A-Simple-GAN

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{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# G.A.N\n",
    "> Generative Adversial Network:\n",
    "> -  The main focus for GAN is to generate data from scratch.\n",
    "> -  It brings us closer to understanding intelligence.\n",
    "- It trains two deep networks, called Generator and Discriminator, that compete and cooperate with each other. In the course of training, both networks eventually learn how to perform their tasks.\n",
    "> > - The generator never actually sees examples from the domain and is adapted based on how well the discriminator performs."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "[Original Article: How to Develop a 1D GAN](https://machinelearningmastery.com/how-to-develop-a-generative-adversarial-network-for-a-1-dimensional-function-from-scratch-in-keras/)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Using TensorFlow backend.\n"
     ]
    }
   ],
   "source": [
    "# The Import Statements:\n",
    "from matplotlib import pyplot\n",
    "import numpy as np\n",
    "from keras.models import Sequential\n",
    "from keras.layers import Dense\n",
    "from keras.utils.vis_utils import plot_model"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### Defining a 1 D function:\n",
    "> y=f(x)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "def function_1D(x):\n",
    "    return x*x"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "inputs=np.arange(-0.5,0.6,0.1)\n",
    "outputs=[function_1D(x) for x in inputs]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "# plot the result\n",
    "pyplot.plot(inputs, outputs)\n",
    "pyplot.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [],
   "source": [
    "#Defining random values\n",
    "def generate_samples(n=100):\n",
    "    x1=np.random.rand(n)-0.5\n",
    "    x2=x1*x1\n",
    "    x1=x1.reshape(n,1)\n",
    "    x2=x2.reshape(n,1)\n",
    "    return np.hstack((x1,x2))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "# generate samples and plotting them\n",
    "data = generate_samples()\n",
    "\n",
    "pyplot.scatter(data[:, 0], data[:, 1])\n",
    "pyplot.show()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# Note:\n",
    "> *a sample is comprised of a vector with two elements, one for the input and one for the output of our one-dimensional function.*"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### The Discriminator\n",
    "- The difference from a typical CNN is the absence of max-pooling in between layers.\n",
    "- will have 1 hidden layer with 25 nodes.\n",
    "- will use the ReLU activation function\n",
    "- The output layer will have 1 node for the binary classification using the sigmoid activation function.\n",
    "- Loss Function: Binary Cross Entropy\n",
    "- Optimizer : Adam version of stochastic Gradient Descent"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [],
   "source": [
    "#Code for the Discriminator Unit:\n",
    "def define_discriminator(n_inputs=2):\n",
    "\tmodel = Sequential()\n",
    "\tmodel.add(Dense(25, activation='relu', kernel_initializer='he_uniform', input_dim=n_inputs))\n",
    "\tmodel.add(Dense(1, activation='sigmoid'))\n",
    "\t# compile model\n",
    "\tmodel.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])\n",
    "\treturn model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Model: \"sequential_1\"\n",
