Skip to content

Instantly share code, notes, and snippets.

@sjchoi86
Created June 3, 2022 12:11
Show Gist options
  • Save sjchoi86/7377927fdfd2193f19b6fc52433211cc to your computer and use it in GitHub Desktop.
Save sjchoi86/7377927fdfd2193f19b6fc52433211cc to your computer and use it in GitHub Desktop.
demo_tf_cnn_cls.ipynb
Display the source blob
Display the rendered blob
Raw
{
"nbformat": 4,
"nbformat_minor": 0,
"metadata": {
"colab": {
"name": "demo_tf_cnn_cls.ipynb",
"provenance": [],
"collapsed_sections": [],
"authorship_tag": "ABX9TyO9krgeg3n2aUFp6F0yVprq",
"include_colab_link": true
},
"kernelspec": {
"name": "python3",
"display_name": "Python 3"
},
"language_info": {
"name": "python"
}
},
"cells": [
{
"cell_type": "markdown",
"metadata": {
"id": "view-in-github",
"colab_type": "text"
},
"source": [
"<a href=\"https://colab.research.google.com/gist/sjchoi86/7377927fdfd2193f19b6fc52433211cc/demo_tf_cnn_cls.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
]
},
{
"cell_type": "markdown",
"source": [
"### Fashion MNIST Classficiation"
],
"metadata": {
"id": "kB3gNXkpkhAM"
}
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "45fqGkplj1vY",
"outputId": "2af5f0dd-ec7e-400a-88e2-a7ab6a66b05f"
},
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"2.8.2\n"
]
}
],
"source": [
"import tensorflow as tf\n",
"import numpy as np\n",
"import matplotlib.pyplot as plt\n",
"print(tf.__version__)"
]
},
{
"cell_type": "markdown",
"source": [
"### Import FashionMNIST"
],
"metadata": {
"id": "vMztzqRKl-7F"
}
},
{
"cell_type": "code",
"source": [
"fashion_mnist = tf.keras.datasets.fashion_mnist\n",
"(train_images, train_labels), (test_images, test_labels) = fashion_mnist.load_data()\n",
"train_images,test_images = train_images/255.0,test_images / 255.0 # normalize image\n",
"print (\"Shapes of train_images:%s train_labels:%s\"%\n",
" (train_images.shape,train_labels.shape))\n",
"print (\"Shapes of test_images:%s test_labels:%s\"%\n",
" (test_images.shape,test_labels.shape))"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "GXdtk2ugkpva",
"outputId": "2220ccd0-b318-4d2b-9dd2-3040d35ca454"
},
"execution_count": 2,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"Shapes of train_images:(60000, 28, 28) train_labels:(60000,)\n",
"Shapes of test_images:(10000, 28, 28) test_labels:(10000,)\n"
]
}
]
},
{
"cell_type": "markdown",
"source": [
"### Class labels of FashionMNIST"
],
"metadata": {
"id": "2ExeUO41nfRX"
}
},
{
"cell_type": "code",
"source": [
"class_names = ['T-shirt/top', 'Trouser', 'Pullover', 'Dress', 'Coat',\n",
" 'Sandal', 'Shirt', 'Sneaker', 'Bag', 'Ankle boot']\n",
"print (class_names)"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "yngM6rBsmDU-",
"outputId": "e101ffa4-c2bc-49e5-c78d-9db97950bf78"
},
"execution_count": 3,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"['T-shirt/top', 'Trouser', 'Pullover', 'Dress', 'Coat', 'Sandal', 'Shirt', 'Sneaker', 'Bag', 'Ankle boot']\n"
]
}
]
},
{
"cell_type": "markdown",
"source": [
"### Plot images"
],
"metadata": {
"id": "jjgdhof1tDwk"
}
},
{
"cell_type": "code",
"source": [
"plt.figure(figsize=(10,10))\n",
