw6IHlBBCCCGEEEJcRWPPZdzzx6pb5fpiI89ssMXu9/Rgnv3Ssz3HWc8Yz4tlXB2mSuIYuroSQggh4cOJe2p6tr2h9AQ6nXDIzUmDjGnSw1WYpA9ULgkhhBBCCCEkXKSx5zLuyVb/nFzny35Frs9+WlquL93m2Z+Yksm9zBFiAnssCSEk40Mvldj2ErIT5sSqty6U4+2GTAl1v51zp2eYFhL9ULn8Hxf3FZDr1Ioet9eLDa7LdeV3Lsl18uue/2J7UbeySAghhJA4UwSpVKYvdifGsUugSXdCnVwnlPSqSqade6LhwxpNY5xLV5gwYYKoV6+eDENStGhR0aFDB7F//36fYw4cOCA6duwoihQpIvLmzSu6dOkiTp486XPMuXPnRPfu3eX+/Pnziz59+siZZQkhhBBCCCEk3d1i0yK0RDmu9lyuWbNGxrqEgnnjxg3x4osvivvuu0/s2bNH5MqVS6SkpMj/NWvWFCtXrpRpRo0aJcOSbNy4UYYdAVAsjx8/LuNfIs5l7969Rf/+/UOaQTbT/wwMF4/lketsp7PI9R/NPT2aBd/+y3NAk7A+AkIIIYREEQz7FD+EEnbDabmIpFtsKCFUgt2f1bVDObfd/HJCn4yNq8rl0qVLff7PnDlT9mBu27ZN3HPPPWL9+vXi8OHDYseOHbJXEiDGZYECBaSy2bJlS7F37155ni1btoi6devKY959910ZB3PixImiZMmStvJyI5dHu9SyetZXS3osA8Uan/IcsKdw+G6cEEIIIVEJZ+aOb+zElDQeZ7U/Enmxo6RZpXV6TTvnCDXGZlx8S1r09zBGiqiKq3HhwgVv3Epw7do1kSlTJpEtWzbvMdmzZ5c9luvWrZP/k5KSpCusrlgCKJ04ZtOmTel+D4QQQgghhBASj0TNhD5paWli8ODBonHjxqJ69epyW4MGDaR77PDhw8X48eOFpmnihRdeEKmpqdINFpw4cUL2dhpJSEiQCir22aXQDo8bbJ6unjRHt94i1xd3eHo+r9UO040SQgghJKIE6tEJlbjoZSG2CXVSHjP3UqfYcdG1ew27M7+aXcfuM7DTU5lhezPT4ndCn6hRLjH2cteuXd4eSYBJfObNmycGDBggJk2aJHsju3XrJmrXru0db+kE9IhiMZKq3RCZsySIP5I8SmVaeU9Ikr+Sc8h1iaSrcn3kvuyOr0sIIYSQyGNHUM2wQi2JCOEY0xjMtdbptdye0ZWzx5Koc4sdOHCg+Prrr8WqVatEqVKlfPZhQh/MGHvq1Clx5swZMXv2bHHs2DFRvnx5ub948eJynxFMDoQZZLHPapbafPny+Swnd6yI4B0SQgghhBBC4gJNi9wS5bjacwk310GDBokFCxaI1atXi3LlylkeW7iwZ0IdTOQDZbJdu3byf8OGDUVycrKcBKhOnTreY+BmW79+fdNzjRgxQgwZMsRnW80Pp4rkhDSRlt3TjV2n7FG5PrSmolxnuXojLPdM4pNwumgRQghRh3UxCeQCqtoLZ8e9ND0IdSKi9O595CyxGY8Et11hES5k0aJFMtalPkYSPYk5cnjcUWfMmCGqVKkiXWQxec+zzz4rnnvuOVGpUiW5H/tat24t+vXrJ6ZNmyZDkaAntGvXrpYzxWKCIOMkQfKalTxxMW/NmyzX234tLdc5inn2p5TKGanHQOKAuBxvQAghhMQYobbJkVDO7Cq4gUJ6hHMmV7sz44YSOsXquhlFydQ45tIdpk6dKtdNmzb12Q6FslevXvL3/v37ZU8j3FzLli0rRo4cKZVLI3PmzJEKZYsWLeRYzM6dO8sxmoQQQgghhBCSrmjR776aYd1ig/Haa6/JJRCYGRY9oCpc2e4Jf5K1xVnPhlTPcFTtjotyfaxCVrlOPObb40nii0j0MrLHkhBCCEl/QulRs3uOjNKm23HntRuHM6M8ExJjs8W6zbUiqXL94/oKcq0V8PzPtTSPXN/yiz5brGtZJFEAK0xCCCEkYxDIFTNc7XugUCR2XVjtuKVaySV2FT8nMywHu5adPGZYOSotfnsuo2K2WEIIIYQQQgghsQ17Lv9HoW1Z5Ppymz/l+sbJXHKtdfC4yaZO8vRgktgnnIPtCSGEEJJxsBuL0u7xocS5DNar6H+8E9fVYHkx65W06+6aUSfncYTGCX3inhueyWlF2/K75HrF0kZyXfBTzyyxf+VnJ29GndmNEEIIIfGHmfwQjtlVVUORhKrgOjlXNIRFMULFNONA5ZIQQgghhBBCwoQWx2MuXQ9FguXw4cPyf7Vq1cRLL70k7r//fvn/6tWrYujQoeKzzz4T165dE61atRLvvfeeKFbsf8EnMcHOkSNiwIABYtWqVSJ37tzi8ccfFxMmTBAJCaHdWsotnvWfN7LL9fkanu7sc409PZY1yh2R6+PryivfNyeDCS98joQQQghxA7uT3JgdG+q5A20Pt2xp1uMaSn5CvY7lNdo7yz+JU+WyVKlSMsxIxYoVZViSWbNmifbt24sdO3ZIRRPxLL/55hsxb948kS9fPhnLslOnTmL9+vUyfWpqqnjggQdE8eLFxYYNG8Tx48dFz549RWJiohg/fnxIeSmw32Nh2FfXo7hquTyzxWo3PMrlhYmlPQc2sH9Ou37uhBBCCCEkfXHighkO981g53AypjFU2dKJUqzqxhtXs8VqHHPpCm3btvX5P27cONmTuXHjRql4fvTRRzJ+ZfPmzeX+GTNmiCpVqsj9DRo0EMuXLxd79uwRK1askL2Zd9xxh3jllVfE8OHDxcsvvyyyZvXEpiSEEEIIIYSQ9ECjW6z7oBcSPZQpKSmiYcOGYtu2beL69euiZcuW3mMqV64sSpcuLZKSkqRyiXWNGjV83GThOgs32d27d4tatWrZvv71nJnk+rc9JeS6Ws3f5PrQ0nJyfaS1pyczMfnmtOyhJIQQQgiJLQK5l0bi3HZ7+OzG1FZxiw3HLLdOtwfqceWEPrGP68rlzp07pTKJ8ZUYM7lgwQJRtWpV8cMPP8iex/z58/scD0XyxIkT8jfWRsVS36/vswLjN7EYSUu9ITJncf1xEEIIIYQQQmIZjW6xrlGpUiWpSF64cEF88cUXckKeNWvWRPSamPBnzJgxPtvKP15fVOjdQDTI7YlruX5Obbmu19UTmmTn9OpyfbGMUPZzJ4QQQggh7hKoJ81ubEcn57ZzbCjXskOw+7ETJiQa7oPEAFqU0aJFC61///7a999/D2dl7fz58z77S5curb311lvy96hRo7SaNWv67D948KBMt337dstrXL16Vbtw4cJNy+jRo+W+UEEaJ2mdpou1a6qkZX6j85oqaZnfyKaNl2uqpGV+o/OaKmmZ3+i8pkpa5jc6r6mSVuWaJHaIOuWyWbNm2uOPP64lJydriYmJ2hdffOHdt2/fPqk4JiUlyf9LlizRMmfOrJ08edJ7zPvvv6/lzZs35IIL5RLnxjpUnKaNl2uqpGV+o/OaKmmZ38imjZdrqqRlfqPzmippmd/ovKZKWuY3Oq+pklblmiR2cNUtdsSIETKmJSbpuXjxopwZdvXq1WLZsmUy9EifPn3EkCFDRMGCBUXevHnFoEGD5PhMTOYD7rvvPjk+s0ePHuKNN96Q4yz/8Y9/iGeeeUZky5bNzVsjhBBCCCGEkLjCVeXy1KlTMi4l4lNCmbz99tulYnnvvffK/W+//bbInDmz6Ny5s5yABzPBvvfee970WbJkEV9//bWcHRZKZ65cueSYzbFjx7p4V4QQQgghhBASf7iqXCKOZSCyZ88upkyZIhcrypQpI5YsWRKB3BFCCCGEEEIIsUtmtzMQLcCNdvTo0Y7caZ2mjZdrqqRlfqPzmippmd/Ipo2Xa6qkZX6j85oqaZnf6LymSlrmNzqvqZJW5ZokdsiEgZduZ4IQQgghhBBCSGzDnktCCCGEEEIIIcpQuSSEEEIIIYQQogyVS0IIIYQQQgghylC5JIQQQgghhBCiDJVLQgghhBBCCCGxHefSTc6cOSOmT58ukpKSxIkTJ+S24sWLi0aNGolevXqJIkWKuJ1FQgghRHLy5Elx7do1Ubp06aDHok3btGmTT9tWv359uTZj27Ztok6dOmHN75gxY8QzzzwjChcu7PgcN27cEH/88YfpPaemporffvtNlC1bVmTOnFk+m0WLFom0tDTRrFkzUaxYsZCudf36dZGYmCgiSUpKinzWx48fl3kuX768qF27tsiUKZPICOUoEmWpd+/eYty4caJkyZJhOychJMJoccjmzZu1AgUKaLfccov2+OOPa88//7xc8LtUqVJawYIFtS1btpimHThwoPbf//5XiybOnTunzZo1y3TfDz/8oH300UfagQMH5P9du3ZpAwYM0J588klt6dKlEctTamqq5fbffvstYNrvv/9eGzNmjPbUU09pTz/9tDZx4kTt559/1iLJmTNntJUrV2pnz56V/0+fPq299tprMh979uzRop1y5copP6MTJ07I+7Xiq6++0kaNGqWtW7fO+57uv/9+rVWrVtr7778f0rX++usvmd/k5GQto3Hjxg2f/xs3btTWrFkj7zkYx48f1xYuXKhNmzZNLviNbYHYunWrFk569eqlHTt2TIsFMmI5+vPPP7Xu3btrpUuX1nr27Kldu3ZN1oOZMmXSMmfOrN1zzz3ahQsXTNNeunRJps2SJYuWkJCgFS1aVC74jW2PPfaYlpKSclM6nPu2227Txo0bF/K7R178F7yPxMREbdOmTd5tTkD7hXv258cff9RKlCgh91WvXl07cuSIXOfKlUvLnTu3bN/Rzpvx+eefy2eq8+6778pnjXMVKlQoYB0IpkyZorVo0UJ7+OGHtRUrVvjsQ7uButis3Rs2bJiWM2dOeR0seOZYypQpoy1evNj2Mzl//rz273//W/vHP/6hffDBB5Zl341ypFKW8E7NFpSjBQsWeP874fr16wHlDtTZkJF0ueXq1auynHz66aeyXYzG+gjvCO3KZ599ps2dO1e2A2lpaSE9k+XLl2sffvih9t13393UbtkBzyaYPKdfC98yZE4s+G2nPSSxS1wql/Xr19f69+9v+iFiG/Y1aNDANK1eMVesWFEqH8EEv/RQDKwa4Pnz58uGAA0mGlxUIPnz59datmwpFQLsmzNnju3rHDx4UFZGO3futDwGjRUa3ezZs8vGCMqIsdJCZWSWV3Dy5EntzjvvlPvRiGFdp04drXjx4jKvaJytQGNgrKx+/fVX7cUXX5SN4MiRI2XerYAAlC9fPvluIZSgksY7wTtGI5kjRw5t27ZtAdP/61//0l544QW54De2BeKLL76wbJwD8c4775gueD4jRozw/g9nOQJQdPBO8D7y5s2rzZ49W8uTJ4/Wt29faajAM8J9m/H6669rly9flr9RFoYOHaplzZrV+5579+4dtKFxaqwIh6HCrjD3xx9/aI0bN5bvAoIbjD4PPPCAV4j829/+Jo+JB2EukMHLqdEr1sqR0zoJBszKlStrkyZN0po2baq1b99eKk4w6kCYrFq1qjyPGX369JH1Fp6hsd7F72XLlskyiG/WrAz169fPW+ZQblEG7AicurLkv+htpb4OZ52E9uuhhx6SbdGzzz6rValSRbY7eN4QZPGM0c5Z5RdtDZg+fbpsq1566SXtm2++0V599VWpoOI7NwN1KxTEZ555Rl4D5W/8+PFB27fhw4fLPMJAh3YY9QPK8969e2UbmS1bNvl+zOjYsaM2b94873dSuHBhrUiRIlKOKVasmGwfzQygbpQjlbJkLC/+S6TKkYqhQrU+cmKkUDFUoDyg/IHff/9dlg20LShDWNeoUUM7evRoWA0VyCvqOsid/u8U29CmWtXJJLaJS+USjQkqdSuwD8eYgY8CFQEaNFTyEMTatWsnP9pgH4lTxcDMMmxc1q5da1px1q5dWzaWABY4fMxjx4717oeAdMcdd5jmFYLexYsX5W9UoJ07d/ap4Js1a+bdb+Tvf/+7bHjQGKKBRmWHxkW3FKPxxTnMeOSRR7QOHTrIe4JghsoQFZku3EFJtlJgmjRp4m2A0Xiisb799tvlOWvVqiUr4g0bNpimhRCChhIV6D//+U/Ze21sONFIIF/+QEC56667vJU6FGMs+I1t2KcLMf5gP5Q0NMLo2bIL0iF/ZcuW9VmwHT3x+G3VKFkpE/oCS61VAwxBBAoWQA8vvg80jjozZsyQwlMwYQ7PF401hLrdu3dr//nPf6QQgoY6nMYKFUOFU2GuR48eWqNGjWTjjnKH33fffbdssKG4QPGEUBrvwpxTo1eslSOnddKtt94qvzEAYwHegy4Ugq+//lqrVKmS6TXxHNevX2+ZJ+QDx/iDa+BeoZjB8NWmTRuv4Amvnv3791ueE/UOyhzyvHr1armsWrVKpke9oG8zA88h0AIB2Oy94N3r3yDaJ1zLaNDDd4vyZYZ+rwDv9o033vDZ/95778lrW9WDxrKJZ426AeUpUDmC8mL0eEKdgLKPdg6gXW7YsKHpNXGvurwCT5FHH33U255CeUHdcd9990VFOVIpSzVr1pTlCPd6+PBhuRw6dEh+d6gj9G3hro+cGipU6iOnRgoVQwWev94x0KVLF3lPUGIBPLYefPBB+RzMcGqoQP2I7wPGabxLfKtY8BveTnhGKBMk4xGXyiUE8EBWdeyDghCsYULlA4FcF4hKliwpP7BffvklrIqBLuQFsxD7A8sbPmK9RxaK8E8//eTdj14DNHBmGCtOKL7INxoq9J6gQkFPCXrp/IFlC4KFDiovNOBo/NCQBqo0oWxBKDD25iDPukUMvWVWjSHS6j0JEOqee+45n/2wkEG4N8MoqOCdIn9GQQW9lng//kDhhkCwb9++m/ZhG5QLq8oa7wwCBYQY/K5WrZr29ttvS/fcQKBnBwYBf+UGDTAatUgpE+iZNPbs4L0Ye7BRztBYWl1XL0u4X38XWjTEuH8znBorVAwVToU5CJBJSUnexlo3ROnguuXLl88QwpxTg5eK0SvWypHTOgnCIXpPdPBdGd8h3onVt4ZrWg3pAOiBwTGBnq1RAcJ7QZnFu4ShxAyUdTwjGByNPR926iTcK4ajvPzyy6YL6juzcoQyoz9bfJMo70bvEpRpfMdm4F5PnTolf8NwBMXDCHqY4ZVhVQ/qbaoO6kF8a2gPrdo3nE/vpQcwROP56J5PeE5W7xTXRJ70Omb79u0++1E24HkTDeVIpSzhW4RyB0XFeI92ypFTI4WKoUKlPnJqpFAxVMCwpntLQJ7z965COcb3YIZTQwW+i0DDr7APCibJeMSlcjl58mRZ8ULgWLRokew5woLf2IbK3NgrE6ziBBC8R48eLYUWq0rBqWKAShyWKd0C7L9AWDK7Jqzr+ngsuKkh70bFDw0Ejgl2n7BQffLJJz778awgrPmDZ+fv7oUeQVR2zZs3l/usng8qV+NzQEWPY/VxkGic8d7MgCKtKwSo0MwEBitF2qiEAxxnFATwbs16snGcf0NvBM/e6prG54vj0FMMgQn3B6sp3I+t+PLLL2Vlj7FCoTTAaCDhiqgrDf4L3MKs3g0aI71B0xsXHK+DcohjgglzyIO/WzXKhJWQ49RYoWKocCrMoYwYhTmUK6OhCeUI584IwpxTg5eK0SvWypHTOglGSqOi1K1bN5/3i/xYKU4whEDQNauXsA29rnBvC2RMNANGEpw7EOjxQ971tsJOOUJ+kM6KHTt2mL4XuBPCyINyDnflChUqSA8THbjsWSnDKEcff/yxbMNQZ/n3HuP5Wn1rqHfN5lzAfeIdw/Bgll8YGnWDitGoooOybPVO4TGhe43g3cIrwQjaCrN23I1yFI6ytGTJEvle0JOnK+GRMlKoGCpU6iOnRgoVQwW8JjA+E6DnEwZEI/gOMN+IGU4NFdhmrNv9gccU6kmS8YhL5RLgI0OljY9S773Bb2xDb6QVVsqlDoSlcCsGcEOwcq8AEFrMrO5wt8D9wILWtm1b2cOKsaSoLNGzBmt6oJ41o3XXKGDplYmZoAxBy6h06MCFFgomekusKk24I6I3EAIcKvnBgwdLoUEHBgArZRiKq+7ehIbcv2caPToQMM2AVRO9EEYrnD6WQr+umeKEBsXK3QtAmLXjmqVz5coVKfTgfeMZoSfbCghVuOfWrVvLRsVOAwxB+pVXXgm5HAG478BtEwIShHI05Hhu3377rbQ+YrzGE088YXmvGA8IVyAoa3Cj8W9grIQcp8YKFUOFU2EO5ctoDYb7kn49/flaWYZjTZhzavBSMXrFWjlyWifhm4YbmRVwNcX5zMDzRHo8KwiK+Eax4DfyjZ54jCEOtV2zC54V6ngoMnbKEYy5MHBYAQUc9aE/KCOoW3FPeEdon/DdotxAqcL79h/HpuPvtWFU+gAmOLFyi8V9oV0yA3lAXszKEfKCcoK6E26MeDbwVNGBWyXKixloj/D+8N6xoF1AHtHbBTdMyBNm7tlulKNwlSUoV7gGDASRNFKoGCpU6iOnRgoVQwXeN+p51LWQM6BgolzCWIxeSbThVkMvnBoq4EUDuUN3vzWCbShj8CAhGY+4VS51oMRgkg0sdmavQsUezHUxGKEqBhB0A03SgooY1jmz7ffee6+0jkOxxEQkcOsyTkqk99D4g2Ng7YMrF9wW/BVmVDRmgvKgQYMsFVYIcxAArCpNCGpwt8XzQO8AKkyjdQ2Vo5krrm51Q28Seo+huCNvcDuD6wkma8C5rBR0PDtU0FbA1blTp043bUejg55qGAyMg9nxG9tQVvC8nSgE6PGymmzBaMiAQqCP/wrWACNP6GmxAgLFzJkzTfdB4ce4PvRiY8Ir9HpBIMJYEZQVCIBW94NnZHQDNwpVAG6FVhNoOTVWqBgqnApzGHtt5SKpe0xYCZCxJsw5NXipGL1irRw5rZOguFq9a90YYFTGzcCzRFlF/YAFvwPNMwCDANyqwwHqBrQb8NIJNJGaKngnMFLoY/9hnMN3imdtNlTBLnD3s3Llg8KAZ2kFBHuztlj/JlCnY+KXQAZoM2CIgGLgP6wB3hIok2bjq8NRjuBlFUo5CndZgtwDl2tMQBMJI4WKoUKlPnJqpFA1VLz55puyNxH3pE8+pC94zmbzaKgYKvTJkZBHGGxwHiz4jW3oTTX2iJKMQ9wrl24RqmIQTqDEoREM1ABAwENlrC/+s+ehBwzHmAnJ/r2cQJ+ZFwpmoN4+jOnEYHQ08Lq1y+702hDmUJn7W6YxXjKQ0B8M5Ekfz2AE2zB7pF5Jo6HHgt/YBldXs3Th7CkAELBwf3j26Q0EOrxTFTBO0cq92KmxQsVQ4VSYCwZ6NQPNtOxEKXBLmHNq8FI1esVaOYpUnUTiD9Q5UITgdQXXYyiGqnUviZyhIlB9pGKkUDVUwOCA0CWIdoA2BnVYsJmvVQwV8IbBfhjUYJjGgt/weuJMsRkXaVqOdCxNIgIGHF63bp3o2bOnKFCggIgVDh48KLJmzSpKlSpl63gc++OPP4oqVaqEfK1Q054+fVrmD8G0S5QoIYNsR5I///xTbN26VQanBggwjSDSefPmtUyD4N8IYp2ewbMBgndPnTpVljljIO8OHTqIXr16iSxZskQkrVPOnz8vg6hXq1bNdP/FixfF9u3bRZMmTW7ad/nyZbF+/XoZMLxBgwYhB3NHkHac21iW8F7z5Mnj+H6INQcOHBBXrlwRlStXFgkJCVFVjlDm//rrL0flyGmdtHnzZpGUlOQTwL5hw4bizjvvFCrP4auvvpLtTbjT4d5QJ5htP3r0qKzvzIAIcvjwYXHrrbfK947nvGDBAvndtmnTxvJ5O01nRfPmzcWMGTNEmTJlQkp36NAh8euvv8r3Wr169Yins8v8+fPF/fffL3LmzOkoPdpcyCdNmzaV9fzu3bvFlClT5Pvs2LGjaNWqVUTSrly50qeNue2220Tbtm1FxYoVHd0HIST9oXIZRfz+++9i9OjRYvr06Tftg9CFyrpgwYKiatWqPvuuXr0q5s6da9rwO00H9u7dKzZu3CgaNWokKlWqJPbt2yfeeecd2Xg/9thjsjH2Z8iQIabnQjqkKVSokPz/1ltvhTWtPykpKfLe0HiXLFlSdO3a1ZveHwiVUOzLlSsn/8+ePVtMmzZNHDlyRAoaAwcOlOn9GTRokOjSpYu4++67g+YnnGknT54sBU8IUMgX8jthwgTZcHfq1EmMHTvWVDiHAtyyZUtRoUIFkSNHDim4Pvroo1IoW7ZsmSwfS5cuNVWeVNICHLdw4cKbhGWUrfbt20sDQkbg7Nmz4qeffhI1a9aU39yZM2fERx99JL+Zhx9+OGTjCgQzPF8nglWoadEUrF692ivwQgBMTEwU0cKbb74pOnfuHHFjkducOnVK3icMI1DIihUrJrfDeIU6qXHjxlJxKFq0aMjnhtBfu3ZtaTgJVzoY1/r27SuVTxjUnnzySdmO6cYm5Bt1sFna/fv3y3KGtg/ldfny5fI7QVuD8gjFaMOGDTeVYafpwOLFi03vEXUn2hooq6Bdu3Y3HfP000+LN954Q+TOnVu2rT169JAKLa4JQyGMEzg/9ocjHUDdASVL/xZhhIGMoLdPffr08bZdRpAG9fEjjzwij6lfv76wy5dffinbp/z588vrI694vnXr1pXvdcWKFeLjjz+WbUC40qLcQ4lEW4O8oz2rVauWOHbsmDTOQD7AM4yUQcYsLdqnevXqCSdE0iDjNG00GGQibVQhUYLbXackeCwmzMqlx07UA9Yag7FbzSzmNB2AywJcOzHmC66A+I9xAIiNBH9+uPIaJ8HRwbUw1sboUosF2+vVqyd/Y8p6M1TSYnC6PskGfPgxBgLjnZAO94Bxo1bjf+D3r7u6wf0X4xEwhmPq1KnSBRLue5hl1Sy/uhsfXEz02drs4DQt3JExWxzGgcGlGmkxXgQD/OHigncElxMzEPbA6GqD8ZdwBwRwqcWzx32HOy3Gj2LWUpQjuFIjxhYW/MY2jGGzCt8TDJRhTMIQiXRwDTUbg4Kxd/6TN+huryhzeLeY3ABuVggthHcM10qUK+OkCOGIgauSFmMs4ZIK8O3gfSLv+ngfjPnUJ/UyezbGSRowOQUmDUJsV0w8ZBVTViUt8oZ7Qh0E10A9jIhd4GqPqf4R1gWg/sIzgGuufxiBcKTTJwBC3YEJQjDWCBNcwAXYarIZ1RBHTkPEqISWUYltjHh5GKuMGSVR16IexzZ8YxhSgDG5GKMbrnTBQjIZQzOFM0SX03Qq8VKdhrtSjZHtNK1K2B+VmNMqaZ3G1nQad1clLeoOPZoB2lzIQ5gICbO1ogxhTLiVeyxmVjZbUB9jLgH9v5146cZvzCpeOol9qFymI1YfqL6g4jerFFDhorGGQAYhHL8htOpxB60qE6fpAISbkSNHehsICMvGCWbQEGLclD8TJkyQ1/BXPO1MEqKS1jiGEQIqBDBdcEblBYEUg+jNgNCvx/NDQ6zPFKqDCTgQrsHsmhASMZEAKmaMyYLAA2E02FgCp2khhCAIvd54oXLHxCjGSXuME47436f/FOa4LsoBwNgNTGAQ7rR49hD8jJMe6WAb9pnFjVRtwJ2mgwEGRgnsx/Pt0aOHTwNo9d3gPjHbHsZBYVIFCJDG2fegYOCbDGcMXJW0xm8GQgDKuG6AgQIIwQNjis2A8KXHOVu4cKF8Hii/mCEXk+CgbBjjoIUjLfKL8UEoLzgGwia+n2DjWAEmo0A9gnvCTLcwjsBIg/eDictQvs0EV6fpAOpcCHMQADEJFPKPOhhKPMoVBESzsbKqIY6chIhRCS2jEtsYhgzM5KmPe8N1oMjqYBItsxl1naYD+gyV/gpDqO1MKCG6nKZTiZeqEu5KJUa207QqYX9UDDJO07plkHGa1g2DjIpRhcQ2VC7TEacfKIQTY+WMChtCHxpPVNRWjbfTdHpFr/cm6eEJjAKPHpPJDEw6gMoPg831GXjtNNwqaY0NKXrJ/BtOCBsQ8MyAkKqHRsAzM4tHZxZ2xXhN5BUhbNCbAcERihaUcaseOadpkQ/dOADQ+Bob5ECBsdEI6b0vuhKFfOhhVyAQmMXzVE2LPAdSAFBGreI/YuKDQAuem1kZdpoOwFoOBQBxJ9GjDcWibt263gmTrBpvYzBuvFOc3xiaBL2WUPbCGQNXJa2xDEJo87c8w/hhpdBCgNQVUTwr9KAbwUQYVuEcnKY15hdrzLSqB0eHMQBGIasJTqA460YjCDcoq8ZYxlBaIWyFKx1A7ybejT4hGe4T2wCUBSj9mEk2nCGOnIaIUQktoxLb2L8+g9JhnMwJXihmoV6cptN56623ZHtgNGLYbWechOhymk4lXqpKuCuVGNlO06qE/VExyDhN65ZBxmlaNwwyKkYVEttQuUxHoDTAUh9qLCZYyv0FRz32oB7cPpzpdGHD2FijcjX2XKExtFImAHp6IKTDfQeKBZQguzPiOklrbLzxnP2VmUD5hbUOca4ALLqwBBuBuyliQJld08xdBkIPhEbdBcUqv07SQtiHi7IuoOIYzPymg3ALVgIDenlQwSM9BGW4pBinZ8f0+7AkhjstYoBZ9WKBxYsXy2NCNcjY6YkJNZ1efoxKoW7VhQIHQceq8TZa7M2+GbzbQN+Mkxi4KmmN3wyMKmYCr5UwB/dfKOl6Wv23DuoOKyOH07RW3wzqMcRdxfO3CshtZpQx1hF4b2bXdJoOYLvRzQw9C0ivuyWiLTD7VlVCHDkNEaMSWkYltjHqDKOAi1iFRgMBDDJmiojTdP7tLYwHmL0SPSl2lUsnIbqcplOJl6oS7kolRrbTtCphf1QMMk7TummQcZLWDYOMilGFxDZULtMRVLTwjw+1AYdVHtZGM6AowtXFrDJxmg5AsdOVGOAfugQCnVWvhhG41MLaiuuEGm4llLR4blAA0eOBShMNrhGMkbPqNUIQYQhsGJM6ZMgQWdlhnAXiOmIbxp6aCU/Bwomgx8LK9chpWii+sEDCLQ/PHy4lECwwPhQufKj8/d2mjMIexjqiQcD1IagYGymEgDEqquFKizKPXj00TlAkoJxhwW9sw5hYsx4cgEYdY9bQCJkteC9mZdhpOgAFxX/sCco+XFrxXaCn1SwtetGMLt2Il6n37OrCEYw64YyBq5IW7xFjACHU4f34GwCQXyvvBLhX6e5MEB79x3RCsMJY03CmDSYsQ/nyd2nX0Y1p+veOezd+0xAGzd6N03RmgccxlT/S60oQvh8zYU4lxJHTEDEqoWVUYhtD4fIPc+U/VAJlNFzp/MH3iXOhvNkJCeY0RJfTdCrxUlXCXamEC3KaViXsj4pBxmlatwwyTtO6YZBRMaqQ2IbKZToCIcWosPkDi52ZBQ09Z7o7lRkQNswqMafpAJQVCMdWwH9e7+0LBsZvwUqP+wsVu2kh+BgX/yDY//d//6d17drVMj0EP4z5QsUJQQ5CHBocTDQC90gz0OjYmRwhnGnhojxu3DjtwQcflO8XSiiUcCiVUKh69eoV9FnBNcrpIHqnaeESiN5JoysRfmNboAYarj4QvEJtwJ2mAzBS+BsnjAomlHmzxhvlDu/CCvQSdOrUSYtkDNxQ0qKsGBe4ChsZNmyYFA7NgEcEyhs8DPCcIUiixwJlE9ugNEEYDGdaFWEZxjQItZhoBC5k6OmEMQD1MeoKvPMnnngibOkAjoXCgB4bKJL6BCw6qOutXPV14RZeAnAlw4LfZuOW3cYqtrFOsNjGgcBzM05CF6l0cM9DT5lq7GEoSMFixDpJ5yReKoxodmNEhzNGtkpaszjXdlAxyDhNC4NMoFi1kTLIOE3rhkFGxahCYhsql4SQdANCHwQlLFaz9xqB5RgTOQQSbGfOnBm2dOD555+3nGAIghF63qwU00BAcLIScKzG+kB40cd6hoJKWh0YKWBMsAK9DzDYwP1eF3bR44Be7QULFgQ8t0pap/cCTwS4dsPqDhdVTLoE4RHXhuBjplg4TQewXVcIIOzBWGUc24UJOSZNmhT2eyUZF7gYwqMA9afRBZ+oG2TS05ijYpCJlDHHDYOMU2MMiX6oXBJCXAVjPTCTarQABTKQUIH9+uzC6XWfbqS1mw69I7DSQzDRJ+Gyi0racNwnlGerSYDClQ4u1qH29qB3AC5sZr0CuLb/uLtwpHXjmsyvvWs6JZ6eETwipk+f7p38CGv0SKJOMAubFo60blwzmvKLHky719Rn4w3lmiR2oXJJCHEVp+FE0kNxCmdalft0I60b70UlbUYpR2bxiTHeUyfQTJJuxER2I2085dep0hVPz8hpXG6VtG5cM9byq3JNEttQuSSERGV812hVnKzSqtynG2mj8b0EShuN+Y3EfarEJ3YjJjLzG9n8OlW64ukZOY3LrZLWjWvGWn5VrkliGzlwSBBCSITInDmzyJQpEwxZlsdgf2pq6k3bFy9eHPDcBw8eFEOHDr0prdN0KmlV7tONtG68F5W08VKOihUrJlasWCFq1Kgh/+N+n376abFkyRKxatUqkStXLlGyZEnTazpN68Y1mV971+zYsaO4fv26mDlzpkhOThaDBw8We/bsEatXrxalS5cWJ0+ejPtnlC9fPrFt2zZRoUIFkZaWJrJlyyY2b94satWqJffv2rVLtGzZUpw4cSJsad24ZqzlV+WaJMZxW7slhGRsnMZ3DRav0hi3MlzpVNKq3Kcbad14Lypp46UcqcQndiMmMvMb2fwihAPCHxnHKWPMGmatxoQoVj168fSMVOJyO03rxjVjLb+q8dJJ7JLZbeWWEJKxqVOnjrReWhGoN6pEiRLiyy+/lFZPs2X79u1hTaeSVuU+3UjrxntRSRsv5ahy5cpi69atN22fPHmyaN++vWjXrp3lNZ2mdeOazK+9a165ckUkJCT4lPOpU6eKtm3biiZNmoiff/45au5TJa3KNcuWLSt++eUX7/+kpCTZq6tz5MgR+T2GM60b14y1/Kpck8Q2VC4JIRFl2LBholGjRpb74TIDt6doUZycplW5TzfSuvFeVNLGSzmCG+Snn35qmgaCdrdu3Syv6TStG9dkfu1d06nSFU/PaMCAAT7ustWrV/dRyL/99lvRvHnzsKZ145qxll+Va5LYhmMuCSFRy9q1a0VKSopo3bq16X7sg+AFC3440qmmjRdi7fmyHJFYZcKECbIsYeyhGRiXOG3aNNkbTggh0QCVS0IIIYQQQgghytAtlhBCCCGEEEKIMlQuCSGEEEIIIYQoQ+WSEEIIIYQQQogyVC4JIYQQQgghhChD5ZIQQkhY6NWrlwyxYbUkJye7nUVCCCGERBAql4QQQsIGQm8cP37cZ5k/f77b2SKEEEJIOkDlkhBCSNjIli2bKF68uM9SsGBB7/6ZM2eK/Pnzi4ULF4qKFSuK7Nmzi1atWonff//de8zLL78s7rjjDu//v/76S1SoUMGn93Pu3Lnitttuk+kLFSokHnroIXH69GlvGhyLaxhp2rSpGDx4sPf/7NmzRd26dUWePHlkPh999FFx6tQp7/7Vq1f7XPP8+fPi9ttvFz179vQGdPc/5/79+0ViYqJP/gkhhJB4gcolIYSQdOXy5cti3Lhx4uOPPxbr16+XylvXrl0tj588ebI4efKkz7bKlStLRRXK3LJly8Thw4fF8OHDQ8rH9evXxSuvvCJ+/PFHqYjiHHDtNePSpUuiTZs2onz58mL69OlS6TRj2LBhUuElhBBC4pEEtzNACCEkvoBSB4Wxfv368v+sWbNElSpVxObNm8Wdd97pc+y5c+fEq6++KhXHUaNGebejB1GnQIECsvcyNTU1pHw88cQT3t9QGidNmiTq1asnFcncuXN79127dk32jObMmVN8/vnnIiHBvOlctWqV2LBhg+jbt6/8TQghhMQb7LkkhBCSrkA5gxJn7IWEq+zevXtvOnbs2LGiWbNm4q677rpp39q1a6USiLRXrlwRb775ps/+bt26yf36guONbNu2TbRt21aULl1ausY2adJEbj9y5IjPcd27dxfff/+93A+3XzPgJjt06FAxevRokS9fvhCfCCGEEJIxoHJJCCEkKvnll1/Ehx9+KF5//XXT/RgvuWPHDrF8+XJx9uxZ8cEHH/jsf/vtt8UPP/zgXXC8TkpKihzrmTdvXjFnzhyxZcsWsWDBAu8YTyMnTpyQkxKNHz9e7Ny50zQvcPHFOZ966qkw3DkhhBASm1C5JIQQkq7cuHFDbN261fsf4yYx7hKusUbgCgsXU0zmY0aOHDnkpEAtW7YU/fv3l0qiEUzSg7T6guN19u3bJxXS1157Tdx9992y99Q4mY+RxYsXi06dOol+/fqJ3r17y/z7jyEdOXKkVIIxmQ8hhBASr1C5JIQQkq5AARs0aJDYtGmTdE3FJDoNGjTwGW/566+/ytlaX3rpJdNzfPbZZ7K3ES6scFmdNm2aqFWrlu08wBU2a9as4t133xUHDx6UCiQm9zFDn+0WiihmjMXayCeffCJnru3QoYPt6xNCCCEZESqXhBBC0hVMjINeSYT+aNy4sRwPiYlyjMDFFL2BxjAmRjA+s3PnzrLnEqFBcB4oinYpUqSInG123rx5omrVqlJhnDhxYsA0uXLlkjPFYqbbXbt2+fRc+o/3JIQQQuKRTJoerIsQQgiJMFDoEBdSjx1JCCGEkIwDey4JIYQQQgghhChD5ZIQQgghhBBCiDJ0iyWEEEIIIYQQogx7LgkhhBBCCCGEKEPlkhBCCCGEEEKIMlQuCSGEEEIIIYQoQ+WSEEIIIYQQQogyVC4JIYQQQgghhChD5ZIQQgghhBBCiDJULgkhhBBCCCGEKEPlkhBCCCGEEEKIMlQuCSGEEEIIIYQIVf4fCtSBZHNHRlEAAAAASUVORK5CYII=", - "text/plain": [ - "
" - ] - }, - "metadata": {}, - "output_type": "display_data" - }, - { - "name": "stdout", - "output_type": "stream", - "text": [ - "\n", - "Bicluster 0 : 204 objects, 343 features\n", - "Top features: Patient_ID_P100000, Patient_ID_P100002, Patient_ID_P100006, Patient_ID_P100013, Patient_ID_P100035, Patient_ID_P100056, Patient_ID_P100066, Patient_ID_P100079, Patient_ID_P100081, Patient_ID_P100091\n", - "\n", - "Bicluster 1 : 0 objects, 1 features\n", - "Top features: BMI\n", - "\n", - "Bicluster 2 : 97 objects, 10 features\n", - "Top features: Years_Smoking, Cigarettes_Per_Day, Gender_Female, Occupation_Exposure_Silica, Air_Pollution_Level_High, Family_History_No, Physical_Activity_Level_Low, Region_West, Access_to_Healthcare_Good, Lung_Cancer_Stage_Stage I\n", - "\n", - "Bicluster 3 : 0 objects, 1 features\n", - "Top features: Diagnosis_Year\n", - "\n", - "Bicluster 4 : 0 objects, 1 features\n", - "Top features: Age\n" - ] - } - ], - "source": [ - "import pandas as pd\n", - "import numpy as np\n", - "from sklearn.preprocessing import OneHotEncoder, StandardScaler\n", - "from sklearn.cluster import SpectralCoclustering\n", - "import matplotlib.pyplot as plt\n", - "import seaborn as sns\n", - "\n", - "# 1. Загрузка датасета\n", - "df = pd.read_csv(\"Lung_Cancer_Trends_Realistic.csv\")\n", - "\n", - "# Посмотрим на структуру данных\n", - "print(df.head())\n", - "\n", - "# 2. Предобработка\n", - "# Удалим строки с пропущенными значениями\n", - "df_clean = df.dropna()\n", - "\n", - "# Отделим категориальные и числовые признаки\n", - "categorical_cols = df_clean.select_dtypes(include=[\"object\", \"category\"]).columns\n", - "numeric_cols = df_clean.select_dtypes(include=[\"int64\", \"float64\"]).columns\n", - "\n", - "# One-Hot Encoding для категориальных признаков\n", - "encoder = OneHotEncoder(sparse_output=False)\n", - "encoded_cat = encoder.fit_transform(df_clean[categorical_cols])\n", - "\n", - "# Масштабирование числовых признаков\n", - "scaler = StandardScaler()\n", - "scaled_num = scaler.fit_transform(df_clean[numeric_cols])\n", - "\n", - "# Объединяем\n", - "X = np.hstack([scaled_num, encoded_cat])\n", - "\n", - "# 3. Обучение модели\n", - "n_clusters = 5 # количество кластеров, можно изменить\n", - "model = SpectralCoclustering(n_clusters=n_clusters, random_state=42)\n", - "model.fit(X)\n", - "\n", - "# 4. Присвоим кластеры объектам\n", - "df_clean[\"Cluster\"] = model.row_labels_\n", - "\n", - "# 5. Визуализация: тепловая карта по переставленным строкам\n", - "fit_data = X[np.argsort(model.row_labels_)]\n", - "plt.figure(figsize=(12, 6))\n", - "sns.heatmap(fit_data, cmap=\"viridis\", cbar=True)\n", - "plt.title(\"Спектральное ко-кластеризованное представление данных\")\n", - "plt.xlabel(\"Признаки\")\n", - "plt.ylabel(\"Объекты (переставлены по кластеру)\")\n", - "plt.show()\n", - "\n", - "# 6. Вывод информации по каждому кластеру, как в