      "_________________________________________________________________\n",
      "Layer (type)                 Output Shape              Param #   \n",
      "=================================================================\n",
      "dense_1 (Dense)              (None, 25)                75        \n",
      "_________________________________________________________________\n",
      "dense_2 (Dense)              (None, 1)                 26        \n",
      "=================================================================\n",
      "Total params: 101\n",
      "Trainable params: 101\n",
      "Non-trainable params: 0\n",
      "_________________________________________________________________\n"
     ]
    }
   ],
   "source": [
    "# define the discriminator model\n",
    "model = define_discriminator()\n",
    "# summarize the model\n",
    "model.summary()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [],
   "source": [
    "def generate_real_samples(n):\n",
    "    x1=np.random.rand(n)-0.5\n",
    "    x2=x1*x1\n",
    "    x1=x1.reshape(n,1)\n",
    "    x2=x2.reshape(n,1)\n",
    "    X= np.hstack((x1,x2))\n",
    "    y=np.ones((n,1))\n",
    "    return X,y"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [],
   "source": [
    "def generate_fake_samples(n):\n",
    "\t# generate inputs in [-1, 1]\n",
    "\tX1 = -1 + np.random.rand(n) * 2\n",
    "\t# generate outputs in [-1, 1]\n",
    "\tX2 = -1 + np.random.rand(n) * 2\n",
    "\t# stack arrays\n",
    "\tX1 = X1.reshape(n, 1)\n",
    "\tX2 = X2.reshape(n, 1)\n",
    "\tX = np.hstack((X1, X2))\n",
    "\t# generate class labels\n",
    "\ty = np.zeros((n, 1))\n",
    "\treturn X, y"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [],
   "source": [
    "#training the discriminator model\n",
    "def train_discriminator(model, n_epochs=1000, n_batch=128):\n",
    "\thalf_batch = int(n_batch / 2)\n",
    "\t# run epochs manually\n",
    "\tfor i in range(n_epochs):\n",
    "\t\t# generate real examples\n",
    "\t\tX_real, y_real = generate_real_samples(half_batch)\n",
    "\t\t# update model\n",
    "\t\tmodel.train_on_batch(X_real, y_real)\n",
    "\t\t# generate fake examples\n",
    "\t\tX_fake, y_fake = generate_fake_samples(half_batch)\n",
    "\t\t# update model\n",
    "\t\tmodel.train_on_batch(X_fake, y_fake)\n",
    "\t\t# evaluate the model\n",
    "\t\t_, acc_real = model.evaluate(X_real, y_real, verbose=0)\n",
    "\t\t_, acc_fake = model.evaluate(X_fake, y_fake, verbose=0)\n",
    "\t\tprint(i, acc_real, acc_fake)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
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    {
     "name": "stdout",
     "output_type": "stream",
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      "966 1.0 0.921875\n",
      "967 1.0 0.796875\n",
      "968 1.0 0.875\n",
      "969 1.0 0.921875\n",
      "970 1.0 0.828125\n",
      "971 1.0 0.9375\n",
      "972 1.0 0.890625\n",
      "973 1.0 0.921875\n",
      "974 1.0 0.875\n",
      "975 1.0 0.9375\n",
      "976 1.0 0.90625\n",
      "977 1.0 0.953125\n",
      "978 1.0 0.859375\n",
      "979 1.0 0.828125\n",
      "980 1.0 0.9375\n",
      "981 1.0 0.953125\n",
      "982 1.0 0.90625\n",
      "983 1.0 0.828125\n",
      "984 1.0 0.78125\n",
      "985 1.0 0.90625\n",
      "986 1.0 0.921875\n",
      "987 1.0 0.90625\n",
      "988 1.0 0.921875\n",
      "989 1.0 0.890625\n",
