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{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "German Traffic Sign Recognition Benchmark (GTSRB)\n",
    "=================================================\n",
    "---\n",
    "Introduction au Deep Learning  (IDLE) - S. Aria, E. Maldonado, JL. Parouty - CNRS/SARI/DEVLOG - 2020\n",
    "\n",
    "## Episode 3 : Tracking and visualizing\n",
    "\n",
    "Our main steps:\n",
    " - Monitoring and understanding our model training\n",
    " - Analyze the results \n",
    " - Improving our model\n",
    " - Add recovery points\n",
    "\n",
    "\n",
    "## 1/ Import and init"
   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 1,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "IDLE 2020 - Practical Work Module\n",
      "  Version            : 0.1.1\n",
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      "  Run time           : Tuesday 7 January 2020, 17:38:16\n",
      "  Matplotlib style   : idle/talk.mplstyle\n",
      "  TensorFlow version : 2.0.0\n",
      "  Keras version      : 2.2.4-tf\n"
     ]
    }
   ],
   "source": [
    "import tensorflow as tf\n",
    "from tensorflow import keras\n",
    "from tensorflow.keras.callbacks import TensorBoard\n",
    "\n",
    "import numpy as np\n",
    "import matplotlib\n",
    "import matplotlib.pyplot as plt\n",
    "import time\n",
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    "from importlib import reload\n",
    "\n",
    "import idle.pwk as ooo\n",
    "\n",
    "ooo.init()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 2/ Reload dataset\n",
    "Dataset is one of the saved dataset: RGB25, RGB35, L25, L35, etc.  \n",
    "First of all, we're going to use the dataset : **L25**  \n",
    "(with a GPU, it only takes 35'' compared to more than 5' with a CPU !)"
   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 2,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Dataset loaded, size=247.6 Mo\n",
      "\n",
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      "CPU times: user 0 ns, sys: 312 ms, total: 312 ms\n",
      "Wall time: 321 ms\n"
     ]
    }
   ],
   "source": [
    "%%time\n",
    "\n",
    "dataset ='L25'\n",
    "img_lx  = 25\n",
    "img_ly  = 25\n",
    "img_lz  = 1\n",
    "\n",
    "# ---- Read dataset\n",
    "x_train = np.load('./data/{}/x_train.npy'.format(dataset))\n",
    "y_train = np.load('./data/{}/y_train.npy'.format(dataset))\n",
    "\n",
    "x_test  = np.load('./data/{}/x_test.npy'.format(dataset))\n",
    "y_test  = np.load('./data/{}/y_test.npy'.format(dataset))\n",
    "\n",
    "# ---- Reshape data\n",
    "x_train = x_train.reshape( x_train.shape[0], img_lx, img_ly, img_lz)\n",
    "x_test  = x_test.reshape(  x_test.shape[0],  img_lx, img_ly, img_lz)\n",
    "\n",
    "input_shape = (img_lx, img_ly, img_lz)\n",
    "\n",
    "print(\"Dataset loaded, size={:.1f} Mo\\n\".format(ooo.get_directory_size('./data/'+dataset)))"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 3/ Have a look to the dataset\n",
    "Note: Data must be reshape for matplotlib"
   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 3,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "x_train :  (39209, 25, 25, 1)\n",
      "y_train :  (39209,)\n",
      "x_test  :  (12630, 25, 25, 1)\n",
      "y_test  :  (12630,)\n"
     ]
    },
    {
     "data": {
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\n",
      "text/plain": [
       "<Figure size 864x169.2 with 6 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    },
    {
     "data": {
Jean-Luc Parouty's avatar
Jean-Luc Parouty committed
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 864x291.6 with 36 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "print(\"x_train : \", x_train.shape)\n",
    "print(\"y_train : \", y_train.shape)\n",
    "print(\"x_test  : \", x_test.shape)\n",
    "print(\"y_test  : \", y_test.shape)\n",
    "\n",
    "if img_lz>1:\n",
    "    ooo.plot_images(x_train.reshape(-1,img_lx,img_ly,img_lz), y_train, range(6),  columns=3,  x_size=4, y_size=3)\n",
    "    ooo.plot_images(x_train.reshape(-1,img_lx,img_ly,img_lz), y_train, range(36), columns=12, x_size=1, y_size=1)\n",
    "else:\n",
    "    ooo.plot_images(x_train.reshape(-1,img_lx,img_ly), y_train, range(6),  columns=6,  x_size=2, y_size=2)\n",
    "    ooo.plot_images(x_train.reshape(-1,img_lx,img_ly), y_train, range(36), columns=12, x_size=1, y_size=1)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 4/ Create model"
   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 122,
   "metadata": {},
   "outputs": [],
   "source": [
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    "batch_size  =  64\n",
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    "epochs      =  20"
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   "execution_count": 123,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "Model: \"sequential\"\n",
      "_________________________________________________________________\n",
      "Layer (type)                 Output Shape              Param #   \n",
      "=================================================================\n",
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      "conv2d (Conv2D)              (None, 23, 23, 96)        960       \n",
      "_________________________________________________________________\n",
      "max_pooling2d (MaxPooling2D) (None, 11, 11, 96)        0         \n",
      "_________________________________________________________________\n",
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      "conv2d_1 (Conv2D)            (None, 9, 9, 192)         166080    \n",
      "_________________________________________________________________\n",
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      "max_pooling2d_1 (MaxPooling2 (None, 4, 4, 192)         0         \n",
      "_________________________________________________________________\n",