"for i in range(25):\n",
" plt.subplot(5,5,i+1)\n",
" plt.xticks([])\n",
" plt.yticks([])\n",
" plt.grid(False)\n",
" plt.imshow(train_images[i], cmap=plt.cm.binary)\n",
" plt.xlabel(class_names[train_labels[i]])\n",
"plt.show()"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/",
"height": 589
},
"id": "-Yc6H7YRmu4m",
"outputId": "ea3d14dd-060e-4dd1-bc87-dc90d5af8106"
},
"execution_count": 4,
"outputs": [
{
"output_type": "display_data",
"data": {
"text/plain": [
"<Figure size 720x720 with 25 Axes>"
],
"image/png": "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\n"
},
"metadata": {}
}
]
},
{
"cell_type": "markdown",
"source": [
"### Build the Model"
],
"metadata": {
"id": "iUCpicLltudU"
}
},
{
"cell_type": "code",
"source": [
"CNN = tf.keras.Sequential([\n",
" tf.keras.layers.Flatten(input_shape=(28, 28)),\n",
" tf.keras.layers.Dense(128, activation='relu'),\n",
" tf.keras.layers.Dense(10) # number of classes\n",
"])\n",
"CNN.compile(optimizer='adam',\n",
" loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),\n",
" metrics=['accuracy'])\n",
"print (\"Build CNN\")"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "vgCd8GjZtG3G",
"outputId": "0cd455e5-3464-4717-d448-d41ff4866f4a"
},
"execution_count": 5,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"Build CNN\n"
]
}
]
},
{
"cell_type": "markdown",
"source": [
"### Fit the Model"
],
"metadata": {
"id": "vtcTonJUt-69"
}
},
{
"cell_type": "code",
"source": [
"CNN.fit(train_images, train_labels, epochs=10)"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "AIIIXDCmtfFM",
"outputId": "e5f341d8-fc13-4e08-f4cc-731609b6fda9"
},
"execution_count": 6,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"Epoch 1/10\n",
"1875/1875 [==============================] - 9s 5ms/step - loss: 0.4963 - accuracy: 0.8263\n",
"Epoch 2/10\n",
"1875/1875 [==============================] - 6s 3ms/step - loss: 0.3756 - accuracy: 0.8642\n",
"Epoch 3/10\n",
"1875/1875 [==============================] - 4s 2ms/step - loss: 0.3352 - accuracy: 0.8784\n",
"Epoch 4/10\n",
"1875/1875 [==============================] - 4s 2ms/step - loss: 0.3104 - accuracy: 0.8871\n",
"Epoch 5/10\n",
"1875/1875 [==============================] - 4s 2ms/step - loss: 0.2935 - accuracy: 0.8915\n",
"Epoch 6/10\n",
"1875/1875 [==============================] - 4s 2ms/step - loss: 0.2792 - accuracy: 0.8985\n",
"Epoch 7/10\n",
"1875/1875 [==============================] - 4s 2ms/step - loss: 0.2656 - accuracy: 0.9013\n",
"Epoch 8/10\n",
"1875/1875 [==============================] - 5s 2ms/step - loss: 0.2550 - accuracy: 0.9053\n",
"Epoch 9/10\n",
"1875/1875 [==============================] - 5s 2ms/step - loss: 0.2446 - accuracy: 0.9091\n",
"Epoch 10/10\n",
"1875/1875 [==============================] - 5s 2ms/step - loss: 0.2382 - accuracy: 0.9105\n"
]
},
{
"output_type": "execute_result",
"data": {
"text/plain": [
"<keras.callbacks.History at 0x7f147972e610>"
]
},
"metadata": {},
"execution_count": 6
}
]
},
{
"cell_type": "markdown",
"source": [
"### Evaluate the Model"
],
"metadata": {
"id": "F1D1ndw3u56b"
}
},
{
"cell_type": "code",
"source": [