      "990 1.0 0.90625\n",
      "991 1.0 0.890625\n",
      "992 1.0 0.78125\n",
      "993 1.0 0.859375\n",
      "994 1.0 0.765625\n",
      "995 1.0 0.8125\n",
      "996 1.0 0.890625\n",
      "997 1.0 0.890625\n",
      "998 1.0 0.875\n",
      "999 1.0 0.84375\n"
     ]
    }
   ],
   "source": [
    "# define the discriminator model\n",
    "model = define_discriminator()\n",
    "# fit the model\n",
    "train_discriminator(model)"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "\"*The goal is to train a generator model, not a discriminator model, and that is where the complexity of GANs truly lies.*\" "
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# The Generator Model\n",
    "*We will define a small latent space of five dimensions and use the standard approach in the GAN literature of using a Gaussian distribution for each variable in the latent space. We will generate new inputs by drawing random numbers from a standard Gaussian distribution, i.e. mean of zero and a standard deviation of one.*\n",
    "\n",
    "* Specs:\n",
    "> * Single Hidden Layer with 5 nodes\n",
    "> * ReLU activation Function\n",
    "> * He weight initialization\n",
    "> * Output layer will have 2 nodes+ will use linear activation function"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [],
   "source": [
    "# define the generator model unit\n",
    "def define_generator(latent_dim, n_outputs=2):\n",
    "\tmodel = Sequential()\n",
    "\tmodel.add(Dense(15, activation='relu', kernel_initializer='he_uniform', input_dim=latent_dim))\n",
    "\tmodel.add(Dense(n_outputs, activation='linear'))\n",
    "\treturn model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Model: \"sequential_3\"\n",
      "_________________________________________________________________\n",
      "Layer (type)                 Output Shape              Param #   \n",
      "=================================================================\n",
      "dense_5 (Dense)              (None, 15)                90        \n",
      "_________________________________________________________________\n",
      "dense_6 (Dense)              (None, 2)                 32        \n",
      "=================================================================\n",
      "Total params: 122\n",
      "Trainable params: 122\n",
      "Non-trainable params: 0\n",
      "_________________________________________________________________\n"
     ]
    }
   ],
   "source": [
    "# define the discriminator model\n",
    "model = define_generator(5)\n",
    "# summarize the model\n",
    "model.summary()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "metadata": {},
   "outputs": [],
   "source": [
    "# generate points in latent space as input for the generator\n",
    "def generate_latent_points(latent_dim, n):\n",
    "\t# generate points in the latent space\n",
    "\tx_input = np.random.randn(latent_dim * n)\n",
    "\t# reshape into a batch of inputs for the network\n",
    "\tx_input = x_input.reshape(n, latent_dim)\n",
    "\treturn x_input"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 21,
   "metadata": {},
   "outputs": [],
   "source": [
    "# use the generator to generate n fake examples and plot the results\n",
    "def generate_fake_samples(generator, latent_dim, n):\n",
    "\t# generate points in latent space\n",
    "\tx_input = generate_latent_points(latent_dim, n)\n",
    "\t# predict outputs\n",
    "\tX = generator.predict(x_input)\n",
    "    # create class labels\n",
    "\ty = np.zeros((n, 1))\n",
    "\treturn X, y"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "*When the discriminator is good at detecting fake samples, the generator is updated more, and when the discriminator model is relatively poor or confused when detecting fake samples, the generator model is updated less.*"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 17,
   "metadata": {},
   "outputs": [],
   "source": [
    "# define the combined generator and discriminator model, for updating the generator\n",
    "def define_gan(generator, discriminator):\n",
    "\t# make weights in the discriminator not trainable\n",
    "\tdiscriminator.trainable = False\n",
    "\t# connect them\n",
    "\tmodel = Sequential()\n",
    "\t# add generator\n",
    "\tmodel.add(generator)\n",
    "\t# add the discriminator\n",
    "\tmodel.add(discriminator)\n",
    "\t# compile model\n",
    "\tmodel.compile(loss='binary_crossentropy', optimizer='adam')\n",
    "\treturn model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 23,
   "metadata": {},
   "outputs": [],
   "source": [
    "# train the generator and discriminator\n",
    "def train(g_model, d_model, gan_model, latent_dim, n_epochs=10000, n_batch=128, n_eval=2000):\n",
    "\t# determine half the size of one batch, for updating the discriminator\n",
    "\thalf_batch = int(n_batch / 2)\n",
    "\t# manually enumerate epochs\n",
    "\tfor i in range(n_epochs):\n",
    "\t\t# prepare real samples\n",
    "\t\tx_real, y_real = generate_real_samples(half_batch)\n",
    "\t\t# prepare fake examples\n",
    "\t\tx_fake, y_fake = generate_fake_samples(g_model, latent_dim, half_batch)\n",
    "\t\t# update discriminator\n",
    "\t\td_model.train_on_batch(x_real, y_real)\n",
    "\t\td_model.train_on_batch(x_fake, y_fake)\n",
    "\t\t# prepare points in latent space as input for the generator\n",
    "\t\tx_gan = generate_latent_points(latent_dim, n_batch)\n",
    "\t\t# create inverted labels for the fake samples\n",
    "\t\ty_gan = np.ones((n_batch, 1))\n",
    "\t\t# update the generator via the discriminator's error\n",
    "\t\tgan_model.train_on_batch(x_gan, y_gan)\n",
    "\t\t# evaluate the model every n_eval epochs\n",
    "\t\tif (i+1) % n_eval == 0:\n",
    "\t\t\tsummarize_performance(i, g_model, d_model, latent_dim)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 19,
   "metadata": {},
   "outputs": [],
   "source": [
    "# evaluate the discriminator and plot real and fake points\n",
    "def summarize_performance(epoch, generator, discriminator, latent_dim, n=100):\n",
    "\t# prepare real samples\n",
    "\tx_real, y_real = generate_real_samples(n)\n",
    "\t# evaluate discriminator on real examples\n",
    "\t_, acc_real = discriminator.evaluate(x_real, y_real, verbose=0)\n",
    "\t# prepare fake examples\n",
    "\tx_fake, y_fake = generate_fake_samples(generator, latent_dim, n)\n",
    "\t# evaluate discriminator on fake examples\n",
    "\t_, acc_fake = discriminator.evaluate(x_fake, y_fake, verbose=0)\n",
    "\t# summarize discriminator performance\n",
    "\tprint(epoch, acc_real, acc_fake)\n",
    "\t# scatter plot real and fake data points\n",
    "\tpyplot.scatter(x_real[:, 0], x_real[:, 1], color='red')\n",
    "\tpyplot.scatter(x_fake[:, 0], x_fake[:, 1], color='blue')\n",
    "\tpyplot.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1999 0.7400000095367432 0.4399999976158142\n"
     ]
    },
    {
     "data": {
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7pP2O0MCk7KUJ9KeBqyOPd4fLuubuc+4+5e5Tu3bt2sxLSFbiPo2AET8cvNVnPqOTXwNXr8dfmQq21O6R9jtCA5Oy13FgkZltA34AXEcQ5A8DN7t72yVMzOyzwP9y9/s77VgDi4ZAvR58SsNQqHKGJaqpn16pBM3xMgCNanRr8jZs4T9nbKy9+yoEob2qs2h9t6WBRe5+CbgNeAD4PvBFd3/MzO40sxvCHfxTM3sK+H3gU2am61UVQeMEqQW18qSZGZPo5NeA1Otw8GBymG+x3UNt4/mVqg3d3U+6+6+7+6+5+0y47CPufiK8/7C773b3He5edvfX97PQkrHwkzrZxUnRyNMkS42a+coGXUy32O6htvH80khR6Sz8BM9wR9v82Um2b9cHfCCmp6kv37h+SUHOcCv/Zf3x+JPU2VojttrG80uTc0k69TocOECd/RygDh1Ojs7P6wM+CHWrcYi5lqtQOdH/r1JJATzMNDmXbF2tBpUKNY5TIaHnBEHNfFTDPA/zlkyPf7TtkoKtX74arVlcCnRJb2YGzBKaXpwyz/IX7//ayIZ5FvOWdPrSSLpsXCudsC4mBbqkV6vBBz9Ize5ru3TZPDWeZRe1kweAfNRWs5TFvCVpvjSSLhvXSiesC8rdB3J705ve5DKk5ufdg0yJvc0f/hsvlZoXl0rB01pfplJxNwv+tq4fJmbxh8Osd/uoVOL3UamsbzM/723HvvUW93/RjSL9vw0jYMETclWBLpuTlC7gFc5sKni2GjSDlCZstyrxS4OVpmRtDdzDh3sXwEX7fxtGCnTpvQ2qgsZKYm21ETZJtcdeBmCWsgi6cjnhmHEms2TN4otLNrZRoKsNXTan0Rk5RtIApCuvXG8DTjKsJ+s20zc7zXmGxjZm8ZcA3c6LzHBH8CCD7iuaEjfnkpK+3zfV0Asipso2z34vcaGttppUwxzFml6aGn2a9vAyz7T/DNpkedI0y6iGPnioyUX6Zn4+tnF3nv1e4YwbK2sBkdQGPIptsWmCcaOmqab28y0mazfNRWpDHzwFuvTX4cMbps58+UNeKT+/cU2zPFqhkKZXTKcvwKb2c/B5bvZK+fmuT352W+tWL5fBUqBL/x0+nFhTb21+SRMeRQ+NNCHaqYmqxAWfZ/9amJe2vbipmnMWXS6ldxToko2YLixJXRg3Co9uf9b3Kvyz/BKZn3efmGj+N05MNO8zOdBXvcKZtTD38fHEX0BpWmDULj5cFOiSrUiVL6kLY1yTS0M3ARMX/o3ddxPK3bYjbzX45+fdt29v3t/27c2vtWG/85ZCbqWWrXbx4aJAl2xFEjltDT1aO+0mnDqdOEwbTGm/RHoVfls5KRptN2/seKu17KI3cRWJAl2yFUm9+Db0+Fp7I3y6CadUJw5jnpf2dVq/RJLKNj7eXRh23N/8vM+XP9Te/TPSbh58fNsOuWrZBadAl+xF2tObujByJjHQG4FWLre3L5sF511bpena1wj1jQI37ZdImi+QNEGauL/y802N563HrinMr7su9pCrll1sCnQZnJjkStMMMzaWLijTDL5pDeG0rxPdrtOUBd3+Kojd38TLPj/+rnQ7eO1re/QfJMNGgS6DEzMzY9qujGmDMhq2reGdVKPe6HVaa7hpvjTivkTSHJq1/ZWf93lu7vzC4+PxP1VkZCjQZbBiBh5FmxJgtWdB2RrKWwnchm5q5mlr6G3Hp1cnA6TwNgp0Tc4l/ffJTwbXpatU1hbVOM4ie1hlnDLPpn6pThdmqNVgcRFWV4O/kV129TpRG00mFqdU6uIC2bfeCnffHUR2z15URpUCXbLRSNqYhH2Jy1K9xMRE95k2MxNkYVS32Tg+nm6btLMsrtm3LwjzTsx0VWdJRYEu2YpJ2Au8MtVTO1Vi42xmWttWKyudt1ldXf9V0PG163W47DI4darzC2/fDvfeqzCXVMw38ynpgampKV9YWBjIvmXA6vVg3u6wLcNYpfXK9EkqlSA0s1Stdm52SV2u178evve9dDsul2F2VmEuTczsEXefilunGrpkr9H8Ui4DdNWGHg3WrC5EHdds0+rChRT77ybMDx+GZ59VmEtXFOgyOLOzMDHBLEfYzostK1cTnuRccUXQfPKudwUB7x78PXQoXah3+0VQq8HBg+tt6WNjQXt+1PnzG+y/XoedO9OH+RVXBCeSRbqV1P2l3zd1WxR3D/oZlstN3RjLPOPbuNizfuqtu+t2iHxcr8KkXoblcktf9sN/010n9saFV0USoH7oknuRAUhpJ/TaKA+ThsBv5mIOabqIJ91K9kLzcP2NbpddpjCXjjYKdJ0Ulfyo1+EP/5Cx1ZfZ7BCJchl+8YvgeskNpdJ6z5axsfjeMmZBL5VWaU6IdlJhkUX2bLzRddfBgw9ubUcyEnRSVIZDrQaf+xyT43+/qac3TlxGw7zxeHo6uJ80oChp+UZXs7e2jjnxlaOzdBjFdPiwwlx6QoEu+VKrMXNsd5dPcsC5/PLg5GScRjB3O9BooxGlH/wgVF7xE4xVKiwm9taZJOZboVwORs+66wSo9IwCXXKnVlvr0ZiSAcb582AJteRGMHc70Ghmpr1HCwRNN2/+wVEWX/xVVhlnkT3McoQSLzRtV+IFZrijeYfz8+qSKH2hQJdcmp3t3Pc7jmPhQKV1JV5gZunmIFCrVWrUm+Z7SczVffuoHTBeefFc26rVVZg+dV3TshrHmeMWKiyu1drnuIVa5W9Jt0ORrUkV6GZ2vZk9bmanzez2mPWXmdkXwvXfMrNqrwsqo6VRk+6uph5waA9Vjgcrl5bgwIEg3Bu3apX6rV+jevlPGLNVqrZI3W5eG5r/HPGFWGKSOvubyx2ZdGyRPcF+NamWZCWp+0vjBowDPwJeB0wA3wb2tmxzK3BPeP8m4AudXlfdFiWtaDfEVH3Ro9fcTHGLm589eqm3jbpRtl0SrvXWclUhka1ii9PnXgucdvcn3P0icB9wY8s2NwLHwvv3A9eZtfcBENmM6JS4SdPhNqy1WXdhmrtYZkfTsmV2MM1dAMxwR1vbeNx2TcbH1XtFMpcm0K8Cnow8fipcFruNu18Cfgbtv1PN7JCZLZjZwrlz7e2SIkkaw/WXltq7CzYeV8oXOGifY5q7GGOFKmfamkTiJHUrbCxvtI137JbYCHF3uHRJvVckc5meFHX3OXefcvepXbt2ZblrGWL1ejBPSmOAj3skxCvB7LLuMDN7Bce238ISVZwxlqhyiE/Hhnqd/VQ5wxgrjCXMGxPtbljjOBXiRxhNVsYU4pILaQL9aeDqyOPd4bLYbcxsG/DLQEKPYJHuTE+3DxZyX5+yttFpZHoali9ua9ourkmkzn4Ocmwt+FfYRmvt21hlicmmWn5c04suJCR5kibQHwauMbM9ZjZBcNLzRMs2J4CD4f13Ag+FjfciW5Y0WrN1eeJ2Vg2+AebnYccOPsA9rLC9ZSsjmOFxFWM1nHogrOWXPk993qn555mb37Gli2WI9FPHQA/bxG8DHgC+D3zR3R8zszvN7IZws/8GlM3sNPBhoK1ro8hmpRmuX68Hg3023K5WgwsXeIFfStjTGJXKWNs8MtGpA1qvWaowlzzZ1nkTcPeTwMmWZR+J3H8R+P3eFk0kMDMTtKG3TrjVaOpotLHHXSpu+/ZgOoBGm3unfu1pfw2I5JFGikrudRquH9fGDuszK164sL4saa6XxvbdTt4lkiepaugig1arJTdvJNWeGxduTusDH4A3v3njXwMieaYaugy9zdaeG5eUGx8PpiM/eTK4rN3llwdNMzrxKcNGgS5DL2lK3E7t5ZcuBU0yx47BN76xfn3S8+eDi2Tce69OfMpwUaDL0EtqY5+dTX5ONOzj2uCjPVtEhoXa0KUQktrYv/51uPvu5mUTE81hr54tUhSqoUuhffKTwXiiaO396NHm8FfPFikKBboUXqfBQN1elk4krxToMvK6vSydSF6pDV2Ejfu5iwwL1dBlpDTmVR8bC/7W64MukUjvqIYuI6Mx50uji+LSUvAYVDuXYlANXUaG+ptL0SnQZWSov7kUnQJdRob6m0vRKdBlZKi/uRSdAl1GhvqbS9Gpl4uMFPU3lyJTDV1EpCAU6CIiBaFAFxEpCAW6iEhBKNBFRApCgS4iUhAKdBGRgjB3H8yOzc4BSxnvdifwbMb73CqVOTvDWG6VORt5KnPF3XfFrRhYoA+CmS24+9Sgy9ENlTk7w1hulTkbw1JmNbmIiBSEAl1EpCBGLdDnBl2ATVCZszOM5VaZszEUZR6pNnQRkSIbtRq6iEhhKdBFRAqicIFuZlea2ZfN7Ifh31fFbPM7ZvZo5Paimb09XPdZMzsTWfeGPJQ53G4lUq4TkeV7zOxbZnbazL5gZhN5KLOZvcHMvmFmj5nZd8zsX0fWZXaczex6M3s8PD63x6y/LDxup8PjWI2s+9Nw+eNm9pZ+lXETZf6wmX0vPK6nzKwSWRf7PslJud9tZuci5Xt/ZN3B8P30QzM7mKMy/3mkvD8ws3+IrBvYsY7l7oW6AR8Dbg/v3w58tMP2VwLPAaXw8WeBd+axzMCFhOVfBG4K798DHM5DmYFfB64J778W+DHwK1keZ2Ac+BHwOmAC+Dawt2WbW4F7wvs3AV8I7+8Nt78M2BO+znhOyvw7kffs4UaZN3qf5KTc7wb+a8xzrwSeCP++Krz/qjyUuWX7DwFHB32sk26Fq6EDNwLHwvvHgLd32P6dwJfcfbmvpdpYt2VeY2YG/C5w/2aevwUdy+zuP3D3H4b3/x54Bogd4dZH1wKn3f0Jd78I3EdQ9qjov+V+4LrwuN4I3OfuL7n7GeB0+HoDL7O7fyXynv0msDuDcnWS5lgneQvwZXd/zt1/CnwZuL5P5Yzqtsz7geMZlGtTihjor3b3H4f3/x/w6g7b30T7f9BM+FP2z83ssp6XsF3aMr/CzBbM7JuNJiKgDPyDu18KHz8FXNXHsjZ0dZzN7FqCGtCPIouzOM5XAU9GHscdn7VtwuP4M4Ljmua5/dDtft8HfCnyOO59koW05X5H+P9+v5ld3eVzey31fsNmrT3AQ5HFgzrWsYbymqJm9iDwqzGrpqMP3N3NLLFfppm9BvhN4IHI4j8lCKgJgr6nfwLcmZMyV9z9aTN7HfCQmX2XIHz6osfH+V7goLuvhov7cpxHjZkdAKaA34osbnufuPuP4l8hc/8TOO7uL5nZBwh+Gf3ugMuU1k3A/e6+ElmWq2M9lIHu7vuS1pnZT8zsNe7+4zBIntngpf4A+Ct3fzny2o1a50tm9hfAv81Lmd396fDvE2b2VeCNwH8HfsXMtoW1y93A03kps5n9EvDXwLS7fzPy2n05zjGeBq6OPI47Po1tnjKzbcAvA+dTPrcfUu3XzPYRfLn+lru/1Fie8D7JImQ6ltvdz0cefobgXEzjub/d8tyv9ryE7br5P74J+KPoggEe61hFbHI5ATTOkB8E/scG27a1h4Xh1Gibfjvwd30oY6uOZTazVzWaJcxsJ/Bm4HsenJn5CsG5gMTn90GaMk8AfwV8zt3vb1mX1XF+GLjGgp5AEwQfytbeCNF/yzuBh8LjegK4KewFswe4BvjffSpnV2U2szcCnwJucPdnIstj3ycZlDltuV8TeXgD8P3w/gPA74XlfxXwezT/ch5YmQHM7DcITtZ+I7JskMc63qDPyvb6RtD2eQr4IfAgcGW4fAr4TGS7KsE38VjL8x8CvksQMPPAFXkoM/DPw3J9O/z7vsjzX0cQNKeBvwQuy0mZDwAvA49Gbm/I+jgDbwN+QFBzmg6X3UkQhgCvCI/b6fA4vi7y3OnweY8Db83wfdypzA8CP4kc1xOd3ic5Kfd/Ah4Ly/cV4Dciz31v+H9wGnhPXsocPv4PwH9ued5Aj3XcTUP/RUQKoohNLiIiI0mBLiJSEAp0EZGCUKCLiBSEAl1EpCAU6CIiBaFAFxEpiP8Ptu7cvVG/7NEAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "# size of the latent space\n",
    "latent_dim = 5\n",
    "# create the discriminator\n",
    "discriminator = define_discriminator()\n",
    "# create the generator\n",
    "generator = define_generator(latent_dim)\n",
    "# create the gan\n",
    "gan_model = define_gan(generator, discriminator)\n",
    "# train model\n",
    "train(generator, discriminator, gan_model, latent_dim)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
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    "name": "ipython",
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   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
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}
Об этом алгоритме

G.A.N

Generative Adversial Network:

  • The main focus for GAN is to generate data from scratch.
  • It brings us closer to understanding intelligence.
  • It trains two deep networks, called Generator and Discriminator, that compete and cooperate with each other. In the course of training, both networks eventually learn how to perform their tasks.
    • The generator never actually sees examples from the domain and is adapted based on how well the discriminator performs.
# The Import Statements:
from matplotlib import pyplot
import numpy as np
from keras.models import Sequential
from keras.layers import Dense
from keras.utils.vis_utils import plot_model
Using TensorFlow backend.

Defining a 1 D function:

y=f(x)

def function_1D(x):
    return x*x
inputs=np.arange(-0.5,0.6,0.1)
outputs=[function_1D(x) for x in inputs]
# plot the result
pyplot.plot(inputs, outputs)
pyplot.show()
#Defining random values
def generate_samples(n=100):
    x1=np.random.rand(n)-0.5
    x2=x1*x1
    x1=x1.reshape(n,1)
    x2=x2.reshape(n,1)
    return np.hstack((x1,x2))
# generate samples and plotting them
data = generate_samples()

pyplot.scatter(data[:, 0], data[:, 1])
pyplot.show()

Note:

a sample is comprised of a vector with two elements, one for the input and one for the output of our one-dimensional function.

The Discriminator

  • The difference from a typical CNN is the absence of max-pooling in between layers.
  • will have 1 hidden layer with 25 nodes.
  • will use the ReLU activation function
  • The output layer will have 1 node for the binary classification using the sigmoid activation function.
  • Loss Function: Binary Cross Entropy
  • Optimizer : Adam version of stochastic Gradient Descent
#Code for the Discriminator Unit:
def define_discriminator(n_inputs=2):
	model = Sequential()
	model.add(Dense(25, activation='relu', kernel_initializer='he_uniform', input_dim=n_inputs))
	model.add(Dense(1, activation='sigmoid'))
	# compile model
	model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])
	return model
# define the discriminator model
model = define_discriminator()
# summarize the model
model.summary()
Model: &quot;sequential_1&quot;
_________________________________________________________________
Layer (type)                 Output Shape              Param #   
=================================================================
dense_1 (Dense)              (None, 25)                75        
_________________________________________________________________
dense_2 (Dense)              (None, 1)                 26        
=================================================================
Total params: 101
Trainable params: 101
Non-trainable params: 0
_________________________________________________________________
def generate_real_samples(n):
    x1=np.random.rand(n)-0.5
    x2=x1*x1
    x1=x1.reshape(n,1)
    x2=x2.reshape(n,1)
    X= np.hstack((x1,x2))
    y=np.ones((n,1))
    return X,y
def generate_fake_samples(n):
	# generate inputs in [-1, 1]
	X1 = -1 + np.random.rand(n) * 2
	# generate outputs in [-1, 1]
	X2 = -1 + np.random.rand(n) * 2
	# stack arrays
	X1 = X1.reshape(n, 1)
	X2 = X2.reshape(n, 1)
	X = np.hstack((X1, X2))
	# generate class labels
	y = np.zeros((n, 1))
	return X, y
#training the discriminator model
def train_discriminator(model, n_epochs=1000, n_batch=128):
	half_batch = int(n_batch / 2)
	# run epochs manually
	for i in range(n_epochs):
		# generate real examples
		X_real, y_real = generate_real_samples(half_batch)
		# update model
		model.train_on_batch(X_real, y_real)
		# generate fake examples
		X_fake, y_fake = generate_fake_samples(half_batch)
		# update model
		model.train_on_batch(X_fake, y_fake)
		# evaluate the model
		_, acc_real = model.evaluate(X_real, y_real, verbose=0)
		_, acc_fake = model.evaluate(X_fake, y_fake, verbose=0)
		print(i, acc_real, acc_fake)
# define the discriminator model
model = define_discriminator()
# fit the model
train_discriminator(model)
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924 1.0 0.9375
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930 1.0 0.875
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940 1.0 0.828125
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946 1.0 0.890625
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950 1.0 0.875
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963 1.0 0.796875
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967 1.0 0.796875
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"The goal is to train a generator model, not a discriminator model, and that is where the complexity of GANs truly lies."

