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Keras Deep Learning and Generative Adversarial Networks (GAN)

You're reading from   Keras Deep Learning and Generative Adversarial Networks (GAN) Learn deep learning and Generative Adversarial Networks (GAN) using Python with Keras

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Product type Video
Published in Sep 2023
Publisher
ISBN-13 9781805125495
Length 17hrs 16mins
Edition 1st Edition
Languages
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Author (1):
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Abhilash Nelson Abhilash Nelson
Author Profile Icon Abhilash Nelson
Abhilash Nelson
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Toc

Table of Contents (105) Chapters Close

1. Introduction FREE CHAPTER 2. Introduction to AI and Machine Learning 3. Introduction to Deep learning and Neural Networks 4. Setting Up Computer - Installing Anaconda 5. Python Basics - Flow Control 6. Python Basics - Lists and Tuples 7. Python Basics - Dictionaries and Functions 8. NumPy Basics 9. Matplotlib Basics 10. Pandas Basics 11. Installing Deep Learning Libraries 12. Basic Structure of Artificial Neuron and Neural Network 13. Activation Functions Introduction 14. Popular Types of Activation Functions 15. Popular Types of Loss Functions 16. Popular Optimizers 17. Popular Neural Network Types 18. King County House Sales Regression Model - Step 1 Fetch and Load Dataset 19. Steps 2 and 3 - EDA and Data Preparation 20. Step 4 - Defining the Keras Model 21. Steps 5 and 6 - Compile and Fit Model 22. Step 7 Visualize Training and Metrics 23. Step 8 Prediction Using the Model 24. Heart Disease Binary Classification Model - Introduction 25. Step 1 - Fetch and Load Data 26. Steps 2 and 3 - EDA and Data Preparation 27. Step 4 - Defining the Model 28. Step 5 – Compile, Fit, and Plot the Model 29. Step 5 - Predicting Heart Disease Using Model 30. Step 6 - Testing and Evaluating Heart Disease Model 31. Redwine Quality Multiclass Classification Model - Introduction 32. Step1 - Fetch and Load Data 33. Step 2 - EDA and Data Visualization 34. Step 3 - Defining the Model 35. Step 4 – Compile, Fit, and Plot the Model 36. Step 5 - Predicting Wine Quality Using Model 37. Serialize and Save Trained Model for Later Usage 38. Digital Image Basics 39. Basic Image Processing Using Keras Functions 40. Keras Single Image Augmentation 41. Keras Directory Image Augmentation 42. Keras Data Frame Augmentation 43. CNN Basics 44. Stride, Padding, and Flattening Concepts of CNN 45. Flowers CNN Image Classification Model – Fetch, Load, and Prepare Data 46. Flowers Classification CNN - Create Test and Train Folders 47. Flowers Classification CNN - Defining the Model 48. Flowers Classification CNN - Training and Visualization 49. Flowers Classification CNN - Save Model for Later Use 50. Flowers Classification CNN - Load Saved Model and Predict 51. Flowers Classification CNN - Optimization Techniques - Introduction 52. Flowers Classification CNN - Dropout Regularization 53. Flowers Classification CNN - Padding and Filter Optimization 54. Flowers Classification CNN - Augmentation Optimization 55. Hyperparameter Tuning 56. Transfer Learning Using Pre-Trained Models - VGG Introduction 57. VGG16 and VGG19 Prediction 58. ResNet50 Prediction 59. VGG16 Transfer Learning Training Flowers Dataset 60. VGG16 Transfer Learning Flower Prediction 61. VGG16 Transfer Learning Using Google Colab GPU - Preparing and Uploading Dataset 62. VGG16 Transfer Learning Using Google Colab GPU - Training and Prediction 63. VGG19 Transfer Learning Using Google Colab GPU - Training and Prediction 64. ResNet50 Transfer Learning Using Google Colab GPU - Training and Prediction 65. Popular Neural Network Types 66. Generative Adversarial Networks GAN Introduction 67. Simple Transpose Convolution Using a Grayscale Image 68. Generator and Discriminator Mechanism Explained 69. A fully Connected Simple GAN Using MNIST Dataset - Introduction 70. Fully Connected GAN - Loading the Dataset 71. Fully Connected GAN - Defining the Generator Function 72. Fully Connected GAN - Defining the Discriminator Function 73. Fully Connected GAN - Combining Generator and Discriminator Models 74. Fully Connected GAN - Compiling Discriminator and Combined GAN Models 75. Fully Connected GAN - Discriminator Training 76. Fully Connected GAN - Generator Training 77. Fully Connected GAN - Saving Log at Each Interval 78. Fully Connected GAN - Plot the Log at Intervals 79. Fully Connected GAN - Display Generated Images 80. Saving the Trained Generator for Later Use 81. Generating Fake Images Using the Saved GAN Model 82. Fully Connected GAN Versus Deep Convoluted GAN 83. Deep Convolutional GAN - Loading the MNIST Handwritten Digits Dataset 84. Deep Convolutional GAN - Defining the Generator Function 85. Deep Convolutional GAN - Defining the Discriminator Function 86. Deep Convolutional GAN - Combining and Compiling the Model 87. Deep Convolutional GAN - Training the Model 88. Deep Convolutional GAN - Training the Model Using Google Colab GPU 89. Deep Convolutional GAN - Loading the Fashion MNIST Dataset 90. Deep Convolutional GAN - Training the MNIST Fashion Model Using Google Colab GPU 91. Deep Convolutional GAN - Loading the CIFAR-10 Dataset and Defining the Generator 92. Deep Convolutional GAN - Defining the Discriminator 93. Deep Convolutional GAN CIFAR-10 - Training the Model 94. Deep Convolutional GAN - Training the CIFAR-10 Model Using Google Colab GPU 95. Vanilla GAN Versus Conditional GAN 96. Conditional GAN - Defining the Basic Generator Function 97. Conditional GAN - Label Embedding for Generator 98. Conditional GAN - Defining the Basic Discriminator Function 99. Conditional GAN - Label Embedding for Discriminator 100. Conditional GAN - Combining and Compiling the Model 101. Conditional GAN - Training the Model 102. Conditional GAN - Display Generated Images 103. Conditional GAN - Training the MNIST Model Using Google Colab GPU 104. Conditional GAN - Training the Fashion MNIST Model Using Google Colab GPU 105. Other Popular GANs - Further Reference and Source Code Link
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