примере с newsgroups\n", - "\n", - "# Получаем имена признаков (категориальные + числовые)\n", - "feature_names = list(numeric_cols) + list(encoder.get_feature_names_out(categorical_cols))\n", - "\n", - "for i in range(n_clusters):\n", - " row_idx = np.where(model.row_labels_ == i)[0]\n", - " col_idx = np.where(model.column_labels_ == i)[0]\n", - "\n", - " # Показываем информацию о кластере\n", - " print(f\"\\nBicluster {i} : {len(row_idx)} objects, {len(col_idx)} features\")\n", - " \n", - " # Важнейшие признаки (топ-10)\n", - " top_features = [feature_names[j] for j in col_idx[:10]]\n", - " print(\"Top features:\", \", \".join(top_features))\n", - "\n", - " # Распределение категорий (если имеется колонка 'Category' или что-то похожее)\n", - " if 'Category' in df_clean.columns:\n", - " cluster_labels = df_clean.loc[df_clean[\"Cluster\"] == i, \"Category\"]\n", - " print(f\"Category distribution for Bicluster {i}:\")\n", - " print(cluster_labels.value_counts(normalize=True).head())\n" - ] - }, - { - "cell_type": "code", - "execution_count": 23, + "execution_count": 28, "id": "d3aca8eb-11d9-4236-9726-1be6ba5ae44d", "metadata": {}, "outputs": [ @@ -1048,7 +883,7 @@ "[5 rows x 24 columns]" ] }, - "execution_count": 23, + "execution_count": 28, "metadata": {}, "output_type": "execute_result" } diff --git a/week4_scikit_learn.ipynb b/week4_scikit_learn.ipynb index ee91827..5b153eb 100644 --- a/week4_scikit_learn.ipynb +++ b/week4_scikit_learn.ipynb @@ -670,172 +670,7 @@ }, { "cell_type": "code", - "execution_count": 8, - "id": "837d561a-25bf-4983-a768-07c3820b860b", - "metadata": {}, - "outputs": [ - { - "name": "stdout", - "output_type": "stream", - "text": [ - " Patient_ID Age Gender Smoking_Status Years_Smoking Cigarettes_Per_Day \\\n", - "0 P100000 76 Female Never 6 37 \n", - "1 P100001 39 Male Never 30 39 \n", - "2 P100002 85 Male Former 47 14 \n", - "3 P100003 45 Female Current 45 32 \n", - "4 P100004 48 Female Never 46 26 \n", - "\n", - " Secondhand_Smoke_Exposure Occupation_Exposure Air_Pollution_Level \\\n", - "0 Low Diesel Fumes Low \n", - "1 Low Silica Low \n", - "2 High Asbestos Low \n", - "3 Medium Silica High \n", - "4 Medium Silica Low \n", - "\n", - " Family_History ... Diet_Quality Region Income_Level Education_Level \\\n", - "0 Yes ... Poor West Middle Tertiary \n", - "1 Yes ... Average North Middle Primary \n", - "2 Yes ... Good South High Tertiary \n", - "3 No ... Good West Low Secondary \n", - "4 No ... Good North Low Tertiary \n", - "\n", - " Access_to_Healthcare Screening_Frequency Chronic_Lung_Disease \\\n", - "0 Good Regularly No \n", - "1 Poor Occasionally Yes \n", - "2 Average Regularly No \n", - "3 Average Never Yes \n", - "4 Average Regularly No \n", - "\n", - " Lung_Cancer_Stage Diagnosis_Year Survival_Status \n", - "0 Stage II 2008 Alive \n", - "1 NaN 2002 Alive \n", - "2 Stage II 2007 Deceased \n", - "3 NaN 2011 Alive \n", - "4 NaN 2016 Alive \n", - "\n", - "[5 rows x 24 columns]\n" - ] - }, - { - "name": "stderr", - "output_type": "stream", - "text": [ - "C:\\Users\\user\\AppData\\Local\\Temp\\ipykernel_8300\\3497225959.py:39: SettingWithCopyWarning: \n", - "A value is trying to be set on a copy of a slice from a DataFrame.\n", - "Try using .loc[row_indexer,col_indexer] = value instead\n", - "\n", - "See the caveats in the documentation: https://pandas.pydata.org/pandas-docs/stable/user_guide/indexing.html#returning-a-view-versus-a-copy\n", - " df_clean[\"Cluster\"] = model.row_labels_\n" - ] - }, - { - "data": { - "image/png": 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UIv6AylAeu149OScGq26wPRv9Ke2Px1savg8o9AMAAADgW7RkAD05B6WZq306OgdvfNfU0q1Xb5dgV+ekpRuyvyv0kYI+iYmJMqdl7dq16dKlS7Rs2TLatGkTfffdd8EbXPID4miiT85avvbaa/T000/LnC3s/fffl/ktOcM5YsQIzccJyy6QtvxvKiCNyFLLj9VR1WLLpKnrWWqGEkMC9Q0EAAAA4GuM/KivdyoSI9/tPDW+0FnVVa3nWRoBoJ7uvOCetLQ0uu+++yglJYViY2OpZcuWEljedNNNFLTBpTNHjx6l1NRU6Qprxg9chw4dKCkpSVdwCQAAAAAA4K4CH8lcvvfeeyV+TL8OLjmwZJyptMTXzeu0CilQ3WDzKqjrcf1SpD29Xs1/mVtTvUhC8tU8mOBZ+OUKAAAAPEnvHJX2lumdJ9Ib522k66pW7szPafSxcZYVRbVY/+fXwaUn54c51iuSQsPDqcaPauylabuagiQ2TgWdKf3V8oiT2gfMgnYYlwoAAAClTetUHiURZGo9t5I6P737cnVO9tZdtW816s3vFPpI5rI0+Hy1WGcSEtQAyNOnT1st5+vmdY7mh+Hus5aXC1vWef18AQAAAAAgsBWYTF67+Dq/zlxydVgOItevX0+tW7eWZRcvXqQdO3bQQw895LRy0pQpU6yWNV/2JuVE5NGpLhFyvZzqFUu5Rd1kyx6Isuo2C96BDCYAAAAE8vcQoxVobbcv6YI+erO6Wrrc4nte4PH54PLy5ct0+PBhqyI+e/bsofj4eCmrO2nSJHrxxRepYcOGxVOR8JyYQ4cOdbhPexONhkT4/EMBAAAAAAA+rpCCl89HVLt27aKePXsWXzdnHEeNGkVLliyhJ554QubCHD9+PKWnp1PXrl1pzZo1uua4ZPU+U212JZVubj7pN2nvr7JZHfefE6RNu96vexL7DWQwAQAAwJuMjGEs7fOypGvsopvH8gRnx0ABn8Dh88Fljx49ZD5LR0JCQuj555+XizsKI1QV2PONVXtgZnNp7+yn2oQoVIktDQgyAQAAwBuMdAHVylkXUFfdXY2cg6eqrLpzv/V297W8TaBViS1AQR8AAAAAAACAAM5clpRTN4ZJW3dVlrRnp2VLW+6HeGkLIoP3Fwhf/3URAAAAoCS4yjY62660pinRsl4LZ/NVWq53VYDI2TkESgazIIjDBgSXRcqeUt1eD49VD0mNpXHSRj14QtqjJ6pIi3kuS5cnJgwGAAAAcEZPxVM929nbxpbWqqz21um9P1rOTW8FWkf3y972gTrPZTBDcAkAAAAAAOAhhRS8EFwWiUkukPZK1UhpU7qpl0XhsWrSRsepbrKFhMylr9D7SxoAAACAFnrndHSnWJA3u4DaHkvv+ds7P61db7V0iw3U72wFFLyFQH0+uJw1axZ98cUXdODAASpTpgx17tyZZs+eTY0aNSreJjs7m6ZOnUrLly+nnJwc6tevH7311ltUrZoKDLU4O1KNtSy7uYK0sdtVcHm6XYS0NeqelvYEqfXge1BZFgAAANyhtdurJ4I0T52bJ85TC1f7chUso35GcPD5arGbN2+mRx55hLZv305r166lvLw86tu3r8xtaTZ58mRatWoVffrpp7L9qVOnaNiwYaV63gAAAAAAEHwKTd67+Dqfz1yuWbPG6vqSJUuoatWqtHv3burWrRtlZGTQe++9R8uWLaNevXrJNosXL6YmTZpIQNqxY0dNx6lUQQWrZXeqePtKQrS0uXEqg3klT3WXBd+HDCYAAAC4Yu97gqe7qDrrFuvJ7zd6v/MYGVqktyKtlsI+rjKt4H98Pri0xcEki49XU4RwkMnZzD59+hRv07hxY6pduzYlJSVpDi7LR+ao/ddXXWlTe+er41S7qK6fVi921UkW/AGCTAAAAAjm+g+e6Oar9T5qHVOqa99+Wi22IIjHXPp8t1hLhYWFNGnSJOrSpQs1b95clqWmplJkZCTFxampQ8x4vCWvAwAAAAAAAO/zq8wlj73cu3cvbd261a39cNEfvlgqnFKBQkPDKeVBlbEMP68empjaqkpszDJVyOdkd7cODaUAGUwAAABwZ05Hbx/X3nrbc3B2bnq/2+jJuGr9/qRnrs9A7xZbEMSZS78JLidMmECrV6+mLVu2UM2aNYuXJyQkUG5uLqWnp1tlL0+fPi3rHFWgnTFjhtWyuOG9KP623lTzM5XMPdtSvSgyPr9G2pzrvXK3oAT5etcVAAAAKDl6vgfo/aHanX3bLvdmhVdbWrrFaunualSgdIsNZj7fLdZkMklguWLFCtqwYQPVq1fPan3btm0pIiKC1q9fX7zs4MGDlJycTJ06dbK7z8TERBm7aXmpOAQpSQAAAAAAcE+hKcRrF18X7g9dYbkS7MqVK6lChQrF4yhjY2Nl3ktux40bR1OmTJEiPzExMTRx4kQJLB0V84mKipKLpTJ7VbdXU5iqDlvxoGqfeP4DaSdvukvayDSU9AkU6C4LAAAA9hjN9Bnpuqq3Cquz/WntmurJ7qj4PnW1AnSL9V0LFy6UtkePHlbLebqR0aNHy//nzZtHoaGhNHz4cBlL2a9fP3rrrbd0HSdPxZZUNkWNsbxcS01FkrjsPrWiRp7b9wV8Eyb1BQAAAC0Bkt4gzNk0J6725SpQtPe9Re9UJK6CY2fnrbW7rKP7o+d8wX+E+0O3WFeio6NpwYIFcgEAAAAAACgtBb4/8jB4g8uSUufbTGlP3VhO2ti/VLfY2s9tkzZ1SmdpsyuV2imCl7kzGTEAAAD4FyNdQfV2YTVSiVbrdxAt31tcdVnVkxXVer6uCv6gp1hgQ3BZ5NKzKrjM+rOMtLF/qeWpk1RQ2fy2/dLu2tiktE4RShDGDwAAAAQ2PVNlmLkzLlJvt1hX9ARpeivSaglcjUw94mi9v089YqvQDwrveEvw5mwBAAAAAADAY5C5LHI2Q3WHLZes4u3CCNUtNqeyWp+aVVTxB4IKMpgAAACByVnm0FWBHHe+F7jKWLoqtuPs2K4yre5053VV/MdVF9tg+g5VEMTVYkP9oVpsy5YtZYoRvvAUI99++23x+uzsbJmupFKlSlS+fHmpGHv69OlSPWcAAAAAAIBg4/OZy5o1a9LLL79MDRs2lMqxS5cupSFDhtAvv/xCzZo1o8mTJ9PXX39Nn376qcx5OWHCBBo2bBj9+OOPuo5TYZPKXEbcckbazO+rSBt5Qa0/vreGtGGevXvgJ7zxyyUAAAD4FqPZNj2Fcbx9LiWVcTU6BtPZFCqBMvaywOTz+TuvCTFpmevDx8THx9PcuXPptttuoypVqtCyZcvk/+zAgQPUpEkTSkpKoo4dO2reZ4PlM6UNLyroYxaVrtqLrXOkjTgZ5bk7AgEDQSYAAEDwFvRxp3up1mDN0Tnpua3W9XrOw53usK5ucyhxMvmjzceu89q+u9f9k3yZX4XVBQUFtHz5csrMzJTusbt376a8vDzq06dP8TaNGzem2rVrS3AJAAAAAAAAJcPnu8Wy33//XYJJHl/J4ypXrFhBTZs2pT179lBkZCTFxcVZbV+tWjVKTU3VdYyCK+qhiPtbXb/Q84q05TepTKYpz6/icChhwTxoHQAAwB/p6brqjaydu5xNF2J0fkvb/Tnb1tU+9dyHQOkOaxbMBX38Irhs1KiRBJIZGRn02Wef0ahRo2jz5s2G95eTkyMXSxUrnaPQiHA6101VhW34luotnHa9Wh+WidGW4BqCTAAAAP/lKoBytb2ZJ8Zcaj2Wv33HCYYxl8HML9JxnJ289tprqW3btjRr1ixq1aoVvf7665SQkEC5ubmUnl40MLIIV4vldY7wPrj4j+Ul9eNtJXBPAAAAAAAgkBWYQr128XV+kbm0VVhYKJlHDjYjIiJo/fr1MgUJO3jwICUnJ0s3WkcSExNpypQpVsvu2f0EhUWmU8y8GLmeekNZaXMrqvXRqerJzMN0l6ABMpgAAAD+x2hFVFf707Kt3nNzdBxPVr+1dzx3v9M4684L/s/ng0sOBAcMGCBFei5duiSVYTdt2kTfffedZBzHjRsngSJXkOV5MCdOnCiBpbNKsVFRUXKxdHFOfWmP3qmud22+T9qD7zSR9mz3XGlRLRb0cDbBMT5IAQAAfJOrcYZaA0VnYxdd3cad7wl6u/d6gt6qt4HcHbYQYy59V1paGt13332UkpIiwWTLli0lsLzppptk/bx58yg0NFQyl5zN7NevH7311lulfdoAAAAAAABBxeeDy/fee8/p+ujoaFqwYIFc3FHhKVUmturietLu+7mptN0m/CRtWo7qD7vrpMpkAhiFLrMAAAClr7T+DrvK1umds1LLMTy5T9t9uHPeersZ+4sC/yhrE5zBZUm5NLOWtJfHX5I2LEmNvbwzfoe000eMURveUlpnCIHGEx/0AAAAYIyRiq6eGHPpbpVVPYGY1u8azvbtqS7CwaTADwrveEvw3nMAAAAAAADwGGQuixy7u1DasKOq+2uDLSqDeX/oRGnjaqr1AN6CjCUAgDHo+QGl9bopza6gzooGOtrGG+8Rd4b7BGr2szCI83cILotUTFJVYCMyTVbLTUWPUEFU8FZ9AgAA8GUYyw5G6OkC6uw2lss9+drztfGIRh8bf7qP4D6/CqtffvllCgkJoUmTJhUvy87OpkceeYQqVapE5cuXl6qxp0+fLtXzBAAAAACA4FRgCvHaxdf5TeZy586d9Pbbb8tUJJYmT55MX3/9NX366acyVcmECRNo2LBh9OOPP+ra/4XmBdJes0FdT+msusdm1c6XNryD6iZLeyt64N4AAACAp2FuYdDDyGvDE5k2b2Tp9J6XO/NgOspgulNwCBnLwOEXweXly5dp5MiR9O6779KLL75YvDwjI0OmKlm2bBn16tVLli1evJiaNGlC27dvp44dO2o+Rpe2B6Xdnq2mGqm2XY2xLOiW6eF7AwAAACUFXWbBk9VitU7xYW9/el973gy89E4rAvoU+FfnUI/yi3vO3V4HDRpEffr0sVq+e/duysvLs1reuHFjql27NiUlJZXCmQIAAAAAAAQnn89cLl++nH7++WfpFmsrNTWVIiMjKS4uzmp5tWrVZJ0eOzY1lTZhp+oee/buLGmjN6pfbir/li1tcl+DdwQAAABKDTKY4M3Xi54uoVq3dacLrqPzddWV1dltbPft7nydzvbl791kC4N4nkufDi7//vtveuyxx2jt2rUUHR3tsf3m5OTIxVLln3IpNCycIi+q4LLi5+WkvXLXeWmr3qWKBCVvVN1mAQAAwP8YmToCgofesYiuKqfa29YoZ0Gm1mDSVYVXZ/fX3a60RqZpoSHklwr8o3OoV/j0Pedur2lpaXT99ddTeHi4XDZv3kxvvPGG/J8zlLm5uZSenm51O64Wm5CQ4HC/s2bNkuI/lpeTB9aXwD0CAAAAAAAITD6duezduzf9/vvvVsvGjBkj4yqnTZtGtWrVooiICFq/fr1MQcIOHjxIycnJ1KlTJ4f7TUxMpClTplgt6z7pbcoJC6WT/VSJ3zpfqYI+6bvjpU1JKl+0oWfvIwAAAJQedJcNXvaec093x3RWLEhrd1hvZuq1dJPVWuTI9hieKKDkrwr8YMqQoAwuK1SoQM2bN7daVq5cOZnT0rx83LhxEijGx8dTTEwMTZw4UQJLZ5Vio6Ki5GKJu8QCAAAAAACAMX4fUc2bN49CQ0Mlc8njKPv160dvvfWW7v1c6n9Z2poflZE2eajKXNb/QI3NrPbSX9KexJhLAACAgIOxmFBS81yW5DyS7h7bcpm7+wqm91Khb4889Cq/Cy43bdpkdZ0L/SxYsEAu7oiOzJP2XDPV/bXmKrX80j/VeE5TVgW39g8AAAD+A8Em2KOnO6mnj+VovZbjuyo85Kzwj9H7qqXYEd5XgcfvgksAAAAAAABfVYCpSCDrgJors+wldb1MmuoOe/nrKqrNMqkVDUvpBAEAAKDUBFMxkmCmtwCO7e2MTLfhiXkujWZQjRT08WS21ptdfKF0ILgskl85X9roFqobbP5e9WK/cL3qLhsSrsZgRpy0LgQEAAAAwQNd+gKHlnkjS2PcoJFjuQoSHe1Ly3hOvft0dbtgUEioFgsAAAAAAABuKkC3WDCpxCSZPqks7fkm6heHsIuqO2yztkelPXCyfmmdIgAAAPiQYM7MBCqj3WL1FL3RWqjHUabQWddVvd1LPVGYSOt5uvOYgP/w+eBy+vTpNGPGDKtljRo1ogMHDsj/s7OzaerUqbR8+XKrqUiqVaum6zih0QXSlj+hgsnjo9X1VnVOSnvx6Zpqw77u3ycAAAAIHKgs65+8+TzZ26dt4KQ3oNLSdVXrPrWOHXW2b0fdY7UGzfZuGygKgngqEr+4582aNaOUlJTiy9atW4vXTZ48mVatWkWffvopbd68mU6dOkXDhg0r1fMFAAAAAAAINj6fuWTh4eGUkJBw1fKMjAx67733aNmyZdSrVy9ZtnjxYmrSpAlt376dOnbsqPkYUYeipTVNU5nK6PXXSFut0UVpfx+oCvmEqLo/AAAAAHahu2zgFfTRS0vVVW92AS3J+Te1FAWyd3tvnZ8vKDShoI9PO3ToENWoUYOio6OpU6dONGvWLKpduzbt3r2b8vLyqE+fPsXbNm7cWNYlJSXpCi6zE1Q32JQfVVBZMylb2u0Xr5e2zh/qenJfFYQCAAAAOIMg07cZmTbEnedab7dYTwRpel+DnnxMXN3enX2A7/L54LJDhw60ZMkSGWfJXWJ5/OWNN95Ie/fupdTUVIqMjKS4ODVHpRmPt+R1AAAAAAAAJanAP0YeBmdwOWDAgOL/t2zZUoLNOnXq0CeffEJlypQxtE8u/MMXS+Fxlyg0IpxyQlVmsjBCvShMYWr9332QsQQAAAD9kMH0TaU1z6UvVEbVWpHW2bZmnsyKgv/z+eDSFmcpr7vuOjp8+DDddNNNlJubS+np6VbZy9OnT9sdo2nG3WptK9DGDu1NcbfeRCE5KqhM7qeiyuizan1Ik0vSmg5W8MbdAgAAgACHINO32Hse9E4PoqdyqtaxiUaqsXrqtaRluhBH27p6XQdTtdjCIJ7n0u/u+eXLl+nIkSNUvXp1atu2LUVERND69euL1x88eJCSk5NlbKYjiYmJUgzI8hJ7c88SugcAAAAAAACBx+czl//85z9p8ODB0hWWpxl57rnnKCwsjO666y6KjY2lcePG0ZQpUyg+Pp5iYmJo4sSJElg6K+YTFRUlF6tlcYX8+wmVT4qU69Hn+DrR+Saq2lPM6vLSpjf04p0FAACAgIcMZuDQmtF0dhut+3S0nSWt52FknktP0VLsyN8VEKrF+qwTJ05IIHnu3DmqUqUKde3aVaYZ4f+zefPmUWhoKA0fPlzGUfbr14/eeust3cep9aZ6KP7uXbSgMNSqiiyFFA2+BAAAAPAABJmly5tjH7UEfo7Ow8h4T72vIaPjJo0cS8++AiXILAzibrE+H1wuX77c6XqenmTBggVyAQAAAAAAgNLh88FlSTlyn8pMhlxW3WErrVHzWp7vqpbH1T8n7bmfq5baOQIAAEDgCaZCJ77OaEbPG1lGT3S19eQxHB1L62vV3vaB+jovCOJuscGbswUAAAAAAAhQs2bNovbt21OFChWoatWqNHToUCl+6k3IXBaplKB+Tak4q6y0yX1V+3qXpdK++OJ9akMU9AEAAAAvsDclRqBmdvyNN58PvWMxPZFddKegj57b2luvZV/+rtBHxlxu3ryZHnnkEQkw8/Pz6amnnqK+ffvSvn37qFy5cl45JoLLIhEfxEub1k69GMq0PS/t/DF3SHtuuEnasMzgTXMDAABAyXCn4Ap4nt45HrV0ATWyD0dcBXyutnM2t6Y7hYZcHVtvgAr6rFmzxur6kiVLJIO5e/du6tatG3mDb4TVLpw8eZLuueceqlSpEpUpU4ZatGhBu3btKl5vMpno2WeflbkveX2fPn3o0KFDpXrOAAAAAAAQfApMoV678OwYFy9etLrwMi0yMlTQzlM4eovPZy4vXLhAXbp0oZ49e9K3334rU5Bw4FixYsXibebMmUNvvPEGLV26lOrVq0fPPPOMTEnCKV+uJqtF9Hk15UjkJVXQ50S7MtJWiFfzXtb+Jl/ak93VdQAAAICSgmlLSpbRqT2c3c5RsR1356bUsy9Xy+2dq97buJN9vOo+DtG9i6AYRzljxgyrZc899xxNnz7d6e0KCwtp0qRJElc1b948eIPL2bNnU61atWjx4sXFyziAtMxavvbaa/T000/TkCHqFfj+++9TtWrV6Msvv6QRI0ZoOk7ExVxpj92s+h/X+kB1g01/WL3Iyyz/XzALAAAAUBoQZJYOV4GVq+31BF16u89q3UYPb+47GBR6sVpsYmIiTZkyxWpZVFSUy9vx2Mu9e/fS1q1byZt8vlvsV199Re3ataPbb79d+gi3adOG3n333eL1R48epdTUVOkKaxYbG0sdOnSgpKSkUjprAAAAAAAIRgVe7BbLgWRMTIzVxVVwOWHCBFq9ejVt3LiRatas6dX77vOZy7/++osWLlwoETpXONq5cyc9+uijFBkZSaNGjZLAknGm0hJfN6/TInTmWWnrPKN+aThyh+pOG7GnqE9yJU/dIwAAAAD3IIvkPj2PnbNuo5brtWQnXXVhdbRPPRzdRm8XXKPHd3ZOzvaNgj6exT08J06cSCtWrKBNmzZZ9f4M2uCS+wdz5nLmzJlynTOXnNJdtGiRBJdG8KBX24Gv5/5dg0LDwqlsOTW20hSTp9pq6npelnfK9QIAAAAYhSDTO8GO0YBPS1BkdIyls2BU7/Pu6vVir1uso2Npfe1p2S5QxlwWmnxjdgnuCrts2TJauXKlzHVpTrxxL08uguoz3WLz8vLo77//lkk4z59XU3Z4C1eAbdq0qdWyJk2aUHJysvw/ISFB2tOnT1ttw9fN6+wNhOUH1fKS8vt6r90HAAAAAACAksS9P7lCbI8ePSSmMl8+/vjj0s9cXrp0iT744ANavnw5/fTTT5Sbmyup1pCQEOm7yxNyjh8/Xibp9CSuaMRBrKU///yT6tSpI//n9C4HkevXr6fWrVvLMi7Ju2PHDnrooYc0D4TtNuVtyg8LoYhpKXK9zIba0jbtr4LY3IQwaQ9sre/R+wdgC78+AwCAXvibUbp/b/Vk5Wzpreyqp8uo3gqvRmg9/2BS4CNlbThWK2magstXX32VXnrpJWrQoAENHjxYxj7WqFFD0qmcueRuqj/88IMEmFxIZ/78+dSwYUOPnODkyZOpc+fO0i32jjvukMD2nXfekQvj4JbL6r744otyTPNUJHx+Q4cOtbtPHvRqO/C10hHu/ppPZz5TQWWkiiXp590NpA2torrR+sZLBQIZujgBAACUDqPTbWgJ2rSO2/RkkOnqPF11/9V7PABNwSUX0dmyZQs1a9bM7vobbriBxo4dK+MgecoQDjQ9FVxyJpQHoXK28fnnn5fgkaceGTlyZPE2TzzxBGVmZkrmND09nbp27Upr1qzRPMclAAAAAABAII25LA0hptLIl/qgznf8S9qyqdnSpnYsK22lP1Rhn9CpakzniR3eLd8LYAsZTAAAAO+xVxhHT0ZSy3JX6+ytd2eeS1f70LNvrcfQe7+0HP9Q4mTyR0/8ervX9j2n1afky3RXi+XM5J133klly6rgK1BcM+mwtKdeVd1gLzcvqiZrUt1nr6SpuUjQLRZKmjfGRwAAAIDxKqp6AihXxyiJ7qaeGBfpqe8j3pjmxNcUBnHEoPueP/nkk1JAZ9y4cbRt2zbvnBUAAAAAAIAfKjCFeO3i63RnLk+ePEmrVq2iJUuWSFnb+vXr05gxY2TOSUdTf/iD4++oMaLnbr8ibcUtKjMbUqjWX85VcXjw/g4BvqIkJjoGAAAIdHq6gHqq0I+9bbSen555Ll0V8HHESHdYrY+N1nMA/6Y7uAwPD6dbb71VLjyXJE9PsnTpUqnQ2r9/f8lockXZ0FD/CsPK/50rbe4PKqi80EF1izXlFpWNzfOv+wPBQ8+YCwAAACCXQZqrgE5rkKZlPKfWbrF6xkVqpWesqN4utUbGoQaKQj/IMHqLWxFTtWrVpDJrp06dJJj8/fffJYPJU5Zs2rTJc2cJAAAAAAAAgZW5ZJyx/O9//yvFff766y+ZT3L16tXUp08fmRKEpwzhIPP48eNun2DdunXt7ufhhx+mBQsWUHZ2Nk2dOpWWL19OOTk51K9fP3rrrbck8NXjRE9VuCeqZbq0td8rL+3xIaqYbrnDEdLmVXD7LgF4DYr/AAAAaFMSfyPt9S4yyp1Kru7Mz2nmTldgZ/uxvG2gKDQFb49H3cEld3n97rvv6LrrrqP777+f7rvvPoqPjy9eX65cOQn25s6d65ET5Dk2CwoKiq/v3buXbrrpJrr9dlXid/LkyfT111/Tp59+SrGxsTRhwgQaNmwY/fjjj7qOE6ViSgpdHydt9kNnpO1WMU3aH3IaSxuRXtRNFsAPINgEAADQzlXXT61/P+1t72osorPbuktvUOmNrqueGIcKARhcVq1alTZv3ixdYR2pUqUKHT161N1zK96XpZdfflm63Xbv3p0yMjLovffeo2XLllGvXr1kPWdTmzRpQtu3b6eOHTt65BwAAAAAAAC0KKDgHXOpO7jkYM6VkJAQqlOnDnlabm6uFBCaMmWKHGP37t2Ul5cn3XHNGjduTLVr16akpCRdwWWhOSHZTaUwM7Kipd2+p5m0pip5RRsgcwn+y+gvsAAAAIHGyByPnuj6qfe2WgoAudqn3oyls/25qkRbGvN4gu8w1CF4/fr1dPPNN0sGkS/8/3Xr1pG3ffnll5Senk6jR4+W66mpqRQZGUlxcaorqxmPt+R1jvDYzIsXL1pdCvPzvX7+AAAAAAAQ2ApNIV67BFzmkovlPPbYY3TbbbdJy7gL6sCBA2nevHn0yCOPkLdw1nTAgAFUo0YNt/Yza9YsmjFjhtWyhOv7UvV2/Sn8c/UrS+b1anlhgpqiJO6XSGmz/HcqT4BiyGACAADo//uo9e+nljGX7o77dJYR1Dsvp7NzNDpPpZ7vGIGW3SxEQR/tZs6cKUEkF84xe/TRR6lLly6yzlvBJVeM5ezoF198UbwsISFBuspyNtMye8nVbHmdI4mJidK11tKAe96i0LQCisxQ3V8zGqhusWUOqaAyOl1Vjc1K8P1fDAC0QpAJAADByt7fPk9VXfVGYRxPznPpqriQlqDY0W307Fvr+YD/0B1WcyDXv3//q5b37dtXCux4Cxfq4WJCgwYNKl7Wtm1bioiIkG66ZgcPHqTk5GSnBYeioqIoJibG6hIaZmhWFgAAAAAAgGKFFOK1i6/THVHdcssttGLFCnr88cetlq9cuVLGXnpDYWGhBJc8d2Z4+P9OmaceGTdunGQheToUDhInTpwogaXeSrF5ZdWTdfoeNfayRfVD0h5NV9Os1ItXU5Kc29jEY/cLwFcggwkAAOC6+6irLqp6uoA66t7qiWMY/buup1us3oymlmzkVec7RNNpgz8Hl02bNqWXXnqJNm3aVJwd5DGXPK8kz2/5xhtvWHWX9QTuDsvZyLFjx161jrvohoaG0vDhw6VQT79+/WRcqF7ZFVUSN2JneWl3N6orbY01qjrsz3eq7rEAgQxBJgAAgH6uAkU99HS1tV2n9++4N//eaxkrGqjfMwr8oPCOT01FUrFiRdq3b59czHjMo+U0JTxViKeCS+5yazKpMY+2oqOjacGCBXIBAAAAAAAAPwkujx49SoGo8m9Z0h6+R2Uo63yqlmfWUL88hO2qIG2hagACWjD9uggAAOCK1u6x3pzb0Z05KPVmKO39/dd7n7RUpA3UnlKFqBarH1dp5UCT57m0HAfpr8KuFM1zWRAlTfkn/5b21I/1pM27JkfaiJNqPUAwCIY/AAAAAJ4O0pyNXXQVrHljiIrWbrvOjql1LKir+4cfrgOb7rA6KytLiuiULVuWmjVrJmMhGRfSefnll71xjgAAAAAAAH6h0BTitYuv051y5Dkif/31VynoYzklSZ8+fWj69On05JNPkj/KrF1O2tgDqoDPpTW1pC2864ra4AIK+kBw0zNRNAAAgK/TUiBHb5EdZ/M1+tLfSVdZRyNdgm23D2aFfjBliM9kLr/88kt68803qWvXrlK0x4yzmEeOHPH0+VFBQQE988wzVK9ePSpTpox0w33hhResCvzw/5999lmqXr26bMOB7qFDaioRrbIqh8klfn+uXDLqhsslP0tdqFy+ugCAFf6jwhf+Y4I/KAAA4C/Mf7fMf8c8Gfw527ftOm/8vXW0je0x3dmnp+4XBHlweebMGapatepVyzMzM62CTU+ZPXs2LVy4UALa/fv3y/U5c+bQ/Pnzi7fh6zwFyqJFi2jHjh1Urlw5mZIkOzvb4+cDAAAAAADgSCG6xWrXrl07+vrrr2WMJTMHlP/+97+L5730pG3bttGQIUNo0KBBcr1u3br00Ucf0U8//VSctXzttdfo6aeflu3Y+++/T9WqVZMs64gRIzQdp/wdp6Q9+mc1aRO2Fko7rdvn0r68v5+0V1DQB8AudyvTAQAA+Cs9czpqLXijdY5KPfvWyki1WL3bOToe+DfdweXMmTNpwIABMsdlfn4+vf766/J/DgI3b97s8RPs3LkzvfPOO/Tnn3/SddddJ+M9t27dSq+++qqs54q1qamp0hXWLDY2ljp06EBJSUmag8vkgyqorPdlgbQnu6sxlk//pALW8KNl1IbBW1kYQBdvVLsDAADwFD2BmN5Kqc64qhqr9VjO9q33HNz5G+2JarHenMKlNBQG8VQkuu85j7Xcs2ePBJYtWrSg77//XrrJciDXtm1bj58gFwjiALFx48YUERFBbdq0oUmTJtHIkSNlPQeWjDOVlvi6eR0AAAAAAAB4l6EJKrmozrvvvksl4ZNPPqEPP/yQli1bJkWDOLDl4LJGjRo0atQoQ/vMycmRi6Vyf5ooNDyccmPU9YJoVTAo+o+ijGVR/aC8Cu7cG4DggwwmAAD4Int/lzzV9VPPfJFaj+Xs76m783KWpGCYQ7vQD8ZG+kxwGRYWRikpKXaL+njD448/Xpy9ZJwtPX78OM2aNUuCy4SEBFl++vRpqRZrxtdbt25td5982xkzZlgtq9auL1Vv35/CclUUWX+FmoIktWNZaZvftl/aXRubeOV+AgQ6BJkAAODrtE6z4SpA1DKlhye7rLrqpqv3b6+RgNvR+WsZhwpB3C3WcgqQkpCVlUWhoaFXBbiFhargDk9RwgHm+vXri9dfvHhRqsY6KjDEc3VmZGRYXapd/78xmwAAAAAAAEbnuSz00iUgu8V6Y8oRRwYPHkwvvfQS1a5dW7rF/vLLL1LMZ+zYscXnwt1kX3zxRWrYsKEEmzwvJnebHTp0qN19RkVFycVS+NB0aVP2VFb7LVQPTVhR79k/zqgMKQC4BxlMAADwBc6yj0YyfFqzdFqzn7b0VKJ1dJ5GigRppXXfwVAtthDdYvUxd0W1p6BAVVv1FJ7PkoPFhx9+mNLS0iRofOCBB+jZZ58t3uaJJ56QeTbHjx9P6enpUnRozZo1FB0drfk45w/HS1vzJ3X+BRHqRVHulJor83hURbVh8BZ/AvAod7oMAQAAeIPeoMtIN1RPVUZ1Z+yinjGanp6KxNnxAi3IDEaGgsvPPvuM4uNVMOZtFSpUkHks+eIIZy+ff/55uQAAAAAAAJSWQmQuteNArkuXLiVW0KekmKLVGM5TN4ZJG3ZFvShM4Sr7Gd8uTdpzPwfW/QbwJegyCwAAJUVP1VW93Cle44m/ha66pPpKhtDXzgdKIbgs6YI+AAAAAAAA/qIQmUvtNm7cWGJdYktS3S/MQXO++nfqWWlPxlSTVv0LACUBGUwAAPClrJnW4jS2+/Jk1tGTXE1d4ux8SqIIEARRcMmFc3jaj379+lkt/+6772R6kAEDBpA/yqyuHoozPXOlrfyRKlpUO0UFmyFfx6kNu5fWGQIEHwSZAADgC7RWW9USJHkqoHLW5Vbv3JOOtnO2b0eBNAJFCurMpe7ap08++aTdirDcXZbXedqlS5dkqpE6depQmTJlqHPnzrRz506r43Ll2OrVq8v6Pn360KFDhzx+HgAAAAAAAODBzCUHbk2bNr1qeePGjenw4cPkaf/4xz9o79699N///lemIfnggw8kgNy3bx9dc801NGfOHHrjjTdo6dKlxXNcclaV1+uZiiTuYJa0YbllpQ3PUgV+0tpFSHulugqoI9R0mABQgrT8sgoAAKCHlr8lrrq5Gpnn0lO9drTMF+mou6s7PYP0ZD1dCdQsZyEFb+ZSd3AZGxtLf/31F9WtW9dqOQeW5cqV8+S50ZUrV+jzzz+nlStXUrdu3WTZ9OnTadWqVbRw4UJ64YUXZIqSp59+moYMGSLr33//fapWrRp9+eWXNGLECM3HyrymjDpmJfViyL5OVY2NLAom6zVKkfbEjpoevY8AoB+6ywIAgDe5+vuitZups0q0npw30pvzchq5jbPz9+bcn76iEN1iteMgjrupHjlyxCqwnDp1Kt1yyy0ePbn8/HzpgmubgeTur1u3bqWjR49SamqqZDItg98OHTpQUlKSR88FAAAAAAAAPJi55G6o/fv3l26wNWuqLN6JEyfoxhtvpFdeeYU8qUKFCtSpUyfJUDZp0kQykh999JEEjtdee60EloyXW+Lr5nVa5Yw5L23lueWlPTokSi2vmydtzMIaasPr3b9fAOAZWn9RBgAA0ENr0RpX7HWLdZXBdFXB1VnRHXe78To7b292Ow60YkCFQZy5NNQtdtu2bbR27Vr69ddfJYvYsmXL4m6rnsZjLceOHSvjK8PCwuj666+nu+66i3bv3m14nzk5OXKxdOFsFIVEhJOpkcqSxv6plhdERkqbWwHzewL4C3fGugAAQHBw9rdC67hCT44/9CR3z0dLd153g05N56lGvUEgB5csJCSE+vbtKxdva9CgAW3evFmmQLl48aJUhb3zzjupfv36lJCgpgs5ffq0LDfj661bt3a4z1mzZtGMGTOslsUN70Xxt/X24j0BAAAAAIBAV4jMpT4c6HHAl5ycTLm5al5Is0cffZS8gYsF8eXChQsypyZ3z+XqsBxg8ryb5mCSA9AdO3bQQw895HBfiYmJNGXKFKtlnZ5+m0J/CqcClaik7EqqrbZbzXN58i7VPTb0qCr8AwC+T0thAgAAAFdcFexx1ZXVchtXnHVRdbVvPefjbHt3srmO4O9vcNAdXP7yyy80cOBAysrKkiAzPj6ezp49S2XLlqWqVat6PLjkQJLnsmzUqJEUDnr88cdlvOeYMWMkg8rFhV588UVq2LBh8VQkPGXJ0KFDHe4zKipKLpauu/OYtPu/v1baKnvU1CMnu6mqsbGb1EN1qY5H7x4AlDBUmgUAAE8FkVrXO9vWE1wFia4CQj1Vbh0tN1I9NlD/BhcGceZSd7XYyZMn0+DBgyWDyOMtt2/fTsePH6e2bdt6vKAPy8jIoEceeUQCyvvuu4+6du0qAWdEhJp/8oknnqCJEyfS+PHjqX379nT58mVas2aNrjkuAQAAAAAAwD0hJk4L6hAXFyfdTjmTyP/nyq1cyZWXjRo1ig4cOED+qFfvl6VN7q/6xdbYqjKXaW1UxjLqgtouSw3zBIAAgQwmAEBw0lPN1Exvl1AtxWts1+udY9PeMne7quoquuNgn45ur+c2hxInkz/qsf6fXtv3pt6eT+aVardYzhiGhqqEJ3eD5XGXHFxyFdm///6b/FVejHoo8ssXWnWHpaLYu01/FTTv2tiktE4RALzA1yr8AQCA73EVGGq5natgUuux7P19cicwNXreRtkLXANlChKzQgrebrG6g8s2bdrQzp07ZYxj9+7d6dlnn5UxlzxlSPPmzb1zlgAAAAAAABBYweXMmTPp0qVL8v+XXnpJxkFyZVYONv/zn/+Qv/r7FpWxDI1S1WFrrlIPTdm9p6T9uX7NUjw7ACgpyGQCAAQvrVVW3SkSpzVL56yCq7fYux/4u6hfYRAX9NEdXLZr1674/9wtlovnBIIa36pusKd6qi6/5xur62ltVXnYaktV0JnSsdROEQBKgZ6xIvhDCwAQmPQGnba303Obkqh27qrqrb1tnW2jJxjWUokWgmyeSwAAAAAAALiaCZlL7XheS2fOnz+veV9btmyhuXPn0u7duyklJYVWrFhhNT8lF7J97rnn6N1336X09HTq0qULLVy4ULrgWh6PpyJZtWqVFBoaPnw4vf7661S+fHld96vaY39JGz67rrQZ9dTy5gP+lPbAlet07Q8Agge6DAEA+B893U1Lco5kI8cwOp+lnmPqLTSEeaWDk+7gkoO81157TarDuiszM5NatWpFY8eOpWHDhl21fs6cOfTGG2/Q0qVLqV69evTMM89Qv379aN++fcXzWI4cOVIC07Vr11JeXh6NGTNG5rxctmyZ2+cHAAAAAACgRyEyl/qMGDFCxlu6a8CAAXKxh7OWHMQ+/fTTNGTIEFn2/vvvU7Vq1ejLL7+Uc9i/f7+M+eTqteaxoPPnz6eBAwfSK6+8QjVq1NB8LueKMpbJA9SLoWq9M9Lu/1JlLEO7F010ubeiO3cZAIIAfq0FAPBPnv78NjK+UGtvGC3jOR3dH1cZTT1jRY1MneLo/CAIg8uQkBCpFluhQgUqU6aMd86KiI4ePUqpqanUp0+f4mWcLe3QoQMlJSVJcMltXFycVZEh3p67x+7YsYNuvfVWzcfLj1aFfMqeUG3GmSrShpRV67NPxEgb4Zm7BwBBAN1lAQD8i9bupb7wo6KWwFVr4R53zltroOqsWJDReUR9lQmZS+04o3jddUXZvNBQySTy3JfctVVPMOcKB5aM92+Jr5vXcWubQQ0PD5dxoeZt7MnJyZGLpcKCfAoNQ30jAAAAAAAwrhDBpXYbN26UAJPHN168eJFOnTol3VLvuOMOeuedd2TMo6+bNWsWzZgxw2pZvZo9qUHtXhSWp8ZyJg8ySRuWpTKZtdeo65iKBACMQiYTAMB32PsM1jJ9hqPbGj2uo2O6OoaebrH2bmO53llm01WXWr3n7+y8r7qNGhkHgRxcdu/e3e7y66+/nl599VWPBZcJCQnSnj59mqpXr168nK+3bt26eJu0tDSr2+Xn50sFWfPt7UlMTKQpU6ZYLRv98z8pLPIkHfxMZWW7ttgn7S+rmkp7TeJBaVM2NvHI/QMAwNhMAAD/oLfrp73PdU+PLzTSzdRIQOjuGNFgHINpUjmpoKTSch5w//330wsvvOCp3Ul1WA4Q169fX7yMM6U8lrJTp05ynVuuXstTmZht2LCBCgsLZWymI1FRURQTE2N1CYsM89i5AwAAAAAABBvdmUvuDhsRcXVZm3LlyumeW/Ly5ct0+PBhqyI+e/bskTGTtWvXpkmTJtGLL74o81qapyLhCrDmuTCbNGlC/fv3l8B20aJFcm4TJkyQYj96KsWyI0uLxpEW3bXsAvWfrBoF0qZmVdC1PwAArZDBBAAoefayZKVZmEdPhs92e9uMqqtMq55so6ceA2f7CbS/f4WEMZeaDRo0iFauXGlVKZaDxMmTJ9NHH30k/9dq165d1LNnz+Lr5q6qo0aNoiVLltATTzwhc2HyvJWcoezatatMPWKe45J9+OGHElD27t1bCgwNHz5c5sbU63yXXGkTvldB5eksFSiH5qjk7pW8SN37BADwVhcnAADw3phLT05BYrtvrbfV0tXW6DG8QevYTHvn73AbjLkM/OCSu5xyIPftt9/K1CBr166lf/zjH5Jp/OWXX3Ttq0ePHlIcyNm0J88//7xcHOEs57Jly3QdFwAAAAAAwBtMqBar3TfffEN33nkndevWjdq3by/ZSh5ryZlLDgb91mU15vJiHXUfqs2pJK1pcBCPyAWAUoeMJTiCrDZAyXWLNVotVktlVFfH1rre3raOzkfrsext4+ox0lpx1955QRAGl5GRkfT555/T6NGjafHixZLB7Nu3L/m7sjVUd94rBWpsZU6cemgiamRJe35XVQ+XQAIAADDOm2OjAIKd3q6dRsdN6uEsqNT7Y5PWqrJa9umpQDyQFCJzqd1vv/0m7dSpUyklJUW6xP73v/+lihUryvKWLVt6/iwBAAAAAAAgsIJLnmPS3P3VPF7SXJSHlxcUqOqq/qbGq6qQz8nJKoMZml9O2tivVXuudaG0YZlIXQIAgO/wRjESgGCgpaCPpzKBevbliYq1ejOszs7RUTbWVddbR/vUUuXW35mCeFSd7uCSpwvxlC1bttDcuXNlnkrOgq5YsaJ4mhH2xRdfyBQjvP78+fNSMIiDW0vZ2dmSRV2+fDnl5ORQv3796K233qJq1arpOpdzzctKW36VejWcuUcFmfl/qaqxdZqfkvbEjppu3msAAADvwLQ2ANp5IqDR073U3X3qYXT8pp5usVqrwzo6N3v7ChQmH+oW6yre8jTdabg6deo4vejB04y0atWKFixY4HA9Tz8ye/Zsh/vgQkKrVq2iTz/9lDZv3kynTp2iYcOG6b1bAAAAAAAAASXTRbxV6plLTxowYIBcHLn33nulPXbsmN31GRkZ9N5778lUJL169ZJlXGSoSZMmtH37durYsaPmc4m+oLq9huapzGXN+aqb7JExav7LlC1FGcsozbsEAAAoFchgApRuxs8bBbeMvK89UZjI3e68Woocuaqk629MPpS5dBVvBVRw6S5O7+bl5VGfPn2KlzVu3Fjm3ExKStIVXIaOTZP25NHK0lbeoaLIMofVi6MAQSUAAPgZVG0E8KySqBar9X3rjUrR3uzOq2cqkuJth+g+DShlfh1cpqamytQocXFxVst5vCWvAwAAAAAACJSpSHJycuRiKSoqSi6+wK+DS08+KdkfVKLQsHAK63dFrp9tX/QEFagXR70mKOgDAAD+Dd1lAf7H2ftAa3dXPe8pT81FaXuOerY1ct7u3g8ttwu0arHeNGvWLJoxY4bVsueee46mT59Ofh1ccpfU/fv3y/+bNm1K119/PZW0hIQEys3NpfT0dKvs5enTp2Wdnicl7qa+FN+vH4X+parGUqR1DeHyEWrsJQAAgL/TWv0RAMhj4w2NVlV1p1us1uBYC70BrKvlgczkxalIEhMTacqUKVbLfCVraSi4TEtLoxEjRtCmTZuKAzoO7niuS54OpEqVKlRS2rZtSxEREbR+/XoaPny4LDt48CAlJydTp06ddD0prRcu8vr5AgAAAAAAGOVLXWA9ElxOnDiRLl26RH/88YdUZWX79u2jUaNG0aOPPkofffSR5n1dvnyZDh8+bDWH5p49eyg+Pl6K8vDclhwo8vQi5sCRcVaSL7GxsTRu3DgJFPk2MTExcn4cWDor5mPvSam3poD7wFJ2JVUl9sJ1YdLmFiVE952sbmzuFgAAAD+BbrMQTIxkF20zgGbuVHB19/ztnYezbYxWuXV1n7VWifVGISJf40vVYl3FW6UeXK5Zs4bWrVtXHFiau8Xy3Cl9+/bVta9du3ZJxtPMnE3kQHXJkiX01Vdf0ZgxY4rXc8bUtl/xvHnzKDQ0VDKXPI6yX79+9NZbb+m9WwAAAAAAAAEVXO5yEW+VenBZWFgoXVFt8TJep0ePHj3I5KRT8ujRo+XiTHR0tAS27k4MevTWSGmrb1HnU/2mv6U9cUGlLnMuq/XIXAIAQKALpgwDBC972UajWXs9U5G4GkPpifea1l4IRqZQ0Tsdi6Njajk/cJ+reKvUg8tevXrRY489Jt1fa9SoIctOnjxJkydPpt69e5O/Cs1RvzCc6q6u151VTdqw9iqorFBUXDa7UimdIAAAQAnDl0AI9h9RtFZX1Vqkxx6tXXC1FAvyZAVXR9u4CkiDsYCPLRMFL92JuDfffJMuXrxIdevWpQYNGsilXr16smz+/PneOUsAAAAAAADwabozl7Vq1aKff/5Zxl0eOHBAlvH4yz59+pA/M9XKlrby99HShmflS1uuq/rVJSxU/QaR/XPVUjtHAACA0oLpSyAYuCrco7UbqZbsoqspSBydk56MoKuMqztTqCBD6R9jLv1insuQkBC66aab5BIoyu4qI22mKgpLl2uq+S4LstQ40vyT6rqqIQsAAADeHjcG4E3OXqtaX8daq8s627ej4EzreEkt+zY6hlTLPt05FgLUwKM7uHzjjTecrufpSLTasmULzZ07l3bv3k0pKSm0YsUKGjp0qKzLy8ujp59+mr755hv666+/ZNoRzo6+/PLLxWM9GU9XwtOPrFq1qrhq7Ouvv07ly5fXe9cAAAAAAADcY6KgpTu4nDRpEtWsWZPCwsLsZjT1BJeZmZnUqlUrGjt2LA0bNsxqXVZWlnS/feaZZ2SbCxcuSCGhW265RUrqmo0cOVIC07Vr10pAylOXjB8/npYtW6brfoXmqraw6BHJrqpeFWV3qCC17bD90u7a+L8pWAAAAMAa5sqEQKyK7AvZOj3H0rqtqwJFWo/n6WJGEGTdYjm4q1rV/bGHAwYMkIs9nKnkgNG2mNANN9xAycnJMunn/v37Zd7NnTt3Urt27WQbLio0cOBAeuWVV6wynK5k1lLBZGS66iPdpr2abPQXulbanT80ljZ4e1ADAABohyAT/JHesYl6xkdqrThru703u6truV+ePC9H5xloQaUpiMdc+tW0jRkZGZIdjYtTc08mJSXJ/82BJeOus9w9dseOHaV4pgAAAAAAEIxMJu9dAjJzWRqys7Np2rRpdNddd1FMTIwsS01NvSqDGh4eTvHx8bJOj/pfZEp7+gbVDXb3wbrShqmisQAAAGAAMpgQSIwU8HG1D9vl3uiKa0trBlbLeTlaHmjZSPBicLlv3z6HwVvLli3J03gs5R133EEmk4kWLlzo9v5ycnLkYunvrtEUGh5OFf5WPwlUfr9A2pMT1RQlEdsqSJtdye3DAwAABB09X4QRiEJp0RvAaQ20nK1zNSWJoyDU2TQneu+Xnq6v+MHINVMQd4s1FFz27t1bAj0z7qrK17ktKFBBmacDy+PHj9OGDRuKs5YsISGB0tLSrLbPz8+XCrK8zpFZs2bRjBkzrJZV7tKXqt7Y36PnDgAAAAAAECx0B5dHjx6lkmIOLA8dOkQbN26kSpWs04adOnWi9PR0mcqkbdu2sowD0MLCQurQoYPD/SYmJtKUKVOslg388TkKjTxFGV+pIkCF91yStlzRLw9XIlXmEgAAALwLmRHwVXqzjvZuq/cYWrKiWrvp6p23U8tttHL2fg64rrQmZC41q1OnjscOfvnyZTp8WFVlNQeue/bskTGT1atXp9tuu02mI1m9erVkRM1dcXl9ZGQkNWnShPr370/3338/LVq0SILRCRMm0IgRI5xWio2KipKLpUvf1pY2p6K6XrChirSRPc5JG6GGZFIeYkwAAIASoaerIYA36a22ans7e9s6orXLqrMAUOuUKlrOQW/gGjABIvhfQR+e0qRnz57F183ZxFGjRtH06dPpq6++kuutW7e2uh1nMXv06CH///DDDyWg5K66XCV2+PDh9MYbb5To/QAAAAAAAGD+UNU1IINLDhAtx27acrbOjLOYy5Ytc/tcLnZQhXuqfasymoVhavnpFDXGM6xBoWoz/Wr2FgAAgICB7rLgaxlKI69FV/uy3U5LdVlX5+HqvPVkXI2+75zdDtnOwOE3U5F4W8Ut0dJeqklW3WND8lQwGX5JtSbElgAAAKUKQSZ4grOxi1q21TvG0UhlWXvr7Z2j1mlMXG3vaL0WnpiKJGC61pooaCG4BAAAAAAA8BATCvrANff8Je25N+tKW+/WA9LuXtNU2uo3npD2xI6i1CYAQClApgbgf/A+AHd4M0tm77Naa3dYR/vQ8vmvNQtqe0569umJrsGaz3+I27sEXw8uuWgOz2fpiKfnuSwp+36qJ23rx1T12hMzGkqbPUiNtTyVjj9gAFD6UD0TAMD3uTOlh9bPdXv7Nlol1lnAq3d6Ez3Buie60vokEwUt3cHlihUrvHMmAAAAAAAAEDzB5ZAh1vnpL774QuambN68Od1xxx269rVlyxaaO3cu7d69m1JSUiRwHTp0aPF6no5k+fLl9Pfff8u8lm3btqWXXnqJOnToULzN+fPnaeLEibRq1ariqUhef/11Kl++vK5ziWuq5rM8cqGStBXz1U8OEUWFfKJq50t7RddeAQC8C4VNAABKrneI3sI+WooFae1u6uwcPFUsyN7joGUOT2fn6UzAZSyLBPOYS7dqn86ePZvuuusuWrNmDY0bN45mzJih6/aZmZnUqlUrWrBggd311113Hb355pv0+++/09atW6lu3brUt29fOnPmTPE2I0eOpD/++IPWrl1Lq1evloB1/Pjx7twtAAAAAAAA0CnEpGUySQeaNm1KiYmJdO+999KGDRto7NixdOzYMUP74nGctplLWxcvXqTY2Fhat24d9e7dm/bv3y/nsHPnTmrXrp1sw4HuwIED6cSJE1SjRg3Nx2/wr1elDbuifmmIvKiWV9+WJe2lumWkPdcseH+JAAD/g4wmAIBzWqb2cHUbI+Phje5DS+ZS77hNLbczMhZUy/bObnMocTL5o7rvv+y1fR+770kK2Gqxp06doo4dO8r/uT158iR5S25uLr3zzjsSXHK2kyUlJVFcXFxxYMn69Okj3WN37NhBt956q+b911qnur1euC5C2qgBKjt66Fo14WVYTLa0oUdVkAkA4A/QbRYAwD5PVF91xJ3gzBPnYrSwj57zNtot1lkhokDrHhuM3AouuTJseLjaRVhYGBUWqsqqnsRdXUeMGEFZWVlUvXp16f5auXJlWZeamkpVq1a12p7PJz4+XtY5kpOTIxdLhYX5FBqKmVkAAAAAAMAdIRSsdEdTbdq0KZ6K5MqVKzR48GAptuNG71qnevbsKQWDzp49S++++64UDeKspG1QqcesWbOuGh/acHR7ajS2AxXOrS3XK5S9LG2d5hek/WP1ddLmVXDjzgAA+GFZfACAYKG1iI7eOSpt/6+FkQygs+PrOQc9fys82UMmYDKYJgpauoNLyzGRtpVjnY2XNKpcuXJ07bXXyoW73jZs2JDee+89GeuZkJBAaWlpVtvn5+dLBVle5wjfdsqUKVbLhgx+nbKeDafksWqezpqvqSDzVEKYtA3u+kvaA1vre/w+AgCUFG901QIACNQf3bRWcHW0vb11zo6v5xh67purbrBGugh7Y9jFVfuyDjUgEIPL5557jkoTd701d2nt1KkTpaeny1QmPE0J48JCvI3ldCW2oqKi5GIJXWIBAAAAAMBtJgpapRpRXb58mQ4fPlx8/ejRo9IFlsdMVqpUSea0vOWWW2SsJXeL5SlLuGjQ7bffLts3adKE+vfvT/fffz8tWrSI8vLyaMKECTJGU0+lWJb5pCoP26KoO+zJKipDeb5tnrSNI6zHaAIABAoU/QEAMFZF1VWW0UjXT62Fc5ydt5ZttZyjs/O03VZvl2J76yAIg8uKFSsWj7m0h7ukarVr1y4ZU2lm7qo6atQoCRYPHDhAS5culcCSg8327dvTDz/8QM2aNSu+zYcffigBJU9NwlVihw8fTm+88Ybeu0UXt6gxnJG/x0t7oa8qThSSq6YCPfxOY7VhQ927BgDwC0ZK6QMABDOtwae9dZ4+lpFtjVSgNRp4BxUTCvpo9tprr0nLBXweeughev755w0X1+nRo4fTQkBffPGFy31wlnPZsmWGjg8AAAAAAAClFFxyVtFs4sSJkimsX9//i9zkxqg2pZN6SMolq+vfPzZX2geaD5c2HQV9ACBIoLssAAQyZ59tWrN0euaN1FrQx8j5OmI0m2gv4+qqAq075+f31WFtmDDmEir/prrBho1W1WfPXionbY/Fj0sb3UpNSQIAEGy0fglB8AkA/sRZYKN1DKWeoNPTgZS9AFDrmFAjQbHefbsTzEMQB5fOxl8CAAAAAAAEFRMFLd3B5bBhw4r/n52dTQ8++KDMRalnnKQvOj8sS9oar1aStlIFNb/l2VZqfaVymdKeoIqldYoAAH47VxwAgK+xl0kricyZ3gyfkXkutZ6Do2Nq6Rardbmj/dg7j4BhCt7km+7gMjb2fy+Ce+65x62Db9myhebOnSvzVKakpNCKFSto6NChdrflIPbtt9+mefPm0aRJk6yq0/LYz1WrVhVXi3399depfPnyus6l8sdlpT12Z760Zf9UVWILotVPDwWvJ6gNOxq7rwAAgQ7l5QHA33lqrLm922kdc2l0fKeR8/bEZ7UnK9Oie2wQBpeLFy/22MEzMzOpVatWNHbsWKuMqC0OOrdv32537sqRI0dKYLp27VqZ53LMmDE0fvx4VJAFAAAAAIASF4Jusfrk5+fTpk2b6MiRI3T33XdThQoV6NSpUxQTE6MrYzhgwAC5OHPy5EnJTH733Xc0aNAgq3X79++nNWvW0M6dO6ldu3aybP78+TRw4EB65ZVX7Aajjpwfobq91l5SRtoqTx6Sdvevqjps2GOpasMdNTXvEwAgWKHSLAD4M1dZRVfba+kC6io7p2Wfttt6I/PqbsVce/u05fBxHmLo9MGfgsvjx49T//79KTk5mXJycuimm26S4HL27NlyfdGiRR47ucLCQrr33nvp8ccfp2bNml21PikpieLi4ooDS9anTx/pHrtjxw669dZbNR+rwmoVFGcXDak8M7uetBGd1NjL0+uKgsoKbt0lAICggiATAHyVJ8cA6vmMcxUsGqnwqnWcpjufwa6mInF1/4Lq899EQUsNLNThsccek2DuwoULVKaMyvIxDuTWr1/v0ZPjgDU8PJweffRRu+tTU1OpatWqVst4+/j4eFkHAAAAAAAAPpq5/OGHH2jbtm0UGRlptbxu3brShdVTuMgPF+b5+eefPT7dCWdY+WLpfMN8CgkPp/LHi451l5rXMnJjFWkL/hdHAwCATu4UeAAA8DfufLYZyQS66sarNZPpbN9675urY9g7v4Ap5GMK3mqxoUa6qhYUFFy1/MSJE9I91lM4iE1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", 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" - ] - }, - "metadata": {}, - "output_type": "display_data" - }, - { - "name": "stdout", - "output_type": "stream", - "text": [ - "\n", - "Bicluster 0 : 204 objects, 343 features\n", - "Top features: Patient_ID_P100000, Patient_ID_P100002, Patient_ID_P100006, Patient_ID_P100013, Patient_ID_P100035, Patient_ID_P100056, Patient_ID_P100066, Patient_ID_P100079, Patient_ID_P100081, Patient_ID_P100091\n", - "\n", - "Bicluster 1 : 0 objects, 1 features\n", - "Top features: BMI\n", - "\n", - "Bicluster 2 : 97 objects, 10 features\n", - "Top features: Years_Smoking, Cigarettes_Per_Day, Gender_Female, Occupation_Exposure_Silica, Air_Pollution_Level_High, Family_History_No, Physical_Activity_Level_Low, Region_West, Access_to_Healthcare_Good, Lung_Cancer_Stage_Stage I\n", - "\n", - "Bicluster 3 : 0 objects, 1 features\n", - "Top features: Diagnosis_Year\n", - "\n", - "Bicluster 4 : 0 objects, 1 features\n", - "Top features: Age\n" - ] - } - ], - "source": [ - "import pandas as pd\n", - "import numpy as np\n", - "from sklearn.preprocessing import OneHotEncoder, StandardScaler\n", - "from sklearn.cluster import SpectralCoclustering\n", - "import matplotlib.pyplot as plt\n", - "import seaborn as sns\n", - "\n", - "# 1. Загрузка датасета\n", - "df = pd.read_csv(\"Lung_Cancer_Trends_Realistic.csv\")\n", - "\n", - "# Посмотрим на структуру данных\n", - "print(df.head())\n", - "\n", - "# 2. Предобработка\n", - "# Удалим строки с пропущенными значениями\n", - "df_clean = df.dropna()\n", - "\n", - "# Отделим категориальные и числовые признаки\n", - "categorical_cols = df_clean.select_dtypes(include=[\"object\", \"category\"]).columns\n", - "numeric_cols = df_clean.select_dtypes(include=[\"int64\", \"float64\"]).columns\n", - "\n", - "# One-Hot Encoding для категориальных признаков\n", - "encoder = OneHotEncoder(sparse_output=False)\n", - "encoded_cat = encoder.fit_transform(df_clean[categorical_cols])\n", - "\n", - "# Масштабирование числовых признаков\n", - "scaler = StandardScaler()\n", - "scaled_num = scaler.fit_transform(df_clean[numeric_cols])\n", - "\n", - "# Объединяем\n", - "X = np.hstack([scaled_num, encoded_cat])\n", - "\n", - "# 3. Обучение модели\n", - "n_clusters = 5 # количество кластеров, можно изменить\n", - "model = SpectralCoclustering(n_clusters=n_clusters, random_state=42)\n", - "model.fit(X)\n", - "\n", - "# 4. Присвоим кластеры объектам\n", - "df_clean[\"Cluster\"] = model.row_labels_\n", - "\n", - "# 5. Визуализация: тепловая карта по переставленным строкам\n", - "fit_data = X[np.argsort(model.row_labels_)]\n", - "plt.figure(figsize=(12, 6))\n", - "sns.heatmap(fit_data, cmap=\"viridis\", cbar=True)\n", - "plt.title(\"Спектральное ко-кластеризованное представление данных\")\n", - "plt.xlabel(\"Признаки\")\n", - "plt.ylabel(\"Объекты (переставлены по кластеру)\")\n", - "plt.show()\n", - "\n", - "# 6. Вывод информации по каждому кластеру, как в примере с newsgroups\n", - "\n", - "# Получаем имена признаков (категориальные + числовые)\n", - "feature_names = list(numeric_cols) + list(encoder.get_feature_names_out(categorical_cols))\n", - "\n", - "for i in range(n_clusters):\n", - " row_idx = np.where(model.row_labels_ == i)[0]\n", - " col_idx = np.where(model.column_labels_ == i)[0]\n", - "\n", - " # Показываем информацию о кластере\n", - " print(f\"\\nBicluster {i} : {len(row_idx)} objects, {len(col_idx)} features\")\n", - " \n", - " # Важнейшие признаки (топ-10)\n", - " top_features = [feature_names[j] for j in col_idx[:10]]\n", - " print(\"Top features:\", \", \".join(top_features))\n", - "\n", - " # Распределение категорий (если имеется колонка 'Category' или что-то похожее)\n", - " if 'Category' in df_clean.columns:\n", - " cluster_labels = df_clean.loc[df_clean[\"Cluster\"] == i, \"Category\"]\n", - " print(f\"Category distribution for Bicluster {i}:\")\n", - " print(cluster_labels.value_counts(normalize=True).head())\n" - ] - }, - { - "cell_type": "code", - "execution_count": 23, + "execution_count": 28, "id": "d3aca8eb-11d9-4236-9726-1be6ba5ae44d", "metadata": {}, "outputs": [ @@ -1048,7 +883,7 @@ "[5 rows x 24 columns]" ] }, - "execution_count": 23, + "execution_count": 28, "metadata": {}, "output_type": "execute_result" }