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      "flatten (Flatten)            (None, 3072)              0         \n",
      "_________________________________________________________________\n",
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      "dense (Dense)                (None, 3072)              9440256   \n",
      "_________________________________________________________________\n",
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      "dense_1 (Dense)              (None, 500)               1536500   \n",
      "_________________________________________________________________\n",
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      "dense_2 (Dense)              (None, 500)               250500    \n",
      "_________________________________________________________________\n",
      "dense_3 (Dense)              (None, 43)                21543     \n",
      "=================================================================\n",
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      "Total params: 11,415,839\n",
      "Trainable params: 11,415,839\n",
      "Non-trainable params: 0\n",
      "_________________________________________________________________\n"
     ]
    }
   ],
   "source": [
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    "tf.keras.backend.clear_session()\n",
    "\n",
    "model = keras.models.Sequential()\n",
    "model.add( keras.layers.Conv2D(96, (3,3), activation='relu', input_shape=(img_lx, img_ly, img_lz)))\n",
    "model.add( keras.layers.MaxPooling2D((2, 2)))\n",
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    "model.add( keras.layers.Conv2D(192, (3, 3), activation='relu'))\n",
    "model.add( keras.layers.MaxPooling2D((2, 2)))\n",
    "model.add( keras.layers.Flatten()) \n",
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    "model.add( keras.layers.Dense(3072, activation='relu'))\n",
    "model.add( keras.layers.Dense(500, activation='relu'))\n",
    "model.add( keras.layers.Dense(500, activation='relu'))\n",
    "model.add( keras.layers.Dense(43, activation='softmax'))\n",
    "model.summary()\n",
    "\n",
    "model.compile(optimizer='adam',\n",
    "              loss='sparse_categorical_crossentropy',\n",
    "              metrics=['accuracy'])\n"
   ]
  },
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  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 5/ Add callbacks\n",
    "Nous allons ajouter 2 callbacks :  \n",
    " - **TensorBoard**  \n",
    "Training logs, which can be visualised with Tensorboard.  \n",
    "`#tensorboard --logdir ./run/logs`  \n",
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    "IMPORTANT : Relancer tensorboard à chaque run\n",
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    " - **Model backup**  \n",
    " It is possible to save the model each xx epoch or at each improvement.  \n",
    " The model can be saved completely or partially (weight).  \n",
    " For full format, we can use HDF5 format."
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   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 124,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "total 0\n"
     ]
    }
   ],
   "source": [
    "# To clean logs and saved model, run this cell\n",
    "!/bin/rm -r ./run/logs ./run/models\n",
    "!/bin/ls -l ./run"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 125,
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   "metadata": {},
   "outputs": [],
   "source": [
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    "ooo.mkdir('./run/models')\n",
    "ooo.mkdir('./run/logs')\n",
    "\n",
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    "# ---- Callback tensorboard\n",
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    "log_dir = \"./run/logs/tb_\" + ooo.tag_now()\n",
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    "tensorboard_callback = tf.keras.callbacks.TensorBoard(log_dir=log_dir, histogram_freq=1)\n",
    "\n",
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    "# ---- Callback ModelCheckpoint - Save best model\n",
    "save_dir = \"./run/models/best-model.h5\"\n",
    "bestmodel_callback = tf.keras.callbacks.ModelCheckpoint(filepath=save_dir, verbose=0, monitor='accuracy', save_best_only=True)\n",
    "\n",
    "# ---- Callback ModelCheckpoint - Save model each epochs\n",
    "save_dir = \"./run/models/model-{epoch:04d}.h5\"\n",
    "savemodel_callback = tf.keras.callbacks.ModelCheckpoint(filepath=save_dir, verbose=0, save_freq=2000*5)"
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   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "## 5/ Run model"
   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 126,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "Train on 2000 samples, validate on 200 samples\n",
      "Epoch 1/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 3.6179 - accuracy: 0.0595 - val_loss: 3.5203 - val_accuracy: 0.0550\n",
      "Epoch 2/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 3.4567 - accuracy: 0.0600 - val_loss: 3.4113 - val_accuracy: 0.0750\n",
      "Epoch 3/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 2.9967 - accuracy: 0.2045 - val_loss: 2.7160 - val_accuracy: 0.2450\n",
      "Epoch 4/20\n",
      "2000/2000 [==============================] - 5s 2ms/sample - loss: 2.1231 - accuracy: 0.3710 - val_loss: 2.2007 - val_accuracy: 0.3550\n",
      "Epoch 5/20\n",
      "2000/2000 [==============================] - 5s 2ms/sample - loss: 1.5418 - accuracy: 0.5290 - val_loss: 1.6167 - val_accuracy: 0.5050\n",
      "Epoch 6/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 1.1403 - accuracy: 0.6315 - val_loss: 1.6735 - val_accuracy: 0.5100\n",
      "Epoch 7/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.8817 - accuracy: 0.7070 - val_loss: 1.1985 - val_accuracy: 0.6300\n",
      "Epoch 8/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.6063 - accuracy: 0.8005 - val_loss: 1.1051 - val_accuracy: 0.7050\n",
      "Epoch 9/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.4553 - accuracy: 0.8540 - val_loss: 1.1474 - val_accuracy: 0.6850\n",
      "Epoch 10/20\n",
      "2000/2000 [==============================] - 6s 3ms/sample - loss: 0.3155 - accuracy: 0.9005 - val_loss: 0.9822 - val_accuracy: 0.7500\n",
      "Epoch 11/20\n",
      "2000/2000 [==============================] - 6s 3ms/sample - loss: 0.2466 - accuracy: 0.9220 - val_loss: 0.9238 - val_accuracy: 0.7550\n",
      "Epoch 12/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.1964 - accuracy: 0.9365 - val_loss: 1.0252 - val_accuracy: 0.7600\n",
      "Epoch 13/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.1690 - accuracy: 0.9445 - val_loss: 0.9506 - val_accuracy: 0.7550\n",
      "Epoch 14/20\n",
      "2000/2000 [==============================] - 6s 3ms/sample - loss: 0.1053 - accuracy: 0.9690 - val_loss: 1.1243 - val_accuracy: 0.7300\n",
      "Epoch 15/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.1054 - accuracy: 0.9730 - val_loss: 0.8967 - val_accuracy: 0.8000\n",
      "Epoch 16/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.1285 - accuracy: 0.9620 - val_loss: 0.9004 - val_accuracy: 0.7850\n",
      "Epoch 17/20\n",
      "2000/2000 [==============================] - 6s 3ms/sample - loss: 0.0744 - accuracy: 0.9805 - val_loss: 0.8287 - val_accuracy: 0.8200\n",
      "Epoch 18/20\n",
      "2000/2000 [==============================] - 6s 3ms/sample - loss: 0.0400 - accuracy: 0.9915 - val_loss: 1.0527 - val_accuracy: 0.8150\n",
      "Epoch 19/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.0618 - accuracy: 0.9805 - val_loss: 0.9737 - val_accuracy: 0.8000\n",
      "Epoch 20/20\n",
      "2000/2000 [==============================] - 5s 3ms/sample - loss: 0.0806 - accuracy: 0.9755 - val_loss: 1.1634 - val_accuracy: 0.8050\n",
      "CPU times: user 6min 23s, sys: 2min 26s, total: 8min 49s\n",
      "Wall time: 1min 47s\n"
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    "history = model.fit(  x_train[:2000], y_train[:2000],\n",
    "                      batch_size=batch_size,\n",
    "                      epochs=epochs,\n",
    "                      verbose=1,\n",
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    "                      validation_data=(x_test[:200], y_test[:200]),\n",
    "                      callbacks=[tensorboard_callback, bestmodel_callback, savemodel_callback] )\n",
    "\n",
    "model.save('./run/models/last-model.h5')"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
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    "## 6/ History\n",
    "The return of model.fit() returns us the learning history"
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   "execution_count": 127,
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   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 576x432 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    },
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 576x432 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
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    "ooo.plot_history(history)"
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  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
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    "## 7/ Restore and evaluate\n",
    "List of saved models :"
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   ]
  },
  {
   "cell_type": "code",
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   "execution_count": 129,
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   "metadata": {},
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   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "./run/models/\n",
      "./run/models/best-model.h5\n",
      "./run/models/last-model.h5\n"
     ]
    }
   ],
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   "source": [
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    "!find ./run/models/"
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   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
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    "Restore current model and evaluate it.."
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   "execution_count": 4,
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   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "Test loss      : 0.8608\n",
      "Test accuracy  : 0.8466\n"
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     ]
    }
   ],
   "source": [
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    "\n",
    "best_model = tf.keras.models.load_model('./run/models/best-model.h5')\n",
    "# best_model.summary()\n",
    "\n",
    "score = best_model.evaluate(x_test, y_test, verbose=0)\n",
    "\n",
    "print('Test loss      : {:5.4f}'.format(score[0]))\n",
    "print('Test accuracy  : {:5.4f}'.format(score[1]))"
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   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
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    "---\n",
    "### A faire :\n",
    " - Restauration\n",
    " - Reprise apprentissage\n",
    " - Evaluation\n",
    " - Matrice de confusion\n"
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   ]
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  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "[[ 0.    0.    0.    0.    0.    0.    0.    0.    0.    0.    0.    2.07  0.    0.    0.\n",
      "   0.    0.    0.    0.    0.    0.    0.15  0.    0.    0.    0.    0.    1.64  1.56  0.\n",
      "  94.58  0.    0.    0.    0.    0.    0.    0.    0.    0.    0.    0.    0.  ]]\n"
     ]
    }
   ],
   "source": [
    "predictions = best_model.predict(x_test[3004:3005])\n",
    "with np.printoptions(precision=2, suppress=True, linewidth=95):\n",
    "    print(predictions*100)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.7.5"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 4
}