The Generator Model

We will define a small latent space of five dimensions and use the standard approach in the GAN literature of using a Gaussian distribution for each variable in the latent space. We will generate new inputs by drawing random numbers from a standard Gaussian distribution, i.e. mean of zero and a standard deviation of one.

  • Specs:
    • Single Hidden Layer with 5 nodes
    • ReLU activation Function
    • He weight initialization
    • Output layer will have 2 nodes+ will use linear activation function
# define the generator model unit
def define_generator(latent_dim, n_outputs=2):
	model = Sequential()
	model.add(Dense(15, activation='relu', kernel_initializer='he_uniform', input_dim=latent_dim))
	model.add(Dense(n_outputs, activation='linear'))
	return model
# define the discriminator model
model = define_generator(5)
# summarize the model
model.summary()
Model: &quot;sequential_3&quot;
_________________________________________________________________
Layer (type)                 Output Shape              Param #   
=================================================================
dense_5 (Dense)              (None, 15)                90        
_________________________________________________________________
dense_6 (Dense)              (None, 2)                 32        
=================================================================
Total params: 122
Trainable params: 122
Non-trainable params: 0
_________________________________________________________________
# generate points in latent space as input for the generator
def generate_latent_points(latent_dim, n):
	# generate points in the latent space
	x_input = np.random.randn(latent_dim * n)
	# reshape into a batch of inputs for the network
	x_input = x_input.reshape(n, latent_dim)
	return x_input
# use the generator to generate n fake examples and plot the results
def generate_fake_samples(generator, latent_dim, n):
	# generate points in latent space
	x_input = generate_latent_points(latent_dim, n)
	# predict outputs
	X = generator.predict(x_input)
    # create class labels
	y = np.zeros((n, 1))
	return X, y

When the discriminator is good at detecting fake samples, the generator is updated more, and when the discriminator model is relatively poor or confused when detecting fake samples, the generator model is updated less.

# define the combined generator and discriminator model, for updating the generator
def define_gan(generator, discriminator):
	# make weights in the discriminator not trainable
	discriminator.trainable = False
	# connect them
	model = Sequential()
	# add generator
	model.add(generator)
	# add the discriminator
	model.add(discriminator)
	# compile model
	model.compile(loss='binary_crossentropy', optimizer='adam')
	return model
# train the generator and discriminator
def train(g_model, d_model, gan_model, latent_dim, n_epochs=10000, n_batch=128, n_eval=2000):
	# determine half the size of one batch, for updating the discriminator
	half_batch = int(n_batch / 2)
	# manually enumerate epochs
	for i in range(n_epochs):
		# prepare real samples
		x_real, y_real = generate_real_samples(half_batch)
		# prepare fake examples
		x_fake, y_fake = generate_fake_samples(g_model, latent_dim, half_batch)
		# update discriminator
		d_model.train_on_batch(x_real, y_real)
		d_model.train_on_batch(x_fake, y_fake)
		# prepare points in latent space as input for the generator
		x_gan = generate_latent_points(latent_dim, n_batch)
		# create inverted labels for the fake samples
		y_gan = np.ones((n_batch, 1))
		# update the generator via the discriminator's error
		gan_model.train_on_batch(x_gan, y_gan)
		# evaluate the model every n_eval epochs
		if (i+1) % n_eval == 0:
			summarize_performance(i, g_model, d_model, latent_dim)
# evaluate the discriminator and plot real and fake points
def summarize_performance(epoch, generator, discriminator, latent_dim, n=100):
	# prepare real samples
	x_real, y_real = generate_real_samples(n)
	# evaluate discriminator on real examples
	_, acc_real = discriminator.evaluate(x_real, y_real, verbose=0)
	# prepare fake examples
	x_fake, y_fake = generate_fake_samples(generator, latent_dim, n)
	# evaluate discriminator on fake examples
	_, acc_fake = discriminator.evaluate(x_fake, y_fake, verbose=0)
	# summarize discriminator performance
	print(epoch, acc_real, acc_fake)
	# scatter plot real and fake data points
	pyplot.scatter(x_real[:, 0], x_real[:, 1], color='red')
	pyplot.scatter(x_fake[:, 0], x_fake[:, 1], color='blue')
	pyplot.show()
# size of the latent space
latent_dim = 5
# create the discriminator
discriminator = define_discriminator()
# create the generator
generator = define_generator(latent_dim)
# create the gan
gan_model = define_gan(generator, discriminator)
# train model
train(generator, discriminator, gan_model, latent_dim)
1999 0.7400000095367432 0.4399999976158142