"test_loss, test_acc = CNN.evaluate(test_images, test_labels, verbose=2)\n",
"print('Test accuracy:', test_acc)"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "5wfrNOskuKkR",
"outputId": "0533b08b-af4f-47b0-8490-c79a1efba23f"
},
"execution_count": 7,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"313/313 - 1s - loss: 0.3395 - accuracy: 0.8821 - 551ms/epoch - 2ms/step\n",
"Test accuracy: 0.882099986076355\n"
]
}
]
},
{
"cell_type": "markdown",
"source": [
"### Run the Model (manually)"
],
"metadata": {
"id": "bKgXj-aPvGvs"
}
},
{
"cell_type": "code",
"source": [
"pred_prob = tf.keras.Sequential([CNN, tf.keras.layers.Softmax()])\n",
"pred_prob_val = pred_prob.predict(test_images) # this is how we get class probabilities\n",
"print (\"pred_prob_val:%s\"%(pred_prob_val.shape,))"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/"
},
"id": "Xiy_nANtu49Y",
"outputId": "b2014435-81e0-4072-b5f7-e92f692eb349"
},
"execution_count": 8,
"outputs": [
{
"output_type": "stream",
"name": "stdout",
"text": [
"pred_prob_val:(10000, 10)\n"
]
}
]
},
{
"cell_type": "markdown",
"source": [
"### Test with a random index"
],
"metadata": {
"id": "DOUBHrEzwvaR"
}
},
{
"cell_type": "code",
"source": [
"test_idx = np.random.randint(test_images.shape[0])\n",
"test_img = test_images[test_idx:test_idx+1] # make it tensor\n",
"test_true_label = test_labels[test_idx:test_idx+1] # true label\n",
"test_true_label_val = test_true_label[0]\n",
"# Feed to the model\n",
"test_pred_prob_val = pred_prob.predict(test_img)[0] # make prediction (softmax)\n",
"test_pred_label_val = np.argmax(test_pred_prob_val) # class lndex\n",
"if test_pred_label_val == test_true_label_val:\n",
" color = 'blue'\n",
" str = 'Correct Prediction'\n",
"else: \n",
" color = 'red'\n",
" str = 'Wrong Prediction'\n",
"# Plot the prediction results\n",
"plt.figure(figsize=(10,4))\n",
"plt.subplot(1,2,1)\n",
"plt.imshow(test_img[0], cmap=plt.cm.binary) # plot test image\n",
"plt.xlabel(\"Pred:{} {:2.0f}% (True:{})\\n{}\".format(\n",
" class_names[test_pred_label_val],100*np.max(test_pred_prob_val),\n",
" class_names[test_true_label_val],str),color=color)\n",
"plt.subplot(1,2,2)\n",
"plt.grid(False)\n",
"_ = plt.xticks(range(10), class_names, rotation=45)\n",
"plt.yticks(np.arange(0,1,step=0.1))\n",
"plt.ylim([0, 1])\n",
"plt.ylabel('Class Probability')\n",
"thisplot = plt.bar(range(10), test_pred_prob_val, color=\"#777777\")\n",
"thisplot[test_pred_label_val].set_color('red')\n",
"thisplot[test_true_label_val].set_color('blue')\n",
"plt.show()"
],
"metadata": {
"colab": {
"base_uri": "https://localhost:8080/",
"height": 300
},
"id": "0C_j4Dvxv-Nd",
"outputId": "15c43621-585b-46d0-b978-bb274dd0aa52"
},
"execution_count": 13,
"outputs": [
{
"output_type": "display_data",
"data": {
"text/plain": [
"<Figure size 720x288 with 2 Axes>"
],
"image/png": "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\n"
},
"metadata": {
"needs_background": "light"
}
}
]
},
{
"cell_type": "code",
"source": [
""
],
"metadata": {
"id": "ym5QsLbmbPjX"
},
"execution_count": 9,
"outputs": []
}
]
}
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment