Preface Chapter 1: TensorFlow 101 What is TensorFIow? TensorFlow core Code warm-up - Hello TensorFIow Tensors Constants Operations Placeholders Creating tensors from Python objects Variables Tensors generated from library functions Populating tensor elements with the same values Populating tensor elements with sequences Populating tensor elements with a random distribution Getting Variables with tf.get_variable() Data flow graph or computation graph Order of execution and lazy loading Executing graphs across compute devices - CPU and GPGPU Placing graph nodes on specific compute devices Simple placement Dynamic placement Soft placement GPU memory handling Multiple graphs TensorBoard A TensorBoard minimal example TensorBoard details Summary
Chapter 2: High-Level Libraries for TensorFlow TF Estimator - previously TF Learn TF Slim TFLearn Creating the TFLearn Layers TFLearn core layers TFLearn convolutional layers TFLearn recurrent layers TFLearn normalization layers TFLearn embedding layers TFLearn merge layers TFLearn estimator layers Creating the TFLearn Model Types of TFLearn models Training the TFLearn Model Using the TFLearn Model PrettyTensor Sonnet Summary
Chapter 3: Keras 101 Installing Keras Neural Network Models in Keras Workflow for building models in Keras Creating the Keras model Sequential API for creating the Keras model Functional API for creating the Keras model Keras Layers Keras core layers Keras convolutional layers Keras pooling layers Keras locally-connected layers Keras recurrent layers Keras embedding layers Keras merge layers Keras advanced activation layers Keras normalization layers Keras noise layers Adding Layers to the Keras Model Sequential API to add layers to the Keras model Functional API to add layers to the Keras Model Compiling the Keras model Training the Keras model Predicting with the Keras model Additional modules in Keras Keras sequential model example for MNIST dataset Summary
Chapter 4: Classical Machine Learning with TensorFIow Chapter 5: Neural Networks and MLP with TensorFlow and Keras Chapter 6: RNN with TensorFlow and Keras Chapter 7: RNN for Time Series Data with TensorFlow and Keras Chapter 8: RNN for Text Data with TensorFlow and Keras Chapter 9: CNN with TensorFlow and Keras Chapter 10: Autoencoder with TensorFlow and Keras Chapter 11: TensorFlow Models in Production with TF Serving Chapter 12: Transfer Learning and Pre-Trained Models Chapter 13: Deep Reinforcement Learning Chapter 14: Generative Adversarial Networks Chapter 15: Distributed Models with TensorFlow Clusters Chapter 16: TensorFlow Models on Mobile and Embedded Platforms Chapter 17: TensorFlow and Keras in R Chapter 18: Debuqclincl TensorFlow Models Appendix: Tensor Processing Units Other Books You May Enjoy Index
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